You're viewing version 2.8 of the OpenSearch documentation. This version is no longer maintained. For the latest version, see the current documentation. For information about OpenSearch version maintenance, see Release Schedule and Maintenance Policy.
Remote-backed storage
This is an experimental feature and is not recommended for use in a production environment. For updates on the progress of the feature or if you want to leave feedback, see the associated GitHub issue.
Remote-backed storage offers OpenSearch users a new way to protect against data loss by automatically creating backups of all index transactions and sending them to remote storage. In order to expose this feature, segment replication must also be enabled. See Segment replication for additional information.
Translog
Any index changes, such as indexing or deleting documents, are written to disk during a Lucene commit. However, Lucene commits are expensive operations, so they cannot be performed after every change to the index. Instead, each shard records every indexing operation in a transaction log called translog. When a document is indexed, it is added to the memory buffer and recorded in the translog. Frequent refresh operations write the documents in the memory buffer to a segment and then clear the memory buffer. Periodically, a flush performs a Lucene commit, which includes writing the segments to disk using fsync, purging the old translog, and starting a new translog. Thus, a translog contains all operations that have not yet been flushed.
Segment replication and remote-backed storage
When neither segment replication nor remote-backed storage is enabled, OpenSearch uses document replication. In document replication, when a write request lands on the primary shard, the request is indexed to Lucene and stored in the translog. After this, the request is sent to the replicas, where, in turn, it is indexed to Lucene and stored in the translog for durability.
With segment replication, segments are created on the primary shard only and then copied to all replicas. The replicas do not index requests to Lucene, but they do create and maintain a translog.
With remote-backed storage, when a write request lands on the primary shard, the request is indexed to Lucene on the primary shard only. The corresponding translog is then uploaded to remote store. OpenSearch does not send the write request to the replicas, but rather performs a primary term validation to confirm that the request originator shard is still the primary shard. Primary term validation ensures that the acting primary shard fails if it becomes isolated and is unaware of the cluster manager electing a new primary.
The index.translog.durability
translog setting
Without remote-backed storage, indexing operations are only persisted to disk when the translog is fsynced. Therefore, any data that has not been written to disk can potentially be lost.
The index.translog.durability
setting controls how frequently OpenSearch fsyncs the translog to disk:
-
By default,
index.translog.durability
is set torequest
. This means that fsync happens after every request, and all acknowledged write requests persist in case of failure. -
If you set
index.translog.durability
toasync
, fsync happens periodically at the specifiedsync_interval
(5 seconds by default). The fsync operation is asynchronous, so acknowledge is sent without waiting for fsync. Consequently, all acknowledged writes since the last commit are lost in case of failure.
With remote-backed storage, the translog is uploaded to a remote store for durability.
index.translog.durability
is a dynamic setting. To update it, use the following query:
PUT my_index/_settings
{
"index" : {
"translog.durability" : "request"
}
}
Refresh-level and request-level durability
The remote store feature supports two levels of durability:
-
Refresh-level durability: Segment files are uploaded to remote store after every refresh. Set the
remote_store
flag totrue
to achieve refresh-level durability. Commit-level durability is inherent, and uploads are asynchronous.If you need to refresh an index manually, you can use the
_refresh
API. For example, to refresh themy_index
index, use the following request:POST my_index/_refresh
-
Request-level durability: Translogs are uploaded before acknowledging the request. Set the
translog
flag totrue
to achieve request-level durability. In this scenario, we recommend to batch as many requests as possible in a bulk request. Batching requests will improve indexing throughput and latency compared to sending individual write requests.
Enable the feature flag
There are several methods for enabling remote store feature, depending on the install type. You will also need to enable remote_store
property when creating the index.
Segment replication must also be enabled to use remote-backed storage.
Enable on a node using a tarball install
The flag is toggled using a new jvm parameter that is set either in OPENSEARCH_JAVA_OPTS
or in config/jvm.options.
Option 1: Modify jvm.options
Add the following lines to config/jvm.options
before starting the OpenSearch process to enable the feature and its dependency:
-Dopensearch.experimental.feature.replication_type.enabled=true
-Dopensearch.experimental.feature.remote_store.enabled=true
Run OpenSearch
./bin/opensearch
Option 2: Enable from an environment variable
As an alternative to directly modifying config/jvm.options
, you can define the properties by using an environment variable. This can be done in a single command when you start OpenSearch or by defining the variable with export
.
To add these flags in-line when starting OpenSearch:
OPENSEARCH_JAVA_OPTS="-Dopensearch.experimental.feature.replication_type.enabled=true -Dopensearch.experimental.feature.remote_store.enabled=true" ./opensearch-2.8.0/bin/opensearch
If you want to define the environment variable separately, prior to running OpenSearch:
export OPENSEARCH_JAVA_OPTS="-Dopensearch.experimental.feature.replication_type.enabled=true -Dopensearch.experimental.feature.remote_store.enabled=true"
./bin/opensearch
Enable with Docker containers
If you’re running Docker, add the following line to docker-compose.yml underneath the opensearch-node
and environment
section:
OPENSEARCH_JAVA_OPTS="-Dopensearch.experimental.feature.replication_type.enabled=true -Dopensearch.experimental.feature.remote_store.enabled=true"
Enable for OpenSearch development
To create new indexes with remote-backed storage enabled, you must first enable these features by adding the correct properties to run.gradle
before building OpenSearch. See the developer guide for information about to use how Gradle to build OpenSearch.
Add the following properties to run.gradle
to enable the feature:
testClusters {
runTask {
testDistribution = 'archive'
if (numZones > 1) numberOfZones = numZones
if (numNodes > 1) numberOfNodes = numNodes
systemProperty 'opensearch.experimental.feature.replication_type.enabled', 'true'
systemProperty 'opensearch.experimental.feature.remote_store.enabled', 'true'
}
}
Register a remote repository
Now that your deployment is running with the feature flags enabled, the next step is to register a remote repository where backups will be stored. See Register repository for more information.
Create an index
Remote-backed storage is enabled for an index when it is created. This feature cannot be enabled for indexes that already exist.
For refresh-level durability, include the remote_store
property to enable the feature and specify a segment repository:
curl -X PUT "https://localhost:9200/my-index?pretty" -ku admin:admin -H 'Content-Type: application/json' -d'
{
"settings": {
"index": {
"number_of_shards": 1,
"number_of_replicas": 0,
"replication": {
"type": "SEGMENT"
},
"remote_store": {
"enabled": true,
"repository": "segment-repo"
}
}
}
}
'
For request-level durability, in addition to the remote_store
and segment repository, include the translog
property and specify a translog repository:
curl -X PUT "https://localhost:9200/my-index?pretty" -ku admin:admin -H 'Content-Type: application/json' -d'
{
"settings": {
"index": {
"number_of_shards": 1,
"number_of_replicas": 1,
"replication": {
"type": "SEGMENT"
},
"remote_store": {
"enabled": true,
"repository": "segment-repo",
"translog": {
"enabled": true,
"repository": "translog-repo",
"buffer_interval": "300ms"
}
}
}
}
}
'
You can have the same repository serve as both the segment repository and translog repository.
As data is added to the index, it also will be continuously uploaded to remote storage in the form of segment and translog files because of refreshes, flushes, and translog fsyncs to disk. Along with data, other metadata files will be uploaded. The buffer_interval
setting specifies the time interval during which translog operations are buffered. Instead of uploading individual translog files, OpenSearch creates a single translog file with all the write operations received during the configured interval. Bundling translog files leads to higher throughput but also increases latency. The default buffer_interval
value is 100 ms.
Setting translog.enabled
to true
is currently an irreversible operation.
Restoring from a backup
To restore an index from a remote backup, such as in the event of a node failure, you must first close the index:
curl -X POST "https://localhost:9200/my-index/_close" -ku admin:admin
Restore the index from the backup stored on the remote repository:
curl -X POST "https://localhost:9200/_remotestore/_restore" -ku admin:admin -H 'Content-Type: application/json' -d'
{
"indices": ["my-index"]
}
'
If the Security plugin is enabled, a user must have the cluster:admin/remotestore/restore
permission. See Access control for information about configuring user permissions.
Potential use cases
You can use remote-backed storage for the following purposes:
- To restore red clusters or indexes
- To recover all data up to the last acknowledged write, regardless of replica count, if
index.translog.durability
is set torequest
Known limitations
The following are known limitations of the remote-backed storage feature:
- Writing data to a remote store can be a high-latency operation when compared to writing data on the local file system. This may impact the indexing throughput and latency. For performance benchmarking results, see issue #6376.