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Syllabus

Recommended References: (1) Mark Lutz, “Learning Python” 5th ed. O’Reilly 2013. (2) Frank Jensen, “Introduction to Computational Chemistry” 3rd ed. Wiley 2016

Time: 10:30-11:45 am, T/R

Place: Room 130, Hamilton Hall

Schedule

This may change as the course progresses. I will email out anytime it changes.

Lecture Date Description
Lecture 01 Aug 27 How to Python, Python basics I: number and strings, intro to control statements
Lecture 02 Aug 29 Python basics II: lists, dictionaries and looping
Lecture 03 Sep 3 Python basics III: functions, how to comment code
Lecture 04 Sep 5 Python basics IV: file IO and modules
Lecture 05 Sep 10 Python basics V: objects and classes
Lecture 06 Sep 12 Python basics VI: misc topics
Lecture 07 Sep 17 maintaining code with github, using new python packages
Lecture 08 Sep 22 testing code with unittests
Lecture 09 Sep 24 Scientific Python packages: Numpy and Scipy part I
Lecture 10 Sep 26 Scientific Python packages: Numpy and Scipy part II
Lecture 11 Oct 1 Pandas package: data organization and processing part I
Lecture 12 Oct 3 Pandas package: data organization and processing part II
Lecture 13 Oct 8 Plotting with Python Matplotlib and Seaborn part I
Lecture 14 Oct 10 Plotting with Python Matplotlib and Seaborn part II
Lecture 15 Oct 15 Other useful python packages part I
Lecture 16 Oct 17 Other useful python packages part II
Lecture 17 Oct 24 Simulation Techniques Overview
Lecture 18 Oct 31 Molecular dynamics (MD) and setting up gromacs jobs
Lecture 19 Nov 5 Analyze MD runs
Lecture 20 Nov 7 Density functional theory (DFT) and setting up guassian jobs
Lecture 21 Nov 12 Analyze DFT runs
Lecture 22 Nov 14 Molecular docking and setting up autodock jobs
Lecture 23 Nov 19 Analyze docking runs
Lecture 24 Nov 21 Protein folding nd Rosetta protein design
Lecture 25 Nov 26 Analyze Rosetta protein design runs
Lecture 26 Dec 3 Work / plan final project
Lecture 27 Dec 5 Work / plan final project
Lecture 28 Dec 12 Presenting final project (10 min presentation)
Lecture 29 Dec 14 Presenting final project (10 min presentation), and free pizza

Grading

Grades will be based on a combination of attendance, class participation (asking questions, demonstrating reading the material), class assignments, final project presentation, and the final project. Most days will have an in-class assignment where we work through a problem together. It is required that you do the reading before hand! Bringing a computer is required, if you do not have a laptop please contact me.

Class assignments will be given in class, everyone will have until the next class to turn it in. The goal is to have everyone finish in class, if I see this is not happening I will adjust the difficulty. Everyone will be paired into groups, only one assignment is required to be turned in for both people.

Class assignments will be graded in the following scheme

Assessment Points (out of 100)
Does the code work 60
variable/function names 10
commenting 10
efficiency 10
testing 10

Everyone is required to read the material before class, if I see you are not doing this you will lose points in participation.

It is okay to use code you find online as part of your projects and assignments but you must cite where you got it from (web adress is fine), and you still have to explain how it works. If you do not cite it you will recieve 0 for the assignment.

example of citing code

# opens and writes text to a file and was taken from the below address:
# https://stackoverflow.com/questions/48959098/how-to-create-a-new-text-file-using-python/48964410
file = open("copy.txt", "w") 
file.write("Your text goes here") 
file.close() 

Grading scheme

Grading type Percent of grade
Attendance 15 %
Participation 10 %
Class Assignments 45 %
Final Project 20 %
Final Prject Presentation 10 %

Grades

There is no curve, everyone can get an A.

Grade Percent out of 100 required
A > 80
B 70
C 60
D 50
F < 50

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