I would like to write an encoder for a Row type in DataSet, for a map operation that I am doing. Essentially, I do not understand how to write encoders.

Below is an example of a map operation:

In the example below, instead of returning Dataset<String>, I would like to return Dataset<Row>

Dataset<String> output = dataset1.flatMap(new FlatMapFunction<Row, String>() {
            public Iterator<String> call(Row row) throws Exception {

                ArrayList<String> obj = //some map operation
                return obj.iterator();

I understand that instead of a string Encoder needs to be written as follows:

    Encoder<Row> encoder = new Encoder<Row>() {
        public StructType schema() {
            return join.schema();
            //return null;

        public ClassTag<Row> clsTag() {
            return null;

However, I do not understand the clsTag() in the encoder, and I am trying to find a running example which can demostrate something similar (i.e. an encoder for a row type)

Edit - This is not a copy of the question mentioned : Encoder error while trying to map dataframe row to updated row as the answer talks about using Spark 1.x in Spark 2.x (I am not doing so), also I am looking for an encoder for a Row class rather than resolve an error. Finally, I was looking for a solution in Java, not in Scala.


The answer is to use a RowEncoder and the schema of the dataset using StructType.

Below is a working example of a flatmap operation with Datasets:

    StructType structType = new StructType();
    structType = structType.add("id1", DataTypes.LongType, false);
    structType = structType.add("id2", DataTypes.LongType, false);

    ExpressionEncoder<Row> encoder = RowEncoder.apply(structType);

    Dataset<Row> output = join.flatMap(new FlatMapFunction<Row, Row>() {
        public Iterator<Row> call(Row row) throws Exception {
            // a static map operation to demonstrate
            List<Object> data = new ArrayList<>();
            ArrayList<Row> list = new ArrayList<>();
            return list.iterator();
    }, encoder);
  • shouldn't this fail in cluster mode because ArrayList is not serializable – user482963 Oct 10 '17 at 13:50

I had the same problem... Encoders.kryo(Row.class)) worked for me.

As a bonus, the Apache Spark tuning docs refer to Kryo it since it’s faster at serialization "often as much as 10x":


  • Doesn't that break columnar storage if you serialize the dataset to a Parquet file, though? – pintoch Jan 20 at 20:07

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.