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Checklist

  • User Stories Documented
  • User Stories Reviewed
  • Design Reviewed
  • APIs reviewed
  • Release priorities assigned
  • Test cases reviewed
  • Blog post

Introduction 

Phase 1 of replication is to support a hot-cold setup where CDAP data is replicated from one cluster to another using existing tools for replicating underlying infrastructure.

Goals

Allow manual failover from a hot cluster to a cold cluster.

User Stories 

  • As a cluster administrator, I want to be able to configure CDAP so that all HBase tables created by CDAP are set up to replicate data to another cluster
  • As a cluster administrator, I want to be able to manually stop CDAP in one cluster and start it in another cluster with the exact same state
  • As a cluster administrator, I want to be able to have a way to know when it is safe to start the cold cluster after the hot one has been shut down

Design

CDAP stores state in several systems:

 

HDFS

  • Transaction snapshots
  • Artifacts (jars)
  • Streams
  • FileSet based datasets
  • Program logs

HBase

  • CDAP entity metadata (program specifications, schedules, run history, metrics, etc.)
  • Table based datasets
  • Kafka offsets for metrics and logs

Kafka

  • unprocessed metrics
  • unsaved log messages

Hive

  • Explorable CDAP datasets and their partitions

 

For phase 1, much of the responsiblity for data replication falls to the cluster administrator. It is assumed that replication of HDFS, Hive, and Kafka will be handled by the cluster administrator. HDFS is usually done through regularly scheduled distcp jobs, or by using some distro specific tools, such as Cloudera's Backup and Data Recovery (http://www.cloudera.com/documentation/enterprise/latest/topics/cm_bdr_about.html). Kafka can be done using MirrorMaker. Hive can be done by replicating the data (HDFS and/or HBase), and by replication the metastore through whatever replication mechanisms are available to the relational DB behind the metastore. All of this can be setup outside of CDAP.

HBase DDL

HBase, however, will require some hooks in CDAP, because replication must be setup for every table when it is created, and before any data is written to it. CDAP will define an interface to create, modify, and delete HBase tables.  By default, it will be implemented by the current code, which only creates tables in the local HBase instance.  Another implementation can be used by setting a property in cdap-site.xml that specifies the class to use. The jar containing the class must be included in the cdap classpath.  This custom class could, for example, make an http call to an external service to create the needed hbase tables.

Java SPI

/**
 * Executes HBase DDL operations.
 */
public interface HBaseDDLExecutor {

  /**
   * Create the specified namespace if it does not exist.
   *
   * @param name the namespace to create
   * @throws IOException if a remote or network exception occurs
   */
  void createNamespaceIfNotExists(String name) throws IOException;

  /**
   * Delete the specified namespace if it exists.
   *
   * @param name the namespace to delete
   * @throws IOException if a remote or network exception occurs
   */
  void deleteNamespaceIfExists(String name) throws IOException;

  /**
   * Create the specified table if it does not exist.
   *
   * @param descriptor the descriptor for the table to create
   * @param splitKeys
   * @throws IOException if a remote or network exception occurs
   */
  void createTableIfNotExists(HTableDescriptor descriptor, byte [][] splitKeys) throws IOException;

  /**
   * Enable the specified table
   *
   * @param name the table to enable
   * @throws IOException if a remote or network exception occurs
   * @throws NotFoundException if the specified table does not exist
   */
  void enableTable(TableName name) throws IOException;

  /**
   * Disable the specified table
   *
   * @param name the table to disable
   * @throws IOException if a remote or network exception occurs
   * @throws NotFoundException if the specified table does not exist
   */
  void disableTable(TableName name) throws IOException;

  /**
   * Modify the specified table
   *
   * @param name the table to modify
   * @param descriptor the descriptor for the table
   * @throws IOException if a remote or network exception occurs
   * @throws NotFoundException if the specified table does not exist
   */
  void modifyTable(TableName name, HTableDescriptor descriptor) throws IOException;

  /**
   * Delete the table if it exists.
   *
   * @param name the table to delete
   * @throws IOException if a remote or network exception occurs
   */
  void deleteTableIfExists(TableName name) throws IOException;
}

The default implementation will simply use the existing HBaseTableUtil. There can be another implementation that makes REST calls for each method, leaving actual HBase operations up to an external service.

 

Replication Status

Cluster administrators will require a way to tell when it is safe for a cold cluster to be started up. In other words, they need to be able to tell when all necessary data has been replicated. HBase shell already includes a command that helps:

hbase(main):030:0> status 'replication', 'source'
version 1.1.2.2.3.4.7-4
1 live servers
    [hostname]:
       SOURCE: PeerID=1, AgeOfLastShippedOp=29312, SizeOfLogQueue=0, TimeStampsOfLastShippedOp=Thu Nov 10 22:51:55 UTC 2016, Replication Lag=29312

HBase also includes a mapreduce job that can be used to verify replicated data (https://hbase.apache.org/book.html#_verifying_replicated_data).  It must be run on the master cluster.

$ HADOOP_CLASSPATH=`hbase classpath` hadoop jar /usr/hdp/current/hbase-master/lib/hbase-server-1.1.2.2.3.4.7-4.jar verifyrep <peer id> <table>
...
	Map-Reduce Framework
		Map input records=1
		Map output records=0
		Input split bytes=103
		Spilled Records=0
		Failed Shuffles=0
		Merged Map outputs=0
		GC time elapsed (ms)=64
		CPU time spent (ms)=1810
		Physical memory (bytes) snapshot=255139840
		Virtual memory (bytes) snapshot=916021248
		Total committed heap usage (bytes)=287309824
	org.apache.hadoop.hbase.mapreduce.replication.VerifyReplication$Verifier$Counters
		BADROWS=1
		CONTENT_DIFFERENT_ROWS=1

Under the HBase counters, you only want to see the GOODROWS counter, and not BADROWS or CONTENT_DIFFERENT_ROWS.

Kafka offset mismatches

MirrorMaker is not much more than a Kafka client that consumes from source topics and writes the same messages to some destination. As such, partitions and offsets are not guaranteed to be the same. The log saver, metrics processor, and their corresponding fetch endpoints will need to be able to handle the fact that Kafka offsets can be different in the hot and cold clusters.

Approach

Approach #1

Approach #2

API changes

New Programmatic APIs

New Java APIs introduced (both user facing and internal)

Deprecated Programmatic APIs

New REST APIs

PathMethodDescriptionResponse CodeResponse
/v3/apps/<app-id>GETReturns the application spec for a given application

200 - On success

404 - When application is not available

500 - Any internal errors

 

     

Deprecated REST API

PathMethodDescription
/v3/apps/<app-id>GETReturns the application spec for a given application

CLI Impact or Changes

  • Impact #1
  • Impact #2
  • Impact #3

UI Impact or Changes

  • Impact #1
  • Impact #2
  • Impact #3

Security Impact 

What's the impact on Authorization and how does the design take care of this aspect

Impact on Infrastructure Outages 

System behavior (if applicable - document impact on downstream [ YARN, HBase etc ] component failures) and how does the design take care of these aspect

Test Scenarios

Test IDTest DescriptionExpected Results
   
   
   
   

Releases

Release 4.0.0

Release X.Y.Z

Related Work

  • Work #1
  • Work #2
  • Work #3

 

Future work

  • No labels