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| """ Conversion script for the AudioLDM checkpoints.""" |
|
|
| import argparse |
| import re |
|
|
| import torch |
| from transformers import ( |
| AutoTokenizer, |
| ClapTextConfig, |
| ClapTextModelWithProjection, |
| SpeechT5HifiGan, |
| SpeechT5HifiGanConfig, |
| ) |
|
|
| from diffusers import ( |
| AudioLDMPipeline, |
| AutoencoderKL, |
| DDIMScheduler, |
| DPMSolverMultistepScheduler, |
| EulerAncestralDiscreteScheduler, |
| EulerDiscreteScheduler, |
| HeunDiscreteScheduler, |
| LMSDiscreteScheduler, |
| PNDMScheduler, |
| UNet2DConditionModel, |
| ) |
| from diffusers.utils import is_omegaconf_available, is_safetensors_available |
| from diffusers.utils.import_utils import BACKENDS_MAPPING |
|
|
|
|
| |
| def shave_segments(path, n_shave_prefix_segments=1): |
| """ |
| Removes segments. Positive values shave the first segments, negative shave the last segments. |
| """ |
| if n_shave_prefix_segments >= 0: |
| return ".".join(path.split(".")[n_shave_prefix_segments:]) |
| else: |
| return ".".join(path.split(".")[:n_shave_prefix_segments]) |
|
|
|
|
| |
| def renew_resnet_paths(old_list, n_shave_prefix_segments=0): |
| """ |
| Updates paths inside resnets to the new naming scheme (local renaming) |
| """ |
| mapping = [] |
| for old_item in old_list: |
| new_item = old_item.replace("in_layers.0", "norm1") |
| new_item = new_item.replace("in_layers.2", "conv1") |
|
|
| new_item = new_item.replace("out_layers.0", "norm2") |
| new_item = new_item.replace("out_layers.3", "conv2") |
|
|
| new_item = new_item.replace("emb_layers.1", "time_emb_proj") |
| new_item = new_item.replace("skip_connection", "conv_shortcut") |
|
|
| new_item = shave_segments(new_item, n_shave_prefix_segments=n_shave_prefix_segments) |
|
|
| mapping.append({"old": old_item, "new": new_item}) |
|
|
| return mapping |
|
|
|
|
| |
| def renew_vae_resnet_paths(old_list, n_shave_prefix_segments=0): |
| """ |
| Updates paths inside resnets to the new naming scheme (local renaming) |
| """ |
| mapping = [] |
| for old_item in old_list: |
| new_item = old_item |
|
|
| new_item = new_item.replace("nin_shortcut", "conv_shortcut") |
| new_item = shave_segments(new_item, n_shave_prefix_segments=n_shave_prefix_segments) |
|
|
| mapping.append({"old": old_item, "new": new_item}) |
|
|
| return mapping |
|
|
|
|
| |
| def renew_attention_paths(old_list): |
| """ |
| Updates paths inside attentions to the new naming scheme (local renaming) |
| """ |
| mapping = [] |
| for old_item in old_list: |
| new_item = old_item |
|
|
| |
| |
|
|
| |
| |
|
|
| |
|
|
| mapping.append({"old": old_item, "new": new_item}) |
|
|
| return mapping |
|
|
|
|
| |
| def renew_vae_attention_paths(old_list, n_shave_prefix_segments=0): |
| """ |
| Updates paths inside attentions to the new naming scheme (local renaming) |
| """ |
| mapping = [] |
| for old_item in old_list: |
| new_item = old_item |
|
|
| new_item = new_item.replace("norm.weight", "group_norm.weight") |
| new_item = new_item.replace("norm.bias", "group_norm.bias") |
|
|
| new_item = new_item.replace("q.weight", "query.weight") |
| new_item = new_item.replace("q.bias", "query.bias") |
|
|
| new_item = new_item.replace("k.weight", "key.weight") |
| new_item = new_item.replace("k.bias", "key.bias") |
|
|
| new_item = new_item.replace("v.weight", "value.weight") |
| new_item = new_item.replace("v.bias", "value.bias") |
|
|
| new_item = new_item.replace("proj_out.weight", "proj_attn.weight") |
| new_item = new_item.replace("proj_out.bias", "proj_attn.bias") |
|
|
| new_item = shave_segments(new_item, n_shave_prefix_segments=n_shave_prefix_segments) |
|
|
| mapping.append({"old": old_item, "new": new_item}) |
|
|
| return mapping |
|
|
|
|
| |
| def assign_to_checkpoint( |
| paths, checkpoint, old_checkpoint, attention_paths_to_split=None, additional_replacements=None, config=None |
| ): |
| """ |
| This does the final conversion step: take locally converted weights and apply a global renaming to them. It splits |
| attention layers, and takes into account additional replacements that may arise. |
| |
| Assigns the weights to the new checkpoint. |
| """ |
| assert isinstance(paths, list), "Paths should be a list of dicts containing 'old' and 'new' keys." |
|
|
| |
| if attention_paths_to_split is not None: |
| for path, path_map in attention_paths_to_split.items(): |
| old_tensor = old_checkpoint[path] |
| channels = old_tensor.shape[0] // 3 |
|
|
| target_shape = (-1, channels) if len(old_tensor.shape) == 3 else (-1) |
|
|
| num_heads = old_tensor.shape[0] // config["num_head_channels"] // 3 |
|
|
| old_tensor = old_tensor.reshape((num_heads, 3 * channels // num_heads) + old_tensor.shape[1:]) |
| query, key, value = old_tensor.split(channels // num_heads, dim=1) |
|
|
| checkpoint[path_map["query"]] = query.reshape(target_shape) |
| checkpoint[path_map["key"]] = key.reshape(target_shape) |
| checkpoint[path_map["value"]] = value.reshape(target_shape) |
|
|
| for path in paths: |
| new_path = path["new"] |
|
|
| |
| if attention_paths_to_split is not None and new_path in attention_paths_to_split: |
| continue |
|
|
| |
| new_path = new_path.replace("middle_block.0", "mid_block.resnets.0") |
| new_path = new_path.replace("middle_block.1", "mid_block.attentions.0") |
| new_path = new_path.replace("middle_block.2", "mid_block.resnets.1") |
|
|
| if additional_replacements is not None: |
| for replacement in additional_replacements: |
| new_path = new_path.replace(replacement["old"], replacement["new"]) |
|
|
| |
| if "proj_attn.weight" in new_path: |
| checkpoint[new_path] = old_checkpoint[path["old"]][:, :, 0] |
| else: |
| checkpoint[new_path] = old_checkpoint[path["old"]] |
|
|
|
|
| |
| def conv_attn_to_linear(checkpoint): |
| keys = list(checkpoint.keys()) |
| attn_keys = ["query.weight", "key.weight", "value.weight"] |
| for key in keys: |
| if ".".join(key.split(".")[-2:]) in attn_keys: |
| if checkpoint[key].ndim > 2: |
| checkpoint[key] = checkpoint[key][:, :, 0, 0] |
| elif "proj_attn.weight" in key: |
| if checkpoint[key].ndim > 2: |
| checkpoint[key] = checkpoint[key][:, :, 0] |
|
|
|
|
| def create_unet_diffusers_config(original_config, image_size: int): |
| """ |
| Creates a UNet config for diffusers based on the config of the original AudioLDM model. |
| """ |
| unet_params = original_config.model.params.unet_config.params |
| vae_params = original_config.model.params.first_stage_config.params.ddconfig |
|
|
| block_out_channels = [unet_params.model_channels * mult for mult in unet_params.channel_mult] |
|
|
| down_block_types = [] |
| resolution = 1 |
| for i in range(len(block_out_channels)): |
| block_type = "CrossAttnDownBlock2D" if resolution in unet_params.attention_resolutions else "DownBlock2D" |
| down_block_types.append(block_type) |
| if i != len(block_out_channels) - 1: |
| resolution *= 2 |
|
|
| up_block_types = [] |
| for i in range(len(block_out_channels)): |
| block_type = "CrossAttnUpBlock2D" if resolution in unet_params.attention_resolutions else "UpBlock2D" |
| up_block_types.append(block_type) |
| resolution //= 2 |
|
|
| vae_scale_factor = 2 ** (len(vae_params.ch_mult) - 1) |
|
|
| cross_attention_dim = ( |
| unet_params.cross_attention_dim if "cross_attention_dim" in unet_params else block_out_channels |
| ) |
|
|
| class_embed_type = "simple_projection" if "extra_film_condition_dim" in unet_params else None |
| projection_class_embeddings_input_dim = ( |
| unet_params.extra_film_condition_dim if "extra_film_condition_dim" in unet_params else None |
| ) |
| class_embeddings_concat = unet_params.extra_film_use_concat if "extra_film_use_concat" in unet_params else None |
|
|
| config = { |
| "sample_size": image_size // vae_scale_factor, |
| "in_channels": unet_params.in_channels, |
| "out_channels": unet_params.out_channels, |
| "down_block_types": tuple(down_block_types), |
| "up_block_types": tuple(up_block_types), |
| "block_out_channels": tuple(block_out_channels), |
| "layers_per_block": unet_params.num_res_blocks, |
| "cross_attention_dim": cross_attention_dim, |
| "class_embed_type": class_embed_type, |
| "projection_class_embeddings_input_dim": projection_class_embeddings_input_dim, |
| "class_embeddings_concat": class_embeddings_concat, |
| } |
|
|
| return config |
|
|
|
|
| |
| def create_vae_diffusers_config(original_config, checkpoint, image_size: int): |
| """ |
| Creates a VAE config for diffusers based on the config of the original AudioLDM model. Compared to the original |
| Stable Diffusion conversion, this function passes a *learnt* VAE scaling factor to the diffusers VAE. |
| """ |
| vae_params = original_config.model.params.first_stage_config.params.ddconfig |
| _ = original_config.model.params.first_stage_config.params.embed_dim |
|
|
| block_out_channels = [vae_params.ch * mult for mult in vae_params.ch_mult] |
| down_block_types = ["DownEncoderBlock2D"] * len(block_out_channels) |
| up_block_types = ["UpDecoderBlock2D"] * len(block_out_channels) |
|
|
| scaling_factor = checkpoint["scale_factor"] if "scale_by_std" in original_config.model.params else 0.18215 |
|
|
| config = { |
| "sample_size": image_size, |
| "in_channels": vae_params.in_channels, |
| "out_channels": vae_params.out_ch, |
| "down_block_types": tuple(down_block_types), |
| "up_block_types": tuple(up_block_types), |
| "block_out_channels": tuple(block_out_channels), |
| "latent_channels": vae_params.z_channels, |
| "layers_per_block": vae_params.num_res_blocks, |
| "scaling_factor": float(scaling_factor), |
| } |
| return config |
|
|
|
|
| |
| def create_diffusers_schedular(original_config): |
| schedular = DDIMScheduler( |
| num_train_timesteps=original_config.model.params.timesteps, |
| beta_start=original_config.model.params.linear_start, |
| beta_end=original_config.model.params.linear_end, |
| beta_schedule="scaled_linear", |
| ) |
| return schedular |
|
|
|
|
| |
| def convert_ldm_unet_checkpoint(checkpoint, config, path=None, extract_ema=False): |
| """ |
| Takes a state dict and a config, and returns a converted checkpoint. Compared to the original Stable Diffusion |
| conversion, this function additionally converts the learnt film embedding linear layer. |
| """ |
|
|
| |
| unet_state_dict = {} |
| keys = list(checkpoint.keys()) |
|
|
| unet_key = "model.diffusion_model." |
| |
| if sum(k.startswith("model_ema") for k in keys) > 100 and extract_ema: |
| print(f"Checkpoint {path} has both EMA and non-EMA weights.") |
| print( |
| "In this conversion only the EMA weights are extracted. If you want to instead extract the non-EMA" |
| " weights (useful to continue fine-tuning), please make sure to remove the `--extract_ema` flag." |
| ) |
| for key in keys: |
| if key.startswith("model.diffusion_model"): |
| flat_ema_key = "model_ema." + "".join(key.split(".")[1:]) |
| unet_state_dict[key.replace(unet_key, "")] = checkpoint.pop(flat_ema_key) |
| else: |
| if sum(k.startswith("model_ema") for k in keys) > 100: |
| print( |
| "In this conversion only the non-EMA weights are extracted. If you want to instead extract the EMA" |
| " weights (usually better for inference), please make sure to add the `--extract_ema` flag." |
| ) |
|
|
| for key in keys: |
| if key.startswith(unet_key): |
| unet_state_dict[key.replace(unet_key, "")] = checkpoint.pop(key) |
|
|
| new_checkpoint = {} |
|
|
| new_checkpoint["time_embedding.linear_1.weight"] = unet_state_dict["time_embed.0.weight"] |
| new_checkpoint["time_embedding.linear_1.bias"] = unet_state_dict["time_embed.0.bias"] |
| new_checkpoint["time_embedding.linear_2.weight"] = unet_state_dict["time_embed.2.weight"] |
| new_checkpoint["time_embedding.linear_2.bias"] = unet_state_dict["time_embed.2.bias"] |
|
|
| new_checkpoint["class_embedding.weight"] = unet_state_dict["film_emb.weight"] |
| new_checkpoint["class_embedding.bias"] = unet_state_dict["film_emb.bias"] |
|
|
| new_checkpoint["conv_in.weight"] = unet_state_dict["input_blocks.0.0.weight"] |
| new_checkpoint["conv_in.bias"] = unet_state_dict["input_blocks.0.0.bias"] |
|
|
| new_checkpoint["conv_norm_out.weight"] = unet_state_dict["out.0.weight"] |
| new_checkpoint["conv_norm_out.bias"] = unet_state_dict["out.0.bias"] |
| new_checkpoint["conv_out.weight"] = unet_state_dict["out.2.weight"] |
| new_checkpoint["conv_out.bias"] = unet_state_dict["out.2.bias"] |
|
|
| |
| num_input_blocks = len({".".join(layer.split(".")[:2]) for layer in unet_state_dict if "input_blocks" in layer}) |
| input_blocks = { |
| layer_id: [key for key in unet_state_dict if f"input_blocks.{layer_id}" in key] |
| for layer_id in range(num_input_blocks) |
| } |
|
|
| |
| num_middle_blocks = len({".".join(layer.split(".")[:2]) for layer in unet_state_dict if "middle_block" in layer}) |
| middle_blocks = { |
| layer_id: [key for key in unet_state_dict if f"middle_block.{layer_id}" in key] |
| for layer_id in range(num_middle_blocks) |
| } |
|
|
| |
| num_output_blocks = len({".".join(layer.split(".")[:2]) for layer in unet_state_dict if "output_blocks" in layer}) |
| output_blocks = { |
| layer_id: [key for key in unet_state_dict if f"output_blocks.{layer_id}" in key] |
| for layer_id in range(num_output_blocks) |
| } |
|
|
| for i in range(1, num_input_blocks): |
| block_id = (i - 1) // (config["layers_per_block"] + 1) |
| layer_in_block_id = (i - 1) % (config["layers_per_block"] + 1) |
|
|
| resnets = [ |
| key for key in input_blocks[i] if f"input_blocks.{i}.0" in key and f"input_blocks.{i}.0.op" not in key |
| ] |
| attentions = [key for key in input_blocks[i] if f"input_blocks.{i}.1" in key] |
|
|
| if f"input_blocks.{i}.0.op.weight" in unet_state_dict: |
| new_checkpoint[f"down_blocks.{block_id}.downsamplers.0.conv.weight"] = unet_state_dict.pop( |
| f"input_blocks.{i}.0.op.weight" |
| ) |
| new_checkpoint[f"down_blocks.{block_id}.downsamplers.0.conv.bias"] = unet_state_dict.pop( |
| f"input_blocks.{i}.0.op.bias" |
| ) |
|
|
| paths = renew_resnet_paths(resnets) |
| meta_path = {"old": f"input_blocks.{i}.0", "new": f"down_blocks.{block_id}.resnets.{layer_in_block_id}"} |
| assign_to_checkpoint( |
| paths, new_checkpoint, unet_state_dict, additional_replacements=[meta_path], config=config |
| ) |
|
|
| if len(attentions): |
| paths = renew_attention_paths(attentions) |
| meta_path = {"old": f"input_blocks.{i}.1", "new": f"down_blocks.{block_id}.attentions.{layer_in_block_id}"} |
| assign_to_checkpoint( |
| paths, new_checkpoint, unet_state_dict, additional_replacements=[meta_path], config=config |
| ) |
|
|
| resnet_0 = middle_blocks[0] |
| attentions = middle_blocks[1] |
| resnet_1 = middle_blocks[2] |
|
|
| resnet_0_paths = renew_resnet_paths(resnet_0) |
| assign_to_checkpoint(resnet_0_paths, new_checkpoint, unet_state_dict, config=config) |
|
|
| resnet_1_paths = renew_resnet_paths(resnet_1) |
| assign_to_checkpoint(resnet_1_paths, new_checkpoint, unet_state_dict, config=config) |
|
|
| attentions_paths = renew_attention_paths(attentions) |
| meta_path = {"old": "middle_block.1", "new": "mid_block.attentions.0"} |
| assign_to_checkpoint( |
| attentions_paths, new_checkpoint, unet_state_dict, additional_replacements=[meta_path], config=config |
| ) |
|
|
| for i in range(num_output_blocks): |
| block_id = i // (config["layers_per_block"] + 1) |
| layer_in_block_id = i % (config["layers_per_block"] + 1) |
| output_block_layers = [shave_segments(name, 2) for name in output_blocks[i]] |
| output_block_list = {} |
|
|
| for layer in output_block_layers: |
| layer_id, layer_name = layer.split(".")[0], shave_segments(layer, 1) |
| if layer_id in output_block_list: |
| output_block_list[layer_id].append(layer_name) |
| else: |
| output_block_list[layer_id] = [layer_name] |
|
|
| if len(output_block_list) > 1: |
| resnets = [key for key in output_blocks[i] if f"output_blocks.{i}.0" in key] |
| attentions = [key for key in output_blocks[i] if f"output_blocks.{i}.1" in key] |
|
|
| resnet_0_paths = renew_resnet_paths(resnets) |
| paths = renew_resnet_paths(resnets) |
|
|
| meta_path = {"old": f"output_blocks.{i}.0", "new": f"up_blocks.{block_id}.resnets.{layer_in_block_id}"} |
| assign_to_checkpoint( |
| paths, new_checkpoint, unet_state_dict, additional_replacements=[meta_path], config=config |
| ) |
|
|
| output_block_list = {k: sorted(v) for k, v in output_block_list.items()} |
| if ["conv.bias", "conv.weight"] in output_block_list.values(): |
| index = list(output_block_list.values()).index(["conv.bias", "conv.weight"]) |
| new_checkpoint[f"up_blocks.{block_id}.upsamplers.0.conv.weight"] = unet_state_dict[ |
| f"output_blocks.{i}.{index}.conv.weight" |
| ] |
| new_checkpoint[f"up_blocks.{block_id}.upsamplers.0.conv.bias"] = unet_state_dict[ |
| f"output_blocks.{i}.{index}.conv.bias" |
| ] |
|
|
| |
| if len(attentions) == 2: |
| attentions = [] |
|
|
| if len(attentions): |
| paths = renew_attention_paths(attentions) |
| meta_path = { |
| "old": f"output_blocks.{i}.1", |
| "new": f"up_blocks.{block_id}.attentions.{layer_in_block_id}", |
| } |
| assign_to_checkpoint( |
| paths, new_checkpoint, unet_state_dict, additional_replacements=[meta_path], config=config |
| ) |
| else: |
| resnet_0_paths = renew_resnet_paths(output_block_layers, n_shave_prefix_segments=1) |
| for path in resnet_0_paths: |
| old_path = ".".join(["output_blocks", str(i), path["old"]]) |
| new_path = ".".join(["up_blocks", str(block_id), "resnets", str(layer_in_block_id), path["new"]]) |
|
|
| new_checkpoint[new_path] = unet_state_dict[old_path] |
|
|
| return new_checkpoint |
|
|
|
|
| |
| def convert_ldm_vae_checkpoint(checkpoint, config): |
| |
| vae_state_dict = {} |
| vae_key = "first_stage_model." |
| keys = list(checkpoint.keys()) |
| for key in keys: |
| if key.startswith(vae_key): |
| vae_state_dict[key.replace(vae_key, "")] = checkpoint.get(key) |
|
|
| new_checkpoint = {} |
|
|
| new_checkpoint["encoder.conv_in.weight"] = vae_state_dict["encoder.conv_in.weight"] |
| new_checkpoint["encoder.conv_in.bias"] = vae_state_dict["encoder.conv_in.bias"] |
| new_checkpoint["encoder.conv_out.weight"] = vae_state_dict["encoder.conv_out.weight"] |
| new_checkpoint["encoder.conv_out.bias"] = vae_state_dict["encoder.conv_out.bias"] |
| new_checkpoint["encoder.conv_norm_out.weight"] = vae_state_dict["encoder.norm_out.weight"] |
| new_checkpoint["encoder.conv_norm_out.bias"] = vae_state_dict["encoder.norm_out.bias"] |
|
|
| new_checkpoint["decoder.conv_in.weight"] = vae_state_dict["decoder.conv_in.weight"] |
| new_checkpoint["decoder.conv_in.bias"] = vae_state_dict["decoder.conv_in.bias"] |
| new_checkpoint["decoder.conv_out.weight"] = vae_state_dict["decoder.conv_out.weight"] |
| new_checkpoint["decoder.conv_out.bias"] = vae_state_dict["decoder.conv_out.bias"] |
| new_checkpoint["decoder.conv_norm_out.weight"] = vae_state_dict["decoder.norm_out.weight"] |
| new_checkpoint["decoder.conv_norm_out.bias"] = vae_state_dict["decoder.norm_out.bias"] |
|
|
| new_checkpoint["quant_conv.weight"] = vae_state_dict["quant_conv.weight"] |
| new_checkpoint["quant_conv.bias"] = vae_state_dict["quant_conv.bias"] |
| new_checkpoint["post_quant_conv.weight"] = vae_state_dict["post_quant_conv.weight"] |
| new_checkpoint["post_quant_conv.bias"] = vae_state_dict["post_quant_conv.bias"] |
|
|
| |
| num_down_blocks = len({".".join(layer.split(".")[:3]) for layer in vae_state_dict if "encoder.down" in layer}) |
| down_blocks = { |
| layer_id: [key for key in vae_state_dict if f"down.{layer_id}" in key] for layer_id in range(num_down_blocks) |
| } |
|
|
| |
| num_up_blocks = len({".".join(layer.split(".")[:3]) for layer in vae_state_dict if "decoder.up" in layer}) |
| up_blocks = { |
| layer_id: [key for key in vae_state_dict if f"up.{layer_id}" in key] for layer_id in range(num_up_blocks) |
| } |
|
|
| for i in range(num_down_blocks): |
| resnets = [key for key in down_blocks[i] if f"down.{i}" in key and f"down.{i}.downsample" not in key] |
|
|
| if f"encoder.down.{i}.downsample.conv.weight" in vae_state_dict: |
| new_checkpoint[f"encoder.down_blocks.{i}.downsamplers.0.conv.weight"] = vae_state_dict.pop( |
| f"encoder.down.{i}.downsample.conv.weight" |
| ) |
| new_checkpoint[f"encoder.down_blocks.{i}.downsamplers.0.conv.bias"] = vae_state_dict.pop( |
| f"encoder.down.{i}.downsample.conv.bias" |
| ) |
|
|
| paths = renew_vae_resnet_paths(resnets) |
| meta_path = {"old": f"down.{i}.block", "new": f"down_blocks.{i}.resnets"} |
| assign_to_checkpoint(paths, new_checkpoint, vae_state_dict, additional_replacements=[meta_path], config=config) |
|
|
| mid_resnets = [key for key in vae_state_dict if "encoder.mid.block" in key] |
| num_mid_res_blocks = 2 |
| for i in range(1, num_mid_res_blocks + 1): |
| resnets = [key for key in mid_resnets if f"encoder.mid.block_{i}" in key] |
|
|
| paths = renew_vae_resnet_paths(resnets) |
| meta_path = {"old": f"mid.block_{i}", "new": f"mid_block.resnets.{i - 1}"} |
| assign_to_checkpoint(paths, new_checkpoint, vae_state_dict, additional_replacements=[meta_path], config=config) |
|
|
| mid_attentions = [key for key in vae_state_dict if "encoder.mid.attn" in key] |
| paths = renew_vae_attention_paths(mid_attentions) |
| meta_path = {"old": "mid.attn_1", "new": "mid_block.attentions.0"} |
| assign_to_checkpoint(paths, new_checkpoint, vae_state_dict, additional_replacements=[meta_path], config=config) |
| conv_attn_to_linear(new_checkpoint) |
|
|
| for i in range(num_up_blocks): |
| block_id = num_up_blocks - 1 - i |
| resnets = [ |
| key for key in up_blocks[block_id] if f"up.{block_id}" in key and f"up.{block_id}.upsample" not in key |
| ] |
|
|
| if f"decoder.up.{block_id}.upsample.conv.weight" in vae_state_dict: |
| new_checkpoint[f"decoder.up_blocks.{i}.upsamplers.0.conv.weight"] = vae_state_dict[ |
| f"decoder.up.{block_id}.upsample.conv.weight" |
| ] |
| new_checkpoint[f"decoder.up_blocks.{i}.upsamplers.0.conv.bias"] = vae_state_dict[ |
| f"decoder.up.{block_id}.upsample.conv.bias" |
| ] |
|
|
| paths = renew_vae_resnet_paths(resnets) |
| meta_path = {"old": f"up.{block_id}.block", "new": f"up_blocks.{i}.resnets"} |
| assign_to_checkpoint(paths, new_checkpoint, vae_state_dict, additional_replacements=[meta_path], config=config) |
|
|
| mid_resnets = [key for key in vae_state_dict if "decoder.mid.block" in key] |
| num_mid_res_blocks = 2 |
| for i in range(1, num_mid_res_blocks + 1): |
| resnets = [key for key in mid_resnets if f"decoder.mid.block_{i}" in key] |
|
|
| paths = renew_vae_resnet_paths(resnets) |
| meta_path = {"old": f"mid.block_{i}", "new": f"mid_block.resnets.{i - 1}"} |
| assign_to_checkpoint(paths, new_checkpoint, vae_state_dict, additional_replacements=[meta_path], config=config) |
|
|
| mid_attentions = [key for key in vae_state_dict if "decoder.mid.attn" in key] |
| paths = renew_vae_attention_paths(mid_attentions) |
| meta_path = {"old": "mid.attn_1", "new": "mid_block.attentions.0"} |
| assign_to_checkpoint(paths, new_checkpoint, vae_state_dict, additional_replacements=[meta_path], config=config) |
| conv_attn_to_linear(new_checkpoint) |
| return new_checkpoint |
|
|
|
|
| CLAP_KEYS_TO_MODIFY_MAPPING = { |
| "text_branch": "text_model", |
| "attn": "attention.self", |
| "self.proj": "output.dense", |
| "attention.self_mask": "attn_mask", |
| "mlp.fc1": "intermediate.dense", |
| "mlp.fc2": "output.dense", |
| "norm1": "layernorm_before", |
| "norm2": "layernorm_after", |
| "bn0": "batch_norm", |
| } |
|
|
| CLAP_KEYS_TO_IGNORE = ["text_transform"] |
|
|
| CLAP_EXPECTED_MISSING_KEYS = ["text_model.embeddings.token_type_ids"] |
|
|
|
|
| def convert_open_clap_checkpoint(checkpoint): |
| """ |
| Takes a state dict and returns a converted CLAP checkpoint. |
| """ |
| |
| model_state_dict = {} |
| model_key = "cond_stage_model.model.text_" |
| keys = list(checkpoint.keys()) |
| for key in keys: |
| if key.startswith(model_key): |
| model_state_dict[key.replace(model_key, "text_")] = checkpoint.get(key) |
|
|
| new_checkpoint = {} |
|
|
| sequential_layers_pattern = r".*sequential.(\d+).*" |
| text_projection_pattern = r".*_projection.(\d+).*" |
|
|
| for key, value in model_state_dict.items(): |
| |
| if key.split(".")[0] in CLAP_KEYS_TO_IGNORE: |
| continue |
|
|
| |
| for key_to_modify, new_key in CLAP_KEYS_TO_MODIFY_MAPPING.items(): |
| if key_to_modify in key: |
| key = key.replace(key_to_modify, new_key) |
|
|
| if re.match(sequential_layers_pattern, key): |
| |
| sequential_layer = re.match(sequential_layers_pattern, key).group(1) |
|
|
| key = key.replace(f"sequential.{sequential_layer}.", f"layers.{int(sequential_layer)//3}.linear.") |
| elif re.match(text_projection_pattern, key): |
| projecton_layer = int(re.match(text_projection_pattern, key).group(1)) |
|
|
| |
| transformers_projection_layer = 1 if projecton_layer == 0 else 2 |
|
|
| key = key.replace(f"_projection.{projecton_layer}.", f"_projection.linear{transformers_projection_layer}.") |
|
|
| if "audio" and "qkv" in key: |
| |
| mixed_qkv = value |
| qkv_dim = mixed_qkv.size(0) // 3 |
|
|
| query_layer = mixed_qkv[:qkv_dim] |
| key_layer = mixed_qkv[qkv_dim : qkv_dim * 2] |
| value_layer = mixed_qkv[qkv_dim * 2 :] |
|
|
| new_checkpoint[key.replace("qkv", "query")] = query_layer |
| new_checkpoint[key.replace("qkv", "key")] = key_layer |
| new_checkpoint[key.replace("qkv", "value")] = value_layer |
| else: |
| new_checkpoint[key] = value |
|
|
| return new_checkpoint |
|
|
|
|
| def create_transformers_vocoder_config(original_config): |
| """ |
| Creates a config for transformers SpeechT5HifiGan based on the config of the vocoder model. |
| """ |
| vocoder_params = original_config.model.params.vocoder_config.params |
|
|
| config = { |
| "model_in_dim": vocoder_params.num_mels, |
| "sampling_rate": vocoder_params.sampling_rate, |
| "upsample_initial_channel": vocoder_params.upsample_initial_channel, |
| "upsample_rates": list(vocoder_params.upsample_rates), |
| "upsample_kernel_sizes": list(vocoder_params.upsample_kernel_sizes), |
| "resblock_kernel_sizes": list(vocoder_params.resblock_kernel_sizes), |
| "resblock_dilation_sizes": [ |
| list(resblock_dilation) for resblock_dilation in vocoder_params.resblock_dilation_sizes |
| ], |
| "normalize_before": False, |
| } |
|
|
| return config |
|
|
|
|
| def convert_hifigan_checkpoint(checkpoint, config): |
| """ |
| Takes a state dict and config, and returns a converted HiFiGAN vocoder checkpoint. |
| """ |
| |
| vocoder_state_dict = {} |
| vocoder_key = "first_stage_model.vocoder." |
| keys = list(checkpoint.keys()) |
| for key in keys: |
| if key.startswith(vocoder_key): |
| vocoder_state_dict[key.replace(vocoder_key, "")] = checkpoint.get(key) |
|
|
| |
| for i in range(len(config.upsample_rates)): |
| vocoder_state_dict[f"upsampler.{i}.weight"] = vocoder_state_dict.pop(f"ups.{i}.weight") |
| vocoder_state_dict[f"upsampler.{i}.bias"] = vocoder_state_dict.pop(f"ups.{i}.bias") |
|
|
| if not config.normalize_before: |
| |
| vocoder_state_dict["mean"] = torch.zeros(config.model_in_dim) |
| vocoder_state_dict["scale"] = torch.ones(config.model_in_dim) |
|
|
| return vocoder_state_dict |
|
|
|
|
| |
| DEFAULT_CONFIG = { |
| "model": { |
| "params": { |
| "linear_start": 0.0015, |
| "linear_end": 0.0195, |
| "timesteps": 1000, |
| "channels": 8, |
| "scale_by_std": True, |
| "unet_config": { |
| "target": "audioldm.latent_diffusion.openaimodel.UNetModel", |
| "params": { |
| "extra_film_condition_dim": 512, |
| "extra_film_use_concat": True, |
| "in_channels": 8, |
| "out_channels": 8, |
| "model_channels": 128, |
| "attention_resolutions": [8, 4, 2], |
| "num_res_blocks": 2, |
| "channel_mult": [1, 2, 3, 5], |
| "num_head_channels": 32, |
| }, |
| }, |
| "first_stage_config": { |
| "target": "audioldm.variational_autoencoder.autoencoder.AutoencoderKL", |
| "params": { |
| "embed_dim": 8, |
| "ddconfig": { |
| "z_channels": 8, |
| "resolution": 256, |
| "in_channels": 1, |
| "out_ch": 1, |
| "ch": 128, |
| "ch_mult": [1, 2, 4], |
| "num_res_blocks": 2, |
| }, |
| }, |
| }, |
| "vocoder_config": { |
| "target": "audioldm.first_stage_model.vocoder", |
| "params": { |
| "upsample_rates": [5, 4, 2, 2, 2], |
| "upsample_kernel_sizes": [16, 16, 8, 4, 4], |
| "upsample_initial_channel": 1024, |
| "resblock_kernel_sizes": [3, 7, 11], |
| "resblock_dilation_sizes": [[1, 3, 5], [1, 3, 5], [1, 3, 5]], |
| "num_mels": 64, |
| "sampling_rate": 16000, |
| }, |
| }, |
| }, |
| }, |
| } |
|
|
|
|
| def load_pipeline_from_original_audioldm_ckpt( |
| checkpoint_path: str, |
| original_config_file: str = None, |
| image_size: int = 512, |
| prediction_type: str = None, |
| extract_ema: bool = False, |
| scheduler_type: str = "ddim", |
| num_in_channels: int = None, |
| model_channels: int = None, |
| num_head_channels: int = None, |
| device: str = None, |
| from_safetensors: bool = False, |
| ) -> AudioLDMPipeline: |
| """ |
| Load an AudioLDM pipeline object from a `.ckpt`/`.safetensors` file and (ideally) a `.yaml` config file. |
| |
| Although many of the arguments can be automatically inferred, some of these rely on brittle checks against the |
| global step count, which will likely fail for models that have undergone further fine-tuning. Therefore, it is |
| recommended that you override the default values and/or supply an `original_config_file` wherever possible. |
| |
| Args: |
| checkpoint_path (`str`): Path to `.ckpt` file. |
| original_config_file (`str`): |
| Path to `.yaml` config file corresponding to the original architecture. If `None`, will be automatically |
| set to the audioldm-s-full-v2 config. |
| image_size (`int`, *optional*, defaults to 512): |
| The image size that the model was trained on. |
| prediction_type (`str`, *optional*): |
| The prediction type that the model was trained on. If `None`, will be automatically |
| inferred by looking for a key in the config. For the default config, the prediction type is `'epsilon'`. |
| num_in_channels (`int`, *optional*, defaults to None): |
| The number of UNet input channels. If `None`, it will be automatically inferred from the config. |
| model_channels (`int`, *optional*, defaults to None): |
| The number of UNet model channels. If `None`, it will be automatically inferred from the config. Override |
| to 128 for the small checkpoints, 192 for the medium checkpoints and 256 for the large. |
| num_head_channels (`int`, *optional*, defaults to None): |
| The number of UNet head channels. If `None`, it will be automatically inferred from the config. Override |
| to 32 for the small and medium checkpoints, and 64 for the large. |
| scheduler_type (`str`, *optional*, defaults to 'pndm'): |
| Type of scheduler to use. Should be one of `["pndm", "lms", "heun", "euler", "euler-ancestral", "dpm", |
| "ddim"]`. |
| extract_ema (`bool`, *optional*, defaults to `False`): Only relevant for |
| checkpoints that have both EMA and non-EMA weights. Whether to extract the EMA weights or not. Defaults to |
| `False`. Pass `True` to extract the EMA weights. EMA weights usually yield higher quality images for |
| inference. Non-EMA weights are usually better to continue fine-tuning. |
| device (`str`, *optional*, defaults to `None`): |
| The device to use. Pass `None` to determine automatically. |
| from_safetensors (`str`, *optional*, defaults to `False`): |
| If `checkpoint_path` is in `safetensors` format, load checkpoint with safetensors instead of PyTorch. |
| return: An AudioLDMPipeline object representing the passed-in `.ckpt`/`.safetensors` file. |
| """ |
|
|
| if not is_omegaconf_available(): |
| raise ValueError(BACKENDS_MAPPING["omegaconf"][1]) |
|
|
| from omegaconf import OmegaConf |
|
|
| if from_safetensors: |
| if not is_safetensors_available(): |
| raise ValueError(BACKENDS_MAPPING["safetensors"][1]) |
|
|
| from safetensors import safe_open |
|
|
| checkpoint = {} |
| with safe_open(checkpoint_path, framework="pt", device="cpu") as f: |
| for key in f.keys(): |
| checkpoint[key] = f.get_tensor(key) |
| else: |
| if device is None: |
| device = "cuda" if torch.cuda.is_available() else "cpu" |
| checkpoint = torch.load(checkpoint_path, map_location=device) |
| else: |
| checkpoint = torch.load(checkpoint_path, map_location=device) |
|
|
| if "state_dict" in checkpoint: |
| checkpoint = checkpoint["state_dict"] |
|
|
| if original_config_file is None: |
| original_config = DEFAULT_CONFIG |
| original_config = OmegaConf.create(original_config) |
| else: |
| original_config = OmegaConf.load(original_config_file) |
|
|
| if num_in_channels is not None: |
| original_config["model"]["params"]["unet_config"]["params"]["in_channels"] = num_in_channels |
|
|
| if model_channels is not None: |
| original_config["model"]["params"]["unet_config"]["params"]["model_channels"] = model_channels |
|
|
| if num_head_channels is not None: |
| original_config["model"]["params"]["unet_config"]["params"]["num_head_channels"] = num_head_channels |
|
|
| if ( |
| "parameterization" in original_config["model"]["params"] |
| and original_config["model"]["params"]["parameterization"] == "v" |
| ): |
| if prediction_type is None: |
| prediction_type = "v_prediction" |
| else: |
| if prediction_type is None: |
| prediction_type = "epsilon" |
|
|
| if image_size is None: |
| image_size = 512 |
|
|
| num_train_timesteps = original_config.model.params.timesteps |
| beta_start = original_config.model.params.linear_start |
| beta_end = original_config.model.params.linear_end |
|
|
| scheduler = DDIMScheduler( |
| beta_end=beta_end, |
| beta_schedule="scaled_linear", |
| beta_start=beta_start, |
| num_train_timesteps=num_train_timesteps, |
| steps_offset=1, |
| clip_sample=False, |
| set_alpha_to_one=False, |
| prediction_type=prediction_type, |
| ) |
| |
| scheduler.register_to_config(clip_sample=False) |
|
|
| if scheduler_type == "pndm": |
| config = dict(scheduler.config) |
| config["skip_prk_steps"] = True |
| scheduler = PNDMScheduler.from_config(config) |
| elif scheduler_type == "lms": |
| scheduler = LMSDiscreteScheduler.from_config(scheduler.config) |
| elif scheduler_type == "heun": |
| scheduler = HeunDiscreteScheduler.from_config(scheduler.config) |
| elif scheduler_type == "euler": |
| scheduler = EulerDiscreteScheduler.from_config(scheduler.config) |
| elif scheduler_type == "euler-ancestral": |
| scheduler = EulerAncestralDiscreteScheduler.from_config(scheduler.config) |
| elif scheduler_type == "dpm": |
| scheduler = DPMSolverMultistepScheduler.from_config(scheduler.config) |
| elif scheduler_type == "ddim": |
| scheduler = scheduler |
| else: |
| raise ValueError(f"Scheduler of type {scheduler_type} doesn't exist!") |
|
|
| |
| unet_config = create_unet_diffusers_config(original_config, image_size=image_size) |
| unet = UNet2DConditionModel(**unet_config) |
|
|
| converted_unet_checkpoint = convert_ldm_unet_checkpoint( |
| checkpoint, unet_config, path=checkpoint_path, extract_ema=extract_ema |
| ) |
|
|
| unet.load_state_dict(converted_unet_checkpoint) |
|
|
| |
| vae_config = create_vae_diffusers_config(original_config, checkpoint=checkpoint, image_size=image_size) |
| converted_vae_checkpoint = convert_ldm_vae_checkpoint(checkpoint, vae_config) |
|
|
| vae = AutoencoderKL(**vae_config) |
| vae.load_state_dict(converted_vae_checkpoint) |
|
|
| |
| |
| config = ClapTextConfig.from_pretrained("laion/clap-htsat-unfused") |
| tokenizer = AutoTokenizer.from_pretrained("laion/clap-htsat-unfused") |
|
|
| converted_text_model = convert_open_clap_checkpoint(checkpoint) |
| text_model = ClapTextModelWithProjection(config) |
|
|
| missing_keys, unexpected_keys = text_model.load_state_dict(converted_text_model, strict=False) |
| |
| missing_keys = list(set(missing_keys) - set(CLAP_EXPECTED_MISSING_KEYS)) |
|
|
| if len(unexpected_keys) > 0: |
| raise ValueError(f"Unexpected keys when loading CLAP model: {unexpected_keys}") |
|
|
| if len(missing_keys) > 0: |
| raise ValueError(f"Missing keys when loading CLAP model: {missing_keys}") |
|
|
| |
| vocoder_config = create_transformers_vocoder_config(original_config) |
| vocoder_config = SpeechT5HifiGanConfig(**vocoder_config) |
| converted_vocoder_checkpoint = convert_hifigan_checkpoint(checkpoint, vocoder_config) |
|
|
| vocoder = SpeechT5HifiGan(vocoder_config) |
| vocoder.load_state_dict(converted_vocoder_checkpoint) |
|
|
| |
| pipe = AudioLDMPipeline( |
| vae=vae, |
| text_encoder=text_model, |
| tokenizer=tokenizer, |
| unet=unet, |
| scheduler=scheduler, |
| vocoder=vocoder, |
| ) |
|
|
| return pipe |
|
|
|
|
| if __name__ == "__main__": |
| parser = argparse.ArgumentParser() |
|
|
| parser.add_argument( |
| "--checkpoint_path", default=None, type=str, required=True, help="Path to the checkpoint to convert." |
| ) |
| parser.add_argument( |
| "--original_config_file", |
| default=None, |
| type=str, |
| help="The YAML config file corresponding to the original architecture.", |
| ) |
| parser.add_argument( |
| "--num_in_channels", |
| default=None, |
| type=int, |
| help="The number of input channels. If `None` number of input channels will be automatically inferred.", |
| ) |
| parser.add_argument( |
| "--model_channels", |
| default=None, |
| type=int, |
| help="The number of UNet model channels. If `None`, it will be automatically inferred from the config. Override" |
| " to 128 for the small checkpoints, 192 for the medium checkpoints and 256 for the large.", |
| ) |
| parser.add_argument( |
| "--num_head_channels", |
| default=None, |
| type=int, |
| help="The number of UNet head channels. If `None`, it will be automatically inferred from the config. Override" |
| " to 32 for the small and medium checkpoints, and 64 for the large.", |
| ) |
| parser.add_argument( |
| "--scheduler_type", |
| default="ddim", |
| type=str, |
| help="Type of scheduler to use. Should be one of ['pndm', 'lms', 'ddim', 'euler', 'euler-ancestral', 'dpm']", |
| ) |
| parser.add_argument( |
| "--image_size", |
| default=None, |
| type=int, |
| help=("The image size that the model was trained on."), |
| ) |
| parser.add_argument( |
| "--prediction_type", |
| default=None, |
| type=str, |
| help=("The prediction type that the model was trained on."), |
| ) |
| parser.add_argument( |
| "--extract_ema", |
| action="store_true", |
| help=( |
| "Only relevant for checkpoints that have both EMA and non-EMA weights. Whether to extract the EMA weights" |
| " or not. Defaults to `False`. Add `--extract_ema` to extract the EMA weights. EMA weights usually yield" |
| " higher quality images for inference. Non-EMA weights are usually better to continue fine-tuning." |
| ), |
| ) |
| parser.add_argument( |
| "--from_safetensors", |
| action="store_true", |
| help="If `--checkpoint_path` is in `safetensors` format, load checkpoint with safetensors instead of PyTorch.", |
| ) |
| parser.add_argument( |
| "--to_safetensors", |
| action="store_true", |
| help="Whether to store pipeline in safetensors format or not.", |
| ) |
| parser.add_argument("--dump_path", default=None, type=str, required=True, help="Path to the output model.") |
| parser.add_argument("--device", type=str, help="Device to use (e.g. cpu, cuda:0, cuda:1, etc.)") |
| args = parser.parse_args() |
|
|
| pipe = load_pipeline_from_original_audioldm_ckpt( |
| checkpoint_path=args.checkpoint_path, |
| original_config_file=args.original_config_file, |
| image_size=args.image_size, |
| prediction_type=args.prediction_type, |
| extract_ema=args.extract_ema, |
| scheduler_type=args.scheduler_type, |
| num_in_channels=args.num_in_channels, |
| model_channels=args.model_channels, |
| num_head_channels=args.num_head_channels, |
| from_safetensors=args.from_safetensors, |
| device=args.device, |
| ) |
| pipe.save_pretrained(args.dump_path, safe_serialization=args.to_safetensors) |
|
|