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Boxiang Sun
cython
Commits
107fc454
Commit
107fc454
authored
Sep 22, 2018
by
Stefan Behnel
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Merge branch 'master' into release
parents
e2d55c56
c4c9683e
Changes
7
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CHANGES.rst
CHANGES.rst
+1
-1
docs/examples/tutorial/numpy/convolve2.pyx
docs/examples/tutorial/numpy/convolve2.pyx
+79
-79
runtests.py
runtests.py
+11
-2
tests/run/numpy_bufacc_T155.pyx
tests/run/numpy_bufacc_T155.pyx
+1
-1
tests/run/numpy_parallel.pyx
tests/run/numpy_parallel.pyx
+1
-1
tests/run/numpy_subarray.pyx
tests/run/numpy_subarray.pyx
+1
-1
tests/run/numpy_test.pyx
tests/run/numpy_test.pyx
+1
-1
No files found.
CHANGES.rst
View file @
107fc454
...
...
@@ -79,7 +79,7 @@ Bugs fixed
*
The
exception
handling
in
generators
and
coroutines
under
CPython
3.7
was
adapted
to
the
newly
introduced
exception
stack
.
Users
of
Cython
0.28
who
want
to
support
Python
3.7
are
encouraged
to
upgrade
to
0.29
to
avoid
potentially
incorrect
error
reporting
and
tracebacks
.
reporting
and
tracebacks
.
(
Github
issue
#
1958
)
*
Crash
when
importing
a
module
under
Stackless
Python
that
was
built
for
CPython
.
Patch
by
Anselm
Kruis
.
(
Github
issue
#
2534
)
...
...
docs/examples/tutorial/numpy/convolve2.pyx
View file @
107fc454
# tag: numpy
# You can ignore the previous line.
# It's for internal testing of the cython documentation.
import
numpy
as
np
# "cimport" is used to import special compile-time information
# about the numpy module (this is stored in a file numpy.pxd which is
# currently part of the Cython distribution).
cimport
numpy
as
np
# We now need to fix a datatype for our arrays. I've used the variable
# DTYPE for this, which is assigned to the usual NumPy runtime
# type info object.
DTYPE
=
np
.
int
# "ctypedef" assigns a corresponding compile-time type to DTYPE_t. For
# every type in the numpy module there's a corresponding compile-time
# type with a _t-suffix.
ctypedef
np
.
int_t
DTYPE_t
# "def" can type its arguments but not have a return type. The type of the
# arguments for a "def" function is checked at run-time when entering the
# function.
#
# The arrays f, g and h is typed as "np.ndarray" instances. The only effect
# this has is to a) insert checks that the function arguments really are
# NumPy arrays, and b) make some attribute access like f.shape[0] much
# more efficient. (In this example this doesn't matter though.)
def
naive_convolve
(
np
.
ndarray
f
,
np
.
ndarray
g
):
if
g
.
shape
[
0
]
%
2
!=
1
or
g
.
shape
[
1
]
%
2
!=
1
:
raise
ValueError
(
"Only odd dimensions on filter supported"
)
assert
f
.
dtype
==
DTYPE
and
g
.
dtype
==
DTYPE
# The "cdef" keyword is also used within functions to type variables. It
# can only be used at the top indentation level (there are non-trivial
# problems with allowing them in other places, though we'd love to see
# good and thought out proposals for it).
#
# For the indices, the "int" type is used. This corresponds to a C int,
# other C types (like "unsigned int") could have been used instead.
# Purists could use "Py_ssize_t" which is the proper Python type for
# array indices.
cdef
int
vmax
=
f
.
shape
[
0
]
cdef
int
wmax
=
f
.
shape
[
1
]
cdef
int
smax
=
g
.
shape
[
0
]
cdef
int
tmax
=
g
.
shape
[
1
]
cdef
int
smid
=
smax
//
2
cdef
int
tmid
=
tmax
//
2
cdef
int
xmax
=
vmax
+
2
*
smid
cdef
int
ymax
=
wmax
+
2
*
tmid
cdef
np
.
ndarray
h
=
np
.
zeros
([
xmax
,
ymax
],
dtype
=
DTYPE
)
cdef
int
x
,
y
,
s
,
t
,
v
,
w
# It is very important to type ALL your variables. You do not get any
# warnings if not, only much slower code (they are implicitly typed as
# Python objects).
cdef
int
s_from
,
s_to
,
t_from
,
t_to
# For the value variable, we want to use the same data type as is
# stored in the array, so we use "DTYPE_t" as defined above.
# NB! An important side-effect of this is that if "value" overflows its
# datatype size, it will simply wrap around like in C, rather than raise
# an error like in Python.
cdef
DTYPE_t
value
for
x
in
range
(
xmax
):
for
y
in
range
(
ymax
):
s_from
=
max
(
smid
-
x
,
-
smid
)
s_to
=
min
((
xmax
-
x
)
-
smid
,
smid
+
1
)
t_from
=
max
(
tmid
-
y
,
-
tmid
)
t_to
=
min
((
ymax
-
y
)
-
tmid
,
tmid
+
1
)
value
=
0
for
s
in
range
(
s_from
,
s_to
):
for
t
in
range
(
t_from
,
t_to
):
v
=
x
-
smid
+
s
w
=
y
-
tmid
+
t
value
+=
g
[
smid
-
s
,
tmid
-
t
]
*
f
[
v
,
w
]
h
[
x
,
y
]
=
value
return
h
# tag: numpy
_old
# You can ignore the previous line.
# It's for internal testing of the cython documentation.
import
numpy
as
np
# "cimport" is used to import special compile-time information
# about the numpy module (this is stored in a file numpy.pxd which is
# currently part of the Cython distribution).
cimport
numpy
as
np
# We now need to fix a datatype for our arrays. I've used the variable
# DTYPE for this, which is assigned to the usual NumPy runtime
# type info object.
DTYPE
=
np
.
int
# "ctypedef" assigns a corresponding compile-time type to DTYPE_t. For
# every type in the numpy module there's a corresponding compile-time
# type with a _t-suffix.
ctypedef
np
.
int_t
DTYPE_t
# "def" can type its arguments but not have a return type. The type of the
# arguments for a "def" function is checked at run-time when entering the
# function.
#
# The arrays f, g and h is typed as "np.ndarray" instances. The only effect
# this has is to a) insert checks that the function arguments really are
# NumPy arrays, and b) make some attribute access like f.shape[0] much
# more efficient. (In this example this doesn't matter though.)
def
naive_convolve
(
np
.
ndarray
f
,
np
.
ndarray
g
):
if
g
.
shape
[
0
]
%
2
!=
1
or
g
.
shape
[
1
]
%
2
!=
1
:
raise
ValueError
(
"Only odd dimensions on filter supported"
)
assert
f
.
dtype
==
DTYPE
and
g
.
dtype
==
DTYPE
# The "cdef" keyword is also used within functions to type variables. It
# can only be used at the top indentation level (there are non-trivial
# problems with allowing them in other places, though we'd love to see
# good and thought out proposals for it).
#
# For the indices, the "int" type is used. This corresponds to a C int,
# other C types (like "unsigned int") could have been used instead.
# Purists could use "Py_ssize_t" which is the proper Python type for
# array indices.
cdef
int
vmax
=
f
.
shape
[
0
]
cdef
int
wmax
=
f
.
shape
[
1
]
cdef
int
smax
=
g
.
shape
[
0
]
cdef
int
tmax
=
g
.
shape
[
1
]
cdef
int
smid
=
smax
//
2
cdef
int
tmid
=
tmax
//
2
cdef
int
xmax
=
vmax
+
2
*
smid
cdef
int
ymax
=
wmax
+
2
*
tmid
cdef
np
.
ndarray
h
=
np
.
zeros
([
xmax
,
ymax
],
dtype
=
DTYPE
)
cdef
int
x
,
y
,
s
,
t
,
v
,
w
# It is very important to type ALL your variables. You do not get any
# warnings if not, only much slower code (they are implicitly typed as
# Python objects).
cdef
int
s_from
,
s_to
,
t_from
,
t_to
# For the value variable, we want to use the same data type as is
# stored in the array, so we use "DTYPE_t" as defined above.
# NB! An important side-effect of this is that if "value" overflows its
# datatype size, it will simply wrap around like in C, rather than raise
# an error like in Python.
cdef
DTYPE_t
value
for
x
in
range
(
xmax
):
for
y
in
range
(
ymax
):
s_from
=
max
(
smid
-
x
,
-
smid
)
s_to
=
min
((
xmax
-
x
)
-
smid
,
smid
+
1
)
t_from
=
max
(
tmid
-
y
,
-
tmid
)
t_to
=
min
((
ymax
-
y
)
-
tmid
,
tmid
+
1
)
value
=
0
for
s
in
range
(
s_from
,
s_to
):
for
t
in
range
(
t_from
,
t_to
):
v
=
x
-
smid
+
s
w
=
y
-
tmid
+
t
value
+=
g
[
smid
-
s
,
tmid
-
t
]
*
f
[
v
,
w
]
h
[
x
,
y
]
=
value
return
h
runtests.py
View file @
107fc454
...
...
@@ -134,7 +134,8 @@ def get_distutils_distro(_cache=[]):
EXT_DEP_MODULES
=
{
'tag:numpy'
:
'numpy'
,
'tag:numpy'
:
'numpy'
,
'tag:numpy_old'
:
'numpy'
,
'tag:pythran'
:
'pythran'
,
'tag:setuptools'
:
'setuptools.sandbox'
,
'tag:asyncio'
:
'asyncio'
,
...
...
@@ -254,12 +255,19 @@ def update_linetrace_extension(ext):
return ext
def update_numpy_extension(ext):
def update_old_numpy_extension(ext):
update_numpy_extension(ext, set_api17_macro=False)
def update_numpy_extension(ext, set_api17_macro=True):
import numpy
from numpy.distutils.misc_util import get_info
ext.include_dirs.append(numpy.get_include())
if set_api17_macro:
ext.define_macros.append(('
NPY_NO_DEPRECATED_API
', '
NPY_1_7_API_VERSION
'))
# We need the npymath library for numpy.math.
# This is typically a static-only library.
for attr, value in get_info('
npymath
').items():
...
...
@@ -391,6 +399,7 @@ EXCLUDE_EXT = object()
EXT_EXTRAS = {
'tag:numpy' : update_numpy_extension,
'tag:numpy_old' : update_old_numpy_extension,
'tag:openmp': update_openmp_extension,
'tag:cpp11': update_cpp11_extension,
'tag:trace' : update_linetrace_extension,
...
...
tests/run/numpy_bufacc_T155.pyx
View file @
107fc454
# ticket: 155
# tag: numpy
# tag: numpy
_old
"""
>>> myfunc()
...
...
tests/run/numpy_parallel.pyx
View file @
107fc454
# tag: numpy
# tag: numpy
_old
# tag: openmp
cimport
cython
...
...
tests/run/numpy_subarray.pyx
View file @
107fc454
# tag: numpy
# tag: numpy
_old
cimport
numpy
as
np
cimport
cython
...
...
tests/run/numpy_test.pyx
View file @
107fc454
# tag: numpy
# tag: numpy
_old
# cannot be named "numpy" in order to not clash with the numpy module!
cimport
numpy
as
np
...
...
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