WISE: Web Intelligence and Service Engineering International Master Program Department of Mathematical Information Technology University of Jyväskylä (Finland)

Slides:



Advertisements
Similar presentations
1 From Grids to Service-Oriented Knowledge Utilities research challenges Thierry Priol.
Advertisements

The 20th International Conference on Software Engineering and Knowledge Engineering (SEKE2008) Department of Electrical and Computer Engineering
Industrial Ontologies Group University of Jyväskylä Industrial Ontologies Group.
USER-assisted SEMANTIC INTEROPERABILITY in INTERNET of THINGS
Which Course? Where Does Your City University Degree Lead? Dr. Sebastian Hunt Associate Dean.
1.Data categorization 2.Information 3.Knowledge 4.Wisdom 5.Social understanding Which of the following requires a firm to expend resources to organize.
Department of Mathematics and Computer Science
ASNA Architecture and Services of Network Applications Research overview and opportunities L. Ferreira Pires.
Resources, Agents and Processes in the context of Next Generation World Wide Web Dr. Evgeny Osipov Head of Communication Networks group Luleå University.
The Education of a Software Engineer Mehdi Jazayeri Presented by Matthias Hauswirth.
Date of presentation 1 PROJECT IDEA Topic: PRIME: “Proactive Inter-Middleware for Self- Configurable Heterogeneous Cloud EcoSystems” –Objective Cloud Computing,
Industrial Ontologies Group University of Jyväskylä International Master Program: “Mobile Technologies and Business”
Industrial Ontologies Group Oleksiy Khriyenko, Vagan Terziyan INDIN´04: 24th – 26th June, 2004, Berlin, Germany OntoSmartResource: An Industrial Resource.
Industrial Ontologies Group: our history and team Vagan Terziyan, Group Leader Industrial Ontologies Group Agora Center, University of Jyväskylä.
Industrial Ontologies Group University of Jyväskylä Future of the Web: Vagan Terziyan University of Jyväskylä, 20 May, 2009 Towards Global Understanding.
SmartResource: Proactive Self-Maintained Resources in Semantic Web TEKES Project proposal Vagan Terziyan, Project Leader Industrial Ontologies Group Agora.
Intelligent Agent Systems. Artificial Intelligence Systems that think like humans Systems that think rationally Systems that act like humans Systems that.
Provisional draft 1 ICT Work Programme Challenge 2 Cognition, Interaction, Robotics NCP meeting 19 October 2006, Brussels Colette Maloney, PhD.
© Anselm SpoerriInfo + Web Tech Course Information Technologies Info + Web Tech Course Anselm Spoerri PhD (MIT) Rutgers University
© 2003 Turoff 1 The Nature of Information Systems and Employment in IS Murray Turoff Information Systems Department.
Industrial Ontologies Group University of Jyväskylä SmartResource Project: (industrial case for Semantic Web and Agent Technologies) “Device”“Expert”“Service”
IST DEVELOPMENT IN LATVIA
UbiRoad: “Semantic Middleware for Smart Traffic Management”
Intelligent Web Applications (Part 1) Course Introduction Vagan Terziyan AI Department, Kharkov National University of Radioelectronics / MIT Department,
ONTOLOGY-BASED INTERNATIONAL DEGREE RECOGNITION Vagan Terziyan, Olena Kaykova University of Jyväskylä, Finland Oleksandra Vitko, Lyudmila Titova (speaker)
Semantic Web and Web Mining: Networking with Industry and Academia İsmail Hakkı Toroslu IST EVENT 2006.
1 Hochschule Esslingen Business Administration International Industrial Management(B.Sc.) Industrial Management/Automotive Industry (B.Sc.) Innovation.
Learning Sciences and Engineering Professional Master’s Program Ken Koedinger Vincent Aleven Albert Corbett Carolyn Rosé Justine Cassell.
Computational Thinking Related Efforts. CS Principles – Big Ideas  Computing is a creative human activity that engenders innovation and promotes exploration.
Software Developer Career. ◦ Desktop Program development ◦ Web Program Development ◦ Mobile Program Development.
Training of master Trainers Workshop 10 – 15 November 2012 e-Services Design and Delivery Module VI Emilio Bugli Innocenti.
Information Technology
Service Development Project Basic recommendations Industrial Ontologies Group Jyväskylä 2014.
1 Autonomic Computing An Introduction Guenter Kickinger.
Research at Department of Computer and Systems Sciences – DSV.
Industrial Ontologies Group ( ) (Fast Introduction) Industrial Ontologies Group.
European Network of Excellence in AI Planning Intelligent Planning & Scheduling An Innovative Software Technology Susanne Biundo.
The Yellow Group Design Informatics (Regli, Stone, Kusiak, Leifer, Gupta, Chung, Fenves, Law, Kopena)
Web Service Development Within Different Study Years Maja Pušnik, Boštjan Šumak Institute of Informatics, FERI Maribor.
Man-Sze Li IC Focus Enterprise Interoperability Research Roadmap SME aspects.
Learning outcomes for BUSINESS INFORMATCIS Vladimir Radevski, PhD Associated Professor Faculty of Contemporary Sciences and Technologies (CST)
OBJECT ORIENTED SYSTEM ANALYSIS AND DESIGN. COURSE OUTLINE The world of the Information Systems Analyst Approaches to System Development The Analyst as.
MIS – 3030 Business Technologies Social Media & Conversation Big Data.
Linked-data and the Internet of Things Payam Barnaghi Centre for Communication Systems Research University of Surrey March 2012.
SelfCon Foil no 1 Design of Self-Adaptive Systems Course introduction 2013 Rolv Bræk, ITEM.
KNOWLEDGE GRIDS Akshat Mishra GRID SEMINAR WINTER 2008 Feb 2008.
Responding to the Unexpected Yigal Arens Paul Rosenbloom Information Sciences Institute University of Southern California.
Introduction Infrastructure for pervasive computing has many challenges: 1)pervasive computing is a large aspect which includes hardware side (mobile phones,portable.
Semantic Web: The Future Starts Today “Industrial Ontologies” Group InBCT Project, Agora Center, University of Jyväskylä, 29 April 2003.
Most of contents are provided by the website Introduction TJTSD66: Advanced Topics in Social Media Dr.
NGCWE Expert Group EU-ESA Experts Group's vision Prof. Juan Quemada NGCWE Expert Group IST Call 5 Preparatory Workshop on CWEs 13th.
Why You Should All Become Computer Engineers ECE 200 (Fall 2015) Saurabh Bagchi School of Electrical and Computer Engineering Purdue University.
The Knowledge Grid Methodology  Concepts, Principles and Practice Hai Zhuge China Knowledge Grid Research Group Chinese Academy of Sciences.
CSE 102 Introduction to Computer Engineering What is Computer Engineering?
Internet of Things. IoT Novel paradigm – Rapidly gaining ground in the wireless scenario Basic idea – Pervasive presence around us a variety of things.
NCP Info DAY, Brussels, 23 June 2010 NCP Information Day: ICT WP Call 7 - Objective 1.3 Internet-connected Objects Alain Jaume, Deputy Head of Unit.
Slide no 1 Cognitive Systems in FP6 scope and focus Colette Maloney DG Information Society.
High Risk 1. Ensure productive use of GRID computing through participation of biologists to shape the development of the GRID. 2. Develop user-friendly.
G-Cloud - The Delivery of a Shared Computing Platform for Government Ian Osborne Director, Digital Systems KTN Intellect.
Building Systems for Today’s Dynamic Networked Environments A Methodology for Building Sustainable Enterprises in Dynamic Environments through knowledge.
UNIVERSITY OF JYVÄSKYLÄ FACULTY OF INFORMATION TECHNOLOGY IT with a human touch 2010.
TWOJA CYFROWA PRZYSZŁOŚĆ. JUŻ DZISIAJ. Christoph F. Strnadl CTO Central & Eastern Europe 11 May 2016.
© 2007 IBM Corporation IBM Software Strategy Group IBM Google Announcement on Internet-Scale Computing (“Cloud Computing Model”) Oct 8, 2007 IBM Confidential.
Cloud Computing: Concepts, Technologies and Business Implications B. Ramamurthy & K. Madurai &
“Computational Wisdom and Self-Computing” research group objectives
Specialties Description
Change to university degree accreditation incorporating employability:
Industrial Ontologies Group: 10th Anniversary
Business Information Systems
Master Dissertation Proposals
Presentation transcript:

WISE: Web Intelligence and Service Engineering International Master Program Department of Mathematical Information Technology University of Jyväskylä (Finland) Brief Introduction Vagan Terziyan MIT Department Meeting; , 9:15 – 11:30; Ag. Aud.2, University of Jyvaskyla

WISE Program Logo (working draft) WISE Program Slogan and Key Objective Everything-as-a-Service Engineering: Designing intelligent software applications for the web-based service economy.

What is Web-Based Service Economy ? Everything-as-a-Service Engineering: Designing intelligent software applications for the web-based service economy. Web-based service economy: emerging service industry on top of the Internet of Services with global service delivery platforms, which utilizes and expands Web 2.0 and future network infrastructure (Internet of Things) [SAP, Amazon, eBay, Google, Siemens, Philips, etc.]. According to SAP vision, the Web- based service economy in the Internet of Services will likely be an integral part of future economic innovation, value creation, growth, and employment:

What is Web Intelligence ? WISE: Web Intelligence and Service Engineering Web Intelligence: A new area (Web Intelligence) goes slightly beyond the traditional AI and includes brain informatics, human level AI, intelligent agents, social network intelligence, self- management, etc., to the classical areas such as knowledge engineering, representation, planning, discovery and data mining. Combined with the Advanced Information Technology (e.g. wireless networks, ubiquitous devices, social networks, data/knowledge grids, SOA and Cloud Computing, etc.) the Web Intelligence is becoming a powerful tool to manage the emerging changes and challenges within the ICT domain, which will be very useful for educating skillful service engineers.

Everything as a Service Provider Everything-as-a-Service Engineering: Designing intelligent software applications for the web-based service economy. 1. Everything-as-a-Service-Provider Here the knowledge and abilities of the graduates will target the question: What (infrastructure, platforms, software, interfaces, data, etc.) should be additionally provided to make some product or system capable of performing its functionality (data or capability) as a service for external users, businesses or systems through the Web?

Everything as a Service Consumer Everything-as-a-Service Engineering: Designing intelligent software applications for the web-based service economy. 2. Everything-as-a-Service-Consumer Here the knowledge and abilities of the graduates will target the question: How to design products and systems so that they will be capable of automatic real-time discovery, query and utilization of external data and capabilities for better meeting their design objectives and beyond?

Everything as a Self-Service Everything-as-a-Service Engineering: Designing intelligent software applications for the web-based service economy. 3. Everything-as-a-Self-Service Here the knowledge and abilities of the graduates will target the question: How to make systems self-aware, context-aware and capable of self-configuration, self-optimization, self-protection and self-healing while adapting their design objectives in real time to changing execution environments according to the “Open World assumption” (i.e., a system should be able to handle new situations, which were not known during its design time)?

Program Mission and Learning Outcomes On completion of the programme, the graduates: –will be able to use and design complex self-managed Web-based public and industrial systems, digital ecosystems, platforms, services and applications; –will be able to connect their designs with publicly available data and Web-based capabilities as services; –will be able to figure-out and approach various challenging aspects of wicked problems world-wide, which require self-managed service-based architectures for their solutions; –understand and professionally utilize for that purpose knowledge on enabling technologies and tools; –perform academic doctoral level studies; –will be skilful in international communication due to the integrated language and communication studies. Students, who will graduate from the programme with a Master of Science in Natural Sciences from the Department of Mathematical Information Technology, will think beyond the routine and will be able not just to adapt to a change but to help to create and control it.

What is Digital Ecosystem ? – “… will be able to use and design complex self-managed Web-based public and industrial systems, digital ecosystems, platforms, services and applications …” Digital ecosystem is a distributed adaptive open socio-technical system with properties of self-organization, scalability and sustainability inspired from natural ecosystems. For example, digital ecosystems are extending Service- Oriented Architectures with distributed evolutionary computing, allowing services to recombine and evolve over time, constantly seeking to improve their effectiveness for the users. The digital ecosystem is a pervasive ICT infrastructure with a particular architecture and framework, which exhibits some characteristics of the natural ecosystems. It is considered a step forward of internet, which instead of dealing with packets, carry knowledge and services. For example a knowledge ecosystem is considered as a kind of digital ecosystem and it is an alternative to the traditional knowledge management approach (directive management) towards enabling self- organization and dynamic evolution of knowledge interaction between entities (interlinked knowledge resources, databases, human experts, and artificial knowledge agents) in response to changing environments.

Career Opportunities Software (Cloud) Service architects: designing the technical infrastructures of service enabled applications. Enterprise architects: architecting and aligning enterprises processes, structure, data and control. Web Service (IT) professionals: experts in the development and composition of Web services into enterprise applications. Big Data and Knowledge engineers, architects, modelers and analysts: experts in Big Data, metadata and ontology engineering, knowledge management, data and knowledge integration and evolution, in constructing data-as-a- service solutions, data-intensive applications, expert-systems and knowledge based-systems. Scientists (PhD program): graduates are well-prepared to successfully pursue a career in academia.

Technological Basis for the WISE Program Semantic Web, Ontologies, (Open)Linked Data SOA and Cloud Computing Big Data Service Engineering Web Intelligence Autonomic Computing, Agent Technology

WISE-Specific Admission Requirement Applicants must have sufficient skills in programming, as well as in using related information structures and algorithms!

Degree Structure

Future Internet (IoT) Semantic Web and Ontology Engineering SOA and Cloud Computing Design of Agent-Based Systems Everything-to-Everything Interfaces Radio Networks and Self- Organization Big Data Engineering Soft Computing Simulations for Modeling, Decision Support and Optimization Everything as a Service Provider Everything as a Service Consumer Everything as a Self-Service Capability of Everything- as-a-Service Engineering Service Development Project Assessment of Learning Outcomes Structure

Service Development Project Prof. Tapani Ristaniemi Prof. Vagan Terziyan Prof. Timo Tiihonen Dr. Oleksiy Khriyenko Michael Cochez Dr. Karthik Sindhya Dr. Olena Kaikova Program Coordination Niina Ormshaw WISE Team Self-Assessment on Study Progress Selected Topics on Soft Computing

Tentative Study Plan for the WISE Program Autumn - ISpring - I Autumn - IISpring - II Semantic Web and Ontology Engineering (5) Introduction to SOA and Cloud Computing (5) SOA and Cloud Computing for Developers (5) Suomi - I (5) Introduction to Agent Technologies (5) Everything to Everything Interfaces (5) Integrated Research Communication (5) Master Thesis(30) Agent Technologies for Developers (5) Autonomic Systems Optional Tracks Radio Networks and Self- Organization (5) Selected Topics on Soft Computing (5) Networking Practical Introduction to Semantic Technologies (5) Data Simulations for Decision Support and Optimization (5) Simulations for Modeling (5) Simulation Other(5) Big Data Engineering (5) Master Thesis Seminar (5) Future Internet (5) Self-Assessment on Study Progress (0) Service Development Project (15) Tentative Study Plan for the WISE Program Autumn - ISpring - I Autumn - IISpring - II Semantic Web and Ontology Engineering (5) Introduction to SOA and Cloud Computing (5) SOA and Cloud Computing for Developers (5) Suomi - I (5) Introduction to Agent Technologies (5) Everything to Everything Interfaces (5) Integrated Research Communication (5) Master Thesis(30) Agent Technologies for Developers (5) Autonomic Systems Optional Tracks Radio Networks and Self- Organization (5) Selected Topics on Soft Computing (4) Networking Practical Introduction to Semantic Technologies (5) Data Advanced Course in Simulation (5) Simulations (5) Simulation Other(5) Big Data Engineering (5) Master Thesis Seminar (5) Future Internet (5) Self-Assessment on Study Progress (0) Service Development Project (15) Selected Topics on Soft Computing (4)

Program advertisement letter (eng., ru.)

WISE Program Brochure

WISE Online (distribute among potential students!) Official Web Site of the WISE Program: Advertisement Letter for Potential Students: Program Brochure with detailed info: Instructions on how to apply: This Presentation: Deadline for applications: 15 January