•   AI and Machine Learning 5G00FT12-3001 29.08.2022-23.12.2022  8 cr  (20I260E) +-
    Learning outcomes of the course unit
    The student understands basic concepts of AI and Machine Learning. The student is able to create and use Machine Learning Algorithms in Python. The student learns how to make analysis and predictions and knows which Machine Learning model to choose for each type of a problem.
    Prerequisites and co-requisites
    Basic knowledge of programming
    Course contents
    - Basic concepts of AI and Machine Learning
    - Unsupervised and Supervised learning
    - Regression, Association, Classification
    - Naïve Bayes, Decision Trees and Neural Network Algorithms
    - Training and validation of models
    - Production testing of models
    Assessment criteria
    Satisfactory

    Student knows about the basic concepts of AI and Machine Learning. Student can apply at least some supervised or supervised learning applications. Student can use regression, association or classification algorithm with support. Student can create an application using either Naïve Bayes, Decision Trees or Neural Network Algorithms. Student can setup training and validation processes for new models. Student can setup production testing for new models.

    Good

    Student knows and understands the basic concepts of AI and Machine Learning. Student can apply both supervised and supervised learning applications. Student can create applications with regression, association, or classification algorithms. Student can create working applications using Naïve Bayes, Decision Trees and Neural Network Algorithms. Student can setup and apply training and use validation methods for new models. Student can follow procedures of production testing for new models.

    Excellent

    Student knows and understands in depth the basic concepts of AI and Machine Learning. Student can apply both supervised and supervised learning for various applications. Student can use regression, association, and classification algorithms where appropriate. Student can create versatile applications using Naïve Bayes, Decision Trees and Neural Network Algorithms. Student can implement various training and validation solutions for new models. Student is able to execute reliable production testing for new models.

    Further information
    Includes content of previous Mathematics 3 course. The course eliminates duplication observed in courses.

    Name of lecturer(s)

    Pekka Pöyry

    Planned learning activities and teaching methods

    testi (not translated)

    Language of instruction

    English

    Timing

    29.08.2022 - 23.12.2022

    Registration

    30.07.2022 - 28.08.2022

    Credits

    8 cr

    Group(s)

    20I260E

    Seats

    0 - 40

    Teacher(s)

    Esa Kujansuu, Matematiikka Virtuaalihenkilö, Pekka Pöyry

    Unit, in charge

    ICT Engineering

    Degree programme(s)

    Bachelor's Degree Programme in Software Engineering

    Office

    TAMK Main Campus

    Evaluation scale

    0-5