Scaling Atomistic Protein Binder Design with Generative Pretraining and Test-Time Compute
Abstract
Protein interaction modeling is central to protein design, which has been transformed by machine learning with applications in drug discovery and beyond. In this landscape, structure-based de novo binder design is cast as either conditional generative modeling or sequence optimization via structure predictors (``hallucination''). We argue that this is a false dichotomy and propose Proteina-Complexa, a novel fully atomistic binder generation method unifying both paradigms. We extend recent flow-based latent protein generation architectures and leverage the domain-domain interactions of monomeric computationally predicted protein structures to construct Teddymer, a new large-scale dataset of synthetic binder-target pairs for pretraining. Combined with high-quality experimental multimers, this enables training a strong base model. We then perform inference-time optimization with this generative prior, unifying the strengths of previously distinct generative and hallucination methods. Proteina-Complexa sets a new state of the art in computational binder design benchmarks: it delivers markedly higher in-silico success rates than existing generative approaches, and our novel test-time optimization strategies greatly outperform previous hallucination methods under normalized compute budgets. We also demonstrate interface hydrogen bond optimization, fold class-guided binder generation, and extensions to small molecule targets and enzyme design tasks, again surpassing prior methods. Code, models and new data will be publicly released.
Cite
Text
Didi et al. "Scaling Atomistic Protein Binder Design with Generative Pretraining and Test-Time Compute." International Conference on Learning Representations, 2026.Markdown
[Didi et al. "Scaling Atomistic Protein Binder Design with Generative Pretraining and Test-Time Compute." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/didi2026iclr-scaling/)BibTeX
@inproceedings{didi2026iclr-scaling,
title = {{Scaling Atomistic Protein Binder Design with Generative Pretraining and Test-Time Compute}},
author = {Didi, Kieran and Zhang, Zuobai and Zhou, Guoqing and Reidenbach, Danny and Cao, Zhonglin and Cha, Sooyoung and Geffner, Tomas and Dallago, Christian and Tang, Jian and Bronstein, Michael M. and Steinegger, Martin and Kucukbenli, Emine and Vahdat, Arash and Kreis, Karsten},
booktitle = {International Conference on Learning Representations},
year = {2026},
url = {https://mlanthology.org/iclr/2026/didi2026iclr-scaling/}
}