Machine Learning School

TLA details

Name
Lecture content
Description
Content: – Artificial neural networks can be trained using gradient descent; – Artificial neuron, activation functions; – What the artificial neuron does + linear separability, ... – Multiple layers of neurons and universal approximation; – Feed-forward/recurrent, layered/non-layered architectures; – Neural networks for classification and regression; – How to compute the gradients: autodiff; – Motivation: autodiff vs. symbolic and numeric differentiation; – Autodiff: the principle + graphical illustrations; – Backprop through common operations (graphically): – Defining new operations, incl. the caching of intermediate results; – Autodiff: a numeric example;
Learning type
Acquisition
Description Learning through acquisition is what learners are doing when they are listening to a lecture or podcast, reading from books or websites, and watching demos or videos.
Example usage Reading books, papers, listening to teacher presentations face-to-face, lectures, watching animations, videos,…
Workload
120
Activity delivery
Online
On-site
Hybrid
Synchronous
Asynchronous
Teacher-present
Teacher not present
Collaboration
Work in groups
Feedback

Assessment