index.asciidoc 15 KB

123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185186187188189190191192193194195196197198199200201202203204205206207208209210211212213214215216217218219220221222223224225226227228229230231232233234235236237238239240241242243244245246247248249250251252253254255256257258259260261262263264265266267268269270271272273274275276277278279280281282283284285286287288289290291292293294295296297298299300301302303304305306307308309310311312313314315316317
  1. [role="xpack"]
  2. [testenv="platinum"]
  3. [[xpack-ccr]]
  4. == {ccr-cap}
  5. With {ccr}, you can replicate indices across clusters to:
  6. * Continue handling search requests in the event of a datacenter outage
  7. * Prevent search volume from impacting indexing throughput
  8. * Reduce search latency by processing search requests in geo-proximity to the
  9. user
  10. {ccr-cap} uses an active-passive model. You index to a _leader_ index, and the
  11. data is replicated to one or more read-only _follower_ indices. Before you can add a follower index to a cluster, you must configure the _remote cluster_ that contains the leader index.
  12. When the leader index receives writes, the follower indices pull changes from
  13. the leader index on the remote cluster. You can manually create follower
  14. indices, or configure auto-follow patterns to automatically create follower
  15. indices for new time series indices.
  16. You configure {ccr} clusters in a uni-directional or bi-directional setup:
  17. * In a uni-directional configuration, one cluster contains only
  18. leader indices, and the other cluster contains only follower indices.
  19. * In a bi-directional configuration, each cluster contains both leader and
  20. follower indices.
  21. In a uni-directional configuration, the cluster containing follower indices
  22. must be running **the same or newer** version of {es} as the remote cluster.
  23. If newer, the versions must also be compatible as outlined in the following matrix.
  24. [%collapsible]
  25. [[ccr-version-compatibility]]
  26. .Version compatibility matrix
  27. ====
  28. include::../modules/remote-clusters.asciidoc[tag=remote-cluster-compatibility-matrix]
  29. ====
  30. [discrete]
  31. [[ccr-multi-cluster-architectures]]
  32. === Multi-cluster architectures
  33. Use {ccr} to construct several multi-cluster architectures within the Elastic
  34. Stack:
  35. * <<ccr-disaster-recovery,Disaster recovery>> in case a primary cluster fails,
  36. with a secondary cluster serving as a hot backup
  37. * <<ccr-data-locality,Data locality>> to maintain multiple copies of the
  38. dataset close to the application servers (and users), and reduce costly latency
  39. * <<ccr-centralized-reporting,Centralized reporting>> for minimizing network
  40. traffic and latency in querying multiple geo-distributed {es} clusters, or for
  41. preventing search load from interfering with indexing by offloading search to a
  42. secondary cluster
  43. Watch the
  44. https://www.elastic.co/webinars/replicate-elasticsearch-data-with-cross-cluster-replication-ccr[{ccr} webinar] to learn more about the following use cases.
  45. Then, <<ccr-getting-started,set up {ccr}>> on your local machine and work
  46. through the demo from the webinar.
  47. [discrete]
  48. [[ccr-disaster-recovery]]
  49. ==== Disaster recovery and high availability
  50. Disaster recovery provides your mission-critical applications with the
  51. tolerance to withstand datacenter or region outages. This use case is the
  52. most common deployment of {ccr}. You can configure clusters in different
  53. architectures to support disaster recovery and high availability:
  54. * <<ccr-single-datacenter-recovery>>
  55. * <<ccr-multiple-datacenter-recovery>>
  56. * <<ccr-chained-replication>>
  57. * <<ccr-bi-directional-replication>>
  58. [discrete]
  59. [[ccr-single-datacenter-recovery]]
  60. ===== Single disaster recovery datacenter
  61. In this configuration, data is replicated from the production datacenter to the
  62. disaster recovery datacenter. Because the follower indices replicate the leader
  63. index, your application can use the disaster recovery datacenter if the
  64. production datacenter is unavailable.
  65. image::images/ccr-arch-disaster-recovery.png[Production datacenter that replicates data to a disaster recovery datacenter]
  66. [discrete]
  67. [[ccr-multiple-datacenter-recovery]]
  68. ===== Multiple disaster recovery datacenters
  69. You can replicate data from one datacenter to multiple datacenters. This
  70. configuration provides both disaster recovery and high availability, ensuring
  71. that data is replicated in two datacenters if the primary datacenter is down
  72. or unavailable.
  73. In the following diagram, data from Datacenter A is replicated to
  74. Datacenter B and Datacenter C, which both have a read-only copy of the leader
  75. index from Datacenter A.
  76. image::images/ccr-arch-multiple-dcs.png[Production datacenter that replicates data to two other datacenters]
  77. [discrete]
  78. [[ccr-chained-replication]]
  79. ===== Chained replication
  80. You can replicate data across multiple datacenters to form a replication
  81. chain. In the following diagram, Datacenter A contains the leader index.
  82. Datacenter B replicates data from Datacenter A, and Datacenter C replicates
  83. from the follower indices in Datacenter B. The connection between these
  84. datacenters forms a chained replication pattern.
  85. image::images/ccr-arch-chain-dcs.png[Three datacenters connected to form a replication chain]
  86. [discrete]
  87. [[ccr-bi-directional-replication]]
  88. ===== Bi-directional replication
  89. In a https://www.elastic.co/blog/bi-directional-replication-with-elasticsearch-cross-cluster-replication-ccr[bi-directional replication] setup, all clusters have access to view
  90. all data, and all clusters have an index to write to without manually
  91. implementing failover. Applications can write to the local index within each
  92. datacenter, and read across multiple indices for a global view of all
  93. information.
  94. This configuration requires no manual intervention when a cluster or datacenter
  95. is unavailable. In the following diagram, if Datacenter A is unavailable, you can continue using Datacenter B without manual failover. When Datacenter A
  96. comes online, replication resumes between the clusters.
  97. image::images/ccr-arch-bi-directional.png[Bi-directional configuration where each cluster contains both a leader index and follower indices]
  98. This configuration is particularly useful for index-only workloads, where no updates
  99. to document values occur. In this configuration, documents indexed by {es} are
  100. immutable. Clients are located in each datacenter alongside the {es}
  101. cluster, and do not communicate with clusters in different datacenters.
  102. [discrete]
  103. [[ccr-data-locality]]
  104. ==== Data locality
  105. Bringing data closer to your users or application server can reduce latency
  106. and response time. This methodology also applies when replicating data in {es}.
  107. For example, you can replicate a product catalog or reference dataset to 20 or
  108. more datacenters around the world to minimize the distance between the data and
  109. the application server.
  110. In the following diagram, data is replicated from one datacenter to three
  111. additional datacenters, each in their own region. The central datacenter
  112. contains the leader index, and the additional datacenters contain follower
  113. indices that replicate data in that particular region. This configuration
  114. puts data closer to the application accessing it.
  115. image::images/ccr-arch-data-locality.png[A centralized datacenter replicated across three other datacenters, each in their own region]
  116. [discrete]
  117. [[ccr-centralized-reporting]]
  118. ==== Centralized reporting
  119. Using a centralized reporting cluster is useful when querying across a large
  120. network is inefficient. In this configuration, you replicate data from many
  121. smaller clusters to the centralized reporting cluster.
  122. For example, a large global bank might have 100 {es} clusters around the world
  123. that are distributed across different regions for each bank branch. Using
  124. {ccr}, the bank can replicate events from all 100 banks to a central cluster to
  125. analyze and aggregate events locally for reporting. Rather than maintaining a
  126. mirrored cluster, the bank can use {ccr} to replicate specific indices.
  127. In the following diagram, data from three datacenters in different regions is
  128. replicated to a centralized reporting cluster. This configuration enables you
  129. to copy data from regional hubs to a central cluster, where you can run all
  130. reports locally.
  131. image::images/ccr-arch-central-reporting.png[Three clusters in different regions sending data to a centralized reporting cluster for analysis]
  132. [discrete]
  133. [[ccr-replication-mechanics]]
  134. === Replication mechanics
  135. Although you <<ccr-getting-started,set up {ccr}>> at the index level, {es}
  136. achieves replication at the shard level. When a follower index is created,
  137. each shard in that index pulls changes from its corresponding shard in the
  138. leader index, which means that a follower index has the same number of
  139. shards as its leader index. All operations on the leader are replicated by the
  140. follower, such as operations to create, update, or delete a document.
  141. These requests can be served from any copy of the leader shard (primary or
  142. replica).
  143. When a follower shard sends a read request, the leader shard responds with
  144. any new operations, limited by the read parameters that you establish when
  145. configuring the follower index. If no new operations are available, the
  146. leader shard waits up to the configured timeout for new operations. If the
  147. timeout elapses, the leader shard responds to the follower shard that there
  148. are no new operations. The follower shard updates shard statistics and
  149. immediately sends another read request to the leader shard. This
  150. communication model ensures that network connections between the remote
  151. cluster and the local cluster are continually in use, avoiding forceful
  152. termination by an external source such as a firewall.
  153. If a read request fails, the cause of the failure is inspected. If the
  154. cause of the failure is deemed to be recoverable (such as a network
  155. failure), the follower shard enters into a retry loop. Otherwise, the
  156. follower shard pauses
  157. <<ccr-pause-replication,until you resume it>>.
  158. [discrete]
  159. [[ccr-update-leader-index]]
  160. ==== Processing updates
  161. You can't manually modify a follower index's mappings or aliases. To make
  162. changes, you must update the leader index. Because they are read-only, follower
  163. indices reject writes in all configurations.
  164. For example, you index a document named `doc_1` in Datacenter A, which
  165. replicates to Datacenter B. If a client connects to Datacenter B and attempts
  166. to update `doc_1`, the request fails. To update `doc_1`, the client must
  167. connect to Datacenter A and update the document in the leader index.
  168. When a follower shard receives operations from the leader shard, it places
  169. those operations in a write buffer. The follower shard submits bulk write
  170. requests using operations from the write buffer. If the write buffer exceeds
  171. its configured limits, no additional read requests are sent. This configuration
  172. provides a back-pressure against read requests, allowing the follower shard
  173. to resume sending read requests when the write buffer is no longer full.
  174. To manage how operations are replicated from the leader index, you can
  175. configure settings when
  176. <<ccr-getting-started-follower-index,creating the follower index>>.
  177. The follower index automatically retrieves some updates applied to the leader
  178. index, while other updates are retrieved as needed:
  179. [cols="3"]
  180. |===
  181. h| Update type h| Automatic h| As needed
  182. | Alias | {yes-icon} | {no-icon}
  183. | Mapping | {no-icon} | {yes-icon}
  184. | Settings | {no-icon} | {yes-icon}
  185. |===
  186. For example, changing the number of replicas on the leader index is not
  187. replicated by the follower index, so that setting might not be retrieved.
  188. If you apply a non-dynamic settings change to the leader index that is
  189. needed by the follower index, the follower index closes itself, applies the
  190. settings update, and then re-opens itself. The follower index is unavailable
  191. for reads and cannot replicate writes during this cycle.
  192. [discrete]
  193. [[ccr-remote-recovery]]
  194. === Initializing followers using remote recovery
  195. When you create a follower index, you cannot use it until it is fully
  196. initialized. The _remote recovery_ process builds a new copy of a shard on a
  197. follower node by copying data from the primary shard in the leader cluster.
  198. {es} uses this remote recovery process to bootstrap a follower index using the
  199. data from the leader index. This process provides the follower with a copy of
  200. the current state of the leader index, even if a complete history of changes
  201. is not available on the leader due to Lucene segment merging.
  202. Remote recovery is a network intensive process that transfers all of the Lucene
  203. segment files from the leader cluster to the follower cluster. The follower
  204. requests that a recovery session be initiated on the primary shard in the
  205. leader cluster. The follower then requests file chunks concurrently from the
  206. leader. By default, the process concurrently requests five 1MB file
  207. chunks. This default behavior is designed to support leader and follower
  208. clusters with high network latency between them.
  209. TIP: You can modify dynamic <<ccr-recovery-settings,remote recovery settings>>
  210. to rate-limit the transmitted data and manage the resources consumed by remote
  211. recoveries.
  212. Use the <<cat-recovery,recovery API>> on the cluster containing the follower
  213. index to obtain information about an in-progress remote recovery. Because {es}
  214. implements remote recoveries using the
  215. <<snapshot-restore,snapshot and restore>> infrastructure, running remote
  216. recoveries are labelled as type `snapshot` in the recovery API.
  217. [discrete]
  218. [[ccr-leader-requirements]]
  219. === Replicating a leader requires soft deletes
  220. {ccr-cap} works by replaying the history of individual write
  221. operations that were performed on the shards of the leader index. {es} needs to
  222. retain the
  223. <<index-modules-history-retention,history of these operations>> on the leader
  224. shards so that they can be pulled by the follower shard tasks. The underlying
  225. mechanism used to retain these operations is _soft deletes_.
  226. A soft delete occurs whenever an existing document is deleted or updated. By
  227. retaining these soft deletes up to configurable limits, the history of
  228. operations can be retained on the leader shards and made available to the
  229. follower shard tasks as it replays the history of operations.
  230. The <<ccr-index-soft-deletes-retention-period,`index.soft_deletes.retention_lease.period`>>
  231. setting defines the maximum time to retain a shard history retention lease
  232. before it is considered expired. This setting determines how long the cluster
  233. containing your follower index can be offline, which is 12 hours by default. If
  234. a shard copy recovers after its retention lease expires, but the missing
  235. operations are still available on the leader index, then {es} will establish a
  236. new lease and copy the missing operations. However {es} does not guarantee to
  237. retain unleased operations, so it is also possible that some of the missing
  238. operations have been discarded by the leader and are now completely
  239. unavailable. If this happens then the follower cannot recover automatically so
  240. you must <<ccr-recreate-follower-index,recreate it>>.
  241. Soft deletes must be enabled for indices that you want to use as leader
  242. indices. Soft deletes are enabled by default on new indices created on
  243. or after {es} 7.0.0.
  244. // tag::ccr-existing-indices-tag[]
  245. IMPORTANT: {ccr-cap} cannot be used on existing indices created using {es}
  246. 7.0.0 or earlier, where soft deletes are disabled. You must
  247. <<docs-reindex,reindex>> your data into a new index with soft deletes
  248. enabled.
  249. // end::ccr-existing-indices-tag[]
  250. [discrete]
  251. [[ccr-learn-more]]
  252. === Use {ccr}
  253. This following sections provide more information about how to configure
  254. and use {ccr}:
  255. * <<ccr-getting-started>>
  256. * <<ccr-managing>>
  257. * <<ccr-auto-follow>>
  258. * <<ccr-upgrading>>
  259. include::getting-started.asciidoc[]
  260. include::managing.asciidoc[]
  261. include::auto-follow.asciidoc[]
  262. include::upgrading.asciidoc[]