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I want to to write np.double to formated file:

import numpy as np
a='12 45 87 34 65';
fid.write('%5.1f %5.1f %5.1f %5.1f %5.1f ' %(s[0],s[1],s[2],s[3],s[4]))

Can this "write" row be written in a shorter way?

fid.write('%5.1f %5.1f %5.1f %5.1f %5.1f ' %(s[0],s[1],s[2],s[3],s[4]))
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7 Answers

up vote 6 down vote accepted

One way is this

In [48]: ''.join('%5.1f ' % n for n in s)
Out[48]: ' 12.0  45.0  87.0  34.0  65.0 '

Another way is

In [49]: ('%5.1f ' * len(s)) % tuple(s)
Out[49]: ' 12.0  45.0  87.0  34.0  65.0 '
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What python REPL uses In [..]: and Out[..]: –  Foo Bah Sep 27 '11 at 23:08
it is ipython . –  Wai Yip Tung Sep 27 '11 at 23:19
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fid.write(''.join(map('{:5.1f} '.format, s)))
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you could do fid.write(' '.join(["%5.1f" % c for c in s]))

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Shortest I could come up with was:

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Ack, voted for Wai Yip Tung's answer, first to get in with it. –  John Keyes Sep 27 '11 at 21:20
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Quick and easy, my friend:

fid.write('%5.1f ' * len(s) % tuple(s))
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How about casting the doubles to strings first using a list comprehension, then creating the output row.

For example:

double_strs = ["%5.1f" % number for number in s]
fid.write( " ".join(double_strs) )
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This is the fastest way:

fid.write(''.join(map(lambda x: '%5.1f'%x , s.tolist())))

It's also worth noting that your method for reading the values in can be made much faster by doing this:

>>> import numpy as np
>>> a = '12 45 87 34 65'
>>> np.fromstring(a, sep=' ')
array([ 12.,  45.,  87.,  34.,  65.])
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