##// END OF EJS Templates
Misc updates the display system....
Misc updates the display system. * PNG base64 encoding is now done at the ZMQ level, not in the display formatter itself. * All formatters are documented as to the exact nature of their return value. PNGs are not base64 encoded, LaTeX must include $/$$, Javascript should not have the <script> tags, etc. * Updated the Circle display example in docs/examples/core. * Renamed the sympy printing extension to sympyprinting.py.

File last commit:

r3670:45e272d0
r3880:e7df0ac1
Show More
plotting_frontend.py
59 lines | 1.5 KiB | text/x-python | PythonLexer
"""An example of how to use IPython1 for plotting remote parallel data
The two files plotting_frontend.py and plotting_backend.py go together.
To run this example, first start the IPython controller and 4
engines::
ipclusterz start -n 4
Then start ipython in pylab mode::
ipython -pylab
Then a simple "run plotting_frontend.py" in IPython will run the
example. When this is done, all the variables (such as number, downx, etc.)
are available in IPython, so for example you can make additional plots.
"""
import numpy as N
from pylab import *
from IPython.parallel import Client
# Connect to the cluster
rc = Client()
view = rc[:]
# Run the simulation on all the engines
view.run('plotting_backend.py')
# Bring back the data. These are all AsyncResult objects
number = view.pull('number')
d_number = view.pull('d_number')
downx = view.gather('downx')
downy = view.gather('downy')
downpx = view.gather('downpx')
downpy = view.gather('downpy')
# but we can still iterate through AsyncResults before they are done
print "number: ", sum(number)
print "downsampled number: ", sum(d_number)
# Make a scatter plot of the gathered data
# These calls to matplotlib could be replaced by calls to pygist or
# another plotting package.
figure(1)
# wait for downx/y
downx = downx.get()
downy = downy.get()
scatter(downx, downy)
xlabel('x')
ylabel('y')
figure(2)
# wait for downpx/y
downpx = downpx.get()
downpy = downpy.get()
scatter(downpx, downpy)
xlabel('px')
ylabel('py')
show()