7

I have a dataframe with an id column and a quantity column, which can be 0 or 1.

import pandas as pd

df = pd.DataFrame([
{'id': 'thing 1', 'date': '2016-01-01', 'quantity': 0 },
  {'id': 'thing 1', 'date': '2016-02-01', 'quantity': 0 },
  {'id': 'thing 1', 'date': '2016-09-01', 'quantity': 1 },
  {'id': 'thing 1', 'date': '2016-10-01', 'quantity': 1 },
  {'id': 'thing 2', 'date': '2017-01-01', 'quantity': 1 },
  {'id': 'thing 2', 'date': '2017-02-01', 'quantity': 1 },
  {'id': 'thing 2', 'date': '2017-02-11', 'quantity': 1 },
  {'id': 'thing 3', 'date': '2017-09-01', 'quantity': 0 },
  {'id': 'thing 3', 'date': '2017-10-01', 'quantity': 0 },
])
df.date = pd.to_datetime(df.date, format="%Y-%m-%d")
df

If for a certain id I have both 0 and 1 values, I want to return only the 1s. If I have only 1s, I want to return all of them. If I have only 0s, I want to return all of them.

The way I do it is to apply a function to each group and then reset the index:

def drop_that(dff):
    q = len(dff[dff['quantity']==1])
    if q >0:
        return dff[dff['quantity']==1]
    else:
        return dff
    
dfg = df.groupby('id', as_index=False).apply(drop_that)
dfg.reset_index(drop=True)

However, I implemented this just by brute-force googling and I really do not know if this is a good Pandas practice or if there are alternative methods that would be more performant.

Any advice would really be appreciated.

6

You can try:

# find the number of unique quantity for each thing
s = df.groupby('id')['quantity'].transform('nunique')


df[s.eq(1)                 # things with only 1 quantity value (either 0 or 1)
   | df['quantity'].eq(1)  # or quantity==1 when there are 2 values
  ]

Output:

        id       date  quantity
2  thing 1 2016-09-01         1
3  thing 1 2016-10-01         1
4  thing 2 2017-01-01         1
5  thing 2 2017-02-01         1
6  thing 2 2017-02-11         1
7  thing 3 2017-09-01         0
8  thing 3 2017-10-01         0
0
5

Based on your logic, try transform with max, if max eq to original value we should keep,

#logic : only have 0 or 1  max will be 0 or 1 , 
#        if both have 0 and 1, max should be 1 we should keep all value eq to 1 

out = df[df.quantity.eq(df.groupby('id')['quantity'].transform('max'))]
Out[89]: 
        id       date  quantity
2  thing 1 2016-09-01         1
3  thing 1 2016-10-01         1
4  thing 2 2017-01-01         1
5  thing 2 2017-02-01         1
6  thing 2 2017-02-11         1
7  thing 3 2017-09-01         0
8  thing 3 2017-10-01         0

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