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pytensor
Commits
773058a5
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773058a5
authored
11月 19, 2013
作者:
Vincent Dumoulin
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Copy over cuda/tests/test_nnet.py to gpuarray/tests/test_nnet.py
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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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773058a5
from
nose.plugins.skip
import
SkipTest
import
numpy
import
theano
from
theano.gof.python25
import
any
import
theano.tensor
as
T
import
theano.tests.unittest_tools
as
utt
# Skip test if cuda_ndarray is not available.
import
theano.sandbox.cuda
as
cuda
if
cuda
.
cuda_available
==
False
:
raise
SkipTest
(
'Optional package cuda disabled'
)
if
theano
.
config
.
mode
==
'FAST_COMPILE'
:
mode_with_gpu
=
theano
.
compile
.
mode
.
get_mode
(
'FAST_RUN'
)
.
including
(
'gpu'
)
mode_without_gpu
=
theano
.
compile
.
mode
.
get_mode
(
'FAST_RUN'
)
.
excluding
(
'gpu'
)
else
:
mode_with_gpu
=
theano
.
compile
.
mode
.
get_default_mode
()
.
including
(
'gpu'
)
mode_without_gpu
=
theano
.
compile
.
mode
.
get_default_mode
()
.
excluding
(
'gpu'
)
def
test_GpuCrossentropySoftmaxArgmax1HotWithBias
():
"""
This is basic test for GpuCrossentropySoftmaxArgmax1HotWithBias
We check that we loop when their is too much threads
"""
n_in
=
1000
batch_size
=
4097
n_out
=
1250
if
not
isinstance
(
mode_with_gpu
,
theano
.
compile
.
DebugMode
):
n_in
=
4098
n_out
=
4099
x
=
T
.
fmatrix
(
'x'
)
y
=
T
.
lvector
(
'y'
)
b
=
T
.
fvector
(
'b'
)
#W = T.fmatrix('W')
#we precompute the dot with big shape before to allow the test of
#GpuCrossentropySoftmax1HotWithBiasDx to don't fail with the error
#(the launch timed out and was terminated) on GPU card not
#powerful enough. We need the big shape to check for corner
#case.
dot_result
=
T
.
fmatrix
(
'dot_result'
)
# Seed numpy.random with config.unittests.rseed
utt
.
seed_rng
()
xx
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
batch_size
,
n_in
),
dtype
=
numpy
.
float32
)
#?????yy = numpy.ones((batch_size,),dtype='float32')
yy
=
numpy
.
ones
((
batch_size
,),
dtype
=
'int32'
)
b_values
=
numpy
.
zeros
((
n_out
,),
dtype
=
'float32'
)
W_values
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
n_in
,
n_out
),
dtype
=
'float32'
)
dot_value
=
numpy
.
asarray
(
numpy
.
dot
(
xx
,
W_values
),
dtype
=
'float32'
)
del
W_values
p_y_given_x
=
T
.
nnet
.
softmax
(
dot_result
+
b
)
y_pred
=
T
.
argmax
(
p_y_given_x
,
axis
=-
1
)
loss
=
-
T
.
mean
(
T
.
log
(
p_y_given_x
)[
T
.
arange
(
y
.
shape
[
0
]),
y
])
dW
=
T
.
grad
(
loss
,
dot_result
)
classify
=
theano
.
function
(
inputs
=
[
y
,
b
,
dot_result
],
outputs
=
[
loss
,
y_pred
,
dW
],
mode
=
mode_without_gpu
)
classify_gpu
=
theano
.
function
(
inputs
=
[
y
,
b
,
dot_result
],
outputs
=
[
loss
,
y_pred
,
dW
],
mode
=
mode_with_gpu
)
#theano.printing.debugprint(classify)
#theano.printing.debugprint(classify_gpu)
assert
any
([
isinstance
(
node
.
op
,
T
.
nnet
.
CrossentropySoftmaxArgmax1HotWithBias
)
for
node
in
classify
.
maker
.
fgraph
.
toposort
()])
assert
any
([
isinstance
(
node
.
op
,
cuda
.
nnet
.
GpuCrossentropySoftmaxArgmax1HotWithBias
)
for
node
in
classify_gpu
.
maker
.
fgraph
.
toposort
()])
out
=
classify
(
yy
,
b_values
,
dot_value
)
gout
=
classify_gpu
(
yy
,
b_values
,
dot_value
)
assert
len
(
out
)
==
len
(
gout
)
==
3
assert
numpy
.
allclose
(
out
[
0
],
gout
[
0
])
assert
numpy
.
allclose
(
out
[
2
],
gout
[
2
],
atol
=
3e-6
),
numpy
.
absolute
(
gout
-
out
)
.
max
()
assert
numpy
.
allclose
(
out
[
1
],
gout
[
1
]),
[(
id
,
out
[
1
][
id
],
gout
[
1
][
id
],
val
)
for
id
,
val
in
enumerate
(
out
[
1
]
-
gout
[
1
])
if
val
!=
0
]
def
test_GpuCrossentropySoftmax1HotWithBiasDx
():
"""
This is basic test for GpuCrossentropySoftmax1HotWithBiasDx
We check that we loop when their is too much threads
"""
n_in
=
1000
batch_size
=
4097
n_out
=
1250
if
not
isinstance
(
mode_with_gpu
,
theano
.
compile
.
DebugMode
):
n_in
=
4098
n_out
=
4099
# Seed numpy.random with config.unittests.rseed
utt
.
seed_rng
()
softmax_output_value
=
numpy
.
random
.
rand
(
batch_size
,
n_out
)
.
astype
(
'float32'
)
dnll_value
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
batch_size
),
dtype
=
'float32'
)
y_idx_value
=
numpy
.
random
.
randint
(
low
=
0
,
high
=
5
,
size
=
batch_size
)
softmax_output
=
T
.
fmatrix
()
softmax_output
/=
softmax_output
.
sum
(
axis
=
1
)
.
reshape
(
softmax_output
.
shape
[
1
],
1
)
op
=
theano
.
tensor
.
nnet
.
crossentropy_softmax_1hot_with_bias_dx
(
dnll_value
,
softmax_output
,
y_idx_value
)
cpu_f
=
theano
.
function
([
softmax_output
],
op
,
mode
=
mode_without_gpu
)
gpu_f
=
theano
.
function
([
softmax_output
],
op
,
mode
=
mode_with_gpu
)
#theano.printing.debugprint(cpu_f)
#theano.printing.debugprint(gpu_f)
assert
any
([
isinstance
(
node
.
op
,
T
.
nnet
.
CrossentropySoftmax1HotWithBiasDx
)
for
node
in
cpu_f
.
maker
.
fgraph
.
toposort
()])
assert
any
([
isinstance
(
node
.
op
,
cuda
.
nnet
.
GpuCrossentropySoftmax1HotWithBiasDx
)
for
node
in
gpu_f
.
maker
.
fgraph
.
toposort
()])
cpu_out
=
cpu_f
(
softmax_output_value
)
gpu_out
=
gpu_f
(
softmax_output_value
)
rtol
=
1e-5
atol
=
1e-6
if
not
numpy
.
allclose
(
cpu_out
,
gpu_out
,
rtol
=
rtol
,
atol
=
atol
):
abs_err
,
rel_err
=
T
.
numeric_grad
.
abs_rel_err
(
cpu_out
,
gpu_out
)
scaled_err
=
numpy
.
minimum
(
abs_err
/
atol
,
rel_err
/
rtol
)
max_i
=
scaled_err
.
argmax
()
print
'max err index:'
,
max_i
,
max_i
/
batch_size
,
print
max_i
%
batch_size
,
max_i
/
n_out
,
max_i
&
n_out
print
'At that index:'
print
'err:'
,
scaled_err
.
flatten
()[
max_i
]
print
'absolute error:'
,
abs_err
.
flatten
()[
max_i
]
print
'relative error:'
,
rel_err
.
flatten
()[
max_i
]
print
'cpu_out:'
,
cpu_out
.
flatten
()[
max_i
]
print
'gpu_out:'
,
gpu_out
.
flatten
()[
max_i
]
print
'softmax_output_value:'
,
softmax_output_value
.
flatten
()[
max_i
]
print
'dnll_value:'
,
dnll_value
[
max_i
/
n_out
]
print
'y_idx_value:'
,
y_idx_value
[
max_i
/
n_out
]
assert
False
,
"numpy.allclose(cpu_out, gpu_out, rtol=
%
s, atol=
%
s)"
%
(
rtol
,
atol
)
def
test_softmax_with_bias
():
"""
This is basic test for GpuSoftmaxWithBias
We check that we loop when their is too much block
TODO: check that we loop when their is too much thread.(THIS IS
NOT IMPLEMENTED)
"""
x
=
T
.
fmatrix
(
'x'
)
# We can't use zeros_like(x[0,::]) as this don't allow to test with
# 0 shape.
z
=
T
.
nnet
.
softmax_with_bias
(
x
,
T
.
arange
(
x
.
shape
[
1
]
*
2
,
dtype
=
'float32'
)[::
2
])
f
=
theano
.
function
([
x
],
z
,
mode
=
mode_without_gpu
)
f_gpu
=
theano
.
function
([
x
],
z
,
mode
=
mode_with_gpu
)
assert
f
.
maker
.
fgraph
.
toposort
()[
-
1
]
.
op
==
T
.
nnet
.
softmax_with_bias
assert
isinstance
(
f_gpu
.
maker
.
fgraph
.
toposort
()[
-
2
]
.
op
,
cuda
.
nnet
.
GpuSoftmaxWithBias
)
def
cmp
(
n
,
m
):
#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
)
cmp
(
2
,
5
)
#we need to test n>32*1024 to check that we make the block loop.
cmp
(
2
<<
15
,
5
)
cmp
(
4074
,
400
)
cmp
(
0
,
10
)
cmp
(
784
,
784
)
cmp
(
4
,
1000
)
cmp
(
4
,
1024
)
cmp
(
4
,
2000
)
cmp
(
4
,
2024
)
#GTX285 don't have enough shared mem for this case.
cmp
(
4
,
4074
)
# The GTX580, 680 and kepler don't have enough shared memory.
cmp
(
2
,
10000
)
cmp
(
128
,
16
*
1024
)
cmp
(
128
,
64
*
1024
)
def
test_softmax
():
"""
This is basic test for GpuSoftmax
We check that we loop when their is too much block
We use slower code when there isn't enough shared memory
"""
x
=
T
.
fmatrix
(
'x'
)
z
=
T
.
nnet
.
softmax
(
x
)
f
=
theano
.
function
([
x
],
z
,
mode
=
mode_without_gpu
)
f_gpu
=
theano
.
function
([
x
],
z
,
mode
=
mode_with_gpu
)
assert
f
.
maker
.
fgraph
.
toposort
()[
-
1
]
.
op
==
T
.
nnet
.
softmax
assert
isinstance
(
f_gpu
.
maker
.
fgraph
.
toposort
()[
-
2
]
.
op
,
cuda
.
nnet
.
GpuSoftmax
)
def
cmp
(
n
,
m
):
#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
)
#we need to test n>32*1024 to check that we make the block loop.
cmp
(
2
,
5
)
cmp
(
2
<<
15
,
5
)
cmp
(
4074
,
400
)
cmp
(
0
,
10
)
cmp
(
784
,
784
)
cmp
(
4
,
1000
)
cmp
(
4
,
1024
)
cmp
(
4
,
2000
)
cmp
(
4
,
2024
)
# The GTX285 don't have enough shared memory.
cmp
(
4
,
4074
)
# The GTX580, 680 and kepler don't have enough shared memory.
cmp
(
2
,
10000
)
cmp
(
128
,
16
*
1024
)
cmp
(
128
,
64
*
1024
)
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