import tensorflow as tf from keras_core.backend.config import floatx from keras_core.random.seed_generator import SeedGenerator from keras_core.random.seed_generator import draw_seed from keras_core.random.seed_generator import make_default_seed def tf_draw_seed(seed): # TF ops only accept int32/64 seeds but our base seed is uint32. return tf.cast(draw_seed(seed), dtype="int32") def normal(shape, mean=0.0, stddev=1.0, dtype=None, seed=None): """Draw random samples from a normal (Gaussian) distribution. Args: shape: The shape of the random values to generate. mean: Floats, defaults to 0. Mean of the random values to generate. stddev: Floats, defaults to 1. Standard deviation of the random values to generate. dtype: Optional dtype of the tensor. Only floating point types are supported. If not specified, `keras.backend.floatx()` is used, which defaults to `float32` unless you configured it otherwise (via `keras.backend.set_floatx(float_dtype)`). seed: A Python integer or instance of `keras_core.backend.SeedGenerator`. Used to make the behavior of the initializer deterministic. Note that an initializer seeded with an integer or None (unseeded) will produce the same random values across multiple calls. To get different random values across multiple calls, use as seed an instance of `keras_core.backend.SeedGenerator`. """ dtype = dtype or floatx() seed = tf_draw_seed(seed) return tf.random.stateless_normal( shape=shape, mean=mean, stddev=stddev, dtype=dtype, seed=seed ) def uniform(shape, minval=0.0, maxval=1.0, dtype=None, seed=None): """Draw samples from a uniform distribution. The generated values follow a uniform distribution in the range `[minval, maxval)`. The lower bound `minval` is included in the range, while the upper bound `maxval` is excluded. For floats, the default range is `[0, 1)`. For ints, at least `maxval` must be specified explicitly. Args: shape: The shape of the random values to generate. minval: Floats, defaults to 0. Lower bound of the range of random values to generate (inclusive). maxval: Floats, defaults to 1. Upper bound of the range of random values to generate (exclusive). dtype: Optional dtype of the tensor. Only floating point types are supported. If not specified, `keras.backend.floatx()` is used, which defaults to `float32` unless you configured it otherwise (via `keras.backend.set_floatx(float_dtype)`) seed: A Python integer or instance of `keras_core.backend.SeedGenerator`. Used to make the behavior of the initializer deterministic. Note that an initializer seeded with an integer or None (unseeded) will produce the same random values across multiple calls. To get different random values across multiple calls, use as seed an instance of `keras_core.backend.SeedGenerator`. """ dtype = dtype or floatx() seed = tf_draw_seed(seed) return tf.random.stateless_uniform( shape=shape, minval=minval, maxval=maxval, dtype=dtype, seed=seed, ) def truncated_normal(shape, mean=0.0, stddev=1.0, dtype=None, seed=None): """Draw samples from a truncated normal distribution. The values are drawn from a normal distribution with specified mean and standard deviation, discarding and re-drawing any samples that are more than two standard deviations from the mean. Args: shape: The shape of the random values to generate. mean: Floats, defaults to 0. Mean of the random values to generate. stddev: Floats, defaults to 1. Standard deviation of the random values to generate. dtype: Optional dtype of the tensor. Only floating point types are supported. If not specified, `keras.backend.floatx()` is used, which defaults to `float32` unless you configured it otherwise (via `keras.backend.set_floatx(float_dtype)`) seed: A Python integer or instance of `keras_core.backend.SeedGenerator`. Used to make the behavior of the initializer deterministic. Note that an initializer seeded with an integer or None (unseeded) will produce the same random values across multiple calls. To get different random values across multiple calls, use as seed an instance of `keras_core.backend.SeedGenerator`. """ dtype = dtype or floatx() seed = tf_draw_seed(seed) return tf.random.stateless_truncated_normal( shape=shape, mean=mean, stddev=stddev, dtype=dtype, seed=seed ) def dropout(inputs, rate, noise_shape=None, seed=None): seed = tf_draw_seed(seed) return tf.nn.experimental.stateless_dropout( inputs, rate=rate, noise_shape=noise_shape, seed=seed, )