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I deal with simulation data and have been using matplotlib a lot lately and have been encountering something (a bug?) that's annoying.

I have been allowing matplotlib to automatically set the tick labels and their type (scientific, etc) and with some data I get weird scientific ticker labels.

In searching for a resolution to this I found that you can call set_powerlimits((n,m)) to set the the limits of data that will be displayed using scientific notation. But I have encountered this problem (if I remember correctly) with data spanning several orders of magnitude, also my data is all over the place so I need a programmatic solution of some sort, not a hard set solution. see: http://matplotlib.org/api/ticker_api.html

Below I have included example data, code, and a screenshot.

#! /usr/bin/env python
from matplotlib import pyplot as plt

data = [
[1.83186088e-08,0.03275],
[1.07139009e-07,0.03275],
[2.06376627e-07,0.03275],
[3.03918517e-07,0.03275],
[4.06032883e-07,0.03275],
[5.01194017e-07,0.03275],
[6.02195723e-07,0.03275],
[7.03536925e-07,0.03275],
[8.04625154e-07,0.03275],
[9.06401951e-07,0.03275],
[1.00041895e-06,0.03275],
[1.10230745e-06,0.03275],
[1.2042525e-06,0.03275],
[1.30647822e-06,0.03275],
[1.40109887e-06,0.03275],
[1.50380097e-06,0.03275],
[1.60683242e-06,0.03275],
[1.70208505e-06,0.03275],
[1.80545692e-06,0.03275],
[1.90090648e-06,0.03275],
[2.00453092e-06,0.03275],
[2.10018627e-06,0.03275],
[2.20401747e-06,0.03275],
[2.30009359e-06,0.03275],
[2.4043033e-06,0.03275],
[2.50066449e-06,0.03275],
[2.60513728e-06,0.03275],
[2.70165405e-06,0.03275],
[2.80635938e-06,0.03275],
[2.90331342e-06,0.03275],
[3.00021199e-06,0.03275],
[3.10546819e-06,0.03275],
[3.20257899e-06,0.03275],
[3.30032923e-06,0.0327499999],
[3.40612833e-06,0.0327499999],
[3.50401732e-06,0.0327499997],
[3.60153069e-06,0.0327499996],
[3.70700708e-06,0.0327499993],
[3.80456907e-06,0.0327499988],
[3.90259984e-06,0.0327499982],
[4.00084149e-06,0.0327499973],
[4.10700266e-06,0.0327499959],
[4.2047462e-06,0.0327499942],
[4.30209468e-06,0.0327499918],
[4.40018204e-06,0.0327499886],
[4.50712875e-06,0.032749984],
[4.60630591e-06,0.0327499785],
[4.70519881e-06,0.0327499715],
[4.80398305e-06,0.0327499628],
[4.90251297e-06,0.0327499521],
[5.00182752e-06,0.032749939],
[5.10157551e-06,0.0327499232],
[5.20157575e-06,0.0327499043],
[5.30145192e-06,0.0327498822],
[5.40127044e-06,0.0327498565],
[5.500537e-06,0.0327498272],
[5.60773155e-06,0.0327497911],
[5.70660709e-06,0.0327497534],
[5.80610521e-06,0.0327497112],
[5.90651786e-06,0.0327496642],
[6.00749437e-06,0.0327496124],
[6.10822094e-06,0.0327495566],
[6.20042255e-06,0.0327495018],
[6.30049028e-06,0.0327494386],
[6.40035803e-06,0.0327493715],
[6.50035477e-06,0.0327493004],
[6.60056805e-06,0.0327492251],
[6.70029936e-06,0.0327491461],
[6.80054193e-06,0.0327490625],
[6.90130872e-06,0.0327489743],
[7.00202598e-06,0.0327488818],
[7.10217348e-06,0.0327487855],
[7.20243015e-06,0.0327486847],
[7.30199609e-06,0.0327485801],
[7.40193254e-06,0.0327484707],
[7.50188319e-06,0.0327483567],
[7.60306205e-06,0.0327482367],
[7.70357184e-06,0.0327481129],
[7.80343389e-06,0.0327479853],
[7.90330165e-06,0.0327478532],
[8.00348513e-06,0.0327477162],
[8.10167039e-06,0.0327475777],
[8.206328e-06,0.0327474253],
[8.3020567e-06,0.0327472819],
[8.40527826e-06,0.0327471228],
[8.50095898e-06,0.0327469714],
[8.60536828e-06,0.0327468019],
[8.70106059e-06,0.0327466426],
[8.80396558e-06,0.032746467],
[8.90727378e-06,0.0327462865],
[9.00225164e-06,0.0327461166],
[9.10359892e-06,0.0327459311],
[9.20470894e-06,0.0327457418],
[9.30582982e-06,0.0327455481],
[9.40750123e-06,0.0327453488],
[9.50134495e-06,0.0327451608],
[9.60358199e-06,0.0327449513],
[9.70705637e-06,0.0327447344],
[9.80377546e-06,0.0327445269],
[9.90091941e-06,0.032744314],
]

times=[]
vals=[]
for elem in data:
  times.append(elem[0])
  vals.append(elem[1])

plt.plot(times,vals)
plt.show()  

screen_shot

share|improve this question
5  
Er, what's wrong with a logarithmic axis? –  kreativitea Oct 17 '12 at 0:35
    
+1 for log scale or even just linearly rescale the data by yourself. –  Bitwise Oct 17 '12 at 2:03
1  
Also instead of looping over data and splitting it into two lists you can use the zip function. times, vals = zip(*data) –  Mr. Squig Oct 17 '12 at 13:32

3 Answers 3

You might try using the Engineering Formatter:

times=[]
vals=[]
for elem in data:
  times.append(elem[0])
  vals.append(elem[1])

plt.plot(times,vals)
plt.show()

formatter = matplotlib.ticker.EngFormatter(unit='S', places=3)
formatter.ENG_PREFIXES[-6] = 'u'
plt.axes().yaxis.set_major_formatter(formatter)

Which will look like this: Like this

share|improve this answer
    
I didn't know about the EngFormatter, nice trick, athough in this case is not a goot choice. As you can see, in the y-axis, there are 6 ticks labeled as 32.7 mS. –  Pablo Navarro Oct 17 '12 at 14:58
1  
You're right Pablo, I just edited the post and updated the places parameter to improve that. –  Chris Zeh Oct 17 '12 at 15:45

This is a known problem. You'd be better to analyse the data manually for its limits, like you have done in the screen shot, and use ax.set_ylim(min, max) yourself after plotting. You can also turn off the offset with:

import matplotlib.ticker as mticker

# plot some stuff
# ...

y_formatter = mticker.ScalarFormatter(useOffset=False)
ax.yaxis.set_major_formatter(y_formatter)
share|improve this answer

I think that you best option is to use logaritmic axis, but if you need to create the graphic with linear axis, you must set the power limits yourself. You can compute the power limits using math.log10:

import math
from matplotlib import ticker

# Compute the span of the data
pow_min = math.floor(math.log10(min(vals)))
pow_max = math.ceil(math.log10(max(vals)))

# Create a scalar formatter without offset, in order to have
# the right exponent over the yaxis
fmt = ticker.ScalarFormatter(useOffset=False)
fmt.set_powerlimits((pow_min, pow_max))

fig = plt.figure()
ax1 = fig.add_subplot(1, 1, 1)
ax1.plot(times, vals)
ax1.yaxis.set_major_formatter(fmt)  # Set the formatter
share|improve this answer

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