# How to plot numpy array versus row number

Assume we have a csv file with a single column. I can plot it with ;

``````data = np.loadtxt(file)
test = data[:,0]
plot(test)
``````

and it plots test versus the row number (entries). But I want to multiply this row number so that I can plot ;

``````plot(test,row[i]*25)
``````

I think there should exist a simple way than to arrayize the row number. Any pythonic way to handle this issue ?

-
Have a look at `numpy.arange`. E.g. `y = 25 * np.arange(test.size)`. `numpy.indices`, `numpy.mgrid`, `numpy.ogrid`, `numpy.ndindex`, and `numpy.ndenumerate` are similar functions that are also useful to be aware of. – Joe Kington Apr 21 '13 at 19:42

given a data you can do :

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

data=[0,2,113,....,19,5]
x_coordinate = [ 25 * i for i in range(len(data)) ]
plt.plot(x_coordinate,data)
plt.show()
``````

you'll have all x label indexes as multiples of 25

or use the numpy array functionality:

``````x_coordinates = 25 * np.arange(test.size)
``````
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This is OK but it's not vectorised. – Benjamin Hodgson Apr 21 '13 at 20:53
If by vectorized you mean using numpy array functionnality, I have edited the answer using the numpy array function `x_coordinates = 25 * np.arange(test.size)` like Joe Kington suggested you in the comments. – Stephane Rolland Apr 21 '13 at 21:24