Working with multiple Decision
Optimization scenarios
Last updated: Aug 06, 2024
Decision Optimization notebook multiple scenarios
You can generate multiple scenarios to test your model against a wide range of data and
understand how robust the model is.
This example steps you through the process to generate multiple scenarios with a model. This
makes it possible to test the performance of the model against multiple randomly generated data
sets. It's important in practice to check the robustness of a model against a wide range of data.
This helps ensure that the model performs well in potentially stochastic real-world conditions.
The example is the StaffPlanning model in the DO-samples.
The example is structured as follows:
The model StaffPlanning contains a default scenario based on two default
data sets, along with five additional scenarios based on randomized data sets.
The Python notebookCopyAndSolveScenarios contains the random generator to create the new scenarios in
the StaffPlanning model.
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