88

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=pd.read_csv('filex.csv')
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]

or

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

or

df=df[(df.A.astype(str).str.len()==10) & (df.B.astype(str).str.len()==10)]
143
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]
print(df)

Applied to filex.csv:

A,B
123,abc
1234,abcd
1234567890,abcdefghij

the code above prints

            A           B
2  1234567890  abcdefghij
0
26

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

Assuming a df of:

data={"names":["Alice","Zac","Anna","O"],"cars":["Civic","BMW","Mitsubishi","Benz"],
     "age":["1","4","2","0"]}

df=pd.DataFrame(data)
df:
  age        cars  names
0   1       Civic  Alice
1   4         BMW    Zac
2   2  Mitsubishi   Anna
3   0        Benz      O

Then:

df[
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.

7

I personally found this way to be the easiest:

df['column_name'] = df[df['column_name'].str.len()!=10]
1
  • 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
1

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.

0

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

0

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
  • 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
0

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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