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pytensor
Commits
73efa875
提交
73efa875
authored
6月 29, 2015
作者:
Frederic
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Copy cudnn softmax test
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test_nnet.py
theano/sandbox/gpuarray/tests/test_nnet.py
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theano/sandbox/gpuarray/tests/test_nnet.py
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73efa875
...
@@ -290,3 +290,248 @@ def softmax_unittest_template(dtypeInput):
...
@@ -290,3 +290,248 @@ def softmax_unittest_template(dtypeInput):
cmp
(
2
,
10000
)
cmp
(
2
,
10000
)
cmp
(
128
,
16
*
1024
)
cmp
(
128
,
16
*
1024
)
cmp
(
128
,
64
*
1024
)
cmp
(
128
,
64
*
1024
)
class
test_SoftMax
(
unittest
.
TestCase
):
def
_test_softmax
(
self
,
x
,
x_gpu
,
f_z
,
f_gpu_z
,
cmp
,
gpu_mode
,
check_types
):
"""
This is basic test for GpuSoftmax and GpuDnnSoftmax
We check that we loop when there is too much block
We use slower code when there isn't enough shared memory
"""
f_z_out
=
f_z
(
x
)
f_gpu_z_out
=
f_gpu_z
(
x_gpu
)
f
=
theano
.
function
([
x
],
f_z_out
,
mode
=
mode_without_gpu
)
f_gpu
=
theano
.
function
([
x_gpu
],
f_gpu_z_out
,
mode
=
gpu_mode
)
check_types
(
f
,
f_gpu
)
# we need to test n>32*1024 to check that we make the block loop.
cmp
(
1
,
5
,
f
,
f_gpu
)
cmp
(
2
,
5
,
f
,
f_gpu
)
cmp
(
10
,
5
,
f
,
f_gpu
)
cmp
(
100
,
5
,
f
,
f_gpu
)
cmp
(
1000
,
5
,
f
,
f_gpu
)
cmp
(
10000
,
5
,
f
,
f_gpu
)
cmp
(
4074
,
400
,
f
,
f_gpu
)
cmp
(
784
,
784
,
f
,
f_gpu
)
cmp
(
4
,
1000
,
f
,
f_gpu
)
cmp
(
4
,
1024
,
f
,
f_gpu
)
cmp
(
4
,
2000
,
f
,
f_gpu
)
cmp
(
4
,
2024
,
f
,
f_gpu
)
# The GTX285 don't have enough shared memory.
cmp
(
4
,
4074
,
f
,
f_gpu
)
# The GTX580, 680 and kepler don't have enough shared memory.
cmp
(
2
,
10000
,
f
,
f_gpu
)
cmp
(
128
,
16
*
1024
,
f
,
f_gpu
)
cmp
(
128
,
64
*
1024
,
f
,
f_gpu
)
# cudnn permits no more than 2^15 - 1 rows
cmp
((
2
<<
15
)
-
1
,
5
,
f
,
f_gpu
)
cmp
(
5
,
2
<<
15
,
f
,
f_gpu
)
return
f
,
f_gpu
def
_cmp
(
self
,
n
,
m
,
f
,
f_gpu
):
# print "test_softmax",n,m
data
=
numpy
.
arange
(
n
*
m
,
dtype
=
'float32'
)
.
reshape
(
n
,
m
)
out
=
f
(
data
)
gout
=
f_gpu
(
data
)
assert
numpy
.
allclose
(
out
,
gout
),
numpy
.
absolute
(
out
-
gout
)
def
_check_types
(
self
,
graph
,
graph_gpu
,
topo_idx
,
f_type
,
f_gpu_type
):
assert
isinstance
(
graph
.
maker
.
fgraph
.
toposort
()[
-
1
]
.
op
,
f_type
)
assert
isinstance
(
graph_gpu
.
maker
.
fgraph
.
toposort
()[
topo_idx
]
.
op
,
f_gpu_type
)
def
test_softmax
(
self
):
x
=
T
.
fmatrix
(
'x'
)
z
=
T
.
nnet
.
softmax
def
check_types_without_cudnn
(
graph
,
graph_gpu
):
self
.
_check_types
(
graph
,
graph_gpu
,
-
2
,
type
(
z
),
cuda
.
nnet
.
GpuSoftmax
)
mode_wo_cudnn
=
mode_with_gpu
.
excluding
(
"cudnn"
)
f
,
f_gpu
=
self
.
_test_softmax
(
x
,
x
,
z
,
z
,
self
.
_cmp
,
mode_wo_cudnn
,
check_types_without_cudnn
)
# cuDNN R1 cannot handle these test cases but the Theano softmax can so
# we test them only for the Theano softmax.
self
.
_cmp
(
2
<<
15
,
5
,
f
,
f_gpu
)
self
.
_cmp
(
0
,
10
,
f
,
f_gpu
)
def
test_softmax_cudnn
(
self
):
if
not
cuda
.
dnn
.
dnn_available
():
raise
SkipTest
(
cuda
.
dnn
.
dnn_available
.
msg
)
x
=
T
.
fmatrix
(
'x'
)
z
=
T
.
nnet
.
softmax
def
check_types_with_cudnn
(
graph
,
graph_gpu
):
self
.
_check_types
(
graph
,
graph_gpu
,
-
3
,
type
(
z
),
theano
.
sandbox
.
cuda
.
dnn
.
GpuDnnSoftmax
)
f
,
f_gpu
=
self
.
_test_softmax
(
x
,
x
,
z
,
z
,
self
.
_cmp
,
mode_with_gpu
,
check_types_with_cudnn
)
def
test_cudnn_softmax_grad
(
self
):
if
not
cuda
.
dnn
.
dnn_available
():
raise
SkipTest
(
cuda
.
dnn
.
dnn_available
.
msg
)
def
cmp
(
n
,
m
,
f
,
f_gpu
):
data
=
numpy
.
arange
(
n
*
m
,
dtype
=
'float32'
)
.
reshape
(
n
,
m
)
gdata
=
numpy
.
asarray
(
data
)[:,
:,
None
,
None
]
out
=
f
(
data
)
gout
=
numpy
.
asarray
(
f_gpu
(
gdata
))[:,
:,
0
,
0
]
assert
numpy
.
allclose
(
out
,
gout
),
numpy
.
absolute
(
out
-
gout
)
x
=
T
.
matrix
(
'x'
,
'float32'
)
x_gpu
=
T
.
tensor4
(
'x_gpu'
,
'float32'
)
f_z
=
T
.
nnet
.
softmax
f_gpu
=
theano
.
sandbox
.
cuda
.
dnn
.
GpuDnnSoftmax
(
'bc01'
,
'accurate'
,
'channel'
)
# Verify the grad operation
dims
=
(
2
,
3
,
4
,
5
)
gdata
=
numpy
.
arange
(
numpy
.
product
(
dims
),
dtype
=
'float32'
)
.
reshape
(
dims
)
T
.
verify_grad
(
f_gpu
,
[
gdata
],
rng
=
numpy
.
random
,
mode
=
mode_with_gpu
)
def
check_types
(
graph
,
graph_gpu
):
self
.
_check_types
(
graph
,
graph_gpu
,
-
1
,
type
(
f_z
),
theano
.
sandbox
.
cuda
.
dnn
.
GpuDnnSoftmax
)
def
check_types_opt
(
graph
,
graph_gpu
):
assert
isinstance
(
graph
.
maker
.
fgraph
.
toposort
()[
-
1
]
.
op
,
type
(
f_z
))
assert
len
([
n
for
n
in
graph_gpu
.
maker
.
fgraph
.
toposort
()
if
isinstance
(
n
.
op
,
theano
.
sandbox
.
cuda
.
dnn
.
GpuDnnSoftmax
)])
==
1
# Verify that the CPU and GPU implementations return the same results
# up to a tolerance.
self
.
_test_softmax
(
x
,
x_gpu
,
f_z
,
f_gpu
,
cmp
,
mode_with_gpu
,
check_types
)
mode_w_cudnn
=
mode_with_gpu
.
including
(
"cudnn"
)
self
.
_test_softmax
(
x
,
x
,
f_z
,
f_z
,
self
.
_cmp
,
mode_w_cudnn
,
check_types_opt
)
# Verify that the SoftmaxGrad -> GpuDnnSoftmaxGrad optimization is
# applied when cudnn is required
y
=
T
.
fvector
(
'y'
)
f
=
theano
.
function
(
[
y
],
T
.
grad
(
T
.
nnet
.
softmax
(
y
)
.
mean
(),
y
),
mode
=
mode_with_gpu
)
sorted_f
=
f
.
maker
.
fgraph
.
toposort
()
assert
(
len
([
i
for
i
in
sorted_f
if
isinstance
(
i
.
op
,
theano
.
sandbox
.
cuda
.
dnn
.
GpuDnnSoftmaxGrad
)])
==
1
)
assert
(
len
([
i
for
i
in
sorted_f
if
isinstance
(
i
.
op
,
theano
.
tensor
.
nnet
.
SoftmaxGrad
)])
==
0
)
# Verify that the SoftmaxGrad -> GpuDnnSoftmaxGrad optimization is not
# applied when cudnn is excluded or not available
mode_wo_cudnn
=
mode_with_gpu
.
excluding
(
"cudnn"
)
y
=
T
.
fvector
(
'y'
)
f
=
theano
.
function
(
[
y
],
T
.
grad
(
T
.
nnet
.
softmax
(
y
)
.
mean
(),
y
),
mode
=
mode_wo_cudnn
)
sorted_f
=
f
.
maker
.
fgraph
.
toposort
()
assert
(
len
([
i
for
i
in
sorted_f
if
isinstance
(
i
.
op
,
theano
.
sandbox
.
cuda
.
dnn
.
GpuDnnSoftmaxGrad
)])
==
0
)
assert
(
len
([
i
for
i
in
sorted_f
if
isinstance
(
i
.
op
,
theano
.
tensor
.
nnet
.
SoftmaxGrad
)])
==
1
)
# Verify that the SoftmaxGrad -> GpuDnnSoftmaxGrad do not
# crash with manual graph
y
=
T
.
fvector
(
'y'
)
o
=
theano
.
tensor
.
nnet
.
SoftmaxGrad
()(
y
,
y
*
2
)
f
=
theano
.
function
([
y
],
o
,
mode
=
mode_with_gpu
)
sorted_f
=
f
.
maker
.
fgraph
.
toposort
()
assert
(
len
([
i
for
i
in
sorted_f
if
isinstance
(
i
.
op
,
theano
.
sandbox
.
cuda
.
dnn
.
GpuDnnSoftmaxGrad
)])
==
1
)
assert
(
len
([
i
for
i
in
sorted_f
if
isinstance
(
i
.
op
,
theano
.
tensor
.
nnet
.
SoftmaxGrad
)])
==
0
)
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