PRISM: Protocol Refinement through Intelligent Simulation Modeling
Brian Hsu, Priyanka V Setty, Rory M Butler, Ryan Lewis, Casey Stone, Rebecca Weinberg, Thomas Brettin, Rick Stevens, Ian Foster, and Arvind Ramanathan

TL;DR
PRISM automates experimental protocol design, validation, and execution using language models and simulation, enabling efficient self-driving laboratories with minimal human intervention.
Contribution
Introduces PRISM, a novel framework combining language models, simulation, and robotic execution for automated experimental protocols.
Findings
Protocols validated in digital twin environment detect errors early.
PRISM successfully automates end-to-end experimental workflows.
Benchmarking shows effective protocol generation across paradigms.
Abstract
Automating experimental protocol design and execution remains as a fundamental bottleneck in realizing self-driving laboratories. We introduce PRISM (Protocol Refinement through Intelligent Simulation Modeling), a framework that automates the design, validation, and execution of experimental protocols on a laboratory platform composed of off-the-shelf robotic instruments. PRISM uses a set of language-model-based agents that work together to generate and refine experimental steps. The process begins with automatically gathering relevant procedures from web-based sources describing experimental workflows. These are converted into structured experimental steps (e.g., liquid handling steps, deck layout and other related operations) through a planning, critique, and validation loop. The finalized steps are translated into the Argonne MADSci protocol format, which provides a unified interface…
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Taxonomy
TopicsScientific Computing and Data Management · Simulation Techniques and Applications · Machine Learning in Materials Science
