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model_openness_tool's Introduction

Model Openess TOol

The Model Openness Tool (MOT) is designed to facilitate the evaluation and classification of machine learning models based on the Model Openness Framework (MOF). This tool provides a comprehensive platform for model producers to assess their models against the 16 components of the MOF, ensuring transparency, reproducibility, and usability. MOT not only evaluates the openness of the license for each component but also ranks the models, helping the community identify models that adhere to the principles of open science. Features

Model Evaluation: Assess machine learning models against the MOF's 16 components.
License Evaluation: Analyze and validate the openness of licenses used for each model component.
Model Submission: Enable producers to submit their models for classification and listing.
Ranking and Listing: Display all submitted models along with their rankings and adherence to each MOF class.

Evaluating a Model

Prepare your model's artifacts according to the guidelines specified in the MOF.
Submit your model through the MOT interface, providing details and licenses for each component.
Receive feedback on the classification and suggestions for achieving higher openness levels.

Viewing Model Rankings

Access the MOT's web interface to view a detailed list of all models submitted, their openness classification, and how they rank against each MOF class. Contributing

Contributions to the Model Openness Tool are welcome! To contribute, please follow these steps:

Fork the repository on GitHub.
Create a new branch for your feature or fix.
Submit a pull request with a detailed description of your changes.

License

The Model Openness Tool is open-sourced under the MIT license. See the LICENSE file for more details. Support

For support, feature requests, or bug reports, please file an issue through the GitHub issue tracker associated with this repository. Acknowledgements

This tool was developed in collaboration with the authors of the Model Openness Framework and the Linux Foundation. Special thanks to Matt White, Ibrahim Haddad, Cailean Osborne, Xiao-Yang Liu, Ahmed Abdelmonsef, and Sachin Mathew Varghese for their invaluable input and guidance.

model_openness_tool's People

Contributors

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Stargazers

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Watchers

Ibrahim Haddad avatar  avatar  avatar Matt White avatar  avatar

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