5

I'm trying to use UDF with input type Array of struct. I have the following structure of data this is only relevant part of a bigger structure

|--investments: array (nullable = true)
    |    |-- element: struct (containsNull = true)
    |    |    |-- funding_round: struct (nullable = true)
    |    |    |    |-- company: struct (nullable = true)
    |    |    |    |    |-- name: string (nullable = true)
    |    |    |    |    |-- permalink: string (nullable = true)
    |    |    |    |-- funded_day: long (nullable = true)
    |    |    |    |-- funded_month: long (nullable = true)
    |    |    |    |-- funded_year: long (nullable = true)
    |    |    |    |-- raised_amount: long (nullable = true)
    |    |    |    |-- raised_currency_code: string (nullable = true)
    |    |    |    |-- round_code: string (nullable = true)
    |    |    |    |-- source_description: string (nullable = true)
    |    |    |    |-- source_url: string (nullable = true)

I declared case classes:

case class Company(name: String, permalink: String)
case class FundingRound(company: Company, funded_day: Long, funded_month: Long, funded_year: Long, raised_amount: Long, raised_currency_code: String, round_code: String, source_description: String, source_url: String)
case class Investments(funding_round: FundingRound)

UDF declaration:

sqlContext.udf.register("total_funding", (investments:Seq[Investments])  => {
     val totals = investments.map(r => r.funding_round.raised_amount)
     totals.sum
})

When I'm executing the following transformation the result is as expected

scala> sqlContext.sql("""select total_funding(investments) from companies""")
res11: org.apache.spark.sql.DataFrame = [_c0: bigint]

But when an action executed like collect I have an error:

Executor: Exception in task 0.0 in stage 4.0 (TID 10)
java.lang.ClassCastException: org.apache.spark.sql.catalyst.expressions.GenericRowWithSchema cannot be cast to $line33.$read$$iwC$$iwC$Investments

Thank you for any help.

12

The error you see should be pretty much self-explanatory. There is a strict mapping between Catalyst / SQL types and Scala types which can be found in the relevant section of the Spark SQL, DataFrames and Datasets Guide.

In particular struct types are converted to o.a.s.sql.Row (in your particular case data will be exposed as Seq[Row]).

There are different methods which can be used to expose data as specific types:

with only the former approach could be applicable in this particular scenario.

If you want to access investments.funding_round.raised_amount using UDF you'll need something like this:

val getRaisedAmount = udf((investments: Seq[Row]) => scala.util.Try(
  investments.map(_.getAs[Row]("funding_round").getAs[Long]("raised_amount"))
).toOption)

but simple select should be much safer and cleaner:

df.select($"investments.funding_round.raised_amount")
| improve this answer | |
1

I created a simple library which derives the necessary encoders for complex Product types based on the input type parameters.

https://github.com/lesbroot/typedudf

import typedudf.TypedUdf
import typedudf.ParamEncoder._

case class Foo(x: Int, y: String)
val fooUdf = TypedUdf((foo: Foo) => foo.x + foo.y.length)
df.withColumn("sum", fooUdf($"foo"))
| improve this answer | |

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