DataStage vs Qlik Talend Data Integration

Last Updated:

Our analysts compared DataStage vs Qlik Talend Data Integration based on data from our 400+ point analysis of ETL Tools, user reviews and our own crowdsourced data from our free software selection platform.

DataStage Software Tool
Qlik Talend Data Integration Software Tool

Product Basics

DataStage assists businesses with data integration through automated extraction, transformation, and loading (ETL) processes. It excels in handling high data volumes from diverse sources, making it ideal for organizations managing complex data landscapes. Key benefits include improved data quality, streamlined analytics, and enhanced decision-making. Popular features involve visual job design, pre-built transformations, and parallel processing capabilities. User experiences within the ETL context praise DataStage's reliability, scalability, and robust job scheduling functionalities. However, its licensing model based on named user seats or processing power can be costlier compared to subscription-based alternatives. Ultimately, DataStage shines for businesses prioritizing robust ETL capabilities and data volume scalability.

Pros
  • Visual job design
  • Scalable performance
  • Robust data handling
  • Reliable data integration
  • Strong job scheduling
Cons
  • Complex to learn
  • Costly licensing model
  • Limited cloud integration
  • Potential performance issues
  • Lacks automation features
read more...
Qlik Talend Data Integration empowers organizations to unify, govern, and integrate data from diverse sources. It shines for businesses grappling with data fragmentation and seeking to establish a trusted data foundation for analytics, AI, and informed decision-making. Key benefits include streamlined data pipelines, automated data quality checks, and real-time data synchronization. Notably, its visual drag-and-drop interface fosters ease of use, while pre-built connectors and code-free transformations accelerate development. Compared to similar tools, user experiences highlight Talend's scalability, flexibility, and robust data governance capabilities. While pricing varies based on specific needs and deployment options, expect a tiered subscription model with per-user or per-month charges.
read more...
$1.75/Capacity Unit-Hour (CUH)
Get a free price quote
Tailored to your specific needs
$100 Monthly
Get a free price quote
Tailored to your specific needs
Small 
i
Medium 
i
Large 
i
Small 
i
Medium 
i
Large 
i
Windows
Mac
Linux
Android
Chromebook
Windows
Mac
Linux
Android
Chromebook
Cloud
On-Premise
Mobile
Cloud
On-Premise
Mobile

Product Assistance

Documentation
In Person
Live Online
Videos
Webinars
Documentation
In Person
Live Online
Videos
Webinars
Email
Phone
Chat
FAQ
Forum
Knowledge Base
24/7 Live Support
Email
Phone
Chat
FAQ
Forum
Knowledge Base
24/7 Live Support

Product Insights

  • Enhanced Data Integrity: Streamlines data cleansing, transformation, and validation, ensuring accuracy and consistency.
  • Faster Insights: Simplifies data preparation for analytics and reporting, accelerating time-to-value.
  • Automated Data Workflows: Automates repetitive ETL tasks, freeing up resources for higher-value activities.
  • Handles High Data Volumes: Efficiently processes large and complex datasets, enabling scalability for future growth.
  • Connects Diverse Data Sources: Integrates data from various sources, including relational databases, flat files, and cloud applications.
  • Improved Data Lineage: Provides clear traceability of data flow, ensuring compliance and data security.
  • Adapts to Evolving Needs: Offers a flexible platform to adapt to changing data requirements and business needs.
read more...
  • Unified Data Foundation: Break down data silos and seamlessly integrate information from diverse sources like cloud apps, databases, and legacy systems, creating a single, trusted source for analysis and decision-making.
  • Enhanced Data Quality: Ensure data accuracy and consistency through automated cleansing, transformation, and validation processes, minimizing errors and boosting confidence in analytics.
  • Streamlined Data Pipelines: Design and automate dataflows with a drag-and-drop interface and pre-built connectors, accelerating data delivery and reducing manual tasks.
  • Real-time Insights: Gain access to up-to-date data through real-time data synchronization and event-driven triggers, enabling faster response times and agile decision-making.
  • Improved Data Governance: Implement robust data governance policies and access controls to ensure data security, compliance, and lineage tracking.
  • Increased Agility and Scalability: Respond quickly to changing business needs with a highly scalable platform that can handle growing data volumes and evolving data requirements.
  • Enhanced Collaboration: Foster collaboration across teams by providing a unified view of data and facilitating data sharing with intuitive dashboards and reports.
  • Reduced Costs and Improved Efficiency: Optimize data management processes, eliminate data silos, and reduce manual effort, leading to significant cost savings and improved operational efficiency.
  • Simplified Data Integration: Reduce the complexity of data integration with a user-friendly interface, code-free options, and pre-built components, making data accessible to users of all technical skill levels.
  • Data-Driven Decisions: Empower all levels of the organization to make informed decisions based on accurate, reliable, and readily available data, leading to improved business outcomes.
read more...
  • Visual Job Design: Drag-and-drop interface for creating and managing ETL workflows.
  • Pre-Built Transformations: Library of common data transformations to simplify complex tasks.
  • Parallel Processing: Distributes data processing across multiple servers for faster performance.
  • Data Quality Tools: Built-in capabilities to cleanse, validate, and profile data.
  • Metadata Management: Centralized repository for managing data definitions and lineage.
  • Scalability: Handles increasing data volumes and complexity efficiently.
  • Security: Protects sensitive data with encryption and access controls.
  • Integration with Other Tools: Interoperability with various data sources, targets, and BI tools.
  • Cloud Deployment: Available as a cloud-based solution for flexibility and scalability.
read more...
  • Visual Drag-and-Drop Interface: Design and manage data pipelines with a user-friendly interface that requires minimal coding, making data accessible to users of all skill levels.
  • Pre-built Connectors: Easily connect to hundreds of data sources, including cloud applications, databases, legacy systems, and APIs, with readily available connectors.
  • Code-Free Transformations: Perform data cleansing, filtering, and manipulation through intuitive wizards and pre-built components, avoiding complex coding and accelerating development.
  • Data Quality Management: Ensure data accuracy and consistency with automated profiling, cleansing, validation, and enrichment tools, promoting trust in downstream analytics.
  • Real-time Data Synchronization: Access and synchronize data in real-time with event-driven triggers and continuous data flows, enabling immediate insights and agile decision-making.
  • Data Catalog and Lineage Tracking: Maintain a comprehensive catalog of data assets and track data lineage across transformations, fostering data transparency and governance.
  • Job Scheduling and Orchestration: Automate data pipelines through scheduling and orchestration capabilities, including dependencies and error handling, ensuring smooth data delivery.
  • Data Profiling and Monitoring: Analyze data patterns and monitor job performance with robust data profiling and monitoring tools, facilitating informed decision-making and proactive issue resolution.
  • Scalable Architecture: Handle growing data volumes and complex data pipelines with a scalable architecture that supports cloud, on-premises, and hybrid deployments.
  • Data Masking and Security: Implement data security measures, including data masking and access controls, to protect sensitive information and comply with regulations.
  • Application and API Integration: Integrate data with applications and APIs to streamline workflows and automate data exchange, fostering better decision-making within specific business processes.
  • Machine Learning and Artificial Intelligence Integration: Leverage machine learning and AI capabilities within data pipelines for tasks like anomaly detection and data enrichment, driving deeper insights and automation.
read more...

Product Ranking

#22

among all
ETL Tools

#42

among all
ETL Tools

Find out who the leaders are

Analyst Rating Summary

91
87
97
84
97
92
70
88
Show More Show More
Metadata Management
Performance and Scalability
Platform Capabilities
Platform Security
Data Delivery
Metadata Management
Performance and Scalability
Platform Capabilities
Workflow Management
Data Quality

Analyst Ratings for Functional Requirements Customize This Data Customize This Data

DataStage
Qlik Talend Data Integration
+ Add Product + Add Product
Data Delivery Data Quality Data Sources And Targets Connectivity Data Transformation Metadata Management Platform Capabilities Workflow Management 97 97 70 94 100 100 96 84 92 88 71 100 100 93 0 25 50 75 100
90%
10%
0%
80%
0%
20%
92%
8%
0%
85%
8%
7%
68%
0%
32%
89%
0%
11%
92%
4%
4%
46%
42%
12%
100%
0%
0%
100%
0%
0%
100%
0%
0%
100%
0%
0%
90%
0%
10%
80%
10%
10%

Analyst Ratings for Technical Requirements Customize This Data Customize This Data

100%
0%
0%
100%
0%
0%
100%
0%
0%
91%
0%
9%

User Sentiment Summary

Great User Sentiment 208 reviews
Great User Sentiment 385 reviews
85%
of users recommend this product

DataStage has a 'great' User Satisfaction Rating of 85% when considering 208 user reviews from 3 recognized software review sites.

87%
of users recommend this product

Qlik Talend Data Integration has a 'great' User Satisfaction Rating of 87% when considering 385 user reviews from 3 recognized software review sites.

4.0 (69)
4.3 (109)
n/a
4.4 (181)
4.4 (104)
4.4 (95)
4.2 (35)
n/a

Synopsis of User Ratings and Reviews

Efficient Handling of Large Datasets: Parallel processing capabilities enable DataStage to distribute tasks across multiple servers, significantly speeding up the processing of large datasets.
Robust Error Handling and Logging: Users appreciate the built-in error handling mechanisms and logging features for identifying and troubleshooting issues effectively.
Data Quality Tools and Lineage Tracking: DataStage offers a range of data quality tools and transformers, along with staging tables and lineage tracking, to ensure data consistency and traceability.
Flexible Scheduling and Monitoring: Users find the Job Conductor's flexibility in scheduling jobs, as well as the real-time monitoring dashboards and email alerts, to be valuable for managing ETL workflows.
Extensive Connectivity Options: The ability to seamlessly integrate with various databases, cloud platforms, and enterprise applications through built-in and third-party adapters is a key advantage for many users.
Show more
Ease of Use: Drag-and-drop interface and pre-built connectors make data integration accessible even for non-technical users.
Faster Data Delivery: Streamlined pipelines and automated transformations accelerate data integration processes.
Improved Data Quality: Built-in cleansing and validation tools ensure data accuracy and consistency.
Scalability and Flexibility: Handles growing data volumes and adapts to diverse data integration needs.
Strong Data Governance: Robust security features and data lineage tracking promote data privacy and compliance.
Show more
Steep Learning Curve: Users often cite the complex interface and extensive features as having a steep learning curve, requiring dedicated training and experience to master.
Debugging Challenges: Troubleshooting errors in complex DataStage jobs can be time-consuming, as the debugging tools can be limited and intricate to navigate.
Potential Performance Issues: While parallel processing is a strength, inefficient job design or resource constraints can lead to performance bottlenecks, requiring careful optimization.
Licensing Costs: The licensing model can be seen as expensive, especially for large-scale deployments or cloud-based environments.
Limited Cloud Integration: While connectivity options exist, native integration with cloud platforms and services could be more seamless, as some users find it challenging to leverage cloud resources effectively within DataStage.
Show more
Learning Curve for Advanced Features: Mastering complex transformations and customizations can require significant effort.
Performance with Large Datasets: Processing and optimizing very large datasets can be resource-intensive.
Limited Code-Free Customization: Some advanced data manipulations may necessitate manual coding for complete flexibility.
Pricing Complexity: Understanding the tiered pricing structure and potential hidden costs can be challenging.
Smaller Community Support: The user community is smaller compared to some competitors, potentially limiting available resources and peer support.
Show more

User opinions on DataStage paint a contrasting picture. On the one hand, it earns praise for its sheer power and versatility. Its parallel processing muscles tackle massive datasets with ease, while its robust error handling and data quality tools keep pipelines flowing smoothly. Integration with diverse data sources, from legacy databases to cloud platforms, is another major plus, making it a one-stop shop for complex ETL needs. These strengths are especially valuable for large enterprises with intricate data landscapes. However, DataStage's complexity can be a double-edged sword. Its feature-rich interface and steep learning curve can intimidate newcomers, and troubleshooting intricate jobs can be a puzzle. Users also point to occasional performance hiccups, highlighting the need for careful optimization under heavy workloads. Additionally, while cloud connectivity exists, some find it less seamless compared to native cloud-based ETL tools, which might not be ideal for organizations prioritizing cloud agility. When compared to competitors, DataStage shines in its scalability and feature depth. For handling massive data volumes and complex transformations, it stands out. However, for smaller-scale needs or organizations prioritizing ease of use and native cloud integration, lighter-weight ETL options might be more appealing. Ultimately, the choice boils down to individual priorities and project complexity. DataStage remains a powerful beast, but acknowledging its learning curve and potential cloud limitations is crucial for a balanced evaluation.

Show more

Reviewing user experiences from the past year for Qlik Talend Data Integration paints a mixed picture. Many users praise its user-friendly interface, pre-built connectors, and streamlined data pipelines, making it accessible even for non-technical professionals. This ease of use, coupled with faster data delivery and improved data quality through automated cleansing, is a major draw for businesses seeking to break down data silos and gain quicker insights. However, some users highlight limitations that can be dealbreakers for complex data integration needs. Mastering advanced features and customizations can require a steep learning curve, and performance with exceptionally large datasets may necessitate optimization and resource allocation. Additionally, while code-free options are extensive, some advanced transformations may require manual coding for complete flexibility. When compared to similar products, Qlik Talend shines in its visual drag-and-drop interface and robust data governance capabilities. Users also appreciate its strong scalability and flexibility, making it adaptable to diverse data integration needs. However, some find its pricing structure complex and its community support smaller compared to competitors. Ultimately, the decision to choose Qlik Talend Data Integration hinges on individual needs and priorities. For businesses seeking a user-friendly and efficient solution for basic to moderate data integration tasks, it's a strong contender. However, those with complex data landscapes and specialized requirements may need to weigh its strengths and limitations against other options before making a final call.

Show more

Screenshots

Top Alternatives in ETL Tools


AWS Glue

Azure Data Factory

Cloud Data Fusion

Dataflow

Fivetran

Hevo

IDMC

Informatica PowerCenter

InfoSphere Information Server

Integrate.io

Oracle Data Integrator

Pentaho

Qlik Talend Data Integration

SAP Data Services

SAS Data Management

Skyvia

SQL Server

SQL Server Integration Services

Talend

TIBCO Cloud Integration

WE DISTILL IT INTO REAL REQUIREMENTS, COMPARISON REPORTS, PRICE GUIDES and more...

Compare products
Comparison Report
Just drag this link to the bookmark bar.
?
Table settings