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PyTorchAutoForge library is based on raw PyTorch and designed automate DNN development, model tracking and deployment, tightly integrated with MLflow and Optuna. It supports Spiking networks libraries (WIP). Deployment can be performed using ONNx, pyTorch facilities or TensorRT (WIP). The library is designed to be compatible with Jetson Orin Nano Jetpack rev6.1, with bash script to automatically configure virtualenv.

Project description

pyTorchAutoForge

PyTorchAutoForge library is based on raw PyTorch and designed to automate DNN development, model tracking and deployment, tightly integrated with MLflow and Optuna. It also supports spiking networks libraries (WIP). Model optimization and deployment can be performed using ONNx, pyTorch facilities or TensorRT (WIP). The library also aims to be compatible with Jetson Orin Nano Jetpack rev6.1.

Quick installation (bash)

  1. Clone the repository
  2. Create a virtual environment using python >= 3.10 (tested with 3.11), using python -m venv <your_venv_name>
  3. Activate the virtual environment using source <your_venv_name>/bin/activate on Linux
  4. Install the requirements using pip install -r requirements.txt
  5. Install the package using pip install . in the root folder of the repository

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