Skip to content

dchudz/pycon2015-kaggle-tutorial

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

23 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Winning code

Update: Here's the winning code from Kevin.

Instructions

These are instructions for recommended preparation for students in the PyCon 2015 Kaggle Tutorial.

If possible, try to check back Wednesday night for any minor updates to the data set or environment.yml. I'll add a note here if anything is updated.

Download dataset

The tutorial will be based on the data here.

Download Anaconda or Miniconda

If you don't have Anaconda or Miniconda installed in your laptop, you can download them from here:

  • Miniconda: Python distribution with conda package manager. [Recommended]
  • Anaconda: Free enterprise-ready Python distribution with 270+ data and scientific packages.

For step-by-step instructions, visit Anaconda Install

Alternatively, command line download instructions for UNIX systems:

$ wget http://bit.ly/miniconda
$ bash miniconda

Simple setup

If you have Anaconda, you are already setup to go.

If you have Miniconda you'll need the following libraries.

$ conda install numpy pandas scipy matplotlib scikit-learn nltk ipython-notebook seaborn

Using conda environments

It's useful to have your dependencies in environments. Conda handles environments natively and can help you manage your Data Science projects.

Get the environment.yml

The the environment.yml file in this repository (by downloading it, pulling the repository with git clone https://github.com/dchudz/pycon2015-kaggle-tutorial.git, or even forking and then pulling your own copy).

Setup your environment

Once you have either Miniconda or Anaconda, you can just run the following commands to setup your environment (from inside the directory with environment.yml):

$ conda env create
$ source activate kaggletutorial

Note: Windows users should run activate kaggletutorial instead.

Running the notebooks

$ ipython notebook

Add more libraries

The tutorial will include lots of time for working on your own and in groups, so feel free to add any additional tools (e.g. for machine learning, text processing, data visualizaton, and data manipulation) you like to your environment.

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages