EdgeDiffusion_distilled / pruned_rebuild.py
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#!/usr/bin/env python3
"""
从 safetensors + config.json 精确重建剪枝后的 UNet 结构。
关键思路:
不使用 align_tensor 填充零值(会污染已学习的权重)。
而是先把标准 UNet 里的每个 Conv2d/Linear 替换为 safetensors
中实际形状对应的新模块,再用 load_state_dict 加载。
"""
import os
import sys
import json
import torch
import torch.nn as nn
from safetensors.torch import load_file
sys.path.insert(0, '/home/ubuntu')
os.environ.update({
'HF_HOME': '/opt/dlami/nvme/hf_cache',
'TRANSFORMERS_CACHE': '/opt/dlami/nvme/hf_cache',
'TMPDIR': '/opt/dlami/nvme/tmp'
})
# ---------------------------------------------------------------------------
# 核心:从 safetensors + config.json 重建剪枝模型
# ---------------------------------------------------------------------------
def _get_parent_and_attr(model: nn.Module, dotted_name: str):
"""返回 (parent_module, attr_name),用于 setattr 替换子模块。"""
parts = dotted_name.split('.')
obj = model
for p in parts[:-1]:
obj = getattr(obj, p)
return obj, parts[-1]
def _find_num_groups(original_num_groups: int, new_num_channels: int) -> int:
"""找到能整除 new_num_channels 的最大 num_groups(不超过 original_num_groups)。"""
ng = original_num_groups
while ng > 1:
if new_num_channels % ng == 0:
return ng
ng //= 2
return 1
def _replace_layers_to_match_shapes(unet: nn.Module, st: dict) -> int:
"""
遍历 unet 所有 Conv2d / Linear / GroupNorm,
若 safetensors 中对应权重形状不同,则替换为正确尺寸的新模块。
返回替换的层数量。
"""
replaced = 0
for name, module in list(unet.named_modules()):
weight_key = name + '.weight'
if weight_key not in st:
continue
w = st[weight_key]
has_bias = (name + '.bias') in st
if isinstance(module, nn.Conv2d):
out_c, in_c = w.shape[0], w.shape[1]
if out_c != module.out_channels or in_c != module.in_channels:
new_mod = nn.Conv2d(
in_c, out_c,
kernel_size=module.kernel_size,
stride=module.stride,
padding=module.padding,
dilation=module.dilation,
groups=module.groups,
bias=has_bias,
)
parent, attr = _get_parent_and_attr(unet, name)
setattr(parent, attr, new_mod)
replaced += 1
elif isinstance(module, nn.Linear):
out_f, in_f = w.shape[0], w.shape[1]
if out_f != module.out_features or in_f != module.in_features:
new_mod = nn.Linear(in_f, out_f, bias=has_bias)
parent, attr = _get_parent_and_attr(unet, name)
setattr(parent, attr, new_mod)
replaced += 1
elif isinstance(module, nn.GroupNorm):
new_num_ch = w.shape[0]
if new_num_ch != module.num_channels:
ng = _find_num_groups(module.num_groups, new_num_ch)
new_mod = nn.GroupNorm(ng, new_num_ch, eps=module.eps, affine=module.affine)
parent, attr = _get_parent_and_attr(unet, name)
setattr(parent, attr, new_mod)
replaced += 1
elif isinstance(module, nn.LayerNorm):
# transformer_blocks.*.norm1/2/3 使用 LayerNorm,normalized_shape=[dim]
new_dim = w.shape[0]
if list(module.normalized_shape) != [new_dim]:
new_mod = nn.LayerNorm(new_dim, eps=module.eps, elementwise_affine=module.elementwise_affine)
parent, attr = _get_parent_and_attr(unet, name)
setattr(parent, attr, new_mod)
replaced += 1
return replaced
def _fix_internal_attrs(unet: nn.Module):
"""
更新 diffusers UNet 内部依赖于通道数的属性
(Upsample2D.channels、ResnetBlock2D.in_channels 等)。
"""
for name, module in unet.named_modules():
if hasattr(module, 'channels') and hasattr(module, 'conv'):
if hasattr(module.conv, 'in_channels'):
module.channels = module.conv.in_channels
if hasattr(module, 'in_channels') and hasattr(module, 'conv1'):
if hasattr(module.conv1, 'in_channels'):
module.in_channels = module.conv1.in_channels
if hasattr(module, 'out_channels') and hasattr(module, 'conv2'):
if hasattr(module.conv2, 'out_channels'):
module.out_channels = module.conv2.out_channels
if hasattr(module, 'to_q') and hasattr(module, 'inner_dim'):
if hasattr(module.to_q, 'weight'):
new_inner_dim = module.to_q.weight.shape[0]
old_inner_dim = module.inner_dim
module.inner_dim = new_inner_dim
if hasattr(module, 'inner_kv_dim'):
module.inner_kv_dim = new_inner_dim
# Update heads: head_dim is invariant, recompute heads count
if hasattr(module, 'heads') and module.heads > 0 and old_inner_dim > 0:
head_dim = old_inner_dim // module.heads
if head_dim > 0 and new_inner_dim % head_dim == 0:
module.heads = new_inner_dim // head_dim
if hasattr(module, 'sliceable_head_dim'):
module.sliceable_head_dim = module.heads
def create_unet_from_safetensors(safetensors_path: str, config_path: str = None) -> nn.Module:
"""
从 safetensors + config.json 精确重建剪枝后的 UNet。
流程:
1. 加载 safetensors(获取实际张量形状)
2. 从 config_path 中的 model_config 构建标准 UNet
3. 将形状不匹配的 Conv2d/Linear 替换为正确尺寸
4. load_state_dict
5. 修复内部属性
"""
from diffusers import UNet2DConditionModel
# 1. 加载 safetensors
print(f"加载 safetensors: {safetensors_path}")
st = load_file(safetensors_path)
total_params = sum(v.numel() for v in st.values())
print(f" safetensors 共 {len(st)} 个张量,{total_params/1e6:.1f}M 参数")
# 2. 读取 model_config
if config_path is None:
config_path = safetensors_path.replace('.safetensors', '.config.json')
model_config = None
if os.path.exists(config_path):
with open(config_path, 'r', encoding='utf-8') as f:
meta = json.load(f)
model_config = meta.get('model_config')
print(f" 读取配置: {config_path}")
# 回退到默认 SD 1.5 配置
if not model_config or not isinstance(model_config, dict):
print(" ⚠️ 未找到 model_config,使用 SD 1.5 默认配置")
model_config = {
"sample_size": 64,
"in_channels": 4,
"out_channels": 4,
"layers_per_block": 2,
"block_out_channels": [320, 640, 1280, 1280],
"down_block_types": [
"CrossAttnDownBlock2D", "CrossAttnDownBlock2D",
"CrossAttnDownBlock2D", "DownBlock2D"
],
"up_block_types": [
"UpBlock2D", "CrossAttnUpBlock2D",
"CrossAttnUpBlock2D", "CrossAttnUpBlock2D"
],
"cross_attention_dim": 768,
"attention_head_dim": 8,
}
# 3. 构建标准 UNet
print(" 构建标准 UNet 架构...")
unet = UNet2DConditionModel(**model_config)
# 4. 将形状不匹配的层替换为正确尺寸
replaced = _replace_layers_to_match_shapes(unet, st)
print(f" 替换了 {replaced} 个形状不匹配的层")
# 5. 加载 safetensors 权重
missing, unexpected = unet.load_state_dict(st, strict=False)
if missing:
print(f" ⚠️ 缺失键: {len(missing)} 个(例如 {missing[:3]})")
if unexpected:
print(f" ⚠️ 多余键: {len(unexpected)} 个")
# 6. 修复内部属性
_fix_internal_attrs(unet)
param_count = sum(p.numel() for p in unet.parameters())
print(f" ✅ 重建完成,参数量: {param_count/1e6:.1f}M")
return unet
# ---------------------------------------------------------------------------
# 验证:前向推理测试
# ---------------------------------------------------------------------------
def verify_forward(unet: nn.Module, device: str = 'cpu') -> bool:
"""对重建的模型跑一次前向推理,验证输出形状正确。"""
unet = unet.to(device).eval()
with torch.no_grad():
sample = torch.randn(1, 4, 64, 64, device=device)
timestep = torch.tensor([1], device=device)
enc_hs = torch.randn(1, 77, 768, device=device)
try:
out = unet(sample, timestep, encoder_hidden_states=enc_hs)
assert tuple(out.sample.shape) == (1, 4, 64, 64), \
f"输出形状异常: {out.sample.shape}"
print(f" 前向推理 OK,输出形状: {tuple(out.sample.shape)}")
return True
except Exception as e:
print(f" ❌ 前向推理失败: {e}")
import traceback
traceback.print_exc()
return False
# ---------------------------------------------------------------------------
# 主入口
# ---------------------------------------------------------------------------
def main():
safetensors_path = os.environ.get(
'PRUNED_SAFETENS_PATH',
'/opt/dlami/nvme/prune_outputs/taylor_sp_unet_v2.safetensors'
)
config_path = safetensors_path.replace('.safetensors', '.config.json')
print("=" * 60)
print("从 safetensors + config.json 重建剪枝 UNet")
print("=" * 60)
unet = create_unet_from_safetensors(safetensors_path, config_path)
ok = verify_forward(unet)
if ok:
print("\n✅ 模型重建成功,可直接用于推理/蒸馏!")
else:
print("\n❌ 模型重建后前向推理失败,请检查配置")
if __name__ == '__main__':
main()