Deploying a Model as a Service

Deploying a Model

You can deploy a model as a real-time service that provides a real-time test UI and monitoring capabilities. After the model is trained, you can deploy a Successful version with ideal accuracy as a service. The procedure is as follows:

  1. On the Train Model tab page, wait until the training status changes to Completed. Click Deploy in the Version Manager pane.
  2. In the displayed Deploy dialog box, set Specifications, and click OK to deploy the model as a real-time service.
    • Specifications: The GPU specifications are better, and the CPU specifications are more cost-effective.
    • Compute Nodes: The default value is 1 and cannot be changed.
    • Auto Stop: After this function is enabled and the auto stop time is set, a service automatically stops at the specified time. If this function is disabled, a real-time service will continue to run. The auto stop function is enabled by default. The default value is 1 hour later.

      The options are 1 hour later, 2 hours later, 4 hours later, 6 hours later, and Custom. If you select Custom, enter any integer from 1 to 24 in the text box on the right.

  3. After the model deployment is started, view the deployment status on the Service Deployment page.

    It takes a certain period of time to deploy a model. When the status in the Version Manager pane changes from Deploying to Running, the deployment is complete.

Testing the Service