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import argparse |
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import math |
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import os |
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from copy import deepcopy |
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import torch |
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from audio_diffusion.models import DiffusionAttnUnet1D |
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from diffusion import sampling |
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from torch import nn |
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from diffusers import DanceDiffusionPipeline, IPNDMScheduler, UNet1DModel |
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MODELS_MAP = { |
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"gwf-440k": { |
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"url": "https://model-server.zqevans2.workers.dev/gwf-440k.ckpt", |
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"sample_rate": 48000, |
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"sample_size": 65536, |
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}, |
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"jmann-small-190k": { |
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"url": "https://model-server.zqevans2.workers.dev/jmann-small-190k.ckpt", |
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"sample_rate": 48000, |
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"sample_size": 65536, |
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}, |
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"jmann-large-580k": { |
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"url": "https://model-server.zqevans2.workers.dev/jmann-large-580k.ckpt", |
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"sample_rate": 48000, |
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"sample_size": 131072, |
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}, |
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"maestro-uncond-150k": { |
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"url": "https://model-server.zqevans2.workers.dev/maestro-uncond-150k.ckpt", |
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"sample_rate": 16000, |
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"sample_size": 65536, |
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}, |
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"unlocked-uncond-250k": { |
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"url": "https://model-server.zqevans2.workers.dev/unlocked-uncond-250k.ckpt", |
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"sample_rate": 16000, |
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"sample_size": 65536, |
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}, |
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"honk-140k": { |
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"url": "https://model-server.zqevans2.workers.dev/honk-140k.ckpt", |
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"sample_rate": 16000, |
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"sample_size": 65536, |
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}, |
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} |
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def alpha_sigma_to_t(alpha, sigma): |
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"""Returns a timestep, given the scaling factors for the clean image and for |
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the noise.""" |
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return torch.atan2(sigma, alpha) / math.pi * 2 |
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def get_crash_schedule(t): |
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sigma = torch.sin(t * math.pi / 2) ** 2 |
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alpha = (1 - sigma**2) ** 0.5 |
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return alpha_sigma_to_t(alpha, sigma) |
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class Object(object): |
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pass |
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class DiffusionUncond(nn.Module): |
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def __init__(self, global_args): |
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super().__init__() |
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self.diffusion = DiffusionAttnUnet1D(global_args, n_attn_layers=4) |
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self.diffusion_ema = deepcopy(self.diffusion) |
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self.rng = torch.quasirandom.SobolEngine(1, scramble=True) |
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def download(model_name): |
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url = MODELS_MAP[model_name]["url"] |
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os.system(f"wget {url} ./") |
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return f"./{model_name}.ckpt" |
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DOWN_NUM_TO_LAYER = { |
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"1": "resnets.0", |
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"2": "attentions.0", |
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"3": "resnets.1", |
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"4": "attentions.1", |
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"5": "resnets.2", |
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"6": "attentions.2", |
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} |
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UP_NUM_TO_LAYER = { |
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"8": "resnets.0", |
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"9": "attentions.0", |
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"10": "resnets.1", |
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"11": "attentions.1", |
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"12": "resnets.2", |
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"13": "attentions.2", |
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} |
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MID_NUM_TO_LAYER = { |
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"1": "resnets.0", |
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"2": "attentions.0", |
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"3": "resnets.1", |
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"4": "attentions.1", |
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"5": "resnets.2", |
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"6": "attentions.2", |
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"8": "resnets.3", |
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"9": "attentions.3", |
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"10": "resnets.4", |
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"11": "attentions.4", |
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"12": "resnets.5", |
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"13": "attentions.5", |
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} |
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DEPTH_0_TO_LAYER = { |
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"0": "resnets.0", |
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"1": "resnets.1", |
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"2": "resnets.2", |
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"4": "resnets.0", |
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"5": "resnets.1", |
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"6": "resnets.2", |
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} |
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RES_CONV_MAP = { |
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"skip": "conv_skip", |
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"main.0": "conv_1", |
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"main.1": "group_norm_1", |
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"main.3": "conv_2", |
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"main.4": "group_norm_2", |
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} |
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ATTN_MAP = { |
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"norm": "group_norm", |
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"qkv_proj": ["query", "key", "value"], |
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"out_proj": ["proj_attn"], |
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} |
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def convert_resconv_naming(name): |
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if name.startswith("skip"): |
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return name.replace("skip", RES_CONV_MAP["skip"]) |
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if not name.startswith("main."): |
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raise ValueError(f"ResConvBlock error with {name}") |
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return name.replace(name[:6], RES_CONV_MAP[name[:6]]) |
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def convert_attn_naming(name): |
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for key, value in ATTN_MAP.items(): |
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if name.startswith(key) and not isinstance(value, list): |
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return name.replace(key, value) |
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elif name.startswith(key): |
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return [name.replace(key, v) for v in value] |
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raise ValueError(f"Attn error with {name}") |
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def rename(input_string, max_depth=13): |
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string = input_string |
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if string.split(".")[0] == "timestep_embed": |
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return string.replace("timestep_embed", "time_proj") |
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depth = 0 |
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if string.startswith("net.3."): |
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depth += 1 |
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string = string[6:] |
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elif string.startswith("net."): |
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string = string[4:] |
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while string.startswith("main.7."): |
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depth += 1 |
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string = string[7:] |
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if string.startswith("main."): |
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string = string[5:] |
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if string[:2].isdigit(): |
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layer_num = string[:2] |
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string_left = string[2:] |
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else: |
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layer_num = string[0] |
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string_left = string[1:] |
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if depth == max_depth: |
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new_layer = MID_NUM_TO_LAYER[layer_num] |
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prefix = "mid_block" |
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elif depth > 0 and int(layer_num) < 7: |
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new_layer = DOWN_NUM_TO_LAYER[layer_num] |
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prefix = f"down_blocks.{depth}" |
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elif depth > 0 and int(layer_num) > 7: |
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new_layer = UP_NUM_TO_LAYER[layer_num] |
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prefix = f"up_blocks.{max_depth - depth - 1}" |
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elif depth == 0: |
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new_layer = DEPTH_0_TO_LAYER[layer_num] |
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prefix = f"up_blocks.{max_depth - 1}" if int(layer_num) > 3 else "down_blocks.0" |
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if not string_left.startswith("."): |
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raise ValueError(f"Naming error with {input_string} and string_left: {string_left}.") |
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string_left = string_left[1:] |
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if "resnets" in new_layer: |
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string_left = convert_resconv_naming(string_left) |
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elif "attentions" in new_layer: |
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new_string_left = convert_attn_naming(string_left) |
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string_left = new_string_left |
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if not isinstance(string_left, list): |
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new_string = prefix + "." + new_layer + "." + string_left |
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else: |
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new_string = [prefix + "." + new_layer + "." + s for s in string_left] |
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return new_string |
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def rename_orig_weights(state_dict): |
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new_state_dict = {} |
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for k, v in state_dict.items(): |
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if k.endswith("kernel"): |
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continue |
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new_k = rename(k) |
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if isinstance(new_k, list): |
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new_state_dict = transform_conv_attns(new_state_dict, new_k, v) |
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else: |
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new_state_dict[new_k] = v |
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return new_state_dict |
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def transform_conv_attns(new_state_dict, new_k, v): |
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if len(new_k) == 1: |
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if len(v.shape) == 3: |
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new_state_dict[new_k[0]] = v[:, :, 0] |
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else: |
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new_state_dict[new_k[0]] = v |
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else: |
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trippled_shape = v.shape[0] |
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single_shape = trippled_shape // 3 |
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for i in range(3): |
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if len(v.shape) == 3: |
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new_state_dict[new_k[i]] = v[i * single_shape : (i + 1) * single_shape, :, 0] |
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else: |
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new_state_dict[new_k[i]] = v[i * single_shape : (i + 1) * single_shape] |
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return new_state_dict |
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def main(args): |
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device = torch.device("cuda" if torch.cuda.is_available() else "cpu") |
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model_name = args.model_path.split("/")[-1].split(".")[0] |
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if not os.path.isfile(args.model_path): |
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assert ( |
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model_name == args.model_path |
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), f"Make sure to provide one of the official model names {MODELS_MAP.keys()}" |
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args.model_path = download(model_name) |
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sample_rate = MODELS_MAP[model_name]["sample_rate"] |
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sample_size = MODELS_MAP[model_name]["sample_size"] |
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config = Object() |
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config.sample_size = sample_size |
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config.sample_rate = sample_rate |
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config.latent_dim = 0 |
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diffusers_model = UNet1DModel(sample_size=sample_size, sample_rate=sample_rate) |
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diffusers_state_dict = diffusers_model.state_dict() |
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orig_model = DiffusionUncond(config) |
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orig_model.load_state_dict(torch.load(args.model_path, map_location=device)["state_dict"]) |
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orig_model = orig_model.diffusion_ema.eval() |
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orig_model_state_dict = orig_model.state_dict() |
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renamed_state_dict = rename_orig_weights(orig_model_state_dict) |
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renamed_minus_diffusers = set(renamed_state_dict.keys()) - set(diffusers_state_dict.keys()) |
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diffusers_minus_renamed = set(diffusers_state_dict.keys()) - set(renamed_state_dict.keys()) |
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assert len(renamed_minus_diffusers) == 0, f"Problem with {renamed_minus_diffusers}" |
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assert all(k.endswith("kernel") for k in list(diffusers_minus_renamed)), f"Problem with {diffusers_minus_renamed}" |
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for key, value in renamed_state_dict.items(): |
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assert ( |
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diffusers_state_dict[key].squeeze().shape == value.squeeze().shape |
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), f"Shape for {key} doesn't match. Diffusers: {diffusers_state_dict[key].shape} vs. {value.shape}" |
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if key == "time_proj.weight": |
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value = value.squeeze() |
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diffusers_state_dict[key] = value |
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diffusers_model.load_state_dict(diffusers_state_dict) |
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steps = 100 |
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seed = 33 |
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diffusers_scheduler = IPNDMScheduler(num_train_timesteps=steps) |
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generator = torch.manual_seed(seed) |
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noise = torch.randn([1, 2, config.sample_size], generator=generator).to(device) |
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t = torch.linspace(1, 0, steps + 1, device=device)[:-1] |
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step_list = get_crash_schedule(t) |
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pipe = DanceDiffusionPipeline(unet=diffusers_model, scheduler=diffusers_scheduler) |
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generator = torch.manual_seed(33) |
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audio = pipe(num_inference_steps=steps, generator=generator).audios |
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generated = sampling.iplms_sample(orig_model, noise, step_list, {}) |
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generated = generated.clamp(-1, 1) |
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diff_sum = (generated - audio).abs().sum() |
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diff_max = (generated - audio).abs().max() |
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if args.save: |
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pipe.save_pretrained(args.checkpoint_path) |
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print("Diff sum", diff_sum) |
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print("Diff max", diff_max) |
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assert diff_max < 1e-3, f"Diff max: {diff_max} is too much :-/" |
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print(f"Conversion for {model_name} successful!") |
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if __name__ == "__main__": |
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parser = argparse.ArgumentParser() |
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parser.add_argument("--model_path", default=None, type=str, required=True, help="Path to the model to convert.") |
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parser.add_argument( |
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"--save", default=True, type=bool, required=False, help="Whether to save the converted model or not." |
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) |
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parser.add_argument("--checkpoint_path", default=None, type=str, required=True, help="Path to the output model.") |
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args = parser.parse_args() |
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main(args) |
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