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I've got a CSV file with data such as

350, -0.042447984
349, -0.041671798
348, -0.04158416
347, -0.041811798
346, -0.041716855

Though I've got a lot more data. What I am trying to do is have the first column (350, 349, etc.) be defined as my x-values, and the second column (-0.042447984, -0.041671798, etc.) be defined as my y-values. This is my code so far:

import pylab
x=[350, 349, 348, 347, 346]
y=[-0.042447984, -0.041671798, -0.04158416, -0.041811798, -0.041716855]
pylab.plot(x, y)
pylab.show()

However, instead of manually entering the numbers I'm trying to write a program that will extract column 1 from my CSV file as the x-values and column 2 as the y-values. It's probably something much simpler than I'm trying to make it. I'm new at python, so bare with me!

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Have a look at the python standard csv module. –  mgilson Jul 27 '12 at 18:51
    
I have, am I missing something? –  user1558497 Jul 27 '12 at 18:56
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2 Answers 2

This will get you started:

import csv

with open('data.txt') as inf:
    x = []
    y = []
    for line in csv.reader(inf):
        tx, ty = line
        x.append(int(tx))
        y.append(float(ty))

lists x, and y will respectively contain:

[350, 349, 348, 347, 346]
[-0.042447984, -0.041671798, -0.04158416, -0.041811798, -0.041716855]

Notes:

Using with to open the file will take care of closing it when we're done with it or an exception is encountered. The csv module will read the input data line by line and split each line into a list based on the comma separator. The first item is converted to int, the second to float before being appended to the respective lists.

File data.txt contains your sample data.

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Assuming that your csv file is in the format you've described, I'd probably use loadtxt.

>>> d = numpy.loadtxt("plot1.csv", delimiter=",")
>>> d
array([[  3.50000000e+02,  -4.24479840e-02],
       [  3.49000000e+02,  -4.16717980e-02],
       [  3.48000000e+02,  -4.15841600e-02],
       [  3.47000000e+02,  -4.18117980e-02],
       [  3.46000000e+02,  -4.17168550e-02]])

and there are lots of ways to get x and y from this:

>>> x,y = numpy.loadtxt("plot1.csv", delimiter=",", unpack=True)
>>> x
array([ 350.,  349.,  348.,  347.,  346.])
>>> y
array([-0.04244798, -0.0416718 , -0.04158416, -0.0418118 , -0.04171685])

or x,y = d.T or d[:,0], d[:,1], etc.

The more complicated the format, the better off you are to work with the csv module directly. Although loadtxt has lots of options, often you need finer control than it gives.

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I agree, I usually start with loadtxt, move up to genfromtxt if I need a little more flexibility, and then csv if the first two don't pan out. –  ChrisC Jul 27 '12 at 19:46
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