Download presentation
Presentation is loading. Please wait.
1
Presentation to SISAI Luxembourg, 12 June 2012
GSIM 0.4 and beyond Presentation to SISAI Luxembourg, 12 June 2012
2
What is GSIM? The Generic Statistical Information Model (GSIM) is a reference framework of information objects, which enables generic descriptions of the definition, management, and use of data and metadata throughout the statistical production process
3
GSBPM & GSIM: modular opproaches
GSBPM is a business process model GSIM models information on the process GSBPM Sub-process Input - Data - Parameters Output Transformed data Process metrics
4
GSIM 0.4 – Group Level Activity Production Information Conceptual
Describe each area Describe the relationships between each area Brief indication as to why we used this organisation scheme Indicate what you would use this level for?
5
Dissemination Program
GSIM 0.4 – Set Level Activity Production Conceptual Information Information Request Process Control Population Unit Dataset Acquisition Program Process Component Variable Product Useful for communicating with subject matter experts Statistical Program Rule Classification Service Dissemination Program
6
GSIM 0.4 – Object Level [Name] – for identifying and defining the individual information objects, and the relationships between them, used or produced in the statistical process
7
Example of detailed work
Process Statistical Activity GSIM Base Data Structures Data Sources Statistical Products [Name] – for identifying and defining the individual information objects, and the relationships between them, used or produced in the statistical process
8
Activity Production Information Conceptual Provision Agreement
Provision for formalisation of arrangements for data acquisition and dissemination Provision Agreement Process Step Definition Provider Production Activity Conceptual Information Methodology applies to processes in all areas Methodology Balanced support for all data acquisition channels Information Request Process Method Acquisition Program Dissemination Program Process management for all areas of activity Statistical Project Process Step Design Separation of Statistical, Acquisition, and Dissemination programs, with central role for Methodology Balanced support for multiple dissemination channels Statistical Program Process Control Process Step Execution Statistical projects access shared data Mapping of processes to support managed operations Rule Shared Data Resource, maintained corporately, for use by all statistical programs Data Resource Data Set Statistical Products Variable Population Units Concept Data Structure Cube Structure Unit Data Structure Basic infrastructure for critical base elements Value Domain Record Structures Classification All structures and relationships described in metadata to support automated processes
9
Activity Production Information Conceptual Provision Agreement
Provision for formalisation of arrangements for data acquisition and dissemination Provision Agreement Process Step Definition Provider Production Activity Conceptual Information Methodology applies to processes in all areas Methodology Balanced support for all data acquisition channels Information Request Process Method Acquisition Program Dissemination Program Process management for all areas of activity Statistical Project Process Step Design Separation of Statistical, Acquisition, and Dissemination programs, with central role for Methodology Balanced support for multiple dissemination channels Statistical Program Process Control Process Step Execution Statistical projects access shared data Mapping of processes to support managed operations Rule Shared Data Resource, maintained corporately, for use by all statistical programs Data Resource Data Set Statistical Products Variable Population Units Concept Data Structure Cube Structure Unit Data Structure Basic infrastructure for critical base elements Value Domain Record Structures Classification All structures and relationships described in metadata to support automated processes
10
Considerations for future work
The devil is in the detail Manage expectations Maintain the momentum Continue to involve the right expertise Communicate GSIM effectively The devil is in the detail Moving targets limit ability to map and test GSIM Managing expectations Maintaining the momentum when benefits not immediate Involving the right expertise
11
Detailed roadmap has been developed
Next steps for GSIM V1.0 Detailed roadmap has been developed Further model specification Use cases Governance and maintenance Communication
12
Supporting the move away from silos Common, agreed terminology
GSIM V1.0 will enable Supporting the move away from silos Common, agreed terminology Support for broad-based data capture Support for diverse dissemination channels Incorporation of processes Consistency with existing standards and approaches Improve communication between disciplines involved in statistics production users, producers and providers of official statistics Generate economies of scale reuse of information, methods and technology Enable modern ways of making statistics configurable, rule-based and modular Provide a basis for flexibility and innovation easy deployment of new statistical products adoption of new types of statistical data sources Supporting the move away from silos Data acquisition and management separated from Statistical activities Common, agreed terminology so we can share across agencies Support for broad-based Data Capture not just focussed on surveys Support for diverse Dissemination Channels so we can have impact and stay relevant Incorporates processes so we can automate and industrialise Consistent with existing standards and approaches DDI, SDMX, CORE, ISO 11179, Neuchatel
13
Feedback on GSIM 0.4 By 15 June 2012 to or
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.