There's a few things going on here. For now, I will drop the loop but we know that `j`

will take values in `y_set`

so will be either zero or one. First make the two arrays:

```
import numpy as np
X_set = np.arange(20).reshape(10, 2)
y_set = np.array([0, 1, 1, 1, 0, 0, 1, 1, 0, 1])
```

From the above, this code is basically doing:

```
plt.scatter(filtered_values_in_first_column_of X_set,
filtered_values_in_second_column_of X_set)
```

`y_set`

is providing the filter. We can get there by building up the steps:

```
print("Where y_set == 0: Boolean mask.")
print(y_set == 0)
print()
print("All rows of X_set indexed by the Boolean mask")
print(X_set[y_set == 0])
print()
print("2D indexing to get only the first column of the above")
print(X_set[y_set == 0, 0])
print()
```

You can see more on the `numpy`

indexing here. Once you break the steps down, it's not too complicated but I think it was an unnecessarily complex way of achieving this task.

The `for`

loop is so that they could repeat the plot with two different colours depending on whether the values are filtered by `y_set`

being equal to 0 or 1.

`y_set == j, 0`

will return`True`

or`False`

. And then, If your X_set defined by pandas type. we'll filter by boolean. – Frank AK Jul 31 '18 at 13:03