COMPSCI 260: Introduction to Computational Genomics

Overview

A computational perspective on the exploration and analysis of genomic and genome-scale information. Provides an integrated introduction to genome biology, algorithm design and analysis, and probabilistic and statistical modeling. Topics include genome sequencing, genome sequence assembly, local and global sequence alignment, sequence database search, gene and motif finding, phylogenetic tree building, and basic gene expression analysis. Methods include dynamic programming, indexing, hidden Markov models, and elementary supervised and unsupervised machine learning. Development of practical experience with handling, analyzing, and visualizing genomic data using the computer language Python.

The course will require students to program often in Python. Students coming in to the course must already know how to program in some computer language, but it need not be Python. If it is not Python, students will be expected to come quickly up to speed in Python on their own. Additionally, students should be comfortable with mathematical thinking and formulas, and should have had some exposure to basic probability as well as molecular or cellular biology; however, the course has no formal course prerequisites, and quick refreshers of relevant background will be provided. Please speak to the instructor if you are unsure about your background. This course is a valid elective in both biology and computer science.

Staff

Professor Alex Hartemink

Webpage: http://www.cs.duke.edu/~amink
Email: amink at cs.duke.edu
Office Location: LSRC D239
Office Phone: (919) 660-6514

Vincentius Martin, TA Email: vincentius.martin at duke.edu
Sneha Mitra, TA Email: sneha.mitra at duke.edu
Trung Tran, TA Email: trung.tran at duke.edu
Katherine Molinet, UTA Email: katherine.molinet at duke.edu
Mihir Paithane, UTA Email: mihir.paithane at duke.edu
Dylan Powers, UTA Email: dylan.powers at duke.edu
Aditya Sridhar, UTA Email: aditya.sridhar at duke.edu
Vivek Sriram, UTA Email: vivek.sriram at duke.edu
Anngelyque Stevenson, UTA Email: anngelyque.stevenson at duke.edu
Darryl Yan, UTA Email: darryl.yan at duke.edu
Annie Yin, UTA Email: wen.yin at duke.edu

Office hours

Office hours with TAs and UTAs will be held in 154 Biological Sciences.

If these office hours do not work for you, please post questions via Piazza, or send any of us an email to schedule an alternate time. In particular, if you would like to speak with the instructor about anything, he is available immediately after every lecture, or you are welcome to send him an email to schedule a meeting at another time that is more convenient for you.

Logistics

The class meets on Tuesdays and Thursdays 10:05–11:20AM in 111 Biological Sciences.