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ISLPED
2004
ACM

SEPAS: a highly accurate energy-efficient branch predictor

13 years 10 months ago
SEPAS: a highly accurate energy-efficient branch predictor
Designers have invested much effort in developing accurate branch predictors with short learning periods. Such techniques rely on exploiting complex and relatively large structures. Although exploiting such structures is necessary to achieve high accuracy and fast learning, once the short learning phase is over, a simple structure can efficiently predict the branch outcome for the majority of branches. Moreover, for a large number of branches, once the branch reaches the steady state phase, updating the branch predictor unit is unnecessary since there is already enough information available to the predictor to predict the branch outcome accurately. Therefore, aggressive usage of complex large branch predictors appears to be inefficient since it results in unnecessary energy consumption. In this work we introduce Selective Predictor Access (SEPAS) to exploit this design inefficiency. SEPAS uses a simple power efficient structure to identify well behaved branch instructions that are in ...
Amirali Baniasadi, Andreas Moshovos
Added 30 Jun 2010
Updated 30 Jun 2010
Type Conference
Year 2004
Where ISLPED
Authors Amirali Baniasadi, Andreas Moshovos
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