Data Science Foundations Data Science Foundations
Chapman & Hall/CRC Computer Science & Data Analysis

Data Science Foundations

Geometry and Topology of Complex Hierarchic Systems and Big Data Analytics

    • 59,99 €
    • 59,99 €

Publisher Description

"Data Science Foundations is most welcome and, indeed, a piece of literature that the field is very much in need of…quite different from most data analytics texts which largely ignore foundational concepts and simply present a cookbook of methods…a very useful text and I would certainly use it in my teaching."
- Mark Girolami, Warwick University

Data Science encompasses the traditional disciplines of mathematics, statistics, data analysis, machine learning, and pattern recognition. This book is designed to provide a new framework for Data Science, based on a solid foundation in mathematics and computational science. It is written in an accessible style, for readers who are engaged with the subject but not necessarily experts in all aspects. It includes a wide range of case studies from diverse fields, and seeks to inspire and motivate the reader with respect to data, associated information, and derived knowledge.

GENRE
Computing & Internet
RELEASED
2017
22 September
LANGUAGE
EN
English
LENGTH
224
Pages
PUBLISHER
CRC Press
SIZE
5.2
MB
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