orchestrate
Use only when the user explicitly types `/orchestrate <goal>` to decompose a large task, spawn a tree of parallel cloud-agent workers/subplanners/verifiers via the Cursor SDK, and collect structured handoffs; do not invoke autonomously.
What this skill does
# Orchestrate An explicit `/orchestrate <goal>` fans out a large task across parallel Cursor cloud agents. Workers don't talk to each other; they talk up through structured handoffs. The spawn, wait, and handoff loop lives in `scripts/cli.ts`. The planner writes `plan.json`, the script executes it, and the planner reads handoffs to decide what comes next. Long-running agent loops drift; a script with a JSON state file keeps its footing. **Required reading: the `cursor-sdk` skill ([cursor/plugins/cursor-sdk](https://github.com/cursor/plugins/tree/main/cursor-sdk)).** Spawning, auth, and the error taxonomy live there. Don't reimplement what that skill already documents. ## Setup - `CURSOR_API_KEY` must be a personal/user key. Create it from [Cursor Dashboard > Integrations](https://cursor.com/dashboard/integrations), then read `cursor-sdk` Auth before using it. - `SLACK_BOT_TOKEN` is optional. When set, pass `--slack-channel <id>` to `kickoff` or the first `run --root`, or set `SLACK_CHANNEL_ID`. The script stores the channel in `plan.slackChannel`, posts the kickoff thread there, mirrors task status, and reads Andon reactions. When the token is unset, the script logs once and runs without Slack visibility; correctness does not change. ## Core principles These rules make the tree self-converging without global coordination. 1. **Planners own scopes and publish tasks. They do no coding.** Writing `plan.json`, reading handoffs, and deciding what's next are planner work. Editing files, running `git merge`, and fixing conflicts inline are not. If a planner feels the urge to code, it publishes a task for a worker instead. 2. **Planners don't know who picks up their tasks.** The script routes each task to a cloud agent. The planner's mental model stays at the task level. 3. **Workers are isolated.** One task, one clone of the repo, no channel to any other agent. One handoff when done. 4. **Subplanners are recursive planners.** A planner publishes a "subplan this slice" task; the subplanner fully owns that slice and hands back an aggregated handoff. 5. **Continuous motion via handoffs.** A planner that thought it was done can receive a late handoff and replan. No "finished" state until the planner decides to stop publishing. 6. **Propagation, not synchronization.** No cross-talk between siblings. No shared state between levels. Each level sees only its children's handoffs. ## Node types | Node | Runs the loop? | Scope | Output | | -------------- | -------------- | -------------------------------- | --------------------------------------- | | Planner | yes | Entire user goal | User-facing message + optional PR | | Subplanner (↻) | yes | One slice of parent's scope | Handoff to parent | | Worker | no | One concrete task | Handoff to spawning planner | | Verifier | no | One target's acceptance criteria | Verdict handoff to spawning planner | | Git | n/a | Shared medium | Branches (code) + handoffs/ (meaning) | ## Role Two roles, one skill. Read your role's reference file and skip the other. **Dispatcher.** You're in a local IDE session and the user typed `/orchestrate <goal>`. Your job is to kick off a cloud root planner and return its URL. See `references/dispatcher.md`. One-shot; you are not the planner. **Planner (root or sub).** You were spawned with a structured prompt that opens with "You are the root planner for:" or "You are a subplanner for:". Or the user chose to run the planning loop locally. You own a scope, publish tasks, read handoffs, decide what's next. See `references/planner.md`. `disable-model-invocation: true` means this skill loads only on explicit invocation.
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