Given that `df`

is your dataframe,

```
import numpy as np
df[df['id'].apply(lambda x: isinstance(x, (int, np.int64)))]
```

What it does is passing each value in the `id`

column to the `isinstance`

function and checks if it's an `int`

. Then it returns a boolean array, and finally returning only the rows where there is `True`

.

If you also need to account for `float`

values, another option is:

```
import numpy as np
df[df['id'].apply(lambda x: type(x) in [int, np.int64, float, np.float64])]
```

Note that either way is not inplace, so you will need to reassign it to your original df, or create a new one:

```
df = df[df['id'].apply(lambda x: type(x) in [int, np.int64, float, np.float64])]
# or
new_df = df[df['id'].apply(lambda x: type(x) in [int, np.int64, float, np.float64])]
```