open-dynamic-workflows
Included with Lifetime
$97 forever
Plan, orchestrate, and adversarially verify parallel AI coding agents with a dynamic multi-agent workflow engine.
ai-agentsmulti-agentorchestrationworkflowadversarial-verificationcoding-agents
What this skill does
# Open Dynamic Workflows ## Overview Open Dynamic Workflows (ODW) is an open-source dynamic multi-agent workflow engine for AI coding agents such as OpenCode, Codex, Antigravity, and VS Code. It lets you plan a task, orchestrate multiple agents working in parallel, and adversarially verify their output before it lands. ODW ships a Codex/Antigravity skill folder (`SKILL.md` plus a daemon bridge) and an OpenCode plugin, and it is bring-your-own-model (Anthropic, OpenAI-compatible, or Ollama). This skill is adapted from the community project at `Suraj1235/open-dynamic-workflows`. ## When to Use This Skill - Use when you need to decompose a coding task into independent subtasks and run multiple agents in parallel. - Use when working across more than one AI coding tool (OpenCode, Codex, Antigravity, VS Code) and want a single orchestration layer. - Use when the user asks for adversarial review or verification of agent-generated changes before merging. ## How It Works ### Step 1: Plan ODW takes a high-level goal and produces a dynamic workflow graph of subtasks, identifying which can run in parallel and which have dependencies. ### Step 2: Orchestrate The engine dispatches subtasks to parallel agents through the OpenCode plugin or the Codex/Antigravity daemon bridge, using your configured model provider (Anthropic, OpenAI-compatible, or Ollama). ### Step 3: Adversarially Verify Completed work is routed through an adversarial verification pass that challenges the output before results are synthesized and returned. ## Examples ### Example 1: Run a parallel workflow ODW is installed from source (clone the repo, then `npm install`). The CLI is `odw-daemon` — run it as `npm run odw -- <args>` from inside the repo, or as `npx odw-daemon <args>` / a global `odw-daemon` if you link the bin. ```bash # Configure your model provider (bring-your-own-model) export ANTHROPIC_API_KEY=... # or an OpenAI-compatible / Ollama endpoint # One-time setup: generate ~/.odw/config.json npm run setup # Start the local workflow daemon (once) npm run odw -- start # Plan, orchestrate, and verify a task across parallel agents npm run odw -- run --prompt "refactor the auth module and add tests" ``` ### Example 2: Use the Codex/Antigravity skill bridge ```bash # ODW ships a SKILL.md + daemon bridge consumed by Codex / Antigravity. # Start the daemon, then run a saved orchestration script through it: npm run odw -- start npm run odw -- run --script examples/workflows/studio-prime.workflow.js --cwd . ``` ## Best Practices - ✅ Scope each subtask so agents can run without shared state. - ✅ Keep the adversarial verification pass enabled before merging agent output. - ❌ Don't run interdependent subtasks in parallel without declaring their dependencies. - ❌ Don't commit provider API keys; use environment variables or a secrets manager. ## Limitations - This skill does not replace environment-specific validation, testing, or expert review. - Stop and ask for clarification if required inputs, permissions, or safety boundaries are missing. ## Security & Safety Notes - ODW executes agent-generated code and shell commands; run it only in an authorized, local, or sandboxed environment. - Model provider credentials (Anthropic / OpenAI-compatible / Ollama) must be supplied via environment variables, never committed to source. - Review adversarial-verification output before applying changes to a production branch. ## Common Pitfalls - **Problem:** Parallel agents collide on the same files. **Solution:** Give each subtask exclusive file/module ownership and run conflicting tasks sequentially. ## Related Skills - `@multi-agent-orchestration` - When coordinating multiple agents on one goal. - `@code-review` - How adversarial verification complements human review.
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