357 lines
14 KiB
Python
357 lines
14 KiB
Python
# Copyright (c) Facebook, Inc. and its affiliates.
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#
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# This source code is licensed under the MIT license found in the
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# LICENSE file in the root directory of this source tree.
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import math
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from typing import Dict, List, Optional
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import torch
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import torch.nn as nn
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from fairseq import utils
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from fairseq.distributed import fsdp_wrap
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from fairseq.models import FairseqEncoder
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from fairseq.modules import (
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FairseqDropout,
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LayerDropModuleList,
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LayerNorm,
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PositionalEmbedding,
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SinusoidalPositionalEmbedding,
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)
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from fairseq.modules import transformer_layer
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from fairseq.modules.checkpoint_activations import checkpoint_wrapper
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from fairseq.modules.quant_noise import quant_noise as apply_quant_noise_
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from torch import Tensor
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from fairseq.models.transformer import (
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TransformerConfig,
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)
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# rewrite name for backward compatibility in `make_generation_fast_`
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def module_name_fordropout(module_name: str) -> str:
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if module_name == 'TransformerEncoderBase':
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return 'TransformerEncoder'
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else:
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return module_name
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class TransformerEncoderBase(FairseqEncoder):
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"""
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Transformer encoder consisting of *cfg.encoder.layers* layers. Each layer
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is a :class:`TransformerEncoderLayer`.
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Args:
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args (argparse.Namespace): parsed command-line arguments
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dictionary (~fairseq.data.Dictionary): encoding dictionary
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embed_tokens (torch.nn.Embedding): input embedding
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"""
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def __init__(self, cfg, dictionary, embed_tokens):
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self.cfg = cfg
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super().__init__(dictionary)
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self.register_buffer("version", torch.Tensor([3]))
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self.dropout_module = FairseqDropout(
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cfg.dropout, module_name=module_name_fordropout(self.__class__.__name__)
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)
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self.encoder_layerdrop = cfg.encoder.layerdrop
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embed_dim = embed_tokens.embedding_dim
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self.padding_idx = embed_tokens.padding_idx
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self.max_source_positions = cfg.max_source_positions
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self.embed_tokens = embed_tokens
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self.embed_scale = 1.0 if cfg.no_scale_embedding else math.sqrt(embed_dim)
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self.embed_positions = (
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PositionalEmbedding(
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cfg.max_source_positions,
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embed_dim,
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self.padding_idx,
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learned=cfg.encoder.learned_pos,
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)
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if not cfg.no_token_positional_embeddings
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else None
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)
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if cfg.layernorm_embedding:
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self.layernorm_embedding = LayerNorm(embed_dim, export=cfg.export)
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else:
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self.layernorm_embedding = None
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if not cfg.adaptive_input and cfg.quant_noise.pq > 0:
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self.quant_noise = apply_quant_noise_(
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nn.Linear(embed_dim, embed_dim, bias=False),
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cfg.quant_noise.pq,
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cfg.quant_noise.pq_block_size,
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)
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else:
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self.quant_noise = None
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if self.encoder_layerdrop > 0.0:
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self.layers = LayerDropModuleList(p=self.encoder_layerdrop)
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else:
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self.layers = nn.ModuleList([])
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if cfg.model_param_type.lower() == "edgeformer":
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edge_layers = [self.build_encoder_layer(cfg, layerid=i) for i in range(2)] # 2 groups
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for i in range(2, 4):
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edge_layers.append(self.build_encoder_layer(cfg,shared_layer=edge_layers[i%2], layerid=i))
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edge_layers[-1].self_attn = edge_layers[-1].build_self_attention(embed_dim, cfg) # 3rd and 4th layers use free self-attn
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for i in range(4, 12):
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edge_layers.append(self.build_encoder_layer(cfg,shared_layer=edge_layers[i%4], layerid=i))
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self.layers.extend(edge_layers)
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elif cfg.model_param_type.lower() == "ut" or cfg.model_param_type.lower() == 'universal':
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first_layer = self.build_encoder_layer(cfg)
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self.layers.append(first_layer)
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self.layers.extend(
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[self.build_encoder_layer(cfg, shared_layer=first_layer) for i in range(1, cfg.encoder.layers)]
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)
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else:
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self.layers.extend(
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[self.build_encoder_layer(cfg) for i in range(cfg.encoder.layers)]
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)
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self.num_layers = len(self.layers)
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if cfg.encoder.normalize_before:
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self.layer_norm = LayerNorm(embed_dim, export=cfg.export)
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else:
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self.layer_norm = None
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def build_encoder_layer(self, cfg, shared_layer=None, layerid=None):
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layer = transformer_layer.TransformerEncoderLayerBase(cfg, shared_layer=shared_layer, layerid=layerid)
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checkpoint = cfg.checkpoint_activations
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if checkpoint:
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offload_to_cpu = cfg.offload_activations
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layer = checkpoint_wrapper(layer, offload_to_cpu=offload_to_cpu)
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# if we are checkpointing, enforce that FSDP always wraps the
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# checkpointed layer, regardless of layer size
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min_params_to_wrap = cfg.min_params_to_wrap if not checkpoint else 0
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layer = fsdp_wrap(layer, min_num_params=min_params_to_wrap)
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return layer
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def forward_embedding(
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self, src_tokens, token_embedding: Optional[torch.Tensor] = None
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):
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# embed tokens and positions
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if token_embedding is None:
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token_embedding = self.embed_tokens(src_tokens)
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x = embed = self.embed_scale * token_embedding
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if self.embed_positions is not None:
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x = embed + self.embed_positions(src_tokens)
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if self.layernorm_embedding is not None:
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x = self.layernorm_embedding(x)
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x = self.dropout_module(x)
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if self.quant_noise is not None:
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x = self.quant_noise(x)
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return x, embed
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def forward(
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self,
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src_tokens,
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src_lengths: Optional[torch.Tensor] = None,
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return_all_hiddens: bool = False,
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token_embeddings: Optional[torch.Tensor] = None,
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):
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"""
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Args:
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src_tokens (LongTensor): tokens in the source language of shape
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`(batch, src_len)`
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src_lengths (torch.LongTensor): lengths of each source sentence of
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shape `(batch)`
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return_all_hiddens (bool, optional): also return all of the
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intermediate hidden states (default: False).
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token_embeddings (torch.Tensor, optional): precomputed embeddings
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default `None` will recompute embeddings
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Returns:
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dict:
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- **encoder_out** (Tensor): the last encoder layer's output of
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shape `(src_len, batch, embed_dim)`
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- **encoder_padding_mask** (ByteTensor): the positions of
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padding elements of shape `(batch, src_len)`
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- **encoder_embedding** (Tensor): the (scaled) embedding lookup
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of shape `(batch, src_len, embed_dim)`
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- **encoder_states** (List[Tensor]): all intermediate
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hidden states of shape `(src_len, batch, embed_dim)`.
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Only populated if *return_all_hiddens* is True.
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"""
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return self.forward_scriptable(
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src_tokens, src_lengths, return_all_hiddens, token_embeddings
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)
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# TorchScript doesn't support super() method so that the scriptable Subclass
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# can't access the base class model in Torchscript.
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# Current workaround is to add a helper function with different name and
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# call the helper function from scriptable Subclass.
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def forward_scriptable(
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self,
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src_tokens,
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src_lengths: Optional[torch.Tensor] = None,
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return_all_hiddens: bool = False,
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token_embeddings: Optional[torch.Tensor] = None,
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):
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"""
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Args:
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src_tokens (LongTensor): tokens in the source language of shape
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`(batch, src_len)`
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src_lengths (torch.LongTensor): lengths of each source sentence of
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shape `(batch)`
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return_all_hiddens (bool, optional): also return all of the
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intermediate hidden states (default: False).
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token_embeddings (torch.Tensor, optional): precomputed embeddings
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default `None` will recompute embeddings
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Returns:
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dict:
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- **encoder_out** (Tensor): the last encoder layer's output of
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shape `(src_len, batch, embed_dim)`
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- **encoder_padding_mask** (ByteTensor): the positions of
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padding elements of shape `(batch, src_len)`
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- **encoder_embedding** (Tensor): the (scaled) embedding lookup
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of shape `(batch, src_len, embed_dim)`
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- **encoder_states** (List[Tensor]): all intermediate
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hidden states of shape `(src_len, batch, embed_dim)`.
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Only populated if *return_all_hiddens* is True.
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"""
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# compute padding mask
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encoder_padding_mask = src_tokens.eq(self.padding_idx)
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has_pads = src_tokens.device.type == "xla" or encoder_padding_mask.any()
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x, encoder_embedding = self.forward_embedding(src_tokens, token_embeddings)
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# account for padding while computing the representation
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if has_pads:
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x = x * (1 - encoder_padding_mask.unsqueeze(-1).type_as(x))
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# B x T x C -> T x B x C
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x = x.transpose(0, 1)
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encoder_states = []
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if return_all_hiddens:
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encoder_states.append(x)
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# encoder layers
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for layer in self.layers:
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x = layer(
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x, encoder_padding_mask=encoder_padding_mask if has_pads else None
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)
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if return_all_hiddens:
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assert encoder_states is not None
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encoder_states.append(x)
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if self.layer_norm is not None:
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x = self.layer_norm(x)
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# The Pytorch Mobile lite interpreter does not supports returning NamedTuple in
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# `forward` so we use a dictionary instead.
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# TorchScript does not support mixed values so the values are all lists.
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# The empty list is equivalent to None.
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src_lengths = src_tokens.ne(self.padding_idx).sum(dim=1, dtype=torch.int32).reshape(-1, 1).contiguous()
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return {
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"encoder_out": [x], # T x B x C
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"encoder_padding_mask": [encoder_padding_mask], # B x T
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"encoder_embedding": [encoder_embedding], # B x T x C
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"encoder_states": encoder_states, # List[T x B x C]
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"src_tokens": [],
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"src_lengths": [src_lengths],
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}
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@torch.jit.export
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def reorder_encoder_out(self, encoder_out: Dict[str, List[Tensor]], new_order):
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"""
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Reorder encoder output according to *new_order*.
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Args:
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encoder_out: output from the ``forward()`` method
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new_order (LongTensor): desired order
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Returns:
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*encoder_out* rearranged according to *new_order*
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"""
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if len(encoder_out["encoder_out"]) == 0:
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new_encoder_out = []
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else:
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new_encoder_out = [encoder_out["encoder_out"][0].index_select(1, new_order)]
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if len(encoder_out["encoder_padding_mask"]) == 0:
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new_encoder_padding_mask = []
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else:
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new_encoder_padding_mask = [
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encoder_out["encoder_padding_mask"][0].index_select(0, new_order)
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]
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if len(encoder_out["encoder_embedding"]) == 0:
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new_encoder_embedding = []
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else:
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new_encoder_embedding = [
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encoder_out["encoder_embedding"][0].index_select(0, new_order)
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]
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if len(encoder_out["src_tokens"]) == 0:
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src_tokens = []
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else:
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src_tokens = [(encoder_out["src_tokens"][0]).index_select(0, new_order)]
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if len(encoder_out["src_lengths"]) == 0:
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src_lengths = []
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else:
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src_lengths = [(encoder_out["src_lengths"][0]).index_select(0, new_order)]
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encoder_states = encoder_out["encoder_states"]
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if len(encoder_states) > 0:
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for idx, state in enumerate(encoder_states):
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encoder_states[idx] = state.index_select(1, new_order)
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return {
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"encoder_out": new_encoder_out, # T x B x C
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"encoder_padding_mask": new_encoder_padding_mask, # B x T
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"encoder_embedding": new_encoder_embedding, # B x T x C
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"encoder_states": encoder_states, # List[T x B x C]
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"src_tokens": src_tokens, # B x T
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"src_lengths": src_lengths, # B x 1
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}
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def max_positions(self):
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"""Maximum input length supported by the encoder."""
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if self.embed_positions is None:
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return self.max_source_positions
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return min(self.max_source_positions, self.embed_positions.max_positions)
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def upgrade_state_dict_named(self, state_dict, name):
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"""Upgrade a (possibly old) state dict for new versions of fairseq."""
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if isinstance(self.embed_positions, SinusoidalPositionalEmbedding):
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weights_key = "{}.embed_positions.weights".format(name)
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if weights_key in state_dict:
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print("deleting {0}".format(weights_key))
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del state_dict[weights_key]
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state_dict[
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"{}.embed_positions._float_tensor".format(name)
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] = torch.FloatTensor(1)
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for i in range(self.num_layers):
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# update layer norms
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self.layers[i].upgrade_state_dict_named(
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state_dict, "{}.layers.{}".format(name, i)
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)
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version_key = "{}.version".format(name)
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if utils.item(state_dict.get(version_key, torch.Tensor([1]))[0]) < 2:
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# earlier checkpoints did not normalize after the stack of layers
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self.layer_norm = None
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self.normalize = False
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state_dict[version_key] = torch.Tensor([1])
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return state_dict
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class TransformerEncoder(TransformerEncoderBase):
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def __init__(self, args, dictionary, embed_tokens):
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self.args = args
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super().__init__(
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TransformerConfig.from_namespace(args),
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dictionary,
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embed_tokens,
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)
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def build_encoder_layer(self, args, shared_layer=None):
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return super().build_encoder_layer(
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TransformerConfig.from_namespace(args),
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)
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