--- title: DataVec Normalization short_title: Normalization description: Preparing data in the right shape and range for learning. category: DataVec weight: 5 --- ## Why normalize? Neural networks work best when the data they’re fed is normalized, constrained to a range between -1 and 1. There are several reasons for that. One is that nets are trained using gradient descent, and their activation functions usually having an active range somewhere between -1 and 1. Even when using an activation function that doesn’t saturate quickly, it is still good practice to constrain your values to this range to improve performance. ## Available preprocessors {{autogenerated}}