Curriculum / DescriptionsCOMP_SCI 496: Advanced Topics on Deep Learning
Curriculum
/ Descriptions
This course is not currently offered.
Prerequisites
Basic familiarity with deep learning, including convolutional neural networks, LSTMs, and attention mechanisms, understand essential deep learning framework including tensorFlow and pyTorch.Description
Study of advanced topics of current interest in the field of deep learning, with an emphasis on understanding the network architecture of the pre-trained deep learning models. Selected topics from the following areas will be covered, with an emphasis on practical applications: computer vision, speech recognition, natural language processing, reinforcement learning, and deep learning tools.
COURSE INSTRUCTOR: Prof. Han Liu
REQUIRED TEXTS: None;
COMPUTER USAGE: The python programming language
GRADING: TBD
COURSE OUTCOMES: When a student completes this course, s/he should be able to:
- Understand the state-of-the-art of deep learning pre-trained models
- Become familiar with recent advances in the field of deep learning