I'm using Pandas to read a bunch of CSVs. Passing an options json to dtype parameter to tell pandas which columns to read as string instead of the default:

dtype_dic= { 'service_id':str, 'end_date':str, ... }
feedArray = pd.read_csv(feedfile , dtype = dtype_dic)

In my scenario, all the columns except a few specific ones are to be read as strings. So instead of defining several columns as str in dtype_dic, I'd like to set just my chosen few as int or float. Is there a way to do that?

It's a loop cycling through various CSVs with differing columns, so a direct column conversion after having read the whole csv as string (dtype=str), would not be easy as I would not immediately know which columns that csv is having. (I'd rather spend that effort in defining all the columns in the dtype json!)

Edit: But if there's a way to process the list of column names to be converted to number without erroring out if that column isn't present in that csv, then yes that'll be a valid solution, if there's no other way to do this at csv reading stage itself.

Note: this sounds like a previously asked question but the answers there went down a very different path (bool related) which doesn't apply to this question. Pls don't mark as duplicate!


EDIT - sorry, I misread your question. Updated my answer.

You can read the entire csv as strings then convert your desired columns to other types afterwards like this:

df = pd.read_csv('/path/to/file.csv', dtype=str)
# example df; yours will be from pd.read_csv() above
df = pd.DataFrame({'A': ['1', '3', '5'], 'B': ['2', '4', '6'], 'C': ['x', 'y', 'z']})
types_dict = {'A': int, 'B': float}
for col, col_type in types_dict.items():
    df[col] = df[col].astype(col_type)

Another approach, if you really want to specify the proper types for all columns when reading the file in and not change them after: read in just the column names (no rows), then use those to fill in which columns should be strings

col_names = pd.read_csv('file.csv', nrows=0).columns
types_dict = {'A': int, 'B': float}
types_dict.update({col: str for col in col_names if col not in types_dict})
pd.read_csv('file.csv', dtype=types_dict)
| improve this answer | |
  • 1. This will error out if the said cols aren't present in that CSV. Pls see the question. 2. I want to by default cast ALL cols as string, except some chosen ones. Pls see the question. – Nikhil VJ Apr 6 '18 at 3:57
  • awesome! Sorry I didn't see your update back then.. funny I thought I'd get some alert if anything changed. I particularly like the second approach.. best of both worlds. – Nikhil VJ Jul 4 '18 at 12:36
  • This wouldn't work when you want to specify a decimal separator in the read_csv function. It will cast these numbers as str with the wrong decimal separator and thereafter you will not be able to convert it to float directly. – Michael H. Sep 4 '19 at 10:31
  • You can do str.replace first to convert to "." as a decimal separator or write your own type-casting function instead of using float/int (e.g. lambda x: float(x.replace(",", "."))). The latter is probably slower – Nathan Sep 4 '19 at 18:45
  • Actually, if you're using the second approach here, I don't see any reason that specifying a decimal separator wouldn't work directly; the above comment only matters for the first approach used. – Nathan Oct 15 '19 at 15:30

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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