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LACS: A Locality-Aware Cost-Sensitive Cache Replacement Algorithm

机译:LACS:一种本地感知的成本敏感型缓存替换算法

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摘要

The design of an effective last-level cache (LLC) in general—and an effective cache replacement/partitioning algorithm in particular—is critical to the overall system performance. The processor’s ability to hide the LLC miss penalty differs widely from one miss to another. The more instructions the processor manages to issue during the miss, the better it is capable of hiding the miss penalty and the lower the cost of that miss. This nonuniformity in the processor’s ability to hide LLC miss latencies, and the resultant nonuniformity in the performance impact of LLC misses, opens up an opportunity for a new cost-sensitive cache replacement algorithm. This paper makes two key contributions. First, It proposes a framework for estimating the costs of cache blocks at run-time based on the processor’s ability to (partially) hide their miss latencies. Second, It proposes a simple, low-hardware overhead, yet effective, cache replacement algorithm that is locality-aware and cost-sensitive (LACS). LACS is thoroughly evaluated using a detailed simulation environment. LACS speeds up 12 LLC-performance-constrained SPEC CPU2006 benchmarks by up to 51% and 11% on average. When evaluated using a dual/quad-core CMP with a shared LLC, LACS significantly outperforms LRU in terms of performance and fairness, achieving improvements up to 54%.
机译:通常,有效的最后一级缓存(LLC)的设计,尤其是有效的缓存替换/分区算法,对于整个系统性能至关重要。处理器隐藏LLC未命中罚款的能力因一个未命中而异。处理器在未命中期间发出的指令越多,隐藏未命中罚款的能力就越好,并且该未命中的成本越低。处理器隐藏LLC遗漏延迟的能力上的这种不一致以及LLC遗漏对性能的影响所导致的不一致,为新的成本敏感型缓存替换算法提供了机会。本文做出了两个关键贡献。首先,它提出了一个框架,用于根据处理器(部分)隐藏其未命中延迟的能力来估算运行时缓存块的成本。其次,它提出了一种简单,低硬件开销但有效的高速缓存替换算法,该算法可感知位置且对成本敏感(LACS)。使用详细的仿真环境对LACS进行了全面评估。 LACS加快了12个受LLC性能限制的SPEC CPU2006基准的平均速度,分别提高了51%和11%。当使用带有共享LLC的双/四核CMP进行评估时,LACS在性能和公平性方面明显优于LRU,可将性能提高多达54%。

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