Build and run a model server locally via Docker Compose, then test it with curl. Use when the engineer wants to test a model server locally before committing.
Installation
Mit Codex oder Claude installieren Kopieren Sie diesen Prompt, fügen Sie ihn in Codex, Claude oder einen anderen Assistant ein und lassen Sie die Skill-Seite prüfen und installieren.
Build and run a model server locally via Docker Compose, then test it with curl. Use when the engineer wants to test a model server locally before committing.
argument-hint
[service-name]
allowed-tools
["Bash(docker *)","Bash(curl *)","Read"]
Local Test — Inference Services
Build, run, and test a model server locally.
Steps
Ensure a .env file exists in the repo root with PATH_TO_<MODEL>_MODEL=/local/path/to/model.
Build the image: docker compose build <service>.
Start the service: docker compose up <service>.
Once it's running, send a test request. The endpoint is POST /v1/models/<model-name>:predict where <model-name> is the MODEL_NAME env var set for that service in docker-compose.yml. Check src/models/<service>/model_server/model.py for the expected input schema. Example for revert-risk language agnostic model: curl localhost:8080/v1/models/revertrisk-language-agnostic:predict -X POST -d '{"lang":"en","rev_id":12345}' -H "Content-type: application/json".
To stop: Ctrl+C or docker compose down.
Notes
ARM Macs: If the service doesn't start, add platform: linux/amd64 to the service in docker-compose.yml.
The service listens on localhost:8080 by default. Check docker-compose.yml if the port is mapped differently. If :8080 is already in use, stop the other service or remap the port.
Model files must be downloaded separately from https://analytics.wikimedia.org/published/wmf-ml-models/ and placed at the path referenced in .env.
To run detached: docker compose up -d <service>. Logs: docker compose logs <service>.
Input
$ARGUMENTS — the docker-compose service name (e.g., revertrisk-language-agnostic, articlequality, reference-need).