Skip to content
View sush-sp777's full-sized avatar

Block or report sush-sp777

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Maximum 250 characters. Please don't include any personal information such as legal names or email addresses. Markdown supported. This note will be visible to only you.
Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
sush-sp777/README.md

Hi 👋, I'm Sushant Patil

Generative AI Engineer | LLMs, RAG Pipelines & AI Agents

sush-sp777

  • 💬 Ask me about Python, Generative AI, Langchain, RAG, AI Agents, Vector Databases

  • 📫 How to reach me sushantsp433@gmail.com

Connect with me:

LinkedIn

Languages and Tools:

Pinned Loading

  1. supportiq-ai-support-automation supportiq-ai-support-automation Public

    AI-powered customer support automation platform with structured LLM triage, risk-based decision engine, and RAG-grounded responses. Implements auto-resolution with human-in-the-loop agent assistanc…

    Python

  2. RAG-PDF-QnA-Chatbot RAG-PDF-QnA-Chatbot Public

    Chat with your documents intelligently using AI and RAG. Supports multi-session memory and PDF retrieval for precise answers.

    Python

  3. YT-Website-URL-Summarizer YT-Website-URL-Summarizer Public

    AI-powered summarizer that extracts and summarizes content from YouTube videos and websites. Built with LangChain + Groq.

    Python

  4. CodeHelper-using-codellama-7b CodeHelper-using-codellama-7b Public

    A conversational coding assistant built with CodeLlama-7B, LangChain, and Gradio.

    Python

  5. AWS-Bedrock-Lambda-Blog-Generation AWS-Bedrock-Lambda-Blog-Generation Public

    This repository contains a simple AWS learning project using S3, Lambda, Bedrock and API Gateway to understand basic serverless workflows.

    Python

  6. NVIDIA-NIM-RAG-PDF-Qna-App NVIDIA-NIM-RAG-PDF-Qna-App Public

    This project is a RAG-based Document Q&A app using NVIDIA NIM, LangChain, and FAISS. Users can upload PDFs, generate embeddings, and ask questions answered only from the document context.

    Python