Orchestrate ETL Tools — Dagster Vs Airflow

Ryan Arjun
4 min readFeb 1, 2024

Dagster is particularly useful in the context of data engineering and data science, where managing complex data workflows is a common challenge. It aims to improve the development, testing, and maintenance of data pipelines, promoting best practices in data engineering.

Dagster is more modern an open-source data orchestration tool that assists organisations in structuring, scheduling, and monitoring data operations. It offers a framework for developing data pipelines that prioritises testing, versioning, and monitoring, making it simpler to create robust and maintainable data operations.

Airflow is widely used for orchestrating and automating data workflows, ETL (Extract, Transform, Load) processes, and other task scheduling scenarios. Its flexibility, scalability, and active community make it a popular choice for organizations looking to manage and monitor their data pipelines efficiently.

Apache Airflow is an open-source platform for programmatically creating, scheduling, and monitoring workflows or data pipelines. It allows you to create complicated workflows in Python using Directed Acyclic Graphs (DAGs), which outline how jobs should be done and…

--

--

Ryan Arjun
Ryan Arjun

Written by Ryan Arjun

BI Specialist || Azure || AWS || GCP — SQL|Python|PySpark — Talend, Alteryx, SSIS — PowerBI, Tableau, SSRS

No responses yet