< Write your installation guide here >
pip install -r ./requirements.txtYou might be a little intimidated by the number of folders and classes. Try to follow this steps to gradually undestand the workflow.
- Test
hw_asr/tests/test_dataset.pyandhw_asr/tests/test_config.pyand make sure everythin works for you - Implement missing functions to fix tests in
hw_asr\tests\test_text_encoder.py - Implement missing functions to fix tests in
hw_asr\tests\test_dataloader.py - Implement functions in
hw_asr\metric\utils.py - Implement missing function to run
train.pywith a baseline model - Write your own model and try to overfit it on a single batch
- Implement ctc beam search and add metrics to calculate WER and CER over hypothesis obtained from beam search.
Pain and sufferingImplement your own models and train them. You've mastered this template when you can tune your experimental setup just by tuningconfigs.jsonfile and runningtrain.py- Don't forget to write a report about your work
- Get hired by Google the next day
- Make sure your projects run on a new machine after complemeting the installation guide or by running it in docker container.
- Search project for
# TODO: your code hereand implement missing functionality - Make sure all tests work without errors
python -m unittest discover hw_asr/tests
- Make sure
test.pyworks fine and works as expected. You should create filesdefault_test_config.jsonand your installation guide should download your model checpoint and configs indefault_test_model/checkpoint.pthanddefault_test_model/config.json.python test.py \ -c default_test_config.json \ -r default_test_model/checkpoint.pth \ -t test_data \ -o test_result.json
- Use
train.pyfor training
This repository is based on a heavily modified fork of pytorch-template repository.
You can use this project with docker. Quick start:
docker build -t my_hw_asr_image .
docker run \
--gpus '"device=0"' \
-it --rm \
-v /path/to/local/storage/dir:/repos/asr_project_template/data/datasets \
-e WANDB_API_KEY=<your_wandb_api_key> \
my_hw_asr_image python -m unittest Notes:
-v /out/of/container/path:/inside/container/path-- bind mount a path, so you wouldn't have to download datasets at the start of every docker run.-e WANDB_API_KEY=<your_wandb_api_key>-- set envvar for wandb (if you want to use it). You can find your API key here: https://wandb.ai/authorize
These barebones can use more tests. We highly encourage students to create pull requests to add more tests / new functionality. Current demands:
- Tests for beam search
- README section to describe folders
- Notebook to show how to work with
ConfigParserandconfig_parser.init_obj(...)