=== Fielddata Filtering
Imagine that you are running a website that allows users to listen to their
favorite songs.((("fielddata", "filtering")))((("aggregations", "fielddata", "filtering"))) To make it easier for them to manage their music library,
users can tag songs with whatever tags make sense to them. You will end up
with a lot of tracks tagged with `rock`, `hiphop`, and `electronica`, but
also with some tracks tagged with `my_16th_birthday_favorite_anthem`.
Now imagine that you want to show users the most popular three tags for each
song. It is highly likely that tags like `rock` will show up in the top
three, but `my_16th_birthday_favorite_anthem` is very unlikely to make the
grade. However, in order to calculate the most popular tags, you have been
forced to load all of these one-off terms into memory.
Thanks to fielddata filtering, we can take control of this situation. We
_know_ that we're interested in only the most popular terms, so we can simply
avoid loading any terms that fall into the less interesting long tail:
[source,js]
----
PUT /music/_mapping/song
{
"properties": {
"tag": {
"type": "string",
"fielddata": { <1>
"filter": {
"frequency": { <2>
"min": 0.01, <3>
"min_segment_size": 500 <4>
}
}
}
}
}
}
----
<1> The `fielddata` key allows us to configure how fielddata is handled for this field.
<2> The `frequency` filter allows us to filter fielddata loading based on term frequencies.((("term frequency", "fielddata filtering based on")))
<3> Load only terms that occur in at least 1% of documents in this segment.
<4> Ignore any segments that have fewer than 500 documents.
With this mapping in place, only terms that appear in at least 1% of the
documents _in that segment_ will be loaded into memory. You can also specify a
`max` term frequency, which could be used to exclude terms that are _too_
common, such as <<stopwords,stopwords>>.
Term frequencies, in this case, are calculated per segment. This is a
limitation of the implementation: fielddata is loaded per segment, and at
that point the only term frequencies that are visible are the frequencies for
that segment. However, this limitation has interesting properties: it
allows newly popular terms to rise to the top quickly.
Let's say that a new genre of song becomes popular one day. You would like to
include the tag for this new genre in the most popular list, but if you were
relying on term frequencies calculated across the whole index, you would have
to wait for the new tag to become as popular as `rock` and `electronica`.
Because of the way frequency filtering is implemented, the newly added tag
will quickly show up as a high-frequency tag within new segments, so will
quickly float to the top.
The `min_segment_size` parameter tells Elasticsearch to ignore segments below
a certain size.((("min_segment_size parameter"))) If a segment holds only a few documents, the term frequencies
are too coarse to have any meaning. Small segments will soon be merged into
bigger segments, which will then be big enough to take into account.
[TIP]
====
Filtering terms by frequency is not the only option. You can also decide to
load only those terms that match a regular expression. For instance, you
could use a `regex` filter ((("regex filtering")))on tweets to load only hashtags into memory --
terms the start with a `#`. This assumes that you are using an analyzer that
preserves punctuation, like the `whitespace` analyzer.
====
Fielddata filtering can have a _massive_ impact on memory usage. The
trade-off is fairly obvious: you are essentially ignoring data. But for many
applications, the trade-off is reasonable since the data is not being used
anyway. The memory savings is often more important than including a large and
relatively useless long tail of terms.
- Introduction
- 入门
- 是什么
- 安装
- API
- 文档
- 索引
- 搜索
- 聚合
- 小结
- 分布式
- 结语
- 分布式集群
- 空集群
- 集群健康
- 添加索引
- 故障转移
- 横向扩展
- 更多扩展
- 应对故障
- 数据
- 文档
- 索引
- 获取
- 存在
- 更新
- 创建
- 删除
- 版本控制
- 局部更新
- Mget
- 批量
- 结语
- 分布式增删改查
- 路由
- 分片交互
- 新建、索引和删除
- 检索
- 局部更新
- 批量请求
- 批量格式
- 搜索
- 空搜索
- 多索引和多类型
- 分页
- 查询字符串
- 映射和分析
- 数据类型差异
- 确切值对决全文
- 倒排索引
- 分析
- 映射
- 复合类型
- 结构化查询
- 请求体查询
- 结构化查询
- 查询与过滤
- 重要的查询子句
- 过滤查询
- 验证查询
- 结语
- 排序
- 排序
- 字符串排序
- 相关性
- 字段数据
- 分布式搜索
- 查询阶段
- 取回阶段
- 搜索选项
- 扫描和滚屏
- 索引管理
- 创建删除
- 设置
- 配置分析器
- 自定义分析器
- 映射
- 根对象
- 元数据中的source字段
- 元数据中的all字段
- 元数据中的ID字段
- 动态映射
- 自定义动态映射
- 默认映射
- 重建索引
- 别名
- 深入分片
- 使文本可以被搜索
- 动态索引
- 近实时搜索
- 持久化变更
- 合并段
- 结构化搜索
- 查询准确值
- 组合过滤
- 查询多个准确值
- 包含,而不是相等
- 范围
- 处理 Null 值
- 缓存
- 过滤顺序
- 全文搜索
- 匹配查询
- 多词查询
- 组合查询
- 布尔匹配
- 增加子句
- 控制分析
- 关联失效
- 多字段搜索
- 多重查询字符串
- 单一查询字符串
- 最佳字段
- 最佳字段查询调优
- 多重匹配查询
- 最多字段查询
- 跨字段对象查询
- 以字段为中心查询
- 全字段查询
- 跨字段查询
- 精确查询
- 模糊匹配
- Phrase matching
- Slop
- Multi value fields
- Scoring
- Relevance
- Performance
- Shingles
- Partial_Matching
- Postcodes
- Prefix query
- Wildcard Regexp
- Match phrase prefix
- Index time
- Ngram intro
- Search as you type
- Compound words
- Relevance
- Scoring theory
- Practical scoring
- Query time boosting
- Query scoring
- Not quite not
- Ignoring TFIDF
- Function score query
- Popularity
- Boosting filtered subsets
- Random scoring
- Decay functions
- Pluggable similarities
- Conclusion
- Language intro
- Intro
- Using
- Configuring
- Language pitfalls
- One language per doc
- One language per field
- Mixed language fields
- Conclusion
- Identifying words
- Intro
- Standard analyzer
- Standard tokenizer
- ICU plugin
- ICU tokenizer
- Tidying text
- Token normalization
- Intro
- Lowercasing
- Removing diacritics
- Unicode world
- Case folding
- Character folding
- Sorting and collations
- Stemming
- Intro
- Algorithmic stemmers
- Dictionary stemmers
- Hunspell stemmer
- Choosing a stemmer
- Controlling stemming
- Stemming in situ
- Stopwords
- Intro
- Using stopwords
- Stopwords and performance
- Divide and conquer
- Phrase queries
- Common grams
- Relevance
- Synonyms
- Intro
- Using synonyms
- Synonym formats
- Expand contract
- Analysis chain
- Multi word synonyms
- Symbol synonyms
- Fuzzy matching
- Intro
- Fuzziness
- Fuzzy query
- Fuzzy match query
- Scoring fuzziness
- Phonetic matching
- Aggregations
- overview
- circuit breaker fd settings
- filtering
- facets
- docvalues
- eager
- breadth vs depth
- Conclusion
- concepts buckets
- basic example
- add metric
- nested bucket
- extra metrics
- bucket metric list
- histogram
- date histogram
- scope
- filtering
- sorting ordering
- approx intro
- cardinality
- percentiles
- sigterms intro
- sigterms
- fielddata
- analyzed vs not
- 地理坐标点
- 地理坐标点
- 通过地理坐标点过滤
- 地理坐标盒模型过滤器
- 地理距离过滤器
- 缓存地理位置过滤器
- 减少内存占用
- 按距离排序
- Geohashe
- Geohashe
- Geohashe映射
- Geohash单元过滤器
- 地理位置聚合
- 地理位置聚合
- 按距离聚合
- Geohash单元聚合器
- 范围(边界)聚合器
- 地理形状
- 地理形状
- 映射地理形状
- 索引地理形状
- 查询地理形状
- 在查询中使用已索引的形状
- 地理形状的过滤与缓存
- 关系
- 关系
- 应用级别的Join操作
- 扁平化你的数据
- Top hits
- Concurrency
- Concurrency solutions
- 嵌套
- 嵌套对象
- 嵌套映射
- 嵌套查询
- 嵌套排序
- 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