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I've written the code below as a simple example of parallel computing in Cython. In my example, I create two worker objects and have them run in parallel. I would like to generalize this implementation to use a variable number of workers. The problem is that I can't find a way to store an array of Worker objects and access them withing a nogil. Is there a way to do it? Obviously I can hack something reasonable together using the technique below (up to some reasonable hard-coded number of workers), but I'd like something a little more elegant and maintainable if it exists.

Here's the code. The key section is under if use_parallel:

# distutils: language = c
# cython: cdivision = True
# cython: boundscheck = False
# cython: wraparound = False
# cython: profile = False

cimport numpy as cnp
import numpy as np
from cython.parallel import parallel, prange
from libc.math cimport sin
cimport openmp
cnp.import_array()

ctypedef cnp.float64_t FLOAT_t
ctypedef cnp.intp_t INT_t
ctypedef cnp.ulong_t INDEX_t
ctypedef cnp.uint8_t BOOL_t

cdef class Parent:
    cdef cnp.ndarray numbers
    cdef unsigned int i
    cdef Worker worker1
    cdef Worker worker2

    def __init__(Parent self, list numbers):
        self.numbers = <cnp.ndarray[FLOAT_t, ndim=1]> np.array(numbers,dtype=float)
        self.worker1 = Worker()
        self.worker2 = Worker()

    cpdef run(Parent self, bint use_parallel):
        cdef unsigned int i
        cdef float best
        cdef int num_threads
        cdef cnp.ndarray[FLOAT_t, ndim=1] numbers = <cnp.ndarray[FLOAT_t, ndim=1]> self.numbers
        cdef FLOAT_t[:] buffer1 = self.numbers[:(len(numbers)//2)]
        buffer_size1 = buffer1.shape[0]
        cdef FLOAT_t[:] buffer2 = self.numbers[(len(numbers)//2):]
        buffer_size2 = buffer2.shape[0]

        # Run the workers
        if use_parallel:
            print 'parallel'
            with nogil:
                for i in prange(2, num_threads=2):
                    if i == 0:
                        self.worker1.run(buffer1, buffer_size1)
                    elif i == 1:
                        self.worker2.run(buffer2, buffer_size2)

        else:
            print 'serial'
            self.worker1.run(buffer1, buffer_size1)
            self.worker2.run(buffer2, buffer_size2)

        #Make sure they both ran
        print self.worker1.output, self.worker2.output

        # Choose the worker that had the best solution
        best = min(self.worker1.output, self.worker2.output)

        return best

cdef class Worker:
    cdef public float output
    def __init__(Worker self):
        self.output = 0.0

    cdef void run(Worker self, FLOAT_t[:] numbers, unsigned int buffer_size) nogil:
        cdef unsigned int i
        cdef unsigned int j
        cdef unsigned int n = buffer_size
        cdef FLOAT_t best
        cdef bint first = True
        cdef FLOAT_t value
        for i in range(n):
            for j in range(n):
                value = sin(numbers[i]*numbers[j])
                if first or (value < best):
                    best = value
                    first = False
        self.output = best

My test script looks like this:

from parallel import Parent
import time
data = list(range(20000))
parent = Parent(data)

t0 = time.time()
output = parent.run(False)
t1 = time.time()

print 'Serial Result: %f' % output
print 'Serial Time: %f' % (t1-t0)

t0 = time.time()
output = parent.run(True)
t1 = time.time()

print 'Parallel Result: %f' % output
print 'Parallel Time: %f' % (t1-t0)

And it produces this output:

serial
-1.0 -1.0
Serial Result: -1.000000
Serial Time: 6.428081
parallel
-1.0 -1.0
Parallel Result: -1.000000
Parallel Time: 4.006907

Finally, this is my setup.py:

from distutils.core import setup
from distutils.extension import Extension
import sys
import numpy

#Determine whether to use Cython
if '--cythonize' in sys.argv:
    cythonize_switch = True
    del sys.argv[sys.argv.index('--cythonize')]
else:
    cythonize_switch = False

#Find all includes
numpy_include = numpy.get_include()

#Set up the ext_modules for Cython or not, depending
if cythonize_switch:
    from Cython.Distutils import build_ext
    from Cython.Build import cythonize
    ext_modules = cythonize([Extension("parallel.parallel", ["parallel/parallel.pyx"],include_dirs = [numpy_include],
                                       extra_compile_args=['-fopenmp'], extra_link_args=['-fopenmp'])])
else:
    ext_modules = [Extension("parallel.parallel", ["parallel/parallel.c"],include_dirs = [numpy_include],
                             extra_compile_args=['-fopenmp'], extra_link_args=['-fopenmp'])]

#Create a dictionary of arguments for setup
setup_args = {'name':'parallel-test',
    'version':'0.1.0',
    'author':'Jason Rudy',
    'author_email':'jcrudy@gmail.com',
    'packages':['parallel',],
    'license':'LICENSE.txt',
    'description':'Let\'s try some parallel programming in Cython',
    'long_description':open('README.md','r').read(),
    'py_modules' : [],
    'ext_modules' : ext_modules,
    'classifiers' : ['Development Status :: 3 - Alpha'],
    'requires':[]} 

#Add the build_ext command only if cythonizing
if cythonize_switch:
    setup_args['cmdclass'] = {'build_ext': build_ext}

#Finally
setup(**setup_args)

It must be compiled with gcc, which you can do on mac with

export CC=gcc

before you run setup.py.

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1 Answer 1

up vote 1 down vote accepted

As far as I saw, nogil doesn't support the indexation of Python objects (as well as coercion, ...). Consequently we get the following message when storing the Workers in a builtin Python list:

cdef list workers
workers = [Worker(), Worker(), Worker(), Worker()]

Message:

Indexing Python object not allowed without gil



You could try something like this (tested, seems to work fine):

The workaround, here, is to use C syntax for everything that is to be used in the nogil section:

cdef PyObject ** workers
cdef int * buf_sizes
cdef FLOAT_t ** buffers

And allocate those arrays using the good old malloc from libc.stdlib.

Code:

# distutils: language = c
# cython: cdivision = True
# cython: boundscheck = False
# cython: wraparound = False
# cython: profile = False

cimport numpy as cnp
import numpy as np
from cython.parallel import parallel, prange
from libc.math cimport sin
cimport openmp
cnp.import_array()

ctypedef cnp.float64_t FLOAT_t
ctypedef cnp.intp_t INT_t
ctypedef cnp.ulong_t INDEX_t
ctypedef cnp.uint8_t BOOL_t

# Pyobject is the C representation of a Python object
# This allows casts in both ways...
cimport cython
from cpython cimport PyObject

# C memory alloc features
from libc.stdlib cimport malloc, free


cdef FLOAT_t MAXfloat64  = np.float64(np.inf)


cdef class Parent:
    cdef cnp.ndarray numbers
    cdef unsigned int i
    cdef PyObject ** workers
    cdef int nb_workers

    cdef int * buf_sizes
    cdef FLOAT_t ** buffers

    def __init__(Parent self, list numbers, int n_workers):
        self.numbers = <cnp.ndarray[FLOAT_t, ndim=1]> np.array(numbers,dtype=float)

        # Define number of workers
        self.nb_workers = n_workers
        self.workers = <PyObject **>malloc(self.nb_workers*cython.sizeof(cython.pointer(PyObject)))

        # Populate pool
        cdef int i
        cdef PyObject py_obj
        cdef object py_workers
        py_workers = []                     # For correct ref count
        for i in xrange(self.nb_workers):
            py_workers.append(Worker())
            self.workers[i] = <PyObject*>py_workers[i]

        self.init_buffers()

    cdef init_buffers(Parent self):
        cdef int i, j
        cdef int num_threads
        cdef int pos, pos_end
        cdef int buf_size

        num_threads = self.nb_workers
        buf_size    = len(self.numbers) // num_threads

        # Init buffers
        self.buffers   = <FLOAT_t **>malloc(self.nb_workers * cython.sizeof(cython.pointer(FLOAT_t)))
        self.buf_sizes = <int *>malloc(self.nb_workers * cython.sizeof(int))
        pos = 0
        buf_size = len(self.numbers) // num_threads

        for i in xrange(self.nb_workers):

            # If we are treating the last worker do everything left
            if (i == self.nb_workers-1):
                buf_size = len(self.numbers) - pos

            self.buf_sizes[i] = buf_size
            pos_end = pos + buf_size

            self.buffers[i] = <FLOAT_t *>malloc(buf_size * cython.sizeof(FLOAT_t))

            for j in xrange(pos, pos_end):
                self.buffers[i][j-pos] = <FLOAT_t>self.numbers[j]

            pos = pos + buf_size



    cpdef run(Parent self, bint use_parallel):

        cdef int i
        cdef FLOAT_t best

        # Run the workers
        if use_parallel:
            print 'parallel'
            with nogil:
                for i in prange(self.nb_workers, num_threads=self.nb_workers):
                    # Changed "FLOAT_t[:]" python object to C array "FLOAT_t *"
                    (<Worker>self.workers[i]).run(<FLOAT_t *>self.buffers[i], self.buf_sizes[i])

        else:
            print 'serial'
            for i in xrange(self.nb_workers):
                (<Worker>self.workers[i]).run(<FLOAT_t *>self.buffers[i], self.buf_sizes[i])

        # Make sure they ran
        for i in xrange(self.nb_workers):
            print (<Worker>self.workers[i]).output

        # Choose the worker that had the best solution
        best = MAXfloat64
        for i in xrange(self.nb_workers):
            if ((<Worker>self.workers[i]).output < best):
                best = (<Worker>self.workers[i]).output

        return best


cdef class Worker:
    cdef public float output
    def __init__(Worker self):
        self.output = 0.0


    # Changed "FLOAT_t[:]" python object to C dyn array "FLOAT_t *"
    cdef void run(Worker self, FLOAT_t * numbers, unsigned int buffer_size) nogil:
        cdef unsigned int i, j
        cdef unsigned int n = buffer_size
        cdef FLOAT_t best
        cdef bint first = True
        cdef FLOAT_t value

        # Added initialization
        best = MAXfloat64
        for i in range(n):
            for j in range(n):
                value = sin(numbers[i]*numbers[j])
                if first or (value < best):
                    best = value
                    first = False
        self.output = best

Test:

from parallel import Parent
import time
data = list(range(20000))
parent = Parent(data, 7)

t0 = time.time()
output = parent.run(False)
t1 = time.time()

print 'Serial Result: %f' % output
print 'Serial Time: %f' % (t1-t0)

t0 = time.time()
output = parent.run(True)
t1 = time.time()

print 'Parallel Result: %f' % output
print 'Parallel Time: %f' % (t1-t0)

Output:

serial
-1.0
-1.0
-1.0
-1.0
-1.0
-1.0
-1.0
Serial Result: -1.000000
Serial Time: 2.741364
parallel
-1.0
-1.0
-1.0
-1.0
-1.0
-1.0
-1.0
Parallel Result: -1.000000
Parallel Time: 0.536419

Hope this fits what you were asking for, or at least gave some ideas... Please share your final implementation...

share|improve this answer
    
The array of PyObject pointers did the trick! I made a few other changes as well. My working code is on github: github.com/jcrudy/parallel-cython-example. Specifically, this commit incorporates your answer: github.com/jcrudy/parallel-cython-example/commit/… –  jcrudy Nov 7 '13 at 0:34
    
Great! And thanks for sharing. You also added steps to free memory, a point that I did not cover in my answer... cool. –  Gauthier Boaglio Nov 7 '13 at 0:39
    
Apparently, I forgot some required imports. cimport cython and from cpython cimport PyObject. I updated my answer... See also stackoverflow.com/a/16951962/1715716 –  Gauthier Boaglio Nov 7 '13 at 0:48
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