IgFold
Johns Hopkins / Profluent Bio
Fast deep learning model for antibody structure prediction from sequence alone. Processes paired heavy/light chain inputs.
Best For
High-throughput antibody sequence library screening
License
Open Source (check repo)
Strengths
- +Fast inference
- +Paired VH/VL support
Limitations
- −CDR-H3 accuracy lags experimental structures
- −Does not model antigen context
R&D Pipeline Coverage
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