IBM InfoSphere Information Server is a data integration platform used to understand, cleanse, monitor and transform data. The offerings provide massively parallel processing (MPP) capabilities.
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Informatica Cloud Data Quality
Score 6.8 out of 10
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The vendor states that Informatica Data Quality empowers companies to take a holistic approach to managing data quality across the entire organization, and that with Informatica Data Quality, users are able to ensure the success of data-driven digital transformation initiatives and projects across users, types, and scale, while also automating mission-critical tasks.
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SAP Data Quality Management
Score 8.9 out of 10
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SAP Business Objects Data Quality Management embeds data quality functionality into SAP applications.
Informatica Data Quality has a wide range of cleansing features, that are detailed, professional, and accurate in scaling down the required database. Further, Informatica Data Quality ensures there is proper collaboration, and this fosters businesses to have the freedom of …
IDQ was a best fit for our data quality management, but we didn’t have a lot of Informatica services to integrate with it hence we implemented SDQ instead.
Features
IBM InfoSphere Information Server
Informatica Cloud Data Quality
SAP Data Quality Management
Data Source Connection
Comparison of Data Source Connection features of Product A and Product B
IBM InfoSphere Information Server
8.7
4 Ratings
5% above category average
Informatica Cloud Data Quality
-
Ratings
SAP Data Quality Management
-
Ratings
Connect to traditional data sources
9.94 Ratings
00 Ratings
00 Ratings
Connecto to Big Data and NoSQL
7.54 Ratings
00 Ratings
00 Ratings
Data Transformations
Comparison of Data Transformations features of Product A and Product B
IBM InfoSphere Information Server
9.6
4 Ratings
17% above category average
Informatica Cloud Data Quality
-
Ratings
SAP Data Quality Management
-
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Simple transformations
10.04 Ratings
00 Ratings
00 Ratings
Complex transformations
9.24 Ratings
00 Ratings
00 Ratings
Data Modeling
Comparison of Data Modeling features of Product A and Product B
IBM InfoSphere Information Server
8.0
4 Ratings
2% above category average
Informatica Cloud Data Quality
-
Ratings
SAP Data Quality Management
-
Ratings
Data model creation
8.72 Ratings
00 Ratings
00 Ratings
Metadata management
7.74 Ratings
00 Ratings
00 Ratings
Business rules and workflow
8.44 Ratings
00 Ratings
00 Ratings
Collaboration
8.04 Ratings
00 Ratings
00 Ratings
Testing and debugging
7.14 Ratings
00 Ratings
00 Ratings
Data Governance
Comparison of Data Governance features of Product A and Product B
IBM InfoSphere Information Server
9.7
4 Ratings
20% above category average
Informatica Cloud Data Quality
-
Ratings
SAP Data Quality Management
-
Ratings
Integration with data quality tools
10.04 Ratings
00 Ratings
00 Ratings
Integration with MDM tools
9.53 Ratings
00 Ratings
00 Ratings
Data Quality
Comparison of Data Quality features of Product A and Product B
Information Server is extremely useful to replace manual developments that require a lot of coding effort. It significantly increases the productivity of the initial development and the future maintenance of the processes since it has a visual development environment with self-documentation.
For effective data collaboration, systematic verification of customer information, and address, among others, Informatica Data Quality is a fruitful application to consider. Besides, Informatica Data Quality controls quality through a cleansing process, giving the company a professional outline of candid data profiling and reputable analytics. Finally, Informatica Data Quality allows the simplistic navigation of content, with a dashboard that supports predictability.
When reporting, we use accurate data with no duplications since they are addressed by SAP DQM, we get the right target audience by analyzing marketing data, and also helps us to understand the current situation of our firm by comparing metrics.
The matching algorithms in IDQ are very powerful if you understand the different types that they offer (e.g., Hamming Distance, Jaro, Bigram, etc..). We had to play around with it to see which best suit our own needs of identifying and eliminating duplicate customers. Setting up the whole process (e.g., creating the KeyGenerator Transformation, setting up the matching threshold, etc..) can be somewhat time consuming and a challenge if you don't first standardize your data.
The integration with PowerCenter is great if you have both. You can either import your mappings directly to PowerCenter or to an XML file. The only downside is that some of the transformations are unique to IDQ, so you are not really able to edit them once in PowerCenter.
The standardizer transformation was key in helping us standardize our customer data (e.g., names, addresses, etc..). It was helpful due to having create a reference table containing the standardized value and the associated unstandardized values. What was great was that if you used Informatica Analyst, a business analyst could login and correct any of the values.
As pointed out earlier, due all the robust features IDQ has, our use f the product is successful and stable. IDQ is being used in multiple sources (from CRM application and in batch mode). As this is an iterative process, we are looking to improve our system efficiency using IDQ.
IDQ is used by a department at my organisation to ensure and enhance the data quality. The usage was started with address standardization and now it had been brought to altogether a next level of quality check where it fixes duplicates, junk characters, standardize the names, streets, product descriptions. In the past we had issues mainly with duplicate customers and products and this were affecting the sales projection and estimates.
SAP Data Quality supports the integration with significant sources, but security and accuracy are maintained and enhanced. Besides, SAP Data Quality eliminates the data duplicates, a solution that saves on space, and improves the loading power of any system. More so, SAP Data Quality plays a vital role in data monitoring, which concentrates on authentic processes and efficient system management.