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pytensor
Commits
16496197
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16496197
authored
11月 18, 2016
作者:
Frédéric Bastien
提交者:
GitHub
11月 18, 2016
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差异文件
Merge pull request #5234 from ReyhaneAskari/fix_opt
Useless sum in grad removed and test added
上级
c927092b
380bcbb3
隐藏空白字符变更
内嵌
并排
正在显示
4 个修改的文件
包含
38 行增加
和
29 行删除
+38
-29
elemwise.py
theano/tensor/elemwise.py
+1
-1
nnet.py
theano/tensor/nnet/nnet.py
+1
-17
opt.py
theano/tensor/opt.py
+6
-11
test_elemwise.py
theano/tensor/tests/test_elemwise.py
+30
-0
没有找到文件。
theano/tensor/elemwise.py
浏览文件 @
16496197
...
...
@@ -700,7 +700,7 @@ second dimension
# we can sum over them
# todo: only count dimensions that were effectively broadcasted
to_sum
=
[
j
for
j
,
bcast
in
enumerate
(
ipt
.
type
.
broadcastable
)
if
bcast
]
if
bcast
and
not
outs
[
0
]
.
broadcastable
[
j
]
]
if
to_sum
:
shuffle
=
[]
...
...
theano/tensor/nnet/nnet.py
浏览文件 @
16496197
...
...
@@ -1729,21 +1729,6 @@ def local_advanced_indexing_crossentropy_onehot_grad(node):
else
:
return
# If the arg to softmax is a broadcasted vector, d_sm has the form:
# DimShuffle{x,0}(Sum{0}(...))
# we consider what's inside of the sum instead
vector_softmax
=
False
if
d_sm
.
owner
and
isinstance
(
d_sm
.
owner
.
op
,
tensor
.
DimShuffle
):
ds_op
=
d_sm
.
owner
.
op
if
ds_op
.
input_broadcastable
==
(
False
,)
and
ds_op
.
new_order
==
(
'x'
,
0
):
maybe_sum
=
d_sm
.
owner
.
inputs
[
0
]
if
maybe_sum
.
owner
and
isinstance
(
maybe_sum
.
owner
.
op
,
tensor
.
Sum
):
if
sm
.
broadcastable
==
(
True
,
False
)
\
and
maybe_sum
.
owner
.
op
.
axis
==
(
0
,)
\
and
len
(
maybe_sum
.
owner
.
inputs
)
==
1
:
vector_softmax
=
True
d_sm
=
maybe_sum
.
owner
.
inputs
[
0
]
# Two cases are supported:
# 1. AdvancedIncSubtensor(
# zeros_like(softmax(x)),
...
...
@@ -1886,8 +1871,7 @@ def local_advanced_indexing_crossentropy_onehot_grad(node):
# Check z is zeros_like(log(sm))
if
not
_is_const
(
z
,
0
):
return
if
z
.
broadcastable
!=
(
False
,
False
):
if
not
(
vector_softmax
and
z
.
broadcastable
==
(
True
,
False
)):
if
z
.
broadcastable
not
in
[(
False
,
False
),
(
True
,
False
)]:
return
# here we know that we are incrementing a matrix of zeros
# (or a broadcasted vector).
...
...
theano/tensor/opt.py
浏览文件 @
16496197
...
...
@@ -4608,7 +4608,6 @@ class Canonizer(gof.LocalOptimizer):
| x * y * z -> ([x, y, z], [])
"""
# This function is recursive. The idea is that there is a
# get_num_denum recursion in which the internal ops are all
# one of (main, inverse, reciprocal, DimShuffle) and the
...
...
@@ -5551,11 +5550,7 @@ def local_useless_reduce(node):
return
[
summed
]
# Enabling this optimization at canonicalization step break this test:
# theano/tensor/tests/test_opt.py:T_local_reduce.test_local_reduce_broadcast_some_0
# see gh-790 issue.
#
# @register_canonicalize
@register_canonicalize
@register_uncanonicalize
@register_specialize
@gof.local_optimizer
(
ALL_REDUCE
)
...
...
@@ -6340,8 +6335,9 @@ def local_greedy_distributor(node):
if
candidate
not
in
num
:
continue
num
.
remove
(
candidate
)
_change
,
candidate
,
num
,
denum
=
attempt_distribution
(
candidate
,
num
,
denum
,
out_type
)
_change
,
candidate
,
num
,
denum
=
attempt_distribution
(
candidate
,
num
,
denum
,
out_type
,)
change
|=
_change
new_num
.
append
(
candidate
)
...
...
@@ -6349,11 +6345,10 @@ def local_greedy_distributor(node):
if
candidate
not
in
denum
:
continue
denum
.
remove
(
candidate
)
_change
,
candidate
,
denum
,
num
=
attempt_distribution
(
candidate
,
denum
,
num
,
out_type
)
_change
,
candidate
,
denum
,
num
=
attempt_distribution
(
candidate
,
denum
,
num
,
out_type
)
change
|=
_change
new_denum
.
append
(
candidate
)
if
not
change
:
return
False
...
...
theano/tensor/tests/test_elemwise.py
浏览文件 @
16496197
...
...
@@ -1242,6 +1242,36 @@ def test_clip_grad():
[
numpy
.
asarray
([
-
1.
,
0.5
,
2.
]),
0.
,
1.
])
def
test_grad_useless_sum
():
"""Test absence of useless sum.
When an operation (such as T.mul) is done on a broadcastable vector and
a matrix, the gradient in backward path is computed for the broadcasted
vector. So a sum reverts the broadcasted vector to a vector. In the case
of operations on two broadcastable vectors, the sum should not be generated.
This test checks whether there is a useless sum in the gradient
computations.
"""
mode
=
theano
.
compile
.
get_default_mode
()
.
including
(
'canonicalize'
)
x
=
tensor
.
TensorType
(
theano
.
config
.
floatX
,
(
True
,))(
'x'
)
l
=
tensor
.
log
(
1.0
-
tensor
.
nnet
.
sigmoid
(
x
))[
0
]
g
=
tensor
.
grad
(
l
,
x
)
nodes
=
theano
.
gof
.
graph
.
ops
([
x
],
[
g
])
f
=
theano
.
function
([
x
],
g
,
mode
=
mode
)
test_values
=
[
-
100
,
-
1
,
0
,
1
,
100
]
outputs
=
[]
for
test_value
in
test_values
:
outputs
.
append
(
f
(
numpy
.
array
([
test_value
])
.
astype
(
'float32'
)))
assert
not
any
([
isinstance
(
node
.
op
,
theano
.
tensor
.
elemwise
.
Sum
)
for
node
in
nodes
])
assert
numpy
.
allclose
(
outputs
,
[[
-
3.72007598e-44
],
[
-
0.26894142
],
[
-
0.5
],
[
-
0.73105858
],
[
-
1.
]])
def
test_clip_grad_int
():
# test that integers don't crash clip gradient
...
...
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