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I'm using python pandas data frame , I have a initial data frame say D. I extract two data frames from it like this:

A = D[D.label == k]

B = D[D.label != k]

then I change the label in A and B:

A.label = 1

B.label = -1

I want to combine A and B so I can have them as one data frame something like union. The order of the data not important , however when we sample A and B from D they retain their indexes from D.

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its easier to get high quality answers if you accept correct ones ... – Joran Beasley Oct 12 '12 at 0:06

2 Answers 2

up vote 12 down vote accepted

I believe you can use the append

bigdata=data1.append(data2,ignore_index = True)

to keep their indexes just dont use the ignore_index keyword ...

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This works. It creates a new DataFrame though. Is there a way to do it inline? That would be nice for when I'm loading huge amounts of data from a database in batches so I could iteratively update the DataFrame without creating a copy each time. – Andrew Nov 5 '13 at 17:36

You can also use pd.concat, which is particularly helpful when you are joining more than two dataframes:

bigdata = pd.concat([data1, data2], ignore_index=True)
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