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E-raamat: Massive Graph Analytics [Taylor & Francis e-raamat]

Edited by (Georgia Institute of Technology, Atlanta, USA)
  • Formaat: 590 pages, 47 Tables, black and white; 207 Line drawings, black and white; 207 Illustrations, black and white
  • Sari: Chapman & Hall/CRC Data Science Series
  • Ilmumisaeg: 20-Jul-2022
  • Kirjastus: Chapman & Hall/CRC
  • ISBN-13: 9781003033707
  • Taylor & Francis e-raamat
  • Hind: 203,11 €*
  • * hind, mis tagab piiramatu üheaegsete kasutajate arvuga ligipääsu piiramatuks ajaks
  • Tavahind: 290,16 €
  • Säästad 30%
  • Formaat: 590 pages, 47 Tables, black and white; 207 Line drawings, black and white; 207 Illustrations, black and white
  • Sari: Chapman & Hall/CRC Data Science Series
  • Ilmumisaeg: 20-Jul-2022
  • Kirjastus: Chapman & Hall/CRC
  • ISBN-13: 9781003033707
"Graphs. Such a simple idea. Map a problem onto a graph then solve it by searching over the graph or by exploring the structure of the graph. What could be easier? Turns out, however, that working with graphs is a vast and complex field. Keeping up is challenging. To help keep up, you just need an editor who knows most people working with graphs, and have that editor gather nearly 70 researchers to summarize their work with graphs. The result is the book Massive Graph Analytics."

Timothy G. Mattson, Senior Principal Engineer, Intel Corp

Expertise in massive-scale graph analytics is key for solving real-world grand challenges from healthcare to sustainability to detecting insider threats, cyber defense, and more. This book provides a comprehensive introduction to massive graph analytics, featuring contributions from thought leaders across academia, industry, and government.

Massive Graph Analytics will be beneficial to students, researchers, and practitioners in academia, national laboratories, and industry who wish to learn about the state-of-the-art algorithms, models, frameworks, and software in massive-scale graph analytics.
About the Editor

List of Contributors

Introduction

Algorithms: Search and Paths

A Work-Efficient Parallel Breadth-First Search Algorithm (or How to Cope With
the Nondeterminism of Reducers)

Charles E. Leiserson and Tao B. Schardl

Multi-Objective Shortest Paths

Stephan Erb, Moritz Kobitzsch, Lawrence Mandow , and Peter Sanders

Algorithms: Structure

Multicore Algorithms for Graph Connectivity Problems

George M. Slota, Sivasankaran Rajamanickam, and Kamesh Madduri

Distributed Memory Parallel Algorithms for Massive Graphs

Maksudul Alam, Shaikh Arifuzzaman, Hasanuzzaman Bhuiyan, Maleq Khan, V.S.
Anil Kumar, and Madhav Marathe

Efficient Multi-core Algorithms for Computing Spanning Forests and Connected
Components

Fredrik Manne, Md. Mostofa Ali Patwary

Massive-Scale Distributed Triangle Computation and Applications

Geoffrey Sanders, Roger Pearce, Benjamin W. Priest, Trevor Steil

Algorithms and Applications

Computing Top-k Closeness Centrality in Fully-dynamic Graphs

Eugenio Angriman, Patrick Bisenius, Elisabetta Bergamini, Henning Meyerhenke

Ordering Heuristics for Parallel Graph Coloring

William Hasenplaugh, Tim Kaler, Tao B. Schardl, and Charles E. Leiserson

Partitioning Trillion Edge Graphs

George M. Slota, Karen Devine, Sivasankaran Rajamanickam, Kamesh Madduri

New Phenomena in Large-Scale Internet Traffic

Jeremy Kepner, Kenjiro Cho, KC Claffy, Vijay Gadepally, Sarah McGuire, Lauren
Milechin, William Arcand, David Bestor, William Bergeron, Chansup Byun,
Matthew Hubbell, Michael Houle, Michael Jones, Andrew Prout, Albert Reuther,
Antonio Rosa, Siddharth Samsi, Charles Yee, and Peter Michaleas, details the
authors collection and curation of the largest publicly-available Internet
traffic datasets.

Parallel Algorithms for Butterfly Computations

Jessica Shi and Julian Shun

Models

Recent Advances in Scalable Network Generation

Manuel Penschuck, Ulrik Brandes, Michael Hamann, Sebastian Lamm, Ulrich
Meyer, Ilya Safro, Peter Sanders, and Christian Schulz

Computational Models for Cascades in Massive Graphs: How to Spread a Rumor in
Parallel

Ajitesh Srivastava, Charalampos Chelmis, Viktor K. Prasanna

Executing Dynamic Data-Graph Computations Deterministically Using Chromatic
Scheduling

Tim Kaler, William Hasenplaugh, Tao B. Schardl, and Charles E. Leiserson

Frameworks and Software

Graph Data Science Using Neo4j

Amy E. Hodler, Mark Needham

The Parallel Boost Graph Library 2.0

Nicholas Edmonds and Andrew Lumsdaine

RAPIDS cuGraph

Alex Fender, Bradley Rees, Joe Eaton

A Cloud-based approach to Big Graphs

Paul Burkhardt and Christopher A. Waring

Introduction to GraphBLAS

Jeremy Kepner, Peter Aaltonen, David Bader, Aydin Buluc, Franz Franchetti,
John Gilbert, Dylan Hutchinson, Manoj Kumar, Andrew Lumsdaine, Henning
Meyerhenke, Scott McMillian, Jose Moreira, John D. Owens, Carl Yang, Marcin
Zalewski, and Timothy G. Mattson

Graphulo: Linear Algebra Graph Kernels

Vijay Gadepally, Jake Bolewski, Daniel Hook, Shana Hutchison, Benjamin A
Miller, Jeremy Kepner

Interactive Graph Analytics at Scale in Arkouda

Zhihui Du, Oliver Alvarado Rodriguez, Joseph Patchett, and David A. Bader
David A.Bader is a Distinguished Professor in the Department of Computer Science in the Ying Wu College of Computing and Director of the Institute for Data Science at New Jersey Institute of Technology. Prior to this, he served as founding Professor and Chair of the School of Computational Science and Engineering, College of Computing, at Georgia Institute of Technology. He is a Fellow of the IEEE, ACM, AAAS, and SIAM, and a recipient of the IEEE Sidney Fernbach Award.