Pipeline
classkeras.layers.Pipeline(layers, name=None)
Applies a series of layers to an input.
This class is useful to build a preprocessing pipeline,
in particular an image data augmentation pipeline.
Compared to a Sequential
model, Pipeline
features
a few important differences:
Model
, just a plain layer.tf.data
, the pipeline will also
remain tf.data
compatible. That is to say,
the pipeline will not attempt to convert
its inputs to backend-native tensors
when in a tf.data context (unlike a Sequential
model).Example
from keras import layers
preprocessing_pipeline = layers.Pipeline([
layers.AutoContrast(),
layers.RandomZoom(0.2),
layers.RandomRotation(0.2),
])
# `ds` is a tf.data.Dataset
preprocessed_ds = ds.map(
preprocessing_pipeline,
num_parallel_calls=4,
)