49

I have some data I'm trying to organize into a DataFrame in Pandas. I was trying to make each row a Series and append it to the DataFrame. I found a way to do it by appending the Series to an empty list and then converting the list of Series to a DataFrame

e.g. DF = DataFrame([series1,series2],columns=series1.index)

This list to DataFrame step seems to be excessive. I've checked out a few examples on here but none of the Series preserved the Index labels from the Series to use them as column labels.

My long way where columns are id_names and rows are type_names: enter image description here

Is it possible to append Series to rows of DataFrame without making a list first?

#!/usr/bin/python

DF = DataFrame()
for sample,data in D_sample_data.items():
    SR_row = pd.Series(data.D_key_value)
    DF.append(SR_row)
DF.head()

TypeError: Can only append a Series if ignore_index=True or if the Series has a name

Then I tried

DF = DataFrame()
for sample,data in D_sample_data.items():
    SR_row = pd.Series(data.D_key_value,name=sample)
    DF.append(SR_row)
DF.head()

Empty DataFrame

Tried Insert a row to pandas dataframe Still getting an empty dataframe :/

I am trying to get the Series to be the rows, where the index of the Series becomes the column labels of the DataFrame

  • I'm trying to add rows. The index of the Series should be the columns of the DataFrame. So rows would be samples and columns would be features. – O.rka Oct 13 '15 at 4:26
  • Did you try adding a name to the Series, as the error message suggests? – BrenBarn Oct 13 '15 at 4:29
  • You need to read the error message. It tells you to add a name to the Series, or use ignore_index=True. If you do either of those, it works fine. – BrenBarn Oct 13 '15 at 4:45
  • There is no error message, it just gives me an empty dataframe – O.rka Oct 13 '15 at 4:58
69

Maybe an easier way would be to add the pandas.Series into the pandas.DataFrame with ignore_index=True argument to DataFrame.append(). Example -

DF = DataFrame()
for sample,data in D_sample_data.items():
    SR_row = pd.Series(data.D_key_value)
    DF = DF.append(SR_row,ignore_index=True)

Demo -

In [1]: import pandas as pd

In [2]: df = pd.DataFrame([[1,2],[3,4]],columns=['A','B'])

In [3]: df
Out[3]:
   A  B
0  1  2
1  3  4

In [5]: s = pd.Series([5,6],index=['A','B'])

In [6]: s
Out[6]:
A    5
B    6
dtype: int64

In [36]: df.append(s,ignore_index=True)
Out[36]:
   A  B
0  1  2
1  3  4
2  5  6

Another issue in your code is that DataFrame.append() is not in-place, it returns the appended dataframe, you would need to assign it back to your original dataframe for it to work. Example -

DF = DF.append(SR_row,ignore_index=True)

To preserve the labels, you can use your solution to include name for the series along with assigning the appended DataFrame back to DF. Example -

DF = DataFrame()
for sample,data in D_sample_data.items():
    SR_row = pd.Series(data.D_key_value,name=sample)
    DF = DF.append(SR_row)
DF.head()
| improve this answer | |
  • I saw that on "Insert a row to pandas dataframe" link above. I'm trying to mess around with it. Maybe there is something that I'm not doing correctly. – O.rka Oct 13 '15 at 4:55
  • 7
    Ah man, thanks! I didn't catch the DF = DF.append() That's way different than list appending. Sorry I missed that. – O.rka Oct 13 '15 at 5:10
  • I lost the Index labels. Is there any way to preserve this? – O.rka Oct 13 '15 at 5:12
  • 2
    you can use your name solution with DF = DF.append(SR_row) . Updated the answer with that example. – Anand S Kumar Oct 13 '15 at 5:12
  • Got it! Thanks a ton @Anand S Kumar – O.rka Oct 13 '15 at 5:25
16

DataFrame.append does not modify the DataFrame in place. You need to do df = df.append(...) if you want to reassign it back to the original variable.

| improve this answer | |
  • This is a deviation from python normal behavior and is worthwhile to always keep in mind. – Adnan Y Jun 10 at 0:30
6

Something like this could work...

mydf.loc['newindex'] = myseries

Here is an example where I used it...

stats = df[['bp_prob', 'ICD9_prob', 'meds_prob', 'regex_prob']].describe()

stats
Out[32]: 
          bp_prob   ICD9_prob   meds_prob  regex_prob
count  171.000000  171.000000  171.000000  171.000000
mean     0.179946    0.059071    0.067020    0.126812
std      0.271546    0.142681    0.152560    0.207014
min      0.000000    0.000000    0.000000    0.000000
25%      0.000000    0.000000    0.000000    0.000000
50%      0.000000    0.000000    0.000000    0.013116
75%      0.309019    0.065248    0.066667    0.192954
max      1.000000    1.000000    1.000000    1.000000

medians = df[['bp_prob', 'ICD9_prob', 'meds_prob', 'regex_prob']].median()

stats.loc['median'] = medians

stats
Out[36]: 
           bp_prob   ICD9_prob   meds_prob  regex_prob
count   171.000000  171.000000  171.000000  171.000000
mean      0.179946    0.059071    0.067020    0.126812
std       0.271546    0.142681    0.152560    0.207014
min       0.000000    0.000000    0.000000    0.000000
25%       0.000000    0.000000    0.000000    0.000000
50%       0.000000    0.000000    0.000000    0.013116
75%       0.309019    0.065248    0.066667    0.192954
max       1.000000    1.000000    1.000000    1.000000
median    0.000000    0.000000    0.000000    0.013116
| improve this answer | |
1

Try using this command. See the example given below:

Before image

df.loc[len(df)] = ['Product 9',99,9.99,8.88,1.11]

df

After Image

| improve this answer | |
0

Convert the series to a dataframe and transpose it, then append normally.

srs = srs.to_frame().T
df = df.append(srs)
| improve this answer | |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.