Traffic Measurement for Big Network Data

Nonfiction, Computers, Networking & Communications, Hardware, Science & Nature, Technology, Telecommunications
Cover of the book Traffic Measurement for Big Network Data by Shigang Chen, Min Chen, Qingjun Xiao, Springer International Publishing
View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart
Author: Shigang Chen, Min Chen, Qingjun Xiao ISBN: 9783319473406
Publisher: Springer International Publishing Publication: November 1, 2016
Imprint: Springer Language: English
Author: Shigang Chen, Min Chen, Qingjun Xiao
ISBN: 9783319473406
Publisher: Springer International Publishing
Publication: November 1, 2016
Imprint: Springer
Language: English

This book presents several compact and fast methods for online traffic measurement of big network data. It describes challenges of online traffic measurement, discusses the state of the field, and provides an overview of the potential solutions to major problems.

The authors introduce the problem of per-flow size measurement for big network data and present a fast and scalable counter architecture, called Counter Tree, which leverages a two-dimensional counter sharing scheme to achieve far better memory efficiency and significantly extend estimation range. 

Unlike traditional approaches to cardinality estimation problems that allocate a separated data structure (called estimator) for each flow, this book takes a different design path by viewing all the flows together as a whole: each flow is allocated with a virtual estimator, and these virtual estimators share a common memory space. A framework of virtual estimators is designed to apply the idea of sharing to an array of cardinality estimation solutions, achieving far better memory efficiency than the best existing work. 

To conclude, the authors discuss persistent spread estimation in high-speed networks. They offer a compact data structure called multi-virtual bitmap, which can estimate the cardinality of the intersection of an arbitrary number of sets. Using multi-virtual bitmaps, an implementation that can deliver high estimation accuracy under a very tight memory space is presented. 

The results of these experiments will surprise both professionals in the field and advanced-level students interested in the topic. By providing both an overview and the results of specific experiments, this book is useful for those new to online traffic measurement and experts on the topic.

View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart

This book presents several compact and fast methods for online traffic measurement of big network data. It describes challenges of online traffic measurement, discusses the state of the field, and provides an overview of the potential solutions to major problems.

The authors introduce the problem of per-flow size measurement for big network data and present a fast and scalable counter architecture, called Counter Tree, which leverages a two-dimensional counter sharing scheme to achieve far better memory efficiency and significantly extend estimation range. 

Unlike traditional approaches to cardinality estimation problems that allocate a separated data structure (called estimator) for each flow, this book takes a different design path by viewing all the flows together as a whole: each flow is allocated with a virtual estimator, and these virtual estimators share a common memory space. A framework of virtual estimators is designed to apply the idea of sharing to an array of cardinality estimation solutions, achieving far better memory efficiency than the best existing work. 

To conclude, the authors discuss persistent spread estimation in high-speed networks. They offer a compact data structure called multi-virtual bitmap, which can estimate the cardinality of the intersection of an arbitrary number of sets. Using multi-virtual bitmaps, an implementation that can deliver high estimation accuracy under a very tight memory space is presented. 

The results of these experiments will surprise both professionals in the field and advanced-level students interested in the topic. By providing both an overview and the results of specific experiments, this book is useful for those new to online traffic measurement and experts on the topic.

More books from Springer International Publishing

Cover of the book Beyond Standard Model Phenomenology at the LHC by Shigang Chen, Min Chen, Qingjun Xiao
Cover of the book REBT in the Treatment of Subclinical and Clinical Depression by Shigang Chen, Min Chen, Qingjun Xiao
Cover of the book Networks and Network Analysis for Defence and Security by Shigang Chen, Min Chen, Qingjun Xiao
Cover of the book Agricultural Law by Shigang Chen, Min Chen, Qingjun Xiao
Cover of the book The MERge Model for Business Development by Shigang Chen, Min Chen, Qingjun Xiao
Cover of the book Design Automation Techniques for Approximation Circuits by Shigang Chen, Min Chen, Qingjun Xiao
Cover of the book Silvopastoral Systems in Southern South America by Shigang Chen, Min Chen, Qingjun Xiao
Cover of the book Most-Cited Scholars in Criminology and Criminal Justice, 1986-2010 by Shigang Chen, Min Chen, Qingjun Xiao
Cover of the book Applications of Computational Intelligence in Biomedical Technology by Shigang Chen, Min Chen, Qingjun Xiao
Cover of the book Essays in Contemporary Economics by Shigang Chen, Min Chen, Qingjun Xiao
Cover of the book Four Pillars of Radio Astronomy: Mills, Christiansen, Wild, Bracewell by Shigang Chen, Min Chen, Qingjun Xiao
Cover of the book Turbulence and Dispersion in the Planetary Boundary Layer by Shigang Chen, Min Chen, Qingjun Xiao
Cover of the book Psychological Mechanisms in Animal Communication by Shigang Chen, Min Chen, Qingjun Xiao
Cover of the book Creating Organizational Value through Dialogical Leadership by Shigang Chen, Min Chen, Qingjun Xiao
Cover of the book Tradeoff Decisions in System Design by Shigang Chen, Min Chen, Qingjun Xiao
We use our own "cookies" and third party cookies to improve services and to see statistical information. By using this website, you agree to our Privacy Policy