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import math
from dataclasses import dataclass
from pathlib import Path
from typing import Union
import numpy as np
import torch
import tqdm
from audiotools import AudioSignal
from torch import nn
SUPPORTED_VERSIONS = ["1.0.0"]
@dataclass
class DACFile:
codes: torch.Tensor
# Metadata
chunk_length: int
original_length: int
input_db: float
channels: int
sample_rate: int
padding: bool
dac_version: str
def save(self, path):
artifacts = {
"codes": self.codes.numpy().astype(np.uint16),
"metadata": {
"input_db": self.input_db.numpy().astype(np.float32),
"original_length": self.original_length,
"sample_rate": self.sample_rate,
"chunk_length": self.chunk_length,
"channels": self.channels,
"padding": self.padding,
"dac_version": SUPPORTED_VERSIONS[-1],
},
}
path = Path(path).with_suffix(".dac")
with open(path, "wb") as f:
np.save(f, artifacts)
return path
@classmethod
def load(cls, path):
artifacts = np.load(path, allow_pickle=True)[()]
codes = torch.from_numpy(artifacts["codes"].astype(int))
if artifacts["metadata"].get("dac_version", None) not in SUPPORTED_VERSIONS:
raise RuntimeError(
f"Given file {path} can't be loaded with this version of descript-audio-codec."
)
return cls(codes=codes, **artifacts["metadata"])
class CodecMixin:
@property
def padding(self):
if not hasattr(self, "_padding"):
self._padding = True
return self._padding
@padding.setter
def padding(self, value):
assert isinstance(value, bool)
layers = [
l for l in self.modules() if isinstance(l, (nn.Conv1d, nn.ConvTranspose1d))
]
for layer in layers:
if value:
if hasattr(layer, "original_padding"):
layer.padding = layer.original_padding
else:
layer.original_padding = layer.padding
layer.padding = tuple(0 for _ in range(len(layer.padding)))
self._padding = value
def get_delay(self):
# Any number works here, delay is invariant to input length
l_out = self.get_output_length(0)
L = l_out
layers = []
for layer in self.modules():
if isinstance(layer, (nn.Conv1d, nn.ConvTranspose1d)):
layers.append(layer)
for layer in reversed(layers):
d = layer.dilation[0]
k = layer.kernel_size[0]
s = layer.stride[0]
if isinstance(layer, nn.ConvTranspose1d):
L = ((L - d * (k - 1) - 1) / s) + 1
elif isinstance(layer, nn.Conv1d):
L = (L - 1) * s + d * (k - 1) + 1
L = math.ceil(L)
l_in = L
return (l_in - l_out) // 2
def get_output_length(self, input_length):
L = input_length
# Calculate output length
for layer in self.modules():
if isinstance(layer, (nn.Conv1d, nn.ConvTranspose1d)):
d = layer.dilation[0]
k = layer.kernel_size[0]
s = layer.stride[0]
if isinstance(layer, nn.Conv1d):
L = ((L - d * (k - 1) - 1) / s) + 1
elif isinstance(layer, nn.ConvTranspose1d):
L = (L - 1) * s + d * (k - 1) + 1
L = math.floor(L)
return L
@torch.no_grad()
def compress(
self,
audio_path_or_signal: Union[str, Path, AudioSignal],
win_duration: float = 1.0,
verbose: bool = False,
normalize_db: float = -16,
n_quantizers: int = None,
) -> DACFile:
"""Processes an audio signal from a file or AudioSignal object into
discrete codes. This function processes the signal in short windows,
using constant GPU memory.
Parameters
----------
audio_path_or_signal : Union[str, Path, AudioSignal]
audio signal to reconstruct
win_duration : float, optional
window duration in seconds, by default 5.0
verbose : bool, optional
by default False
normalize_db : float, optional
normalize db, by default -16
Returns
-------
DACFile
Object containing compressed codes and metadata
required for decompression
"""
audio_signal = audio_path_or_signal
if isinstance(audio_signal, (str, Path)):
audio_signal = AudioSignal.load_from_file_with_ffmpeg(str(audio_signal))
self.eval()
original_padding = self.padding
original_device = audio_signal.device
audio_signal = audio_signal.clone()
original_sr = audio_signal.sample_rate
resample_fn = audio_signal.resample
loudness_fn = audio_signal.loudness
# If audio is > 10 minutes long, use the ffmpeg versions
if audio_signal.signal_duration >= 10 * 60 * 60:
resample_fn = audio_signal.ffmpeg_resample
loudness_fn = audio_signal.ffmpeg_loudness
original_length = audio_signal.signal_length
resample_fn(self.sample_rate)
input_db = loudness_fn()
if normalize_db is not None:
audio_signal.normalize(normalize_db)
audio_signal.ensure_max_of_audio()
nb, nac, nt = audio_signal.audio_data.shape
audio_signal.audio_data = audio_signal.audio_data.reshape(nb * nac, 1, nt)
win_duration = (
audio_signal.signal_duration if win_duration is None else win_duration
)
if audio_signal.signal_duration <= win_duration:
# Unchunked compression (used if signal length < win duration)
self.padding = True
n_samples = nt
hop = nt
else:
# Chunked inference
self.padding = False
# Zero-pad signal on either side by the delay
audio_signal.zero_pad(self.delay, self.delay)
n_samples = int(win_duration * self.sample_rate)
# Round n_samples to nearest hop length multiple
n_samples = int(math.ceil(n_samples / self.hop_length) * self.hop_length)
hop = self.get_output_length(n_samples)
codes = []
range_fn = range if not verbose else tqdm.trange
for i in range_fn(0, nt, hop):
x = audio_signal[..., i : i + n_samples]
x = x.zero_pad(0, max(0, n_samples - x.shape[-1]))
audio_data = x.audio_data.to(self.device)
audio_data = self.preprocess(audio_data, self.sample_rate)
_, c, _, _, _ = self.encode(audio_data, n_quantizers)
codes.append(c.to(original_device))
chunk_length = c.shape[-1]
codes = torch.cat(codes, dim=-1)
dac_file = DACFile(
codes=codes,
chunk_length=chunk_length,
original_length=original_length,
input_db=input_db,
channels=nac,
sample_rate=original_sr,
padding=self.padding,
dac_version=SUPPORTED_VERSIONS[-1],
)
if n_quantizers is not None:
codes = codes[:, :n_quantizers, :]
self.padding = original_padding
return dac_file
@torch.no_grad()
def decompress(
self,
obj: Union[str, Path, DACFile],
verbose: bool = False,
) -> AudioSignal:
"""Reconstruct audio from a given .dac file
Parameters
----------
obj : Union[str, Path, DACFile]
.dac file location or corresponding DACFile object.
verbose : bool, optional
Prints progress if True, by default False
Returns
-------
AudioSignal
Object with the reconstructed audio
"""
self.eval()
if isinstance(obj, (str, Path)):
obj = DACFile.load(obj)
original_padding = self.padding
self.padding = obj.padding
range_fn = range if not verbose else tqdm.trange
codes = obj.codes
original_device = codes.device
chunk_length = obj.chunk_length
recons = []
for i in range_fn(0, codes.shape[-1], chunk_length):
c = codes[..., i : i + chunk_length].to(self.device)
z = self.quantizer.from_codes(c)[0]
r = self.decode(z)
recons.append(r.to(original_device))
recons = torch.cat(recons, dim=-1)
recons = AudioSignal(recons, self.sample_rate)
resample_fn = recons.resample
loudness_fn = recons.loudness
# If audio is > 10 minutes long, use the ffmpeg versions
if recons.signal_duration >= 10 * 60 * 60:
resample_fn = recons.ffmpeg_resample
loudness_fn = recons.ffmpeg_loudness
recons.normalize(obj.input_db)
resample_fn(obj.sample_rate)
recons = recons[..., : obj.original_length]
loudness_fn()
recons.audio_data = recons.audio_data.reshape(
-1, obj.channels, obj.original_length
)
self.padding = original_padding
return recons
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