Computing and Data Analysis for the Sciences
Session
Regular Academic Session
Class Number
3272
Career
Undergraduate
Units
3 units
Grading
Graded Alpha
Description
Scientific computing emphasizes data analysis and visualization in a scientific context - analyzing data quickly for understanding by the individual, sharing automated workflows with collaborators, and preparing results for later publication. This course will emphasize rapid, interactive, and reproducible collaborative analysis of data for scientific contribution.

Students are required to have taken MATH 117: College Algebra as a prerequisite or to have been placed in MATH 118: Precalculus or higher.

At the end of this course, students will be well versed in the use of a specific, interactive environment for data analysis (likely Python, R, or MATLAB as indicated in the course notes) for analyzing data and sharing results.
Enrollment Requirements
Prerequisite: MATH 117 (or any higher MATH course such as 118, 131, 132, 161, 162) with grade of at least C- or placement into MATH 118.
Class Attributes
Neuroscience
Class Notes
Class is intended to run Thurdays only from 4:15pm-6:45pm Please disregard theTuesday meeting pattern
Class Actions
Class Details
Instructor(s)
Allan Miller
Meets
Th 4:15PM - 6:45PM
Dates
01/13/2025 - 04/26/2025
Room
Cuneo Hall - Room 111
Instruction Mode
In person
Campus
Lake Shore Campus
Location
Lake Shore Campus
Components
Lecture Required
Class Availability
Status
Open
Seats Taken
11
Seats Open
24
Class Capacity
35
Wait List Total
0
Wait List Capacity
0