замените:
df_students['birthday'] = pd.to_datetime(df_students['birthday'])
на
df_students['birthday'] = pd.to_datetime(df_students['birthday'], errors="coerce")
возраст (в годах) лучше считать так:
df_students["age"] = \
(pd.to_datetime("today") - df_students["birthday"]).astype('<m8[Y]')
UPD: тест на вашем датасете:
In [62]: df_students = pd.read_csv("students.csv")
In [63]: df_students['birthday'] = pd.to_datetime(df_students['birthday'], errors="coerce")
In [64]: df_students["age"] = \
...: (pd.to_datetime("today") - df_students["birthday"]).astype('<m8[Y]')
результат:
In [65]: df_students
Out[65]:
id_ id city birthday age
0 1325 35e8a1938b9a33d5e45c8f4451c4309a NaN NaT NaN
1 7503 6c3e52be632fc50de9640147e4017dcd Москва 1979-10-23 41.0
2 8972 2033122d7c9b24b36eebc468d5259642 NaN NaT NaN
3 9235 a6ae278c0eab719b3784e5ea147c128f Москва NaT NaN
4 9588 51b25c9afd20d178ef3c07276df38e2d Великий Новгород NaT NaN
... ... ... ... ... ...
43825 124251 a65ccacbe0226b345f195d02e676aa04 NaN 2000-11-21 20.0
43826 124338 148f1375e4135e779053a0d4b2a63857 NaN 1999-10-20 21.0
43827 124363 05fa419f832fa78ad6e7a5f90b0f71e6 NaN NaT NaN
43828 124377 9ff58c490f6ee5b013e7f62140ee3d79 NaN 1998-04-18 22.0
43829 124445 5c02b021cef9b775bb874bf1658ffb58 NaN NaT NaN
[43830 rows x 5 columns]
In [66]: df.dtypes
Out[66]:
id_ int64
id object
city object
birthday datetime64[ns]
dtype: object