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testgroup
pytensor
Commits
1e8f9cc5
提交
1e8f9cc5
authored
11月 04, 2011
作者:
James Bergstra
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
fixed CeilTester not to test grad at integer inputs, plus pep8
上级
9325055d
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
87 行增加
和
49 行删除
+87
-49
test_basic.py
theano/tensor/tests/test_basic.py
+87
-49
没有找到文件。
theano/tensor/tests/test_basic.py
浏览文件 @
1e8f9cc5
...
@@ -42,6 +42,7 @@ try:
...
@@ -42,6 +42,7 @@ try:
except
ImportError
:
except
ImportError
:
if
config
.
mode
==
"FAST_COMPILE"
:
if
config
.
mode
==
"FAST_COMPILE"
:
mode_no_scipy
=
"FAST_RUN"
mode_no_scipy
=
"FAST_RUN"
floatX
=
config
.
floatX
### seed random number generator so that unittests are deterministic ###
### seed random number generator so that unittests are deterministic ###
utt
.
seed_rng
()
utt
.
seed_rng
()
...
@@ -658,38 +659,61 @@ PowInplaceTester = makeBroadcastTester(op = inplace.pow_inplace,
...
@@ -658,38 +659,61 @@ PowInplaceTester = makeBroadcastTester(op = inplace.pow_inplace,
#Those are corner case when rounding. Their is many rounding algo.
#Those are corner case when rounding. Their is many rounding algo.
#c round() fct and numpy round are not the same!
#c round() fct and numpy round are not the same!
corner_case
=
numpy
.
asarray
([
-
2.5
,
-
2.
,
-
1.5
,
-
1.
,
-
0.5
,
-.
51
,
-.
49
,
0
,
0.49
,
0.5
,
0.9
,
1
,
1.5
,
2
,
2.5
],
dtype
=
config
.
floatX
)
corner_case
=
numpy
.
asarray
(
[
-
2.5
,
-
2.
,
-
1.5
,
-
1.
,
-
0.5
,
-.
51
,
-.
49
,
0
,
0.49
,
0.5
,
0.9
,
1
,
1.5
,
2
,
2.5
],
dtype
=
floatX
)
#we remove 0 here as the grad is not always computable numerically.
#we remove 0 here as the grad is not always computable numerically.
corner_case_grad
=
numpy
.
asarray
([
-
2.5
,
-
2.
,
-
1.5
,
-
1.
,
-
0.5
,
-.
51
,
-.
49
,
0.49
,
0.5
,
0.9
,
1
,
1.5
,
2
,
2.5
],
dtype
=
config
.
floatX
)
corner_case_grad
=
numpy
.
asarray
(
_good_broadcast_unary_normal_float
=
dict
(
normal
=
(
rand_ranged
(
-
5
,
5
,
(
2
,
3
)),),
[
-
2.5
,
-
2.
,
-
1.5
,
-
1.
,
-
0.5
,
-.
51
,
-.
49
,
corner_case
=
(
corner_case
,),
0.49
,
0.5
,
0.9
,
1
,
1.5
,
2
,
2.5
],
complex
=
(
randcomplex
(
2
,
3
),),
dtype
=
floatX
)
empty
=
(
numpy
.
asarray
([]),))
_good_broadcast_unary_normal_float
=
dict
(
_good_broadcast_unary_normal_float_no_empty
=
copy
(
_good_broadcast_unary_normal_float
)
normal
=
[
rand_ranged
(
-
5
,
5
,
(
2
,
3
))],
del
_good_broadcast_unary_normal_float_no_empty
[
'empty'
]
corner_case
=
[
corner_case
],
_good_broadcast_unary_normal_float_no_empty_no_complex
=
copy
(
_good_broadcast_unary_normal_float_no_empty
)
complex
=
[
randcomplex
(
2
,
3
)],
del
_good_broadcast_unary_normal_float_no_empty_no_complex
[
'complex'
]
empty
=
[
numpy
.
asarray
([])])
_good_broadcast_unary_normal_float_no_complex
=
copy
(
_good_broadcast_unary_normal_float
)
del
_good_broadcast_unary_normal_float_no_complex
[
'complex'
]
def
copy_except
(
dct
,
*
args
):
"""Return dct but with the keys named by args removed.
_good_broadcast_unary_normal
=
dict
(
normal
=
(
numpy
.
asarray
(
rand_ranged
(
-
5
,
5
,
(
2
,
3
)),
dtype
=
config
.
floatX
),),
"""
integers
=
(
randint_ranged
(
-
5
,
5
,
(
2
,
3
)),),
rval
=
copy
(
dct
)
corner_case
=
(
corner_case
,),
for
a
in
args
:
complex
=
(
randcomplex
(
2
,
3
),),
if
a
in
rval
:
empty
=
(
numpy
.
asarray
([]),))
del
rval
[
a
]
return
rval
_good_broadcast_unary_normal_no_complex
=
dict
(
normal
=
(
numpy
.
asarray
(
rand_ranged
(
-
5
,
5
,
(
2
,
3
)),
dtype
=
config
.
floatX
),),
integers
=
(
randint_ranged
(
-
5
,
5
,
(
2
,
3
)),),
_good_broadcast_unary_normal_float_no_empty
=
copy_except
(
corner_case
=
(
corner_case
,),
_good_broadcast_unary_normal_float
,
'empty'
)
#complex = (randcomplex(2,3),),
empty
=
(
numpy
.
asarray
([]),))
_good_broadcast_unary_normal_float_no_empty_no_complex
=
copy_except
(
_good_broadcast_unary_normal_float_no_empty
,
'complex'
)
_grad_broadcast_unary_normal
=
dict
(
normal
=
(
numpy
.
asarray
(
rand_ranged
(
-
5
,
5
,
(
2
,
3
)),
dtype
=
config
.
floatX
),),
corner_case
=
(
corner_case_grad
,),
_good_broadcast_unary_normal_float_no_complex
=
copy_except
(
#complex = (randcomplex(2,3),),
_good_broadcast_unary_normal_float
,
'complex'
)
#empty = (numpy.asarray([]),)
)
_good_broadcast_unary_normal
=
dict
(
normal
=
[
numpy
.
asarray
(
rand_ranged
(
-
5
,
5
,
(
2
,
3
)),
dtype
=
config
.
floatX
)],
integers
=
[
randint_ranged
(
-
5
,
5
,
(
2
,
3
))],
corner_case
=
[
corner_case
],
complex
=
[
randcomplex
(
2
,
3
)],
empty
=
[
numpy
.
asarray
([])],
)
_good_broadcast_unary_normal_no_complex
=
dict
(
normal
=
[
numpy
.
asarray
(
rand_ranged
(
-
5
,
5
,
(
2
,
3
)),
dtype
=
floatX
)],
integers
=
[
randint_ranged
(
-
5
,
5
,
(
2
,
3
))],
corner_case
=
[
corner_case
],
empty
=
[
numpy
.
asarray
([])],
)
_grad_broadcast_unary_normal
=
dict
(
normal
=
[
numpy
.
asarray
(
rand_ranged
(
-
5
,
5
,
(
2
,
3
)),
dtype
=
floatX
)],
corner_case
=
[
corner_case_grad
],
#empty = [numpy.asarray([])] # XXX: should this be included?
)
...
@@ -725,25 +749,39 @@ SgnInplaceTester = makeBroadcastTester(op = inplace.sgn_inplace,
...
@@ -725,25 +749,39 @@ SgnInplaceTester = makeBroadcastTester(op = inplace.sgn_inplace,
good
=
_good_broadcast_unary_normal_no_complex
,
good
=
_good_broadcast_unary_normal_no_complex
,
grad
=
_grad_broadcast_unary_normal
,
grad
=
_grad_broadcast_unary_normal
,
inplace
=
True
)
inplace
=
True
)
CeilTester
=
makeBroadcastTester
(
op
=
tensor
.
ceil
,
expected
=
lambda
a
:
numpy
.
asarray
(
numpy
.
ceil
(
a
),
a
.
dtype
),
good
=
_good_broadcast_unary_normal_no_complex
,
grad
=
_grad_broadcast_unary_normal
)
CeilInplaceTester
=
makeBroadcastTester
(
op
=
inplace
.
ceil_inplace
,
expected
=
lambda
a
:
numpy
.
asarray
(
numpy
.
ceil
(
a
),
a
.
dtype
),
good
=
_good_broadcast_unary_normal_no_complex
,
grad
=
_grad_broadcast_unary_normal
,
inplace
=
True
)
FloorTester
=
makeBroadcastTester
(
op
=
tensor
.
floor
,
expected
=
lambda
a
:
numpy
.
asarray
(
numpy
.
floor
(
a
),
a
.
dtype
),
CeilTester
=
makeBroadcastTester
(
op
=
tensor
.
ceil
,
good
=
_good_broadcast_unary_normal_no_complex
,
expected
=
lambda
a
:
numpy
.
asarray
(
grad
=
_grad_broadcast_unary_normal
)
numpy
.
ceil
(
a
),
FloorInplaceTester
=
makeBroadcastTester
(
op
=
inplace
.
floor_inplace
,
a
.
dtype
),
expected
=
lambda
a
:
numpy
.
asarray
(
numpy
.
floor
(
a
),
a
.
dtype
),
good
=
_good_broadcast_unary_normal_no_complex
,
good
=
_good_broadcast_unary_normal_no_complex
,
# corner cases includes a lot of integers: points where Ceil is not
grad
=
_grad_broadcast_unary_normal
,
# continuous (not differentiable)
inplace
=
True
)
grad
=
copy_except
(
_grad_broadcast_unary_normal
,
'corner_case'
))
CeilInplaceTester
=
makeBroadcastTester
(
op
=
inplace
.
ceil_inplace
,
expected
=
lambda
a
:
numpy
.
asarray
(
numpy
.
ceil
(
a
),
a
.
dtype
),
good
=
_good_broadcast_unary_normal_no_complex
,
# corner cases includes a lot of integers: points where Ceil is not
# continuous (not differentiable)
grad
=
copy_except
(
_grad_broadcast_unary_normal
,
'corner_case'
),
inplace
=
True
)
FloorTester
=
makeBroadcastTester
(
op
=
tensor
.
floor
,
expected
=
lambda
a
:
numpy
.
asarray
(
numpy
.
floor
(
a
),
a
.
dtype
),
good
=
_good_broadcast_unary_normal_no_complex
,
# XXX: why does grad of floor not give huge values at
# the integer points in the 'corner_case' in
# _grad_broadcast_unary_normal? It seems this test should fail,
# yet it does not...
grad
=
_grad_broadcast_unary_normal
)
FloorInplaceTester
=
makeBroadcastTester
(
op
=
inplace
.
floor_inplace
,
expected
=
lambda
a
:
numpy
.
asarray
(
numpy
.
floor
(
a
),
a
.
dtype
),
good
=
_good_broadcast_unary_normal_no_complex
,
grad
=
_grad_broadcast_unary_normal
,
inplace
=
True
)
RoundHalfToEvenTester
=
makeBroadcastTester
(
op
=
tensor
.
round_half_to_even
,
RoundHalfToEvenTester
=
makeBroadcastTester
(
op
=
tensor
.
round_half_to_even
,
expected
=
numpy
.
round
,
expected
=
numpy
.
round
,
...
...
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