% Off Udemy Coupon - CourseSpeak

Apache Airflow 3 - The Complete Bootcamp [With Projects]

[2026] Master Apache Airflow 3 with DAGs, Assets, XCOMs, Operators, Hooks, etc. Build, schedule & author data pipelines

$14.99 (90% OFF)
Get Course Now

About This Course

<div>This is a COMPLETE Apache Airflow 3 Bootcamp you need in 2026 to become a PRO Apache Airflow Developer.</div><div><br></div><div>Whether you're a beginner or a working professional looking to upskill, this course will guide step by step with a hands-on, practical, and engaging lectures (doodle illustrations).</div><div><br></div><div>GAIN STRONG HANDS-ON WITH:</div><div><ul><li><span style="font-size: 1rem;">Airflow Fundamentals &amp; Architecture - Learn the fundamentals of Airflow and understand how DAG Processor, Metadata DB, Scheduler, Executor, Webserver, Workers work together to orchestrate data pipelines.</span></li><li><span style="font-size: 1rem;">DAG Authoring - Master the modern TaskFlow API to build complex DAGs with dependencies, branching, and subDAGs for real-world data workflows. Learn XCOMs and kwargs for inter-task communication and passing data between tasks in the DAGs.</span></li><li><span style="font-size: 1rem;">Operators &amp; Hooks - Learn how to use built-in Operators and Hooks to interact with external systems like databases, APIs, and cloud services. Build custom connectors to integrate with any system.</span></li><li><span style="font-size: 1rem;">Scheduling &amp; Triggers - Schedule your DAGs using Cron, Delta Triggers, Event-based triggers, and specific time intervals to cover a wide range of real-world use cases.</span></li><li><span style="font-size: 1rem;">Incremental Load &amp; Backfilling - Implement incremental load strategies and backfill historical data to ensure your pipelines can handle both new and existing data effectively.</span></li><li><span style="font-size: 1rem;">Monitoring &amp; Troubleshooting - Use the Airflow UI, logs, and metrics to monitor your DAGs, identify issues, and troubleshoot errors to ensure reliable pipeline execution.</span></li><li><span style="font-size: 1rem;">Security &amp; Retries - Create connections in Airflow to securely store credentials for external systems. Implement error handling and retry mechanisms to ensure robust and fault-tolerant workflows.</span></li><li><span style="font-size: 1rem;">Airflow Assets &amp; Scaling - Develop Airflow Assets to build data aware pipelines and manage data dependencies effectively. Scale Airflow with multiple workers and queues to distribute workload and optimize performance.</span></li><li><span style="font-size: 1rem;">End-to-End Projects - Additionally, build 2 real-world projects integrating AWS S3, Spark, Databricks, AWS Glue, APIs, and more to make your learning practical with real-world applications of Airflow.</span></li></ul></div><div><br></div><div>WHAT MAKES THIS COURSE UNIQUE?</div><div><ul><li><span style="font-size: 1rem;">Super Engaging Lectures - No boring theory here! I explain every concept in a clear and beginner-friendly way using real-life examples and doodle visuals.</span></li><li><span style="font-size: 1rem;">Deep Dive into Every Topic – I don’t just scratch the surface. You'll understand the “why” and “how” behind every feature.</span></li><li><span style="font-size: 1rem;">Strong Hands-On Focus - You learn by doing. Each chapter includes so many practical labs to solidify your understanding and build real-world skills.</span></li></ul></div><div><span style="font-size: 1rem;"><br></span></div><div><span style="font-size: 1rem;">DISCLAIMER - This course is independently created and not affiliated with or endorsed by Airflow. All content is original, designed for educational purposes only. It is based on public documentation, real-world scenarios, and personal experience. All trademarks belong to their respective owners. For the most accurate and updated information, refer to the official Airflow documentation.</span></div>

What you'll learn:

  • Understand Airflow Architecture and core components - DAG Processor, Metadata DB, Scheduler, Executor, Webserver, Workers, and how they interact
  • You'll also build 2 end-to-end projects including AWS S3, Spark, Databricks, AWS Glue, APIs, etc. to solidify your learning and gain strong hands-on
  • Build industry-grade DAGs using modern TaskFlow API for complex dependencies, branching & subDAGs
  • Learn XCOMs and kwargs for inter-task communication and passing data between tasks in the DAGs
  • Master Operators and Hooks to interact with external systems like databases, APIs & cloud service
  • Schedule DAGs with Cron, Delta Triggers, and Event-based triggers covering real-world use cases
  • Monitor & troubleshoot DAGs using the Airflow UI, logs, and metrics to ensure reliability
  • Create connections in Airflow to securely store credentials for external systems
  • Implement Incremental Data Loading & Backfilling of DAGs to manage historical data
  • Implement error handling and retry mechanisms to ensure robust and fault-tolerant workflows
  • Develop Airflow Assets to build data aware pipelines and manage data dependencies effectively
  • Scale Airflow with multiple workers and queues to distribute workload and optimize performance