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Multi-Temporal Analysis and Scaling Relations of 100,000,000,000 Network Packets

1 August 2020
J. Kepner
C. Meiners
Chansup Byun
Sarah McGuire
Tim Davis
William Arcand
Jonathan Bernays
David Bestor
William Bergeron
V. Gadepally
Raul Harnasch
Matthew Hubbell
Micheal Houle
Michael Jeffrey Jones
Andrew Kirby
Anna Klein
Lauren Milechin
J. Mullen
Andrew Prout
Albert Reuther
Antonio Rosa
S. Samsi
Douglas A. Stetson
Adam Tse
Charles Yee
Peter Michaleas
ArXiv (abs)PDFHTML
Abstract

Our society has never been more dependent on computer networks. Effective utilization of networks requires a detailed understanding of the normal background behaviors of network traffic. Large-scale measurements of networks are computationally challenging. Building on prior work in interactive supercomputing and GraphBLAS hypersparse hierarchical traffic matrices, we have developed an efficient method for computing a wide variety of streaming network quantities on diverse time scales. Applying these methods to 100,000,000,000 anonymized source-destination pairs collected at a network gateway reveals many previously unobserved scaling relationships. These observations provide new insights into normal network background traffic that could be used for anomaly detection, AI feature engineering, and testing theoretical models of streaming networks.

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