chatkit-botbuilder

Guide for creating production-grade ChatKit chatbots that integrate OpenAI Agents SDK with MCP tools and custom backends. Use when building AI-powered chatbots with specialized capabilities, real-time task execution, and user isolation for any application.

25 stars

Best use case

chatkit-botbuilder is best used when you need a repeatable AI agent workflow instead of a one-off prompt.

Guide for creating production-grade ChatKit chatbots that integrate OpenAI Agents SDK with MCP tools and custom backends. Use when building AI-powered chatbots with specialized capabilities, real-time task execution, and user isolation for any application.

Teams using chatkit-botbuilder should expect a more consistent output, faster repeated execution, less prompt rewriting.

When to use this skill

  • You want a reusable workflow that can be run more than once with consistent structure.

When not to use this skill

  • You only need a quick one-off answer and do not need a reusable workflow.
  • You cannot install or maintain the underlying files, dependencies, or repository context.

Installation

Claude Code / Cursor / Codex

$curl -o ~/.claude/skills/chatkit-botbuilder/SKILL.md --create-dirs "https://raw.githubusercontent.com/ComeOnOliver/skillshub/main/skills/aiskillstore/marketplace/92bilal26/chatkit-botbuilder/SKILL.md"

Manual Installation

  1. Download SKILL.md from GitHub
  2. Place it in .claude/skills/chatkit-botbuilder/SKILL.md inside your project
  3. Restart your AI agent — it will auto-discover the skill

How chatkit-botbuilder Compares

Feature / Agentchatkit-botbuilderStandard Approach
Platform SupportNot specifiedLimited / Varies
Context Awareness High Baseline
Installation ComplexityUnknownN/A

Frequently Asked Questions

What does this skill do?

Guide for creating production-grade ChatKit chatbots that integrate OpenAI Agents SDK with MCP tools and custom backends. Use when building AI-powered chatbots with specialized capabilities, real-time task execution, and user isolation for any application.

Where can I find the source code?

You can find the source code on GitHub using the link provided at the top of the page.

SKILL.md Source

# ChatKit Botbuilder

## Overview

Create production-grade chatbots using the OpenAI ChatKit framework. This skill enables building chatbots that:

- **Integrate AI Agents**: Use OpenAI Agents SDK for intelligent conversation handling
- **Execute Tools**: Connect MCP (Model Context Protocol) tools for real-world task execution
- **Support Custom Backends**: Build FastAPI backends with full protocol support
- **Ensure User Isolation**: Implement multi-user systems with JWT authentication
- **Real-Time Synchronization**: Enable live UI updates when chatbot performs actions
- **Flexible Deployment**: Deploy to web, mobile, or desktop applications

This skill provides the complete architecture pattern for ChatKit integration, from frontend configuration to backend server implementation.

---

## When to Use This Skill

Use this skill when you need to:

1. **Build a task management chatbot** - Create conversational interfaces for task creation, updates, completion
2. **Integrate AI into existing apps** - Add ChatKit to dashboards, web apps, or platforms
3. **Create specialized AI assistants** - Build domain-specific chatbots with custom tool integrations
4. **Implement multi-user chatbots** - Create systems where each user has isolated conversations and data
5. **Add real-time capabilities** - Build chatbots that trigger actual application changes
6. **Deploy AI conversations** - Create chatbots that interact with your database and APIs

---

## Architecture Overview

### High-Level Flow

```
User Message
    ↓
ChatKit Frontend (React/Next.js)
    ↓ [JWT Token in Authorization Header]
    ↓
FastAPI Backend (ChatKit Server)
    ↓ [Extract user_id from JWT]
    ↓
OpenAI Agent (Agents SDK)
    ↓ [Needs tool execution]
    ↓
MCP Tools (Custom Tool Functions)
    ↓ [Creates/Updates/Lists data]
    ↓
Database (User-Isolated Data)
    ↓
Response → ChatKit → Frontend → User
```

### Key Components

1. **Frontend (Next.js + ChatKit SDK)**
   - ChatKit UI component with conversation history
   - JWT token management in localStorage
   - Custom fetch wrapper with Bearer token authentication
   - Real-time auto-refresh to sync with backend changes

2. **Backend (FastAPI + ChatKit Server)**
   - ChatKit protocol endpoint handling requests
   - MyChatKitServer class extending ChatKitServer
   - User isolation through JWT middleware
   - Tool wrapper functions for automatic user_id injection

3. **Agent (OpenAI Agents SDK)**
   - Task management agent with instructions
   - Tool registration and execution
   - Session management

4. **Tools (MCP + Custom Functions)**
   - Wrapped functions injecting user_id automatically
   - Database operations with user isolation
   - Consistent error handling

5. **Database**
   - SQLModel ORM models
   - Per-user task filtering
   - Conversation persistence

---

## Quick Start Workflow

### Phase 1: Backend Setup (FastAPI)

**1. Create ChatKit Server Class**

```python
from chatkit.server import ChatKitServer
from chatkit.store import Store

class MyChatKitServer(ChatKitServer):
    def __init__(self):
        store = CustomChatKitStore()
        super().__init__(store=store)

    async def respond(self, thread, input, context):
        """Process user message and stream AI response"""
        user_id = getattr(context, 'user_id', None)
        # Create agent with wrapped tools
        # Stream response using official pattern
```

**2. Create MCP Tool Wrappers**

```python
# Extract user_id from context and inject into tool calls
def add_task_wrapper(title: str, description: str = None):
    return mcp_add_task(user_id=user_id, title=title, description=description)

def list_tasks_wrapper(status: str = "all"):
    return mcp_list_tasks(user_id=user_id, status=status)
```

**3. Create FastAPI Endpoint**

```python
@router.post("/api/v1/chatkit")
async def chatkit_protocol_endpoint(request: Request):
    user_id = request.state.user_id  # From JWT middleware
    context = create_context_object(user_id=user_id)
    result = await chatkit_server.process(body, context)
    return StreamingResponse(result, media_type="text/event-stream")
```

**4. Configure JWT Middleware**

```python
class JWTAuthMiddleware(BaseHTTPMiddleware):
    async def dispatch(self, request, call_next):
        # Extract JWT token from Authorization header
        # Decode and set request.state.user_id
        # All endpoints have access to authenticated user_id
```

### Phase 2: Frontend Setup (Next.js + React)

**1. Configure ChatKit SDK**

```typescript
const chatKitConfig: UseChatKitOptions = {
  api: {
    url: `${API_BASE_URL}/api/v1/chatkit`,
    domainKey: 'your-domain-key',
    fetch: authenticatedFetch, // Custom fetch with JWT
  },
  theme: 'light',
  header: { enabled: true, title: { text: 'AI Chat' } },
  history: { enabled: true },
}
```

**2. Create Authenticated Fetch Wrapper**

```typescript
async function authenticatedFetch(input, options) {
  const token = localStorage.getItem('access_token')
  const headers = {
    ...options?.headers,
    'Authorization': `Bearer ${token}`,
  }
  return fetch(input, { ...options, headers })
}
```

**3. Integrate ChatKit Widget**

```typescript
import { ChatKitWidget } from '@openai/chatkit-react'

export default function Dashboard() {
  return (
    <div className="flex gap-4">
      {/* Your app content */}
      {showChat && (
        <ChatKitWidget {...chatKitConfig} />
      )}
    </div>
  )
}
```

**4. Add Auto-Refresh for Real-Time Sync**

```typescript
useEffect(() => {
  if (!showChatKit) return

  // Refresh immediately when chat opens
  fetchTasks()

  // Refresh every 1 second for real-time updates
  const interval = setInterval(() => {
    fetchTasks()
  }, 1000)

  return () => clearInterval(interval)
}, [showChatKit])
```

### Phase 3: Tool Implementation (MCP)

**1. Create MCP Tools with User Isolation**

```python
def add_task(user_id: str, title: str, description: Optional[str] = None):
    """Create task - receives user_id from wrapper"""
    task = Task(
        id=str(uuid.uuid4()),
        user_id=user_id,  # Critical: ensure user isolation
        title=title,
        description=description,
        completed=False,
        created_at=datetime.utcnow(),
    )
    with Session(engine) as session:
        session.add(task)
        session.commit()
```

**2. Register MCP Tools**

```python
mcp_server = MCPServer()
mcp_server.register_tool("add_task", add_task)
mcp_server.register_tool("list_tasks", list_tasks)
mcp_server.register_tool("delete_task", delete_task)
# ... more tools
```

---

## Core Patterns & Best Practices

### 1. User Isolation Strategy

**Three-Level Guarantee:**

1. **Middleware Level** - JWT validation ensures only authenticated users
2. **Tool Level** - Wrapper functions automatically inject user_id
3. **Database Level** - All queries filtered by user_id

```python
# Middleware extracts user_id from token
request.state.user_id = payload.get("user_id")

# Tool wrapper captures and injects it
def add_task_wrapper(title):
    return mcp_add_task(user_id=user_id, ...)

# Database enforces it
WHERE user_id = ? AND task_id = ?
```

### 2. Message Flow with User Context

```
User sends: "Create a task called 'Buy milk'"
    ↓
ChatKit Protocol: POST /api/v1/chatkit
    Header: Authorization: Bearer <JWT>
    Body: { "type": "message", "text": "Create..." }
    ↓
JWT Middleware:
    Extracts user_id from token → request.state.user_id
    ↓
ChatKit Server (MyChatKitServer.respond):
    Gets user_id from context
    Creates wrapper functions capturing user_id
    Passes wrappers to Agent
    ↓
OpenAI Agent:
    Receives message: "Create a task..."
    Selects tool: add_task_wrapper
    Calls: add_task_wrapper(title="Buy milk")
    ↓
Wrapper Function:
    Calls: mcp_add_task(user_id="user-123", title="Buy milk")
    ↓
MCP Tool:
    Creates task with correct user_id
    Returns: {"task_id": "...", "title": "Buy milk"}
    ↓
Agent Response:
    "I've created 'Buy milk' task ✓"
    ↓
ChatKit Frontend:
    Displays response
    Auto-refreshes task list → Sees new task
```

### 3. Streaming Response Pattern

```python
# Official ChatKit pattern using Runner.run_streamed
result = Runner.run_streamed(
    task_agent.agent,
    agent_input,
    context=agent_context,
)

# Stream events using official stream_agent_response
async for event in stream_agent_response(agent_context, result):
    yield event
```

### 4. Thread and Item Management

```python
# Add user message to thread
await self.store.add_thread_item(thread.id, input, context)

# Load conversation history
items_page = await self.store.load_thread_items(
    thread.id,
    after=None,
    limit=30,
    order="desc",
    context=context,
)

# Convert to agent input
agent_input = await simple_to_agent_input(items)
```

---

## Integration Patterns

### Pattern 1: Task Management Chatbot (Basic)

**What it does:**
- Users create tasks by talking to ChatKit
- ChatKit shows task list in sidebar
- Auto-refresh keeps task list in sync

**Files to reference:**
- [TaskPilotAI Backend Architecture](./references/taskpilot_backend_architecture.md)
- [Frontend Integration Pattern](./references/frontend_integration.md)

### Pattern 2: Multi-App ChatKit Deployment

**What it does:**
- Deploy ChatKit to multiple applications
- Share the same backend and database
- Each app has isolated user contexts

**Key setup:**
- Use environment variables for API_BASE_URL
- Configure domain key per application
- Implement per-app authentication

### Pattern 3: Real-Time Collaboration

**What it does:**
- Multiple users chat with the same chatbot instance
- Auto-refresh keeps everyone's data in sync
- User isolation prevents cross-user data leaks

**Implementation:**
- WebSocket connections for true real-time (optional advanced)
- Polling with auto-refresh for simplicity
- Database transactions for data consistency

---

## Common Issues & Solutions

### Issue 1: Tasks Created in ChatKit Don't Appear in Dashboard

**Root Cause:** user_id not passed to MCP tools

**Solution:** Use wrapper functions that capture and inject user_id
```python
def add_task_wrapper(title):
    return mcp_add_task(user_id=user_id, title=title)
```

### Issue 2: One User Sees Another User's Tasks

**Root Cause:** Missing user_id filter in database queries

**Solution:** Always filter by user_id at the tool level
```python
stmt = select(Task).where(
    Task.user_id == user_id,
    Task.completed == False
)
```

### Issue 3: ChatKit API Endpoint Not Found

**Root Cause:** Router not included in FastAPI app

**Solution:** Include router in main.py
```python
from routes import chatkit
app.include_router(chatkit.router)
```

### Issue 4: Chat Widget Not Showing Messages

**Root Cause:** Custom fetch not adding JWT token

**Solution:** Ensure authenticatedFetch adds Bearer token
```typescript
const token = localStorage.getItem('access_token')
headers['Authorization'] = `Bearer ${token}`
```

---

## Advanced Topics

### Real-Time Updates (WebSocket)

For true real-time (not polling):
- Implement WebSocket endpoint alongside HTTP endpoint
- Broadcast updates to all connected clients
- Maintain connection state with user context

### Custom Tool Schemas

Structure tool responses for ChatKit widgets:
```python
return {
    "tasks": task_list,
    "total": len(task_list),
    "pending": pending_count,
    "message": "You have 5 tasks",
    "widget": {
        "type": "card",
        "items": formatted_items,
    }
}
```

### Session Persistence

Store conversation history in database:
- Link conversations to users
- Retrieve chat history for context
- Allow resuming conversations

---

## Resources

This skill includes comprehensive resources for building ChatKit chatbots:

### references/

**Backend Architecture:** Complete FastAPI ChatKit server implementation details and patterns

**Frontend Integration:** Next.js ChatKit widget configuration and authentication

**MCP Tools Guide:** Creating wrapped tool functions with automatic user_id injection

**User Isolation:** Three-level user isolation strategy and verification checklist

### scripts/

**chatkit_server_template.py** - FastAPI ChatKit server boilerplate with all required methods

**mcp_wrapper_generator.py** - Script to auto-generate MCP tool wrappers

**frontend_config_generator.ts** - TypeScript config generator for ChatKit frontend setup

### assets/

**chatkit-nextjs-template/** - Complete Next.js project with ChatKit integrated

**fastapi-backend-template/** - Complete FastAPI backend with ChatKit server implementation

---

## Verification Checklist

When building a ChatKit chatbot, verify:

- [ ] JWT middleware extracts user_id from token
- [ ] ChatKit endpoint receives user_id in context
- [ ] Tool wrappers capture and inject user_id
- [ ] Database queries filter by user_id
- [ ] Frontend authenticatedFetch includes Bearer token
- [ ] ChatKit configuration points to correct backend endpoint
- [ ] Auto-refresh periodically fetches updated data
- [ ] One user cannot see another user's data
- [ ] Chatbot can successfully call MCP tools
- [ ] Tool responses appear in ChatKit conversation
- [ ] Real-time sync works between chatbot and dashboard

---

## Next Steps

1. **For a new project:** Copy the template from `assets/fastapi-backend-template/` and `assets/chatkit-nextjs-template/`
2. **For existing app:** Follow the "Integration Patterns" section and reference the architecture guides
3. **For advanced features:** Read the "Advanced Topics" section and extend as needed
4. **For troubleshooting:** Check "Common Issues & Solutions" and verify the checklist

Related Skills

chatkit-widget

25
from ComeOnOliver/skillshub

Use when integrating OpenAI/ChatKit chat widgets into Next.js/React applications. Triggers for: embedding chat widgets, configuring widget appearance, implementing event handlers, setting up authenticated chat access, or customizing widget branding. NOT for: building custom chat UIs from scratch or backend AI model configuration.

Daily Logs

25
from ComeOnOliver/skillshub

Record the user's daily activities, progress, decisions, and learnings in a structured, chronological format.

Socratic Method: The Dialectic Engine

25
from ComeOnOliver/skillshub

This skill transforms Claude into a Socratic agent — a cognitive partner who guides

Sokratische Methode: Die Dialektik-Maschine

25
from ComeOnOliver/skillshub

Dieser Skill verwandelt Claude in einen sokratischen Agenten — einen kognitiven Partner, der Nutzende durch systematisches Fragen zur Wissensentdeckung führt, anstatt direkt zu instruieren.

College Football Data (CFB)

25
from ComeOnOliver/skillshub

Before writing queries, consult `references/api-reference.md` for endpoints, conference IDs, team IDs, and data shapes.

College Basketball Data (CBB)

25
from ComeOnOliver/skillshub

Before writing queries, consult `references/api-reference.md` for endpoints, conference IDs, team IDs, and data shapes.

Betting Analysis

25
from ComeOnOliver/skillshub

Before writing queries, consult `references/api-reference.md` for odds formats, command parameters, and key concepts.

Research Proposal Generator

25
from ComeOnOliver/skillshub

Generate high-quality academic research proposals for PhD applications following Nature Reviews-style academic writing conventions.

Paper Slide Deck Generator

25
from ComeOnOliver/skillshub

Transform academic papers and content into professional slide deck images with automatic figure extraction.

Medical Imaging AI Literature Review Skill

25
from ComeOnOliver/skillshub

Write comprehensive literature reviews following a systematic 7-phase workflow.

Meeting Briefing Skill

25
from ComeOnOliver/skillshub

You are a meeting preparation assistant for an in-house legal team. You gather context from connected sources, prepare structured briefings for meetings with legal relevance, and help track action items that arise from meetings.

Canned Responses Skill

25
from ComeOnOliver/skillshub

You are a response template assistant for an in-house legal team. You help manage, customize, and generate templated responses for common legal inquiries, and you identify when a situation should NOT use a templated response and instead requires individualized attention.