256

Getting strange behavior when calling function outside of a closure:

  • when function is in a object everything is working
  • when function is in a class get :

Task not serializable: java.io.NotSerializableException: testing

The problem is I need my code in a class and not an object. Any idea why this is happening? Is a Scala object serialized (default?)?

This is a working code example:

object working extends App {
    val list = List(1,2,3)

    val rddList = Spark.ctx.parallelize(list)
    //calling function outside closure 
    val after = rddList.map(someFunc(_))

    def someFunc(a:Int)  = a+1

    after.collect().map(println(_))
}

This is the non-working example :

object NOTworking extends App {
  new testing().doIT
}

//adding extends Serializable wont help
class testing {  
  val list = List(1,2,3)  
  val rddList = Spark.ctx.parallelize(list)

  def doIT =  {
    //again calling the fucntion someFunc 
    val after = rddList.map(someFunc(_))
    //this will crash (spark lazy)
    after.collect().map(println(_))
  }

  def someFunc(a:Int) = a+1
}
0

11 Answers 11

387

RDDs extend the Serialisable interface, so this is not what's causing your task to fail. Now this doesn't mean that you can serialise an RDD with Spark and avoid NotSerializableException

Spark is a distributed computing engine and its main abstraction is a resilient distributed dataset (RDD), which can be viewed as a distributed collection. Basically, RDD's elements are partitioned across the nodes of the cluster, but Spark abstracts this away from the user, letting the user interact with the RDD (collection) as if it were a local one.

Not to get into too many details, but when you run different transformations on a RDD (map, flatMap, filter and others), your transformation code (closure) is:

  1. serialized on the driver node,
  2. shipped to the appropriate nodes in the cluster,
  3. deserialized,
  4. and finally executed on the nodes

You can of course run this locally (as in your example), but all those phases (apart from shipping over network) still occur. [This lets you catch any bugs even before deploying to production]

What happens in your second case is that you are calling a method, defined in class testing from inside the map function. Spark sees that and since methods cannot be serialized on their own, Spark tries to serialize the whole testing class, so that the code will still work when executed in another JVM. You have two possibilities:

Either you make class testing serializable, so the whole class can be serialized by Spark:

import org.apache.spark.{SparkContext,SparkConf}

object Spark {
  val ctx = new SparkContext(new SparkConf().setAppName("test").setMaster("local[*]"))
}

object NOTworking extends App {
  new Test().doIT
}

class Test extends java.io.Serializable {
  val rddList = Spark.ctx.parallelize(List(1,2,3))

  def doIT() =  {
    val after = rddList.map(someFunc)
    after.collect().foreach(println)
  }

  def someFunc(a: Int) = a + 1
}

or you make someFunc function instead of a method (functions are objects in Scala), so that Spark will be able to serialize it:

import org.apache.spark.{SparkContext,SparkConf}

object Spark {
  val ctx = new SparkContext(new SparkConf().setAppName("test").setMaster("local[*]"))
}

object NOTworking extends App {
  new Test().doIT
}

class Test {
  val rddList = Spark.ctx.parallelize(List(1,2,3))

  def doIT() =  {
    val after = rddList.map(someFunc)
    after.collect().foreach(println)
  }

  val someFunc = (a: Int) => a + 1
}

Similar, but not the same problem with class serialization can be of interest to you and you can read on it in this Spark Summit 2013 presentation.

As a side note, you can rewrite rddList.map(someFunc(_)) to rddList.map(someFunc), they are exactly the same. Usually, the second is preferred as it's less verbose and cleaner to read.

EDIT (2015-03-15): SPARK-5307 introduced SerializationDebugger and Spark 1.3.0 is the first version to use it. It adds serialization path to a NotSerializableException. When a NotSerializableException is encountered, the debugger visits the object graph to find the path towards the object that cannot be serialized, and constructs information to help user to find the object.

In OP's case, this is what gets printed to stdout:

Serialization stack:
    - object not serializable (class: testing, value: testing@2dfe2f00)
    - field (class: testing$$anonfun$1, name: $outer, type: class testing)
    - object (class testing$$anonfun$1, <function1>)
6
  • 1
    Hmm, what you have explained certainly makes sense, and explains why the entire class get's serialized (something I didn't fully understand). Nevertheless I'll still hold that rdd's are not serializable (well they extend Serializable, but that doesn't mean they dont cause NotSerializableException, try it). This is why if you put them outside classes it fixes the error. I'm going edit my answer a little to be more precise about what I mean - i.e. they cause the exception, not that they extend the interface.
    – samthebest
    Mar 24, 2014 at 18:51
  • 44
    In case you don't have control over the class you need to be serializable... if you are using Scala you can just instantiate it with Serializable: val test = new Test with Serializable
    – Mark S
    Aug 11, 2014 at 17:17
  • 4
    "rddList.map(someFunc(_)) to rddList.map(someFunc), they are exactly the same" No they are not exactly the same, and in fact using the latter can cause serialisation exceptions were the former wouldn't.
    – samthebest
    Feb 23, 2016 at 15:50
  • 2
    @samthebest could you explain please why map(someFunc(_)) wouldn't cause serialization exceptions whereas map(someFunc) would?
    – Alon
    Dec 15, 2019 at 20:41
  • The second option doesn't work for me until someFuc moved outside of Test class. Is it impact of version change (Spark 2.3 and Scala 2.11 here) or am I missing something?
    – Dan
    Mar 9, 2021 at 23:26
34

Grega's answer is great in explaining why the original code does not work and two ways to fix the issue. However, this solution is not very flexible; consider the case where your closure includes a method call on a non-Serializable class that you have no control over. You can neither add the Serializable tag to this class nor change the underlying implementation to change the method into a function.

Nilesh presents a great workaround for this, but the solution can be made both more concise and general:

def genMapper[A, B](f: A => B): A => B = {
  val locker = com.twitter.chill.MeatLocker(f)
  x => locker.get.apply(x)
}

This function-serializer can then be used to automatically wrap closures and method calls:

rdd map genMapper(someFunc)

This technique also has the benefit of not requiring the additional Shark dependencies in order to access KryoSerializationWrapper, since Twitter's Chill is already pulled in by core Spark

0
28

Complete talk fully explaining the problem, which proposes a great paradigm shifting way to avoid these serialization problems: https://github.com/samthebest/dump/blob/master/sams-scala-tutorial/serialization-exceptions-and-memory-leaks-no-ws.md

The top voted answer is basically suggesting throwing away an entire language feature - that is no longer using methods and only using functions. Indeed in functional programming methods in classes should be avoided, but turning them into functions isn't solving the design issue here (see above link).

As a quick fix in this particular situation you could just use the @transient annotation to tell it not to try to serialise the offending value (here, Spark.ctx is a custom class not Spark's one following OP's naming):

@transient
val rddList = Spark.ctx.parallelize(list)

You can also restructure code so that rddList lives somewhere else, but that is also nasty.

The Future is Probably Spores

In future Scala will include these things called "spores" that should allow us to fine grain control what does and does not exactly get pulled in by a closure. Furthermore this should turn all mistakes of accidentally pulling in non-serializable types (or any unwanted values) into compile errors rather than now which is horrible runtime exceptions / memory leaks.

http://docs.scala-lang.org/sips/pending/spores.html

A tip on Kryo serialization

When using kyro, make it so that registration is necessary, this will mean you get errors instead of memory leaks:

"Finally, I know that kryo has kryo.setRegistrationOptional(true) but I am having a very difficult time trying to figure out how to use it. When this option is turned on, kryo still seems to throw exceptions if I haven't registered classes."

Strategy for registering classes with kryo

Of course this only gives you type-level control not value-level control.

... more ideas to come.

0
11

I faced similar issue, and what I understand from Grega's answer is

object NOTworking extends App {
 new testing().doIT
}
//adding extends Serializable wont help
class testing {

val list = List(1,2,3)

val rddList = Spark.ctx.parallelize(list)

def doIT =  {
  //again calling the fucntion someFunc 
  val after = rddList.map(someFunc(_))
  //this will crash (spark lazy)
  after.collect().map(println(_))
}

def someFunc(a:Int) = a+1

}

your doIT method is trying to serialize someFunc(_) method, but as method are not serializable, it tries to serialize class testing which is again not serializable.

So make your code work, you should define someFunc inside doIT method. For example:

def doIT =  {
 def someFunc(a:Int) = a+1
  //function definition
 }
 val after = rddList.map(someFunc(_))
 after.collect().map(println(_))
}

And if there are multiple functions coming into picture, then all those functions should be available to the parent context.

9

I solved this problem using a different approach. You simply need to serialize the objects before passing through the closure, and de-serialize afterwards. This approach just works, even if your classes aren't Serializable, because it uses Kryo behind the scenes. All you need is some curry. ;)

Here's an example of how I did it:

def genMapper(kryoWrapper: KryoSerializationWrapper[(Foo => Bar)])
               (foo: Foo) : Bar = {
    kryoWrapper.value.apply(foo)
}
val mapper = genMapper(KryoSerializationWrapper(new Blah(abc))) _
rdd.flatMap(mapper).collectAsMap()

object Blah(abc: ABC) extends (Foo => Bar) {
    def apply(foo: Foo) : Bar = { //This is the real function }
}

Feel free to make Blah as complicated as you want, class, companion object, nested classes, references to multiple 3rd party libs.

KryoSerializationWrapper refers to: https://github.com/amplab/shark/blob/master/src/main/scala/shark/execution/serialization/KryoSerializationWrapper.scala

2
  • Does this actually serialize up the instance or create a static instance and serialize up a reference (see my answer).
    – samthebest
    Jul 2, 2014 at 12:25
  • 2
    @samthebest could you elaborate? If you investigate KryoSerializationWrapper you'll find that it makes Spark think that it is indeed java.io.Serializable - it simply serializes the object internally using Kryo - faster, simpler. And I don't think it deals with a static instance - it just de-serializes the value when the value.apply() is called.
    – Nilesh
    Jul 2, 2014 at 18:07
7

I'm not entirely certain that this applies to Scala but, in Java, I solved the NotSerializableException by refactoring my code so that the closure did not access a non-serializable final field.

2
  • i am facing the same problem in Java, i am trying to use FileWriter class from Java IO package inside RDD foreach method. Can you please let me know how we can solve this.
    – Shankar
    Jul 23, 2015 at 8:46
  • 1
    Well @Shankar, if the FileWriter is a final field of the outer class, you can't do it. But FileWriter can be constructed from a String or a File, both of which are Serializable. So refactor your code to construct a local FileWriter based on the filename from the outer class. Jul 23, 2015 at 16:10
2

FYI in Spark 2.4 a lot of you will probably encounter this issue. Kryo serialization has gotten better but in many cases you cannot use spark.kryo.unsafe=true or the naive kryo serializer.

For a quick fix try changing the following in your Spark configuration

spark.kryo.unsafe="false"

OR

spark.serializer="org.apache.spark.serializer.JavaSerializer"

I modify custom RDD transformations that I encounter or personally write by using explicit broadcast variables and utilizing the new inbuilt twitter-chill api, converting them from rdd.map(row => to rdd.mapPartitions(partition => { functions.

Example

Old (not-great) Way

val sampleMap = Map("index1" -> 1234, "index2" -> 2345)
val outputRDD = rdd.map(row => {
    val value = sampleMap.get(row._1)
    value
})

Alternative (better) Way

import com.twitter.chill.MeatLocker
val sampleMap = Map("index1" -> 1234, "index2" -> 2345)
val brdSerSampleMap = spark.sparkContext.broadcast(MeatLocker(sampleMap))

rdd.mapPartitions(partition => {
    val deSerSampleMap = brdSerSampleMap.value.get
    partition.map(row => {
        val value = sampleMap.get(row._1)
        value
    }).toIterator
})

This new way will only call the broadcast variable once per partition which is better. You will still need to use Java Serialization if you do not register classes.

2

Scala methods defined in a class are non-serializable, methods can be converted into functions to resolve serialization issue.

Method syntax

def func_name (x String) : String = {
...
return x
}

function syntax

val func_name = { (x String) => 
...
x
}
1

I had a similar experience.

The error was triggered when I initialize a variable on the driver (master), but then tried to use it on one of the workers. When that happens, Spark Streaming will try to serialize the object to send it over to the worker, and fail if the object is not serializable.

I solved the error by making the variable static.

Previous non-working code

  private final PhoneNumberUtil phoneUtil = PhoneNumberUtil.getInstance();

Working code

  private static final PhoneNumberUtil phoneUtil = PhoneNumberUtil.getInstance();

Credits:

  1. https://learn.microsoft.com/en-us/answers/questions/35812/sparkexception-job-aborted-due-to-stage-failure-ta.html ( The answer of pradeepcheekatla-msft)
  2. https://databricks.gitbooks.io/databricks-spark-knowledge-base/content/troubleshooting/javaionotserializableexception.html
0
def upper(name: String) : String = { 
var uppper : String  =  name.toUpperCase()
uppper
}

val toUpperName = udf {(EmpName: String) => upper(EmpName)}
val emp_details = """[{"id": "1","name": "James Butt","country": "USA"},
{"id": "2", "name": "Josephine Darakjy","country": "USA"},
{"id": "3", "name": "Art Venere","country": "USA"},
{"id": "4", "name": "Lenna Paprocki","country": "USA"},
{"id": "5", "name": "Donette Foller","country": "USA"},
{"id": "6", "name": "Leota Dilliard","country": "USA"}]"""

val df_emp = spark.read.json(Seq(emp_details).toDS())
val df_name=df_emp.select($"id",$"name")
val df_upperName= df_name.withColumn("name",toUpperName($"name")).filter("id='5'")
display(df_upperName)

this will give error org.apache.spark.SparkException: Task not serializable at org.apache.spark.util.ClosureCleaner$.ensureSerializable(ClosureCleaner.scala:304)

Solution -

import java.io.Serializable;

object obj_upper extends Serializable { 
  def upper(name: String) : String = 
  {
    var uppper : String  =  name.toUpperCase()
    uppper
  }
val toUpperName = udf {(EmpName: String) => upper(EmpName)}
}

val df_upperName= 
df_name.withColumn("name",obj_upper.toUpperName($"name")).filter("id='5'")
display(df_upperName)
-1

My solution was to add a compagnion class that handles all methods that are not seriazable within the class.

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