1 Towards a common statistical enterprise architecture Ongoing process reengineering at Statistics Sweden Service Oriented Architecture – SOA Sharing of.

Slides:



Advertisements
Similar presentations
Statistical Information Management Program (SIMP II) By Roger Jullion (Statistics Canada) OECD/NBS Workshop on National Accounts Haikou, China December.
Advertisements

Reducing administrative burden in Bulgaria: Single Entry Point for Reporting Fiscal and Statistical Information Dr.Mariana Kotzeva President of National.
Ch-11 Project Execution and Termination. System Testing This involves two different phases with two different outputs First phase is system test planning.
Statistics 2020 and Platform Approach Te Käpehu Whetü May 2011.
Taavi Tamberg What is screen? Device User Interface Information Service Innovation.
APPLIED GSBPM IN GSO by Ha Do Statistical Standard Methodology and ITC Department General Statistic Office Vietnam 1 General statistic office Vietnam.
1 Statistics Norway IT strategy Rune Gløersen IT Director Statistics Norway.
TURKISH STATISTICAL INSTITUTE Metadata and Standards Department 1 Nezihat KERET Gülhan Eminkahyagil Metadata and Standards Department Turkish Statistical.
Visual and Internet Programming using JAVA
South Africa System of data collection and dissemination of manufacturing statistics May 2009 The preferred supplier of quality statistics.
1 Position 1.1 Shape ABS Futures1.3 Champion ABS1.2 Foster internal excellence 2 Influence & collaborate 2.2 Advance national business2.3 Advance international.
MICS Survey Design Workshop Multiple Indicator Cluster Surveys Survey Design Workshop Overview of MICS Tools, Templates, Resources, Technical Assistance.
by Ha Do Statistical Standard Methodology and ITC Department
14-15 September 2011 STATISTICAL BUSINESS REGISTERS AS BACKBONE FOR BUSINESS STATISTICS Joint UNECE/OECD/Eurostat Business Registers expert meeting
United Nations Economic Commission for Europe Statistical Division Applying the GSBPM to Business Register Management Steven Vale UNECE
Improving cooperation and quality in deliveries from Primary statistics (PS) to National Accounts (NA) Roger Pettersson Statistics Sweden.
Introduction to SDLC: System Development Life Cycle Dr. Dania Bilal IS 582 Spring 2009.
Data Warehousing at STC MSIS 2007 Geneva, May 8-10, 2007 Karen Doherty Director General Informatics Branch Statistics Canada.
MICS Data Processing Workshop Multiple Indicator Cluster Surveys Data Processing Workshop Overview of MICS Tools, Templates, Resources, Technical Assistance.
The Adoption of METIS GSBPM in Statistics Denmark.
United Nations Economic Commission for Europe Statistical Division Introducing the GSBPM Steven Vale UNECE
Statistics Sweden Results from operations in 2006: 146 publications 356 press releases commissions 3,7 million visitors at
Eurostat Overall design. Presented by Eva Elvers Statistics Sweden.
Support for design of statistical surveys at Statistics Sweden
New ways of working at Statistics Sweden – a description with emphasis … on preparatory sub-processes Eva Elvers Statistics Sweden
February 17, 1999Open Forum on Metadata Registries 1 Census Corporate Statistical Metadata Registry By Martin V. Appel Daniel W. Gillman Samuel N. Highsmith,
Current and Future Applications of the Generic Statistical Business Process Model at Statistics Canada Laurie Reedman and Claude Julien May 5, 2010.
Lisbone, March ALBANIAN METADATA AlbMeta Prepared by INSTAT Working Group.
European Conference on Quality in Official Statistics Session 26: Quality Issues in Census « Rome, 10 July 2008 « Quality Assurance and Control Programme.
Eurostat Expression language (EL) in Eurostat SDMX - TWG Luxembourg, 5 Jun 2013 Adam Wroński.
Jump to first page (o ns) Modernising Statistical Systems to improve Quality The experiences of the Office for National Statistics (ONS) Presented by Emma.
Statistical Data Editing Anders Norberg, Statistics Sweden (SCB)
United Nations Economic Commission for Europe Statistical Division Mapping Data Production Processes to the GSBPM Steven Vale UNECE
Electronic data collection System in CSB of Latvia By Karlis Zeila, Vice President, CSB of Latvia IT DG meeting, October , Eurostat.
United Nations Economic Commission for Europe Statistical Division High-Level Group Achievements and Plans Steven Vale UNECE
StatisticalData Editing Anders Norberg, Statistics Sweden (SCB)
Statistics Sweden’s model for a Central Metadata Repository Eva Holm Geneva,
Business model Transformation Strategy (BmTS) John Pearson and Tracey Savage Statistics NZ’s.
Pilot Census in Poland Some Quality Aspects Geneva, 7-9 July 2010 Janusz Dygaszewicz Central Statistical Office POLAND.
Developing and applying business process models in practice Statistics Norway Jenny Linnerud and Anne Gro Hustoft.
© Statistisches Bundesamt, I/A Case study Federal Statistical Office Germany (Destatis) Joint UNECE/ EUROSTAT/ OECD Work Session on Statistical Metadata.
United Nations Oslo City Group on Energy Statistics OG7, Helsinki, Finland October 2012 ESCM Chapter 8: Data Quality and Meta Data 1.
Recent development in the metadata area at Statistics Sweden Klas Blomqvist
1 Processorientated statistical production IAOS Conference, October 16, 2008 Åke Bruhn, Director, Process Dept, Statistics Sweden.
MetaPlus Klas Blomqvist Statistics Sweden Research and Development – Central Methods
RECENT DEVELOPMENT OF SORS METADATA REPOSITORIES FOR FASTER AND MORE TRANSPARENT PRODUCTION PROCESS Work Session on Statistical Metadata 9-11 February.
Process reengineering at Statistics Sweden Bo Sundgren
5.8 Finalise data files 5.6 Calculate weights Price index for legal services Quality Management / Metadata Management Specify Needs Design Build CollectProcessAnalyse.
Metadata Driven Integrated INFORMATION SYSTEM of CSB of LATVIA Version Central Statistical Bureau of Latvia April 5 – 9, 2008 / Luxembourg Presentation.
Describe a layered S-DWH Technology Architecture Information Systems Architecture Business Architecture.
Eunis 2002 Grafos 2001 New Technologies for Teaching and Learning António Roberto Ana Sofia Lino Escola Superior de Gestão de Santarém Portugal A Software.
1 Chapter 1 Java –Originally for intelligent consumer-electronic devices –Then used for creating Web pages with dynamic content –Now also used for: Develop.
Introduction to Quality Management Frameworks Eurostat, Luxembourg, January 2016 Process quality Dr Johanna Laiho-Kauranne.
1 Process Orientation at statistics Sweden – Implementation and Initial Experiences IAOS Conference, October 15, 2008 Mats Bergdahl, Deputy Director Process.
How official statistics is produced Alan Vask
TRITON - An event driven SOA architecture MSIS Jakob Engdahl, Statistic Sweden
Statistical process model Workshop in Ukraine October 2015 Karin Blix Quality coordinator
Student Learning Outcomes Assessment Montgomery College Fall 2011 Orientation.
Implementation of Quality indicators for administrative data
MANAGEMENT OF STATISTICAL PRODUCTION PROCESS METADATA IN ISIS
THE BNSI EXPERIENCE IN METADATA COLLECTION AND ORGANIZATION
An Introduction to Visual Basic .NET and Program Design
YTY − an integrated production system for business statistics
Tomaž Špeh, Rudi Seljak Statistical Office of the Republic of Slovenia
Validation at Statistics Sweden
Mapping Data Production Processes to the GSBPM
Metadata used throughout statistics production
Student Learning Outcomes Assessment
Presentation transcript:

1 Towards a common statistical enterprise architecture Ongoing process reengineering at Statistics Sweden Service Oriented Architecture – SOA Sharing of software development

2 Plan and design 2 Build and test 3 Collect 4 Process 5 Analyse 6 Report and communicate 7 Statistical Business Process Model Support and infrastructure Quality control, evaluation and feedback 8 Determine need for information 1

3 Determine need for information 1 Plan and design 2 Build and test 3 Collect 4 Process 5 Analyse 6 Report and communicate 7 Statistical Business Process Model Initiate contact with customer 1.1 Identify need for information 1.2 Identify sources of data 1.3 Confirm customer needs 1.4 Determine need for statistics 1.5 Negotiate and make an agreement 1.6 Produce final product 7.1 Present final product for customer 7.2 Communicate final product 7.3 Archive 7.4 Classify and code micro data 5.1 Perform micro data editing 5.2 Impute missing data 5.3 Complete data set 5.4 Calculate weights 5.5 Produce frame/register population 4.1 Draw sample 4.2 Prepare data collection 4.3 Realise data collection 4.4 Load electronic data 4.5 Plan and design statistical output 2.1 Plan and design data collection 2.3 Plan and design data processing 2.4 Plan and design analysis and reporting 2.5 Plan production flow 2.6 Design production system 2.7 Build/improve and test measurement instrument 3.1 Build/improve and test production tools 3.2 Ensure communication between production tools 3.3 Test production system 3.4 Accomplish pilot test 3.5 Put system into production 3.6 Produce statistics 6.1 Perform final editing of produced statistics 6.2 Determine final observation register 6.3 Interpret and explain 6.4 Determine contents for reporting and communication 6.5 Plan and design frame/register population and sample 2.2

4 Service oriented architecture at Statistics Sweden Development of services for all processes Microsoft environment Common interface

5 Common statistical enterprise architecture Service oriented architecture Development of common services to be shared with others Services to be used as web services or locally installed

6 Sharing of services Informal cooperation Bartering of services and components, or free usage Non-free support