4

I have a dataframe with a string column and I would like to drop all rows after the last occurrence of a name.

first_name
Andy
Josh
Mark
Tim
Alex
Andy
Josh
Mark
Tim
Alex
Andy
Josh
Mark

What I would like is to drop rows after Alex occurs for the last time, so drop the rows with Andy, Josh and Mark.

I figured I drop before the first occurrence with: df=df[(df.first_name== 'Alex').idxmax():], but don't know how to drop last rows.

Thanks!

4

argmax

df.iloc[:len(df) - (df.first_name.to_numpy() == 'Alex')[::-1].argmax()]

  first_name
0       Andy
1       Josh
2       Mark
3        Tim
4       Alex
5       Andy
6       Josh
7       Mark
8        Tim
9       Alex

last_valid_index

df.loc[:df.where(df == 'Alex').last_valid_index()]

Option 3

df.loc[:df.first_name.eq('Alex')[::-1].idxmax()]

Option 4

df.iloc[:np.flatnonzero(df.first_name.eq('Alex')).max() + 1]

Option 5

This is silly!

df[np.logical_or.accumulate(df.first_name.eq('Alex')[::-1])[::-1]]
2

mask and bfill

df[df['first_name'].mask(df['first_name'] != 'Alex').bfill().notna()]

  first_name
0       Andy
1       Josh
2       Mark
3        Tim
4       Alex
5       Andy
6       Josh
7       Mark
8        Tim
9       Alex

cumsum and idxmax

df.loc[:(df['first_name'] == 'Alex').cumsum().idxmax()]

  first_name
0       Andy
1       Josh
2       Mark
3        Tim
4       Alex
5       Andy
6       Josh
7       Mark
8        Tim
9       Alex

cumsum and max

u = (df['first_name'] == 'Alex').shift().cumsum()
df[u < u.max()]

  first_name
1       Josh
2       Mark
3        Tim
4       Alex
5       Andy
6       Josh
7       Mark
8        Tim
9       Alex

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