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Building ETL Pipelines with Python

You're reading from  Building ETL Pipelines with Python

Product type Book
Published in Sep 2023
Publisher Packt
ISBN-13 9781804615256
Pages 246 pages
Edition 1st Edition
Languages
Authors (2):
Brij Kishore Pandey Brij Kishore Pandey
Profile icon Brij Kishore Pandey
Emily Ro Schoof Emily Ro Schoof
Profile icon Emily Ro Schoof
View More author details

Table of Contents (22) Chapters

Preface 1. Part 1:Introduction to ETL, Data Pipelines, and Design Principles
2. Chapter 1: A Primer on Python and the Development Environment 3. Chapter 2: Understanding the ETL Process and Data Pipelines 4. Chapter 3: Design Principles for Creating Scalable and Resilient Pipelines 5. Part 2:Designing ETL Pipelines with Python
6. Chapter 4: Sourcing Insightful Data and Data Extraction Strategies 7. Chapter 5: Data Cleansing and Transformation 8. Chapter 6: Loading Transformed Data 9. Chapter 7: Tutorial – Building an End-to-End ETL Pipeline in Python 10. Chapter 8: Powerful ETL Libraries and Tools in Python 11. Part 3:Creating ETL Pipelines in AWS
12. Chapter 9: A Primer on AWS Tools for ETL Processes 13. Chapter 10: Tutorial – Creating an ETL Pipeline in AWS 14. Chapter 11: Building Robust Deployment Pipelines in AWS 15. Part 4:Automating and Scaling ETL Pipelines
16. Chapter 12: Orchestration and Scaling in ETL Pipelines 17. Chapter 13: Testing Strategies for ETL Pipelines 18. Chapter 14: Best Practices for ETL Pipelines 19. Chapter 15: Use Cases and Further Reading 20. Index 21. Other Books You May Enjoy

Creating a data extraction pipeline using Python

With a bit more familiarity around where to source data, let’s put it in the context of an importation activity within a data pipeline workflow. We’re going to use a Jupyter notebook for prototyping the final methodology we will eventually deploy within a Python script. The reasoning behind this is simple: Jupyter notebooks allow easy visualization, but can be quite clunky to deploy; Python scripts have less visualization access (it can be done, but not as effortlessly as in Jupyter) but can easily be used for deployment and various environments. In our case, we want to properly test and “sanity-check” the format of the imported source data. Later in the book, we’ll show how, when we transcribe our code to a Python script, we gain access to PyCharm’s powerful environment to easily test, log, and encrypt Python scripts.

Data extraction

Within your PyCharm environment for Chapter 4, verify...

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