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Shared types and utilities for evalaution

Project description

Coral

A PyTorch-based neural network library for board game evaluation.

Overview

Coral provides a flexible framework for building and deploying neural networks to evaluate board game positions. It includes modular components for input conversion, neural network architectures, and output interpretation.

Features

  • Multiple NN Architectures: Multi-layer perceptrons, transformers, and custom models
  • Flexible Input/Output Conversion: Modular converters for different board representations and evaluation formats
  • Point-of-View Evaluation: Support for evaluating positions from different player perspectives
  • PyTorch Integration: Built on PyTorch with JIT compilation support for optimized inference

Installation

pip install git+https://github.com/victorgabillon/coral.git@main

Requirements

  • Python >= 3.13
  • PyTorch
  • valanga (board game library)

Project Structure

src/coral/
├── board_evaluation.py          # Point-of-view and evaluation types
├── chi_nn.py                     # Base neural network class
└── neural_networks/
    ├── factory.py                # NN factory pattern
    ├── nn_content_evaluator.py   # Board evaluation with NNs
    ├── models/                   # NN architectures (MLP, Transformer)
    ├── input_converters/         # Board to tensor conversion
    └── output_converters/        # NN output to evaluation conversion

License

GPL-3.0-only

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