Say I have the following DataFrame

Letter    Number
A          1
B          2
C          3
D          4

Which can be obtained through the following code

import pandas as pd

letters=pd.Series(('A', 'B', 'C', 'D'))
numbers=pd.Series((1, 2, 3, 4))
keys=('Letters', 'Numbers')
df=pd.concat((letters, numbers), axis=1, keys=keys)

Now I want to get the value C from the column Letters.

The command line


will return

2    C
Name: Letters, dtype: object

How can I get only the value C and not the whole two line output?

  • 12
    On an unrelated note, there's a nicer way to contruct your DataFrame :pd.DataFrame({'Letters': letters, 'Numbers': numbers})
    – JoeCondron
    Jun 11 '15 at 19:15

This returns the first element in the Index/Series returned from that selection. In this case, the value is always the first element.


Or you can run a loc() and access the first element that way. This was shorter and is the way I have implemented it in the past.

  • 6
    I love this method, however I'm getting the warning: FutureWarning: "item" has been deprecated and will be removed in a future version
    – AlexG
    Oct 7 '19 at 5:14
  • 6
    @AlexG: you can use this instead: df[df.Letters=='C'].Letters.iloc[0]. It produces the first element (which is also the unique) in the result series. Dec 2 '19 at 16:15
  • using loc[:1] still shows index next to the value :(
    – Sonic Soul
    Apr 1 '20 at 23:08
  • 3
    @AlexG and @Sonic Soul : try using df[df.Letters=='C'].Letters.squeeze() instead. This works the same way. :)
    – user78910
    May 7 '20 at 10:43

Use the values attribute to return the values as a np array and then use [0] to get the first value:

In [4]:



I personally prefer to access the columns using subscript operators:

df.loc[df['Letters'] == 'C', 'Letters'].values[0]

This avoids issues where the column names can have spaces or dashes - which mean that accessing using ..

  • 1
    It's really inconsequential, but in your selection you access the column 'Letters' using the dot notation; df.loc[df.Letters=='C']. If there are spaces in your column names, you should probably be using converters to strip those out, like you would if importing from a CSV or Excel file.
    – valkn0t
    Jun 12 '15 at 15:23
  • @thomas-ato I'll update my answer but I disagree with modding the columns as an additional step unless that is necessary, in this case I agree it makes no difference
    – EdChum
    Jun 12 '15 at 15:29
  • @EdChum.. In this scenarion : how can we handle error: "IndexError: index 0 is out of bounds for axis 0 with size 0 "
    – Arya
    Nov 21 '20 at 19:50
import pandas as pd

dataset = pd.read_csv("data.csv")
values = list(x for x in dataset["column name"])

>>> values[0]


actually, you can just index the dataset like any old array.

import pandas as pd

dataset = pd.read_csv("data.csv")
first_value = dataset["column name"][0]

>>> print(first_value)

You can use loc with the index and column labels.

df.loc[2, 'Letters']
# 'C'

If you prefer the "Numbers" column as reference, you can set it as index.

df.set_index('Numbers').loc[3, 'Letters']

I find this cleaner as it does not need the [0] or .item().

  • This doesn't address the particular issue. If the index is unknown, your code doesn't help.
    – TLK3
    May 20 '21 at 4:51
  • The second version (setting one column to index) does apply in that case. :)
    – nocibambi
    May 20 '21 at 6:41

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