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2023/05/31 17:27:44 - mmengine - INFO - 
------------------------------------------------------------
System environment:
    sys.platform: linux
    Python: 3.10.9 (main, Mar  8 2023, 10:47:38) [GCC 11.2.0]
    CUDA available: True
    numpy_random_seed: 622910272
    GPU 0,1,2,3: NVIDIA A100-SXM4-80GB
    CUDA_HOME: /mnt/petrelfs/share/cuda-11.6
    NVCC: Cuda compilation tools, release 11.6, V11.6.124
    GCC: gcc (GCC) 4.8.5 20150623 (Red Hat 4.8.5-44)
    PyTorch: 1.13.1
    PyTorch compiling details: PyTorch built with:
  - GCC 9.3
  - C++ Version: 201402
  - Intel(R) oneAPI Math Kernel Library Version 2021.4-Product Build 20210904 for Intel(R) 64 architecture applications
  - Intel(R) MKL-DNN v2.6.0 (Git Hash 52b5f107dd9cf10910aaa19cb47f3abf9b349815)
  - OpenMP 201511 (a.k.a. OpenMP 4.5)
  - LAPACK is enabled (usually provided by MKL)
  - NNPACK is enabled
  - CPU capability usage: AVX2
  - CUDA Runtime 11.6
  - NVCC architecture flags: -gencode;arch=compute_37,code=sm_37;-gencode;arch=compute_50,code=sm_50;-gencode;arch=compute_60,code=sm_60;-gencode;arch=compute_61,code=sm_61;-gencode;arch=compute_70,code=sm_70;-gencode;arch=compute_75,code=sm_75;-gencode;arch=compute_80,code=sm_80;-gencode;arch=compute_86,code=sm_86;-gencode;arch=compute_37,code=compute_37
  - CuDNN 8.3.2  (built against CUDA 11.5)
  - Magma 2.6.1
  - Build settings: BLAS_INFO=mkl, BUILD_TYPE=Release, CUDA_VERSION=11.6, CUDNN_VERSION=8.3.2, CXX_COMPILER=/opt/rh/devtoolset-9/root/usr/bin/c++, CXX_FLAGS= -fabi-version=11 -Wno-deprecated -fvisibility-inlines-hidden -DUSE_PTHREADPOOL -fopenmp -DNDEBUG -DUSE_KINETO -DUSE_FBGEMM -DUSE_QNNPACK -DUSE_PYTORCH_QNNPACK -DUSE_XNNPACK -DSYMBOLICATE_MOBILE_DEBUG_HANDLE -DEDGE_PROFILER_USE_KINETO -O2 -fPIC -Wno-narrowing -Wall -Wextra -Werror=return-type -Werror=non-virtual-dtor -Wno-missing-field-initializers -Wno-type-limits -Wno-array-bounds -Wno-unknown-pragmas -Wunused-local-typedefs -Wno-unused-parameter -Wno-unused-function -Wno-unused-result -Wno-strict-overflow -Wno-strict-aliasing -Wno-error=deprecated-declarations -Wno-stringop-overflow -Wno-psabi -Wno-error=pedantic -Wno-error=redundant-decls -Wno-error=old-style-cast -fdiagnostics-color=always -faligned-new -Wno-unused-but-set-variable -Wno-maybe-uninitialized -fno-math-errno -fno-trapping-math -Werror=format -Werror=cast-function-type -Wno-stringop-overflow, LAPACK_INFO=mkl, PERF_WITH_AVX=1, PERF_WITH_AVX2=1, PERF_WITH_AVX512=1, TORCH_VERSION=1.13.1, USE_CUDA=ON, USE_CUDNN=ON, USE_EXCEPTION_PTR=1, USE_GFLAGS=OFF, USE_GLOG=OFF, USE_MKL=ON, USE_MKLDNN=ON, USE_MPI=OFF, USE_NCCL=ON, USE_NNPACK=ON, USE_OPENMP=ON, USE_ROCM=OFF, 

    TorchVision: 0.14.1
    OpenCV: 4.7.0
    MMEngine: 0.7.3

Runtime environment:
    cudnn_benchmark: True
    mp_cfg: {'mp_start_method': 'fork', 'opencv_num_threads': 0}
    dist_cfg: {'backend': 'nccl'}
    seed: None
    deterministic: False
    Distributed launcher: slurm
    Distributed training: True
    GPU number: 4
------------------------------------------------------------

2023/05/31 17:27:44 - mmengine - INFO - Config:
optim_wrapper = dict(
    optimizer=dict(
        type='AdamW',
        lr=0.004,
        weight_decay=0.05,
        eps=1e-08,
        betas=(0.9, 0.999),
        _scope_='mmpretrain'),
    paramwise_cfg=dict(
        norm_decay_mult=0.0,
        bias_decay_mult=0.0,
        flat_decay_mult=0.0,
        custom_keys=dict({
            '.absolute_pos_embed': dict(decay_mult=0.0),
            '.relative_position_bias_table': dict(decay_mult=0.0)
        })),
    type='AmpOptimWrapper',
    dtype='bfloat16',
    clip_grad=None)
param_scheduler = [
    dict(type='CosineAnnealingLR', eta_min=1e-05, by_epoch=True, begin=0)
]
train_cfg = dict(by_epoch=True, max_epochs=20, val_interval=1)
val_cfg = dict()
test_cfg = dict()
auto_scale_lr = dict(base_batch_size=4096)
model = dict(
    type='ImageClassifier',
    backbone=dict(type='ConvNeXt', arch='tiny', drop_path_rate=0.1),
    head=dict(
        type='LinearClsHead',
        num_classes=2,
        in_channels=768,
        loss=dict(
            type='LabelSmoothLoss', label_smooth_val=0.1, mode='original'),
        init_cfg=None),
    init_cfg=dict(
        type='TruncNormal', layer=['Conv2d', 'Linear'], std=0.02, bias=0.0),
    train_cfg=None)
dataset_type = 'CustomDataset'
data_preprocessor = dict(
    num_classes=2,
    mean=[123.675, 116.28, 103.53],
    std=[58.395, 57.12, 57.375],
    to_rgb=True)
bgr_mean = [103.53, 116.28, 123.675]
bgr_std = [57.375, 57.12, 58.395]
train_pipeline = [
    dict(type='LoadImageFromFile'),
    dict(
        type='RandomResizedCrop',
        scale=224,
        backend='pillow',
        interpolation='bicubic'),
    dict(type='RandomFlip', prob=0.5, direction='horizontal'),
    dict(type='PackInputs')
]
test_pipeline = [
    dict(type='LoadImageFromFile'),
    dict(
        type='ResizeEdge',
        scale=256,
        edge='short',
        backend='pillow',
        interpolation='bicubic'),
    dict(type='CenterCrop', crop_size=224),
    dict(type='PackInputs')
]
train_dataloader = dict(
    pin_memory=True,
    persistent_workers=True,
    collate_fn=dict(type='default_collate'),
    batch_size=1024,
    num_workers=10,
    dataset=dict(
        type='CustomDataset',
        data_root='',
        ann_file=
        '/mnt/petrelfs/luzeyu/workspace/fakebench/dataset/meta/train/stablediffusionV1-5R2-dpmsolver-25-5m.csv',
        pipeline=[
            dict(type='LoadImageFromFile'),
            dict(
                type='RandomResizedCrop',
                scale=224,
                backend='pillow',
                interpolation='bicubic'),
            dict(type='RandomFlip', prob=0.5, direction='horizontal'),
            dict(type='PackInputs')
        ]),
    sampler=dict(type='DefaultSampler', shuffle=True))
val_dataloader = dict(
    pin_memory=True,
    persistent_workers=True,
    collate_fn=dict(type='default_collate'),
    batch_size=256,
    num_workers=10,
    dataset=dict(
        type='CustomDataset',
        data_root='/mnt/petrelfs/luzeyu/workspace/fakebench/dataset',
        ann_file=
        '/mnt/petrelfs/luzeyu/workspace/fakebench/dataset/meta/val/stablediffusionV1-5R2-dpmsolver-25-1w.tsv',
        pipeline=[
            dict(type='LoadImageFromFile'),
            dict(
                type='ResizeEdge',
                scale=256,
                edge='short',
                backend='pillow',
                interpolation='bicubic'),
            dict(type='CenterCrop', crop_size=224),
            dict(type='PackInputs')
        ]),
    sampler=dict(type='DefaultSampler', shuffle=False))
val_evaluator = [
    dict(type='Accuracy', topk=1),
    dict(type='SingleLabelMetric', average=None)
]
test_dataloader = dict(
    pin_memory=True,
    persistent_workers=True,
    collate_fn=dict(type='default_collate'),
    batch_size=256,
    num_workers=10,
    dataset=dict(
        type='CustomDataset',
        data_root='/mnt/petrelfs/luzeyu/workspace/fakebench/dataset',
        ann_file=
        '/mnt/petrelfs/luzeyu/workspace/fakebench/dataset/meta/val/stablediffusionV1-5R2-dpmsolver-25-1w.tsv',
        pipeline=[
            dict(type='LoadImageFromFile'),
            dict(
                type='ResizeEdge',
                scale=256,
                edge='short',
                backend='pillow',
                interpolation='bicubic'),
            dict(type='CenterCrop', crop_size=224),
            dict(type='PackInputs')
        ]),
    sampler=dict(type='DefaultSampler', shuffle=False))
test_evaluator = [
    dict(type='Accuracy', topk=1),
    dict(type='SingleLabelMetric', average=None)
]
custom_hooks = [dict(type='EMAHook', momentum=0.0001, priority='ABOVE_NORMAL')]
default_scope = 'mmpretrain'
default_hooks = dict(
    timer=dict(type='IterTimerHook'),
    logger=dict(type='LoggerHook', interval=100),
    param_scheduler=dict(type='ParamSchedulerHook'),
    checkpoint=dict(type='CheckpointHook', interval=1),
    sampler_seed=dict(type='DistSamplerSeedHook'),
    visualization=dict(type='VisualizationHook', enable=True))
env_cfg = dict(
    cudnn_benchmark=True,
    mp_cfg=dict(mp_start_method='fork', opencv_num_threads=0),
    dist_cfg=dict(backend='nccl'))
vis_backends = [dict(type='LocalVisBackend')]
visualizer = dict(
    type='UniversalVisualizer',
    vis_backends=[
        dict(type='LocalVisBackend'),
        dict(type='TensorboardVisBackend')
    ])
log_level = 'INFO'
load_from = None
resume = False
randomness = dict(seed=None, deterministic=False)
launcher = 'slurm'
work_dir = 'workdir/convnext_tiny_4xb1024_4e-3lr_5m'

2023/05/31 17:27:48 - mmengine - INFO - Hooks will be executed in the following order:
before_run:
(VERY_HIGH   ) RuntimeInfoHook                    
(ABOVE_NORMAL) EMAHook                            
(BELOW_NORMAL) LoggerHook                         
 -------------------- 
after_load_checkpoint:
(ABOVE_NORMAL) EMAHook                            
 -------------------- 
before_train:
(VERY_HIGH   ) RuntimeInfoHook                    
(ABOVE_NORMAL) EMAHook                            
(NORMAL      ) IterTimerHook                      
(VERY_LOW    ) CheckpointHook                     
 -------------------- 
before_train_epoch:
(VERY_HIGH   ) RuntimeInfoHook                    
(NORMAL      ) IterTimerHook                      
(NORMAL      ) DistSamplerSeedHook                
 -------------------- 
before_train_iter:
(VERY_HIGH   ) RuntimeInfoHook                    
(NORMAL      ) IterTimerHook                      
 -------------------- 
after_train_iter:
(VERY_HIGH   ) RuntimeInfoHook                    
(ABOVE_NORMAL) EMAHook                            
(NORMAL      ) IterTimerHook                      
(BELOW_NORMAL) LoggerHook                         
(LOW         ) ParamSchedulerHook                 
(VERY_LOW    ) CheckpointHook                     
 -------------------- 
after_train_epoch:
(NORMAL      ) IterTimerHook                      
(LOW         ) ParamSchedulerHook                 
(VERY_LOW    ) CheckpointHook                     
 -------------------- 
before_val_epoch:
(ABOVE_NORMAL) EMAHook                            
(NORMAL      ) IterTimerHook                      
 -------------------- 
before_val_iter:
(NORMAL      ) IterTimerHook                      
 -------------------- 
after_val_iter:
(NORMAL      ) IterTimerHook                      
(NORMAL      ) VisualizationHook                  
(BELOW_NORMAL) LoggerHook                         
 -------------------- 
after_val_epoch:
(VERY_HIGH   ) RuntimeInfoHook                    
(ABOVE_NORMAL) EMAHook                            
(NORMAL      ) IterTimerHook                      
(BELOW_NORMAL) LoggerHook                         
(LOW         ) ParamSchedulerHook                 
(VERY_LOW    ) CheckpointHook                     
 -------------------- 
before_save_checkpoint:
(ABOVE_NORMAL) EMAHook                            
 -------------------- 
after_train:
(VERY_LOW    ) CheckpointHook                     
 -------------------- 
before_test_epoch:
(ABOVE_NORMAL) EMAHook                            
(NORMAL      ) IterTimerHook                      
 -------------------- 
before_test_iter:
(NORMAL      ) IterTimerHook                      
 -------------------- 
after_test_iter:
(NORMAL      ) IterTimerHook                      
(NORMAL      ) VisualizationHook                  
(BELOW_NORMAL) LoggerHook                         
 -------------------- 
after_test_epoch:
(VERY_HIGH   ) RuntimeInfoHook                    
(ABOVE_NORMAL) EMAHook                            
(NORMAL      ) IterTimerHook                      
(BELOW_NORMAL) LoggerHook                         
 -------------------- 
after_run:
(BELOW_NORMAL) LoggerHook                         
 -------------------- 
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.downsample_layers.0.0.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.downsample_layers.0.1.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.downsample_layers.0.1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.downsample_layers.1.0.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.downsample_layers.1.0.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.downsample_layers.1.1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.downsample_layers.2.0.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.downsample_layers.2.0.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.downsample_layers.2.1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.downsample_layers.3.0.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.downsample_layers.3.0.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.downsample_layers.3.1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.0.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.0.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.0.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.0.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.0.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.0.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.1.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.1.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.1.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.1.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.1.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.1.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.2.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.2.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.2.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.2.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.2.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.0.2.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.0.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.0.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.0.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.0.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.0.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.0.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.1.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.1.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.1.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.1.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.1.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.1.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.2.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.2.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.2.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.2.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.2.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.1.2.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.0.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.0.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.0.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.0.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.0.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.0.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.1.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.1.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.1.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.1.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.1.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.1.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.2.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.2.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.2.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.2.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.2.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.2.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.3.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.3.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.3.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.3.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.3.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.3.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.4.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.4.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.4.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.4.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.4.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.4.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.5.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.5.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.5.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.5.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.5.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.5.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.6.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.6.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.6.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.6.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.6.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.6.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.7.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.7.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.7.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.7.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.7.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.7.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.8.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.8.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.8.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.8.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.8.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.2.8.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.0.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.0.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.0.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.0.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.0.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.0.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.1.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.1.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.1.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.1.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.1.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.1.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.2.gamma:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.2.depthwise_conv.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.2.norm.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.2.norm.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.2.pointwise_conv1.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.stages.3.2.pointwise_conv2.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.norm3.weight:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- backbone.norm3.bias:weight_decay=0.0
2023/05/31 17:28:15 - mmengine - INFO - paramwise_options -- head.fc.bias:weight_decay=0.0
Name of parameter - Initialization information

backbone.downsample_layers.0.0.weight - torch.Size([96, 3, 4, 4]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.downsample_layers.0.0.bias - torch.Size([96]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.downsample_layers.0.1.weight - torch.Size([96]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.downsample_layers.0.1.bias - torch.Size([96]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.downsample_layers.1.0.weight - torch.Size([96]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.downsample_layers.1.0.bias - torch.Size([96]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.downsample_layers.1.1.weight - torch.Size([192, 96, 2, 2]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.downsample_layers.1.1.bias - torch.Size([192]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.downsample_layers.2.0.weight - torch.Size([192]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.downsample_layers.2.0.bias - torch.Size([192]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.downsample_layers.2.1.weight - torch.Size([384, 192, 2, 2]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.downsample_layers.2.1.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.downsample_layers.3.0.weight - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.downsample_layers.3.0.bias - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.downsample_layers.3.1.weight - torch.Size([768, 384, 2, 2]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.downsample_layers.3.1.bias - torch.Size([768]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.0.gamma - torch.Size([96]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.0.0.depthwise_conv.weight - torch.Size([96, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.0.depthwise_conv.bias - torch.Size([96]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.0.norm.weight - torch.Size([96]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.0.0.norm.bias - torch.Size([96]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.0.0.pointwise_conv1.weight - torch.Size([384, 96]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.0.pointwise_conv1.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.0.pointwise_conv2.weight - torch.Size([96, 384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.0.pointwise_conv2.bias - torch.Size([96]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.1.gamma - torch.Size([96]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.0.1.depthwise_conv.weight - torch.Size([96, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.1.depthwise_conv.bias - torch.Size([96]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.1.norm.weight - torch.Size([96]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.0.1.norm.bias - torch.Size([96]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.0.1.pointwise_conv1.weight - torch.Size([384, 96]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.1.pointwise_conv1.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.1.pointwise_conv2.weight - torch.Size([96, 384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.1.pointwise_conv2.bias - torch.Size([96]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.2.gamma - torch.Size([96]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.0.2.depthwise_conv.weight - torch.Size([96, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.2.depthwise_conv.bias - torch.Size([96]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.2.norm.weight - torch.Size([96]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.0.2.norm.bias - torch.Size([96]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.0.2.pointwise_conv1.weight - torch.Size([384, 96]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.2.pointwise_conv1.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.2.pointwise_conv2.weight - torch.Size([96, 384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.0.2.pointwise_conv2.bias - torch.Size([96]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.0.gamma - torch.Size([192]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.1.0.depthwise_conv.weight - torch.Size([192, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.0.depthwise_conv.bias - torch.Size([192]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.0.norm.weight - torch.Size([192]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.1.0.norm.bias - torch.Size([192]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.1.0.pointwise_conv1.weight - torch.Size([768, 192]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.0.pointwise_conv1.bias - torch.Size([768]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.0.pointwise_conv2.weight - torch.Size([192, 768]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.0.pointwise_conv2.bias - torch.Size([192]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.1.gamma - torch.Size([192]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.1.1.depthwise_conv.weight - torch.Size([192, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.1.depthwise_conv.bias - torch.Size([192]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.1.norm.weight - torch.Size([192]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.1.1.norm.bias - torch.Size([192]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.1.1.pointwise_conv1.weight - torch.Size([768, 192]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.1.pointwise_conv1.bias - torch.Size([768]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.1.pointwise_conv2.weight - torch.Size([192, 768]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.1.pointwise_conv2.bias - torch.Size([192]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.2.gamma - torch.Size([192]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.1.2.depthwise_conv.weight - torch.Size([192, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.2.depthwise_conv.bias - torch.Size([192]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.2.norm.weight - torch.Size([192]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.1.2.norm.bias - torch.Size([192]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.1.2.pointwise_conv1.weight - torch.Size([768, 192]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.2.pointwise_conv1.bias - torch.Size([768]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.2.pointwise_conv2.weight - torch.Size([192, 768]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.1.2.pointwise_conv2.bias - torch.Size([192]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.0.gamma - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.0.depthwise_conv.weight - torch.Size([384, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.0.depthwise_conv.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.0.norm.weight - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.0.norm.bias - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.0.pointwise_conv1.weight - torch.Size([1536, 384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.0.pointwise_conv1.bias - torch.Size([1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.0.pointwise_conv2.weight - torch.Size([384, 1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.0.pointwise_conv2.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.1.gamma - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.1.depthwise_conv.weight - torch.Size([384, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.1.depthwise_conv.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.1.norm.weight - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.1.norm.bias - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.1.pointwise_conv1.weight - torch.Size([1536, 384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.1.pointwise_conv1.bias - torch.Size([1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.1.pointwise_conv2.weight - torch.Size([384, 1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.1.pointwise_conv2.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.2.gamma - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.2.depthwise_conv.weight - torch.Size([384, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.2.depthwise_conv.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.2.norm.weight - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.2.norm.bias - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.2.pointwise_conv1.weight - torch.Size([1536, 384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.2.pointwise_conv1.bias - torch.Size([1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.2.pointwise_conv2.weight - torch.Size([384, 1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.2.pointwise_conv2.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.3.gamma - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.3.depthwise_conv.weight - torch.Size([384, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.3.depthwise_conv.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.3.norm.weight - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.3.norm.bias - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.3.pointwise_conv1.weight - torch.Size([1536, 384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.3.pointwise_conv1.bias - torch.Size([1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.3.pointwise_conv2.weight - torch.Size([384, 1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.3.pointwise_conv2.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.4.gamma - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.4.depthwise_conv.weight - torch.Size([384, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.4.depthwise_conv.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.4.norm.weight - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.4.norm.bias - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.4.pointwise_conv1.weight - torch.Size([1536, 384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.4.pointwise_conv1.bias - torch.Size([1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.4.pointwise_conv2.weight - torch.Size([384, 1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.4.pointwise_conv2.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.5.gamma - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.5.depthwise_conv.weight - torch.Size([384, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.5.depthwise_conv.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.5.norm.weight - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.5.norm.bias - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.5.pointwise_conv1.weight - torch.Size([1536, 384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.5.pointwise_conv1.bias - torch.Size([1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.5.pointwise_conv2.weight - torch.Size([384, 1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.5.pointwise_conv2.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.6.gamma - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.6.depthwise_conv.weight - torch.Size([384, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.6.depthwise_conv.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.6.norm.weight - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.6.norm.bias - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.6.pointwise_conv1.weight - torch.Size([1536, 384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.6.pointwise_conv1.bias - torch.Size([1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.6.pointwise_conv2.weight - torch.Size([384, 1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.6.pointwise_conv2.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.7.gamma - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.7.depthwise_conv.weight - torch.Size([384, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.7.depthwise_conv.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.7.norm.weight - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.7.norm.bias - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.7.pointwise_conv1.weight - torch.Size([1536, 384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.7.pointwise_conv1.bias - torch.Size([1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.7.pointwise_conv2.weight - torch.Size([384, 1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.7.pointwise_conv2.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.8.gamma - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.8.depthwise_conv.weight - torch.Size([384, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.8.depthwise_conv.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.8.norm.weight - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.8.norm.bias - torch.Size([384]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.2.8.pointwise_conv1.weight - torch.Size([1536, 384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.8.pointwise_conv1.bias - torch.Size([1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.8.pointwise_conv2.weight - torch.Size([384, 1536]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.2.8.pointwise_conv2.bias - torch.Size([384]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.0.gamma - torch.Size([768]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.3.0.depthwise_conv.weight - torch.Size([768, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.0.depthwise_conv.bias - torch.Size([768]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.0.norm.weight - torch.Size([768]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.3.0.norm.bias - torch.Size([768]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.3.0.pointwise_conv1.weight - torch.Size([3072, 768]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.0.pointwise_conv1.bias - torch.Size([3072]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.0.pointwise_conv2.weight - torch.Size([768, 3072]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.0.pointwise_conv2.bias - torch.Size([768]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.1.gamma - torch.Size([768]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.3.1.depthwise_conv.weight - torch.Size([768, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.1.depthwise_conv.bias - torch.Size([768]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.1.norm.weight - torch.Size([768]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.3.1.norm.bias - torch.Size([768]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.3.1.pointwise_conv1.weight - torch.Size([3072, 768]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.1.pointwise_conv1.bias - torch.Size([3072]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.1.pointwise_conv2.weight - torch.Size([768, 3072]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.1.pointwise_conv2.bias - torch.Size([768]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.2.gamma - torch.Size([768]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.3.2.depthwise_conv.weight - torch.Size([768, 1, 7, 7]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.2.depthwise_conv.bias - torch.Size([768]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.2.norm.weight - torch.Size([768]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.3.2.norm.bias - torch.Size([768]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.stages.3.2.pointwise_conv1.weight - torch.Size([3072, 768]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.2.pointwise_conv1.bias - torch.Size([3072]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.2.pointwise_conv2.weight - torch.Size([768, 3072]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.stages.3.2.pointwise_conv2.bias - torch.Size([768]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

backbone.norm3.weight - torch.Size([768]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

backbone.norm3.bias - torch.Size([768]): 
The value is the same before and after calling `init_weights` of ImageClassifier  

head.fc.weight - torch.Size([2, 768]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 

head.fc.bias - torch.Size([2]): 
TruncNormalInit: a=-2, b=2, mean=0, std=0.02, bias=0.0 
2023/05/31 17:28:15 - mmengine - WARNING - "FileClient" will be deprecated in future. Please use io functions in https://mmengine.readthedocs.io/en/latest/api/fileio.html#file-io
2023/05/31 17:28:15 - mmengine - WARNING - "HardDiskBackend" is the alias of "LocalBackend" and the former will be deprecated in future.
2023/05/31 17:28:15 - mmengine - INFO - Checkpoints will be saved to /mnt/petrelfs/luzeyu/workspace/fakebench/mmpretrain/workdir/convnext_tiny_4xb1024_4e-3lr_5m.
2023/05/31 17:38:14 - mmengine - INFO - Epoch(train)  [1][ 100/1440]  lr: 4.0000e-03  eta: 1 day, 23:42:27  time: 4.3614  data_time: 1.7131  memory: 61143  loss: 0.6281
2023/05/31 17:45:17 - mmengine - INFO - Epoch(train)  [1][ 200/1440]  lr: 4.0000e-03  eta: 1 day, 16:36:00  time: 4.2238  data_time: 1.3604  memory: 61143  loss: 0.6048
2023/05/31 17:51:44 - mmengine - INFO - Epoch(train)  [1][ 300/1440]  lr: 4.0000e-03  eta: 1 day, 13:10:09  time: 3.8278  data_time: 0.8225  memory: 61143  loss: 0.5771
2023/05/31 17:58:18 - mmengine - INFO - Epoch(train)  [1][ 400/1440]  lr: 4.0000e-03  eta: 1 day, 11:33:08  time: 4.0650  data_time: 1.9558  memory: 61143  loss: 0.5526
2023/05/31 18:04:48 - mmengine - INFO - Epoch(train)  [1][ 500/1440]  lr: 4.0000e-03  eta: 1 day, 10:28:34  time: 3.9281  data_time: 2.1526  memory: 61143  loss: 0.5663
2023/05/31 18:10:47 - mmengine - INFO - Epoch(train)  [1][ 600/1440]  lr: 4.0000e-03  eta: 1 day, 9:18:32  time: 3.4568  data_time: 1.6816  memory: 61143  loss: 0.5426
2023/05/31 18:16:16 - mmengine - INFO - Epoch(train)  [1][ 700/1440]  lr: 4.0000e-03  eta: 1 day, 8:07:34  time: 3.1568  data_time: 1.3889  memory: 61143  loss: 0.5292
2023/05/31 18:22:13 - mmengine - INFO - Epoch(train)  [1][ 800/1440]  lr: 4.0000e-03  eta: 1 day, 7:28:23  time: 3.6402  data_time: 1.8797  memory: 61143  loss: 0.5095
2023/05/31 18:28:22 - mmengine - INFO - Epoch(train)  [1][ 900/1440]  lr: 4.0000e-03  eta: 1 day, 7:03:20  time: 3.6294  data_time: 1.8447  memory: 61143  loss: 0.4994
2023/05/31 18:34:00 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/05/31 18:34:00 - mmengine - INFO - Epoch(train)  [1][1000/1440]  lr: 4.0000e-03  eta: 1 day, 6:27:45  time: 3.4610  data_time: 1.6932  memory: 61143  loss: 0.4899
2023/05/31 18:39:54 - mmengine - INFO - Epoch(train)  [1][1100/1440]  lr: 4.0000e-03  eta: 1 day, 6:04:05  time: 3.3571  data_time: 1.6030  memory: 61143  loss: 0.4797
2023/05/31 18:45:49 - mmengine - INFO - Epoch(train)  [1][1200/1440]  lr: 4.0000e-03  eta: 1 day, 5:43:43  time: 3.6645  data_time: 1.8829  memory: 61143  loss: 0.4687
2023/05/31 18:52:21 - mmengine - INFO - Epoch(train)  [1][1300/1440]  lr: 4.0000e-03  eta: 1 day, 5:38:58  time: 3.8143  data_time: 2.0433  memory: 61143  loss: 0.4437
2023/05/31 18:58:50 - mmengine - INFO - Epoch(train)  [1][1400/1440]  lr: 4.0000e-03  eta: 1 day, 5:32:39  time: 3.8834  data_time: 2.1126  memory: 61143  loss: 0.4518
2023/05/31 19:01:19 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/05/31 19:01:19 - mmengine - INFO - Saving checkpoint at 1 epochs
2023/05/31 19:01:37 - mmengine - INFO - Epoch(val) [1][16/16]    accuracy/top1: 54.3337  single-label/precision_classwise: [100.0, 0.0]  single-label/recall_classwise: [54.33369445800781, 0.0]  single-label/f1-score_classwise: [70.41067504882812, 0.0]  data_time: 0.2721  time: 0.6429
2023/05/31 19:08:07 - mmengine - INFO - Epoch(train)  [2][ 100/1440]  lr: 3.9754e-03  eta: 1 day, 5:22:19  time: 4.2048  data_time: 2.4369  memory: 61146  loss: 0.4514
2023/05/31 19:14:33 - mmengine - INFO - Epoch(train)  [2][ 200/1440]  lr: 3.9754e-03  eta: 1 day, 5:15:25  time: 3.5233  data_time: 1.7614  memory: 61145  loss: 0.4308
2023/05/31 19:20:27 - mmengine - INFO - Epoch(train)  [2][ 300/1440]  lr: 3.9754e-03  eta: 1 day, 5:00:07  time: 3.4567  data_time: 1.6979  memory: 61145  loss: 0.4170
2023/05/31 19:26:28 - mmengine - INFO - Epoch(train)  [2][ 400/1440]  lr: 3.9754e-03  eta: 1 day, 4:47:31  time: 3.7817  data_time: 1.9897  memory: 61145  loss: 0.4038
2023/05/31 19:32:26 - mmengine - INFO - Epoch(train)  [2][ 500/1440]  lr: 3.9754e-03  eta: 1 day, 4:35:04  time: 3.5252  data_time: 1.7586  memory: 61145  loss: 0.3877
2023/05/31 19:35:57 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/05/31 19:38:06 - mmengine - INFO - Epoch(train)  [2][ 600/1440]  lr: 3.9754e-03  eta: 1 day, 4:19:21  time: 3.1745  data_time: 1.4087  memory: 61145  loss: 0.3851
2023/05/31 19:43:33 - mmengine - INFO - Epoch(train)  [2][ 700/1440]  lr: 3.9754e-03  eta: 1 day, 4:01:49  time: 3.2064  data_time: 1.4148  memory: 61145  loss: 0.4002
2023/05/31 19:48:46 - mmengine - INFO - Epoch(train)  [2][ 800/1440]  lr: 3.9754e-03  eta: 1 day, 3:42:32  time: 2.9946  data_time: 1.2440  memory: 61145  loss: 0.3552
2023/05/31 19:53:54 - mmengine - INFO - Epoch(train)  [2][ 900/1440]  lr: 3.9754e-03  eta: 1 day, 3:23:29  time: 3.0410  data_time: 1.2612  memory: 61145  loss: 0.3580
2023/05/31 19:59:05 - mmengine - INFO - Epoch(train)  [2][1000/1440]  lr: 3.9754e-03  eta: 1 day, 3:06:07  time: 3.3049  data_time: 1.5412  memory: 61145  loss: 0.3450
2023/05/31 20:04:25 - mmengine - INFO - Epoch(train)  [2][1100/1440]  lr: 3.9754e-03  eta: 1 day, 2:51:25  time: 3.1558  data_time: 1.3897  memory: 61145  loss: 0.3331
2023/05/31 20:10:05 - mmengine - INFO - Epoch(train)  [2][1200/1440]  lr: 3.9754e-03  eta: 1 day, 2:40:30  time: 3.2056  data_time: 1.4384  memory: 61145  loss: 0.3146
2023/05/31 20:15:44 - mmengine - INFO - Epoch(train)  [2][1300/1440]  lr: 3.9754e-03  eta: 1 day, 2:29:56  time: 3.3135  data_time: 1.5567  memory: 61145  loss: 0.3398
2023/05/31 20:21:24 - mmengine - INFO - Epoch(train)  [2][1400/1440]  lr: 3.9754e-03  eta: 1 day, 2:19:58  time: 3.4440  data_time: 1.6529  memory: 61145  loss: 0.3053
2023/05/31 20:23:38 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/05/31 20:23:38 - mmengine - INFO - Saving checkpoint at 2 epochs
2023/05/31 20:23:53 - mmengine - INFO - Epoch(val) [2][16/16]    accuracy/top1: 73.4486  single-label/precision_classwise: [100.0, 0.0]  single-label/recall_classwise: [73.44864654541016, 0.0]  single-label/f1-score_classwise: [84.69210052490234, 0.0]  data_time: 0.2554  time: 0.4853
2023/05/31 20:29:47 - mmengine - INFO - Epoch(train)  [3][ 100/1440]  lr: 3.9024e-03  eta: 1 day, 2:07:58  time: 3.5298  data_time: 1.6939  memory: 61145  loss: 0.2797
2023/05/31 20:30:58 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/05/31 20:35:32 - mmengine - INFO - Epoch(train)  [3][ 200/1440]  lr: 3.9024e-03  eta: 1 day, 1:59:13  time: 3.3690  data_time: 1.2517  memory: 61145  loss: 0.2745
2023/05/31 20:41:09 - mmengine - INFO - Epoch(train)  [3][ 300/1440]  lr: 3.9024e-03  eta: 1 day, 1:49:37  time: 3.4114  data_time: 1.6347  memory: 61145  loss: 0.2831
2023/05/31 20:46:45 - mmengine - INFO - Epoch(train)  [3][ 400/1440]  lr: 3.9024e-03  eta: 1 day, 1:40:02  time: 3.3154  data_time: 1.5658  memory: 61145  loss: 0.2657
2023/05/31 20:52:20 - mmengine - INFO - Epoch(train)  [3][ 500/1440]  lr: 3.9024e-03  eta: 1 day, 1:30:40  time: 3.2786  data_time: 1.5092  memory: 61145  loss: 0.2652
2023/05/31 20:57:55 - mmengine - INFO - Epoch(train)  [3][ 600/1440]  lr: 3.9024e-03  eta: 1 day, 1:21:24  time: 3.4873  data_time: 1.7051  memory: 61145  loss: 0.2564
2023/05/31 21:03:24 - mmengine - INFO - Epoch(train)  [3][ 700/1440]  lr: 3.9024e-03  eta: 1 day, 1:11:43  time: 3.1659  data_time: 1.3825  memory: 61145  loss: 0.2584
2023/05/31 21:08:54 - mmengine - INFO - Epoch(train)  [3][ 800/1440]  lr: 3.9024e-03  eta: 1 day, 1:02:22  time: 3.3623  data_time: 1.5842  memory: 61145  loss: 0.2746
2023/05/31 21:14:22 - mmengine - INFO - Epoch(train)  [3][ 900/1440]  lr: 3.9024e-03  eta: 1 day, 0:52:57  time: 3.2797  data_time: 1.4913  memory: 61145  loss: 0.4432
2023/05/31 21:19:51 - mmengine - INFO - Epoch(train)  [3][1000/1440]  lr: 3.9024e-03  eta: 1 day, 0:43:51  time: 3.3689  data_time: 1.6024  memory: 61145  loss: 0.3017
2023/05/31 21:25:26 - mmengine - INFO - Epoch(train)  [3][1100/1440]  lr: 3.9024e-03  eta: 1 day, 0:35:36  time: 3.7910  data_time: 2.0036  memory: 61145  loss: 0.2460
2023/05/31 21:26:34 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/05/31 21:31:02 - mmengine - INFO - Epoch(train)  [3][1200/1440]  lr: 3.9024e-03  eta: 1 day, 0:27:34  time: 3.4165  data_time: 1.6337  memory: 61145  loss: 0.2390
2023/05/31 21:36:41 - mmengine - INFO - Epoch(train)  [3][1300/1440]  lr: 3.9024e-03  eta: 1 day, 0:19:59  time: 3.4488  data_time: 1.6870  memory: 61145  loss: 0.2319
2023/05/31 21:42:17 - mmengine - INFO - Epoch(train)  [3][1400/1440]  lr: 3.9024e-03  eta: 1 day, 0:12:07  time: 3.4106  data_time: 1.6247  memory: 61145  loss: 0.2377
2023/05/31 21:44:31 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/05/31 21:44:31 - mmengine - INFO - Saving checkpoint at 3 epochs
2023/05/31 21:44:46 - mmengine - INFO - Epoch(val) [3][16/16]    accuracy/top1: 80.7588  single-label/precision_classwise: [100.0, 0.0]  single-label/recall_classwise: [80.7587890625, 0.0]  single-label/f1-score_classwise: [89.35530853271484, 0.0]  data_time: 0.2534  time: 0.4867
2023/05/31 21:50:32 - mmengine - INFO - Epoch(train)  [4][ 100/1440]  lr: 3.7826e-03  eta: 1 day, 0:02:14  time: 3.2469  data_time: 1.4799  memory: 61145  loss: 0.2305
2023/05/31 21:56:01 - mmengine - INFO - Epoch(train)  [4][ 200/1440]  lr: 3.7826e-03  eta: 23:53:56  time: 3.2973  data_time: 1.5249  memory: 61145  loss: 0.2314
2023/05/31 22:01:36 - mmengine - INFO - Epoch(train)  [4][ 300/1440]  lr: 3.7826e-03  eta: 23:46:24  time: 3.3672  data_time: 1.5883  memory: 61145  loss: 0.2256
2023/05/31 22:07:14 - mmengine - INFO - Epoch(train)  [4][ 400/1440]  lr: 3.7826e-03  eta: 23:39:07  time: 3.2423  data_time: 1.4663  memory: 61145  loss: 0.2337
2023/05/31 22:12:32 - mmengine - INFO - Epoch(train)  [4][ 500/1440]  lr: 3.7826e-03  eta: 23:30:14  time: 3.1382  data_time: 1.3721  memory: 61145  loss: 0.2306
2023/05/31 22:17:50 - mmengine - INFO - Epoch(train)  [4][ 600/1440]  lr: 3.7826e-03  eta: 23:21:36  time: 3.1335  data_time: 1.3680  memory: 61145  loss: 0.2205
2023/05/31 22:22:07 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/05/31 22:23:09 - mmengine - INFO - Epoch(train)  [4][ 700/1440]  lr: 3.7826e-03  eta: 23:13:07  time: 3.1160  data_time: 1.3327  memory: 61145  loss: 0.2213
2023/05/31 22:28:26 - mmengine - INFO - Epoch(train)  [4][ 800/1440]  lr: 3.7826e-03  eta: 23:04:34  time: 3.2489  data_time: 1.4970  memory: 61145  loss: 0.2181
2023/05/31 22:33:44 - mmengine - INFO - Epoch(train)  [4][ 900/1440]  lr: 3.7826e-03  eta: 22:56:16  time: 3.1870  data_time: 1.4183  memory: 61145  loss: 0.4881
2023/05/31 22:38:53 - mmengine - INFO - Epoch(train)  [4][1000/1440]  lr: 3.7826e-03  eta: 22:47:21  time: 3.0847  data_time: 1.3343  memory: 61145  loss: 0.3468
2023/05/31 22:44:05 - mmengine - INFO - Epoch(train)  [4][1100/1440]  lr: 3.7826e-03  eta: 22:38:51  time: 3.2474  data_time: 1.4968  memory: 61145  loss: 0.2656
2023/05/31 22:49:26 - mmengine - INFO - Epoch(train)  [4][1200/1440]  lr: 3.7826e-03  eta: 22:31:06  time: 3.2647  data_time: 1.4720  memory: 61145  loss: 0.2267
2023/05/31 22:54:45 - mmengine - INFO - Epoch(train)  [4][1300/1440]  lr: 3.7826e-03  eta: 22:23:18  time: 3.0902  data_time: 0.0023  memory: 61145  loss: 0.2243
2023/05/31 22:59:49 - mmengine - INFO - Epoch(train)  [4][1400/1440]  lr: 3.7826e-03  eta: 22:14:34  time: 3.0753  data_time: 0.7537  memory: 61145  loss: 0.2172
2023/05/31 23:01:54 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/05/31 23:01:54 - mmengine - INFO - Saving checkpoint at 4 epochs
2023/05/31 23:02:09 - mmengine - INFO - Epoch(val) [4][16/16]    accuracy/top1: 80.5000  single-label/precision_classwise: [100.0, 0.0]  single-label/recall_classwise: [80.49996948242188, 0.0]  single-label/f1-score_classwise: [89.1966552734375, 0.0]  data_time: 0.2560  time: 0.4827
2023/05/31 23:07:34 - mmengine - INFO - Epoch(train)  [5][ 100/1440]  lr: 3.6190e-03  eta: 22:04:08  time: 3.0755  data_time: 1.2481  memory: 61145  loss: 0.5187
2023/05/31 23:12:43 - mmengine - INFO - Epoch(train)  [5][ 200/1440]  lr: 3.6190e-03  eta: 21:55:57  time: 3.0854  data_time: 0.6788  memory: 61145  loss: 0.4294
2023/05/31 23:14:50 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/05/31 23:17:52 - mmengine - INFO - Epoch(train)  [5][ 300/1440]  lr: 3.6190e-03  eta: 21:47:52  time: 3.0641  data_time: 1.1823  memory: 61145  loss: 0.3695
2023/05/31 23:23:05 - mmengine - INFO - Epoch(train)  [5][ 400/1440]  lr: 3.6190e-03  eta: 21:40:09  time: 3.0508  data_time: 1.2857  memory: 61145  loss: 0.2451
2023/05/31 23:28:21 - mmengine - INFO - Epoch(train)  [5][ 500/1440]  lr: 3.6190e-03  eta: 21:32:43  time: 3.0749  data_time: 1.2892  memory: 61145  loss: 0.2295
2023/05/31 23:33:38 - mmengine - INFO - Epoch(train)  [5][ 600/1440]  lr: 3.6190e-03  eta: 21:25:22  time: 3.0173  data_time: 1.2538  memory: 61145  loss: 0.2202
2023/05/31 23:38:49 - mmengine - INFO - Epoch(train)  [5][ 700/1440]  lr: 3.6190e-03  eta: 21:17:48  time: 3.0805  data_time: 1.2854  memory: 61145  loss: 0.6604
2023/05/31 23:44:02 - mmengine - INFO - Epoch(train)  [5][ 800/1440]  lr: 3.6190e-03  eta: 21:10:20  time: 3.1783  data_time: 1.4264  memory: 61145  loss: 0.4415
2023/05/31 23:49:16 - mmengine - INFO - Epoch(train)  [5][ 900/1440]  lr: 3.6190e-03  eta: 21:03:03  time: 3.1799  data_time: 1.4117  memory: 61145  loss: 0.2370
2023/05/31 23:54:20 - mmengine - INFO - Epoch(train)  [5][1000/1440]  lr: 3.6190e-03  eta: 20:55:18  time: 3.0851  data_time: 1.3251  memory: 61145  loss: 0.2167
2023/05/31 23:59:27 - mmengine - INFO - Epoch(train)  [5][1100/1440]  lr: 3.6190e-03  eta: 20:47:43  time: 3.1024  data_time: 1.3410  memory: 61145  loss: 0.2216
2023/06/01 00:04:36 - mmengine - INFO - Epoch(train)  [5][1200/1440]  lr: 3.6190e-03  eta: 20:40:20  time: 3.0994  data_time: 1.3417  memory: 61145  loss: 0.2179
2023/06/01 00:06:38 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 00:09:41 - mmengine - INFO - Epoch(train)  [5][1300/1440]  lr: 3.6190e-03  eta: 20:32:51  time: 3.0856  data_time: 1.3213  memory: 61145  loss: 0.2147
2023/06/01 00:14:47 - mmengine - INFO - Epoch(train)  [5][1400/1440]  lr: 3.6190e-03  eta: 20:25:28  time: 3.0591  data_time: 1.2700  memory: 61145  loss: 0.2130
2023/06/01 00:16:47 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 00:16:47 - mmengine - INFO - Saving checkpoint at 5 epochs
2023/06/01 00:17:02 - mmengine - INFO - Epoch(val) [5][16/16]    accuracy/top1: 73.1961  single-label/precision_classwise: [100.0, 0.0]  single-label/recall_classwise: [73.19613647460938, 0.0]  single-label/f1-score_classwise: [84.52398681640625, 0.0]  data_time: 0.2506  time: 0.4771
2023/06/01 00:22:23 - mmengine - INFO - Epoch(train)  [6][ 100/1440]  lr: 3.4157e-03  eta: 20:15:47  time: 3.0956  data_time: 1.3272  memory: 61145  loss: 0.2109
2023/06/01 00:27:24 - mmengine - INFO - Epoch(train)  [6][ 200/1440]  lr: 3.4157e-03  eta: 20:08:18  time: 3.0313  data_time: 1.2757  memory: 61145  loss: 0.2103
2023/06/01 00:32:30 - mmengine - INFO - Epoch(train)  [6][ 300/1440]  lr: 3.4157e-03  eta: 20:01:06  time: 3.0531  data_time: 1.2686  memory: 61145  loss: 0.2119
2023/06/01 00:37:33 - mmengine - INFO - Epoch(train)  [6][ 400/1440]  lr: 3.4157e-03  eta: 19:53:49  time: 3.1303  data_time: 1.3811  memory: 61145  loss: 0.2154
2023/06/01 00:42:36 - mmengine - INFO - Epoch(train)  [6][ 500/1440]  lr: 3.4157e-03  eta: 19:46:36  time: 2.9587  data_time: 1.1833  memory: 61145  loss: 0.2110
2023/06/01 00:47:46 - mmengine - INFO - Epoch(train)  [6][ 600/1440]  lr: 3.4157e-03  eta: 19:39:43  time: 3.1617  data_time: 1.4080  memory: 61145  loss: 0.2335
2023/06/01 00:52:56 - mmengine - INFO - Epoch(train)  [6][ 700/1440]  lr: 3.4157e-03  eta: 19:32:56  time: 3.1356  data_time: 1.3428  memory: 61145  loss: 0.2092
2023/06/01 00:58:02 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 00:58:02 - mmengine - INFO - Epoch(train)  [6][ 800/1440]  lr: 3.4157e-03  eta: 19:26:00  time: 3.1164  data_time: 1.3544  memory: 61145  loss: 0.2123
2023/06/01 01:03:04 - mmengine - INFO - Epoch(train)  [6][ 900/1440]  lr: 3.4157e-03  eta: 19:18:56  time: 3.0944  data_time: 1.3150  memory: 61145  loss: 0.2122
2023/06/01 01:08:42 - mmengine - INFO - Epoch(train)  [6][1000/1440]  lr: 3.4157e-03  eta: 19:13:25  time: 6.3566  data_time: 1.2379  memory: 61145  loss: 0.2294
2023/06/01 01:13:37 - mmengine - INFO - Epoch(train)  [6][1100/1440]  lr: 3.4157e-03  eta: 19:06:07  time: 2.9337  data_time: 0.0022  memory: 61145  loss: 0.5894
2023/06/01 01:18:28 - mmengine - INFO - Epoch(train)  [6][1200/1440]  lr: 3.4157e-03  eta: 18:58:45  time: 3.0414  data_time: 0.4232  memory: 61145  loss: 0.5871
2023/06/01 01:23:33 - mmengine - INFO - Epoch(train)  [6][1300/1440]  lr: 3.4157e-03  eta: 18:51:57  time: 2.9096  data_time: 1.1399  memory: 61145  loss: 0.5092
2023/06/01 01:28:35 - mmengine - INFO - Epoch(train)  [6][1400/1440]  lr: 3.4157e-03  eta: 18:45:07  time: 3.0509  data_time: 1.2904  memory: 61145  loss: 0.4725
2023/06/01 01:30:35 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 01:30:35 - mmengine - INFO - Saving checkpoint at 6 epochs
2023/06/01 01:30:51 - mmengine - INFO - Epoch(val) [6][16/16]    accuracy/top1: 78.4168  single-label/precision_classwise: [100.0, 0.0]  single-label/recall_classwise: [78.41676330566406, 0.0]  single-label/f1-score_classwise: [87.90290832519531, 0.0]  data_time: 0.2397  time: 0.4670
2023/06/01 01:36:14 - mmengine - INFO - Epoch(train)  [7][ 100/1440]  lr: 3.1776e-03  eta: 18:36:22  time: 3.0124  data_time: 1.2088  memory: 61145  loss: 0.4403
2023/06/01 01:41:16 - mmengine - INFO - Epoch(train)  [7][ 200/1440]  lr: 3.1776e-03  eta: 18:29:38  time: 3.1734  data_time: 1.3573  memory: 61145  loss: 0.3954
2023/06/01 01:46:21 - mmengine - INFO - Epoch(train)  [7][ 300/1440]  lr: 3.1776e-03  eta: 18:23:00  time: 2.9848  data_time: 1.1978  memory: 61145  loss: 0.2557
2023/06/01 01:49:28 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 01:51:33 - mmengine - INFO - Epoch(train)  [7][ 400/1440]  lr: 3.1776e-03  eta: 18:16:40  time: 3.1612  data_time: 1.3735  memory: 61145  loss: 0.2293
2023/06/01 01:56:41 - mmengine - INFO - Epoch(train)  [7][ 500/1440]  lr: 3.1776e-03  eta: 18:10:13  time: 3.1020  data_time: 1.3456  memory: 61145  loss: 0.2181
2023/06/01 02:01:53 - mmengine - INFO - Epoch(train)  [7][ 600/1440]  lr: 3.1776e-03  eta: 18:03:56  time: 3.0814  data_time: 1.2816  memory: 61145  loss: 0.2119
2023/06/01 02:07:02 - mmengine - INFO - Epoch(train)  [7][ 700/1440]  lr: 3.1776e-03  eta: 17:57:34  time: 3.1496  data_time: 1.3925  memory: 61145  loss: 0.2117
2023/06/01 02:12:13 - mmengine - INFO - Epoch(train)  [7][ 800/1440]  lr: 3.1776e-03  eta: 17:51:20  time: 3.0924  data_time: 1.2872  memory: 61145  loss: 0.2100
2023/06/01 02:17:23 - mmengine - INFO - Epoch(train)  [7][ 900/1440]  lr: 3.1776e-03  eta: 17:45:02  time: 3.0860  data_time: 1.3338  memory: 61145  loss: 0.2105
2023/06/01 02:22:36 - mmengine - INFO - Epoch(train)  [7][1000/1440]  lr: 3.1776e-03  eta: 17:38:53  time: 3.0671  data_time: 1.2958  memory: 61145  loss: 0.2075
2023/06/01 02:27:49 - mmengine - INFO - Epoch(train)  [7][1100/1440]  lr: 3.1776e-03  eta: 17:32:46  time: 3.0555  data_time: 1.2907  memory: 61145  loss: 0.2066
2023/06/01 02:33:05 - mmengine - INFO - Epoch(train)  [7][1200/1440]  lr: 3.1776e-03  eta: 17:26:44  time: 3.1656  data_time: 1.3843  memory: 61145  loss: 0.2134
2023/06/01 02:38:18 - mmengine - INFO - Epoch(train)  [7][1300/1440]  lr: 3.1776e-03  eta: 17:20:38  time: 3.1757  data_time: 1.4102  memory: 61145  loss: 0.6153
2023/06/01 02:41:28 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 02:43:34 - mmengine - INFO - Epoch(train)  [7][1400/1440]  lr: 3.1776e-03  eta: 17:14:39  time: 3.1776  data_time: 1.4122  memory: 61145  loss: 0.5245
2023/06/01 02:45:40 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 02:45:40 - mmengine - INFO - Saving checkpoint at 7 epochs
2023/06/01 02:45:55 - mmengine - INFO - Epoch(val) [7][16/16]    accuracy/top1: 93.3337  single-label/precision_classwise: [100.0, 0.0]  single-label/recall_classwise: [93.33375549316406, 0.0]  single-label/f1-score_classwise: [96.55195617675781, 0.0]  data_time: 0.2456  time: 0.4723
2023/06/01 02:51:22 - mmengine - INFO - Epoch(train)  [8][ 100/1440]  lr: 2.9107e-03  eta: 17:06:36  time: 3.0902  data_time: 0.6951  memory: 61145  loss: 0.4658
2023/06/01 02:56:35 - mmengine - INFO - Epoch(train)  [8][ 200/1440]  lr: 2.9107e-03  eta: 17:00:33  time: 3.2131  data_time: 0.8308  memory: 61145  loss: 0.4396
2023/06/01 03:01:49 - mmengine - INFO - Epoch(train)  [8][ 300/1440]  lr: 2.9107e-03  eta: 16:54:32  time: 3.1430  data_time: 1.0770  memory: 61145  loss: 0.4115
2023/06/01 03:06:58 - mmengine - INFO - Epoch(train)  [8][ 400/1440]  lr: 2.9107e-03  eta: 16:48:25  time: 3.0551  data_time: 1.2908  memory: 61145  loss: 0.4118
2023/06/01 03:12:10 - mmengine - INFO - Epoch(train)  [8][ 500/1440]  lr: 2.9107e-03  eta: 16:42:23  time: 3.0869  data_time: 1.2974  memory: 61145  loss: 0.3912
2023/06/01 03:17:24 - mmengine - INFO - Epoch(train)  [8][ 600/1440]  lr: 2.9107e-03  eta: 16:36:25  time: 3.0950  data_time: 1.2923  memory: 61145  loss: 0.3675
2023/06/01 03:22:38 - mmengine - INFO - Epoch(train)  [8][ 700/1440]  lr: 2.9107e-03  eta: 16:30:29  time: 3.0924  data_time: 1.3209  memory: 61145  loss: 0.3533
2023/06/01 03:27:51 - mmengine - INFO - Epoch(train)  [8][ 800/1440]  lr: 2.9107e-03  eta: 16:24:32  time: 3.0916  data_time: 1.3250  memory: 61145  loss: 0.3378
2023/06/01 03:33:05 - mmengine - INFO - Epoch(train)  [8][ 900/1440]  lr: 2.9107e-03  eta: 16:18:36  time: 3.1861  data_time: 1.3871  memory: 61145  loss: 0.3249
2023/06/01 03:34:07 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 03:38:20 - mmengine - INFO - Epoch(train)  [8][1000/1440]  lr: 2.9107e-03  eta: 16:12:44  time: 3.1566  data_time: 1.3787  memory: 61145  loss: 0.3034
2023/06/01 03:43:32 - mmengine - INFO - Epoch(train)  [8][1100/1440]  lr: 2.9107e-03  eta: 16:06:48  time: 3.1391  data_time: 1.3681  memory: 61145  loss: 0.3182
2023/06/01 03:48:42 - mmengine - INFO - Epoch(train)  [8][1200/1440]  lr: 2.9107e-03  eta: 16:00:49  time: 3.1060  data_time: 1.3256  memory: 61145  loss: 0.2937
2023/06/01 03:53:57 - mmengine - INFO - Epoch(train)  [8][1300/1440]  lr: 2.9107e-03  eta: 15:54:57  time: 3.0547  data_time: 1.2850  memory: 61145  loss: 0.2927
2023/06/01 03:59:09 - mmengine - INFO - Epoch(train)  [8][1400/1440]  lr: 2.9107e-03  eta: 15:49:03  time: 3.2542  data_time: 1.4537  memory: 61145  loss: 0.2789
2023/06/01 04:01:01 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 04:01:01 - mmengine - INFO - Saving checkpoint at 8 epochs
2023/06/01 04:01:16 - mmengine - INFO - Epoch(val) [8][16/16]    accuracy/top1: 97.1340  single-label/precision_classwise: [100.0, 0.0]  single-label/recall_classwise: [97.13401794433594, 0.0]  single-label/f1-score_classwise: [98.54617309570312, 0.0]  data_time: 0.2475  time: 0.4747
2023/06/01 04:06:45 - mmengine - INFO - Epoch(train)  [9][ 100/1440]  lr: 2.6215e-03  eta: 15:40:55  time: 3.1850  data_time: 0.8897  memory: 61145  loss: 0.2795
2023/06/01 04:11:53 - mmengine - INFO - Epoch(train)  [9][ 200/1440]  lr: 2.6215e-03  eta: 15:34:56  time: 3.1250  data_time: 1.1256  memory: 61145  loss: 0.2640
2023/06/01 04:17:03 - mmengine - INFO - Epoch(train)  [9][ 300/1440]  lr: 2.6215e-03  eta: 15:29:00  time: 3.1158  data_time: 1.3541  memory: 61145  loss: 0.2597
2023/06/01 04:22:16 - mmengine - INFO - Epoch(train)  [9][ 400/1440]  lr: 2.6215e-03  eta: 15:23:10  time: 3.1486  data_time: 1.3617  memory: 61145  loss: 0.2476
2023/06/01 04:26:25 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 04:27:27 - mmengine - INFO - Epoch(train)  [9][ 500/1440]  lr: 2.6215e-03  eta: 15:17:19  time: 3.0533  data_time: 1.2851  memory: 61145  loss: 0.2372
2023/06/01 04:32:40 - mmengine - INFO - Epoch(train)  [9][ 600/1440]  lr: 2.6215e-03  eta: 15:11:30  time: 3.1301  data_time: 1.3581  memory: 61145  loss: 0.2365
2023/06/01 04:37:50 - mmengine - INFO - Epoch(train)  [9][ 700/1440]  lr: 2.6215e-03  eta: 15:05:38  time: 3.0736  data_time: 1.2984  memory: 61145  loss: 0.2316
2023/06/01 04:43:05 - mmengine - INFO - Epoch(train)  [9][ 800/1440]  lr: 2.6215e-03  eta: 14:59:54  time: 3.0875  data_time: 1.3187  memory: 61145  loss: 0.2319
2023/06/01 04:48:16 - mmengine - INFO - Epoch(train)  [9][ 900/1440]  lr: 2.6215e-03  eta: 14:54:03  time: 3.1726  data_time: 1.3965  memory: 61145  loss: 0.2304
2023/06/01 04:53:29 - mmengine - INFO - Epoch(train)  [9][1000/1440]  lr: 2.6215e-03  eta: 14:48:17  time: 3.0857  data_time: 1.3124  memory: 61145  loss: 0.2226
2023/06/01 04:58:40 - mmengine - INFO - Epoch(train)  [9][1100/1440]  lr: 2.6215e-03  eta: 14:42:29  time: 3.0722  data_time: 1.2785  memory: 61145  loss: 0.2280
2023/06/01 05:03:53 - mmengine - INFO - Epoch(train)  [9][1200/1440]  lr: 2.6215e-03  eta: 14:36:44  time: 3.0199  data_time: 1.2362  memory: 61145  loss: 0.2230
2023/06/01 05:09:07 - mmengine - INFO - Epoch(train)  [9][1300/1440]  lr: 2.6215e-03  eta: 14:31:00  time: 3.1816  data_time: 1.4119  memory: 61145  loss: 0.2218
2023/06/01 05:14:23 - mmengine - INFO - Epoch(train)  [9][1400/1440]  lr: 2.6215e-03  eta: 14:25:20  time: 3.1760  data_time: 1.3612  memory: 61145  loss: 0.2184
2023/06/01 05:16:24 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 05:16:24 - mmengine - INFO - Saving checkpoint at 9 epochs
2023/06/01 05:16:39 - mmengine - INFO - Epoch(val) [9][16/16]    accuracy/top1: 98.0178  single-label/precision_classwise: [100.0, 0.0]  single-label/recall_classwise: [98.0177993774414, 0.0]  single-label/f1-score_classwise: [98.99898529052734, 0.0]  data_time: 0.2387  time: 0.4705
2023/06/01 05:19:00 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 05:22:04 - mmengine - INFO - Epoch(train) [10][ 100/1440]  lr: 2.3171e-03  eta: 14:17:28  time: 3.1092  data_time: 1.1508  memory: 61145  loss: 0.2145
2023/06/01 05:27:14 - mmengine - INFO - Epoch(train) [10][ 200/1440]  lr: 2.3171e-03  eta: 14:11:41  time: 3.0942  data_time: 1.3323  memory: 61145  loss: 0.2162
2023/06/01 05:32:24 - mmengine - INFO - Epoch(train) [10][ 300/1440]  lr: 2.3171e-03  eta: 14:05:55  time: 3.0775  data_time: 1.2937  memory: 61145  loss: 0.2160
2023/06/01 05:37:36 - mmengine - INFO - Epoch(train) [10][ 400/1440]  lr: 2.3171e-03  eta: 14:00:11  time: 3.1045  data_time: 1.3234  memory: 61145  loss: 0.2188
2023/06/01 05:42:45 - mmengine - INFO - Epoch(train) [10][ 500/1440]  lr: 2.3171e-03  eta: 13:54:24  time: 3.1302  data_time: 1.3379  memory: 61145  loss: 0.2421
2023/06/01 05:47:54 - mmengine - INFO - Epoch(train) [10][ 600/1440]  lr: 2.3171e-03  eta: 13:48:39  time: 3.0870  data_time: 1.3331  memory: 61145  loss: 0.2091
2023/06/01 05:53:07 - mmengine - INFO - Epoch(train) [10][ 700/1440]  lr: 2.3171e-03  eta: 13:42:58  time: 3.1577  data_time: 1.3870  memory: 61145  loss: 0.2137
2023/06/01 05:58:22 - mmengine - INFO - Epoch(train) [10][ 800/1440]  lr: 2.3171e-03  eta: 13:37:19  time: 3.2528  data_time: 1.4971  memory: 61145  loss: 0.2121
2023/06/01 06:03:34 - mmengine - INFO - Epoch(train) [10][ 900/1440]  lr: 2.3171e-03  eta: 13:31:38  time: 3.1807  data_time: 1.4304  memory: 61145  loss: 0.2086
2023/06/01 06:08:49 - mmengine - INFO - Epoch(train) [10][1000/1440]  lr: 2.3171e-03  eta: 13:26:00  time: 3.1125  data_time: 1.3377  memory: 61145  loss: 0.2134
2023/06/01 06:10:54 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 06:14:02 - mmengine - INFO - Epoch(train) [10][1100/1440]  lr: 2.3171e-03  eta: 13:20:21  time: 3.2460  data_time: 1.4528  memory: 61145  loss: 0.2106
2023/06/01 06:19:13 - mmengine - INFO - Epoch(train) [10][1200/1440]  lr: 2.3171e-03  eta: 13:14:40  time: 3.1990  data_time: 1.4445  memory: 61145  loss: 0.2082
2023/06/01 06:24:28 - mmengine - INFO - Epoch(train) [10][1300/1440]  lr: 2.3171e-03  eta: 13:09:04  time: 3.1214  data_time: 1.3376  memory: 61145  loss: 0.4386
2023/06/01 06:29:47 - mmengine - INFO - Epoch(train) [10][1400/1440]  lr: 2.3171e-03  eta: 13:03:31  time: 3.1819  data_time: 1.3947  memory: 61145  loss: 0.2292
2023/06/01 06:31:52 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 06:31:52 - mmengine - INFO - Saving checkpoint at 10 epochs
2023/06/01 06:32:07 - mmengine - INFO - Epoch(val) [10][16/16]    accuracy/top1: 96.9383  single-label/precision_classwise: [100.0, 0.0]  single-label/recall_classwise: [96.93832397460938, 0.0]  single-label/f1-score_classwise: [98.44535827636719, 0.0]  data_time: 0.2335  time: 0.4679
2023/06/01 06:37:32 - mmengine - INFO - Epoch(train) [11][ 100/1440]  lr: 2.0050e-03  eta: 12:55:50  time: 3.0897  data_time: 1.0506  memory: 61145  loss: 0.2140
2023/06/01 06:42:44 - mmengine - INFO - Epoch(train) [11][ 200/1440]  lr: 2.0050e-03  eta: 12:50:11  time: 3.1347  data_time: 1.0325  memory: 61145  loss: 0.2098
2023/06/01 06:48:00 - mmengine - INFO - Epoch(train) [11][ 300/1440]  lr: 2.0050e-03  eta: 12:44:36  time: 3.1370  data_time: 1.3851  memory: 61145  loss: 0.2154
2023/06/01 06:53:17 - mmengine - INFO - Epoch(train) [11][ 400/1440]  lr: 2.0050e-03  eta: 12:39:03  time: 3.0547  data_time: 1.2575  memory: 61145  loss: 0.2089
2023/06/01 06:58:31 - mmengine - INFO - Epoch(train) [11][ 500/1440]  lr: 2.0050e-03  eta: 12:33:27  time: 3.0892  data_time: 1.3201  memory: 61145  loss: 0.2102
2023/06/01 07:03:43 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 07:03:43 - mmengine - INFO - Epoch(train) [11][ 600/1440]  lr: 2.0050e-03  eta: 12:27:50  time: 3.1587  data_time: 1.3789  memory: 61145  loss: 0.2074
2023/06/01 07:08:53 - mmengine - INFO - Epoch(train) [11][ 700/1440]  lr: 2.0050e-03  eta: 12:22:11  time: 3.0238  data_time: 1.2731  memory: 61145  loss: 0.2058
2023/06/01 07:14:09 - mmengine - INFO - Epoch(train) [11][ 800/1440]  lr: 2.0050e-03  eta: 12:16:37  time: 3.2337  data_time: 1.4580  memory: 61145  loss: 0.2100
2023/06/01 07:19:19 - mmengine - INFO - Epoch(train) [11][ 900/1440]  lr: 2.0050e-03  eta: 12:10:59  time: 3.0961  data_time: 1.3105  memory: 61145  loss: 0.2043
2023/06/01 07:24:33 - mmengine - INFO - Epoch(train) [11][1000/1440]  lr: 2.0050e-03  eta: 12:05:25  time: 3.1072  data_time: 1.3269  memory: 61145  loss: 0.2049
2023/06/01 07:29:46 - mmengine - INFO - Epoch(train) [11][1100/1440]  lr: 2.0050e-03  eta: 11:59:50  time: 3.1478  data_time: 1.3773  memory: 61145  loss: 0.2150
2023/06/01 07:35:00 - mmengine - INFO - Epoch(train) [11][1200/1440]  lr: 2.0050e-03  eta: 11:54:16  time: 3.2485  data_time: 1.4597  memory: 61145  loss: 0.2066
2023/06/01 07:40:12 - mmengine - INFO - Epoch(train) [11][1300/1440]  lr: 2.0050e-03  eta: 11:48:41  time: 3.1004  data_time: 1.3403  memory: 61145  loss: 0.2052
2023/06/01 07:45:29 - mmengine - INFO - Epoch(train) [11][1400/1440]  lr: 2.0050e-03  eta: 11:43:10  time: 3.1783  data_time: 1.3930  memory: 61145  loss: 0.3890
2023/06/01 07:47:37 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 07:47:37 - mmengine - INFO - Saving checkpoint at 11 epochs
2023/06/01 07:47:52 - mmengine - INFO - Epoch(val) [11][16/16]    accuracy/top1: 92.3932  single-label/precision_classwise: [100.0, 0.0]  single-label/recall_classwise: [92.39315795898438, 0.0]  single-label/f1-score_classwise: [96.04619598388672, 0.0]  data_time: 0.2547  time: 0.4821
2023/06/01 07:53:17 - mmengine - INFO - Epoch(train) [12][ 100/1440]  lr: 1.6929e-03  eta: 11:35:34  time: 3.1339  data_time: 1.1678  memory: 61145  loss: 0.2115
2023/06/01 07:56:21 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 07:58:27 - mmengine - INFO - Epoch(train) [12][ 200/1440]  lr: 1.6929e-03  eta: 11:29:58  time: 3.1980  data_time: 1.4426  memory: 61145  loss: 0.2072
2023/06/01 08:03:48 - mmengine - INFO - Epoch(train) [12][ 300/1440]  lr: 1.6929e-03  eta: 11:24:31  time: 3.2064  data_time: 1.4528  memory: 61145  loss: 0.2081
2023/06/01 08:09:09 - mmengine - INFO - Epoch(train) [12][ 400/1440]  lr: 1.6929e-03  eta: 11:19:04  time: 3.2709  data_time: 1.4935  memory: 61145  loss: 0.2063
2023/06/01 08:14:31 - mmengine - INFO - Epoch(train) [12][ 500/1440]  lr: 1.6929e-03  eta: 11:13:38  time: 3.2489  data_time: 1.4901  memory: 61145  loss: 0.2068
2023/06/01 08:19:54 - mmengine - INFO - Epoch(train) [12][ 600/1440]  lr: 1.6929e-03  eta: 11:08:13  time: 3.0888  data_time: 1.3309  memory: 61145  loss: 0.2061
2023/06/01 08:25:19 - mmengine - INFO - Epoch(train) [12][ 700/1440]  lr: 1.6929e-03  eta: 11:02:49  time: 3.2565  data_time: 1.4864  memory: 61145  loss: 0.2067
2023/06/01 08:30:38 - mmengine - INFO - Epoch(train) [12][ 800/1440]  lr: 1.6929e-03  eta: 10:57:20  time: 3.1482  data_time: 1.3911  memory: 61145  loss: 0.2045
2023/06/01 08:36:03 - mmengine - INFO - Epoch(train) [12][ 900/1440]  lr: 1.6929e-03  eta: 10:51:56  time: 3.3144  data_time: 1.5198  memory: 61145  loss: 0.2034
2023/06/01 08:41:28 - mmengine - INFO - Epoch(train) [12][1000/1440]  lr: 1.6929e-03  eta: 10:46:33  time: 3.2255  data_time: 1.4723  memory: 61145  loss: 0.2042
2023/06/01 08:46:53 - mmengine - INFO - Epoch(train) [12][1100/1440]  lr: 1.6929e-03  eta: 10:41:09  time: 3.2166  data_time: 1.4404  memory: 61145  loss: 0.2078
2023/06/01 08:50:08 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 08:52:18 - mmengine - INFO - Epoch(train) [12][1200/1440]  lr: 1.6929e-03  eta: 10:35:44  time: 3.2394  data_time: 1.4543  memory: 61145  loss: 0.2035
2023/06/01 08:57:43 - mmengine - INFO - Epoch(train) [12][1300/1440]  lr: 1.6929e-03  eta: 10:30:20  time: 3.2678  data_time: 1.4798  memory: 61145  loss: 0.2025
2023/06/01 09:03:08 - mmengine - INFO - Epoch(train) [12][1400/1440]  lr: 1.6929e-03  eta: 10:24:57  time: 3.2344  data_time: 1.4094  memory: 61145  loss: 0.2038
2023/06/01 09:05:15 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 09:05:15 - mmengine - INFO - Saving checkpoint at 12 epochs
2023/06/01 09:05:31 - mmengine - INFO - Epoch(val) [12][16/16]    accuracy/top1: 75.1720  single-label/precision_classwise: [100.0, 0.0]  single-label/recall_classwise: [75.1720199584961, 0.0]  single-label/f1-score_classwise: [85.8265151977539, 0.0]  data_time: 0.2597  time: 0.4906
2023/06/01 09:11:14 - mmengine - INFO - Epoch(train) [13][ 100/1440]  lr: 1.3885e-03  eta: 10:17:33  time: 3.0909  data_time: 0.8689  memory: 61145  loss: 0.2030
2023/06/01 09:17:09 - mmengine - INFO - Epoch(train) [13][ 200/1440]  lr: 1.3885e-03  eta: 10:12:29  time: 3.2317  data_time: 0.5883  memory: 61145  loss: 0.2036
2023/06/01 09:22:35 - mmengine - INFO - Epoch(train) [13][ 300/1440]  lr: 1.3885e-03  eta: 10:07:05  time: 3.1851  data_time: 0.5509  memory: 61145  loss: 0.2052
2023/06/01 09:27:58 - mmengine - INFO - Epoch(train) [13][ 400/1440]  lr: 1.3885e-03  eta: 10:01:39  time: 3.2718  data_time: 1.3912  memory: 61145  loss: 0.2074
2023/06/01 09:33:37 - mmengine - INFO - Epoch(train) [13][ 500/1440]  lr: 1.3885e-03  eta: 9:56:23  time: 4.0069  data_time: 2.2406  memory: 61145  loss: 0.2060
2023/06/01 09:39:01 - mmengine - INFO - Epoch(train) [13][ 600/1440]  lr: 1.3885e-03  eta: 9:50:58  time: 3.2260  data_time: 1.4577  memory: 61145  loss: 0.2040
2023/06/01 09:44:23 - mmengine - INFO - Epoch(train) [13][ 700/1440]  lr: 1.3885e-03  eta: 9:45:32  time: 3.1958  data_time: 1.4013  memory: 61145  loss: 0.2033
2023/06/01 09:45:27 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 09:49:46 - mmengine - INFO - Epoch(train) [13][ 800/1440]  lr: 1.3885e-03  eta: 9:40:06  time: 3.2272  data_time: 1.4415  memory: 61145  loss: 0.2040
2023/06/01 09:55:08 - mmengine - INFO - Epoch(train) [13][ 900/1440]  lr: 1.3885e-03  eta: 9:34:40  time: 3.1846  data_time: 1.4219  memory: 61145  loss: 0.2033
2023/06/01 10:00:31 - mmengine - INFO - Epoch(train) [13][1000/1440]  lr: 1.3885e-03  eta: 9:29:14  time: 3.2232  data_time: 1.4633  memory: 61145  loss: 0.2035
2023/06/01 10:06:01 - mmengine - INFO - Epoch(train) [13][1100/1440]  lr: 1.3885e-03  eta: 9:23:53  time: 3.2273  data_time: 1.4749  memory: 61145  loss: 0.2013
2023/06/01 10:11:27 - mmengine - INFO - Epoch(train) [13][1200/1440]  lr: 1.3885e-03  eta: 9:18:29  time: 3.2653  data_time: 1.4675  memory: 61145  loss: 0.2028
2023/06/01 10:16:54 - mmengine - INFO - Epoch(train) [13][1300/1440]  lr: 1.3885e-03  eta: 9:13:05  time: 3.2732  data_time: 1.5046  memory: 61145  loss: 0.2019
2023/06/01 10:22:21 - mmengine - INFO - Epoch(train) [13][1400/1440]  lr: 1.3885e-03  eta: 9:07:42  time: 3.1675  data_time: 1.3992  memory: 61145  loss: 0.2039
2023/06/01 10:24:31 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 10:24:31 - mmengine - INFO - Saving checkpoint at 13 epochs
2023/06/01 10:24:45 - mmengine - INFO - Epoch(val) [13][16/16]    accuracy/top1: 61.7701  single-label/precision_classwise: [100.0, 0.0]  single-label/recall_classwise: [61.77008819580078, 0.0]  single-label/f1-score_classwise: [76.36775207519531, 0.0]  data_time: 0.2610  time: 0.4888
2023/06/01 10:30:24 - mmengine - INFO - Epoch(train) [14][ 100/1440]  lr: 1.0993e-03  eta: 9:00:14  time: 3.1806  data_time: 1.1026  memory: 61145  loss: 0.2025
2023/06/01 10:35:49 - mmengine - INFO - Epoch(train) [14][ 200/1440]  lr: 1.0993e-03  eta: 8:54:50  time: 3.2537  data_time: 1.4801  memory: 61145  loss: 0.2027
2023/06/01 10:40:12 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 10:41:18 - mmengine - INFO - Epoch(train) [14][ 300/1440]  lr: 1.0993e-03  eta: 8:49:27  time: 3.3251  data_time: 1.5635  memory: 61145  loss: 0.2014
2023/06/01 10:46:43 - mmengine - INFO - Epoch(train) [14][ 400/1440]  lr: 1.0993e-03  eta: 8:44:02  time: 3.2223  data_time: 1.4504  memory: 61145  loss: 0.2016
2023/06/01 10:52:14 - mmengine - INFO - Epoch(train) [14][ 500/1440]  lr: 1.0993e-03  eta: 8:38:41  time: 3.3354  data_time: 1.5506  memory: 61145  loss: 0.2016
2023/06/01 10:57:46 - mmengine - INFO - Epoch(train) [14][ 600/1440]  lr: 1.0993e-03  eta: 8:33:19  time: 3.3589  data_time: 1.5880  memory: 61145  loss: 0.2029
2023/06/01 11:03:16 - mmengine - INFO - Epoch(train) [14][ 700/1440]  lr: 1.0993e-03  eta: 8:27:57  time: 3.2776  data_time: 1.4978  memory: 61145  loss: 0.2031
2023/06/01 11:08:45 - mmengine - INFO - Epoch(train) [14][ 800/1440]  lr: 1.0993e-03  eta: 8:22:34  time: 3.3003  data_time: 1.5182  memory: 61145  loss: 0.2038
2023/06/01 11:14:23 - mmengine - INFO - Epoch(train) [14][ 900/1440]  lr: 1.0993e-03  eta: 8:17:15  time: 3.4478  data_time: 1.6688  memory: 61145  loss: 0.2018
2023/06/01 11:20:01 - mmengine - INFO - Epoch(train) [14][1000/1440]  lr: 1.0993e-03  eta: 8:11:56  time: 3.2508  data_time: 1.4506  memory: 61145  loss: 0.2023
2023/06/01 11:25:40 - mmengine - INFO - Epoch(train) [14][1100/1440]  lr: 1.0993e-03  eta: 8:06:37  time: 3.3529  data_time: 1.5441  memory: 61145  loss: 0.2021
2023/06/01 11:31:10 - mmengine - INFO - Epoch(train) [14][1200/1440]  lr: 1.0993e-03  eta: 8:01:14  time: 3.4700  data_time: 1.6898  memory: 61145  loss: 0.2015
2023/06/01 11:35:40 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 11:36:48 - mmengine - INFO - Epoch(train) [14][1300/1440]  lr: 1.0993e-03  eta: 7:55:55  time: 3.4183  data_time: 1.6409  memory: 61145  loss: 0.5079
2023/06/01 11:42:26 - mmengine - INFO - Epoch(train) [14][1400/1440]  lr: 1.0993e-03  eta: 7:50:35  time: 3.3625  data_time: 1.5968  memory: 61145  loss: 0.2150
2023/06/01 11:44:34 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 11:44:34 - mmengine - INFO - Saving checkpoint at 14 epochs
2023/06/01 11:44:49 - mmengine - INFO - Epoch(val) [14][16/16]    accuracy/top1: 73.1014  single-label/precision_classwise: [100.0, 0.0]  single-label/recall_classwise: [73.1014404296875, 0.0]  single-label/f1-score_classwise: [84.46080780029297, 0.0]  data_time: 0.2505  time: 0.4782
2023/06/01 11:50:20 - mmengine - INFO - Epoch(train) [15][ 100/1440]  lr: 8.3237e-04  eta: 7:43:01  time: 3.2008  data_time: 1.4396  memory: 61145  loss: 0.2063
2023/06/01 11:55:35 - mmengine - INFO - Epoch(train) [15][ 200/1440]  lr: 8.3237e-04  eta: 7:37:32  time: 3.1488  data_time: 1.3790  memory: 61145  loss: 0.2038
2023/06/01 12:00:51 - mmengine - INFO - Epoch(train) [15][ 300/1440]  lr: 8.3237e-04  eta: 7:32:02  time: 3.1446  data_time: 1.3874  memory: 61145  loss: 0.2030
2023/06/01 12:06:05 - mmengine - INFO - Epoch(train) [15][ 400/1440]  lr: 8.3237e-04  eta: 7:26:32  time: 3.0224  data_time: 1.2620  memory: 61145  loss: 0.2024
2023/06/01 12:11:15 - mmengine - INFO - Epoch(train) [15][ 500/1440]  lr: 8.3237e-04  eta: 7:21:02  time: 3.0775  data_time: 1.2974  memory: 61145  loss: 0.2039
2023/06/01 12:16:33 - mmengine - INFO - Epoch(train) [15][ 600/1440]  lr: 8.3237e-04  eta: 7:15:34  time: 3.1038  data_time: 1.3352  memory: 61145  loss: 0.2050
2023/06/01 12:21:55 - mmengine - INFO - Epoch(train) [15][ 700/1440]  lr: 8.3237e-04  eta: 7:10:07  time: 3.2604  data_time: 1.4990  memory: 61145  loss: 0.2004
2023/06/01 12:27:11 - mmengine - INFO - Epoch(train) [15][ 800/1440]  lr: 8.3237e-04  eta: 7:04:39  time: 3.1540  data_time: 1.3388  memory: 61145  loss: 0.2008
2023/06/01 12:29:20 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 12:32:28 - mmengine - INFO - Epoch(train) [15][ 900/1440]  lr: 8.3237e-04  eta: 6:59:11  time: 3.1246  data_time: 1.3477  memory: 61145  loss: 0.2016
2023/06/01 12:37:41 - mmengine - INFO - Epoch(train) [15][1000/1440]  lr: 8.3237e-04  eta: 6:53:42  time: 3.1804  data_time: 1.4056  memory: 61145  loss: 0.2012
2023/06/01 12:42:54 - mmengine - INFO - Epoch(train) [15][1100/1440]  lr: 8.3237e-04  eta: 6:48:13  time: 3.1857  data_time: 1.3900  memory: 61145  loss: 0.2018
2023/06/01 12:48:08 - mmengine - INFO - Epoch(train) [15][1200/1440]  lr: 8.3237e-04  eta: 6:42:44  time: 3.1122  data_time: 1.3087  memory: 61145  loss: 0.2034
2023/06/01 12:53:20 - mmengine - INFO - Epoch(train) [15][1300/1440]  lr: 8.3237e-04  eta: 6:37:15  time: 3.0883  data_time: 1.3111  memory: 61145  loss: 0.2014
2023/06/01 12:58:30 - mmengine - INFO - Epoch(train) [15][1400/1440]  lr: 8.3237e-04  eta: 6:31:45  time: 3.0851  data_time: 1.3131  memory: 61145  loss: 0.2014
2023/06/01 13:00:25 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 13:00:25 - mmengine - INFO - Saving checkpoint at 15 epochs
2023/06/01 13:00:40 - mmengine - INFO - Epoch(val) [15][16/16]    accuracy/top1: 94.0155  single-label/precision_classwise: [100.0, 0.0]  single-label/recall_classwise: [94.0155258178711, 0.0]  single-label/f1-score_classwise: [96.91546630859375, 0.0]  data_time: 0.2400  time: 0.4684
2023/06/01 13:06:09 - mmengine - INFO - Epoch(train) [16][ 100/1440]  lr: 5.9432e-04  eta: 6:24:07  time: 3.0457  data_time: 1.0311  memory: 61145  loss: 0.2003
2023/06/01 13:11:27 - mmengine - INFO - Epoch(train) [16][ 200/1440]  lr: 5.9432e-04  eta: 6:18:41  time: 3.1365  data_time: 0.2847  memory: 61145  loss: 0.2004
2023/06/01 13:16:46 - mmengine - INFO - Epoch(train) [16][ 300/1440]  lr: 5.9432e-04  eta: 6:13:14  time: 3.6608  data_time: 1.3309  memory: 61145  loss: 0.2009
2023/06/01 13:22:16 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 13:22:16 - mmengine - INFO - Epoch(train) [16][ 400/1440]  lr: 5.9432e-04  eta: 6:07:51  time: 3.1618  data_time: 1.4055  memory: 61145  loss: 0.2004
2023/06/01 13:27:46 - mmengine - INFO - Epoch(train) [16][ 500/1440]  lr: 5.9432e-04  eta: 6:02:28  time: 3.4606  data_time: 1.7095  memory: 61145  loss: 0.2003
2023/06/01 13:33:13 - mmengine - INFO - Epoch(train) [16][ 600/1440]  lr: 5.9432e-04  eta: 5:57:05  time: 3.2758  data_time: 1.5108  memory: 61145  loss: 0.2016
2023/06/01 13:38:35 - mmengine - INFO - Epoch(train) [16][ 700/1440]  lr: 5.9432e-04  eta: 5:51:39  time: 3.1949  data_time: 1.4147  memory: 61145  loss: 0.2009
2023/06/01 13:43:53 - mmengine - INFO - Epoch(train) [16][ 800/1440]  lr: 5.9432e-04  eta: 5:46:13  time: 3.1362  data_time: 1.3603  memory: 61145  loss: 0.2001
2023/06/01 13:49:15 - mmengine - INFO - Epoch(train) [16][ 900/1440]  lr: 5.9432e-04  eta: 5:40:47  time: 3.2374  data_time: 1.4581  memory: 61145  loss: 0.1996
2023/06/01 13:54:32 - mmengine - INFO - Epoch(train) [16][1000/1440]  lr: 5.9432e-04  eta: 5:35:21  time: 3.1935  data_time: 1.4217  memory: 61145  loss: 0.2007
2023/06/01 13:59:53 - mmengine - INFO - Epoch(train) [16][1100/1440]  lr: 5.9432e-04  eta: 5:29:55  time: 3.3168  data_time: 1.5334  memory: 61145  loss: 0.2016
2023/06/01 14:05:09 - mmengine - INFO - Epoch(train) [16][1200/1440]  lr: 5.9432e-04  eta: 5:24:28  time: 3.1746  data_time: 1.3878  memory: 61145  loss: 0.2012
2023/06/01 14:10:30 - mmengine - INFO - Epoch(train) [16][1300/1440]  lr: 5.9432e-04  eta: 5:19:03  time: 3.1452  data_time: 1.3828  memory: 61145  loss: 0.2011
2023/06/01 14:15:52 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 14:15:52 - mmengine - INFO - Epoch(train) [16][1400/1440]  lr: 5.9432e-04  eta: 5:13:38  time: 3.2832  data_time: 1.5014  memory: 61145  loss: 0.2013
2023/06/01 14:18:02 - mmengine - INFO - Exp name: convnext_tiny_4xb1024_fake5m_20230531_172740
2023/06/01 14:18:02 - mmengine - INFO - Saving checkpoint at 16 epochs
2023/06/01 14:18:17 - mmengine - INFO - Epoch(val) [16][16/16]    accuracy/top1: 98.2261  single-label/precision_classwise: [100.0, 0.0]  single-label/recall_classwise: [98.22612762451172, 0.0]  single-label/f1-score_classwise: [99.10511779785156, 0.0]  data_time: 0.2630  time: 0.4892
2023/06/01 14:23:55 - mmengine - INFO - Epoch(train) [17][ 100/1440]  lr: 3.9101e-04  eta: 5:06:07  time: 3.1291  data_time: 1.3749  memory: 61145  loss: 0.2003
2023/06/01 14:29:22 - mmengine - INFO - Epoch(train) [17][ 200/1440]  lr: 3.9101e-04  eta: 5:00:43  time: 3.4322  data_time: 1.6813  memory: 61145  loss: 0.1996
2023/06/01 14:35:02 - mmengine - INFO - Epoch(train) [17][ 300/1440]  lr: 3.9101e-04  eta: 4:55:22  time: 3.4481  data_time: 1.2939  memory: 61145  loss: 0.2001
2023/06/01 14:40:30 - mmengine - INFO - Epoch(train) [17][ 400/1440]  lr: 3.9101e-04  eta: 4:49:58  time: 3.2638  data_time: 1.5064  memory: 61145  loss: 0.2002
2023/06/01 14:45:53 - mmengine - INFO - Epoch(train) [17][ 500/1440]  lr: 3.9101e-04  eta: 4:44:33  time: 3.1671  data_time: 1.3796  memory: 61145  loss: 0.2016
2023/06/01 14:51:12 - mmengine - INFO - Epoch(train) [17][ 600/1440]  lr: 3.9101e-04  eta: 4:39:08  time: 3.0302  data_time: 1.2577  memory: 61145  loss: 0.1997
2023/06/01 14:56:17 - mmengine - INFO - Epoch(train) [17][ 700/1440]  lr: 3.9101e-04  eta: 4:33:39  time: 3.1236  data_time: 1.3265  memory: 61145  loss: 0.1996
2023/06/01 15:01:27 - mmengine - INFO - Epoch(train) [17][ 800/1440]  lr: 3.9101e-04  eta: 4:28:11  time: 2.9701  data_time: 1.1868  memory: 61145  loss: 0.1999
2023/06/01 15:06:28 - mmengine - INFO - Epoch(train) [17][ 900/1440]  lr: 3.9101e-04  eta: 4:22:42  time: 3.0264  data_time: 1.2686  memory: 61145  loss: 0.2004