PXDesign (ByteDance, 2025)
github.com/bytedance/pxdesignFast, modular, and accurate de novo design of protein binders based on the Protenix foundation model, achieving 17-82% nanomolar hit rates across diverse targets with 2-6× improvement over prior methods like AlphaProteo and RFdiffusion (229+ stars, Apache 2.0)
Sourced from
- Awesome AI for Science — github.com/bytedance/pxdesign
- GitHub — github.com/bytedance/pxdesign
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