Fit the Model
Given the historic data which records the outcome we wish to predict (rain_tomorrow) we can fit a model based on that data so as to predict the outcome for new data.
The model will be built on a random sample of 70% (123,722) of the observations. This is the training dataset.
For the demo command the model is built interactively.
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