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import contextlib |
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import copy |
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import logging |
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import math |
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import re |
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from argparse import Namespace |
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from dataclasses import dataclass, field |
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from typing import Any, Optional |
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import numpy as np |
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import torch |
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import torch.nn as nn |
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import torch.nn.functional as F |
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from omegaconf import II, MISSING, open_dict |
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|
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from fairseq import checkpoint_utils, tasks, utils |
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from fairseq.dataclass import FairseqDataclass |
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from fairseq.dataclass.utils import convert_namespace_to_omegaconf |
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from fairseq.models import ( |
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BaseFairseqModel, |
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FairseqEncoder, |
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FairseqEncoderDecoderModel, |
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FairseqIncrementalDecoder, |
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register_model, |
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) |
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from fairseq.models.wav2vec.wav2vec2 import MASKING_DISTRIBUTION_CHOICES |
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from fairseq.modules import LayerNorm, PositionalEmbedding, TransformerDecoderLayer |
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from fairseq.tasks import FairseqTask |
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logger = logging.getLogger(__name__) |
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@dataclass |
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class Wav2Vec2AsrConfig(FairseqDataclass): |
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w2v_path: str = field( |
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default=MISSING, metadata={"help": "path to wav2vec 2.0 model"} |
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) |
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no_pretrained_weights: bool = field( |
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default=False, metadata={"help": "if true, does not load pretrained weights"} |
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) |
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dropout_input: float = field( |
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default=0.0, |
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metadata={"help": "dropout to apply to the input (after feat extr)"}, |
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) |
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final_dropout: float = field( |
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default=0.0, |
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metadata={"help": "dropout after transformer and before final projection"}, |
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) |
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dropout: float = field( |
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default=0.0, metadata={"help": "dropout probability inside wav2vec 2.0 model"} |
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) |
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attention_dropout: float = field( |
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default=0.0, |
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metadata={ |
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"help": "dropout probability for attention weights inside wav2vec 2.0 model" |
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}, |
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) |
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activation_dropout: float = field( |
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default=0.0, |
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metadata={ |
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"help": "dropout probability after activation in FFN inside wav2vec 2.0 model" |
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}, |
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) |
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conv_feature_layers: Optional[str] = field( |
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default="[(512, 10, 5)] + [(512, 3, 2)] * 4 + [(512,2,2)] + [(512,2,2)]", |
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metadata={ |
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"help": ( |
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"string describing convolutional feature extraction " |
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"layers in form of a python list that contains " |
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"[(dim, kernel_size, stride), ...]" |
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), |
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}, |
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) |
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encoder_embed_dim: Optional[int] = field( |
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default=768, metadata={"help": "encoder embedding dimension"} |
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) |
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apply_mask: bool = field( |
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default=False, metadata={"help": "apply masking during fine-tuning"} |
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) |
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mask_length: int = field( |
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default=10, metadata={"help": "repeat the mask indices multiple times"} |
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) |
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mask_prob: float = field( |
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default=0.5, |
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metadata={ |
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"help": "probability of replacing a token with mask (normalized by length)" |
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}, |
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) |
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mask_selection: MASKING_DISTRIBUTION_CHOICES = field( |
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default="static", metadata={"help": "how to choose masks"} |
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) |
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mask_other: float = field( |
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default=0, |
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metadata={ |
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"help": "secondary mask argument (used for more complex distributions), " |
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"see help in compute_mask_indices" |
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}, |
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) |
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no_mask_overlap: bool = field( |
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default=False, metadata={"help": "whether to allow masks to overlap"} |
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) |
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mask_min_space: Optional[int] = field( |
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default=1, |
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metadata={"help": "min space between spans (if no overlap is enabled)"}, |
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) |
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require_same_masks: bool = field( |
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default=True, |
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metadata={ |
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"help": "whether to number of masked timesteps must be the same across all " |
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"examples in a batch" |
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}, |
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) |
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mask_dropout: float = field( |
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default=0.0, |
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metadata={"help": "percent of masks to unmask for each sample"}, |
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) |
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mask_channel_length: int = field( |
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default=10, metadata={"help": "length of the mask for features (channels)"} |
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) |
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mask_channel_prob: float = field( |
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default=0.0, metadata={"help": "probability of replacing a feature with 0"} |
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) |
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mask_channel_selection: MASKING_DISTRIBUTION_CHOICES = field( |
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default="static", |
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metadata={"help": "how to choose mask length for channel masking"}, |
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) |
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mask_channel_other: float = field( |
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default=0, |
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metadata={ |
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"help": "secondary mask argument (used for more complex distributions), " |
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"see help in compute_mask_indicesh" |
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}, |
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) |
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no_mask_channel_overlap: bool = field( |
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default=False, metadata={"help": "whether to allow channel masks to overlap"} |
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) |
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freeze_finetune_updates: int = field( |
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default=0, metadata={"help": "dont finetune wav2vec for this many updates"} |
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) |
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feature_grad_mult: float = field( |
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default=0.0, metadata={"help": "reset feature grad mult in wav2vec 2.0 to this"} |
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) |
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layerdrop: float = field( |
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default=0.0, metadata={"help": "probability of dropping a layer in wav2vec 2.0"} |
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) |
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mask_channel_min_space: Optional[int] = field( |
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default=1, |
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metadata={"help": "min space between spans (if no overlap is enabled)"}, |
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) |
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mask_channel_before: bool = False |
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normalize: bool = II("task.normalize") |
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data: str = II("task.data") |
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w2v_args: Any = None |
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offload_activations: bool = field( |
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default=False, metadata={"help": "offload_activations"} |
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) |
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min_params_to_wrap: int = field( |
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default=int(1e8), |
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metadata={ |
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"help": "minimum number of params for a layer to be wrapped with FSDP() when " |
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"training with --ddp-backend=fully_sharded. Smaller values will " |
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"improve memory efficiency, but may make torch.distributed " |
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"communication less efficient due to smaller input sizes. This option " |
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"is set to 0 (i.e., always wrap) when --checkpoint-activations or " |
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"--offload-activations are passed." |
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}, |
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) |
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checkpoint_activations: bool = field( |
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default=False, |
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metadata={"help": "recompute activations and save memory for extra compute"}, |
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) |
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ddp_backend: str = II("distributed_training.ddp_backend") |
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@dataclass |
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class Wav2Vec2CtcConfig(Wav2Vec2AsrConfig): |
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blank_weight: float = 0 |
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blank_mode: str = "add" |
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@register_model("wav2vec_ctc", dataclass=Wav2Vec2CtcConfig) |
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class Wav2VecCtc(BaseFairseqModel): |
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def __init__(self, cfg: Wav2Vec2CtcConfig, w2v_encoder: BaseFairseqModel): |
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super().__init__() |
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self.cfg = cfg |
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self.w2v_encoder = w2v_encoder |
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self.blank_weight = cfg.blank_weight |
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self.blank_mode = cfg.blank_mode |
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def upgrade_state_dict_named(self, state_dict, name): |
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super().upgrade_state_dict_named(state_dict, name) |
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return state_dict |
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@classmethod |
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def build_model(cls, cfg: Wav2Vec2CtcConfig, task: FairseqTask): |
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"""Build a new model instance.""" |
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w2v_encoder = Wav2VecEncoder(cfg, len(task.target_dictionary)) |
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return cls(cfg, w2v_encoder) |
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def get_logits(self, net_output, normalize=False): |
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logits = net_output["encoder_out"] |
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if self.blank_weight != 0: |
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if self.blank_mode == "add": |
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logits[..., 0] += self.blank_weight |
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elif self.blank_mode == "set": |
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logits[..., 0] = self.blank_weight |
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else: |
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raise Exception(f"invalid blank mode {self.blank_mode}") |
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if net_output["padding_mask"] is not None and net_output["padding_mask"].any(): |
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number_of_classes = logits.size(-1) |
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masking_tensor = torch.ones( |
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number_of_classes, device=logits.device |
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) * float("-inf") |
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masking_tensor[0] = 0 |
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logits[net_output["padding_mask"].T] = masking_tensor.type_as(logits) |
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if normalize: |
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logits = utils.log_softmax(logits.float(), dim=-1) |
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return logits |
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def get_normalized_probs(self, net_output, log_probs): |
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"""Get normalized probabilities (or log probs) from a net's output.""" |
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logits = self.get_logits(net_output) |
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if log_probs: |
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return utils.log_softmax(logits.float(), dim=-1) |
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else: |
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return utils.softmax(logits.float(), dim=-1) |
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def forward(self, **kwargs): |
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x = self.w2v_encoder(**kwargs) |
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return x |
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@dataclass |
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class Wav2Vec2Seq2SeqConfig(Wav2Vec2AsrConfig): |
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decoder_embed_dim: int = field( |
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default=768, metadata={"help": "decoder embedding dimension"} |
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) |
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decoder_ffn_embed_dim: int = field( |
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default=3072, metadata={"help": "decoder embedding dimension for FFN"} |
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) |
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decoder_layers: int = field(default=6, metadata={"help": "num of decoder layers"}) |
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decoder_layerdrop: float = field( |
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default=0.0, metadata={"help": "decoder layerdrop chance"} |
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) |
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decoder_attention_heads: int = field( |
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default=4, metadata={"help": "num decoder attention heads"} |
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) |
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decoder_learned_pos: bool = field( |
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default=False, |
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metadata={"help": "use learned positional embeddings in the decoder"}, |
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) |
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decoder_normalize_before: bool = field( |
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default=False, metadata={"help": "apply layernorm before each decoder block"} |
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) |
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no_token_positional_embeddings: bool = field( |
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default=False, |
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metadata={ |
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"help": "if set, disables positional embeddings (outside self attention)" |
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}, |
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) |
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decoder_dropout: float = field( |
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default=0.0, metadata={"help": "dropout probability in the decoder"} |
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) |
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decoder_attention_dropout: float = field( |
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default=0.0, |
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metadata={ |
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"help": "dropout probability for attention weights inside the decoder" |
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}, |
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) |
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decoder_activation_dropout: float = field( |
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default=0.0, |
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metadata={ |
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"help": "dropout probability after activation in FFN inside the decoder" |
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}, |
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) |
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max_target_positions: int = field( |
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default=2048, metadata={"help": "max target positions"} |
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) |
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share_decoder_input_output_embed: bool = field( |
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default=False, metadata={"help": "share decoder input and output embeddings"} |
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) |
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autoregressive: bool = II("task.autoregressive") |
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@register_model("wav2vec_seq2seq", dataclass=Wav2Vec2Seq2SeqConfig) |
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class Wav2Vec2Seq2SeqModel(FairseqEncoderDecoderModel): |
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def __init__(self, encoder, decoder): |
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super().__init__(encoder, decoder) |
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@classmethod |
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def build_model(cls, cfg: Wav2Vec2Seq2SeqConfig, task: FairseqTask): |
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"""Build a new model instance.""" |
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assert ( |
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cfg.autoregressive |
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), "Please set task.autoregressive=true for seq2seq asr models" |
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src_dict, tgt_dict = task.source_dictionary, task.target_dictionary |
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def build_embedding(dictionary, embed_dim): |
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num_embeddings = len(dictionary) |
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padding_idx = dictionary.pad() |
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emb = Embedding(num_embeddings, embed_dim, padding_idx) |
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return emb |
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decoder_embed_tokens = build_embedding(tgt_dict, cfg.decoder_embed_dim) |
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encoder = cls.build_encoder(cfg) |
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decoder = cls.build_decoder(cfg, tgt_dict, decoder_embed_tokens) |
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return Wav2Vec2Seq2SeqModel(encoder, decoder) |
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@classmethod |
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def build_encoder(cls, cfg: Wav2Vec2AsrConfig): |
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return Wav2VecEncoder(cfg) |
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@classmethod |
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def build_decoder(cls, cfg: Wav2Vec2Seq2SeqConfig, tgt_dict, embed_tokens): |
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return TransformerDecoder(cfg, tgt_dict, embed_tokens) |
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def forward(self, **kwargs): |
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encoder_out = self.encoder(**kwargs) |
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decoder_out = self.decoder(encoder_out=encoder_out, **kwargs) |
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return decoder_out |
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def upgrade_state_dict_named(self, state_dict, name): |
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super().upgrade_state_dict_named(state_dict, name) |
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return state_dict |
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|
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class Wav2VecEncoder(FairseqEncoder): |
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def __init__(self, cfg: Wav2Vec2AsrConfig, output_size=None): |
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self.apply_mask = cfg.apply_mask |
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arg_overrides = { |
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"dropout": cfg.dropout, |
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"activation_dropout": cfg.activation_dropout, |
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"dropout_input": cfg.dropout_input, |
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"attention_dropout": cfg.attention_dropout, |
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"mask_length": cfg.mask_length, |
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"mask_prob": cfg.mask_prob, |
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"require_same_masks": getattr(cfg, "require_same_masks", True), |
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"pct_holes": getattr(cfg, "mask_dropout", 0), |
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"mask_selection": cfg.mask_selection, |
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"mask_other": cfg.mask_other, |
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"no_mask_overlap": cfg.no_mask_overlap, |
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"mask_channel_length": cfg.mask_channel_length, |
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"mask_channel_prob": cfg.mask_channel_prob, |
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"mask_channel_before": cfg.mask_channel_before, |
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"mask_channel_selection": cfg.mask_channel_selection, |
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"mask_channel_other": cfg.mask_channel_other, |
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"no_mask_channel_overlap": cfg.no_mask_channel_overlap, |
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"encoder_layerdrop": cfg.layerdrop, |
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"feature_grad_mult": cfg.feature_grad_mult, |
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"checkpoint_activations": cfg.checkpoint_activations, |
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"offload_activations": cfg.offload_activations, |
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"min_params_to_wrap": cfg.min_params_to_wrap, |
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} |
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if cfg.w2v_args is None: |
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state = checkpoint_utils.load_checkpoint_to_cpu(cfg.w2v_path, arg_overrides) |
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w2v_args = state.get("cfg", None) |
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if w2v_args is None: |
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w2v_args = convert_namespace_to_omegaconf(state["args"]) |
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w2v_args.criterion = None |
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w2v_args.lr_scheduler = None |
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cfg.w2v_args = w2v_args |
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|
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logger.info(w2v_args) |
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else: |
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state = None |
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w2v_args = cfg.w2v_args |
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if isinstance(w2v_args, Namespace): |
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cfg.w2v_args = w2v_args = convert_namespace_to_omegaconf(w2v_args) |
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model_normalized = w2v_args.task.get( |
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"normalize", w2v_args.model.get("normalize", False) |
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) |
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assert cfg.normalize == model_normalized, ( |
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"Fine-tuning works best when data normalization is the same. " |
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"Please check that --normalize is set or unset for both pre-training and here" |
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) |
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if hasattr(cfg, "checkpoint_activations") and cfg.checkpoint_activations: |
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with open_dict(w2v_args): |
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w2v_args.model.checkpoint_activations = cfg.checkpoint_activations |
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w2v_args.task.data = cfg.data |
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task = tasks.setup_task(w2v_args.task) |
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model = task.build_model(w2v_args.model, from_checkpoint=True) |
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model.remove_pretraining_modules() |
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if state is not None and not cfg.no_pretrained_weights: |
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self.load_model_weights(state, model, cfg) |
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super().__init__(task.source_dictionary) |
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d = w2v_args.model.encoder_embed_dim |
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self.w2v_model = model |
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self.final_dropout = nn.Dropout(cfg.final_dropout) |
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self.freeze_finetune_updates = cfg.freeze_finetune_updates |
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self.num_updates = 0 |
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targ_d = None |
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self.proj = None |
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if output_size is not None: |
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targ_d = output_size |
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elif getattr(cfg, "decoder_embed_dim", d) != d: |
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targ_d = cfg.decoder_embed_dim |
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|
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if targ_d is not None: |
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self.proj = Linear(d, targ_d) |
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|
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def load_model_weights(self, state, model, cfg): |
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if cfg.ddp_backend == "fully_sharded": |
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from fairseq.distributed import FullyShardedDataParallel |
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|
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for name, module in model.named_modules(): |
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if "encoder.layers" in name and len(name.split(".")) == 3: |
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new_dict = { |
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k.replace(name + ".", ""): v |
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for (k, v) in state["model"].items() |
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if name + "." in k |
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} |
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assert isinstance(module, FullyShardedDataParallel) |
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with module.summon_full_params(): |
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module.load_state_dict(new_dict, strict=True) |
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module._reset_lazy_init() |
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r = re.compile("encoder.layers.\d.") |
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filtered_list = list(filter(r.match, state["model"].keys())) |
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|
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new_big_dict = { |
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k: v for (k, v) in state["model"].items() if k not in filtered_list |
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} |
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|
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model.load_state_dict(new_big_dict, strict=False) |
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else: |
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if "_ema" in state["model"]: |
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del state["model"]["_ema"] |
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model.load_state_dict(state["model"], strict=True) |
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|
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def set_num_updates(self, num_updates): |
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"""Set the number of parameters updates.""" |
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super().set_num_updates(num_updates) |
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self.num_updates = num_updates |
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|
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def forward(self, source, padding_mask, **kwargs): |
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|
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w2v_args = { |
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"source": source, |
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"padding_mask": padding_mask, |
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"mask": self.apply_mask and self.training, |
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} |
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|
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ft = self.freeze_finetune_updates <= self.num_updates |
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|
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with torch.no_grad() if not ft else contextlib.ExitStack(): |
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res = self.w2v_model.extract_features(**w2v_args) |
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|
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x = res["x"] |
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padding_mask = res["padding_mask"] |
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|
|
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x = x.transpose(0, 1) |
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|
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x = self.final_dropout(x) |
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|
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if self.proj: |
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x = self.proj(x) |
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|
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return { |
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"encoder_out": x, |
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"padding_mask": padding_mask, |
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"layer_results": res["layer_results"], |
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} |
|
|
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def forward_torchscript(self, net_input): |
|
if torch.jit.is_scripting(): |
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return self.forward(net_input["source"], net_input["padding_mask"]) |
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else: |
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return self.forward_non_torchscript(net_input) |
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|
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def reorder_encoder_out(self, encoder_out, new_order): |
|
if encoder_out["encoder_out"] is not None: |
|
encoder_out["encoder_out"] = encoder_out["encoder_out"].index_select( |
|
1, new_order |
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) |
|
if encoder_out["padding_mask"] is not None: |
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encoder_out["padding_mask"] = encoder_out["padding_mask"].index_select( |
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0, new_order |
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) |
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return encoder_out |
|
|
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def max_positions(self): |
|
"""Maximum input length supported by the encoder.""" |
|
return None |
|
|
|
def upgrade_state_dict_named(self, state_dict, name): |
|
return state_dict |
|
|
|
|
|
class TransformerDecoder(FairseqIncrementalDecoder): |
|
""" |
|
Transformer decoder consisting of *args.decoder_layers* layers. Each layer |
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is a :class:`TransformerDecoderLayer`. |
|
|
|
Args: |
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args (argparse.Namespace): parsed command-line arguments |
|
dictionary (~fairseq.data.Dictionary): decoding dictionary |
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embed_tokens (torch.nn.Embedding): output embedding |
|
no_encoder_attn (bool, optional): whether to attend to encoder outputs |
|
(default: False). |
|
""" |
|
|
|
def __init__( |
|
self, |
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cfg: Wav2Vec2Seq2SeqConfig, |
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dictionary, |
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embed_tokens, |
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no_encoder_attn=False, |
|
): |
|
super().__init__(dictionary) |
|
|
|
self.dropout = cfg.decoder_dropout |
|
self.share_input_output_embed = cfg.share_decoder_input_output_embed |
|
|
|
input_embed_dim = embed_tokens.embedding_dim |
|
embed_dim = cfg.decoder_embed_dim |
|
self.output_embed_dim = cfg.decoder_embed_dim |
|
|
|
self.layerdrop = cfg.decoder_layerdrop |
|
|
|
self.padding_idx = embed_tokens.padding_idx |
|
self.max_target_positions = cfg.max_target_positions |
|
|
|
self.embed_tokens = embed_tokens |
|
self.embed_scale = math.sqrt(embed_dim) |
|
|
|
self.project_in_dim = ( |
|
Linear(input_embed_dim, embed_dim, bias=False) |
|
if embed_dim != input_embed_dim |
|
else None |
|
) |
|
|
|
self.embed_positions = ( |
|
PositionalEmbedding( |
|
cfg.max_target_positions, |
|
embed_dim, |
|
self.padding_idx, |
|
learned=cfg.decoder_learned_pos, |
|
) |
|
if not cfg.no_token_positional_embeddings |
|
else None |
|
) |
|
|
|
|
|
transformer_cfg = copy.deepcopy(cfg) |
|
with open_dict(transformer_cfg): |
|
transformer_cfg.dropout = transformer_cfg.decoder_dropout |
|
transformer_cfg.attention_dropout = ( |
|
transformer_cfg.decoder_attention_dropout |
|
) |
|
transformer_cfg.activation_dropout = ( |
|
transformer_cfg.decoder_activation_dropout |
|
) |
|
|
|
self.layers = nn.ModuleList([]) |
|
self.layers.extend( |
|
[ |
|
TransformerDecoderLayer(transformer_cfg, no_encoder_attn) |
|
for _ in range(transformer_cfg.decoder_layers) |
|
] |
|
) |
|
|
|
if not self.share_input_output_embed: |
|
self.embed_out = nn.Parameter( |
|
torch.Tensor(len(dictionary), self.output_embed_dim) |
|
) |
|
nn.init.normal_(self.embed_out, mean=0, std=self.output_embed_dim**-0.5) |
|
|
|
if transformer_cfg.decoder_normalize_before: |
|
self.layer_norm = LayerNorm(embed_dim) |
|
else: |
|
self.layer_norm = None |
|
|
|
def forward( |
|
self, prev_output_tokens, encoder_out=None, incremental_state=None, **unused |
|
): |
|
""" |
|
Args: |
|
prev_output_tokens (LongTensor): previous decoder outputs of shape |
|
`(batch, tgt_len)`, for teacher forcing |
|
encoder_out (Tensor, optional): output from the encoder, used for |
|
encoder-side attention |
|
incremental_state (dict): dictionary used for storing state during |
|
:ref:`Incremental decoding` |
|
|
|
Returns: |
|
tuple: |
|
- the decoder's output of shape `(batch, tgt_len, vocab)` |
|
- a dictionary with any model-specific outputs |
|
""" |
|
if type(prev_output_tokens) == list: |
|
max_len = max((len(x) for x in prev_output_tokens)) |
|
tmp = torch.zeros( |
|
[len(prev_output_tokens), max_len], device=prev_output_tokens[0].device |
|
) |
|
for (i, p) in enumerate(prev_output_tokens): |
|
tmp[i, : len(p)] = p |
|
prev_output_tokens = tmp |
|
prev_output_tokens = prev_output_tokens.long() |
|
x, extra = self.extract_features( |
|
prev_output_tokens, encoder_out, incremental_state |
|
) |
|
x = self.output_layer(x) |
|
return x, extra |
|
|
|
def extract_features( |
|
self, prev_output_tokens, encoder_out=None, incremental_state=None, **unused |
|
): |
|
""" |
|
Similar to *forward* but only return features. |
|
|
|
Returns: |
|
tuple: |
|
- the decoder's features of shape `(batch, tgt_len, embed_dim)` |
|
- a dictionary with any model-specific outputs |
|
""" |
|
|
|
|
|
positions = ( |
|
self.embed_positions( |
|
prev_output_tokens, incremental_state=incremental_state |
|
) |
|
if self.embed_positions is not None |
|
else None |
|
) |
|
|
|
if incremental_state is not None: |
|
prev_output_tokens = prev_output_tokens[:, -1:] |
|
if positions is not None: |
|
positions = positions[:, -1:] |
|
|
|
|
|
x = self.embed_scale * self.embed_tokens(prev_output_tokens) |
|
|
|
if self.project_in_dim is not None: |
|
x = self.project_in_dim(x) |
|
|
|
if positions is not None: |
|
x += positions |
|
x = F.dropout(x, p=self.dropout, training=self.training) |
|
|
|
|
|
x = x.transpose(0, 1) |
|
attn = None |
|
|
|
inner_states = [x] |
|
|
|
|
|
self_attn_padding_mask = None |
|
if prev_output_tokens.eq(self.padding_idx).any(): |
|
self_attn_padding_mask = prev_output_tokens.eq(self.padding_idx) |
|
for layer in self.layers: |
|
dropout_probability = np.random.random() |
|
if not self.training or (dropout_probability > self.layerdrop): |
|
x, attn, _ = layer( |
|
x, |
|
encoder_out["encoder_out"] if encoder_out is not None else None, |
|
encoder_out["padding_mask"] if encoder_out is not None else None, |
|
incremental_state, |
|
self_attn_mask=self.buffered_future_mask(x) |
|
if incremental_state is None |
|
else None, |
|
self_attn_padding_mask=self_attn_padding_mask, |
|
) |
|
inner_states.append(x) |
|
|
|
if self.layer_norm: |
|
x = self.layer_norm(x) |
|
|
|
|
|
x = x.transpose(0, 1) |
|
|
|
return x, {"attn": attn, "inner_states": inner_states} |
|
|
|
def output_layer(self, features, **kwargs): |
|
"""Project features to the vocabulary size.""" |
|
|
|
if self.share_input_output_embed: |
|
return F.linear(features, self.embed_tokens.weight) |
|
else: |
|
return F.linear(features, self.embed_out) |
|
|
|
def max_positions(self): |
|
"""Maximum output length supported by the decoder.""" |
|
if self.embed_positions is None: |
|
return self.max_target_positions |
|
return min(self.max_target_positions, self.embed_positions.max_positions) |
|
|
|
def buffered_future_mask(self, tensor): |
|
dim = tensor.size(0) |
|
if ( |
|
not hasattr(self, "_future_mask") |
|
or self._future_mask is None |
|
or self._future_mask.device != tensor.device |
|
or self._future_mask.size(0) < dim |
|
): |
|
self._future_mask = torch.triu( |
|
utils.fill_with_neg_inf(tensor.new(dim, dim)), 1 |
|
) |
|
return self._future_mask[:dim, :dim] |
|
|
|
def upgrade_state_dict_named(self, state_dict, name): |
|
return state_dict |
|
|
|
|
|
def Embedding(num_embeddings, embedding_dim, padding_idx): |
|
m = nn.Embedding(num_embeddings, embedding_dim, padding_idx=padding_idx) |
|
nn.init.normal_(m.weight, mean=0, std=embedding_dim**-0.5) |
|
nn.init.constant_(m.weight[padding_idx], 0) |
|
return m |
|
|
|
|
|
def Linear(in_features, out_features, bias=True): |
|
m = nn.Linear(in_features, out_features, bias) |
|
nn.init.xavier_uniform_(m.weight) |
|
if bias: |
|
nn.init.constant_(m.bias, 0.0) |
|
return m |
|
|