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import copy
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import json
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import logging
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import os.path
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import random
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import re
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import string
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import time
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import numpy as np
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import torch
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from funasr.download.download_model_from_hub import download_model
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from funasr.download.file import download_from_url
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from funasr.register import tables
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from funasr.train_utils.load_pretrained_model import load_pretrained_model
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from funasr.train_utils.set_all_random_seed import set_all_random_seed
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from funasr.utils import export_utils, misc
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from funasr.utils.load_utils import load_audio_text_image_video, load_bytes
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from funasr.utils.misc import deep_update
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from funasr.utils.timestamp_tools import timestamp_sentence, timestamp_sentence_en
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from tqdm import tqdm
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from .vad_utils import merge_vad, slice_padding_audio_samples
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try:
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from funasr.models.campplus.cluster_backend import ClusterBackend
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from funasr.models.campplus.utils import distribute_spk, postprocess, sv_chunk
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except:
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pass
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def prepare_data_iterator(data_in, input_len=None, data_type=None, key=None):
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""" """
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data_list = []
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key_list = []
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filelist = [".scp", ".txt", ".json", ".jsonl", ".text"]
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chars = string.ascii_letters + string.digits
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if isinstance(data_in, str):
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if data_in.startswith("http://") or data_in.startswith("https://"):
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data_in = download_from_url(data_in)
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if isinstance(data_in, str) and os.path.exists(
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data_in
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):
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_, file_extension = os.path.splitext(data_in)
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file_extension = file_extension.lower()
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if file_extension in filelist:
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with open(data_in, encoding="utf-8") as fin:
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for line in fin:
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key = "rand_key_" + "".join(random.choice(chars) for _ in range(13))
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if data_in.endswith(
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".jsonl"
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):
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lines = json.loads(line.strip())
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data = lines["source"]
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key = data["key"] if "key" in data else key
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else:
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lines = line.strip().split(maxsplit=1)
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data = lines[1] if len(lines) > 1 else lines[0]
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key = lines[0] if len(lines) > 1 else key
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data_list.append(data)
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key_list.append(key)
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else:
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if key is None:
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key = misc.extract_filename_without_extension(data_in)
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data_list = [data_in]
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key_list = [key]
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elif isinstance(data_in, (list, tuple)):
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if data_type is not None and isinstance(
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data_type, (list, tuple)
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):
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data_list_tmp = []
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for data_in_i, data_type_i in zip(data_in, data_type):
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key_list, data_list_i = prepare_data_iterator(
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data_in=data_in_i, data_type=data_type_i
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)
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data_list_tmp.append(data_list_i)
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data_list = []
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for item in zip(*data_list_tmp):
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data_list.append(item)
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else:
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data_list = data_in
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key_list = []
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for data_i in data_in:
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if isinstance(data_i, str) and os.path.exists(data_i):
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key = misc.extract_filename_without_extension(data_i)
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else:
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if key is None:
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key = "rand_key_" + "".join(
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random.choice(chars) for _ in range(13)
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)
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key_list.append(key)
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else:
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if isinstance(data_in, bytes):
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data_in = load_bytes(data_in)
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if key is None:
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key = "rand_key_" + "".join(random.choice(chars) for _ in range(13))
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data_list = [data_in]
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key_list = [key]
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return key_list, data_list
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class AutoModel:
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def __init__(self, **kwargs):
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try:
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from funasr.utils.version_checker import check_for_update
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print(
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"Check update of funasr, and it would cost few times. You may disable it by set `disable_update=True` in AutoModel"
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)
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check_for_update(disable=kwargs.get("disable_update", False))
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except:
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pass
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log_level = getattr(logging, kwargs.get("log_level", "INFO").upper())
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logging.basicConfig(level=log_level)
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model, kwargs = self.build_model(**kwargs)
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vad_model = kwargs.get("vad_model", None)
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vad_kwargs = (
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{} if kwargs.get("vad_kwargs", {}) is None else kwargs.get("vad_kwargs", {})
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)
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if vad_model is not None:
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logging.info("Building VAD model.")
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vad_kwargs["model"] = vad_model
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vad_kwargs["model_revision"] = kwargs.get("vad_model_revision", "master")
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vad_kwargs["device"] = kwargs["device"]
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vad_model, vad_kwargs = self.build_model(**vad_kwargs)
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punc_model = kwargs.get("punc_model", None)
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punc_kwargs = (
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{}
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if kwargs.get("punc_kwargs", {}) is None
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else kwargs.get("punc_kwargs", {})
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)
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if punc_model is not None:
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logging.info("Building punc model.")
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punc_kwargs["model"] = punc_model
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punc_kwargs["model_revision"] = kwargs.get("punc_model_revision", "master")
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punc_kwargs["device"] = kwargs["device"]
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punc_model, punc_kwargs = self.build_model(**punc_kwargs)
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spk_model = kwargs.get("spk_model", None)
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spk_kwargs = (
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{} if kwargs.get("spk_kwargs", {}) is None else kwargs.get("spk_kwargs", {})
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)
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if spk_model is not None:
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logging.info("Building SPK model.")
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spk_kwargs["model"] = spk_model
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spk_kwargs["model_revision"] = kwargs.get("spk_model_revision", "master")
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spk_kwargs["device"] = kwargs["device"]
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spk_model, spk_kwargs = self.build_model(**spk_kwargs)
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self.cb_model = ClusterBackend().to(kwargs["device"])
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spk_mode = kwargs.get("spk_mode", "punc_segment")
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if spk_mode not in ["default", "vad_segment", "punc_segment"]:
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logging.error(
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"spk_mode should be one of default, vad_segment and punc_segment."
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)
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self.spk_mode = spk_mode
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self.kwargs = kwargs
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self.model = model
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self.vad_model = vad_model
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self.vad_kwargs = vad_kwargs
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self.punc_model = punc_model
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self.punc_kwargs = punc_kwargs
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self.spk_model = spk_model
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self.spk_kwargs = spk_kwargs
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self.model_path = kwargs.get("model_path")
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@staticmethod
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def build_model(**kwargs):
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assert "model" in kwargs
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if "model_conf" not in kwargs:
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logging.info(
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"download models from model hub: {}".format(kwargs.get("hub", "ms"))
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)
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kwargs = download_model(**kwargs)
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set_all_random_seed(kwargs.get("seed", 0))
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device = kwargs.get("device", "cuda")
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if not torch.cuda.is_available() or kwargs.get("ngpu", 1) == 0:
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device = "cpu"
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kwargs["batch_size"] = 1
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kwargs["device"] = device
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torch.set_num_threads(kwargs.get("ncpu", 4))
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tokenizer = kwargs.get("tokenizer", None)
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if tokenizer is not None:
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tokenizer_class = tables.tokenizer_classes.get(tokenizer)
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tokenizer = tokenizer_class(**kwargs.get("tokenizer_conf", {}))
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kwargs["token_list"] = (
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tokenizer.token_list if hasattr(tokenizer, "token_list") else None
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)
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kwargs["token_list"] = (
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tokenizer.get_vocab()
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if hasattr(tokenizer, "get_vocab")
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else kwargs["token_list"]
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)
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vocab_size = (
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len(kwargs["token_list"]) if kwargs["token_list"] is not None else -1
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)
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if vocab_size == -1 and hasattr(tokenizer, "get_vocab_size"):
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vocab_size = tokenizer.get_vocab_size()
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else:
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vocab_size = -1
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kwargs["tokenizer"] = tokenizer
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frontend = kwargs.get("frontend", None)
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kwargs["input_size"] = None
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if frontend is not None:
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frontend_class = tables.frontend_classes.get(frontend)
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frontend = frontend_class(**kwargs.get("frontend_conf", {}))
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kwargs["input_size"] = (
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frontend.output_size() if hasattr(frontend, "output_size") else None
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)
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kwargs["frontend"] = frontend
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model_class = tables.model_classes.get(kwargs["model"])
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assert model_class is not None, f'{kwargs["model"]} is not registered'
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model_conf = {}
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deep_update(model_conf, kwargs.get("model_conf", {}))
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deep_update(model_conf, kwargs)
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model = model_class(**model_conf, vocab_size=vocab_size)
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init_param = kwargs.get("init_param", None)
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if init_param is not None:
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if os.path.exists(init_param):
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logging.info(f"Loading pretrained params from {init_param}")
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load_pretrained_model(
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model=model,
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path=init_param,
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ignore_init_mismatch=kwargs.get("ignore_init_mismatch", True),
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oss_bucket=kwargs.get("oss_bucket", None),
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scope_map=kwargs.get("scope_map", []),
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excludes=kwargs.get("excludes", None),
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)
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else:
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print(f"error, init_param does not exist!: {init_param}")
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if kwargs.get("fp16", False):
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model.to(torch.float16)
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elif kwargs.get("bf16", False):
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model.to(torch.bfloat16)
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model.to(device)
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if not kwargs.get("disable_log", True):
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tables.print()
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return model, kwargs
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def __call__(self, *args, **cfg):
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kwargs = self.kwargs
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deep_update(kwargs, cfg)
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res = self.model(*args, kwargs)
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return res
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def generate(self, input, input_len=None, **cfg):
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if self.vad_model is None:
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return self.inference(input, input_len=input_len, **cfg)
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else:
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return self.inference_with_vad(input, input_len=input_len, **cfg)
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|
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def inference(
|
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self, input, input_len=None, model=None, kwargs=None, key=None, **cfg
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):
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kwargs = self.kwargs if kwargs is None else kwargs
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if "cache" in kwargs:
|
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kwargs.pop("cache")
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deep_update(kwargs, cfg)
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model = self.model if model is None else model
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model.eval()
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batch_size = kwargs.get("batch_size", 1)
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|
|
|
|
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key_list, data_list = prepare_data_iterator(
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input, input_len=input_len, data_type=kwargs.get("data_type", None), key=key
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)
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speed_stats = {}
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asr_result_list = []
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num_samples = len(data_list)
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disable_pbar = self.kwargs.get("disable_pbar", False)
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pbar = (
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tqdm(colour="blue", total=num_samples, dynamic_ncols=True)
|
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if not disable_pbar
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else None
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)
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time_speech_total = 0.0
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time_escape_total = 0.0
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for beg_idx in range(0, num_samples, batch_size):
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end_idx = min(num_samples, beg_idx + batch_size)
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data_batch = data_list[beg_idx:end_idx]
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key_batch = key_list[beg_idx:end_idx]
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batch = {"data_in": data_batch, "key": key_batch}
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if (end_idx - beg_idx) == 1 and kwargs.get(
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"data_type", None
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) == "fbank":
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batch["data_in"] = data_batch[0]
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batch["data_lengths"] = input_len
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|
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time1 = time.perf_counter()
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with torch.no_grad():
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res = model.inference(**batch, **kwargs)
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if isinstance(res, (list, tuple)):
|
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results = res[0] if len(res) > 0 else [{"text": ""}]
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meta_data = res[1] if len(res) > 1 else {}
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time2 = time.perf_counter()
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asr_result_list.extend(results)
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|
|
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batch_data_time = meta_data.get("batch_data_time", -1)
|
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time_escape = time2 - time1
|
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speed_stats["load_data"] = meta_data.get("load_data", 0.0)
|
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speed_stats["extract_feat"] = meta_data.get("extract_feat", 0.0)
|
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speed_stats["forward"] = f"{time_escape:0.3f}"
|
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speed_stats["batch_size"] = f"{len(results)}"
|
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speed_stats["rtf"] = f"{(time_escape) / batch_data_time:0.3f}"
|
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description = f"{speed_stats}, "
|
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if pbar:
|
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pbar.update(end_idx - beg_idx)
|
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pbar.set_description(description)
|
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time_speech_total += batch_data_time
|
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time_escape_total += time_escape
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|
|
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if pbar:
|
|
|
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pbar.set_description(f"rtf_avg: {time_escape_total/time_speech_total:0.3f}")
|
|
torch.cuda.empty_cache()
|
|
return asr_result_list
|
|
|
|
def vad(self, input, input_len=None, **cfg):
|
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kwargs = self.kwargs
|
|
|
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deep_update(self.vad_kwargs, cfg)
|
|
beg_vad = time.time()
|
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res = self.inference(
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input,
|
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input_len=input_len,
|
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model=self.vad_model,
|
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kwargs=self.vad_kwargs,
|
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**cfg,
|
|
)
|
|
end_vad = time.time()
|
|
|
|
if cfg.get("merge_vad", False):
|
|
for i in range(len(res)):
|
|
res[i]["value"] = merge_vad(
|
|
res[i]["value"], kwargs.get("merge_length_s", 15) * 1000
|
|
)
|
|
elapsed = end_vad - beg_vad
|
|
return elapsed, res
|
|
|
|
def inference_with_vadres(self, input, vad_res, input_len=None, **cfg):
|
|
|
|
kwargs = self.kwargs
|
|
|
|
|
|
model = self.model
|
|
deep_update(kwargs, cfg)
|
|
batch_size = max(int(kwargs.get("batch_size_s", 300)) * 1000, 1)
|
|
batch_size_threshold_ms = int(kwargs.get("batch_size_threshold_s", 60)) * 1000
|
|
kwargs["batch_size"] = batch_size
|
|
|
|
key_list, data_list = prepare_data_iterator(
|
|
input, input_len=input_len, data_type=kwargs.get("data_type", None)
|
|
)
|
|
results_ret_list = []
|
|
time_speech_total_all_samples = 1e-6
|
|
|
|
beg_total = time.time()
|
|
pbar_total = (
|
|
tqdm(colour="red", total=len(vad_res), dynamic_ncols=True)
|
|
if not kwargs.get("disable_pbar", False)
|
|
else None
|
|
)
|
|
|
|
for i in range(len(vad_res)):
|
|
key = vad_res[i]["key"]
|
|
vadsegments = vad_res[i]["value"]
|
|
input_i = data_list[i]
|
|
fs = kwargs["frontend"].fs if hasattr(kwargs["frontend"], "fs") else 16000
|
|
speech = load_audio_text_image_video(
|
|
input_i, fs=fs, audio_fs=kwargs.get("fs", 16000)
|
|
)
|
|
speech_lengths = len(speech)
|
|
n = len(vadsegments)
|
|
data_with_index = [(vadsegments[i], i) for i in range(n)]
|
|
sorted_data = sorted(data_with_index, key=lambda x: x[0][1] - x[0][0])
|
|
results_sorted = []
|
|
|
|
if not len(sorted_data):
|
|
results_ret_list.append({"key": key, "text": "", "timestamp": []})
|
|
logging.info("decoding, utt: {}, empty speech".format(key))
|
|
continue
|
|
|
|
if len(sorted_data) > 0 and len(sorted_data[0]) > 0:
|
|
batch_size = max(
|
|
batch_size, sorted_data[0][0][1] - sorted_data[0][0][0]
|
|
)
|
|
|
|
if kwargs["device"] == "cpu":
|
|
batch_size = 0
|
|
|
|
beg_idx = 0
|
|
beg_asr_total = time.time()
|
|
time_speech_total_per_sample = speech_lengths / 16000
|
|
time_speech_total_all_samples += time_speech_total_per_sample
|
|
|
|
|
|
|
|
all_segments = []
|
|
max_len_in_batch = 0
|
|
end_idx = 1
|
|
|
|
for j, _ in enumerate(range(0, n)):
|
|
|
|
sample_length = sorted_data[j][0][1] - sorted_data[j][0][0]
|
|
potential_batch_length = max(max_len_in_batch, sample_length) * (
|
|
j + 1 - beg_idx
|
|
)
|
|
|
|
if (
|
|
j < n - 1
|
|
and sample_length < batch_size_threshold_ms
|
|
and potential_batch_length < batch_size
|
|
):
|
|
max_len_in_batch = max(max_len_in_batch, sample_length)
|
|
end_idx += 1
|
|
continue
|
|
|
|
speech_j, speech_lengths_j, intervals = slice_padding_audio_samples(
|
|
speech, speech_lengths, sorted_data[beg_idx:end_idx]
|
|
)
|
|
results = self.inference(
|
|
speech_j, input_len=None, model=model, kwargs=kwargs, **cfg
|
|
)
|
|
|
|
for _b in range(len(speech_j)):
|
|
results[_b]["interval"] = intervals[_b]
|
|
|
|
if self.spk_model is not None:
|
|
|
|
for _b in range(len(speech_j)):
|
|
vad_segments = [
|
|
[
|
|
sorted_data[beg_idx:end_idx][_b][0][0] / 1000.0,
|
|
sorted_data[beg_idx:end_idx][_b][0][1] / 1000.0,
|
|
np.array(speech_j[_b]),
|
|
]
|
|
]
|
|
segments = sv_chunk(vad_segments)
|
|
all_segments.extend(segments)
|
|
speech_b = [i[2] for i in segments]
|
|
spk_res = self.inference(
|
|
speech_b,
|
|
input_len=None,
|
|
model=self.spk_model,
|
|
kwargs=kwargs,
|
|
**cfg,
|
|
)
|
|
results[_b]["spk_embedding"] = spk_res[0]["spk_embedding"]
|
|
|
|
beg_idx = end_idx
|
|
end_idx += 1
|
|
max_len_in_batch = sample_length
|
|
if len(results) < 1:
|
|
continue
|
|
results_sorted.extend(results)
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
restored_data = [0] * n
|
|
for j in range(n):
|
|
index = sorted_data[j][1]
|
|
cur = results_sorted[j]
|
|
pattern = r"<\|([^|]+)\|>"
|
|
emotion_string = re.findall(pattern, cur["text"])
|
|
cur["text"] = re.sub(pattern, "", cur["text"])
|
|
cur["emo"] = "".join([f"<|{t}|>" for t in emotion_string])
|
|
if self.punc_model is not None and len(cur["text"].strip()) > 0:
|
|
deep_update(self.punc_kwargs, cfg)
|
|
punc_res = self.inference(
|
|
cur["text"],
|
|
model=self.punc_model,
|
|
kwargs=self.punc_kwargs,
|
|
**cfg,
|
|
)
|
|
cur["text"] = punc_res[0]["text"]
|
|
|
|
restored_data[index] = cur
|
|
|
|
end_asr_total = time.time()
|
|
time_escape_total_per_sample = end_asr_total - beg_asr_total
|
|
if pbar_total:
|
|
pbar_total.update(1)
|
|
pbar_total.set_description(
|
|
f"rtf_avg: {time_escape_total_per_sample / time_speech_total_per_sample:0.3f}, "
|
|
f"time_speech: {time_speech_total_per_sample: 0.3f}, "
|
|
f"time_escape: {time_escape_total_per_sample:0.3f}"
|
|
)
|
|
|
|
|
|
|
|
|
|
|
|
|
|
return restored_data
|
|
|
|
def export(self, input=None, **cfg):
|
|
"""
|
|
|
|
:param input:
|
|
:param type:
|
|
:param quantize:
|
|
:param fallback_num:
|
|
:param calib_num:
|
|
:param opset_version:
|
|
:param cfg:
|
|
:return:
|
|
"""
|
|
|
|
device = cfg.get("device", "cpu")
|
|
model = self.model.to(device=device)
|
|
kwargs = self.kwargs
|
|
deep_update(kwargs, cfg)
|
|
kwargs["device"] = device
|
|
del kwargs["model"]
|
|
model.eval()
|
|
|
|
type = kwargs.get("type", "onnx")
|
|
|
|
key_list, data_list = prepare_data_iterator(
|
|
input, input_len=None, data_type=kwargs.get("data_type", None), key=None
|
|
)
|
|
|
|
with torch.no_grad():
|
|
export_dir = export_utils.export(model=model, data_in=data_list, **kwargs)
|
|
|
|
return export_dir
|
|
|