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Uni-Dock

Uni-Dock logo

DeepModeling

Uni-Dock is a GPU-accelerated molecular docking program developed by DP Technology. It supports various scoring functions including vina, vinardo, and ad4. Uni-Dock achieves more than 2000-fold speed-up on V100 GPU with high-accuracy compared with the AutoDock Vina running in single CPU core. The paper has been accepted by JCTC (doi: 10.1021/acs.jctc.2c01145).

Uni-Dock joins the DeepModeling community, a community devoted of AI for science, as an incubating level project. Learn more about DeepModeling

Runtime docking performance of Uni-Dock on different GPUs in three modes Runtime vs performance of Uni-Dock on different GPUs in three modes

Please check unidock folder for installing instructions, source codes, and usage.

Uni-Dock Tools is a Python package developed to handle the inputs and outputs of Uni-Dock. It is committed to support more input formats and scoring functions. We hope it could be an easy-to-use virtual screening workflow for users with diversed backgrounds.

Please check unidock_tools folder for installing instructions, source codes, and usage.

Changelog

  • 2024-02-29: Release Uni-Dock v1.1 and Uni-Dock Tools.
  • 2023-08-21: Upload source codes of Uni-Dock.
  • 2023-08-14: Add Uni-Dock Tools to support SDF format input for vina and vinardo scoring functions.

Citation

If you used Uni-Dock in your work, please cite:

Yu, Y., Cai, C., Wang, J., Bo, Z., Zhu, Z., & Zheng, H. (2023). Uni-Dock: GPU-Accelerated Docking Enables Ultralarge Virtual Screening. Journal of Chemical Theory and Computation. https://doi.org/10.1021/acs.jctc.2c01145

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Uni-Dock: a GPU-accelerated molecular docking program

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  • C++ 58.8%
  • Cuda 27.4%
  • Python 11.0%
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