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testgroup
pytensor
Commits
b5a05a87
提交
b5a05a87
authored
6月 15, 2012
作者:
Frederic
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
pep8
上级
026e8116
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
55 行增加
和
36 行删除
+55
-36
test_elemwise.py
theano/tensor/tests/test_elemwise.py
+55
-36
没有找到文件。
theano/tensor/tests/test_elemwise.py
浏览文件 @
b5a05a87
import
cPickle
,
time
,
unittest
import
cPickle
from
itertools
import
imap
from
copy
import
copy
from
copy
import
copy
from
itertools
import
imap
import
time
import
unittest
import
numpy
import
numpy
from
numpy.testing
import
dec
from
numpy.testing
import
dec
...
@@ -12,7 +14,8 @@ from theano import gof, scalar, config
...
@@ -12,7 +14,8 @@ from theano import gof, scalar, config
from
theano
import
tensor
from
theano
import
tensor
from
theano.tensor
import
TensorType
from
theano.tensor
import
TensorType
from
theano.compile.mode
import
get_default_mode
from
theano.compile.mode
import
get_default_mode
from
theano.tensor.elemwise
import
CAReduce
,
Elemwise
,
DimShuffle
,
Prod
,
ProdWithoutZeros
from
theano.tensor.elemwise
import
(
CAReduce
,
Elemwise
,
DimShuffle
,
Prod
,
ProdWithoutZeros
)
from
theano.tests
import
unittest_tools
from
theano.tests
import
unittest_tools
...
@@ -20,6 +23,7 @@ def Env(i, o):
...
@@ -20,6 +23,7 @@ def Env(i, o):
e
=
gof
.
Env
(
i
,
o
)
e
=
gof
.
Env
(
i
,
o
)
return
e
return
e
class
test_DimShuffle
(
unittest
.
TestCase
):
class
test_DimShuffle
(
unittest
.
TestCase
):
def
with_linker
(
self
,
linker
):
def
with_linker
(
self
,
linker
):
...
@@ -27,11 +31,12 @@ class test_DimShuffle(unittest.TestCase):
...
@@ -27,11 +31,12 @@ class test_DimShuffle(unittest.TestCase):
((
1
,
2
,
3
),
(
1
,
2
),
(
2
,
3
)),
((
1
,
2
,
3
),
(
1
,
2
),
(
2
,
3
)),
((
1
,
2
,
1
,
3
),
(
1
,
3
),
(
2
,
3
)),
((
1
,
2
,
1
,
3
),
(
1
,
3
),
(
2
,
3
)),
((
2
,
3
,
4
),
(
2
,
1
,
0
),
(
4
,
3
,
2
)),
((
2
,
3
,
4
),
(
2
,
1
,
0
),
(
4
,
3
,
2
)),
((
2
,
3
,
4
),
(
'x'
,
2
,
1
,
0
,
'x'
),
(
1
,
4
,
3
,
2
,
1
)),
((
2
,
3
,
4
),
(
'x'
,
2
,
1
,
0
,
'x'
),
(
1
,
4
,
3
,
2
,
1
)),
((
1
,
4
,
3
,
2
,
1
),
(
3
,
2
,
1
),
(
2
,
3
,
4
)),
((
1
,
4
,
3
,
2
,
1
),
(
3
,
2
,
1
),
(
2
,
3
,
4
)),
((
1
,
1
,
4
),
(
1
,
2
),
(
1
,
4
)),
((
1
,
1
,
4
),
(
1
,
2
),
(
1
,
4
)),
((
1
,
1
,
1
),
(),
()),
((
1
,
1
,
1
),
(),
()),
((
1
,),
(
'x'
,
'x'
),
(
1
,
1
))
,
]:
((
1
,),
(
'x'
,
'x'
),
(
1
,
1
))]:
ib
=
[(
entry
==
1
)
for
entry
in
xsh
]
ib
=
[(
entry
==
1
)
for
entry
in
xsh
]
x
=
TensorType
(
'float64'
,
ib
)(
'x'
)
x
=
TensorType
(
'float64'
,
ib
)(
'x'
)
e
=
DimShuffle
(
ib
,
shuffle
)(
x
)
e
=
DimShuffle
(
ib
,
shuffle
)(
x
)
...
@@ -69,6 +74,7 @@ class test_DimShuffle(unittest.TestCase):
...
@@ -69,6 +74,7 @@ class test_DimShuffle(unittest.TestCase):
# But This will test DimShuffle c code
# But This will test DimShuffle c code
self
.
with_linker
(
gof
.
OpWiseCLinker
())
self
.
with_linker
(
gof
.
OpWiseCLinker
())
class
test_Broadcast
(
unittest
.
TestCase
):
class
test_Broadcast
(
unittest
.
TestCase
):
def
setUp
(
self
):
def
setUp
(
self
):
unittest_tools
.
seed_rng
()
unittest_tools
.
seed_rng
()
...
@@ -95,12 +101,12 @@ class test_Broadcast(unittest.TestCase):
...
@@ -95,12 +101,12 @@ class test_Broadcast(unittest.TestCase):
#test Elemwise.infer_shape
#test Elemwise.infer_shape
#the Shape op don't implement c_code!
#the Shape op don't implement c_code!
if
isinstance
(
linker
,
gof
.
PerformLinker
):
if
isinstance
(
linker
,
gof
.
PerformLinker
):
x
=
TensorType
(
'float64'
,
[(
entry
==
1
)
for
entry
in
xsh
])(
'x'
)
x
=
TensorType
(
'float64'
,
[(
entry
==
1
)
for
entry
in
xsh
])(
'x'
)
y
=
TensorType
(
'float64'
,
[(
entry
==
1
)
for
entry
in
ysh
])(
'y'
)
y
=
TensorType
(
'float64'
,
[(
entry
==
1
)
for
entry
in
ysh
])(
'y'
)
e
=
Elemwise
(
scalar
.
add
)(
x
,
y
)
e
=
Elemwise
(
scalar
.
add
)(
x
,
y
)
f
=
copy
(
linker
)
.
accept
(
Env
([
x
,
y
],
[
e
.
shape
]))
.
make_function
()
f
=
copy
(
linker
)
.
accept
(
Env
([
x
,
y
],
[
e
.
shape
]))
.
make_function
()
assert
tuple
(
f
(
xv
,
yv
))
==
tuple
(
zv
.
shape
)
assert
tuple
(
f
(
xv
,
yv
))
==
tuple
(
zv
.
shape
)
def
with_linker_inplace
(
self
,
linker
):
def
with_linker_inplace
(
self
,
linker
):
for
xsh
,
ysh
in
[((
5
,
5
),
(
5
,
5
)),
for
xsh
,
ysh
in
[((
5
,
5
),
(
5
,
5
)),
...
@@ -113,7 +119,7 @@ class test_Broadcast(unittest.TestCase):
...
@@ -113,7 +119,7 @@ class test_Broadcast(unittest.TestCase):
((),
())]:
((),
())]:
x
=
TensorType
(
'float64'
,
[(
entry
==
1
)
for
entry
in
xsh
])(
'x'
)
x
=
TensorType
(
'float64'
,
[(
entry
==
1
)
for
entry
in
xsh
])(
'x'
)
y
=
TensorType
(
'float64'
,
[(
entry
==
1
)
for
entry
in
ysh
])(
'y'
)
y
=
TensorType
(
'float64'
,
[(
entry
==
1
)
for
entry
in
ysh
])(
'y'
)
e
=
Elemwise
(
scalar
.
Add
(
scalar
.
transfer_type
(
0
)),
{
0
:
0
})(
x
,
y
)
e
=
Elemwise
(
scalar
.
Add
(
scalar
.
transfer_type
(
0
)),
{
0
:
0
})(
x
,
y
)
f
=
copy
(
linker
)
.
accept
(
Env
([
x
,
y
],
[
e
]))
.
make_function
()
f
=
copy
(
linker
)
.
accept
(
Env
([
x
,
y
],
[
e
]))
.
make_function
()
xv
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
*
xsh
))
xv
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
*
xsh
))
yv
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
*
ysh
))
yv
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
*
ysh
))
...
@@ -124,10 +130,10 @@ class test_Broadcast(unittest.TestCase):
...
@@ -124,10 +130,10 @@ class test_Broadcast(unittest.TestCase):
self
.
assertTrue
((
xv
==
zv
)
.
all
())
self
.
assertTrue
((
xv
==
zv
)
.
all
())
#test Elemwise.infer_shape
#test Elemwise.infer_shape
#the Shape op don't implement c_code!
#the Shape op don't implement c_code!
if
isinstance
(
linker
,
gof
.
PerformLinker
):
if
isinstance
(
linker
,
gof
.
PerformLinker
):
x
=
TensorType
(
'float64'
,
[(
entry
==
1
)
for
entry
in
xsh
])(
'x'
)
x
=
TensorType
(
'float64'
,
[(
entry
==
1
)
for
entry
in
xsh
])(
'x'
)
y
=
TensorType
(
'float64'
,
[(
entry
==
1
)
for
entry
in
ysh
])(
'y'
)
y
=
TensorType
(
'float64'
,
[(
entry
==
1
)
for
entry
in
ysh
])(
'y'
)
e
=
Elemwise
(
scalar
.
Add
(
scalar
.
transfer_type
(
0
)),
{
0
:
0
})(
x
,
y
)
e
=
Elemwise
(
scalar
.
Add
(
scalar
.
transfer_type
(
0
)),
{
0
:
0
})(
x
,
y
)
f
=
copy
(
linker
)
.
accept
(
Env
([
x
,
y
],
[
e
.
shape
]))
.
make_function
()
f
=
copy
(
linker
)
.
accept
(
Env
([
x
,
y
],
[
e
.
shape
]))
.
make_function
()
xv
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
*
xsh
))
xv
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
*
xsh
))
yv
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
*
ysh
))
yv
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
*
ysh
))
...
@@ -135,7 +141,7 @@ class test_Broadcast(unittest.TestCase):
...
@@ -135,7 +141,7 @@ class test_Broadcast(unittest.TestCase):
f
(
xv
,
yv
)
f
(
xv
,
yv
)
assert
xv
.
shape
==
zv
.
shape
assert
xv
.
shape
==
zv
.
shape
def
test_perform
(
self
):
def
test_perform
(
self
):
self
.
with_linker
(
gof
.
PerformLinker
())
self
.
with_linker
(
gof
.
PerformLinker
())
...
@@ -152,7 +158,7 @@ class test_Broadcast(unittest.TestCase):
...
@@ -152,7 +158,7 @@ class test_Broadcast(unittest.TestCase):
def
test_fill
(
self
):
def
test_fill
(
self
):
x
=
TensorType
(
'float64'
,
[
0
,
0
])(
'x'
)
x
=
TensorType
(
'float64'
,
[
0
,
0
])(
'x'
)
y
=
TensorType
(
'float64'
,
[
1
,
1
])(
'y'
)
y
=
TensorType
(
'float64'
,
[
1
,
1
])(
'y'
)
e
=
Elemwise
(
scalar
.
Second
(
scalar
.
transfer_type
(
0
)),
{
0
:
0
})(
x
,
y
)
e
=
Elemwise
(
scalar
.
Second
(
scalar
.
transfer_type
(
0
)),
{
0
:
0
})(
x
,
y
)
f
=
gof
.
CLinker
()
.
accept
(
Env
([
x
,
y
],
[
e
]))
.
make_function
()
f
=
gof
.
CLinker
()
.
accept
(
Env
([
x
,
y
],
[
e
]))
.
make_function
()
xv
=
numpy
.
ones
((
5
,
5
))
xv
=
numpy
.
ones
((
5
,
5
))
yv
=
numpy
.
random
.
rand
(
1
,
1
)
yv
=
numpy
.
random
.
rand
(
1
,
1
)
...
@@ -203,21 +209,23 @@ class test_CAReduce(unittest.TestCase):
...
@@ -203,21 +209,23 @@ class test_CAReduce(unittest.TestCase):
dtype
=
theano
.
config
.
floatX
dtype
=
theano
.
config
.
floatX
x
=
TensorType
(
dtype
,
[(
entry
==
1
)
for
entry
in
xsh
])(
'x'
)
x
=
TensorType
(
dtype
,
[(
entry
==
1
)
for
entry
in
xsh
])(
'x'
)
if
tensor_op
is
None
:
if
tensor_op
is
None
:
e
=
CAReduce
(
scalar_op
,
axis
=
tosum
)(
x
)
e
=
CAReduce
(
scalar_op
,
axis
=
tosum
)(
x
)
else
:
else
:
e
=
tensor_op
(
x
,
axis
=
tosum
)
e
=
tensor_op
(
x
,
axis
=
tosum
)
if
tosum
is
None
:
tosum
=
range
(
len
(
xsh
))
if
tosum
is
None
:
tosum
=
range
(
len
(
xsh
))
f
=
copy
(
linker
)
.
accept
(
Env
([
x
],
[
e
]))
.
make_function
()
f
=
copy
(
linker
)
.
accept
(
Env
([
x
],
[
e
]))
.
make_function
()
xv
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
*
xsh
))
xv
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
*
xsh
))
if
not
"int"
in
dtype
:
if
not
"int"
in
dtype
:
xv
=
numpy
.
asarray
(
xv
,
dtype
=
dtype
)
xv
=
numpy
.
asarray
(
xv
,
dtype
=
dtype
)
else
:
else
:
xv
=
numpy
.
asarray
(
xv
<
0.5
,
dtype
=
dtype
)
xv
=
numpy
.
asarray
(
xv
<
0.5
,
dtype
=
dtype
)
if
test_nan
and
xv
.
size
>
0
:
if
test_nan
and
xv
.
size
>
0
:
if
len
(
xsh
)
>
0
:
if
len
(
xsh
)
>
0
:
xv
=
xv
.
flatten
()
xv
=
xv
.
flatten
()
xv
[
0
]
=
numpy
.
nan
xv
[
0
]
=
numpy
.
nan
xv
=
xv
.
reshape
(
*
xsh
)
xv
=
xv
.
reshape
(
*
xsh
)
...
@@ -225,13 +233,16 @@ class test_CAReduce(unittest.TestCase):
...
@@ -225,13 +233,16 @@ class test_CAReduce(unittest.TestCase):
xv
=
numpy
.
asarray
(
numpy
.
nan
,
dtype
=
dtype
)
xv
=
numpy
.
asarray
(
numpy
.
nan
,
dtype
=
dtype
)
zv
=
xv
zv
=
xv
numpy_raised
=
False
numpy_raised
=
False
if
len
(
tosum
)
>
1
and
any
([
a
<
0
for
a
in
tosum
]):
if
len
(
tosum
)
>
1
and
any
([
a
<
0
for
a
in
tosum
]):
#In that case, we need to use the good order of axis in the reduction.
#In that case, we need to use the good order of axis
#in the reduction.
axis2
=
[]
axis2
=
[]
for
a
in
tosum
:
for
a
in
tosum
:
if
a
<
0
:
axis2
.
append
(
a
+
len
(
xsh
))
if
a
<
0
:
else
:
axis2
.
append
(
a
)
axis2
.
append
(
a
+
len
(
xsh
))
assert
len
(
axis2
)
==
len
(
tosum
)
else
:
axis2
.
append
(
a
)
assert
len
(
axis2
)
==
len
(
tosum
)
tosum
=
tuple
(
axis2
)
tosum
=
tuple
(
axis2
)
if
tensor_op
==
tensor
.
all
:
if
tensor_op
==
tensor
.
all
:
for
axis
in
reversed
(
sorted
(
tosum
)):
for
axis
in
reversed
(
sorted
(
tosum
)):
...
@@ -254,13 +265,13 @@ class test_CAReduce(unittest.TestCase):
...
@@ -254,13 +265,13 @@ class test_CAReduce(unittest.TestCase):
for
axis
in
reversed
(
sorted
(
tosum
)):
for
axis
in
reversed
(
sorted
(
tosum
)):
zv
=
numpy
.
maximum
.
reduce
(
zv
,
axis
)
zv
=
numpy
.
maximum
.
reduce
(
zv
,
axis
)
except
ValueError
:
except
ValueError
:
numpy_raised
=
True
numpy_raised
=
True
elif
scalar_op
==
scalar
.
minimum
:
elif
scalar_op
==
scalar
.
minimum
:
try
:
try
:
for
axis
in
reversed
(
sorted
(
tosum
)):
for
axis
in
reversed
(
sorted
(
tosum
)):
zv
=
numpy
.
minimum
.
reduce
(
zv
,
axis
)
zv
=
numpy
.
minimum
.
reduce
(
zv
,
axis
)
except
ValueError
:
except
ValueError
:
numpy_raised
=
True
numpy_raised
=
True
elif
scalar_op
==
scalar
.
or_
:
elif
scalar_op
==
scalar
.
or_
:
for
axis
in
reversed
(
sorted
(
tosum
)):
for
axis
in
reversed
(
sorted
(
tosum
)):
zv
=
numpy
.
bitwise_or
.
reduce
(
zv
,
axis
)
zv
=
numpy
.
bitwise_or
.
reduce
(
zv
,
axis
)
...
@@ -270,13 +281,15 @@ class test_CAReduce(unittest.TestCase):
...
@@ -270,13 +281,15 @@ class test_CAReduce(unittest.TestCase):
elif
scalar_op
==
scalar
.
xor
:
elif
scalar_op
==
scalar
.
xor
:
# There is no identity value for the xor function
# There is no identity value for the xor function
# So we can't support shape of dimensions 0.
# So we can't support shape of dimensions 0.
if
numpy
.
prod
(
zv
.
shape
)
==
0
:
if
numpy
.
prod
(
zv
.
shape
)
==
0
:
continue
continue
for
axis
in
reversed
(
sorted
(
tosum
)):
for
axis
in
reversed
(
sorted
(
tosum
)):
zv
=
numpy
.
bitwise_xor
.
reduce
(
zv
,
axis
)
zv
=
numpy
.
bitwise_xor
.
reduce
(
zv
,
axis
)
else
:
else
:
raise
Exception
(
"Test for CAReduce with scalar_op
%
s not implemented"
%
str
(
scalar_op
))
raise
Exception
(
if
scalar_op
in
[
scalar
.
maximum
,
scalar
.
minimum
]
and
numpy_raised
:
"Test for CAReduce with scalar_op
%
s not implemented"
%
str
(
scalar_op
))
if
scalar_op
in
[
scalar
.
maximum
,
scalar
.
minimum
]
and
numpy_raised
:
try
:
try
:
out
=
f
(
xv
)
out
=
f
(
xv
)
assert
out
.
dtype
==
dtype
assert
out
.
dtype
==
dtype
...
@@ -289,22 +302,25 @@ class test_CAReduce(unittest.TestCase):
...
@@ -289,22 +302,25 @@ class test_CAReduce(unittest.TestCase):
if
scalar_op
in
[
scalar
.
and_
,
scalar
.
or_
]:
if
scalar_op
in
[
scalar
.
and_
,
scalar
.
or_
]:
zv
=
numpy
.
asarray
(
zv
,
dtype
=
dtype
)
zv
=
numpy
.
asarray
(
zv
,
dtype
=
dtype
)
if
test_nan
:
if
test_nan
:
self
.
assertTrue
(
theano
.
tensor
.
TensorType
.
values_eq
(
f
(
xv
),
zv
),
(
f
(
xv
),
zv
))
self
.
assertTrue
(
theano
.
tensor
.
TensorType
.
values_eq
(
f
(
xv
),
zv
),
(
f
(
xv
),
zv
))
else
:
else
:
self
.
assertTrue
(
numpy
.
allclose
(
f
(
xv
),
zv
),
(
f
(
xv
),
zv
))
self
.
assertTrue
(
numpy
.
allclose
(
f
(
xv
),
zv
),
(
f
(
xv
),
zv
))
#test CAReduce.infer_shape
#test CAReduce.infer_shape
#the Shape op don't implement c_code!
#the Shape op don't implement c_code!
if
isinstance
(
linker
,
gof
.
PerformLinker
):
if
isinstance
(
linker
,
gof
.
PerformLinker
):
x
=
TensorType
(
dtype
,
[(
entry
==
1
)
for
entry
in
xsh
])(
'x'
)
x
=
TensorType
(
dtype
,
[(
entry
==
1
)
for
entry
in
xsh
])(
'x'
)
if
tensor_op
is
None
:
if
tensor_op
is
None
:
e
=
CAReduce
(
scalar_op
,
axis
=
tosum
)(
x
)
e
=
CAReduce
(
scalar_op
,
axis
=
tosum
)(
x
)
else
:
else
:
e
=
tensor_op
(
x
,
axis
=
tosum
)
e
=
tensor_op
(
x
,
axis
=
tosum
)
if
tosum
is
None
:
tosum
=
range
(
len
(
xsh
))
if
tosum
is
None
:
tosum
=
range
(
len
(
xsh
))
f
=
copy
(
linker
)
.
accept
(
Env
([
x
],
[
e
.
shape
]))
.
make_function
()
f
=
copy
(
linker
)
.
accept
(
Env
([
x
],
[
e
.
shape
]))
.
make_function
()
if
not
(
scalar_op
in
[
scalar
.
maximum
,
scalar
.
minimum
]
and
((
xsh
==
()
or
numpy
.
prod
(
xsh
)
==
0
))):
if
not
(
scalar_op
in
[
scalar
.
maximum
,
scalar
.
minimum
]
and
((
xsh
==
()
or
numpy
.
prod
(
xsh
)
==
0
))):
assert
all
(
f
(
xv
)
==
zv
.
shape
)
assert
all
(
f
(
xv
)
==
zv
.
shape
)
def
test_perform
(
self
):
def
test_perform
(
self
):
...
@@ -324,7 +340,8 @@ class test_CAReduce(unittest.TestCase):
...
@@ -324,7 +340,8 @@ class test_CAReduce(unittest.TestCase):
@dec.knownfailureif
(
@dec.knownfailureif
(
True
,
True
,
(
"When there is nan in the input of CAReduce, we don't have a good output. "
))
(
"When there is nan in the input of CAReduce,"
" we don't have a good output. "
))
def
test_perform_nan
(
self
):
def
test_perform_nan
(
self
):
for
dtype
in
[
"floatX"
,
"complex64"
,
"complex128"
]:
for
dtype
in
[
"floatX"
,
"complex64"
,
"complex128"
]:
self
.
with_linker
(
gof
.
PerformLinker
(),
scalar
.
add
,
dtype
=
dtype
,
self
.
with_linker
(
gof
.
PerformLinker
(),
scalar
.
add
,
dtype
=
dtype
,
...
@@ -362,7 +379,8 @@ class test_CAReduce(unittest.TestCase):
...
@@ -362,7 +379,8 @@ class test_CAReduce(unittest.TestCase):
@dec.knownfailureif
(
@dec.knownfailureif
(
True
,
True
,
(
"When there is nan in the input of CAReduce, we don't have a good output. "
))
(
"When there is nan in the input of CAReduce,"
" we don't have a good output. "
))
def
test_c_nan
(
self
):
def
test_c_nan
(
self
):
for
dtype
in
[
"floatX"
,
"complex64"
,
"complex128"
]:
for
dtype
in
[
"floatX"
,
"complex64"
,
"complex128"
]:
self
.
with_linker
(
gof
.
CLinker
(),
scalar
.
add
,
dtype
=
dtype
,
self
.
with_linker
(
gof
.
CLinker
(),
scalar
.
add
,
dtype
=
dtype
,
...
@@ -380,7 +398,8 @@ class test_Prod(unittest.TestCase):
...
@@ -380,7 +398,8 @@ class test_Prod(unittest.TestCase):
def
setUp
(
self
):
def
setUp
(
self
):
unittest_tools
.
seed_rng
()
unittest_tools
.
seed_rng
()
# we want to allow nans in the matrices, so we disable this DEBUG_MODE check
# we want to allow nans in the matrices, so we disable this
# DEBUG_MODE check
mode
=
theano
.
compile
.
mode
.
get_default_mode
()
mode
=
theano
.
compile
.
mode
.
get_default_mode
()
mode
=
copy
(
mode
)
mode
=
copy
(
mode
)
mode
.
check_isfinite
=
False
mode
.
check_isfinite
=
False
...
...
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