# Python table classification

I have different type of data for example:

``````4.5,3.5,U1
4.5,10.5,U2
4.5,6,U1
3.5,10.5,U2
3.5,10.5,U2
5,7,U1
7,6.5,U1
``````

I need output:

``````'U1': [['4.5', '3.5'], ['4.5', '6'], ['5', '7'], ['7', '6.5']]
'U2': [['4.5', '10.5'], ['3.5', '10.5'], ['3.5', '10.5']]
``````

So my code is:

``````import csv

result = {}
uclass=row[-1]
if result.has_key(uclass):
result[uclass].append([row[0],row[1]])       #--->how can I change from 0 to -2 row ??
else:
result[uclass]=[[row[0],row[1]]]             #--->-->how can I change from 0 to -2 row ??
print repr(result)
``````

But I need this code for any other input data, where there is many rows, not just 3!

See comment in code

-

``````result[uclass].append(row[:-1])
``````

and

``````result[uclass] = row[:-1]
``````

This notation is called slicing.

-

This perhaps?

``````data = """\
4.5,3.5,U1
4.5,10.5,U2
4.5,6,U1
3.5,10.5,U2
3.5,10.5,U2
5,7,U1
7,6.5,U1""".splitlines()

from collections import defaultdict
dd = defaultdict(list)
for d in data:
dl = d.split(',')
dd[dl[-1]].append(list(map(float, dl[:-1])))

for key in dd:
print key, dd[key]
``````

prints:

``````U1 [[4.5, 3.5], [4.5, 6.0], [5.0, 7.0], [7.0, 6.5]]
U2 [[4.5, 10.5], [3.5, 10.5], [3.5, 10.5]]
``````
-

``````import csv
result = {}
#print row
if(len(row) == 0):
continue;
uclass = row[-1]
if result.has_key(uclass):
result[uclass].append([row[:-1]])       #--->how can I change from 0 to -2 row ??
else:
result[uclass]=[[row[:-1]]]             #--->-->how can I change from 0 to -2 row ??
print repr(result)
``````

I tested on the following data, it works.

``````5.66,4.5,3.5,U1
4.5,23123,34,10.5,U2
4.5,6,U1
3.5,10.5,U2
3.5,10.5,U2
5,7,U1
7,6.5,U1
4.5,45,73.3,56,66,72.5,U3
``````
-
``````import csv
import collections

def main():
with open('testdata.csv', 'rb') as inf:
res = collections.defaultdict(list)
for row in incsv:
key = row.pop()
res[key].append([float(r) for r in row])

for key,val in res.iteritems():
print("{0}: {1}".format(key, val))

if __name__=="__main__":
main()
``````

results in

``````U1: [[4.5, 3.5], [4.5, 6.0], [5.0, 7.0], [7.0, 6.5]]
U2: [[4.5, 10.5], [3.5, 10.5], [3.5, 10.5]]
``````