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ci(agent): publish the GPU agent image (build-agent job)
Build + push fabledcurator-agent alongside web/ml (own CUDA + onnxruntime-gpu
image, context=agent/, same tag cadence: main → :main/:latest/:c-<sha>, tag →
:<version>). So the operator PULLS + runs it on the GPU machine instead of
building locally. README switched to docker pull.

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
Claude-Session: https://claude.ai/code/session_01Ttrj5P7upUTueSfoJcxEqa
2026-06-29 14:26:03 -04:00

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# FabledCurator GPU agent
A desktop-GPU worker that embeds characters (CCIP) + figure crops for
FabledCurator. It talks to FC **only over HTTP** — it leases jobs, fetches image
pixels, runs the models on your GPU, and posts results back. Your FC database and
Redis stay private; the agent never touches them.
You run it when you want a burst and stop it to reclaim the card.
## 1. Get a token
In FC: **Settings → Tagging → GPU agent → Generate token** (or Rotate). Copy it.
## 2. Pull (CI publishes it alongside the web/ml images)
```sh
docker pull git.fabledsword.com/bvandeusen/fabledcurator-agent:latest
```
> Local build for development instead: `docker build -t fc-gpu-agent agent/`
## 3. Run (on the machine with the GPU)
```sh
docker run --rm --gpus all -p 8770:8770 \
-e FC_URL=http://curator.traefik.internal \
-e FC_TOKEN=<paste-the-token> \
-v fc-agent-models:/models \
git.fabledsword.com/bvandeusen/fabledcurator-agent:latest
```
Then open <http://localhost:8770> — the control page. Click **Start** to begin
draining the queue; **Pause**/**Stop** to yield the GPU. The `-v fc-agent-models`
volume caches the downloaded ONNX models so restarts are fast.
Kick off a backfill from FC (**GPU agent card → Queue character embedding**), then
watch the queue counts on the control page (or FC's card) drain.
## Config (env)
| var | default | meaning |
|---|---|---|
| `FC_URL` | `http://localhost:8000` | FC base URL |
| `FC_TOKEN` | — | the bearer token (required) |
| `AGENT_ID` | `desktop-agent` | identifies this agent's leases |
| `BATCH_SIZE` | `4` | jobs leased per round (still processed one at a time) |
| `CCIP_MODEL` | imgutils default | CCIP model name |
| `DETECTOR_LEVEL` | `m` | person-detector size: `n` < `s` < `m` < `x` |
| `POLL_IDLE_SECONDS` | `10` | wait between empty leases |
## ⚠️ Verify on first run
This part can't be CI-tested (no GPU/models in CI), so confirm against your
installed `dghs-imgutils` (`pip show dghs-imgutils`) — see `fc_agent/models.py`:
- `imgutils.detect.detect_person(image, level=...)` returns
`[((x0,y0,x1,y1), label, score), ...]`.
- `imgutils.metrics.ccip_extract_feature(image, model=...)` returns a vector
(768-d for caformer). If you want the F1-0.94 variant, set
`CCIP_MODEL=ccip-caformer_b36-24` (verify the exact string in imgutils).
If FC's matcher under/over-fires, tune the cosine threshold in
`backend/app/services/ml/ccip.py` (`DEFAULT_SIM_THRESHOLD`) and use
`GET /api/ccip/overview` + `/api/ccip/images/<id>` to spot-check.
## CPU fallback
Swap `onnxruntime-gpu``onnxruntime` in `requirements.txt` and drop `--gpus all`
to grind it slowly on the server instead. Same agent, no card.