Taylor Rodgers
  • Home
  • Books
  • Free Tools
    • Requirement Doc Templates
    • Quality Checking Guide
  • Blogs
    • Data Science
    • R Programming
  • Consulting
    • Statistical Consultant
  • Contact
  • Home
  • Books
  • Free Tools
    • Requirement Doc Templates
    • Quality Checking Guide
  • Blogs
    • Data Science
    • R Programming
  • Consulting
    • Statistical Consultant
  • Contact

Positive Reviews for the Book "Data Work: A Jargon-Free Guide to Managing Successful Data Teams"

3/13/2022

0 Comments

 
Picture

When I decided to write my first book, Data Work: A Jargon-Free Guide to Managing Successful Data Teams, I wanted to create something that didn't read like most business books. Ideally, readers would find it both easy-to-read and practical.

The practical part is hard though. It's easy for business theories to sound great on paper, but fail in the real world. But there are some foundational concepts in data work that determines whether companies succeed or fail with their BI solutions.

I've worked with dozens of data teams, as both a consultant and as an employee. The best teams didn't necessarily have the best talent, the best technologies, or even the most innovative projects – they simply had good habits.

Since the book's release, I've learned that many readers agree with me. Here's what they said about the book's message and concepts:
Just thought I'd send an email to commend you on the great book. It's really a hidden gem in the field. So relevant and to the point. I'm only half-way through but loving it so far. I see myself agreeing on most of your points!
​-- Mauricio
[Data Work] is such an amazing resource. It is definitely going to be my go to manual while managing my team.  I have recommended this to a few friends. 
​-- Ayodele Oluleye
[This] was exactly the book I needed right now. In fact, I probably needed it before it had been written…. I started recommending it to other people before I finished reading it.
-- Elizabeth Parke
0 Comments

    ABOUT

    A blog about the non-technical side of data science.

      SUBSCRIBE

    Confirm

    ARCHIVES

    April 2022
    March 2022
    October 2021
    September 2021
    August 2021
    March 2021
    February 2021
    January 2021
    November 2020
    August 2020
    June 2020
    May 2020
    April 2020
    February 2020
    January 2020
    December 2019
    November 2019
    October 2019
    September 2019
    August 2019
    July 2019
    June 2019
    May 2019
    March 2019

    RSS Feed