1392 lines
56 KiB
Python
1392 lines
56 KiB
Python
import torch
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import contextlib
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import copy
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import inspect
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from comfy import model_management
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from .ldm.util import instantiate_from_config
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from .ldm.models.autoencoder import AutoencoderKL
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import yaml
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from .cldm import cldm
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from .t2i_adapter import adapter
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from . import utils
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from . import clip_vision
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from . import gligen
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from . import diffusers_convert
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from . import model_base
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from . import model_detection
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from . import sd1_clip
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from . import sd2_clip
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from . import sdxl_clip
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def load_model_weights(model, sd):
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m, u = model.load_state_dict(sd, strict=False)
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m = set(m)
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unexpected_keys = set(u)
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k = list(sd.keys())
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for x in k:
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if x not in unexpected_keys:
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w = sd.pop(x)
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del w
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if len(m) > 0:
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print("missing", m)
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return model
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def load_clip_weights(model, sd):
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k = list(sd.keys())
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for x in k:
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if x.startswith("cond_stage_model.transformer.") and not x.startswith("cond_stage_model.transformer.text_model."):
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y = x.replace("cond_stage_model.transformer.", "cond_stage_model.transformer.text_model.")
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sd[y] = sd.pop(x)
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if 'cond_stage_model.transformer.text_model.embeddings.position_ids' in sd:
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ids = sd['cond_stage_model.transformer.text_model.embeddings.position_ids']
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if ids.dtype == torch.float32:
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sd['cond_stage_model.transformer.text_model.embeddings.position_ids'] = ids.round()
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sd = utils.transformers_convert(sd, "cond_stage_model.model.", "cond_stage_model.transformer.text_model.", 24)
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return load_model_weights(model, sd)
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LORA_CLIP_MAP = {
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"mlp.fc1": "mlp_fc1",
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"mlp.fc2": "mlp_fc2",
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"self_attn.k_proj": "self_attn_k_proj",
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"self_attn.q_proj": "self_attn_q_proj",
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"self_attn.v_proj": "self_attn_v_proj",
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"self_attn.out_proj": "self_attn_out_proj",
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}
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def load_lora(lora, to_load):
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patch_dict = {}
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loaded_keys = set()
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for x in to_load:
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alpha_name = "{}.alpha".format(x)
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alpha = None
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if alpha_name in lora.keys():
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alpha = lora[alpha_name].item()
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loaded_keys.add(alpha_name)
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regular_lora = "{}.lora_up.weight".format(x)
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diffusers_lora = "{}_lora.up.weight".format(x)
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transformers_lora = "{}.lora_linear_layer.up.weight".format(x)
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A_name = None
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if regular_lora in lora.keys():
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A_name = regular_lora
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B_name = "{}.lora_down.weight".format(x)
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mid_name = "{}.lora_mid.weight".format(x)
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elif diffusers_lora in lora.keys():
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A_name = diffusers_lora
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B_name = "{}_lora.down.weight".format(x)
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mid_name = None
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elif transformers_lora in lora.keys():
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A_name = transformers_lora
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B_name ="{}.lora_linear_layer.down.weight".format(x)
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mid_name = None
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if A_name is not None:
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mid = None
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if mid_name is not None and mid_name in lora.keys():
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mid = lora[mid_name]
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loaded_keys.add(mid_name)
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patch_dict[to_load[x]] = (lora[A_name], lora[B_name], alpha, mid)
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loaded_keys.add(A_name)
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loaded_keys.add(B_name)
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######## loha
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hada_w1_a_name = "{}.hada_w1_a".format(x)
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hada_w1_b_name = "{}.hada_w1_b".format(x)
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hada_w2_a_name = "{}.hada_w2_a".format(x)
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hada_w2_b_name = "{}.hada_w2_b".format(x)
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hada_t1_name = "{}.hada_t1".format(x)
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hada_t2_name = "{}.hada_t2".format(x)
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if hada_w1_a_name in lora.keys():
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hada_t1 = None
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hada_t2 = None
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if hada_t1_name in lora.keys():
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hada_t1 = lora[hada_t1_name]
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hada_t2 = lora[hada_t2_name]
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loaded_keys.add(hada_t1_name)
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loaded_keys.add(hada_t2_name)
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patch_dict[to_load[x]] = (lora[hada_w1_a_name], lora[hada_w1_b_name], alpha, lora[hada_w2_a_name], lora[hada_w2_b_name], hada_t1, hada_t2)
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loaded_keys.add(hada_w1_a_name)
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loaded_keys.add(hada_w1_b_name)
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loaded_keys.add(hada_w2_a_name)
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loaded_keys.add(hada_w2_b_name)
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######## lokr
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lokr_w1_name = "{}.lokr_w1".format(x)
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lokr_w2_name = "{}.lokr_w2".format(x)
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lokr_w1_a_name = "{}.lokr_w1_a".format(x)
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lokr_w1_b_name = "{}.lokr_w1_b".format(x)
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lokr_t2_name = "{}.lokr_t2".format(x)
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lokr_w2_a_name = "{}.lokr_w2_a".format(x)
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lokr_w2_b_name = "{}.lokr_w2_b".format(x)
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lokr_w1 = None
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if lokr_w1_name in lora.keys():
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lokr_w1 = lora[lokr_w1_name]
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loaded_keys.add(lokr_w1_name)
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lokr_w2 = None
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if lokr_w2_name in lora.keys():
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lokr_w2 = lora[lokr_w2_name]
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loaded_keys.add(lokr_w2_name)
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lokr_w1_a = None
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if lokr_w1_a_name in lora.keys():
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lokr_w1_a = lora[lokr_w1_a_name]
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loaded_keys.add(lokr_w1_a_name)
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lokr_w1_b = None
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if lokr_w1_b_name in lora.keys():
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lokr_w1_b = lora[lokr_w1_b_name]
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loaded_keys.add(lokr_w1_b_name)
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lokr_w2_a = None
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if lokr_w2_a_name in lora.keys():
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lokr_w2_a = lora[lokr_w2_a_name]
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loaded_keys.add(lokr_w2_a_name)
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lokr_w2_b = None
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if lokr_w2_b_name in lora.keys():
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lokr_w2_b = lora[lokr_w2_b_name]
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loaded_keys.add(lokr_w2_b_name)
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lokr_t2 = None
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if lokr_t2_name in lora.keys():
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lokr_t2 = lora[lokr_t2_name]
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loaded_keys.add(lokr_t2_name)
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if (lokr_w1 is not None) or (lokr_w2 is not None) or (lokr_w1_a is not None) or (lokr_w2_a is not None):
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patch_dict[to_load[x]] = (lokr_w1, lokr_w2, alpha, lokr_w1_a, lokr_w1_b, lokr_w2_a, lokr_w2_b, lokr_t2)
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for x in lora.keys():
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if x not in loaded_keys:
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print("lora key not loaded", x)
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return patch_dict
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def model_lora_keys_clip(model, key_map={}):
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sdk = model.state_dict().keys()
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text_model_lora_key = "lora_te_text_model_encoder_layers_{}_{}"
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clip_l_present = False
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for b in range(32):
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for c in LORA_CLIP_MAP:
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k = "transformer.text_model.encoder.layers.{}.{}.weight".format(b, c)
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if k in sdk:
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lora_key = text_model_lora_key.format(b, LORA_CLIP_MAP[c])
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key_map[lora_key] = k
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lora_key = "lora_te1_text_model_encoder_layers_{}_{}".format(b, LORA_CLIP_MAP[c])
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key_map[lora_key] = k
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lora_key = "text_encoder.text_model.encoder.layers.{}.{}".format(b, c) #diffusers lora
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key_map[lora_key] = k
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k = "clip_l.transformer.text_model.encoder.layers.{}.{}.weight".format(b, c)
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if k in sdk:
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lora_key = "lora_te1_text_model_encoder_layers_{}_{}".format(b, LORA_CLIP_MAP[c]) #SDXL base
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key_map[lora_key] = k
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clip_l_present = True
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lora_key = "text_encoder.text_model.encoder.layers.{}.{}".format(b, c) #diffusers lora
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key_map[lora_key] = k
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k = "clip_g.transformer.text_model.encoder.layers.{}.{}.weight".format(b, c)
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if k in sdk:
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if clip_l_present:
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lora_key = "lora_te2_text_model_encoder_layers_{}_{}".format(b, LORA_CLIP_MAP[c]) #SDXL base
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key_map[lora_key] = k
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lora_key = "text_encoder_2.text_model.encoder.layers.{}.{}".format(b, c) #diffusers lora
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key_map[lora_key] = k
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else:
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lora_key = "lora_te_text_model_encoder_layers_{}_{}".format(b, LORA_CLIP_MAP[c]) #TODO: test if this is correct for SDXL-Refiner
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key_map[lora_key] = k
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lora_key = "text_encoder.text_model.encoder.layers.{}.{}".format(b, c) #diffusers lora
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key_map[lora_key] = k
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return key_map
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def model_lora_keys_unet(model, key_map={}):
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sdk = model.state_dict().keys()
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for k in sdk:
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if k.startswith("diffusion_model.") and k.endswith(".weight"):
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key_lora = k[len("diffusion_model."):-len(".weight")].replace(".", "_")
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key_map["lora_unet_{}".format(key_lora)] = k
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diffusers_keys = utils.unet_to_diffusers(model.model_config.unet_config)
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for k in diffusers_keys:
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if k.endswith(".weight"):
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unet_key = "diffusion_model.{}".format(diffusers_keys[k])
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key_lora = k[:-len(".weight")].replace(".", "_")
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key_map["lora_unet_{}".format(key_lora)] = unet_key
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diffusers_lora_prefix = ["", "unet."]
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for p in diffusers_lora_prefix:
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diffusers_lora_key = "{}{}".format(p, k[:-len(".weight")].replace(".to_", ".processor.to_"))
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if diffusers_lora_key.endswith(".to_out.0"):
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diffusers_lora_key = diffusers_lora_key[:-2]
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key_map[diffusers_lora_key] = unet_key
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return key_map
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def set_attr(obj, attr, value):
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attrs = attr.split(".")
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for name in attrs[:-1]:
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obj = getattr(obj, name)
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prev = getattr(obj, attrs[-1])
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setattr(obj, attrs[-1], torch.nn.Parameter(value))
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del prev
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class ModelPatcher:
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def __init__(self, model, load_device, offload_device, size=0, current_device=None):
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self.size = size
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self.model = model
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self.patches = {}
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self.backup = {}
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self.model_options = {"transformer_options":{}}
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self.model_size()
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self.load_device = load_device
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self.offload_device = offload_device
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if current_device is None:
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self.current_device = self.offload_device
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else:
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self.current_device = current_device
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def model_size(self):
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if self.size > 0:
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return self.size
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model_sd = self.model.state_dict()
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size = 0
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for k in model_sd:
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t = model_sd[k]
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size += t.nelement() * t.element_size()
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self.size = size
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self.model_keys = set(model_sd.keys())
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return size
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def clone(self):
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n = ModelPatcher(self.model, self.load_device, self.offload_device, self.size, self.current_device)
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n.patches = {}
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for k in self.patches:
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n.patches[k] = self.patches[k][:]
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n.model_options = copy.deepcopy(self.model_options)
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n.model_keys = self.model_keys
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return n
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def is_clone(self, other):
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if hasattr(other, 'model') and self.model is other.model:
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return True
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return False
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def set_model_sampler_cfg_function(self, sampler_cfg_function):
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if len(inspect.signature(sampler_cfg_function).parameters) == 3:
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self.model_options["sampler_cfg_function"] = lambda args: sampler_cfg_function(args["cond"], args["uncond"], args["cond_scale"]) #Old way
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else:
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self.model_options["sampler_cfg_function"] = sampler_cfg_function
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def set_model_unet_function_wrapper(self, unet_wrapper_function):
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self.model_options["model_function_wrapper"] = unet_wrapper_function
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def set_model_patch(self, patch, name):
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to = self.model_options["transformer_options"]
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if "patches" not in to:
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to["patches"] = {}
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to["patches"][name] = to["patches"].get(name, []) + [patch]
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def set_model_patch_replace(self, patch, name, block_name, number):
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to = self.model_options["transformer_options"]
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if "patches_replace" not in to:
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to["patches_replace"] = {}
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if name not in to["patches_replace"]:
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to["patches_replace"][name] = {}
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to["patches_replace"][name][(block_name, number)] = patch
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def set_model_attn1_patch(self, patch):
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self.set_model_patch(patch, "attn1_patch")
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def set_model_attn2_patch(self, patch):
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self.set_model_patch(patch, "attn2_patch")
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def set_model_attn1_replace(self, patch, block_name, number):
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self.set_model_patch_replace(patch, "attn1", block_name, number)
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def set_model_attn2_replace(self, patch, block_name, number):
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self.set_model_patch_replace(patch, "attn2", block_name, number)
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def set_model_attn1_output_patch(self, patch):
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self.set_model_patch(patch, "attn1_output_patch")
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def set_model_attn2_output_patch(self, patch):
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self.set_model_patch(patch, "attn2_output_patch")
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def model_patches_to(self, device):
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to = self.model_options["transformer_options"]
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if "patches" in to:
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patches = to["patches"]
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for name in patches:
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patch_list = patches[name]
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for i in range(len(patch_list)):
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if hasattr(patch_list[i], "to"):
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patch_list[i] = patch_list[i].to(device)
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if "patches_replace" in to:
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patches = to["patches_replace"]
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for name in patches:
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patch_list = patches[name]
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for k in patch_list:
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if hasattr(patch_list[k], "to"):
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patch_list[k] = patch_list[k].to(device)
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def model_dtype(self):
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if hasattr(self.model, "get_dtype"):
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return self.model.get_dtype()
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def add_patches(self, patches, strength_patch=1.0, strength_model=1.0):
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p = set()
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for k in patches:
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if k in self.model_keys:
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p.add(k)
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current_patches = self.patches.get(k, [])
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current_patches.append((strength_patch, patches[k], strength_model))
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self.patches[k] = current_patches
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return list(p)
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def get_key_patches(self, filter_prefix=None):
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model_sd = self.model_state_dict()
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p = {}
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for k in model_sd:
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if filter_prefix is not None:
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if not k.startswith(filter_prefix):
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continue
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if k in self.patches:
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p[k] = [model_sd[k]] + self.patches[k]
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else:
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p[k] = (model_sd[k],)
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return p
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def model_state_dict(self, filter_prefix=None):
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sd = self.model.state_dict()
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keys = list(sd.keys())
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if filter_prefix is not None:
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for k in keys:
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if not k.startswith(filter_prefix):
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sd.pop(k)
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return sd
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def patch_model(self, device_to=None):
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model_sd = self.model_state_dict()
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for key in self.patches:
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if key not in model_sd:
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print("could not patch. key doesn't exist in model:", k)
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continue
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weight = model_sd[key]
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if key not in self.backup:
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self.backup[key] = weight.to(self.offload_device)
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if device_to is not None:
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temp_weight = weight.float().to(device_to, copy=True)
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else:
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temp_weight = weight.to(torch.float32, copy=True)
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out_weight = self.calculate_weight(self.patches[key], temp_weight, key).to(weight.dtype)
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set_attr(self.model, key, out_weight)
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del temp_weight
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if device_to is not None:
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self.model.to(device_to)
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self.current_device = device_to
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return self.model
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def calculate_weight(self, patches, weight, key):
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for p in patches:
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alpha = p[0]
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v = p[1]
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strength_model = p[2]
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if strength_model != 1.0:
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weight *= strength_model
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if isinstance(v, list):
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v = (self.calculate_weight(v[1:], v[0].clone(), key), )
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if len(v) == 1:
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w1 = v[0]
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if alpha != 0.0:
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if w1.shape != weight.shape:
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print("WARNING SHAPE MISMATCH {} WEIGHT NOT MERGED {} != {}".format(key, w1.shape, weight.shape))
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else:
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weight += alpha * w1.type(weight.dtype).to(weight.device)
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elif len(v) == 4: #lora/locon
|
|
mat1 = v[0].float().to(weight.device)
|
|
mat2 = v[1].float().to(weight.device)
|
|
if v[2] is not None:
|
|
alpha *= v[2] / mat2.shape[0]
|
|
if v[3] is not None:
|
|
#locon mid weights, hopefully the math is fine because I didn't properly test it
|
|
mat3 = v[3].float().to(weight.device)
|
|
final_shape = [mat2.shape[1], mat2.shape[0], mat3.shape[2], mat3.shape[3]]
|
|
mat2 = torch.mm(mat2.transpose(0, 1).flatten(start_dim=1), mat3.transpose(0, 1).flatten(start_dim=1)).reshape(final_shape).transpose(0, 1)
|
|
try:
|
|
weight += (alpha * torch.mm(mat1.flatten(start_dim=1), mat2.flatten(start_dim=1))).reshape(weight.shape).type(weight.dtype)
|
|
except Exception as e:
|
|
print("ERROR", key, e)
|
|
elif len(v) == 8: #lokr
|
|
w1 = v[0]
|
|
w2 = v[1]
|
|
w1_a = v[3]
|
|
w1_b = v[4]
|
|
w2_a = v[5]
|
|
w2_b = v[6]
|
|
t2 = v[7]
|
|
dim = None
|
|
|
|
if w1 is None:
|
|
dim = w1_b.shape[0]
|
|
w1 = torch.mm(w1_a.float(), w1_b.float())
|
|
else:
|
|
w1 = w1.float().to(weight.device)
|
|
|
|
if w2 is None:
|
|
dim = w2_b.shape[0]
|
|
if t2 is None:
|
|
w2 = torch.mm(w2_a.float().to(weight.device), w2_b.float().to(weight.device))
|
|
else:
|
|
w2 = torch.einsum('i j k l, j r, i p -> p r k l', t2.float().to(weight.device), w2_b.float().to(weight.device), w2_a.float().to(weight.device))
|
|
else:
|
|
w2 = w2.float().to(weight.device)
|
|
|
|
if len(w2.shape) == 4:
|
|
w1 = w1.unsqueeze(2).unsqueeze(2)
|
|
if v[2] is not None and dim is not None:
|
|
alpha *= v[2] / dim
|
|
|
|
try:
|
|
weight += alpha * torch.kron(w1, w2).reshape(weight.shape).type(weight.dtype)
|
|
except Exception as e:
|
|
print("ERROR", key, e)
|
|
else: #loha
|
|
w1a = v[0]
|
|
w1b = v[1]
|
|
if v[2] is not None:
|
|
alpha *= v[2] / w1b.shape[0]
|
|
w2a = v[3]
|
|
w2b = v[4]
|
|
if v[5] is not None: #cp decomposition
|
|
t1 = v[5]
|
|
t2 = v[6]
|
|
m1 = torch.einsum('i j k l, j r, i p -> p r k l', t1.float().to(weight.device), w1b.float().to(weight.device), w1a.float().to(weight.device))
|
|
m2 = torch.einsum('i j k l, j r, i p -> p r k l', t2.float().to(weight.device), w2b.float().to(weight.device), w2a.float().to(weight.device))
|
|
else:
|
|
m1 = torch.mm(w1a.float().to(weight.device), w1b.float().to(weight.device))
|
|
m2 = torch.mm(w2a.float().to(weight.device), w2b.float().to(weight.device))
|
|
|
|
try:
|
|
weight += (alpha * m1 * m2).reshape(weight.shape).type(weight.dtype)
|
|
except Exception as e:
|
|
print("ERROR", key, e)
|
|
|
|
return weight
|
|
|
|
def unpatch_model(self, device_to=None):
|
|
keys = list(self.backup.keys())
|
|
|
|
for k in keys:
|
|
set_attr(self.model, k, self.backup[k])
|
|
|
|
self.backup = {}
|
|
|
|
if device_to is not None:
|
|
self.model.to(device_to)
|
|
self.current_device = device_to
|
|
|
|
|
|
def load_lora_for_models(model, clip, lora, strength_model, strength_clip):
|
|
key_map = model_lora_keys_unet(model.model)
|
|
key_map = model_lora_keys_clip(clip.cond_stage_model, key_map)
|
|
loaded = load_lora(lora, key_map)
|
|
new_modelpatcher = model.clone()
|
|
k = new_modelpatcher.add_patches(loaded, strength_model)
|
|
new_clip = clip.clone()
|
|
k1 = new_clip.add_patches(loaded, strength_clip)
|
|
k = set(k)
|
|
k1 = set(k1)
|
|
for x in loaded:
|
|
if (x not in k) and (x not in k1):
|
|
print("NOT LOADED", x)
|
|
|
|
return (new_modelpatcher, new_clip)
|
|
|
|
|
|
class CLIP:
|
|
def __init__(self, target=None, embedding_directory=None, no_init=False):
|
|
if no_init:
|
|
return
|
|
params = target.params.copy()
|
|
clip = target.clip
|
|
tokenizer = target.tokenizer
|
|
|
|
load_device = model_management.text_encoder_device()
|
|
offload_device = model_management.text_encoder_offload_device()
|
|
params['device'] = load_device
|
|
self.cond_stage_model = clip(**(params))
|
|
#TODO: make sure this doesn't have a quality loss before enabling.
|
|
# if model_management.should_use_fp16(load_device):
|
|
# self.cond_stage_model.half()
|
|
|
|
self.cond_stage_model = self.cond_stage_model.to()
|
|
|
|
self.tokenizer = tokenizer(embedding_directory=embedding_directory)
|
|
self.patcher = ModelPatcher(self.cond_stage_model, load_device=load_device, offload_device=offload_device)
|
|
self.layer_idx = None
|
|
|
|
def clone(self):
|
|
n = CLIP(no_init=True)
|
|
n.patcher = self.patcher.clone()
|
|
n.cond_stage_model = self.cond_stage_model
|
|
n.tokenizer = self.tokenizer
|
|
n.layer_idx = self.layer_idx
|
|
return n
|
|
|
|
def load_from_state_dict(self, sd):
|
|
self.cond_stage_model.load_sd(sd)
|
|
|
|
def add_patches(self, patches, strength_patch=1.0, strength_model=1.0):
|
|
return self.patcher.add_patches(patches, strength_patch, strength_model)
|
|
|
|
def clip_layer(self, layer_idx):
|
|
self.layer_idx = layer_idx
|
|
|
|
def tokenize(self, text, return_word_ids=False):
|
|
return self.tokenizer.tokenize_with_weights(text, return_word_ids)
|
|
|
|
def encode_from_tokens(self, tokens, return_pooled=False):
|
|
if self.layer_idx is not None:
|
|
self.cond_stage_model.clip_layer(self.layer_idx)
|
|
else:
|
|
self.cond_stage_model.reset_clip_layer()
|
|
|
|
self.load_model()
|
|
cond, pooled = self.cond_stage_model.encode_token_weights(tokens)
|
|
if return_pooled:
|
|
return cond, pooled
|
|
return cond
|
|
|
|
def encode(self, text):
|
|
tokens = self.tokenize(text)
|
|
return self.encode_from_tokens(tokens)
|
|
|
|
def load_sd(self, sd):
|
|
return self.cond_stage_model.load_sd(sd)
|
|
|
|
def get_sd(self):
|
|
return self.cond_stage_model.state_dict()
|
|
|
|
def load_model(self):
|
|
model_management.load_model_gpu(self.patcher)
|
|
return self.patcher
|
|
|
|
def get_key_patches(self):
|
|
return self.patcher.get_key_patches()
|
|
|
|
class VAE:
|
|
def __init__(self, ckpt_path=None, device=None, config=None):
|
|
if config is None:
|
|
#default SD1.x/SD2.x VAE parameters
|
|
ddconfig = {'double_z': True, 'z_channels': 4, 'resolution': 256, 'in_channels': 3, 'out_ch': 3, 'ch': 128, 'ch_mult': [1, 2, 4, 4], 'num_res_blocks': 2, 'attn_resolutions': [], 'dropout': 0.0}
|
|
self.first_stage_model = AutoencoderKL(ddconfig, {'target': 'torch.nn.Identity'}, 4, monitor="val/rec_loss")
|
|
else:
|
|
self.first_stage_model = AutoencoderKL(**(config['params']))
|
|
self.first_stage_model = self.first_stage_model.eval()
|
|
if ckpt_path is not None:
|
|
sd = utils.load_torch_file(ckpt_path)
|
|
if 'decoder.up_blocks.0.resnets.0.norm1.weight' in sd.keys(): #diffusers format
|
|
sd = diffusers_convert.convert_vae_state_dict(sd)
|
|
self.first_stage_model.load_state_dict(sd, strict=False)
|
|
|
|
if device is None:
|
|
device = model_management.vae_device()
|
|
self.device = device
|
|
self.offload_device = model_management.vae_offload_device()
|
|
self.vae_dtype = model_management.vae_dtype()
|
|
self.first_stage_model.to(self.vae_dtype)
|
|
|
|
def decode_tiled_(self, samples, tile_x=64, tile_y=64, overlap = 16):
|
|
steps = samples.shape[0] * utils.get_tiled_scale_steps(samples.shape[3], samples.shape[2], tile_x, tile_y, overlap)
|
|
steps += samples.shape[0] * utils.get_tiled_scale_steps(samples.shape[3], samples.shape[2], tile_x // 2, tile_y * 2, overlap)
|
|
steps += samples.shape[0] * utils.get_tiled_scale_steps(samples.shape[3], samples.shape[2], tile_x * 2, tile_y // 2, overlap)
|
|
pbar = utils.ProgressBar(steps)
|
|
|
|
decode_fn = lambda a: (self.first_stage_model.decode(a.to(self.vae_dtype).to(self.device)) + 1.0).float()
|
|
output = torch.clamp((
|
|
(utils.tiled_scale(samples, decode_fn, tile_x // 2, tile_y * 2, overlap, upscale_amount = 8, pbar = pbar) +
|
|
utils.tiled_scale(samples, decode_fn, tile_x * 2, tile_y // 2, overlap, upscale_amount = 8, pbar = pbar) +
|
|
utils.tiled_scale(samples, decode_fn, tile_x, tile_y, overlap, upscale_amount = 8, pbar = pbar))
|
|
/ 3.0) / 2.0, min=0.0, max=1.0)
|
|
return output
|
|
|
|
def encode_tiled_(self, pixel_samples, tile_x=512, tile_y=512, overlap = 64):
|
|
steps = pixel_samples.shape[0] * utils.get_tiled_scale_steps(pixel_samples.shape[3], pixel_samples.shape[2], tile_x, tile_y, overlap)
|
|
steps += pixel_samples.shape[0] * utils.get_tiled_scale_steps(pixel_samples.shape[3], pixel_samples.shape[2], tile_x // 2, tile_y * 2, overlap)
|
|
steps += pixel_samples.shape[0] * utils.get_tiled_scale_steps(pixel_samples.shape[3], pixel_samples.shape[2], tile_x * 2, tile_y // 2, overlap)
|
|
pbar = utils.ProgressBar(steps)
|
|
|
|
encode_fn = lambda a: self.first_stage_model.encode(2. * a.to(self.vae_dtype).to(self.device) - 1.).sample().float()
|
|
samples = utils.tiled_scale(pixel_samples, encode_fn, tile_x, tile_y, overlap, upscale_amount = (1/8), out_channels=4, pbar=pbar)
|
|
samples += utils.tiled_scale(pixel_samples, encode_fn, tile_x * 2, tile_y // 2, overlap, upscale_amount = (1/8), out_channels=4, pbar=pbar)
|
|
samples += utils.tiled_scale(pixel_samples, encode_fn, tile_x // 2, tile_y * 2, overlap, upscale_amount = (1/8), out_channels=4, pbar=pbar)
|
|
samples /= 3.0
|
|
return samples
|
|
|
|
def decode(self, samples_in):
|
|
self.first_stage_model = self.first_stage_model.to(self.device)
|
|
try:
|
|
memory_used = (2562 * samples_in.shape[2] * samples_in.shape[3] * 64) * 1.7
|
|
model_management.free_memory(memory_used, self.device)
|
|
free_memory = model_management.get_free_memory(self.device)
|
|
batch_number = int(free_memory / memory_used)
|
|
batch_number = max(1, batch_number)
|
|
|
|
pixel_samples = torch.empty((samples_in.shape[0], 3, round(samples_in.shape[2] * 8), round(samples_in.shape[3] * 8)), device="cpu")
|
|
for x in range(0, samples_in.shape[0], batch_number):
|
|
samples = samples_in[x:x+batch_number].to(self.vae_dtype).to(self.device)
|
|
pixel_samples[x:x+batch_number] = torch.clamp((self.first_stage_model.decode(samples) + 1.0) / 2.0, min=0.0, max=1.0).cpu().float()
|
|
except model_management.OOM_EXCEPTION as e:
|
|
print("Warning: Ran out of memory when regular VAE decoding, retrying with tiled VAE decoding.")
|
|
pixel_samples = self.decode_tiled_(samples_in)
|
|
|
|
self.first_stage_model = self.first_stage_model.to(self.offload_device)
|
|
pixel_samples = pixel_samples.cpu().movedim(1,-1)
|
|
return pixel_samples
|
|
|
|
def decode_tiled(self, samples, tile_x=64, tile_y=64, overlap = 16):
|
|
self.first_stage_model = self.first_stage_model.to(self.device)
|
|
output = self.decode_tiled_(samples, tile_x, tile_y, overlap)
|
|
self.first_stage_model = self.first_stage_model.to(self.offload_device)
|
|
return output.movedim(1,-1)
|
|
|
|
def encode(self, pixel_samples):
|
|
self.first_stage_model = self.first_stage_model.to(self.device)
|
|
pixel_samples = pixel_samples.movedim(-1,1)
|
|
try:
|
|
memory_used = (2078 * pixel_samples.shape[2] * pixel_samples.shape[3]) * 1.7 #NOTE: this constant along with the one in the decode above are estimated from the mem usage for the VAE and could change.
|
|
model_management.free_memory(memory_used, self.device)
|
|
free_memory = model_management.get_free_memory(self.device)
|
|
batch_number = int(free_memory / memory_used)
|
|
batch_number = max(1, batch_number)
|
|
samples = torch.empty((pixel_samples.shape[0], 4, round(pixel_samples.shape[2] // 8), round(pixel_samples.shape[3] // 8)), device="cpu")
|
|
for x in range(0, pixel_samples.shape[0], batch_number):
|
|
pixels_in = (2. * pixel_samples[x:x+batch_number] - 1.).to(self.vae_dtype).to(self.device)
|
|
samples[x:x+batch_number] = self.first_stage_model.encode(pixels_in).sample().cpu().float()
|
|
|
|
except model_management.OOM_EXCEPTION as e:
|
|
print("Warning: Ran out of memory when regular VAE encoding, retrying with tiled VAE encoding.")
|
|
samples = self.encode_tiled_(pixel_samples)
|
|
|
|
self.first_stage_model = self.first_stage_model.to(self.offload_device)
|
|
return samples
|
|
|
|
def encode_tiled(self, pixel_samples, tile_x=512, tile_y=512, overlap = 64):
|
|
self.first_stage_model = self.first_stage_model.to(self.device)
|
|
pixel_samples = pixel_samples.movedim(-1,1)
|
|
samples = self.encode_tiled_(pixel_samples, tile_x=tile_x, tile_y=tile_y, overlap=overlap)
|
|
self.first_stage_model = self.first_stage_model.to(self.offload_device)
|
|
return samples
|
|
|
|
def get_sd(self):
|
|
return self.first_stage_model.state_dict()
|
|
|
|
|
|
def broadcast_image_to(tensor, target_batch_size, batched_number):
|
|
current_batch_size = tensor.shape[0]
|
|
#print(current_batch_size, target_batch_size)
|
|
if current_batch_size == 1:
|
|
return tensor
|
|
|
|
per_batch = target_batch_size // batched_number
|
|
tensor = tensor[:per_batch]
|
|
|
|
if per_batch > tensor.shape[0]:
|
|
tensor = torch.cat([tensor] * (per_batch // tensor.shape[0]) + [tensor[:(per_batch % tensor.shape[0])]], dim=0)
|
|
|
|
current_batch_size = tensor.shape[0]
|
|
if current_batch_size == target_batch_size:
|
|
return tensor
|
|
else:
|
|
return torch.cat([tensor] * batched_number, dim=0)
|
|
|
|
class ControlBase:
|
|
def __init__(self, device=None):
|
|
self.cond_hint_original = None
|
|
self.cond_hint = None
|
|
self.strength = 1.0
|
|
self.timestep_percent_range = (1.0, 0.0)
|
|
self.timestep_range = None
|
|
|
|
if device is None:
|
|
device = model_management.get_torch_device()
|
|
self.device = device
|
|
self.previous_controlnet = None
|
|
|
|
def set_cond_hint(self, cond_hint, strength=1.0, timestep_percent_range=(1.0, 0.0)):
|
|
self.cond_hint_original = cond_hint
|
|
self.strength = strength
|
|
self.timestep_percent_range = timestep_percent_range
|
|
return self
|
|
|
|
def pre_run(self, model, percent_to_timestep_function):
|
|
self.timestep_range = (percent_to_timestep_function(self.timestep_percent_range[0]), percent_to_timestep_function(self.timestep_percent_range[1]))
|
|
if self.previous_controlnet is not None:
|
|
self.previous_controlnet.pre_run(model, percent_to_timestep_function)
|
|
|
|
def set_previous_controlnet(self, controlnet):
|
|
self.previous_controlnet = controlnet
|
|
return self
|
|
|
|
def cleanup(self):
|
|
if self.previous_controlnet is not None:
|
|
self.previous_controlnet.cleanup()
|
|
if self.cond_hint is not None:
|
|
del self.cond_hint
|
|
self.cond_hint = None
|
|
self.timestep_range = None
|
|
|
|
def get_models(self):
|
|
out = []
|
|
if self.previous_controlnet is not None:
|
|
out += self.previous_controlnet.get_models()
|
|
return out
|
|
|
|
def copy_to(self, c):
|
|
c.cond_hint_original = self.cond_hint_original
|
|
c.strength = self.strength
|
|
c.timestep_percent_range = self.timestep_percent_range
|
|
|
|
class ControlNet(ControlBase):
|
|
def __init__(self, control_model, global_average_pooling=False, device=None):
|
|
super().__init__(device)
|
|
self.control_model = control_model
|
|
self.control_model_wrapped = ModelPatcher(self.control_model, load_device=model_management.get_torch_device(), offload_device=model_management.unet_offload_device())
|
|
self.global_average_pooling = global_average_pooling
|
|
|
|
def get_control(self, x_noisy, t, cond, batched_number):
|
|
control_prev = None
|
|
if self.previous_controlnet is not None:
|
|
control_prev = self.previous_controlnet.get_control(x_noisy, t, cond, batched_number)
|
|
|
|
if self.timestep_range is not None:
|
|
if t[0] > self.timestep_range[0] or t[0] < self.timestep_range[1]:
|
|
if control_prev is not None:
|
|
return control_prev
|
|
else:
|
|
return {}
|
|
|
|
output_dtype = x_noisy.dtype
|
|
if self.cond_hint is None or x_noisy.shape[2] * 8 != self.cond_hint.shape[2] or x_noisy.shape[3] * 8 != self.cond_hint.shape[3]:
|
|
if self.cond_hint is not None:
|
|
del self.cond_hint
|
|
self.cond_hint = None
|
|
self.cond_hint = utils.common_upscale(self.cond_hint_original, x_noisy.shape[3] * 8, x_noisy.shape[2] * 8, 'nearest-exact', "center").to(self.control_model.dtype).to(self.device)
|
|
if x_noisy.shape[0] != self.cond_hint.shape[0]:
|
|
self.cond_hint = broadcast_image_to(self.cond_hint, x_noisy.shape[0], batched_number)
|
|
|
|
if self.control_model.dtype == torch.float16:
|
|
precision_scope = torch.autocast
|
|
else:
|
|
precision_scope = contextlib.nullcontext
|
|
|
|
with precision_scope(model_management.get_autocast_device(self.device)):
|
|
context = torch.cat(cond['c_crossattn'], 1)
|
|
y = cond.get('c_adm', None)
|
|
control = self.control_model(x=x_noisy, hint=self.cond_hint, timesteps=t, context=context, y=y)
|
|
out = {'middle':[], 'output': []}
|
|
autocast_enabled = torch.is_autocast_enabled()
|
|
|
|
for i in range(len(control)):
|
|
if i == (len(control) - 1):
|
|
key = 'middle'
|
|
index = 0
|
|
else:
|
|
key = 'output'
|
|
index = i
|
|
x = control[i]
|
|
if self.global_average_pooling:
|
|
x = torch.mean(x, dim=(2, 3), keepdim=True).repeat(1, 1, x.shape[2], x.shape[3])
|
|
|
|
x *= self.strength
|
|
if x.dtype != output_dtype and not autocast_enabled:
|
|
x = x.to(output_dtype)
|
|
|
|
if control_prev is not None and key in control_prev:
|
|
prev = control_prev[key][index]
|
|
if prev is not None:
|
|
x += prev
|
|
out[key].append(x)
|
|
if control_prev is not None and 'input' in control_prev:
|
|
out['input'] = control_prev['input']
|
|
return out
|
|
|
|
def copy(self):
|
|
c = ControlNet(self.control_model, global_average_pooling=self.global_average_pooling)
|
|
self.copy_to(c)
|
|
return c
|
|
|
|
def get_models(self):
|
|
out = super().get_models()
|
|
out.append(self.control_model_wrapped)
|
|
return out
|
|
|
|
class ControlLoraOps:
|
|
class Linear(torch.nn.Module):
|
|
def __init__(self, in_features: int, out_features: int, bias: bool = True,
|
|
device=None, dtype=None) -> None:
|
|
factory_kwargs = {'device': device, 'dtype': dtype}
|
|
super().__init__()
|
|
self.in_features = in_features
|
|
self.out_features = out_features
|
|
self.weight = None
|
|
self.up = None
|
|
self.down = None
|
|
self.bias = None
|
|
|
|
def forward(self, input):
|
|
if self.up is not None:
|
|
return torch.nn.functional.linear(input, self.weight + (torch.mm(self.up.flatten(start_dim=1), self.down.flatten(start_dim=1))).reshape(self.weight.shape).type(self.weight.dtype), self.bias)
|
|
else:
|
|
return torch.nn.functional.linear(input, self.weight, self.bias)
|
|
|
|
class Conv2d(torch.nn.Module):
|
|
def __init__(
|
|
self,
|
|
in_channels,
|
|
out_channels,
|
|
kernel_size,
|
|
stride=1,
|
|
padding=0,
|
|
dilation=1,
|
|
groups=1,
|
|
bias=True,
|
|
padding_mode='zeros',
|
|
device=None,
|
|
dtype=None
|
|
):
|
|
super().__init__()
|
|
self.in_channels = in_channels
|
|
self.out_channels = out_channels
|
|
self.kernel_size = kernel_size
|
|
self.stride = stride
|
|
self.padding = padding
|
|
self.dilation = dilation
|
|
self.transposed = False
|
|
self.output_padding = 0
|
|
self.groups = groups
|
|
self.padding_mode = padding_mode
|
|
|
|
self.weight = None
|
|
self.bias = None
|
|
self.up = None
|
|
self.down = None
|
|
|
|
|
|
def forward(self, input):
|
|
if self.up is not None:
|
|
return torch.nn.functional.conv2d(input, self.weight + (torch.mm(self.up.flatten(start_dim=1), self.down.flatten(start_dim=1))).reshape(self.weight.shape).type(self.weight.dtype), self.bias, self.stride, self.padding, self.dilation, self.groups)
|
|
else:
|
|
return torch.nn.functional.conv2d(input, self.weight, self.bias, self.stride, self.padding, self.dilation, self.groups)
|
|
|
|
def conv_nd(self, dims, *args, **kwargs):
|
|
if dims == 2:
|
|
return self.Conv2d(*args, **kwargs)
|
|
else:
|
|
raise ValueError(f"unsupported dimensions: {dims}")
|
|
|
|
|
|
class ControlLora(ControlNet):
|
|
def __init__(self, control_weights, global_average_pooling=False, device=None):
|
|
ControlBase.__init__(self, device)
|
|
self.control_weights = control_weights
|
|
self.global_average_pooling = global_average_pooling
|
|
|
|
def pre_run(self, model, percent_to_timestep_function):
|
|
super().pre_run(model, percent_to_timestep_function)
|
|
controlnet_config = model.model_config.unet_config.copy()
|
|
controlnet_config.pop("out_channels")
|
|
controlnet_config["hint_channels"] = self.control_weights["input_hint_block.0.weight"].shape[1]
|
|
controlnet_config["operations"] = ControlLoraOps()
|
|
self.control_model = cldm.ControlNet(**controlnet_config)
|
|
if model_management.should_use_fp16():
|
|
self.control_model.half()
|
|
self.control_model.to(model_management.get_torch_device())
|
|
diffusion_model = model.diffusion_model
|
|
sd = diffusion_model.state_dict()
|
|
cm = self.control_model.state_dict()
|
|
|
|
for k in sd:
|
|
try:
|
|
set_attr(self.control_model, k, sd[k])
|
|
except:
|
|
pass
|
|
|
|
for k in self.control_weights:
|
|
if k not in {"lora_controlnet"}:
|
|
set_attr(self.control_model, k, self.control_weights[k].to(model_management.get_torch_device()))
|
|
|
|
def copy(self):
|
|
c = ControlLora(self.control_weights, global_average_pooling=self.global_average_pooling)
|
|
self.copy_to(c)
|
|
return c
|
|
|
|
def cleanup(self):
|
|
del self.control_model
|
|
self.control_model = None
|
|
super().cleanup()
|
|
|
|
def get_models(self):
|
|
out = ControlBase.get_models(self)
|
|
return out
|
|
|
|
def load_controlnet(ckpt_path, model=None):
|
|
controlnet_data = utils.load_torch_file(ckpt_path, safe_load=True)
|
|
if "lora_controlnet" in controlnet_data:
|
|
return ControlLora(controlnet_data)
|
|
|
|
controlnet_config = None
|
|
if "controlnet_cond_embedding.conv_in.weight" in controlnet_data: #diffusers format
|
|
use_fp16 = model_management.should_use_fp16()
|
|
controlnet_config = model_detection.unet_config_from_diffusers_unet(controlnet_data, use_fp16)
|
|
diffusers_keys = utils.unet_to_diffusers(controlnet_config)
|
|
diffusers_keys["controlnet_mid_block.weight"] = "middle_block_out.0.weight"
|
|
diffusers_keys["controlnet_mid_block.bias"] = "middle_block_out.0.bias"
|
|
|
|
count = 0
|
|
loop = True
|
|
while loop:
|
|
suffix = [".weight", ".bias"]
|
|
for s in suffix:
|
|
k_in = "controlnet_down_blocks.{}{}".format(count, s)
|
|
k_out = "zero_convs.{}.0{}".format(count, s)
|
|
if k_in not in controlnet_data:
|
|
loop = False
|
|
break
|
|
diffusers_keys[k_in] = k_out
|
|
count += 1
|
|
|
|
count = 0
|
|
loop = True
|
|
while loop:
|
|
suffix = [".weight", ".bias"]
|
|
for s in suffix:
|
|
if count == 0:
|
|
k_in = "controlnet_cond_embedding.conv_in{}".format(s)
|
|
else:
|
|
k_in = "controlnet_cond_embedding.blocks.{}{}".format(count - 1, s)
|
|
k_out = "input_hint_block.{}{}".format(count * 2, s)
|
|
if k_in not in controlnet_data:
|
|
k_in = "controlnet_cond_embedding.conv_out{}".format(s)
|
|
loop = False
|
|
diffusers_keys[k_in] = k_out
|
|
count += 1
|
|
|
|
new_sd = {}
|
|
for k in diffusers_keys:
|
|
if k in controlnet_data:
|
|
new_sd[diffusers_keys[k]] = controlnet_data.pop(k)
|
|
|
|
leftover_keys = controlnet_data.keys()
|
|
if len(leftover_keys) > 0:
|
|
print("leftover keys:", leftover_keys)
|
|
controlnet_data = new_sd
|
|
|
|
pth_key = 'control_model.zero_convs.0.0.weight'
|
|
pth = False
|
|
key = 'zero_convs.0.0.weight'
|
|
if pth_key in controlnet_data:
|
|
pth = True
|
|
key = pth_key
|
|
prefix = "control_model."
|
|
elif key in controlnet_data:
|
|
prefix = ""
|
|
else:
|
|
net = load_t2i_adapter(controlnet_data)
|
|
if net is None:
|
|
print("error checkpoint does not contain controlnet or t2i adapter data", ckpt_path)
|
|
return net
|
|
|
|
if controlnet_config is None:
|
|
use_fp16 = model_management.should_use_fp16()
|
|
controlnet_config = model_detection.model_config_from_unet(controlnet_data, prefix, use_fp16).unet_config
|
|
controlnet_config.pop("out_channels")
|
|
controlnet_config["hint_channels"] = controlnet_data["{}input_hint_block.0.weight".format(prefix)].shape[1]
|
|
control_model = cldm.ControlNet(**controlnet_config)
|
|
|
|
if pth:
|
|
if 'difference' in controlnet_data:
|
|
if model is not None:
|
|
model_management.load_models_gpu([model])
|
|
model_sd = model.model_state_dict()
|
|
for x in controlnet_data:
|
|
c_m = "control_model."
|
|
if x.startswith(c_m):
|
|
sd_key = "diffusion_model.{}".format(x[len(c_m):])
|
|
if sd_key in model_sd:
|
|
cd = controlnet_data[x]
|
|
cd += model_sd[sd_key].type(cd.dtype).to(cd.device)
|
|
else:
|
|
print("WARNING: Loaded a diff controlnet without a model. It will very likely not work.")
|
|
|
|
class WeightsLoader(torch.nn.Module):
|
|
pass
|
|
w = WeightsLoader()
|
|
w.control_model = control_model
|
|
missing, unexpected = w.load_state_dict(controlnet_data, strict=False)
|
|
else:
|
|
missing, unexpected = control_model.load_state_dict(controlnet_data, strict=False)
|
|
print(missing, unexpected)
|
|
|
|
if use_fp16:
|
|
control_model = control_model.half()
|
|
|
|
global_average_pooling = False
|
|
if ckpt_path.endswith("_shuffle.pth") or ckpt_path.endswith("_shuffle.safetensors") or ckpt_path.endswith("_shuffle_fp16.safetensors"): #TODO: smarter way of enabling global_average_pooling
|
|
global_average_pooling = True
|
|
|
|
control = ControlNet(control_model, global_average_pooling=global_average_pooling)
|
|
return control
|
|
|
|
class T2IAdapter(ControlBase):
|
|
def __init__(self, t2i_model, channels_in, device=None):
|
|
super().__init__(device)
|
|
self.t2i_model = t2i_model
|
|
self.channels_in = channels_in
|
|
self.control_input = None
|
|
|
|
def get_control(self, x_noisy, t, cond, batched_number):
|
|
control_prev = None
|
|
if self.previous_controlnet is not None:
|
|
control_prev = self.previous_controlnet.get_control(x_noisy, t, cond, batched_number)
|
|
|
|
if self.timestep_range is not None:
|
|
if t[0] > self.timestep_range[0] or t[0] < self.timestep_range[1]:
|
|
if control_prev is not None:
|
|
return control_prev
|
|
else:
|
|
return {}
|
|
|
|
if self.cond_hint is None or x_noisy.shape[2] * 8 != self.cond_hint.shape[2] or x_noisy.shape[3] * 8 != self.cond_hint.shape[3]:
|
|
if self.cond_hint is not None:
|
|
del self.cond_hint
|
|
self.control_input = None
|
|
self.cond_hint = None
|
|
self.cond_hint = utils.common_upscale(self.cond_hint_original, x_noisy.shape[3] * 8, x_noisy.shape[2] * 8, 'nearest-exact', "center").float().to(self.device)
|
|
if self.channels_in == 1 and self.cond_hint.shape[1] > 1:
|
|
self.cond_hint = torch.mean(self.cond_hint, 1, keepdim=True)
|
|
if x_noisy.shape[0] != self.cond_hint.shape[0]:
|
|
self.cond_hint = broadcast_image_to(self.cond_hint, x_noisy.shape[0], batched_number)
|
|
if self.control_input is None:
|
|
self.t2i_model.to(self.device)
|
|
self.control_input = self.t2i_model(self.cond_hint)
|
|
self.t2i_model.cpu()
|
|
|
|
output_dtype = x_noisy.dtype
|
|
out = {'input':[]}
|
|
|
|
autocast_enabled = torch.is_autocast_enabled()
|
|
for i in range(len(self.control_input)):
|
|
key = 'input'
|
|
x = self.control_input[i] * self.strength
|
|
if x.dtype != output_dtype and not autocast_enabled:
|
|
x = x.to(output_dtype)
|
|
|
|
if control_prev is not None and key in control_prev:
|
|
index = len(control_prev[key]) - i * 3 - 3
|
|
prev = control_prev[key][index]
|
|
if prev is not None:
|
|
x += prev
|
|
out[key].insert(0, None)
|
|
out[key].insert(0, None)
|
|
out[key].insert(0, x)
|
|
|
|
if control_prev is not None and 'input' in control_prev:
|
|
for i in range(len(out['input'])):
|
|
if out['input'][i] is None:
|
|
out['input'][i] = control_prev['input'][i]
|
|
if control_prev is not None and 'middle' in control_prev:
|
|
out['middle'] = control_prev['middle']
|
|
if control_prev is not None and 'output' in control_prev:
|
|
out['output'] = control_prev['output']
|
|
return out
|
|
|
|
def copy(self):
|
|
c = T2IAdapter(self.t2i_model, self.channels_in)
|
|
self.copy_to(c)
|
|
return c
|
|
|
|
def load_t2i_adapter(t2i_data):
|
|
keys = t2i_data.keys()
|
|
if 'adapter' in keys:
|
|
t2i_data = t2i_data['adapter']
|
|
keys = t2i_data.keys()
|
|
if "body.0.in_conv.weight" in keys:
|
|
cin = t2i_data['body.0.in_conv.weight'].shape[1]
|
|
model_ad = adapter.Adapter_light(cin=cin, channels=[320, 640, 1280, 1280], nums_rb=4)
|
|
elif 'conv_in.weight' in keys:
|
|
cin = t2i_data['conv_in.weight'].shape[1]
|
|
channel = t2i_data['conv_in.weight'].shape[0]
|
|
ksize = t2i_data['body.0.block2.weight'].shape[2]
|
|
use_conv = False
|
|
down_opts = list(filter(lambda a: a.endswith("down_opt.op.weight"), keys))
|
|
if len(down_opts) > 0:
|
|
use_conv = True
|
|
model_ad = adapter.Adapter(cin=cin, channels=[channel, channel*2, channel*4, channel*4][:4], nums_rb=2, ksize=ksize, sk=True, use_conv=use_conv)
|
|
else:
|
|
return None
|
|
model_ad.load_state_dict(t2i_data)
|
|
return T2IAdapter(model_ad, cin // 64)
|
|
|
|
|
|
class StyleModel:
|
|
def __init__(self, model, device="cpu"):
|
|
self.model = model
|
|
|
|
def get_cond(self, input):
|
|
return self.model(input.last_hidden_state)
|
|
|
|
|
|
def load_style_model(ckpt_path):
|
|
model_data = utils.load_torch_file(ckpt_path, safe_load=True)
|
|
keys = model_data.keys()
|
|
if "style_embedding" in keys:
|
|
model = adapter.StyleAdapter(width=1024, context_dim=768, num_head=8, n_layes=3, num_token=8)
|
|
else:
|
|
raise Exception("invalid style model {}".format(ckpt_path))
|
|
model.load_state_dict(model_data)
|
|
return StyleModel(model)
|
|
|
|
|
|
def load_clip(ckpt_paths, embedding_directory=None):
|
|
clip_data = []
|
|
for p in ckpt_paths:
|
|
clip_data.append(utils.load_torch_file(p, safe_load=True))
|
|
|
|
class EmptyClass:
|
|
pass
|
|
|
|
for i in range(len(clip_data)):
|
|
if "transformer.resblocks.0.ln_1.weight" in clip_data[i]:
|
|
clip_data[i] = utils.transformers_convert(clip_data[i], "", "text_model.", 32)
|
|
|
|
clip_target = EmptyClass()
|
|
clip_target.params = {}
|
|
if len(clip_data) == 1:
|
|
if "text_model.encoder.layers.30.mlp.fc1.weight" in clip_data[0]:
|
|
clip_target.clip = sdxl_clip.SDXLRefinerClipModel
|
|
clip_target.tokenizer = sdxl_clip.SDXLTokenizer
|
|
elif "text_model.encoder.layers.22.mlp.fc1.weight" in clip_data[0]:
|
|
clip_target.clip = sd2_clip.SD2ClipModel
|
|
clip_target.tokenizer = sd2_clip.SD2Tokenizer
|
|
else:
|
|
clip_target.clip = sd1_clip.SD1ClipModel
|
|
clip_target.tokenizer = sd1_clip.SD1Tokenizer
|
|
else:
|
|
clip_target.clip = sdxl_clip.SDXLClipModel
|
|
clip_target.tokenizer = sdxl_clip.SDXLTokenizer
|
|
|
|
clip = CLIP(clip_target, embedding_directory=embedding_directory)
|
|
for c in clip_data:
|
|
m, u = clip.load_sd(c)
|
|
if len(m) > 0:
|
|
print("clip missing:", m)
|
|
|
|
if len(u) > 0:
|
|
print("clip unexpected:", u)
|
|
return clip
|
|
|
|
def load_gligen(ckpt_path):
|
|
data = utils.load_torch_file(ckpt_path, safe_load=True)
|
|
model = gligen.load_gligen(data)
|
|
if model_management.should_use_fp16():
|
|
model = model.half()
|
|
return ModelPatcher(model, load_device=model_management.get_torch_device(), offload_device=model_management.unet_offload_device())
|
|
|
|
def load_checkpoint(config_path=None, ckpt_path=None, output_vae=True, output_clip=True, embedding_directory=None, state_dict=None, config=None):
|
|
#TODO: this function is a mess and should be removed eventually
|
|
if config is None:
|
|
with open(config_path, 'r') as stream:
|
|
config = yaml.safe_load(stream)
|
|
model_config_params = config['model']['params']
|
|
clip_config = model_config_params['cond_stage_config']
|
|
scale_factor = model_config_params['scale_factor']
|
|
vae_config = model_config_params['first_stage_config']
|
|
|
|
fp16 = False
|
|
if "unet_config" in model_config_params:
|
|
if "params" in model_config_params["unet_config"]:
|
|
unet_config = model_config_params["unet_config"]["params"]
|
|
if "use_fp16" in unet_config:
|
|
fp16 = unet_config["use_fp16"]
|
|
|
|
noise_aug_config = None
|
|
if "noise_aug_config" in model_config_params:
|
|
noise_aug_config = model_config_params["noise_aug_config"]
|
|
|
|
model_type = model_base.ModelType.EPS
|
|
|
|
if "parameterization" in model_config_params:
|
|
if model_config_params["parameterization"] == "v":
|
|
model_type = model_base.ModelType.V_PREDICTION
|
|
|
|
clip = None
|
|
vae = None
|
|
|
|
class WeightsLoader(torch.nn.Module):
|
|
pass
|
|
|
|
if state_dict is None:
|
|
state_dict = utils.load_torch_file(ckpt_path)
|
|
|
|
class EmptyClass:
|
|
pass
|
|
|
|
model_config = EmptyClass()
|
|
model_config.unet_config = unet_config
|
|
from . import latent_formats
|
|
model_config.latent_format = latent_formats.SD15(scale_factor=scale_factor)
|
|
|
|
if config['model']["target"].endswith("LatentInpaintDiffusion"):
|
|
model = model_base.SDInpaint(model_config, model_type=model_type)
|
|
elif config['model']["target"].endswith("ImageEmbeddingConditionedLatentDiffusion"):
|
|
model = model_base.SD21UNCLIP(model_config, noise_aug_config["params"], model_type=model_type)
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else:
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model = model_base.BaseModel(model_config, model_type=model_type)
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|
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if fp16:
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|
model = model.half()
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|
|
|
offload_device = model_management.unet_offload_device()
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|
model = model.to(offload_device)
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model.load_model_weights(state_dict, "model.diffusion_model.")
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|
|
|
if output_vae:
|
|
w = WeightsLoader()
|
|
vae = VAE(config=vae_config)
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|
w.first_stage_model = vae.first_stage_model
|
|
load_model_weights(w, state_dict)
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|
|
|
if output_clip:
|
|
w = WeightsLoader()
|
|
clip_target = EmptyClass()
|
|
clip_target.params = clip_config.get("params", {})
|
|
if clip_config["target"].endswith("FrozenOpenCLIPEmbedder"):
|
|
clip_target.clip = sd2_clip.SD2ClipModel
|
|
clip_target.tokenizer = sd2_clip.SD2Tokenizer
|
|
elif clip_config["target"].endswith("FrozenCLIPEmbedder"):
|
|
clip_target.clip = sd1_clip.SD1ClipModel
|
|
clip_target.tokenizer = sd1_clip.SD1Tokenizer
|
|
clip = CLIP(clip_target, embedding_directory=embedding_directory)
|
|
w.cond_stage_model = clip.cond_stage_model
|
|
load_clip_weights(w, state_dict)
|
|
|
|
return (ModelPatcher(model, load_device=model_management.get_torch_device(), offload_device=offload_device), clip, vae)
|
|
|
|
def calculate_parameters(sd, prefix):
|
|
params = 0
|
|
for k in sd.keys():
|
|
if k.startswith(prefix):
|
|
params += sd[k].nelement()
|
|
return params
|
|
|
|
def load_checkpoint_guess_config(ckpt_path, output_vae=True, output_clip=True, output_clipvision=False, embedding_directory=None):
|
|
sd = utils.load_torch_file(ckpt_path)
|
|
sd_keys = sd.keys()
|
|
clip = None
|
|
clipvision = None
|
|
vae = None
|
|
model = None
|
|
clip_target = None
|
|
|
|
parameters = calculate_parameters(sd, "model.diffusion_model.")
|
|
fp16 = model_management.should_use_fp16(model_params=parameters)
|
|
|
|
class WeightsLoader(torch.nn.Module):
|
|
pass
|
|
|
|
model_config = model_detection.model_config_from_unet(sd, "model.diffusion_model.", fp16)
|
|
if model_config is None:
|
|
raise RuntimeError("ERROR: Could not detect model type of: {}".format(ckpt_path))
|
|
|
|
if model_config.clip_vision_prefix is not None:
|
|
if output_clipvision:
|
|
clipvision = clip_vision.load_clipvision_from_sd(sd, model_config.clip_vision_prefix, True)
|
|
|
|
dtype = torch.float32
|
|
if fp16:
|
|
dtype = torch.float16
|
|
|
|
inital_load_device = model_management.unet_inital_load_device(parameters, dtype)
|
|
offload_device = model_management.unet_offload_device()
|
|
model = model_config.get_model(sd, "model.diffusion_model.", device=inital_load_device)
|
|
model.load_model_weights(sd, "model.diffusion_model.")
|
|
|
|
if output_vae:
|
|
vae = VAE()
|
|
w = WeightsLoader()
|
|
w.first_stage_model = vae.first_stage_model
|
|
load_model_weights(w, sd)
|
|
|
|
if output_clip:
|
|
w = WeightsLoader()
|
|
clip_target = model_config.clip_target()
|
|
clip = CLIP(clip_target, embedding_directory=embedding_directory)
|
|
w.cond_stage_model = clip.cond_stage_model
|
|
sd = model_config.process_clip_state_dict(sd)
|
|
load_model_weights(w, sd)
|
|
|
|
left_over = sd.keys()
|
|
if len(left_over) > 0:
|
|
print("left over keys:", left_over)
|
|
|
|
model_patcher = ModelPatcher(model, load_device=model_management.get_torch_device(), offload_device=model_management.unet_offload_device(), current_device=inital_load_device)
|
|
if inital_load_device != torch.device("cpu"):
|
|
print("loaded straight to GPU")
|
|
model_management.load_model_gpu(model_patcher)
|
|
|
|
return (model_patcher, clip, vae, clipvision)
|
|
|
|
|
|
def load_unet(unet_path): #load unet in diffusers format
|
|
sd = utils.load_torch_file(unet_path)
|
|
parameters = calculate_parameters(sd, "")
|
|
fp16 = model_management.should_use_fp16(model_params=parameters)
|
|
|
|
model_config = model_detection.model_config_from_diffusers_unet(sd, fp16)
|
|
if model_config is None:
|
|
print("ERROR UNSUPPORTED UNET", unet_path)
|
|
return None
|
|
|
|
diffusers_keys = utils.unet_to_diffusers(model_config.unet_config)
|
|
|
|
new_sd = {}
|
|
for k in diffusers_keys:
|
|
if k in sd:
|
|
new_sd[diffusers_keys[k]] = sd.pop(k)
|
|
else:
|
|
print(diffusers_keys[k], k)
|
|
offload_device = model_management.unet_offload_device()
|
|
model = model_config.get_model(new_sd, "")
|
|
model = model.to(offload_device)
|
|
model.load_model_weights(new_sd, "")
|
|
return ModelPatcher(model, load_device=model_management.get_torch_device(), offload_device=offload_device)
|
|
|
|
def save_checkpoint(output_path, model, clip, vae, metadata=None):
|
|
model_management.load_models_gpu([model, clip.load_model()])
|
|
sd = model.model.state_dict_for_saving(clip.get_sd(), vae.get_sd())
|
|
utils.save_torch_file(sd, output_path, metadata=metadata)
|