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Introduction to HPC with MPI for Data Science 2016 Edition at Meripustak

Introduction to HPC with MPI for Data Science 2016 Edition by Frank Nielsen , Springer

Books from same Author: Frank Nielsen

Books from same Publisher: Springer

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  • General Information  
    Author(s)Frank Nielsen
    PublisherSpringer
    ISBN9783319219028
    Pages282
    BindingPaperback
    LanguageEnglish
    Publish YearFebruary 2016

    Description

    Springer Introduction to HPC with MPI for Data Science 2016 Edition by Frank Nielsen

    This gentle introduction to High Performance Computing (HPC) for DataScience using the Message Passing Interface (MPI) standard has been designed as a first course for undergraduates on parallel programming ondistributed memory models, and requires only basic programming notions.Dividedinto two parts the first part covers high performance computing using C++ with the Message Passing Interface (MPI) standard followed by a second part providing high-performance data analytics on computer clusters.In the first part, the fundamental notions of blocking versus non-blocking point-to-point communications, global communications(like broadcast or scatter) and collaborative computations (reduce), with Amdalh and Gustafson speed-up laws are described before addressing parallel sorting and parallel linear algebra on computer clusters. The common ring, torus and hypercube topologies of clusters are then explained and global communication procedures on these topologies are studied. This first part closes with the MapReduce (MR) model of computation well-suited to processing big data using the MPI framework.Inthe second part, the book focuses on high-performance data analytics. Flat and hierarchical clustering algorithms are introduced for data exploration along with how to program these algorithms on computer clusters, followed by machine learning classification, and an introduction to graph analytics. This part closes with a concise introduction to data core-sets that let big data problems be amenable totiny data problems.Exercises are included at the end of each chapter in order for students to practice the concepts learned, and a final section contains an overall exam which allows them to evaluate howwell they have assimilated the material covered in the book.



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