Machine learning can help process big/complex data and extract knowledge. It forms one of the foundations in data science. This course provides a broad introduction to machine learning and statistical pattern recognition. Topics include supervised learning (decision tree, random forest, support vector machines, neural networks) and unsupervised learning (clustering, dimensionality reduction, deep learning). Problems and exercises are framed within environmental science applications. The course uses programming languages like R and Python to support learning how to do advanced scientific programming to solve real environmental problems.

No Prerequisites

4

Units

Letter

Grading

1, 2, 3

Passtime

Graduate students only

Level Limit

Environmental science

College
These majors only eds
GALAZ-GARCIA
No info found
BREN 3022
R
12:30 PM - 13:50 PM
0 / 28

Winter 2025 . T B A
BREN 1424
T R
09:30 AM - 10:45 AM
Winter 2025 . Robbins M J
BREN 1424
T R
09:30 AM - 10:45 AM
See All
EDS 232 Robbins M J Winter 2025 Total: 28
EDS 232 Robbins M J Winter 2024 Total: 31
EDS 213
0 / 27 Enrolled
Databases and Data Management
Janee G A, Curty R G, Brun J
M W
09:30 AM - 10:45 AM
EDS 231
0 / 28 Enrolled
Text and Sentiment Analysis for Environmental Problems
Robbins M J
T
12:30 PM - 13:45 PM
EDS 296
0 / 28 Enrolled
Advanced Special Topics in Environmental Data Science
Shanny-Csik
F
10:00 AM - 16:00 PM
EDS 411B
0 / 28 Enrolled
Capstone Project
Galaz-Garcia
M
12:30 PM - 15:30 PM