随机请求的配置均衡

Franziska Eberle, Anupam Gupta, Nicole Megow, Benjamin Moseley, Rudy Zhou
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引用次数: 0

摘要

随机请求的配置均衡问题是负载均衡和虚拟电路路由等资源分配问题的推广。在其中,我们有$m$资源和$n$请求。每个请求都有多种可能的配置,每种配置都会使每个资源的负载增加一些。目标是为每个请求选择一个配置,以最小化makespan:最大负载资源的负载。在我们的工作中,我们关注的是一个随机设置,我们只知道每个配置如何增加资源负载的分布,只有在选择配置后才能学习实现值。我们开发了离线和在线算法,用于随机请求的配置平衡。当离线请求已知时,我们给出了一个非自适应策略,用于与随机请求进行配置平衡,该策略$O(\frac{\log m}{\log \log m})$ -近似于最优自适应策略。特别是,这缩小了这个问题的自适应差距,因为即使在相同机器上的负载平衡的非常特殊的情况下,也有一个渐近匹配的下界。当请求以列表形式在线到达时,我们给出一个$O(\log m)$竞争的非适应性策略。同样,由于非常特殊的情况(例如,不相关机器上的负载平衡)的信息理论下界,这个结果是渐近紧密的。最后,我们展示了如何在相关机器上的负载平衡的特殊情况下利用自适应来获得离线的常数因子近似值和在线的$O(\log \log m)$ -近似值。在我们所有的结果中,一个关键的技术成分是最优适应策略的新结构特征,它允许我们限制其决策之间的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Configuration Balancing for Stochastic Requests
The configuration balancing problem with stochastic requests generalizes many well-studied resource allocation problems such as load balancing and virtual circuit routing. In it, we have $m$ resources and $n$ requests. Each request has multiple possible configurations, each of which increases the load of each resource by some amount. The goal is to select one configuration for each request to minimize the makespan: the load of the most-loaded resource. In our work, we focus on a stochastic setting, where we only know the distribution for how each configuration increases the resource loads, learning the realized value only after a configuration is chosen. We develop both offline and online algorithms for configuration balancing with stochastic requests. When the requests are known offline, we give a non-adaptive policy for configuration balancing with stochastic requests that $O(\frac{\log m}{\log \log m})$-approximates the optimal adaptive policy. In particular, this closes the adaptivity gap for this problem as there is an asymptotically matching lower bound even for the very special case of load balancing on identical machines. When requests arrive online in a list, we give a non-adaptive policy that is $O(\log m)$ competitive. Again, this result is asymptotically tight due to information-theoretic lower bounds for very special cases (e.g., for load balancing on unrelated machines). Finally, we show how to leverage adaptivity in the special case of load balancing on related machines to obtain a constant-factor approximation offline and an $O(\log \log m)$-approximation online. A crucial technical ingredient in all of our results is a new structural characterization of the optimal adaptive policy that allows us to limit the correlations between its decisions.
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