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import io
import os
import pickle
from typing import Optional, Dict, Callable

import numpy as np
import torch
import torch.nn as nn
import torchaudio

from transformers import PreTrainedModel

from .configuration_speech_encoder import SpeechEncoderConfig


def wrap_bos_eos(
    units: torch.Tensor,
    durations: torch.Tensor,
    f0: torch.Tensor | None,
    dense_features: torch.Tensor,
    bos: torch.Tensor,
    eos: torch.Tensor,
):
    # bos/eos are 1-element tensors on the right device/dtype
    one = durations.new_ones(1)
    units = torch.cat([bos.to(units.device), units, eos.to(units.device)], dim=0)
    durations = torch.cat([one, durations, one], dim=0)
    if f0 is not None:
        # pad f0 with edge values
        f0 = torch.cat([f0[:1], f0, f0[-1:]], dim=0)
    return units, durations, f0, dense_features


# ----------------------------
# Dense feature backends (HuBERT)
# ----------------------------

class _FairseqHubertDense(nn.Module):
    """
    Loads a fairseq HuBERT checkpoint (.pt) and exposes extract_features() at a
    given transformer layer.
    """
    def __init__(self, ckpt_path: str, layer: int, expected_sr: int = 16000, hop: int = 320):
        super().__init__()
        try:
            from fairseq import checkpoint_utils
        except Exception as e:
            raise ImportError(
                "fairseq is required to load a .pt HuBERT checkpoint. "
                "Please `pip install fairseq` in your runtime."
            ) from e

        models, _, _ = checkpoint_utils.load_model_ensemble_and_task([ckpt_path])
        self.model = models[0]
        self.model.eval()
        for p in self.model.parameters():
            p.requires_grad_(False)

        self.output_layer = int(layer)
        self.expected_sample_rate = int(expected_sr)
        self.code_hop_size = int(hop)

    @torch.no_grad()
    def forward(self, waveform: torch.Tensor) -> torch.Tensor:
        if waveform.ndim > 1:
            waveform = waveform.mean(0)
        wav = waveform.unsqueeze(0)  # (1, T)
        # fairseq HuBERT exposes extract_features(...)
        feats, _ = self.model.extract_features(wav, output_layer=self.output_layer)
        # feats: (B, T, C)
        return feats[0]  # (T, C)


class _TransformersHubertDense(nn.Module):
    """
    Uses transformers' facebook/hubert-* checkpoints.
    """
    def __init__(self, hf_name: str, layer: int, expected_sr: int = 16000, hop: int = 320):
        super().__init__()
        from transformers import AutoModel
        self.backbone = AutoModel.from_pretrained(hf_name)
        self.backbone.eval()
        for p in self.backbone.parameters():
            p.requires_grad_(False)
        self.layer = int(layer)
        self.expected_sample_rate = int(expected_sr)
        self.code_hop_size = int(hop)

    @torch.no_grad()
    def forward(self, waveform: torch.Tensor) -> torch.Tensor:
        if waveform.ndim > 1:
            waveform = waveform.mean(0)
        # transformers hubert expects (batch, time); we pass raw PCM;
        # hidden_states=True to get all layers
        out = self.backbone(
            inputs_embeds=None,
            input_values=waveform.unsqueeze(0),
            output_hidden_states=True,
        )
        # hidden_states is a tuple: [emb, layer1, ..., layerN]
        hidden = out.hidden_states[self.layer]  # (B, T, C)
        return hidden[0]


# ----------------------------
# KMeans quantizer
# ----------------------------

class KMeansQuantizer(nn.Module):
    """
    Simple KMeans quantizer: nearest center assignment per frame.
    Loads centers from:
      * .pt (Tensor or dict with keys: cluster_centers, cluster_centers_, centroids, centers)
      * .npy
      * pickle/joblib of a scikit KMeans with .cluster_centers_
    """
    def __init__(self, centers: torch.Tensor):
        super().__init__()
        assert centers.ndim == 2, "centers must be (K, D)"
        self.register_buffer("centers", centers.float())

    @property
    def vocab_size(self) -> int:
        return int(self.centers.size(0))

    @staticmethod
    def _to_tensor(x):
        if torch.is_tensor(x):
            return x
        return torch.from_numpy(np.asarray(x))

    @classmethod
    def from_file(cls, path: str, key: str = "") -> "KMeansQuantizer":
        path = os.fspath(path)
        if not os.path.exists(path):
            raise FileNotFoundError(f"KMeans file not found: {path}")

        centers = None

        if path.endswith(".pt") or path.endswith(".pth"):
            obj = torch.load(path, map_location="cpu")
            if torch.is_tensor(obj):
                centers = obj
            elif isinstance(obj, dict):
                for k in [key, "cluster_centers", "cluster_centers_", "centroids", "centers"]:
                    if k and k in obj:
                        centers = cls._to_tensor(obj[k]); break
                if centers is None:
                    # Some dumps wrap centers deeper: {'state': {'centers': ...}}
                    for v in obj.values():
                        if isinstance(v, dict):
                            for k in ["cluster_centers", "cluster_centers_", "centroids", "centers"]:
                                if k in v:
                                    centers = cls._to_tensor(v[k]); break
                            if centers is not None:
                                break

        if centers is None and path.endswith(".npy"):
            centers = torch.from_numpy(np.load(path))

        if centers is None:
            # Try joblib/pickle
            try:
                import joblib
                obj = joblib.load(path)
            except Exception:
                with open(path, "rb") as f:
                    obj = pickle.load(f)
            if hasattr(obj, "cluster_centers_"):
                centers = torch.from_numpy(np.asarray(obj.cluster_centers_))

        if centers is None:
            raise ValueError(
                f"Could not load KMeans centers from {path}. "
                "Supported: .pt (tensor/dict), .npy, pickled sklearn KMeans."
            )

        return cls(centers.float())

    @torch.no_grad()
    def forward(self, dense_features: torch.Tensor) -> torch.Tensor:
        """
        dense_features: (T, D) or (B, T, D) -> returns (T,) or (B,T,) int64
        """
        x = dense_features
        if x.ndim == 2:   # (T, D)
            dist = torch.cdist(x.to(self.centers.dtype), self.centers)  # (T, K)
            return torch.argmin(dist, dim=-1).to(torch.long)
        elif x.ndim == 3:  # (B, T, D)
            B, T, D = x.shape
            x2 = x.reshape(B * T, D)
            dist = torch.cdist(x2.to(self.centers.dtype), self.centers)  # (B*T, K)
            ids = torch.argmin(dist, dim=-1).to(torch.long).view(B, T)
            return ids
        else:
            raise ValueError("dense_features must be (T,D) or (B,T,D)")


# ----------------------------
# SpeechEncoder (HF-ready)
# ----------------------------

F0_FRAME_SPACE = 0.01  # seconds; kept for API completeness (we don't compute F0 here)


class SpeechEncoder(PreTrainedModel):
    """
    Hugging Face–ready port of the Textless 'SpeechEncoder'.

    * Has the same public methods as the original (by_name, maybe_resample, forward, properties).
    * Loads your uploaded HuBERT checkpoint and KMeans centers from the repo.
    * `need_f0` is supported as a flag, but F0 extraction is not implemented in this minimal port.
    """
    config_class = SpeechEncoderConfig

    def __init__(
        self,
        dense_model: nn.Module,
        quantizer_model: nn.Module,
        deduplicate: bool,
        add_bos_eos: bool = False,
        need_f0: bool = False,
        f0_normalizer: Optional[Callable] = None,
        f0_quantizer: Optional[Callable] = None,
        config: Optional[SpeechEncoderConfig] = None,
    ):
        super().__init__(config if config is not None else SpeechEncoderConfig())
        self.dense_model = dense_model
        self.quantizer_model = quantizer_model

        self.deduplicate = bool(deduplicate)
        self.add_bos_eos = bool(add_bos_eos)
        self.need_f0 = bool(need_f0)
        self.f0_normalizer = f0_normalizer
        self.f0_quantizer = f0_quantizer

        self.unit_vocab_size = int(self.quantizer_model.vocab_size)

        bos_id = self.config.bos_id if self.config and self.config.bos_id is not None else self.unit_vocab_size
        eos_id = self.config.eos_id if self.config and self.config.eos_id is not None else self.unit_vocab_size + 1
        self.register_buffer("bos", torch.tensor([bos_id], dtype=torch.long))
        self.register_buffer("eos", torch.tensor([eos_id], dtype=torch.long))

        # used only for device tracking (mimics the original)
        self.register_buffer("_float_tensor", torch.tensor([0.0], dtype=torch.float))

        # Optional feature normalization before K-Means
        self._feature_norm = getattr(self.config, "feature_norm", None)

    # ---------- HF convenience: override from_pretrained to pick up assets ----------
    @classmethod
    def from_pretrained(cls, pretrained_model_name_or_path, *model_args, **kwargs):
        """
        Loads config, constructs dense+quantizer from files inside the repo,
        and returns a ready-to-use SpeechEncoder (no weights to load into state_dict).
        """
        config = SpeechEncoderConfig.from_pretrained(pretrained_model_name_or_path, **kwargs)

        # Resolve local paths to uploaded assets
        repo_root = os.fspath(pretrained_model_name_or_path)
        hubert_path = os.path.join(repo_root, config.hubert_ckpt)
        quant_path = os.path.join(repo_root, config.quantizer_file)

        # Dense backend
        if config.hubert_backend == "fairseq":
            dense = _FairseqHubertDense(
                ckpt_path=hubert_path,
                layer=config.hubert_layer,
                expected_sr=config.expected_sample_rate,
                hop=config.code_hop_size,
            )
        elif config.hubert_backend == "transformers":
            dense = _TransformersHubertDense(
                hf_name=config.hubert_hf_name,
                layer=config.hubert_layer,
                expected_sr=config.expected_sample_rate,
                hop=config.code_hop_size,
            )
        else:
            raise ValueError("hubert_backend must be 'fairseq' or 'transformers'")

        # Quantizer
        quant = KMeansQuantizer.from_file(quant_path, key=config.quantizer_key)

        # Construct the encoder (HF PreTrainedModel base will still attach config)
        model = cls(
            dense_model=dense,
            quantizer_model=quant,
            deduplicate=config.deduplicate,
            add_bos_eos=config.add_bos_eos,
            need_f0=config.need_f0,
            f0_normalizer=None,
            f0_quantizer=None,
            config=config,
        )
        return model

    # ---------- Original "by_name" API (kept for drop-in parity) ----------
    @classmethod
    def by_name(
        cls,
        dense_model_name: str,
        quantizer_model_name: str,
        vocab_size: int,
        deduplicate: bool,
        add_bos_eos: bool = False,
        need_f0: bool = False,
        f0_normalizer: Optional[Callable] = None,
        f0_quantizer: Optional[Callable] = None,
        # HF-specific args to locate assets if you don't use .from_pretrained(...)
        hubert_backend: str = "fairseq",
        hubert_ckpt: Optional[str] = None,
        hubert_hf_name: str = "facebook/hubert-base-ls960",
        hubert_layer: int = 9,
        quantizer_file: Optional[str] = None,
        quantizer_key: str = "",
        expected_sample_rate: int = 16000,
        code_hop_size: int = 320,
    ) -> "SpeechEncoder":
        """
        Mirrors textlesslib's SpeechEncoder.by_name. For HF usage prefer:
            AutoModel.from_pretrained(repo, trust_remote_code=True)
        """
        # dense_model_name is kept for parity; we only support HuBERT here
        if hubert_backend == "fairseq":
            if not hubert_ckpt:
                raise ValueError("Provide hubert_ckpt (path to .pt) when hubert_backend='fairseq'.")
            dense = _FairseqHubertDense(hubert_ckpt, layer=hubert_layer,
                                        expected_sr=expected_sample_rate, hop=code_hop_size)
        elif hubert_backend == "transformers":
            dense = _TransformersHubertDense(hubert_hf_name, layer=hubert_layer,
                                             expected_sr=expected_sample_rate, hop=code_hop_size)
        else:
            raise ValueError("hubert_backend must be 'fairseq' or 'transformers'")

        if quantizer_model_name.lower() != "kmeans":
            raise ValueError("Only 'kmeans' quantizer is supported in this port.")
        if not quantizer_file:
            raise ValueError("Provide quantizer_file (path to centers).")
        quant = KMeansQuantizer.from_file(quantizer_file, key=quantizer_key)

        # Sanity check on vocab size if user passed it
        if vocab_size is not None and int(vocab_size) != quant.vocab_size:
            raise ValueError(f"vocab_size={vocab_size} does not match centers K={quant.vocab_size}")

        cfg = SpeechEncoderConfig(
            hubert_backend=hubert_backend,
            hubert_ckpt=hubert_ckpt or "",
            hubert_hf_name=hubert_hf_name,
            hubert_layer=hubert_layer,
            expected_sample_rate=expected_sample_rate,
            code_hop_size=code_hop_size,
            quantizer_file=os.path.basename(quantizer_file),
            deduplicate=deduplicate,
            add_bos_eos=add_bos_eos,
            need_f0=need_f0,
        )
        return cls(dense, quant, deduplicate, add_bos_eos, need_f0, f0_normalizer, f0_quantizer, config=cfg)

    # ---------- Properties (parity) ----------
    @property
    def device(self) -> torch.device:
        return self._float_tensor.device

    @property
    def vocab_size(self) -> int:
        return self.quantizer_model.vocab_size

    @property
    def code_hop_size(self) -> int:
        return getattr(self.dense_model, "code_hop_size", 320)

    @property
    def expected_sample_rate(self) -> int:
        return getattr(self.dense_model, "expected_sample_rate", 16000)

    @property
    def f0_code_ratio(self) -> float:
        # F0 frames per unit frame
        return self.code_hop_size / self.expected_sample_rate / F0_FRAME_SPACE

    # ---------- Resampling ----------
    def maybe_resample(self, waveform: torch.Tensor, input_sample_rate: int) -> torch.Tensor:
        if int(input_sample_rate) == int(self.expected_sample_rate):
            return waveform
        return torchaudio.functional.resample(
            waveform, int(input_sample_rate), int(self.expected_sample_rate)
        )

    # ---------- Forward (parity) ----------
    @torch.no_grad()
    def forward(self, waveform: torch.Tensor, speaker: Optional[str] = None) -> Dict[str, torch.Tensor]:
        """
        Returns:
          {
            "units": LongTensor [U],
            "durations": LongTensor [U],  (frame counts)
            "dense": FloatTensor [T, D],
            (optional) "f0": FloatTensor [U] or [T_f0] if implemented
          }
        """
        # 1) Dense features at HuBERT frame rate
        dense_features = self.dense_model(waveform)  # (T, D)

        # optional feature normalization before KMeans (kept simple)
        if self._feature_norm == "unit":
            eps = 1e-6
            dense_features = dense_features / (dense_features.norm(dim=-1, keepdim=True) + eps)
        elif self._feature_norm == "layernorm":
            mean = dense_features.mean(dim=-1, keepdim=True)
            std = dense_features.std(dim=-1, keepdim=True).clamp_min(1e-5)
            dense_features = (dense_features - mean) / std

        # 2) KMeans quantization → unit ids (per-frame)
        ids_per_frame = self.quantizer_model(dense_features)  # (T,)

        # 3) Dedup → durations
        if self.deduplicate:
            units, durations = torch.unique_consecutive(ids_per_frame, return_counts=True)
        else:
            units = ids_per_frame
            durations = torch.ones_like(units, dtype=torch.long)

        # 4) (Optional) F0 path — not bundled here
        f0 = None
        if self.need_f0:
            raise NotImplementedError(
                "F0 extraction is not included in this minimal HF port. "
                "Set need_f0=False (as in the reference pipeline)."
            )

        # 5) BOS/EOS wrap (if requested)
        if self.add_bos_eos:
            units, durations, f0, dense_features = wrap_bos_eos(
                units, durations, f0, dense_features, self.bos, self.eos
            )

        item = {
            "units": units.to(self.device),
            "durations": durations.to(self.device),
            "dense": dense_features.to(self.device),
        }
        if f0 is not None:
            item["f0"] = f0.to(self.device)
        return item