![]() |
|
Apache Airflow 3 Advanced DAG Authoring - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: Apache Airflow 3 Advanced DAG Authoring (/Thread-Apache-Airflow-3-Advanced-DAG-Authoring) |
Apache Airflow 3 Advanced DAG Authoring - OneDDL - 01-08-2026 ![]() Free Download Apache Airflow 3 Advanced DAG Authoring Published 1/2026 Created by Marc Lamberti MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch Level: All | Genre: eLearning | Language: English | Duration: 42 Lectures ( 4h 55m ) | Size: 2.76 GB Take your Airflow DAGs to the next level with the most advanced features What you'll learn Design asset-centric DAGs using Airflow 3 Implement event-driven scheduling to trigger workflows based on external events rather than time-based schedules. Create dynamic workflows using advanced mapping techniques to handle variable numbers of tasks efficiently. Build AI workflows with latest Airflow updates using decorators and human in the loop operators Requirements Working knowledge of Apache Airflow 2.x, including basic DAG authoring and execution Proficiency in Python programming (intermediate level) Experience with basic ETL/data pipeline concepts Familiarity with command-line interfaces and basic Linux/Unix commands Understanding of basic containerization concepts (Docker) Access to a development environment capable of running Apache Airflow 3.x Experience with git version control (basic) Description Airflow 3: Advanced DAG AuthoringTake your Apache Airflow skills to the next level. This course dives deep into the powerful features of Airflow 3 that separate beginners from production-ready data engineers.You'll master the TaskFlow API-from the basics to advanced patterns like dynamic DAG generation, task groups, pools, and resource management. Learn how to build flexible, scalable pipelines using dynamic task mapping with advanced techniques like reduce, expand, and more. Explore modern scheduling strategies including assets, conditional scheduling, and event-driven pipelines with services like AWS SQS. Plus, discover how to integrate AI into your workflows using LLMs, the AI SDK, and human-in-the-loop approval patterns.What you'll learn:Write clean, Pythonic DAGs using the TaskFlow APIGenerate DAGs dynamically and reuse tasks like a proMaster dynamic task mapping for flexible, data-driven workflowsSchedule pipelines using assets, event-driven triggers, and continuous schedulingIntegrate AI and LLMs directly into your Airflow tasksImplement human-in-the-loop workflows for AI approvalsEvery video has its corresponding source code so it's easy for you to follow along.Who this course is for: Data engineers and developers with foundational Airflow knowledge who want to write more efficient, maintainable, and production-grade DAGs using Airflow 3's latest features.I hope you are ready for the course. Let's do it!Marc Lamberti Who this course is for This course is designed for data engineers who already work with Apache Airflow and want to elevate their DAG authoring skills to an advanced level. Ideal participants have hands-on experience building basic data pipelines with Airflow 2.x and are looking to leverage Airflow powerful advanced features. Homepage Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live No Password - Links are Interchangeable |