Python Bytes is a weekly podcast hosted by Michael Kennedy and Brian Okken. The show is a short disc
Topics covered in this episode: Practical SQL for Data Analysis Git Blame in your Python Tracebac
Topics covered in this episode: Textual Pinning application dependencies with pip-tools compile P
Topics covered in this episode: Using accessible colors, monolens & CMasher rapidfuzz: Rapid
Topics covered in this episode: Flask 2.0 articles and reactions Python 3.11 will be 2x faster? 3
Topics covered in this episode: Powering the Python Package Index in 2021 The Leuven Star Atlas T
Topics covered in this episode: readme.so Wafer-scale Python datefinder and dateutil Cinder - Ins
Topics covered in this episode: Sphinx Themes Gallery update Mongita - Like SQLite but for MongoD
Topics covered in this episode: For-Else: A Weird but Useful Feature in Python Tortoise ORM Faste
Topics covered in this episode: calmcode.io Natural sort (aka natsort) Python controlling a helic
Topics covered in this episode: Coverage.py (5.6b1) and third-party code So you want your own Paa
Topics covered in this episode: How to make an awesome Python package in 2021 Kubestriker wasmtim
Topics covered in this episode: Number One, that's "retract plank," not "remove plank." SQLAlchem
Topics covered in this episode: DataClass vs NamedTuple vs Object: A Battle of Performance in Pyt
Topics covered in this episode: Raspberry Pi Pico New MongoDB ODM: Beanie Sourcery Neomodel Confe
Topics covered in this episode: AWSimple coverage and installed packages Finding Mona Lisa in the
Topics covered in this episode: Python Developers Survey 2020 Results Django Ninja - Fast Django
Topics covered in this episode: boto type annotations How to have your code reviewer appreciate y
Topics covered in this episode: Keeping up with Rich 12 requests per second Python Launcher for U
Topics covered in this episode: We Downloaded 10,000,000 Jupyter Notebooks From Github – This Is
Topics covered in this episode: Do you really need a virtualenv? Copier - like cookiecutter * Pan