This should be easy.
Here's my array (rather, a method of generating representative test arrays):
>>> ri = numpy.random.randint >>> ri2 = lambda x: ''.join(ri(0,9,x).astype('S')) >>> a = array([float(ri2(x)+ '.' + ri2(y)) for x,y in ri(1,10,(10,2))]) >>> a array([ 7.99914000e+01, 2.08000000e+01, 3.94000000e+02, 4.66100000e+03, 5.00000000e+00, 1.72575100e+03, 3.91500000e+02, 1.90610000e+04, 1.16247000e+04, 3.53920000e+02])
I want a list of strings where '\n'.join(list_o_strings) would print:
79.9914 20.8 394.0 4661.0 5.0 1725.751 391.5 19061.0 11624.7 353.92
I want to space pad to the left and the right (but no more than necessary).
I want a zero after the decimal if that is all that is after the decimal.
I do not want scientific notation.
..and I do not want to lose any significant digits. (in 353.98000000000002 the 2 is not significant)
Yeah, it's nice to want..
%g, %fx.x, etc. are either befuddling me, or can't do it.
I have not tried
import decimal yet. I can't see that NumPy does it either (although, the
array.__repr__ are decimal aligned (but sometimes return scientific).
Oh, and speed counts. I'm dealing with big arrays here.
My current solution approaches are:
- to str(a) and parse off NumPy's brackets
- to str(e) each element in the array and split('.') then pad and reconstruct
- to a.astype('S'+str(i)) where i is the max(len(str(a))), then pad
It seems like there should be some off-the-shelf solution out there... (but not required)
Top suggestion fails with when
dtype is float64:
>>> a array([ 5.50056103e+02, 6.77383566e+03, 6.01001513e+05, 3.55425142e+08, 7.07254875e+05, 8.83174744e+02, 8.22320510e+01, 4.25076609e+08, 6.28662635e+07, 1.56503068e+02]) >>> ut0 = re.compile(r'(\d)0+$') >>> thelist = [ut0.sub(r'\1', "%12f" % x) for x in a] >>> print '\n'.join(thelist) 550.056103 6773.835663 601001.513 355425141.8471 707254.875038 883.174744 82.232051 425076608.7676 62866263.55 156.503068