Intelligent Systems
TeachersYAMANE, Ken
Grade, SemesterYear 1 1st semest [Master's program, Division of Integrated Science and Engineering]
CategoryGeneral Engineer Subjects
Elective, CreditsElective 2credit
 Syllabus Number

Course Description

We overview classical artificial intelligence and discuss its limitations. Also, this course deals with the following topics: soft-computing, pattern recognition and machine learning.

Course Objectives

The aim of the course is to learn fundamental concepts and techniques of intelligent systems.

Grading Policy

Students are evaluated with two reports (50%, 50%).

Textbook and Reference

KindTitleAuthorPublisher
TextbookNo textbook is used.

The following book written in English is recommended.
-Stuart Russel, Peter Norvig, Artificial Intelligence: A Modern Approach, Global Edition, Pearson Education Limited, ISBN978-1292153964, 2016.
References

Requirements(Assignments)

Basic skills of programming and the knowledge of computer science are required for students.

Note

Schedule

1Introduction
2Classical artificial intelligent I
3Classical artificial intelligent II
4Classical artificial intelligent III
5Limitations of AI
6Subsumption architecture
7Soft-computing I
8Soft-computing II
9Soft-computing III
10Soft-computing IV
11Pattern recognition and machine learning I
12Pattern recognition and machine learning II
13Reinforcement learning I
14Reinforcement learning II
15Summary