I'm trying to reproduce the R aggregate()
function in python but without concatenating. For each line, I just want to count the number of occurrences of lines with a similar value in a given column.
I'm trying to work it out from a piece of code taken here: http://timotheepoisot.fr/2011/12/01/the-aggregate-function-in-python/
The modifications I implemented are indicated by ###
. The problem I am currently having is that the first column [0] contains character strings and the code seems to work only with floats.
import numpy as np
import scipy as sp
def MSD(vec):
return [np.mean(vec),np.std(vec)]
def aggregate(df,by=0,to=1,func=np.sum):
Dat = []
# ColBy = df.T[by]
ColBy = int(df.T[by][3:]) ### my attempt to read only the numbers in the first column's character strings
ColTo = df.T[to]
UniqueBy = np.sort(np.unique(ColBy))
for ub in UniqueBy:
uTo = ColTo[ColBy==ub]
Out = func(uTo)
# Dat.append(np.concatenate(([ub],Out)))
Dat.append([ub],Out) ### because I do not want to concatenate
return Dat
test_df = np.loadtxt('in_test.txt')
Agr = aggregate(test_df,0,3,MSD)
sp.savetxt("out_test.txt", Agr)
This is the error message:
Traceback (most recent call last):
File "count_same_reads.py", line 30, in <module>
test_df = np.loadtxt('in_test.txt')
File "/usr/lib/python2.7/dist-packages/numpy/lib/npyio.py", line 796, in loadtxt
items = [conv(val) for (conv, val) in zip(converters, vals)]
ValueError: could not convert string to float: Tag19184
My data is tab-delimited, containing mostly strings, except for column 3 in which I want to write the number of occurrences of lines.
Here is the test data:
Tag19184 CTAAC hffef 1 a 36 - chr1 10006 0 36M 36
Tag19184 CTAAC hffef 1 a 36 - chr1 10012 0 36M 36
Tag19184 CTAAC hffef 1 a 36 - chr1 10018 0 36M 36
Tag19184 CTAAC hffef 1 a 36 - chr1 10024 0 36M 36
Tag19184 CTAAC hffef 1 a 36 - chr1 10030 0 36M 36
Tag19184 CTAAC hffef 1 a 36 - chr1 10036 0 36M 36
Tag19184 CTAAC hffef 1 a 36 - chr1 10042 0 36M 36
Tag20198 CTAAC hffef 1 a 36 - chr1 10048 0 36M 36
Tag20198 CTAAC hffef 1 a 36 - chr1 10054 0 36M 36
Tag45093 CTAAC hffef 1 a 36 - chr1 10060 0 36M 36
The result should look like this:
Tag19184 CTAAC hffef 7 a 36 - chr1 10006 0 36M 36
Tag19184 CTAAC hffef 7 a 36 - chr1 10012 0 36M 36
Tag19184 CTAAC hffef 7 a 36 - chr1 10018 0 36M 36
Tag19184 CTAAC hffef 7 a 36 - chr1 10024 0 36M 36
Tag19184 CTAAC hffef 7 a 36 - chr1 10030 0 36M 36
Tag19184 CTAAC hffef 7 a 36 - chr1 10036 0 36M 36
Tag19184 CTAAC hffef 7 a 36 - chr1 10042 0 36M 36
Tag20198 CTAAC hffef 2 a 36 - chr1 10048 0 36M 36
Tag20198 CTAAC hffef 2 a 36 - chr1 10054 0 36M 36
Tag45093 CTAAC hffef 1 a 36 - chr1 10060 0 36M 36
As you can probably tell, I'm not so good at python yet. Any advice would be welcome.
[EDIT] PS. The data is already sorted by column [0].
pandas
module. But I don't know R.