Course Syllabus for

Hands-on Machine Learning II
Tillämpad maskininlärning II

FRT245F, 3 credits

Valid from: Spring 2020
Decided by: Professor Thomas Johansson
Date of establishment: 2021-03-01

General Information

Division: Automatic Control
Course type: Third-cycle course
Teaching language: English

Aim

To demonstrate understanding of the concepts and show the ability to use the methods of Chapters 10-13 and 18 in the course book.

Goals

Knowledge and Understanding

For a passing grade the doctoral student must demonstrate understands for the basic concepts and methods presented in Chapters 10-13 and 18 in the course book. This includes programming in Python, artificial neural networks with Keras, training av deep neural networks, loading and preprocessing of data with TensorFlow, and reinforcement learning.

Competences and Skills

For a passing grade the doctoral student must

Judgement and Approach

For a passing grade the doctoral student must demonstrate understanding for the suitability of different ML-algorithms to bench-mark problems and be able to choose parts of the chapter content to present at the chapter-session they are hosting as well as organize the meeting.

Course Contents

Introduction to artificial neural networks with Keras, training of deep neural networks, loading and preprocessing of data with TensorFlow, and reinforcement learning.

Course Literature

Géron, A.: Hands-on Machine Learning with Scikit-Learn, Keras, and TensorFlow: Unsupervised learning techniques. 2019. ISBN 9781492032649.

Instruction Details

Types of instruction: Seminars, project, self-study literature review

Examination Details

Examination format: Seminars given by participants. Sufficient participation in the seminars and the discussions.
Grading scale: Failed, pass
Examiner:

Admission Details

Selection criteria: None

Further Information

The course is given upon request, if sufficient demand is present.

Course Occasion Information

Contact and Other Information

Course coordinators:


Web page: https://canvas.education.lu.se/courses/3766


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