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testgroup
pytensor
Commits
d18c15ce
提交
d18c15ce
authored
3月 03, 2017
作者:
Frederic Bastien
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
Fix gh-5649
上级
02d11f7d
隐藏空白字符变更
内嵌
并排
正在显示
1 个修改的文件
包含
34 行增加
和
24 行删除
+34
-24
dnn.py
theano/gpuarray/dnn.py
+34
-24
没有找到文件。
theano/gpuarray/dnn.py
浏览文件 @
d18c15ce
...
@@ -198,6 +198,18 @@ handle_type = CDataType('cudnnHandle_t', 'cudnnDestroy',
...
@@ -198,6 +198,18 @@ handle_type = CDataType('cudnnHandle_t', 'cudnnDestroy',
lib_dirs
=
[
config
.
dnn
.
library_path
])
lib_dirs
=
[
config
.
dnn
.
library_path
])
def
get_precision
(
precision
,
inputs
):
if
precision
is
None
:
precision
=
theano
.
config
.
dnn
.
conv
.
precision
if
precision
==
'as_input'
or
precision
==
'as_input_f32'
:
nprec
=
theano
.
scalar
.
upcast
(
*
[
i
.
dtype
for
i
in
inputs
])
if
nprec
==
'float16'
and
precision
==
'as_input_f32'
:
precision
=
'float32'
else
:
precision
=
nprec
return
precision
class
DnnBase
(
COp
):
class
DnnBase
(
COp
):
"""
"""
...
@@ -963,14 +975,7 @@ def dnn_conv(img, kerns, border_mode='valid', subsample=(1, 1),
...
@@ -963,14 +975,7 @@ def dnn_conv(img, kerns, border_mode='valid', subsample=(1, 1),
"""
"""
# Establish dtype in which to perform the computation of the convolution
# Establish dtype in which to perform the computation of the convolution
if
precision
is
None
:
precision
=
get_precision
(
precision
,
[
img
,
kerns
])
precision
=
theano
.
config
.
dnn
.
conv
.
precision
if
precision
==
'as_input'
or
precision
==
'as_input_f32'
:
nprec
=
theano
.
scalar
.
upcast
(
img
.
dtype
,
kerns
.
dtype
)
if
nprec
==
'float16'
and
precision
==
'as_input_f32'
:
precision
=
'float32'
else
:
precision
=
nprec
if
workmem
is
not
None
:
if
workmem
is
not
None
:
if
algo
is
not
None
:
if
algo
is
not
None
:
...
@@ -1086,14 +1091,7 @@ def dnn_conv3d(img, kerns, border_mode='valid', subsample=(1, 1, 1),
...
@@ -1086,14 +1091,7 @@ def dnn_conv3d(img, kerns, border_mode='valid', subsample=(1, 1, 1),
"""
"""
# Establish dtype in which to perform the computation of the convolution
# Establish dtype in which to perform the computation of the convolution
if
precision
is
None
:
precision
=
get_precision
(
precision
,
[
img
,
kerns
])
precision
=
theano
.
config
.
dnn
.
conv
.
precision
if
precision
==
'as_input'
or
precision
==
'as_input_f32'
:
nprec
=
theano
.
scalar
.
upcast
(
img
.
dtype
,
kerns
.
dtype
)
if
nprec
==
'float16'
and
precision
==
'as_input_f32'
:
precision
=
'float32'
else
:
precision
=
nprec
fgraph
=
getattr
(
img
,
'fgraph'
,
None
)
or
getattr
(
kerns
,
'fgraph'
,
None
)
fgraph
=
getattr
(
img
,
'fgraph'
,
None
)
or
getattr
(
kerns
,
'fgraph'
,
None
)
ctx_name
=
infer_context_name
(
img
,
kerns
)
ctx_name
=
infer_context_name
(
img
,
kerns
)
...
@@ -1159,7 +1157,7 @@ def dnn_conv3d(img, kerns, border_mode='valid', subsample=(1, 1, 1),
...
@@ -1159,7 +1157,7 @@ def dnn_conv3d(img, kerns, border_mode='valid', subsample=(1, 1, 1),
def
dnn_gradweight
(
img
,
topgrad
,
kerns_shp
,
border_mode
=
'valid'
,
def
dnn_gradweight
(
img
,
topgrad
,
kerns_shp
,
border_mode
=
'valid'
,
subsample
=
(
1
,
1
),
conv_mode
=
'conv'
):
subsample
=
(
1
,
1
),
conv_mode
=
'conv'
,
precision
=
None
):
"""
"""
TODO: document this
TODO: document this
"""
"""
...
@@ -1169,14 +1167,17 @@ def dnn_gradweight(img, topgrad, kerns_shp, border_mode='valid',
...
@@ -1169,14 +1167,17 @@ def dnn_gradweight(img, topgrad, kerns_shp, border_mode='valid',
img
=
gpu_contiguous
(
img
)
img
=
gpu_contiguous
(
img
)
topgrad
=
gpu_contiguous
(
topgrad
)
topgrad
=
gpu_contiguous
(
topgrad
)
kerns_shp
=
as_tensor_variable
(
kerns_shp
)
kerns_shp
=
as_tensor_variable
(
kerns_shp
)
precision
=
get_precision
(
precision
,
[
img
,
topgrad
])
desc
=
gpu_dnn_conv_desc
(
border_mode
=
border_mode
,
subsample
=
subsample
,
desc
=
gpu_dnn_conv_desc
(
border_mode
=
border_mode
,
subsample
=
subsample
,
conv_mode
=
conv_mode
)(
kerns_shp
)
conv_mode
=
conv_mode
,
precision
=
precision
)(
kerns_shp
)
out
=
gpu_alloc_empty
(
ctx_name
,
dtype
=
img
.
dtype
)(
*
kerns_shp
)
out
=
gpu_alloc_empty
(
ctx_name
,
dtype
=
img
.
dtype
)(
*
kerns_shp
)
return
gpu_dnn_conv_gradW
()(
img
,
topgrad
,
out
,
desc
)
return
gpu_dnn_conv_gradW
()(
img
,
topgrad
,
out
,
desc
)
def
dnn_gradweight3d
(
img
,
topgrad
,
kerns_shp
,
border_mode
=
'valid'
,
def
dnn_gradweight3d
(
img
,
topgrad
,
kerns_shp
,
border_mode
=
'valid'
,
subsample
=
(
1
,
1
,
1
),
conv_mode
=
'conv'
):
subsample
=
(
1
,
1
,
1
),
conv_mode
=
'conv'
,
precision
=
None
):
"""
"""
TODO: document this
TODO: document this
"""
"""
...
@@ -1186,14 +1187,17 @@ def dnn_gradweight3d(img, topgrad, kerns_shp, border_mode='valid',
...
@@ -1186,14 +1187,17 @@ def dnn_gradweight3d(img, topgrad, kerns_shp, border_mode='valid',
img
=
gpu_contiguous
(
img
)
img
=
gpu_contiguous
(
img
)
topgrad
=
gpu_contiguous
(
topgrad
)
topgrad
=
gpu_contiguous
(
topgrad
)
kerns_shp
=
as_tensor_variable
(
kerns_shp
)
kerns_shp
=
as_tensor_variable
(
kerns_shp
)
precision
=
get_precision
(
precision
,
[
img
,
topgrad
])
desc
=
gpu_dnn_conv_desc
(
border_mode
=
border_mode
,
subsample
=
subsample
,
desc
=
gpu_dnn_conv_desc
(
border_mode
=
border_mode
,
subsample
=
subsample
,
conv_mode
=
conv_mode
)(
kerns_shp
)
conv_mode
=
conv_mode
,
precision
=
precision
)(
kerns_shp
)
out
=
gpu_alloc_empty
(
ctx_name
,
dtype
=
img
.
dtype
)(
*
kerns_shp
)
out
=
gpu_alloc_empty
(
ctx_name
,
dtype
=
img
.
dtype
)(
*
kerns_shp
)
return
gpu_dnn_conv_gradW
()(
img
,
topgrad
,
out
,
desc
)
return
gpu_dnn_conv_gradW
()(
img
,
topgrad
,
out
,
desc
)
def
dnn_gradinput
(
kerns
,
topgrad
,
img_shp
,
border_mode
=
'valid'
,
def
dnn_gradinput
(
kerns
,
topgrad
,
img_shp
,
border_mode
=
'valid'
,
subsample
=
(
1
,
1
),
conv_mode
=
'conv'
):
subsample
=
(
1
,
1
),
conv_mode
=
'conv'
,
precision
=
None
):
"""
"""
TODO: document this
TODO: document this
"""
"""
...
@@ -1203,14 +1207,17 @@ def dnn_gradinput(kerns, topgrad, img_shp, border_mode='valid',
...
@@ -1203,14 +1207,17 @@ def dnn_gradinput(kerns, topgrad, img_shp, border_mode='valid',
kerns
=
gpu_contiguous
(
kerns
)
kerns
=
gpu_contiguous
(
kerns
)
topgrad
=
gpu_contiguous
(
topgrad
)
topgrad
=
gpu_contiguous
(
topgrad
)
img_shp
=
as_tensor_variable
(
img_shp
)
img_shp
=
as_tensor_variable
(
img_shp
)
precision
=
get_precision
(
precision
,
[
kerns
,
topgrad
])
desc
=
gpu_dnn_conv_desc
(
border_mode
=
border_mode
,
subsample
=
subsample
,
desc
=
gpu_dnn_conv_desc
(
border_mode
=
border_mode
,
subsample
=
subsample
,
conv_mode
=
conv_mode
)(
kerns
.
shape
)
conv_mode
=
conv_mode
,
precision
=
precision
)(
kerns
.
shape
)
out
=
gpu_alloc_empty
(
ctx_name
,
kerns
.
dtype
)(
*
img_shp
)
out
=
gpu_alloc_empty
(
ctx_name
,
kerns
.
dtype
)(
*
img_shp
)
return
gpu_dnn_conv_gradI
()(
kerns
,
topgrad
,
out
,
desc
)
return
gpu_dnn_conv_gradI
()(
kerns
,
topgrad
,
out
,
desc
)
def
dnn_gradinput3d
(
kerns
,
topgrad
,
img_shp
,
border_mode
=
'valid'
,
def
dnn_gradinput3d
(
kerns
,
topgrad
,
img_shp
,
border_mode
=
'valid'
,
subsample
=
(
1
,
1
,
1
),
conv_mode
=
'conv'
):
subsample
=
(
1
,
1
,
1
),
conv_mode
=
'conv'
,
precision
=
None
):
"""
"""
TODO: document this
TODO: document this
"""
"""
...
@@ -1220,8 +1227,11 @@ def dnn_gradinput3d(kerns, topgrad, img_shp, border_mode='valid',
...
@@ -1220,8 +1227,11 @@ def dnn_gradinput3d(kerns, topgrad, img_shp, border_mode='valid',
kerns
=
gpu_contiguous
(
kerns
)
kerns
=
gpu_contiguous
(
kerns
)
topgrad
=
gpu_contiguous
(
topgrad
)
topgrad
=
gpu_contiguous
(
topgrad
)
img_shp
=
as_tensor_variable
(
img_shp
)
img_shp
=
as_tensor_variable
(
img_shp
)
precision
=
get_precision
(
precision
,
[
kerns
,
topgrad
])
desc
=
gpu_dnn_conv_desc
(
border_mode
=
border_mode
,
subsample
=
subsample
,
desc
=
gpu_dnn_conv_desc
(
border_mode
=
border_mode
,
subsample
=
subsample
,
conv_mode
=
conv_mode
)(
kerns
.
shape
)
conv_mode
=
conv_mode
,
precision
=
precision
)(
kerns
.
shape
)
out
=
gpu_alloc_empty
(
ctx_name
,
kerns
.
dtype
)(
*
img_shp
)
out
=
gpu_alloc_empty
(
ctx_name
,
kerns
.
dtype
)(
*
img_shp
)
return
gpu_dnn_conv_gradI
()(
kerns
,
topgrad
,
out
,
desc
)
return
gpu_dnn_conv_gradI
()(
kerns
,
topgrad
,
out
,
desc
)
...
...
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