Description:
Artificial Intelligence/Machine Learning is becoming an increasingly important
tool for mechanical and manufacturing engineers, whether you work with
materials, processes or mechanical / manufacturing systems.
This course will give an introduction to emerging tools in AI/ML such as broad
range of deep learning techniques that are highly relevant for the modern
mechanical / manufacturing engineer. In the course valuable methods and
specific industrial applications are addressed. Topics will include:
• Machine learning fundamentals
• Deep learning concepts within computer vision, natural language processing, and intelligent agents
• Deep learning methods including convolutional neural (CNN) networks, recurrent neural networks (RNN), auto-encoders, LSTM, and Reinforcement Learning (RL) techniques and algorithms
• Selected industrial applications if AI/ML such as defect detection in materials and surfaces, quality inspection, predictive analytics, human-machine interaction with virtual assistants, self-learning robots and automatic optimisation of machine parameters
• Software, frameworks, tools and public datasets
Application implementations will be tested in the AAU Smart Lab at the Department for Materials and Production
Organizers: Associate Professor, Simon Bøgh, sb@mp.aau.dk
Lecturers: Associate Dimitris Chrysostomou, AAU, Assistant Professor Chen Li, AAU, Associate Professor Nestor Arana Arexolaleiba, Mondragon University, Spain (Visiting Professor AAU)
ECTS: 5.0
Time: August 2022
Place: Aalborg University
Number of seats:
Deadline: 3 weeks prior to course start
Important
information concerning PhD courses:
We have over some time experienced problems with no-show for both project and
general courses. It has now reached a point where we are forced to take action.
Therefore, the Doctoral School has decided to introduce a no-show fee of DKK
3.000 for each course where the student does not show up. Cancellations are
accepted no later than 2 weeks before start of the course. Registered illness
is of course an acceptable reason for not showing up on those days.
Furthermore, all courses open for registration approximately four months before
start. This can hopefully also provide new students a chance to register for
courses during the year. We look forward to your registrations.
- Teacher: Simon Bøgh
- Teacher: Dimitris Chrysostomou
- Teacher: Chen LI