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pytensor
Commits
dfb27303
提交
dfb27303
authored
11月 20, 2015
作者:
Pascal Lamblin
浏览文件
操作
浏览文件
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差异文件
Merge pull request #3618 from JesseLivezey/cormm_opt
CorrMM optimizations
上级
3180ec4d
850e8902
全部展开
隐藏空白字符变更
内嵌
并排
正在显示
4 个修改的文件
包含
34 行增加
和
228 行删除
+34
-228
conv.txt
doc/library/tensor/nnet/conv.txt
+3
-3
test_abstractconv.py
theano/sandbox/cuda/tests/test_abstractconv.py
+30
-2
abstract_conv2d.py
theano/tensor/nnet/abstract_conv2d.py
+1
-223
opt.py
theano/tensor/nnet/opt.py
+0
-0
没有找到文件。
doc/library/tensor/nnet/conv.txt
浏览文件 @
dfb27303
...
@@ -124,9 +124,9 @@ TODO: Give examples on how to use these things! They are pretty complicated.
...
@@ -124,9 +124,9 @@ TODO: Give examples on how to use these things! They are pretty complicated.
This is a CPU-only 2d correlation implementation taken from
This is a CPU-only 2d correlation implementation taken from
`caffe <https://github.com/BVLC/caffe/blob/master/src/caffe/layers/conv_layer.cpp>`_
`caffe <https://github.com/BVLC/caffe/blob/master/src/caffe/layers/conv_layer.cpp>`_
and also used by Torch. It does not flip the kernel. As it provides a gradient,
and also used by Torch. It does not flip the kernel. As it provides a gradient,
you can use it as a replacement for nnet.conv2d.
There is currently no
you can use it as a replacement for nnet.conv2d.
For convolutions done on
optimization to move this to GPU. This will be added when the new convolution
CPU, nnet.conv2d will be replaced by CorrMM. To explicitly disable it, set
interface is finished
.
``THEANO_FLAGS=optimizer_excluding=conv_gemm`` in your environment
.
- :func:`dnn_conv <theano.sandbox.cuda.dnn.dnn_conv>` GPU-only
- :func:`dnn_conv <theano.sandbox.cuda.dnn.dnn_conv>` GPU-only
convolution using NVIDIA's cuDNN library. This requires that you have
convolution using NVIDIA's cuDNN library. This requires that you have
cuDNN installed and available, which in turn requires CUDA 6.5 and a GPU
cuDNN installed and available, which in turn requires CUDA 6.5 and a GPU
...
...
theano/sandbox/cuda/tests/test_abstractconv.py
浏览文件 @
dfb27303
...
@@ -212,7 +212,7 @@ class TestConv2d(unittest.TestCase):
...
@@ -212,7 +212,7 @@ class TestConv2d(unittest.TestCase):
provide_shape
=
provide_shape
,
border_mode
=
b
,
provide_shape
=
provide_shape
,
border_mode
=
b
,
filter_flip
=
flip
)
filter_flip
=
flip
)
def
test_cormm_conv
(
self
):
def
test_
gpu
cormm_conv
(
self
):
if
not
dnn_available
():
if
not
dnn_available
():
raise
SkipTest
(
cuda
.
dnn
.
dnn_available
.
msg
)
raise
SkipTest
(
cuda
.
dnn
.
dnn_available
.
msg
)
...
@@ -240,11 +240,39 @@ class TestConv2d(unittest.TestCase):
...
@@ -240,11 +240,39 @@ class TestConv2d(unittest.TestCase):
provide_shape
=
provide_shape
,
border_mode
=
b
,
provide_shape
=
provide_shape
,
border_mode
=
b
,
filter_flip
=
flip
)
filter_flip
=
flip
)
def
test_c
pu
_conv
(
self
):
def
test_c
ormm
_conv
(
self
):
if
not
dnn_available
():
if
not
dnn_available
():
raise
SkipTest
(
cuda
.
dnn
.
dnn_available
.
msg
)
raise
SkipTest
(
cuda
.
dnn
.
dnn_available
.
msg
)
mode
=
mode_without_gpu
mode
=
mode_without_gpu
for
(
i
,
f
),
s
,
b
,
flip
,
provide_shape
in
itertools
.
product
(
zip
(
self
.
inputs_shapes
,
self
.
filters_shapes
),
self
.
subsamples
,
self
.
border_modes
,
self
.
filter_flip
,
[
False
,
True
]):
o
=
self
.
get_output_shape
(
i
,
f
,
s
,
b
)
self
.
run_fwd
(
inputs_shape
=
i
,
filters_shape
=
f
,
subsample
=
s
,
verify_grad
=
True
,
mode
=
mode
,
device
=
'cpu'
,
provide_shape
=
provide_shape
,
border_mode
=
b
,
filter_flip
=
flip
)
self
.
run_gradweight
(
inputs_shape
=
i
,
filters_shape
=
f
,
output_shape
=
o
,
subsample
=
s
,
verify_grad
=
True
,
mode
=
mode
,
device
=
'cpu'
,
provide_shape
=
provide_shape
,
border_mode
=
b
,
filter_flip
=
flip
)
self
.
run_gradinput
(
inputs_shape
=
i
,
filters_shape
=
f
,
output_shape
=
o
,
subsample
=
s
,
verify_grad
=
True
,
mode
=
mode
,
device
=
'cpu'
,
provide_shape
=
provide_shape
,
border_mode
=
b
,
filter_flip
=
flip
)
def
test_cpu_conv
(
self
):
if
not
dnn_available
():
raise
SkipTest
(
cuda
.
dnn
.
dnn_available
.
msg
)
mode
=
mode_without_gpu
.
excluding
(
'conv_gemm'
)
for
(
i
,
f
),
s
,
b
,
flip
,
provide_shape
in
itertools
.
product
(
for
(
i
,
f
),
s
,
b
,
flip
,
provide_shape
in
itertools
.
product
(
zip
(
self
.
inputs_shapes
,
self
.
filters_shapes
),
zip
(
self
.
inputs_shapes
,
self
.
filters_shapes
),
self
.
subsamples
,
self
.
subsamples
,
...
...
theano/tensor/nnet/abstract_conv2d.py
浏览文件 @
dfb27303
...
@@ -4,16 +4,9 @@ Define abstract conv2d interface
...
@@ -4,16 +4,9 @@ Define abstract conv2d interface
import
logging
import
logging
import
theano
import
theano
from
theano.tensor
import
(
as_tensor_variable
,
patternbroadcast
)
from
theano.tensor
import
as_tensor_variable
from
theano.tensor
import
TensorType
from
theano.gof
import
Apply
,
Op
from
theano.gof
import
Apply
,
Op
from
theano.gof
import
local_optimizer
from
theano.tensor.opt
import
register_specialize_device
# Cpu implementation
from
theano.tensor.nnet
import
conv2d
as
cpu_conv2d
,
ConvOp
from
theano.tensor.nnet.ConvGrad3D
import
convGrad3D
from
theano.tensor.nnet.ConvTransp3D
import
convTransp3D
__docformat__
=
"restructuredtext en"
__docformat__
=
"restructuredtext en"
...
@@ -326,218 +319,3 @@ class AbstractConv2d_gradInputs(BaseAbstractConv2d):
...
@@ -326,218 +319,3 @@ class AbstractConv2d_gradInputs(BaseAbstractConv2d):
def
connection_pattern
(
self
,
node
):
def
connection_pattern
(
self
,
node
):
return
[[
1
],
[
1
],
[
0
]]
# no connection to height, width
return
[[
1
],
[
1
],
[
0
]]
# no connection to height, width
# Cpu Optmization
@local_optimizer
([
AbstractConv2d
])
def
local_conv2d_cpu
(
node
):
if
not
isinstance
(
node
.
op
,
AbstractConv2d
):
return
None
img
,
kern
=
node
.
inputs
if
((
not
isinstance
(
img
.
type
,
TensorType
)
or
not
isinstance
(
kern
.
type
,
TensorType
))):
return
None
if
node
.
op
.
border_mode
not
in
[
'full'
,
'valid'
]:
return
None
if
not
node
.
op
.
filter_flip
:
# Not tested yet
return
None
rval
=
cpu_conv2d
(
img
,
kern
,
node
.
op
.
imshp
,
node
.
op
.
kshp
,
border_mode
=
node
.
op
.
border_mode
,
subsample
=
node
.
op
.
subsample
)
return
[
rval
]
register_specialize_device
(
local_conv2d_cpu
,
'fast_compile'
)
@local_optimizer
([
AbstractConv2d_gradWeights
])
def
local_conv2d_gradweight_cpu
(
node
):
img
,
topgrad
,
shape
=
node
.
inputs
if
((
not
isinstance
(
img
.
type
,
TensorType
)
or
not
isinstance
(
topgrad
.
type
,
TensorType
))):
return
None
if
node
.
op
.
border_mode
not
in
[
'full'
,
'valid'
]:
return
None
if
not
node
.
op
.
filter_flip
:
# Not tested yet
return
if
node
.
op
.
border_mode
==
'valid'
and
\
(
node
.
op
.
subsample
!=
(
1
,
1
)):
# Use the gradient as defined in conv3D, because the implementation
# by Conv is slow (about 3x slower than conv3D, and probably 10x
# slower than it could be), nad incorrect when subsample > 2.
# build a "node", that should be equivalent to the one given by
# self.make_node, but using convGrad3D instead.
shuffled_img
=
img
.
dimshuffle
(
0
,
2
,
3
,
'x'
,
1
)
shuffled_topgrad
=
topgrad
.
dimshuffle
(
0
,
2
,
3
,
'x'
,
1
)
rval
=
convGrad3D
(
V
=
shuffled_img
,
d
=
(
node
.
op
.
subsample
[
0
],
node
.
op
.
subsample
[
1
],
1
),
WShape
=
(
shuffled_topgrad
.
shape
[
4
],
shape
[
0
],
shape
[
1
],
1
,
shuffled_img
.
shape
[
4
]),
dCdH
=
shuffled_topgrad
)
rval
=
theano
.
tensor
.
addbroadcast
(
rval
,
3
)
rval
=
rval
.
dimshuffle
(
0
,
4
,
1
,
2
)
rval
=
rval
[:,
:,
::
-
1
,
::
-
1
]
rval
=
patternbroadcast
(
rval
,
node
.
outputs
[
0
]
.
broadcastable
)
return
[
rval
]
dx
,
dy
=
node
.
op
.
subsample
if
dx
not
in
(
1
,
2
)
or
dy
not
in
(
1
,
2
):
# Not implemented in the gradient of ConvOp
return
None
if
node
.
op
.
imshp
is
None
:
op_imshp
=
(
None
,
None
,
None
,
None
)
else
:
op_imshp
=
node
.
op
.
imshp
if
node
.
op
.
kshp
is
None
:
op_kshp
=
(
None
,
None
,
None
,
None
)
else
:
op_kshp
=
node
.
op
.
kshp
if
None
in
op_imshp
or
None
in
op_kshp
:
if
(
dx
,
dy
)
!=
(
1
,
1
):
# We cannot infer the shapes
return
None
# Determine gradient on kernels
assert
len
(
op_imshp
)
==
4
and
len
(
op_kshp
)
==
4
outshp
=
ConvOp
.
getOutputShape
(
op_imshp
[
2
:],
op_kshp
[
2
:],
node
.
op
.
subsample
,
node
.
op
.
border_mode
)
fulloutshp
=
ConvOp
.
getOutputShape
(
op_imshp
[
2
:],
op_kshp
[
2
:],
(
1
,
1
),
node
.
op
.
border_mode
)
newimg
=
img
.
dimshuffle
((
1
,
0
,
2
,
3
))
newtopgrad
=
topgrad
.
dimshuffle
((
1
,
0
,
2
,
3
))
if
node
.
op
.
border_mode
==
'valid'
:
(
img
,
filters
)
=
(
newimg
,
newtopgrad
)
kshp_logical
=
fulloutshp
kshp_logical_top_aligned
=
False
imshp_logical
=
None
(
bsize
,
nkern
)
=
(
op_imshp
[
1
],
op_kshp
[
0
])
imshp
=
(
op_imshp
[
0
],
op_imshp
[
2
],
op_imshp
[
3
])
kshp
=
outshp
elif
node
.
op
.
border_mode
==
'full'
:
(
img
,
filters
)
=
(
newtopgrad
,
newimg
)
kshp_logical
=
None
kshp_logical_top_aligned
=
True
imshp_logical
=
(
op_imshp
[
0
],
fulloutshp
[
0
],
fulloutshp
[
1
])
(
bsize
,
nkern
)
=
(
op_kshp
[
0
],
op_imshp
[
1
])
imshp
=
(
op_imshp
[
0
],
outshp
[
0
],
outshp
[
1
])
kshp
=
op_imshp
[
2
:]
else
:
raise
NotImplementedError
(
'Only [full,valid] modes are currently supported.'
)
# Flip the kernels
filters
=
filters
[:,
:,
::
-
1
,
::
-
1
]
dw
=
ConvOp
(
imshp
,
kshp
,
nkern
,
bsize
,
1
,
1
,
output_mode
=
'valid'
,
unroll_batch
=
None
,
unroll_kern
=
None
,
unroll_patch
=
None
,
imshp_logical
=
imshp_logical
,
kshp_logical
=
kshp_logical
,
kshp_logical_top_aligned
=
kshp_logical_top_aligned
,
direction_hint
=
'bprop weights'
)
res
=
dw
(
img
,
filters
)
if
node
.
op
.
border_mode
==
'valid'
:
res
=
res
.
dimshuffle
((
1
,
0
,
2
,
3
))
res
=
res
[:,
:,
::
-
1
,
::
-
1
]
res
=
patternbroadcast
(
res
,
node
.
outputs
[
0
]
.
broadcastable
)
return
[
res
]
register_specialize_device
(
local_conv2d_gradweight_cpu
,
'fast_compile'
)
@local_optimizer
([
AbstractConv2d_gradInputs
])
def
local_conv2d_gradinputs_cpu
(
node
):
kern
,
topgrad
,
shape
=
node
.
inputs
if
((
not
isinstance
(
kern
.
type
,
TensorType
)
or
not
isinstance
(
topgrad
.
type
,
TensorType
))):
return
None
if
node
.
op
.
border_mode
not
in
[
'full'
,
'valid'
]:
return
None
if
not
node
.
op
.
filter_flip
:
# Not tested yet
return
None
# Conv 3d implementation, needed when subsample > 2
if
node
.
op
.
border_mode
==
'valid'
and
node
.
op
.
subsample
!=
(
1
,
1
):
kern
=
kern
[:,
:,
::
-
1
,
::
-
1
]
shuffled_kern
=
kern
.
dimshuffle
(
0
,
2
,
3
,
'x'
,
1
)
shuffled_topgrad
=
topgrad
.
dimshuffle
(
0
,
2
,
3
,
'x'
,
1
)
b
=
theano
.
tensor
.
zeros_like
(
shuffled_kern
[
0
,
0
,
0
,
0
,
:])
rval
=
convTransp3D
(
W
=
shuffled_kern
,
b
=
b
,
d
=
(
node
.
op
.
subsample
[
0
],
node
.
op
.
subsample
[
1
],
1
),
H
=
shuffled_topgrad
,
RShape
=
(
shape
[
0
],
shape
[
1
],
1
))
rval
=
theano
.
tensor
.
addbroadcast
(
rval
,
3
)
rval
=
rval
.
dimshuffle
(
0
,
4
,
1
,
2
)
rval
=
patternbroadcast
(
rval
,
node
.
outputs
[
0
]
.
broadcastable
)
return
[
rval
]
# Conv2d Implementation
dx
,
dy
=
node
.
op
.
subsample
if
dx
not
in
(
1
,
2
)
or
dy
not
in
(
1
,
2
):
# Not implemented in the gradient of ConvOp
return
None
if
node
.
op
.
imshp
is
None
:
op_imshp
=
(
None
,
None
,
None
,
None
)
else
:
op_imshp
=
node
.
op
.
imshp
if
node
.
op
.
kshp
is
None
:
op_kshp
=
(
None
,
None
,
None
,
None
)
else
:
op_kshp
=
node
.
op
.
kshp
if
None
in
op_imshp
or
None
in
op_kshp
:
if
(
dx
,
dy
)
!=
(
1
,
1
):
return
None
mode
=
'valid'
if
not
node
.
op
.
border_mode
==
'full'
:
mode
=
'full'
filters
=
kern
.
dimshuffle
((
1
,
0
,
2
,
3
))
filters
=
filters
[:,
:,
::
-
1
,
::
-
1
]
outshp
=
ConvOp
.
getOutputShape
(
op_imshp
[
2
:],
op_kshp
[
2
:],
node
.
op
.
subsample
,
node
.
op
.
border_mode
)
fulloutshp
=
ConvOp
.
getOutputShape
(
op_imshp
[
2
:],
op_kshp
[
2
:],
(
1
,
1
),
node
.
op
.
border_mode
)
nkern
=
op_imshp
[
1
]
imshp
=
(
op_kshp
[
0
],
outshp
[
0
],
outshp
[
1
])
imshp_logical
=
(
op_kshp
[
0
],
fulloutshp
[
0
],
fulloutshp
[
1
])
din
=
ConvOp
(
imshp
,
op_kshp
[
2
:],
nkern
,
op_imshp
[
0
],
1
,
1
,
output_mode
=
mode
,
unroll_batch
=
None
,
unroll_kern
=
None
,
unroll_patch
=
None
,
imshp_logical
=
imshp_logical
,
kshp_logical
=
None
,
version
=-
1
,
direction_hint
=
'bprop inputs'
)
din
=
din
(
topgrad
,
filters
)
din
=
patternbroadcast
(
din
,
node
.
outputs
[
0
]
.
broadcastable
)
return
[
din
]
register_specialize_device
(
local_conv2d_gradinputs_cpu
,
'fast_compile'
)
theano/tensor/nnet/opt.py
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