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Kinetically stable task assignment for networks of microservers

机译:微服务器网络的动态稳定的任务分配

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This paper studies task assignment in a network of resource constrained computing platforms (called microservers). A task is an abstraction of a computational agent or data that is hosted by the microservers. For example, in an object tracking scenario, a task represents a mobile tracking agent, such as a vehicle location update computation, that runs on microservers, which can receive sensor data pertaining to the object of interest. Due to object motion, the microservers that can observe a particular object change over time and there is overhead involved in migrating tasks among microservers. Furthermore, communication, processing, or memory constraints, allow a microserver to only serve a limited number of objects at the same time. Our overall goal is to assign tasks to microservers so as to minimize the number of migrations, and thus be kinetically stable, while guaranteeing that as many tasks as possible are monitored at all times. When the task trajectories are known in advance, we show that this problem is NP-complete (even over just two time steps), has an integrality gap of at least 2, and can be solved optimally in polynomial time if we allow tasks to be assigned fractionally. When only probabilistic information about future movement of the tasks is known, we propose two algorithms: a multi-commodity flow based algorithm and a maximum matching algorithm. We use simulations to compare the performance of these algorithms against the optimum task allocation strategy.
机译:本文研究资源受限的计算平台(称为微服务器)网络中的任务分配。任务是由微服务器托管的计算代理或数据的抽象。例如,在对象跟踪方案中,任务表示在微型服务器上运行的移动跟踪代理(例如车辆位置更新计算),该微型服务器可以接收与感兴趣的对象有关的传感器数据。由于对象运动,可以观察到特定对象的微服务器会随时间变化,并且在微服务器之间迁移任务会涉及开销。此外,通信,处理或内存限制使微服务器只能同时服务有限数量的对象。我们的总体目标是将任务分配给微服务器,以最大程度地减少迁移次数,从而保持动态稳定,同时确保始终监控尽可能多的任务。当事先知道任务轨迹时,我们表明这个问题是NP完全的(即使只是两个时间步长),积分间隙至少为2,并且如果允许任务被求解,则可以在多项式时间内得到最佳解决。分数分配。当只知道有关任务未来移动的概率信息时,我们提出两种算法:基于多商品流的算法和最大匹配算法。我们使用模拟将这些算法的性能与最佳任务分配策略进行比较。

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