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HopCP

HopCP = HopTB's best friend + cp -r HopTB.jl HopCP + HopTB C++ version

Installation

make ext-install
make all

Basic Usage

See the examples for quick start.

Citation

Any and all use of this software, in whole or in part, should clearly acknowledge and link to this repository.

If you use this code in your academic work, please cite the complete package featuring the latest implementation, methodology, and workflow of DeepH:

Yang Li, Yanzhen Wang, Boheng Zhao, et al. DeepH-pack: A general-purpose neural network package for deep-learning electronic structure calculations. arXiv:2601.02938 (2026)

@article{li2026deeph,
    title={DeepH-pack: A general-purpose neural network package for deep-learning electronic structure calculations},
    author={Li, Yang and Wang, Yanzhen and Zhao, Boheng and Gong, Xiaoxun and Wang, Yuxiang and Tang, Zechen and Wang, Zixu and Yuan, Zilong and Li, Jialin and Sun, Minghui and Chen, Zezhou and Tao, Honggeng and Wu, Baochun and Yu, Yuhang and Li, He and da Jornada, Felipe H. and Duan, Wenhui and Xu, Yong },
    journal={arXiv preprint arXiv:2601.02938},
    year={2026}
}

License

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

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