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testgroup
pytensor
Commits
93e4a8d4
提交
93e4a8d4
authored
1月 13, 2009
作者:
james@X40
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
added structured dot to sparse
上级
c080a640
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
326 行增加
和
2 行删除
+326
-2
basic.py
theano/sparse/basic.py
+326
-2
没有找到文件。
theano/sparse/basic.py
浏览文件 @
93e4a8d4
...
...
@@ -182,6 +182,10 @@ class _sparse_py_operators:
def
__mul__
(
left
,
right
):
return
mul
(
left
,
right
)
def
__rmul__
(
left
,
right
):
return
mul
(
left
,
right
)
#extra pseudo-operator symbols
def
__dot__
(
left
,
right
):
return
structured_dot
(
left
,
right
)
def
__rdot__
(
right
,
left
):
return
structured_dot
(
left
,
right
)
class
SparseResult
(
gof
.
Result
,
_sparse_py_operators
):
dtype
=
property
(
lambda
self
:
self
.
type
.
dtype
)
...
...
@@ -556,7 +560,11 @@ def mul(x,y):
elif
y_is_sparse_result
and
not
x_is_sparse_result
:
return
mul_s_d
(
y
,
x
)
else
:
raise
NotImplementedError
()
class
Dot
(
gof
.
op
.
Op
):
###############
#
# TrueDot
#
class
TrueDot
(
gof
.
op
.
Op
):
"""
Attributes:
grad_preserves_dense - a boolean flags [default: True].
...
...
@@ -609,7 +617,7 @@ class Dot(gof.op.Op):
def
__hash__
(
self
):
return
hash
(
self
.
grad_preserves_dense
)
def
dot
(
x
,
y
,
grad_preserves_dense
=
True
):
def
true_
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.
...
...
@@ -626,3 +634,319 @@ def dot(x, y, grad_preserves_dense=True):
else
:
assert
y_is_sparse_result
return
transpose
(
Dot
(
grad_preserves_dense
)(
y
.
T
,
x
.
T
))
###############
#
# StructuredDot
#
class
StructuredDot
(
gof
.
Op
):
"""Structured Dot is like dot, except that only the gradient wrt non-zero elements of the
sparse matrix A are calculated and propagated.
The output is presumed to be a dense matrix, and is represented by a Tensor instance.
"""
def
make_node
(
self
,
a
,
b
):
assert
a
.
type
.
dtype
==
b
.
type
.
dtype
if
type
(
a
)
is
not
SparseResult
:
raise
TypeError
(
'First argument must be of type SparseResult'
);
return
gof
.
Apply
(
self
,
[
a
,
b
],
[
tensor
.
tensor
(
a
.
type
.
dtype
,
(
False
,
False
))])
def
perform
(
self
,
node
,
(
a
,
b
),
(
out
,)):
if
a
.
shape
[
1
]
!=
b
.
shape
[
0
]:
raise
ValueError
(
'shape mismatch in StructuredDot.perform'
,
(
a
.
shape
,
b
.
shape
))
if
b
.
shape
[
0
]
==
1
:
raise
NotImplemented
(
'ERROR: scipy.csc_matrix dot has bug with singleton dimensions'
)
result
=
a
.
dot
(
b
)
# sparse dot generates sparse matrix, unless output has single dimension
if
sparse
.
issparse
(
result
):
result
=
result
.
toarray
()
assert
isinstance
(
result
,
numpy
.
ndarray
)
# dot of an NxM sparse matrix, with a Mx1 dense matrix, returns vector not matrix
if
result
.
ndim
==
1
:
result
=
numpy
.
expand_dims
(
result
,
1
)
elif
result
.
ndim
!=
2
:
raise
Exception
(
'Output of structured dot should be a matrix (ndim=2)'
)
assert
result
.
ndim
==
2
## Commenting this out because result should be a numpy.ndarray since the assert above
## (JB 20090109)
#out[0] = numpy.asarray(result) #TODO: fix this really bad implementation
#
out
[
0
]
=
result
def
grad
(
self
,
(
a
,
b
),
(
g_out
,)):
#a is sparse, b is dense, g_out is dense
#ga = g_out x b.T
#gb = a.T x g_out
return
structured_dot_grad
(
a
,
b
,
g_out
),
structured_dot
(
a
.
T
,
g_out
)
_structured_dot
=
StructuredDot
()
def
structured_dot
(
x
,
y
):
"""
@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
=
as_sparse
(
x
)
if
hasattr
(
y
,
'getnnz'
):
y
=
as_sparse
(
y
)
x_is_sparse_result
=
_is_sparse_result
(
x
)
y_is_sparse_result
=
_is_sparse_result
(
y
)
if
not
x_is_sparse_result
and
not
y_is_sparse_result
:
raise
TypeError
(
'structured_dot requires at least one sparse argument'
)
if
x_is_sparse_result
:
return
_structured_dot
(
x
,
y
)
else
:
assert
y_is_sparse_result
return
_structured_dot
(
y
.
T
,
x
.
T
)
.
T
class
StructuredDotCSC
(
gof
.
Op
):
def
make_node
(
self
,
a_val
,
a_ind
,
a_ptr
,
a_nrows
,
b
):
assert
a_val
.
type
.
dtype
==
b
.
type
.
dtype
r
=
gof
.
Apply
(
self
,
[
a_val
,
a_ind
,
a_ptr
,
a_nrows
,
b
],
[
tensor
.
tensor
(
a_val
.
type
.
dtype
,
(
False
,
False
))])
return
r
def
perform
(
self
,
node
,
(
a_val
,
a_ind
,
a_ptr
,
a_nrows
,
b
),
(
out
,)):
a
=
sparse
.
csc_matrix
((
a_val
,
a_ind
,
a_ptr
),
(
a_nrows
,
b
.
shape
[
0
]),
copy
=
False
)
out
[
0
]
=
numpy
.
asarray
(
a
.
dot
(
b
)
.
todense
())
def
c_code
(
self
,
node
,
name
,
(
a_val
,
a_ind
,
a_ptr
,
a_nrows
,
b
),
(
z
,),
sub
):
return
"""
if (
%(a_val)
s->nd != 1) {PyErr_SetString(PyExc_NotImplementedError, "rank(a_val) != 1");
%(fail)
s;}
if (
%(a_ind)
s->nd != 1) {PyErr_SetString(PyExc_NotImplementedError, "rank(a_ind) != 1");
%(fail)
s;}
if (
%(a_ptr)
s->nd != 1) {PyErr_SetString(PyExc_NotImplementedError, "rank(a_ptr) != 1");
%(fail)
s;}
if (
%(a_nrows)
s->nd != 0) {PyErr_SetString(PyExc_NotImplementedError, "rank(nrows) != 0");
%(fail)
s;}
if (
%(b)
s->nd != 2) {PyErr_SetString(PyExc_NotImplementedError, "rank(b) != 2");
%(fail)
s;}
if (
%(a_val)
s->descr->type_num != PyArray_DOUBLE)
{PyErr_SetString(PyExc_NotImplementedError, "a_val dtype not NPY_DOUBLE");
%(fail)
s;}
if (
%(a_ind)
s->descr->type_num != PyArray_INT32) {
PyErr_SetString(PyExc_NotImplementedError, "a_ind dtype not INT32");
%(fail)
s;}
if (
%(a_ptr)
s->descr->type_num != PyArray_INT32)
{PyErr_SetString(PyExc_NotImplementedError, "a_ptr dtype not INT32");
%(fail)
s;}
if (
%(a_nrows)
s->descr->type_num != PyArray_INT32)
{PyErr_SetString(PyExc_NotImplementedError, "a_nrows dtype not INT32");
%(fail)
s;}
if (
%(b)
s->descr->type_num != PyArray_DOUBLE)
{PyErr_SetString(PyExc_NotImplementedError, "b's dtype not NPY_DOUBLE");
%(fail)
s;}
if (
%(a_val)
s->dimensions[0] !=
%(a_ind)
s->dimensions[0])
{PyErr_SetString(PyExc_NotImplementedError, "a_val and a_ind have different lengths");
%(fail)
s;}
if (
%(a_ptr)
s->dimensions[0] !=
%(b)
s->dimensions[0]+1)
{PyErr_SetString(PyExc_NotImplementedError, "a's number of columns doesn't match b's rows");
%(fail)
s;}
if ((!
%(z)
s)
|| (
%(z)
s->dimensions[0] != ((npy_int32 *)
%(a_nrows)
s->data)[0])
|| (
%(z)
s->dimensions[1] !=
%(b)
s->dimensions[1])
)
{
if (
%(z)
s) Py_DECREF(
%(z)
s);
npy_intp dims[] = {0,0};
dims[0] = ((npy_int32 *)
%(a_nrows)
s->data)[0];
dims[1] =
%(b)
s->dimensions[1];
%(z)
s = (PyArrayObject*) PyArray_SimpleNew(2, dims,
%(b)
s->descr->type_num);
}
{
//the output array has size M x N
npy_intp M =
%(z)
s->dimensions[0];
npy_intp N =
%(z)
s->dimensions[1];
npy_intp K =
%(b)
s->dimensions[0];
npy_intp Szm =
%(z)
s->strides[0] /
%(z)
s->descr->elsize;
npy_intp Szn =
%(z)
s->strides[1] /
%(z)
s->descr->elsize;
//npy_intp Sbm =
%(b)
s->strides[0] /
%(b)
s->descr->elsize;
npy_intp Sbn =
%(b)
s->strides[1] /
%(b)
s->descr->elsize;
npy_intp Sval =
%(a_val)
s->strides[0] /
%(a_val)
s->descr->elsize;
npy_intp Sind =
%(a_ind)
s->strides[0] /
%(a_ind)
s->descr->elsize;
npy_intp Sptr =
%(a_ptr)
s->strides[0] /
%(a_ptr)
s->descr->elsize;
npy_double * __restrict__ Dz = (npy_double*)
%(z)
s->data;
//const npy_double * __restrict__ Db = (npy_double*)
%(b)
s->data;
const npy_double * __restrict__ Dval = (npy_double*)
%(a_val)
s->data;
const npy_int32 * __restrict__ Dind = (npy_int32*)
%(a_ind)
s->data;
const npy_int32 * __restrict__ Dptr = (npy_int32*)
%(a_ptr)
s->data;
//npy_intp nnz =
%(a_ind)
s->dimensions[0];
//clear the output array
for (npy_intp m = 0; m < M; ++m)
{
for (npy_intp n = 0; n < N; ++n)
{
Dz[m*Szm + n*Szn] = 0.0;
}
}
//iterate over the sparse array, making the most of an entry wherever we find it.
//
// Normal matrix matrix multiply:
// for m
// for n
// for k
// z[m,n] += a[m,k] * b[k,n]
// Here instead:
// for k
// for m (sparse)
// for n
// z[m,n] += a[m,k] * b[k,n]
for (npy_int32 k = 0; k < K; ++k)
{
const npy_double * __restrict__ bk = (double *)(
%(b)
s->data +
%(b)
s->strides[0] * k);
for (npy_int32 m_idx = Dptr[k * Sptr]; m_idx < Dptr[(k+1) * Sptr]; ++m_idx)
{
npy_int32 m = Dind[m_idx * Sind];
const double Amk = Dval[m_idx * Sval];
npy_double * __restrict__ zm = (npy_double *)(
%(z)
s->data +
%(z)
s->strides[0] * m);
if (m >=
%(z)
s->dimensions[0])
{PyErr_SetString(PyExc_NotImplementedError, "illegal row index in a");
%(fail)
s;}
for(npy_int32 n = 0; n < N; ++n)
{
zm[n*Szn] += Amk * bk[n*Sbn];
}
}
}
}
"""
%
dict
(
locals
(),
**
sub
)
sd_csc
=
StructuredDotCSC
()
#TODO: register a specialization to replace StructuredDot -> StructuredDotCSC
class
StructuredDotGrad
(
gof
.
Op
):
def
make_node
(
self
,
a
,
b
,
g_ab
):
return
gof
.
Apply
(
self
,
[
a
,
b
,
g_ab
],
[
a
.
type
()])
def
perform
(
self
,
node
,
(
a
,
b
,
g_ab
),
(
out
,)):
g_a_data
=
a
.
data
.
copy
()
if
a
.
format
==
'csc'
:
for
j
in
xrange
(
len
(
a
.
indptr
)
-
1
):
ind0
=
a
.
indptr
[
j
]
ind1
=
a
.
indptr
[
j
+
1
]
for
i_idx
in
xrange
(
ind0
,
ind1
):
i
=
a
.
indices
[
i_idx
]
#v = a.data[i_idx]
#print (i, j, v)
g_a_data
[
i_idx
]
=
numpy
.
dot
(
g_ab
[
i
],
b
[
j
])
out
[
0
]
=
sparse
.
csc_matrix
((
g_a_data
,
a
.
indices
.
copy
(),
a
.
indptr
.
copy
()),
a
.
shape
,
copy
=
False
)
elif
a
.
format
==
'csr'
:
raise
NotImplementedError
()
else
:
raise
TypeError
()
_structured_dot_grad
=
StructuredDotGrad
()
class
StructureDotGradCSC
(
gof
.
Op
):
def
make_node
(
self
,
a_indices
,
a_indptr
,
b
,
g_ab
):
return
gof
.
Apply
(
self
,
[
a_indices
,
a_indptr
,
b
,
g_ab
],
[
tensor
.
tensor
(
b
.
dtype
,
(
False
,))])
def
perform
(
self
,
node
,
(
a_indices
,
a_indptr
,
b
,
g_ab
),
(
out
,)):
g_a_data
=
numpy
.
zeros
(
a_indices
.
shape
,
dtype
=
g_ab
.
dtype
)
for
j
in
xrange
(
len
(
a_indptr
)
-
1
):
ind0
=
a_indptr
[
j
]
ind1
=
a_indptr
[
j
+
1
]
for
i_idx
in
xrange
(
ind0
,
ind1
):
i
=
a_indices
[
i_idx
]
g_a_data
[
i_idx
]
=
numpy
.
dot
(
g_ab
[
i
],
b
[
j
])
out
[
0
]
=
g_a_data
def
c_code
(
self
,
node
,
name
,
(
_indices
,
_indptr
,
_d
,
_g
),
(
_zout
,
),
sub
):
return
"""
if (
%(_d)
s->nd != 2) {PyErr_SetString(PyExc_NotImplementedError, "rank(d) != 2");
%(fail)
s;}
if (
%(_g)
s->nd != 2) {PyErr_SetString(PyExc_NotImplementedError, "rank(g) != 2");
%(fail)
s;}
if (
%(_indices)
s->nd != 1) {PyErr_SetString(PyExc_NotImplementedError, "rank(indices) != 1");
%(fail)
s;}
if (
%(_indptr)
s->nd != 1) {PyErr_SetString(PyExc_NotImplementedError, "rank(indptr) != 1");
%(fail)
s;}
if(
%(_indices)
s->descr->type_num != PyArray_INT32) {
PyErr_SetString(PyExc_NotImplementedError, "C");
%(fail)
s;}
if(
%(_indptr)
s->descr->type_num != PyArray_INT32)
{PyErr_SetString(PyExc_NotImplementedError, "D");
%(fail)
s;}
if(
%(_d)
s->descr->type_num != PyArray_DOUBLE)
{PyErr_SetString(PyExc_NotImplementedError, "d's dtype not NPY_DOUBLE");
%(fail)
s;}
if(
%(_g)
s->descr->type_num != PyArray_DOUBLE)
{PyErr_SetString(PyExc_NotImplementedError, "g's dtype not NPY_DOUBLE");
%(fail)
s;}
if(
%(_d)
s->dimensions[1] !=
%(_g)
s->dimensions[1])
{PyErr_SetString(PyExc_NotImplementedError, "d and g have different numbers of columns");
%(fail)
s;}
if (!
%(_zout)
s)
{
%(_zout)
s = (PyArrayObject*) PyArray_SimpleNew(1,
%(_indices)
s->dimensions,
%(_g)
s->descr->type_num);
}
if (
%(_zout)
s->dimensions[0] !=
%(_indices)
s->dimensions[0])
{
PyErr_SetString(PyExc_NotImplementedError, "somehow _zout got the wrong size.. and I don't know how to resize it.");
%(fail)
s;
}
{ //makes it compile even though labels jump over variable definitions.
npy_intp nnz =
%(_indices)
s->dimensions[0];
npy_intp N =
%(_indptr)
s->dimensions[0]-1; //TODO: error checking with this
npy_intp Sindices =
%(_indices)
s->strides[0]/
%(_indices)
s->descr->elsize;
npy_intp Sindptr =
%(_indptr)
s->strides[0]/
%(_indptr)
s->descr->elsize;
const npy_intp Sd1 =
%(_d)
s->strides[1]/
%(_d)
s->descr->elsize;
const npy_intp Sg1 =
%(_g)
s->strides[1]/
%(_g)
s->descr->elsize;
const npy_intp K =
%(_d)
s->dimensions[1];
const npy_int32 * __restrict__ indptr = (npy_int32 *)
%(_indptr)
s->data;
const npy_int32 * __restrict__ indices = (npy_int32 *)
%(_indices)
s->data;
for (npy_int32 j = 0; j < N; ++j)
{
const npy_double * __restrict__ d_row = (double *)(
%(_d)
s->data +
%(_d)
s->strides[0] * j);
if(j >=
%(_d)
s->dimensions[0]) {PyErr_SetString(PyExc_NotImplementedError, "G");
%(fail)
s;}
for (npy_int32 i_idx = indptr[j * Sindptr]; i_idx < indptr[(j+1) * Sindptr]; ++i_idx)
{
npy_int32 i = indices[i_idx * Sindices];
const npy_double * __restrict__ g_row = (npy_double *)(
%(_g)
s->data +
%(_g)
s->strides[0] * i);
double ip = 0.0;
if (i >=
%(_g)
s->dimensions[0])
{PyErr_SetString(PyExc_NotImplementedError, "H");
%(fail)
s;}
for(int k = 0; k < K; ++k)
{
ip += d_row[k * Sd1] * g_row[k*Sg1];
}
((double * __restrict__)(
%(_zout)
s->data + i_idx *
%(_zout)
s->strides[0]))[0] = ip;
}
}
}
"""
%
dict
(
locals
(),
**
sub
)
_sdgcsc
=
StructureDotGradCSC
()
def
structured_dot_grad
(
sparse_A
,
dense_B
,
ga
):
#TODO: 1. move this switch to be a specialization of structuredDotGrad
# 2. implement StructuredDotGrad.grad()
if
0
:
return
_structured_dot_grad
(
sparse_A
,
dense_B
,
ga
)
else
:
if
sparse_A
.
type
.
format
==
'csc'
:
g_A_data
=
_sdgcsc
(
csm_indices
(
sparse_A
),
\
csm_indptr
(
sparse_A
),
dense_B
,
ga
)
return
CSC
(
g_A_data
,
csm_indices
(
sparse_A
),
\
csm_indptr
(
sparse_A
),
\
csm_shape
(
sparse_A
))
else
:
raise
NotImplementedError
()
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