Tutorial: Automate backups with SLM
editTutorial: Automate backups with SLM
editThis tutorial demonstrates how to automate daily backups of Elasticsearch data streams and indices using an SLM policy. The policy takes snapshots of all data streams and indices in the cluster and stores them in a local repository. It also defines a retention policy and automatically deletes snapshots when they are no longer needed.
To manage snapshots with SLM, you:
To test the policy, you can manually trigger it to take an initial snapshot.
Register a repository
editTo use SLM, you must have a snapshot repository configured. The repository can be local (shared filesystem) or remote (cloud storage). Remote repositories can reside on S3, HDFS, Azure, Google Cloud Storage, or any other platform supported by a repository plugin. Remote repositories are generally used for production deployments.
For this tutorial, you can register a local repository from Kibana Management or use the create or update repository API:
PUT /_snapshot/my_repository { "type": "fs", "settings": { "location": "my_backup_location" } }
Set up a snapshot policy
editOnce you have a repository in place, you can define an SLM policy to take snapshots automatically. The policy defines when to take snapshots, which data streams or indices should be included, and what to name the snapshots. A policy can also specify a retention policy and automatically delete snapshots when they are no longer needed.
Don’t be afraid to configure a policy that takes frequent snapshots. Snapshots are incremental and make efficient use of storage.
You can define and manage policies through Kibana Management or with the create or update policy API.
For example, you could define a nightly-snapshots
policy
to back up all of your data streams and indices daily at 2:30AM UTC.
A create or update policy request defines the policy configuration in JSON:
PUT /_slm/policy/nightly-snapshots { "schedule": "0 30 1 * * ?", "name": "<nightly-snap-{now/d}>", "repository": "my_repository", "config": { "indices": ["*"] }, "retention": { "expire_after": "30d", "min_count": 5, "max_count": 50 } }
When the snapshot should be taken in Cron syntax: daily at 2:30AM UTC |
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How to name the snapshot: use date math to include the current date in the snapshot name |
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Where to store the snapshot |
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The configuration to be used for the snapshot requests (see below) |
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Which data streams or indices to include in the snapshot: all data streams and indices |
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Optional retention policy: keep snapshots for 30 days, retaining at least 5 and no more than 50 snapshots regardless of age |
You can specify additional snapshot configuration options to customize how snapshots are taken. For example, you could configure the policy to fail the snapshot if one of the specified data streams or indices is missing. For more information about snapshot options, see snapshot requests.
Test the snapshot policy
editA snapshot taken by SLM is just like any other snapshot. You can view information about snapshots in Kibana Management or get info with the snapshot APIs. In addition, SLM keeps track of policy successes and failures so you have insight into how the policy is working. If the policy has executed at least once, the get policy API returns additional metadata that shows if the snapshot succeeded.
You can manually execute a snapshot policy to take a snapshot immediately. This is useful for taking snapshots before making a configuration change, upgrading, or to test a new policy. Manually executing a policy does not affect its configured schedule.
Instead of waiting for the policy to run, tell SLM to take a snapshot using the configuration right now instead of waiting for 1:30 a.m..
POST /_slm/policy/nightly-snapshots/_execute
After forcing the nightly-snapshots
policy to run,
you can retrieve the policy to get success or failure information.
GET /_slm/policy/nightly-snapshots?human
Only the most recent success and failure are returned,
but all policy executions are recorded in the .slm-history*
indices.
The response also shows when the policy is scheduled to execute next.
The response shows if the policy succeeded in initiating a snapshot. However, that does not guarantee that the snapshot completed successfully. It is possible for the initiated snapshot to fail if, for example, the connection to a remote repository is lost while copying files.
{ "nightly-snapshots" : { "version": 1, "modified_date": "2019-04-23T01:30:00.000Z", "modified_date_millis": 1556048137314, "policy" : { "schedule": "0 30 1 * * ?", "name": "<nightly-snap-{now/d}>", "repository": "my_repository", "config": { "indices": ["*"], }, "retention": { "expire_after": "30d", "min_count": 5, "max_count": 50 } }, "last_success": { "snapshot_name": "nightly-snap-2019.04.24-tmtnyjtrsxkhbrrdcgg18a", "time_string": "2019-04-24T16:43:49.316Z", "time": 1556124229316 } , "last_failure": { "snapshot_name": "nightly-snap-2019.04.02-lohisb5ith2n8hxacaq3mw", "time_string": "2019-04-02T01:30:00.000Z", "time": 1556042030000, "details": "{\"type\":\"index_not_found_exception\",\"reason\":\"no such index [important]\",\"resource.type\":\"index_or_alias\",\"resource.id\":\"important\",\"index_uuid\":\"_na_\",\"index\":\"important\",\"stack_trace\":\"[important] IndexNotFoundException[no such index [important]]\\n\\tat org.elasticsearch.cluster.metadata.IndexNameExpressionResolver$WildcardExpressionResolver.indexNotFoundException(IndexNameExpressionResolver.java:762)\\n\\tat org.elasticsearch.cluster.metadata.IndexNameExpressionResolver$WildcardExpressionResolver.innerResolve(IndexNameExpressionResolver.java:714)\\n\\tat org.elasticsearch.cluster.metadata.IndexNameExpressionResolver$WildcardExpressionResolver.resolve(IndexNameExpressionResolver.java:670)\\n\\tat org.elasticsearch.cluster.metadata.IndexNameExpressionResolver.concreteIndices(IndexNameExpressionResolver.java:163)\\n\\tat org.elasticsearch.cluster.metadata.IndexNameExpressionResolver.concreteIndexNames(IndexNameExpressionResolver.java:142)\\n\\tat org.elasticsearch.cluster.metadata.IndexNameExpressionResolver.concreteIndexNames(IndexNameExpressionResolver.java:102)\\n\\tat org.elasticsearch.snapshots.SnapshotsService$1.execute(SnapshotsService.java:280)\\n\\tat org.elasticsearch.cluster.ClusterStateUpdateTask.execute(ClusterStateUpdateTask.java:47)\\n\\tat org.elasticsearch.cluster.service.MasterService.executeTasks(MasterService.java:687)\\n\\tat org.elasticsearch.cluster.service.MasterService.calculateTaskOutputs(MasterService.java:310)\\n\\tat org.elasticsearch.cluster.service.MasterService.runTasks(MasterService.java:210)\\n\\tat org.elasticsearch.cluster.service.MasterService$Batcher.run(MasterService.java:142)\\n\\tat org.elasticsearch.cluster.service.TaskBatcher.runIfNotProcessed(TaskBatcher.java:150)\\n\\tat org.elasticsearch.cluster.service.TaskBatcher$BatchedTask.run(TaskBatcher.java:188)\\n\\tat org.elasticsearch.common.util.concurrent.ThreadContext$ContextPreservingRunnable.run(ThreadContext.java:688)\\n\\tat org.elasticsearch.common.util.concurrent.PrioritizedEsThreadPoolExecutor$TieBreakingPrioritizedRunnable.runAndClean(PrioritizedEsThreadPoolExecutor.java:252)\\n\\tat org.elasticsearch.common.util.concurrent.PrioritizedEsThreadPoolExecutor$TieBreakingPrioritizedRunnable.run(PrioritizedEsThreadPoolExecutor.java:215)\\n\\tat java.base/java.util.concurrent.ThreadPoolExecutor.runWorker(ThreadPoolExecutor.java:1128)\\n\\tat java.base/java.util.concurrent.ThreadPoolExecutor$Worker.run(ThreadPoolExecutor.java:628)\\n\\tat java.base/java.lang.Thread.run(Thread.java:834)\\n\"}" } , "next_execution": "2019-04-24T01:30:00.000Z", "next_execution_millis": 1556048160000 } }