zhifu gao
2024-03-15 675b4605e8d1d9a406f5e6fc3bc989ddc932b04b
funasr/models/ct_transformer/model.py
@@ -17,7 +17,10 @@
from funasr.utils.load_utils import load_audio_text_image_video
from funasr.models.transformer.utils.nets_utils import make_pad_mask
from funasr.models.ct_transformer.utils import split_to_mini_sentence, split_words
try:
    import jieba
except:
    pass
if LooseVersion(torch.__version__) >= LooseVersion("1.6.0"):
    from torch.cuda.amp import autocast
else:
@@ -69,6 +72,10 @@
        self.sos = sos
        self.eos = eos
        self.sentence_end_id = sentence_end_id
        self.jieba_usr_dict = None
        if kwargs.get("jieba_usr_dict", None) is not None:
            jieba.load_userdict(kwargs["jieba_usr_dict"])
            self.jieba_usr_dict = jieba
        
        
@@ -237,14 +244,8 @@
        # text = data_in[0]
        # text_lengths = data_lengths[0] if data_lengths is not None else None
        split_size = kwargs.get("split_size", 20)
        jieba_usr_dict = kwargs.get("jieba_usr_dict", None)
        if jieba_usr_dict and isinstance(jieba_usr_dict, str):
            import jieba
            jieba.load_userdict(jieba_usr_dict)
            jieba_usr_dict = jieba
            kwargs["jieba_usr_dict"] = "jieba_usr_dict"
        tokens = split_words(text, jieba_usr_dict=jieba_usr_dict)
        tokens = split_words(text, jieba_usr_dict=self.jieba_usr_dict)
        tokens_int = tokenizer.encode(tokens)
        mini_sentences = split_to_mini_sentence(tokens, split_size)
@@ -347,7 +348,7 @@
            else:
                punc_array = torch.cat([punc_array, punctuations], dim=0)
        # post processing when using word level punc model
        if jieba_usr_dict:
        if self.jieba_usr_dict is not None:
            len_tokens = len(tokens)
            new_punc_array = copy.copy(punc_array).tolist()
            # for i, (token, punc_id) in enumerate(zip(tokens[::-1], punc_array.tolist()[::-1])):
@@ -364,57 +365,10 @@
        results.append(result_i)
        return results, meta_data
    def export(
        self,
        **kwargs,
    ):
    def export(self, **kwargs):
        from .export_meta import export_rebuild_model
        models = export_rebuild_model(model=self, **kwargs)
        return models
        is_onnx = kwargs.get("type", "onnx") == "onnx"
        encoder_class = tables.encoder_classes.get(kwargs["encoder"]+"Export")
        self.encoder = encoder_class(self.encoder, onnx=is_onnx)
        self.forward = self.export_forward
        return self
    def export_forward(self, inputs: torch.Tensor, text_lengths: torch.Tensor):
        """Compute loss value from buffer sequences.
        Args:
            input (torch.Tensor): Input ids. (batch, len)
            hidden (torch.Tensor): Target ids. (batch, len)
        """
        x = self.embed(inputs)
        h, _ = self.encoder(x, text_lengths)
        y = self.decoder(h)
        return y
    def export_dummy_inputs(self):
        length = 120
        text_indexes = torch.randint(0, self.embed.num_embeddings, (2, length)).type(torch.int32)
        text_lengths = torch.tensor([length-20, length], dtype=torch.int32)
        return (text_indexes, text_lengths)
    def export_input_names(self):
        return ['inputs', 'text_lengths']
    def export_output_names(self):
        return ['logits']
    def export_dynamic_axes(self):
        return {
            'inputs': {
                0: 'batch_size',
                1: 'feats_length'
            },
            'text_lengths': {
                0: 'batch_size',
            },
            'logits': {
                0: 'batch_size',
                1: 'logits_length'
            },
        }
    def export_name(self):
        return "model.onnx"