Table of Contents

B(E)3M33UI - Artificial intelligence

The course deepens and enriches knowledge of AI gained in the bachelor course Cybernetics and Artificial Intelligence. Students will get an overview of other methods used in AI, and will get a hands-on experience with some of them. They will master other required abilities to build intelligent agents. By applying new models, they will reiterate the basic principles of machine learning, techniques to evaluate models, and methods for overfitting prevention. They will learn about planning and scheduling tasks, and about methods used to solve them. The student will also get acquainted with the basics of probabilistic graphical models, Bayesian networks, and Markov models, and will learn their applications. Part of the course will introduce students to the area of again popular neural networks, with an emphasis on new methods for deep learning.

Lectures | Literature | Labs | Projects | Students exam questions | BRUTE | Forum | Prerequisities

In accordance with the current anti-coronavirus measures, course B(E)3M33UI is taught in a non-standard, distant way. Current plans (March 19) are as follows:

  • Lectures:
    • Delivered via BigBlueButton Conference Rooms functionality in BRUTE in standard lecture times (Tuesdays 12:45-14:15). Recordings will be available in BRUTE. (See the tutorial video for students.)
    • Supported by self-study based on the lecture slides, suggested reading material, and suggested lecture videos from online courses where possible.
  • Seminars/labs:
    • The tasks can be fulfilled at home based on the prepared materials, submission via BRUTE.
    • Teachers will be present in the standard seminar times (Tuesdays 14:30-16:00 and 16:15-17:45) in BigBlueButton conference rooms for questions and consultations.
  • Consultations:
    • Questions can be posted on discussion forum.
    • Teachers are available on email, one-to-one consultations possible via Skype, WhatsUp, etc., as negotiated between the teacher and the student.
  • Deadlines were postponed by 14 days.
  • The attendance of labs is of course not required.

Assessment requirements

Late policy

Exam

During the semester, including the exam, students can get at most 100 points: 50 points for the semestral projects and 50 points for the exam. To successfully pass the exam, students need to get at least 25 points out of 50, i.e. 50 %.

Grading

We use the usual grading table:

Points >=90 <80, 90) <70, 80) <60, 70) <50, 60) (0, 50)
Grade A B C D E F

Contacts

Lecturers: Petr Pošík, Radek Mařík

Lab instructor: Petr Pošík, Jiří Spilka

Consultations by appointment (after previous agreement by email).