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Simplifying Data Engineering and Analytics with Delta

You're reading from   Simplifying Data Engineering and Analytics with Delta Create analytics-ready data that fuels artificial intelligence and business intelligence

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Product type Paperback
Published in Jul 2022
Publisher Packt
ISBN-13 9781801814867
Length 334 pages
Edition 1st Edition
Languages
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Author (1):
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Anindita Mahapatra Anindita Mahapatra
Author Profile Icon Anindita Mahapatra
Anindita Mahapatra
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Table of Contents (18) Chapters Close

Preface 1. Section 1 – Introduction to Delta Lake and Data Engineering Principles
2. Chapter 1: Introduction to Data Engineering FREE CHAPTER 3. Chapter 2: Data Modeling and ETL 4. Chapter 3: Delta – The Foundation Block for Big Data 5. Section 2 – End-to-End Process of Building Delta Pipelines
6. Chapter 4: Unifying Batch and Streaming with Delta 7. Chapter 5: Data Consolidation in Delta Lake 8. Chapter 6: Solving Common Data Pattern Scenarios with Delta 9. Chapter 7: Delta for Data Warehouse Use Cases 10. Chapter 8: Handling Atypical Data Scenarios with Delta 11. Chapter 9: Delta for Reproducible Machine Learning Pipelines 12. Chapter 10: Delta for Data Products and Services 13. Section 3 – Operationalizing and Productionalizing Delta Pipelines
14. Chapter 11: Operationalizing Data and ML Pipelines 15. Chapter 12: Optimizing Cost and Performance with Delta 16. Chapter 13: Managing Your Data Journey 17. Other Books You May Enjoy

Analyzing tradeoffs in a push versus pull data flow

A long, long time ago, we started with a data warehouse. As we discovered its inadequacies, we moved to a data lake. However, a vanilla data lake is no silver bullet, so folks would perform expensive ETL in a data lake and push curated, aggregated data slivers into a downstream warehouse for BI tools to pick up. Another architecture anti-pattern that we've seen in the field is ETL being done in a warehouse and pushing data to a lake to do ML. We have come a long way from there. Modern data lakes embrace the lakehouse paradigm, and BI tools can directly reach out to the data in a lake, bypassing the warehouse completely. We believe that this pattern will continue to gain traction in the industry. So, is the warehouse dead? Yes, in spirit, it is, but in practice, it'll take a few more years to phase out completely. So, when is it good to have any kind of specialized data stored to the right of a data lake? If it can be avoided...

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