I'm working through the "Python For Data Analysis" and I don't understand a particular functionality. Adding two pandas series objects will automatically align the indexed data but if one object does not contain that index it is returned as NaN. For example from book:

``````    a = Series([35000,71000,16000,5000],index=['Ohio','Texas','Oregon','Utah'])
b = Series([NaN,71000,16000,35000],index=['California', 'Texas', 'Oregon', 'Ohio'])
``````

Result:

``````    In [63]: a
Out[63]: Ohio          35000
Texas         71000
Oregon        16000
Utah           5000
In [64]: b
Out[64]: California      NaN
Texas         71000
Oregon        16000
Ohio          35000
``````

When I add them together I get this...

``````    In [65]: a+b
Out[65]: California       NaN
Ohio           70000
Oregon         32000
Texas         142000
Utah             NaN
``````

So why is the Utah value NaN and not 500? It seems that 500+NaN=500. What gives? I'm missing something, please explain.

Update:

``````    In [92]: # fill NaN with zero
b = b.fillna(0)
b
Out[92]: California        0
Texas         71000
Oregon        16000
Ohio          35000

In [93]: a
Out[93]: Ohio      35000
Texas     71000
Oregon    16000
Utah       5000

In [94]: # a is still good
a+b
Out[94]: California       NaN
Ohio           70000
Oregon         32000
Texas         142000
Utah             NaN
``````

Update: Thanks for the solution!

``````In [95]: a.add(b, fill_value=0)
Out[95]: California         0
Ohio           70000
Oregon         32000
Texas         142000
Utah            5000
``````
-
Solved: the '+' operator performs a union of the two. I needed the .add() method instead. – joelotz Apr 24 '13 at 22:20

Pandas does not assume that 500+NaN=500, but it is easy to ask it to do that: `a.add(b, fill_value=0)`