# Accurate Neural Network Potential on PyTorch [![Codefresh build status]( https://g.codefresh.io/api/badges/pipeline/zasdfgbnm/aiqm%2Ftorchani%2Ftorchani?branch=master&type=cf-1)]( https://g.codefresh.io/repositories/aiqm/torchani/builds?filter=trigger:build;branch:master;service:5babc52a8a90dc40a407b05f~torchani) TorchANI is a pytorch implementation of ANI. It is currently under alpha release, which means, the API is not stable yet. If you find a bug of TorchANI, or have some feature request, feel free to open an issue on GitHub, or send us a pull request. # Install TorchANI requires the latest preview version of PyTorch. You can install PyTorch by ```bash conda install pytorch-nightly -c pytorch ``` If you updated TorchANI, you may also need to update PyTorch: ```bash conda update pytorch-nightly -c pytorch ``` After installing the correct PyTorch, you can install TorchANI by: ```bash pip install torchani ``` See also [PyTorch's official site](https://pytorch.org/get-started/locally/) for instructions of installing latest preview version of PyTorch. # Paper The original ANI-1 paper is: * Smith JS, Isayev O, Roitberg AE. ANI-1: an extensible neural network potential with DFT accuracy at force field computational cost. Chemical science. 2017;8(4):3192-203. We are planning a seperate paper for TorchANI, it will be available when we are ready for beta release of TorchANI. See also: [isayev/ASE_ANI](https://github.com/isayev/ASE_ANI) # Develop To install TorchANI from GitHub: ```bash git clone https://github.com/aiqm/torchani.git cd torchani pip install -e . ``` After TorchANI has been installed, you can build the documents by running `sphinx-build docs build`. But make sure you install dependencies: ```bash pip install sphinx sphinx-gallery pillow matplotlib sphinx_rtd_theme ``` # Note to TorchANI developers Never commit to the master branch directly. If you need to change something, create a new branch, submit a PR on GitHub. You must pass all the tests on GitHub before your PR can be merged. Code review is required before merging pull request. To manually run unit tests, do `python setup.py test`