building-ai-agent-on-cloudflare
$
npx mdskill add openai/plugins/building-ai-agent-on-cloudflareGenerates production-ready AI agents on Cloudflare using the Agents SDK with state management and real-time capabilities.
- Helps users build stateful, real-time AI agents or chatbots for Cloudflare Workers.
- Integrates with Cloudflare Agents SDK, Workers APIs, and WebSockets for deployment.
- Prefers retrieval from Cloudflare documentation over pre-trained knowledge for accuracy.
- Delivers code snippets and deployment guidance tailored to user queries.
SKILL.md
.github/skills/building-ai-agent-on-cloudflareView on GitHub ↗
---
name: building-ai-agent-on-cloudflare
description: |
Builds AI agents on Cloudflare using the Agents SDK with state management,
real-time WebSockets, scheduled tasks, tool integration, and chat capabilities.
Generates production-ready agent code deployed to Workers.
Use when: user wants to "build an agent", "AI agent", "chat agent", "stateful
agent", mentions "Agents SDK", needs "real-time AI", "WebSocket AI", or asks
about agent "state management", "scheduled tasks", or "tool calling".
Biases towards retrieval from Cloudflare docs over pre-trained knowledge.
---
# Building Cloudflare Agents
Your knowledge of the Agents SDK may be outdated. **Prefer retrieval over pre-training** for any agent-building task.
## Retrieval Sources
| Source | How to retrieve | Use for |
|--------|----------------|---------|
| Agents SDK docs | `https://github.com/cloudflare/agents/tree/main/docs` | SDK API, state, routing, scheduling |
| Cloudflare Agents docs | `https://developers.cloudflare.com/agents/` | Platform integration, deployment |
| Workers docs | Search tool or `https://developers.cloudflare.com/workers/` | Runtime APIs, bindings, config |
## When to Use
- User wants to build an AI agent or chatbot
- User needs stateful, real-time AI interactions
- User asks about the Cloudflare Agents SDK
- User wants scheduled tasks or background AI work
- User needs WebSocket-based AI communication
## Prerequisites
- Cloudflare account with Workers enabled
- Node.js 18+ and npm/pnpm/yarn
- Wrangler CLI (`npm install -g wrangler`)
## Quick Start
```bash
npm create cloudflare@latest -- my-agent --template=cloudflare/agents-starter
cd my-agent
npm start
```
Agent runs at `http://localhost:8787`
## Core Concepts
### What is an Agent?
An Agent is a stateful, persistent AI service that:
- Maintains state across requests and reconnections
- Communicates via WebSockets or HTTP
- Runs on Cloudflare's edge via Durable Objects
- Can schedule tasks and call tools
- Scales horizontally (each user/session gets own instance)
### Agent Lifecycle
```
Client connects → Agent.onConnect() → Agent processes messages
→ Agent.onMessage()
→ Agent.setState() (persists + syncs)
Client disconnects → State persists → Client reconnects → State restored
```
## Basic Agent Structure
```typescript
import { Agent, Connection } from "agents";
interface Env {
AI: Ai; // Workers AI binding
}
interface State {
messages: Array<{ role: string; content: string }>;
preferences: Record<string, string>;
}
export class MyAgent extends Agent<Env, State> {
// Initial state for new instances
initialState: State = {
messages: [],
preferences: {},
};
// Called when agent starts or resumes
async onStart() {
console.log("Agent started with state:", this.state);
}
// Handle WebSocket connections
async onConnect(connection: Connection) {
connection.send(JSON.stringify({
type: "welcome",
history: this.state.messages,
}));
}
// Handle incoming messages
async onMessage(connection: Connection, message: string) {
const data = JSON.parse(message);
if (data.type === "chat") {
await this.handleChat(connection, data.content);
}
}
// Handle disconnections
async onClose(connection: Connection) {
console.log("Client disconnected");
}
// React to state changes
onStateUpdate(state: State, source: string) {
console.log("State updated by:", source);
}
private async handleChat(connection: Connection, userMessage: string) {
// Add user message to history
const messages = [
...this.state.messages,
{ role: "user", content: userMessage },
];
// Call AI
const response = await this.env.AI.run("@cf/meta/llama-3-8b-instruct", {
messages,
});
// Update state (persists and syncs to all clients)
this.setState({
...this.state,
messages: [
...messages,
{ role: "assistant", content: response.response },
],
});
// Send response
connection.send(JSON.stringify({
type: "response",
content: response.response,
}));
}
}
```
## Entry Point Configuration
```typescript
// src/index.ts
import { routeAgentRequest } from "agents";
import { MyAgent } from "./agent";
export default {
async fetch(request: Request, env: Env) {
// routeAgentRequest handles routing to /agents/:class/:name
return (
(await routeAgentRequest(request, env)) ||
new Response("Not found", { status: 404 })
);
},
};
export { MyAgent };
```
Clients connect via: `wss://my-agent.workers.dev/agents/MyAgent/session-id`
## Wrangler Configuration
```toml
name = "my-agent"
main = "src/index.ts"
compatibility_date = "2024-12-01"
[ai]
binding = "AI"
[durable_objects]
bindings = [{ name = "AGENT", class_name = "MyAgent" }]
[[migrations]]
tag = "v1"
new_classes = ["MyAgent"]
```
## State Management
### Reading State
```typescript
// Current state is always available
const currentMessages = this.state.messages;
const userPrefs = this.state.preferences;
```
### Updating State
```typescript
// setState persists AND syncs to all connected clients
this.setState({
...this.state,
messages: [...this.state.messages, newMessage],
});
// Partial updates work too
this.setState({
preferences: { ...this.state.preferences, theme: "dark" },
});
```
### SQL Storage
For complex queries, use the embedded SQLite database:
```typescript
// Create tables
await this.sql`
CREATE TABLE IF NOT EXISTS documents (
id INTEGER PRIMARY KEY AUTOINCREMENT,
title TEXT NOT NULL,
content TEXT,
created_at DATETIME DEFAULT CURRENT_TIMESTAMP
)
`;
// Insert
await this.sql`
INSERT INTO documents (title, content)
VALUES (${title}, ${content})
`;
// Query
const docs = await this.sql`
SELECT * FROM documents WHERE title LIKE ${`%${search}%`}
`;
```
## Scheduled Tasks
Agents can schedule future work:
```typescript
async onMessage(connection: Connection, message: string) {
const data = JSON.parse(message);
if (data.type === "schedule_reminder") {
// Schedule task for 1 hour from now
const { id } = await this.schedule(3600, "sendReminder", {
message: data.reminderText,
userId: data.userId,
});
connection.send(JSON.stringify({ type: "scheduled", taskId: id }));
}
}
// Called when scheduled task fires
async sendReminder(data: { message: string; userId: string }) {
// Send notification, email, etc.
console.log(`Reminder for ${data.userId}: ${data.message}`);
// Can also update state
this.setState({
...this.state,
lastReminder: new Date().toISOString(),
});
}
```
### Schedule Options
```typescript
// Delay in seconds
await this.schedule(60, "taskMethod", { data });
// Specific date
await this.schedule(new Date("2025-01-01T00:00:00Z"), "taskMethod", { data });
// Cron expression (recurring)
await this.schedule("0 9 * * *", "dailyTask", {}); // 9 AM daily
await this.schedule("*/5 * * * *", "everyFiveMinutes", {}); // Every 5 min
// Manage schedules
const schedules = await this.getSchedules();
await this.cancelSchedule(taskId);
```
## Chat Agent (AI-Powered)
For chat-focused agents, extend `AIChatAgent`:
```typescript
import { AIChatAgent } from "agents/ai-chat-agent";
export class ChatBot extends AIChatAgent<Env> {
// Called for each user message
async onChatMessage(message: string) {
const response = await this.env.AI.run("@cf/meta/llama-3-8b-instruct", {
messages: [
{ role: "system", content: "You are a helpful assistant." },
...this.messages, // Automatic history management
{ role: "user", content: message },
],
stream: true,
});
// Stream response back to client
return response;
}
}
```
Features included:
- Automatic message history
- Resumable streaming (survives disconnects)
- Built-in `saveMessages()` for persistence
## Client Integration
### React Hook
```tsx
import { useAgent } from "agents/react";
function Chat() {
const { state, send, connected } = useAgent({
agent: "my-agent",
name: userId, // Agent instance ID
});
const sendMessage = (text: string) => {
send(JSON.stringify({ type: "chat", content: text }));
};
return (
<div>
{state.messages.map((msg, i) => (
<div key={i}>{msg.role}: {msg.content}</div>
))}
<input onKeyDown={(e) => e.key === "Enter" && sendMessage(e.target.value)} />
</div>
);
}
```
### Vanilla JavaScript
```javascript
const ws = new WebSocket("wss://my-agent.workers.dev/agents/MyAgent/user123");
ws.onopen = () => {
console.log("Connected to agent");
};
ws.onmessage = (event) => {
const data = JSON.parse(event.data);
console.log("Received:", data);
};
ws.send(JSON.stringify({ type: "chat", content: "Hello!" }));
```
## Common Patterns
See [references/agent-patterns.md](references/agent-patterns.md) for:
- Tool calling and function execution
- Multi-agent orchestration
- RAG (Retrieval Augmented Generation)
- Human-in-the-loop workflows
## Deployment
```bash
# Deploy
npx wrangler deploy
# View logs
wrangler tail
# Test endpoint
curl https://my-agent.workers.dev/agents/MyAgent/test-user
```
## Troubleshooting
See [references/troubleshooting.md](references/troubleshooting.md) for common issues.
## References
- [references/examples.md](references/examples.md) — Official templates and production examples
- [references/agent-patterns.md](references/agent-patterns.md) — Advanced patterns
- [references/state-patterns.md](references/state-patterns.md) — State management strategies
- [references/troubleshooting.md](references/troubleshooting.md) — Error solutions
More from openai/plugins
- accessibility-and-inclusive-visualizationMake data visualizations accessible and inclusive. Use when the user needs chart or diagram accessibility guidance, text alternatives for complex visuals, color and contrast review, keyboard support, reduced-motion behavior for animation or parallax, or an accessibility QA workflow for exported figures, UML-like diagrams, and dashboards.
- agent-browserBrowser automation CLI for AI agents. Use when the user needs to interact with websites, verify dev server output, test web apps, navigate pages, fill forms, click buttons, take screenshots, extract data, or automate any browser task. Also triggers when a dev server starts so you can verify it visually.
- agent-browser-verifyAutomated browser verification for dev servers. Triggers when a dev server starts to run a visual gut-check with agent-browser — verifies the page loads, checks for console errors, validates key UI elements, and reports pass/fail before continuing.
- agents-sdkBuild AI agents on Cloudflare Workers using the Agents SDK. Load when creating stateful agents, durable workflows, real-time WebSocket apps, scheduled tasks, MCP servers, or chat applications. Covers Agent class, state management, callable RPC, Workflows integration, and React hooks. Biases towards retrieval from Cloudflare docs over pre-trained knowledge.
- ai-elementsAI Elements component library guidance — pre-built React components for AI interfaces built on shadcn/ui. Use when building chat UIs, message displays, tool call rendering, streaming responses, reasoning panels, or any AI-native interface with the AI SDK.
- ai-gatewayVercel AI Gateway expert guidance. Use when configuring model routing, provider failover, cost tracking, or managing multiple AI providers through a unified API.
- ai-generation-persistenceAI generation persistence patterns — unique IDs, addressable URLs, database storage, and cost tracking for every LLM generation
- ai-sdkVercel AI SDK expert guidance. Use when building AI-powered features — chat interfaces, text generation, structured output, tool calling, agents, MCP integration, streaming, embeddings, reranking, image generation, or working with any LLM provider.
- aiq-deploy|
- aiq-research|