About CS 2870 A

Basic data science techniques, from import to cleaning to visualizing and modeling, using the R language. Machine learning methods include regression, classification and clustering algorithms. Programming methods include user-defined functions. Prerequisite: STAT 1110, STAT 1410, or STAT 2430. Cross-listed with: STAT 2870.

Notes

Prereqs enforced by the system: STAT 1110 or STAT 1410 or STAT 2430; Cross listed with STAT 2870 A; Total combined enrollment: 40; Open to Degree and PACE students

Section Description

Basic data science techniques, from import to cleaning to visualizing and modeling, using the R language. Machine learning methods include regression, classification and clustering algorithms. Programming methods include user-defined functions.

Section Expectation

At the end of the course, students will be expected to know how to construct the appropriate visuals for data using the GGplot2 package, manipulate data frames using base R and the Tidyverse packages, write custom functions, perform loops, and build/improve models using machine learning techniques. No programming experience required.

Evaluation

Students will be assessed by homeworks, in-class quizzes, and a group project.

Important Dates

Note: These dates may not be accurate for select courses during the Summer Session.

Courses may be cancelled due to low enrollment. Show your interest by enrolling.

Deadlines
Last Day to Add
Last Day to Drop
Last Day to Withdraw with 50% Refund
Last Day to Withdraw with 25% Refund
Last Day to Withdraw

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