Characterizing Docker Overhead in Mobile Edge Computing Scenarios
January 26, 2018 Β· Declared Dead Β· π HotConNet@SIGCOMM
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Authors
Giuseppe Avino, Marco Malinverno, Francesco Malandrino, Claudio Casetti, Carla-Fabiana Chiasserini
arXiv ID
1801.08843
Category
cs.NI: Networking & Internet
Citations
23
Venue
HotConNet@SIGCOMM
Last Checked
3 months ago
Abstract
Mobile Edge Computing (MEC) is an emerging network paradigm that provides cloud and IT services at the point of access of the network. Such proximity to the end user translates into ultra-low latency and high bandwidth, while, at the same time, it alleviates traffic congestion in the network core. Due to the need to run servers on edge nodes (e.g., an LTE-A macro eNodeB), a key element of MEC architectures is to ensure server portability and low overhead. A possible tool that can be used for this purpose is Docker, a framework that allows easy, fast deployment of Linux containers. This paper addresses the suitability of Docker in MEC scenar- ios by quantifying the CPU consumed by Docker when running two different containerized services: multiplayer gam- ing and video streaming. Our tests, run with varying numbers of clients and servers, yield different results for the two case studies: for the gaming service, the overhead logged by Docker increases only with the number of servers; con- versely, for the video streaming case, the overhead is not affected by the number of either clients or servers.
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