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testgroup
pytensor
Commits
82ca7c85
提交
82ca7c85
authored
1月 17, 2011
作者:
Frederic Bastien
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
add elemwise test for complex64 and complex128.
上级
4b96ed56
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
77 行增加
和
22 行删除
+77
-22
test_basic.py
theano/tensor/tests/test_basic.py
+77
-22
没有找到文件。
theano/tensor/tests/test_basic.py
浏览文件 @
82ca7c85
...
...
@@ -197,6 +197,7 @@ def makeTester(name, op, expected, checks = {}, good = {}, bad_build = {}, bad_r
rand
=
lambda
*
shape
:
2
*
numpy
.
asarray
(
numpy
.
random
.
rand
(
*
shape
),
dtype
=
config
.
floatX
)
-
1
randint
=
lambda
*
shape
:
numpy
.
random
.
random_integers
(
-
5
,
5
,
shape
)
randcomplex
=
lambda
*
shape
:
numpy
.
complex128
(
2
*
numpy
.
asarray
(
numpy
.
random
.
rand
(
*
shape
),
dtype
=
config
.
floatX
)
-
1
)
def
randint_nonzero
(
*
shape
):
r
=
numpy
.
random
.
random_integers
(
-
5
,
4
,
shape
)
...
...
@@ -208,6 +209,8 @@ def rand_ranged(min, max, shape):
def
randint_ranged
(
min
,
max
,
shape
):
return
numpy
.
random
.
random_integers
(
min
,
max
,
shape
)
def
randc128_ranged
(
min
,
max
,
shape
):
return
numpy
.
asarray
(
numpy
.
random
.
rand
(
*
shape
)
*
(
max
-
min
)
+
min
,
dtype
=
'complex128'
)
def
makeBroadcastTester
(
op
,
expected
,
checks
=
{},
**
kwargs
):
name
=
str
(
op
)
+
"Tester"
...
...
@@ -234,6 +237,10 @@ _good_broadcast_binary_normal = dict(same_shapes = (rand(2, 3), rand(2, 3)),
integers
=
(
randint
(
2
,
3
),
randint
(
2
,
3
)),
dtype_mixup_1
=
(
rand
(
2
,
3
),
randint
(
2
,
3
)),
dtype_mixup_2
=
(
randint
(
2
,
3
),
rand
(
2
,
3
)),
complex1
=
(
randcomplex
(
2
,
3
),
randcomplex
(
2
,
3
)),
complex2
=
(
randcomplex
(
2
,
3
),
rand
(
2
,
3
)),
# Disabled as we test the case where we reuse the same output as the first inputs.
# complex3 = (rand(2,3),randcomplex(2,3)),
empty
=
(
numpy
.
asarray
([]),
numpy
.
asarray
([
1
])),
)
...
...
@@ -248,6 +255,10 @@ _grad_broadcast_binary_normal = dict(same_shapes = (rand(2, 3), rand(2, 3)),
column
=
(
rand
(
2
,
3
),
rand
(
2
,
1
)),
#This don't work as verify grad don't support that
#empty = (numpy.asarray([]), numpy.asarray([1]))
#complex1 = (randcomplex(2,3),randcomplex(2,3)),
#complex2 = (randcomplex(2,3),rand(2,3)),
# Disabled as we test the case where we reuse the same output as the first inputs.
#complex3 = (rand(2,3),randcomplex(2,3)),
)
...
...
@@ -338,6 +349,9 @@ _good_broadcast_div_mod_normal_float_inplace = dict(same_shapes = (rand(2, 3), r
dtype_mixup_2
=
(
randint_nonzero
(
2
,
3
),
rand
(
2
,
3
)),
#integers_positive = (randint_ranged(4, 10, (2, 3)), randint_ranged(1, 6, (2, 3))),
#integers_known_to_fail = (numpy.array(-1), numpy.array(5))
complex1
=
(
randcomplex
(
2
,
3
),
randcomplex
(
2
,
3
)),
complex2
=
(
randcomplex
(
2
,
3
),
rand
(
2
,
3
)),
#complex3 = (rand(2,3),randcomplex(2,3)),# Inplace on the first element. Must have the same type.
empty1
=
(
numpy
.
asarray
([]),
numpy
.
asarray
([
1
])),
#empty2 = (numpy.asarray([0]), numpy.asarray([])),
)
...
...
@@ -345,11 +359,16 @@ _good_broadcast_div_mod_normal_float = dict(empty2 = (numpy.asarray([0]), numpy.
**
_good_broadcast_div_mod_normal_float_inplace
)
_grad_broadcast_div_mod_normal
=
dict
(
same_shapes
=
(
rand
(
2
,
3
),
rand
(
2
,
3
)),
scalar
=
(
rand
(
2
,
3
),
rand
(
1
,
1
)),
row
=
(
rand
(
2
,
3
),
rand
(
1
,
3
)),
column
=
(
rand
(
2
,
3
),
rand
(
2
,
1
)),
#empty1 = (numpy.asarray([]), numpy.asarray([1.])),
#empty2 = (numpy.asarray([0]), numpy.asarray([])),
scalar
=
(
rand
(
2
,
3
),
rand
(
1
,
1
)),
row
=
(
rand
(
2
,
3
),
rand
(
1
,
3
)),
column
=
(
rand
(
2
,
3
),
rand
(
2
,
1
)),
#complex1 = (randcomplex(2,3),randcomplex(2,3)),
#complex2 = (randcomplex(2,3),rand(2,3)),
#complex3 = (rand(2,3),randcomplex(2,3)),
#dtype_mixup_1 = (rand(2, 3), randint_nonzero(2, 3)),
#dtype_mixup_2 = (randint_nonzero(2, 3), rand(2, 3)),
#empty1 = (numpy.asarray([]), numpy.asarray([1.])),
#empty2 = (numpy.asarray([0]), numpy.asarray([])),
)
div_grad_rtol
=
None
...
...
@@ -374,14 +393,14 @@ DivInplaceTester = makeBroadcastTester(op = inplace.true_div_inplace,
inplace
=
True
)
ModTester
=
makeBroadcastTester
(
op
=
mod
,
expected
=
lambda
x
,
y
:
x
%
y
,
expected
=
lambda
x
,
y
:
numpy
.
asarray
(
x
%
y
,
dtype
=
theano
.
scalar
.
basic
.
upcast
(
x
.
dtype
,
y
.
dtype
))
,
good
=
_good_broadcast_div_mod_normal_float
,
# integers = (randint(2, 3), randint_nonzero(2, 3)),
# dtype_mixup_1 = (rand(2, 3), randint_nonzero(2, 3)),
# dtype_mixup_2 = (randint_nonzero(2, 3), rand(2, 3))),
)
ModInplaceTester
=
makeBroadcastTester
(
op
=
inplace
.
mod_inplace
,
expected
=
lambda
x
,
y
:
x
%
y
,
expected
=
lambda
x
,
y
:
numpy
.
asarray
(
x
%
y
,
dtype
=
theano
.
scalar
.
basic
.
upcast
(
x
.
dtype
,
y
.
dtype
))
,
good
=
_good_broadcast_div_mod_normal_float_inplace
,
inplace
=
True
)
...
...
@@ -390,12 +409,18 @@ _good_broadcast_pow_normal_float = dict(same_shapes = (rand_ranged(1, 5, (2, 3))
row
=
(
rand_ranged
(
1
,
5
,
(
2
,
3
)),
rand_ranged
(
-
3
,
3
,
(
1
,
3
))),
column
=
(
rand_ranged
(
1
,
5
,
(
2
,
3
)),
rand_ranged
(
-
3
,
3
,
(
2
,
1
))),
dtype_mixup
=
(
rand_ranged
(
-
3
,
3
,
(
2
,
3
)),
randint_ranged
(
-
3
,
3
,
(
2
,
3
))),
complex1
=
(
randcomplex
(
2
,
3
),
randcomplex
(
2
,
3
)),
complex2
=
(
randcomplex
(
2
,
3
),
rand
(
2
,
3
)),
#complex3 = (rand(2,3),randcomplex(2,3)), # Inplace on the first element.
empty1
=
(
numpy
.
asarray
([]),
numpy
.
asarray
([
1
])),
empty2
=
(
numpy
.
asarray
([
0
]),
numpy
.
asarray
([])),)
_grad_broadcast_pow_normal
=
dict
(
same_shapes
=
(
rand_ranged
(
1
,
5
,
(
2
,
3
)),
rand_ranged
(
-
3
,
3
,
(
2
,
3
))),
scalar
=
(
rand_ranged
(
1
,
5
,
(
2
,
3
)),
rand_ranged
(
-
3
,
3
,
(
1
,
1
))),
row
=
(
rand_ranged
(
1
,
5
,
(
2
,
3
)),
rand_ranged
(
-
3
,
3
,
(
1
,
3
))),
column
=
(
rand_ranged
(
1
,
5
,
(
2
,
3
)),
rand_ranged
(
-
3
,
3
,
(
2
,
1
))),
#complex1 = (randcomplex(2,3),randcomplex(2,3)),
#complex2 = (randcomplex(2,3),rand(2,3)),
#complex3 = (rand(2,3),randcomplex(2,3)),
#empty1 = (numpy.asarray([]), numpy.asarray([1])),
#empty2 = (numpy.asarray([0]), numpy.asarray([])),
)
...
...
@@ -420,18 +445,31 @@ corner_case = numpy.asarray([-2.5, -2., -1.5, -1., -0.5, -.51, -.49, 0, 0.49, 0.
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
)
_good_broadcast_unary_normal_float
=
dict
(
normal
=
(
rand_ranged
(
-
5
,
5
,
(
2
,
3
)),),
corner_case
=
(
corner_case
,),
complex
=
(
randcomplex
(
2
,
3
),),
empty
=
(
numpy
.
asarray
([]),))
_good_broadcast_unary_normal_float_no_empty
=
copy
(
_good_broadcast_unary_normal_float
)
del
_good_broadcast_unary_normal_float_no_empty
[
'empty'
]
_good_broadcast_unary_normal_float_no_empty_no_complex
=
copy
(
_good_broadcast_unary_normal_float_no_empty
)
del
_good_broadcast_unary_normal_float_no_empty_no_complex
[
'complex'
]
_good_broadcast_unary_normal_float_no_complex
=
copy
(
_good_broadcast_unary_normal_float
)
del
_good_broadcast_unary_normal_float_no_complex
[
'complex'
]
_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
=
config
.
floatX
),),
integers
=
(
randint_ranged
(
-
5
,
5
,
(
2
,
3
)),),
corner_case
=
(
corner_case
,),
#complex = (randcomplex(2,3),),
empty
=
(
numpy
.
asarray
([]),))
_grad_broadcast_unary_normal
=
dict
(
normal
=
(
numpy
.
asarray
(
rand_ranged
(
-
5
,
5
,
(
2
,
3
)),
dtype
=
config
.
floatX
),),
corner_case
=
(
corner_case_grad
,),
#complex = (randcomplex(2,3),),
#empty = (numpy.asarray([]),)
)
...
...
@@ -441,9 +479,12 @@ AbsTester = makeBroadcastTester(op = tensor.abs_,
expected
=
lambda
x
:
abs
(
x
),
good
=
_good_broadcast_unary_normal
,
grad
=
_grad_broadcast_unary_normal
)
_good_broadcast_unary_normal_abs
=
copy
(
_good_broadcast_unary_normal
)
# Can't do inplace on Abs as the input/output are not of the same type!
del
_good_broadcast_unary_normal_abs
[
'complex'
]
AbsInplaceTester
=
makeBroadcastTester
(
op
=
inplace
.
abs__inplace
,
expected
=
lambda
x
:
numpy
.
abs
(
x
),
good
=
_good_broadcast_unary_normal
,
good
=
_good_broadcast_unary_normal
_abs
,
grad
=
_grad_broadcast_unary_normal
,
inplace
=
True
)
...
...
@@ -458,33 +499,38 @@ NegInplaceTester = makeBroadcastTester(op = inplace.neg_inplace,
inplace
=
True
)
SgnTester
=
makeBroadcastTester
(
op
=
sgn
,
expected
=
numpy
.
sign
,
good
=
_good_broadcast_unary_normal
)
expected
=
numpy
.
sign
,
good
=
_good_broadcast_unary_normal_no_complex
,
grad
=
_grad_broadcast_unary_normal
,)
SgnInplaceTester
=
makeBroadcastTester
(
op
=
inplace
.
sgn_inplace
,
expected
=
numpy
.
sign
,
good
=
_good_broadcast_unary_normal
,
inplace
=
True
)
expected
=
numpy
.
sign
,
good
=
_good_broadcast_unary_normal_no_complex
,
grad
=
_grad_broadcast_unary_normal
,
inplace
=
True
)
CeilTester
=
makeBroadcastTester
(
op
=
ceil
,
expected
=
lambda
a
:
numpy
.
asarray
(
numpy
.
ceil
(
a
),
a
.
dtype
),
good
=
_good_broadcast_unary_normal
)
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
,
good
=
_good_broadcast_unary_normal_no_complex
,
grad
=
_grad_broadcast_unary_normal
,
inplace
=
True
)
FloorTester
=
makeBroadcastTester
(
op
=
floor
,
expected
=
lambda
a
:
numpy
.
asarray
(
numpy
.
floor
(
a
),
a
.
dtype
),
good
=
_good_broadcast_unary_normal
,
good
=
_good_broadcast_unary_normal
_no_complex
,
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
,
good
=
_good_broadcast_unary_normal
_no_complex
,
grad
=
_grad_broadcast_unary_normal
,
inplace
=
True
)
RoundHalfToEvenTester
=
makeBroadcastTester
(
op
=
round_half_to_even
,
expected
=
numpy
.
round
,
good
=
_good_broadcast_unary_normal_float
)
good
=
_good_broadcast_unary_normal_float_no_complex
)
# TODO: Why complex are accepted in the next one?
RoundHalfToEvenInplaceTester
=
makeBroadcastTester
(
op
=
inplace
.
round_half_to_even_inplace
,
expected
=
numpy
.
round
,
good
=
_good_broadcast_unary_normal_float
,
...
...
@@ -495,10 +541,10 @@ RoundHalfToEvenInplaceTester = makeBroadcastTester(op = inplace.round_half_to_ev
#This happen in float32 mode.
RoundHalfAwayFromZeroTester
=
makeBroadcastTester
(
op
=
round_half_away_from_zero
,
expected
=
theano
.
scalar
.
basic
.
round_half_away_from_zero_vec
,
good
=
_good_broadcast_unary_normal_float_no_empty
)
#_good_broadcast_unary_normal_float)
good
=
_good_broadcast_unary_normal_float_no_empty
_no_complex
)
#_good_broadcast_unary_normal_float)
RoundHalfAwayFromZeroInplaceTester
=
makeBroadcastTester
(
op
=
inplace
.
round_half_away_from_zero_inplace
,
expected
=
theano
.
scalar
.
basic
.
round_half_away_from_zero_vec
,
good
=
_good_broadcast_unary_normal_float_no_empty
,
good
=
_good_broadcast_unary_normal_float_no_empty
_no_complex
,
inplace
=
True
)
SqrTester
=
makeBroadcastTester
(
op
=
sqr
,
...
...
@@ -524,10 +570,12 @@ ExpInplaceTester = makeBroadcastTester(op = inplace.exp_inplace,
_good_broadcast_unary_positive
=
dict
(
normal
=
(
rand_ranged
(
0.001
,
5
,
(
2
,
3
)),),
integers
=
(
randint_ranged
(
1
,
5
,
(
2
,
3
)),),
complex
=
(
randc128_ranged
(
1
,
5
,
(
2
,
3
)),),
empty
=
(
numpy
.
asarray
([]),),
)
_grad_broadcast_unary_positive
=
dict
(
normal
=
(
rand_ranged
(
0.001
,
5
,
(
2
,
3
)),),
#complex = (randc128_ranged(1, 5, (2,3)),),
#empty = (numpy.asarray([]),),
)
...
...
@@ -586,9 +634,11 @@ SqrtInplaceTester = makeBroadcastTester(op = inplace.sqrt_inplace,
_good_broadcast_unary_wide
=
dict
(
normal
=
(
rand_ranged
(
-
1000
,
1000
,
(
2
,
3
)),),
integers
=
(
randint_ranged
(
-
1000
,
1000
,
(
2
,
3
)),),
complex
=
(
randc128_ranged
(
-
1000
,
1000
,
(
2
,
3
)),),
empty
=
(
numpy
.
asarray
([]),),)
_grad_broadcast_unary_wide
=
dict
(
normal
=
(
rand_ranged
(
-
1000
,
1000
,
(
2
,
3
)),),
#complex = (randc128_ranged(-1000, 1000, (2, 3)),),
#empty = (numpy.asarray([]),),
)
...
...
@@ -667,6 +717,8 @@ TanhInplaceTester = makeBroadcastTester(op = inplace.tanh_inplace,
#inplace ops when the input is integer and the output is float*
# don't have a well defined behavior. We don't test that case.
_good_broadcast_unary_normal_no_int_no_complex
=
_good_broadcast_unary_normal_no_complex
.
copy
()
del
_good_broadcast_unary_normal_no_int_no_complex
[
'integers'
]
_good_broadcast_unary_normal_no_int
=
_good_broadcast_unary_normal
.
copy
()
del
_good_broadcast_unary_normal_no_int
[
'integers'
]
...
...
@@ -712,13 +764,13 @@ else:
empty
=
(
numpy
.
asarray
([]),),)
ErfcTester
=
makeBroadcastTester
(
op
=
erfc
,
expected
=
expected
,
good
=
_good_broadcast_unary_normal
,
good
=
_good_broadcast_unary_normal
_no_int_no_complex
,
grad
=
_grad_broadcast_unary_normal
,
eps
=
2e-10
,
mode
=
mode_no_scipy
)
ErfcInplaceTester
=
makeBroadcastTester
(
op
=
inplace
.
erfc_inplace
,
expected
=
expected
,
good
=
_good_broadcast_unary_normal_no_int
,
good
=
_good_broadcast_unary_normal_no_int
_no_complex
,
grad
=
_grad_broadcast_unary_normal
,
eps
=
2e-10
,
mode
=
mode_no_scipy
,
...
...
@@ -732,6 +784,9 @@ DotTester = makeTester(name = 'DotTester',
good
=
dict
(
correct1
=
(
rand
(
5
,
7
),
rand
(
7
,
5
)),
correct2
=
(
rand
(
5
,
7
),
rand
(
7
,
9
)),
correct3
=
(
rand
(
5
,
7
),
rand
(
7
)),
complex1
=
(
randcomplex
(
5
,
7
),
randcomplex
(
7
)),
complex2
=
(
rand
(
5
,
7
),
randcomplex
(
7
)),
complex3
=
(
randcomplex
(
5
,
7
),
rand
(
7
)),
empty
=
(
numpy
.
asarray
([]),
numpy
.
asarray
([])),),
bad_build
=
dict
(),
bad_runtime
=
dict
(
bad1
=
(
rand
(
5
,
7
),
rand
(
5
,
7
)),
...
...
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