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Load balancing via random local search in closed and open systems

机译:在封闭和开放系统中通过随机本地搜索进行负载平衡

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In this paper, we analyze the performance of random load resampling and migration strategies in parallel server systems. Clients initially attach themselves to an arbitrary server, but may switch servers independently at random instants of time in an attempt to improve their service rate. This approach to load balancing contrasts with traditional approaches where clients make smart server selections upon arrival (e.g., Join-the-Shortest-Queue policy and variants thereof). Load resampling is particularly relevant in scenarios where clients cannot predict the load of a server before being actually attached to it. An important example is in wireless spectrum sharing where clients try to share a set of frequency bands in a distributed manner. We first analyze the natural Random Local Search (RLS) strategy. Under this strategy, after sampling a new server randomly, clients only switch to it if their service rate is improved. In closed systems, where the client population is fixed, we derive tight estimates of the time it takes under RLS strategy to balance the load across servers. We then study open systems where clients arrive according to a random process and leave the system upon service completion. In this scenario, we analyze how client migrations within the system interact with the system dynamics induced by client arrivals and departures. We compare the load-aware RLS strategy to a load-oblivious strategy in which clients just randomly switch server without accounting for the server loads. Surprisingly, we show that both load-oblivious and load-aware strategies stabilize the system whenever this is at all possible. We use large-system asymptotics to characterize system performance, and augment this with simulations, which suggest that the average client sojourn time under the load-oblivious strategy is not considerably reduced when clients apply smarter load-aware strategies.
机译:在本文中,我们分析了并行服务器系统中随机负载重采样和迁移策略的性能。客户端最初将自己连接到任意服务器,但是可以在随机的时间瞬间独立切换服务器,以提高其服务速率。这种用于负载平衡的方法与传统方法不同,在传统方法中,客户端在到达时进行智能服务器选择(例如,加入最短队列策略及其变体)。负载重采样在客户端无法实际连接到服务器之前无法预测服务器负载的情况下尤其重要。一个重要的示例是无线频谱共享,其中客户端尝试以分布式方式共享一组频带。我们首先分析自然的随机局部搜索(RLS)策略。在这种策略下,在对新服务器进行随机采样之后,客户端只有在提高服务速率后才切换到该服务器。在客户端数量固定的封闭系统中,我们对RLS策略平衡服务器负载所需的时间进行了严格的估算。然后,我们研究开放系统,其中客户根据随机过程到达,并在服务完成后离开系统。在这种情况下,我们分析了系统内的客户端迁移如何与客户端到达和离开所引起的系统动态相互作用。我们将负载感知的RLS策略与负载忽略策略进行了比较,在这种策略中,客户端只是随机切换服务器而无需考虑服务器负载。令人惊讶的是,我们表明,只要有可能,负载忽略策略和负载感知策略都会使系统稳定。我们使用大型系统渐近线来表征系统性能,并通过仿真对其进行增强,这表明,当客户端应用更智能的负载感知策略时,负载忽略策略下的平均客户端停留时间不会显着减少。

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