The issue is that using
.ix returns a view to the actual memory objects for that subset of the DataFrame, rather than a new DataFrame made out of its contents.
# The left-hand-side does not use .ix, since we're assigning into it.
df[['b','c']] = df.ix[:,'e':'f'].copy()
Note that you will need
.copy() if you are intent on using
.ix to do the slicing, otherwise it would set columns 'b' and 'c' as the same objects in memory as the columns 'e' and 'f', which does not seem like what you want to do here.
Alternatively, to avoid worrying about the copying you, you can just do:
df[['b','c']] = df[['e','f']]
If the convenience of indexing matters to you, one way to simulate this effect is to write your own function:
def col_range(df, col1, col2):
Now you could do the following:
df[col_range(df,'b','d')] = df.ix[:,'e':'g'].copy()
Note: in the definition of
col_range I used the first index which will select the first row of the data frame. I did this because making a view of the whole data frame just to select a range of columns seems wasteful, whereas one row probably won't matter. Since slicing this way produces a Series, the way to extract the columns is to actually grab the index, and I return them as a list.
Added for additional row slice request:
To specify a set of rows in the assignment, you can use
.ix, but you need to specify just a matrix of values on the right-hand side. Having the structure of a sub-DataFrame on the right-hand side will cause problems.
df.ix[0:4,col_range(df,'b','d')] = df.ix[0:4,'e':'g'].values
You can replace the
[df.index.values[i] for i in range(N)] or even with logical values such as
[df['a']>5] to only get rows where the 'a' column exceeds 5, for example.
The full slice for an example of logical indexing where you want column 'a' bigger than 5 and column 'e' less than 10 might look like this:
import numpy as np
my_rows = np.logical_and(df['a'] > 5), df['e'] < 10)
df.ix[my_rows,col_range(df,'b','d')] = df.ix[my_rows,'e':'g'].values
In many cases, you will not need to use the
.ix on the left-hand side (I recommend against it because it only works in some cases and not in others). For instance, something like:
df["A"] = np.repeat(False, len(df))
df["A"][df["B"] > 0] = True
will work as is, no special
.ix needed for identifying the rows where the condition is true. The
.ix seems to be needed on the left when the thing on the right is complicated.