利用移动代理群减少对等存储系统中相关故障的影响

Benoît Romito, F. Bourdon
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引用次数: 1

摘要

本文介绍了一种用于点对点网络中数据放置的去中心化模拟退火算法MinCor (Minimum of correlation)。其目标是减少此类数据存储系统中相关故障的影响。这种数据放置是使用多代理系统实现的,该系统将文档转换为移动代理群。在将高度相关的节点重新组合在一起的网络聚类步骤之后,执行MinCor的群能够找到最小化同一集群上代理数量的放置。由于羊群的环境探索能力,这种安置是以分散的方式获得的。在存在相关故障的情况下,对该系统进行了一组实验。它们表明,在实践中,预期的安置是很好的。他们还表明,与随机放置相比,使用MinCor算法的鸟群在存在相关故障时遭受的同时损失更少。
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Reducing Correlated Failures Impact in Peer-to-Peer Storage Systems Using Mobile Agents Flocks
This paper introduces MinCor (Minimum of Correlations), a decentralized simulated annealing algorithm designed for the data placement in peer-to-peer networks. Its goal is to reduce the correlated failures impact in such data storage systems. This data placement is realized using a multi-agent system which turns the documents into mobile agents flocks. After a network clustering step where highly correlated peers are regrouped together, the flocks executing MinCor are able to find a placement minimizing the number of agents on the same clusters. This placement is obtained in a decentralized way thanks to the environment exploration capabilities of the flocks. A set of experiments are performed on this system in presence of correlated failures. They show that, in practice, the expected placement is well obtained. They also show that, flocks using the MinCor algorithm suffer less simultaneous losses in presence of correlated failures than a mere random placement.
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