== Approximate Aggregations
Life is easy if all your data fits on a single machine.((("aggregations", "approximate"))) Classic algorithms
taught in CS201 will be sufficient for all your needs. But if all your data fits
on a single machine, there would be no need for distributed software
like Elasticsearch at all. But once you start distributing data, algorithm
selection needs to be made carefully.
Some algorithms are amenable to distributed execution. All of the aggregations
discussed thus far execute in a single pass and give exact results. These types
of algorithms are often referred to as _embarrassingly parallel_,
because they parallelize to multiple machines with little effort. When
performing a `max` metric, for example, the underlying algorithm is very simple:
1. Broadcast the request to all shards.
2. Look at the +price+ field for each document. If `price > current_max`, replace
`current_max` with `price`.
3. Return the maximum price from all shards to the coordinating node.
4. Find the maximum price returned from all shards. This is the true maximum.
The algorithm scales linearly with machines because the algorithm requires no
coordination (the machines don't need to discuss intermediate results), and the
memory footprint is very small (a single integer representing the maximum).
Not all algorithms are as simple as taking the maximum value, unfortunately.
More complex operations require algorithms that make conscious trade-offs in
performance and memory utilization. There is a triangle of factors at play:
big data, exactness, and real-time latency.
You get to choose two from this triangle:
Exact + real time:: Your data fits in the RAM of a single machine. The world
is your oyster; use any algorithm you want. Results will be 100% accurate and
relatively fast.
Big data + exact:: A classic Hadoop installation. Can handle petabytes of data
and give you exact answers--but it may take a week to give you that answer.
Big data + real time:: Approximate algorithms that give you accurate, but not
exact, results.
Elasticsearch currently supports two approximate algorithms (`cardinality` and
`percentiles`). ((("approximate algorithms")))((("cardinality")))((("percentiles"))) These will give you accurate results, but not 100% exact.
In exchange for a little bit of estimation error, these algorithms give you
fast execution and a small memory footprint.
For _most_ domains, highly accurate results that return _in real time_ across
_all your data_ is more important than 100% exactness. At first blush, this may be an alien concept to you. _"We need exact answers!"_
you may yell. But consider the implications of a 0.5% error:
- The true 99th percentile of latency for your website is 132ms.
- An approximation with 0.5% error will be within +/- 0.66ms of 132ms.
- The approximation returns in milliseconds, while the "true" answer may take seconds, or
be impossible.
For simply checking on your website's latency, do you care if the approximate
answer is 132.66ms instead of 132ms? Certainly, not all domains can tolerate
approximations--but the vast majority will have no problem. Accepting
an approximate answer is more often a _cultural_ hurdle rather than a business
or technical imperative.
- Introduction
- 入門
- 是什么
- 安裝
- API
- 文檔
- 索引
- 搜索
- 聚合
- 小結
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- 文檔
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- 獲取
- 存在
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- Mget
- 批量
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- 檢索
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- 確切值對決全文
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- 復合類型
- 結構化查詢
- 請求體查詢
- 結構化查詢
- 查詢與過濾
- 重要的查詢子句
- 過濾查詢
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- 結語
- 排序
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- 字段數據
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- 映射
- 根對象
- 元數據中的source字段
- 元數據中的all字段
- 元數據中的ID字段
- 動態映射
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- 默認映射
- 重建索引
- 別名
- 深入分片
- 使文本可以被搜索
- 動態索引
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- 持久化變更
- 合并段
- 結構化搜索
- 查詢準確值
- 組合過濾
- 查詢多個準確值
- 包含,而不是相等
- 范圍
- 處理 Null 值
- 緩存
- 過濾順序
- 全文搜索
- 匹配查詢
- 多詞查詢
- 組合查詢
- 布爾匹配
- 增加子句
- 控制分析
- 關聯失效
- 多字段搜索
- 多重查詢字符串
- 單一查詢字符串
- 最佳字段
- 最佳字段查詢調優
- 多重匹配查詢
- 最多字段查詢
- 跨字段對象查詢
- 以字段為中心查詢
- 全字段查詢
- 跨字段查詢
- 精確查詢
- 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
- 地理坐標點
- 地理坐標點
- 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
- 緩存地理位置過濾器
- 減少內存占用
- 按距離排序
- Geohashe
- Geohashe
- Geohashe映射
- Geohash單元過濾器
- 地理位置聚合
- 地理位置聚合
- 按距離聚合
- Geohash單元聚合器
- 范圍(邊界)聚合器
- 地理形狀
- 地理形狀
- 映射地理形狀
- 索引地理形狀
- 查詢地理形狀
- 在查詢中使用已索引的形狀
- 地理形狀的過濾與緩存
- 關系
- 關系
- 應用級別的Join操作
- 扁平化你的數據
- Top hits
- Concurrency
- Concurrency solutions
- 嵌套
- 嵌套對象
- 嵌套映射
- 嵌套查詢
- 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