Deep learning

Individual course

Max amount of FITech students: 30

Please note the early application deadline.

This course provides an elementary hands-on introduction to deep learning. Students taking this course will learn the theories, models, algorithms, implementation and recent progress of deep learning and obtain empirical experience on training deep neural networks. Applications of deep learning to typical computer vision problems such as object detection and segmentation will also be included.

Coursework will consist of programming assignments in TensorFlow. After this course, students will learn to implement, train and debug their own neural networks.

More information on University of Oulu’s course page.

You can get a digital badge after completing this course.

syväoppiminen tekoäly AI artificial intelligence

Responsible teacher

University of Oulu
Li Liu
li.liu(at)oulu.fi

Contact person for applications

FITech-verkostoyliopisto
Fanny Qvickström, Opintoasioiden suunnittelija
info(at)fitech.io

Topics:

Course code:

Study credits:

Price:

Course level:

Teaching period:

Application deadline:

Host university:

Who can apply:

Teaching method:

Place of contact learning:

Teaching language:

General prerequisites:

Interested in this course? Subscribe and get updates about the course directly to your email. You can cancel subscription any time you want.