# Conditional Logic on Pandas DataFrame

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Does anyone know how to apply conditioinal logic to a Pandas DataFrame.

See DataFrame shown below,

``````   data desired_output
0     1          False
1     2          False
2     3           True
3     4           True
``````

My original data is show in the 'data' column and the desired_output is shown next to it. If the number in 'data' is below 2.5, the desired_output is False.

I could apply a loop and do re-construct the DataFrame... but that would be 'un-pythonic'

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 maybe I don't know pandas, but it seems that you have two numbers in `data` -- which one are you checking against (seemingly the one on the right? What relevance is the number on the left?) – mgilson Feb 5 at 18:26 the number on the left is the index and the one on the right is the data – nitin Feb 5 at 18:31

Just use compare teh column with that value:

``````In [9]: df = pandas.DataFrame([1,2,3,4], columns=["data"])

In [10]: df
Out[10]:
data
0     1
1     2
2     3
3     4

In [11]: df["desired"] = df["data"] > 2.5
In [11]: df
Out[12]:
data desired
0     1   False
1     2   False
2     3    True
3     4    True
``````
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``````In [1]: df
Out[1]:
data
0     1
1     2
2     3
3     4
``````

You want to apply a function that conditionally returns a value based on the selected dataframe column.

``````In [2]: df['data'].apply(lambda x: 'true' if x <= 2.5 else 'false')
Out[2]:
0     true
1     true
2    false
3    false
Name: data
``````

You can then assign that returned column to a new column in your dataframe:

``````In [3]: df['desired_output'] = df['data'].apply(lambda x: 'true' if x <= 2.5 else 'false')

In [4]: df
Out[4]:
data desired_output
0     1           true
1     2           true
2     3          false
3     4          false
``````
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In this specific example, where the DataFrame is only one column, you can write this elegantly as:

``````df['desired_output'] = df.le(2.5)
``````

`le` tests whether elements are less than or equal 2.5, similarly `lt` for less than, `gt` and `ge`.

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