It's worth noting that these are lists, not arrays. There is a difference.
You are overwriting
cols every time you loop - meaning you will only get the last row of data - a list comprehension is in order here to get all the data you want, or better yet, simply don't store the data at all - do the operation you want on it.
Your main problem with the comparison is that you are taking list slices, rather than just taking the element you need. This is overcomplicating what you are trying to do.
So, as I mentioned in the comments, there are a lot of improvements you can make to your initial code - mainly the
with statement and the
So first of all, use the
with statement to open your files. We use
csv.reader() as well, using the
"excel-tab" dialect as it's a tab-delimited file, and
csv.QUOTE_NONNUMERIC to tell it the values are numbers, so we don't have to convert them from strings later. Note that if only certain values are numbers, you will either need to quote all non-numeric values to use this method, or convert those values explicitly and not use it.
with open("file1.tsv") as file1, open("file2.tsv") as file2:
rows = csv.reader(file2, dialect="excel-tab", quoting=csv.QUOTE_NONNUMERIC)
rows1 = csv.reader(file2, dialect="excel-tab", quoting=csv.QUOTE_NONNUMERIC)
To perform your check, simply do something like this (continued on from within the
with block above):
for cols, cols1 in zip(rows, rows1): #Use itertools.izip() in 2.x for efficiency.
first = cols
second = cols1
if first < second:
elif first == second:
else: #first > second
Note the use of zip to loop over both files at once. We need to loop over the files as they return a row at a time, each row being a list of data for each column. You can then do as you please with the data. I have given an example of comparing the fifth value (note the index
4 - python is
0 indexed - that is, the first value is
0, so the fifth is
By doing this all as we loop through the files, we ensure we don't have to create lists and store the data temporarily - which is useful if we end up working on large files.
If you needed to use that data a lot later, and wanted it as a list, you could simply make the two
rows objects lists, by wrapping a
list() call around the