| | |
| | | self.eos = kwargs.get("eos", "<|endoftext|>") |
| | | self.batch_size = kwargs.get("batch_size") |
| | | self.batch_type = kwargs.get("batch_type") |
| | | self.prompt_ids_len = 0 |
| | | |
| | | def get_source_len(self, index): |
| | | item = self.index_ds[index] |
| | |
| | | speech, speech_lengths = extract_fbank( |
| | | data_src, data_type=self.data_type, frontend=self.frontend, is_final=True |
| | | ) # speech: [b, T, d] |
| | | |
| | | if speech_lengths > self.batch_size: |
| | | return None |
| | | speech = speech.permute(0, 2, 1) |
| | | target = item["target"] |
| | | if self.preprocessor_text: |
| | |
| | | prompt = f"{self.sos}{task}{text_language}" |
| | | prompt_ids = self.tokenizer.encode(prompt, allowed_special="all") |
| | | prompt_ids_len = len(prompt_ids) - 1 # [sos, task] |
| | | self.prompt_ids_len = prompt_ids_len |
| | | |
| | | target_ids = self.tokenizer.encode(target, allowed_special="all") |
| | | target_ids_len = len(target_ids) + 1 # [lid, text] |
| | | if target_ids_len > 200: |
| | | return None |
| | | |
| | | eos = self.tokenizer.encode(self.eos, allowed_special="all") # [eos] |
| | | |
| | |
| | | "text": text, |
| | | "text_lengths": text_lengths, |
| | | "target_mask": target_mask, |
| | | "target_mask_lengths": target_mask_lengths, |
| | | } |
| | | |
| | | def collator(self, samples: list = None): |
| | | outputs = {} |
| | | for sample in samples: |
| | | if sample is None: |
| | | continue |
| | | for key in sample.keys(): |
| | | if key not in outputs: |
| | | outputs[key] = [] |
| | | outputs[key].append(sample[key]) |
| | | |
| | | if len(outputs) < 1: |
| | | logging.info(f"ERROR: data is empty!") |
| | | outputs = { |
| | | "speech": torch.rand((10, 128), dtype=torch.float32), |
| | | "speech_lengths": torch.tensor([10], dtype=torch.int32), |
| | | "text": torch.tensor([58836], dtype=torch.int32), |
| | | "text_lengths": torch.tensor([1], dtype=torch.int32), |
| | | "target_mask": torch.tensor([[0] * (self.prompt_ids_len) + [1] * (1) + [1]]), |
| | | } |
| | | return outputs |
| | | |
| | | for key, data_list in outputs.items(): |
| | | if isinstance(data_list[0], torch.Tensor): |
| | |
| | | |
| | | if self.batch_type != "example": |
| | | for i in range(3): |
| | | outputs = self._filter_badcase(outputs) |
| | | outputs = self._filter_badcase(outputs, i=i) |
| | | |
| | | return outputs |
| | | |
| | | def _filter_badcase(self, outputs, i=0): |
| | | b, t, _ = outputs["speech"].shape |
| | | if b * t > self.batch_size: |
| | | |
| | | if b * t > self.batch_size * 1.25: |
| | | beg = torch.randint(0, 2, ()).item() |
| | | if b < 2: |
| | | beg = 0 |
| | | logging.info( |
| | | f"Warning, b * t: {b * t} > {self.batch_size}, drop half data {i}th, beg:{beg}" |
| | | ) |
| | | for key, data_list in outputs.items(): |
| | | outputs[key] = outputs[key][beg : beg + b : 2] |
| | | |
| | | speech_lengths_max = outputs["speech_lengths_max"].max().item() |
| | | |
| | | speech_lengths_max = outputs["speech_lengths"].max().item() |
| | | outputs["speech"] = outputs["speech"][:, :speech_lengths_max, :] |
| | | text_lengths_max = outputs["text_lengths"].max().item() |
| | | outputs["text"] = outputs["text"][:, :text_lengths_max] |
| | | target_mask_lengths_max = outputs["target_mask_lengths_max"].max().item() |
| | | target_mask_lengths_max = outputs["target_mask_lengths"].max().item() |
| | | outputs["target_mask"] = outputs["target_mask"][:, :target_mask_lengths_max] |
| | | |
| | | return outputs |