I like to filter out data whose string length is not equal to 10.

If I try to filter out any row whose column A's or B's string length is not equal to 10, I tried this.

df.A=df.A.apply(lambda x: x if len(x)== 10 else np.nan)
df.B=df.B.apply(lambda x: x if len(x)== 10 else np.nan)
df=df.dropna(subset=['A','B'], how='any')

This works slow, but is working.

However, it sometimes produce error when the data in A is not a string but a number (interpreted as a number when read_csv read the input file).

  File "<stdin>", line 1, in <lambda>
TypeError: object of type 'float' has no len()

I believe there should be more efficient and elegant code instead of this.

Based on the answers and comments below, the simplest solution I found are:

df=df[df.A.apply(lambda x: len(str(x))==10]
df=df[df.B.apply(lambda x: len(str(x))==10]


df=df[(df.A.apply(lambda x: len(str(x))==10) & (df.B.apply(lambda x: len(str(x))==10)]


df=df[(df.A.astype(str).str.len()==10) & (df.B.astype(str).str.len()==10)]
import pandas as pd

df = pd.read_csv('filex.csv')
df['A'] = df['A'].astype('str')
df['B'] = df['B'].astype('str')
mask = (df['A'].str.len() == 10) & (df['B'].str.len() == 10)
df = df.loc[mask]

Applied to filex.csv:


the code above prints

            A           B
2  1234567890  abcdefghij

A more Pythonic way of filtering out rows based on given conditions of other columns and their values:

Assuming a df of:


  age        cars  names
0   1       Civic  Alice
1   4         BMW    Zac
2   2  Mitsubishi   Anna
3   0        Benz      O


df['names'].apply(lambda x: len(x)>1) &
df['cars'].apply(lambda x: "i" in x) &
df['age'].apply(lambda x: int(x)<2)

We will have :

  age   cars  names
0   1  Civic  Alice

In the conditions above we are looking first at the length of strings, then we check whether a letter ("i") exists in the strings or not, finally, we check for the value of integers in the first column.


I personally found this way to be the easiest:

df['column_name'] = df[df['column_name'].str.len()!=10]
  • 1
    while this seems to be more convenient at first it is slower than using apply, especially on bigger data sets.
    – Smittie
    Dec 4 '20 at 17:00

If You have numbers in rows, then they will convert as floats.

Convert all the rows to strings after importing from cvs. For better performance split that lambdas into multiple threads.


you can use df.apply(len) . it will give you the result


Filter out values other than length of 10 from column A and B, here i pass lambda expression to map() function. map() function always applies in Series Object.

 df = df[df['A'].map(lambda x: len(str(x)) == 10)]
 df = df[df['B'].map(lambda x: len(str(x)) == 10)]
  • 1
    This would be a better answer if you explained how the code you provided answers the question.
    – pppery
    Jun 16 '20 at 15:36

You could use applymap to filter all columns you want at once, followed by the .all() method to filter only the rows where both columns are True.

#The *mask* variable is a dataframe of booleans, giving you True or False for the selected condition
mask = df[['A','B']].applymap(lambda x: len(str(x)) == 10)

#Here you can just use the mask to filter your rows, using the method *.all()* to filter only rows that are all True, but you could also use the *.any()* method for other needs
df = df[mask.all(axis=1)]

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