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testgroup
pytensor
Commits
3626d6d5
提交
3626d6d5
authored
1月 11, 2015
作者:
ChienliMa
浏览文件
操作
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电子邮件补丁
差异文件
skip step test if version of Scipy <0.14.0
上级
1adc58cb
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
117 行增加
和
76 行删除
+117
-76
test_basic.py
theano/sparse/tests/test_basic.py
+117
-76
没有找到文件。
theano/sparse/tests/test_basic.py
浏览文件 @
3626d6d5
...
@@ -2105,6 +2105,8 @@ class Test_getitem(unittest.TestCase):
...
@@ -2105,6 +2105,8 @@ class Test_getitem(unittest.TestCase):
def
test_GetItem2D
(
self
):
def
test_GetItem2D
(
self
):
sparse_formats
=
(
'csc'
,
'csr'
)
sparse_formats
=
(
'csc'
,
'csr'
)
scipy_ver
=
[
int
(
n
)
for
n
in
scipy
.
__version__
.
split
(
'.'
)[:
2
]]
is_supported_version
=
bool
(
scipy_ver
>=
[
0
,
14
])
for
format
in
sparse_formats
:
for
format
in
sparse_formats
:
x
=
theano
.
sparse
.
matrix
(
format
,
name
=
'x'
)
x
=
theano
.
sparse
.
matrix
(
format
,
name
=
'x'
)
a
=
theano
.
tensor
.
iscalar
(
'a'
)
a
=
theano
.
tensor
.
iscalar
(
'a'
)
...
@@ -2123,75 +2125,111 @@ class Test_getitem(unittest.TestCase):
...
@@ -2123,75 +2125,111 @@ class Test_getitem(unittest.TestCase):
k
=
3
k
=
3
vx
=
as_sparse_format
(
self
.
rng
.
binomial
(
1
,
0.5
,
(
100
,
97
)),
vx
=
as_sparse_format
(
self
.
rng
.
binomial
(
1
,
0.5
,
(
100
,
97
)),
format
)
.
astype
(
theano
.
config
.
floatX
)
format
)
.
astype
(
theano
.
config
.
floatX
)
#mode_no_debug = theano.compile.mode.get_default_mode()
#if isinstance(mode_no_debug, theano.compile.DebugMode):
if
is_supported_version
:
# mode_no_debug = 'FAST_RUN'
#mode_no_debug = theano.compile.mode.get_default_mode()
f1
=
theano
.
function
([
x
,
a
,
b
,
c
,
d
,
e
,
f
],
x
[
a
:
b
:
e
,
c
:
d
:
f
])
#if isinstance(mode_no_debug, theano.compile.DebugMode):
r1
=
f1
(
vx
,
m
,
n
,
p
,
q
,
j
,
k
)
# mode_no_debug = 'FAST_RUN'
t1
=
vx
[
m
:
n
:
j
,
p
:
q
:
k
]
f1
=
theano
.
function
([
x
,
a
,
b
,
c
,
d
,
e
,
f
],
x
[
a
:
b
:
e
,
c
:
d
:
f
])
assert
r1
.
shape
==
t1
.
shape
r1
=
f1
(
vx
,
m
,
n
,
p
,
q
,
j
,
k
)
assert
numpy
.
all
(
t1
.
toarray
()
==
r1
.
toarray
())
t1
=
vx
[
m
:
n
:
j
,
p
:
q
:
k
]
assert
r1
.
shape
==
t1
.
shape
"""
assert
numpy
.
all
(
t1
.
toarray
()
==
r1
.
toarray
())
Important: based on a discussion with both Fred and James
The following indexing methods is not supported because the rval
"""
would be a sparse matrix rather than a sparse vector, which is a
Important: based on a discussion with both Fred and James
deviation from numpy indexing rule. This decision is made largely
The following indexing methods is not supported because the rval
for keeping the consistency between numpy and theano.
would be a sparse matrix rather than a sparse vector, which is a
deviation from numpy indexing rule. This decision is made largely
f2 = theano.function([x, a, b, c], x[a:b, c])
for keeping the consistency between numpy and theano.
r2 = f2(vx, m, n, p)
t2 = vx[m:n, p]
f2 = theano.function([x, a, b, c], x[a:b, c])
assert r2.shape == t2.shape
r2 = f2(vx, m, n, p)
assert numpy.all(t2.toarray() == r2.toarray())
t2 = vx[m:n, p]
assert r2.shape == t2.shape
f3 = theano.function([x, a, b, c], x[a, b:c])
assert numpy.all(t2.toarray() == r2.toarray())
r3 = f3(vx, m, n, p)
t3 = vx[m, n:p]
f3 = theano.function([x, a, b, c], x[a, b:c])
assert r3.shape == t3.shape
r3 = f3(vx, m, n, p)
assert numpy.all(t3.toarray() == r3.toarray())
t3 = vx[m, n:p]
assert r3.shape == t3.shape
f5 = theano.function([x], x[1:2,3])
assert numpy.all(t3.toarray() == r3.toarray())
r5 = f5(vx)
t5 = vx[1:2, 3]
f5 = theano.function([x], x[1:2,3])
assert r5.shape == t5.shape
r5 = f5(vx)
assert numpy.all(r5.toarray() == t5.toarray())
t5 = vx[1:2, 3]
assert r5.shape == t5.shape
f7 = theano.function([x], x[50])
assert numpy.all(r5.toarray() == t5.toarray())
r7 = f7(vx)
t7 = vx[50]
f7 = theano.function([x], x[50])
assert r7.shape == t7.shape
r7 = f7(vx)
assert numpy.all(r7.toarray() == t7.toarray())
t7 = vx[50]
"""
assert r7.shape == t7.shape
assert numpy.all(r7.toarray() == t7.toarray())
f4
=
theano
.
function
([
x
,
a
,
b
,
e
],
x
[
a
:
b
:
e
])
"""
r4
=
f4
(
vx
,
m
,
n
,
j
)
t4
=
vx
[
m
:
n
:
j
]
f4
=
theano
.
function
([
x
,
a
,
b
,
e
],
x
[
a
:
b
:
e
])
assert
r4
.
shape
==
t4
.
shape
r4
=
f4
(
vx
,
m
,
n
,
j
)
assert
numpy
.
all
(
t4
.
toarray
()
==
r4
.
toarray
())
t4
=
vx
[
m
:
n
:
j
]
#-----------------------------------------------------------
assert
r4
.
shape
==
t4
.
shape
# test cases using int indexing instead of theano variable
assert
numpy
.
all
(
t4
.
toarray
()
==
r4
.
toarray
())
#-----------------------------------------------------------
f6
=
theano
.
function
([
x
],
x
[
1
:
10
:
1
,
10
:
20
:
2
])
# test cases using int indexing instead of theano variable
r6
=
f6
(
vx
)
t6
=
vx
[
1
:
10
:
1
,
10
:
20
:
2
]
f6
=
theano
.
function
([
x
],
x
[
1
:
10
:
1
,
10
:
20
:
2
])
assert
r6
.
shape
==
t6
.
shape
r6
=
f6
(
vx
)
assert
numpy
.
all
(
r6
.
toarray
()
==
t6
.
toarray
())
t6
=
vx
[
1
:
10
:
1
,
10
:
20
:
2
]
assert
r6
.
shape
==
t6
.
shape
#----------------------------------------------------------
assert
numpy
.
all
(
r6
.
toarray
()
==
t6
.
toarray
())
# test cases with indexing both with theano variable and int
f8
=
theano
.
function
([
x
,
a
,
b
,
e
],
x
[
a
:
b
:
e
,
10
:
20
:
1
])
#----------------------------------------------------------
r8
=
f8
(
vx
,
m
,
n
,
j
)
# test cases with indexing both with theano variable and int
t8
=
vx
[
m
:
n
:
j
,
10
:
20
:
1
]
f8
=
theano
.
function
([
x
,
a
,
b
,
e
],
x
[
a
:
b
:
e
,
10
:
20
:
1
])
assert
r8
.
shape
==
t8
.
shape
r8
=
f8
(
vx
,
m
,
n
,
j
)
assert
numpy
.
all
(
r8
.
toarray
()
==
t8
.
toarray
())
t8
=
vx
[
m
:
n
:
j
,
10
:
20
:
1
]
assert
r8
.
shape
==
t8
.
shape
f9
=
theano
.
function
([
x
,
a
,
b
],
x
[
1
:
a
:
2
,
1
:
b
:
2
])
assert
numpy
.
all
(
r8
.
toarray
()
==
t8
.
toarray
())
r9
=
f9
(
vx
,
p
,
q
)
t9
=
vx
[
1
:
p
:
2
,
1
:
q
:
2
]
f9
=
theano
.
function
([
x
,
a
,
b
],
x
[
1
:
a
:
2
,
1
:
b
:
2
])
assert
r9
.
shape
==
t9
.
shape
r9
=
f9
(
vx
,
p
,
q
)
assert
numpy
.
all
(
r9
.
toarray
()
==
t9
.
toarray
())
t9
=
vx
[
1
:
p
:
2
,
1
:
q
:
2
]
assert
r9
.
shape
==
t9
.
shape
assert
numpy
.
all
(
r9
.
toarray
()
==
t9
.
toarray
())
else
:
f1
=
theano
.
function
([
x
,
a
,
b
,
c
,
d
],
x
[
a
:
b
,
c
:
d
])
r1
=
f1
(
vx
,
m
,
n
,
p
,
q
)
t1
=
vx
[
m
:
n
,
p
:
q
]
assert
r1
.
shape
==
t1
.
shape
assert
numpy
.
all
(
t1
.
toarray
()
==
r1
.
toarray
())
f4
=
theano
.
function
([
x
,
a
,
b
],
x
[
a
:
b
])
r4
=
f4
(
vx
,
m
,
n
)
t4
=
vx
[
m
:
n
]
assert
r4
.
shape
==
t4
.
shape
assert
numpy
.
all
(
t4
.
toarray
()
==
r4
.
toarray
())
#-----------------------------------------------------------
# test cases using int indexing instead of theano variable
f6
=
theano
.
function
([
x
],
x
[
1
:
10
,
10
:
20
])
r6
=
f6
(
vx
)
t6
=
vx
[
1
:
10
,
10
:
20
]
assert
r6
.
shape
==
t6
.
shape
assert
numpy
.
all
(
r6
.
toarray
()
==
t6
.
toarray
())
#----------------------------------------------------------
# test cases with indexing both with theano variable and int
f8
=
theano
.
function
([
x
,
a
,
b
,
e
],
x
[
a
:
b
,
10
:
20
])
r8
=
f8
(
vx
,
m
,
n
)
t8
=
vx
[
m
:
n
,
10
:
20
]
assert
r8
.
shape
==
t8
.
shape
assert
numpy
.
all
(
r8
.
toarray
()
==
t8
.
toarray
())
f9
=
theano
.
function
([
x
,
a
,
b
],
x
[
a
:,
b
:])
r9
=
f9
(
vx
,
p
,
q
)
t9
=
vx
[
p
:,
q
:]
assert
r9
.
shape
==
t9
.
shape
assert
numpy
.
all
(
r9
.
toarray
()
==
t9
.
toarray
())
#-----------------------------------------------------------
#-----------------------------------------------------------
# Test mixing None and variables
# Test mixing None and variables
...
@@ -2223,13 +2261,16 @@ class Test_getitem(unittest.TestCase):
...
@@ -2223,13 +2261,16 @@ class Test_getitem(unittest.TestCase):
self
.
assertRaises
(
NotImplementedError
,
self
.
assertRaises
(
NotImplementedError
,
x
.
__getitem__
,
(
slice
(
a
,
b
),
c
))
x
.
__getitem__
,
(
slice
(
a
,
b
),
c
))
# # x[a:b:step, c:d] is not accepted because scipy silently drops
# x[a:b:step, c:d] is not accepted because scipy silently drops
# # the step (!)
# the step (!)
# self.assertRaises(ValueError,
if
not
is_supported_version
:
# x.__getitem__, (slice(a, b, -1), slice(c, d)))
self
.
assertRaises
(
ValueError
,
# self.assertRaises(ValueError,
x
.
__getitem__
,
(
slice
(
a
,
b
,
-
1
),
slice
(
c
,
d
)))
# x.__getitem__, (slice(a, b), slice(c, d, 2)))
self
.
assertRaises
(
ValueError
,
x
.
__getitem__
,
(
slice
(
a
,
b
),
slice
(
c
,
d
,
2
)))
else
:
raise
SkipTest
(
"Slicing with step needs newer release of scipy"
)
# Advanced indexing is not supported
# Advanced indexing is not supported
self
.
assertRaises
(
ValueError
,
self
.
assertRaises
(
ValueError
,
x
.
__getitem__
,
x
.
__getitem__
,
...
...
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