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I would like to create views or dataframes from an existing dataframe based on column selections.

For example, I would like to create a dataframe df2 from a dataframe df1 that holds all columns from it except two of them. I tried doing the following, but it didn't work:

import numpy as np
import pandas as pd

# Create a dataframe with columns A,B,C and D
df = pd.DataFrame(np.random.randn(100, 4), columns=list('ABCD'))

# Try to createsecond dataframe df2 from df with all columns except 'B' and D
my_cols = set(df.columns)

# This returns an error ("unhashable type: set")
df2 = df[my_cols]

What am I doing wrong? Perhaps more generally, what mechanisms does Panda have to support the picking and exclusions of arbitrary sets of columns from a dataframe?

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possible duplicate of Delete column from pandas DataFrame – Noel Evans Aug 12 '14 at 11:39

6 Answers 6

up vote 5 down vote accepted

You can either Drop the columns you do not need OR Select the ones you need

    ##Using DataFrame.drop
    df.drop(df.columns[[1, 2]], axis=1, inplace=True)

    # drop by Name
    df1 = df1.drop(['B', 'C'], axis=1)

    ## Select the ones you want
    df1 = df[['a','d']]
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You don't really need to convert that into a set:

cols = [col for col in df.columns if col not in ['B', 'D']]
df2 = df[cols]
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You just need to convert your set to a list

import pandas as pd
df = pd.DataFrame(np.random.randn(100, 4), columns=list('ABCD'))
my_cols = set(df.columns)
my_cols = list(my_cols)
df2 = df[my_cols]
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Thanks! This works perfectly well. Just wondering, are there any features in Panda that facilitate the specification of columns for this type (or more sophisticated types) of column filtering? – Amelio Vazquez-Reina Feb 18 '13 at 17:17
@user273158 Don't know, I am just starting to learn Pandas my self. – tcaswell Feb 18 '13 at 17:20
Maybe use drop?. df.drop(my_cols, axis=1) will produce a view of the DataFrame with the dropped columns. All you need is then to assign it to the new DF: df2 = df.drop(my_cols, axis=1) – herrfz Feb 18 '13 at 18:33
Use [drop][1] as in this answer to another question: [1]:… – Noel Evans Aug 12 '14 at 11:28

Here's how to create a copy of a DataFrame excluding a list of columns:

df = pd.DataFrame(np.random.randn(100, 4), columns=list('ABCD'))
df2 = df.drop(['B', 'D'], axis=1)

But be careful! You mention views in your question, suggesting that if you changed df, you'd want df2 to change too. (Like a view would in a database.)

This method doesn't achieve that:

>>> df.loc[0, 'A'] = 999 # Change the first value in df
>>> df.head(1)
     A         B         C         D
0  999 -0.742688 -1.980673 -0.920133
>>> df2.head(1) # df2 is unchanged. It's not a view, it's a copy!
          A         C
0  0.251262 -1.980673

Note also that this is also true of @piggybox's method. (Although that method is nice and slick and Pythonic. I'm not doing it down!!)

For more on views vs. copies see this SO answer and this part of the Pandas docs which that answer refers to.

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Also have a look into the built-in DataFrame.filter function.

Minimalistic but greedy approach (sufficient for the given df):


Conservative/lazy approach (exact matches only):


Conservative and generic:

exclude_cols = ['B','C']
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df2 = df[df.columns.delete([1,3])]
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