7

I'd like to tell in advance that several related questions, like the following, DO NOT address my problems:

This one comes close but the stack-trace is different and it is unresolved anyways. So rest assured that I'm posting this question after several days of (failed) solution-hunting.


I'm trying to write a job that moves data (once a day) from MySQL tables to Hive tables stored as Parquet / ORC files on Amazon S3. Some of the tables are quite big: ~ 300M records with 200 GB+ size (as reported by phpMyAdmin).

Currently we are using sqoop for this but we want to move to Spark for the following reasons:

  • To leverage it's capabilities with DataFrame API (in future, we would be performing transformations while moving data)
  • We already have a sizeable framework written in Scala for Spark jobs used elsewhere in the organization

I've been able to achieve this on small MySQL tables without any issue. But the Spark job (that reads data from MySQL into DataFrame) fails if I try to fetch more than ~1.5-2M records at a time. I've shown the relevant portions of stack-trace below, you can find the complete stack-trace here.

...
javax.servlet.ServletException: java.util.NoSuchElementException: None.get
    at org.glassfish.jersey.servlet.WebComponent.serviceImpl(WebComponent.java:489)
    at org.glassfish.jersey.servlet.WebComponent.service(WebComponent.java:427)
...
Caused by: java.util.NoSuchElementException: None.get
    at scala.None$.get(Option.scala:347)
    at scala.None$.get(Option.scala:345)
...
org.apache.spark.status.api.v1.OneStageResource.taskSummary(OneStageResource.scala:62)
    at sun.reflect.GeneratedMethodAccessor188.invoke(Unknown Source)
    at sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMethodAccessorImpl.java:43)
    at java.lang.reflect.Method.invoke(Method.java:498)
...
[Stage 27:>                                                       (0 + 30) / 32]18/03/01 01:29:09 WARN TaskSetManager: Lost task 3.0 in stage 27.0 (TID 92, ip-xxx-xx-xx-xxx.ap-southeast-1.compute.internal, executor 6): java.sql.SQLException: Incorrect key file for table '/rdsdbdata/tmp/#sql_14ae_5.MYI'; try to repair it
    at com.mysql.jdbc.SQLError.createSQLException(SQLError.java:964)
    at com.mysql.jdbc.MysqlIO.checkErrorPacket(MysqlIO.java:3973)
...

** This stack-trace was obtained upon failure of moving a 148 GB table containing 186M records

As apparent from (full) stack-trace, the Spark read job starts sulking with the false warnings of None.get error followed by SQLException: Incorrect key for file.. (which is related to MySQL's tmp table becoming full)


Now clearly this can't be a MySQL problem because in that case sqoop should fail as well. As far as Spark is concerned, I'm parallelizing the read operation by setting numPartitions = 32 (we use parallelism of 40 with sqoop).

From my limited knowledge of Spark and BigData, 148 GB shouldn't be overwhelming for Spark by any measure. Moreover since MySQL, Spark (EMR) and S3 all reside in same region (AWS AP-SouthEast), so latency shouldn't be the bottleneck.


My questions are:

  1. Is Spark a suitable tool for this?
  2. Could Spark's Jdbc driver be blamed for this issue?
  3. If answer to above question is
    • Yes: How can I overcome it? (alternate driver, or some other workaround)?
    • No: What could be the possible cause?

Framework Configurations:

  • Hadoop distribution: Amazon 2.8.3
  • Spark 2.2.1
  • Hive 2.3.2
  • Scala 2.11.11

EMR Configurations:

  • EMR 5.12.0
  • 1 Master: r3.xlarge [8 vCore, 30.5 GiB memory, 80 SSD GB storage EBS Storage:32 GiB]
  • 1 Task: r3.xlarge [8 vCore, 30.5 GiB memory, 80 SSD GB storage EBS Storage:none]
  • 1 Core: r3.xlarge [8 vCore, 30.5 GiB memory, 80 SSD GB storage EBS Storage:32 GiB]

** These are the configurations of development cluster; production cluster would be better equipped

14
  • 2
    Hi there, a couple of question 1) why dont you use sqoop to save into hdfs and then read that file with spark to later insert it on Hive? 2) What are the resources allocated for this spark process?
    – Felix
    Mar 7 '18 at 11:40
  • 1
    I agree with Felix. Sqoop is a tool that is dedicated to moving RDBMS data to HDFS. I've had a few problems with Spark JDBC myself. Alternatively, you can also use the Sqoop Java API if you really insist on doing this through a Scala Application. Mar 7 '18 at 11:58
  • In all cases, since you are using EMR, rather then doing that in two times. Use Sqoop to dump data to parquet, whether you want/need S3 that up to you, Than pull data using Spark and performs your transformations.
    – eliasah
    Mar 7 '18 at 12:51
  • As per the jdbc source for the matter, MapReduce lays on the ability of partitioning data. You don't study that part, you'll not be able to use Spark with JDBC properly. For more info, you can read this : github.com/awesome-spark/spark-gotchas/blob/master/… (disclaimer : I'm one ofthe authors of the document.)
    – eliasah
    Mar 7 '18 at 12:55
  • @Felix, @philantrovert we are presently using sqoop to dump data to HDFS and then use distcp to put in on S3 in parquet format (2nd step also requires MSCK repair). But this incurs a lot of redundant Disk I/O and impacts other jobs that rely on same HDFS. In fact, sqoop and HDFS have given us so many lemons in past 18 months that we plan to stop using them completely. We got motivation to use Spark as data migration tool from here Mar 20 '18 at 7:21
1

Spark JDBC API seem to fork to load all data from MySQL table to memory without. So when you try to load a big table, what you should do is use Spark API clone data to HDFS first (JSON should be used to keep schema structure), like this:

spark.read.jdbc(jdbcUrl, tableName, prop)
       .write()
       .json("/fileName.json");

Then you can working on HDFS instead normally.

spark.read().json("/fileName.json")
       .createOrReplaceTempView(tableName);

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