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pytensor
Commits
1d2411c6
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1d2411c6
authored
8月 18, 2016
作者:
Gijs van Tulder
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电子邮件补丁
差异文件
Enable border_mode != valid and filter_dilation in GpuCorr3dMM.
This reuses the implementation of GpuCorr2dMM and its gradient ops.
上级
1d9aff8a
全部展开
隐藏空白字符变更
内嵌
并排
正在显示
3 个修改的文件
包含
151 行增加
和
6 行删除
+151
-6
blas.py
theano/sandbox/cuda/blas.py
+0
-0
corr3d_gemm.cu
theano/sandbox/cuda/corr3d_gemm.cu
+0
-0
test_gemmcorr3d.py
theano/sandbox/cuda/tests/test_gemmcorr3d.py
+151
-6
没有找到文件。
theano/sandbox/cuda/blas.py
浏览文件 @
1d2411c6
差异被折叠。
点击展开。
theano/sandbox/cuda/corr3d_gemm.cu
浏览文件 @
1d2411c6
差异被折叠。
点击展开。
theano/sandbox/cuda/tests/test_gemmcorr3d.py
浏览文件 @
1d2411c6
from
__future__
import
absolute_import
,
print_function
,
division
from
__future__
import
absolute_import
,
print_function
,
division
import
unittest
import
unittest
import
numpy
import
numpy
from
six.moves
import
xrange
try
:
from
scipy
import
ndimage
except
ImportError
:
ndimage
=
None
import
theano
import
theano
from
theano.tests
import
unittest_tools
as
utt
from
theano.tests
import
unittest_tools
as
utt
...
@@ -21,31 +26,127 @@ else:
...
@@ -21,31 +26,127 @@ else:
mode_with_gpu
=
theano
.
compile
.
mode
.
get_default_mode
()
.
including
(
'gpu'
)
mode_with_gpu
=
theano
.
compile
.
mode
.
get_default_mode
()
.
including
(
'gpu'
)
# python reference implementation of a 3D convolution
# see also: theano.tensor.nnet.tests.test_conv3d2d
# expects: (batch, 0, channels, 1, 2)
def
pyconv3d
(
signals
,
filters
,
border_mode
=
'valid'
,
dilation
=
(
1
,
1
,
1
)):
Ns
,
Ts
,
C
,
Hs
,
Ws
=
signals
.
shape
Nf
,
Tf
,
C
,
Hf
,
Wf
=
filters
.
shape
Tdil
,
Hdil
,
Wdil
=
dilation
Tfdil
=
(
Tf
-
1
)
*
Tdil
+
1
Hfdil
=
(
Hf
-
1
)
*
Hdil
+
1
Wfdil
=
(
Wf
-
1
)
*
Wdil
+
1
# if border_mode is not 'valid', the signals need zero-padding
if
border_mode
==
'full'
:
Tpad
=
Tfdil
-
1
Hpad
=
Hfdil
-
1
Wpad
=
Wfdil
-
1
elif
border_mode
==
'half'
:
Tpad
=
Tfdil
//
2
Hpad
=
Hfdil
//
2
Wpad
=
Wfdil
//
2
elif
isinstance
(
border_mode
,
tuple
):
Tpad
,
Hpad
,
Wpad
=
map
(
int
,
border_mode
)
else
:
Tpad
=
0
Hpad
=
0
Wpad
=
0
if
Tpad
>
0
or
Hpad
>
0
or
Wpad
>
0
:
# zero-pad signals
signals_padded
=
numpy
.
zeros
((
Ns
,
Ts
+
2
*
Tpad
,
C
,
Hs
+
2
*
Hpad
,
Ws
+
2
*
Wpad
),
'float32'
)
signals_padded
[:,
Tpad
:(
Ts
+
Tpad
),
:,
Hpad
:(
Hs
+
Hpad
),
Wpad
:(
Ws
+
Wpad
)]
=
signals
Ns
,
Ts
,
C
,
Hs
,
Ws
=
signals_padded
.
shape
signals
=
signals_padded
Tfdil2
=
Tfdil
//
2
Hfdil2
=
Hfdil
//
2
Wfdil2
=
Wfdil
//
2
dilated_filters
=
numpy
.
zeros
((
Nf
,
Tfdil
,
C
,
Hfdil
,
Wfdil
),
dtype
=
filters
.
dtype
)
dilated_filters
[:,
::
Tdil
,
:,
::
Hdil
,
::
Wdil
]
=
filters
# perform valid convolution on the padded signals
rval
=
numpy
.
zeros
((
Ns
,
Ts
-
Tfdil
+
1
,
Nf
,
Hs
-
Hfdil
+
1
,
Ws
-
Wfdil
+
1
))
for
ns
in
xrange
(
Ns
):
for
nf
in
xrange
(
Nf
):
for
c
in
xrange
(
C
):
s_i
=
signals
[
ns
,
:,
c
,
:,
:]
f_i
=
dilated_filters
[
nf
,
:,
c
,
:,
:]
r_i
=
rval
[
ns
,
:,
nf
,
:,
:]
# scipy.signal.convolve performs valid convolution,
# but is quite slow. scipy.ndimage.convolve is faster
# only supports 'same' convolution.
# origin must be -1 for even filters, 0 for odd filters
o_i
=
ndimage
.
convolve
(
s_i
,
f_i
,
mode
=
'constant'
,
cval
=
1
,
origin
=
(
f_i
.
shape
[
0
]
%
2
-
1
,
f_i
.
shape
[
1
]
%
2
-
1
,
f_i
.
shape
[
2
]
%
2
-
1
))
# crop to get the result of 'valid' convolution
o_i
=
o_i
[
Tfdil2
:(
r_i
.
shape
[
0
]
+
Tfdil2
),
Hfdil2
:(
r_i
.
shape
[
1
]
+
Hfdil2
),
Wfdil2
:(
r_i
.
shape
[
2
]
+
Wfdil2
)]
# the result should be equal to 'valid' convolution
# utt.assert_allclose(o_i, signal.convolve(s_i, f_i, mode='valid'))
r_i
+=
o_i
return
rval
class
TestCorr3DMM
(
unittest
.
TestCase
):
class
TestCorr3DMM
(
unittest
.
TestCase
):
def
run_conv_valid
(
self
,
inputs_shape
,
filters_shape
,
def
run_conv_valid
(
self
,
inputs_shape
,
filters_shape
,
subsample
=
(
1
,
1
,
1
)):
border_mode
=
'valid'
,
filter_dilation
=
(
1
,
1
,
1
),
subsample
=
(
1
,
1
,
1
),
verify_grad
=
False
):
inputs_val
=
numpy
.
random
.
random
(
inputs_shape
)
.
astype
(
'float32'
)
inputs_val
=
numpy
.
random
.
random
(
inputs_shape
)
.
astype
(
'float32'
)
filters_val
=
numpy
.
random
.
random
(
filters_shape
)
.
astype
(
'float32'
)
filters_val
=
numpy
.
random
.
random
(
filters_shape
)
.
astype
(
'float32'
)
inputs
=
shared
(
inputs_val
)
inputs
=
shared
(
inputs_val
)
filters
=
shared
(
filters_val
)
filters
=
shared
(
filters_val
)
bias
=
shared
(
numpy
.
zeros
(
filters_shape
[
0
])
.
astype
(
'float32'
))
bias
=
shared
(
numpy
.
zeros
(
filters_shape
[
0
])
.
astype
(
'float32'
))
conv_ref
=
theano
.
tensor
.
nnet
.
conv3D
(
V
=
inputs
,
W
=
filters
,
b
=
bias
,
d
=
subsample
)
if
filter_dilation
==
(
1
,
1
,
1
)
and
border_mode
in
(
'valid'
,
(
0
,
0
,
0
)):
conv
=
GpuCorr3dMM
(
border_mode
=
"valid"
,
conv_ref
=
theano
.
tensor
.
nnet
.
conv3D
(
V
=
inputs
,
W
=
filters
,
b
=
bias
,
d
=
subsample
)
f_ref
=
theano
.
function
([],
conv_ref
)
res_ref
=
f_ref
()
elif
subsample
==
(
1
,
1
,
1
):
if
ndimage
is
None
:
raise
SkipTest
(
'This test needs SciPy.'
)
# input = b012c
# pyconv3d wants = b0c12 = (0, 1, 4, 2, 3)
# pyconv3d outputs = b0c12 = (0, 1, 3, 4, 2)
res_ref
=
pyconv3d
(
signals
=
inputs_val
.
transpose
(
0
,
1
,
4
,
2
,
3
),
filters
=
filters_val
.
transpose
(
0
,
1
,
4
,
2
,
3
)[:,
::
-
1
,
:,
::
-
1
,
::
-
1
],
dilation
=
filter_dilation
,
border_mode
=
border_mode
)
.
transpose
(
0
,
1
,
3
,
4
,
2
)
else
:
raise
SkipTest
(
'No reference implementation that combines '
'border_mode and subsampling.'
)
conv
=
GpuCorr3dMM
(
border_mode
=
border_mode
,
filter_dilation
=
filter_dilation
,
subsample
=
subsample
)(
subsample
=
subsample
)(
inputs
.
dimshuffle
(
0
,
4
,
1
,
2
,
3
),
inputs
.
dimshuffle
(
0
,
4
,
1
,
2
,
3
),
filters
.
dimshuffle
(
0
,
4
,
1
,
2
,
3
))
filters
.
dimshuffle
(
0
,
4
,
1
,
2
,
3
))
conv
=
conv
.
dimshuffle
(
0
,
2
,
3
,
4
,
1
)
conv
=
conv
.
dimshuffle
(
0
,
2
,
3
,
4
,
1
)
f_ref
=
theano
.
function
([],
conv_ref
)
f
=
theano
.
function
([],
conv
,
mode
=
mode_with_gpu
)
f
=
theano
.
function
([],
conv
,
mode
=
mode_with_gpu
)
res_ref
=
f_ref
()
res
=
f
()
res
=
f
()
utt
.
assert_allclose
(
res_ref
,
res
)
utt
.
assert_allclose
(
res_ref
,
res
)
if
verify_grad
:
utt
.
verify_grad
(
GpuCorr3dMM
(
border_mode
=
border_mode
,
filter_dilation
=
filter_dilation
,
subsample
=
subsample
),
[
inputs_val
.
transpose
(
0
,
4
,
1
,
2
,
3
),
filters_val
.
transpose
(
0
,
4
,
1
,
2
,
3
)])
def
test_valid
(
self
):
def
test_valid
(
self
):
self
.
run_conv_valid
(
inputs_shape
=
(
16
,
20
,
12
,
16
,
1
),
self
.
run_conv_valid
(
inputs_shape
=
(
16
,
20
,
12
,
16
,
1
),
filters_shape
=
(
10
,
6
,
12
,
4
,
1
))
filters_shape
=
(
10
,
6
,
12
,
4
,
1
))
...
@@ -68,6 +169,50 @@ class TestCorr3DMM(unittest.TestCase):
...
@@ -68,6 +169,50 @@ class TestCorr3DMM(unittest.TestCase):
filters_shape
=
(
10
,
6
,
12
,
4
,
1
),
filters_shape
=
(
10
,
6
,
12
,
4
,
1
),
subsample
=
(
1
,
2
,
3
))
subsample
=
(
1
,
2
,
3
))
def
test_border_mode
(
self
):
self
.
run_conv_valid
(
inputs_shape
=
(
16
,
20
,
12
,
15
,
1
),
filters_shape
=
(
10
,
6
,
12
,
4
,
1
),
border_mode
=
'valid'
)
self
.
run_conv_valid
(
inputs_shape
=
(
16
,
20
,
12
,
15
,
1
),
filters_shape
=
(
10
,
6
,
12
,
4
,
1
),
border_mode
=
'half'
)
self
.
run_conv_valid
(
inputs_shape
=
(
16
,
20
,
12
,
15
,
1
),
filters_shape
=
(
10
,
6
,
12
,
4
,
1
),
border_mode
=
'full'
)
self
.
run_conv_valid
(
inputs_shape
=
(
16
,
20
,
12
,
15
,
1
),
filters_shape
=
(
10
,
6
,
12
,
4
,
1
),
border_mode
=
(
0
,
0
,
0
))
self
.
run_conv_valid
(
inputs_shape
=
(
16
,
20
,
12
,
15
,
1
),
filters_shape
=
(
10
,
6
,
12
,
4
,
1
),
border_mode
=
(
1
,
2
,
3
))
self
.
run_conv_valid
(
inputs_shape
=
(
16
,
20
,
12
,
15
,
1
),
filters_shape
=
(
10
,
6
,
12
,
4
,
1
),
border_mode
=
(
3
,
2
,
1
))
def
test_filter_dilation
(
self
):
inputs_shape
=
[
16
,
20
,
12
,
15
,
1
]
filters_shape
=
[
10
,
6
,
5
,
4
,
1
]
for
filter_dilation
in
[(
2
,
1
,
1
),
(
1
,
2
,
1
),
(
1
,
1
,
2
)]:
for
border_mode
in
[
'valid'
,
'half'
,
'full'
]:
self
.
run_conv_valid
(
inputs_shape
=
inputs_shape
,
filters_shape
=
filters_shape
,
filter_dilation
=
filter_dilation
,
border_mode
=
border_mode
)
def
test_verify_gradients
(
self
):
# use a small example to check the gradients
inputs_shape
=
[
2
,
7
,
9
,
6
,
1
]
filters_shape
=
[
1
,
3
,
3
,
2
,
1
]
for
filter_dilation
in
[(
2
,
1
,
1
),
(
1
,
2
,
1
),
(
1
,
1
,
2
)]:
for
border_mode
in
[
'valid'
,
'half'
,
'full'
,
(
2
,
1
,
3
)]:
self
.
run_conv_valid
(
inputs_shape
=
inputs_shape
,
filters_shape
=
filters_shape
,
filter_dilation
=
filter_dilation
,
border_mode
=
border_mode
,
verify_grad
=
True
)
def
run_gradweight
(
self
,
inputs_shape
,
filters_shape
,
dCdH_shape
,
def
run_gradweight
(
self
,
inputs_shape
,
filters_shape
,
dCdH_shape
,
subsample
=
(
1
,
1
,
1
)):
subsample
=
(
1
,
1
,
1
)):
inputs_val
=
numpy
.
random
.
random
(
inputs_shape
)
.
astype
(
'float32'
)
inputs_val
=
numpy
.
random
.
random
(
inputs_shape
)
.
astype
(
'float32'
)
...
...
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