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Is there a simple way to append a pandas series to another and update its index ? Currently i have two series

from numpy.random import randn
from pandas import Series

a = Series(randn(5))
b = Series(randn(5))

and i can append b to a by

a.append(b)

>>> 0   -0.191924
    1    0.577687
    2    0.332826
    3   -0.975678
    4   -1.536626
    0    0.828700
    1    0.636592
    2    0.376864
    3    0.890187
    4    0.226657

but is there a smarter way to make sure that i have a continuous index than

a=Series(randn(5))
b=Series(randn(5),index=range(len(a),len(a)+len(b)))
a.append(b)  
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3  
I advize you to not to do from ... import *, and use fully qualified imports, such as import pandas as pd; pd.Series and import numpy as np; np.random.randn –  alko Dec 5 '13 at 12:39
    
@alko It's possible that he do from numpy.random import randn and from pandas import Series, isn't it? –  aIKid Dec 5 '13 at 12:40
1  
@aIKid Either way a reader should guess where from are those imports. For this question I can do it with ease, but it adds some not needed complexity. –  alko Dec 5 '13 at 12:42
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3 Answers

up vote 1 down vote accepted

One option is to use reset_index:

>>> a.append(b).reset_index(drop=True)
0   -0.370406
1    0.963356
2   -0.147239
3   -0.468802
4    0.057374
5   -1.113767
6    1.255247
7    1.207368
8   -0.460326
9   -0.685425
dtype: float64

For the sake of justice, Roman Pekar method is fastest:

>>> timeit('from __main__ import np, pd, a, b; pd.Series(np.concatenate([a,b]))', number = 10000)
0.6133969540821536
>>> timeit('from __main__ import np, pd, a, b; pd.concat([a, b], ignore_index=True)', number = 10000)
1.020389742271714
>>> timeit('from __main__ import np, pd, a, b; a.append(b).reset_index(drop=True)', number = 10000)
2.2282133623128075
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2  
You could also use reset_index(drop=True). –  DSM Dec 5 '13 at 12:39
    
+1 for justice : ) –  behzad.nouri Dec 5 '13 at 13:04
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you can also use concat with ignore_index=True: (see docs )

pd.concat( [a, b], ignore_index=True )

edit: my tests with larger a and b:

a = pd.Series(pd.np.random.randn(100000))
b = pd.Series(pd.np.random.randn(100000))

%timeit pd.Series(np.concatenate([a,b]))
1000 loops, best of 3: 1.05 ms per loop

%timeit pd.concat([a, b], ignore_index=True)
1000 loops, best of 3: 1.07 ms per loop

%timeit a.append(b).reset_index(drop=True)
100 loops, best of 3: 5.11 ms per loop
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1  
+1 for tests and good solution, looks like pd.concat just wrapping np.concatenate([a,b]) –  Roman Pekar Dec 5 '13 at 13:17
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I think @runnerup answer is the way to go, but you can also create new Series explicitly:

>>> pd.Series(np.concatenate([a,b]))
0   -0.200403
1   -0.921215
2   -1.338854
3    1.093929
4   -0.879571
5   -0.810333
6    1.654075
7    0.360978
8   -0.472407
9    0.123393
dtype: float64
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