In this chapter, we will cover the following recipes:
- Building a linear classifier using support vector machines (SVMs)
 - Building a nonlinear classifier using SVMs
 - Tackling class imbalance
 - Extracting confidence measurements
 - Finding optimal hyperparameters
 - Building an event predictor
 - Estimating traffic
 - Simplifying a machine learning workflow using TensorFlow
 - Implementing the stacking method