Kosmos: An AI Scientist for Autonomous Discovery
Ludovico Mitchener, Angela Yiu, Benjamin Chang, Mathieu Bourdenx, Tyler Nadolski, Arvis Sulovari, Eric C. Landsness, Daniel L. Barabasi, Siddharth Narayanan, Nicky Evans, Shriya Reddy, Martha Foiani, Aizad Kamal, Leah P. Shriver, Fang Cao, Asmamaw T. Wassie, Jon M. Laurent

TL;DR
Kosmos is an AI scientist that autonomously conducts extended scientific discovery cycles, integrating data analysis, literature search, and hypothesis generation, resulting in reproducible and novel scientific findings across multiple disciplines.
Contribution
It introduces a structured world model enabling long-term coherent autonomous scientific exploration with traceable reasoning.
Findings
Kosmos performs up to 200 agent rollouts per run.
It achieves an accuracy of 79.4% in statement correctness.
Collaborators equate one Kosmos run to six months of research effort.
Abstract
Data-driven scientific discovery requires iterative cycles of literature search, hypothesis generation, and data analysis. Substantial progress has been made towards AI agents that can automate scientific research, but all such agents remain limited in the number of actions they can take before losing coherence, thus limiting the depth of their findings. Here we present Kosmos, an AI scientist that automates data-driven discovery. Given an open-ended objective and a dataset, Kosmos runs for up to 12 hours performing cycles of parallel data analysis, literature search, and hypothesis generation before synthesizing discoveries into scientific reports. Unlike prior systems, Kosmos uses a structured world model to share information between a data analysis agent and a literature search agent. The world model enables Kosmos to coherently pursue the specified objective over 200 agent rollouts,…
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Taxonomy
TopicsBiomedical Text Mining and Ontologies · Scientific Computing and Data Management · Machine Learning in Materials Science
