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
155c4e01
提交
155c4e01
authored
3月 15, 2016
作者:
Chiheb Trabelsi
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
test_bench_loopfusion.py has been modified in order to respect the flake8 style.
上级
a2503274
隐藏空白字符变更
内嵌
并排
正在显示
1 个修改的文件
包含
89 行增加
和
43 行删除
+89
-43
test_bench_loopfusion.py
theano/sandbox/cuda/tests/test_bench_loopfusion.py
+89
-43
没有找到文件。
theano/sandbox/cuda/tests/test_bench_loopfusion.py
浏览文件 @
155c4e01
...
@@ -10,7 +10,7 @@ from __future__ import absolute_import, print_function, division
...
@@ -10,7 +10,7 @@ from __future__ import absolute_import, print_function, division
# so state is ignored
# so state is ignored
# since this job is not restartable, channel is also ignored
# since this job is not restartable, channel is also ignored
import
logging
,
time
,
sys
import
logging
import
numpy
import
numpy
from
six.moves
import
xrange
from
six.moves
import
xrange
...
@@ -18,17 +18,22 @@ from six.moves import xrange
...
@@ -18,17 +18,22 @@ from six.moves import xrange
import
theano
import
theano
from
theano.compile
import
shared
,
pfunc
from
theano.compile
import
shared
,
pfunc
from
theano
import
tensor
from
theano
import
tensor
from
theano.tensor.nnet
import
softplus
from
theano.tensor.nnet.nnet
import
softsign
from
theano.tensor.nnet.nnet
import
softsign
try
:
from
PIL
import
Image
except
ImportError
:
Image
=
None
# from PIL import Image
_logger
=
logging
.
getLogger
(
'theano.sandbox.cuda.tests.test_bench_loopfusion'
)
_logger
=
logging
.
getLogger
(
'theano.sandbox.cuda.tests.test_bench_loopfusion'
)
def
_shared_uniform
(
rng
,
low
,
high
,
size
,
dtype
,
name
=
None
):
def
_shared_uniform
(
rng
,
low
,
high
,
size
,
dtype
,
name
=
None
):
return
shared
(
return
shared
(
theano
.
_asarray
(
theano
.
_asarray
(
rng
.
uniform
(
low
=
low
,
high
=
high
,
size
=
size
),
rng
.
uniform
(
low
=
low
,
high
=
high
,
size
=
size
),
dtype
=
dtype
),
name
)
dtype
=
dtype
),
name
)
class
Kouh2008
(
object
):
class
Kouh2008
(
object
):
...
@@ -49,8 +54,10 @@ class Kouh2008(object):
...
@@ -49,8 +54,10 @@ class Kouh2008(object):
"""
"""
if
len
(
w_list
)
!=
len
(
x_list
):
if
len
(
w_list
)
!=
len
(
x_list
):
raise
ValueError
(
'w_list must have same len as x_list'
)
raise
ValueError
(
'w_list must have same len as x_list'
)
output
=
(
sum
(
w
*
tensor
.
pow
(
x
,
p
)
for
(
w
,
x
)
in
zip
(
w_list
,
x_list
)))
\
output
=
((
sum
(
w
*
tensor
.
pow
(
x
,
p
)
/
(
theano
.
_asarray
(
eps
,
dtype
=
k
.
type
.
dtype
)
+
k
+
tensor
.
pow
(
sum
(
tensor
.
pow
(
x
,
q
)
for
x
in
x_list
),
r
))
for
(
w
,
x
)
in
zip
(
w_list
,
x_list
)))
/
(
theano
.
_asarray
(
eps
,
dtype
=
k
.
type
.
dtype
)
+
k
+
tensor
.
pow
(
sum
(
tensor
.
pow
(
x
,
q
)
for
x
in
x_list
),
r
)))
assert
output
.
type
.
ndim
==
2
assert
output
.
type
.
ndim
==
2
self
.
__dict__
.
update
(
locals
())
self
.
__dict__
.
update
(
locals
())
...
@@ -80,10 +87,15 @@ class Kouh2008(object):
...
@@ -80,10 +87,15 @@ class Kouh2008(object):
w_sm
=
theano
.
tensor
.
nnet
.
softmax
(
w
)
w_sm
=
theano
.
tensor
.
nnet
.
softmax
(
w
)
w_list
=
[
w_sm
[:,
i
]
for
i
in
xrange
(
n_terms
)]
w_list
=
[
w_sm
[:,
i
]
for
i
in
xrange
(
n_terms
)]
w_l1
=
abs
(
w
)
.
sum
()
w_l1
=
abs
(
w
)
.
sum
()
w_l2_sqr
=
(
w
**
2
)
.
sum
()
w_l2_sqr
=
(
w
**
2
)
.
sum
()
else
:
else
:
w_list
=
[
shared_uniform
(
low
=-
2.0
/
n_terms
,
high
=
2.0
/
n_terms
,
size
=
(
n_out
,),
name
=
'w_
%
i'
%
i
)
w_list
=
[
for
i
in
xrange
(
n_terms
)]
shared_uniform
(
low
=-
2.0
/
n_terms
,
high
=
2.0
/
n_terms
,
size
=
(
n_out
,),
name
=
'w_
%
i'
%
i
)
for
i
in
xrange
(
n_terms
)]
w_l1
=
sum
(
abs
(
wi
)
.
sum
()
for
wi
in
w_list
)
w_l1
=
sum
(
abs
(
wi
)
.
sum
()
for
wi
in
w_list
)
w_l2_sqr
=
sum
((
wi
**
2
)
.
sum
()
for
wi
in
w_list
)
w_l2_sqr
=
sum
((
wi
**
2
)
.
sum
()
for
wi
in
w_list
)
...
@@ -102,19 +114,27 @@ class Kouh2008(object):
...
@@ -102,19 +114,27 @@ class Kouh2008(object):
p
=
tensor
.
nnet
.
sigmoid
(
p_unbounded
)
*
e_range_mag
+
e_range_low
p
=
tensor
.
nnet
.
sigmoid
(
p_unbounded
)
*
e_range_mag
+
e_range_low
q
=
tensor
.
nnet
.
sigmoid
(
q_unbounded
)
*
e_range_mag
+
e_range_low
q
=
tensor
.
nnet
.
sigmoid
(
q_unbounded
)
*
e_range_mag
+
e_range_low
r
=
tensor
.
nnet
.
sigmoid
(
r_unbounded
)
*
\
r
=
tensor
.
nnet
.
sigmoid
(
r_unbounded
)
*
\
theano
.
_asarray
(
1.0
/
e_range_low
-
1.0
/
e_range_high
,
dtype
=
dtype
)
\
theano
.
_asarray
(
1.0
/
e_range_low
-
1.0
/
e_range_high
,
+
theano
.
_asarray
(
1.0
/
e_range_high
,
dtype
=
dtype
)
dtype
=
dtype
)
+
\
theano
.
_asarray
(
1.0
/
e_range_high
,
dtype
=
dtype
)
k
=
softsign
(
k_unbounded
)
k
=
softsign
(
k_unbounded
)
if
use_softmax_w
:
if
use_softmax_w
:
rval
=
cls
(
w_list
,
x_list
,
p
,
q
,
r
,
k
,
rval
=
cls
(
w_list
,
x_list
,
p
,
q
,
r
,
k
,
params
=
[
p_unbounded
,
q_unbounded
,
r_unbounded
,
k_unbounded
,
w
]
+
params
,
params
=
[
p_unbounded
,
updates
=
updates
)
q_unbounded
,
r_unbounded
,
k_unbounded
,
w
]
+
params
,
updates
=
updates
)
else
:
else
:
rval
=
cls
(
w_list
,
x_list
,
p
,
q
,
r
,
k
,
rval
=
cls
(
w_list
,
x_list
,
p
,
q
,
r
,
k
,
params
=
[
p_unbounded
,
q_unbounded
,
r_unbounded
,
k_unbounded
]
+
w_list
+
params
,
params
=
[
p_unbounded
,
updates
=
updates
)
q_unbounded
,
r_unbounded
,
k_unbounded
]
+
w_list
+
params
,
updates
=
updates
)
rval
.
p_unbounded
=
p_unbounded
rval
.
p_unbounded
=
p_unbounded
rval
.
q_unbounded
=
q_unbounded
rval
.
q_unbounded
=
q_unbounded
rval
.
r_unbounded
=
r_unbounded
rval
.
r_unbounded
=
r_unbounded
...
@@ -126,8 +146,10 @@ class Kouh2008(object):
...
@@ -126,8 +146,10 @@ class Kouh2008(object):
return
rval
return
rval
@classmethod
@classmethod
def
new_filters_expbounds
(
cls
,
rng
,
input
,
n_in
,
n_out
,
n_terms
,
dtype
=
None
,
eps
=
1e-1
,
def
new_filters_expbounds
(
cls
,
rng
,
input
,
n_in
,
n_out
,
n_terms
,
exponent_range
=
(
1.0
,
3.0
),
filter_range
=
1.0
):
dtype
=
None
,
eps
=
1e-1
,
exponent_range
=
(
1.0
,
3.0
),
filter_range
=
1.0
):
"""Return a KouhLayer instance with random parameters
"""Return a KouhLayer instance with random parameters
The parameters are drawn on a range [typically] suitable for fine-tuning by gradient
The parameters are drawn on a range [typically] suitable for fine-tuning by gradient
...
@@ -161,19 +183,30 @@ class Kouh2008(object):
...
@@ -161,19 +183,30 @@ class Kouh2008(object):
def
shared_uniform
(
low
,
high
,
size
,
name
):
def
shared_uniform
(
low
,
high
,
size
,
name
):
return
_shared_uniform
(
rng
,
low
,
high
,
size
,
dtype
,
name
)
return
_shared_uniform
(
rng
,
low
,
high
,
size
,
dtype
,
name
)
f_list
=
[
shared_uniform
(
low
=-
2.0
/
numpy
.
sqrt
(
n_in
),
high
=
2.0
/
numpy
.
sqrt
(
n_in
),
size
=
(
n_in
,
n_out
),
name
=
'f_
%
i'
%
i
)
f_list
=
[
shared_uniform
(
low
=-
2.0
/
numpy
.
sqrt
(
n_in
),
for
i
in
xrange
(
n_terms
)]
high
=
2.0
/
numpy
.
sqrt
(
n_in
),
size
=
(
n_in
,
n_out
),
b_list
=
[
shared_uniform
(
low
=
0
,
high
=.
01
,
size
=
(
n_out
,),
name
=
'b_
%
i'
%
i
)
name
=
'f_
%
i'
%
i
)
for
i
in
xrange
(
n_terms
)]
for
i
in
xrange
(
n_terms
)]
#x_list = [theano._asarray(eps, dtype=dtype)+softplus(tensor.dot(input, f_list[i])) for i in xrange(n_terms)]
b_list
=
[
shared_uniform
(
low
=
0
,
high
=.
01
,
size
=
(
n_out
,),
name
=
'b_
%
i'
%
i
)
for
i
in
xrange
(
n_terms
)]
# x_list = [theano._asarray(eps, dtype=dtype) + softplus(tensor.dot(input, f_list[i])) for i in xrange(n_terms)]
filter_range
=
theano
.
_asarray
(
filter_range
,
dtype
=
dtype
)
filter_range
=
theano
.
_asarray
(
filter_range
,
dtype
=
dtype
)
half_filter_range
=
theano
.
_asarray
(
filter_range
/
2
,
dtype
=
dtype
)
half_filter_range
=
theano
.
_asarray
(
filter_range
/
2
,
x_list
=
[
theano
.
_asarray
(
filter_range
+
eps
,
dtype
=
dtype
)
+
half_filter_range
*
softsign
(
tensor
.
dot
(
input
,
f_list
[
i
])
+
dtype
=
dtype
)
b_list
[
i
])
for
i
in
xrange
(
n_terms
)]
x_list
=
[
theano
.
_asarray
(
filter_range
+
eps
,
dtype
=
dtype
)
+
rval
=
cls
.
new_expbounds
(
rng
,
x_list
,
n_out
,
dtype
=
dtype
,
params
=
f_list
+
b_list
,
half_filter_range
*
softsign
(
exponent_range
=
exponent_range
)
tensor
.
dot
(
input
,
f_list
[
i
])
+
b_list
[
i
])
for
i
in
xrange
(
n_terms
)]
rval
=
cls
.
new_expbounds
(
rng
,
x_list
,
n_out
,
dtype
=
dtype
,
params
=
f_list
+
b_list
,
exponent_range
=
exponent_range
)
rval
.
f_list
=
f_list
rval
.
f_list
=
f_list
rval
.
input
=
input
# add the input to the returned object
rval
.
input
=
input
# add the input to the returned object
rval
.
filter_l1
=
sum
(
abs
(
fi
)
.
sum
()
for
fi
in
f_list
)
rval
.
filter_l1
=
sum
(
abs
(
fi
)
.
sum
()
for
fi
in
f_list
)
...
@@ -183,6 +216,8 @@ class Kouh2008(object):
...
@@ -183,6 +216,8 @@ class Kouh2008(object):
def
img_from_weights
(
self
,
rows
=
None
,
cols
=
None
,
row_gap
=
1
,
col_gap
=
1
,
eps
=
1e-4
):
def
img_from_weights
(
self
,
rows
=
None
,
cols
=
None
,
row_gap
=
1
,
col_gap
=
1
,
eps
=
1e-4
):
""" Return an image that visualizes all the weights in the layer.
""" Return an image that visualizes all the weights in the layer.
"""
"""
if
Image
is
None
:
raise
ImportError
(
"No module named PIL"
)
n_in
,
n_out
=
self
.
f_list
[
0
]
.
value
.
shape
n_in
,
n_out
=
self
.
f_list
[
0
]
.
value
.
shape
...
@@ -190,10 +225,12 @@ class Kouh2008(object):
...
@@ -190,10 +225,12 @@ class Kouh2008(object):
rows
=
int
(
numpy
.
sqrt
(
n_out
))
rows
=
int
(
numpy
.
sqrt
(
n_out
))
if
cols
is
None
:
if
cols
is
None
:
cols
=
n_out
//
rows
cols
=
n_out
//
rows
if
n_out
%
rows
:
cols
+=
1
if
n_out
%
rows
:
cols
+=
1
if
rows
is
None
:
if
rows
is
None
:
rows
=
n_out
//
cols
rows
=
n_out
//
cols
if
n_out
%
cols
:
rows
+=
1
if
n_out
%
cols
:
rows
+=
1
filter_shape
=
self
.
filter_shape
filter_shape
=
self
.
filter_shape
height
=
rows
*
(
row_gap
+
filter_shape
[
0
])
-
row_gap
height
=
rows
*
(
row_gap
+
filter_shape
[
0
])
-
row_gap
...
@@ -203,34 +240,40 @@ class Kouh2008(object):
...
@@ -203,34 +240,40 @@ class Kouh2008(object):
w
=
self
.
w
.
value
w
=
self
.
w
.
value
w_col
=
0
w_col
=
0
def
pixel_range
(
x
):
def
pixel_range
(
x
):
return
255
*
(
x
-
x
.
min
())
/
(
x
.
max
()
-
x
.
min
()
+
eps
)
return
255
*
(
x
-
x
.
min
())
/
(
x
.
max
()
-
x
.
min
()
+
eps
)
for
r
in
xrange
(
rows
):
for
r
in
xrange
(
rows
):
out_r_low
=
r
*
(
row_gap
+
filter_shape
[
0
])
out_r_low
=
r
*
(
row_gap
+
filter_shape
[
0
])
out_r_high
=
out_r_low
+
filter_shape
[
0
]
out_r_high
=
out_r_low
+
filter_shape
[
0
]
for
c
in
xrange
(
cols
):
for
c
in
xrange
(
cols
):
out_c_low
=
c
*
(
col_gap
+
filter_shape
[
1
])
out_c_low
=
c
*
(
col_gap
+
filter_shape
[
1
])
out_c_high
=
out_c_low
+
filter_shape
[
1
]
out_c_high
=
out_c_low
+
filter_shape
[
1
]
out_tile
=
out_array
[
out_r_low
:
out_r_high
,
out_c_low
:
out_c_high
,
:]
out_tile
=
out_array
[
out_r_low
:
out_r_high
,
out_c_low
:
out_c_high
,
:]
if
c
%
3
==
0
:
# linear filter
if
c
%
3
==
0
:
# linear filter
if
w_col
<
w
.
shape
[
1
]:
if
w_col
<
w
.
shape
[
1
]:
out_tile
[
...
]
=
pixel_range
(
w
[:,
w_col
])
.
reshape
(
filter_shape
+
(
1
,))
out_tile
[
...
]
=
pixel_range
(
w
[:,
w_col
])
.
reshape
(
filter_shape
+
(
1
,))
w_col
+=
1
w_col
+=
1
if
c
%
3
==
1
:
# E filters
if
c
%
3
==
1
:
# E filters
if
w_col
<
w
.
shape
[
1
]:
if
w_col
<
w
.
shape
[
1
]:
# filters after the 3rd do not get rendered, but are skipped over.
# filters after the 3rd do not get rendered, but are skipped over.
# there are only 3 colour channels.
# there are only 3 colour channels.
for
i
in
xrange
(
min
(
self
.
n_E_quadratic
,
3
)):
for
i
in
xrange
(
min
(
self
.
n_E_quadratic
,
3
)):
out_tile
[:,
:,
i
]
=
pixel_range
(
w
[:,
w_col
+
i
])
.
reshape
(
filter_shape
)
out_tile
[:,
:,
i
]
=
pixel_range
(
w
[:,
w_col
+
i
])
.
reshape
(
filter_shape
)
w_col
+=
self
.
n_E_quadratic
w_col
+=
self
.
n_E_quadratic
if
c
%
3
==
2
:
# S filters
if
c
%
3
==
2
:
# S filters
if
w_col
<
w
.
shape
[
1
]:
if
w_col
<
w
.
shape
[
1
]:
# filters after the 3rd do not get rendered, but are skipped over.
# filters after the 3rd do not get rendered, but are skipped over.
# there are only 3 colour channels.
# there are only 3 colour channels.
for
i
in
xrange
(
min
(
self
.
n_S_quadratic
,
3
)):
for
i
in
xrange
(
min
(
self
.
n_S_quadratic
,
3
)):
out_tile
[:,
:,
2
-
i
]
=
pixel_range
(
w
[:,
w_col
+
i
])
.
reshape
(
filter_shape
)
out_tile
[:,
:,
2
-
i
]
=
pixel_range
(
w
[:,
w_col
+
i
])
.
reshape
(
filter_shape
)
w_col
+=
self
.
n_S_quadratic
w_col
+=
self
.
n_S_quadratic
return
Image
.
fromarray
(
out_array
,
'RGB'
)
return
Image
.
fromarray
(
out_array
,
'RGB'
)
...
@@ -264,8 +307,9 @@ class Config(object):
...
@@ -264,8 +307,9 @@ class Config(object):
ft_batchsize
=
30
ft_batchsize
=
30
ft_epoch_len
=
50000
ft_epoch_len
=
50000
ft_status_interval
=
50
# property( lambda s:s.ft_epoch_len/s.ft_batchsize)
ft_status_interval
=
50
# property(lambda s:s.ft_epoch_len/s.ft_batchsize)
ft_validation_interval
=
property
(
lambda
s
:
s
.
ft_epoch_len
/
s
.
ft_batchsize
)
ft_validation_interval
=
property
(
lambda
s
:
s
.
ft_epoch_len
/
s
.
ft_batchsize
)
ft_ntrain_limit
=
0
ft_ntrain_limit
=
0
ft_test_lag1
=
True
ft_test_lag1
=
True
...
@@ -290,14 +334,15 @@ if 0:
...
@@ -290,14 +334,15 @@ if 0:
debug
=
False
debug
=
False
if
isinstance
(
theano
.
compile
.
mode
.
get_default_mode
(),
if
isinstance
(
theano
.
compile
.
mode
.
get_default_mode
(),
theano
.
compile
.
debugmode
.
DebugMode
):
theano
.
compile
.
debugmode
.
DebugMode
):
debug
=
True
debug
=
True
# get symbolic train set
# get symbolic train set
s_lr
=
theano
.
tensor
.
fscalar
()
s_lr
=
theano
.
tensor
.
fscalar
()
if
not
debug
:
if
not
debug
:
sshape
=
(
None
,
784
)
sshape
=
(
None
,
784
)
else
:
sshape
=
(
None
,
3
)
else
:
sshape
=
(
None
,
3
)
x
=
theano
.
tensor
.
TensorType
(
dtype
=
conf
.
dtype
,
broadcastable
=
(
0
,
0
),
shape
=
sshape
)()
x
=
theano
.
tensor
.
TensorType
(
dtype
=
conf
.
dtype
,
broadcastable
=
(
0
,
0
),
shape
=
sshape
)()
y
=
theano
.
tensor
.
lvector
()
y
=
theano
.
tensor
.
lvector
()
...
@@ -315,7 +360,8 @@ if 0:
...
@@ -315,7 +360,8 @@ if 0:
print
(
layer
.
params
)
print
(
layer
.
params
)
gparams
=
theano
.
tensor
.
grad
(
cost
,
layer
.
params
)
gparams
=
theano
.
tensor
.
grad
(
cost
,
layer
.
params
)
updates
=
[(
p
,
p
-
s_lr
*
gp
)
for
p
,
gp
in
zip
(
layer
.
params
,
gparams
)]
updates
=
[
(
p
,
p
-
s_lr
*
gp
)
for
p
,
gp
in
zip
(
layer
.
params
,
gparams
)]
train_nll
=
pfunc
([
x
,
y
,
s_lr
],
[],
updates
=
updates
)
train_nll
=
pfunc
([
x
,
y
,
s_lr
],
[],
updates
=
updates
)
...
...
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