A Comparison of Known Classes of Reliable Multicast Protocols

Abstract

This thesis addresses the question of whether a reliable multicast protocol can be designed that enjoys all the scaling properties of receiver-initiated protocols while still being able to operate correctly with finite memory. To answer this question, we analyze the maximum throughput of the known classes of reliable multicast protocols that have been proposed to solve the acknowledgment (ACK) implosion problem of sender-initiated reliable multicast protocols. We introduce a new taxonomy of reliable multicast protocols, based on the premise that the mechanisms used to release data at the source after correct delivery should be decoupled from the mechanisms used to pace the transmission of data and to effect error recovery. Receiver- initiated protocols, which are based entirely on negative acknowledgments (NAKs) sent from the receivers to the sender are shown to require infinite buffers in order to prevent deadlocks. Two other solutions to the ACK-implosion problem are tree-based protocols and ring-based protocols. The first organize the receivers in a tree and send ACKs along the tree; the latter send ACKs to the sender along a ring of receivers. These two classes of protocols are shown to operate correctly with finite buffers. We show that the tree-based protocols constitute the most scalable class of all reliable multicast protocols proposed to date.

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Document Details

Document Type
Technical Report
Publication Date
Jun 01, 1996
Accession Number
ADA461735

Entities

People

  • Brian N. Levine

Organizations

  • University of California, Santa Cruz

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Fields of Study

  • Computer science

Readers

  • Computer Networking
  • Graph Algorithms and Convex Optimization.