[[doc-values]]
=== Doc Values
In-memory fielddata is limited by the size of your heap.((("aggregations", "doc values"))) While this is a
problem that can be solved by scaling horizontally--you can always add more
nodes--you will find that heavy use of aggregations and sorting can exhaust
your heap space while other resources on the node are underutilized.
While fielddata defaults to loading values into memory on the fly, this is not
the only option. It can also be written to disk at index time in a way that
provides all the functionality of in-memory fielddata, but without the
heap memory usage. This alternative format is ((("fielddata", "doc values")))((("doc values")))called _doc values_.
Doc values were added to Elasticsearch in version 1.0.0 but, until recently,
they were much slower than in-memory fielddata. By benchmarking and profiling
performance, various bottlenecks have been identified--in both Elasticsearch
and Lucene--and removed.
Doc values are now only about 10–25% slower than in-memory fielddata, and
come with two major advantages:
* They live on disk instead of in heap memory. This allows you to work with
quantities of fielddata that would normally be too large to fit into
memory. In fact, your heap space (`$ES_HEAP_SIZE`) can now be set to a
smaller size, which improves the speed of garbage collection and,
consequently, node stability.
* Doc values are built at index time, not at search time. While in-memory
fielddata has to be built on the fly at search time by uninverting the
inverted index, doc values are prebuilt and much faster to initialize.
The trade-off is a larger index size and slightly slower fielddata access. Doc
values are remarkably efficient, so for many queries you might not even notice
the slightly slower speed. Combine that with faster garbage collections and
improved initialization times and you may notice a net gain.
The more filesystem cache space that you have available, the better doc values
will perform. If the files holding the doc values are resident in the filesystem cache, then accessing the files is almost equivalent to reading from
RAM. And the filesystem cache is managed by the kernel instead of the JVM.
==== Enabling Doc Values
Doc values can be enabled for numeric, date, Boolean, binary, and geo-point
fields, and for `not_analyzed` string fields.((("doc values", "enabling"))) They do not currently work with
`analyzed` string fields. Doc values are enabled per field in the field
mapping, which means that you can combine in-memory fielddata with doc values:
[source,js]
----
PUT /music/_mapping/song
{
"properties" : {
"tag": {
"type": "string",
"index" : "not_analyzed",
"doc_values": true <1>
}
}
}
----
<1> Setting `doc_values` to `true` at field creation time is all
that is required to use disk-based fielddata instead of in-memory
fielddata.
That's it! Queries, aggregations, sorting, and scripts will function as
normal; they'll just be using doc values now. There is no other
configuration necessary.
[TIP]
==================================================
Use doc values freely. The more you use them, the less stress you place on
the heap. It is possible that doc values will become the default format in
the near future.
==================================================
- Introduction
- 入門
- 是什么
- 安裝
- API
- 文檔
- 索引
- 搜索
- 聚合
- 小結
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- Not quite not
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- Conclusion
- Language intro
- Intro
- Using
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- Conclusion
- Identifying words
- Intro
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- Intro
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- Intro
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- Intro
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- Intro
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- eager
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- Conclusion
- concepts buckets
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- nested bucket
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- approx intro
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- sigterms intro
- sigterms
- fielddata
- analyzed vs not
- 地理坐標點
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- 通過地理坐標點過濾
- 地理坐標盒模型過濾器
- 地理距離過濾器
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- Geohashe
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- 在查詢中使用已索引的形狀
- 地理形狀的過濾與緩存
- 關系
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- Top hits
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- 嵌套
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- 嵌套集合
- Parent Child
- Parent child
- Indexing parent child
- Has child
- Has parent
- Children agg
- Grandparents
- Practical considerations
- Scaling
- Shard
- Overallocation
- Kagillion shards
- Capacity planning
- Replica shards
- Multiple indices
- Index per timeframe
- Index templates
- Retiring data
- Index per user
- Shared index
- Faking it
- One big user
- Scale is not infinite
- Cluster Admin
- Marvel
- Health
- Node stats
- Other stats
- Deployment
- hardware
- other
- config
- dont touch
- heap
- file descriptors
- conclusion
- cluster settings
- Post Deployment
- dynamic settings
- logging
- indexing perf
- rolling restart
- backup
- restore
- conclusion