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Industrial artificial intelligencePoäng (5 sp)

Kod: INS24IS05

Poäng

5 op

Studieperiodens (kursens) lärandemål

The course will cover different AI-based approaches for industrial automation and autonomy. The student will get knowledge about deep learning techniques, such as object detection, image classification and segmentation and their use, for example, in quality control and supervision. The student will learn the working principles of forecasting techniques and generative methods. The student will also learn how to collect data and to train, validate and test model performance. The student will understand the importance of data quality and have insights into different pre-processing methods.

Knowledge and understanding
After completing the course, the student should be able to:
- understand how to use deep learning techniques to solve industrial problems.
- suggest a potential solution approach for a specific problem.

Skills and abilities
After completing the course, the student should be able to:
- implement a deep learning solution for practical problems.
- apply and experiment with different deep learning techniques.

Evaluation ability and approach
After completing the course, the student should be able to:
- discuss the opportunities and potential to apply deep learning techniques to solve industrial problems.
- evaluate and report on the results of the performance of a deep learning model.

Studieperiodens (kursens) innehåll

The course will cover deep learning techniques such as object detection, predictive maintenance, forecasting models, and generative design.

Förkunskapskrav

No prerequisites.

Bedömningskriterier, tillräcklig (1)

Grade 1: Satisfactory skills in industrial artificial intelligence

Bedömningskriterier, goda-synnerligen goda (3-4)

Grade 3: Good skills in industrial artificial intelligence

Bedömningskriterier, berömliga (5)

Grade 5: Excellent skills in industrial artificial intelligence

Läromaterial

The study material will be provided by the lecturer.

Anmälningstid

01.12.2024 - 31.01.2025

Tajmning

01.02.2025 - 25.05.2025

Antal studiepoäng

5 op

Prestationssätt

Kontaktundervisning

Ansvarig enhet

Institutionen för teknik och sjöfart

Verksamhetspunkt

Vasa, Wolffskavägen 33

Undervisningsspråk
  • Englanti
Utbildning
  • Degree Programme in Intelligent Systems
Lärare
  • Christoffer Björkskog
  • Ray Pörn
Lärare

Ray Pörn

Grupper
  • IS24H-V
    Intelligent Systems, 2024, part-time studies

Lärandemål

The course will cover different AI-based approaches for industrial automation and autonomy. The student will get knowledge about deep learning techniques, such as object detection, image classification and segmentation and their use, for example, in quality control and supervision. The student will learn the working principles of forecasting techniques and generative methods. The student will also learn how to collect data and to train, validate and test model performance. The student will understand the importance of data quality and have insights into different pre-processing methods.

Knowledge and understanding
After completing the course, the student should be able to:
- understand how to use deep learning techniques to solve industrial problems.
- suggest a potential solution approach for a specific problem.

Skills and abilities
After completing the course, the student should be able to:
- implement a deep learning solution for practical problems.
- apply and experiment with different deep learning techniques.

Evaluation ability and approach
After completing the course, the student should be able to:
- discuss the opportunities and potential to apply deep learning techniques to solve industrial problems.
- evaluate and report on the results of the performance of a deep learning model.

Innehåll

The course will cover deep learning techniques such as object detection, predictive maintenance, forecasting models, and generative design.

Studiematerial och rekommenderad litteratur

The study material will be provided by the lecturer.

Vitsordsskala

H-5

Bedömningskriterier, tillfredsställande-synnerligen tillfredsställande (1-2)

Grade 1: Satisfactory skills in industrial artificial intelligence

Arviointikriteerit, goda-synnerligen goda (3-4)

Grade 3: Good skills in industrial artificial intelligence

Arviointikriteerit, berömliga (5)

Grade 5: Excellent skills in industrial artificial intelligence

Förkunskapskrav

No prerequisites.