Peer-to-Peer Computing Peer-to-Peer Computing
Chapman & Hall/CRC Computational Science

Peer-to-Peer Computing

Applications, Architecture, Protocols, and Challenges

    • $169.99
    • $169.99

Publisher Description

While people are now using peer-to-peer (P2P) applications for various processes, such as file sharing and video streaming, many research and engineering issues still need to be tackled in order to further advance P2P technologies. Peer-to-Peer Computing: Applications, Architecture, Protocols, and Challenges provides comprehensive theoretical and practical coverage of the major features of contemporary P2P systems and examines the obstacles to further success.

Setting the stage for understanding important research issues in P2P systems, the book first introduces various P2P network architectures. It then details the topology control research problem as well as existing technologies for handling topology control issues. The author describes novel and interesting incentive schemes for enticing peers to cooperate and explores recent innovations on trust issues. He also examines security problems in a P2P network. The final chapter addresses the future of the field. Throughout the text, the highly popular P2P IPTV application, PPLive, is used as a case study to illustrate the practical aspects of the concepts covered.

Addressing the unique challenges of P2P systems, this book presents practical applications of recent theoretical results in P2P computing. It also stimulates further research on critical issues, including performance and security problems.

GENRE
Computing & Internet
RELEASED
2011
17 August
LANGUAGE
EN
English
LENGTH
216
Pages
PUBLISHER
CRC Press
SELLER
Taylor & Francis Group
SIZE
5.9
MB
High Performance Computing High Performance Computing
2010
Introduction to Scheduling Introduction to Scheduling
2009
Computational Methods in Plasma Physics Computational Methods in Plasma Physics
2010
Grid Computing Grid Computing
2009
High Performance Visualization High Performance Visualization
2012
Data-Intensive Science Data-Intensive Science
2016