DocumentCode
1791550
Title
Large-scale network traffic monitoring with DBStream, a system for rolling big data analysis
Author
Bar, Arian ; Finamore, Alessandro ; Casas, Pedro ; Golab, Lukasz ; Mellia, Marco
Author_Institution
FTW, Vienna, Austria
fYear
2014
fDate
27-30 Oct. 2014
Firstpage
165
Lastpage
170
Abstract
The complexity of the Internet has rapidly increased, making it more important and challenging to design scalable network monitoring tools. Network monitoring typically requires rolling data analysis, i.e., continuously and incrementally updating (rolling-over) various reports and statistics over highvolume data streams. In this paper, we describe DBStream, which is an SQL-based system that explicitly supports incremental queries for rolling data analysis. We also present a performance comparison of DBStream with a parallel data processing engine (Spark), showing that, in some scenarios, a single DBStream node can outperform a cluster of ten Spark nodes on rolling network monitoring workloads. Although our performance evaluation is based on network monitoring data, our results can be generalized to other Big Data problems with high volume and velocity.
Keywords
Big Data; IP networks; SQL; computer network performance evaluation; data warehouses; parallel processing; query processing; telecommunication traffic; DBStream; SQL-based system; high-volume data streams; incremental queries; large-scale network traffic monitoring data; parallel data processing engine; performance evaluation; rolling Big Data analysis; rolling network monitoring workloads; scalable network monitoring tool design; Benchmark testing; Data analysis; Delays; Engines; IP networks; Monitoring; Sparks; Big Data Analysis; Data Stream Processing; Network Data Analysis; System Performance;
fLanguage
English
Publisher
ieee
Conference_Titel
Big Data (Big Data), 2014 IEEE International Conference on
Conference_Location
Washington, DC
Type
conf
DOI
10.1109/BigData.2014.7004227
Filename
7004227
Link To Document