

Qlik Talend Cloud and Azure Data Factory compete in the data integration category, focusing on improving data processing workflows. Based on feature comparisons, Qlik Talend Cloud has the edge due to its strong automation capabilities, though Azure Data Factory is favored for its integration within the Azure ecosystem.
Features: Qlik Talend Cloud is distinguished by its extensive connectors, real-time data integration, and data quality tools. Users benefit from scheduling and automation that boost efficiency. Azure Data Factory offers seamless Azure service integration, flexible ETL pipelines, and strong data transformation tools, supporting large-scale data ingestion with numerous connectors.
Room for Improvement: Qlik Talend Cloud users highlight a need for better technical support, more intuitive error handling, and memory efficiency improvements. Some also suggest simplifying complex installations. Azure Data Factory has limitations in non-Microsoft ecosystems, with a need for enhanced real-time data processing and better pricing transparency.
Ease of Deployment and Customer Service: Qlik Talend Cloud provides multiple deployment options, including on-premises and hybrid cloud. While customer service is praised for responsiveness, its effectiveness varies. Azure Data Factory excels in public cloud deployment with smooth integration into Azure services. Generally, it receives positive feedback on customer service, though more proactive support is desired.
Pricing and ROI: Qlik Talend Cloud uses a subscription model, offering long-term savings but with high licensing costs. ROI is achieved through time savings and reduced errors. Azure Data Factory's pay-as-you-go pricing is competitive, though users find cost prediction challenging. Its ROI is associated with lowered data integration expenses and improved efficiency.
Our stakeholders and clients have expressed satisfaction with Azure Data Factory's efficiency and cost-effectiveness.
It has helped us save a lot of time by automating repetitive data processes and reducing manual interventions.
We achieved around 20% to 30% time savings in the ETL process, reduced operational errors, and improved pipeline stability.
We actually achieved the first 18 months worth of work in the first six months.
The technical support from Microsoft is rated an eight out of ten.
The technical support is responsive and helpful
They are not slow on responding or very informative.
The support team is responsive when we raise issues, and they usually provide clear guidance or solutions.
I would rate the technical support from Talend Data Quality as an 8 or 9.
The customer support for Talend Data Integration is very good; whenever I raise a ticket in the customer portal, I immediately receive an email, and follow-up communication is prompt.
Azure Data Factory is highly scalable.
By using features like job parallelization and modular design, we can expand our data flows without having to rebuild everything.
Its scalability is good, as Qlik Talend Cloud can handle large amounts of data and grow as needed, especially in cloud environments.
The scalability of Talend Data Integration is good; if it weren't scalable, it wouldn't be reliable.
The solution has a high level of stability, roughly a nine out of ten.
We have not encountered many issues with remote engines, and the interfaces are properly developed.
Once the jobs are properly designed and deployed, they run reliably without major issues.
It was not as stable when we were using TAC and on-premise systems, but currently, with Qlik Talend Cloud version 8.3 or 8.1, it is stable.
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.
There is a problem with the integration with third-party solutions, particularly with SAP.
On the flip side, that is one of its amazing strengths, as you are not locked into a very rigid way of doing something.
Better cost and resource visibility would help teams optimize their workloads.
It would be great to have more ready-to-use connectors for modern cloud and SaaS platforms.
The pricing is cost-effective.
It is considered cost-effective.
My experience with Talend Data Integration's pricing, setup cost, and licensing is that it is a bit higher compared to other tools, making it not very affordable.
The license cost has increased significantly, leading many companies to seek more profitable options in the market.
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.
By automating daily data loading processes, we reduced manual effort by around three or four hours per day, which saved roughly 60 to 80 hours per month.
We perform profiling prior to data quality and post-data quality, and based on that, we determine how much it has improved to measure the efficiency of Talend Data Quality cleaning tools.
The feature that has made the biggest difference for me in Qlik Talend Cloud is the scheduling and automation, which helps me run ETL jobs automatically without manual work.
| Product | Mindshare (%) |
|---|---|
| Azure Data Factory | 2.8% |
| Qlik Talend Cloud | 2.4% |
| Other | 94.8% |

| Company Size | Count |
|---|---|
| Small Business | 31 |
| Midsize Enterprise | 20 |
| Large Enterprise | 57 |
| Company Size | Count |
|---|---|
| Small Business | 20 |
| Midsize Enterprise | 11 |
| Large Enterprise | 20 |
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.
Qlik Talend Cloud provides robust data integration tools tailored for efficient management of large volumes, offering real-time data access, Java integration, and custom code capabilities for developers.
Qlik Talend Cloud is known for its extensive connectivity options, enabling seamless integration across different platforms, such as S3, Redshift, Oracle, and SQL Server. The central repository facilitates consistent metadata access throughout organizations, enhancing collaboration. Despite its strengths in advanced monitoring, automation, and user-friendly drag-and-drop interfaces, users face challenges with installation stability, technical support, documentation inconsistencies, and complexities in learning. Performance concerns also include multitasking limitations and excessive memory usage. The platform's licensing costs can be prohibitive for smaller companies, while demands for improved data governance and intuitive code management continue. Its applications in healthcare data parsing, ETL task automation, and diverse data platform integration demonstrate its utility, although there's a constant demand for better scalability and efficient transformations.
What are the key features?In specialized industries like healthcare, users leverage Qlik Talend Cloud for data integration and transformation, aiding in compliance and analytics. Compatibility with cloud and on-premises systems ensures adaptability to complex data tasks, facilitating business application development. Organizations focus on enhanced data ingestion and quality checks for comprehensive solutions.
We monitor all Data Integration 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.