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PaddleDetection
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a06f512a
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PaddleDetection
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a06f512a
编写于
8月 17, 2022
作者:
N
niuliling123
浏览文件
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差异文件
update
上级
0b463621
变更
2
隐藏空白更改
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Showing
2 changed file
with
62 addition
and
4 deletion
+62
-4
ppdet/data/reader.py
ppdet/data/reader.py
+4
-0
ppdet/engine/trainer.py
ppdet/engine/trainer.py
+58
-4
未找到文件。
ppdet/data/reader.py
浏览文件 @
a06f512a
...
@@ -140,6 +140,7 @@ class BaseDataLoader(object):
...
@@ -140,6 +140,7 @@ class BaseDataLoader(object):
collate_batch
=
True
,
collate_batch
=
True
,
use_shared_memory
=
False
,
use_shared_memory
=
False
,
**
kwargs
):
**
kwargs
):
print
(
"[BaseDataLoader] batch_size={}, shuffle={}, use_shared_memory={}"
.
format
(
batch_size
,
shuffle
,
use_shared_memory
))
# sample transform
# sample transform
self
.
_sample_transforms
=
Compose
(
self
.
_sample_transforms
=
Compose
(
sample_transforms
,
num_classes
=
num_classes
)
sample_transforms
,
num_classes
=
num_classes
)
...
@@ -187,6 +188,9 @@ class BaseDataLoader(object):
...
@@ -187,6 +188,9 @@ class BaseDataLoader(object):
"disable shared_memory in DataLoader"
)
"disable shared_memory in DataLoader"
)
use_shared_memory
=
False
use_shared_memory
=
False
print
(
"=========================================================================="
)
print
(
"worker_num={}, use_shared_memory={}"
.
format
(
worker_num
,
use_shared_memory
))
print
(
"=========================================================================="
)
self
.
dataloader
=
DataLoader
(
self
.
dataloader
=
DataLoader
(
dataset
=
self
.
dataset
,
dataset
=
self
.
dataset
,
batch_sampler
=
self
.
_batch_sampler
,
batch_sampler
=
self
.
_batch_sampler
,
...
...
ppdet/engine/trainer.py
浏览文件 @
a06f512a
...
@@ -34,7 +34,6 @@ import paddle.distributed as dist
...
@@ -34,7 +34,6 @@ import paddle.distributed as dist
from
paddle.distributed
import
fleet
from
paddle.distributed
import
fleet
from
paddle.static
import
InputSpec
from
paddle.static
import
InputSpec
from
ppdet.optimizer
import
ModelEMA
from
ppdet.optimizer
import
ModelEMA
from
ppdet.core.workspace
import
create
from
ppdet.core.workspace
import
create
from
ppdet.utils.checkpoint
import
load_weight
,
load_pretrain_weight
from
ppdet.utils.checkpoint
import
load_weight
,
load_pretrain_weight
from
ppdet.utils.visualizer
import
visualize_results
,
save_result
from
ppdet.utils.visualizer
import
visualize_results
,
save_result
...
@@ -58,6 +57,41 @@ __all__ = ['Trainer']
...
@@ -58,6 +57,41 @@ __all__ = ['Trainer']
MOT_ARCH
=
[
'DeepSORT'
,
'JDE'
,
'FairMOT'
,
'ByteTrack'
]
MOT_ARCH
=
[
'DeepSORT'
,
'JDE'
,
'FairMOT'
,
'ByteTrack'
]
GLOBAL_PROFILE_STATE
=
False
def
add_nvtx_event
(
event_name
,
is_first
=
False
,
is_last
=
False
):
global
GLOBAL_PROFILE_STATE
if
not
GLOBAL_PROFILE_STATE
:
return
if
not
is_first
:
paddle
.
fluid
.
core
.
nvprof_nvtx_pop
()
if
not
is_last
:
paddle
.
fluid
.
core
.
nvprof_nvtx_push
(
event_name
)
def
switch_profile
(
start
,
end
,
step_idx
,
event_name
=
None
):
global
GLOBAL_PROFILE_STATE
if
step_idx
>
start
and
step_idx
<
end
:
GLOBAL_PROFILE_STATE
=
True
else
:
GLOBAL_PROFILE_STATE
=
False
#if step_idx == start:
# paddle.utils.profiler.start_profiler("All", "Default")
#elif step_idx == end:
# paddle.utils.profiler.stop_profiler("total", "tmp.profile")
if
event_name
is
None
:
event_name
=
str
(
step_idx
)
if
step_idx
==
start
:
paddle
.
fluid
.
core
.
nvprof_start
()
paddle
.
fluid
.
core
.
nvprof_enable_record_event
()
paddle
.
fluid
.
core
.
nvprof_nvtx_push
(
event_name
)
elif
step_idx
==
end
:
paddle
.
fluid
.
core
.
nvprof_nvtx_pop
()
paddle
.
fluid
.
core
.
nvprof_stop
()
elif
step_idx
>
start
and
step_idx
<
end
:
paddle
.
fluid
.
core
.
nvprof_nvtx_pop
()
paddle
.
fluid
.
core
.
nvprof_nvtx_push
(
event_name
)
class
Trainer
(
object
):
class
Trainer
(
object
):
def
__init__
(
self
,
cfg
,
mode
=
'train'
):
def
__init__
(
self
,
cfg
,
mode
=
'train'
):
...
@@ -403,6 +437,7 @@ class Trainer(object):
...
@@ -403,6 +437,7 @@ class Trainer(object):
model
=
paddle
.
nn
.
SyncBatchNorm
.
convert_sync_batchnorm
(
model
)
model
=
paddle
.
nn
.
SyncBatchNorm
.
convert_sync_batchnorm
(
model
)
# enabel auto mixed precision mode
# enabel auto mixed precision mode
print
(
"use_amp={}, amp_level={}"
.
format
(
self
.
use_amp
,
self
.
amp_level
))
if
self
.
use_amp
:
if
self
.
use_amp
:
scaler
=
paddle
.
amp
.
GradScaler
(
scaler
=
paddle
.
amp
.
GradScaler
(
enable
=
self
.
cfg
.
use_gpu
or
self
.
cfg
.
use_npu
,
enable
=
self
.
cfg
.
use_gpu
or
self
.
cfg
.
use_npu
,
...
@@ -436,10 +471,13 @@ class Trainer(object):
...
@@ -436,10 +471,13 @@ class Trainer(object):
profiler_options
=
self
.
cfg
.
get
(
'profiler_options'
,
None
)
profiler_options
=
self
.
cfg
.
get
(
'profiler_options'
,
None
)
self
.
_compose_callback
.
on_train_begin
(
self
.
status
)
self
.
_compose_callback
.
on_train_begin
(
self
.
status
)
train_batch_size
=
self
.
cfg
.
TrainReader
[
'batch_size'
]
use_fused_allreduce_gradients
=
self
.
cfg
[
use_fused_allreduce_gradients
=
self
.
cfg
[
'use_fused_allreduce_gradients'
]
if
'use_fused_allreduce_gradients'
in
self
.
cfg
else
False
'use_fused_allreduce_gradients'
]
if
'use_fused_allreduce_gradients'
in
self
.
cfg
else
False
prof
=
paddle
.
profiler
.
Profiler
(
targets
=
[
paddle
.
profiler
.
ProfilerTarget
.
CPU
,
paddle
.
paddle
.
profiler
.
ProfilerTarget
.
GPU
],
scheduler
=
[
60
,
70
],
timer_only
=
True
)
prof
.
start
()
for
epoch_id
in
range
(
self
.
start_epoch
,
self
.
cfg
.
epoch
):
for
epoch_id
in
range
(
self
.
start_epoch
,
self
.
cfg
.
epoch
):
self
.
status
[
'mode'
]
=
'train'
self
.
status
[
'mode'
]
=
'train'
self
.
status
[
'epoch_id'
]
=
epoch_id
self
.
status
[
'epoch_id'
]
=
epoch_id
...
@@ -451,6 +489,7 @@ class Trainer(object):
...
@@ -451,6 +489,7 @@ class Trainer(object):
self
.
status
[
'data_time'
].
update
(
time
.
time
()
-
iter_tic
)
self
.
status
[
'data_time'
].
update
(
time
.
time
()
-
iter_tic
)
self
.
status
[
'step_id'
]
=
step_id
self
.
status
[
'step_id'
]
=
step_id
profiler
.
add_profiler_step
(
profiler_options
)
profiler
.
add_profiler_step
(
profiler_options
)
#switch_profile(60, 70, step_id,"(iter is ={})".format(step_id))
self
.
_compose_callback
.
on_step_begin
(
self
.
status
)
self
.
_compose_callback
.
on_step_begin
(
self
.
status
)
data
[
'epoch_id'
]
=
epoch_id
data
[
'epoch_id'
]
=
epoch_id
...
@@ -479,12 +518,17 @@ class Trainer(object):
...
@@ -479,12 +518,17 @@ class Trainer(object):
custom_black_list
=
self
.
custom_black_list
,
custom_black_list
=
self
.
custom_black_list
,
level
=
self
.
amp_level
):
level
=
self
.
amp_level
):
# model forward
# model forward
add_nvtx_event
(
"forward"
,
is_first
=
True
,
is_last
=
False
)
outputs
=
model
(
data
)
outputs
=
model
(
data
)
add_nvtx_event
(
"loss"
,
is_first
=
False
,
is_last
=
False
)
loss
=
outputs
[
'loss'
]
loss
=
outputs
[
'loss'
]
# model backward
# model backward
add_nvtx_event
(
"scaleloss"
,
is_first
=
False
,
is_last
=
False
)
scaled_loss
=
scaler
.
scale
(
loss
)
scaled_loss
=
scaler
.
scale
(
loss
)
add_nvtx_event
(
"backward"
,
is_first
=
False
,
is_last
=
False
)
scaled_loss
.
backward
()
scaled_loss
.
backward
()
# in dygraph mode, optimizer.minimize is equal to optimizer.step
# in dygraph mode, optimizer.minimize is equal to optimizer.step
add_nvtx_event
(
"optimizer"
,
is_first
=
False
,
is_last
=
False
)
scaler
.
minimize
(
self
.
optimizer
,
scaled_loss
)
scaler
.
minimize
(
self
.
optimizer
,
scaled_loss
)
else
:
else
:
if
isinstance
(
if
isinstance
(
...
@@ -500,22 +544,31 @@ class Trainer(object):
...
@@ -500,22 +544,31 @@ class Trainer(object):
list
(
model
.
parameters
()),
None
)
list
(
model
.
parameters
()),
None
)
else
:
else
:
# model forward
# model forward
add_nvtx_event
(
"forward"
,
is_first
=
True
,
is_last
=
False
)
outputs
=
model
(
data
)
outputs
=
model
(
data
)
add_nvtx_event
(
"loss"
,
is_first
=
False
,
is_last
=
False
)
loss
=
outputs
[
'loss'
]
loss
=
outputs
[
'loss'
]
# model backward
# model backward
add_nvtx_event
(
"backward"
,
is_first
=
False
,
is_last
=
False
)
loss
.
backward
()
loss
.
backward
()
add_nvtx_event
(
"optimizer"
,
is_first
=
False
,
is_last
=
False
)
self
.
optimizer
.
step
()
self
.
optimizer
.
step
()
add_nvtx_event
(
"curr_lr"
,
is_first
=
False
,
is_last
=
False
)
curr_lr
=
self
.
optimizer
.
get_lr
()
curr_lr
=
self
.
optimizer
.
get_lr
()
self
.
lr
.
step
()
self
.
lr
.
step
()
if
self
.
cfg
.
get
(
'unstructured_prune'
):
if
self
.
cfg
.
get
(
'unstructured_prune'
):
self
.
pruner
.
step
()
self
.
pruner
.
step
()
add_nvtx_event
(
"clear_grad"
,
is_first
=
False
,
is_last
=
False
)
self
.
optimizer
.
clear_grad
()
self
.
optimizer
.
clear_grad
()
add_nvtx_event
(
"status"
,
is_first
=
False
,
is_last
=
False
)
self
.
status
[
'learning_rate'
]
=
curr_lr
self
.
status
[
'learning_rate'
]
=
curr_lr
if
self
.
_nranks
<
2
or
self
.
_local_rank
==
0
:
if
self
.
_nranks
<
2
or
self
.
_local_rank
==
0
:
self
.
status
[
'training_staus'
].
update
(
outputs
)
self
.
status
[
'training_staus'
].
update
(
outputs
)
self
.
status
[
'batch_time'
].
update
(
time
.
time
()
-
iter_tic
)
self
.
status
[
'batch_time'
].
update
(
time
.
time
()
-
iter_tic
)
add_nvtx_event
(
"other"
,
is_first
=
False
,
is_last
=
True
)
prof
.
step
(
num_samples
=
train_batch_size
)
self
.
_compose_callback
.
on_step_end
(
self
.
status
)
self
.
_compose_callback
.
on_step_end
(
self
.
status
)
if
self
.
use_ema
:
if
self
.
use_ema
:
self
.
ema
.
update
()
self
.
ema
.
update
()
...
@@ -564,7 +617,8 @@ class Trainer(object):
...
@@ -564,7 +617,8 @@ class Trainer(object):
# reset original weight
# reset original weight
self
.
model
.
set_dict
(
weight
)
self
.
model
.
set_dict
(
weight
)
self
.
status
.
pop
(
'weight'
)
self
.
status
.
pop
(
'weight'
)
prof
.
stop
()
prof
.
summary
(
op_detail
=
True
)
self
.
_compose_callback
.
on_train_end
(
self
.
status
)
self
.
_compose_callback
.
on_train_end
(
self
.
status
)
def
_eval_with_loader
(
self
,
loader
):
def
_eval_with_loader
(
self
,
loader
):
...
...
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