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Optimizing in the Dark: Learning an Optimal Solution through a Simple Request Interface

机译:在黑暗中优化:通过简单的请求界面学习最佳解决方案

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摘要

Network resource reservation systems are being developed and deployed, driven by the demand and substantial benefits of providing performance predictability for modern distributed applications. However, existing systems suffer limitations: They either are inefficient in finding the optimal resource reservation, or cause private information (e.g., from the network infrastructure) to be exposed (e.g., to the user). In this paper, we design BoxOpt, a novel system that leverages efficient oracle construction techniques in optimization and learning theory to automatically, and swiftly learn the optimal resource reservations without exchanging any private information between the network and the user. We implement a prototype of BoxOpt and demonstrate its efficiency and efficacy via extensive experiments using real network topology and trace. Results show that (1) BoxOpt has a 100% correctness ratio, and (2) for 95% of requests, BoxOpt learns the optimal resource reservation within 13 seconds.
机译:通过提供现代分布式应用的性能可预测性的需求和实质性利益,正在开发和部署网络资源预订系统。然而,现有系统遭受限制:它们效率低下在找到最佳资源预留时,或者导致私人信息(例如,从网络基础设施)被暴露(例如,向用户)。在本文中,我们设计BoxOpt,这是一种新颖的系统,可以在优化和学习理论中自动利用高效的Oracle施工技术,并迅速学习最佳资源预留,而无需在网络和用户之间交换任何私人信息。我们通过使用真实网络拓扑和痕迹,通过广泛的实验实现BoxOpt的原型,并通过广泛的实验展示其效率和功效。结果表明,(1)BoxOpt具有100%的正确性比率,并且(2)为95%的请求,BoxOpt在13秒内学习最佳资源预留。

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