Remove the external MCP Agent Mail server integration that required running a separate HTTP server and configuring environment variables. The native `bd mail` system (stored as git-synced issues) remains unchanged and is the recommended approach for inter-agent messaging. Files removed: - cmd/bd/message.go - Legacy `bd message` command - integrations/beads-mcp/src/beads_mcp/mail.py, mail_tools.py - lib/beads_mail_adapter.py - Python adapter library - examples/go-agent/ - Agent Mail-focused example - examples/python-agent/agent_with_mail.py, AGENT_MAIL_EXAMPLE.md - docs/AGENT_MAIL*.md, docs/adr/002-agent-mail-integration.md - tests/integration/test_agent_race.py, test_mail_failures.py, etc. - tests/benchmarks/ - Agent Mail benchmarks Updated documentation to remove Agent Mail references while keeping native `bd mail` documentation intact. 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com>
125 lines
3.2 KiB
Markdown
125 lines
3.2 KiB
Markdown
# Bash Agent Example
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A bash script demonstrating how an AI agent can use bd to manage tasks autonomously.
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## Features
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- Pure bash implementation (no Python/Node required)
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- Colorized terminal output
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- Automatic work discovery
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- Random issue creation to simulate real agent behavior
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- Dependency linking with `discovered-from`
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- Statistics display
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## Prerequisites
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- bash 4.0+
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- bd installed: `go install github.com/steveyegge/beads/cmd/bd@latest`
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- jq for JSON parsing: `brew install jq` (macOS) or `apt install jq` (Linux)
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- A beads database initialized: `bd init`
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## Usage
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```bash
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# Make executable
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chmod +x agent.sh
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# Run with default 10 iterations
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./agent.sh
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# Run with custom iteration limit
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./agent.sh 20
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```
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## What It Does
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The agent runs in a loop:
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1. Looks for ready work (no blockers)
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2. Claims the task (sets status to `in_progress`)
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3. "Works" on it (simulates 1 second of work)
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4. 50% chance to discover a follow-up issue
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5. If discovered, creates and links the new issue
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6. Completes the original task
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7. Shows statistics and repeats
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## Example Output
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```
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🚀 Beads Agent starting...
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Max iterations: 10
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═══════════════════════════════════════════════════
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Beads Statistics
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═══════════════════════════════════════════════════
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Open: 5 In Progress: 0 Closed: 2
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═══════════════════════════════════════════════════
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Iteration 1/10
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═══════════════════════════════════════════════════
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ℹ Looking for ready work...
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ℹ Claiming task: bd-3
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✓ Task claimed
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ℹ Working on: Fix authentication bug (bd-3)
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Priority: 1
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⚠ Discovered issue while working!
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✓ Created issue: bd-8
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✓ Linked bd-8 ← discovered-from ← bd-3
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ℹ Completing task: bd-3
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✓ Task completed: bd-3
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```
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## Use Cases
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**Continuous Integration**
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```bash
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# Run agent in CI to process testing tasks
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./agent.sh 5
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```
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**Cron Jobs**
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```bash
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# Run agent every hour
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0 * * * * cd /path/to/project && /path/to/agent.sh 3
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```
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**One-off Task Processing**
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```bash
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# Process exactly one task and exit
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./agent.sh 1
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```
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## Customization
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Edit the script to customize behavior:
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```bash
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# Change discovery probability (line ~80)
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if [[ $((RANDOM % 2)) -eq 0 ]]; then # 50% chance
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# Change to:
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if [[ $((RANDOM % 10)) -lt 3 ]]; then # 30% chance
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# Add assignee filtering
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bd ready --json --assignee "bot" --limit 1
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# Add priority filtering
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bd ready --json --priority 1 --limit 1
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# Add custom labels
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bd create "New task" -l "automated,agent-discovered"
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```
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## Integration with Real Agents
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This script is a starting point. To integrate with a real LLM:
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1. Replace `do_work()` with calls to your LLM API
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2. Parse the LLM's response for tasks to create
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3. Use issue IDs to maintain context
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4. Track conversation state in issue metadata
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## See Also
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- [../python-agent/](../python-agent/) - Python version with more flexibility
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- [../git-hooks/](../git-hooks/) - Automatic export/import on git operations
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