Packet-Level Analytics in Software without Compromises

Packet-Level Analytics in Software without Compromises

Abstract

Traditionally, network monitoring and analytics systems rely on aggregation (e.g., flow records) or sampling to cope with the high data rates large-scale networks operate on. This has the downside that, in doing so, we lose data granularity and accuracy, and in general limit the possible network analytics we can perform. Recent proposals leveraging software-defined networking or programmable hardware provide more fine-grained, per-packet monitoring but still are based on the fundamental principle of data reduction before being processed. In this paper, we provide a first step towards a cloud-scale, packet-level monitoring and analytics system based on stream processing entirely in software. Software provides virtually unlimited programmability and makes modern (e.g., machine-learning) network analytics applications possible. We identify unique features of network analytics applications which enable the specialization of stream processing systems. As a result, an evaluation with our preliminary implementation shows that we can scale up to several million packets per second per core and together with load balancing and further optimizations, the vision of cloud-scale per-packet network analytics is possible.

Grafik Top
Authors
  • Michel, Oliver
  • Sonchack, John
  • Keller, Eric
  • Jonathan M., Smith
Grafik Top
Shortfacts
Category
Paper in Conference Proceedings or in Workshop Proceedings (Paper)
Event Title
10th USENIX Workshop on Hot Topics in Cloud Computing (HotCloud ‘18)
Divisions
Communication Technologies
Event Location
Boston, MA
Event Type
Workshop
Event Dates
July 9, 2018
Date
2018
Export
Grafik Top