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ede8fd55
编写于
8月 25, 2023
作者:
W
wanghuancoder
提交者:
GitHub
8月 25, 2023
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
fix pylayer py39 mem leak (#56623)
* fix pylayer py39 mem leak
上级
5bfcb501
变更
2
隐藏空白更改
内联
并排
Showing
2 changed file
with
215 addition
and
193 deletion
+215
-193
python/paddle/distributed/fleet/layers/mpu/mp_layers.py
python/paddle/distributed/fleet/layers/mpu/mp_layers.py
+140
-127
python/paddle/distributed/fleet/layers/mpu/mp_ops.py
python/paddle/distributed/fleet/layers/mpu/mp_ops.py
+75
-66
未找到文件。
python/paddle/distributed/fleet/layers/mpu/mp_layers.py
浏览文件 @
ede8fd55
...
...
@@ -179,6 +179,136 @@ class VocabParallelEmbedding(paddle.nn.Layer):
return
output
class
InnerOverlapLinear
(
paddle
.
autograd
.
PyLayer
):
@
staticmethod
def
forward
(
ctx
,
x
,
weight
,
bias
,
fuse_matmul_bias
,
mp_async_allreduce
,
mp_skip_c_identity
,
mp_fused_linear_param_grad_add
,
model_parallel_group
,
):
ctx
.
save_for_backward
(
x
,
weight
,
bias
)
ctx
.
model_parallel_group
=
model_parallel_group
ctx
.
mp_fused_linear_param_grad_add
=
mp_fused_linear_param_grad_add
if
mp_skip_c_identity
is
False
:
x
=
paddle
.
_legacy_C_ops
.
c_identity
(
x
,
'use_calc_stream'
,
True
,
'ring_id'
,
model_parallel_group
.
id
,
'use_model_parallel'
,
True
,
)
if
not
fuse_matmul_bias
:
return
paddle
.
_C_ops
.
linear
(
x
,
weight
,
bias
)
else
:
return
paddle
.
_legacy_C_ops
.
fused_gemm_epilogue
(
x
,
weight
,
bias
)
@
staticmethod
def
backward
(
ctx
,
dy
):
x
,
weight
,
bias
=
ctx
.
saved_tensor
()
dx
=
paddle
.
matmul
(
dy
,
weight
,
transpose_y
=
True
)
op_type
=
_get_reduce_op
(
ReduceOp
.
SUM
,
"_c_identity"
)
task
=
ctx
.
model_parallel_group
.
process_group
.
all_reduce
(
dx
,
op_type
,
sync_op
=
False
)
# TODO(GhostScreaming): remove it in future.
tmp
=
paddle
.
ones
([
512
])
if
ctx
.
mp_fused_linear_param_grad_add
:
if
not
is_fused_linear_param_grad_add_supported
():
raise
NotImplementedError
(
"You set mp_fused_linear_param_grad_add=True, "
"however, the paddle you are using not support this operation. "
"Please unset fused_linear_param_grad_add or use paddle compiled "
"with cuda 11.6 or higher."
)
if
bias
is
None
:
if
hasattr
(
weight
,
"main_grad"
):
(
weight
.
main_grad
,
_
,
)
=
paddle
.
_C_ops
.
fused_linear_param_grad_add
(
x
,
dy
,
weight
.
main_grad
,
None
,
True
,
False
)
task
.
wait
()
return
dx
,
None
else
:
if
weight
.
grad
is
not
None
:
(
weight
.
grad
,
_
,
)
=
paddle
.
_C_ops
.
fused_linear_param_grad_add
(
x
,
dy
,
weight
.
grad
,
None
,
False
,
False
)
task
.
wait
()
return
dx
,
None
else
:
(
dw
,
_
,
)
=
paddle
.
_C_ops
.
fused_linear_param_grad_add
(
x
,
dy
,
None
,
None
,
False
,
False
)
task
.
wait
()
return
dx
,
dw
if
hasattr
(
weight
,
"main_grad"
)
and
hasattr
(
bias
,
"main_grad"
):
(
weight
.
main_grad
,
bias
.
main_grad
,
)
=
paddle
.
_C_ops
.
fused_linear_param_grad_add
(
input
,
dy
,
weight
.
main_grad
,
bias
.
main_grad
,
True
,
True
,
)
task
.
wait
()
return
dx
,
None
,
None
else
:
if
weight
.
grad
is
not
None
:
assert
bias
.
grad
is
not
None
(
weight
.
grad
,
bias
.
grad
,
)
=
paddle
.
_C_ops
.
fused_linear_param_grad_add
(
x
,
dy
,
weight
.
grad
,
bias
.
grad
,
False
,
True
)
task
.
wait
()
return
dx
,
None
,
None
else
:
(
dw
,
dbias
,
)
=
paddle
.
_C_ops
.
fused_linear_param_grad_add
(
x
,
dy
,
None
,
None
,
False
,
True
)
task
.
wait
()
return
dx
,
dw
,
dbias
else
:
dw
=
paddle
.
matmul
(
x
.
reshape
([
-
1
,
x
.
shape
[
-
1
]]),
dy
.
reshape
([
-
1
,
dy
.
shape
[
-
1
]]),
transpose_x
=
True
,
)
if
bias
is
None
:
task
.
wait
()
return
dx
,
dw
else
:
dbias
=
paddle
.
sum
(
dy
,
axis
=
0
)
task
.
wait
()
return
dx
,
dw
,
dbias
class
ColumnParallelLinear
(
paddle
.
nn
.
Layer
):
"""Linear layer with mp parallelized(column).
this class is used for splitting Linear Layer in mp group, column split the weight of the Linear layer.
...
...
@@ -336,133 +466,16 @@ class ColumnParallelLinear(paddle.nn.Layer):
# use inner api to process identity
def
_overlap_linear
():
fuse_matmul_bias
=
self
.
fuse_matmul_bias
mp_async_allreduce
=
self
.
mp_async_allreduce
mp_skip_c_identity
=
self
.
mp_skip_c_identity
mp_fused_linear_param_grad_add
=
self
.
mp_fused_linear_param_grad_add
class
InnerOverlapLinear
(
paddle
.
autograd
.
PyLayer
):
@
staticmethod
def
forward
(
ctx
,
x
,
weight
,
bias
):
ctx
.
save_for_backward
(
x
,
weight
,
bias
)
if
mp_skip_c_identity
is
False
:
x
=
paddle
.
_legacy_C_ops
.
c_identity
(
x
,
'use_calc_stream'
,
True
,
'ring_id'
,
self
.
model_parallel_group
.
id
,
'use_model_parallel'
,
True
,
)
if
not
fuse_matmul_bias
:
return
paddle
.
_C_ops
.
linear
(
x
,
weight
,
bias
)
else
:
return
paddle
.
_legacy_C_ops
.
fused_gemm_epilogue
(
x
,
weight
,
bias
)
@
staticmethod
def
backward
(
ctx
,
dy
):
x
,
weight
,
bias
=
ctx
.
saved_tensor
()
dx
=
paddle
.
matmul
(
dy
,
weight
,
transpose_y
=
True
)
op_type
=
_get_reduce_op
(
ReduceOp
.
SUM
,
"_c_identity"
)
task
=
self
.
model_parallel_group
.
process_group
.
all_reduce
(
dx
,
op_type
,
sync_op
=
False
)
# TODO(GhostScreaming): remove it in future.
tmp
=
paddle
.
ones
([
512
])
if
mp_fused_linear_param_grad_add
:
if
not
is_fused_linear_param_grad_add_supported
():
raise
NotImplementedError
(
"You set mp_fused_linear_param_grad_add=True, "
"however, the paddle you are using not support this operation. "
"Please unset fused_linear_param_grad_add or use paddle compiled "
"with cuda 11.6 or higher."
)
if
bias
is
None
:
if
hasattr
(
weight
,
"main_grad"
):
(
weight
.
main_grad
,
_
,
)
=
paddle
.
_C_ops
.
fused_linear_param_grad_add
(
x
,
dy
,
weight
.
main_grad
,
None
,
True
,
False
)
task
.
wait
()
return
dx
,
None
else
:
if
weight
.
grad
is
not
None
:
(
weight
.
grad
,
_
,
)
=
paddle
.
_C_ops
.
fused_linear_param_grad_add
(
x
,
dy
,
weight
.
grad
,
None
,
False
,
False
)
task
.
wait
()
return
dx
,
None
else
:
(
dw
,
_
,
)
=
paddle
.
_C_ops
.
fused_linear_param_grad_add
(
x
,
dy
,
None
,
None
,
False
,
False
)
task
.
wait
()
return
dx
,
dw
if
hasattr
(
weight
,
"main_grad"
)
and
hasattr
(
bias
,
"main_grad"
):
(
weight
.
main_grad
,
bias
.
main_grad
,
)
=
paddle
.
_C_ops
.
fused_linear_param_grad_add
(
input
,
dy
,
weight
.
main_grad
,
bias
.
main_grad
,
True
,
True
,
)
task
.
wait
()
return
dx
,
None
,
None
else
:
if
weight
.
grad
is
not
None
:
assert
bias
.
grad
is
not
None
(
weight
.
grad
,
bias
.
grad
,
)
=
paddle
.
_C_ops
.
fused_linear_param_grad_add
(
x
,
dy
,
weight
.
grad
,
bias
.
grad
,
False
,
True
)
task
.
wait
()
return
dx
,
None
,
None
else
:
(
dw
,
dbias
,
)
=
paddle
.
_C_ops
.
fused_linear_param_grad_add
(
x
,
dy
,
None
,
None
,
False
,
True
)
task
.
wait
()
return
dx
,
dw
,
dbias
else
:
dw
=
paddle
.
matmul
(
x
.
reshape
([
-
1
,
x
.
shape
[
-
1
]]),
dy
.
reshape
([
-
1
,
dy
.
shape
[
-
1
]]),
transpose_x
=
True
,
)
if
bias
is
None
:
task
.
wait
()
return
dx
,
dw
else
:
dbias
=
paddle
.
sum
(
dy
,
axis
=
0
)
task
.
wait
()
return
dx
,
dw
,
dbias
return
InnerOverlapLinear
.
apply
(
x
,
self
.
weight
,
self
.
bias
)
return
InnerOverlapLinear
.
apply
(
x
,
self
.
weight
,
self
.
bias
,
self
.
fuse_matmul_bias
,
self
.
mp_async_allreduce
,
self
.
mp_skip_c_identity
,
self
.
mp_fused_linear_param_grad_add
,
self
.
model_parallel_group
,
)
if
self
.
mp_async_allreduce
:
output_parallel
=
_overlap_linear
()
...
...
python/paddle/distributed/fleet/layers/mpu/mp_ops.py
浏览文件 @
ede8fd55
...
...
@@ -14,6 +14,7 @@
import
paddle
from
paddle
import
_legacy_C_ops
from
paddle.autograd
import
PyLayer
from
paddle.distributed
import
collective
from
paddle.fluid.data_feeder
import
check_dtype
,
check_variable_and_dtype
from
paddle.framework
import
LayerHelper
,
_create_tensor
,
in_dynamic_mode
...
...
@@ -23,6 +24,30 @@ from paddle.nn.utils import dygraph_utils
from
....communication.reduce
import
ReduceOp
,
_get_reduce_op
class
c_identity_eager
(
PyLayer
):
@
staticmethod
def
forward
(
ctx
,
tensor
,
group
,
skip_c_identity_dynamic
):
ctx
.
group
=
group
if
skip_c_identity_dynamic
:
return
tensor
else
:
return
_legacy_C_ops
.
c_identity
(
tensor
,
'use_calc_stream'
,
True
,
'ring_id'
,
group
.
id
,
'use_model_parallel'
,
True
,
)
@
staticmethod
def
backward
(
ctx
,
dy
):
op_type
=
_get_reduce_op
(
ReduceOp
.
SUM
,
"_c_identity"
)
ctx
.
group
.
process_group
.
all_reduce_on_calc_stream
(
dy
,
op_type
)
return
dy
def
_c_identity
(
tensor
,
group
=
None
,
skip_c_identity_dynamic
=
False
):
"""
Return a copy of the tensor, mainly used with model parallel.
...
...
@@ -40,31 +65,7 @@ def _c_identity(tensor, group=None, skip_c_identity_dynamic=False):
ring_id
=
0
if
group
is
None
else
group
.
id
if
in_dynamic_mode
():
from
paddle.autograd
import
PyLayer
class
c_identity_eager
(
PyLayer
):
@
staticmethod
def
forward
(
ctx
,
tensor
):
if
skip_c_identity_dynamic
:
return
tensor
else
:
return
_legacy_C_ops
.
c_identity
(
tensor
,
'use_calc_stream'
,
True
,
'ring_id'
,
group
.
id
,
'use_model_parallel'
,
True
,
)
@
staticmethod
def
backward
(
ctx
,
dy
):
op_type
=
_get_reduce_op
(
ReduceOp
.
SUM
,
"_c_identity"
)
group
.
process_group
.
all_reduce_on_calc_stream
(
dy
,
op_type
)
return
dy
return
c_identity_eager
.
apply
(
tensor
)
return
c_identity_eager
.
apply
(
tensor
,
group
,
skip_c_identity_dynamic
)
else
:
op_type
=
'c_identity'
helper
=
LayerHelper
(
op_type
,
**
locals
())
...
...
@@ -218,6 +219,49 @@ def _c_split(tensor, group=None):
return
out
class
mp_allreduce_eager
(
PyLayer
):
@
staticmethod
def
forward
(
ctx
,
tensor
,
group
,
use_calc_stream
,
use_model_parallel
,
op
,
skip_c_identity_dynamic
,
):
ctx
.
ring_id
=
group
.
id
ctx
.
skip_c_identity_dynamic
=
skip_c_identity_dynamic
if
use_calc_stream
:
op_type
=
_get_reduce_op
(
op
,
"_mp_allreduce"
)
group
.
process_group
.
all_reduce_on_calc_stream
(
tensor
,
op_type
)
return
tensor
else
:
return
_legacy_C_ops
.
c_allreduce_sum_
(
tensor
,
'use_calc_stream'
,
use_calc_stream
,
'ring_id'
,
group
.
id
,
)
@
staticmethod
def
backward
(
ctx
,
dy
):
if
ctx
.
skip_c_identity_dynamic
:
return
dy
else
:
return
_legacy_C_ops
.
c_identity
(
dy
,
'use_calc_stream'
,
True
,
'ring_id'
,
ctx
.
ring_id
,
'use_model_parallel'
,
True
,
)
def
_mp_allreduce
(
tensor
,
op
=
ReduceOp
.
SUM
,
...
...
@@ -233,48 +277,13 @@ def _mp_allreduce(
if
in_dynamic_mode
():
group
=
collective
.
_get_default_group
()
if
group
is
None
else
group
assert
op
==
ReduceOp
.
SUM
,
f
"Unknown parameter:
{
op
}
."
from
paddle.autograd
import
PyLayer
class
mp_allreduce_eager
(
PyLayer
):
@
staticmethod
def
forward
(
ctx
,
tensor
,
group
,
use_calc_stream
,
use_model_parallel
):
ctx
.
ring_id
=
group
.
id
if
use_calc_stream
:
op_type
=
_get_reduce_op
(
op
,
"_mp_allreduce"
)
group
.
process_group
.
all_reduce_on_calc_stream
(
tensor
,
op_type
)
return
tensor
else
:
return
_legacy_C_ops
.
c_allreduce_sum_
(
tensor
,
'use_calc_stream'
,
use_calc_stream
,
'ring_id'
,
ring_id
,
)
@
staticmethod
def
backward
(
ctx
,
dy
):
if
skip_c_identity_dynamic
:
return
dy
else
:
return
_legacy_C_ops
.
c_identity
(
dy
,
'use_calc_stream'
,
True
,
'ring_id'
,
ctx
.
ring_id
,
'use_model_parallel'
,
True
,
)
return
mp_allreduce_eager
.
apply
(
tensor
,
group
,
use_calc_stream
,
use_model_parallel
tensor
,
group
,
use_calc_stream
,
use_model_parallel
,
op
,
skip_c_identity_dynamic
,
)
else
:
ring_id
=
0
if
group
is
None
else
group
.
id
...
...
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