Gossip-Based Computation of Aggregate Information

FOCS(2003)

引用 1893|浏览382
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摘要
Over the last decade, we have seen a revolution in connectivity between computers, and a resulting paradigm shift from centralized to highly distributed systems. With massive scale also comes massive instability, as node and link failures become the norm rather than the exception. For such highly volatile systems, decentralized gossip-based protocols are emerging as an approach to maintaining simplicity and scalability while achieving fault-tolerant information dissemination.In this paper, we study the problem of computing aggregates with gossip-style protocols. Our first contribution is an analysis of simple gossip-based protocols for the computations of sums, averages, random samples, quantiles, and other aggregate functions, and we show that our protocols converge exponentially fast to the true answer when using uniform gossip.Our second contribution is the definition of a precise notion of the speed with which a node's data diffuses through the network. We show that this diffusion speed is at the heart of the approximation guarantees for all of the above problems. We analyze the diffusion speed of uniform gossip in the presence of node and link failures, as well as for flooding-based mechanisms. The latter expose interesting connections to random walks on graphs.
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关键词
random sample,massive instability,random walk,decentralized gossip-based protocol,simple gossip-based protocol,uniform gossip,gossip-based computation,aggregate function,diffusion speed,link failure,aggregate information,massive scale,random sampling,protocols,paradigm shift,computer networks,fault tolerant,distributed system,col
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