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The CRM Analytics app that you created to predict sales uplift volume contains preconfigured recipes that generate datasets and a model.

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The CRM Analytics app that you created to predict sales uplift volume contains preconfigured recipes that generate datasets and a model.
| Available in: Enterprise, Developer, Professional, and Unlimited Editions that have TPM Revenue Prediction and Trade Promotion Management enabled |
The CRM Analytics app installed based on the template configuration that you created contains this preconfigured recipe.
| RECIPE | DESCRIPTION | OUTPUT |
|---|---|---|
| Get Model and Dataset Details | This recipe combines promotional and non-promotional data, aggregates data by account and product category, records predictive model information with the current date, and creates a dataset to store this information. | Model and Dataset |
The CRM Analytics app installed based on the template configuration that you created contains the Sales Uplift Volume Predictions model. The Model and Dataset node of the Get Model and Dataset Details recipe uses this model to generate predictions on the number of sales units.

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