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testgroup
pytensor
Commits
67448f81
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67448f81
authored
5月 10, 2012
作者:
Frederic
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差异文件
Make a gc test with the ifelse op.
上级
351efd7a
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
63 行增加
和
0 行删除
+63
-0
test_memory.py
theano/sandbox/cuda/tests/test_memory.py
+63
-0
没有找到文件。
theano/sandbox/cuda/tests/test_memory.py
浏览文件 @
67448f81
...
...
@@ -5,6 +5,7 @@ import numpy as np
import
theano
from
theano
import
tensor
from
theano.sandbox
import
cuda
from
theano
import
ifelse
# Skip test if cuda_ndarray is not available.
from
nose.plugins.skip
import
SkipTest
...
...
@@ -112,3 +113,65 @@ def test_memory():
del
derp
,
variables
,
grad_derp
print
"After deleting shared variable and ref to it"
,
freemem
()
assert
mem1
==
freemem
(),
(
mem1
,
freemem
())
def
test_memory_lazy
():
"""As test_memory, but with the ifelse op.
We need to test it as the ifelse op with the [c]vm create op not
executed in the graph. This mess with [c]vm gc implementation.
"""
shapes
=
(
200
,
100
)
# more_alloc1 and more_alloc2 is not the same for both dtype.
# when dtype is float32, the computation is done on the gpu.
# This insert constant on the gpu during compilation
# that raise the number of alloc.
# When dtype is float64, only the shared is on the gpu and it is transferd
# to the cpu for computation. So no extra alloc after compilation.
# more_alloc1 if after the first compilation, more_alloc2 after the second.
for
dtype
,
more_alloc1
in
[(
"float32"
,
3
),
(
"float64"
,
0
)]:
print
dtype
test_params
=
np
.
asarray
(
np
.
random
.
randn
(
np
.
prod
(
shapes
)),
dtype
)
some_vector
=
tensor
.
vector
(
'some_vector'
,
dtype
=
dtype
)
some_matrix
=
some_vector
.
reshape
(
shapes
)
branch_select
=
tensor
.
iscalar
()
mem1
=
freemem
()
print
"Before shared variable"
,
mem1
variables
=
cuda
.
shared_constructor
(
np
.
ones
((
shapes
[
1
],),
dtype
=
'float32'
))
derp
=
tensor
.
sum
(
tensor
.
dot
(
some_matrix
[:
shapes
[
0
]],
variables
))
derp
=
ifelse
.
IfElse
(
1
)(
branch_select
,
derp
,
some_matrix
[:
shapes
[
0
]]
.
sum
())
derp
+=
1
print
"Shared took "
,
np
.
prod
(
variables
.
get_value
(
borrow
=
True
,
return_internal_type
=
True
)
.
shape
)
*
4
/
1024
,
"kB"
mem2
=
freemem
()
print
"Before compilation"
,
mem2
mem2_1
=
freemem
(
extra_alloc
=
more_alloc1
)
obj
=
theano
.
function
([
some_vector
,
branch_select
],
derp
,
mode
=
mode_with_gpu
)
#theano.printing.debugprint(obj, print_type=True)
mem3
=
freemem
()
print
"After function compilation 1"
,
mem3
assert
mem2_1
==
mem3
,
(
mem2_1
,
mem3
)
for
i
in
range
(
3
):
obj
(
test_params
,
1
)
print
"After function evaluation branch true"
,
freemem
()
assert
mem2_1
==
freemem
(),
(
mem2_1
,
freemem
())
obj
(
test_params
,
0
)
print
"After function evaluation branch false"
,
freemem
()
assert
mem2_1
==
freemem
(),
(
mem2_1
,
freemem
())
del
obj
print
"After deleting function 1"
,
freemem
()
assert
mem2
==
freemem
(),
(
mem2
,
freemem
())
del
derp
,
variables
print
"After deleting shared variable and ref to it"
,
freemem
()
assert
mem1
==
freemem
(),
(
mem1
,
freemem
())
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