# coding: utf-8 from __future__ import absolute_import from __future__ import division from __future__ import print_function import tensorflow as tf from utils import dtype def get_initializer(initializer, initializer_gain): tfdtype = tf.as_dtype(dtype.floatx()) if initializer == "uniform": max_val = initializer_gain return tf.random_uniform_initializer(-max_val, max_val, dtype=tfdtype) elif initializer == "normal": return tf.random_normal_initializer(0.0, initializer_gain, dtype=tfdtype) elif initializer == "normal_unit_scaling": return tf.variance_scaling_initializer(initializer_gain, mode="fan_avg", distribution="normal", dtype=tfdtype) elif initializer == "uniform_unit_scaling": return tf.variance_scaling_initializer(initializer_gain, mode="fan_avg", distribution="uniform", dtype=tfdtype) else: tf.logging.warn("Unrecognized initializer: %s" % initializer) tf.logging.warn("Return to default initializer: glorot_uniform_initializer") return tf.glorot_uniform_initializer(dtype=tfdtype) def scale_initializer(scale, initializer): """Rescale the value given by initializer""" tfdtype = tf.as_dtype(dtype.floatx()) def _initializer(shape, dtype=tfdtype, partition_info=None): value = initializer(shape, dtype=dtype, partition_info=partition_info) value *= scale return value return _initializer