Gemini: Dynamic Bias Correction for Autonomous Experimentation and Molecular Simulation
Riley J. Hickman, Florian H\"ase, Lo\"ic M. Roch, Al\'an Aspuru-Guzik

TL;DR
Gemini is a data-driven bias correction model that enhances autonomous experimentation and molecular simulation by reducing the need for expensive measurements through accurate proxy predictions, thereby accelerating materials discovery.
Contribution
We introduce Gemini, a novel bias correction model that improves autonomous workflows by leveraging inexpensive proxy measurements to predict expensive material properties.
Findings
Accurately predicts DFT bandgaps of perovskites.
Reduces number of expensive measurements in autonomous optimization.
Enhances Bayesian optimization with multi-source measurement integration.
Abstract
Bayesian optimization has emerged as a powerful strategy to accelerate scientific discovery by means of autonomous experimentation. However, expensive measurements are required to accurately estimate materials properties, and can quickly become a hindrance to exhaustive materials discovery campaigns. Here, we introduce Gemini: a data-driven model capable of using inexpensive measurements as proxies for expensive measurements by correcting systematic biases between property evaluation methods. We recommend using Gemini for regression tasks with sparse data and in an autonomous workflow setting where its predictions of expensive to evaluate objectives can be used to construct a more informative acquisition function, thus reducing the number of expensive evaluations an optimizer needs to achieve desired target values. In a regression setting, we showcase the ability of our method to make…
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Taxonomy
TopicsMachine Learning in Materials Science · Electrocatalysts for Energy Conversion · Advanced Memory and Neural Computing
