Back to Search Start Over

New Phenomena in Large-Scale Internet Traffic

Authors :
Kepner, Jeremy
Cho, Kenjiro
Claffy, KC
Gadepally, Vijay
McGuire, Sarah
Milechin, Lauren
Arcand, William
Bestor, David
Bergeron, William
Byun, Chansup
Hubbell, Matthew
Houle, Michael
Jones, Michael
Prout, Andrew
Reuther, Albert
Rosa, Antonio
Samsi, Siddharth
Yee, Charles
Michaleas, Peter
Publication Year :
2022

Abstract

The Internet is transforming our society, necessitating a quantitative understanding of Internet traffic. Our team collects and curates the largest publicly available Internet traffic data sets. An analysis of 50 billion packets using 10,000 processors in the MIT SuperCloud reveals a new phenomenon: the importance of otherwise unseen leaf nodes and isolated links in Internet traffic. Our analysis further shows that a two-parameter modified Zipf-Mandelbrot distribution accurately describes a wide variety of source/destination statistics on moving sample windows ranging from 100{,}000 to 100{,}000{,}000 packets over collections that span years and continents. The measured model parameters distinguish different network streams, and the model leaf parameter strongly correlates with the fraction of the traffic in different underlying network topologies.<br />Comment: 53 pages, 27 figures, 8 tables, 121 references. Portions of this work originally appeared as arXiv:1904.04396v1 which has been split for publication in the book "Massive Graph Analytics" (edited by David Bader)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2201.06096
Document Type :
Working Paper
Full Text :
https://doi.org/10.1201/9781003033707