• Deep Learning and Neural Networks (YTIP2400-3003),
         29.08.2022 – 16.12.2022,  5 cr  (YTI21S1) — Face-to-face +-
    Learning outcomes of the course
    The student understands the significance of deep learning in the digitalizing operational environment and knows the type and structure of neural network.

    The student knows about the most common methods of deep learning and how to desing and apply them in practice to the data and interpret the results of the methods. In addition, the student undestands the mathematic behind the neural networks.

    Course competences:
    EUYIV EUR-ACE: Investigations, Master's Degree
    EUYER EUR-ACE: Engineering Practice, Master's Degree
    EUYMJ EUR-ACE: Making Judgements, Master's Degree
    Course contents
    - Structure of neural network vs artificial neural network
    - Different types of neural networks and their applications: CNN, RNN, LST, autocorrelation, autoencoder (CAN), NLP etc.
    - Mathematic behind the neural network
    - Feature engineering
    - Training process of neural network
    - Estimate and interpret the results
    - Transfer and Active Learning
    - MLOps
    Assessment criteria
    Assessment criteria - grade 1 and 2
    Sufficient 1: Student has sufficient knowledge of deep learning and neural networks. Student is able to apply the most common techniques of deep learning and has the sufficient knowledge of mathematic behind the technigues. Additionally, the student is able to estimate and validate implementation briefly.

    Satisfactory 2: Student has satisfied knowledge of deep learning and neural networks. Student is able to choose suitable deep learning tehnique and apply the technical know-how in practise. Student undestands the mathematic behind the technigues in satisfying level. Additionally, the student is able to estimate and validate implementation superficially.
    Assessment criteria - grade 3 and 4
    Good 3: Student has good knowledge of deep learning and neural networks. Student is able to choose appropriate deep learning tehnique and apply the technical know-how in practise. Student undestands well the mathematic behind the technigues in good level. Additionally, the student is able to estimate and validate implementation well.

    Very good 4: Student has very good knowledge of deep learning and neural networks. Student is able to choose and justify versatilely deep learning tehnique and apply the technical know-how in practise. Student undestands the mathematic behind the technigues in very good level. Additionally, the student is able to estimate and validate implementation critically.
    Assessment criteria - grade 5
    Excellent 5: Student has excellent knowledge of deep learning and neural networks. Student is able to choose and justify deep learning tehnique and apply the technical know-how in practise. Student undestands the mathematic behind the technigues in excellent level. Additionally, the student is able to estimate and validate implementation critically.

    Language of instruction

    English

    Location and time

    Mandatory contact days:
    Sat 10.9.2022 klo 9-15
    Fri 18.11.2022 klo 15-20

    Lecturer(s)

    Mika Rantonen

    Campus

    Lutakko Campus

    Timing

    29.08.2022 - 16.12.2022

    Enrollment

    01.08.2022 - 04.09.2022

    Groups
    • YTI21S1
    Seats

    0 - 35

    Degree Programme

    Master's Degree Programme in Artificial Intelligence and Data Analytics

    Mode of delivery

    Face-to-face

    Credits
    • 5 cr
    Unit

    School of Technology