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I have a .dat file that contains two columns of numbers so it looks something like this:

111    112
110.9  109
103    103

and so on.

I want to plot the two columns against one another. I have never dealt with a .dat file before so I am not sure where to start.

So far I figured out that numpy has something I can use to call.

data = numpy.loadtxt('data.DAT')

but I'm not sure where to go from here. Any ideas?

share|improve this question
so then you have a 2d array of points ... this has nothing to do with *.dat file could be anything *.txt would work exactly the same... your real question is "How Do I plot a numpy array?" – Joran Beasley Sep 7 '12 at 4:35
It's easy in gnuplot ;^). plot 'yourfile.dat' u 1:2 (but of course, that doesn't address the actual question ...) – mgilson Sep 7 '12 at 4:35
You can use Scavis that interfaces NumPy (or JNumeric in Java) as explained in the Scavis manual – user3247168 Jan 29 '14 at 3:36
up vote 8 down vote accepted

Numpy doesn't support plotting by itself. You usually would use matplotlib for plotting numpy arrays.

If you just want to "look into the file", I think the easiest way would be to use plotfile.

import matplotlib.pyplot as plt 

plt.plotfile('data.dat', delimiter=' ', cols=(0, 1), 
             names=('col1', 'col2'), marker='o')

You can use this function almost like gnuplot from within ipython:

$ ipython --pylab
In [1]: plt.plotfile('data.dat', delimiter=' ', cols=(0, 1), 
...                  names=('col1', 'col2'), marker='o')

or put it in a shell script and pass the arguments to it to use it directly from your shell


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Thanks a lot. This definitely does the job! – Dax Feliz Sep 8 '12 at 17:17
import numpy as np
import matplotlib.pyplot as plot
#data = np.loadtxt("plot_me.dat")
#x,y=np.loadtxt("plot_me.dat",unpack=True) #thanks warren!
#x,y =  zip(*data)
#plot.plot(x, y, linewidth=2.0)
plot.plot(*np.loadtxt("plot_me.dat",unpack=True), linewidth=2.0)

[Edit]Thanks for the tip i think its as compact as possible now :P

plot 1

If you want it to be log10 just call log10 on the nparray)

plot.plot(*np.log10(np.loadtxt("plot_me.dat",unpack=True)), linewidth=2.0)


share|improve this answer
You can make the code even more concise by using the unpack keyword in loadtxt: x, y = np.loadtxt('plot_me.dat', unpack=True) – Warren Weckesser Sep 7 '12 at 5:15
Thanks a lot! Do you know how I could take the log_10 of these columns? – Dax Feliz Sep 8 '12 at 17:46
I think just plot.plot(*np.log10(np.loadtxt("plot_me.dat",unpack=True)), linewidth=2.0) – Joran Beasley Sep 8 '12 at 17:51

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