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Seminar: Machine Learning and Data Engineering (5 cr)

Code: R504D97-3001

General information


Enrollment
13.03.2023 - 25.09.2023
Registration for the implementation has ended.
Timing
11.09.2023 - 17.12.2023
Implementation has ended.
Number of ECTS credits allocated
5 cr
Local portion
5 cr
Mode of delivery
Contact learning
Unit
Bachelor of Engineering, Information Technology
Teaching languages
English
Seats
0 - 30
Teachers
Jyri Kivinen
Kenneth Karlsson
Teacher in charge
Kenneth Karlsson
Groups
R54D23S
Bachelor of Engineering, Machine Learning and Data Engineering (full time studies), 2023
Course
R504D97

Evaluation scale

Approved/Rejected

Objective

Student gains high-level understanding of Machine Learning and Data Engineering (MLDE), learning about fundamental concepts, principles, terminology, applications, relations to other areas of study and is able to form a bigger picture of own professional field.

Execution methods

Group work

Accomplishment methods

Active participation in group work
Active and critical information retrieval

Content

A series of seminars that cover various themes of machine learning through presentations by students

Location and time

Meetings at Jokiväylä 11, Rovaniemi.

Tentative meeting topics and schedule:
week 37: Course contents, getting started, grading, and other practicalities
week 38: What is AI
week 39: Seminar topics
week 40: AI problem solving
week 41. Real world AI
week 43. Machine learning
week 45. Machine learning
week 47. Neural networks
week 48. Guest lecture
week 49. Student seminar
week 50. Wrap-up

Materials

Elements of AI and materials in Moodle workspace.

Teaching methods

Student gains high-level understanding of Machine Learning and Data Engineering (MLDE), learning about fundamental concepts, principles, terminology, applications, relations to other areas of study and is able to form a bigger picture of own professional field.
A series of seminars that cover various themes of machine learning through presentations by students.

Assessment criteria, approved/failed

Active participation in group work
Active and critical information retrieval

Assessment criteria, approved/failed

Approved if the student is actively participating in group work

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