Introduction
The selection process for data scientists at Google places a higher priority on candidates with a robust background in statistics and mathematics. This emphasis on fundamental skills extends beyond Google; other leading companies worldwide, such as Amazon, Airbnb, and Uber, also favor candidates who possess a solid foundation in data science rather than just a surface-level knowledge. Building a strong foundation in statistics and mathematics is akin to laying the groundwork for a successful career in data science, and this is reflected in the preferences of these esteemed organizations. Whether aspiring to work at Google or other top companies, individuals looking to thrive in the field of data science would be well-served by focusing on these fundamental aspects, perhaps by exploring relevant books for data science to deepen their understanding and expertise.
More than just deriving accuracy, understanding & interpreting every metric, calculation behind that accuracy is important. Remember, every single ‘variable’ has a story to tell. So, if not anything else, try to become a great story explorer!
In this article, I’ve compiled a list of books for data science. These books mainly focus on statistics and math, which are important for understanding data science. I chose books that make it easy for you to connect with the world of data science. The idea is to help you grasp the basics and get comfortable with how math fits into the whole data science picture. Whether you’re just starting out or already know a bit, these books should make learning about data science more natural and enjoyable.
Note: Books which are made free to access by the registered authorities have been mentioned in this article. If not, a link to amazon bookstore is provided.
Table of contents
- Introduction
- Books For Data Science
- Introduction to Statistical Learning
- Elements of Statistical Learning
- Think Stats
- From Algorithms to Z Scores
- Introduction to Bayesian Statistics
- Discovering Statistics using R
- Introduction to Linear Algebra
- Matrix Computation
- A Probabilistic Theory of Pattern Recognition
- Introduction of Math of Neural Networks
- Advanced Engineering Mathematics
- Cookbook on Probability and Statistics
- Additional Resources
- Conclusion
Books For Data Science
Introduction to Statistical Learning
This is a highly recommended book for practicing data scientists. The focus of this books is kept on connecting statistics concept with machine learning. Hence, you’ll learn about all popular supervised and unsupervised machine learning algorithms. R users will get an advantage, since the practical aspects of algorithms have been demonstrated using R. In addition to theory, this book also lay emphasis on using ML algorithms in real life setting.
Available: Free Download
Elements of Statistical Learning
This book is an advanced level of previous book. It is written by Trevor Hastie and Rob Tibshirani, Professors at Stanford University. Their first book ‘Introduction to Statistical Learning’ uncover the basics of statistics and machine learning. This book, will introduce you to higher level algorithms such as Neural Networks, Bagging & Boosting, Kernel methods etc. The algorithms have been implemented in R programming.
Available: Free Download
Think Stats
The author of this book is Alien B Downey. It is based on perform statistical analysis practically in Python. Hence, make sure you’ve got some basic knowledge of Python before buying this book. It focuses entirely on understanding real life influence of statistics using popular case studies. Since, stats and math are closely connected, it also has dedicated chapters on topic like bayesian estimation.
Available: Buy from Amazon
From Algorithms to Z Scores
Did you know the about crucial role of statistics in programming ? The author of this book is Norm Matloff, Professor, University of California. This book explains using probabilistic concepts and statistical measures in R. Again, a good practice source for R users. It teaches the art of dealing with probabilistic models and choosing the best one for final evaluation. It is a highly recommended book (specially for R users).
Available: Free Download
Introduction to Bayesian Statistics
This is a highly recommended book for freshers in data science. The author of this book is William M Bolstad. It’s a must read for people who find mathematics boring. Having been written in a conversational style (rare to find math this way), this book is a great introductory resource on statistics. It begins with scientific methods of data gathering and end up delivering dedicated chapters on bayesian statistics.
Available: Free Download
Discovering Statistics using R
This book is written by Andy Field, Jeremy Miles and Zoe Field. I would highly recommend this book to newbies in data science. To start with statistics, this book has a great content which goes in depth detail of its topics. Along with, the statistical concept are explained in conjunction with R which makes it even more useful. It offers a step by step understanding, with a parallel support of interesting practice examples.
Available: Buy on Amazon
Introduction to Linear Algebra
This is one of the most recommended book on Linear Algebra. The author of this book is Gilbert Strang, Professor, MIT. Gilbert unique way of delivering knowledge would give you the intuition and excitement to move forward after every chapter. This book will help you to build a strong mathematical foundation for machine learning. It enlists all the necessary chapters such as vectors, linear equations, determinants, eigenvalues, matrix factorization etc in great depth.
Available: Buy on Amazon
Matrix Computation
Matrix and Data frames are essential components of machine learning. The author of this book is Gene H Golub and Charles F Van Loan. This book provides a nice head start to students with concepts of matrix computations. The author covers most of the important topics such as gaussian elimination, matrix factorization, lancoz method, error analysis etc. Every chapter is supported by intuitive practice problems. The pseudo codes are available in Matlab.
Available: Free Download
A Probabilistic Theory of Pattern Recognition
This is a complete resource to learn application of mathematics. This is a must read book for intermediate and advanced practitioners in machine learning. This book is written by Luc Devroye, Laszlo Gyorfi and Gabor Lugosi. It covers a wide range of topics varying from bayes error, linear discrimination to epsilon entropy & neural networks. It provides a convincing explanation to complex theorems with section wise practice problems.
Available: Free Download
Introduction of Math of Neural Networks
If you have innate interest in learning about neural network, this should be your place to start. The author of this book is Jeff Heaton. The author has beautifully simplified the difficult concepts of neural networks. This book introduces you to basics of underlying maths in neural networks. It assumes reader has prior knowledge of algebra, calculus and programming. It demonstrates various mathematical tools which can be applied to neural networks.
Available: Buy on Amazon
Advanced Engineering Mathematics
This is probably the most comprehensive book available on mathematics for machine learning users. The author of this book is Erwin Kreyszig. As a matter of fact, this book is highly recommended to college students as well. If you haven’t been good at maths till now, follow this book religiously and you should surely see significant improvements in your math understanding. Along with derivations & practice example, this book has dedicated sections of calculus, algebra, probability etc. Definitely, a must read book for all levels of practitioners in data science.
Available: Free Download
Cookbook on Probability and Statistics
This cookbook is must have in your digital bookshelf. This isn’t exactly a text book you’d discover, but a quick digital guide on mathematical equations. The author of this book is Matthias Vallentin. After you finish with essentials of mathematics, this book will help you connect various theorem and algorithm quickly with their formulae. It’s difficult to derive equations instantly, this book will help you to quickly navigate to your desired problem and solve.
Available: Free Download
Additional Resources
Bored of reading too much ? Here are is a list of highly recommended tutorials (video) / resources on mathematics and statistics. They are FREE to access.
- Complete Course on Linear Algebra by MIT
- Complete Course on Multivariable Calculus by MIT
- Statistical Learning by Stanford University
- Mathematics at Khan Academy
- Full Cheatsheet on Probability
Conclusion
The books listed in this article are selected on the basis of their reviews and depth of topics covered. This is not an exhaustive list of books. But, I found it’s almost too easy to get confused while deciding ‘from where to begin?’ In such situations, it is advisable to start with this list.
In this article, I’ve put together a list of really helpful books for data science about numbers and computer learning stuff. People often need to remember these things to be successful quickly. But there are better ways to do it. If you want to be good at data science for a long time, read books that help you understand and tell stories with numbers and math.
Have you read any of these books ? Which book on mathematics and statistics has helped you the most ? Please share your suggestions / reviews in the comments section below.