TL;DR
Golem is a versatile algorithm designed to enhance experiment and process optimization by ensuring solutions are robust against variability and noise, thereby improving reproducibility and practical performance in scientific and engineering tasks.
Contribution
It introduces a robustness-focused optimization algorithm compatible with various experiment planning strategies, addressing a key gap in handling input variability.
Findings
Golem effectively finds robust solutions in benchmark tests.
It improves reproducibility of optimized protocols.
Demonstrated successful application in noisy chemistry experiments.
Abstract
Numerous challenges in science and engineering can be framed as optimization tasks, including the maximization of reaction yields, the optimization of molecular and materials properties, and the fine-tuning of automated hardware protocols. Design of experiment and optimization algorithms are often adopted to solve these tasks efficiently. Increasingly, these experiment planning strategies are coupled with automated hardware to enable autonomous experimental platforms. The vast majority of the strategies used, however, do not consider robustness against the variability of experiment and process conditions. In fact, it is generally assumed that these parameters are exact and reproducible. Yet some experiments may have considerable noise associated with some of their conditions, and process parameters optimized under precise control may be applied in the future under variable operating…
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