From 28a19dbc4e85d3b8a4ec2ef7483bba64d422b43f Mon Sep 17 00:00:00 2001
From: aky15 <ankeyu.aky@11.17.44.249>
Date: 星期三, 12 四月 2023 18:03:06 +0800
Subject: [PATCH] Merge remote-tracking branch 'origin/main' into dev_aky

---
 funasr/bin/asr_inference_paraformer_vad_punc.py |  400 ++++++++++++++++++++++++++++++---------------------------
 1 files changed, 211 insertions(+), 189 deletions(-)

diff --git a/funasr/bin/asr_inference_paraformer_vad_punc.py b/funasr/bin/asr_inference_paraformer_vad_punc.py
index c4bb61b..9dc0b79 100644
--- a/funasr/bin/asr_inference_paraformer_vad_punc.py
+++ b/funasr/bin/asr_inference_paraformer_vad_punc.py
@@ -5,6 +5,10 @@
 import logging
 import sys
 import time
+import os
+import codecs
+import tempfile
+import requests
 from pathlib import Path
 from typing import Optional
 from typing import Sequence
@@ -39,9 +43,11 @@
 from funasr.utils import asr_utils, wav_utils, postprocess_utils
 from funasr.models.frontend.wav_frontend import WavFrontend
 from funasr.tasks.vad import VADTask
-from funasr.utils.timestamp_tools import time_stamp_lfr6, time_stamp_lfr6_pl
+from funasr.bin.vad_inference import Speech2VadSegment
+from funasr.utils.timestamp_tools import time_stamp_sentence, ts_prediction_lfr6_standard
 from funasr.bin.punctuation_infer import Text2Punc
-from funasr.models.e2e_asr_paraformer import BiCifParaformer
+from funasr.models.e2e_asr_paraformer import BiCifParaformer, ContextualParaformer
+
 
 header_colors = '\033[95m'
 end_colors = '\033[0m'
@@ -52,7 +58,7 @@
 
     Examples:
             >>> import soundfile
-            >>> speech2text = Speech2Text("asr_config.yml", "asr.pth")
+            >>> speech2text = Speech2Text("asr_config.yml", "asr.pb")
             >>> audio, rate = soundfile.read("speech.wav")
             >>> speech2text(audio)
             [(text, token, token_int, hypothesis object), ...]
@@ -79,6 +85,7 @@
             penalty: float = 0.0,
             nbest: int = 1,
             frontend_conf: dict = None,
+            hotword_list_or_file: str = None,
             **kwargs,
     ):
         assert check_argument_types()
@@ -144,7 +151,7 @@
         for scorer in scorers.values():
             if isinstance(scorer, torch.nn.Module):
                 scorer.to(device=device, dtype=getattr(torch, dtype)).eval()
-        
+
         logging.info(f"Decoding device={device}, dtype={dtype}")
 
         # 5. [Optional] Build Text converter: e.g. bpe-sym -> Text
@@ -169,6 +176,11 @@
         self.asr_train_args = asr_train_args
         self.converter = converter
         self.tokenizer = tokenizer
+
+        # 6. [Optional] Build hotword list from str, local file or url
+        self.hotword_list = None
+        self.hotword_list = self.generate_hotwords_list(hotword_list_or_file)
+
         is_use_lm = lm_weight != 0.0 and lm_file is not None
         if (ctc_weight == 0.0 or asr_model.ctc == None) and not is_use_lm:
             beam_search = None
@@ -184,12 +196,11 @@
         self.encoder_downsampling_factor = 1
         if asr_train_args.encoder_conf["input_layer"] == "conv2d":
             self.encoder_downsampling_factor = 4
-        
-            
 
     @torch.no_grad()
     def __call__(
-            self, speech: Union[torch.Tensor, np.ndarray], speech_lengths: Union[torch.Tensor, np.ndarray] = None, begin_time: int = 0, end_time: int = None, 
+            self, speech: Union[torch.Tensor, np.ndarray], speech_lengths: Union[torch.Tensor, np.ndarray] = None,
+            begin_time: int = 0, end_time: int = None,
     ):
         """Inference
 
@@ -215,7 +226,7 @@
         else:
             feats = speech
             feats_len = speech_lengths
-        lfr_factor = max(1, (feats.size()[-1]//80)-1)
+        lfr_factor = max(1, (feats.size()[-1] // 80) - 1)
         batch = {"speech": feats, "speech_lengths": feats_len}
 
         # a. To device
@@ -229,15 +240,23 @@
         enc_len_batch_total = torch.sum(enc_len).item() * self.encoder_downsampling_factor
 
         predictor_outs = self.asr_model.calc_predictor(enc, enc_len)
-        pre_acoustic_embeds, pre_token_length, alphas, pre_peak_index = predictor_outs[0], predictor_outs[1], predictor_outs[2], predictor_outs[3]
+        pre_acoustic_embeds, pre_token_length, alphas, pre_peak_index = predictor_outs[0], predictor_outs[1], \
+                                                                        predictor_outs[2], predictor_outs[3]
         pre_token_length = pre_token_length.round().long()
         if torch.max(pre_token_length) < 1:
             return []
-        decoder_outs = self.asr_model.cal_decoder_with_predictor(enc, enc_len, pre_acoustic_embeds, pre_token_length)
-        decoder_out, ys_pad_lens = decoder_outs[0], decoder_outs[1]
+
+        if not isinstance(self.asr_model, ContextualParaformer):
+            if self.hotword_list:
+                logging.warning("Hotword is given but asr model is not a ContextualParaformer.")
+            decoder_outs = self.asr_model.cal_decoder_with_predictor(enc, enc_len, pre_acoustic_embeds, pre_token_length)
+            decoder_out, ys_pad_lens = decoder_outs[0], decoder_outs[1]
+        else:
+            decoder_outs = self.asr_model.cal_decoder_with_predictor(enc, enc_len, pre_acoustic_embeds, pre_token_length, hw_list=self.hotword_list)
+            decoder_out, ys_pad_lens = decoder_outs[0], decoder_outs[1]
 
         if isinstance(self.asr_model, BiCifParaformer):
-            _, _, us_alphas, us_cif_peak = self.asr_model.calc_predictor_timestamp(enc, enc_len,
+            _, _, us_alphas, us_peaks = self.asr_model.calc_predictor_timestamp(enc, enc_len,
                                                                                    pre_token_length)  # test no bias cif2
 
         results = []
@@ -249,7 +268,7 @@
                 nbest_hyps = self.beam_search(
                     x=x, am_scores=am_scores, maxlenratio=self.maxlenratio, minlenratio=self.minlenratio
                 )
-    
+
                 nbest_hyps = nbest_hyps[: self.nbest]
             else:
                 yseq = am_scores.argmax(dim=-1)
@@ -260,157 +279,134 @@
                     [self.asr_model.sos] + yseq.tolist() + [self.asr_model.eos], device=yseq.device
                 )
                 nbest_hyps = [Hypothesis(yseq=yseq, score=score)]
-                
+
             for hyp in nbest_hyps:
                 assert isinstance(hyp, (Hypothesis)), type(hyp)
-    
+
                 # remove sos/eos and get results
                 last_pos = -1
                 if isinstance(hyp.yseq, list):
                     token_int = hyp.yseq[1:last_pos]
                 else:
                     token_int = hyp.yseq[1:last_pos].tolist()
-    
+
                 # remove blank symbol id, which is assumed to be 0
                 token_int = list(filter(lambda x: x != 0 and x != 2, token_int))
-    
+                if len(token_int) == 0:
+                    continue
+
                 # Change integer-ids to tokens
                 token = self.converter.ids2tokens(token_int)
-    
+
                 if self.tokenizer is not None:
                     text = self.tokenizer.tokens2text(token)
                 else:
                     text = None
 
                 if isinstance(self.asr_model, BiCifParaformer):
-                    timestamp = time_stamp_lfr6_pl(us_alphas[i], us_cif_peak[i], copy.copy(token), begin_time, end_time)
+                    _, timestamp = ts_prediction_lfr6_standard(us_alphas[i], 
+                                                            us_peaks[i], 
+                                                            copy.copy(token), 
+                                                            vad_offset=begin_time)
                     results.append((text, token, token_int, timestamp, enc_len_batch_total, lfr_factor))
                 else:
-                    time_stamp = time_stamp_lfr6(alphas[i:i + 1, ], enc_len[i:i + 1, ], copy.copy(token), begin_time, end_time)
-                    results.append((text, token, token_int, time_stamp, enc_len_batch_total, lfr_factor))
+                    results.append((text, token, token_int, enc_len_batch_total, lfr_factor))
 
         # assert check_return_type(results)
         return results
 
-class Speech2VadSegment:
-    """Speech2VadSegment class
-
-    Examples:
-        >>> import soundfile
-        >>> speech2segment = Speech2VadSegment("vad_config.yml", "vad.pt")
-        >>> audio, rate = soundfile.read("speech.wav")
-        >>> speech2segment(audio)
-        [[10, 230], [245, 450], ...]
-
-    """
-
-    def __init__(
-            self,
-            vad_infer_config: Union[Path, str] = None,
-            vad_model_file: Union[Path, str] = None,
-            vad_cmvn_file: Union[Path, str] = None,
-            device: str = "cpu",
-            batch_size: int = 1,
-            dtype: str = "float32",
-            **kwargs,
-    ):
-        assert check_argument_types()
-
-        # 1. Build vad model
-        vad_model, vad_infer_args = VADTask.build_model_from_file(
-            vad_infer_config, vad_model_file, device
-        )
-        frontend = None
-        if vad_infer_args.frontend is not None:
-            frontend = WavFrontend(cmvn_file=vad_cmvn_file, **vad_infer_args.frontend_conf)
-
-        # logging.info("vad_model: {}".format(vad_model))
-        # logging.info("vad_infer_args: {}".format(vad_infer_args))
-        vad_model.to(dtype=getattr(torch, dtype)).eval()
-
-        self.vad_model = vad_model
-        self.vad_infer_args = vad_infer_args
-        self.device = device
-        self.dtype = dtype
-        self.frontend = frontend
-
-    @torch.no_grad()
-    def __call__(
-            self, speech: Union[torch.Tensor, np.ndarray], speech_lengths: Union[torch.Tensor, np.ndarray] = None
-    ) -> List[List[int]]:
-        """Inference
-
-        Args:
-            speech: Input speech data
-        Returns:
-            text, token, token_int, hyp
-
-        """
-        assert check_argument_types()
-
-        # Input as audio signal
-        if isinstance(speech, np.ndarray):
-            speech = torch.tensor(speech)
-
-        if self.frontend is not None:
-            self.frontend.filter_length_max = math.inf
-            fbanks, fbanks_len = self.frontend.forward_fbank(speech, speech_lengths)
-            feats, feats_len = self.frontend.forward_lfr_cmvn(fbanks, fbanks_len)
-            fbanks = to_device(fbanks, device=self.device)
-            feats = to_device(feats, device=self.device)
-            feats_len = feats_len.int()
+    def generate_hotwords_list(self, hotword_list_or_file):
+        # for None
+        if hotword_list_or_file is None:
+            hotword_list = None
+        # for local txt inputs
+        elif os.path.exists(hotword_list_or_file) and hotword_list_or_file.endswith('.txt'):
+            logging.info("Attempting to parse hotwords from local txt...")
+            hotword_list = []
+            hotword_str_list = []
+            with codecs.open(hotword_list_or_file, 'r') as fin:
+                for line in fin.readlines():
+                    hw = line.strip()
+                    hotword_str_list.append(hw)
+                    hotword_list.append(self.converter.tokens2ids([i for i in hw]))
+                hotword_list.append([self.asr_model.sos])
+                hotword_str_list.append('<s>')
+            logging.info("Initialized hotword list from file: {}, hotword list: {}."
+                         .format(hotword_list_or_file, hotword_str_list))
+        # for url, download and generate txt
+        elif hotword_list_or_file.startswith('http'):
+            logging.info("Attempting to parse hotwords from url...")
+            work_dir = tempfile.TemporaryDirectory().name
+            if not os.path.exists(work_dir):
+                os.makedirs(work_dir)
+            text_file_path = os.path.join(work_dir, os.path.basename(hotword_list_or_file))
+            local_file = requests.get(hotword_list_or_file)
+            open(text_file_path, "wb").write(local_file.content)
+            hotword_list_or_file = text_file_path
+            hotword_list = []
+            hotword_str_list = []
+            with codecs.open(hotword_list_or_file, 'r') as fin:
+                for line in fin.readlines():
+                    hw = line.strip()
+                    hotword_str_list.append(hw)
+                    hotword_list.append(self.converter.tokens2ids([i for i in hw]))
+                hotword_list.append([self.asr_model.sos])
+                hotword_str_list.append('<s>')
+            logging.info("Initialized hotword list from file: {}, hotword list: {}."
+                         .format(hotword_list_or_file, hotword_str_list))
+        # for text str input
+        elif not hotword_list_or_file.endswith('.txt'):
+            logging.info("Attempting to parse hotwords as str...")
+            hotword_list = []
+            hotword_str_list = []
+            for hw in hotword_list_or_file.strip().split():
+                hotword_str_list.append(hw)
+                hotword_list.append(self.converter.tokens2ids([i for i in hw]))
+            hotword_list.append([self.asr_model.sos])
+            hotword_str_list.append('<s>')
+            logging.info("Hotword list: {}.".format(hotword_str_list))
         else:
-            raise Exception("Need to extract feats first, please configure frontend configuration")
-        batch = {"feats": feats, "feats_lengths": feats_len, "waveform": speech}
-
-        # a. To device
-        batch = to_device(batch, device=self.device)
-
-        # b. Forward Encoder
-        segments = self.vad_model(**batch)
-
-        return fbanks, segments
-
+            hotword_list = None
+        return hotword_list
 
 
 def inference(
-    maxlenratio: float,
-    minlenratio: float,
-    batch_size: int,
-    beam_size: int,
-    ngpu: int,
-    ctc_weight: float,
-    lm_weight: float,
-    penalty: float,
-    log_level: Union[int, str],
-    data_path_and_name_and_type,
-    asr_train_config: Optional[str],
-    asr_model_file: Optional[str],
-    cmvn_file: Optional[str] = None,
-    raw_inputs: Union[np.ndarray, torch.Tensor] = None,
-    lm_train_config: Optional[str] = None,
-    lm_file: Optional[str] = None,
-    token_type: Optional[str] = None,
-    key_file: Optional[str] = None,
-    word_lm_train_config: Optional[str] = None,
-    bpemodel: Optional[str] = None,
-    allow_variable_data_keys: bool = False,
-    streaming: bool = False,
-    output_dir: Optional[str] = None,
-    dtype: str = "float32",
-    seed: int = 0,
-    ngram_weight: float = 0.9,
-    nbest: int = 1,
-    num_workers: int = 1,
-    vad_infer_config: Optional[str] = None,
-    vad_model_file: Optional[str] = None,
-    vad_cmvn_file: Optional[str] = None,
-    time_stamp_writer: bool = False,
-    punc_infer_config: Optional[str] = None,
-    punc_model_file: Optional[str] = None,
-    **kwargs,
+        maxlenratio: float,
+        minlenratio: float,
+        batch_size: int,
+        beam_size: int,
+        ngpu: int,
+        ctc_weight: float,
+        lm_weight: float,
+        penalty: float,
+        log_level: Union[int, str],
+        data_path_and_name_and_type,
+        asr_train_config: Optional[str],
+        asr_model_file: Optional[str],
+        cmvn_file: Optional[str] = None,
+        raw_inputs: Union[np.ndarray, torch.Tensor] = None,
+        lm_train_config: Optional[str] = None,
+        lm_file: Optional[str] = None,
+        token_type: Optional[str] = None,
+        key_file: Optional[str] = None,
+        word_lm_train_config: Optional[str] = None,
+        bpemodel: Optional[str] = None,
+        allow_variable_data_keys: bool = False,
+        streaming: bool = False,
+        output_dir: Optional[str] = None,
+        dtype: str = "float32",
+        seed: int = 0,
+        ngram_weight: float = 0.9,
+        nbest: int = 1,
+        num_workers: int = 1,
+        vad_infer_config: Optional[str] = None,
+        vad_model_file: Optional[str] = None,
+        vad_cmvn_file: Optional[str] = None,
+        time_stamp_writer: bool = False,
+        punc_infer_config: Optional[str] = None,
+        punc_model_file: Optional[str] = None,
+        **kwargs,
 ):
-
     inference_pipeline = inference_modelscope(
         maxlenratio=maxlenratio,
         minlenratio=minlenratio,
@@ -449,63 +445,69 @@
     )
     return inference_pipeline(data_path_and_name_and_type, raw_inputs)
 
+
 def inference_modelscope(
-    maxlenratio: float,
-    minlenratio: float,
-    batch_size: int,
-    beam_size: int,
-    ngpu: int,
-    ctc_weight: float,
-    lm_weight: float,
-    penalty: float,
-    log_level: Union[int, str],
-    # data_path_and_name_and_type,
-    asr_train_config: Optional[str],
-    asr_model_file: Optional[str],
-    cmvn_file: Optional[str] = None,
-    lm_train_config: Optional[str] = None,
-    lm_file: Optional[str] = None,
-    token_type: Optional[str] = None,
-    key_file: Optional[str] = None,
-    word_lm_train_config: Optional[str] = None,
-    bpemodel: Optional[str] = None,
-    allow_variable_data_keys: bool = False,
-    output_dir: Optional[str] = None,
-    dtype: str = "float32",
-    seed: int = 0,
-    ngram_weight: float = 0.9,
-    nbest: int = 1,
-    num_workers: int = 1,
-    vad_infer_config: Optional[str] = None,
-    vad_model_file: Optional[str] = None,
-    vad_cmvn_file: Optional[str] = None,
-    time_stamp_writer: bool = True,
-    punc_infer_config: Optional[str] = None,
-    punc_model_file: Optional[str] = None,
-    outputs_dict: Optional[bool] = True,
-    param_dict: dict = None,
-    **kwargs,
+        maxlenratio: float,
+        minlenratio: float,
+        batch_size: int,
+        beam_size: int,
+        ngpu: int,
+        ctc_weight: float,
+        lm_weight: float,
+        penalty: float,
+        log_level: Union[int, str],
+        # data_path_and_name_and_type,
+        asr_train_config: Optional[str],
+        asr_model_file: Optional[str],
+        cmvn_file: Optional[str] = None,
+        lm_train_config: Optional[str] = None,
+        lm_file: Optional[str] = None,
+        token_type: Optional[str] = None,
+        key_file: Optional[str] = None,
+        word_lm_train_config: Optional[str] = None,
+        bpemodel: Optional[str] = None,
+        allow_variable_data_keys: bool = False,
+        output_dir: Optional[str] = None,
+        dtype: str = "float32",
+        seed: int = 0,
+        ngram_weight: float = 0.9,
+        nbest: int = 1,
+        num_workers: int = 1,
+        vad_infer_config: Optional[str] = None,
+        vad_model_file: Optional[str] = None,
+        vad_cmvn_file: Optional[str] = None,
+        time_stamp_writer: bool = True,
+        punc_infer_config: Optional[str] = None,
+        punc_model_file: Optional[str] = None,
+        outputs_dict: Optional[bool] = True,
+        param_dict: dict = None,
+        **kwargs,
 ):
     assert check_argument_types()
-    
+
     if word_lm_train_config is not None:
         raise NotImplementedError("Word LM is not implemented")
     if ngpu > 1:
         raise NotImplementedError("only single GPU decoding is supported")
-    
+
     logging.basicConfig(
         level=log_level,
         format="%(asctime)s (%(module)s:%(lineno)d) %(levelname)s: %(message)s",
     )
-    
+
+    if param_dict is not None:
+        hotword_list_or_file = param_dict.get('hotword')
+    else:
+        hotword_list_or_file = None
+
     if ngpu >= 1 and torch.cuda.is_available():
         device = "cuda"
     else:
         device = "cpu"
-    
+
     # 1. Set random-seed
     set_all_random_seed(seed)
-    
+
     # 2. Build speech2vadsegment
     speech2vadsegment_kwargs = dict(
         vad_infer_config=vad_infer_config,
@@ -516,7 +518,7 @@
     )
     # logging.info("speech2vadsegment_kwargs: {}".format(speech2vadsegment_kwargs))
     speech2vadsegment = Speech2VadSegment(**speech2vadsegment_kwargs)
-    
+
     # 3. Build speech2text
     speech2text_kwargs = dict(
         asr_train_config=asr_train_config,
@@ -536,23 +538,36 @@
         ngram_weight=ngram_weight,
         penalty=penalty,
         nbest=nbest,
+        hotword_list_or_file=hotword_list_or_file,
     )
     speech2text = Speech2Text(**speech2text_kwargs)
     text2punc = None
-    if punc_model_file is not None: 
+    if punc_model_file is not None:
         text2punc = Text2Punc(punc_infer_config, punc_model_file, device=device, dtype=dtype)
 
     if output_dir is not None:
         writer = DatadirWriter(output_dir)
         ibest_writer = writer[f"1best_recog"]
         ibest_writer["token_list"][""] = " ".join(speech2text.asr_train_args.token_list)
-    
+
     def _forward(data_path_and_name_and_type,
                  raw_inputs: Union[np.ndarray, torch.Tensor] = None,
                  output_dir_v2: Optional[str] = None,
                  fs: dict = None,
                  param_dict: dict = None,
+                 **kwargs,
                  ):
+
+        hotword_list_or_file = None
+        if param_dict is not None:
+            hotword_list_or_file = param_dict.get('hotword')
+
+        if 'hotword' in kwargs:
+            hotword_list_or_file = kwargs['hotword']
+
+        if speech2text.hotword_list is None:
+            speech2text.hotword_list = speech2text.generate_hotwords_list(hotword_list_or_file)
+
         # 3. Build data-iterator
         if data_path_and_name_and_type is None and raw_inputs is not None:
             if isinstance(raw_inputs, torch.Tensor):
@@ -575,7 +590,7 @@
             use_timestamp = param_dict.get('use_timestamp', True)
         else:
             use_timestamp = True
-    
+
         finish_count = 0
         file_count = 1
         lfr_factor = 6
@@ -586,13 +601,13 @@
         if output_path is not None:
             writer = DatadirWriter(output_path)
             ibest_writer = writer[f"1best_recog"]
-    
+
         for keys, batch in loader:
             assert isinstance(batch, dict), type(batch)
             assert all(isinstance(s, str) for s in keys), keys
             _bs = len(next(iter(batch.values())))
             assert len(keys) == _bs, f"{len(keys)} != {_bs}"
-    
+
             vad_results = speech2vadsegment(**batch)
             fbanks, vadsegments = vad_results[0], vad_results[1]
             for i, segments in enumerate(vadsegments):
@@ -606,18 +621,20 @@
                     results = speech2text(**batch)
                     if len(results) < 1:
                         continue
-    
+
                     result_cur = [results[0][:-2]]
                     if j == 0:
                         result_segments = result_cur
                     else:
-                        result_segments = [[result_segments[0][i] + result_cur[0][i] for i in range(len(result_cur[0]))]]
-    
+                        result_segments = [
+                            [result_segments[0][i] + result_cur[0][i] for i in range(len(result_cur[0]))]]
+
                 key = keys[0]
                 result = result_segments[0]
                 text, token, token_int = result[0], result[1], result[2]
                 time_stamp = None if len(result) < 4 else result[3]
-   
+
+
                 if use_timestamp and time_stamp is not None: 
                     postprocessed_result = postprocess_utils.sentence_postprocess(token, time_stamp)
                 else:
@@ -633,15 +650,18 @@
                     text_postprocessed, word_lists = postprocessed_result[0], postprocessed_result[1]
 
                 text_postprocessed_punc = text_postprocessed
+                punc_id_list = []
                 if len(word_lists) > 0 and text2punc is not None:
                     text_postprocessed_punc, punc_id_list = text2punc(word_lists, 20)
-    
+
                 item = {'key': key, 'value': text_postprocessed_punc}
                 if text_postprocessed != "":
                     item['text_postprocessed'] = text_postprocessed
                 if time_stamp_postprocessed != "":
                     item['time_stamp'] = time_stamp_postprocessed
-    
+
+                item['sentences'] = time_stamp_sentence(punc_id_list, time_stamp_postprocessed, text_postprocessed)
+
                 asr_result_list.append(item)
                 finish_count += 1
                 # asr_utils.print_progress(finish_count / file_count)
@@ -650,15 +670,17 @@
                     ibest_writer["token"][key] = " ".join(token)
                     ibest_writer["token_int"][key] = " ".join(map(str, token_int))
                     ibest_writer["vad"][key] = "{}".format(vadsegments)
-                    ibest_writer["text"][key] = text_postprocessed
+                    ibest_writer["text"][key] = " ".join(word_lists)
                     ibest_writer["text_with_punc"][key] = text_postprocessed_punc
                     if time_stamp_postprocessed is not None:
                         ibest_writer["time_stamp"][key] = "{}".format(time_stamp_postprocessed)
-    
+
                 logging.info("decoding, utt: {}, predictions: {}".format(key, text_postprocessed_punc))
         return asr_result_list
+
     return _forward
 
+
 def get_parser():
     parser = config_argparse.ArgumentParser(
         description="ASR Decoding",

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