IgLM / AntiBERTa benchmarks

Antibody LM eval — paratope prediction, CDR generation, developability.

Composite
77.5
Experimental validation
Wet-lab confirmed
Stages
Hit IDDevelopmental Candidate
Modalities
biologic-mab
Task types
antibody-generationliability-prediction
Size
sequences: 600,000,000
tasks: 6
License
MIT
First release
2022
Last updated
2024-08
Official site
→ project page
Leaderboard
→ leaderboard
Dataset
→ dataset
Code / GitHub
→ repository
HuggingFace
→ HF
Paper
Generative language models for antibody design · Shuai RW, Ruffolo JA, Gray JJ · 2023 · paper · doi:10.1016/j.cels.2023.07.001 · 140 citations
Flags
none
Experts
Jeffrey J. Gray
Groups
Gray Lab (Johns Hopkins)
Hosted by
Related benchmarks
Observed Antibody Space (OAS), SAbDab

Rubric (7-criterion)

rigor
4
coverage
4
maintenance
3
adoption
4
quality
4
accessibility
4
industry_relevance
4

Notes

Moves toward true developability benchmarks.

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