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Browsing by Subject "Hnstruction caches"

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    Composite Instruction Prefetching
    (IEEE Computer Society, 2022-10) Chacon, Gino; Garza, Elba; Jimborean, Alexandra; Ros, Alberto; Gratz, Paul; Jimenez, Daniel A.; Mirbagher-Ajorpaz, Samira; Ingeniería y Tecnología de Computadores
    Prefetching is a pivotal mechanism for effectively masking latencies due to the processor/memory performance gap. Instruction prefetchers prevent costly instruction fetch stalls by requesting blocks of instruction memory in advance of their use to keep the pipeline front-end busy. the rapidly increasing instruction footprints of modern workloads have amplified the importance of such research. We propose a framework to leverage the complementary prefetching behaviors of existing prefetching techniques to create composite prefetchers. We show that recently proposed instruction prefetching techniques leverage different mechanisms from one another and find that in many cases, different prefetchers are complementary to each other. Composite prefetching allows for higher performance at lower storage overheads by combining the coverage of different complex prefetchers. We demonstrate a framework for selecting and combining state-of-the-art complex prefetchers, in a ”plug-and-play” fashion, to identify the best performing combinations at various hardware overheads. We show that for every storage capacity constraint analyzed, composite prefetching outperforms prior prefetching schemes with greater improvements shown at smaller capacity constraints.

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