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Machine Learning in Robotics (5op)

Toteutuksen tunnus: YT00CD08-3002

Toteutuksen perustiedot


Ilmoittautumisaika
17.11.2025 - 08.01.2026
Ilmoittautuminen toteutukselle ei ole vielä alkanut.
Ajoitus
12.01.2026 - 20.05.2026
Toteutus ei ole vielä alkanut.
Opintopistemäärä
5 op
Lähiosuus
5 op
Toteutustapa
Lähiopetus
Yksikkö
Teknologiayksikkö
Toimipiste
Lutakon kampus
Opetuskielet
englanti
Paikat
20 - 30
Koulutus
Master's Degree Programme in Robotics
Opettajat
Tomi Nieminen
Ryhmät
YTP25S1
Master's Degree Programme in Robotics
ZJAYTP25S1
Avoin amk, tekn, yamk-väylä,Robotics
Opintojakso
YT00CD08

Toteutukselle Machine Learning in Robotics YT00CD08-3002 ei valitettavasti löytynyt varauksia. Varauksia ei ole mahdollisesti vielä julkaistu tai toteutus on itsenäisesti suoritettava.

Arviointiasteikko

0-5

Tavoitteet

The student understands the significance of machine learning in digitalizing operational environment. The student knows the most common machine learning methods, is able to apply them in practice to existing data and interpret the results of the methods. In particular, the student is able to apply machine learning models in robotics.

Course Competences:
EUR-ACE: Engineering Design, Master's Degree
EUR-ACE: Engineering Practice, Master's Degree
EUR-ACE: Investigations, Master's Degree

Sisältö

- Most common regression and classification models of supervised machine learning and their application in Python programming environment using NumPy, Pandas, Scikit-learn and Tensorflow libraries.
- Linear and logistic regression
- Support Vector Machine
- Neural networks
- Reinforcement learning

Oppimateriaalit

Study material provided by the teacher.

Opetusmenetelmät

Virtual course. Video examples, theory videos, exercises.

Toteutuksen valinnaiset suoritustavat

Evaluated exercises.

Arviointikriteerit, tyydyttävä (1)

Sufficient 1: Student has sufficient knowledge of machine learning algorithms and neural networks. Student is able to apply the most common techniques of machine learning and has the sufficient knowledge of the mathematics behind the techniques. Additionally, the student is able to estimate and validate implementation briefly.

Satisfactory 2: Student has satisfactory knowledge of machine learning and neural networks. Student is able to choose a suitable machine learning technique and apply the technical know-how in practice. Student understands the mathematics behind the techniques at a satisfactory level. Additionally, the student is able to estimate and validate implementation superficially.

Arviointikriteerit, hyvä (3)

Good 3: Student has good knowledge of machine learning algorithms and neural networks. Student is able to choose an appropriate machine learning technique and apply the technical know-how in practice. Student understands well the mathematics behind the techniques at a good level. Additionally, the student is able to estimate and validate implementation well.

Very good 4: Student has very good knowledge of machine learning algorithms and neural networks. Student is able to choose and justify versatilely a machine learning technique and apply the technical know-how in practice. Student understands the mathematics behind the techniques at a very good level. Additionally, the student is able to estimate and validate implementation critically.

Arviointikriteerit, kiitettävä (5)

Excellent 5: Student has excellent knowledge of machine learning algorithms and neural networks. Student is able to choose and justify machine learning technique and apply the technical know-how in practice. Student understands the mathematics behind the techniques at an excellent level. Additionally, the student is able to estimate and validate implementation critically.

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