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data_science_seminar_upenn20's Introduction

Code for tutorials in the Penn Data Science Seminar 2020

Tutorials can be found in the python notebooks. Any data needed will be provided on Canvas, be linked and publicly available, or contained within the notebook itself. We assume the directory structure is as follows:

*tutorial_X*_*date*
│   *code_file.ipynb*    
│
└───data
    │   *downloaded data goes here*

You will need to download the data and add it to the "data" directory in order for the code to run. The necessary data will vary by tutorial.

Tutorial-specific instructions

Tutorial 1, June 25th

Please download the CCLE_expression.csv and sample_info.csv files from the Dependency Map website. Save both files in a directory titled "data" so that your lecture 4 directory has the same structure as above. The data for all figures in this lecture is included within the notebook. Catan dice rolls from 2016-2019 collected by Taylor Patch.

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