Common Statistical Production Architecture An statistical industry architecture will make it easier for each organisation to standardise and combine the.

Slides:



Advertisements
Similar presentations
Summary of Participant Interview Themes for GSIM Sprint 1 7 February 2012.
Advertisements

Implementation of GSBPM, DDI and SDMX reference metadata at Statistics Denmark UNECE workshop 5-7 May 2015 Mogens Grosen Nielsen
Implementing CSPA compliant guidelines
Thee-Framework for Education & Research The e-Framework for Education & Research an Overview TEN Competence, Jan 2007 Bill Olivier,
United Nations Economic Commission for Europe Statistical Division Modernisation Maturity Model Steven Vale UNECE
GSBPM and GSIM as the basis for the Common Statistical Production Architecture Steven Vale UNECE
International Collaboration to Modernise Official Statistics
Experiences from the Australian Bureau of Statistics (ABS)
Enterprise Architecture Ben Humberstone Office for National Statistics, UK Workshop on the Modernisation of Statistical Production April 2015.
United Nations Economic Commission for Europe Statistical Division Standards-based Modernisation An update on the work of the High-level Group for the.
The future of Statistical Production CSPA. We need to modernise We have a burning platform with: rigid processes and methods; inflexible ageing technology;
GSIM Stakeholder Interview Feedback HLG-BAS Secretariat January 2012.
NSI 1 Collect Process AnalyseDisseminate Survey A Survey B Historically statistical organisations have produced specialised business processes and IT.
Introduction and key issues identified in the papers UNECE Conference of European Statisticians June 2015 Second Seminar, Session I.
Standardisation Informal summary of ABS Perspective.
Background to the Generic Statistical Information Model (GSIM) Briefing Pack December
How to make EA-work impact everyday-work – the Statistics NZ story? Workshop on the Modernisation of Statistical Production April 2015.
1 1 Improving interoperability in Statistics Some considerations on the impact of SDMX 59th Plenary of the CES Geneva, 14 June 2011 Rune Gløersen IT Director.
Current and Future Applications of the Generic Statistical Business Process Model at Statistics Canada Laurie Reedman and Claude Julien May 5, 2010.
Metadata-driven Business Process in the Australian Bureau of Statistics Aurito Rivera, Simon Wall, Michael Glasson – 8 May 2013.
Modernisation in Istat Nadia Mignolli Italian National Institute of Statistics (Istat) Department for Integration, Quality, Research and Production Networks.
United Nations Economic Commission for Europe Statistical Division Standards and Statistical Production Architectures Steven Vale UNECE
Direction and system changes impacting on data editing and imputation at Statistics New Zealand Paper by Emma Bentley and Felibel Zabala, presented by.
United Nations Economic Commission for Europe Statistical Division International Collaboration to Modernise Official Statistics Steven Vale UNECE
United Nations Economic Commission for Europe Statistical Division The Common Statistical Production Architecture: An Important New Tool for Process Standardisation.
United Nations Economic Commission for Europe Statistical Division High-Level Group Achievements and Plans Steven Vale UNECE
Statistical Metadata Strategy and GSIM Implementation in Canada Statistics Canada.
HLG-MOS, Nizhny Novgorod, June 2014 Experiences with CSPA.
The future of Statistical Production CSPA. 50 task team members 7 task teams CSPA 2015 project.
SDMX IT Tools Introduction
Modernisation Activities DIME-ITDG – February 2015 Item 7.
The Role of International Standards for National Statistical Offices Andrew Hancock Statistics New Zealand Prepared for 2013 Meeting of the UN Expert Group.
Aim: “to support the enhancement and implementation of the standards needed for the modernisation of statistical production and services”
Generic Statistical Information Model (GSIM) Jenny Linnerud
2013 HLG Project: Common Statistical Production Architecture.
Joint Priority Project #2: Service Visions and Mapping Presentation to PSSDC/PSCIOC Winnipeg, Manitoba, September 28, 2004 By: Industry Canada Ontario.
GSIM, DDI & Standards- based Modernisation of Official Statistics Workshop – DDI Lifecycle: Looking Forward October 2012.
1 1 Improving interoperability in Statistics Some considerations on the impact of SDMX MSIS 2011 Luxembourg 23 – 25 May 2011 Rune Gløersen IT Director.
HLG MOS Flexibility and Adaptability HLG MOS Workshop November 24, 2015 The Hague Pádraig Dalton 1.
On Implementing CSPA Specifications for Editing and Imputation Services Donato Summa, Monica Scannapieco, Diego Zardetto, Istat, Italy Istituto Nazionale.
The future of Statistical Production CSPA. This webinar on CSPA (common statistical production architecture) is part of a series of lectures on the main.
United Nations Economic Commission for Europe Statistical Division GSBPM and Other Standards Steven Vale UNECE
The future of Statistical Production CSPA. We need to modernise We have a burning platform with: rigid processes and methods; inflexible ageing technology;
United Nations Economic Commission for Europe Statistical Division The High-Level Group: Modernisation of Statistical Production and Services Steven Vale.
Statistical process model Workshop in Ukraine October 2015 Karin Blix Quality coordinator
United Nations Economic Commission for Europe Statistical Division Standards-based Modernisation Steven Vale UNECE
Bert Kroese and Trevor Fletcher, on behalf of HLG Interim Project Board.
United Nations Economic Commission for Europe Statistical Division CSPA: The Future of Statistical Production Steven Vale UNECE
Adopting CSPA and CORE in Istat: the role of Enterprise Architecture Mauro Bruno, Monica Scannapieco, Marco Silipo Istituto Nazionale di Statistica - Istat.
Common Statistical Production Architecture
Italian National Institute of Statistics Modernisation Story
Understanding the communities readiness to transform
IT Directors Meeting November 2012
GSBPM, GSIM, and CSPA.
Modernising Official Statistics
The problem we are trying to solve
CSPA: The Future of Statistical Production
SISAI STATISTICAL INFORMATION SYSTEMS ARCHITECTURE AND INTEGRATION
Generic Statistical Information Model (GSIM)
The future of Statistical Production
ESTP Training Course “Enterprise Architecture and the different EA layers, application to the ESS context ” Rome, 16 – 19 October 2017.
ESS.VIP.SERV Shared Services
Introduction to the Common Statistical Production Architecture Alice Kovarikova High-Level Workshop on Modernization of Official Statistics, Nizhny Novgorod,
CSPA Common Statistical Production Architecture Motivations: definition and benefit of CSPA and service oriented architectures Carlo Vaccari Istat
CSPA Specifications Overview
CSPA Common Statistical Production Architecture Motivations: definition and benefit of CSPA and service oriented architectures Carlo Vaccari Istat
ESS Enterprise Architecture
process and supporting information
Presentation transcript:

Common Statistical Production Architecture An statistical industry architecture will make it easier for each organisation to standardise and combine the components of statistical production, regardless of where the statistical services are built

CSPA Definition Common Statistical Production Architecture (CSPA): framework about Statistical Services to create an agreed top level description of the 'system' of producing statistics which is in alignment with the modernization initiative CSPA provides a template architecture for official statistics, describing: What the official statistical industry wants to achieve How the industry can achieve this, i.e. principles that guide how statistics are produced What the industry will have to do, compliance with the CSPA

Desired Project Outcomes Increased: interoperability in Official Statistics through the sharing of processes and components ability to find real/genuine collaboration opportunities ability to make international decisions and investments sharing of architectural/design knowledge and practices

2 Strands to the project ArchitectureProof of Concept

The Architecture

Analogy business process : "dressing up" fit for purpose do not start with the shoes sense of harmony 7

A plug and play platform 8

Business outcome 9

The CSPA provides: Support the implementation of the vision and strategy of an industry An architecture template for statistical production A set of agreed common principles and standards designed to promote interoperability A common vocabulary to discuss implementations

“Sprint” – Ottawa April people 10 organisations 5 days Result: The first draft of an “industry architecture” for official statistics

Business Architecture Information Architecture Application Architecture Technology Architecture

NSI 1 Collect Process AnalyseDisseminate Survey A Survey B Historically statistical organisations have produced specialised business processes and IT systems The problem we are trying to solve

How does Architecture help? Many statistical organisations are modernising and transforming using Enterprise Architecture Enterprise Architecture shows what the business needs are and where the organisation wants to be, then aligns efforts accordingly It can help to remove silos and improve collaboration across an organisation

NSI 1 Collect Process Analyse Survey A Survey B Survey C EA helps you get to this Disseminate

…but if each statistical organisation works by themselves…..

Canada Collect Process Analyse Disseminat e Sweden …we get this….

Canada Collect Process Analyse Disseminat e Sweden ? ? This makes it hard to share and reuse!

…but if statistical organisations work together?

Collect Process AnalyseDisseminate ? ? Sweden Canada This makes it easier to share and reuse!

A statistical service GSIM object instances GSIM object structures (formats) GSIM object structures (formats) GSBPM -process

The concept of Plug and Play Standardised Service: – Standardised input and output – Meet generic nonfunctional requirements – Can be easily used and reused in a number of different processes

Proof of Concept

Aims Demonstrate the process of working together – Advantages in cooperation Demonstrate business viability to senior management – There are benefits to pursuing this – Show it is feasible – Encourage investment Prove the value of the Architecture – Here is something that we could not do before

Choosing the PoC components Lego pieces could be: Brand new Wrapped legacy/existing OR

G Code The Proof of Concept 5 countries played the role of Builders 3 countries played the role of Assemblers Blaise SCS CANCEIS Editrules

CSPA roles

“Sprint” – Rome June people 11 organisations 5 days Result: Design specifications for the Proof of Concept

What was involved in building a service? Autocoding Service 1 as an example Statistics Canada arranged a licence of Gcode for CBS CBS and Stats NZ worked together to ensure that both Autocoding Services were built to the same definition and specification Information experts reviewed the DDI Architecture Working Group provided advice Implementers of the Service were consulted Project Manager co-ordinated and facilitated CBS

CSPA roles

Statistics Sweden (Workflow -Triton) Statistics New Zealand (Workflow) Istat (CORE) People involved in Assembly phase

What did we prove?

CSPA is practical and can be implemented by various agencies in a consistent way

You can fit CSPA Statistical Services into existing processes Statistics New Zealand (Workflow) Istat (CORE)

CSPA does not prescribe the technology platform an agency requires Statistics New Zealand (Workflow) Istat (CORE)

You can swap out CSPA compliant services easily Statistics New Zealand (Workflow)

Reusing the same statistical service by configuration Survey A Survey B Statistics Sweden (Workflow -Triton)

What did we learn?

The possibilities! We now know what some of the real issues are and we can make decisions on what is worth doing and what is not. “The proof-of-concept form of working with these concepts is in itself very interesting. We can quickly gain insight to both problems and possibilities”

International collaboration is a trade to be mastered The on-going contact with colleagues over the globe is stimulating and broadens the understanding The PoC discussion forum on the CSPA wiki was useful BUT… The ability to undertake trouble shooting through the installation / configuration period was made difficult by the time zone differences resulting in simple problems often taking a number of days to resolve.

Learning curves Proof of Concept required knowledge about: the tool which was wrapped (CANCEIS, Blaise etc) GSIM implementation standards (DDI in this case)

Practical problems with sharing software. Licencing issues Exchanging software (Import/export) is cumbersome. Installation of software not built for you can be tricky and requires support. CSPA-service could be applied in production only if support is available

What does CSPA mean for statistical organisations?

Benefits from a business perspective “I think that this work has great potential. Through CSPA-services it'll be much easier to integrate tools built for different environments, into our environment” “If this works and more organizations join, it will give us the opportunity to share parts of our own solutions without the need to take everything”

Making the most of the architecture CSPA CSPA-Services ? Infrastructure & communication platform Culture and knowledge for governance and usage of CSPA-services Statistical communityOrganisation specific

The result from 2013

Outputs CSPA v1.0 Proof of Concept – Paper – Videos – Example services

FAO United Kingdom 5 Build teams 42 individuals 2 Sprints 3 Assemble teams 1 Working Group

Thanks! If you are interested in seeing the CSPA Proof of Concept Services in action, we have some short videos which will be shown during the lunch break on Tuesday.