loading…
Search for a command to run...
loading…
An MCP server that enables RAG-powered AI chat integration for websites by crawling content, building local vector stores, and generating embeddable chat widget
An MCP server that enables RAG-powered AI chat integration for websites by crawling content, building local vector stores, and generating embeddable chat widgets. It simplifies the setup of local chat servers with support for various LLM and embedding providers.
An MCP server that adds RAG-powered AI chat to any website. One command from Claude Code.
Tell Claude Code "add AI chat to mysite.com" and it will crawl your content, build a local vector store, spin up a chat server, and hand you an embed snippet. No cloud infra. No database. Just one API key.
You: "Set up AI chat for mybakery.com using this FAQ and menu content"
Claude: I'll set up RAG-powered chat for mybakery.com.
[1/4] ragchat_setup
Splitting content into sections...
Generating embeddings for 12 documents...
Domain "mybakery.com" configured with 12 documents.
[2/4] ragchat_test
Query: "What are your hours?"
Reply: "We're open Monday-Saturday 7am-6pm, and Sunday 8am-2pm."
RAG Sources: mybakery.com-3 (0.91), mybakery.com-7 (0.84)
Latency: 340ms
[3/4] ragchat_serve
Chat server running at http://localhost:3456
POST /chat ready.
[4/4] ragchat_widget
Generated embed code. Paste this into your HTML:
<script src="http://localhost:3456/widget.js"></script>
You: Done. Live chat on my site in under 60 seconds.
1. Clone and build
git clone https://github.com/gogabrielordonez/mcp-ragchat
cd mcp-ragchat
npm install && npm run build
2. Configure Claude Code (~/.claude/mcp.json)
{
"mcpServers": {
"ragchat": {
"command": "node",
"args": ["/absolute/path/to/mcp-ragchat/dist/mcp-server.js"],
"env": {
"OPENAI_API_KEY": "sk-..."
}
}
}
}
3. Use it
Open Claude Code and say:
"Add AI chat to mysite.com. Here's the content: [paste your markdown]"
Claude handles the rest.
| Tool | What it does |
|---|---|
ragchat_setup |
Seed a knowledge base from markdown content. Each ## section becomes a searchable document with vector embeddings. |
ragchat_test |
Send a test message to verify RAG retrieval and LLM response quality. |
ragchat_serve |
Start a local HTTP chat server with CORS and input sanitization. |
ragchat_widget |
Generate a self-contained <script> tag -- a floating chat bubble, no dependencies. |
ragchat_status |
List all configured domains with document counts and config details. |
+------------------+
| Your Markdown |
+--------+---------+
|
ragchat_setup
|
+------------v-------------+
| Local Vector Store |
| ~/.mcp-ragchat/domains/ |
| vectors.json |
| config.json |
+------------+-------------+
|
User Question |
| |
+------v------+ +------v------+
| Embedding | | Cosine |
| Provider +->+ Similarity |
+-------------+ +------+------+
|
Top 3 chunks
|
+----------v-----------+
| System Prompt |
| + RAG Context |
| + User Message |
+----------+-----------+
|
+----------v-----------+
| LLM Provider |
+----------+-----------+
|
Reply
Everything runs locally. No cloud infrastructure. Bring your own API key.
| Provider | Env Var | Default Model |
|---|---|---|
| OpenAI | OPENAI_API_KEY |
gpt-4o-mini |
| Anthropic | ANTHROPIC_API_KEY |
claude-sonnet-4-5-20250929 |
| Google Gemini | GEMINI_API_KEY |
gemini-2.0-flash |
| Provider | Env Var | Default Model |
|---|---|---|
| OpenAI | OPENAI_API_KEY |
text-embedding-3-small |
| Google Gemini | GEMINI_API_KEY |
text-embedding-004 |
| AWS Bedrock | AWS_REGION + IAM |
amazon.titan-embed-text-v2:0 |
Override defaults with LLM_MODEL and EMBEDDING_MODEL environment variables.
~/.mcp-ragchat/domains/
mysite.com/
config.json -- system prompt, settings
vectors.json -- documents + embedding vectors
<script> tag. No frameworks, no build step.Issues and pull requests are welcome.
Need multi-tenancy, security guardrails, audit trails, and managed infrastructure? Check out Supersonic -- the enterprise AI platform built on the same RAG pipeline.
MIT License -- Gabriel Ordonez
Добавь это в claude_desktop_config.json и перезапусти Claude Desktop.
{
"mcpServers": {
"mcp-ragchat": {
"command": "npx",
"args": []
}
}
}