Scientific Workflow Provenance Architecture for Heterogeneous HPC Environments

Alex Williams, Deepak K. Tosh
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引用次数: 1

Abstract

Provenance in computing systems is the key to establishing data integrity. It provides a historical ledger of data's life cycle through creation, ownership, consumption, and manipulation. With provenance in hand, it is possible to reverse engineer the state of the data that can lead to understanding how it was derived and verify its accuracy. This need for data integrity is extremely critical in scientific workflows to ensure verifiability and repeatability of the derived results. Due to the vast computational power required by scientific workflows, many operate within high performance computing (HPC) environments, where data is consumed and manipulated by a multitude of processes running on highly distributed infrastructure. The current landscape of HPC environments range from on-premise systems to cloud and grid based solutions. While the majority of research in digital provenance has been focused on standalone HPC environments, provenance in a heterogeneous HPC environment remains a challenge. In this paper we propose HyperProvenance, a high level system architecture especially for next generation heterogeneous HPC environments, which aims to increase confidence in workflow result accuracy through secure provenance collection.
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异构HPC环境的科学工作流来源架构
计算系统的来源是建立数据完整性的关键。它通过创建、所有权、消费和操作提供了数据生命周期的历史分类账。掌握了数据的来源,就可以对数据的状态进行逆向工程,从而了解数据的来源并验证其准确性。这种对数据完整性的需求在科学工作流程中至关重要,以确保所得结果的可验证性和可重复性。由于科学工作流程需要巨大的计算能力,许多工作流程在高性能计算(HPC)环境中运行,其中数据由运行在高度分布式基础设施上的众多进程消耗和操作。当前HPC环境的范围从内部部署系统到基于云和网格的解决方案。虽然大多数关于数字溯源的研究都集中在独立的HPC环境上,但在异构HPC环境下的溯源仍然是一个挑战。在本文中,我们提出了HyperProvenance,这是一种高级系统架构,特别适用于下一代异构HPC环境,旨在通过安全的来源收集来增加对工作流结果准确性的信心。
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