Ontologies in the Context of Cloud Computing and Big Data



Similar documents
What to Look for When Selecting a Master Data Management Solution

Service Oriented Architecture (SOA) An Introduction

SERVICE-ORIENTED MODELING FRAMEWORK (SOMF ) SERVICE-ORIENTED SOFTWARE ARCHITECTURE MODEL LANGUAGE SPECIFICATIONS

for Oil & Gas Industry

SIMATIC IT Production Suite Answers for industry.

SERVICE-ORIENTED MODELING FRAMEWORK (SOMF ) SERVICE-ORIENTED BUSINESS INTEGRATION MODEL LANGUAGE SPECIFICATIONS

Increasing Efficiency across the Value Chain with Master Data Management

INFO What are business processes? How are they related to information systems?

FITMAN Future Internet Enablers for the Sensing Enterprise: A FIWARE Approach & Industrial Trialing

Business Proposition. Digital Asset Management. Media Intelligent

Web Services - Consultant s View. From IT Stategy to IT Architecture. Agenda. Introduction

Business Process Framework R8.0

Ten Ways to Generate Higher Returns from Your Innovation Investments

Bentley Systems Launches AssetWise Initiative for Operating and Sustaining Infrastructure Assets

Big Data Integration: A Buyer's Guide

Deriving Business Intelligence from Unstructured Data

Cisco Cloud Enablement Services for Adopting Clouds

NSF Workshop: High Priority Research Areas on Integrated Sensor, Control and Platform Modeling for Smart Manufacturing

Engage your customers

The ebbits project: from the Internet of Things to Food Traceability

Automation Systems and the IoT Industrial Internet

The Internet of Things (IoT) is one of the most important technological trends of recent years.

Medical equipment development solutions. Siemens PLM Software

CONNECTING DATA WITH BUSINESS

Successful Outsourcing of Data Warehouse Support

Klarna Tech Talk: Mind the Data! Jeff Pollock InfoSphere Information Integration & Governance

A discussion of information integration solutions November Deploying a Center of Excellence for data integration.

Digital Integration Streamlining the Delivery of Compliant Promotional Content

IBM & Cloud Computing. Smarter Planet. John Easton UK & Ireland Cloud Computing Technical Leader

Horizontal IoT Application Development using Semantic Web Technologies

EMC PERSPECTIVE. The Private Cloud for Healthcare Enables Coordinated Patient Care

Hubspan White Paper: Beyond Traditional EDI

IBM Software A Journey to Adaptive MDM

Data Governance Best Practice

The Informatica Platform for the United States Air Force

Smart Manufacturing as a Real-Time Networked Enterprise and a Market-Driven Innovation Platform

Research Report: Designing an M2M Platform For The Connected World

Team A SaaS Strategy

NIST Big Data Phase I Public Working Group

Accenture and Oracle: Leading the IoT Revolution

Enterprise SOA Strategy, Planning and Operations with Agile Techniques, Virtualization and Cloud Computing

5 Best Practices for SAP Master Data Governance

The cloud analytics report is expected to help the market leaders/new entrants in this market in the following ways:

Three Fundamental Techniques To Maximize the Value of Your Enterprise Data

Master Data Management. Zahra Mansoori

ENTERPRISE BI AND DATA DISCOVERY, FINALLY

TURKEY BUSINESS ANALYSIS REPORT Thinking Like the Business

Building Decision Support through Dynamic Workflow Systems for Health Care Ontology Focus. Tanay Sharma B

Siemens Future HANNOVER MESSE Internet of Things and Services Guido Stephan

Using Master Data in Business Intelligence

Introduction to TIBCO MDM

Soar Technology Knowledge Management System (KMS)

Big Data Standardisation in Industry and Research

Social Media: Was kommt als nächstes?

Enabling the SmartGrid through Cloud Computing

Cisco Process Orchestrator Adapter for Cisco UCS Manager: Automate Enterprise IT Workflows

NASCIO EA Development Tool-Kit Solution Architecture. Version 3.0

AIOTI ALLIANCE FOR INTERNET OF THINGS INNOVATION

EL Program: Smart Manufacturing Systems Design and Analysis

How Transactional Analytics is Changing the Future of Business A look at the options, use cases, and anti-patterns

!!!!! White Paper. Understanding The Role of Data Governance To Support A Self-Service Environment. Sponsored by

Semantic Integration in Enterprise Information Management

Optimize workloads to achieve success with cloud and big data

A Customer Centric Digital Platform For Utilities. A Joint Capgemini and Pegasystems Solution

Master Data Management Architecture

Why Your Library Should Move to Ex Libris Alma. An Ex Libris Alma Solution Brief

Workflow. The key to streamlining the production printing process

POLAR IT SERVICES. Business Intelligence Project Methodology

Microsoft Business Analytics Accelerator for Telecommunications Release 1.0

Enterprise Architecture Assessment Guide

INCOSE Automotive Working Group Charter

Cross-Domain Service Management vs. Traditional IT Service Management for Service Providers

The Top 10 Reasons Why You Need Synthetic Monitoring

Model-Driven Development: A Metamodeling Foundation

IMPROVING THE QUALITY OF THE DECISION MAKING BY USING BUSINESS INTELLIGENCE SOLUTIONS

Value-Driven. Business Intelligence Strategy

WHITE PAPER January 2015 THE INTEROPERABILITY ENABLER FOR THE ENTIRE M2M AND IOT ECOSYSTEM

INTEGRATING RECORDS SYSTEMS WITH DIGITAL ARCHIVES CURRENT STATUS AND WAY FORWARD

INFORMATION MANAGEMENT STRATEGIC FRAMEWORK GENERAL NAT OVERVIEW

Information Technology Strategic Plan

Applying Business Architecture to the Cloud

How To Write A Blog Post On Globus

Oracle Real Time Decisions

The 2-Tier Business Intelligence Imperative

The goal of this discussion is the development of one, comprehensive definition upon which we can use on our collaborative framework.

Transcription:

Ontologies in the Context of Cloud Computing and Big Data Ontologies and Conceptual Models for Industrial Enterprises Group INGAR (CONICET UTN) INTEC (CONICET UNL) Santa Fe - Argentina

Nowadays Context Product customization Short Product Lifecycles with extremely short time-to-markets Product development processes & manufacturing operations are distributed over the globe Global businesses entered a new era of decision making in which the ability to gather, store, access, and analyze enormous amounts of data has grown exponentially The success of global manufacturing enterprises depends upon the entire worldwide integration of many stakeholders working on collaborative decision-making processes Collaborative Manufacturing Collaborative Supply Chain

Collaborative Manufacturing Collaborative Environment Requires synchronization across a broad scope of manufacturing activities performed by multiple organizations that generate and exchange enormous amounts of heterogeneous data (different syntaxes, distinct semantics, various granularities and time-frames)

Collaborative Supply Chains Suppliers Producers Deposits & Warehouses Producers Distribution Centers Retailers Customers Collaborative business process Collaborative business process Source Make Deliver Source Make Deliver Many companies (suppliers suppliers, manufacturers, clients, 3PLS, 4PLs, etc.) aligned into collaborative business process. Globally integrated versus linear and silo-oriented SCs.

Collaborative Supply Chains Supplier s Supplier Supplier Design, planify and operate Enterprise Design, planify and operate Customer Design, planify and operate Final Customer Source Data Make Data Deliver Vertical integration: Different time scales and information granularities Horizontal integration: Same layer applications 5

Smart Manufacturing according to the SMLC Group ( Smart Manufacturing Leadership Coalition ) CEP Journal, October 2012

Smart Manufacturing

Smart Manufacturing

Smart Manufacturing

Smart Manufacturing

Smart Manufacturing

Smart Manufacturing

Smart Manufacturing

Factories of the Future Use of cloud-based platforms to capture knowledge and manage rules Cloud-based platforms in high tech manufacturing Cloud-based marketing automation applications to plan, execute and track results of every campaign Cloud-based Human Resource Management (HRM) systems to unify all manufacturing locations globally

Factories of the Future Manufacturers rely on cloud-based systems to streamline key areas of their business: marketing, design, manufacture, automation, supply, etc. SW CW PW Cloud efficient supply Service World Cloud-based engineering Computational World Cloud-based automation Physical World Rolf Riemenscheider, European Commission, APMS 2012

Nowadays Context Supplier s Supplier Supplier Design, planify and operate Enterprise Design, planify and operate Customer Design, planify and operate Final Customer Source Make Deliver Collaborative Supply Chain and Collaborative Manufacturing lead to complex systems that resort to Cloud Computing and Big Systems technologies

WhyOntologies ntologiesin thecontext of Cloud Computing and Big Systems? Can we continue designing cloud-based data services in the same way that we do in traditional systems? How to articulate huge amounts of data (with different syntaxes and semantics) of several partners that need to collaborate? How to provide structure to unstructured data?.?

An annual series of events that involves the ontology community and communities related to each year's theme chosen for the summit. Co-organized by: Ontology Summit Series Ontolog, NIST (US National Institute of Standards and Technology) NCOR (US National Center for Ontological Research ), NCBO (National Center for Biomedical Ontology) IAOA (International Association for Ontology and its Applications) NCO_NITRD (National Coordination office for the Networking and Information Technology Research and Development) Activities: 3 months of virtual discourse (over our archived mailing lists) and virtual panel sessions (over augmented conference calls) 2-day face-to-face symposium Main Deliverable: Ontology Summit 201x communiqué

Ontology Summit Series Ontology for Big Systems - 2012 Ontology Summit 2012 explored the current and potential uses of ontology, its methods and paradigms, in big systems and big data. Key questions What can ontology provide to support and understand Big Systems? How does ontology provide that? How does the science and engineering of Big Systems impact ontology? Organization: Big systems engineering Big data challenge Large scale domain applications Cross track 1 Quality Cross track 2 Federation and integration of systems Big data, complex techno-socio-economic systems, intelligent or smart systems, cloud computing, and collective intelligence:

Ontology Summit 2012 Ontology for Big Systems Big systems engineering to describe physical systems, Engineers have always built models to specify products to be built, to describe system interaction with the world. They serve as the ground truth for design and analysis in that they are the authoritative source of information. They carry an (often implicit) ontology, expressing a theory or a set of assumptions, about the world or some part of it. Modeling languages need a precise meaning to enable collaboration, standards, and reasoning. This is where ontology comes in

Ontology Summit 2012 Big Data Applications Ontology for Big Systems understand the data garner information and knowledge from it, intelligently combine it with other data sets To efficiently do this We need to be able to represent the assumptions and conceptualizations that underpin knowledge in those domains. Data creators and publishers need to make explicit what their data represents together with the context of the data and its creation.

Ontology Summit 2012 Ontology for Big Systems Ontologies and ontological analysis are vital parts of a solution addressing the problems of architecting and engineering big systems and big data. Ontologies can be used to: Make explicit and accessible the vital assumptions about the nature and structure of engineered systems and their components. Help people better understand and disentangle the complexity of big engineered systems and their social, economic and natural environment Enable integration among systems and data through semantic interoperability.

Ontology Summit 2012 Ontologies can be used to: (cont.) Ontology for Big Systems Improve models and modeling, their adaptability and reuse, and resulting design. Enhance decision-support systems. Aid in knowledge management and discovery. Provide a basis for more adaptable systems More details in: http://ontolog.cim3.net/ontologysummit/2012/communique.html

Group Research Experience Development of conceptual models and domain ontologies in the fields of industrial enterprises and software development processes: Supply Chain ONTOlogy (SCOnto) PRoduct ONTOlogy (PROnto) Scheduling Ontology (SchedOnto) Collaborative Model for capturing and representing the engineering Design process (CoMoDe)

Thank you very much for your kind attention!! Silvio Gonnet sgonnet@santafe-conicet.gov.ar Gabriela Henning ghenning@intec.unl.edu.ar Horacio Leone hleone@santafe-conicet.gov.ar Luciana Roldán lroldan@santafe-conicet.gov.ar Marcela Vegetti mvegetti@santafe-conicet.gov.ar Questions?