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pytensor
Commits
60dda1ba
提交
60dda1ba
authored
9月 27, 2016
作者:
slefrancois
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
dnn epsilon to make_node
上级
b03e3514
显示空白字符变更
内嵌
并排
正在显示
1 个修改的文件
包含
18 行增加
和
24 行删除
+18
-24
dnn.py
theano/gpuarray/dnn.py
+18
-24
没有找到文件。
theano/gpuarray/dnn.py
浏览文件 @
60dda1ba
...
@@ -1424,7 +1424,7 @@ class GpuDnnBatchNorm(DnnBase):
...
@@ -1424,7 +1424,7 @@ class GpuDnnBatchNorm(DnnBase):
__props__
=
(
'mode'
,)
__props__
=
(
'mode'
,)
def
__init__
(
self
,
mode
=
'per-activation'
,
epsilon
=
1e-4
):
def
__init__
(
self
,
mode
=
'per-activation'
):
DnnBase
.
__init__
(
self
,
[
'dnn_batchnorm_base.c'
,
'dnn_batchnorm.c'
],
DnnBase
.
__init__
(
self
,
[
'dnn_batchnorm_base.c'
,
'dnn_batchnorm.c'
],
'dnn_batchnorm_op'
)
'dnn_batchnorm_op'
)
...
@@ -1433,9 +1433,6 @@ class GpuDnnBatchNorm(DnnBase):
...
@@ -1433,9 +1433,6 @@ class GpuDnnBatchNorm(DnnBase):
assert
(
mode
in
(
'per-activation'
,
'spatial'
))
assert
(
mode
in
(
'per-activation'
,
'spatial'
))
self
.
mode
=
mode
self
.
mode
=
mode
assert
(
epsilon
>=
1e-5
)
self
.
epsilon
=
epsilon
def
get_op_params
(
self
):
def
get_op_params
(
self
):
params
=
[]
params
=
[]
params
.
append
((
'MODE'
,
(
"CUDNN_BATCHNORM_SPATIAL"
params
.
append
((
'MODE'
,
(
"CUDNN_BATCHNORM_SPATIAL"
...
@@ -1446,12 +1443,13 @@ class GpuDnnBatchNorm(DnnBase):
...
@@ -1446,12 +1443,13 @@ class GpuDnnBatchNorm(DnnBase):
def
infer_shape
(
self
,
node
,
shape
):
def
infer_shape
(
self
,
node
,
shape
):
return
[
shape
[
0
],
shape
[
1
],
shape
[
1
]]
return
[
shape
[
0
],
shape
[
1
],
shape
[
1
]]
def
make_node
(
self
,
x
,
scale
,
bias
):
def
make_node
(
self
,
x
,
scale
,
bias
,
epsilon
=
1e-4
):
ctx_name
=
infer_context_name
(
x
,
scale
,
bias
)
ctx_name
=
infer_context_name
(
x
,
scale
,
bias
)
x
=
as_gpuarray_variable
(
x
,
ctx_name
)
x
=
as_gpuarray_variable
(
x
,
ctx_name
)
scale
=
as_gpuarray_variable
(
scale
,
ctx_name
)
scale
=
as_gpuarray_variable
(
scale
,
ctx_name
)
bias
=
as_gpuarray_variable
(
bias
,
ctx_name
)
bias
=
as_gpuarray_variable
(
bias
,
ctx_name
)
epsilon
=
as_scalar
(
self
.
epsilon
)
.
astype
(
'float64'
)
assert
(
epsilon
>=
1e-5
)
epsilon
=
as_scalar
(
epsilon
)
.
astype
(
'float64'
)
assert
x
.
ndim
==
4
assert
x
.
ndim
==
4
assert
scale
.
ndim
==
4
assert
scale
.
ndim
==
4
assert
bias
.
ndim
==
4
assert
bias
.
ndim
==
4
...
@@ -1460,9 +1458,9 @@ class GpuDnnBatchNorm(DnnBase):
...
@@ -1460,9 +1458,9 @@ class GpuDnnBatchNorm(DnnBase):
def
grad
(
self
,
inputs
,
grads
):
def
grad
(
self
,
inputs
,
grads
):
x
,
scale
,
bias
,
epsilon
=
inputs
x
,
scale
,
bias
,
epsilon
=
inputs
dy
=
grads
[
0
]
dy
=
grads
[
0
]
_
,
x_mean
,
x_invstd
=
self
.
make_node
(
x
,
scale
,
bias
)
.
outputs
_
,
x_mean
,
x_invstd
=
self
.
make_node
(
x
,
scale
,
bias
,
epsilon
)
.
outputs
return
GpuDnnBatchNormGrad
(
self
.
mode
)(
x
,
dy
,
scale
,
x_mean
,
return
GpuDnnBatchNormGrad
(
self
.
mode
)(
x
,
dy
,
scale
,
x_mean
,
x_invstd
)
+
[
DisconnectedType
()()]
x_invstd
,
epsilon
)
+
[
DisconnectedType
()()]
def
connection_pattern
(
self
,
node
):
def
connection_pattern
(
self
,
node
):
# Specificy that epsilon is not connected to outputs.
# Specificy that epsilon is not connected to outputs.
...
@@ -1488,7 +1486,7 @@ class GpuDnnBatchNormInference(DnnBase):
...
@@ -1488,7 +1486,7 @@ class GpuDnnBatchNormInference(DnnBase):
__props__
=
(
'mode'
,)
__props__
=
(
'mode'
,)
def
__init__
(
self
,
mode
=
'per-activation'
,
epsilon
=
1e-4
):
def
__init__
(
self
,
mode
=
'per-activation'
):
DnnBase
.
__init__
(
self
,
[
'dnn_batchnorm_base.c'
,
'dnn_batchnorm_inf.c'
],
DnnBase
.
__init__
(
self
,
[
'dnn_batchnorm_base.c'
,
'dnn_batchnorm_inf.c'
],
'dnn_batchnorm_op'
)
'dnn_batchnorm_op'
)
...
@@ -1497,9 +1495,6 @@ class GpuDnnBatchNormInference(DnnBase):
...
@@ -1497,9 +1495,6 @@ class GpuDnnBatchNormInference(DnnBase):
assert
(
mode
in
(
'per-activation'
,
'spatial'
))
assert
(
mode
in
(
'per-activation'
,
'spatial'
))
self
.
mode
=
mode
self
.
mode
=
mode
assert
(
epsilon
>=
1e-5
)
self
.
epsilon
=
epsilon
def
get_op_params
(
self
):
def
get_op_params
(
self
):
params
=
[]
params
=
[]
params
.
append
((
'MODE'
,
(
"CUDNN_BATCHNORM_SPATIAL"
params
.
append
((
'MODE'
,
(
"CUDNN_BATCHNORM_SPATIAL"
...
@@ -1510,7 +1505,7 @@ class GpuDnnBatchNormInference(DnnBase):
...
@@ -1510,7 +1505,7 @@ class GpuDnnBatchNormInference(DnnBase):
def
infer_shape
(
self
,
node
,
shape
):
def
infer_shape
(
self
,
node
,
shape
):
return
[
shape
[
0
]]
return
[
shape
[
0
]]
def
make_node
(
self
,
x
,
scale
,
bias
,
estimated_mean
,
estimated_variance
):
def
make_node
(
self
,
x
,
scale
,
bias
,
estimated_mean
,
estimated_variance
,
epsilon
=
1e-4
):
ctx_name
=
infer_context_name
(
x
,
scale
,
bias
,
estimated_mean
,
ctx_name
=
infer_context_name
(
x
,
scale
,
bias
,
estimated_mean
,
estimated_variance
)
estimated_variance
)
x
=
as_gpuarray_variable
(
x
,
ctx_name
)
x
=
as_gpuarray_variable
(
x
,
ctx_name
)
...
@@ -1518,7 +1513,8 @@ class GpuDnnBatchNormInference(DnnBase):
...
@@ -1518,7 +1513,8 @@ class GpuDnnBatchNormInference(DnnBase):
bias
=
as_gpuarray_variable
(
bias
,
ctx_name
)
bias
=
as_gpuarray_variable
(
bias
,
ctx_name
)
estimated_mean
=
as_gpuarray_variable
(
estimated_mean
,
ctx_name
)
estimated_mean
=
as_gpuarray_variable
(
estimated_mean
,
ctx_name
)
estimated_variance
=
as_gpuarray_variable
(
estimated_variance
,
ctx_name
)
estimated_variance
=
as_gpuarray_variable
(
estimated_variance
,
ctx_name
)
epsilon
=
as_scalar
(
self
.
epsilon
)
.
astype
(
'float64'
)
assert
(
epsilon
>=
1e-5
)
epsilon
=
as_scalar
(
epsilon
)
.
astype
(
'float64'
)
assert
x
.
ndim
==
4
assert
x
.
ndim
==
4
assert
scale
.
ndim
==
4
assert
scale
.
ndim
==
4
assert
bias
.
ndim
==
4
assert
bias
.
ndim
==
4
...
@@ -1558,7 +1554,7 @@ class GpuDnnBatchNormInference(DnnBase):
...
@@ -1558,7 +1554,7 @@ class GpuDnnBatchNormInference(DnnBase):
class
GpuDnnBatchNormGrad
(
DnnBase
):
class
GpuDnnBatchNormGrad
(
DnnBase
):
__props__
=
(
'mode'
,)
__props__
=
(
'mode'
,)
def
__init__
(
self
,
mode
=
'per-activation'
,
epsilon
=
1e-4
):
def
__init__
(
self
,
mode
=
'per-activation'
):
DnnBase
.
__init__
(
self
,
[
'dnn_batchnorm_base.c'
,
'dnn_batchnorm_grad.c'
],
DnnBase
.
__init__
(
self
,
[
'dnn_batchnorm_base.c'
,
'dnn_batchnorm_grad.c'
],
'dnn_batchnorm_grad'
)
'dnn_batchnorm_grad'
)
...
@@ -1567,9 +1563,6 @@ class GpuDnnBatchNormGrad(DnnBase):
...
@@ -1567,9 +1563,6 @@ class GpuDnnBatchNormGrad(DnnBase):
assert
(
mode
in
(
'per-activation'
,
'spatial'
))
assert
(
mode
in
(
'per-activation'
,
'spatial'
))
self
.
mode
=
mode
self
.
mode
=
mode
assert
(
epsilon
>=
1e-5
)
self
.
epsilon
=
epsilon
def
get_op_params
(
self
):
def
get_op_params
(
self
):
params
=
[]
params
=
[]
params
.
append
((
'MODE'
,
(
"CUDNN_BATCHNORM_SPATIAL"
params
.
append
((
'MODE'
,
(
"CUDNN_BATCHNORM_SPATIAL"
...
@@ -1577,14 +1570,15 @@ class GpuDnnBatchNormGrad(DnnBase):
...
@@ -1577,14 +1570,15 @@ class GpuDnnBatchNormGrad(DnnBase):
else
"CUDNN_BATCHNORM_PER_ACTIVATION"
)))
else
"CUDNN_BATCHNORM_PER_ACTIVATION"
)))
return
params
return
params
def
make_node
(
self
,
x
,
dy
,
scale
,
x_mean
,
x_invstd
):
def
make_node
(
self
,
x
,
dy
,
scale
,
x_mean
,
x_invstd
,
epsilon
=
1e-4
):
ctx_name
=
infer_context_name
(
x
,
dy
,
scale
,
x_mean
,
x_invstd
)
ctx_name
=
infer_context_name
(
x
,
dy
,
scale
,
x_mean
,
x_invstd
)
x
=
as_gpuarray_variable
(
x
,
ctx_name
)
x
=
as_gpuarray_variable
(
x
,
ctx_name
)
dy
=
as_gpuarray_variable
(
dy
,
ctx_name
)
dy
=
as_gpuarray_variable
(
dy
,
ctx_name
)
scale
=
as_gpuarray_variable
(
scale
,
ctx_name
)
scale
=
as_gpuarray_variable
(
scale
,
ctx_name
)
x_mean
=
as_gpuarray_variable
(
x_mean
,
ctx_name
)
x_mean
=
as_gpuarray_variable
(
x_mean
,
ctx_name
)
x_invstd
=
as_gpuarray_variable
(
x_invstd
,
ctx_name
)
x_invstd
=
as_gpuarray_variable
(
x_invstd
,
ctx_name
)
epsilon
=
as_scalar
(
self
.
epsilon
)
.
astype
(
'float64'
)
assert
(
epsilon
>=
1e-5
)
epsilon
=
as_scalar
(
epsilon
)
.
astype
(
'float64'
)
assert
x
.
ndim
==
4
and
dy
.
ndim
==
4
and
scale
.
ndim
==
4
and
x_mean
.
ndim
==
4
and
x_invstd
.
ndim
==
4
assert
x
.
ndim
==
4
and
dy
.
ndim
==
4
and
scale
.
ndim
==
4
and
x_mean
.
ndim
==
4
and
x_invstd
.
ndim
==
4
return
Apply
(
self
,
[
x
,
dy
,
scale
,
x_mean
,
x_invstd
,
epsilon
],
[
x
.
type
(),
scale
.
type
(),
scale
.
type
()])
return
Apply
(
self
,
[
x
,
dy
,
scale
,
x_mean
,
x_invstd
,
epsilon
],
[
x
.
type
(),
scale
.
type
(),
scale
.
type
()])
...
@@ -1651,9 +1645,9 @@ def dnn_batch_normalization_train(inputs, gamma, beta, mode='per-activation',
...
@@ -1651,9 +1645,9 @@ def dnn_batch_normalization_train(inputs, gamma, beta, mode='per-activation',
inputs
=
theano
.
tensor
.
shape_padright
(
inputs
,
4
-
ndim
)
inputs
=
theano
.
tensor
.
shape_padright
(
inputs
,
4
-
ndim
)
gamma
=
theano
.
tensor
.
shape_padright
(
gamma
,
4
-
ndim
)
gamma
=
theano
.
tensor
.
shape_padright
(
gamma
,
4
-
ndim
)
beta
=
theano
.
tensor
.
shape_padright
(
beta
,
4
-
ndim
)
beta
=
theano
.
tensor
.
shape_padright
(
beta
,
4
-
ndim
)
batchnorm_op
=
GpuDnnBatchNorm
(
mode
=
mode
,
epsilon
=
epsilon
)
batchnorm_op
=
GpuDnnBatchNorm
(
mode
=
mode
)
result
=
tuple
(
batchnorm_op
(
gpu_contiguous
(
inputs
),
gpu_contiguous
(
gamma
),
result
=
tuple
(
batchnorm_op
(
gpu_contiguous
(
inputs
),
gpu_contiguous
(
gamma
),
gpu_contiguous
(
beta
)))
gpu_contiguous
(
beta
)
,
epsilon
=
epsilon
))
if
ndim
<
4
:
if
ndim
<
4
:
result
=
tuple
(
theano
.
tensor
.
flatten
(
r
,
ndim
)
for
r
in
result
)
result
=
tuple
(
theano
.
tensor
.
flatten
(
r
,
ndim
)
for
r
in
result
)
return
result
return
result
...
@@ -1726,10 +1720,10 @@ def dnn_batch_normalization_test(inputs, gamma, beta, mean, var,
...
@@ -1726,10 +1720,10 @@ def dnn_batch_normalization_test(inputs, gamma, beta, mean, var,
beta
=
theano
.
tensor
.
shape_padright
(
beta
,
4
-
ndim
)
beta
=
theano
.
tensor
.
shape_padright
(
beta
,
4
-
ndim
)
mean
=
theano
.
tensor
.
shape_padright
(
mean
,
4
-
ndim
)
mean
=
theano
.
tensor
.
shape_padright
(
mean
,
4
-
ndim
)
var
=
theano
.
tensor
.
shape_padright
(
var
,
4
-
ndim
)
var
=
theano
.
tensor
.
shape_padright
(
var
,
4
-
ndim
)
batchnorm_op
=
GpuDnnBatchNormInference
(
mode
=
mode
,
epsilon
=
epsilon
)
batchnorm_op
=
GpuDnnBatchNormInference
(
mode
=
mode
)
result
=
batchnorm_op
(
gpu_contiguous
(
inputs
),
gpu_contiguous
(
gamma
),
result
=
batchnorm_op
(
gpu_contiguous
(
inputs
),
gpu_contiguous
(
gamma
),
gpu_contiguous
(
beta
),
gpu_contiguous
(
mean
),
gpu_contiguous
(
beta
),
gpu_contiguous
(
mean
),
gpu_contiguous
(
var
))
gpu_contiguous
(
var
)
,
epsilon
=
epsilon
)
if
ndim
<
4
:
if
ndim
<
4
:
result
=
theano
.
tensor
.
flatten
(
result
,
ndim
)
result
=
theano
.
tensor
.
flatten
(
result
,
ndim
)
return
result
return
result
...
...
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