6

I have DataFrame like below:

df = pd.DataFrame([
    ("i", 1, 'GlIrbixGsmCL'),
    ("i", 1, 'GlIrbixGsmCL'),
    ("i", 1, '3IMR1UteQA'),
    ("c", 1, 'GlIrbixGsmCL'),
    ("i", 2, 'GlIrbixGsmCL'),
], columns=['type', 'cid', 'userid'])

Expected output like: expect output

For more details:

i_counts, c_counts      => df.groupby(["cid","type"]).size()
i_ucounts, c_ucounts    => df.groupby(["cid","type"])["userid"].nunique()
i_frequency,u_frequency => df.groupby(["cid","type"])["userid"].value_counts()

Looks it's a little complex for me, how to do with pandas to get the expected result?

The related screenshots: screenshots

2
  • 1
    Have a look at agg function
    – rpanai
    May 30 at 4:15
  • I also tried code df.groupby(["cid","type"]).agg(counts=("userid", np.size), ucounts=("userid", "nunique")).reset_index() , but don't know how to do the next to get what I want as expect
    – Silence He
    May 30 at 4:30
1

This is how I would approach this:

aggfuncs= {
    'counts': ('userid', 'count'), 
    'ucounts': ('userid', 'nunique'),
    'frequency': ('userid', lambda S: S.value_counts().to_dict()),
}

output = df.groupby(['cid', 'type']).agg(**aggfuncs).unstack()
output.columns = output.columns.map(lambda tup: '_'.join(tup[::-1]))

output:

     c_counts  i_counts  c_ucounts  i_ucounts          c_frequency                           i_frequency
cid
1         1.0       3.0        1.0        2.0  {'GlIrbixGsmCL': 1}  {'GlIrbixGsmCL': 2, '3IMR1UteQA': 1}
2         NaN       1.0        NaN        1.0                  NaN                   {'GlIrbixGsmCL': 1}

I think that is the core of what you want. You will need some cosmetic amendments to get the output exactly as in your example (e.g. fillna etc.).

0

STEPS:

  1. Extract the id_numbers from user_id and convert them to int type.
  2. Use groupby and agg to evaluate count/ucount / `frequency.
  3. use pivot to restructure the table.
  4. flatten the columns and reset_index if required.
df['userid'] = df.userid.str.extract(r'(\d+)').astype(int)
k = df.groupby(["type", 'cid']).agg(count=('userid', 'count'), ucount=(
    'userid', 'nunique'), frequency=('userid', lambda x: x.value_counts().to_dict())).reset_index()
k = k.pivot(index=[k.index, 'cid'], columns='type').fillna(0)

OUTPUT:

      count      ucount      frequency              
type      c    i      c    i         c             i
  cid                                               
0 1     1.0  0.0    1.0  0.0    {1: 1}             0
1 1     0.0  3.0    0.0  2.0         0  {1: 2, 2: 1}
2 2     0.0  1.0    0.0  1.0         0        {1: 1}

Then to transform columns:

k.columns = k.columns.map(lambda x: '_'.join(x[::-1]))

OUTPUT:

       c_count  i_count  c_ucount  i_ucount c_frequency   i_frequency
  cid                                                                
0 1        1.0      0.0       1.0       0.0      {1: 1}             0
1 1        0.0      3.0       0.0       2.0           0  {1: 2, 2: 1}
2 2        0.0      1.0       0.0       1.0           0        {1: 1}

updated answer (according to your edited question):

k = df.groupby(["type" , 'cid']).agg(count = ('userid' ,'count') , ucount = ('userid', 'nunique') , frequency=('userid', lambda x: x.value_counts().to_dict())).reset_index()
k = k.pivot(index=['cid'], columns ='type').fillna(0)

OUTPUT:

    count   ucount  frequency
type    c   i   c   i   c   i
cid                     
1   1.0 3.0 1.0 2.0 {'userid001': 1}    {'userid001': 2, 'userid002': 1}
2   0.0 1.0 0.0 1.0 0   {'userid001': 1}

NOTE: use df.userid = df.userid.factorize()[0] to encode userid if required.

6
  • I tried your code, looks I got Error like with df.assign code => KeyError: "[('userid', '<lambda>')] not in index"
    – Silence He
    May 30 at 5:10
  • But is this what you need? or not? @SilenceHe.
    – Nk03
    May 30 at 5:12
  • By the way, the userid is somthing like random user cookie, so they are not regular string like {userid + number}, so maybe df.userid.str.split('userid').str[1].astype(int) is not suit for this scenario.
    – Silence He
    May 30 at 5:36
  • yes, it's what I what, looks I have something wrong with the output result, will update the result for this question
    – Silence He
    May 30 at 5:42
  • Made few more changes @SilenceHe
    – Nk03
    May 30 at 5:49

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.