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testgroup
pytensor
Commits
d96682ce
提交
d96682ce
authored
2月 06, 2010
作者:
Pascal Lamblin
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
Test for tensor parameters to random functions in randomstreams.
上级
767a7312
隐藏空白字符变更
内嵌
并排
正在显示
1 个修改的文件
包含
305 行增加
和
0 行删除
+305
-0
test_randomstreams.py
theano/tensor/tests/test_randomstreams.py
+305
-0
没有找到文件。
theano/tensor/tests/test_randomstreams.py
浏览文件 @
d96682ce
...
...
@@ -344,6 +344,311 @@ class T_RandomStreams(unittest.TestCase):
self
.
assertRaises
(
TypeError
,
vmade
.
f
,
in_mval
)
self
.
assertRaises
(
TypeError
,
mmade
.
f
,
in_vval
)
def
test_symbolic_shape
(
self
):
m
=
Module
()
m
.
random
=
RandomStreams
(
utt
.
fetch_seed
())
shape
=
tensor
.
lvector
()
out
=
m
.
random
.
uniform
(
size
=
shape
,
ndim
=
2
)
m
.
f
=
Method
([
shape
],
out
)
made
=
m
.
make
()
made
.
random
.
initialize
()
assert
made
.
f
([
2
,
3
])
.
shape
==
(
2
,
3
)
assert
made
.
f
([
4
,
8
])
.
shape
==
(
4
,
8
)
self
.
assertRaises
(
ValueError
,
made
.
f
,
[
4
])
self
.
assertRaises
(
ValueError
,
made
.
f
,
[
4
,
3
,
4
,
5
])
def
test_default_shape
(
self
):
m
=
Module
()
m
.
random
=
RandomStreams
(
utt
.
fetch_seed
())
m
.
f
=
Method
([],
m
.
random
.
uniform
())
m
.
g
=
Method
([],
m
.
random
.
multinomial
())
made
=
m
.
make
()
made
.
random
.
initialize
()
rng_seed
=
numpy
.
random
.
RandomState
(
utt
.
fetch_seed
())
.
randint
(
2
**
30
)
numpy_rng
=
numpy
.
random
.
RandomState
(
int
(
rng_seed
))
val0
=
made
.
f
()
val1
=
made
.
f
()
numpy_val0
=
numpy_rng
.
uniform
()
numpy_val1
=
numpy_rng
.
uniform
()
assert
numpy
.
all
(
val0
==
numpy_val0
)
assert
numpy
.
all
(
val1
==
numpy_val1
)
val2
=
made
.
g
()
numpy_val2
=
numpy_rng
.
multinomial
(
n
=
1
,
pvals
=
[
.
5
,
.
5
])
assert
numpy
.
all
(
val2
==
numpy_val2
)
def
test_vector_arguments
(
self
):
m
=
Module
()
m
.
random
=
RandomStreams
(
utt
.
fetch_seed
())
low
=
tensor
.
vector
()
out
=
m
.
random
.
uniform
(
low
=
low
,
high
=
1
)
assert
out
.
ndim
==
1
m
.
f
=
Method
([
low
],
out
)
high
=
tensor
.
vector
()
outb
=
m
.
random
.
uniform
(
low
=
low
,
high
=
high
)
assert
outb
.
ndim
==
1
m
.
fb
=
Method
([
low
,
high
],
outb
)
size
=
tensor
.
lvector
()
outc
=
m
.
random
.
uniform
(
low
=
low
,
high
=
high
,
size
=
size
,
ndim
=
1
)
m
.
fc
=
Method
([
low
,
high
,
size
],
outc
)
made
=
m
.
make
()
made
.
random
.
initialize
()
seed_gen
=
numpy
.
random
.
RandomState
(
utt
.
fetch_seed
())
numpy_rng
=
numpy
.
random
.
RandomState
(
int
(
seed_gen
.
randint
(
2
**
30
)))
val0
=
made
.
f
([
-
5
,
.
5
,
0
,
1
])
val1
=
made
.
f
([
.
9
])
numpy_val0
=
numpy_rng
.
uniform
(
low
=
[
-
5
,
.
5
,
0
,
1
],
high
=
1
)
numpy_val1
=
numpy_rng
.
uniform
(
low
=
[
.
9
],
high
=
1
)
assert
numpy
.
all
(
val0
==
numpy_val0
)
assert
numpy
.
all
(
val1
==
numpy_val1
)
numpy_rng
=
numpy
.
random
.
RandomState
(
int
(
seed_gen
.
randint
(
2
**
30
)))
val0b
=
made
.
fb
([
-
4.
,
-
2
],
[
-
1
,
0
])
val1b
=
made
.
fb
([
-
4.
],
[
-
1
])
numpy_val0b
=
numpy_rng
.
uniform
(
low
=
[
-
4.
,
-
2
],
high
=
[
-
1
,
0
])
numpy_val1b
=
numpy_rng
.
uniform
(
low
=
[
-
4.
],
high
=
[
-
1
])
assert
numpy
.
all
(
val0b
==
numpy_val0b
)
assert
numpy
.
all
(
val1b
==
numpy_val1b
)
self
.
assertRaises
(
ValueError
,
made
.
fb
,
[
-
4.
,
-
2
],
[
-
1
,
0
,
1
])
#TODO: do we want that?
#self.assertRaises(ValueError, made.fb, [-4., -2], [-1])
numpy_rng
=
numpy
.
random
.
RandomState
(
int
(
seed_gen
.
randint
(
2
**
30
)))
val0c
=
made
.
fc
([
-
4.
,
-
2
],
[
-
1
,
0
],
[
2
])
val1c
=
made
.
fc
([
-
4.
],
[
-
1
],
[
1
])
numpy_val0c
=
numpy_rng
.
uniform
(
low
=
[
-
4.
,
-
2
],
high
=
[
-
1
,
0
])
numpy_val1c
=
numpy_rng
.
uniform
(
low
=
[
-
4.
],
high
=
[
-
1
])
assert
numpy
.
all
(
val0c
==
numpy_val0c
)
assert
numpy
.
all
(
val1c
==
numpy_val1c
)
self
.
assertRaises
(
ValueError
,
made
.
fc
,
[
-
4.
,
-
2
],
[
-
1
,
0
],
[
1
])
self
.
assertRaises
(
ValueError
,
made
.
fc
,
[
-
4.
,
-
2
],
[
-
1
,
0
],
[
1
,
2
])
self
.
assertRaises
(
ValueError
,
made
.
fc
,
[
-
4.
,
-
2
],
[
-
1
,
0
],
[
2
,
1
])
self
.
assertRaises
(
ValueError
,
made
.
fc
,
[
-
4.
,
-
2
],
[
-
1
],
[
1
])
#TODO: do we want that?
#self.assertRaises(ValueError, made.fc, [-4., -2], [-1], [2])
def
test_broadcast_arguments
(
self
):
m
=
Module
()
m
.
random
=
RandomStreams
(
utt
.
fetch_seed
())
low
=
tensor
.
vector
()
high
=
tensor
.
col
()
out
=
m
.
random
.
uniform
(
low
=
low
,
high
=
high
)
assert
out
.
ndim
==
2
m
.
f
=
Method
([
low
,
high
],
out
)
made
=
m
.
make
()
made
.
random
.
initialize
()
rng_seed
=
numpy
.
random
.
RandomState
(
utt
.
fetch_seed
())
.
randint
(
2
**
30
)
numpy_rng
=
numpy
.
random
.
RandomState
(
int
(
rng_seed
))
val0
=
made
.
f
([
-
5
,
.
5
,
0
,
1
],
[[
1.
]])
val1
=
made
.
f
([
.
9
],
[[
1.
],
[
1.1
],
[
1.5
]])
val2
=
made
.
f
([
-
5
,
.
5
,
0
,
1
],
[[
1.
],
[
1.1
],
[
1.5
]])
numpy_val0
=
numpy_rng
.
uniform
(
low
=
[
-
5
,
.
5
,
0
,
1
],
high
=
[
1.
])
numpy_val1
=
numpy_rng
.
uniform
(
low
=
[
.
9
],
high
=
[[
1.
],
[
1.1
],
[
1.5
]])
numpy_val2
=
numpy_rng
.
uniform
(
low
=
[
-
5
,
.
5
,
0
,
1
],
high
=
[[
1.
],
[
1.1
],
[
1.5
]])
assert
numpy
.
all
(
val0
==
numpy_val0
)
assert
numpy
.
all
(
val1
==
numpy_val1
)
assert
numpy
.
all
(
val2
==
numpy_val2
)
def
test_uniform_vector
(
self
):
m
=
Module
()
m
.
random
=
RandomStreams
(
utt
.
fetch_seed
())
low
=
tensor
.
vector
()
high
=
tensor
.
vector
()
out
=
m
.
random
.
uniform
(
low
=
low
,
high
=
high
)
assert
out
.
ndim
==
1
m
.
f
=
Method
([
low
,
high
],
out
)
# Specifying the size explicitly
m
.
g
=
Method
([
low
,
high
],
m
.
random
.
uniform
(
low
=
low
,
high
=
high
,
size
=
(
3
,)))
made
=
m
.
make
()
made
.
random
.
initialize
()
low_val
=
[
.
1
,
.
2
,
.
3
]
high_val
=
[
1.1
,
2.2
,
3.3
]
seed_gen
=
numpy
.
random
.
RandomState
(
utt
.
fetch_seed
())
numpy_rng
=
numpy
.
random
.
RandomState
(
int
(
seed_gen
.
randint
(
2
**
30
)))
# Arguments of size (3,)
val0
=
made
.
f
(
low_val
,
high_val
)
numpy_val0
=
numpy_rng
.
uniform
(
low
=
low_val
,
high
=
high_val
)
assert
numpy
.
all
(
val0
==
numpy_val0
)
# arguments of size (2,)
val1
=
made
.
f
(
low_val
[:
-
1
],
high_val
[:
-
1
])
numpy_val1
=
numpy_rng
.
uniform
(
low
=
low_val
[:
-
1
],
high
=
high_val
[:
-
1
])
assert
numpy
.
all
(
val1
==
numpy_val1
)
# Specifying the size explicitly
numpy_rng
=
numpy
.
random
.
RandomState
(
int
(
seed_gen
.
randint
(
2
**
30
)))
val2
=
made
.
g
(
low_val
,
high_val
)
numpy_val2
=
numpy_rng
.
uniform
(
low
=
low_val
,
high
=
high_val
,
size
=
(
3
,))
assert
numpy
.
all
(
val2
==
numpy_val2
)
self
.
assertRaises
(
ValueError
,
made
.
g
,
low_val
[:
-
1
],
high_val
[:
-
1
])
def
test_binomial_vector
(
self
):
m
=
Module
()
m
.
random
=
RandomStreams
(
utt
.
fetch_seed
())
n
=
tensor
.
lvector
()
prob
=
tensor
.
vector
()
out
=
m
.
random
.
binomial
(
n
=
n
,
prob
=
prob
)
assert
out
.
ndim
==
1
m
.
f
=
Method
([
n
,
prob
],
out
)
# Specifying the size explicitly
m
.
g
=
Method
([
n
,
prob
],
m
.
random
.
binomial
(
n
=
n
,
prob
=
prob
,
size
=
(
3
,)))
made
=
m
.
make
()
made
.
random
.
initialize
()
n_val
=
[
1
,
2
,
3
]
prob_val
=
[
.
1
,
.
2
,
.
3
]
seed_gen
=
numpy
.
random
.
RandomState
(
utt
.
fetch_seed
())
numpy_rng
=
numpy
.
random
.
RandomState
(
int
(
seed_gen
.
randint
(
2
**
30
)))
# Arguments of size (3,)
val0
=
made
.
f
(
n_val
,
prob_val
)
numpy_val0
=
numpy_rng
.
binomial
(
n
=
n_val
,
p
=
prob_val
)
assert
numpy
.
all
(
val0
==
numpy_val0
)
# arguments of size (2,)
val1
=
made
.
f
(
n_val
[:
-
1
],
prob_val
[:
-
1
])
numpy_val1
=
numpy_rng
.
binomial
(
n
=
n_val
[:
-
1
],
p
=
prob_val
[:
-
1
])
assert
numpy
.
all
(
val1
==
numpy_val1
)
# Specifying the size explicitly
numpy_rng
=
numpy
.
random
.
RandomState
(
int
(
seed_gen
.
randint
(
2
**
30
)))
val2
=
made
.
g
(
n_val
,
prob_val
)
numpy_val2
=
numpy_rng
.
binomial
(
n
=
n_val
,
p
=
prob_val
,
size
=
(
3
,))
assert
numpy
.
all
(
val2
==
numpy_val2
)
self
.
assertRaises
(
ValueError
,
made
.
g
,
n_val
[:
-
1
],
prob_val
[:
-
1
])
def
test_normal_vector
(
self
):
m
=
Module
()
m
.
random
=
RandomStreams
(
utt
.
fetch_seed
())
avg
=
tensor
.
vector
()
std
=
tensor
.
vector
()
out
=
m
.
random
.
normal
(
avg
=
avg
,
std
=
std
)
assert
out
.
ndim
==
1
m
.
f
=
Method
([
avg
,
std
],
out
)
# Specifying the size explicitly
m
.
g
=
Method
([
avg
,
std
],
m
.
random
.
normal
(
avg
=
avg
,
std
=
std
,
size
=
(
3
,)))
made
=
m
.
make
()
made
.
random
.
initialize
()
avg_val
=
[
1
,
2
,
3
]
std_val
=
[
.
1
,
.
2
,
.
3
]
seed_gen
=
numpy
.
random
.
RandomState
(
utt
.
fetch_seed
())
numpy_rng
=
numpy
.
random
.
RandomState
(
int
(
seed_gen
.
randint
(
2
**
30
)))
# Arguments of size (3,)
val0
=
made
.
f
(
avg_val
,
std_val
)
numpy_val0
=
numpy_rng
.
normal
(
loc
=
avg_val
,
scale
=
std_val
)
assert
numpy
.
all
(
val0
==
numpy_val0
)
# arguments of size (2,)
val1
=
made
.
f
(
avg_val
[:
-
1
],
std_val
[:
-
1
])
numpy_val1
=
numpy_rng
.
normal
(
loc
=
avg_val
[:
-
1
],
scale
=
std_val
[:
-
1
])
assert
numpy
.
all
(
val1
==
numpy_val1
)
# Specifying the size explicitly
numpy_rng
=
numpy
.
random
.
RandomState
(
int
(
seed_gen
.
randint
(
2
**
30
)))
val2
=
made
.
g
(
avg_val
,
std_val
)
numpy_val2
=
numpy_rng
.
normal
(
loc
=
avg_val
,
scale
=
std_val
,
size
=
(
3
,))
assert
numpy
.
all
(
val2
==
numpy_val2
)
self
.
assertRaises
(
ValueError
,
made
.
g
,
avg_val
[:
-
1
],
std_val
[:
-
1
])
def
test_random_integers_vector
(
self
):
m
=
Module
()
m
.
random
=
RandomStreams
(
utt
.
fetch_seed
())
low
=
tensor
.
lvector
()
high
=
tensor
.
lvector
()
out
=
m
.
random
.
random_integers
(
low
=
low
,
high
=
high
)
assert
out
.
ndim
==
1
m
.
f
=
Method
([
low
,
high
],
out
)
# Specifying the size explicitly
m
.
g
=
Method
([
low
,
high
],
m
.
random
.
random_integers
(
low
=
low
,
high
=
high
,
size
=
(
3
,)))
made
=
m
.
make
()
made
.
random
.
initialize
()
low_val
=
[
.
1
,
.
2
,
.
3
]
high_val
=
[
1.1
,
2.2
,
3.3
]
seed_gen
=
numpy
.
random
.
RandomState
(
utt
.
fetch_seed
())
numpy_rng
=
numpy
.
random
.
RandomState
(
int
(
seed_gen
.
randint
(
2
**
30
)))
# Arguments of size (3,)
val0
=
made
.
f
(
low_val
,
high_val
)
numpy_val0
=
numpy
.
asarray
([
numpy_rng
.
random_integers
(
low
=
lv
,
high
=
hv
)
for
lv
,
hv
in
zip
(
low_val
,
high_val
)])
assert
numpy
.
all
(
val0
==
numpy_val0
)
# arguments of size (2,)
val1
=
made
.
f
(
low_val
[:
-
1
],
high_val
[:
-
1
])
numpy_val1
=
numpy
.
asarray
([
numpy_rng
.
random_integers
(
low
=
lv
,
high
=
hv
)
for
lv
,
hv
in
zip
(
low_val
[:
-
1
],
high_val
[:
-
1
])])
assert
numpy
.
all
(
val1
==
numpy_val1
)
# Specifying the size explicitly
numpy_rng
=
numpy
.
random
.
RandomState
(
int
(
seed_gen
.
randint
(
2
**
30
)))
val2
=
made
.
g
(
low_val
,
high_val
)
numpy_val2
=
numpy
.
asarray
([
numpy_rng
.
random_integers
(
low
=
lv
,
high
=
hv
)
for
lv
,
hv
in
zip
(
low_val
,
high_val
)])
assert
numpy
.
all
(
val2
==
numpy_val2
)
self
.
assertRaises
(
ValueError
,
made
.
g
,
low_val
[:
-
1
],
high_val
[:
-
1
])
# Vectorized permutation don't make sense: the only parameter, n,
# controls one dimension of the returned tensor.
def
test_multinomial_vector
(
self
):
m
=
Module
()
m
.
random
=
RandomStreams
(
utt
.
fetch_seed
())
n
=
tensor
.
lvector
()
pvals
=
tensor
.
matrix
()
out
=
m
.
random
.
multinomial
(
n
=
n
,
pvals
=
pvals
)
assert
out
.
ndim
==
2
m
.
f
=
Method
([
n
,
pvals
],
out
)
# Specifying the size explicitly
m
.
g
=
Method
([
n
,
pvals
],
m
.
random
.
multinomial
(
n
=
n
,
pvals
=
pvals
,
size
=
(
3
,)))
made
=
m
.
make
()
made
.
random
.
initialize
()
n_val
=
[
1
,
2
,
3
]
pvals_val
=
[[
.
1
,
.
9
],
[
.
2
,
.
8
],
[
.
3
,
.
7
]]
seed_gen
=
numpy
.
random
.
RandomState
(
utt
.
fetch_seed
())
numpy_rng
=
numpy
.
random
.
RandomState
(
int
(
seed_gen
.
randint
(
2
**
30
)))
# Arguments of size (3,)
val0
=
made
.
f
(
n_val
,
pvals_val
)
numpy_val0
=
numpy
.
asarray
([
numpy_rng
.
multinomial
(
n
=
nv
,
pvals
=
pv
)
for
nv
,
pv
in
zip
(
n_val
,
pvals_val
)])
assert
numpy
.
all
(
val0
==
numpy_val0
)
# arguments of size (2,)
val1
=
made
.
f
(
n_val
[:
-
1
],
pvals_val
[:
-
1
])
numpy_val1
=
numpy
.
asarray
([
numpy_rng
.
multinomial
(
n
=
nv
,
pvals
=
pv
)
for
nv
,
pv
in
zip
(
n_val
[:
-
1
],
pvals_val
[:
-
1
])])
assert
numpy
.
all
(
val1
==
numpy_val1
)
# Specifying the size explicitly
numpy_rng
=
numpy
.
random
.
RandomState
(
int
(
seed_gen
.
randint
(
2
**
30
)))
val2
=
made
.
g
(
n_val
,
pvals_val
)
numpy_val2
=
numpy
.
asarray
([
numpy_rng
.
multinomial
(
n
=
nv
,
pvals
=
pv
)
for
nv
,
pv
in
zip
(
n_val
,
pvals_val
)])
assert
numpy
.
all
(
val2
==
numpy_val2
)
self
.
assertRaises
(
ValueError
,
made
.
g
,
n_val
[:
-
1
],
pvals_val
[:
-
1
])
if
__name__
==
'__main__'
:
from
theano.tests
import
main
...
...
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