So I have initialized an empty pandas DataFrame and I would like to iteratively append lists (or Series) as rows in this DataFrame. What is the best way of doing this?
Could you do something like this?
>>> import pandas as pd >>> df = pd.DataFrame(columns=['col1', 'col2']) >>> df = df.append(pd.Series(['a', 'b'], index=['col1','col2']), ignore_index=True) >>> df = df.append(pd.Series(['d', 'e'], index=['col1','col2']), ignore_index=True) >>> df col1 col2 0 a b 1 d e
Does anyone have a more elegant solution?
If you want to add a Series and use the Series' index as columns of the DataFrame, you only need to append the Series between brackets:
In : import pandas as pd In : df = pd.DataFrame() In : row=pd.Series([1,2,3],["A","B","C"]) In : row Out: A 1 B 2 C 3 dtype: int64 In : df.append([row],ignore_index=True) Out: A B C 0 1 2 3 [1 rows x 3 columns]
ignore_index=True you don't get proper index.
Here's a function that, given an already created dataframe, will append a list as a new row. This should probably have error catchers thrown in, but if you know exactly what you're adding then it shouldn't be an issue.
import pandas as pd import numpy as np def addRow(df,ls): """ Given a dataframe and a list, append the list as a new row to the dataframe. :param df: <DataFrame> The original dataframe :param ls: <list> The new row to be added :return: <DataFrame> The dataframe with the newly appended row """ numEl = len(ls) newRow = pd.DataFrame(np.array(ls).reshape(1,numEl), columns = list(df.columns)) df = df.append(newRow, ignore_index=True) return df