SlideShare uma empresa Scribd logo
1 de 20
Baixar para ler offline
20/06/2012
                                  Tomás Pariente
Text Analytics and Big Data

     META-FORUM 2012
   Brussels, 20th June 2012




           Tomás Pariente
     Atos Research & Innovation




                  1
20/06/2012
    Table of Contents                       Tomás Pariente




1. Atos and why we are here
2. Examples
3. BIG: Big Data Public Private Forum




2
                                        2
20/06/2012
Atos:                                                            Tomás Pariente
The company

Atos is an international information technology
               services company,
   delivering hi-tech transactional services,
  consulting, systems integration and managed
                     services.


 ▶Annual revenues of € 8,7 billion (pro-forma 2010).
 ▶Over 78,500 business technologists worldwide
 in 42 countries.
 ▶Worldwide headquarters in Bezons / Paris, France.
 ▶Established on July 2011 with the integration of Atos Origin
 and Siemens IT Solutions and Services




                                              3
20/06/2012
Atos:                                                                       Tomás Pariente
From critical IT to business support


         Technology Services
             Consulting &




                                                                             Integration
                                                                              Systems
                                      Transforming    Delivering
                                  business through    seamless business
                                       innovation     systems
                                         leveraging
                                       Information
                                      Technologies



                                Advancing business    Transforming IT
                                  strategy through    infrastructure and
        Transactional




                                       innovative     business operations
           Services




                                                                             Services
                                                                             Managed
                               processing solutions   revenues




                                                         4
20/06/2012
Atos:                                                             Tomás Pariente
From vision to Innovation

Innovation is in our company DNA

Innovation can be seen everywhere and particularly:
▶ in our set of Innovative Offerings growing over 10% a year.
▶ in our innovation policy involving every single employee’s
  ideas through our social platforms.
▶ in the works of our scientific community actively upgrading
  our vision of the technologies for the future.
▶ in the Research and Innovation group of Atos, applying
  the latest research results to opportunities where clients
  need solutions that go beyond market’s offer.

This is how we are able to constantly propose new solutions
and ideas to our clients, and to help them invent their own new
way towards growth and profitability.




                                              5
20/06/2012
Atos Research & Innovation                                       Tomás Pariente
Main Activities

                                                            R&D&I since 1987
                                                          180 ongoing Projects
▶ Atos R&D hub                                           Of which, 105 EU R&D&I
▶ Involved in projects that combine advanced
  technological developments with commercial
                                                           Research »
  exploitation                                     ▶ Project management
▶ Usually working in international partnerships    ▶ Technical consulting
▶ A source of innovative ideas to be used by the   ▶ Technology development


                                         R&D
  company’s sales and technical staff              ▶ Market studies & project
                                                     results exploitation plans

                 Innovation »
                                          &I
                                                          Consulting »
          ▶ Bring research outcomes                ▶ Strategic R&D&I consulting
            to Atos’ customers
                                                   ▶ Emerging technologies
          ▶ Support the sales force as               expertise
            “technical backstage”
                                                   ▶ Technology watch
          ▶ Business development


                                              6
20/06/2012
Atos Research & Innovation                         Tomás Pariente
Why we are here: Knowledge Lab

▶ Main capabilities:
  – Semantic Technologies
  – Language Technologies
  – Big Data
  – Linked Data
      Semantics




                                Language
                            Technologies


                                              “Big Data and
                                              Semantics”
                                Data
                                Linked



  Big Data
                                             BIG Project

                                         7
20/06/2012
    Table of Contents                       Tomás Pariente




1. Atos and why we are here
2. Examples
3. BIG: Big Data Public Private Forum




8
                                        8
A use case in Atos: Olympic Games                20/06/2012
                                                 Tomás Pariente
(increasing demand of data processing, storage
and innovative applications)




                                    9
20/06/2012
Khresmoi Project                                                         Tomás Pariente



▶ KHRESMOI aims to build a multi-lingual, multi-modal search and access
  system for biomedical information and documents. The system will allow
  access to biomedical data:
     from many sources,
     analyzing and indexing multi-dimensional (2D, 3D, 4D)
      medical images,
     with improved search capabilities due to the integration of
      technologies to link the texts and images to facts in a
      knowledge base,

   in a multi-lingual environment,
     providing trustable results at a level of understandability
      adapted to the users.




                                                                       Integrated Project
                                                                      Sep 2010 - Aug 2014
                                                                    http://www.khresmoi.eu/

                                                         10
20/06/2012
A growing universe of                                  Tomás Pariente

unstructured data




… created and accessible from almost everywhere




     11
                                                  11
20/06/2012
A growing universe of                                  Tomás Pariente

unstructured data

                         … ¿cómo separar el grano
                               de la paja ?



… created and accessible from almost everywhere




                      … how to separate the wheat
                           from the chaff ?


     12
                                                  12
20/06/2012
FIRST Project                                       Tomás Pariente




          is to make available the relevant information
                 of the financial information space
       (including unreliable, unstructured, sentiment sources)
              to the decision maker in near-real time
                          in an automated way
                       http://project-first.eu
  13
                                       13
20/06/2012
FIRST                                                         Tomás Pariente
Mining the Web for financial texts
                                                 Some numbers
                                                   •176 Web sites
                                                   •2,671 RSS sources
                                                   •~40,000 documents per day
                                                   •>8,000,000 documents and growing
                                                   •~13,000 tweets per weekday, for
                                                        ~1,800 NASDAQ/NYSE stocks
                       Natural Language preprocessing   ($GOOG, $MSFT…)
                           and entity extraction

                                                        Sentiment              DSS



      Streaming
                                                         About
            Cleaning
                                                        Financial
                                                         objects

                                 Financial terms,
                             Companies, Instruments …


                                          14
20/06/2012
 Table of Contents                           Tomás Pariente




1. Atos and why we are here
2. Examples
3. BIG: Big Data Public Private Forum




15
                                        15
20/06/2012
BIG: Key facts                                            Tomás Pariente




▶   Type of project: Coordination Action (CA)
▶   Duration: 26 months
▶   August 2012 – October 2014
▶   Budget: 3,055 Meuro
▶   Funding: 2,5 Meuro
▶   Consortium: 11 partners

             Overall objective
     Address technical, business and policy
        aspects of Big Data with the aims of
    shaping the future of the area, positioning it
       in H2020 and bringing the necessary
        stakeholders into a self-sustainable
     industrially-led initiative to enhance EU
     competitiveness taking full advantage of
                     Big Data.


                                                     16
20/06/2012
BIG: project structure                                                                          Tomás Pariente



                                         Industry driven working groups

                                                                                                   Manufacturing,
                                                    Finance &               Telco, Media &
        Health            Public Sector                                                            Retail, Energy,
                                                    insurance               Entertainment
                                                                                                     Transport

                                              Needs              Supply


                                                    Value Chain

                                Data                       Data                   Data                  Data
 Data acquisition
                               analysis                  curation                storage                usage
                       • Data preprocessing
 • Structured data                                                                              • Decision support
                       • Semantic analysis     • Trust
 • Unstructured Data                                                      • RDBMS limitations   • Decision making
                       • Sentiment analysis    • Provenance
 • Event processing                                                       • NOSQL               • Automatic steps
                       • Other features        • Data augmentation
 • Sensors networks                                                       • Cloud storage       • Domain-specific
                         analysis              • Data validation
 • Streams                                                                                        usage
                       • Data correlation

                                                  Technical areas

                                                                     19
20/06/2012
BIG: major activities                                                                   Tomás Pariente




                    Technology state of art and sector analysis
           Definition of the proposed application      Assess the impact/applicability of the
                           sectors                             different technologies




                                   Roadmapping activity
              Individual roadmap elaboration                  Roadmap consolidation
                        (per sector)                             (cross-sectorial)




                             Big Data Public Private Forum
             Impact Assessment               Sustainability          Towards Horizon 2020



                                              Big Data
                                             initiavive
                                             definition


                                                         20
20/06/2012
BIG Philosophy                                                       Tomás Pariente




▶ Presence of the right profiles in the
  consortium to drive this process to the
  level of influence and impact we are             EIP, Digital Agenda,
  aiming for                                          EU Directives,          BIG Objective: Enable
▶ Involve stakeholders from EU industry            Economic Drivers…          and enhance mapping
                                                                               between TD and BU
  and officers at the right level                                                    issues
▶ An open philosophy will be applied to all
  the documents generated by the project,
  which will be made public to a wider
  community for active contribution and
  content validation.
▶ BIG is by nature a cross-disciplinary
  initiative with many angles.
▶ Reach a coherent and sensible result that         FP7 Projects, WG
  satisfies the research community and high         inputs, Research
  level decision makers at the same time.              agenda…
  Thus a top-down and bottom-up
  approach have been defined.


                                              21
Atos Research & Innovation
Tomás Pariente


Thank you

For more information please contact:

tomas.parientelobo@atosresearch.eu



Atos, the Atos logo, Atos Consulting, Atos Worldline, Atos Sphere,
Atos Cloud and Atos WorldGrid
are registered trademarks of Atos SA. June 2011

© 2011 Atos. Confidential information owned by Atos, to be used by
the recipient only. This document, or any part of it, may not be
reproduced, copied, circulated and/or distributed nor quoted without
prior written approval from Atos.


                            26/11/2012

Mais conteúdo relacionado

Mais procurados

Building blocks for fair digital society
Building blocks for fair digital societyBuilding blocks for fair digital society
Building blocks for fair digital societySitra / Hyvinvointi
 
EDF2014: Rüdiger Eichin, Research Manager at SAP AG, Germany: Deriving Value ...
EDF2014: Rüdiger Eichin, Research Manager at SAP AG, Germany: Deriving Value ...EDF2014: Rüdiger Eichin, Research Manager at SAP AG, Germany: Deriving Value ...
EDF2014: Rüdiger Eichin, Research Manager at SAP AG, Germany: Deriving Value ...European Data Forum
 
Science, Strategy and Sustainable Solutions, a Collaboration on the Direction...
Science, Strategy and Sustainable Solutions, a Collaboration on the Direction...Science, Strategy and Sustainable Solutions, a Collaboration on the Direction...
Science, Strategy and Sustainable Solutions, a Collaboration on the Direction...Ed Dodds
 
Introduction to EOSCpilot project and topical activities in the area of EOSC
Introduction to EOSCpilot project and topical activities in the area of EOSCIntroduction to EOSCpilot project and topical activities in the area of EOSC
Introduction to EOSCpilot project and topical activities in the area of EOSCEOSCpilot .eu
 
EDF2014: Nikolaos Loutas, Manager at PwC Belgium, Business Models for Linked ...
EDF2014: Nikolaos Loutas, Manager at PwC Belgium, Business Models for Linked ...EDF2014: Nikolaos Loutas, Manager at PwC Belgium, Business Models for Linked ...
EDF2014: Nikolaos Loutas, Manager at PwC Belgium, Business Models for Linked ...European Data Forum
 
EU Investment Programs in AI and Blockchain
EU Investment Programs in AI and Blockchain EU Investment Programs in AI and Blockchain
EU Investment Programs in AI and Blockchain Soren Gigler
 
EU- Digital Innovation and Scale Up Program
EU- Digital Innovation and Scale Up Program EU- Digital Innovation and Scale Up Program
EU- Digital Innovation and Scale Up Program Soren Gigler
 
Closing the Investment Gap for Deep Tech in Europe
Closing the Investment Gap for Deep Tech in Europe Closing the Investment Gap for Deep Tech in Europe
Closing the Investment Gap for Deep Tech in Europe Soren Gigler
 
About OPEN DEI
About OPEN DEIAbout OPEN DEI
About OPEN DEIOPEN DEI
 
Evolution of Data Spaces
Evolution of Data SpacesEvolution of Data Spaces
Evolution of Data SpacesBoris Otto
 

Mais procurados (20)

European Data Spaces
European Data SpacesEuropean Data Spaces
European Data Spaces
 
The EC strategy to enable data sharing spaces
The EC strategy to enable data sharing spacesThe EC strategy to enable data sharing spaces
The EC strategy to enable data sharing spaces
 
Building blocks for fair digital society
Building blocks for fair digital societyBuilding blocks for fair digital society
Building blocks for fair digital society
 
H2020 fines cluster 20130506 for upload
H2020   fines cluster 20130506  for uploadH2020   fines cluster 20130506  for upload
H2020 fines cluster 20130506 for upload
 
EDF2014: Rüdiger Eichin, Research Manager at SAP AG, Germany: Deriving Value ...
EDF2014: Rüdiger Eichin, Research Manager at SAP AG, Germany: Deriving Value ...EDF2014: Rüdiger Eichin, Research Manager at SAP AG, Germany: Deriving Value ...
EDF2014: Rüdiger Eichin, Research Manager at SAP AG, Germany: Deriving Value ...
 
Fitman presentation for fines
Fitman presentation for finesFitman presentation for fines
Fitman presentation for fines
 
Pf
PfPf
Pf
 
BDVA default slide pack
BDVA default slide packBDVA default slide pack
BDVA default slide pack
 
Man sze li fn-es_presentation_130506
Man sze li fn-es_presentation_130506Man sze li fn-es_presentation_130506
Man sze li fn-es_presentation_130506
 
Science, Strategy and Sustainable Solutions, a Collaboration on the Direction...
Science, Strategy and Sustainable Solutions, a Collaboration on the Direction...Science, Strategy and Sustainable Solutions, a Collaboration on the Direction...
Science, Strategy and Sustainable Solutions, a Collaboration on the Direction...
 
Introduction to EOSCpilot project and topical activities in the area of EOSC
Introduction to EOSCpilot project and topical activities in the area of EOSCIntroduction to EOSCpilot project and topical activities in the area of EOSC
Introduction to EOSCpilot project and topical activities in the area of EOSC
 
Sitra data strategy
Sitra data strategySitra data strategy
Sitra data strategy
 
EDF2014: Nikolaos Loutas, Manager at PwC Belgium, Business Models for Linked ...
EDF2014: Nikolaos Loutas, Manager at PwC Belgium, Business Models for Linked ...EDF2014: Nikolaos Loutas, Manager at PwC Belgium, Business Models for Linked ...
EDF2014: Nikolaos Loutas, Manager at PwC Belgium, Business Models for Linked ...
 
EU Investment Programs in AI and Blockchain
EU Investment Programs in AI and Blockchain EU Investment Programs in AI and Blockchain
EU Investment Programs in AI and Blockchain
 
EU- Digital Innovation and Scale Up Program
EU- Digital Innovation and Scale Up Program EU- Digital Innovation and Scale Up Program
EU- Digital Innovation and Scale Up Program
 
F in es_pp_caps v01
F in es_pp_caps v01F in es_pp_caps v01
F in es_pp_caps v01
 
20170125 christoph heitz data and_service pres 146
20170125 christoph heitz data and_service pres 14620170125 christoph heitz data and_service pres 146
20170125 christoph heitz data and_service pres 146
 
Closing the Investment Gap for Deep Tech in Europe
Closing the Investment Gap for Deep Tech in Europe Closing the Investment Gap for Deep Tech in Europe
Closing the Investment Gap for Deep Tech in Europe
 
About OPEN DEI
About OPEN DEIAbout OPEN DEI
About OPEN DEI
 
Evolution of Data Spaces
Evolution of Data SpacesEvolution of Data Spaces
Evolution of Data Spaces
 

Destaque

Lace project transforming workplace learning in manufacturing printable
Lace project transforming workplace learning in manufacturing printableLace project transforming workplace learning in manufacturing printable
Lace project transforming workplace learning in manufacturing printableFabrizio Cardinali
 
Technology Transformation Services
Technology Transformation ServicesTechnology Transformation Services
Technology Transformation ServicesAtos
 
Data Pioneers - Roland Haeve (Atos Nederland) - Big data in organisaties
Data Pioneers - Roland Haeve (Atos Nederland) - Big data in organisatiesData Pioneers - Roland Haeve (Atos Nederland) - Big data in organisaties
Data Pioneers - Roland Haeve (Atos Nederland) - Big data in organisatiesMultiscope
 
Progress Reports
Progress ReportsProgress Reports
Progress Reportsmsilberberg
 
Social Network: guida ad un utilizzo consapevole
Social Network: guida ad un utilizzo consapevoleSocial Network: guida ad un utilizzo consapevole
Social Network: guida ad un utilizzo consapevoleAlessandro Grechi
 
Projekt centrum społecznosciowe w Wieży Ciśnień- spotkanie I
Projekt centrum społecznosciowe w Wieży Ciśnień- spotkanie IProjekt centrum społecznosciowe w Wieży Ciśnień- spotkanie I
Projekt centrum społecznosciowe w Wieży Ciśnień- spotkanie IMagdalena Górska
 
Supporting Newcomers in Software Development Projects
Supporting Newcomers in Software Development ProjectsSupporting Newcomers in Software Development Projects
Supporting Newcomers in Software Development ProjectsSebastiano Panichella
 
GIS- How to Look for people
GIS- How to Look for peopleGIS- How to Look for people
GIS- How to Look for peopleaiesechyderabad
 
Fse2012 - Who is going to Mentor Newcomers in Open Source Projects?
Fse2012 - Who is going to Mentor Newcomers in Open Source Projects?Fse2012 - Who is going to Mentor Newcomers in Open Source Projects?
Fse2012 - Who is going to Mentor Newcomers in Open Source Projects?Sebastiano Panichella
 
Using IR methods for labeling source code artifacts: Is it worthwhile?
Using IR methods for labeling source code artifacts: Is it worthwhile?Using IR methods for labeling source code artifacts: Is it worthwhile?
Using IR methods for labeling source code artifacts: Is it worthwhile?Sebastiano Panichella
 
Using questions and answers on Milkround
Using questions and answers on MilkroundUsing questions and answers on Milkround
Using questions and answers on MilkroundMilkround
 
Development Emails Content Analyzer: Intention Mining in Developer Discussions
Development Emails Content Analyzer: Intention Mining in Developer DiscussionsDevelopment Emails Content Analyzer: Intention Mining in Developer Discussions
Development Emails Content Analyzer: Intention Mining in Developer DiscussionsSebastiano Panichella
 
Peralatan teknologi informasi dan komunikasi
Peralatan teknologi informasi dan komunikasiPeralatan teknologi informasi dan komunikasi
Peralatan teknologi informasi dan komunikasilabiebm
 
24 x 7 leadership factory
24 x 7 leadership factory24 x 7 leadership factory
24 x 7 leadership factoryaiesechyderabad
 

Destaque (20)

Lace project transforming workplace learning in manufacturing printable
Lace project transforming workplace learning in manufacturing printableLace project transforming workplace learning in manufacturing printable
Lace project transforming workplace learning in manufacturing printable
 
Technology Transformation Services
Technology Transformation ServicesTechnology Transformation Services
Technology Transformation Services
 
Data Pioneers - Roland Haeve (Atos Nederland) - Big data in organisaties
Data Pioneers - Roland Haeve (Atos Nederland) - Big data in organisatiesData Pioneers - Roland Haeve (Atos Nederland) - Big data in organisaties
Data Pioneers - Roland Haeve (Atos Nederland) - Big data in organisaties
 
Progress Reports
Progress ReportsProgress Reports
Progress Reports
 
Social Network: guida ad un utilizzo consapevole
Social Network: guida ad un utilizzo consapevoleSocial Network: guida ad un utilizzo consapevole
Social Network: guida ad un utilizzo consapevole
 
Projekt centrum społecznosciowe w Wieży Ciśnień- spotkanie I
Projekt centrum społecznosciowe w Wieży Ciśnień- spotkanie IProjekt centrum społecznosciowe w Wieży Ciśnień- spotkanie I
Projekt centrum społecznosciowe w Wieży Ciśnień- spotkanie I
 
Supporting Newcomers in Software Development Projects
Supporting Newcomers in Software Development ProjectsSupporting Newcomers in Software Development Projects
Supporting Newcomers in Software Development Projects
 
GIS- How to Look for people
GIS- How to Look for peopleGIS- How to Look for people
GIS- How to Look for people
 
The skeletal system
The skeletal systemThe skeletal system
The skeletal system
 
Fse2012 - Who is going to Mentor Newcomers in Open Source Projects?
Fse2012 - Who is going to Mentor Newcomers in Open Source Projects?Fse2012 - Who is going to Mentor Newcomers in Open Source Projects?
Fse2012 - Who is going to Mentor Newcomers in Open Source Projects?
 
Faculty review
Faculty reviewFaculty review
Faculty review
 
Using IR methods for labeling source code artifacts: Is it worthwhile?
Using IR methods for labeling source code artifacts: Is it worthwhile?Using IR methods for labeling source code artifacts: Is it worthwhile?
Using IR methods for labeling source code artifacts: Is it worthwhile?
 
A mapa historia
A mapa historiaA mapa historia
A mapa historia
 
Using questions and answers on Milkround
Using questions and answers on MilkroundUsing questions and answers on Milkround
Using questions and answers on Milkround
 
Development Emails Content Analyzer: Intention Mining in Developer Discussions
Development Emails Content Analyzer: Intention Mining in Developer DiscussionsDevelopment Emails Content Analyzer: Intention Mining in Developer Discussions
Development Emails Content Analyzer: Intention Mining in Developer Discussions
 
Peralatan teknologi informasi dan komunikasi
Peralatan teknologi informasi dan komunikasiPeralatan teknologi informasi dan komunikasi
Peralatan teknologi informasi dan komunikasi
 
Xd sona
Xd sonaXd sona
Xd sona
 
24 x 7 leadership factory
24 x 7 leadership factory24 x 7 leadership factory
24 x 7 leadership factory
 
Je m´entends bien
Je m´entends bienJe m´entends bien
Je m´entends bien
 
¿como ingra
¿como ingra¿como ingra
¿como ingra
 

Semelhante a Big Data Public-Private Forum_Meta Forum 2012

1010oasis green it j_friedrich
1010oasis green it j_friedrich1010oasis green it j_friedrich
1010oasis green it j_friedrichJochen Friedrich
 
Sirris innovate 2012 Steria
Sirris innovate 2012   SteriaSirris innovate 2012   Steria
Sirris innovate 2012 SteriaSirris
 
2019 04-30 MIDIH solutions and DIHIWARE platform
2019 04-30 MIDIH solutions and DIHIWARE platform2019 04-30 MIDIH solutions and DIHIWARE platform
2019 04-30 MIDIH solutions and DIHIWARE platformMIDIH_EU
 
Beyond CIO - Will there still be Architecture Management in 2025
Beyond CIO - Will there still be Architecture Management in 2025Beyond CIO - Will there still be Architecture Management in 2025
Beyond CIO - Will there still be Architecture Management in 2025LeanIX GmbH
 
Sirris Innovate2011 Introduction - Smart Products: why and how, Jeroen Deleu,...
Sirris Innovate2011 Introduction - Smart Products: why and how, Jeroen Deleu,...Sirris Innovate2011 Introduction - Smart Products: why and how, Jeroen Deleu,...
Sirris Innovate2011 Introduction - Smart Products: why and how, Jeroen Deleu,...Sirris
 
Tieto presentation 2014 fina lshort
Tieto presentation 2014 fina lshortTieto presentation 2014 fina lshort
Tieto presentation 2014 fina lshortSophia Boleckis
 
Session 4 - A practical journey on how to use the DataBench Toolbox
Session 4 - A practical journey on how to use the DataBench ToolboxSession 4 - A practical journey on how to use the DataBench Toolbox
Session 4 - A practical journey on how to use the DataBench ToolboxDataBench
 
Ontology engineering ESTC2008
Ontology engineering ESTC2008Ontology engineering ESTC2008
Ontology engineering ESTC2008Elena Simperl
 
Financing your R&D in the Paris Region
Financing your R&D in the Paris RegionFinancing your R&D in the Paris Region
Financing your R&D in the Paris RegionMbuhotlaunay
 
EDF2014: Stefan Wrobel, Institute Director, Fraunhofer IAIS / Member of the b...
EDF2014: Stefan Wrobel, Institute Director, Fraunhofer IAIS / Member of the b...EDF2014: Stefan Wrobel, Institute Director, Fraunhofer IAIS / Member of the b...
EDF2014: Stefan Wrobel, Institute Director, Fraunhofer IAIS / Member of the b...European Data Forum
 
Group Profile 2009 Eng
Group Profile 2009 EngGroup Profile 2009 Eng
Group Profile 2009 Engnbossi
 
Big Data World Asia 2012
Big Data World Asia 2012Big Data World Asia 2012
Big Data World Asia 2012carrielim
 
Green ICT - Sustainability, Effectiveness and company maturity
Green ICT - Sustainability, Effectiveness and company maturityGreen ICT - Sustainability, Effectiveness and company maturity
Green ICT - Sustainability, Effectiveness and company maturityICT FOOTPRINT .eu
 
Develop your international growth with Deveho Consulting Group and SAGE X3
Develop your international growth with Deveho Consulting Group and SAGE X3 Develop your international growth with Deveho Consulting Group and SAGE X3
Develop your international growth with Deveho Consulting Group and SAGE X3 PAULBODO
 
Big Data Brussels 2019 v.4.0 I 'How to Build Big Data Analytics Capabilities ...
Big Data Brussels 2019 v.4.0 I 'How to Build Big Data Analytics Capabilities ...Big Data Brussels 2019 v.4.0 I 'How to Build Big Data Analytics Capabilities ...
Big Data Brussels 2019 v.4.0 I 'How to Build Big Data Analytics Capabilities ...Dataconomy Media
 
Abhishek Rungta Workshop Digital Innovation - A Practical Guide For Businesses
Abhishek Rungta Workshop Digital Innovation - A Practical Guide For BusinessesAbhishek Rungta Workshop Digital Innovation - A Practical Guide For Businesses
Abhishek Rungta Workshop Digital Innovation - A Practical Guide For BusinessesIndus Net Technologies
 
EDI's view on Digital Innovation Hubs Working Group Meeting on Big Data and A...
EDI's view on Digital Innovation Hubs Working Group Meeting on Big Data and A...EDI's view on Digital Innovation Hubs Working Group Meeting on Big Data and A...
EDI's view on Digital Innovation Hubs Working Group Meeting on Big Data and A...European Data Incubator (EDI)
 

Semelhante a Big Data Public-Private Forum_Meta Forum 2012 (20)

Atos Powering progress
Atos Powering progressAtos Powering progress
Atos Powering progress
 
1010oasis green it j_friedrich
1010oasis green it j_friedrich1010oasis green it j_friedrich
1010oasis green it j_friedrich
 
Sirris innovate 2012 Steria
Sirris innovate 2012   SteriaSirris innovate 2012   Steria
Sirris innovate 2012 Steria
 
2011 Gartner Symposium Launch Day
2011 Gartner Symposium Launch Day2011 Gartner Symposium Launch Day
2011 Gartner Symposium Launch Day
 
2019 04-30 MIDIH solutions and DIHIWARE platform
2019 04-30 MIDIH solutions and DIHIWARE platform2019 04-30 MIDIH solutions and DIHIWARE platform
2019 04-30 MIDIH solutions and DIHIWARE platform
 
Beyond CIO - Will there still be Architecture Management in 2025
Beyond CIO - Will there still be Architecture Management in 2025Beyond CIO - Will there still be Architecture Management in 2025
Beyond CIO - Will there still be Architecture Management in 2025
 
Sirris Innovate2011 Introduction - Smart Products: why and how, Jeroen Deleu,...
Sirris Innovate2011 Introduction - Smart Products: why and how, Jeroen Deleu,...Sirris Innovate2011 Introduction - Smart Products: why and how, Jeroen Deleu,...
Sirris Innovate2011 Introduction - Smart Products: why and how, Jeroen Deleu,...
 
Tieto presentation 2014 fina lshort
Tieto presentation 2014 fina lshortTieto presentation 2014 fina lshort
Tieto presentation 2014 fina lshort
 
Session 4 - A practical journey on how to use the DataBench Toolbox
Session 4 - A practical journey on how to use the DataBench ToolboxSession 4 - A practical journey on how to use the DataBench Toolbox
Session 4 - A practical journey on how to use the DataBench Toolbox
 
Ontology engineering ESTC2008
Ontology engineering ESTC2008Ontology engineering ESTC2008
Ontology engineering ESTC2008
 
Financing your R&D in the Paris Region
Financing your R&D in the Paris RegionFinancing your R&D in the Paris Region
Financing your R&D in the Paris Region
 
EDF2014: Stefan Wrobel, Institute Director, Fraunhofer IAIS / Member of the b...
EDF2014: Stefan Wrobel, Institute Director, Fraunhofer IAIS / Member of the b...EDF2014: Stefan Wrobel, Institute Director, Fraunhofer IAIS / Member of the b...
EDF2014: Stefan Wrobel, Institute Director, Fraunhofer IAIS / Member of the b...
 
Group Profile 2009 Eng
Group Profile 2009 EngGroup Profile 2009 Eng
Group Profile 2009 Eng
 
Big Data World Asia 2012
Big Data World Asia 2012Big Data World Asia 2012
Big Data World Asia 2012
 
Co-creation
Co-creationCo-creation
Co-creation
 
Green ICT - Sustainability, Effectiveness and company maturity
Green ICT - Sustainability, Effectiveness and company maturityGreen ICT - Sustainability, Effectiveness and company maturity
Green ICT - Sustainability, Effectiveness and company maturity
 
Develop your international growth with Deveho Consulting Group and SAGE X3
Develop your international growth with Deveho Consulting Group and SAGE X3 Develop your international growth with Deveho Consulting Group and SAGE X3
Develop your international growth with Deveho Consulting Group and SAGE X3
 
Big Data Brussels 2019 v.4.0 I 'How to Build Big Data Analytics Capabilities ...
Big Data Brussels 2019 v.4.0 I 'How to Build Big Data Analytics Capabilities ...Big Data Brussels 2019 v.4.0 I 'How to Build Big Data Analytics Capabilities ...
Big Data Brussels 2019 v.4.0 I 'How to Build Big Data Analytics Capabilities ...
 
Abhishek Rungta Workshop Digital Innovation - A Practical Guide For Businesses
Abhishek Rungta Workshop Digital Innovation - A Practical Guide For BusinessesAbhishek Rungta Workshop Digital Innovation - A Practical Guide For Businesses
Abhishek Rungta Workshop Digital Innovation - A Practical Guide For Businesses
 
EDI's view on Digital Innovation Hubs Working Group Meeting on Big Data and A...
EDI's view on Digital Innovation Hubs Working Group Meeting on Big Data and A...EDI's view on Digital Innovation Hubs Working Group Meeting on Big Data and A...
EDI's view on Digital Innovation Hubs Working Group Meeting on Big Data and A...
 

Big Data Public-Private Forum_Meta Forum 2012

  • 1. 20/06/2012 Tomás Pariente Text Analytics and Big Data META-FORUM 2012 Brussels, 20th June 2012 Tomás Pariente Atos Research & Innovation 1
  • 2. 20/06/2012 Table of Contents Tomás Pariente 1. Atos and why we are here 2. Examples 3. BIG: Big Data Public Private Forum 2 2
  • 3. 20/06/2012 Atos: Tomás Pariente The company Atos is an international information technology services company, delivering hi-tech transactional services, consulting, systems integration and managed services. ▶Annual revenues of € 8,7 billion (pro-forma 2010). ▶Over 78,500 business technologists worldwide in 42 countries. ▶Worldwide headquarters in Bezons / Paris, France. ▶Established on July 2011 with the integration of Atos Origin and Siemens IT Solutions and Services 3
  • 4. 20/06/2012 Atos: Tomás Pariente From critical IT to business support Technology Services Consulting & Integration Systems Transforming Delivering business through seamless business innovation systems leveraging Information Technologies Advancing business Transforming IT strategy through infrastructure and Transactional innovative business operations Services Services Managed processing solutions revenues 4
  • 5. 20/06/2012 Atos: Tomás Pariente From vision to Innovation Innovation is in our company DNA Innovation can be seen everywhere and particularly: ▶ in our set of Innovative Offerings growing over 10% a year. ▶ in our innovation policy involving every single employee’s ideas through our social platforms. ▶ in the works of our scientific community actively upgrading our vision of the technologies for the future. ▶ in the Research and Innovation group of Atos, applying the latest research results to opportunities where clients need solutions that go beyond market’s offer. This is how we are able to constantly propose new solutions and ideas to our clients, and to help them invent their own new way towards growth and profitability. 5
  • 6. 20/06/2012 Atos Research & Innovation Tomás Pariente Main Activities R&D&I since 1987 180 ongoing Projects ▶ Atos R&D hub Of which, 105 EU R&D&I ▶ Involved in projects that combine advanced technological developments with commercial Research » exploitation ▶ Project management ▶ Usually working in international partnerships ▶ Technical consulting ▶ A source of innovative ideas to be used by the ▶ Technology development R&D company’s sales and technical staff ▶ Market studies & project results exploitation plans Innovation » &I Consulting » ▶ Bring research outcomes ▶ Strategic R&D&I consulting to Atos’ customers ▶ Emerging technologies ▶ Support the sales force as expertise “technical backstage” ▶ Technology watch ▶ Business development 6
  • 7. 20/06/2012 Atos Research & Innovation Tomás Pariente Why we are here: Knowledge Lab ▶ Main capabilities: – Semantic Technologies – Language Technologies – Big Data – Linked Data Semantics Language Technologies “Big Data and Semantics” Data Linked Big Data BIG Project 7
  • 8. 20/06/2012 Table of Contents Tomás Pariente 1. Atos and why we are here 2. Examples 3. BIG: Big Data Public Private Forum 8 8
  • 9. A use case in Atos: Olympic Games 20/06/2012 Tomás Pariente (increasing demand of data processing, storage and innovative applications) 9
  • 10. 20/06/2012 Khresmoi Project Tomás Pariente ▶ KHRESMOI aims to build a multi-lingual, multi-modal search and access system for biomedical information and documents. The system will allow access to biomedical data:  from many sources,  analyzing and indexing multi-dimensional (2D, 3D, 4D) medical images,  with improved search capabilities due to the integration of technologies to link the texts and images to facts in a knowledge base,  in a multi-lingual environment,  providing trustable results at a level of understandability adapted to the users. Integrated Project Sep 2010 - Aug 2014 http://www.khresmoi.eu/ 10
  • 11. 20/06/2012 A growing universe of Tomás Pariente unstructured data … created and accessible from almost everywhere 11 11
  • 12. 20/06/2012 A growing universe of Tomás Pariente unstructured data … ¿cómo separar el grano de la paja ? … created and accessible from almost everywhere … how to separate the wheat from the chaff ? 12 12
  • 13. 20/06/2012 FIRST Project Tomás Pariente is to make available the relevant information of the financial information space (including unreliable, unstructured, sentiment sources) to the decision maker in near-real time in an automated way http://project-first.eu 13 13
  • 14. 20/06/2012 FIRST Tomás Pariente Mining the Web for financial texts Some numbers •176 Web sites •2,671 RSS sources •~40,000 documents per day •>8,000,000 documents and growing •~13,000 tweets per weekday, for ~1,800 NASDAQ/NYSE stocks Natural Language preprocessing ($GOOG, $MSFT…) and entity extraction Sentiment DSS Streaming About Cleaning Financial objects Financial terms, Companies, Instruments … 14
  • 15. 20/06/2012 Table of Contents Tomás Pariente 1. Atos and why we are here 2. Examples 3. BIG: Big Data Public Private Forum 15 15
  • 16. 20/06/2012 BIG: Key facts Tomás Pariente ▶ Type of project: Coordination Action (CA) ▶ Duration: 26 months ▶ August 2012 – October 2014 ▶ Budget: 3,055 Meuro ▶ Funding: 2,5 Meuro ▶ Consortium: 11 partners Overall objective Address technical, business and policy aspects of Big Data with the aims of shaping the future of the area, positioning it in H2020 and bringing the necessary stakeholders into a self-sustainable industrially-led initiative to enhance EU competitiveness taking full advantage of Big Data. 16
  • 17. 20/06/2012 BIG: project structure Tomás Pariente Industry driven working groups Manufacturing, Finance & Telco, Media & Health Public Sector Retail, Energy, insurance Entertainment Transport Needs Supply Value Chain Data Data Data Data Data acquisition analysis curation storage usage • Data preprocessing • Structured data • Decision support • Semantic analysis • Trust • Unstructured Data • RDBMS limitations • Decision making • Sentiment analysis • Provenance • Event processing • NOSQL • Automatic steps • Other features • Data augmentation • Sensors networks • Cloud storage • Domain-specific analysis • Data validation • Streams usage • Data correlation Technical areas 19
  • 18. 20/06/2012 BIG: major activities Tomás Pariente Technology state of art and sector analysis Definition of the proposed application Assess the impact/applicability of the sectors different technologies Roadmapping activity Individual roadmap elaboration Roadmap consolidation (per sector) (cross-sectorial) Big Data Public Private Forum Impact Assessment Sustainability Towards Horizon 2020 Big Data initiavive definition 20
  • 19. 20/06/2012 BIG Philosophy Tomás Pariente ▶ Presence of the right profiles in the consortium to drive this process to the level of influence and impact we are EIP, Digital Agenda, aiming for EU Directives, BIG Objective: Enable ▶ Involve stakeholders from EU industry Economic Drivers… and enhance mapping between TD and BU and officers at the right level issues ▶ An open philosophy will be applied to all the documents generated by the project, which will be made public to a wider community for active contribution and content validation. ▶ BIG is by nature a cross-disciplinary initiative with many angles. ▶ Reach a coherent and sensible result that FP7 Projects, WG satisfies the research community and high inputs, Research level decision makers at the same time. agenda… Thus a top-down and bottom-up approach have been defined. 21
  • 20. Atos Research & Innovation Tomás Pariente Thank you For more information please contact: tomas.parientelobo@atosresearch.eu Atos, the Atos logo, Atos Consulting, Atos Worldline, Atos Sphere, Atos Cloud and Atos WorldGrid are registered trademarks of Atos SA. June 2011 © 2011 Atos. Confidential information owned by Atos, to be used by the recipient only. This document, or any part of it, may not be reproduced, copied, circulated and/or distributed nor quoted without prior written approval from Atos. 26/11/2012