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  • Book Overview & Buying Apache Airflow Best Practices
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Apache Airflow Best Practices

Apache Airflow Best Practices

By : Dylan Intorf, Dylan Storey, Kendrick van Doorn
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Apache Airflow Best Practices

Apache Airflow Best Practices

5 (2)
By: Dylan Intorf, Dylan Storey, Kendrick van Doorn

Overview of this book

Data professionals face the challenge of managing complex data pipelines, orchestrating workflows across diverse systems, and ensuring scalable, reliable data processing. This definitive guide to mastering Apache Airflow, written by experts in engineering, data strategy, and problem-solving across tech, financial, and life sciences industries, is your key to overcoming these challenges. Covering everything from Airflow fundamentals to advanced topics such as custom plugin development, multi-tenancy, and cloud deployment, this book provides a structured approach to workflow orchestration. You’ll start with an introduction to data orchestration and Apache Airflow 2.x updates, followed by DAG authoring, managing Airflow components, and connecting to external data sources. Through real-world use cases, you’ll learn how to implement ETL pipelines and orchestrate ML workflows in your environment, and scale Airflow for high availability and performance. You’ll also learn how to deploy Airflow in cloud environments, tackle operational considerations for scaling, and apply best practices for CI/CD and monitoring. By the end of this book, you’ll be proficient in operating and using Apache Airflow, authoring high-quality workflows in Python, and making informed decisions crucial for production-ready Airflow implementations.
Table of Contents (20 chapters)
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1
Part 1: Apache Airflow: History, What, and Why
4
Part 2: Airflow Basics
7
Part 3: Common Use Cases
13
Part 4: Scale with Your Deployed Instance

Summary

With the completion of this chapter, you’ve got a system that can be used to allow “non-technical” users to author and execute workflows without having any understanding of Airflow (or even Python). This is a powerful pattern for abstraction that can allow you to give the power and stability of Airflow to users without forcing them to gain a deep understanding of the system.

Keep in mind that this implementation is meant to be illustrative of the pattern but is in no way complete for production. A good exercise would be to take the example code associated with this chapter and experiment with methods for authoring workflows with different levels of complexity, more functionality, alerts for the submitting QA engineer, and other Airflow operators entirely.

Be wary as you experiment with or adopt this pattern – taken to the extreme, you could find yourself attempting to define all of the capabilities in Airflow in a JSON object, which will only...

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