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Machine LearningLaajuus (5 cr)

Code: YY00CC67

Credits

5 op

Responsible person

  • Matti Welin
  • Rami Viksilä
  • Minna Asplund

Objective

The student is able to
- take advantage of both supervised and unsupervised machine learning in a functional way
- implement the training of the machine learning model
- utilize data-driven decision making
- compare hardware, software and development environments with different applications utilizing machine learning

Enrollment

06.05.2024 - 30.08.2024

Timing

30.09.2024 - 03.10.2024

Number of ECTS credits allocated

5 op

Virtual portion

5 op

Mode of delivery

Distance learning

Unit

Faculty of Technology (LAB)

Campus

E-campus, Lahti

Teaching languages
  • Finnish
Seats

5 - 40

Degree programmes
  • Master’s Degree Programme in Engineering, from IoT to AI
Teachers
  • Matti Welin
  • Minna Asplund
  • Rami Viksilä
Scheduling groups
  • Luennot 1 (Size: 100. Open UAS: 0.)
Groups
  • TLTIYITT24KV
Small groups
  • Lecture 1

Learning outcomes

The student is able to
- take advantage of both supervised and unsupervised machine learning in a functional way
- implement the training of the machine learning model
- utilize data-driven decision making
- compare hardware, software and development environments with different applications utilizing machine learning

Assessment scale

1-5

Enrollment

20.11.2023 - 05.01.2024

Timing

15.01.2024 - 18.01.2024

Number of ECTS credits allocated

5 op

Virtual portion

5 op

Mode of delivery

Distance learning

Unit

Faculty of Technology (LAB)

Campus

E-campus, Lahti

Teaching languages
  • Finnish
Seats

5 - 40

Degree programmes
  • Master’s Degree Programme in Engineering, from IoT to AI
Teachers
  • Matti Welin
  • Minna Asplund
  • Rami Viksilä
Scheduling groups
  • Verkkoluento 1 (Size: 500. Open UAS: 0.)
Groups
  • TLTIYITT23SV
Small groups
  • Online lecture 1

Learning outcomes

The student is able to
- take advantage of both supervised and unsupervised machine learning in a functional way
- implement the training of the machine learning model
- utilize data-driven decision making
- compare hardware, software and development environments with different applications utilizing machine learning

Assessment scale

1-5

Enrollment

21.11.2022 - 08.01.2023

Timing

16.01.2023 - 10.02.2023

Number of ECTS credits allocated

5 op

Virtual portion

5 op

Mode of delivery

Distance learning

Unit

Faculty of Technology (LAB)

Campus

E-campus, Lahti

Teaching languages
  • Finnish
Seats

5 - 30

Degree programmes
  • Master’s Degree Programme in Engineering, from IoT to AI
Teachers
  • Matti Welin
  • Minna Asplund
  • Rami Viksilä
Scheduling groups
  • Luennot 1 (Size: 500. Open UAS: 0.)
Groups
  • TLTIYITT22SV
Small groups
  • Luennot 1

Learning outcomes

The student is able to
- take advantage of both supervised and unsupervised machine learning in a functional way
- implement the training of the machine learning model
- utilize data-driven decision making
- compare hardware, software and development environments with different applications utilizing machine learning

Assessment scale

1-5

Enrollment

19.11.2021 - 09.01.2022

Timing

17.01.2022 - 20.01.2022

Number of ECTS credits allocated

5 op

Virtual portion

5 op

Mode of delivery

Distance learning

Unit

Faculty of Technology (LAB)

Campus

Lahti Campus

Teaching languages
  • Finnish
Seats

5 - 30

Degree programmes
  • Master’s Degree Programme in Engineering, from IoT to AI
Teachers
  • Matti Welin
  • Minna Asplund
  • Juhani Grape
  • Rami Viksilä
Scheduling groups
  • Opetus (Size: 0. Open UAS: 0.)
Groups
  • TLTIYITT21S
Small groups
  • Lectures

Learning outcomes

The student is able to
- take advantage of both supervised and unsupervised machine learning in a functional way
- implement the training of the machine learning model
- utilize data-driven decision making
- compare hardware, software and development environments with different applications utilizing machine learning

Assessment scale

1-5