Essential Math For Data Science By Thomas Nield (CloudMonk.io)

Essential Math for Data Science by Thomas Nield



Return to Thomas Nield, Math, Math for Data Science and DataOps, Math for Machine Learning and MLOps, Math for Programmers and Software Engineering, Outline of Mathematics, Math Bibliography, Outline of Software Engineering, Outline of Computer Science

Fair Use Source: 1098102932 (EsMthDS 2022)

Essential Math for Data Science

* Essential Math for Data Science Preface
* Essential Math for Data Science Table of Contents
* Essential Math for Data Science Index

Book Summary



"To succeed in data science you need some math proficiency. But not just any math. This common-sense guide provides a clear, plain English survey of the math you'll need in data science, including probability, statistics, hypothesis testing, linear algebra, machine learning, and calculus."

"Practical examples with Python code will help you see how the math applies to the work you'll be doing, providing a clear understanding of how concepts work under the hood while connecting them to applications like machine learning. You'll get a solid foundation in the math essential for data science, but more importantly, you'll be able to use it to:"

* Recognize the nuances and pitfalls of probability math
* Master statistics and hypothesis testing (and avoid common pitfalls)
* Discover practical applications of probability, statistics, calculus, and machine learning
* Intuitively understand linear algebra as a transformation of space, not just grids of numbers being multiplied and added
* Perform calculus derivatives and integrals completely from scratch in Python
* Apply what you've learned to machine learning, including linear regression, logistic regression, and neural networks

About the Author


Thomas Nield is the founder of ddg>Nield Consulting Group as well as an instructor at []O'Reilly Media and University of Southern California. He enjoys making technical content relatable and relevant to those unfamiliar or intimidated by it. Thomas regularly teaches classes on data analysis, machine learning, mathematical optimization, and practical artificial intelligence. He's authored two books, including Getting Started with SQL (O'Reilly) and Learning RxJava (Packt).


Product Details


* ASIN: ZZZ
* ISBN-10: 1098102932 - Fair Use Source: (1098102932 2022)
* ISBN-13: 978-1098102937 - ISBN>978-1098102937 on WorldCat.org
* Publisher: O'Reilly Media; 1st edition (June 28, 2022)
* Publication date: June 28, 2022
* Paperback: 350 pages
* Time to Complete: 8h 20m


Research It More


Research:
* ddg>Essential Math for Data Science by Thomas Nield on DuckDuckGo
* oreilly>Essential Math for Data Science by Thomas Nield on O'Reilly
* github>Essential Math for Data Science by Thomas Nield on GitHub
* reddit>Essential Math for Data Science by Thomas Nield on Reddit
* stackoverflow>Essential Math for Data Science by Thomas Nield on StackOverflow
* youtube>Essential Math for Data Science by Thomas Nield on YouTube

Fair Use Sources


Fair Use Sources:

* 1098102932 (EsMthDS 2022)
* https://learning.oreilly.com/library/view/essential-math-for/9781098102920
* archive>Essential Math for Data Science for Archive Access for Fair Use Preservation, quoting, paraphrasing, excerpting and/or commenting upon


Math: Famous Mathematicians (Bertrand Russell (russ.pdf)), Outline of mathematics, Mathematics research, Mathematical anxiety, Pythagorean Theorem, Scientific Notation, Algebra (Pre-algebra, Elementary algebra, Abstract algebra, Linear algebra, Universal algebra), Arithmetic (Essence of arithmetic, Elementary arithmetic, Decimal arithmetic, Decimal point, numeral system, Place value, Face value), Applied mathematics, Binary operation, Classical mathematics, Control theory, Cryptography, Definitions of mathematics, Discrete mathematics (Outline of discrete mathematics, Combinatorics), Dynamical systems, Engineering mathematics, Financial mathematics, Fluid mechanics (Mathematical fluid dynamics), Foundations of mathematics, Fudge (Mathematical fudge, Renormalization), Game theory, Glossary of areas of mathematics, Graph theory, Graph operations, Information theory, Language of mathematics, Mathematical economics, Mathematical logic (Model theory, Proof theory, Set theory, Type theory, Recursion theory, Theory of Computation, List of logic symbols), Mathematical optimization, Mathematician, Modulo, Mathematical notation (List of logic symbols, Notation in probability and statistics, Physical constants, Mathematical alphanumeric symbols, ISO 31-11), Numerical analysis, Operations research, Philosophy of mathematics, Probability (Outline of probability), Statistics, Mathematical structure, Ternary operation, Unary operation, Variable (mathematics), Mathematics Glossary | Glossary, Mathematics Bibliography | Bibliography (Math for Data Science and DataOps, Math for Machine Learning and MLOps, Math for Programmers and Software Engineering), Isaac Newton, A Redefinition of the Derivative - Why the Calculus Works — and Why it Doesn't (MMMt), Miles Math, Calculus Simplified (MMMt), Mathematics Courses | Courses, Mathematics GitHub. (navbar_math - see also navbar_variables)


----



Cloud Monk is Retired (impermanence | for now). Buddha with you. Copyright | © Beginningless Time - Present Moment - Three Times: The Buddhas or Fair Use. Disclaimers



SYI LU SENG E MU CHYWE YE. NAN. WEI LA YE. WEI LA YE. SA WA HE.



----