About this course
The course introduces students to advanced artificial intelligence techniques for working with graphs. Lectures will focus on the latest graph neural networks for creating vector representations of nodes, edges and entire graphs. The techniques discussed cover various types of graphs, including time-varying graphs. The last part of the course also covers graph generation and interpretability of graph neural networks. In the exercises, students will try out selected techniques and problems.
Learning outcomes
The course introduces students to advanced artificial intelligence techniques for working with graphs. Lectures will focus on the latest graph neural networks for creating vector representations of nodes, edges and entire graphs. The techniques discussed cover various types of graphs, including time-varying graphs. The last part of the course also covers graph generation and interpretability of graph neural networks. In the exercises, students will try out selected techniques and problems.
Course requirements
no entry requirements
Resources
- Deep Learning; I. Goodfellow, Y. Bengio, A. Courville; MIT Press; 2016; ISBN 978-0262035613.
- Introduction to Graph Neural Networks; Zhiyuan Liu, Jie Zhou; Morgan & Claypool Publishers; 2020; ISBN-13 978-1681737652
- Graph Representation Learning (Synthesis Lectures on Artificial Intelligence and Machine Learning); William L. Hamilton; Morgan & Claypool Publishers; 2020; ISBN 978-1681739632
- Heterogeneous Graph Representation Learning and Applications; Chuan Shi, Xiao Wang, Philip S. Yu; Springer; 2022; ISBN: 978-9811661655
Activities
neural network, graph, embedding
Additional information
- Coordinating facultyCzech Technical University in Prague
- Contact a coordinator
- CreditsECTS 4
- Contact hours per week12
- InstructorsIng. Čepek Miroslav Ph.D.
- Mode of instructionOnline - at a specific time
Offering(s)
Start date
17 February 2025
- Ends21 September 2025
- Term *Summer 2024/2025
- Instruction languageEnglish
Enrolment period closed