mit einem Klick
model-routing
// Intelligent model selection - routes tasks to Haiku (fast/cheap), Sonnet (balanced), or Opus (complex/strategic) based on task complexity analysis
// Intelligent model selection - routes tasks to Haiku (fast/cheap), Sonnet (balanced), or Opus (complex/strategic) based on task complexity analysis
| name | model-routing |
| description | Intelligent model selection - routes tasks to Haiku (fast/cheap), Sonnet (balanced), or Opus (complex/strategic) based on task complexity analysis |
| triggers | ["model","routing","optimize","cost","haiku","sonnet","opus"] |
| priority | high |
| version | 1.0.0 |
| source | claude-flow |
You have access to intelligent model routing. Before executing any task, analyze complexity and route to the appropriate model tier.
TASK COMPLEXITY ANALYSIS
────────────────────────────────────────────────────────────────
HAIKU (Fast, Cheap) - Use for:
├── Simple file operations (read, list, navigate)
├── Scaffolding and boilerplate generation
├── Deterministic transformations (format, lint, compile)
├── Status checks and health monitoring
├── SEO metadata generation
├── Deployment commands (after code is written)
├── Documentation formatting
├── Simple search and replace
│
│ Token cost: ~$0.25/1M input, $1.25/1M output
│ Latency: Fastest
│ Use when: Task has clear, unambiguous steps
SONNET (Balanced) - Use for:
├── Feature implementation (standard complexity)
├── Bug fixes requiring analysis
├── Content writing (articles, social posts)
├── Code review and quality checks
├── Test generation
├── Refactoring with clear patterns
├── API integration work
├── Database schema design
│
│ Token cost: ~$3/1M input, $15/1M output
│ Latency: Medium
│ Use when: Task requires reasoning but not deep strategy
OPUS (Strategic, Complex) - Use for:
├── Architecture decisions (system design)
├── Multi-agent coordination (council, swarm)
├── Strategic planning (business, product)
├── Complex debugging (multi-file, subtle bugs)
├── Security audits and vulnerability analysis
├── Enterprise AI system design
├── Book writing (narrative, character development)
├── Research synthesis (multiple sources)
├── Ambiguous requirements interpretation
│
│ Token cost: ~$15/1M input, $75/1M output
│ Latency: Slowest but most capable
│ Use when: Task requires deep reasoning, creativity, or strategy
When processing a request, apply these rules:
*.config.*, package.json, tsconfig.json/mcp-status, /inventory-status, /nextjs-deploy (execution phase)*.ts, *.tsx, *.py, *.md (content files)/article-creator, /create-music, /spec, /generate-social/starlight-architect, /council, /author-team, /researchBEFORE (No routing):
All tasks → Opus → $75/1M output tokens
AFTER (With routing):
Simple tasks (40%) → Haiku → $1.25/1M = $0.50
Medium tasks (45%) → Sonnet → $15/1M = $6.75
Complex tasks (15%) → Opus → $75/1M = $11.25
──────────────────────────────────────────────
TOTAL: $18.50 vs $75 = 75% cost reduction
When using the Task tool, specify model based on routing:
// Simple task - use haiku
Task({
subagent_type: "Explore",
model: "haiku",
prompt: "List all files in src/"
})
// Medium task - use sonnet (default)
Task({
subagent_type: "code-reviewer",
model: "sonnet",
prompt: "Review this PR for issues"
})
// Complex task - use opus
Task({
subagent_type: "Plan",
model: "opus",
prompt: "Design the architecture for a multi-tenant SaaS platform"
})
| Command | Default Model | Rationale |
|---|---|---|
/acos | sonnet | Router needs reasoning |
/article-creator | sonnet | Content creation |
/create-music | sonnet | Creative work |
/infogenius | sonnet | Research + creation |
/starlight-architect | opus | Strategic design |
/council | opus | Multi-perspective |
/research | sonnet | Information synthesis |
/spec | sonnet | Feature planning |
/nextjs-deploy | haiku | Execution |
/mcp-status | haiku | Status check |
/inventory-status | haiku | Status check |
/publish | haiku | Execution |
/polish-content | sonnet | Editing |
/review-content | sonnet | Quality check |
If a haiku-routed task fails or produces poor results:
haiku (attempt) → fail → sonnet (retry) → fail → opus (final)
Model Routing v1.0 - Implementing claude-flow's intelligent routing pattern
Convert a single build session into MDX build-log entry, LinkedIn draft, demo brief, Mermaid diagram, and a reusable prompt. Use when logging a public build or running the content flywheel for the /agentic-builder-lab and /build pages on frankx.ai.
Generate high-retention content hooks using tri-modal engineering (Visual + Audio + Text) across 10 dimensions — from research-backed wisdom to frontier science to comedic timing. State-of-art 2026 hook psychology for creators who respect their audience's intelligence. Use when creating video intros, social content, article hooks, or any attention capture.
Patterns for multi-agent coordination, task decomposition, handoffs, and workflow orchestration. Best practices for building and managing agent systems.
Claude Agentic Creator OS - Native Claude Code implementation
Helps execute Frank's daily workflow using the FRANKX-SUPERINTELLIGENT-AGENT-SYSTEM, Starlight Intelligence, and productivity methodologies for intentional creation
Advanced swarm orchestration patterns for research, development, testing, and complex distributed workflows