2

I am a PhD student with a a data wrangling problem. I have two columns of data in a text file that follow this format:

Site  Species
A01   ACRB
A01   TBL
A02   TBL
A03   GRF   
...

I need to count how many of each species type (i.e. ACRB) there are for each Site (i.e. A01) and produce a matrix with about 60 sites and 150 species that looks like this:

Site  ACRB  TBL  GRF
A01   1      1    0
A02   0      1    0
A03   0      0    1

I would be most appreciative for any advice on how to best handle this task as I am very new to Python.

Thank you kindly, -Elizabeth

4 Answers 4

4

Here is a way to do it with Python2.7

from collections import Counter
with open("in.txt") as f:
    next(f)  # do this to skip the first row of the file
    c = Counter(tuple(row.split()) for row in f if not row.isspace())

sites = sorted(set(x[0] for x in c))
species = sorted(set(x[1] for x in c))

print 'Site\t', '\t'.join(species)
for site in sites:
    print site,'\t', '\t'.join(str(c[site, spec]) for spec in species)
3
  • I would just add next(f) when reading the input data, to skip the headers. Nice answer, clever use of the row as key for the Counter object! Aug 24, 2011 at 10:37
  • Thank you very much for the quick reply. I really apprechiate it as I am stuck with my analysis. I tried running the script using terminal in Mac by typing: python test.py < in.txt > result.csv I get the following error: Traceback (most recent call last): File "test.py", line 7, in <module> species = sorted(set(x[1] for x in c)) File "test.py", line 7, in <genexpr> species = sorted(set(x[1] for x in c)) IndexError: tuple index out of range Any idea what I might be doing wrong. Thanks again for you help. I really appreciate it. Aug 24, 2011 at 13:42
  • @Elizabeth, probably an empty line at the end of the file. I'll fix my answer. You should be able to run it just as python test.py > result.csv as it opens "in.txt" rather than reading from stdin Aug 24, 2011 at 17:39
1
from StringIO import StringIO

input = """Site  Species
A01   ACRB
A01   TBL
A02   TBL
A03   GRF 
"""

counts = {}
sites = set()
species = set()

# Count pairs (site, specie)    
for line in StringIO(input).readlines()[1:]:
     site, specie = line.strip().split()
     sites.add(site)
     species.add(specie)
     count = counts.get((site, specie), 0)
     counts[(site, specie)] = count + 1

# Print first row.
print "Site\t",
for specie in species:
    print specie, "\t",
print

# Print other rows.
for site in sites:
    print site, "\t",
    for specie in species:
        print counts.get((site, specie), 0),
    print
0

Let's see...

import itertools

l = [('A01', 'ACRB'), ('A01', 'TBL'), ('A02', 'TBL'), ('A03', 'GRF')]

def mygrouping(l):
    speclist = list(set(i[1] for i in l))
    yield tuple(speclist)
    l.sort()
    gr = itertools.groupby(l, lambda i:i[0]) # i[0] is the site; group by that...
    for site, items in gr:
        counts = [0] * len(speclist)
        for _site, species in items:
            counts[speclist.index(species)] += 1
        yield site, tuple(counts)

print list(mygrouping(l))

Another solution with namedtuples would be

import itertools
import collections

l = [('A01', 'ACRB'), ('A01', 'TBL'), ('A02', 'TBL'), ('A03', 'GRF')]

def mygrouping(l):
    speclist = list(set(i[1] for i in l))
    TupClass = collections.namedtuple('grouping', speclist)
    l.sort()
    gr = itertools.groupby(l, lambda i:i[0]) # i[0] is the site; group by that...
    for site, items in gr:
        counts = [0] * len(speclist)
        for _site, species in items:
            counts[speclist.index(species)] += 1
        yield site, TupClass(*counts)

print list(mygrouping(l))

The displaying stuff will I let to you.

1
  • You could use operator.itemgetter(0) instead of that lambda function Aug 24, 2011 at 10:16
0

It's a histogram2d problem, but the data is string. You can convert string to integer first:

x = ["A01","A01","A02","A03","A02","A04"]
y = ["ACRB","TBL","TBL","GRF","TBL","TBL"]

import numpy as np

def convert(data):
    tmp = sorted(set(data))
    d = dict(zip(tmp,range(len(tmp))))
    return tmp, np.array([d[x] for x in data])

xindex, xn = convert(x)
yindex, yn = convert(y)

print xindex, xn
print yindex, yn

the output is:

['A01', 'A02', 'A03', 'A04'] [0 0 1 2 1 3]
['ACRB', 'GRF', 'TBL'] [0 2 2 1 2 2]

xn, yn is the converted array, and xindex, yindex can be used to convert integer back to string.

Then you can use numpy.histogram2d to count the occurrence quickly:

m = np.histogram2d(xn, yn, bins=(len(xindex), len(yindex)))[0]
print m

the output is:

[[ 1.  0.  1.]
 [ 0.  0.  2.]
 [ 0.  1.  0.]
 [ 0.  0.  1.]]

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