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I understand that pandas is designed to load fully populated DataFrame but I need to create an empty DataFrame then add rows, one by one. What is the best way to do this ?

I successfully created an empty DataFrame with :

res = DataFrame(columns=('lib', 'qty1', 'qty2'))

Then I can add a new row and fill a field with :

res = res.set_value(len(res), 'qty1', 10.0)

It works but seems very odd :-/ (it fails for adding string value)

How can I add a new row to my DataFrame (with different columns type) ?

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Note this is a very inefficient way to build a large DataFrame; new arrays have to be created (copying over the existing data) when you append a row. –  Wes McKinney May 23 '12 at 13:46
@WesMcKinney: Thx, that's really good to know. Is it very fast to add columns to huge tables? –  max Aug 28 '12 at 4:27
If it is too inefficient for you, you may preallocate an additional row and then update it. –  user1154664 Apr 19 '13 at 19:54

5 Answers 5

up vote 20 down vote accepted

Example at @Nasser's answer:

>df = DataFrame(columns=('lib', 'qty1', 'qty2'))
   for i in range(5):
     df.loc[i] = [randint(-1,1) for n in range(3)]

    lib  qty1  qty2
0    0     0    -1
1   -1    -1     1
2    1    -1     1
3    0     0     0
4    1    -1    -1

[5 rows x 3 columns]
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Consider adding the index to preallocate memory (see my answer) –  FooBar Jul 23 '14 at 14:22
Does not work on pandas 0.11.0 –  MaximG Oct 21 '14 at 21:34
@MaximG: I strongly recommend an upgrade. Current Pandas version is 0.15.0. –  fred Oct 23 '14 at 19:17

You could use pandas.concat() or DataFrame.append(). For details and examples, see Merge, join, and concatenate.

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Thanks ! It works. I will edit the question to include the full answer. –  PhE May 23 '12 at 8:37
Hi, so what is the answer for the methods using append() or concat(). I have the same problem, but still trying to figuring it out. –  notilas Aug 20 '14 at 22:52
why is this not the accepted answer? You have to scroll down all the way here to find the highest-rated answer? –  thias Sep 11 '14 at 9:28
@thias, that's one of those eternal questions of modern life, along with "what was Michael Jackson really like?" –  Matt O'Brien Nov 14 '14 at 0:44

You could create a list of dictionary. Where each dictionary corresponds to a row. These rows are then added to the main list in a for loop. Once the list is complete, then create a data frame. This is a much faster approach.

I has a similar problem where if I created a data frame for each row and append it to the main data frame it took 30 mins. On the other hand, if used below methodology, I was successful within seconds.

rows_list = []
for row in rows:

        dict1 = {}
        # get the row in dictionary format


df = pd.DataFrame(rows_list)               
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I've moved to doing this as well for any situation where I can't get all the data up front. The speed difference is astonishing. –  fantabolous Aug 13 '14 at 12:19

If you know the number of entries ex ante, you should preallocate the space by also providing the index (taking the data example from a different answer):

import pandas as pd
import numpy as np
# we know we're gonna have 5 rows of data
numberOfRows = 5
# create dataframe
df = pd.DataFrame(index=np.arange(0, numberOfRows), columns=('lib', 'qty1', 'qty2') )

# now fill it up row by row
for x in np.arange(0, numberOfRows):
    #loc or iloc both work here since the index is natural numbers
    df.loc[x] = [np.random.randint(-1,1) for n in range(3)]
In[23]: df
   lib  qty1  qty2
0   -1    -1    -1
1    0     0     0
2   -1     0    -1
3    0    -1     0
4   -1     0     0

Speed comparison

In[30]: %timeit tryThis() # function wrapper for this answer
In[31]: %timeit tryOther() # function wrapper without index (see, for example, @fred)
1000 loops, best of 3: 1.23 ms per loop
100 loops, best of 3: 2.31 ms per loop

And - as from the comments - with a size of 6000, the speed difference becomes even larger:

Increasing the size of the array (12) and the number of rows (500) makes the speed difference more striking: 313ms vs 2.29s

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Great answer. This should be the norm so that row space doesn't have to allocated incrementally. –  Mr. F Oct 9 '14 at 18:32
Increasing the size of the array(12) and the number of rows(500) makes the speed difference more striking: 313ms vs 2.29s –  Tickon Apr 2 at 10:55

For efficient appending see How to add an extra row to a pandas dataframe and Setting With Enlargement.

Add rows through loc on non existing index data.

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