| import torch |
| import comfy.model_management |
| import comfy.utils |
| import folder_paths |
| import os |
| import logging |
| from enum import Enum |
|
|
| CLAMP_QUANTILE = 0.99 |
|
|
| def extract_lora(diff, rank): |
| conv2d = (len(diff.shape) == 4) |
| kernel_size = None if not conv2d else diff.size()[2:4] |
| conv2d_3x3 = conv2d and kernel_size != (1, 1) |
| out_dim, in_dim = diff.size()[0:2] |
| rank = min(rank, in_dim, out_dim) |
|
|
| if conv2d: |
| if conv2d_3x3: |
| diff = diff.flatten(start_dim=1) |
| else: |
| diff = diff.squeeze() |
|
|
|
|
| U, S, Vh = torch.linalg.svd(diff.float()) |
| U = U[:, :rank] |
| S = S[:rank] |
| U = U @ torch.diag(S) |
| Vh = Vh[:rank, :] |
|
|
| dist = torch.cat([U.flatten(), Vh.flatten()]) |
| hi_val = torch.quantile(dist, CLAMP_QUANTILE) |
| low_val = -hi_val |
|
|
| U = U.clamp(low_val, hi_val) |
| Vh = Vh.clamp(low_val, hi_val) |
| if conv2d: |
| U = U.reshape(out_dim, rank, 1, 1) |
| Vh = Vh.reshape(rank, in_dim, kernel_size[0], kernel_size[1]) |
| return (U, Vh) |
|
|
| class LORAType(Enum): |
| STANDARD = 0 |
| FULL_DIFF = 1 |
|
|
| LORA_TYPES = {"standard": LORAType.STANDARD, |
| "full_diff": LORAType.FULL_DIFF} |
|
|
| def calc_lora_model(model_diff, rank, prefix_model, prefix_lora, output_sd, lora_type, bias_diff=False): |
| comfy.model_management.load_models_gpu([model_diff], force_patch_weights=True) |
| sd = model_diff.model_state_dict(filter_prefix=prefix_model) |
|
|
| for k in sd: |
| if k.endswith(".weight"): |
| weight_diff = sd[k] |
| if lora_type == LORAType.STANDARD: |
| if weight_diff.ndim < 2: |
| if bias_diff: |
| output_sd["{}{}.diff".format(prefix_lora, k[len(prefix_model):-7])] = weight_diff.contiguous().half().cpu() |
| continue |
| try: |
| out = extract_lora(weight_diff, rank) |
| output_sd["{}{}.lora_up.weight".format(prefix_lora, k[len(prefix_model):-7])] = out[0].contiguous().half().cpu() |
| output_sd["{}{}.lora_down.weight".format(prefix_lora, k[len(prefix_model):-7])] = out[1].contiguous().half().cpu() |
| except: |
| logging.warning("Could not generate lora weights for key {}, is the weight difference a zero?".format(k)) |
| elif lora_type == LORAType.FULL_DIFF: |
| output_sd["{}{}.diff".format(prefix_lora, k[len(prefix_model):-7])] = weight_diff.contiguous().half().cpu() |
|
|
| elif bias_diff and k.endswith(".bias"): |
| output_sd["{}{}.diff_b".format(prefix_lora, k[len(prefix_model):-5])] = sd[k].contiguous().half().cpu() |
| return output_sd |
|
|
| class LoraSave: |
| def __init__(self): |
| self.output_dir = folder_paths.get_output_directory() |
|
|
| @classmethod |
| def INPUT_TYPES(s): |
| return {"required": {"filename_prefix": ("STRING", {"default": "loras/ComfyUI_extracted_lora"}), |
| "rank": ("INT", {"default": 8, "min": 1, "max": 4096, "step": 1}), |
| "lora_type": (tuple(LORA_TYPES.keys()),), |
| "bias_diff": ("BOOLEAN", {"default": True}), |
| }, |
| "optional": {"model_diff": ("MODEL", {"tooltip": "The ModelSubtract output to be converted to a lora."}), |
| "text_encoder_diff": ("CLIP", {"tooltip": "The CLIPSubtract output to be converted to a lora."})}, |
| } |
| RETURN_TYPES = () |
| FUNCTION = "save" |
| OUTPUT_NODE = True |
|
|
| CATEGORY = "_for_testing" |
|
|
| def save(self, filename_prefix, rank, lora_type, bias_diff, model_diff=None, text_encoder_diff=None): |
| if model_diff is None and text_encoder_diff is None: |
| return {} |
|
|
| lora_type = LORA_TYPES.get(lora_type) |
| full_output_folder, filename, counter, subfolder, filename_prefix = folder_paths.get_save_image_path(filename_prefix, self.output_dir) |
|
|
| output_sd = {} |
| if model_diff is not None: |
| output_sd = calc_lora_model(model_diff, rank, "diffusion_model.", "diffusion_model.", output_sd, lora_type, bias_diff=bias_diff) |
| if text_encoder_diff is not None: |
| output_sd = calc_lora_model(text_encoder_diff.patcher, rank, "", "text_encoders.", output_sd, lora_type, bias_diff=bias_diff) |
|
|
| output_checkpoint = f"{filename}_{counter:05}_.safetensors" |
| output_checkpoint = os.path.join(full_output_folder, output_checkpoint) |
|
|
| comfy.utils.save_torch_file(output_sd, output_checkpoint, metadata=None) |
| return {} |
|
|
| NODE_CLASS_MAPPINGS = { |
| "LoraSave": LoraSave |
| } |
|
|
| NODE_DISPLAY_NAME_MAPPINGS = { |
| "LoraSave": "Extract and Save Lora" |
| } |
|
|