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Metadata practices for simulation workflows

30 August 2024
Jose Villamar
Matthias Kelbling
Heather L. More
Michael Denker
Tom Tetzlaff
Johanna Senk
Stephan Thober
    AI4CE
ArXiv (abs)PDFHTML
Main:16 Pages
8 Figures
Bibliography:4 Pages
1 Tables
Appendix:1 Pages
Abstract

Computer simulations are an essential pillar of knowledge generation in science. Exploring, understanding, reproducing, and sharing the results of simulations relies on tracking and organizing the metadata describing the numerical experiments. The models used to understand real-world systems, and the computational machinery required to simulate them, are typically complex, and produce large amounts of heterogeneous metadata. Here, we present general practices for acquiring and handling metadata that are agnostic to software and hardware, and highly flexible for the user. These consist of two steps: 1) recording and storing raw metadata, and 2) selecting and structuring metadata. As a proof of concept, we develop the Archivist, a Python tool to help with the second step, and use it to apply our practices to distinct high-performance computing use cases from neuroscience and hydrology. Our practices and the Archivist can readily be applied to existing workflows without the need for substantial restructuring. They support sustainable numerical workflows, fostering replicability, reproducibility, data exploration, and data sharing in simulation-based research.

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@article{villamar2025_2408.17309,
  title={ Metadata practices for simulation workflows },
  author={ José Villamar and Matthias Kelbling and Heather L. More and Michael Denker and Tom Tetzlaff and Johanna Senk and Stephan Thober },
  journal={arXiv preprint arXiv:2408.17309},
  year={ 2025 }
}
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