PythonHub
Відкрити в Telegram
News & links about Python programming. https://pythonhub.dev/
Показати більше2 526
Підписники
+324 години
+17 днів
+2930 день
Архів дописів
2 526
Tired of tracing code by hand?
https://www.reddit.com/r/Python/comments/1kzq9vi/tired_of_tracing_code_by_hand/
2 526
A Python frozenset interpretation of Dependent Type Theory
The post explores modeling dependent type theory (DTT) concepts using Python’s frozenset data structure, treating types as finite sets to clarify complex type-theoretic ideas. By implementing type constructors like dependent sums (Σ), dependent products (Π), and identity types in Python, the author demonstrates how key DTT judgments and structures can be represented and reasoned about in...
https://www.philipzucker.com/frozenset_dtt/
2 526
AlphaEvolve: A coding agent for scientific and algorithmic discovery
AlphaEvolve is an autonomous coding agent that uses evolutionary strategies to improve algorithms by iteratively modifying code and learning from evaluator feedback. It has achieved breakthroughs in data center scheduling, hardware design, and mathematical discovery—including surpassing Strassen’s 4×4 matrix multiplication algorithm for the first time in 56 years.
https://storage.googleapis.com/deepmind-media/DeepMind.com/Blog/alphaevolve-a-gemini-powered-coding-agent-for-designing-advanced-algorithms/AlphaEvolve.pdf
2 526
A leap year check in three instructions
The article explores how to check if a year is a leap year using just three CPU instructions, leveraging clever bit manipulation and "magic numbers" to optimize the standard algorithm. By reverse-engineering and brute-forcing constants, the author demonstrates a branchless, highly efficient leap year check for years up to 102,499, illustrating both the mathematical tricks and practical l...
https://hueffner.de/falk/blog/a-leap-year-check-in-three-instructions.html
2 526
Do you really use redis-py seriously?
https://www.reddit.com/r/Python/comments/1ksicim/do_you_really_use_redispy_seriously/
2 526
Beyond Query Optimization
Lyft engineers detail how they improved the scalability and reliability of their Aurora Postgres databases by implementing connection pooling with SQLAlchemy and Amazon RDS Proxy. The article explains the challenges of managing database connections in high-traffic environments and describes how these solutions reduced connection limits, improved application stability, and optimized resou...
https://eng.lyft.com/beyond-query-optimization-aurora-postgres-connection-pooling-with-sqlalchemy-rdsproxy-200db7f562d7
2 526
Ruff users, what rules are using and what are you ignoring?
https://www.reddit.com/r/Python/comments/1kttfst/ruff_users_what_rules_are_using_and_what_are_you/
2 526
ii-agent
A new open-source framework to build and deploy intelligent agents.
https://github.com/Intelligent-Internet/ii-agent
2 526
Ruff - A Fast Linter & Formatter to Replace Multiple Tools and Improve Code Quality
This video is a hands-on tutorial showing how to use Ruff, a super-fast Python linter and formatter written in Rust that consolidates tools like Flake8, Black, and isort into a single, efficient solution. The guide covers installing Ruff, running it from the command line, configuring it for projects, and integrating it with VS Code to improve code quality and developer workflow.
https://www.youtube.com/watch?v=828S-DMQog8
2 526
Unravelling t-strings
PEP 750 introduced t-strings for Python 3.14. In fact, they are so new that as of Python 3.14.0b1 there still isn't any documentation yet for t-strings. As such, this blog post will hopefully help explain what exactly t-strings are and what you might use them for by unravelling the syntax and briefly talking about potential uses for t-strings.
https://snarky.ca/unravelling-t-strings/
2 526
Python in LibreOffice (LibrePythonista Extension)
https://extensions.libreoffice.org/en/extensions/show/99231
2 526
Datatune
Perform transformations on your data with natural language using LLMs
https://github.com/vitalops/datatune
2 526
Flowfile
Flowfile is a visual ETL tool combining drag-and-drop workflows with the speed of Polars dataframes. Build and analyze data pipelines without code. Perfect for analysts and engineers needing fast, intuitive data processing. Designed to run locally or deploy to production environments.
https://github.com/Edwardvaneechoud/Flowfile/
2 526
Python Tooling at Scale: LlamaIndex’s Monorepo Overhaul
https://www.llamaindex.ai/blog/python-tooling-at-scale-llamaindex-s-monorepo-overhaul
2 526
nlweb
Building conversational interfaces for websites is hard. NLWeb seeks to make it easy for websites to do this. And since NLWeb natively speaks MCP, the same natural language APIs can be used both by humans and agents.
https://github.com/microsoft/nlweb
2 526
Machine Learning Prototyping with DuckDB and scikit-learn
In this post, we prototype a machine learning workflow using DuckDB for data handling and scikit-learn for modeling.
https://duckdb.org/2025/05/16/scikit-learn-duckdb.html
Вже доступно! Дослідження Telegram за 2025 — головні інсайти року 
