dmux-workflows
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npx mdskill add affaan-m/ECC/dmux-workflowsOrchestrate parallel agent sessions across multiple development harnesses.
- Enables divide-and-conquer execution for complex development tasks.
- Integrates with Claude Code, Codex, OpenCode, and other agent tools.
- Activates when users request parallel processing or multi-agent coordination.
- Merges pane outputs back into a unified session for consolidated results.
SKILL.md
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--- name: dmux-workflows description: Multi-agent orchestration using dmux (tmux pane manager for AI agents). Patterns for parallel agent workflows across Claude Code, Codex, OpenCode, and other harnesses. Use when running multiple agent sessions in parallel or coordinating multi-agent development workflows. --- # dmux Workflows Orchestrate parallel AI agent sessions using dmux, a tmux pane manager for agent harnesses. ## When to Activate - Running multiple agent sessions in parallel - Coordinating work across Claude Code, Codex, and other harnesses - Complex tasks that benefit from divide-and-conquer parallelism - User says "run in parallel", "split this work", "use dmux", or "multi-agent" ## What is dmux dmux is a tmux-based orchestration tool that manages AI agent panes: - Press `n` to create a new pane with a prompt - Press `m` to merge pane output back to the main session - Supports: Claude Code, Codex, OpenCode, Cline, Gemini, Qwen **Install:** `npm install -g dmux` or see [github.com/standardagents/dmux](https://github.com/standardagents/dmux) ## Quick Start ```bash # Start dmux session dmux # Create agent panes (press 'n' in dmux, then type prompt) # Pane 1: "Implement the auth middleware in src/auth/" # Pane 2: "Write tests for the user service" # Pane 3: "Update API documentation" # Each pane runs its own agent session # Press 'm' to merge results back ``` ## Workflow Patterns ### Pattern 1: Research + Implement Split research and implementation into parallel tracks: ``` Pane 1 (Research): "Research best practices for rate limiting in Node.js. Check current libraries, compare approaches, and write findings to /tmp/rate-limit-research.md" Pane 2 (Implement): "Implement rate limiting middleware for our Express API. Start with a basic token bucket, we'll refine after research completes." # After Pane 1 completes, merge findings into Pane 2's context ``` ### Pattern 2: Multi-File Feature Parallelize work across independent files: ``` Pane 1: "Create the database schema and migrations for the billing feature" Pane 2: "Build the billing API endpoints in src/api/billing/" Pane 3: "Create the billing dashboard UI components" # Merge all, then do integration in main pane ``` ### Pattern 3: Test + Fix Loop Run tests in one pane, fix in another: ``` Pane 1 (Watcher): "Run the test suite in watch mode. When tests fail, summarize the failures." Pane 2 (Fixer): "Fix failing tests based on the error output from pane 1" ``` ### Pattern 4: Cross-Harness Use different AI tools for different tasks: ``` Pane 1 (Claude Code): "Review the security of the auth module" Pane 2 (Codex): "Refactor the utility functions for performance" Pane 3 (Claude Code): "Write E2E tests for the checkout flow" ``` ### Pattern 5: Code Review Pipeline Parallel review perspectives: ``` Pane 1: "Review src/api/ for security vulnerabilities" Pane 2: "Review src/api/ for performance issues" Pane 3: "Review src/api/ for test coverage gaps" # Merge all reviews into a single report ``` ## Best Practices 1. **Independent tasks only.** Don't parallelize tasks that depend on each other's output. 2. **Clear boundaries.** Each pane should work on distinct files or concerns. 3. **Merge strategically.** Review pane output before merging to avoid conflicts. 4. **Use git worktrees.** For file-conflict-prone work, use separate worktrees per pane. 5. **Resource awareness.** Each pane uses API tokens — keep total panes under 5-6. ## Git Worktree Integration For tasks that touch overlapping files: ```bash # Create worktrees for isolation git worktree add ../feature-auth feat/auth git worktree add ../feature-billing feat/billing # Run agents in separate worktrees # Pane 1: cd ../feature-auth && claude # Pane 2: cd ../feature-billing && claude # Merge branches when done git merge feat/auth git merge feat/billing ``` ## Complementary Tools | Tool | What It Does | When to Use | |------|-------------|-------------| | **dmux** | tmux pane management for agents | Parallel agent sessions | | **Superset** | Terminal IDE for 10+ parallel agents | Large-scale orchestration | | **Claude Code Task tool** | In-process subagent spawning | Programmatic parallelism within a session | | **Codex multi-agent** | Built-in agent roles | Codex-specific parallel work | ## Troubleshooting - **Pane not responding:** Check if the agent session is waiting for input. Use `m` to read output. - **Merge conflicts:** Use git worktrees to isolate file changes per pane. - **High token usage:** Reduce number of parallel panes. Each pane is a full agent session. - **tmux not found:** Install with `brew install tmux` (macOS) or `apt install tmux` (Linux).
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