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Data Literacy in Practice

You're reading from   Data Literacy in Practice A complete guide to data literacy and making smarter decisions with data through intelligent actions

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Product type Paperback
Published in Nov 2022
Publisher Packt
ISBN-13 9781803246758
Length 396 pages
Edition 1st Edition
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Authors (2):
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Kevin Hanegan Kevin Hanegan
Author Profile Icon Kevin Hanegan
Kevin Hanegan
Angelika Klidas Angelika Klidas
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Angelika Klidas
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Toc

Table of Contents (21) Chapters Close

Preface 1. Part 1: Understanding the Data Literacy Concepts
2. Chapter 1: The Beginning – The Flow of Data FREE CHAPTER 3. Chapter 2: Unfolding Your Data Journey 4. Chapter 3: Understanding the Four-Pillar Model 5. Chapter 4: Implementing Organizational Data Literacy 6. Chapter 5: Managing Your Data Environment 7. Part 2: Understanding How to Measure the Why, What, and How
8. Chapter 6: Aligning with Organizational Goals 9. Chapter 7: Designing Dashboards and Reports 10. Chapter 8: Questioning the Data 11. Chapter 9: Handling Data Responsibly 12. Part 3: Understanding the Change and How to Assess Activities
13. Chapter 10: Turning Insights into Decisions 14. Chapter 11: Defining a Data Literacy Competency Framework 15. Chapter 12: Assessing Your Data Literacy Maturity 16. Chapter 13: Managing Data and Analytics Projects 17. Chapter 14: Appendix A – Templates 18. Chapter 15: Appendix B – References 19. Index 20. Other Books You May Enjoy

Summary

Recognizing that poor data quality or a lack of data management can lead to a number of issues. In addition, if you do not have a data vision or data strategy that supports your organizational objectives, your organization is likely to focus on the wrong (non-relevant) objectives. Having a data strategy and a clear vision of where you want to go with your data and analytics plans can help an organization advance in its data and analytics maturity.

We now have a better understanding of data, data management, and data quality after reading this chapter. We have provided you with a five-step framework that includes data strategy, data people, data processes, data control, and data IT steps.

The data quality process is divided into five steps: discovering what data you need, profiling, rules (cleansing, correcting, and so on), monitoring the filling data elements in your source systems, and, finally, the amazing part where we see that you can actually measure your data quality...

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