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pytensor
Commits
d7817ddc
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d7817ddc
authored
6月 06, 2011
作者:
Pascal Lamblin
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Revert 86b03fce2591d12e641d55d2e93d451601b369c7.
We use the ShapeFeature and SpecifyShape, now, tag.shape is being deprecated.
上级
278b7205
隐藏空白字符变更
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1 个修改的文件
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1 行增加
和
17 行删除
+1
-17
opt.py
theano/tensor/opt.py
+1
-17
没有找到文件。
theano/tensor/opt.py
浏览文件 @
d7817ddc
...
@@ -6,7 +6,6 @@
...
@@ -6,7 +6,6 @@
import
logging
import
logging
_logger
=
logging
.
getLogger
(
'theano.tensor.opt'
)
_logger
=
logging
.
getLogger
(
'theano.tensor.opt'
)
import
copy
import
operator
import
operator
import
itertools
import
itertools
import
sys
import
sys
...
@@ -573,14 +572,6 @@ class ShapeFeature(object):
...
@@ -573,14 +572,6 @@ class ShapeFeature(object):
if
hasattr
(
r
.
type
,
"broadcastable"
)
and
r
.
type
.
broadcastable
[
i
]:
if
hasattr
(
r
.
type
,
"broadcastable"
)
and
r
.
type
.
broadcastable
[
i
]:
return
self
.
lscalar_one
return
self
.
lscalar_one
# NOTE: This may cause problems bacause the shape is not asserted
# there is an equivalent mechanism to do this, namely
# specify_shape that one should use
# If user provided size
#elif ( hasattr(r.tag,'shape') and
# r.tag.shape is not None and
# r.tag.shape[i] is not None):
# return T.constant(copy.copy(r.tag.shape[i]),dtype='int64')
else
:
else
:
return
Shape_i
(
i
)
.
make_node
(
r
)
.
outputs
[
0
]
return
Shape_i
(
i
)
.
make_node
(
r
)
.
outputs
[
0
]
...
@@ -1093,7 +1084,6 @@ def local_alloc_elemwise(node):
...
@@ -1093,7 +1084,6 @@ def local_alloc_elemwise(node):
return
[
node
.
op
(
*
new
)]
return
[
node
.
op
(
*
new
)]
#TODO, global optimizer that lift the assert to the beginning of the graph.
#TODO, global optimizer that lift the assert to the beginning of the graph.
#TODO, var.tag.shape to propagate the shape and lower the overhead of this op
#TODO, when all inputs can be optimized do all except one
#TODO, when all inputs can be optimized do all except one
theano
.
configparser
.
AddConfigVar
(
'experimental.local_alloc_elemwise'
,
theano
.
configparser
.
AddConfigVar
(
'experimental.local_alloc_elemwise'
,
...
@@ -2741,14 +2731,8 @@ register_specialize(local_mul_specialize)
...
@@ -2741,14 +2731,8 @@ register_specialize(local_mul_specialize)
@gof.local_optimizer
([
T
.
add
])
@gof.local_optimizer
([
T
.
add
])
def
local_add_specialize
(
node
):
def
local_add_specialize
(
node
):
def
fill_chain
(
v
):
def
fill_chain
(
v
):
# Not sure why this happens .. but I did not had the time to look
# into it, it probably has something to do with the dtype I'm
# providing the tag.shape of my variable
out
=
_fill_chain
(
v
,
node
.
inputs
)
out
=
_fill_chain
(
v
,
node
.
inputs
)
if
out
[
0
]
.
dtype
!=
node
.
outputs
[
0
]
.
dtype
:
return
out
return
[
T
.
cast
(
out
[
0
],
dtype
=
node
.
outputs
[
0
]
.
dtype
)]
else
:
return
out
#here, we are past the point of canonicalization, so we don't want to put in un-necessary fills.
#here, we are past the point of canonicalization, so we don't want to put in un-necessary fills.
if
node
.
op
==
T
.
add
:
if
node
.
op
==
T
.
add
:
...
...
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