4.7 Article

WfCommons: A framework for enabling scientific workflow research and development

Publisher

ELSEVIER
DOI: 10.1016/j.future.2021.09.043

Keywords

Scientific workflows; Workflow management systems; Simulation; Distributed computing; Workflow instances

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Scientific workflows are essential for modern scientific computing, requiring efficient management of large data volumes. The research community uses various methods to evaluate workflow algorithms, with simulation being a common approach. This study introduces a framework for analyzing workflow executions, generating synthetic workflows, and simulating workflow executions, showcasing the realism of synthetic workflows compared to real workflows.
Scientific workflows are a cornerstone of modern scientific computing. They are used to describe complex computational applications that require efficient and robust management of large volumes of data, which are typically stored/processed on heterogeneous, distributed resources. The workflow research and development community has employed a number of methods for the quantitative evaluation of existing and novel workflow algorithms and systems. In particular, a common approach is to simulate workflow executions. In previous works, we have presented a collection of tools that have been adopted by the community for conducting workflow research. Despite their popularity, they suffer from several shortcomings that prevent easy adoption, maintenance, and consistency with the evolving structures and computational requirements of production workflows. In this work, we present WfCommons, a framework that provides a collection of tools for analyzing workflow executions, for producing generators of synthetic workflows, and for simulating workflow executions. We demonstrate the realism of the generated synthetic workflows by comparing their simulated executions to real workflow executions. We also contrast these results with results obtained when using the previously available collection of tools. We find that the workflow generators that are automatically constructed by our framework not only generate representative same-scale workflows (i.e., with structures and task characteristics distributions that resemble those observed in real-world workflows), but also do so at scales larger than that of available real-world workflows. Finally, we conduct a case study to demonstrate the usefulness of our framework for estimating the energy consumption of large-scale workflow executions. (c) 2021 Elsevier B.V. All rights reserved.

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