I'm trying to test a part of my program which performs transformations on dataframes I want to test several different variations of these dataframe which rules out the option of reading a specific DF from a file

And so my questions are:

  1. Is there any good tutorial on how to perform unit testing with Spark and dataframes, especially regarding the dataframes creation?
  2. How can I create these different several lines dataframes without a lot of boilerplate and without reading these from a file?
  3. Are there any utility classes for checking for specific values inside a dataframe?

I obviously googled that before but could not find anything which was very useful. Among the more useful links I found were:

It would be great if examples/tutorials are in Scala but I'll take whatever language you've got

Thanks in advance

  • 4
    This is so off-topic :) but good place to start is to look at the Spark source. – zero323 Mar 17 '16 at 12:30

This link shows how we can programmatically create a data frame with schema. You can keep the data in separate traits and mix it in with your tests. For instance,

// This example assumes CSV data. But same approach should work for other formats as well.

trait TestData {
  val data1 = List(
  val data2 = ...  

Then with ScalaTest, we can do something like this.

class MyDFTest extends FlatSpec with Matchers {

  "method" should "perform this" in new TestData {
     // You can access your test data here. Use it to create the DataFrame.
     // Your test here.

To create the DataFrame, you can have few util methods like below.

  def schema(types: Array[String], cols: Array[String]) = {
    val datatypes = types.map {
      case "String" => StringType
      case "Long" => LongType
      case "Double" => DoubleType
      // Add more types here based on your data.
      case _ => StringType
    StructType(cols.indices.map(x => StructField(cols(x), datatypes(x))).toArray)

  def df(data: List[String], types: Array[String], cols: Array[String]) = {
    val rdd = sc.parallelize(data)
    val parser = new CSVParser(',')
    val split = rdd.map(line => parser.parseLine(line))
    val rdd = split.map(arr => Row(arr(0), arr(1), arr(2), arr(3)))
    sqlContext.createDataFrame(rdd, schema(types, cols))

I am not aware of any utility classes for checking specific values in a DataFrame. But I think it should be simple to write one using the DataFrame APIs.

  • Thanks that seems good enough for me. Also looking at the Spark source code also gave me some ideas. Thanks! – Gideon Mar 20 '16 at 10:46

For those looking to achieve something similar in Java, you can use start by using this project to initialize a SparkContext within your unit tests: https://github.com/holdenk/spark-testing-base

I personally had to mimick the file structure of some AVRO files. So I used Avro-tools (https://avro.apache.org/docs/1.8.2/gettingstartedjava.html#download_install) to extract the schema from my binary records using the following command:

java -jar $AVRO_HOME/avro tojson largeAvroFile.avro | head -3

Then, using this small helper method, you can convert the output JSON into a DataFrame to use in your unit tests.

private DataFrame getDataFrameFromList() {
    SQLContext sqlContext = new SQLContext(jsc());
    ImmutableList<String> elements = ImmutableList.of(
    JavaRDD<String> parallelize = jsc().parallelize(elements);
    return sqlContext.read().json(parallelize);

You could use SharedSQLContext and SharedSparkSession that Spark uses for its own unit tests. Check my answer for examples.

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.