Centre for Emergent Computing

Slides:



Advertisements
Similar presentations
Approaches, Tools, and Applications Islam A. El-Shaarawy Shoubra Faculty of Eng.
Advertisements

Swarm Intelligence (sarat chand) (naresh Kumar) (veeranjaneyulu) (kalyan raghu)‏
Self-organization in Science and Society: an introduction.
Bio-Inspired Optimization. Our Journey – For the remainder of the course A brief review of classical optimization methods The basics of several stochastic.
Computational Intelligence Research Group Principal investigators: Prof Andries Engelbrecht Mr Bryton Masiye
1 Sensor Networks and Networked Societies of Artifacts Jose Rolim University of Geneva.
Genetic Algorithms. Some Examples of Biologically Inspired AI Neural networks Evolutionary computation (e.g., genetic algorithms) Immune-system-inspired.
Innovation Ecosystems Professor Simon Kaplan Director, NICTA Queensland.
NEW TIES year 2 review NEW TIES = New and Emergent World models Through Individual, Evolutionary and Social learning.
Evolutionary Computation Introduction Peter Andras s.
Natural Computation and Applications Xin Yao Natural Computation Group School of Computer Science The University of Birmingham.
Symbolic Encoding of Neural Networks using Communicating Automata with Applications to Verification of Neural Network Based Controllers* Li Su, Howard.
Natural Computation: computational models inspired by nature Dr. Daniel Tauritz Department of Computer Science University of Missouri-Rolla CS347 Lecture.
Natural Computation and Its Applications Xin Yao Natural Computation Group
By Stefan Rummel 05/05/2008 Prof. Rudowsky CIS 9.5 Brooklyn College.
CS 1 – Introduction to Computer Science Introduction to the wonderful world of Dr. T Dr. Daniel Tauritz.
INTRODUCTION TO COMPUTATIONAL INTELLIGENCE, Nanjing University Spring 2014 INTRODUCTION TO COMPUTATIONAL INTELLIGENCE Lin Shang Dept. of Computer Science.
1 IE 607 Heuristic Optimization Ant Colony Optimization.
Distributed Systems 15. Multiagent systems and swarms Simon Razniewski Faculty of Computer Science Free University of Bozen-Bolzano A.Y. 2014/2015.
By Paul Cottrell, BSc, MBA, ABD. Author Complexity Science, Behavioral Finance, Dynamic Hedging, Financial Statistics, Chaos Theory Proprietary Trader.
Systems of Systems & Emergent Properties: Systems & Control Challenges
Chapter 10. Global Village “… is the shrinking of the world society because of the ability to communicate.” Positive: The best from diverse cultures will.
Complexity and Emergence in Robotics Systems Design Professor George Rzevski The Open University and Magenta Corporation SERENDIPITY SYNDICATE 1 : Talk.
[1] B. Hull, K. Jamieson and H. Balakrishnan, “Mitigating Congestion in Wireless Sensor Networks,” Proceedings of the 2nd International Conference on Embedded.
Poročilo s konference CEC 2011 Gregor Papa. program New Orleans –5.-8. junij 2011 program –10 tutorialov –3 vabljena plenarna predavanja –31 vzporednih.
COMPE 564/ MODES 662 Natural Computing 2013 Fall Murat KARAKAYA Department of Computer Engineering.
Structure and Research.
Future & Emerging Technologies in the Information Society Technologies programme of European Commission Future & Emerging Technologies in the Information.
Computational Intelligence II Lecturer: Professor Pekka Toivanen Exercises: Nina Rogelj
UNIT OVERVIEW CITS4404 Artificial Intelligence & Adaptive Systems.
Modern Heuristic Optimization Techniques and Potential Applications to Power System Control Mohamed A El-Sharkawi The CIA lab Department of Electrical.
(Particle Swarm Optimisation)
The Particle Swarm Optimization Algorithm Nebojša Trpković 10 th Dec 2010.
Kavita Singh CS-A What is Swarm Intelligence (SI)? “The emergent collective intelligence of groups of simple agents.”
Neural and Evolutionary Computing - Lecture 11 1 Nature inspired metaheuristics  Metaheuristics  Swarm Intelligence  Ant Colony Optimization  Particle.
CSC & IS Centrul pentru studiul complexit ă ii Intelligent Systems group ARIA – UBB csc.centre.ubbcluj.ro.
Algorithms and their Applications CS2004 ( ) 13.1 Further Evolutionary Computation.
A New Artificial Intelligence 7 Kevin Warwick. Embodiment & Questions.
Neural Networks and Machine Learning Applications CSC 563 Prof. Mohamed Batouche Computer Science Department CCIS – King Saud University Riyadh, Saudi.
Bruce Edmonds, Centre for Policy Modelling Evolutionary Units and Adaptive Intelligence Bruce Edmonds Centre for Policy Modelling Manchester Metropolitan.
Examples of structures that have been proposed as irreducibly complex.
Swarms MONT 104Q – Mathematical Journeys, November 2015.
Comparative Reproduction Schemes for Evolving Gathering Collectives A.E. Eiben, G.S. Nitschke, M.C. Schut Computational Intelligence Group Department of.
Socially Inspired Computing Engineering with Social Metaphors.
Benjamin N. Passow De Montfort University Leicester, UK The Power of Computational Intelligence Case study: iTRAQ Benjamin N. Passow,
Socially Inspired Computing Engineering with Social Metaphors.
CITS7212: Computational Intelligence Welcome to CITS7212 CITS7212: Computational Intelligence Lyndon While.
A field of study that encompasses computational techniques for performing tasks that require intelligence when performed by humans. Simulation of human.
Chapter 1. Introduction in Creating Brain-like intelligence, Sendhoff et al. Course: Robots Learning from Humans Bae, Eun-bit Otology Laboratory Seoul.
MODELS PURPOSE: Predict the future, test outcomes of various scenarios, identify the important components or variables, and understand how the parts interact.
Computing Systems Lecture 12 Future Computing. Natural computing Take inspiration from nature for the development of novel problem-solving techniques.
Emergent Structures
A.L. IV.4.1: Real-Time Large-Scale Simulation and Visualisation Simulation Technologies are seen as fundamental for the efficient design and operation.
1 Neural Networks MUMT 611 Philippe Zaborowski April 2005.
CITS4404 Artificial Intelligence & Adaptive Systems
Rationality and Power: the “gap in the middle” in ICT
Energy Quest – 8 September
Web *.0 ? Combining peer production and peer-to-peer systems
Business Analytics: Current Challenges and Future Trends
Artificial Intelligence ppt
Advantages of ABS An advantage of using computer simulation is that it is necessary to think through one’s basic assumptions very clearly in order to create.
Physics-based simulation for visual computing applications
Networking for talent development in Europe
Multi-Objective Optimization
The complexity perspective on business and organisations
Overview of SWARM INTELLIGENCE and ANT COLONY OPTIMIZATION
Ant Colony Optimization
Social Media And Global Computing New Media and New Technologies
CHAPTER I. of EVOLUTIONARY ROBOTICS Stefano Nolfi and Dario Floreano
Mutation Operators of Fireworks Algorithm
Presentation transcript:

Centre for Emergent Computing Professor Ben Paechter

What is Emergent Computing? Emergent Computing studies, and is inspired by, systems in which structure or complex behaviour at the global level emerge from the local interaction of large numbers of simpler components.

Emergent Systems in Nature Shoals of fish Swarms of bees Bacterial infection The immune system Evolution Brains

Areas of Emergent Computing Self organising systems Ant colony optimisation Artificial immune systems Swarm intelligence Artificial neural networks Evolutionary computing

Current Centre Projects NewTies – massive simulated Society Water distribution optimisation Speckled computing self organisation Peer-to-Peer network self organisation

Nature of CEC Honours Projects Optimisation Visualisation Simulation Hard programming Chance to get excellent marks Chance to participate in real research projects

Who to Contact Ben Paechter – D51 – b.paechter@napier.ac.uk Emma Hart – D52 – e.hart@napier.ac.uk