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testgroup
pytensor
Commits
6c23f17d
提交
6c23f17d
authored
1月 28, 2015
作者:
Dustin Webb
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
Generalized the test code to work for both the CPU and GPU implementations.
There is still one problem in the tests to work out though so this is not ready to merge.
上级
5b6dd257
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
108 行增加
和
208 行删除
+108
-208
basic_ops.py
theano/sandbox/cuda/basic_ops.py
+20
-9
opt.py
theano/sandbox/cuda/opt.py
+3
-3
test_opt.py
theano/sandbox/cuda/tests/test_opt.py
+27
-152
test_opt.py
theano/tensor/tests/test_opt.py
+58
-44
没有找到文件。
theano/sandbox/cuda/basic_ops.py
浏览文件 @
6c23f17d
...
@@ -256,9 +256,23 @@ class GpuElemwise(GpuOp):
...
@@ -256,9 +256,23 @@ class GpuElemwise(GpuOp):
_inputs
=
[
as_cuda_ndarray_variable
(
i
)
for
i
in
inputs
]
_inputs
=
[
as_cuda_ndarray_variable
(
i
)
for
i
in
inputs
]
if
self
.
nin
>
0
and
len
(
_inputs
)
!=
self
.
nin
:
if
self
.
nin
>
0
and
len
(
_inputs
)
!=
self
.
nin
:
raise
TypeError
(
'Wrong argument count'
,
(
self
.
nin
,
len
(
_inputs
)))
raise
TypeError
(
'Wrong argument count'
,
(
self
.
nin
,
len
(
_inputs
)))
for
i
in
_inputs
[
1
:]:
if
i
.
type
.
ndim
!=
inputs
[
0
]
.
type
.
ndim
:
target_length
=
max
([
input
.
type
.
ndim
for
input
in
_inputs
])
raise
TypeError
(
'different ranks among inputs'
)
args
=
[]
for
input
in
_inputs
:
length
=
input
.
type
.
ndim
difference
=
target_length
-
length
if
not
difference
:
args
.
append
(
input
)
else
:
# TODO: use LComplete instead
args
.
append
(
GpuDimShuffle
(
input
.
type
.
broadcastable
,
[
'x'
]
*
difference
+
range
(
length
)
)(
input
))
_inputs
=
args
# output is broadcastable only along dimensions where all
# output is broadcastable only along dimensions where all
# inputs are broadcastable
# inputs are broadcastable
...
@@ -303,7 +317,7 @@ class GpuDimShuffle(GpuOp):
...
@@ -303,7 +317,7 @@ class GpuDimShuffle(GpuOp):
def
__init__
(
self
,
input_broadcastable
,
new_order
):
def
__init__
(
self
,
input_broadcastable
,
new_order
):
input_broadcastable
=
tuple
(
input_broadcastable
)
input_broadcastable
=
tuple
(
input_broadcastable
)
self
.
input_broadcastable
=
input_broadcastable
self
.
input_broadcastable
=
input_broadcastable
self
.
new_order
=
new_order
self
.
new_order
=
tuple
(
new_order
)
for
i
,
b
in
enumerate
(
input_broadcastable
):
for
i
,
b
in
enumerate
(
input_broadcastable
):
if
i
not
in
new_order
:
if
i
not
in
new_order
:
...
@@ -351,8 +365,7 @@ class GpuDimShuffle(GpuOp):
...
@@ -351,8 +365,7 @@ class GpuDimShuffle(GpuOp):
# Both case are good.
# Both case are good.
ob
=
[]
ob
=
[]
if
not
isinstance
(
input
.
type
,
CudaNdarrayType
):
if
not
isinstance
(
input
.
type
,
CudaNdarrayType
):
raise
TypeError
(
"The input of a GpuDimshuffle must"
input
=
as_cuda_ndarray_variable
(
input
)
" be a CudaNdarray"
)
for
value
in
self
.
new_order
:
for
value
in
self
.
new_order
:
if
value
==
'x'
:
if
value
==
'x'
:
ob
.
append
(
True
)
ob
.
append
(
True
)
...
@@ -3246,9 +3259,7 @@ class GpuAlloc(GpuOp):
...
@@ -3246,9 +3259,7 @@ class GpuAlloc(GpuOp):
v
=
as_cuda_ndarray_variable
(
value
)
v
=
as_cuda_ndarray_variable
(
value
)
sh
=
[
tensor
.
as_tensor_variable
(
s
)
for
s
in
shape
]
sh
=
[
tensor
.
as_tensor_variable
(
s
)
for
s
in
shape
]
if
v
.
ndim
!=
len
(
shape
):
if
v
.
ndim
!=
len
(
shape
):
raise
TypeError
(
value
=
tensor
.
shape_padleft
(
value
,
len
(
shape
)
-
v
.
ndim
)
'GpuAlloc requires value of same dimensions as shape'
,
value
,
len
(
shape
))
bcast
=
[]
bcast
=
[]
for
s
in
sh
:
for
s
in
sh
:
...
...
theano/sandbox/cuda/opt.py
浏览文件 @
6c23f17d
...
@@ -1814,7 +1814,7 @@ gpu_inplace_elemwise_optimizer = tensor.opt.inplace_elemwise_optimizer_op(
...
@@ -1814,7 +1814,7 @@ gpu_inplace_elemwise_optimizer = tensor.opt.inplace_elemwise_optimizer_op(
optdb
.
register
(
'gpu_inplace_elemwise_opt'
,
gpu_inplace_elemwise_optimizer
,
75
,
optdb
.
register
(
'gpu_inplace_elemwise_opt'
,
gpu_inplace_elemwise_optimizer
,
75
,
'fast_run'
,
'inplace'
,
'gpu_inplace'
)
'fast_run'
,
'inplace'
,
'gpu_inplace'
)
tensor
.
opt
.
register_specialize_device
(
tensor
.
opt
.
local_shape_to_shape_i
)
register_opt
()
(
tensor
.
opt
.
local_shape_to_shape_i
)
gpu_elemwise_alloc
=
gof
.
local_optimizer
([
GpuElemwise
])(
gpu_elemwise_alloc
=
gof
.
local_optimizer
([
GpuElemwise
])(
tensor
.
opt
.
local_elemwise_alloc_op
(
GpuElemwise
,
GpuAlloc
,
GpuDimShuffle
)
tensor
.
opt
.
local_elemwise_alloc_op
(
GpuElemwise
,
GpuAlloc
,
GpuDimShuffle
)
)
)
...
@@ -1847,8 +1847,8 @@ def local_gpualloc(node):
...
@@ -1847,8 +1847,8 @@ def local_gpualloc(node):
val
=
node
.
inputs
[
0
]
val
=
node
.
inputs
[
0
]
shp
=
node
.
inputs
[
1
:]
shp
=
node
.
inputs
[
1
:]
old_out
=
node
.
outputs
[
0
]
old_out
=
node
.
outputs
[
0
]
val2
=
tensor
.
shape_padleft
(
val
,
len
(
shp
)
-
val
.
ndim
)
new_out
=
host_from_gpu
(
gpu_alloc
(
val
,
*
shp
)
)
new_out
=
host_from_gpu
(
gpu_alloc
(
val2
,
*
shp
))
# Sigh. it's an annoying thing about theano
# Sigh. it's an annoying thing about theano
# that you can't add information to the graph.
# that you can't add information to the graph.
# If for some reason it has come to light that
# If for some reason it has come to light that
...
...
theano/sandbox/cuda/tests/test_opt.py
浏览文件 @
6c23f17d
...
@@ -10,6 +10,7 @@ import theano
...
@@ -10,6 +10,7 @@ import theano
from
theano.compile.pfunc
import
pfunc
from
theano.compile.pfunc
import
pfunc
from
theano
import
config
,
tensor
from
theano
import
config
,
tensor
import
theano.tensor.tests.test_nlinalg
import
theano.tensor.tests.test_nlinalg
import
theano.tensor.tests.test_opt
as
test_opt
from
theano.tests
import
unittest_tools
as
utt
from
theano.tests
import
unittest_tools
as
utt
...
@@ -87,16 +88,34 @@ def test_gpualloc():
...
@@ -87,16 +88,34 @@ def test_gpualloc():
assert
numpy
.
any
([
isinstance
(
x
.
op
,
cuda
.
GpuAlloc
)
for
x
in
l
])
assert
numpy
.
any
([
isinstance
(
x
.
op
,
cuda
.
GpuAlloc
)
for
x
in
l
])
class
Test_local_elemwise_alloc
(
unittest
.
TestCase
):
class
Test_local_elemwise_alloc
(
test_opt
.
Test_local_elemwise_alloc
):
dtype
=
config
.
floatX
dtype
=
'float32'
def
setUp
(
self
):
def
setUp
(
self
):
self
.
vec
=
tensor
.
vector
(
'vec'
,
dtype
=
theano
.
config
.
floatX
)
super
(
Test_local_elemwise_alloc
,
self
)
.
setUp
()
self
.
mat
=
tensor
.
matrix
(
'mat'
,
dtype
=
theano
.
config
.
floatX
)
self
.
fast_run_mode
=
mode_with_gpu
self
.
tens
=
tensor
.
tensor3
(
'tens'
,
dtype
=
theano
.
config
.
floatX
)
#self.vec = tensor.vector('vec', dtype=dtype)
self
.
alloc_wo_dep
=
basic_ops
.
gpu_alloc
(
self
.
vec
,
2
)
#self.mat = tensor.matrix('mat', dtype=dtype)
self
.
alloc_w_dep
=
basic_ops
.
gpu_alloc
(
self
.
vec
,
*
self
.
vec
.
shape
)
#self.tens = tensor.tensor3('tens', dtype=dtype)
#self.alloc_wo_dep = basic_ops.gpu_alloc(self.vec, 2, 2)
#self.alloc_w_dep = basic_ops.gpu_alloc(self.vec, *self.mat.shape)
self
.
alloc_wo_dep
=
basic_ops
.
gpu_alloc
(
self
.
vec
,
2
,
2
)
self
.
alloc_w_dep
=
basic_ops
.
gpu_alloc
(
self
.
vec
,
*
self
.
mat
.
shape
)
self
.
alloc_w_dep_tens
=
basic_ops
.
gpu_alloc
(
self
.
vec
,
self
.
tens
.
shape
[
0
],
self
.
tens
.
shape
[
1
]
)
self
.
tv_wo_dep
=
basic_ops
.
gpu_alloc
(
self
.
vec
,
5
,
5
)
self
.
tm_wo_dep
=
basic_ops
.
gpu_alloc
(
self
.
mat
,
5
,
5
,
5
)
self
.
s
=
tensor
.
iscalar
(
's'
)
self
.
tv_w_dep
=
basic_ops
.
gpu_alloc
(
self
.
vec
,
self
.
s
,
self
.
s
)
self
.
tm_w_dep
=
basic_ops
.
gpu_alloc
(
self
.
mat
,
5
,
5
,
5
)
self
.
row
=
tensor
.
row
(
dtype
=
self
.
dtype
)
self
.
o
=
basic_ops
.
gpu_alloc
(
self
.
row
,
5
,
5
)
def
_verify_alloc_count
(
self
,
f
,
count
):
def
_verify_alloc_count
(
self
,
f
,
count
):
assert
(
assert
(
...
@@ -112,150 +131,6 @@ class Test_local_elemwise_alloc(unittest.TestCase):
...
@@ -112,150 +131,6 @@ class Test_local_elemwise_alloc(unittest.TestCase):
if
elem
.
op
is
not
None
])
==
count
if
elem
.
op
is
not
None
])
==
count
)
)
def
test_remove_alloc_wo_dimshuffle
(
self
):
# No optimization on alloc
from
theano.printing
import
debugprint
as
dp
func
=
theano
.
function
(
[
self
.
vec
,
self
.
mat
],
self
.
alloc_wo_dep
+
self
.
mat
,
mode
=
'FAST_COMPILE'
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_assert_count
(
func
,
0
)
# Optimization on alloc with assert
func
=
theano
.
function
(
[
self
.
vec
,
self
.
mat
],
self
.
alloc_wo_dep
+
self
.
mat
,
mode
=
mode_with_gpu
)
self
.
_verify_alloc_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
1
)
# No optimization on alloc without assert
func
=
theano
.
function
(
[
self
.
vec
,
self
.
mat
],
self
.
alloc_w_dep
+
self
.
mat
,
mode
=
'FAST_COMPILE'
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_assert_count
(
func
,
0
)
# Optimization on alloc without assert
temp_val
=
theano
.
config
.
experimental
.
local_alloc_elemwise_assert
theano
.
config
.
experimental
.
local_alloc_elemwise_assert
=
False
func
=
theano
.
function
(
[
self
.
vec
,
self
.
mat
],
self
.
alloc_w_dep
+
self
.
mat
,
mode
=
mode_with_gpu
)
self
.
_verify_alloc_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
0
)
theano
.
config
.
experimental
.
local_alloc_elemwise_assert
=
temp_val
def
test_remove_alloc_w_dimshuffle
(
self
):
# No optimization on dimshuffle with assert
func
=
theano
.
function
(
[
self
.
vec
,
self
.
mat
],
self
.
alloc_wo_dep
.
dimshuffle
(
0
,
'x'
)
+
self
.
mat
,
mode
=
'FAST_COMPILE'
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_assert_count
(
func
,
0
)
# Optimization on dimshuffle with assert
func
=
theano
.
function
(
[
self
.
vec
,
self
.
mat
],
self
.
alloc_wo_dep
.
dimshuffle
(
0
,
'x'
)
+
self
.
mat
,
mode
=
mode_with_gpu
)
self
.
_verify_alloc_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
1
)
# No optimization on dimshuffle without assert
func
=
theano
.
function
(
[
self
.
vec
,
self
.
mat
],
self
.
alloc_w_dep
.
dimshuffle
(
0
,
'x'
)
+
self
.
mat
,
mode
=
'FAST_COMPILE'
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_assert_count
(
func
,
0
)
# Optimization on dimshuffle without assert
temp_val
=
theano
.
config
.
experimental
.
local_alloc_elemwise_assert
theano
.
config
.
experimental
.
local_alloc_elemwise_assert
=
False
func
=
theano
.
function
(
[
self
.
vec
,
self
.
mat
],
self
.
alloc_w_dep
+
self
.
mat
,
mode
=
mode_with_gpu
)
self
.
_verify_alloc_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
0
)
theano
.
config
.
experimental
.
local_alloc_elemwise_assert
=
temp_val
def
test_multi_input_single_alloc
(
self
):
# No optimization on dimshuffle with assert
tv
=
basic_ops
.
gpu_alloc
(
self
.
vec
,
5
)
tm
=
basic_ops
.
gpu_alloc
(
self
.
mat
,
5
,
5
)
func
=
theano
.
function
(
[
self
.
vec
,
self
.
mat
],
tv
+
tm
,
mode
=
'FAST_COMPILE'
)
self
.
_verify_alloc_count
(
func
,
2
)
self
.
_verify_assert_count
(
func
,
0
)
# Optimization on dimshuffle with assert
func
=
theano
.
function
(
[
self
.
vec
,
self
.
mat
],
tv
+
tm
,
mode
=
mode_with_gpu
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_assert_count
(
func
,
1
)
# No optimization on dimshuffle without assert
s
=
tensor
.
iscalar
(
's'
)
#tv = tensor.alloc(self.vec, s, s)
#tm = tensor.alloc(self.mat, 5, 5, 5)
tv
=
basic_ops
.
gpu_alloc
(
self
.
vec
,
s
)
tm
=
basic_ops
.
gpu_alloc
(
self
.
mat
,
5
,
5
)
func
=
theano
.
function
(
[
self
.
vec
,
self
.
mat
,
s
],
tv
+
tm
,
mode
=
'FAST_COMPILE'
)
self
.
_verify_alloc_count
(
func
,
2
)
self
.
_verify_assert_count
(
func
,
0
)
# Optimization on dimshuffle without assert
temp_val
=
theano
.
config
.
experimental
.
local_alloc_elemwise_assert
theano
.
config
.
experimental
.
local_alloc_elemwise_assert
=
False
func
=
theano
.
function
(
[
self
.
vec
,
self
.
mat
,
s
],
tv
+
tm
,
mode
=
mode_with_gpu
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_assert_count
(
func
,
0
)
theano
.
config
.
experimental
.
local_alloc_elemwise_assert
=
temp_val
def
test_error
(
self
):
t3fft
=
theano
.
tensor
.
tensor
(
dtype
=
self
.
dtype
,
broadcastable
=
(
False
,
False
,
True
))
row
=
theano
.
tensor
.
row
(
dtype
=
self
.
dtype
)
o
=
basic_ops
.
gpu_alloc
(
row
,
5
,
5
)
.
dimshuffle
(
0
,
1
,
'x'
)
+
t3fft
func
=
theano
.
function
(
[
t3fft
,
row
],
o
,
mode
=
mode_with_gpu
)
self
.
_verify_alloc_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
1
)
d
=
numpy
.
random
.
rand
(
5
,
5
,
1
)
.
astype
(
self
.
dtype
)
r
=
numpy
.
random
.
rand
(
1
,
5
)
.
astype
(
self
.
dtype
)
func
(
d
,
r
)
def
test_alloc_memset_0
():
def
test_alloc_memset_0
():
i
=
tensor
.
iscalar
()
i
=
tensor
.
iscalar
()
...
...
theano/tensor/tests/test_opt.py
浏览文件 @
6c23f17d
...
@@ -2767,12 +2767,27 @@ class Test_local_elemwise_alloc(unittest.TestCase):
...
@@ -2767,12 +2767,27 @@ class Test_local_elemwise_alloc(unittest.TestCase):
dtype
=
config
.
floatX
dtype
=
config
.
floatX
def
setUp
(
self
):
def
setUp
(
self
):
self
.
vec
=
T
.
vector
(
'vec'
,
dtype
=
theano
.
config
.
floatX
)
self
.
fast_compile_mode
=
'FAST_COMPILE'
self
.
mat
=
T
.
matrix
(
'mat'
,
dtype
=
theano
.
config
.
floatX
)
self
.
fast_run_mode
=
'FAST_RUN'
self
.
tens
=
T
.
tensor3
(
'tens'
,
dtype
=
theano
.
config
.
floatX
)
self
.
vec
=
T
.
vector
(
'vec'
,
dtype
=
self
.
dtype
)
self
.
mat
=
T
.
matrix
(
'mat'
,
dtype
=
self
.
dtype
)
self
.
tens
=
T
.
tensor3
(
'tens'
,
dtype
=
self
.
dtype
)
self
.
alloc_wo_dep
=
T
.
alloc
(
self
.
vec
,
2
,
2
)
self
.
alloc_wo_dep
=
T
.
alloc
(
self
.
vec
,
2
,
2
)
self
.
alloc_w_dep
=
T
.
alloc
(
self
.
vec
,
*
self
.
mat
.
shape
)
self
.
alloc_w_dep
=
T
.
alloc
(
self
.
vec
,
*
self
.
mat
.
shape
)
self
.
alloc_w_dep_tens
=
T
.
alloc
(
self
.
vec
,
self
.
tens
.
shape
[
0
],
self
.
tens
.
shape
[
1
]
)
self
.
tv_wo_dep
=
T
.
alloc
(
self
.
vec
,
5
,
5
)
self
.
tm_wo_dep
=
T
.
alloc
(
self
.
mat
,
5
,
5
,
5
)
self
.
s
=
T
.
iscalar
(
's'
)
self
.
tv_w_dep
=
T
.
alloc
(
self
.
vec
,
self
.
s
,
self
.
s
)
self
.
tm_w_dep
=
T
.
alloc
(
self
.
mat
,
5
,
5
,
5
)
self
.
row
=
theano
.
tensor
.
row
(
dtype
=
self
.
dtype
)
self
.
o
=
T
.
alloc
(
self
.
row
,
5
,
5
)
def
_verify_alloc_count
(
self
,
f
,
count
):
def
_verify_alloc_count
(
self
,
f
,
count
):
assert
(
assert
(
...
@@ -2793,7 +2808,7 @@ class Test_local_elemwise_alloc(unittest.TestCase):
...
@@ -2793,7 +2808,7 @@ class Test_local_elemwise_alloc(unittest.TestCase):
func
=
function
(
func
=
function
(
[
self
.
vec
,
self
.
mat
],
[
self
.
vec
,
self
.
mat
],
self
.
alloc_wo_dep
+
self
.
mat
,
self
.
alloc_wo_dep
+
self
.
mat
,
mode
=
'FAST_COMPILE'
mode
=
self
.
fast_compile_mode
)
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_assert_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
0
)
...
@@ -2802,8 +2817,9 @@ class Test_local_elemwise_alloc(unittest.TestCase):
...
@@ -2802,8 +2817,9 @@ class Test_local_elemwise_alloc(unittest.TestCase):
func
=
function
(
func
=
function
(
[
self
.
vec
,
self
.
mat
],
[
self
.
vec
,
self
.
mat
],
self
.
alloc_wo_dep
+
self
.
mat
,
self
.
alloc_wo_dep
+
self
.
mat
,
mode
=
'FAST_RUN'
mode
=
self
.
fast_run_mode
)
)
from
theano.printing
import
debugprint
as
dp
self
.
_verify_alloc_count
(
func
,
0
)
self
.
_verify_alloc_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
1
)
self
.
_verify_assert_count
(
func
,
1
)
...
@@ -2811,7 +2827,7 @@ class Test_local_elemwise_alloc(unittest.TestCase):
...
@@ -2811,7 +2827,7 @@ class Test_local_elemwise_alloc(unittest.TestCase):
func
=
function
(
func
=
function
(
[
self
.
vec
,
self
.
mat
],
[
self
.
vec
,
self
.
mat
],
self
.
alloc_w_dep
+
self
.
mat
,
self
.
alloc_w_dep
+
self
.
mat
,
mode
=
'FAST_COMPILE'
mode
=
self
.
fast_compile_mode
)
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_assert_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
0
)
...
@@ -2820,7 +2836,7 @@ class Test_local_elemwise_alloc(unittest.TestCase):
...
@@ -2820,7 +2836,7 @@ class Test_local_elemwise_alloc(unittest.TestCase):
func
=
function
(
func
=
function
(
[
self
.
vec
,
self
.
mat
],
[
self
.
vec
,
self
.
mat
],
self
.
alloc_w_dep
+
self
.
mat
,
self
.
alloc_w_dep
+
self
.
mat
,
mode
=
'FAST_RUN'
mode
=
self
.
fast_run_mode
)
)
self
.
_verify_alloc_count
(
func
,
0
)
self
.
_verify_alloc_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
0
)
...
@@ -2829,8 +2845,9 @@ class Test_local_elemwise_alloc(unittest.TestCase):
...
@@ -2829,8 +2845,9 @@ class Test_local_elemwise_alloc(unittest.TestCase):
# No optimization on dimshuffle with assert
# No optimization on dimshuffle with assert
func
=
function
(
func
=
function
(
[
self
.
vec
,
self
.
tens
],
[
self
.
vec
,
self
.
tens
],
T
.
alloc
(
self
.
vec
,
2
,
2
)
.
dimshuffle
(
0
,
1
,
'x'
)
+
self
.
tens
,
self
.
alloc_wo_dep
.
dimshuffle
(
0
,
1
,
'x'
)
+
self
.
tens
,
mode
=
'FAST_COMPILE'
#T.alloc(self.vec, 2, 2).dimshuffle(0, 1, 'x') + self.tens,
mode
=
self
.
fast_compile_mode
)
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_assert_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
0
)
...
@@ -2838,8 +2855,9 @@ class Test_local_elemwise_alloc(unittest.TestCase):
...
@@ -2838,8 +2855,9 @@ class Test_local_elemwise_alloc(unittest.TestCase):
# Optimization on dimshuffle with assert
# Optimization on dimshuffle with assert
func
=
function
(
func
=
function
(
[
self
.
vec
,
self
.
tens
],
[
self
.
vec
,
self
.
tens
],
T
.
alloc
(
self
.
vec
,
2
,
2
)
.
dimshuffle
(
0
,
1
,
'x'
)
+
self
.
tens
,
#T.alloc(self.vec, 2, 2).dimshuffle(0, 1, 'x') + self.tens,
mode
=
'FAST_RUN'
self
.
alloc_wo_dep
.
dimshuffle
(
0
,
1
,
'x'
)
+
self
.
tens
,
mode
=
self
.
fast_run_mode
)
)
self
.
_verify_alloc_count
(
func
,
0
)
self
.
_verify_alloc_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
1
)
self
.
_verify_assert_count
(
func
,
1
)
...
@@ -2847,12 +2865,8 @@ class Test_local_elemwise_alloc(unittest.TestCase):
...
@@ -2847,12 +2865,8 @@ class Test_local_elemwise_alloc(unittest.TestCase):
# No optimization on dimshuffle without assert
# No optimization on dimshuffle without assert
func
=
function
(
func
=
function
(
[
self
.
vec
,
self
.
tens
],
[
self
.
vec
,
self
.
tens
],
T
.
alloc
(
self
.
alloc_w_dep_tens
.
dimshuffle
(
0
,
1
,
'x'
)
+
self
.
tens
,
self
.
vec
,
mode
=
self
.
fast_compile_mode
self
.
tens
.
shape
[
0
],
self
.
tens
.
shape
[
1
]
)
.
dimshuffle
(
0
,
1
,
'x'
)
+
self
.
tens
,
mode
=
'FAST_COMPILE'
)
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_assert_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
0
)
...
@@ -2860,52 +2874,51 @@ class Test_local_elemwise_alloc(unittest.TestCase):
...
@@ -2860,52 +2874,51 @@ class Test_local_elemwise_alloc(unittest.TestCase):
# Optimization on dimshuffle without assert
# Optimization on dimshuffle without assert
func
=
function
(
func
=
function
(
[
self
.
vec
,
self
.
tens
],
[
self
.
vec
,
self
.
tens
],
T
.
alloc
(
self
.
alloc_w_dep_tens
.
dimshuffle
(
0
,
1
,
'x'
)
+
self
.
tens
,
self
.
vec
,
mode
=
self
.
fast_run_mode
self
.
tens
.
shape
[
0
],
self
.
tens
.
shape
[
1
]
)
.
dimshuffle
(
0
,
1
,
'x'
)
+
self
.
tens
,
mode
=
'FAST_RUN'
)
)
self
.
_verify_alloc_count
(
func
,
0
)
self
.
_verify_alloc_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
0
)
def
test_multi_input_single_alloc
(
self
):
def
test_multi_input_single_alloc
(
self
):
tv
=
T
.
alloc
(
self
.
vec
,
5
,
5
)
# No optimization on dimshuffle with assert
tm
=
T
.
alloc
(
self
.
mat
,
5
,
5
,
5
)
func
=
function
(
func
=
function
(
[
self
.
vec
,
self
.
mat
],
[
self
.
vec
,
self
.
mat
],
tv
+
tm
,
self
.
tv_wo_dep
+
self
.
tm_wo_dep
,
mode
=
'FAST_COMPILE'
mode
=
self
.
fast_compile_mode
)
)
self
.
_verify_alloc_count
(
func
,
2
)
self
.
_verify_alloc_count
(
func
,
2
)
self
.
_verify_assert_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
0
)
# Optimization on dimshuffle with assert
temp
=
self
.
tv_wo_dep
+
self
.
tm_wo_dep
,
from
theano.printing
import
debugprint
as
dp
import
ipdb
;
ipdb
.
set_trace
()
func
=
function
(
func
=
function
(
[
self
.
vec
,
self
.
mat
],
[
self
.
vec
,
self
.
mat
],
t
v
+
tm
,
t
emp
,
mode
=
'FAST_RUN'
mode
=
self
.
fast_run_mode
)
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_assert_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
0
)
s
=
T
.
iscalar
(
's'
)
# No optimization on dimshuffle without assert
tv
=
T
.
alloc
(
self
.
vec
,
s
,
s
)
#s = T.iscalar('s')
tm
=
T
.
alloc
(
self
.
mat
,
5
,
5
,
5
)
#tv = T.alloc(self.vec, s, s)
#tm = T.alloc(self.mat, 5, 5, 5)
func
=
function
(
func
=
function
(
[
self
.
vec
,
self
.
mat
,
s
],
[
self
.
vec
,
self
.
mat
,
s
elf
.
s
],
tv
+
tm
,
self
.
tv_w_dep
+
self
.
tm_w_dep
,
mode
=
'FAST_COMPILE'
mode
=
self
.
fast_compile_mode
)
)
self
.
_verify_alloc_count
(
func
,
2
)
self
.
_verify_alloc_count
(
func
,
2
)
self
.
_verify_assert_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
0
)
# Optimization on dimshuffle without assert
func
=
function
(
func
=
function
(
[
self
.
vec
,
self
.
mat
,
s
],
[
self
.
vec
,
self
.
mat
,
s
elf
.
s
],
tv
+
tm
,
self
.
tv_w_dep
+
self
.
tm_w_dep
,
mode
=
'FAST_RUN'
mode
=
self
.
fast_run_mode
)
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_alloc_count
(
func
,
1
)
self
.
_verify_assert_count
(
func
,
1
)
self
.
_verify_assert_count
(
func
,
1
)
...
@@ -2913,12 +2926,13 @@ class Test_local_elemwise_alloc(unittest.TestCase):
...
@@ -2913,12 +2926,13 @@ class Test_local_elemwise_alloc(unittest.TestCase):
def
test_error
(
self
):
def
test_error
(
self
):
t3fft
=
theano
.
tensor
.
tensor
(
dtype
=
self
.
dtype
,
t3fft
=
theano
.
tensor
.
tensor
(
dtype
=
self
.
dtype
,
broadcastable
=
(
False
,
False
,
True
))
broadcastable
=
(
False
,
False
,
True
))
row
=
theano
.
tensor
.
row
(
dtype
=
self
.
dtype
)
#row = theano.tensor.row(dtype=self.dtype)
o
=
T
.
alloc
(
row
,
5
,
5
)
.
dimshuffle
(
0
,
1
,
'x'
)
+
t3fft
#o = T.alloc(row, 5, 5).dimshuffle(0, 1, 'x') + t3fft
o
=
self
.
o
.
dimshuffle
(
0
,
1
,
'x'
)
+
t3fft
func
=
function
(
func
=
function
(
[
t3fft
,
row
],
[
t3fft
,
self
.
row
],
o
,
o
,
mode
=
'FAST_RUN'
mode
=
self
.
fast_run_mode
)
)
self
.
_verify_alloc_count
(
func
,
0
)
self
.
_verify_alloc_count
(
func
,
0
)
self
.
_verify_assert_count
(
func
,
1
)
self
.
_verify_assert_count
(
func
,
1
)
...
...
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