预测计算机系统设计方案性能的机器学习模型

Berkin Özisikyilmaz, G. Memik, A. Choudhary
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引用次数: 21

摘要

计算机制造商花费大量的时间、资源和金钱来设计新系统和更新的配置,他们降低成本、收取有竞争力的价格和获得市场份额的能力取决于这些系统的性能有多好。在这项工作中,我们专注于并行计算机的系统设计和架构设计过程,并开发了加速它们的方法。我们的方法依赖于提取设计空间中一小部分机器的性能水平,并利用这些信息开发线性回归和神经网络模型,以预测整个设计空间中任何机器的性能。在架构设计方面,我们表明仅使用1%的设计空间(即周期精确模拟),我们可以在3.4%的错误率内预测整个设计空间的性能。在系统设计领域,我们利用先前发布的标准性能评估公司(SPEC)基准数字来预测未来系统的性能。我们专注于多处理器系统,并表明我们的模型可以在2.2%的平均错误率内预测未来系统的性能。我们相信这些工具可以大大加快设计空间的探索,并有助于减少相应的研发成本和上市时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Models to Predict Performance of Computer System Design Alternatives
Computer manufacturers spend a huge amount of time, resources, and money in designing new systems and newer configurations, and their ability to reduce costs, charge competitive prices, and gain market share depends on how good these systems perform. In this work, we concentrate on both the system design and the architectural design processes for parallel computers and develop methods to expedite them. Our methodology relies on extracting the performance levels of a small fraction of the machines in the design space and using this information to develop linear regression and neural network models to predict the performance of any machine in the whole design space. In terms of architectural design, we show that by using only 1% of the design space (i.e., cycle-accurate simulations), we can predict the performance of the whole design space within 3.4% error rate. In the system design area, we utilize the previously published Standard Performance Evaluation Corporation (SPEC) benchmark numbers to predict the performance of future systems. We concentrate on multiprocessor systems and show that our models can predict the performance of future systems within 2.2% error rate on average. We believe that these tools can accelerate the design space exploration significantly and aid in reducing the corresponding research/development cost and time-to-market.
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