There are 2 solutions:
1.sort_values
and aggregate head
:
df1 = df.sort_values('score',ascending = False).groupby('pidx').head(2)
print (df1)
mainid pidx pidy score
8 2 x w 12
4 1 a e 8
2 1 c a 7
10 2 y x 6
1 1 a c 5
7 2 z y 5
6 2 y z 3
3 1 c b 2
5 2 x y 1
2.set_index
and aggregate nlargest
:
df = df.set_index(['mainid','pidy']).groupby('pidx')['score'].nlargest(2).reset_index()
print (df)
pidx mainid pidy score
0 a 1 e 8
1 a 1 c 5
2 c 1 a 7
3 c 1 b 2
4 x 2 w 12
5 x 2 y 1
6 y 2 x 6
7 y 2 z 3
8 z 2 y 5
Timings:
np.random.seed(123)
N = 1000000
L1 = list('abcdefghijklmnopqrstu')
L2 = list('efghijklmnopqrstuvwxyz')
df = pd.DataFrame({'mainid':np.random.randint(1000, size=N),
'pidx': np.random.randint(10000, size=N),
'pidy': np.random.choice(L2, N),
'score':np.random.randint(1000, size=N)})
#print (df)
def epat(df):
grouped = df.groupby('pidx')
new_df = pd.DataFrame([], columns = df.columns)
for key, values in grouped:
new_df = pd.concat([new_df, grouped.get_group(key).sort_values('score', ascending=True)[:2]], 0)
return (new_df)
print (epat(df))
In [133]: %timeit (df.sort_values('score',ascending = False).groupby('pidx').head(2))
1 loop, best of 3: 309 ms per loop
In [134]: %timeit (df.set_index(['mainid','pidy']).groupby('pidx')['score'].nlargest(2).reset_index())
1 loop, best of 3: 7.11 s per loop
In [147]: %timeit (epat(df))
1 loop, best of 3: 22 s per loop
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