Agent Skills: Cloudflare Workers AI - Complete Reference

Cloudflare Workers AI for serverless GPU inference. Use for LLMs, text/image generation, embeddings, or encountering AI_ERROR, rate limits, token exceeded errors.

UncategorizedID: secondsky/claude-skills/cloudflare-workers-ai

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plugins/cloudflare-workers-ai/skills/cloudflare-workers-ai/SKILL.md

Skill Metadata

Name
cloudflare-workers-ai
Description
"Cloudflare Workers AI for serverless GPU inference. Use for LLMs, text/image generation, embeddings, or encountering AI_ERROR, rate limits, token exceeded errors."

Cloudflare Workers AI - Complete Reference

Production-ready knowledge domain for building AI-powered applications with Cloudflare Workers AI.

Status: Production Ready βœ… Last Updated: 2025-11-21 Dependencies: cloudflare-worker-base (for Worker setup) Latest Versions: wrangler@4.43.0, @cloudflare/workers-types@4.20251014.0


Table of Contents

  1. Quick Start (5 minutes)
  2. Workers AI API Reference
  3. Model Selection Guide
  4. Common Patterns
  5. AI Gateway Integration
  6. Rate Limits & Pricing
  7. Production Checklist

Quick Start (5 minutes)

1. Add AI Binding

wrangler.jsonc:

{
  "ai": {
    "binding": "AI"
  }
}

2. Run Your First Model

export interface Env {
  AI: Ai;
}

export default {
  async fetch(request: Request, env: Env): Promise<Response> {
    const response = await env.AI.run('@cf/meta/llama-3.1-8b-instruct', {
      prompt: 'What is Cloudflare?',
    });

    return Response.json(response);
  },
};

3. Add Streaming (Recommended)

const stream = await env.AI.run('@cf/meta/llama-3.1-8b-instruct', {
  messages: [{ role: 'user', content: 'Tell me a story' }],
  stream: true, // Always use streaming for text generation!
});

return new Response(stream, {
  headers: { 'content-type': 'text/event-stream' },
});

Why streaming?

  • Prevents buffering large responses in memory
  • Faster time-to-first-token
  • Better user experience for long-form content
  • Avoids Worker timeout issues

Workers AI API Reference

Core API: env.AI.run()

const response = await env.AI.run(model, inputs, options?);

| Parameter | Type | Description | |-----------|------|-------------| | model | string | Model ID (e.g., @cf/meta/llama-3.1-8b-instruct) | | inputs | object | Model-specific inputs (see model type below) | | options.gateway.id | string | AI Gateway ID for caching/logging | | options.gateway.skipCache | boolean | Skip AI Gateway cache |

Returns: Promise<ModelOutput> (non-streaming) or ReadableStream (streaming)

Input Types by Model Category

| Category | Key Inputs | Output | |----------|------------|--------| | Text Generation | messages[], stream, max_tokens, temperature | { response: string } | | Embeddings | text: string \| string[] | { data: number[][], shape: number[] } | | Image Generation | prompt, num_steps, guidance | Binary PNG | | Vision | messages[].content[].image_url | { response: string } |

πŸ“„ Full model details: Load references/models-catalog.md for complete model list, parameters, and rate limits.


Model Selection Guide

Text Generation (LLMs)

| Model | Best For | Rate Limit | Size | |-------|----------|------------|------| | @cf/meta/llama-3.1-8b-instruct | General purpose, fast | 300/min | 8B | | @cf/meta/llama-3.2-1b-instruct | Ultra-fast, simple tasks | 300/min | 1B | | @cf/qwen/qwen1.5-14b-chat-awq | High quality, complex reasoning | 150/min | 14B | | @cf/deepseek-ai/deepseek-r1-distill-qwen-32b | Coding, technical content | 300/min | 32B | | @hf/thebloke/mistral-7b-instruct-v0.1-awq | Fast, efficient | 400/min | 7B |

Text Embeddings

| Model | Dimensions | Best For | Rate Limit | |-------|-----------|----------|------------| | @cf/baai/bge-base-en-v1.5 | 768 | General purpose RAG | 3000/min | | @cf/baai/bge-large-en-v1.5 | 1024 | High accuracy search | 1500/min | | @cf/baai/bge-small-en-v1.5 | 384 | Fast, low storage | 3000/min |

Image Generation

| Model | Best For | Rate Limit | Speed | |-------|----------|------------|-------| | @cf/black-forest-labs/flux-1-schnell | High quality, photorealistic | 720/min | Fast | | @cf/stabilityai/stable-diffusion-xl-base-1.0 | General purpose | 720/min | Medium | | @cf/lykon/dreamshaper-8-lcm | Artistic, stylized | 720/min | Fast |

Vision Models

| Model | Best For | Rate Limit | |-------|----------|------------| | @cf/meta/llama-3.2-11b-vision-instruct | Image understanding | 720/min | | @cf/unum/uform-gen2-qwen-500m | Fast image captioning | 720/min |


Common Patterns

Pattern 1: Chat with Streaming

app.post('/chat', async (c) => {
  const { messages } = await c.req.json<{ messages: Array<{ role: string; content: string }> }>();
  const stream = await c.env.AI.run('@cf/meta/llama-3.1-8b-instruct', { messages, stream: true });
  return new Response(stream, { headers: { 'content-type': 'text/event-stream' } });
});

Pattern 2: RAG (Retrieval Augmented Generation)

// 1. Generate embedding for query
const embeddings = await env.AI.run('@cf/baai/bge-base-en-v1.5', { text: [userQuery] });
// 2. Search Vectorize
const matches = await env.VECTORIZE.query(embeddings.data[0], { topK: 3 });
// 3. Build context
const context = matches.matches.map((m) => m.metadata.text).join('\n\n');
// 4. Generate with context
const stream = await env.AI.run('@cf/meta/llama-3.1-8b-instruct', {
  messages: [
    { role: 'system', content: `Answer using this context:\n${context}` },
    { role: 'user', content: userQuery },
  ],
  stream: true,
});
return new Response(stream, { headers: { 'content-type': 'text/event-stream' } });

πŸ“„ More patterns: Load references/best-practices.md for structured output, image generation, multi-model consensus, and production patterns.


AI Gateway Integration

Enable caching, logging, and cost tracking with AI Gateway:

const response = await env.AI.run('@cf/meta/llama-3.1-8b-instruct', { prompt: 'Hello' }, {
  gateway: { id: 'my-gateway', skipCache: false },
});

Benefits: Cost tracking, response caching (50-90% savings on repeated queries), request logging, rate limiting, analytics.


Rate Limits & Pricing

Information last verified: 2025-01-14

Rate limits and pricing vary significantly by model. Always check the official documentation for the most current information:

  • Rate Limits: https://developers.cloudflare.com/workers-ai/platform/limits/
  • Pricing: https://developers.cloudflare.com/workers-ai/platform/pricing/

Free Tier: 10,000 neurons/day Paid Tier: $0.011 per 1,000 neurons

πŸ“„ Per-model details: See references/models-catalog.md for specific rate limits and pricing for each model.


Production Checklist

Essential before deploying:

  • [ ] Enable AI Gateway for cost tracking
  • [ ] Implement streaming for text generation
  • [ ] Add rate limit retry with exponential backoff
  • [ ] Validate input length (prevent token limit errors)
  • [ ] Add input sanitization (prevent prompt injection)

πŸ“„ Full checklist: Load references/best-practices.md for complete production checklist, error handling patterns, monitoring, and cost optimization.


External SDK Integrations

Workers AI supports OpenAI SDK compatibility and Vercel AI SDK:

// OpenAI SDK - use same patterns with Workers AI models
const openai = new OpenAI({
  apiKey: env.CLOUDFLARE_API_KEY,
  baseURL: `https://api.cloudflare.com/client/v4/accounts/${env.CLOUDFLARE_ACCOUNT_ID}/ai/v1`,
});

// Vercel AI SDK - native integration
import { createWorkersAI } from 'workers-ai-provider';
const workersai = createWorkersAI({ binding: env.AI });

πŸ“„ Full integration guide: Load references/integrations.md for OpenAI SDK, Vercel AI SDK, and REST API examples.


Limits Summary

| Feature | Limit | |---------|-------| | Concurrent requests | No hard limit (rate limits apply) | | Max input tokens | Varies by model (typically 2K-128K) | | Max output tokens | Varies by model (typically 512-2048) | | Streaming chunk size | ~1 KB | | Image size (output) | ~5 MB | | Request timeout | Workers timeout applies (30s default, 5m max CPU) | | Daily free neurons | 10,000 | | Rate limits | See "Rate Limits & Pricing" section |


When to Load References

| Reference File | Load When... | |----------------|--------------| | references/models-catalog.md | Choosing a model, checking rate limits, comparing model capabilities | | references/best-practices.md | Production deployment, error handling, cost optimization, security | | references/integrations.md | Using OpenAI SDK, Vercel AI SDK, or REST API instead of native binding |


References