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100b7e13
编写于
4月 06, 2023
作者:
W
whs
提交者:
GitHub
4月 06, 2023
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Add tutorial of QAT for classification (#1716)
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example/quantization/qat/classification/README.md
example/quantization/qat/classification/README.md
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example/quantization/qat/classification/args.py
example/quantization/qat/classification/args.py
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example/quantization/qat/classification/train.py
example/quantization/qat/classification/train.py
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example/quantization/qat/classification/README.md
0 → 100644
浏览文件 @
100b7e13
# 动态图量化训练
本示例介绍如何对动态图模型进行量化训练,示例以常用的MobileNetV1,介绍如何对其进行量化训练。
## 分类模型的量化训练流程
### 准备数据
在当前目录下创建
``data``
文件夹,将
``ImageNet``
数据集解压在
``data``
文件夹下,解压后
``data/ILSVRC2012``
文件夹下应包含以下文件:
-
``'train'``
文件夹,训练图片
-
``'train_list.txt'``
文件
-
``'val'``
文件夹,验证图片
-
``'val_list.txt'``
文件
### 准备需要量化的模型
本示例直接使用
[
paddle vision
](
https://github.com/PaddlePaddle/Paddle/tree/develop/python/paddle/vision/models
)
内置的模型结构和预训练权重。通过以下命令查看支持的所有模型:
```
python train.py --help
```
### 训练命令
-
MobileNetV1
我们使用普通的量化训练方法即可,启动命令如下:
```
bash
# 单卡训练
python train.py
--model
=
mobilenet_v1
# 多卡训练,以0到3号卡为例
python
-m
paddle.distributed.launch
--gpus
=
"0,1,2,3"
train.py
--model
=
mobilenet_v1
```
### 量化结果
| 模型 | FP32模型准确率(Top1/Top5) | 量化方法 | 量化模型准确率(Top1/Top5) |
| ----------- | --------------------------- | ------------ | --------------------------- |
| MobileNetV1 | 70.99/89.65 | PACT在线量化 | 70.63/89.65 |
example/quantization/qat/classification/args.py
0 → 100644
浏览文件 @
100b7e13
import
argparse
import
six
from
inspect
import
isfunction
from
types
import
FunctionType
from
typing
import
Dict
import
paddle.vision.models
as
models
SUPPORT_MODELS
:
Dict
[
str
,
FunctionType
]
=
{}
for
_name
,
_module
in
models
.
__dict__
.
items
():
if
isfunction
(
_module
)
and
'pretrained'
in
_module
.
__code__
.
co_varnames
:
SUPPORT_MODELS
[
_name
]
=
_module
def
parse_args
():
parser
=
create_argparse
()
args
=
parser
.
parse_args
()
print
(
"----------- Configuration Arguments -----------"
)
for
arg
,
value
in
sorted
(
six
.
iteritems
(
vars
(
args
))):
print
(
"%s: %s"
%
(
arg
,
value
))
print
(
"------------------------------------------------"
)
return
args
def
create_argparse
():
parser
=
argparse
.
ArgumentParser
(
"Quantization on ImageNet"
)
parser
.
add_argument
(
"--batch_size"
,
type
=
int
,
default
=
128
,
help
=
"Single Card Minibatch size."
,
)
parser
.
add_argument
(
"--pretrained_model"
,
type
=
str
,
default
=
None
,
help
=
"Whether to use pretrained model."
)
parser
.
add_argument
(
"--use_gpu"
,
type
=
bool
,
default
=
True
,
help
=
"Whether to use GPU or not."
,
)
parser
.
add_argument
(
"--model"
,
type
=
str
,
default
=
"mobilenet_v1"
,
help
=
"The target model."
)
parser
.
add_argument
(
"--lr"
,
type
=
float
,
default
=
0.0001
,
help
=
"The learning rate used to fine-tune pruned model."
)
parser
.
add_argument
(
"--lr_strategy"
,
type
=
str
,
default
=
"piecewise_decay"
,
help
=
"The learning rate decay strategy."
)
parser
.
add_argument
(
"--l2_decay"
,
type
=
float
,
default
=
3e-5
,
help
=
"The l2_decay parameter."
)
parser
.
add_argument
(
"--ls_epsilon"
,
type
=
float
,
default
=
0.0
,
help
=
"Label smooth epsilon."
)
parser
.
add_argument
(
"--use_pact"
,
type
=
bool
,
default
=
False
,
help
=
"Whether to use PACT method."
)
parser
.
add_argument
(
"--ce_test"
,
type
=
bool
,
default
=
False
,
help
=
"Whether to CE test."
)
parser
.
add_argument
(
"--onnx_format"
,
type
=
bool
,
default
=
False
,
help
=
"Whether to export the quantized model with format of ONNX."
)
parser
.
add_argument
(
"--momentum_rate"
,
type
=
float
,
default
=
0.9
,
help
=
"The value of momentum_rate."
)
parser
.
add_argument
(
"--num_epochs"
,
type
=
int
,
default
=
10
,
help
=
"The number of total epochs."
)
parser
.
add_argument
(
"--total_images"
,
type
=
int
,
default
=
1281167
,
help
=
"The number of total training images."
)
parser
.
add_argument
(
"--data"
,
type
=
str
,
default
=
"imagenet"
,
help
=
"Which data to use. 'cifar10' or 'imagenet'"
)
parser
.
add_argument
(
"--log_period"
,
type
=
int
,
default
=
10
,
help
=
"Log period in batches."
)
parser
.
add_argument
(
"--infer_model"
,
type
=
str
,
default
=
"./infer_model/int8_infer"
,
help
=
"inference model saved directory."
)
parser
.
add_argument
(
"--checkpoints"
,
type
=
str
,
default
=
"./checkpoints"
,
help
=
"checkpoints directory."
)
parser
.
add_argument
(
"--step_epochs"
,
nargs
=
"+"
,
type
=
int
,
default
=
[
10
,
20
,
30
],
help
=
"piecewise decay step"
)
return
parser
example/quantization/qat/classification/train.py
0 → 100644
浏览文件 @
100b7e13
# copyright (c) 2020 PaddlePaddle Authors. All Rights Reserve.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from
__future__
import
absolute_import
from
__future__
import
division
from
__future__
import
print_function
import
os
import
sys
import
logging
import
paddle
import
time
import
random
import
numpy
as
np
from
paddleslim.common
import
get_logger
from
paddle.quantization
import
QuantConfig
from
paddle.quantization.quanters
import
FakeQuanterWithAbsMaxObserver
from
paddle.quantization.quanters.abs_max
import
FakeQuanterWithAbsMaxObserverLayer
from
paddleslim.quant.quanters
import
PACTQuanter
from
paddle.quantization
import
QAT
sys
.
path
.
append
(
os
.
path
.
join
(
os
.
path
.
dirname
(
"__file__"
)))
from
optimizer
import
create_optimizer
from
args
import
parse_args
from
args
import
SUPPORT_MODELS
_logger
=
get_logger
(
__name__
,
level
=
logging
.
INFO
)
def
compress
(
args
):
num_workers
=
4
shuffle
=
True
if
args
.
ce_test
:
# set seed
seed
=
111
paddle
.
seed
(
seed
)
np
.
random
.
seed
(
seed
)
random
.
seed
(
seed
)
num_workers
=
0
shuffle
=
False
if
args
.
data
==
"cifar10"
:
transform
=
T
.
Compose
([
T
.
Transpose
(),
T
.
Normalize
([
127.5
],
[
127.5
])])
train_dataset
=
paddle
.
vision
.
datasets
.
Cifar10
(
mode
=
"train"
,
backend
=
"cv2"
,
transform
=
transform
)
val_dataset
=
paddle
.
vision
.
datasets
.
Cifar10
(
mode
=
"test"
,
backend
=
"cv2"
,
transform
=
transform
)
class_dim
=
10
image_shape
=
[
3
,
32
,
32
]
pretrain
=
False
args
.
total_images
=
50000
elif
args
.
data
==
"imagenet"
:
import
imagenet_reader
as
reader
train_dataset
=
reader
.
ImageNetDataset
(
mode
=
'train'
)
val_dataset
=
reader
.
ImageNetDataset
(
mode
=
'val'
)
class_dim
=
1000
image_shape
=
"3,224,224"
else
:
raise
ValueError
(
"{} is not supported."
.
format
(
args
.
data
))
trainer_num
=
paddle
.
distributed
.
get_world_size
()
use_data_parallel
=
trainer_num
!=
1
place
=
paddle
.
set_device
(
'gpu'
if
args
.
use_gpu
else
'cpu'
)
# model definition
if
use_data_parallel
:
paddle
.
distributed
.
init_parallel_env
()
pretrain
=
True
if
args
.
data
==
"imagenet"
else
False
model
=
SUPPORT_MODELS
[
args
.
model
](
pretrained
=
pretrain
,
num_classes
=
class_dim
)
train_batch_sampler
=
paddle
.
io
.
DistributedBatchSampler
(
train_dataset
,
batch_size
=
args
.
batch_size
,
shuffle
=
shuffle
,
drop_last
=
True
)
train_loader
=
paddle
.
io
.
DataLoader
(
train_dataset
,
batch_sampler
=
train_batch_sampler
,
places
=
place
,
return_list
=
True
,
num_workers
=
num_workers
)
valid_loader
=
paddle
.
io
.
DataLoader
(
val_dataset
,
places
=
place
,
batch_size
=
args
.
batch_size
,
shuffle
=
False
,
drop_last
=
False
,
return_list
=
True
,
num_workers
=
num_workers
)
@
paddle
.
no_grad
()
def
test
(
epoch
,
net
):
net
.
eval
()
batch_id
=
0
acc_top1_ns
=
[]
acc_top5_ns
=
[]
eval_reader_cost
=
0.0
eval_run_cost
=
0.0
total_samples
=
0
reader_start
=
time
.
time
()
for
data
in
valid_loader
():
eval_reader_cost
+=
time
.
time
()
-
reader_start
image
=
data
[
0
]
label
=
data
[
1
]
if
args
.
data
==
"cifar10"
:
label
=
paddle
.
reshape
(
label
,
[
-
1
,
1
])
eval_start
=
time
.
time
()
out
=
net
(
image
)
acc_top1
=
paddle
.
metric
.
accuracy
(
input
=
out
,
label
=
label
,
k
=
1
)
acc_top5
=
paddle
.
metric
.
accuracy
(
input
=
out
,
label
=
label
,
k
=
5
)
eval_run_cost
+=
time
.
time
()
-
eval_start
batch_size
=
image
.
shape
[
0
]
total_samples
+=
batch_size
if
batch_id
%
args
.
log_period
==
0
:
log_period
=
1
if
batch_id
==
0
else
args
.
log_period
_logger
.
info
(
"Eval epoch[{}] batch[{}] - top1: {:.6f}; top5: {:.6f}; avg_reader_cost: {:.6f} s, avg_batch_cost: {:.6f} s, avg_samples: {}, avg_ips: {:.3f} images/s"
.
format
(
epoch
,
batch_id
,
np
.
mean
(
acc_top1
.
numpy
()),
np
.
mean
(
acc_top5
.
numpy
()),
eval_reader_cost
/
log_period
,
(
eval_reader_cost
+
eval_run_cost
)
/
log_period
,
total_samples
/
log_period
,
total_samples
/
(
eval_reader_cost
+
eval_run_cost
)))
eval_reader_cost
=
0.0
eval_run_cost
=
0.0
total_samples
=
0
acc_top1_ns
.
append
(
np
.
mean
(
acc_top1
.
numpy
()))
acc_top5_ns
.
append
(
np
.
mean
(
acc_top5
.
numpy
()))
batch_id
+=
1
reader_start
=
time
.
time
()
_logger
.
info
(
"Final eval epoch[{}] - acc_top1: {:.6f}; acc_top5: {:.6f}"
.
format
(
epoch
,
np
.
mean
(
np
.
array
(
acc_top1_ns
)),
np
.
mean
(
np
.
array
(
acc_top5_ns
))))
return
np
.
mean
(
np
.
array
(
acc_top1_ns
))
test
(
-
1
,
model
)
############################################################################################################
# 1. quantization
############################################################################################################
activation_quanter
=
PACTQuanter
(
FakeQuanterWithAbsMaxObserverLayer
)
weight_quanter
=
FakeQuanterWithAbsMaxObserver
(
moving_rate
=
0.9
)
q_config
=
QuantConfig
(
activation
=
None
,
weight
=
None
)
q_config
.
add_type_config
(
[
paddle
.
nn
.
Conv2D
,
paddle
.
nn
.
Linear
],
activation
=
activation_quanter
,
weight
=
weight_quanter
)
quanter
=
QAT
(
config
=
q_config
)
quant_model
=
quanter
.
quantize
(
model
)
opt
,
lr
=
create_optimizer
(
quant_model
,
trainer_num
,
args
)
if
use_data_parallel
:
net
=
paddle
.
DataParallel
(
quant_model
)
def
cross_entropy
(
input
,
target
,
ls_epsilon
):
if
ls_epsilon
>
0
:
if
target
.
shape
[
-
1
]
!=
class_dim
:
target
=
paddle
.
nn
.
functional
.
one_hot
(
target
,
class_dim
)
target
=
paddle
.
nn
.
functional
.
label_smooth
(
target
,
epsilon
=
ls_epsilon
)
target
=
paddle
.
reshape
(
target
,
shape
=
[
-
1
,
class_dim
])
input
=
-
paddle
.
nn
.
functional
.
log_softmax
(
input
,
axis
=-
1
)
cost
=
paddle
.
sum
(
target
*
input
,
axis
=-
1
)
else
:
cost
=
paddle
.
nn
.
functional
.
cross_entropy
(
input
=
input
,
label
=
target
)
avg_cost
=
paddle
.
mean
(
cost
)
return
avg_cost
def
train
(
epoch
,
net
):
net
.
train
()
batch_id
=
0
train_reader_cost
=
0.0
train_run_cost
=
0.0
total_samples
=
0
reader_start
=
time
.
time
()
for
data
in
train_loader
():
train_reader_cost
+=
time
.
time
()
-
reader_start
image
=
data
[
0
]
label
=
data
[
1
]
if
args
.
data
==
"cifar10"
:
label
=
paddle
.
reshape
(
label
,
[
-
1
,
1
])
train_start
=
time
.
time
()
out
=
net
(
image
)
avg_cost
=
cross_entropy
(
out
,
label
,
args
.
ls_epsilon
)
acc_top1
=
paddle
.
metric
.
accuracy
(
input
=
out
,
label
=
label
,
k
=
1
)
acc_top5
=
paddle
.
metric
.
accuracy
(
input
=
out
,
label
=
label
,
k
=
5
)
avg_cost
.
backward
()
opt
.
step
()
opt
.
clear_grad
()
lr
.
step
()
loss_n
=
np
.
mean
(
avg_cost
.
numpy
())
acc_top1_n
=
np
.
mean
(
acc_top1
.
numpy
())
acc_top5_n
=
np
.
mean
(
acc_top5
.
numpy
())
train_run_cost
+=
time
.
time
()
-
train_start
batch_size
=
image
.
shape
[
0
]
total_samples
+=
batch_size
if
batch_id
%
args
.
log_period
==
0
:
log_period
=
1
if
batch_id
==
0
else
args
.
log_period
_logger
.
info
(
"epoch[{}]-batch[{}] lr: {:.6f} - loss: {:.6f}; top1: {:.6f}; top5: {:.6f}; avg_reader_cost: {:.6f} s, avg_batch_cost: {:.6f} s, avg_samples: {}, avg_ips: {:.3f} images/s"
.
format
(
epoch
,
batch_id
,
lr
.
get_lr
(),
loss_n
,
acc_top1_n
,
acc_top5_n
,
train_reader_cost
/
log_period
,
(
train_reader_cost
+
train_run_cost
)
/
log_period
,
total_samples
/
log_period
,
total_samples
/
(
train_reader_cost
+
train_run_cost
)))
train_reader_cost
=
0.0
train_run_cost
=
0.0
total_samples
=
0
batch_id
+=
1
reader_start
=
time
.
time
()
############################################################################################################
# train loop
############################################################################################################
start_epoch
=
0
ck_info
=
args
.
checkpoints
+
"/checkpoints.info"
if
not
os
.
path
.
exists
(
args
.
checkpoints
):
os
.
makedirs
(
args
.
checkpoints
)
if
os
.
path
.
isfile
(
ck_info
):
with
open
(
ck_info
,
'r'
)
as
f
:
start_epoch
=
int
(
f
.
readline
())
+
1
quant_model
.
load_dict
(
paddle
.
load
(
f
"
{
args
.
checkpoints
}
/
{
start_epoch
-
1
}
.pdparams"
))
_logger
.
info
(
f
"Load checkpoint from
{
args
.
checkpoints
}
/
{
start_epoch
-
1
}
.pdparams"
)
test
(
start_epoch
-
1
,
quant_model
)
for
_epoch
in
range
(
start_epoch
,
args
.
num_epochs
):
train
(
_epoch
,
quant_model
)
acc1
=
test
(
_epoch
,
quant_model
)
paddle
.
save
(
quant_model
.
state_dict
(),
f
"
{
args
.
checkpoints
}
/
{
_epoch
}
.pdparams"
)
with
open
(
ck_info
,
'w'
)
as
f
:
f
.
write
(
str
(
_epoch
))
_logger
.
info
(
f
"Save checkpoint to
{
args
.
checkpoints
}
/
{
_epoch
}
.pdparams"
)
infer_model
=
quanter
.
convert
(
quant_model
)
dummy_input
=
paddle
.
static
.
InputSpec
(
shape
=
[
None
,
3
,
224
,
224
],
dtype
=
'float32'
)
paddle
.
jit
.
save
(
infer_model
,
args
.
infer_model
,
[
dummy_input
])
_logger
.
info
(
f
"Saved inference model to
{
args
.
infer_model
}
"
)
if
__name__
==
'__main__'
:
args
=
parse_args
()
compress
(
args
)
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