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import logging
import math
import os.path
import re
from typing import List

import librosa
import numpy as np
import torch
from time import time as ttime

from contants import config
from gpt_sovits.AR.models.t2s_lightning_module import Text2SemanticLightningModule
from gpt_sovits.module.mel_processing import spectrogram_torch
from gpt_sovits.module.models import SynthesizerTrn
from gpt_sovits.utils import DictToAttrRecursive
from gpt_sovits.text import cleaned_text_to_sequence
from gpt_sovits.text.cleaner import clean_text
from utils.classify_language import classify_language
from utils.data_utils import check_is_none
from utils.sentence import split_languages, sentence_split

splits = {",", "。", "?", "!", ",", ".", "?", "!", "~", ":", ":", "—", "…", }


class GPT_SoVITS:
    def __init__(self, sovits_path, gpt_path, device, **kwargs):
        self.sovits_path = sovits_path
        self.gpt_path = gpt_path
        self.hz = config.gpt_sovits_config.hz
        self.sampling_rate = None
        self.device = device
        self.model_handler = None
        self.is_half = config.gpt_sovits_config.is_half
        self.np_dtype = np.float16 if self.is_half else np.float32
        self.torch_dtype = torch.float16 if self.is_half else torch.float32
        self.speakers = None
        self.lang = ["zh", "ja", "en"]
        self.flash_attn_enabled = True
        self.prompt_cache: dict = {
            "ref_audio_path": None,
            "prompt_semantic": None,
            "refer_spepc": None,
            "prompt_text": None,
            "prompt_lang": None,
            "phones": None,
            "bert_features": None,
            "norm_text": None,
        }

    def load_model(self, model_handler):
        self.model_handler = model_handler

        self.load_sovits(self.sovits_path)
        self.load_gpt(self.gpt_path)

        self.tokenizer, self.bert_model = self.model_handler.get_bert_model("CHINESE_ROBERTA_WWM_EXT_LARGE")

        self.ssl_model = self.model_handler.get_ssl_model()

    def load_weight(self, saved_state_dict, model):
        if hasattr(model, 'module'):
            state_dict = model.module.state_dict()
        else:
            state_dict = model.state_dict()
        new_state_dict = {}
        for k, v in state_dict.items():
            try:
                new_state_dict[k] = saved_state_dict[k]
            except:
                # logging.info(f"{k} is not in the checkpoint")
                new_state_dict[k] = v
        if hasattr(model, 'module'):
            model.module.load_state_dict(new_state_dict)
        else:
            model.load_state_dict(new_state_dict)

    def load_sovits(self, sovits_path):
        # self.n_semantic = 1024
        logging.info(f"Loaded checkpoint '{sovits_path}'")
        dict_s2 = torch.load(sovits_path, map_location=self.device)
        self.hps = dict_s2["config"]
        self.hps = DictToAttrRecursive(self.hps)
        self.hps.model.semantic_frame_rate = "25hz"
        # self.speakers = [self.hps.get("name")] # 从模型配置中获取名字
        self.speakers = [os.path.basename(os.path.dirname(self.sovits_path))]  # 用模型文件夹作为名字

        self.vq_model = SynthesizerTrn(
            self.hps.data.filter_length // 2 + 1,
            self.hps.train.segment_size // self.hps.data.hop_length,
            n_speakers=self.hps.data.n_speakers,
            **self.hps.model).to(self.device)

        if config.gpt_sovits_config.is_half:
            self.vq_model = self.vq_model.half()

        self.vq_model.eval()
        self.sampling_rate = self.hps.data.sampling_rate

        self.load_weight(dict_s2['weight'], self.vq_model)

    def load_gpt(self, gpt_path):
        logging.info(f"Loaded checkpoint '{gpt_path}'")
        dict_s1 = torch.load(gpt_path, map_location=self.device)

        self.gpt_config = dict_s1["config"]
        self.max_sec = self.gpt_config.get("data").get("max_sec")

        self.t2s_model = Text2SemanticLightningModule(self.gpt_config, "****", is_train=False,
                                                      flash_attn_enabled=self.flash_attn_enabled).to(
            self.device)

        self.load_weight(dict_s1['weight'], self.t2s_model)

        if config.gpt_sovits_config.is_half:
            self.t2s_model = self.t2s_model.half()

        self.t2s_model.eval()

        total = sum([param.nelement() for param in self.t2s_model.parameters()])
        logging.info(f"Number of parameter: {total / 1e6:.2f}M")

    def get_speakers(self):
        return self.speakers

    def get_cleaned_text(self, text, language):
        phones, word2ph, norm_text = clean_text(text, language.replace("all_", ""))
        phones = cleaned_text_to_sequence(phones)
        return phones, word2ph, norm_text

    def get_cleaned_text_multilang(self, text):
        sentences = split_languages(text, expand_abbreviations=True, expand_hyphens=True)
        phones, word2ph, norm_text = [], [], []
        for sentence, lang in sentences:
            lang = classify_language(sentence)
            _phones, _word2ph, _norm_text = self.get_cleaned_text(sentence, lang)
            phones.extend(_phones)
            word2ph.extend(_word2ph)
            norm_text.extend(_norm_text)

        return phones, word2ph, norm_text

    def get_bert_feature(self, text, phones, word2ph, language):
        if language == "zh":
            with torch.no_grad():
                inputs = self.tokenizer(text, return_tensors="pt")
                for i in inputs:
                    inputs[i] = inputs[i].to(self.device)  #####输入是long不用管精度问题,精度随bert_model
                res = self.bert_model(**inputs, output_hidden_states=True)
                res = torch.cat(res["hidden_states"][-3:-2], -1)[0].cpu()[1:-1]
            assert len(word2ph) == len(text)
            phone_level_feature = []
            for i in range(len(word2ph)):
                repeat_feature = res[i].repeat(word2ph[i], 1)
                phone_level_feature.append(repeat_feature)
            phone_level_feature = torch.cat(phone_level_feature, dim=0)
            # if(config.gpt_sovits_config.is_half==True):phone_level_feature=phone_level_feature.half()
            bert = phone_level_feature.T
            torch.cuda.empty_cache()
        else:
            bert = torch.zeros((1024, len(phones)), dtype=self.torch_dtype)

        return bert

    def get_bert_and_cleaned_text_multilang(self, text: list):
        sentences = split_languages(text, expand_abbreviations=True, expand_hyphens=True)

        phones, word2ph, norm_text, bert = [], [], [], []

        for sentence, lang in sentences:
            _phones, _word2ph, _norm_text = self.get_cleaned_text(sentence, lang)
            _bert = self.get_bert_feature(sentence, _phones, _word2ph, _norm_text)
            phones.extend(_phones)
            if _word2ph is not None:
                word2ph.extend(_word2ph)
            norm_text.extend(_norm_text)
            bert.append(_bert)

        bert = torch.cat(bert, dim=1).to(self.device, dtype=self.torch_dtype)

        return phones, word2ph, norm_text, bert

    def get_spepc(self, audio, orig_sr):
        """audio的sampling_rate与模型相同"""
        audio = librosa.resample(audio, orig_sr=orig_sr, target_sr=int(self.hps.data.sampling_rate))
        audio = torch.FloatTensor(audio)
        audio_norm = audio
        audio_norm = audio_norm.unsqueeze(0)
        spec = spectrogram_torch(
            audio_norm,
            self.hps.data.filter_length,
            self.hps.data.sampling_rate,
            self.hps.data.hop_length,
            self.hps.data.win_length,
            center=False,
        )
        return spec

    def _set_prompt_semantic(self, reference_audio, reference_audio_sr):
        zero_wav = np.zeros(
            int(self.sampling_rate * 0.3),
            dtype=np.float16 if self.is_half else np.float32,
        )
        wav16k = librosa.resample(reference_audio, orig_sr=reference_audio_sr, target_sr=16000)
        with torch.no_grad():
            if (wav16k.shape[0] > 160000 or wav16k.shape[0] < 48000):
                raise OSError("参考音频在3~10秒范围外,请更换!")
            wav16k = torch.from_numpy(wav16k)
            zero_wav_torch = torch.from_numpy(zero_wav)

            if self.is_half == True:
                wav16k = wav16k.half()
                zero_wav_torch = zero_wav_torch.half()

            wav16k = wav16k.to(self.device)
            zero_wav_torch = zero_wav_torch.to(self.device)

            wav16k = torch.cat([wav16k, zero_wav_torch]).unsqueeze(0)

            ssl_content = self.ssl_model.model(wav16k)[
                "last_hidden_state"
            ].transpose(
                1, 2
            )  # .float()
            codes = self.vq_model.extract_latent(ssl_content)
            prompt_semantic = codes[0, 0].to(self.device)
            # prompt_semantic = prompt_semantic.unsqueeze(0).to(self.device)
            self.prompt_cache["prompt_semantic"] = prompt_semantic
        torch.cuda.empty_cache()

    def get_first(self, text):
        pattern = "[" + "".join(re.escape(sep) for sep in splits) + "]"
        text = re.split(pattern, text)[0].strip()
        return text

    def preprocess_text(self, text: str, lang: str, segment_size: int):
        texts = sentence_split(text, segment_size)

        result = []
        for text in texts:
            phones, word2ph, norm_text, bert_features = self.get_bert_and_cleaned_text_multilang(text)
            res = {
                "phones": phones,
                "bert_features": bert_features,
                "norm_text": norm_text,
            }
            result.append(res)
        return result

    def preprocess_prompt(self, reference_audio, reference_audio_sr, prompt_text: str, prompt_lang: str):
        if self.prompt_cache.get("prompt_text") != prompt_text:
            if prompt_lang.lower() == "auto":
                prompt_lang = classify_language(prompt_text)

            if (prompt_text[-1] not in splits):
                prompt_text += "。" if prompt_lang != "en" else "."
            phones, word2ph, norm_text = self.get_cleaned_text(prompt_text, prompt_lang)
            bert_features = self.get_bert_feature(norm_text, phones, word2ph, prompt_lang).to(self.device,
                                                                                              dtype=self.torch_dtype)
            self.prompt_cache["prompt_text"] = prompt_text
            self.prompt_cache["prompt_lang"] = prompt_lang
            self.prompt_cache["phones"] = phones
            self.prompt_cache["bert_features"] = bert_features
            self.prompt_cache["norm_text"] = norm_text
            self.prompt_cache["refer_spepc"] = self.get_spepc(reference_audio, orig_sr=reference_audio_sr)

            self._set_prompt_semantic(reference_audio, reference_audio_sr)

    def batch_sequences(self, sequences: List[torch.Tensor], axis: int = 0, pad_value: int = 0, max_length: int = None):
        seq = sequences[0]
        ndim = seq.dim()
        if axis < 0:
            axis += ndim
        dtype: torch.dtype = seq.dtype
        pad_value = torch.tensor(pad_value, dtype=dtype)
        seq_lengths = [seq.shape[axis] for seq in sequences]
        if max_length is None:
            max_length = max(seq_lengths)
        else:
            max_length = max(seq_lengths) if max_length < max(seq_lengths) else max_length

        padded_sequences = []
        for seq, length in zip(sequences, seq_lengths):
            padding = [0] * axis + [0, max_length - length] + [0] * (ndim - axis - 1)
            padded_seq = torch.nn.functional.pad(seq, padding, value=pad_value)
            padded_sequences.append(padded_seq)
        batch = torch.stack(padded_sequences)
        return batch

    def to_batch(self, data: list, prompt_data: dict = None, batch_size: int = 5, threshold: float = 0.75,
                 split_bucket: bool = True):

        _data: list = []
        index_and_len_list = []
        for idx, item in enumerate(data):
            norm_text_len = len(item["norm_text"])
            index_and_len_list.append([idx, norm_text_len])

        batch_index_list = []
        if split_bucket:
            index_and_len_list.sort(key=lambda x: x[1])
            index_and_len_list = np.array(index_and_len_list, dtype=np.int64)

            batch_index_list_len = 0
            pos = 0
            while pos < index_and_len_list.shape[0]:
                # batch_index_list.append(index_and_len_list[pos:min(pos+batch_size,len(index_and_len_list))])
                pos_end = min(pos + batch_size, index_and_len_list.shape[0])
                while pos < pos_end:
                    batch = index_and_len_list[pos:pos_end, 1].astype(np.float32)
                    score = batch[(pos_end - pos) // 2] / batch.mean()
                    if (score >= threshold) or (pos_end - pos == 1):
                        batch_index = index_and_len_list[pos:pos_end, 0].tolist()
                        batch_index_list_len += len(batch_index)
                        batch_index_list.append(batch_index)
                        pos = pos_end
                        break
                    pos_end = pos_end - 1

            assert batch_index_list_len == len(data)

        else:
            for i in range(len(data)):
                if i % batch_size == 0:
                    batch_index_list.append([])
                batch_index_list[-1].append(i)

        for batch_idx, index_list in enumerate(batch_index_list):
            item_list = [data[idx] for idx in index_list]
            phones_list = []
            phones_len_list = []
            # bert_features_list = []
            all_phones_list = []
            all_phones_len_list = []
            all_bert_features_list = []
            norm_text_batch = []
            bert_max_len = 0
            phones_max_len = 0
            for item in item_list:
                if prompt_data is not None:
                    all_bert_features = torch.cat([prompt_data["bert_features"], item["bert_features"]], 1)
                    all_phones = torch.LongTensor(prompt_data["phones"] + item["phones"])
                    phones = torch.LongTensor(item["phones"])
                    # norm_text = prompt_data["norm_text"]+item["norm_text"]
                else:
                    all_bert_features = item["bert_features"]
                    phones = torch.LongTensor(item["phones"])
                    all_phones = phones
                    # norm_text = item["norm_text"]

                bert_max_len = max(bert_max_len, all_bert_features.shape[-1])
                phones_max_len = max(phones_max_len, phones.shape[-1])

                phones_list.append(phones)
                phones_len_list.append(phones.shape[-1])
                all_phones_list.append(all_phones)
                all_phones_len_list.append(all_phones.shape[-1])
                all_bert_features_list.append(all_bert_features)
                norm_text_batch.append(item["norm_text"])

            phones_batch = phones_list
            max_len = max(bert_max_len, phones_max_len)
            # phones_batch = self.batch_sequences(phones_list, axis=0, pad_value=0, max_length=max_len)
            all_phones_batch = self.batch_sequences(all_phones_list, axis=0, pad_value=0, max_length=max_len)
            all_bert_features_batch = torch.FloatTensor(len(item_list), 1024, max_len)
            all_bert_features_batch.zero_()

            for idx, item in enumerate(all_bert_features_list):
                if item != None:
                    all_bert_features_batch[idx, :, : item.shape[-1]] = item

            batch = {
                "phones": phones_batch,
                "phones_len": torch.LongTensor(phones_len_list),
                "all_phones": all_phones_batch,
                "all_phones_len": torch.LongTensor(all_phones_len_list),
                "all_bert_features": all_bert_features_batch,
                "norm_text": norm_text_batch
            }
            _data.append(batch)

        return _data, batch_index_list

    def recovery_order(self, data: list, batch_index_list: list) -> list:
        '''
        Recovery the order of the audio according to the batch_index_list.

        Args:
            data (List[list(np.ndarray)]): the out of order audio .
            batch_index_list (List[list[int]]): the batch index list.

        Returns:
            list (List[np.ndarray]): the data in the original order.
        '''
        lenght = len(sum(batch_index_list, []))
        _data = [None] * lenght
        for i, index_list in enumerate(batch_index_list):
            for j, index in enumerate(index_list):
                _data[index] = data[i][j]
        return _data

    def audio_postprocess(self, audio: List[torch.Tensor], sr: int, batch_index_list: list = None,
                          speed_factor: float = 1.0, split_bucket: bool = True) -> tuple[int, np.ndarray]:
        zero_wav = torch.zeros(
            int(self.sampling_rate * 0.3),
            dtype=torch.float16 if self.is_half else torch.float32,
            device=self.device
        )

        for i, batch in enumerate(audio):
            for j, audio_fragment in enumerate(batch):
                max_audio = torch.abs(audio_fragment).max()  # 简单防止16bit爆音
                if max_audio > 1: audio_fragment /= max_audio
                audio_fragment: torch.Tensor = torch.cat([audio_fragment, zero_wav], dim=0)
                audio[i][j] = audio_fragment.cpu().numpy()

        if split_bucket:
            audio = self.recovery_order(audio, batch_index_list)
        else:
            # audio = [item for batch in audio for item in batch]
            audio = sum(audio, [])

        audio = np.concatenate(audio, 0)

        try:
            if speed_factor != 1.0:
                audio = self.speed_change(audio, speed_factor=speed_factor, sr=int(sr))
        except Exception as e:
            logging.error(f"Failed to change speed of audio: \n{e}")

        return audio

    def speed_change(self, input_audio: np.ndarray, speed_factor: float, sr: int):
        # 变速处理
        processed_audio = librosa.effects.time_stretch(input_audio, rate=speed_factor)

        return processed_audio

    def infer(self, text, lang, reference_audio, reference_audio_sr, prompt_text, prompt_lang, top_k, top_p,
              temperature, batch_size: int = 5, batch_threshold: float = 0.75, split_bucket: bool = True,
              return_fragment: bool = False, speed_factor: float = 1.0,
              segment_size: int = config.gpt_sovits_config.segment_size, **kwargs):

        if return_fragment:
            split_bucket = False

        data = self.preprocess_text(text, lang, segment_size)

        no_prompt_text = False
        if check_is_none(prompt_text):
            no_prompt_text = True
        else:
            self.preprocess_prompt(reference_audio, reference_audio_sr, prompt_text, prompt_lang)

        data, batch_index_list = self.to_batch(data,
                                               prompt_data=self.prompt_cache if not no_prompt_text else None,
                                               batch_size=batch_size,
                                               threshold=batch_threshold,
                                               split_bucket=split_bucket
                                               )

        audio = []
        for item in data:
            batch_phones = item["phones"]
            batch_phones_len = item["phones_len"]
            all_phoneme_ids = item["all_phones"]
            all_phoneme_lens = item["all_phones_len"]
            all_bert_features = item["all_bert_features"]
            norm_text = item["norm_text"]

            # batch_phones = batch_phones.to(self.device)
            batch_phones_len = batch_phones_len.to(self.device)
            all_phoneme_ids = all_phoneme_ids.to(self.device)
            all_phoneme_lens = all_phoneme_lens.to(self.device)
            all_bert_features = all_bert_features.to(self.device)
            if self.is_half:
                all_bert_features = all_bert_features.half()

            logging.debug(f"Infer text:{[''.join(text) for text in norm_text]}")
            if no_prompt_text:
                prompt = None
            else:
                prompt = self.prompt_cache["prompt_semantic"].expand(all_phoneme_ids.shape[0], -1).to(
                    self.device)

            with torch.no_grad():
                pred_semantic_list, idx_list = self.t2s_model.model.infer_panel(
                    all_phoneme_ids,
                    all_phoneme_lens,
                    prompt,
                    all_bert_features,
                    # prompt_phone_len=ph_offset,
                    top_k=top_k,
                    top_p=top_p,
                    temperature=temperature,
                    early_stop_num=self.hz * self.max_sec,
                )

            refer_audio_spepc: torch.Tensor = self.prompt_cache["refer_spepc"].to(self.device)
            if self.is_half:
                refer_audio_spepc = refer_audio_spepc.half()

            pred_semantic_list = [item[-idx:] for item, idx in zip(pred_semantic_list, idx_list)]
            upsample_rate = math.prod(self.vq_model.upsample_rates)
            audio_frag_idx = [pred_semantic_list[i].shape[0] * 2 * upsample_rate for i in
                              range(0, len(pred_semantic_list))]
            audio_frag_end_idx = [sum(audio_frag_idx[:i + 1]) for i in range(0, len(audio_frag_idx))]
            all_pred_semantic = torch.cat(pred_semantic_list).unsqueeze(0).unsqueeze(0).to(self.device)
            _batch_phones = torch.cat(batch_phones).unsqueeze(0).to(self.device)
            _batch_audio_fragment = (self.vq_model.decode(
                all_pred_semantic, _batch_phones, refer_audio_spepc
            ).detach()[0, 0, :])
            audio_frag_end_idx.insert(0, 0)
            batch_audio_fragment = [_batch_audio_fragment[audio_frag_end_idx[i - 1]:audio_frag_end_idx[i]] for i in
                                    range(1, len(audio_frag_end_idx))]

            torch.cuda.empty_cache()

            if return_fragment:
                yield self.audio_postprocess([batch_audio_fragment],
                                             reference_audio_sr,
                                             batch_index_list,
                                             speed_factor,
                                             split_bucket)
            else:
                audio.append(batch_audio_fragment)

        if not return_fragment:
            yield self.audio_postprocess(audio,
                                         reference_audio_sr,
                                         batch_index_list,
                                         speed_factor,
                                         split_bucket)