From e9642379e7f47dd992b834528de897ab74c8c9b3 Mon Sep 17 00:00:00 2001 From: Eric Huang Date: Fri, 7 Mar 2025 10:46:59 -0800 Subject: [PATCH] feat(agent): plain function as client tool Summary: Test Plan: --- docs/source/building_applications/tools.md | 8 +- tests/integration/agents/test_agents.py | 3 - .../recorded_responses/chat_completion.json | 6394 ++++++++++------- .../recorded_responses/invoke_tool.json | 68 +- 4 files changed, 3681 insertions(+), 2792 deletions(-) diff --git a/docs/source/building_applications/tools.md b/docs/source/building_applications/tools.md index da447973df..2d7313cb80 100644 --- a/docs/source/building_applications/tools.md +++ b/docs/source/building_applications/tools.md @@ -127,15 +127,11 @@ MCP tools require: ## Adding Custom Tools -When you want to use tools other than the built-in tools, you can implement a python function and decorate it with `@client_tool`. +When you want to use tools other than the built-in tools, you just need to implement a python function with a docstring. The content of the docstring will be used to describe the tool and the parameters and passed +along to the generative model. -To define a custom tool, you need to use the `@client_tool` decorator. ```python -from llama_stack_client.lib.agents.client_tool import client_tool - - # Example tool definition -@client_tool def my_tool(input: int) -> int: """ Runs my awesome tool. diff --git a/tests/integration/agents/test_agents.py b/tests/integration/agents/test_agents.py index 718f508727..a542e5403e 100644 --- a/tests/integration/agents/test_agents.py +++ b/tests/integration/agents/test_agents.py @@ -9,7 +9,6 @@ import pytest from llama_stack_client.lib.agents.agent import Agent -from llama_stack_client.lib.agents.client_tool import client_tool from llama_stack_client.lib.agents.event_logger import EventLogger from llama_stack_client.types.agents.turn_create_params import Document as AgentDocument from llama_stack_client.types.memory_insert_params import Document @@ -23,7 +22,6 @@ ) -@client_tool def get_boiling_point(liquid_name: str, celcius: bool = True) -> int: """ Returns the boiling point of a liquid in Celcius or Fahrenheit @@ -41,7 +39,6 @@ def get_boiling_point(liquid_name: str, celcius: bool = True) -> int: return -1 -@client_tool def get_boiling_point_with_metadata(liquid_name: str, celcius: bool = True) -> Dict[str, Any]: """ Returns the boiling point of a liquid in Celcius or Fahrenheit diff --git a/tests/integration/fixtures/recorded_responses/chat_completion.json b/tests/integration/fixtures/recorded_responses/chat_completion.json index b4660d3a9c..db45bbdf74 100644 --- a/tests/integration/fixtures/recorded_responses/chat_completion.json +++ b/tests/integration/fixtures/recorded_responses/chat_completion.json @@ -12500,7 +12500,27 @@ "data": { "event": { "delta": { - "text": " boiling point of polyjuice is -100 degrees Fahrenheit.", + "text": " boiling point of polyjuice is -100", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": " degrees Fahrenheit.", "type": "text" }, "event_type": { @@ -12535,59 +12555,7 @@ "value": "end_of_turn" } }, - "metrics": [ - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "prompt_tokens", - "span_id": "ehKvLn9e", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:48:07.946658+00:00", - "__module__": "datetime" - }, - "trace_id": "gYfhKRXmT0qqnh4V", - "type": "metric", - "unit": "tokens", - "value": 139 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "completion_tokens", - "span_id": "ehKvLn9e", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:48:07.946690+00:00", - "__module__": "datetime" - }, - "trace_id": "gYfhKRXmT0qqnh4V", - "type": "metric", - "unit": "tokens", - "value": 23 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "total_tokens", - "span_id": "ehKvLn9e", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:48:07.946698+00:00", - "__module__": "datetime" - }, - "trace_id": "gYfhKRXmT0qqnh4V", - "type": "metric", - "unit": "tokens", - "value": 162 - } - ] + "metrics": null } } ], @@ -12641,7 +12609,27 @@ "data": { "event": { "delta": { - "text": "type\": \"function\", \"name\": \"get_boiling_point\", \"", + "text": "type\": \"function\", \"name\": \"get_boiling", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": "_point\", \"parameters\": {\"liquid_name", "type": "text" }, "event_type": { @@ -12661,7 +12649,7 @@ "data": { "event": { "delta": { - "text": "parameters\": {\"liquid_name\": \"polyju", + "text": "\": \"polyjuice\", \"cel", "type": "text" }, "event_type": { @@ -12681,7 +12669,7 @@ "data": { "event": { "delta": { - "text": "ice\", \"celcius\": \"false\"}}", + "text": "cius\": \"false\"}}", "type": "text" }, "event_type": { @@ -12711,7 +12699,7 @@ "celcius": "false", "liquid_name": "polyjuice" }, - "call_id": "ccb7e766-3cbd-4cd1-ac24-7d59fdbd32dd", + "call_id": "e8500d03-6e74-427c-b295-77bceca074f0", "tool_name": "get_boiling_point" }, "type": "tool_call" @@ -12752,59 +12740,7 @@ "value": "end_of_turn" } }, - "metrics": [ - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "prompt_tokens", - "span_id": "f8N9xscj", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:48:06.326554+00:00", - "__module__": "datetime" - }, - "trace_id": "pbTGwscoS2O-TOD7", - "type": "metric", - "unit": "tokens", - "value": 91 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "completion_tokens", - "span_id": "f8N9xscj", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:48:06.326581+00:00", - "__module__": "datetime" - }, - "trace_id": "pbTGwscoS2O-TOD7", - "type": "metric", - "unit": "tokens", - "value": 45 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "total_tokens", - "span_id": "f8N9xscj", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:48:06.326587+00:00", - "__module__": "datetime" - }, - "trace_id": "pbTGwscoS2O-TOD7", - "type": "metric", - "unit": "tokens", - "value": 136 - } - ] + "metrics": null } } ], @@ -12838,13 +12774,8 @@ "data": { "event": { "delta": { - "parse_status": { - "__enum__": "ToolCallParseStatus", - "__module__": "llama_stack.apis.common.content_types", - "value": "started" - }, - "tool_call": "", - "type": "tool_call" + "text": "{\n", + "type": "text" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -12863,13 +12794,8 @@ "data": { "event": { "delta": { - "parse_status": { - "__enum__": "ToolCallParseStatus", - "__module__": "llama_stack.apis.common.content_types", - "value": "in_progress" - }, - "tool_call": "{\"type\": \"function\", \"name\": \"get_boiling", - "type": "tool_call" + "text": " \"type\": \"function\",\n ", + "type": "text" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -12888,13 +12814,8 @@ "data": { "event": { "delta": { - "parse_status": { - "__enum__": "ToolCallParseStatus", - "__module__": "llama_stack.apis.common.content_types", - "value": "in_progress" - }, - "tool_call": "_point\", \"parameters\": {\"liquid_name\":", - "type": "tool_call" + "text": " \"name\": \"get_boiling_point\",\n", + "type": "text" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -12913,13 +12834,48 @@ "data": { "event": { "delta": { - "parse_status": { - "__enum__": "ToolCallParseStatus", - "__module__": "llama_stack.apis.common.content_types", - "value": "in_progress" - }, - "tool_call": " \"polyjuice\", \"celcius\": \"true\"}}", - "type": "tool_call" + "text": " \"parameters\": {\n \"liquid", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": "_name\": \"polyjuice\",\n \"celcius", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": "\": \"true\"\n }\n}", + "type": "text" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -12948,7 +12904,7 @@ "celcius": "true", "liquid_name": "polyjuice" }, - "call_id": "78adc0b9-cd6a-4052-b434-1db332fac11f", + "call_id": "ee7ca410-7953-407c-a479-09067389fa5c", "tool_name": "get_boiling_point" }, "type": "tool_call" @@ -12989,59 +12945,7 @@ "value": "end_of_turn" } }, - "metrics": [ - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "prompt_tokens", - "span_id": "4ZGPgl-J", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:47:55.006558+00:00", - "__module__": "datetime" - }, - "trace_id": "0JdU31UqRW6uyUfy", - "type": "metric", - "unit": "tokens", - "value": 43 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "completion_tokens", - "span_id": "4ZGPgl-J", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:47:55.006570+00:00", - "__module__": "datetime" - }, - "trace_id": "0JdU31UqRW6uyUfy", - "type": "metric", - "unit": "tokens", - "value": 10 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "total_tokens", - "span_id": "4ZGPgl-J", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:47:55.006572+00:00", - "__module__": "datetime" - }, - "trace_id": "0JdU31UqRW6uyUfy", - "type": "metric", - "unit": "tokens", - "value": 53 - } - ] + "metrics": null } } ], @@ -13095,7 +12999,7 @@ "data": { "event": { "delta": { - "text": " boiling point of polyjuice is -100", + "text": " boiling point of polyjuice is -100\u00b0C.", "type": "text" }, "event_type": { @@ -13115,95 +13019,23 @@ "data": { "event": { "delta": { - "text": "\u00b0C.", + "text": "", "type": "text" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", "__module__": "llama_stack.apis.inference.inference", - "value": "progress" + "value": "complete" }, "logprobs": null, - "stop_reason": null + "stop_reason": { + "__enum__": "StopReason", + "__module__": "llama_stack.models.llama.datatypes", + "value": "end_of_turn" + } }, "metrics": null } - }, - { - "__module__": "llama_stack.apis.inference.inference", - "__pydantic__": "ChatCompletionResponseStreamChunk", - "data": { - "event": { - "delta": { - "text": "", - "type": "text" - }, - "event_type": { - "__enum__": "ChatCompletionResponseEventType", - "__module__": "llama_stack.apis.inference.inference", - "value": "complete" - }, - "logprobs": null, - "stop_reason": { - "__enum__": "StopReason", - "__module__": "llama_stack.models.llama.datatypes", - "value": "end_of_turn" - } - }, - "metrics": [ - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "prompt_tokens", - "span_id": "TRGdCKiq", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:38.684993+00:00", - "__module__": "datetime" - }, - "trace_id": "yO1YOhixQ9mpO4rb", - "type": "metric", - "unit": "tokens", - "value": 85 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "completion_tokens", - "span_id": "TRGdCKiq", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:38.685019+00:00", - "__module__": "datetime" - }, - "trace_id": "yO1YOhixQ9mpO4rb", - "type": "metric", - "unit": "tokens", - "value": 22 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "total_tokens", - "span_id": "TRGdCKiq", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:38.685025+00:00", - "__module__": "datetime" - }, - "trace_id": "yO1YOhixQ9mpO4rb", - "type": "metric", - "unit": "tokens", - "value": 107 - } - ] - } } ], "type": "generator" @@ -13291,59 +13123,7 @@ "value": "end_of_turn" } }, - "metrics": [ - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "prompt_tokens", - "span_id": "lHrhiQgT", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:39.714686+00:00", - "__module__": "datetime" - }, - "trace_id": "0jyTQ_JVTyO8Fz_O", - "type": "metric", - "unit": "tokens", - "value": 87 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "completion_tokens", - "span_id": "lHrhiQgT", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:39.714720+00:00", - "__module__": "datetime" - }, - "trace_id": "0jyTQ_JVTyO8Fz_O", - "type": "metric", - "unit": "tokens", - "value": 22 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "total_tokens", - "span_id": "lHrhiQgT", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:39.714727+00:00", - "__module__": "datetime" - }, - "trace_id": "0jyTQ_JVTyO8Fz_O", - "type": "metric", - "unit": "tokens", - "value": 109 - } - ] + "metrics": null } } ], @@ -13407,7 +13187,32 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "{\"type\": \"function\", \"name\": \"get_boiling_point", + "tool_call": "{\"type\": \"function\", \"", + "type": "tool_call" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "in_progress" + }, + "tool_call": "name\": \"get_boiling_point\", \"parameters", "type": "tool_call" }, "event_type": { @@ -13432,7 +13237,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "\", \"parameters\": {\"liquid_name\": \"polyjuice\", \"cel", + "tool_call": "\": {\"liquid_name\": \"polyjuice\", \"celcius\": \"true", "type": "tool_call" }, "event_type": { @@ -13457,7 +13262,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "cius\": \"true\"}}", + "tool_call": "\"}}", "type": "tool_call" }, "event_type": { @@ -13487,7 +13292,7 @@ "celcius": "true", "liquid_name": "polyjuice" }, - "call_id": "ec5e1671-d607-46ae-804b-4f15e42e51b2", + "call_id": "f8adc867-71c3-472a-9f2b-95cd34c9f174", "tool_name": "get_boiling_point" }, "type": "tool_call" @@ -13528,59 +13333,7 @@ "value": "end_of_turn" } }, - "metrics": [ - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "prompt_tokens", - "span_id": "GbmO2wcg", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:38.172673+00:00", - "__module__": "datetime" - }, - "trace_id": "Fquzg9P5RfSrqSeH", - "type": "metric", - "unit": "tokens", - "value": 37 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "completion_tokens", - "span_id": "GbmO2wcg", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:38.172704+00:00", - "__module__": "datetime" - }, - "trace_id": "Fquzg9P5RfSrqSeH", - "type": "metric", - "unit": "tokens", - "value": 10 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "total_tokens", - "span_id": "GbmO2wcg", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:38.172712+00:00", - "__module__": "datetime" - }, - "trace_id": "Fquzg9P5RfSrqSeH", - "type": "metric", - "unit": "tokens", - "value": 47 - } - ] + "metrics": null } } ], @@ -13644,32 +13397,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "{\"type\": \"function\", \"name", - "type": "tool_call" - }, - "event_type": { - "__enum__": "ChatCompletionResponseEventType", - "__module__": "llama_stack.apis.inference.inference", - "value": "progress" - }, - "logprobs": null, - "stop_reason": null - }, - "metrics": null - } - }, - { - "__module__": "llama_stack.apis.inference.inference", - "__pydantic__": "ChatCompletionResponseStreamChunk", - "data": { - "event": { - "delta": { - "parse_status": { - "__enum__": "ToolCallParseStatus", - "__module__": "llama_stack.apis.common.content_types", - "value": "in_progress" - }, - "tool_call": "\": \"get_boiling_point_with_metadata\", \"parameters\": {\"", + "tool_call": "{\"type\": \"function\", \"name\": \"get_boiling_point_with", "type": "tool_call" }, "event_type": { @@ -13694,7 +13422,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "liquid_name\": \"polyjuice\", \"celcius\":", + "tool_call": "_metadata\", \"parameters\": {\"liquid_name\": \"polyjuice\", \"", "type": "tool_call" }, "event_type": { @@ -13719,7 +13447,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": " \"true\"}}", + "tool_call": "celcius\": \"true\"}}", "type": "tool_call" }, "event_type": { @@ -13749,7 +13477,7 @@ "celcius": "true", "liquid_name": "polyjuice" }, - "call_id": "1f6ad98b-871e-43fd-a866-53f54acb9466", + "call_id": "df18472c-42eb-4ded-8e84-e0b79159219a", "tool_name": "get_boiling_point_with_metadata" }, "type": "tool_call" @@ -13790,59 +13518,7 @@ "value": "end_of_turn" } }, - "metrics": [ - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "prompt_tokens", - "span_id": "gn-gDCYG", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:39.300170+00:00", - "__module__": "datetime" - }, - "trace_id": "U3gRmVfKQK6UkwCL", - "type": "metric", - "unit": "tokens", - "value": 37 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "completion_tokens", - "span_id": "gn-gDCYG", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:39.300210+00:00", - "__module__": "datetime" - }, - "trace_id": "U3gRmVfKQK6UkwCL", - "type": "metric", - "unit": "tokens", - "value": 10 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "total_tokens", - "span_id": "gn-gDCYG", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:39.300222+00:00", - "__module__": "datetime" - }, - "trace_id": "U3gRmVfKQK6UkwCL", - "type": "metric", - "unit": "tokens", - "value": 47 - } - ] + "metrics": null } } ], @@ -13931,65 +13607,13 @@ "value": "end_of_turn" } }, - "metrics": [ - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "prompt_tokens", - "span_id": "V_N39zVn", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:47:05.597771+00:00", - "__module__": "datetime" - }, - 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However, I can provide a general solution", + "text": " not found. This is because the", "type": "text" }, "event_type": { @@ -14077,7 +13701,7 @@ "data": { "event": { "delta": { - "text": " for you.\n\nTo describe a CSV", + "text": " `bwrap.core` module is not a standard Python module", "type": "text" }, "event_type": { @@ -14097,7 +13721,7 @@ "data": { "event": { "delta": { - "text": " file, you can use the `pandas` library in Python.", + "text": " and is not installed by default.\n\nTo", "type": "text" }, "event_type": { @@ -14117,7 +13741,7 @@ "data": { "event": { "delta": { - "text": " Here's a general solution:\n\n1.", + "text": " fix this issue, you can use", "type": "text" }, "event_type": { @@ -14137,7 +13761,7 @@ "data": { "event": { "delta": { - "text": " Import the `pandas` library.\n2. Load the", + "text": " the `pathlib` module to access the file directly. Here", "type": "text" }, "event_type": { @@ -14157,7 +13781,7 @@ "data": { "event": { "delta": { - "text": " CSV file using `pd.read_csv()`.\n", + "text": "'s an updated code snippet:\n\n```python\nimport pandas", "type": "text" }, "event_type": { @@ -14177,7 +13801,7 @@ "data": { "event": { "delta": { - "text": "3. Print the first few rows of the dataframe using `df", + "text": " as pd\nfrom pathlib import Path\n\nfile_path", "type": "text" }, "event_type": { @@ -14197,7 +13821,7 @@ "data": { "event": { "delta": { - "text": ".head()`.\n4. Print the data types of each", + "text": " = Path(\"/var/folders/cz/vyh7y", "type": "text" }, "event_type": { @@ -14217,7 +13841,7 @@ "data": { "event": { "delta": { - "text": " column using `df.dtypes`.\n5. Print the summary", + "text": "1d11xg881lsxsshnc5c0000gn", "type": "text" }, "event_type": { @@ -14237,7 +13861,7 @@ "data": { "event": { "delta": { - "text": " statistics of the dataframe using `df.describe()`.\n\nThis will give", + "text": "/T/tmpeipex0j0", "type": "text" }, "event_type": { @@ -14257,7 +13881,7 @@ "data": { "event": { "delta": { - "text": " you a general idea of what the CSV file contains. If you", + "text": "/b807hgTQinflation.csv\")\ndf = pd.read_csv", "type": "text" }, "event_type": { @@ -14277,7 +13901,7 @@ "data": { "event": { "delta": { - "text": " need more specific information, please let me know and I'll be", + "text": "(file_path)\nprint(df.head())\n```\n\n", "type": "text" }, "event_type": { @@ -14297,7 +13921,67 @@ "data": { "event": { "delta": { - "text": " happy to help.", + "text": "This code uses the `Path` class from the `pathlib", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": "` module to create a path object for the file. 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{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"# User provided a file accessible to you at \\\"\"\\nYou can use code_interpreter to load and inspect it.\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"code\": \"import pandas as pd\\nimport code_interpreter\\n\\n# Load the CSV file\\ndf = pd.read_csv(\\\"\")\\n\\n# Print the first few rows of the dataframe\\nprint(df.head())\\n\\n# Print the data types of each column\\nprint(df.dtypes)\\n\\n# Print the summary statistics of the dataframe\\nprint(df.describe())\"}, \"call_id\": \"\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": \"completed\\n[stderr]\\nTraceback (most recent call last):\\n line 5, in \\n from bwrap.core import main\\nModuleNotFoundError: No module named 'bwrap.core'\\n[/stderr]\", \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"code\": \"import pandas as pd\\nimport code_interpreter\\n\\n# Load the CSV file\\ndf = pd.read_csv(\\\"\")\\n\\n# Print the first few rows of the dataframe\\nprint(df.head())\\n\\n# Print the data types of each column\\nprint(df.dtypes)\\n\\n# Print the summary statistics of the dataframe\\nprint(df.describe())\"}, \"call_id\": \"\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": \"completed\\n[stderr]\\nTraceback (most recent call last):\\n line 5, in \\n from bwrap.core import main\\nModuleNotFoundError: No module named 'bwrap.core'\\n[/stderr]\", \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Search for information in a database.\", \"parameters\": {\"query\": {\"default\": null, \"description\": \"The query to search for. Can be a natural language sentence or keywords.\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": \"knowledge_search\"}}, {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Execute code\", \"parameters\": {\"code\": {\"default\": null, \"description\": \"The code to execute\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]}]": { "chunks": [ { "__module__": "llama_stack.apis.inference.inference", @@ -14418,13 +14050,8 @@ "data": { "event": { "delta": { - "parse_status": { - "__enum__": "ToolCallParseStatus", - "__module__": "llama_stack.apis.common.content_types", - "value": "started" - }, - "tool_call": "", - "type": "tool_call" + "text": "I", + "type": "text" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -14443,13 +14070,8 @@ "data": { "event": { "delta": { - "parse_status": { - "__enum__": "ToolCallParseStatus", - "__module__": "llama_stack.apis.common.content_types", - "value": "in_progress" - }, - "tool_call": "import pandas as pd\nimport code_interpreter\n\n# Load the", - "type": "tool_call" + "text": "'m unable to run the code as I'm missing the `b", + "type": "text" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -14468,13 +14090,8 @@ "data": { "event": { "delta": { - "parse_status": { - "__enum__": "ToolCallParseStatus", - "__module__": "llama_stack.apis.common.content_types", - "value": "in_progress" - }, - "tool_call": " CSV file\ndf = pd.read_csv(\"/var/folders/c", - "type": "tool_call" + "text": "wrap.core` module. However, I can provide a general solution", + "type": "text" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -14493,13 +14110,8 @@ "data": { "event": { "delta": { - "parse_status": { - "__enum__": "ToolCallParseStatus", - "__module__": "llama_stack.apis.common.content_types", - "value": "in_progress" - }, - "tool_call": "z/vyh7y1d11xg881lsxssh", - "type": "tool_call" + "text": " for you.\n\nTo describe a CSV", + "type": "text" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -14518,13 +14130,8 @@ "data": { "event": { "delta": { - "parse_status": { - "__enum__": "ToolCallParseStatus", - "__module__": "llama_stack.apis.common.content_types", - "value": "in_progress" - }, - "tool_call": "nc5c0000gn/T/tmplr_wf0lb", - "type": "tool_call" + "text": " file, you can use the `pandas` library in Python.", + "type": "text" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -14543,13 +14150,8 @@ "data": { "event": { "delta": { - "parse_status": { - "__enum__": "ToolCallParseStatus", - "__module__": "llama_stack.apis.common.content_types", - "value": "in_progress" - }, - "tool_call": "/Pl4Pewubinflation.csv\")\n\n# Print the first few", - "type": "tool_call" + "text": " Here's a general solution:\n\n1.", + "type": "text" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -14568,13 +14170,8 @@ "data": { "event": { "delta": { - "parse_status": { - "__enum__": "ToolCallParseStatus", - "__module__": "llama_stack.apis.common.content_types", - "value": "in_progress" - }, - "tool_call": " rows of the dataframe\nprint(df.head())\n\n# Print the data types of", - "type": "tool_call" + "text": " Import the `pandas` library.\n2. Load the", + "type": "text" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -14593,13 +14190,8 @@ "data": { "event": { "delta": { - "parse_status": { - "__enum__": "ToolCallParseStatus", - "__module__": "llama_stack.apis.common.content_types", - "value": "in_progress" - }, - "tool_call": " each column\nprint(df.dtypes)\n\n# Print the summary statistics of the", - "type": "tool_call" + "text": " CSV file using `pd.read_csv()`.\n", + "type": "text" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -14618,13 +14210,8 @@ "data": { "event": { "delta": { - "parse_status": { - "__enum__": "ToolCallParseStatus", - "__module__": "llama_stack.apis.common.content_types", - "value": "in_progress" - }, - "tool_call": " dataframe\nprint(df.describe())", - "type": "tool_call" + "text": "3. Print the first few rows of the dataframe using `df", + "type": "text" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -14643,23 +14230,8 @@ "data": { "event": { "delta": { - "parse_status": { - "__enum__": "ToolCallParseStatus", - "__module__": "llama_stack.apis.common.content_types", - "value": "succeeded" - }, - "tool_call": { - "arguments": { - "code": "import pandas as pd\nimport code_interpreter\n\n# Load the CSV file\ndf = pd.read_csv(\"/var/folders/cz/vyh7y1d11xg881lsxsshnc5c0000gn/T/tmplr_wf0lb/Pl4Pewubinflation.csv\")\n\n# Print the first few rows of the dataframe\nprint(df.head())\n\n# Print the data types of each column\nprint(df.dtypes)\n\n# Print the summary statistics of the dataframe\nprint(df.describe())" - }, - "call_id": "40ed30d4-05c7-4a7f-93b0-e1e6e43e48de", - "tool_name": { - "__enum__": "BuiltinTool", - "__module__": "llama_stack.models.llama.datatypes", - "value": "code_interpreter" - } - }, - "type": "tool_call" + "text": ".head()`.\n4. Print the data types of each", + "type": "text" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -14667,11 +14239,107 @@ "value": "progress" }, "logprobs": null, - "stop_reason": { - "__enum__": "StopReason", - "__module__": "llama_stack.models.llama.datatypes", - "value": "end_of_turn" - } + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": " column using `df.dtypes`.\n5. Print the summary", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": " statistics of the dataframe using `df.describe()`.\n\nThis will give", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": " you a general idea of what the CSV file contains. If you", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": " need more specific information, please let me know and I'll be", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": " happy to help.", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null }, "metrics": null } @@ -14704,16 +14372,16 @@ "provider_id": "fireworks" }, "metric": "prompt_tokens", - "span_id": "sz886Glf", + "span_id": "uKno8S5o", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:18.831808+00:00", + "__datetime__": "2025-03-06T04:49:19.978994+00:00", "__module__": "datetime" }, "trace_id": "qchwuhR3TlCRLUu5", "type": "metric", "unit": "tokens", - "value": 196 + "value": 355 }, { "attributes": { @@ -14721,16 +14389,16 @@ "provider_id": "fireworks" }, "metric": "completion_tokens", - "span_id": "sz886Glf", + "span_id": "uKno8S5o", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:18.831870+00:00", + "__datetime__": "2025-03-06T04:49:19.979047+00:00", "__module__": "datetime" }, "trace_id": "qchwuhR3TlCRLUu5", "type": "metric", "unit": "tokens", - "value": 10 + "value": 166 }, { "attributes": { @@ -14738,16 +14406,16 @@ "provider_id": "fireworks" }, "metric": "total_tokens", - "span_id": "sz886Glf", + "span_id": "uKno8S5o", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:18.831879+00:00", + "__datetime__": "2025-03-06T04:49:19.979054+00:00", "__module__": "datetime" }, "trace_id": "qchwuhR3TlCRLUu5", "type": "metric", "unit": "tokens", - "value": 206 + "value": 521 } ] } @@ -14755,7 +14423,7 @@ ], "type": "generator" }, - "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Here is a csv file, can you describe it?\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"# User provided a file accessible to you at \\\"\"\\nYou can use code_interpreter to load and inspect it.\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Search for information in a database.\", \"parameters\": {\"query\": {\"default\": null, \"description\": \"The query to search for. 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Can be a natural language sentence or keywords.\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": \"knowledge_search\"}}, {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Execute code\", \"parameters\": {\"code\": {\"default\": null, \"description\": \"The code to execute\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]}]": { "chunks": [ { "__module__": "llama_stack.apis.inference.inference", @@ -14838,32 +14506,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": " CSV file\ndf = pd.read_csv(\"/var/folders/cz", - "type": "tool_call" - }, - "event_type": { - "__enum__": "ChatCompletionResponseEventType", - "__module__": "llama_stack.apis.inference.inference", - "value": "progress" - }, - "logprobs": null, - "stop_reason": null - }, - "metrics": null - } - }, - { - "__module__": "llama_stack.apis.inference.inference", - "__pydantic__": "ChatCompletionResponseStreamChunk", - "data": { - "event": { - "delta": { - "parse_status": { - "__enum__": "ToolCallParseStatus", - "__module__": "llama_stack.apis.common.content_types", - "value": "in_progress" - }, - "tool_call": "/vyh7y1d11xg881", + "tool_call": " CSV file\ndf = pd.read_csv(\"/var/folders/c", "type": "tool_call" }, "event_type": { @@ -14888,7 +14531,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "lsxsshnc5c0000gn/T/tmplr", + "tool_call": "z/vyh7y1d11xg881lsxssh", "type": "tool_call" }, "event_type": { @@ -14913,7 +14556,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "_wf0lb/Pl4Pewubinflation.csv\")\n\n", + "tool_call": "nc5c0000gn/T/tmplr_wf0lb", "type": "tool_call" }, "event_type": { @@ -14938,7 +14581,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "# Print the first few rows of the dataframe\nprint(df.head", + "tool_call": "/Pl4Pewubinflation.csv\")\n\n# Print the first few", "type": "tool_call" }, "event_type": { @@ -14963,7 +14606,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "())\n\n# Print the data types of each column\nprint(df.d", + "tool_call": " rows of the dataframe\nprint(df.head())\n\n# Print the data types of", "type": "tool_call" }, "event_type": { @@ -14988,7 +14631,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "types)\n\n# Print the summary statistics of the", + "tool_call": " each column\nprint(df.dtypes)\n\n# Print the summary statistics of the", "type": "tool_call" }, "event_type": { @@ -15042,7 +14685,7 @@ "arguments": { "code": "import pandas as pd\nimport code_interpreter\n\n# Load the CSV file\ndf = pd.read_csv(\"/var/folders/cz/vyh7y1d11xg881lsxsshnc5c0000gn/T/tmplr_wf0lb/Pl4Pewubinflation.csv\")\n\n# Print the first few rows of the dataframe\nprint(df.head())\n\n# Print the data types of each column\nprint(df.dtypes)\n\n# Print the summary statistics of the dataframe\nprint(df.describe())" }, - "call_id": "0a037488-ab9e-46e9-bdc4-7ee6f9ef0e1e", + "call_id": "40ed30d4-05c7-4a7f-93b0-e1e6e43e48de", "tool_name": { "__enum__": "BuiltinTool", "__module__": "llama_stack.models.llama.datatypes", @@ -15094,16 +14737,16 @@ "provider_id": "fireworks" }, "metric": "prompt_tokens", - "span_id": "NoDjls_F", + "span_id": "sz886Glf", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:17.910457+00:00", + "__datetime__": "2025-03-06T04:49:18.831808+00:00", "__module__": "datetime" }, "trace_id": "qchwuhR3TlCRLUu5", "type": "metric", "unit": "tokens", - "value": 37 + "value": 196 }, { "attributes": { @@ -15111,10 +14754,10 @@ "provider_id": "fireworks" }, "metric": "completion_tokens", - "span_id": "NoDjls_F", + "span_id": "sz886Glf", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:17.910513+00:00", + "__datetime__": "2025-03-06T04:49:18.831870+00:00", "__module__": "datetime" }, "trace_id": "qchwuhR3TlCRLUu5", @@ -15128,16 +14771,16 @@ "provider_id": "fireworks" }, "metric": "total_tokens", - "span_id": "NoDjls_F", + "span_id": "sz886Glf", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:17.910522+00:00", + "__datetime__": "2025-03-06T04:49:18.831879+00:00", "__module__": "datetime" }, "trace_id": "qchwuhR3TlCRLUu5", "type": "metric", "unit": "tokens", - "value": 47 + "value": 206 } ] } @@ -15145,7 +14788,7 @@ ], "type": "generator" }, - "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Here is a csv, can you describe it?\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"code\": \"import pandas as pd\\n# Load data\\ndf = pd.read_csv(\\\"\")\\n# Rows\\nprint(\\\"Number of rows and columns in the data:\\\", df.shape)\\n# Columns\\nprint(\\\"Columns of the data are:\\\", len(df.columns))\\n# Column names\\nprint(\\\"Columns of the data are:\\\", df.columns)\\n# Column dtypes\\nprint(\\\"Datatype of the columns are:\\\", df.dtypes)\"}, \"call_id\": \"\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": \"completed\\n[stderr]\\nTraceback (most recent call last):\\n line 5, in \\n from bwrap.core import main\\nModuleNotFoundError: No module named 'bwrap.core'\\n[/stderr]\", \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"It seems that the file \\\"\" does not exist. \\n\\nTo describe the csv file, you need to provide the actual file path or the file itself. If you are using a local file, you can use the `load_data` function from the `code_interpreter` library to load the file. \\n\\nHere is an example of how you can describe the csv file:\\n\\n```\\nimport pandas as pd\\nfrom code_interpreter import load_data\\n\\n# Load data\\ndf = load_data('inflation.csv')\\n\\n# Print summary of the data\\nprint(df.head()) # Print the first few rows of the data\\nprint(df.info()) # Print information about the data\\nprint(df.describe()) # Print summary statistics about the data\\n```\\n\\nPlease replace 'inflation.csv' with your actual csv file name. \\n\\nIf you are using a remote file, you need to provide the actual file path or the file itself. \\n\\nAlso, make sure that the file is in the correct format and that the pandas library can read it correctly.\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": []}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Plot average yearly inflation as a time series\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"code\": \"import pandas as pd\\nimport matplotlib.pyplot as plt\\n\\n# Load data\\ndf = pd.read_csv(\\\"inflation.csv\\\")\\n\\n# Convert date column to datetime\\ndf['date'] = pd.to_datetime(df['date'])\\n\\n# Group by year and calculate average inflation\\naverage_inflation = df.groupby(df['date'].dt.year)['inflation'].mean()\\n\\n# Plot average yearly inflation as a time series\\nplt.figure(figsize=(10,6))\\nplt.plot(average_inflation.index, average_inflation.values, marker='o')\\nplt.title('Average Yearly Inflation')\\nplt.xlabel('Year')\\nplt.ylabel('Average Inflation')\\nplt.grid(True)\\nplt.show()\"}, \"call_id\": \"\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": \"completed\\n[stderr]\\nTraceback (most recent call last):\\n line 5, in \\n from bwrap.core import main\\nModuleNotFoundError: No module named 'bwrap.core'\\n[/stderr]\", \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, 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\"code_interpreter\"}}}]}]": { + "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Here is a csv file, can you describe it?\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"# User provided a file accessible to you at \\\"\"\\nYou can use code_interpreter to load and inspect it.\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": 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Can be a natural language sentence or keywords.\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": \"knowledge_search\"}}, {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Execute code\", \"parameters\": {\"code\": {\"default\": null, \"description\": \"The code to execute\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]}]": { "chunks": [ { "__module__": "llama_stack.apis.inference.inference", @@ -15173,8 +14816,13 @@ "data": { "event": { "delta": { - "text": "This", - "type": "text" + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "started" + }, + "tool_call": "", + "type": "tool_call" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -15193,8 +14841,13 @@ "data": { "event": { "delta": { - "text": " code will create a line plot of the", - "type": "text" + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "in_progress" + }, + "tool_call": "import pandas as pd\ndf = pd.read_csv(\"/var/f", + "type": "tool_call" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -15213,8 +14866,13 @@ "data": { "event": { "delta": { - "text": " average yearly inflation over time. The x", - "type": "text" + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "in_progress" + }, + "tool_call": "olders/cz/vyh7y1d11xg881", + "type": "tool_call" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -15233,8 +14891,13 @@ "data": { "event": { "delta": { - "text": "-axis represents the year and the y-axis represents the average inflation", - "type": "text" + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "in_progress" + }, + "tool_call": "lsxsshnc5c0000gn/T/tmpeip", + "type": "tool_call" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -15253,8 +14916,13 @@ "data": { "event": { "delta": { - "text": ". The plot will also include a title, labels for the", - "type": "text" + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "in_progress" + }, + "tool_call": "ex0j0/b807hgTQinflation.csv\")\n", + "type": "tool_call" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -15273,8 +14941,13 @@ "data": { "event": { "delta": { - "text": " x and y axes, and a grid to make it easier", - "type": "text" + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "in_progress" + }, + "tool_call": "print(df.head())", + "type": "tool_call" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -15293,8 +14966,23 @@ "data": { "event": { "delta": { - "text": " to read.\n\nPlease replace \"inflation.csv\" with your", - "type": "text" + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "succeeded" + }, + "tool_call": { + "arguments": { + "code": "import pandas as pd\ndf = pd.read_csv(\"/var/folders/cz/vyh7y1d11xg881lsxsshnc5c0000gn/T/tmpeipex0j0/b807hgTQinflation.csv\")\nprint(df.head())" + }, + "call_id": "d431c3a2-5b91-4407-8323-27bc134503e0", + "tool_name": { + "__enum__": "BuiltinTool", + "__module__": "llama_stack.models.llama.datatypes", + "value": "code_interpreter" + } + }, + "type": "tool_call" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", @@ -15302,8 +14990,12 @@ "value": "progress" }, "logprobs": null, - "stop_reason": null - }, + "stop_reason": { + "__enum__": "StopReason", + "__module__": "llama_stack.models.llama.datatypes", + "value": "end_of_turn" + } + }, "metrics": null } }, @@ -15313,7 +15005,56 @@ "data": { "event": { "delta": { - "text": " actual csv file name. \n\nAlso, make sure that the file", + "text": "", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "complete" + }, + "logprobs": null, + "stop_reason": { + "__enum__": "StopReason", + "__module__": "llama_stack.models.llama.datatypes", + "value": "end_of_turn" + } + }, + "metrics": null + } + } + ], + "type": "generator" + }, + "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Here is a csv, can you describe it?\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"code\": \"import pandas as pd\\n# Load data\\ndf = pd.read_csv(\\\"\")\\n# Rows\\nprint(\\\"Number of rows and columns in the data:\\\", df.shape)\\n# Columns\\nprint(\\\"Columns of the data are:\\\", len(df.columns))\\n# Column names\\nprint(\\\"Columns of the data are:\\\", df.columns)\\n# Column dtypes\\nprint(\\\"Datatype of the columns are:\\\", df.dtypes)\"}, \"call_id\": \"\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": \"completed\\n[stderr]\\nTraceback (most recent call last):\\n line 5, in \\n from bwrap.core import main\\nModuleNotFoundError: No module named 'bwrap.core'\\n[/stderr]\", \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"It seems that the file \\\"\" does not exist. \\n\\nTo describe the csv file, you need to provide the actual file path or the file itself. If the file is in your current directory, you can use the following code:\\n\\n```python\\nimport pandas as pd\\n# Load data\\ndf = pd.read_csv('inflation.csv')\\n# Print the first 5 rows of the dataframe\\nprint(df.head())\\n# Print the summary of the dataframe\\nprint(df.info())\\nprint(df.describe())\\n```\\n\\nThis will print the first 5 rows of the dataframe, the summary of the dataframe (including the index dtype and column count), and the description of the dataframe (including count, mean, std, min, 25%, 50%, 75%, max for each column).\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": []}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Plot average yearly inflation as a time series\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"code\": \"import pandas as pd\\nimport matplotlib.pyplot as plt\\n\\n# Load data\\ndf = pd.read_csv('inflation.csv')\\n\\n# Convert 'date' column to datetime\\ndf['date'] = pd.to_datetime(df['date'])\\n\\n# Group by year and calculate average inflation\\naverage_inflation = df.groupby(df['date'].dt.year)['inflation'].mean()\\n\\n# Plot the time series\\nplt.figure(figsize=(10,6))\\nplt.plot(average_inflation.index, average_inflation.values, marker='o')\\nplt.title('Average Yearly Inflation')\\nplt.xlabel('Year')\\nplt.ylabel('Average Inflation')\\nplt.grid(True)\\nplt.show()\"}, \"call_id\": \"\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": \"completed\\n[stderr]\\nTraceback (most recent call last):\\n line 5, in \\n from bwrap.core import main\\nModuleNotFoundError: No module named 'bwrap.core'\\n[/stderr]\", \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Execute code\", \"parameters\": {\"code\": {\"default\": null, \"description\": \"The code to execute\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]}]": { + "chunks": [ + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": "", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "start" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": "This", "type": "text" }, "event_type": { @@ -15333,7 +15074,7 @@ "data": { "event": { "delta": { - "text": " is in the correct format and that the pandas library can read it", + "text": " code will create a line plot of", "type": "text" }, "event_type": { @@ -15353,7 +15094,7 @@ "data": { "event": { "delta": { - "text": " correctly. \n\nIf your csv file has a different column name for", + "text": " the average yearly inflation over time. The x", "type": "text" }, "event_type": { @@ -15373,7 +15114,7 @@ "data": { "event": { "delta": { - "text": " the date, you will need to replace", + "text": "-axis represents the year and the y-axis represents the", "type": "text" }, "event_type": { @@ -15393,7 +15134,7 @@ "data": { "event": { "delta": { - "text": " 'date' with the actual column name. \n\nIf your csv", + "text": " average inflation. Each point on the plot represents", "type": "text" }, "event_type": { @@ -15413,7 +15154,7 @@ "data": { "event": { "delta": { - "text": " file has a different column name for the inflation, you will need", + "text": " the average inflation for a particular year.\n\nPlease note that you", "type": "text" }, "event_type": { @@ -15433,7 +15174,7 @@ "data": { "event": { "delta": { - "text": " to replace 'inflation' with the actual column name. \n\n", + "text": " need to replace 'inflation.csv'", "type": "text" }, "event_type": { @@ -15453,7 +15194,7 @@ "data": { "event": { "delta": { - "text": "If you want to save the plot to a file instead of displaying", + "text": " with the actual path to your csv file. Also,", "type": "text" }, "event_type": { @@ -15473,7 +15214,7 @@ "data": { "event": { "delta": { - "text": " it, you can use the `savefig` method. For", + "text": " this code assumes that the 'date' column in your csv", "type": "text" }, "event_type": { @@ -15493,7 +15234,67 @@ "data": { "event": { "delta": { - "text": " example:\n\n```\nplt.savefig('average_inflation.png')\n```", + "text": " file is in a format that can be parsed by pandas' `to", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": "_datetime` function. If the date is in a different", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": " format, you may need to specify the format using the `format", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": "` parameter of `to_datetime`.", "type": "text" }, "event_type": { @@ -15528,65 +15329,13 @@ "value": "end_of_turn" } }, - "metrics": [ - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "prompt_tokens", - "span_id": "2Yx8i0id", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:47:51.132007+00:00", - "__module__": "datetime" - }, - "trace_id": "N2BeNv66RcO7NRuE", - "type": "metric", - "unit": "tokens", - "value": 666 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "completion_tokens", - "span_id": "2Yx8i0id", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:47:51.132048+00:00", - "__module__": "datetime" - }, - "trace_id": "N2BeNv66RcO7NRuE", - "type": "metric", - "unit": "tokens", - "value": 200 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "total_tokens", - "span_id": "2Yx8i0id", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:47:51.132054+00:00", - "__module__": "datetime" - }, - "trace_id": "N2BeNv66RcO7NRuE", - "type": "metric", - "unit": "tokens", - "value": 866 - } - ] + "metrics": null } } ], "type": "generator" }, - "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Here is a csv, can you describe it?\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"code\": \"import pandas as pd\\n# Load data\\ndf = pd.read_csv(\\\"\")\\n# Rows\\nprint(\\\"Number of rows and columns in the data:\\\", df.shape)\\n# Columns\\nprint(\\\"Columns of the data are:\\\", len(df.columns))\\n# Column names\\nprint(\\\"Columns of the data are:\\\", df.columns)\\n# Column dtypes\\nprint(\\\"Datatype of the columns are:\\\", df.dtypes)\"}, \"call_id\": \"\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": \"completed\\n[stderr]\\nTraceback (most recent call last):\\n line 5, in \\n from bwrap.core import main\\nModuleNotFoundError: No module named 'bwrap.core'\\n[/stderr]\", \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"It seems that the file \\\"\" does not exist. \\n\\nTo describe the csv file, you need to provide the actual file path or the file itself. If you are using a local file, you can use the `load_data` function from the `code_interpreter` library to load the file. \\n\\nHere is an example of how you can describe the csv file:\\n\\n```\\nimport pandas as pd\\nfrom code_interpreter import load_data\\n\\n# Load data\\ndf = load_data('inflation.csv')\\n\\n# Print summary of the data\\nprint(df.head()) # Print the first few rows of the data\\nprint(df.info()) # Print information about the data\\nprint(df.describe()) # Print summary statistics about the data\\n```\\n\\nPlease replace 'inflation.csv' with your actual csv file name. \\n\\nIf you are using a remote file, you need to provide the actual file path or the file itself. \\n\\nAlso, make sure that the file is in the correct format and that the pandas library can read it correctly.\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": []}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Plot average yearly inflation as a time series\", \"context\": null, \"role\": \"user\"}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Execute code\", \"parameters\": {\"code\": {\"default\": null, \"description\": \"The code to execute\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]}]": { + "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Here is a csv, can you describe it?\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"code\": \"import pandas as pd\\n# Load data\\ndf = pd.read_csv(\\\"\")\\n# Rows\\nprint(\\\"Number of rows and columns in the data:\\\", df.shape)\\n# Columns\\nprint(\\\"Columns of the data are:\\\", len(df.columns))\\n# Column names\\nprint(\\\"Columns of the data are:\\\", df.columns)\\n# Column dtypes\\nprint(\\\"Datatype of the columns are:\\\", df.dtypes)\"}, \"call_id\": \"\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": \"completed\\n[stderr]\\nTraceback (most recent call last):\\n line 5, in \\n from bwrap.core import main\\nModuleNotFoundError: No module named 'bwrap.core'\\n[/stderr]\", \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"It seems that the file \\\"\" does not exist. \\n\\nTo describe the csv file, you need to provide the actual file path or the file itself. If the file is in your current directory, you can use the following code:\\n\\n```python\\nimport pandas as pd\\n# Load data\\ndf = pd.read_csv('inflation.csv')\\n# Print the first 5 rows of the dataframe\\nprint(df.head())\\n# Print the summary of the dataframe\\nprint(df.info())\\nprint(df.describe())\\n```\\n\\nThis will print the first 5 rows of the dataframe, the summary of the dataframe (including the index dtype and column count), and the description of the dataframe (including count, mean, std, min, 25%, 50%, 75%, max for each column).\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": []}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Plot average yearly inflation as a time series\", \"context\": null, \"role\": \"user\"}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Execute code\", \"parameters\": {\"code\": {\"default\": null, \"description\": \"The code to execute\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]}]": { "chunks": [ { "__module__": "llama_stack.apis.inference.inference", @@ -15669,7 +15418,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": " data\ndf = pd.read_csv(\"", + "tool_call": " data\ndf = pd.read_csv('inflation.csv", "type": "tool_call" }, "event_type": { @@ -15694,7 +15443,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "inflation.csv\")\n\n# Convert date column to datetime\ndf", + "tool_call": "')\n\n# Convert 'date' column to datetime\ndf['date']", "type": "tool_call" }, "event_type": { @@ -15719,7 +15468,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "['date'] = pd.to_datetime(df['date'])\n\n# Group", + "tool_call": " = pd.to_datetime(df['date'])\n\n# Group by year and calculate", "type": "tool_call" }, "event_type": { @@ -15744,7 +15493,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": " by year and calculate average inflation\naverage_inflation = df.groupby", + "tool_call": " average inflation\naverage_inflation = df.groupby(df['date'].dt", "type": "tool_call" }, "event_type": { @@ -15769,7 +15518,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "(df['date'].dt.year)['inflation'].mean()\n\n#", + "tool_call": ".year)['inflation'].mean()\n\n# Plot", "type": "tool_call" }, "event_type": { @@ -15794,7 +15543,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": " Plot average yearly inflation as a time series\nplt.figure(figsize=(", + "tool_call": " the time series\nplt.figure(figsize=(", "type": "tool_call" }, "event_type": { @@ -15819,7 +15568,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "10,6))\nplt.plot(average_in", + "tool_call": "10,6))\nplt.plot(average", "type": "tool_call" }, "event_type": { @@ -15844,7 +15593,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "flation.index, average_inflation.values, marker='o')\nplt", + "tool_call": "_inflation.index, average_inflation.values", "type": "tool_call" }, "event_type": { @@ -15869,7 +15618,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": ".title('Average Yearly Inflation')\nplt.xlabel('Year')\n", + "tool_call": ", marker='o')\nplt.title('Average Yearly Inflation')\n", "type": "tool_call" }, "event_type": { @@ -15894,7 +15643,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "plt.ylabel('Average Inflation')\nplt.grid(True)\nplt.show", + "tool_call": "plt.xlabel('Year')\nplt.ylabel('Average Inflation')\nplt.grid", "type": "tool_call" }, "event_type": { @@ -15919,7 +15668,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "()", + "tool_call": "(True)\nplt.show()", "type": "tool_call" }, "event_type": { @@ -15946,9 +15695,9 @@ }, "tool_call": { "arguments": { - "code": "import pandas as pd\nimport matplotlib.pyplot as plt\n\n# Load data\ndf = pd.read_csv(\"inflation.csv\")\n\n# Convert date column to datetime\ndf['date'] = pd.to_datetime(df['date'])\n\n# Group by year and calculate average inflation\naverage_inflation = df.groupby(df['date'].dt.year)['inflation'].mean()\n\n# Plot average yearly inflation as a time series\nplt.figure(figsize=(10,6))\nplt.plot(average_inflation.index, average_inflation.values, marker='o')\nplt.title('Average Yearly Inflation')\nplt.xlabel('Year')\nplt.ylabel('Average Inflation')\nplt.grid(True)\nplt.show()" + "code": "import pandas as pd\nimport matplotlib.pyplot as plt\n\n# Load data\ndf = pd.read_csv('inflation.csv')\n\n# Convert 'date' column to datetime\ndf['date'] = pd.to_datetime(df['date'])\n\n# Group by year and calculate average inflation\naverage_inflation = df.groupby(df['date'].dt.year)['inflation'].mean()\n\n# Plot the time series\nplt.figure(figsize=(10,6))\nplt.plot(average_inflation.index, average_inflation.values, marker='o')\nplt.title('Average Yearly Inflation')\nplt.xlabel('Year')\nplt.ylabel('Average Inflation')\nplt.grid(True)\nplt.show()" }, - "call_id": "cfae3ff5-49f8-439d-b740-603bc93fb5a3", + "call_id": "ae9d3d8c-ece8-4f94-aa92-a6a93b08b43e", "tool_name": { "__enum__": "BuiltinTool", "__module__": "llama_stack.models.llama.datatypes", @@ -15993,65 +15742,13 @@ "value": "end_of_turn" } }, - "metrics": [ - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "prompt_tokens", - "span_id": "JNrmlTTc", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:47:39.920493+00:00", - "__module__": "datetime" - }, - "trace_id": "N2BeNv66RcO7NRuE", - "type": "metric", - "unit": "tokens", - "value": 476 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "completion_tokens", - "span_id": "JNrmlTTc", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:47:39.920519+00:00", - "__module__": "datetime" - }, - "trace_id": "N2BeNv66RcO7NRuE", - "type": "metric", - "unit": "tokens", - "value": 10 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "total_tokens", - "span_id": "JNrmlTTc", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:47:39.920522+00:00", - "__module__": "datetime" - }, - "trace_id": "N2BeNv66RcO7NRuE", - "type": "metric", - "unit": "tokens", - "value": 486 - } - ] + "metrics": null } } ], "type": "generator" }, - "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Here is a csv, can you describe it?\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"# User provided a file accessible to you at \\\"\"\\nYou can use code_interpreter to load and inspect it.\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"code\": \"import pandas as pd\\n# Load data\\ndf = pd.read_csv(\\\"\")\\n# Rows\\nprint(\\\"Number of rows and columns in the data:\\\", df.shape)\\n# Columns\\nprint(\\\"Columns of the data are:\\\", len(df.columns))\\n# Column names\\nprint(\\\"Columns of the data are:\\\", df.columns)\\n# Column dtypes\\nprint(\\\"Datatype of the columns are:\\\", df.dtypes)\"}, \"call_id\": \"\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": \"completed\\n[stderr]\\nTraceback (most recent call last):\\n line 5, in \\n from bwrap.core import main\\nModuleNotFoundError: No module named 'bwrap.core'\\n[/stderr]\", \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Execute code\", \"parameters\": {\"code\": {\"default\": null, \"description\": \"The code to execute\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]}]": { + "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Here is a csv, can you describe it?\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"code\": \"import pandas as pd\\n# Load data\\ndf = pd.read_csv(\\\"\")\\n# Rows\\nprint(\\\"Number of rows and columns in the data:\\\", df.shape)\\n# Columns\\nprint(\\\"Columns of the data are:\\\", len(df.columns))\\n# Column names\\nprint(\\\"Columns of the data are:\\\", df.columns)\\n# Column dtypes\\nprint(\\\"Datatype of the columns are:\\\", df.dtypes)\"}, \"call_id\": \"\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": \"completed\\n[stderr]\\nTraceback (most recent call last):\\n line 5, in \\n from bwrap.core import main\\nModuleNotFoundError: No module named 'bwrap.core'\\n[/stderr]\", \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"It seems that the file \\\"\" does not exist. \\n\\nTo describe the csv file, you need to provide the actual file path or the file itself. If you are using a local file, you can use the `load_data` function from the `code_interpreter` library to load the file. \\n\\nHere is an example of how you can describe the csv file:\\n\\n```\\nimport pandas as pd\\nfrom code_interpreter import load_data\\n\\n# Load data\\ndf = load_data('inflation.csv')\\n\\n# Print summary of the data\\nprint(df.head()) # Print the first few rows of the data\\nprint(df.info()) # Print information about the data\\nprint(df.describe()) # Print summary statistics about the data\\n```\\n\\nPlease replace 'inflation.csv' with your actual csv file name. \\n\\nIf you are using a remote file, you need to provide the actual file path or the file itself. \\n\\nAlso, make sure that the file is in the correct format and that the pandas library can read it correctly.\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": []}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Plot average yearly inflation as a time series\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"code\": \"import pandas as pd\\nimport matplotlib.pyplot as plt\\n\\n# Load data\\ndf = pd.read_csv(\\\"inflation.csv\\\")\\n\\n# Convert date column to datetime\\ndf['date'] = pd.to_datetime(df['date'])\\n\\n# Group by year and calculate average inflation\\naverage_inflation = df.groupby(df['date'].dt.year)['inflation'].mean()\\n\\n# Plot average yearly inflation as a time series\\nplt.figure(figsize=(10,6))\\nplt.plot(average_inflation.index, average_inflation.values, marker='o')\\nplt.title('Average Yearly Inflation')\\nplt.xlabel('Year')\\nplt.ylabel('Average Inflation')\\nplt.grid(True)\\nplt.show()\"}, \"call_id\": \"\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": \"completed\\n[stderr]\\nTraceback (most recent call last):\\n line 5, in \\n from bwrap.core import main\\nModuleNotFoundError: No module named 'bwrap.core'\\n[/stderr]\", \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Execute code\", \"parameters\": {\"code\": {\"default\": null, \"description\": \"The code to execute\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]}]": { "chunks": [ { "__module__": "llama_stack.apis.inference.inference", @@ -16079,7 +15776,7 @@ "data": { "event": { "delta": { - "text": "It", + "text": "This", "type": "text" }, "event_type": { @@ -16099,7 +15796,7 @@ "data": { "event": { "delta": { - "text": " seems that the file \"/var/folders", + "text": " code will create a line plot of the", "type": "text" }, "event_type": { @@ -16119,7 +15816,7 @@ "data": { "event": { "delta": { - "text": "/cz/vyh7y1d11xg881lsx", + "text": " average yearly inflation over time. The x", "type": "text" }, "event_type": { @@ -16139,7 +15836,7 @@ "data": { "event": { "delta": { - "text": "sshnc5c0000gn/T/t", + "text": "-axis represents the year and the y-axis represents the average inflation", "type": "text" }, "event_type": { @@ -16159,7 +15856,7 @@ "data": { "event": { "delta": { - "text": "mplr_wf0lb/p99E", + "text": ". The plot will also include a title, labels for the", "type": "text" }, "event_type": { @@ -16179,7 +15876,7 @@ "data": { "event": { "delta": { - "text": "7wY2inflation.csv\" does not exist. \n\n", + "text": " x and y axes, and a grid to make it easier", "type": "text" }, "event_type": { @@ -16199,7 +15896,7 @@ "data": { "event": { "delta": { - "text": "To describe the csv file, you need to provide the actual file", + "text": " to read.\n\nPlease replace \"inflation.csv\" with your", "type": "text" }, "event_type": { @@ -16219,7 +15916,7 @@ "data": { "event": { "delta": { - "text": " path or the file itself. If you are using a local file", + "text": " actual csv file name. \n\nAlso, make sure that the file", "type": "text" }, "event_type": { @@ -16239,147 +15936,7 @@ "data": { "event": { "delta": { - "text": ", you can use the `load_data` function from the `", - "type": "text" - }, - "event_type": { - "__enum__": "ChatCompletionResponseEventType", - "__module__": "llama_stack.apis.inference.inference", - "value": "progress" - }, - "logprobs": null, - "stop_reason": null - }, - "metrics": null - } - }, - { - "__module__": "llama_stack.apis.inference.inference", - "__pydantic__": "ChatCompletionResponseStreamChunk", - "data": { - "event": { - "delta": { - "text": "code_interpreter` library to load the", - "type": "text" - }, - "event_type": { - "__enum__": "ChatCompletionResponseEventType", - "__module__": "llama_stack.apis.inference.inference", - "value": "progress" - }, - "logprobs": null, - "stop_reason": null - }, - "metrics": null - } - }, - { - "__module__": "llama_stack.apis.inference.inference", - "__pydantic__": "ChatCompletionResponseStreamChunk", - "data": { - "event": { - "delta": { - "text": " file. \n\nHere is an example of how you can describe", - "type": "text" - }, - "event_type": { - "__enum__": "ChatCompletionResponseEventType", - "__module__": "llama_stack.apis.inference.inference", - "value": "progress" - }, - "logprobs": null, - "stop_reason": null - }, - "metrics": null - } - }, - { - "__module__": "llama_stack.apis.inference.inference", - "__pydantic__": "ChatCompletionResponseStreamChunk", - "data": { - "event": { - "delta": { - "text": " the csv file:\n\n```\nimport pandas as", - "type": "text" - }, - "event_type": { - "__enum__": "ChatCompletionResponseEventType", - "__module__": "llama_stack.apis.inference.inference", - "value": "progress" - }, - "logprobs": null, - "stop_reason": null - }, - "metrics": null - } - }, - { - "__module__": "llama_stack.apis.inference.inference", - "__pydantic__": "ChatCompletionResponseStreamChunk", - "data": { - "event": { - "delta": { - "text": " pd\nfrom code_interpreter import load_data\n\n# Load data", - "type": "text" - }, - "event_type": { - "__enum__": "ChatCompletionResponseEventType", - "__module__": "llama_stack.apis.inference.inference", - "value": "progress" - }, - "logprobs": null, - "stop_reason": null - }, - "metrics": null - } - }, - { - "__module__": "llama_stack.apis.inference.inference", - "__pydantic__": "ChatCompletionResponseStreamChunk", - "data": { - "event": { - "delta": { - "text": "\ndf = load_data('inflation.csv')\n\n# Print summary of", - "type": "text" - }, - "event_type": { - "__enum__": "ChatCompletionResponseEventType", - "__module__": "llama_stack.apis.inference.inference", - "value": "progress" - }, - "logprobs": null, - "stop_reason": null - }, - "metrics": null - } - }, - { - "__module__": "llama_stack.apis.inference.inference", - "__pydantic__": "ChatCompletionResponseStreamChunk", - "data": { - "event": { - "delta": { - "text": " the data\nprint(df.head()) #", - "type": "text" - }, - "event_type": { - "__enum__": "ChatCompletionResponseEventType", - "__module__": "llama_stack.apis.inference.inference", - "value": "progress" - }, - "logprobs": null, - "stop_reason": null - }, - "metrics": null - } - }, - { - "__module__": "llama_stack.apis.inference.inference", - "__pydantic__": "ChatCompletionResponseStreamChunk", - "data": { - "event": { - "delta": { - "text": " Print the first few rows of the data\nprint(df.info())", + "text": " is in the correct format and that the pandas library can read it", "type": "text" }, "event_type": { @@ -16399,7 +15956,7 @@ "data": { "event": { "delta": { - "text": " # Print information about the data\nprint(df.describe()) ", + "text": " correctly. \n\nIf your csv file has a different column name for", "type": "text" }, "event_type": { @@ -16419,7 +15976,7 @@ "data": { "event": { "delta": { - "text": " # Print summary statistics about the data\n", + "text": " the date, you will need to replace", "type": "text" }, "event_type": { @@ -16439,7 +15996,7 @@ "data": { "event": { "delta": { - "text": "```\n\nPlease replace 'inflation.csv", + "text": " 'date' with the actual column name. \n\nIf your csv", "type": "text" }, "event_type": { @@ -16459,7 +16016,7 @@ "data": { "event": { "delta": { - "text": "' with your actual csv file name.", + "text": " file has a different column name for the inflation, you will need", "type": "text" }, "event_type": { @@ -16479,7 +16036,7 @@ "data": { "event": { "delta": { - "text": " \n\nIf you are using a remote file, you need to provide", + "text": " to replace 'inflation' with the actual column name. \n\n", "type": "text" }, "event_type": { @@ -16499,7 +16056,7 @@ "data": { "event": { "delta": { - "text": " the actual file path or the file itself.", + "text": "If you want to save the plot to a file instead of displaying", "type": "text" }, "event_type": { @@ -16519,7 +16076,7 @@ "data": { "event": { "delta": { - "text": " \n\nAlso, make sure that the file is in the correct format", + "text": " it, you can use the `savefig` method. For", "type": "text" }, "event_type": { @@ -16539,7 +16096,7 @@ "data": { "event": { "delta": { - "text": " and that the pandas library can read it correctly.", + "text": " example:\n\n```\nplt.savefig('average_inflation.png')\n```", "type": "text" }, "event_type": { @@ -16581,16 +16138,16 @@ "provider_id": "fireworks" }, "metric": "prompt_tokens", - "span_id": "rE7rhw1s", + "span_id": "2Yx8i0id", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:47:30.946947+00:00", + "__datetime__": "2025-03-06T04:47:51.132007+00:00", "__module__": "datetime" }, - "trace_id": "RPZJ19J7SzaX6t6h", + "trace_id": "N2BeNv66RcO7NRuE", "type": "metric", "unit": "tokens", - "value": 213 + "value": 666 }, { "attributes": { @@ -16598,16 +16155,16 @@ "provider_id": "fireworks" }, "metric": "completion_tokens", - "span_id": "rE7rhw1s", + "span_id": "2Yx8i0id", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:47:30.946979+00:00", + "__datetime__": "2025-03-06T04:47:51.132048+00:00", "__module__": "datetime" }, - "trace_id": "RPZJ19J7SzaX6t6h", + "trace_id": "N2BeNv66RcO7NRuE", "type": "metric", "unit": "tokens", - "value": 261 + "value": 200 }, { "attributes": { @@ -16615,16 +16172,16 @@ "provider_id": "fireworks" }, "metric": "total_tokens", - "span_id": "rE7rhw1s", + "span_id": "2Yx8i0id", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:47:30.946982+00:00", + "__datetime__": "2025-03-06T04:47:51.132054+00:00", "__module__": "datetime" }, - "trace_id": "RPZJ19J7SzaX6t6h", + "trace_id": "N2BeNv66RcO7NRuE", "type": "metric", "unit": "tokens", - "value": 474 + "value": 866 } ] } @@ -16632,7 +16189,7 @@ ], "type": "generator" }, - "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Here is a csv, can you describe it?\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"# User provided a file accessible to you at \\\"\"\\nYou can use code_interpreter to load and inspect it.\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Execute code\", \"parameters\": {\"code\": {\"default\": null, \"description\": \"The code to execute\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]}]": { + "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Here is a csv, can you describe it?\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"code\": \"import pandas as pd\\n# Load data\\ndf = pd.read_csv(\\\"\")\\n# Rows\\nprint(\\\"Number of rows and columns in the data:\\\", df.shape)\\n# Columns\\nprint(\\\"Columns of the data are:\\\", len(df.columns))\\n# Column names\\nprint(\\\"Columns of the data are:\\\", df.columns)\\n# Column dtypes\\nprint(\\\"Datatype of the columns are:\\\", df.dtypes)\"}, \"call_id\": \"\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": \"completed\\n[stderr]\\nTraceback (most recent call last):\\n line 5, in \\n from bwrap.core import main\\nModuleNotFoundError: No module named 'bwrap.core'\\n[/stderr]\", \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"It seems that the file \\\"\" does not exist. \\n\\nTo describe the csv file, you need to provide the actual file path or the file itself. If you are using a local file, you can use the `load_data` function from the `code_interpreter` library to load the file. \\n\\nHere is an example of how you can describe the csv file:\\n\\n```\\nimport pandas as pd\\nfrom code_interpreter import load_data\\n\\n# Load data\\ndf = load_data('inflation.csv')\\n\\n# Print summary of the data\\nprint(df.head()) # Print the first few rows of the data\\nprint(df.info()) # Print information about the data\\nprint(df.describe()) # Print summary statistics about the data\\n```\\n\\nPlease replace 'inflation.csv' with your actual csv file name. \\n\\nIf you are using a remote file, you need to provide the actual file path or the file itself. \\n\\nAlso, make sure that the file is in the correct format and that the pandas library can read it correctly.\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": []}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Plot average yearly inflation as a time series\", \"context\": null, \"role\": \"user\"}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Execute code\", \"parameters\": {\"code\": {\"default\": null, \"description\": \"The code to execute\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]}]": { "chunks": [ { "__module__": "llama_stack.apis.inference.inference", @@ -16690,7 +16247,32 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "import pandas as pd\n# Load data\ndf = pd.read", + "tool_call": "import pandas as pd\nimport matplotlib.pyplot as plt\n\n# Load", + "type": "tool_call" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "in_progress" + }, + "tool_call": " data\ndf = pd.read_csv(\"", "type": "tool_call" }, "event_type": { @@ -16715,7 +16297,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "_csv(\"/var/folders/cz/vyh7y1d", + "tool_call": "inflation.csv\")\n\n# Convert date column to datetime\ndf", "type": "tool_call" }, "event_type": { @@ -16740,7 +16322,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "11xg881lsxsshnc5c0000gn/T", + "tool_call": "['date'] = pd.to_datetime(df['date'])\n\n# Group", "type": "tool_call" }, "event_type": { @@ -16765,7 +16347,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "/tmplr_wf0lb/p99E7wY2", + "tool_call": " by year and calculate average inflation\naverage_inflation = df.groupby", "type": "tool_call" }, "event_type": { @@ -16790,7 +16372,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "inflation.csv\")\n#", + "tool_call": "(df['date'].dt.year)['inflation'].mean()\n\n#", "type": "tool_call" }, "event_type": { @@ -16815,7 +16397,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": " Rows\nprint(\"Number of rows and columns in the", + "tool_call": " Plot average yearly inflation as a time series\nplt.figure(figsize=(", "type": "tool_call" }, "event_type": { @@ -16840,7 +16422,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": " data:\", df.shape)\n# Columns\nprint(\"Columns of", + "tool_call": "10,6))\nplt.plot(average_in", "type": "tool_call" }, "event_type": { @@ -16865,7 +16447,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": " the data are:\", len(df.columns))\n", + "tool_call": "flation.index, average_inflation.values, marker='o')\nplt", "type": "tool_call" }, "event_type": { @@ -16890,7 +16472,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "# Column names\nprint(\"Columns of", + "tool_call": ".title('Average Yearly Inflation')\nplt.xlabel('Year')\n", "type": "tool_call" }, "event_type": { @@ -16915,7 +16497,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": " the data are:\", df.columns)\n# Column dtypes\n", + "tool_call": "plt.ylabel('Average Inflation')\nplt.grid(True)\nplt.show", "type": "tool_call" }, "event_type": { @@ -16940,7 +16522,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "print(\"Datatype of the columns are:\", df.dtypes)", + "tool_call": "()", "type": "tool_call" }, "event_type": { @@ -16967,9 +16549,9 @@ }, "tool_call": { "arguments": { - "code": "import pandas as pd\n# Load data\ndf = pd.read_csv(\"/var/folders/cz/vyh7y1d11xg881lsxsshnc5c0000gn/T/tmplr_wf0lb/p99E7wY2inflation.csv\")\n# Rows\nprint(\"Number of rows and columns in the data:\", df.shape)\n# Columns\nprint(\"Columns of the data are:\", len(df.columns))\n# Column names\nprint(\"Columns of the data are:\", df.columns)\n# Column dtypes\nprint(\"Datatype of the columns are:\", df.dtypes)" + "code": "import pandas as pd\nimport matplotlib.pyplot as plt\n\n# Load data\ndf = pd.read_csv(\"inflation.csv\")\n\n# Convert date column to datetime\ndf['date'] = pd.to_datetime(df['date'])\n\n# Group by year and calculate average inflation\naverage_inflation = df.groupby(df['date'].dt.year)['inflation'].mean()\n\n# Plot average yearly inflation as a time series\nplt.figure(figsize=(10,6))\nplt.plot(average_inflation.index, average_inflation.values, marker='o')\nplt.title('Average Yearly Inflation')\nplt.xlabel('Year')\nplt.ylabel('Average Inflation')\nplt.grid(True)\nplt.show()" }, - "call_id": "1db58db0-92c5-4e65-8e83-631bef020ef4", + "call_id": "cfae3ff5-49f8-439d-b740-603bc93fb5a3", "tool_name": { "__enum__": "BuiltinTool", "__module__": "llama_stack.models.llama.datatypes", @@ -17021,16 +16603,16 @@ "provider_id": "fireworks" }, "metric": "prompt_tokens", - "span_id": "W_qnYIUI", + "span_id": "JNrmlTTc", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:47:29.106322+00:00", + "__datetime__": "2025-03-06T04:47:39.920493+00:00", "__module__": "datetime" }, - "trace_id": "RPZJ19J7SzaX6t6h", + "trace_id": "N2BeNv66RcO7NRuE", "type": "metric", "unit": "tokens", - "value": 36 + "value": 476 }, { "attributes": { @@ -17038,13 +16620,13 @@ "provider_id": "fireworks" }, "metric": "completion_tokens", - "span_id": "W_qnYIUI", + "span_id": "JNrmlTTc", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:47:29.106333+00:00", + "__datetime__": "2025-03-06T04:47:39.920519+00:00", "__module__": "datetime" }, - "trace_id": "RPZJ19J7SzaX6t6h", + "trace_id": "N2BeNv66RcO7NRuE", "type": "metric", "unit": "tokens", "value": 10 @@ -17055,16 +16637,16 @@ "provider_id": "fireworks" }, "metric": "total_tokens", - "span_id": "W_qnYIUI", + "span_id": "JNrmlTTc", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:47:29.106336+00:00", + "__datetime__": "2025-03-06T04:47:39.920522+00:00", "__module__": "datetime" }, - "trace_id": "RPZJ19J7SzaX6t6h", + "trace_id": "N2BeNv66RcO7NRuE", "type": "metric", "unit": "tokens", - "value": 46 + "value": 486 } ] } @@ -17072,7 +16654,7 @@ ], "type": "generator" }, - "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"I am attaching some documentation for Torchtune. Help me answer questions I will ask next.\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"query\": \"Torchtune documentation\"}, \"call_id\": \"\", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:8c1f5\\nContent: conversational data, :func:`~torchtune.datasets.chat_dataset` seems to be a good fit. For any\\ncustom local dataset we always need to specify ``source``, ``data_files``, and ``split`` for any dataset\\nbuilder in torchtune. For :func:`~torchtune.datasets.chat_dataset`, we additionally need to specify\\n``conversation_column`` and ``conversation_style``. Our data follows the ``\\\"sharegpt\\\"`` format, so\\nwe can specify that here. Altogether, our :func:`~torchtune.datasets.chat_dataset` call should\\nlook like so:\\n\\n.. code-block:: python\\n\\n from torchtune.datasets import chat_dataset\\n from torchtune.models.llama3 import llama3_tokenizer\\n\\n tokenizer = llama3_tokenizer(\\\"/tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\\")\\n ds = chat_dataset(\\n tokenizer=tokenizer,\\n source=\\\"json\\\",\\n data_files=\\\"data/my_data.json\\\",\\n split=\\\"train\\\",\\n conversation_column=\\\"dialogue\\\",\\n conversation_style=\\\"sharegpt\\\",\\n )\\n\\n.. code-block:: yaml\\n\\n # In config\\n tokenizer:\\n _component_: torchtune.models.llama3.llama3_tokenizer\\n path: /tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\n\\n dataset:\\n _component_: torchtune.datasets.chat_dataset\\n source: json\\n data_files: data/my_data.json\\n split: train\\n conversation_column: dialogue\\n conversation_style: sharegpt\\n\\n.. note::\\n You can pass in any keyword argument for `load_dataset `_ into all our\\n Dataset classes and they will honor them. This is useful for common parameters\\n such as specifying the data split with :code:`split` or configuration with\\n :code:`name`\\n\\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:13786\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 5:\\nDocument_id:f9c19\\nContent: etune\\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.use_dora=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n use_dora: True\\n\\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. You can also quantize the base model weights like in :ref:`glossary_qlora` by using ``quantize=True`` to reap\\neven more memory savings!\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.apply_lora_to_mlp=True \\\\\\n model.lora_attn_modules=[\\\"q_proj\\\",\\\"k_proj\\\",\\\"v_proj\\\"] \\\\\\n model.lora_rank=16 \\\\\\n model.lora_alpha=32 \\\\\\n model.use_dora=True \\\\\\n model.quantize_base=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n apply_lora_to_mlp: True\\n lora_attn_modules: [\\\"q_proj\\\", \\\"k_proj\\\", \\\"v_proj\\\"]\\n lora_rank: 16\\n lora_alpha: 32\\n use_dora: True\\n quantize_base: True\\n\\n\\n.. note::\\n\\n Under the hood, we've enabled DoRA by adding the :class:`~torchtune.modules.peft.DoRALinear` module, which we swap\\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\\n\\n.. _glossary_distrib:\\n\\n\\n.. TODO\\n\\n.. Distributed\\n.. -----------\\n\\n.. .. _glossary_fsdp:\\n\\n.. Fully Sharded Data Parallel (FSDP)\\n.. ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^\\n\\n.. All our ``_distributed`` recipes use `FSDP `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"END of knowledge_search tool results.\\n\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": \"knowledge_search\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"I'm ready to help you answer questions about Torchtune based on the documentation you provided. What's your first question?\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": []}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Tell me how to use LoRA\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"query\": \"How to use LoRA in Torchtune\"}, \"call_id\": \"\", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:13786\\nContent: .. _lora_finetune_label:\\n\\n============================\\nFine-Tuning Llama2 with LoRA\\n============================\\n\\nThis guide will teach you about `LoRA `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW ` alone will not handle the definition of which parameters are trainable.\\n See :ref:`below` for how to do this.\\n\\nLet's inspect each of these models a bit more closely.\\n\\n.. code-block:: bash\\n\\n # Print the first layer's self-attention in the usual Llama2 model\\n >>> print(base_model.layers[0].attn)\\n MultiHeadAttention(\\n (q_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (k_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (v_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (output_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (pos_embeddings): RotaryPositionalEmbeddings()\\n )\\n\\n # Print the same for Llama2 with LoRA weights\\n >>> print(lora_model.layers[0].attn)\\n MultiHeadAttention(\\n (q_proj): LoRALinear(\\n (dropout): Dropout(p=0.0, inplace=False)\\n \\n\", \"type\": \"text\"}, {\"text\": \"Result 3:\\nDocument_id:13786\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:13786\\nContent: from our Llama2\\nmodel without any wrappers or custom checkpoint conversion logic.\\n\\n.. code-block:: python\\n\\n # Assuming that base_model already has the pretrained Llama2 weights,\\n # this will directly load them into your LoRA model without any conversion necessary.\\n lora_model.load_state_dict(base_model.state_dict(), strict=False)\\n\\n.. note::\\n Whenever loading weights with :code:`strict=False`, you should verify that any missing or extra keys in\\n the loaded :code:`state_dict` are as expected. torchtune's LoRA recipes do this by default via\\n :func:`validate_missing_and_unexpected_for_lora() `.\\n\\nOnce we've loaded the base model weights, we also want to set only LoRA parameters to trainable.\\n\\n.. _setting_trainable_params:\\n\\n.. code-block:: python\\n\\n from torchtune.modules.peft.peft_utils import get_adapter_params, set_trainable_params\\n\\n # Fetch all params from the model that are associated with LoRA.\\n lora_params = get_adapter_params(lora_model)\\n\\n # Set requires_grad=True on lora_params, and requires_grad=False on all others.\\n set_trainable_params(lora_model, lora_params)\\n\\n # Print the total number of parameters\\n total_params = sum([p.numel() for p in lora_model.parameters()])\\n trainable_params = sum([p.numel() for p in lora_model.parameters() if p.requires_grad])\\n print(\\n f\\\"\\\"\\\"\\n {total_params} total params,\\n {trainable_params}\\\" trainable params,\\n {(100.0 * trainable_params / total_params):.2f}% of all params are trainable.\\n \\\"\\\"\\\"\\n )\\n\\n 6742609920 total params,\\n 4194304 trainable params,\\n 0.06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe \"\\nYou can use code_interpreter to load and inspect it.\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"code\": \"import pandas as pd\\n# Load data\\ndf = pd.read_csv(\\\"\")\\n# Rows\\nprint(\\\"Number of rows and columns in the data:\\\", df.shape)\\n# Columns\\nprint(\\\"Columns of the data are:\\\", len(df.columns))\\n# Column names\\nprint(\\\"Columns of the data are:\\\", df.columns)\\n# Column dtypes\\nprint(\\\"Datatype of the columns are:\\\", df.dtypes)\"}, \"call_id\": \"\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": \"completed\\n[stderr]\\nTraceback (most recent call last):\\n line 5, in \\n from bwrap.core import main\\nModuleNotFoundError: No module named 'bwrap.core'\\n[/stderr]\", \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Execute code\", \"parameters\": {\"code\": {\"default\": null, \"description\": \"The code to execute\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]}]": { "chunks": [ { "__module__": "llama_stack.apis.inference.inference", @@ -17100,7 +16682,7 @@ "data": { "event": { "delta": { - "text": "To", + "text": "It", "type": "text" }, "event_type": { @@ -17120,7 +16702,7 @@ "data": { "event": { "delta": { - "text": " use LoRA in Torchtune, you can", + "text": " seems that the file \"/var/folders/cz/vyh7y1", "type": "text" }, "event_type": { @@ -17140,7 +16722,7 @@ "data": { "event": { "delta": { - "text": " follow these steps:\n\n1. Install", + "text": "d11xg881lsxsshnc5c0000gn/T/t", "type": "text" }, "event_type": { @@ -17160,7 +16742,7 @@ "data": { "event": { "delta": { - "text": " Torchtune and its dependencies.\n2", + "text": "mpr3640a7b/Y5UaJew2inflation", "type": "text" }, "event_type": { @@ -17180,7 +16762,7 @@ "data": { "event": { "delta": { - "text": ". Download the Llama2 weights and tokenizer.\n3.", + "text": ".csv\" does not exist. \n\nTo describe the csv file, you need", "type": "text" }, "event_type": { @@ -17200,7 +16782,7 @@ "data": { "event": { "delta": { - "text": " Use the `lora_llama2_7b`", + "text": " to provide the actual file path or the file itself. If the file is", "type": "text" }, "event_type": { @@ -17220,7 +16802,7 @@ "data": { "event": { "delta": { - "text": " model in Torchtune, which applies", + "text": " in your current directory, you can use the following code:\n\n```python\n", "type": "text" }, "event_type": { @@ -17240,7 +16822,7 @@ "data": { "event": { "delta": { - "text": " LoRA to the Q and V projections by default.\n4.", + "text": "import pandas as pd\n# Load data\n", "type": "text" }, "event_type": { @@ -17260,7 +16842,7 @@ "data": { "event": { "delta": { - "text": " Load the base model weights into the LoRA model without any", + "text": "df = pd.read_csv('inflation.csv')\n# Print", "type": "text" }, "event_type": { @@ -17280,7 +16862,7 @@ "data": { "event": { "delta": { - "text": " conversion necessary.\n5. Set only LoRA parameters to", + "text": " the first 5 rows of the dataframe\nprint(df.head())\n# Print the", "type": "text" }, "event_type": { @@ -17300,7 +16882,7 @@ "data": { "event": { "delta": { - "text": " trainable.\n6. Run the LoRA finetuning recipe", + "text": " summary of the dataframe\nprint(df.info())\nprint(df.describe())\n```\n\n", "type": "text" }, "event_type": { @@ -17320,7 +16902,7 @@ "data": { "event": { "delta": { - "text": " in Torchtune with the desired configuration.\n\nYou can also experiment", + "text": "This will print the first 5 rows of the dataframe, the summary of", "type": "text" }, "event_type": { @@ -17340,7 +16922,7 @@ "data": { "event": { "delta": { - "text": " with different LoRA configurations, such as applying LoRA to all", + "text": " the dataframe (including the index dtype and column count), and the description of", "type": "text" }, "event_type": { @@ -17360,7 +16942,7 @@ "data": { "event": { "delta": { - "text": " linear layers in the self-attention, increasing the rank, or", + "text": " the dataframe (including count, mean, std, min, 25%,", "type": "text" }, "event_type": { @@ -17380,7 +16962,7 @@ "data": { "event": { "delta": { - "text": " scaling alpha and rank together.\n\nBy following these steps,", + "text": " 50%, 75%, max for each column).", "type": "text" }, "event_type": { @@ -17400,33 +16982,42 @@ "data": { "event": { "delta": { - "text": " you can use LoRA in Torchtune to", + "text": "", "type": "text" }, "event_type": { "__enum__": "ChatCompletionResponseEventType", "__module__": "llama_stack.apis.inference.inference", - "value": "progress" + "value": "complete" }, "logprobs": null, - "stop_reason": null + "stop_reason": { + "__enum__": "StopReason", + "__module__": "llama_stack.models.llama.datatypes", + "value": "end_of_turn" + } }, "metrics": null } - }, + } + ], + "type": "generator" + }, + "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Here is a csv, can you describe it?\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"# User provided a file accessible to you at \\\"\"\\nYou can use code_interpreter to load and inspect it.\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": {\"__enum__\": \"BuiltinTool\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"code_interpreter\"}}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": 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"ChatCompletionResponseEventType", "__module__": "llama_stack.apis.inference.inference", - "value": "progress" + "value": "start" }, "logprobs": null, "stop_reason": null @@ -17440,8 +17031,2366 @@ "data": { "event": { "delta": { - "text": " low memory footprint and achieve good performance.", - "type": "text" + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "started" + }, + "tool_call": "", + "type": "tool_call" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": 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+ "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "in_progress" + }, + "tool_call": "/Y5UaJew2", + "type": "tool_call" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "in_progress" + }, + "tool_call": "inflation.csv\")\n# Rows\nprint(\"", + "type": "tool_call" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "in_progress" + }, + "tool_call": "Number of rows and columns in the", + "type": "tool_call" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "in_progress" + }, + "tool_call": " data:\", df.shape)\n# Columns\nprint", + "type": "tool_call" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "in_progress" + }, + "tool_call": "(\"Columns of the data are:\", len", + "type": "tool_call" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "in_progress" + }, + "tool_call": "(df.columns))\n# Column names\nprint(\"", + "type": "tool_call" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "in_progress" + }, + "tool_call": "Columns of the data are:\", df.columns)\n# Column dtypes\n", + "type": "tool_call" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "in_progress" + }, + "tool_call": "print(\"Datatype of the columns are:\",", + "type": "tool_call" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } 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pd.read_csv(\"/var/folders/cz/vyh7y1d11xg881lsxsshnc5c0000gn/T/tmpr3640a7b/Y5UaJew2inflation.csv\")\n# Rows\nprint(\"Number of rows and columns in the data:\", df.shape)\n# Columns\nprint(\"Columns of the data are:\", len(df.columns))\n# Column names\nprint(\"Columns of the data are:\", df.columns)\n# Column dtypes\nprint(\"Datatype of the columns are:\", df.dtypes)" + }, + "call_id": "c18dbae3-9ce0-4914-8062-20a3987959e4", + "tool_name": { + "__enum__": "BuiltinTool", + "__module__": "llama_stack.models.llama.datatypes", + "value": "code_interpreter" + } + }, + "type": "tool_call" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": { + "__enum__": "StopReason", + "__module__": "llama_stack.models.llama.datatypes", + "value": "end_of_turn" + } + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": "", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "complete" + }, + "logprobs": null, + "stop_reason": { + "__enum__": "StopReason", + "__module__": "llama_stack.models.llama.datatypes", + "value": "end_of_turn" + } + }, + "metrics": null + } + } + ], + "type": "generator" + }, + "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"I am attaching some documentation for Torchtune. Help me answer questions I will ask next.\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"query\": \"Torchtune documentation\"}, \"call_id\": \"\", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:2a4c4\\nContent: conversational data, :func:`~torchtune.datasets.chat_dataset` seems to be a good fit. For any\\ncustom local dataset we always need to specify ``source``, ``data_files``, and ``split`` for any dataset\\nbuilder in torchtune. For :func:`~torchtune.datasets.chat_dataset`, we additionally need to specify\\n``conversation_column`` and ``conversation_style``. Our data follows the ``\\\"sharegpt\\\"`` format, so\\nwe can specify that here. Altogether, our :func:`~torchtune.datasets.chat_dataset` call should\\nlook like so:\\n\\n.. code-block:: python\\n\\n from torchtune.datasets import chat_dataset\\n from torchtune.models.llama3 import llama3_tokenizer\\n\\n tokenizer = llama3_tokenizer(\\\"/tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\\")\\n ds = chat_dataset(\\n tokenizer=tokenizer,\\n source=\\\"json\\\",\\n data_files=\\\"data/my_data.json\\\",\\n split=\\\"train\\\",\\n conversation_column=\\\"dialogue\\\",\\n conversation_style=\\\"sharegpt\\\",\\n )\\n\\n.. code-block:: yaml\\n\\n # In config\\n tokenizer:\\n _component_: torchtune.models.llama3.llama3_tokenizer\\n path: /tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\n\\n dataset:\\n _component_: torchtune.datasets.chat_dataset\\n source: json\\n data_files: data/my_data.json\\n split: train\\n conversation_column: dialogue\\n conversation_style: sharegpt\\n\\n.. note::\\n You can pass in any keyword argument for `load_dataset `_ into all our\\n Dataset classes and they will honor them. This is useful for common parameters\\n such as specifying the data split with :code:`split` or configuration with\\n :code:`name`\\n\\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:d4e29\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 5:\\nDocument_id:d68cc\\nContent: etune\\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.use_dora=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n use_dora: True\\n\\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. You can also quantize the base model weights like in :ref:`glossary_qlora` by using ``quantize=True`` to reap\\neven more memory savings!\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.apply_lora_to_mlp=True \\\\\\n model.lora_attn_modules=[\\\"q_proj\\\",\\\"k_proj\\\",\\\"v_proj\\\"] \\\\\\n model.lora_rank=16 \\\\\\n model.lora_alpha=32 \\\\\\n model.use_dora=True \\\\\\n model.quantize_base=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n apply_lora_to_mlp: True\\n lora_attn_modules: [\\\"q_proj\\\", \\\"k_proj\\\", \\\"v_proj\\\"]\\n lora_rank: 16\\n lora_alpha: 32\\n use_dora: True\\n quantize_base: True\\n\\n\\n.. note::\\n\\n Under the hood, we've enabled DoRA by adding the :class:`~torchtune.modules.peft.DoRALinear` module, which we swap\\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\\n\\n.. _glossary_distrib:\\n\\n\\n.. TODO\\n\\n.. Distributed\\n.. -----------\\n\\n.. .. _glossary_fsdp:\\n\\n.. Fully Sharded Data Parallel (FSDP)\\n.. ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^\\n\\n.. All our ``_distributed`` recipes use `FSDP `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"END of knowledge_search tool results.\\n\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": \"knowledge_search\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"I'm ready to help you answer questions about Torchtune based on the documentation you provided. What's your first question?\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": []}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Tell me how to use LoRA\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"query\": \"How to use LoRA in Torchtune\"}, \"call_id\": \"\", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:d4e29\\nContent: .. _lora_finetune_label:\\n\\n============================\\nFine-Tuning Llama2 with LoRA\\n============================\\n\\nThis guide will teach you about `LoRA `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW ` alone will not handle the definition of which parameters are trainable.\\n See :ref:`below` for how to do this.\\n\\nLet's inspect each of these models a bit more closely.\\n\\n.. code-block:: bash\\n\\n # Print the first layer's self-attention in the usual Llama2 model\\n >>> print(base_model.layers[0].attn)\\n MultiHeadAttention(\\n (q_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (k_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (v_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (output_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (pos_embeddings): RotaryPositionalEmbeddings()\\n )\\n\\n # Print the same for Llama2 with LoRA weights\\n >>> print(lora_model.layers[0].attn)\\n MultiHeadAttention(\\n (q_proj): LoRALinear(\\n (dropout): Dropout(p=0.0, inplace=False)\\n \\n\", \"type\": \"text\"}, {\"text\": \"Result 3:\\nDocument_id:d4e29\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:d4e29\\nContent: from our Llama2\\nmodel without any wrappers or custom checkpoint conversion logic.\\n\\n.. code-block:: python\\n\\n # Assuming that base_model already has the pretrained Llama2 weights,\\n # this will directly load them into your LoRA model without any conversion necessary.\\n lora_model.load_state_dict(base_model.state_dict(), strict=False)\\n\\n.. note::\\n Whenever loading weights with :code:`strict=False`, you should verify that any missing or extra keys in\\n the loaded :code:`state_dict` are as expected. torchtune's LoRA recipes do this by default via\\n :func:`validate_missing_and_unexpected_for_lora() `.\\n\\nOnce we've loaded the base model weights, we also want to set only LoRA parameters to trainable.\\n\\n.. _setting_trainable_params:\\n\\n.. code-block:: python\\n\\n from torchtune.modules.peft.peft_utils import get_adapter_params, set_trainable_params\\n\\n # Fetch all params from the model that are associated with LoRA.\\n lora_params = get_adapter_params(lora_model)\\n\\n # Set requires_grad=True on lora_params, and requires_grad=False on all others.\\n set_trainable_params(lora_model, lora_params)\\n\\n # Print the total number of parameters\\n total_params = sum([p.numel() for p in lora_model.parameters()])\\n trainable_params = sum([p.numel() for p in lora_model.parameters() if p.requires_grad])\\n print(\\n f\\\"\\\"\\\"\\n {total_params} total params,\\n {trainable_params}\\\" trainable params,\\n {(100.0 * trainable_params / total_params):.2f}% of all params are trainable.\\n \\\"\\\"\\\"\\n )\\n\\n 6742609920 total params,\\n 4194304 trainable params,\\n 0.06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe \", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:2a4c4\\nContent: conversational data, :func:`~torchtune.datasets.chat_dataset` seems to be a good fit. For any\\ncustom local dataset we always need to specify ``source``, ``data_files``, and ``split`` for any dataset\\nbuilder in torchtune. For :func:`~torchtune.datasets.chat_dataset`, we additionally need to specify\\n``conversation_column`` and ``conversation_style``. Our data follows the ``\\\"sharegpt\\\"`` format, so\\nwe can specify that here. Altogether, our :func:`~torchtune.datasets.chat_dataset` call should\\nlook like so:\\n\\n.. code-block:: python\\n\\n from torchtune.datasets import chat_dataset\\n from torchtune.models.llama3 import llama3_tokenizer\\n\\n tokenizer = llama3_tokenizer(\\\"/tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\\")\\n ds = chat_dataset(\\n tokenizer=tokenizer,\\n source=\\\"json\\\",\\n data_files=\\\"data/my_data.json\\\",\\n split=\\\"train\\\",\\n conversation_column=\\\"dialogue\\\",\\n conversation_style=\\\"sharegpt\\\",\\n )\\n\\n.. code-block:: yaml\\n\\n # In config\\n tokenizer:\\n _component_: torchtune.models.llama3.llama3_tokenizer\\n path: /tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\n\\n dataset:\\n _component_: torchtune.datasets.chat_dataset\\n source: json\\n data_files: data/my_data.json\\n split: train\\n conversation_column: dialogue\\n conversation_style: sharegpt\\n\\n.. note::\\n You can pass in any keyword argument for `load_dataset `_ into all our\\n Dataset classes and they will honor them. This is useful for common parameters\\n such as specifying the data split with :code:`split` or configuration with\\n :code:`name`\\n\\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:d4e29\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 5:\\nDocument_id:d68cc\\nContent: etune\\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.use_dora=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n use_dora: True\\n\\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. 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For any\\ncustom local dataset we always need to specify ``source``, ``data_files``, and ``split`` for any dataset\\nbuilder in torchtune. For :func:`~torchtune.datasets.chat_dataset`, we additionally need to specify\\n``conversation_column`` and ``conversation_style``. Our data follows the ``\\\"sharegpt\\\"`` format, so\\nwe can specify that here. 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This is useful for common parameters\\n such as specifying the data split with :code:`split` or configuration with\\n :code:`name`\\n\\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. 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Altogether, our :func:`~torchtune.datasets.chat_dataset` call should\\nlook like so:\\n\\n.. code-block:: python\\n\\n from torchtune.datasets import chat_dataset\\n from torchtune.models.llama3 import llama3_tokenizer\\n\\n tokenizer = llama3_tokenizer(\\\"/tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\\")\\n ds = chat_dataset(\\n tokenizer=tokenizer,\\n source=\\\"json\\\",\\n data_files=\\\"data/my_data.json\\\",\\n split=\\\"train\\\",\\n conversation_column=\\\"dialogue\\\",\\n conversation_style=\\\"sharegpt\\\",\\n )\\n\\n.. code-block:: yaml\\n\\n # In config\\n tokenizer:\\n _component_: torchtune.models.llama3.llama3_tokenizer\\n path: /tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\n\\n dataset:\\n _component_: torchtune.datasets.chat_dataset\\n source: json\\n data_files: data/my_data.json\\n split: train\\n conversation_column: dialogue\\n conversation_style: sharegpt\\n\\n.. note::\\n You can pass in any keyword argument for `load_dataset `_ into all our\\n Dataset classes and they will honor them. This is useful for common parameters\\n such as specifying the data split with :code:`split` or configuration with\\n :code:`name`\\n\\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:13786\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 5:\\nDocument_id:f9c19\\nContent: etune\\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.use_dora=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n use_dora: True\\n\\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. You can also quantize the base model weights like in :ref:`glossary_qlora` by using ``quantize=True`` to reap\\neven more memory savings!\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.apply_lora_to_mlp=True \\\\\\n model.lora_attn_modules=[\\\"q_proj\\\",\\\"k_proj\\\",\\\"v_proj\\\"] \\\\\\n model.lora_rank=16 \\\\\\n model.lora_alpha=32 \\\\\\n model.use_dora=True \\\\\\n model.quantize_base=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n apply_lora_to_mlp: True\\n lora_attn_modules: [\\\"q_proj\\\", \\\"k_proj\\\", \\\"v_proj\\\"]\\n lora_rank: 16\\n lora_alpha: 32\\n use_dora: True\\n quantize_base: True\\n\\n\\n.. note::\\n\\n Under the hood, we've enabled DoRA by adding the :class:`~torchtune.modules.peft.DoRALinear` module, which we swap\\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\\n\\n.. _glossary_distrib:\\n\\n\\n.. TODO\\n\\n.. Distributed\\n.. -----------\\n\\n.. .. _glossary_fsdp:\\n\\n.. Fully Sharded Data Parallel (FSDP)\\n.. ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^\\n\\n.. All our ``_distributed`` recipes use `FSDP `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"END of knowledge_search tool results.\\n\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": \"knowledge_search\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"I'm ready to help you answer questions about Torchtune based on the documentation you provided. What's your first question?\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": []}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Tell me how to use LoRA\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"query\": \"How to use LoRA in Torchtune\"}, \"call_id\": \"\", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:13786\\nContent: .. _lora_finetune_label:\\n\\n============================\\nFine-Tuning Llama2 with LoRA\\n============================\\n\\nThis guide will teach you about `LoRA `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW ` alone will not handle the definition of which parameters are trainable.\\n See :ref:`below` for how to do this.\\n\\nLet's inspect each of these models a bit more closely.\\n\\n.. code-block:: bash\\n\\n # Print the first layer's self-attention in the usual Llama2 model\\n >>> print(base_model.layers[0].attn)\\n MultiHeadAttention(\\n (q_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (k_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (v_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (output_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (pos_embeddings): RotaryPositionalEmbeddings()\\n )\\n\\n # Print the same for Llama2 with LoRA weights\\n >>> print(lora_model.layers[0].attn)\\n MultiHeadAttention(\\n (q_proj): LoRALinear(\\n (dropout): Dropout(p=0.0, inplace=False)\\n \\n\", \"type\": \"text\"}, {\"text\": \"Result 3:\\nDocument_id:13786\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:13786\\nContent: from our Llama2\\nmodel without any wrappers or custom checkpoint conversion logic.\\n\\n.. code-block:: python\\n\\n # Assuming that base_model already has the pretrained Llama2 weights,\\n # this will directly load them into your LoRA model without any conversion necessary.\\n lora_model.load_state_dict(base_model.state_dict(), strict=False)\\n\\n.. note::\\n Whenever loading weights with :code:`strict=False`, you should verify that any missing or extra keys in\\n the loaded :code:`state_dict` are as expected. torchtune's LoRA recipes do this by default via\\n :func:`validate_missing_and_unexpected_for_lora() `.\\n\\nOnce we've loaded the base model weights, we also want to set only LoRA parameters to trainable.\\n\\n.. _setting_trainable_params:\\n\\n.. code-block:: python\\n\\n from torchtune.modules.peft.peft_utils import get_adapter_params, set_trainable_params\\n\\n # Fetch all params from the model that are associated with LoRA.\\n lora_params = get_adapter_params(lora_model)\\n\\n # Set requires_grad=True on lora_params, and requires_grad=False on all others.\\n set_trainable_params(lora_model, lora_params)\\n\\n # Print the total number of parameters\\n total_params = sum([p.numel() for p in lora_model.parameters()])\\n trainable_params = sum([p.numel() for p in lora_model.parameters() if p.requires_grad])\\n print(\\n f\\\"\\\"\\\"\\n {total_params} total params,\\n {trainable_params}\\\" trainable params,\\n {(100.0 * trainable_params / total_params):.2f}% of all params are trainable.\\n \\\"\\\"\\\"\\n )\\n\\n 6742609920 total params,\\n 4194304 trainable params,\\n 0.06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe \", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:8c1f5\\nContent: conversational data, :func:`~torchtune.datasets.chat_dataset` seems to be a good fit. For any\\ncustom local dataset we always need to specify ``source``, ``data_files``, and ``split`` for any dataset\\nbuilder in torchtune. For :func:`~torchtune.datasets.chat_dataset`, we additionally need to specify\\n``conversation_column`` and ``conversation_style``. Our data follows the ``\\\"sharegpt\\\"`` format, so\\nwe can specify that here. Altogether, our :func:`~torchtune.datasets.chat_dataset` call should\\nlook like so:\\n\\n.. code-block:: python\\n\\n from torchtune.datasets import chat_dataset\\n from torchtune.models.llama3 import llama3_tokenizer\\n\\n tokenizer = llama3_tokenizer(\\\"/tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\\")\\n ds = chat_dataset(\\n tokenizer=tokenizer,\\n source=\\\"json\\\",\\n data_files=\\\"data/my_data.json\\\",\\n split=\\\"train\\\",\\n conversation_column=\\\"dialogue\\\",\\n conversation_style=\\\"sharegpt\\\",\\n )\\n\\n.. code-block:: yaml\\n\\n # In config\\n tokenizer:\\n _component_: torchtune.models.llama3.llama3_tokenizer\\n path: /tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\n\\n dataset:\\n _component_: torchtune.datasets.chat_dataset\\n source: json\\n data_files: data/my_data.json\\n split: train\\n conversation_column: dialogue\\n conversation_style: sharegpt\\n\\n.. note::\\n You can pass in any keyword argument for `load_dataset `_ into all our\\n Dataset classes and they will honor them. This is useful for common parameters\\n such as specifying the data split with :code:`split` or configuration with\\n :code:`name`\\n\\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:13786\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 5:\\nDocument_id:f9c19\\nContent: etune\\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.use_dora=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n use_dora: True\\n\\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. You can also quantize the base model weights like in :ref:`glossary_qlora` by using ``quantize=True`` to reap\\neven more memory savings!\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.apply_lora_to_mlp=True \\\\\\n model.lora_attn_modules=[\\\"q_proj\\\",\\\"k_proj\\\",\\\"v_proj\\\"] \\\\\\n model.lora_rank=16 \\\\\\n model.lora_alpha=32 \\\\\\n model.use_dora=True \\\\\\n model.quantize_base=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n apply_lora_to_mlp: True\\n lora_attn_modules: [\\\"q_proj\\\", \\\"k_proj\\\", \\\"v_proj\\\"]\\n lora_rank: 16\\n lora_alpha: 32\\n use_dora: True\\n quantize_base: True\\n\\n\\n.. note::\\n\\n Under the hood, we've enabled DoRA by adding the :class:`~torchtune.modules.peft.DoRALinear` module, which we swap\\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\\n\\n.. _glossary_distrib:\\n\\n\\n.. 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Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. 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Altogether, our :func:`~torchtune.datasets.chat_dataset` call should\\nlook like so:\\n\\n.. code-block:: python\\n\\n from torchtune.datasets import chat_dataset\\n from torchtune.models.llama3 import llama3_tokenizer\\n\\n tokenizer = llama3_tokenizer(\\\"/tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\\")\\n ds = chat_dataset(\\n tokenizer=tokenizer,\\n source=\\\"json\\\",\\n data_files=\\\"data/my_data.json\\\",\\n split=\\\"train\\\",\\n conversation_column=\\\"dialogue\\\",\\n conversation_style=\\\"sharegpt\\\",\\n )\\n\\n.. code-block:: yaml\\n\\n # In config\\n tokenizer:\\n _component_: torchtune.models.llama3.llama3_tokenizer\\n path: /tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\n\\n dataset:\\n _component_: torchtune.datasets.chat_dataset\\n source: json\\n data_files: data/my_data.json\\n split: train\\n conversation_column: dialogue\\n conversation_style: sharegpt\\n\\n.. note::\\n You can pass in any keyword argument for `load_dataset `_ into all our\\n Dataset classes and they will honor them. This is useful for common parameters\\n such as specifying the data split with :code:`split` or configuration with\\n :code:`name`\\n\\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:1b69d\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 5:\\nDocument_id:deca9\\nContent: etune\\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.use_dora=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n use_dora: True\\n\\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. You can also quantize the base model weights like in :ref:`glossary_qlora` by using ``quantize=True`` to reap\\neven more memory savings!\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.apply_lora_to_mlp=True \\\\\\n model.lora_attn_modules=[\\\"q_proj\\\",\\\"k_proj\\\",\\\"v_proj\\\"] \\\\\\n model.lora_rank=16 \\\\\\n model.lora_alpha=32 \\\\\\n model.use_dora=True \\\\\\n model.quantize_base=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n apply_lora_to_mlp: True\\n lora_attn_modules: [\\\"q_proj\\\", \\\"k_proj\\\", \\\"v_proj\\\"]\\n lora_rank: 16\\n lora_alpha: 32\\n use_dora: True\\n quantize_base: True\\n\\n\\n.. note::\\n\\n Under the hood, we've enabled DoRA by adding the :class:`~torchtune.modules.peft.DoRALinear` module, which we swap\\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\\n\\n.. _glossary_distrib:\\n\\n\\n.. TODO\\n\\n.. Distributed\\n.. -----------\\n\\n.. .. _glossary_fsdp:\\n\\n.. Fully Sharded Data Parallel (FSDP)\\n.. ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^\\n\\n.. All our ``_distributed`` recipes use `FSDP `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"END of knowledge_search tool results.\\n\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": \"knowledge_search\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"I'm ready to help you answer questions about Torchtune based on the documentation you provided. What's your first question?\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": []}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Tell me how to use LoRA\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"query\": \"How to use LoRA in Torchtune\"}, \"call_id\": \"\", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:1b69d\\nContent: .. _lora_finetune_label:\\n\\n============================\\nFine-Tuning Llama2 with LoRA\\n============================\\n\\nThis guide will teach you about `LoRA `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW ` alone will not handle the definition of which parameters are trainable.\\n See :ref:`below` for how to do this.\\n\\nLet's inspect each of these models a bit more closely.\\n\\n.. code-block:: bash\\n\\n # Print the first layer's self-attention in the usual Llama2 model\\n >>> print(base_model.layers[0].attn)\\n MultiHeadAttention(\\n (q_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (k_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (v_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (output_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (pos_embeddings): RotaryPositionalEmbeddings()\\n )\\n\\n # Print the same for Llama2 with LoRA weights\\n >>> print(lora_model.layers[0].attn)\\n MultiHeadAttention(\\n (q_proj): LoRALinear(\\n (dropout): Dropout(p=0.0, inplace=False)\\n \\n\", \"type\": \"text\"}, {\"text\": \"Result 3:\\nDocument_id:1b69d\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:1b69d\\nContent: from our Llama2\\nmodel without any wrappers or custom checkpoint conversion logic.\\n\\n.. code-block:: python\\n\\n # Assuming that base_model already has the pretrained Llama2 weights,\\n # this will directly load them into your LoRA model without any conversion necessary.\\n lora_model.load_state_dict(base_model.state_dict(), strict=False)\\n\\n.. note::\\n Whenever loading weights with :code:`strict=False`, you should verify that any missing or extra keys in\\n the loaded :code:`state_dict` are as expected. torchtune's LoRA recipes do this by default via\\n :func:`validate_missing_and_unexpected_for_lora() `.\\n\\nOnce we've loaded the base model weights, we also want to set only LoRA parameters to trainable.\\n\\n.. _setting_trainable_params:\\n\\n.. code-block:: python\\n\\n from torchtune.modules.peft.peft_utils import get_adapter_params, set_trainable_params\\n\\n # Fetch all params from the model that are associated with LoRA.\\n lora_params = get_adapter_params(lora_model)\\n\\n # Set requires_grad=True on lora_params, and requires_grad=False on all others.\\n set_trainable_params(lora_model, lora_params)\\n\\n # Print the total number of parameters\\n total_params = sum([p.numel() for p in lora_model.parameters()])\\n trainable_params = sum([p.numel() for p in lora_model.parameters() if p.requires_grad])\\n print(\\n f\\\"\\\"\\\"\\n {total_params} total params,\\n {trainable_params}\\\" trainable params,\\n {(100.0 * trainable_params / total_params):.2f}% of all params are trainable.\\n \\\"\\\"\\\"\\n )\\n\\n 6742609920 total params,\\n 4194304 trainable params,\\n 0.06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe \", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:8c1f5\\nContent: conversational data, :func:`~torchtune.datasets.chat_dataset` seems to be a good fit. For any\\ncustom local dataset we always need to specify ``source``, ``data_files``, and ``split`` for any dataset\\nbuilder in torchtune. For :func:`~torchtune.datasets.chat_dataset`, we additionally need to specify\\n``conversation_column`` and ``conversation_style``. Our data follows the ``\\\"sharegpt\\\"`` format, so\\nwe can specify that here. Altogether, our :func:`~torchtune.datasets.chat_dataset` call should\\nlook like so:\\n\\n.. code-block:: python\\n\\n from torchtune.datasets import chat_dataset\\n from torchtune.models.llama3 import llama3_tokenizer\\n\\n tokenizer = llama3_tokenizer(\\\"/tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\\")\\n ds = chat_dataset(\\n tokenizer=tokenizer,\\n source=\\\"json\\\",\\n data_files=\\\"data/my_data.json\\\",\\n split=\\\"train\\\",\\n conversation_column=\\\"dialogue\\\",\\n conversation_style=\\\"sharegpt\\\",\\n )\\n\\n.. code-block:: yaml\\n\\n # In config\\n tokenizer:\\n _component_: torchtune.models.llama3.llama3_tokenizer\\n path: /tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\n\\n dataset:\\n _component_: torchtune.datasets.chat_dataset\\n source: json\\n data_files: data/my_data.json\\n split: train\\n conversation_column: dialogue\\n conversation_style: sharegpt\\n\\n.. note::\\n You can pass in any keyword argument for `load_dataset `_ into all our\\n Dataset classes and they will honor them. This is useful for common parameters\\n such as specifying the data split with :code:`split` or configuration with\\n :code:`name`\\n\\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:13786\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 5:\\nDocument_id:f9c19\\nContent: etune\\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.use_dora=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n use_dora: True\\n\\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. You can also quantize the base model weights like in :ref:`glossary_qlora` by using ``quantize=True`` to reap\\neven more memory savings!\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.apply_lora_to_mlp=True \\\\\\n model.lora_attn_modules=[\\\"q_proj\\\",\\\"k_proj\\\",\\\"v_proj\\\"] \\\\\\n model.lora_rank=16 \\\\\\n model.lora_alpha=32 \\\\\\n model.use_dora=True \\\\\\n model.quantize_base=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n apply_lora_to_mlp: True\\n lora_attn_modules: [\\\"q_proj\\\", \\\"k_proj\\\", \\\"v_proj\\\"]\\n lora_rank: 16\\n lora_alpha: 32\\n use_dora: True\\n quantize_base: True\\n\\n\\n.. note::\\n\\n Under the hood, we've enabled DoRA by adding the :class:`~torchtune.modules.peft.DoRALinear` module, which we swap\\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\\n\\n.. _glossary_distrib:\\n\\n\\n.. TODO\\n\\n.. Distributed\\n.. -----------\\n\\n.. .. _glossary_fsdp:\\n\\n.. Fully Sharded Data Parallel (FSDP)\\n.. ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^\\n\\n.. All our ``_distributed`` recipes use `FSDP `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"END of knowledge_search tool results.\\n\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": \"knowledge_search\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"I'm ready to help you answer questions about Torchtune based on the documentation you provided. What's your first question?\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": []}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Tell me how to use LoRA\", \"context\": null, \"role\": \"user\"}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Search for information in a database.\", \"parameters\": {\"query\": {\"default\": null, \"description\": \"The query to search for. Can be a natural language sentence or keywords.\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": \"knowledge_search\"}}]}]": { + "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"I am attaching some documentation for Torchtune. Help me answer questions I will ask next.\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"query\": \"Torchtune documentation\"}, \"call_id\": \"\", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:b222e\\nContent: conversational data, :func:`~torchtune.datasets.chat_dataset` seems to be a good fit. For any\\ncustom local dataset we always need to specify ``source``, ``data_files``, and ``split`` for any dataset\\nbuilder in torchtune. For :func:`~torchtune.datasets.chat_dataset`, we additionally need to specify\\n``conversation_column`` and ``conversation_style``. Our data follows the ``\\\"sharegpt\\\"`` format, so\\nwe can specify that here. Altogether, our :func:`~torchtune.datasets.chat_dataset` call should\\nlook like so:\\n\\n.. code-block:: python\\n\\n from torchtune.datasets import chat_dataset\\n from torchtune.models.llama3 import llama3_tokenizer\\n\\n tokenizer = llama3_tokenizer(\\\"/tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\\")\\n ds = chat_dataset(\\n tokenizer=tokenizer,\\n source=\\\"json\\\",\\n data_files=\\\"data/my_data.json\\\",\\n split=\\\"train\\\",\\n conversation_column=\\\"dialogue\\\",\\n conversation_style=\\\"sharegpt\\\",\\n )\\n\\n.. code-block:: yaml\\n\\n # In config\\n tokenizer:\\n _component_: torchtune.models.llama3.llama3_tokenizer\\n path: /tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\n\\n dataset:\\n _component_: torchtune.datasets.chat_dataset\\n source: json\\n data_files: data/my_data.json\\n split: train\\n conversation_column: dialogue\\n conversation_style: sharegpt\\n\\n.. note::\\n You can pass in any keyword argument for `load_dataset `_ into all our\\n Dataset classes and they will honor them. This is useful for common parameters\\n such as specifying the data split with :code:`split` or configuration with\\n :code:`name`\\n\\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:1b69d\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 5:\\nDocument_id:deca9\\nContent: etune\\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.use_dora=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n use_dora: True\\n\\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. You can also quantize the base model weights like in :ref:`glossary_qlora` by using ``quantize=True`` to reap\\neven more memory savings!\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.apply_lora_to_mlp=True \\\\\\n model.lora_attn_modules=[\\\"q_proj\\\",\\\"k_proj\\\",\\\"v_proj\\\"] \\\\\\n model.lora_rank=16 \\\\\\n model.lora_alpha=32 \\\\\\n model.use_dora=True \\\\\\n model.quantize_base=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n apply_lora_to_mlp: True\\n lora_attn_modules: [\\\"q_proj\\\", \\\"k_proj\\\", \\\"v_proj\\\"]\\n lora_rank: 16\\n lora_alpha: 32\\n use_dora: True\\n quantize_base: True\\n\\n\\n.. note::\\n\\n Under the hood, we've enabled DoRA by adding the :class:`~torchtune.modules.peft.DoRALinear` module, which we swap\\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\\n\\n.. _glossary_distrib:\\n\\n\\n.. TODO\\n\\n.. Distributed\\n.. -----------\\n\\n.. .. _glossary_fsdp:\\n\\n.. Fully Sharded Data Parallel (FSDP)\\n.. ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^\\n\\n.. All our ``_distributed`` recipes use `FSDP `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"END of knowledge_search tool results.\\n\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": \"knowledge_search\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"I'm ready to help you answer questions about Torchtune based on the documentation you provided. What's your first question?\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": []}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Tell me how to use LoRA\", \"context\": null, \"role\": \"user\"}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Search for information in a database.\", \"parameters\": {\"query\": {\"default\": null, \"description\": \"The query to search for. Can be a natural language sentence or keywords.\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": \"knowledge_search\"}}]}]": { "chunks": [ { "__module__": "llama_stack.apis.inference.inference", @@ -17581,27 +19530,7 @@ "data": { "event": { "delta": { - "text": "type\": \"function\", \"", - "type": "text" - }, - "event_type": { - "__enum__": "ChatCompletionResponseEventType", - "__module__": "llama_stack.apis.inference.inference", - "value": "progress" - }, - "logprobs": null, - "stop_reason": null - }, - "metrics": null - } - }, - { - "__module__": "llama_stack.apis.inference.inference", - "__pydantic__": "ChatCompletionResponseStreamChunk", - "data": { - "event": { - "delta": { - "text": "name\": \"knowledge_search\", \"parameters", + "text": "type\": \"function\", \"name\": \"knowledge_search\", \"", "type": "text" }, "event_type": { @@ -17621,7 +19550,7 @@ "data": { "event": { "delta": { - "text": "\": {\"query\": \"How to use LoRA in Torcht", + "text": "parameters\": {\"query\": \"How to use LoRA in Tor", "type": "text" }, "event_type": { @@ -17641,7 +19570,7 @@ "data": { "event": { "delta": { - "text": "une\"}}", + "text": "chtune\"}}", "type": "text" }, "event_type": { @@ -17670,7 +19599,7 @@ "arguments": { "query": "How to use LoRA in Torchtune" }, - "call_id": "7815c1ab-fbdf-42e8-84a7-b1f74f67d863", + "call_id": "c92271a7-37e2-4396-aa7f-5805b9273a71", "tool_name": "knowledge_search" }, "type": "tool_call" @@ -17718,13 +19647,13 @@ "provider_id": "fireworks" }, "metric": "prompt_tokens", - "span_id": "KM-vILDG", + "span_id": "Z6HS-lIg", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:01.270069+00:00", + "__datetime__": "2025-03-06T04:49:08.648346+00:00", "__module__": "datetime" }, - "trace_id": "NIVx0ka-TmKDiZaU", + "trace_id": "1NwedpozRqOVQXRs", "type": "metric", "unit": "tokens", "value": 117 @@ -17735,13 +19664,13 @@ "provider_id": "fireworks" }, "metric": "completion_tokens", - "span_id": "KM-vILDG", + "span_id": "Z6HS-lIg", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:01.270143+00:00", + "__datetime__": "2025-03-06T04:49:08.648375+00:00", "__module__": "datetime" }, - "trace_id": "NIVx0ka-TmKDiZaU", + "trace_id": "1NwedpozRqOVQXRs", "type": "metric", "unit": "tokens", "value": 40 @@ -17752,13 +19681,13 @@ "provider_id": "fireworks" }, "metric": "total_tokens", - "span_id": "KM-vILDG", + "span_id": "Z6HS-lIg", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:01.270151+00:00", + "__datetime__": "2025-03-06T04:49:08.648382+00:00", "__module__": "datetime" }, - "trace_id": "NIVx0ka-TmKDiZaU", + "trace_id": "1NwedpozRqOVQXRs", "type": "metric", "unit": "tokens", "value": 157 @@ -17769,7 +19698,7 @@ ], "type": "generator" }, - "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"I am attaching some documentation for Torchtune. Help me answer questions I will ask next.\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"query\": \"Torchtune documentation\"}, \"call_id\": \"\", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:8c1f5\\nContent: conversational data, :func:`~torchtune.datasets.chat_dataset` seems to be a good fit. For any\\ncustom local dataset we always need to specify ``source``, ``data_files``, and ``split`` for any dataset\\nbuilder in torchtune. For :func:`~torchtune.datasets.chat_dataset`, we additionally need to specify\\n``conversation_column`` and ``conversation_style``. Our data follows the ``\\\"sharegpt\\\"`` format, so\\nwe can specify that here. Altogether, our :func:`~torchtune.datasets.chat_dataset` call should\\nlook like so:\\n\\n.. code-block:: python\\n\\n from torchtune.datasets import chat_dataset\\n from torchtune.models.llama3 import llama3_tokenizer\\n\\n tokenizer = llama3_tokenizer(\\\"/tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\\")\\n ds = chat_dataset(\\n tokenizer=tokenizer,\\n source=\\\"json\\\",\\n data_files=\\\"data/my_data.json\\\",\\n split=\\\"train\\\",\\n conversation_column=\\\"dialogue\\\",\\n conversation_style=\\\"sharegpt\\\",\\n )\\n\\n.. code-block:: yaml\\n\\n # In config\\n tokenizer:\\n _component_: torchtune.models.llama3.llama3_tokenizer\\n path: /tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\n\\n dataset:\\n _component_: torchtune.datasets.chat_dataset\\n source: json\\n data_files: data/my_data.json\\n split: train\\n conversation_column: dialogue\\n conversation_style: sharegpt\\n\\n.. note::\\n You can pass in any keyword argument for `load_dataset `_ into all our\\n Dataset classes and they will honor them. This is useful for common parameters\\n such as specifying the data split with :code:`split` or configuration with\\n :code:`name`\\n\\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:13786\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 5:\\nDocument_id:f9c19\\nContent: etune\\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.use_dora=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n use_dora: True\\n\\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. You can also quantize the base model weights like in :ref:`glossary_qlora` by using ``quantize=True`` to reap\\neven more memory savings!\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.apply_lora_to_mlp=True \\\\\\n model.lora_attn_modules=[\\\"q_proj\\\",\\\"k_proj\\\",\\\"v_proj\\\"] \\\\\\n model.lora_rank=16 \\\\\\n model.lora_alpha=32 \\\\\\n model.use_dora=True \\\\\\n model.quantize_base=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n apply_lora_to_mlp: True\\n lora_attn_modules: [\\\"q_proj\\\", \\\"k_proj\\\", \\\"v_proj\\\"]\\n lora_rank: 16\\n lora_alpha: 32\\n use_dora: True\\n quantize_base: True\\n\\n\\n.. note::\\n\\n Under the hood, we've enabled DoRA by adding the :class:`~torchtune.modules.peft.DoRALinear` module, which we swap\\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\\n\\n.. _glossary_distrib:\\n\\n\\n.. TODO\\n\\n.. Distributed\\n.. -----------\\n\\n.. .. _glossary_fsdp:\\n\\n.. Fully Sharded Data Parallel (FSDP)\\n.. ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^\\n\\n.. All our ``_distributed`` recipes use `FSDP `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"END of knowledge_search tool results.\\n\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": \"knowledge_search\"}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Search for information in a database.\", \"parameters\": {\"query\": {\"default\": null, \"description\": \"The query to search for. Can be a natural language sentence or keywords.\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": \"knowledge_search\"}}]}]": { + "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"I am attaching some documentation for Torchtune. Help me answer questions I will ask next.\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"query\": \"Torchtune documentation\"}, \"call_id\": \"\", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:b222e\\nContent: conversational data, :func:`~torchtune.datasets.chat_dataset` seems to be a good fit. For any\\ncustom local dataset we always need to specify ``source``, ``data_files``, and ``split`` for any dataset\\nbuilder in torchtune. For :func:`~torchtune.datasets.chat_dataset`, we additionally need to specify\\n``conversation_column`` and ``conversation_style``. Our data follows the ``\\\"sharegpt\\\"`` format, so\\nwe can specify that here. Altogether, our :func:`~torchtune.datasets.chat_dataset` call should\\nlook like so:\\n\\n.. code-block:: python\\n\\n from torchtune.datasets import chat_dataset\\n from torchtune.models.llama3 import llama3_tokenizer\\n\\n tokenizer = llama3_tokenizer(\\\"/tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\\")\\n ds = chat_dataset(\\n tokenizer=tokenizer,\\n source=\\\"json\\\",\\n data_files=\\\"data/my_data.json\\\",\\n split=\\\"train\\\",\\n conversation_column=\\\"dialogue\\\",\\n conversation_style=\\\"sharegpt\\\",\\n )\\n\\n.. code-block:: yaml\\n\\n # In config\\n tokenizer:\\n _component_: torchtune.models.llama3.llama3_tokenizer\\n path: /tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\n\\n dataset:\\n _component_: torchtune.datasets.chat_dataset\\n source: json\\n data_files: data/my_data.json\\n split: train\\n conversation_column: dialogue\\n conversation_style: sharegpt\\n\\n.. note::\\n You can pass in any keyword argument for `load_dataset `_ into all our\\n Dataset classes and they will honor them. This is useful for common parameters\\n such as specifying the data split with :code:`split` or configuration with\\n :code:`name`\\n\\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:1b69d\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 5:\\nDocument_id:deca9\\nContent: etune\\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.use_dora=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n use_dora: True\\n\\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. You can also quantize the base model weights like in :ref:`glossary_qlora` by using ``quantize=True`` to reap\\neven more memory savings!\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.apply_lora_to_mlp=True \\\\\\n model.lora_attn_modules=[\\\"q_proj\\\",\\\"k_proj\\\",\\\"v_proj\\\"] \\\\\\n model.lora_rank=16 \\\\\\n model.lora_alpha=32 \\\\\\n model.use_dora=True \\\\\\n model.quantize_base=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n apply_lora_to_mlp: True\\n lora_attn_modules: [\\\"q_proj\\\", \\\"k_proj\\\", \\\"v_proj\\\"]\\n lora_rank: 16\\n lora_alpha: 32\\n use_dora: True\\n quantize_base: True\\n\\n\\n.. note::\\n\\n Under the hood, we've enabled DoRA by adding the :class:`~torchtune.modules.peft.DoRALinear` module, which we swap\\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\\n\\n.. _glossary_distrib:\\n\\n\\n.. TODO\\n\\n.. Distributed\\n.. -----------\\n\\n.. .. _glossary_fsdp:\\n\\n.. Fully Sharded Data Parallel (FSDP)\\n.. ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^\\n\\n.. All our ``_distributed`` recipes use `FSDP `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"END of knowledge_search tool results.\\n\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": \"knowledge_search\"}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Search for information in a database.\", \"parameters\": {\"query\": {\"default\": null, \"description\": \"The query to search for. Can be a natural language sentence or keywords.\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": \"knowledge_search\"}}]}]": { "chunks": [ { "__module__": "llama_stack.apis.inference.inference", @@ -17817,7 +19746,7 @@ "data": { "event": { "delta": { - "text": "'m ready to help you answer questions about Torcht", + "text": "'m ready to help you answer questions about", "type": "text" }, "event_type": { @@ -17837,7 +19766,7 @@ "data": { "event": { "delta": { - "text": "une based on the documentation you provided. What's your first", + "text": " Torchtune based on the documentation you provided. What's your", "type": "text" }, "event_type": { @@ -17857,7 +19786,7 @@ "data": { "event": { "delta": { - "text": " question?", + "text": " first question?", "type": "text" }, "event_type": { @@ -17899,13 +19828,13 @@ "provider_id": "fireworks" }, "metric": "prompt_tokens", - "span_id": "5yc3Hts6", + "span_id": "o33PSCts", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:48:59.857021+00:00", + "__datetime__": "2025-03-06T04:49:07.268876+00:00", "__module__": "datetime" }, - "trace_id": "6KRztpbwTwquLEUn", + "trace_id": "edTwKHK5Q4K8yCqt", "type": "metric", "unit": "tokens", "value": 75 @@ -17916,13 +19845,13 @@ "provider_id": "fireworks" }, "metric": "completion_tokens", - "span_id": "5yc3Hts6", + "span_id": "o33PSCts", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:48:59.857048+00:00", + "__datetime__": "2025-03-06T04:49:07.268906+00:00", "__module__": "datetime" }, - "trace_id": "6KRztpbwTwquLEUn", + "trace_id": "edTwKHK5Q4K8yCqt", "type": "metric", "unit": "tokens", "value": 35 @@ -17933,13 +19862,13 @@ "provider_id": "fireworks" }, "metric": "total_tokens", - "span_id": "5yc3Hts6", + "span_id": "o33PSCts", "timestamp": { "__class__": "datetime", - "__datetime__": "2025-03-06T04:48:59.857055+00:00", + "__datetime__": "2025-03-06T04:49:07.268914+00:00", "__module__": "datetime" }, - "trace_id": "6KRztpbwTwquLEUn", + "trace_id": "edTwKHK5Q4K8yCqt", "type": "metric", "unit": "tokens", "value": 110 @@ -17950,7 +19879,7 @@ ], "type": "generator" }, - "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"I am attaching some documentation for Torchtune. Help me answer questions I will ask next.\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"query\": \"Torchtune documentation\"}, \"call_id\": \"\", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:b222e\\nContent: conversational data, :func:`~torchtune.datasets.chat_dataset` seems to be a good fit. For any\\ncustom local dataset we always need to specify ``source``, ``data_files``, and ``split`` for any dataset\\nbuilder in torchtune. For :func:`~torchtune.datasets.chat_dataset`, we additionally need to specify\\n``conversation_column`` and ``conversation_style``. Our data follows the ``\\\"sharegpt\\\"`` format, so\\nwe can specify that here. Altogether, our :func:`~torchtune.datasets.chat_dataset` call should\\nlook like so:\\n\\n.. code-block:: python\\n\\n from torchtune.datasets import chat_dataset\\n from torchtune.models.llama3 import llama3_tokenizer\\n\\n tokenizer = llama3_tokenizer(\\\"/tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\\")\\n ds = chat_dataset(\\n tokenizer=tokenizer,\\n source=\\\"json\\\",\\n data_files=\\\"data/my_data.json\\\",\\n split=\\\"train\\\",\\n conversation_column=\\\"dialogue\\\",\\n conversation_style=\\\"sharegpt\\\",\\n )\\n\\n.. code-block:: yaml\\n\\n # In config\\n tokenizer:\\n _component_: torchtune.models.llama3.llama3_tokenizer\\n path: /tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\n\\n dataset:\\n _component_: torchtune.datasets.chat_dataset\\n source: json\\n data_files: data/my_data.json\\n split: train\\n conversation_column: dialogue\\n conversation_style: sharegpt\\n\\n.. note::\\n You can pass in any keyword argument for `load_dataset `_ into all our\\n Dataset classes and they will honor them. This is useful for common parameters\\n such as specifying the data split with :code:`split` or configuration with\\n :code:`name`\\n\\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:1b69d\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 5:\\nDocument_id:deca9\\nContent: etune\\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.use_dora=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n use_dora: True\\n\\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. You can also quantize the base model weights like in :ref:`glossary_qlora` by using ``quantize=True`` to reap\\neven more memory savings!\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.apply_lora_to_mlp=True \\\\\\n model.lora_attn_modules=[\\\"q_proj\\\",\\\"k_proj\\\",\\\"v_proj\\\"] \\\\\\n model.lora_rank=16 \\\\\\n model.lora_alpha=32 \\\\\\n model.use_dora=True \\\\\\n model.quantize_base=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n apply_lora_to_mlp: True\\n lora_attn_modules: [\\\"q_proj\\\", \\\"k_proj\\\", \\\"v_proj\\\"]\\n lora_rank: 16\\n lora_alpha: 32\\n use_dora: True\\n quantize_base: True\\n\\n\\n.. note::\\n\\n Under the hood, we've enabled DoRA by adding the :class:`~torchtune.modules.peft.DoRALinear` module, which we swap\\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\\n\\n.. _glossary_distrib:\\n\\n\\n.. TODO\\n\\n.. Distributed\\n.. -----------\\n\\n.. .. _glossary_fsdp:\\n\\n.. Fully Sharded Data Parallel (FSDP)\\n.. ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^\\n\\n.. All our ``_distributed`` recipes use `FSDP `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"END of knowledge_search tool results.\\n\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": \"knowledge_search\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"I'm ready to help you answer questions about Torchtune based on the documentation you provided. What's your first question?\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": []}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Tell me how to use LoRA\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"query\": \"How to use LoRA in Torchtune\"}, \"call_id\": \"\", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:1b69d\\nContent: .. _lora_finetune_label:\\n\\n============================\\nFine-Tuning Llama2 with LoRA\\n============================\\n\\nThis guide will teach you about `LoRA `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW ` alone will not handle the definition of which parameters are trainable.\\n See :ref:`below` for how to do this.\\n\\nLet's inspect each of these models a bit more closely.\\n\\n.. code-block:: bash\\n\\n # Print the first layer's self-attention in the usual Llama2 model\\n >>> print(base_model.layers[0].attn)\\n MultiHeadAttention(\\n (q_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (k_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (v_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (output_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (pos_embeddings): RotaryPositionalEmbeddings()\\n )\\n\\n # Print the same for Llama2 with LoRA weights\\n >>> print(lora_model.layers[0].attn)\\n MultiHeadAttention(\\n (q_proj): LoRALinear(\\n (dropout): Dropout(p=0.0, inplace=False)\\n \\n\", \"type\": \"text\"}, {\"text\": \"Result 3:\\nDocument_id:1b69d\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:1b69d\\nContent: from our Llama2\\nmodel without any wrappers or custom checkpoint conversion logic.\\n\\n.. code-block:: python\\n\\n # Assuming that base_model already has the pretrained Llama2 weights,\\n # this will directly load them into your LoRA model without any conversion necessary.\\n lora_model.load_state_dict(base_model.state_dict(), strict=False)\\n\\n.. note::\\n Whenever loading weights with :code:`strict=False`, you should verify that any missing or extra keys in\\n the loaded :code:`state_dict` are as expected. torchtune's LoRA recipes do this by default via\\n :func:`validate_missing_and_unexpected_for_lora() `.\\n\\nOnce we've loaded the base model weights, we also want to set only LoRA parameters to trainable.\\n\\n.. _setting_trainable_params:\\n\\n.. code-block:: python\\n\\n from torchtune.modules.peft.peft_utils import get_adapter_params, set_trainable_params\\n\\n # Fetch all params from the model that are associated with LoRA.\\n lora_params = get_adapter_params(lora_model)\\n\\n # Set requires_grad=True on lora_params, and requires_grad=False on all others.\\n set_trainable_params(lora_model, lora_params)\\n\\n # Print the total number of parameters\\n total_params = sum([p.numel() for p in lora_model.parameters()])\\n trainable_params = sum([p.numel() for p in lora_model.parameters() if p.requires_grad])\\n print(\\n f\\\"\\\"\\\"\\n {total_params} total params,\\n {trainable_params}\\\" trainable params,\\n {(100.0 * trainable_params / total_params):.2f}% of all params are trainable.\\n \\\"\\\"\\\"\\n )\\n\\n 6742609920 total params,\\n 4194304 trainable params,\\n 0.06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe \", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:ea3f6\\nContent: conversational data, :func:`~torchtune.datasets.chat_dataset` seems to be a good fit. For any\\ncustom local dataset we always need to specify ``source``, ``data_files``, and ``split`` for any dataset\\nbuilder in torchtune. For :func:`~torchtune.datasets.chat_dataset`, we additionally need to specify\\n``conversation_column`` and ``conversation_style``. Our data follows the ``\\\"sharegpt\\\"`` format, so\\nwe can specify that here. Altogether, our :func:`~torchtune.datasets.chat_dataset` call should\\nlook like so:\\n\\n.. code-block:: python\\n\\n from torchtune.datasets import chat_dataset\\n from torchtune.models.llama3 import llama3_tokenizer\\n\\n tokenizer = llama3_tokenizer(\\\"/tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\\")\\n ds = chat_dataset(\\n tokenizer=tokenizer,\\n source=\\\"json\\\",\\n data_files=\\\"data/my_data.json\\\",\\n split=\\\"train\\\",\\n conversation_column=\\\"dialogue\\\",\\n conversation_style=\\\"sharegpt\\\",\\n )\\n\\n.. code-block:: yaml\\n\\n # In config\\n tokenizer:\\n _component_: torchtune.models.llama3.llama3_tokenizer\\n path: /tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\n\\n dataset:\\n _component_: torchtune.datasets.chat_dataset\\n source: json\\n data_files: data/my_data.json\\n split: train\\n conversation_column: dialogue\\n conversation_style: sharegpt\\n\\n.. note::\\n You can pass in any keyword argument for `load_dataset `_ into all our\\n Dataset classes and they will honor them. This is useful for common parameters\\n such as specifying the data split with :code:`split` or configuration with\\n :code:`name`\\n\\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:5c435\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 5:\\nDocument_id:91d52\\nContent: etune\\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.use_dora=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n use_dora: True\\n\\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. You can also quantize the base model weights like in :ref:`glossary_qlora` by using ``quantize=True`` to reap\\neven more memory savings!\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.apply_lora_to_mlp=True \\\\\\n model.lora_attn_modules=[\\\"q_proj\\\",\\\"k_proj\\\",\\\"v_proj\\\"] \\\\\\n model.lora_rank=16 \\\\\\n model.lora_alpha=32 \\\\\\n model.use_dora=True \\\\\\n model.quantize_base=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n apply_lora_to_mlp: True\\n lora_attn_modules: [\\\"q_proj\\\", \\\"k_proj\\\", \\\"v_proj\\\"]\\n lora_rank: 16\\n lora_alpha: 32\\n use_dora: True\\n quantize_base: True\\n\\n\\n.. note::\\n\\n Under the hood, we've enabled DoRA by adding the :class:`~torchtune.modules.peft.DoRALinear` module, which we swap\\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\\n\\n.. _glossary_distrib:\\n\\n\\n.. TODO\\n\\n.. Distributed\\n.. -----------\\n\\n.. .. _glossary_fsdp:\\n\\n.. Fully Sharded Data Parallel (FSDP)\\n.. ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^\\n\\n.. All our ``_distributed`` recipes use `FSDP `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"END of knowledge_search tool results.\\n\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": \"knowledge_search\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"I'm ready to help you answer questions about Torchtune based on the documentation you provided. What's your first question?\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": []}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Tell me how to use LoRA\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"query\": \"How to use LoRA in Torchtune\"}, \"call_id\": \"\", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:5c435\\nContent: .. _lora_finetune_label:\\n\\n============================\\nFine-Tuning Llama2 with LoRA\\n============================\\n\\nThis guide will teach you about `LoRA `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW ` alone will not handle the definition of which parameters are trainable.\\n See :ref:`below` for how to do this.\\n\\nLet's inspect each of these models a bit more closely.\\n\\n.. code-block:: bash\\n\\n # Print the first layer's self-attention in the usual Llama2 model\\n >>> print(base_model.layers[0].attn)\\n MultiHeadAttention(\\n (q_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (k_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (v_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (output_proj): Linear(in_features=4096, out_features=4096, bias=False)\\n (pos_embeddings): RotaryPositionalEmbeddings()\\n )\\n\\n # Print the same for Llama2 with LoRA weights\\n >>> print(lora_model.layers[0].attn)\\n MultiHeadAttention(\\n (q_proj): LoRALinear(\\n (dropout): Dropout(p=0.0, inplace=False)\\n \\n\", \"type\": \"text\"}, {\"text\": \"Result 3:\\nDocument_id:5c435\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:5c435\\nContent: from our Llama2\\nmodel without any wrappers or custom checkpoint conversion logic.\\n\\n.. code-block:: python\\n\\n # Assuming that base_model already has the pretrained Llama2 weights,\\n # this will directly load them into your LoRA model without any conversion necessary.\\n lora_model.load_state_dict(base_model.state_dict(), strict=False)\\n\\n.. note::\\n Whenever loading weights with :code:`strict=False`, you should verify that any missing or extra keys in\\n the loaded :code:`state_dict` are as expected. torchtune's LoRA recipes do this by default via\\n :func:`validate_missing_and_unexpected_for_lora() `.\\n\\nOnce we've loaded the base model weights, we also want to set only LoRA parameters to trainable.\\n\\n.. _setting_trainable_params:\\n\\n.. code-block:: python\\n\\n from torchtune.modules.peft.peft_utils import get_adapter_params, set_trainable_params\\n\\n # Fetch all params from the model that are associated with LoRA.\\n lora_params = get_adapter_params(lora_model)\\n\\n # Set requires_grad=True on lora_params, and requires_grad=False on all others.\\n set_trainable_params(lora_model, lora_params)\\n\\n # Print the total number of parameters\\n total_params = sum([p.numel() for p in lora_model.parameters()])\\n trainable_params = sum([p.numel() for p in lora_model.parameters() if p.requires_grad])\\n print(\\n f\\\"\\\"\\\"\\n {total_params} total params,\\n {trainable_params}\\\" trainable params,\\n {(100.0 * trainable_params / total_params):.2f}% of all params are trainable.\\n \\\"\\\"\\\"\\n )\\n\\n 6742609920 total params,\\n 4194304 trainable params,\\n 0.06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe \", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:b222e\\nContent: conversational data, :func:`~torchtune.datasets.chat_dataset` seems to be a good fit. For any\\ncustom local dataset we always need to specify ``source``, ``data_files``, and ``split`` for any dataset\\nbuilder in torchtune. For :func:`~torchtune.datasets.chat_dataset`, we additionally need to specify\\n``conversation_column`` and ``conversation_style``. Our data follows the ``\\\"sharegpt\\\"`` format, so\\nwe can specify that here. Altogether, our :func:`~torchtune.datasets.chat_dataset` call should\\nlook like so:\\n\\n.. code-block:: python\\n\\n from torchtune.datasets import chat_dataset\\n from torchtune.models.llama3 import llama3_tokenizer\\n\\n tokenizer = llama3_tokenizer(\\\"/tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\\")\\n ds = chat_dataset(\\n tokenizer=tokenizer,\\n source=\\\"json\\\",\\n data_files=\\\"data/my_data.json\\\",\\n split=\\\"train\\\",\\n conversation_column=\\\"dialogue\\\",\\n conversation_style=\\\"sharegpt\\\",\\n )\\n\\n.. code-block:: yaml\\n\\n # In config\\n tokenizer:\\n _component_: torchtune.models.llama3.llama3_tokenizer\\n path: /tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\n\\n dataset:\\n _component_: torchtune.datasets.chat_dataset\\n source: json\\n data_files: data/my_data.json\\n split: train\\n conversation_column: dialogue\\n conversation_style: sharegpt\\n\\n.. note::\\n You can pass in any keyword argument for `load_dataset `_ into all our\\n Dataset classes and they will honor them. This is useful for common parameters\\n such as specifying the data split with :code:`split` or configuration with\\n :code:`name`\\n\\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:1b69d\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 5:\\nDocument_id:deca9\\nContent: etune\\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.use_dora=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n use_dora: True\\n\\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. You can also quantize the base model weights like in :ref:`glossary_qlora` by using ``quantize=True`` to reap\\neven more memory savings!\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.apply_lora_to_mlp=True \\\\\\n model.lora_attn_modules=[\\\"q_proj\\\",\\\"k_proj\\\",\\\"v_proj\\\"] \\\\\\n model.lora_rank=16 \\\\\\n model.lora_alpha=32 \\\\\\n model.use_dora=True \\\\\\n model.quantize_base=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n apply_lora_to_mlp: True\\n lora_attn_modules: [\\\"q_proj\\\", \\\"k_proj\\\", \\\"v_proj\\\"]\\n lora_rank: 16\\n lora_alpha: 32\\n use_dora: True\\n quantize_base: True\\n\\n\\n.. note::\\n\\n Under the hood, we've enabled DoRA by adding the :class:`~torchtune.modules.peft.DoRALinear` module, which we swap\\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\\n\\n.. _glossary_distrib:\\n\\n\\n.. TODO\\n\\n.. Distributed\\n.. -----------\\n\\n.. .. _glossary_fsdp:\\n\\n.. Fully Sharded Data Parallel (FSDP)\\n.. ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^\\n\\n.. All our ``_distributed`` recipes use `FSDP `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"END of knowledge_search tool results.\\n\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": \"knowledge_search\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"I'm ready to help you answer questions about Torchtune based on the documentation you provided. What's your first question?\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": []}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Tell me how to use LoRA\", \"context\": null, \"role\": \"user\"}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Search for information in a database.\", \"parameters\": {\"query\": {\"default\": null, \"description\": \"The query to search for. Can be a natural language sentence or keywords.\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": \"knowledge_search\"}}]}]": { + "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"I am attaching some documentation for Torchtune. Help me answer questions I will ask next.\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"query\": \"Torchtune documentation\"}, \"call_id\": \"\", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:ea3f6\\nContent: conversational data, :func:`~torchtune.datasets.chat_dataset` seems to be a good fit. For any\\ncustom local dataset we always need to specify ``source``, ``data_files``, and ``split`` for any dataset\\nbuilder in torchtune. For :func:`~torchtune.datasets.chat_dataset`, we additionally need to specify\\n``conversation_column`` and ``conversation_style``. Our data follows the ``\\\"sharegpt\\\"`` format, so\\nwe can specify that here. Altogether, our :func:`~torchtune.datasets.chat_dataset` call should\\nlook like so:\\n\\n.. code-block:: python\\n\\n from torchtune.datasets import chat_dataset\\n from torchtune.models.llama3 import llama3_tokenizer\\n\\n tokenizer = llama3_tokenizer(\\\"/tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\\")\\n ds = chat_dataset(\\n tokenizer=tokenizer,\\n source=\\\"json\\\",\\n data_files=\\\"data/my_data.json\\\",\\n split=\\\"train\\\",\\n conversation_column=\\\"dialogue\\\",\\n conversation_style=\\\"sharegpt\\\",\\n )\\n\\n.. code-block:: yaml\\n\\n # In config\\n tokenizer:\\n _component_: torchtune.models.llama3.llama3_tokenizer\\n path: /tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\n\\n dataset:\\n _component_: torchtune.datasets.chat_dataset\\n source: json\\n data_files: data/my_data.json\\n split: train\\n conversation_column: dialogue\\n conversation_style: sharegpt\\n\\n.. note::\\n You can pass in any keyword argument for `load_dataset `_ into all our\\n Dataset classes and they will honor them. This is useful for common parameters\\n such as specifying the data split with :code:`split` or configuration with\\n :code:`name`\\n\\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:5c435\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 5:\\nDocument_id:91d52\\nContent: etune\\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.use_dora=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n use_dora: True\\n\\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. You can also quantize the base model weights like in :ref:`glossary_qlora` by using ``quantize=True`` to reap\\neven more memory savings!\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.apply_lora_to_mlp=True \\\\\\n model.lora_attn_modules=[\\\"q_proj\\\",\\\"k_proj\\\",\\\"v_proj\\\"] \\\\\\n model.lora_rank=16 \\\\\\n model.lora_alpha=32 \\\\\\n model.use_dora=True \\\\\\n model.quantize_base=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n apply_lora_to_mlp: True\\n lora_attn_modules: [\\\"q_proj\\\", \\\"k_proj\\\", \\\"v_proj\\\"]\\n lora_rank: 16\\n lora_alpha: 32\\n use_dora: True\\n quantize_base: True\\n\\n\\n.. note::\\n\\n Under the hood, we've enabled DoRA by adding the :class:`~torchtune.modules.peft.DoRALinear` module, which we swap\\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\\n\\n.. _glossary_distrib:\\n\\n\\n.. TODO\\n\\n.. Distributed\\n.. -----------\\n\\n.. .. _glossary_fsdp:\\n\\n.. Fully Sharded Data Parallel (FSDP)\\n.. ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^\\n\\n.. All our ``_distributed`` recipes use `FSDP `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"END of knowledge_search tool results.\\n\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": \"knowledge_search\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"I'm ready to help you answer questions about Torchtune based on the documentation you provided. What's your first question?\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": []}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"Tell me how to use LoRA\", \"context\": null, \"role\": \"user\"}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Search for information in a database.\", \"parameters\": {\"query\": {\"default\": null, \"description\": \"The query to search for. Can be a natural language sentence or keywords.\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": \"knowledge_search\"}}]}]": { "chunks": [ { "__module__": "llama_stack.apis.inference.inference", @@ -18479,7 +20356,7 @@ "data": { "event": { "delta": { - "text": "type\": \"function\", \"name\": \"knowledge_search\", \"", + "text": "type\": \"function\", \"name\": \"", "type": "text" }, "event_type": { @@ -18499,7 +20376,7 @@ "data": { "event": { "delta": { - "text": "parameters\": {\"query\": \"How to use LoRA in Tor", + "text": "knowledge_search\", \"parameters\": {\"query", "type": "text" }, "event_type": { @@ -18519,7 +20396,7 @@ "data": { "event": { "delta": { - "text": "chtune\"}}", + "text": "\": \"How to use LoRA in Torchtune\"}}", "type": "text" }, "event_type": { @@ -18548,7 +20425,7 @@ "arguments": { "query": "How to use LoRA in Torchtune" }, - "call_id": "c92271a7-37e2-4396-aa7f-5805b9273a71", + "call_id": "3f9aaa8a-ca61-4a51-830a-e9920d3d8ec5", "tool_name": "knowledge_search" }, "type": "tool_call" @@ -18589,65 +20466,13 @@ "value": "end_of_turn" } }, - "metrics": [ - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "prompt_tokens", - "span_id": "Z6HS-lIg", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:08.648346+00:00", - "__module__": "datetime" - }, - "trace_id": "1NwedpozRqOVQXRs", - "type": "metric", - "unit": "tokens", - "value": 117 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "completion_tokens", - "span_id": "Z6HS-lIg", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:08.648375+00:00", - "__module__": "datetime" - }, - "trace_id": "1NwedpozRqOVQXRs", - "type": "metric", - "unit": "tokens", - "value": 40 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "total_tokens", - "span_id": "Z6HS-lIg", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:08.648382+00:00", - "__module__": "datetime" - }, - "trace_id": "1NwedpozRqOVQXRs", - "type": "metric", - "unit": "tokens", - "value": 157 - } - ] + "metrics": null } } ], "type": "generator" }, - "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"I am attaching some documentation for Torchtune. Help me answer questions I will ask next.\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"query\": \"Torchtune documentation\"}, \"call_id\": \"\", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:b222e\\nContent: conversational data, :func:`~torchtune.datasets.chat_dataset` seems to be a good fit. For any\\ncustom local dataset we always need to specify ``source``, ``data_files``, and ``split`` for any dataset\\nbuilder in torchtune. For :func:`~torchtune.datasets.chat_dataset`, we additionally need to specify\\n``conversation_column`` and ``conversation_style``. Our data follows the ``\\\"sharegpt\\\"`` format, so\\nwe can specify that here. Altogether, our :func:`~torchtune.datasets.chat_dataset` call should\\nlook like so:\\n\\n.. code-block:: python\\n\\n from torchtune.datasets import chat_dataset\\n from torchtune.models.llama3 import llama3_tokenizer\\n\\n tokenizer = llama3_tokenizer(\\\"/tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\\")\\n ds = chat_dataset(\\n tokenizer=tokenizer,\\n source=\\\"json\\\",\\n data_files=\\\"data/my_data.json\\\",\\n split=\\\"train\\\",\\n conversation_column=\\\"dialogue\\\",\\n conversation_style=\\\"sharegpt\\\",\\n )\\n\\n.. code-block:: yaml\\n\\n # In config\\n tokenizer:\\n _component_: torchtune.models.llama3.llama3_tokenizer\\n path: /tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\n\\n dataset:\\n _component_: torchtune.datasets.chat_dataset\\n source: json\\n data_files: data/my_data.json\\n split: train\\n conversation_column: dialogue\\n conversation_style: sharegpt\\n\\n.. note::\\n You can pass in any keyword argument for `load_dataset `_ into all our\\n Dataset classes and they will honor them. This is useful for common parameters\\n such as specifying the data split with :code:`split` or configuration with\\n :code:`name`\\n\\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:1b69d\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 5:\\nDocument_id:deca9\\nContent: etune\\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.use_dora=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n use_dora: True\\n\\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. You can also quantize the base model weights like in :ref:`glossary_qlora` by using ``quantize=True`` to reap\\neven more memory savings!\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.apply_lora_to_mlp=True \\\\\\n model.lora_attn_modules=[\\\"q_proj\\\",\\\"k_proj\\\",\\\"v_proj\\\"] \\\\\\n model.lora_rank=16 \\\\\\n model.lora_alpha=32 \\\\\\n model.use_dora=True \\\\\\n model.quantize_base=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n apply_lora_to_mlp: True\\n lora_attn_modules: [\\\"q_proj\\\", \\\"k_proj\\\", \\\"v_proj\\\"]\\n lora_rank: 16\\n lora_alpha: 32\\n use_dora: True\\n quantize_base: True\\n\\n\\n.. note::\\n\\n Under the hood, we've enabled DoRA by adding the :class:`~torchtune.modules.peft.DoRALinear` module, which we swap\\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\\n\\n.. _glossary_distrib:\\n\\n\\n.. TODO\\n\\n.. Distributed\\n.. -----------\\n\\n.. .. _glossary_fsdp:\\n\\n.. Fully Sharded Data Parallel (FSDP)\\n.. ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^\\n\\n.. All our ``_distributed`` recipes use `FSDP `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"END of knowledge_search tool results.\\n\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": \"knowledge_search\"}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Search for information in a database.\", \"parameters\": {\"query\": {\"default\": null, \"description\": \"The query to search for. Can be a natural language sentence or keywords.\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": \"knowledge_search\"}}]}]": { + "[[\"meta-llama/Llama-3.1-8B-Instruct\", [{\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"SystemMessage\", \"data\": {\"content\": \"You are a helpful assistant\", \"role\": \"system\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"UserMessage\", \"data\": {\"content\": \"I am attaching some documentation for Torchtune. Help me answer questions I will ask next.\", \"context\": null, \"role\": \"user\"}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"CompletionMessage\", \"data\": {\"content\": \"\", \"role\": \"assistant\", \"stop_reason\": {\"__enum__\": \"StopReason\", \"__module__\": \"llama_stack.models.llama.datatypes\", \"value\": \"end_of_turn\"}, \"tool_calls\": [{\"arguments\": {\"query\": \"Torchtune documentation\"}, \"call_id\": \"\", \"tool_name\": \"knowledge_search\"}]}}, {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolResponseMessage\", \"data\": {\"call_id\": \"\", \"content\": [{\"text\": \"knowledge_search tool found 5 chunks:\\nBEGIN of knowledge_search tool results.\\n\", \"type\": \"text\"}, {\"text\": \"Result 1:\\nDocument_id:ea3f6\\nContent: conversational data, :func:`~torchtune.datasets.chat_dataset` seems to be a good fit. For any\\ncustom local dataset we always need to specify ``source``, ``data_files``, and ``split`` for any dataset\\nbuilder in torchtune. For :func:`~torchtune.datasets.chat_dataset`, we additionally need to specify\\n``conversation_column`` and ``conversation_style``. Our data follows the ``\\\"sharegpt\\\"`` format, so\\nwe can specify that here. Altogether, our :func:`~torchtune.datasets.chat_dataset` call should\\nlook like so:\\n\\n.. code-block:: python\\n\\n from torchtune.datasets import chat_dataset\\n from torchtune.models.llama3 import llama3_tokenizer\\n\\n tokenizer = llama3_tokenizer(\\\"/tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\\")\\n ds = chat_dataset(\\n tokenizer=tokenizer,\\n source=\\\"json\\\",\\n data_files=\\\"data/my_data.json\\\",\\n split=\\\"train\\\",\\n conversation_column=\\\"dialogue\\\",\\n conversation_style=\\\"sharegpt\\\",\\n )\\n\\n.. code-block:: yaml\\n\\n # In config\\n tokenizer:\\n _component_: torchtune.models.llama3.llama3_tokenizer\\n path: /tmp/Meta-Llama-3-8B-Instruct/original/tokenizer.model\\n\\n dataset:\\n _component_: torchtune.datasets.chat_dataset\\n source: json\\n data_files: data/my_data.json\\n split: train\\n conversation_column: dialogue\\n conversation_style: sharegpt\\n\\n.. note::\\n You can pass in any keyword argument for `load_dataset `_ into all our\\n Dataset classes and they will honor them. This is useful for common parameters\\n such as specifying the data split with :code:`split` or configuration with\\n :code:`name`\\n\\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\\nIf you already know what LoRA is and want to get straight to running\\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\\n\\n.. grid:: 2\\n\\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\\n\\n * What LoRA is and how it saves memory during finetuning\\n * An overview of LoRA components in torchtune\\n * How to run a LoRA finetune using torchtune\\n * How to experiment with different LoRA configurations\\n\\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\\n\\n * Be familiar with :ref:`torchtune`\\n * Make sure to :ref:`install torchtune`\\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\\n\\nWhat is LoRA?\\n-------------\\n\\n`LoRA `_ is an adapter-based method for\\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\\ntransformer models, in which case it is common to add the low-rank matrices\\nto some of the linear projections in each transformer layer's self-attention.\\n\\n.. note::\\n\\n If you're unfamiliar, check out these references for the `definition of rank `_\\n and discussion of `low-rank approximations `_.\\n\\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\\nyou can expect to see memory savings due to a substantial reduction in the\\nnumber of parameters with gradients. When using an optimizer with momentum,\\nlike `AdamW `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"Result 4:\\nDocument_id:5c435\\nContent: 06% of all params are trainable.\\n\\n.. note::\\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\\n of in the recipe.\\n\\n\\n.. _lora_recipe_label:\\n\\nLoRA finetuning recipe in torchtune\\n-----------------------------------\\n\\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\\n\\n.. code-block:: bash\\n\\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\\n\\n.. note::\\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\\n or by directly modifying the :code:`7B_lora.yaml` file. See our \\\"\\\":ref:`config_tutorial_label`\\\" recipe\\n for more details on how you can easily clone and modify torchtune configs.\\n\\n.. note::\\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\\n and (b) the memory constraints of your hardware.\\n\\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\\n\\n.. code-block:: yaml\\n\\n # Model Arguments\\n model:\\n _component_: lora_llama2_7b\\n lora_attn_modules: ['q_proj', 'v_proj']\\n lora_rank: 8\\n lora_alpha: 16\\n ...\\n\\nWe see that the\\n\", \"type\": \"text\"}, {\"text\": \"Result 5:\\nDocument_id:91d52\\nContent: etune\\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.use_dora=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n use_dora: True\\n\\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. You can also quantize the base model weights like in :ref:`glossary_qlora` by using ``quantize=True`` to reap\\neven more memory savings!\\n\\n.. code-block:: bash\\n\\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\\\\n model.apply_lora_to_mlp=True \\\\\\n model.lora_attn_modules=[\\\"q_proj\\\",\\\"k_proj\\\",\\\"v_proj\\\"] \\\\\\n model.lora_rank=16 \\\\\\n model.lora_alpha=32 \\\\\\n model.use_dora=True \\\\\\n model.quantize_base=True\\n\\n.. code-block:: yaml\\n\\n model:\\n _component_: torchtune.models.lora_llama3_8b\\n apply_lora_to_mlp: True\\n lora_attn_modules: [\\\"q_proj\\\", \\\"k_proj\\\", \\\"v_proj\\\"]\\n lora_rank: 16\\n lora_alpha: 32\\n use_dora: True\\n quantize_base: True\\n\\n\\n.. note::\\n\\n Under the hood, we've enabled DoRA by adding the :class:`~torchtune.modules.peft.DoRALinear` module, which we swap\\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\\n\\n.. _glossary_distrib:\\n\\n\\n.. TODO\\n\\n.. Distributed\\n.. -----------\\n\\n.. .. _glossary_fsdp:\\n\\n.. Fully Sharded Data Parallel (FSDP)\\n.. ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^\\n\\n.. All our ``_distributed`` recipes use `FSDP `.\\n.. .. _glossary_fsdp2:\\n\\n\", \"type\": \"text\"}, {\"text\": \"END of knowledge_search tool results.\\n\", \"type\": \"text\"}], \"role\": \"tool\", \"tool_name\": \"knowledge_search\"}}]], {\"response_format\": null, \"sampling_params\": {\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"SamplingParams\", \"data\": {\"max_tokens\": 0, \"repetition_penalty\": 1.0, \"strategy\": {\"temperature\": 0.0001, \"top_p\": 0.9, \"type\": \"top_p\"}}}, \"stream\": true, \"tool_config\": {\"__module__\": \"llama_stack.apis.inference.inference\", \"__pydantic__\": \"ToolConfig\", \"data\": {\"system_message_behavior\": {\"__enum__\": \"SystemMessageBehavior\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"append\"}, \"tool_choice\": {\"__enum__\": \"ToolChoice\", \"__module__\": \"llama_stack.apis.inference.inference\", \"value\": \"auto\"}, \"tool_prompt_format\": null}}, \"tool_prompt_format\": null, \"tools\": [{\"__module__\": \"llama_stack.models.llama.datatypes\", \"__pydantic__\": \"ToolDefinition\", \"data\": {\"description\": \"Search for information in a database.\", \"parameters\": {\"query\": {\"default\": null, \"description\": \"The query to search for. Can be a natural language sentence or keywords.\", \"param_type\": \"string\", \"required\": true}}, \"tool_name\": \"knowledge_search\"}}]}]": { "chunks": [ { "__module__": "llama_stack.apis.inference.inference", @@ -18695,27 +20520,7 @@ "data": { "event": { "delta": { - "text": "'m ready to help you answer questions about", - "type": "text" - }, - "event_type": { - "__enum__": "ChatCompletionResponseEventType", - "__module__": "llama_stack.apis.inference.inference", - "value": "progress" - }, - "logprobs": null, - "stop_reason": null - }, - "metrics": null - } - }, - { - "__module__": "llama_stack.apis.inference.inference", - "__pydantic__": "ChatCompletionResponseStreamChunk", - "data": { - "event": { - "delta": { - "text": " Torchtune based on the documentation you provided. What's your", + "text": "'m ready to help you answer questions about Torchtune based on the", "type": "text" }, "event_type": { @@ -18735,7 +20540,7 @@ "data": { "event": { "delta": { - "text": " first question?", + "text": " documentation you provided. What's your first question?", "type": "text" }, "event_type": { @@ -18770,59 +20575,7 @@ "value": "end_of_turn" } }, - "metrics": [ - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "prompt_tokens", - "span_id": "o33PSCts", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:07.268876+00:00", - "__module__": "datetime" - }, - "trace_id": "edTwKHK5Q4K8yCqt", - "type": "metric", - "unit": "tokens", - "value": 75 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "completion_tokens", - "span_id": "o33PSCts", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:07.268906+00:00", - "__module__": "datetime" - }, - "trace_id": "edTwKHK5Q4K8yCqt", - "type": "metric", - "unit": "tokens", - "value": 35 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - 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"__module__": "llama_stack.apis.inference.inference", - "value": "progress" - }, - "logprobs": null, - "stop_reason": null - }, - "metrics": null - } - }, - { - "__module__": "llama_stack.apis.inference.inference", - "__pydantic__": "ChatCompletionResponseStreamChunk", - "data": { - "event": { - "delta": { - "text": " {\"query\": \"Perplexity", + "text": "type\": \"function\", \"name\": \"knowledge_search\", \"", "type": "text" }, "event_type": { @@ -22431,7 +23496,7 @@ "data": { "event": { "delta": { - "text": " company founding date\"}}", + "text": "parameters\": {\"query\": \"Perplexity company founding date\"}}", "type": "text" }, "event_type": { @@ -22460,7 +23525,7 @@ "arguments": { "query": "Perplexity company founding date" }, - "call_id": "4521686e-4866-48a0-b676-30333fee6f3e", + "call_id": "393a2b30-fbe9-44c3-b2b8-4ecdb086785f", "tool_name": "knowledge_search" }, "type": "tool_call" @@ -22496,64 +23561,12 @@ }, "logprobs": null, "stop_reason": { - "__enum__": "StopReason", - "__module__": "llama_stack.models.llama.datatypes", - "value": "end_of_turn" - } - }, - "metrics": [ - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "prompt_tokens", - "span_id": "8BkjXIt4", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:33.355430+00:00", - "__module__": "datetime" - }, - "trace_id": "CuKMEU31Q26a42-5", - "type": "metric", - "unit": "tokens", - "value": 67 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "completion_tokens", - "span_id": "8BkjXIt4", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:33.355462+00:00", - "__module__": "datetime" - }, - "trace_id": "CuKMEU31Q26a42-5", - "type": "metric", - "unit": "tokens", - "value": 37 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "total_tokens", - "span_id": "8BkjXIt4", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:33.355469+00:00", - "__module__": "datetime" - }, - "trace_id": "CuKMEU31Q26a42-5", - "type": "metric", - "unit": "tokens", - "value": 104 + "__enum__": "StopReason", + "__module__": "llama_stack.models.llama.datatypes", + "value": "end_of_turn" } - ] + }, + "metrics": null } } ], @@ -22617,7 +23630,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "{\"type\": \"function\", \"name\":", + "tool_call": "{\"type\": \"function\", \"name\": \"knowledge", "type": "tool_call" }, "event_type": { @@ -22642,7 +23655,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": " \"knowledge_search\", \"parameters\": {\"", + "tool_call": "_search\", \"parameters\": {\"query\": \"Perplexity", "type": "tool_call" }, "event_type": { @@ -22667,7 +23680,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "query\": \"Perplexity company founding date\"}}", + "tool_call": " company founding date\"}}", "type": "tool_call" }, "event_type": { @@ -22696,7 +23709,7 @@ "arguments": { "query": "Perplexity company founding date" }, - "call_id": "56701398-4b26-4359-aef2-438255259953", + "call_id": "84505681-7471-4e1d-8779-916703da7dbb", "tool_name": "knowledge_search" }, "type": "tool_call" @@ -22737,59 +23750,7 @@ "value": "end_of_turn" } }, - "metrics": [ - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "prompt_tokens", - "span_id": "QTbOWgfM", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:26.519884+00:00", - "__module__": "datetime" - }, - "trace_id": "CuKMEU31Q26a42-5", - "type": "metric", - "unit": "tokens", - "value": 29 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "completion_tokens", - "span_id": "QTbOWgfM", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:26.519949+00:00", - "__module__": "datetime" - }, - "trace_id": "CuKMEU31Q26a42-5", - "type": "metric", - "unit": "tokens", - "value": 10 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "total_tokens", - "span_id": "QTbOWgfM", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:26.519955+00:00", - "__module__": "datetime" - }, - "trace_id": "CuKMEU31Q26a42-5", - "type": "metric", - "unit": "tokens", - "value": 39 - } - ] + "metrics": null } } ], @@ -22843,7 +23804,7 @@ "data": { "event": { "delta": { - "text": " NBA was created on August 3, 1949, with", + "text": " NBA was created on August 3, 1949, with the", "type": "text" }, "event_type": { @@ -22863,7 +23824,7 @@ "data": { "event": { "delta": { - "text": " the merger of the Basketball Association of America (BAA) and", + "text": " merger of the Basketball Association of America (BAA) and the National", "type": "text" }, "event_type": { @@ -22883,7 +23844,7 @@ "data": { "event": { "delta": { - "text": " the National Basketball League (NBL).", + "text": " Basketball League (NBL).", "type": "text" }, "event_type": { @@ -22918,59 +23879,7 @@ "value": "end_of_turn" } }, - "metrics": [ - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "prompt_tokens", - "span_id": "W6iEU_Dm", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:37.336705+00:00", - "__module__": "datetime" - }, - "trace_id": "4Y9e6Ll1RgS_fFdF", - "type": "metric", - "unit": "tokens", - "value": 103 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "completion_tokens", - "span_id": "W6iEU_Dm", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:37.336742+00:00", - "__module__": "datetime" - }, - "trace_id": "4Y9e6Ll1RgS_fFdF", - "type": "metric", - "unit": "tokens", - "value": 45 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "total_tokens", - "span_id": "W6iEU_Dm", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:37.336750+00:00", - "__module__": "datetime" - }, - "trace_id": "4Y9e6Ll1RgS_fFdF", - "type": "metric", - "unit": "tokens", - "value": 148 - } - ] + "metrics": null } } ], @@ -23024,7 +23933,47 @@ "data": { "event": { "delta": { - "text": "type\": \"function\", \"name\": \"knowledge_search\", \"parameters\":", + "text": "type\": \"function\", \"name\":", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": " \"knowledge_search\", \"parameters\":", + "type": "text" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "text": " {\"query\": \"when was the", "type": "text" }, "event_type": { @@ -23044,7 +23993,7 @@ "data": { "event": { "delta": { - "text": " {\"query\": \"when was the nba created\"}}", + "text": " nba created\"}}", "type": "text" }, "event_type": { @@ -23073,7 +24022,7 @@ "arguments": { "query": "when was the nba created" }, - "call_id": "82c81003-40bb-4e28-bfb0-9bae122da716", + "call_id": "e8ac462f-e6e7-4ee8-8d18-09e330454890", "tool_name": "knowledge_search" }, "type": "tool_call" @@ -23114,59 +24063,7 @@ "value": "end_of_turn" } }, - "metrics": [ - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "prompt_tokens", - "span_id": "WX35-rLp", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:36.663989+00:00", - "__module__": "datetime" - }, - "trace_id": "4Y9e6Ll1RgS_fFdF", - "type": "metric", - "unit": "tokens", - "value": 65 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "completion_tokens", - "span_id": "WX35-rLp", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:36.664032+00:00", - "__module__": "datetime" - }, - "trace_id": "4Y9e6Ll1RgS_fFdF", - "type": "metric", - "unit": "tokens", - "value": 37 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "total_tokens", - "span_id": "WX35-rLp", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:36.664039+00:00", - "__module__": "datetime" - }, - "trace_id": "4Y9e6Ll1RgS_fFdF", - "type": "metric", - "unit": "tokens", - "value": 102 - } - ] + "metrics": null } } ], @@ -23230,7 +24127,32 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": "{\"type\": \"function\", \"name\": \"knowledge_search\", \"parameters\":", + "tool_call": "{\"type\": \"function\", \"name", + "type": "tool_call" + }, + "event_type": { + "__enum__": "ChatCompletionResponseEventType", + "__module__": "llama_stack.apis.inference.inference", + "value": "progress" + }, + "logprobs": null, + "stop_reason": null + }, + "metrics": null + } + }, + { + "__module__": "llama_stack.apis.inference.inference", + "__pydantic__": "ChatCompletionResponseStreamChunk", + "data": { + "event": { + "delta": { + "parse_status": { + "__enum__": "ToolCallParseStatus", + "__module__": "llama_stack.apis.common.content_types", + "value": "in_progress" + }, + "tool_call": "\": \"knowledge_search\", \"parameters\": {\"query\": \"when", "type": "tool_call" }, "event_type": { @@ -23255,7 +24177,7 @@ "__module__": "llama_stack.apis.common.content_types", "value": "in_progress" }, - "tool_call": " {\"query\": \"when was the nba created\"}}", + "tool_call": " was the nba created\"}}", "type": "tool_call" }, "event_type": { @@ -23284,7 +24206,7 @@ "arguments": { "query": "when was the nba created" }, - "call_id": "8fcbc41f-3723-46dd-aee4-948caaa2b458", + "call_id": "db2abfd7-9fe5-4957-b2b4-84b1f120092b", "tool_name": "knowledge_search" }, "type": "tool_call" @@ -23325,59 +24247,7 @@ "value": "end_of_turn" } }, - "metrics": [ - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "prompt_tokens", - "span_id": "vNEXImhz", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:35.213589+00:00", - "__module__": "datetime" - }, - "trace_id": "4Y9e6Ll1RgS_fFdF", - "type": "metric", - "unit": "tokens", - "value": 27 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "completion_tokens", - "span_id": "vNEXImhz", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:35.213622+00:00", - "__module__": "datetime" - }, - "trace_id": "4Y9e6Ll1RgS_fFdF", - "type": "metric", - "unit": "tokens", - "value": 10 - }, - { - "attributes": { - "model_id": "meta-llama/Llama-3.1-8B-Instruct", - "provider_id": "fireworks" - }, - "metric": "total_tokens", - "span_id": "vNEXImhz", - "timestamp": { - "__class__": "datetime", - "__datetime__": "2025-03-06T04:49:35.213629+00:00", - "__module__": "datetime" - }, - "trace_id": "4Y9e6Ll1RgS_fFdF", - "type": "metric", - "unit": "tokens", - "value": 37 - } - ] + "metrics": null } } ], diff --git a/tests/integration/fixtures/recorded_responses/invoke_tool.json b/tests/integration/fixtures/recorded_responses/invoke_tool.json index 08d5628eda..3e6b6a3078 100644 --- a/tests/integration/fixtures/recorded_responses/invoke_tool.json +++ b/tests/integration/fixtures/recorded_responses/invoke_tool.json @@ -64,6 +64,19 @@ } } }, + "[[], {\"kwargs\": {\"code\": \"import pandas as pd\\ndf = pd.read_csv(\\\"\")\\nprint(df.head())\", \"session_id\": \"\"}, \"tool_name\": \"code_interpreter\"}]": { + "type": "value", + "value": { + "__module__": "llama_stack.apis.tools.tools", + "__pydantic__": "ToolInvocationResult", + "data": { + "content": "completed\n[stderr]\nTraceback (most recent call last):\n line 5, in \n from bwrap.core import main\nModuleNotFoundError: No module named 'bwrap.core'\n[/stderr]", + "error_code": null, + "error_message": null, + "metadata": null + } + } + }, "[[], {\"kwargs\": {\"code\": \"import pandas as pd\\nimport code_interpreter\\n\\n# Load the CSV file\\ndf = pd.read_csv(\\\"\")\\n\\n# Print the first few rows of the dataframe\\nprint(df.head())\\n\\n# Print the data types of each column\\nprint(df.dtypes)\\n\\n# Print the summary statistics of the dataframe\\nprint(df.describe())\", \"session_id\": \"\"}, \"tool_name\": \"code_interpreter\"}]": { "type": "value", "value": { @@ -77,6 +90,19 @@ } } }, + "[[], {\"kwargs\": {\"code\": \"import pandas as pd\\nimport matplotlib.pyplot as plt\\n\\n# Load data\\ndf = pd.read_csv('inflation.csv')\\n\\n# Convert 'date' column to datetime\\ndf['date'] = pd.to_datetime(df['date'])\\n\\n# Group by year and calculate average inflation\\naverage_inflation = df.groupby(df['date'].dt.year)['inflation'].mean()\\n\\n# Plot the time series\\nplt.figure(figsize=(10,6))\\nplt.plot(average_inflation.index, average_inflation.values, marker='o')\\nplt.title('Average Yearly Inflation')\\nplt.xlabel('Year')\\nplt.ylabel('Average Inflation')\\nplt.grid(True)\\nplt.show()\", \"session_id\": \"\"}, \"tool_name\": \"code_interpreter\"}]": { + "type": "value", + "value": { + "__module__": "llama_stack.apis.tools.tools", + "__pydantic__": "ToolInvocationResult", + "data": { + "content": "completed\n[stderr]\nTraceback (most recent call last):\n line 5, in \n from bwrap.core import main\nModuleNotFoundError: No module named 'bwrap.core'\n[/stderr]", + "error_code": null, + "error_message": null, + "metadata": null + } + } + }, "[[], {\"kwargs\": {\"code\": \"import pandas as pd\\nimport matplotlib.pyplot as plt\\n\\n# Load data\\ndf = pd.read_csv(\\\"inflation.csv\\\")\\n\\n# Convert date column to datetime\\ndf['date'] = pd.to_datetime(df['date'])\\n\\n# Group by year and calculate average inflation\\naverage_inflation = df.groupby(df['date'].dt.year)['inflation'].mean()\\n\\n# Plot average yearly inflation as a time series\\nplt.figure(figsize=(10,6))\\nplt.plot(average_inflation.index, average_inflation.values, marker='o')\\nplt.title('Average Yearly Inflation')\\nplt.xlabel('Year')\\nplt.ylabel('Average Inflation')\\nplt.grid(True)\\nplt.show()\", \"session_id\": \"\"}, \"tool_name\": \"code_interpreter\"}]": { "type": "value", "value": { @@ -115,23 +141,23 @@ "type": "text" }, { - "text": "Result 1:\nDocument_id:1b69d\nContent: .. _lora_finetune_label:\n\n============================\nFine-Tuning Llama2 with LoRA\n============================\n\nThis guide will teach you about `LoRA `_, a parameter-efficient finetuning technique,\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\nIf you already know what LoRA is and want to get straight to running\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\n\n.. grid:: 2\n\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\n\n * What LoRA is and how it saves memory during finetuning\n * An overview of LoRA components in torchtune\n * How to run a LoRA finetune using torchtune\n * How to experiment with different LoRA configurations\n\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\n\n * Be familiar with :ref:`torchtune`\n * Make sure to :ref:`install torchtune`\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\n\nWhat is LoRA?\n-------------\n\n`LoRA `_ is an adapter-based method for\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\ntransformer models, in which case it is common to add the low-rank matrices\nto some of the linear projections in each transformer layer's self-attention.\n\n.. note::\n\n If you're unfamiliar, check out these references for the `definition of rank `_\n and discussion of `low-rank approximations `_.\n\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\nyou can expect to see memory savings due to a substantial reduction in the\nnumber of parameters with gradients. When using an optimizer with momentum,\nlike `AdamW `_, a parameter-efficient finetuning technique,\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\nIf you already know what LoRA is and want to get straight to running\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\n\n.. grid:: 2\n\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\n\n * What LoRA is and how it saves memory during finetuning\n * An overview of LoRA components in torchtune\n * How to run a LoRA finetune using torchtune\n * How to experiment with different LoRA configurations\n\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\n\n * Be familiar with :ref:`torchtune`\n * Make sure to :ref:`install torchtune`\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\n\nWhat is LoRA?\n-------------\n\n`LoRA `_ is an adapter-based method for\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\ntransformer models, in which case it is common to add the low-rank matrices\nto some of the linear projections in each transformer layer's self-attention.\n\n.. note::\n\n If you're unfamiliar, check out these references for the `definition of rank `_\n and discussion of `low-rank approximations `_.\n\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\nyou can expect to see memory savings due to a substantial reduction in the\nnumber of parameters with gradients. When using an optimizer with momentum,\nlike `AdamW ` alone will not handle the definition of which parameters are trainable.\n See :ref:`below` for how to do this.\n\nLet's inspect each of these models a bit more closely.\n\n.. code-block:: bash\n\n # Print the first layer's self-attention in the usual Llama2 model\n >>> print(base_model.layers[0].attn)\n MultiHeadAttention(\n (q_proj): Linear(in_features=4096, out_features=4096, bias=False)\n (k_proj): Linear(in_features=4096, out_features=4096, bias=False)\n (v_proj): Linear(in_features=4096, out_features=4096, bias=False)\n (output_proj): Linear(in_features=4096, out_features=4096, bias=False)\n (pos_embeddings): RotaryPositionalEmbeddings()\n )\n\n # Print the same for Llama2 with LoRA weights\n >>> print(lora_model.layers[0].attn)\n MultiHeadAttention(\n (q_proj): LoRALinear(\n (dropout): Dropout(p=0.0, inplace=False)\n \n", + "text": "Result 2:\nDocument_id:5c435\nContent: LoRA to Llama2 models\n------------------------------\n\nWith torchtune, we can easily apply LoRA to Llama2 with a variety of different configurations.\nLet's take a look at how to construct Llama2 models in torchtune with and without LoRA.\n\n.. code-block:: python\n\n from torchtune.models.llama2 import llama2_7b, lora_llama2_7b\n\n # Build Llama2 without any LoRA layers\n base_model = llama2_7b()\n\n # The default settings for lora_llama2_7b will match those for llama2_7b\n # We just need to define which layers we want LoRA applied to.\n # Within each self-attention, we can choose from [\"q_proj\", \"k_proj\", \"v_proj\", and \"output_proj\"].\n # We can also set apply_lora_to_mlp=True or apply_lora_to_output=True to apply LoRA to other linear\n # layers outside of the self-attention.\n lora_model = lora_llama2_7b(lora_attn_modules=[\"q_proj\", \"v_proj\"])\n\n.. note::\n\n Calling :func:`lora_llama_2_7b ` alone will not handle the definition of which parameters are trainable.\n See :ref:`below` for how to do this.\n\nLet's inspect each of these models a bit more closely.\n\n.. code-block:: bash\n\n # Print the first layer's self-attention in the usual Llama2 model\n >>> print(base_model.layers[0].attn)\n MultiHeadAttention(\n (q_proj): Linear(in_features=4096, out_features=4096, bias=False)\n (k_proj): Linear(in_features=4096, out_features=4096, bias=False)\n (v_proj): Linear(in_features=4096, out_features=4096, bias=False)\n (output_proj): Linear(in_features=4096, out_features=4096, bias=False)\n (pos_embeddings): RotaryPositionalEmbeddings()\n )\n\n # Print the same for Llama2 with LoRA weights\n >>> print(lora_model.layers[0].attn)\n MultiHeadAttention(\n (q_proj): LoRALinear(\n (dropout): Dropout(p=0.0, inplace=False)\n \n", "type": "text" }, { - "text": "Result 3:\nDocument_id:1b69d\nContent: 06% of all params are trainable.\n\n.. note::\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\n of in the recipe.\n\n\n.. _lora_recipe_label:\n\nLoRA finetuning recipe in torchtune\n-----------------------------------\n\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\n\n.. code-block:: bash\n\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\n\n.. note::\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\n or by directly modifying the :code:`7B_lora.yaml` file. See our \"\":ref:`config_tutorial_label`\" recipe\n for more details on how you can easily clone and modify torchtune configs.\n\n.. note::\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\n and (b) the memory constraints of your hardware.\n\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\n\n.. code-block:: yaml\n\n # Model Arguments\n model:\n _component_: lora_llama2_7b\n lora_attn_modules: ['q_proj', 'v_proj']\n lora_rank: 8\n lora_alpha: 16\n ...\n\nWe see that the\n", + "text": "Result 3:\nDocument_id:5c435\nContent: 06% of all params are trainable.\n\n.. note::\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\n of in the recipe.\n\n\n.. _lora_recipe_label:\n\nLoRA finetuning recipe in torchtune\n-----------------------------------\n\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\n\n.. code-block:: bash\n\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\n\n.. note::\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\n or by directly modifying the :code:`7B_lora.yaml` file. See our \"\":ref:`config_tutorial_label`\" recipe\n for more details on how you can easily clone and modify torchtune configs.\n\n.. note::\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\n and (b) the memory constraints of your hardware.\n\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\n\n.. code-block:: yaml\n\n # Model Arguments\n model:\n _component_: lora_llama2_7b\n lora_attn_modules: ['q_proj', 'v_proj']\n lora_rank: 8\n lora_alpha: 16\n ...\n\nWe see that the\n", "type": "text" }, { - "text": "Result 4:\nDocument_id:1b69d\nContent: from our Llama2\nmodel without any wrappers or custom checkpoint conversion logic.\n\n.. code-block:: python\n\n # Assuming that base_model already has the pretrained Llama2 weights,\n # this will directly load them into your LoRA model without any conversion necessary.\n lora_model.load_state_dict(base_model.state_dict(), strict=False)\n\n.. note::\n Whenever loading weights with :code:`strict=False`, you should verify that any missing or extra keys in\n the loaded :code:`state_dict` are as expected. torchtune's LoRA recipes do this by default via\n :func:`validate_missing_and_unexpected_for_lora() `.\n\nOnce we've loaded the base model weights, we also want to set only LoRA parameters to trainable.\n\n.. _setting_trainable_params:\n\n.. code-block:: python\n\n from torchtune.modules.peft.peft_utils import get_adapter_params, set_trainable_params\n\n # Fetch all params from the model that are associated with LoRA.\n lora_params = get_adapter_params(lora_model)\n\n # Set requires_grad=True on lora_params, and requires_grad=False on all others.\n set_trainable_params(lora_model, lora_params)\n\n # Print the total number of parameters\n total_params = sum([p.numel() for p in lora_model.parameters()])\n trainable_params = sum([p.numel() for p in lora_model.parameters() if p.requires_grad])\n print(\n f\"\"\"\n {total_params} total params,\n {trainable_params}\" trainable params,\n {(100.0 * trainable_params / total_params):.2f}% of all params are trainable.\n \"\"\"\n )\n\n 6742609920 total params,\n 4194304 trainable params,\n 0.06% of all params are trainable.\n\n.. note::\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\n of in the recipe.\n\n\n.. _lora_recipe_label:\n\nLoRA finetuning recipe in torchtune\n-----------------------------------\n\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `.\n\nOnce we've loaded the base model weights, we also want to set only LoRA parameters to trainable.\n\n.. _setting_trainable_params:\n\n.. code-block:: python\n\n from torchtune.modules.peft.peft_utils import get_adapter_params, set_trainable_params\n\n # Fetch all params from the model that are associated with LoRA.\n lora_params = get_adapter_params(lora_model)\n\n # Set requires_grad=True on lora_params, and requires_grad=False on all others.\n set_trainable_params(lora_model, lora_params)\n\n # Print the total number of parameters\n total_params = sum([p.numel() for p in lora_model.parameters()])\n trainable_params = sum([p.numel() for p in lora_model.parameters() if p.requires_grad])\n print(\n f\"\"\"\n {total_params} total params,\n {trainable_params}\" trainable params,\n {(100.0 * trainable_params / total_params):.2f}% of all params are trainable.\n \"\"\"\n )\n\n 6742609920 total params,\n 4194304 trainable params,\n 0.06% of all params are trainable.\n\n.. note::\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\n of in the recipe.\n\n\n.. _lora_recipe_label:\n\nLoRA finetuning recipe in torchtune\n-----------------------------------\n\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_ into all our\n Dataset classes and they will honor them. This is useful for common parameters\n such as specifying the data split with :code:`split` or configuration with\n :code:`name`\n\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\nall messages according to their `recommendations `_ into all our\n Dataset classes and they will honor them. This is useful for common parameters\n such as specifying the data split with :code:`split` or configuration with\n :code:`name`\n\nIf you needed to add a prompt template, you would simply pass it into the tokenizer.\nSince we're fine-tuning Llama3, the tokenizer will handle all formatting for\nus and prompt templates are optional. Other models such as Mistral's :class:`~torchtune.models.mistral._tokenizer.MistralTokenizer`,\nuse a chat template by default (:class:`~torchtune.models.mistral.MistralChatTemplate`) to format\nall messages according to their `recommendations `_, a parameter-efficient finetuning technique,\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\nIf you already know what LoRA is and want to get straight to running\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\n\n.. grid:: 2\n\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\n\n * What LoRA is and how it saves memory during finetuning\n * An overview of LoRA components in torchtune\n * How to run a LoRA finetune using torchtune\n * How to experiment with different LoRA configurations\n\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\n\n * Be familiar with :ref:`torchtune`\n * Make sure to :ref:`install torchtune`\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\n\nWhat is LoRA?\n-------------\n\n`LoRA `_ is an adapter-based method for\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\ntransformer models, in which case it is common to add the low-rank matrices\nto some of the linear projections in each transformer layer's self-attention.\n\n.. note::\n\n If you're unfamiliar, check out these references for the `definition of rank `_\n and discussion of `low-rank approximations `_.\n\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\nyou can expect to see memory savings due to a substantial reduction in the\nnumber of parameters with gradients. When using an optimizer with momentum,\nlike `AdamW `_, a parameter-efficient finetuning technique,\nand show you how you can use torchtune to finetune a Llama2 model with LoRA.\nIf you already know what LoRA is and want to get straight to running\nyour own LoRA finetune in torchtune, you can jump to :ref:`LoRA finetuning recipe in torchtune`.\n\n.. grid:: 2\n\n .. grid-item-card:: :octicon:`mortar-board;1em;` What you will learn\n\n * What LoRA is and how it saves memory during finetuning\n * An overview of LoRA components in torchtune\n * How to run a LoRA finetune using torchtune\n * How to experiment with different LoRA configurations\n\n .. grid-item-card:: :octicon:`list-unordered;1em;` Prerequisites\n\n * Be familiar with :ref:`torchtune`\n * Make sure to :ref:`install torchtune`\n * Make sure you have downloaded the :ref:`Llama2-7B model weights`\n\nWhat is LoRA?\n-------------\n\n`LoRA `_ is an adapter-based method for\nparameter-efficient finetuning that adds trainable low-rank decomposition matrices to different layers of a neural network,\nthen freezes the network's remaining parameters. LoRA is most commonly applied to\ntransformer models, in which case it is common to add the low-rank matrices\nto some of the linear projections in each transformer layer's self-attention.\n\n.. note::\n\n If you're unfamiliar, check out these references for the `definition of rank `_\n and discussion of `low-rank approximations `_.\n\nBy finetuning with LoRA (as opposed to finetuning all model parameters),\nyou can expect to see memory savings due to a substantial reduction in the\nnumber of parameters with gradients. When using an optimizer with momentum,\nlike `AdamW `.\n.. .. _glossary_fsdp2:\n\n", + "text": "Result 3:\nDocument_id:91d52\nContent: ` module, which we swap\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\n\n.. _glossary_distrib:\n\n\n.. TODO\n\n.. Distributed\n.. -----------\n\n.. .. _glossary_fsdp:\n\n.. Fully Sharded Data Parallel (FSDP)\n.. ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^\n\n.. All our ``_distributed`` recipes use `FSDP `.\n.. .. _glossary_fsdp2:\n\n", "type": "text" }, { - "text": "Result 4:\nDocument_id:20e5d\nContent: 06% of all params are trainable.\n\n.. note::\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\n of in the recipe.\n\n\n.. _lora_recipe_label:\n\nLoRA finetuning recipe in torchtune\n-----------------------------------\n\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\n\n.. code-block:: bash\n\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\n\n.. note::\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\n or by directly modifying the :code:`7B_lora.yaml` file. See our \"\":ref:`config_tutorial_label`\" recipe\n for more details on how you can easily clone and modify torchtune configs.\n\n.. note::\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\n and (b) the memory constraints of your hardware.\n\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\n\n.. code-block:: yaml\n\n # Model Arguments\n model:\n _component_: lora_llama2_7b\n lora_attn_modules: ['q_proj', 'v_proj']\n lora_rank: 8\n lora_alpha: 16\n ...\n\nWe see that the\n", + "text": "Result 4:\nDocument_id:5c435\nContent: 06% of all params are trainable.\n\n.. note::\n If you are directly using the LoRA recipe (as detailed :ref:`here`), you need only pass the\n relevant checkpoint path. Loading model weights and setting trainable parameters will be taken care\n of in the recipe.\n\n\n.. _lora_recipe_label:\n\nLoRA finetuning recipe in torchtune\n-----------------------------------\n\nFinally, we can put it all together and finetune a model using torchtune's `LoRA recipe `_.\nMake sure that you have first downloaded the Llama2 weights and tokenizer by following :ref:`these instructions`.\nYou can then run the following command to perform a LoRA finetune of Llama2-7B with two GPUs (each having VRAM of at least 16GB):\n\n.. code-block:: bash\n\n tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config llama2/7B_lora\n\n.. note::\n Make sure to point to the location of your Llama2 weights and tokenizer. This can be done\n either by adding :code:`checkpointer.checkpoint_files=[my_model_checkpoint_path] tokenizer_checkpoint=my_tokenizer_checkpoint_path`\n or by directly modifying the :code:`7B_lora.yaml` file. See our \"\":ref:`config_tutorial_label`\" recipe\n for more details on how you can easily clone and modify torchtune configs.\n\n.. note::\n You can modify the value of :code:`nproc_per_node` depending on (a) the number of GPUs you have available,\n and (b) the memory constraints of your hardware.\n\nThe preceding command will run a LoRA finetune with torchtune's factory settings, but we may want to experiment a bit.\nLet's take a closer look at some of the :code:`lora_finetune_distributed` config.\n\n.. code-block:: yaml\n\n # Model Arguments\n model:\n _component_: lora_llama2_7b\n lora_attn_modules: ['q_proj', 'v_proj']\n lora_rank: 8\n lora_alpha: 16\n ...\n\nWe see that the\n", "type": "text" }, { - "text": "Result 5:\nDocument_id:0cd43\nContent: etune\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\n\n.. code-block:: bash\n\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\n model.use_dora=True\n\n.. code-block:: yaml\n\n model:\n _component_: torchtune.models.lora_llama3_8b\n use_dora: True\n\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. You can also quantize the base model weights like in :ref:`glossary_qlora` by using ``quantize=True`` to reap\neven more memory savings!\n\n.. code-block:: bash\n\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\n model.apply_lora_to_mlp=True \\\n model.lora_attn_modules=[\"q_proj\",\"k_proj\",\"v_proj\"] \\\n model.lora_rank=16 \\\n model.lora_alpha=32 \\\n model.use_dora=True \\\n model.quantize_base=True\n\n.. code-block:: yaml\n\n model:\n _component_: torchtune.models.lora_llama3_8b\n apply_lora_to_mlp: True\n lora_attn_modules: [\"q_proj\", \"k_proj\", \"v_proj\"]\n lora_rank: 16\n lora_alpha: 32\n use_dora: True\n quantize_base: True\n\n\n.. note::\n\n Under the hood, we've enabled DoRA by adding the :class:`~torchtune.modules.peft.DoRALinear` module, which we swap\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\n\n.. _glossary_distrib:\n\n\n.. TODO\n\n.. Distributed\n.. -----------\n\n.. .. _glossary_fsdp:\n\n.. Fully Sharded Data Parallel (FSDP)\n.. ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^\n\n.. All our ``_distributed`` recipes use `FSDP `.\n.. .. _glossary_fsdp2:\n\n", + "text": "Result 5:\nDocument_id:91d52\nContent: etune\n:func:`torchtune.models.llama3.llama3_8b` with DoRA, you would use :func:`torchtune.models.llama3.lora_llama3_8b` with ``use_dora=True``:\n\n.. code-block:: bash\n\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\n model.use_dora=True\n\n.. code-block:: yaml\n\n model:\n _component_: torchtune.models.lora_llama3_8b\n use_dora: True\n\nSince DoRA extends LoRA, the parameters for :ref:`customizing LoRA ` are identical. You can also quantize the base model weights like in :ref:`glossary_qlora` by using ``quantize=True`` to reap\neven more memory savings!\n\n.. code-block:: bash\n\n tune run lora_finetune_single_device --config llama3/8B_lora_single_device \\\n model.apply_lora_to_mlp=True \\\n model.lora_attn_modules=[\"q_proj\",\"k_proj\",\"v_proj\"] \\\n model.lora_rank=16 \\\n model.lora_alpha=32 \\\n model.use_dora=True \\\n model.quantize_base=True\n\n.. code-block:: yaml\n\n model:\n _component_: torchtune.models.lora_llama3_8b\n apply_lora_to_mlp: True\n lora_attn_modules: [\"q_proj\", \"k_proj\", \"v_proj\"]\n lora_rank: 16\n lora_alpha: 32\n use_dora: True\n quantize_base: True\n\n\n.. note::\n\n Under the hood, we've enabled DoRA by adding the :class:`~torchtune.modules.peft.DoRALinear` module, which we swap\n out for :class:`~torchtune.modules.peft.LoRALinear` when ``use_dora=True``.\n\n.. _glossary_distrib:\n\n\n.. TODO\n\n.. Distributed\n.. -----------\n\n.. .. _glossary_fsdp:\n\n.. Fully Sharded Data Parallel (FSDP)\n.. ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^\n\n.. All our ``_distributed`` recipes use `FSDP `.\n.. .. _glossary_fsdp2:\n\n", "type": "text" }, { @@ -363,11 +389,11 @@ "error_message": null, "metadata": { "document_ids": [ - "42933068-5743-4fe6-983d-3ca299971cba", - "20e5d737-1eef-4529-87bc-9759a59d943e", - "0cd436a4-370e-4962-9313-fde7b2079a10", - "20e5d737-1eef-4529-87bc-9759a59d943e", - "0cd436a4-370e-4962-9313-fde7b2079a10" + "ea3f6e4d-9e11-4bd0-8322-6371f7b0de0c", + "5c435311-5dba-4b40-b8c9-9fd37fbd9b29", + "91d525eb-07dc-4cad-8596-dd0e6bd011f1", + "5c435311-5dba-4b40-b8c9-9fd37fbd9b29", + "91d525eb-07dc-4cad-8596-dd0e6bd011f1" ] } } @@ -379,7 +405,7 @@ "__module__": "llama_stack.apis.tools.tools", "__pydantic__": "ToolInvocationResult", "data": { - "content": "{\"query\": \"current CEO of Meta\", \"top_k\": [{\"title\": \"Meta - Leadership & Governance\", \"url\": \"https://investor.atmeta.com/leadership-and-governance/\", \"content\": \"Mark Zuckerberg is the founder, chairman and CEO of Meta, which he originally founded as Facebook in 2004. Mark is responsible for setting the overall direction and product strategy for the company. He leads the design of Meta's services and development of its core technology and infrastructure. Mark studied computer science at Harvard\", \"score\": 0.8342047, \"raw_content\": null}, {\"title\": \"Executives - Meta\", \"url\": \"https://about.meta.com/media-gallery/executives/\", \"content\": \"Mark Zuckerberg, Founder, Chairman and Chief Executive Officer Joel Kaplan, Chief Global Affairs Officer Susan Li, Chief Financial Officer Javier Olivan, Chief Operating Officer Chris Cox, Chief Product Officer Andrew \\u2018Boz\\u2019 Bosworth, Chief Technology Officer Jennifer Newstead, Chief Legal Officer Dave Wehner, Chief Strategy Officer Will Cathcart, Head of WhatsApp Naomi Gleit, Head of Product John Hegeman, Chief Revenue Officer Adam Mosseri, Head of Instagram Erin Egan, Chief Privacy Officer, Policy Michel Protti, Chief Privacy Officer, Product Alex Schultz, Chief Marketing Officer and VP of Analytics Tom Alison, Head of Facebook Nicola Mendelsohn, Head of Global Business Group Ahmad Al-Dahle, VP and Head of GenAI at Meta Joelle Pineau, Vice President of AI Research and Head of FAIR at Meta\", \"score\": 0.8190992, \"raw_content\": null}, {\"title\": \"Mark Zuckerberg, Founder, Chairman and Chief Executive Officer - Meta\", \"url\": \"https://about.meta.com/media-gallery/executives/mark-zuckerberg/\", \"content\": \"Mark Zuckerberg, Founder, Chairman and Chief Executive Officer | Meta Meta Quest Ray-Ban Meta Meta Horizon Meta AI Meta Verified Meta Pay Meta Horizon Workrooms Meta and you Learn about our community Shop Meta Meta Quest Meta Portal Meta Horizon Mark Zuckerberg is the founder, chairman and CEO of Meta, which he originally founded as Facebook in 2004. In October 2021, Facebook rebranded to Meta to reflect all of its products and services across its family of apps and a focus on developing social experiences for the metaverse \\u2014 moving beyond 2D screens toward immersive experiences like augmented and virtual reality to help build the next evolution in social technology. Shop Ray-Ban Meta glassesRay-Ban StoriesPrivacy informationSupported countries \\u00a9 2025 Meta\", \"score\": 0.79099923, \"raw_content\": null}, {\"title\": \"Meet the Executive CSuite Team of Meta (Facebook) [2025]\", \"url\": \"https://digitaldefynd.com/IQ/meet-the-executive-csuite-team-of-meta-facebook/\", \"content\": \"Harvard University Executive Programs Free Harvard University Courses As a chief financial officer of Meta, Susan Li oversees the firm\\u2019s finance and facilities team to keep track of the company\\u2019s overall financial health. The chief operating officer of Meta, Javier Olivan, oversees the firm\\u2019s business team, infrastructure, and other products. Andrew Bosworth, called Boz, serves as chief technology officer at Meta and is responsible for leading the firm\\u2019s AR/VR organization, Reality Labs. Andrew has also served as engineering director to oversee events, mobile monetization, and feed ads and as VP of ads and business platforms to lead engineering, design, analytics, and product teams. Meta\\u2019s c-suite team comprises experienced and diverse executives, having extensive experience in technology, finance, legal, and all major industries.\", \"score\": 0.7602419, \"raw_content\": null}, {\"title\": \"Mark Zuckerberg - Wikipedia\", \"url\": \"https://en.wikipedia.org/wiki/Mark_Zuckerberg\", \"content\": \"They began dating in 2003.[175] In September 2010, Chan, who was a medical student at the University of California, San Francisco at the time,[176] moved into his rented house in Palo Alto, California.[177][178] They married on May 19, 2012, in the grounds of his mansion in an event that also celebrated her graduation from medical school.[179][180] Zuckerberg revealed in July 2015 that they were expecting a baby girl and that Chan had previously experienced three miscarriages.[181] Their first daughter was born in December 2015.[182] They announced in a Chinese New Year video that their daughter's Chinese name is Chen Mingyu (Chinese: \\u9648\\u660e\\u5b87).[183] Their second daughter was born in August 2017.[184] Zuckerberg and his wife welcomed their third daughter in March 2023 and announced the news across his social media pages.[185] The couple also have a Puli dog named Beast,[186] who has over two million followers on Facebook.[187] Zuckerberg commissioned the visual artist Daniel Arsham to build a 7-foot-tall sculpture of his wife, which was unveiled in 2024.[188]\", \"score\": 0.05564338, \"raw_content\": null}]}", + "content": "{\"query\": \"current CEO of Meta\", \"top_k\": [{\"title\": \"Meet the Executive CSuite Team of Meta (Facebook) [2025]\", \"url\": \"https://digitaldefynd.com/IQ/meet-the-executive-csuite-team-of-meta-facebook/\", \"content\": \"Harvard University Executive Programs Free Harvard University Courses As a chief financial officer of Meta, Susan Li oversees the firm\\u2019s finance and facilities team to keep track of the company\\u2019s overall financial health. The chief operating officer of Meta, Javier Olivan, oversees the firm\\u2019s business team, infrastructure, and other products. Andrew Bosworth, called Boz, serves as chief technology officer at Meta and is responsible for leading the firm\\u2019s AR/VR organization, Reality Labs. Andrew has also served as engineering director to oversee events, mobile monetization, and feed ads and as VP of ads and business platforms to lead engineering, design, analytics, and product teams. Meta\\u2019s c-suite team comprises experienced and diverse executives, having extensive experience in technology, finance, legal, and all major industries.\", \"score\": 0.7602419, \"raw_content\": null}, {\"title\": \"Mark Zuckerberg - Forbes\", \"url\": \"https://www.forbes.com/profile/mark-zuckerberg/\", \"content\": \"Meta has donated $1 million to President-elect Donald Trump's inaugural fund, the company confirmed to various news outlets on Wednesday, a move that comes just weeks after its CEO Mark\", \"score\": 0.6701125, \"raw_content\": null}, {\"title\": \"Meta - Leadership & Governance\", \"url\": \"https://investor.atmeta.com/leadership-and-governance/\", \"content\": \"Mr. Andreessen was a co-founder of Netscape Communications Corporation, a software company, serving in various positions, including Chief Technology Officer and Executive Vice President of Products. Ms. Killefer also served as Assistant Secretary for Management, Chief Financial Officer, and Chief Operating Officer of the U.S. Department of the Treasury from 1997 to 2000 and as a member of the IRS Oversight Board from 2000 to 2005, including as Chair of the IRS Oversight Board from 2002 to 2004. Ms. Travis has served as Executive Vice President and Chief Financial Officer of The Estee Lauder Companies Inc., a global manufacturer and marketer of skin care, makeup, fragrance and hair care products, since August 2012.\", \"score\": 0.6175132, \"raw_content\": null}, {\"title\": \"META | Meta Platforms Inc. Company Profile & Executives - WSJ\", \"url\": \"https://www.wsj.com/market-data/quotes/META/company-people\", \"content\": \"Company profile for Meta Platforms Inc. including key executives, insider trading, ownership, revenue and average growth rates. View detailed META description & address.\", \"score\": 0.23361932, \"raw_content\": null}, {\"title\": \"Mark Zuckerberg - Wikipedia\", \"url\": \"https://en.wikipedia.org/wiki/Mark_Zuckerberg\", \"content\": \"They began dating in 2003.[175] In September 2010, Chan, who was a medical student at the University of California, San Francisco at the time,[176] moved into his rented house in Palo Alto, California.[177][178] They married on May 19, 2012, in the grounds of his mansion in an event that also celebrated her graduation from medical school.[179][180] Zuckerberg revealed in July 2015 that they were expecting a baby girl and that Chan had previously experienced three miscarriages.[181] Their first daughter was born in December 2015.[182] They announced in a Chinese New Year video that their daughter's Chinese name is Chen Mingyu (Chinese: \\u9648\\u660e\\u5b87).[183] Their second daughter was born in August 2017.[184] Zuckerberg and his wife welcomed their third daughter in March 2023 and announced the news across his social media pages.[185] The couple also have a Puli dog named Beast,[186] who has over two million followers on Facebook.[187] Zuckerberg commissioned the visual artist Daniel Arsham to build a 7-foot-tall sculpture of his wife, which was unveiled in 2024.[188]\", \"score\": 0.05564338, \"raw_content\": null}]}", "error_code": null, "error_message": null, "metadata": null