基于内存漏洞在线估计的运行时导向ECC保护

Luc Jaulmes, Miquel Moretó, M. Valero, M. Erez, Marc Casas
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引用次数: 1

摘要

半导体技术可靠性的降低和每个组件功耗预算的减少阻碍了下一代高性能计算(HPC)系统的设计。这两种约束都严重影响内存子系统,因为DRAM主内存占节点总功耗的30%到50%,并且是最容易发生故障的子系统。提高可靠性需要更强的纠错码(ecc),这需要额外的电力和存储成本。为了提高计算机器的功率效率,制定策略来维护内存可靠性,同时将这些成本降至最低,这一点至关重要。介绍了一种动态估计数据脆弱性的方法,并据此调整ECC保护。我们的方法依赖于基于任务的数据流编程模型中运行时系统随时可用的信息,以及现有的虚拟纠错码(VECC)方案来提供适应性保护。使用漏洞估计的引导VECC提供了广泛的可靠性冗余权衡,与使用昂贵的离线分析进行指导一样可靠,比没有指导的VECC安全高达25%。运行时引导的VECC比更强的统一ECC更高效,将DIMM寿命失败率从1.84%降低到1.26%,而DRAM能耗仅增加1.03倍。
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Runtime-Guided ECC Protection using Online Estimation of Memory Vulnerability
Diminishing reliability of semiconductor technologies and decreasing power budgets per component hinder designing next-generation high performance computing (HPC) systems. Both constraints strongly impact memory subsystems, as DRAM main memory accounts for up to 30 to 50 percent of a node’s overall power consumption, and is the subsystem that is most subject to faults. Improving reliability requires stronger error correcting codes (ECCs), which incur additional power and storage costs. It is critical to develop strategies to uphold memory reliability while minimising these costs, with the goal of improving the power efficiency of computing machines.We introduce a methodology to dynamically estimate the vulnerability of data, and adjust ECC protection accordingly. Our methodology relies on information readily available to runtime systems in task-based dataflow programming models, and the existing Virtualized Error Correcting Code (VECC) schemes to provide adaptable protection. Guiding VECC using vulnerability estimates offers a wide range of reliabilityredundancy trade-offs, as reliable as using expensive offline profiling for guidance and up to to 25% safer than VECC without guidance. Runtime-guided VECC is more efficient than a stronger uniform ECC, reducing DIMM lifetime failure from 1.84% down to 1.26% while increasing DRAM energy consumption by only 1.03×.
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