[ 
https://issues.apache.org/jira/browse/SPARK-23636?page=com.atlassian.jira.plugin.system.issuetabpanels:all-tabpanel
 ]

Deepak updated SPARK-23636:
---------------------------
    Description: 
While using the KafkaUtils.createRDD API - we receive below listed error, 
especially when 1 executor connects to 1 kafka topic-partition, but with more 
than 1 core & fetches an Array(OffsetRanges)

 
h2. Error Faced
{noformat}
java.util.ConcurrentModificationException: KafkaConsumer is not safe for 
multi-threaded access{noformat}
 Stack Trace
{noformat}
Caused by: org.apache.spark.SparkException: Job aborted due to stage failure: 
Task 5 in stage 1.0 failed 4 times, most recent failure: Lost task 5.3 in stage 
1.0 (TID 17, host, executor 16): java.util.ConcurrentModificationException: 
KafkaConsumer is not safe for multi-threaded access
at 
org.apache.kafka.clients.consumer.KafkaConsumer.acquire(KafkaConsumer.java:1629)
at 
org.apache.kafka.clients.consumer.KafkaConsumer.close(KafkaConsumer.java:1528)
at 
org.apache.kafka.clients.consumer.KafkaConsumer.close(KafkaConsumer.java:1508)
at 
org.apache.spark.streaming.kafka010.CachedKafkaConsumer.close(CachedKafkaConsumer.scala:59)
at 
org.apache.spark.streaming.kafka010.CachedKafkaConsumer$.remove(CachedKafkaConsumer.scala:185)
at 
org.apache.spark.streaming.kafka010.KafkaRDD$KafkaRDDIterator.<init>(KafkaRDD.scala:204)
at org.apache.spark.streaming.kafka010.KafkaRDD.compute(KafkaRDD.scala:181)
at org.apache.spark.rdd.RDD.computeOrReadCheckpoint(RDD.scala:323){noformat}
 
h2. Config Used to simulate the error

A session with : 
 * Executors - 1
 * Cores - 2 or More
 * Kafka Topic - has only 1 partition
 * While fetching - More than one Array of Offset Range , Example 

{noformat}
Array(OffsetRange("kafka_topic",0,608954201,608954202),
OffsetRange("kafka_topic",0,608954202,608954203)
){noformat}
 
h2. Why are we fetching from kafka as mentioned above.

 

This gives us the capability to establish a connection to Kafka Broker for 
every spark executor's core, thus each core can fetch/process its own set of 
messages based on the specified (offset ranges).

This was working in spark 1.6.2

However, from spark 2.1 onwards - the pattern throws exception.
h2. Sample Code

 
{quote}scala

// This forces two connections to same broker for the partition specified below.

val parallelizedRanges = Array(OffsetRange("kafka_topic",0,1,2), // Fetching 
sample 2 records 
 OffsetRange("kafka_topic",0,2,3) // Fetching sample 2 records 
 );

val kafkaParams1: java.util.Map[String, Object] = new java.util.HashMap()

val rDDConsumerRec: RDD[ConsumerRecord[String, String]] =
 createRDD[String, String](sparkContext
 , kafkaParams1, parallelizedRanges, LocationStrategies.PreferConsistent);

val data: RDD[Row] = rDDConsumerRec.map
 Unknown macro: \{ x => Row(x.topic().toString, x.partition().toString, 
x.offset().toString, x.timestamp().toString, x.value() ) }
 ;

val df = sqlContext.createDataFrame(data, StructType(
 Seq(
 StructField("topic", StringType),
 StructField("partition", StringType),
 StructField("offset", StringType),
 StructField("timestamp", StringType),
 StructField("value", BinaryType)
 )));

df.cache;

df.registerTempTable("kafka_topic");

hiveContext.sql("""
 select *
 from kafka_topic 
 """).show
{quote}
 
h2. Related Issue

 

A similar issue reported for DirectStream is 

https://issues.apache.org/jira/browse/SPARK-19185

  was:
While using the KafkaUtils.createRDD API - we receive below listed error, 
especially when 1 executor connects to 1 kafka topic-partition, but with more 
than 1 core & fetches an Array(OffsetRanges)

 
h2. Error Faced
{noformat}
java.util.ConcurrentModificationException: KafkaConsumer is not safe for 
multi-threaded access{noformat}
 Stack Trace
{noformat}
Caused by: org.apache.spark.SparkException: Job aborted due to stage failure: 
Task 5 in stage 1.0 failed 4 times, most recent failure: Lost task 5.3 in stage 
1.0 (TID 17, host, executor 16): java.util.ConcurrentModificationException: 
KafkaConsumer is not safe for multi-threaded access
at 
org.apache.kafka.clients.consumer.KafkaConsumer.acquire(KafkaConsumer.java:1629)
at 
org.apache.kafka.clients.consumer.KafkaConsumer.close(KafkaConsumer.java:1528)
at 
org.apache.kafka.clients.consumer.KafkaConsumer.close(KafkaConsumer.java:1508)
at 
org.apache.spark.streaming.kafka010.CachedKafkaConsumer.close(CachedKafkaConsumer.scala:59)
at 
org.apache.spark.streaming.kafka010.CachedKafkaConsumer$.remove(CachedKafkaConsumer.scala:185)
at 
org.apache.spark.streaming.kafka010.KafkaRDD$KafkaRDDIterator.<init>(KafkaRDD.scala:204)
at org.apache.spark.streaming.kafka010.KafkaRDD.compute(KafkaRDD.scala:181)
at org.apache.spark.rdd.RDD.computeOrReadCheckpoint(RDD.scala:323){noformat}
 
h2. Config Used to simulate the error

A session with : 
 * Executors - 1
 * Cores - 2 or More
 * Kafka Topic - has only 1 partition
 * While fetching - More than one Array of Offset Range , Example 

{noformat}
Array(OffsetRange("kafka_topic",0,608954201,608954202),
OffsetRange("kafka_topic",0,608954202,608954203)
){noformat}
 
h2. Why are we fetching from kafka as mentioned above.

 

This gives us the capability to establish a connection to Kafka Broker for 
every spark executor's core, thus each core can fetch/process its own set of 
messages based on the specified (offset ranges).

This was working in spark 1.6.2

However, from spark 2.1 onwards - the pattern throws exception.
h2. Sample Code

 
{quote}scala

// This forces two connections to same broker for the partition specified below.

val parallelizedRanges = Array(OffsetRange("kafka_topic",0,1,2), // Fetching 
sample 2 records 
 OffsetRange("kafka_topic",0,2,3) // Fetching sample 2 records 
 );

val kafkaParams1: java.util.Map[String, Object] = new java.util.HashMap()

val rDDConsumerRec: RDD[ConsumerRecord[String, String]] =
 createRDD[String, String](hiveContext.sparkContext
 , kafkaParams1, parallelizedRanges, LocationStrategies.PreferConsistent);

val data: RDD[Row] = rDDConsumerRec.map
 Unknown macro: \{ x => Row(x.topic().toString, x.partition().toString, 
x.offset().toString, x.timestamp().toString, x.value() ) }
 ;

val df = sqlContext.createDataFrame(data, StructType(
 Seq(
 StructField("topic", StringType),
 StructField("partition", StringType),
 StructField("offset", StringType),
 StructField("timestamp", StringType),
 StructField("value", BinaryType)
 )));

df.cache;

df.registerTempTable("kafka_topic");

hiveContext.sql("""
 select *
 from kafka_topic 
 """).show
{quote}
 
h2. Related Issue

 

A similar issue reported for DirectStream is 

https://issues.apache.org/jira/browse/SPARK-19185


> [SPARK 2.2] | Kafka Consumer | KafkaUtils.createRDD throws Exception - 
> java.util.ConcurrentModificationException: KafkaConsumer is not safe for 
> multi-threaded access
> ---------------------------------------------------------------------------------------------------------------------------------------------------------------------
>
>                 Key: SPARK-23636
>                 URL: https://issues.apache.org/jira/browse/SPARK-23636
>             Project: Spark
>          Issue Type: Bug
>          Components: Structured Streaming
>    Affects Versions: 2.1.1, 2.2.0
>            Reporter: Deepak
>            Priority: Major
>              Labels: performance
>
> While using the KafkaUtils.createRDD API - we receive below listed error, 
> especially when 1 executor connects to 1 kafka topic-partition, but with more 
> than 1 core & fetches an Array(OffsetRanges)
>  
> h2. Error Faced
> {noformat}
> java.util.ConcurrentModificationException: KafkaConsumer is not safe for 
> multi-threaded access{noformat}
>  Stack Trace
> {noformat}
> Caused by: org.apache.spark.SparkException: Job aborted due to stage failure: 
> Task 5 in stage 1.0 failed 4 times, most recent failure: Lost task 5.3 in 
> stage 1.0 (TID 17, host, executor 16): 
> java.util.ConcurrentModificationException: KafkaConsumer is not safe for 
> multi-threaded access
> at 
> org.apache.kafka.clients.consumer.KafkaConsumer.acquire(KafkaConsumer.java:1629)
> at 
> org.apache.kafka.clients.consumer.KafkaConsumer.close(KafkaConsumer.java:1528)
> at 
> org.apache.kafka.clients.consumer.KafkaConsumer.close(KafkaConsumer.java:1508)
> at 
> org.apache.spark.streaming.kafka010.CachedKafkaConsumer.close(CachedKafkaConsumer.scala:59)
> at 
> org.apache.spark.streaming.kafka010.CachedKafkaConsumer$.remove(CachedKafkaConsumer.scala:185)
> at 
> org.apache.spark.streaming.kafka010.KafkaRDD$KafkaRDDIterator.<init>(KafkaRDD.scala:204)
> at org.apache.spark.streaming.kafka010.KafkaRDD.compute(KafkaRDD.scala:181)
> at org.apache.spark.rdd.RDD.computeOrReadCheckpoint(RDD.scala:323){noformat}
>  
> h2. Config Used to simulate the error
> A session with : 
>  * Executors - 1
>  * Cores - 2 or More
>  * Kafka Topic - has only 1 partition
>  * While fetching - More than one Array of Offset Range , Example 
> {noformat}
> Array(OffsetRange("kafka_topic",0,608954201,608954202),
> OffsetRange("kafka_topic",0,608954202,608954203)
> ){noformat}
>  
> h2. Why are we fetching from kafka as mentioned above.
>  
> This gives us the capability to establish a connection to Kafka Broker for 
> every spark executor's core, thus each core can fetch/process its own set of 
> messages based on the specified (offset ranges).
> This was working in spark 1.6.2
> However, from spark 2.1 onwards - the pattern throws exception.
> h2. Sample Code
>  
> {quote}scala
> // This forces two connections to same broker for the partition specified 
> below.
> val parallelizedRanges = Array(OffsetRange("kafka_topic",0,1,2), // Fetching 
> sample 2 records 
>  OffsetRange("kafka_topic",0,2,3) // Fetching sample 2 records 
>  );
> val kafkaParams1: java.util.Map[String, Object] = new java.util.HashMap()
> val rDDConsumerRec: RDD[ConsumerRecord[String, String]] =
>  createRDD[String, String](sparkContext
>  , kafkaParams1, parallelizedRanges, LocationStrategies.PreferConsistent);
> val data: RDD[Row] = rDDConsumerRec.map
>  Unknown macro: \{ x => Row(x.topic().toString, x.partition().toString, 
> x.offset().toString, x.timestamp().toString, x.value() ) }
>  ;
> val df = sqlContext.createDataFrame(data, StructType(
>  Seq(
>  StructField("topic", StringType),
>  StructField("partition", StringType),
>  StructField("offset", StringType),
>  StructField("timestamp", StringType),
>  StructField("value", BinaryType)
>  )));
> df.cache;
> df.registerTempTable("kafka_topic");
> hiveContext.sql("""
>  select *
>  from kafka_topic 
>  """).show
> {quote}
>  
> h2. Related Issue
>  
> A similar issue reported for DirectStream is 
> https://issues.apache.org/jira/browse/SPARK-19185



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