Apache Airflow vs. Dagster

Overview
ProductRatingMost Used ByProduct SummaryStarting Price
Apache Airflow
Score 8.6 out of 10
N/A
Apache Airflow is an open source tool that can be used to programmatically author, schedule and monitor data pipelines using Python and SQL. Created at Airbnb as an open-source project in 2014, Airflow was brought into the Apache Software Foundation’s Incubator Program 2016 and announced as Top-Level Apache Project in 2019. It is used as a data orchestration solution, with over 140 integrations and community support.N/A
Dagster
Score 0.0 out of 10
N/A
Dagster is an open source orchestration platform for the development, production, and observation of data assets, supported by Elementl. Dagster Cloud is an enterprise orchestration platform that puts developer experience first, with fully serverless or hybrid deployments, native branching, and out-of-the-box CI/CD.
$0.03
per compute minute
Pricing
Apache AirflowDagster
Editions & Modules
No answers on this topic
No answers on this topic
Offerings
Pricing Offerings
Apache AirflowDagster
Free Trial
NoYes
Free/Freemium Version
YesNo
Premium Consulting/Integration Services
NoNo
Entry-level Setup FeeNo setup feeNo setup fee
Additional Details
More Pricing Information
Community Pulse
Apache AirflowDagster
Features
Apache AirflowDagster
Workload Automation
Comparison of Workload Automation features of Product A and Product B
Apache Airflow
8.8
12 Ratings
5% above category average
Dagster
-
Ratings
Multi-platform scheduling9.312 Ratings00 Ratings
Central monitoring9.012 Ratings00 Ratings
Logging8.612 Ratings00 Ratings
Alerts and notifications9.312 Ratings00 Ratings
Analysis and visualization6.912 Ratings00 Ratings
Application integration9.312 Ratings00 Ratings
Best Alternatives
Apache AirflowDagster
Small Businesses

No answers on this topic

Skyvia
Skyvia
Score 10.0 out of 10
Medium-sized Companies
ActiveBatch Workload Automation
ActiveBatch Workload Automation
Score 7.6 out of 10
Astera Data Pipeline Builder (Centerprise)
Astera Data Pipeline Builder (Centerprise)
Score 8.9 out of 10
Enterprises
Control-M
Control-M
Score 9.3 out of 10
Control-M
Control-M
Score 9.3 out of 10
All AlternativesView all alternativesView all alternatives
User Ratings
Apache AirflowDagster
Likelihood to Recommend
8.8
(12 ratings)
-
(0 ratings)
Usability
8.3
(3 ratings)
-
(0 ratings)
User Testimonials
Apache AirflowDagster
Likelihood to Recommend
Apache
Airflow is well-suited for data engineering pipelines, creating scheduled workflows, and working with various data sources. You can implement almost any kind of DAG for any use case using the different operators or enforce your operator using the Python operator with ease. The MLOps feature of Airflow can be enhanced to match MLFlow-like features, making Airflow the go-to solution for all workloads, from data science to data engineering.
Read full review
Dagster Labs
No answers on this topic
Pros
Apache
  • Apache Airflow is one of the best Orchestration platforms and a go-to scheduler for teams building a data platform or pipelines.
  • Apache Airflow supports multiple operators, such as the Databricks, Spark, and Python operators. All of these provide us with functionality to implement any business logic.
  • Apache Airflow is highly scalable, and we can run a large number of DAGs with ease. It provided HA and replication for workers. Maintaining airflow deployments is very easy, even for smaller teams, and we also get lots of metrics for observability.
Read full review
Dagster Labs
No answers on this topic
Cons
Apache
  • UI/Dashboard can be updated to be customisable, and jobs summary in groups of errors/failures/success, instead of each job, so that a summary of errors can be used as a starting point for reviewing them.
  • Navigation - It's a bit dated. Could do with more modern web navigation UX. i.e. sidebars navigation instead of browser back/forward.
  • Again core functional reorg in terms of UX. Navigation can be improved for core functions as well, instead of discovery.
Read full review
Dagster Labs
No answers on this topic
Usability
Apache
For its capability to connect with multicloud environments. Access Control management is something that we don't get in all the schedulers and orchestrators. But although it provides so many flexibility and options to due to python , some level of knowledge of python is needed to be able to build workflows.
Read full review
Dagster Labs
No answers on this topic
Alternatives Considered
Apache
Multiple DAGs can be orchestrated simultaneously at varying times, and runs can be reproduced or replicated with relative ease. Overall, utilizing Apache Airflow is easier to use than other solutions now on the market. It is simple to integrate in Apache Airflow, and the workflow can be monitored and scheduling can be done quickly using Apache Airflow. We advocate using this tool for automating the data pipeline or process.
Read full review
Dagster Labs
No answers on this topic
Return on Investment
Apache
  • Impact Depends on number of workflows. If there are lot of workflows then it has a better usecase as the implementation is justified as it needs resources , dedicated VMs, Database that has a cost
  • Donot use it if you have very less usecases
Read full review
Dagster Labs
No answers on this topic
ScreenShots

Dagster Screenshots

Screenshot of an illustration of Dagster's asset-centric approach. Dagster builds data lineage directly into the orchestration process so that users can automatically track and understand complex data flows.Screenshot of The Dagster+ data catalog, which provides a system of record that captures and curates the output metadata of data assets as they are managed by data pipelines, delivering a real-time, actionable view of the data ecosystem.Screenshot of Dagster+ Insights, used to gain visibility into historical usage and cost metrics such as Dagster+ run duration, credit usage, and failures.Screenshot of the interface for monitoring runs across all jobs, in the run timeline view.Screenshot of details of a run.