DiscoverThe Real Python PodcastUsing Virtual Environments in Docker & Comparing Python Dev Tools
Using Virtual Environments in Docker & Comparing Python Dev Tools

Using Virtual Environments in Docker & Comparing Python Dev Tools

Update: 2024-09-271
Share

Description

Should you use a Python virtual environment in a Docker container? What are the advantages of using the same development practices locally and inside a container? Christopher Trudeau is back on the show this week, bringing another batch of PyCoder’s Weekly articles and projects.


We share a recent post by Hynek Schlawack about building Python projects using Docker containers. Hynek argues for using virtual environments for these projects, like developing a local one. He’s found that keeping your code in an isolated, well-defined location and structure avoids confusion and complexity.


We also discuss our development setups, including Python versions, code editors, virtual environment practices, terminals, and customizations. We dig into how your programming history affects the tools you use.


We share several other articles and projects from the Python community, including a group of new releases, addressing the “why” in comments, comparing a data science workflow in Python and R, removing common problems from CSV files, and a project for creating HTML tables in Django.


This episode is sponsored by InfluxData.



Course Spotlight: Advanced Python import Techniques


The Python import system is as powerful as it is useful. In this in-depth video course, you’ll learn how to harness this power to improve the structure and maintainability of your code.



Topics:



  • 00:00:00 – Introduction

  • 00:02:55 – Python Releases 3.12.6, 3.11.10, 3.10.15, 3.9.20, and 3.8.20

  • 00:03:26 – Python Release Python 3.13.0rc2

  • 00:04:07 – Django Security Releases Issued: 5.1.1, 5.0.9, and 4.2.16

  • 00:04:36 – Polars Has a New Lightweight Plotting Backend

  • 00:05:49 – Why I Still Use Python Virtual Environments in Docker

  • 00:11:37 – How to Use Conditional Expressions With NumPy where()

  • 00:15:55 – Sponsor: InfluxData

  • 00:16:39 – PythonistR: A Match Made in Data Heaven

  • 00:23:44 – Why Not Comments

  • 00:26:48 – Video Course Spotlight

  • 00:28:10 – Discussion: Personal development setups

  • 00:51:01 – csv_trimming: Remove Common Ugliness From CSV Files

  • 00:53:01 – django-tables2: Create HTML Tables in Django

  • 00:54:39 – Thanks and goodbye


News:



Show Links:



  • Polars Has a New Lightweight Plotting Backend – Polars 1.6 allows you to natively create beautiful plots without pandas, NumPy, or PyArrow. This is enabled by Narwhals, a lightweight compatibility layer between dataframe libraries.

  • Why I Still Use Python Virtual Environments in Docker – Hynek often gets challenged when he suggests the use of virtual environments within Docker containers, and this post explains why he still does.

  • How to Use Conditional Expressions With NumPy where() – This tutorial teaches you how to use the where() function to select elements from your NumPy arrays based on a condition. You’ll learn how to perform various operations on those elements and even replace them with elements from a separate array or arrays.

  • PythonistR: A Match Made in Data Heaven – In data science you’ll sometimes hear a debate between R and Python. Cosima says ‘why not choose both?’ She outlines a data pipeline that uses the best tool for each job.

  • Why Not Comments – This post talks about why you might want to include information in your code comments about why you didn’t take a particular approach.


Discussion:



Projects:



Additional Links:



Level up your Python skills with our expert-led courses:


Support the podcast & join our community of Pythonistas

Comments 
00:00
00:00
x

0.5x

0.8x

1.0x

1.25x

1.5x

2.0x

3.0x

Sleep Timer

Off

End of Episode

5 Minutes

10 Minutes

15 Minutes

30 Minutes

45 Minutes

60 Minutes

120 Minutes

Using Virtual Environments in Docker & Comparing Python Dev Tools

Using Virtual Environments in Docker & Comparing Python Dev Tools