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import torch
import torch.nn as nn
from methods.elasticdnn.api.algs.fm_lora import ElasticDNN_FMLoRAAlg
from methods.elasticdnn.api.algs.md_pretraining_wo_fbs import ElasticDNN_MDPretrainingWoFBSAlg
from methods.elasticdnn.model.base import ElasticDNNUtil
from methods.elasticdnn.pipeline.offline.fm_lora.base import FMLoRA_Util
from glip import ElasticGLIPUtil, FMLoRA_GLIP_Util, FM_to_MD_GLIP_Util, ElasticDNN_OfflineMMDetFMModel, ElasticDNN_OfflineMMDetMDModel
from methods.elasticdnn.pipeline.offline.fm_to_md.base import FM_to_MD_Util
from methods.elasticdnn.pipeline.offline.fm_to_md.vit import FM_to_MD_ViT_Util
from methods.elasticdnn.model.vit import ElasticViTUtil
from methods.elasticdnn.api.algs.md_pretraining_index_v2_train_index_and_md import ElasticDNN_MDPretrainingIndexAlg
from utils.dl.common.model import LayerActivation3, get_module, get_parameter
from utils.common.exp import save_models_dict_for_init, get_res_save_dir
from data import build_scenario
import torch.nn.functional as F
from maskrcnn_benchmark.structures.bounding_box import BoxList
import os
from utils.dl.common.loss import CrossEntropyLossSoft
from new_impl.cv.feat_align.main_glip import OnlineFeatAlignModel, FeatAlignAlg
import tqdm
from new_impl.cv.feat_align.mmd import mmd_rbf
from new_impl.cv.utils.elasticfm_da import init_online_model, elasticfm_da
from new_impl.cv.elasticdnn.api.online_model_v2 import ElasticDNN_OnlineModel
from utils.common.log import logger
os.environ['TOKENIZERS_PARALLELISM'] = 'true'
torch.cuda.set_device(0)
device = 'cuda'
app_name = 'cls'
sd_sparsity = 0.8
settings = {
'involve_fm': True
}
scenario = build_scenario(
source_datasets_name=['MM-COCO2017'],
target_datasets_order=['MM-CityscapesDet', 'MM-GTA5Det'] * 10,
da_mode='close_set',
data_dirs={
'MM-COCO2017': '/data/zql/datasets/coco2017',
'MM-CityscapesDet': '/data/zql/datasets/cityscape',
'MM-GTA5Det': '/data/zql/datasets/GTA-ls-copy/GTA5',
},
)
class ElasticDNN_DetOnlineModel(ElasticDNN_OnlineModel):
def get_accuracy(self, test_loader, *args, **kwargs):
acc = 0
sample_num = 0
self.to_eval_mode()
with torch.no_grad():
pbar = tqdm.tqdm(enumerate(test_loader), total=len(test_loader), dynamic_ncols=True, leave=False)
for batch_index, (x, y) in pbar:
x, y = x.to(self.device), y.to(self.device)
output = self.infer(x)
pred = F.softmax(output, dim=1).argmax(dim=1)
correct = torch.eq(pred, y).sum().item()
acc += correct
sample_num += len(y)
pbar.set_description(f'cur_batch_total: {len(y)}, cur_batch_correct: {correct}, '
f'cur_batch_acc: {(correct / len(y)):.4f}')
acc /= sample_num
return acc
def get_elastic_dnn_util(self) -> ElasticDNNUtil:
return ElasticGLIPUtil()
def get_fm_matched_param_of_md_param(self, md_param_name):
# only between qkv.weight, norm.weight/bias
self_param_name = md_param_name
fm = self.models_dict['fm']
# if any([k in self_param_name for k in ['fbs', 'cls_token', 'pos_embed']]):
# return None
# p = get_parameter(self.models_dict['md'], self_param_name)
# if p.dim() == 0:
# return None
# elif p.dim() == 1 and 'norm' in self_param_name and 'weight' in self_param_name:
# return get_parameter(fm, self_param_name)
if any([k in self_param_name for k in ['fbs', 'cls_token', 'pos_embed']]):
return None
p = get_parameter(self.models_dict['md'], self_param_name)
if p.dim() == 0:
return None
# elif p.dim() == 1 and 'layernorm' in self_param_name and 'weight' in self_param_name:
# return get_parameter(fm, self_param_name)
# 1. xx.qkv.to_qkv.yy to xx.qkv.qkv.aa and xx.qkv.abs.zz
# if 'qkv.weight' in self_param_name:
# ss = self_param_name.split('.')
# fm_qkv_name = '.'.join(ss[0: -1]) + '.qkv'
# fm_qkv = get_module(fm, fm_qkv_name)
# fm_abs_name = '.'.join(ss[0: -1]) + '.abs'
# fm_abs = get_module(fm, fm_abs_name)
# # NOTE: unrecoverable operation! multiply LoRA parameters to allow it being updated in update_fm_param()
# # TODO: if fm will be used for inference, _mul_lora_weight will not be applied!
# if not hasattr(fm_abs, '_mul_lora_weight'):
# logger.debug(f'set _mul_lora_weight in {fm_abs_name}')
# setattr(fm_abs, '_mul_lora_weight',
# nn.Parameter(torch.cat([(_abs[0].weight.T @ _abs[1].weight.T).T for _abs in fm_abs], dim=0)))
# return torch.cat([
# fm_qkv.weight.data, # task-agnositc params
# fm_abs._mul_lora_weight.data # task-specific params (LoRA)
# ], dim=0)
# # elif 'to_qkv.bias' in self_param_name:
# # ss = self_param_name.split('.')
# # fm_qkv_name = '.'.join(ss[0: -2]) + '.qkv.bias'
# # return get_parameter(fm, fm_qkv_name)
# elif 'mlp.fc1' in self_param_name and 'weight' in self_param_name:
# fm_param_name = self_param_name.replace('.linear', '')
# return get_parameter(fm, fm_param_name)
# elif 'mlp.fc2' in self_param_name and 'weight' in self_param_name:
# fm_param_name = self_param_name
# return get_parameter(fm, fm_param_name)
# else:
# # return get_parameter(fm, self_param_name)
# return None
if ('attn.qkv' in self_param_name or \
'attn.v_proj' in self_param_name or 'attn.l_proj' in self_param_name or 'attn.values_v_proj' in self_param_name or 'attn.values_l_proj' in self_param_name) and ('weight' in self_param_name):
ss = self_param_name.split('.')
fm_qkv_name = '.'.join(ss[0: -1]) + '.fc'
fm_qkv = get_module(fm, fm_qkv_name)
fm_abs_name = '.'.join(ss[0: -1]) + '.ab'
fm_abs = get_module(fm, fm_abs_name)
if not hasattr(fm_abs, '_mul_lora_weight'):
logger.debug(f'set _mul_lora_weight in {fm_abs_name}')
setattr(fm_abs, '_mul_lora_weight',
nn.Parameter(fm_abs[1].weight @ fm_abs[0].weight))
return torch.cat([
fm_qkv.weight.data, # task-agnositc params
fm_abs._mul_lora_weight.data # task-specific params (LoRA)
], dim=0)
elif ('attn.qkv' in self_param_name or \
'attn.v_proj' in self_param_name or 'attn.l_proj' in self_param_name or 'attn.values_v_proj' in self_param_name or 'attn.values_l_proj' in self_param_name) and ('bias' in self_param_name):
ss = self_param_name.split('.')
fm_qkv_name = '.'.join(ss[0: -1]) + '.fc.bias'
return get_parameter(fm, fm_qkv_name)
elif ('query' in self_param_name or 'key' in self_param_name or \
'value' in self_param_name) and ('weight' in self_param_name):
ss = self_param_name.split('.')
fm_qkv_name = '.'.join(ss[0: -1]) + '.fc'
fm_qkv = get_module(fm, fm_qkv_name)
fm_abs_name = '.'.join(ss[0: -1]) + '.ab'
fm_abs = get_module(fm, fm_abs_name)
if not hasattr(fm_abs, '_mul_lora_weight'):
logger.debug(f'set _mul_lora_weight in {fm_abs_name}')
setattr(fm_abs, '_mul_lora_weight',
nn.Parameter(fm_abs[1].weight @ fm_abs[0].weight))
return torch.cat([
fm_qkv.weight.data, # task-agnositc params
fm_abs._mul_lora_weight.data # task-specific params (LoRA)
], dim=0)
elif ('query' in self_param_name or 'key' in self_param_name or \
'value' in self_param_name) and ('bias' in self_param_name):
ss = self_param_name.split('.')
fm_qkv_name = '.'.join(ss[0: -1]) + '.fc.bias'
return get_parameter(fm, fm_qkv_name)
elif 'mlp.fc1' in self_param_name and 'weight' in self_param_name:
fm_param_name = self_param_name.replace('.linear', '')
return get_parameter(fm, fm_param_name)
# elif 'mlp.fc2' in self_param_name and 'weight' in self_param_name:
# fm_param_name = self_param_name.replace('.linear', '')
# return get_parameter(fm, fm_param_name)
else:
#return get_parameter(fm, self_param_name)
return None
def update_fm_param(self, md_param_name, cal_new_fm_param_by_md_param):
if not ('attn.qkv.weight' in md_param_name or 'attn.v_proj.weight' in md_param_name or \
'attn.l_proj.weight' in md_param_name or 'attn.values_v_proj.weight' in md_param_name or \
'attn.values_l_proj.weight' in md_param_name or 'query.weight' in md_param_name or 'key.weight' in md_param_name or \
'value.weight' in md_param_name):
matched_fm_param_ref = self.get_fm_matched_param_of_md_param(md_param_name)
matched_fm_param_ref.copy_(cal_new_fm_param_by_md_param)
else:
new_fm_attn_weight, new_fm_lora_weight = torch.chunk(cal_new_fm_param_by_md_param, 2, 0)
ss = md_param_name.split('.')
fm = self.models_dict['fm']
# update task-agnostic parameters
fm_qkv_name = '.'.join(ss[0: -1]) + '.fc'
fm_qkv = get_module(fm, fm_qkv_name)
fm_qkv.weight.data.copy_(new_fm_attn_weight)
# update task-specific parameters
fm_abs_name = '.'.join(ss[0: -1]) + '.ab'
fm_abs = get_module(fm, fm_abs_name)
fm_abs._mul_lora_weight.data.copy_(new_fm_lora_weight) # TODO: this will not be applied in inference!
def get_md_matched_param_of_fm_param(self, fm_param_name):
return super().get_md_matched_param_of_fm_param(fm_param_name)
def get_md_matched_param_of_sd_param(self, sd_param_name):
# raise NotImplementedError
# only between qkv.weight, norm.weight/bias
self_param_name = sd_param_name
md = self.models_dict['md']
if any([k in self_param_name for k in ['fbs', 'ab', 'embeddings']]):
return None
p = get_parameter(self.models_dict['sd'], self_param_name)
if p.dim() == 0:
return None
elif p.dim() == 1 and ('LayerNorm' in self_param_name or 'layernorm' in self_param_name) and 'weight' in self_param_name:
return get_parameter(md, self_param_name)
# 1. xx.qkv.to_qkv.yy to xx.qkv.qkv.aa and xx.qkv.abs.zz
if ('attn.qkv' in sd_param_name or 'attn.v_proj' in sd_param_name or \
'attn.l_proj' in sd_param_name or 'attn.values_v_proj' in sd_param_name or \
'attn.values_l_proj' in sd_param_name or 'query' in sd_param_name or 'key' in sd_param_name or \
'value' in sd_param_name) and ('weight' in self_param_name):
return get_parameter(md, self_param_name) # NOTE: no fbs in qkv!
# elif 'to_qkv.bias' in self_param_name:
# ss = self_param_name.split('.')
# fm_qkv_name = '.'.join(ss[0: -2]) + '.qkv.bias'
# return get_parameter(fm, fm_qkv_name)
elif 'mlp.fc1.0.weight' in self_param_name:
fm_param_name = '.'.join(self_param_name.split('.')[0: -2]) + '.linear.weight'
return get_parameter(md, fm_param_name)
elif 'mlp.fc2' in self_param_name and 'weight' in self_param_name:
fm_param_name = self_param_name
return get_parameter(md, fm_param_name)
else:
# return get_parameter(fm, self_param_name)
return None
def get_task_head_params(self):
head = get_module(self.models_dict['sd'], 'classifier')
return list(head.parameters())
class DetOnlineFeatAlignModel(OnlineFeatAlignModel):
def get_trained_params(self): # TODO: elastic fm only train a part of params
#qkv_and_norm_params = [p for n, p in self.models_dict['main'].named_parameters() if 'attention.attention.projection_query' in n or 'attention.attention.projection_key' in n or 'attention.attention.projection_value' in n or 'intermediate.dense' in n or 'output.dense' in n]
qkv_and_norm_params = [p for n, p in self.models_dict['main'].named_parameters()]
return qkv_and_norm_params
def get_feature_hook(self):
return LayerActivation3(get_module(self.models_dict['main'], 'model.rpn'), False, self.device)
def forward_to_get_task_loss(self, x, y):
loss_dict = self.infer(x)
losses = sum(loss for loss in loss_dict.values())
# print(losses)
return losses
def get_mmd_loss(self, f1, f2):
# f1 = f1.view(f1.shape[0], -1)
# f2 = f2.view(f2.shape[0], -1)
return mmd_rbf(f1, f2)
def infer(self, x, *args, **kwargs):
return self.models_dict['main'](**x)
def get_accuracy(self, test_loader, *args, **kwargs):
# print('DeeplabV3: start test acc')
_d = test_loader.dataset
imgsz = _d.cocods.img_size
cls_num = len(_d.cocods.class_ids)
# num_classes = len(_d.cls_names)
from data import build_dataloader
if _d.__class__.__name__ == 'MergedDataset':
# print('\neval on merged datasets')
datasets = _d.datasets
if self.collate_fn is None:
test_loaders = [build_dataloader(d, test_loader.batch_size, test_loader.num_workers, False, None, collate_fn=None) for d in datasets]
else:
test_loaders = [build_dataloader(d, test_loader.batch_size, test_loader.num_workers, False, None, collate_fn=self.collate_fn) for d in datasets]
accs = [self.get_accuracy(loader) for loader in test_loaders]
# print(accs)
return sum(accs) / len(accs)
# print('dataset len', len(test_loader.dataset))
model = self.models_dict['main']
device = self.device
model.eval()
# print('# classes', model.num_classes)
model = model.to(device)
from evaluator import COCOEvaluator, MMCOCODecoder
from utils.common.others import HiddenPrints
with torch.no_grad():
with HiddenPrints():
evaluator = COCOEvaluator(
dataloader=test_loader,
img_size=imgsz,
confthre=0.01,
nmsthre=0.65,
num_classes=cls_num,
testdev=False
)
res = evaluator.evaluate(model, False, False, decoder=MMCOCODecoder)
map50 = res[1]
# print('eval info', res[-1])
return map50
#from new_impl.cv.model import ElasticDNN_ClsOnlineModel
elasticfm_model = ElasticDNN_DetOnlineModel('det', init_online_model(
'new_impl/cv/glip/object_detection/results/det_md_w_fbs_index.py/20231201/999996-195158-results/models/fm_best.pt',
'new_impl/cv/glip/object_detection/results/det_md_w_fbs_index.py/20231201/999996-195158-results/models/md_best.pt',
'det', __file__
), device, {
'md_to_fm_alpha': 0.1,
'fm_to_md_alpha': 0.1
})
from glip import glip_model, build_transform, run_ner, collect_mm_fn
cfg_path = 'new_impl/cv/glip/object_detection/pretrained_model/glip_Swin_T_O365_GoldG.yaml'
model_path = 'new_impl/cv/glip/object_detection/pretrained_model/glip_tiny_model_o365_goldg_cc_sbu.pth'
config, _ = glip_model(cfg_path, model_path)
transform = build_transform(config, None)
da_alg = FeatAlignAlg
from utils.dl.common.lr_scheduler import get_linear_schedule_with_warmup
#from new_impl.cv.model import ClsOnlineFeatAlignModel
da_model = DetOnlineFeatAlignModel
da_alg_hyp = {
'MM-GTA5Det': {
'train_batch_size': 8,
'val_batch_size': 1,
'num_workers': 8,
'optimizer': 'AdamW',
'optimizer_args': {'lr': 5e-7, 'betas': [0.9, 0.999], 'weight_decay': 0.01},
'scheduler': '',
'scheduler_args': {},
'num_iters': 100,
'val_freq': 20,
'sd_sparsity':0.3,
'feat_align_loss_weight': 0.0,
'transform':transform
},
'MM-CityscapesDet': {
'train_batch_size': 8,
'val_batch_size': 1,
'num_workers': 8,
'optimizer': 'AdamW',
'optimizer_args': {'lr': 5e-7, 'betas': [0.9, 0.999], 'weight_decay': 0.01},
'scheduler': '',
'scheduler_args': {},
'num_iters': 100,
'val_freq': 20,
'sd_sparsity':0.3,
'feat_align_loss_weight': 0.0,
'transform':transform
},
}
elasticfm_da(
[app_name],
[scenario],
[elasticfm_model],
[da_alg],
[da_alg_hyp],
[da_model],
device,
settings,
__file__,
"results",
collate_fn=collect_mm_fn
) |