In R when you need to retrieve a column index based on the name of the column you could do

idx <- which(names(my_data)==my_colum_name)

Is there a way to do the same with pandas dataframes?

10 Answers 10


Sure, you can use .get_loc():

In [45]: df = DataFrame({"pear": [1,2,3], "apple": [2,3,4], "orange": [3,4,5]})

In [46]: df.columns
Out[46]: Index([apple, orange, pear], dtype=object)

In [47]: df.columns.get_loc("pear")
Out[47]: 2

although to be honest I don't often need this myself. Usually access by name does what I want it to (df["pear"], df[["apple", "orange"]], or maybe df.columns.isin(["orange", "pear"])), although I can definitely see cases where you'd want the index number.

  • 14
    Column number is useful when using .iloc operator, where you must pass only integers for both rows and columns.
    – abe
    Sep 8, 2017 at 18:52
  • 10
    Or when using libraries which want the DF converted to a numpy array and indices of columns with particular features. For example CatBoost wants a list of indices of categorical features.
    – Tom Walker
    Oct 13, 2017 at 5:35
  • 4
    Is there a way to get list of indexes?
    – haneulkim
    Sep 3, 2021 at 2:55
  • In my case I want to use the index of the column get values of "itertuples" by column name. Fetching the indeces of the column names instead of hardcoding keeps it dynamic in case of changes to the DF.
    – cyclux
    Mar 10 at 11:00

Here is a solution through list comprehension. cols is the list of columns to get index for:

[df.columns.get_loc(c) for c in cols if c in df]
  • 4
    Since cols has fewer elements than df.columns, doing for c in cols if c in df would be faster. Sep 22, 2017 at 15:28

DSM's solution works, but if you wanted a direct equivalent to which you could do (df.columns == name).nonzero()


When you might be looking to find multiple column matches, a vectorized solution using searchsorted method could be used. Thus, with df as the dataframe and query_cols as the column names to be searched for, an implementation would be -

def column_index(df, query_cols):
    cols = df.columns.values
    sidx = np.argsort(cols)
    return sidx[np.searchsorted(cols,query_cols,sorter=sidx)]

Sample run -

In [162]: df
   apple  banana  pear  orange  peach
0      8       3     4       4      2
1      4       4     3       0      1
2      1       2     6       8      1

In [163]: column_index(df, ['peach', 'banana', 'apple'])
Out[163]: array([4, 1, 0])

In case you want the column name from the column location (the other way around to the OP question), you can use:

>>> df.columns.get_values()[location]

Using @DSM Example:

>>> df = DataFrame({"pear": [1,2,3], "apple": [2,3,4], "orange": [3,4,5]})

>>> df.columns

Index(['apple', 'orange', 'pear'], dtype='object')

>>> df.columns.get_values()[1]


Other ways:


df.columns[location] #(thanks to @roobie-nuby for pointing that out in comments.) 

For returning multiple column indices, I recommend using the pandas.Index method get_indexer, if you have unique labels:

df = pd.DataFrame({"pear": [1, 2, 3], "apple": [2, 3, 4], "orange": [3, 4, 5]})
df.columns.get_indexer(['pear', 'apple'])
# Out: array([0, 1], dtype=int64)

If you have non-unique labels in the index (columns only support unique labels) get_indexer_for. It takes the same args as get_indeder:

df = pd.DataFrame(
    {"pear": [1, 2, 3], "apple": [2, 3, 4], "orange": [3, 4, 5]}, 
    index=[0, 1, 1])
df.index.get_indexer_for([0, 1])
# Out: array([0, 1, 2], dtype=int64)

Both methods also support non-exact indexing with, f.i. for float values taking the nearest value with a tolerance. If two indices have the same distance to the specified label or are duplicates, the index with the larger index value is selected:

df = pd.DataFrame(
    {"pear": [1, 2, 3], "apple": [2, 3, 4], "orange": [3, 4, 5]},
    index=[0, .9, 1.1])
df.index.get_indexer([0, 1])
# array([ 0, -1], dtype=int64)

To modify DSM's answer a bit, get_loc has some weird properties depending on the type of index in the current version of Pandas (1.1.5) so depending on your Index type you might get back an index, a mask, or a slice. This is somewhat frustrating for me because I don't want to modify the entire columns just to extract one variable's index. Much simpler is to avoid the function altogether:


Very straightforward and probably fairly quick.


how about this:

df = DataFrame({"pear": [1,2,3], "apple": [2,3,4], "orange": [3,4,5]})
out = np.argwhere(df.columns.isin(['apple', 'orange'])).ravel()
[1 2]

When the column might or might not exist, then the following (variant from above works.

ix = 'none'
     ix = list(df.columns).index('Col_X')
except ValueError as e:
     ix = None  

if ix is None:
   # do something
import random
def char_range(c1, c2):                      # question 7001144
    for c in range(ord(c1), ord(c2)+1):
        yield chr(c)      
df = pd.DataFrame()
for c in char_range('a', 'z'):               
    df[f'{c}'] = random.sample(range(10), 3) # Random Data
rearranged = random.sample(range(26), 26)    # Random Order
df = df.iloc[:, rearranged]
print(df.iloc[:,:15])                        # 15 Col View         

for col in df.columns:             # List of indices and columns
    print(str(df.columns.get_loc(col)) + '\t' + col)


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