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testgroup
pytensor
Commits
14753530
提交
14753530
authored
1月 07, 2008
作者:
olivier@olivier-desktop
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4 个修改的文件
包含
152 行增加
和
0 行删除
+152
-0
core.py
core.py
+0
-0
grad.py
grad.py
+44
-0
opt.py
opt.py
+70
-0
rand.py
rand.py
+38
-0
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core.py
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14753530
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grad.py
0 → 100644
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14753530
import
gof
import
core
class
_GradD
(
dict
):
"""A dictionary-like class, into which derivative expressions may be added"""
def
add
(
self
,
r
,
dr
):
"""Add dv to the sum of gradients associated with v"""
if
r
is
core
.
UNDEFINED
:
self
[
r
]
=
core
.
UNDEFINED
elif
r
in
self
:
self
[
r
]
=
self
[
r
]
+
dr
else
:
self
[
r
]
=
dr
def
expand_grad
(
i
,
o
,
cost_derivs
):
grad_d
=
_GradD
(
cost_derivs
)
core
.
build_mode
()
for
op
in
gof
.
graph
.
io_toposort
(
i
,
o
)
.
__reversed__
():
op
.
update_gradient
(
grad_d
)
# inputgs = op.grad(*(op.inputs + [grad_d[output] for output in op.outputs]))
# if not isinstance(inputgs, (list, tuple)):
# inputgs = [inputgs] * len(op.inputs)
# for input, inputg in zip(op.inputs, inputgs):
# grad_d.add(input, inputg)
core
.
pop_mode
()
return
grad_d
def
grad
(
cost
,
wrt
,
cost_grad
=
1.0
):
# cost, wrt = core.wrap(cost), core.wrap(wrt)
cost_derivs
=
expand_grad
([
wrt
],
[
cost
],
{
cost
:
core
.
wrap
(
cost_grad
)})
# print wrt
# for k, v in cost_derivs.items():
# print k, v
ret
=
cost_derivs
.
get
(
wrt
,
None
)
if
ret
is
core
.
UNDEFINED
:
raise
Exception
(
"The gradient wrt
%
s is undefined."
%
wrt
)
return
ret
opt.py
0 → 100644
浏览文件 @
14753530
from
core
import
*
import
gof
def
pattern_opt
(
in_pattern
,
out_pattern
):
def
parse
(
x
):
if
isinstance
(
x
,
(
list
,
tuple
)):
return
[
parse
(
y
)
for
y
in
x
]
elif
isinstance
(
x
,
wrapper
):
return
x
.
opclass
elif
isinstance
(
x
,
str
)
or
(
hasattr
(
x
,
'__bases__'
)
and
issubclass
(
x
,
gof
.
op
.
Op
)):
return
x
else
:
raise
TypeError
(
"Bad input type for pattern_opt."
)
return
gof
.
opt
.
PatternOptimizer
(
parse
(
in_pattern
),
parse
(
out_pattern
))
def
op_sub
(
op1
,
op2
):
if
isinstance
(
op1
,
wrapper
):
op1
=
op1
.
opclass
if
isinstance
(
op2
,
wrapper
):
op2
=
op2
.
opclass
return
gof
.
opt
.
OpSubOptimizer
(
op1
,
op2
)
#def make_patterns(patterns):
# return [name, pattern_opt(inp, outp) for name, inp, outp in patterns]
def
export_opts
(
opts
):
for
name
,
opt
in
opts
:
if
name
:
globals
()[
name
]
=
opt
# double_transpose_eliminator = pattern_opt((transpose, (transpose, 'x')), 'x')
# patterns = make_patterns(patterns)
# export_patterns(patterns)
# List of optimizations to perform. They are listed in the order they are applied.
opts
=
[
[
'double_transpose_eliminator'
,
pattern_opt
((
transpose
,
(
transpose
,
'x'
)),
'x'
)],
[
'addxx_to_twice'
,
pattern_opt
((
add
,
'x'
,
'x'
),
(
twice
,
'x'
))],
[
'twice_to_itwice'
,
op_sub
(
twice
,
itwice
)],
[
'mulxx_to_twice'
,
pattern_opt
((
mul
,
'x'
,
'x'
),
(
sqr
,
'x'
))],
[
'sqr_to_isqr'
,
op_sub
(
sqr
,
isqr
)],
[
'add_to_iadd'
,
op_sub
(
add
,
iadd
)],
[
'add_to_iadd_reverse'
,
pattern_opt
((
add
,
'x'
,
'y'
),
(
iadd
,
'y'
,
'x'
))],
[
'remove_copies'
,
gof
.
opt
.
OpRemover
(
array_copy
)],
[
None
,
gof
.
lib
.
DummyRemover
]
# has to be at the end
]
export_opts
(
opts
)
# publish the optimizations performed under individual names
optimizer
=
gof
.
opt
.
MergeOptMerge
(
gof
.
opt
.
SeqOptimizer
([
opt
for
name
,
opt
in
opts
]))
rand.py
0 → 100644
浏览文件 @
14753530
import
core
import
gof
from
numpy
import
random
as
r
# def rwrap(f):
# wrapped =
# def ret(self, *args):
class
RandomState
(
gof
.
Op
,
gof
.
ext
.
IONames
):
input_names
=
[
'seed'
]
def
__init__
(
self
,
seed
):
inputs
=
[
wrap
(
seed
)]
outputs
=
[
PythonR
()]
gof
.
Op
.
__init__
(
self
,
inputs
,
outputs
)
def
thunk
(
self
):
def
f
():
self
.
out
.
storage
=
r
.
RandomState
(
self
.
seed
.
storage
)
return
f
class
Random
(
object
):
def
__init__
(
seed
):
self
.
state
=
core
.
wrap
(
seed
)
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