# TensorFlow contrib layers. ## initializers.py Functions that produce variable initializer functions with signature: `foo(shape, dtype) : Tensor` These are typically consumed by functions in [layers.py](#layers.py). ## layers.py {#.py} Functions that produce layer operations and associated weight & bias variables. Signatures will vary for different functions, but they will often take many of these arguments. `foo(x, num_outputs, …, weight_init=, bias_init=, weight_regularizer=None, bias_regularizer=None, name=None) : Tensor` `x` is the input tensor. Weights and biases are added to `tf.GraphKeys.GLOBAL_VARIABLES` and `tf.GraphKeys.TRAINABLE_VARIABLES`. ## optimizers.py Functions that add optimization ops given `loss` and `global_step` tensors. ## regularizers.py Functions that produce weight regularization functions with signature `foo(weight_vars, name=None) : Operation` These are typically consumed by functions in [layers.py](#layers.py). ## summaries.py Functions that add summary ops to the standard `tf.GraphKeys.SUMMARIES` collection. They also avoid name conflicts in the summary key.