c-ai
关于
c-ai provides CLI tools for developers to query LLMs directly from the terminal, enabling text summarization, interactive chats, and code analysis via piping. It supports both local and cloud models through utilities like `llm` and `aichat`. Use this skill for quick AI-assisted tasks like generating commit messages, reviewing code, or fixing grammar without leaving your workflow.
快速安装
Claude Code
推荐npx skills add daxaur/openpaw -a claude-code/plugin add https://github.com/daxaur/openpawgit clone https://github.com/daxaur/openpaw.git ~/.claude/skills/c-ai在 Claude Code 中复制并粘贴此命令以安装该技能
技能文档
AI / LLM Tools
llm (Simon Willison)
# Quick prompt
llm "What is the capital of France?"
# Pipe text for processing
cat article.txt | llm "Summarize this in 3 bullet points"
git diff | llm "Write a commit message for these changes"
pbpaste | llm "Fix the grammar in this text"
# Interactive chat
llm chat
# Use specific model
llm -m claude-3.5-sonnet "Explain quantum computing"
llm -m gpt-4o "Review this code"
# List available models
llm models
# Install model plugins
llm install llm-claude-3
llm install llm-ollama # local models
# View prompt/response history
llm logs list
llm logs last
aichat
# Quick prompt
aichat "Explain Docker in simple terms"
# Pipe input
cat code.py | aichat "Find bugs in this code"
# Interactive REPL
aichat
# Shell assistant (generates and runs commands)
aichat -e "find all files larger than 100MB"
# Specific model
aichat -m claude-3.5-sonnet "Hello"
# List models
aichat --list-models
Guidelines
- Use
llmfor piping text through LLMs (summarize, translate, analyze) - Use
aichat -efor generating shell commands from natural language - Both tools store API keys locally — set up once with auth commands
llmhas the richest plugin ecosystem (100+ model providers)aichatis faster (Rust) and has built-in RAG support- These tools use separate API keys from Claude Code — user pays per token
GitHub 仓库
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