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pytensor
Commits
76da3f78
提交
76da3f78
authored
2月 02, 2012
作者:
Olivier Delalleau
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
94ee7a57
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
53 行增加
和
52 行删除
+53
-52
test_opt.py
theano/tensor/tests/test_opt.py
+53
-52
没有找到文件。
theano/tensor/tests/test_opt.py
浏览文件 @
76da3f78
...
@@ -3179,61 +3179,63 @@ class T_local_sum_dimshuffle(unittest.TestCase):
...
@@ -3179,61 +3179,63 @@ class T_local_sum_dimshuffle(unittest.TestCase):
d
=
T
.
scalar
(
'd'
)
d
=
T
.
scalar
(
'd'
)
sum
=
tensor
.
sum
sum
=
tensor
.
sum
sums
=
[
sums
=
[
sum
(
a
/
d
),
sum
(
a
/
d
),
sum
(
a
/
d
.
dimshuffle
(
'x'
,
'x'
)),
sum
(
a
/
d
.
dimshuffle
(
'x'
,
'x'
)),
sum
(
a
/
d
.
dimshuffle
(
'x'
,
'x'
),
axis
=
0
),
sum
(
a
/
d
.
dimshuffle
(
'x'
,
'x'
),
axis
=
0
),
sum
(
a
/
d
.
dimshuffle
(
'x'
,
'x'
),
axis
=
1
),
sum
(
a
/
d
.
dimshuffle
(
'x'
,
'x'
),
axis
=
1
),
sum
(
b
/
d
),
sum
(
b
/
d
),
sum
(
b
/
d
.
dimshuffle
(
'x'
)),
sum
(
b
/
d
.
dimshuffle
(
'x'
)),
sum
(
c
/
d
),
sum
(
c
/
d
),
sum
(
c
/
d
.
dimshuffle
(
'x'
,
'x'
,
'x'
)),
sum
(
c
/
d
.
dimshuffle
(
'x'
,
'x'
,
'x'
)),
sum
(
c
/
d
.
dimshuffle
(
'x'
,
'x'
,
'x'
),
axis
=
0
),
sum
(
c
/
d
.
dimshuffle
(
'x'
,
'x'
,
'x'
),
axis
=
0
),
sum
(
c
/
d
.
dimshuffle
(
'x'
,
'x'
,
'x'
),
axis
=
1
),
sum
(
c
/
d
.
dimshuffle
(
'x'
,
'x'
,
'x'
),
axis
=
1
),
sum
(
c
/
d
.
dimshuffle
(
'x'
,
'x'
,
'x'
),
axis
=
2
),
sum
(
c
/
d
.
dimshuffle
(
'x'
,
'x'
,
'x'
),
axis
=
2
),
sum
(
a
/
b
,
axis
=
0
),
sum
(
a
/
b
,
axis
=
0
),
sum
(
a
/
b
.
dimshuffle
(
0
,
'x'
),
axis
=
1
),
sum
(
a
/
b
.
dimshuffle
(
0
,
'x'
),
axis
=
1
),
sum
(
a
.
dimshuffle
(
0
,
1
)
/
b
.
dimshuffle
(
0
,
'x'
),
axis
=
1
),
sum
(
a
.
dimshuffle
(
0
,
1
)
/
b
.
dimshuffle
(
0
,
'x'
),
axis
=
1
),
sum
(
a
.
dimshuffle
(
1
,
0
)
/
b
.
dimshuffle
(
0
,
'x'
),
axis
=
1
),
sum
(
a
.
dimshuffle
(
1
,
0
)
/
b
.
dimshuffle
(
0
,
'x'
),
axis
=
1
),
sum
(
c
/
a
,
axis
=
0
),
sum
(
c
/
a
,
axis
=
0
),
sum
(
c
/
a
.
dimshuffle
(
1
,
0
),
axis
=
0
),
sum
(
c
/
a
.
dimshuffle
(
1
,
0
),
axis
=
0
),
sum
(
c
/
a
.
dimshuffle
(
0
,
'x'
,
1
),
axis
=
1
),
sum
(
c
/
a
.
dimshuffle
(
0
,
'x'
,
1
),
axis
=
1
),
sum
(
c
/
a
.
dimshuffle
(
1
,
'x'
,
0
),
axis
=
1
),
sum
(
c
/
a
.
dimshuffle
(
1
,
'x'
,
0
),
axis
=
1
),
sum
(
c
/
a
.
dimshuffle
(
0
,
1
,
'x'
),
axis
=
2
),
sum
(
c
/
a
.
dimshuffle
(
0
,
1
,
'x'
),
axis
=
2
),
sum
(
c
/
a
.
dimshuffle
(
1
,
0
,
'x'
),
axis
=
2
),
sum
(
c
/
a
.
dimshuffle
(
1
,
0
,
'x'
),
axis
=
2
),
sum
(
c
/
b
,
axis
=
0
),
sum
(
c
/
b
,
axis
=
0
),
sum
(
c
/
b
,
axis
=
1
),
sum
(
c
/
b
,
axis
=
1
),
sum
(
c
/
b
,
axis
=
(
0
,
1
)),
sum
(
c
/
b
,
axis
=
(
0
,
1
)),
sum
(
c
/
b
.
dimshuffle
(
0
,
'x'
),
axis
=
0
),
sum
(
c
/
b
.
dimshuffle
(
0
,
'x'
),
axis
=
0
),
sum
(
c
/
b
.
dimshuffle
(
0
,
'x'
),
axis
=
2
),
sum
(
c
/
b
.
dimshuffle
(
0
,
'x'
),
axis
=
2
),
sum
(
c
/
b
.
dimshuffle
(
0
,
'x'
),
axis
=
(
0
,
2
)),
sum
(
c
/
b
.
dimshuffle
(
0
,
'x'
),
axis
=
(
0
,
2
)),
sum
(
c
/
b
.
dimshuffle
(
0
,
'x'
,
'x'
),
axis
=
1
),
sum
(
c
/
b
.
dimshuffle
(
0
,
'x'
,
'x'
),
axis
=
1
),
sum
(
c
/
b
.
dimshuffle
(
0
,
'x'
,
'x'
),
axis
=
2
),
sum
(
c
/
b
.
dimshuffle
(
0
,
'x'
,
'x'
),
axis
=
2
),
sum
(
c
/
b
.
dimshuffle
(
0
,
'x'
,
'x'
),
axis
=
(
1
,
2
)),
sum
(
c
/
b
.
dimshuffle
(
0
,
'x'
,
'x'
),
axis
=
(
1
,
2
)),
sum
(
sum
(
c
,
axis
=
0
)
/
b
,
axis
=
0
),
sum
(
sum
(
c
,
axis
=
0
)
/
b
,
axis
=
0
),
sum
(
sum
(
c
,
axis
=
1
)
/
b
,
axis
=
0
),
sum
(
sum
(
c
,
axis
=
1
)
/
b
,
axis
=
0
),
]
]
rng
=
numpy
.
random
.
RandomState
(
utt
.
fetch_seed
())
rng
=
numpy
.
random
.
RandomState
(
utt
.
fetch_seed
())
a_val
=
rng
.
randn
(
2
,
2
)
.
astype
(
config
.
floatX
)
a_val
=
rng
.
randn
(
2
,
2
)
.
astype
(
config
.
floatX
)
b_val
=
rng
.
randn
(
2
)
.
astype
(
config
.
floatX
)
b_val
=
rng
.
randn
(
2
)
.
astype
(
config
.
floatX
)
c_val
=
rng
.
randn
(
2
,
2
,
2
)
.
astype
(
config
.
floatX
)
c_val
=
rng
.
randn
(
2
,
2
,
2
)
.
astype
(
config
.
floatX
)
d_val
=
numpy
.
asarray
(
rng
.
randn
(),
config
.
floatX
)
d_val
=
numpy
.
asarray
(
rng
.
randn
(),
config
.
floatX
)
backup
=
config
.
warn
.
sum_sum_bug
,
config
.
warn
.
sum_div_dimshuffle_bug
backup
=
config
.
warn
.
sum_sum_bug
,
config
.
warn
.
sum_div_dimshuffle_bug
config
.
warn
.
sum_sum_bug
=
False
config
.
warn
.
sum_sum_bug
=
False
config
.
warn
.
sum_div_dimshuffle_bug
=
False
config
.
warn
.
sum_div_dimshuffle_bug
=
False
try
:
try
:
for
i
,
s
in
enumerate
(
sums
):
for
i
,
s
in
enumerate
(
sums
):
print
i
print
i
f
=
theano
.
function
([
a
,
b
,
c
,
d
],
s
,
mode
=
self
.
mode
)
f
=
theano
.
function
([
a
,
b
,
c
,
d
],
s
,
mode
=
self
.
mode
)
theano
.
printing
.
debugprint
(
f
)
theano
.
printing
.
debugprint
(
f
)
g
=
f
.
maker
.
env
.
toposort
()
g
=
f
.
maker
.
env
.
toposort
()
#print 'g =', g
#print 'g =', g
assert
isinstance
(
g
[
-
1
]
.
op
.
scalar_op
,
theano
.
scalar
.
basic
.
TrueDiv
)
assert
isinstance
(
g
[
-
1
]
.
op
.
scalar_op
,
theano
.
scalar
.
basic
.
TrueDiv
)
f
(
a_val
,
b_val
,
c_val
,
d_val
)
f
(
a_val
,
b_val
,
c_val
,
d_val
)
finally
:
finally
:
config
.
warn
.
sum_sum_bug
,
config
.
warn
.
sum_div_dimshuffle_bug
=
backup
config
.
warn
.
sum_sum_bug
,
config
.
warn
.
sum_div_dimshuffle_bug
=
\
backup
# TODO:
# TODO:
# test_local_sum_prod_dimshuffle (a * b * c)
# test_local_sum_prod_dimshuffle (a * b * c)
...
@@ -3251,22 +3253,21 @@ def test_make_vector():
...
@@ -3251,22 +3253,21 @@ def test_make_vector():
d
:
0.7
}
d
:
0.7
}
# Should work
# Should work
for
(
dtype
,
inputs
)
in
[(
"int8"
,
(
b
,
b
)),
for
(
dtype
,
inputs
)
in
[(
"int8"
,
(
b
,
b
)),
(
"int32"
,
(
i
,
b
)),
(
"int32"
,
(
i
,
b
)),
(
"int32"
,
(
b
,
i
)),
(
"int32"
,
(
b
,
i
)),
(
"float64"
,
(
b
,
i
)),
(
"float64"
,
(
b
,
i
)),
(
"float64"
,
(
b
,
d
)),
(
"float64"
,
(
b
,
d
)),
(
"float64"
,
(
d
,
i
)),
(
"float64"
,
(
d
,
i
)),
(
"float64"
,
()),
(
"float64"
,
()),
(
"int64"
,
()),
(
"int64"
,
()),
]:
]:
mv
=
opt
.
MakeVector
(
dtype
=
dtype
)(
*
inputs
)
mv
=
opt
.
MakeVector
(
dtype
=
dtype
)(
*
inputs
)
assert
mv
.
dtype
==
dtype
assert
mv
.
dtype
==
dtype
f
=
theano
.
function
([
b
,
i
,
d
],
mv
)
f
=
theano
.
function
([
b
,
i
,
d
],
mv
)
f_val
=
f
(
val
[
b
],
val
[
i
],
val
[
d
])
f_val
=
f
(
val
[
b
],
val
[
i
],
val
[
d
])
#print 'f_val =', f_val
#print 'f_val =', f_val
s
=
mv
.
sum
()
s
=
mv
.
sum
()
gb
=
T
.
grad
(
s
,
b
,
disconnected_inputs
=
'ignore'
)
gb
=
T
.
grad
(
s
,
b
,
disconnected_inputs
=
'ignore'
)
gi
=
T
.
grad
(
s
,
i
,
disconnected_inputs
=
'ignore'
)
gi
=
T
.
grad
(
s
,
i
,
disconnected_inputs
=
'ignore'
)
...
@@ -3275,7 +3276,7 @@ def test_make_vector():
...
@@ -3275,7 +3276,7 @@ def test_make_vector():
#print 'gi =', gi
#print 'gi =', gi
#print 'gd =', gd
#print 'gd =', gd
g
=
theano
.
function
([
b
,
i
,
d
],
[
gb
,
gi
,
gd
])
g
=
theano
.
function
([
b
,
i
,
d
],
[
gb
,
gi
,
gd
])
g_val
=
g
(
val
[
b
],
val
[
i
],
val
[
d
])
g_val
=
g
(
val
[
b
],
val
[
i
],
val
[
d
])
#print 'g_val =', g_val
#print 'g_val =', g_val
...
@@ -3283,7 +3284,7 @@ def test_make_vector():
...
@@ -3283,7 +3284,7 @@ def test_make_vector():
# The gradient should be 0
# The gradient should be 0
assert
numpy
.
allclose
(
g_val
,
0
)
assert
numpy
.
allclose
(
g_val
,
0
)
else
:
else
:
for
var
,
grval
in
zip
((
b
,
i
,
d
),
g_val
):
for
var
,
grval
in
zip
((
b
,
i
,
d
),
g_val
):
float_inputs
=
[]
float_inputs
=
[]
if
var
.
dtype
.
startswith
(
'int'
):
if
var
.
dtype
.
startswith
(
'int'
):
assert
grval
==
0
assert
grval
==
0
...
@@ -3309,13 +3310,13 @@ def test_make_vector():
...
@@ -3309,13 +3310,13 @@ def test_make_vector():
utt
.
verify_grad
(
fun
,
[
val
[
ri
]
for
ri
in
float_inputs
])
utt
.
verify_grad
(
fun
,
[
val
[
ri
]
for
ri
in
float_inputs
])
#should fail
#should fail
for
(
dtype
,
inputs
)
in
[(
"int8"
,(
b
,
i
)),
for
(
dtype
,
inputs
)
in
[(
"int8"
,
(
b
,
i
)),
(
"int8"
,(
i
,
b
)),
(
"int8"
,
(
i
,
b
)),
(
"int8"
,(
b
,
d
)),
(
"int8"
,
(
b
,
d
)),
(
"int8"
,(
i
,
i
)),
(
"int8"
,
(
i
,
i
)),
(
"int32"
,(
d
,
i
)),
(
"int32"
,
(
d
,
i
)),
(
"int32"
,(
i
,
d
)),
(
"int32"
,
(
i
,
d
)),
(
"float32"
,(
i
,
d
)),
(
"float32"
,
(
i
,
d
)),
]:
]:
try
:
try
:
opt
.
MakeVector
(
dtype
=
dtype
)(
*
inputs
)
opt
.
MakeVector
(
dtype
=
dtype
)(
*
inputs
)
...
@@ -3337,7 +3338,7 @@ def test_local_join_1():
...
@@ -3337,7 +3338,7 @@ def test_local_join_1():
#test for matrix join(0,a)
#test for matrix join(0,a)
a
=
tensor
.
matrix
(
'a'
)
a
=
tensor
.
matrix
(
'a'
)
s
=
join
(
0
,
a
)
s
=
join
(
0
,
a
)
f
=
function
([
a
],
s
,
mode
=
mode_opt
)
f
=
function
([
a
],
s
,
mode
=
mode_opt
)
val
=
f
([[
1
]])
val
=
f
([[
1
]])
assert
numpy
.
all
(
val
==
[[
1
]])
assert
numpy
.
all
(
val
==
[[
1
]])
...
@@ -3346,7 +3347,7 @@ def test_local_join_1():
...
@@ -3346,7 +3347,7 @@ def test_local_join_1():
assert
f
.
maker
.
env
.
outputs
[
0
]
.
dtype
==
config
.
floatX
assert
f
.
maker
.
env
.
outputs
[
0
]
.
dtype
==
config
.
floatX
#test for matrix join(1,a)
#test for matrix join(1,a)
s
=
join
(
1
,
a
)
s
=
join
(
1
,
a
)
f
=
function
([
a
],
s
,
mode
=
mode_opt
)
f
=
function
([
a
],
s
,
mode
=
mode_opt
)
val
=
f
([[
1
]])
val
=
f
([[
1
]])
assert
numpy
.
all
(
val
==
[[
1
]])
assert
numpy
.
all
(
val
==
[[
1
]])
...
@@ -3355,7 +3356,7 @@ def test_local_join_1():
...
@@ -3355,7 +3356,7 @@ def test_local_join_1():
assert
f
.
maker
.
env
.
outputs
[
0
]
.
dtype
==
config
.
floatX
assert
f
.
maker
.
env
.
outputs
[
0
]
.
dtype
==
config
.
floatX
#test we don't apply when their is 2 inputs
#test we don't apply when their is 2 inputs
s
=
join
(
1
,
a
,
a
)
s
=
join
(
1
,
a
,
a
)
f
=
function
([
a
],
s
,
mode
=
mode_opt
)
f
=
function
([
a
],
s
,
mode
=
mode_opt
)
val
=
f
([[
1
]])
val
=
f
([[
1
]])
assert
numpy
.
all
(
val
==
[[
1
]])
assert
numpy
.
all
(
val
==
[[
1
]])
...
@@ -3369,9 +3370,9 @@ def test_local_mul_to_neg():
...
@@ -3369,9 +3370,9 @@ def test_local_mul_to_neg():
Test that a multiplication by -1 or -1.0 yields the appropriate data type
Test that a multiplication by -1 or -1.0 yields the appropriate data type
"""
"""
a
=
T
.
imatrix
()
a
=
T
.
imatrix
()
f1
=
theano
.
function
([
a
],
-
1
*
a
)
f1
=
theano
.
function
([
a
],
-
1
*
a
)
f2
=
theano
.
function
([
a
],
-
1.0
*
a
)
f2
=
theano
.
function
([
a
],
-
1.0
*
a
)
aval
=
numpy
.
random
.
randint
(
0
,
10
,(
2
,
2
))
.
astype
(
'int32'
)
aval
=
numpy
.
random
.
randint
(
0
,
10
,
(
2
,
2
))
.
astype
(
'int32'
)
if
config
.
cast_policy
==
'custom'
:
if
config
.
cast_policy
==
'custom'
:
assert
f1
(
aval
)
.
dtype
==
a
.
dtype
assert
f1
(
aval
)
.
dtype
==
a
.
dtype
assert
f2
(
aval
)
.
dtype
==
'float64'
assert
f2
(
aval
)
.
dtype
==
'float64'
...
...
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