10

I use the following code to create a numpy-ndarray. The file has 9 columns. I explicitly type each column:

dataset = np.genfromtxt("data.csv", delimiter=",",dtype=('|S1', float, float,float,float,float,float,float,int))

Now I would like to get some descriptive statistics for each column (min, max, stdev, mean, median, etc.). Shouldn't there be an easy way to do this?

I tried this:

from scipy import stats
stats.describe(dataset)

but this returns an error: TypeError: cannot perform reduce with flexible type

My question is: How can I get descriptive statistics of the created numpy-ndarray.

  • 1
    I think the error is because there are multiple dtype's in your array. Especially a string would be problematic to describe statistically. Perhaps you could just loop over each of your columns, and describe the columns separately? – M.T Jul 26 '16 at 7:39
  • Thanks for the answer. How can I just access, for instance, the second column of the array? I tried stats.describe(dataset[2]) but it yields the same error as in my OP. – beta Jul 26 '16 at 7:40
  • I suspect there is maybe something wrong with my array? How should a proper numpy-array based on a CSV file look like? mine looks like this, if I print it: pastebin.com/MYyqbSG0 – beta Jul 26 '16 at 7:44
  • Do you get the same error if you do stats.describe(dataset[2].astype(float))? – M.T Jul 26 '16 at 7:44
  • 2
    @beta If you are dealing with non-uniform data (looks like you are), you should have a look at pandas which is much more powerful for such kind of thing. – Holt Jul 26 '16 at 7:45
10

This is not a pretty solution, but it get the job done. The problem is that by specifying multiple dtypes, you are essentially making a 1D-array of tuples (actually np.void), which cannot be described by stats as it includes multiple different types, incl. strings.

This could be resolved by either reading it in two rounds, or using pandas with read_csv.

If you decide to stick to numpy:

import numpy as np
a = np.genfromtxt('sample.txt', delimiter=",",unpack=True,usecols=range(1,9))
s = np.genfromtxt('sample.txt', delimiter=",",unpack=True,usecols=0,dtype='|S1')

from scipy import stats
for arr in a: #do not need the loop at this point, but looks prettier
    print(stats.describe(arr))
#Output per print:
DescribeResult(nobs=6, minmax=(0.34999999999999998, 0.70999999999999996), mean=0.54500000000000004, variance=0.016599999999999997, skewness=-0.3049304880932534, kurtosis=-0.9943046886340534)

Note that in this example the final array has dtype as float, not int, but can easily (if necessary) be converted to int using arr.astype(int)

  • This use of usecols is good. I don't think you need unpack. – hpaulj Jul 26 '16 at 17:02
  • @hpaulj If one accesses the data the way you show in your answer (which I think deserves to be the accepted answer), then unpack is unnecessary. Still, in my experience, both with genfromtxt and loadtxt I find I always work with columns (ie. the transposed of the normal output) when dealing with scientific data from csv-like documents. It is also less easy to loop over the recarray fields. – M.T Jul 27 '16 at 7:04
3

The question of how to deal with mixed data from genfromtxt comes up often. People expect a 2d array, and instead get a 1d that they can't index by column. That's because they get a structured array - with different dtype for each column.

All the examples in the genfromtxt doc show this:

>>> s = StringIO("1,1.3,abcde")
>>> data = np.genfromtxt(s, dtype=[('myint','i8'),('myfloat','f8'),
... ('mystring','S5')], delimiter=",")
>>> data
array((1, 1.3, 'abcde'),
      dtype=[('myint', '<i8'), ('myfloat', '<f8'), ('mystring', '|S5')])

But let me demonstrate how to access this kind of data

In [361]: txt=b"""A, 1,2,3
     ...: B,4,5,6
     ...: """
In [362]: data=np.genfromtxt(txt.splitlines(),delimiter=',',dtype=('S1,int,float,int'))
In [363]: data
Out[363]: 
array([(b'A', 1, 2.0, 3), (b'B', 4, 5.0, 6)], 
      dtype=[('f0', 'S1'), ('f1', '<i4'), ('f2', '<f8'), ('f3', '<i4')])

So my array has 2 records (check the shape), which are displayed as tuples in a list.

You access fields by name, not by column number (do I need to add a structured array documentation link?)

In [364]: data['f0']
Out[364]: 
array([b'A', b'B'], 
      dtype='|S1')
In [365]: data['f1']
Out[365]: array([1, 4])

In a case like this might be more useful if I choose a dtype with 'subarrays'. This a more advanced dtype topic

In [367]: data=np.genfromtxt(txt.splitlines(),delimiter=',',dtype=('S1,(3)float'))
In [368]: data
Out[368]: 
array([(b'A', [1.0, 2.0, 3.0]), (b'B', [4.0, 5.0, 6.0])], 
      dtype=[('f0', 'S1'), ('f1', '<f8', (3,))])
In [369]: data['f1']
Out[369]: 
array([[ 1.,  2.,  3.],
       [ 4.,  5.,  6.]])

The character column is still loaded as S1, but the numbers are now in a 3 column array. Note that they are all float (or int).

In [371]: from scipy import stats
In [372]: stats.describe(data['f1'])
Out[372]: DescribeResult(nobs=2, 
   minmax=(array([ 1.,  2.,  3.]), array([ 4.,  5.,  6.])),
   mean=array([ 2.5,  3.5,  4.5]), 
   variance=array([ 4.5,  4.5,  4.5]), 
   skewness=array([ 0.,  0.,  0.]), 
   kurtosis=array([-2., -2., -2.]))

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