Reputation: 19375
I have a very large dataset, that looks like
df = pd.DataFrame({'B': ['john smith', 'john doe', 'adam smith', 'john doe', np.nan], 'C': ['indiana jones', 'duck mc duck', 'batman','duck mc duck',np.nan]})
df
Out[173]:
B C
0 john smith indiana jones
1 john doe duck mc duck
2 adam smith batman
3 john doe duck mc duck
4 NaN NaN
I need to create a ID variable, that is unique for every B-C combination. That is, the output should be
B C ID
0 john smith indiana jones 1
1 john doe duck mc duck 2
2 adam smith batman 3
3 john doe duck mc duck 2
4 NaN NaN 0
I actually dont care about whether the index starts at zero or not, and whether the value for the missing columns is 0 or any other number. I just want something fast, that does not take a lot of memory and can be sorted quickly. I use:
df['combined_id']=(df.B+df.C).rank(method='dense')
but the output is float64
and takes a lot of memory. Can we do better?
Thanks!
Upvotes: 9
Views: 14860
Reputation: 1127
jezrael's answer is great. But since this is for multiple columns, I prefer to use .ngroup() since this way NaN could remain NaN.
df['combined_id'] = df.groupby(['B', 'C'], sort = False).ngroup()
df
Upvotes: 0
Reputation: 2757
Making jezrael's answer a little more general (what if the columns were not string?), you can use this compact function:
def make_identifier(df):
str_id = df.apply(lambda x: '_'.join(map(str, x)), axis=1)
return pd.factorize(str_id)[0]
df['combined_id'] = make_identifier(df[['B','C']])
Upvotes: 7