Because SO won't let me comment yet (grr), answering Arthur's question about what's going on in BrenBarn's answer here.
Here is from pandas docs on advanced indexing: http://pandas.pydata.org/pandas-docs/stable/indexing.html#indexing-advanced
The section after 'Assignment / setting values is possible when using ix:' will explain exactly what you need! Turns out df.ix can be used for cool slicing/dicing of a dataframe. Annnnd. It can also be used to set things.
df.ix[selection criteria, columns I want] = value
So Bren's answer is saying 'find me all the places where df.A == 0, select column B and set it to np.nan'
New to this as well -- hope that helps.