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Got a large dataframe that I want to take slices of (according to multiple boolean criteria), and then modify the entries in those slices in order to change the original dataframe -- i.e. I need a view to the original. Problem is, fancy indexing always returns a copy. Thought of the .ix method, but boolean indexing with the df.ix[] method also returns a copy.

Essentially if df is my dataframe, I'd like a view to column C such that C!=0, A==10, B<30,... etc. Is there a fast way to do this in pandas?

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3 Answers 3

up vote 6 down vote accepted

You could use the DataFrame.update method. For example,

import pandas as pd
import numpy as np
df = pd.DataFrame({'A':[9,10]*6,
                   'B':range(23,35),
                   'C':range(-6,6)})

print(df)
#      A   B  C
# 0    9  23 -6
# 1   10  24 -5
# 2    9  25 -4
# 3   10  26 -3
# 4    9  27 -2
# 5   10  28 -1
# 6    9  29  0
# 7   10  30  1
# 8    9  31  2
# 9   10  32  3
# 10   9  33  4
# 11  10  34  5

Here is our boolean index:

idx = (df['C']!=0) & (df['A']==10) & (df['B']<30)

Indeed, by using boolean indexing, subdf is not a view of df:

subdf = df[idx]
print(subdf)
#     A   B  C
# 1  10  24 -5
# 3  10  26 -3
# 5  10  28 -1

But we can modify subdf any way we want (as long as we preserve the index and columns):

subdf['A'] += subdf['B'] * subdf['C']
print(subdf)
#      A   B  C
# 1 -110  24 -5
# 3  -68  26 -3
# 5  -18  28 -1

And use update to modify df:

df.update(subdf)
print(df)
#       A   B  C
# 0     9  23 -6
# 1  -110  24 -5
# 2     9  25 -4
# 3   -68  26 -3
# 4     9  27 -2
# 5   -18  28 -1
# 6     9  29  0
# 7    10  30  1
# 8     9  31  2
# 9    10  32  3
# 10    9  33  4
# 11   10  34  5
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An excellent solution for most use cases. :) –  Andy Hayden Feb 28 '13 at 20:19
    
Thanks... just what I was looking for! –  optional Mar 3 '13 at 6:51

The pandas docs have a section on Returning a view versus a copy:

The rules about when a view on the data is returned are entirely dependent on NumPy. Whenever an array of labels or a boolean vector are involved in the indexing operation, the result will be a copy. With single label / scalar indexing and slicing, e.g. df.ix[3:6] or df.ix[:, 'A'], a view will be returned.

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Building off of unutbu's example you could also use the boolean index on df.index like so:

In [11]: df.ix[df.index[idx]] = 999

In [12]: df
Out[12]:
      A    B    C
0     9   23   -6
1   999  999  999
2     9   25   -4
3   999  999  999
4     9   27   -2
5   999  999  999
6     9   29    0
7    10   30    1
8     9   31    2
9    10   32    3
10    9   33    4
11   10   34    5
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