NS 4300

NS 4300

Course information provided by the Courses of Study 2024-2025.

This course will cover fundamental concepts of big data analysis at an introductory level in the context of gene expression at the mRNA and protein levels with a focus on metabolic regulatory networks. Programming in Python and R will be required, but no prior experience is necessary. Programming in this course will focus methods to parse large data sets and perform informatics analyses.

When Offered Spring.

Permission Note Enrollment limited to: senior, junior, and graduate students. Sophomores by permission during the add period.
Prerequisites/Corequisites Prerequisite: one semester introductory biology lecture (BIOMG 1350, BIOG 1440, or equivalent), biochemistry (NS 3200, BIOMG 3300, or equivalent), and introductory statistics (STSCI 2150, PUBPOL 2100, AEM 2100, or equivalent).

Distribution Category (PBS-HE) (OPHLS-AG)

Comments Students are required to bring their own laptop to class.

Outcomes
  • Students will be able to: (1) run Python and R on their own systems and (2) access and use programs written in these languages.
  • Students will be able to constructively critique potential hypotheses or conclusions based on mRNA or protein abundance patterns.
  • Students will be able to: (1) find public data sets and (2) determine the numerical format of public data sets.
  • Students will be able to hypothesize the impacts on metabolism of up- or down- regulation of proteins and transcripts corresponding to genes of metabolic pathways.
  • Students will be able to propose pairs or groups of genes that regulate aspects of metabolism based on their mRNA or protein abundance patterns.

View Enrollment Information

Syllabi:
  •   Regular Academic Session.  Combined with: NS 6300

  • 3 Credits Graded

  •  9012 NS 4300   LEC 001

    • TR
    • Jan 21 - May 6, 2025
    • Vacanti, N

  • Instruction Mode: In Person
    Prerequisite: BIOMG 1350 or equivalent, NS 3200 or equivalent, and STSCI 2150 or equivalent. Enrollment limited to: graduate students, seniors, and juniors; sophomores by permission of instructor during the add/drop period. Students are required to bring their own laptop to class. Please contact the Division of Nutritional Sciences (DNS) Student Services, dnsstudentservices@cornell.edu, with questions about enrollment.