Hive/Impala Replication
Minimum Required Role: BDR Administrator (also provided by Full Administrator)
Hive/Impala replication enables you to copy (replicate) your Hive metastore and data from one cluster to another and synchronize the Hive metastore and data set on the destination cluster with the source, based on a specified replication schedule. The destination cluster must be managed by the Cloudera Manager Server where the replication is being set up, and the source cluster can be managed by that same server or by a peer Cloudera Manager Server.
- If the hadoop.proxyuser.hive.groups configuration has been changed to restrict access to the Hive Metastore Server to certain users or groups, the hdfs group or a group containing the hdfs user must also be included in the list of groups specified for Hive/Impala replication to work. This configuration can be specified either on the Hive service as an override, or in the core-site HDFS configuration. This applies to configuration settings on both the source and destination clusters.
- If you configured Synchronizing HDFS ACLs and Sentry Permissions on the target cluster for the directory where HDFS data is copied during Hive/Impala replication, the permissions that were copied during replication, are overwritten by the HDFS ACL synchronization and are not preserved
Continue reading:
- Network Latency and Replication
- Host Selection for Hive/Impala Replication
- Hive Tables and DDL Commands
- Replication of Parameters
- Performance and Scalability Limitations
- Configuring Replication of Hive/Impala Data
- Viewing Replication Schedules
- Viewing Replication History
- Hive/Impala Replication To and From Amazon S3
Network Latency and Replication
High latency among clusters can cause replication jobs to run more slowly, but does not cause them to fail. For best performance, latency between the source cluster NameNode and the destination cluster NameNode should be less than 80 milliseconds. (You can test latency using the Linux ping command.) Cloudera has successfully tested replications with latency of up to 360 milliseconds. As latency increases, replication performance degrades.
Host Selection for Hive/Impala Replication
If your cluster has Hive clients installed on hosts with limited resources, Hive/Impala replication may use these hosts to run commands for the replication, which can cause the performance of the replication to degrade. To improve performance, you can specify the hosts (a ”white list”) to use during replication so that the lower-resource hosts are not used.
- Click .
- Type Hive Replication in the search box.
- Locate the Hive Replication Environment Advanced Configuration Snippet (Safety Valve) property.
- Add the HOST_WHITELIST property. Enter a comma-separated list of hostnames to use for Hive/Impala replication. For example:
HOST_WHITELIST=host-1.mycompany.com,host-2.mycompany.com
- Enter a Reason for change, and then click Save Changes to commit the changes.
Hive Tables and DDL Commands
- If you configure replication of a Hive table and then later drop that table, the table remains on the destination cluster. The table is not dropped when subsequent replications occur.
- If you drop a table on the destination cluster, and the table is still included in the replication job, the table is re-created on the destination during the replication.
- If you drop a table partition or index on the source cluster, the replication job also drops them on the destination cluster.
- If you truncate a table, and the Delete Policy for the replication job is set to Delete to Trash or Delete Permanently, the corresponding data files are deleted on the destination during a replication.
Replication of Parameters
Parameters of databases, tables, partitions, and indexes are replicated by default during Hive/Impala replications.
- Log in to the Cloudera Manager Admin Console.
- Go to the Hive service.
- Click the Configuration tab.
- Search for "Hive Replication Environment Advanced Configuration Snippet"
- Add the following parameter:
REPLICATE_PARAMETERS=false
- Click Save Changes.
Performance and Scalability Limitations
- Maximum number of databases: 100
- Maximum number of tables per database: 1,000
- Maximum number of partitions per table: 10,000. See Identify Workload Characteristics That Increase Memory Pressure.
- Maximum total number of tables (across all databases): 10,000
- Maximum total number of partitions (across all tables): 100,000
- Maximum number of indexes per table: 100
Configuring Replication of Hive/Impala Data
- Verify that your cluster conforms to one of the Supported Replication Scenarios.
- If the source cluster is managed by a different Cloudera Manager server than the destination cluster, configure a peer relationship. If the source or destination is Amazon S3, you must configure AWS credentials.
- Do one of the following:
- From the Backup tab, select Replications.
- From the Clusters tab, go to the Hive service and select .
The Schedules tab of the Replications page displays.
- Select General tab displays. . The
- Select the General tab to configure the following:
Note: If you are replicating to or from Amazon S3, follow the steps under Hive/Impala Replication To and From Amazon S3 before completing these steps.
- Use the Name field to provide a unique name for the replication schedule.
- Use the Source drop-down list to select the cluster with the Hive service you want to replicate.
- Use the Destination drop-down list to select the destination for the replication. If there is only one Hive service managed by Cloudera Manager available as a destination, this is specified as the destination. If more than one Hive service is managed by this Cloudera Manager, select from among them.
- Leave Replicate All checked to replicate all the Hive metastore databases from the source. To
replicate only selected databases, uncheck this option and enter the database name(s) and tables you want to replicate.
- You can specify multiple databases and tables using the plus symbol to add more rows to the specification.
- You can specify multiple databases on a single line by separating their names with the pipe (|) character. For example: mydbname1|mydbname2|mydbname3.
- Regular expressions can be used in either database or table fields, as described in the following table:
Regular Expression Result [\w].+
Any database or table name. (?!myname\b).+
Any database or table except the one named myname. db1|db2 [\w_]+
All tables of the db1 and db2 databases. db1 [\w_]+
Click the "+" button and then enter
db2 [\w_]+
All tables of the db1 and db2 databases (alternate method).
- Select a Schedule:
- Immediate - Run the schedule Immediately.
- Once - Run the schedule one time in the future. Set the date and time.
- Recurring - Run the schedule periodically in the future. Set the date, time, and interval between runs.
- To specify the user that should run the MapReduce job, use the Run As Username option. By default, MapReduce jobs run as hdfs. To run the MapReduce job as a different user, enter the user name. If you are using Kerberos, you must provide a user name here, and it must have an ID
greater than 1000.
Note: The user running the MapReduce job should have read and execute permissions on the Hive warehouse directory on the source cluster. If you configure the replication job to preserve permissions, superuser privileges are required on the destination cluster.
- Select the Resources tab to configure the following:
- Scheduler Pool – (Optional) Enter the name of a resource pool in the field. The value you
enter is used by the MapReduce Service you specified when Cloudera Manager executes the MapReduce job for the replication. The job specifies the value using one of
these properties:
- MapReduce – Fair scheduler: mapred.fairscheduler.pool
- MapReduce – Capacity scheduler: queue.name
- YARN – mapreduce.job.queuename
- Maximum Map Slots and Maximum Bandwidth – Limits for the number of map slots and for bandwidth per mapper. The default is 100 MB.
- Replication Strategy – Whether file replication should be static (the default) or dynamic. Static replication distributes file replication tasks among the mappers up front to achieve a uniform distribution based on file sizes. Dynamic replication distributes file replication tasks in small sets to the mappers, and as each mapper processes its tasks, it dynamically acquires and processes the next unallocated set of tasks.
- Scheduler Pool – (Optional) Enter the name of a resource pool in the field. The value you
enter is used by the MapReduce Service you specified when Cloudera Manager executes the MapReduce job for the replication. The job specifies the value using one of
these properties:
- Select the Advanced tab to specify an export location, modify the parameters of the MapReduce job that will perform the replication, and set other
options. You can select a MapReduce service (if there is more than one in your cluster) and change the following parameters:
- Uncheck the Replicate HDFS Files checkbox to skip replicating the associated data files.
- If both the source and destination clusters use CDH 5.7.0 or later up to and including 5.11.x, select the Replicate Impala Metadata drop-down list and select No to avoid redundant replication of Impala metadata. (This option only displays when
supported by both source and destination clusters.) You can select the following options for Replicate Impala Metadata:
- Yes – replicates the Impala metadata.
- No – does not replicate the Impala metadata.
- Auto – Cloudera Manager determines whether or not to replicate the Impala metadata based on the CDH version.
To replicate Impala UDFs when the version of CDH managed by Cloudera Manager is 5.7 or lower, see Replicating Data to Impala Clusters for information on when to select this option.
- The Force Overwrite option, if checked, forces overwriting data in the destination metastore if incompatible changes are detected. For example, if the
destination metastore was modified, and a new partition was added to a table, this option forces deletion of that partition, overwriting the table with the version found on the source.
Important: If the Force Overwrite option is not set, and the Hive/Impala replication process detects incompatible changes on the source cluster, Hive/Impala replication fails. This sometimes occurs with recurring replications, where the metadata associated with an existing database or table on the source cluster changes over time.
- By default, Hive metadata is exported to a default HDFS location (/user/${user.name}/.cm/hive) and then imported from this HDFS file to the destination
Hive metastore. In this example, user.name is the process user of the HDFS service on the destination cluster. To override the default HDFS
location for this export file, specify a path in the Export Path field.
Note: In a Kerberized cluster, the HDFS principal on the source cluster must have read, write, and execute access to the Export Path directory on the destination cluster.
- By default, Hive HDFS data files (for example, /user/hive/warehouse/db1/t1) are replicated to a location relative to "/" (in this example, to /user/hive/warehouse/db1/t1). To override the default, enter a path in the HDFS Destination Path field. For example, if you enter /ReplicatedData, the data files would be replicated to /ReplicatedData/user/hive/warehouse/db1/t1.
- Select the MapReduce Service to use for this replication (if there is more than one in your cluster).
- Log Path - An alternative path for the logs.
- Description - A description for the replication schedule.
- Skip Checksum Checks - Whether to skip checksum checks, which are performed by default.
Checksums are used for two purposes:
- To skip replication of files that have already been copied. If Skip Checksum Checks is selected, the replication job skips copying a file if the file lengths and modification times are identical between the source and destination clusters. Otherwise, the job copies the file from the source to the destination.
- To redundantly verify the integrity of data. However, checksums are not required to guarantee accurate transfers between clusters. HDFS data transfers are protected by checksums during transfer and storage hardware also uses checksums to ensure that data is accurately stored. These two mechanisms work together to validate the integrity of the copied data.
- Skip Listing Checksum Checks - Whether to skip checksum check when comparing two files to determine whether they are same or not. If skipped, the file size and last modified time are used to determine if files are the same or not. Skipping the check improves performance during the mapper phase. Note that if you select the Skip Checksum Checks option, this check is also skipped.
- Abort on Error - Whether to abort the job on an error. By selecting the check box, files copied up to that point remain on the destination, but no additional files will be copied. Abort on Error is off by default.
- Delete Policy - Whether files that were on the source should also be deleted from the destination directory. Options include:
- Keep Deleted Files - Retains the destination files even when they no longer exist at the source. (This is the default.).
- Delete to Trash - If the HDFS trash is enabled, files are moved to the trash folder. (Not supported when replicating to Amazon S3.)
- Delete Permanently - Uses the least amount of space; use with caution.
- Preserve - Whether to preserve the Block Size, Replication Count, and Permissions as they exist on the source file system, or to use the settings as configured on the destination file system. By default, settings are preserved on the source.
Note: You must be running as a superuser to preserve permissions. Use the "Run As Username" option to ensure that is the case.
- Alerts - Whether to generate alerts for various state changes in the replication workflow. You can alert On Failure, On Start, On Success, or On Abort (when the replication workflow is aborted).
- Click Save Schedule.
The replication task appears as a row in the Replications Schedule table. See Viewing Replication Schedules.
Replication of Impala and Hive User Defined Functions (UDFs)
By default, for clusters where the version of CDH is 5.7 or higher, Impala and Hive UDFs are persisted in the Hive Metastore and are replicated automatically as part of Hive/Impala replications. See Impala User-Defined Functions (UDFs), Replicating Data to Impala Clusters, and Managing Apache Hive User-Defined Functions (UDFs) in CDH.
To replicate Impala UDFs when the version of CDH managed by Cloudera Manager is 5.6 or lower, see Replicating Data to Impala Clusters for information on when to select the Replicate Impala Metadata option on the Advanced tab when creating a Hive/Impala replication schedule.
After a replication has run, you can see the number of Impala and Hive UDFs that were replicated during the last run of the schedule on the Replication
Schedules page:
For previously-run replications, the number of replicated UDFs displays on the Replication History page:
Viewing Replication Schedules
The Replications Schedules page displays a row of information about each scheduled replication job. Each row also displays recent messages regarding the last time the Replication job ran.
Only one job corresponding to a replication schedule can occur at a time; if another job associated with that same replication schedule starts before the previous one has finished, the second one is canceled.
You can limit the replication jobs that are displayed by selecting filters on the left. If you do not see an expected schedule, adjust or clear the filters. Use the search box to search the list of schedules for path, database, or table names.
Column | Description |
---|---|
ID | An internally generated ID number that identifies the schedule. Provides a convenient way to identify a schedule.
Click the ID column label to sort the replication schedule table by ID. |
Name | The unique name you specify when you create a schedule. |
Type | The type of replication scheduled, either HDFS or Hive. |
Source | The source cluster for the replication. |
Destination | The destination cluster for the replication. |
Throughput | Average throughput per mapper/file of all the files written. Note that throughput does not include the following information: the combined throughput of all mappers and the time taken to perform a checksum on a file after the file is written. |
Progress | The progress of the replication. |
Last Run | The date and time when the replication last ran. Displays None if the scheduled
replication has not yet been run. Click the date and time link to view the Replication History page for the
replication.
Displays one of the following icons:
Click the Last Run column label to sort the Replication Schedules table by the last run date. |
Next Run | The date and time when the next replication is scheduled, based on the schedule parameters specified for the schedule.
Hover over the date to view additional details about the scheduled replication.
Click the Next Run column label to sort the Replication Schedules table by the next run date. |
Objects | Displays on the bottom line of each row, depending on the type of replication:
For example: |
Actions | The following items are available from the Action button:
|
- While a job is in progress, the Last Run column displays a spinner and progress bar, and each stage of the replication task is indicated in the message beneath the job's row. Click the Command Details link to view details about the execution of the command.
- If the job is successful, the number of files copied is indicated. If there have been no changes to a file at the source since the previous job, then that file is not copied. As a result, after the initial job, only a subset of the files may actually be copied, and this is indicated in the success message.
- If the job fails, the icon displays.
- To view more information about a completed job, select Viewing Replication History. . See
Enabling, Disabling, or Deleting A Replication Schedule
When you create a new replication schedule, it is automatically enabled. If you disable a replication schedule, it can be re-enabled at a later time.
- Click in the row for a replication schedule.
- Select one or more replication schedules in the table by clicking the check box the in the left column of the table.
- Click .
Viewing Replication History
You can view historical details about replication jobs on the Replication History page.
To view the history of a replication job:
- Select Replication Schedules page. to go to the
- Locate the row for the job.
- Click .
The Replication History page displays a table of previously run replication jobs with the following columns:
Column | Description |
---|---|
Start Time | Time when the replication job started.
Expand the display and show details of the replication. In this screen, you can:
|
Duration | Amount of time the replication job took to complete. |
Outcome | Indicates success or failure of the replication job. |
Files Expected | Number of files expected to be copied, based on the parameters of the replication schedule. |
Files Copied | Number of files actually copied during the replication. |
Tables | (Hive only) Number of tables replicated. |
Files Failed | Number of files that failed to be copied during the replication. |
Files Deleted | Number of files that were deleted during the replication. |
Files Skipped | Number of files skipped during the replication. The replication process skips files that already exist in the destination and have not changed. |
Hive/Impala Replication To and From Amazon S3
You can use Cloudera Manager to replicate Hive/Impala data and metadata to and from Amazon S3, however you cannot replicate data from one Amazon S3 instance to another using Cloudera Manager. You must have the appropriate credentials to access the Amazon S3 account and you must create buckets in Amazon S3 to store the replicated files.
When you replicate data to cloud storage with BDR, BDR also backs up file metadata, including extended attributes and ACLs.
- Create AWS Credentials. See How to Configure AWS Credentials.
- Select .
- Click .
- To back up data to S3:
- Select the Source cluster from the Source drop-down list.
- Select the Amazon S3 destination (one of the AWS Credentials accounts you created for Amazon S3) from the Destination drop-down list.
- Enter the path where the data should be copied to in S3. Enter using the following form:
s3a://S3_bucket_name/path
- Select one of the following Replication Options:
- Metadata and Data – Backs up the Hive data from HDFS and its associated metadata.
- Metadata only – Backs up only the Hive metadata.
- To restore data from S3:
- Select the Amazon S3 source (one of theAWS Credentials accounts you created for Amazon S3) from the Source drop-down list.
- Select the destination cluster from the Destination drop-down list.
- Enter the path to the metadata file (export.json) where the data should be copied from in S3. Enter using the following form:
s3a://S3_bucket_name/path_to_metadata_file
- Select one of the following Replication Options:
- Metadata and Data – Restores the Hive data from HDFS from S3 and its associated metadata.
- Metadata only – Restores only the Hive metadata.
- Reference Data From Cloud – Restores only the Hive tables and references the tables on S3 as a Hive external table. If you drop a table in Hive, the data remains on S3. Only data that was backed up using a Hive/Impala Replication schedule can be restored. However, you can restore a Hive external table that is stored in S3.
- Complete the configuration of the Hive/Impala replication schedule by following the steps under Configuring Replication of Hive/Impala Data, beginning with step cm_bdr_hive_replication.html#concept_ld2_v2z_qm_unique_1__replicate_all_unique_1
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