BIG DATA and Plug and Play- Architecture Jakob Engdahl ( )

Slides:



Advertisements
Similar presentations
Presentation to the HLG By Gary Dunnet (Statistical Network Chair)
Advertisements

Big Data and Predictive Analytics in Health Care Presented by: Mehadi Sayed President and CEO, Clinisys EMR Inc.
CloudSocial Mobility Big data Social connections, mobility, cloud delivery and pervasive information are converging in a powerful way. This convergence.
GSIM, CSPA, and Related Activities of the High-Level Group
CORE: a concrete implementation of the CSPA architecture Marco Silipo ISTAT (Italian National Statistical Institute) Joint work with: Rolando Duma, Mauro.
Big Data Course Plans at Purdue Ananth Iyer. Big Data/Analytics Coursera course on Big Data by Bill Howe claims that Big Data involves issues of
2.3 Methods for Big Data What is “Big Data”? Summarizing Big Data.
Plug & Play, Big Data & more Barteld Braaksma. Plug & Play, Big Data & more 1.
This presentation was scheduled to be delivered by Brian Mitchell, Lead Architect, Microsoft Big Data COE Follow him Contact him.
A Brief Overview by Aditya Dutt March 18 th ’ Aditya Inc.
From Strategy to Practice
Slide David Britton, University of Glasgow IET, Oct 09 1 Prof. David Britton GridPP Project leader University of Glasgow GridPP30 26 th Mar 2013 GridPP30.
1 26 October 2013 Observation and Reflection on Official Statistics against Big Data Challenge Yuan Pengfei Research Institute of Statistical Sciences.
SQL SERVER 2012 FOR THE NEW WORLD OF DATA Doug Leland General Manager SQL Server Marketing.
Bert Kroese, Statistics Netherlands CSPA Its place in HLG strategy.
1 Big Data Applications in Cloud and Cyber Security Prof. Ravi Sandhu Executive Director and Endowed Professor UTSA COB Symposium on Big Data, Big Challenges.
Ethics of Big Data Eduardo Felipe Zecca da Cruz. What is Big Data? Stamford, Conn.-based IT research firm Gartner Inc. defines "big data" as "high-volume,
Multimedia and the Institutional Network Greg Newton-Ingham Agora Project Manager - UEA.
MSIS 2012 – Statistics Sweden Guidance for Statistical Services Jakob Engdahl ( ) Head of Architecture and Strategy unit – IT Department.
KEY ELEMENTS FOR COMPETENT COMMUNICATION IN PROJECT MANAGEMENT by KANCHANA A/P MUNISAMY.
Agile capabilities Jakob Engdahl
Marco Oksman SDMX Transformation Component Applying CSPA.
Cloud Computing & Big Data Beny. Erlien. Febrian. Ragnar. Billy.
Statistical Metadata Strategy and GSIM Implementation in Canada Statistics Canada.
8/20/2013NIST Big Data WG / Roadmap Subgroup1 Architecture Storage Architecture Processing Architecture Resource Managers Architecture Infrastructure Architecture.
Statistics Sweden’s model for a Central Metadata Repository Eva Holm Geneva,
Uses of the 1 st Derivative – Word Problems.
United Nations Economic Commission for Europe Statistical Division UNECE Big Data Work Steven Vale UNECE
Review of technologies for developing geospatial applications with a focus on open source (FOSS4G) and their implementation of cloud computing application.
1 CC-BY-NC-SA 3.0 License, 2015 Hope Bay Technologies, Inc. 和沛科技 Big Data Philosophy Ben Jai CEO, Hope Bay Technologies, Inc.
Cloud Computing and Big Data Group 8 : Agnes Fitria Utami Erni Hanna Septiani Novie Ratna Sari Lianto.
Modernization of official statistics Eric Hermouet Statistics Division, ESCAP
 Data Sets too Large & Complex for Companies to Manage Within Traditional IT Systems  3 “Vs” › Volume › Velocity › Variety  Opportunity.
2013 HLG Project: Common Statistical Production Architecture.
1 Redesign of the production chain of economic statistics Marleen Verbruggen Statistics Netherlands.
GSIM, DDI & Standards- based Modernisation of Official Statistics Workshop – DDI Lifecycle: Looking Forward October 2012.
ESDEN - modernisation of data exchange in the ESS
Group : Lê Minh Hi ế u Phan Th ị Thanh Th ả o Ph ạ m Hoàng Long Nguy ễ n Huy Hùng 1 BIG DATA – NoSQL Topic 1.
The new Office & SharePoint App Model Alistair Speirs, Jake Ginnivan OSP321.
What’s the Big Deal about Big Data? Jennifer Lewis Priestley, Ph.D. Professor of Statistics and Data Science.
Big Data Why it matters Patrice KOEHL Department of Computer Science Genome Center UC Davis.
Describe a layered S-DWH Technology Architecture Information Systems Architecture Business Architecture.
BUSINESS INTELLIGENCE & ADVANCED ANALYTICS DISCOVER | PLAN | EXECUTE JANUARY 14, 2016.
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.
Big Data Analytics with Excel Peter Myers Bitwise Solutions.
What’s the Big Deal about Big Data? 52 nd Annual ACMSE Conference Jennifer Lewis Priestley, Ph.D. Professor of Statistics and Data Science.
TRITON - An event driven SOA architecture MSIS Jakob Engdahl, Statistic Sweden
Big Data Quality Challenges for the Internet of Things (IoT) Vassilis Christophides INRIA Paris (MUSE team)
What is the Big Data Challenge? Organizations are seeking solutions that combine the real-time analytics capabilities of SAP HANA and accessibility to.
818 Connecticut Ave. NW Suite 950 Washington, DC :: Phone: :: Fax: ::
Big Data Enterprise Patterns
Open Platform 3.0 Roadmap Projects 1Q/2016 2Q/2016 3Q/2016 4Q/2016
Seminar on Statistical Data Collection Geneva, 25 – 27 September 2013
Overview of INIS IT systems and applications
Introduction Data Mining for Business Analytics.
Standard-based Business Architecture
Data Warehousing in the age of Big Data (2)
Clouds & Containers: Case Studies for Big Data
SISAI 2011 – Statistics Sweden
Presentation: Higher education in Bulgaria
For more information, please see our methodology at: 
The Big 6 Research Model Step 3: Location and Access
Zoie Barrett and Brian Lam
The three v’s of big data
Dark Data Are we at risk?.
Data Analysis and R : Technology & Opportunity
We are “Big Data” (and so can you!)
SOA in Statistics Sweden
Presentation transcript:

BIG DATA and Plug and Play- Architecture Jakob Engdahl ( )

BIG DATA Variety Data

BIG DATA Variety Velocity Data

Variety Velocity Volume Data Megabyte Gigabyte Terrabyte Petabyte BIG DATA

NSI Communication platform Statistical Service Plug and Play Architecture

NSI Communication platform Statistical Service Plug and Play Architecture Statistical Service

Velocity Megabyte Gigabyte Terrabyte Petabyte BIG DATA Data Methodological challange ?

NSI Communication platform Data CollectionValidationStatistical Service BIG DATA Methodological challanges Plausible case

NSI Communication platform Data Collection BIG DATA ValidationStatistical Service BIG DATA is data to big to have on premises ” ”

NSI Communication platform Data Collection BIG DATA ValidationStatistical Service Cloud hosting

NSI Communication platform Data CollectionValidationStatistical Service Data BIG DATA Data Data Data Data Data Data Data Data Data Unstructured data Well structured Data (GSIM) Cloud hosting

NSI Communication platform Data CollectionValidationStatistical Service Data BIG DATA Cloud hosting