Although the digital age unleashed a stream of data, most unstructured data remained largely incomprehensible until new innovations enabled experts to piece together the puzzle and derive insightful knowledge.
If you’re a data science aspirant, reading some of the most recent data science books will give you a good start right away. We’ll go over the top data science books so you can add them to your reading list for 2023 and catch up on the revolution in data science.
Even if it’s a personal opinion, I’ll try to provide an unbiased and systematic response. There are four factors that I consider when evaluating a non-fiction book’s quality:
You can also enroll in the top data science certification course in Mumbai if you’re looking for a complete bootcamp to kickstart your data science career.
Here are the top five data science books I suggest you read in 2022
Machine Learning Simplified is the title of the first book on the list. The basics of machine learning are covered in a brand-new book that was released this year, and I must admit that I’m impressed by how different it is from previous books in its field! This book stands out for many reasons, whether you’re new to data science or need a refresher:
The mathematics underlying the concepts are well explained while covering all of the fundamental ideas in data preparation and modeling. As a result, it provides both a what and a how. It provides practical and understandable examples to clarify complex ideas and algorithms, making things less abstract and more usable.
Most importantly, every topic covered in the book has an accompanying GitHub repository with actual Python code implementations.
Similar to the first book in that it is thorough and extensive, Practical Statistics for Data Scientists is different in that it concentrates on statistics rather than machine learning.
This book covers all the fundamental ideas in statistics that you need to understand, such as descriptive statistics, sampling distributions, hypothesis testing and A/B testing, and prediction.
Additionally, this book includes R and Python code samples, enabling you to connect conceptual ideas with real-world applications.
Naked Statistics responds to queries like “How does Netflix know which movies you’ll like” casually by using everyday life examples to teach fundamental statistical ideas. and “What is contributing to the increase in autism incidence?”
It does a decent job of describing the most important statistical ideas in a style that is understandable and simple to recall, even though I wouldn’t say it delves too deeply into statistical theory.
Overall, I’d say that this book is both incredibly fun and educational.
The Elements of Statistical Learning, the most comprehensive textbook on machine learning basics to date, covers a wide range of topics, including supervised learning techniques, unsupervised learning techniques, graphical models, high-dimensional issues, and more.
You may be sure that this book will completely explain all subjects using mathematical explanations, pictures, and proofs, even though it may not be as brief as the other books recommended.
Business Data Science presents key data science ideas in a way that makes them all useful in a business context. The key issue many books fail to address — how data science adds value to a business — is why I like this book. I believe that this book does.
You will study the principles of machine learning through this book, how to use these ideas in a professional setting and how to develop R code to implement these solutions.
Hopefully this list of popular data science books has helped you get the knowledge you needed. As a data scientist aspirant, you can check the data science course in Mumbaito prepare to become a certified data scientist in MAANG companies.