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testgroup
pytensor
Commits
2b350631
提交
2b350631
authored
9月 29, 2010
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 optimization -max(-x) -> min(x). Add test for min() and the new optimization.
上级
e032bb8f
隐藏空白字符变更
内嵌
并排
正在显示
3 个修改的文件
包含
263 行增加
和
142 行删除
+263
-142
opt_uncanonicalize.py
theano/tensor/opt_uncanonicalize.py
+18
-16
test_basic.py
theano/tensor/tests/test_basic.py
+151
-126
test_opt_uncanonicalize.py
theano/tensor/tests/test_opt_uncanonicalize.py
+94
-0
没有找到文件。
theano/tensor/opt_uncanonicalize.py
浏览文件 @
2b350631
...
@@ -27,23 +27,12 @@ from basic import get_constant_value
...
@@ -27,23 +27,12 @@ from basic import get_constant_value
from
theano.tensor.opt
import
register_uncanonicalize
from
theano.tensor.opt
import
register_uncanonicalize
from
theano
import
scalar
as
scal
from
theano
import
scalar
as
scal
@register_uncanonicalize
@gof.local_optimizer
([
T
.
_shape
])
def
local_max_and_argmax_specialize
(
node
):
if
node
.
op
==
T
.
_max_and_argmax
:
if
len
(
node
.
outputs
[
1
]
.
clients
)
==
0
:
import
pdb
;
pdb
.
set_trace
()
try
:
axis
=
get_constant_value
(
node
.
inputs
[
1
])
except
ValueError
:
return
False
return
[
CAReduce
(
scal
.
maximum
,
axis
)(
node
.
inputs
[
0
]),
T
.
as_tensor_variable
(
0
)]
return
False
class
MaxAndArgmaxOptimizer
(
Optimizer
):
class
MaxAndArgmaxOptimizer
(
Optimizer
):
"""Graph optimizer for Fusion of elemwise operations"""
"""Replace MaxAndArgmax by CAReduce when the argmax is not used
This is faster as MaxAndArgmax don't have c code and execute it
in two pass.
"""
def
add_requirements
(
self
,
env
):
def
add_requirements
(
self
,
env
):
env
.
extend
(
toolbox
.
ReplaceValidate
())
env
.
extend
(
toolbox
.
ReplaceValidate
())
...
@@ -73,3 +62,16 @@ class MaxAndArgmaxOptimizer(Optimizer):
...
@@ -73,3 +62,16 @@ class MaxAndArgmaxOptimizer(Optimizer):
register_uncanonicalize
(
MaxAndArgmaxOptimizer
(),
name
=
'MaxAndArgmaxOptimizer'
)
register_uncanonicalize
(
MaxAndArgmaxOptimizer
(),
name
=
'MaxAndArgmaxOptimizer'
)
@register_uncanonicalize
@gof.local_optimizer
([
T
.
_shape
])
def
local_max_to_min
(
node
):
if
node
.
op
==
T
.
neg
and
node
.
inputs
[
0
]
.
owner
:
max
=
node
.
inputs
[
0
]
if
max
.
owner
and
isinstance
(
max
.
owner
.
op
,
CAReduce
)
and
max
.
owner
.
op
.
scalar_op
==
scal
.
maximum
:
neg
=
max
.
owner
.
inputs
[
0
]
if
neg
.
owner
and
neg
.
owner
.
op
==
T
.
neg
:
return
[
CAReduce
(
scal
.
minimum
,
max
.
owner
.
op
.
axis
)(
neg
.
owner
.
inputs
[
0
])]
return
False
theano/tensor/tests/test_basic.py
浏览文件 @
2b350631
...
@@ -821,8 +821,10 @@ class T_max_and_argmax(unittest.TestCase):
...
@@ -821,8 +821,10 @@ class T_max_and_argmax(unittest.TestCase):
n
=
as_tensor_variable
(
numpy
.
random
.
rand
(
2
,
3
))
n
=
as_tensor_variable
(
numpy
.
random
.
rand
(
2
,
3
))
v
,
i
=
eval_outputs
(
max_and_argmax
(
n
,
-
1
))
v
,
i
=
eval_outputs
(
max_and_argmax
(
n
,
-
1
))
self
.
failUnless
(
v
.
shape
==
(
2
,))
self
.
failUnless
(
v
.
shape
==
(
2
,))
self
.
failUnless
(
numpy
.
all
(
v
==
numpy
.
max
(
n
.
value
,
-
1
)))
v
,
i
=
eval_outputs
(
max_and_argmax
(
n
,
-
2
))
v
,
i
=
eval_outputs
(
max_and_argmax
(
n
,
-
2
))
self
.
failUnless
(
v
.
shape
==
(
3
,))
self
.
failUnless
(
v
.
shape
==
(
3
,))
self
.
failUnless
(
numpy
.
all
(
v
==
numpy
.
max
(
n
.
value
,
-
2
)))
v
=
eval_outputs
(
max_and_argmax
(
n
,
-
1
)[
0
]
.
shape
)
v
=
eval_outputs
(
max_and_argmax
(
n
,
-
1
)[
0
]
.
shape
)
assert
v
==
(
2
)
assert
v
==
(
2
)
v
=
eval_outputs
(
max_and_argmax
(
n
,
-
2
)[
0
]
.
shape
)
v
=
eval_outputs
(
max_and_argmax
(
n
,
-
2
)[
0
]
.
shape
)
...
@@ -846,21 +848,6 @@ class T_max_and_argmax(unittest.TestCase):
...
@@ -846,21 +848,6 @@ class T_max_and_argmax(unittest.TestCase):
v
=
eval_outputs
(
max_and_argmax
(
n
,
2
)[
0
]
.
shape
)
v
=
eval_outputs
(
max_and_argmax
(
n
,
2
)[
0
]
.
shape
)
assert
tuple
(
v
)
==
(
2
,
3
)
assert
tuple
(
v
)
==
(
2
,
3
)
def
test_optimization
(
self
):
#If we use only the max output, we should replace this op with a faster one.
data
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
2
,
3
),
dtype
=
config
.
floatX
)
n
=
matrix
()
f
=
function
([
n
],
max_and_argmax
(
n
,
0
)[
0
])
topo
=
f
.
maker
.
env
.
toposort
()
assert
len
(
topo
)
==
1
assert
isinstance
(
topo
[
0
]
.
op
,
CAReduce
)
f
=
function
([
n
],
max_and_argmax
(
n
,
0
))
topo
=
f
.
maker
.
env
.
toposort
()
assert
len
(
topo
)
==
1
assert
isinstance
(
topo
[
0
]
.
op
,
MaxAndArgmax
)
def
test_grad
(
self
):
def
test_grad
(
self
):
data
=
numpy
.
random
.
rand
(
2
,
3
)
data
=
numpy
.
random
.
rand
(
2
,
3
)
n
=
as_tensor_variable
(
data
)
n
=
as_tensor_variable
(
data
)
...
@@ -897,131 +884,136 @@ class T_max_and_argmax(unittest.TestCase):
...
@@ -897,131 +884,136 @@ class T_max_and_argmax(unittest.TestCase):
utt
.
verify_grad
(
lambda
v
:
max_and_argmax
(
v
.
flatten
())[
1
],
[
data
])
utt
.
verify_grad
(
lambda
v
:
max_and_argmax
(
v
.
flatten
())[
1
],
[
data
])
check_grad_max
(
data
,
eval_outputs
(
grad
(
max_and_argmax
(
n
.
flatten
())[
0
],
n
)))
check_grad_max
(
data
,
eval_outputs
(
grad
(
max_and_argmax
(
n
.
flatten
())[
0
],
n
)))
class
T_max
(
unittest
.
TestCase
):
class
T_m
in_m
ax
(
unittest
.
TestCase
):
def
setUp
(
self
):
def
setUp
(
self
):
utt
.
seed_rng
()
utt
.
seed_rng
()
MaxAndArgmax
.
debug
=
0
MaxAndArgmax
.
debug
=
0
def
_test0
(
self
):
def
test0
(
self
):
n
=
as_tensor_variable
(
5.0
)
for
fct
in
[
max
,
min
]:
v
=
eval_outputs
(
max
(
n
))
n
=
as_tensor_variable
(
5.0
)
self
.
failUnless
(
v
==
5.0
)
v
=
eval_outputs
(
fct
(
n
))
v
=
eval_outputs
(
max
(
n
)[
0
]
.
shape
)
self
.
failUnless
(
v
==
5.0
)
assert
len
(
v
)
==
0
v
=
eval_outputs
(
fct
(
n
)
.
shape
)
assert
len
(
v
)
==
0
def
test1
(
self
):
def
test1
(
self
):
n
=
as_tensor_variable
([
1
,
2
,
3
,
2
,
-
6
])
for
fct
,
nfct
in
[(
max
,
numpy
.
max
),(
min
,
numpy
.
min
)]:
v
=
eval_outputs
([
max
(
n
)])
n
=
as_tensor_variable
([
1
,
2
,
3
,
2
,
-
6
])
self
.
failUnless
(
v
==
3
)
v
=
eval_outputs
([
fct
(
n
)])
v
=
eval_outputs
(
max
(
n
)
.
shape
)
self
.
failUnless
(
v
==
nfct
(
n
.
value
))
assert
len
(
v
)
==
0
v
=
eval_outputs
(
fct
(
n
)
.
shape
)
assert
len
(
v
)
==
0
def
test2
(
self
):
def
test2
(
self
):
data
=
numpy
.
random
.
rand
(
2
,
3
)
for
fct
,
nfct
in
[(
max
,
numpy
.
max
),(
min
,
numpy
.
min
)]:
n
=
as_tensor_variable
(
data
)
data
=
numpy
.
random
.
rand
(
2
,
3
)
v
=
eval_outputs
(
max
(
n
,
-
1
))
n
=
as_tensor_variable
(
data
)
self
.
failUnless
(
numpy
.
all
(
v
==
numpy
.
max
(
data
,
-
1
)))
v
=
eval_outputs
(
fct
(
n
,
-
1
))
v
=
eval_outputs
(
max
(
n
)
.
shape
)
self
.
failUnless
(
numpy
.
all
(
v
==
nfct
(
data
,
-
1
)))
assert
v
==
(
2
)
v
=
eval_outputs
(
fct
(
n
)
.
shape
)
assert
v
==
(
2
)
def
test2b
(
self
):
def
test2b
(
self
):
data
=
numpy
.
random
.
rand
(
2
,
3
)
for
fct
,
nfct
in
[(
max
,
numpy
.
max
),(
min
,
numpy
.
min
)]:
n
=
as_tensor_variable
(
data
)
data
=
numpy
.
random
.
rand
(
2
,
3
)
v
=
eval_outputs
(
max
(
n
,
0
))
n
=
as_tensor_variable
(
data
)
self
.
failUnless
(
numpy
.
all
(
v
==
numpy
.
max
(
data
,
0
)))
v
=
eval_outputs
(
fct
(
n
,
0
))
v
=
eval_outputs
(
max
(
n
,
0
)
.
shape
)
self
.
failUnless
(
numpy
.
all
(
v
==
nfct
(
data
,
0
)))
assert
v
==
(
3
)
v
=
eval_outputs
(
max
(
n
,
1
)
.
shape
)
v
=
eval_outputs
(
fct
(
n
,
0
)
.
shape
)
assert
v
==
(
2
)
assert
v
==
(
3
)
v
=
eval_outputs
(
max
(
n
,[
0
,
1
])
.
shape
)
v
=
eval_outputs
(
fct
(
n
,
1
)
.
shape
)
assert
v
.
size
==
0
assert
v
==
(
2
)
v
=
eval_outputs
(
fct
(
n
,[
0
,
1
])
.
shape
)
assert
v
.
size
==
0
def
test2_invalid
(
self
):
def
test2_invalid
(
self
):
n
=
as_tensor_variable
(
numpy
.
random
.
rand
(
2
,
3
))
for
fct
in
[
max
,
min
]:
# Silence expected error messages
n
=
as_tensor_variable
(
numpy
.
random
.
rand
(
2
,
3
))
_logger
=
logging
.
getLogger
(
'theano.gof.opt'
)
# Silence expected error messages
oldlevel
=
_logger
.
getEffectiveLevel
(
)
_logger
=
logging
.
getLogger
(
'theano.gof.opt'
)
_logger
.
setLevel
(
logging
.
CRITICAL
)
oldlevel
=
_logger
.
getEffectiveLevel
(
)
try
:
_logger
.
setLevel
(
logging
.
CRITICAL
)
try
:
try
:
eval_outputs
(
max
(
n
,
3
))
try
:
assert
False
eval_outputs
(
fct
(
n
,
3
))
except
ValueError
,
e
:
assert
False
pass
except
ValueError
,
e
:
finally
:
pass
_logger
.
setLevel
(
oldlevel
)
finally
:
_logger
.
setLevel
(
oldlevel
)
def
test2_invalid_neg
(
self
):
def
test2_invalid_neg
(
self
):
n
=
as_tensor_variable
(
numpy
.
random
.
rand
(
2
,
3
))
for
fct
in
[
max
,
min
]:
old_stderr
=
sys
.
stderr
n
=
as_tensor_variable
(
numpy
.
random
.
rand
(
2
,
3
))
sys
.
stderr
=
StringIO
.
StringIO
()
old_stderr
=
sys
.
stderr
try
:
sys
.
stderr
=
StringIO
.
StringIO
()
try
:
try
:
eval_outputs
(
max
(
n
,
-
3
))
try
:
assert
False
eval_outputs
(
fct
(
n
,
-
3
))
except
ValueError
,
e
:
assert
False
pass
except
ValueError
,
e
:
finally
:
pass
sys
.
stderr
=
old_stderr
finally
:
sys
.
stderr
=
old_stderr
def
test2_valid_neg
(
self
):
def
test2_valid_neg
(
self
):
n
=
as_tensor_variable
(
numpy
.
random
.
rand
(
2
,
3
))
for
fct
,
nfct
in
[(
max
,
numpy
.
max
),(
min
,
numpy
.
min
)]:
v
=
eval_outputs
(
max
(
n
,
-
1
))
n
=
as_tensor_variable
(
numpy
.
random
.
rand
(
2
,
3
))
self
.
failUnless
(
v
.
shape
==
(
2
,))
v
=
eval_outputs
(
fct
(
n
,
-
1
))
v
=
eval_outputs
(
max
(
n
,
-
2
))
self
.
failUnless
(
v
.
shape
==
(
2
,))
self
.
failUnless
(
v
.
shape
==
(
3
,))
self
.
failUnless
(
numpy
.
all
(
v
==
nfct
(
n
.
value
,
-
1
)))
v
=
eval_outputs
(
max
(
n
,
-
1
)
.
shape
)
v
=
eval_outputs
(
fct
(
n
,
-
2
))
assert
v
==
(
2
)
self
.
failUnless
(
v
.
shape
==
(
3
,))
v
=
eval_outputs
(
max
(
n
,
-
2
)
.
shape
)
self
.
failUnless
(
numpy
.
all
(
v
==
nfct
(
n
.
value
,
-
2
)))
assert
v
==
(
3
)
v
=
eval_outputs
(
fct
(
n
,
-
1
)
.
shape
)
assert
v
==
(
2
)
v
=
eval_outputs
(
fct
(
n
,
-
2
)
.
shape
)
assert
v
==
(
3
)
def
test3
(
self
):
def
test3
(
self
):
n
=
as_tensor_variable
(
numpy
.
random
.
rand
(
2
,
3
,
4
))
for
fct
,
nfct
in
[(
max
,
numpy
.
max
),(
min
,
numpy
.
min
)]:
v
=
eval_outputs
(
max
(
n
,
0
))
n
=
as_tensor_variable
(
numpy
.
random
.
rand
(
2
,
3
,
4
))
self
.
failUnless
(
v
.
shape
==
(
3
,
4
))
v
=
eval_outputs
(
fct
(
n
,
0
))
self
.
failUnless
(
numpy
.
all
(
v
==
numpy
.
max
(
n
.
value
,
0
)))
self
.
failUnless
(
v
.
shape
==
(
3
,
4
))
v
=
eval_outputs
(
max
(
n
,
1
))
self
.
failUnless
(
numpy
.
all
(
v
==
nfct
(
n
.
value
,
0
)))
self
.
failUnless
(
v
.
shape
==
(
2
,
4
))
v
=
eval_outputs
(
fct
(
n
,
1
))
self
.
failUnless
(
numpy
.
all
(
v
==
numpy
.
max
(
n
.
value
,
1
)))
self
.
failUnless
(
v
.
shape
==
(
2
,
4
))
v
=
eval_outputs
(
max
(
n
,
2
))
self
.
failUnless
(
numpy
.
all
(
v
==
nfct
(
n
.
value
,
1
)))
self
.
failUnless
(
v
.
shape
==
(
2
,
3
))
v
=
eval_outputs
(
fct
(
n
,
2
))
self
.
failUnless
(
numpy
.
all
(
v
==
numpy
.
max
(
n
.
value
,
2
)))
self
.
failUnless
(
v
.
shape
==
(
2
,
3
))
v
=
eval_outputs
(
max
(
n
,[
0
,
1
]))
self
.
failUnless
(
numpy
.
all
(
v
==
nfct
(
n
.
value
,
2
)))
self
.
failUnless
(
v
.
shape
==
(
4
,))
v
=
eval_outputs
(
fct
(
n
,[
0
,
1
]))
self
.
failUnless
(
numpy
.
all
(
v
==
numpy
.
max
(
n
.
value
,
1
)
.
max
(
0
)))
self
.
failUnless
(
v
.
shape
==
(
4
,))
v
=
eval_outputs
(
max
(
n
,[
0
,
2
]))
self
.
failUnless
(
numpy
.
all
(
v
==
nfct
(
nfct
(
n
.
value
,
1
),
0
)))
self
.
failUnless
(
v
.
shape
==
(
3
,))
v
=
eval_outputs
(
fct
(
n
,[
0
,
2
]))
self
.
failUnless
(
numpy
.
all
(
v
==
numpy
.
max
(
n
.
value
,
2
)
.
max
(
0
)))
self
.
failUnless
(
v
.
shape
==
(
3
,))
v
=
eval_outputs
(
max
(
n
,[
1
,
2
]))
self
.
failUnless
(
numpy
.
all
(
v
==
nfct
(
nfct
(
n
.
value
,
2
),
0
)))
self
.
failUnless
(
v
.
shape
==
(
2
,))
v
=
eval_outputs
(
fct
(
n
,[
1
,
2
]))
self
.
failUnless
(
numpy
.
all
(
v
==
numpy
.
max
(
n
.
value
,
2
)
.
max
(
1
)))
self
.
failUnless
(
v
.
shape
==
(
2
,))
v
=
eval_outputs
(
max
(
n
,[
0
,
1
,
2
]))
self
.
failUnless
(
numpy
.
all
(
v
==
nfct
(
nfct
(
n
.
value
,
2
),
1
)))
self
.
failUnless
(
v
.
shape
==
())
v
=
eval_outputs
(
fct
(
n
,[
0
,
1
,
2
]))
self
.
failUnless
(
v
.
shape
==
())
v
=
eval_outputs
(
max
(
n
,
0
)
.
shape
)
assert
tuple
(
v
)
==
(
3
,
4
)
v
=
eval_outputs
(
fct
(
n
,
0
)
.
shape
)
v
=
eval_outputs
(
max
(
n
,
1
)
.
shape
)
assert
tuple
(
v
)
==
(
3
,
4
)
assert
tuple
(
v
)
==
(
2
,
4
)
v
=
eval_outputs
(
fct
(
n
,
1
)
.
shape
)
v
=
eval_outputs
(
max
(
n
,
2
)
.
shape
)
assert
tuple
(
v
)
==
(
2
,
4
)
assert
tuple
(
v
)
==
(
2
,
3
)
v
=
eval_outputs
(
fct
(
n
,
2
)
.
shape
)
v
=
eval_outputs
(
max
(
n
,[
0
,
1
])
.
shape
)
assert
tuple
(
v
)
==
(
2
,
3
)
self
.
failUnless
(
v
==
(
4
,))
v
=
eval_outputs
(
fct
(
n
,[
0
,
1
])
.
shape
)
v
=
eval_outputs
(
max
(
n
,[
0
,
2
])
.
shape
)
self
.
failUnless
(
v
==
(
4
,))
self
.
failUnless
(
v
==
(
3
,))
v
=
eval_outputs
(
fct
(
n
,[
0
,
2
])
.
shape
)
v
=
eval_outputs
(
max
(
n
,[
1
,
2
])
.
shape
)
self
.
failUnless
(
v
==
(
3
,))
self
.
failUnless
(
v
==
(
2
,))
v
=
eval_outputs
(
fct
(
n
,[
1
,
2
])
.
shape
)
v
=
eval_outputs
(
max
(
n
,[
0
,
1
,
2
])
.
shape
)
self
.
failUnless
(
v
==
(
2
,))
self
.
failUnless
(
v
.
size
==
0
)
v
=
eval_outputs
(
fct
(
n
,[
0
,
1
,
2
])
.
shape
)
self
.
failUnless
(
v
.
size
==
0
)
def
test_optimization
(
self
):
data
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
2
,
3
),
dtype
=
config
.
floatX
)
def
test_grad_max
(
self
):
n
=
matrix
()
f
=
function
([
n
],
max
(
n
,
0
))
topo
=
f
.
maker
.
env
.
toposort
()
assert
len
(
topo
)
==
1
assert
isinstance
(
topo
[
0
]
.
op
,
CAReduce
)
f
(
data
)
def
test_grad
(
self
):
data
=
numpy
.
random
.
rand
(
2
,
3
)
data
=
numpy
.
random
.
rand
(
2
,
3
)
n
=
as_tensor_variable
(
data
)
n
=
as_tensor_variable
(
data
)
...
@@ -1045,18 +1037,51 @@ class T_max(unittest.TestCase):
...
@@ -1045,18 +1037,51 @@ class T_max(unittest.TestCase):
utt
.
verify_grad
(
lambda
v
:
max
(
v
),
[
data
])
utt
.
verify_grad
(
lambda
v
:
max
(
v
),
[
data
])
utt
.
verify_grad
(
lambda
v
:
max
(
v
,
axis
=
[
0
]),
[
data
])
utt
.
verify_grad
(
lambda
v
:
max
(
v
,
axis
=
[
0
]),
[
data
])
check_grad_max
(
data
,
eval_outputs
(
grad
(
max
_and_argmax
(
n
,
axis
=
0
)[
0
]
,
n
)),
axis
=
0
)
check_grad_max
(
data
,
eval_outputs
(
grad
(
max
(
n
,
axis
=
0
)
,
n
)),
axis
=
0
)
utt
.
verify_grad
(
lambda
v
:
max
(
v
,
axis
=
[
1
]),
[
data
])
utt
.
verify_grad
(
lambda
v
:
max
(
v
,
axis
=
[
1
]),
[
data
])
#check_grad_max(data,eval_outputs(grad(max
_and_argmax(n,axis=1)[0]
,n)),axis=1)
#check_grad_max(data,eval_outputs(grad(max
(n,axis=1)
,n)),axis=1)
utt
.
verify_grad
(
lambda
v
:
max
(
v
.
flatten
()),
[
data
])
utt
.
verify_grad
(
lambda
v
:
max
(
v
.
flatten
()),
[
data
])
check_grad_max
(
data
,
eval_outputs
(
grad
(
max_and_argmax
(
n
.
flatten
())[
0
],
n
)))
check_grad_max
(
data
,
eval_outputs
(
grad
(
max
(
n
.
flatten
()),
n
)))
def
test_grad_min
(
self
):
data
=
numpy
.
random
.
rand
(
2
,
3
)
n
=
as_tensor_variable
(
data
)
def
check_grad_min
(
data
,
min_grad_data
,
axis
=
None
):
#This work only for axis in [0,None]
assert
axis
in
[
0
,
None
]
z
=
numpy
.
zeros_like
(
data
)
z
=
z
.
flatten
()
argmin
=
numpy
.
argmin
(
data
,
axis
=
axis
)
if
argmin
.
ndim
==
0
:
z
[
numpy
.
argmin
(
data
,
axis
=
axis
)]
+=
1
else
:
for
id
,
v
in
enumerate
(
argmin
):
z
[
v
*
numpy
.
prod
(
data
.
shape
[
data
.
ndim
-
1
:
axis
:
-
1
])
+
id
]
+=
1
z
=
z
.
reshape
(
data
.
shape
)
assert
numpy
.
all
(
min_grad_data
==
z
)
#test grad of min
#axis is the last one
utt
.
verify_grad
(
lambda
v
:
min
(
v
),
[
data
])
utt
.
verify_grad
(
lambda
v
:
min
(
v
,
axis
=
[
0
]),
[
data
])
check_grad_min
(
data
,
eval_outputs
(
grad
(
min
(
n
,
axis
=
0
),
n
)),
axis
=
0
)
utt
.
verify_grad
(
lambda
v
:
min
(
v
,
axis
=
[
1
]),
[
data
])
#check_grad_min(data,eval_outputs(grad(min(n,axis=1),n)),axis=1)
utt
.
verify_grad
(
lambda
v
:
min
(
v
.
flatten
()),
[
data
])
check_grad_min
(
data
,
eval_outputs
(
grad
(
min
(
n
.
flatten
()),
n
)))
@dec.knownfailureif
(
True
,
@dec.knownfailureif
(
True
,
"We don't implement the gradient of max with multiple axis as the same time"
)
"We don't implement the gradient of max with multiple axis as the same time"
)
def
test_grad_list
(
self
):
def
test_grad_list
(
self
):
utt
.
verify_grad
(
lambda
v
:
max
(
v
,
axis
=
[
0
,
1
]),
[
data
])
for
fct
in
[
max
,
min
]:
utt
.
verify_grad
(
lambda
v
:
fct
(
v
,
axis
=
[
0
,
1
]),
[
data
])
#check_grad_max(data,eval_outputs(grad(max_and_argmax(n,axis=1)[0],n)),axis=1)
#check_grad_max(data,eval_outputs(grad(max_and_argmax(n,axis=1)[0],n)),axis=1)
class
T_subtensor
(
unittest
.
TestCase
):
class
T_subtensor
(
unittest
.
TestCase
):
...
...
theano/tensor/tests/test_opt_uncanonicalize.py
0 → 100644
浏览文件 @
2b350631
import
unittest
import
numpy
from
theano
import
function
,
config
import
theano.tensor
as
tensor
#from theano.tensor import matrix,max_and_argmax,MaaxAndArgmax,neg
from
theano.tensor.elemwise
import
CAReduce
from
theano.tests
import
unittest_tools
as
utt
class
T_max_and_argmax
(
unittest
.
TestCase
):
def
test_optimization
(
self
):
#If we use only the max output, we should replace this op with a faster one.
data
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
2
,
3
),
dtype
=
config
.
floatX
)
n
=
tensor
.
matrix
()
f
=
function
([
n
],
tensor
.
max_and_argmax
(
n
,
0
)[
0
])
topo
=
f
.
maker
.
env
.
toposort
()
assert
len
(
topo
)
==
1
assert
isinstance
(
topo
[
0
]
.
op
,
CAReduce
)
f
=
function
([
n
],
tensor
.
max_and_argmax
(
n
,
0
))
topo
=
f
.
maker
.
env
.
toposort
()
assert
len
(
topo
)
==
1
assert
isinstance
(
topo
[
0
]
.
op
,
tensor
.
MaxAndArgmax
)
class
T_min_max
(
unittest
.
TestCase
):
def
setUp
(
self
):
utt
.
seed_rng
()
def
test_optimization_max
(
self
):
data
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
2
,
3
),
dtype
=
config
.
floatX
)
n
=
tensor
.
matrix
()
f
=
function
([
n
],
tensor
.
max
(
n
,
0
))
topo
=
f
.
maker
.
env
.
toposort
()
assert
len
(
topo
)
==
1
assert
isinstance
(
topo
[
0
]
.
op
,
CAReduce
)
f
(
data
)
f
=
function
([
n
],
tensor
.
max
(
-
n
,
0
))
topo
=
f
.
maker
.
env
.
toposort
()
assert
len
(
topo
)
==
2
assert
topo
[
0
]
.
op
==
tensor
.
neg
assert
isinstance
(
topo
[
1
]
.
op
,
CAReduce
)
f
(
data
)
f
=
function
([
n
],
-
tensor
.
max
(
n
,
0
))
topo
=
f
.
maker
.
env
.
toposort
()
assert
len
(
topo
)
==
2
assert
isinstance
(
topo
[
0
]
.
op
,
CAReduce
)
assert
topo
[
1
]
.
op
==
tensor
.
neg
f
(
data
)
f
=
function
([
n
],
-
tensor
.
max
(
-
n
,
0
))
topo
=
f
.
maker
.
env
.
toposort
()
assert
len
(
topo
)
==
1
assert
isinstance
(
topo
[
0
]
.
op
,
CAReduce
)
#min
f
(
data
)
def
test_optimization_min
(
self
):
data
=
numpy
.
asarray
(
numpy
.
random
.
rand
(
2
,
3
),
dtype
=
config
.
floatX
)
n
=
tensor
.
matrix
()
f
=
function
([
n
],
tensor
.
min
(
n
,
0
))
topo
=
f
.
maker
.
env
.
toposort
()
assert
len
(
topo
)
==
1
assert
isinstance
(
topo
[
0
]
.
op
,
CAReduce
)
f
(
data
)
#test variant with neg to make sure we optimize correctly
f
=
function
([
n
],
tensor
.
min
(
-
n
,
0
))
topo
=
f
.
maker
.
env
.
toposort
()
assert
len
(
topo
)
==
2
assert
isinstance
(
topo
[
0
]
.
op
,
CAReduce
)
#max
assert
topo
[
1
]
.
op
==
tensor
.
neg
f
(
data
)
f
=
function
([
n
],
-
tensor
.
min
(
n
,
0
))
topo
=
f
.
maker
.
env
.
toposort
()
assert
len
(
topo
)
==
2
assert
topo
[
0
]
.
op
==
tensor
.
neg
assert
isinstance
(
topo
[
1
]
.
op
,
CAReduce
)
#max
f
(
data
)
f
=
function
([
n
],
-
tensor
.
min
(
-
n
,
0
))
topo
=
f
.
maker
.
env
.
toposort
()
assert
len
(
topo
)
==
1
assert
isinstance
(
topo
[
0
]
.
op
,
CAReduce
)
#max
f
(
data
)
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