DocumentCode :
2453821
Title :
Collabrium: Active Traffic Pattern Prediction for Boosting P2P Collaboration
Author :
Horovitz, Shay ; Dolev, Danny
Author_Institution :
Hebrew Univ. of Jerusalem, Jerusalem, Israel
fYear :
2009
fDate :
June 29 2009-July 1 2009
Firstpage :
116
Lastpage :
121
Abstract :
Emerging large scale Internet applications such as IPTV, VOD and file sharing base their infrastructure on P2P technology. Yet, the characteristic fluctational throughput of source peers affect the QOS of such applications which might be reflected by a reduced download rate in file sharing or even worse - annoying freezes in a streaming service. A significant factor for the unstable supply of source peers is the behavior of other processes running on the source peer that consume bandwidth resources. In this paper we present Collabrium - a collaborative solution that employs a machine learning approach to actively predict load in the uplink of source peers and alert their clients to replace their source. Experiments on home machines demonstrated successful predictions of upcoming loads and Collabrium learned the behavior of popular heavy bandwidth consuming protocols such as eMule & BitTorrent correctly with no prior knowledge.
Keywords :
groupware; learning (artificial intelligence); peer-to-peer computing; BitTorrent; Collabrium; P2P collaboration; active traffic pattern prediction; eMule; heavy bandwidth consuming protocols; machine learning; streaming service; Bandwidth; Boosting; Collaboration; IPTV; Internet; Large-scale systems; Machine learning; Peer to peer computing; Protocols; Throughput; Behavior; Collabrium; Learning; P2P; Patterns; Prediction; SVM; Stabilize;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Enabling Technologies: Infrastructures for Collaborative Enterprises, 2009. WETICE '09. 18th IEEE International Workshops on
Conference_Location :
Groningen
ISSN :
1524-4547
Print_ISBN :
978-0-7695-3683-5
Type :
conf
DOI :
10.1109/WETICE.2009.25
Filename :
5159225
Link To Document :
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