Publication | Open Access
Heavy-Hitter Detection Entirely in the Data Plane
433
Citations
30
References
2017
Year
Unknown Venue
Cluster ComputingInternet Traffic AnalysisHeavy FlowsEngineeringHigh Performance Computer NetworkComputer ArchitectureDetection TechniqueData Streaming ArchitectureHardware SecurityData ScienceData MiningHeavy-hitter Detection EntirelyParallel ComputingSignal DetectionData ManagementKnowledge DiscoveryComputer EngineeringComputer ScienceHeavy Hitter DetectionSignal ProcessingEdge ComputingCloud ComputingParallel ProgrammingHeavy HitterNetwork Traffic MeasurementProgrammable Data PlaneBig Data
Identifying the "heavy hitter" flows or flows with large traffic volumes in the data plane is important for several applications e.g., flow-size aware routing, DoS detection, and traffic engineering. However, measurement in the data plane is constrained by the need for line-rate processing (at 10-100Gb/s) and limited memory in switching hardware. We propose HashPipe, a heavy hitter detection algorithm using emerging programmable data planes. HashPipe implements a pipeline of hash tables which retain counters for heavy flows while evicting lighter flows over time. We prototype HashPipe in P4 and evaluate it with packet traces from an ISP backbone link and a data center. On the ISP trace (which contains over 400,000 flows), we find that HashPipe identifies 95% of the 300 heaviest flows with less than 80KB of memory.
| Year | Citations | |
|---|---|---|
Page 1
Page 1