roshan-harf-mcp
A self-hostable MCP server for Roshan AI's Persian speech service, Harf, enabling transcription, forced alignment, real-time streaming, and speaker analysis through natural language.
README
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<img src="assets/icons/harf.svg" height="200" alt="Harf icon"/>
roshan-harf-mcp
A self-hostable Model Context Protocol server for Roshan AI's Persian speech service, Harf (حرف).
<sub>Transcription (ASR) · forced alignment · real-time streaming · speaker verification, identification, diarization & indexing.<br/>Unofficial community integration, built from the public docs at <a href="https://docs.roshan-ai.ir">docs.roshan-ai.ir</a>.</sub>
</div>
What is this?
Harf (حرف) is Roshan AI's native Persian speech-to-text engine. It turns audio, video, and even live streams into Persian text with high accuracy, and ships a family of speaker-analysis endpoints on top.
roshan-harf-mcp wraps that HTTP/WebSocket API as MCP tools so Claude — or any MCP client — can
use Harf as a first-class capability. Harf is token-authenticated and self-hosted; organizations
typically run many independent instances (per region, per tenant, dev/staging/prod). This server
treats named instances as a core concept: every tool accepts an optional instance argument and
routes the request to that deployment.
Features
- Full Harf coverage — transcription (URL + upload + async polling), alignment, live streaming, and all four speaker tasks.
- Many self-hosted instances — route any call to a named Harf deployment; secrets never leave the process.
- Three transports —
stdio(default),sse, andstreamable-http. - Safe by default — http(s) URL validation, list-size clamps, and token redaction in logs/errors.
- Batteries included — Docker image, Docker Compose, Helm chart, raw Kubernetes manifests, and a Terraform module.
Installation
# From the project directory (roshan-harf-mcp/)
python -m venv .venv && . .venv/bin/activate
pip install -e ".[dev]" # dev extras: pytest, pytest-asyncio, respx, ruff
Requires Python >= 3.11.
Quick start
# Point at the public (or your self-hosted) Harf and run over stdio
export ROSHAN_HARF_BASE_URL="https://harf.roshan-ai.ir"
export ROSHAN_HARF_TOKEN="<your-token>"
python -m roshan_harf_mcp # stdio (default)
python -m roshan_harf_mcp --transport streamable-http --host 0.0.0.0 --port 8000
Request a
TOKEN_KEYfrom Roshan by emailing harf@roshan-ai.ir.
Configuration
Configuration is environment-driven (via pydantic-settings). Two styles are supported.
Shorthand (single instance)
| Variable | Description | Default |
|---|---|---|
ROSHAN_HARF_BASE_URL |
Base URL of the default Harf instance | https://harf.roshan-ai.ir |
ROSHAN_HARF_TOKEN |
API token for the default instance (Authorization: Token …) |
(none) |
These synthesize an instance named default.
Multi-instance (nested)
Prefix ROSHAN_HARF__, nested delimiter __:
| Variable | Description | Default |
|---|---|---|
ROSHAN_HARF__INSTANCES__<NAME>__BASE_URL |
Base URL for instance <NAME> |
https://harf.roshan-ai.ir |
ROSHAN_HARF__INSTANCES__<NAME>__TOKEN |
Token for instance <NAME> |
(none) |
ROSHAN_HARF__INSTANCES__<NAME>__VERIFY_SSL |
Verify TLS for <NAME> |
true |
ROSHAN_HARF__INSTANCES__<NAME>__TIMEOUT |
Per-request timeout (seconds) | 60 |
ROSHAN_HARF__DEFAULT_INSTANCE |
Instance used when instance is omitted |
default |
ROSHAN_HARF__LOG_LEVEL |
Log level (DEBUG/INFO/WARNING/ERROR) |
INFO |
Example: two deployments with Tehran as the default:
export ROSHAN_HARF__INSTANCES__TEHRAN__BASE_URL="https://harf.tehran.example.ir"
export ROSHAN_HARF__INSTANCES__TEHRAN__TOKEN="tok-tehran"
export ROSHAN_HARF__INSTANCES__SHIRAZ__BASE_URL="https://harf.shiraz.example.ir"
export ROSHAN_HARF__INSTANCES__SHIRAZ__TOKEN="tok-shiraz"
export ROSHAN_HARF__DEFAULT_INSTANCE="tehran"
Then call any tool with instance="shiraz" to target that deployment, or use list_instances to
discover what's configured (it returns names + base URLs only, never tokens).
MCP client configuration
{
"mcpServers": {
"roshan-harf": {
"command": "python",
"args": ["-m", "roshan_harf_mcp"],
"env": {
"ROSHAN_HARF_BASE_URL": "https://harf.roshan-ai.ir",
"ROSHAN_HARF_TOKEN": "<your-token>"
}
}
}
}
Tool reference
All speech tools are prefixed harf_; meta tools are unprefixed. Every speech/health tool accepts an
optional instance argument.
| Tool | Harf endpoint | Purpose |
|---|---|---|
harf_transcribe |
POST /api/transcribe_files/ |
Transcribe audio/video by URL. wait=true blocks for the result; wait=false returns {state, task_ids} to poll. |
harf_transcribe_upload |
POST /api/transcribe_files/ (multipart) |
Transcribe a local file via upload (field media). |
harf_transcription_status |
POST /api/transcribe_files/ |
Poll async transcription tasks (PENDING/FAILURE/TIMEOUT). |
harf_align |
POST /api/alignment/ |
Force-align a known transcript to its audio → per-segment timestamps. |
harf_live_transcribe |
WS /ws_api/transcribe_files/wav/sync/ |
Stream a local WAV file for real-time transcription. |
harf_live_info |
WS /ws_api/transcribe_files/wav/sync/ |
Describe the live streaming protocol (resolved WS URL + messages). |
harf_speaker_verification |
POST /api/speaker_tasks/verification/ |
Verify a speaker vs. reference audio (threshold 0.65). |
harf_speaker_identification |
POST /api/speaker_tasks/identification/ |
Identify the most similar known speaker. |
harf_speaker_diarization |
POST /api/speaker_tasks/diarization/ |
"Who spoke when" segmentation with text. |
harf_speaker_indexing |
POST /api/speaker_tasks/indexing/ |
Label timestamped segments with known speakers. |
healthcheck |
GET /api/healthcheck/ |
Check that an instance is up and ready. |
list_instances |
(local) | List configured instances (names + base URLs only). |
roshan_harf_docs |
(local) | Offline documentation about Harf and these tools. |
Note: Harf wraps uncertain transcribed words in square brackets.
Async transcription pattern
harf_transcribe(media_urls=[...], wait=False) -> {state, task_ids}
harf_transcription_status(task_ids=[...]) -> {state} ... until the result is ready
Architecture
The MCP client speaks MCP to roshan-harf-mcp, which dispatches to focused tool modules. They share a
single RoshanClient (httpx + websockets) that talks to the Harf API with Authorization: Token.

Self-hosting & scaling
One stateless server process routes by instance to any number of self-hosted Harf deployments:

Because the server holds no per-request state, you can scale it horizontally behind a load balancer
(multiple Docker Compose replicas, a Kubernetes Deployment with an HPA, etc.). Run it with the
streamable-http transport for HTTP-based clients.
Request flow
A transcription request can be synchronous (wait=true) or asynchronous (wait=false, then poll with
harf_transcription_status). Live audio uses the WebSocket path instead.

The diagrams are generated with the
diagramspackage — seeassets/diagrams/generate_diagrams.py(make diagrams).
Deployment
A Docker image, Compose file, Helm chart, raw Kubernetes manifests, and a Terraform module are provided.
# Docker
docker build -t roshan-harf-mcp:0.1.0 .
docker run --rm -p 8000:8000 \
-e ROSHAN_HARF_BASE_URL="https://harf.roshan-ai.ir" \
-e ROSHAN_HARF_TOKEN="<token>" \
roshan-harf-mcp:0.1.0
# Docker Compose (two instances pre-wired)
docker compose up
See deploy/README.md for Helm, Kubernetes, and Terraform instructions.
Testing
python scripts/smoke_test.py # offline: build server, assert tools/instance schema
python examples/inspect_server.py # print catalog + registered tools
pytest -q # unit tests (HTTP mocked with respx)
ruff check src tests # lint
Live integration tests under tests/live/ are skipped unless ROSHAN_HARF_LIVE=1 and credentials
are set.
License
MIT. Unofficial, community-built integration. "Roshan", "Harf", and related marks belong to their respective owner and are used only to identify the upstream service.
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<img src="assets/icons/roshan.svg" alt="roshan-logo" width="40%"/>
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