NISMO

The Data Science Handbook by Cady, Field

Description: About this productProduct IdentifiersPublisherWiley & Sons, Incorporated, JohnISBN-101119092949ISBN-139781119092940eBay Product ID (ePID)228596654Product Key FeaturesNumber of Pages416 PagesLanguageEnglishPublication NameData Science HandbookPublication Year2017SubjectInformation Theory, Probability & Statistics / General, Desktop Applications / DatabasesTypeTextbookSubject AreaMathematics, ComputersAuthorField CadyFormatHardcoverDimensionsItem Height0.9 inItem Weight28.9 OzItem Length9.4 inItem Width6 inAdditional Product FeaturesIntended AudienceScholarly & ProfessionalLCCN2016-043329Dewey Edition23TitleLeadingTheCLASSIFICATION_METADATA{"IsNonfiction":["No"],"IsOther":["No"],"IsAdult":["No"],"MuzeFormatDesc":["Hardcover"],"IsChildren":["No"],"Genre":["COMPUTERS","MATHEMATICS"],"Topic":["Probability & Statistics / General","Desktop Applications / Databases","Information Theory"],"IsTextBook":["Yes"],"IsFiction":["No"]}IllustratedYesDewey Decimal005.74SynopsisA comprehensive overview of data science covering the analytics, programming, and business skills necessary to master the discipline Finding a good data scientist has been likened to hunting for a unicorn: the required combination of technical skills is simply very hard to find in one person. In addition, good data science is not just rote application of trainable skill sets; it requires the ability to think flexibly about all these areas and understand the connections between them. This book provides a crash course in data science, combining all the necessary skills into a unified discipline. Unlike many analytics books, computer science and software engineering are given extensive coverage since they play such a central role in the daily work of a data scientist. The author also describes classic machine learning algorithms, from their mathematical foundations to real-world applications. Visualization tools are reviewed, and their central importance in data science is highlighted. Classical statistics is addressed to help readers think critically about the interpretation of data and its common pitfalls. The clear communication of technical results, which is perhaps the most undertrained of data science skills, is given its own chapter, and all topics are explained in the context of solving real-world data problems. The book also features: * Extensive sample code and tutorials using Python(tm) along with its technical libraries * Core technologies of "Big Data," including their strengths and limitations and how they can be used to solve real-world problems * Coverage of the practical realities of the tools, keeping theory to a minimum; however, when theory is presented, it is done in an intuitive way to encourage critical thinking and creativity * A wide variety of case studies from industry * Practical advice on the realities of being a data scientist today, including the overall workflow, where time is spent, the types of datasets worked on, and the skill sets needed The Data Science Handbook is an ideal resource for data analysis methodology and big data software tools. The book is appropriate for people who want to practice data science, but lack the required skill sets. This includes software professionals who need to better understand analytics and statisticians who need to understand software. Modern data science is a unified discipline, and it is presented as such. This book is also an appropriate reference for researchers and entry-level graduate students who need to learn real-world analytics and expand their skill set. FIELD CADY is the data scientist at the Allen Institute for Artificial Intelligence, where he develops tools that use machine learning to mine scientific literature. He has also worked at Google and several Big Data startups. He has a BS in physics and math from Stanford University, and an MS in computer science from Carnegie Mellon., Finding a good data scientist has been likened to hunting for a unicorn. The required combination of software engineering skills, mathematical fluency, and business savvy are simply very hard to find in one person. On top of that, good data science is not just rote application of trainable skillsets, but rather requires the ability to think critically in all these areas. This book provides a crash course in data science, combining all the necessary skills into a unified discipline. The author describes the classic machine learning algorithms, including the mathematics needed to understand what's really going on. Classical statistics is taught so that readers learn to think critically about the interpretation of data and its common pitfalls. In addition, basic software engineering and computer science skillsets often lacking in data scientists are given a central place in the book. Visualization tools are reviewed, and their central importance in data science is highlighted. The clear communication of technical results, which is perhaps the most undertrained of data science skills, is given its own chapter. All of these are topics explained in the context of solving real-world modern data problems. Chapter coverage includes: Introduction: Becoming a Unicorn; Data Science Programming Languages; Visualizations; Software Engineering Concepts; Data Formats; Mathematical Foundations; Classical Statistics; Machine Learning; Computer Science Concepts; Software Packages; Big Data Tools; Common Domains of Application; and Communicating Results., A comprehensive overview of data science covering the analytics, programming, and business skills necessary to master the discipline Finding a good data scientist has been likened to hunting for a unicorn: the required combination of technical skills is simply very hard to find in one person., A comprehensive overview of data science covering the analytics, programming, and business skills necessary to master the discipline Finding a good data scientist has been likened to hunting for a unicorn: the required combination of technical skills is simply very hard to find in one person. In addition, good data science is not just rote application of trainable skill sets; it requires the ability to think flexibly about all these areas and understand the connections between them. This book provides a crash course in data science, combining all the necessary skills into a unified discipline. Unlike many analytics books, computer science and software engineering are given extensive coverage since they play such a central role in the daily work of a data scientist. The author also describes classic machine learning algorithms, from their mathematical foundations to real-world applications. Visualization tools are reviewed, and their central importance in data science is highlighted. Classical statistics is addressed to help readers think critically about the interpretation of data and its common pitfalls. The clear communication of technical results, which is perhaps the most undertrained of data science skills, is given its own chapter, and all topics are explained in the context of solving real-world data problems. The book also features: Extensive sample code and tutorials using Python along with its technical libraries Core technologies of Big Data, including their strengths and limitations and how they can be used to solve real-world problems Coverage of the practical realities of the tools, keeping theory to a minimum; however, when theory is presented, it is done in an intuitive way to encourage critical thinking and creativity A wide variety of case studies from industry Practical advice on the realities of being a data scientist today, including the overall workflow, where time is spent, the types of datasets worked on, and the skill sets needed The Data Science Handbook is an ideal resource for data analysis methodology and big data software tools. The book is appropriate for people who want to practice data science, but lack the required skill sets. This includes software professionals who need to better understand analytics and statisticians who need to understand software. Modern data science is a unified discipline, and it is presented as such. This book is also an appropriate reference for researchers and entry-level graduate students who need to learn real-world analytics and expand their skill set. FIELD CADY is the data scientist at the Allen Institute for Artificial Intelligence, where he develops tools that use machine learning to mine scientific literature. He has also worked at Google and several Big Data startups. He has a BS in physics and math from Stanford University, and an MS in computer science from Carnegie Mellon., A comprehensive overview of data science covering the analytics, programming, and business skills necessary to master the discipline Finding a good data scientist has been likened to hunting for a unicorn: the required combination of technical skills is simply very hard to find in one person. In addition, good data science is not just rote application of trainable skill sets; it requires the ability to think flexibly about all these areas and understand the connections between them. This book provides a crash course in data science, combining all the necessary skills into a unified discipline. Unlike many analytics books, computer science and software engineering are given extensive coverage since they play such a central role in the daily work of a data scientist. The author also describes classic machine learning algorithms, from their mathematical foundations to real-world applications. Visualization tools are reviewed, and their central importance in data science is highlighted. Classical statistics is addressed to help readers think critically about the interpretation of data and its common pitfalls. The clear communication of technical results, which is perhaps the most undertrained of data science skills, is given its own chapter, and all topics are explained in the context of solving real-world data problems. The book also features: - Extensive sample code and tutorials using Python(TM) along with its technical libraries - Core technologies of "Big Data," including their strengths and limitations and how they can be used to solve real-world problems - Coverage of the practical realities of the tools, keeping theory to a minimum; however, when theory is presented, it is done in an intuitive way to encourage critical thinking and creativity - A wide variety of case studies from industry - Practical advice on the realities of being a data scientist today, including the overall workflow, where time is spent, the types of datasets worked on, and the skill sets needed The Data Science Handbook is an ideal resource for data analysis methodology and big data software tools. The book is appropriate for people who want to practice data science, but lack the required skill sets. This includes software professionals who need to better understand analytics and statisticians who need to understand software. Modern data science is a unified discipline, and it is presented as such. This book is also an appropriate reference for researchers and entry-level graduate students who need to learn real-world analytics and expand their skill set. FIELD CADY is the data scientist at the Allen Institute for Artificial Intelligence, where he develops tools that use machine learning to mine scientific literature. He has also worked at Google and several Big Data startups. He has a BS in physics and math from Stanford University, and an MS in computer science from Carnegie Mellon.LC Classification NumberQA76.9.D32C33 2017Copyright Date2017ebay_catalog_id4

Price: 15.9 USD

Location: Multiple Locations

End Time: 2024-10-30T21:17:50.000Z

Shipping Cost: 3.97 USD

Product Images

The Data Science Handbook by Cady, Field

Item Specifics

Return shipping will be paid by: Seller

All returns accepted: Returns Accepted

Item must be returned within: 30 Days

Refund will be given as: Money Back

Return policy details:

Number of Pages: 416 Pages

Publication Name: Data Science Handbook

Language: English

Publisher: Wiley & Sons, Incorporated, John

Subject: Information Theory, Probability & Statistics / General, Desktop Applications / Databases

Item Height: 0.9 in

Publication Year: 2017

Item Weight: 28.9 Oz

Type: Textbook

Author: Field Cady

Subject Area: Mathematics, Computers

Item Length: 9.4 in

Item Width: 6 in

Format: Hardcover

Recommended

Designing Data-Intensive Applications : The Big Ideas Behind Reliable, Scalable,
Designing Data-Intensive Applications : The Big Ideas Behind Reliable, Scalable,

$17.95

View Details
Data Modeling for the Business: A Handbook for Aligning the Business - VERY GOOD
Data Modeling for the Business: A Handbook for Aligning the Business - VERY GOOD

$6.04

View Details
Statistics: The Exploration & Analysis of Data (Available T - VERY GOOD
Statistics: The Exploration & Analysis of Data (Available T - VERY GOOD

$11.32

View Details
Secondary Analysis of Survey Data (Quantitative Applications in the Socia - GOOD
Secondary Analysis of Survey Data (Quantitative Applications in the Socia - GOOD

$5.61

View Details
Designing Data-Intensive Applications : The Big Ideas Behind Reliable.....
Designing Data-Intensive Applications : The Big Ideas Behind Reliable.....

$17.05

View Details
The Data Journalism Handbook: How Journalists Can Use Data to Improve t - GOOD
The Data Journalism Handbook: How Journalists Can Use Data to Improve t - GOOD

$4.53

View Details
Back to the Future Pinball DIS244 Data East 16 Digit Orange LED Display.
Back to the Future Pinball DIS244 Data East 16 Digit Orange LED Display.

$199.00

View Details
The Information: A History, A Theory, A Flood - Paperback - VERY GOOD
The Information: A History, A Theory, A Flood - Paperback - VERY GOOD

$4.99

View Details
The Data Science Handbook by Cady, Field
The Data Science Handbook by Cady, Field

$15.90

View Details
Weapons of Math Destruction: How Big Data Increases Inequality and T - VERY GOOD
Weapons of Math Destruction: How Big Data Increases Inequality and T - VERY GOOD

$4.47

View Details