Skip to content
项目
群组
代码片段
帮助
当前项目
正在载入...
登录 / 注册
切换导航面板
P
pytensor
项目
项目
详情
活动
周期分析
仓库
仓库
文件
提交
分支
标签
贡献者
图表
比较
统计图
议题
0
议题
0
列表
看板
标记
里程碑
合并请求
0
合并请求
0
CI / CD
CI / CD
流水线
作业
日程
统计图
Wiki
Wiki
代码片段
代码片段
成员
成员
折叠边栏
关闭边栏
活动
图像
聊天
创建新问题
作业
提交
问题看板
Open sidebar
testgroup
pytensor
Commits
7b943a5b
提交
7b943a5b
authored
2月 08, 2012
作者:
Olivier Delalleau
浏览文件
操作
浏览文件
下载
差异文件
Merge pull request #431 from goodfeli/q
pep8 fix + added verbose exception
上级
4bb1a152
8d055a89
显示空白字符变更
内嵌
并排
正在显示
1 个修改的文件
包含
55 行增加
和
19 行删除
+55
-19
elemwise.py
theano/tensor/elemwise.py
+55
-19
没有找到文件。
theano/tensor/elemwise.py
浏览文件 @
7b943a5b
import
sys
import
traceback
from
copy
import
copy
from
itertools
import
izip
import
numpy
...
...
@@ -17,16 +20,23 @@ config = theano.config
# but elemwise needs to make TensorType instances, so we have these as
# placeholders and the tensor module fills them
def
as_tensor_variable
(
data
):
raise
Exception
(
"Circular dependencies prevent using this here. import tensor before elemwise"
)
raise
Exception
(
"Circular dependencies prevent using this"
"here. import tensor before elemwise"
)
def
TensorType
(
*
inputs
,
**
kwargs
):
raise
Exception
(
"Circular dependencies prevent using this here. import tensor before elemwise"
)
raise
Exception
(
"Circular dependencies prevent "
"using this here. import tensor before elemwise"
)
def
TensorVariable
(
*
inputs
,
**
kwargs
):
raise
Exception
(
"Circular dependencies prevent using this here. import tensor before elemwise"
)
raise
Exception
(
"Circular dependencies "
"prevent using this here. import tensor before elemwise"
)
def
TensorConstant
(
*
inputs
,
**
kwargs
):
raise
Exception
(
"Circular dependencies prevent using this here. import tensor before elemwise"
)
raise
Exception
(
"Circular dependencies "
"prevent using this here. import tensor before elemwise"
)
##################
...
...
@@ -54,22 +64,27 @@ class DimShuffle(Op):
DimShuffle((True, False), [1])
This op will only work on 2d tensors with the first dimension broadcastable.
This op will only work on 2d tensors with the first dimension
broadcastable.
The second dimension of the input tensor will be the first dimension of
the resulting tensor. If the tensor has shape (1, 20), the resulting tensor
will have shape (20, ).
the resulting tensor.
If the tensor has shape (1, 20), the resulting tensor will have shape
(20, ).
More examples:
DimShuffle((), ['x']) -> make a 0d (scalar) into a 1d vector
DimShuffle((False, False), [0, 1]) -> identity
DimShuffle((False, False), [1, 0]) -> inverts the first and second dimensions
DimShuffle((False,), ['x', 0]) -> make a row out of a 1d vector (N to 1xN)
DimShuffle((False,), [0, 'x']) -> make a column out of a 1d vector (N to Nx1)
DimShuffle((False, False), [1, 0]) -> inverts the 1st and 2nd dimensions
DimShuffle((False,), ['x', 0]) -> make a row out
of a 1d vector (N to 1xN)
DimShuffle((False,), [0, 'x']) -> make a column
out of a 1d vector (N to Nx1)
DimShuffle((False, False, False), [2, 0, 1]) -> AxBxC to CxAxB
DimShuffle((False, False), [0, 'x', 1]) -> AxB to Ax1xB
DimShuffle((False, False), [1, 'x', 0]) -> AxB to Bx1xA
The reordering of the dimensions can be done in numpy with the transpose function.
The reordering of the dimensions can be done in numpy with the
transpose function.
Adding, subtracting dimensions can be done with reshape.
"""
...
...
@@ -714,7 +729,7 @@ class Elemwise(Op):
if
odat
is
not
None
:
odat
.
resize
(
shape
,
refcheck
=
0
)
else
:
odat
=
numpy
.
ndarray
(
shape
,
dtype
=
output
.
type
.
dtype
)
odat
=
numpy
.
ndarray
(
shape
,
dtype
=
output
.
type
.
dtype
)
storage
[
0
]
=
odat
ufunc_args
=
inputs
# + output_storage
...
...
@@ -729,21 +744,42 @@ class Elemwise(Op):
# optimization is probably not worth the effort, since we
# should normally run the C version of the Op.
else
:
# the second calling form is used because in certain versions of numpy
# the first (faster) version leads to segfaults
ufunc
=
self
.
ufunc
or
numpy
.
frompyfunc
(
self
.
scalar_op
.
impl
,
len
(
inputs
),
self
.
scalar_op
.
nout
)
# the second calling form is used because in certain versions of
# numpy the first (faster) version leads to segfaults
ufunc
=
(
self
.
ufunc
or
numpy
.
frompyfunc
(
self
.
scalar_op
.
impl
,
len
(
inputs
),
self
.
scalar_op
.
nout
))
nout
=
ufunc
.
nout
try
:
variables
=
ufunc
(
*
ufunc_args
)
except
Exception
,
e
:
errormsg
=
'While computing '
+
str
(
node
.
outputs
)
+
': Failed calling ufunc for op'
,
self
.
scalar_op
,
\
'for params of shape'
,
[
arg
.
shape
for
arg
in
ufunc_args
]
e
.
args
=
e
.
args
+
errormsg
errormsg
=
(
'While computing '
+
str
(
node
.
outputs
)
+
': Failed calling ufunc for op '
+
str
(
self
.
scalar_op
)
+
'for params of shape '
+
str
([
arg
.
shape
for
arg
in
ufunc_args
]))
if
config
.
exception_verbosity
==
'high'
:
errormsg
+=
'inputs are:
\n
'
for
i
,
ipt
in
enumerate
(
node
.
inputs
):
errormsg
+=
'('
+
str
(
i
)
+
') '
+
\
min_informative_str
(
ipt
)
+
'
\n
'
errormsg
+=
'outputs are:
\n
'
for
i
,
output
in
enumerate
(
node
.
outputs
):
errormsg
+=
'('
+
str
(
i
)
+
') '
+
\
min_informative_str
(
output
)
+
'
\n
'
errormsg
+=
'original exception was: '
+
'
\n
'
.
join
(
traceback
.
format_exception_only
(
*
sys
.
exc_info
()[
0
:
2
]))
raise
Exception
(
errormsg
)
else
:
e
.
args
=
e
.
args
+
(
errormsg
,
)
raise
if
nout
==
1
:
variables
=
[
variables
]
for
variable
,
storage
,
nout
in
zip
(
variables
,
output_storage
,
node
.
outputs
):
for
variable
,
storage
,
nout
in
izip
(
variables
,
output_storage
,
node
.
outputs
):
if
str
(
getattr
(
variable
,
"dtype"
,
""
))
==
'object'
:
# Since numpy 1.6, function created with numpy.frompyfunc
# always return an ndarray with dtype object
...
...
编写
预览
Markdown
格式
0%
重试
或
添加新文件
添加附件
取消
您添加了
0
人
到此讨论。请谨慎行事。
请先完成此评论的编辑!
取消
请
注册
或者
登录
后发表评论