Machine Learning Weather Forecast Model

A new forecast model (ML Weather) has been introduced in demand planning which will calculate the forecast using machine learning and weather forecast information. This new forecast model involves communication with API’s outside of IFS Cloud and once setup this is a completely autonomous process. The steps of communication are as follows.

For this functionaliy to work both Demand Planner and Machine Learning Engine needs to be setup and configured. Machine Learning Engine will get setup during the sales part installation. Below shows the setup required for Demand Planner.

Demand Planner Setup

Note: The daily execution time of this job needs to be synced with Machine Learning Job configuration. Which means machine learning jobs should be configured to run after completing the Aggregate Daily Job in Demand Planner.

Note: SendAllForecastParts in Advance Server Parameters can be used to submit forecast parts regardless of the forecast model used.

Permission Set for ML integration

DEMAND_ML permission set should be assigned to the user used in ML engine, in order to communicate with Demand Plan Server.

Typical Job Flow Setup

Note: This means that, once a new ML Weather forecast part is selected, in the worst case scenario it would take up to 7 days to get fetched in to the Machine Learning Engine and thereby to generate predications based on weather data.