

SAS Data Management and erwin Data Intelligence compete in data management and analytics. Erwin seems to have an edge due to its cost-effective pricing and strong data lineage and collaboration features.
Features: SAS Data Management stands out for its reliable data quality management, integration with SAS applications, and user-friendly drag-and-drop environment. Erwin Data Intelligence is notable for its centralized single source of truth, advanced Smart Data Connectors, and automation scripts enhancing data mapping and lineage.
Room for Improvement: SAS Data Management needs to improve its licensing model and integration capabilities. Users report challenges with database connections and the installation process. Erwin Data Intelligence could enhance its automation and connectors, focus on UI improvements, SDK support, and performance in mapping and metadata integration.
Ease of Deployment and Customer Service: SAS Data Management accommodates on-premises and hybrid cloud setups with responsive customer service; however, support quality can be impacted in non-traditional environments. Erwin Data Intelligence offers flexible deployment models including public and private clouds. While customer support is diligent, technical complexity may require better documentation.
Pricing and ROI: SAS Data Management's high costs may deter smaller organizations despite its reliability offering substantial ROI, especially in sectors like pharmaceuticals. Erwin Data Intelligence presents competitive pricing with cost-effective licensing appealing to budget-conscious buyers, justifying costs with its comprehensive feature set.
Compared to competitor products like Collibra, erwin Data Intelligence is more cost-effective, providing a data catalog and data lineage views without the high costs associated with governance software.
Reliable data plus less human intervention and less error result in a strong return on investment.
Quest technical support is very good, as they provide not only a technical help desk but also a data automation team that creates and customizes smart connectors, offering a wealth of skilled support.
We often have to escalate and call multiple times to get a response to our cases.
The support for SAS in Brazil is not the best one, but the support in Sweden is really good, as they visit the company and work to solve the issues.
Regarding scalability, I would rate erwin Data Intelligence as an eight or nine for its ability to expand.
When we tried to connect erwin Data Intelligence to ERP on Oracle Cloud, specifically Oracle Fusion, we encountered many problems.
It is good for small and medium enterprises, but larger enterprises with huge amounts of metadata might face some issues.
From my perspective, I would rate the stability of erwin Data Intelligence as an eight or nine out of ten.
If you need to connect to Postgres or MongoDB, you need to request an ad hoc scanner for that specific purpose, and this ad hoc solution works only once and is not automated or scheduled.
The dashboard in erwin Data Intelligence is customizable, and you can easily create different views.
There is significant room for improvement, especially with regard to using a hybrid approach that involves both CAS and persistent storage.
SAS Data Management can be improved in terms of the learning curve.
From my experience, SAS Data Management is an expensive tool.
This feature is probably the most valuable because it allows for automated reverse engineering of lineage.
The mind maps clarify for the business the related business terms and the relation between the business terms and other technical terms and technical data products, and they are very effective.
SAS Data Management stands out because of its data standardization, transformation, and verification capabilities.
The best features I appreciate about SAS Data Management tool are that it's easy to create the flows and schedule data, and the tables are not too big, making it easy to control the ETL process, including user access which is also easy to manage in SAS.
SAS Data Management's best feature is first, data reliability because SAS Data Management is a very trusted platform.
| Product | Mindshare (%) |
|---|---|
| erwin Data Intelligence | 2.1% |
| SAS Data Management | 1.7% |
| Other | 96.2% |


| Company Size | Count |
|---|---|
| Small Business | 3 |
| Midsize Enterprise | 4 |
| Large Enterprise | 16 |
| Company Size | Count |
|---|---|
| Small Business | 8 |
| Midsize Enterprise | 2 |
| Large Enterprise | 8 |
erwin Data Intelligence is a comprehensive platform for metadata management, data cataloging, and governance. It enables organizations to gain insights, improve traceability, and streamline compliance through its advanced features.
Focusing on data lineage, metadata repositories, and seamless integrations, erwin Data Intelligence provides a unified perspective of enterprise data. Its robust capabilities include Smart Data Connectors for automation, efficient data visualization with mind maps, and adaptable metadata properties. While the platform integrates well into existing systems, areas for improvement include automation, SDK inconsistencies, and the need for better data quality assessments. Use cases highlight its importance in enhancing business data models and regulatory compliance.
What are the key features of erwin Data Intelligence?Industries implementing erwin Data Intelligence often focus on mapping data sources and integrating governance with ETL tools. This supports comprehensive data management strategies, enabling business teams to better locate, understand, and utilize data effectively. Its application in metadata management and automated reporting is particularly valuable in sectors requiring stringent regulatory compliance.
SAS Data Management provides data integration, governance, and robust reporting tools. It connects to diverse data sources, ensuring quality management and enabling data analysis for technical and non-technical users.
SAS Data Management features flexible data flow creation, scheduling, and ETL control. It enhances data integration and metadata management with tools that support data standardization. Users benefit from its importing and exporting capabilities, connecting to multiple sources. It facilitates improved data quality management and offers a flexible language for diverse needs. Data visualization capabilities further support decision-making across industries, automating reports and data warehouses.
What are the key features of SAS Data Management?SAS Data Management helps industries like finance integrate diverse data sources for analytics and reporting. It is used for tasks such as financial reporting, credit risk analysis, and data cleansing. Through user-driven automation, it aids in aligning data warehouses and generating insightful visual outputs, making it ideal for analyzing structured data from sources like Excel and CSV files.
We monitor all Data Governance 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.