首页> 外文会议>2019 56th ACM/IEEE Design Automation Conference >Life Guard: A Reinforcement Learning-Based Task Mapping Strategy for Performance-Centric Aging Management
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Life Guard: A Reinforcement Learning-Based Task Mapping Strategy for Performance-Centric Aging Management

机译:生命卫士:基于增强学习的任务映射策略,以性能为中心的老化管理

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Device scaling to subdeca nanometer has pushed device aging as a primary design concern. In manycore systems, inevitable process variation further adds to delay degradation and, coupled with the scalability issues in manycores, makes aging management, while meeting performance demands, a complex problem. Life-Guard is a performance-centric reinforcement learning-based task mapping strategy that leverages the different impact of applications on aging for improving system health. Experimental results, comparing LifeGuard with two state-of-the-art aging optimizing techniques, on a 256-core system, showed that LifeGuard led to improved health for, respectively, 57% and 74% of the cores, and also an enhanced aggregate core frequency. CCS Concepts • Hardware → Aging of circuits and systems;
机译:器件缩放至十亿纳米以下已将器件老化作为主要设计考虑因素。在许多核系统中,不可避免的过程变化会进一步增加延迟降级,再加上许多核中的可伸缩性问题,使得在满足性能要求的同时进行老化管理成为一个复杂的问题。 Life-Guard是一种以性能为中心,基于强化学习的任务映射策略,它利用应用程序对老化的不同影响来改善系统健康状况。在256核系统上将LifeGuard与两种最先进的老化优化技术进行比较的实验结果表明,LifeGuard分别改善了57%和74%的内核的运行状况,并增强了聚合核心频率。 CCS概念•硬件→电路和系统的老化;

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