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BoFire: Bayesian Optimization Framework Intended for Real Experiments

9 August 2024
Johannes P. Dürholt
Thomas S Asche
Johanna Kleinekorte
Gabriel Mancino-Ball
Benjamin Schiller
Simon Sung
Julian Keupp
Aaron Osburg
Toby Boyne
Ruth Misener
R. Eldred
Wagner Steuer Costa
C. Kappatou
Robert M. Lee
Dominik Linzner
David Walz
Niklas Wulkow
B. Shafei
    AI4CE
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Abstract

Our open-source Python package BoFire combines Bayesian Optimization (BO) with other design of experiments (DoE) strategies focusing on developing and optimizing new chemistry. Previous BO implementations, for example as they exist in the literature or software, require substantial adaptation for effective real-world deployment in chemical industry. BoFire provides a rich feature-set with extensive configurability and realizes our vision of fast-tracking research contributions into industrial use via maintainable open-source software. Owing to quality-of-life features like JSON-serializability of problem formulations, BoFire enables seamless integration of BO into RESTful APIs, a common architecture component for both self-driving laboratories and human-in-the-loop setups. This paper discusses the differences between BoFire and other BO implementations and outlines ways that BO research needs to be adapted for real-world use in a chemistry setting.

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