Issue 3, 2023

GFlowNets for AI-driven scientific discovery

Abstract

Tackling the most pressing problems for humanity, such as the climate crisis and the threat of global pandemics, requires accelerating the pace of scientific discovery. While science has traditionally relied on trial and error and even serendipity to a large extent, the last few decades have seen a surge of data-driven scientific discoveries. However, in order to truly leverage large-scale data sets and high-throughput experimental setups, machine learning methods will need to be further improved and better integrated in the scientific discovery pipeline. A key challenge for current machine learning methods in this context is the efficient exploration of very large search spaces, which requires techniques for estimating reducible (epistemic) uncertainty and generating sets of diverse and informative experiments to perform. This motivated a new probabilistic machine learning framework called GFlowNets, which can be applied in the modeling, hypotheses generation and experimental design stages of the experimental science loop. GFlowNets learn to sample from a distribution given indirectly by a reward function corresponding to an unnormalized probability, which enables sampling diverse, high-reward candidates. GFlowNets can also be used to form efficient and amortized Bayesian posterior estimators for causal models conditioned on the already acquired experimental data. Having such posterior models can then provide estimators of epistemic uncertainty and information gain that can drive an experimental design policy. Altogether, here we will argue that GFlowNets can become a valuable tool for AI-driven scientific discovery, especially in scenarios of very large candidate spaces where we have access to cheap but inaccurate measurements or too expensive but accurate measurements. This is a common setting in the context of drug and material discovery, which we use as examples throughout the paper.

Graphical abstract: GFlowNets for AI-driven scientific discovery

Article information

Article type
Perspective
Submitted
12 Jan 2023
Accepted
28 Mar 2023
First published
05 Apr 2023
This article is Open Access
Creative Commons BY license

Digital Discovery, 2023,2, 557-577

GFlowNets for AI-driven scientific discovery

M. Jain, T. Deleu, J. Hartford, C. Liu, A. Hernandez-Garcia and Y. Bengio, Digital Discovery, 2023, 2, 557 DOI: 10.1039/D3DD00002H

This article is licensed under a Creative Commons Attribution 3.0 Unported Licence. You can use material from this article in other publications without requesting further permissions from the RSC, provided that the correct acknowledgement is given.

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