Skip to main content

Introduction to Artificial Intelligence (5 cr)

Code: TT00CO51-3002

General information


Enrollment
04.12.2024 - 17.01.2025
Registration for the implementation has ended.
Timing
17.01.2025 - 30.04.2025
Implementation is running.
Number of ECTS credits allocated
5 cr
Local portion
5 cr
Mode of delivery
Contact learning
Unit
Engineering and Business
Campus
Kupittaa Campus
Teaching languages
English
Seats
0 - 60
Teachers
Golnaz Sahebi
Pertti Ranttila
Groups
PTIVIS23I
Data Engineering and Artificial Intelligence
PTIETS23deai
Data Engineering and Artificial Intelligence
Course
TT00CO51

Realization has 11 reservations. Total duration of reservations is 29 h 30 min.

Time Topic Location
Fri 17.01.2025 time 10:00 - 11:00
(1 h 0 min)
Course Introduction - Introduction to Artificial Intelligence TT00CO51-3002
The link to join this online class
Fri 24.01.2025 time 08:00 - 11:00
(3 h 0 min)
Introduction to Artificial Intelligence TT00CO51-3002
ICT_C1027_Lambda LAMBDA
Fri 31.01.2025 time 08:00 - 11:00
(3 h 0 min)
Introduction to Artificial Intelligence TT00CO51-3002
ICT_B1026_Gamma GAMMA
Fri 14.02.2025 time 08:00 - 11:00
(3 h 0 min)
Introduction to Artificial Intelligence TT00CO51-3002
ICT_B1026_Gamma GAMMA
Fri 28.02.2025 time 08:00 - 11:00
(3 h 0 min)
Introduction to Artificial Intelligence TT00CO51-3002
ICT_C1027_Lambda LAMBDA
Fri 07.03.2025 time 08:00 - 11:00
(3 h 0 min)
Introduction to Artificial Intelligence TT00CO51-3002
ICT_C1027_Lambda LAMBDA
Fri 14.03.2025 time 08:00 - 11:00
(3 h 0 min)
Introduction to Artificial Intelligence TT00CO51-3002
LEM_B143 Teoriatila muunto
Fri 21.03.2025 time 08:00 - 11:00
(3 h 0 min)
Introduction to Artificial Intelligence TT00CO51-3002
LEM_A306 Teoriatila
Fri 28.03.2025 time 08:30 - 10:00
(1 h 30 min)
Introduction to Artificial Intelligence TT00CO51-3002
ICT_B1026_Gamma GAMMA
Fri 04.04.2025 time 08:00 - 11:00
(3 h 0 min)
Quest speaker Paulo Maio: Introduction to Artificial Intelligence TT00CO51-3002
ICT_C1027_Lambda LAMBDA
Fri 11.04.2025 time 08:00 - 11:00
(3 h 0 min)
Introduction to Artificial Intelligence TT00CO51-3002
ICT_B1026_Gamma GAMMA
Changes to reservations may be possible.

Evaluation scale

H-5

Content scheduling

Course Topics and Scheduling (pre-planning):
week 03: Introduction to AI: history, definitions, and applications.
week 04: Problem-solving methods in AI and Intelligent Agents
week 05: State Space Search Algorithms
week 06: Exercise Demonstrations I
week 07:
week 08: Winter Break
week 09:
week 10:
week 11: Ethical and Social Implications of AI + Exercise Demonstrations II
week 12-14: Applications of AI in Real-World Problems
week 15: Independent teamwork for the final seminar
week 16: Final seminar presentation

Objective

After completing the course, the student is able to:
- Understand what the artificial intelligence is
- Explain the basic concepts of artificial intelligence
- Describe the fields of artificial intelligence
- Describe the machine learning process

Content

Introduction to artificial intelligence (AI)
Problem solving and search algorithms
Introduction to machine learning
Ethical and social implications of AI

Materials

+ Course book: (preplan)

Artificial Intelligence: A Modern Approach
Authors: Stuart Russell and Peter Norvig
Publisher: Pearson; 4th Edition (April 28, 2020).

Note: the instructor will cover some parts of this book according to the course topics and instructions, which will be announced in the first session.

+ The course also has some extra reading material, videos, and slides which will be announced during the course and available via the learning environment (ITS).

Teaching methods

+ Lectures: The instructor will deliver approximately 10 lectures on the course topics using slides, videos, exercise, seminar, and final seminar presentation. In addition, 3 lectures might be delivered by our guest lecturers from TUAS different research groups or external companies to cover the applications of AI in autonomous driving and wireless communications, healthcare, gaming, and business.

+ Assignments: Students will complete several assignments that involve problem-solving, critical thinking, and programming exercises.

+ Seminar presentation: Students will present a 15-minutes seminar in a group of 2-4 about the Future of AI including current trends and advancements in AI, AI in research and development, Ethical, legal, and societal challenges in the future.

Exam schedules

+ No exam, retake not possible after the publication of the final assessment/course grade

+ Final seminar in Week 16.

Student workload

+ Contact hours
- 1 time 2h course introduction
- 12 times 3h theory, practice, and independent work: 12 x 3h = 36hours
+ Home work: approximately 60 hours
+ Seminar: approximately 34 hours

Total: approximately 130 hours

Further information

+ Qualifications/Prerequisites:
Student enrollment in the course will not be accepted by the instructor if they have not passed the following prerequisite courses:
- Data Structures and Algorithms
- Python Programming

The other additional information is share via ITS

Go back to top of page