Best practice case Finland / Estonia 22th. of September 2011 Maia Ennok.

Slides:



Advertisements
Similar presentations
1 Statistics Norway Information Architecture – some challenges ODaF meeting, Colchester April 2008 Rune Gløersen Director Department for IT and.
Advertisements

ESSnet on Data Warehousing - WP2 Overview Amsterdam September 2013.
“Mapping the GSBPM on a SDW architecture”
Input Data Warehousing Canada’s Experience with Establishment Level Information Presentation to the Third International Conference on Establishment Statistics.
Best practice case: Comparing the implementations of the Irish CDM and the Dutch DSC ESSnet on microdata linking and data warehousing in statistical production.
Chapter 9 DATA WAREHOUSING Transparencies © Pearson Education Limited 1995, 2005.
DATA WAREHOUSING.
QlikView in the Enterprise BI Stack. Sample Architecture – Metadata Integration This architecture shows the use of a custom metadata database as a data.
Lecture-33 DWH Implementation: Goal Driven Approach (1)
International Seminar on Modernizing Official Statistics:
Metadata for the S-DWH ‒ an overview Lars-Göran Lundell Statistics Sweden.
In a not gate, if the input is on(1) the output is off (0) and vice versa.
S-DWH Architecture (Recap):
Metadata management and statistical business process at Statistics Estonia Work Session on Statistical Metadata (Geneva, Switzerland 8-10 May 2013) Kaja.
Metadata for a Statistical Data Warehouse Lars-Göran Lundell Statistics Sweden Luxembourg 22 September 2011.
ESSnet DataWareHousing Stocktaking Pieter Vlag, Viviana di Giorgi, Sonia Queresma.
Interactive session: Metadata Maia Ennok Head of Data Warehouse Service Statistics Estonia
ESS-net DWH ESSnet DWH - Metadata in the S-DWH Harry Goossens – Statistics Netherlands Head Data Service Centre / ESSnet Coordinator
Data Warehouse Development Methodology
Revision Project of the Business Register (BR) and Business Statistics in General overview of the project (Sami) - Data Linking and Data Warehousing,
Explaining the statistical data warehouse (S-DWH)
1 Conclusions from Sessions 4, 5, 6 Rapporteurs: Donatella Fazio, Istat Maria Grazia Calza, Istat Arianna Carciotto, Istat ESSnet Workshop 2012 Cavour.
1 Reviewing Data Warehouse Basics. Lessons 1.Reviewing Data Warehouse Basics 2.Defining the Business and Logical Models 3.Creating the Dimensional Model.
ESSnet on Datawarehousing - the business register Pieter Vlag – Statistics Netherlands.
ESSnet on microdata linking and data warehousing in statistical production: Metadata Quality in the Statistical Data Warehouse.
DWH Aggregate Statistics Aggregate Statistics Microdata Dataset Business register Storage, combination OutputsInput data 1.The magic data pixie model.
Electronic data collection System in CSB of Latvia By Karlis Zeila, Vice President, CSB of Latvia UN ECE Work Session on Statistical Data Editing, 16 –
Electronic data collection System in CSB of Latvia By Karlis Zeila, Vice President, CSB of Latvia IT DG meeting, October , Eurostat.
ESSnet ON MICRO DATA LINKING AND DATA WAREHOUSING IN STATISTICAL PRODUCTION RESULTS OF STOCKTAKING, CONCLUSIONS OF FIRST YEAR * Pieter Vlag Senior Statistical.
Measurement Data Workspace and Archive: Current State and Next Steps GEC15 Oct 2012 Giridhar Manepalli Corporation for National Research Initiatives
 Understand the basic definitions and concepts of data warehouses  Describe data warehouse architectures (high level).  Describe the processes used.
Statistics Sweden’s model for a Central Metadata Repository Eva Holm Geneva,
Pilot Census in Poland Some Quality Aspects Geneva, 7-9 July 2010 Janusz Dygaszewicz Central Statistical Office POLAND.
Work packages SGA II ESSnet on microdata linking and data warehousing in statistical production Harry Goossens – Statistics Netherlands Head Data Service.
Open GSBPM compliant data processing system in Statistics Estonia (VAIS) 2011 MSIS Conference Maia Ennok Head of Data Warehouse Service Data Processing.
Recent development in the metadata area at Statistics Sweden Klas Blomqvist
ESS-net DWH ESSnet on microdata linking and data warehousing in statistical production Harry Goossens – Statistics Netherlands Head Data Service Centre.
Metadata Framework for a Statistical Data Warehouse
11 Centre of knowledge and expertise Data Warehousing ESSnet (DWH ESSnet)
Statistical Metadata Extensions to the X3.285 Metamodel By Daniel W. Gillman Chairman, NCITS/L8 U.S. Bureau of the Census.
WEB-SUPPORTED STATISTICAL DISSEMINATION PROCESS SERVING STATISTICAL DATA USERS Matjaž Jug, M.Sc.
ESS-net DWH ESSnet on microdata linking and data warehousing in statistical production.
Metadata Driven Integrated INFORMATION SYSTEM of CSB of LATVIA Version Central Statistical Bureau of Latvia April 5 – 9, 2008 / Luxembourg Presentation.
Harry Goossens Centre of Competence on Data Warehousing.
Describe a layered S-DWH Technology Architecture Information Systems Architecture Business Architecture.
Data Warehouse – Your Key to Success. Data Warehouse A data warehouse is a  subject-oriented  Integrated  Time-variant  Non-volatile  Restructure.
Business Intelligence in Banking  Yesika Kristina  Dea Pradana Darmawan  Sukianti  Merianti  Meshiya Caterlee.
Slide 1 Data Warehousing in CIM  2000 YourNameHere Data Warehousing in Computer Integrated Manufacturing Steve Daino IEM 5303.
Role of Metadata in dissemination of census data Regional Seminar on dissemination and spatial analysis of census data, Nairobi, September, 2010.
Data Warehouse Components
Lecture-34 DWH Implementation: Goal Driven Approach (2)
Towards connecting geospatial information and statistical standards in statistical production: two cases from Statistics Finland Workshop on Integrating.
Introduction.
THE BNSI EXPERIENCE IN METADATA COLLECTION AND ORGANIZATION
Data Warehousing and Data Mining By N.Gopinath AP/CSE
ESSnet workshop Köln Pieter Vlag Some discussion points
S-DWH layered architecture – Statiscs Finland
YTY − an integrated production system for business statistics
Tomaž Špeh, Rudi Seljak Statistical Office of the Republic of Slovenia
ESSnet on Data Warehousing 4th Workshop Maia Ennok 20th. of March 2013
Methodology Working Group Luxemburg
Overall handbook S-DWH
Evaluation & Experiences ‘YTY-System’ Statistics Finland
“The role of S-DWH in the ESS 2020 modernization process”
SDMX in the S-DWH Layered Architecture
GSBPM and Data Life Cycle
SISAI STATISTICAL INFORMATION SYSTEMS ARCHITECTURE AND INTEGRATION
ESSnet DataWareHousing
Statistical process as a structured chain of successive actions and intermediate products, supported by the coherent use of metadata  Focused on energy.
Work Session on Statistical Metadata (Geneva, Switzerland May 2013)
Presentation transcript:

Best practice case Finland / Estonia 22th. of September 2011 Maia Ennok

Data Warehouse models ESSNet on micro data linking and data warehousing in the production of business statistics Statistics EstoniaStatistics Finland Process Model aim to Data Model Many-to-many correspondences between input data and outputs Active Business register integrated in the DWH Metadata is extremely important

Data Warehouse Architecture (metadata driven) in Statistics Estonia ESSNet on micro data linking and data warehousing in the production of business statistics CollectProcessAnalyseDisseminateDesign Integrated statistical registers Raw data Data Warehouse Statistics database Collection systems based raw databases Statistical activities based processing databases Common integrated data warehouse (microdata) Common dissemina- tion data- base (PC-Axis) Common metadata repository Data staging area

Statistical process Data Collection Editing and AnalyzingPublication Data Source Layer Data Extraction Layer Data Storage Layer ETL Layer Staging Area Data Logic Layer Data Presentation Layer Metadata Layer Data Warehouse Architecture in Statistics Finland 4 ESSNet on micro data linking and data warehousing in the production of business statistics

Conclusions Need to border Data Warehouse definition (Statistical Data Warehouse) Need to examine metadata usage in Data Warehouse Need to explore Data Warehouse needs from Business Register and vice versa ESSNet on micro data linking and data warehousing in the production of business statistics

Esitlus või esitleja nimi