I have a pandas DataFrame with log data:

        host service
0   this.com    mail
1   this.com    mail
2   this.com     web
3   that.com    mail
4  other.net    mail
5  other.net     web
6  other.net     web

And I want to find the service on every host that gives the most errors:

        host service  no
0   this.com    mail   2
1   that.com    mail   1
2  other.net     web   2

The only solution I found was grouping by host and service, and then iterating over the level 0 of the index.

Can anyone suggest a better, shorter version? without the Iteration?

df = df_logfile.groupby(['host','service']).agg({'service':np.size})

df_count = pd.DataFrame()
df_count['host'] = df_logfile['host'].unique()
df_count['service']  = np.nan
df_count['no']    = np.nan

for h,data in df.groupby(level=0):
  i = data.idxmax()[0]   
  service = i[1]             
  no = data.xs(i)[0]
  df_count.loc[df_count['host'] == h, 'service'] = service
  df_count.loc[(df_count['host'] == h) & (df_count['service'] == service), 'no']   = no

full code https://gist.github.com/bjelline/d8066de66e305887b714

1 Answer 1


Given df, the next step is to group by the host value alone and
aggregate by idxmax. This gives you the index which corresponds the the greatest service value. You can then use df.loc[...] to select the rows in df which correspond to the greatest service values:

import numpy as np
import pandas as pd

df_logfile = pd.DataFrame({ 
    'host' : ['this.com', 'this.com', 'this.com', 'that.com', 'other.net', 
              'other.net', 'other.net'],
    'service' : ['mail', 'mail', 'web', 'mail', 'mail', 'web', 'web' ] })

df = df_logfile.groupby(['host','service'])['service'].agg({'no':'count'})
mask = df.groupby(level=0).agg('idxmax')
df_count = df.loc[mask['no']]
df_count = df_count.reset_index()

yields the DataFrame

        host service  no
0  other.net     web   2
1   that.com    mail   1
2   this.com    mail   2

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.