PythonHub
Відкрити в Telegram
News & links about Python programming. https://pythonhub.dev/
Показати більше2 528
Підписники
+124 години
+107 днів
+3630 день
Архів дописів
2 528
Custom Data Structures in E-Graphs
The post explores how Egglog’s e-graph framework can be extended with custom container data structures to represent algebraic structures (like multisets) more efficiently and reduce expression blow-up during rewriting. It shows that by embedding structural invariants into the data representation and using higher-order functions, you can express powerful rewrite rules without explosive gr...
https://uwplse.org/2026/02/24/egglog-containers.html
2 528
databricks-solutions / ai-dev-kit
Databricks Toolkit for Coding Agents provided by Field Engineering
https://github.com/databricks-solutions/ai-dev-kit
2 528
City2Graph
Transform geospatial relations into graphs for Graph Neural Networks and network analysis.
https://github.com/c2g-dev/city2graph
2 528
Comparing Python packages for A/B test analysis (with code examples)
https://e10v.me/python-packages-for-ab-test-analysis/
2 528
What Python's asyncio primitives get wrong about shared state
https://www.inngest.com/blog/no-lost-updates-python-asyncio
2 528
100 days 100 iot project with Micropython
https://github.com/kritishmohapatra/100_Days_100_IoT_Projects
2 528
You’ve Been Underusing Dataclasses (These Tricks Are Wild)
The video demonstrates seven powerful, lesser-known techniques using Python dataclasses, including automatic class registration, lightweight validation, cached derived values, and context manager patterns. It also shows practical uses such as CLI generation and explains advanced features like InitVar, highlighting how dataclasses can enable cleaner and more expressive Python designs.
https://www.youtube.com/watch?v=Y9_h7ehjhO4
2 528
Validating data with pointblank in python
One of the most common tasks of any organization is reviewing data to ensure that it is accurate and does not contain errors. Commonly, this is done by producing graphs or summary information like a median or mean and confirming that it looks reasonable. Pointblank is a newer tool that allows you to really dig into a dataset and task assumptions in a robust and reproducible manner.
https://www.markpitblado.me/blog/validating-data-with-pointblank-in-python
2 528
Designing for Model Swaps
When LLM providers ship breaking changes, a poor architecture turns a config tweak into a 400-line PR. This post introduces seam-driven design - five narrow interfaces (provider, prompt, tools, config, observability) each independently swappable - illustrated with a working FastAPI + LangChain reference app, a practical checklist, and two hands-on drills readers can run immediate
https://garybake.com/seams1.html
2 528
Resume-Tailor
The Resume Tailor is a small tool used to quickly and automatically tailor your resume to a job description. This allows you to have the best odds of getting your resume into the hands of actual humans.
https://github.com/farmerTheodor/Resume-Tailor
2 528
python-apple-fm-sdk
Python bindings for access to the on-device model at the core of Apple Intelligence through the Foundation Models framework.
https://github.com/apple/python-apple-fm-sdk
2 528
FastAPI error handling: types, methods, and best practices
Learn FastAPI error handling with different types, methods, and best practices. Build robust APIs using custom exception handlers and practical examples.
https://www.honeybadger.io/blog/fastapi-error-handling/
2 528
Using tox to Test a Django App Across Multiple Django Versions
The article shows how to use tox to test a Django app across multiple Python and Django versions by creating isolated environments that install specific dependency combinations and run the same test suite. By defining a version matrix in tox.ini, developers can automatically verify compatibility across many Django releases and catch packaging or environment issues before users encounter them.
https://www.djangotricks.com/blog/2026/02/using-tox-to-test-a-django-app-across-multiple-django-versions/
2 528
MicroGPT explained interactively
Walk through Karpathy's 200-line GPT from scratch. Tokenize names into integers, watch softmax convert scores to probabilities, step through backpropagation on a computation graph, explore attention heatmaps, and see a tiny model learn to generate plausible names.
https://growingswe.com/blog/microgpt
2 528
Formualizer
The spreadsheet engine that actually evaluates formulas. Parse, evaluate, and mutate Excel workbooks from Rust, Python, or the browser.
https://github.com/psu3d0/formualizer
2 528
hermes-agent
Hermes Agent is an open-source autonomous AI agent that you install on your own server or machine, where it lives persistently, learns over time, and builds reusable skills and memory across sessions instead of resetting like typical chatbots.
https://github.com/NousResearch/hermes-agent
2 528
seomachine
A specialized Claude Code workspace for creating long-form, SEO-optimized blog content for any business. This system helps you research, write, analyze, and optimize content that ranks well and serves your target audience.
https://github.com/TheCraigHewitt/seomachine
2 528
Unit testing your code’s performance, part 2: Catching speed changes
Got benchmarks in CI? You can (maybe) use tests to catch performance changes even earlier.
https://pythonspeed.com/articles/speed-unit-tests/
2 528
Serving Private Files with Django and S3
The article shows how to securely serve private user files stored in Amazon S3 from a Django app by keeping the bucket private and generating time-limited pre-signed URLs when a user is authorized to access a file. This approach lets S3 handle file delivery directly while Django controls access, avoiding slow proxying through the app server and making the system more scalable.
https://lincolnloop.com/blog/serving-private-files-with-django-and-s3/
Вже доступно! Дослідження Telegram за 2025 — головні інсайти року 
