CS5201 Intelligent Systems (2 unit) Semester II Lecturer: Adrian O’Riordan Contact: is office is 312, Kane

Slides:



Advertisements
Similar presentations
Artificial Intelligence. Intelligent? What is intelligence? computational part of the ability to achieve goals in the world.
Advertisements

1 Undergraduate Curriculum Revision Department of Computer Science February 10, 2010.
Computational Intelligence: Methods and Applications Lecture 1 Organization and overview Włodzisław Duch Dept. of Informatics, UMK Google: W Duch.
CSE 5522: Survey of Artificial Intelligence II: Advanced Techniques Instructor: Alan Ritter TA: Fan Yang.
CSCI 3 Introduction to Computer Science. CSCI 3 Course Description: –An overview of the fundamentals of computer science. Topics covered include number.
CS 331 / CMPE 334 – Intro to AI CS 531 / CMPE AI Course Outline.
CS6003 Database Systems (10 credits) Lecturers: Adrian O’Riordan (term 1), Dr. Kieran Herley (term 2) Term 1 Contact: is office.
Introduction to Artificial Intelligence CSE 473 Winter 1999.
CS 1 – Introduction to Computer Science Introduction to the wonderful world of Dr. T Dr. Daniel Tauritz.
© 2002 Franz J. Kurfess Introduction 1 CPE/CSC 481: Knowledge-Based Systems Dr. Franz J. Kurfess Computer Science Department Cal Poly.
CS565 Advanced Software Development (1 unit) Lecturer: Adrian O’Riordan Contact: is Office: prefab, behind.
Processor Design 5Z032 Henk Corporaal Eindhoven University of Technology 2011.
CSE 590ST Statistical Methods in Computer Science Instructor: Pedro Domingos.
© 2001 Franz J. Kurfess Introduction 1 CPE/CSC 580: Knowledge Management Dr. Franz J. Kurfess Computer Science Department Cal Poly.
CIS 410/510 Probabilistic Methods for Artificial Intelligence Instructor: Daniel Lowd.
Introduction to Artificial Neural Network and Fuzzy Systems
CSE 515 Statistical Methods in Computer Science Instructor: Pedro Domingos.
Dr Rong Qu Module Introduction.
Revision Michael J. Watts
Prof. dr Slobodanka Đorđević-Kajan Dr Dragan Stojanović
CSCI 347 – Data Mining Lecture 01 – Course Overview.
Artificial Intelligence CIS 342 The College of Saint Rose David Goldschmidt, Ph.D.
Xiaoying Sharon Gao Mengjie Zhang Computer Science Victoria University of Wellington Introduction to Artificial Intelligence COMP 307.
Introduction to Network Security J. H. Wang Feb. 24, 2011.
TECHNOLOGY GUIDE FOUR Intelligent Systems.
CSE 335/435: Intelligent Decision Support Systems Fall Semester 2006 An Example of a commercial system (click on Yoda for a link to an intelligent decision.
Introduction to Discrete Mathematics J. H. Wang Sep. 14, 2010.
Machine Learning Lecture 1. Course Information Text book “Introduction to Machine Learning” by Ethem Alpaydin, MIT Press. Reference book “Data Mining.
Introduction to Artificial Intelligence and Soft Computing
Assoc. Prof. Abdulwahab AlSammak. Course Information Course Title: Artificial Intelligence Instructor : Assoc. Prof. Abdulwahab AlSammak
CS621 : Artificial Intelligence Pushpak Bhattacharyya CSE Dept., IIT Bombay Lecture 1 - Introduction.
COMP 304: Artificial Intelligence. General Lecturer: Nelishia Pillay Office: Room F3 Telephone:
CS511: Artificial Intelligence II
General Information 439 – Data Mining Assist.Prof.Dr. Derya BİRANT.
Intelligent System Ming-Feng Yeh Department of Electrical Engineering Lunghwa University of Science and Technology Website:
Introduction to Information Security J. H. Wang Sep. 18, 2012.
1 Lecturer: Dr Sanja Petrovic School of Computer Science and Information Technology
Course Overview for Compilers J. H. Wang Sep. 14, 2015.
ITIS 4510/5510 Web Mining Spring Overview Class hour 5:00 – 6:15pm, Tuesday & Thursday, Woodward Hall 135 Office hour 3:00 – 5:00pm, Tuesday, Woodward.
Notes for Week 11 Term project evaluation and tips 3 lectures before Final exam Discussion questions for this week.
Introduction to Artificial Intelligence CS 438 Spring 2008.
Course Overview for Compilers J. H. Wang Sep. 20, 2011.
Introduction to Operating Systems J. H. Wang Sep. 13, 2013.
Artificial Intelligence Module – CS364 Introduction to Artificial Intelligence – CS th September 2006 Dr Bogdan L. Vrusias
1 Intro to Artificial Intelligence COURSE # CSC384H1F Fall 2008 Sonya Allin Note: many slides drawn from/inspired by Andrew Moore’s lectures at CMU and.
MITM613 Wednesday [ 6:00 – 9:00 ] am 1 st week. Good evening …. Every body.
Artificial Intelligence Lecture 1. Introduction. Course Outline The course consists of:  15 lectures slots (may use some for tutorials);  tutorial exercises;
CITS4211 Artificial Intelligence Semester 1, 2013 A/Prof Lyndon While School of Computer Science & Software Engineering The University of Western Australia.
FNA/Spring CENG 562 – Machine Learning. FNA/Spring Contact information Instructor: Dr. Ferda N. Alpaslan
TECHNOLOGY GUIDE FOUR Intelligent Systems. TECHNOLOGY GUIDE OUTLINE TG4.1 Introduction to Intelligent Systems TG4.2 Expert Systems TG4.3 Neural Networks.
BMTS Computer and Systems Pre-requisites :CT140 –Computer Skills Nature Of the Course: This course deals about the fundamentals of Computer such.
Introduction to Artificial Intelligence Heshaam Faili University of Tehran.
EEL 5937 Multi Agent Systems -an introduction-. EEL 5937 Content What is an agent? Communication Ontologies Mobility Mutability Applications.
Artificial Intelligence
Syllabus Introduction to Computer Science
Artificial Intelligence (AI)
TECHNOLOGY GUIDE FOUR Intelligent Systems.
Artificial Intelligence and Lisp Lecture 13 Additional Topics in Artificial Intelligence LiU Course TDDC65 Autumn Semester,
CSC 361 Artificial Intelligence
ISS0023 Intelligent Control Systems Arukad juhtimissüsteemid
Artificial Intelligence (CS 461D)
Artificial Intelligence (CS 370D)
First work in AI 1943 The name “Artificial Intelligence” coined 1956
CS 1104 INTRODUCTION TO COMPUTER SCIENCE
Artificial Intelligence (AI)
Introduction to Artificial Intelligence and Soft Computing
Lecture 1: Introduction
CSE 515 Statistical Methods in Computer Science
CH751 퍼지시스템 특강 Uncertainties in Intelligent Systems
Fundamental of Artificial Intelligence (CSC3180)
Presentation transcript:

CS5201 Intelligent Systems (2 unit) Semester II Lecturer: Adrian O’Riordan Contact: is office is 312, Kane Lectures: 24 in total Tuesday and Practical Workin PF1 also Course Webpage:

Objectives and Prerequisites Objectives: To become familiar with the processes and technologies used in the construction of intelligent software systems. The focus will be on fundamentals of subject. The technologies covered in semester II will include artificial neural networks, knowledge based systems, machine learning and data mining. Prerequisites: Basic knowledge of computing including programming concepts; Concepts from Semester I.

Course Details Teaching methods: notes will on slides or handouts. Reading assignments will be also given during the year. Assignments and exercises will be placed on the course webpage. No textbook covers all the material exactly. See the list of relevant books later on.

Course Overview for Semester II (Semester I coverd Rule Based Systems, Fuzzy Systems, Uncertainty Management, Genetic Algorithms and Programming, and Game Theory) Artificial Neural Networks (9 lectures) early work (McCulloch/Pitts; Minsky) Perceptron and Adaline Recurrent Networks (Hopfield networks) Self Organisation (SOM) Multilayer Perceptron (Backprop and Feedforward) Applications

Course Overview (continued) Knowledge Based Systems (8 lectures) knowledge representation frames expert systems knowlege engineering (elicitation) Learning and Data Mining (5 lectures) intro. machine learning data mining intelligent information retrieval

Practical Component Neural Network Simulation Machine Learning Tools

AI Textbooks to Read/Browse Note there are also many excellent book available on specific topics such as neural networks but these are not listed here (see webpage). Negnevitsky, Artificial Intelligence, Addison Wesley, Russell and Norvig, Artificial Intelligence: A Modern Approach, 2nd ed., Prentice-Hall, Nilsson, Artificial Intelligence: A New Synthesis, Morgan Kaufmann Ginsberg, Essentials of Artificial Intelligence, Morgan Kaufmann Stefik, Introduction to Knowledge Systems, Morgan Kaufmann Rich and Knight, Artificial Intelligennce, 2nd ed., 1990.