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testgroup
pytensor
Commits
84ac684c
提交
84ac684c
authored
2月 01, 2012
作者:
lamblin
浏览文件
操作
浏览文件
下载
差异文件
Merge pull request #412 from lamblin/sparse_indexing
Sparse indexing
上级
41944823
7749fc6e
隐藏空白字符变更
内嵌
并排
正在显示
5 个修改的文件
包含
229 行增加
和
154 行删除
+229
-154
debugmode.py
theano/compile/debugmode.py
+10
-4
graph.py
theano/gof/graph.py
+5
-1
type.py
theano/gof/type.py
+3
-0
basic.py
theano/sparse/basic.py
+46
-26
test_basic.py
theano/sparse/tests/test_basic.py
+165
-123
没有找到文件。
theano/compile/debugmode.py
浏览文件 @
84ac684c
...
...
@@ -1330,11 +1330,16 @@ class _Linker(gof.link.LocalLinker):
r_vals_initialized
=
[]
for
r
in
storage_map
:
if
(
r
.
owner
is
None
):
if
(
storage_map
[
r
][
0
]
is
None
):
raise
Exception
(
'Missing input'
,
r
)
if
not
r
.
type
.
is_valid_value
(
storage_map
[
r
][
0
]):
# None may be a valid input value (for instance,
# for a Generic object). We only want to raise
# an error if it is not valid.
if
(
storage_map
[
r
][
0
]
is
None
):
raise
InvalidValueError
(
r
,
storage_map
[
r
][
0
],
hint
=
"Graph Input '
%
s' is missing"
%
str
(
r
))
raise
InvalidValueError
(
r
,
storage_map
[
r
][
0
],
hint
=
"Graph Input '
%
s' is missing"
%
str
(
r
))
hint
=
(
"Graph Input '
%
s' has invalid value "
"
%
s"
%
(
r
,
storage_map
[
r
][
0
])))
r_vals
[
r
]
=
storage_map
[
r
][
0
]
storage_map
[
r
][
0
]
=
None
r_vals_initialized
.
append
(
r
)
...
...
@@ -1577,7 +1582,8 @@ class _Linker(gof.link.LocalLinker):
#print storage_map
for
r
in
storage_map
:
if
(
r
.
owner
is
None
):
assert
storage_map
[
r
][
0
]
is
not
None
if
not
r
.
type
.
is_valid_value
(
None
):
assert
storage_map
[
r
][
0
]
is
not
None
###############
...
...
theano/gof/graph.py
浏览文件 @
84ac684c
...
...
@@ -391,7 +391,11 @@ class Constant(Value):
def
__str__
(
self
):
if
self
.
name
is
not
None
:
return
self
.
name
return
str
(
self
.
data
)
#+ "::" + str(self.type)
else
:
name
=
str
(
self
.
data
)
if
len
(
name
)
>
20
:
name
=
name
[:
10
]
+
'...'
+
name
[
-
10
]
return
'Constant{
%
s}'
%
name
def
clone
(
self
):
"""
We clone this object, but we don't clone the data to lower memory requirement
...
...
theano/gof/type.py
浏览文件 @
84ac684c
...
...
@@ -423,4 +423,7 @@ class Generic(SingletonType):
Py_INCREF(py_
%(name)
s);
"""
%
locals
()
def
__str__
(
self
):
return
self
.
__class__
.
__name__
generic
=
Generic
()
theano/sparse/basic.py
浏览文件 @
84ac684c
...
...
@@ -188,13 +188,11 @@ class _sparse_py_operators:
if
not
isinstance
(
args
,
tuple
):
args
=
args
,
scalar_var
=
tensor
.
iscalar
()
if
len
(
args
)
==
2
:
scalar_arg_1
=
(
numpy
.
isscalar
(
args
[
0
])
or
getattr
(
args
[
0
],
'type'
,
None
)
==
scalar_var
.
type
)
getattr
(
args
[
0
],
'type'
,
None
)
==
tensor
.
iscalar
)
scalar_arg_2
=
(
numpy
.
isscalar
(
args
[
1
])
or
getattr
(
args
[
1
],
'type'
,
None
)
==
scalar_var
.
type
)
getattr
(
args
[
1
],
'type'
,
None
)
==
tensor
.
iscalar
)
if
scalar_arg_1
and
scalar_arg_2
:
ret
=
get_item_scalar
(
self
,
args
)
else
:
...
...
@@ -202,8 +200,8 @@ class _sparse_py_operators:
else
:
ret
=
get_item_2d
(
self
,
args
)
return
ret
class
SparseVariable
(
gof
.
Variable
,
_sparse_py_operators
):
dtype
=
property
(
lambda
self
:
self
.
type
.
dtype
)
format
=
property
(
lambda
self
:
self
.
type
.
format
)
...
...
@@ -681,35 +679,57 @@ class GetItem2d(gof.op.Op):
assert
len
(
index
)
in
[
1
,
2
]
input_op
=
[
x
]
generic_None
=
theano
.
gof
.
Constant
(
theano
.
gof
.
generic
,
None
)
for
ind
in
index
:
if
isinstance
(
ind
,
slice
):
# in case of slice is written in theano variable
start
=
ind
.
start
stop
=
ind
.
stop
# in case of slice is written in python int
if
isinstance
(
start
,
int
):
start
=
theano
.
tensor
.
constant
(
start
)
if
isinstance
(
stop
,
int
):
stop
=
theano
.
tensor
.
constant
(
stop
)
#in case of indexing using python int
#elif isinstance(ind,int):
# start = theano.tensor.constant(ind)
# stop = start + 1
#elif ind.ndim == 0:
# start = ind
# stop = ind + 1
else
:
raise
NotImplemented
(
if
ind
.
step
is
not
None
:
raise
ValueError
((
"Using a slice with non-default step when "
"indexing into a sparse matrix is not supported. "
),
ind
,
ind
.
step
)
# If start or stop are None, make them a Generic constant
# Else, they should be converted to Tensor Variables of
# dimension 1 and int/uint dtype.
if
start
is
None
:
start
=
generic_None
else
:
if
not
isinstance
(
start
,
gof
.
Variable
):
start
=
tensor
.
as_tensor_variable
(
start
)
if
not
(
start
.
ndim
==
0
and
start
.
dtype
in
tensor
.
discrete_dtypes
):
raise
ValueError
((
"Impossible to index into a sparse matrix with "
"slice where start=
%
s"
%
start
),
start
.
ndim
,
start
.
dtype
)
if
stop
is
None
:
stop
=
generic_None
else
:
if
not
isinstance
(
stop
,
gof
.
Variable
):
stop
=
tensor
.
as_tensor_variable
(
stop
)
if
not
(
stop
.
ndim
==
0
and
stop
.
dtype
in
tensor
.
discrete_dtypes
):
raise
ValueError
((
"Impossible to index into a sparse matrix with "
"slice where stop=
%
s"
%
stop
),
stop
.
ndim
,
stop
.
dtype
)
elif
((
isinstance
(
ind
,
gof
.
Variable
)
and
getattr
(
ind
,
'ndim'
,
-
1
)
==
0
)
or
numpy
.
isscalar
(
ind
)):
raise
NotImplementedError
(
'Theano has no sparse vector'
+
'Use X[a:b,c:d], X[a:b,c:c+1] or X[a:b] instead.'
)
else
:
raise
ValueError
((
'Advanced indexing is not implemented for sparse '
'matrices. Argument not supported:
%
s'
%
ind
))
input_op
+=
[
start
,
stop
]
if
len
(
index
)
==
1
:
i
=
theano
.
gof
.
Constant
(
theano
.
gof
.
generic
,
None
)
input_op
+=
[
i
,
i
]
input_op
+=
[
generic_None
,
generic_None
]
return
gof
.
Apply
(
self
,
input_op
,
[
x
.
type
()])
...
...
@@ -765,7 +785,7 @@ class GetItemScalar(gof.op.Op):
def
perform
(
self
,
node
,
(
x
,
ind1
,
ind2
),
(
out
,
)):
assert
_is_sparse
(
x
)
out
[
0
]
=
x
[
ind1
,
ind2
]
out
[
0
]
=
theano
.
_asarray
(
x
[
ind1
,
ind2
],
x
.
dtype
)
def
__str__
(
self
):
return
self
.
__class__
.
__name__
...
...
theano/sparse/tests/test_basic.py
浏览文件 @
84ac684c
...
...
@@ -930,129 +930,171 @@ def test_size():
check
()
def
test_GetItem2D
():
sparse_formats
=
(
'csc'
,
'csr'
)
for
format
in
sparse_formats
:
x
=
theano
.
sparse
.
matrix
(
format
)
a
=
theano
.
tensor
.
iscalar
()
b
=
theano
.
tensor
.
iscalar
()
c
=
theano
.
tensor
.
iscalar
()
d
=
theano
.
tensor
.
iscalar
()
# index
m
=
1
n
=
5
p
=
10
q
=
15
vx
=
as_sparse_format
(
numpy
.
random
.
binomial
(
1
,
0.5
,
(
100
,
100
)),
format
)
.
astype
(
theano
.
config
.
floatX
)
#mode_no_debug = theano.compile.mode.get_default_mode()
#if isinstance(mode_no_debug, theano.compile.DebugMode):
# mode_no_debug = 'FAST_RUN'
f1
=
theano
.
function
([
x
,
a
,
b
,
c
,
d
],
x
[
a
:
b
,
c
:
d
])
r1
=
f1
(
vx
,
m
,
n
,
p
,
q
)
t1
=
vx
[
m
:
n
,
p
:
q
]
assert
r1
.
shape
==
t1
.
shape
assert
numpy
.
all
(
t1
.
toarray
()
==
r1
.
toarray
())
""""
Important: based on a discussion with both Fred and James
The following indexing methods is not supported because the rval
would be a sparse matrix rather than a sparse vector, which is a
deviation from numpy indexing rule. This decision is made largely
for keeping the consistency between numpy and theano.
f2 = theano.function([x, a, b, c], x[a:b, c])
r2 = f2(vx, m, n, p)
t2 = vx[m:n, p]
assert r2.shape == t2.shape
assert numpy.all(t2.toarray() == r2.toarray())
f3 = theano.function([x, a, b, c], x[a, b:c])
r3 = f3(vx, m, n, p)
t3 = vx[m, n:p]
assert r3.shape == t3.shape
assert numpy.all(t3.toarray() == r3.toarray())
f5 = theano.function([x], x[1:2,3])
r5 = f5(vx)
t5 = vx[1:2, 3]
assert r5.shape == t5.shape
assert numpy.all(r5.toarray() == t5.toarray())
f7 = theano.function([x], x[50])
r7 = f7(vx)
t7 = vx[50]
assert r7.shape == t7.shape
assert numpy.all(r7.toarray() == t7.toarray())
"""
f4
=
theano
.
function
([
x
,
a
,
b
],
x
[
a
:
b
])
r4
=
f4
(
vx
,
m
,
n
)
t4
=
vx
[
m
:
n
]
assert
r4
.
shape
==
t4
.
shape
assert
numpy
.
all
(
t4
.
toarray
()
==
r4
.
toarray
())
#-----------------------------------------------------------
# test cases using int indexing instead of theano variable
f6
=
theano
.
function
([
x
],
x
[
1
:
10
,
10
:
20
])
r6
=
f6
(
vx
)
t6
=
vx
[
1
:
10
,
10
:
20
]
assert
r6
.
shape
==
t6
.
shape
assert
numpy
.
all
(
r6
.
toarray
()
==
t6
.
toarray
())
#----------------------------------------------------------
# test cases with indexing both with theano variable and int
f8
=
theano
.
function
([
x
,
a
,
b
],
x
[
a
:
b
,
10
:
20
])
r8
=
f8
(
vx
,
m
,
n
)
t8
=
vx
[
m
:
n
,
10
:
20
]
assert
r8
.
shape
==
t8
.
shape
assert
numpy
.
all
(
r8
.
toarray
()
==
t8
.
toarray
())
f9
=
theano
.
function
([
x
,
a
,
b
],
x
[
1
:
a
,
1
:
b
])
r9
=
f9
(
vx
,
p
,
q
)
t9
=
vx
[
1
:
p
,
1
:
q
]
assert
r9
.
shape
==
t9
.
shape
assert
numpy
.
all
(
r9
.
toarray
()
==
t9
.
toarray
())
def
test_GetItemScalar
():
sparse_formats
=
(
'csc'
,
'csr'
)
for
format
in
sparse_formats
:
x
=
theano
.
sparse
.
csc_matrix
(
'x'
)
a
=
theano
.
tensor
.
iscalar
()
b
=
theano
.
tensor
.
iscalar
()
m
=
50
n
=
50
vx
=
as_sparse_format
(
numpy
.
random
.
binomial
(
1
,
0.5
,
(
100
,
100
)),
format
)
.
astype
(
theano
.
config
.
floatX
)
f1
=
theano
.
function
([
x
,
a
,
b
],
x
[
a
,
b
])
r1
=
f1
(
vx
,
10
,
10
)
t1
=
vx
[
10
,
10
]
assert
r1
.
shape
==
t1
.
shape
assert
numpy
.
all
(
t1
==
r1
)
f2
=
theano
.
function
([
x
,
a
],
x
[
50
,
a
])
r2
=
f2
(
vx
,
m
)
t2
=
vx
[
50
,
m
]
assert
r2
.
shape
==
t2
.
shape
assert
numpy
.
all
(
t2
==
r2
)
f3
=
theano
.
function
([
x
,
a
],
x
[
a
,
50
])
r3
=
f3
(
vx
,
m
)
t3
=
vx
[
m
,
50
]
assert
r3
.
shape
==
t3
.
shape
assert
numpy
.
all
(
t3
==
r3
)
f4
=
theano
.
function
([
x
],
x
[
50
,
50
])
r4
=
f4
(
vx
)
t4
=
vx
[
m
,
n
]
assert
r3
.
shape
==
t3
.
shape
assert
numpy
.
all
(
t4
==
r4
)
class
Test_getitem
(
unittest
.
TestCase
):
def
setUp
(
self
):
self
.
rng
=
numpy
.
random
.
RandomState
(
utt
.
fetch_seed
())
def
test_GetItem2D
(
self
):
sparse_formats
=
(
'csc'
,
'csr'
)
for
format
in
sparse_formats
:
x
=
theano
.
sparse
.
matrix
(
format
,
name
=
'x'
)
a
=
theano
.
tensor
.
iscalar
(
'a'
)
b
=
theano
.
tensor
.
iscalar
(
'b'
)
c
=
theano
.
tensor
.
iscalar
(
'c'
)
d
=
theano
.
tensor
.
iscalar
(
'd'
)
# index
m
=
1
n
=
5
p
=
10
q
=
15
vx
=
as_sparse_format
(
self
.
rng
.
binomial
(
1
,
0.5
,
(
100
,
97
)),
format
)
.
astype
(
theano
.
config
.
floatX
)
#mode_no_debug = theano.compile.mode.get_default_mode()
#if isinstance(mode_no_debug, theano.compile.DebugMode):
# mode_no_debug = 'FAST_RUN'
f1
=
theano
.
function
([
x
,
a
,
b
,
c
,
d
],
x
[
a
:
b
,
c
:
d
])
r1
=
f1
(
vx
,
m
,
n
,
p
,
q
)
t1
=
vx
[
m
:
n
,
p
:
q
]
assert
r1
.
shape
==
t1
.
shape
assert
numpy
.
all
(
t1
.
toarray
()
==
r1
.
toarray
())
""""
Important: based on a discussion with both Fred and James
The following indexing methods is not supported because the rval
would be a sparse matrix rather than a sparse vector, which is a
deviation from numpy indexing rule. This decision is made largely
for keeping the consistency between numpy and theano.
f2 = theano.function([x, a, b, c], x[a:b, c])
r2 = f2(vx, m, n, p)
t2 = vx[m:n, p]
assert r2.shape == t2.shape
assert numpy.all(t2.toarray() == r2.toarray())
f3 = theano.function([x, a, b, c], x[a, b:c])
r3 = f3(vx, m, n, p)
t3 = vx[m, n:p]
assert r3.shape == t3.shape
assert numpy.all(t3.toarray() == r3.toarray())
f5 = theano.function([x], x[1:2,3])
r5 = f5(vx)
t5 = vx[1:2, 3]
assert r5.shape == t5.shape
assert numpy.all(r5.toarray() == t5.toarray())
f7 = theano.function([x], x[50])
r7 = f7(vx)
t7 = vx[50]
assert r7.shape == t7.shape
assert numpy.all(r7.toarray() == t7.toarray())
"""
f4
=
theano
.
function
([
x
,
a
,
b
],
x
[
a
:
b
])
r4
=
f4
(
vx
,
m
,
n
)
t4
=
vx
[
m
:
n
]
assert
r4
.
shape
==
t4
.
shape
assert
numpy
.
all
(
t4
.
toarray
()
==
r4
.
toarray
())
#-----------------------------------------------------------
# test cases using int indexing instead of theano variable
f6
=
theano
.
function
([
x
],
x
[
1
:
10
,
10
:
20
])
r6
=
f6
(
vx
)
t6
=
vx
[
1
:
10
,
10
:
20
]
assert
r6
.
shape
==
t6
.
shape
assert
numpy
.
all
(
r6
.
toarray
()
==
t6
.
toarray
())
#----------------------------------------------------------
# test cases with indexing both with theano variable and int
f8
=
theano
.
function
([
x
,
a
,
b
],
x
[
a
:
b
,
10
:
20
])
r8
=
f8
(
vx
,
m
,
n
)
t8
=
vx
[
m
:
n
,
10
:
20
]
assert
r8
.
shape
==
t8
.
shape
assert
numpy
.
all
(
r8
.
toarray
()
==
t8
.
toarray
())
f9
=
theano
.
function
([
x
,
a
,
b
],
x
[
1
:
a
,
1
:
b
])
r9
=
f9
(
vx
,
p
,
q
)
t9
=
vx
[
1
:
p
,
1
:
q
]
assert
r9
.
shape
==
t9
.
shape
assert
numpy
.
all
(
r9
.
toarray
()
==
t9
.
toarray
())
#-----------------------------------------------------------
# Test mixing None and variables
f10
=
theano
.
function
([
x
,
a
,
b
],
x
[:
a
,
:
b
])
r10
=
f10
(
vx
,
p
,
q
)
t10
=
vx
[:
p
,
:
q
]
assert
r10
.
shape
==
t10
.
shape
assert
numpy
.
all
(
r10
.
toarray
()
==
t10
.
toarray
())
f11
=
theano
.
function
([
x
,
a
],
x
[:,
a
:])
r11
=
f11
(
vx
,
p
)
t11
=
vx
[:,
p
:]
assert
r11
.
shape
==
t11
.
shape
assert
numpy
.
all
(
r11
.
toarray
()
==
t11
.
toarray
())
#------------------------------------------------------------
# Invalid things
# The syntax is a bit awkward because assertRaises forbids
# the [] shortcut for getitem.
# x[a:b] is not accepted because we don't have sparse vectors
self
.
assertRaises
(
NotImplementedError
,
x
.
__getitem__
,
(
slice
(
a
,
b
),
c
))
# x[a:b:step, c:d] is not accepted because scipy silently drops
# the step (!)
self
.
assertRaises
(
ValueError
,
x
.
__getitem__
,
(
slice
(
a
,
b
,
-
1
),
slice
(
c
,
d
)))
self
.
assertRaises
(
ValueError
,
x
.
__getitem__
,
(
slice
(
a
,
b
),
slice
(
c
,
d
,
2
)))
# Advanced indexing is not supported
self
.
assertRaises
(
ValueError
,
x
.
__getitem__
,
(
tensor
.
ivector
(
'l'
),
slice
(
a
,
b
)))
# Indexing with random things is not supported either
self
.
assertRaises
(
ValueError
,
x
.
__getitem__
,
slice
(
tensor
.
fscalar
(
'f'
),
None
))
self
.
assertRaises
(
ValueError
,
x
.
__getitem__
,
(
slice
(
None
),
slice
([
1
,
3
,
4
],
None
)))
def
test_GetItemScalar
(
self
):
sparse_formats
=
(
'csc'
,
'csr'
)
for
format
in
sparse_formats
:
x
=
theano
.
sparse
.
csc_matrix
(
'x'
)
a
=
theano
.
tensor
.
iscalar
()
b
=
theano
.
tensor
.
iscalar
()
m
=
50
n
=
42
vx
=
as_sparse_format
(
self
.
rng
.
binomial
(
1
,
0.5
,
(
97
,
100
)),
format
)
.
astype
(
theano
.
config
.
floatX
)
f1
=
theano
.
function
([
x
,
a
,
b
],
x
[
a
,
b
])
r1
=
f1
(
vx
,
10
,
10
)
t1
=
vx
[
10
,
10
]
assert
r1
.
shape
==
t1
.
shape
assert
numpy
.
all
(
t1
==
r1
)
f2
=
theano
.
function
([
x
,
a
],
x
[
50
,
a
])
r2
=
f2
(
vx
,
m
)
t2
=
vx
[
50
,
m
]
assert
r2
.
shape
==
t2
.
shape
assert
numpy
.
all
(
t2
==
r2
)
f3
=
theano
.
function
([
x
,
a
],
x
[
a
,
50
])
r3
=
f3
(
vx
,
m
)
t3
=
vx
[
m
,
50
]
assert
r3
.
shape
==
t3
.
shape
assert
numpy
.
all
(
t3
==
r3
)
f4
=
theano
.
function
([
x
],
x
[
50
,
42
])
r4
=
f4
(
vx
)
t4
=
vx
[
m
,
n
]
assert
r3
.
shape
==
t3
.
shape
assert
numpy
.
all
(
t4
==
r4
)
import
theano.tensor.tests.test_sharedvar
...
...
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