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An Accurate Learning-Based Performance/Power Model for System-Level Design of a Multicore Multithreaded Network Processor

机译:基于精确的基于学习的性能/功率模型,用于多核多线程网络处理器的系统级设计

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In the network applications domain, different network environments and scenarios demand various line rates, and restrain the design of the network processor by several constraints such as power and area. Additionally, new network services and applications with different processing requirements are increasingly emerging day by day. In this regard, having a multi-objective and flexible performance model that can be used to minimize the cost and time of designing network processors is an inevitable need. In this paper, we propose an accurate and fast prediction model that exploits just a few numbers of system-level parameters to estimate the performance and power of a commercial network processor, Intel IXP2800. The proposed design methodology uses a non-linear learning algorithm - a combination of the polynomial transformation of design parameters and higher-order spline functions - which in the face of newly introduced applications needs only a small training set, i.e. a small number of simulations, to train the model. Our experimental results show the proposed models can achieve a median error rate as low as 8.7 percent for performance and 2.6 percent for power metric.
机译:在网络应用程序域中,不同的网络环境和场景需要各种线率,并通过诸如电源和区域的多个约束来抑制网络处理器的设计。此外,新的网络服务和具有不同处理要求的应用程序日益日趋新兴。在这方面,具有多目标和灵活的性能模型,可用于最小化设计网络处理器的成本和时间是不可避免的需求。在本文中,我们提出了一种准确而快速的预测模型,可利用几个系统级参数来估计商业网络处理器Intel IXP2800的性能和功率。该提出的设计方法使用非线性学习算法 - 设计参数的多项式变换和高阶样条函数的组合 - 这在新引入的应用程序中只需要一个小型训练集,即少量模拟,训练模型。我们的实验结果表明,拟议的型号可以实现低至8.7%的中值率,功率指标的2.6%。

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