Issue 12, 2024

Navigating the Maize: cyclic and conditional computational graphs for molecular simulation

Abstract

Many computational chemistry and molecular simulation workflows can be expressed as graphs. This abstraction is useful to modularize and potentially reuse existing components, as well as provide parallelization and ease reproducibility. Existing tools represent the computation as a directed acyclic graph (DAG), thus allowing efficient execution by parallelization of concurrent branches. These systems can, however, generally not express cyclic and conditional workflows. We therefore developed Maize, a workflow manager for cyclic and conditional graphs based on the principles of flow-based programming. By running each node of the graph concurrently in separate processes and allowing communication at any time through dedicated inter-node channels, arbitrary graph structures can be executed. We demonstrate the effectiveness of the tool on a dynamic active learning task in computational drug design, involving the use of a small molecule generative model and an associated scoring system, and on a reactivity prediction pipeline using quantum-chemistry and semiempirical approaches.

Graphical abstract: Navigating the Maize: cyclic and conditional computational graphs for molecular simulation

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Article information

Article type
Paper
Submitted
05 Sep 2024
Accepted
26 Oct 2024
First published
28 Oct 2024
This article is Open Access
Creative Commons BY-NC license

Digital Discovery, 2024,3, 2551-2559

Navigating the Maize: cyclic and conditional computational graphs for molecular simulation

T. Löhr, M. Assante, M. Dodds, L. Cao, M. Kabeshov, J. Janet, M. Klähn and O. Engkvist, Digital Discovery, 2024, 3, 2551 DOI: 10.1039/D4DD00288A

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