Skip to Content

CMSC 402 - Big Data Analytics

Institution:
Shippensburg University of Pennsylvania
Subject:
Description:
We are living in data-intensive world. Efficiently extracting, interpreting, and learning from very large datasets requires efficient and scalable algorithms as well as new data management technologies. Machine learning techniques and high performance computing make the efficient analysis of large volumes of data. In this course we explore big dataset analysis techniques and apply it to the distributed. This course is highly interactive. Students are expected to make use of technologies to design highly scalable systems that can process and analyze Big Data for a variety of scientific, social, and environmental challenges.
Credits:
4.00
Credit Hours:
Prerequisites:
CMSC 310 (Grade of C or Higher) and MATH 217
Corequisites:
Exclusions:
Level:
Instructional Type:
Lecture
Notes:
Additional Information:
Historical Version(s):
Institution Website:
Phone Number:
(717) 477-7447
Regional Accreditation:
Middle States Association of Colleges and Schools
Calendar System:
Semester

The Course Profile information is provided and updated by third parties including the respective institutions. While the institutions are able to update their information at any time, the information is not independently validated, and no party associated with this website can accept responsibility for its accuracy.