3

I have a Spark streaming / DStream app like this:

// Function to create and setup a new StreamingContext
def functionToCreateContext(): StreamingContext = {
  val ssc = new StreamingContext(...)   // new context
  val lines = ssc.socketTextStream(...) // create DStreams
  ...
  ssc.checkpoint(checkpointDirectory)   // set checkpoint directory
  ssc
}

// Get StreamingContext from checkpoint data or create a new one
val context = StreamingContext.getOrCreate(checkpointDirectory, functionToCreateContext _)

// Do additional setup on context that needs to be done,
// irrespective of whether it is being started or restarted
context. ...

// Start the context
context.start()
context.awaitTermination()

Where my context uses a configuration file where I can pull items with methods like appConf.getString. So I actually use:

val context = StreamingContext.getOrCreate(
    appConf.getString("spark.checkpointDirectory"), 
    () => createStreamContext(sparkConf, appConf))

where val sparkConf = new SparkConf()....

If I stop my app and change configuration in the app file, these changes are not picked up unless I delete the checkpoint directory contents. For example, I would like to change spark.streaming.kafka.maxRatePerPartition or spark.windowDurationSecs dynamically. (EDIT: I kill the app, change the configuration file and then restart the app.) How can I do dynamically change these settings or enforce a (EDITED WORD) configuration change without trashing my checkpoint directory (which is about to include checkpoints for state info)?

3

How can I do dynamically change these settings or enforce a configuration change without trashing my checkpoint directory?

If dive into the code for StreamingContext.getOrCreate:

def getOrCreate(
    checkpointPath: String,
    creatingFunc: () => StreamingContext,
    hadoopConf: Configuration = SparkHadoopUtil.get.conf,
    createOnError: Boolean = false
  ): StreamingContext = {
    val checkpointOption = CheckpointReader.read(
      checkpointPath, new SparkConf(), hadoopConf, createOnError)
    checkpointOption.map(new StreamingContext(null, _, null)).getOrElse(creatingFunc())
}

You can see that if CheckpointReader has checkpointed data in the class path, it uses new SparkConf() as a parameter, as the overload doesn't allow for passing of a custom created SparkConf. By default, SparkConf will load any settings declared either as an environment variable or passed to the classpath:

class SparkConf(loadDefaults: Boolean) extends Cloneable with Logging {

  import SparkConf._

  /** Create a SparkConf that loads defaults from system properties and the classpath */
  def this() = this(true)

So one way of achieving what you want is instead of creating a SparkConf object in the code, you can pass the parameters via spark.driver.extraClassPath and spark.executor.extraClassPath to spark-submit.

2

Do you create your Streaming Context the way the docs suggest, by using StreamingContext.getOrCreate, which takes a previous checkpointDirectory as an argument?

// Function to create and setup a new StreamingContext
def functionToCreateContext(): StreamingContext = {
    val ssc = new StreamingContext(...)   // new context
    val lines = ssc.socketTextStream(...) // create DStreams
    ...
    ssc.checkpoint(checkpointDirectory)   // set checkpoint directory
    ssc
}

// Get StreamingContext from checkpoint data or create a new one
val context = StreamingContext.getOrCreate(checkpointDirectory, functionToCreateContext _)

// Do additional setup on context that needs to be done,
// irrespective of whether it is being started or restarted
context. ...

// Start the context
context.start()
context.awaitTermination()

http://spark.apache.org/docs/latest/streaming-programming-guide.html#checkpointing

3
  • Yes I did almost the same things that was above. The only major difference is that my ssc.socketTextStream(...) is more like KafkaUtils.createDirectStream with ssc as a param. – codeaperature Apr 27 '16 at 3:49
  • It took a while to figure this out ... I missed a very subtle point which I needed to fully get the picture. If I use context.sparkContext.getConf.set("spark.xxxx", "10"), I can set whatever Spark Conf parameters I need to use (in the spot you suggested). This was the final piece I needed to know. – codeaperature May 10 '16 at 21:18
  • I'm going to have to revert because it seems that ...getConf.set() doesn't seem to change the context on the fly -- I think what Yuval recommends or a yet-to-be-mentioned techniques is going to have to work. Any ideas? – codeaperature May 11 '16 at 3:23
1

It can not be done adding/updating spark configurations when you are restoring from checkpoint directory. You can find spark checkpointing behaviour in documentation:

When the program is being started for the first time, it will create a new StreamingContext, set up all the streams and then call start(). When the program is being restarted after failure, it will re-create a StreamingContext from the checkpoint data in the checkpoint directory

So if you use checkpoint directory then on restart of job it will re-create a StreamingContext from checkpoint data which will have old sparkConf.

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.