1 / 12

Meeting the Future Demands of a Statistical Organization

Meeting the Future Demands of a Statistical Organization. Laurent Meister Senior Information Management Officer Statistical Information Management, STA Meeting on the Management of Statistical Information Systems Paris, France 23 - 25 April 2013. Financial Crisis – G20 Data Gaps Initiative.

lavi
Télécharger la présentation

Meeting the Future Demands of a Statistical Organization

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. Meeting the Future Demands of a Statistical Organization Laurent Meister Senior Information Management Officer Statistical Information Management, STA Meeting on the Management of Statistical Information Systems Paris, France 23 - 25 April 2013

  2. Financial Crisis – G20 Data Gaps Initiative • Data demands • Four-fold increase in data demands in 5 years • Increasing trend towards bilateral data • Staff resources • Remain constant

  3. Objectives and Goals • Meet the rapidly increasing demands for more data and metadata products • Develop a model that is scalable • Increase the timeliness of data and metadata delivery • Increase efficiency of data and metadata collection, processing  and content delivery • Reduce the incidence of data and metadata errors • Increase the quality and volume of data and metadata validation performed

  4. Scalable Operations • Meet the rapidly increasing demands for more data and metadata products • Standards • A Generic Production Process Model is possible • With supporting Technology, Metadata and Work Practice Standards • Specialization • Organizational specialization • Collection, Production, Content Delivery teams • “Standards, Process and Technology” team • Operational independence • Use of generic interfaces between operational teams

  5. Organizational specialization and Operational Independence Interface Interface Content Delivery Collection • Production Standards, Processes and Technology

  6. Efficient Operations • Increase the timeliness of data and metadata delivery • Workflow Automation • Automated Tasks • Reduce manual tasks to a minimum • Data exchanges • Data and Metadata Transformations • Quantitative validations • Report/Email Generation • Automated Decisions • Perform automated tests on data to route work (if needed) • Users should only be given tasks when their input is needed

  7. Generic Process Model

  8. Effective Operations • Reduce the incidence of data and metadata errors • Capable and Efficient validation technology • Business user-driven • Responsiveness to evolving business needs • Large portfolio of possible validation tests • Observation, Series, Cross-Series, Cross-Database, Metadata, Data-Metadata validation, Ad-hoc • Metadata integration • Contextual, Operational • Large volumes of diagnostics and diagnostic aggregates • Volume of diagnostics > 10x volume of data • Diagnostic aggregates useful for top-down and managerial perspectives

  9. Validation Lifecycle • Identify • Perform large variety of automated tests • Bring users to the issues • Diagnostic aggregates, Navigation through results, Visual media • Investigate and Decide • Have all the information related to issues on hand • Easy access to related data and metadata (possibly from multiple sources) • Act • Ad-hoc or procedure based content corrections • Comments related to contents or issues for future use

  10. Work in ProductionValidation Charts Cross-Database Comparisons Diagnostic Summary Detailed Diagnostics OLAP Analytics Metadata Integration

  11. Work under wayPrototype – End-To-End Process

  12. Work under wayWorkflow – End-User Interface

More Related