Faculty of Technical Sciences

Subject: Machine learning in embedded systems (17.EM506)

General information:
 
Category Professional-applicative
Scientific or art field Electronics
ECTS 4

The main goal of this course is to introduce students to the basic and some advanced approaches, trends and tools in the field of machine learning systems. Students will also be able to develop machine learning systems intended to be used within embedded electronic systems.

Students who successfully complete this course should be able to follow the latest results, as well as to understand the latest technical and scientific literature in this field. Beside theoretical knowledge, students will also gain experience in using contemporary design tools used to develop machine learning systems. Students will also be able to develop artificial intelligence systems, based on machine learning, that will be used in embedded systems.

Introduction to machine learning. Formal learning model. Model selection and validation. Regularization and stability. Linear predictors. Support vector machines. Kernel methods. Decision trees. Artificial neural networks. Online learning. Incremental learning. Adaptive learning. Clustering. Dimensionality reduction. Feature selection. Generative models. Reinforcement learning. Deep learning. Ensemble learning. Machine learning implementation techniques targeting embedded systems. Hardware accelerators for machine learning.

Lectures; Auditory Practice; Computer Practice; Laboratory Practice; Consultations.

Authors Title Year Publisher Language
Peter Flach Machine Learning - The Art and Science of Algorithms that Make Sense of Data 2012 Cambridge University Press English
Course activity Pre-examination Obligations Number of points
Project defence Yes Yes 50.00
Theoretical part of the exam No Yes 50.00

Prof. Struharik Rastislav

Full Professor

Lectures
API Image

Assoc. Prof. Vranjković Vuk

Associate Professor

Lectures
API Image

Asst. Prof. Kisačanin Branislav

Assistant Professor

Lectures
API Image

Asst. Prof. Batinić Branislav

Assistant Professor

Laboratory classes

Faculty of Technical Sciences

© 2024. Faculty of Technical Sciences.

Contact:

Address: Trg Dositeja Obradovića 6, 21102 Novi Sad

Phone:  (+381) 21 450 810
(+381) 21 6350 413

Fax : (+381) 21 458 133
Emejl: ftndean@uns.ac.rs

© 2024. Faculty of Technical Sciences.