Pandas: Adding new column to dataframe which is a copy of the index column

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Pandas: Adding new column to dataframe which is a copy of the index column

I have a dataframe which I want to plot with matplotlib, but the index column is the time and I cannot plot it.

This is the dataframe (df3):

enter image description here

but when I try the following:

plt.plot(df3['magnetic_mag mean'], df3['YYYY-MO-DD HH-MI-SS_SSS'], label='FDI')

I’m getting an error obviously:

KeyError: 'YYYY-MO-DD HH-MI-SS_SSS'

So what I want to do is to add a new extra column to my dataframe (named ‘Time) which is just a copy of the index column.

How can I do it?

This is the entire code:

#Importing the csv file into df
df = pd.read_csv('university2.csv', sep=";", skiprows=1)
#Changing datetime
df['YYYY-MO-DD HH-MI-SS_SSS'] = pd.to_datetime(df['YYYY-MO-DD HH-MI-SS_SSS'],
                                               format='%Y-%m-%d %H:%M:%S:%f')
#Set index from column
df = df.set_index('YYYY-MO-DD HH-MI-SS_SSS')
#Add Magnetic Magnitude Column
df['magnetic_mag'] = np.sqrt(df['MAGNETIC FIELD X (μT)']**2 + df['MAGNETIC FIELD Y (μT)']**2 + df['MAGNETIC FIELD Z (μT)']**2)
#Subtract Earth's Average Magnetic Field from 'magnetic_mag'
df['magnetic_mag'] = df['magnetic_mag'] - 30
#Copy interesting values
df2 = df[[ 'ATMOSPHERIC PRESSURE (hPa)',
          'TEMPERATURE (C)', 'magnetic_mag']].copy()
#Hourly Average and Standard Deviation for interesting values 
df3 = df2.resample('H').agg(['mean','std'])
df3.columns = [' '.join(col) for col in df3.columns]
df3.reset_index()
plt.plot(df3['magnetic_mag mean'], df3['YYYY-MO-DD HH-MI-SS_SSS'], label='FDI')

Thank you !!

Answer #1:

I think you need reset_index:

df3 = df3.reset_index()

Possible solution, but I think inplace is not good practice, check this and this:

df3.reset_index(inplace=True)

But if you need new column, use:

df3['new'] = df3.index

I think you can read_csv better:

df = pd.read_csv('university2.csv',
                 sep=";",
                 skiprows=1,
                 index_col='YYYY-MO-DD HH-MI-SS_SSS',
                 parse_dates='YYYY-MO-DD HH-MI-SS_SSS') #if doesnt work, use pd.to_datetime

And then omit:

#Changing datetime
df['YYYY-MO-DD HH-MI-SS_SSS'] = pd.to_datetime(df['YYYY-MO-DD HH-MI-SS_SSS'],
                                               format='%Y-%m-%d %H:%M:%S:%f')
#Set index from column
df = df.set_index('YYYY-MO-DD HH-MI-SS_SSS')
Answered By: ValientProcess

Answer #2:

You can directly access in the index and get it plotted, following is an example:

import matplotlib.pyplot as plt
import pandas as pd
import numpy as np
df = pd.DataFrame(np.random.randn(1000), index=pd.date_range('1/1/2000', periods=1000))
#Get index in horizontal axis
plt.plot(df.index, df[0])
plt.show()

enter image description here

 #Get index in vertiacal axis
 plt.plot(df[0], df.index)
 plt.show()

enter image description here

Answered By: jezrael
The answers/resolutions are collected from stackoverflow, are licensed under cc by-sa 2.5 , cc by-sa 3.0 and cc by-sa 4.0 .

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