54

I'm trying to read in a CSV file into a pandas dataframe and select a column, but keep getting a key error.

The file reads in successfully and I can view the dataframe in an iPython notebook, but when I want to select a column any other than the first one, it throws a key error.

I am using this code:

import pandas as pd

transactions = pd.read_csv('transactions.csv',low_memory=False, delimiter=',', header=0, encoding='ascii')
transactions['quarter']

Traceback

KeyError                                  Traceback (most recent call last)
Cell In[10], line 2
      1 transactions = pd.read_csv('transactions.csv',low_memory=False, delimiter=',', header=0, encoding='ascii')
----> 2 transactions['quarter']

File ~\anaconda3\envs\py312\Lib\site-packages\pandas\core\frame.py:3896, in DataFrame.__getitem__(self, key)
   3894 if self.columns.nlevels > 1:
   3895     return self._getitem_multilevel(key)
-> 3896 indexer = self.columns.get_loc(key)
   3897 if is_integer(indexer):
   3898     indexer = [indexer]

File ~\anaconda3\envs\py312\Lib\site-packages\pandas\core\indexes\base.py:3797, in Index.get_loc(self, key)
   3792     if isinstance(casted_key, slice) or (
   3793         isinstance(casted_key, abc.Iterable)
   3794         and any(isinstance(x, slice) for x in casted_key)
   3795     ):
   3796         raise InvalidIndexError(key)
-> 3797     raise KeyError(key) from err
   3798 except TypeError:
   3799     # If we have a listlike key, _check_indexing_error will raise
   3800     #  InvalidIndexError. Otherwise we fall through and re-raise
   3801     #  the TypeError.
   3802     self._check_indexing_error(key)

KeyError: 'quarter'

transactions.csv

Full data file

product_id, customer_id, store_id, promotion_id, month_of_year, quarter, the_year, store_sales, store_cost, unit_sales, fact_count
1,157,24,1869,12,'Q4',1997,'8.5500','2.9925','3.0000',1
1,456,15,0,6,'Q2',1997,'11.4000','4.3320','4.0000',1
1,638,11,0,9,'Q3',1997,'8.5500','2.9925','3.0000',1
1,916,7,0,4,'Q2',1997,'11.4000','4.9020','4.0000',1
1,923,15,0,7,'Q3',1997,'8.5500','2.7360','3.0000',1
1,1312,3,0,5,'Q2',1997,'8.5500','3.6765','3.0000',1
1,1565,24,0,9,'Q3',1997,'8.5500','4.1895','3.0000',1
1,2270,11,0,11,'Q4',1997,'8.5500','4.0185','3.0000',1
1,3065,3,0,11,'Q4',1997,'5.7000','2.5080','2.0000',1
1,3441,3,0,8,'Q3',1997,'8.5500','3.4200','3.0000',1
1,3528,17,0,10,'Q4',1997,'8.5500','3.8475','3.0000',1
1,4461,11,0,4,'Q2',1997,'8.5500','2.9925','3.0000',1
1
  • 1
    If, for some reason, the accepted answer doesn't work, or can't be used to parse out the leading and trailing spaces, then clean the column headers with df.columns = df.columns.str.strip() as shown in Remove or replace spaces in column names. Oct 14, 2023 at 16:59

5 Answers 5

103

Use sep=r'\s*,\s*' to parse a file where the columns may have some number of spaces preceding or following the delimiter (e.g. , ):

transactions = pd.read_csv('transactions.csv', sep=r'\s*,\s*',
                           header=0, encoding='ascii', engine='python')

Prove:

print(transactions.columns)

Output:

Index(['product_id', 'customer_id', 'store_id', 'promotion_id', 'month_of_year', 'quarter', 'the_year', 'store_sales', 'store_cost', 'unit_sales', 'fact_count'], dtype='object')

Alternatively, remove unquoted spaces in the CSV file, and use your command (unchanged).

0
13

I met the same problem that key errors occur when filtering the columns after reading from CSV.

Reason

The main reason of these problems is the extra initial white spaces in your CSV files. (found in your uploaded CSV file, e.g. , customer_id, store_id, promotion_id, month_of_year, )

Proof

To prove this, you could try print(list(df.columns)) and the names of columns must be ['product_id', ' customer_id', ' store_id', ' promotion_id', ' month_of_year', ...].

Solution

The direct way to solve this is to add the parameter in pd.read_csv(), for example:

pd.read_csv('transactions.csv', 
            sep = ',', 
            skipinitialspace = True)

Reference: https://stackoverflow.com/a/32704818/16268870

12

if you need to select multiple columns from dataframe use 2 pairs of square brackets eg.

df[["product_id","customer_id","store_id"]]
1
  • Don't know why all the upvotes, this does not resolve the KeyError issue in the OP: df[["product_id","customer_id","store_id"]]KeyError: "['customer_id', 'store_id'] not in index". Answers on SO, should answer the question in the OP, and selecting multiple columns is answer in Selecting multiple columns in a Pandas dataframe Oct 14, 2023 at 16:54
3

The key error generally comes if the key doesn't match any of the dataframe column name 'exactly':

You could also try:

import csv
import pandas as pd
import re
    with open (filename, "r") as file:
        df = pd.read_csv(file, delimiter = ",")
        df.columns = ((df.columns.str).replace("^ ","")).str.replace(" $","")
        print(df.columns)
-2

Datsets when split by ',', create features with a space in the beginning. Removing the space using a regex might help.

For the time being I did this:

label_name = ' Label'

2
  • As it’s currently written, your answer is unclear. Please edit to add additional details that will help others understand how this addresses the question asked. You can find more information on how to write good answers in the help center.
    – Community Bot
    Sep 16, 2022 at 4:32
  • Technically, this works, but it's not a good solution, especially in relation to the accepted answer. Data should always be cleaned, and this doesn't do that. Oct 14, 2023 at 16:40

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