""" This file is part of ComfyUI. Copyright (C) 2024 Comfy This program is free software: you can redistribute it and/or modify it under the terms of the GNU General Public License as published by the Free Software Foundation, either version 3 of the License, or (at your option) any later version. This program is distributed in the hope that it will be useful, but WITHOUT ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU General Public License for more details. You should have received a copy of the GNU General Public License along with this program. If not, see . """ from __future__ import annotations import comfy.utils import comfy.model_management import comfy.model_base import comfy.weight_adapter as weight_adapter import logging import torch LORA_CLIP_MAP = { "mlp.fc1": "mlp_fc1", "mlp.fc2": "mlp_fc2", "self_attn.k_proj": "self_attn_k_proj", "self_attn.q_proj": "self_attn_q_proj", "self_attn.v_proj": "self_attn_v_proj", "self_attn.out_proj": "self_attn_out_proj", } def load_lora(lora, to_load, log_missing=True): patch_dict = {} loaded_keys = set() for x in to_load: alpha_name = "{}.alpha".format(x) alpha = None if alpha_name in lora.keys(): alpha = lora[alpha_name].item() loaded_keys.add(alpha_name) dora_scale_name = "{}.dora_scale".format(x) dora_scale = None if dora_scale_name in lora.keys(): dora_scale = lora[dora_scale_name] loaded_keys.add(dora_scale_name) for adapter_cls in weight_adapter.adapters: adapter = adapter_cls.load(x, lora, alpha, dora_scale, loaded_keys) if adapter is not None: patch_dict[to_load[x]] = adapter loaded_keys.update(adapter.loaded_keys) continue w_norm_name = "{}.w_norm".format(x) b_norm_name = "{}.b_norm".format(x) w_norm = lora.get(w_norm_name, None) b_norm = lora.get(b_norm_name, None) if w_norm is not None: loaded_keys.add(w_norm_name) patch_dict[to_load[x]] = ("diff", (w_norm,)) if b_norm is not None: loaded_keys.add(b_norm_name) patch_dict["{}.bias".format(to_load[x][:-len(".weight")])] = ("diff", (b_norm,)) diff_name = "{}.diff".format(x) diff_weight = lora.get(diff_name, None) if diff_weight is not None: patch_dict[to_load[x]] = ("diff", (diff_weight,)) loaded_keys.add(diff_name) diff_bias_name = "{}.diff_b".format(x) diff_bias = lora.get(diff_bias_name, None) if diff_bias is not None: patch_dict["{}.bias".format(to_load[x][:-len(".weight")])] = ("diff", (diff_bias,)) loaded_keys.add(diff_bias_name) set_weight_name = "{}.set_weight".format(x) set_weight = lora.get(set_weight_name, None) if set_weight is not None: patch_dict[to_load[x]] = ("set", (set_weight,)) loaded_keys.add(set_weight_name) if log_missing: for x in lora.keys(): if x not in loaded_keys: logging.warning("lora key not loaded: {}".format(x)) return patch_dict def model_lora_keys_clip(model, key_map={}): sdk = model.state_dict().keys() for k in sdk: if k.endswith(".weight"): key_map["text_encoders.{}".format(k[:-len(".weight")])] = k #generic lora format without any weird key names text_model_lora_key = "lora_te_text_model_encoder_layers_{}_{}" clip_l_present = False clip_g_present = False for b in range(32): #TODO: clean up for c in LORA_CLIP_MAP: k = "clip_h.transformer.text_model.encoder.layers.{}.{}.weight".format(b, c) if k in sdk: lora_key = text_model_lora_key.format(b, LORA_CLIP_MAP[c]) key_map[lora_key] = k lora_key = "lora_te1_text_model_encoder_layers_{}_{}".format(b, LORA_CLIP_MAP[c]) key_map[lora_key] = k lora_key = "text_encoder.text_model.encoder.layers.{}.{}".format(b, c) #diffusers lora key_map[lora_key] = k k = "clip_l.transformer.text_model.encoder.layers.{}.{}.weight".format(b, c) if k in sdk: lora_key = text_model_lora_key.format(b, LORA_CLIP_MAP[c]) key_map[lora_key] = k lora_key = "lora_te1_text_model_encoder_layers_{}_{}".format(b, LORA_CLIP_MAP[c]) #SDXL base key_map[lora_key] = k clip_l_present = True lora_key = "text_encoder.text_model.encoder.layers.{}.{}".format(b, c) #diffusers lora key_map[lora_key] = k k = "clip_g.transformer.text_model.encoder.layers.{}.{}.weight".format(b, c) if k in sdk: clip_g_present = True if clip_l_present: lora_key = "lora_te2_text_model_encoder_layers_{}_{}".format(b, LORA_CLIP_MAP[c]) #SDXL base key_map[lora_key] = k lora_key = "text_encoder_2.text_model.encoder.layers.{}.{}".format(b, c) #diffusers lora key_map[lora_key] = k else: lora_key = "lora_te_text_model_encoder_layers_{}_{}".format(b, LORA_CLIP_MAP[c]) #TODO: test if this is correct for SDXL-Refiner key_map[lora_key] = k lora_key = "text_encoder.text_model.encoder.layers.{}.{}".format(b, c) #diffusers lora key_map[lora_key] = k lora_key = "lora_prior_te_text_model_encoder_layers_{}_{}".format(b, LORA_CLIP_MAP[c]) #cascade lora: TODO put lora key prefix in the model config key_map[lora_key] = k for k in sdk: if k.endswith(".weight"): if k.startswith("t5xxl.transformer."):#OneTrainer SD3 and Flux lora l_key = k[len("t5xxl.transformer."):-len(".weight")] t5_index = 1 if clip_g_present: t5_index += 1 if clip_l_present: t5_index += 1 if t5_index == 2: key_map["lora_te{}_{}".format(t5_index, l_key.replace(".", "_"))] = k #OneTrainer Flux t5_index += 1 key_map["lora_te{}_{}".format(t5_index, l_key.replace(".", "_"))] = k elif k.startswith("hydit_clip.transformer.bert."): #HunyuanDiT Lora l_key = k[len("hydit_clip.transformer.bert."):-len(".weight")] lora_key = "lora_te1_{}".format(l_key.replace(".", "_")) key_map[lora_key] = k k = "clip_g.transformer.text_projection.weight" if k in sdk: key_map["lora_prior_te_text_projection"] = k #cascade lora? # key_map["text_encoder.text_projection"] = k #TODO: check if other lora have the text_projection too key_map["lora_te2_text_projection"] = k #OneTrainer SD3 lora k = "clip_l.transformer.text_projection.weight" if k in sdk: key_map["lora_te1_text_projection"] = k #OneTrainer SD3 lora, not necessary but omits warning return key_map def model_lora_keys_unet(model, key_map={}): sd = model.state_dict() sdk = sd.keys() for k in sdk: if k.startswith("diffusion_model."): if k.endswith(".weight"): key_lora = k[len("diffusion_model."):-len(".weight")].replace(".", "_") key_map["lora_unet_{}".format(key_lora)] = k key_map["{}".format(k[:-len(".weight")])] = k #generic lora format without any weird key names else: key_map["{}".format(k)] = k #generic lora format for not .weight without any weird key names diffusers_keys = comfy.utils.unet_to_diffusers(model.model_config.unet_config) for k in diffusers_keys: if k.endswith(".weight"): unet_key = "diffusion_model.{}".format(diffusers_keys[k]) key_lora = k[:-len(".weight")].replace(".", "_") key_map["lora_unet_{}".format(key_lora)] = unet_key key_map["lycoris_{}".format(key_lora)] = unet_key #simpletuner lycoris format diffusers_lora_prefix = ["", "unet."] for p in diffusers_lora_prefix: diffusers_lora_key = "{}{}".format(p, k[:-len(".weight")].replace(".to_", ".processor.to_")) if diffusers_lora_key.endswith(".to_out.0"): diffusers_lora_key = diffusers_lora_key[:-2] key_map[diffusers_lora_key] = unet_key if isinstance(model, comfy.model_base.StableCascade_C): for k in sdk: if k.startswith("diffusion_model."): if k.endswith(".weight"): key_lora = k[len("diffusion_model."):-len(".weight")].replace(".", "_") key_map["lora_prior_unet_{}".format(key_lora)] = k if isinstance(model, comfy.model_base.SD3): #Diffusers lora SD3 diffusers_keys = comfy.utils.mmdit_to_diffusers(model.model_config.unet_config, output_prefix="diffusion_model.") for k in diffusers_keys: if k.endswith(".weight"): to = diffusers_keys[k] key_lora = "transformer.{}".format(k[:-len(".weight")]) #regular diffusers sd3 lora format key_map[key_lora] = to key_lora = "base_model.model.{}".format(k[:-len(".weight")]) #format for flash-sd3 lora and others? key_map[key_lora] = to key_lora = "lora_transformer_{}".format(k[:-len(".weight")].replace(".", "_")) #OneTrainer lora key_map[key_lora] = to key_lora = "lycoris_{}".format(k[:-len(".weight")].replace(".", "_")) #simpletuner lycoris format key_map[key_lora] = to if isinstance(model, comfy.model_base.AuraFlow): #Diffusers lora AuraFlow diffusers_keys = comfy.utils.auraflow_to_diffusers(model.model_config.unet_config, output_prefix="diffusion_model.") for k in diffusers_keys: if k.endswith(".weight"): to = diffusers_keys[k] key_lora = "transformer.{}".format(k[:-len(".weight")]) #simpletrainer and probably regular diffusers lora format key_map[key_lora] = to if isinstance(model, comfy.model_base.PixArt): diffusers_keys = comfy.utils.pixart_to_diffusers(model.model_config.unet_config, output_prefix="diffusion_model.") for k in diffusers_keys: if k.endswith(".weight"): to = diffusers_keys[k] key_lora = "transformer.{}".format(k[:-len(".weight")]) #default format key_map[key_lora] = to key_lora = "base_model.model.{}".format(k[:-len(".weight")]) #diffusers training script key_map[key_lora] = to key_lora = "unet.base_model.model.{}".format(k[:-len(".weight")]) #old reference peft script key_map[key_lora] = to if isinstance(model, comfy.model_base.HunyuanDiT): for k in sdk: if k.startswith("diffusion_model.") and k.endswith(".weight"): key_lora = k[len("diffusion_model."):-len(".weight")] key_map["base_model.model.{}".format(key_lora)] = k #official hunyuan lora format if isinstance(model, comfy.model_base.Flux): #Diffusers lora Flux diffusers_keys = comfy.utils.flux_to_diffusers(model.model_config.unet_config, output_prefix="diffusion_model.") for k in diffusers_keys: if k.endswith(".weight"): to = diffusers_keys[k] key_map["transformer.{}".format(k[:-len(".weight")])] = to #simpletrainer and probably regular diffusers flux lora format key_map["lycoris_{}".format(k[:-len(".weight")].replace(".", "_"))] = to #simpletrainer lycoris key_map["lora_transformer_{}".format(k[:-len(".weight")].replace(".", "_"))] = to #onetrainer if isinstance(model, comfy.model_base.GenmoMochi): for k in sdk: if k.startswith("diffusion_model.") and k.endswith(".weight"): #Official Mochi lora format key_lora = k[len("diffusion_model."):-len(".weight")] key_map["{}".format(key_lora)] = k if isinstance(model, comfy.model_base.HunyuanVideo): for k in sdk: if k.startswith("diffusion_model.") and k.endswith(".weight"): # diffusion-pipe lora format key_lora = k key_lora = key_lora.replace("_mod.lin.", "_mod.linear.").replace("_attn.qkv.", "_attn_qkv.").replace("_attn.proj.", "_attn_proj.") key_lora = key_lora.replace("mlp.0.", "mlp.fc1.").replace("mlp.2.", "mlp.fc2.") key_lora = key_lora.replace(".modulation.lin.", ".modulation.linear.") key_lora = key_lora[len("diffusion_model."):-len(".weight")] key_map["transformer.{}".format(key_lora)] = k key_map["diffusion_model.{}".format(key_lora)] = k # Old loras return key_map def pad_tensor_to_shape(tensor: torch.Tensor, new_shape: list[int]) -> torch.Tensor: """ Pad a tensor to a new shape with zeros. Args: tensor (torch.Tensor): The original tensor to be padded. new_shape (List[int]): The desired shape of the padded tensor. Returns: torch.Tensor: A new tensor padded with zeros to the specified shape. Note: If the new shape is smaller than the original tensor in any dimension, the original tensor will be truncated in that dimension. """ if any([new_shape[i] < tensor.shape[i] for i in range(len(new_shape))]): raise ValueError("The new shape must be larger than the original tensor in all dimensions") if len(new_shape) != len(tensor.shape): raise ValueError("The new shape must have the same number of dimensions as the original tensor") # Create a new tensor filled with zeros padded_tensor = torch.zeros(new_shape, dtype=tensor.dtype, device=tensor.device) # Create slicing tuples for both tensors orig_slices = tuple(slice(0, dim) for dim in tensor.shape) new_slices = tuple(slice(0, dim) for dim in tensor.shape) # Copy the original tensor into the new tensor padded_tensor[new_slices] = tensor[orig_slices] return padded_tensor def calculate_weight(patches, weight, key, intermediate_dtype=torch.float32, original_weights=None): for p in patches: strength = p[0] v = p[1] strength_model = p[2] offset = p[3] function = p[4] if function is None: function = lambda a: a old_weight = None if offset is not None: old_weight = weight weight = weight.narrow(offset[0], offset[1], offset[2]) if strength_model != 1.0: weight *= strength_model if isinstance(v, list): v = (calculate_weight(v[1:], v[0][1](comfy.model_management.cast_to_device(v[0][0], weight.device, intermediate_dtype, copy=True), inplace=True), key, intermediate_dtype=intermediate_dtype), ) if isinstance(v, weight_adapter.WeightAdapterBase): output = v.calculate_weight(weight, key, strength, strength_model, offset, function, intermediate_dtype, original_weights) if output is None: logging.warning("Calculate Weight Failed: {} {}".format(v.name, key)) else: weight = output if old_weight is not None: weight = old_weight continue if len(v) == 1: patch_type = "diff" elif len(v) == 2: patch_type = v[0] v = v[1] if patch_type == "diff": diff: torch.Tensor = v[0] # An extra flag to pad the weight if the diff's shape is larger than the weight do_pad_weight = len(v) > 1 and v[1]['pad_weight'] if do_pad_weight and diff.shape != weight.shape: logging.info("Pad weight {} from {} to shape: {}".format(key, weight.shape, diff.shape)) weight = pad_tensor_to_shape(weight, diff.shape) if strength != 0.0: if diff.shape != weight.shape: logging.warning("WARNING SHAPE MISMATCH {} WEIGHT NOT MERGED {} != {}".format(key, diff.shape, weight.shape)) else: weight += function(strength * comfy.model_management.cast_to_device(diff, weight.device, weight.dtype)) elif patch_type == "set": weight.copy_(v[0]) elif patch_type == "model_as_lora": target_weight: torch.Tensor = v[0] diff_weight = comfy.model_management.cast_to_device(target_weight, weight.device, intermediate_dtype) - \ comfy.model_management.cast_to_device(original_weights[key][0][0], weight.device, intermediate_dtype) weight += function(strength * comfy.model_management.cast_to_device(diff_weight, weight.device, weight.dtype)) else: logging.warning("patch type not recognized {} {}".format(patch_type, key)) if old_weight is not None: weight = old_weight return weight