Logo

Computational and Inferential Thinking: The Foundations of Data Science

Computational and Inferential Thinking: The Foundations of Data Science
by

Publisher: GitBook
Number of pages: 646

Description:
Data Science is about drawing useful conclusions from large and diverse data sets through exploration, prediction, and inference. Our primary tools for exploration are visualizations and descriptive statistics, for prediction are machine learning and optimization, and for inference are statistical tests and models.

Home page url

Download or read it online for free here:
Download link
(26MB, PDF)

Similar books

Book cover: Computer Science Introduction to Wolfram MathematicaComputer Science Introduction to Wolfram Mathematica
by - Ryerson University
The book is an introduction to Wolfram Mathematica written in computer science spirit, using this language not just for mathematics and equation solving but for all sorts of computer science examples and problems from the standard CS101 exercises...
(4216 views)
Book cover: A Machine Made this Book: Ten Sketches of Computer ScienceA Machine Made this Book: Ten Sketches of Computer Science
by - Coherent Press
Using examples from the publishing industry, Whitington introduces the fascinating discipline of Computer Science to the uninitiated. Chapters: Putting Marks on Paper; Letter Forms; Storing Words; Looking and Finding; Typing it In; Saving Space; etc.
(2452 views)
Book cover: Introduction to Soft ComputingIntroduction to Soft Computing
by - Bookboon
This book gives an introduction to Soft Computing, which aims to exploit tolerance for imprecision, uncertainty, approximate reasoning, and partial truth in order to achieve close resemblance with human like decision making.
(4685 views)
Book cover: Building Blocks for Theoretical Computer ScienceBuilding Blocks for Theoretical Computer Science
by - University of Illinois, Urbana-Champaign
This book provides a survey of basic mathematical objects, notation, and techniques useful in later computer science courses. It gives a brief introduction to some key topics: algorithm analysis and complexity, automata theory, and computability.
(7571 views)