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beit-base-p16_8xb128-coslr-100e_in1k.py
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beit-base-p16_8xb128-coslr-100e_in1k.py
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_base_ = [
'../../_base_/datasets/imagenet_bs64_swin_224.py',
'../../_base_/schedules/imagenet_bs1024_adamw_swin.py',
'../../_base_/default_runtime.py'
]
# CAE fine-tuning setting
# dataset
data_preprocessor = dict(
num_classes=1000,
# RGB format normalization parameters
mean=[127.5, 127.5, 127.5],
std=[127.5, 127.5, 127.5],
# convert image from BGR to RGB
to_rgb=True,
)
bgr_mean = data_preprocessor['mean'][::-1]
bgr_std = data_preprocessor['std'][::-1]
train_pipeline = [
dict(type='LoadImageFromFile'),
dict(
type='RandomResizedCrop',
scale=224,
backend='pillow',
interpolation='bicubic'),
dict(type='RandomFlip', prob=0.5, direction='horizontal'),
dict(
type='RandAugment',
policies='timm_increasing',
num_policies=2,
total_level=10,
magnitude_level=9,
magnitude_std=0.5,
hparams=dict(
pad_val=[round(x) for x in bgr_mean], interpolation='bicubic')),
dict(
type='RandomErasing',
erase_prob=0.25,
mode='rand',
min_area_ratio=0.02,
max_area_ratio=1 / 3,
fill_color=bgr_mean,
fill_std=bgr_std),
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(dataset=dict(pipeline=train_pipeline), batch_size=128)
val_dataloader = dict(dataset=dict(pipeline=test_pipeline), batch_size=128)
# model settings
model = dict(
type='ImageClassifier',
backbone=dict(
type='BEiTViT',
arch='base',
img_size=224,
patch_size=16,
final_norm=False, # do not use final norm
drop_path_rate=0.1,
layer_scale_init_value=0.1,
out_type='avg_featmap',
use_abs_pos_emb=True,
use_rel_pos_bias=True,
use_shared_rel_pos_bias=False,
init_cfg=dict(type='Pretrained', checkpoint='', prefix='backbone.')),
neck=None,
head=dict(
type='LinearClsHead',
num_classes=1000,
in_channels=768,
loss=dict(
type='LabelSmoothLoss', label_smooth_val=0.1, mode='original'),
init_cfg=dict(type='TruncNormal', layer='Linear', std=2e-5)),
train_cfg=dict(augments=[
dict(type='Mixup', alpha=0.8),
dict(type='CutMix', alpha=1.0)
]))
# optimizer wrapper
optim_wrapper = dict(
optimizer=dict(
type='AdamW', lr=8e-3, betas=(0.9, 0.999), weight_decay=0.05),
constructor='LearningRateDecayOptimWrapperConstructor',
paramwise_cfg=dict(
layer_decay_rate=0.65,
custom_keys={
'.ln': dict(decay_mult=0.0),
'.bias': dict(decay_mult=0.0),
'.cls_token': dict(decay_mult=0.0),
'.pos_embed': dict(decay_mult=0.0)
}))
# learning rate scheduler
param_scheduler = [
dict(
type='LinearLR',
start_factor=1e-4,
by_epoch=True,
begin=0,
end=5,
convert_to_iter_based=True),
dict(
type='CosineAnnealingLR',
T_max=95,
by_epoch=True,
begin=5,
end=100,
eta_min=1e-6,
convert_to_iter_based=True)
]
default_hooks = dict(
# save checkpoint per epoch.
checkpoint=dict(type='CheckpointHook', interval=1, max_keep_ckpts=3))
train_cfg = dict(by_epoch=True, max_epochs=100)
randomness = dict(seed=0)