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NN Template

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"We demand rigidly defined areas of doubt and uncertainty."

Generic template to bootstrap your PyTorch project, read more in the documentation.

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Get started

If you already know cookiecutter, just generate your project with:

cookiecutter https://github.com/grok-ai/nn-template
Otherwise Cookiecutter manages the setup stages and delivers to you a personalized ready to run project.

Install it with:

pip install cookiecutter

More details in the documentation.

Strengths

  • Actually works for research!
  • Guided setup to customize project bootstrapping;
  • Fast prototyping of new ideas, no need to build a new code base from scratch;
  • Less boilerplate with no impact on the learning curve (as long as you know the integrated tools);
  • Ensure experiments reproducibility;
  • Automatize via GitHub actions: testing, stylish documentation deploy, PyPi upload;
  • Enforce Python best practices;
  • Many more in the documentation;

Integrations

Avoid writing boilerplate code to integrate:

  • PyTorch Lightning, lightweight PyTorch wrapper for high-performance AI research.
  • Hydra, a framework for elegantly configuring complex applications.
  • Hugging Face Datasets,a library for easily accessing and sharing datasets.
  • Weights and Biases, organize and analyze machine learning experiments. (educational account available)
  • Streamlit, turns data scripts into shareable web apps in minutes.
  • MkDocs and Material for MkDocs, a fast, simple and downright gorgeous static site generator.
  • DVC, track large files, directories, or ML models. Think "Git for data".
  • GitHub Actions, to run the tests, publish the documentation and to PyPI automatically.
  • Python best practices for developing and publishing research projects.

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Generic template to bootstrap your PyTorch project.

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