fa
Feedback
PythonHub

PythonHub

رفتن به کانال در Telegram

News & links about Python programming. https://pythonhub.dev/

نمایش بیشتر
2 522
مشترکین
اطلاعاتی وجود ندارد24 ساعت
+47 روز
+3330 روز
آرشیو پست ها
Synchrotron Graph-based live audio manipulation engine implemented in Python. https://github.com/ThatOtherAndrew/Synchrotron

Starting with pytest’s parametrize The article explains how pytest's parametrize feature can simplify and reduce duplication in writing tests by allowing a single test function to run multiple cases with different inputs and expected outputs. It uses a clear step-by-step example with a simple function to demonstrate how parametrize automatically runs the test for multiple data sets, making tests easier to write, read, and... https://nedbatchelder.com/blog/202508/starting_with_pytests_parametrize.html

Anthias Open Source Digital Signage Solution for Raspberry Pi and PC. https://github.com/Screenly/Anthias

APIException Standardize FastAPI error handling with APIException. Custom error codes, fallback logging, and beautiful Swagger UI integration. https://github.com/akutayural/APIException

Python Wheels: from Tags to Variants The story of how the Python Wheel Variant design was developed. https://labs.quansight.org/blog/python-wheels-from-tags-to-variants

Render your Jupyter notebooks in OpenGist No more Github links and no more sharing Jupyter tokens! https://blog.fabiomanganiello.com/article/render-your-jupyter-notebooks-in-opengist

7 Drop-In Replacements to Instantly Speed Up Your Python Data Science Workflows This article explains how to use drop-in replacements like NVIDIA cuDF, cuML, and cuGraph to dramatically speed up common Python data science workflows. It provides specific examples for accelerating popular libraries such as pandas, Polars, scikit-learn, and NetworkX on a GPU with minimal to no code changes. https://developer.nvidia.com/blog/7-drop-in-replacements-to-instantly-speed-up-your-python-data-science-workflows/

google-gemini / genai-processors GenAI Processors is a lightweight Python library that enables efficient, parallel content processing. https://github.com/google-gemini/genai-processors

Why Are Not More People Using These Python Libraries? Python’s standard library is one of its greatest strengths, but many developers only scratch the surface. This video explores 10 powerful and sometimes overlooked modules that can simplify your code, improve performance, and eliminate unnecessary dependencies. From dataclasses and pathlib to functools, graphlib, and heapq, you’ll see practical, real-world examples of how to use these too... https://www.youtube.com/watch?v=F09EK4ztG34

Python Hub Weekly Digest for 2025-08-17 https://pythonhub.dev/digest/2025-08-17/

microsoft / MoGe CVPR'25 Oral MoGe: Unlocking Accurate Monocular Geometry Estimation for Open-Domain Images with Optimal Training Supervision https://github.com/microsoft/MoGe

Llmswap – Python package to reduce LLM API costs by 50-90% with caching https://pypi.org/project/llmswap

Why Python's deepcopy() is surprisingly slow (and better alternatives) https://www.reddit.com/r/Python/comments/1mehrc0/why_pythons_deepcopy_is_surprisingly_slow_and/

OpenPipe / ART Agent Reinforcement Trainer: train multi-step agents for real-world tasks using GRPO. Give your agents on-the-job training. Reinforcement learning for Qwen2.5, Qwen3, Llama, Kimi, and more! https://github.com/OpenPipe/ART

Synchrotron, a real-time DSP engine in pure Python https://synchrotron.thatother.dev/

Create space-saving clones on macOS with Python https://alexwlchan.net/2025/cloning-with-python/

Python performance myths and fairy tales https://lwn.net/SubscriberLink/1031707/73cb0cf917307a93/