Converting Dataframe Index into a Column
In Python's Pandas library, transforming the index of a dataframe into a column can be a useful data manipulation task. Here's how you can achieve this conversion:
Using the df['index1'] = df.index Method:
This approach directly assigns the dataframe's index to a new column named 'index1' using the = operator:
df['index1'] = df.index
After this operation, the dataframe will include an additional column 'index1' containing the original index values.
Using the .reset_index Method:
Alternatively, you can use the .reset_index method to convert the index into a column and simultaneously reset the original index:
df = df.reset_index()
The index or specific level parameters can be used to customize the number or specific levels to be reset:
df = df.reset_index(level=[0, 1])
This will reset the first and second-level indexes, converting them into columns.
Example:
Consider the dataframe below:
gi ptt_loc 0 384444683 593 1 384444684 594 2 384444686 596
Using the first method:
df['index1'] = df.index
Will result in:
index1 gi ptt_loc 0 0 384444683 593 1 1 384444684 594 2 2 384444686 596
Using the second method:
df = df.reset_index()
Will result in:
index gi ptt_loc 0 0 384444683 593 1 1 384444684 594 2 2 384444686 596
Both methods effectively convert the index into a column. However, the .reset_index method also resets the original index.
The above is the detailed content of How to Convert a Pandas DataFrame Index into a Column?. For more information, please follow other related articles on the PHP Chinese website!

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