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Joscelin Rocha-Hidalgo, Pennsylvania State University
"Data Management in Large-Scale Education Research is a game changer for education researchers wanting to improve their research practices. The book seamlessly blends theory and practice, offering a pragmatic guide for ethically and systematically managing and sharing data."
Crystal Steltenpohl, Center for Open Science
"This book is a direct answer to the critical need for practical and accessible resources for education researchers who are managing primary data collection. Crystal Lewis introduces robust methods for the collection and management of data within the broader research context. Readers will acquire knowledge and confidence in leading large-scale studies, as well as skills and strategies they can implement in their work immediately. This book should be on the shelves of all graduate students, project managers, data managers, and PIs conducting research in education!"
Leigh McLean, Center for Research on Educational and Social Policy, University of Delaware
"Education researchers: do not skip this book! Crystal Lewis gives you the tools you need to manage your data better in order to make your project run smoothly."
Kristin Briney, Biology Librarian, California Institute of Technology, and author of "Data Management for Researchers: Organize, Maintain and Share Your Data for Research Success"
"An outstanding guide for those learning how to manage large-scale data in the social sciences. The book embraces the tenets of open science, highlighting the importance of reproducible science."
Lexi Swanz, Vanderbilt University
"Crystal Lewis has translated years of experience in applied research into a practical and indispensable guide to all aspects of data management across the educational research cycle. This book provides everything you need to perfect your data management practices and engage in research that is consistent with open science principles and the ever evolving demands of grant funding agencies."
Dan Cohen, SRI International
"This book is a treasure for those in the field of Education and beyond. Many practicing statisticians and industry data scientists have never endured the process of collecting their own data, and statistical education largely assumes away such complexities, taking complete and correct data as a given. Lewis' incredibly clear and readable book can be a revelation to data analysts on the complexity, nuances, and subjectivity that goes into data collection. This framework will undoubtedly help many consider how to handle bias and complexity in their own analysis and better manage their derivative data products with the level of care that Lewis coaches her readers to give."
Emily Riederer, Capital One, and author of "R Markdown Cookbook"