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Canal fuente @python_academy · Post #1513 · 3 nov

Автоматизация мобильных приложений с помощью uiautomator2 Сегодня мы поговорим о библиотеке uiautomator2, которая предоставляет мощные инструменты для автоматизации тестирования и взаимодействия с мобильными приложениями на платформе Android. Эта библиотека может пригодиться для создания автотестов, скриптов для тестирования пользовательского интерфейса, и многих других задач, связанных с мобильной разработкой. Что такое uiautomator2? uiautomator2 - это Python-библиотека, предоставляющая возможность управления устройствами Android и взаимодействия с приложениями на них. Она основана на Google's Android Testing Support Library и является мощным инструментом для автоматизации действий на устройствах Android. С uiautomator2, вы можете выполнять действия, такие как нажатие кнопок, ввод текста, чтение содержимого экрана устройства и многое другое, что делает ее полезной для автоматизации тестирования мобильных приложений. #python#uiautomator2#автоматизация

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@githubtrending · Post #15446 · 28/01/2026, 13:30

#python Kimi Code CLI is a terminal AI agent that reads/edits code, runs shell commands, searches web pages, and plans tasks autonomously. Switch to shell mode with Ctrl-X, integrate with IDEs like Zed/JetBrains via ACP, enhance Zsh, or add MCP tools. Install easily and log in with /login for Kimi Code benefits like fast 100 tokens/s speeds and high quotas. This saves you time on coding/development by automating complex workflows intelligently and securely. https://github.com/MoonshotAI/kimi-cli

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@githubtrending · Post #15426 · 21/01/2026, 13:30

#python The Compound Marketplace provides a Claude Code plugin that transforms your development workflow through a cycle of planning, working, reviewing, and documenting learnings. By spending 80% of effort on thorough planning and code review while only 20% on execution, you build knowledge that makes each subsequent task easier. Commands like `/workflowswork` executes them with task tracking, `/workflowscompound` documents patterns for reuse. This approach prevents technical debt accumulation, keeping your codebase maintainable and future changes straightforward. https://github.com/EveryInc/compound-engineering-plugin

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@githubtrending · Post #15424 · 21/01/2026, 12:30

#python Grok-1 is a powerful open-source AI model with 314 billion parameters that you can download and run on your own computer. To use it, download the model weights, install required software packages, and run a simple Python script to test it. The model uses a Mixture of Experts architecture with 64 layers and can process up to 8,192 tokens of text at once. The main benefit is that you get access to a large, capable language model under an open Apache 2.0 license, allowing you to experiment with advanced AI technology locally. However, you'll need a powerful GPU with substantial memory to run it effectively. https://github.com/xai-org/grok-1

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@githubtrending · Post #15408 · 12/01/2026, 13:00

#python ChatDev 2.0 (DevAll) is a free, zero-code platform to build and run teams of AI agents for any task—like software coding, data charts, 3D models, games, or deep research—using simple drag-and-drop workflows, no programming needed. Install with Python/uv and Node.js, then launch via web console or Python SDK for quick results. This saves you hours of manual work, cuts costs, and lets you create complex projects fast and easily, even without tech skills. https://github.com/OpenBMB/ChatDev

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@githubtrending · Post #15402 · 08/01/2026, 19:30

#python AlpaSim is an open-source simulator that lets me test full autonomous driving systems in realistic, closed-loop virtual environments. It gives me high-quality camera and sensor data, realistic vehicle physics, and complex traffic scenarios, all configurable for my experiments. Because it is modular, Python-based, and built on microservices, I can easily plug in my own algorithms, scale across machines, and debug tricky behaviors. Built-in support for advanced driving policies, rich documentation, and sample datasets helps me quickly validate, compare, and improve my models while reducing the cost and risk of real-world testing. https://github.com/NVlabs/alpasim

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@githubtrending · Post #15396 · 06/01/2026, 14:30

#python This GitHub repo runs a 6-month experiment where ChatGPT manages a real $100 micro-cap stock portfolio daily, using trading data, strict 10% stop-losses, and weekly research to pick trades—outperforming the S&P 500 by 25% (+29% vs. +4%) in the first two months. It offers Python scripts, prompts, CSVs, performance charts, and a starter guide to run your own. You benefit by testing AI stock picking transparently with low risk, learning from logs to boost your trading skills or generate real returns. https://github.com/LuckyOne7777/ChatGPT-Micro-Cap-Experiment

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@githubtrending · Post #15389 · 04/01/2026, 12:30

#python Python 3.15.0 alpha 3 is an early test version you can build from source on Unix/Linux/macOS with simple steps: `./configure`, `make`, `make test`, `sudo make install`. Use `--enable-optimizations` for faster performance via PGO, run `make test` to check it works, and `make altinstall` for multiple versions side-by-side. Access docs at docs.python.org/3.15, source at github.com/python/cpython, and contribute via the dev guide. This helps you test new features early, optimize your code, and prepare projects ahead of the stable release for better speed and reliability. https://github.com/python/cpython

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@githubtrending · Post #15381 · 01/01/2026, 12:00

#python Polymarket Agents is a free, open-source Python framework to build AI agents that trade autonomously on Polymarket prediction markets. It integrates the Polymarket API, pulls data from news and bets, uses RAG for smart info retrieval, and offers LLM tools for strategies like spotting cheap YES/NO shares when their average cost dips below $1 for guaranteed profit. You benefit by automating emotion-free trades, capturing market inefficiencies instantly, and boosting returns without constant monitoring. https://github.com/Polymarket/agents

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@githubtrending · Post #15363 · 23/12/2025, 16:30

#python Bloom is a free, open-source tool that automates testing AI models for bad behaviors like bias or sycophancy. You define the behavior in a simple config file, add example chats if you want, and it runs four steps: understanding it, creating varied test scenarios, simulating talks with your target model (like Claude or GPT via APIs), and scoring results with metrics like how often the issue appears. View interactive transcripts easily. This saves you hours of manual work, lets you quickly compare models on fresh tests to avoid overfitting, and gives reliable, reproducible insights into AI safety—perfect for researchers building trustworthy systems. https://github.com/safety-research/bloom

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@githubtrending · Post #15355 · 22/12/2025, 16:30

#python This repository offers Anthropic's Claude Skills—folders with instructions, scripts, and resources that dynamically teach Claude specialized tasks like branded documents, data analysis, or workflows. Examples cover creative, technical, and enterprise uses; install via Claude Code, .ai, or API, or create your own with a simple SKILL.md template. You benefit by automating repetitive work, boosting productivity, ensuring consistent results, and capturing your team's knowledge for reliable, scalable AI performance. https://github.com/anthropics/skills

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@githubtrending · Post #15351 · 21/12/2025, 12:00

#python **Reachy Mini** is an open-source desktop robot, 11 inches tall and 3.3 lbs, with a 6-DoF expressive head, 360° body rotation, animated antennas, wide-angle camera, microphones, speaker, and Hugging Face AI integration for 1.7M+ models. Assemble in 2-3 hours as a kit; choose Lite (USB-powered) or Wireless (Raspberry Pi, battery). Use simple Python SDK for quick control, apps like conversation or hand-tracking, and simulation. **You benefit** by easily building, testing, and sharing AI robots at home or work, speeding up embodied AI experiments affordably. https://github.com/pollen-robotics/reachy_mini

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@githubtrending · Post #15346 · 19/12/2025, 13:00

#python Mini-SGLang is a compact, easy-to-read inference framework (~5,000 Python lines) that runs and serves large language models with high speed using optimizations like radix cache, chunked prefill, overlap scheduling, tensor parallelism, and FlashAttention/FlashInfer kernels. It’s CUDA-dependent, quick to install from source, and can launch an OpenAI-compatible API or interactive shell for single- or multi‑GPU serving, letting you test or deploy models (e.g., Qwen, Llama) with low latency and scalable throughput. Benefit: you get a transparent, modifiable engine to deploy fast, efficient LLM inference for development, benchmarking, or production use. https://github.com/sgl-project/mini-sglang

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