|
Dec 03, 2024
|
|
|
|
DATASCI 3ML3 - Introduction to Neural Networks and Machine Learning 3 unit(s)
A practical introduction to neural network algorithms and their applications in machine learning using Python. Supervised learning (logistic regression, perceptrons, classification, trees, cost functions, non-linear regression, boosting) and unsupervised learning (autoencoder, principal component analysis, clustering, k-means) will be discussed. Students will conduct a series of projects to explore topics such as optimization, spam classification, image recognition, fraud detection and medical data analysis.
Three lectures; one term
Prerequisite(s): One of COMPSCI 1MD3 , DATASCI 2G03 , MATH 1MP3 , PHYSICS 2G03 ; one of MATH 1B03 , 1ZC3 ; and one of ARTSSCI 1D06 A/B , ISCI 1A24 A/B , MATH 1AA3 , 1LT3 , 1XX3 , 1ZB3 ; or permission of the instructor
Antirequisite(s): PHYSICS 3G03
This course is administered by the Department of Physics and Astronomy.
Add to Favourites (opens a new window)
|
|