Created
December 10, 2011 00:11
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Asynchronous Plotting in Matplotlib: rather than call savefig directly, add plots to an asynchronous queue to avoid holding up the main program. Makes use of multiple processes to speed up the writing out. Suggestions welcome!
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import time | |
import multiprocessing as mp | |
import numpy as np | |
import matplotlib | |
matplotlib.use('Agg') | |
import matplotlib.pyplot as plt | |
class AsyncPlotter(): | |
def __init__(self, processes=mp.cpu_count()): | |
self.manager = mp.Manager() | |
self.nc = self.manager.Value('i', 0) | |
self.pids = [] | |
self.processes = processes | |
def async_plotter(self, nc, fig, filename, processes): | |
while nc.value >= processes: | |
time.sleep(0.1) | |
nc.value += 1 | |
print "Plotting " + filename | |
fig.savefig(filename) | |
plt.close(fig) | |
nc.value -= 1 | |
def save(self, fig, filename): | |
p = mp.Process(target=self.async_plotter, | |
args=(self.nc, fig, filename, self.processes)) | |
p.start() | |
self.pids.append(p) | |
def join(self): | |
for p in self.pids: | |
p.join() | |
# Create instance of Asynchronous plotter | |
a = AsyncPlotter() | |
for i in range(10): | |
print 'Preparing %04i.png' % i | |
# Generate random points | |
x = np.random.random(10000) | |
y = np.random.random(10000) | |
# Generate figure | |
fig = plt.figure() | |
ax = fig.add_subplot(1, 1, 1) | |
ax.set_xscale('log') | |
ax.set_yscale('log') | |
ax.scatter(x, y) | |
# Add figure to queue | |
a.save(fig, '%04i.png' % i) | |
# Wait for all plots to finish | |
a.join() |
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when I run this, I get the following
I was able to resolve this by changing the default start method to
fork
mp.set_start_method("fork")
Note that this might be due to my python version: Running 3.7