Principles and practice of big data : preparing, sharing, and analyzing complex information

Book Cover
Average Rating
Published
London : Academic Press, [2018].
Status
Available Online

Description

Loading Description...

More Details

Format
Edition
Second edition.
Language
English
ISBN
9780128156100, 0128156104

Notes

Bibliography
Includes bibliographical references and index.
Description
Principles and Practice of Big Data: Preparing, Sharing, and Analyzing Complex Information, Second Edition updates and expands on the first edition, bringing a set of techniques and algorithms that are tailored to Big Data projects. The book stresses the point that most data analyses conducted on large, complex data sets can be achieved without the use of specialized suites of software (e.g., Hadoop), and without expensive hardware (e.g., supercomputers). The core of every algorithm described in the book can be implemented in a few lines of code using just about any popular programming language (Python snippets are provided). Through the use of new multiple examples, this edition demonstrates that if we understand our data, and if we know how to ask the right questions, we can learn a great deal from large and complex data collections. The book will assist students and professionals from all scientific backgrounds who are interested in stepping outside the traditional boundaries of their chosen academic disciplines.
Description
Bringing a set of techniques and algorithms that are tailored to Big Data projects, this book offers case studies across a range of scientific and engineering disciplines and provides insights into semantics, identification, de-identification, vulnerabilities and regulatory/legal issues. --,Edited summary from book.
Local note
O'Reilly,O'Reilly Online Learning: Academic/Public Library Edition

Also in this Series

Checking series information...

More Like This

Loading more titles like this title...

Reviews from GoodReads

Loading GoodReads Reviews.

Citations

APA Citation, 7th Edition (style guide)

Berman, J. J. (2018). Principles and practice of big data: preparing, sharing, and analyzing complex information (Second edition.). Academic Press.

Chicago / Turabian - Author Date Citation, 17th Edition (style guide)

Berman, Jules J.. 2018. Principles and Practice of Big Data: Preparing, Sharing, and Analyzing Complex Information. London: Academic Press.

Chicago / Turabian - Humanities (Notes and Bibliography) Citation, 17th Edition (style guide)

Berman, Jules J.. Principles and Practice of Big Data: Preparing, Sharing, and Analyzing Complex Information London: Academic Press, 2018.

Harvard Citation (style guide)

Berman, J. J. (2018). Principles and practice of big data: preparing, sharing, and analyzing complex information. Second edn. London: Academic Press.

MLA Citation, 9th Edition (style guide)

Berman, Jules J.. Principles and Practice of Big Data: Preparing, Sharing, and Analyzing Complex Information Second edition., Academic Press, 2018.

Note! Citations contain only title, author, edition, publisher, and year published. Citations should be used as a guideline and should be double checked for accuracy. Citation formats are based on standards as of August 2021.

Staff View

Grouped Work ID
e3146e0e-6f8d-86ac-ce65-fc3ecbfeb144-eng
Go To Grouped Work View in Staff Client

Grouping Information

Grouped Work IDe3146e0e-6f8d-86ac-ce65-fc3ecbfeb144-eng
Full titleprinciples and practice of big data preparing sharing and analyzing complex information
Authorberman jules j
Grouping Categorybook
Last Update2024-10-08 10:55:34AM
Last Indexed2024-12-03 03:33:39AM

Book Cover Information

Image SourcecontentCafe
First LoadedAug 16, 2023
Last UsedSep 17, 2024

Marc Record

First DetectedMar 21, 2023 11:48:14 AM
Last File Modification TimeMar 21, 2023 11:48:14 AM
SuppressedRecord had no items

MARC Record

LEADER07252cam a2200601 i 4500
001on1046065689
003OCoLC
00520230321114619.0
006m     o  d        
007cr cnu|||unuuu
008180726s2018    enka    ob    001 0 eng d
015 |a GBB8F7064|2 bnb
0167 |a 018992599|2 Uk
019 |a 1046606897|a 1082522847|a 1105183599|a 1105567641
020 |a 9780128156100|q (electronic bk.)
020 |a 0128156104|q (electronic bk.)
035 |a (OCoLC)1046065689|z (OCoLC)1046606897|z (OCoLC)1082522847|z (OCoLC)1105183599|z (OCoLC)1105567641
037 |a 9780128156100|b Ingram Content Group
040 |a N$T|b eng|e rda|e pn|c N$T|d N$T|d OPELS|d EBLCP|d YDX|d OCLCF|d NLE|d UPM|d AAA|d UKMGB|d U3W|d CUY|d LVT|d UMI|d G3B|d D6H|d STF|d LQU|d C6I|d OCLCQ|d S2H|d OCLCO|d VFL|d OCLCQ|d OCLCO|d OCLCQ
049 |a MAIN
050 4|a QA76.9.B45|b B47 2018eb
072 7|a COM|x 021030|2 bisacsh
072 7|a UB|2 bicssc
072 7|a UFL|2 bicssc
08204|a 005.7|2 23
1001 |a Berman, Jules J.,|e author.
24510|a Principles and practice of big data :|b preparing, sharing, and analyzing complex information /|c Jules J. Berman.
250 |a Second edition.
264 1|a London :|b Academic Press,|c [2018]
264 4|c ©2018
300 |a 1 online resource
336 |a text|b txt|2 rdacontent
337 |a computer|b c|2 rdamedia
338 |a online resource|b cr|2 rdacarrier
504 |a Includes bibliographical references and index.
5050 |a Introduction -- Providing structure to unstructured data -- Identification, deidentification, and reidentification -- Metadata, semantics, and triples -- Classifications and ontologies -- Introspection -- Standards and data integration -- Immutability and immortality -- Assessing the adequacy of a big data resource -- Measurement -- Indispensable tips for fast and simple big data analysis -- Finding the clues in large collections of data -- Using random numbers to knock your big data analytic problems down to size -- Special considerations in big data analysis -- Big data failures and how to avoid (some of) them -- Data reanalysis : much more important than analysis -- Repurposing big data -- Data sharing and data security -- Legalities -- Societal issues.
5050 |a Front Cover; Principles and Practice of Big Data: Preparing, sharing, and analyzing complex information; Copyright; Other Books by Jules J. Berman; Dedication; Contents; About the Author; Author's Preface to Second Edition; Author's Preface to First Edition; References; Chapter 1: Introduction; Section 1.1. Definition of Big Data; Section 1.2. Big Data Versus Small Data; Section 1.3. Whence Comest Big Data?; Section 1.4. The Most Common Purpose of Big Data Is to Produce Small Data; Section 1.5. Big Data Sits at the Center of the Research Universe; Glossary; References
5058 |a Chapter 2: Providing Structure to Unstructured Data; Section 2.1. Nearly All Data Is Unstructured and Unusable in Its Raw Form; Section 2.2. Concordances; Section 2.3. Term Extraction; Section 2.4. Indexing; Section 2.5. Autocoding; Section 2.6. Case Study: Instantly Finding the Precise Location of Any Atom in the Universe (Some Assembly Required); Section 2.7. Case Study (Advanced): A Complete Autocoder (in 12 Lines of Python Code); Section 2.8. Case Study: Concordances as Transformations of Text; Section 2.9. Case Study (Advanced): Burrows Wheeler Transform (BWT); Glossary; References
5058 |a Chapter 3: Identification, Deidentification, and Reidentification; Section 3.1. What Are Identifiers?; Section 3.2. Difference Between an Identifier and an Identifier System; Section 3.3. Generating Unique Identifiers; Section 3.4. Really Bad Identifier Methods; Section 3.5. Registering Unique Object Identifiers; Section 3.6. Deidentification and Reidentification; Section 3.7. Case Study: Data Scrubbing; Section 3.8. Case Study (Advanced): Identifiers in Image Headers; Section 3.9. Case Study: One-Way Hashes; Glossary; References; Chapter 4: Metadata, Semantics, and Triples
5058 |a Section 4.1. Metadata; Section 4.2. eXtensible Markup Language; Section 4.3. Semantics and Triples; Section 4.4. Namespaces; Section 4.5. Case Study: A Syntax for Triples; Section 4.6. Case Study: Dublin Core; Glossary; References; Chapter 5: Classifications and Ontologies; Section 5.1. It's All About Object Relationships; Section 5.2. Classifications, the Simplest of Ontologies; Section 5.3. Ontologies, Classes With Multiple Parents; Section 5.4. Choosing a Class Model; Section 5.5. Class Blending; Section 5.6. Common Pitfalls in Ontology Development
5058 |a Section 5.7. Case Study: An Upper Level Ontology; Section 5.8. Case Study (Advanced): Paradoxes; Section 5.9. Case Study (Advanced): RDF Schemas and Class Properties; Section 5.10. Case Study (Advanced): Visualizing Class Relationships; Glossary; References; Chapter 6: Introspection; Section 6.1. Knowledge of Self; Section 6.2. Data Objects: The Essential Ingredient of Every Big Data Collection; Section 6.3. How Big Data Uses Introspection; Section 6.4. Case Study: Time Stamping Data; Section 6.5. Case Study: A Visit to the TripleStore
520 |a Principles and Practice of Big Data: Preparing, Sharing, and Analyzing Complex Information, Second Edition updates and expands on the first edition, bringing a set of techniques and algorithms that are tailored to Big Data projects. The book stresses the point that most data analyses conducted on large, complex data sets can be achieved without the use of specialized suites of software (e.g., Hadoop), and without expensive hardware (e.g., supercomputers). The core of every algorithm described in the book can be implemented in a few lines of code using just about any popular programming language (Python snippets are provided). Through the use of new multiple examples, this edition demonstrates that if we understand our data, and if we know how to ask the right questions, we can learn a great deal from large and complex data collections. The book will assist students and professionals from all scientific backgrounds who are interested in stepping outside the traditional boundaries of their chosen academic disciplines.
520 |a Bringing a set of techniques and algorithms that are tailored to Big Data projects, this book offers case studies across a range of scientific and engineering disciplines and provides insights into semantics, identification, de-identification, vulnerabilities and regulatory/legal issues. --|c Edited summary from book.
5880 |a Vendor-supplied metadata.
590 |a O'Reilly|b O'Reilly Online Learning: Academic/Public Library Edition
650 0|a Big data.|9 403931
77608|i Print version:|a Berman, Jules J.|t Principles and practice of big data.|b Second edition.|d Oxford, UK : Academic Press is an imprint of Elsevier, [2018]|z 9780128156094|w (OCoLC)1032020970
85640|u https://library.access.arlingtonva.us/login?url=https://learning.oreilly.com/library/view/~/9780128156100/?ar|x O'Reilly|z eBook
938 |a ProQuest Ebook Central|b EBLB|n EBL5475356
938 |a EBSCOhost|b EBSC|n 1731816
938 |a YBP Library Services|b YANK|n 15614282
994 |a 92|b VIA
999 |c 286721|d 286721