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testgroup
pytensor
Commits
bd88ae34
提交
bd88ae34
authored
1月 24, 2008
作者:
olivier@olivier-desktop
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
fixed bug with sum
上级
b1fa49f1
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
61 行增加
和
39 行删除
+61
-39
compile.py
compile.py
+23
-5
core.py
core.py
+38
-33
grad.py
grad.py
+0
-1
没有找到文件。
compile.py
浏览文件 @
bd88ae34
...
@@ -7,14 +7,31 @@ import core
...
@@ -7,14 +7,31 @@ import core
import
opt
import
opt
from
copy
import
copy
from
copy
import
copy
def
experimental_linker
(
env
,
target
=
None
):
def
fetch
(
op
):
try
:
thunk
=
op
.
c_thunk
()
print
"yea
%
s"
%
op
return
lambda
:
cutils
.
run_cthunk
(
thunk
)
except
NotImplementedError
:
print
"nope
%
s"
%
op
return
op
.
_perform
order
=
env
.
toposort
()
thunks
=
[
fetch
(
op
)
for
op
in
order
]
def
ret
():
for
thunk
in
thunks
:
thunk
()
if
not
target
:
return
ret
else
:
raise
NotImplementedError
(
"Cannot write thunk representation to a file."
)
class
profile_linker
:
class
profile_linker
:
def
__init__
(
self
,
env
):
def
__init__
(
self
,
env
):
self
.
order
=
env
.
toposort
()
self
.
order
=
env
.
toposort
()
# print "digraph unix { size = '6,6'; node [color = lightblue2; style = filled];"
# for op in self.order:
# for input in op.inputs:
# if input.owner:
# print input.owner.__class__.__name__ + str(abs(id(input.owner))), " -> ", op.__class__.__name__ + str(abs(id(op))), ";"
self
.
thunks
=
[
op
.
_perform
for
op
in
self
.
order
]
self
.
thunks
=
[
op
.
_perform
for
op
in
self
.
order
]
self
.
n_calls
=
0
self
.
n_calls
=
0
self
.
times
=
[
0.0
for
op
in
self
.
order
]
self
.
times
=
[
0.0
for
op
in
self
.
order
]
...
@@ -57,6 +74,7 @@ class prog(gof.Prog):
...
@@ -57,6 +74,7 @@ class prog(gof.Prog):
TODO: think about whether orphan computation should be in this function,
TODO: think about whether orphan computation should be in this function,
or in self.__call__()
or in self.__call__()
"""
"""
# linker = experimental_linker
new_outputs
=
gof
.
mark_outputs_as_destroyed
(
outputs
)
new_outputs
=
gof
.
mark_outputs_as_destroyed
(
outputs
)
gof
.
Prog
.
__init__
(
self
,
gof
.
Prog
.
__init__
(
self
,
inputs
,
inputs
,
...
...
core.py
浏览文件 @
bd88ae34
...
@@ -175,7 +175,7 @@ class omega_op(gof.PythonOp):
...
@@ -175,7 +175,7 @@ class omega_op(gof.PythonOp):
@staticmethod
@staticmethod
def
__clsinit__
(
cls
,
name
,
bases
,
dct
):
def
__clsinit__
(
cls
,
name
,
bases
,
dct
):
for
fname
in
[
'grad'
,
'c_impl'
,
'
c_
alloc'
]:
for
fname
in
[
'grad'
,
'c_impl'
,
'alloc'
]:
make_static
(
cls
,
fname
)
make_static
(
cls
,
fname
)
# make impl a static method
# make impl a static method
...
@@ -202,10 +202,10 @@ class omega_op(gof.PythonOp):
...
@@ -202,10 +202,10 @@ class omega_op(gof.PythonOp):
(
inames
,
onames
),
behavior
=
self
.
_c_impl
()
(
inames
,
onames
),
behavior
=
self
.
_c_impl
()
return
cgen
(
self
.
__class__
.
__name__
,
behavior
,
inames
+
onames
,
self
.
inputs
+
self
.
outputs
,
converters
)
return
cgen
(
self
.
__class__
.
__name__
,
behavior
,
inames
+
onames
,
self
.
inputs
+
self
.
outputs
,
converters
)
def
_
c_
alloc
(
self
):
def
_alloc
(
self
):
self
.
c_
alloc
(
self
.
inputs
,
self
.
outputs
)
self
.
alloc
(
self
.
inputs
,
self
.
outputs
)
def
c_
alloc
(
inputs
,
outputs
):
def
alloc
(
inputs
,
outputs
):
raise
NotImplementedError
()
raise
NotImplementedError
()
def
_c_impl
(
self
):
def
_c_impl
(
self
):
...
@@ -216,7 +216,7 @@ class omega_op(gof.PythonOp):
...
@@ -216,7 +216,7 @@ class omega_op(gof.PythonOp):
raise
NotImplementedError
()
raise
NotImplementedError
()
def
c_thunk
(
self
):
def
c_thunk
(
self
):
self
.
_
c_
alloc
()
self
.
_alloc
()
d
,
code
,
struct
,
converters
=
self
.
c_code
()
d
,
code
,
struct
,
converters
=
self
.
c_code
()
thunk
=
weave
.
inline
(
code
,
d
.
keys
(),
local_dict
=
d
,
global_dict
=
{},
support_code
=
struct
,
type_converters
=
converters
)
thunk
=
weave
.
inline
(
code
,
d
.
keys
(),
local_dict
=
d
,
global_dict
=
{},
support_code
=
struct
,
type_converters
=
converters
)
return
thunk
return
thunk
...
@@ -325,8 +325,6 @@ def elemwise_wrap(beforeloop, inloop, afterloop, loop_vars, writable_loop_vars,
...
@@ -325,8 +325,6 @@ def elemwise_wrap(beforeloop, inloop, afterloop, loop_vars, writable_loop_vars,
%(afterloop)
s
%(afterloop)
s
"""
%
template
"""
%
template
print
code
return
code
return
code
...
@@ -348,20 +346,20 @@ class elemwise(omega_op):
...
@@ -348,20 +346,20 @@ class elemwise(omega_op):
# make impl, grad, etc. static methods
# make impl, grad, etc. static methods
omega_op
.
__clsinit__
(
cls
,
name
,
bases
,
dct
)
omega_op
.
__clsinit__
(
cls
,
name
,
bases
,
dct
)
def
_
c_
alloc
(
self
):
def
_alloc
(
self
):
if
isinstance
(
self
,
inplace
):
if
isinstance
(
self
,
inplace
):
dmap
=
self
.
destroy_map
()
dmap
=
self
.
destroy_map
()
else
:
else
:
dmap
=
{}
dmap
=
{}
try
:
try
:
return
self
.
c_
alloc
(
self
.
inputs
,
self
.
outputs
)
return
self
.
alloc
(
self
.
inputs
,
self
.
outputs
)
except
NotImplementedError
:
except
NotImplementedError
:
(
inames
,
onames
),
_1
,
_2
,
_3
=
inspect
.
getargspec
(
self
.
c_foreach
)
(
inames
,
onames
),
_1
,
_2
,
_3
=
inspect
.
getargspec
(
self
.
c_foreach
)
for
oname
in
onames
:
for
oname
in
onames
:
if
oname
.
startswith
(
"_"
):
if
oname
.
startswith
(
"_"
):
raise
Exception
(
"cannot infer an allocation policy automatically for variable "
\
raise
Exception
(
"cannot infer an allocation policy automatically for variable "
\
"
%
s because it is not part of the elementwise loop - "
\
"
%
s because it is not part of the elementwise loop - "
\
"please override the
c_
alloc method"
%
oname
[
1
:])
"please override the alloc method"
%
oname
[
1
:])
shape
,
dtype
=
None
,
None
shape
,
dtype
=
None
,
None
for
iname
,
input
in
zip
(
inames
,
self
.
inputs
):
for
iname
,
input
in
zip
(
inames
,
self
.
inputs
):
if
not
iname
.
startswith
(
"_"
):
if
not
iname
.
startswith
(
"_"
):
...
@@ -455,9 +453,12 @@ class elemwise(omega_op):
...
@@ -455,9 +453,12 @@ class elemwise(omega_op):
class
C
(
cls
,
inplace
):
class
C
(
cls
,
inplace
):
def
destroy_map
(
self
):
def
destroy_map
(
self
):
ret
=
cls
.
destroy_map
()
if
issubclass
(
cls
,
inplace
):
for
output
,
input
in
self
.
dmap
.
items
():
ret
=
cls
.
destroy_map
(
self
)
ret
[
self
.
outputs
.
index
(
output
)]
=
[
self
.
inputs
.
index
(
input
)]
else
:
ret
=
{}
for
output
,
input
in
dmap
.
items
():
ret
[
self
.
outputs
[
output
]]
=
[
self
.
inputs
[
input
]]
return
ret
return
ret
def
_impl
(
self
):
def
_impl
(
self
):
if
self
.
impl
is
not
cls
.
impl
:
if
self
.
impl
is
not
cls
.
impl
:
...
@@ -465,10 +466,10 @@ class elemwise(omega_op):
...
@@ -465,10 +466,10 @@ class elemwise(omega_op):
return
cls
.
_impl
(
self
)
return
cls
.
_impl
(
self
)
else
:
else
:
res
=
cls
.
_impl
(
self
)
res
=
cls
.
_impl
(
self
)
if
isinstance
(
res
,
gof
.
Result
):
if
isinstance
(
res
,
(
list
,
tuple
)
):
res
=
[
res
]
res
=
pycopy
(
res
)
else
:
else
:
res
=
copy
(
res
)
res
=
[
res
]
for
output
,
input
in
dmap
.
items
():
for
output
,
input
in
dmap
.
items
():
# The default implementation returned a copy, so we just
# The default implementation returned a copy, so we just
# overwrite the original input with the contents of that copy
# overwrite the original input with the contents of that copy
...
@@ -582,7 +583,7 @@ def tensor_scalar_impl(impl):
...
@@ -582,7 +583,7 @@ def tensor_scalar_impl(impl):
# def grad(gz):
# def grad(gz):
# return gz
# return gz
# def
c_
alloc():
# def alloc():
# return numpy.ndarray(x.shape, dtype = x.dtype)
# return numpy.ndarray(x.shape, dtype = x.dtype)
# c_impl = """
# c_impl = """
...
@@ -596,6 +597,13 @@ def tensor_scalar_impl(impl):
...
@@ -596,6 +597,13 @@ def tensor_scalar_impl(impl):
class
tensor_scalar_op
(
elemwise
):
def
c_init
((
x
,
_a
),
(
z
,
)):
return
"_a_dtype a = _a[0];"
def
_c_foreach
(
self
):
return
((
'x'
,
'_a'
),
(
'z'
,
)),
"z =
%
s;"
%
self
.
c_operation
## Addition ##
## Addition ##
class
add_elemwise
(
elemwise
):
class
add_elemwise
(
elemwise
):
...
@@ -606,7 +614,7 @@ class add_elemwise(elemwise):
...
@@ -606,7 +614,7 @@ class add_elemwise(elemwise):
return
"z = x + y;"
return
"z = x + y;"
iadd_elemwise
=
add_elemwise
.
inplace_version
()
iadd_elemwise
=
add_elemwise
.
inplace_version
()
iadd_elemwise
.
impl
=
assert_same_shapes
(
numpy
.
ndarray
.
__iadd__
)
#
iadd_elemwise.impl = assert_same_shapes(numpy.ndarray.__iadd__)
# class proto_add_elemwise(omega_op):
# class proto_add_elemwise(omega_op):
...
@@ -619,12 +627,6 @@ iadd_elemwise.impl = assert_same_shapes(numpy.ndarray.__iadd__)
...
@@ -619,12 +627,6 @@ iadd_elemwise.impl = assert_same_shapes(numpy.ndarray.__iadd__)
# class iadd_elemwise(proto_add_elemwise, inplace):
# class iadd_elemwise(proto_add_elemwise, inplace):
# impl = assert_same_shapes(numpy.ndarray.__iadd__)
# impl = assert_same_shapes(numpy.ndarray.__iadd__)
class
tensor_scalar_op
(
elemwise
):
def
c_init
((
x
,
_a
),
(
z
,
)):
return
"_a_dtype a = _a[0];"
def
_c_foreach
(
self
):
return
((
'x'
,
'_a'
),
(
'z'
,
)),
"z =
%
s;"
%
self
.
c_operation
class
add_scalar
(
tensor_scalar_op
):
class
add_scalar
(
tensor_scalar_op
):
impl
=
tensor_scalar_impl
(
numpy
.
ndarray
.
__add__
)
impl
=
tensor_scalar_impl
(
numpy
.
ndarray
.
__add__
)
...
@@ -633,7 +635,7 @@ class add_scalar(tensor_scalar_op):
...
@@ -633,7 +635,7 @@ class add_scalar(tensor_scalar_op):
c_expr
=
"x + a"
c_expr
=
"x + a"
iadd_scalar
=
add_scalar
.
inplace_version
()
iadd_scalar
=
add_scalar
.
inplace_version
()
iadd_scalar
.
impl
=
tensor_scalar_impl
(
numpy
.
ndarray
.
__iadd__
)
#
iadd_scalar.impl = tensor_scalar_impl(numpy.ndarray.__iadd__)
# class proto_add_scalar(omega_op):
# class proto_add_scalar(omega_op):
...
@@ -681,7 +683,7 @@ class sub_elemwise(elemwise):
...
@@ -681,7 +683,7 @@ class sub_elemwise(elemwise):
return
"z = x - y;"
return
"z = x - y;"
isub_elemwise
=
sub_elemwise
.
inplace_version
()
isub_elemwise
=
sub_elemwise
.
inplace_version
()
isub_elemwise
.
impl
=
assert_same_shapes
(
numpy
.
ndarray
.
__isub__
)
#
isub_elemwise.impl = assert_same_shapes(numpy.ndarray.__isub__)
# class proto_sub_elemwise(omega_op):
# class proto_sub_elemwise(omega_op):
...
@@ -714,7 +716,7 @@ class mul_elemwise(elemwise):
...
@@ -714,7 +716,7 @@ class mul_elemwise(elemwise):
return
"z = x * y;"
return
"z = x * y;"
imul_elemwise
=
mul_elemwise
.
inplace_version
()
imul_elemwise
=
mul_elemwise
.
inplace_version
()
imul_elemwise
.
impl
=
assert_same_shapes
(
numpy
.
ndarray
.
__imul__
)
#
imul_elemwise.impl = assert_same_shapes(numpy.ndarray.__imul__)
# class proto_mul_elemwise(omega_op):
# class proto_mul_elemwise(omega_op):
...
@@ -735,7 +737,7 @@ class scale(tensor_scalar_op):
...
@@ -735,7 +737,7 @@ class scale(tensor_scalar_op):
c_expr
=
"x * a"
c_expr
=
"x * a"
iscale
=
scale
.
inplace_version
()
iscale
=
scale
.
inplace_version
()
iscale
.
impl
=
tensor_scalar_impl
(
numpy
.
ndarray
.
__imul__
)
#
iscale.impl = tensor_scalar_impl(numpy.ndarray.__imul__)
# class proto_scale(omega_op):
# class proto_scale(omega_op):
...
@@ -815,7 +817,7 @@ class div_elemwise(elemwise):
...
@@ -815,7 +817,7 @@ class div_elemwise(elemwise):
return
"z = x / y;"
return
"z = x / y;"
idiv_elemwise
=
div_elemwise
.
inplace_version
()
idiv_elemwise
=
div_elemwise
.
inplace_version
()
idiv_elemwise
.
impl
=
assert_same_shapes
(
numpy
.
ndarray
.
__idiv__
)
#
idiv_elemwise.impl = assert_same_shapes(numpy.ndarray.__idiv__)
# class proto_div_elemwise(omega_op):
# class proto_div_elemwise(omega_op):
...
@@ -921,7 +923,7 @@ class pow_elemwise(elemwise):
...
@@ -921,7 +923,7 @@ class pow_elemwise(elemwise):
return
"z = pow(x, s)"
return
"z = pow(x, s)"
ipow_elemwise
=
pow_elemwise
.
inplace_version
()
ipow_elemwise
=
pow_elemwise
.
inplace_version
()
ipow_elemwise
.
impl
=
assert_same_shapes
(
numpy
.
ndarray
.
__ipow__
)
#
ipow_elemwise.impl = assert_same_shapes(numpy.ndarray.__ipow__)
# class proto_pow(omega_op):
# class proto_pow(omega_op):
...
@@ -948,7 +950,7 @@ class pow_scalar_r(tensor_scalar_op):
...
@@ -948,7 +950,7 @@ class pow_scalar_r(tensor_scalar_op):
c_expr
=
"pow(x, a)"
c_expr
=
"pow(x, a)"
ipow_scalar_r
=
pow_scalar_r
.
inplace_version
()
ipow_scalar_r
=
pow_scalar_r
.
inplace_version
()
ipow_scalar_r
.
impl
=
tensor_scalar_impl
(
numpy
.
ndarray
.
__ipow__
)
#
ipow_scalar_r.impl = tensor_scalar_impl(numpy.ndarray.__ipow__)
# class pow_scalar_l(omega_op):
# class pow_scalar_l(omega_op):
...
@@ -972,7 +974,7 @@ class minmax(elemwise):
...
@@ -972,7 +974,7 @@ class minmax(elemwise):
nout
=
2
nout
=
2
def
impl
(
x
):
def
impl
(
x
):
return
x
.
min
,
x
.
max
return
x
.
min
,
x
.
max
def
c_
alloc
((
x
,
),
(
_min
,
_max
)):
def
alloc
((
x
,
),
(
_min
,
_max
)):
_min
.
data
=
numpy
.
ndarray
((),
x
.
dtype
)
_min
.
data
=
numpy
.
ndarray
((),
x
.
dtype
)
_max
.
data
=
numpy
.
ndarray
((),
x
.
dtype
)
_max
.
data
=
numpy
.
ndarray
((),
x
.
dtype
)
def
c_init
((
x
,
),
(
_min
,
_max
)):
def
c_init
((
x
,
),
(
_min
,
_max
)):
...
@@ -1011,7 +1013,10 @@ ifill = fill.inplace_version()
...
@@ -1011,7 +1013,10 @@ ifill = fill.inplace_version()
# impl = lambda model, value: (model * 0) + value
# impl = lambda model, value: (model * 0) + value
class
sum
(
elemwise
):
class
sum
(
elemwise
):
def
c_alloc
((
x
,
),
(
_sum
,
)):
impl
=
numpy
.
sum
def
grad
(
x
,
gz
):
return
fill
(
x
,
gz
)
def
alloc
((
x
,
),
(
_sum
,
)):
_sum
.
data
=
numpy
.
ndarray
((),
dtype
=
x
.
data
.
dtype
)
_sum
.
data
=
numpy
.
ndarray
((),
dtype
=
x
.
data
.
dtype
)
def
c_init
((
x
,
),
(
_sum
,
)):
def
c_init
((
x
,
),
(
_sum
,
)):
return
"_sum[0] = 0;"
return
"_sum[0] = 0;"
...
...
grad.py
浏览文件 @
bd88ae34
...
@@ -50,7 +50,6 @@ class Grad(object):
...
@@ -50,7 +50,6 @@ class Grad(object):
r may be uncomputed or NumpyR
r may be uncomputed or NumpyR
"""
"""
if
dr
is
core
.
UNDEFINED
:
if
dr
is
core
.
UNDEFINED
:
# nothing to do
# nothing to do
pass
pass
...
...
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