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testgroup
pytensor
Commits
ca3fc8f6
提交
ca3fc8f6
authored
4月 03, 2017
作者:
Arnaud Bergeron
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
Fix flake8.
上级
78657991
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
27 行增加
和
59 行删除
+27
-59
test_type.py
theano/gpuarray/tests/test_type.py
+4
-4
multinomial.py
theano/sandbox/multinomial.py
+1
-2
test_multinomial.py
theano/sandbox/tests/test_multinomial.py
+1
-2
test_rng_mrg.py
theano/sandbox/tests/test_rng_mrg.py
+21
-51
没有找到文件。
theano/gpuarray/tests/test_type.py
浏览文件 @
ca3fc8f6
...
...
@@ -13,7 +13,7 @@ from theano.tensor.tests.test_sharedvar import makeSharedTester
from
.config
import
test_ctx_name
from
.test_basic_ops
import
rand_gpuarray
from
..type
import
GpuArrayType
,
gpuarray_shared_constructor
from
..type
import
GpuArrayType
,
gpuarray_shared_constructor
,
get_context
import
pygpu
...
...
@@ -93,14 +93,14 @@ test_shared_options = makeSharedTester(
cls
=
pygpu
.
_array
.
ndgpuarray
),
test_internal_type_
=
lambda
a
:
isinstance
(
a
,
pygpu
.
gpuarray
.
GpuArray
),
theano_fct_
=
theano
.
tensor
.
exp
,
ref_fct_
=
n
umpy
.
exp
,
ref_fct_
=
n
p
.
exp
,
cast_value_
=
lambda
v
:
pygpu
.
asarray
(
v
,
context
=
get_context
(
test_ctx_name
),
cls
=
pygpu
.
_array
.
ndgpuarray
),
name
=
'test_shared_options'
)
test_shared_options2
=
makeSharedTester
(
shared_constructor_
=
gpuarray_shared_constructor
shared_constructor_
=
gpuarray_shared_constructor
,
dtype_
=
theano
.
config
.
floatX
,
get_value_borrow_true_alias_
=
False
,
shared_borrow_true_alias_
=
False
,
...
...
@@ -112,7 +112,7 @@ test_shared_options2 = makeSharedTester(
cls
=
pygpu
.
_array
.
ndgpuarray
),
test_internal_type_
=
lambda
a
:
isinstance
(
a
,
pygpu
.
gpuarray
.
GpuArray
),
theano_fct_
=
theano
.
tensor
.
exp
,
ref_fct_
=
n
umpy
.
exp
,
ref_fct_
=
n
p
.
exp
,
cast_value_
=
lambda
v
:
pygpu
.
asarray
(
v
,
context
=
get_context
(
test_ctx_name
),
cls
=
pygpu
.
_array
.
ndgpuarray
),
name
=
'test_shared_options2'
)
theano/sandbox/multinomial.py
浏览文件 @
ca3fc8f6
...
...
@@ -5,11 +5,10 @@ import warnings
import
theano
from
theano
import
Op
,
Apply
import
theano.tensor
as
T
from
theano.gof
import
local_optimizer
from
theano.tensor
import
NotScalarConstantError
,
get_scalar_constant_value
from
theano.scalar
import
as_scalar
import
copy
class
MultinomialFromUniform
(
Op
):
# TODO : need description for parameter 'odtype'
"""
...
...
theano/sandbox/tests/test_multinomial.py
浏览文件 @
ca3fc8f6
...
...
@@ -9,7 +9,6 @@ import numpy as np
import
theano
from
theano
import
config
,
function
,
tensor
from
theano.sandbox
import
multinomial
from
theano.compile.mode
import
get_default_mode
import
theano.tests.unittest_tools
as
utt
from
theano.compat
import
PY3
from
theano.misc.pkl_utils
import
CompatUnpickler
...
...
@@ -127,7 +126,7 @@ def test_multinomial_large():
p
=
tensor
.
fmatrix
()
u
=
tensor
.
fvector
()
m
=
multinomial
.
MultinomialFromUniform
(
'auto'
)(
p
,
u
)
f
=
function
([
p
,
u
],
m
*
2
,
allow_input_downcast
=
True
,
mode
=
mode
)
f
=
function
([
p
,
u
],
m
*
2
,
allow_input_downcast
=
True
)
pval
=
np
.
arange
(
10000
*
4
,
dtype
=
'float32'
)
.
reshape
((
10000
,
4
))
+
0.1
pval
=
pval
/
pval
.
sum
(
axis
=
1
)[:,
None
]
...
...
theano/sandbox/tests/test_rng_mrg.py
浏览文件 @
ca3fc8f6
from
__future__
import
absolute_import
,
print_function
,
division
import
copy
import
os
import
sys
import
time
import
unittest
import
functools
from
nose.plugins.skip
import
SkipTest
from
nose.tools
import
assert_raises
import
numpy
as
np
from
six.moves
import
xrange
...
...
@@ -245,8 +242,8 @@ def test_uniform():
# TODO: test ndim!=size.ndim
# TODO: test bad seed
# TODO: test size=Var, with shape that change from call to call
if
(
mode
in
[
'DEBUG_MODE'
,
'DebugMode'
,
'FAST_COMPILE'
]
or
mode
==
'Mode'
and
config
.
linker
in
[
'py'
]):
if
(
config
.
mode
in
[
'DEBUG_MODE'
,
'DebugMode'
,
'FAST_COMPILE'
]
or
config
.
mode
==
'Mode'
and
config
.
linker
in
[
'py'
]):
sample_size
=
(
10
,
100
)
steps
=
50
else
:
...
...
@@ -266,8 +263,6 @@ def test_uniform():
# TEST CPU IMPLEMENTATION
# The python and C implementation are tested with DebugMode
# print ''
# print 'ON CPU with size=(%s):' % str(size)
x
=
tensor
.
matrix
()
R
=
MRG_RandomStreams
(
234
)
# Note: we specify `nstreams` to avoid a warning.
...
...
@@ -276,15 +271,10 @@ def test_uniform():
# warning using the warning module.
u
=
R
.
uniform
(
size
=
size
,
nstreams
=
rng_mrg
.
guess_n_streams
(
size
,
warn
=
False
))
f
=
theano
.
function
(
var_input
,
u
,
mode
=
mode
)
f
=
theano
.
function
(
var_input
,
u
)
assert
any
([
isinstance
(
node
.
op
,
theano
.
sandbox
.
rng_mrg
.
mrg_uniform
)
for
node
in
f
.
maker
.
fgraph
.
toposort
()])
# theano.printing.debugprint(f)
cpu_out
=
f
(
*
input
)
# print 'CPU: random?[:10], random?[-10:]'
# print cpu_out[0, 0:10]
# print cpu_out[-1, -10:]
f
(
*
input
)
# Increase the number of steps if sizes implies only a few samples
if
np
.
prod
(
const_size
)
<
10
:
...
...
@@ -293,12 +283,10 @@ def test_uniform():
steps_
=
steps
basictest
(
f
,
steps_
,
const_size
,
prefix
=
'mrg cpu'
,
inputs
=
input
)
# print ''
# print 'ON CPU w Numpy with size=(%s):' % str(size)
RR
=
theano
.
tensor
.
shared_randomstreams
.
RandomStreams
(
234
)
uu
=
RR
.
uniform
(
size
=
size
)
ff
=
theano
.
function
(
var_input
,
uu
,
mode
=
mode
)
ff
=
theano
.
function
(
var_input
,
uu
)
# It's not our problem if numpy generates 0 or 1
basictest
(
ff
,
steps_
,
const_size
,
prefix
=
'numpy'
,
allow_01
=
True
,
inputs
=
input
)
...
...
@@ -345,8 +333,8 @@ def test_binomial():
# we test size in a tuple of int and a tensor.shape.
# we test the param p with int.
if
(
mode
in
[
'DEBUG_MODE'
,
'DebugMode'
,
'FAST_COMPILE'
]
or
mode
==
'Mode'
and
config
.
linker
in
[
'py'
]):
if
(
config
.
mode
in
[
'DEBUG_MODE'
,
'DebugMode'
,
'FAST_COMPILE'
]
or
config
.
mode
==
'Mode'
and
config
.
linker
in
[
'py'
]):
sample_size
=
(
10
,
50
)
steps
=
50
rtol
=
0.02
...
...
@@ -373,8 +361,8 @@ def test_binomial():
def
t_binomial
(
mean
,
size
,
const_size
,
var_input
,
input
,
steps
,
rtol
):
R
=
MRG_RandomStreams
(
234
)
u
=
R
.
binomial
(
size
=
size
,
p
=
mean
)
f
=
theano
.
function
(
var_input
,
u
,
mode
=
mode
)
out
=
f
(
*
input
)
f
=
theano
.
function
(
var_input
,
u
)
f
(
*
input
)
# Increase the number of steps if sizes implies only a few samples
if
np
.
prod
(
const_size
)
<
10
:
...
...
@@ -388,7 +376,7 @@ def t_binomial(mean, size, const_size, var_input, input, steps, rtol):
RR
=
theano
.
tensor
.
shared_randomstreams
.
RandomStreams
(
234
)
uu
=
RR
.
binomial
(
size
=
size
,
p
=
mean
)
ff
=
theano
.
function
(
var_input
,
uu
,
mode
=
mode
)
ff
=
theano
.
function
(
var_input
,
uu
)
# It's not our problem if numpy generates 0 or 1
basictest
(
ff
,
steps_
,
const_size
,
prefix
=
'numpy'
,
allow_01
=
True
,
inputs
=
input
,
target_avg
=
mean
,
mean_rtol
=
rtol
)
...
...
@@ -399,8 +387,8 @@ def test_normal0():
steps
=
50
std
=
2.
if
(
mode
in
[
'DEBUG_MODE'
,
'DebugMode'
,
'FAST_COMPILE'
]
or
mode
==
'Mode'
and
config
.
linker
in
[
'py'
]):
if
(
config
.
mode
in
[
'DEBUG_MODE'
,
'DebugMode'
,
'FAST_COMPILE'
]
or
config
.
mode
==
'Mode'
and
config
.
linker
in
[
'py'
]):
sample_size
=
(
25
,
30
)
default_rtol
=
.
02
else
:
...
...
@@ -435,17 +423,13 @@ def test_normal0():
((
2
,),
(
2
,),
[],
[],
-
5.
,
default_rtol
,
0.02
),
((
3
,),
(
3
,),
[],
[],
-
5.
,
default_rtol
,
0.02
),
]:
# print ''
# print 'ON CPU:'
R
=
MRG_RandomStreams
(
234
)
# Note: we specify `nstreams` to avoid a warning.
n
=
R
.
normal
(
size
=
size
,
avg
=
avg
,
std
=
std
,
nstreams
=
rng_mrg
.
guess_n_streams
(
size
,
warn
=
False
))
f
=
theano
.
function
(
var_input
,
n
,
mode
=
mode
)
# theano.printing.debugprint(f)
out
=
f
(
*
input
)
# print 'random?[:10]\n', out[0, 0:10]
f
=
theano
.
function
(
var_input
,
n
)
f
(
*
input
)
# Increase the number of steps if size implies only a few samples
if
np
.
prod
(
const_size
)
<
10
:
...
...
@@ -458,8 +442,6 @@ def test_normal0():
sys
.
stdout
.
flush
()
# print ''
# print 'ON CPU w NUMPY:'
RR
=
theano
.
tensor
.
shared_randomstreams
.
RandomStreams
(
234
)
nn
=
RR
.
normal
(
size
=
size
,
avg
=
avg
,
std
=
std
)
...
...
@@ -497,42 +479,30 @@ def basic_multinomialtest(f, steps, sample_size, target_pvals, n_samples,
def
test_multinomial
():
steps
=
100
mode_
=
mode
if
mode
==
'FAST_COMPILE'
:
mode_
=
'FAST_RUN'
if
(
mode
in
[
'DEBUG_MODE'
,
'DebugMode'
,
'FAST_COMPILE'
]
or
mode
==
'Mode'
and
config
.
linker
in
[
'py'
]):
if
(
config
.
mode
in
[
'DEBUG_MODE'
,
'DebugMode'
,
'FAST_COMPILE'
]
or
config
.
mode
==
'Mode'
and
config
.
linker
in
[
'py'
]):
sample_size
=
(
49
,
5
)
else
:
sample_size
=
(
450
,
6
)
mode_
=
theano
.
compile
.
mode
.
get_mode
(
mode_
)
# print ''
# print 'ON CPU:'
pvals
=
np
.
asarray
(
np
.
random
.
uniform
(
size
=
sample_size
))
pvals
=
np
.
apply_along_axis
(
lambda
row
:
row
/
np
.
sum
(
row
),
1
,
pvals
)
R
=
MRG_RandomStreams
(
234
)
# Note: we specify `nstreams` to avoid a warning.
m
=
R
.
multinomial
(
pvals
=
pvals
,
dtype
=
config
.
floatX
,
nstreams
=
30
*
256
)
f
=
theano
.
function
([],
m
,
mode
=
mode_
)
# theano.printing.debugprint(f)
out
=
f
()
f
=
theano
.
function
([],
m
)
f
()
basic_multinomialtest
(
f
,
steps
,
sample_size
,
pvals
,
n_samples
=
1
,
prefix
=
'mrg '
)
def
test_multinomial_n_samples
():
mode_
=
mode
if
mode
==
'FAST_COMPILE'
:
mode_
=
'FAST_RUN'
if
(
mode
in
[
'DEBUG_MODE'
,
'DebugMode'
,
'FAST_COMPILE'
]
or
mode
==
'Mode'
and
config
.
linker
in
[
'py'
]):
if
(
config
.
mode
in
[
'DEBUG_MODE'
,
'DebugMode'
,
'FAST_COMPILE'
]
or
config
.
mode
==
'Mode'
and
config
.
linker
in
[
'py'
]):
sample_size
=
(
49
,
5
)
else
:
sample_size
=
(
450
,
6
)
mode_
=
theano
.
compile
.
mode
.
get_mode
(
mode_
)
pvals
=
np
.
asarray
(
np
.
random
.
uniform
(
size
=
sample_size
))
pvals
=
np
.
apply_along_axis
(
lambda
row
:
row
/
np
.
sum
(
row
),
1
,
pvals
)
...
...
@@ -541,7 +511,7 @@ def test_multinomial_n_samples():
for
n_samples
,
steps
in
zip
([
5
,
10
,
100
,
1000
],
[
20
,
10
,
1
,
1
]):
m
=
R
.
multinomial
(
pvals
=
pvals
,
n
=
n_samples
,
dtype
=
config
.
floatX
,
nstreams
=
30
*
256
)
f
=
theano
.
function
([],
m
,
mode
=
mode_
)
f
=
theano
.
function
([],
m
)
basic_multinomialtest
(
f
,
steps
,
sample_size
,
pvals
,
n_samples
,
prefix
=
'mrg '
)
sys
.
stdout
.
flush
()
...
...
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