Today's business environment brings with it an onslaught of data, but leaving the analysis to others in your company just won't cut it. Now more than ever, managers must know how to tease insight from data--to understand where it comes from, make sense of the numbers, and use those findings to inform your toughest decisions. How do you get started? Whether you're working with data experts or running your own tests, the "HBR Guide to Data Analytics Basics for Managers" provides practical tips and advice to help you make better decisions using data. Through its three-step process, this essential guide will show you how to get the information you need, study the data, and communicate your findings to others. You'll learn to: Identify the metrics you need to measure; Formulate hypotheses and test against them; Ask the right questions of your data--and your data experts; Understand statistical terms and concepts; Create effective charts and visualizations; Avoid common mistakes.
The book contains 22 articles plus an appendix. As a data scientist, I especially like the article Know the difference between your data and your metrics, Linear thinking in a Nonlinear world, Pitfalls of data-driven decisions, Don’t let your analytics cheat the truth, and all the articles under communicate your findings.
Great reference to keep your mind in the right place; establishes the framework and includes surrounding intangibles with data analytics. Good go to to begin.
As a designer, I found many parts of this book useful for critically thinking about what's most important to begin proper data analytics. Some of the essays were way out of my range, but I like that it feels like a bible I can always refer back to as I improve.
Decent, but not as good as some of the other HBR guides. It skims lightly over the various components of Data Analytics- too lightly, perhaps. It's an easy read, but if you're looking for an intellectual insight into data analytics for managers, I'm sure there's better books out there.
This is a decent introduction to the topic, which combines a series of articles by different authors into this single volume. Good overview of foundational concepts and vocabulary.
I've read many Harvard Business Review (HBR) articles over the years. Having finished my masters degree in data science last year, I had to read a significant amount of them. But I had never read an HBR book. While this is 'book' is a more of a collection of articles, it still serves as a great tool for managers of data scientists and data scientists alike. 22 total chapters, each discussing a different aspect of data science, written by various data science experts. I personally loved that 3 chapters and the appendix (4 total articles) were all written by Thomas H. Davenport, considered the 'father of data science'. I think that not only were the topics thoroughly discussed but they were also organized in a way that made the ideas flow nicely. There were clear examples to demonstrate the various concepts, including graphs, charts, tables, checklists, and process flow descriptions. I thought that this book was fantastic and chock full of super helpful information. I felt like a learned a lot and will definitely be revisiting this book for tips and future reads.
If you think to yourself, "I should buy this book" while reading a library-loaned one, you know it's a great book. Basically, this is a compilation of all the questions I had when I first started learning business analytics: I had to google them for months on my own, but imagine a book that sits on your bookshelf with all the answers beautifully written in an essay format. And HBR has to be credited with its clarity - the writing reads easily when the topic can be dry. (Great editors no doubt)
It's a good book. As a marketing student, I already knew many things that the book teaches, but, its always good to have a summary, and, in case your career has nothing to do with data and statistics, this is a very good book for you to start. The only thing I didn't like a lot, and that happens in many finance & economic books, its that at some point it gets very repetitive. Like the book spends so much time telling why it is important to analise your data than actually telling you how to analise it. For a HBR guide, I expected more.
This is a good quick read about the basics of data analytics in a time when analytics and insights are becoming more and more important. Some of the articles are more relevant than others (considering it was written a few years ago), but all are short enough that in the aggregate it's worth the time to read, especially if you are moving into more senior management in a company that is already anchored in data-driven decisions or you're looking to help your company be more data driven.
Great go to book for managers. I teach financial analysis to operations managers and teach in a similar manner. Interpretation and understanding not details of stats. We hire people for that part. As a managers there is some numbers they need to do themselves and others they just need to do a good job of critically evaluating and this book gives a good overview of that critical evaluation.
It is a great reading for corporation managers. If you are the manager of projects, this is a good way to start building the frame for data-based projects. If you are new and working in the public sector, like the government, or NGO, this is a good reference book for understanding how the data-based project runs.
5/5 ⭐️ This book is rich in valuable info, if you have a business I highly recommend it for you. I loved the part when it talked about Predictive Analytics.. so smart. Business Analytics & Predictive Analytics can be used in many fields including Accounting/Auditing.. I mean detecting fraud before it happens!! Such a powerful internal control tool and can help organizations.
I thought this book could've used more practical information; its summative nature made the content rather brief and would probably be best for those who are brand new to data analytics as opposed to those on a managerial level.
Good and informative articles by industry experts. Would advice this book to anyone who has just started out his journey or is thinking to start his career in the field of Data Analytics
It might still be a dream to study at Harvard but that doesn't mean you can't learn at Harvard. This is a shot indeed which kicks the analyzer or scientist in you. Thank you for having this print and gratitude to all the authors composing this piece. I thoroughly enjoyed and made notes.
I liked this - it’s easily palatable advice on data, charts, visualisations, etc. with case studies to support. I’d definitely read this if I just want to understand the core ideas.