
MCP-Audio Plugin
A voice-to-text transcription service that converts audio files to transcripts using SiliconFlow, supporting both multipart/form-data and base64 formats.
README
MCP-Audio Plugin
mcp-audio
is an AIO-2030 compliant MCP plugin that performs voice-to-text transcription using the Audio speech recognition API.
It exposes the identify_voice
method via both multipart/form-data
and base64
formats, supports the AIO tools.call
protocol, and returns JSON-RPC structured outputs.
Features
- Fully AIO-compliant MCP plugin (
/tools.call
,/help
) - Converts
.wav
/.mp3
audio files to transcripts using SiliconFlow - API key managed securely via
.env
file - Docker-compatible and minimal dependencies
- Registration-ready for AIO endpoint registry
Setup (Local)
1. Clone and Install
git clone git@github.com:AIO-2030/mcp-audio.git
cd mcp-audio
python -m venv venv && source venv/bin/activate
pip install -r requirements.txt
2. Add .env file
cp .env.example .env
Set your audio URL and API key:
AUDIO_URL=https--xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx
API_KEY=sk-xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx
3. Run the MCP server
python src/mcp_server.py
4. Docker
4.1 Build and Run
docker build -t mcp-audio .
docker run --env-file .env -p 8080:8080 mcp-audio
API Overview
POST /api/v1/mcp/voice_model
Upload audio file directly. Response:
{
"transcript": "hello world",
"confidence": 0.91,
"audio_hash": "a1b2c3..."
}
POST /api/v1/mcp/tools.call (AIO Protocol)
JSON-RPC format with base64-encoded audio. Response:
{
"method": "tools.call",
"params": {
"method": "identify_voice",
"inputs": [
{
"type": "audio",
"value": "<base64-audio>"
}
]
}
}
GET /api/v1/mcp/help
Auto-serves contents of mcp_audio_registration.json. Used by Queen AI for MCP discovery and service indexing.
Testing Tools
Base64 Voice Test
python test/test_audio_base64.py
Health Check
python health_check.py
MCP Registration (to AIO Endpoint Canister)
./register_mcp.sh
Requires jq, dfx, and a running endpoint_registry canister.
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