Inference and Labeling of Metric-Induced Network Topologies


Autoria(s): Bestavros, Azer; Byers, John; Harfoush, Khaled
Data(s)

20/10/2011

20/10/2011

01/05/2001

Resumo

The development and deployment of distributed network-aware applications and services over the Internet require the ability to compile and maintain a model of the underlying network resources with respect to (one or more) characteristic properties of interest. To be manageable, such models must be compact, and must enable a representation of properties along temporal, spatial, and measurement resolution dimensions. In this paper, we propose a general framework for the construction of such metric-induced models using end-to-end measurements. We instantiate our approach using one such property, packet loss rates, and present an analytical framework for the characterization of Internet loss topologies. From the perspective of a server the loss topology is a logical tree rooted at the server with clients at its leaves, in which edges represent lossy paths between a pair of internal network nodes. We show how end-to-end unicast packet probing techniques could b e used to (1) infer a loss topology and (2) identify the loss rates of links in an existing loss topology. Correct, efficient inference of loss topology information enables new techniques for aggregate congestion control, QoS admission control, connection scheduling and mirror site selection. We report on simulation, implementation, and Internet deployment results that show the effectiveness of our approach and its robustness in terms of its accuracy and convergence over a wide range of network conditions.

National Science Foundation (CCR-9706685, ANIR-9986397)

Identificador

http://hdl.handle.net/2144/1631

Idioma(s)

en_US

Publicador

Boston University Computer Science Department

Relação

BUCS Technical Reports;BUCS-TR-2001-010

Palavras-Chave #End-to-end measurement #Packet-pair probing #Bayesian probing #TCP/IP #Internet tomography #Performance evaluation
Tipo

Technical Report