PythonHub
Відкрити в Telegram
News & links about Python programming. https://pythonhub.dev/
Показати більше2 528
Підписники
-224 години
+37 днів
+1830 день
Архів дописів
2 529
A Comprehensive Guide to Python Logging with Structlog
Structlog is an open-source logging tool for Python known for its simple API, performance, and quality of life features. This tutorial explores the essential aspects of Structlog.
https://betterstack.com/community/guides/logging/structlog/
2 529
karpathy / llama2.c
Inference Llama 2 in one file of pure C
https://github.com/karpathy/llama2.c
2 529
Structuring your Infrastructure as Code
The author proposes a layered approach to IaC, with each layer representing a different aspect of your infrastructure. This approach makes it easy to isolate changes to different parts of your infrastructure, and to reuse code across different environments.
https://leebriggs.co.uk/blog/2023/08/17/structuring-iac
2 529
seamless_communication
SeamlessM4T is designed to provide high quality translation, allowing people from different linguistic communities to communicate effortlessly through speech and text.
https://github.com/facebookresearch/seamless_communication
2 529
Fixit 2: Meta’s next-generation auto-fixing linter
Fixit is dead! Long live Fixit 2 – the latest version of our open-source auto-fixing linter. Fixit 2 allows developers to efficiently build custom lint rules and perform auto-fixes for their codebases.
https://engineering.fb.com/2023/08/07/developer-tools/fixit-2-linter-meta/
2 529
Composition over inheritance: The case for function-based views
The author shares some of his thoughts re. function- vs class-based views in Django.
https://406.ch/writing/composition-over-inheritance-the-case-for-function-based-views/
2 529
How to implement CommandBus in Python
CommandBus is a communication mechanism used to decouple the sender of a command from its handler or executor. It is a part of the Command Pattern and is commonly used in applications that follow the CQRS (Command Query Responsibility Segregation) pattern or other similar architectural styles. This article provides a comprehensive guide on implementing the CommandBus in Python
https://blog.szymonmiks.pl/p/how-to-implement-commandbus-in-python/
2 529
hegelai / prompttools
Open-source tools for prompt testing and experimentation, with support for both LLMs (e.g. OpenAI, LLaMA) and vector databases (e.g. Chroma, Weaviate, LanceDB).
https://github.com/hegelai/prompttools
2 529
facefusion
Next generation face swapper and enhancer.
https://github.com/facefusion/facefusion
2 529
Understanding Immortal Objects in Python 3.12: A Deep Dive into Python Internals
A detailed examination of Python 3.12's internal changes featuring the concept of 'immortal' objects, for performance enhancements
https://codeconfessions.substack.com/p/understanding-immortal-objects-in
2 529
Understanding Automatic Differentiation in 30 lines of Python
https://vmartin.fr/understanding-automatic-differentiation-in-30-lines-of-python.html
2 529
Asyncio, twisted, tornado, gevent walk into a bar...
SummaryConcurrency has a lot to do with sharing one resource, and Python has dedicated tools to ...
https://www.bitecode.dev/p/asyncio-twisted-tornado-gevent-walk
2 529
Build Apps in Python with Dara
https://www.reddit.com/r/Python/comments/1614om5/build_apps_in_python_with_dara/
2 529
nl2query
A framework for converting natural language text inputs to corresponding Pandas, MongoDB, Kusto and Neo4j (Cypher) queries.
https://github.com/Chirayu-Tripathi/nl2query
2 529
VisionScript
A high-level programming language for using computer vision.
https://github.com/capjamesg/visionscript
2 529
GPU-Accelerated, Deterministic ML Dev Environments with Docker and CUDA
A Better Way to Build Your AI Enhanced Project.
https://www.makeartwithpython.com/blog/developing-machine-learning-applications/
2 529
Collection of stand-alone Python machine learning recipes (2021)
https://github.com/rougier/ML-Recipes
2 529
Development with Large Language Models Tutorial – OpenAI, Langchain, Agents, Chroma
Throughout this course, you will complete hands-on projects will help you learn how to harness LLMs for your own projects. You will build projects with LLMs that will enable you to create dynamic interfaces, interact with vast amounts of text data, and even empower LLMs with the capability to browse the internet for research papers.
https://www.youtube.com/watch?v=xZDB1naRUlk
2 529
Shell-AI
Shell-AI (shai) is a CLI utility that brings the power of natural language understanding to your command line. Simply input what you want to do in natural language, and shai will suggest single-line commands that achieve your intent.
https://github.com/ricklamers/shell-ai
Вже доступно! Дослідження Telegram за 2025 — головні інсайти року 
