Skip to content

Latest commit

 

History

History
48 lines (29 loc) · 2.74 KB

File metadata and controls

48 lines (29 loc) · 2.74 KB

Machine learning and data science course

Binder Colab

How to Use this Course

About

All notebooks are written and tested with Python 3.8, though other python version should work fine but not guranted.

The course covers the core packages that includes: Python, NumPy, Pandas, Matplotlib, Scikit-Learn, and [seaborn] (https://seaborn.pydata.org/) packages. There is no pre-assumption for this course. Anyone can start with this. However if you need a introduction to the python itself, see the free companion project, A Whirlwind Tour of Python: it's a fast-paced introduction to the Python language aimed at researchers and scientists.

Software

The packages I used to run the code in the book are listed in requirements.txt (Note that some of these exact version numbers may not be available on your platform: you may have to tweak them for your own use). To install the requirements using conda, run the following at the command-line:

$ conda install --file requirements.txt

To create a stand-alone environment named PDSH with Python 3.5 and all the required package versions, run the following:

$ conda create -n PDSH python=3.5 --file requirements.txt

You can read more about using conda environments in the Managing Environments section of the conda documentation.

License

Code

The code in this repository, including all code samples in the notebooks listed above, is released under the MIT license. Read more at the Open Source Initiative.

Text

The text content of the book is released under the CC-BY-NC-ND license. Read more at Creative Commons.