GSBPM and Data Life Cycle

Slides:



Advertisements
Similar presentations
“Mapping the GSBPM on a SDW architecture”
Advertisements

APPLIED GSBPM IN GSO by Ha Do Statistical Standard Methodology and ITC Department General Statistic Office Vietnam 1 General statistic office Vietnam.
United Nations Economic Commission for Europe Statistical Division Exploring the relationship between DDI, SDMX and the Generic Statistical Business Process.
1 Business Exchange Structures Concepts.
Producing and managing metadata Workshop on Writing Metadata for Development Indicators Lusaka, Zambia 30 July – 1 August 2012 Writing Metadata for Development.
United Nations Economic Commission for Europe Statistical Division Applying the GSBPM to Business Register Management Steven Vale UNECE
The Adoption of METIS GSBPM in Statistics Denmark.
Eurostat Overall design. Presented by Eva Elvers Statistics Sweden.
Current and Future Applications of the Generic Statistical Business Process Model at Statistics Canada Laurie Reedman and Claude Julien May 5, 2010.
Data Warehouse Development Methodology
Explaining the statistical data warehouse (S-DWH)
United Nations Economic Commission for Europe Statistical Division Mapping Data Production Processes to the GSBPM Steven Vale UNECE
Marco Oksman SDMX Transformation Component Applying CSPA.
Statistical Metadata Strategy and GSIM Implementation in Canada Statistics Canada.
Statistics Sweden’s model for a Central Metadata Repository Eva Holm Geneva,
Work packages SGA II ESSnet on microdata linking and data warehousing in statistical production Harry Goossens – Statistics Netherlands Head Data Service.
United Nations Oslo City Group on Energy Statistics OG7, Helsinki, Finland October 2012 ESCM Chapter 8: Data Quality and Meta Data 1.
The use of GSIM in Statistics Norway Jenny Linnerud Senior Adviser Department of IT Statistics Norway 10th June 2014, Nizhny Novgorod.
Metadata Framework for a Statistical Data Warehouse
GSBPM and GAMSO Steven Vale UNECE
YTY – integrated business statistics system General overview of the YTY software.
ESS-net DWH ESSnet on microdata linking and data warehousing in statistical production.
Harry Goossens Centre of Competence on Data Warehousing.
Describe a layered S-DWH Technology Architecture Information Systems Architecture Business Architecture.
METIS 2011 Workshop Session III – National Implementation of the GSBPM Alice Born and Tim Dunstan Thursday October 6, 2011 Implementation of the GSBPM.
The business process models and quality issues at the Hungarian Central Statistical Office (HCSO) Mr. Csaba Ábry, HCSO, Methodological Department Geneva,
United Nations Economic Commission for Europe Statistical Division GSBPM and Other Standards Steven Vale UNECE
Statistical process model Workshop in Ukraine October 2015 Karin Blix Quality coordinator
United Nations Economic Commission for Europe Statistical Division GSBPM in Documentation, Metadata and Quality Management Steven Vale UNECE
Introduction to Statistics Estonia Study visit of the State Statistical Service of Ukraine on Dissemination of Statistical Information and related themes.
statistiska_centralbyran_scbwww.linkedin.com/company/scb Panel Session A: Integrating Location in.
Metadata models to support the statistical cycle: IMDB
Investment Intentions Survey 2016
Implementation of Quality indicators for administrative data
Towards connecting geospatial information and statistical standards in statistical production: two cases from Statistics Finland Workshop on Integrating.
Contents Introducing the GSBPM Links to other standards
State of Palestine Generic Statistical Business Process Model )GSBPM) - Palestine Case August 2017.
The Generic Statistical Information Model (GSIM) and the Sistema Unitario dei Metadati (SUM): state of application of the standard Cecilia Casagrande –
Experiences in Cooperation training using GSBPM
Generic Statistical Business Process Model GSBPM
Workshop on ESS Enterprise Architecture
A generic production environment - use of GSIM in Statistics Sweden
S-DWH layered architecture – Statiscs Finland
Organisational design and transformation approach
Generic Statistical Business Process Model (GSBPM)
YTY − an integrated production system for business statistics
Logical information model LIM Geneva june
GSIM The Generic Statistical Information Model
Metadata in the modernization of statistical production at Statistics Canada Carmen Greenough June 2, 2014.
A handbook on validation methodology Marco Di Zio Istat
Metadata flows within the Mexican technical norm for generation of basic statistics Eric Rodriguez.
Applying the Generic Statistical Business Process Model to Business Register Maintenance Steven Vale UNECE
The Generic Statistical Information Model
Modernization of Statistical data processes
“The role of S-DWH in the ESS 2020 modernization process”
SDMX in the S-DWH Layered Architecture
The Generic Statistical Business Process Model
CSPA: The Future of Statistical Production
Introducing the GSBPM Steven Vale UNECE
Contents Introducing the GSBPM Links to other standards
Mapping Data Production Processes to the GSBPM
Metadata used throughout statistics production
Presentation to SISAI Luxembourg, 12 June 2012
Metadata on quality of statistical information
METIS 2011 Workshop Session III – National Implementation of the GSBPM
Introducing the Data Documentation Initiative
ESTP Training Course “Enterprise Architecture and the different EA layers, application to the ESS context ” Rome, 16 – 19 October 2017.
The Generic Statistical Business Process Model Steven Vale, UNECE
SDMX training Francesco Rizzo June 2018
Presentation transcript:

GSBPM and Data Life Cycle

Generic Statistic Business Process Model

Generic Statistic Business Process Model

GSBPM – Data Integration

Generic Statistic Information Model - GSIM

GSIM and GSBPM

GSIM – reference colours

GSBPM - Data Life Cycle

Specify Needs – Blue Path - Business

Functionality – Blue Path - Business overall analysis of all available data and meta data

Supported by interpretation and analysis layer

Design – Blue Path - Business

Functionality – Blue Path - Business Interaction between the statistical framework and the interpretation layer - eg. sampling

Functionality – Blue Path - Business These sub processes can create active and passive metadata

Build – Yellow Path - Structures

Functionality – Yellow Path - Structures For statistical outputs produced on a regular basis, this phase usually occurs for: First iteration Following a review Following a change in methodology

Functionality – Yellow Path - Structures Each new output production line is basically a work flow configuration

Collect – Red Path - Exchange

Functionality – Red Path - Exchange Typically this phase does not include any data transformations

Functionality – Red Path - Exchange Controlled Data Collection – eg our survey Uncontrolled Data Collection – eg administrative sources may involve mapping < T, S, m> T – Target schema S – Source schema m – mapping

Process – Red Path - Exchange

Functionality – Red Path - Exchange Typical ETL phase of a DWH happens in the Integration Layer Sub process 5.1 “integrate data” connects different sources and uses the provider management in order to update asynchronous business register status

Analyze – Green Path – Concepts

Functionality – Green Path – Concepts The flow is bidirectional all non consolidated concepts must be first created and tested directly in the interpretation and analysis layer The Analysis phase includes: primary data scrutinizing interpretation to support the data evaluating the effective fitting of the Outputs with the initial expectations

Disseminate – Red Path - Exchange

Functionality – Red Path - Exchange Manages the release of the statistical products to customers For statistical outputs produced regularly, this phase occurs in every iteration Ocurrs in the Acces Layer

GSBPM - Data Life Cycle

creative commons Thanks to UNECE on GSIM https://statswiki.unece.org/display/gsim/Generic+Statistical+Information+Model Thanks to UNECE on GSBPM https://statswiki.unece.org/display/GSBPM/GSBPM+Training+Materials Thanks to Centre of Excellence on Data Warehousing http://ec.europa.eu/eurostat/cros/content/centre-excellence-data-warehousing