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Applying neural networks to computer system performance tuning

机译:将神经网络应用于计算机系统性能调整

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This paper presents results of empirical studies applying neural networks and techniques from control systems theory to computer system performance tuning. Experiments were performed on a simulated multiprogrammed computer system with a time-varying workload comprising four job classes. Key system performance measures such as device utilizations, mean queue lengths, and paging rates were collected and used to train neural network performance models. Several model-based adaptive control experiments show that backpropagation and radial basis function neural network controllers can be trained online to adjust memory allocations in order to meet desired performance objectives.
机译:本文介绍了从控制系统理论到计算机系统性能调整的应用神经网络和技术的实证研究结果。实验是在模拟的多程序计算机系统上进行的,该系统具有随时间变化的工作负载,包括四个工作类别。收集了关键的系统性能指标,例如设备利用率,平均队列长度和寻呼率,并用于训练神经网络性能模型。几个基于模型的自适应控制实验表明,可以在线训练反向传播和径向基函数神经网络控制器,以调整内存分配,以满足所需的性能目标。

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