# Plotting three data sets on a single plot using matplotlib

I am still getting my feet with python, so apologies if this is a very simple question.

I have an output file which contains 5 columns, as follows:

``````Depth Data#1 Data#2 Data#3 Standard_deviation
``````

These columns contain 500 values, if this makes any difference.

What I am trying to do is simply plot data#1, data#2, and data#3 (on the x axis) against depth (on the y axis). I would like data#1 to be blue, and data#2 and data#3 to each be red.

The figsize I would like is (14,6).

I don't want the column containing standard deviation to be plotted here. If it is simpler, I can simply remove that column from the output.

Thanks in advance for any help!

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With nearly everything with matplotlib, the way I go about it if i don't know how to do it already, is to just scan through the Gallery to find something that looks similar to what i want to do, and then alter the code there already.

This one has most of what you want in it:

http://matplotlib.org/examples/style_sheets/plot_fivethirtyeight.html

``````"""
This shows an example of the "fivethirtyeight" styling, which
tries to replicate the styles from FiveThirtyEight.com.
"""

from matplotlib import pyplot as plt
import numpy as np

x = np.linspace(0, 10)

with plt.style.context('fivethirtyeight'):
plt.plot(x, np.sin(x) + x + np.random.randn(50))
plt.plot(x, np.sin(x) + 0.5 * x + np.random.randn(50))
plt.plot(x, np.sin(x) + 2 * x + np.random.randn(50))

plt.show()
``````

It does unfortunately have a load of extra stuff in it you don't want, but the part you should pick up on is that `plt.plot(...)` can just be called multiple times to plot multiple lines.

Then it's just a case of applying this;

``````from matplotlib import pyplot

#Make some data
depth = range(500)
allData = zip(*[[x, 2*x, 3*x] for x in depth])

#Set out colours
colours = ["blue", "red", "red"]

for data, colour in zip(allData, colours):
pyplot.plot(depth, data, color=colour)

pyplot.show()
``````

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+1 scanning through the gallery is also my first step:) –  dnalow Aug 27 at 10:20
Thank you for your reply. I didn't even know the gallery existed, but I will defer to it from now on. Cheers! –  Vlad Aug 27 at 10:23
I find the gallery is really helpful, as a. i can never be bothered to remember the matplotlib boilerplate crap, so i nearly always jsut take it from an example, or previous stuff i've written (i normally go with my other stuff as i much prefer the matplotlib OO approach to it's functionatl matlab style.) and b. it quite often gets new stuff added to it which you might not have known about. –  will Aug 27 at 10:27

As the question only regard plotting I am assuming you know how to read the data from the file. As for the plotting what you need is the following:

``````import matplotlib.pyplot as plt

#Create a figure with a certain size
plt.figure(figsize = (14, 6))

#Plot x versus y
plt.plot(data1, depth, color = "blue")
plt.plot(data2, depth, color = "red")
plt.plot(data3, depth, color = "red")

#Save the figure
plt.savefig("figure.png", dpi = 300, bbox_inches = "tight")

#Show the figure
plt.show()
``````

The option `bbox_inches = "tight"` in `savefig` results in removing all the excess white boundaries of the figure.

-

its matplotlibs basics:

``````import pylab as pl

pl.figure(figsize=(14,6))
pl.plot(data[:,1], data[:,0], "b")
pl.plot(data[:,2], data[:,0], "r")
pl.plot(data[:,3], data[:,0], "r")

pl.show()
``````
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Missed out `as pl` from the `import`... –  will Aug 27 at 10:28
You can set the x and y-values that should be included in the plotting figure. This is done using `xlim` and `ylim`. For example, if you only want the x-axis to include the values 2 to 8 you need to use: `pl.xlim(2, 8)`. If you want to invert a plotting axis you simply revert the numbers: `pl.xlim(8, 2)`. This of course also works for the y-axis using `ylim`. –  The Dude Aug 27 at 11:21
@TheDude A lto of the things like this in `matplotlib` have the option to either just call them with `xlim(8,2)` or with `xlim(xmin=8, xmax=2)`. Honestly, I'd really recommend the more verbose option, as it's more helpful (IMO) to people unfamiliar to `matplotlib` (or whatever framework you happen to be talking about). Also, once they understand the syntax, they can drop the keywords and then just call `xlim(8,3)` as they please - if by that point that's what they want. –  will Aug 27 at 22:25