بنقرة واحدة
swarm
Dynamic swarm orchestration — decompose any task into parallel agent waves, execute, merge results
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
القائمة
Dynamic swarm orchestration — decompose any task into parallel agent waves, execute, merge results
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
استنادا إلى تصنيف SOC المهني
Spawn recursive agent armies — swarms that spawn swarms, sandbox armadas, full lifecycle assault
Full rebuild — tear down broken service, scaffold fresh, migrate data, deploy, verify
One-command deployment — detect stack, build, ship, verify, report URL
Production incident response — triage, diagnose, fix, restore, document
Generate complete runnable projects from a description — API, CLI, MCP server, full-stack app
Connect any two services — webhooks, MCP tools, API adapters, data pipelines
| name | swarm |
| description | Dynamic swarm orchestration — decompose any task into parallel agent waves, execute, merge results |
| level | 5 |
| triggers | ["parallel build","fan out"] |
| user-invocable | true |
| aliases | ["swarm-legacy"] |
| note | Prefer /ender for full recursive swarm capability. This skill is a simpler flat-parallel mode. |
| pipeline | ["ender (plan) → agents × N (execute) → integrator (merge) → verifier (confirm)"] |
Take any task — from "build a full-stack app" to "fix 15 bugs" to "review everything in this repo" — and execute it with maximum parallelism using coordinated agent swarms.
Spawn ender with full task description:
For each wave (sequential between waves, parallel within waves):
Wave 0: Research
└─ spawn explore ×3 (parallel, no isolation)
└─ gather results → feed into Wave 1
Wave 1: Foundation
└─ spawn scaffolder + db-engineer (parallel, worktree isolation)
└─ merge worktrees → feed into Wave 2
Wave 2: Implementation
└─ spawn executor ×N (parallel, worktree isolation per agent)
└─ merge worktrees → feed into Wave 3
Wave 3: Integration
└─ spawn connector + integrator (parallel)
└─ merge → feed into Wave 4
Wave 4: Quality Gate
└─ spawn code-reviewer + security-reviewer + test-engineer (parallel, read-only)
└─ gather findings → fix or pass
Wave 5: Ship
└─ spawn deployer (single agent)
└─ spawn monitor (post-deploy verification)
After each wave:
## Swarm Execution Report
### Task: [description]
### Result: [SUCCESS / PARTIAL / FAILED]
### Waves Executed
| Wave | Agents | Duration | Status |
|------|--------|----------|--------|
| 0: Research | explore ×3 | 12s | ✓ |
| 1: Foundation | scaffolder, db-engineer | 45s | ✓ |
| ... | ... | ... | ... |
### Artifacts Produced
- [file/service/artifact] — [description]
- ...
### Issues Encountered
- [any conflicts, failures, retries]
Input: "Build a lead management API with React frontend and PostgreSQL"
Wave 0: explore (check existing code, deps)
Wave 1: scaffolder (project structure), db-engineer (schema + migrations)
Wave 2: api-builder (REST endpoints), executor (React frontend) — parallel
Wave 3: connector (wire frontend to API)
Wave 4: code-reviewer, test-engineer — parallel
Wave 5: deployer (Conway sandbox)
Input: "Fix issues #12, #15, #18, #22, #31"
Wave 0: explore ×5 (one per issue, parallel research)
Wave 1: executor ×5 (one per issue, worktree isolation, parallel fixes)
Wave 2: verifier ×5 (parallel verification)
Wave 3: git-master (atomic commits per fix)