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Reducing Load Latency with Cache Level Prediction (2103.14808v1)

Published 27 Mar 2021 in cs.AR

Abstract: High load latency that results from deep cache hierarchies and relatively slow main memory is an important limiter of single-thread performance. Data prefetch helps reduce this latency by fetching data up the hierarchy before it is requested by load instructions. However, data prefetching has shown to be imperfect in many situations. We propose cache-level prediction to complement prefetchers. Our method predicts which memory hierarchy level a load will access allowing the memory loads to start earlier, and thereby saves many cycles. The predictor provides high prediction accuracy at the cost of just one cycle added latency to L1 misses. Experimental results show speedup of 7.8\% on generic, graph, and HPC applications over a baseline with aggressive prefetchers.

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