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Purely Agentic Black-Box Optimization for Biological Design

Natalie Maus
Yimeng Zeng
Haydn Thomas Jones
Yining Huang
Gaurav Ng Goel
Alden Rose
Kyurae Kim
Hyun-Su Lee
Marcelo Der Torossian Torres
Fangping Wan
Cesar de la Fuente-Nunez
Mark Yatskar
Osbert Bastani
Jacob R. Gardner
Main:8 Pages
17 Figures
Bibliography:4 Pages
15 Tables
Appendix:32 Pages
Abstract

Many key challenges in biological design-such as small-molecule drug discovery, antimicrobial peptide development, and protein engineering-can be framed as black-box optimization over vast, complex structured spaces. Existing methods rely mainly on raw structural data and struggle to exploit the rich scientific literature. While large language models (LLMs) have been added to these pipelines, they have been confined to narrow roles within structure-centered optimizers. We instead cast biological black-box optimization as a fully agentic, language-based reasoning process. We introduce Purely Agentic BLack-box Optimization (PABLO), a hierarchical agentic system that uses scientific LLMs pretrained on chemistry and biology literature to generate and iteratively refine biological candidates. On both the standard GuacaMol molecular design and antimicrobial peptide optimization tasks, PABLO achieves state-of-the-art performance, substantially improving sample efficiency and final objective values over established baselines. Compared to prior optimization methods that incorporate LLMs, PABLO achieves competitive token usage per run despite relying on LLMs throughout the optimization loop. Beyond raw performance, the agentic formulation offers key advantages for realistic design: it naturally incorporates semantic task descriptions, retrieval-augmented domain knowledge, and complex constraints. In follow-up in vitro validation, PABLO-optimized peptides showed strong activity against drug-resistant pathogens, underscoring the practical potential of PABLO for therapeutic discovery.

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