The pandas documentation includes a note:

Note Unlike list.append method, which appends to the original list and returns nothing, append here does not modify df1 and returns its copy with df2 appended.

How can I append to an existing DataFrame without making a copy? Or in the terms of the note how can I modify df1 in place by appending df2 and return nothing?

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    It looks like there is not actually a performance gain by modifying in place: github.com/pydata/pandas/issues/2801 – cameron.bracken Aug 12 '13 at 21:40
  • This is not currently supported in pandas. I'm not sure it's worth the trouble either. Did you have a particular use case in mind? – Phillip Cloud Aug 12 '13 at 21:59
  • heres a related question: stackoverflow.com/questions/16740887/…. What is your end goal here? – Jeff Aug 13 '13 at 0:09
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    I am reading in a many large data files from an external source and building a DataFrame piece by piece, that I can then write out to a database all at once. The DataFrame will get very large (many GBs) and I want to avoid making a copy each time I add new data. – cameron.bracken Aug 13 '13 at 1:12

See How to add an extra row to a pandas dataframe

Upcoming pandas 0.13 version will allow to add rows through loc on non existing index data.

Description is here and this new feature is called Setting With Enlargement.

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    the solution from Setting With Enlargement works only for 1 row. The questions was "appends rows ..." – 2diabolos.com Dec 1 '16 at 12:32

Why not use concat?

df = pd.concat([df, pd.DataFrame(new_data)])
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    If I understand correctly, that makes a copy of df and reassigns it, which is what I want to avoid if df is large. – cameron.bracken Aug 13 '13 at 16:02

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