from keras.src import ops from keras.src.api_export import keras_export from keras.src.layers.merging.base_merge import Merge @keras_export("keras.layers.Minimum") class Minimum(Merge): """Computes elementwise minimum on a list of inputs. It takes as input a list of tensors, all of the same shape, and returns a single tensor (also of the same shape). Examples: >>> input_shape = (2, 3, 4) >>> x1 = np.random.rand(*input_shape) >>> x2 = np.random.rand(*input_shape) >>> y = keras.layers.Minimum()([x1, x2]) Usage in a Keras model: >>> input1 = keras.layers.Input(shape=(16,)) >>> x1 = keras.layers.Dense(8, activation='relu')(input1) >>> input2 = keras.layers.Input(shape=(32,)) >>> x2 = keras.layers.Dense(8, activation='relu')(input2) >>> # equivalent to `y = keras.layers.minimum([x1, x2])` >>> y = keras.layers.Minimum()([x1, x2]) >>> out = keras.layers.Dense(4)(y) >>> model = keras.models.Model(inputs=[input1, input2], outputs=out) """ def _merge_function(self, inputs): return self._apply_merge_op_and_or_mask(ops.minimum, inputs) @keras_export("keras.layers.minimum") def minimum(inputs, **kwargs): """Functional interface to the `keras.layers.Minimum` layer. Args: inputs: A list of input tensors , all of the same shape. **kwargs: Standard layer keyword arguments. Returns: A tensor as the elementwise product of the inputs with the same shape as the inputs. Examples: >>> input_shape = (2, 3, 4) >>> x1 = np.random.rand(*input_shape) >>> x2 = np.random.rand(*input_shape) >>> y = keras.layers.minimum([x1, x2]) Usage in a Keras model: >>> input1 = keras.layers.Input(shape=(16,)) >>> x1 = keras.layers.Dense(8, activation='relu')(input1) >>> input2 = keras.layers.Input(shape=(32,)) >>> x2 = keras.layers.Dense(8, activation='relu')(input2) >>> y = keras.layers.minimum([x1, x2]) >>> out = keras.layers.Dense(4)(y) >>> model = keras.models.Model(inputs=[input1, input2], outputs=out) """ return Minimum(**kwargs)(inputs)