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Kirill Smelkov
cython
Commits
520035f0
Commit
520035f0
authored
May 20, 2018
by
scoder
Committed by
GitHub
May 20, 2018
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Merge pull request #2279 from gabrieldemarmiesse/using_c_libraries
Fixing c library tutorial
parents
9ecbdff9
68c0a85e
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docs/src/tutorial/clibraries.rst
View file @
520035f0
******************
Using
C
libraries
=================
******************
Apart
from
writing
fast
code
,
one
of
the
main
use
cases
of
Cython
is
to
call
external
C
libraries
from
Python
code
.
As
Cython
code
...
...
@@ -22,12 +24,13 @@ type that can encapsulate all memory management.
..
[
CAlg
]
Simon
Howard
,
C
Algorithms
library
,
http
://
c
-
algorithms
.
sourceforge
.
net
/
Defining
external
declarations
------------------------------
==============================
You
can
download
CAlg
`
here
<
https
://
github
.
com
/
fragglet
/
c
-
algorithms
/
archive
/
master
.
zip
>`
_
.
The
C
API
of
the
queue
implementation
,
which
is
defined
in
the
header
file
``
libcalg
/
queue
.
h
``,
essentially
looks
like
this
::
file
``
c
-
algorithms
/
src
/
queue
.
h
``,
essentially
looks
like
this
::
/*
file
:
queue
.
h
*/
...
...
@@ -52,7 +55,7 @@ file, say, ``cqueue.pxd``::
#
file
:
cqueue
.
pxd
cdef
extern
from
"
libcalg
/queue.h"
:
cdef
extern
from
"
c-algorithms/src
/queue.h"
:
ctypedef
struct
Queue
:
pass
ctypedef
void
*
QueueValue
...
...
@@ -123,7 +126,7 @@ provided ``.pxd`` files.
Writing
a
wrapper
class
-----------------------
=======================
After
declaring
our
C
library
's API, we can start to design the Queue
class that should wrap the C queue. It will live in a file called
...
...
@@ -172,7 +175,7 @@ the type.
Memory
management
-----------------
=================
Before
we
continue
implementing
the
other
methods
,
it
is
important
to
understand
that
the
above
implementation
is
not
safe
.
In
case
...
...
@@ -218,7 +221,7 @@ the init method::
Compiling
and
linking
---------------------
=====================
At
this
point
,
we
have
a
working
Cython
module
that
we
can
test
.
To
compile
it
,
we
need
to
configure
a
``
setup
.
py
``
script
for
distutils
.
...
...
@@ -232,10 +235,76 @@ Here is the most basic script for compiling a Cython module::
ext_modules
=
cythonize
([
Extension
(
"queue"
,
[
"queue.pyx"
])])
)
To
build
against
the
external
C
library
,
we
must
extend
this
script
to
include
the
necessary
setup
.
Assuming
the
library
is
installed
in
the
usual
places
(
e
.
g
.
under
``/
usr
/
lib
``
and
``/
usr
/
include
``
on
a
Unix
-
like
system
),
we
could
simply
change
the
extension
setup
from
To
build
against
the
external
C
library
,
we
need
to
make
sure
Cython
finds
the
necessary
libraries
.
There
are
two
ways
to
archive
this
.
First
we
can
tell
distutils
where
to
find
the
c
-
source
to
compile
the
:
file
:`
queue
.
c
`
implementation
automatically
.
Alternatively
,
we
can
build
and
install
C
-
Alg
as
system
library
and
dynamically
link
it
.
The
latter
is
useful
if
other
applications
also
use
C
-
Alg
.
Static
Linking
---------------
To
build
the
c
-
code
automatically
we
need
to
include
compiler
directives
in
`
queue
.
pyx
`::
#
distutils
:
sources
=
c
-
algorithms
/
src
/
queue
.
c
#
distutils
:
include_dirs
=
c
-
algorithms
/
src
/
cimport
cqueue
cdef
class
Queue
:
cdef
cqueue
.
Queue
*
_c_queue
def
__cinit__
(
self
):
self
.
_c_queue
=
cqueue
.
queue_new
()
if
self
.
_c_queue
is
NULL
:
raise
MemoryError
()
def
__dealloc__
(
self
):
if
self
.
_c_queue
is
not
NULL
:
cqueue
.
queue_free
(
self
.
_c_queue
)
The
``
sources
``
compiler
directive
gives
the
path
of
the
C
files
that
distutils
is
going
to
compile
and
link
(
statically
)
into
the
resulting
extension
module
.
In
general
all
relevant
header
files
should
be
found
in
``
include_dirs
``.
Now
we
can
build
the
project
using
::
$
python
setup
.
py
build_ext
-
i
And
test
whether
our
build
was
successful
::
$
python
-
c
'import queue; Q = queue.Queue()'
Dynamic
Linking
---------------
Dynamic
linking
is
useful
,
if
the
library
we
are
going
to
wrap
is
already
installed
on
the
system
.
To
perform
dynamic
linking
we
first
need
to
build
and
install
c
-
alg
.
To
build
c
-
algorithms
on
your
system
::
$
cd
c
-
algorithms
$
sh
autogen
.
sh
$
./
configure
$
make
to
install
CAlg
run
::
$
make
install
Afterwards
the
file
:
file
:`/
usr
/
local
/
lib
/
libcalg
.
so
`
should
exist
.
..
note
::
This
path
applies
to
Linux
systems
and
may
be
different
,
so
you
will
need
to
adapt
the
rest
of
the
tutorial
depending
on
the
where
``
libcalg
.
so
``
or
``
libcalg
.
dll
``
is
on
your
system
.
In
this
approach
we
need
to
tell
the
setup
script
to
link
with
an
external
library
.
To
do
so
we
need
to
extend
the
setup
script
to
install
change
the
extension
setup
from
::
...
...
@@ -250,7 +319,11 @@ to
libraries
=[
"calg"
])
])
If
it
is
not
installed
in
a
'normal'
location
,
users
can
provide
the
Now
we
should
be
able
to
build
the
project
using
::
$
python
setup
.
py
build_ext
-
i
If
the
`
libcalg
`
is
not
installed
in
a
'normal'
location
,
users
can
provide
the
required
parameters
externally
by
passing
appropriate
C
compiler
flags
,
such
as
::
...
...
@@ -258,11 +331,18 @@ flags, such as::
LDFLAGS
=
"-L/usr/local/otherdir/calg/lib"
\
python
setup
.
py
build_ext
-
i
Before
we
run
the
module
,
we
also
need
to
make
sure
that
`
libcalg
`
is
in
the
`
LD_LIBRARY_PATH
`
environment
variable
,
e
.
g
.
by
setting
::
$
export
LD_LIBRARY_PATH
=$
LD_LIBRARY_PATH
:/
usr
/
local
/
lib
Once
we
have
compiled
the
module
for
the
first
time
,
we
can
now
import
it
and
instantiate
a
new
Queue
::
$
export
PYTHONPATH
=.
$
python
-
c
'import queue
.Queue as Q ; Q
()'
$
python
-
c
'import queue
; Q = queue.Queue
()'
However
,
this
is
all
our
Queue
class
can
do
so
far
,
so
let
's make it
more usable.
...
...
@@ -502,6 +582,47 @@ instead that accepts an arbitrary Python iterable::
for value in values:
self.append(value)
Now we can test our Queue implementation using a python script,
for example here :file:`test_queue.py`.::
from __future__ import print_function
import queue
Q = queue.Queue()
Q.append(10)
Q.append(20)
print(Q.peek())
print(Q.pop())
print(Q.pop())
try:
print(Q.pop())
except IndexError as e:
print("Error message:", e) # Prints "Queue is empty"
i = 10000
values = range(i)
start_time = time.time()
Q.extend(values)
end_time = time.time() - start_time
print("Adding {} items took {:1.3f} msecs.".format(i, 1000 * end_time))
for i in range(41):
Q.pop()
Q.pop()
print("The answer is:")
print(Q.pop())
As a quick test with 10000 numbers on the author'
s
machine
indicates
,
using
this
Queue
from
Cython
code
with
C
``
int
``
values
is
about
five
times
as
fast
as
using
it
from
Cython
code
with
Python
object
values
,
...
...
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