DNV GL © 18-08-2015 SAFER, SMARTER, GREENER DNV GL © 15-06-2016 Tore Hartvigsen OIL & GAS Optique Project Dissemination 1 Summary.

Slides:



Advertisements
Similar presentations
1 Location of Partners and customers Who are our customers? MSSL Centre for Process engineering European Space Agency JOANNEUM RESEARCH Swedish Research.
Advertisements

The Integration of Biological Data Using Semantic Web Technologies Susie Stephens Principal Product Manager, Life Sciences Oracle
Design Guidelines for Primary and Social Care focus on the Modernisation agenda integration of care: Traditional GP services Community services Social.
1 Introduction to Data Management. Understand: meaning of data management history of managing data challenges in managing data approaches to managing.
Purpose: These slides are for use with customers by the Microsoft Dynamics NAV sales force and partners. How to use: Add these slides to the core customer.
Connecting Knowledge Silos using Federated Text Mining Guy Singh Senior Manager, Product & Strategic Alliances ©2014 Linguamatics Ltd.
Support Case Management API – Benefits and Availability
ASCR Data Science Centers Infrastructure Demonstration S. Canon, N. Desai, M. Ernst, K. Kleese-Van Dam, G. Shipman, B. Tierney.
Dial-in Number: OR Participant Passcode:
SERVING CORPORATES AND INDIVIDUALS ©2012 BUSINESS REPORTING MANAGEMENT SERVICES, INC WELCOME.
Quality and Experience 20 Years of Customer Business Analytics Successes.
PRODUCT FOCUS 3/3/14 – 3/17/14 INTRODUCTION Our Product Focus for the next two weeks is IBM. The opportunity afforded to us in becoming an Authorized.
ProjectWise Geospatial Management
From Relational to Semantics A Methodology Arka Mukherjee, Ph.D. Founder / CTO Global IDs David Schaengold Director,
PRODUCT FOCUS 4/14/14 – 4/25/14 INTRODUCTION Our Product Focus for the next two weeks is Microsoft Office 365. Office 365 is Microsoft’s most successful.
SmartER Semantic Cloud Sevices Karuna P Joshi University of Maryland, Baltimore County Advisors: Dr. Tim Finin, Dr. Yelena Yesha.
University of Adelaide Library Life Impact The University of Adelaide The well connected catalogue Patricia Scott, Denise Tobin and Helen Attar.
Project Management April 2015 Understand Project Management principles.
Future Access to the Scientific and Cultural Heritage – A shared Responsibility Birte Christensen-Dalsgaard State and University Library.
MS DB Proposal Scott Canaan B. Thomas Golisano College of Computing & Information Sciences.
DEVA Data Management Workshop Devil’s Hole Pupfish Project Data Management Workshop Devil’s Hole Pupfish Program Death Valley National Park Introduction.
DCMO - CIO Architecture Federation Pilot Larry Singer 5 January, 2012.
© 2012 TeraMedica, Inc. Big Data: Challenges and Opportunities for Healthcare Joe Paxton Healthcare and Life Sciences Sales Leader.
AXSYS ®.Process Overview. AXSYS Products AXSYS.Process – Process Engineering Environment for Front End Design & Engineering, providing an integrated Process.
DNV GL © SAFER, SMARTER, GREENER DNV GL © Second Annual Utility of the Future Pulse Survey Key Findings 1 July 15, 2015 Presentation to C/CAG RMCP.
SecureAware Building an Information Security Management System.
SC32 WG2 Metadata Standards Tutorial Metadata Registries and Big Data WG2 N1945 June 9, 2014 Beijing, China.
Semantic Web outlook and trends May The Past 24 Odd Years 1984 Lenat’s Cyc vision 1989 TBL’s Web vision 1991 DARPA Knowledge Sharing Effort 1996.
ON THE ROAD TO BUSINESS APPLICATIONS OF SEMANTIC WEB TECHNOLOGY Sematic Web in Business - How to Proceed IASW Kari Oinonen Kiertotie 14.
Project Management November 2014 Understand Project Management principles.
EU Project proposal. Andrei S. Lopatenko 1 EU Project Proposal CERIF-SW Andrei S. Lopatenko Vienna University of Technology
ELITE PROCESS REVIEW A TOOL FOR OUR TIMES PRESENTED BY SHELLEY ALVORD CPA.
XML The “E-Lance Economy” or “Digital Economy” is a new challenge for interacting over networks. XML was developed by the World Wide Web Consortium (W3C)
Attack Tool Repository and Player for ISEAGE May06-11 Abstract Today’s world is changing shape as it increases its dependency on computer technology. As.
Catawba County Board of Commissioners Retreat June 11, 2007 It is a great time to be an innovator 2007 Technology Strategic Plan *
SOA-02: Sonic SOA Products Overview Luis Maldonado Technical Product Manager Sonic Software.
IT Accessibility Committee Posting Proprietary Formats Prepared by the NYS Forum IT Accessibility Committee
ACGT: Open Grid Services for Improving Medical Knowledge Discovery Stelios G. Sfakianakis, FORTH.
Ontology – the benefits trail Matthew West. Why bother with Ontology? 2 Reduced Risk Identify Business Opportunities Responsive to change Increased effectiveness.
0 Archived presentation - 14 October This presentation may be deemed to include forward- looking statements relating to Reuters within the meaning.
OpenField Consolidates Stadium Data, Provides CRM and Analysis Functions for an Intelligent, End-to-End Solution COMPANY PROFILE : OPENFIELD Founded by.
Datalayer Notebook Allows Data Scientists to Play with Big Data, Build Innovative Models, and Share Results Easily on Microsoft Azure MICROSOFT AZURE ISV.
DNV GL © What’s around the Corner? Paal Johansen, VP & Regional Director, Americas New York, 29 th October 2015.
Concept Mapping: A Graphical System for Understanding the Relationship between Concepts. ERIC Digest.
Csilla Farkas Department of Computer Science and Engineering University of South Carolina
IoT Meets Big Data Standardization Considerations
EUREKA:Suite 영상가시화 및 시뮬레이션 연구실 석사 3 학기 이유경. Introducing EUREKA:Suite Complete Business intelligence easily Provides broadest range of business intelligence.
© ABB Inc. - 1 A robust portfolio of interoperable solutions Getting started with Industrial IT Certification Document# 3BSE042726, September 2005.
Your Data Any Place, Any Time Beyond Relational. Overview of Beyond Relational Applications Today Beyond Relational Feature Overview Whirlwind Feature.
© 2013 Gartner, Inc. and/or its affiliates. All rights reserved. Gartner is a registered trademark of Gartner, Inc. or its affiliates. The Value Review.
D E P A R T M E N T O F COMPUTER SCIENCE AND SYSTEMS ANALYSIS SCHOOL OF ENGINEERING & APPLIED SCIENCE O X F O R D O H I O MIAMI UNIVERSITY Business Intelligence.
Architecture Ecosystem SIG March 2010 Update Jacksonville FL.
Big Data Analytics Are we at risk? Dr. Csilla Farkas Director Center for Information Assurance Engineering (CIAE) Department of Computer Science and Engineering.
Connecting executives to meet America’s challenges January 2012 INFORMATIONAL BRIEFING Leading EDGE Program Overview.
SAP BI – The Solution at a Glance : SAP Business Intelligence is an enterprise-class, complete, open and integrated solution.
DNV GL © 2014 Ungraded 03 February 2016 SAFER, SMARTER, GREENER DNV GL © 2014 Ungraded 20 May 2016 for HealthInsight Smarter and more expedite search and.
DNV GL © 2013 SAFER, SMARTER, GREENER DNV GL © 2013 Lighting & Advanced Controls Pilot Programs for AEP Ohio and Consumers Energy (Ohio and Michigan) 1.
The Semantic Web & Content Managment Systems Ole Gulbrandsen, CTO Stand: E7049.
BI Performance Management. Business Issues Too much information: Create confusions Multiple version of Truth: Lack of Trusted information: Incomplete,
Agenda Federated Enterprise Architecture Vision
SNOMED CT Education SIG: Strategic Plan Review
Measuring Outputs, Preparing for Outcomes
of our Partners and Customers
Get Valid Microsoft MB2-715 Exam Study Guide - MB2-715 Questions Answers Realexamdumps.com
ArangoDB, with Microsoft Azure Functionality, Lets You Build Modern Applications on Top of Flexible, Multi-Model, Open-Source Database MICROSOFT AZURE.
ESS roadmap on Linked Open Data State of play
One-Stop Shop Manages All Technical Vendor Data and Documentation and is Globally Deployed Using Microsoft Azure to Support Asset Owners/Operators MICROSOFT.
Big Data Young Lee BUS 550.
Quasardb Is a Fast, Reliable, and Highly Scalable Application Database, Built on Microsoft Azure and Designed Not to Buckle Under Demand MICROSOFT AZURE.
Presentation transcript:

DNV GL © SAFER, SMARTER, GREENER DNV GL © Tore Hartvigsen OIL & GAS Optique Project Dissemination 1 Summary

DNV GL © Agenda - SUMMARY 1)Where do we stand relative to our vision 2)Challenges 3)Opportunities 4)What are the next steps? 2

DNV GL © Where do we come from? ISLANDS OF INFORMATION!

DNV GL © Where do we come from? ISLANDS OF INFORMATION! Data integration and exchange are major challenges!!

DNV GL © The ISLANDS are now growing into SILOS ! VOLUME increase

DNV GL © The ISLANDS are now growing into SILOS ! As volumes increase data integration becomes even more complex and critical!

DNV GL © 2014 CONFIDENTIAL 03 February 2016 The VARIETY of Information Sources Increases 7 PFD MEL P&ID Equipm. indexes Weight Loop/ term drawings 3D Models 2D schematics Documents Vendor Documents TR Vendor Drawings Certificates Data mapping schemes ontology Standard ontologies Cable routing Data sheets MTO Project control Cost control MC PC&C Risk Transmittals Tech. Anal. Enterprise Data Simulations

DNV GL © The VELOCITY of Data Generation and Change 8 (Copied from Wikipedia)

DNV GL © Veracity  Trustworthiness - reliability  Security  Data Quality Ulrich Schniedermeier: 9

DNV GL © How Can Semantic Technologies help us? The AAA slogan from the World Wide Web – A nybody can say A nything about A ny topic. Prerequisites:  Focus on information not on data formats  A data model where information about each single item can be published  A data model where data resources can be associated to each other  Data must be converted to RDF (Resource Definition Format)  Data must have unique identifiers 10

DNV GL © 2014 CONFIDENTIAL 03 February 2016 Prepared for Future Development Steps! 11 Project x2 x1 Project x1 Vendor information Client requirements Experience data User Ontology Project xn x1 Linked Data (relevant external sources) Standard ontologies

DNV GL © 2014 Ungraded 03 February 2016 OPTIQUE 12

DNV GL © Where do we stand today?  We can demonstrate capabilities within: – A full functioning Optique system – OBDA (Ontology Based Data Access) – Query transformation (SQL -> Sparql) – Processing of real time streams – We can offer a training program  We are still not clever in: – Analytics (built in analytic tools) – Variety (Integrating data from several different sources)  We can do better in Veracity: – Data Quality measures – Data security measures 13

DNV GL © What are THE NEXT STEPS?  Finalize the OPTIQUE project  Proposal for a continuation project delivered : PanOptique  Encourage additional industry take-up projects  SIRIUS center 14

DNV GL © panOptique 15

DNV GL © SAFER, SMARTER, GREENER Semantic Technologies 16 Tore Hartvigsen