# matplotlib and python multithread / multiprocessing file processing

I have a large number of files to process. I have written a script that get, sort and plot the datas I want. So far, so good. I have tested it and it gives the desired result.

Then I wanted to do this using multithreading. I have looked into the doc and examples on the internet, and using one thread in my program works fine. But when I use more, at some point I get random matplotlib error, and I suspect some conflict there, even though I use a function with names for the plots, and iI can't see where the problem could be.

Here is the whole script should you need more comment, i'll add them. Thank you.

#!/usr/bin/python
import matplotlib
matplotlib.use('GTKAgg')
import numpy as np
from scipy.interpolate import griddata

import matplotlib.pyplot as plt
import matplotlib.colors as mcl
from matplotlib import rc #for latex

import time as tm
import sys
import Queue #queue in 3.2 and Queue in 2.7 !

import pdb #the debugger

rc('text', usetex=True)#for latex

map=0 #initialize the map index. It will be use to index the array like     this: array[map,[x,y]]
time=np.zeros(1) #an array to store the time
middle_h=np.zeros((0,3)) #x phi c

#for the middle of the box
current_file=open("single_void_cyl_periodic_phi_c_middle_h_out",'r')
for line in current_file:
if line.startswith('# ===  time'):
map+=1
np.append(time,[float(line.strip('# ===  time  '))])
elif line.startswith('#'):
pass
else:
v=np.fromstring(line,dtype=float,sep=' ')
middle_h=np.vstack( (middle_h,v[[1,3,4]]) )
current_file.close()
middle_h=middle_h.reshape((map,-1,3)) #3d array: map, x, phi,c

#####
def load_and_plot(): #will load a map file, and plot it along with the     corresponding profile loaded before
while not exit_flag:
print("fecthing work ...")
#try:
print("----> working on map: %s" %map_index)
for i,el in enumerate(zp):
if el<0.:
zp[i]=0.
xv=np.unique(x)
yv=np.unique(y)
X,Y= np.meshgrid(xv,yv)
Z = griddata((x, y), zp, (X, Y),method='nearest')

figure=plt.figure(num=map_index,figsize=(14, 8))
ax1=plt.subplot2grid((2,2),(0,0))
ax1.plot(middle_h[map_index,:,0],middle_h[map_index,:,1],'*b')
ax1.grid(True)
ax1.axis([-15, 15, 0, 1])
ax1.set_title('Profiles')
ax1.set_ylabel(r'$\phi$')
ax1.set_xlabel('x')

ax2=plt.subplot2grid((2,2),(1,0))
ax2.plot(middle_h[map_index,:,0],middle_h[map_index,:,2],'*r')
ax2.grid(True)
ax2.axis([-15, 15, 0, 1])
ax2.set_ylabel('c')
ax2.set_xlabel('x')

ax3=plt.subplot2grid((2,2),(0,1),rowspan=2,aspect='equal')
sub_contour=ax3.contourf(X,Y,Z,np.linspace(0,1,11),vmin=0.)
figure.colorbar(sub_contour,ax=ax3)
figure.savefig('single_void_cyl_'+str(map_index)+'.png')
plt.close(map_index)
else:
print("nothing left to do, other threads finishing,sleeping 2 seconds...")
tm.sleep(2)
# except:
#     print("failed this time: %s" %map_index+". Sleeping 2 seconds")
#     tm.sleep(2)
#####
exit_flag=0

jobs=list(range(map)) #each job is composed of a map
print("inserting jobs in the queue...")
for job in jobs:
print("done")

working_bee.daemon=True
working_bee.start()

#wait for all tasks to be treated

#flip the flag, so the threads know it's time to stop
exit_flag=1

print("waiting for threads %s to stop..."%t)
t.join()


-
I would recommend using multiprocessing instead of threading. I used it successfully to achieve parallel figure plotting. –  David Zwicker Dec 13 '12 at 8:47
thanks, it seems more complicated to achieve but i'll give it a try. –  Napseis Dec 13 '12 at 12:38
you start only the last thread; move working_bee.start() inside the loop –  J.F. Sebastian Dec 13 '12 at 16:13
to create multiprocessing version, move the code at global level to main() function, call it in if __name__ == "__main__": block, replace threading.Thread by multiprocessing.Process and Queue.Queue by multiprocessing.Queue. btw, queue.empty() might be unreliable, you could use sentinel values instead e.g., at the end of main thread: for i in range(len(threads_list)): queue.put(None), in each thread: for map_index in iter(queue.get, None): ... –  J.F. Sebastian Dec 13 '12 at 16:23

Following David's suggestion, I did it in multiprocessing. I get a 5 times speed up with 8 processors. I believe the rest is do to the single-process work at the begining of my script. edit: However sometimes the script "hangs" at the last map, even though it produces the right maps, with the following error:

File "single_void_cyl_plot_mprocess.py", line 90, in tasks_queue.join()

File "/usr/local/epd-7.0-2-rh5-x86_64/lib/python2.7/multiprocessing/queues.py", line 316, in join self._cond.wait()

File "/usr/local/epd-7.0-2-rh5-x86_64/lib/python2.7/multiprocessing/synchronize.py", line 220, in wait self._wait_semaphore.acquire(True, timeout)

import numpy as np
from scipy.interpolate import griddata

import matplotlib.pyplot as plt
from matplotlib import rc #for latex

from multiprocessing import Process, JoinableQueue

import pdb #the debugger

rc('text', usetex=True)#for latex

map=0 #initialize the map index. It will be use to index the array     like this: array[map,x,y,...]
time=np.zeros(1) #an array to store the time
middle_h=np.zeros((0,3)) #x phi c

#for the middle of the box
current_file=open("single_void_cyl_periodic_phi_c_middle_h_out",'r')
if line.startswith('# ===  time'):
map+=1
np.append(time,[float(line.strip('# ===  time  '))])
elif line.startswith('#'):
pass
else:
v=np.fromstring(line,dtype=float,sep=' ')
middle_h=np.vstack( (middle_h,v[[1,3,4]]) )
current_file.close()
middle_h=middle_h.reshape((map,-1,3)) #3d array: map, x, phi,c

#######
def load_and_plot(): #will load a map file, and plot it along with     the corresponding profile loaded before
print("fecthing work ...")
try:
map_index=tasks_queue.get() #get some work to do from     the queue
print("----> working on map: %s" %map_index)
unpack=True, usecols=[1, 2,3])
for i,el in enumerate(zp):
if el<0.:
zp[i]=0.
xv=np.unique(x)
yv=np.unique(y)
X,Y= np.meshgrid(xv,yv)
Z = griddata((x, y), zp, (X, Y),method='nearest')

figure=plt.figure(num=map_index,figsize=(14, 8))
ax1=plt.subplot2grid((2,2),(0,0))
ax1.plot(middle_h[map_index,:,0],middle_h[map_index,:,1],'*b')
ax1.grid(True)
ax1.axis([-15, 15, 0, 1])
ax1.set_title('Profiles')
ax1.set_ylabel(r'$\phi$')
ax1.set_xlabel('x')

ax2=plt.subplot2grid((2,2),(1,0))
ax2.plot(middle_h[map_index,:,0],middle_h[map_index,:,2],'*r')
ax2.grid(True)
ax2.axis([-15, 15, 0, 1])
ax2.set_ylabel('c')
ax2.set_xlabel('x')

ax3=plt.subplot2grid((2,2),    (0,1),rowspan=2,aspect='equal')
sub_contour=ax3.contourf(X,Y,Z,np.linspace(0,1,11),vmin=0.)
figure.colorbar(sub_contour,ax=ax3)
figure.savefig('single_void_cyl_'+str(map_index)+'.png')
plt.close(map_index)
except:
print("failed this time: %s" %map_index)
#######

nb_proc=8 #number of processes
tasks_queue=JoinableQueue() #a queue to pile up the work to do

jobs=list(range(map)) #each job is composed of a map
print("inserting jobs in the queue...")
for job in jobs:
print("done")

#launch the processes
for i in range(nb_proc):

you could also try pool = multiprocessing.Pool() for result in pool.imap_unordered(process_job, jobs): pass –  J.F. Sebastian Dec 13 '12 at 16:28