OH-SNAP: Optimized Hybrid Scaled Neural Analog Predictor

نویسنده

  • Daniel A. Jiménez
چکیده

Neural-based branch predictors have been among the most accurate in the literature. The recently proposed scaled neural analog predictor, or SNAP, builds on piecewise-linear branch prediction and relies on a mixed analog/digital implementation to mitigate latency as well as power requirements over previous neural predictors. I present an optimized version of the SNAP predictor, hybridized with two simple two-level adaptive predictors. The resulting optimized predictor, OH-SNAP, delivers high accuracy.

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تاریخ انتشار 2011