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Pytorch based crystallographic refinement

Reason this release was yanked:

Problems with device consistency in cli functions

Project description

TorchRef

A PyTorch-based crystallographic refinement library

Tests Python 3.10+ PyTorch License: MIT Documentation CUDA Apple Silicon MPS

TorchRef is a crystallographic refinement package built entirely on PyTorch. By leveraging PyTorch's automatic differentiation and GPU acceleration, TorchRef enables seamless integration with machine learning workflows and provides a flexible, extensible framework for crystallographic structure refinement.

Key Features

  • Native PyTorch Integration: Built on PyTorch's nn.Module architecture, TorchRef integrates naturally with the PyTorch ecosystem, including machine learning models, optimizers, and GPU acceleration.

  • Automatic Differentiation: Dynamic computational graphs eliminate the need for manually implemented gradient calculations. Define new refinement targets directly—PyTorch handles the derivatives automatically.

  • Modular Architecture: Following PyTorch's module pattern, components are easily composable and extensible. Add custom targets, restraints, or optimizers without modifying core code.

  • GPU Acceleration: Leverage CUDA for structure factor calculations, scaling, and optimization—achieving significant speedups for large structures. Apple Silicon GPUs are also supported through PyTorch's MPS backend (unsupported ops fall back to CPU automatically via PYTORCH_ENABLE_MPS_FALLBACK=1, which TorchRef sets on import).

  • FFT-based Structure Factors: Efficient structure factor calculation using Fast Fourier Transform (FFT) methods, enabling rapid F_calc computation even for large unit cells.

Getting Started

Notebook Description
Open In Colab Quickstart — MTZ + PDB to refined structure, refined MTZ and CCP4 map; selection- and parameter-type-based refinement
Open In Colab Structure factors — one-liner, FFT class, and manual voxel pipeline; standalone scaling; autograd
Open In Colab Targets and weighting — standard targets, target-offset weighting, X-ray mode comparison, custom targets, driving an optimizer from a LossState

Installation

pip install torchref

Local installation for development

clone the repository

git clone https://github.com/HatPdotS/TorchRef.git cd torchref

Install with pip

pip install -e .

Or install with development dependencies

pip install -e ".[dev]"

Dependencies

  • Python ≥ 3.10
  • PyTorch ≥ 2.40
  • NumPy ≥ 2.0
  • Gemmi ≥ 0.5
  • reciprocalspaceship ≥ 0.9
  • SciPy ≥ 1.7

Testing

# Run all tests
pytest tests/

# Run with coverage
pytest tests/ --cov=torchref

# Run specific test categories
pytest tests/unit/           # Fast unit tests
pytest tests/integration/    # Integration tests
pytest tests/functional/     # Full workflow tests

Contributing

Contributions are welcome! Please follow these guidelines:

  1. Follow the NumPy docstring style
  2. Add tests for new functionality
  3. Ensure all tests pass before submitting

License

This project is licensed under the MIT License - see the LICENSE file for details.

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