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I want to read .csv file which has Players info. I have to get the country from this csv and append it to url for further process.

At first I load the .csv data into data-frame. then I do loop on it to append the nationality to url as code below:

    val inputDF = spark.read.format("csv").option("header", true).option("inferSchema", true).load(getClass.getResource("/FifaData.csv").getPath).toDF()
    var url = ""
    val baseUrl = "http://localhost:8080/countries/search?"

    val nationalityDF = inputDF.select("Nationality").distinct.rdd.zipWithIndex()
    nationalityDF.foreach { case (nationality, idx) =>
        val url = s"${baseUrl}page=${idx}&nameList=${nationality.get(0)}"
        println("url:: " + url)
    }

I wonder if I can avoid for-each to process the data and call the link with out for-each?

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    Spark is already distributed, this should execute in parallel as long as the DF is big enough and you have available executors. If testing in local, ensure you give at least two CPUs to Spark master("local[2]") (you can change 2 for any number you want, or use * to tell spark to use them all). Also, do not mutate url and page, page will fail as this is distributed, use a zipWithIndex instead. And for url just do val url = baseUrl + "page=" + pageIndex + "&nameList=" + nationality.getString(0) inside the foreach, that way every execution will have its own variable. Apr 9, 2019 at 20:22
  • Thanks much for your reply. I'm not sure that I got the idea how to use a zipWithIndex with data-frame loop. Apr 9, 2019 at 20:46
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    Sorry for the delay. You can do this: val nationalityDF = inputDF.select("Nationality").as[String].distinct.rdd.zipWithIndex() and then this: nationalityDF.foreach { case (nationality, idx) => val url = s"${baseUrl}page=${idx}&nameList=${nationality}" }. Apr 9, 2019 at 22:08
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    Thank you, thats work fine. But how can I avoid the for-each? Is there any way to process the data and call the link with out for-each? I edited the question above to use the correct code you share and to explain what I need to enhance. Apr 10, 2019 at 8:22
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    How many names do you want for each call? How does the page index affect the result? How is the output of the request? How do you expect to process such output? The question is very vague, try organizing everything, creating a MCVE and opening a new more concise question. Remember to do not ask for too many things at once, maybe start by just asking how to create the appropriate URL. Apr 10, 2019 at 12:16

1 Answer 1

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Your implementation is already parallelised, so cheers!

To add more details: foreach in spark is an action which is used to perform some operations with side effects. It operates on RDD in executor JVM if spark is running in cluster mode.

If you want to get rid of foreach all together then you can translate it into an UDF and call it. However, this is not a good practice because, based on your example, you are not looking to get any result back from REST API. Caution: Ugliness Ahead

import org.apache.spark.sql.functions.udf
val inputDF = spark.read.format("csv").option("header", true).option("inferSchema", true).load(getClass.getResource("/FifaData.csv").getPath).toDF()
var url = ""
val baseUrl = "http://localhost:8080/countries/search?"

val nationalityDF = inputDF.select("Nationality").distinct.rdd.zipWithIndex()
                           .asDF("nationality", "index")

val callRestApi: (nationality, idx)=> String = {
    val url = s"""${baseUrl}page=${idx}&nameList=${nationality.mkString(",")}"""
    println("url:: " + url)
    null
}

nationalityDF.withColumn("placeHolder", callRestApi($"nationality", $"index")).drop("placeHolder")
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  • Thanks for your reply. But still I pass nameList=${nationality.get(0)} as single value. I'm wondering how can I send bulk of names as list when call the api? localhost:8080/countries/… Apr 10, 2019 at 9:46
  • Question didn't specify anything of that sort, anyhow, its a Scala exercise, I have updated the answer.
    – D3V
    Apr 10, 2019 at 9:50

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