llmfit-advisor
Detect local hardware (RAM, CPU, GPU/VRAM) and recommend the best-fit local LLM models with optimal quantization, speed
Auto-published by GitHub discovery based on star threshold.
装到你的工具里Install in your tool
选你常用的平台,复制命令即可。Pick your tool and copy the command.- 1
克隆或打开源仓库 AlexsJones/llmfit。
After install, run the command above in Claude Code or Cursor.
- 2
找到技能目录 skills/llmfit-advisor,按 Codex 的本地技能导入方式放入你的技能库。
First run reads repo history and writes a local skill config.
- 3
先阅读仓库 README 里的依赖和前置步骤,再执行下方命令。
Point it at the working directory and follow the prompts.
适合什么场景Best for
- High-star GitHub skill discovery candidate.
不适合什么场景Not for
- Sensitive or production workflows without local review.
vs 其他选择vs alternatives
完整对比表Full compare table →You MUST use this before any creative work - creating features, building components, adding functionality, or modifying
Development conventions and patterns for everything-claude-code. JavaScript project with conventional commits.
Creating algorithmic art using p5.js with seeded randomness and interactive parameter exploration. Use this when users r