jump to navigation

Dots On A Map Improve Data Quality April 18, 2009

Posted by Peter Benza in Data Accuracy, Data Hygiene, Data Integrity, Data Management, Data Mining, Data Profiling, Data Quality, Data Standardization, Data Stewardship, Data Types, Data Visualization, Linkedin.
Tags: , , ,
add a comment

This was a presentation I originally prepared back in 2005, but is probably even more applicable in 2009 given the impact using a GIS tool can have on visualizing data quality – customer addresses on  a map! The next time you conduct a customer “data” assessment – try this!

Advertisements

Data Quality and Master Data Initiatives March 31, 2009

Posted by Peter Benza in Data Accuracy, Data Integration, Data Integrity, Data Profiling, Data Quality, Data Sources.
Tags: , , , , , ,
1 comment so far

Initiatives related to master data continues to be on the radar of major corporations especially as it relates to data quality and other mission critical business processes across the enterprise that impact or relies on the quality of data being complete, accurate, and up-to-date.

What other MDM initiatives (besides Data Quality) are also paramount as part of centralizing master data for single customer view purposes.

Lets start a list:

1.) Data Profiling

2.) Data Integration

3.) Match Accuracy

4.) MDM Tools

5.) ???

DataFlux positioned in leaders quadrant for data quality according to Gartner January 17, 2008

Posted by Peter Benza in Data Assessment, Data Consolidation, Data Governance, Data Hygiene, Data Integration, Data Integrity, Data Management, Data Profiling, Data Quality, Data Standardization, Data Templates, Data Tools.
Tags: , , ,
add a comment

Compliance, Data Governance, Master Data Management, Data Profiling

http://www.dataflux.com/

TDWI’s class outline on data quality assessment January 13, 2008

Posted by Peter Benza in Data Aggregates, Data Assessment, Data Consistancy, Data Profiling.
Tags: , , ,
add a comment

http://www.tdwi.org/education/conferences/lasvegas2008/sessions2.aspx?session_code=4

This course gives comprehensive treatment to the process and practical challenges of data quality assessment. It starts with the systematic treatment of various data quality rules, and proceeds to the results analysis and building of an aggregated data quality scorecard. Special attention is given to the architecture and functionality of the data quality metadata warehouse.

What types of common data problems are found in your master data? January 13, 2008

Posted by Peter Benza in Data Analysis, Data Assessment, Data Governance, Data Hygiene, Data Metrics, Data Profiling, Data Quality.
Tags: , ,
3 comments

Master Data exists across your entire enterprise.  Companies today are assessing what is the best way to consolidate all their information assets (data sources) into a “single customer view”.

What types of data problems exist in your organization today or the future with the move towards managing data at the enterprise level?

[Be first to answer this question]