多应用+插件架构,代码干净,二开方便,首家独创一键云编译技术,文档视频完善,免费商用码云13.8K 广告
=== Index-Time Search-as-You-Type The first step to setting up index-time search-as-you-type is to((("search-as-you-type", "index time")))((("partial matching", "index time search-as-you-type"))) define our analysis chain, which we discussed in <<configuring-analyzers>>, but we will go over the steps again here. ==== Preparing the Index The first step is to configure a ((("partial matching", "index time search-as-you-type", "preparing the index")))custom `edge_ngram` token filter,((("edge_ngram token filter"))) which we will call the `autocomplete_filter`: [source,js] -------------------------------------------------- { "filter": { "autocomplete_filter": { "type": "edge_ngram", "min_gram": 1, "max_gram": 20 } } } -------------------------------------------------- This configuration says that, for any term that this token filter receives, it should produce an n-gram anchored to the start of the word of minimum length 1 and maximum length 20. Then we need to use this token filter in a custom analyzer,((("analyzers", "autocomplete custom analyzer"))) which we will call the `autocomplete` analyzer: [source,js] -------------------------------------------------- { "analyzer": { "autocomplete": { "type": "custom", "tokenizer": "standard", "filter": [ "lowercase", "autocomplete_filter" <1> ] } } } -------------------------------------------------- <1> Our custom edge-ngram token filter This analyzer will tokenize a string into individual terms by using the `standard` tokenizer, lowercase each term, and then produce edge n-grams of each term, thanks to our `autocomplete_filter`. The full request to create the index and instantiate the token filter and analyzer looks like this: [source,js] -------------------------------------------------- PUT /my_index { "settings": { "number_of_shards": 1, <1> "analysis": { "filter": { "autocomplete_filter": { <2> "type": "edge_ngram", "min_gram": 1, "max_gram": 20 } }, "analyzer": { "autocomplete": { "type": "custom", "tokenizer": "standard", "filter": [ "lowercase", "autocomplete_filter" <3> ] } } } } } -------------------------------------------------- // SENSE: 130_Partial_Matching/35_Search_as_you_type.json <1> See <<relevance-is-broken>>. <2> First we define our custom token filter. <3> Then we use it in an analyzer. You can test this new analyzer to make sure it is behaving correctly by using the `analyze` API: [source,js] -------------------------------------------------- GET /my_index/_analyze?analyzer=autocomplete quick brown -------------------------------------------------- // SENSE: 130_Partial_Matching/35_Search_as_you_type.json The results show us that the analyzer is working correctly. It returns these terms: * `q` * `qu` * `qui` * `quic` * `quick` * `b` * `br` * `bro` * `brow` * `brown` To use the analyzer, we need to apply it to a field, which we can do with((("update-mapping API, applying custom autocomplete analyzer to a field"))) the `update-mapping` API: [source,js] -------------------------------------------------- PUT /my_index/_mapping/my_type { "my_type": { "properties": { "name": { "type": "string", "analyzer": "autocomplete" } } } } -------------------------------------------------- // SENSE: 130_Partial_Matching/35_Search_as_you_type.json Now, we can index some test documents: [source,js] -------------------------------------------------- POST /my_index/my_type/_bulk { "index": { "_id": 1 }} { "name": "Brown foxes" } { "index": { "_id": 2 }} { "name": "Yellow furballs" } -------------------------------------------------- // SENSE: 130_Partial_Matching/35_Search_as_you_type.json ==== Querying the Field If you test out a query for ``brown fo'' by using ((("partial matching", "index time search-as-you-type", "querying the field")))a simple `match` query [source,js] -------------------------------------------------- GET /my_index/my_type/_search { "query": { "match": { "name": "brown fo" } } } -------------------------------------------------- // SENSE: 130_Partial_Matching/35_Search_as_you_type.json you will see that _both_ documents match, even though the `Yellow furballs` doc contains neither `brown` nor `fo`: [source,js] -------------------------------------------------- { "hits": [ { "_id": "1", "_score": 1.5753809, "_source": { "name": "Brown foxes" } }, { "_id": "2", "_score": 0.012520773, "_source": { "name": "Yellow furballs" } } ] } -------------------------------------------------- As always, the `validate-query` API shines some light: [source,js] -------------------------------------------------- GET /my_index/my_type/_validate/query?explain { "query": { "match": { "name": "brown fo" } } } -------------------------------------------------- // SENSE: 130_Partial_Matching/35_Search_as_you_type.json The `explanation` shows us that the query is looking for edge n-grams of every word in the query string: name:b name:br name:bro name:brow name:brown name:f name:fo The `name:f` condition is satisfied by the second document because `furballs` has been indexed as `f`, `fu`, `fur`, and so forth. In retrospect, this is not surprising. The same `autocomplete` analyzer is being applied both at index time and at search time, which in most situations is the right thing to do. This is one of the few occasions when it makes sense to break this rule. We want to ensure that our inverted index contains edge n-grams of every word, but we want to match only the full words that the user has entered (`brown` and `fo`). ((("analyzers", "changing search analyzer from index analyzer"))) We can do this by using the `autocomplete` analyzer at index time and the `standard` analyzer at search time. One way to change the search analyzer is just to specify it in the query: [source,js] -------------------------------------------------- GET /my_index/my_type/_search { "query": { "match": { "name": { "query": "brown fo", "analyzer": "standard" <1> } } } } -------------------------------------------------- // SENSE: 130_Partial_Matching/35_Search_as_you_type.json <1> This overrides the `analyzer` setting on the `name` field. Alternatively, we can specify ((("search_analyzer parameter")))((("index_analyzer parameter")))the `index_analyzer` and `search_analyzer` in the mapping for the `name` field itself. Because we want to change only the `search_analyzer`, we can update the existing mapping without having to reindex our data: [source,js] -------------------------------------------------- PUT /my_index/my_type/_mapping { "my_type": { "properties": { "name": { "type": "string", "index_analyzer": "autocomplete", <1> "search_analyzer": "standard" <2> } } } } -------------------------------------------------- // SENSE: 130_Partial_Matching/35_Search_as_you_type.json <1> Use the `autocomplete` analyzer at index time to produce edge n-grams of every term. <2> Use the `standard` analyzer at search time to search only on the terms that the user has entered. If we were to repeat the `validate-query` request, it would now give us this explanation: name:brown name:fo Repeating our query correctly returns just the `Brown foxes` document. Because most of the work has been done at index time, all this query needs to do is to look up the two terms `brown` and `fo`, which is much more efficient than the `match_phrase_prefix` approach of having to find all terms beginning with `fo`. .Completion Suggester ************************************************* Using edge n-grams for search-as-you-type is easy to set up, flexible, and fast. However, sometimes it is not fast enough. Latency matters, especially when you are trying to provide instant feedback. Sometimes the fastest way of searching is not to search at all. The http://bit.ly/1IChV5j[completion suggester] in Elasticsearch((("completion suggester"))) takes a completely different approach. You feed it a list of all possible completions, and it builds them into a _finite state transducer_, an((("Finite State Transducer"))) optimized data structure that resembles a big graph. To search for suggestions, Elasticsearch starts at the beginning of the graph and moves character by character along the matching path. Once it has run out of user input, it looks at all possible endings of the current path to produce a list of suggestions. This data structure lives in memory and makes prefix lookups extremely fast, much faster than any term-based query could be. It is an excellent match for autocompletion of names and brands, whose words are usually organized in a common order: ``Johnny Rotten'' rather than ``Rotten Johnny.'' When word order is less predictable, edge n-grams can be a better solution than the completion suggester. This particular cat may be skinned in myriad ways. ************************************************* ==== Edge n-grams and Postcodes The edge n-gram approach can((("postcodes (UK), partial matching with", "using edge n-grams")))((("edge n-grams", "and postcodes"))) also be used for structured data, such as the postcodes example from <<prefix-query,earlier in this chapter>>. Of course, the `postcode` field would need to be `analyzed` instead of `not_analyzed`, but you could use the `keyword` tokenizer((("keyword tokenizer", "using for values treated as not_analyzed")))((("not_analyzed fields", "using keyword tokenizer with"))) to treat the postcodes as if they were `not_analyzed`. [TIP] ================================================== The `keyword` tokenizer is the no-operation tokenizer, the tokenizer that does nothing. Whatever string it receives as input, it emits exactly the same string as a single token. It can therefore be used for values that we would normally treat as `not_analyzed` but that require some other analysis transformation such as lowercasing. ================================================== This example uses the `keyword` tokenizer to convert the postcode string into a token stream, so that we can use the edge n-gram token filter: [source,js] -------------------------------------------------- { "analysis": { "filter": { "postcode_filter": { "type": "edge_ngram", "min_gram": 1, "max_gram": 8 } }, "analyzer": { "postcode_index": { <1> "tokenizer": "keyword", "filter": [ "postcode_filter" ] }, "postcode_search": { <2> "tokenizer": "keyword" } } } } -------------------------------------------------- // SENSE: 130_Partial_Matching/35_Postcodes.json <1> The `postcode_index` analyzer would use the `postcode_filter` to turn postcodes into edge n-grams. <2> The `postcode_search` analyzer would treat search terms as if they were `not_indexed`.