使用连续统计机器学习在混合指令/周期精确指令集模拟器中实现高速性能预测

D. Powell, Björn Franke
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引用次数: 19

摘要

功能指令集模拟器在高指令速率下执行指令精确的基准模拟。然而,与它们速度较慢但周期精确的对应程序不同,由于更高级别的硬件抽象,它们无法提供周期计数。在本文中,我们提出了一种基于统计机器学习的性能预测新方法,该方法利用混合指令和周期精确模拟器。我们将连续机器学习的概念引入到仿真中,根据需要获取新的训练数据点,并用于性能模型的实时更新。此外,我们还展示了如何调整统计回归来降低性能关键模拟期间这些更新的成本。对于最先进的模拟ARC 750D嵌入式处理器,我们证明了我们的方法非常准确,平均误差<2.5%,同时实现了大约的加速。50%以上的基线周期精确模拟。
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Using continuous statistical machine learning to enable high-speed performance prediction in hybrid instruction-/cycle-accurate instruction set simulators
Functional instruction set simulators perform instruction-accurate simulation of benchmarks at high instruction rates. Unlike their slower, but cycle-accurate counterparts however, they are not capable of providing cycle counts due to the higher level of hardware abstraction. In this paper we present a novel approach to performance prediction based on statistical machine learning utilizing a hybrid instruction- and cycle-accurate simulator. We introduce the concept of continuous machine learning to simulation whereby new training data points are acquired on demand and used for on-the-fly updates of the performance model. Furthermore, we show how statistical regression can be adapted to reduce the cost of these updates during a performance-critical simulation. For a state-of-the-art simulator modeling the ARC 750D embedded processor we demonstrate that our approach is highly accurate, with average error <2.5% while achieving a speed-up of approx. 50% over the baseline cycle-accurate simulation.
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