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OpenSportsLib is the professional library, designed for advanced video understanding in sports. It provides state-of-the-art tools for action recognition, spotting, retrieval, and captioning, making it ideal for researchers, analysts, and developers working with sports video data.

Project description

OpenSportsLib

OpenSportsLib is a modular Python library for sports video understanding.

It provides a unified framework to train, evaluate, and run inference for key temporal understanding tasks in sports video, including:

  • Action classification
  • Action localization / spotting
  • Action retrieval
  • Action description / captioning

OpenSportsLib is designed for researchers, ML engineers, and sports analytics teams who want reproducible and extensible workflows for sports video AI.

Why OpenSportsLib?

  • Unified workflow for training and inference
  • Modular design for adding new tasks, datasets, and models
  • Config driven experiments for reproducibility
  • Support for multiple modalities and sports workflows
  • Research friendly while still usable in applied settings

Quick links


Installation

Stable release

pip install opensportslib

Pre release

pip install --pre opensportslib

Optional extras

pip install "opensportslib[localization]"
pip install "opensportslib[py-geometric]" -f https://pytorch-geometric.com/whl/torch-2.10.0+cu128.html

Requires Python 3.12+.


Data and pretrained models

OpenSportsLib uses external annotation files, datasets, and pretrained checkpoints.

Public assets are hosted under the OpenSportsLab Hugging Face organization:

https://huggingface.co/OpenSportsLab

Use it as the main entry point to find:

  • datasets
  • annotation files
  • extracted features
  • pretrained models and checkpoints

--

Quickstart

Import the library

import opensportslib
print("OpenSportsLib imported successfully")

Train a classification model

from opensportslib import model

myModel = model.classification(
    config="/path/to/classification.yaml"
)

myModel.train(
    train_set="/path/to/train_annotations.json",
    valid_set="/path/to/valid_annotations.json",
    pretrained="/path/to/pretrained.pt",  # optional
)

Run inference

from opensportslib import model

myModel = model.classification(
    config="/path/to/classification.yaml"
)

metrics = myModel.infer(
    test_set="/path/to/test_annotations.json",
    pretrained="/path/to/checkpoints/final_model",
    predictions="/path/to/predictions.json"
)

print(metrics)

Localization example

from opensportslib import model

myModel = model.localization(
    config="/path/to/localization.yaml"
)

What you can do with OpenSportsLib

Action Classification

Classify clips or event centered samples into predefined categories.

Action Localization / Spotting

Predict when key events happen in long untrimmed sports videos.

Action Retrieval

Search and retrieve relevant clips or moments from a collection of sports videos.

Action Description / Captioning

Generate text descriptions for sports events and temporal segments.


Typical workflow

  1. Prepare your dataset in the expected format
  2. Select or create a YAML config
  3. Initialize the task specific model
  4. Train on your annotations
  5. Run inference on new data
  6. Extend the pipeline with your own datasets or models

Examples and documentation

Use the README for the fast start, then go deeper through:


Development setup

For contributors who want to work from source:

git clone https://github.com/OpenSportsLab/opensportslib.git
cd opensportslib
pip install -e .

With extras

pip install -e ".[localization]"
pip install -e ".[py-geometric]" -f https://pytorch-geometric.com/whl/torch-2.10.0+cu128.html

Conda option

If you prefer conda:

conda create -n osl python=3.12 pip
conda activate osl
pip install -e .

Git workflow

  1. Make sure you are branching from dev
  2. Create your feature or fix branch from dev
  3. Open a pull request back into dev

Contributing

We welcome contributions to OpenSportsLib.

Please check:

These documents describe:

  • how to add models and datasets
  • coding standards
  • training pipeline structure
  • how to run and test the framework

License

OpenSportsLib is available under dual licensing.

Open source license

AGPL 3.0 for research, academic, and community use.

Commercial license

For proprietary or commercial deployment, please refer to LICENSE-COMMERCIAL.


Citation

If you use OpenSportsLib in your research, please cite the project.

@misc{opensportslib,
  title={OpenSportsLib},
  author={OpenSportsLab},
  year={2026},
  howpublished={\url{https://github.com/OpenSportsLab/opensportslib}}
}

Acknowledgments

OpenSportsLib is developed within the broader OpenSportsLab effort for sports video understanding.

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