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pytensor
Commits
7748ec15
提交
7748ec15
authored
7月 03, 2015
作者:
Alexandre de Brebisson
提交者:
Xavier Bouthillier
8月 21, 2015
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
Add tests for BlockSparse gemv and outer
上级
658bf2ef
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
372 行增加
和
183 行删除
+372
-183
test_blocksparse.py
theano/sandbox/cuda/tests/test_blocksparse.py
+44
-183
__init__.py
theano/sandbox/tests/__init__.py
+0
-0
test_blocksparse.py
theano/sandbox/tests/test_blocksparse.py
+328
-0
没有找到文件。
theano/sandbox/cuda/tests/test_blocksparse.py
浏览文件 @
7748ec15
import
numpy
import
numpy
from
numpy.random
import
randn
from
unittest
import
TestCase
from
nose.plugins.skip
import
SkipTest
from
nose.plugins.skip
import
SkipTest
import
theano
import
theano
from
theano
import
tensor
from
theano
import
tensor
import
theano.tests.unittest_tools
as
utt
import
theano.tests.unittest_tools
as
utt
import
theano.sandbox.tests.test_blocksparse
import
theano.sandbox.cuda
as
cuda_ndarray
import
theano.sandbox.cuda
as
cuda_ndarray
if
not
cuda_ndarray
.
cuda_available
:
if
not
cuda_ndarray
.
cuda_available
:
raise
SkipTest
(
'Optional package cuda disabled'
)
raise
SkipTest
(
'Optional package cuda disabled'
)
from
theano.sandbox.cuda.blocksparse
import
(
GpuSparseBlockOuter
,
from
theano.sandbox.cuda.basic_ops
import
(
GpuDimShuffle
,
gpu_sparse_block_gemv
,
as_cuda_ndarray_variable
)
gpu_sparse_block_outer
)
from
theano.sandbox.cuda.blocksparse
import
(
sparse_block_dot_SS
,
sparse_block_gemv_ss
,
sparse_block_outer_ss
,
sparse_block_outer_ss_inplace
,
SparseBlockOuterSS
)
from
theano.sandbox.cuda.var
import
float32_shared_constructor
from
theano.sandbox.cuda.var
import
float32_shared_constructor
...
@@ -29,187 +21,56 @@ else:
...
@@ -29,187 +21,56 @@ else:
mode_with_gpu
=
theano
.
compile
.
mode
.
get_default_mode
()
.
including
(
'gpu'
)
mode_with_gpu
=
theano
.
compile
.
mode
.
get_default_mode
()
.
including
(
'gpu'
)
def
setup
():
class
BlockSparse_Gemv_and_Outer
(
utt
.
seed_rng
()
theano
.
sandbox
.
tests
.
test_blocksparse
.
BlockSparse_Gemv_and_Outer
):
def
setUp
(
self
):
utt
.
seed_rng
()
def
blocksparse_data
():
self
.
mode
=
mode_with_gpu
.
excluding
(
'constant_folding'
)
nInputBlock
=
128
self
.
gemv_op
=
gpu_sparse_block_gemv
nOutputBlock
=
64
self
.
outer_op
=
gpu_sparse_block_outer
inputSize
=
40
outputSize
=
30
inputWindowSize
=
7
outputWindowSize
=
9
batchSize
=
2
input
=
randn
(
batchSize
,
inputWindowSize
,
inputSize
)
.
astype
(
'float32'
)
permutation
=
numpy
.
random
.
permutation
inputIndice
=
numpy
.
vstack
(
permutation
(
nInputBlock
)[:
inputWindowSize
]
for
_
in
range
(
batchSize
))
outputIndice
=
numpy
.
vstack
(
permutation
(
nOutputBlock
)[:
outputWindowSize
]
for
_
in
range
(
batchSize
))
weight
=
randn
(
nInputBlock
,
nOutputBlock
,
inputSize
,
outputSize
)
.
astype
(
'float32'
)
bias
=
randn
(
nOutputBlock
,
outputSize
)
.
astype
(
'float32'
)
return
weight
,
input
,
inputIndice
,
bias
,
outputIndice
def
blocksparse
(
W
,
h
,
iIdx
,
b
,
oIdx
):
o
=
b
.
take
(
oIdx
,
axis
=
0
)
for
b
in
range
(
o
.
shape
[
0
]):
for
j
in
range
(
o
.
shape
[
1
]):
outputIdx
=
oIdx
[
b
,
j
]
for
i
in
range
(
h
.
shape
[
1
]):
inputIdx
=
iIdx
[
b
,
i
]
w
=
W
[
inputIdx
,
outputIdx
]
# this below is a gemv I think
o
[
b
,
j
,
:]
+=
numpy
.
dot
(
h
[
b
,
i
],
w
)
return
o
def
test_blocksparse
():
b
=
tensor
.
fmatrix
()
W
=
tensor
.
ftensor4
()
h
=
tensor
.
ftensor3
()
iIdx
=
tensor
.
lmatrix
()
oIdx
=
tensor
.
lmatrix
()
o
=
sparse_block_dot_SS
(
W
,
h
,
iIdx
,
b
,
oIdx
)
f
=
theano
.
function
([
W
,
h
,
iIdx
,
b
,
oIdx
],
o
,
mode
=
mode_with_gpu
)
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
=
blocksparse_data
()
th_out
=
f
(
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
)
ref_out
=
blocksparse
(
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
)
utt
.
assert_allclose
(
ref_out
,
th_out
)
test_blocksparse
.
setup
=
setup
# test the fortan order for W (which can happen in the grad for some graphs).
def
test_blocksparseF
():
b
=
tensor
.
fmatrix
()
W
=
tensor
.
ftensor4
()
h
=
tensor
.
ftensor3
()
iIdx
=
tensor
.
lmatrix
()
oIdx
=
tensor
.
lmatrix
()
o
=
sparse_block_dot_SS
(
GpuDimShuffle
((
False
,
False
,
False
,
False
),
(
0
,
1
,
3
,
2
))(
as_cuda_ndarray_variable
(
W
)),
h
,
iIdx
,
b
,
oIdx
)
f
=
theano
.
function
([
W
,
h
,
iIdx
,
b
,
oIdx
],
o
,
mode
=
mode_with_gpu
)
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
=
blocksparse_data
()
th_out
=
f
(
numpy
.
swapaxes
(
W_val
,
2
,
3
),
h_val
,
iIdx_val
,
b_val
,
oIdx_val
)
ref_out
=
blocksparse
(
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
)
utt
.
assert_allclose
(
ref_out
,
th_out
)
def
test_blocksparse_grad
():
h_val
=
randn
(
1
,
2
,
3
)
.
astype
(
'float32'
)
iIdx_val
=
numpy
.
random
.
permutation
(
3
)[:
2
][
None
,
:]
oIdx_val
=
numpy
.
random
.
permutation
(
3
)[:
2
][
None
,
:]
W_val
=
randn
(
3
,
3
,
3
,
4
)
.
astype
(
'float32'
)
b_val
=
randn
(
3
,
4
)
.
astype
(
'float32'
)
iIdx
=
theano
.
tensor
.
constant
(
iIdx_val
)
oIdx
=
theano
.
tensor
.
constant
(
oIdx_val
)
def
f
(
b
,
h
,
W
):
return
sparse_block_gemv_ss
(
b
.
take
(
oIdx
,
axis
=
0
),
W
,
h
,
iIdx
,
oIdx
)
utt
.
verify_grad
(
f
,
[
b_val
,
h_val
,
W_val
],
mode
=
mode_with_gpu
)
def
test_blocksparse_grad_1
():
# This tests that we correctly handle cases where dimensions are 1.
h_val
=
randn
(
1
,
1
,
1
)
.
astype
(
'float32'
)
iIdx_val
=
numpy
.
random
.
permutation
(
1
)[:
1
][
None
,
:]
oIdx_val
=
numpy
.
random
.
permutation
(
1
)[:
1
][
None
,
:]
W_val
=
randn
(
1
,
1
,
1
,
1
)
.
astype
(
'float32'
)
b_val
=
randn
(
1
,
1
)
.
astype
(
'float32'
)
iIdx
=
theano
.
tensor
.
constant
(
iIdx_val
)
oIdx
=
theano
.
tensor
.
constant
(
oIdx_val
)
def
f
(
b
,
h
,
W
):
return
sparse_block_gemv_ss
(
b
.
take
(
oIdx
,
axis
=
0
),
W
,
h
,
iIdx
,
oIdx
)
utt
.
verify_grad
(
f
,
[
b_val
,
h_val
,
W_val
],
mode
=
mode_with_gpu
)
def
test_blocksparse_grad_shape
():
b
=
tensor
.
fmatrix
()
W
=
tensor
.
ftensor4
()
h
=
tensor
.
ftensor3
()
iIdx
=
tensor
.
lmatrix
()
oIdx
=
tensor
.
lmatrix
()
o
=
sparse_block_gemv_ss
(
b
.
take
(
oIdx
,
axis
=
0
),
W
,
h
,
iIdx
,
oIdx
)
go
=
theano
.
grad
(
o
.
sum
(),
[
b
,
W
,
h
])
f
=
theano
.
function
([
W
,
h
,
iIdx
,
b
,
oIdx
],
go
,
mode
=
mode_with_gpu
)
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
=
blocksparse_data
()
# just make sure that it runs correcly and all the shapes are ok.
b_g
,
W_g
,
h_g
=
f
(
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
)
assert
b_g
.
shape
==
b_val
.
shape
assert
h_g
.
shape
==
h_val
.
shape
assert
W_g
.
shape
==
W_val
.
shape
# This test is temporarily disabled since we disabled the output_merge
# This test is temporarily disabled since we disabled the output_merge
# and alpha_merge optimizations for blocksparse due to brokeness.
# and alpha_merge optimizations for blocksparse due to brokeness.
# Re-enable when those are re-added.
# Re-enable when those are re-added.
def
Xtest_blocksparse_grad_merge
(
):
def
Xtest_blocksparse_grad_merge
(
self
):
b
=
tensor
.
fmatrix
()
b
=
tensor
.
fmatrix
()
h
=
tensor
.
ftensor3
()
h
=
tensor
.
ftensor3
()
iIdx
=
tensor
.
lmatrix
()
iIdx
=
tensor
.
lmatrix
()
oIdx
=
tensor
.
lmatrix
()
oIdx
=
tensor
.
lmatrix
()
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
=
blocksparse
_data
()
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
=
self
.
gemv
_data
()
W
=
float32_shared_constructor
(
W_val
)
W
=
float32_shared_constructor
(
W_val
)
o
=
sparse_block_gemv_ss
(
b
.
take
(
oIdx
,
axis
=
0
),
W
,
h
,
iIdx
,
oIdx
)
o
=
gpu_sparse_block_gemv
(
b
.
take
(
oIdx
,
axis
=
0
),
W
,
h
,
iIdx
,
oIdx
)
gW
=
theano
.
grad
(
o
.
sum
(),
W
)
gW
=
theano
.
grad
(
o
.
sum
(),
W
)
lr
=
numpy
.
asarray
(
0.05
,
dtype
=
'float32'
)
lr
=
numpy
.
asarray
(
0.05
,
dtype
=
'float32'
)
upd
=
W
-
lr
*
gW
upd
=
W
-
lr
*
gW
f1
=
theano
.
function
([
h
,
iIdx
,
b
,
oIdx
],
updates
=
[(
W
,
upd
)],
f1
=
theano
.
function
([
h
,
iIdx
,
b
,
oIdx
],
updates
=
[(
W
,
upd
)],
mode
=
mode_with_gpu
)
mode
=
mode_with_gpu
)
# Make sure the lr update was merged.
# Make sure the lr update was merged.
assert
isinstance
(
f1
.
maker
.
fgraph
.
outputs
[
0
]
.
owner
.
op
,
SparseBlockOuterSS
)
assert
isinstance
(
f1
.
maker
.
fgraph
.
outputs
[
0
]
.
owner
.
op
,
GpuSparseBlockOuter
)
# Exclude the merge optimizations.
# Exclude the merge optimizations.
mode
=
mode_with_gpu
.
excluding
(
'local_merge_blocksparse_alpha'
)
mode
=
mode_with_gpu
.
excluding
(
'local_merge_blocksparse_alpha'
)
mode
=
mode
.
excluding
(
'local_merge_blocksparse_output'
)
mode
=
mode
.
excluding
(
'local_merge_blocksparse_output'
)
f2
=
theano
.
function
([
h
,
iIdx
,
b
,
oIdx
],
updates
=
[(
W
,
upd
)],
mode
=
mode
)
f2
=
theano
.
function
([
h
,
iIdx
,
b
,
oIdx
],
updates
=
[(
W
,
upd
)],
mode
=
mode
)
# Make sure the lr update is not merged.
# Make sure the lr update is not merged.
assert
not
isinstance
(
f2
.
maker
.
fgraph
.
outputs
[
0
]
.
owner
.
op
,
assert
not
isinstance
(
f2
.
maker
.
fgraph
.
outputs
[
0
]
.
owner
.
op
,
SparseBlockOuterSS
)
GpuSparseBlockOuter
)
f2
(
h_val
,
iIdx_val
,
b_val
,
oIdx_val
)
f2
(
h_val
,
iIdx_val
,
b_val
,
oIdx_val
)
W_ref
=
W
.
get_value
()
W_ref
=
W
.
get_value
()
# reset the var
# reset the var
W
.
set_value
(
W_val
)
W
.
set_value
(
W_val
)
f1
(
h_val
,
iIdx_val
,
b_val
,
oIdx_val
)
f1
(
h_val
,
iIdx_val
,
b_val
,
oIdx_val
)
W_opt
=
W
.
get_value
()
W_opt
=
W
.
get_value
()
utt
.
assert_allclose
(
W_ref
,
W_opt
)
utt
.
assert_allclose
(
W_ref
,
W_opt
)
theano/sandbox/tests/__init__.py
0 → 100644
浏览文件 @
7748ec15
theano/sandbox/tests/test_blocksparse.py
0 → 100644
浏览文件 @
7748ec15
"""
Tests for block sparse dot
"""
import
unittest
import
time
import
numpy
from
numpy.random
import
randn
import
theano
from
theano
import
tensor
import
theano.tests.unittest_tools
as
utt
from
theano.sandbox.blocksparse
import
sparse_block_dot
,
cpu_sparse_block_gemv
,
\
cpu_sparse_block_outer
class
BlockSparse_Gemv_and_Outer
(
unittest
.
TestCase
):
def
runTest
(
self
):
pass
def
setUp
(
self
):
utt
.
seed_rng
()
self
.
mode
=
theano
.
compile
.
get_default_mode
()
.
excluding
(
'constant_folding'
)
self
.
gemv_op
=
cpu_sparse_block_gemv
self
.
outer_op
=
cpu_sparse_block_outer
@staticmethod
def
gemv_data
():
nInputBlock
=
8
nOutputBlock
=
7
inputSize
=
6
outputSize
=
5
inputWindowSize
=
4
outputWindowSize
=
3
batchSize
=
2
# nInputBlock = 2
# nOutputBlock = 2
# inputSize = 2
# outputSize = 2
# inputWindowSize = 1
# outputWindowSize = 1
# batchSize = 1
input
=
randn
(
batchSize
,
inputWindowSize
,
inputSize
)
.
astype
(
'float32'
)
permutation
=
numpy
.
random
.
permutation
inputIndice
=
numpy
.
vstack
(
permutation
(
nInputBlock
)[:
inputWindowSize
]
for
_
in
range
(
batchSize
))
.
astype
(
'int32'
)
outputIndice
=
numpy
.
vstack
(
permutation
(
nOutputBlock
)[:
outputWindowSize
]
for
_
in
range
(
batchSize
))
.
astype
(
'int32'
)
weight
=
randn
(
nInputBlock
,
nOutputBlock
,
inputSize
,
outputSize
)
.
astype
(
'float32'
)
bias
=
randn
(
nOutputBlock
,
outputSize
)
.
astype
(
'float32'
)
return
weight
,
input
,
inputIndice
,
bias
,
outputIndice
@staticmethod
def
outer_data
():
nInputBlock
=
8
nOutputBlock
=
7
xSize
=
6
ySize
=
5
xWindowSize
=
4
yWindowSize
=
3
batchSize
=
2
o
=
randn
(
nInputBlock
,
nOutputBlock
,
xSize
,
ySize
)
.
astype
(
'float32'
)
x
=
randn
(
batchSize
,
xWindowSize
,
xSize
)
.
astype
(
'float32'
)
y
=
randn
(
batchSize
,
yWindowSize
,
ySize
)
.
astype
(
'float32'
)
randint
=
numpy
.
random
.
randint
xIdx
=
numpy
.
vstack
(
randint
(
0
,
nInputBlock
,
size
=
xWindowSize
)
for
_
in
range
(
batchSize
))
.
astype
(
'int32'
)
yIdx
=
numpy
.
vstack
(
randint
(
0
,
nOutputBlock
,
size
=
yWindowSize
)
for
_
in
range
(
batchSize
))
.
astype
(
'int32'
)
return
o
,
x
,
y
,
xIdx
,
yIdx
@staticmethod
def
gemv_numpy
(
o
,
W
,
h
,
iIdx
,
oIdx
):
for
b
in
range
(
o
.
shape
[
0
]):
for
j
in
range
(
o
.
shape
[
1
]):
outputIdx
=
oIdx
[
b
,
j
]
for
i
in
range
(
h
.
shape
[
1
]):
inputIdx
=
iIdx
[
b
,
i
]
w
=
W
[
inputIdx
,
outputIdx
]
o
[
b
,
j
,
:]
+=
numpy
.
dot
(
h
[
b
,
i
],
w
)
return
o
@staticmethod
def
gemv_numpy2
(
o
,
W
,
h
,
iIdx
,
oIdx
):
from
numpy
import
ix_
for
b
in
range
(
o
.
shape
[
0
]):
w
=
W
[
ix_
(
iIdx
[
b
],
oIdx
[
b
])]
.
swapaxes
(
1
,
2
)
w
=
w
.
reshape
((
w
.
shape
[
0
]
*
w
.
shape
[
1
],
w
.
shape
[
2
]
*
w
.
shape
[
3
]))
o
[
b
]
+=
numpy
.
dot
(
h
[
b
]
.
ravel
(),
w
)
.
reshape
(
o
.
shape
[
1
:])
return
o
@staticmethod
def
gemv_numpy3
(
o
,
W
,
h
,
iIdx
,
oIdx
):
from
numpy
import
ix_
for
b
in
range
(
o
.
shape
[
0
]):
w
=
W
[
ix_
(
iIdx
[
b
],
oIdx
[
b
])]
# o[b] += (h[b][:, None, :, None] * w).sum(axis=(0, 2))
# o[b] += numpy.tensordot(h[b], w, [(0,1),(0,2)])
o
[
b
]
+=
numpy
.
einsum
(
'ik,ijkl'
,
h
[
b
],
w
)
return
o
@staticmethod
def
gemv_data2
():
nInputBlock
=
100
nOutputBlock
=
100
inputSize
=
50
outputSize
=
50
inputWindowSize
=
30
outputWindowSize
=
30
batchSize
=
1
input
=
randn
(
batchSize
,
inputWindowSize
,
inputSize
)
.
astype
(
'float32'
)
permutation
=
numpy
.
random
.
permutation
inputIndice
=
numpy
.
vstack
(
permutation
(
nInputBlock
)[:
inputWindowSize
]
for
_
in
range
(
batchSize
))
.
astype
(
'int32'
)
outputIndice
=
numpy
.
vstack
(
permutation
(
nOutputBlock
)[:
outputWindowSize
]
for
_
in
range
(
batchSize
))
.
astype
(
'int32'
)
weight
=
randn
(
nInputBlock
,
nOutputBlock
,
inputSize
,
outputSize
)
.
astype
(
'float32'
)
bias
=
randn
(
nOutputBlock
,
outputSize
)
.
astype
(
'float32'
)
return
weight
,
input
,
inputIndice
,
bias
,
outputIndice
@staticmethod
def
compare
():
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
=
\
BlockSparse_Gemv_and_Outer
.
gemv_data2
()
start
=
time
.
clock
()
ref_out
=
BlockSparse_Gemv_and_Outer
.
gemv_numpy
(
b_val
.
take
(
oIdx_val
,
axis
=
0
),
W_val
,
h_val
,
iIdx_val
,
oIdx_val
)
v1
=
time
.
clock
()
ref_out_2
=
BlockSparse_Gemv_and_Outer
.
gemv_numpy2
(
b_val
.
take
(
oIdx_val
,
axis
=
0
),
W_val
,
h_val
,
iIdx_val
,
oIdx_val
)
v2
=
time
.
clock
()
ref_out_3
=
BlockSparse_Gemv_and_Outer
.
gemv_numpy3
(
b_val
.
take
(
oIdx_val
,
axis
=
0
),
W_val
,
h_val
,
iIdx_val
,
oIdx_val
)
v3
=
time
.
clock
()
print
v1
-
start
print
v2
-
v1
print
v3
-
v2
# utt.assert_allclose(ref_out, ref_out_2)
@staticmethod
def
outer_numpy
(
o
,
x
,
y
,
xIdx
,
yIdx
):
for
b
in
range
(
x
.
shape
[
0
]):
for
i
in
range
(
xIdx
.
shape
[
1
]):
for
j
in
range
(
yIdx
.
shape
[
1
]):
o
[
xIdx
[
b
,
i
],
yIdx
[
b
,
j
]]
+=
numpy
.
outer
(
x
[
b
,
i
,
:],
y
[
b
,
j
,
:])
return
o
def
test_sparseblockdot
(
self
):
"""
Compares the numpy version of sparseblockgemv to sparse_block_dot.
"""
b
=
tensor
.
fmatrix
()
W
=
tensor
.
ftensor4
()
h
=
tensor
.
ftensor3
()
iIdx
=
tensor
.
imatrix
()
oIdx
=
tensor
.
imatrix
()
o
=
sparse_block_dot
(
W
,
h
,
iIdx
,
b
,
oIdx
)
f
=
theano
.
function
([
W
,
h
,
iIdx
,
b
,
oIdx
],
o
,
mode
=
self
.
mode
)
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
=
\
BlockSparse_Gemv_and_Outer
.
gemv_data
()
th_out
=
f
(
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
)
ref_out
=
BlockSparse_Gemv_and_Outer
.
gemv_numpy
(
b_val
.
take
(
oIdx_val
,
axis
=
0
),
W_val
,
h_val
,
iIdx_val
,
oIdx_val
)
utt
.
assert_allclose
(
ref_out
,
th_out
)
def
test_sparseblockgemv
(
self
):
"""
Compares the numpy and theano versions of sparseblockgemv.
"""
b
=
tensor
.
fmatrix
()
W
=
tensor
.
ftensor4
()
h
=
tensor
.
ftensor3
()
iIdx
=
tensor
.
imatrix
()
oIdx
=
tensor
.
imatrix
()
o
=
self
.
gemv_op
(
b
.
take
(
oIdx
,
axis
=
0
),
W
,
h
,
iIdx
,
oIdx
)
f
=
theano
.
function
([
W
,
h
,
iIdx
,
b
,
oIdx
],
o
,
mode
=
self
.
mode
)
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
=
\
BlockSparse_Gemv_and_Outer
.
gemv_data
()
th_out
=
f
(
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
)
ref_out
=
BlockSparse_Gemv_and_Outer
.
gemv_numpy
(
b_val
.
take
(
oIdx_val
,
axis
=
0
),
W_val
,
h_val
,
iIdx_val
,
oIdx_val
)
utt
.
assert_allclose
(
ref_out
,
th_out
)
def
test_sparseblockgemvF
(
self
):
"""
Test the fortan order for W (which can happen in the grad for some
graphs).
"""
b
=
tensor
.
fmatrix
()
W
=
tensor
.
ftensor4
()
h
=
tensor
.
ftensor3
()
iIdx
=
tensor
.
imatrix
()
oIdx
=
tensor
.
imatrix
()
o
=
self
.
gemv_op
(
b
.
take
(
oIdx
,
axis
=
0
),
tensor
.
DimShuffle
((
False
,
False
,
False
,
False
),
(
0
,
1
,
3
,
2
))(
tensor
.
as_tensor_variable
(
W
)),
h
,
iIdx
,
oIdx
)
f
=
theano
.
function
([
W
,
h
,
iIdx
,
b
,
oIdx
],
o
,
mode
=
self
.
mode
)
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
=
\
BlockSparse_Gemv_and_Outer
.
gemv_data
()
th_out
=
f
(
numpy
.
swapaxes
(
W_val
,
2
,
3
),
h_val
,
iIdx_val
,
b_val
,
oIdx_val
)
ref_out
=
BlockSparse_Gemv_and_Outer
.
gemv_numpy
(
b_val
.
take
(
oIdx_val
,
axis
=
0
),
W_val
,
h_val
,
iIdx_val
,
oIdx_val
)
utt
.
assert_allclose
(
ref_out
,
th_out
)
def
test_sparseblockgemv_grad
(
self
):
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
=
\
BlockSparse_Gemv_and_Outer
.
gemv_data
()
h_val
=
randn
(
1
,
1
,
1
)
.
astype
(
'float32'
)
iIdx_val
=
numpy
.
random
.
permutation
(
1
)[:
1
][
None
,
:]
oIdx_val
=
numpy
.
random
.
permutation
(
1
)[:
1
][
None
,
:]
W_val
=
randn
(
1
,
1
,
1
,
1
)
.
astype
(
'float32'
)
b_val
=
randn
(
1
,
1
)
.
astype
(
'float32'
)
iIdx
=
theano
.
tensor
.
constant
(
iIdx_val
)
oIdx
=
theano
.
tensor
.
constant
(
oIdx_val
)
def
metaop
(
b
,
h
,
W
):
return
sparse_block_dot
(
W
,
h
,
iIdx
,
b
,
oIdx
)
def
op
(
b
,
h
,
W
):
return
self
.
gemv_op
(
b
.
take
(
oIdx
,
axis
=
0
),
W
,
h
,
iIdx
,
oIdx
)
utt
.
verify_grad
(
metaop
,
[
b_val
,
h_val
,
W_val
],
mode
=
self
.
mode
)
utt
.
verify_grad
(
op
,
[
b_val
,
h_val
,
W_val
],
mode
=
self
.
mode
)
def
test_sparseblockgemv_grad_1
(
self
):
"""
Test that we correctly handle cases where dimensions are 1.
"""
h_val
=
randn
(
1
,
1
,
1
)
.
astype
(
'float32'
)
iIdx_val
=
numpy
.
random
.
permutation
(
1
)[:
1
][
None
,
:]
oIdx_val
=
numpy
.
random
.
permutation
(
1
)[:
1
][
None
,
:]
W_val
=
randn
(
1
,
1
,
1
,
1
)
.
astype
(
'float32'
)
b_val
=
randn
(
1
,
1
)
.
astype
(
'float32'
)
iIdx
=
theano
.
tensor
.
constant
(
iIdx_val
)
oIdx
=
theano
.
tensor
.
constant
(
oIdx_val
)
def
metaop
(
b
,
h
,
W
):
return
sparse_block_dot
(
W
,
h
,
iIdx
,
b
,
oIdx
)
def
op
(
b
,
h
,
W
):
return
self
.
gemv_op
(
b
.
take
(
oIdx
,
axis
=
0
),
W
,
h
,
iIdx
,
oIdx
)
utt
.
verify_grad
(
metaop
,
[
b_val
,
h_val
,
W_val
],
mode
=
self
.
mode
)
utt
.
verify_grad
(
op
,
[
b_val
,
h_val
,
W_val
],
mode
=
self
.
mode
)
def
test_sparseblockgemv_grad_shape
(
self
):
b
=
tensor
.
fmatrix
()
W
=
tensor
.
ftensor4
()
h
=
tensor
.
ftensor3
()
iIdx
=
tensor
.
imatrix
()
oIdx
=
tensor
.
imatrix
()
o
=
self
.
gemv_op
(
b
.
take
(
oIdx
,
axis
=
0
),
W
,
h
,
iIdx
,
oIdx
)
go
=
theano
.
grad
(
o
.
sum
(),
[
b
,
W
,
h
])
f
=
theano
.
function
([
W
,
h
,
iIdx
,
b
,
oIdx
],
go
,
mode
=
self
.
mode
)
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
=
\
BlockSparse_Gemv_and_Outer
.
gemv_data
()
# just make sure that it runs correcly and all the shapes are ok.
b_g
,
W_g
,
h_g
=
f
(
W_val
,
h_val
,
iIdx_val
,
b_val
,
oIdx_val
)
assert
b_g
.
shape
==
b_val
.
shape
assert
h_g
.
shape
==
h_val
.
shape
assert
W_g
.
shape
==
W_val
.
shape
def
test_sparseblockouter
(
self
):
o
=
tensor
.
ftensor4
()
x
=
tensor
.
ftensor3
()
y
=
tensor
.
ftensor3
()
xIdx
=
tensor
.
imatrix
()
yIdx
=
tensor
.
imatrix
()
out
=
self
.
outer_op
(
o
,
x
,
y
,
xIdx
,
yIdx
)
f
=
theano
.
function
([
o
,
x
,
y
,
xIdx
,
yIdx
],
out
,
on_unused_input
=
"warn"
)
o_val
,
x_val
,
y_val
,
xIdx_val
,
yIdx_val
=
\
BlockSparse_Gemv_and_Outer
.
outer_data
()
th_out
=
f
(
o_val
,
x_val
,
y_val
,
xIdx_val
,
yIdx_val
)
ref_out
=
BlockSparse_Gemv_and_Outer
.
outer_numpy
(
o_val
,
x_val
,
y_val
,
xIdx_val
,
yIdx_val
)
utt
.
assert_allclose
(
ref_out
,
th_out
)
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