# spark-control A browser-based control panel for a dual-DGX-Spark vLLM cluster. Designed to run as a [StartOS 0.4](https://docs.start9.com/packaging/0.4.0.x/) package on a Start9 server on the same LAN as the Sparks. > **If you've just received this package from someone**, start with [HANDOFF.md](./HANDOFF.md) — it has the prereq checklist and a step-by-step install guide written for a fresh user. ## What it does - Shows which LLM is currently loaded on the cluster (`:8888/v1/models`). - Click to swap to a different model — stops the current one, launches the new one, streams logs to the UI until `Application startup complete.` appears. - Surfaces health for Parakeet (STT, `:8000`) and Kokoro (TTS, `:8880`) on Spark 2. - Proxies OpenAI-compatible chat-completions, transcribe, diarize, and TTS through one trusted host so external apps only need to know about Spark Control. ## Architecture ``` [Browser/phone] ──► [StartOS reverse proxy] ──► [spark-control container] │ (SSH over LAN) ▼ [Spark 1] ──► launch-cluster.sh │ ▼ [Spark 2] ``` Two layers in this repo: - `image/` — a self-contained FastAPI app + static UI. Runs anywhere with `uvicorn` and an SSH client. Useful for development. - `package/` — a thin StartOS 0.4 wrapper that packages the image, exposes the UI on the LAN, and gives the user actions to configure SSH access to the Sparks. ## Quick start (local dev, no StartOS yet) ```bash cd image python3 -m venv .venv && source .venv/bin/activate pip install -e . export SPARK1_HOST= export SPARK1_USER= export SPARK2_HOST= export SPARK2_USER= export SSH_KEY_PATH= uvicorn app.server:app --host 0.0.0.0 --port 9999 --reload ``` Open . > **Note:** prefer the **IP** for Spark 1 over a `.local` hostname. mDNS can resolve to IPv6 first, and `httpx` will hang on it because vLLM only binds IPv4. ## Build the StartOS package ```bash cd package npm i # one-time make x86 # produces spark-control_x86_64.s9pk (~55 MB) # or make aarch64 # for ARM-based Start9 servers ``` Requires [`start-cli`](https://docs.start9.com/latest/developer-guide/sdk/installing-the-sdk), Node ≥ 22, Docker. The build runs `tsc` + `ncc` for the TS bundle, then `docker build` on `image/Dockerfile`, then `start-cli s9pk pack` to produce the `.s9pk`. To sideload onto your Start9: `make install` (needs `host:` set in `~/.startos/config.yaml`), or upload the `.s9pk` via the Start9 web UI's sideload feature. ## Post-install setup (one-time per Start9 install) 1. Open the Spark Control service → **Actions** → **Show Public Key** → copy the produced one-liner. 2. Run that one-liner from any machine that already has SSH access to your Sparks. It appends the package's pubkey to `~/.ssh/authorized_keys` on each Spark. 3. **Actions** → **Configure Sparks** → enter your Spark 1 / Spark 2 IPs and the SSH username you use to log into them. 4. Start the service. Open the Web UI — current model + health should show within ~5 s. See [HANDOFF.md](./HANDOFF.md) for a fuller prereq checklist and the hardware-side setup required *before* this package is useful. ## Repo layout - `image/` — Docker image source (FastAPI app + `models.yaml`) - `package/` — StartOS 0.4 package source - `HANDOFF.md` — prereqs + first-time install guide for a fresh user - `runbook.md` — operating notes - `known-issues.md` — known quirks and workarounds - `LICENSE` — MIT ## Service discovery API Other services on your LAN can hit `GET /api/endpoints` to learn where the current model lives without hardcoding Spark IPs. Stable JSON shape: ```json { "vllm": { "ready": true, "base_url": "http://:8888/v1", "model": "RedHatAI/Qwen3.6-35B-A3B-NVFP4", "openai_compat": true }, "parakeet":{ "ready": true, "base_url": "http://:8000", "kind": "stt", "model": "nvidia/parakeet-tdt-0.6b-v3" }, "kokoro": { "ready": true, "base_url": "http://:8880", "kind": "tts" } } ``` `base_url` is filled in whenever Configure Sparks has been completed (even if the underlying service isn't currently up). Pair the URL with `ready: true` to safely route traffic. ## Reporting failures from external apps Spark Control polls every 5 s, so a brief blip in Parakeet/Kokoro/vLLM availability can slip between polls and never make it into the connectivity log. To capture short failures, an external app (e.g. Open WebUI) can POST whenever a call fails (or succeeds): ```bash curl -X POST http:///api/health-event \ -H 'content-type: application/json' \ -d '{ "service": "parakeet", "ok": false, "source": "open-webui", "error": "HTTP 503", "ms": 420 }' ``` Fields: `service` (required), `ok` (required), `source` (optional, free-form), `error` (optional), `ms` (optional latency). Each POST appends a `report` event to the connectivity log alongside the polling-based transition events. ## Status **v0.2.3 / s9pk version 0.13.0:4** — installed and verified on a Start9 server. Five bundled LLMs in the catalog (qwen3-vl, gemma4, qwen36, qwen3-235b-fp8, qwen2.5-72b), plus any custom models added through the UI. ### What v0.2 added on top of v0.1 - **Service discovery API** (`/api/endpoints`) for other LAN services - **Kokoro-82M TTS** replaces Magpie/Riva NIM as the default TTS backend (v0.14.0). Magpie's decoder had a ~30-50% truncation rate on multi-sentence inputs and ate 49 GB of GPU memory; Kokoro is 24/24 reliable at every input length tested, uses 1.3 GB GPU, and renders in ~1s. See HANDOFF.md and the release notes for the migration story. - **Always-on services panel** with Start/Stop/Restart for Parakeet + Kokoro, plus per-service host configuration in Configure Sparks (so they can live on Spark 1, Spark 2, or anywhere) - **Model download** from the dashboard — paste an HF repo, pick solo or cluster, watch percent progress with bytes/rate/ETA. After completion, an "Add to catalog" dialog appears pre-filled. - **spark-vllm-docker update check** — banner shows "N commits behind upstream"; Apply Update runs `git pull && ./build-and-copy.sh -c` over SSH with a streamed log - **Per-model Advanced settings** — knobs for max context, GPU memory %, and three optimization toggles (fastsafetensors, prefix caching, FP8 KV cache). Persisted to `/data/models-overrides.yaml` so they survive package updates. Bundled and custom models alike. - **Diarization with speaker fingerprints** via Sortformer + TitaNet, exposed at `/api/audio/diarize-chunk` for chunked workflows - **OpenAI chat-completions proxy** (`/v1/chat/completions`, `/v1/completions`) — forwards to the loaded vLLM so external apps need only one trusted host v0.3+ roadmap (loose): richer dashboard (SSH/GPU/tokens-per-sec), Open WebUI deep-link integration, optional auth, multi-cluster.