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GAUCHE: a library for Gaussian processes in chemistry

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E-pub ahead of print
  • Ryan-Rhys Griffiths
  • Leo Klarner
  • Henry Moss
  • Aditya Ravuri
  • Sang Truong
  • Yuanqi Du
  • Samuel Stanton
  • Gary Tom
  • Bojana Rankovic
  • Arian Jamasb
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Publication date9/12/2024
Host publicationNeurIPS Proceedings 2024
Number of pages24
<mark>Original language</mark>English

Publication series

NameAdvances in Neural Information Processing Systems
PublisherNeural information processing systems foundation
Volume37
ISSN (Print)1049-5258

Abstract

We introduce GAUCHE, an open-source library for GAUssian processes in
CHEmistry. Gaussian processes have long been a cornerstone of probabilistic
machine learning, affording particular advantages for uncertainty quantification and Bayesian optimisation. Extending Gaussian processes to molecular representations, however, necessitates kernels defined over structured inputs such as graphs, strings and bit vectors. By providing such kernels in a modular, robust and easy-to-use framework, we seek to enable expert chemists and materials scientists to make use of state-of-the-art black-box optimization techniques. Motivated by scenarios frequently encountered in practice, we showcase applications for GAUCHE in molecular discovery, chemical reaction optimisation and protein design.