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import random
import time
import os
import re
import spaces
import torch
import torch.nn as nn
from loguru import logger
from tqdm import tqdm
import json
import math
from huggingface_hub import hf_hub_download, snapshot_download
# from diffusers.pipelines.pipeline_utils import DiffusionPipeline
from schedulers.scheduling_flow_match_euler_discrete import (
FlowMatchEulerDiscreteScheduler,
)
from schedulers.scheduling_flow_match_heun_discrete import (
FlowMatchHeunDiscreteScheduler,
)
from diffusers.pipelines.stable_diffusion_3.pipeline_stable_diffusion_3 import (
retrieve_timesteps,
)
from diffusers.utils.torch_utils import randn_tensor
from transformers import UMT5EncoderModel, AutoTokenizer
from language_segmentation import LangSegment
from music_dcae.music_dcae_pipeline import MusicDCAE
from models.ace_step_transformer import ACEStepTransformer2DModel
from models.lyrics_utils.lyric_tokenizer import VoiceBpeTokenizer
from apg_guidance import (
apg_forward,
MomentumBuffer,
cfg_forward,
cfg_zero_star,
cfg_double_condition_forward,
)
import torchaudio
import torio
torch.backends.cudnn.benchmark = False
torch.set_float32_matmul_precision("high")
torch.backends.cudnn.deterministic = True
torch.backends.cuda.matmul.allow_tf32 = True
os.environ["TOKENIZERS_PARALLELISM"] = "false"
SUPPORT_LANGUAGES = {
"en": 259,
"de": 260,
"fr": 262,
"es": 284,
"it": 285,
"pt": 286,
"pl": 294,
"tr": 295,
"ru": 267,
"cs": 293,
"nl": 297,
"ar": 5022,
"zh": 5023,
"ja": 5412,
"hu": 5753,
"ko": 6152,
"hi": 6680,
}
structure_pattern = re.compile(r"\[.*?\]")
def ensure_directory_exists(directory):
directory = str(directory)
if not os.path.exists(directory):
os.makedirs(directory)
REPO_ID = "ACE-Step/ACE-Step-v1-3.5B"
# class ACEStepPipeline(DiffusionPipeline):
class ACEStepPipeline:
def __init__(
self,
checkpoint_dir=None,
device_id=0,
dtype="bfloat16",
text_encoder_checkpoint_path=None,
persistent_storage_path=None,
torch_compile=False,
**kwargs,
):
if not checkpoint_dir:
if persistent_storage_path is None:
checkpoint_dir = os.path.join(os.path.dirname(__file__), "checkpoints")
else:
checkpoint_dir = os.path.join(persistent_storage_path, "checkpoints")
ensure_directory_exists(checkpoint_dir)
self.checkpoint_dir = checkpoint_dir
device = (
torch.device(f"cuda:{device_id}")
if torch.cuda.is_available()
else torch.device("cpu")
)
if device.type == "cpu" and torch.backends.mps.is_available():
device = torch.device("mps")
self.dtype = torch.bfloat16 if dtype == "bfloat16" else torch.float32
if device.type == "mps":
self.dtype = torch.float32
self.device = device
self.loaded = False
self.torch_compile = torch_compile
self.lora_path = "none"
def load_lora(self, lora_name_or_path):
if lora_name_or_path != self.lora_path and lora_name_or_path != "none":
if not os.path.exists(lora_name_or_path):
lora_download_path = snapshot_download(
lora_name_or_path, cache_dir=self.checkpoint_dir
)
else:
lora_download_path = lora_name_or_path
if self.lora_path != "none":
self.ace_step_transformer.unload_lora()
self.ace_step_transformer.load_lora_adapter(
os.path.join(lora_download_path, "pytorch_lora_weights.safetensors"),
adapter_name="zh_rap_lora",
with_alpha=True,
)
logger.info(
f"Loading lora weights from: {lora_name_or_path} download path is: {lora_download_path}"
)
self.lora_path = lora_name_or_path
elif self.lora_path != "none" and lora_name_or_path == "none":
logger.info("No lora weights to load.")
self.ace_step_transformer.unload_lora()
def load_checkpoint(self, checkpoint_dir=None):
device = self.device
dcae_model_path = os.path.join(checkpoint_dir, "music_dcae_f8c8")
vocoder_model_path = os.path.join(checkpoint_dir, "music_vocoder")
ace_step_model_path = os.path.join(checkpoint_dir, "ace_step_transformer")
text_encoder_model_path = os.path.join(checkpoint_dir, "umt5-base")
files_exist = (
os.path.exists(os.path.join(dcae_model_path, "config.json"))
and os.path.exists(
os.path.join(dcae_model_path, "diffusion_pytorch_model.safetensors")
)
and os.path.exists(os.path.join(vocoder_model_path, "config.json"))
and os.path.exists(
os.path.join(vocoder_model_path, "diffusion_pytorch_model.safetensors")
)
and os.path.exists(os.path.join(ace_step_model_path, "config.json"))
and os.path.exists(
os.path.join(ace_step_model_path, "diffusion_pytorch_model.safetensors")
)
and os.path.exists(os.path.join(text_encoder_model_path, "config.json"))
and os.path.exists(
os.path.join(text_encoder_model_path, "model.safetensors")
)
and os.path.exists(
os.path.join(text_encoder_model_path, "special_tokens_map.json")
)
and os.path.exists(
os.path.join(text_encoder_model_path, "tokenizer_config.json")
)
and os.path.exists(os.path.join(text_encoder_model_path, "tokenizer.json"))
)
if not files_exist:
logger.info(
f"Checkpoint directory {checkpoint_dir} is not complete, downloading from Hugging Face Hub"
)
# download music dcae model
os.makedirs(dcae_model_path, exist_ok=True)
hf_hub_download(
repo_id=REPO_ID,
subfolder="music_dcae_f8c8",
filename="config.json",
local_dir=checkpoint_dir,
local_dir_use_symlinks=False,
)
hf_hub_download(
repo_id=REPO_ID,
subfolder="music_dcae_f8c8",
filename="diffusion_pytorch_model.safetensors",
local_dir=checkpoint_dir,
local_dir_use_symlinks=False,
)
# download vocoder model
os.makedirs(vocoder_model_path, exist_ok=True)
hf_hub_download(
repo_id=REPO_ID,
subfolder="music_vocoder",
filename="config.json",
local_dir=checkpoint_dir,
local_dir_use_symlinks=False,
)
hf_hub_download(
repo_id=REPO_ID,
subfolder="music_vocoder",
filename="diffusion_pytorch_model.safetensors",
local_dir=checkpoint_dir,
local_dir_use_symlinks=False,
)
# download ace_step transformer model
os.makedirs(ace_step_model_path, exist_ok=True)
hf_hub_download(
repo_id=REPO_ID,
subfolder="ace_step_transformer",
filename="config.json",
local_dir=checkpoint_dir,
local_dir_use_symlinks=False,
)
hf_hub_download(
repo_id=REPO_ID,
subfolder="ace_step_transformer",
filename="diffusion_pytorch_model.safetensors",
local_dir=checkpoint_dir,
local_dir_use_symlinks=False,
)
# download text encoder model
os.makedirs(text_encoder_model_path, exist_ok=True)
hf_hub_download(
repo_id=REPO_ID,
subfolder="umt5-base",
filename="config.json",
local_dir=checkpoint_dir,
local_dir_use_symlinks=False,
)
hf_hub_download(
repo_id=REPO_ID,
subfolder="umt5-base",
filename="model.safetensors",
local_dir=checkpoint_dir,
local_dir_use_symlinks=False,
)
hf_hub_download(
repo_id=REPO_ID,
subfolder="umt5-base",
filename="special_tokens_map.json",
local_dir=checkpoint_dir,
local_dir_use_symlinks=False,
)
hf_hub_download(
repo_id=REPO_ID,
subfolder="umt5-base",
filename="tokenizer_config.json",
local_dir=checkpoint_dir,
local_dir_use_symlinks=False,
)
hf_hub_download(
repo_id=REPO_ID,
subfolder="umt5-base",
filename="tokenizer.json",
local_dir=checkpoint_dir,
local_dir_use_symlinks=False,
)
logger.info("Models downloaded")
dcae_checkpoint_path = dcae_model_path
vocoder_checkpoint_path = vocoder_model_path
ace_step_checkpoint_path = ace_step_model_path
text_encoder_checkpoint_path = text_encoder_model_path
self.music_dcae = MusicDCAE(
dcae_checkpoint_path=dcae_checkpoint_path,
vocoder_checkpoint_path=vocoder_checkpoint_path,
)
self.music_dcae.to(device).eval().to(self.dtype)
self.ace_step_transformer = ACEStepTransformer2DModel.from_pretrained(
ace_step_checkpoint_path, torch_dtype=self.dtype
)
self.ace_step_transformer.to(device).eval().to(self.dtype)
lang_segment = LangSegment()
lang_segment.setfilters(
[
"af",
"am",
"an",
"ar",
"as",
"az",
"be",
"bg",
"bn",
"br",
"bs",
"ca",
"cs",
"cy",
"da",
"de",
"dz",
"el",
"en",
"eo",
"es",
"et",
"eu",
"fa",
"fi",
"fo",
"fr",
"ga",
"gl",
"gu",
"he",
"hi",
"hr",
"ht",
"hu",
"hy",
"id",
"is",
"it",
"ja",
"jv",
"ka",
"kk",
"km",
"kn",
"ko",
"ku",
"ky",
"la",
"lb",
"lo",
"lt",
"lv",
"mg",
"mk",
"ml",
"mn",
"mr",
"ms",
"mt",
"nb",
"ne",
"nl",
"nn",
"no",
"oc",
"or",
"pa",
"pl",
"ps",
"pt",
"qu",
"ro",
"ru",
"rw",
"se",
"si",
"sk",
"sl",
"sq",
"sr",
"sv",
"sw",
"ta",
"te",
"th",
"tl",
"tr",
"ug",
"uk",
"ur",
"vi",
"vo",
"wa",
"xh",
"zh",
"zu",
]
)
self.lang_segment = lang_segment
self.lyric_tokenizer = VoiceBpeTokenizer()
text_encoder_model = UMT5EncoderModel.from_pretrained(
text_encoder_checkpoint_path, torch_dtype=self.dtype
).eval()
text_encoder_model = text_encoder_model.to(device).to(self.dtype)
text_encoder_model.requires_grad_(False)
self.text_encoder_model = text_encoder_model
self.text_tokenizer = AutoTokenizer.from_pretrained(
text_encoder_checkpoint_path
)
self.loaded = True
# compile
if self.torch_compile:
self.music_dcae = torch.compile(self.music_dcae)
self.ace_step_transformer = torch.compile(self.ace_step_transformer)
self.text_encoder_model = torch.compile(self.text_encoder_model)
def get_text_embeddings(self, texts, device, text_max_length=256):
inputs = self.text_tokenizer(
texts,
return_tensors="pt",
padding=True,
truncation=True,
max_length=text_max_length,
)
inputs = {key: value.to(device) for key, value in inputs.items()}
if self.text_encoder_model.device != device:
self.text_encoder_model.to(device)
with torch.no_grad():
outputs = self.text_encoder_model(**inputs)
last_hidden_states = outputs.last_hidden_state
attention_mask = inputs["attention_mask"]
return last_hidden_states, attention_mask
def get_text_embeddings_null(
self, texts, device, text_max_length=256, tau=0.01, l_min=8, l_max=10
):
inputs = self.text_tokenizer(
texts,
return_tensors="pt",
padding=True,
truncation=True,
max_length=text_max_length,
)
inputs = {key: value.to(device) for key, value in inputs.items()}
if self.text_encoder_model.device != device:
self.text_encoder_model.to(device)
def forward_with_temperature(inputs, tau=0.01, l_min=8, l_max=10):
handlers = []
def hook(module, input, output):
output[:] *= tau
return output
for i in range(l_min, l_max):
handler = (
self.text_encoder_model.encoder.block[i]
.layer[0]
.SelfAttention.q.register_forward_hook(hook)
)
handlers.append(handler)
with torch.no_grad():
outputs = self.text_encoder_model(**inputs)
last_hidden_states = outputs.last_hidden_state
for hook in handlers:
hook.remove()
return last_hidden_states
last_hidden_states = forward_with_temperature(inputs, tau, l_min, l_max)
return last_hidden_states
def set_seeds(self, batch_size, manual_seeds=None):
processed_input_seeds = None
if manual_seeds is not None:
if isinstance(manual_seeds, str):
if "," in manual_seeds:
processed_input_seeds = list(map(int, manual_seeds.split(",")))
elif manual_seeds.isdigit():
processed_input_seeds = int(manual_seeds)
elif isinstance(manual_seeds, list) and all(
isinstance(s, int) for s in manual_seeds
):
if len(manual_seeds) > 0:
processed_input_seeds = list(manual_seeds)
elif isinstance(manual_seeds, int):
processed_input_seeds = manual_seeds
random_generators = [
torch.Generator(device=self.device) for _ in range(batch_size)
]
actual_seeds = []
for i in range(batch_size):
current_seed_for_generator = None
if processed_input_seeds is None:
current_seed_for_generator = torch.randint(0, 2**32, (1,)).item()
elif isinstance(processed_input_seeds, int):
current_seed_for_generator = processed_input_seeds
elif isinstance(processed_input_seeds, list):
if i < len(processed_input_seeds):
current_seed_for_generator = processed_input_seeds[i]
else:
current_seed_for_generator = processed_input_seeds[-1]
if current_seed_for_generator is None:
current_seed_for_generator = torch.randint(0, 2**32, (1,)).item()
random_generators[i].manual_seed(current_seed_for_generator)
actual_seeds.append(current_seed_for_generator)
return random_generators, actual_seeds
def get_lang(self, text):
language = "en"
try:
_ = self.lang_segment.getTexts(text)
langCounts = self.lang_segment.getCounts()
language = langCounts[0][0]
if len(langCounts) > 1 and language == "en":
language = langCounts[1][0]
except Exception as err:
language = "en"
return language
def tokenize_lyrics(self, lyrics, debug=False):
lines = lyrics.split("\n")
lyric_token_idx = [261]
for line in lines:
line = line.strip()
if not line:
lyric_token_idx += [2]
continue
lang = self.get_lang(line)
if lang not in SUPPORT_LANGUAGES:
lang = "en"
if "zh" in lang:
lang = "zh"
if "spa" in lang:
lang = "es"
try:
if structure_pattern.match(line):
token_idx = self.lyric_tokenizer.encode(line, "en")
else:
token_idx = self.lyric_tokenizer.encode(line, lang)
if debug:
toks = self.lyric_tokenizer.batch_decode(
[[tok_id] for tok_id in token_idx]
)
logger.info(f"debbug {line} --> {lang} --> {toks}")
lyric_token_idx = lyric_token_idx + token_idx + [2]
except Exception as e:
print("tokenize error", e, "for line", line, "major_language", lang)
return lyric_token_idx
def calc_v(
self,
zt_src,
zt_tar,
t,
encoder_text_hidden_states,
text_attention_mask,
target_encoder_text_hidden_states,
target_text_attention_mask,
speaker_embds,
target_speaker_embeds,
lyric_token_ids,
lyric_mask,
target_lyric_token_ids,
target_lyric_mask,
do_classifier_free_guidance=False,
guidance_scale=1.0,
target_guidance_scale=1.0,
cfg_type="apg",
attention_mask=None,
momentum_buffer=None,
momentum_buffer_tar=None,
return_src_pred=True,
):
noise_pred_src = None
if return_src_pred:
src_latent_model_input = (
torch.cat([zt_src, zt_src]) if do_classifier_free_guidance else zt_src
)
timestep = t.expand(src_latent_model_input.shape[0])
# source
noise_pred_src = self.ace_step_transformer(
hidden_states=src_latent_model_input,
attention_mask=attention_mask,
encoder_text_hidden_states=encoder_text_hidden_states,
text_attention_mask=text_attention_mask,
speaker_embeds=speaker_embds,
lyric_token_idx=lyric_token_ids,
lyric_mask=lyric_mask,
timestep=timestep,
).sample
if do_classifier_free_guidance:
noise_pred_with_cond_src, noise_pred_uncond_src = noise_pred_src.chunk(
2
)
if cfg_type == "apg":
noise_pred_src = apg_forward(
pred_cond=noise_pred_with_cond_src,
pred_uncond=noise_pred_uncond_src,
guidance_scale=guidance_scale,
momentum_buffer=momentum_buffer,
)
elif cfg_type == "cfg":
noise_pred_src = cfg_forward(
cond_output=noise_pred_with_cond_src,
uncond_output=noise_pred_uncond_src,
cfg_strength=guidance_scale,
)
tar_latent_model_input = (
torch.cat([zt_tar, zt_tar]) if do_classifier_free_guidance else zt_tar
)
timestep = t.expand(tar_latent_model_input.shape[0])
# target
noise_pred_tar = self.ace_step_transformer(
hidden_states=tar_latent_model_input,
attention_mask=attention_mask,
encoder_text_hidden_states=target_encoder_text_hidden_states,
text_attention_mask=target_text_attention_mask,
speaker_embeds=target_speaker_embeds,
lyric_token_idx=target_lyric_token_ids,
lyric_mask=target_lyric_mask,
timestep=timestep,
).sample
if do_classifier_free_guidance:
noise_pred_with_cond_tar, noise_pred_uncond_tar = noise_pred_tar.chunk(2)
if cfg_type == "apg":
noise_pred_tar = apg_forward(
pred_cond=noise_pred_with_cond_tar,
pred_uncond=noise_pred_uncond_tar,
guidance_scale=target_guidance_scale,
momentum_buffer=momentum_buffer_tar,
)
elif cfg_type == "cfg":
noise_pred_tar = cfg_forward(
cond_output=noise_pred_with_cond_tar,
uncond_output=noise_pred_uncond_tar,
cfg_strength=target_guidance_scale,
)
return noise_pred_src, noise_pred_tar
@torch.no_grad()
def flowedit_diffusion_process(
self,
encoder_text_hidden_states,
text_attention_mask,
speaker_embds,
lyric_token_ids,
lyric_mask,
target_encoder_text_hidden_states,
target_text_attention_mask,
target_speaker_embeds,
target_lyric_token_ids,
target_lyric_mask,
src_latents,
random_generators=None,
infer_steps=60,
guidance_scale=15.0,
n_min=0,
n_max=1.0,
n_avg=1,
):
do_classifier_free_guidance = True
if guidance_scale == 0.0 or guidance_scale == 1.0:
do_classifier_free_guidance = False
target_guidance_scale = guidance_scale
device = encoder_text_hidden_states.device
dtype = encoder_text_hidden_states.dtype
bsz = encoder_text_hidden_states.shape[0]
scheduler = FlowMatchEulerDiscreteScheduler(
num_train_timesteps=1000,
shift=3.0,
)
T_steps = infer_steps
frame_length = src_latents.shape[-1]
attention_mask = torch.ones(bsz, frame_length, device=device, dtype=dtype)
timesteps, T_steps = retrieve_timesteps(
scheduler, T_steps, device, timesteps=None
)
if do_classifier_free_guidance:
attention_mask = torch.cat([attention_mask] * 2, dim=0)
encoder_text_hidden_states = torch.cat(
[
encoder_text_hidden_states,
torch.zeros_like(encoder_text_hidden_states),
],
0,
)
text_attention_mask = torch.cat([text_attention_mask] * 2, dim=0)
target_encoder_text_hidden_states = torch.cat(
[
target_encoder_text_hidden_states,
torch.zeros_like(target_encoder_text_hidden_states),
],
0,
)
target_text_attention_mask = torch.cat(
[target_text_attention_mask] * 2, dim=0
)
speaker_embds = torch.cat(
[speaker_embds, torch.zeros_like(speaker_embds)], 0
)
target_speaker_embeds = torch.cat(
[target_speaker_embeds, torch.zeros_like(target_speaker_embeds)], 0
)
lyric_token_ids = torch.cat(
[lyric_token_ids, torch.zeros_like(lyric_token_ids)], 0
)
lyric_mask = torch.cat([lyric_mask, torch.zeros_like(lyric_mask)], 0)
target_lyric_token_ids = torch.cat(
[target_lyric_token_ids, torch.zeros_like(target_lyric_token_ids)], 0
)
target_lyric_mask = torch.cat(
[target_lyric_mask, torch.zeros_like(target_lyric_mask)], 0
)
momentum_buffer = MomentumBuffer()
momentum_buffer_tar = MomentumBuffer()
x_src = src_latents
zt_edit = x_src.clone()
xt_tar = None
n_min = int(infer_steps * n_min)
n_max = int(infer_steps * n_max)
logger.info("flowedit start from {} to {}".format(n_min, n_max))
for i, t in tqdm(enumerate(timesteps), total=T_steps):
if i < n_min:
continue
t_i = t / 1000
if i + 1 < len(timesteps):
t_im1 = (timesteps[i + 1]) / 1000
else:
t_im1 = torch.zeros_like(t_i).to(t_i.device)
if i < n_max:
# Calculate the average of the V predictions
V_delta_avg = torch.zeros_like(x_src)
for k in range(n_avg):
fwd_noise = randn_tensor(
shape=x_src.shape,
generator=random_generators,
device=device,
dtype=dtype,
)
zt_src = (1 - t_i) * x_src + (t_i) * fwd_noise
zt_tar = zt_edit + zt_src - x_src
Vt_src, Vt_tar = self.calc_v(
zt_src=zt_src,
zt_tar=zt_tar,
t=t,
encoder_text_hidden_states=encoder_text_hidden_states,
text_attention_mask=text_attention_mask,
target_encoder_text_hidden_states=target_encoder_text_hidden_states,
target_text_attention_mask=target_text_attention_mask,
speaker_embds=speaker_embds,
target_speaker_embeds=target_speaker_embeds,
lyric_token_ids=lyric_token_ids,
lyric_mask=lyric_mask,
target_lyric_token_ids=target_lyric_token_ids,
target_lyric_mask=target_lyric_mask,
do_classifier_free_guidance=do_classifier_free_guidance,
guidance_scale=guidance_scale,
target_guidance_scale=target_guidance_scale,
attention_mask=attention_mask,
momentum_buffer=momentum_buffer,
)
V_delta_avg += (1 / n_avg) * (
Vt_tar - Vt_src
) # - (hfg-1)*( x_src))
# propagate direct ODE
zt_edit = zt_edit.to(torch.float32)
zt_edit = zt_edit + (t_im1 - t_i) * V_delta_avg
zt_edit = zt_edit.to(V_delta_avg.dtype)
else: # i >= T_steps-n_min # regular sampling for last n_min steps
if i == n_max:
fwd_noise = randn_tensor(
shape=x_src.shape,
generator=random_generators,
device=device,
dtype=dtype,
)
scheduler._init_step_index(t)
sigma = scheduler.sigmas[scheduler.step_index]
xt_src = sigma * fwd_noise + (1.0 - sigma) * x_src
xt_tar = zt_edit + xt_src - x_src
_, Vt_tar = self.calc_v(
zt_src=None,
zt_tar=xt_tar,
t=t,
encoder_text_hidden_states=encoder_text_hidden_states,
text_attention_mask=text_attention_mask,
target_encoder_text_hidden_states=target_encoder_text_hidden_states,
target_text_attention_mask=target_text_attention_mask,
speaker_embds=speaker_embds,
target_speaker_embeds=target_speaker_embeds,
lyric_token_ids=lyric_token_ids,
lyric_mask=lyric_mask,
target_lyric_token_ids=target_lyric_token_ids,
target_lyric_mask=target_lyric_mask,
do_classifier_free_guidance=do_classifier_free_guidance,
guidance_scale=guidance_scale,
target_guidance_scale=target_guidance_scale,
attention_mask=attention_mask,
momentum_buffer_tar=momentum_buffer_tar,
return_src_pred=False,
)
dtype = Vt_tar.dtype
xt_tar = xt_tar.to(torch.float32)
prev_sample = xt_tar + (t_im1 - t_i) * Vt_tar
prev_sample = prev_sample.to(dtype)
xt_tar = prev_sample
target_latents = zt_edit if xt_tar is None else xt_tar
return target_latents
def add_latents_noise(
self,
gt_latents,
variance,
noise,
scheduler,
):
bsz = gt_latents.shape[0]
u = torch.tensor([variance] * bsz, dtype=gt_latents.dtype)
indices = (u * scheduler.config.num_train_timesteps).long()
timesteps = scheduler.timesteps.unsqueeze(1).to(gt_latents.dtype)
indices = indices.to(timesteps.device).to(gt_latents.dtype).unsqueeze(1)
nearest_idx = torch.argmin(torch.cdist(indices, timesteps), dim=1)
sigma = (
scheduler.sigmas[nearest_idx]
.flatten()
.to(gt_latents.device)
.to(gt_latents.dtype)
)
while len(sigma.shape) < gt_latents.ndim:
sigma = sigma.unsqueeze(-1)
noisy_image = sigma * noise + (1.0 - sigma) * gt_latents
init_timestep = indices[0]
return noisy_image, init_timestep
@torch.no_grad()
def text2music_diffusion_process(
self,
duration,
encoder_text_hidden_states,
text_attention_mask,
speaker_embds,
lyric_token_ids,
lyric_mask,
random_generators=None,
infer_steps=60,
guidance_scale=15.0,
omega_scale=10.0,
scheduler_type="euler",
cfg_type="apg",
zero_steps=1,
use_zero_init=True,
guidance_interval=0.5,
guidance_interval_decay=1.0,
min_guidance_scale=3.0,
oss_steps=[],
encoder_text_hidden_states_null=None,
use_erg_lyric=False,
use_erg_diffusion=False,
retake_random_generators=None,
retake_variance=0.5,
add_retake_noise=False,
guidance_scale_text=0.0,
guidance_scale_lyric=0.0,
repaint_start=0,
repaint_end=0,
src_latents=None,
audio2audio_enable=False,
ref_audio_strength=0.5,
ref_latents=None,
):
logger.info(
"cfg_type: {}, guidance_scale: {}, omega_scale: {}".format(
cfg_type, guidance_scale, omega_scale
)
)
do_classifier_free_guidance = True
if guidance_scale == 0.0 or guidance_scale == 1.0:
do_classifier_free_guidance = False
do_double_condition_guidance = False
if (
guidance_scale_text is not None
and guidance_scale_text > 1.0
and guidance_scale_lyric is not None
and guidance_scale_lyric > 1.0
):
do_double_condition_guidance = True
logger.info(
"do_double_condition_guidance: {}, guidance_scale_text: {}, guidance_scale_lyric: {}".format(
do_double_condition_guidance,
guidance_scale_text,
guidance_scale_lyric,
)
)
device = encoder_text_hidden_states.device
dtype = encoder_text_hidden_states.dtype
bsz = encoder_text_hidden_states.shape[0]
if scheduler_type == "euler":
scheduler = FlowMatchEulerDiscreteScheduler(
num_train_timesteps=1000,
shift=3.0,
)
elif scheduler_type == "heun":
scheduler = FlowMatchHeunDiscreteScheduler(
num_train_timesteps=1000,
shift=3.0,
)
frame_length = int(duration * 44100 / 512 / 8)
if src_latents is not None:
frame_length = src_latents.shape[-1]
if ref_latents is not None:
frame_length = ref_latents.shape[-1]
if len(oss_steps) > 0:
infer_steps = max(oss_steps)
scheduler.set_timesteps
timesteps, num_inference_steps = retrieve_timesteps(
scheduler,
num_inference_steps=infer_steps,
device=device,
timesteps=None,
)
new_timesteps = torch.zeros(len(oss_steps), dtype=dtype, device=device)
for idx in range(len(oss_steps)):
new_timesteps[idx] = timesteps[oss_steps[idx] - 1]
num_inference_steps = len(oss_steps)
sigmas = (new_timesteps / 1000).float().cpu().numpy()
timesteps, num_inference_steps = retrieve_timesteps(
scheduler,
num_inference_steps=num_inference_steps,
device=device,
sigmas=sigmas,
)
logger.info(
f"oss_steps: {oss_steps}, num_inference_steps: {num_inference_steps} after remapping to timesteps {timesteps}"
)
else:
timesteps, num_inference_steps = retrieve_timesteps(
scheduler,
num_inference_steps=infer_steps,
device=device,
timesteps=None,
)
target_latents = randn_tensor(
shape=(bsz, 8, 16, frame_length),
generator=random_generators,
device=device,
dtype=dtype,
)
is_repaint = False
is_extend = False
if add_retake_noise:
n_min = int(infer_steps * (1 - retake_variance))
retake_variance = (
torch.tensor(retake_variance * math.pi / 2).to(device).to(dtype)
)
retake_latents = randn_tensor(
shape=(bsz, 8, 16, frame_length),
generator=retake_random_generators,
device=device,
dtype=dtype,
)
repaint_start_frame = int(repaint_start * 44100 / 512 / 8)
repaint_end_frame = int(repaint_end * 44100 / 512 / 8)
x0 = src_latents
# retake
is_repaint = repaint_end_frame - repaint_start_frame != frame_length
is_extend = (repaint_start_frame < 0) or (repaint_end_frame > frame_length)
if is_extend:
is_repaint = True
# TODO: train a mask aware repainting controlnet
# to make sure mean = 0, std = 1
if not is_repaint:
target_latents = (
torch.cos(retake_variance) * target_latents
+ torch.sin(retake_variance) * retake_latents
)
elif not is_extend:
# if repaint_end_frame
repaint_mask = torch.zeros(
(bsz, 8, 16, frame_length), device=device, dtype=dtype
)
repaint_mask[:, :, :, repaint_start_frame:repaint_end_frame] = 1.0
repaint_noise = (
torch.cos(retake_variance) * target_latents
+ torch.sin(retake_variance) * retake_latents
)
repaint_noise = torch.where(
repaint_mask == 1.0, repaint_noise, target_latents
)
zt_edit = x0.clone()
z0 = repaint_noise
elif is_extend:
to_right_pad_gt_latents = None
to_left_pad_gt_latents = None
gt_latents = src_latents
src_latents_length = gt_latents.shape[-1]
max_infer_fame_length = int(240 * 44100 / 512 / 8)
left_pad_frame_length = 0
right_pad_frame_length = 0
right_trim_length = 0
left_trim_length = 0
if repaint_start_frame < 0:
left_pad_frame_length = abs(repaint_start_frame)
frame_length = left_pad_frame_length + gt_latents.shape[-1]
extend_gt_latents = torch.nn.functional.pad(
gt_latents, (left_pad_frame_length, 0), "constant", 0
)
if frame_length > max_infer_fame_length:
right_trim_length = frame_length - max_infer_fame_length
extend_gt_latents = extend_gt_latents[
:, :, :, :max_infer_fame_length
]
to_right_pad_gt_latents = extend_gt_latents[
:, :, :, -right_trim_length:
]
frame_length = max_infer_fame_length
repaint_start_frame = 0
gt_latents = extend_gt_latents
if repaint_end_frame > src_latents_length:
right_pad_frame_length = repaint_end_frame - gt_latents.shape[-1]
frame_length = gt_latents.shape[-1] + right_pad_frame_length
extend_gt_latents = torch.nn.functional.pad(
gt_latents, (0, right_pad_frame_length), "constant", 0
)
if frame_length > max_infer_fame_length:
left_trim_length = frame_length - max_infer_fame_length
extend_gt_latents = extend_gt_latents[
:, :, :, -max_infer_fame_length:
]
to_left_pad_gt_latents = extend_gt_latents[
:, :, :, :left_trim_length
]
frame_length = max_infer_fame_length
repaint_end_frame = frame_length
gt_latents = extend_gt_latents
repaint_mask = torch.zeros(
(bsz, 8, 16, frame_length), device=device, dtype=dtype
)
if left_pad_frame_length > 0:
repaint_mask[:, :, :, :left_pad_frame_length] = 1.0
if right_pad_frame_length > 0:
repaint_mask[:, :, :, -right_pad_frame_length:] = 1.0
x0 = gt_latents
padd_list = []
if left_pad_frame_length > 0:
padd_list.append(retake_latents[:, :, :, :left_pad_frame_length])
padd_list.append(
target_latents[
:,
:,
:,
left_trim_length : target_latents.shape[-1] - right_trim_length,
]
)
if right_pad_frame_length > 0:
padd_list.append(retake_latents[:, :, :, -right_pad_frame_length:])
target_latents = torch.cat(padd_list, dim=-1)
assert (
target_latents.shape[-1] == x0.shape[-1]
), f"{target_latents.shape=} {x0.shape=}"
zt_edit = x0.clone()
z0 = target_latents
init_timestep = 1000
if audio2audio_enable and ref_latents is not None:
target_latents, init_timestep = self.add_latents_noise(
gt_latents=ref_latents,
variance=(1 - ref_audio_strength),
noise=target_latents,
scheduler=scheduler,
)
attention_mask = torch.ones(bsz, frame_length, device=device, dtype=dtype)
# guidance interval
start_idx = int(num_inference_steps * ((1 - guidance_interval) / 2))
end_idx = int(num_inference_steps * (guidance_interval / 2 + 0.5))
logger.info(
f"start_idx: {start_idx}, end_idx: {end_idx}, num_inference_steps: {num_inference_steps}"
)
momentum_buffer = MomentumBuffer()
def forward_encoder_with_temperature(self, inputs, tau=0.01, l_min=4, l_max=6):
handlers = []
def hook(module, input, output):
output[:] *= tau
return output
for i in range(l_min, l_max):
handler = self.ace_step_transformer.lyric_encoder.encoders[
i
].self_attn.linear_q.register_forward_hook(hook)
handlers.append(handler)
encoder_hidden_states, encoder_hidden_mask = (
self.ace_step_transformer.encode(**inputs)
)
for hook in handlers:
hook.remove()
return encoder_hidden_states
# P(speaker, text, lyric)
encoder_hidden_states, encoder_hidden_mask = self.ace_step_transformer.encode(
encoder_text_hidden_states,
text_attention_mask,
speaker_embds,
lyric_token_ids,
lyric_mask,
)
if use_erg_lyric:
# P(null_speaker, text_weaker, lyric_weaker)
encoder_hidden_states_null = forward_encoder_with_temperature(
self,
inputs={
"encoder_text_hidden_states": (
encoder_text_hidden_states_null
if encoder_text_hidden_states_null is not None
else torch.zeros_like(encoder_text_hidden_states)
),
"text_attention_mask": text_attention_mask,
"speaker_embeds": torch.zeros_like(speaker_embds),
"lyric_token_idx": lyric_token_ids,
"lyric_mask": lyric_mask,
},
)
else:
# P(null_speaker, null_text, null_lyric)
encoder_hidden_states_null, _ = self.ace_step_transformer.encode(
torch.zeros_like(encoder_text_hidden_states),
text_attention_mask,
torch.zeros_like(speaker_embds),
torch.zeros_like(lyric_token_ids),
lyric_mask,
)
encoder_hidden_states_no_lyric = None
if do_double_condition_guidance:
# P(null_speaker, text, lyric_weaker)
if use_erg_lyric:
encoder_hidden_states_no_lyric = forward_encoder_with_temperature(
self,
inputs={
"encoder_text_hidden_states": encoder_text_hidden_states,
"text_attention_mask": text_attention_mask,
"speaker_embeds": torch.zeros_like(speaker_embds),
"lyric_token_idx": lyric_token_ids,
"lyric_mask": lyric_mask,
},
)
# P(null_speaker, text, no_lyric)
else:
encoder_hidden_states_no_lyric, _ = self.ace_step_transformer.encode(
encoder_text_hidden_states,
text_attention_mask,
torch.zeros_like(speaker_embds),
torch.zeros_like(lyric_token_ids),
lyric_mask,
)
def forward_diffusion_with_temperature(
self, hidden_states, timestep, inputs, tau=0.01, l_min=15, l_max=20
):
handlers = []
def hook(module, input, output):
output[:] *= tau
return output
for i in range(l_min, l_max):
handler = self.ace_step_transformer.transformer_blocks[
i
].attn.to_q.register_forward_hook(hook)
handlers.append(handler)
handler = self.ace_step_transformer.transformer_blocks[
i
].cross_attn.to_q.register_forward_hook(hook)
handlers.append(handler)
sample = self.ace_step_transformer.decode(
hidden_states=hidden_states, timestep=timestep, **inputs
).sample
for hook in handlers:
hook.remove()
return sample
for i, t in tqdm(enumerate(timesteps), total=num_inference_steps):
if t > init_timestep:
continue
if is_repaint:
if i < n_min:
continue
elif i == n_min:
t_i = t / 1000
zt_src = (1 - t_i) * x0 + (t_i) * z0
target_latents = zt_edit + zt_src - x0
logger.info(f"repaint start from {n_min} add {t_i} level of noise")
# expand the latents if we are doing classifier free guidance
latents = target_latents
is_in_guidance_interval = start_idx <= i < end_idx
if is_in_guidance_interval and do_classifier_free_guidance:
# compute current guidance scale
if guidance_interval_decay > 0:
# Linearly interpolate to calculate the current guidance scale
progress = (i - start_idx) / (
end_idx - start_idx - 1
) # 归一化到[0,1]
current_guidance_scale = (
guidance_scale
- (guidance_scale - min_guidance_scale)
* progress
* guidance_interval_decay
)
else:
current_guidance_scale = guidance_scale
latent_model_input = latents
timestep = t.expand(latent_model_input.shape[0])
output_length = latent_model_input.shape[-1]
# P(x|speaker, text, lyric)
noise_pred_with_cond = self.ace_step_transformer.decode(
hidden_states=latent_model_input,
attention_mask=attention_mask,
encoder_hidden_states=encoder_hidden_states,
encoder_hidden_mask=encoder_hidden_mask,
output_length=output_length,
timestep=timestep,
).sample
noise_pred_with_only_text_cond = None
if (
do_double_condition_guidance
and encoder_hidden_states_no_lyric is not None
):
noise_pred_with_only_text_cond = self.ace_step_transformer.decode(
hidden_states=latent_model_input,
attention_mask=attention_mask,
encoder_hidden_states=encoder_hidden_states_no_lyric,
encoder_hidden_mask=encoder_hidden_mask,
output_length=output_length,
timestep=timestep,
).sample
if use_erg_diffusion:
noise_pred_uncond = forward_diffusion_with_temperature(
self,
hidden_states=latent_model_input,
timestep=timestep,
inputs={
"encoder_hidden_states": encoder_hidden_states_null,
"encoder_hidden_mask": encoder_hidden_mask,
"output_length": output_length,
"attention_mask": attention_mask,
},
)
else:
noise_pred_uncond = self.ace_step_transformer.decode(
hidden_states=latent_model_input,
attention_mask=attention_mask,
encoder_hidden_states=encoder_hidden_states_null,
encoder_hidden_mask=encoder_hidden_mask,
output_length=output_length,
timestep=timestep,
).sample
if (
do_double_condition_guidance
and noise_pred_with_only_text_cond is not None
):
noise_pred = cfg_double_condition_forward(
cond_output=noise_pred_with_cond,
uncond_output=noise_pred_uncond,
only_text_cond_output=noise_pred_with_only_text_cond,
guidance_scale_text=guidance_scale_text,
guidance_scale_lyric=guidance_scale_lyric,
)
elif cfg_type == "apg":
noise_pred = apg_forward(
pred_cond=noise_pred_with_cond,
pred_uncond=noise_pred_uncond,
guidance_scale=current_guidance_scale,
momentum_buffer=momentum_buffer,
)
elif cfg_type == "cfg":
noise_pred = cfg_forward(
cond_output=noise_pred_with_cond,
uncond_output=noise_pred_uncond,
cfg_strength=current_guidance_scale,
)
elif cfg_type == "cfg_star":
noise_pred = cfg_zero_star(
noise_pred_with_cond=noise_pred_with_cond,
noise_pred_uncond=noise_pred_uncond,
guidance_scale=current_guidance_scale,
i=i,
zero_steps=zero_steps,
use_zero_init=use_zero_init,
)
else:
latent_model_input = latents
timestep = t.expand(latent_model_input.shape[0])
noise_pred = self.ace_step_transformer.decode(
hidden_states=latent_model_input,
attention_mask=attention_mask,
encoder_hidden_states=encoder_hidden_states,
encoder_hidden_mask=encoder_hidden_mask,
output_length=latent_model_input.shape[-1],
timestep=timestep,
).sample
if is_repaint and i >= n_min:
t_i = t / 1000
if i + 1 < len(timesteps):
t_im1 = (timesteps[i + 1]) / 1000
else:
t_im1 = torch.zeros_like(t_i).to(t_i.device)
dtype = noise_pred.dtype
target_latents = target_latents.to(torch.float32)
prev_sample = target_latents + (t_im1 - t_i) * noise_pred
prev_sample = prev_sample.to(dtype)
target_latents = prev_sample
zt_src = (1 - t_im1) * x0 + (t_im1) * z0
target_latents = torch.where(
repaint_mask == 1.0, target_latents, zt_src
)
else:
target_latents = scheduler.step(
model_output=noise_pred,
timestep=t,
sample=target_latents,
return_dict=False,
omega=omega_scale,
)[0]
if is_extend:
if to_right_pad_gt_latents is not None:
target_latents = torch.cat(
[target_latents, to_right_pad_gt_latents], dim=-1
)
if to_left_pad_gt_latents is not None:
target_latents = torch.cat(
[to_right_pad_gt_latents, target_latents], dim=0
)
return target_latents
def latents2audio(
self,
latents,
target_wav_duration_second=30,
sample_rate=48000,
save_path=None,
format="mp3",
):
output_audio_paths = []
bs = latents.shape[0]
audio_lengths = [target_wav_duration_second * sample_rate] * bs
pred_latents = latents
with torch.no_grad():
_, pred_wavs = self.music_dcae.decode(pred_latents, sr=sample_rate)
pred_wavs = [pred_wav.cpu().float() for pred_wav in pred_wavs]
for i in tqdm(range(bs)):
output_audio_path = self.save_wav_file(
pred_wavs[i], i, sample_rate=sample_rate
)
output_audio_paths.append(output_audio_path)
return output_audio_paths
def save_wav_file(
self, target_wav, idx, save_path=None, sample_rate=48000, format="mp3"
):
if save_path is None:
logger.warning("save_path is None, using default path ./outputs/")
base_path = f"./outputs"
ensure_directory_exists(base_path)
else:
base_path = save_path
ensure_directory_exists(base_path)
output_path_flac = (
f"{base_path}/output_{time.strftime('%Y%m%d%H%M%S')}_{idx}.{format}"
)
target_wav = target_wav.float()
torchaudio.save(
output_path_flac,
target_wav,
sample_rate=sample_rate,
format=format,
compression=torio.io.CodecConfig(bit_rate=320000),
)
return output_path_flac
def infer_latents(self, input_audio_path):
if input_audio_path is None:
return None
input_audio, sr = self.music_dcae.load_audio(input_audio_path)
input_audio = input_audio.unsqueeze(0)
device, dtype = self.device, self.dtype
input_audio = input_audio.to(device=device, dtype=dtype)
latents, _ = self.music_dcae.encode(input_audio, sr=sr)
return latents
@spaces.GPU
def __call__(
self,
audio_duration: float = 60.0,
prompt: str = None,
lyrics: str = None,
infer_step: int = 60,
guidance_scale: float = 15.0,
scheduler_type: str = "euler",
cfg_type: str = "apg",
omega_scale: int = 10.0,
manual_seeds: list = None,
guidance_interval: float = 0.5,
guidance_interval_decay: float = 0.0,
min_guidance_scale: float = 3.0,
use_erg_tag: bool = True,
use_erg_lyric: bool = True,
use_erg_diffusion: bool = True,
oss_steps: str = None,
guidance_scale_text: float = 0.0,
guidance_scale_lyric: float = 0.0,
audio2audio_enable: bool = False,
ref_audio_strength: float = 0.5,
ref_audio_input: str = None,
lora_name_or_path: str = "none",
retake_seeds: list = None,
retake_variance: float = 0.5,
task: str = "text2music",
repaint_start: int = 0,
repaint_end: int = 0,
src_audio_path: str = None,
edit_target_prompt: str = None,
edit_target_lyrics: str = None,
edit_n_min: float = 0.0,
edit_n_max: float = 1.0,
edit_n_avg: int = 1,
save_path: str = None,
format: str = "mp3",
batch_size: int = 1,
debug: bool = False,
):
start_time = time.time()
if audio2audio_enable and ref_audio_input is not None:
task = "audio2audio"
if not self.loaded:
logger.warning("Checkpoint not loaded, loading checkpoint...")
self.load_checkpoint(self.checkpoint_dir)
load_model_cost = time.time() - start_time
logger.info(f"Model loaded in {load_model_cost:.2f} seconds.")
self.load_lora(lora_name_or_path)
start_time = time.time()
random_generators, actual_seeds = self.set_seeds(batch_size, manual_seeds)
retake_random_generators, actual_retake_seeds = self.set_seeds(
batch_size, retake_seeds
)
if isinstance(oss_steps, str) and len(oss_steps) > 0:
oss_steps = list(map(int, oss_steps.split(",")))
else:
oss_steps = []
texts = [prompt]
encoder_text_hidden_states, text_attention_mask = self.get_text_embeddings(
texts, self.device
)
encoder_text_hidden_states = encoder_text_hidden_states.repeat(batch_size, 1, 1)
text_attention_mask = text_attention_mask.repeat(batch_size, 1)
encoder_text_hidden_states_null = None
if use_erg_tag:
encoder_text_hidden_states_null = self.get_text_embeddings_null(
texts, self.device
)
encoder_text_hidden_states_null = encoder_text_hidden_states_null.repeat(
batch_size, 1, 1
)
# not support for released checkpoint
speaker_embeds = torch.zeros(batch_size, 512).to(self.device).to(self.dtype)
# 6 lyric
lyric_token_idx = torch.tensor([0]).repeat(batch_size, 1).to(self.device).long()
lyric_mask = torch.tensor([0]).repeat(batch_size, 1).to(self.device).long()
if len(lyrics) > 0:
lyric_token_idx = self.tokenize_lyrics(lyrics, debug=debug)
lyric_mask = [1] * len(lyric_token_idx)
lyric_token_idx = (
torch.tensor(lyric_token_idx)
.unsqueeze(0)
.to(self.device)
.repeat(batch_size, 1)
)
lyric_mask = (
torch.tensor(lyric_mask)
.unsqueeze(0)
.to(self.device)
.repeat(batch_size, 1)
)
if audio_duration <= 0:
audio_duration = random.uniform(30.0, 240.0)
logger.info(f"random audio duration: {audio_duration}")
end_time = time.time()
preprocess_time_cost = end_time - start_time
start_time = end_time
add_retake_noise = task in ("retake", "repaint", "extend")
# retake equal to repaint
if task == "retake":
repaint_start = 0
repaint_end = audio_duration
src_latents = None
if src_audio_path is not None:
assert src_audio_path is not None and task in (
"repaint",
"edit",
"extend",
), "src_audio_path is required for retake/repaint/extend task"
assert os.path.exists(
src_audio_path
), f"src_audio_path {src_audio_path} does not exist"
src_latents = self.infer_latents(src_audio_path)
ref_latents = None
if ref_audio_input is not None and audio2audio_enable:
assert (
ref_audio_input is not None
), "ref_audio_input is required for audio2audio task"
assert os.path.exists(
ref_audio_input
), f"ref_audio_input {ref_audio_input} does not exist"
ref_latents = self.infer_latents(ref_audio_input)
if task == "edit":
texts = [edit_target_prompt]
target_encoder_text_hidden_states, target_text_attention_mask = (
self.get_text_embeddings(texts, self.device)
)
target_encoder_text_hidden_states = (
target_encoder_text_hidden_states.repeat(batch_size, 1, 1)
)
target_text_attention_mask = target_text_attention_mask.repeat(
batch_size, 1
)
target_lyric_token_idx = (
torch.tensor([0]).repeat(batch_size, 1).to(self.device).long()
)
target_lyric_mask = (
torch.tensor([0]).repeat(batch_size, 1).to(self.device).long()
)
if len(edit_target_lyrics) > 0:
target_lyric_token_idx = self.tokenize_lyrics(
edit_target_lyrics, debug=True
)
target_lyric_mask = [1] * len(target_lyric_token_idx)
target_lyric_token_idx = (
torch.tensor(target_lyric_token_idx)
.unsqueeze(0)
.to(self.device)
.repeat(batch_size, 1)
)
target_lyric_mask = (
torch.tensor(target_lyric_mask)
.unsqueeze(0)
.to(self.device)
.repeat(batch_size, 1)
)
target_speaker_embeds = speaker_embeds.clone()
target_latents = self.flowedit_diffusion_process(
encoder_text_hidden_states=encoder_text_hidden_states,
text_attention_mask=text_attention_mask,
speaker_embds=speaker_embeds,
lyric_token_ids=lyric_token_idx,
lyric_mask=lyric_mask,
target_encoder_text_hidden_states=target_encoder_text_hidden_states,
target_text_attention_mask=target_text_attention_mask,
target_speaker_embeds=target_speaker_embeds,
target_lyric_token_ids=target_lyric_token_idx,
target_lyric_mask=target_lyric_mask,
src_latents=src_latents,
random_generators=retake_random_generators, # more diversity
infer_steps=infer_step,
guidance_scale=guidance_scale,
n_min=edit_n_min,
n_max=edit_n_max,
n_avg=edit_n_avg,
)
else:
target_latents = self.text2music_diffusion_process(
duration=audio_duration,
encoder_text_hidden_states=encoder_text_hidden_states,
text_attention_mask=text_attention_mask,
speaker_embds=speaker_embeds,
lyric_token_ids=lyric_token_idx,
lyric_mask=lyric_mask,
guidance_scale=guidance_scale,
omega_scale=omega_scale,
infer_steps=infer_step,
random_generators=random_generators,
scheduler_type=scheduler_type,
cfg_type=cfg_type,
guidance_interval=guidance_interval,
guidance_interval_decay=guidance_interval_decay,
min_guidance_scale=min_guidance_scale,
oss_steps=oss_steps,
encoder_text_hidden_states_null=encoder_text_hidden_states_null,
use_erg_lyric=use_erg_lyric,
use_erg_diffusion=use_erg_diffusion,
retake_random_generators=retake_random_generators,
retake_variance=retake_variance,
add_retake_noise=add_retake_noise,
guidance_scale_text=guidance_scale_text,
guidance_scale_lyric=guidance_scale_lyric,
repaint_start=repaint_start,
repaint_end=repaint_end,
src_latents=src_latents,
audio2audio_enable=audio2audio_enable,
ref_audio_strength=ref_audio_strength,
ref_latents=ref_latents,
)
end_time = time.time()
diffusion_time_cost = end_time - start_time
start_time = end_time
output_paths = self.latents2audio(
latents=target_latents,
target_wav_duration_second=audio_duration,
save_path=save_path,
format=format,
)
end_time = time.time()
latent2audio_time_cost = end_time - start_time
timecosts = {
"preprocess": preprocess_time_cost,
"diffusion": diffusion_time_cost,
"latent2audio": latent2audio_time_cost,
}
input_params_json = {
"lora_name_or_path": lora_name_or_path,
"task": task,
"prompt": prompt if task != "edit" else edit_target_prompt,
"lyrics": lyrics if task != "edit" else edit_target_lyrics,
"audio_duration": audio_duration,
"infer_step": infer_step,
"guidance_scale": guidance_scale,
"scheduler_type": scheduler_type,
"cfg_type": cfg_type,
"omega_scale": omega_scale,
"guidance_interval": guidance_interval,
"guidance_interval_decay": guidance_interval_decay,
"min_guidance_scale": min_guidance_scale,
"use_erg_tag": use_erg_tag,
"use_erg_lyric": use_erg_lyric,
"use_erg_diffusion": use_erg_diffusion,
"oss_steps": oss_steps,
"timecosts": timecosts,
"actual_seeds": actual_seeds,
"retake_seeds": actual_retake_seeds,
"retake_variance": retake_variance,
"guidance_scale_text": guidance_scale_text,
"guidance_scale_lyric": guidance_scale_lyric,
"repaint_start": repaint_start,
"repaint_end": repaint_end,
"edit_n_min": edit_n_min,
"edit_n_max": edit_n_max,
"edit_n_avg": edit_n_avg,
"src_audio_path": src_audio_path,
"edit_target_prompt": edit_target_prompt,
"edit_target_lyrics": edit_target_lyrics,
"audio2audio_enable": audio2audio_enable,
"ref_audio_strength": ref_audio_strength,
"ref_audio_input": ref_audio_input,
}
# save input_params_json
for output_audio_path in output_paths:
input_params_json_save_path = output_audio_path.replace(
f".{format}", "_input_params.json"
)
input_params_json["audio_path"] = output_audio_path
with open(input_params_json_save_path, "w", encoding="utf-8") as f:
json.dump(input_params_json, f, indent=4, ensure_ascii=False)
return output_paths + [input_params_json]
|