Intelligent Systems Group Emmanuel Fernandez Larry Mazlack Ali Minai (coordinator) Carla Purdy William Wee.

Slides:



Advertisements
Similar presentations
1 Undergraduate Curriculum Revision Department of Computer Science February 10, 2010.
Advertisements

Markov Logic Networks Instructor: Pedro Domingos.
Artificial Intelligence and Lisp Lecture 13 Additional Topics in Artificial Intelligence LiU Course TDDC65 Autumn Semester, 2010
MS Computer Science: Dr. William J. Wolfe Professor and Chair Computer Science CSUCI MS Mathematics: Dr. Ivona Grzegorczyk Professor and Chair Mathematics.
Research on Intelligent Information Systems Himanshu Gupta Michael Kifer Annie Liu C.R. Ramakrishnan I.V. Ramakrishnan Amanda Stent David Warren Anita.
CS 1 – Introduction to Computer Science Introduction to the wonderful world of Dr. T Dr. Daniel Tauritz.
CS 1 – Introduction to Computer Science Introduction to the wonderful world of Dr. T Dr. Daniel Tauritz.
CS 1 – Introduction to Computer Science Introduction to the wonderful world of Dr. T Dr. Daniel Tauritz.
Artificial Intelligence Overview John Paxton Montana State University February 22, 2005
Discrete Structures for Computer Science Ruoming Jin MW 5:30 – 6:45pm Fall 2009 rm MSB115.
CS 1 – Introduction to Computer Science Introduction to the wonderful world of Dr. T Dr. Daniel Tauritz.
DePaul Peter Wiemer-Hastings
CS 1 – Introduction to Computer Science Introduction to the wonderful world of Dr. T Dr. Daniel Tauritz.
T. P. Hong 1 Research Artificial Intelligence Expert Systems Machine Learning Knowledge Integration Heuristic Search Parallel Processing Top-down Bottom-up.
FACULTY OF COMPUTER SCIENCE & INFORMATION TECHNOLOGY, UNIVERSITY OF MALAYA.
FACULTY OF COMPUTER SCIENCE & INFORMATION TECHNOLOGY, UNIVERSITY OF MALAYA.
Chapter 11 Managing Knowledge. Dimensions of Knowledge.
Revision Michael J. Watts
Introduction to Computer and Programming CS-101 Lecture 6 By : Lecturer : Omer Salih Dawood Department of Computer Science College of Arts and Science.
Last Words COSC Big Data (frameworks and environments to analyze big datasets) has become a hot topic; it is a mixture of data analysis, data mining,
Artificial Intelligence CIS 342 The College of Saint Rose David Goldschmidt, Ph.D.
Department of Information Technology Indian Institute of Information Technology and Management Gwalior AASF hIQ 1 st Nov ‘09 Department of Information.
Structure of Study Programmes
© 2007 Pearson Addison-Wesley. All rights reserved 0-1 Spring(2007) Instructor: Qiong Cheng © 2007 Pearson Addison-Wesley. All rights reserved.
Artificial Intelligence
Structure of Study Programmes Bachelor of Computer Science Bachelor of Information Technology Master of Computer Science Master of Information Technology.
M.S in CS Introduction & more How do I select a concentration area? by Xudong Yu What is a concentration area? What is a topic paper? Thesis...is that.
CS621 : Artificial Intelligence Pushpak Bhattacharyya CSE Dept., IIT Bombay Lecture 1 - Introduction.
Last Words DM 1. Mining Data Steams / Incremental Data Mining / Mining sensor data (e.g. modify a decision tree assuming that new examples arrive continuously,
1 2010/2011 Semester 2 Introduction: Chapter 1 ARTIFICIAL INTELLIGENCE.
CISE IAB Meeting Nov. 2, ABET 2006 Clean bill of health! Special thanks to:  CISE & CEN IAB  Bandyopadhaya, Bermudez, Newman.
WEEK INTRODUCTION IT440 ARTIFICIAL INTELLIGENCE.
Intelligent System Ming-Feng Yeh Department of Electrical Engineering Lunghwa University of Science and Technology Website:
Master’s Degree in Computer Science. Why? Acquire Credentials Learn Skills –Existing software: Unix, languages,... –General software development techniques.
M.Sc. and Ph.D. in Computational Science Department of Mathematics Faculty of Science Chulalongkorn University.
3rd Indian International Conference on Artificial Intelligence 2007, Puna, India Jan Rauch, KIZI.
Carnegie Mellon University Computer Science Foundations for Ph.D. Students The Carnegie Mellon Perspective Computer Science Foundations for Ph.D. Students.
Spring 2016 Graduate Preview November 3, Spring 2016 Graduate Courses CS 532 – Web Science R 4:20-7:00pm Nelson CS 550 – Database Concepts ONLINE.
CSE & CSE6002E - Soft Computing Winter Semester, 2011 Course Review.
CS382 Introduction to Artificial Intelligence Lecture 1: The Foundations of AI and Intelligent Agents 24 January 2012 Instructor: Kostas Bekris Computer.
Chapter 9 : Application Areas. 2 Some Advance Application Areas of Computers  Software Development  Artificial Intelligence  Robotics  Industrial.
COMPUTER SCIENCE AND INFORMATION BRICS NU.
Chapter 13 Artificial Intelligence. Artificial Intelligence – Figure 13.1 The Turing Test.
Artificial Intelligence
George Yauneridge.  Machine learning basics  Types of learning algorithms  Genetic algorithm basics  Applications and the future of genetic algorithms.
CS 1010– Introduction to Computer Science Daniel Tauritz, Ph.D. Associate Professor of Computer Science Director, Natural Computation Laboratory Academic.
Introduction to Artificial Intelligence Heshaam Faili University of Tehran.
October 2009 Graduate Studies in Computing Science at the University of Alberta.
Brief Intro to Machine Learning CS539
Accelerated B.S./M.S An approved Accelerated BS/MS program allows an undergraduate student to take up to 6 graduate level credits as an undergraduate.
Artificial intelligence (AI)
2009: Topics Covered in COSC 6368
Department of Cybernetics
School of Computer Science & Engineering
Computer Science Courses
CS 1010– Introduction to Computer Science
INFORMATION COMPRESSION, MULTIPLE ALIGNMENT, AND INTELLIGENCE
TECHNOLOGY GUIDE FOUR Intelligent Systems.
Artificial Intelligence and Lisp Lecture 13 Additional Topics in Artificial Intelligence LiU Course TDDC65 Autumn Semester,
ISS0023 Intelligent Control Systems Arukad juhtimissüsteemid
First work in AI 1943 The name “Artificial Intelligence” coined 1956
Wayne Dyksen, Jane Evarian
CS 4700: Foundations of Artificial Intelligence
What is Pattern Recognition?
Basic Intro Tutorial on Machine Learning and Data Mining
CS 380: Artificial Intelligence
MANAGING KNOWLEDGE FOR THE DIGITAL FIRM
Implementing AI solutions using the cognitive services in Azure
2004: Topics Covered in COSC 6368
Computer Science Courses in the Major
Presentation transcript:

Intelligent Systems Group Emmanuel Fernandez Larry Mazlack Ali Minai (coordinator) Carla Purdy William Wee

Faculty Research Interests Emmanuel Fernandez Stochastic models, stochastic decision & control processes, intelligent/adaptive algorithms, information technology. Larry Mazlack Intelligent databases and information structures, fuzzy systems, data mining, hybrid intelligent systems. Ali Minai Self-organizing systems, computational biology, neural network models of cognition, artificial life, sensor networks. Carla Purdy Intelligent sensor data processing, hybrid intelligent systems, computational biology. William Wee Intelligent signal/image processing, analysis and understanding.

Research Areas Data mining. Sensor networks. Neural networks. Evolutionary algorithms. Distributed intelligence. Adaptive decision and control. Data and sensor fusion. Search and optimization. Hybrid intelligent systems. Intelligent databases and information structures. Complex adaptive systems. Biologically-inspired systems. Bioinformatics and computational biology. Intelligent signal/image processing, analysis and understanding.

Course Requirements All students must satisfy degree program course requirements. M.S. Students must take at least 3 and Ph.D. students at least 4 of: EECE 636 Intelligent Systems EECE 638 Nonlinear and Intelligent Systems EECE 642 Digital Image Processing EECE 716 Semantic Web EECE 728 Information Theory EECE 741 Stochastic Decision and Control EECE 785 Special topics in Intelligent Knowledge Representation EECE 841 Advanced Decision Processes EECE 844 Probability and Algorithms EECE 854 Complex Systems EECE 858 Data Mining EECE 867 Biomorphic Systems EECE 875 Robust Adaptive Control EECE 986 Advanced Computer Vision CS 621, 624 Mathematical Logic I and II CS 633, 634 Artificial Intelligence I and II CS 637 Machine Learning CS 724 Logic in AI CS 731 Distributed AI CS 786 Computational Genomics CS 821 Pattern Recognition