chatgpt-app-builder by aiskillstore
Build ChatGPT Apps using the Apps SDK and MCP. Use when users want to:(1) Evaluate if their product should become a ChatGPT App(2) Design and implement MCP servers with widgets(3) Test apps locally and in ChatGPT(4) Prepare for App Store submissionTriggers: "ChatGPT app", "Apps SDK", "build for ChatGPT","ChatGPT integration", "MCP server for ChatGPT", "submit to ChatGPT"
Content & Writing
85 Stars
2 Forks
Updated Jan 19, 2026, 04:39 AM
Why Use This
This skill provides specialized capabilities for aiskillstore's codebase.
Use Cases
- Developing new features in the aiskillstore repository
- Refactoring existing code to follow aiskillstore standards
- Understanding and working with aiskillstore's codebase structure
Install Guide
2 steps- 1
Skip this step if Ananke is already installed.
- 2
Skill Snapshot
Auto scan of skill assets. Informational only.
Valid SKILL.md
Checks against SKILL.md specification
Source & Community
Skill Stats
SKILL.md 430 Lines
Total Files 1
Total Size 0 B
License MIT
---
name: chatgpt-app-builder
description: |
Build ChatGPT Apps using the Apps SDK and MCP. Use when users want to:
(1) Evaluate if their product should become a ChatGPT App
(2) Design and implement MCP servers with widgets
(3) Test apps locally and in ChatGPT
(4) Prepare for App Store submission
Triggers: "ChatGPT app", "Apps SDK", "build for ChatGPT",
"ChatGPT integration", "MCP server for ChatGPT", "submit to ChatGPT"
license: MIT
compatibility: |
Requires Node.js 18+, npm. Network access needed for testing with ngrok.
Intended for Claude Code and similar filesystem-based agents.
metadata:
author: Bayram Annakov (onsa.ai)
version: "1.0.0"
category: development
allowed-tools: Bash(npm:*) Bash(npx:*) Bash(node:*) Bash(ngrok:*) Read Write Edit Glob Grep
---
# ChatGPT App Builder
Build production-ready ChatGPT Apps from concept to App Store submission.
## Quick Start
```
New app? → Start at Phase 1 (Fit Evaluation)
Have app-spec.md? → Start at Phase 3 (Implementation)
App built? → Start at Phase 4 (Testing)
Ready to ship? → Start at Phase 5 (Deployment)
```
---
## Phase 1: Fit Evaluation
**Goal**: Determine if a ChatGPT App is right for this product.
### Step 1: Gather Context
Ask the user:
1. What does your product do?
2. Who are your users?
3. What API/data does it expose?
4. What actions can users take?
### Step 2: Apply Know/Do/Show Framework
Evaluate against three value pillars (see [fit_evaluation.md](references/fit_evaluation.md)):
| Pillar | Question | Strong Signal |
|--------|----------|---------------|
| **Know** | Does it provide data ChatGPT lacks? | Live prices, user-specific data, internal metrics |
| **Do** | Can it take real actions? | Create, update, delete, send, schedule |
| **Show** | Can it display better than text? | Lists, charts, maps, media galleries |
**Minimum requirement**: At least one pillar must be strong.
### Step 3: Check Blockers
Review [fit_evaluation.md](references/fit_evaluation.md) for:
- Prohibited categories (gambling, adult, crypto speculation)
- Data restrictions (no PCI, PHI, SSN, API keys)
- Age requirements (13+ audience)
### Step 4: Create Golden Prompt Set
Draft prompts for discovery testing:
- **5 direct prompts**: Explicitly name your product ("Show my TaskFlow tasks")
- **5 indirect prompts**: Describe intent without naming ("What should I work on?")
- **3 negative prompts**: Similar but shouldn't trigger ("Create a reminder")
### Step 5: Write app-spec.md
Create the specification file:
```markdown
# [Product Name] ChatGPT App Spec
## Product Context
- Name: [Product name]
- API Base: [API URL]
- Auth: [Bearer token / OAuth / None]
## Value Proposition
- Know: [What data does it provide?]
- Do: [What actions can it take?]
- Show: [What UI is needed?]
## Golden Prompts
### Direct (should trigger)
1. ...
### Indirect (should trigger)
1. ...
### Negative (should NOT trigger)
1. ...
```
**Output**: `app-spec.md` in project directory
---
## Phase 2: App Design
**Goal**: Define complete technical specification.
### Step 1: Define Tools (2-5)
Follow one-job-per-tool principle. See [chatgpt_app_best_practices.md](references/chatgpt_app_best_practices.md).
For each tool, specify:
```yaml
name: service_verb_noun # e.g., taskflow_get_tasks
title: Human Readable Name
description: Use this when the user wants to... [be specific]
annotations:
readOnlyHint: true/false
destructiveHint: true/false
openWorldHint: true/false
inputSchema:
param1: type (required/optional)
param2: enum["a", "b", "c"]
outputStructure:
content: [text summary for model]
structuredContent: {machine-readable data}
_meta: {widget-only data}
```
### Step 2: Decide Widget Needs
Does the app need custom UI?
| Use Case | Widget Needed? | Component Type |
|----------|----------------|----------------|
| Task list with checkboxes | Yes | List with actions |
| Data display only | Maybe | Could use text |
| Maps, charts, media | Yes | Specialized |
| Multi-step workflow | Yes | Stateful widget |
See [widget_development.md](references/widget_development.md) for patterns.
### Step 3: Plan Authentication
If accessing user-specific data or write operations, auth is required.
See [oauth_integration.md](references/oauth_integration.md) for:
- Well-known endpoint setup
- Provider-specific guides (Auth0, Stytch)
- Tool-level securitySchemes
### Step 4: Update app-spec.md
Add technical specification:
```markdown
## Tools
### 1. service_get_items
- **Annotations**: readOnlyHint: true
- **Input**: { status?: "active" | "completed", limit?: number }
- **Output**:
- content: "Found N items"
- structuredContent: { items: [...] }
- _meta: { fullData: [...] }
### 2. service_create_item
- **Annotations**: openWorldHint: true
- **Input**: { title: string, description?: string }
- **Output**: { id, title, created_at }
## Widget
- Type: List with action buttons
- Display modes: inline, fullscreen
- State: { selectedId, filter }
## Authentication
- Required: Yes
- Provider: Auth0
- Scopes: read:items, write:items
```
**Output**: Updated `app-spec.md` with full technical spec
---
## Phase 3: Implementation
**Goal**: Generate complete working project.
### Step 1: Initialize Project
Copy from assets and customize:
```bash
# Project structure
myapp-chatgpt/
├── package.json
├── tsconfig.json
├── src/
│ ├── index.ts # MCP server entry
│ ├── tools/ # Tool handlers
│ ├── widget/ # Widget source
│ └── types/ # TypeScript types
└── scripts/
└── build-widget.ts # Widget bundler
```
See [node_chatgpt_app.md](references/node_chatgpt_app.md) for complete patterns.
### Step 2: Implement MCP Server
Key components (from assets/server/):
1. **HTTP server with SSE transport** (required for ChatGPT Apps):
```typescript
import { Server } from "@modelcontextprotocol/sdk/server/index.js";
import { SSEServerTransport } from "@modelcontextprotocol/sdk/server/sse.js";
// GET /mcp - SSE stream connection
// POST /mcp/messages - Message handling
```
2. **Tool definitions with JSON Schema**:
```typescript
const tools: Tool[] = [{
name: "service_get_items",
title: "Get Items",
description: "Use this when the user wants to see items...",
inputSchema: { type: "object", properties: {...} },
_meta: {
"openai/outputTemplate": "ui://widget/app.html",
"openai/widgetAccessible": true
},
annotations: { readOnlyHint: true, destructiveHint: false, openWorldHint: false }
}];
```
3. **Handler registration**:
```typescript
server.setRequestHandler(ListToolsRequestSchema, async () => ({ tools }));
server.setRequestHandler(CallToolRequestSchema, async (request) => {
const { name, arguments: args } = request.params;
// Handle tool calls...
return {
content: [{ type: "text", text: `Found ${items.length} items` }],
structuredContent: { items: items.slice(0, 10) },
_meta: { fullItems: items }
};
});
```
### Step 3: Implement Widget
Key patterns (from assets/widget/):
```typescript
// Access data
const output = window.openai.toolOutput;
const meta = window.openai.toolResponseMetadata;
// Invoke tools
await window.openai.callTool("service_action", { id: "123" });
// Persist state
window.openai.setWidgetState({ selectedId: "123" });
// Layout control
window.openai.notifyIntrinsicHeight(400);
await window.openai.requestDisplayMode({ mode: "fullscreen" });
```
See [widget_development.md](references/widget_development.md) for React hooks and patterns.
### Step 4: Build
```bash
npm install
npm run build # Compiles server + bundles widget
```
### Step 5: Implementation Checklist
Before moving to testing, verify:
#### Widget Requirements
- [ ] Uses Apps SDK UI design tokens (see [apps_sdk_ui_tokens.md](references/apps_sdk_ui_tokens.md))
- [ ] Implements dark mode with CSS variable architecture
- [ ] Uses LoadingDots pattern for loading states (see [widget_ui_patterns.md](references/widget_ui_patterns.md))
- [ ] Calls `notifyIntrinsicHeight()` after all DOM changes
- [ ] Includes copy button feedback for copyable content
- [ ] Has show more/less for long lists (>3 items)
- [ ] Works on mobile (test at 375px width)
- [ ] Loading UI guards against re-initialization (see [widget_loading_patterns.md](references/widget_loading_patterns.md))
- [ ] SVG animations use `.style` property, not `setAttribute()` (see [widget_development.md](references/widget_development.md#common-widget-gotchas))
#### Security Requirements
- [ ] All user input is validated (see [security_patterns.md](references/security_patterns.md))
- [ ] HTML output uses safe DOM methods (textContent, createElement)
- [ ] External image URLs are proxied with domain whitelist and size limits (200KB)
- [ ] Rate limiting is implemented per session with LRU eviction
#### Server Requirements
- [ ] `/.well-known/openai-apps-challenge` endpoint returns challenge token
- [ ] `/privacy` endpoint returns HTML privacy policy
- [ ] `/terms` endpoint returns HTML terms of service
- [ ] `/mcp` endpoint handles SSE connections
- [ ] `/health` or `/` returns health check JSON
- [ ] CORS configured for ChatGPT domains only
- [ ] Security headers set on all responses
- [ ] **Session routing uses direct lookup by sessionId** (CRITICAL - see [troubleshooting.md](references/troubleshooting.md#critical-multi-connection-session-routing))
- [ ] Response size under 300KB total (remove duplicates, limit images)
#### Production Readiness (if deploying to production)
- [ ] OAuth tokens stored in database, not in-memory (see [oauth_integration.md](references/oauth_integration.md#production-considerations-token-storage))
- [ ] Mutation tools include idempotency checks (see [chatgpt_app_best_practices.md](references/chatgpt_app_best_practices.md#idempotency-keys))
- [ ] Disambiguation pattern for multi-match scenarios (see [chatgpt_app_best_practices.md](references/chatgpt_app_best_practices.md#disambiguation-pattern))
- [ ] Confirmation receipts for all mutations (see [chatgpt_app_best_practices.md](references/chatgpt_app_best_practices.md#confirmation-receipts))
**Output**: Complete project in working directory
---
## Phase 4: Testing
**Goal**: Verify the app works correctly.
### Step 1: Local Testing with MCP Inspector
```bash
# Terminal 1: Start server
npm run dev
# Server runs at http://localhost:8000
# Terminal 2: Run inspector
npx @modelcontextprotocol/inspector@latest http://localhost:8000/mcp
```
Verify:
- [ ] All tools appear in inspector
- [ ] Tool calls return expected structure
- [ ] Widget renders without errors
### Step 2: Create HTTPS Tunnel
```bash
ngrok http 8000
# Copy the https://xxx.ngrok.app URL
```
### Step 3: Create ChatGPT Connector
1. Go to ChatGPT → Settings → Connectors
2. Enable Developer Mode (Settings → Apps & Connectors → Advanced)
3. Create new connector:
- Name: Your app name
- Description: From app-spec.md
- URL: `https://xxx.ngrok.app/mcp`
4. Click Create and verify tools appear
### Step 4: Test Golden Prompts
In a new ChatGPT conversation:
1. Enable your connector (+ button → More → select connector)
2. Test each golden prompt from app-spec.md
3. Verify:
- [ ] Direct prompts trigger correctly
- [ ] Indirect prompts trigger correctly
- [ ] Negative prompts do NOT trigger
- [ ] Widget renders properly
- [ ] Actions work (if applicable)
### Step 5: Iterate
If issues found:
1. Fix code
2. Rebuild: `npm run build`
3. Refresh connector in ChatGPT settings
4. Re-test
See [troubleshooting.md](references/troubleshooting.md) for common issues and solutions.
**Output**: Working app tested in ChatGPT
---
## Phase 5: Deployment & Submission
**Goal**: Ship to production and App Store.
### Step 1: Deploy to Production
Generate deployment configs from assets/deploy/:
**Fly.io** (recommended):
```bash
fly launch
fly deploy
```
**Vercel/Cloudflare**: Ensure streaming HTTP support.
### Step 2: Update Connector
1. Replace ngrok URL with production URL
2. Verify connection in ChatGPT settings
### Step 3: Pre-Submission Checklist
See [submission_requirements.md](references/submission_requirements.md):
**Required**:
- [ ] Organization verified on OpenAI Platform
- [ ] All tools have clear descriptions
- [ ] Annotations correct (readOnlyHint, destructiveHint, openWorldHint)
- [ ] No prohibited content/commerce
- [ ] No restricted data collection
- [ ] Widget renders on mobile
- [ ] Test credentials with sample data prepared
**If auth required**:
- [ ] Well-known endpoints accessible
- [ ] Test account credentials documented
- [ ] OAuth flow completes successfully
### Step 4: Submit
1. Go to platform.openai.com/apps-manage
2. Enter MCP server URL
3. Add OAuth metadata (if applicable)
4. Complete submission form
5. Submit for review
### Step 5: Post-Submission
- Monitor email for review status
- Address any reviewer feedback
- Click Publish after approval
**Output**: App live in ChatGPT App Store
---
## External Resources
- [OpenAI Apps SDK Docs](https://developers.openai.com/apps-sdk)
- [Apps SDK Examples](https://github.com/openai/openai-apps-sdk-examples)
- [Apps SDK UI Kit](https://openai.github.io/apps-sdk-ui)
- [MCP Protocol Spec](https://modelcontextprotocol.io)
Name Size