Hackathon Swarm Coding
Autonomously plans, develops, tests, and delivers full software projects from plain-English prompts using coordinated multi-agent roles and automated quality...
技能说明
name: swarm-coding-skill description: Autonomous multi-agent code generation. Planner creates manifest, specialized roles execute tasks. Generates complete projects with tests, Docker, CI, and decision logs. requiredEnv:
- OPENROUTER_API_KEY optionalEnv:
- OPENROUTER_MODEL
- MOCK warnings:
- Writes to parent workspace (swarm-projects/, .learnings/). Run in isolated workspace.
- Stores prompts and agent reasoning in DECISIONS.md and .learnings/. Do not include sensitive data.
- Auto-includes Privy/web3 auth when prompts mention blockchain. Review generated code. autonomy: orchestrator-driven-code-generation outputPaths:
- swarm-projects/{timestamp}/
- .learnings/
- DECISIONS.md
- SWARM_SUMMARY.md externalServices:
- name: OpenRouter purpose: LLM inference for planning and code generation scope: API key sent with requests capabilities:
- code-generation
- multi-agent-orchestration
- project-scaffolding
- docker-ci
- testing
- knowledge-grounded-decisions
- continuous-improvement
Swarm Coding Skill
Fully autonomous multi-agent software development. Given a plain-English prompt, the swarm designs, implements, tests, and delivers a complete project end-to-end.
Core capability: Code generation via OpenRouter's qwen3-coder model. The orchestrator drives a Planner to create a manifest, then executes specialized worker roles (BackendDev, FrontendDev, QA, DevOps, etc.) in dependency order. All code is written to files; no interactive sessions.
Important: This skill generates code for review and deployment by the user. It does not make business decisions or operate autonomously in production. The user remains responsible for security, compliance, and operational decisions.
How It Works
- Orchestrator (
Plannerrole) analyzes your prompt, decides tech stack and architecture, and creates aswarm.yamlmanifest with tasks and dependencies. - Worker agents (
BackendDev,FrontendDev,QA,DevOps) are spawned as sub-sessions. Each has a clear persona and works on its assigned files in a shared workspace. - Coordination: The orchestrator tracks task completion and dependencies. When a task finishes, it marks it done and starts any unblocked downstream tasks.
- Conflict avoidance: Files are partitioned by role (Backend owns
server/, Frontend ownsclient/, etc.). If two roles need the same file, the manifest assigns an owner. - Quality gates: QA must pass tests before integration; DevOps ensures containerization; no merge without green tests.
- Deliverable: You get a complete project directory with README, tests, Dockerfile, and optionally a GitHub repo or zip.
Usage
# In your main OpenClaw session, invoke:
/trigger swarm-code "Build a dashboard that shows Moltbook stats and ClawCredit status"
The skill will:
- Spawn the orchestrator in an isolated session
- Orchestrator spawns workers sequentially or in parallel (based on dependencies)
- Output a final summary and path to the completed project
Requirements
- Node.js v18+
- Environment variables (in
.envat workspace root):- Required:
OPENROUTER_API_KEY— OpenRouter API key withqwen/qwen3-coderaccess - Optional:
OPENROUTER_MODEL(default:qwen/qwen3-coder),MOCK=1for dry-run
- Required:
- Internet access for OpenRouter API (and optionally GitHub/Docker if deployment requested)
Important: The orchestrator reads .env from the workspace root (parent directory of this skill) and writes project files to swarm-projects/ and logs to .learnings/ in that same workspace root. Run in an isolated workspace to avoid exposing unrelated secrets.
Configuration
Store your OpenRouter key in .env at the workspace root:
OPENROUTER_API_KEY=sk-or-...
Optional overrides:
OPENROUTER_MODEL=qwen/qwen3-coder
MOCK=1 # dry-run, no API calls
The skill uses qwen/qwen3-coder by default. Ensure your OpenRouter key has that model enabled.
Output
The created project lives in swarm-projects/<timestamp>/ and includes:
README.mdwith run instructionspackage.json(or equivalent)- Source code organized by component
test/directory with automated testsDockerfileanddocker-compose.yml(if applicable)CI/with GitHub Actions workflow (optional)DECISIONS.md— Project memory documenting key architectural and technical decisions with rationale.learnings/— Learning logs capturing errors, insights, and feature requestsERRORS.md— Failures, exceptions, and recovery actionsLEARNINGS.md— Corrections, better approaches, knowledge gapsFEATURE_REQUESTS.md— Requested capabilities that don't exist yet
SWARM_SUMMARY.md— Execution summary with role performance, statistics, and next steps
Continuous Improvement
The swarm skill automatically captures learnings during execution to improve future runs:
What Gets Logged
- Worker failures →
.learnings/ERRORS.mdwith context and recovery suggestions - Better approaches discovered →
.learnings/LEARNINGS.md(e.g., "Simplified X by using Y") - User corrections →
.learnings/LEARNINGS.mdwhen you override a decision - Missing capabilities →
.learnings/FEATURE_REQUESTS.mdwhen you ask for something the skill can't do
After Each Run
A SWARM_SUMMARY.md is generated with:
- Role success/failure rates
- Total files generated
- References to learnings captured
- Recommendations for next steps
Promoting Learnings
Over time, review .learnings/ files:
- Recurring error patterns → update orchestrator prompts or add retry logic
- Better approaches → incorporate into the skill's default behavior
- Feature requests → consider for skill enhancements
This creates a feedback loop where each swarm run makes the skill smarter.
Example Prompts
- "Build a Node.js API with Express that serves Moltbook stats from JSON logs"
- "Create a React dashboard with dark theme and charts for ClawCredit status"
- "Make a CLI tool that checks ClawCredit pre-qualification and notifies via desktop alert"
- "Generate a smart contract that holds ClawCredit limits and allows x402 payments"
- "Build a hackathon app: a React dashboard that shows user's token balance using Privy auth" (includes Privy integration out of the box)
Notes
- The skill makes all decisions autonomously: tech stack, file structure, library choices.
- If a task fails, the orchestrator will retry once with adjusted instructions.
- You can monitor progress via the sub-agent logs in
.openclaw/agents/<agent-id>/sessions/. - To stop early, send
/stopto the orchestrator's session. - Privy Integration: When the prompt mentions blockchain, web3, tokens, NFTs, or Privy, the skill automatically includes Privy authentication and wallet infrastructure. Backend includes
/auth/callbackwith JWKS verification and a simulated fallback; frontend integrates@privy-io/react-authif React is used. For advanced agentic wallet controls, see the Privy Agentic Wallets skill. - Project Memory: Each swarm run creates a
DECISIONS.mdfile that documents significant decisions made by the planner and each agent. This serves as long-term knowledge grounding—future developers (or the same human weeks later) can understand why certain choices were made. Agents are prompted to explain their technical decisions (e.g., library selection, architecture patterns, security tradeoffs) as part of their output.
Enjoy your autonomous coding factory 🚀
如何使用「Hackathon Swarm Coding」?
- 打开小龙虾AI(Web 或 iOS App)
- 点击上方「立即使用」按钮,或在对话框中输入任务描述
- 小龙虾AI 会自动匹配并调用「Hackathon Swarm Coding」技能完成任务
- 结果即时呈现,支持继续对话优化