Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm starting to code in python and i now have the problem, that the csv.DictReader gets me the wrong data type.

The csv file looks like:

Col1, Col2, Col3



pol = csv.DictReader(open('..\data\data.csv'),dialect='excel')

Col1 = []

for row in pol:
    if row["Col1"] < 90:
        Col1.append(row["Col1"] * 1.5)

I get the following error:

if row["Col1"] < 90:
TypeError: unorderable types: str() < int()

I won't convert every single value. Is it possible to define the values of the column?

share|improve this question

4 Answers 4

You could use a library like pandas, it will infer the types for you (it's a bit of an overkill but it does the job).

import pandas
data = pandas.read_csv(r'..\data\data.csv')
# if you just want to retrieve the first column as a list of int do
>>> [1, 90]

# to convert the whole CSV file to a list of dict use
>>> [{' Col2': 2, ' Col3': 3, 'Col1': 1}, {' Col2': 2, ' Col3': 3, 'Col1': 90}]

Alternatively here is an implementation of a typed DictReader:

from csv import DictReader
from itertools import imap, izip

class TypedDictReader(DictReader):
  def __init__(self, f, fieldnames=None, restkey=None, restval=None, \
      dialect="excel", fieldtypes=None, *args, **kwds):

    DictReader.__init__(self, f, fieldnames, restkey, restval, dialect, *args, **kwds)
    self._fieldtypes = fieldtypes

  def next(self):
    d = DictReader.next(self)
    if len(self._fieldtypes) >= len(d) :
      # extract the values in the same order as the csv header
      ivalues = imap(d.get, self._fieldnames) 
      # apply type conversions
      iconverted = (x(y) for (x,y) in izip(self._fieldtypes, ivalues)) 
      # pass the field names and the converted values to the dict constructor
      d = dict(izip(self._fieldnames, iconverted)) 

    return d

and here is how to use it:

reader = TypedDictReader(open('..\data\data.csv'), dialect='excel', \
  fieldtypes=[int, int, int])
>>> [{' Col2': 2, ' Col3': 3, 'Col1': 1}, {' Col2': 2, ' Col3': 3, 'Col1': 90}]
share|improve this answer

If you quote the non-numeric values in the csv file and initialize the reader by

pol = csv.DictReader(open('..\data\data.csv'),
    quoting=csv.QUOTE_NONNUMERIC, dialect="excel")

then numeric values will be automatically converted to floats.

share|improve this answer
Unfortunately, this will still choke on the header. –  larsmans Jan 5 '12 at 19:52
Exactly what I was looking for, thanks! –  user1 Dec 8 '14 at 18:06

I haven't used DictReader before, but you could just do this to the value:

for row in pol:
    col1 = float(row["Col1"]) # or int()

And then use col1 through out, you probably could also edit the dictionary:

row["Col1"] = float(row["Col1"])

But it depends what you want to use the row for later.

share|improve this answer

It looks like you want Col1 to be an array of numbers, so you'd need to convert row["Col1"] to a number whether or not you were comparing it to a number. So convert it!

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.