Poster
in
Workshop: AI for Science: Scaling in AI for Scientific Discovery
Meta-Designing Quantum Experiments with Language Models
Sören Arlt · Haonan Duan · Felix Li · Sang Michael Xie · Yuhuai Wu · Mario Krenn
Keywords: [ program synthesis ] [ quantum physics ] [ physics ] [ Language Models ]
Artificial Intelligence (AI) has the potential to significantly advance scientific discovery by finding solutions beyond human capabilities. However, these super-human solutions are often unintuitive and require considerable effort to uncover underlying principles, if possible at all. Here, we show how a language model trained on synthetic data can not only find solutions to specific problems but also create meta-solutions, which solve an entire class of problems in one shot and simultaneously offer insight into the underlying design principles. Specifically, for the design of new quantum physics experiments, our sequence-to-sequence transformer architecture generates interpretable Python code that describes experimental blueprints for a whole class of quantum systems. We discover general and previously unknown design rules for infinitely large classes of quantum states. The ability to automatically generate generalized patterns in readable computer code is a crucial step toward machines that help discover new scientific understanding -- one of the central aims of physics.