SUNY Korea Computing Society

CSE 351 - Introduction to Data Science

CSE 351 - Introduction to Data Science

This multidisciplinary course introduces both theoretical concepts and practical approaches to extract knowledge from data. Topics include linear algebra, probability, statistics, machine learning, and programming. Using large data sets collected from real-world problems in areas of science, technology, and medicine, we introduce how to preprocess data, identify the best model that describes the data, make predictions, evaluate the results, and finally report the results using proper visualization methods. This course also teaches state-of-the art tools for data analysis, such as Python and its scientific libraries.

DetailsDescription
Credits3
PrerequisitesC or higher: CSE 214 or CSE 260; AMS 310; CSE major.
CoordinatorPravin Pawar

Course Outcomes

Course Topics

TopicMaterials
No topics added

Textbooks

Edit this page on GitHub