Options
BigDataNetSim: A Simulator for Data and Process Placement in Large Big Data Platforms
Date Issued
2018-10-17
Date Available
2019-05-22T07:54:46Z
Abstract
Big Data platforms are convoluted distributed systems which commonly comprise skill- and labour-intensive solution development to treat inherent Big Data application challenges. Several tools have been proposed to help developers and engineers to overcome the involved complexities in coordinating the execution of plenty processes/threads on multiple machines. However, no work so far has been able to combine both an accurate representation of Big Data jobs and realistic modeling of the behaviour of Big Data platforms at scale, including networking elements and data and job placement. In this paper, we propose BigDataNetSim, the first simulator which models accurately all the main components of the data movements in Big Data platforms (e.g., HDFS, YARN/MapReduce, network topologies, switching/routing protocols) in a large scale system. BigDataNetSim can serve as a valuable tool for engineering Big Data solutions, which includes set-up of systems, prototyping of jobs, and improvement of components/algorithms for Big Data platforms. We also demonstrate that BigDataNetSim can simulate a real Hadoop cluster with a high degree of accuracy in terms of data and job placements, being able to scale up to very large systems.
Type of Material
Conference Publication
Publisher
IEEE
Copyright (Published Version)
2018 IEEE
Web versions
Language
English
Status of Item
Not peer reviewed
Journal
Besada, E., Polo. O.R., De Grande, R., Risco, J.L. (eds.). Proceedings of the 2018 IEEE/ACM 22nd International Symposium on Distributed Simulation and Real Time Applications (DS-RT) October 15-17, 2018, Madrid, Spain
Conference Details
The 2018 IEEE/ACM 22nd International Symposium on Distributed Simulation and Real Time Applications (DS-RT)
This item is made available under a Creative Commons License
File(s)
Loading...
Name
SimulatorPaper2018.pdf
Size
610.9 KB
Format
Adobe PDF
Checksum (MD5)
c7ed2d1388ff928c702ce567f5bd1fc4
Owning collection