First I have the following empty DataFrame preallocated:


Then I want to update the df row by row (efficiently) with a length-10000 numpy array as data. My problem is: I don't even have an idea what method of DataFrame I should use to accomplish this task.

Thank you!

  • this will be quite inefficient. Better to construct the frame column by column then transpose at the end. – Jeff Sep 12 '13 at 18:52
  • If you already have the numpy array as data, why not put it into the DataFrame constructor?? – Andy Hayden Sep 12 '13 at 19:17
  • @AndyHayden,actually I have a list of generators as the return value of some function, and every generator in the list will be a numpy array (serves a row in the frame) once I list() it. Do you think it more efficient to list() them all at the same time? – wdg Sep 13 '13 at 1:38
  • If you can do it with list (memory wise) it'll be efficient. Another option, if memory was an issue, is to do it chunkbychunk (i.e. read it in several pieces and concat the result). – Andy Hayden Sep 13 '13 at 2:07

Here's 3 methods, only 100 columns, 1000 rows

In [5]: row = np.random.randn(100)

Row wise assignment

In [6]: def method1():
   ...:     df = DataFrame(columns=range(100),index=range(1000))
   ...:     for i in xrange(len(df)):
   ...:         df.iloc[i] = row
   ...:     return df

Build up the arrays in a list, create the frame all at once

In [9]: def method2():
   ...:     return DataFrame([ row for i in range(1000) ])

Columnwise assignment (with transposes at both ends)

In [13]: def method3():
   ....:     df = DataFrame(columns=range(100),index=range(1000)).T
   ....:     for i in xrange(1000):
   ....:         df[i] = row
   ....:     return df.T

These all have the same output frame

In [22]: (method2() == method1()).all().all()
Out[22]: True

In [23]: (method2() == method3()).all().all()
Out[23]: True

In [8]: %timeit method1()
1 loops, best of 3: 1.76 s per loop

In [10]: %timeit method2()
1000 loops, best of 3: 7.79 ms per loop

In [14]: %timeit method3()
1 loops, best of 3: 1.33 s per loop

It is CLEAR that building up a list, THEN creating the frame all at once is orders of magnitude faster than doing any form of assignment. Assignment involves copying. Building up all at once only copies once.

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  • 4
    I've just tried def method4(): df = pd.DataFrame(columns=range(100),index=range(1000)) for i in xrange(len(df)): df.values[i,:]=row return df and it's about 40% faster than method2(). I understand .values assignment is not always type safe, but in case you know your df structure, it should be okay. Is that right? – Ondrej Aug 21 '15 at 15:05
  • 3
    Or, replacing the loop and just assigning directly, df.values[:,:] = row, which works as the row is repeated row-wise upon assignment, gives you further 2X speedup, overall 4 times faster than method2(). I'm getting 25.5 ms, 15.8 ms, and 5.83 ms per loop for method two, four, and five, respectively. – Ondrej Aug 21 '15 at 15:15
  • 3
    Not important for the question but I find df1.equals(df2) to be much more readable than (df1 == df2).all().all(), just throwing it out there for anyone not aware of the equals method for comparing dataframes – derchambers Apr 11 '16 at 23:03
  • 1
    .equals() is newer that this post - maybe was 0.14 or 0.15 – Jeff Apr 11 '16 at 23:05
a = np.array( [9,9,9,9,9,9,9,9,9,9] )

Update row:

df.loc[2] = a

Using Jeff's idea...

df2 = DataFrame(data=np.random.randn(10,10), index=arange(10))

I have written up a notebook answering the question: https://www.wakari.io/sharing/bundle/hrojas/pandas%20efficient%20dataframe%20set%20row

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