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Applications of Machine LearningLaajuus (5 cr)

Code: 5G00EV15

Credits

5 op

Objectives

The student is familiar with the most common algorithms and implementation techniques of machine learning. The student knows how to prepare the data, choose the method and teach the model. The student is able to control data driving in a learned model and analyze the results.

The student knows the principles of project management and management.

Content

Most common algorithms and implementation techniques for machine learning. Preparing data, selecting a method and teaching a model, driving data to a learned model, and analyzing the results.

Project management and management.

Assessment criteria, satisfactory (1-2)

The student is able to use a suitable machine learning method. Students get results using the model.

Assessment criteria, good (3-4)

The student is able to use a suitable method. The student is able to produce results using the model.

Assessment criteria, excellent (5)

The student is able to choose the most suitable method for the goal. The student is able to estimate the meaning of the results produced by the model.

Enrolment period

24.11.2024 - 12.01.2025

Timing

01.01.2025 - 04.05.2025

Credits

5 op

Mode of delivery

Contact teaching

Unit

ICT Engineering

Campus

TAMK Main Campus

Teaching languages
  • Finnish
Degree programmes
  • Degree Programme in ICT Engineering
Teachers
  • Ossi Nykänen
Person in charge

Ossi Nykänen

Groups
  • 22I224

Objectives (course unit)

The student is familiar with the most common algorithms and implementation techniques of machine learning. The student knows how to prepare the data, choose the method and teach the model. The student is able to control data driving in a learned model and analyze the results.

The student knows the principles of project management and management.

Content (course unit)

Most common algorithms and implementation techniques for machine learning. Preparing data, selecting a method and teaching a model, driving data to a learned model, and analyzing the results.

Project management and management.

Assessment criteria, satisfactory (1-2) (course unit)

The student is able to use a suitable machine learning method. Students get results using the model.

Assessment criteria, good (3-4) (course unit)

The student is able to use a suitable method. The student is able to produce results using the model.

Assessment criteria, excellent (5) (course unit)

The student is able to choose the most suitable method for the goal. The student is able to estimate the meaning of the results produced by the model.

Assessment scale

0-5

Enrolment period

22.11.2023 - 05.01.2024

Timing

01.01.2024 - 05.05.2024

Credits

5 op

Mode of delivery

Contact teaching

Unit

ICT Engineering

Campus

TAMK Main Campus

Teaching languages
  • Finnish
Degree programmes
  • Degree Programme in ICT Engineering
Teachers
  • Ossi Nykänen
Person in charge

Ossi Nykänen

Groups
  • 21I224

Objectives (course unit)

The student is familiar with the most common algorithms and implementation techniques of machine learning. The student knows how to prepare the data, choose the method and teach the model. The student is able to control data driving in a learned model and analyze the results.

The student knows the principles of project management and management.

Content (course unit)

Most common algorithms and implementation techniques for machine learning. Preparing data, selecting a method and teaching a model, driving data to a learned model, and analyzing the results.

Project management and management.

Assessment criteria, satisfactory (1-2) (course unit)

The student is able to use a suitable machine learning method. Students get results using the model.

Assessment criteria, good (3-4) (course unit)

The student is able to use a suitable method. The student is able to produce results using the model.

Assessment criteria, excellent (5) (course unit)

The student is able to choose the most suitable method for the goal. The student is able to estimate the meaning of the results produced by the model.

Assessment scale

0-5

Enrolment period

15.12.2022 - 08.01.2023

Timing

01.01.2023 - 07.05.2023

Credits

5 op

Mode of delivery

Contact teaching

Unit

ICT Engineering

Campus

TAMK Main Campus

Teaching languages
  • Finnish
Seats

0 - 50

Degree programmes
  • Degree Programme in ICT Engineering
Teachers
  • Ossi Nykänen
Person in charge

Ossi Nykänen

Groups
  • 20I224

Objectives (course unit)

The student is familiar with the most common algorithms and implementation techniques of machine learning. The student knows how to prepare the data, choose the method and teach the model. The student is able to control data driving in a learned model and analyze the results.

The student knows the principles of project management and management.

Content (course unit)

Most common algorithms and implementation techniques for machine learning. Preparing data, selecting a method and teaching a model, driving data to a learned model, and analyzing the results.

Project management and management.

Assessment criteria, satisfactory (1-2) (course unit)

The student is able to use a suitable machine learning method. Students get results using the model.

Assessment criteria, good (3-4) (course unit)

The student is able to use a suitable method. The student is able to produce results using the model.

Assessment criteria, excellent (5) (course unit)

The student is able to choose the most suitable method for the goal. The student is able to estimate the meaning of the results produced by the model.

Assessment scale

0-5

Enrolment period

15.11.2021 - 09.01.2022

Timing

03.01.2022 - 01.05.2022

Credits

5 op

Mode of delivery

Contact teaching

Unit

ICT Engineering

Campus

TAMK Main Campus

Teaching languages
  • Finnish
Degree programmes
  • Degree Programme in ICT Engineering
Teachers
  • Ossi Nykänen
Person in charge

Ossi Nykänen

Groups
  • 19I224

Objectives (course unit)

The student is familiar with the most common algorithms and implementation techniques of machine learning. The student knows how to prepare the data, choose the method and teach the model. The student is able to control data driving in a learned model and analyze the results.

The student knows the principles of project management and management.

Content (course unit)

Most common algorithms and implementation techniques for machine learning. Preparing data, selecting a method and teaching a model, driving data to a learned model, and analyzing the results.

Project management and management.

Assessment criteria, satisfactory (1-2) (course unit)

The student is able to use a suitable machine learning method. Students get results using the model.

Assessment criteria, good (3-4) (course unit)

The student is able to use a suitable method. The student is able to produce results using the model.

Assessment criteria, excellent (5) (course unit)

The student is able to choose the most suitable method for the goal. The student is able to estimate the meaning of the results produced by the model.

Assessment scale

0-5