# Access value by location in sorted panda series with integer index

I have a pandas Series with an integer index which I've sorted (by value), how I access values by position in this Series.

For example:

``````s_original = pd.Series({0: -0.000213, 1: 0.00031399999999999999, 2: -0.00024899999999999998, 3: -2.6999999999999999e-05, 4: 0.000122})
s_sorted = np.sort(s_original)

In [3]: s_original
Out[3]:
0   -0.000213
1    0.000314
2   -0.000249
3   -0.000027
4    0.000122

In [4]: s_sorted
Out[4]:
2   -0.000249
0   -0.000213
3   -0.000027
4    0.000122
1    0.000314

In [5]: s_sorted[3]
Out[5]: -2.6999999999999999e-05
``````

But I would like to get the value 0.000122 i.e. the item in position 3.
How can I do this?

-

Replace the line

``````b = np.sort(a)
``````

with

``````b = pd.Series(np.sort(a), index=a.index)
``````

This will sort the values, but keep the index.

EDIT:

To get the fourth value in the sorted Series:

``````np.sort(a).values[3]
``````
-
I exchanged the row with this sample_mean_series_sorted = pandas.Series(np.sort(sample_mean_series), index=sample_mean_series.index). But it did not sort my issue. To clearify, I want to retrieve a specific row in the sorted Series. An example, get value for row four which is 0.000122. –  Ahlden Jan 22 '13 at 10:08
@Ahlden - ok, now I see what you mean. See my edited answer. –  eumiro Jan 22 '13 at 10:17

You can use `iget` to retrieve by position:
(In fact, this method was created especially to overcome this ambiguity.)

``````In [1]: s = pd.Series([0, 2, 1])

In [2]: s.sort()

In [3]: s
Out[3]:
0    0
2    1
1    2

In [4]: s.iget(1)
Out[4]: 1
``````

.

The behaviour of `.ix` with an integer index is noted in the pandas "gotchas":

In pandas, our general viewpoint is that labels matter more than integer locations. Therefore, with an integer axis index only label-based indexing is possible with the standard tools like `.ix`.

This deliberate decision was made to prevent ambiguities and subtle bugs (many users reported finding bugs when the API change was made to stop “falling back” on position-based indexing).

### Note: this would work if you were using a non-integer index, where `.ix` is not ambiguous.

For example:

``````In [11]: s1 = pd.Series([0, 2, 1], list('abc'))

In [12]: s1
Out[12]:
a    0
b    2
c    1

In [13]: s1.sort()

In [14]: s1
Out[14]:
a    0
c    1
b    2

In [15]: s1.ix[1]
Out[15]: 1
``````
-
Also worth mentioning this feature request on github. –  Andy Hayden Jan 22 '13 at 22:12