Spark architecture is entirely revolves around the concept of executors and cores. I would like to see practically how many executors and cores running for my spark application running in a cluster.

I was trying to use below snippet in my application but no luck.

val conf = new SparkConf().setAppName("ExecutorTestJob")
val sc = new SparkContext(conf)

Is there any way to get those values using SparkContext Object or SparkConf object etc..

  • 1
    You can look in the Spark UI. Go to http://<driver_ip>:4040 and press the "Executors" tab. This varies between cluster managers. – Yuval Itzchakov Aug 26 '16 at 8:45
  • 1
    Krishna, were you able to get ? feel free to ask questions – Ram Ghadiyaram Aug 26 '16 at 11:38
  • Were you able to test? – Ram Ghadiyaram Aug 26 '16 at 13:03
  • Thanks alot @RamPrasad. It helps alot. Tried with different datasets with different sizes and was able to get the executor nodes. – Krishna Reddy Aug 26 '16 at 14:17
  • 1
    @KrishnaReddy You can use the history server for that. – Yuval Itzchakov Aug 26 '16 at 14:33

Scala (Programmatic way) :

getExecutorStorageStatus and getExecutorMemoryStatus both return the number of executors including driver. like below example snippet.

/** Method that just returns the current active/registered executors
        * excluding the driver.
        * @param sc The spark context to retrieve registered executors.
        * @return a list of executors each in the form of host:port.
       def currentActiveExecutors(sc: SparkContext): Seq[String] = {
         val allExecutors = sc.getExecutorMemoryStatus.map(_._1)
         val driverHost: String = sc.getConf.get("spark.driver.host")
         allExecutors.filter(! _.split(":")(0).equals(driverHost)).toList

sc.getConf.getInt("spark.executor.instances", 1)

similarly get all properties and print like below you may get cores information as well..




Mostly spark.executor.cores for executors spark.driver.cores driver should have this value.

Python :

Above methods getExecutorStorageStatus and getExecutorMemoryStatus, In python api were not implemented

EDIT But can be accessed using Py4J bindings exposed from SparkSession.


  • This is an old answer at this point, but I'm wondering how to accomplish this in R using sparklyr. Any advice? – kputschko Jul 11 '18 at 14:37
  • Pls ask another question with respect to sparkyr – Ram Ghadiyaram Jul 11 '18 at 15:36
  • Regarding python - It doesn't seem to work for me. I asked a question and included a minimal example for that. I'd appreciate some help if you can. – et_l Jul 14 '18 at 20:56

This is an old question, but this is my code for figuring this out on Spark 2.3.0:

+ 414     executor_count = len(spark.sparkContext._jsc.sc().statusTracker().getExecutorInfos()) - 1
+ 415     cores_per_executor = int(spark.sparkContext.getConf().get('spark.executor.cores','1'))

This is python Example to get number of cores (including master's) def workername(): import socket return str(socket.gethostname()) anrdd=sc.parallelize(['','']) namesRDD = anrdd.flatMap(lambda e: (1,workername())) namesRDD.count()

  • This snippet is only expected to return the number of executors that were used to calculate the lambda in flatmap (and that, given some corrections as well: using countByKey and swapping the constant 1 and the call for the method) which would in general be very different than the number of executors assigned to the application. – et_l Jul 14 '18 at 21:06

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.