Litcius/Paper detail

On the Complexity of Traffic Traces and Implications

Chen Avin, Manya Ghobadi, Chen Griner, Stefan Schmid

2020Proceedings of the ACM on Measurement and Analysis of Computing Systems28 citationsDOIOpen Access PDF

Abstract

This paper presents a systematic approach to identify and quantify the types of structures featured by packet traces in communication networks. Our approach leverages an information-theoretic methodology, based on iterative randomization and compression of the packet trace, which allows us to systematically remove and measure dimensions of structure in the trace. In particular, we introduce the notion of \emphtrace complexity which approximates the entropy rate of a packet trace. Considering several real-world traces, we show that trace complexity can provide unique insights into the characteristics of various applications. Based on our approach, we also propose a traffic generator model able to produce a synthetic trace that matches the complexity levels of its corresponding real-world trace. Using a case study in the context of datacenters, we show that insights into the structure of packet traces can lead to improved demand-aware network designs: datacenter topologies that are optimized for specific traffic patterns.

Topics & Concepts

TRACE (psycholinguistics)Computer scienceNetwork packetEntropy (arrow of time)Context (archaeology)Network topologyGenerator (circuit theory)Theoretical computer scienceDistributed computingComputer networkLinguisticsBiologyPower (physics)PaleontologyPhilosophyQuantum mechanicsPhysicsInterconnection Networks and SystemsNetwork Traffic and Congestion ControlSoftware-Defined Networks and 5G
On the Complexity of Traffic Traces and Implications | Litcius