from typing import List, Optional, Dict, cast import tensorflow as tf from tensorflow.keras.layers import Layer from .._backends import UnknownSize from . import RearrangeMixin, ReduceMixin from ._einmix import _EinmixMixin from ..einops import TransformRecipe, _reconstruct_from_shape_uncached __author__ = 'Alex Rogozhnikov' def _compute_output_shape(recipe: TransformRecipe, input_shape) -> List[Optional[int]]: input_shape = [UnknownSize() if d is None else int(d) for d in input_shape] init_shapes, reduced_axes, axes_reordering, added_axes, final_shape = \ _reconstruct_from_shape_uncached(recipe, input_shape) output_shape: List[Optional[int]] = [None if isinstance(d, UnknownSize) else int(d) for d in final_shape] return output_shape class Rearrange(RearrangeMixin, Layer): def compute_output_shape(self, input_shape): return _compute_output_shape(self.recipe(), input_shape) def call(self, inputs): return self._apply_recipe(inputs) def get_config(self): return {'pattern': self.pattern, **self.axes_lengths} class Reduce(ReduceMixin, Layer): def compute_output_shape(self, input_shape): return _compute_output_shape(self.recipe(), input_shape) def call(self, inputs): return self._apply_recipe(inputs) def get_config(self): return {'pattern': self.pattern, 'reduction': self.reduction, **self.axes_lengths} class EinMix(_EinmixMixin, Layer): def _create_parameters(self, weight_shape, weight_bound, bias_shape, bias_bound): self.weight = tf.Variable(tf.random_uniform_initializer(-weight_bound, weight_bound)(shape=weight_shape), trainable=True) if bias_shape is not None: self.bias = tf.Variable(tf.random_uniform_initializer(-bias_bound, bias_bound)(shape=bias_shape), trainable=True) else: self.bias = None def _create_rearrange_layers(self, pre_reshape_pattern: Optional[str], pre_reshape_lengths: Optional[Dict], post_reshape_pattern: Optional[str], post_reshape_lengths: Optional[Dict], ): self.pre_rearrange = None if pre_reshape_pattern is not None: self.pre_rearrange = Rearrange(pre_reshape_pattern, **cast(dict, pre_reshape_lengths)) self.post_rearrange = None if post_reshape_pattern is not None: self.post_rearrange = Rearrange(post_reshape_pattern, **cast(dict, post_reshape_lengths)) def build(self, input_shape): pass def call(self, inputs): if self.pre_rearrange is not None: inputs = self.pre_rearrange(inputs) result = tf.einsum(self.einsum_pattern, inputs, self.weight) if self.bias is not None: result = result + self.bias if self.post_rearrange is not None: result = self.post_rearrange(result) return result def get_config(self): return {'pattern': self.pattern, 'weight_shape': self.weight_shape, 'bias_shape': self.bias_shape, **self.axes_lengths}