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Wrappers for scikit-learn, PyTorch and Tensorflow models with OpenVINO optimization

Project description

OpenVino training kit

Wrappers for scikit-learn, PyTorch and Tensorflow models with OpenVINO optimization.

About

This module provides easy-to-use wrappers for training, evaluating, and exporting classical (scikit-learn) and deep learning (PyTorch, TensorFlow) models optimized for OpenVINO, targeting local AI PCs and edge deployment.

System Requirements

  • Operating System: Linux (Ubuntu 18.04+), Windows 10/11, Windows Server 2019+
  • CPU: x86-64 (Intel or AMD)
  • Python: 3.8, 3.9, 3.10, 3.11
  • RAM: 8GB+ recommended
  • GPU: Optional (not required)
  • Note: Intel Extension for PyTorch (IPEX) is only supported on Linux/Windows with x86-64 CPUs. On MacOS, some features may not be available.

Installation

pip install ov-training-kit

Usage

For detailed usage instructions and examples, please refer to the README files inside the src/sklearn, src/pytorch and src/tensorflow folders.


For questions, suggestions, or contributions, feel free to open an issue or pull

🎓 Credits & License

Developed as part of a GSoC

Authors

  • Leonardo Heim
  • Shivam Basia

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