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Merge pull request #3062 from juliantaylor/double-pyximport-test...
Merge pull request #3062 from juliantaylor/double-pyximport-test test double pyximport (#3007)

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plotting_backend.py
58 lines | 1.8 KiB | text/x-python | PythonLexer
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remove kernel examples already ported to newparallel
r3675 """An example of how to use IPython for plotting remote parallel data
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r3670
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r3675 The two files plotting_frontend.py and plotting_backend.py go together.
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updates to docs and examples
r3670
Bernardo B. Marques
remove all trailling spaces
r4872 This file (plotting_backend.py) performs the actual computation. For this
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updates to docs and examples
r3670 example, the computation just generates a set of random numbers that
Bernardo B. Marques
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r4872 look like a distribution of particles with 2D position (x,y) and
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r3670 momentum (px,py). In a real situation, this file would do some time
consuming and complicated calculation, and could possibly make calls
to MPI.
One important feature is that this script can also be run standalone without
Bernardo B. Marques
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r4872 IPython. This is nice as it allows it to be run in more traditional
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r3670 settings where IPython isn't being used.
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r3675 When used with IPython.parallel, this code is run on the engines. Because this
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r3670 code doesn't make any plots, the engines don't have to have any plotting
packages installed.
"""
Thomas Kluyver
Update print syntax in parallel examples.
r6455 from __future__ import print_function
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r3670
# Imports
import numpy as N
import time
import random
# Functions
def compute_particles(number):
x = N.random.standard_normal(number)
y = N.random.standard_normal(number)
px = N.random.standard_normal(number)
py = N.random.standard_normal(number)
return x, y, px, py
def downsample(array, k):
"""Choose k random elements of array."""
length = array.shape[0]
indices = random.sample(xrange(length), k)
return array[indices]
# Parameters of the run
number = 100000
d_number = 1000
# The actual run
time.sleep(0) # Pretend it took a while
x, y, px, py = compute_particles(number)
# Now downsample the data
downx = downsample(x, d_number)
downy = downsample(x, d_number)
downpx = downsample(px, d_number)
downpy = downsample(py, d_number)
Thomas Kluyver
Update print syntax in parallel examples.
r6455 print("downx: ", downx[:10])
print("downy: ", downy[:10])
print("downpx: ", downpx[:10])
print("downpy: ", downpy[:10])