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Machine Learning Using Python

machine-learning-using-r-com-scix450-4
COM SCI X 450.4

Learn machine learning origins, principles, and practical applications, as well as implementation via the Python programming language. Students will learn to train a model, evaluate its performance, and improve its performance.

Typically Available
Fall
Winter
Spring
Summer
Duration
As few as 10 weeks
Units
4.0
Current Formats
Online
In Person
Cost
Starting at $1,095.00

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What you can learn.

Collect, explore, visualize, and prepare data for machine learning problems using Python
Understand how machine learning algorithms make predictions
Identify appropriate machine learning algorithms for your project
Train, evaluate, monitor, and improve machine learning models
Implement machine learning solutions

About This Course

This course introduces machine learning using Python. Students will learn structured and unstructured data processing, linear regression modeling and non-linear modeling methods used in machine learning algorithm development, optimization techniques, neural networks and deep learning. This field is made possible due to the rapid and simultaneous evolution of available data, statistical methods and computing power. Students learn the origins and practical applications of machine learning, how knowledge is defined and represented by computers, and the basic concepts that differentiate machine learning approaches. Machine learning algorithms can be divided into two main groups: supervised learners who are used to construct predictive models and unsupervised learners who are used to build descriptive models. Students learn the classification, numeric predictor, pattern detection and clustering algorithms. Students learn to train a model, evaluate and improve its performance. Algorithm uses are illustrated with real-world cases, such as breast cancer diagnosis, spam filtering, identifying bank loan risk, predicting medical expenses, estimating wine quality, identifying groceries frequently purchased together and finding teen market segments. 

Prerequisites

Before embarking on the ‘Machine Learning’ course, it is imperative to establish a robust foundational knowledge. We suggest the following preparatory steps:

Introduction to Data Science: Acquaint yourself with the basic principles of data science.

Statistics Background: In case you lack proficiency in statistics, we recommend enrolling in a course such as Introduction to Statistical Reasoning. Grasping statistical concepts is a key determinant of success in machine learning.

Winter 2026 Schedule

Date
Details
Format
 
-
Monday 6:00PM - 9:30PM PT
Instructor:
REG#
405858
Fee:
$1,095.00
In Personformat icon
UCLA
Updating...
Notes

Enrollment limited; early enrollment advised. Visitors not permitted.

Enrollment deadline: January 11th, 2026.

Deadline
Refunds only available from November 03, 2025 to January 18, 2026
Course Requirements
Internet access required to retrieve course materials.
Schedule
Type
Date
Time
Location
Discussion
Mon Jan 5, 2026
6:00PM PT - 9:30PM PT
UCLA
School of Public Affairs Bldg. 1278
Discussion
Mon Jan 12, 2026
6:00PM PT - 9:30PM PT
UCLA
School of Public Affairs Bldg. 1278
Discussion
Mon Jan 19, 2026
6:00PM PT - 9:30PM PT
UCLA
School of Public Affairs Bldg. 1278
Discussion
Mon Jan 26, 2026
6:00PM PT - 9:30PM PT
UCLA
School of Public Affairs Bldg. 1278
Discussion
Mon Feb 2, 2026
6:00PM PT - 9:30PM PT
UCLA
School of Public Affairs Bldg. 1278
Discussion
Mon Feb 9, 2026
6:00PM PT - 9:30PM PT
UCLA
School of Public Affairs Bldg. 1278
Discussion
Mon Feb 16, 2026
6:00PM PT - 9:30PM PT
UCLA
School of Public Affairs Bldg. 1278
Discussion
Mon Feb 23, 2026
6:00PM PT - 9:30PM PT
UCLA
School of Public Affairs Bldg. 1278
Discussion
Mon Mar 2, 2026
6:00PM PT - 9:30PM PT
UCLA
School of Public Affairs Bldg. 1278
Discussion
Mon Mar 9, 2026
6:00PM PT - 9:30PM PT
UCLA
School of Public Affairs Bldg. 1278
-
This section has no set meeting times.
Instructor:
REG#
405857
Fee:
$1,095.00
Onlineformat icon
Updating...
Notes

Enrollment limited; early enrollment advised. Enrollment deadline: January 11th, 2026.

Deadline
Refunds only available from November 03, 2025 to January 18, 2026
Course Requirements
Internet access required to retrieve course materials.
Feature Engineering for Machine Learning
The Hundred-Page Machine Learning Book

This course applies toward the following programs

data visualization graohic

Data Science

certificate
certificate Learn to leverage the power of big data to extract insights and improve decision making for real-world problems. Gain hands-on experience in data management and visualization, machine learning, statistical models, and more for a career in data science.

Learn to leverage the power of big data to extract insights and improve decision making for real-world problems. Gain hands-on experience in data management and visualization, machine learning, statistical models, and more for a career in data science.