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arxiv_ml 92% Match Survey/Review Paper AI Researchers,Drug Discovery Scientists,Pharmaceutical Industry Professionals,Robotics Engineers 4 days ago

AI Agents in Drug Discovery

large-language-models › reasoning
📄 Abstract

Abstract: Artificial intelligence (AI) agents are emerging as transformative tools in drug discovery, with the ability to autonomously reason, act, and learn through complicated research workflows. Building on large language models (LLMs) coupled with perception, computation, action, and memory tools, these agentic AI systems could integrate diverse biomedical data, execute tasks, carry out experiments via robotic platforms, and iteratively refine hypotheses in closed loops. We provide a conceptual and technical overview of agentic AI architectures, ranging from ReAct and Reflection to Supervisor and Swarm systems, and illustrate their applications across key stages of drug discovery, including literature synthesis, toxicity prediction, automated protocol generation, small-molecule synthesis, drug repurposing, and end-to-end decision-making. To our knowledge, this represents the first comprehensive work to present real-world implementations and quantifiable impacts of agentic AI systems deployed in operational drug discovery settings. Early implementations demonstrate substantial gains in speed, reproducibility, and scalability, compressing workflows that once took months into hours while maintaining scientific traceability. We discuss the current challenges related to data heterogeneity, system reliability, privacy, and benchmarking, and outline future directions towards technology in support of science and translation.
Authors (20)
Srijit Seal
Dinh Long Huynh
Moudather Chelbi
Sara Khosravi
Ankur Kumar
Mattson Thieme
+14 more
Submitted
October 31, 2025
arXiv Category
cs.LG
arXiv PDF

Key Contributions

This paper provides the first comprehensive overview of agentic AI systems, powered by LLMs, for drug discovery. It details architectures like ReAct and Swarm systems and demonstrates their application across the drug discovery pipeline, highlighting their potential for autonomous reasoning, action, and iterative hypothesis refinement using real-world implementations and quantifiable impacts.

Business Value

AI agents can dramatically accelerate the costly and time-consuming process of drug discovery, leading to faster development of new medicines and reduced R&D expenses for pharmaceutical companies.