

Azure Data Factory and Dremio are prominent tools in the data management and integration space. Azure Data Factory appears to have an edge due to its extensive feature set, integration capabilities, and cost-effective pricing model.
Features: Azure Data Factory offers a variety of connectors, a user-friendly drag-and-drop interface, and robust monitoring tools, making it ideal for orchestrating workflows and managing large data volumes. Dremio is appreciated for its ability to create views without impacting original datasets, offering flexibility in data management, and providing effective management of data lineage and provenance for compliance and governance.
Room for Improvement: Azure Data Factory could enhance its interface, real-time processing capabilities, support for connectors, and data governance. Users also seek improvements in error management and documentation. Dremio needs better performance for large, complex queries, improved integration with data cataloging, and enhanced connectivity options. Users desire better SQL capabilities and faster support response times.
Ease of Deployment and Customer Service: Azure Data Factory is known for its deployment ease in various cloud environments, with generally strong user support. Suggestions for better response times and expertise have been made. Dremio also offers straightforward deployment, especially in hybrid environments, but faces challenges in customer service, particularly in documentation and responsiveness.
Pricing and ROI: Azure Data Factory is seen as cost-effective, particularly with its pay-as-you-go model, although the pricing structure can be complex. Users report cost savings and operational efficiency. Dremio is competitively priced against platforms like Snowflake but has high licensing costs, which can be a barrier. Azure Data Factory generally provides better ROI due to its comprehensive features and pricing.
Our stakeholders and clients have expressed satisfaction with Azure Data Factory's efficiency and cost-effectiveness.
Dremio surely saves time, reduces costs, and all those things because we don't have to worry so much about the infrastructure to make the different tools communicate.
On a scale of one to ten, I would rate the technical support as nine.
The technical support from Microsoft is rated an eight out of ten.
The technical support is responsive and helpful
We have had to reach out for customer support many times, and they respond, so they are pretty supportive about some long-term issues.
Azure Data Factory is highly scalable.
I did not experience scalability issues.
Dremio's scalability can handle growing data and user demands easily.
Internally, if it's on Docker or Kubernetes, scalability will be built into the system.
The solution has a high level of stability, roughly a nine out of ten.
I have been using Azure Data Factory for a very long time, and I did not find too many issues.
I rate Dremio a nine in terms of stability.
The ability to handle the largest volumes of data is another concern; if I have to manage more than one terabyte of data every day, I am not comfortable dealing with Azure Data Factory and had to switch to Oracle Data Integrators (ODI) because it lacks performance features.
Incorporating more dedicated API sources to specific services like HubSpot CRM or Salesforce would be beneficial.
Sometimes, the compute fails to process data if there is a heavy load suddenly, and it doesn't scale up automatically.
Starburst comes with around 50 connectors now.
It should be easier to get Arctic or an open-source version of Arctic onto the software version so that development teams can experiment with it.
I see that many times the new versions of Dremio have not fixed old bugs, and in some new versions, old problems that were previously fixed come back again, so I think the upgrade part could use improvement.
The pricing is cost-effective.
It is considered cost-effective.
It connects to different sources out-of-the-box, making integration much easier.
The platform excels in handling major datasets, particularly when working with Power BI for reporting purposes.
Regarding the integration feature in Azure Data Factory, the integration part is excellent; we have major source connectors, so we can integrate the data from different data sources and also perform basic transformation while transforming, which is a great feature in Azure Data Factory.
Having everything under one system and an easier-to-work-with interface, along with having API integrations, adds significant value to working with Dremio.
Dremio has positively impacted my organization as nowadays we are connected to multiple databases from multiple environments, multiple APIs, and applications, and Dremio organizes everything in an amazing way for me.
You just get the source, connect the data, get visualization, get connected, and do whatever you want.
| Product | Mindshare (%) |
|---|---|
| Azure Data Factory | 5.3% |
| Dremio | 4.8% |
| Other | 89.9% |


| Company Size | Count |
|---|---|
| Small Business | 31 |
| Midsize Enterprise | 21 |
| Large Enterprise | 63 |
| Company Size | Count |
|---|---|
| Small Business | 2 |
| Midsize Enterprise | 5 |
| Large Enterprise | 5 |
Azure Data Factory efficiently manages and integrates data from various sources, enabling seamless movement and transformation across platforms. Its valuable features include seamless integration with Azure services, handling large data volumes, flexible transformation, user-friendly interface, extensive connectors, and scalability. Users have experienced improved team performance, workflow simplification, enhanced collaboration, streamlined processes, and boosted productivity.
Dremio offers a comprehensive platform for data warehousing and data engineering, integrating seamlessly with data storage systems like Amazon S3 and Azure. Its main features include scalability, query federation, and data reflection.
Dremio's core strength lies in its ability to function as a robust data lake query engine and data warehousing solution. It facilitates the creation of complex queries with ease, thanks to its support for Apache Airflow and query federation across endpoints. Despite challenges with Delta connector support, complex query execution, and expensive licensing, users find it valuable for managing ad-hoc queries and financial data analytics. The platform aids in SQL table management and BI traffic visualization while reducing storage costs and resolving storage conflicts typical in traditional data warehouses.
What are Dremio's most valuable features?Dremio is primarily implemented in industries requiring extensive data engineering and analytics, including finance and technology. Companies use it for constructing data frameworks, efficiently processing financial analytics, and visualizing BI traffic. It acts as a viable alternative to AWS Glue and Apache Hive, integrating seamlessly with multiple databases, including Oracle and MySQL, offering robust solutions for data-driven strategies. Despite some challenges, its ability to reduce data storage costs and manage complex queries makes it a favorable choice among enterprise users.
We monitor all Cloud Data Warehouse reviews to prevent fraudulent reviews and keep review quality high. We do not post reviews by company employees or direct competitors. We validate each review for authenticity via cross-reference with LinkedIn, and personal follow-up with the reviewer when necessary.