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| distributed init (rank 1): env://, gpu 1
| distributed init (rank 0): env://, gpu 0
[16:05:36.402158] job dir: /mnt/localDisk2/wgj/FSFM-3C/codespace/fsfm-3c/finuetune/cross_dataset_DfD
[16:05:36.402448] Namespace(aa='rand-m9-mstd0.5-inc1',
accum_iter=1,
apply_simple_augment=True,
batch_size=32,
blr=0.00025,
clip_grad=None,
color_jitter=None,
cutmix=1.0,
cutmix_minmax=None,
data_path='../../../datasets/finetune_datasets/deepfakes_detection/FaceForensics/32_frames/DS_FF++_all_cls/c23',
dataset_abs_path=None,
device='cuda',
dist_backend='nccl',
dist_eval=True,
dist_on_itp=False,
dist_url='env://',
distributed=True,
drop_path=0.1,
epochs=10,
eval=False,
finetune='../../pretrain/checkpoint/pretrained_models/VF2_ViT-B/checkpoint-400.pth',
global_pool=True,
gpu=0,
input_size=224,
layer_decay=0.65,
local_rank=0,
log_dir='./checkpoint/finetuned_models/FF++_c23_32frames',
lr=None,
min_lr=1e-06,
mixup=0.8,
mixup_mode='batch',
mixup_prob=1.0,
mixup_switch_prob=0.5,
model='vit_base_patch16',
nb_classes=2,
normalize_from_IMN=False,
num_workers=10,
output_dir='./checkpoint/finetuned_models/FF++_c23_32frames',
pin_mem=True,
rank=0,
recount=1,
remode='pixel',
reprob=0.25,
resplit=False,
resume='',
seed=0,
smoothing=0.1,
start_epoch=0,
train_split=None,
val_split=None,
warmup_epochs=5,
weight_decay=0.05,
world_size=2)
[16:05:37.133613] Dataset ImageFolder
    Number of datapoints: 184185
    Root location: ../../../datasets/finetune_datasets/deepfakes_detection/FaceForensics/32_frames/DS_FF++_all_cls/c23/train
    StandardTransform
Transform: Compose(
               RandomResizedCropAndInterpolation(size=(224, 224), scale=(0.08, 1.0), ratio=(0.75, 1.3333), interpolation=PIL.Image.BILINEAR)
               RandomHorizontalFlip(p=0.5)
               <timm.data.auto_augment.RandAugment object at 0x7f8e330bdfd0>
               ToTensor()
               Normalize(mean=tensor([0.5482, 0.4234, 0.3655]), std=tensor([0.2789, 0.2439, 0.2349]))
               <timm.data.random_erasing.RandomErasing object at 0x7f8e330d4050>
           )
[16:05:37.276832] Dataset ImageFolder
    Number of datapoints: 35796
    Root location: ../../../datasets/finetune_datasets/deepfakes_detection/FaceForensics/32_frames/DS_FF++_all_cls/c23/val
    StandardTransform
Transform: Compose(
               Resize(size=256, interpolation=bicubic, max_size=None, antialias=None)
               CenterCrop(size=(224, 224))
               ToTensor()
               Normalize(mean=[0.5482207536697388, 0.42340534925460815, 0.3654651641845703], std=[0.2789176106452942, 0.2438540756702423, 0.23493893444538116])
           )
[16:05:37.277033] len(dataset_train):184185
[16:05:37.277047] len(dataset_val):35796
[16:05:37.277117] Sampler_train = <torch.utils.data.distributed.DistributedSampler object at 0x7f8e331196d0>
[16:05:37.277197] [INFO]log dir: %./checkpoint/finetuned_models/FF++_c23_32frames
[16:05:37.279776] Mixup is activated!
[16:05:46.767281] Load pre-trained checkpoint from: ../../pretrain/checkpoint/pretrained_models/VF2_ViT-B/checkpoint-400.pth
[16:05:46.982690] _IncompatibleKeys(missing_keys=['head.weight', 'head.bias', 'fc_norm.weight', 'fc_norm.bias'], unexpected_keys=['mask_token', 'rep_decoder_pos_embed', 'decoder_pos_embed', 'norm.weight', 'norm.bias', 'projector.projection_head.0.weight', 'projector.projection_head.0.bias', 'projector.projection_head.1.weight', 'projector.projection_head.1.bias', 'projector.projection_head.3.weight', 'projector.projection_head.3.bias', 'predictor.projection_head.0.weight', 'predictor.projection_head.0.bias', 'predictor.projection_head.1.weight', 'predictor.projection_head.1.bias', 'predictor.projection_head.3.weight', 'predictor.projection_head.3.bias', 'rep_decoder_embed.weight', 'rep_decoder_embed.bias', 'rep_decoder_blocks.0.norm1.weight', 'rep_decoder_blocks.0.norm1.bias', 'rep_decoder_blocks.0.attn.qkv.weight', 'rep_decoder_blocks.0.attn.qkv.bias', 'rep_decoder_blocks.0.attn.proj.weight', 'rep_decoder_blocks.0.attn.proj.bias', 'rep_decoder_blocks.0.norm2.weight', 'rep_decoder_blocks.0.norm2.bias', 'rep_decoder_blocks.0.mlp.fc1.weight', 'rep_decoder_blocks.0.mlp.fc1.bias', 'rep_decoder_blocks.0.mlp.fc2.weight', 'rep_decoder_blocks.0.mlp.fc2.bias', 'rep_decoder_blocks.1.norm1.weight', 'rep_decoder_blocks.1.norm1.bias', 'rep_decoder_blocks.1.attn.qkv.weight', 'rep_decoder_blocks.1.attn.qkv.bias', 'rep_decoder_blocks.1.attn.proj.weight', 'rep_decoder_blocks.1.attn.proj.bias', 'rep_decoder_blocks.1.norm2.weight', 'rep_decoder_blocks.1.norm2.bias', 'rep_decoder_blocks.1.mlp.fc1.weight', 'rep_decoder_blocks.1.mlp.fc1.bias', 'rep_decoder_blocks.1.mlp.fc2.weight', 'rep_decoder_blocks.1.mlp.fc2.bias', 'rep_decoder_norm.weight', 'rep_decoder_norm.bias', 'rep_decoder_pred.weight', 'rep_decoder_pred.bias', 'decoder_embed.weight', 'decoder_embed.bias', 'decoder_blocks.0.norm1.weight', 'decoder_blocks.0.norm1.bias', 'decoder_blocks.0.attn.qkv.weight', 'decoder_blocks.0.attn.qkv.bias', 'decoder_blocks.0.attn.proj.weight', 'decoder_blocks.0.attn.proj.bias', 'decoder_blocks.0.norm2.weight', 'decoder_blocks.0.norm2.bias', 'decoder_blocks.0.mlp.fc1.weight', 'decoder_blocks.0.mlp.fc1.bias', 'decoder_blocks.0.mlp.fc2.weight', 'decoder_blocks.0.mlp.fc2.bias', 'decoder_blocks.1.norm1.weight', 'decoder_blocks.1.norm1.bias', 'decoder_blocks.1.attn.qkv.weight', 'decoder_blocks.1.attn.qkv.bias', 'decoder_blocks.1.attn.proj.weight', 'decoder_blocks.1.attn.proj.bias', 'decoder_blocks.1.norm2.weight', 'decoder_blocks.1.norm2.bias', 'decoder_blocks.1.mlp.fc1.weight', 'decoder_blocks.1.mlp.fc1.bias', 'decoder_blocks.1.mlp.fc2.weight', 'decoder_blocks.1.mlp.fc2.bias', 'decoder_blocks.2.norm1.weight', 'decoder_blocks.2.norm1.bias', 'decoder_blocks.2.attn.qkv.weight', 'decoder_blocks.2.attn.qkv.bias', 'decoder_blocks.2.attn.proj.weight', 'decoder_blocks.2.attn.proj.bias', 'decoder_blocks.2.norm2.weight', 'decoder_blocks.2.norm2.bias', 'decoder_blocks.2.mlp.fc1.weight', 'decoder_blocks.2.mlp.fc1.bias', 'decoder_blocks.2.mlp.fc2.weight', 'decoder_blocks.2.mlp.fc2.bias', 'decoder_blocks.3.norm1.weight', 'decoder_blocks.3.norm1.bias', 'decoder_blocks.3.attn.qkv.weight', 'decoder_blocks.3.attn.qkv.bias', 'decoder_blocks.3.attn.proj.weight', 'decoder_blocks.3.attn.proj.bias', 'decoder_blocks.3.norm2.weight', 'decoder_blocks.3.norm2.bias', 'decoder_blocks.3.mlp.fc1.weight', 'decoder_blocks.3.mlp.fc1.bias', 'decoder_blocks.3.mlp.fc2.weight', 'decoder_blocks.3.mlp.fc2.bias', 'decoder_blocks.4.norm1.weight', 'decoder_blocks.4.norm1.bias', 'decoder_blocks.4.attn.qkv.weight', 'decoder_blocks.4.attn.qkv.bias', 'decoder_blocks.4.attn.proj.weight', 'decoder_blocks.4.attn.proj.bias', 'decoder_blocks.4.norm2.weight', 'decoder_blocks.4.norm2.bias', 'decoder_blocks.4.mlp.fc1.weight', 'decoder_blocks.4.mlp.fc1.bias', 'decoder_blocks.4.mlp.fc2.weight', 'decoder_blocks.4.mlp.fc2.bias', 'decoder_blocks.5.norm1.weight', 'decoder_blocks.5.norm1.bias', 'decoder_blocks.5.attn.qkv.weight', 'decoder_blocks.5.attn.qkv.bias', 'decoder_blocks.5.attn.proj.weight', 'decoder_blocks.5.attn.proj.bias', 'decoder_blocks.5.norm2.weight', 'decoder_blocks.5.norm2.bias', 'decoder_blocks.5.mlp.fc1.weight', 'decoder_blocks.5.mlp.fc1.bias', 'decoder_blocks.5.mlp.fc2.weight', 'decoder_blocks.5.mlp.fc2.bias', 'decoder_blocks.6.norm1.weight', 'decoder_blocks.6.norm1.bias', 'decoder_blocks.6.attn.qkv.weight', 'decoder_blocks.6.attn.qkv.bias', 'decoder_blocks.6.attn.proj.weight', 'decoder_blocks.6.attn.proj.bias', 'decoder_blocks.6.norm2.weight', 'decoder_blocks.6.norm2.bias', 'decoder_blocks.6.mlp.fc1.weight', 'decoder_blocks.6.mlp.fc1.bias', 'decoder_blocks.6.mlp.fc2.weight', 'decoder_blocks.6.mlp.fc2.bias', 'decoder_blocks.7.norm1.weight', 'decoder_blocks.7.norm1.bias', 'decoder_blocks.7.attn.qkv.weight', 'decoder_blocks.7.attn.qkv.bias', 'decoder_blocks.7.attn.proj.weight', 'decoder_blocks.7.attn.proj.bias', 'decoder_blocks.7.norm2.weight', 'decoder_blocks.7.norm2.bias', 'decoder_blocks.7.mlp.fc1.weight', 'decoder_blocks.7.mlp.fc1.bias', 'decoder_blocks.7.mlp.fc2.weight', 'decoder_blocks.7.mlp.fc2.bias', 'decoder_norm.weight', 'decoder_norm.bias', 'decoder_pred.weight', 'decoder_pred.bias'])
[16:05:48.573224] ==========================================================================================
Layer (type:depth-idx)                   Output Shape              Param #
==========================================================================================
├─PatchEmbed: 1-1                        [-1, 196, 768]            --
|    └─Conv2d: 2-1                       [-1, 768, 14, 14]         590,592
├─Dropout: 1-2                           [-1, 197, 768]            --
├─ModuleList: 1                          []                        --
|    └─Block: 2-2                        [-1, 197, 768]            --
|    |    └─LayerNorm: 3-1               [-1, 197, 768]            1,536
|    |    └─Attention: 3-2               [-1, 197, 768]            2,362,368
|    |    └─Identity: 3-3                [-1, 197, 768]            --
|    |    └─LayerNorm: 3-4               [-1, 197, 768]            1,536
|    |    └─Mlp: 3-5                     [-1, 197, 768]            4,722,432
|    |    └─Identity: 3-6                [-1, 197, 768]            --
|    └─Block: 2-3                        [-1, 197, 768]            --
|    |    └─LayerNorm: 3-7               [-1, 197, 768]            1,536
|    |    └─Attention: 3-8               [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-9                [-1, 197, 768]            --
|    |    └─LayerNorm: 3-10              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-11                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-12               [-1, 197, 768]            --
|    └─Block: 2-4                        [-1, 197, 768]            --
|    |    └─LayerNorm: 3-13              [-1, 197, 768]            1,536
|    |    └─Attention: 3-14              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-15               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-16              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-17                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-18               [-1, 197, 768]            --
|    └─Block: 2-5                        [-1, 197, 768]            --
|    |    └─LayerNorm: 3-19              [-1, 197, 768]            1,536
|    |    └─Attention: 3-20              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-21               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-22              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-23                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-24               [-1, 197, 768]            --
|    └─Block: 2-6                        [-1, 197, 768]            --
|    |    └─LayerNorm: 3-25              [-1, 197, 768]            1,536
|    |    └─Attention: 3-26              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-27               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-28              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-29                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-30               [-1, 197, 768]            --
|    └─Block: 2-7                        [-1, 197, 768]            --
|    |    └─LayerNorm: 3-31              [-1, 197, 768]            1,536
|    |    └─Attention: 3-32              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-33               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-34              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-35                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-36               [-1, 197, 768]            --
|    └─Block: 2-8                        [-1, 197, 768]            --
|    |    └─LayerNorm: 3-37              [-1, 197, 768]            1,536
|    |    └─Attention: 3-38              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-39               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-40              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-41                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-42               [-1, 197, 768]            --
|    └─Block: 2-9                        [-1, 197, 768]            --
|    |    └─LayerNorm: 3-43              [-1, 197, 768]            1,536
|    |    └─Attention: 3-44              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-45               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-46              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-47                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-48               [-1, 197, 768]            --
|    └─Block: 2-10                       [-1, 197, 768]            --
|    |    └─LayerNorm: 3-49              [-1, 197, 768]            1,536
|    |    └─Attention: 3-50              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-51               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-52              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-53                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-54               [-1, 197, 768]            --
|    └─Block: 2-11                       [-1, 197, 768]            --
|    |    └─LayerNorm: 3-55              [-1, 197, 768]            1,536
|    |    └─Attention: 3-56              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-57               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-58              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-59                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-60               [-1, 197, 768]            --
|    └─Block: 2-12                       [-1, 197, 768]            --
|    |    └─LayerNorm: 3-61              [-1, 197, 768]            1,536
|    |    └─Attention: 3-62              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-63               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-64              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-65                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-66               [-1, 197, 768]            --
|    └─Block: 2-13                       [-1, 197, 768]            --
|    |    └─LayerNorm: 3-67              [-1, 197, 768]            1,536
|    |    └─Attention: 3-68              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-69               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-70              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-71                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-72               [-1, 197, 768]            --
├─LayerNorm: 1-3                         [-1, 768]                 1,536
├─Linear: 1-4                            [-1, 2]                   1,538
==========================================================================================
Total params: 85,648,130
Trainable params: 85,648,130
Non-trainable params: 0
Total mult-adds (M): 371.04
==========================================================================================
Input size (MB): 0.57
Forward/backward pass size (MB): 153.52
Params size (MB): 326.72
Estimated Total Size (MB): 480.82
==========================================================================================
[16:05:48.574383] ==========================================================================================
Layer (type:depth-idx)                   Output Shape              Param #
==========================================================================================
├─PatchEmbed: 1-1                        [-1, 196, 768]            --
|    └─Conv2d: 2-1                       [-1, 768, 14, 14]         590,592
├─Dropout: 1-2                           [-1, 197, 768]            --
├─ModuleList: 1                          []                        --
|    └─Block: 2-2                        [-1, 197, 768]            --
|    |    └─LayerNorm: 3-1               [-1, 197, 768]            1,536
|    |    └─Attention: 3-2               [-1, 197, 768]            2,362,368
|    |    └─Identity: 3-3                [-1, 197, 768]            --
|    |    └─LayerNorm: 3-4               [-1, 197, 768]            1,536
|    |    └─Mlp: 3-5                     [-1, 197, 768]            4,722,432
|    |    └─Identity: 3-6                [-1, 197, 768]            --
|    └─Block: 2-3                        [-1, 197, 768]            --
|    |    └─LayerNorm: 3-7               [-1, 197, 768]            1,536
|    |    └─Attention: 3-8               [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-9                [-1, 197, 768]            --
|    |    └─LayerNorm: 3-10              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-11                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-12               [-1, 197, 768]            --
|    └─Block: 2-4                        [-1, 197, 768]            --
|    |    └─LayerNorm: 3-13              [-1, 197, 768]            1,536
|    |    └─Attention: 3-14              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-15               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-16              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-17                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-18               [-1, 197, 768]            --
|    └─Block: 2-5                        [-1, 197, 768]            --
|    |    └─LayerNorm: 3-19              [-1, 197, 768]            1,536
|    |    └─Attention: 3-20              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-21               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-22              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-23                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-24               [-1, 197, 768]            --
|    └─Block: 2-6                        [-1, 197, 768]            --
|    |    └─LayerNorm: 3-25              [-1, 197, 768]            1,536
|    |    └─Attention: 3-26              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-27               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-28              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-29                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-30               [-1, 197, 768]            --
|    └─Block: 2-7                        [-1, 197, 768]            --
|    |    └─LayerNorm: 3-31              [-1, 197, 768]            1,536
|    |    └─Attention: 3-32              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-33               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-34              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-35                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-36               [-1, 197, 768]            --
|    └─Block: 2-8                        [-1, 197, 768]            --
|    |    └─LayerNorm: 3-37              [-1, 197, 768]            1,536
|    |    └─Attention: 3-38              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-39               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-40              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-41                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-42               [-1, 197, 768]            --
|    └─Block: 2-9                        [-1, 197, 768]            --
|    |    └─LayerNorm: 3-43              [-1, 197, 768]            1,536
|    |    └─Attention: 3-44              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-45               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-46              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-47                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-48               [-1, 197, 768]            --
|    └─Block: 2-10                       [-1, 197, 768]            --
|    |    └─LayerNorm: 3-49              [-1, 197, 768]            1,536
|    |    └─Attention: 3-50              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-51               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-52              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-53                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-54               [-1, 197, 768]            --
|    └─Block: 2-11                       [-1, 197, 768]            --
|    |    └─LayerNorm: 3-55              [-1, 197, 768]            1,536
|    |    └─Attention: 3-56              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-57               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-58              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-59                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-60               [-1, 197, 768]            --
|    └─Block: 2-12                       [-1, 197, 768]            --
|    |    └─LayerNorm: 3-61              [-1, 197, 768]            1,536
|    |    └─Attention: 3-62              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-63               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-64              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-65                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-66               [-1, 197, 768]            --
|    └─Block: 2-13                       [-1, 197, 768]            --
|    |    └─LayerNorm: 3-67              [-1, 197, 768]            1,536
|    |    └─Attention: 3-68              [-1, 197, 768]            2,362,368
|    |    └─DropPath: 3-69               [-1, 197, 768]            --
|    |    └─LayerNorm: 3-70              [-1, 197, 768]            1,536
|    |    └─Mlp: 3-71                    [-1, 197, 768]            4,722,432
|    |    └─DropPath: 3-72               [-1, 197, 768]            --
├─LayerNorm: 1-3                         [-1, 768]                 1,536
├─Linear: 1-4                            [-1, 2]                   1,538
==========================================================================================
Total params: 85,648,130
Trainable params: 85,648,130
Non-trainable params: 0
Total mult-adds (M): 371.04
==========================================================================================
Input size (MB): 0.57
Forward/backward pass size (MB): 153.52
Params size (MB): 326.72
Estimated Total Size (MB): 480.82
==========================================================================================
[16:05:48.576649] Model = VisionTransformer(
  (patch_embed): PatchEmbed(
    (proj): Conv2d(3, 768, kernel_size=(16, 16), stride=(16, 16))
  )
  (pos_drop): Dropout(p=0.0, inplace=False)
  (blocks): ModuleList(
    (0): Block(
      (norm1): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (attn): Attention(
        (qkv): Linear(in_features=768, out_features=2304, bias=True)
        (attn_drop): Dropout(p=0.0, inplace=False)
        (proj): Linear(in_features=768, out_features=768, bias=True)
        (proj_drop): Dropout(p=0.0, inplace=False)
      )
      (drop_path): Identity()
      (norm2): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (mlp): Mlp(
        (fc1): Linear(in_features=768, out_features=3072, bias=True)
        (act): GELU(approximate='none')
        (fc2): Linear(in_features=3072, out_features=768, bias=True)
        (drop): Dropout(p=0.0, inplace=False)
      )
    )
    (1): Block(
      (norm1): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (attn): Attention(
        (qkv): Linear(in_features=768, out_features=2304, bias=True)
        (attn_drop): Dropout(p=0.0, inplace=False)
        (proj): Linear(in_features=768, out_features=768, bias=True)
        (proj_drop): Dropout(p=0.0, inplace=False)
      )
      (drop_path): DropPath()
      (norm2): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (mlp): Mlp(
        (fc1): Linear(in_features=768, out_features=3072, bias=True)
        (act): GELU(approximate='none')
        (fc2): Linear(in_features=3072, out_features=768, bias=True)
        (drop): Dropout(p=0.0, inplace=False)
      )
    )
    (2): Block(
      (norm1): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (attn): Attention(
        (qkv): Linear(in_features=768, out_features=2304, bias=True)
        (attn_drop): Dropout(p=0.0, inplace=False)
        (proj): Linear(in_features=768, out_features=768, bias=True)
        (proj_drop): Dropout(p=0.0, inplace=False)
      )
      (drop_path): DropPath()
      (norm2): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (mlp): Mlp(
        (fc1): Linear(in_features=768, out_features=3072, bias=True)
        (act): GELU(approximate='none')
        (fc2): Linear(in_features=3072, out_features=768, bias=True)
        (drop): Dropout(p=0.0, inplace=False)
      )
    )
    (3): Block(
      (norm1): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (attn): Attention(
        (qkv): Linear(in_features=768, out_features=2304, bias=True)
        (attn_drop): Dropout(p=0.0, inplace=False)
        (proj): Linear(in_features=768, out_features=768, bias=True)
        (proj_drop): Dropout(p=0.0, inplace=False)
      )
      (drop_path): DropPath()
      (norm2): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (mlp): Mlp(
        (fc1): Linear(in_features=768, out_features=3072, bias=True)
        (act): GELU(approximate='none')
        (fc2): Linear(in_features=3072, out_features=768, bias=True)
        (drop): Dropout(p=0.0, inplace=False)
      )
    )
    (4): Block(
      (norm1): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (attn): Attention(
        (qkv): Linear(in_features=768, out_features=2304, bias=True)
        (attn_drop): Dropout(p=0.0, inplace=False)
        (proj): Linear(in_features=768, out_features=768, bias=True)
        (proj_drop): Dropout(p=0.0, inplace=False)
      )
      (drop_path): DropPath()
      (norm2): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (mlp): Mlp(
        (fc1): Linear(in_features=768, out_features=3072, bias=True)
        (act): GELU(approximate='none')
        (fc2): Linear(in_features=3072, out_features=768, bias=True)
        (drop): Dropout(p=0.0, inplace=False)
      )
    )
    (5): Block(
      (norm1): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (attn): Attention(
        (qkv): Linear(in_features=768, out_features=2304, bias=True)
        (attn_drop): Dropout(p=0.0, inplace=False)
        (proj): Linear(in_features=768, out_features=768, bias=True)
        (proj_drop): Dropout(p=0.0, inplace=False)
      )
      (drop_path): DropPath()
      (norm2): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (mlp): Mlp(
        (fc1): Linear(in_features=768, out_features=3072, bias=True)
        (act): GELU(approximate='none')
        (fc2): Linear(in_features=3072, out_features=768, bias=True)
        (drop): Dropout(p=0.0, inplace=False)
      )
    )
    (6): Block(
      (norm1): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (attn): Attention(
        (qkv): Linear(in_features=768, out_features=2304, bias=True)
        (attn_drop): Dropout(p=0.0, inplace=False)
        (proj): Linear(in_features=768, out_features=768, bias=True)
        (proj_drop): Dropout(p=0.0, inplace=False)
      )
      (drop_path): DropPath()
      (norm2): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (mlp): Mlp(
        (fc1): Linear(in_features=768, out_features=3072, bias=True)
        (act): GELU(approximate='none')
        (fc2): Linear(in_features=3072, out_features=768, bias=True)
        (drop): Dropout(p=0.0, inplace=False)
      )
    )
    (7): Block(
      (norm1): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (attn): Attention(
        (qkv): Linear(in_features=768, out_features=2304, bias=True)
        (attn_drop): Dropout(p=0.0, inplace=False)
        (proj): Linear(in_features=768, out_features=768, bias=True)
        (proj_drop): Dropout(p=0.0, inplace=False)
      )
      (drop_path): DropPath()
      (norm2): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (mlp): Mlp(
        (fc1): Linear(in_features=768, out_features=3072, bias=True)
        (act): GELU(approximate='none')
        (fc2): Linear(in_features=3072, out_features=768, bias=True)
        (drop): Dropout(p=0.0, inplace=False)
      )
    )
    (8): Block(
      (norm1): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (attn): Attention(
        (qkv): Linear(in_features=768, out_features=2304, bias=True)
        (attn_drop): Dropout(p=0.0, inplace=False)
        (proj): Linear(in_features=768, out_features=768, bias=True)
        (proj_drop): Dropout(p=0.0, inplace=False)
      )
      (drop_path): DropPath()
      (norm2): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (mlp): Mlp(
        (fc1): Linear(in_features=768, out_features=3072, bias=True)
        (act): GELU(approximate='none')
        (fc2): Linear(in_features=3072, out_features=768, bias=True)
        (drop): Dropout(p=0.0, inplace=False)
      )
    )
    (9): Block(
      (norm1): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (attn): Attention(
        (qkv): Linear(in_features=768, out_features=2304, bias=True)
        (attn_drop): Dropout(p=0.0, inplace=False)
        (proj): Linear(in_features=768, out_features=768, bias=True)
        (proj_drop): Dropout(p=0.0, inplace=False)
      )
      (drop_path): DropPath()
      (norm2): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (mlp): Mlp(
        (fc1): Linear(in_features=768, out_features=3072, bias=True)
        (act): GELU(approximate='none')
        (fc2): Linear(in_features=3072, out_features=768, bias=True)
        (drop): Dropout(p=0.0, inplace=False)
      )
    )
    (10): Block(
      (norm1): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (attn): Attention(
        (qkv): Linear(in_features=768, out_features=2304, bias=True)
        (attn_drop): Dropout(p=0.0, inplace=False)
        (proj): Linear(in_features=768, out_features=768, bias=True)
        (proj_drop): Dropout(p=0.0, inplace=False)
      )
      (drop_path): DropPath()
      (norm2): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (mlp): Mlp(
        (fc1): Linear(in_features=768, out_features=3072, bias=True)
        (act): GELU(approximate='none')
        (fc2): Linear(in_features=3072, out_features=768, bias=True)
        (drop): Dropout(p=0.0, inplace=False)
      )
    )
    (11): Block(
      (norm1): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (attn): Attention(
        (qkv): Linear(in_features=768, out_features=2304, bias=True)
        (attn_drop): Dropout(p=0.0, inplace=False)
        (proj): Linear(in_features=768, out_features=768, bias=True)
        (proj_drop): Dropout(p=0.0, inplace=False)
      )
      (drop_path): DropPath()
      (norm2): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
      (mlp): Mlp(
        (fc1): Linear(in_features=768, out_features=3072, bias=True)
        (act): GELU(approximate='none')
        (fc2): Linear(in_features=3072, out_features=768, bias=True)
        (drop): Dropout(p=0.0, inplace=False)
      )
    )
  )
  (head): Linear(in_features=768, out_features=2, bias=True)
  (fc_norm): LayerNorm((768,), eps=1e-06, elementwise_affine=True)
)
[16:05:48.576711] number of params (M): 85.80
[16:05:48.576729] base lr: 2.50e-04
[16:05:48.576738] actual lr: 6.25e-05
[16:05:48.576746] accumulate grad iterations: 1
[16:05:48.576753] effective batch size: 64
[16:05:48.606357] criterion = SoftTargetCrossEntropy()
[16:05:48.606387] Start training for 10 epochs
[16:05:48.607169] log_dir: ./checkpoint/finetuned_models/FF++_c23_32frames
[16:05:50.450515] Epoch: [0]  [   0/2877]  eta: 1:28:20  lr: 0.000000  loss: 0.6932 (0.6932)  time: 1.8423  data: 1.0685  max mem: 4308
[16:06:04.032412] Epoch: [0]  [ 100/2877]  eta: 0:07:04  lr: 0.000000  loss: 0.6931 (0.6931)  time: 0.1362  data: 0.0002  max mem: 5308
[16:06:17.523887] Epoch: [0]  [ 200/2877]  eta: 0:06:25  lr: 0.000001  loss: 0.6931 (0.6931)  time: 0.1355  data: 0.0001  max mem: 5308
[16:06:30.957329] Epoch: [0]  [ 300/2877]  eta: 0:06:02  lr: 0.000001  loss: 0.6931 (0.6931)  time: 0.1333  data: 0.0001  max mem: 5308
[16:06:44.319783] Epoch: [0]  [ 400/2877]  eta: 0:05:44  lr: 0.000002  loss: 0.6931 (0.6931)  time: 0.1337  data: 0.0001  max mem: 5308
[16:06:57.975133] Epoch: [0]  [ 500/2877]  eta: 0:05:29  lr: 0.000002  loss: 0.6930 (0.6931)  time: 0.1359  data: 0.0001  max mem: 5308
[16:07:11.632413] Epoch: [0]  [ 600/2877]  eta: 0:05:14  lr: 0.000003  loss: 0.6933 (0.6931)  time: 0.1353  data: 0.0002  max mem: 5308
[16:07:25.178422] Epoch: [0]  [ 700/2877]  eta: 0:04:59  lr: 0.000003  loss: 0.6929 (0.6931)  time: 0.1349  data: 0.0002  max mem: 5308
[16:07:38.707895] Epoch: [0]  [ 800/2877]  eta: 0:04:45  lr: 0.000003  loss: 0.6929 (0.6931)  time: 0.1363  data: 0.0002  max mem: 5308
[16:07:52.301692] Epoch: [0]  [ 900/2877]  eta: 0:04:31  lr: 0.000004  loss: 0.6925 (0.6930)  time: 0.1366  data: 0.0002  max mem: 5308
[16:08:06.004011] Epoch: [0]  [1000/2877]  eta: 0:04:17  lr: 0.000004  loss: 0.6929 (0.6930)  time: 0.1365  data: 0.0002  max mem: 5308
[16:08:19.676187] Epoch: [0]  [1100/2877]  eta: 0:04:03  lr: 0.000005  loss: 0.6929 (0.6930)  time: 0.1375  data: 0.0002  max mem: 5308
[16:08:33.261768] Epoch: [0]  [1200/2877]  eta: 0:03:49  lr: 0.000005  loss: 0.6928 (0.6930)  time: 0.1351  data: 0.0001  max mem: 5308
[16:08:46.775194] Epoch: [0]  [1300/2877]  eta: 0:03:35  lr: 0.000006  loss: 0.6941 (0.6930)  time: 0.1363  data: 0.0001  max mem: 5308
[16:09:00.521338] Epoch: [0]  [1400/2877]  eta: 0:03:22  lr: 0.000006  loss: 0.6927 (0.6929)  time: 0.1384  data: 0.0002  max mem: 5308
[16:09:14.246663] Epoch: [0]  [1500/2877]  eta: 0:03:08  lr: 0.000007  loss: 0.6940 (0.6929)  time: 0.1358  data: 0.0002  max mem: 5308
[16:09:27.850870] Epoch: [0]  [1600/2877]  eta: 0:02:54  lr: 0.000007  loss: 0.6919 (0.6928)  time: 0.1357  data: 0.0002  max mem: 5308
[16:09:41.522406] Epoch: [0]  [1700/2877]  eta: 0:02:41  lr: 0.000007  loss: 0.6922 (0.6927)  time: 0.1376  data: 0.0002  max mem: 5308
[16:09:55.123865] Epoch: [0]  [1800/2877]  eta: 0:02:27  lr: 0.000008  loss: 0.6916 (0.6926)  time: 0.1350  data: 0.0001  max mem: 5308
[16:10:08.636991] Epoch: [0]  [1900/2877]  eta: 0:02:13  lr: 0.000008  loss: 0.6898 (0.6926)  time: 0.1356  data: 0.0002  max mem: 5308
[16:10:22.310937] Epoch: [0]  [2000/2877]  eta: 0:01:59  lr: 0.000009  loss: 0.6908 (0.6925)  time: 0.1373  data: 0.0002  max mem: 5308
[16:10:36.033887] Epoch: [0]  [2100/2877]  eta: 0:01:46  lr: 0.000009  loss: 0.6919 (0.6924)  time: 0.1380  data: 0.0001  max mem: 5308
[16:10:49.725345] Epoch: [0]  [2200/2877]  eta: 0:01:32  lr: 0.000010  loss: 0.6892 (0.6922)  time: 0.1372  data: 0.0002  max mem: 5308
[16:11:03.413572] Epoch: [0]  [2300/2877]  eta: 0:01:18  lr: 0.000010  loss: 0.6893 (0.6921)  time: 0.1385  data: 0.0001  max mem: 5308
[16:11:17.136471] Epoch: [0]  [2400/2877]  eta: 0:01:05  lr: 0.000010  loss: 0.6832 (0.6919)  time: 0.1371  data: 0.0002  max mem: 5308
[16:11:30.897210] Epoch: [0]  [2500/2877]  eta: 0:00:51  lr: 0.000011  loss: 0.6892 (0.6918)  time: 0.1387  data: 0.0002  max mem: 5308
[16:11:44.587740] Epoch: [0]  [2600/2877]  eta: 0:00:37  lr: 0.000011  loss: 0.6890 (0.6917)  time: 0.1381  data: 0.0002  max mem: 5308
[16:11:58.272199] Epoch: [0]  [2700/2877]  eta: 0:00:24  lr: 0.000012  loss: 0.6835 (0.6915)  time: 0.1378  data: 0.0002  max mem: 5308
[16:12:11.958213] Epoch: [0]  [2800/2877]  eta: 0:00:10  lr: 0.000012  loss: 0.6845 (0.6914)  time: 0.1355  data: 0.0001  max mem: 5308
[16:12:22.285649] Epoch: [0]  [2876/2877]  eta: 0:00:00  lr: 0.000012  loss: 0.6867 (0.6913)  time: 0.1363  data: 0.0002  max mem: 5308
[16:12:22.478694] Epoch: [0] Total time: 0:06:33 (0.1369 s / it)
[16:12:22.505555] Averaged stats: lr: 0.000012  loss: 0.6867 (0.6914)
[16:12:24.049852] Test:  [  0/560]  eta: 0:14:22  loss: 0.6874 (0.6874)  auc: 65.8824 (65.8824)  time: 1.5410  data: 1.5043  max mem: 5308
[16:12:24.606570] Test:  [ 10/560]  eta: 0:01:44  loss: 0.6699 (0.6707)  auc: 74.2915 (75.0876)  time: 0.1906  data: 0.1608  max mem: 5308
[16:12:25.281255] Test:  [ 20/560]  eta: 0:01:11  loss: 0.6682 (0.6698)  auc: 80.7359 (79.9045)  time: 0.0615  data: 0.0324  max mem: 5308
[16:12:26.055792] Test:  [ 30/560]  eta: 0:01:00  loss: 0.6613 (0.6669)  auc: 84.3254 (81.4501)  time: 0.0724  data: 0.0434  max mem: 5308
[16:12:26.956516] Test:  [ 40/560]  eta: 0:00:56  loss: 0.6635 (0.6669)  auc: 82.5397 (80.9105)  time: 0.0837  data: 0.0547  max mem: 5308
[16:12:28.036498] Test:  [ 50/560]  eta: 0:00:55  loss: 0.6705 (0.6675)  auc: 82.0833 (81.5161)  time: 0.0990  data: 0.0698  max mem: 5308
[16:12:28.658092] Test:  [ 60/560]  eta: 0:00:50  loss: 0.6636 (0.6668)  auc: 81.8182 (81.1055)  time: 0.0850  data: 0.0559  max mem: 5308
[16:12:29.369572] Test:  [ 70/560]  eta: 0:00:47  loss: 0.6630 (0.6662)  auc: 81.8182 (81.3349)  time: 0.0666  data: 0.0375  max mem: 5308
[16:12:29.667863] Test:  [ 80/560]  eta: 0:00:42  loss: 0.6582 (0.6662)  auc: 81.8182 (81.1841)  time: 0.0502  data: 0.0210  max mem: 5308
[16:12:29.961627] Test:  [ 90/560]  eta: 0:00:38  loss: 0.6635 (0.6661)  auc: 81.3725 (81.0894)  time: 0.0293  data: 0.0002  max mem: 5308
[16:12:30.255592] Test:  [100/560]  eta: 0:00:35  loss: 0.6651 (0.6666)  auc: 80.2734 (80.9505)  time: 0.0293  data: 0.0002  max mem: 5308
[16:12:30.737302] Test:  [110/560]  eta: 0:00:33  loss: 0.6591 (0.6660)  auc: 80.7692 (81.1747)  time: 0.0387  data: 0.0097  max mem: 5308
[16:12:31.030364] Test:  [120/560]  eta: 0:00:30  loss: 0.6592 (0.6666)  auc: 82.3413 (80.8463)  time: 0.0387  data: 0.0096  max mem: 5308
[16:12:31.323254] Test:  [130/560]  eta: 0:00:28  loss: 0.6714 (0.6671)  auc: 80.5556 (80.7944)  time: 0.0292  data: 0.0001  max mem: 5308
[16:12:31.616078] Test:  [140/560]  eta: 0:00:27  loss: 0.6726 (0.6678)  auc: 81.3492 (80.7031)  time: 0.0292  data: 0.0001  max mem: 5308
[16:12:32.499121] Test:  [150/560]  eta: 0:00:27  loss: 0.6670 (0.6674)  auc: 80.0000 (80.6251)  time: 0.0587  data: 0.0297  max mem: 5308
[16:12:33.498265] Test:  [160/560]  eta: 0:00:27  loss: 0.6597 (0.6674)  auc: 80.0000 (80.6803)  time: 0.0940  data: 0.0649  max mem: 5308
[16:12:33.844053] Test:  [170/560]  eta: 0:00:25  loss: 0.6586 (0.6673)  auc: 80.4545 (80.6816)  time: 0.0672  data: 0.0379  max mem: 5308
[16:12:34.136093] Test:  [180/560]  eta: 0:00:24  loss: 0.6663 (0.6679)  auc: 78.5425 (80.5652)  time: 0.0318  data: 0.0026  max mem: 5308
[16:12:34.775514] Test:  [190/560]  eta: 0:00:23  loss: 0.6724 (0.6679)  auc: 79.5455 (80.5298)  time: 0.0465  data: 0.0175  max mem: 5308
[16:12:35.105373] Test:  [200/560]  eta: 0:00:22  loss: 0.6635 (0.6675)  auc: 81.7460 (80.6410)  time: 0.0484  data: 0.0191  max mem: 5308
[16:12:35.399734] Test:  [210/560]  eta: 0:00:21  loss: 0.6644 (0.6676)  auc: 80.4167 (80.5790)  time: 0.0311  data: 0.0018  max mem: 5308
[16:12:36.013776] Test:  [220/560]  eta: 0:00:20  loss: 0.6683 (0.6677)  auc: 77.5000 (80.5544)  time: 0.0453  data: 0.0162  max mem: 5308
[16:12:36.435416] Test:  [230/560]  eta: 0:00:19  loss: 0.6665 (0.6677)  auc: 81.7460 (80.5966)  time: 0.0517  data: 0.0228  max mem: 5308
[16:12:37.072250] Test:  [240/560]  eta: 0:00:19  loss: 0.6651 (0.6679)  auc: 81.9444 (80.6255)  time: 0.0529  data: 0.0239  max mem: 5308
[16:12:37.892736] Test:  [250/560]  eta: 0:00:18  loss: 0.6668 (0.6677)  auc: 83.1349 (80.8067)  time: 0.0728  data: 0.0438  max mem: 5308
[16:12:38.564210] Test:  [260/560]  eta: 0:00:18  loss: 0.6521 (0.6672)  auc: 85.2941 (80.9234)  time: 0.0745  data: 0.0454  max mem: 5308
[16:12:39.306146] Test:  [270/560]  eta: 0:00:17  loss: 0.6680 (0.6676)  auc: 78.9683 (80.6967)  time: 0.0706  data: 0.0412  max mem: 5308
[16:12:39.834238] Test:  [280/560]  eta: 0:00:17  loss: 0.6686 (0.6676)  auc: 78.9683 (80.7285)  time: 0.0634  data: 0.0341  max mem: 5308
[16:12:40.128630] Test:  [290/560]  eta: 0:00:16  loss: 0.6686 (0.6681)  auc: 80.3571 (80.7003)  time: 0.0410  data: 0.0119  max mem: 5308
[16:12:40.424259] Test:  [300/560]  eta: 0:00:15  loss: 0.6693 (0.6678)  auc: 82.9960 (80.8058)  time: 0.0294  data: 0.0001  max mem: 5308
[16:12:40.721737] Test:  [310/560]  eta: 0:00:14  loss: 0.6672 (0.6678)  auc: 82.7451 (80.7535)  time: 0.0296  data: 0.0002  max mem: 5308
[16:12:41.018891] Test:  [320/560]  eta: 0:00:13  loss: 0.6692 (0.6679)  auc: 76.9841 (80.7093)  time: 0.0296  data: 0.0002  max mem: 5308
[16:12:41.314974] Test:  [330/560]  eta: 0:00:13  loss: 0.6665 (0.6678)  auc: 77.7083 (80.6883)  time: 0.0296  data: 0.0002  max mem: 5308
[16:12:41.612151] Test:  [340/560]  eta: 0:00:12  loss: 0.6671 (0.6679)  auc: 81.9608 (80.8021)  time: 0.0296  data: 0.0002  max mem: 5308
[16:12:41.908457] Test:  [350/560]  eta: 0:00:11  loss: 0.6654 (0.6677)  auc: 85.1190 (80.8910)  time: 0.0296  data: 0.0002  max mem: 5308
[16:12:42.204875] Test:  [360/560]  eta: 0:00:10  loss: 0.6701 (0.6679)  auc: 83.1349 (80.8605)  time: 0.0295  data: 0.0002  max mem: 5308
[16:12:42.497602] Test:  [370/560]  eta: 0:00:10  loss: 0.6742 (0.6681)  auc: 79.9595 (80.8488)  time: 0.0294  data: 0.0002  max mem: 5308
[16:12:42.790967] Test:  [380/560]  eta: 0:00:09  loss: 0.6709 (0.6681)  auc: 80.3922 (80.9071)  time: 0.0292  data: 0.0002  max mem: 5308
[16:12:43.086368] Test:  [390/560]  eta: 0:00:08  loss: 0.6762 (0.6683)  auc: 77.7778 (80.7482)  time: 0.0294  data: 0.0002  max mem: 5308
[16:12:43.379540] Test:  [400/560]  eta: 0:00:08  loss: 0.6762 (0.6684)  auc: 77.1255 (80.7119)  time: 0.0293  data: 0.0002  max mem: 5308
[16:12:43.677215] Test:  [410/560]  eta: 0:00:07  loss: 0.6733 (0.6684)  auc: 76.1905 (80.5823)  time: 0.0295  data: 0.0002  max mem: 5308
[16:12:43.971819] Test:  [420/560]  eta: 0:00:07  loss: 0.6726 (0.6683)  auc: 76.1719 (80.5809)  time: 0.0295  data: 0.0002  max mem: 5308
[16:12:44.270619] Test:  [430/560]  eta: 0:00:06  loss: 0.6609 (0.6682)  auc: 80.8594 (80.6182)  time: 0.0296  data: 0.0002  max mem: 5308
[16:12:44.567943] Test:  [440/560]  eta: 0:00:05  loss: 0.6609 (0.6683)  auc: 80.1932 (80.5704)  time: 0.0297  data: 0.0002  max mem: 5308
[16:12:44.866051] Test:  [450/560]  eta: 0:00:05  loss: 0.6699 (0.6683)  auc: 79.3651 (80.5627)  time: 0.0297  data: 0.0002  max mem: 5308
[16:12:45.164818] Test:  [460/560]  eta: 0:00:04  loss: 0.6682 (0.6683)  auc: 79.7571 (80.5176)  time: 0.0297  data: 0.0002  max mem: 5308
[16:12:45.458745] Test:  [470/560]  eta: 0:00:04  loss: 0.6690 (0.6683)  auc: 79.3651 (80.4494)  time: 0.0295  data: 0.0002  max mem: 5308
[16:12:45.754666] Test:  [480/560]  eta: 0:00:03  loss: 0.6668 (0.6683)  auc: 79.3522 (80.4269)  time: 0.0294  data: 0.0002  max mem: 5308
[16:12:46.048831] Test:  [490/560]  eta: 0:00:03  loss: 0.6645 (0.6683)  auc: 81.5686 (80.4755)  time: 0.0294  data: 0.0002  max mem: 5308
[16:12:46.342329] Test:  [500/560]  eta: 0:00:02  loss: 0.6645 (0.6683)  auc: 81.7814 (80.4898)  time: 0.0293  data: 0.0001  max mem: 5308
[16:12:46.639511] Test:  [510/560]  eta: 0:00:02  loss: 0.6654 (0.6684)  auc: 82.0346 (80.4497)  time: 0.0295  data: 0.0002  max mem: 5308
[16:12:46.934005] Test:  [520/560]  eta: 0:00:01  loss: 0.6642 (0.6684)  auc: 79.7619 (80.4525)  time: 0.0295  data: 0.0002  max mem: 5308
[16:12:47.229027] Test:  [530/560]  eta: 0:00:01  loss: 0.6773 (0.6687)  auc: 77.7056 (80.3659)  time: 0.0294  data: 0.0002  max mem: 5308
[16:12:47.523797] Test:  [540/560]  eta: 0:00:00  loss: 0.6773 (0.6688)  auc: 77.7056 (80.3787)  time: 0.0294  data: 0.0002  max mem: 5308
[16:12:47.816427] Test:  [550/560]  eta: 0:00:00  loss: 0.6687 (0.6689)  auc: 84.7222 (80.4725)  time: 0.0293  data: 0.0002  max mem: 5308
[16:12:48.151312] Test:  [559/560]  eta: 0:00:00  loss: 0.6658 (0.6688)  auc: 85.5159 (80.5176)  time: 0.0328  data: 0.0001  max mem: 5308
[16:12:48.281775] Test: Total time: 0:00:25 (0.0460 s / it)
[16:12:48.283914] * Auc 80.462  loss 0.669
[16:12:48.284079] AUC of the network on the 35796 val images: 80.46%
[16:12:48.284101] Max auc: 80.46%
[16:12:48.284121] Save model with min_val_loss at epoch: 0
[16:12:49.589367] log_dir: ./checkpoint/finetuned_models/FF++_c23_32frames
[16:12:50.814360] Epoch: [1]  [   0/2877]  eta: 0:58:40  lr: 0.000013  loss: 0.6833 (0.6833)  time: 1.2237  data: 1.0531  max mem: 5308
[16:13:04.564163] Epoch: [1]  [ 100/2877]  eta: 0:06:51  lr: 0.000013  loss: 0.6868 (0.6877)  time: 0.1379  data: 0.0001  max mem: 5308
[16:13:18.317716] Epoch: [1]  [ 200/2877]  eta: 0:06:22  lr: 0.000013  loss: 0.6849 (0.6860)  time: 0.1376  data: 0.0002  max mem: 5308
[16:13:31.983257] Epoch: [1]  [ 300/2877]  eta: 0:06:02  lr: 0.000014  loss: 0.6855 (0.6861)  time: 0.1385  data: 0.0002  max mem: 5308
[16:13:45.552327] Epoch: [1]  [ 400/2877]  eta: 0:05:45  lr: 0.000014  loss: 0.6858 (0.6863)  time: 0.1351  data: 0.0002  max mem: 5308
[16:13:59.181856] Epoch: [1]  [ 500/2877]  eta: 0:05:30  lr: 0.000015  loss: 0.6854 (0.6862)  time: 0.1365  data: 0.0001  max mem: 5308
[16:14:12.799206] Epoch: [1]  [ 600/2877]  eta: 0:05:15  lr: 0.000015  loss: 0.6831 (0.6861)  time: 0.1358  data: 0.0001  max mem: 5308
[16:14:26.418644] Epoch: [1]  [ 700/2877]  eta: 0:05:00  lr: 0.000016  loss: 0.6785 (0.6856)  time: 0.1353  data: 0.0002  max mem: 5308
[16:14:39.957483] Epoch: [1]  [ 800/2877]  eta: 0:04:46  lr: 0.000016  loss: 0.6807 (0.6855)  time: 0.1349  data: 0.0001  max mem: 5308
[16:14:53.462317] Epoch: [1]  [ 900/2877]  eta: 0:04:31  lr: 0.000016  loss: 0.6776 (0.6851)  time: 0.1354  data: 0.0001  max mem: 5308
[16:15:07.138044] Epoch: [1]  [1000/2877]  eta: 0:04:17  lr: 0.000017  loss: 0.6803 (0.6848)  time: 0.1371  data: 0.0002  max mem: 5308
[16:15:20.713470] Epoch: [1]  [1100/2877]  eta: 0:04:03  lr: 0.000017  loss: 0.6775 (0.6846)  time: 0.1345  data: 0.0001  max mem: 5308
[16:15:34.224270] Epoch: [1]  [1200/2877]  eta: 0:03:49  lr: 0.000018  loss: 0.6848 (0.6844)  time: 0.1361  data: 0.0002  max mem: 5308
[16:15:47.828917] Epoch: [1]  [1300/2877]  eta: 0:03:36  lr: 0.000018  loss: 0.6839 (0.6843)  time: 0.1352  data: 0.0001  max mem: 5308
[16:16:01.484432] Epoch: [1]  [1400/2877]  eta: 0:03:22  lr: 0.000019  loss: 0.6692 (0.6839)  time: 0.1356  data: 0.0001  max mem: 5308
[16:16:15.073369] Epoch: [1]  [1500/2877]  eta: 0:03:08  lr: 0.000019  loss: 0.6901 (0.6836)  time: 0.1349  data: 0.0001  max mem: 5308
[16:16:28.593575] Epoch: [1]  [1600/2877]  eta: 0:02:54  lr: 0.000019  loss: 0.6787 (0.6834)  time: 0.1352  data: 0.0001  max mem: 5308
[16:16:42.286181] Epoch: [1]  [1700/2877]  eta: 0:02:40  lr: 0.000020  loss: 0.6732 (0.6832)  time: 0.1371  data: 0.0001  max mem: 5308
[16:16:55.963633] Epoch: [1]  [1800/2877]  eta: 0:02:27  lr: 0.000020  loss: 0.6744 (0.6829)  time: 0.1376  data: 0.0002  max mem: 5308
[16:17:09.528095] Epoch: [1]  [1900/2877]  eta: 0:02:13  lr: 0.000021  loss: 0.6760 (0.6827)  time: 0.1348  data: 0.0001  max mem: 5308
[16:17:23.097459] Epoch: [1]  [2000/2877]  eta: 0:01:59  lr: 0.000021  loss: 0.6745 (0.6822)  time: 0.1371  data: 0.0002  max mem: 5308
[16:17:36.824208] Epoch: [1]  [2100/2877]  eta: 0:01:46  lr: 0.000022  loss: 0.6872 (0.6821)  time: 0.1365  data: 0.0004  max mem: 5308
[16:17:50.321987] Epoch: [1]  [2200/2877]  eta: 0:01:32  lr: 0.000022  loss: 0.6902 (0.6817)  time: 0.1347  data: 0.0001  max mem: 5308
[16:18:03.852620] Epoch: [1]  [2300/2877]  eta: 0:01:18  lr: 0.000022  loss: 0.6730 (0.6813)  time: 0.1347  data: 0.0002  max mem: 5308
[16:18:17.518695] Epoch: [1]  [2400/2877]  eta: 0:01:05  lr: 0.000023  loss: 0.6745 (0.6809)  time: 0.1346  data: 0.0001  max mem: 5308
[16:18:31.016072] Epoch: [1]  [2500/2877]  eta: 0:00:51  lr: 0.000023  loss: 0.6791 (0.6807)  time: 0.1345  data: 0.0001  max mem: 5308
[16:18:44.531931] Epoch: [1]  [2600/2877]  eta: 0:00:37  lr: 0.000024  loss: 0.6788 (0.6803)  time: 0.1367  data: 0.0002  max mem: 5308
[16:18:58.038934] Epoch: [1]  [2700/2877]  eta: 0:00:24  lr: 0.000024  loss: 0.6632 (0.6798)  time: 0.1349  data: 0.0002  max mem: 5308
[16:19:11.602946] Epoch: [1]  [2800/2877]  eta: 0:00:10  lr: 0.000025  loss: 0.6751 (0.6796)  time: 0.1350  data: 0.0001  max mem: 5308
[16:19:21.886110] Epoch: [1]  [2876/2877]  eta: 0:00:00  lr: 0.000025  loss: 0.6872 (0.6794)  time: 0.1365  data: 0.0003  max mem: 5308
[16:19:22.139825] Epoch: [1] Total time: 0:06:32 (0.1364 s / it)
[16:19:22.141273] Averaged stats: lr: 0.000025  loss: 0.6872 (0.6792)
[16:19:23.862187] Test:  [  0/560]  eta: 0:16:01  loss: 0.6199 (0.6199)  auc: 77.2549 (77.2549)  time: 1.7162  data: 1.6805  max mem: 5308
[16:19:24.156453] Test:  [ 10/560]  eta: 0:01:40  loss: 0.5863 (0.5673)  auc: 79.7571 (81.0819)  time: 0.1827  data: 0.1529  max mem: 5308
[16:19:24.450426] Test:  [ 20/560]  eta: 0:00:59  loss: 0.5400 (0.5459)  auc: 85.4167 (85.0816)  time: 0.0293  data: 0.0001  max mem: 5308
[16:19:24.744669] Test:  [ 30/560]  eta: 0:00:44  loss: 0.5356 (0.5336)  auc: 89.6104 (86.6654)  time: 0.0293  data: 0.0001  max mem: 5308
[16:19:25.039285] Test:  [ 40/560]  eta: 0:00:36  loss: 0.5345 (0.5379)  auc: 87.0588 (85.5144)  time: 0.0294  data: 0.0002  max mem: 5308
[16:19:25.335152] Test:  [ 50/560]  eta: 0:00:31  loss: 0.5345 (0.5371)  auc: 86.2500 (86.0696)  time: 0.0294  data: 0.0002  max mem: 5308
[16:19:25.629295] Test:  [ 60/560]  eta: 0:00:28  loss: 0.5321 (0.5359)  auc: 84.5703 (86.0086)  time: 0.0294  data: 0.0002  max mem: 5308
[16:19:25.924806] Test:  [ 70/560]  eta: 0:00:26  loss: 0.5244 (0.5342)  auc: 86.4372 (86.3364)  time: 0.0294  data: 0.0002  max mem: 5308
[16:19:26.219207] Test:  [ 80/560]  eta: 0:00:24  loss: 0.5179 (0.5336)  auc: 87.4510 (86.3074)  time: 0.0294  data: 0.0002  max mem: 5308
[16:19:26.514697] Test:  [ 90/560]  eta: 0:00:22  loss: 0.5179 (0.5330)  auc: 86.8182 (86.3460)  time: 0.0294  data: 0.0001  max mem: 5308
[16:19:26.809356] Test:  [100/560]  eta: 0:00:21  loss: 0.5150 (0.5330)  auc: 86.6667 (86.3862)  time: 0.0294  data: 0.0002  max mem: 5308
[16:19:27.105125] Test:  [110/560]  eta: 0:00:20  loss: 0.5150 (0.5317)  auc: 86.6667 (86.4107)  time: 0.0294  data: 0.0002  max mem: 5308
[16:19:27.401260] Test:  [120/560]  eta: 0:00:19  loss: 0.5234 (0.5346)  auc: 85.7488 (86.1502)  time: 0.0295  data: 0.0002  max mem: 5308
[16:19:27.701153] Test:  [130/560]  eta: 0:00:18  loss: 0.5421 (0.5351)  auc: 85.8824 (86.1065)  time: 0.0297  data: 0.0002  max mem: 5308
[16:19:28.002013] Test:  [140/560]  eta: 0:00:17  loss: 0.5461 (0.5368)  auc: 85.9375 (85.9855)  time: 0.0299  data: 0.0002  max mem: 5308
[16:19:28.297677] Test:  [150/560]  eta: 0:00:16  loss: 0.5461 (0.5370)  auc: 85.7143 (85.9060)  time: 0.0297  data: 0.0002  max mem: 5308
[16:19:28.596264] Test:  [160/560]  eta: 0:00:15  loss: 0.5056 (0.5359)  auc: 87.8431 (86.0864)  time: 0.0296  data: 0.0002  max mem: 5308
[16:19:28.891268] Test:  [170/560]  eta: 0:00:15  loss: 0.5083 (0.5358)  auc: 89.0625 (86.1361)  time: 0.0296  data: 0.0002  max mem: 5308
[16:19:29.188616] Test:  [180/560]  eta: 0:00:14  loss: 0.5421 (0.5372)  auc: 85.0202 (86.0175)  time: 0.0295  data: 0.0002  max mem: 5308
[16:19:29.484843] Test:  [190/560]  eta: 0:00:14  loss: 0.5465 (0.5377)  auc: 85.4902 (85.9749)  time: 0.0296  data: 0.0002  max mem: 5308
[16:19:29.780836] Test:  [200/560]  eta: 0:00:13  loss: 0.5329 (0.5368)  auc: 86.9048 (86.0595)  time: 0.0295  data: 0.0002  max mem: 5308
[16:19:30.076069] Test:  [210/560]  eta: 0:00:13  loss: 0.5329 (0.5370)  auc: 85.9375 (86.0292)  time: 0.0295  data: 0.0002  max mem: 5308
[16:19:30.371325] Test:  [220/560]  eta: 0:00:12  loss: 0.5339 (0.5369)  auc: 86.2745 (86.0260)  time: 0.0294  data: 0.0002  max mem: 5308
[16:19:30.677045] Test:  [230/560]  eta: 0:00:12  loss: 0.5339 (0.5367)  auc: 87.4494 (86.0625)  time: 0.0300  data: 0.0002  max mem: 5308
[16:19:30.981872] Test:  [240/560]  eta: 0:00:11  loss: 0.5358 (0.5365)  auc: 87.6984 (86.1192)  time: 0.0305  data: 0.0003  max mem: 5308
[16:19:31.278720] Test:  [250/560]  eta: 0:00:11  loss: 0.5170 (0.5357)  auc: 87.4510 (86.2013)  time: 0.0300  data: 0.0005  max mem: 5308
[16:19:31.580255] Test:  [260/560]  eta: 0:00:10  loss: 0.5075 (0.5342)  auc: 88.4921 (86.3637)  time: 0.0298  data: 0.0004  max mem: 5308
[16:19:31.893679] Test:  [270/560]  eta: 0:00:10  loss: 0.5216 (0.5353)  auc: 85.8824 (86.2147)  time: 0.0307  data: 0.0006  max mem: 5308
[16:19:32.227421] Test:  [280/560]  eta: 0:00:10  loss: 0.5390 (0.5350)  auc: 87.4494 (86.3088)  time: 0.0323  data: 0.0013  max mem: 5308
[16:19:32.527720] Test:  [290/560]  eta: 0:00:09  loss: 0.5389 (0.5358)  auc: 87.3016 (86.2926)  time: 0.0316  data: 0.0010  max mem: 5308
[16:19:32.843664] Test:  [300/560]  eta: 0:00:09  loss: 0.5389 (0.5347)  auc: 87.1094 (86.4196)  time: 0.0307  data: 0.0004  max mem: 5308
[16:19:33.188259] Test:  [310/560]  eta: 0:00:08  loss: 0.5244 (0.5353)  auc: 87.4510 (86.3325)  time: 0.0329  data: 0.0007  max mem: 5308
[16:19:33.517267] Test:  [320/560]  eta: 0:00:08  loss: 0.5555 (0.5357)  auc: 82.7451 (86.3011)  time: 0.0336  data: 0.0016  max mem: 5308
[16:19:33.838051] Test:  [330/560]  eta: 0:00:08  loss: 0.5249 (0.5353)  auc: 86.1111 (86.3852)  time: 0.0324  data: 0.0022  max mem: 5308
[16:19:34.143107] Test:  [340/560]  eta: 0:00:07  loss: 0.5117 (0.5347)  auc: 89.0688 (86.4461)  time: 0.0312  data: 0.0014  max mem: 5308
[16:19:34.438400] Test:  [350/560]  eta: 0:00:07  loss: 0.5117 (0.5342)  auc: 90.0794 (86.5140)  time: 0.0299  data: 0.0005  max mem: 5308
[16:19:34.736987] Test:  [360/560]  eta: 0:00:06  loss: 0.5313 (0.5349)  auc: 87.0588 (86.4405)  time: 0.0296  data: 0.0002  max mem: 5308
[16:19:35.047267] Test:  [370/560]  eta: 0:00:06  loss: 0.5425 (0.5353)  auc: 85.7143 (86.4359)  time: 0.0304  data: 0.0002  max mem: 5308
[16:19:35.361125] Test:  [380/560]  eta: 0:00:06  loss: 0.5366 (0.5350)  auc: 87.5000 (86.5020)  time: 0.0311  data: 0.0008  max mem: 5308
[16:19:35.657852] Test:  [390/560]  eta: 0:00:05  loss: 0.5415 (0.5357)  auc: 85.5469 (86.3943)  time: 0.0304  data: 0.0007  max mem: 5308
[16:19:35.958511] Test:  [400/560]  eta: 0:00:05  loss: 0.5587 (0.5363)  auc: 81.3765 (86.3117)  time: 0.0298  data: 0.0002  max mem: 5308
[16:19:36.263555] Test:  [410/560]  eta: 0:00:05  loss: 0.5478 (0.5367)  auc: 80.4688 (86.2255)  time: 0.0302  data: 0.0007  max mem: 5308
[16:19:36.579654] Test:  [420/560]  eta: 0:00:04  loss: 0.5345 (0.5367)  auc: 85.7143 (86.2285)  time: 0.0310  data: 0.0008  max mem: 5308
[16:19:36.878039] Test:  [430/560]  eta: 0:00:04  loss: 0.5312 (0.5366)  auc: 87.1094 (86.2376)  time: 0.0306  data: 0.0005  max mem: 5308
[16:19:37.175130] Test:  [440/560]  eta: 0:00:04  loss: 0.5059 (0.5365)  auc: 87.3016 (86.2549)  time: 0.0297  data: 0.0004  max mem: 5308
[16:19:37.475337] Test:  [450/560]  eta: 0:00:03  loss: 0.5143 (0.5365)  auc: 86.7188 (86.2521)  time: 0.0298  data: 0.0002  max mem: 5308
[16:19:37.775856] Test:  [460/560]  eta: 0:00:03  loss: 0.5445 (0.5369)  auc: 86.6397 (86.2055)  time: 0.0300  data: 0.0002  max mem: 5308
[16:19:38.071411] Test:  [470/560]  eta: 0:00:03  loss: 0.5445 (0.5371)  auc: 86.6397 (86.1717)  time: 0.0297  data: 0.0002  max mem: 5308
[16:19:38.365808] Test:  [480/560]  eta: 0:00:02  loss: 0.5358 (0.5372)  auc: 87.0588 (86.1623)  time: 0.0294  data: 0.0001  max mem: 5308
[16:19:38.660715] Test:  [490/560]  eta: 0:00:02  loss: 0.5359 (0.5370)  auc: 86.2500 (86.1819)  time: 0.0294  data: 0.0002  max mem: 5308
[16:19:38.954378] Test:  [500/560]  eta: 0:00:02  loss: 0.5387 (0.5368)  auc: 86.2500 (86.2110)  time: 0.0294  data: 0.0002  max mem: 5308
[16:19:39.247719] Test:  [510/560]  eta: 0:00:01  loss: 0.5268 (0.5370)  auc: 86.8627 (86.1983)  time: 0.0293  data: 0.0002  max mem: 5308
[16:19:39.541687] Test:  [520/560]  eta: 0:00:01  loss: 0.5404 (0.5372)  auc: 85.3175 (86.1499)  time: 0.0293  data: 0.0002  max mem: 5308
[16:19:39.837173] Test:  [530/560]  eta: 0:00:00  loss: 0.5661 (0.5379)  auc: 83.3333 (86.0771)  time: 0.0294  data: 0.0002  max mem: 5308
[16:19:40.131131] Test:  [540/560]  eta: 0:00:00  loss: 0.5661 (0.5380)  auc: 84.3137 (86.0803)  time: 0.0294  data: 0.0002  max mem: 5308
[16:19:40.419223] Test:  [550/560]  eta: 0:00:00  loss: 0.5323 (0.5378)  auc: 90.6883 (86.1869)  time: 0.0290  data: 0.0001  max mem: 5308
[16:19:40.663676] Test:  [559/560]  eta: 0:00:00  loss: 0.5252 (0.5374)  auc: 90.4545 (86.1971)  time: 0.0280  data: 0.0001  max mem: 5308
[16:19:40.819742] Test: Total time: 0:00:18 (0.0333 s / it)
[16:19:40.820725] * Auc 86.264  loss 0.538
[16:19:40.820891] AUC of the network on the 35796 val images: 86.26%
[16:19:40.820907] Max auc: 86.26%
[16:19:40.820939] Save model with min_val_loss at epoch: 1
[16:19:46.339390] log_dir: ./checkpoint/finetuned_models/FF++_c23_32frames
[16:19:47.637979] Epoch: [2]  [   0/2877]  eta: 1:02:10  lr: 0.000025  loss: 0.7165 (0.7165)  time: 1.2968  data: 1.1477  max mem: 5308
[16:20:01.267124] Epoch: [2]  [ 100/2877]  eta: 0:06:50  lr: 0.000025  loss: 0.6604 (0.6752)  time: 0.1364  data: 0.0001  max mem: 5308
[16:20:15.258477] Epoch: [2]  [ 200/2877]  eta: 0:06:25  lr: 0.000026  loss: 0.6904 (0.6746)  time: 0.1441  data: 0.0002  max mem: 5308
[16:20:29.239041] Epoch: [2]  [ 300/2877]  eta: 0:06:07  lr: 0.000026  loss: 0.6594 (0.6719)  time: 0.1358  data: 0.0001  max mem: 5308
[16:20:42.969540] Epoch: [2]  [ 400/2877]  eta: 0:05:49  lr: 0.000027  loss: 0.6765 (0.6732)  time: 0.1372  data: 0.0001  max mem: 5308
[16:20:56.764980] Epoch: [2]  [ 500/2877]  eta: 0:05:34  lr: 0.000027  loss: 0.6765 (0.6721)  time: 0.1347  data: 0.0001  max mem: 5308
[16:21:10.409059] Epoch: [2]  [ 600/2877]  eta: 0:05:18  lr: 0.000028  loss: 0.6658 (0.6726)  time: 0.1362  data: 0.0002  max mem: 5308
[16:21:23.903876] Epoch: [2]  [ 700/2877]  eta: 0:05:02  lr: 0.000028  loss: 0.6737 (0.6726)  time: 0.1364  data: 0.0002  max mem: 5308
[16:21:37.450678] Epoch: [2]  [ 800/2877]  eta: 0:04:48  lr: 0.000028  loss: 0.6704 (0.6724)  time: 0.1350  data: 0.0002  max mem: 5308
[16:21:50.989475] Epoch: [2]  [ 900/2877]  eta: 0:04:33  lr: 0.000029  loss: 0.6576 (0.6718)  time: 0.1349  data: 0.0001  max mem: 5308
[16:22:04.709834] Epoch: [2]  [1000/2877]  eta: 0:04:19  lr: 0.000029  loss: 0.6528 (0.6716)  time: 0.1386  data: 0.0002  max mem: 5308
[16:22:18.403792] Epoch: [2]  [1100/2877]  eta: 0:04:05  lr: 0.000030  loss: 0.6631 (0.6712)  time: 0.1371  data: 0.0002  max mem: 5308
[16:22:31.932525] Epoch: [2]  [1200/2877]  eta: 0:03:51  lr: 0.000030  loss: 0.6615 (0.6704)  time: 0.1351  data: 0.0002  max mem: 5308
[16:22:45.480301] Epoch: [2]  [1300/2877]  eta: 0:03:37  lr: 0.000031  loss: 0.6593 (0.6699)  time: 0.1340  data: 0.0003  max mem: 5308
[16:22:59.098426] Epoch: [2]  [1400/2877]  eta: 0:03:23  lr: 0.000031  loss: 0.6724 (0.6699)  time: 0.1381  data: 0.0001  max mem: 5308
[16:23:12.669181] Epoch: [2]  [1500/2877]  eta: 0:03:09  lr: 0.000032  loss: 0.6577 (0.6696)  time: 0.1353  data: 0.0002  max mem: 5308
[16:23:26.308111] Epoch: [2]  [1600/2877]  eta: 0:02:55  lr: 0.000032  loss: 0.6637 (0.6692)  time: 0.1360  data: 0.0001  max mem: 5308
[16:23:39.853575] Epoch: [2]  [1700/2877]  eta: 0:02:41  lr: 0.000032  loss: 0.6608 (0.6687)  time: 0.1345  data: 0.0001  max mem: 5308
[16:23:53.416766] Epoch: [2]  [1800/2877]  eta: 0:02:27  lr: 0.000033  loss: 0.6728 (0.6684)  time: 0.1360  data: 0.0002  max mem: 5308
[16:24:07.145006] Epoch: [2]  [1900/2877]  eta: 0:02:14  lr: 0.000033  loss: 0.6593 (0.6683)  time: 0.1379  data: 0.0002  max mem: 5308
[16:24:20.744708] Epoch: [2]  [2000/2877]  eta: 0:02:00  lr: 0.000034  loss: 0.6531 (0.6680)  time: 0.1366  data: 0.0002  max mem: 5308
[16:24:34.345699] Epoch: [2]  [2100/2877]  eta: 0:01:46  lr: 0.000034  loss: 0.6766 (0.6679)  time: 0.1341  data: 0.0001  max mem: 5308
[16:24:47.709802] Epoch: [2]  [2200/2877]  eta: 0:01:32  lr: 0.000035  loss: 0.6689 (0.6678)  time: 0.1339  data: 0.0002  max mem: 5308
[16:25:01.120341] Epoch: [2]  [2300/2877]  eta: 0:01:18  lr: 0.000035  loss: 0.6509 (0.6675)  time: 0.1345  data: 0.0001  max mem: 5308
[16:25:14.925764] Epoch: [2]  [2400/2877]  eta: 0:01:05  lr: 0.000035  loss: 0.6481 (0.6673)  time: 0.1367  data: 0.0001  max mem: 5308
[16:25:28.427998] Epoch: [2]  [2500/2877]  eta: 0:00:51  lr: 0.000036  loss: 0.6668 (0.6670)  time: 0.1344  data: 0.0001  max mem: 5308
[16:25:41.875240] Epoch: [2]  [2600/2877]  eta: 0:00:37  lr: 0.000036  loss: 0.6613 (0.6667)  time: 0.1346  data: 0.0002  max mem: 5308
[16:25:55.592308] Epoch: [2]  [2700/2877]  eta: 0:00:24  lr: 0.000037  loss: 0.6785 (0.6669)  time: 0.1345  data: 0.0001  max mem: 5308
[16:26:08.957665] Epoch: [2]  [2800/2877]  eta: 0:00:10  lr: 0.000037  loss: 0.6531 (0.6667)  time: 0.1343  data: 0.0001  max mem: 5308
[16:26:19.181296] Epoch: [2]  [2876/2877]  eta: 0:00:00  lr: 0.000037  loss: 0.6555 (0.6665)  time: 0.1339  data: 0.0002  max mem: 5308
[16:26:19.477982] Epoch: [2] Total time: 0:06:33 (0.1366 s / it)
[16:26:19.479622] Averaged stats: lr: 0.000037  loss: 0.6555 (0.6670)
[16:26:21.111044] Test:  [  0/560]  eta: 0:15:10  loss: 0.5531 (0.5531)  auc: 84.3137 (84.3137)  time: 1.6265  data: 1.5928  max mem: 5308
[16:26:21.405558] Test:  [ 10/560]  eta: 0:01:35  loss: 0.5306 (0.5092)  auc: 84.6154 (85.2935)  time: 0.1745  data: 0.1449  max mem: 5308
[16:26:21.699526] Test:  [ 20/560]  eta: 0:00:56  loss: 0.4709 (0.4845)  auc: 88.4921 (88.1831)  time: 0.0293  data: 0.0001  max mem: 5308
[16:26:21.994245] Test:  [ 30/560]  eta: 0:00:42  loss: 0.4340 (0.4645)  auc: 92.1569 (89.8603)  time: 0.0294  data: 0.0001  max mem: 5308
[16:26:22.288917] Test:  [ 40/560]  eta: 0:00:35  loss: 0.4404 (0.4692)  auc: 92.1569 (89.1604)  time: 0.0294  data: 0.0002  max mem: 5308
[16:26:22.582875] Test:  [ 50/560]  eta: 0:00:30  loss: 0.4447 (0.4692)  auc: 89.0196 (89.4849)  time: 0.0294  data: 0.0002  max mem: 5308
[16:26:22.876857] Test:  [ 60/560]  eta: 0:00:27  loss: 0.4571 (0.4679)  auc: 89.2857 (89.4706)  time: 0.0293  data: 0.0002  max mem: 5308
[16:26:23.171834] Test:  [ 70/560]  eta: 0:00:25  loss: 0.4538 (0.4656)  auc: 90.4545 (89.7818)  time: 0.0294  data: 0.0002  max mem: 5308
[16:26:23.468136] Test:  [ 80/560]  eta: 0:00:23  loss: 0.4326 (0.4630)  auc: 90.6250 (90.0154)  time: 0.0295  data: 0.0002  max mem: 5308
[16:26:23.764308] Test:  [ 90/560]  eta: 0:00:22  loss: 0.4345 (0.4628)  auc: 90.9091 (90.1639)  time: 0.0295  data: 0.0002  max mem: 5308
[16:26:24.059547] Test:  [100/560]  eta: 0:00:20  loss: 0.4393 (0.4615)  auc: 92.1569 (90.3776)  time: 0.0295  data: 0.0002  max mem: 5308
[16:26:24.354243] Test:  [110/560]  eta: 0:00:19  loss: 0.4393 (0.4594)  auc: 91.6667 (90.4877)  time: 0.0294  data: 0.0002  max mem: 5308
[16:26:24.648435] Test:  [120/560]  eta: 0:00:18  loss: 0.4542 (0.4640)  auc: 89.3720 (90.1903)  time: 0.0294  data: 0.0001  max mem: 5308
[16:26:24.943355] Test:  [130/560]  eta: 0:00:17  loss: 0.4643 (0.4642)  auc: 89.0873 (90.2240)  time: 0.0294  data: 0.0001  max mem: 5308
[16:26:25.238808] Test:  [140/560]  eta: 0:00:17  loss: 0.4643 (0.4665)  auc: 89.4531 (90.1040)  time: 0.0294  data: 0.0002  max mem: 5308
[16:26:25.533929] Test:  [150/560]  eta: 0:00:16  loss: 0.4592 (0.4659)  auc: 89.4531 (90.0881)  time: 0.0295  data: 0.0002  max mem: 5308
[16:26:25.828892] Test:  [160/560]  eta: 0:00:15  loss: 0.4181 (0.4635)  auc: 92.9167 (90.3370)  time: 0.0294  data: 0.0002  max mem: 5308
[16:26:26.123891] Test:  [170/560]  eta: 0:00:15  loss: 0.4133 (0.4626)  auc: 92.9688 (90.4135)  time: 0.0294  data: 0.0002  max mem: 5308
[16:26:26.418348] Test:  [180/560]  eta: 0:00:14  loss: 0.4463 (0.4639)  auc: 91.9028 (90.4030)  time: 0.0294  data: 0.0002  max mem: 5308
[16:26:26.711305] Test:  [190/560]  eta: 0:00:13  loss: 0.4716 (0.4649)  auc: 89.4118 (90.3332)  time: 0.0293  data: 0.0001  max mem: 5308
[16:26:27.004262] Test:  [200/560]  eta: 0:00:13  loss: 0.4675 (0.4636)  auc: 89.7917 (90.4004)  time: 0.0292  data: 0.0001  max mem: 5308
[16:26:27.297394] Test:  [210/560]  eta: 0:00:12  loss: 0.4640 (0.4640)  auc: 90.5882 (90.3557)  time: 0.0292  data: 0.0001  max mem: 5308
[16:26:27.591396] Test:  [220/560]  eta: 0:00:12  loss: 0.4640 (0.4636)  auc: 89.8039 (90.3635)  time: 0.0293  data: 0.0001  max mem: 5308
[16:26:27.884366] Test:  [230/560]  eta: 0:00:11  loss: 0.4636 (0.4636)  auc: 90.8730 (90.3789)  time: 0.0293  data: 0.0002  max mem: 5308
[16:26:28.177439] Test:  [240/560]  eta: 0:00:11  loss: 0.4665 (0.4633)  auc: 90.8730 (90.4067)  time: 0.0292  data: 0.0001  max mem: 5308
[16:26:28.470520] Test:  [250/560]  eta: 0:00:11  loss: 0.4435 (0.4629)  auc: 90.0794 (90.3966)  time: 0.0292  data: 0.0001  max mem: 5308
[16:26:28.763102] Test:  [260/560]  eta: 0:00:10  loss: 0.4049 (0.4607)  auc: 94.7917 (90.5515)  time: 0.0292  data: 0.0001  max mem: 5308
[16:26:29.055926] Test:  [270/560]  eta: 0:00:10  loss: 0.4417 (0.4617)  auc: 91.7647 (90.4599)  time: 0.0292  data: 0.0001  max mem: 5308
[16:26:29.349590] Test:  [280/560]  eta: 0:00:09  loss: 0.4523 (0.4609)  auc: 90.8730 (90.5731)  time: 0.0292  data: 0.0001  max mem: 5308
[16:26:29.643414] Test:  [290/560]  eta: 0:00:09  loss: 0.4692 (0.4622)  auc: 90.8333 (90.5487)  time: 0.0293  data: 0.0001  max mem: 5308
[16:26:29.940927] Test:  [300/560]  eta: 0:00:09  loss: 0.4692 (0.4610)  auc: 90.8333 (90.6489)  time: 0.0295  data: 0.0001  max mem: 5308
[16:26:30.235024] Test:  [310/560]  eta: 0:00:08  loss: 0.4482 (0.4614)  auc: 92.9688 (90.5925)  time: 0.0295  data: 0.0002  max mem: 5308
[16:26:30.528499] Test:  [320/560]  eta: 0:00:08  loss: 0.4773 (0.4619)  auc: 89.0196 (90.5660)  time: 0.0293  data: 0.0002  max mem: 5308
[16:26:30.821331] Test:  [330/560]  eta: 0:00:07  loss: 0.4512 (0.4615)  auc: 90.4762 (90.6389)  time: 0.0292  data: 0.0001  max mem: 5308
[16:26:31.115061] Test:  [340/560]  eta: 0:00:07  loss: 0.4437 (0.4608)  auc: 93.3333 (90.6772)  time: 0.0293  data: 0.0001  max mem: 5308
[16:26:31.408505] Test:  [350/560]  eta: 0:00:07  loss: 0.4366 (0.4602)  auc: 92.5490 (90.7098)  time: 0.0293  data: 0.0001  max mem: 5308
[16:26:31.701236] Test:  [360/560]  eta: 0:00:06  loss: 0.4639 (0.4611)  auc: 90.1961 (90.6646)  time: 0.0292  data: 0.0002  max mem: 5308
[16:26:31.995097] Test:  [370/560]  eta: 0:00:06  loss: 0.4716 (0.4615)  auc: 90.1961 (90.6945)  time: 0.0292  data: 0.0001  max mem: 5308
[16:26:32.287887] Test:  [380/560]  eta: 0:00:06  loss: 0.4561 (0.4614)  auc: 90.0810 (90.7008)  time: 0.0292  data: 0.0001  max mem: 5308
[16:26:32.581467] Test:  [390/560]  eta: 0:00:05  loss: 0.4660 (0.4622)  auc: 89.2157 (90.6406)  time: 0.0293  data: 0.0002  max mem: 5308
[16:26:32.875088] Test:  [400/560]  eta: 0:00:05  loss: 0.4820 (0.4631)  auc: 88.3333 (90.5659)  time: 0.0293  data: 0.0002  max mem: 5308
[16:26:33.168588] Test:  [410/560]  eta: 0:00:04  loss: 0.4800 (0.4635)  auc: 85.4902 (90.4969)  time: 0.0293  data: 0.0001  max mem: 5308
[16:26:33.466102] Test:  [420/560]  eta: 0:00:04  loss: 0.4650 (0.4634)  auc: 88.0952 (90.5133)  time: 0.0295  data: 0.0002  max mem: 5308
[16:26:33.760378] Test:  [430/560]  eta: 0:00:04  loss: 0.4337 (0.4628)  auc: 90.2344 (90.5516)  time: 0.0295  data: 0.0002  max mem: 5308
[16:26:34.056815] Test:  [440/560]  eta: 0:00:03  loss: 0.4285 (0.4625)  auc: 92.9412 (90.5902)  time: 0.0295  data: 0.0001  max mem: 5308
[16:26:34.351552] Test:  [450/560]  eta: 0:00:03  loss: 0.4416 (0.4626)  auc: 92.5781 (90.5940)  time: 0.0295  data: 0.0001  max mem: 5308
[16:26:34.653540] Test:  [460/560]  eta: 0:00:03  loss: 0.4745 (0.4634)  auc: 91.4062 (90.5519)  time: 0.0297  data: 0.0002  max mem: 5308
[16:26:34.957577] Test:  [470/560]  eta: 0:00:02  loss: 0.4949 (0.4636)  auc: 91.2500 (90.5349)  time: 0.0302  data: 0.0002  max mem: 5308
[16:26:35.264652] Test:  [480/560]  eta: 0:00:02  loss: 0.4733 (0.4636)  auc: 90.9804 (90.5347)  time: 0.0304  data: 0.0002  max mem: 5308
[16:26:35.562485] Test:  [490/560]  eta: 0:00:02  loss: 0.4581 (0.4632)  auc: 90.8333 (90.5474)  time: 0.0301  data: 0.0002  max mem: 5308
[16:26:35.858423] Test:  [500/560]  eta: 0:00:01  loss: 0.4391 (0.4628)  auc: 91.2698 (90.5832)  time: 0.0296  data: 0.0002  max mem: 5308
[16:26:36.153921] Test:  [510/560]  eta: 0:00:01  loss: 0.4369 (0.4629)  auc: 91.0931 (90.5886)  time: 0.0295  data: 0.0002  max mem: 5308
[16:26:36.447778] Test:  [520/560]  eta: 0:00:01  loss: 0.4962 (0.4635)  auc: 88.4921 (90.5208)  time: 0.0294  data: 0.0002  max mem: 5308
[16:26:36.743644] Test:  [530/560]  eta: 0:00:00  loss: 0.4980 (0.4645)  auc: 86.7188 (90.4640)  time: 0.0294  data: 0.0001  max mem: 5308
[16:26:37.041015] Test:  [540/560]  eta: 0:00:00  loss: 0.4834 (0.4649)  auc: 90.8730 (90.4612)  time: 0.0296  data: 0.0002  max mem: 5308
[16:26:37.334678] Test:  [550/560]  eta: 0:00:00  loss: 0.4619 (0.4647)  auc: 93.7500 (90.5577)  time: 0.0295  data: 0.0002  max mem: 5308
[16:26:37.578430] Test:  [559/560]  eta: 0:00:00  loss: 0.4506 (0.4643)  auc: 93.1174 (90.5584)  time: 0.0283  data: 0.0001  max mem: 5308
[16:26:37.739991] Test: Total time: 0:00:18 (0.0326 s / it)
[16:26:37.935279] * Auc 90.655  loss 0.465
[16:26:37.935464] AUC of the network on the 35796 val images: 90.66%
[16:26:37.935478] Max auc: 90.66%
[16:26:37.935494] Save model with min_val_loss at epoch: 2
[16:26:43.878768] log_dir: ./checkpoint/finetuned_models/FF++_c23_32frames
[16:26:45.050746] Epoch: [3]  [   0/2877]  eta: 0:56:07  lr: 0.000038  loss: 0.6943 (0.6943)  time: 1.1703  data: 1.0218  max mem: 5308
[16:26:58.596383] Epoch: [3]  [ 100/2877]  eta: 0:06:44  lr: 0.000038  loss: 0.6621 (0.6595)  time: 0.1376  data: 0.0003  max mem: 5308
[16:27:12.195681] Epoch: [3]  [ 200/2877]  eta: 0:06:17  lr: 0.000038  loss: 0.6638 (0.6616)  time: 0.1365  data: 0.0001  max mem: 5308
[16:27:25.812936] Epoch: [3]  [ 300/2877]  eta: 0:05:58  lr: 0.000039  loss: 0.6623 (0.6614)  time: 0.1360  data: 0.0002  max mem: 5308
[16:27:39.436733] Epoch: [3]  [ 400/2877]  eta: 0:05:43  lr: 0.000039  loss: 0.6630 (0.6607)  time: 0.1359  data: 0.0001  max mem: 5308
[16:27:53.086569] Epoch: [3]  [ 500/2877]  eta: 0:05:28  lr: 0.000040  loss: 0.6543 (0.6599)  time: 0.1355  data: 0.0001  max mem: 5308
[16:28:06.627451] Epoch: [3]  [ 600/2877]  eta: 0:05:13  lr: 0.000040  loss: 0.6741 (0.6592)  time: 0.1353  data: 0.0002  max mem: 5308
[16:28:20.210534] Epoch: [3]  [ 700/2877]  eta: 0:04:59  lr: 0.000041  loss: 0.6428 (0.6581)  time: 0.1360  data: 0.0002  max mem: 5308
[16:28:33.950740] Epoch: [3]  [ 800/2877]  eta: 0:04:45  lr: 0.000041  loss: 0.6669 (0.6593)  time: 0.1357  data: 0.0002  max mem: 5308
[16:28:47.619977] Epoch: [3]  [ 900/2877]  eta: 0:04:31  lr: 0.000041  loss: 0.6650 (0.6594)  time: 0.1349  data: 0.0001  max mem: 5308
[16:29:01.214547] Epoch: [3]  [1000/2877]  eta: 0:04:17  lr: 0.000042  loss: 0.6498 (0.6593)  time: 0.1353  data: 0.0001  max mem: 5308
[16:29:14.820381] Epoch: [3]  [1100/2877]  eta: 0:04:03  lr: 0.000042  loss: 0.6678 (0.6601)  time: 0.1364  data: 0.0002  max mem: 5308
[16:29:28.539202] Epoch: [3]  [1200/2877]  eta: 0:03:49  lr: 0.000043  loss: 0.6594 (0.6600)  time: 0.1388  data: 0.0002  max mem: 5308
[16:29:42.284180] Epoch: [3]  [1300/2877]  eta: 0:03:36  lr: 0.000043  loss: 0.6500 (0.6595)  time: 0.1365  data: 0.0002  max mem: 5308
[16:29:56.322270] Epoch: [3]  [1400/2877]  eta: 0:03:22  lr: 0.000044  loss: 0.6544 (0.6592)  time: 0.1418  data: 0.0002  max mem: 5308
[16:30:09.870311] Epoch: [3]  [1500/2877]  eta: 0:03:08  lr: 0.000044  loss: 0.6399 (0.6588)  time: 0.1356  data: 0.0002  max mem: 5308
[16:30:23.425541] Epoch: [3]  [1600/2877]  eta: 0:02:55  lr: 0.000044  loss: 0.6411 (0.6585)  time: 0.1346  data: 0.0001  max mem: 5308
[16:30:36.996074] Epoch: [3]  [1700/2877]  eta: 0:02:41  lr: 0.000045  loss: 0.6385 (0.6583)  time: 0.1351  data: 0.0001  max mem: 5308
[16:30:50.562991] Epoch: [3]  [1800/2877]  eta: 0:02:27  lr: 0.000045  loss: 0.6388 (0.6580)  time: 0.1363  data: 0.0002  max mem: 5308
[16:31:04.243200] Epoch: [3]  [1900/2877]  eta: 0:02:13  lr: 0.000046  loss: 0.6377 (0.6577)  time: 0.1365  data: 0.0001  max mem: 5308
[16:31:17.823299] Epoch: [3]  [2000/2877]  eta: 0:02:00  lr: 0.000046  loss: 0.6447 (0.6573)  time: 0.1360  data: 0.0002  max mem: 5308
[16:31:31.678856] Epoch: [3]  [2100/2877]  eta: 0:01:46  lr: 0.000047  loss: 0.6652 (0.6572)  time: 0.1368  data: 0.0002  max mem: 5308
[16:31:45.098358] Epoch: [3]  [2200/2877]  eta: 0:01:32  lr: 0.000047  loss: 0.6440 (0.6570)  time: 0.1342  data: 0.0001  max mem: 5308
[16:31:58.595272] Epoch: [3]  [2300/2877]  eta: 0:01:18  lr: 0.000047  loss: 0.6484 (0.6567)  time: 0.1352  data: 0.0001  max mem: 5308
[16:32:12.193128] Epoch: [3]  [2400/2877]  eta: 0:01:05  lr: 0.000048  loss: 0.6542 (0.6568)  time: 0.1345  data: 0.0001  max mem: 5308
[16:32:25.689839] Epoch: [3]  [2500/2877]  eta: 0:00:51  lr: 0.000048  loss: 0.6394 (0.6564)  time: 0.1346  data: 0.0002  max mem: 5308
[16:32:39.157908] Epoch: [3]  [2600/2877]  eta: 0:00:37  lr: 0.000049  loss: 0.6660 (0.6563)  time: 0.1344  data: 0.0001  max mem: 5308
[16:32:52.778353] Epoch: [3]  [2700/2877]  eta: 0:00:24  lr: 0.000049  loss: 0.6547 (0.6562)  time: 0.1349  data: 0.0002  max mem: 5308
[16:33:06.511982] Epoch: [3]  [2800/2877]  eta: 0:00:10  lr: 0.000050  loss: 0.6472 (0.6562)  time: 0.1368  data: 0.0002  max mem: 5308
[16:33:16.829379] Epoch: [3]  [2876/2877]  eta: 0:00:00  lr: 0.000050  loss: 0.6689 (0.6563)  time: 0.1347  data: 0.0003  max mem: 5308
[16:33:17.134921] Epoch: [3] Total time: 0:06:33 (0.1367 s / it)
[16:33:17.139310] Averaged stats: lr: 0.000050  loss: 0.6689 (0.6556)
[16:33:18.709785] Test:  [  0/560]  eta: 0:14:35  loss: 0.4656 (0.4656)  auc: 89.8039 (89.8039)  time: 1.5641  data: 1.5292  max mem: 5308
[16:33:19.045121] Test:  [ 10/560]  eta: 0:01:34  loss: 0.4633 (0.4501)  auc: 89.4737 (89.1802)  time: 0.1726  data: 0.1427  max mem: 5308
[16:33:19.339624] Test:  [ 20/560]  eta: 0:00:56  loss: 0.4258 (0.4267)  auc: 90.8730 (91.0200)  time: 0.0314  data: 0.0021  max mem: 5308
[16:33:19.638472] Test:  [ 30/560]  eta: 0:00:42  loss: 0.3888 (0.4056)  auc: 93.5065 (92.1459)  time: 0.0296  data: 0.0002  max mem: 5308
[16:33:19.937800] Test:  [ 40/560]  eta: 0:00:35  loss: 0.3762 (0.4098)  auc: 92.9412 (91.6432)  time: 0.0298  data: 0.0002  max mem: 5308
[16:33:20.235685] Test:  [ 50/560]  eta: 0:00:30  loss: 0.3905 (0.4110)  auc: 90.5882 (91.7305)  time: 0.0298  data: 0.0002  max mem: 5308
[16:33:20.531242] Test:  [ 60/560]  eta: 0:00:27  loss: 0.4165 (0.4106)  auc: 90.8730 (91.6471)  time: 0.0296  data: 0.0002  max mem: 5308
[16:33:20.826597] Test:  [ 70/560]  eta: 0:00:25  loss: 0.4148 (0.4081)  auc: 91.2500 (91.7978)  time: 0.0295  data: 0.0002  max mem: 5308
[16:33:21.124013] Test:  [ 80/560]  eta: 0:00:23  loss: 0.3648 (0.4042)  auc: 92.7083 (92.1027)  time: 0.0296  data: 0.0002  max mem: 5308
[16:33:21.432703] Test:  [ 90/560]  eta: 0:00:22  loss: 0.3535 (0.4040)  auc: 93.9394 (92.3078)  time: 0.0302  data: 0.0003  max mem: 5308
[16:33:21.727987] Test:  [100/560]  eta: 0:00:20  loss: 0.3846 (0.4021)  auc: 94.1176 (92.4474)  time: 0.0301  data: 0.0003  max mem: 5308
[16:33:22.049702] Test:  [110/560]  eta: 0:00:19  loss: 0.3763 (0.4003)  auc: 94.1176 (92.4311)  time: 0.0308  data: 0.0010  max mem: 5308
[16:33:22.358594] Test:  [120/560]  eta: 0:00:18  loss: 0.3895 (0.4054)  auc: 90.9804 (92.2035)  time: 0.0309  data: 0.0010  max mem: 5308
[16:33:22.662434] Test:  [130/560]  eta: 0:00:18  loss: 0.4027 (0.4055)  auc: 92.7451 (92.2564)  time: 0.0300  data: 0.0004  max mem: 5308
[16:33:22.962125] Test:  [140/560]  eta: 0:00:17  loss: 0.4011 (0.4073)  auc: 92.8571 (92.2185)  time: 0.0301  data: 0.0004  max mem: 5308
[16:33:23.269137] Test:  [150/560]  eta: 0:00:16  loss: 0.4011 (0.4064)  auc: 91.4062 (92.2495)  time: 0.0302  data: 0.0003  max mem: 5308
[16:33:23.592149] Test:  [160/560]  eta: 0:00:15  loss: 0.3548 (0.4028)  auc: 94.7917 (92.4752)  time: 0.0314  data: 0.0009  max mem: 5308
[16:33:23.908228] Test:  [170/560]  eta: 0:00:15  loss: 0.3475 (0.4015)  auc: 94.5312 (92.5682)  time: 0.0319  data: 0.0014  max mem: 5308
[16:33:24.210706] Test:  [180/560]  eta: 0:00:14  loss: 0.3812 (0.4022)  auc: 94.3320 (92.5973)  time: 0.0309  data: 0.0008  max mem: 5308
[16:33:24.530997] Test:  [190/560]  eta: 0:00:14  loss: 0.4044 (0.4032)  auc: 92.0635 (92.5135)  time: 0.0311  data: 0.0006  max mem: 5308
[16:33:24.830979] Test:  [200/560]  eta: 0:00:13  loss: 0.4016 (0.4014)  auc: 92.9412 (92.6151)  time: 0.0309  data: 0.0007  max mem: 5308
[16:33:25.154002] Test:  [210/560]  eta: 0:00:13  loss: 0.4014 (0.4020)  auc: 92.9167 (92.5588)  time: 0.0311  data: 0.0005  max mem: 5308
[16:33:25.488443] Test:  [220/560]  eta: 0:00:12  loss: 0.4014 (0.4015)  auc: 92.7126 (92.5921)  time: 0.0327  data: 0.0006  max mem: 5308
[16:33:25.787408] Test:  [230/560]  eta: 0:00:12  loss: 0.3993 (0.4017)  auc: 93.3333 (92.6013)  time: 0.0315  data: 0.0004  max mem: 5308
[16:33:26.101067] Test:  [240/560]  eta: 0:00:11  loss: 0.3970 (0.4012)  auc: 92.8571 (92.6410)  time: 0.0305  data: 0.0004  max mem: 5308
[16:33:26.399829] Test:  [250/560]  eta: 0:00:11  loss: 0.3769 (0.4007)  auc: 92.4603 (92.6418)  time: 0.0305  data: 0.0004  max mem: 5308
[16:33:26.696777] Test:  [260/560]  eta: 0:00:10  loss: 0.3375 (0.3984)  auc: 95.6863 (92.7598)  time: 0.0297  data: 0.0002  max mem: 5308
[16:33:26.989731] Test:  [270/560]  eta: 0:00:10  loss: 0.3788 (0.3992)  auc: 94.0476 (92.7416)  time: 0.0294  data: 0.0002  max mem: 5308
[16:33:27.287478] Test:  [280/560]  eta: 0:00:10  loss: 0.3893 (0.3977)  auc: 95.2381 (92.8583)  time: 0.0295  data: 0.0002  max mem: 5308
[16:33:27.584979] Test:  [290/560]  eta: 0:00:09  loss: 0.3932 (0.3986)  auc: 94.5833 (92.8585)  time: 0.0297  data: 0.0002  max mem: 5308
[16:33:27.881259] Test:  [300/560]  eta: 0:00:09  loss: 0.3932 (0.3975)  auc: 94.4444 (92.9134)  time: 0.0296  data: 0.0002  max mem: 5308
[16:33:28.180188] Test:  [310/560]  eta: 0:00:08  loss: 0.3861 (0.3980)  auc: 94.3359 (92.8552)  time: 0.0297  data: 0.0002  max mem: 5308
[16:33:28.484366] Test:  [320/560]  eta: 0:00:08  loss: 0.4158 (0.3987)  auc: 90.5882 (92.8233)  time: 0.0301  data: 0.0002  max mem: 5308
[16:33:28.780174] Test:  [330/560]  eta: 0:00:08  loss: 0.3940 (0.3981)  auc: 93.6508 (92.8770)  time: 0.0299  data: 0.0002  max mem: 5308
[16:33:29.077141] Test:  [340/560]  eta: 0:00:07  loss: 0.3766 (0.3975)  auc: 94.9219 (92.9039)  time: 0.0296  data: 0.0002  max mem: 5308
[16:33:29.375631] Test:  [350/560]  eta: 0:00:07  loss: 0.3710 (0.3971)  auc: 94.4444 (92.9181)  time: 0.0296  data: 0.0002  max mem: 5308
[16:33:29.674596] Test:  [360/560]  eta: 0:00:06  loss: 0.3913 (0.3981)  auc: 94.3320 (92.8836)  time: 0.0297  data: 0.0002  max mem: 5308
[16:33:29.978078] Test:  [370/560]  eta: 0:00:06  loss: 0.4071 (0.3984)  auc: 91.3725 (92.9106)  time: 0.0300  data: 0.0002  max mem: 5308
[16:33:30.273528] Test:  [380/560]  eta: 0:00:06  loss: 0.3977 (0.3984)  auc: 91.7749 (92.8958)  time: 0.0298  data: 0.0002  max mem: 5308
[16:33:30.570540] Test:  [390/560]  eta: 0:00:05  loss: 0.3983 (0.3990)  auc: 92.8571 (92.8694)  time: 0.0295  data: 0.0002  max mem: 5308
[16:33:30.871713] Test:  [400/560]  eta: 0:00:05  loss: 0.4159 (0.4001)  auc: 92.4603 (92.8002)  time: 0.0298  data: 0.0002  max mem: 5308
[16:33:31.169944] Test:  [410/560]  eta: 0:00:05  loss: 0.4183 (0.4004)  auc: 90.2778 (92.7698)  time: 0.0299  data: 0.0002  max mem: 5308
[16:33:31.466163] Test:  [420/560]  eta: 0:00:04  loss: 0.3997 (0.4005)  auc: 90.2778 (92.7564)  time: 0.0296  data: 0.0002  max mem: 5308
[16:33:31.776466] Test:  [430/560]  eta: 0:00:04  loss: 0.3553 (0.3997)  auc: 92.0635 (92.7807)  time: 0.0302  data: 0.0002  max mem: 5308
[16:33:32.077589] Test:  [440/560]  eta: 0:00:04  loss: 0.3489 (0.3991)  auc: 96.0317 (92.8355)  time: 0.0305  data: 0.0002  max mem: 5308
[16:33:32.376383] Test:  [450/560]  eta: 0:00:03  loss: 0.3726 (0.3992)  auc: 94.5312 (92.8254)  time: 0.0299  data: 0.0002  max mem: 5308
[16:33:32.681431] Test:  [460/560]  eta: 0:00:03  loss: 0.4115 (0.4002)  auc: 92.7126 (92.7846)  time: 0.0299  data: 0.0002  max mem: 5308
[16:33:32.978379] Test:  [470/560]  eta: 0:00:03  loss: 0.4388 (0.4004)  auc: 92.9688 (92.7787)  time: 0.0298  data: 0.0002  max mem: 5308
[16:33:33.273434] Test:  [480/560]  eta: 0:00:02  loss: 0.4187 (0.4003)  auc: 92.9688 (92.7861)  time: 0.0295  data: 0.0002  max mem: 5308
[16:33:33.568824] Test:  [490/560]  eta: 0:00:02  loss: 0.3820 (0.3999)  auc: 92.9688 (92.8000)  time: 0.0295  data: 0.0002  max mem: 5308
[16:33:33.863661] Test:  [500/560]  eta: 0:00:01  loss: 0.3784 (0.3994)  auc: 93.6508 (92.8325)  time: 0.0294  data: 0.0002  max mem: 5308
[16:33:34.158371] Test:  [510/560]  eta: 0:00:01  loss: 0.3516 (0.3993)  auc: 94.9020 (92.8449)  time: 0.0294  data: 0.0001  max mem: 5308
[16:33:34.453544] Test:  [520/560]  eta: 0:00:01  loss: 0.4263 (0.4003)  auc: 90.2834 (92.7724)  time: 0.0294  data: 0.0002  max mem: 5308
[16:33:34.750686] Test:  [530/560]  eta: 0:00:00  loss: 0.4544 (0.4013)  auc: 89.0688 (92.7377)  time: 0.0295  data: 0.0002  max mem: 5308
[16:33:35.046272] Test:  [540/560]  eta: 0:00:00  loss: 0.4042 (0.4018)  auc: 92.1569 (92.7251)  time: 0.0295  data: 0.0002  max mem: 5308
[16:33:35.340547] Test:  [550/560]  eta: 0:00:00  loss: 0.3983 (0.4016)  auc: 95.1417 (92.7946)  time: 0.0294  data: 0.0002  max mem: 5308
[16:33:35.587489] Test:  [559/560]  eta: 0:00:00  loss: 0.3917 (0.4013)  auc: 94.7368 (92.7929)  time: 0.0285  data: 0.0001  max mem: 5308
[16:33:35.754960] Test: Total time: 0:00:18 (0.0332 s / it)
[16:33:35.888378] * Auc 92.783  loss 0.402
[16:33:35.888657] AUC of the network on the 35796 val images: 92.78%
[16:33:35.888673] Max auc: 92.78%
[16:33:35.888690] Save model with min_val_loss at epoch: 3
[16:33:42.744857] log_dir: ./checkpoint/finetuned_models/FF++_c23_32frames
[16:33:44.042219] Epoch: [4]  [   0/2877]  eta: 1:02:08  lr: 0.000050  loss: 0.6511 (0.6511)  time: 1.2961  data: 1.1590  max mem: 5308
[16:33:57.810826] Epoch: [4]  [ 100/2877]  eta: 0:06:54  lr: 0.000050  loss: 0.6458 (0.6455)  time: 0.1369  data: 0.0001  max mem: 5308
[16:34:11.479424] Epoch: [4]  [ 200/2877]  eta: 0:06:22  lr: 0.000051  loss: 0.6566 (0.6468)  time: 0.1372  data: 0.0002  max mem: 5308
[16:34:25.277174] Epoch: [4]  [ 300/2877]  eta: 0:06:04  lr: 0.000051  loss: 0.6598 (0.6468)  time: 0.1358  data: 0.0002  max mem: 5308
[16:34:38.957024] Epoch: [4]  [ 400/2877]  eta: 0:05:47  lr: 0.000052  loss: 0.6701 (0.6481)  time: 0.1371  data: 0.0002  max mem: 5308
[16:34:52.678582] Epoch: [4]  [ 500/2877]  eta: 0:05:31  lr: 0.000052  loss: 0.6552 (0.6482)  time: 0.1378  data: 0.0002  max mem: 5308
[16:35:06.250517] Epoch: [4]  [ 600/2877]  eta: 0:05:16  lr: 0.000053  loss: 0.6406 (0.6481)  time: 0.1355  data: 0.0001  max mem: 5308
[16:35:19.862980] Epoch: [4]  [ 700/2877]  eta: 0:05:01  lr: 0.000053  loss: 0.6201 (0.6467)  time: 0.1359  data: 0.0001  max mem: 5308
[16:35:33.648142] Epoch: [4]  [ 800/2877]  eta: 0:04:47  lr: 0.000053  loss: 0.6587 (0.6466)  time: 0.1381  data: 0.0002  max mem: 5308
[16:35:47.350552] Epoch: [4]  [ 900/2877]  eta: 0:04:33  lr: 0.000054  loss: 0.6448 (0.6464)  time: 0.1366  data: 0.0002  max mem: 5308
[16:36:00.974971] Epoch: [4]  [1000/2877]  eta: 0:04:19  lr: 0.000054  loss: 0.6556 (0.6460)  time: 0.1366  data: 0.0001  max mem: 5308
[16:36:14.764059] Epoch: [4]  [1100/2877]  eta: 0:04:05  lr: 0.000055  loss: 0.6480 (0.6463)  time: 0.1361  data: 0.0002  max mem: 5308
[16:36:28.453421] Epoch: [4]  [1200/2877]  eta: 0:03:51  lr: 0.000055  loss: 0.6571 (0.6471)  time: 0.1371  data: 0.0002  max mem: 5308
[16:36:42.243190] Epoch: [4]  [1300/2877]  eta: 0:03:37  lr: 0.000056  loss: 0.6494 (0.6471)  time: 0.1416  data: 0.0002  max mem: 5308
[16:36:55.933950] Epoch: [4]  [1400/2877]  eta: 0:03:23  lr: 0.000056  loss: 0.6425 (0.6474)  time: 0.1362  data: 0.0001  max mem: 5308
[16:37:09.685110] Epoch: [4]  [1500/2877]  eta: 0:03:09  lr: 0.000057  loss: 0.6421 (0.6470)  time: 0.1362  data: 0.0002  max mem: 5308
[16:37:23.283264] Epoch: [4]  [1600/2877]  eta: 0:02:55  lr: 0.000057  loss: 0.6546 (0.6476)  time: 0.1368  data: 0.0002  max mem: 5308
[16:37:36.763387] Epoch: [4]  [1700/2877]  eta: 0:02:41  lr: 0.000057  loss: 0.6416 (0.6474)  time: 0.1354  data: 0.0001  max mem: 5308
[16:37:50.349995] Epoch: [4]  [1800/2877]  eta: 0:02:28  lr: 0.000058  loss: 0.6335 (0.6471)  time: 0.1355  data: 0.0003  max mem: 5308
[16:38:04.030844] Epoch: [4]  [1900/2877]  eta: 0:02:14  lr: 0.000058  loss: 0.5991 (0.6469)  time: 0.1357  data: 0.0002  max mem: 5308
[16:38:17.613326] Epoch: [4]  [2000/2877]  eta: 0:02:00  lr: 0.000059  loss: 0.6542 (0.6466)  time: 0.1363  data: 0.0001  max mem: 5308
[16:38:31.268284] Epoch: [4]  [2100/2877]  eta: 0:01:46  lr: 0.000059  loss: 0.6430 (0.6465)  time: 0.1359  data: 0.0002  max mem: 5308
[16:38:44.766551] Epoch: [4]  [2200/2877]  eta: 0:01:32  lr: 0.000060  loss: 0.6393 (0.6461)  time: 0.1347  data: 0.0001  max mem: 5308
[16:38:58.292868] Epoch: [4]  [2300/2877]  eta: 0:01:19  lr: 0.000060  loss: 0.6165 (0.6461)  time: 0.1355  data: 0.0002  max mem: 5308
[16:39:11.843930] Epoch: [4]  [2400/2877]  eta: 0:01:05  lr: 0.000060  loss: 0.6441 (0.6461)  time: 0.1347  data: 0.0001  max mem: 5308
[16:39:25.410481] Epoch: [4]  [2500/2877]  eta: 0:00:51  lr: 0.000061  loss: 0.6400 (0.6460)  time: 0.1351  data: 0.0002  max mem: 5308
[16:39:38.932735] Epoch: [4]  [2600/2877]  eta: 0:00:37  lr: 0.000061  loss: 0.6409 (0.6460)  time: 0.1366  data: 0.0002  max mem: 5308
[16:39:52.658598] Epoch: [4]  [2700/2877]  eta: 0:00:24  lr: 0.000062  loss: 0.6399 (0.6460)  time: 0.1369  data: 0.0002  max mem: 5308
[16:40:06.145199] Epoch: [4]  [2800/2877]  eta: 0:00:10  lr: 0.000062  loss: 0.6222 (0.6457)  time: 0.1347  data: 0.0002  max mem: 5308
[16:40:16.356421] Epoch: [4]  [2876/2877]  eta: 0:00:00  lr: 0.000062  loss: 0.6469 (0.6455)  time: 0.1342  data: 0.0004  max mem: 5308
[16:40:16.636055] Epoch: [4] Total time: 0:06:33 (0.1369 s / it)
[16:40:16.637632] Averaged stats: lr: 0.000062  loss: 0.6469 (0.6465)
[16:40:18.243864] Test:  [  0/560]  eta: 0:14:56  loss: 0.3983 (0.3983)  auc: 91.9608 (91.9608)  time: 1.6007  data: 1.5676  max mem: 5308
[16:40:18.541935] Test:  [ 10/560]  eta: 0:01:34  loss: 0.4247 (0.4286)  auc: 90.3382 (90.6281)  time: 0.1725  data: 0.1427  max mem: 5308
[16:40:18.847959] Test:  [ 20/560]  eta: 0:00:56  loss: 0.3992 (0.4044)  auc: 92.0833 (92.5250)  time: 0.0301  data: 0.0002  max mem: 5308
[16:40:19.148728] Test:  [ 30/560]  eta: 0:00:42  loss: 0.3631 (0.3804)  auc: 95.2941 (93.5242)  time: 0.0302  data: 0.0002  max mem: 5308
[16:40:19.445396] Test:  [ 40/560]  eta: 0:00:35  loss: 0.3395 (0.3816)  auc: 95.4167 (93.3740)  time: 0.0298  data: 0.0002  max mem: 5308
[16:40:19.745332] Test:  [ 50/560]  eta: 0:00:30  loss: 0.3426 (0.3834)  auc: 94.4444 (93.4503)  time: 0.0297  data: 0.0002  max mem: 5308
[16:40:20.044372] Test:  [ 60/560]  eta: 0:00:27  loss: 0.4023 (0.3844)  auc: 92.2078 (93.2596)  time: 0.0299  data: 0.0002  max mem: 5308
[16:40:20.346662] Test:  [ 70/560]  eta: 0:00:25  loss: 0.3979 (0.3820)  auc: 91.6667 (93.2924)  time: 0.0300  data: 0.0003  max mem: 5308
[16:40:20.643227] Test:  [ 80/560]  eta: 0:00:23  loss: 0.3253 (0.3775)  auc: 96.3563 (93.6133)  time: 0.0299  data: 0.0003  max mem: 5308
[16:40:20.937792] Test:  [ 90/560]  eta: 0:00:22  loss: 0.3180 (0.3777)  auc: 96.3563 (93.7296)  time: 0.0295  data: 0.0002  max mem: 5308
[16:40:21.232956] Test:  [100/560]  eta: 0:00:20  loss: 0.3612 (0.3754)  auc: 95.6710 (93.9056)  time: 0.0294  data: 0.0002  max mem: 5308
[16:40:21.529422] Test:  [110/560]  eta: 0:00:19  loss: 0.3424 (0.3735)  auc: 96.0938 (93.9680)  time: 0.0295  data: 0.0002  max mem: 5308
[16:40:21.823675] Test:  [120/560]  eta: 0:00:18  loss: 0.3904 (0.3800)  auc: 91.2698 (93.6949)  time: 0.0294  data: 0.0002  max mem: 5308
[16:40:22.118582] Test:  [130/560]  eta: 0:00:17  loss: 0.3918 (0.3804)  auc: 92.0635 (93.7517)  time: 0.0294  data: 0.0002  max mem: 5308
[16:40:22.413047] Test:  [140/560]  eta: 0:00:17  loss: 0.3775 (0.3816)  auc: 94.7368 (93.7320)  time: 0.0294  data: 0.0002  max mem: 5308
[16:40:22.708760] Test:  [150/560]  eta: 0:00:16  loss: 0.3741 (0.3801)  auc: 95.1417 (93.8032)  time: 0.0294  data: 0.0002  max mem: 5308
[16:40:23.007112] Test:  [160/560]  eta: 0:00:15  loss: 0.3328 (0.3759)  auc: 96.8627 (94.0329)  time: 0.0296  data: 0.0002  max mem: 5308
[16:40:23.309228] Test:  [170/560]  eta: 0:00:15  loss: 0.3082 (0.3742)  auc: 96.8750 (94.1022)  time: 0.0299  data: 0.0002  max mem: 5308
[16:40:23.610047] Test:  [180/560]  eta: 0:00:14  loss: 0.3351 (0.3746)  auc: 95.5466 (94.1337)  time: 0.0300  data: 0.0002  max mem: 5308
[16:40:23.912681] Test:  [190/560]  eta: 0:00:14  loss: 0.3845 (0.3755)  auc: 92.5490 (94.0857)  time: 0.0301  data: 0.0002  max mem: 5308
[16:40:24.217596] Test:  [200/560]  eta: 0:00:13  loss: 0.3530 (0.3737)  auc: 93.7255 (94.1707)  time: 0.0303  data: 0.0002  max mem: 5308
[16:40:24.514705] Test:  [210/560]  eta: 0:00:13  loss: 0.3530 (0.3746)  auc: 94.2460 (94.1157)  time: 0.0300  data: 0.0002  max mem: 5308
[16:40:24.818878] Test:  [220/560]  eta: 0:00:12  loss: 0.3847 (0.3744)  auc: 94.5312 (94.1312)  time: 0.0300  data: 0.0002  max mem: 5308
[16:40:25.123082] Test:  [230/560]  eta: 0:00:12  loss: 0.3771 (0.3744)  auc: 94.5098 (94.1270)  time: 0.0303  data: 0.0003  max mem: 5308
[16:40:25.424692] Test:  [240/560]  eta: 0:00:11  loss: 0.3674 (0.3741)  auc: 93.7255 (94.1363)  time: 0.0302  data: 0.0003  max mem: 5308
[16:40:25.728324] Test:  [250/560]  eta: 0:00:11  loss: 0.3531 (0.3740)  auc: 94.0476 (94.1160)  time: 0.0302  data: 0.0002  max mem: 5308
[16:40:26.029705] Test:  [260/560]  eta: 0:00:10  loss: 0.3019 (0.3719)  auc: 95.2941 (94.2010)  time: 0.0301  data: 0.0002  max mem: 5308
[16:40:26.329324] Test:  [270/560]  eta: 0:00:10  loss: 0.3676 (0.3725)  auc: 94.8413 (94.1887)  time: 0.0299  data: 0.0002  max mem: 5308
[16:40:26.629267] Test:  [280/560]  eta: 0:00:09  loss: 0.3593 (0.3707)  auc: 95.6349 (94.2884)  time: 0.0299  data: 0.0002  max mem: 5308
[16:40:26.928617] Test:  [290/560]  eta: 0:00:09  loss: 0.3593 (0.3717)  auc: 96.5368 (94.2940)  time: 0.0299  data: 0.0002  max mem: 5308
[16:40:27.230075] Test:  [300/560]  eta: 0:00:09  loss: 0.3833 (0.3708)  auc: 95.2381 (94.3361)  time: 0.0299  data: 0.0002  max mem: 5308
[16:40:27.530149] Test:  [310/560]  eta: 0:00:08  loss: 0.3677 (0.3712)  auc: 94.3723 (94.2765)  time: 0.0300  data: 0.0002  max mem: 5308
[16:40:27.831464] Test:  [320/560]  eta: 0:00:08  loss: 0.3743 (0.3717)  auc: 92.9412 (94.2592)  time: 0.0299  data: 0.0002  max mem: 5308
[16:40:28.131337] Test:  [330/560]  eta: 0:00:07  loss: 0.3712 (0.3714)  auc: 94.5833 (94.2804)  time: 0.0300  data: 0.0002  max mem: 5308
[16:40:28.430530] Test:  [340/560]  eta: 0:00:07  loss: 0.3503 (0.3708)  auc: 95.5466 (94.3077)  time: 0.0299  data: 0.0002  max mem: 5308
[16:40:28.731597] Test:  [350/560]  eta: 0:00:07  loss: 0.3503 (0.3704)  auc: 95.3125 (94.3168)  time: 0.0299  data: 0.0002  max mem: 5308
[16:40:29.033453] Test:  [360/560]  eta: 0:00:06  loss: 0.3745 (0.3716)  auc: 94.0476 (94.2794)  time: 0.0300  data: 0.0002  max mem: 5308
[16:40:29.335337] Test:  [370/560]  eta: 0:00:06  loss: 0.3907 (0.3719)  auc: 94.1176 (94.3029)  time: 0.0301  data: 0.0002  max mem: 5308
[16:40:29.637790] Test:  [380/560]  eta: 0:00:06  loss: 0.3695 (0.3719)  auc: 93.3333 (94.2928)  time: 0.0301  data: 0.0003  max mem: 5308
[16:40:29.938532] Test:  [390/560]  eta: 0:00:05  loss: 0.3512 (0.3723)  auc: 94.1406 (94.2889)  time: 0.0300  data: 0.0003  max mem: 5308
[16:40:30.242376] Test:  [400/560]  eta: 0:00:05  loss: 0.3946 (0.3734)  auc: 94.4444 (94.2279)  time: 0.0301  data: 0.0002  max mem: 5308
[16:40:30.542145] Test:  [410/560]  eta: 0:00:05  loss: 0.3965 (0.3739)  auc: 91.2698 (94.1800)  time: 0.0301  data: 0.0002  max mem: 5308
[16:40:30.837880] Test:  [420/560]  eta: 0:00:04  loss: 0.3843 (0.3738)  auc: 92.5781 (94.1766)  time: 0.0297  data: 0.0002  max mem: 5308
[16:40:31.131797] Test:  [430/560]  eta: 0:00:04  loss: 0.3280 (0.3728)  auc: 95.4365 (94.2180)  time: 0.0294  data: 0.0001  max mem: 5308
[16:40:31.426822] Test:  [440/560]  eta: 0:00:04  loss: 0.3213 (0.3721)  auc: 97.2222 (94.2700)  time: 0.0294  data: 0.0001  max mem: 5308
[16:40:31.721996] Test:  [450/560]  eta: 0:00:03  loss: 0.3544 (0.3724)  auc: 95.5466 (94.2590)  time: 0.0294  data: 0.0001  max mem: 5308
[16:40:32.044833] Test:  [460/560]  eta: 0:00:03  loss: 0.3787 (0.3733)  auc: 94.1406 (94.2267)  time: 0.0308  data: 0.0004  max mem: 5308
[16:40:32.355967] Test:  [470/560]  eta: 0:00:02  loss: 0.3958 (0.3735)  auc: 94.1406 (94.2243)  time: 0.0315  data: 0.0004  max mem: 5308
[16:40:32.654999] Test:  [480/560]  eta: 0:00:02  loss: 0.3958 (0.3735)  auc: 94.1406 (94.2142)  time: 0.0303  data: 0.0002  max mem: 5308
[16:40:32.957986] Test:  [490/560]  eta: 0:00:02  loss: 0.3516 (0.3729)  auc: 94.3320 (94.2351)  time: 0.0300  data: 0.0002  max mem: 5308
[16:40:33.262547] Test:  [500/560]  eta: 0:00:01  loss: 0.3226 (0.3724)  auc: 94.9020 (94.2624)  time: 0.0302  data: 0.0002  max mem: 5308
[16:40:33.573445] Test:  [510/560]  eta: 0:00:01  loss: 0.3202 (0.3721)  auc: 95.2381 (94.2822)  time: 0.0306  data: 0.0003  max mem: 5308
[16:40:33.878367] Test:  [520/560]  eta: 0:00:01  loss: 0.3958 (0.3731)  auc: 91.9028 (94.2206)  time: 0.0306  data: 0.0003  max mem: 5308
[16:40:34.186354] Test:  [530/560]  eta: 0:00:00  loss: 0.4133 (0.3742)  auc: 90.6883 (94.1936)  time: 0.0305  data: 0.0002  max mem: 5308
[16:40:34.491950] Test:  [540/560]  eta: 0:00:00  loss: 0.4007 (0.3748)  auc: 94.6860 (94.1792)  time: 0.0306  data: 0.0004  max mem: 5308
[16:40:34.807089] Test:  [550/560]  eta: 0:00:00  loss: 0.3773 (0.3748)  auc: 96.0317 (94.2335)  time: 0.0309  data: 0.0004  max mem: 5308
[16:40:35.060713] Test:  [559/560]  eta: 0:00:00  loss: 0.3609 (0.3746)  auc: 95.9514 (94.2390)  time: 0.0298  data: 0.0002  max mem: 5308
[16:40:35.251088] Test: Total time: 0:00:18 (0.0332 s / it)
[16:40:35.252738] * Auc 94.252  loss 0.374
[16:40:35.253060] AUC of the network on the 35796 val images: 94.25%
[16:40:35.253098] Max auc: 94.25%
[16:40:35.253141] Save model with min_val_loss at epoch: 4
[16:40:42.176151] log_dir: ./checkpoint/finetuned_models/FF++_c23_32frames
[16:40:43.468897] Epoch: [5]  [   0/2877]  eta: 1:01:54  lr: 0.000063  loss: 0.5772 (0.5772)  time: 1.2910  data: 1.1455  max mem: 5308
[16:40:57.012389] Epoch: [5]  [ 100/2877]  eta: 0:06:47  lr: 0.000062  loss: 0.6558 (0.6514)  time: 0.1356  data: 0.0002  max mem: 5308
[16:41:10.585197] Epoch: [5]  [ 200/2877]  eta: 0:06:18  lr: 0.000062  loss: 0.6386 (0.6489)  time: 0.1352  data: 0.0002  max mem: 5308
[16:41:24.182124] Epoch: [5]  [ 300/2877]  eta: 0:05:59  lr: 0.000062  loss: 0.6481 (0.6462)  time: 0.1342  data: 0.0001  max mem: 5308
[16:41:37.615728] Epoch: [5]  [ 400/2877]  eta: 0:05:42  lr: 0.000062  loss: 0.6311 (0.6430)  time: 0.1341  data: 0.0001  max mem: 5308
[16:41:51.353112] Epoch: [5]  [ 500/2877]  eta: 0:05:28  lr: 0.000062  loss: 0.6430 (0.6411)  time: 0.1382  data: 0.0002  max mem: 5308
[16:42:04.927749] Epoch: [5]  [ 600/2877]  eta: 0:05:13  lr: 0.000062  loss: 0.6408 (0.6417)  time: 0.1348  data: 0.0002  max mem: 5308
[16:42:18.387655] Epoch: [5]  [ 700/2877]  eta: 0:04:58  lr: 0.000062  loss: 0.6562 (0.6414)  time: 0.1345  data: 0.0002  max mem: 5308
[16:42:31.892206] Epoch: [5]  [ 800/2877]  eta: 0:04:44  lr: 0.000062  loss: 0.6654 (0.6425)  time: 0.1353  data: 0.0001  max mem: 5308
[16:42:45.447795] Epoch: [5]  [ 900/2877]  eta: 0:04:30  lr: 0.000062  loss: 0.6338 (0.6422)  time: 0.1361  data: 0.0002  max mem: 5308
[16:42:58.998026] Epoch: [5]  [1000/2877]  eta: 0:04:16  lr: 0.000062  loss: 0.6396 (0.6424)  time: 0.1355  data: 0.0001  max mem: 5308
[16:43:12.538461] Epoch: [5]  [1100/2877]  eta: 0:04:02  lr: 0.000062  loss: 0.6217 (0.6406)  time: 0.1359  data: 0.0001  max mem: 5308
[16:43:26.084964] Epoch: [5]  [1200/2877]  eta: 0:03:48  lr: 0.000061  loss: 0.6310 (0.6404)  time: 0.1352  data: 0.0001  max mem: 5308
[16:43:39.714357] Epoch: [5]  [1300/2877]  eta: 0:03:35  lr: 0.000061  loss: 0.6452 (0.6403)  time: 0.1373  data: 0.0002  max mem: 5308
[16:43:53.378611] Epoch: [5]  [1400/2877]  eta: 0:03:21  lr: 0.000061  loss: 0.6413 (0.6405)  time: 0.1358  data: 0.0001  max mem: 5308
[16:44:07.108151] Epoch: [5]  [1500/2877]  eta: 0:03:07  lr: 0.000061  loss: 0.6363 (0.6406)  time: 0.1373  data: 0.0002  max mem: 5308
[16:44:20.632945] Epoch: [5]  [1600/2877]  eta: 0:02:54  lr: 0.000061  loss: 0.6070 (0.6396)  time: 0.1346  data: 0.0002  max mem: 5308
[16:44:34.235762] Epoch: [5]  [1700/2877]  eta: 0:02:40  lr: 0.000060  loss: 0.6470 (0.6391)  time: 0.1358  data: 0.0002  max mem: 5308
[16:44:47.837088] Epoch: [5]  [1800/2877]  eta: 0:02:26  lr: 0.000060  loss: 0.6069 (0.6387)  time: 0.1347  data: 0.0002  max mem: 5308
[16:45:01.361648] Epoch: [5]  [1900/2877]  eta: 0:02:13  lr: 0.000060  loss: 0.6338 (0.6386)  time: 0.1347  data: 0.0001  max mem: 5308
[16:45:14.952500] Epoch: [5]  [2000/2877]  eta: 0:01:59  lr: 0.000060  loss: 0.6231 (0.6382)  time: 0.1364  data: 0.0001  max mem: 5308
[16:45:28.564329] Epoch: [5]  [2100/2877]  eta: 0:01:45  lr: 0.000059  loss: 0.6318 (0.6380)  time: 0.1365  data: 0.0002  max mem: 5308
[16:45:42.300997] Epoch: [5]  [2200/2877]  eta: 0:01:32  lr: 0.000059  loss: 0.6595 (0.6381)  time: 0.1361  data: 0.0002  max mem: 5308
[16:45:55.951614] Epoch: [5]  [2300/2877]  eta: 0:01:18  lr: 0.000059  loss: 0.6247 (0.6380)  time: 0.1375  data: 0.0002  max mem: 5308
[16:46:09.693003] Epoch: [5]  [2400/2877]  eta: 0:01:05  lr: 0.000058  loss: 0.6491 (0.6379)  time: 0.1376  data: 0.0002  max mem: 5308
[16:46:23.322810] Epoch: [5]  [2500/2877]  eta: 0:00:51  lr: 0.000058  loss: 0.6367 (0.6377)  time: 0.1359  data: 0.0001  max mem: 5308
[16:46:36.865571] Epoch: [5]  [2600/2877]  eta: 0:00:37  lr: 0.000058  loss: 0.6260 (0.6374)  time: 0.1364  data: 0.0002  max mem: 5308
[16:46:50.532848] Epoch: [5]  [2700/2877]  eta: 0:00:24  lr: 0.000057  loss: 0.6473 (0.6372)  time: 0.1377  data: 0.0002  max mem: 5308
[16:47:04.219073] Epoch: [5]  [2800/2877]  eta: 0:00:10  lr: 0.000057  loss: 0.6279 (0.6370)  time: 0.1362  data: 0.0001  max mem: 5308
[16:47:14.569461] Epoch: [5]  [2876/2877]  eta: 0:00:00  lr: 0.000057  loss: 0.6627 (0.6368)  time: 0.1348  data: 0.0003  max mem: 5308
[16:47:14.788519] Epoch: [5] Total time: 0:06:32 (0.1365 s / it)
[16:47:14.792874] Averaged stats: lr: 0.000057  loss: 0.6627 (0.6372)
[16:47:16.343459] Test:  [  0/560]  eta: 0:14:25  loss: 0.3417 (0.3417)  auc: 93.3333 (93.3333)  time: 1.5456  data: 1.5114  max mem: 5308
[16:47:16.638769] Test:  [ 10/560]  eta: 0:01:32  loss: 0.3665 (0.3749)  auc: 92.5000 (91.9170)  time: 0.1673  data: 0.1375  max mem: 5308
[16:47:16.932525] Test:  [ 20/560]  eta: 0:00:54  loss: 0.3368 (0.3430)  auc: 94.3320 (93.9786)  time: 0.0294  data: 0.0002  max mem: 5308
[16:47:17.226436] Test:  [ 30/560]  eta: 0:00:41  loss: 0.2718 (0.3218)  auc: 97.2222 (94.7001)  time: 0.0293  data: 0.0001  max mem: 5308
[16:47:17.521685] Test:  [ 40/560]  eta: 0:00:34  loss: 0.2909 (0.3223)  auc: 97.2222 (94.6276)  time: 0.0294  data: 0.0002  max mem: 5308
[16:47:17.816253] Test:  [ 50/560]  eta: 0:00:30  loss: 0.3022 (0.3232)  auc: 96.0317 (94.8007)  time: 0.0294  data: 0.0001  max mem: 5308
[16:47:18.112901] Test:  [ 60/560]  eta: 0:00:27  loss: 0.3461 (0.3246)  auc: 95.3125 (94.6625)  time: 0.0295  data: 0.0001  max mem: 5308
[16:47:18.406924] Test:  [ 70/560]  eta: 0:00:24  loss: 0.3461 (0.3220)  auc: 93.5065 (94.6922)  time: 0.0295  data: 0.0001  max mem: 5308
[16:47:18.702249] Test:  [ 80/560]  eta: 0:00:23  loss: 0.2888 (0.3173)  auc: 95.8333 (94.8807)  time: 0.0294  data: 0.0001  max mem: 5308
[16:47:18.997653] Test:  [ 90/560]  eta: 0:00:21  loss: 0.2574 (0.3169)  auc: 96.4286 (94.9502)  time: 0.0294  data: 0.0002  max mem: 5308
[16:47:19.297397] Test:  [100/560]  eta: 0:00:20  loss: 0.2890 (0.3137)  auc: 96.0938 (95.1163)  time: 0.0297  data: 0.0002  max mem: 5308
[16:47:19.596488] Test:  [110/560]  eta: 0:00:19  loss: 0.2890 (0.3131)  auc: 96.0938 (95.0909)  time: 0.0299  data: 0.0002  max mem: 5308
[16:47:19.897170] Test:  [120/560]  eta: 0:00:18  loss: 0.3217 (0.3185)  auc: 92.9412 (94.9032)  time: 0.0299  data: 0.0002  max mem: 5308
[16:47:20.191481] Test:  [130/560]  eta: 0:00:17  loss: 0.3217 (0.3193)  auc: 95.2381 (94.9605)  time: 0.0297  data: 0.0002  max mem: 5308
[16:47:20.503939] Test:  [140/560]  eta: 0:00:16  loss: 0.3146 (0.3200)  auc: 96.2500 (94.9655)  time: 0.0303  data: 0.0002  max mem: 5308
[16:47:20.798073] Test:  [150/560]  eta: 0:00:16  loss: 0.3055 (0.3189)  auc: 96.2500 (95.0111)  time: 0.0303  data: 0.0002  max mem: 5308
[16:47:21.093433] Test:  [160/560]  eta: 0:00:15  loss: 0.2829 (0.3145)  auc: 97.2222 (95.1870)  time: 0.0294  data: 0.0002  max mem: 5308
[16:47:21.392092] Test:  [170/560]  eta: 0:00:15  loss: 0.2550 (0.3128)  auc: 96.8750 (95.2374)  time: 0.0296  data: 0.0002  max mem: 5308
[16:47:21.692040] Test:  [180/560]  eta: 0:00:14  loss: 0.2721 (0.3133)  auc: 96.3563 (95.2388)  time: 0.0298  data: 0.0002  max mem: 5308
[16:47:21.990112] Test:  [190/560]  eta: 0:00:13  loss: 0.3207 (0.3139)  auc: 94.5098 (95.2146)  time: 0.0298  data: 0.0002  max mem: 5308
[16:47:22.288257] Test:  [200/560]  eta: 0:00:13  loss: 0.2928 (0.3118)  auc: 94.9219 (95.3148)  time: 0.0297  data: 0.0002  max mem: 5308
[16:47:22.587947] Test:  [210/560]  eta: 0:00:12  loss: 0.2958 (0.3127)  auc: 95.6710 (95.2594)  time: 0.0298  data: 0.0002  max mem: 5308
[16:47:22.887044] Test:  [220/560]  eta: 0:00:12  loss: 0.3158 (0.3127)  auc: 95.5466 (95.2623)  time: 0.0299  data: 0.0002  max mem: 5308
[16:47:23.186790] Test:  [230/560]  eta: 0:00:11  loss: 0.3048 (0.3126)  auc: 95.5466 (95.2817)  time: 0.0299  data: 0.0002  max mem: 5308
[16:47:23.486500] Test:  [240/560]  eta: 0:00:11  loss: 0.2938 (0.3122)  auc: 96.2302 (95.2830)  time: 0.0299  data: 0.0002  max mem: 5308
[16:47:23.787548] Test:  [250/560]  eta: 0:00:11  loss: 0.3221 (0.3123)  auc: 95.4167 (95.2702)  time: 0.0299  data: 0.0002  max mem: 5308
[16:47:24.083484] Test:  [260/560]  eta: 0:00:10  loss: 0.2594 (0.3105)  auc: 96.0784 (95.3243)  time: 0.0298  data: 0.0002  max mem: 5308
[16:47:24.379254] Test:  [270/560]  eta: 0:00:10  loss: 0.3123 (0.3113)  auc: 94.6429 (95.3007)  time: 0.0295  data: 0.0002  max mem: 5308
[16:47:24.676299] Test:  [280/560]  eta: 0:00:09  loss: 0.2806 (0.3090)  auc: 96.7611 (95.3904)  time: 0.0296  data: 0.0002  max mem: 5308
[16:47:24.974137] Test:  [290/560]  eta: 0:00:09  loss: 0.2896 (0.3099)  auc: 96.7611 (95.3811)  time: 0.0297  data: 0.0002  max mem: 5308
[16:47:25.271567] Test:  [300/560]  eta: 0:00:09  loss: 0.3148 (0.3091)  auc: 95.2941 (95.4169)  time: 0.0297  data: 0.0002  max mem: 5308
[16:47:25.567666] Test:  [310/560]  eta: 0:00:08  loss: 0.2955 (0.3095)  auc: 95.2941 (95.3757)  time: 0.0296  data: 0.0002  max mem: 5308
[16:47:25.865425] Test:  [320/560]  eta: 0:00:08  loss: 0.3148 (0.3099)  auc: 94.9020 (95.3609)  time: 0.0296  data: 0.0002  max mem: 5308
[16:47:26.163346] Test:  [330/560]  eta: 0:00:07  loss: 0.3085 (0.3096)  auc: 95.6349 (95.3773)  time: 0.0297  data: 0.0002  max mem: 5308
[16:47:26.461581] Test:  [340/560]  eta: 0:00:07  loss: 0.2823 (0.3092)  auc: 96.4286 (95.3975)  time: 0.0297  data: 0.0002  max mem: 5308
[16:47:26.757227] Test:  [350/560]  eta: 0:00:07  loss: 0.2823 (0.3088)  auc: 96.0938 (95.4076)  time: 0.0296  data: 0.0002  max mem: 5308
[16:47:27.053019] Test:  [360/560]  eta: 0:00:06  loss: 0.3106 (0.3097)  auc: 95.6863 (95.3927)  time: 0.0295  data: 0.0002  max mem: 5308
[16:47:27.349069] Test:  [370/560]  eta: 0:00:06  loss: 0.3244 (0.3101)  auc: 95.0000 (95.3994)  time: 0.0295  data: 0.0002  max mem: 5308
[16:47:27.645862] Test:  [380/560]  eta: 0:00:06  loss: 0.3064 (0.3100)  auc: 95.0000 (95.3999)  time: 0.0296  data: 0.0002  max mem: 5308
[16:47:27.942192] Test:  [390/560]  eta: 0:00:05  loss: 0.2989 (0.3105)  auc: 95.6863 (95.3849)  time: 0.0296  data: 0.0002  max mem: 5308
[16:47:28.238616] Test:  [400/560]  eta: 0:00:05  loss: 0.3050 (0.3115)  auc: 96.0317 (95.3316)  time: 0.0296  data: 0.0002  max mem: 5308
[16:47:28.534610] Test:  [410/560]  eta: 0:00:05  loss: 0.3357 (0.3119)  auc: 94.4444 (95.3020)  time: 0.0295  data: 0.0002  max mem: 5308
[16:47:28.830570] Test:  [420/560]  eta: 0:00:04  loss: 0.3204 (0.3122)  auc: 94.4444 (95.2765)  time: 0.0295  data: 0.0002  max mem: 5308
[16:47:29.126578] Test:  [430/560]  eta: 0:00:04  loss: 0.2655 (0.3112)  auc: 96.4706 (95.3185)  time: 0.0295  data: 0.0002  max mem: 5308
[16:47:29.423429] Test:  [440/560]  eta: 0:00:03  loss: 0.2513 (0.3105)  auc: 98.0159 (95.3584)  time: 0.0295  data: 0.0002  max mem: 5308
[16:47:29.719809] Test:  [450/560]  eta: 0:00:03  loss: 0.2803 (0.3107)  auc: 96.7611 (95.3477)  time: 0.0295  data: 0.0002  max mem: 5308
[16:47:30.016181] Test:  [460/560]  eta: 0:00:03  loss: 0.3275 (0.3115)  auc: 95.3125 (95.3159)  time: 0.0296  data: 0.0002  max mem: 5308
[16:47:30.312346] Test:  [470/560]  eta: 0:00:02  loss: 0.3496 (0.3118)  auc: 95.2941 (95.3085)  time: 0.0295  data: 0.0002  max mem: 5308
[16:47:30.610200] Test:  [480/560]  eta: 0:00:02  loss: 0.3201 (0.3117)  auc: 94.9219 (95.2830)  time: 0.0296  data: 0.0002  max mem: 5308
[16:47:30.905512] Test:  [490/560]  eta: 0:00:02  loss: 0.2932 (0.3112)  auc: 94.9219 (95.3049)  time: 0.0296  data: 0.0002  max mem: 5308
[16:47:31.202447] Test:  [500/560]  eta: 0:00:01  loss: 0.2709 (0.3107)  auc: 97.6471 (95.3380)  time: 0.0295  data: 0.0002  max mem: 5308
[16:47:31.500211] Test:  [510/560]  eta: 0:00:01  loss: 0.2687 (0.3102)  auc: 97.2549 (95.3574)  time: 0.0297  data: 0.0002  max mem: 5308
[16:47:31.798296] Test:  [520/560]  eta: 0:00:01  loss: 0.3191 (0.3113)  auc: 94.5098 (95.3149)  time: 0.0297  data: 0.0002  max mem: 5308
[16:47:32.095839] Test:  [530/560]  eta: 0:00:00  loss: 0.3565 (0.3122)  auc: 94.1176 (95.3098)  time: 0.0297  data: 0.0002  max mem: 5308
[16:47:32.392225] Test:  [540/560]  eta: 0:00:00  loss: 0.3362 (0.3127)  auc: 95.2941 (95.2958)  time: 0.0296  data: 0.0003  max mem: 5308
[16:47:32.680938] Test:  [550/560]  eta: 0:00:00  loss: 0.2815 (0.3122)  auc: 97.9757 (95.3462)  time: 0.0292  data: 0.0002  max mem: 5308
[16:47:32.924339] Test:  [559/560]  eta: 0:00:00  loss: 0.2856 (0.3124)  auc: 97.9757 (95.3413)  time: 0.0280  data: 0.0001  max mem: 5308
[16:47:33.084797] Test: Total time: 0:00:18 (0.0327 s / it)
[16:47:33.086421] * Auc 95.324  loss 0.312
[16:47:33.086763] AUC of the network on the 35796 val images: 95.32%
[16:47:33.086826] Max auc: 95.32%
[16:47:33.086878] Save model with min_val_loss at epoch: 5
[16:47:39.406623] log_dir: ./checkpoint/finetuned_models/FF++_c23_32frames
[16:47:40.599153] Epoch: [6]  [   0/2877]  eta: 0:57:05  lr: 0.000057  loss: 0.6522 (0.6522)  time: 1.1907  data: 1.0428  max mem: 5308
[16:47:54.080706] Epoch: [6]  [ 100/2877]  eta: 0:06:43  lr: 0.000056  loss: 0.6370 (0.6369)  time: 0.1342  data: 0.0001  max mem: 5308
[16:48:07.638272] Epoch: [6]  [ 200/2877]  eta: 0:06:15  lr: 0.000056  loss: 0.6109 (0.6326)  time: 0.1360  data: 0.0002  max mem: 5308
[16:48:21.278878] Epoch: [6]  [ 300/2877]  eta: 0:05:58  lr: 0.000055  loss: 0.6318 (0.6329)  time: 0.1379  data: 0.0002  max mem: 5308
[16:48:35.185213] Epoch: [6]  [ 400/2877]  eta: 0:05:44  lr: 0.000055  loss: 0.6355 (0.6350)  time: 0.1378  data: 0.0002  max mem: 5308
[16:48:48.909980] Epoch: [6]  [ 500/2877]  eta: 0:05:29  lr: 0.000055  loss: 0.6371 (0.6341)  time: 0.1378  data: 0.0002  max mem: 5308
[16:49:02.676973] Epoch: [6]  [ 600/2877]  eta: 0:05:15  lr: 0.000054  loss: 0.6495 (0.6320)  time: 0.1353  data: 0.0001  max mem: 5308
[16:49:16.152461] Epoch: [6]  [ 700/2877]  eta: 0:05:00  lr: 0.000054  loss: 0.6092 (0.6322)  time: 0.1347  data: 0.0001  max mem: 5308
[16:49:29.648020] Epoch: [6]  [ 800/2877]  eta: 0:04:45  lr: 0.000053  loss: 0.6313 (0.6323)  time: 0.1362  data: 0.0002  max mem: 5308
[16:49:43.445985] Epoch: [6]  [ 900/2877]  eta: 0:04:32  lr: 0.000053  loss: 0.6463 (0.6330)  time: 0.1376  data: 0.0002  max mem: 5308
[16:49:57.115401] Epoch: [6]  [1000/2877]  eta: 0:04:18  lr: 0.000052  loss: 0.6471 (0.6339)  time: 0.1389  data: 0.0002  max mem: 5308
[16:50:10.822280] Epoch: [6]  [1100/2877]  eta: 0:04:04  lr: 0.000052  loss: 0.6291 (0.6335)  time: 0.1371  data: 0.0002  max mem: 5308
[16:50:24.466554] Epoch: [6]  [1200/2877]  eta: 0:03:50  lr: 0.000051  loss: 0.6272 (0.6325)  time: 0.1369  data: 0.0002  max mem: 5308
[16:50:38.192054] Epoch: [6]  [1300/2877]  eta: 0:03:36  lr: 0.000051  loss: 0.6416 (0.6324)  time: 0.1374  data: 0.0002  max mem: 5308
[16:50:51.799162] Epoch: [6]  [1400/2877]  eta: 0:03:22  lr: 0.000050  loss: 0.6062 (0.6314)  time: 0.1356  data: 0.0001  max mem: 5308
[16:51:05.428294] Epoch: [6]  [1500/2877]  eta: 0:03:08  lr: 0.000049  loss: 0.6197 (0.6308)  time: 0.1352  data: 0.0001  max mem: 5308
[16:51:19.189556] Epoch: [6]  [1600/2877]  eta: 0:02:55  lr: 0.000049  loss: 0.6336 (0.6308)  time: 0.1380  data: 0.0001  max mem: 5308
[16:51:32.793653] Epoch: [6]  [1700/2877]  eta: 0:02:41  lr: 0.000048  loss: 0.6170 (0.6309)  time: 0.1356  data: 0.0002  max mem: 5308
[16:51:46.347403] Epoch: [6]  [1800/2877]  eta: 0:02:27  lr: 0.000048  loss: 0.6475 (0.6308)  time: 0.1359  data: 0.0001  max mem: 5308
[16:51:59.925107] Epoch: [6]  [1900/2877]  eta: 0:02:13  lr: 0.000047  loss: 0.6297 (0.6306)  time: 0.1350  data: 0.0002  max mem: 5308
[16:52:13.623957] Epoch: [6]  [2000/2877]  eta: 0:02:00  lr: 0.000047  loss: 0.6358 (0.6312)  time: 0.1365  data: 0.0001  max mem: 5308
[16:52:27.116564] Epoch: [6]  [2100/2877]  eta: 0:01:46  lr: 0.000046  loss: 0.6350 (0.6306)  time: 0.1357  data: 0.0001  max mem: 5308
[16:52:40.622149] Epoch: [6]  [2200/2877]  eta: 0:01:32  lr: 0.000045  loss: 0.6371 (0.6305)  time: 0.1356  data: 0.0001  max mem: 5308
[16:52:54.351357] Epoch: [6]  [2300/2877]  eta: 0:01:18  lr: 0.000045  loss: 0.6300 (0.6302)  time: 0.1362  data: 0.0001  max mem: 5308
[16:53:07.977226] Epoch: [6]  [2400/2877]  eta: 0:01:05  lr: 0.000044  loss: 0.6274 (0.6301)  time: 0.1350  data: 0.0001  max mem: 5308
[16:53:21.601472] Epoch: [6]  [2500/2877]  eta: 0:00:51  lr: 0.000044  loss: 0.6433 (0.6301)  time: 0.1381  data: 0.0002  max mem: 5308
[16:53:35.268222] Epoch: [6]  [2600/2877]  eta: 0:00:37  lr: 0.000043  loss: 0.6139 (0.6298)  time: 0.1373  data: 0.0002  max mem: 5308
[16:53:48.920531] Epoch: [6]  [2700/2877]  eta: 0:00:24  lr: 0.000042  loss: 0.6323 (0.6299)  time: 0.1353  data: 0.0001  max mem: 5308
[16:54:02.416730] Epoch: [6]  [2800/2877]  eta: 0:00:10  lr: 0.000042  loss: 0.6214 (0.6301)  time: 0.1363  data: 0.0002  max mem: 5308
[16:54:12.985575] Epoch: [6]  [2876/2877]  eta: 0:00:00  lr: 0.000041  loss: 0.6351 (0.6300)  time: 0.1388  data: 0.0004  max mem: 5308
[16:54:13.257016] Epoch: [6] Total time: 0:06:33 (0.1369 s / it)
[16:54:13.263624] Averaged stats: lr: 0.000041  loss: 0.6351 (0.6286)
[16:54:14.810265] Test:  [  0/560]  eta: 0:14:24  loss: 0.3152 (0.3152)  auc: 96.0784 (96.0784)  time: 1.5433  data: 1.5067  max mem: 5308
[16:54:15.152883] Test:  [ 10/560]  eta: 0:01:34  loss: 0.3369 (0.3541)  auc: 94.1667 (92.9577)  time: 0.1713  data: 0.1408  max mem: 5308
[16:54:15.453292] Test:  [ 20/560]  eta: 0:00:56  loss: 0.3322 (0.3237)  auc: 94.6429 (94.7081)  time: 0.0320  data: 0.0022  max mem: 5308
[16:54:15.755146] Test:  [ 30/560]  eta: 0:00:42  loss: 0.2635 (0.3032)  auc: 97.5709 (95.3566)  time: 0.0300  data: 0.0002  max mem: 5308
[16:54:16.062704] Test:  [ 40/560]  eta: 0:00:35  loss: 0.2684 (0.3025)  auc: 96.6667 (95.3752)  time: 0.0303  data: 0.0003  max mem: 5308
[16:54:16.366571] Test:  [ 50/560]  eta: 0:00:30  loss: 0.2769 (0.3024)  auc: 95.2381 (95.5836)  time: 0.0304  data: 0.0003  max mem: 5308
[16:54:16.664267] Test:  [ 60/560]  eta: 0:00:27  loss: 0.3153 (0.3037)  auc: 95.4167 (95.4739)  time: 0.0300  data: 0.0002  max mem: 5308
[16:54:16.966503] Test:  [ 70/560]  eta: 0:00:25  loss: 0.2950 (0.3009)  auc: 95.4167 (95.5010)  time: 0.0299  data: 0.0002  max mem: 5308
[16:54:17.267627] Test:  [ 80/560]  eta: 0:00:23  loss: 0.2617 (0.2951)  auc: 96.0317 (95.6791)  time: 0.0301  data: 0.0002  max mem: 5308
[16:54:17.568580] Test:  [ 90/560]  eta: 0:00:22  loss: 0.2432 (0.2947)  auc: 96.8254 (95.7502)  time: 0.0300  data: 0.0002  max mem: 5308
[16:54:17.870989] Test:  [100/560]  eta: 0:00:20  loss: 0.2532 (0.2906)  auc: 96.8254 (95.9114)  time: 0.0301  data: 0.0002  max mem: 5308
[16:54:18.172584] Test:  [110/560]  eta: 0:00:19  loss: 0.2608 (0.2904)  auc: 96.9697 (95.8937)  time: 0.0301  data: 0.0002  max mem: 5308
[16:54:18.471735] Test:  [120/560]  eta: 0:00:18  loss: 0.3035 (0.2965)  auc: 93.7198 (95.6860)  time: 0.0299  data: 0.0002  max mem: 5308
[16:54:18.771099] Test:  [130/560]  eta: 0:00:18  loss: 0.3088 (0.2978)  auc: 94.6429 (95.7137)  time: 0.0298  data: 0.0002  max mem: 5308
[16:54:19.070366] Test:  [140/560]  eta: 0:00:17  loss: 0.2994 (0.2984)  auc: 96.4844 (95.7124)  time: 0.0298  data: 0.0002  max mem: 5308
[16:54:19.369488] Test:  [150/560]  eta: 0:00:16  loss: 0.2794 (0.2969)  auc: 95.9514 (95.7346)  time: 0.0298  data: 0.0002  max mem: 5308
[16:54:19.668899] Test:  [160/560]  eta: 0:00:15  loss: 0.2472 (0.2923)  auc: 98.0159 (95.9040)  time: 0.0298  data: 0.0002  max mem: 5308
[16:54:19.967742] Test:  [170/560]  eta: 0:00:15  loss: 0.2297 (0.2909)  auc: 97.9167 (95.9473)  time: 0.0298  data: 0.0002  max mem: 5308
[16:54:20.266995] Test:  [180/560]  eta: 0:00:14  loss: 0.2545 (0.2916)  auc: 97.5709 (95.9468)  time: 0.0298  data: 0.0002  max mem: 5308
[16:54:20.561694] Test:  [190/560]  eta: 0:00:14  loss: 0.2947 (0.2923)  auc: 96.0317 (95.9191)  time: 0.0296  data: 0.0002  max mem: 5308
[16:54:20.855374] Test:  [200/560]  eta: 0:00:13  loss: 0.2833 (0.2904)  auc: 95.6349 (95.9764)  time: 0.0294  data: 0.0002  max mem: 5308
[16:54:21.148366] Test:  [210/560]  eta: 0:00:13  loss: 0.2893 (0.2913)  auc: 96.7611 (95.9413)  time: 0.0293  data: 0.0002  max mem: 5308
[16:54:21.441679] Test:  [220/560]  eta: 0:00:12  loss: 0.2901 (0.2910)  auc: 96.7611 (95.9664)  time: 0.0292  data: 0.0002  max mem: 5308
[16:54:21.734709] Test:  [230/560]  eta: 0:00:12  loss: 0.2897 (0.2911)  auc: 96.0784 (95.9685)  time: 0.0292  data: 0.0001  max mem: 5308
[16:54:22.028462] Test:  [240/560]  eta: 0:00:11  loss: 0.2982 (0.2909)  auc: 96.0317 (95.9659)  time: 0.0293  data: 0.0002  max mem: 5308
[16:54:22.321558] Test:  [250/560]  eta: 0:00:11  loss: 0.3017 (0.2913)  auc: 95.6863 (95.9489)  time: 0.0293  data: 0.0002  max mem: 5308
[16:54:22.615472] Test:  [260/560]  eta: 0:00:10  loss: 0.2435 (0.2895)  auc: 96.2500 (96.0034)  time: 0.0293  data: 0.0002  max mem: 5308
[16:54:22.908898] Test:  [270/560]  eta: 0:00:10  loss: 0.2808 (0.2904)  auc: 95.0000 (95.9762)  time: 0.0293  data: 0.0002  max mem: 5308
[16:54:23.202246] Test:  [280/560]  eta: 0:00:09  loss: 0.2720 (0.2880)  auc: 96.8254 (96.0529)  time: 0.0293  data: 0.0002  max mem: 5308
[16:54:23.495724] Test:  [290/560]  eta: 0:00:09  loss: 0.2720 (0.2888)  auc: 97.9167 (96.0496)  time: 0.0293  data: 0.0002  max mem: 5308
[16:54:23.788968] Test:  [300/560]  eta: 0:00:09  loss: 0.2885 (0.2879)  auc: 96.3563 (96.0825)  time: 0.0293  data: 0.0001  max mem: 5308
[16:54:24.082978] Test:  [310/560]  eta: 0:00:08  loss: 0.2698 (0.2883)  auc: 96.0784 (96.0512)  time: 0.0293  data: 0.0001  max mem: 5308
[16:54:24.376990] Test:  [320/560]  eta: 0:00:08  loss: 0.2904 (0.2886)  auc: 95.6863 (96.0351)  time: 0.0293  data: 0.0002  max mem: 5308
[16:54:24.669213] Test:  [330/560]  eta: 0:00:07  loss: 0.2789 (0.2882)  auc: 96.0417 (96.0405)  time: 0.0292  data: 0.0001  max mem: 5308
[16:54:24.962415] Test:  [340/560]  eta: 0:00:07  loss: 0.2700 (0.2878)  auc: 96.0784 (96.0502)  time: 0.0292  data: 0.0001  max mem: 5308
[16:54:25.255968] Test:  [350/560]  eta: 0:00:07  loss: 0.2623 (0.2876)  auc: 96.0784 (96.0496)  time: 0.0293  data: 0.0002  max mem: 5308
[16:54:25.548928] Test:  [360/560]  eta: 0:00:06  loss: 0.2944 (0.2887)  auc: 96.0784 (96.0334)  time: 0.0292  data: 0.0002  max mem: 5308
[16:54:25.840865] Test:  [370/560]  eta: 0:00:06  loss: 0.3074 (0.2891)  auc: 96.4286 (96.0230)  time: 0.0292  data: 0.0002  max mem: 5308
[16:54:26.136132] Test:  [380/560]  eta: 0:00:06  loss: 0.2839 (0.2889)  auc: 96.0784 (96.0354)  time: 0.0293  data: 0.0002  max mem: 5308
[16:54:26.430535] Test:  [390/560]  eta: 0:00:05  loss: 0.2736 (0.2893)  auc: 96.4286 (96.0216)  time: 0.0294  data: 0.0002  max mem: 5308
[16:54:26.725593] Test:  [400/560]  eta: 0:00:05  loss: 0.2790 (0.2904)  auc: 96.4286 (95.9658)  time: 0.0294  data: 0.0001  max mem: 5308
[16:54:27.019421] Test:  [410/560]  eta: 0:00:05  loss: 0.3138 (0.2909)  auc: 94.1176 (95.9280)  time: 0.0294  data: 0.0001  max mem: 5308
[16:54:27.313532] Test:  [420/560]  eta: 0:00:04  loss: 0.3102 (0.2910)  auc: 94.5098 (95.9083)  time: 0.0293  data: 0.0001  max mem: 5308
[16:54:27.607818] Test:  [430/560]  eta: 0:00:04  loss: 0.2360 (0.2900)  auc: 97.2549 (95.9382)  time: 0.0293  data: 0.0001  max mem: 5308
[16:54:27.903179] Test:  [440/560]  eta: 0:00:03  loss: 0.2216 (0.2891)  auc: 98.4127 (95.9747)  time: 0.0294  data: 0.0002  max mem: 5308
[16:54:28.197255] Test:  [450/560]  eta: 0:00:03  loss: 0.2510 (0.2891)  auc: 97.9757 (95.9819)  time: 0.0294  data: 0.0002  max mem: 5308
[16:54:28.492515] Test:  [460/560]  eta: 0:00:03  loss: 0.3055 (0.2899)  auc: 97.1660 (95.9681)  time: 0.0294  data: 0.0001  max mem: 5308
[16:54:28.788490] Test:  [470/560]  eta: 0:00:02  loss: 0.3258 (0.2903)  auc: 95.6349 (95.9551)  time: 0.0295  data: 0.0002  max mem: 5308
[16:54:29.083999] Test:  [480/560]  eta: 0:00:02  loss: 0.2915 (0.2901)  auc: 94.5098 (95.9295)  time: 0.0295  data: 0.0002  max mem: 5308
[16:54:29.378853] Test:  [490/560]  eta: 0:00:02  loss: 0.2696 (0.2894)  auc: 95.2381 (95.9511)  time: 0.0294  data: 0.0002  max mem: 5308
[16:54:29.674679] Test:  [500/560]  eta: 0:00:01  loss: 0.2494 (0.2890)  auc: 96.6667 (95.9653)  time: 0.0295  data: 0.0002  max mem: 5308
[16:54:29.970441] Test:  [510/560]  eta: 0:00:01  loss: 0.2494 (0.2886)  auc: 96.3636 (95.9733)  time: 0.0295  data: 0.0002  max mem: 5308
[16:54:30.266166] Test:  [520/560]  eta: 0:00:01  loss: 0.2964 (0.2897)  auc: 94.9219 (95.9298)  time: 0.0295  data: 0.0002  max mem: 5308
[16:54:30.562651] Test:  [530/560]  eta: 0:00:00  loss: 0.3291 (0.2907)  auc: 94.9219 (95.9282)  time: 0.0295  data: 0.0002  max mem: 5308
[16:54:30.857014] Test:  [540/560]  eta: 0:00:00  loss: 0.3206 (0.2912)  auc: 96.1353 (95.9222)  time: 0.0295  data: 0.0002  max mem: 5308
[16:54:31.149239] Test:  [550/560]  eta: 0:00:00  loss: 0.2766 (0.2907)  auc: 98.8095 (95.9683)  time: 0.0293  data: 0.0001  max mem: 5308
[16:54:31.393272] Test:  [559/560]  eta: 0:00:00  loss: 0.2626 (0.2908)  auc: 98.7854 (95.9745)  time: 0.0282  data: 0.0001  max mem: 5308
[16:54:31.550379] Test: Total time: 0:00:18 (0.0327 s / it)
[16:54:31.739843] * Auc 95.957  loss 0.291
[16:54:31.740015] AUC of the network on the 35796 val images: 95.96%
[16:54:31.740029] Max auc: 95.96%
[16:54:31.740045] Save model with min_val_loss at epoch: 6
[16:54:37.628563] log_dir: ./checkpoint/finetuned_models/FF++_c23_32frames
[16:54:38.756981] Epoch: [7]  [   0/2877]  eta: 0:54:01  lr: 0.000041  loss: 0.6367 (0.6367)  time: 1.1265  data: 0.9808  max mem: 5308
[16:54:52.284020] Epoch: [7]  [ 100/2877]  eta: 0:06:42  lr: 0.000041  loss: 0.6129 (0.6186)  time: 0.1345  data: 0.0001  max mem: 5308
[16:55:05.723895] Epoch: [7]  [ 200/2877]  eta: 0:06:14  lr: 0.000040  loss: 0.6395 (0.6242)  time: 0.1354  data: 0.0001  max mem: 5308
[16:55:19.305505] Epoch: [7]  [ 300/2877]  eta: 0:05:56  lr: 0.000039  loss: 0.6434 (0.6244)  time: 0.1346  data: 0.0001  max mem: 5308
[16:55:32.813436] Epoch: [7]  [ 400/2877]  eta: 0:05:40  lr: 0.000039  loss: 0.6400 (0.6259)  time: 0.1364  data: 0.0002  max mem: 5308
[16:55:46.326043] Epoch: [7]  [ 500/2877]  eta: 0:05:25  lr: 0.000038  loss: 0.6243 (0.6278)  time: 0.1342  data: 0.0001  max mem: 5308
[16:55:59.878577] Epoch: [7]  [ 600/2877]  eta: 0:05:11  lr: 0.000037  loss: 0.6134 (0.6268)  time: 0.1345  data: 0.0001  max mem: 5308
[16:56:13.342151] Epoch: [7]  [ 700/2877]  eta: 0:04:57  lr: 0.000037  loss: 0.6317 (0.6275)  time: 0.1373  data: 0.0002  max mem: 5308
[16:56:26.863728] Epoch: [7]  [ 800/2877]  eta: 0:04:43  lr: 0.000036  loss: 0.6211 (0.6270)  time: 0.1355  data: 0.0002  max mem: 5308
[16:56:40.656291] Epoch: [7]  [ 900/2877]  eta: 0:04:29  lr: 0.000035  loss: 0.6230 (0.6256)  time: 0.1384  data: 0.0001  max mem: 5308
[16:56:54.326976] Epoch: [7]  [1000/2877]  eta: 0:04:16  lr: 0.000035  loss: 0.6272 (0.6249)  time: 0.1371  data: 0.0001  max mem: 5308
[16:57:07.937514] Epoch: [7]  [1100/2877]  eta: 0:04:02  lr: 0.000034  loss: 0.6261 (0.6251)  time: 0.1343  data: 0.0001  max mem: 5308
[16:57:21.563019] Epoch: [7]  [1200/2877]  eta: 0:03:48  lr: 0.000033  loss: 0.6326 (0.6244)  time: 0.1379  data: 0.0001  max mem: 5308
[16:57:35.544482] Epoch: [7]  [1300/2877]  eta: 0:03:35  lr: 0.000033  loss: 0.6146 (0.6245)  time: 0.1404  data: 0.0003  max mem: 5308
[16:57:49.259913] Epoch: [7]  [1400/2877]  eta: 0:03:21  lr: 0.000032  loss: 0.6135 (0.6237)  time: 0.1364  data: 0.0002  max mem: 5308
[16:58:02.838837] Epoch: [7]  [1500/2877]  eta: 0:03:08  lr: 0.000031  loss: 0.6286 (0.6233)  time: 0.1348  data: 0.0002  max mem: 5308
[16:58:16.435000] Epoch: [7]  [1600/2877]  eta: 0:02:54  lr: 0.000031  loss: 0.6257 (0.6235)  time: 0.1365  data: 0.0001  max mem: 5308
[16:58:29.953159] Epoch: [7]  [1700/2877]  eta: 0:02:40  lr: 0.000030  loss: 0.6087 (0.6238)  time: 0.1357  data: 0.0002  max mem: 5308
[16:58:43.503593] Epoch: [7]  [1800/2877]  eta: 0:02:27  lr: 0.000029  loss: 0.6253 (0.6239)  time: 0.1350  data: 0.0001  max mem: 5308
[16:58:57.016062] Epoch: [7]  [1900/2877]  eta: 0:02:13  lr: 0.000029  loss: 0.5862 (0.6233)  time: 0.1348  data: 0.0001  max mem: 5308
[16:59:10.544350] Epoch: [7]  [2000/2877]  eta: 0:01:59  lr: 0.000028  loss: 0.6206 (0.6230)  time: 0.1363  data: 0.0001  max mem: 5308
[16:59:24.138178] Epoch: [7]  [2100/2877]  eta: 0:01:45  lr: 0.000027  loss: 0.5977 (0.6233)  time: 0.1351  data: 0.0001  max mem: 5308
[16:59:37.709028] Epoch: [7]  [2200/2877]  eta: 0:01:32  lr: 0.000027  loss: 0.6593 (0.6237)  time: 0.1363  data: 0.0001  max mem: 5308
[16:59:51.352662] Epoch: [7]  [2300/2877]  eta: 0:01:18  lr: 0.000026  loss: 0.6463 (0.6241)  time: 0.1363  data: 0.0001  max mem: 5308
[17:00:05.145415] Epoch: [7]  [2400/2877]  eta: 0:01:05  lr: 0.000025  loss: 0.6176 (0.6242)  time: 0.1399  data: 0.0003  max mem: 5308
[17:00:18.809743] Epoch: [7]  [2500/2877]  eta: 0:00:51  lr: 0.000025  loss: 0.6550 (0.6244)  time: 0.1365  data: 0.0002  max mem: 5308
[17:00:32.435589] Epoch: [7]  [2600/2877]  eta: 0:00:37  lr: 0.000024  loss: 0.6365 (0.6236)  time: 0.1351  data: 0.0002  max mem: 5308
[17:00:46.026841] Epoch: [7]  [2700/2877]  eta: 0:00:24  lr: 0.000023  loss: 0.6156 (0.6236)  time: 0.1368  data: 0.0002  max mem: 5308
[17:00:59.592778] Epoch: [7]  [2800/2877]  eta: 0:00:10  lr: 0.000023  loss: 0.6397 (0.6238)  time: 0.1355  data: 0.0001  max mem: 5308
[17:01:09.900033] Epoch: [7]  [2876/2877]  eta: 0:00:00  lr: 0.000022  loss: 0.6353 (0.6237)  time: 0.1356  data: 0.0002  max mem: 5308
[17:01:10.171286] Epoch: [7] Total time: 0:06:32 (0.1364 s / it)
[17:01:10.200073] Averaged stats: lr: 0.000022  loss: 0.6353 (0.6236)
[17:01:12.074082] Test:  [  0/560]  eta: 0:17:27  loss: 0.2804 (0.2804)  auc: 97.2549 (97.2549)  time: 1.8710  data: 1.8355  max mem: 5308
[17:01:12.371786] Test:  [ 10/560]  eta: 0:01:48  loss: 0.3160 (0.3266)  auc: 94.5833 (93.2085)  time: 0.1971  data: 0.1671  max mem: 5308
[17:01:12.670280] Test:  [ 20/560]  eta: 0:01:03  loss: 0.2878 (0.2932)  auc: 95.6349 (95.1651)  time: 0.0297  data: 0.0002  max mem: 5308
[17:01:12.968683] Test:  [ 30/560]  eta: 0:00:47  loss: 0.2503 (0.2785)  auc: 97.6471 (95.6137)  time: 0.0297  data: 0.0002  max mem: 5308
[17:01:13.266324] Test:  [ 40/560]  eta: 0:00:38  loss: 0.2523 (0.2792)  auc: 97.2222 (95.5100)  time: 0.0297  data: 0.0002  max mem: 5308
[17:01:13.564210] Test:  [ 50/560]  eta: 0:00:33  loss: 0.2580 (0.2761)  auc: 96.2302 (95.8369)  time: 0.0297  data: 0.0002  max mem: 5308
[17:01:13.864809] Test:  [ 60/560]  eta: 0:00:29  loss: 0.2975 (0.2777)  auc: 96.3636 (95.7366)  time: 0.0298  data: 0.0002  max mem: 5308
[17:01:14.163253] Test:  [ 70/560]  eta: 0:00:27  loss: 0.2685 (0.2763)  auc: 96.3636 (95.7890)  time: 0.0299  data: 0.0002  max mem: 5308
[17:01:14.464013] Test:  [ 80/560]  eta: 0:00:25  loss: 0.2400 (0.2708)  auc: 97.5709 (95.9685)  time: 0.0299  data: 0.0002  max mem: 5308
[17:01:14.761651] Test:  [ 90/560]  eta: 0:00:23  loss: 0.2479 (0.2700)  auc: 96.8750 (96.0333)  time: 0.0298  data: 0.0002  max mem: 5308
[17:01:15.057378] Test:  [100/560]  eta: 0:00:22  loss: 0.2479 (0.2661)  auc: 97.2222 (96.2029)  time: 0.0296  data: 0.0002  max mem: 5308
[17:01:15.351853] Test:  [110/560]  eta: 0:00:20  loss: 0.2361 (0.2658)  auc: 97.5709 (96.1847)  time: 0.0294  data: 0.0002  max mem: 5308
[17:01:15.649753] Test:  [120/560]  eta: 0:00:19  loss: 0.2871 (0.2712)  auc: 94.2029 (95.9796)  time: 0.0295  data: 0.0002  max mem: 5308
[17:01:15.949925] Test:  [130/560]  eta: 0:00:18  loss: 0.2743 (0.2716)  auc: 94.9393 (96.0059)  time: 0.0298  data: 0.0002  max mem: 5308
[17:01:16.251168] Test:  [140/560]  eta: 0:00:17  loss: 0.2607 (0.2716)  auc: 96.7611 (96.0276)  time: 0.0300  data: 0.0002  max mem: 5308
[17:01:16.548945] Test:  [150/560]  eta: 0:00:17  loss: 0.2475 (0.2706)  auc: 97.1660 (96.0421)  time: 0.0299  data: 0.0002  max mem: 5308
[17:01:16.849005] Test:  [160/560]  eta: 0:00:16  loss: 0.2266 (0.2666)  auc: 98.4314 (96.1835)  time: 0.0298  data: 0.0002  max mem: 5308
[17:01:17.149362] Test:  [170/560]  eta: 0:00:15  loss: 0.2215 (0.2655)  auc: 98.0392 (96.2151)  time: 0.0299  data: 0.0002  max mem: 5308
[17:01:17.450371] Test:  [180/560]  eta: 0:00:15  loss: 0.2457 (0.2659)  auc: 97.1660 (96.2138)  time: 0.0300  data: 0.0002  max mem: 5308
[17:01:17.749662] Test:  [190/560]  eta: 0:00:14  loss: 0.2640 (0.2663)  auc: 96.0784 (96.1995)  time: 0.0299  data: 0.0002  max mem: 5308
[17:01:18.049966] Test:  [200/560]  eta: 0:00:14  loss: 0.2582 (0.2647)  auc: 96.0938 (96.2578)  time: 0.0299  data: 0.0002  max mem: 5308
[17:01:18.348970] Test:  [210/560]  eta: 0:00:13  loss: 0.2517 (0.2657)  auc: 97.0833 (96.2255)  time: 0.0299  data: 0.0002  max mem: 5308
[17:01:18.648805] Test:  [220/560]  eta: 0:00:12  loss: 0.2545 (0.2659)  auc: 97.0833 (96.2420)  time: 0.0298  data: 0.0002  max mem: 5308
[17:01:18.947814] Test:  [230/560]  eta: 0:00:12  loss: 0.2545 (0.2660)  auc: 96.8627 (96.2288)  time: 0.0298  data: 0.0002  max mem: 5308
[17:01:19.244693] Test:  [240/560]  eta: 0:00:11  loss: 0.2486 (0.2659)  auc: 96.4706 (96.2313)  time: 0.0297  data: 0.0002  max mem: 5308
[17:01:19.540252] Test:  [250/560]  eta: 0:00:11  loss: 0.2745 (0.2664)  auc: 96.4706 (96.2166)  time: 0.0295  data: 0.0002  max mem: 5308
[17:01:19.834793] Test:  [260/560]  eta: 0:00:11  loss: 0.2434 (0.2651)  auc: 96.6667 (96.2575)  time: 0.0294  data: 0.0002  max mem: 5308
[17:01:20.128372] Test:  [270/560]  eta: 0:00:10  loss: 0.2765 (0.2659)  auc: 96.4286 (96.2298)  time: 0.0293  data: 0.0002  max mem: 5308
[17:01:20.422110] Test:  [280/560]  eta: 0:00:10  loss: 0.2304 (0.2635)  auc: 97.2222 (96.3077)  time: 0.0293  data: 0.0001  max mem: 5308
[17:01:20.717473] Test:  [290/560]  eta: 0:00:09  loss: 0.2411 (0.2641)  auc: 97.9167 (96.2991)  time: 0.0294  data: 0.0002  max mem: 5308
[17:01:21.011090] Test:  [300/560]  eta: 0:00:09  loss: 0.2502 (0.2634)  auc: 96.5587 (96.3297)  time: 0.0294  data: 0.0002  max mem: 5308
[17:01:21.305291] Test:  [310/560]  eta: 0:00:08  loss: 0.2377 (0.2639)  auc: 96.0784 (96.2910)  time: 0.0293  data: 0.0002  max mem: 5308
[17:01:21.601052] Test:  [320/560]  eta: 0:00:08  loss: 0.2653 (0.2643)  auc: 96.0784 (96.2756)  time: 0.0294  data: 0.0002  max mem: 5308
[17:01:21.897565] Test:  [330/560]  eta: 0:00:08  loss: 0.2607 (0.2642)  auc: 96.7611 (96.2714)  time: 0.0295  data: 0.0002  max mem: 5308
[17:01:22.192778] Test:  [340/560]  eta: 0:00:07  loss: 0.2518 (0.2637)  auc: 97.2222 (96.2886)  time: 0.0295  data: 0.0002  max mem: 5308
[17:01:22.487431] Test:  [350/560]  eta: 0:00:07  loss: 0.2518 (0.2638)  auc: 96.6667 (96.2853)  time: 0.0294  data: 0.0002  max mem: 5308
[17:01:22.782388] Test:  [360/560]  eta: 0:00:06  loss: 0.2743 (0.2646)  auc: 96.0317 (96.2739)  time: 0.0294  data: 0.0002  max mem: 5308
[17:01:23.078191] Test:  [370/560]  eta: 0:00:06  loss: 0.2743 (0.2649)  auc: 96.2500 (96.2597)  time: 0.0295  data: 0.0002  max mem: 5308
[17:01:23.373292] Test:  [380/560]  eta: 0:00:06  loss: 0.2427 (0.2647)  auc: 97.1660 (96.2774)  time: 0.0295  data: 0.0002  max mem: 5308
[17:01:23.668606] Test:  [390/560]  eta: 0:00:05  loss: 0.2339 (0.2648)  auc: 97.6190 (96.2774)  time: 0.0294  data: 0.0002  max mem: 5308
[17:01:23.963794] Test:  [400/560]  eta: 0:00:05  loss: 0.2628 (0.2657)  auc: 96.4844 (96.2288)  time: 0.0295  data: 0.0002  max mem: 5308
[17:01:24.258771] Test:  [410/560]  eta: 0:00:05  loss: 0.2862 (0.2662)  auc: 95.2381 (96.1946)  time: 0.0294  data: 0.0002  max mem: 5308
[17:01:24.554077] Test:  [420/560]  eta: 0:00:04  loss: 0.2902 (0.2665)  auc: 95.2381 (96.1666)  time: 0.0294  data: 0.0002  max mem: 5308
[17:01:24.849620] Test:  [430/560]  eta: 0:00:04  loss: 0.2337 (0.2656)  auc: 97.2222 (96.2036)  time: 0.0295  data: 0.0002  max mem: 5308
[17:01:25.144998] Test:  [440/560]  eta: 0:00:04  loss: 0.2272 (0.2650)  auc: 97.9757 (96.2268)  time: 0.0295  data: 0.0002  max mem: 5308
[17:01:25.440671] Test:  [450/560]  eta: 0:00:03  loss: 0.2293 (0.2651)  auc: 97.7733 (96.2265)  time: 0.0295  data: 0.0002  max mem: 5308
[17:01:25.736536] Test:  [460/560]  eta: 0:00:03  loss: 0.2627 (0.2655)  auc: 96.8254 (96.2162)  time: 0.0295  data: 0.0002  max mem: 5308
[17:01:26.030298] Test:  [470/560]  eta: 0:00:03  loss: 0.2862 (0.2660)  auc: 96.0784 (96.2105)  time: 0.0294  data: 0.0002  max mem: 5308
[17:01:26.324483] Test:  [480/560]  eta: 0:00:02  loss: 0.2681 (0.2660)  auc: 96.0784 (96.1890)  time: 0.0293  data: 0.0001  max mem: 5308
[17:01:26.619365] Test:  [490/560]  eta: 0:00:02  loss: 0.2418 (0.2655)  auc: 96.0938 (96.2103)  time: 0.0294  data: 0.0002  max mem: 5308
[17:01:26.912880] Test:  [500/560]  eta: 0:00:01  loss: 0.2452 (0.2651)  auc: 97.1660 (96.2262)  time: 0.0294  data: 0.0001  max mem: 5308
[17:01:27.207593] Test:  [510/560]  eta: 0:00:01  loss: 0.2594 (0.2645)  auc: 96.4706 (96.2345)  time: 0.0293  data: 0.0001  max mem: 5308
[17:01:27.504055] Test:  [520/560]  eta: 0:00:01  loss: 0.2717 (0.2655)  auc: 95.9514 (96.1982)  time: 0.0295  data: 0.0002  max mem: 5308
[17:01:27.799968] Test:  [530/560]  eta: 0:00:00  loss: 0.2986 (0.2660)  auc: 95.6863 (96.1974)  time: 0.0295  data: 0.0002  max mem: 5308
[17:01:28.096310] Test:  [540/560]  eta: 0:00:00  loss: 0.2673 (0.2663)  auc: 96.4286 (96.1839)  time: 0.0295  data: 0.0002  max mem: 5308
[17:01:28.387414] Test:  [550/560]  eta: 0:00:00  loss: 0.2385 (0.2656)  auc: 98.4127 (96.2246)  time: 0.0293  data: 0.0001  max mem: 5308
[17:01:28.634075] Test:  [559/560]  eta: 0:00:00  loss: 0.2417 (0.2658)  auc: 98.0159 (96.2217)  time: 0.0283  data: 0.0001  max mem: 5308
[17:01:28.792698] Test: Total time: 0:00:18 (0.0332 s / it)
[17:01:28.794261] * Auc 96.194  loss 0.265
[17:01:28.794612] AUC of the network on the 35796 val images: 96.19%
[17:01:28.794651] Max auc: 96.19%
[17:01:28.794694] Save model with min_val_loss at epoch: 7
[17:01:34.948463] log_dir: ./checkpoint/finetuned_models/FF++_c23_32frames
[17:01:36.140535] Epoch: [8]  [   0/2877]  eta: 0:57:05  lr: 0.000022  loss: 0.6962 (0.6962)  time: 1.1907  data: 1.0442  max mem: 5308
[17:01:49.773067] Epoch: [8]  [ 100/2877]  eta: 0:06:47  lr: 0.000022  loss: 0.6390 (0.6219)  time: 0.1369  data: 0.0001  max mem: 5308
[17:02:03.396414] Epoch: [8]  [ 200/2877]  eta: 0:06:18  lr: 0.000021  loss: 0.6071 (0.6208)  time: 0.1361  data: 0.0002  max mem: 5308
[17:02:17.190507] Epoch: [8]  [ 300/2877]  eta: 0:06:01  lr: 0.000020  loss: 0.6445 (0.6232)  time: 0.1385  data: 0.0003  max mem: 5308
[17:02:30.973527] Epoch: [8]  [ 400/2877]  eta: 0:05:46  lr: 0.000020  loss: 0.5857 (0.6225)  time: 0.1358  data: 0.0001  max mem: 5308
[17:02:44.696351] Epoch: [8]  [ 500/2877]  eta: 0:05:30  lr: 0.000019  loss: 0.6168 (0.6209)  time: 0.1365  data: 0.0002  max mem: 5308
[17:02:58.375106] Epoch: [8]  [ 600/2877]  eta: 0:05:16  lr: 0.000019  loss: 0.6445 (0.6232)  time: 0.1353  data: 0.0002  max mem: 5308
[17:03:12.209276] Epoch: [8]  [ 700/2877]  eta: 0:05:02  lr: 0.000018  loss: 0.6126 (0.6242)  time: 0.1438  data: 0.0002  max mem: 5308
[17:03:25.706107] Epoch: [8]  [ 800/2877]  eta: 0:04:47  lr: 0.000017  loss: 0.6363 (0.6234)  time: 0.1345  data: 0.0001  max mem: 5308
[17:03:39.152352] Epoch: [8]  [ 900/2877]  eta: 0:04:32  lr: 0.000017  loss: 0.6205 (0.6228)  time: 0.1345  data: 0.0001  max mem: 5308
[17:03:52.594851] Epoch: [8]  [1000/2877]  eta: 0:04:18  lr: 0.000016  loss: 0.6318 (0.6231)  time: 0.1358  data: 0.0002  max mem: 5308
[17:04:06.191296] Epoch: [8]  [1100/2877]  eta: 0:04:04  lr: 0.000016  loss: 0.6062 (0.6225)  time: 0.1361  data: 0.0002  max mem: 5308
[17:04:19.646104] Epoch: [8]  [1200/2877]  eta: 0:03:49  lr: 0.000015  loss: 0.6201 (0.6223)  time: 0.1352  data: 0.0001  max mem: 5308
[17:04:33.306230] Epoch: [8]  [1300/2877]  eta: 0:03:36  lr: 0.000014  loss: 0.6430 (0.6222)  time: 0.1364  data: 0.0002  max mem: 5308
[17:04:47.060889] Epoch: [8]  [1400/2877]  eta: 0:03:22  lr: 0.000014  loss: 0.6127 (0.6219)  time: 0.1358  data: 0.0001  max mem: 5308
[17:05:00.655358] Epoch: [8]  [1500/2877]  eta: 0:03:08  lr: 0.000013  loss: 0.6248 (0.6217)  time: 0.1360  data: 0.0002  max mem: 5308
[17:05:14.176957] Epoch: [8]  [1600/2877]  eta: 0:02:54  lr: 0.000013  loss: 0.6255 (0.6222)  time: 0.1350  data: 0.0001  max mem: 5308
[17:05:27.913867] Epoch: [8]  [1700/2877]  eta: 0:02:41  lr: 0.000012  loss: 0.6227 (0.6221)  time: 0.1375  data: 0.0002  max mem: 5308
[17:05:41.631218] Epoch: [8]  [1800/2877]  eta: 0:02:27  lr: 0.000012  loss: 0.6198 (0.6222)  time: 0.1391  data: 0.0002  max mem: 5308
[17:05:55.447244] Epoch: [8]  [1900/2877]  eta: 0:02:13  lr: 0.000011  loss: 0.5774 (0.6218)  time: 0.1385  data: 0.0002  max mem: 5308
[17:06:09.029080] Epoch: [8]  [2000/2877]  eta: 0:02:00  lr: 0.000011  loss: 0.6533 (0.6222)  time: 0.1358  data: 0.0002  max mem: 5308
[17:06:22.686067] Epoch: [8]  [2100/2877]  eta: 0:01:46  lr: 0.000010  loss: 0.5891 (0.6218)  time: 0.1360  data: 0.0001  max mem: 5308
[17:06:36.319359] Epoch: [8]  [2200/2877]  eta: 0:01:32  lr: 0.000010  loss: 0.6360 (0.6213)  time: 0.1382  data: 0.0002  max mem: 5308
[17:06:49.997239] Epoch: [8]  [2300/2877]  eta: 0:01:18  lr: 0.000009  loss: 0.6396 (0.6213)  time: 0.1365  data: 0.0001  max mem: 5308
[17:07:03.564143] Epoch: [8]  [2400/2877]  eta: 0:01:05  lr: 0.000009  loss: 0.6095 (0.6208)  time: 0.1347  data: 0.0001  max mem: 5308
[17:07:17.081220] Epoch: [8]  [2500/2877]  eta: 0:00:51  lr: 0.000008  loss: 0.6199 (0.6206)  time: 0.1351  data: 0.0001  max mem: 5308
[17:07:30.611089] Epoch: [8]  [2600/2877]  eta: 0:00:37  lr: 0.000008  loss: 0.6360 (0.6204)  time: 0.1352  data: 0.0001  max mem: 5308
[17:07:44.119886] Epoch: [8]  [2700/2877]  eta: 0:00:24  lr: 0.000008  loss: 0.6387 (0.6202)  time: 0.1357  data: 0.0001  max mem: 5308
[17:07:57.637464] Epoch: [8]  [2800/2877]  eta: 0:00:10  lr: 0.000007  loss: 0.6330 (0.6200)  time: 0.1350  data: 0.0001  max mem: 5308
[17:08:07.901785] Epoch: [8]  [2876/2877]  eta: 0:00:00  lr: 0.000007  loss: 0.5983 (0.6200)  time: 0.1342  data: 0.0002  max mem: 5308
[17:08:08.170562] Epoch: [8] Total time: 0:06:33 (0.1367 s / it)
[17:08:08.172203] Averaged stats: lr: 0.000007  loss: 0.5983 (0.6206)
[17:08:09.676327] Test:  [  0/560]  eta: 0:13:59  loss: 0.2754 (0.2754)  auc: 97.2549 (97.2549)  time: 1.4993  data: 1.4633  max mem: 5308
[17:08:10.002217] Test:  [ 10/560]  eta: 0:01:31  loss: 0.3183 (0.3282)  auc: 94.3750 (93.2773)  time: 0.1658  data: 0.1358  max mem: 5308
[17:08:10.299564] Test:  [ 20/560]  eta: 0:00:54  loss: 0.2958 (0.2975)  auc: 95.6349 (95.3388)  time: 0.0310  data: 0.0016  max mem: 5308
[17:08:10.594951] Test:  [ 30/560]  eta: 0:00:41  loss: 0.2550 (0.2818)  auc: 98.3806 (95.7652)  time: 0.0295  data: 0.0002  max mem: 5308
[17:08:10.889354] Test:  [ 40/560]  eta: 0:00:34  loss: 0.2596 (0.2808)  auc: 97.0833 (95.7116)  time: 0.0294  data: 0.0002  max mem: 5308
[17:08:11.185629] Test:  [ 50/560]  eta: 0:00:30  loss: 0.2617 (0.2794)  auc: 96.4286 (96.0119)  time: 0.0295  data: 0.0002  max mem: 5308
[17:08:11.482017] Test:  [ 60/560]  eta: 0:00:27  loss: 0.2936 (0.2812)  auc: 96.4286 (95.9175)  time: 0.0295  data: 0.0002  max mem: 5308
[17:08:11.779318] Test:  [ 70/560]  eta: 0:00:24  loss: 0.2743 (0.2793)  auc: 96.8627 (95.9671)  time: 0.0296  data: 0.0002  max mem: 5308
[17:08:12.073539] Test:  [ 80/560]  eta: 0:00:23  loss: 0.2441 (0.2734)  auc: 97.5709 (96.1631)  time: 0.0295  data: 0.0002  max mem: 5308
[17:08:12.369856] Test:  [ 90/560]  eta: 0:00:21  loss: 0.2341 (0.2726)  auc: 97.2222 (96.2109)  time: 0.0295  data: 0.0002  max mem: 5308
[17:08:12.675377] Test:  [100/560]  eta: 0:00:20  loss: 0.2347 (0.2688)  auc: 96.9697 (96.3751)  time: 0.0300  data: 0.0002  max mem: 5308
[17:08:12.971402] Test:  [110/560]  eta: 0:00:19  loss: 0.2347 (0.2684)  auc: 97.1660 (96.3786)  time: 0.0300  data: 0.0002  max mem: 5308
[17:08:13.269793] Test:  [120/560]  eta: 0:00:18  loss: 0.2726 (0.2741)  auc: 94.5312 (96.1964)  time: 0.0296  data: 0.0002  max mem: 5308
[17:08:13.564731] Test:  [130/560]  eta: 0:00:17  loss: 0.2768 (0.2750)  auc: 95.3441 (96.2212)  time: 0.0296  data: 0.0002  max mem: 5308
[17:08:13.862946] Test:  [140/560]  eta: 0:00:16  loss: 0.2729 (0.2753)  auc: 96.8627 (96.2604)  time: 0.0296  data: 0.0002  max mem: 5308
[17:08:14.160117] Test:  [150/560]  eta: 0:00:16  loss: 0.2596 (0.2740)  auc: 97.5709 (96.2675)  time: 0.0297  data: 0.0002  max mem: 5308
[17:08:14.458932] Test:  [160/560]  eta: 0:00:15  loss: 0.2313 (0.2694)  auc: 98.4314 (96.4105)  time: 0.0297  data: 0.0002  max mem: 5308
[17:08:14.753447] Test:  [170/560]  eta: 0:00:14  loss: 0.2190 (0.2682)  auc: 98.3806 (96.4370)  time: 0.0296  data: 0.0002  max mem: 5308
[17:08:15.048312] Test:  [180/560]  eta: 0:00:14  loss: 0.2434 (0.2686)  auc: 97.5709 (96.4521)  time: 0.0294  data: 0.0002  max mem: 5308
[17:08:15.347837] Test:  [190/560]  eta: 0:00:13  loss: 0.2718 (0.2691)  auc: 96.4706 (96.4486)  time: 0.0296  data: 0.0002  max mem: 5308
[17:08:15.640502] Test:  [200/560]  eta: 0:00:13  loss: 0.2584 (0.2673)  auc: 96.3563 (96.5113)  time: 0.0295  data: 0.0002  max mem: 5308
[17:08:15.936175] Test:  [210/560]  eta: 0:00:12  loss: 0.2584 (0.2684)  auc: 97.5000 (96.4752)  time: 0.0293  data: 0.0002  max mem: 5308
[17:08:16.231221] Test:  [220/560]  eta: 0:00:12  loss: 0.2662 (0.2684)  auc: 97.5000 (96.4914)  time: 0.0295  data: 0.0002  max mem: 5308
[17:08:16.522694] Test:  [230/560]  eta: 0:00:11  loss: 0.2622 (0.2685)  auc: 96.8627 (96.4778)  time: 0.0293  data: 0.0002  max mem: 5308
[17:08:16.814805] Test:  [240/560]  eta: 0:00:11  loss: 0.2622 (0.2684)  auc: 96.8627 (96.4781)  time: 0.0291  data: 0.0001  max mem: 5308
[17:08:17.106604] Test:  [250/560]  eta: 0:00:11  loss: 0.2870 (0.2691)  auc: 96.6667 (96.4596)  time: 0.0291  data: 0.0001  max mem: 5308
[17:08:17.401698] Test:  [260/560]  eta: 0:00:10  loss: 0.2332 (0.2676)  auc: 97.2549 (96.4988)  time: 0.0293  data: 0.0002  max mem: 5308
[17:08:17.695184] Test:  [270/560]  eta: 0:00:10  loss: 0.2728 (0.2684)  auc: 96.4706 (96.4777)  time: 0.0294  data: 0.0002  max mem: 5308
[17:08:17.987549] Test:  [280/560]  eta: 0:00:09  loss: 0.2354 (0.2659)  auc: 97.6190 (96.5461)  time: 0.0292  data: 0.0001  max mem: 5308
[17:08:18.282507] Test:  [290/560]  eta: 0:00:09  loss: 0.2471 (0.2667)  auc: 97.9167 (96.5354)  time: 0.0293  data: 0.0002  max mem: 5308
[17:08:18.577157] Test:  [300/560]  eta: 0:00:08  loss: 0.2603 (0.2659)  auc: 97.1660 (96.5654)  time: 0.0294  data: 0.0002  max mem: 5308
[17:08:18.872562] Test:  [310/560]  eta: 0:00:08  loss: 0.2490 (0.2663)  auc: 96.4706 (96.5318)  time: 0.0294  data: 0.0002  max mem: 5308
[17:08:19.167468] Test:  [320/560]  eta: 0:00:08  loss: 0.2725 (0.2666)  auc: 96.4706 (96.5182)  time: 0.0294  data: 0.0001  max mem: 5308
[17:08:19.462754] Test:  [330/560]  eta: 0:00:07  loss: 0.2695 (0.2665)  auc: 97.1660 (96.5135)  time: 0.0294  data: 0.0001  max mem: 5308
[17:08:19.755393] Test:  [340/560]  eta: 0:00:07  loss: 0.2572 (0.2661)  auc: 97.1660 (96.5231)  time: 0.0293  data: 0.0001  max mem: 5308
[17:08:20.048248] Test:  [350/560]  eta: 0:00:07  loss: 0.2522 (0.2661)  auc: 96.2500 (96.5183)  time: 0.0292  data: 0.0001  max mem: 5308
[17:08:20.342027] Test:  [360/560]  eta: 0:00:06  loss: 0.2813 (0.2670)  auc: 96.2500 (96.5038)  time: 0.0292  data: 0.0001  max mem: 5308
[17:08:20.642912] Test:  [370/560]  eta: 0:00:06  loss: 0.2865 (0.2674)  auc: 96.4286 (96.4792)  time: 0.0296  data: 0.0002  max mem: 5308
[17:08:20.938396] Test:  [380/560]  eta: 0:00:06  loss: 0.2473 (0.2672)  auc: 97.1660 (96.4978)  time: 0.0297  data: 0.0002  max mem: 5308
[17:08:21.234675] Test:  [390/560]  eta: 0:00:05  loss: 0.2379 (0.2674)  auc: 97.6190 (96.4987)  time: 0.0295  data: 0.0002  max mem: 5308
[17:08:21.534730] Test:  [400/560]  eta: 0:00:05  loss: 0.2594 (0.2683)  auc: 96.8254 (96.4631)  time: 0.0297  data: 0.0002  max mem: 5308
[17:08:21.830597] Test:  [410/560]  eta: 0:00:04  loss: 0.2852 (0.2688)  auc: 95.2381 (96.4242)  time: 0.0297  data: 0.0002  max mem: 5308
[17:08:22.124395] Test:  [420/560]  eta: 0:00:04  loss: 0.2852 (0.2690)  auc: 96.0784 (96.4048)  time: 0.0294  data: 0.0002  max mem: 5308
[17:08:22.420086] Test:  [430/560]  eta: 0:00:04  loss: 0.2291 (0.2680)  auc: 97.9757 (96.4436)  time: 0.0293  data: 0.0001  max mem: 5308
[17:08:22.717324] Test:  [440/560]  eta: 0:00:03  loss: 0.2124 (0.2673)  auc: 98.4127 (96.4713)  time: 0.0295  data: 0.0001  max mem: 5308
[17:08:23.011438] Test:  [450/560]  eta: 0:00:03  loss: 0.2318 (0.2674)  auc: 98.0159 (96.4662)  time: 0.0295  data: 0.0002  max mem: 5308
[17:08:23.306639] Test:  [460/560]  eta: 0:00:03  loss: 0.2797 (0.2680)  auc: 96.9697 (96.4568)  time: 0.0294  data: 0.0001  max mem: 5308
[17:08:23.600078] Test:  [470/560]  eta: 0:00:02  loss: 0.2826 (0.2683)  auc: 96.4706 (96.4567)  time: 0.0294  data: 0.0001  max mem: 5308
[17:08:23.894253] Test:  [480/560]  eta: 0:00:02  loss: 0.2681 (0.2683)  auc: 96.2500 (96.4371)  time: 0.0293  data: 0.0001  max mem: 5308
[17:08:24.188039] Test:  [490/560]  eta: 0:00:02  loss: 0.2446 (0.2676)  auc: 96.2891 (96.4565)  time: 0.0293  data: 0.0001  max mem: 5308
[17:08:24.482017] Test:  [500/560]  eta: 0:00:01  loss: 0.2446 (0.2672)  auc: 97.9757 (96.4736)  time: 0.0293  data: 0.0001  max mem: 5308
[17:08:24.777451] Test:  [510/560]  eta: 0:00:01  loss: 0.2504 (0.2667)  auc: 96.4706 (96.4854)  time: 0.0294  data: 0.0002  max mem: 5308
[17:08:25.070204] Test:  [520/560]  eta: 0:00:01  loss: 0.2821 (0.2677)  auc: 96.0784 (96.4505)  time: 0.0293  data: 0.0002  max mem: 5308
[17:08:25.363899] Test:  [530/560]  eta: 0:00:00  loss: 0.2905 (0.2684)  auc: 94.9219 (96.4542)  time: 0.0292  data: 0.0001  max mem: 5308
[17:08:25.656778] Test:  [540/560]  eta: 0:00:00  loss: 0.2814 (0.2689)  auc: 96.6667 (96.4368)  time: 0.0293  data: 0.0002  max mem: 5308
[17:08:25.947386] Test:  [550/560]  eta: 0:00:00  loss: 0.2483 (0.2684)  auc: 98.4375 (96.4758)  time: 0.0291  data: 0.0002  max mem: 5308
[17:08:26.191558] Test:  [559/560]  eta: 0:00:00  loss: 0.2540 (0.2686)  auc: 98.4127 (96.4731)  time: 0.0281  data: 0.0001  max mem: 5308
[17:08:26.390012] Test: Total time: 0:00:18 (0.0325 s / it)
[17:08:50.621774] * Auc 96.445  loss 0.268
[17:08:50.622510] AUC of the network on the 35796 val images: 96.44%
[17:08:50.622527] Max auc: 96.44%
[17:08:50.627888] log_dir: ./checkpoint/finetuned_models/FF++_c23_32frames
[17:08:52.149322] Epoch: [9]  [   0/2877]  eta: 1:12:51  lr: 0.000007  loss: 0.6032 (0.6032)  time: 1.5196  data: 1.2606  max mem: 5308
[17:09:05.775742] Epoch: [9]  [ 100/2877]  eta: 0:06:56  lr: 0.000006  loss: 0.6102 (0.6082)  time: 0.1353  data: 0.0001  max mem: 5308
[17:09:19.458680] Epoch: [9]  [ 200/2877]  eta: 0:06:23  lr: 0.000006  loss: 0.6095 (0.6100)  time: 0.1394  data: 0.0001  max mem: 5308
[17:09:33.084087] Epoch: [9]  [ 300/2877]  eta: 0:06:03  lr: 0.000006  loss: 0.6123 (0.6104)  time: 0.1359  data: 0.0001  max mem: 5308
[17:09:46.810966] Epoch: [9]  [ 400/2877]  eta: 0:05:46  lr: 0.000005  loss: 0.6216 (0.6157)  time: 0.1367  data: 0.0002  max mem: 5308
[17:10:00.288635] Epoch: [9]  [ 500/2877]  eta: 0:05:30  lr: 0.000005  loss: 0.6054 (0.6169)  time: 0.1345  data: 0.0002  max mem: 5308
[17:10:13.843967] Epoch: [9]  [ 600/2877]  eta: 0:05:15  lr: 0.000005  loss: 0.6183 (0.6168)  time: 0.1355  data: 0.0002  max mem: 5308
[17:10:27.464085] Epoch: [9]  [ 700/2877]  eta: 0:05:00  lr: 0.000004  loss: 0.6176 (0.6184)  time: 0.1373  data: 0.0002  max mem: 5308
[17:10:41.024085] Epoch: [9]  [ 800/2877]  eta: 0:04:46  lr: 0.000004  loss: 0.6251 (0.6185)  time: 0.1348  data: 0.0001  max mem: 5308
[17:10:54.575950] Epoch: [9]  [ 900/2877]  eta: 0:04:31  lr: 0.000004  loss: 0.6224 (0.6186)  time: 0.1359  data: 0.0001  max mem: 5308
[17:11:08.130035] Epoch: [9]  [1000/2877]  eta: 0:04:17  lr: 0.000004  loss: 0.6258 (0.6193)  time: 0.1356  data: 0.0003  max mem: 5308
[17:11:21.765699] Epoch: [9]  [1100/2877]  eta: 0:04:03  lr: 0.000003  loss: 0.5994 (0.6199)  time: 0.1375  data: 0.0001  max mem: 5308
[17:11:35.438211] Epoch: [9]  [1200/2877]  eta: 0:03:50  lr: 0.000003  loss: 0.6504 (0.6205)  time: 0.1348  data: 0.0001  max mem: 5308
[17:11:49.021473] Epoch: [9]  [1300/2877]  eta: 0:03:36  lr: 0.000003  loss: 0.6244 (0.6211)  time: 0.1378  data: 0.0002  max mem: 5308
[17:12:02.691884] Epoch: [9]  [1400/2877]  eta: 0:03:22  lr: 0.000003  loss: 0.6132 (0.6206)  time: 0.1373  data: 0.0002  max mem: 5308
[17:12:16.246649] Epoch: [9]  [1500/2877]  eta: 0:03:08  lr: 0.000002  loss: 0.6366 (0.6204)  time: 0.1362  data: 0.0002  max mem: 5308
[17:12:29.873774] Epoch: [9]  [1600/2877]  eta: 0:02:54  lr: 0.000002  loss: 0.6490 (0.6199)  time: 0.1380  data: 0.0002  max mem: 5308
[17:12:43.536798] Epoch: [9]  [1700/2877]  eta: 0:02:41  lr: 0.000002  loss: 0.5923 (0.6198)  time: 0.1371  data: 0.0002  max mem: 5308
[17:12:57.281224] Epoch: [9]  [1800/2877]  eta: 0:02:27  lr: 0.000002  loss: 0.6158 (0.6198)  time: 0.1361  data: 0.0001  max mem: 5308
[17:13:11.025623] Epoch: [9]  [1900/2877]  eta: 0:02:13  lr: 0.000002  loss: 0.6244 (0.6196)  time: 0.1392  data: 0.0002  max mem: 5308
[17:13:24.712475] Epoch: [9]  [2000/2877]  eta: 0:02:00  lr: 0.000002  loss: 0.6158 (0.6202)  time: 0.1379  data: 0.0002  max mem: 5308
[17:13:38.306898] Epoch: [9]  [2100/2877]  eta: 0:01:46  lr: 0.000001  loss: 0.6236 (0.6196)  time: 0.1358  data: 0.0001  max mem: 5308
[17:13:51.861112] Epoch: [9]  [2200/2877]  eta: 0:01:32  lr: 0.000001  loss: 0.6389 (0.6194)  time: 0.1353  data: 0.0001  max mem: 5308
[17:14:05.479928] Epoch: [9]  [2300/2877]  eta: 0:01:18  lr: 0.000001  loss: 0.6032 (0.6192)  time: 0.1358  data: 0.0001  max mem: 5308
[17:14:19.094618] Epoch: [9]  [2400/2877]  eta: 0:01:05  lr: 0.000001  loss: 0.6254 (0.6190)  time: 0.1380  data: 0.0002  max mem: 5308
[17:14:32.699114] Epoch: [9]  [2500/2877]  eta: 0:00:51  lr: 0.000001  loss: 0.6126 (0.6189)  time: 0.1344  data: 0.0001  max mem: 5308
[17:14:46.246451] Epoch: [9]  [2600/2877]  eta: 0:00:37  lr: 0.000001  loss: 0.5802 (0.6186)  time: 0.1349  data: 0.0001  max mem: 5308
[17:14:59.899232] Epoch: [9]  [2700/2877]  eta: 0:00:24  lr: 0.000001  loss: 0.6309 (0.6190)  time: 0.1381  data: 0.0002  max mem: 5308
[17:15:13.615289] Epoch: [9]  [2800/2877]  eta: 0:00:10  lr: 0.000001  loss: 0.6427 (0.6193)  time: 0.1364  data: 0.0002  max mem: 5308
[17:15:24.066361] Epoch: [9]  [2876/2877]  eta: 0:00:00  lr: 0.000001  loss: 0.6170 (0.6194)  time: 0.1359  data: 0.0003  max mem: 5308
[17:15:24.332226] Epoch: [9] Total time: 0:06:33 (0.1368 s / it)
[17:15:24.383123] Averaged stats: lr: 0.000001  loss: 0.6170 (0.6199)
[17:15:26.022391] Test:  [  0/560]  eta: 0:15:15  loss: 0.2722 (0.2722)  auc: 97.2549 (97.2549)  time: 1.6355  data: 1.5981  max mem: 5308
[17:15:26.345784] Test:  [ 10/560]  eta: 0:01:37  loss: 0.3206 (0.3271)  auc: 95.0000 (93.4459)  time: 0.1780  data: 0.1477  max mem: 5308
[17:15:26.645646] Test:  [ 20/560]  eta: 0:00:58  loss: 0.2955 (0.2959)  auc: 95.6349 (95.4811)  time: 0.0311  data: 0.0014  max mem: 5308
[17:15:26.952988] Test:  [ 30/560]  eta: 0:00:43  loss: 0.2514 (0.2803)  auc: 98.3806 (95.8764)  time: 0.0302  data: 0.0002  max mem: 5308
[17:15:27.250217] Test:  [ 40/560]  eta: 0:00:36  loss: 0.2580 (0.2793)  auc: 97.0833 (95.8053)  time: 0.0301  data: 0.0002  max mem: 5308
[17:15:27.544844] Test:  [ 50/560]  eta: 0:00:31  loss: 0.2610 (0.2777)  auc: 96.8254 (96.0871)  time: 0.0295  data: 0.0002  max mem: 5308
[17:15:27.839547] Test:  [ 60/560]  eta: 0:00:28  loss: 0.2934 (0.2794)  auc: 96.8254 (95.9960)  time: 0.0294  data: 0.0002  max mem: 5308
[17:15:28.133396] Test:  [ 70/560]  eta: 0:00:25  loss: 0.2725 (0.2776)  auc: 96.8627 (96.0572)  time: 0.0293  data: 0.0001  max mem: 5308
[17:15:28.427168] Test:  [ 80/560]  eta: 0:00:23  loss: 0.2436 (0.2715)  auc: 97.9757 (96.2697)  time: 0.0293  data: 0.0002  max mem: 5308
[17:15:28.721503] Test:  [ 90/560]  eta: 0:00:22  loss: 0.2328 (0.2708)  auc: 97.2656 (96.3182)  time: 0.0293  data: 0.0002  max mem: 5308
[17:15:29.019369] Test:  [100/560]  eta: 0:00:21  loss: 0.2356 (0.2671)  auc: 97.1660 (96.4760)  time: 0.0295  data: 0.0002  max mem: 5308
[17:15:29.314216] Test:  [110/560]  eta: 0:00:19  loss: 0.2380 (0.2668)  auc: 97.1660 (96.4704)  time: 0.0296  data: 0.0002  max mem: 5308
[17:15:29.608451] Test:  [120/560]  eta: 0:00:18  loss: 0.2711 (0.2727)  auc: 94.5833 (96.2833)  time: 0.0294  data: 0.0002  max mem: 5308
[17:15:29.902725] Test:  [130/560]  eta: 0:00:18  loss: 0.2764 (0.2735)  auc: 95.8333 (96.3002)  time: 0.0294  data: 0.0002  max mem: 5308
[17:15:30.198474] Test:  [140/560]  eta: 0:00:17  loss: 0.2708 (0.2739)  auc: 96.8627 (96.3366)  time: 0.0294  data: 0.0002  max mem: 5308
[17:15:30.495214] Test:  [150/560]  eta: 0:00:16  loss: 0.2604 (0.2726)  auc: 97.5709 (96.3466)  time: 0.0295  data: 0.0002  max mem: 5308
[17:15:30.789025] Test:  [160/560]  eta: 0:00:15  loss: 0.2305 (0.2680)  auc: 98.3333 (96.4796)  time: 0.0294  data: 0.0002  max mem: 5308
[17:15:31.084164] Test:  [170/560]  eta: 0:00:15  loss: 0.2185 (0.2668)  auc: 98.3333 (96.5032)  time: 0.0294  data: 0.0002  max mem: 5308
[17:15:31.378995] Test:  [180/560]  eta: 0:00:14  loss: 0.2432 (0.2672)  auc: 97.6562 (96.5190)  time: 0.0294  data: 0.0002  max mem: 5308
[17:15:31.677022] Test:  [190/560]  eta: 0:00:14  loss: 0.2711 (0.2677)  auc: 96.8627 (96.5226)  time: 0.0296  data: 0.0002  max mem: 5308
[17:15:31.970709] Test:  [200/560]  eta: 0:00:13  loss: 0.2630 (0.2660)  auc: 96.3563 (96.5816)  time: 0.0295  data: 0.0002  max mem: 5308
[17:15:32.264122] Test:  [210/560]  eta: 0:00:13  loss: 0.2630 (0.2671)  auc: 97.1660 (96.5477)  time: 0.0293  data: 0.0002  max mem: 5308
[17:15:32.559574] Test:  [220/560]  eta: 0:00:12  loss: 0.2652 (0.2671)  auc: 97.1660 (96.5606)  time: 0.0293  data: 0.0002  max mem: 5308
[17:15:32.853910] Test:  [230/560]  eta: 0:00:12  loss: 0.2627 (0.2673)  auc: 97.5709 (96.5524)  time: 0.0294  data: 0.0002  max mem: 5308
[17:15:33.148498] Test:  [240/560]  eta: 0:00:11  loss: 0.2627 (0.2671)  auc: 97.6471 (96.5505)  time: 0.0294  data: 0.0002  max mem: 5308
[17:15:33.444130] Test:  [250/560]  eta: 0:00:11  loss: 0.2834 (0.2678)  auc: 96.6667 (96.5275)  time: 0.0294  data: 0.0002  max mem: 5308
[17:15:33.740958] Test:  [260/560]  eta: 0:00:10  loss: 0.2338 (0.2664)  auc: 97.2549 (96.5704)  time: 0.0295  data: 0.0002  max mem: 5308
[17:15:34.037485] Test:  [270/560]  eta: 0:00:10  loss: 0.2719 (0.2671)  auc: 96.4706 (96.5534)  time: 0.0296  data: 0.0002  max mem: 5308
[17:15:34.331805] Test:  [280/560]  eta: 0:00:09  loss: 0.2327 (0.2646)  auc: 97.6190 (96.6211)  time: 0.0295  data: 0.0002  max mem: 5308
[17:15:34.626515] Test:  [290/560]  eta: 0:00:09  loss: 0.2470 (0.2654)  auc: 97.9167 (96.6098)  time: 0.0294  data: 0.0002  max mem: 5308
[17:15:34.924812] Test:  [300/560]  eta: 0:00:09  loss: 0.2571 (0.2647)  auc: 97.1660 (96.6394)  time: 0.0296  data: 0.0002  max mem: 5308
[17:15:35.216619] Test:  [310/560]  eta: 0:00:08  loss: 0.2501 (0.2650)  auc: 96.8627 (96.6078)  time: 0.0294  data: 0.0001  max mem: 5308
[17:15:35.509710] Test:  [320/560]  eta: 0:00:08  loss: 0.2691 (0.2654)  auc: 96.8627 (96.5913)  time: 0.0292  data: 0.0001  max mem: 5308
[17:15:35.808104] Test:  [330/560]  eta: 0:00:07  loss: 0.2688 (0.2654)  auc: 97.0833 (96.5869)  time: 0.0295  data: 0.0001  max mem: 5308
[17:15:36.162883] Test:  [340/560]  eta: 0:00:07  loss: 0.2554 (0.2650)  auc: 96.8254 (96.5908)  time: 0.0325  data: 0.0002  max mem: 5308
[17:15:36.454381] Test:  [350/560]  eta: 0:00:07  loss: 0.2463 (0.2650)  auc: 96.8254 (96.5862)  time: 0.0322  data: 0.0002  max mem: 5308
[17:15:36.755903] Test:  [360/560]  eta: 0:00:06  loss: 0.2791 (0.2659)  auc: 96.8254 (96.5709)  time: 0.0296  data: 0.0002  max mem: 5308
[17:15:37.058823] Test:  [370/560]  eta: 0:00:06  loss: 0.2842 (0.2663)  auc: 96.8254 (96.5491)  time: 0.0301  data: 0.0002  max mem: 5308
[17:15:37.357357] Test:  [380/560]  eta: 0:00:06  loss: 0.2488 (0.2661)  auc: 97.5709 (96.5647)  time: 0.0300  data: 0.0002  max mem: 5308
[17:15:37.657345] Test:  [390/560]  eta: 0:00:05  loss: 0.2341 (0.2663)  auc: 97.6190 (96.5660)  time: 0.0298  data: 0.0002  max mem: 5308
[17:15:37.959345] Test:  [400/560]  eta: 0:00:05  loss: 0.2575 (0.2673)  auc: 97.2222 (96.5297)  time: 0.0300  data: 0.0002  max mem: 5308
[17:15:38.258105] Test:  [410/560]  eta: 0:00:05  loss: 0.2843 (0.2677)  auc: 95.6349 (96.4911)  time: 0.0299  data: 0.0002  max mem: 5308
[17:15:38.562521] Test:  [420/560]  eta: 0:00:04  loss: 0.2843 (0.2679)  auc: 96.0784 (96.4682)  time: 0.0300  data: 0.0002  max mem: 5308
[17:15:38.857080] Test:  [430/560]  eta: 0:00:04  loss: 0.2232 (0.2669)  auc: 97.9757 (96.5079)  time: 0.0298  data: 0.0002  max mem: 5308
[17:15:39.150906] Test:  [440/560]  eta: 0:00:04  loss: 0.2123 (0.2662)  auc: 98.4127 (96.5350)  time: 0.0293  data: 0.0001  max mem: 5308
[17:15:39.445237] Test:  [450/560]  eta: 0:00:03  loss: 0.2309 (0.2663)  auc: 98.0469 (96.5324)  time: 0.0293  data: 0.0001  max mem: 5308
[17:15:39.743831] Test:  [460/560]  eta: 0:00:03  loss: 0.2795 (0.2669)  auc: 96.9697 (96.5207)  time: 0.0295  data: 0.0002  max mem: 5308
[17:15:40.037987] Test:  [470/560]  eta: 0:00:02  loss: 0.2803 (0.2672)  auc: 96.4706 (96.5188)  time: 0.0296  data: 0.0002  max mem: 5308
[17:15:40.332330] Test:  [480/560]  eta: 0:00:02  loss: 0.2657 (0.2672)  auc: 96.2500 (96.4992)  time: 0.0294  data: 0.0001  max mem: 5308
[17:15:40.625663] Test:  [490/560]  eta: 0:00:02  loss: 0.2419 (0.2665)  auc: 96.2891 (96.5190)  time: 0.0293  data: 0.0002  max mem: 5308
[17:15:40.919337] Test:  [500/560]  eta: 0:00:01  loss: 0.2419 (0.2661)  auc: 97.5709 (96.5363)  time: 0.0293  data: 0.0001  max mem: 5308
[17:15:41.210644] Test:  [510/560]  eta: 0:00:01  loss: 0.2526 (0.2656)  auc: 96.8627 (96.5470)  time: 0.0292  data: 0.0001  max mem: 5308
[17:15:41.501098] Test:  [520/560]  eta: 0:00:01  loss: 0.2786 (0.2666)  auc: 96.0784 (96.5132)  time: 0.0290  data: 0.0001  max mem: 5308
[17:15:41.793075] Test:  [530/560]  eta: 0:00:00  loss: 0.2901 (0.2673)  auc: 95.3125 (96.5152)  time: 0.0291  data: 0.0001  max mem: 5308
[17:15:42.085467] Test:  [540/560]  eta: 0:00:00  loss: 0.2839 (0.2678)  auc: 97.0833 (96.4989)  time: 0.0292  data: 0.0002  max mem: 5308
[17:15:42.374333] Test:  [550/560]  eta: 0:00:00  loss: 0.2509 (0.2673)  auc: 98.4375 (96.5387)  time: 0.0290  data: 0.0001  max mem: 5308
[17:15:42.615863] Test:  [559/560]  eta: 0:00:00  loss: 0.2576 (0.2676)  auc: 98.4127 (96.5354)  time: 0.0279  data: 0.0001  max mem: 5308
[17:15:42.770750] Test: Total time: 0:00:18 (0.0328 s / it)
[17:15:48.938519] * Auc 96.507  loss 0.267
[17:15:48.939175] AUC of the network on the 35796 val images: 96.51%
[17:15:48.939190] Max auc: 96.51%
[17:15:49.852552] Training time 1:10:01