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What are the available numpy.loadtxt or numpy.genfromtxt for importing table data with varying datatypes, and what are the available abbreviations for the use(e.g. i32 for integer)?

This post demonstrates the use of conditions, which I was curious if somebody might elaborate on.

Thanks!

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1  
    
@JonClements: You should post that as an answer. (I'm not sure if SO allows answers that short, but there's really nothing else to say beyond those two links…) – abarnert Dec 21 '12 at 21:07
    
@Jon Clements. Yeah, I hadn't found that, but this is clear as day for me now. Thanks. – ryanjdillon Dec 21 '12 at 21:09
    
@abarnert well - had a crack at making it look like a reasonable answer anyhow – Jon Clements Dec 21 '12 at 21:20
2  
@shootingstars If you edit the post then existing votes become "unlocked" and can be removed - but that relies on the two downvoters (neither of them myself) to notice and amend their vote. (So I think, you're basically stuck with it) – Jon Clements Dec 24 '12 at 15:21
up vote 7 down vote accepted

In addition to np.sctypeDict, there are these variables:

In [141]: np.typecodes
Out[141]: 
{'All': '?bhilqpBHILQPefdgFDGSUVOMm',
 'AllFloat': 'efdgFDG',
 'AllInteger': 'bBhHiIlLqQpP',
 'Character': 'c',
 'Complex': 'FDG',
 'Datetime': 'Mm',
 'Float': 'efdg',
 'Integer': 'bhilqp',
 'UnsignedInteger': 'BHILQP'}

In [143]: np.sctypes
Out[143]: 
{'complex': [numpy.complex64, numpy.complex128, numpy.complex192],
 'float': [numpy.float16, numpy.float32, numpy.float64, numpy.float96],
 'int': [numpy.int8, numpy.int16, numpy.int32, numpy.int32, numpy.int64],
 'others': [bool, object, str, unicode, numpy.void],
 'uint': [numpy.uint8, numpy.uint16, numpy.uint32, numpy.uint32, numpy.uint64]}
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Generic info about dtypes: http://docs.scipy.org/doc/numpy/reference/arrays.dtypes.html

From http://docs.scipy.org/doc/numpy/reference/arrays.scalars.html#arrays-scalars-built-in

In NumPy, there are 24 new fundamental Python types to describe different types of scalars. These type descriptors are mostly based on the types available in the C language that CPython is written in, with several additional types compatible with Python’s types.

And what I didn't realise, is:

The C-like names are associated with character codes, which are shown in the table. Use of the character codes, however, is discouraged.

I doubt the numpy code/doc base is going anyway anytime soon, so that says it all I guess!

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+1 (Although conceivably, the numpy doc base could move away from docs.scipy.org without actually going away, as the numpy top-level page recently moved away…) – abarnert Dec 21 '12 at 21:23
    
@abarnert I just learnt something new as well looking that page up - just going to put that in an edit – Jon Clements Dec 21 '12 at 21:24
    
Ironic, scipy.org is offline today – Pierre Apr 25 '14 at 22:06

for k, v in np.sctypeDict.iteritems(): print '{0:14s} : {1:40s}'.format(str(k), v)

Q              : <type 'numpy.uint64'>      
U              : <type 'numpy.unicode_'>
a              : <type 'numpy.string_'>

etc.

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