Information about the HLG work Some considerations on HLG and related work from an NSI point of view Rune Gløersen, Statistics Norway.

Slides:



Advertisements
Similar presentations
Standards: Issues and Challenges Alice Born Chair: Modernisation Committee on Standards.
Advertisements

United Nations Economic Commission for Europe Statistical Division High-Level Group Achievements and Plans Steven Vale UNECE
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
United Nations Economic Commission for Europe Statistical Division Standards-based Modernisation An update on the work of the High-level Group for the.
International Seminar on Modernizing Official Statistics:
Products and Sources: Issues and Challenges Steven Vale on behalf of the Modernisation Committee on Products and Sources.
Background Data validation, a critical issue for the E.S.S.
NSI 1 Collect Process AnalyseDisseminate Survey A Survey B Historically statistical organisations have produced specialised business processes and IT.
Generic Statistical Information Model (GSIM) Thérèse Lalor and Steven Vale United Nations Economic Commission for Europe (UNECE)
SDMX and DDI Working Together Technical Workshop 5-7 June 2013
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.
Workshop on the modernisation of statistical production and services Annual report of the UNECE High Level Group on Modernisation of Statistical Production.
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.
1 HLG-BAS workshop Session III Questionnaire responses of the HLG-BAS related groups A. Born / A. Götzfried / J.M. Museux.
United Nations Economic Commission for Europe Statistical Division Standards and Statistical Production Architectures Steven Vale UNECE
United Nations Economic Commission for Europe Statistical Division GSBPM Workshop Steven Vale UNECE
Workshop on the Communication of Statistics and Workshop on Statistical Data Collection The High Level Group and the Modernisation Committee on Products.
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
The future of Statistical Production CSPA. 50 task team members 7 task teams CSPA 2015 project.
Modernisation Evolution or Revolution World Statistics Day October 20, 2015 Budapest Pádraig Dalton Director General, CSO, Ireland 1.
Michelle Simard, Thérèse Lalor Statistics Canada CSPA Project Manager UNECE Work Session on Statistical Data Confidentiality Helsinki, October 2015 Confidentialized.
1 Modernization of Statistical Production and Services in Asia-Pacific Marko Javorsek, Statistics Division, ESCAP International Seminar on Modernizing.
Workshop on Big Data. Agenda  Introduction  Results of 2014 Big Data Project  Plans of international organisations  Parallel discussions (Soapbox!)
Modernisation Activities DIME-ITDG – February 2015 Item 7.
United Nations Economic Commission for Europe Statistical Division Data collection and the modernisation of official statistics Steven Vale UNECE
United Nations Economic Commission for Europe Statistical Division International Collaboration to Modernise Official Statistics Steven Vale UNECE
Aim: “to support the enhancement and implementation of the standards needed for the modernisation of statistical production and services”
2013 HLG Project: Common Statistical Production Architecture.
GSBPM and GAMSO Steven Vale UNECE
GSIM, DDI & Standards- based Modernisation of Official Statistics Workshop – DDI Lifecycle: Looking Forward October 2012.
United Nations Economic Commission for Europe Statistical Division Enhanced Generic Models to Support the Standardisation of Statistical Production Steven.
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.
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;
Eurostat Standardisation DIME-ITDG 2015 Item 6 DIME-ITDG February
Results of the voting for future work priorities Workshop on International Collaboration for Standards-based Modernisation Geneva, 5-7 May 2015.
Modernisation Committee on Standards Priorities and future plans for 2015 and 2016 October 23, 2015.
Advancing statistics for development Marko Javorsek ESCAP Statistics Division Modernization Working Group on Production, Methods, and Standards (MWG) First.
United Nations Economic Commission for Europe Statistical Division Standards-based Modernisation Steven Vale UNECE
United Nations Economic Commission for Europe Statistical Division Achievements and Plans of the High-Level Group for the Modernisation of Official Statistics.
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
ESS Enterprise Architecture Reference Framework Jean-Marc Museux, Eurostat 2016 UNECE CSPA Workshop on CSPA Geneva
The HLG and the “New World Order”
Achievements in 2016 Data Integration Linked Open Metadata
Thérèse Lalor Statistical Management and Modernisation Unit
Italian National Institute of Statistics Modernisation Story
Strategic vision of the HLG-BAS High-Level Group on Strategic Developments in Business Architecture in Statistics Steven Vale UNECE
Methodology and Corporate Architecture
GSBPM, GSIM, and CSPA.
Modernising Official Statistics
Opinions after the 24/25 February 2016 Plenary
International Collaboration to Modernise Official Statistics
CSPA: The Future of Statistical Production
Introducing the GSBPM Steven Vale UNECE
SISAI STATISTICAL INFORMATION SYSTEMS ARCHITECTURE AND INTEGRATION
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.
CSPA Common Statistical Production Architecture Motivations: definition and benefit of CSPA and service oriented architectures Carlo Vaccari Istat
CSPA Common Statistical Production Architecture Motivations: definition and benefit of CSPA and service oriented architectures Carlo Vaccari Istat
ESS Enterprise Architecture
Standardisation activities in the statistical community
Presentation transcript:

Information about the HLG work Some considerations on HLG and related work from an NSI point of view Rune Gløersen, Statistics Norway

Introducing the HLG High-level Group for the Modernisation of Official Statistics Created by the Conference of European Statisticians in 2010 Vision and strategy endorsed by CES in 2011/2012

Who are the HLG members? Ireland - Chair Australia Canada Italy Netherlands New Zealand Republic of Korea Slovenia  Eurostat  OECD  UNECE

What does the HLG do? Oversees activities that support modernisation of statistical organisations Stimulates development of global standards and international collaboration activities “Within the official statistics community... take a strategic leadership and coordination role” Two strands; 1) high level models and standardisation, 2) innovation in products and methods

Why is the HLG needed? Before the HLGNow Many expert groupsClear vision Little coordinationAgreed priorities No overall strategyStrategic leadership Limited impactReal progress

The Challenges

HLG Organisation CSPA sub-committee

Standards-based Modernisaton % 43% 34,600

What is CSPA CSPA provides a framework within an Enterprise Architecture to help each agency in their modernisation, based on common standards: o GSBPM o GSIM o DDI / SDMX CSPA is a service oriented approach that allows us to modernise our environment and (re)use existing international solutions (services/ components)

CSPA catalogue Eurostat is hosting the global service catalogue

CSPA Implementation Specify together, develop individually Catalogue extensions Sustainable governance and support mechanisms Logical Information Model More CSPA services

Machine Learning Innovation in products, sources and methods Share the cost of innovation! Immediate pay back.

Big Data Project: 2015 More sandbox experiments More data –UNSD Comtrade –Wikipedia –Business data from company web sites Future of the sandbox –Subscription model will be launched soon –Not just for Big Data – other uses e.g. shared development of methods, shared training materials, …

Big Data Project: 2015 Challenge from the High-Level Group: Produce and release a set of internationally comparable statistics from one or more Big Data sources By the end of 2015!

Other initiatives GAMSO Machine learning –overview of the machine learning techniques currently in use or in consideration at statistical agencies worldwide –Seminar in The Hague 23 november Generic Statistical Data Editing Models –To be launched at the HLG Seminar November

Strategic Investment Planning Sharing plans between organisations Finding partners with similar priorities Trialing an Investment Comparison Tool

NSI collaboration within HLG Voluntarily basis Solving common challenges Bottom up approach, but turning quicly into necessary top down processes, leading to sufficiently anchored common decisions –i.e. Building CSPA services, revealing the need to develop the Logical Information Model Strong belief in the need for agreements/harmonisation at conseptual level, as a basis for sustainable business standardisation/industrialisation Still; important elements are missing

HLG work; Get involved! Anyone is welcome to contribute! More Information HLG Wiki: www1.unece.org/stat/platform/display/hlgbas LinkedIn group: “Business architecture in statistics”

Modernisation programme at Statistics Norway Some considerations made on the value and impact of international work and international obligations during our planning phase Our focus has been on describing an enterprise architecture based upon national and international accepted frameworks, models, standards and recommendations

Modernisation Programme at Statistics Norway In planning, but the level of ambition will be discussed Comprehensive analysis and target descriptions are developed, contributing to further development within all areas of our Enterprise Architecture

Building EA at StatsNorway Using TOGAF Based upon international models and frameworks from our statistical community Coherence between the architecture domains Coherence between the different levels of abstraction and details Useful for different stakeholders (management, users, IT etc)

Enterprise Architecture Level of abstraction Conceptual Logical Physical Detail Business «demands» IT solutions

GSBPM GAMSO (HLG) GSIM HLG models and framework HLG has not designed a complete EA framework However, the models form useful elements of an EA, and are accepted standards for their purpose The models are at different levels of maturity There are missing links through the levels of abstraction and details CSPA

GSBPM GAMSO (HLG) GSIM HLG models and framework The conseptual and high level of abstraction within the Business Architecture should be harmonised within our industry (otherwise; what defines our industry?) International work should systematically feed back enhancements GAMSO/CM merge Capability Model (ESS/EARF)

GSBPM GAMSO (HLG) GSIM HLG models and framework There is a missing link between the Business architecture models and the CSPA i.e business services used during the process phase; Sample surveys, registerbased stats, macroeconomic stats The logical description of the business services should close this gap, referencing i.e GSBPM through building blocks A complete set of CSPA services comprises all relevant business functions to provide for a statistical production system Capability Model (ESS/EARF) CSPA ?

CSPA Logical Information Model CSPA services are built bottom up, shared as IT services Business service descriptions are needed, at a sufficient logically detailed level

NSI and ESS collaboration in EA context ESS BB/Business services Associated IT services Common BB/Business services Associated IT Services NSI BB/Business services Associated IT services ESS components and solutions Common components and solutions Local components and solutions EU view NSI/ HLG view

NSI and ESS collaboration in EA context Deployment scenarios ESS BB/Business services Associated IT services Common BB/Business services Associated IT Services NSI BB/Business services Associated IT services Centralized service Shared service Reused service or component ESS service There is a need to be rather concrete. The type of service to be built varies within one project, e.g. Validation. Not mentioned: Local NSI service Local ESS service

Conclusions At StatsNorway, we are far from finished in developing a complete EA reference framework within statistics. In addition to developing the EA framework, we analyse our current situation, and identifies the as-is – to-be gap. Any project should be examined according to this gap. There are no complete frameworks to lean on, which means that we reveal the need for new elements described/developed according to our business needs (which most likely is similarly to the need among a lot of institutes). New (part of) models should therefore be examined and approved, avoiding competing models Architecture competence must be enhanced Architecture must be maintained Architecture Governance must be implemented. This is the way to show the value of the architecture work Communication of architecture must be targeted according to stakeholders needs and knowledge The architecture work should lead to flexible and agile production and organisations.