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Workload Shaping Energy Optimizations with Predictable Performance for Mobile Sensing

机译:具有可预测性能的工作负载整形能源优化,可用于移动传感

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Energy-efficiency is a key concern in mobile sensing applications, such as those for tracking social interactions or physical activities. An attractive approach to saving energy is to shape the workload of the system by artificially introducing delays so that the workload would require less energy to process. However, adding delays to save energy may have a detrimental impact on user experience. To address this problem, we present Gratis, a novel paradigm for incorporating workload shaping energy optimizations in mobile sensing applications in an automated manner. Gratis adopts stream programs as a high-level abstraction whose execution is coordinated using an explicit power management policy. We present an expressive coordination language that can specify a broad range of workload-shaping optimizations. A unique property of the proposed power management policies is that they have predictable performance, which can be estimated at compile time, in a computationally efficient manner, from a small number of measurements. We have developed a simulator that can predict the energy with a average error of 7% and delay with a average error of 15%, even when applications have variable workloads. The simulator is scalable: hours of real-world traces can be simulated in a few seconds. Building on the simulator's accuracy and scalability, we have developed tools for configuring power management policies automatically. We have evaluated Gratis by developing two mobile applications and optimizing their energy consumption. For example, an application that tracks social interactions using speaker-identification techniques can run for only 7 hours without energy optimizations. However, when Gratis employs batching, scheduled concurrency, and adaptive sensing, the battery lifetime can be extended to 45 hours when the end-to-end deadline is one minute. These results demonstrate the efficacy of our approach to reduce energy consumption in mobile sensing applications.
机译:能源效率是移动感应应用(例如用于跟踪社交互动或体育活动的应用)中的关键问题。节省能源的一种有吸引力的方法是通过人为地引入延迟来塑造系统的工作负载,从而减少工作负载所需的能源。但是,增加延迟以节省能源可能会对用户体验产生不利影响。为了解决这个问题,我们提出了Gratis,这是一种新颖的范例,用于以自动化方式将工作负载整形能量优化合并到移动传感应用中。 Gratis采用流程序作为高级抽象,使用明确的电源管理策略来协调其执行。我们提出了一种富有表现力的协调语言,可以指定各种工作负载整形优化。所提出的电源管理策略的独特属性是它们具有可预测的性能,可以在编译时以计算有效的方式从少量测量中对其进行估算。我们开发了一种模拟器,即使应用程序具有可变的工作负载,该模拟器也可以预测平均误差为7%的能量,并可以平均误差为15%的延迟进行预测。该模拟器是可扩展的:可以在几秒钟内模拟数小时的实际跟踪。基于模拟器的准确性和可扩展性,我们开发了可自动配置电源管理策略的工具。我们通过开发两个移动应用程序并优化其能耗来评估了Gratis。例如,使用说话人识别技术跟踪社交互动的应用程序仅运行7个小时,而无需进行能源优化。但是,当Gratis使用批处理,计划的并发性和自适应感测时,当端到端的最后期限为一分钟时,电池寿命可以延长到45小时。这些结果证明了我们的方法在移动传感应用中降低能耗的功效。

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