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Allocations for heterogenous distributed storage

机译:异构分布式存储的分配

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摘要

We study the problem of storing a data object in a set of data nodes that fail independently with given probabilities. Our problem is a natural generalization of a homogenous storage allocation problem where all the nodes had the same reliability and is naturally motivated for peer-to-peer and cloud storage systems with different types of nodes. Assuming optimal erasure coding (MDS), the goal is to find a storage allocation (i.e, how much to store in each node) to maximize the probability of successful recovery. This problem turns out to be a challenging combinatorial optimization problem. In this work we introduce an approximation framework based on large deviation inequalities and convex optimization. We propose two approximation algorithms and study the asymptotic performance of the resulting allocations.
机译:我们研究了在给定概率独立失败的一组数据节点中存储数据对象的问题。我们的问题是同质存储分配问题的自然概括,其中所有节点都具有相同的可靠性,并且自然是针对具有不同类型节点的对等和云存储系统。假设最佳擦除编码(MDS),目标是找到一个存储分配(即在每个节点中存储多少)以使成功恢复的可能性最大化。这个问题原来是一个极具挑战性的组合优化问题。在这项工作中,我们介绍了一个基于大偏差不等式和凸优化的近似框架。我们提出了两种近似算法,并研究了所得分配的渐近性能。

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