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Testing Your Python Code Base: Unit vs. Integration

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Contenuto fornito da Real Python. Tutti i contenuti dei podcast, inclusi episodi, grafica e descrizioni dei podcast, vengono caricati e forniti direttamente da Real Python o dal partner della piattaforma podcast. Se ritieni che qualcuno stia utilizzando la tua opera protetta da copyright senza la tua autorizzazione, puoi seguire la procedura descritta qui https://it.player.fm/legal.

What goes into creating automated tests for your Python code? Should you focus on testing the individual code sections or on how the entire system runs? Christopher Trudeau is back on the show this week, bringing another batch of PyCoder’s Weekly articles and projects.

We discuss a recent article from Semaphore about unit testing vs. integration testing. Christopher shares his experiences setting up automated tests for his own smaller projects. He also answers questions about building tests in an existing codebase and integrating tests across systems.

We also share several other articles and projects from the Python community, including a news roundup, improving default line charts to journal-quality infographics, why hash(-1) == hash(-2) in Python, data cleaning in data science, ways to work with large files in Python, a lightweight CLI viewer for log files, and a tool for mocking the datetime module for testing.

This episode is sponsored by Postman.

Course Spotlight: Testing Your Code With pytest

In this video course, you’ll learn how to take your testing to the next level with pytest. You’ll cover intermediate and advanced pytest features such as fixtures, marks, parameters, and plugins. With pytest, you can make your test suites fast, effective, and less painful to maintain.

Topics:

  • 00:00:00 – Introduction
  • 00:02:28 – Python news and releases
  • 00:04:02 – From Default Line Charts to Journal-Quality Infographics
  • 00:07:25 – PyViz: Python Tools for Data Visualization
  • 00:09:25 – Why Is hash(-1) == hash(-2) in Python?
  • 00:12:40 – Sponsor: Postman
  • 00:13:32 – Data Cleaning in Data Science
  • 00:19:29 – 10 Ways to Work With Large Files in Python
  • 00:23:40 – Unit Testing vs. Integration Testing
  • 00:29:17 – Does university curriculum cover this?
  • 00:31:22 – Building tests into smaller projects
  • 00:36:04 – Video Course Spotlight
  • 00:37:30 – How does the approach differ with clients or larger-scale projects?
  • 00:40:45 – How do tests act as documentation?
  • 00:42:02 – Difficulties in building integration tests
  • 00:45:24 – How do you limit the results of tests?
  • 00:47:52 – klp: Lightweight CLI Viewer for Log Files
  • 00:50:54 – freezegun: Mocks the datetime Module for Testing
  • 00:53:11 – Thanks and goodbye

News:

Topics:

  • From Default Line Charts to Journal-Quality Infographics – “Everyone who has used Matplotlib knows how ugly the default charts look like.” In this series of posts, Vladimir shares some tricks to make your visualizations stand out and reflect your individual style.
  • PyViz: Python Tools for Data Visualization – This site contains an overview of all the different visualization libraries in the Python ecosystem. If you’re trying to pick a tool, this is a great place to better understand the pros and cons of each.
  • Why Is hash(-1) == hash(-2) in Python? – Somewhat surprisingly, hash(-1) == hash(-2) in CPython. This post examines how and discovers why this is the case.
  • Data Cleaning in Data Science – “Real-world data needs cleaning before it can give us useful insights. Learn how you can perform data cleaning in data science on your dataset.”
  • 10 Ways to Work With Large Files in Python – “Handling large text files in Python can feel overwhelming. When files grow into gigabytes, attempting to load them into memory all at once can crash your program.” This article covers different ways of dealing with this challenge.

Discussion:

Project:

Additional Links:

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

Support the podcast & join our community of Pythonistas

  continue reading

245 episodi

Artwork
iconCondividi
 
Manage episode 464206214 series 2637014
Contenuto fornito da Real Python. Tutti i contenuti dei podcast, inclusi episodi, grafica e descrizioni dei podcast, vengono caricati e forniti direttamente da Real Python o dal partner della piattaforma podcast. Se ritieni che qualcuno stia utilizzando la tua opera protetta da copyright senza la tua autorizzazione, puoi seguire la procedura descritta qui https://it.player.fm/legal.

What goes into creating automated tests for your Python code? Should you focus on testing the individual code sections or on how the entire system runs? Christopher Trudeau is back on the show this week, bringing another batch of PyCoder’s Weekly articles and projects.

We discuss a recent article from Semaphore about unit testing vs. integration testing. Christopher shares his experiences setting up automated tests for his own smaller projects. He also answers questions about building tests in an existing codebase and integrating tests across systems.

We also share several other articles and projects from the Python community, including a news roundup, improving default line charts to journal-quality infographics, why hash(-1) == hash(-2) in Python, data cleaning in data science, ways to work with large files in Python, a lightweight CLI viewer for log files, and a tool for mocking the datetime module for testing.

This episode is sponsored by Postman.

Course Spotlight: Testing Your Code With pytest

In this video course, you’ll learn how to take your testing to the next level with pytest. You’ll cover intermediate and advanced pytest features such as fixtures, marks, parameters, and plugins. With pytest, you can make your test suites fast, effective, and less painful to maintain.

Topics:

  • 00:00:00 – Introduction
  • 00:02:28 – Python news and releases
  • 00:04:02 – From Default Line Charts to Journal-Quality Infographics
  • 00:07:25 – PyViz: Python Tools for Data Visualization
  • 00:09:25 – Why Is hash(-1) == hash(-2) in Python?
  • 00:12:40 – Sponsor: Postman
  • 00:13:32 – Data Cleaning in Data Science
  • 00:19:29 – 10 Ways to Work With Large Files in Python
  • 00:23:40 – Unit Testing vs. Integration Testing
  • 00:29:17 – Does university curriculum cover this?
  • 00:31:22 – Building tests into smaller projects
  • 00:36:04 – Video Course Spotlight
  • 00:37:30 – How does the approach differ with clients or larger-scale projects?
  • 00:40:45 – How do tests act as documentation?
  • 00:42:02 – Difficulties in building integration tests
  • 00:45:24 – How do you limit the results of tests?
  • 00:47:52 – klp: Lightweight CLI Viewer for Log Files
  • 00:50:54 – freezegun: Mocks the datetime Module for Testing
  • 00:53:11 – Thanks and goodbye

News:

Topics:

  • From Default Line Charts to Journal-Quality Infographics – “Everyone who has used Matplotlib knows how ugly the default charts look like.” In this series of posts, Vladimir shares some tricks to make your visualizations stand out and reflect your individual style.
  • PyViz: Python Tools for Data Visualization – This site contains an overview of all the different visualization libraries in the Python ecosystem. If you’re trying to pick a tool, this is a great place to better understand the pros and cons of each.
  • Why Is hash(-1) == hash(-2) in Python? – Somewhat surprisingly, hash(-1) == hash(-2) in CPython. This post examines how and discovers why this is the case.
  • Data Cleaning in Data Science – “Real-world data needs cleaning before it can give us useful insights. Learn how you can perform data cleaning in data science on your dataset.”
  • 10 Ways to Work With Large Files in Python – “Handling large text files in Python can feel overwhelming. When files grow into gigabytes, attempting to load them into memory all at once can crash your program.” This article covers different ways of dealing with this challenge.

Discussion:

Project:

Additional Links:

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

Support the podcast & join our community of Pythonistas

  continue reading

245 episodi

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