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Differential FCM: increasing value prediction accuracy by improving table usage efficiency

机译:差分FCM:通过提高表格使用效率来提高价值预测准确性

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Value prediction is a relatively new technique to increase the Instruction Level Parallelism (ILP) in future microprocessors. An important problem when designing a value predictor is efficiency, an accurate predictor requires huge prediction tables. This is especially the case for the finite context method (FCM) predictor the most accurate one. In this paper, we show that the prediction accuracy of the FCM can be greatly improved by making the FCM predict studies instead of values. This new predictor is called the differential finite context method (DFCM) predictor. The DFCM predictor outperforms a similar FCM predictor by as much as 33%, depending on the prediction table size. If we take the additional storage into account, the difference is still 15% for realistic predictor sizes. We use several metrics to show that the key to this success is reduced aliasing in the level-2 table. We also show that the DFCM is superior to hybrid predictors based on FCM and stride predictors, since its prediction accuracy is higher than that of a hybrid one using a perfect meta-predictor.
机译:值预测是一种相对较新的技术,可以在未来的微处理器中提高指令级并行度(ILP)。设计值预测器时的一个重要问题是效率,准确的预测器需要庞大的预测表。对于有限上下文方法(FCM)预测器,最准确的情况尤其如此。在本文中,我们表明,通过对FCM进行预测研究而不是对值进行预测,可以大大提高FCM的预测准确性。这种新的预测变量称为微分有限上下文方法(DFCM)预测变量。取决于预测表的大小,DFCM预测器的性能要比同类FCM预测器高33%。如果考虑到额外的存储空间,实际预测变量的大小仍然相差15%。我们使用几个指标来显示成功的关键是减少2级表中的混叠。我们还表明,DFCM优于基于FCM和跨步预测器的混合预测器,因为它的预测精度高于使用完美的元预测器的混合预测器。

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