206 lines
8.8 KiB
Plaintext
206 lines
8.8 KiB
Plaintext
[glossary]
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[[glossary]]
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= Glossary of terms
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[glossary]
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[[glossary-analysis]] analysis ::
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Analysis is the process of converting <<glossary-text,full text>> to
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<<glossary-term,terms>>. Depending on which analyzer is used, these phrases:
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`FOO BAR`, `Foo-Bar`, `foo,bar` will probably all result in the
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terms `foo` and `bar`. These terms are what is actually stored in
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the index.
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A full text query (not a <<glossary-term,term>> query) for `FoO:bAR` will
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also be analyzed to the terms `foo`,`bar` and will thus match the
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terms stored in the index.
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It is this process of analysis (both at index time and at search time)
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that allows Elasticsearch to perform full text queries.
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Also see <<glossary-text,text>> and <<glossary-term,term>>.
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[[glossary-cluster]] cluster ::
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A cluster consists of one or more <<glossary-node,nodes>> which share the
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same cluster name. Each cluster has a single master node which is
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chosen automatically by the cluster and which can be replaced if the
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current master node fails.
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[[glossary-document]] document ::
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A document is a JSON document which is stored in Elasticsearch. It is
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like a row in a table in a relational database. Each document is
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stored in an <<glossary-index,index>> and has a <<glossary-type,type>> and an
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<<glossary-id,id>>.
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A document is a JSON object (also known in other languages as a hash /
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hashmap / associative array) which contains zero or more
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<<glossary-field,fields>>, or key-value pairs.
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The original JSON document that is indexed will be stored in the
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<<glossary-source_field,`_source` field>>, which is returned by default when
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getting or searching for a document.
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[[glossary-id]] id ::
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The ID of a <<glossary-document,document>> identifies a document. The
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`index/id` of a document must be unique. If no ID is provided,
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then it will be auto-generated. (also see <<glossary-routing,routing>>)
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[[glossary-field]] field ::
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A <<glossary-document,document>> contains a list of fields, or key-value
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pairs. The value can be a simple (scalar) value (eg a string, integer,
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date), or a nested structure like an array or an object. A field is
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similar to a column in a table in a relational database.
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The <<glossary-mapping,mapping>> for each field has a field _type_ (not to
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be confused with document <<glossary-type,type>>) which indicates the type
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of data that can be stored in that field, eg `integer`, `string`,
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`object`. The mapping also allows you to define (amongst other things)
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how the value for a field should be analyzed.
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[[glossary-filter]] filter ::
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A filter is a non-scoring <<glossary-query,query>>, meaning that it does not score documents.
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It is only concerned about answering the question - "Does this document match?".
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The answer is always a simple, binary yes or no. This kind of query is said to be made
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in a <<query-filter-context,filter context>>,
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hence it is called a filter. Filters are simple checks for set inclusion or exclusion.
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In most cases, the goal of filtering is to reduce the number of documents that have to be examined.
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[[glossary-index]] index ::
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An index is like a _table_ in a relational database. It has a
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<<glossary-mapping,mapping>> which contains a <<glossary-type,type>>,
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which contains the <<glossary-field,fields>> in the index.
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An index is a logical namespace which maps to one or more
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<<glossary-primary-shard,primary shards>> and can have zero or more
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<<glossary-replica-shard,replica shards>>.
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[[glossary-mapping]] mapping ::
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A mapping is like a _schema definition_ in a relational database. Each
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<<glossary-index,index>> has a mapping, which defines a <<glossary-type,type>>,
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plus a number of index-wide settings.
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A mapping can either be defined explicitly, or it will be generated
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automatically when a document is indexed.
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[[glossary-node]] node ::
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A node is a running instance of Elasticsearch which belongs to a
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<<glossary-cluster,cluster>>. Multiple nodes can be started on a single
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server for testing purposes, but usually you should have one node per
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server.
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At startup, a node will use unicast to discover an existing cluster with
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the same cluster name and will try to join that cluster.
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[[glossary-primary-shard]] primary shard ::
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Each document is stored in a single primary <<glossary-shard,shard>>. When
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you index a document, it is indexed first on the primary shard, then
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on all <<glossary-replica-shard,replicas>> of the primary shard.
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By default, an <<glossary-index,index>> has one primary shard. You can specify
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more primary shards to scale the number of <<glossary-document,documents>>
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that your index can handle.
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You cannot change the number of primary shards in an index, once the index is
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index is created. However, an index can be split into a new index using the
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<<indices-split-index, split API>>.
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See also <<glossary-routing,routing>>
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[[glossary-query]] query ::
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A query is the basic component of a search. A search can be defined by one or more queries
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which can be mixed and matched in endless combinations. While <<glossary-filter,filters>> are
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queries that only determine if a document matches, those queries that also calculate how well
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the document matches are known as "scoring queries". Those queries assign it a score, which is
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later used to sort matched documents. Scoring queries take more resources than <<glossary-filter,non scoring queries>>
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and their query results are not cacheable. As a general rule, use query clauses for full-text
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search or for any condition that requires scoring, and use filters for everything else.
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[[glossary-replica-shard]] replica shard ::
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Each <<glossary-primary-shard,primary shard>> can have zero or more
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replicas. A replica is a copy of the primary shard, and has two
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purposes:
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1. increase failover: a replica shard can be promoted to a primary
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shard if the primary fails
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2. increase performance: get and search requests can be handled by
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primary or replica shards.
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By default, each primary shard has one replica, but the number of
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replicas can be changed dynamically on an existing index. A replica
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shard will never be started on the same node as its primary shard.
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[[glossary-routing]] routing ::
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When you index a document, it is stored on a single
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<<glossary-primary-shard,primary shard>>. That shard is chosen by hashing
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the `routing` value. By default, the `routing` value is derived from
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the ID of the document or, if the document has a specified parent
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document, from the ID of the parent document (to ensure that child and
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parent documents are stored on the same shard).
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This value can be overridden by specifying a `routing` value at index
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time, or a <<mapping-routing-field,routing
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field>> in the <<glossary-mapping,mapping>>.
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[[glossary-shard]] shard ::
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A shard is a single Lucene instance. It is a low-level “worker” unit
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which is managed automatically by Elasticsearch. An index is a logical
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namespace which points to <<glossary-primary-shard,primary>> and
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<<glossary-replica-shard,replica>> shards.
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Other than defining the number of primary and replica shards that an
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index should have, you never need to refer to shards directly.
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Instead, your code should deal only with an index.
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Elasticsearch distributes shards amongst all <<glossary-node,nodes>> in the
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<<glossary-cluster,cluster>>, and can move shards automatically from one
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node to another in the case of node failure, or the addition of new
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nodes.
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[[glossary-source_field]] source field ::
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By default, the JSON document that you index will be stored in the
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`_source` field and will be returned by all get and search requests.
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This allows you access to the original object directly from search
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results, rather than requiring a second step to retrieve the object
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from an ID.
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[[glossary-term]] term ::
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A term is an exact value that is indexed in Elasticsearch. The terms
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`foo`, `Foo`, `FOO` are NOT equivalent. Terms (i.e. exact values) can
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be searched for using _term_ queries.
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See also <<glossary-text,text>> and <<glossary-analysis,analysis>>.
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[[glossary-text]] text ::
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Text (or full text) is ordinary unstructured text, such as this
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paragraph. By default, text will be <<glossary-analysis,analyzed>> into
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<<glossary-term,terms>>, which is what is actually stored in the index.
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Text <<glossary-field,fields>> need to be analyzed at index time in order to
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be searchable as full text, and keywords in full text queries must be
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analyzed at search time to produce (and search for) the same terms
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that were generated at index time.
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See also <<glossary-term,term>> and <<glossary-analysis,analysis>>.
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[[glossary-type]] type ::
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A type used to represent the _type_ of document, e.g. an `email`, a `user`, or a `tweet`.
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Types are deprecated and are in the process of being removed. See <<removal-of-types>>.
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