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testgroup
pytensor
Commits
7cfd2879
提交
7cfd2879
authored
3月 14, 2017
作者:
Frédéric Bastien
提交者:
GitHub
3月 14, 2017
浏览文件
操作
浏览文件
下载
差异文件
Merge pull request #5486 from affanv14/gradchange
Change grad to L_op
上级
a206d3f0
2963f85a
隐藏空白字符变更
内嵌
并排
正在显示
5 个修改的文件
包含
121 行增加
和
126 行删除
+121
-126
basic.py
theano/scalar/basic.py
+82
-89
basic_scipy.py
theano/scalar/basic_scipy.py
+20
-20
elemwise.py
theano/tensor/elemwise.py
+9
-4
nnet.py
theano/tensor/nnet/nnet.py
+6
-8
pool.py
theano/tensor/signal/pool.py
+4
-5
没有找到文件。
theano/scalar/basic.py
浏览文件 @
7cfd2879
...
@@ -1076,6 +1076,9 @@ class ScalarOp(Op):
...
@@ -1076,6 +1076,9 @@ class ScalarOp(Op):
raise
utils
.
MethodNotDefined
(
"grad"
,
type
(
self
),
raise
utils
.
MethodNotDefined
(
"grad"
,
type
(
self
),
self
.
__class__
.
__name__
)
self
.
__class__
.
__name__
)
def
L_op
(
self
,
inputs
,
outputs
,
output_gradients
):
return
self
.
grad
(
inputs
,
output_gradients
)
def
__eq__
(
self
,
other
):
def
__eq__
(
self
,
other
):
test
=
(
type
(
self
)
==
type
(
other
)
and
test
=
(
type
(
self
)
==
type
(
other
)
and
getattr
(
self
,
'output_types_preference'
,
None
)
==
getattr
(
self
,
'output_types_preference'
,
None
)
==
...
@@ -1191,10 +1194,9 @@ class LogicalComparison(BinaryScalarOp):
...
@@ -1191,10 +1194,9 @@ class LogicalComparison(BinaryScalarOp):
def
output_types
(
self
,
*
input_dtypes
):
def
output_types
(
self
,
*
input_dtypes
):
return
[
bool
]
if
getattr
(
self
,
'bool'
,
False
)
else
[
int8
]
return
[
bool
]
if
getattr
(
self
,
'bool'
,
False
)
else
[
int8
]
def
grad
(
self
,
in
puts
,
output_gradients
):
def
L_op
(
self
,
inputs
,
out
puts
,
output_gradients
):
x
,
y
=
inputs
x
,
y
=
inputs
out
=
self
(
x
,
y
)
assert
outputs
[
0
]
.
type
==
bool
assert
out
.
type
==
bool
return
[
x
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
),
return
[
x
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
),
y
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
)]
y
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
)]
...
@@ -1224,10 +1226,9 @@ class FixedLogicalComparison(UnaryScalarOp):
...
@@ -1224,10 +1226,9 @@ class FixedLogicalComparison(UnaryScalarOp):
def
output_types
(
self
,
*
input_dtypes
):
def
output_types
(
self
,
*
input_dtypes
):
return
[
bool
]
if
getattr
(
self
,
'bool'
,
False
)
else
[
int8
]
return
[
bool
]
if
getattr
(
self
,
'bool'
,
False
)
else
[
int8
]
def
grad
(
self
,
in
puts
,
output_gradients
):
def
L_op
(
self
,
inputs
,
out
puts
,
output_gradients
):
x
,
=
inputs
x
,
=
inputs
out
=
self
(
x
)
assert
outputs
[
0
]
.
type
==
bool
assert
out
.
type
==
bool
return
[
x
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
)]
def
c_code_cache_version
(
self
):
def
c_code_cache_version
(
self
):
...
@@ -1434,7 +1435,7 @@ class InRange(LogicalComparison):
...
@@ -1434,7 +1435,7 @@ class InRange(LogicalComparison):
else
:
else
:
return
elem
.
zeros_like
()
return
elem
.
zeros_like
()
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,
low
,
hi
)
=
inputs
(
x
,
low
,
hi
)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
grads
=
[]
grads
=
[]
...
@@ -1458,14 +1459,13 @@ class Switch(ScalarOp):
...
@@ -1458,14 +1459,13 @@ class Switch(ScalarOp):
(
z
,)
=
outputs
(
z
,)
=
outputs
return
"
%(z)
s =
%(cond)
s ?
%(ift)
s :
%(iff)
s;"
%
locals
()
return
"
%(z)
s =
%(cond)
s ?
%(ift)
s :
%(iff)
s;"
%
locals
()
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
cond
,
ift
,
iff
)
=
inputs
(
cond
,
ift
,
iff
)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
first_part
=
switch
(
cond
,
gz
,
0.
)
first_part
=
switch
(
cond
,
gz
,
0.
)
second_part
=
switch
(
cond
,
0.
,
gz
)
second_part
=
switch
(
cond
,
0.
,
gz
)
out
=
self
(
cond
,
ift
,
iff
)
if
(
outputs
[
0
]
.
type
.
dtype
in
discrete_types
):
if
out
.
type
.
dtype
in
discrete_types
:
first_part
=
0.
first_part
=
0.
second_part
=
0.
second_part
=
0.
...
@@ -1604,7 +1604,7 @@ class Maximum(BinaryScalarOp):
...
@@ -1604,7 +1604,7 @@ class Maximum(BinaryScalarOp):
return
(
'
%(z)
s = ((
%(y)
s)>(
%(x)
s)? (
%(y)
s): '
return
(
'
%(z)
s = ((
%(y)
s)>(
%(x)
s)? (
%(y)
s): '
'((
%(x)
s)>=(
%(y)
s)? (
%(x)
s): nan("")));'
%
locals
())
'((
%(x)
s)>=(
%(y)
s)? (
%(x)
s): nan("")));'
%
locals
())
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,
y
)
=
inputs
(
x
,
y
)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
gz
.
type
in
complex_types
:
if
gz
.
type
in
complex_types
:
...
@@ -1612,14 +1612,12 @@ class Maximum(BinaryScalarOp):
...
@@ -1612,14 +1612,12 @@ class Maximum(BinaryScalarOp):
# but the gradient for complex is not.
# but the gradient for complex is not.
raise
NotImplementedError
()
raise
NotImplementedError
()
output
=
self
(
x
,
y
)
if
outputs
[
0
]
.
type
in
discrete_types
:
if
output
.
type
in
discrete_types
:
return
[
x
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
),
return
[
x
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
),
y
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
)]
y
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
)]
gx
=
eq
(
output
,
x
)
*
gz
gx
=
eq
(
output
s
[
0
]
,
x
)
*
gz
gy
=
eq
(
output
,
y
)
*
gz
gy
=
eq
(
output
s
[
0
]
,
y
)
*
gz
return
(
gx
,
gy
)
return
(
gx
,
gy
)
maximum
=
Maximum
(
upcast_out
,
name
=
'maximum'
)
maximum
=
Maximum
(
upcast_out
,
name
=
'maximum'
)
...
@@ -1642,7 +1640,7 @@ class Minimum(BinaryScalarOp):
...
@@ -1642,7 +1640,7 @@ class Minimum(BinaryScalarOp):
return
(
'
%(z)
s = ((
%(y)
s)<(
%(x)
s)? (
%(y)
s): '
return
(
'
%(z)
s = ((
%(y)
s)<(
%(x)
s)? (
%(y)
s): '
'((
%(x)
s)<=(
%(y)
s)? (
%(x)
s): nan("")));'
%
locals
())
'((
%(x)
s)<=(
%(y)
s)? (
%(x)
s): nan("")));'
%
locals
())
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,
y
)
=
inputs
(
x
,
y
)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
gz
.
type
in
complex_types
:
if
gz
.
type
in
complex_types
:
...
@@ -1650,12 +1648,11 @@ class Minimum(BinaryScalarOp):
...
@@ -1650,12 +1648,11 @@ class Minimum(BinaryScalarOp):
# but the gradient for complex is not.
# but the gradient for complex is not.
raise
NotImplementedError
()
raise
NotImplementedError
()
output
=
minimum
(
x
,
y
)
if
outputs
[
0
]
.
type
in
discrete_types
:
if
output
.
type
in
discrete_types
:
return
[
x
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
),
return
[
x
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
),
y
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
)]
y
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
)]
gx
=
eq
(
output
,
x
)
*
gz
gx
=
eq
(
output
s
[
0
]
,
x
)
*
gz
gy
=
eq
(
output
,
y
)
*
gz
gy
=
eq
(
output
s
[
0
]
,
y
)
*
gz
return
(
gx
,
gy
)
return
(
gx
,
gy
)
minimum
=
Minimum
(
upcast_out
,
name
=
'minimum'
)
minimum
=
Minimum
(
upcast_out
,
name
=
'minimum'
)
...
@@ -1679,11 +1676,11 @@ class Add(ScalarOp):
...
@@ -1679,11 +1676,11 @@ class Add(ScalarOp):
else
:
else
:
return
z
+
" = "
+
op
.
join
(
inputs
)
+
";"
return
z
+
" = "
+
op
.
join
(
inputs
)
+
";"
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
gz
,)
=
gout
(
gz
,)
=
gout
if
gz
.
type
in
complex_types
:
if
gz
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
*
inputs
)
.
type
in
discrete_types
:
if
(
outputs
[
0
]
.
type
in
discrete_types
)
:
assert
gz
is
not
None
assert
gz
is
not
None
retval
=
[]
retval
=
[]
for
ii
,
inp
in
enumerate
(
inputs
):
for
ii
,
inp
in
enumerate
(
inputs
):
...
@@ -1771,13 +1768,12 @@ class Sub(BinaryScalarOp):
...
@@ -1771,13 +1768,12 @@ class Sub(BinaryScalarOp):
(
z
,)
=
outputs
(
z
,)
=
outputs
return
"
%(z)
s =
%(x)
s -
%(y)
s;"
%
locals
()
return
"
%(z)
s =
%(x)
s -
%(y)
s;"
%
locals
()
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,
y
)
=
inputs
(
x
,
y
)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
gz
.
type
in
complex_types
:
if
gz
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
outputs
[
0
]
.
type
in
discrete_types
:
if
(
x
-
y
)
.
type
in
discrete_types
:
return
[
x
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
),
return
[
x
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
),
y
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
)]
y
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
)]
...
@@ -2064,11 +2060,10 @@ class Mod(BinaryScalarOp):
...
@@ -2064,11 +2060,10 @@ class Mod(BinaryScalarOp):
}
}
"""
)
%
locals
()
"""
)
%
locals
()
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,
y
)
=
inputs
(
x
,
y
)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
z
=
self
(
x
,
y
)
if
outputs
[
0
]
.
type
.
dtype
in
discrete_types
:
if
z
.
type
.
dtype
in
discrete_types
:
# The gradient does not flow in if the output is discrete
# The gradient does not flow in if the output is discrete
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
),
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
),
y
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
y
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
...
@@ -2092,13 +2087,13 @@ class Pow(BinaryScalarOp):
...
@@ -2092,13 +2087,13 @@ class Pow(BinaryScalarOp):
raise
NotImplementedError
(
'type not supported'
,
type
)
raise
NotImplementedError
(
'type not supported'
,
type
)
return
"
%(z)
s = pow(
%(x)
s,
%(y)
s);"
%
locals
()
return
"
%(z)
s = pow(
%(x)
s,
%(y)
s);"
%
locals
()
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,
y
)
=
inputs
(
x
,
y
)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
gz
.
type
in
complex_types
:
if
gz
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
,
y
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
return
[
x
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
),
return
[
x
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
),
y
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
)]
y
.
zeros_like
()
.
astype
(
theano
.
config
.
floatX
)]
...
@@ -2172,7 +2167,7 @@ class Clip(ScalarOp):
...
@@ -2172,7 +2167,7 @@ class Clip(ScalarOp):
(
z
,)
=
outputs
(
z
,)
=
outputs
return
"
%(z)
s =
%(x)
s <
%(min)
s ?
%(min)
s :
%(x)
s >
%(max)
s ?
%(max)
s :
%(x)
s;"
%
locals
()
return
"
%(z)
s =
%(x)
s <
%(min)
s ?
%(min)
s :
%(x)
s >
%(max)
s ?
%(max)
s :
%(x)
s;"
%
locals
()
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,
mn
,
mx
)
=
inputs
(
x
,
mn
,
mx
)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
assert
gz
.
type
not
in
complex_types
assert
gz
.
type
not
in
complex_types
...
@@ -2180,10 +2175,8 @@ class Clip(ScalarOp):
...
@@ -2180,10 +2175,8 @@ class Clip(ScalarOp):
gmn
=
(
x
<
mn
)
*
gz
gmn
=
(
x
<
mn
)
*
gz
gmx
=
(
x
>
mx
)
*
gz
gmx
=
(
x
>
mx
)
*
gz
out
=
self
(
x
,
mn
,
mx
)
def
handle_int
(
v
):
def
handle_int
(
v
):
if
out
.
type
in
int_types
:
if
out
puts
[
0
]
.
type
in
int_types
:
return
v
.
zeros_like
()
.
astype
(
config
.
floatX
)
return
v
.
zeros_like
()
.
astype
(
config
.
floatX
)
return
v
return
v
...
@@ -2366,10 +2359,10 @@ class Abs(UnaryScalarOp):
...
@@ -2366,10 +2359,10 @@ class Abs(UnaryScalarOp):
def
impl
(
self
,
x
):
def
impl
(
self
,
x
):
return
numpy
.
abs
(
x
)
return
numpy
.
abs
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
self
(
x
)
.
type
in
discrete_types
:
if
(
outputs
[
0
]
.
type
in
discrete_types
)
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -2624,10 +2617,10 @@ class Neg(UnaryScalarOp):
...
@@ -2624,10 +2617,10 @@ class Neg(UnaryScalarOp):
def
impl
(
self
,
x
):
def
impl
(
self
,
x
):
return
-
x
return
-
x
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -2659,12 +2652,12 @@ class Inv(UnaryScalarOp):
...
@@ -2659,12 +2652,12 @@ class Inv(UnaryScalarOp):
def
impl
(
self
,
x
):
def
impl
(
self
,
x
):
return
numpy
.
float32
(
1.0
)
/
x
return
numpy
.
float32
(
1.0
)
/
x
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -2698,12 +2691,12 @@ class Log(UnaryScalarOp):
...
@@ -2698,12 +2691,12 @@ class Log(UnaryScalarOp):
return
numpy
.
log
(
x
,
sig
=
'f'
)
return
numpy
.
log
(
x
,
sig
=
'f'
)
return
numpy
.
log
(
x
)
return
numpy
.
log
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -2740,12 +2733,12 @@ class Log2(UnaryScalarOp):
...
@@ -2740,12 +2733,12 @@ class Log2(UnaryScalarOp):
return
numpy
.
log2
(
x
,
sig
=
'f'
)
return
numpy
.
log2
(
x
,
sig
=
'f'
)
return
numpy
.
log2
(
x
)
return
numpy
.
log2
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -2779,12 +2772,12 @@ class Log10(UnaryScalarOp):
...
@@ -2779,12 +2772,12 @@ class Log10(UnaryScalarOp):
return
numpy
.
log10
(
x
,
sig
=
'f'
)
return
numpy
.
log10
(
x
,
sig
=
'f'
)
return
numpy
.
log10
(
x
)
return
numpy
.
log10
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -2816,12 +2809,12 @@ class Log1p(UnaryScalarOp):
...
@@ -2816,12 +2809,12 @@ class Log1p(UnaryScalarOp):
return
numpy
.
log1p
(
x
,
sig
=
'f'
)
return
numpy
.
log1p
(
x
,
sig
=
'f'
)
return
numpy
.
log1p
(
x
)
return
numpy
.
log1p
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
gz
.
type
in
complex_types
:
if
gz
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -2851,12 +2844,12 @@ class Exp(UnaryScalarOp):
...
@@ -2851,12 +2844,12 @@ class Exp(UnaryScalarOp):
return
numpy
.
exp
(
x
,
sig
=
'f'
)
return
numpy
.
exp
(
x
,
sig
=
'f'
)
return
numpy
.
exp
(
x
)
return
numpy
.
exp
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -2884,12 +2877,12 @@ class Exp2(UnaryScalarOp):
...
@@ -2884,12 +2877,12 @@ class Exp2(UnaryScalarOp):
return
numpy
.
exp2
(
x
,
sig
=
'f'
)
return
numpy
.
exp2
(
x
,
sig
=
'f'
)
return
numpy
.
exp2
(
x
)
return
numpy
.
exp2
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -2917,12 +2910,12 @@ class Expm1(UnaryScalarOp):
...
@@ -2917,12 +2910,12 @@ class Expm1(UnaryScalarOp):
return
numpy
.
expm1
(
x
,
sig
=
'f'
)
return
numpy
.
expm1
(
x
,
sig
=
'f'
)
return
numpy
.
expm1
(
x
)
return
numpy
.
expm1
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -2948,12 +2941,12 @@ class Sqr(UnaryScalarOp):
...
@@ -2948,12 +2941,12 @@ class Sqr(UnaryScalarOp):
def
impl
(
self
,
x
):
def
impl
(
self
,
x
):
return
x
*
x
return
x
*
x
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
gz
.
type
in
complex_types
:
if
gz
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -2979,12 +2972,12 @@ class Sqrt(UnaryScalarOp):
...
@@ -2979,12 +2972,12 @@ class Sqrt(UnaryScalarOp):
return
numpy
.
sqrt
(
x
,
sig
=
'f'
)
return
numpy
.
sqrt
(
x
,
sig
=
'f'
)
return
numpy
.
sqrt
(
x
)
return
numpy
.
sqrt
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
gz
.
type
in
complex_types
:
if
gz
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -3012,12 +3005,12 @@ class Deg2Rad(UnaryScalarOp):
...
@@ -3012,12 +3005,12 @@ class Deg2Rad(UnaryScalarOp):
return
numpy
.
deg2rad
(
x
,
sig
=
'f'
)
return
numpy
.
deg2rad
(
x
,
sig
=
'f'
)
return
numpy
.
deg2rad
(
x
)
return
numpy
.
deg2rad
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
gz
.
type
in
complex_types
:
if
gz
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -3045,12 +3038,12 @@ class Rad2Deg(UnaryScalarOp):
...
@@ -3045,12 +3038,12 @@ class Rad2Deg(UnaryScalarOp):
return
numpy
.
rad2deg
(
x
,
sig
=
'f'
)
return
numpy
.
rad2deg
(
x
,
sig
=
'f'
)
return
numpy
.
rad2deg
(
x
)
return
numpy
.
rad2deg
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
gz
.
type
in
complex_types
:
if
gz
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -3080,12 +3073,12 @@ class Cos(UnaryScalarOp):
...
@@ -3080,12 +3073,12 @@ class Cos(UnaryScalarOp):
return
numpy
.
cos
(
x
,
sig
=
'f'
)
return
numpy
.
cos
(
x
,
sig
=
'f'
)
return
numpy
.
cos
(
x
)
return
numpy
.
cos
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
gz
.
type
in
complex_types
:
if
gz
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -3113,12 +3106,12 @@ class ArcCos(UnaryScalarOp):
...
@@ -3113,12 +3106,12 @@ class ArcCos(UnaryScalarOp):
return
numpy
.
arccos
(
x
,
sig
=
'f'
)
return
numpy
.
arccos
(
x
,
sig
=
'f'
)
return
numpy
.
arccos
(
x
)
return
numpy
.
arccos
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
gz
.
type
in
complex_types
:
if
gz
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -3148,12 +3141,12 @@ class Sin(UnaryScalarOp):
...
@@ -3148,12 +3141,12 @@ class Sin(UnaryScalarOp):
return
numpy
.
sin
(
x
,
sig
=
'f'
)
return
numpy
.
sin
(
x
,
sig
=
'f'
)
return
numpy
.
sin
(
x
)
return
numpy
.
sin
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -3181,12 +3174,12 @@ class ArcSin(UnaryScalarOp):
...
@@ -3181,12 +3174,12 @@ class ArcSin(UnaryScalarOp):
return
numpy
.
arcsin
(
x
,
sig
=
'f'
)
return
numpy
.
arcsin
(
x
,
sig
=
'f'
)
return
numpy
.
arcsin
(
x
)
return
numpy
.
arcsin
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
gz
.
type
in
complex_types
:
if
gz
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -3214,12 +3207,12 @@ class Tan(UnaryScalarOp):
...
@@ -3214,12 +3207,12 @@ class Tan(UnaryScalarOp):
return
numpy
.
tan
(
x
,
sig
=
'f'
)
return
numpy
.
tan
(
x
,
sig
=
'f'
)
return
numpy
.
tan
(
x
)
return
numpy
.
tan
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -3247,12 +3240,12 @@ class ArcTan(UnaryScalarOp):
...
@@ -3247,12 +3240,12 @@ class ArcTan(UnaryScalarOp):
return
numpy
.
arctan
(
x
,
sig
=
'f'
)
return
numpy
.
arctan
(
x
,
sig
=
'f'
)
return
numpy
.
arctan
(
x
)
return
numpy
.
arctan
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
gz
.
type
in
complex_types
:
if
gz
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -3282,13 +3275,13 @@ class ArcTan2(BinaryScalarOp):
...
@@ -3282,13 +3275,13 @@ class ArcTan2(BinaryScalarOp):
return
numpy
.
arctan2
(
y
,
x
,
sig
=
'f'
)
return
numpy
.
arctan2
(
y
,
x
,
sig
=
'f'
)
return
numpy
.
arctan2
(
y
,
x
)
return
numpy
.
arctan2
(
y
,
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
y
,
x
)
=
inputs
(
y
,
x
)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
gz
.
type
in
complex_types
:
if
gz
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
else
:
else
:
if
self
(
x
,
y
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
gx
=
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)
gx
=
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)
else
:
else
:
...
@@ -3329,12 +3322,12 @@ class Cosh(UnaryScalarOp):
...
@@ -3329,12 +3322,12 @@ class Cosh(UnaryScalarOp):
return
numpy
.
cosh
(
x
,
sig
=
'f'
)
return
numpy
.
cosh
(
x
,
sig
=
'f'
)
return
numpy
.
cosh
(
x
)
return
numpy
.
cosh
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -3362,12 +3355,12 @@ class ArcCosh(UnaryScalarOp):
...
@@ -3362,12 +3355,12 @@ class ArcCosh(UnaryScalarOp):
return
numpy
.
arccosh
(
x
,
sig
=
'f'
)
return
numpy
.
arccosh
(
x
,
sig
=
'f'
)
return
numpy
.
arccosh
(
x
)
return
numpy
.
arccosh
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -3399,12 +3392,12 @@ class Sinh(UnaryScalarOp):
...
@@ -3399,12 +3392,12 @@ class Sinh(UnaryScalarOp):
return
numpy
.
sinh
(
x
,
sig
=
'f'
)
return
numpy
.
sinh
(
x
,
sig
=
'f'
)
return
numpy
.
sinh
(
x
)
return
numpy
.
sinh
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -3432,12 +3425,12 @@ class ArcSinh(UnaryScalarOp):
...
@@ -3432,12 +3425,12 @@ class ArcSinh(UnaryScalarOp):
return
numpy
.
arcsinh
(
x
,
sig
=
'f'
)
return
numpy
.
arcsinh
(
x
,
sig
=
'f'
)
return
numpy
.
arcsinh
(
x
)
return
numpy
.
arcsinh
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -3470,12 +3463,12 @@ class Tanh(UnaryScalarOp):
...
@@ -3470,12 +3463,12 @@ class Tanh(UnaryScalarOp):
return
numpy
.
tanh
(
x
,
sig
=
'f'
)
return
numpy
.
tanh
(
x
,
sig
=
'f'
)
return
numpy
.
tanh
(
x
)
return
numpy
.
tanh
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -3503,12 +3496,12 @@ class ArcTanh(UnaryScalarOp):
...
@@ -3503,12 +3496,12 @@ class ArcTanh(UnaryScalarOp):
return
numpy
.
arctanh
(
x
,
sig
=
'f'
)
return
numpy
.
arctanh
(
x
,
sig
=
'f'
)
return
numpy
.
arctanh
(
x
)
return
numpy
.
arctanh
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
...
theano/scalar/basic_scipy.py
浏览文件 @
7cfd2879
...
@@ -32,12 +32,12 @@ class Erf(UnaryScalarOp):
...
@@ -32,12 +32,12 @@ class Erf(UnaryScalarOp):
else
:
else
:
super
(
Erf
,
self
)
.
impl
(
x
)
super
(
Erf
,
self
)
.
impl
(
x
)
def
grad
(
self
,
inp
,
grads
):
def
L_op
(
self
,
inputs
,
outputs
,
grads
):
x
,
=
inp
x
,
=
inp
uts
gz
,
=
grads
gz
,
=
grads
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -63,12 +63,12 @@ class Erfc(UnaryScalarOp):
...
@@ -63,12 +63,12 @@ class Erfc(UnaryScalarOp):
else
:
else
:
super
(
Erfc
,
self
)
.
impl
(
x
)
super
(
Erfc
,
self
)
.
impl
(
x
)
def
grad
(
self
,
inp
,
grads
):
def
L_op
(
self
,
inputs
,
outputs
,
grads
):
x
,
=
inp
x
,
=
inp
uts
gz
,
=
grads
gz
,
=
grads
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -110,12 +110,12 @@ class Erfcx(UnaryScalarOp):
...
@@ -110,12 +110,12 @@ class Erfcx(UnaryScalarOp):
else
:
else
:
super
(
Erfcx
,
self
)
.
impl
(
x
)
super
(
Erfcx
,
self
)
.
impl
(
x
)
def
grad
(
self
,
inp
,
grads
):
def
L_op
(
self
,
inputs
,
outputs
,
grads
):
x
,
=
inp
x
,
=
inp
uts
gz
,
=
grads
gz
,
=
grads
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -146,12 +146,12 @@ class Erfinv(UnaryScalarOp):
...
@@ -146,12 +146,12 @@ class Erfinv(UnaryScalarOp):
else
:
else
:
super
(
Erfinv
,
self
)
.
impl
(
x
)
super
(
Erfinv
,
self
)
.
impl
(
x
)
def
grad
(
self
,
inp
,
grads
):
def
L_op
(
self
,
inputs
,
outputs
,
grads
):
x
,
=
inp
x
,
=
inp
uts
gz
,
=
grads
gz
,
=
grads
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -179,12 +179,12 @@ class Erfcinv(UnaryScalarOp):
...
@@ -179,12 +179,12 @@ class Erfcinv(UnaryScalarOp):
else
:
else
:
super
(
Erfcinv
,
self
)
.
impl
(
x
)
super
(
Erfcinv
,
self
)
.
impl
(
x
)
def
grad
(
self
,
inp
,
grads
):
def
L_op
(
self
,
inputs
,
outputs
,
grads
):
x
,
=
inp
x
,
=
inp
uts
gz
,
=
grads
gz
,
=
grads
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -216,12 +216,12 @@ class Gamma(UnaryScalarOp):
...
@@ -216,12 +216,12 @@ class Gamma(UnaryScalarOp):
else
:
else
:
super
(
Gamma
,
self
)
.
impl
(
x
)
super
(
Gamma
,
self
)
.
impl
(
x
)
def
grad
(
self
,
in
puts
,
gout
):
def
L_op
(
self
,
inputs
,
out
puts
,
gout
):
(
x
,)
=
inputs
(
x
,)
=
inputs
(
gz
,)
=
gout
(
gz
,)
=
gout
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
@@ -253,12 +253,12 @@ class GammaLn(UnaryScalarOp):
...
@@ -253,12 +253,12 @@ class GammaLn(UnaryScalarOp):
else
:
else
:
super
(
GammaLn
,
self
)
.
impl
(
x
)
super
(
GammaLn
,
self
)
.
impl
(
x
)
def
grad
(
self
,
inp
,
grads
):
def
L_op
(
self
,
inputs
,
outputs
,
grads
):
x
,
=
inp
x
,
=
inp
uts
gz
,
=
grads
gz
,
=
grads
if
x
.
type
in
complex_types
:
if
x
.
type
in
complex_types
:
raise
NotImplementedError
()
raise
NotImplementedError
()
if
self
(
x
)
.
type
in
discrete_types
:
if
outputs
[
0
]
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
if
x
.
type
in
discrete_types
:
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
return
[
x
.
zeros_like
(
dtype
=
theano
.
config
.
floatX
)]
else
:
else
:
...
...
theano/tensor/elemwise.py
浏览文件 @
7cfd2879
...
@@ -602,7 +602,7 @@ second dimension
...
@@ -602,7 +602,7 @@ second dimension
ograds
=
[
x
.
zeros_like
()
for
x
in
outs
]
ograds
=
[
x
.
zeros_like
()
for
x
in
outs
]
ograds
[
idx
]
=
theano
.
tensor
.
ones_like
(
out
)
ograds
[
idx
]
=
theano
.
tensor
.
ones_like
(
out
)
bgrads
=
self
.
_bgrad
(
inputs
,
ograds
)
bgrads
=
self
.
_bgrad
(
inputs
,
o
uts
,
o
grads
)
rop_out
=
None
rop_out
=
None
for
jdx
,
(
inp
,
eval_point
)
in
enumerate
(
izip
(
inputs
,
for
jdx
,
(
inp
,
eval_point
)
in
enumerate
(
izip
(
inputs
,
...
@@ -636,7 +636,7 @@ second dimension
...
@@ -636,7 +636,7 @@ second dimension
def
L_op
(
self
,
inputs
,
outs
,
ograds
):
def
L_op
(
self
,
inputs
,
outs
,
ograds
):
# compute grad with respect to broadcasted input
# compute grad with respect to broadcasted input
rval
=
self
.
_bgrad
(
inputs
,
ograds
)
rval
=
self
.
_bgrad
(
inputs
,
o
uts
,
o
grads
)
# TODO: make sure that zeros are clearly identifiable
# TODO: make sure that zeros are clearly identifiable
# to the gradient.grad method when the outputs have
# to the gradient.grad method when the outputs have
...
@@ -684,7 +684,7 @@ second dimension
...
@@ -684,7 +684,7 @@ second dimension
return
rval
return
rval
def
_bgrad
(
self
,
inputs
,
ograds
):
def
_bgrad
(
self
,
inputs
,
o
utputs
,
o
grads
):
# returns grad, with respect to broadcasted versions of inputs
# returns grad, with respect to broadcasted versions of inputs
with
change_flags
(
compute_test_value
=
'off'
):
with
change_flags
(
compute_test_value
=
'off'
):
...
@@ -695,7 +695,10 @@ second dimension
...
@@ -695,7 +695,10 @@ second dimension
scalar_inputs
=
list
(
map
(
as_scalar
,
inputs
))
scalar_inputs
=
list
(
map
(
as_scalar
,
inputs
))
scalar_ograds
=
list
(
map
(
as_scalar
,
ograds
))
scalar_ograds
=
list
(
map
(
as_scalar
,
ograds
))
scalar_igrads
=
self
.
scalar_op
.
grad
(
scalar_inputs
,
scalar_ograds
)
scalar_outputs
=
self
.
scalar_op
.
make_node
(
*
[
get_scalar_type
(
dtype
=
i
.
type
.
dtype
)
.
make_variable
()
for
i
in
inputs
])
.
outputs
scalar_igrads
=
self
.
scalar_op
.
L_op
(
scalar_inputs
,
scalar_outputs
,
scalar_ograds
)
for
igrad
in
scalar_igrads
:
for
igrad
in
scalar_igrads
:
assert
igrad
is
not
None
,
self
.
scalar_op
assert
igrad
is
not
None
,
self
.
scalar_op
...
@@ -711,6 +714,8 @@ second dimension
...
@@ -711,6 +714,8 @@ second dimension
return
r
return
r
if
r
in
scalar_inputs
:
if
r
in
scalar_inputs
:
return
inputs
[
scalar_inputs
.
index
(
r
)]
return
inputs
[
scalar_inputs
.
index
(
r
)]
if
r
in
scalar_outputs
:
return
outputs
[
scalar_outputs
.
index
(
r
)]
if
r
in
scalar_ograds
:
if
r
in
scalar_ograds
:
return
ograds
[
scalar_ograds
.
index
(
r
)]
return
ograds
[
scalar_ograds
.
index
(
r
)]
node
=
r
.
owner
node
=
r
.
owner
...
...
theano/tensor/nnet/nnet.py
浏览文件 @
7cfd2879
...
@@ -100,15 +100,14 @@ class SoftmaxWithBias(gof.Op):
...
@@ -100,15 +100,14 @@ class SoftmaxWithBias(gof.Op):
# data type matches.
# data type matches.
output_storage
[
0
][
0
]
=
e_x
.
astype
(
x_dtype
,
copy
=
False
)
output_storage
[
0
][
0
]
=
e_x
.
astype
(
x_dtype
,
copy
=
False
)
def
grad
(
self
,
inp
,
grads
):
def
L_op
(
self
,
inp
,
outputs
,
grads
):
x
,
b
=
inp
x
,
b
=
inp
g_sm
,
=
grads
g_sm
,
=
grads
if
isinstance
(
g_sm
.
type
,
DisconnectedType
):
if
isinstance
(
g_sm
.
type
,
DisconnectedType
):
return
[
DisconnectedType
()(),
DisconnectedType
()()]
return
[
DisconnectedType
()(),
DisconnectedType
()()]
sm
=
softmax_with_bias
(
x
,
b
)
dx
=
softmax_grad
(
g_sm
,
outputs
[
0
])
dx
=
softmax_grad
(
g_sm
,
sm
)
db
=
tensor
.
sum
(
dx
,
axis
=
0
)
db
=
tensor
.
sum
(
dx
,
axis
=
0
)
return
dx
,
db
return
dx
,
db
...
@@ -440,18 +439,17 @@ class Softmax(gof.Op):
...
@@ -440,18 +439,17 @@ class Softmax(gof.Op):
sm
=
e_x
/
e_x
.
sum
(
axis
=
1
)[:,
None
]
sm
=
e_x
/
e_x
.
sum
(
axis
=
1
)[:,
None
]
output_storage
[
0
][
0
]
=
sm
output_storage
[
0
][
0
]
=
sm
def
grad
(
self
,
inp
,
grads
):
def
L_op
(
self
,
inp
,
outputs
,
grads
):
x
,
=
inp
x
,
=
inp
g_sm
,
=
grads
g_sm
,
=
grads
sm
=
softmax_op
(
x
)
return
[
softmax_grad
(
g_sm
,
outputs
[
0
])]
return
[
softmax_grad
(
g_sm
,
sm
)]
def
R_op
(
self
,
inputs
,
eval_points
):
def
R_op
(
self
,
inputs
,
eval_points
):
# I think the Jacobian is symmetric so the R_op
# I think the Jacobian is symmetric so the R_op
# is the same as the grad
# is the same as the grad
if
None
in
eval_points
:
if
None
in
eval_points
:
return
[
None
]
return
[
None
]
return
self
.
grad
(
inputs
,
eval_points
)
return
self
.
L_op
(
inputs
,
[
self
(
*
inputs
)]
,
eval_points
)
def
infer_shape
(
self
,
node
,
shape
):
def
infer_shape
(
self
,
node
,
shape
):
return
shape
return
shape
...
@@ -1060,7 +1058,7 @@ class CrossentropySoftmaxArgmax1HotWithBias(gof.Op):
...
@@ -1060,7 +1058,7 @@ class CrossentropySoftmaxArgmax1HotWithBias(gof.Op):
db_terms
.
append
(
db
)
db_terms
.
append
(
db
)
if
not
isinstance
(
g_sm
.
type
,
DisconnectedType
):
if
not
isinstance
(
g_sm
.
type
,
DisconnectedType
):
dx
,
db
=
softmax_with_bias
.
grad
((
x
,
b
)
,
(
g_sm
,
))
dx
,
db
=
softmax_with_bias
.
L_op
((
x
,
b
),
[
softmax_with_bias
(
x
,
b
)]
,
(
g_sm
,
))
dx_terms
.
append
(
dx
)
dx_terms
.
append
(
dx
)
db_terms
.
append
(
db
)
db_terms
.
append
(
db
)
...
...
theano/tensor/signal/pool.py
浏览文件 @
7cfd2879
...
@@ -562,15 +562,14 @@ class Pool(OpenMPOp):
...
@@ -562,15 +562,14 @@ class Pool(OpenMPOp):
pad
,
self
.
ndim
)
pad
,
self
.
ndim
)
return
[
shp
]
return
[
shp
]
def
grad
(
self
,
inp
,
grads
):
def
L_op
(
self
,
inputs
,
outputs
,
grads
):
x
,
ws
,
stride
,
pad
=
inp
x
,
ws
,
stride
,
pad
=
inp
uts
gz
,
=
grads
gz
,
=
grads
disc
=
[
DisconnectedType
()()
for
i
in
inp
[
1
:]]
disc
=
[
DisconnectedType
()()
for
i
in
inp
uts
[
1
:]]
if
self
.
mode
==
'max'
:
if
self
.
mode
==
'max'
:
maxout
=
self
(
x
,
ws
,
stride
,
pad
)
return
[
MaxPoolGrad
(
ndim
=
self
.
ndim
,
return
[
MaxPoolGrad
(
ndim
=
self
.
ndim
,
ignore_border
=
self
.
ignore_border
)(
ignore_border
=
self
.
ignore_border
)(
x
,
maxout
,
gz
,
ws
=
ws
,
stride
=
stride
,
pad
=
pad
)]
+
disc
x
,
outputs
[
0
]
,
gz
,
ws
=
ws
,
stride
=
stride
,
pad
=
pad
)]
+
disc
else
:
else
:
return
[
AveragePoolGrad
(
ndim
=
self
.
ndim
,
return
[
AveragePoolGrad
(
ndim
=
self
.
ndim
,
ignore_border
=
self
.
ignore_border
,
ignore_border
=
self
.
ignore_border
,
...
...
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