Training your first model in Python
In the previous recipe, we generated a scatter plot diagram to explore the relationship between the two variables in the dataset. In this recipe, we will use the SageMaker Linear Learner built-in algorithm to build a linear regression model that predicts a professional's salary using the number of months of relevant managerial experience. This recipe aims to demonstrate how a SageMaker built-in algorithm is used in a ML experiment that involves the train-test split and running the training job:
Figure 1.37 shows us what we will do in this recipe. Using the DataFrame
loaded from the Visualizing and understanding your data in Python recipe, we will perform the train-test split and use the training dataset to train and build the model.
Getting ready
This recipe continues on from Visualizing and understanding...