A user friendly package for training quality prediction models
Project description
⚠️ Note: This package is currently in active development. It is not yet feature-complete and lacks comprehensive documentation. Users should expect changes and potential instability.
PQagent
PQagent is a Python package designed to streamline the development and training of predictive quality models using neural networks. Built on the powerful PyTorch framework, PQagent offers a comprehensive suite of tools for data preprocessing, model training, and evaluation, enabling users to construct robust predictive models tailored to their specific quality assurance needs.
For more details, please study the Documentation.
🧩 Features
to be documented
🚀 Quickstart Example
to be documented
Installation
pip install pqagent
©️ License
This project is licensed under the MIT License.
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