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pytensor
Commits
0976892d
提交
0976892d
authored
4月 11, 2008
作者:
turian@grenat.iro.umontreal.ca
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差异文件
Maybe sparse.py now works?
上级
2bbaeb62
隐藏空白字符变更
内嵌
并排
正在显示
4 个修改的文件
包含
165 行增加
和
126 行删除
+165
-126
_test_sparse.py
_test_sparse.py
+81
-83
op.py
gof/op.py
+7
-3
sparse.py
sparse.py
+74
-40
tensor.py
tensor.py
+3
-0
没有找到文件。
_test_sparse.py
浏览文件 @
0976892d
...
...
@@ -80,88 +80,86 @@ class _testCase_dot(unittest.TestCase):
def
setUp
(
self
):
numpy
.
random
.
seed
(
44
)
def
test
(
self
):
"""Bring back the tests for sparse dot"""
raise
NotImplementedError
()
if
0
:
def
test_basic0
(
self
):
for
mtype
in
[
sparse
.
csc_matrix
,
sparse
.
csr_matrix
]:
x
=
assparse
(
mtype
(
sparse
.
speye
(
5
,
3
)))
y
=
astensor
(
numpy
.
random
.
rand
(
3
,
2
))
z
=
dot
(
x
,
y
)
self
.
failUnless
(
z
.
data
.
shape
==
(
5
,
2
))
self
.
failUnless
(
type
(
z
.
data
)
is
mtype
)
def
test_basic1
(
self
):
"""dot: sparse left"""
a
=
numpy
.
asarray
([[
1
,
0
,
3
,
0
,
5
],
[
0
,
0
,
-
2
,
0
,
0
]],
dtype
=
'float64'
)
b
=
numpy
.
random
.
rand
(
5
,
3
)
for
mtype
in
[
sparse
.
csr_matrix
,
sparse
.
csc_matrix
,
sparse
.
dok_matrix
,
sparse
.
lil_matrix
]:
#, sparse.coo_matrix]:
#print type(a), mtype
m
=
mtype
(
a
)
ab
=
m
.
dot
(
b
)
try
:
z
=
dot
(
SparseR
(
m
),
core
.
Result
(
data
=
b
))
self
.
failUnless
(
z
.
data
.
shape
==
ab
.
shape
)
self
.
failUnless
(
type
(
z
.
data
)
==
type
(
ab
))
except
Exception
,
e
:
print
'cccc'
,
mtype
,
e
,
str
(
e
)
raise
def
test_basic2
(
self
):
"""dot: sparse right"""
a
=
numpy
.
random
.
rand
(
2
,
5
)
b
=
numpy
.
asarray
([[
1
,
0
,
3
,
0
,
5
],
[
0
,
0
,
-
2
,
0
,
0
]],
dtype
=
'float64'
)
.
transpose
()
for
mtype
in
[
sparse
.
csr_matrix
,
sparse
.
csc_matrix
,
sparse
.
dok_matrix
,
sparse
.
lil_matrix
]:
#, sparse.coo_matrix]:
m
=
mtype
(
b
)
ab
=
m
.
transpose
()
.
dot
(
a
.
transpose
())
.
transpose
()
z
=
dot
(
core
.
Result
(
data
=
a
),
SparseR
(
mtype
(
b
)))
self
.
failUnless
(
z
.
data
.
shape
==
ab
.
shape
)
self
.
failUnless
(
type
(
z
.
data
)
==
type
(
ab
))
def
test_graph_bprop0
(
self
):
x
=
core
.
wrap
(
numpy
.
random
.
rand
(
10
,
2
))
w
=
SparseR
(
sparse
.
csr_matrix
(
numpy
.
asarray
([[
1
,
0
,
3
,
0
,
5
],
[
0
,
0
,
-
2
,
0
,
0
]],
dtype
=
'float64'
)))
for
epoch
in
xrange
(
50
):
xw
=
sparse2dense
(
dot
(
x
,
w
))
y
=
sparse2dense
(
dot
(
xw
,
transpose
(
w
)))
loss
=
core
.
sum
(
core
.
sqr
(
x
-
y
))
gy
=
y
-
x
g
=
grad
.
Grad
({
y
:
gy
})
g
.
bprop
()
lr
=
0.002
g
(
w
)
.
data
[
1
,
0
]
=
0
g
(
w
)
.
data
[
1
,
4
]
=
0
w
.
data
=
-
lr
*
g
(
w
)
.
data
+
w
.
data
self
.
failUnless
(
'3.08560636025'
==
str
(
loss
.
data
))
def
test_graph_bprop1
(
self
):
x
=
core
.
wrap
(
numpy
.
random
.
rand
(
10
,
2
))
w
=
SparseR
(
sparse
.
csr_matrix
(
numpy
.
asarray
([[
1
,
0
,
3
,
0
,
5
],
[
0
,
0
,
-
2
,
0
,
0
]],
dtype
=
'float64'
)))
for
epoch
in
xrange
(
50
):
xw
=
sparse2dense
(
dot
(
x
,
w
))
y
=
sparse2dense
(
dot
(
xw
,
transpose
(
w
)))
loss
=
core
.
sum
(
core
.
sqr
(
x
-
y
))
g
=
grad
.
grad
(
loss
)
lr
=
0.001
g
(
w
)
.
data
[
1
,
0
]
=
0
g
(
w
)
.
data
[
1
,
4
]
=
0
w
.
data
=
-
lr
*
g
(
w
)
.
data
+
w
.
data
self
.
failUnless
(
'3.08560636025'
==
str
(
loss
.
data
))
def
test_basic0
(
self
):
for
mtype
in
[
sparse
.
csc_matrix
,
sparse
.
csr_matrix
]:
x
=
assparse
(
mtype
(
sparse
.
speye
(
5
,
3
)))
y
=
tensor
.
astensor
(
numpy
.
random
.
rand
(
3
,
2
))
zop
=
dot
(
x
,
y
)
z
=
compile
.
eval_outputs
([
zop
])
self
.
failUnless
(
z
.
shape
==
(
5
,
2
))
self
.
failUnless
(
type
(
z
)
is
mtype
)
# def test_basic1(self):
# """dot: sparse left"""
# a = numpy.asarray([[1, 0, 3, 0, 5], [0, 0, -2, 0, 0]],
# dtype='float64')
# b = numpy.random.rand(5, 3)
# for mtype in [sparse.csr_matrix, sparse.csc_matrix, sparse.dok_matrix,
# sparse.lil_matrix]:#, sparse.coo_matrix]:
# #print type(a), mtype
# m = mtype(a)
# ab = m.dot(b)
# try:
# z = dot(assparse(m), gof.Result(data=b))
# self.failUnless(z.data.shape == ab.shape)
# self.failUnless(type(z.data) == type(ab))
# except Exception, e:
# print 'cccc', mtype, e, str(e)
# raise
#
# def test_basic2(self):
# """dot: sparse right"""
# a = numpy.random.rand(2, 5)
# b = numpy.asarray([[1, 0, 3, 0, 5], [0, 0, -2, 0, 0]],
# dtype='float64').transpose()
#
# for mtype in [sparse.csr_matrix, sparse.csc_matrix, sparse.dok_matrix,
# sparse.lil_matrix]:#, sparse.coo_matrix]:
# m = mtype(b)
# ab = m.transpose().dot(a.transpose()).transpose()
# z = dot(gof.Result(data=a),assparse(mtype(b)))
# self.failUnless(z.data.shape == ab.shape)
# self.failUnless(type(z.data) == type(ab))
#
# def test_graph_bprop0(self):
# x = tensor.astensor(numpy.random.rand(10,2))
# w = assparse(sparse.csr_matrix(
# numpy.asarray([[1, 0, 3, 0, 5], [0, 0, -2, 0,0]],dtype='float64')
# ))
#
# for epoch in xrange(50):
# xw = dense_from_sparse(dot(x, w))
# y = dense_from_sparse(dot(xw, transpose(w)))
# loss = core.sum(core.sqr(x-y))
# gy = y-x
# g = grad.Grad({y:gy})
# g.bprop()
# lr = 0.002
# g(w).data[1,0] = 0
# g(w).data[1,4] = 0
# w.data = -lr * g(w).data + w.data
#
# self.failUnless('3.08560636025' == str(loss.data))
#
# def test_graph_bprop1(self):
# x = tensor.astensor(numpy.random.rand(10,2))
# w = assparse(sparse.csr_matrix(
# numpy.asarray([[1, 0, 3, 0, 5], [0, 0, -2, 0,0]],dtype='float64')
# ))
#
# for epoch in xrange(50):
# xw = dense_from_sparse(dot(x, w))
# y = dense_from_sparse(dot(xw, transpose(w)))
# loss = core.sum(core.sqr(x-y))
# g = grad.grad(loss)
# lr = 0.001
#
# g(w).data[1,0] = 0
# g(w).data[1,4] = 0
# w.data = -lr * g(w).data + w.data
#
# self.failUnless('3.08560636025' == str(loss.data))
if
__name__
==
'__main__'
:
unittest
.
main
()
gof/op.py
浏览文件 @
0976892d
...
...
@@ -131,15 +131,19 @@ class Op(object):
this L{Op}'s inputs.
To do a bottom-up copy of a graph, use clone_with_new_inputs.
@attention: If your L{Op} has additional options or a different
constructor you probably want to override this.
"""
return
self
.
__class__
(
*
self
.
inputs
)
def
clone_with_new_inputs
(
self
,
*
new_inputs
):
"""
Returns a clone of this L{Op} that takes different inputs. The
default behavior is to call the constructor on the new inputs,
but if your L{Op} has additional options or a different constructor
you might want to override this.
default behavior is to call the constructor on the new inputs.
@attention: If your L{Op} has additional options or a different
constructor you probably want to override this.
"""
return
self
.
__class__
(
*
new_inputs
)
...
...
sparse.py
浏览文件 @
0976892d
"""
Classes for handling sparse matrices.
To read about different sparse formats, see U{http://www-users.cs.umn.edu/~saad/software/SPARSKIT/paper.ps}.
@todo Automatic methods for determining best sparse format?
"""
import
copy
#for __copy__
import
numpy
from
scipy
import
sparse
...
...
@@ -14,10 +22,14 @@ def assparse(sp, **kwargs):
@param sp: A sparse matrix. assparse reads dtype and format properties
out of this sparse matrix.
@return: SparseR version of sp.
@todo Verify that sp is sufficiently sparse, and raise a warning if it is not
"""
if
isinstance
(
sp
,
SparseR
):
return
sp
else
:
# @todo Verify that sp is sufficiently sparse, and raise a
# warning if it is not
rval
=
SparseR
(
str
(
sp
.
dtype
),
sp
.
format
,
**
kwargs
)
rval
.
data
=
sp
return
rval
...
...
@@ -156,43 +168,65 @@ class AddSS(gof.op.Op): #add two sparse matrices
return
gz
,
gz
add_s_s
=
gof
.
op
.
constructor
(
AddSS
)
#class Dot(gof.op.Op):
# def __init__(self, x, y):
# self.inputs = [x, y] # Need to convert? e.g. _as_tensor
# # broadcastable
# def perform:
# #return numpy.dot(x, y)
# def grad:
#
# """
# Attributes:
# grad_preserves_dense - an array of boolean flags (described below)
#
#
# grad_preserves_dense controls whether gradients with respect to inputs are
# converted to dense matrices when the corresponding inputs are not in a
# SparseR wrapper. This can be a good idea when dot is in the middle of a
# larger graph, because the types of gx and gy will match those of x and y.
# This conversion might be annoying if the gradients are graph outputs though,
# hence this mask.
# """
# def __init__(self, *args, **kwargs):
# gof.op.Op.__init__(self, **kwargs)
# self.grad_preserves_dense = [True, True]
# def gen_outputs(self): return [SparseR()]
# def impl(x,y):
# if hasattr(x, 'getnnz'):
# # if x is sparse, then do this.
# return x.dot(y)
# else:
# # if x is dense (and y is sparse), we do this
# return y.transpose().dot(x.transpose()).transpose()
#
# def grad(self, x, y, gz):
# rval = [dot(gz, y.T), dot(x.T, gz)]
# for i in 0,1:
# if not isinstance(self.inputs[i], SparseR):
# #assume it is a dense matrix
# if self.grad_preserves_dense[i]:
# rval[i] = dense_from_sparse(rval[i])
# return rval
class
Dot
(
gof
.
op
.
Op
):
"""
Attributes:
grad_preserves_dense - a boolean flags [default: True].
grad_preserves_dense controls whether gradients with respect to inputs
are converted to dense matrices when the corresponding input y is
dense (not in a L{SparseR} wrapper). This is generally a good idea
when L{Dot} is in the middle of a larger graph, because the types
of gy will match that of y. This conversion might be inefficient if
the gradients are graph outputs though, hence this mask.
"""
def
__init__
(
self
,
x
,
y
,
grad_preserves_dense
=
True
):
"""
Because of trickiness of implementing, we assume that the left argument x is SparseR (not dense)
"""
if
x
.
dtype
!=
y
.
dtype
:
raise
NotImplementedError
()
# These are the conversions performed by scipy.sparse.dot
if
x
.
format
==
"csc"
or
x
.
format
==
"coo"
:
myformat
=
"csc"
elif
x
.
format
==
"csr"
:
myformat
=
"csr"
else
:
raise
NotImplementedError
()
self
.
inputs
=
[
x
,
y
]
# Need to convert? e.g. assparse
self
.
outputs
=
[
SparseR
(
x
.
dtype
,
myformat
)]
self
.
grad_preserves_dense
=
grad_preserves_dense
def
perform
(
self
):
"""
@todo Verify that output is sufficiently sparse, and raise a warning if it is not
@todo Also determine that we are storing the output in the best storage format?
"""
self
.
outputs
[
0
]
.
data
=
self
.
inputs
[
0
]
.
data
.
dot
(
self
.
inputs
[
1
]
.
data
)
def
grad
(
self
,
(
x
,
y
),
(
gz
,)):
rval
=
[
dot
(
gz
,
y
.
T
),
dot
(
x
.
T
,
gz
)]
assert
isinstance
(
self
.
inputs
[
0
],
SparseR
)
if
not
isinstance
(
self
.
inputs
[
1
],
SparseR
):
if
self
.
grad_preserves_dense
:
rval
[
1
]
=
dense_from_sparse
(
rval
[
1
])
return
rval
def
__copy__
(
self
):
return
self
.
__class__
(
self
.
inputs
[
0
],
self
.
inputs
[
1
],
self
.
grad_preserves_dense
)
def
clone_with_new_inputs
(
self
,
*
new_inputs
):
return
self
.
__class__
(
new_inputs
[
0
],
new_inputs
[
1
],
self
.
grad_preserves_dense
)
def
dot
(
x
,
y
,
grad_preserves_dense
=
True
):
"""
@todo Maybe the triple-transposition formulation (when x is dense)
is slow. See if there is a direct way to do this.
"""
if
hasattr
(
x
,
'getnnz'
):
x
=
assparse
(
x
)
if
hasattr
(
y
,
'getnnz'
):
y
=
assparse
(
y
)
x_is_sparse
=
isinstance
(
x
,
SparseR
)
y_is_sparse
=
isinstance
(
y
,
SparseR
)
if
not
x_is_sparse
and
not
y_is_sparse
:
raise
TypeError
()
if
x_is_sparse
:
return
Dot
(
x
,
y
,
grad_preserves_dense
)
.
outputs
[
0
]
else
:
return
transpose
(
Dot
(
transpose
(
y
),
transpose
(
x
),
grad_preserves_dense
)
.
outputs
[
0
])
tensor.py
浏览文件 @
0976892d
...
...
@@ -351,6 +351,9 @@ class Dot(_Op):
def
impl
(
self
,
x
,
y
):
return
numpy
.
dot
(
x
,
y
)
def
grad
(
self
,
(
x
,
y
),
gz
):
"""
@todo Shouldn't it be (gz,) ? -jpt
"""
return
dot
(
gz
,
y
.
T
),
dot
(
x
.
T
,
gz
)
if
0
:
def
c_support_code
(
self
):
...
...
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