We normally use the solution for creating a specific flow for data transformation. We have several pipelines that we use and due to the fact that they're pretty well-defined, we use it in conjunction with other tools that do the mediation portion. With Airflow, we do the processing of such data.
Apache Airflow is #8 ranked solution in BPM Software. PeerSpot users give Apache Airflow an average rating of 8.0 out of 10. Apache Airflow is most commonly compared to Camunda Platform: Apache Airflow vs Camunda Platform. Apache Airflow is popular among the large enterprise segment, accounting for 72% of users researching this solution on PeerSpot. The top industry researching this solution are professionals from a computer software company, accounting for 18% of all views.
Apache Airflow OverviewUNIXBusinessApplication
Apache Airflow OverviewUNIXBusinessApplicationPrice:
Apache Airflow Buyer's Guide
Download the Apache Airflow Buyer's Guide including reviews and more. Updated: September 2022
What is Apache Airflow?
Apache Airflow is an open-source workflow management system (WMS) that is primarily used to programmatically author, orchestrate, schedule, and monitor data pipelines as well as workflows. The solution makes it possible for you to manage your data pipelines by authoring workflows as directed acyclic graphs (DAGs) of tasks. By using Apache Airflow, you can orchestrate data pipelines over object stores and data warehouses, run workflows that are not data-related, and can also create and manage scripted data pipelines as code (Python).
Apache Airflow Features
Apache Airflow has many valuable key features. Some of the most useful ones include:
- Smart sensor: In Apache Airflow, tasks are executed sequentially. The smart sensors are executed in bundles, and therefore consume fewer resources.
- Dockerfile: By using Apache Airflow’s dockerfile feature, you can run your business’s Airflow code without having to document and automate the process of running Airflow on a server.
- Scalability: Because Apache Airflow has a modular architecture and uses a message queue to orchestrate an arbitrary number of workers, you can easily scale it.
- Plug-and-play operators: With Apache Airflow, you can choose from several plug-and-play operators that are ready to execute your tasks on many third-party services.
Apache Airflow Benefits
There are many benefits to implementing Apache Airflow. Some of the biggest advantages the solution offers include:
- User friendly: Using Apache Airflow requires minimal python knowledge to get started.
- Intuitive user interface: The Apache Airflow user interface enables you to visualize pipelines running in production, monitor progress, and also troubleshoot issues when needed.
- Easy integration: Apache Airflow can easily be integrated with cloud platforms (Google, AWS, Azure, etc).
- Visual DAGs: Apache Airflow’s visual DAGs provide data lineage, which facilitates debugging of data flows and also aids in auditing and data governance.
- Flexibility: Apache Airflow provides you with several ways to make DAG objects more flexible. At runtime, a context variable is passed to each workflow execution, which is quickly incorporated into an SQL statement that includes the run ID, execution date, and last and next run times.
- Multiple deployment options: With Apache Airflow, you have several options for deployment, including self-service, open source, or a managed service.
- Several data source connections: Apache Airflow can connect to a variety of data sources, including APIs, databases, data warehouses, and more.
Reviews from Real Users
Below are some reviews and helpful feedback written by PeerSpot users currently using the Apache Airflow solution.
A Senior Solutions Architect/Software Architect says, “The product integrates well with other pipelines and solutions. The ease of building different processes is very valuable to us. The difference between Kafka and Airflow, is that it's better for dealing with the specific flows that we want to do some transformation. It's very easy to create flows.”
An Assistant Manager at a comms service provider mentions, “The best part of Airflow is its direct support for Python, especially because Python is so important for data science, engineering, and design. This makes the programmatic aspect of our work easy for us, and it means we can automate a lot.”
A Senior Software Engineer at a pharma/biotech company comments that he likes Apache Airflow because it is “Feature rich, open-source, and good for building data pipelines.”
Apache Airflow was previously known as Airflow.
Apache Airflow Customers
Agari, WePay, Astronomer
Apache Airflow Video
Apache Airflow Pricing Advice
What users are saying about Apache Airflow pricing:
Apache Airflow Reviews
Learn what your peers think about Apache Airflow. Get advice and tips from experienced pros sharing their opinions. Updated: September 2022.
632,611 professionals have used our research since 2012.