Practical Python Programming

Overview

Welcome!

When I first learned Python nearly 25 years ago, I was immediately struck by how I could productively apply it to all sorts of messy work projects. Fast-forward a decade and I found myself teaching others the same fun. The result of that teaching is this course--A no-nonsense treatment of Python that has been actively taught to more than 400 in-person groups since 2007. Traders, systems admins, astronomers, tinkerers, and even a few hundred rocket scientists who used Python to help land a rover on Mars--they've all taken this course. Now, I'm pleased to make it available under a Creative Commons license. Enjoy!

GitHub Pages | GitHub Repo.

--David Beazley (https://dabeaz.com), @dabeaz

What is This?

The material you see here is the heart of an instructor-led Python training course used for corporate training and professional development. It has been in continual development since 2007 and battle tested in real-world classrooms. Usually, it's taught in-person over the span of three or four days--requiring approximately 25-35 hours of intense work. This includes the completion of approximately 130 hands-on coding exercises.

Target Audience

Students of this course are usually professional scientists, engineers, and programmers who already have experience in at least one other programming language. No prior knowledge of Python is required, but knowledge of common programming topics is assumed. Most participants find the course challenging--even if they've already been doing a bit of Python programming.

Course Objectives

The goal of this course is to cover foundational aspects of Python programming with an emphasis on script writing, data manipulation, and program organization. By the end of this course, students should be able to start writing useful Python programs on their own or be able to understand and modify Python code written by their coworkers.

Requirements

To complete this course, you need nothing more than a basic installation of Python 3.6 or newer and time to work on it.

What This Course is Not

This is not a course for absolute beginners on how to program a computer. It is assumed that you already have programming experience in some other programming language or Python itself.

This is not a course on web development. That's a different circus. However, if you stick around for this circus, you'll still see some interesting acts--just nothing involving animals.

This is not a course for software engineers on how to write or maintain a one-million line Python application. I don't write programs like that, nor do most companies who use Python, and neither should you. Delete something already!

Take me to the Course Already!

Ok, ok. Point your browser HERE!

Community Discussion

Want to discuss the course? You can join the conversation on Gitter. I can't promise an individual response, but perhaps others can jump in to help.

Acknowledgements

Llorenç Muntaner was instrumental in converting the course content from Apple Keynote to the online structure that you see here.

Various instructors have presented this course at one time or another over the last 12 years. This includes (in alphabetical order): Ned Batchelder, Juan Pablo Claude, Mark Fenner, Michael Foord, Matt Harrison, Raymond Hettinger, Daniel Klein, Travis Oliphant, James Powell, Michael Selik, Hugo Shi, Ian Stokes-Rees, Yarko Tymciurak, Bryan Van de ven, Peter Wang, and Mark Wiebe.

I'd also like to thank the thousands of students who have taken this course and contributed to its success with their feedback and discussion.

Questions and Answers

Q: Are there course videos I can watch?

No. This course is about you writing Python code, not watching someone else.

Q: How is this course licensed?

Practical Python Programming is licensed under a Creative Commons Attribution ShareAlike 4.0 International License.

Q: May I use this material to teach my own Python course?

Yes, as long as appropriate attribution is given.

Q: May I make derivative works?

Yes, as long as such works carry the same license terms and provide attribution.

Q: Can I translate this to another language?

Yes, that would be awesome. Send me a link when you're done.

Q: Can I live-stream the course or make a video?

Yes, go for it! You'll probably learn a lot of Python doing that.

Q: Why wasn't topic X covered?

There is only so much material that you can cover in 3-4 days. If it wasn't covered, it was probably because it was once covered and it caused everyone's head to explode or there was never enough time to cover it in the first place. Also, this is a course, not a Python reference manual.

Q: Do you accept pull requests?

Bug reports are appreciated and may be filed through the issue tracker. Pull requests are not accepted except by invitation. Please file an issue first.

Spin-off Notice: the modules and functions used by our research notebooks have been refactored into another repository

Fecon235 - Notebooks for financial economics. Keywords: Jupyter notebook pandas Federal Reserve FRED Ferbus GDP CPI PCE inflation unemployment wage income debt Case-Shiller housing asset portfolio eq

Adriano 825 Dec 27, 2022
Clases y ejercicios del curso de python diactodo por la UNSAM

Programación en Python En el marco del proyecto de Inteligencia Artificial Interdisciplinaria, la Escuela de Ciencia y Tecnología de la UNSAM vuelve a

Maximiliano Villalva 3 Jan 06, 2022
VSCode extension that generates docstrings for python files

VSCode Python Docstring Generator Visual Studio Code extension to quickly generate docstrings for python functions. Features Quickly generate a docstr

Nils Werner 506 Jan 03, 2023
An open source utility for creating publication quality LaTex figures generated from OpenFOAM data files.

foamTEX An open source utility for creating publication quality LaTex figures generated from OpenFOAM data files. Explore the docs » Report Bug · Requ

1 Dec 19, 2021
swagger-codegen contains a template-driven engine to generate documentation, API clients and server stubs in different languages by parsing your OpenAPI / Swagger definition.

Master (2.4.25-SNAPSHOT): 3.0.31-SNAPSHOT: Maven Central ⭐ ⭐ ⭐ If you would like to contribute, please refer to guidelines and a list of open tasks. ⭐

Swagger 15.2k Dec 31, 2022
Create Python API documentation in Markdown format.

Pydoc-Markdown Pydoc-Markdown is a tool and library to create Python API documentation in Markdown format based on lib2to3, allowing it to parse your

Niklas Rosenstein 375 Jan 05, 2023
the project for the most brutal and effective language learning technique

- "The project for the most brutal and effective language learning technique" (c) Alex Kay The langflow project was created especially for language le

Alexander Kaigorodov 7 Dec 26, 2021
Sms Bomber, Tool Encryptor

ɴᴏʙɪᴛᴀシ︎ ғᴏʀ ᴀɴʏ ʜᴇʟᴘシ︎ Install pkg install git -y pkg install python -y pip install requests git clone https://github.com/AK27HVAU/akash Run cd Akash

ɴᴏʙɪᴛᴀシ︎ 4 May 23, 2022
Example Python code for running the mango-explorer marketmaker

🥭 Mango Explorer 📖 Introduction This guide will show you how to load and run a customisable marketmaker that runs on Mango Markets using the mango-e

Blockworks Foundation 2 Apr 11, 2022
learn python in 100 days, a simple step could be follow from beginner to master of every aspect of python programming and project also include side project which you can use as demo project for your personal portfolio

learn python in 100 days, a simple step could be follow from beginner to master of every aspect of python programming and project also include side project which you can use as demo project for your

BDFD 6 Nov 05, 2022
Python-slp - Side Ledger Protocol With Python

Side Ledger Protocol Run python-slp node First install Mongo DB and run the mong

Solar 3 Mar 02, 2022
Yu-Gi-Oh! Master Duel translation script

Yu-Gi-Oh! Master Duel translation script

715 Jan 08, 2023
Service for visualisation of high dimensional for hydrosphere

hydro-visualization Service for visualization of high dimensional for hydrosphere DEPENDENCIES DEBUG_ENV = bool(os.getenv("DEBUG_ENV", False)) APP_POR

hydrosphere.io 1 Nov 12, 2021
Python code for working with NFL play by play data.

nfl_data_py nfl_data_py is a Python library for interacting with NFL data sourced from nflfastR, nfldata, dynastyprocess, and Draft Scout. Includes im

82 Jan 05, 2023
A complete kickstart devcontainer repository for python3

A complete kickstart devcontainer repository for python3

Viktor Freiman 3 Dec 23, 2022
Coursera learning course Python the basics. Programming exercises and tasks

HSE_Python_the_basics Welcome to BAsics programming Python! You’re joining thousands of learners currently enrolled in the course. I'm excited to have

PavelRyzhkov 0 Jan 05, 2022
Resource hub for Obsidian resources.

Obsidian Community Vault Welcome! This is an experimental vault that is maintained by the Obsidian community. For best results we recommend downloadin

Obsidian Community 320 Jan 02, 2023
This repo provides a package to automatically select a random seed based on ancient Chinese Xuanxue

🤞 Random Luck Deep learning is acturally the alchemy. This repo provides a package to automatically select a random seed based on ancient Chinese Xua

Tong Zhu(朱桐) 33 Jan 03, 2023
Swagger Documentation Generator for Django REST Framework: deprecated

Django REST Swagger: deprecated (2019-06-04) This project is no longer being maintained. Please consider drf-yasg as an alternative/successor. I haven

Marc Gibbons 2.6k Jan 03, 2023
Automated generation of real Swagger/OpenAPI 2.0 schemas from Django REST Framework code.

drf-yasg - Yet another Swagger generator Generate real Swagger/OpenAPI 2.0 specifications from a Django Rest Framework API. Compatible with Django Res

Cristi Vîjdea 3k Dec 31, 2022