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Advanced Machine Learning Methods (5cr)

Code: R504D108-3002

General information


Enrollment
06.10.2025 - 11.01.2026
Registration for introductions has not started yet.
Timing
12.01.2026 - 10.04.2026
The implementation has not yet started.
Number of ECTS credits allocated
5 cr
Mode of delivery
Contact learning
Teaching languages
Seats
0 - 30
Teachers
Tuomas Valtanen
Teacher in charge
Tuomas Valtanen
Course
R504D108

Evaluation scale

H-5

Content scheduling

- Natural language processing machine learning models
- Advanced specialized machine learning algorithms
- Machine learning model optimization tools
- Error metrics and ML model performance evaluation
- Use of suitable tools (e.g., a high-level ML application programming interface, like scikit-learn, TensorFlow and PyTorch) for building solutions

Objective

- Knowledge and skills to understand beyond-basic contemporary machine learning (ML) models and methods, and to choose and apply them in a principled and sound way
- Abilities for understanding connections to, and dependencies between, model/method properties and timely topics (e.g., ethics, sustainability, explainability).
- Abilities to solve a computational problem via machine learning without using a high-level ML application programming interface

Content

- Theory and practice of the beyond-basic contemporary machine learning (ML) models and methods
- Use of suitable tools (e.g., an ML application programming interface enabling both high and low level expression) for building solutions

Location and time

The course will be studied on-campus. Lapland University of Applied Sciences, Rantavitikka Campus, 12.1.2026 - 15.5.2026.

Materials

The study material of the course will be in the course's Moodle workspace. Additional material can be searched from the internet as needed. It's also recommended to independently search for more information during the course.


Teaching methods

Lectures, workshops, examples, exercises and self-supervised work.

The Arene's AI recommendations and traffic light model for universities of applied sciences will be applied during the course. Whether AI is allowed during an exercise, will depend on the exercise itself.

Employer connections

The study unit has been connected to the semester project held during the same semester. The technologies and related examples during the course will be partially based on the needs of the involved company in the semester project.

Exam schedules

The course will be graded based on personal work and exercises.

International connections

The study unit will be in English.

Completion alternatives

Alternative ways to study the course can be inquired from the instructor.

Student workload

The study unit is 5 ECTS, which amounts to 135 hours of work in total (approximately). ON average, your work will be distributed the following way:

- Lectures and workshops: 50 h
- Self-study and preparation: 45 h
- Graded tasks: 40h

Assessment criteria, satisfactory (1)

Grade 1: The student knows the theory on the considered ML models and methods. The student is able to solve beyond-basic contemporary ML problems, using the considered tools.

Assessment criteria, good (3)

Grade 3: The student understand the theory on the considered ML models and methods. The student is able to solve a variety of beyond-basic contemporary ML problems, using the considered tools, suitably.

Assessment criteria, excellent (5)

Grade 5: The student understand the theory on the considered ML models and methods. The student is able to solve a variety of beyond-basic contemporary ML problems, using the considered tools, most suitably.

Qualifications

Introduction to Machine Learning Methods

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