mirror of
https://github.com/SillyTavern/SillyTavern-Extras.git
synced 2026-03-12 15:00:13 +00:00
631 lines
20 KiB
Python
631 lines
20 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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from dataclasses import dataclass, field
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import logging
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import math
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from typing import Optional, Tuple
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from omegaconf import II
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import sys
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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 fairseq.dataclass import ChoiceEnum, FairseqDataclass
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from fairseq.models import BaseFairseqModel, register_model
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from fairseq.modules import (
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Fp32GroupNorm,
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Fp32LayerNorm,
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GumbelVectorQuantizer,
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KmeansVectorQuantizer,
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TransposeLast,
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)
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from fairseq.tasks import FairseqTask
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from fairseq.utils import buffered_arange
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logger = logging.getLogger(__name__)
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AGGREGATOR_CHOICES = ChoiceEnum(["cnn", "gru"])
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PROJECT_FEATURES_CHOICES = ChoiceEnum(["none", "same", "new"])
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ACTIVATION_CHOICES = ChoiceEnum(["relu", "gelu"])
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VQ_TYPE_CHOICES = ChoiceEnum(["none", "gumbel", "kmeans"])
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@dataclass
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class Wav2VecConfig(FairseqDataclass):
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prediction_steps: int = field(
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default=12, metadata={"help": "number of steps ahead to predict"}
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)
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sample_distance: Optional[int] = field(
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default=None,
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metadata={
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"help": "sample distance from target. does not work properly with cross-sampling"
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},
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)
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cross_sample_negatives: int = field(
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default=0, metadata={"help": "num of cross sampled negatives"}
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)
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num_negatives: int = field(
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default=10, metadata={"help": "num of sampled negatives"}
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)
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conv_feature_layers: str = field(
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default="[(512, 10, 5), (512, 8, 4), (512, 4, 2), (512, 4, 2), (512, 4, 2), (512, 1, 1), (512, 1, 1), (512, 1, 1)]",
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metadata={
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"help": "convolutional feature extraction layers [(dim, kernel_size, stride), ...]"
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},
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)
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conv_aggregator_layers: str = field(
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default="[(512, 2, 1), (512, 3, 1), (512, 4, 1), (512, 5, 1), (512, 6, 1), (512, 7, 1), (512, 8, 1), (512, 9, 1), (512, 10, 1), (512, 11, 1), (512, 12, 1), (512, 13, 1)]",
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metadata={
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"help": "convolutional aggregator layers [(dim, kernel_size, stride), ...]"
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},
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)
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dropout: float = field(
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default=0.0, metadata={"help": "dropout to apply within the model"}
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)
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dropout_features: float = field(
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default=0.0, metadata={"help": "dropout to apply to the features"}
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)
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dropout_agg: float = field(
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default=0.0, metadata={"help": "dropout to apply after aggregation step"}
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)
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aggregator: AGGREGATOR_CHOICES = field(
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default="cnn", metadata={"help": "type of aggregator to use"}
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)
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gru_dim: int = field(default=512, metadata={"help": "GRU dimensionality"})
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no_conv_bias: bool = field(
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default=False, metadata={"help": "if set, does not learn bias for conv layers"}
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)
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agg_zero_pad: bool = field(
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default=False,
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metadata={"help": "if set, zero pads in aggregator instead of repl pad"},
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)
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skip_connections_feat: bool = field(
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default=False,
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metadata={"help": "if set, adds skip connections to the feature extractor"},
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)
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skip_connections_agg: bool = field(
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default=True,
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metadata={"help": "if set, adds skip connections to the aggregator"},
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)
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residual_scale: float = field(
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default=0.5, metadata={"help": "scales residual by sqrt(value)"}
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)
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log_compression: bool = field(
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default=True,
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metadata={"help": "if set, adds a log compression to feature extractor"},
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)
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balanced_classes: bool = field(
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default=False,
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metadata={"help": "if set, loss is scaled to balance for number of negatives"},
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)
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project_features: PROJECT_FEATURES_CHOICES = field(
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default="none",
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metadata={
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"help": "if not none, features are projected using the (same or new) aggregator"
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},
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)
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non_affine_group_norm: bool = field(
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default=False, metadata={"help": "if set, group norm is not affine"}
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)
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offset: str = field(
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default="auto",
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metadata={
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"help": "if set to 'auto', it is computed automatically from the receptive field, else set to int value"
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},
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)
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activation: ACTIVATION_CHOICES = field(
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default="relu",
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metadata={
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"help": "if set to 'auto', it is computed automatically from the receptive field, else set to int value"
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},
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)
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vq_type: VQ_TYPE_CHOICES = field(
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default="none", metadata={"help": "which type of quantizer to use"}
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)
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vq_vars: int = field(
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default=320,
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metadata={"help": "project to this many vector quantized variables per group"},
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)
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vq_groups: int = field(
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default=2, metadata={"help": "number of groups of latent variables"}
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)
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vq_dim: int = field(
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default=0,
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metadata={
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"help": "uses this dimensionality for quantized vectors. 0 to use model dim // groups"
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},
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)
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vq_depth: int = field(
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default=1, metadata={"help": "number of layers for vq weight projection"}
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)
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combine_groups: bool = field(
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default=False, metadata={"help": "if set, variables are shared among groups"}
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)
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vq_temp: Tuple[float, float, float] = field(
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default=(2.0, 0.5, 0.999995),
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metadata={
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"help": "temperature for latent variable sampling with gumbel softmax. should be a tuple of 3 values (start, end, decay)"
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},
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)
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vq_gamma: float = field(
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default=0.25,
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metadata={"help": "gamma parameter for kmeans style vector quantization"},
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)
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infonce: bool = II("criterion.infonce")
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@register_model("wav2vec", dataclass=Wav2VecConfig)
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class Wav2VecModel(BaseFairseqModel):
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@classmethod
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def build_model(cls, cfg: Wav2VecConfig, task: FairseqTask):
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"""Build a new model instance."""
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model = Wav2VecModel(cfg)
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logger.info(model)
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return model
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def __init__(self, cfg: Wav2VecConfig):
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super().__init__()
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self.prediction_steps = cfg.prediction_steps
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offset = cfg.offset
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if cfg.activation == "relu":
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activation = nn.ReLU()
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elif cfg.activation == "gelu":
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activation = nn.GELU()
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else:
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raise Exception("unknown activation " + cfg.activation)
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feature_enc_layers = eval(cfg.conv_feature_layers)
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self.feature_extractor = ConvFeatureExtractionModel(
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conv_layers=feature_enc_layers,
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dropout=0.0,
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log_compression=cfg.log_compression,
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skip_connections=cfg.skip_connections_feat,
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residual_scale=cfg.residual_scale,
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non_affine_group_norm=cfg.non_affine_group_norm,
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activation=activation,
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)
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embed = feature_enc_layers[-1][0]
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self.vector_quantizer = None
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if cfg.vq_type == "gumbel":
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self.vector_quantizer = GumbelVectorQuantizer(
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dim=embed,
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num_vars=cfg.vq_vars,
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temp=cfg.vq_temp,
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groups=cfg.vq_groups,
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combine_groups=cfg.combine_groups,
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vq_dim=cfg.vq_dim if cfg.vq_dim > 0 else embed,
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time_first=False,
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activation=activation,
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weight_proj_depth=cfg.vq_depth,
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weight_proj_factor=2,
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)
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elif cfg.vq_type == "kmeans":
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self.vector_quantizer = KmeansVectorQuantizer(
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dim=embed,
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num_vars=cfg.vq_vars,
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groups=cfg.vq_groups,
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combine_groups=cfg.combine_groups,
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vq_dim=cfg.vq_dim if cfg.vq_dim > 0 else embed,
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time_first=False,
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gamma=cfg.vq_gamma,
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)
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else:
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assert (
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cfg.vq_type == "none" or cfg.vq_type is None
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), "Unknown quantizer type"
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if cfg.offset == "auto":
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jin = 0
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rin = 0
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for _, k, stride in feature_enc_layers:
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if rin == 0:
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rin = k
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rin = rin + (k - 1) * jin
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if jin == 0:
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jin = stride
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else:
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jin *= stride
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offset = math.ceil(rin / jin)
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offset = int(offset)
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def make_aggregator():
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if cfg.aggregator == "cnn":
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agg_layers = eval(cfg.conv_aggregator_layers)
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agg_dim = agg_layers[-1][0]
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feature_aggregator = ConvAggegator(
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conv_layers=agg_layers,
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embed=embed,
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dropout=cfg.dropout,
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skip_connections=cfg.skip_connections_agg,
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residual_scale=cfg.residual_scale,
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non_affine_group_norm=cfg.non_affine_group_norm,
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conv_bias=not cfg.no_conv_bias,
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zero_pad=cfg.agg_zero_pad,
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activation=activation,
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)
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elif cfg.aggregator == "gru":
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agg_dim = cfg.gru_dim
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feature_aggregator = nn.Sequential(
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TransposeLast(),
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nn.GRU(
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input_size=embed,
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hidden_size=agg_dim,
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num_layers=1,
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dropout=cfg.dropout,
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),
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TransposeLast(deconstruct_idx=0),
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)
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else:
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raise Exception("unknown aggregator type " + cfg.aggregator)
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return feature_aggregator, agg_dim
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self.feature_aggregator, agg_dim = make_aggregator()
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self.wav2vec_predictions = Wav2VecPredictionsModel(
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in_dim=agg_dim,
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out_dim=embed,
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prediction_steps=cfg.prediction_steps,
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n_negatives=cfg.num_negatives,
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cross_sample_negatives=cfg.cross_sample_negatives,
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sample_distance=cfg.sample_distance,
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dropout=cfg.dropout,
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offset=offset,
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balanced_classes=cfg.balanced_classes,
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infonce=cfg.infonce,
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)
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self.dropout_feats = nn.Dropout(p=cfg.dropout_features)
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self.dropout_agg = nn.Dropout(p=cfg.dropout_agg)
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if cfg.project_features == "none":
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self.project_features = None
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elif cfg.project_features == "same":
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self.project_features = self.feature_aggregator
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elif cfg.project_features == "new":
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self.project_features, _ = make_aggregator()
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def forward(self, source):
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result = {}
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features = self.feature_extractor(source)
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if self.vector_quantizer:
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q_res = self.vector_quantizer(features)
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features = q_res["x"]
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for k in q_res.keys():
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if k != "x":
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result[k] = q_res[k]
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x = self.dropout_feats(features)
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x = self.feature_aggregator(x)
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x = self.dropout_agg(x)
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if self.project_features is not None:
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features = self.project_features(features)
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x, targets = self.wav2vec_predictions(x, features)
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result["cpc_logits"] = x
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result["cpc_targets"] = targets
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return result
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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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def max_positions(self):
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"""Maximum length supported by the model."""
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return sys.maxsize
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def get_logits(self, net_output):
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logits = net_output["cpc_logits"]
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return logits
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def get_targets(self, sample, net_output):
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t = net_output["cpc_targets"]
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if isinstance(t, tuple):
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t = t[0]
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return t.contiguous()
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def get_target_weights(self, targets, net_output):
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targets = net_output["cpc_targets"]
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if isinstance(targets, tuple) and targets[-1] is not None:
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return targets[-1]
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return None
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def get_extra_losses(self, net_output):
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loss = None
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if "prob_perplexity" in net_output:
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loss = net_output["num_vars"] - net_output["prob_perplexity"]
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elif "kmeans_loss" in net_output:
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loss = net_output["kmeans_loss"]
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return loss
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def norm_block(is_layer_norm, dim, affine=True):
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if is_layer_norm:
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mod = nn.Sequential(
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TransposeLast(),
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Fp32LayerNorm(dim, elementwise_affine=affine),
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TransposeLast(),
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)
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else:
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mod = Fp32GroupNorm(1, dim, affine=affine)
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return mod
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class ConvFeatureExtractionModel(nn.Module):
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def __init__(
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self,
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conv_layers,
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dropout,
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log_compression,
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skip_connections,
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residual_scale,
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non_affine_group_norm,
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activation,
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):
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super().__init__()
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def block(n_in, n_out, k, stride):
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return nn.Sequential(
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nn.Conv1d(n_in, n_out, k, stride=stride, bias=False),
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nn.Dropout(p=dropout),
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norm_block(
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is_layer_norm=False, dim=n_out, affine=not non_affine_group_norm
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),
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activation,
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)
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in_d = 1
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self.conv_layers = nn.ModuleList()
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for dim, k, stride in conv_layers:
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self.conv_layers.append(block(in_d, dim, k, stride))
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in_d = dim
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self.log_compression = log_compression
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self.skip_connections = skip_connections
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self.residual_scale = math.sqrt(residual_scale)
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def forward(self, x):
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# BxT -> BxCxT
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x = x.unsqueeze(1)
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for conv in self.conv_layers:
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residual = x
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x = conv(x)
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if self.skip_connections and x.size(1) == residual.size(1):
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tsz = x.size(2)
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r_tsz = residual.size(2)
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residual = residual[..., :: r_tsz // tsz][..., :tsz]
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x = (x + residual) * self.residual_scale
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if self.log_compression:
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x = x.abs()
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x = x + 1
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x = x.log()
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return x
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class ZeroPad1d(nn.Module):
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def __init__(self, pad_left, pad_right):
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super().__init__()
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self.pad_left = pad_left
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self.pad_right = pad_right
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def forward(self, x):
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return F.pad(x, (self.pad_left, self.pad_right))
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|
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class ConvAggegator(nn.Module):
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def __init__(
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self,
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conv_layers,
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embed,
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dropout,
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skip_connections,
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residual_scale,
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non_affine_group_norm,
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conv_bias,
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zero_pad,
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activation,
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):
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super().__init__()
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def block(n_in, n_out, k, stride):
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# padding dims only really make sense for stride = 1
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ka = k // 2
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kb = ka - 1 if k % 2 == 0 else ka
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pad = (
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ZeroPad1d(ka + kb, 0) if zero_pad else nn.ReplicationPad1d((ka + kb, 0))
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)
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return nn.Sequential(
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pad,
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nn.Conv1d(n_in, n_out, k, stride=stride, bias=conv_bias),
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nn.Dropout(p=dropout),
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norm_block(False, n_out, affine=not non_affine_group_norm),
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activation,
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)
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in_d = embed
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self.conv_layers = nn.ModuleList()
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self.residual_proj = nn.ModuleList()
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for dim, k, stride in conv_layers:
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if in_d != dim and skip_connections:
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self.residual_proj.append(nn.Conv1d(in_d, dim, 1, bias=False))
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else:
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self.residual_proj.append(None)
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self.conv_layers.append(block(in_d, dim, k, stride))
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in_d = dim
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self.conv_layers = nn.Sequential(*self.conv_layers)
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self.skip_connections = skip_connections
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self.residual_scale = math.sqrt(residual_scale)
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def forward(self, x):
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for rproj, conv in zip(self.residual_proj, self.conv_layers):
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residual = x
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x = conv(x)
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if self.skip_connections:
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if rproj is not None:
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residual = rproj(residual)
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x = (x + residual) * self.residual_scale
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return x
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class Wav2VecPredictionsModel(nn.Module):
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def __init__(
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self,
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in_dim,
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out_dim,
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prediction_steps,
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n_negatives,
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cross_sample_negatives,
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sample_distance,
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dropout,
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offset,
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balanced_classes,
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infonce,
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):
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super().__init__()
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self.n_negatives = n_negatives
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self.cross_sample_negatives = cross_sample_negatives
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self.sample_distance = sample_distance
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self.project_to_steps = nn.ConvTranspose2d(
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in_dim, out_dim, (1, prediction_steps)
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)
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self.dropout = nn.Dropout(p=dropout)
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self.offset = offset
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self.balanced_classes = balanced_classes
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self.infonce = infonce
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def sample_negatives(self, y):
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bsz, fsz, tsz = y.shape
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|
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y = y.transpose(0, 1) # BCT -> CBT
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y = y.contiguous().view(fsz, -1) # CBT => C(BxT)
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|
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cross_high = tsz * bsz
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high = tsz if self.sample_distance is None else min(tsz, self.sample_distance)
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assert high > 1
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|
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neg_idxs = torch.randint(low=0, high=high, size=(bsz, self.n_negatives * tsz))
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|
|
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with torch.no_grad():
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if self.n_negatives > 0:
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tszs = (
|
|
buffered_arange(tsz)
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|
.unsqueeze(-1)
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|
.expand(-1, self.n_negatives)
|
|
.flatten()
|
|
)
|
|
|
|
neg_idxs = torch.randint(
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|
low=0, high=high - 1, size=(bsz, self.n_negatives * tsz)
|
|
)
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|
neg_idxs[neg_idxs >= tszs] += 1
|
|
|
|
if self.cross_sample_negatives > 0:
|
|
tszs = (
|
|
buffered_arange(tsz)
|
|
.unsqueeze(-1)
|
|
.expand(-1, self.cross_sample_negatives)
|
|
.flatten()
|
|
)
|
|
|
|
cross_neg_idxs = torch.randint(
|
|
low=0,
|
|
high=cross_high - 1,
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|
size=(bsz, self.cross_sample_negatives * tsz),
|
|
)
|
|
cross_neg_idxs[cross_neg_idxs >= tszs] += 1
|
|
|
|
if self.n_negatives > 0:
|
|
for i in range(1, bsz):
|
|
neg_idxs[i] += i * high
|
|
else:
|
|
neg_idxs = cross_neg_idxs
|
|
|
|
if self.cross_sample_negatives > 0 and self.n_negatives > 0:
|
|
neg_idxs = torch.cat([neg_idxs, cross_neg_idxs], dim=1)
|
|
|
|
negs = y[..., neg_idxs.view(-1)]
|
|
negs = negs.view(
|
|
fsz, bsz, self.n_negatives + self.cross_sample_negatives, tsz
|
|
).permute(
|
|
2, 1, 0, 3
|
|
) # to NxBxCxT
|
|
|
|
return negs
|
|
|
|
def forward(self, x, y):
|
|
|
|
x = x.unsqueeze(-1)
|
|
x = self.project_to_steps(x) # BxCxTxS
|
|
x = self.dropout(x)
|
|
|
|
negatives = self.sample_negatives(y)
|
|
y = y.unsqueeze(0)
|
|
targets = torch.cat([y, negatives], dim=0) # Copies x B x C x T
|
|
|
|
copies = targets.size(0)
|
|
bsz, dim, tsz, steps = x.shape
|
|
steps = min(steps, tsz - self.offset)
|
|
|
|
predictions = x.new(
|
|
bsz * copies * (tsz - self.offset + 1) * steps
|
|
- ((steps + 1) * steps // 2) * copies * bsz
|
|
)
|
|
if self.infonce:
|
|
labels = predictions.new_full(
|
|
(predictions.shape[0] // copies,), 0, dtype=torch.long
|
|
)
|
|
else:
|
|
labels = torch.zeros_like(predictions)
|
|
weights = (
|
|
torch.full_like(labels, 1 / self.n_negatives)
|
|
if self.balanced_classes and not self.infonce
|
|
else None
|
|
)
|
|
|
|
start = end = 0
|
|
for i in range(steps):
|
|
offset = i + self.offset
|
|
end = start + (tsz - offset) * bsz * copies
|
|
if self.infonce:
|
|
predictions[start:end] = torch.einsum(
|
|
"bct,nbct->tbn", x[..., :-offset, i], targets[..., offset:]
|
|
).flatten()
|
|
else:
|
|
pos_num = (end - start) // copies
|
|
predictions[start:end] = torch.einsum(
|
|
"bct,nbct->nbt", x[..., :-offset, i], targets[..., offset:]
|
|
).flatten()
|
|
labels[start : start + pos_num] = 1.0
|
|
if weights is not None:
|
|
weights[start : start + pos_num] = 1.0
|
|
start = end
|
|
assert end == predictions.numel(), "{} != {}".format(end, predictions.numel())
|
|
|
|
if self.infonce:
|
|
predictions = predictions.view(-1, copies)
|
|
else:
|
|
if weights is not None:
|
|
labels = (labels, weights)
|
|
|
|
return predictions, labels
|