1 / 15

DATA QUALITY The general method

DATA QUALITY The general method. Data model. measure. Non-conform data. correct. Corrected data / improved IS. prevent. Corrected programs Exceptions management. MEASURE DATA QUALITY. ?. fact. ?. ?. schema. DB. Treatment. ?. ?. ?. ?. ?. Extraction system. Data

degarmo
Download Presentation

DATA QUALITY The general method

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. DATA QUALITYThe general method Data model measure Non-conform data correct Corrected data / improved IS prevent Corrected programs Exceptions management

  2. MEASURE DATA QUALITY ? fact ? ? schema DB Treatment ? ? ? ? ? Extraction system Data acquisition ? The data model is the central point for all actions

  3. model A model A MEASURE DATA QUALITY application A programs information system quality DB data data quality application B programs DB information system quality data data quality real world the organisation model (A+B+ functional links) organistion information system quality

  4. TO MEASURE DATA QUALITY

  5. TO MEASURE DATA QUALITY

  6. TO MEASURE DATA QUALITY

  7. DATA QUALITYThe general method Data model measure Non-conform data correct Corrected data / improved IS prevent Corrected programs Exceptions management

  8. TO CORRECT • For the data • Concept inadequacy • Fields segmentation and normalization • Fields value cleaning • orphan data detection • Occurrences deduplication • For the Information system • Data model and application improvements

  9. TO CORRECT

  10. TO PREVENT The deployment of the data quality process must allow : • To clean up the bottom of the river punctually • To dam up the arrival of new information flows of doubtful quality

  11. DATA QUALITYThe general method Data model measure Non-conform data correct Corrected data / improved IS prevent Corrected programs Exceptions management

  12. TO PREVENT • Objective :to (re)organize the data flows in order to guarantee a given quality level , so to minimize the corrective process. • Principle : data are products coming from a production line. For this reason, one should apply the quality control principles applied in the industry. • measure at different spots • validation referenced with external world measures • … • Involved the organization (management, administrative process) as well as technology • People and organisation resistance are important to consider

  13. TO PREVENT • Technical issue • Program correctionCorrection des programmes • Data dictionary consolidation (complete méta-data) • DB re-engineering • Organizational issue • Identification of the processes and data flows • Identification of the critical points and the responsabilities • Users training • Organizational restructuring : flow

  14. The data quality steps according to Gartner data profiling standar- disation de duplication cleaning enrichment follow up The added value of the proposed approach Rules definition Data merge Programs correction Exceptions management Data profiling Model evolution Data dictionary Reverse- engineering Concepts precision SYNTHESIS measure correct prevent « Orphan » data detection Logical Data extraction

  15. Data profiling Reverse- engineering To specify and complete the concepts To specify and complete the rules To correct the data To manage the data dictionary Data profiling Reverse- engineering To specify and complete the concepts To specify and complete the rules To correct the data To manage the data dictionary Reverse- engineering To specify and complete the concepts To specify and complete the rules To correct the programs To manage the exceptions Reverse- engineering To specify and complete the concepts To specify and complete the rules To correct the programs To manage the exceptions Synthesis measure correct prevent What needs to be done 1 2 3 4

More Related