headless-cli-agents
Headless CLI Agents
Build agentic systems using Claude Code CLI or the Claude Agent SDK.
CLI Headless Mode
Use -p flag for non-interactive execution:
# Basic query
claude -p "Explain this code"
# With JSON output for parsing
claude -p "Create a REST API" --output-format json
# Streaming JSON for real-time output
claude -p "Build a CLI app" --output-format stream-json
# Restrict tools
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