Ayesha Saleem

July 18, 2022

12 excellent Data Analytics books you should read in 2022

Learning data analytics is a challenge for beginners. Take your learning experience of data analytics one step ahead with these nine data analytics books. Explore a range of topics, from big data to artificial intelligence.

Data analytics books
Books on Data Analytics

Data Analytics Books

1. Data Science for Business: What You Need to Know about Data Mining and Data-Analytic Thinking by Foster Provost and Tom Fawcett

This book is written by two globally esteemed data science experts who introduce their readers to the fundamental principles of data science and then dig deep into the important role data plays in business-related decision-making. They do a great job of demonstrating different techniques and ideas related to analytical thinking without getting into too many technicalities.

Through this book, you can not only begin to appreciate the importance of communication between business strategists and data scientists but can also discover how to approach business problems analytically to generate value.

2. The Data Science Design Manual (Texts in Computer Science) eBook: S. Skiena, Steven: Books

To survive in a data-driven world, we need to adopt the skills necessary to analyze datasets acquired. Data Science is critical to statistics, data visualization, machine learning, and mathematical modeling, Steven in this book give an overview of data science introduction for beginners in this emerging discipline.

The second part of the book highlights the essential skills, knowledge, and principles required to collect, analyze and interpret data. This book leaves learners spellbound with its step-by-step guidance to develop an inside-out theoretical and practical understanding of data science.

The Data Science Design Manual is a thorough instructor guide for learners eager to kick off their learning journey in Data Science. Lastly, Steven added the application of data science in the world, a wide range of exercises, Kaggle challenges, and most interestingly the examples from a data science show, The Quant Shop to excite the learners. 

3. Data Analytics Made Accessible by Anil Maheshwari

Are you a data enthusiast looking to finally dip your toes in the field? Start with Data Analytics Made Accessible by Anil Maheshwari.  Get a sense of what data analytics is all about and how significant a role it plays in real-world scenarios with this informative, easy-to-follow read.

In fact, this book is considered such a vital resource that numerous universities across the globe have added it to their required textbooks list for their analytics courses. It sheds light on the relationship between business and data by talking at length about business intelligence, data mining, and data warehousing.  

4. Python for Data Analysis by Wes McKinney

Written by the main author of the Pandas library, Python for Data Analysis is a book that spells out the basics of manipulating, processing, cleaning, and crunching data in Python. It is a hands-on book that walks its readers through a broad set of real-world case studies and enables them to solve different types of data analysis problems. 

It introduces different data science tools in Python to the readers in order to get them started on loading, cleaning, transforming, merging, and reshaping data. It also walks you through creating informative visualizations using Matplotlib. 

5. Big Data: A Revolution That Will Transform How We Live, Work, and Think by Viktor Mayer-Schönberger and Kenneth Cukier

This book is tailor-made for those who want to know the significance of data analytics across different industries. In this work, these two renowned domain experts bring the buzzword ‘big data’ under the limelight and try to dissect how it’s impacting our world and changing our lives, for better or for worse. 

It does not delve into the technical aspects of data science algorithms or applications, rather it’s more of a theoretical primer on what big data really is and how it’s becoming central to different walks of life. Apart from encouraging the readers to embrace this ground-breaking technological development, it also reminds them of the potential digital hazards it poses and how we can protect ourselves from them.

6. Business Unintelligence: Insight and Innovation beyond Analytics and Big Data by Barry Devlin

This book is great for someone who is looking to read through the past, present, and future of business intelligence. Highlighting the great successes and overlooked weaknesses of traditional business intelligence processes, Dr. Devlin delves into how analytics and big data have transformed the landscape of modern-day business intelligence. 

It identifies the tried-and-tested business intelligence practices and provides insights into how the trinity of information, people, and process conjoin to generate competitive advantage and drive business success in this rapidly advancing world. Furthermore, in this book, Dr. Delvin recommends several new models and frameworks that businesses and companies can employ for an even better tomorrow.

Join our Data Science Bootcamp today to start your career in the world of data.

7. Storytelling with Data: A Data Visualization Guide for Business Professionals by Cole Nussbaumer Knaflic

Globally, the culture is visual. Everything we consume from art, and advertisements to TV is visual. Data visualization is the art of narrating stories with a purpose. In this book, Knaflic highlights key points to effectively tell a story backed by data. The book journeys through the importance of situating your data story within a context, guides on the most suitable charts, graphs, and maps to spot trends and outliers, and discusses how to declutter and retain focus on the key points. 

This book is a valuable addition for anyone eager to grasp the basic concepts of data communication. Once you finish reading the book, you will gain a general understanding of several graphs that add a spark to the stories you create from data. Knaflic instills in you the knowledge to tell a story with an impact.

Learn about lead generation through data analytics in this blog

10 ways data analytics can help you generate more leads 


8. Developing Analytic Talent: Becoming a Data Scientist by Vincent Granville

Granville leveraged his lifetime’s experience of working with big data, business analytics, and predictive modeling to compose a “handbook” on data science and data scientists. In this book, you will find learnings that are rarely found in traditional statistical, programming, or computer science textbooks as the author writes from experiential knowledge rather than theoretical. 

Moreover, this book covers all the most valuable information to help you excel in your career as a data scientist. It talks about how data science came to the fore in recent times and became indispensable for organizations using big data. 

The book is divided into three components:

  • What is data science and how does it relate to other disciplines
  • Data science technical applications along with tutorials and case studies
  • Career resources for future and practicing data scientists

This data science book also helps decision-makers to build a better analytics team by informing them about specialized solutions and their uses. Lastly, if you plan to launch a startup around data science, giving this book a reader will give you an edge with some quick ideas based on 20+ industrial experience in Granville.

9. Learning R: A Step-By-Step Function Guide to Data Analysis by Richard Cotton

Non-technical users are scared off by programming languages. This book is an asset for all non-tech learners of the R language. The author compiled a list of tools that make access to statistical models much easier. This book, step-by-step, introduces the reader to R without digging into the details of statistics and data modeling. 

The first part of this data science book introduces you to the basics of the R programming language. It discusses data structures, data environment, looping constructs, and packages. If you are already familiar with the basics you can begin with the second part of the book to learn the steps involved in data analysis like loading, cleaning, and transforming data. The second part of the book gives more insight to perform exploratory analysis and modeling.

10. Data Analytics: A Comprehensive Beginner’s Guide to Learn About the Realms of Data Analytics From A-Z by Benjamin Smith

Smith pens down the path to learning data analytics from A to Z in easy-to-understand language. The book offers simplified explanations for challenging topics like sophisticated algorithms, or even the Euclidean Square Estimate. At any point, while reading this book, you will not feel overwhelmed by technical jargon or menacing formulas. 

First, quickly after introducing the topic, the author then explains a real-world use case and then brings forth the technical jargon. Smith demonstrates almost every practical topic with the use of Python, to enable learners to recreate the projects by themselves. The handy tips and practical exercises are a bonus. 

11. Data Science and Big Data Analytics: Discovering, Analyzing, Visualizing, and Presenting Data by EMC Education Services

With the implementation of Big Data analytics, you explore greater avenues to investigate and generate authentic outcomes to support businesses. It instigates deeper insights that were previously not conveniently doable for everyone. Readers of Data Science and Big Data Analytics perform integration with real-time feeds and queries of structured and unstructured data. As you progress with the chapters in this book, you will open new paths to insight and innovation.

EMC Education Services in this book introduced some of the key techniques and tools suggested by the practitioners for Big Data analytics. Mastering the tools upholds an opportunity of becoming an active contributor to the challenging projects of Big Data analytics. This data science book consists of twelve chapters, crafting a reader’s journey from the Basics of Big Data analytics toward a range of advanced analytical methods, including classification, regression analysis, clustering time series, and text analysis.

All these lessons speak to assist multiple stakeholders which include business and data analysts looking to add Big Data analytics skills to their portfolio; database professionals and managers of business intelligence, analytics, or Big Data groups looking to enrich their analytic skills; and college graduates investigating data science as a career field

12. An Introduction to Statistical Methods and Data Analysis by Lyman Ott

Lyman Ott discussed the powerful techniques used in statistical analysis for both advanced undergraduate and graduate students. This book helps students with solutions to solve problems encountered in research projects. Not only does it greatly benefit students in decision making but it also allows them to become critical readers of statistical analyses. The book gained positive feedback from different levels of learners because it presumes the readers to have little or no mathematical background, thus explaining the complex topics in an easy-to-understand way.

Ott extensively covered the introductory statistics in the starting 11 chapters. The book also targets students who struggle to ace their undergraduate capstone courses. Lastly, it provides research studies and examples that connect the statistical concepts to data analysis problems.

Upgrade your data science skillset with our Python for Data Science training!

Up for a Weekly Dose of Data Science?

Subscribe to our weekly newsletter & stay up-to-date with current data science news, blogs, and resources.