Towards an Approximation-Aware Computational Workflow Framework for Accelerating Large-Scale Discovery Tasks: Invited paper

Michael Johnston, V. Vassiliadis
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Abstract

The use of approximation is fundamental in computational science. Almost all computational methods adopt approximations in some form in order to obtain a favourable cost/accuracy trade-off and there are usually many approximations that could be used. As a result, when a researcher wishes to measure a property of a system with a computational technique, they are faced with an array of options. Current computational workflow frameworks focus on helping researchers automate a sequence of steps on a particular platform. The aim is often to obtain a computational measurement of a property. However these frameworks are unaware that there may be a large number of ways to do so. As such, they cannot support researchers in making these choices during development or at execution-time. We argue that computational workflow frameworks should be designed to beapproximation-aware - that is, support the fact that a given workflow description represents a task thatcould be performed in different ways. This is key to unlocking the potential of computational workflows to accelerate discovery tasks, particularly those involving searches of large entity spaces. It will enable efficiently obtaining measurements of entity properties, given a set of constraints, by directly leveraging the space of choices available. In this paper we describe the basic functions that an approximation-aware workflow framework should provide, how those functions can be realized in practice, and illustrate some of the powerful capabilities it would enable, including approximate memoization, surrogate model support, and automated workflow composition.
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面向加速大规模发现任务的逼近感知计算工作流框架:特邀论文
近似值的使用是计算科学的基础。几乎所有的计算方法都采用某种形式的近似值,以获得有利的成本/精度权衡,通常可以使用许多近似值。因此,当研究人员希望用计算技术测量系统的属性时,他们面临着一系列的选择。当前的计算工作流框架专注于帮助研究人员在特定平台上自动执行一系列步骤。其目的往往是获得一个属性的计算测量。然而,这些框架没有意识到可能有很多方法可以做到这一点。因此,它们不能支持研究人员在开发或执行阶段做出这些选择。我们认为计算工作流框架应该被设计成近似感知的——也就是说,支持这样一个事实,即给定的工作流描述代表了一个可以以不同方式执行的任务。这是释放计算工作流潜力的关键,可以加速发现任务,特别是那些涉及大型实体空间搜索的任务。它将通过直接利用可用的选择空间,在给定一组约束条件的情况下,有效地获得实体属性的度量。在本文中,我们描述了近似感知工作流框架应该提供的基本功能,这些功能如何在实践中实现,并说明了它将启用的一些强大功能,包括近似记忆、代理模型支持和自动化工作流组合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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