# Copyright (c) 2019 PaddlePaddle Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. """Transformer encoder.""" from __future__ import absolute_import from __future__ import division from __future__ import print_function from functools import partial from functools import reduce import numpy as np import paddle.fluid as fluid import paddle.fluid.layers as layers from paddle.fluid.layer_helper import LayerHelper def layer_norm(x, begin_norm_axis=1, epsilon=1e-6, param_attr=None, bias_attr=None): helper = LayerHelper('layer_norm', **locals()) mean = layers.reduce_mean(x, dim=begin_norm_axis, keep_dim=True) shift_x = layers.elementwise_sub(x=x, y=mean, axis=0) variance = layers.reduce_mean(layers.square(shift_x), dim=begin_norm_axis, keep_dim=True) r_stdev = layers.rsqrt(variance + epsilon) norm_x = layers.elementwise_mul(x=shift_x, y=r_stdev, axis=0) param_shape = [reduce(lambda x, y: x * y, norm_x.shape[begin_norm_axis:])] param_dtype = norm_x.dtype scale = helper.create_parameter( attr=param_attr, shape=param_shape, dtype=param_dtype, default_initializer=fluid.initializer.Constant(1.)) bias = helper.create_parameter( attr=bias_attr, shape=param_shape, dtype=param_dtype, is_bias=True, default_initializer=fluid.initializer.Constant(0.)) out = layers.elementwise_mul(x=norm_x, y=scale, axis=-1) out = layers.elementwise_add(x=out, y=bias, axis=-1) return out def multi_head_attention(queries, keys, values, attn_bias, d_key, d_value, d_model, n_head=1, dropout_rate=0., cache=None, param_initializer=None, name='multi_head_att'): """ Multi-Head Attention. Note that attn_bias is added to the logit before computing softmax activiation to mask certain selected positions so that they will not considered in attention weights. """ keys = queries if keys is None else keys values = keys if values is None else values if not (len(queries.shape) == len(keys.shape) == len(values.shape) == 3): raise ValueError( "Inputs: quries, keys and values should all be 3-D tensors.") def __compute_qkv(queries, keys, values, n_head, d_key, d_value): """ Add linear projection to queries, keys, and values. """ q = layers.fc(input = queries, size = d_key * n_head, num_flatten_dims = 2, param_attr = fluid.ParamAttr( name = name + '_query_fc.w_0', initializer = param_initializer), bias_attr = name + '_query_fc.b_0') k = layers.fc(input = keys, size = d_key * n_head, num_flatten_dims = 2, param_attr = fluid.ParamAttr( name = name + '_key_fc.w_0', initializer = param_initializer), bias_attr = name + '_key_fc.b_0') v = layers.fc(input = values, size = d_value * n_head, num_flatten_dims = 2, param_attr = fluid.ParamAttr( name = name + '_value_fc.w_0', initializer = param_initializer), bias_attr = name + '_value_fc.b_0') return q, k, v def __split_heads(x, n_head): """ Reshape the last dimension of inpunt tensor x so that it becomes two dimensions and then transpose. Specifically, input a tensor with shape [bs, max_sequence_length, n_head * hidden_dim] then output a tensor with shape [bs, n_head, max_sequence_length, hidden_dim]. """ hidden_size = x.shape[-1] # The value 0 in shape attr means copying the corresponding dimension # size of the input as the output dimension size. reshaped = layers.reshape( x = x, shape = [0, 0, n_head, hidden_size // n_head], inplace=False) # permuate the dimensions into: # [batch_size, n_head, max_sequence_len, hidden_size_per_head] return layers.transpose(x=reshaped, perm=[0, 2, 1, 3]) def __combine_heads(x): """ Transpose and then reshape the last two dimensions of inpunt tensor x so that it becomes one dimension, which is reverse to __split_heads. """ if len(x.shape) == 3: return x if len(x.shape) != 4: raise ValueError("Input(x) should be a 4-D Tensor.") trans_x = layers.transpose(x, perm=[0, 2, 1, 3]) # The value 0 in shape attr means copying the corresponding dimension # size of the input as the output dimension size. return layers.reshape( x = trans_x, shape = [0, 0, trans_x.shape[2] * trans_x.shape[3]], inplace = False) def scaled_dot_product_attention(q, k, v, attn_bias, d_key, dropout_rate): """ Scaled Dot-Product Attention """ scaled_q = layers.scale(x = q, scale = d_key**-0.5) product = layers.matmul(x = scaled_q, y = k, transpose_y = True) if attn_bias: product += attn_bias weights = layers.softmax(product) if dropout_rate: weights = layers.dropout( weights, dropout_prob=dropout_rate, dropout_implementation="upscale_in_train", is_test=False) out = layers.matmul(weights, v) return out q, k, v = __compute_qkv(queries, keys, values, n_head, d_key, d_value) if cache is not None: # use cache and concat time steps # Since the inplace reshape in __split_heads changes the shape of k and # v, which is the cache input for next time step, reshape the cache # input from the previous time step first. k = cache["k"] = layers.concat( [layers.reshape( cache["k"], shape=[0, 0, d_model]), k], axis=1) v = cache["v"] = layers.concat( [layers.reshape( cache["v"], shape=[0, 0, d_model]), v], axis=1) q = __split_heads(q, n_head) k = __split_heads(k, n_head) v = __split_heads(v, n_head) ctx_multiheads = scaled_dot_product_attention(q, k, v, attn_bias, d_key, dropout_rate) out = __combine_heads(ctx_multiheads) # Project back to the model size. proj_out = layers.fc(input = out, size = d_model, num_flatten_dims = 2, param_attr=fluid.ParamAttr( name = name + '_output_fc.w_0', initializer = param_initializer), bias_attr = name + '_output_fc.b_0') return proj_out def positionwise_feed_forward(x, d_inner_hid, d_hid, dropout_rate, hidden_act, param_initializer=None, name='ffn'): """ Position-wise Feed-Forward Networks. This module consists of two linear transformations with a ReLU activation in between, which is applied to each position separately and identically. """ hidden = layers.fc(input=x, size=d_inner_hid, num_flatten_dims=2, act=hidden_act, param_attr=fluid.ParamAttr( name=name + '_fc_0.w_0', initializer=param_initializer), bias_attr=name + '_fc_0.b_0') if dropout_rate: hidden = layers.dropout( hidden, dropout_prob=dropout_rate, dropout_implementation="upscale_in_train", is_test = False) out = layers.fc(input = hidden, size = d_hid, num_flatten_dims = 2, param_attr=fluid.ParamAttr( name = name + '_fc_1.w_0', initializer = param_initializer), bias_attr = name + '_fc_1.b_0') return out def pre_post_process_layer(prev_out, out, process_cmd, dropout_rate=0., name=''): """ Add residual connection, layer normalization and droput to the out tensor optionally according to the value of process_cmd. This will be used before or after multi-head attention and position-wise feed-forward networks. """ for cmd in process_cmd: if cmd == "a": # add residual connection out = out + prev_out if prev_out else out elif cmd == "n": # add layer normalization out_dtype = out.dtype if out_dtype == fluid.core.VarDesc.VarType.FP16: out = layers.cast(x = out, dtype = "float32") out = layer_norm( out, begin_norm_axis=len(out.shape) - 1, param_attr=fluid.ParamAttr( name = name + '_layer_norm_scale', initializer = fluid.initializer.Constant(1.)), bias_attr=fluid.ParamAttr( name = name + '_layer_norm_bias', initializer = fluid.initializer.Constant(0.))) if out_dtype == fluid.core.VarDesc.VarType.FP16: out = layers.cast(x = out, dtype = "float16") elif cmd == "d": # add dropout if dropout_rate: out = layers.dropout( out, dropout_prob = dropout_rate, dropout_implementation = "upscale_in_train", is_test = False) return out pre_process_layer = partial(pre_post_process_layer, None) post_process_layer = pre_post_process_layer def encoder_layer(enc_input, attn_bias, n_head, d_key, d_value, d_model, d_inner_hid, prepostprocess_dropout, attention_dropout, relu_dropout, hidden_act, preprocess_cmd="n", postprocess_cmd="da", param_initializer=None, name=''): """The encoder layers that can be stacked to form a deep encoder. This module consits of a multi-head (self) attention followed by position-wise feed-forward networks and both the two components companied with the post_process_layer to add residual connection, layer normalization and droput. """ attn_output = multi_head_attention( pre_process_layer( enc_input, preprocess_cmd, prepostprocess_dropout, name=name + '_pre_att'), None, None, attn_bias, d_key, d_value, d_model, n_head, attention_dropout, param_initializer = param_initializer, name = name + '_multi_head_att') attn_output = post_process_layer( enc_input, attn_output, postprocess_cmd, prepostprocess_dropout, name = name + '_post_att') ffd_output = positionwise_feed_forward( pre_process_layer( attn_output, preprocess_cmd, prepostprocess_dropout, name = name + '_pre_ffn'), d_inner_hid, d_model, relu_dropout, hidden_act, param_initializer = param_initializer, name = name + '_ffn') return post_process_layer( attn_output, ffd_output, postprocess_cmd, prepostprocess_dropout, name = name + '_post_ffn') def encoder(enc_input, attn_bias, n_layer, n_head, d_key, d_value, d_model, d_inner_hid, prepostprocess_dropout, attention_dropout, relu_dropout, hidden_act, preprocess_cmd="n", postprocess_cmd="da", param_initializer=None, name='', return_all = False): """ The encoder is composed of a stack of identical layers returned by calling encoder_layer. """ enc_outputs = [] for i in range(n_layer): enc_output = encoder_layer( enc_input, attn_bias, n_head, d_key, d_value, d_model, d_inner_hid, prepostprocess_dropout, attention_dropout, relu_dropout, hidden_act, preprocess_cmd, postprocess_cmd, param_initializer = param_initializer, name = name + '_layer_' + str(i)) enc_input = enc_output if i < n_layer - 1: enc_outputs.append(enc_output) enc_output = pre_process_layer( enc_output, preprocess_cmd, prepostprocess_dropout, name="post_encoder") enc_outputs.append(enc_output) if not return_all: return enc_output else: return enc_output, enc_outputs