What is Azure Data Factory?
Azure Data Factory is Azure's cloud ETL service for scale-out serverless data integration and data transformation. It offers a code-free UI for intuitive authoring and single-pane-of-glass monitoring and management. Data Factory provides a data integration and transformation layer that works across your digital transformation initiatives.
Company Details
Need Assistance?
We're here to help you with understanding our reports and the data inside to help you make decisions.
Get AssistanceAzure Data Factory Ratings
Real user data aggregated to summarize the product performance and customer experience.
Download the entire Product Scorecard
to access more information on Azure Data Factory.
Product scores listed below represent current data. This may be different from data contained in reports and awards, which express data as of their publication date.
87 Likeliness to Recommend
98 Plan to Renew
80 Satisfaction of Cost Relative to Value
Emotional Footprint Overview
Product scores listed below represent current data. This may be different from data contained in reports and awards, which express data as of their publication date.
+90 Net Emotional Footprint
The emotional sentiment held by end users of the software based on their experience with the vendor. Responses are captured on an eight-point scale.
How much do users love Azure Data Factory?
Pros
- Trustworthy
- Respectful
- Efficient Service
- Fair
How to read the Emotional Footprint
The Net Emotional Footprint measures high-level user sentiment towards particular product offerings. It aggregates emotional response ratings for various dimensions of the vendor-client relationship and product effectiveness, creating a powerful indicator of overall user feeling toward the vendor and product.
While purchasing decisions shouldn't be based on emotion, it's valuable to know what kind of emotional response the vendor you're considering elicits from their users.
Footprint
Negative
Neutral
Positive
Feature Ratings
Data Security
Administrative Features
Batch Integration
Real Time Integration
Exception Handling and Notifications
iPaaS
Synchronization and Replication
Multi Channel Support
Data Virtualization
API Management and Orchestration
Metadata Management
Vendor Capability Ratings
Quality of Features
Breadth of Features
Business Value Created
Ease of Data Integration
Ease of Implementation
Availability and Quality of Training
Ease of IT Administration
Usability and Intuitiveness
Vendor Support
Ease of Customization
Product Strategy and Rate of Improvement
Azure Data Factory Reviews
Diana U.
- Role: Operations
- Industry: Healthcare
- Involvement: End User of Application
Submitted Mar 2025
Powerful Data Integration Tool
Likeliness to Recommend
What differentiates Azure Data Factory from other similar products?
Microsoft Azure Data Factory (ADF) differs from other data integration and ETL solutions by its cloud-native, end-to-end managed lifecycle and deep integration with Azure. The key differences are: Seamless Azure Integration – ADF natively integrates with Azure services like Synapse Analytics, Data Lake, and Machine Learning and offers an end-to-end data workflow. Hybrid & Multi-Cloud Support – Unlike the competition, ADF has native self-hosted integration runtimes to support on-premises, multi-cloud, and hybrid data movement.
What is your favorite aspect of this product?
My favorite aspect of Azure Data Factory is the way it works perfectly with the Azure ecosystem to provide seamless data movement and transformation between services like Synapse Analytics, Data Lake, and Machine Learning. Its support for multi-cloud and hybrid makes it easy for organizations to blend on-premises, cloud, and third-party data sources seamlessly. The low-code, adaptable interface with elastic performance also makes it convenient for both technical and non-technical users, while its effective data workflows at any scale make it accessible to anyone.
What do you dislike most about this product?
One limitation of Azure Data Factory is its lack of native real-time data processing capabilities. While it excels at batch data transfer, it lacks native support for event-driven streaming, and therefore additional services like Azure Stream Analytics are required for real-time usage. Debugging and error handling can further be augmented with AI-driven troubleshooting and auto-suggested error resolution. Version control and rollbacks must also be enhanced to make it simpler to manage changes to pipelines.
What recommendations would you give to someone considering this product?
When considering Azure Data Factory (ADF), leverage its seamless Azure integration for optimal performance. If you need real-time streaming, integrate Azure Stream Analytics since ADF is batch-oriented. Monitor costs carefully to optimize pipeline execution expenses. Improve debugging with detailed logging and use Git for version control since ADF’s native versioning is limited. For hybrid or multi-cloud scenarios, utilize self-hosted integration runtimes. These strategies ensure efficient, cost-effective, and scalable data workflows.
Pros
- Helps Innovate
- Continually Improving Product
- Reliable
- Enables Productivity
Evans F.
- Role: Information Technology
- Industry: Shipping
- Involvement: IT Development, Integration, and Administration
Submitted Feb 2025
Powerful data integration tool!
Likeliness to Recommend
What differentiates Azure Data Factory from other similar products?
1. Seamless Integration with Azure Ecosystem: Deep integration with other Azure services like Azure Synapse, Azure Machine Learning, and Azure Blob Storage, making it ideal for organizations already using the Azure platform. 2. Hybrid Data Integration: Azure Data Factory supports both cloud-based and on-premises data integration, offering flexibility across diverse environments. 3. Advanced Orchestration and Automation: Powerful orchestration features allow for complex, automated data workflows with custom triggers and scheduling capabilities.
What is your favorite aspect of this product?
My favorite aspect of Microsoft Azure Data Factory is its seamless integration with the Azure ecosystem, which allows for smooth workflows and enhanced performance when working with other Azure services like Synapse and Machine Learning.
What do you dislike most about this product?
What I dislike most about Microsoft Azure Data Factory is its complex user interface, which can be overwhelming for new users and may require a steep learning curve to navigate effectively.
What recommendations would you give to someone considering this product?
1. Familiarize yourself with Azure services to maximize integration and performance. 2. Start with simple pipelines to get comfortable with the interface before scaling to more complex workflows. 3. Ensure you have the right infrastructure in place for smooth hybrid data integration across on-premises and cloud environments.
Pros
- Continually Improving Product
- Trustworthy
- Inspires Innovation
- Saves Time
Isioma O.
- Role: Information Technology
- Industry: Engineering
- Involvement: IT Development, Integration, and Administration
Submitted Jan 2025
Powerful, Flexible, and Scalable
Likeliness to Recommend
What differentiates Azure Data Factory from other similar products?
Wide Range of Data Connectors: ADF supports a large variety of data sources, including both on-premises and cloud-based systems. It provides more than 90 built-in connectors, making it easier to connect and manage diverse data environments compared to competitors. Data Flow Design and Monitoring: The data flow in ADF is intuitive, offering a no-code visual interface that allows users to design complex ETL (Extract, Transform, Load) workflows without having to write extensive code. Additionally, it provides monitoring and troubleshooting features, making it easier to track performance and identify issues.
What is your favorite aspect of this product?
My favorite aspect of Microsoft Azure Data Factory is its scalability and flexibility. The ability to seamlessly integrate with a wide variety of data sources (both on-premises and in the cloud) while offering serverless architecture means that businesses can easily scale their data pipelines without worrying about infrastructure management. It’s particularly valuable for companies that need to handle complex, large-scale data workflows, as it provides a smooth, cost-effective solution for transforming and moving data across different systems.
What do you dislike most about this product?
One of the main drawbacks of Microsoft Azure Data Factory is its complexity for beginners. While it offers robust capabilities, the learning curve can be steep for users who are new to data integration tools or the Azure ecosystem. The interface, while powerful, can be overwhelming, especially for users who are not familiar with concepts like data pipelines, linked services, and activities. Additionally, troubleshooting and debugging errors in complex data workflows can sometimes be challenging without in-depth knowledge of the platform’s intricacies.
What recommendations would you give to someone considering this product?
Familiarize Yourself with Azure Ecosystem: Before diving into ADF, it's important to have a good understanding of Azure services in general, especially related products like Azure Storage, Azure Databricks, and Azure SQL. ADF integrates seamlessly with these services, so knowing how they work will make your experience smoother. Take Advantage of Tutorials and Documentation: Microsoft provides a comprehensive range of tutorials and documentation, which can help you get up to speed faster. Leverage these resources to learn how to design data pipelines and understand key concepts like linked services, datasets, and triggers. Start Small.
Pros
- Reliable
- Trustworthy
- Unique Features
- Acts with Integrity