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In his video, Data analysis in Python with pandas, wes presents a series method names searchsorted() , which given a value, gives back the index in which the series is crossing that value. It appears this function is not available any more, did something else replaced it?

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Which video was this? – EdChum Feb 17 '14 at 9:17
There is no searchsorted method in Pandas, there is one in numpy:…, are you confusing it with this? – EdChum Feb 17 '14 at 9:29
here at 2:00:21 he uses df.prop.cumsum().searchsorted which seems to be a Series method. – idoda Feb 17 '14 at 14:32
This looks like something that has changed either since Pandas 0.12 or Numpy 1.6/1.7, in Pandas 0.13.1 you cannot do this anymore as you have found out, you would need to do np.searchsorted(df.prop.cumsum().values, my_new_value) which is not as elegant. This may be to do with Pandas Series now inherting from NDFrame rather than ndarray so you now lose this syntatic sugar – EdChum Feb 17 '14 at 15:01
Definitely less elegant.. pitty – idoda Feb 17 '14 at 15:16
up vote 6 down vote accepted

I believe this is due to the refactoring that occurred in Pandas 0.13.0 where Pandas Series now sub-class NDFrame rather than ndarray see this:

In [33]:

import pandas as pd
import numpy as np
df = pd.DataFrame({'a':arange(10)})

0  0
1  1
2  2
3  3
4  4
5  5
6  6
7  7
8  8
9  9

[10 rows x 1 columns]

[10 rows x 3 columns]
In [28]:

# you now have to call `.values` to return a ndarray 

Now compare what happens if we use a numpy array:

In [29]:

temp = np.array(arange(10))

In [32]:

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