Branch Prediction Using Selective Branch Inversion

Abstract

In this paper, we describe a family of branch predictors that use confidence estimation to improve the performance of an underlying branch predictor. With this method, referred to as Selective Branch Inversion (SBI), a confidence estimator determines when the branch predictor is likely to be incorrect; branch decisions for these low-confidence branches are inverted. We show that SBI with an underlying Gshare branch predictor and an optimized confidence estimator outperforms other equal sized predictors such as the best Gshare predictor and Cshare with dynamic history length fitting, as well as equally complex McFarling, Bi-Mode, and Gskewed predictors. Our analysis shows that SBI achieves its performance through conflict detection and correction, rather than through conflict avoidance as some of the previously proposed predictors such as Bi-Mode and Agree. We also show that SBI can be used with other underlying branch predictors, such as McFarling, to improve their performance even further. Finally we show that Dynamic Inversion Monitoring (DIM) can be used as a safeguard to turn off SBI in cases where it degrades the overall performance when compared to the underlying predictor.

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Document Details

Document Type
Technical Report
Publication Date
Mar 01, 1999
Accession Number
ADA460642

Entities

People

  • Artur Klauser
  • Dirk Grunwald
  • Srilatha Manne

Organizations

  • University of Colorado Boulder

Tags

DTIC Thesaurus Topics

  • Abstracts
  • Availability
  • Classification
  • Colorado
  • Computers
  • Contracts
  • Detection
  • Estimators
  • Information Operations
  • Instructions
  • Inversion
  • Monitoring
  • Security
  • Standards

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