0 / 0
Saving scenarios for deployment from a Decision Optimization experiment
Last updated: Nov 21, 2024
Saving scenarios for deployment from a Decision Optimization experiment

After you build and solve your model in your Decision Optimization experiment, you are then ready to deploy the model. You can save both model and data in a scenario for deployment. The data types set in the Prepare data view and, if you set any run configuration parameters for that scenario, these parameters are also saved in the deployment.

Procedure

To save your model for deployment:

  1. In the Decision Optimization experiment UI, either from the Scenario or from the Overview pane, click the menu icon Scenario menu icon for the scenario that you want to deploy, and select Save for deployment
  2. Specify a name for your model and add a description, if needed, then click Next.
    1. Review the Input and Output schema and select the tables that you want to include in the schema.
    2. Review the Run parameters and add, modify, or delete any parameters as necessary.
    3. Review the Environment and Model files that are listed in the Review and save window.
      Any environment that you specified to run your model with is shown in this window. This environment is then used when you deploy your model in watsonx.ai Runtime (both when you save your model for deployment and when you promote it to your deployment space).
    4. Click Save.

Results

The model is then available in the Models section of your project, from where you can promote it to a deployment space.

Generative AI search and answer
These answers are generated by a large language model in watsonx.ai based on content from the product documentation. Learn more