I'd like to tell in advance that several related questions, like the following, DO NOT address my problems:
- Spark query running very slow
- Converting mysql table to dataset is very slow...
- Spark Will Not Load Large MySql Table
- Spark MySQL Error while Reading from Database
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
ORC files on
Amazon S3. Some of the tables are quite big: ~ 300M records with 200 GB+ size (as reported by
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
Sparkjobs 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
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
From my limited knowledge of
BigData, 148 GB shouldn't be overwhelming for Spark by any measure. Moreover since
S3 all reside in same region (
AP-SouthEast), so latency shouldn't be the bottleneck.
My questions are:
Sparka suitable tool for this?
Jdbcdriver be blamed for this issue?
- 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?
Hadoopdistribution: Amazon 2.8.3
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