Apache Airflow vs. Mage

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
Mage
Score 8.6 out of 10
N/A
Mage is a tool that helps product developers use AI and their data to make predictions. Use cases might be predictions for churn prevention, product recommendations, customer lifetime value and forecasting sales.
$0
per user
Pricing
Apache AirflowMage
Editions & Modules
No answers on this topic
Hobby
$0
per user
Pro
$2,000
per month per user
Offerings
Pricing Offerings
Apache AirflowMage
Free Trial
NoYes
Free/Freemium Version
YesYes
Premium Consulting/Integration Services
NoNo
Entry-level Setup FeeNo setup feeOptional
Additional DetailsContact vendor for pricing information.
More Pricing Information
Community Pulse
Apache AirflowMage
Considered Both Products
Apache Airflow
Chose Apache Airflow
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 …
Chose Apache Airflow
Using Jenkins and Kafka, it is not for the same purpose, although it might be similar. I would say AirFlow is really what it says on the can - workflow management. For our organisation, the purpose is clear. So long your aim is to have a rich workflow scheduler and job …
Chose Apache Airflow
Apache Airflow is far superior!
Chose Apache Airflow
Much easy to deploy Apache Airflow as opposed to other products, with flexible deployment options as well as flexible integration with other tools and platforms.
Chose Apache Airflow
digdag (https://www.digdag.io/)- Digdag is a very simple build, run, schedule, and monitor complex pipelines of tasks with a simple implementation and no configuration. Easy to write YAMLs

Airflow has a better community and widely adopted. Has a better UI and better documentation
Chose Apache Airflow
Overall using Apache Airflow is easy to use compare than other other tools available in the market, It is easy to integrate in apache airflow and the workflow can be monitored and scheduling can be done easily using apache airflow, recommend this tool for Automating the data …
Chose Apache Airflow
Airflow was best suited in my use case for designing the ETL pipelines in a scripted manner for workflows & the UI was very good & easy to use.
Chose Apache Airflow
There are a number of reasons to choose Apache Airflow over other similar platforms- Integrations—ready-to-use operators allow you to integrate Airflow with cloud platforms (Google, AWS, Azure, etc) Apache Airflow helps with backups and other DevOps tasks, such as submitting a …
Chose Apache Airflow
Step functions are only available in AWS but Apache Airflow provides cross cloud access. Apache Airflow also provides flexibility to pause, start and re-trigger dags. Provides executors where we can run in-house calculations if needed and which requires no integration with …
Chose Apache Airflow
Apache Airflow is suited for a much wider set of use cases compared to Databricks. You can run it anywhere, and there is also no vendor lock-in. With Airflow, we can utilize almost any compute engine. Same thing we want to do with Databricks. There might be some level of …
Mage
Chose Mage
Mage was the easiest in terms of ease of implementation due to its no-code functionality. However, Mage doesn't have a whole ecosystem like AWS and slightly falls behind there.
Features
Apache AirflowMage
Workload Automation
Comparison of Workload Automation features of Product A and Product B
Apache Airflow
9.8
Ratings
17% above category average
Mage
-
Ratings
Multi-platform scheduling10.00 Ratings00 Ratings
Central monitoring10.00 Ratings00 Ratings
Logging10.00 Ratings00 Ratings
Alerts and notifications10.00 Ratings00 Ratings
Analysis and visualization10.00 Ratings00 Ratings
Application integration9.00 Ratings00 Ratings
Best Alternatives
Apache AirflowMage
Small Businesses

No answers on this topic

Skyvia
Skyvia
Score 9.9 out of 10
Medium-sized Companies
ActiveBatch Workload Automation
ActiveBatch Workload Automation
Score 7.5 out of 10
Astera Data Pipeline Builder (Centerprise)
Astera Data Pipeline Builder (Centerprise)
Score 8.7 out of 10
Enterprises
Redwood RunMyJobs
Redwood RunMyJobs
Score 9.6 out of 10
Control-M
Control-M
Score 9.3 out of 10
All AlternativesView all alternativesView all alternatives
User Ratings
Apache AirflowMage
Likelihood to Recommend
9.1
(0 ratings)
8.5
(0 ratings)
Usability
10.0
(0 ratings)
-
(0 ratings)
User Testimonials
Apache AirflowMage
Likelihood to Recommend
For a quick job scanning of status and deep-diving into job issues, details, and flows, AirFlow does a good job. No fuss, no muss. The low learning curve as the UI is very straightforward, and navigating it will be familiar after spending some time using it. Our requirements are pretty simple. Job scheduler, workflows, and monitoring. The jobs we run are >100, but still is a lot to review and troubleshoot when jobs don't run. So when managing large jobs, AirFlow dated UI can be a bit of a drawback.
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Mage is well-suited for probability score for uptake of every product is calculated for customers using ML/ Regression models, choosing customers for a product/ Top products for a customer, based on the requirement and Identifying popular product combinations using association rules from Market Basket Analysis (or affinity Analysis)\Bundle these products as combos.
Read full review
Pros
  • 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.
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  • Ranking algorithms.
  • Cloud-based tool.
  • Increase user engagement.
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Cons
  • A local "dry run" or IDE plugin that can validate and simulate DAG execution without needing a full environment.
  • Better feedback on DAG parse errors in the UI or CLI.
  • Navigating large DAGs with hundreds of tasks can be slow and hard to understand visually.
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  • Acquisition Contribution.
  • Business Intelligence Reporting.
  • Data Destinations.
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Usability
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.
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No answers on this topic
Alternatives Considered
Apache Airflow is suited for a much wider set of use cases compared to Databricks. You can run it anywhere, and there is also no vendor lock-in. With Airflow, we can utilize almost any compute engine. Same thing we want to do with Databricks. There might be some level of difficulty based on the support.
Read full review
Mage was the easiest in terms of ease of implementation due to its no-code functionality. However, Mage doesn't have a whole ecosystem like AWS and slightly falls behind there.
Read full review
Return on Investment
  • Most of the ETL processes were automated, cutting down on human labor.
  • Apache Airflow's user interface (UI) was very informative and straightforward.
  • Since ETL processes were providing data via airflow, we were able to gain a deeper comprehension of the data at hand.
Read full review
  • Business Understanding.
  • Data Acquisition and Understanding.
  • Data Modeling and Evaluation.
Read full review
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