Programme And Module Handbook
 
Course Details in 2024/25 Session


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Module Title LM Deep Learning 1
SchoolMathematics
Department Mathematics
Module Code 06 39817
Module Lead TBC
Level Masters Level
Credits 10
Semester Semester 1
Pre-requisites
Co-requisites
Restrictions None
Contact Hours Lecture-24 hours
Guided independent study-76 hours
Total: 100 hours
Exclusions
Description Deep learning is applicable to a wide range of modern data science and artificial intelligence problems, such as image classification, speech recognition, and text classification. Deep Learning I is an introductory module that covers the fundamental concepts and techniques of deep learning. It serves as a foundation for more advanced topics in deep learning. Topics include: (1) Introduction to Neural Networks: Understanding the basic structure and functioning of artificial neural networks; (2) Activation Functions: Exploring different activation functions used in neural networks and their impact; (3) Backpropagation: Learning how neural networks are trained using backpropagation; (4) Convolutional Neural Networks (CNNs): Introduction to CNNs and their applications in computer vision; (5) Recurrent Neural Networks (RNNs): Understanding RNNs and their use in sequential data analysis; (6) Deep Learning Frameworks: Hands-on experience with popular deep learning libraries like TensorFlow or PyTorch; (7) Practical Applications: Exploring real-world use cases of deep learning in various fields.
Learning Outcomes By the end of the module students should be able to:
  • Understand the basics of neural networks and their building blocks.
  • Acquire knowledge of key deep learning architectures like CNNs and RNNs. 
  • Gain proficiency in implementing and training neural networks using common deep learning libraries. 
  • Apply deep learning techniques to solve real-world data science problems.
Assessment
Assessment Methods & Exceptions Assessment:

80% examination, 20% coursework.

Reassessment:

Resit examination
Other
Reading List