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An Efficient Technique for Chip Temperature Optimization of Multiprocessor Systems in the Dark Silicon Era

机译:黑暗硅时代多处理器系统芯片温度优化的高效技术

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In the dark silicon era, a fundamental problem is: given a real-time computation demand represented by a set of independent applications with their own power consumption, how to determine if an on-chip multiprocessor system is able to respond to this demand and maintain its reliability by keeping every core within the safe temperature range. In this paper, we first present a novel thermal model for the prediction of chip peak temperature assuming the application-to-core mapping is determined. The mathematical model combines linearized steady-state thermal model with empirical scaling factors to achieve significantly improved accuracy and running efficiency. Based on it, a MILP-based approach is presented to find the optimal application-to-core assignment such that the computation demand is met and the chip temperature is minimized. At last, if the minimized temperature still exceeds the safe temperature threshold, a novel heuristic algorithm, called temperature threshold-aware result handling (TTRH), is proposed to drop certain applications selectively from immediate execution, and lower the chip peak temperature to the safety threshold. Extensive performance evaluation shows that the MILP-based approach can reduce the chip peak temperature by 9.1 C on average compared to traditional techniques. TTRH algorithm can further lower the chip peak temperature by 1.38° C on average with the application dropping rate of less than 4.35%.
机译:在暗硅时代,一个基本问题是:给定一组独立应用程序自身的功耗所代表的实时计算需求,如何确定片上多处理器系统是否能够响应这一需求并保持通过将每个内核保持在安全温度范围内来确保其可靠性。在本文中,我们首先提出了一种新的热模型,用于在确定应用到核心映射的情况下预测芯片峰值温度。该数学模型将线性化的稳态热模型与经验比例因子结合在一起,以显着提高准确性和运行效率。在此基础上,提出了一种基于MILP的方法,以找到最佳的应用到内核分配,从而满足了计算需求并最小化了芯片温度。最后,如果最小化温度仍超过安全温度阈值,则提出了一种新颖的启发式算法,称为温度阈值感知结果处理(TTRH),可以选择性地将某些应用程序从立即执行中删除,并将芯片峰值温度降低到安全范围阈。广泛的性能评估表明,与传统技术相比,基于MILP的方法可使芯片峰值温度平均降低9.1C。 TTRH算法可以使芯片峰值温度平均降低1.38°C,应用降落率小于4.35%。

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