49

If I have a pandas DataFrame object, how do I simply access a cell? In R, assuming my data.frame is called df, I can access the 3rd row and 4th column by

df[3,4]

What is the equivalent in python?

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  • The correct method to this question (for selecting a specific cell) is to use df.at[3, 4] as the second answer shows.
    – cs95
    Jul 2, 2019 at 15:18

2 Answers 2

66

You can use iloc (to get by position):

df.iloc[3,4]

I recommend reading the indexing section of the docs.

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  • 2
    .ix() is more versatile than .iloc()
    – smci
    Feb 11, 2015 at 8:56
  • 6
    @smci they do different things. Sometimes you want to get by label (loc), sometimes by position (iloc), sometimes both (ix). Sometimes ix is ambiguous. iloc is faster. Feb 11, 2015 at 23:15
  • 1
    Andy, .ix() is a superset of .iloc(), so for the purpose of this question they're equivalent. Wasn't aware of much speed difference.
    – smci
    Feb 12, 2015 at 1:04
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    @smci Not sure I would say that... e.g. df = pd.DataFrame([[1, 2], [3, 4]], [1, 0], [1, 0]) try df.loc[0, 0], df.iloc[0, 0], df.ix[0, 0], ix is ambiguous for this integer indexed DataFrame - which is why loc and iloc exist. They also act differently when you have a non-unique index (where loc/ix are type unstable). Feb 12, 2015 at 1:34
  • @AndyHayden in case of handle float numbers, would iloc works as well? Jul 7, 2021 at 20:58
42

If you want to access the cell based on the column and row labels, use at:

df.at["Year","Temperature"]

This will return the cell intersected by the row "Year" and the column "Temperature".

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  • 10
    Actually the df.at[ ..., ...] was the thing I was looking for. May 8, 2017 at 15:14

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