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train_stacked_latent_dvae_ss_adp_uncond.py
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train_stacked_latent_dvae_ss_adp_uncond.py
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#!/usr/bin/env python3
from prefigure.prefigure import get_all_args, push_wandb_config
from contextlib import contextmanager
from copy import deepcopy
import math
from pathlib import Path
import sys
import torch
from torch import optim, nn
from torch.nn import functional as F
from torch.utils import data
from torch.nn.parameter import Parameter
from tqdm import trange
import pytorch_lightning as pl
from pytorch_lightning.utilities.distributed import rank_zero_only
from einops import rearrange
import numpy as np
import torchaudio
import wandb
from diffusion.pqmf import CachedPQMF as PQMF
from autoencoders.soundstream import SoundStreamXLEncoder, SoundStreamXLDecoder
from autoencoders.models import AudioAutoencoder
from audio_encoders_pytorch import Encoder1d
from ema_pytorch import EMA
from audio_diffusion_pytorch import UNet1d
from decoders.diffusion_decoder import DiffusionAttnUnet1D
from diffusion.model import ema_update
from aeiou.viz import embeddings_table, pca_point_cloud, audio_spectrogram_image, tokens_spectrogram_image
from aeiou.datasets import AudioDataset
from dataset.dataset import SampleDataset
# Define the noise schedule and sampling loop
def get_alphas_sigmas(t):
"""Returns the scaling factors for the clean image (alpha) and for the
noise (sigma), given a timestep."""
return torch.cos(t * math.pi / 2), torch.sin(t * math.pi / 2)
def alpha_sigma_to_t(alpha, sigma):
"""Returns a timestep, given the scaling factors for the clean image and for
the noise."""
return torch.atan2(sigma, alpha) / math.pi * 2
@torch.no_grad()
def sample(model, x, steps, eta, cond = None):
"""Draws samples from a model given starting noise."""
ts = x.new_ones([x.shape[0]])
# Create the noise schedule
t = torch.linspace(1, 0, steps + 1)[:-1]
alphas, sigmas = get_alphas_sigmas(t)
# The sampling loop
for i in trange(steps):
# Get the model output (v, the predicted velocity)
with torch.cuda.amp.autocast():
if cond is not None:
v = model(x, ts * t[i], cond).float()
else:
v = model(x, ts * t[i]).float()
# Predict the noise and the denoised image
pred = x * alphas[i] - v * sigmas[i]
eps = x * sigmas[i] + v * alphas[i]
# If we are not on the last timestep, compute the noisy image for the
# next timestep.
if i < steps - 1:
# If eta > 0, adjust the scaling factor for the predicted noise
# downward according to the amount of additional noise to add
ddim_sigma = eta * (sigmas[i + 1]**2 / sigmas[i]**2).sqrt() * \
(1 - alphas[i]**2 / alphas[i + 1]**2).sqrt()
adjusted_sigma = (sigmas[i + 1]**2 - ddim_sigma**2).sqrt()
# Recombine the predicted noise and predicted denoised image in the
# correct proportions for the next step
x = pred * alphas[i + 1] + eps * adjusted_sigma
# Add the correct amount of fresh noise
if eta:
x += torch.randn_like(x) * ddim_sigma
# If we are on the last timestep, output the denoised image
return pred
class LatentAudioDiffusionAutoencoder(pl.LightningModule):
def __init__(self, autoencoder: AudioAutoencoder):
super().__init__()
self.latent_dim = autoencoder.latent_dim
self.second_stage_latent_dim = 32
factors = [2, 2, 2, 2]
self.latent_downsampling_ratio = np.prod(factors)
self.downsampling_ratio = autoencoder.downsampling_ratio * self.latent_downsampling_ratio
self.latent_encoder = Encoder1d(
in_channels=self.latent_dim,
out_channels = self.second_stage_latent_dim,
channels = 128,
multipliers = [1, 2, 4, 8, 8],
factors = factors,
num_blocks = [8, 8, 8, 8],
)
self.latent_encoder_ema = deepcopy(self.latent_encoder)
self.diffusion = DiffusionAttnUnet1D(
io_channels=self.latent_dim,
cond_dim = self.second_stage_latent_dim,
n_attn_layers=0,
c_mults=[512] * 10,
depth=10
)
self.diffusion_ema = deepcopy(self.diffusion)
self.diffusion_ema.requires_grad_(False)
self.latent_encoder_ema.requires_grad_(False)
self.autoencoder = autoencoder
self.autoencoder.requires_grad_(False)
self.rng = torch.quasirandom.SobolEngine(1, scramble=True)
def encode(self, reals):
first_stage_latents = self.autoencoder.encode(reals)
second_stage_latents = self.latent_encoder(first_stage_latents)
second_stage_latents = torch.tanh(second_stage_latents)
return second_stage_latents
def decode(self, latents, steps=250, device="cuda"):
first_stage_latent_noise = torch.randn([latents.shape[0], self.latent_dim, latents.shape[2]*self.latent_downsampling_ratio]).to(device)
first_stage_sampled = sample(self.diffusion, first_stage_latent_noise, steps, 0, latents)
decoded = self.autoencoder.decode(first_stage_sampled)
return decoded
class StackedAELatentDiffusion(pl.LightningModule):
def __init__(self, latent_ae: LatentAudioDiffusionAutoencoder):
super().__init__()
self.latent_dim = latent_ae.second_stage_latent_dim
self.downsampling_ratio = latent_ae.downsampling_ratio
self.diffusion = UNet1d(
in_channels = self.latent_dim,
channels = 256,
patch_blocks = 1,
patch_factor = 1,
resnet_groups = 8,
kernel_multiplier_downsample = 2,
multipliers = [2, 2, 2, 2, 2, 2, 2, 2, 2],
factors = [2, 2, 2, 2, 2, 2, 2, 2],
num_blocks = [3, 3, 3, 3, 3, 3, 4, 4],
attentions = [0, 0, 0, 3, 3, 3, 3, 3, 3],
attention_heads = 16,
attention_features = 64,
attention_multiplier = 4,
attention_use_rel_pos=False,
use_nearest_upsample = False,
use_skip_scale = True,
use_context_time = True,
use_magnitude_channels = False
)
self.diffusion_ema = EMA(
self.diffusion,
beta = 0.9999,
power=3/4,
update_every = 1,
update_after_step = 1000
)
self.autoencoder = latent_ae
self.autoencoder.requires_grad_(False)
self.rng = torch.quasirandom.SobolEngine(1, scramble=True)
def encode(self, reals):
return self.autoencoder.encode(reals)
def decode(self, latents, steps=250):
return self.autoencoder.decode(latents, steps, device=self.device)
def configure_optimizers(self):
return optim.Adam([*self.diffusion.parameters()], lr=1e-4)
def training_step(self, batch, batch_idx):
reals = batch
with torch.cuda.amp.autocast():
with torch.no_grad():
latents = self.encode(reals)
# Draw uniformly distributed continuous timesteps
t = self.rng.draw(reals.shape[0])[:, 0].to(self.device)
# Calculate the noise schedule parameters for those timesteps
alphas, sigmas = get_alphas_sigmas(t)
# Combine the ground truth images and the noise
alphas = alphas[:, None, None]
sigmas = sigmas[:, None, None]
noise = torch.randn_like(latents)
noised_latents = latents * alphas + noise * sigmas
targets = noise * alphas - latents * sigmas
with torch.cuda.amp.autocast():
v = self.diffusion(noised_latents, t)
mse_loss = F.mse_loss(v, targets)
loss = mse_loss
log_dict = {
'train/loss': loss.detach(),
'train/mse_loss': mse_loss.detach(),
}
self.log_dict(log_dict, prog_bar=True, on_step=True)
return loss
def on_before_zero_grad(self, *args, **kwargs):
self.diffusion_ema.update()
class ExceptionCallback(pl.Callback):
def on_exception(self, trainer, module, err):
print(f'{type(err).__name__}: {err}', file=sys.stderr)
class DemoCallback(pl.Callback):
def __init__(self, global_args):
super().__init__()
self.demo_every = global_args.demo_every
self.demo_samples = global_args.sample_size
self.demo_steps = global_args.demo_steps
self.num_demos = global_args.num_demos
self.sample_rate = global_args.sample_rate
@rank_zero_only
@torch.no_grad()
def on_train_batch_end(self, trainer, module, outputs, batch, batch_idx):
last_demo_step = -1
if (trainer.global_step - 1) % self.demo_every != 0 or last_demo_step == trainer.global_step:
#if trainer.current_epoch % self.demo_every != 0:
return
last_demo_step = trainer.global_step
print("Starting demo")
try:
latent_noise = torch.randn([self.num_demos, module.latent_dim, self.demo_samples//module.downsampling_ratio]).to(module.device)
fake_latents = sample(module.diffusion_ema, latent_noise, self.demo_steps, 0)
print("Decoding fakes")
fakes = module.decode(fake_latents)
# Put the demos together
fakes = rearrange(fakes, 'b d n -> d (b n)')
log_dict = {}
print("Saving files")
filename = f'demo_{trainer.global_step:08}.wav'
fakes = fakes.clamp(-1, 1).mul(32767).to(torch.int16).cpu()
torchaudio.save(filename, fakes, self.sample_rate)
log_dict[f'demo'] = wandb.Audio(filename,
sample_rate=self.sample_rate,
caption=f'Reconstructed')
log_dict[f'demo_melspec_left'] = wandb.Image(audio_spectrogram_image(fakes))
log_dict[f'embeddings_3dpca'] = pca_point_cloud(fake_latents)
log_dict[f'embeddings_spec'] = wandb.Image(tokens_spectrogram_image(fake_latents))
print("Done logging")
trainer.logger.experiment.log(log_dict, step=trainer.global_step)
except Exception as e:
print(f'{type(e).__name__}: {e}')
def main():
args = get_all_args()
device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
print('Using device:', device)
torch.manual_seed(args.seed)
args.random_crop = False
train_set = AudioDataset(
[args.training_dir],
sample_rate=args.sample_rate,
sample_size=args.sample_size,
random_crop=args.random_crop,
augs='Stereo(), PhaseFlipper()'
)
#args.random_crop = False
#train_set = SampleDataset([args.training_dir], args, keywords=["kick", "snare", "clap", "snap", "hat", "cymbal", "crash", "ride"])
train_dl = data.DataLoader(train_set, args.batch_size, shuffle=True,
num_workers=args.num_workers, persistent_workers=True, pin_memory=True)
wandb_logger = pl.loggers.WandbLogger(project=args.name)
exc_callback = ExceptionCallback()
ckpt_callback = pl.callbacks.ModelCheckpoint(every_n_train_steps=args.checkpoint_every, save_top_k=-1)
demo_callback = DemoCallback(args)
first_stage_config = {"capacity": 64, "c_mults": [2, 4, 8, 16, 32], "strides": [2, 2, 2, 2, 2], "latent_dim": 32}
first_stage_autoencoder = AudioAutoencoder(
**first_stage_config
).eval()
latent_diffae = LatentAudioDiffusionAutoencoder.load_from_checkpoint(args.pretrained_ckpt_path, autoencoder=first_stage_autoencoder, strict=False)
latent_diffae.diffusion = latent_diffae.diffusion_ema
del latent_diffae.diffusion_ema
latent_diffae.latent_encoder = latent_diffae.latent_encoder_ema
del latent_diffae.latent_encoder_ema
latent_diffusion_model = StackedAELatentDiffusion(latent_diffae)
wandb_logger.watch(latent_diffusion_model)
push_wandb_config(wandb_logger, args)
diffusion_trainer = pl.Trainer(
devices=args.num_gpus,
accelerator="gpu",
num_nodes = args.num_nodes,
strategy='ddp_find_unused_parameters_false',
precision=16,
accumulate_grad_batches=args.accum_batches,
callbacks=[ckpt_callback, demo_callback, exc_callback],
logger=wandb_logger,
log_every_n_steps=1,
max_epochs=10000000,
)
diffusion_trainer.fit(latent_diffusion_model, train_dl, ckpt_path=args.ckpt_path)
if __name__ == '__main__':
main()