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testgroup
pytensor
Commits
f2c73f6f
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f2c73f6f
authored
11月 20, 2012
作者:
nouiz
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Merge pull request #1084 from goodfeli/test_grad_2
Fix disconnected input bug
上级
9af9ba54
fa4617bf
隐藏空白字符变更
内嵌
并排
正在显示
2 个修改的文件
包含
42 行增加
和
12 行删除
+42
-12
gradient.py
theano/gradient.py
+22
-12
test_gradient.py
theano/tests/test_gradient.py
+20
-0
没有找到文件。
theano/gradient.py
浏览文件 @
f2c73f6f
...
...
@@ -365,7 +365,7 @@ def grad(cost, wrt, consider_constant=None,
(or if all links are non-differentiable). The possible values are:
- 'ignore': considers that the gradient on these parameters is zero.
- 'warn': consider the gradient zero, and print a warning.
- 'raise': raise
an exception
.
- 'raise': raise
DisconnectedInputError
.
:type add_names: bool
:param add_names: If True, variables generated by grad will be named
...
...
@@ -482,28 +482,31 @@ def grad(cost, wrt, consider_constant=None,
grad_dict
[
var
]
=
g_var
# variables that do not influence the cost have zero gradient.
# if wrt is such a variable, populate the grad_dict with this info
# so that wrt not being in var_to_node_to_idx won't cause an error below
# according to the flag, possibly raise an error if wrt is disconnected
for
elem
in
wrt
:
if
elem
not
in
var_to_node_to_idx
and
elem
is
not
cost
\
and
elem
not
in
grad_dict
:
def
handle_disconnected
(
var
):
message
=
(
"grad method was asked to compute the gradient "
"with respect to a variable that is not part of "
"the computational graph of the cost, or is used "
"only by a non-differentiable operator:
%
s"
%
elem
)
"only by a non-differentiable operator:
%
s"
%
var
)
if
disconnected_inputs
==
'ignore'
:
pass
elif
disconnected_inputs
==
'warn'
:
warnings
.
warn
(
message
,
stacklevel
=
2
)
elif
disconnected_inputs
==
'raise'
:
raise
Value
Error
(
message
)
raise
DisconnectedInput
Error
(
message
)
else
:
raise
ValueError
(
"Invalid value for keyword "
"'disconnected_inputs', valid values are "
"'ignore', 'warn' and 'raise'."
)
# variables that do not influence the cost have zero gradient.
# if wrt is such a variable, populate the grad_dict with this info
# so that wrt not being in var_to_node_to_idx won't cause an error below
# according to the flag, possibly raise an error if wrt is disconnected
for
elem
in
wrt
:
if
elem
not
in
var_to_node_to_idx
and
elem
is
not
cost
\
and
elem
not
in
grad_dict
:
handle_disconnected
(
elem
)
grad_dict
[
elem
]
=
DisconnectedType
()()
cost_name
=
None
...
...
@@ -523,6 +526,7 @@ def grad(cost, wrt, consider_constant=None,
for
i
in
xrange
(
len
(
rval
)):
if
isinstance
(
rval
[
i
]
.
type
,
DisconnectedType
):
handle_disconnected
(
rval
[
i
])
if
return_disconnected
==
'zero'
:
rval
[
i
]
=
_float_zeros_like
(
wrt
[
i
])
elif
return_disconnected
==
'None'
:
...
...
@@ -719,7 +723,13 @@ class NullTypeGradError(TypeError):
"""
Raised when grad encounters a NullType.
"""
pass
class
DisconnectedInputError
(
ValueError
):
"""
Raised when grad is asked to compute the gradient
with respect to a disconnected input and
disconnected_inputs='raise'.
"""
def
_populate_grad_dict
(
var_to_node_to_idx
,
grad_dict
,
wrt
,
cost_name
=
None
):
...
...
theano/tests/test_gradient.py
浏览文件 @
f2c73f6f
...
...
@@ -522,6 +522,8 @@ def test_undefined_cost_grad():
# Tests that if we say the cost is not differentiable via the
# known_grads mechanism, it is treated as such by the rest of the
# system.
# This is so that Ops that are built around minigraphs like OpFromGraph
# and scan can implement Op.grad by passing ograds to known_grads
x
=
theano
.
tensor
.
iscalar
()
y
=
theano
.
tensor
.
iscalar
()
...
...
@@ -533,6 +535,24 @@ def test_undefined_cost_grad():
return
raise
AssertionError
(
"An undefined gradient has been ignored."
)
def
test_disconnected_cost_grad
():
# Tests that if we say the cost is disconnected via the
# known_grads mechanism, it is treated as such by the rest of the
# system.
# This is so that Ops that are built around minigraphs like OpFromGraph
# and scan can implement Op.grad by passing ograds to known_grads
x
=
theano
.
tensor
.
iscalar
()
y
=
theano
.
tensor
.
iscalar
()
cost
=
x
+
y
assert
cost
.
dtype
in
theano
.
tensor
.
discrete_dtypes
try
:
grads
=
theano
.
tensor
.
grad
(
cost
,
[
x
,
y
],
known_grads
=
{
cost
:
gradient
.
DisconnectedType
()()
},
disconnected_inputs
=
'raise'
)
except
theano
.
gradient
.
DisconnectedInputError
:
return
raise
AssertionError
(
"A disconnected gradient has been ignored."
)
if
__name__
==
'__main__'
:
unittest
.
main
()
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