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Learning-Based Localized Offloading with Resource-Constrained Data Centers

机译:资源受限的数据中心的基于学习的本地化分流

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Offloading has emerged as a new paradigm to save energy for mobile devices in the context of cloud computing systems. Unlike the traditional cloud computing, it offers the flexibility of switching between local and remote execution, and employs accurate profiling of tasks. Given a resource-constrained data center, an interesting optimization question is which tasks should be offloaded/run locally so that global energy savings is maximized. The main technical difficulties are related to the uncertainty and variability of congestion, as well as the need for a real-time, low overhead and localized decision procedure that are near optimal. We introduce a combination of statistical and learning-based techniques that use the results of offline centralized algorithms to create localized online solutions that perform well under realistic workloads. The procedures and algorithms are compared with upper bounds to demonstrate their effectiveness.
机译:卸载已成为一种新的范例,可以在云计算系统的环境中为移动设备节省能源。与传统的云计算不同,它提供了在本地和远程执行之间切换的灵活性,并采用了准确的任务配置文件。给定资源受限的数据中心,一个有趣的优化问题是哪些任务应在本地卸载/运行,以便最大程度地节省全球能源。主要的技术困难与拥塞的不确定性和可变性有关,并且需要实时,低开销和接近最优的局部决策程序。我们引入了基于统计和基于学习的技术的组合,这些技术使用离线集中式算法的结果来创建本地化的在线解决方案,这些解决方案在实际工作负载下表现良好。将过程和算法与上限进行比较,以证明其有效性。

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