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workflow-router

Goal-based workflow orchestration - routes tasks to specialist agents based on user goals

Packaged view

This page reorganizes the original catalog entry around fit, installability, and workflow context first. The original raw source lives below.

Stars
3,611
Hot score
99
Updated
March 20, 2026
Overall rating
C5.2
Composite score
5.2
Best-practice grade
B81.2

Install command

npx @skill-hub/cli install parcadei-continuous-claude-v3-workflow-router

Repository

parcadei/Continuous-Claude-v3

Skill path: .claude/skills/workflow-router

Goal-based workflow orchestration - routes tasks to specialist agents based on user goals

Open repository

Best for

Primary workflow: Ship Full Stack.

Technical facets: Full Stack.

Target audience: everyone.

License: Unknown.

Original source

Catalog source: SkillHub Club.

Repository owner: parcadei.

This is still a mirrored public skill entry. Review the repository before installing into production workflows.

What it helps with

  • Install workflow-router into Claude Code, Codex CLI, Gemini CLI, or OpenCode workflows
  • Review https://github.com/parcadei/Continuous-Claude-v3 before adding workflow-router to shared team environments
  • Use workflow-router for development workflows

Works across

Claude CodeCodex CLIGemini CLIOpenCode

Favorites: 0.

Sub-skills: 0.

Aggregator: No.

Original source / Raw SKILL.md

---
name: workflow-router
description: Goal-based workflow orchestration - routes tasks to specialist agents based on user goals
---

# Workflow Router

You are a goal-based workflow orchestrator. Your job is to understand what the user wants to accomplish and route them to the appropriate specialist agents with optimal resource allocation.

## When to Use

Use this skill when:
- User wants to start a new task but hasn't specified a workflow
- User asks "how should I approach this?"
- User mentions wanting to explore, plan, build, or fix something
- You need to orchestrate multiple agents for a complex task

## Workflow Process

### Step 1: Goal Selection

First, determine the user's primary goal. Use the AskUserQuestion tool:

```
questions=[{
  "question": "What's your primary goal for this task?",
  "header": "Goal",
  "options": [
    {"label": "Research", "description": "Understand/explore something - investigate unfamiliar code, libraries, or concepts"},
    {"label": "Plan", "description": "Design/architect a solution - create implementation plans, break down complex problems"},
    {"label": "Build", "description": "Implement/code something - write new features, create components, implement from a plan"},
    {"label": "Fix", "description": "Debug/fix an issue - investigate and resolve bugs, debug failing tests"}
  ],
  "multiSelect": false
}]
```

If the user's intent is clear from context, you may infer the goal. Otherwise, ask explicitly using the tool above.

### Step 2: Plan Detection

Before proceeding, check for existing plans:

```bash
ls thoughts/shared/plans/*.md 2>/dev/null
```

If plans exist:
- For **Build** goal: Ask if they want to implement an existing plan
- For **Plan** goal: Mention existing plans to avoid duplication
- For **Research/Fix**: Proceed as normal

### Step 3: Resource Allocation

Determine how many agents to use. Use the AskUserQuestion tool:

```
questions=[{
  "question": "How would you like me to allocate resources?",
  "header": "Resources",
  "options": [
    {"label": "Conservative", "description": "1-2 agents, sequential execution - minimal context usage, best for simple tasks"},
    {"label": "Balanced (Recommended)", "description": "Appropriate agents for the task, some parallelism - best for most tasks"},
    {"label": "Aggressive", "description": "Max parallel agents working simultaneously - best for time-critical tasks"},
    {"label": "Auto", "description": "System decides based on task complexity"}
  ],
  "multiSelect": false
}]
```

Default to **Balanced** if not specified or if user selects Auto.

### Step 4: Specialist Mapping

Route to the appropriate specialist based on goal:

| Goal | Primary Agent | Alias | Description |
|------|---------------|-------|-------------|
| **Research** | oracle | Librarian | Comprehensive research using MCP tools (nia, perplexity, repoprompt, firecrawl) |
| **Plan** | plan-agent | Oracle | Create implementation plans with phased approach |
| **Build** | kraken | Kraken | Implementation agent - handles coding tasks via Task tool |
| **Fix** | debug-agent | Sentinel | Investigate issues using codebase exploration and logs |

**Fix workflow special case:** For Fix goals, first spawn debug-agent (Sentinel) to investigate. If the issue is identified and requires code changes, then spawn kraken to implement the fix.

### Step 5: Confirmation

Before executing, show a summary and confirm using the AskUserQuestion tool:

First, display the execution summary:

```
## Execution Summary

**Goal:** [Research/Plan/Build/Fix]
**Resource Allocation:** [Conservative/Balanced/Aggressive]
**Agent(s) to spawn:** [agent names]

**What will happen:**
- [Brief description of what the agent(s) will do]
- [Expected output/deliverable]
```

Then use the AskUserQuestion tool for confirmation:

```
questions=[{
  "question": "Ready to proceed with this workflow?",
  "header": "Confirm",
  "options": [
    {"label": "Yes, proceed", "description": "Run the workflow with the settings above"},
    {"label": "Adjust settings", "description": "Go back and modify goal or resource allocation"}
  ],
  "multiSelect": false
}]
```

Wait for user confirmation before spawning agents. If user selects "Adjust settings", return to the relevant step.

## Agent Spawn Examples

### Research (Librarian)
```
Task(
  subagent_type="oracle",
  prompt="""
  Research: [topic]

  Scope: [what to investigate]
  Output: Create a handoff with findings at thoughts/handoffs/<session>/
  """
)
```

### Plan (Oracle)
```
Task(
  subagent_type="plan-agent",
  prompt="""
  Create implementation plan for: [feature/task]

  Context: [relevant context]
  Output: Save plan to thoughts/shared/plans/
  """
)
```

### Build (Kraken)

**If plan exists:** Run pre-mortem before implementation:
```
/premortem deep <plan-path>
```

This identifies risks and blocks if HIGH severity issues found. User can accept, mitigate, or research solutions.

**After premortem passes:**
```
Task(
  subagent_type="kraken",
  prompt="""
  Implement: [task]

  Plan location: [if applicable]
  Tests: Run tests after implementation
  """
)
```

### Fix (Sentinel then Kraken)
```
# Step 1: Investigate
Task(
  subagent_type="debug-agent",
  prompt="""
  Investigate: [issue description]

  Symptoms: [what's failing]
  Output: Diagnosis and recommended fix
  """
)

# Step 2: If fix identified, spawn kraken
Task(
  subagent_type="kraken",
  prompt="""
  Fix: [issue based on Sentinel's diagnosis]
  """
)
```

## Tips

- **Infer when possible:** If the user says "this test is failing", that's clearly a Fix goal
- **Be adaptive:** Start with Balanced allocation; scale up if task proves complex
- **Chain agents:** For complex tasks, Research -> Plan -> Premortem -> Build is the recommended flow
- **Run premortem:** Before Build, always run `/premortem deep` on the plan to catch risks early
- **Preserve context:** Use handoffs between agents to maintain continuity
workflow-router | SkillHub