- Berlin, Germany
Highlights
- Pro
Lists (12)
Sort Name ascending (A-Z)
- All languages
- Assembly
- Ballerina
- C
- C#
- C++
- CSS
- CoffeeScript
- Dart
- Dockerfile
- Elixir
- F#
- Go
- Go Template
- Groovy
- HCL
- HTML
- Haskell
- Java
- JavaScript
- Jupyter Notebook
- Liquid
- MDX
- Nim
- OCaml
- Objective-C
- OpenSCAD
- PHP
- Pascal
- Perl
- Prolog
- Python
- Rich Text Format
- Ruby
- Rust
- SCSS
- Scala
- Shell
- Svelte
- Swift
- TeX
- TypeScript
- Vue
- ZIL
Starred repositories
Replace port numbers with stable, named local URLs. For humans and agents.
Real-time Claude Code usage monitor with predictions and warnings
📝 A markup-aware linter for prose built with speed and extensibility in mind.
iTerm2 is a terminal emulator for Mac OS X that does amazing things.
Robust, fast, intuitive plain text accounting tool with CLI, TUI and web interfaces.
MCP server that interacts with Obsidian via the Obsidian rest API community plugin
A lightweight server clone of Azure Storage that simulates most of the commands supported by it with minimal dependencies
GlobalBuildingAtlas: an open global and complete dataset of building polygons, heights and LoD1 3D models
Zork I (Microcomputer Version) by Infocom
The fastest and simplest library for SQLite3 in Node.js.
[NeurIPS 2023] Reflexion: Language Agents with Verbal Reinforcement Learning
a magical LLM desktop client that makes it easy for *anyone* to use LLMs and MCP
A guidance language for controlling large language models.
🐻 Bear necessities for state management in React
jeff-dh / SolidPython
Forked from SolidCode/SolidPythonA python frontend for solid modelling that compiles to OpenSCAD
OctoDash is a simple, but beautiful dashboard for OctoPrint.
The build backend used by PDM that supports latest packaging standards.
A terminal UI dashboard to monitor requests for code review across Github and Gitlab repositories.
What are the principles we can use to build LLM-powered software that is actually good enough to put in the hands of production customers?
[WIP] Resources for AI engineers. Also contains supporting materials for the book AI Engineering (Chip Huyen, 2025)