AssemblyAI MCP Server

AssemblyAI MCP Server

Enables AI assistants to transcribe audio files from URLs or local paths using AssemblyAI's services, with support for speaker diarization, language detection, and asynchronous job management through a standardized MCP interface.

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AssemblyAI MCP Server

A Model Context Protocol (MCP) server that provides access to AssemblyAI's transcription services. This server enables AI assistants to transcribe audio files and manage transcription jobs through a standardized interface.

Vibe Code Spectrum

On a scale of 1 to 10, 10 being the most vibey, this is a 9.

Features

  • Audio transcription from URLs and local files
  • Asynchronous job submission for large files
  • Transcript retrieval and status checking
  • Resource access to transcript data
  • Type-safe implementation with Zod validation
  • Error handling and graceful shutdown

Installation

  1. Clone or create this project directory
  2. Install dependencies:
    npm install
    
  3. Set up your AssemblyAI API key (see Configuration section)
  4. Build the TypeScript code:
    npm run build
    

Configuration

You need an AssemblyAI API key to use this server. Get one from AssemblyAI.

Set the environment variable:

export ASSEMBLYAI_API_KEY="your-api-key-here"

Or create a .env file:

ASSEMBLYAI_API_KEY=your-api-key-here

Usage

Running the Server

You can run the AssemblyAI MCP server in several ways:

Direct execution with npx/pnpm dlx (recommended)

# Using npx
npx assembly-ai-mcp@latest

# Using pnpm dlx
pnpm dlx assembly-ai-mcp@latest

Adding to Claude Code

claude mcp add assembly-ai-mcp --scope user -- pnpm dlx assembly-ai-mcp@latest

Local development

Start the MCP server:

npm start

For development with auto-rebuild:

npm run watch

MCP Tools

The server provides the following tools:

transcribe_url

Transcribe audio from a remote URL and wait for completion.

Parameters:

  • audioUrl (string, required): URL of the audio file
  • options (object, optional): Transcription options
    • speaker_labels (boolean): Enable speaker diarization
    • language_code (string): Specify language (e.g., "en")
    • punctuate (boolean): Add punctuation
    • format_text (boolean): Format text for readability

Example:

{
  "audioUrl": "https://example.com/audio.mp3",
  "options": {
    "speaker_labels": true,
    "punctuate": true
  }
}

transcribe_file

Transcribe audio from a local file path and wait for completion.

Parameters:

  • filePath (string, required): Local path to the audio file
  • options (object, optional): Same as transcribe_url

Example:

{
  "filePath": "/path/to/audio.wav",
  "options": {
    "language_code": "en"
  }
}

submit_transcription

Submit audio for transcription without waiting for completion. Returns immediately with a job ID.

Parameters:

  • audio (string, required): URL or local file path
  • options (object, optional): Same transcription options

Example:

{
  "audio": "https://example.com/large-audio.mp3",
  "options": {
    "speaker_labels": true
  }
}

get_transcript

Retrieve the status and results of a transcription job.

Parameters:

  • transcriptId (string, required): The transcript ID returned from previous calls

Example:

{
  "transcriptId": "1234567890"
}

MCP Resources

transcript://{id}

Access transcript data directly by ID. Provides structured JSON with all transcript information.

Example URI: transcript://1234567890

Returns:

{
  "id": "1234567890",
  "status": "completed",
  "text": "Hello, this is a test transcription...",
  "confidence": 0.95,
  "words": [...],
  "utterances": [...],
  "created": "2024-01-01T00:00:00Z",
  "completed": "2024-01-01T00:01:30Z"
}

Integration Examples

With Claude Desktop

Add to your claude_desktop_config.json:

{
  "mcpServers": {
    "assemblyai": {
      "command": "node",
      "args": ["/path/to/assemblyai-mcp-server/dist/index.js"],
      "env": {
        "ASSEMBLYAI_API_KEY": "your-api-key-here"
      }
    }
  }
}

With Other MCP Clients

The server uses stdio transport, so it's compatible with any MCP client that supports this transport method.

Workflow Examples

Quick Transcription

  1. Use transcribe_url or transcribe_file for immediate results
  2. The tool waits for completion and returns the full transcript

Async Processing

  1. Use submit_transcription for large files
  2. Use get_transcript to check status and retrieve results
  3. Use the transcript:// resource for structured data access

Speaker Identification

{
  "audioUrl": "https://example.com/meeting.mp3",
  "options": {
    "speaker_labels": true,
    "punctuate": true,
    "format_text": true
  }
}

Error Handling

The server provides detailed error messages for common issues:

  • Missing API key: Server won't start without ASSEMBLYAI_API_KEY
  • Invalid audio URLs: Clear error messages for inaccessible files
  • File not found: Helpful messages for local file issues
  • API errors: AssemblyAI error messages passed through
  • Invalid transcript IDs: Clear feedback for non-existent transcripts

Development

Building

npm run build

Development Mode

npm run dev

Watch Mode

npm run watch

Requirements

  • Node.js 18.0.0 or higher
  • AssemblyAI API key
  • MCP-compatible client

License

MIT License

Support

For AssemblyAI API issues, visit AssemblyAI Documentation. For MCP protocol questions, see Model Context Protocol.

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