Big data, data mining and machine learning : value creation for business leaders and practitioners / Jared Dean.
By: Dean, Jared
Series: Wiley & SAS business seriesPublisher: New Jersey: SAS Institutes Inc., 2014Description: xix, 265 pages : illustrations ; 24 cmISBN: 9781118618042 (hardback)Subject(s): Management -- Data processing | Data mining | Big data | Database management | Information technology -- Management | COMPUTERS / Database Management / Data MiningAdditional physical formats: Online version:: High performance data mining and machine learningDDC classification: 658/.05631 LOC classification: HD30.2 | .D39 2014Other classification: COM021030 Summary: "An expert guide to high performance computing architectures and how they relate to analytics and data miningWith the exponential growth of data comes an ever-increasing need to process and analyze so-called Big Data. High Performance Data Mining and Big Data Analytics provides a comprehensive view of the recent trend toward high performance computing architectures and its natural connection to analytics and data mining. You'll find coverage of topics including: big data, high performance computing for analytics, massively parallel processing (MPP) databases, in-memory analytics, implementation of machine learning algorithms for big data platforms, text analytics, analytics environments, the analytics lifecycle, general applications, as well as a variety of cases. Offers coverage of business analytics, predictive modeling, and fact-based management Includes case studies featuring multinational companies Explores recent trends in high performance computing architectures relating to data mining Filled with case studies, High Performance Data Mining and Big Data Analytics provides a thorough grounding for optimally putting data mining and big data analytics to work for your organization"--Item type | Current location | Call number | Status | Notes | Date due | Barcode |
---|---|---|---|---|---|---|
Book | MILA University Central Library General Stacks | HD 30.2 .D39 2014 (Browse shelf) | Available | SOSE | 0002715 |
Browsing MILA University Central Library Shelves , Shelving location: General Stacks Close shelf browser
No cover image available | ||||||||
HC445.5 .H33 2014 c.3 Malaysian economy | HC 445.5.M35 1981 Tuntutan Melayu / | HD 30.2.A67 2009 Corporate Information Strategy and Management / Text and Cases | HD 30.2 .D39 2014 Big data, data mining and machine learning : value creation for business leaders and practitioners / | HD30.213 .M37 2003 Decision support systems in the 21st century (2nd ed)/ | HD30.213 .P526 2008 Information systems for managers : texts & cases / Gabriele Piccoli. | HD30.213 .P526 2008 c.2 Information systems for managers : texts & cases / Gabriele Piccoli. |
Includes bibliographical references (pages 247-251) and index.
"An expert guide to high performance computing architectures and how they relate to analytics and data miningWith the exponential growth of data comes an ever-increasing need to process and analyze so-called Big Data. High Performance Data Mining and Big Data Analytics provides a comprehensive view of the recent trend toward high performance computing architectures and its natural connection to analytics and data mining. You'll find coverage of topics including: big data, high performance computing for analytics, massively parallel processing (MPP) databases, in-memory analytics, implementation of machine learning algorithms for big data platforms, text analytics, analytics environments, the analytics lifecycle, general applications, as well as a variety of cases. Offers coverage of business analytics, predictive modeling, and fact-based management Includes case studies featuring multinational companies Explores recent trends in high performance computing architectures relating to data mining Filled with case studies, High Performance Data Mining and Big Data Analytics provides a thorough grounding for optimally putting data mining and big data analytics to work for your organization"--
There are no comments for this item.