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Building Big Data Pipelines with Apache Beam

You're reading from   Building Big Data Pipelines with Apache Beam Use a single programming model for both batch and stream data processing

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Product type Paperback
Published in Jan 2022
Publisher Packt
ISBN-13 9781800564930
Length 342 pages
Edition 1st Edition
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Concepts
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Author (1):
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Jan Lukavský Jan Lukavský
Author Profile Icon Jan Lukavský
Jan Lukavský
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Table of Contents (13) Chapters Close

Preface 1. Section 1 Apache Beam: Essentials
2. Chapter 1: Introduction to Data Processing with Apache Beam FREE CHAPTER 3. Chapter 2: Implementing, Testing, and Deploying Basic Pipelines 4. Chapter 3: Implementing Pipelines Using Stateful Processing 5. Section 2 Apache Beam: Toward Improving Usability
6. Chapter 4: Structuring Code for Reusability 7. Chapter 5: Using SQL for Pipeline Implementation 8. Chapter 6: Using Your Preferred Language with Portability 9. Section 3 Apache Beam: Advanced Concepts
10. Chapter 7: Extending Apache Beam's I/O Connectors 11. Chapter 8: Understanding How Runners Execute Pipelines 12. Other Books You May Enjoy

Using the DataFrame API

For those who are familiar with Python's pandas package, it might be interesting to know that Apache Beam has a pandas-compatible API. It is called the DataFrame API, and we will briefly introduce it here. We will not walk through the details of the pandas API itself; it can easily be found online. Instead, we will explain how to use it and how to switch between the DataFrame API and the classical PCollection API.

The basic idea behind a DataFrame (both in Beam and in pandas) is that a data point can be viewed as a row in a table, where each row can have multiple fields (columns). Each field has an associated name and data type. Not every row (data point) has to have the same set of fields.

We can either use the DataFrame API directly from the beginning or swap between the classical API and the DataFrame API, depending on the situation and which API gives more readable code.

We'll start by introducing the first option – creating a DataFrame...

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