blend LoRAs into a valid ONNX UNet (#213)
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@ -1,15 +1,16 @@
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from itertools import groupby
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from logging import getLogger
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from os import path
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from sys import argv
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from typing import List, Tuple
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from typing import List, Literal, Tuple
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import onnx.checker
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import torch
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from numpy import ndarray
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from onnx import ModelProto, TensorProto, helper, load, numpy_helper, save_model
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from safetensors import safe_open
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from onnx import TensorProto, load, numpy_helper
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from onnx.checker import check_model
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from onnx.external_data_helper import convert_model_to_external_data, write_external_data_tensors
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from safetensors.torch import load_file
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from ..utils import ConversionContext
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# from ..utils import ConversionContext
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logger = getLogger(__name__)
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@ -19,194 +20,117 @@ logger = getLogger(__name__)
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###
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def load_lora(filename: str):
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model = load(filename)
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for weight in model.graph.initializer:
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# print(weight.name, numpy_helper.to_array(weight).shape)
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pass
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return model
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def blend_loras(
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base: ModelProto, weights: List[ModelProto], alphas: List[float]
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) -> List[Tuple[TensorProto, ndarray]]:
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total = 1 + sum(alphas)
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results = []
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for base_node in base.graph.initializer:
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logger.info("blending initializer node %s", base_node.name)
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base_weights = numpy_helper.to_array(base_node).copy()
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for weight, alpha in zip(weights, alphas):
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weight_node = next(
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iter([f for f in weight.graph.initializer if f.name == base_node.name]),
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None,
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)
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if weight_node is not None:
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base_weights += numpy_helper.to_array(weight_node) * alpha
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else:
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logger.warning(
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"missing weights: %s in %s", base_node.name, weight.doc_string
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)
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results.append((base_node, base_weights / total))
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return results
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def convert_diffusion_lora(context: ConversionContext, component: str):
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lora_weights = [
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f"diffusion-lora-jack/{component}/model.onnx",
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f"diffusion-lora-taters/{component}/model.onnx",
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]
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base = load_lora(f"stable-diffusion-onnx-v1-5/{component}/model.onnx")
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weights = [load_lora(f) for f in lora_weights]
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alphas = [1 / len(weights)] * len(weights)
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logger.info("blending LoRAs with alphas: %s, %s", weights, alphas)
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result = blend_loras(base, weights, alphas)
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logger.info("blended result keys: %s", len(result))
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del weights
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del alphas
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tensors = []
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for node, tensor in result:
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logger.info("remaking tensor for %s", node.name)
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tensors.append(helper.make_tensor(node.name, node.data_type, node.dims, tensor))
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del result
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graph = helper.make_graph(
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base.graph.node,
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base.graph.name,
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base.graph.input,
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base.graph.output,
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tensors,
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base.graph.doc_string,
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base.graph.value_info,
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base.graph.sparse_initializer,
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)
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model = helper.make_model(graph)
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del model.opset_import[:]
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opset = model.opset_import.add()
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opset.version = 14
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onnx_path = path.join(context.cache_path, f"lora-{component}.onnx")
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tensor_path = path.join(context.cache_path, f"lora-{component}.tensors")
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save_model(
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model,
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onnx_path,
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save_as_external_data=True,
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all_tensors_to_one_file=True,
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location=tensor_path,
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)
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logger.info(
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"saved model to %s and tensors to %s",
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onnx_path,
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tensor_path,
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)
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def fix_key(key: str):
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def fix_name(key: str):
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# lora_unet_up_blocks_3_attentions_2_transformer_blocks_0_attn2_to_out_0.lora_down.weight
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# lora, unet, up_block.3.attentions.2.transformer_blocks.0.attn2.to_out.0
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return key.replace(".", "_")
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def merge_lora():
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base_name = argv[1]
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lora_name = argv[2]
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def merge_lora(base_name: str, lora_names: str, dest_path: str, dest_type: Literal["text_encoder", "unet"]):
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base_model = load(base_name)
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lora_model = safe_open(lora_name, framework="pt")
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lora_models = [load_file(name) for name in lora_names.split(",")]
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lora_nodes = []
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for base_node in base_model.graph.initializer:
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base_key = fix_key(base_node.name)
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lora_nodes: List[Tuple[int, TensorProto]] = []
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for key in lora_model.keys():
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if "lora_down" in key:
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lora_key = key[: key.index("lora_down")].replace("lora_unet_", "")
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if lora_key.startswith(base_key):
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print("down for key:", base_key, lora_key)
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fixed_initialized_names = [fix_name(node.name) for node in base_model.graph.initializer]
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logger.info("fixed initializer names: %s", fixed_initialized_names)
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up_key = key.replace("lora_down", "lora_up")
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alpha_key = key[: key.index("lora_down")] + "alpha"
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if dest_type == "text_encoder":
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lora_prefix = "lora_te_"
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elif dest_type == "unet":
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lora_prefix = "lora_unet_"
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else:
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lora_prefix = "lora_"
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down_weight = lora_model.get_tensor(key).to(dtype=torch.float32)
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up_weight = lora_model.get_tensor(up_key).to(dtype=torch.float32)
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for i in range(len(fixed_initialized_names)):
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base_key = fixed_initialized_names[i]
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base_node = base_model.graph.initializer[i]
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dim = down_weight.size()[0]
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alpha = lora_model.get(alpha_key).numpy() or dim
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updates = []
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for lora_model in lora_models:
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for key in lora_model.keys():
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if ".lora_down" in key:
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original_key = key[: key.index(".lora_down")].replace(lora_prefix, "")
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bias_key = original_key + "_bias"
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weight_key = original_key + "_weight"
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np_vals = numpy_helper.to_array(base_node)
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print(np_vals.shape, up_weight.shape, down_weight.shape)
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if bias_key.startswith(base_key):
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print("found bias key:", base_key, bias_key)
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squoze = (
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(
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up_weight.squeeze(3).squeeze(2)
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@ down_weight.squeeze(3).squeeze(2)
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)
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.unsqueeze(2)
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.unsqueeze(3)
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)
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print(squoze.shape)
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if weight_key == base_key:
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print("down for key:", base_key, weight_key)
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np_vals = np_vals + (alpha * squoze.numpy())
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up_key = key.replace("lora_down", "lora_up")
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alpha_key = key[: key.index("lora_down")] + "alpha"
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try:
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if len(up_weight.size()) == 2:
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squoze = up_weight @ down_weight
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print(squoze.shape)
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np_vals = np_vals + (squoze.numpy() * (alpha / dim))
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else:
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squoze = (
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(
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up_weight.squeeze(3).squeeze(2)
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@ down_weight.squeeze(3).squeeze(2)
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down_weight = lora_model[key].to(dtype=torch.float32)
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up_weight = lora_model[up_key].to(dtype=torch.float32)
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dim = down_weight.size()[0]
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alpha = lora_model.get(alpha_key).numpy() or dim
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np_vals = numpy_helper.to_array(base_node)
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print("before shape", np_vals.shape, up_weight.shape, down_weight.shape)
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try:
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if len(up_weight.size()) == 2:
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squoze = up_weight @ down_weight
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print(squoze.shape)
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np_vals = np_vals + (squoze.numpy() * (alpha / dim))
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else:
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squoze = (
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(
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up_weight.squeeze(3).squeeze(2)
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@ down_weight.squeeze(3).squeeze(2)
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)
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.unsqueeze(2)
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.unsqueeze(3)
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)
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.unsqueeze(2)
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.unsqueeze(3)
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)
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print(squoze.shape)
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np_vals = np_vals + (alpha * squoze.numpy())
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print(squoze.shape)
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np_vals = np_vals + (alpha * squoze.numpy())
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print("after shape", np_vals.shape)
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# retensor = numpy_helper.from_array(np_vals, base_node.name)
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retensor = helper.make_tensor(
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base_node.name,
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base_node.data_type,
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base_node.dim,
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np_vals,
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raw=True,
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)
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print(retensor)
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updates.append(np_vals)
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# TypeError: does not support assignment
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lora_nodes.append(retensor)
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break
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except Exception as e:
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logger.exception("error blending weights with key %s", weight_key)
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break
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except Exception as e:
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print(e)
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if len(updates) == 0:
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logger.debug("no lora found for key %s", base_key)
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else:
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# blend updates together and append to lora_nodes
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logger.info("blending %s updated weights for key %s", len(updates), base_key)
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if retensor is None:
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print("no lora found for key", base_key)
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lora_nodes.append(base_node)
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# TODO: allow individual alphas
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np_vals = sum(updates) / len(updates)
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print(len(lora_nodes), len(base_model.graph.initializer))
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del base_model.graph.initializer[:]
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base_model.graph.initializer.extend(lora_nodes)
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retensor = numpy_helper.from_array(np_vals, base_node.name)
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logger.info("created new tensor with %s bytes", len(retensor.raw_data))
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onnx.checker.check_model(base_model)
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# TypeError: does not support assignment
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lora_nodes.append((i, retensor))
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logger.info("updating %s of %s nodes", len(lora_nodes), len(base_model.graph.initializer))
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for idx, node in lora_nodes:
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del base_model.graph.initializer[idx]
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base_model.graph.initializer.insert(idx, node)
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# save it back to disk
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# TODO: save to memory instead
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convert_model_to_external_data(base_model, all_tensors_to_one_file=True, location=f"lora-{dest_type}-external.pb")
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bare_model = write_external_data_tensors(base_model, dest_path)
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dest_file = path.join(dest_path, f"lora-{dest_type}.onnx")
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with open(dest_file, "wb") as model_file:
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model_file.write(bare_model.SerializeToString())
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logger.info("model saved, checking...")
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check_model(dest_file)
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logger.info("model successfully exported")
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if __name__ == "__main__":
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context = ConversionContext.from_environ()
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convert_diffusion_lora(context, "unet")
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convert_diffusion_lora(context, "text_encoder")
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merge_lora(*argv[1:])
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