Book description
Our new 2015 Edition of O'Reilly's Women in Data report reveals inspiring stories of success and insights from four women working in data, across the European Union. Now featuring a total of 19 interviews with women who are central to data businesses, authors Cornelia Lévy-Bencheton and Shannon Cutt uncover strategies for success for women in the field of data, and anyone interested in pursuing or advancing their career in data.
While women are still an underrepresented minority in the disciplines of science, technology, engineering, and math (STEM), women in data and technology are no longer outliers. With this report, you'll learn how a remarkable group of women in data achieved their current level of success, what motivated them to get there, and their views about opportunities for women in the field.
The stories in this book are inspiring, revealing insights that will widen the path for even more women in tech.
These interviews explore:
- The expanding role of the contemporary data scientist
- New attitudes towards women in data among Millennials
- Benefits of the data and STEM fields as a career choice for women
- Remedies for closing the gender gap
Table of contents
-
1. Women in Data: Cutting-Edge Practitioners and Their Views on Critical Skills, Background, and Education
- Introduction
-
Profiles of Cutting-Edge Practitioners
- Carme Artigas
- Francine Bennett
- Michele Chambers
- Camille Fournier
- Carla Gentry
- Kelly Hoey
- Cindi Howson, Vice President of Research, Gartner, Inc.
- Angie Ma
- Neha Narkhede
- Claudia Perlich
- Kira Radinsky
- Majken Sander
- Gwen Shapira
- Laurie Skelly
- Kathleen Ting
- Renetta Garrison Tull
- Hanna Wallach
- Alice Zheng
- Margit Zwemer
Product information
- Title: Women in Data
- Author(s):
- Release date: February 2015
- Publisher(s): O'Reilly Media, Inc.
- ISBN: 9781491923016
You might also like
video
Deep Learning with Python video edition
"The clearest explanation of deep learning I have come across...it was a joy to read." Richard …
book
Creating Good Data: A Guide to Dataset Structure and Data Representation
Create good data from the start, rather than fixing it after it is collected. By following …
book
Deep Learning with Python, Second Edition
Deep Learning with Python, Second Edition introduces the field of deep learning using Python and the …
book
Junkyard Jam Band
A collection of DIY musical instruments made from everyday materials. For any lover of music making …