105

I want to get the count of dataframe rows based on conditional selection. I tried the following code.

print df[(df.IP == head.idxmax()) & (df.Method == 'HEAD') & (df.Referrer == '"-"')].count()

output:

IP          57
Time        57
Method      57
Resource    57
Status      57
Bytes       57
Referrer    57
Agent       57
dtype: int64

The output shows the count for each an every column in the dataframe. Instead I need to get a single count where all of the above conditions satisfied? How to do this? If you need more explanation about my dataframe please let me know.

5 Answers 5

138

You are asking for the condition where all the conditions are true, so len of the frame is the answer, unless I misunderstand what you are asking

In [17]: df = DataFrame(randn(20,4),columns=list('ABCD'))

In [18]: df[(df['A']>0) & (df['B']>0) & (df['C']>0)]
Out[18]: 
           A         B         C         D
12  0.491683  0.137766  0.859753 -1.041487
13  0.376200  0.575667  1.534179  1.247358
14  0.428739  1.539973  1.057848 -1.254489

In [19]: df[(df['A']>0) & (df['B']>0) & (df['C']>0)].count()
Out[19]: 
A    3
B    3
C    3
D    3
dtype: int64

In [20]: len(df[(df['A']>0) & (df['B']>0) & (df['C']>0)])
Out[20]: 3
3
  • 9
    Which one is faster? len(df[(df['A']>0)]) or sum(df['A']>0)? Dec 25, 2017 at 17:08
  • 5
    no need to wrap with another df, just anding the masks should suffice: ((df['A']>0) & (df['B']>0) & (df['C']>0)).sum()
    – tozCSS
    Sep 17, 2019 at 0:02
  • 1
    Note: in Pandas, count() excludes nulls.
    – flow2k
    Aug 13, 2020 at 0:36
29

In Pandas, I like to use the shape attribute to get number of rows.

df[df.A > 0].shape[0]

gives the number of rows matching the condition A > 0, as desired.

20

For increased performance you should not evaluate the DataFrame using your predicate. Better just use sum(predecate) directly as illustrated below:

In [1]: import pandas as pd
        import numpy as np
        df = pd.DataFrame(np.random.randn(20,4),columns=list('ABCD'))
 

In [2]: df.head()
Out[2]:
          A         B         C         D
0 -2.019868  1.227246 -0.489257  0.149053
1  0.223285 -0.087784 -0.053048 -0.108584
2 -0.140556 -0.299735 -1.765956  0.517803
3 -0.589489  0.400487  0.107856  0.194890
4  1.309088 -0.596996 -0.623519  0.020400

In [3]: %time sum((df['A']>0) & (df['B']>0))
CPU times: user 1.11 ms, sys: 53 µs, total: 1.16 ms
Wall time: 1.12 ms
Out[3]: 4

In [4]: %time len(df[(df['A']>0) & (df['B']>0)])
CPU times: user 1.38 ms, sys: 78 µs, total: 1.46 ms
Wall time: 1.42 ms
Out[4]: 4

Keep in mind that this technique only works for counting the number of rows that comply with your predicate.

5

You can use the method query and get the shape of the resulting dataframe. For example:

   A  B  C
0  1  1  x
1  2  2  y
2  3  3  z

df.query("A == 2 & B > 1 & C != 'z'").shape[0]

Output:

1
1
  • I'm a bit late but have a similar issue : If I am looping over a column values, then will this method work by comparing that variable with some value?
    – Soumya C
    Mar 14, 2022 at 11:31
0
import pandas as pd
data = {'title': ['Manager', 'Technical Analyst', 'Software Engineer', 'Sales Manager'], 'Description': [
'''a man or woman who controls an organization or part of an organization,a person who looks after the business affairs of a singer, actor, etc''',
'''Technical analysts, also known as chartists or technicians, employ technical analysis in their trading and research. Technical analysis looks for price patterns and trends based on historical performance to identify signals based on market sentiment and psychology.''',
'''A software engineer is a person who applies the principles of software engineering to design, develop, maintain, test, and evaluate computer software. The term programmer is sometimes used as a synonym, but may also lack connotations of engineering education or skills.''',
'''A sales manager is someone who leads and supervises sales agents and runs the day-to-day sales operations of a business. They oversee the sales strategy, set sales goals, and track sales performance'''
]}
df = pd.DataFrame(data)
data2 = {'title': ['Manager', 'Technical Analyst', 'Software Engineer', 'Sales Manager'], 'Keywords': [
['organization','business','people','arrange']
,['technicians','analysis','research','business']
,['engineering', 'design', 'develop', 'maintain']
,['supervises', 'agents','business','performance','target']
]}
df2 = pd.DataFrame(data2)
print(df2)
df2=df2.explode('Keywords')

print(df2)
print("checking df3")
df3=df.merge(df2,how='left',on='title')
print(df3)
df3['match'] = df3.apply(lambda x: x.Keywords in x.Description, axis=1)
print(df3)
df4=df3.loc[df3['match']==True].groupby(['Description']).count()
print(df4)
1
  • 1
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    – Community Bot
    Apr 27, 2022 at 21:29

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