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testgroup
pytensor
Commits
2e5a8709
提交
2e5a8709
authored
8月 15, 2014
作者:
Nicolas Ballas
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
Update tests
上级
2051ae99
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
52 行增加
和
89 行删除
+52
-89
test_fftconv.py
theano/sandbox/cuda/tests/test_fftconv.py
+52
-89
没有找到文件。
theano/sandbox/cuda/tests/test_fftconv.py
浏览文件 @
2e5a8709
...
@@ -122,109 +122,72 @@ class TestConv2dFFT(unittest.TestCase):
...
@@ -122,109 +122,72 @@ class TestConv2dFFT(unittest.TestCase):
class
TestConv3dFFT
(
unittest
.
TestCase
):
class
TestConv3dFFT
(
unittest
.
TestCase
):
@staticmethod
def
run_conv_valid
(
self
,
inputs_shape
,
filters_shape
,
pad
=
False
):
def
perform_conv2d_fft
(
inputs
,
filters
,
border_mode
,
function_mode
):
inputs_val
=
numpy
.
random
.
random
(
inputs_shape
)
.
astype
(
'float32'
)
filters_val
=
numpy
.
random
.
random
(
filters_shape
)
.
astype
(
'float32'
)
assert
(
border_mode
in
[
'valid'
,
'full'
])
# function_mode is just mode_with_gpu from the environment
if
inputs
.
shape
[
-
1
]
%
2
==
1
:
pad_last_dim
=
True
else
:
pad_last_dim
=
False
sym_inputs
=
theano
.
tensor
.
tensor4
()
sym_filters
=
theano
.
tensor
.
tensor4
()
sym_outputs
=
theano
.
sandbox
.
cuda
.
fftconv
.
conv2d_fft
(
sym_inputs
,
sym_filters
,
image_shape
=
inputs
.
shape
,
filter_shape
=
filters
.
shape
,
border_mode
=
border_mode
,
pad_last_dim
=
pad_last_dim
)
#f = theano.function([sym_inputs, sym_filters], sym_outputs, mode=function_mode)
f
=
theano
.
function
([
sym_inputs
,
sym_filters
],
sym_outputs
)
outputs_on_gpu
=
f
(
inputs
,
filters
)
outputs
=
numpy
.
array
(
outputs_on_gpu
)
return
outputs
@staticmethod
def
perform_conv3d_through_multiple_conv2d_fft
(
inputs
,
filters
,
border_mode
,
function_mode
):
assert
(
border_mode
in
[
'valid'
,
'full'
])
# function_mode is just mode_with_gpu from the environment
(
nbr_images
,
nbr_channels
,
image_height
,
image_width
,
image_duration
)
=
inputs
.
shape
(
nbr_filters
,
_
,
filter_height
,
filter_width
,
filter_duration
)
=
filters
.
shape
if
border_mode
==
'valid'
:
outputs
=
numpy
.
zeros
(
(
nbr_images
,
nbr_filters
,
image_height
-
filter_height
+
1
,
image_width
-
filter_width
+
1
,
image_duration
-
filter_duration
+
1
),
dtype
=
numpy
.
float32
)
for
t
in
range
(
image_duration
-
filter_duration
+
1
):
for
sub_t
in
range
(
filter_duration
):
#print "(t, sub_t) is (%d, %d), (t + sub_t, filter_duration - 1 -sub_t) is (%d, %d)" % (t, sub_t, t + sub_t, filter_duration - 1 -sub_t)
outputs
[:,:,:,:,
t
]
=
outputs
[:,:,:,:,
t
]
+
TestConv3dFFT
.
perform_conv2d_fft
(
inputs
[:,:,:,:,
t
+
sub_t
]
.
copy
(),
filters
[:,:,:,:,
filter_duration
-
1
-
sub_t
]
.
copy
(),
border_mode
,
function_mode
)
return
outputs
elif
border_mode
==
'full'
:
inputs
=
shared
(
inputs_val
)
filters
=
shared
(
filters_val
)
bias
=
shared
(
numpy
.
zeros
(
filters_shape
[
0
])
.
astype
(
'float32'
))
# pad in time, and then rely on the proper 2d convolution to work out the padding in the height and width
# Flip filter as conv3D compute correlation
padded_inputs
=
numpy
.
zeros
(
(
nbr_images
,
nbr_channels
,
filters_flip
=
filters
[:,::
-
1
,::
-
1
,::
-
1
,:]
image_height
+
2
*
(
filter_height
-
1
),
#filters_flip = filters
image_width
+
2
*
(
filter_width
-
1
),
conv_ref
=
theano
.
tensor
.
nnet
.
conv3D
(
V
=
inputs
,
W
=
filters_flip
,
image_duration
+
2
*
(
filter_duration
-
1
)
),
dtype
=
numpy
.
float32
)
b
=
bias
,
d
=
(
1
,
1
,
1
))
padded_inputs
[:,:,
filter_height
-
1
:
filter_height
-
1
+
image_height
,
filter_width
-
1
:
filter_width
-
1
+
image_width
,
filter_duration
-
1
:
filter_duration
-
1
+
image_duration
]
=
inputs
.
copy
()
return
TestConv3dFFT
.
perform_conv3d_through_multiple_conv2d_fft
(
padded_inputs
,
filters
,
border_mode
=
'valid'
,
function_mode
=
function_mode
)
conv_fft
=
theano
.
sandbox
.
cuda
.
fftconv
.
conv3d_fft
(
inputs
.
dimshuffle
(
0
,
4
,
1
,
2
,
3
),
filters
.
dimshuffle
(
0
,
4
,
1
,
2
,
3
),
border_mode
=
"valid"
,
pad_last_dim
=
pad
)
conv_fft
=
conv_fft
.
dimshuffle
(
0
,
2
,
3
,
4
,
1
)
@staticmethod
f_ref
=
theano
.
function
([],
conv_ref
)
def
perform_fftconv3d
(
inputs
,
filters
,
border_mode
,
function_mode
):
f_fft
=
theano
.
function
([],
conv_fft
,
mode
=
mode_with_gpu
)
assert
(
border_mode
in
[
'valid'
,
'full'
])
res_ref
=
f_ref
()
res_fft
=
f_fft
()
utt
.
assert_allclose
(
res_ref
,
res_fft
,
rtol
=
1e-05
,
atol
=
1e-05
)
if
inputs
.
shape
[
-
1
]
%
2
==
1
:
pad_last_dim
=
True
else
:
pad_last_dim
=
False
tensor5
=
theano
.
tensor
.
TensorType
(
'float32'
,
(
False
,)
*
5
)
sym_inputs
=
tensor5
()
def
run_conv_full
(
self
,
inputs_shape
,
filters_shape
,
pad
=
False
):
sym_filters
=
tensor5
()
inputs_val
=
numpy
.
random
.
random
(
inputs_shape
)
.
astype
(
'float32'
)
filters_val
=
numpy
.
random
.
random
(
filters_shape
)
.
astype
(
'float32'
)
sym_outputs
=
theano
.
sandbox
.
cuda
.
fftconv
.
conv3d_fft
(
sym_inputs
,
sym_filters
,
image_shape
=
inputs
.
shape
,
filter_shape
=
filters
.
shape
,
border_mode
=
border_mode
,
pad_last_dim
=
pad_last_dim
)
inputs
=
shared
(
inputs_val
)
#f = theano.function([sym_inputs, sym_filters], sym_outputs, mode=mode_with_gpu)
filters
=
shared
(
filters_val
)
f
=
theano
.
function
([
sym_inputs
,
sym_filters
],
sym_outputs
)
bias
=
shared
(
numpy
.
zeros
(
filters_shape
[
4
])
.
astype
(
'float32'
))
outputs_on_gpu
=
f
(
inputs
,
filters
)
outputs
=
numpy
.
array
(
outputs_on_gpu
)
return
outputs
conv_ref
=
theano
.
tensor
.
nnet
.
convTransp3D
(
W
=
filters
,
b
=
bias
,
d
=
(
1
,
1
,
1
),
H
=
inputs
)
filters
=
filters
.
dimshuffle
(
4
,
0
,
1
,
2
,
3
)
inputs
=
inputs
.
dimshuffle
(
0
,
4
,
1
,
2
,
3
)
conv_fft
=
theano
.
sandbox
.
cuda
.
fftconv
.
conv3d_fft
(
inputs
,
filters
,
border_mode
=
"full"
,
pad_last_dim
=
pad
)
conv_fft
=
conv_fft
.
dimshuffle
(
0
,
2
,
3
,
4
,
1
)
def
run_conv
(
self
,
inputs_shape
,
filters_shape
,
border_mode
):
f_ref
=
theano
.
function
([],
conv_ref
)
inputs_val
=
numpy
.
random
.
random
(
inputs_shape
)
.
astype
(
'float32'
)
f_fft
=
theano
.
function
([],
conv_fft
,
mode
=
mode_with_gpu
)
filters_val
=
numpy
.
random
.
random
(
filters_shape
)
.
astype
(
'float32'
)
res_ref
=
TestConv3dFFT
.
perform_conv3d_through_multiple_conv2d_fft
(
inputs_val
,
filters_val
,
border_mode
,
mode_with_gpu
)
res_ref
=
f_ref
()
res_fft
=
TestConv3dFFT
.
perform_fftconv3d
(
inputs_val
,
filters_val
,
border_mode
,
mode_with_gpu
)
res_fft
=
f_fft
()
utt
.
assert_allclose
(
res_ref
,
res_fft
,
rtol
=
1e-04
,
atol
=
1e-04
)
utt
.
assert_allclose
(
res_ref
,
res_fft
)
def
test_valid
(
self
):
def
test_valid
(
self
):
self
.
run_conv_valid
(
inputs_shape
=
(
16
,
20
,
32
,
16
,
1
),
for
offset1
in
range
(
2
):
filters_shape
=
(
10
,
6
,
12
,
4
,
1
),
for
offset2
in
range
(
2
):
pad
=
True
)
for
offset3
in
range
(
2
):
self
.
run_conv_valid
(
inputs_shape
=
(
16
,
20
,
32
,
15
,
1
),
self
.
run_conv
(
inputs_shape
=
(
5
,
3
,
5
+
offset1
,
6
+
offset2
,
4
+
offset3
),
filters_shape
=
(
10
,
6
,
12
,
4
,
1
),
filters_shape
=
(
2
,
3
,
3
+
offset1
,
3
+
offset2
,
2
+
offset3
),
pad
=
True
)
border_mode
=
'valid'
)
def
test_full
(
self
):
def
test_full
(
self
):
self
.
run_conv_full
(
inputs_shape
=
(
16
,
15
,
21
,
16
,
10
),
for
offset1
in
range
(
2
):
filters_shape
=
(
10
,
6
,
12
,
4
,
1
),
for
offset2
in
range
(
2
):
pad
=
True
)
for
offset3
in
range
(
2
):
self
.
run_conv_full
(
inputs_shape
=
(
16
,
15
,
21
,
12
,
10
),
self
.
run_conv
(
inputs_shape
=
(
5
,
3
,
5
+
offset1
,
6
+
offset2
,
4
+
offset3
),
filters_shape
=
(
10
,
6
,
12
,
4
,
1
),
filters_shape
=
(
2
,
3
,
3
+
offset1
,
3
+
offset2
,
3
+
offset3
),
pad
=
True
)
border_mode
=
'full'
)
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