ProteinGym
github.com/oatml-markslab/proteingymLarge-scale benchmark suite for protein fitness prediction and design, aggregating 200+ deep mutational scanning assays and clinical variant datasets across diverse protein families and taxa, with standardized zero-shot and supervised leaderboards for variant effect prediction, mutation effect prediction, and protein language model evaluation (OATML & Marks Lab, NeurIPS 2023 Spotlight, Datasets & Benchmarks)
Sourced from
- GitHub — github.com/oatml-markslab/proteingym
- Awesome AI for Science — github.com/oatml-markslab/proteingym
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