Skip to content

Latest commit

 

History

History
66 lines (36 loc) · 3.45 KB

readme.md

File metadata and controls

66 lines (36 loc) · 3.45 KB

Python Tutorials

This GitHub repository contains a number of beginner friendly Python tutorials covering installation and basic use of Python in markdown format. These guides cover the Python data model, Python standard libraries and third-party Python scientific libraries known as the numpy stack.

Please star and share this repository if you've found it useful as it will make it easier for others to find.

Viewing Markdown Files

These tutorials are in markdown format and GitHub displays the markdown as a webpage. Note some of the guides are screenshot intensive. On slow connections, the browser may timeout before all the images are downloaded. Downloaded images will be cached, refresh the page a couple of times to will continue downloading the remaining images.

The GitHub repository can also be downloaded and the readme.md can be opened in VSCode. Some of the styling in the markdown tables that are ignored on GitHub will render better in VSCode. This styling more closely resembles the Variable Explorer of the Spyder IDE.

Windows

Ubuntu

The Ubuntu instructions can be modified slightly for another Linux distribution and should closely resemble installation on a Mac:

Installation

The following guide covers installation and basic use of the Scientific Python Development Environment (Spyder). Spyder is tailored for scientists and engineers and has the most commonly used packages from the scientific stack preinstalled. This makes it very begineer friendly.

This installation guide will also cover installation of additional packages using Miniconda to create a conda-forge (community channel) environment and additional dependencies such as TeX (commonly used in plots), which do not have a conda-forge package.

Windows

Ubuntu

The Ubuntu instructions can be modified slightly for another Linux distribution and should closely resemble installation on a Mac:

Preference of IDE is somewhat subjective. The remaining tutorials are in markdown format, and can be used in any other Python IDE that has an ipython console such as JupyterLab and VSCode (when VSCode is configured for Python).

Python and Standard Libraries

These tutorials cover the object orientated design pattern of builtins classes, focusing on text datatypes, numeric datatypes and collection datatypes. The object orientated design pattern is known as the Python Data Model:

Numeric Python Stack

These tutorials cover the numeric Python stack, which bridge a numeric design pattern with a collection design pattern:

Markdown

Tutorial on markdown syntax: