Enabling technologies for self-aware adaptive systems

M. Santambrogio, H. Hoffmann, J. Eastep, A. Agarwal
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引用次数: 43

Abstract

Self-aware computer systems will be capable of adapting their behavior and resources thousands of times a second to automatically find the best way to accomplish a given goal despite changing environmental conditions and demands. Such a capability benefits a broad spectrum of computer systems from embedded systems to supercomputers and is particularly useful for meeting power, performance, and resource-metering challenges in mobile computing, cloud computing, multicore computing, adaptive and dynamic compilation environments, and parallel operating systems. Some of the challenges in implementing self-aware systems are a) knowing within the system what the goals of applications are and if they are meeting them, b) deciding what actions to take to help applications meet their goals, and c) developing standard techniques that generalize and can be applied to a broad range of self-aware systems. This work presents our vision for self-aware adaptive systems and proposes enabling technologies to address these three challenges. We describe a framework called Application Heartbeats that provides a general, standardized way for applications to monitor their performance and make that information available to external observers. Then, through a study of a self-optimizing synchronization library called Smartlocks, we demonstrate a powerful technique that systems can use to determine which optimization actions to take. We show that Heartbeats can be applied naturally in the context of reinforcement learning optimization strategies as a reward signal and that, using such a strategy, Smartlocks are able to significantly improve performance of applications on an important emerging class of multicore systems called asymmetric multicores.
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自我意识适应系统的使能技术
具有自我意识的计算机系统将能够以每秒数千次的速度调整其行为和资源,从而在环境条件和需求不断变化的情况下自动找到实现给定目标的最佳方式。这种能力对从嵌入式系统到超级计算机的各种计算机系统都有好处,对于满足移动计算、云计算、多核计算、自适应和动态编译环境以及并行操作系统中的功率、性能和资源计量挑战尤其有用。实现自我意识系统的一些挑战是:a)在系统内部了解应用程序的目标是什么,以及它们是否满足这些目标;b)决定采取什么行动来帮助应用程序实现目标;c)开发一般化的标准技术,并可应用于广泛的自我意识系统。这项工作提出了我们对自我意识自适应系统的愿景,并提出了解决这三个挑战的使能技术。我们描述了一个名为Application Heartbeats的框架,它为应用程序提供了一种通用的、标准化的方式来监控它们的性能,并使这些信息可供外部观察者使用。然后,通过对一个名为Smartlocks的自优化同步库的研究,我们展示了一种强大的技术,系统可以使用该技术来确定要采取哪些优化操作。我们表明,心跳可以自然地应用于强化学习优化策略的背景下作为奖励信号,并且,使用这样的策略,Smartlocks能够显着提高应用程序在重要的新兴多核系统(称为非对称多核)上的性能。
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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