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I have a text file with two columns, x and y. How do I plot them using matplotlib?

Also, how do I open multiple text files from different directories and plot them on a single graph with legends?

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2 Answers 2

This is relatively simple if you use pylab (included with matplotlib) instead of matplotlib directly. Start off with a list of filenames and legend names, like [ ('name of file 1', 'label 1'), ('name of file 2', 'label 2'), ...]. Then you can use something like the following:

import pylab

datalist = [ ( pylab.loadtxt(filename), label ) for filename, label in list_of_files ]

for data, label in datalist:
    pylab.plot( data[:,0], data[:,1], label=label )

pylab.legend()
pylab.title("Title of Plot")
pylab.xlabel("X Axis Label")
pylab.ylabel("Y Axis Label")

You also might want to add something like fmt='o' to the plot command, in order to change from a line to points. By default, matplotlib with pylab plots onto the same figure without clearing it, so you can just run the plot command multiple times.

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Thank You for helping me, but i am running in to some problems. What is the purpose for "list_of_files". In addition, when i type pylab.plot( data[:,0], data[:,1], label=label ) i get this [<matplotlib.lines.Line2D object at 0x3daac10>]. IF you could help me that be great thank You. –  Hiren Jun 29 '12 at 23:03
    
The list_of_files is for if you want to plot multiple files: just do something like list_of_files = [ ('path to file 1', 'label 1'), ('path to file 2', 'label 2'), ...], and the code will plot all of them on the same plot with those labels. As for the output you get, that's the usual output; the plot should show up in a separate window? If not, you have a problem with your matplotlib installation. Are you using ipython? If so, are you using ipython notebook or just standard ipython? –  cge Jun 30 '12 at 20:20
    
Thank You and i am able to make it wrk now. I have one issue though which is that the saved plot has old graphs in the new graph and only way for me to have a new graphs is by restarting the python IDLE. Do you why that is? i want to have multiple graphs but not with previous graph from last figure/ graph. –  Hiren Jul 2 '12 at 18:52
    
I was able to fix this by having a figure() command before the plot. Thank You. –  Hiren Jul 2 '12 at 18:56
    
@Hiren If it resolved your question, would you please accept it as answer? –  Sanju Aug 26 '14 at 12:00

Assume your file looks like this and is named test.txt (space delimited):

1 2
3 4
5 6
7 8

Then:

#!/usr/bin/python

import numpy as np
import matplotlib.pyplot as plt

with open("test.txt") as f:
    data = f.read()

data = data.split('\n')

x = [row.split(' ')[0] for row in data]
y = [row.split(' ')[1] for row in data]

fig = plt.figure()

ax1 = fig.add_subplot(111)

ax1.set_title("Plot title...")    
ax1.set_xlabel('your x label..')
ax1.set_ylabel('your y label...')

ax1.plot(x,y, c='r', label='the data')

leg = ax1.legend()

plt.show()

Example plot:

I find that browsing the gallery of plots on the matplotlib site helpful for figuring out legends and axes labels.

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Why would you interpret the data directly instead of using np.loadtxt? –  cge Jun 28 '12 at 17:01
    
I have never had much luck with np.loadtxt (usually have messier input files), but for this simple example, it would probably work great. –  tbc Jun 28 '12 at 17:02
    
Why not use the csv module with delimiter set to space? –  Dhara Jun 28 '12 at 18:23
    
Or, for that matter, numpy.genfromtxt. There are many implemented ways to load text data into numpy. –  cge Jun 28 '12 at 20:30

protected by tcaswell Feb 21 '14 at 16:01

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