0

I have a spark dataframe which has 40+ columns. and millions of rows. I want to create another column, which takes in say 5 columns from the above dataframe, pass each row of the 5 columns to separate Api(which takes these 5 values and returns some data) and store the result in the column.

For simplicity I use the following example: Say I've the following dataframe. And I want to send each row of "food" and "price" to an API, which returns a result, and it is stored in a separate column called "combine"

Input:

+----+------+-----+
|name|food  |price|
+----+------+-----+
|john|tomato|1.99 |
|john|carrot|0.45 |
|bill|apple |0.99 |
|john|banana|1.29 |
|bill|taco  |2.59 |
+----+------+-----+

Output:

+----+------+-----+----------+
|name|food  |price|combined  |
+----+------+-----+----------+
|john|tomato|1.99 |abcd      |
|john|carrot|0.45 |fdg       |
|bill|apple |0.99 |123fgfg   |
|john|banana|1.29 |fgfg4wf   |
|bill|taco  |2.59 |gfg45gn   |
+----+------+-----+----------+

I created a UDF to look at each row:

val zip = udf {
(food: String, price: Double) =>
    val nvIn = new NameValue
    nvIn.put("Query.ID", 1234)
    nvIn.put("Food", food)
    nvIn.put("Price", price)
    val nvOut = new NameValue

    val code: Code = getTunnelsClient().execute("CombineData", nvIn, nvOut) // this is calling the external API
    nvOut.get("CombineData")     //this is stored the result column
  }

  def test(sc: SparkContext, sqlContext: SQLContext): Unit = {
    import sqlContext.implicits._
    val df = Seq(
      ("john", "tomato", 1.99),
      ("john", "carrot", 0.45),
      ("bill", "apple", 0.99),
      ("john", "banana", 1.29),
      ("bill", "taco", 2.59)
    ).toDF("name", "food", "price")


    val result = df.withColumn("combined", zip($"food", $"price"))
    result.show(false)

  }

This method works, however I'm concerned since I'm looking at each row of the dataframe, and I have millions of such rows, it won't be as performant on the cluster

Is there any other way I can do it(say using spark-sql), possibly without using a udf ?

0

I would highly recommend using the type safe spark Dataset api to send your rows of data to the api.

This involves parsing your Dataframe rows into a scala case class using the as function and then executing the map function on your Dataset\Dataframe to send it to the api and return another case class representing your Output.

Although strictly not spark sql using the Dataset api still allows you to benefit from most of the optimizations that are available in spark sql

case class Input(name: String, food: String, price: Double)
case class Output(name: String, food: String, price: Double, combined: String)

val df = Seq(
  ("john", "tomato", 1.99),
  ("john", "carrot", 0.45),
  ("bill", "apple", 0.99),
  ("john", "banana", 1.29),
  ("bill", "taco", 2.59)
).toDF("name", "food", "price")

df.as[Input].map(input => {
    val nvIn = new NameValue
    nvIn.put("Query.ID", 1234)
    nvIn.put("Food", input.food)
    nvIn.put("Price", input.price)
    val nvOut = new NameValue
    getTunnelsClient().execute("CombineData", nvIn, nvOut)
    Output(input.name, input.food, input.price, nvOut.get("CombineData"))
}).show(false)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.