[role="xpack"] [[stop-trained-model-deployment]] = Stop trained model deployment API [subs="attributes"] ++++ Stop trained model deployment ++++ Stops a trained model deployment. preview::[] [[stop-trained-model-deployment-request]] == {api-request-title} `POST _ml/trained_models//deployment/_stop` [[stop-trained-model-deployment-prereq]] == {api-prereq-title} Requires the `manage_ml` cluster privilege. This privilege is included in the `machine_learning_admin` built-in role. [[stop-trained-model-deployment-desc]] == {api-description-title} Deployment is required only for trained models that have a PyTorch `model_type`. [[stop-trained-model-deployment-path-params]] == {api-path-parms-title} ``:: (Required, string) include::{es-repo-dir}/ml/ml-shared.asciidoc[tag=model-id] [[stop-trained-model-deployment-query-params]] == {api-query-parms-title} `allow_no_match`:: (Optional, Boolean) include::{es-repo-dir}/ml/ml-shared.asciidoc[tag=allow-no-match-deployments] `force`:: (Optional, Boolean) If true, the deployment is stopped even if it is referenced by ingest pipelines. You can't use these pipelines until you restart the model deployment. //// [role="child_attributes"] [[stop-trained-model-deployment-results]] == {api-response-body-title} //// //// [[stop-trained-models-response-codes]] == {api-response-codes-title} //// //// [[stop-trained-model-deployment-example]] == {api-examples-title} ////