1

I am impressed by using a simple code that enables me to check if there is an entry of my DataFrame that contains integer or a float in my the columns

Consider the following DataFrame

import numpy as np
import pandas as pd
index =[0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, 16, 17, 18, 19, 20, 21, 22, 23, 24, 25, 26, 27, 28, 29, 30, 31, 32, 33, 34, 35, 36, 37, 38, 39]
dct =  {'Region': {0: 'Amma', 1: 'Amma', 2: 'Amma', 3: np.nan, 4: 'Amma', 5: 'Amma', 6: 'Amma', 7: '1', 8: 'Amma', 9: 'Amma', 10: 'Amma', 11: 'Amma', 12: 'Amma', 13: 'Amma', 14: 'Amma', 15: 'Amma', 16: 'Amma', 17: 'Amma', 18: 'Amma', 19: 'Amma', 20: 'Amma', 21: 'Amma', 22: 'Amma', 23: 'Amma', 24: 'Amma', 25: 'Amma', 26: 'Amma', 27: 'Amma', 28: 'Amma', 29: 'Amma', 30: 'Amma', 31: 'Amma', 32: 'Amma', 33: 'Amma', 34: 'Amma', 35: 'Amma', 36: 'Amma', 37: 'Amma', 38: 'Amma', 39: 'Amma'}, 'Urban/Rural residence': {0: 'Urba', 1: 'Urba', 2: 'Urba', 3: 'Urba', 4: 'Urba', 5: 'Urba', 6: 'Urba', 7: 'Urba', 8: 'Urba', 9: 'Urba', 10: 'Urba', 11: 'Urba', 12: 'Urba', 13: 'Urba', 14: 'Urba', 15: 'Urba', 16: 'Urba', 17: 'Urba', 18: 'Urba', 19: 'Urba', 20: 'Urba', 21: 'Urba', 22: 'Urba', 23: 'Rural', 24: 'Urba', 25: 'Urba', 26: 'Urba', 27: 'Urba', 28: 'Urba', 29: 'Urba', 30: 'Urba', 31: 'Urba', 32: 'Urba', 33: 'Urba', 34: '1.65', 35: 'Urba', 36: 'Urba', 37: 'Urba', 38: 'Urba', 39: 'Urba'}}
new_df = pd.DataFrame( dct, index=index )

Now also I had to define some functions as

def solve(lis):                                        
    for x in lis:
        try:
            yield float(x)
        except ValueError:    
            pass

def CheckIfFloat(new_df):
    a=[]
    for i in new_df.columns:
        new_df1=new_df[new_df[i].isna()==0][i]
        A=list(solve(new_df1))
        if len(A)!=0:
            a.insert(len(a),i)
        return a

Now for some reason, this did not work as expected, the outcome should be both columns. But here it only gives the first column.

Is there an easier way of doing this?

4

Use pandas.to_numeric with argument errors='coerce' and create a list comprehension of any column that contains any valid number.

number_cols = new_df.columns[[pd.to_numeric(new_df[col], errors='coerce').notna().any() for col in new_df]]

And you can index by

new_df[number_cols]
2

Create Series with columns names and boolean for check if at least one numeric value by to_numeric and errors='coerce' parameter - it return NaNs for non numeric, so test values by Series.notna with Series.any.

If need select columns useDataFrame.loc:

mask = new_df.apply(lambda x: pd.to_numeric(x, errors='coerce').notna().any())

print (mask)
Region                   True
Urban/Rural residence    True
dtype: bool

df = new_df.loc[:, mask]

If need columns names:

cols = mask.index[mask].tolist()

Your solution should be changed:

def CheckIfFloat(x):
    try:
        float(x)
        return True
    except ValueError:    
        return False

mask = new_df.applymap(CheckIfFloat).any()

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