# Copyright (c) 2024 NVIDIA CORPORATION.
#   Licensed under the MIT license.

# Adapted from https://github.com/jik876/hifi-gan under the MIT license.
#   LICENSE is in incl_licenses directory.

import math
import os
import random
import torch
import torch.utils.data
import numpy as np
from librosa.util import normalize
from scipy.io.wavfile import read
from librosa.filters import mel as librosa_mel_fn
import pathlib
from tqdm import tqdm

MAX_WAV_VALUE = 32767.0  # NOTE: 32768.0 -1 to prevent int16 overflow (results in popping sound in corner cases)


def load_wav(full_path, sr_target):
    sampling_rate, data = read(full_path)
    if sampling_rate != sr_target:
        raise RuntimeError(
            f"Sampling rate of the file {full_path} is {sampling_rate} Hz, but the model requires {sr_target} Hz"
        )
    return data, sampling_rate


def dynamic_range_compression(x, C=1, clip_val=1e-5):
    return np.log(np.clip(x, a_min=clip_val, a_max=None) * C)


def dynamic_range_decompression(x, C=1):
    return np.exp(x) / C


def dynamic_range_compression_torch(x, C=1, clip_val=1e-5):
    return torch.log(torch.clamp(x, min=clip_val) * C)


def dynamic_range_decompression_torch(x, C=1):
    return torch.exp(x) / C


def spectral_normalize_torch(magnitudes):
    return dynamic_range_compression_torch(magnitudes)


def spectral_de_normalize_torch(magnitudes):
    return dynamic_range_decompression_torch(magnitudes)


mel_basis_cache = {}
hann_window_cache = {}


def mel_spectrogram(
    y: torch.Tensor,
    n_fft: int,
    num_mels: int,
    sampling_rate: int,
    hop_size: int,
    win_size: int,
    fmin: int,
    fmax: int = None,
    center: bool = False,
) -> torch.Tensor:
    """
    Calculate the mel spectrogram of an input signal.
    This function uses slaney norm for the librosa mel filterbank (using librosa.filters.mel) and uses Hann window for STFT (using torch.stft).

    Args:
        y (torch.Tensor): Input signal.
        n_fft (int): FFT size.
        num_mels (int): Number of mel bins.
        sampling_rate (int): Sampling rate of the input signal.
        hop_size (int): Hop size for STFT.
        win_size (int): Window size for STFT.
        fmin (int): Minimum frequency for mel filterbank.
        fmax (int): Maximum frequency for mel filterbank. If None, defaults to half the sampling rate (fmax = sr / 2.0) inside librosa_mel_fn
        center (bool): Whether to pad the input to center the frames. Default is False.

    Returns:
        torch.Tensor: Mel spectrogram.
    """
    if torch.min(y) < -1.0:
        print(f"[WARNING] Min value of input waveform signal is {torch.min(y)}")
    if torch.max(y) > 1.0:
        print(f"[WARNING] Max value of input waveform signal is {torch.max(y)}")

    device = y.device
    key = f"{n_fft}_{num_mels}_{sampling_rate}_{hop_size}_{win_size}_{fmin}_{fmax}_{device}"

    if key not in mel_basis_cache:
        mel = librosa_mel_fn(
            sr=sampling_rate, n_fft=n_fft, n_mels=num_mels, fmin=fmin, fmax=fmax
        )
        mel_basis_cache[key] = torch.from_numpy(mel).float().to(device)
        hann_window_cache[key] = torch.hann_window(win_size).to(device)

    mel_basis = mel_basis_cache[key]
    hann_window = hann_window_cache[key]

    padding = (n_fft - hop_size) // 2
    y = torch.nn.functional.pad(
        y.unsqueeze(1), (padding, padding), mode="reflect"
    ).squeeze(1)

    spec = torch.stft(
        y,
        n_fft,
        hop_length=hop_size,
        win_length=win_size,
        window=hann_window,
        center=center,
        pad_mode="reflect",
        normalized=False,
        onesided=True,
        return_complex=True,
    )
    spec = torch.sqrt(torch.view_as_real(spec).pow(2).sum(-1) + 1e-9)

    mel_spec = torch.matmul(mel_basis, spec)
    mel_spec = spectral_normalize_torch(mel_spec)

    return mel_spec


def get_mel_spectrogram(wav, h):
    """
    Generate mel spectrogram from a waveform using given hyperparameters.

    Args:
        wav (torch.Tensor): Input waveform.
        h: Hyperparameters object with attributes n_fft, num_mels, sampling_rate, hop_size, win_size, fmin, fmax.

    Returns:
        torch.Tensor: Mel spectrogram.
    """
    return mel_spectrogram(
        wav,
        h.n_fft,
        h.num_mels,
        h.sampling_rate,
        h.hop_size,
        h.win_size,
        h.fmin,
        h.fmax,
    )


def get_dataset_filelist(a):
    training_files = []
    validation_files = []
    list_unseen_validation_files = []

    with open(a.input_training_file, "r", encoding="utf-8") as fi:
        training_files = [
            os.path.join(a.input_wavs_dir, x.split("|")[0] + ".wav")
            for x in fi.read().split("\n")
            if len(x) > 0
        ]
        print(f"first training file: {training_files[0]}")

    with open(a.input_validation_file, "r", encoding="utf-8") as fi:
        validation_files = [
            os.path.join(a.input_wavs_dir, x.split("|")[0] + ".wav")
            for x in fi.read().split("\n")
            if len(x) > 0
        ]
        print(f"first validation file: {validation_files[0]}")

    for i in range(len(a.list_input_unseen_validation_file)):
        with open(a.list_input_unseen_validation_file[i], "r", encoding="utf-8") as fi:
            unseen_validation_files = [
                os.path.join(a.list_input_unseen_wavs_dir[i], x.split("|")[0] + ".wav")
                for x in fi.read().split("\n")
                if len(x) > 0
            ]
            print(
                f"first unseen {i}th validation fileset: {unseen_validation_files[0]}"
            )
            list_unseen_validation_files.append(unseen_validation_files)

    return training_files, validation_files, list_unseen_validation_files


class MelDataset(torch.utils.data.Dataset):
    def __init__(
        self,
        training_files,
        hparams,
        segment_size,
        n_fft,
        num_mels,
        hop_size,
        win_size,
        sampling_rate,
        fmin,
        fmax,
        split=True,
        shuffle=True,
        n_cache_reuse=1,
        device=None,
        fmax_loss=None,
        fine_tuning=False,
        base_mels_path=None,
        is_seen=True,
    ):
        self.audio_files = training_files
        random.seed(1234)
        if shuffle:
            random.shuffle(self.audio_files)
        self.hparams = hparams
        self.is_seen = is_seen
        if self.is_seen:
            self.name = pathlib.Path(self.audio_files[0]).parts[0]
        else:
            self.name = "-".join(pathlib.Path(self.audio_files[0]).parts[:2]).strip("/")

        self.segment_size = segment_size
        self.sampling_rate = sampling_rate
        self.split = split
        self.n_fft = n_fft
        self.num_mels = num_mels
        self.hop_size = hop_size
        self.win_size = win_size
        self.fmin = fmin
        self.fmax = fmax
        self.fmax_loss = fmax_loss
        self.cached_wav = None
        self.n_cache_reuse = n_cache_reuse
        self._cache_ref_count = 0
        self.device = device
        self.fine_tuning = fine_tuning
        self.base_mels_path = base_mels_path

        print("[INFO] checking dataset integrity...")
        for i in tqdm(range(len(self.audio_files))):
            assert os.path.exists(
                self.audio_files[i]
            ), f"{self.audio_files[i]} not found"

    def __getitem__(self, index):
        filename = self.audio_files[index]
        if self._cache_ref_count == 0:
            audio, sampling_rate = load_wav(filename, self.sampling_rate)
            audio = audio / MAX_WAV_VALUE
            if not self.fine_tuning:
                audio = normalize(audio) * 0.95
            self.cached_wav = audio
            if sampling_rate != self.sampling_rate:
                raise ValueError(
                    f"{sampling_rate} SR doesn't match target {self.sampling_rate} SR"
                )
            self._cache_ref_count = self.n_cache_reuse
        else:
            audio = self.cached_wav
            self._cache_ref_count -= 1

        audio = torch.FloatTensor(audio)
        audio = audio.unsqueeze(0)

        if not self.fine_tuning:
            if self.split:
                if audio.size(1) >= self.segment_size:
                    max_audio_start = audio.size(1) - self.segment_size
                    audio_start = random.randint(0, max_audio_start)
                    audio = audio[:, audio_start : audio_start + self.segment_size]
                else:
                    audio = torch.nn.functional.pad(
                        audio, (0, self.segment_size - audio.size(1)), "constant"
                    )

                mel = mel_spectrogram(
                    audio,
                    self.n_fft,
                    self.num_mels,
                    self.sampling_rate,
                    self.hop_size,
                    self.win_size,
                    self.fmin,
                    self.fmax,
                    center=False,
                )
            else:  # Validation step
                # Match audio length to self.hop_size * n for evaluation
                if (audio.size(1) % self.hop_size) != 0:
                    audio = audio[:, : -(audio.size(1) % self.hop_size)]
                mel = mel_spectrogram(
                    audio,
                    self.n_fft,
                    self.num_mels,
                    self.sampling_rate,
                    self.hop_size,
                    self.win_size,
                    self.fmin,
                    self.fmax,
                    center=False,
                )
                assert (
                    audio.shape[1] == mel.shape[2] * self.hop_size
                ), f"audio shape {audio.shape} mel shape {mel.shape}"

        else:
            mel = np.load(
                os.path.join(
                    self.base_mels_path,
                    os.path.splitext(os.path.split(filename)[-1])[0] + ".npy",
                )
            )
            mel = torch.from_numpy(mel)

            if len(mel.shape) < 3:
                mel = mel.unsqueeze(0)

            if self.split:
                frames_per_seg = math.ceil(self.segment_size / self.hop_size)

                if audio.size(1) >= self.segment_size:
                    mel_start = random.randint(0, mel.size(2) - frames_per_seg - 1)
                    mel = mel[:, :, mel_start : mel_start + frames_per_seg]
                    audio = audio[
                        :,
                        mel_start
                        * self.hop_size : (mel_start + frames_per_seg)
                        * self.hop_size,
                    ]
                else:
                    mel = torch.nn.functional.pad(
                        mel, (0, frames_per_seg - mel.size(2)), "constant"
                    )
                    audio = torch.nn.functional.pad(
                        audio, (0, self.segment_size - audio.size(1)), "constant"
                    )

        mel_loss = mel_spectrogram(
            audio,
            self.n_fft,
            self.num_mels,
            self.sampling_rate,
            self.hop_size,
            self.win_size,
            self.fmin,
            self.fmax_loss,
            center=False,
        )

        return (mel.squeeze(), audio.squeeze(0), filename, mel_loss.squeeze())

    def __len__(self):
        return len(self.audio_files)