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testgroup
pytensor
Commits
2a3aa0fa
提交
2a3aa0fa
authored
11月 08, 2016
作者:
notoraptor
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差异文件
Update.
Ensure code works both on Python 2 and Python 3. test_reduction rewritten.
上级
1ec4bbc9
隐藏空白字符变更
内嵌
并排
正在显示
3 个修改的文件
包含
47 行增加
和
17 行删除
+47
-17
reduction.py
theano/gpuarray/reduction.py
+6
-0
test_reduction.py
theano/gpuarray/tests/test_reduction.py
+32
-14
basic.py
theano/tensor/basic.py
+9
-3
没有找到文件。
theano/gpuarray/reduction.py
浏览文件 @
2a3aa0fa
...
@@ -55,6 +55,12 @@ class GpuMaxAndArgmax(Op):
...
@@ -55,6 +55,12 @@ class GpuMaxAndArgmax(Op):
max_typecode
=
pygpu
.
gpuarray
.
dtype_to_typecode
(
node
.
inputs
[
0
]
.
dtype
)
max_typecode
=
pygpu
.
gpuarray
.
dtype_to_typecode
(
node
.
inputs
[
0
]
.
dtype
)
argmax_typecode
=
pygpu
.
gpuarray
.
dtype_to_typecode
(
self
.
argmax_dtype
)
argmax_typecode
=
pygpu
.
gpuarray
.
dtype_to_typecode
(
self
.
argmax_dtype
)
ret
=
"""
ret
=
"""
#if PY_MAJOR_VERSION >= 3
#ifndef PyInt_AS_LONG
#define PyInt_AS_LONG PyLong_AS_LONG
#endif
#endif
unsigned
%(name)
s_redux_len = PyTuple_GET_SIZE(
%(axes)
s);
unsigned
%(name)
s_redux_len = PyTuple_GET_SIZE(
%(axes)
s);
unsigned*
%(name)
s_axes_to_reduce = (unsigned*)malloc(
%(name)
s_redux_len * sizeof(unsigned));
unsigned*
%(name)
s_axes_to_reduce = (unsigned*)malloc(
%(name)
s_redux_len * sizeof(unsigned));
for (unsigned i = 0; i <
%(name)
s_redux_len; ++i) {
for (unsigned i = 0; i <
%(name)
s_redux_len; ++i) {
...
...
theano/gpuarray/tests/test_reduction.py
浏览文件 @
2a3aa0fa
...
@@ -11,7 +11,11 @@ from .config import mode_with_gpu, mode_without_gpu
...
@@ -11,7 +11,11 @@ from .config import mode_with_gpu, mode_without_gpu
from
.test_basic_ops
import
rand_gpuarray
from
.test_basic_ops
import
rand_gpuarray
from
..
import
GpuArrayType
from
..
import
GpuArrayType
test_shape
=
(
1000
,
100
,
10
,
5
,
2
)
import
math
# Number of values to be used in test tensors (except with 0-D tensors!).
test_size
=
10000000
# NB: This order of "unsorted axes" is arbitrary and is here
# NB: This order of "unsorted axes" is arbitrary and is here
# just to have the same informations on profile output
# just to have the same informations on profile output
# from one test to another.
# from one test to another.
...
@@ -29,7 +33,7 @@ def numpy_random_array(shapes):
...
@@ -29,7 +33,7 @@ def numpy_random_array(shapes):
def
numpy_maxandargmax
(
X
,
axis
=
None
):
def
numpy_maxandargmax
(
X
,
axis
=
None
):
if
axis
is
None
:
if
axis
is
None
:
axis
=
range
(
X
.
ndim
)
axis
=
list
(
range
(
X
.
ndim
)
)
elif
not
isinstance
(
axis
,
(
tuple
,
list
)):
elif
not
isinstance
(
axis
,
(
tuple
,
list
)):
axis
=
[
int
(
axis
)]
axis
=
[
int
(
axis
)]
axis
=
list
(
set
(
axis
))
# remove duplicated values.
axis
=
list
(
set
(
axis
))
# remove duplicated values.
...
@@ -62,14 +66,22 @@ def check_if_gpu_maxandargmax_not_in_graph(theano_function):
...
@@ -62,14 +66,22 @@ def check_if_gpu_maxandargmax_not_in_graph(theano_function):
class
BaseTest
:
class
BaseTest
:
# This attribute must be set in subclasses.
# This attribute must be set in subclasses.
tensor_size
=
None
tensor_size
=
None
shape
=
None
dtype
=
theano
.
config
.
floatX
dtype
=
theano
.
config
.
floatX
def
get_shape
(
self
):
if
self
.
tensor_size
==
0
:
return
[]
return
[
int
(
math
.
ceil
(
math
.
pow
(
test_size
,
1
/
self
.
tensor_size
)))]
*
self
.
tensor_size
def
setUp
(
self
):
def
setUp
(
self
):
if
not
isinstance
(
self
.
tensor_size
,
int
):
if
not
isinstance
(
self
.
tensor_size
,
int
):
raise
SkipTest
(
"No tensor ndim defined."
)
raise
SkipTest
(
"No tensor ndim defined."
)
if
self
.
tensor_size
<
0
or
self
.
tensor_size
>
5
:
if
self
.
tensor_size
<
0
or
self
.
tensor_size
>
5
:
raise
SkipTest
(
"We allow from 0 (included) to 5 (inclued) dimensons for these tests."
)
raise
SkipTest
(
"We allow from 0 (included) to 5 (inclued) dimensons for these tests."
)
if
self
.
shape
is
None
:
self
.
shape
=
self
.
get_shape
()
def
get_host_tensor
(
self
):
def
get_host_tensor
(
self
):
broadcastable
=
(
False
,)
*
self
.
tensor_size
broadcastable
=
(
False
,)
*
self
.
tensor_size
...
@@ -80,10 +92,10 @@ class BaseTest:
...
@@ -80,10 +92,10 @@ class BaseTest:
return
GpuArrayType
(
self
.
dtype
,
broadcastable
)()
return
GpuArrayType
(
self
.
dtype
,
broadcastable
)()
def
get_host_value
(
self
):
def
get_host_value
(
self
):
return
numpy_random_array
(
test_shape
[:
self
.
tensor_size
]
)
return
numpy_random_array
(
self
.
shape
)
def
get_gpu_value
(
self
):
def
get_gpu_value
(
self
):
return
rand_gpuarray
(
*
(
test_shape
[:
self
.
tensor_size
])
)
return
rand_gpuarray
(
*
self
.
shape
)
# NB: In compute_host() and compute_gpu(),
# NB: In compute_host() and compute_gpu(),
# the first call of the theano function should be ignored in profiling,
# the first call of the theano function should be ignored in profiling,
...
@@ -92,7 +104,7 @@ class BaseTest:
...
@@ -92,7 +104,7 @@ class BaseTest:
def
compute_host
(
self
,
test_tensor
,
axis
):
def
compute_host
(
self
,
test_tensor
,
axis
):
M
=
self
.
get_host_tensor
()
M
=
self
.
get_host_tensor
()
f
=
theano
.
function
([
M
],
[
T
.
max
(
M
,
axis
=
axis
),
T
.
argmax
(
M
,
axis
=
axis
)],
f
=
theano
.
function
([
M
],
[
T
.
max
(
M
,
axis
=
axis
),
T
.
argmax
(
M
,
axis
=
axis
)],
name
=
'HOST
-function'
,
mode
=
mode_without_gpu
)
name
=
'HOST
/shape:'
+
str
(
test_tensor
.
shape
)
+
'/axis:'
+
str
(
axis
)
,
mode
=
mode_without_gpu
)
check_if_gpu_maxandargmax_not_in_graph
(
f
)
check_if_gpu_maxandargmax_not_in_graph
(
f
)
f
(
test_tensor
)
f
(
test_tensor
)
theano_max
,
theano_argmax
=
f
(
test_tensor
)
theano_max
,
theano_argmax
=
f
(
test_tensor
)
...
@@ -103,7 +115,7 @@ class BaseTest:
...
@@ -103,7 +115,7 @@ class BaseTest:
def
compute_gpu
(
self
,
test_gpu_tensor
,
test_host_tensor
,
axis
):
def
compute_gpu
(
self
,
test_gpu_tensor
,
test_host_tensor
,
axis
):
M
=
self
.
get_gpu_tensor
()
M
=
self
.
get_gpu_tensor
()
f
=
theano
.
function
([
M
],
[
T
.
max
(
M
,
axis
=
axis
),
T
.
argmax
(
M
,
axis
=
axis
)],
f
=
theano
.
function
([
M
],
[
T
.
max
(
M
,
axis
=
axis
),
T
.
argmax
(
M
,
axis
=
axis
)],
name
=
'GPU
-function'
,
mode
=
mode_with_gpu
)
name
=
'GPU
/shape:'
+
str
(
test_gpu_tensor
.
shape
)
+
'/axis:'
+
str
(
axis
)
,
mode
=
mode_with_gpu
)
check_if_gpu_maxandargmax_in_graph
(
f
)
check_if_gpu_maxandargmax_in_graph
(
f
)
f
(
test_gpu_tensor
)
f
(
test_gpu_tensor
)
theano_max
,
theano_argmax
=
f
(
test_gpu_tensor
)
theano_max
,
theano_argmax
=
f
(
test_gpu_tensor
)
...
@@ -119,22 +131,17 @@ class BaseTest:
...
@@ -119,22 +131,17 @@ class BaseTest:
self
.
compute_gpu
(
test_gpu_tensor
,
test_host_tensor
,
axis
)
self
.
compute_gpu
(
test_gpu_tensor
,
test_host_tensor
,
axis
)
def
compute_axis
(
self
,
pos
):
def
compute_axis
(
self
,
pos
):
if
0
<=
pos
<
self
.
tensor_size
:
if
self
.
tensor_size
!=
1
and
0
<=
pos
<
self
.
tensor_size
:
self
.
compute
(
pos
)
self
.
compute
(
pos
)
def
compute_some_axes
(
self
,
count
):
def
compute_some_axes
(
self
,
count
):
if
0
<=
count
<
=
self
.
tensor_size
:
if
0
<=
count
<
self
.
tensor_size
:
self
.
compute
([
i
for
i
in
unsorted_axes
if
i
<
self
.
tensor_size
][:
count
])
self
.
compute
([
i
for
i
in
unsorted_axes
if
i
<
self
.
tensor_size
][:
count
])
# Equivalent to test reduction on all axes.
def
test_none
(
self
):
def
test_none
(
self
):
self
.
compute
(
None
)
self
.
compute
(
None
)
def
test_all_axes
(
self
):
self
.
compute
(
range
(
self
.
tensor_size
))
def
test_all_axes_unsorted
(
self
):
self
.
compute
([
i
for
i
in
unsorted_axes
if
i
<
self
.
tensor_size
])
def
test_axis_1
(
self
):
def
test_axis_1
(
self
):
self
.
compute_axis
(
0
)
self
.
compute_axis
(
0
)
...
@@ -169,6 +176,16 @@ class TestScalar(BaseTest, TestCase):
...
@@ -169,6 +176,16 @@ class TestScalar(BaseTest, TestCase):
class
TestVector
(
BaseTest
,
TestCase
):
class
TestVector
(
BaseTest
,
TestCase
):
tensor_size
=
1
tensor_size
=
1
# Special case
class
TestRow
(
BaseTest
,
TestCase
):
tensor_size
=
2
shape
=
[
1
,
test_size
]
# Special case
class
TestColumn
(
BaseTest
,
TestCase
):
tensor_size
=
2
shape
=
[
test_size
,
1
]
class
TestMatrix
(
BaseTest
,
TestCase
):
class
TestMatrix
(
BaseTest
,
TestCase
):
tensor_size
=
2
tensor_size
=
2
...
@@ -176,3 +193,4 @@ class TestMatrix(BaseTest, TestCase):
...
@@ -176,3 +193,4 @@ class TestMatrix(BaseTest, TestCase):
class
TestTensor5
(
BaseTest
,
TestCase
):
class
TestTensor5
(
BaseTest
,
TestCase
):
tensor_size
=
5
tensor_size
=
5
theano/tensor/basic.py
浏览文件 @
2a3aa0fa
...
@@ -1237,6 +1237,12 @@ class MaxAndArgmax(Op):
...
@@ -1237,6 +1237,12 @@ class MaxAndArgmax(Op):
max
,
argmax
=
out
max
,
argmax
=
out
fail
=
sub
[
"fail"
]
fail
=
sub
[
"fail"
]
ret
=
"""
ret
=
"""
#if PY_MAJOR_VERSION >= 3
#ifndef PyInt_AS_LONG
#define PyInt_AS_LONG PyLong_AS_LONG
#endif
#endif
int axis;
int axis;
if (PyTuple_GET_SIZE(
%(axis)
s) == PyArray_NDIM(
%(x)
s)) {
if (PyTuple_GET_SIZE(
%(axis)
s) == PyArray_NDIM(
%(x)
s)) {
...
@@ -1597,7 +1603,7 @@ def max_and_argmax(a, axis=None, keepdims=False):
...
@@ -1597,7 +1603,7 @@ def max_and_argmax(a, axis=None, keepdims=False):
# Check axis and convert it to a Python list of integers.
# Check axis and convert it to a Python list of integers.
# Axis will be used as an op param of MaxAndArgmax.
# Axis will be used as an op param of MaxAndArgmax.
if
axis
is
None
:
if
axis
is
None
:
axis
=
range
(
a
.
type
.
ndim
)
axis
=
list
(
range
(
a
.
type
.
ndim
)
)
elif
(
isinstance
(
axis
,
(
integer_types
,
numpy
.
integer
))
or
elif
(
isinstance
(
axis
,
(
integer_types
,
numpy
.
integer
))
or
(
isinstance
(
axis
,
numpy
.
ndarray
)
and
axis
.
ndim
==
0
)):
(
isinstance
(
axis
,
numpy
.
ndarray
)
and
axis
.
ndim
==
0
)):
axis
=
[
int
(
axis
)]
axis
=
[
int
(
axis
)]
...
@@ -1605,7 +1611,7 @@ def max_and_argmax(a, axis=None, keepdims=False):
...
@@ -1605,7 +1611,7 @@ def max_and_argmax(a, axis=None, keepdims=False):
axis
=
[
int
(
i
)
for
i
in
axis
]
axis
=
[
int
(
i
)
for
i
in
axis
]
elif
isinstance
(
axis
,
Variable
):
elif
isinstance
(
axis
,
Variable
):
if
NoneConst
.
equals
(
axis
):
if
NoneConst
.
equals
(
axis
):
axis
=
range
(
a
.
type
.
ndim
)
axis
=
list
(
range
(
a
.
type
.
ndim
)
)
elif
not
isinstance
(
axis
,
TensorConstant
):
elif
not
isinstance
(
axis
,
TensorConstant
):
raise
TypeError
(
"max and argmax computation needs a constant axis. Got
%
s"
%
axis
)
raise
TypeError
(
"max and argmax computation needs a constant axis. Got
%
s"
%
axis
)
else
:
else
:
...
@@ -1616,7 +1622,7 @@ def max_and_argmax(a, axis=None, keepdims=False):
...
@@ -1616,7 +1622,7 @@ def max_and_argmax(a, axis=None, keepdims=False):
elif
isinstance
(
axis
.
data
,
(
list
,
numpy
.
ndarray
)):
elif
isinstance
(
axis
.
data
,
(
list
,
numpy
.
ndarray
)):
axis
=
[
int
(
i
)
for
i
in
axis
.
data
]
axis
=
[
int
(
i
)
for
i
in
axis
.
data
]
if
len
(
axis
)
==
0
:
if
len
(
axis
)
==
0
:
axis
=
range
(
a
.
type
.
ndim
)
axis
=
list
(
range
(
a
.
type
.
ndim
)
)
else
:
else
:
for
i
in
range
(
len
(
axis
)):
for
i
in
range
(
len
(
axis
)):
if
axis
[
i
]
<
0
:
if
axis
[
i
]
<
0
:
...
...
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