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testgroup
pytensor
Commits
6b16e20c
提交
6b16e20c
authored
4月 21, 2011
作者:
James Bergstra
浏览文件
操作
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差异文件
merge
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f9dd5a84
a9792022
显示空白字符变更
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并排
正在显示
5 个修改的文件
包含
70 行增加
和
27 行删除
+70
-27
latence_gpu_transfert.py
theano/misc/latence_gpu_transfert.py
+19
-0
rng_mrg.py
theano/sandbox/rng_mrg.py
+2
-2
test_rng_mrg.py
theano/sandbox/test_rng_mrg.py
+27
-17
basic.py
theano/tensor/basic.py
+16
-5
test_basic.py
theano/tensor/tests/test_basic.py
+6
-3
没有找到文件。
theano/misc/latence_gpu_transfert.py
0 → 100644
浏览文件 @
6b16e20c
import
time
import
numpy
import
theano
y
=
theano
.
tensor
.
fvector
()
x
=
theano
.
shared
(
numpy
.
zeros
(
1
,
dtype
=
'float32'
))
f1
=
theano
.
function
([
y
],
updates
=
{
x
:
y
})
f2
=
theano
.
function
([],
theano
.
sandbox
.
cuda
.
host_from_gpu
(
x
))
print
f1
.
maker
.
env
.
toposort
()
print
f2
.
maker
.
env
.
toposort
()
for
i
in
[
1
,
10
,
100
,
1000
,
10000
,
100000
,
1000000
,
10000000
]:
o
=
numpy
.
zeros
(
i
,
dtype
=
'float32'
)
t0
=
time
.
time
();
f1
(
o
);
t1
=
time
.
time
();
tf1
=
t1
-
t0
t0
=
time
.
time
();
f2
();
t1
=
time
.
time
();
print
"
%8
i
%6.1
f ns
%7.1
f ns"
%
(
i
,
tf1
*
1e6
,(
t1
-
t0
)
*
1e6
)
theano/sandbox/rng_mrg.py
浏览文件 @
6b16e20c
...
@@ -815,11 +815,11 @@ class MRG_RandomStreams(object):
...
@@ -815,11 +815,11 @@ class MRG_RandomStreams(object):
else
:
else
:
final_samples
=
normal_samples
[:
prod
(
size
)]
final_samples
=
normal_samples
[:
prod
(
size
)]
final_samples
=
avg
+
std
*
final_samples
if
size
:
if
size
:
final_samples
=
final_samples
.
reshape
(
size
)
final_samples
=
final_samples
.
reshape
(
size
)
final_samples
=
avg
+
std
*
final_samples
return
final_samples
return
final_samples
@local_optimizer
([
None
])
@local_optimizer
([
None
])
...
...
theano/sandbox/test_rng_mrg.py
浏览文件 @
6b16e20c
...
@@ -294,21 +294,29 @@ def basictest(f, steps, sample_size, prefix="", allow_01=False, inputs=[],
...
@@ -294,21 +294,29 @@ def basictest(f, steps, sample_size, prefix="", allow_01=False, inputs=[],
ival
=
numpy
.
asarray
(
ival
)
ival
=
numpy
.
asarray
(
ival
)
if
i
==
0
:
if
i
==
0
:
mean
=
numpy
.
array
(
ival
,
copy
=
True
)
mean
=
numpy
.
array
(
ival
,
copy
=
True
)
avg_std
=
numpy
.
std
(
ival
)
#avg_std = numpy.std(ival)
avg_std
=
numpy
.
sqrt
(
numpy
.
mean
((
ival
-
target_avg
)
**
2
))
min_
=
ival
.
min
()
min_
=
ival
.
min
()
max_
=
ival
.
max
()
max_
=
ival
.
max
()
else
:
else
:
alpha
=
1.0
/
(
1
+
i
)
alpha
=
1.0
/
(
1
+
i
)
mean
=
alpha
*
ival
+
(
1
-
alpha
)
*
mean
mean
=
alpha
*
ival
+
(
1
-
alpha
)
*
mean
avg_std
=
alpha
*
numpy
.
std
(
ival
)
+
(
1
-
alpha
)
*
avg_std
#avg_std = alpha * numpy.std(ival) + (1-alpha)*avg_std
avg_std
=
alpha
*
numpy
.
sqrt
(
numpy
.
mean
((
ival
-
target_avg
)
**
2
))
+
(
1
-
alpha
)
*
avg_std
min_
=
min
(
min_
,
ival
.
min
())
min_
=
min
(
min_
,
ival
.
min
())
max_
=
max
(
max_
,
ival
.
max
())
max_
=
max
(
max_
,
ival
.
max
())
if
not
allow_01
:
if
not
allow_01
:
assert
min_
>
0
assert
min_
>
0
assert
max_
<
1
assert
max_
<
1
print
prefix
,
'mean'
,
numpy
.
mean
(
mean
)
if
hasattr
(
target_avg
,
'shape'
):
# looks if target_avg is an array
assert
abs
(
numpy
.
mean
(
mean
)
-
target_avg
)
<
mean_rtol
,
'bad mean?
%
f
%
f'
%
(
numpy
.
mean
(
mean
),
target_avg
)
diff
=
numpy
.
mean
(
abs
(
mean
-
target_avg
))
print
prefix
,
'mean diff with mean'
,
diff
assert
diff
<
mean_rtol
,
'bad mean?
%
f
%
f'
%
(
mean
,
target_avg
)
else
:
# if target_avg is a scalar, then we can do the mean of `mean` to get something more precise
mean
=
numpy
.
mean
(
mean
)
print
prefix
,
'mean'
,
mean
assert
abs
(
mean
-
target_avg
)
<
mean_rtol
,
'bad mean?
%
f
%
f'
%
(
numpy
.
mean
(
mean
),
target_avg
)
print
prefix
,
'std'
,
avg_std
print
prefix
,
'std'
,
avg_std
if
target_std
is
not
None
:
if
target_std
is
not
None
:
assert
abs
(
avg_std
-
target_std
)
<
.
01
,
'bad std?
%
f
%
f'
%
(
avg_std
,
target_std
)
assert
abs
(
avg_std
-
target_std
)
<
.
01
,
'bad std?
%
f
%
f'
%
(
avg_std
,
target_std
)
...
@@ -450,30 +458,32 @@ def test_binomial():
...
@@ -450,30 +458,32 @@ def test_binomial():
def
test_normal0
():
def
test_normal0
():
steps
=
50
steps
=
50
std
=
2.
if
mode
in
[
'DEBUG_MODE'
,
'DebugMode'
,
'FAST_COMPILE'
]:
if
mode
in
[
'DEBUG_MODE'
,
'DebugMode'
,
'FAST_COMPILE'
]:
sample_size
=
(
25
,
30
)
sample_size
=
(
25
,
30
)
rtol
=.
02
default_
rtol
=.
02
else
:
else
:
sample_size
=
(
999
,
50
)
sample_size
=
(
999
,
50
)
rtol
=.
01
default_
rtol
=.
01
sample_size_odd
=
(
sample_size
[
0
],
sample_size
[
1
]
-
1
)
sample_size_odd
=
(
sample_size
[
0
],
sample_size
[
1
]
-
1
)
x
=
tensor
.
matrix
()
x
=
tensor
.
matrix
()
for
size
,
const_size
,
var_input
,
input
in
[
for
size
,
const_size
,
var_input
,
input
,
avg
,
rtol
in
[
(
sample_size
,
sample_size
,
[],
[]),
(
sample_size
,
sample_size
,
[],
[],
-
5.
,
default_rtol
),
(
x
.
shape
,
sample_size
,
[
x
],
[
numpy
.
zeros
(
sample_size
,
dtype
=
config
.
floatX
)]),
(
x
.
shape
,
sample_size
,
[
x
],
[
numpy
.
zeros
(
sample_size
,
dtype
=
config
.
floatX
)],
-
5.
,
default_rtol
),
(
sample_size_odd
,
sample_size_odd
,
[],
[]),
#test odd value
(
sample_size_odd
,
sample_size_odd
,
[],
[],
-
5.
,
default_rtol
),
#test odd value
(
x
.
shape
,
sample_size_odd
,
[
x
],
[
numpy
.
zeros
(
sample_size_odd
,
dtype
=
config
.
floatX
)]),
#test odd value
(
x
.
shape
,
sample_size_odd
,
[
x
],
[
numpy
.
zeros
(
sample_size_odd
,
dtype
=
config
.
floatX
)],
-
5.
,
default_rtol
),
#test odd value
(
sample_size
,
sample_size
,
[],
[],
numpy
.
arange
(
numpy
.
prod
(
sample_size
),
dtype
=
'float32'
)
.
reshape
(
sample_size
),
10.
*
std
/
numpy
.
sqrt
(
steps
)),
]:
]:
print
''
print
''
print
'ON CPU:'
print
'ON CPU:'
R
=
MRG_RandomStreams
(
234
,
use_cuda
=
False
)
R
=
MRG_RandomStreams
(
234
,
use_cuda
=
False
)
n
=
R
.
normal
(
size
=
size
,
avg
=
-
5.0
,
std
=
2.0
)
n
=
R
.
normal
(
size
=
size
,
avg
=
avg
,
std
=
std
)
f
=
theano
.
function
(
var_input
,
n
,
mode
=
mode
)
f
=
theano
.
function
(
var_input
,
n
,
mode
=
mode
)
theano
.
printing
.
debugprint
(
f
)
theano
.
printing
.
debugprint
(
f
)
out
=
f
(
*
input
)
out
=
f
(
*
input
)
print
'random?[:10]
\n
'
,
out
[
0
,
0
:
10
]
print
'random?[:10]
\n
'
,
out
[
0
,
0
:
10
]
basictest
(
f
,
steps
,
const_size
,
target_avg
=
-
5.0
,
target_std
=
2.0
,
prefix
=
'mrg '
,
allow_01
=
True
,
inputs
=
input
,
mean_rtol
=
rtol
)
basictest
(
f
,
steps
,
const_size
,
target_avg
=
avg
,
target_std
=
std
,
prefix
=
'mrg '
,
allow_01
=
True
,
inputs
=
input
,
mean_rtol
=
rtol
)
sys
.
stdout
.
flush
()
sys
.
stdout
.
flush
()
...
@@ -481,7 +491,7 @@ def test_normal0():
...
@@ -481,7 +491,7 @@ def test_normal0():
print
''
print
''
print
'ON GPU:'
print
'ON GPU:'
R
=
MRG_RandomStreams
(
234
,
use_cuda
=
True
)
R
=
MRG_RandomStreams
(
234
,
use_cuda
=
True
)
n
=
R
.
normal
(
size
=
size
,
avg
=
-
5.0
,
std
=
2.0
,
dtype
=
'float32'
)
n
=
R
.
normal
(
size
=
size
,
avg
=
avg
,
std
=
std
,
dtype
=
'float32'
)
assert
n
.
dtype
==
'float32'
#well, it's really that this test w GPU doesn't make sense otw
assert
n
.
dtype
==
'float32'
#well, it's really that this test w GPU doesn't make sense otw
f
=
theano
.
function
(
var_input
,
theano
.
Out
(
f
=
theano
.
function
(
var_input
,
theano
.
Out
(
theano
.
sandbox
.
cuda
.
basic_ops
.
gpu_from_host
(
n
),
theano
.
sandbox
.
cuda
.
basic_ops
.
gpu_from_host
(
n
),
...
@@ -493,7 +503,7 @@ def test_normal0():
...
@@ -493,7 +503,7 @@ def test_normal0():
print
'random?[:10]
\n
'
,
gpu_out
[
0
,
0
:
10
]
print
'random?[:10]
\n
'
,
gpu_out
[
0
,
0
:
10
]
print
'----'
print
'----'
sys
.
stdout
.
flush
()
sys
.
stdout
.
flush
()
basictest
(
f
,
steps
,
const_size
,
target_avg
=
-
5.0
,
target_std
=
2.0
,
prefix
=
'gpu mrg '
,
allow_01
=
True
,
inputs
=
input
,
mean_rtol
=
rtol
)
basictest
(
f
,
steps
,
const_size
,
target_avg
=
avg
,
target_std
=
std
,
prefix
=
'gpu mrg '
,
allow_01
=
True
,
inputs
=
input
,
mean_rtol
=
rtol
)
# Need to allow some rounding error as their is float
# Need to allow some rounding error as their is float
# computation that are done on the gpu vs cpu
# computation that are done on the gpu vs cpu
assert
numpy
.
allclose
(
out
,
gpu_out
,
rtol
=
5e-6
,
atol
=
5e-6
)
assert
numpy
.
allclose
(
out
,
gpu_out
,
rtol
=
5e-6
,
atol
=
5e-6
)
...
@@ -503,10 +513,10 @@ def test_normal0():
...
@@ -503,10 +513,10 @@ def test_normal0():
print
'ON CPU w NUMPY:'
print
'ON CPU w NUMPY:'
RR
=
theano
.
tensor
.
shared_randomstreams
.
RandomStreams
(
234
)
RR
=
theano
.
tensor
.
shared_randomstreams
.
RandomStreams
(
234
)
nn
=
RR
.
normal
(
size
=
size
,
avg
=
-
5.0
,
std
=
2.0
)
nn
=
RR
.
normal
(
size
=
size
,
avg
=
avg
,
std
=
std
)
ff
=
theano
.
function
(
var_input
,
nn
)
ff
=
theano
.
function
(
var_input
,
nn
)
basictest
(
ff
,
steps
,
const_size
,
target_avg
=
-
5.0
,
target_std
=
2.0
,
prefix
=
'numpy '
,
allow_01
=
True
,
inputs
=
input
,
mean_rtol
=
rtol
)
basictest
(
ff
,
steps
,
const_size
,
target_avg
=
avg
,
target_std
=
std
,
prefix
=
'numpy '
,
allow_01
=
True
,
inputs
=
input
,
mean_rtol
=
rtol
)
def
basic_multinomialtest
(
f
,
steps
,
sample_size
,
target_pvals
,
prefix
=
""
,
mean_rtol
=
0.04
):
def
basic_multinomialtest
(
f
,
steps
,
sample_size
,
target_pvals
,
prefix
=
""
,
mean_rtol
=
0.04
):
...
...
theano/tensor/basic.py
浏览文件 @
6b16e20c
...
@@ -4676,7 +4676,8 @@ outer = Outer()
...
@@ -4676,7 +4676,8 @@ outer = Outer()
# Gradient
# Gradient
#########################
#########################
def
grad
(
cost
,
wrt
,
g_cost
=
None
,
consider_constant
=
[],
warn_type
=
False
):
def
grad
(
cost
,
wrt
,
g_cost
=
None
,
consider_constant
=
[],
warn_type
=
False
,
assume_continuously_differentiable
=
False
):
"""
"""
:type cost: Scalar (0-dimensional) `Variable`
:type cost: Scalar (0-dimensional) `Variable`
:type wrt: `Variable` or list of `Variable`s.
:type wrt: `Variable` or list of `Variable`s.
...
@@ -4688,6 +4689,14 @@ def grad(cost, wrt, g_cost=None, consider_constant=[], warn_type=False):
...
@@ -4688,6 +4689,14 @@ def grad(cost, wrt, g_cost=None, consider_constant=[], warn_type=False):
:param warn_type: a value of True will cause warnings to be logged for any Op that emits a
:param warn_type: a value of True will cause warnings to be logged for any Op that emits a
gradient that does not match its input type.
gradient that does not match its input type.
:param assume_continuously_differentiable : flag that says if grad is strict about what it returns.
If set to false it will raise an exception for any argument in
``wrt`` for which there is no gradient either because some op does
not know how to compute the gradient with respect to that argument
or the argument is not part of the computational graph. If the flag
is set to true, the ``grad`` method returns zeros like the argument
( i.e. it makes the assumption that the gradient should be 0).
:rtype: `Variable` or list of `Variable`s (depending upon `wrt`)
:rtype: `Variable` or list of `Variable`s (depending upon `wrt`)
:return: symbolic expression of gradient of `cost` with respect to `wrt`.
:return: symbolic expression of gradient of `cost` with respect to `wrt`.
...
@@ -4729,12 +4738,13 @@ def grad(cost, wrt, g_cost=None, consider_constant=[], warn_type=False):
...
@@ -4729,12 +4738,13 @@ def grad(cost, wrt, g_cost=None, consider_constant=[], warn_type=False):
wrt
=
[
wrt
]
wrt
=
[
wrt
]
ret
=
[]
ret
=
[]
for
p
in
wrt
:
for
p
in
wrt
:
if
p
not
in
gmap
:
if
p
not
in
gmap
and
not
assume_continuously_differentiable
:
raise
ValueError
((
"grad method was asked to compute the graident "
raise
ValueError
((
"grad method was asked to compute the graident "
"with respect to a variable that is not part of "
"with respect to a variable that is not part of "
"the computational graph of the cost"
),
p
)
"the computational graph of the cost or is used "
"by a non-differentiable operator "
),
p
)
else
:
else
:
ret
.
append
(
gmap
[
p
]
)
ret
.
append
(
gmap
.
get
(
p
,
zeros_like
(
p
))
)
if
len
(
ret
)
==
1
:
if
len
(
ret
)
==
1
:
return
ret
[
0
]
return
ret
[
0
]
...
@@ -5008,7 +5018,8 @@ def verify_grad(fun, pt, n_tests=2, rng=None, eps=None, abs_tol=None, rel_tol=No
...
@@ -5008,7 +5018,8 @@ def verify_grad(fun, pt, n_tests=2, rng=None, eps=None, abs_tol=None, rel_tol=No
if
cast_to_output_type
:
if
cast_to_output_type
:
g_cost
=
cast
(
g_cost
,
o_output
.
dtype
)
g_cost
=
cast
(
g_cost
,
o_output
.
dtype
)
symbolic_grad
=
grad
(
cost
,
tensor_pt
,
g_cost
)
symbolic_grad
=
grad
(
cost
,
tensor_pt
,
g_cost
,
assume_continuously_differentiable
=
True
)
#if o_output.dtype in ['float32','float64']:
#if o_output.dtype in ['float32','float64']:
# assert all([x.dtype == o_output.dtype for x in symbolic_grad]),("Expected grad of type %s, got %s "%( symbolic_grad.dtype, o_output.dtyp))
# assert all([x.dtype == o_output.dtype for x in symbolic_grad]),("Expected grad of type %s, got %s "%( symbolic_grad.dtype, o_output.dtyp))
...
...
theano/tensor/tests/test_basic.py
浏览文件 @
6b16e20c
...
@@ -3234,7 +3234,8 @@ class test_grad(unittest.TestCase):
...
@@ -3234,7 +3234,8 @@ class test_grad(unittest.TestCase):
"""grad: Test returning a single zero value from grad"""
"""grad: Test returning a single zero value from grad"""
o
=
test_grad
.
O
()
o
=
test_grad
.
O
()
a1
=
o
.
make_node
()
a1
=
o
.
make_node
()
g
=
grad
(
a1
.
outputs
[
0
],
a1
.
outputs
[
1
])
g
=
grad
(
a1
.
outputs
[
0
],
a1
.
outputs
[
1
],
assume_continuously_differentiable
=
True
)
self
.
assertTrue
(
g
.
owner
.
op
==
fill
)
self
.
assertTrue
(
g
.
owner
.
op
==
fill
)
self
.
assertTrue
(
g
.
owner
.
inputs
[
1
]
.
data
==
0
)
self
.
assertTrue
(
g
.
owner
.
inputs
[
1
]
.
data
==
0
)
try
:
try
:
...
@@ -3247,7 +3248,8 @@ class test_grad(unittest.TestCase):
...
@@ -3247,7 +3248,8 @@ class test_grad(unittest.TestCase):
"""grad: Test returning some zero value from grad"""
"""grad: Test returning some zero value from grad"""
o
=
test_grad
.
O
()
o
=
test_grad
.
O
()
a1
=
o
.
make_node
()
a1
=
o
.
make_node
()
g0
,
g1
,
g2
=
grad
(
a1
.
outputs
[
0
],
a1
.
inputs
+
[
scalar
(
'z'
)])
g0
,
g1
,
g2
=
grad
(
a1
.
outputs
[
0
],
a1
.
inputs
+
[
scalar
(
'z'
)],
assume_continuously_differentiable
=
True
)
self
.
assertTrue
(
o
.
gval0
is
g0
)
self
.
assertTrue
(
o
.
gval0
is
g0
)
self
.
assertTrue
(
o
.
gval1
is
g1
)
self
.
assertTrue
(
o
.
gval1
is
g1
)
self
.
assertTrue
(
g2
.
owner
.
op
==
fill
)
self
.
assertTrue
(
g2
.
owner
.
op
==
fill
)
...
@@ -3256,7 +3258,8 @@ class test_grad(unittest.TestCase):
...
@@ -3256,7 +3258,8 @@ class test_grad(unittest.TestCase):
def
test_zero_gradient_shape
(
self
):
def
test_zero_gradient_shape
(
self
):
"""Ensure that a zero gradient has the proper shape."""
"""Ensure that a zero gradient has the proper shape."""
x
=
dmatrix
()
x
=
dmatrix
()
f
=
theano
.
function
([
x
],
grad
(
dscalar
(),
x
))
f
=
theano
.
function
([
x
],
grad
(
dscalar
(),
x
,
assume_continuously_differentiable
=
True
))
a
=
numpy
.
ones
((
3
,
7
))
a
=
numpy
.
ones
((
3
,
7
))
self
.
assertTrue
((
f
(
a
)
==
0
)
.
all
())
# Zero gradient.
self
.
assertTrue
((
f
(
a
)
==
0
)
.
all
())
# Zero gradient.
self
.
assertTrue
(
a
.
shape
==
f
(
a
)
.
shape
)
# With proper shape.
self
.
assertTrue
(
a
.
shape
==
f
(
a
)
.
shape
)
# With proper shape.
...
...
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