def build_model(code_ids, token_ids, dim, max_seq, n_input_voca, n_output_voca): #W2 = tf.keras.layers.Dense(n_output_voca, use_bias=False) #W2 = K.random_normal_variable(shape=(n_output_voca, dim), mean=0, scale=1) np_val = np.reshape(np.random.normal(size=n_output_voca * dim), [n_output_voca, dim]) W2 = tf.constant(np_val, dtype=tf.float32) initializer_range = 0.1 embedding_table = tf.compat.v1.get_variable( name="embedding", shape=[n_input_voca, dim], initializer=create_initializer(initializer_range), dtype=tf.float32) h0 = tf.nn.embedding_lookup(params=embedding_table, ids=code_ids) h = tf.reshape(h0, [-1, dim]) h = tf.nn.l2_normalize(h, -1) W2 = tf.nn.l2_normalize(W2, -1) logits = tf.matmul(h, W2, transpose_b=True) logits_1 = tf.expand_dims(logits, 1) y = tf.one_hot(token_ids, depth=n_output_voca) #[batch, max_seq, n_output_voca] print("logits", logits.shape) print("y", y.shape) pos_val = logits_1 * y # [ batch, max_seq, voca] neg_val = logits - tf.reduce_sum(pos_val, axis=1) #[ batch, voca] t = tf.reduce_sum(pos_val, axis=2) # [batch, max_seq] correct_map = tf.expand_dims(t, 2) # [batch, max_seq, 1] print("correct_map", correct_map.shape) wrong_map = tf.expand_dims(neg_val, 1) # [batch, 1, voca] print(wrong_map.shape) t = wrong_map - correct_map + 1 print("t", t.shape) loss = tf.reduce_mean(tf.math.maximum(t, 0), axis=-1) mask = tf.cast(tf.not_equal(token_ids, 0), tf.float32) # batch, seq_len print("mask", mask.shape) loss = mask * loss loss = tf.reduce_sum(loss, axis=1) # over the sequence loss = tf.reduce_mean(loss) print("loss", loss.shape) return loss
def attention_layer_w_ext(from_tensor, to_tensor, attention_mask=None, num_attention_heads=1, size_per_head=512, ext_slice=None, # [Num_tokens, n_items, hidden_dim] query_act=None, key_act=None, value_act=None, attention_probs_dropout_prob=0.0, initializer_range=0.02, do_return_2d_tensor=False, batch_size=None, from_seq_length=None, to_seq_length=None): """Performs multi-headed attention from `from_tensor` to `to_tensor`. This is an implementation of multi-headed attention based on "Attention is all you Need". If `from_tensor` and `to_tensor` are the same, then this is self-attention. Each timestep in `from_tensor` attends to the corresponding sequence in `to_tensor`, and returns a fixed-with vector. This function first projects `from_tensor` into a "query" tensor and `to_tensor` into "key" and "value" tensors. These are (effectively) a list of tensors of length `num_attention_heads`, where each tensor is of shape [batch_size, seq_length, size_per_head]. Then, the query and key tensors are dot-producted and scaled. These are softmaxed to obtain attention probabilities. The value tensors are then interpolated by these probabilities, then concatenated back to a single tensor and returned. In practice, the multi-headed attention are done with transposes and reshapes rather than actual separate tensors. Args: from_tensor: float Tensor of shape [batch_size, from_seq_length, from_width]. to_tensor: float Tensor of shape [batch_size, to_seq_length, to_width]. attention_mask: (optional) int32 Tensor of shape [batch_size, from_seq_length, to_seq_length]. The values should be 1 or 0. The attention scores will effectively be set to -infinity for any positions in the mask that are 0, and will be unchanged for positions that are 1. num_attention_heads: int. Number of attention heads. size_per_head: int. Size of each attention head. query_act: (optional) Activation function for the query transform. key_act: (optional) Activation function for the key transform. value_act: (optional) Activation function for the value transform. attention_probs_dropout_prob: (optional) float. Dropout probability of the attention probabilities. initializer_range: float. Range of the weight initializer. do_return_2d_tensor: bool. If True, the output will be of shape [batch_size * from_seq_length, num_attention_heads * size_per_head]. If False, the output will be of shape [batch_size, from_seq_length, num_attention_heads * size_per_head]. batch_size: (Optional) int. If the input is 2D, this might be the batch size of the 3D version of the `from_tensor` and `to_tensor`. from_seq_length: (Optional) If the input is 2D, this might be the seq length of the 3D version of the `from_tensor`. to_seq_length: (Optional) If the input is 2D, this might be the seq length of the 3D version of the `to_tensor`. Returns: float Tensor of shape [batch_size, from_seq_length, num_attention_heads * size_per_head]. (If `do_return_2d_tensor` is true, this will be of shape [batch_size * from_seq_length, num_attention_heads * size_per_head]). Raises: ValueError: Any of the arguments or tensor shapes are invalid. """ def transpose_for_scores(input_tensor, batch_size, num_attention_heads, seq_length, width): output_tensor = tf.reshape( input_tensor, [batch_size, seq_length, num_attention_heads, width]) output_tensor = tf.transpose(output_tensor, [0, 2, 1, 3]) return output_tensor from_shape = get_shape_list(from_tensor, expected_rank=[2, 3]) to_shape = get_shape_list(to_tensor, expected_rank=[2, 3]) if len(from_shape) != len(to_shape): raise ValueError( "The rank of `from_tensor` must match the rank of `to_tensor`.") if len(from_shape) == 3: batch_size = from_shape[0] from_seq_length = from_shape[1] to_seq_length = to_shape[1] elif len(from_shape) == 2: if (batch_size is None or from_seq_length is None or to_seq_length is None): raise ValueError( "When passing in rank 2 tensors to attention_layer, the values " "for `batch_size`, `from_seq_length`, and `to_seq_length` " "must all be specified.") # Scalar dimensions referenced here: # B = batch size (number of sequences) # F = `from_tensor` sequence length # T = `to_tensor` sequence length # N = `num_attention_heads` # H = `size_per_head` from_tensor_2d = reshape_to_matrix(from_tensor) to_tensor_2d = reshape_to_matrix(to_tensor) def get_ext_slice(idx): return ext_slice[:, idx, :] print("from_tensor_2d ", from_tensor_2d.shape) #query_in = from_tensor_2d + get_ext_slice(EXT_QUERY_IN) query_in = from_tensor_2d # `query_layer` = [B*F, N*H] query_layer = tf.layers.dense( query_in, num_attention_heads * size_per_head, activation=query_act, name="query", kernel_initializer=create_initializer(initializer_range)) #query_layer = query_layer + get_ext_slice(EXT_QUERY_OUT) key_in = to_tensor_2d #key_in = to_tensor_2d + get_ext_slice(EXT_KEY_IN) # `key_layer` = [B*T, N*H] key_layer = tf.layers.dense( key_in, num_attention_heads * size_per_head, activation=key_act, name="key", kernel_initializer=create_initializer(initializer_range)) #key_layer = key_layer + get_ext_slice(EXT_KEY_OUT) value_in = to_tensor_2d #value_in = to_tensor_2d + get_ext_slice(EXT_VALUE_IN) # `value_layer` = [B*T, N*H] value_layer = tf.layers.dense( value_in, num_attention_heads * size_per_head, activation=value_act, name="value", kernel_initializer=create_initializer(initializer_range)) #value_layer = value_layer + get_ext_slice(EXT_VALUE_OUT) # `query_layer` = [B, N, F, H] query_layer = transpose_for_scores(query_layer, batch_size, num_attention_heads, from_seq_length, size_per_head) # `key_layer` = [B, N, T, H] key_layer = transpose_for_scores(key_layer, batch_size, num_attention_heads, to_seq_length, size_per_head) # Take the dot product between "query" and "key" to get the raw # attention scores. # `attention_scores` = [B, N, F, T] attention_scores = tf.matmul(query_layer, key_layer, transpose_b=True) attention_scores = tf.multiply(attention_scores, 1.0 / math.sqrt(float(size_per_head))) if attention_mask is not None: # `attention_mask` = [B, 1, F, T] attention_mask = tf.expand_dims(attention_mask, axis=[1]) # Since attention_mask is 1.0 for positions we want to attend and 0.0 for # masked positions, this operation will create a tensor which is 0.0 for # positions we want to attend and -10000.0 for masked positions. adder = (1.0 - tf.cast(attention_mask, tf.float32)) * -10000.0 # Since we are adding it to the raw scores before the softmax, this is # effectively the same as removing these entirely. attention_scores += adder # Normalize the attention scores to probabilities. # `attention_probs` = [B, N, F, T] attention_probs = tf.nn.softmax(attention_scores) # This is actually dropping out entire tokens to attend to, which might # seem a bit unusual, but is taken from the original Transformer paper. attention_probs = dropout(attention_probs, attention_probs_dropout_prob) # `value_layer` = [B, T, N, H] value_layer = tf.reshape( value_layer, [batch_size, to_seq_length, num_attention_heads, size_per_head]) # `value_layer` = [B, N, T, H] value_layer = tf.transpose(value_layer, [0, 2, 1, 3]) # `context_layer` = [B, N, F, H] context_layer = tf.matmul(attention_probs, value_layer) # `context_layer` = [B, F, N, H] context_layer = tf.transpose(context_layer, [0, 2, 1, 3]) if do_return_2d_tensor: # `context_layer` = [B*F, N*V] context_layer = tf.reshape( context_layer, [batch_size * from_seq_length, num_attention_heads * size_per_head]) else: # `context_layer` = [B, F, N*V] context_layer = tf.reshape( context_layer, [batch_size, from_seq_length, num_attention_heads * size_per_head]) return context_layer
def transformer_model(input_tensor, attention_mask=None, input_mask=None, hidden_size=768, num_hidden_layers=12, num_attention_heads=12, mr_layer=1, mr_num_route=10, mr_key_layer=0, intermediate_size=3072, intermediate_act_fn=gelu, hidden_dropout_prob=0.1, attention_probs_dropout_prob=0.1, initializer_range=0.02, is_training=True, do_return_all_layers=False): """Multi-headed, multi-layer Transformer from "Attention is All You Need". This is almost an exact implementation of the original Transformer encoder. See the original paper: https://arxiv.org/abs/1706.03762 Also see: https://github.com/tensorflow/tensor2tensor/blob/master/tensor2tensor/models/transformer.py Args: input_tensor: float Tensor of shape [batch_size, seq_length, hidden_size]. attention_mask: (optional) int32 Tensor of shape [batch_size, seq_length, seq_length], with 1 for positions that can be attended to and 0 in positions that should not be. hidden_size: int. Hidden size of the Transformer. num_hidden_layers: int. Number of layers (blocks) in the Transformer. num_attention_heads: int. Number of attention heads in the Transformer. intermediate_size: int. The size of the "intermediate" (a.k.a., feed forward) layer. intermediate_act_fn: function. The non-linear activation function to apply to the output of the intermediate/feed-forward layer. hidden_dropout_prob: float. Dropout probability for the hidden layers. attention_probs_dropout_prob: float. Dropout probability of the attention probabilities. initializer_range: float. Range of the initializer (stddev of truncated normal). do_return_all_layers: Whether to also return all layers or just the final layer. Returns: float Tensor of shape [batch_size, seq_length, hidden_size], the final hidden layer of the Transformer. Raises: ValueError: A Tensor shape or parameter is invalid. """ if hidden_size % num_attention_heads != 0: raise ValueError( "The hidden size (%d) is not a multiple of the number of attention " "heads (%d)" % (hidden_size, num_attention_heads)) attention_head_size = int(hidden_size / num_attention_heads) input_shape = get_shape_list(input_tensor, expected_rank=3) batch_size = input_shape[0] seq_length = input_shape[1] input_width = input_shape[2] initializer = create_initializer(initializer_range) ext_tensor = tf.get_variable("ext_tensor", shape=[mr_num_route, EXT_SIZE ,hidden_size], initializer=initializer, ) ext_tensor_inter = tf.get_variable("ext_tensor_inter", shape=[mr_num_route, intermediate_size], initializer=initializer, ) # The Transformer performs sum residuals on all layers so the input needs # to be the same as the hidden size. if input_width != hidden_size: raise ValueError("The width of the input tensor (%d) != hidden size (%d)" % (input_width, hidden_size)) # We keep the representation as a 2D tensor to avoid re-shaping it back and # forth from a 3D tensor to a 2D tensor. Re-shapes are normally free on # the GPU/CPU but may not be free on the TPU, so we want to minimize them to # help the optimizer. prev_output = reshape_to_matrix(input_tensor) all_layer_outputs = [] for layer_idx in range(num_hidden_layers): if layer_idx is not mr_layer: with tf.variable_scope("layer_%d" % layer_idx): layer_input = prev_output with tf.variable_scope("attention"): attention_heads = [] with tf.variable_scope("self"): attention_head = attention_layer( from_tensor=layer_input, to_tensor=layer_input, attention_mask=attention_mask, num_attention_heads=num_attention_heads, size_per_head=attention_head_size, attention_probs_dropout_prob=attention_probs_dropout_prob, initializer_range=initializer_range, do_return_2d_tensor=True, batch_size=batch_size, from_seq_length=seq_length, to_seq_length=seq_length) attention_heads.append(attention_head) attention_output = None if len(attention_heads) == 1: attention_output = attention_heads[0] else: # In the case where we have other sequences, we just concatenate # them to the self-attention head before the projection. attention_output = tf.concat(attention_heads, axis=-1) # Run a linear projection of `hidden_size` then add a residual # with `layer_input`. with tf.variable_scope("output"): attention_output = tf.layers.dense( attention_output, hidden_size, kernel_initializer=create_initializer(initializer_range)) attention_output = dropout(attention_output, hidden_dropout_prob) attention_output = layer_norm(attention_output + layer_input) # The activation is only applied to the "intermediate" hidden layer. with tf.variable_scope("intermediate"): intermediate_output = tf.layers.dense( attention_output, intermediate_size, activation=intermediate_act_fn, kernel_initializer=create_initializer(initializer_range)) # Down-project back to `hidden_size` then add the residual. with tf.variable_scope("output"): layer_output = tf.layers.dense( intermediate_output, hidden_size, kernel_initializer=create_initializer(initializer_range)) layer_output = dropout(layer_output, hidden_dropout_prob) layer_output = layer_norm(layer_output + attention_output) prev_output = layer_output all_layer_outputs.append(layer_output) if layer_idx == mr_key_layer: with tf.variable_scope("mr_key"): key_output = tf.layers.dense( intermediate_output, mr_num_route, kernel_initializer=create_initializer(initializer_range)) key_output = dropout(key_output, hidden_dropout_prob) if is_training: key = tf.random.categorical(key_output, 1) # [batch_size, 1] key = tf.reshape(key, [-1]) else: key = tf.math.argmax(key_output, axis=1) else: # Case MR layer with tf.variable_scope("layer_%d" % layer_idx): layer_input = prev_output ext_slice = tf.gather(ext_tensor, key) ext_interm_slice = tf.gather(ext_tensor_inter, key) print("ext_slice (batch*seq, ", ext_slice.shape) with tf.variable_scope("attention"): attention_heads = [] with tf.variable_scope("self"): attention_head = attention_layer_w_ext( from_tensor=layer_input, to_tensor=layer_input, attention_mask=attention_mask, ext_slice=ext_slice, num_attention_heads=num_attention_heads, size_per_head=attention_head_size, attention_probs_dropout_prob=attention_probs_dropout_prob, initializer_range=initializer_range, do_return_2d_tensor=True, batch_size=batch_size, from_seq_length=seq_length, to_seq_length=seq_length) #attention_head = attention_head + ext_slice[:,EXT_ATT_OUT,:] attention_heads.append(attention_head) attention_output = None if len(attention_heads) == 1: attention_output = attention_heads[0] else: # In the case where we have other sequences, we just concatenate # them to the self-attention head before the projection. attention_output = tf.concat(attention_heads, axis=-1) # Run a linear projection of `hidden_size` then add a residual # with `layer_input`. with tf.variable_scope("output"): attention_output = tf.layers.dense( attention_output, hidden_size, kernel_initializer=create_initializer(initializer_range)) attention_output = dropout(attention_output, hidden_dropout_prob) #attention_output = attention_output + ext_slice[:,EXT_ATT_PROJ,:] attention_output = layer_norm(attention_output + layer_input) # The activation is only applied to the "intermediate" hidden layer. with tf.variable_scope("intermediate"): intermediate_output = tf.layers.dense( attention_output, intermediate_size, activation=intermediate_act_fn, kernel_initializer=create_initializer(initializer_range)) intermediate_output = ext_interm_slice + intermediate_output # Down-project back to `hidden_size` then add the residual. with tf.variable_scope("output"): layer_output = tf.layers.dense( intermediate_output, hidden_size, kernel_initializer=create_initializer(initializer_range)) #layer_output = layer_output + ext_slice[:, EXT_LAYER_OUT,:] layer_output = dropout(layer_output, hidden_dropout_prob) layer_output = layer_norm(layer_output + attention_output) prev_output = layer_output all_layer_outputs.append(layer_output) if do_return_all_layers: final_outputs = [] for layer_output in all_layer_outputs: final_output = reshape_from_matrix(layer_output, input_shape) final_outputs.append(final_output) return final_outputs, key else: final_output = reshape_from_matrix(prev_output, input_shape) return final_output, key
def __init__(self, config, is_training, input_ids, input_mask=None, token_type_ids=None, use_one_hot_embeddings=True, scope=None): """Constructor for BertModel. Args: config: `BertConfig` instance. is_training: bool. rue for training model, false for eval model. Controls whether dropout will be applied. input_ids: int32 Tensor of shape [batch_size, seq_length]. input_mask: (optional) int32 Tensor of shape [batch_size, seq_length]. token_type_ids: (optional) int32 Tensor of shape [batch_size, seq_length]. use_one_hot_embeddings: (optional) bool. Whether to use one-hot word embeddings or tf.embedding_lookup() for the word embeddings. On the TPU, it is must faster if this is True, on the CPU or GPU, it is faster if this is False. scope: (optional) variable scope. Defaults to "bert". Raises: ValueError: The config is invalid or one of the input tensor shapes is invalid. """ config = copy.deepcopy(config) if not is_training: config.hidden_dropout_prob = 0.0 config.attention_probs_dropout_prob = 0.0 input_shape = get_shape_list(input_ids, expected_rank=2) batch_size = input_shape[0] seq_length = input_shape[1] if input_mask is None: input_mask = tf.ones(shape=[batch_size, seq_length], dtype=tf.int32) if token_type_ids is None: token_type_ids = tf.zeros(shape=[batch_size, seq_length], dtype=tf.int32) with tf.variable_scope(scope, default_name="bert"): with tf.variable_scope("embeddings"): # Perform embedding lookup on the word ids. (self.embedding_output, self.embedding_table) = embedding_lookup( input_ids=input_ids, vocab_size=config.vocab_size, embedding_size=config.hidden_size, initializer_range=config.initializer_range, word_embedding_name="word_embeddings", use_one_hot_embeddings=use_one_hot_embeddings) # Add positional embeddings and token type embeddings, then layer # normalize and perform dropout. self.embedding_output = embedding_postprocessor( input_tensor=self.embedding_output, use_token_type=True, token_type_ids=token_type_ids, token_type_vocab_size=config.type_vocab_size, token_type_embedding_name="token_type_embeddings", use_position_embeddings=True, position_embedding_name="position_embeddings", initializer_range=config.initializer_range, max_position_embeddings=config.max_position_embeddings, dropout_prob=config.hidden_dropout_prob) with tf.variable_scope("encoder"): # This converts a 2D mask of shape [batch_size, seq_length] to a 3D # mask of shape [batch_size, seq_length, seq_length] which is used # for the attention scores. attention_mask = create_attention_mask_from_input_mask( input_ids, input_mask) # Run the stacked transformer. # `sequence_output` shape = [batch_size, seq_length, hidden_size]. self.all_encoder_layers, key = transformer_model( input_tensor=self.embedding_output, attention_mask=attention_mask, input_mask=input_mask, hidden_size=config.hidden_size, num_hidden_layers=config.num_hidden_layers, num_attention_heads=config.num_attention_heads, is_training=is_training, mr_layer=config.mr_layer, mr_num_route=config.mr_num_route, mr_key_layer=config.mr_key_layer, intermediate_size=config.intermediate_size, intermediate_act_fn=get_activation(config.hidden_act), hidden_dropout_prob=config.hidden_dropout_prob, attention_probs_dropout_prob=config.attention_probs_dropout_prob, initializer_range=config.initializer_range, do_return_all_layers=True) self.key = key self.sequence_output = self.all_encoder_layers[-1] # The "pooler" converts the encoded sequence tensor of shape # [batch_size, seq_length, hidden_size] to a tensor of shape # [batch_size, hidden_size]. This is necessary for segment-level # (or segment-pair-level) classification tasks where we need a fixed # dimensional representation of the segment. with tf.variable_scope("pooler"): # We "pool" the model by simply taking the hidden state corresponding # to the first token. We assume that this has been pre-trained first_token_tensor = tf.squeeze(self.sequence_output[:, 0:1, :], axis=1) self.pooled_output = tf.layers.dense( first_token_tensor, config.hidden_size, activation=tf.tanh, kernel_initializer=create_initializer(config.initializer_range))