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Rapid Early-Stage Microarchitecture Design Using Predictive Models

机译:快速早期微体系结构设计使用预测模型

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The early-stage design of a new microprocessor involves the evaluation of a wide range of benchmarks across a large number of architectural configurations. Several methods are used to cut down on the required simulation time. Typically, however, existing approaches fail to capture true program behaviour accurately and require a non-negligible number of training simulations to be run. We address these problems by developing a machine learning model that predicts the mean of any given metric, e.g. cycles or energy, across a range of programs, for any microarchitectural configuration. It works by combining only the most representative programs from the benchmark suite based on their behaviour in the design space under consideration. We use our model to predict the mean performance, energy, energy-delay (ED) and energy-delay-squared (EDD) of the SPEC CPU 2000 and MiBench benchmark suites within our design space. We achieve the same level of accuracy as two state-of-the-art prediction techniques but require five times fewer training simulations. Furthermore, our technique is scalable and we show that, asymptotically, it requires an order of magnitude fewer simulations than these existing approaches.
机译:新微处理器的早期设计涉及在大量建筑配置中评估广泛的基准。几种方法用于减少所需的模拟时间。然而,通常,现有方法无法准确捕获真正的程序行为,并且需要运行不可忽略数量的培训仿真。我们通过开发一种机器学习模型来解决这些问题,该机器学习模型预测了任何给定度量的均值,例如,循环或能量,跨各种程序,用于任何微体系结构。它通过仅基于他们在所考虑的设计空间中的行为组合基准套件中的最具代表性的程序来工作。我们使用我们的模型来预测我们设计空间内的规范CPU 2000和Mibench基准套件的平均性能,能量,能量延迟(EDD)。我们达到与两种最先进的预测技术相同的准确性,但需要较少的训练模拟。此外,我们的技术是可扩展的,我们表明,渐近地,它需要比这些现有方法更少的仿真顺序。

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