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# Copyright (c) Meta Platforms, Inc. and affiliates. | |
# All rights reserved. | |
# | |
# This source code is licensed under the license found in the | |
# LICENSE file in the root directory of this source tree. | |
""" | |
Main model for using MusicGen. This will combine all the required components | |
and provide easy access to the generation API. | |
""" | |
import os | |
import typing as tp | |
import torch | |
from .encodec import CompressionModel | |
from .lm import LMModel | |
from .builders import get_debug_compression_model, get_debug_lm_model | |
from .loaders import load_compression_model, load_lm_model | |
from ..data.audio_utils import convert_audio | |
from ..modules.conditioners import ConditioningAttributes, WavCondition | |
from ..utils.autocast import TorchAutocast | |
MelodyList = tp.List[tp.Optional[torch.Tensor]] | |
MelodyType = tp.Union[torch.Tensor, MelodyList] | |
class MusicGen: | |
"""MusicGen main model with convenient generation API. | |
Args: | |
name (str): name of the model. | |
compression_model (CompressionModel): Compression model | |
used to map audio to invertible discrete representations. | |
lm (LMModel): Language model over discrete representations. | |
""" | |
def __init__(self, name: str, compression_model: CompressionModel, lm: LMModel): | |
self.name = name | |
self.compression_model = compression_model | |
self.lm = lm | |
self.device = next(iter(lm.parameters())).device | |
self.generation_params: dict = {} | |
self.set_generation_params(duration=15) # 15 seconds by default | |
if self.device.type == 'cpu': | |
self.autocast = TorchAutocast(enabled=False) | |
else: | |
self.autocast = TorchAutocast( | |
enabled=True, device_type=self.device.type, dtype=torch.float16) | |
def frame_rate(self) -> int: | |
"""Roughly the number of AR steps per seconds.""" | |
return self.compression_model.frame_rate | |
def sample_rate(self) -> int: | |
"""Sample rate of the generated audio.""" | |
return self.compression_model.sample_rate | |
def audio_channels(self) -> int: | |
"""Audio channels of the generated audio.""" | |
return self.compression_model.channels | |
def get_pretrained(name: str = 'melody', device='cuda'): | |
"""Return pretrained model, we provide four models: | |
- small (300M), text to music, | |
- medium (1.5B), text to music, | |
- melody (1.5B) text to music and text+melody to music, | |
- large (3.3B), text to music. | |
""" | |
if name == 'debug': | |
# used only for unit tests | |
compression_model = get_debug_compression_model(device) | |
lm = get_debug_lm_model(device) | |
return MusicGen(name, compression_model, lm) | |
if 'MUSICGEN_ROOT' in os.environ: | |
ROOT = os.environ['MUSICGEN_ROOT'] | |
if not ROOT.endswith('/'): | |
ROOT += '/' | |
else: | |
ROOT = 'https://dl.fbaipublicfiles.com/audiocraft/musicgen/v0/' | |
compression_model = load_compression_model(ROOT + 'b0dbef54-37d256b525.th', device=device) | |
names = { | |
'small': 'ba7a97ba-830fe5771e', | |
'medium': 'aa73ae27-fbc9f401db', | |
'large': '9b6e835c-1f0cf17b5e', | |
'melody': 'f79af192-61305ffc49', | |
} | |
sig = names[name] | |
lm = load_lm_model(ROOT + f'{sig}.th', device=device) | |
return MusicGen(name, compression_model, lm) | |
def set_generation_params(self, use_sampling: bool = True, top_k: int = 250, | |
top_p: float = 0.0, temperature: float = 1.0, | |
duration: float = 30.0, cfg_coef: float = 3.0, | |
two_step_cfg: bool = False): | |
"""Set the generation parameters for MusicGen. | |
Args: | |
use_sampling (bool, optional): Use sampling if True, else do argmax decoding. Defaults to True. | |
top_k (int, optional): top_k used for sampling. Defaults to 250. | |
top_p (float, optional): top_p used for sampling, when set to 0 top_k is used. Defaults to 0.0. | |
temperature (float, optional): Softmax temperature parameter. Defaults to 1.0. | |
duration (float, optional): Duration of the generated waveform. Defaults to 30.0. | |
cfg_coef (float, optional): Coefficient used for classifier free guidance. Defaults to 3.0. | |
two_step_cfg (bool, optional): If True, performs 2 forward for Classifier Free Guidance, | |
instead of batching together the two. This has some impact on how things | |
are padded but seems to have little impact in practice. | |
""" | |
assert duration <= 30, "The MusicGen cannot generate more than 30 seconds" | |
self.generation_params = { | |
'max_gen_len': int(duration * self.frame_rate), | |
'use_sampling': use_sampling, | |
'temp': temperature, | |
'top_k': top_k, | |
'top_p': top_p, | |
'cfg_coef': cfg_coef, | |
'two_step_cfg': two_step_cfg, | |
} | |
def generate_unconditional(self, num_samples: int, progress: bool = False) -> torch.Tensor: | |
"""Generate samples in an unconditional manner. | |
Args: | |
num_samples (int): Number of samples to be generated. | |
progress (bool, optional): Flag to display progress of the generation process. Defaults to False. | |
""" | |
descriptions: tp.List[tp.Optional[str]] = [None] * num_samples | |
attributes, prompt_tokens = self._prepare_tokens_and_attributes(descriptions, None) | |
return self._generate_tokens(attributes, prompt_tokens, progress) | |
def generate(self, descriptions: tp.List[str], progress: bool = False) -> torch.Tensor: | |
"""Generate samples conditioned on text. | |
Args: | |
descriptions (tp.List[str]): A list of strings used as text conditioning. | |
progress (bool, optional): Flag to display progress of the generation process. Defaults to False. | |
""" | |
attributes, prompt_tokens = self._prepare_tokens_and_attributes(descriptions, None) | |
assert prompt_tokens is None | |
return self._generate_tokens(attributes, prompt_tokens, progress) | |
def generate_with_chroma(self, descriptions: tp.List[str], melody_wavs: MelodyType, | |
melody_sample_rate: int, progress: bool = False) -> torch.Tensor: | |
"""Generate samples conditioned on text and melody. | |
Args: | |
descriptions (tp.List[str]): A list of strings used as text conditioning. | |
melody_wavs: (torch.Tensor or list of Tensor): A batch of waveforms used as | |
melody conditioning. Should have shape [B, C, T] with B matching the description length, | |
C=1 or 2. It can be [C, T] if there is a single description. It can also be | |
a list of [C, T] tensors. | |
melody_sample_rate: (int): Sample rate of the melody waveforms. | |
progress (bool, optional): Flag to display progress of the generation process. Defaults to False. | |
""" | |
if isinstance(melody_wavs, torch.Tensor): | |
if melody_wavs.dim() == 2: | |
melody_wavs = melody_wavs[None] | |
if melody_wavs.dim() != 3: | |
raise ValueError("Melody wavs should have a shape [B, C, T].") | |
melody_wavs = list(melody_wavs) | |
else: | |
for melody in melody_wavs: | |
if melody is not None: | |
assert melody.dim() == 2, "One melody in the list has the wrong number of dims." | |
melody_wavs = [ | |
convert_audio(wav, melody_sample_rate, self.sample_rate, self.audio_channels) | |
if wav is not None else None | |
for wav in melody_wavs] | |
attributes, prompt_tokens = self._prepare_tokens_and_attributes(descriptions=descriptions, prompt=None, | |
melody_wavs=melody_wavs) | |
assert prompt_tokens is None | |
return self._generate_tokens(attributes, prompt_tokens, progress) | |
def generate_continuation(self, prompt: torch.Tensor, prompt_sample_rate: int, | |
descriptions: tp.Optional[tp.List[tp.Optional[str]]] = None, | |
progress: bool = False) -> torch.Tensor: | |
"""Generate samples conditioned on audio prompts. | |
Args: | |
prompt (torch.Tensor): A batch of waveforms used for continuation. | |
Prompt should be [B, C, T], or [C, T] if only one sample is generated. | |
prompt_sample_rate (int): Sampling rate of the given audio waveforms. | |
descriptions (tp.List[str], optional): A list of strings used as text conditioning. Defaults to None. | |
progress (bool, optional): Flag to display progress of the generation process. Defaults to False. | |
""" | |
if prompt.dim() == 2: | |
prompt = prompt[None] | |
if prompt.dim() != 3: | |
raise ValueError("prompt should have 3 dimensions: [B, C, T] (C = 1).") | |
prompt = convert_audio(prompt, prompt_sample_rate, self.sample_rate, self.audio_channels) | |
if descriptions is None: | |
descriptions = [None] * len(prompt) | |
attributes, prompt_tokens = self._prepare_tokens_and_attributes(descriptions, prompt) | |
assert prompt_tokens is not None | |
return self._generate_tokens(attributes, prompt_tokens, progress) | |
def _prepare_tokens_and_attributes( | |
self, | |
descriptions: tp.Sequence[tp.Optional[str]], | |
prompt: tp.Optional[torch.Tensor], | |
melody_wavs: tp.Optional[MelodyList] = None, | |
) -> tp.Tuple[tp.List[ConditioningAttributes], tp.Optional[torch.Tensor]]: | |
"""Prepare model inputs. | |
Args: | |
descriptions (tp.List[str]): A list of strings used as text conditioning. | |
prompt (torch.Tensor): A batch of waveforms used for continuation. | |
melody_wavs (tp.Optional[torch.Tensor], optional): A batch of waveforms | |
used as melody conditioning. Defaults to None. | |
""" | |
attributes = [ | |
ConditioningAttributes(text={'description': description}) | |
for description in descriptions] | |
if melody_wavs is None: | |
for attr in attributes: | |
attr.wav['self_wav'] = WavCondition( | |
torch.zeros((1, 1), device=self.device), | |
torch.tensor([0], device=self.device), | |
path='null_wav') # type: ignore | |
else: | |
if self.name != "melody": | |
raise RuntimeError("This model doesn't support melody conditioning. " | |
"Use the `melody` model.") | |
assert len(melody_wavs) == len(descriptions), \ | |
f"number of melody wavs must match number of descriptions! " \ | |
f"got melody len={len(melody_wavs)}, and descriptions len={len(descriptions)}" | |
for attr, melody in zip(attributes, melody_wavs): | |
if melody is None: | |
attr.wav['self_wav'] = WavCondition( | |
torch.zeros((1, 1), device=self.device), | |
torch.tensor([0], device=self.device), | |
path='null_wav') # type: ignore | |
else: | |
attr.wav['self_wav'] = WavCondition( | |
melody.to(device=self.device), | |
torch.tensor([melody.shape[-1]], device=self.device)) | |
if prompt is not None: | |
if descriptions is not None: | |
assert len(descriptions) == len(prompt), "Prompt and nb. descriptions doesn't match" | |
prompt = prompt.to(self.device) | |
prompt_tokens, scale = self.compression_model.encode(prompt) | |
assert scale is None | |
else: | |
prompt_tokens = None | |
return attributes, prompt_tokens | |
def _generate_tokens(self, attributes: tp.List[ConditioningAttributes], | |
prompt_tokens: tp.Optional[torch.Tensor], progress: bool = False) -> torch.Tensor: | |
"""Generate discrete audio tokens given audio prompt and/or conditions. | |
Args: | |
attributes (tp.List[ConditioningAttributes]): Conditions used for generation (text/melody). | |
prompt_tokens (tp.Optional[torch.Tensor]): Audio prompt used for continuation. | |
progress (bool, optional): Flag to display progress of the generation process. Defaults to False. | |
Returns: | |
torch.Tensor: Generated audio, of shape [B, C, T], T is defined by the generation params. | |
""" | |
def _progress_callback(generated_tokens: int, tokens_to_generate: int): | |
print(f'{generated_tokens: 6d} / {tokens_to_generate: 6d}', end='\r') | |
if prompt_tokens is not None: | |
assert self.generation_params['max_gen_len'] > prompt_tokens.shape[-1], \ | |
"Prompt is longer than audio to generate" | |
callback = None | |
if progress: | |
callback = _progress_callback | |
# generate by sampling from LM | |
with self.autocast: | |
gen_tokens = self.lm.generate(prompt_tokens, attributes, callback=callback, **self.generation_params) | |
# generate audio | |
assert gen_tokens.dim() == 3 | |
with torch.no_grad(): | |
gen_audio = self.compression_model.decode(gen_tokens, None) | |
return gen_audio | |