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with one array of strings and the other array of numbers, like

str_arr = np.array(['object1_short', 'object2_intermidiate', 'object3_long'])


flt_arr = np.array([10.01234235, 11.01234235, 12.023432])

How can I specified fmt in np.savetxt so that the text file will be

object1    10.01
object2    11.01
object3    12.02

, i.e., two arrays in %7s and %4.2f respectively.

I really want to use numpy.savetxt to do this, but directly specifying

np.savetxt("output.txt", np.vstack([str_arr, flt_arr]).T), fmt = '%7s %4.2f')

seems doesnot work. Is it doable with savetxt at all? I really prefer a numpy.array based solution rather than going for spliting and reformating using list comprehensions, or recarrays.


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What's wrong with structured/record arrays? –  Michael Hoffman Sep 30 '11 at 23:27
@MichaelHoffman just because there are many such ndarrays created in the current code (not mine), and the orginal code directly dump the vstacked content to output without formatting, so I want to know if there is a straightforward way to format them without much refactoring the original code. –  nye17 Sep 30 '11 at 23:33

1 Answer 1

up vote 1 down vote accepted

You can't make an ndarray of nonhomogeneous array types, so stacking str_arr and flt_arr won't work. You could start by converting flt_arr into an array of strs doing something like this:

>>> np.char.mod("%4.2f", flt_arr)
array(['10.01', '11.01', '12.02'], 
share|improve this answer
Yup, this is what I am using right now, maybe the closest I can get without refactoring the current code. –  nye17 Sep 30 '11 at 23:31
Nice, this is pretty close to what the asker wants, I wasn't thinking hard enough. I suppose you could explicitly do the formatting ahead of time, f42_arr = np.array(['%4.2f' % x for x in flt_arr]) though this is edging toward what the asker doesn't want, "reformating using list comprehensions." –  Thomas Sep 30 '11 at 23:37
Looks like you can do that after all with numpy.char.mod() so I've edited my answer to change from astype() to reflect that. –  Michael Hoffman Sep 30 '11 at 23:54
@MichaelHoffman Awesome! Thanks! –  nye17 Oct 1 '11 at 3:16

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