Adaptive Systems and Analyst-independent technologies

Slides:



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

Chapter 09 AI techniques in different game genres (Puzzle/Card/Shooting)
Chapter Thirteen Conclusion: Where We Go From Here.
Dealing with Complexity Robert Love, Venkat Jayaraman July 24, 2008 SSTP Seminar – Lecture 10.
Emergent Inference and the Future of NASA Sergio Pissanetzky
Adaptability Theory as a Guide for Interfacing Computers and Human Society.
Fuzzy immune PID neural network control method based on boiler steam pressure system Third pacific-asia conference on circuits,communications and system,
PSU CS 370 – Artificial Intelligence Dr. Mohamed Tounsi Artificial Intelligence 1. Introduction Dr. M. Tounsi.
Dynamics of Learning & Distributed Adaptation PI: James P. Crutchfield, Santa Fe Institute Second PI Meeting, April 2001, SFe Dynamics of Learning:
Cognitive level of Analysis
Projected Performance Development. TOP 500 Performance Projection.
Game AI Fundamentals. What is Artificial Intelligence (AI)? Not easy to answer… “Ability of a computer or other machine to perform those activities that.
Emergent Inference, or How can a program become a self-programming AGI system? Sergio Pissanetzky Self-programming Workshop AGI-11.
Artificial Intelligence Introductory Lecture Jennifer J. Burg Department of Mathematics and Computer Science.
Fundamentals of Information Systems, Third Edition2 Principles and Learning Objectives Artificial intelligence systems form a broad and diverse set of.
The Unification of Symmetry and Conservation
Common Set of Tools for Assimilation of Data COSTA Data Assimilation Summer School, Sibiu, 6 th August 2009 COSTA An Introduction Nils van Velzen
Automation, robotics, brains, and a new theory of Physics Sergio Pissanetzky 1.
I Robot.
Systems Biology ___ Toward System-level Understanding of Biological Systems Hou-Haifeng.
Simulation Three examples from my own work: (1) economics, (2) physics, (3) biology/game theory First, for economics: an early agent-based paper. Why agent-based.
Neural Networks and Machine Learning Applications CSC 563 Prof. Mohamed Batouche Computer Science Department CCIS – King Saud University Riyadh, Saudi.
Causality, symmetry, brain, evolution, DNA, and a new theory of Physics Sergio Pissanetzky 1.
The Matrix Theory of Objects An Update Sergio Pissanetzky Model Universality Behavior Constraints Dynamics Cost Chaos Attractors.
WHAT IS COMPUTING / COMPUTER SCIENCE? Rocky K. C. Chang August 31, 2015.
FOUNDATIONS OF ARTIFICIAL INTELLIGENCE
By: Nelson Webster. Algorithm Engineers Algorithm engineers study the effectiveness and efficiency of procedures of solving problems on a computer.
ARTIFICIAL INTELLIGENCE include people, procedures, hardware, software, data and knowledge needed to develop computer systems and machines that demonstrated.
Algorithms (Can an algorithm solve any problem?).
제 2 주. 인공생명의 개요 Research into models and algorithms of artificial life H. Jiyang, H. Haiying and F. Yongzhe, Artificial Intelligence in Engineering, vol.
New Curricula Proposal at FSMN by Miroslav Ćirić & Predrag Krtolica.
제 9 주. 응용 -4: Robotics Synthesis of Autonomous Robots through Evolution S. Nolfi and D. Floreano, Trends in Cognitive Science, vol. 6, no. 1, pp. 31~37,
The Theory of Objects and the automatic generation of Intelligent Agents Sergio Pissanetzky 2009.
제 9 주. 응용 -4: Robotics Artificial Life and Real Robots R.A. Brooks, Proc. European Conference on Artificial Life, pp. 3~10, 1992 학습목표 시뮬레이션 로봇과 실제 로봇을.
Outline Of Today’s Discussion
What is cognitive psychology?
Master Capacity Builder COMPLEX ADAPTIVE SYSTEMS
Child Development 1 (Wk 1)
Psychology Ch. 2 The Biological Basis of Behavior Evolution
Interpreted languages Jakub Yaghob
Fundamentals of Information Systems
Dynamics of Learning & Distributed Adaptation
Intelligence The Origins of Intelligence Testing Summing Up.
What Kinds of Questions Do Scientists Who Study the Atmosphere* Ask?
SIMULATION SIMULAND PURPOSE TECHNIQUE CREDIBILITY PROGRAMMATICS
RESEARCH APPROACH.
Lecture 2 of Computer Science II
Intro to MA 4027 Graph Theory
If intelligence is the ability to solve unanticipated problems,
Artificial Intelligence ppt
What is Intelligence? Intelligence
If intelligence is the ability to solve unanticipated problems,
What is Pattern Recognition?
Continued on next slide.
Artificial Intelligence introduction(2)
Statistics 1: Elementary Statistics
INTELLIGENCE: IQ & TESTING.
Topic 14 Algorithm Families.
Dynamics of Learning & Distributed Adaptation James P
Bill Tomlinson Art and computing Effects of computer-based art on society? (e.g. animation) Effects of participatory experiences on group dynamics.
Supplement Beyond Computation
CHAPTER I. of EVOLUTIONARY ROBOTICS Stefano Nolfi and Dario Floreano
Structural Emergence in Partially Ordered Sets
Culture and the Individual
Sergio Pissanetzky 2009 Title
Extending Interface Based Design
1. Why Marketing Research?
Child Development 1 (Wk 1)
Artificial Intelligence
Presentation transcript:

Adaptive Systems and Analyst-independent technologies Sergio Pissanetzky 2010 Title

structure is in the information! MATHEMATICS set + partial order  structure set + partial order + dissipative dynamics  emergence the dissipative dynamics minimizes resources and generates the emergent structures structure is in the information! structure is not the result of complexity!

WHAT IS EMERGENCE? art ideas culture emotions conclusions computer bugs weather psychology markets theories this list language life forms genetic codes crystals organs engineering internet Why so much emergence? Emergence is caused by sets, sets are everywhere! Emergence is the most fundamental principle in the universe!

EXPERIMENT NATURAL STRUCTURE BRAIN INFORMATION PREDICTED STRUCTURE ALGORITHM PREDICTED STRUCTURE FEEDBACK

INTELLIGENCE information + emergence  intelligence process of generating emergence  understanding reuse of emergence  feedback structure encapsulates information and behavior intelligence is the ability to solve problems structure solves problems complexity ≠ intelligence gigantic brain simulations ≠ intelligence instead, bugs will emerge

S.Pissanetzky. Coupled dynamics in host-guest complex systems duplicates emergent behavior in the brain. WASET Proc., Vol. 69, pp. 927-935 (August 2010). Sergio@SciControls.com