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GraphBLAS on the Edge: High Performance Streaming of Network Traffic

25 March 2022
Michael Jones
J. Kepner
Daniel Andersen
A. Buluç
Chansup Byun
K. Claffy
Tim Davis
William Arcand
Jonathan Bernays
David Bestor
William Bergeron
V. Gadepally
Micheal Houle
Matthew Hubbell
Hayden Jananthan
Anna Klein
C. Meiners
Lauren Milechin
J. Mullen
Sandeep Pisharody
Andrew Prout
Albert Reuther
Antonio Rosa
S. Samsi
Jon Sreekanth
Douglas Stetson
Charles Yee
Peter Michaleas
ArXiv (abs)PDFHTML
Abstract

Long range detection is a cornerstone of defense in many operating domains (land, sea, undersea, air, space, ..,). In the cyber domain, long range detection requires the analysis of significant network traffic from a variety of observatories and outposts. Construction of anonymized hypersparse traffic matrices on edge network devices can be a key enabler by providing significant data compression in a rapidly analyzable format that protects privacy. GraphBLAS is ideally suited for both constructing and analyzing anonymized hypersparse traffic matrices. The performance of GraphBLAS on an Accolade Technologies edge network device is demonstrated on a near worse case traffic scenario using a continuous stream of CAIDA Telescope darknet packets. The performance for varying numbers of traffic buffers, threads, and processor cores is explored. Anonymized hypersparse traffic matrices can be constructed at a rate of over 50,000,000 packets per second; exceeding a typical 400 Gigabit network link. This performance demonstrates that anonymized hypersparse traffic matrices are readily computable on edge network devices with minimal compute resources and can be a viable data product for such devices.

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