Special Topics in Information Science: Deep Learning and Multimodal Systems

Program: MSIS/PhD

Catalog Description

Recently Deep Learning (DL) techniques have shown a lot of promise for tasks in various modalities such as speech, language, and vision and DL has become a go-to machine learning paradigm for Artificial Intelligence (AI) based applications. The course aims to cover theoretical and applied aspects of Deep Learning and how it is used to solve real-world problems. Classes in each week may be divided into two segments: (a) Theory and Methods, a concise description of a deep learning algorithm, and (b) Lab Tutorial, a hands-on session on applying the algorithm on multimodal real world data such as textual, visual and audio data.

Prerequisites

Graduate standing.

Scheduled and Upcoming Classes for this Course

Class Name Semester Day(s) Start Time(s) End Time(s) Building Room
INF 385T: Special Topics in Information Science: Deep Learning and Multimodal Systems

Abhijit Mishra Syllabus

Spring Term 2025
  • Tuesday
  • 9:30 AM
  • 12:30 PM
  • UTA
  • 1.210A

Past Classes for this Course

Class Name Semester Day(s) Start Time(s) End Time(s) Building Room
INF 385T: Special Topics in Information Science: Deep Learning and Multimodal Systems

Abhijit Mishra Syllabus

Fall Term 2023
  • Wednesday
  • 12:00 PM
  • 3:00 PM
  • UTA
  • 1.210A