Mapping the Internet Topology Via Multiple Agents

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Mapping the Internet Topology Via Multiple Agents. What does the internet look like?. Why do we care?. While communication protocols will work correctly on ANY topology ….they may not be efficient for some topologies Knowledge of the topology can aid in optimizing protocols. Topics. - PowerPoint PPT Presentation

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Mapping the Internet Topology Via Multiple Agents

What does the internet look like?

Why do we care?

• While communication protocols will work correctly on ANY topology

….they may not be efficient for some topologies

• Knowledge of the topology can aid in optimizing protocols

Topics

• Power laws in the internet topology

• Sampling bias in existing topology measurements

• The DIMES project

• Potential applications

• Open issues

Mapping the Internet

• Required characteristics:– connectivity– delays

• Metrics– In/Outdegree– Distance (delay – problematic definition)

Problem definition

G – (un)directed graphN – number of nodesE – number of edgesdv – outdegree of a node v

fd – frequency of an outdegreeP(h) – number of pairs in the “h-hop

neighborhood”

On Power-law Relationships of the Internet Topology

Oct. 1999, Faloutsos Bros.

Mapped the internet at the AS and router level using BGP route views

Data sets: – Nov. ’97: 3015 nodes, 5156 edges– Apr. ’98: 3530 nodes, 6432 edges– Dec. ’98: 4389 nodes, 8256 edges

Outdegree Exponent Power Law

fd ~ d^σ

Other places that people look for power laws…

SCIENCE CITATION INDEX

( = 3)

Nodes: papers Links: citations

(S. Redner, 1998)

P(k) ~k-

2212

25

1736 PRL papers (1988)

Witten-SanderPRL 1981

Sex-web

Nodes: people (Females; Males)Links: sexual relationships

Liljeros et al. Nature 2001

4781 Swedes; 18-74; 59% response rate.

Recall – the Faloutsos graph

Is It Really Power Law?

• Sampling bias could exist

• Crovella article title

• Target – find out if bias exists in prevailing measurement methods, and identify the sources for this bias.

• Configuration – graph model, sampling method, distributions, why this is similar to currently used methods

Results

• Erdos – Renyi + graphs

Sources of sampling bias

• Disproportional sampling of nodes

• Disproportional sampling of edges

• Conclusion

• Identify problems in existing measurement methods (Faloutsos, Caida)

Analysis of Bias Cause

• Explanation– Better coverage with more measurement

sources

DIMES

• Targets

• How we try to solve the problem

DIMES Platform

• Description

• Screenshot

Internet according to DIMES

• maps

Application

• Research– Simulations

• Developing new algs, protocols• Evolution (how will the internet look like in 2020?)• Testing new tools, manufacturing scenarios

– “pure” research• Studying the internet “behavior”, growth• Developing models to describe it

More Application

• Potentially commercial– Improve existing algs’ using knowledge about

the characteristics of the internet.• Multicast alg’• Low – priority packet routing

– Identify (and work around?) network vulnerabilities

Open Issues

• Measuring delays– Asymmetry– round trip is problematic– triangle inequality doesn’t necessarily hold

• Mapping interfaces to server

• Identifying POPs

• Identifying motiffs