SDSC8007 - Deep Learning | ||||||||
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* The offering term is subject to change without prior notice | ||||||||
Course Aims | ||||||||
This course provides students with a systematic study of deep learning. Topics include shallow and deep neural networks, deep fully connected and structured neural networks, universality of approximation, convolutions and Fourier transform, deep convolutional neural networks, deep recursive neural networks, gradient descent and stochastic gradient descent, backpropagation and automatic differentiation, learning ability of deep learning algorithms, design of deep neural network architectures. | ||||||||
Assessment (Indicative only, please check the detailed course information) | ||||||||
Continuous Assessment: 100% | ||||||||
Detailed Course Information | ||||||||
SDSC8007.pdf | ||||||||
Useful Links | ||||||||
Department of Data Science |