5

I am building a Spark Structured Streaming application where I am doing a batch-stream join. And the source for the batch data gets updated periodically.

So, I am planning to do a persist/unpersist of that batch data periodically.

Below is a sample code which I am using to persist and unpersist the batch data.

Flow:

  • Read the batch data
  • persist the batch data
  • For every one hour, unpersist the data and read the batch data and persist it again.

But, I am not seeing the batch data getting refreshed for every hour.

Code:

var batchDF = handler.readBatchDF(sparkSession)
batchDF.persist(StorageLevel.MEMORY_AND_DISK)
var refreshedTime: Instant = Instant.now()

if (Duration.between(refreshedTime, Instant.now()).getSeconds > refreshTime) {
  refreshedTime = Instant.now()
  batchDF.unpersist(false)
  batchDF =  handler.readBatchDF(sparkSession)
    .persist(StorageLevel.MEMORY_AND_DISK)
}

Is there any better way to achieve this scenario in spark structured streaming jobs ?

1
  • Reading the batch DF from delta Lake !
    – Shane
    Feb 11, 2021 at 13:55

1 Answer 1

13

You could do this by making use of the streaming scheduling capabilities that Structured Streaming provides.

You can trigger the refreshing (unpersist -> load -> persist) of a static Dataframe by creating an artificial "Rate" stream that refreshes the static Dataframe periodically. The idea is to:

  1. Load the static Dataframe initially and keep as var
  2. Define a method that refreshes the static Dataframe
  3. Use a "Rate" Stream that gets triggered at the required interval (e.g. 1 hour)
  4. Read actual streaming data and perform join operation with static Dataframe
  5. Within that Rate Stream have a foreachBatch sink that calls refresher method created in step 2.

The following code runs fine with Spark 3.0.1, Scala 2.12.10 and Delta 0.7.0.

  // 1. Load the staticDataframe initially and keep as `var`
  var staticDf = spark.read.format("delta").load(deltaPath)
  staticDf.persist()

  //  2. Define a method that refreshes the static Dataframe
  def foreachBatchMethod[T](batchDf: Dataset[T], batchId: Long) = {
    staticDf.unpersist()
    staticDf = spark.read.format("delta").load(deltaPath)
    staticDf.persist()
    println(s"${Calendar.getInstance().getTime}: Refreshing static Dataframe from DeltaLake")
  }

  // 3. Use a "Rate" Stream that gets triggered at the required interval (e.g. 1 hour)
  val staticRefreshStream = spark.readStream
    .format("rate")
    .option("rowsPerSecond", 1)
    .option("numPartitions", 1)
    .load()
    .selectExpr("CAST(value as LONG) as trigger")
    .as[Long]

  // 4. Read actual streaming data and perform join operation with static Dataframe
  // As an example I used Kafka as a streaming source
  val streamingDf = spark.readStream
    .format("kafka")
    .option("kafka.bootstrap.servers", "localhost:9092")
    .option("subscribe", "test")
    .option("startingOffsets", "earliest")
    .option("failOnDataLoss", "false")
    .load()
    .selectExpr("CAST(value AS STRING) as id", "offset as streamingField")

  val joinDf = streamingDf.join(staticDf, "id")

  val query = joinDf.writeStream
    .format("console")
    .option("truncate", false)
    .option("checkpointLocation", "/path/to/sparkCheckpoint")
    .start()

  // 5. Within that Rate Stream have a `foreachBatch` sink that calls refresher method
  staticRefreshStream.writeStream
    .outputMode("append")
    .foreachBatch(foreachBatchMethod[Long] _)
    .queryName("RefreshStream")
    .trigger(Trigger.ProcessingTime("5 seconds")) // or e.g. 1 hour
    .start()

To have a full example, the delta table got created and updated with new values as below:

  val deltaPath = "file:///tmp/delta/table"

  import spark.implicits._
  val df = Seq(
    (1L, "static1"),
    (2L, "static2")
  ).toDF("id", "deltaField")

  df.write
    .mode(SaveMode.Overwrite)
    .format("delta")
    .save(deltaPath)
3
  • Where do the data for the staticRefreshStream.writeStream end up? I thought you had to specify a format which apparently you do not. Is the data written somewhere or is it just thrown away?
    – Cleared
    Sep 15, 2021 at 13:37
  • The format in this case is the foreachBatch. Within there you decide what happens with the incoming data that is references as batchDf within the foreachBatchMethod. As you will note, this batchDf is never used, so the data is just thrown away. Sep 15, 2021 at 14:28
  • Got it, thanks for quick reply! Realy neat solution to the original question, will solve a fairly similair problem I have with a few tweaks.
    – Cleared
    Sep 15, 2021 at 14:34

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.