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import os
from contextlib import nullcontext
import torch
from safetensors.torch import load_file
from transformers import AutoTokenizer, T5EncoderModel
from diffusers import (
AutoencoderOobleck,
CosineDPMSolverMultistepScheduler,
StableAudioDiTModel,
StableAudioPipeline,
StableAudioProjectionModel,
)
from diffusers.models.model_loading_utils import load_model_dict_into_meta
from diffusers.utils import is_accelerate_available
if is_accelerate_available():
from accelerate import init_empty_weights
# ==========================================
# HARDCODED PATHS FOR ENVIRONMENT
# ==========================================
CHECKPOINT_PATH = r"\Foundation_1.safetensors" # YOU MUST DOWNLOAD THIS
CONFIG_PATH = r"\model_config.json" # YOU MUST DOWNLOAD THIS
SAVE_DIRECTORY = r"\foundation_diffusers"
device = "cpu"
dtype = torch.float32
# ==========================================
def convert_stable_audio_state_dict_to_diffusers(state_dict, num_autoencoder_layers=5):
projection_model_state_dict = {
k.replace("conditioner.conditioners.", "").replace("embedder.embedding", "time_positional_embedding"): v
for (k, v) in state_dict.items()
if "conditioner.conditioners" in k
}
for key, value in list(projection_model_state_dict.items()):
new_key = key.replace("seconds_start", "start_number_conditioner").replace(
"seconds_total", "end_number_conditioner"
)
projection_model_state_dict[new_key] = projection_model_state_dict.pop(key)
model_state_dict = {k.replace("model.model.", ""): v for (k, v) in state_dict.items() if "model.model." in k}
for key, value in list(model_state_dict.items()):
new_key = (
key.replace("transformer.", "")
.replace("layers", "transformer_blocks")
.replace("self_attn", "attn1")
.replace("cross_attn", "attn2")
.replace("ff.ff", "ff.net")
)
new_key = (
new_key.replace("pre_norm", "norm1")
.replace("cross_attend_norm", "norm2")
.replace("ff_norm", "norm3")
.replace("to_out", "to_out.0")
)
new_key = new_key.replace("gamma", "weight").replace("beta", "bias")
new_key = (
new_key.replace("project", "proj")
.replace("to_timestep_embed", "timestep_proj")
.replace("timestep_features", "time_proj")
.replace("to_global_embed", "global_proj")
.replace("to_cond_embed", "cross_attention_proj")
)
if new_key == "time_proj.weight":
model_state_dict[key] = model_state_dict[key].squeeze(1)
if "to_qkv" in new_key:
q, k, v = torch.chunk(model_state_dict.pop(key), 3, dim=0)
model_state_dict[new_key.replace("qkv", "q")] = q
model_state_dict[new_key.replace("qkv", "k")] = k
model_state_dict[new_key.replace("qkv", "v")] = v
elif "to_kv" in new_key:
k, v = torch.chunk(model_state_dict.pop(key), 2, dim=0)
model_state_dict[new_key.replace("kv", "k")] = k
model_state_dict[new_key.replace("kv", "v")] = v
else:
model_state_dict[new_key] = model_state_dict.pop(key)
autoencoder_state_dict = {
k.replace("pretransform.model.", "").replace("coder.layers.0", "coder.conv1"): v
for (k, v) in state_dict.items()
if "pretransform.model." in k
}
for key, _ in list(autoencoder_state_dict.items()):
new_key = key
if "coder.layers" in new_key:
idx = int(new_key.split("coder.layers.")[1].split(".")[0])
new_key = new_key.replace(f"coder.layers.{idx}", f"coder.block.{idx - 1}")
if "encoder" in new_key:
for i in range(3):
new_key = new_key.replace(f"block.{idx - 1}.layers.{i}", f"block.{idx - 1}.res_unit{i + 1}")
new_key = new_key.replace(f"block.{idx - 1}.layers.3", f"block.{idx - 1}.snake1")
new_key = new_key.replace(f"block.{idx - 1}.layers.4", f"block.{idx - 1}.conv1")
else:
for i in range(2, 5):
new_key = new_key.replace(f"block.{idx - 1}.layers.{i}", f"block.{idx - 1}.res_unit{i - 1}")
new_key = new_key.replace(f"block.{idx - 1}.layers.0", f"block.{idx - 1}.snake1")
new_key = new_key.replace(f"block.{idx - 1}.layers.1", f"block.{idx - 1}.conv_t1")
new_key = new_key.replace("layers.0.beta", "snake1.beta")
new_key = new_key.replace("layers.0.alpha", "snake1.alpha")
new_key = new_key.replace("layers.2.beta", "snake2.beta")
new_key = new_key.replace("layers.2.alpha", "snake2.alpha")
new_key = new_key.replace("layers.1.bias", "conv1.bias")
new_key = new_key.replace("layers.1.weight_", "conv1.weight_")
new_key = new_key.replace("layers.3.bias", "conv2.bias")
new_key = new_key.replace("layers.3.weight_", "conv2.weight_")
if idx == num_autoencoder_layers + 1:
new_key = new_key.replace(f"block.{idx - 1}", "snake1")
elif idx == num_autoencoder_layers + 2:
new_key = new_key.replace(f"block.{idx - 1}", "conv2")
value = autoencoder_state_dict.pop(key)
if "snake" in new_key:
value = value.unsqueeze(0).unsqueeze(-1)
if new_key in autoencoder_state_dict:
raise ValueError(f"{new_key} already in state dict.")
autoencoder_state_dict[new_key] = value
return model_state_dict, projection_model_state_dict, autoencoder_state_dict
print("Reading config...")
with open(CONFIG_PATH) as f_in:
config_dict = json.load(f_in)
conditioning_dict = {
conditioning["id"]: conditioning["config"] for conditioning in config_dict["model"]["conditioning"]["configs"]
}
t5_model_config = conditioning_dict["prompt"]
print("Downloading/Loading T5 text encoder...")
text_encoder = T5EncoderModel.from_pretrained(t5_model_config["t5_model_name"])
tokenizer = AutoTokenizer.from_pretrained(
t5_model_config["t5_model_name"], truncation=True, model_max_length=t5_model_config["max_length"]
)
scheduler = CosineDPMSolverMultistepScheduler(
sigma_min=0.3,
sigma_max=500,
solver_order=2,
prediction_type="v_prediction",
sigma_data=1.0,
sigma_schedule="exponential",
)
ctx = init_empty_weights if is_accelerate_available() else nullcontext
print("Loading SafeTensors checkpoint...")
orig_state_dict = load_file(CHECKPOINT_PATH, device=device)
model_config = config_dict["model"]["diffusion"]["config"]
print("Converting weights (this might take a moment)...")
model_state_dict, projection_model_state_dict, autoencoder_state_dict = convert_stable_audio_state_dict_to_diffusers(
orig_state_dict
)
print("Building Models...")
with ctx():
projection_model = StableAudioProjectionModel(
text_encoder_dim=text_encoder.config.d_model,
conditioning_dim=config_dict["model"]["conditioning"]["cond_dim"],
min_value=conditioning_dict["seconds_start"]["min_val"],
max_value=conditioning_dict["seconds_start"]["max_val"],
)
if is_accelerate_available():
load_model_dict_into_meta(projection_model, projection_model_state_dict)
else:
projection_model.load_state_dict(projection_model_state_dict)
attention_head_dim = model_config["embed_dim"] // model_config["num_heads"]
with ctx():
model = StableAudioDiTModel(
sample_size=int(config_dict["sample_size"])
/ int(config_dict["model"]["pretransform"]["config"]["downsampling_ratio"]),
in_channels=model_config["io_channels"],
num_layers=model_config["depth"],
attention_head_dim=attention_head_dim,
num_key_value_attention_heads=model_config["cond_token_dim"] // attention_head_dim,
num_attention_heads=model_config["num_heads"],
out_channels=model_config["io_channels"],
cross_attention_dim=model_config["cond_token_dim"],
time_proj_dim=256,
global_states_input_dim=model_config["global_cond_dim"],
cross_attention_input_dim=model_config["cond_token_dim"],
)
if is_accelerate_available():
load_model_dict_into_meta(model, model_state_dict)
else:
model.load_state_dict(model_state_dict)
autoencoder_config = config_dict["model"]["pretransform"]["config"]
with ctx():
autoencoder = AutoencoderOobleck(
encoder_hidden_size=autoencoder_config["encoder"]["config"]["channels"],
downsampling_ratios=autoencoder_config["encoder"]["config"]["strides"],
decoder_channels=autoencoder_config["decoder"]["config"]["channels"],
decoder_input_channels=autoencoder_config["decoder"]["config"]["latent_dim"],
audio_channels=autoencoder_config["io_channels"],
channel_multiples=autoencoder_config["encoder"]["config"]["c_mults"],
sampling_rate=config_dict["sample_rate"],
)
if is_accelerate_available():
load_model_dict_into_meta(autoencoder, autoencoder_state_dict)
else:
autoencoder.load_state_dict(autoencoder_state_dict)
print("Saving final diffusers pipeline...")
os.makedirs(SAVE_DIRECTORY, exist_ok=True)
pipeline = StableAudioPipeline(
transformer=model,
tokenizer=tokenizer,
text_encoder=text_encoder,
scheduler=scheduler,
vae=autoencoder,
projection_model=projection_model,
)
pipeline.to(dtype).save_pretrained(SAVE_DIRECTORY)
print(f"✅ DONE! Pipeline successfully saved to {SAVE_DIRECTORY}") |