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conference paper

Dead-block prediction & dead-block correlating prefetchers

Lai, An-Chow
•
Fide, Cem
•
Falsafi, Babak  
2001
Proceedings of the International Symposium on Computer Architecture

Effective data prefetching requires accurate mechanisms to predict both “which” cache blocks to prefetch and “when” to prefetch them. This paper proposes the Dead-Block Predictors (DBPs), trace-based predictors that accurately identify “when” an Ll data cache block becomes evictable or “dead”. Predicting a dead block significantly enhances prefetching lookahead and opportunity, and enables placing data directly into Ll, obviating the need for auxiliary prefetch buffers. This paper also proposes Dead-Block Correlating Prefetchers (DBCPs), that use address correlation to predict “which” subsequent block to prefetch when a block becomes evictable. A DBCP enables effective data prefetching in a wide spectrum of pointer- intensive, integer, and floating-point applications. We use cycle-accurate simulation of an out-of-order superscalar processor and memory-intensive benchmarks to show that: (1) dead-block prediction enhances prefetching lookahead at least by an order of magnitude as compared to previous techniques, (2) a DBP can predict dead blocks on average with a coverage of 90% only mispredicting 4% of the time, (3) a DBCP offers an address prediction coverage of 86% only mispredicting 3% of the time, and (4) DBCPs improve performance by 62% on average and 282% at best in the benchmarks we studied

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