FP7-ICT-2013-11-4.2. Scalable Data Analytics. Deadline: 16 April 2013 at 17:00:00 (Brussels local time)

Similar documents
Standards for Big Data in the Cloud

H2020-LEIT-ICT WP Big Data PPP

H2020-LEIT-ICT WP ICT 14, 15, 17,18. Big Data PPP

Sofware Engineering, Services and Cloud Computing

Ahmed BEN HAMIDA,Professor

DGE /DG Connect

WORK PROGRAMME Topic ICT 9: Tools and Methods for Software Development

Kimmo Rossi. European Commission DG CONNECT

A Roadmap for Future Architectures and Services for Manufacturing. Carsten Rückriegel Road4FAME-EU-Consultation Meeting Brussels, May, 22 nd 2015

ICT 7: Advanced cloud infrastructures and services. ICT 8: Boosting public sector productivity and innovation through cloud computing services

Challenges of Analytics

Workprogramme

ICT 9: Tools and Methods for Software Development

ICT WP Obj. 1.3 Internet of Things and Enterprise Environments

H2020-EUJ-2016: EU-Japan Joint Call. EUJ : IoT/Cloud/Big Data platforms in social application contexts

Concept and Project Objectives

Partnership for Progress Factories of the Future. December 2013 Maurizio Gattiglio Chairman

Challenge 2: Cognitive Systems and Robotics

Hadoop for Enterprises:

Future and Emerging Technologies in H2020. Ales Fiala FET DG CONNECT.C2

ESS event: Big Data in Official Statistics

ICT 10: Software Technologies

Kimmo Rossi. European Commission DG CONNECT

Collaborative Computational Projects: Networking and Core Support

R / TERR. Ana Costa e SIlva, PhD Senior Data Scientist TIBCO. Copyright TIBCO Software Inc.

Capgemini Big Data Analytics Sandbox for Financial Services

Factories of the Future FoF ICT in WP Danuta Seredynska DG CONNECT, European Commission Complex Systems & Advanced Computing (A3)

Energy efficiency in communication networks in Horizon 2020 perspective

Big Data better business benefits

APPROACHABLE ANALYTICS MAKING SENSE OF DATA

Big Data: Overview and Roadmap eglobaltech. All rights reserved.

PALANTIR CYBER An End-to-End Cyber Intelligence Platform for Analysis & Knowledge Management

The 5G Infrastructure Public-Private Partnership

Second Horizon 2020 Call Robotics ICT24

ICT 10: Software Technologies

EDUCATION AND EXAMINATION REGULATIONS PART B: programme-specific section MASTER S PROGRAMME IN INFORMATION STUDIES

Language Technologies in Europe: trends and future perspectives

Developing e-leadership

NMBP calls in Leadership in Enabling and Industrial Technologies Work Programme

BIG DATA AND ANALYTICS

PICTURE Project Final Event. 21 May 2014 Minsk, Belarus

Evolution of Meter Data Management

Towards a Thriving Data Economy: Open Data, Big Data, and Data Ecosystems

Council of the European Union Brussels, 13 February 2015 (OR. en)

How To Handle Big Data With A Data Scientist

XML enabled databases. Non relational databases. Guido Rotondi

ICT 7: Advanced cloud infrastructures and services

BIG DATA & ANALYTICS. Transforming the business and driving revenue through big data and analytics

Curriculum Multimedia Designer

Opportunities for African Participation in H2020. Research and Innovation Work Programme

European Cloud Computing Strategy

ESS event: Big Data in Official Statistics. Antonino Virgillito, Istat

Digital Asset Manager, Digital Curator. Cultural Informatics, Cultural/ Art ICT Manager

How To Improve The Performance Of Anatm

Big Data Analytics Roadmap Energy Industry

Scalable End-User Access to Big Data HELLENIC REPUBLIC National and Kapodistrian University of Athens

EU Threat Landscape Threat Analysis in Research ENISA Workshop Brussels 24th February 2015

A Strategic Approach to Unlock the Opportunities from Big Data

BigData Value PPP i Horizon 2020 Arne.J.Berre@sintef.no

Joint ICT Service ICT Strategy

Synergies between the Big Data Value (BDV) Public Private Partnership and the Helix Nebula Initiative (HNI)

Unleashing the Potential of Cloud Computing in Europe - What is it and what does it mean for me?

Big Data and New Paradigms in Information Management. Vladimir Videnovic Institute for Information Management

Analysing Big Data to Improve Patient Outcomes Dr Jean Evans, Kolling Institute of Medical Research

Head of Unit Network Technologies DG CONNECT European Commission

Analytic Modeling in Python

CRITEO INTERNSHIP PROGRAM 2015/2016

Digital Entrepreneurship: The EU vision, strategy and actions

Big Data 101: Harvest Real Value & Avoid Hollow Hype

Implementing an Information Governance Program CIGP Installment 2: Building Your IG Roadmap by Rick Wilson, Sherpa Software

Understanding the Value of In-Memory in the IT Landscape

European Big Data Value Strategic Research & Innovation Agenda

Introduction to Software Engineering. 9. Project Management

Proposal for the Theme on Big Data. Analytics. Qiang Yang, HKUST Jiannong Cao, PolyU Qi-man Shao, CUHK. May 2015

Personalized Medicine and IT

Strategies For Setting Up Your Organisation For Success With Big Data. Kevin Long Business Development Director Teradata

Website (Digital) & Mobile Optimisation. 10 April G-Cloud. service definitions

Dr. Vangelis OUZOUNIS Senior Expert Security Policies ENISA.

Portfolio: Transformation, Modernisation and Regulation

ASCETiC Whitepaper. Motivation. ASCETiC Toolbox Business Goals. Approach

FP7 ICT WP2013. Objective 8.2 Technology-enhanced learning. Unit G4 "Skills, Youth and Inclusion" DG CONNECT European Commission (Luxembourg)

A guide to ICT-related activities in WP

Transcription:

Scalable Data Analytics Deadline: 16 April 2013 at 17:00:00 (Brussels local time)

Agenda Time 14H30 Programme Overview of Objective 4.2 Scalable Data Analytics By Carola Carstens, European Commission, Project Officer Presentations by proposers Meet-the-Speakers 16H00 End of the session

4.2: Scalable Data Analytics Target Outcomes Tools and skills to deploy and manage robust and high performance data analytics processes over extremely large amounts of data. a) Scalable Algorithms, Software Frameworks, Visualisation (IPs, STREPs) b) Big Data Networking and Hardware Optimisations Roadmap (CSA) c) Societal Externalities of Big Data Roadmap (CSA)

4.2: Scalable Data Analytics Funding Schemes a) IPs, STREPs (26 M ) b), c): CSAs (5 M ) What is Big Data? When the size of the data becomes part of the problem that is to be solved Definition is domain-dependent Background Target a: Continuation of call 8.4.4 on big data (http://cordis.europa.eu/fp7/ict/content-knowledge/fp7-call8_en.html) Targets b, c: Bridge to H2020

4.2: Scalable Data Analytics Impact Advanced querying and analytics applications with sub-second response times over distributed information resources consisting of trillions of records. Ability to query or detect in real time complex events against dynamic feeds of millions of data streams generating hundreds of thousands of events per seconds.

4.2: Scalable Data Analytics Impact Visualization systems enabling exploratory analysis and manipulation without any perceptible delay on data resources containing billions of items. Enabling European suppliers to reach by 2020 a share of the Big Data market compatible with the size of our economy (30% of world market).

4.2 a): Scalable Algorithms, Software Frameworks, Visualisation (IP, STREP) Novel algorithms, software infrastructures and methodologies for real time interaction, visualization, analytics and decision support applications over extremely large volumes of data Structured or unstructured data with very high growth rates, especially stream data Non-traditional, robust database and storage solutions, data integrity protection tools

4.2 a): Scalable Algorithms, Software Frameworks, Visualisation (IP, STREP) Recommendations Highlight the challenge(s) in terms of data Point out the availability of extremely large and realistically complex data sets and/or streams from day 0 Describe sample of subjects for human factors testing (usability and effectiveness) Test the solution in a realistic environment of professional organisations with a clear stake in the solution and a clear path to deploying it, if effective

4.2 b): Big Data Networking and Hardware Optimisations Roadmap (CSA) Develop vision for future H2020 activities on the design of processing or networking hardware for optimising the performance of big data analytics Bring hardware and networking experts together with designers of algorithms and software frameworks and Big Data practitioners (interdisciplinary) The roadmap will chart advances in scalability and run-time performance energy efficiency and sound methods optimising capital versus operating costs of Big Data operations

4.2 b): Big Data Networking and Hardware Optimisations Roadmap (CSA) Recommendations Interdisciplinary, involve different communities: Big data R&D community Hardware & networking experts Empirical basis Involve EU industrial leaders Strategic roadmap

4.2 c): Societal Externalities of Big Data Roadmap (CSA) Social, legal, economic and technical study of externalities in the (re)use and linking of data to design a European data environment capable of amplifying positive externalities and minimize negative externalities Negative externalities: (not limited to) privacy risks Positive externalities: (not limited to) economic and legal models for efficient data markets

4.2 c): Societal Externalities of Big Data Roadmap (CSA) Recommendations Interdisciplinary: involve different communities, e.g. sociologists lawyers statisticians economists computer scientists... Address positive and negative externalities

4.2: Scalable Data Analytics References WP 2013, Annexes See links on https://ec.europa.eu/research/participants/portal/page/cooperation?callidentifier=fp7- ICT-2013-11 Call-specific eligibiligy & evaluation criteria See WP 2013 p.123-126 General eligbility & evaluation criteria See WP 2013 Annex 2 Minimum number of participants See WP 2013 Appendix 1

Additional Information Technical background document: http://cordis.europa.eu/info-management Pre-proposal service: Form at https://ec.europa.eu/research/participants/portal/page/cooperation?callidentifier=fp7-ict- 2013-11 Send to CNECT-G3@ec.europa.eu Come and visit us in objective booth 4.2 in Hall 1