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Configuring global variables at the project level

PreviousDeleting Project(s)NextWorking on a project

Last updated 24 days ago

Global variables are defined at the project level. Once defined, the variables can be used to store artifacts and models built on the training dataset in a project. You can reuse the key value of the global variable to configure values during scenario execution. You can store the models and artifacts created for a particular segment in the configured values at the scenario level.

The global variables can also be configured in a transform within a recipe to execute the recipe in a flow only if the condition is satisfied.

The global variables section can be viewed on the platform only after creating a project.

To configure global variables in a project:

  1. Select a project in which you want to configure the global variables.

  2. Click the ellipsis icon on the project card and select Project settings. The Project Details page is displayed.

  3. Add the key value pair in the Global variables section.

Note: To add multiple key-value pairs use the + icon corresponding to each field. You can delete a key-value pair, using the delete icon.

  1. Click SAVE.

Global Variables Config