Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am trying to load a csv file consisting just from float types.

data = np.genfromtxt(self.file,dtype=float,delimiter=self.delimiter,names = True)

but this returns an array of tuples. Based on my search this should return tuples only for non-homogenous arrays. numpy.genfromtxt produces array of what looks like tuples, not a 2D array—why?. When I remove the names=True, it really does return an 2d array. Is it possible to return an array with names as it is in the link?

Lines from the csv:

0 _id|1 age|2 unkown|3 male|4 female|5 match-start|6 score
8645632250|7744|0|1|0|1|10

(there is more columns, I just wrote the first six of them.)

I also used this code for better names of columns:

def obtain_data(self):
with open(self.file, 'r') as infile:
  first_line = infile.readline()
  labels = first_line.split('|')
  labels = list(map(trunc_before,labels))
  data = np.genfromtxt(self.file,dtype=float,delimiter=self.delimiter,names = labels,skip_header=1)
  return data,  np.asarray(labels)
share|improve this question

1 Answer 1

up vote 4 down vote accepted

It sounds like you're asking whether it's possible to have a standard 2d array while also having named columns. It isn't. (At least not in the sense you seem to be asking.)

An "array with names" is a structured array -- it's an array of records (not really tuples), each of which has named fields. Think of it this way: the names aren't attached to the array, they're attached to the "tuples" -- the records. The fact that the data is of a homogenous type doesn't matter.

share|improve this answer
    
Ok, I knew that about array of records etc but still I somewhat thought that is is possible to have an array with column names. It seems that if I want named array I need to write my own class or use [pandas.pydata.org/](Pandas). Btw, do you know if is there any difference in performance between structured arrays and normal arrays in numpy? –  Pter Sep 4 '13 at 12:06
    
Yes I think Pandas provides support for things like that. Record arrays should perform about as well as regular arrays for most things. There are actually two closely-related forms -- record arrays and structured arrays -- and you can read about the difference here. The main speed concern that I'm aware of involves attribute access to record arrays (which isn't possible with structured arrays). If you have a record array with a 'age' field, you can access it like this: myarray['age'] or myarray.age. But the latter can be slow. –  senderle Sep 4 '13 at 12:58

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.