ワンクリックで
pipeline
Sequential agent chains with context passing. Run agents in series where each stage receives output from prior stages.
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
メニュー
Sequential agent chains with context passing. Run agents in series where each stage receives output from prior stages.
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
SOC 職業分類に基づく
UI/UX design intelligence with searchable database
Generate comprehensive implementation plans through systematic discovery, synthesis, verification, and decomposition into beads. Use when asked to plan a feature, create a roadmap, design an implementation approach, or decompose work into trackable issues. Do NOT use for simple one-step tasks, quick fixes, or when the user just wants to execute an existing plan — use the work skill instead.
Execute a plan or direct task with worker delegation and verification.
Deep investigation mode. Gather context, analyze, synthesize recommendations without making code changes.
Fetch up-to-date library documentation via Context7 MCP. Use when working with external libraries, APIs, or frameworks.
Start interview-driven planning with Prometheus. Asks clarifying questions before generating implementation plan.
| name | pipeline |
| description | Sequential agent chains with context passing. Run agents in series where each stage receives output from prior stages. |
| argument-hint | <preset> | agent1 -> agent2 'task' |
| allowed-tools | Read, Write, Edit, Grep, Glob, Bash, Task, TeamCreate, TeamDelete, SendMessage, TaskCreate, TaskList, TaskUpdate, TaskGet |
Sequential agent chains where each stage's output feeds the next.
$ARGUMENTS
| Argument | Description |
|---|---|
<preset> | Built-in pipeline: review, implement, debug |
agent1 -> agent2 'task' | Custom pipeline with explicit agent chain |
agent:model -> agent:model | Custom pipeline with model override per stage |
| Preset | Chain | Use Case |
|---|---|---|
review | explore -> leviathan -> kraken | Research, review, then fix |
implement | explore -> kraken | Research then implement |
debug | explore -> build-fixer | Research then fix build errors |
Parse $ARGUMENTS to determine the pipeline stages.
If preset name: Map to the built-in chain from the presets table above.
If custom chain: Parse agent1 -> agent2 -> agent3 "task description" format.
->: suffix (e.g., explore:haiku)Default model per agent:
TeamCreate("pipeline-team")
Create pipeline state file:
Write(".maestro/handoff/pipeline-{timestamp}.json", {
"type": "pipeline",
"stages": [
{ "agent": "agent1", "model": "model1", "status": "pending", "output": null },
{ "agent": "agent2", "model": "model2", "status": "pending", "output": null }
],
"task": "the task description",
"started_at": "ISO timestamp",
"current_stage": 0
})
For each stage in order:
Build context from all previous stages:
## Pipeline Context
### Stage 1: explore (completed)
{output from stage 1}
### Stage 2: leviathan (completed)
{output from stage 2}
### Current Stage: kraken
{original task description}
Create a task for the current stage agent:
TaskCreate({
subject: "Pipeline stage {N}: {agent} - {task}",
description: "## Pipeline Stage {N}\n\n{context from previous stages}\n\n## Task\n{task description}"
})
Spawn the agent as a teammate with the appropriate model:
Task(agent: "{agent}", model: "{model}", prompt: "Execute your assigned task. Read the task description for full context including output from previous pipeline stages.")
Wait for completion: Monitor via TaskGet until the task status is completed.
Capture output: Read files modified or created by the agent. Update the pipeline state file with the stage output.
Update state: Mark current stage as completed, advance current_stage.
After all stages complete:
TeamDelete(reason: "Pipeline complete"). If it fails, fall back to: rm -rf ~/.claude/teams/pipeline-{id} ~/.claude/tasks/pipeline-{id}.maestro/handoff/ for session recovery