Trying to test Spark Structured Streams ...and failing... how can I test them properly?

I followed the general Spark testing question from here, and my closest try was [1] looking something like:

import simpleSparkTest.SparkSessionTestWrapper
import org.scalatest.FunSpec  
import org.apache.spark.sql.types.{StringType, IntegerType, DoubleType, StructType, DateType}
import org.apache.spark.sql.streaming.OutputMode

class StructuredStreamingSpec extends FunSpec with SparkSessionTestWrapper {

  describe("Structured Streaming") {

    it("Read file from system") {

      val schema = new StructType()
        .add("station_id", IntegerType)
        .add("name", StringType)
        .add("lat", DoubleType)
        .add("long", DoubleType)
        .add("dockcount", IntegerType)
        .add("landmark", StringType)
        .add("installation", DateType)

      val sourceDF = spark.readStream
        .option("header", "true")

      val countSource = sourceDF.count()

      val query = sourceDF.writeStream

      assert(countSource === 70)



Sadly it always fails with org.apache.spark.sql.AnalysisException: Queries with streaming sources must be executed with writeStream.start()

I also found this issue at the spark-testing-base repo and wonder if it is even possible to test Spark Structured Streaming?

I want to have integration test and maybe even use Kafka on top for testing Checkpointing or specific corrupt data scenarios. Can someone help me out?

Last but not least, I figured the version maybe also a constraint - I currently develop against 2.1.0 which I need because of Azure HDInsight deployment options. Self hosted is an option if this is the drag.


Did you solve this?

You are doing a count() on a streaming dataframe before starting the execution by calling start(). If you want a count, how about doing this?


  val results: List[Row] = spark.sql("select * from Output").collectAsList()
  assert(results.size() === 70) 
  • Sadly not so far as I still have an older version. Did you try it with the latest? – lony Jun 28 '18 at 17:26
  • 1
    Yes, I did with Spark 2.2 and it works as expected. – Sumeeth Jun 29 '18 at 13:12

You can also use the StructuredStreamingBase trait from @holdenk testing library : https://github.com/holdenk/spark-testing-base/blob/936c34b6d5530eb664e7a9f447ed640542398d7e/core/src/test/2.2/scala/com/holdenkarau/spark/testing/StructuredStreamingSampleTests.scala

Here's an example on how to use it :

class StructuredStreamingTests extends FunSuite with SharedSparkContext with StructuredStreamingBase {

override implicit def reuseContextIfPossible: Boolean = true

test("add 3") {
    import spark.implicits._
    val input = List(List(1), List(2, 3))
    val expected = List(4, 5, 6)
    def compute(input: Dataset[Int]): Dataset[Int] = {
        input.map(elem => elem + 3)
    testSimpleStreamEndState(spark, input, expected, "append", compute)

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.