Given the following `DataSet`

values as `inputData`

:

```
column0 column1 column2 column3
A 88 text 99
Z 12 test 200
T 120 foo 12
```

In Spark, what is an efficient way to compute a new `hash`

column, and append it to a new `DataSet`

, `hashedData`

, where `hash`

is defined as the application of `MurmurHash3`

over each row value of `inputData`

.

Specifically, `hashedData`

as:

```
column0 column1 column2 column3 hash
A 88 text 99 MurmurHash3.arrayHash(Array("A", 88, "text", 99))
Z 12 test 200 MurmurHash3.arrayHash(Array("Z", 12, "test", 200))
T 120 foo 12 MurmurHash3.arrayHash(Array("T", 120, "foo", 12))
```

Please let me know if any more specifics are necessary.

Any help is appreciated. Thanks!