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import logging |
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import os |
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from dataclasses import dataclass, field |
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from typing import Optional |
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from collections import OrderedDict |
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import numpy as np |
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import torch |
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from fairseq import utils |
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from fairseq.data import ( |
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AppendTokenDataset, |
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Dictionary, |
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IdDataset, |
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LMContextWindowDataset, |
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MonolingualDataset, |
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NestedDictionaryDataset, |
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NumelDataset, |
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PadDataset, |
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PrependTokenDataset, |
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SpeechDLMDataset, |
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StripTokenDataset, |
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TokenBlockDataset, |
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TruncatedDictionary, |
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data_utils, |
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) |
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from fairseq.data.indexed_dataset import get_available_dataset_impl |
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from fairseq.data.shorten_dataset import maybe_shorten_dataset |
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from fairseq.dataclass import ChoiceEnum, FairseqDataclass |
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from fairseq.tasks import LegacyFairseqTask, register_task |
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from omegaconf import II |
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SAMPLE_BREAK_MODE_CHOICES = ChoiceEnum(["none", "complete", "complete_doc", "eos"]) |
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SHORTEN_METHOD_CHOICES = ChoiceEnum(["none", "truncate", "random_crop"]) |
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logger = logging.getLogger(__name__) |
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@dataclass |
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class SpeechDLMConfig(FairseqDataclass): |
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data: Optional[str] = field( |
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default=None, metadata={"help": "path to data directory"} |
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) |
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channels: Optional[str] = field( |
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default=None, |
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metadata={ |
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"help": 'comma-separated list of channels to load e.g., "unitA,unitB"' |
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"(default: load all possible channels in the data path)" |
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}, |
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) |
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channel_weights: Optional[str] = field( |
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default=None, |
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metadata={ |
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"help": "comma-separated list of weights for different losses" |
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"(default: None, which means all losses are treated equally)" |
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}, |
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) |
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sample_break_mode: SAMPLE_BREAK_MODE_CHOICES = field( |
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default="none", |
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metadata={ |
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"help": 'If omitted or "none", fills each sample with tokens-per-sample ' |
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'tokens. If set to "complete", splits samples only at the end ' |
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"of sentence, but may include multiple sentences per sample. " |
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'"complete_doc" is similar but respects doc boundaries. ' |
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'If set to "eos", includes only one sentence per sample.' |
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}, |
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) |
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tokens_per_sample: int = field( |
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default=1024, |
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metadata={"help": "max number of tokens per sample for LM dataset"}, |
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) |
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output_dictionary_size: int = field( |
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default=-1, metadata={"help": "limit the size of output dictionary"} |
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) |
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next_unit_prediction: str = field( |
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default="False", |
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metadata={ |
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"help": "Perform Next Unit Prediction, expected str input ('True' or 'False')" |
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}, |
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) |
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edge_unit_prediction: str = field( |
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default="True", |
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metadata={ |
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"help": "Perform Edge Unit Prediction, expected str input ('True' or 'False')" |
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}, |
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) |
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duration_prediction: str = field( |
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default="True", |
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metadata={ |
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"help": "Perform Duration Prediction, expected str input ('True' or 'False')" |
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}, |
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) |
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delayed_duration_target: str = field( |
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default="True", |
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metadata={ |
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"help": "Perform Delayed Duration Prediction, expected str input ('True' or 'False')" |
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"(default: 'True')" |
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}, |
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) |
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max_target_durations: Optional[int] = field( |
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default=256, |
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metadata={"help": "max duration considered (cut off to this value)"}, |
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) |
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add_bos_token: bool = field( |
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default=False, metadata={"help": "prepend beginning of sentence token (<s>)"} |
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) |
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max_target_positions: Optional[int] = field( |
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default=None, metadata={"help": "max number of tokens in the target sequence"} |
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) |
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shorten_method: SHORTEN_METHOD_CHOICES = field( |
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default="none", |
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metadata={ |
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"help": "if not none, shorten sequences that exceed --tokens-per-sample" |
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}, |
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) |
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shorten_data_split_list: str = field( |
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default="", |
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metadata={ |
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"help": "comma-separated list of dataset splits to apply shortening to, " |
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'e.g., "train,valid" (default: all dataset splits)' |
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}, |
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) |
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seed: int = II("common.seed") |
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dataset_impl: Optional[ChoiceEnum(get_available_dataset_impl())] = II( |
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"dataset.dataset_impl" |
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) |
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data_buffer_size: int = II("dataset.data_buffer_size") |
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tpu: bool = II("common.tpu") |
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@register_task("speech_dlm_task", dataclass=SpeechDLMConfig) |
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class SpeechDLMTask(LegacyFairseqTask): |
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"""Task for the SpeechDLM model as described in the paper: |
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https://arxiv.org/pdf/2203.16502.pdf |
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It create a multi-channel dataset (SpeechDLMDataset) from multiple |
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dictionaries. |
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Args: |
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dictionaries (Dict[str, ~fairseq.data.Dictionary]): the dictionaries for |
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each input channel of the SpeechDLM model |
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output_dictionaries (Dict[str, ~fairseq.data.Dictionary]): the dictionaries |
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for the output of each channel of the SpeechDLM model. In most cases it |
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will be the same as *dictionaries*. |
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targets (List[str]): list of the target types that the SpeechDLM model |
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should predict. Can be one of "next", "edge", "duration". |
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Defaults to "next". |
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.. note:: |
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The SpeechDLM task is only compatible with |
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:mod:`fairseq-train` and :mod:`fairseq-validate`. |
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To generate new samples, please refer to example codes |
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at examples/textless_nlp/dgslm . |
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""" |
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def __init__(self, args, dicts, output_dicts=None, targets=None): |
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super().__init__(args) |
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self.dicts = dicts |
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self.output_dicts = output_dicts or dicts |
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if targets is None: |
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targets = ["next"] |
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self.targets = targets |
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self.channels = list(dicts.keys()) |
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if args.channel_weights is not None: |
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self.channel_weights = [float(w) for w in args.channel_weights.split(",")] |
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else: |
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self.channel_weights = [1.0 for _ in self.channels] |
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assert len(self.channel_weights) == len( |
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self.channels |
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), "number of channel_weights must be the same as number of channels" |
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assert str(args.next_unit_prediction).lower() in [ |
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"true", |
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"false", |
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], f"Expected to be a string of boolean, found {args.next_unit_prediction}" |
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assert str(args.edge_unit_prediction).lower() in [ |
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"true", |
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"false", |
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], f"Expected to be a string of boolean, found {args.edge_unit_prediction}" |
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assert str(args.duration_prediction).lower() in [ |
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"true", |
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"false", |
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], f"Expected to be a string of boolean, found {args.duration_prediction}" |
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assert str(args.delayed_duration_target).lower() in [ |
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"true", |
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"false", |
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], f"Expected to be a string of boolean, found {args.delayed_duration_target}" |
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self.next_unit_prediction = bool( |
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str(args.next_unit_prediction).lower() == "true" |
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) |
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self.edge_unit_prediction = bool( |
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str(args.edge_unit_prediction).lower() == "true" |
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) |
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self.duration_prediction = bool(str(args.duration_prediction).lower() == "true") |
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self.delayed_duration_target = bool( |
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str(args.delayed_duration_target).lower() == "true" |
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) |
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self.max_target_durations = args.max_target_durations |
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@classmethod |
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def setup_dictionary(cls, args, **kwargs): |
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"""The dictionaries will be a dict over channel keys and values of type |
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~fairseq.data.Dictionary. |
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""" |
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paths = utils.split_paths(args.data) |
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assert len(paths) > 0 |
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data_path = paths[0] |
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dicts = None |
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output_dicts = None |
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if args.channels is None: |
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sorted_channels = sorted( |
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name[5:-4] |
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for name in os.listdir(data_path) |
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if name[:5] == "dict." and name[-4:] == ".txt" |
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) |
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else: |
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sorted_channels = sorted(args.channels.split(",")) |
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logger.info("channels: {}".format(sorted_channels)) |
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dicts = OrderedDict() |
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output_dicts = OrderedDict() |
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for channel in sorted_channels: |
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dictionary = Dictionary.load( |
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os.path.join(data_path, "dict.{}.txt".format(channel)) |
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) |
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logger.info("[{}] dictionary: {} types".format(channel, len(dictionary))) |
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output_dictionary = dictionary |
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if args.output_dictionary_size >= 0: |
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output_dictionary = TruncatedDictionary( |
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dictionary, args.output_dictionary_size |
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) |
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dicts[channel] = dictionary |
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output_dicts[channel] = output_dictionary |
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if len(dicts) > 0: |
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assert dicts[channel].pad() == dicts[sorted_channels[0]].pad() |
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assert dicts[channel].bos() == dicts[sorted_channels[0]].bos() |
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assert dicts[channel].eos() == dicts[sorted_channels[0]].eos() |
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assert dicts[channel].unk() == dicts[sorted_channels[0]].unk() |
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return (dicts, output_dicts) |
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@classmethod |
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def setup_task(cls, args, **kwargs): |
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"""Setup the task (e.g., load dictionaries). |
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Args: |
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args (argparse.Namespace): parsed command-line arguments |
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""" |
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dicts, output_dicts = cls.setup_dictionary(args, **kwargs) |
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targets = [] |
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if str(getattr(args, "next_unit_prediction", "false")).lower() == "true": |
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targets.append("next") |
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if str(getattr(args, "edge_unit_prediction", "false")).lower() == "true": |
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targets.append("edge") |
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if str(getattr(args, "duration_prediction", "false")).lower() == "true": |
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targets.append("duration") |
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if len(targets) == 0: |
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targets = ["next"] |
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return cls(args, dicts, output_dicts, targets=targets) |
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def build_model(self, args): |
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model = super().build_model(args) |
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for target in self.targets: |
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if target not in model.supported_targets: |
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raise ValueError("Unsupported SpeechDLM target: {}".format(target)) |
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return model |
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def load_dataset( |
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self, split: str, epoch=1, combine=False, **kwargs |
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) -> SpeechDLMDataset: |
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"""Load a given dataset split. |
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Args: |
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split (str): name of the split (e.g., train, valid, test) |
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""" |
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paths = utils.split_paths(self.args.data) |
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assert len(paths) > 0 |
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data_path = paths[(epoch - 1) % len(paths)] |
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channel_datasets = {} |
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for channel in self.channels: |
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split_path = os.path.join(data_path, split + "." + channel) |
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dictionary = self.dicts[channel] |
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output_dictionary = self.output_dicts[channel] |
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dataset = data_utils.load_indexed_dataset( |
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split_path, dictionary, self.args.dataset_impl, combine=combine |
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) |
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if dataset is None: |
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raise FileNotFoundError( |
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"[{}] Dataset not found: {} ({})".format(channel, split, split_path) |
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) |
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dataset = maybe_shorten_dataset( |
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dataset, |
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split, |
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self.args.shorten_data_split_list, |
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self.args.shorten_method, |
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self.args.tokens_per_sample, |
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self.args.seed, |
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) |
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dataset = TokenBlockDataset( |
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dataset, |
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dataset.sizes, |
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self.args.tokens_per_sample, |
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pad=dictionary.pad(), |
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eos=dictionary.eos(), |
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break_mode=self.args.sample_break_mode, |
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include_targets=True, |
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) |
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add_eos_for_other_targets = ( |
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self.args.sample_break_mode is not None |
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and self.args.sample_break_mode != "none" |
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) |
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channel_datasets[channel] = MonolingualDataset( |
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dataset=dataset, |
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sizes=dataset.sizes, |
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src_vocab=dictionary, |
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tgt_vocab=output_dictionary, |
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add_eos_for_other_targets=add_eos_for_other_targets, |
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shuffle=False, |
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targets=["future"], |
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add_bos_token=self.args.add_bos_token, |
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) |
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self.datasets[split] = SpeechDLMDataset( |
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datasets=channel_datasets, |
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targets=self.targets, |
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max_target_durations=self.max_target_durations, |
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shuffle=True, |
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) |
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def build_dataset_for_inference(self, src_tokens, src_lengths, **kwargs): |
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""" |
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Generate batches for inference. We prepend an eos token to src_tokens |
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(or bos if `--add-bos-token` is set) and we append a <pad> to target. |
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This is convenient both for generation with a prefix and LM scoring. |
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""" |
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src_datasets = {} |
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tgt_datasets = {} |
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for channel in src_tokens[0]: |
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dataset = StripTokenDataset( |
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TokenBlockDataset( |
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[src_tokens[i][channel] for i in range(len(src_tokens))], |
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src_lengths, |
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block_size=None, |
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pad=self.source_dictionaries[channel].pad(), |
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eos=self.source_dictionaries[channel].eos(), |
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break_mode="eos", |
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), |
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self.source_dictionaries[channel].eos(), |
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) |
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src_dataset = PrependTokenDataset( |
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dataset, |
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token=( |
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self.source_dictionaries[channel].bos() |
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if getattr(self.args, "add_bos_token", False) |
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else self.source_dictionaries[channel].eos() |
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), |
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) |
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tgt_dataset = AppendTokenDataset( |
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dataset, token=self.source_dictionaries[channel].pad() |
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) |
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src_datasets[channel] = src_dataset |
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tgt_datasets[channel] = tgt_dataset |
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return NestedDictionaryDataset( |
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{ |
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"id": IdDataset(), |
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"net_input": { |
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"src_tokens": OrderedDict( |
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[ |
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( |
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channel, |
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PadDataset( |
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src_datasets[channel], |
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pad_idx=self.source_dictionaries[channel].pad(), |
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left_pad=False, |
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), |
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) |
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for channel in src_datasets |
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] |
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), |
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"src_lengths": NumelDataset( |
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next(iter(src_datasets.values())), reduce=False |
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), |
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}, |
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"target": OrderedDict( |
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[ |
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( |
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channel, |
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PadDataset( |
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tgt_datasets[channel], |
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pad_idx=self.source_dictionaries[channel].pad(), |
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left_pad=False, |
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), |
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) |
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for channel in tgt_datasets |
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] |
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), |
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}, |
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sizes=[np.array(src_lengths)], |
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) |
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def inference_step( |
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self, generator, models, sample, prefix_tokens=None, constraints=None |
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): |
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with torch.no_grad(): |
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if getattr(self.args, "add_bos_token", False): |
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bos_token = self.source_dictionary.bos() |
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else: |
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bos_token = self.source_dictionary.eos() |
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|
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if constraints is not None: |
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raise NotImplementedError( |
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"Constrained decoding with the SpeechDLM task is not supported" |
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) |
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|
|
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if prefix_tokens is None: |
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prefix_tokens = {} |
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for channel in sample["net_input"]["src_tokens"]: |
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if sample["net_input"]["src_tokens"][channel].nelement(): |
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prefix_tokens_channel = sample["net_input"]["src_tokens"][ |
|
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channel |
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] |
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|
if prefix_tokens_channel[:, 0].eq(bos_token).all(): |
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|
prefix_tokens_channel = prefix_tokens_channel[:, 1:] |
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prefix_tokens[channel] = prefix_tokens_channel |
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else: |
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prefix_tokens = None |
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break |
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return generator.generate( |
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models, sample, prefix_tokens=prefix_tokens, bos_token=bos_token |
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) |
|
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|
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|
def eval_lm_dataloader( |
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self, |
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dataset, |
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max_tokens: Optional[int] = 36000, |
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batch_size: Optional[int] = None, |
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max_positions: Optional[int] = None, |
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|
num_shards: int = 1, |
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shard_id: int = 0, |
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|
num_workers: int = 1, |
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data_buffer_size: int = 10, |
|
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|
|
|
|
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context_window: int = 0, |
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): |
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if context_window > 0: |
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dataset = LMContextWindowDataset( |
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dataset=dataset, |
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tokens_per_sample=self.args.tokens_per_sample, |
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context_window=context_window, |
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pad_idx=self.source_dictionary.pad(), |
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) |
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return self.get_batch_iterator( |
|
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dataset=dataset, |
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max_tokens=max_tokens, |
|
|
max_sentences=batch_size, |
|
|
max_positions=max_positions, |
|
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ignore_invalid_inputs=True, |
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num_shards=num_shards, |
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shard_id=shard_id, |
|
|
num_workers=num_workers, |
|
|
data_buffer_size=data_buffer_size, |
|
|
).next_epoch_itr(shuffle=False) |
|
|
|
|
|
@property |
|
|
def source_dictionary(self): |
|
|
"""Return the :class:`~fairseq.data.Dictionary` for the language |
|
|
model.""" |
|
|
return self.dicts[self.channels[0]] |
|
|
|
|
|
@property |
|
|
def target_dictionary(self): |
|
|
"""Return the :class:`~fairseq.data.Dictionary` for the language |
|
|
model.""" |
|
|
return self.output_dicts[self.channels[0]] |
|
|
|
|
|
@property |
|
|
def source_dictionaries(self): |
|
|
"""Return the dict of :class:`~fairseq.data.Dictionary` for the |
|
|
multichannel language model.""" |
|
|
return self.dicts |
|
|
|
|
|
@property |
|
|
def target_dictionaries(self): |
|
|
"""Return the dict of :class:`~fairseq.data.Dictionary` for the |
|
|
multichannel language model.""" |
|
|
return self.output_dicts |
|
|
|
|
|
def build_generator(self, models, args, extra_gen_cls_kwargs=None): |
|
|
|
|
|
from fairseq.models.speech_dlm.sequence_generator import ( |
|
|
multichannel_search, |
|
|
MultichannelSequenceGenerator, |
|
|
) |
|
|
|
|
|
|
|
|
sampling = getattr(args, "sampling", False) |
|
|
sampling_topk = getattr(args, "sampling_topk", -1) |
|
|
sampling_topp = getattr(args, "sampling_topp", -1.0) |
|
|
assert ( |
|
|
sampling_topk < 0 or sampling |
|
|
), "--sampling-topk requires sampling (not beam search)" |
|
|
assert ( |
|
|
sampling_topp < 0 or sampling |
|
|
), "--sampling-topp requires sampling (not beam search)" |
|
|
|
|
|
if sampling: |
|
|
search_strategy = multichannel_search.ContiguousMultichannelSampling( |
|
|
self.target_dictionaries, sampling_topk, sampling_topp |
|
|
) |
|
|
else: |
|
|
search_strategy = multichannel_search.ContiguousMultichannelBeamSearch( |
|
|
self.target_dictionaries |
|
|
) |
|
|
|
|
|
extra_gen_cls_kwargs = extra_gen_cls_kwargs or {} |
|
|
|
|
|
return MultichannelSequenceGenerator( |
|
|
models, |
|
|
self.target_dictionaries, |
|
|
beam_size=getattr(args, "beam", 5), |
|
|
max_len_a=getattr(args, "max_len_a", 0), |
|
|
max_len_b=getattr(args, "max_len_b", 500), |
|
|
min_len=getattr(args, "min_len", 1), |
|
|
normalize_scores=(not getattr(args, "unnormalized", False)), |
|
|
len_penalty=getattr(args, "lenpen", 1), |
|
|
unk_penalty=getattr(args, "unkpen", 0), |
|
|
temperature=getattr(args, "temperature", 1.0), |
|
|
match_source_len=getattr(args, "match_source_len", False), |
|
|
no_repeat_ngram_size=getattr(args, "no_repeat_ngram_size", 0), |
|
|
search_strategy=search_strategy, |
|
|
duration_temperature=getattr(args, "duration_temperature", 1.0), |
|
|
**extra_gen_cls_kwargs, |
|
|
) |
|
|
|