I have some cassandra data that is of the type double that I need to round down in spark to 1 decimal place.

The problem is how to extract it from cassandra, convert it to a decimal, round down to 1 decimal point and then write back to a table in cassandra. My rounding code is as follows:

```
BigDecimal(number).setScale(1, BigDecimal.RoundingMode.DOWN).toDouble
```

This works great if the number going in is a decimal but I dont know how to convert the double to a decimal before rouding. My Double needs to be divided by 1000000 prior to rounding.

For example 510999000 would be 510.990 before being rounded down to 510.9

**EDIT:** I was able to get it to do what I wanted with the following command.

```
BigDecimal(((number).toDouble) / 1000000).setScale(1, BigDecimal.RoundingMode.DOWN).toDouble
```

Not sure how good this is but it works.

`number`

?`number`

values? In the DataFrame case, I would define a UDF with your above function, you can the use`withColumn("number", myUDF(df("number")))`

that will change your whole column to the desired format and you can then write back to Casandra. In the RDD case, same idea except the function doesn't need to be a UDF and you can just use`map`

`number`

is 510999000`number`

being 510999000 and being rouded down to 510.9`def f(number: Int): BigDecimal(number / 1000000).setScale(1, BigDecimal.RoundingMode.DOWN).toDouble`

`val result = myRDD.map(f)`

1more comment