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An auto-ML python library for computer vision based on pytorch lightning and hydra.

Project description

LitDet

Version PyPI Documentation Status License

Python pytorch lightning hydra

Platform CUDA

LitDet is a domain-agnostic AutoML framework to accelerate the development of 2D object detection models 🚀⚡🔥.

  • ML Workflows: Handles model pre-training, fine-tuning or re-training at scale.
  • Key Features: Provides a high-level CLI and python API for seamless hardware support (CPU/GPU), COCO-formatted dataset integration, and built-in experiment tracking.
  • Tech Stack: Built on the Lightning-Hydra framework, it leverages PyTorch and Hydra for flexible, configuration-driven deep learning workflows.
LitDet overview

Quickstart

You will need at least python 3.10 and a recent GPU driver (e.g. NVIDIA 525.147.05).

  1. First install the package (best in a python venv).

    python -m pip install "litdet[extras]"
    
  2. Train a Faster-RCNN on your dataset annotated in COCO format at /path/to/your/dir/coco_dataset_name:

    light-train task.model=faster-rcnn paths.data_dir=/path/to/your/dir data.data_name=coco_dataset_name task.model.num_classes=10 trainer.max_epochs=100
    

You can find configuration examples in the /examples directory.

To build your own configuration file instead, use our cookiecutter:

cookiecutter https://gitlab.kitware.com/litdet/litdet.git --directory "cookiecutter-litdet"

For more information on the usage, configuration, API documentation, and getting started guides, refer to our online documentation.

Developers

See CONTRIBUTING for developers instructions such as code practices, or the review process. Check also our advanced usage guide, and debugging process.

Citation

You can cite LitDet with the following:

@article{litdet2026tetrel,
  title={LitDet: Finetuning detection models has never been so easy},
  author={},
  journal={JOSS},
  year={2026}
}

Model Zoo

The LitDet model zoo serves as a centralized hub for users and developers to discover models.

You can explore the complete list of available pre-trained models directly in our GitLab repository.

Acknowledgements

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