150

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

df[df.Letters=='C'].Letters

will return

2    C
Name: Letters, dtype: object

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

1
  • 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
197
df[df.Letters=='C'].Letters.item()

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

EDIT:

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.

4
  • 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
78

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

In [4]:
df.loc[df.Letters=='C','Letters'].values[0]

Out[4]:
'C'

EDIT

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 ..

3
  • 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
3
import pandas as pd

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

>>> values[0]
'item_0'

edit:

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)
'item_0'
2

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().

2
  • 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

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.