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Boltz-2: Towards Accurate and Efficient Binding Affinity Prediction

Saro Passaro, View ORCID ProfileGabriele Corso, View ORCID ProfileJeremy Wohlwend, View ORCID ProfileMateo Reveiz, View ORCID ProfileStephan Thaler, Vignesh Ram Somnath, Noah Getz, View ORCID ProfileTally Portnoi, Julien Roy, View ORCID ProfileHannes Stark, David Kwabi-Addo, View ORCID ProfileDominique Beaini, View ORCID ProfileTommi Jaakkola, Regina Barzilay
doi: https://doi.org/10.1101/2025.06.14.659707
Saro Passaro
1MIT CSAIL
2MIT Jameel Clinic
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  • For correspondence: saro00{at}csail.mit.edu gcorso{at}csail.mit.edu jwohlwend{at}csail.mit.edu
Gabriele Corso
1MIT CSAIL
2MIT Jameel Clinic
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  • ORCID record for Gabriele Corso
  • For correspondence: saro00{at}csail.mit.edu gcorso{at}csail.mit.edu jwohlwend{at}csail.mit.edu
Jeremy Wohlwend
1MIT CSAIL
2MIT Jameel Clinic
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  • ORCID record for Jeremy Wohlwend
  • For correspondence: saro00{at}csail.mit.edu gcorso{at}csail.mit.edu jwohlwend{at}csail.mit.edu
Mateo Reveiz
1MIT CSAIL
2MIT Jameel Clinic
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Stephan Thaler
3Valence Labs
4Recursion
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Vignesh Ram Somnath
5ETH Zurich
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Noah Getz
1MIT CSAIL
2MIT Jameel Clinic
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Tally Portnoi
1MIT CSAIL
2MIT Jameel Clinic
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Julien Roy
3Valence Labs
4Recursion
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Hannes Stark
1MIT CSAIL
2MIT Jameel Clinic
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David Kwabi-Addo
1MIT CSAIL
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Dominique Beaini
3Valence Labs
4Recursion
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Tommi Jaakkola
1MIT CSAIL
2MIT Jameel Clinic
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Regina Barzilay
1MIT CSAIL
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Abstract

Accurately modeling biomolecular interactions is a central challenge in modern biology. While recent advances, such as AlphaFold3 and Boltz-1, have substantially improved our ability to predict biomolecular complex structures, these models still fall short in predicting binding affinity, a critical property underlying molecular function and therapeutic efficacy. Here, we present Boltz-2, a new structural biology foundation model that exhibits strong performance for both structure and affinity prediction. Boltz-2 introduces controllability features including experimental method conditioning, distance constraints, and multi-chain template integration for structure prediction, and is, to our knowledge, the first AI model to approach the performance of free-energy perturbation (FEP) methods in estimating small molecule–protein binding affinity. Crucially, it achieves strong correlation with experimental readouts on many benchmarks, while being at least 1000× more computationally efficient than FEP. By coupling Boltz-2 with a generative model for small molecules, we demonstrate an effective workflow to find diverse, synthesizable, high-affinity binders, as estimated by absolute FEP simulations on the TYK2 target. To foster broad adoption and further innovation at the intersection of machine learning and biology, we are releasing Boltz-2 weights, inference, and training code 1 under a permissive open license, providing a robust and extensible foundation for both academic and industrial research.

Competing Interest Statement

The authors have declared no competing interest.

Footnotes

  • ↵∗ Core contributors

  • https://github.com/jwohlwend/boltz

  • ↵1 Code, weights and data available at https://github.com/jwohlwend/boltz.

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY 4.0 International license.
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Posted June 18, 2025.
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Boltz-2: Towards Accurate and Efficient Binding Affinity Prediction
Saro Passaro, Gabriele Corso, Jeremy Wohlwend, Mateo Reveiz, Stephan Thaler, Vignesh Ram Somnath, Noah Getz, Tally Portnoi, Julien Roy, Hannes Stark, David Kwabi-Addo, Dominique Beaini, Tommi Jaakkola, Regina Barzilay
bioRxiv 2025.06.14.659707; doi: https://doi.org/10.1101/2025.06.14.659707
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Boltz-2: Towards Accurate and Efficient Binding Affinity Prediction
Saro Passaro, Gabriele Corso, Jeremy Wohlwend, Mateo Reveiz, Stephan Thaler, Vignesh Ram Somnath, Noah Getz, Tally Portnoi, Julien Roy, Hannes Stark, David Kwabi-Addo, Dominique Beaini, Tommi Jaakkola, Regina Barzilay
bioRxiv 2025.06.14.659707; doi: https://doi.org/10.1101/2025.06.14.659707

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