Publication | Closed Access
On the Delay-Storage Trade-Off in Content Download from Coded Distributed Storage Systems
188
Citations
23
References
2014
Year
Distributed File SystemCluster ComputingStorage PerformanceEngineeringContent ReconstructionStorage ManagementContent DownloadExpected Download TimeStorage SystemsData ManagementDownload TimeFile SystemsContent DistributionCachingDistributed SystemsComputer ScienceEdge ComputingCloud ComputingDelay-storage Trade-offDistributed Data StoreContent Delivery Network
We study how coding in distributed storage reduces expected download time, in addition to providing reliability against disk failures. The expected download time is reduced because when a content file is encoded with redundancy and distributed across multiple disks, reading only a subset of the disks is sufficient for content reconstruction. For the same total storage used, coding exploits the diversity in storage better than simple replication, and hence gives faster download. We use a novel fork-join queueing framework to model multiple users requesting the content simultaneously, and derive bounds on the expected download time. Our system model and results are a novel generalization of the fork-join system that is studied in queueing theory literature. Our results demonstrate the fundamental trade-off between the expected download time and the amount of storage space. This trade-off can be used for design of the amount of redundancy required to meet the delay constraints on content delivery.
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