zoukankan      html  css  js  c++  java
  • elasticsearch最全详细使用教程:搜索详解

    一、搜索API

     

    1. 搜索API 端点地址

    从索引tweet里面搜索字段user为kimchy的记录

    GET /twitter/_search?q=user:kimchy

    从索引tweet,user里面搜索字段user为kimchy的记录

    GET /twitter/tweet,user/_search?q=user:kimchy
    GET /kimchy,elasticsearch/_search?q=tag:wow

    从所有索引里面搜索字段tag为wow的记录

    GET /_all/_search?q=tag:wow
    GET /_search?q=tag:wow

    说明:搜索的端点地址可以是多索引多mapping type的。搜索的参数可作为URI请求参数给出,也可用 request body 给出

    2. URI Search

    URI 搜索方式通过URI参数来指定查询相关参数。让我们可以快速做一个查询。

    GET /twitter/_search?q=user:kimchy

    可用的参数请参考: https://www.elastic.co/guide/en/elasticsearch/reference/current/search-uri-request.html

    3. 查询结果说明

    5. 特殊的查询参数用法

     如果我们只想知道有多少文档匹配某个查询,可以这样用参数:

    GET /bank/_search?q=city:b*&size=0

     

     如果我们只想知道有没有文档匹配某个查询,可以这样用参数:

    GET /bank/_search?q=city:b*&size=0&terminate_after=1

     

     比较两个查询的结果可以知道第一个查询返回所有的命中文档数,第二个查询由于只需要知道有没有文档,所以只要有文档就立即返回

     6. Request body Search

     Request body 搜索方式以JSON格式在请求体中定义查询 query。请求方式可以是 GET 、POST 。

    GET /twitter/_search
    {
        "query" : {
            "term" : { "user" : "kimchy" }
        }
    }

    可用的参数:

    timeout:请求超时时长,限定在指定时长内响应(即使没查完);
    from: 分页的起始行,默认0;
    size:分页大小;
    request_cache:是否缓存请求结果,默认true。
    terminate_after:限定每个分片取几个文档。如果设置,则响应将有一个布尔型字段terminated_early来指示查询执行是否实际已经terminate_early。缺省为no terminate_after;
    search_type:查询的执行方式,可选值dfs_query_then_fetch or query_then_fetch ,默认: query_then_fetch ;
    batched_reduce_size:一次在协调节点上应该减少的分片结果的数量。如果请求中的潜在分片数量可能很大,则应将此值用作保护机制以减少每个搜索请求的内存开销。

    6.1 query 元素定义查询

    query 元素用Query DSL 来定义查询。

    GET /_search
    {
        "query" : {
            "term" : { "user" : "kimchy" }
        }
    }

    6.2 指定返回哪些内容

    6.2.1 source filter  对_source字段进行选择

    
    GET /_search
    {
        "_source": false,
        "query" : {
            "term" : { "user" : "kimchy" }
        }
    }
    

    通配符查询

    
    GET /_search
    {
        "_source": [ "obj1.*", "obj2.*" ],
        "query" : {
            "term" : { "user" : "kimchy" }
        }
    }
    
    GET /_search
    {
        "_source": "obj.*",
        "query" : {
            "term" : { "user" : "kimchy" }
        }
    }
    

    包含什么不包含什么

    
    GET /_search
    {
        "_source": {
            "includes": [ "obj1.*", "obj2.*" ],
            "excludes": [ "*.description" ]
        },
        "query" : {
            "term" : { "user" : "kimchy" }
        }
    }
    

    6.2.2 stored_fields 来指定返回哪些stored字段

    
    GET /_search
    {
        "stored_fields" : ["user", "postDate"],
        "query" : {
            "term" : { "user" : "kimchy" }
        }
    }
    

    说明:* 可用来指定返回所有存储字段

    6.2.3 docValue Field 返回存储了docValue的字段值

    
    GET /_search
    {
        "query" : {
            "match_all": {}
        },
        "docvalue_fields" : ["test1", "test2"]
    }
    

    6.2.4 version 来指定返回文档的版本字段

    
    GET /_search
    {
        "version": true,
        "query" : {
            "term" : { "user" : "kimchy" }
        }
    }
    

    6.2.5 explain 返回文档的评分解释

    
    GET /_search
    {
        "explain": true,
        "query" : {
            "term" : { "user" : "kimchy" }
        }
    }
    

    6.2.6 Script Field 用脚本来对命中的每个文档的字段进行运算后返回

    
    GET /bank/_search
    {
      "query": {
        "match_all": {}
      },
      "script_fields": {
        "test1": {
          "script": {
            "lang": "painless",
            "source": "doc['balance'].value * 2"
          }
        },
        "test2": {
          "script": {
            "lang": "painless",
            <!--  doc指文档-->
            "source": "doc['age'].value * params.factor",
            "params": {
              "factor": 2
            }
          }
        } }}
    

    搜索结果:

    {
      "took": 3,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 1000,
        "max_score": 1,
        "hits": [
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "25",
            "_score": 1,
            "fields": {
              "test1": [
              ],
              "test2": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "44",
            "_score": 1,
            "fields": {
              "test1": [
              ],
              "test2": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "99",
            "_score": 1,
            "fields": {
              "test1": [
              ],
              "test2": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "119",
            "_score": 1,
            "fields": {
              "test1": [
              ],
              "test2": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "126",
            "_score": 1,
            "fields": {
              "test1": [
              ],
              "test2": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "145",
            "_score": 1,
            "fields": {
              "test1": [
              ],
              "test2": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "183",
            "_score": 1,
            "fields": {
              "test1": [
              ],
              "test2": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "190",
            "_score": 1,
            "fields": {
              "test1": [
              ],
              "test2": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "208",
            "_score": 1,
            "fields": {
              "test1": [
              ],
              "test2": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "222",
            "_score": 1,
            "fields": {
              "test1": [
              ],
              "test2": [
              ]
            }
          }
        ]
      }
    }
    
    GET /bank/_search
    {
      "query": {
        "match_all": {}
      },
      "script_fields": {
        "ffx": {
          "script": {
            "lang": "painless",
            "source": "doc['age'].value * doc['balance'].value"
          }
        },
        "balance*2": {
          "script": {
            "lang": "painless",
            "source": "params['_source'].balance*2"
          }
        }
      }
    }
    

    说明:

    params  _source 取 _source字段值

    官方推荐使用doc,理由是用doc效率比取_source 高

    搜索结果:

    {
      "took": 26,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 1000,
        "max_score": 1,
        "hits": [
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "25",
            "_score": 1,
            "fields": {
              "balance*2": [
              ],
              "ffx": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "44",
            "_score": 1,
            "fields": {
              "balance*2": [
              ],
              "ffx": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "99",
            "_score": 1,
            "fields": {
              "balance*2": [
              ],
              "ffx": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "119",
            "_score": 1,
            "fields": {
              "balance*2": [
              ],
              "ffx": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "126",
            "_score": 1,
            "fields": {
              "balance*2": [
              ],
              "ffx": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "145",
            "_score": 1,
            "fields": {
              "balance*2": [
              ],
              "ffx": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "183",
            "_score": 1,
            "fields": {
              "balance*2": [
              ],
              "ffx": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "190",
            "_score": 1,
            "fields": {
              "balance*2": [
              ],
              "ffx": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "208",
            "_score": 1,
            "fields": {
              "balance*2": [
              ],
              "ffx": [
              ]
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "222",
            "_score": 1,
            "fields": {
              "balance*2": [
              ],
              "ffx": [
              ]
            }
          }
        ]
      }
    }

    6.2.7 min_score  限制最低评分得分

    
    GET /_search
    {
        "min_score": 0.5,
        "query" : {
            "term" : { "user" : "kimchy" }
        }
    }
    

    6.2.8 post_filter  后置过滤:在查询命中文档、完成聚合后,再对命中的文档进行过滤。

    如:要在一次查询中查询品牌为gucci且颜色为红色的shirts,同时还要得到gucci品牌各颜色的shirts的分面统计。

    创建索引并指定mappping:

    
    PUT /shirts
    {
        "mappings": {
            "_doc": {
                "properties": {
                    "brand": { "type": "keyword"},
                    "color": { "type": "keyword"},
                    "model": { "type": "keyword"}
                }
            }
        }
    }
    

    往索引里面放入文档即类似数据库里面的向表插入一行数据,并立即刷新

    
    PUT /shirts/_doc/1?refresh
    {
        "brand": "gucci",
        "color": "red",
        "model": "slim"
    }
    PUT /shirts/_doc/2?refresh
    {
        "brand": "gucci",
        "color": "green",
        "model": "seec"
    }
    

    执行查询:

    
    GET /shirts/_search
    {
      "query": {
        "bool": {
          "filter": {
            "term": { "brand": "gucci" } 
          }
        }
      },
      "aggs": {
        "colors": {
          "terms": { "field": "color" } 
        }
      },
      "post_filter": { 
        "term": { "color": "red" }
      }
    }
    

    查询结果

    
    {
      "took": 109,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 1,
        "max_score": 0,
        "hits": [
          {
            "_index": "shirts",
            "_type": "_doc",
            "_id": "1",
            "_score": 0,
            "_source": {
              "brand": "gucci",
              "color": "red",
              "model": "slim"
            }
          }
        ]
      },
      "aggregations": {
        "colors": {
          "doc_count_error_upper_bound": 0,
          "sum_other_doc_count": 0,
          "buckets": [
            {
              "key": "green",
              "doc_count": 1
            },
            {
              "key": "red",
              "doc_count": 1
            }
          ]
        }
      }
    }
    

    6.2.9 sort  排序

    可以指定按一个或多个字段排序。也可通过_score指定按评分值排序,_doc 按索引顺序排序。默认是按相关性评分从高到低排序。

    
    GET /bank/_search
    {
      "query": {
        "match_all": {}
      },
      "sort": [
        {
          "age": {
            "order": "desc"
          }    },
        {
          "balance": {
            "order": "asc"
          }    },
        "_score"
      ]
    }
    

    说明:

    order 值:asc、desc。如果不给定,默认是asc,_score默认是desc

    查询结果:

    {
      "took": 181,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 1000,
        "max_score": null,
        "hits": [
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "549",
            "_score": 1,
            "_source": {
              "account_number": 549,
              "balance": 1932,
              "firstname": "Jacqueline",
              "lastname": "Maxwell",
              "age": 40,
              "gender": "M",
              "address": "444 Schenck Place",
              "employer": "Fuelworks",
              "email": "jacquelinemaxwell@fuelworks.com",
              "city": "Oretta",
              "state": "OR"
            },
            "sort": [
              40,
              1932,
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "306",
            "_score": 1,
            "_source": {
              "account_number": 306,
              "balance": 2171,
              "firstname": "Hensley",
              "lastname": "Hardin",
              "age": 40,
              "gender": "M",
              "address": "196 Maujer Street",
              "employer": "Neocent",
              "email": "hensleyhardin@neocent.com",
              "city": "Reinerton",
              "state": "HI"
            },
            "sort": [
              40,
              2171,
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "960",
            "_score": 1,
            "_source": {
              "account_number": 960,
              "balance": 2905,
              "firstname": "Curry",
              "lastname": "Vargas",
              "age": 40,
              "gender": "M",
              "address": "242 Blake Avenue",
              "employer": "Pearlesex",
              "email": "curryvargas@pearlesex.com",
              "city": "Henrietta",
              "state": "NH"
            },
            "sort": [
              40,
              2905,
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "584",
            "_score": 1,
            "_source": {
              "account_number": 584,
              "balance": 5346,
              "firstname": "Pearson",
              "lastname": "Bryant",
              "age": 40,
              "gender": "F",
              "address": "971 Heyward Street",
              "employer": "Anacho",
              "email": "pearsonbryant@anacho.com",
              "city": "Bluffview",
              "state": "MN"
            },
            "sort": [
              40,
              5346,
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "567",
            "_score": 1,
            "_source": {
              "account_number": 567,
              "balance": 6507,
              "firstname": "Diana",
              "lastname": "Dominguez",
              "age": 40,
              "gender": "M",
              "address": "419 Albany Avenue",
              "employer": "Ohmnet",
              "email": "dianadominguez@ohmnet.com",
              "city": "Wildwood",
              "state": "TX"
            },
            "sort": [
              40,
              6507,
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "938",
            "_score": 1,
            "_source": {
              "account_number": 938,
              "balance": 9597,
              "firstname": "Sharron",
              "lastname": "Santos",
              "age": 40,
              "gender": "F",
              "address": "215 Matthews Place",
              "employer": "Zenco",
              "email": "sharronsantos@zenco.com",
              "city": "Wattsville",
              "state": "VT"
            },
            "sort": [
              40,
              9597,
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "810",
            "_score": 1,
            "_source": {
              "account_number": 810,
              "balance": 10563,
              "firstname": "Alyssa",
              "lastname": "Ortega",
              "age": 40,
              "gender": "M",
              "address": "977 Clymer Street",
              "employer": "Eventage",
              "email": "alyssaortega@eventage.com",
              "city": "Convent",
              "state": "SC"
            },
            "sort": [
              40,
              10563,
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "302",
            "_score": 1,
            "_source": {
              "account_number": 302,
              "balance": 11298,
              "firstname": "Isabella",
              "lastname": "Hewitt",
              "age": 40,
              "gender": "M",
              "address": "455 Bedford Avenue",
              "employer": "Cincyr",
              "email": "isabellahewitt@cincyr.com",
              "city": "Blanford",
              "state": "IN"
            },
            "sort": [
              40,
              11298,
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "792",
            "_score": 1,
            "_source": {
              "account_number": 792,
              "balance": 13109,
              "firstname": "Becky",
              "lastname": "Jimenez",
              "age": 40,
              "gender": "F",
              "address": "539 Front Street",
              "employer": "Isologia",
              "email": "beckyjimenez@isologia.com",
              "city": "Summertown",
              "state": "MI"
            },
            "sort": [
              40,
              13109,
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "495",
            "_score": 1,
            "_source": {
              "account_number": 495,
              "balance": 13478,
              "firstname": "Abigail",
              "lastname": "Nichols",
              "age": 40,
              "gender": "F",
              "address": "887 President Street",
              "employer": "Enquility",
              "email": "abigailnichols@enquility.com",
              "city": "Bagtown",
              "state": "NM"
            },
            "sort": [
              40,
              13478,
            ]
          }
        ]
      }
    }

    结果中每个文档会有排序字段值给出

    
     "hits": {
        "total": 1000,
        "max_score": null,
        "hits": [
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "549",
            "_score": 1,
            "_source": {
              "account_number": 549,
              "balance": 1932, "age": 40, "state": "OR"
            },
            "sort": [
              40,
              1932,
              1
            ]    
    }
    

    多值字段排序

    对于值是数组或多值的字段,也可进行排序,通过mode参数指定按多值的:

    
    PUT /my_index/_doc/1?refresh
    {
       "product": "chocolate",
       "price": [20, 4]
    }
    
    POST /_search
    {
       "query" : {
          "term" : { "product" : "chocolate" }
       },
       "sort" : [
          {"price" : {"order" : "asc", "mode" : "avg"}}
       ]
    }
    

     Missing values  缺失该字段的文档

    missing 的值可以是 _last, _first

    
    GET /_search
    {
        "sort" : [
            { "price" : {"missing" : "_last"} }
        ],
        "query" : {
            "term" : { "product" : "chocolate" }
        }
    }
    

     地理空间距离排序

    官方文档:

    https://www.elastic.co/guide/en/elasticsearch/reference/current/search-request-sort.html#geo-sorting

    
    GET /_search
    {
        "sort" : [
            {
                "_geo_distance" : {
                    "pin.location" : [-70, 40],
                    "order" : "asc",
                    "unit" : "km",
                    "mode" : "min",
                    "distance_type" : "arc"
                }
            }
        ],
        "query" : {
            "term" : { "user" : "kimchy" }
        }
    }
    

    参数说明:

    _geo_distance 距离排序关键字
    pin.location是 geo_point 类型的字段
    distance_type:距离计算方式 arc球面 、plane 平面。
    unit: 距离单位 km 、m 默认m

    Script Based Sorting 基于脚本计算的排序

    
    GET /_search
    {
        "query" : {
            "term" : { "user" : "kimchy" }
        },
        "sort" : {
            "_script" : {
                "type" : "number",
                "script" : {
                    "lang": "painless",
                    "source": "doc['field_name'].value * params.factor",
                    "params" : {
                        "factor" : 1.1
                    }
                },
                "order" : "asc"
            }
        }
    }
    
    
    

     6.3.0 折叠用 collapse指定根据某个字段对命中结果进行折叠

    
    GET /bank/_search
    {
        "query": {
            "match_all": {}
        },
        "collapse" : {
            "field" : "age" 
        },
        "sort": ["balance"] 
    }
    

     查询结果:

    {
      "took": 56,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 1000,
        "max_score": null,
        "hits": [
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "820",
            "_score": null,
            "_source": {
              "account_number": 820,
              "balance": 1011,
              "firstname": "Shepard",
              "lastname": "Ramsey",
              "age": 24,
              "gender": "F",
              "address": "806 Village Court",
              "employer": "Mantro",
              "email": "shepardramsey@mantro.com",
              "city": "Tibbie",
              "state": "NV"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "894",
            "_score": null,
            "_source": {
              "account_number": 894,
              "balance": 1031,
              "firstname": "Tyler",
              "lastname": "Fitzgerald",
              "age": 32,
              "gender": "M",
              "address": "787 Meserole Street",
              "employer": "Jetsilk",
              "email": "tylerfitzgerald@jetsilk.com",
              "city": "Woodlands",
              "state": "WV"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "953",
            "_score": null,
            "_source": {
              "account_number": 953,
              "balance": 1110,
              "firstname": "Baxter",
              "lastname": "Black",
              "age": 27,
              "gender": "M",
              "address": "720 Stillwell Avenue",
              "employer": "Uplinx",
              "email": "baxterblack@uplinx.com",
              "city": "Drummond",
              "state": "MN"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "87",
            "_score": null,
            "_source": {
              "account_number": 87,
              "balance": 1133,
              "firstname": "Hewitt",
              "lastname": "Kidd",
              "age": 22,
              "gender": "M",
              "address": "446 Halleck Street",
              "employer": "Isologics",
              "email": "hewittkidd@isologics.com",
              "city": "Coalmont",
              "state": "ME"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "749",
            "_score": null,
            "_source": {
              "account_number": 749,
              "balance": 1249,
              "firstname": "Rush",
              "lastname": "Boyle",
              "age": 36,
              "gender": "M",
              "address": "310 Argyle Road",
              "employer": "Sportan",
              "email": "rushboyle@sportan.com",
              "city": "Brady",
              "state": "WA"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "315",
            "_score": null,
            "_source": {
              "account_number": 315,
              "balance": 1314,
              "firstname": "Clare",
              "lastname": "Morrow",
              "age": 33,
              "gender": "F",
              "address": "728 Madeline Court",
              "employer": "Gaptec",
              "email": "claremorrow@gaptec.com",
              "city": "Mapletown",
              "state": "PA"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "348",
            "_score": null,
            "_source": {
              "account_number": 348,
              "balance": 1360,
              "firstname": "Karina",
              "lastname": "Russell",
              "age": 37,
              "gender": "M",
              "address": "797 Moffat Street",
              "employer": "Limozen",
              "email": "karinarussell@limozen.com",
              "city": "Riegelwood",
              "state": "RI"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "490",
            "_score": null,
            "_source": {
              "account_number": 490,
              "balance": 1447,
              "firstname": "Strong",
              "lastname": "Hendrix",
              "age": 26,
              "gender": "F",
              "address": "134 Beach Place",
              "employer": "Duoflex",
              "email": "stronghendrix@duoflex.com",
              "city": "Allentown",
              "state": "ND"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "174",
            "_score": null,
            "_source": {
              "account_number": 174,
              "balance": 1464,
              "firstname": "Gamble",
              "lastname": "Pierce",
              "age": 23,
              "gender": "F",
              "address": "650 Eagle Street",
              "employer": "Matrixity",
              "email": "gamblepierce@matrixity.com",
              "city": "Abiquiu",
              "state": "OR"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ]
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "111",
            "_score": null,
            "_source": {
              "account_number": 111,
              "balance": 1481,
              "firstname": "Traci",
              "lastname": "Allison",
              "age": 35,
              "gender": "M",
              "address": "922 Bryant Street",
              "employer": "Enjola",
              "email": "traciallison@enjola.com",
              "city": "Robinette",
              "state": "OR"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ]
          }
        ]
      }
    }

     高级折叠

    
    GET /bank/_search
    {
        "query": {
            "match_all": {}
        },
        "collapse" : {
            "field" : "age" ,
            <!--指定inner_hits来解释折叠 -->
            "inner_hits": {
                "name": "details", <!-- 自命名 -->
                "size": 5,   <!-- 指定每组取几个文档 -->
                "sort": [{ "balance": "asc" }] <!-- 组内排序 -->
            },
            "max_concurrent_group_searches": 4 <!-- 指定组查询的并发数 -->
        },
        "sort": ["balance"] 
    }
    

     查询结果:

    {
      "took": 60,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 1000,
        "max_score": null,
        "hits": [
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "820",
            "_score": null,
            "_source": {
              "account_number": 820,
              "balance": 1011,
              "firstname": "Shepard",
              "lastname": "Ramsey",
              "age": 24,
              "gender": "F",
              "address": "806 Village Court",
              "employer": "Mantro",
              "email": "shepardramsey@mantro.com",
              "city": "Tibbie",
              "state": "NV"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ],
            "inner_hits": {
              "details": {
                "hits": {
                  "total": 42,
                  "max_score": null,
                  "hits": [
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "820",
                      "_score": null,
                      "_source": {
                        "account_number": 820,
                        "balance": 1011,
                        "firstname": "Shepard",
                        "lastname": "Ramsey",
                        "age": 24,
                        "gender": "F",
                        "address": "806 Village Court",
                        "employer": "Mantro",
                        "email": "shepardramsey@mantro.com",
                        "city": "Tibbie",
                        "state": "NV"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "924",
                      "_score": null,
                      "_source": {
                        "account_number": 924,
                        "balance": 3811,
                        "firstname": "Hilary",
                        "lastname": "Leonard",
                        "age": 24,
                        "gender": "M",
                        "address": "235 Hegeman Avenue",
                        "employer": "Metroz",
                        "email": "hilaryleonard@metroz.com",
                        "city": "Roosevelt",
                        "state": "ME"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "819",
                      "_score": null,
                      "_source": {
                        "account_number": 819,
                        "balance": 3971,
                        "firstname": "Karyn",
                        "lastname": "Medina",
                        "age": 24,
                        "gender": "F",
                        "address": "417 Utica Avenue",
                        "employer": "Qnekt",
                        "email": "karynmedina@qnekt.com",
                        "city": "Kerby",
                        "state": "WY"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "77",
                      "_score": null,
                      "_source": {
                        "account_number": 77,
                        "balance": 5724,
                        "firstname": "Byrd",
                        "lastname": "Conley",
                        "age": 24,
                        "gender": "F",
                        "address": "698 Belmont Avenue",
                        "employer": "Zidox",
                        "email": "byrdconley@zidox.com",
                        "city": "Rockbridge",
                        "state": "SC"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "493",
                      "_score": null,
                      "_source": {
                        "account_number": 493,
                        "balance": 5871,
                        "firstname": "Campbell",
                        "lastname": "Best",
                        "age": 24,
                        "gender": "M",
                        "address": "297 Friel Place",
                        "employer": "Fanfare",
                        "email": "campbellbest@fanfare.com",
                        "city": "Kidder",
                        "state": "GA"
                      },
                      "sort": [
                      ]
                    }
                  ]
                }
              }
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "894",
            "_score": null,
            "_source": {
              "account_number": 894,
              "balance": 1031,
              "firstname": "Tyler",
              "lastname": "Fitzgerald",
              "age": 32,
              "gender": "M",
              "address": "787 Meserole Street",
              "employer": "Jetsilk",
              "email": "tylerfitzgerald@jetsilk.com",
              "city": "Woodlands",
              "state": "WV"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ],
            "inner_hits": {
              "details": {
                "hits": {
                  "total": 52,
                  "max_score": null,
                  "hits": [
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "894",
                      "_score": null,
                      "_source": {
                        "account_number": 894,
                        "balance": 1031,
                        "firstname": "Tyler",
                        "lastname": "Fitzgerald",
                        "age": 32,
                        "gender": "M",
                        "address": "787 Meserole Street",
                        "employer": "Jetsilk",
                        "email": "tylerfitzgerald@jetsilk.com",
                        "city": "Woodlands",
                        "state": "WV"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "402",
                      "_score": null,
                      "_source": {
                        "account_number": 402,
                        "balance": 1282,
                        "firstname": "Pacheco",
                        "lastname": "Rosales",
                        "age": 32,
                        "gender": "M",
                        "address": "538 Pershing Loop",
                        "employer": "Circum",
                        "email": "pachecorosales@circum.com",
                        "city": "Elbert",
                        "state": "ID"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "735",
                      "_score": null,
                      "_source": {
                        "account_number": 735,
                        "balance": 3984,
                        "firstname": "Loraine",
                        "lastname": "Willis",
                        "age": 32,
                        "gender": "F",
                        "address": "928 Grove Street",
                        "employer": "Gadtron",
                        "email": "lorainewillis@gadtron.com",
                        "city": "Lowgap",
                        "state": "NY"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "745",
                      "_score": null,
                      "_source": {
                        "account_number": 745,
                        "balance": 4572,
                        "firstname": "Jacobs",
                        "lastname": "Sweeney",
                        "age": 32,
                        "gender": "M",
                        "address": "189 Lott Place",
                        "employer": "Comtent",
                        "email": "jacobssweeney@comtent.com",
                        "city": "Advance",
                        "state": "NJ"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "173",
                      "_score": null,
                      "_source": {
                        "account_number": 173,
                        "balance": 5989,
                        "firstname": "Whitley",
                        "lastname": "Blevins",
                        "age": 32,
                        "gender": "M",
                        "address": "127 Brooklyn Avenue",
                        "employer": "Pawnagra",
                        "email": "whitleyblevins@pawnagra.com",
                        "city": "Rodanthe",
                        "state": "ND"
                      },
                      "sort": [
                      ]
                    }
                  ]
                }
              }
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "953",
            "_score": null,
            "_source": {
              "account_number": 953,
              "balance": 1110,
              "firstname": "Baxter",
              "lastname": "Black",
              "age": 27,
              "gender": "M",
              "address": "720 Stillwell Avenue",
              "employer": "Uplinx",
              "email": "baxterblack@uplinx.com",
              "city": "Drummond",
              "state": "MN"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ],
            "inner_hits": {
              "details": {
                "hits": {
                  "total": 39,
                  "max_score": null,
                  "hits": [
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "953",
                      "_score": null,
                      "_source": {
                        "account_number": 953,
                        "balance": 1110,
                        "firstname": "Baxter",
                        "lastname": "Black",
                        "age": 27,
                        "gender": "M",
                        "address": "720 Stillwell Avenue",
                        "employer": "Uplinx",
                        "email": "baxterblack@uplinx.com",
                        "city": "Drummond",
                        "state": "MN"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "123",
                      "_score": null,
                      "_source": {
                        "account_number": 123,
                        "balance": 3079,
                        "firstname": "Cleo",
                        "lastname": "Beach",
                        "age": 27,
                        "gender": "F",
                        "address": "653 Haring Street",
                        "employer": "Proxsoft",
                        "email": "cleobeach@proxsoft.com",
                        "city": "Greensburg",
                        "state": "ME"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "637",
                      "_score": null,
                      "_source": {
                        "account_number": 637,
                        "balance": 3169,
                        "firstname": "Kathy",
                        "lastname": "Carter",
                        "age": 27,
                        "gender": "F",
                        "address": "410 Jamison Lane",
                        "employer": "Limage",
                        "email": "kathycarter@limage.com",
                        "city": "Ernstville",
                        "state": "WA"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "528",
                      "_score": null,
                      "_source": {
                        "account_number": 528,
                        "balance": 4071,
                        "firstname": "Thompson",
                        "lastname": "Hoover",
                        "age": 27,
                        "gender": "F",
                        "address": "580 Garden Street",
                        "employer": "Portalis",
                        "email": "thompsonhoover@portalis.com",
                        "city": "Knowlton",
                        "state": "AL"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "142",
                      "_score": null,
                      "_source": {
                        "account_number": 142,
                        "balance": 4544,
                        "firstname": "Vang",
                        "lastname": "Hughes",
                        "age": 27,
                        "gender": "M",
                        "address": "357 Landis Court",
                        "employer": "Bolax",
                        "email": "vanghughes@bolax.com",
                        "city": "Emerald",
                        "state": "WY"
                      },
                      "sort": [
                      ]
                    }
                  ]
                }
              }
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "87",
            "_score": null,
            "_source": {
              "account_number": 87,
              "balance": 1133,
              "firstname": "Hewitt",
              "lastname": "Kidd",
              "age": 22,
              "gender": "M",
              "address": "446 Halleck Street",
              "employer": "Isologics",
              "email": "hewittkidd@isologics.com",
              "city": "Coalmont",
              "state": "ME"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ],
            "inner_hits": {
              "details": {
                "hits": {
                  "total": 51,
                  "max_score": null,
                  "hits": [
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "87",
                      "_score": null,
                      "_source": {
                        "account_number": 87,
                        "balance": 1133,
                        "firstname": "Hewitt",
                        "lastname": "Kidd",
                        "age": 22,
                        "gender": "M",
                        "address": "446 Halleck Street",
                        "employer": "Isologics",
                        "email": "hewittkidd@isologics.com",
                        "city": "Coalmont",
                        "state": "ME"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "411",
                      "_score": null,
                      "_source": {
                        "account_number": 411,
                        "balance": 1172,
                        "firstname": "Guzman",
                        "lastname": "Whitfield",
                        "age": 22,
                        "gender": "M",
                        "address": "181 Perry Terrace",
                        "employer": "Springbee",
                        "email": "guzmanwhitfield@springbee.com",
                        "city": "Balm",
                        "state": "IN"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "159",
                      "_score": null,
                      "_source": {
                        "account_number": 159,
                        "balance": 1696,
                        "firstname": "Alvarez",
                        "lastname": "Mack",
                        "age": 22,
                        "gender": "F",
                        "address": "897 Manor Court",
                        "employer": "Snorus",
                        "email": "alvarezmack@snorus.com",
                        "city": "Rosedale",
                        "state": "CA"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "220",
                      "_score": null,
                      "_source": {
                        "account_number": 220,
                        "balance": 3086,
                        "firstname": "Tania",
                        "lastname": "Middleton",
                        "age": 22,
                        "gender": "F",
                        "address": "541 Gunther Place",
                        "employer": "Zerology",
                        "email": "taniamiddleton@zerology.com",
                        "city": "Linwood",
                        "state": "IN"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "350",
                      "_score": null,
                      "_source": {
                        "account_number": 350,
                        "balance": 4267,
                        "firstname": "Wyatt",
                        "lastname": "Wise",
                        "age": 22,
                        "gender": "F",
                        "address": "896 Bleecker Street",
                        "employer": "Rockyard",
                        "email": "wyattwise@rockyard.com",
                        "city": "Joes",
                        "state": "MS"
                      },
                      "sort": [
                      ]
                    }
                  ]
                }
              }
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "749",
            "_score": null,
            "_source": {
              "account_number": 749,
              "balance": 1249,
              "firstname": "Rush",
              "lastname": "Boyle",
              "age": 36,
              "gender": "M",
              "address": "310 Argyle Road",
              "employer": "Sportan",
              "email": "rushboyle@sportan.com",
              "city": "Brady",
              "state": "WA"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ],
            "inner_hits": {
              "details": {
                "hits": {
                  "total": 52,
                  "max_score": null,
                  "hits": [
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "749",
                      "_score": null,
                      "_source": {
                        "account_number": 749,
                        "balance": 1249,
                        "firstname": "Rush",
                        "lastname": "Boyle",
                        "age": 36,
                        "gender": "M",
                        "address": "310 Argyle Road",
                        "employer": "Sportan",
                        "email": "rushboyle@sportan.com",
                        "city": "Brady",
                        "state": "WA"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "427",
                      "_score": null,
                      "_source": {
                        "account_number": 427,
                        "balance": 1463,
                        "firstname": "Rebekah",
                        "lastname": "Garrison",
                        "age": 36,
                        "gender": "F",
                        "address": "837 Hampton Avenue",
                        "employer": "Niquent",
                        "email": "rebekahgarrison@niquent.com",
                        "city": "Zarephath",
                        "state": "NY"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "782",
                      "_score": null,
                      "_source": {
                        "account_number": 782,
                        "balance": 3960,
                        "firstname": "Maldonado",
                        "lastname": "Craig",
                        "age": 36,
                        "gender": "F",
                        "address": "345 Myrtle Avenue",
                        "employer": "Zilencio",
                        "email": "maldonadocraig@zilencio.com",
                        "city": "Yukon",
                        "state": "ID"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "6",
                      "_score": null,
                      "_source": {
                        "account_number": 6,
                        "balance": 5686,
                        "firstname": "Hattie",
                        "lastname": "Bond",
                        "age": 36,
                        "gender": "M",
                        "address": "671 Bristol Street",
                        "employer": "Netagy",
                        "email": "hattiebond@netagy.com",
                        "city": "Dante",
                        "state": "TN"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "170",
                      "_score": null,
                      "_source": {
                        "account_number": 170,
                        "balance": 6025,
                        "firstname": "Mann",
                        "lastname": "Madden",
                        "age": 36,
                        "gender": "F",
                        "address": "161 Radde Place",
                        "employer": "Farmex",
                        "email": "mannmadden@farmex.com",
                        "city": "Thermal",
                        "state": "LA"
                      },
                      "sort": [
                      ]
                    }
                  ]
                }
              }
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "315",
            "_score": null,
            "_source": {
              "account_number": 315,
              "balance": 1314,
              "firstname": "Clare",
              "lastname": "Morrow",
              "age": 33,
              "gender": "F",
              "address": "728 Madeline Court",
              "employer": "Gaptec",
              "email": "claremorrow@gaptec.com",
              "city": "Mapletown",
              "state": "PA"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ],
            "inner_hits": {
              "details": {
                "hits": {
                  "total": 50,
                  "max_score": null,
                  "hits": [
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "315",
                      "_score": null,
                      "_source": {
                        "account_number": 315,
                        "balance": 1314,
                        "firstname": "Clare",
                        "lastname": "Morrow",
                        "age": 33,
                        "gender": "F",
                        "address": "728 Madeline Court",
                        "employer": "Gaptec",
                        "email": "claremorrow@gaptec.com",
                        "city": "Mapletown",
                        "state": "PA"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "118",
                      "_score": null,
                      "_source": {
                        "account_number": 118,
                        "balance": 2223,
                        "firstname": "Ballard",
                        "lastname": "Vasquez",
                        "age": 33,
                        "gender": "F",
                        "address": "101 Bush Street",
                        "employer": "Intergeek",
                        "email": "ballardvasquez@intergeek.com",
                        "city": "Century",
                        "state": "MN"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "786",
                      "_score": null,
                      "_source": {
                        "account_number": 786,
                        "balance": 3024,
                        "firstname": "Rene",
                        "lastname": "Vang",
                        "age": 33,
                        "gender": "M",
                        "address": "506 Randolph Street",
                        "employer": "Isopop",
                        "email": "renevang@isopop.com",
                        "city": "Vienna",
                        "state": "NJ"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "932",
                      "_score": null,
                      "_source": {
                        "account_number": 932,
                        "balance": 3111,
                        "firstname": "Summer",
                        "lastname": "Porter",
                        "age": 33,
                        "gender": "F",
                        "address": "949 Grand Avenue",
                        "employer": "Multiflex",
                        "email": "summerporter@multiflex.com",
                        "city": "Spokane",
                        "state": "OK"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "587",
                      "_score": null,
                      "_source": {
                        "account_number": 587,
                        "balance": 3468,
                        "firstname": "Carly",
                        "lastname": "Johns",
                        "age": 33,
                        "gender": "M",
                        "address": "390 Noll Street",
                        "employer": "Gallaxia",
                        "email": "carlyjohns@gallaxia.com",
                        "city": "Emison",
                        "state": "DC"
                      },
                      "sort": [
                      ]
                    }
                  ]
                }
              }
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "348",
            "_score": null,
            "_source": {
              "account_number": 348,
              "balance": 1360,
              "firstname": "Karina",
              "lastname": "Russell",
              "age": 37,
              "gender": "M",
              "address": "797 Moffat Street",
              "employer": "Limozen",
              "email": "karinarussell@limozen.com",
              "city": "Riegelwood",
              "state": "RI"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ],
            "inner_hits": {
              "details": {
                "hits": {
                  "total": 42,
                  "max_score": null,
                  "hits": [
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "348",
                      "_score": null,
                      "_source": {
                        "account_number": 348,
                        "balance": 1360,
                        "firstname": "Karina",
                        "lastname": "Russell",
                        "age": 37,
                        "gender": "M",
                        "address": "797 Moffat Street",
                        "employer": "Limozen",
                        "email": "karinarussell@limozen.com",
                        "city": "Riegelwood",
                        "state": "RI"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "663",
                      "_score": null,
                      "_source": {
                        "account_number": 663,
                        "balance": 2456,
                        "firstname": "Rollins",
                        "lastname": "Richards",
                        "age": 37,
                        "gender": "M",
                        "address": "129 Sullivan Place",
                        "employer": "Geostele",
                        "email": "rollinsrichards@geostele.com",
                        "city": "Morgandale",
                        "state": "FL"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "699",
                      "_score": null,
                      "_source": {
                        "account_number": 699,
                        "balance": 4156,
                        "firstname": "Gallagher",
                        "lastname": "Marshall",
                        "age": 37,
                        "gender": "F",
                        "address": "648 Clifford Place",
                        "employer": "Exiand",
                        "email": "gallaghermarshall@exiand.com",
                        "city": "Belfair",
                        "state": "KY"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "161",
                      "_score": null,
                      "_source": {
                        "account_number": 161,
                        "balance": 4659,
                        "firstname": "Doreen",
                        "lastname": "Randall",
                        "age": 37,
                        "gender": "F",
                        "address": "178 Court Street",
                        "employer": "Calcula",
                        "email": "doreenrandall@calcula.com",
                        "city": "Belmont",
                        "state": "TX"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "258",
                      "_score": null,
                      "_source": {
                        "account_number": 258,
                        "balance": 5712,
                        "firstname": "Lindsey",
                        "lastname": "Hawkins",
                        "age": 37,
                        "gender": "M",
                        "address": "706 Frost Street",
                        "employer": "Enormo",
                        "email": "lindseyhawkins@enormo.com",
                        "city": "Gardners",
                        "state": "AK"
                      },
                      "sort": [
                      ]
                    }
                  ]
                }
              }
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "490",
            "_score": null,
            "_source": {
              "account_number": 490,
              "balance": 1447,
              "firstname": "Strong",
              "lastname": "Hendrix",
              "age": 26,
              "gender": "F",
              "address": "134 Beach Place",
              "employer": "Duoflex",
              "email": "stronghendrix@duoflex.com",
              "city": "Allentown",
              "state": "ND"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ],
            "inner_hits": {
              "details": {
                "hits": {
                  "total": 59,
                  "max_score": null,
                  "hits": [
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "490",
                      "_score": null,
                      "_source": {
                        "account_number": 490,
                        "balance": 1447,
                        "firstname": "Strong",
                        "lastname": "Hendrix",
                        "age": 26,
                        "gender": "F",
                        "address": "134 Beach Place",
                        "employer": "Duoflex",
                        "email": "stronghendrix@duoflex.com",
                        "city": "Allentown",
                        "state": "ND"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "280",
                      "_score": null,
                      "_source": {
                        "account_number": 280,
                        "balance": 3380,
                        "firstname": "Vilma",
                        "lastname": "Shields",
                        "age": 26,
                        "gender": "F",
                        "address": "133 Berriman Street",
                        "employer": "Applidec",
                        "email": "vilmashields@applidec.com",
                        "city": "Adamstown",
                        "state": "ME"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "596",
                      "_score": null,
                      "_source": {
                        "account_number": 596,
                        "balance": 4063,
                        "firstname": "Letitia",
                        "lastname": "Walker",
                        "age": 26,
                        "gender": "F",
                        "address": "963 Vanderveer Place",
                        "employer": "Zizzle",
                        "email": "letitiawalker@zizzle.com",
                        "city": "Rossmore",
                        "state": "ID"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "780",
                      "_score": null,
                      "_source": {
                        "account_number": 780,
                        "balance": 4682,
                        "firstname": "Maryanne",
                        "lastname": "Hendricks",
                        "age": 26,
                        "gender": "F",
                        "address": "709 Wolcott Street",
                        "employer": "Sarasonic",
                        "email": "maryannehendricks@sarasonic.com",
                        "city": "Santel",
                        "state": "NH"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "405",
                      "_score": null,
                      "_source": {
                        "account_number": 405,
                        "balance": 5679,
                        "firstname": "Strickland",
                        "lastname": "Fuller",
                        "age": 26,
                        "gender": "M",
                        "address": "990 Concord Street",
                        "employer": "Digique",
                        "email": "stricklandfuller@digique.com",
                        "city": "Southmont",
                        "state": "NV"
                      },
                      "sort": [
                      ]
                    }
                  ]
                }
              }
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "174",
            "_score": null,
            "_source": {
              "account_number": 174,
              "balance": 1464,
              "firstname": "Gamble",
              "lastname": "Pierce",
              "age": 23,
              "gender": "F",
              "address": "650 Eagle Street",
              "employer": "Matrixity",
              "email": "gamblepierce@matrixity.com",
              "city": "Abiquiu",
              "state": "OR"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ],
            "inner_hits": {
              "details": {
                "hits": {
                  "total": 42,
                  "max_score": null,
                  "hits": [
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "174",
                      "_score": null,
                      "_source": {
                        "account_number": 174,
                        "balance": 1464,
                        "firstname": "Gamble",
                        "lastname": "Pierce",
                        "age": 23,
                        "gender": "F",
                        "address": "650 Eagle Street",
                        "employer": "Matrixity",
                        "email": "gamblepierce@matrixity.com",
                        "city": "Abiquiu",
                        "state": "OR"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "110",
                      "_score": null,
                      "_source": {
                        "account_number": 110,
                        "balance": 4850,
                        "firstname": "Daphne",
                        "lastname": "Byrd",
                        "age": 23,
                        "gender": "F",
                        "address": "239 Conover Street",
                        "employer": "Freakin",
                        "email": "daphnebyrd@freakin.com",
                        "city": "Taft",
                        "state": "MN"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "900",
                      "_score": null,
                      "_source": {
                        "account_number": 900,
                        "balance": 6124,
                        "firstname": "Gonzalez",
                        "lastname": "Watson",
                        "age": 23,
                        "gender": "M",
                        "address": "624 Sullivan Street",
                        "employer": "Marvane",
                        "email": "gonzalezwatson@marvane.com",
                        "city": "Wikieup",
                        "state": "IL"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "443",
                      "_score": null,
                      "_source": {
                        "account_number": 443,
                        "balance": 7588,
                        "firstname": "Huff",
                        "lastname": "Thomas",
                        "age": 23,
                        "gender": "M",
                        "address": "538 Erskine Loop",
                        "employer": "Accufarm",
                        "email": "huffthomas@accufarm.com",
                        "city": "Corinne",
                        "state": "AL"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "643",
                      "_score": null,
                      "_source": {
                        "account_number": 643,
                        "balance": 8057,
                        "firstname": "Hendricks",
                        "lastname": "Stokes",
                        "age": 23,
                        "gender": "F",
                        "address": "142 Barbey Street",
                        "employer": "Remotion",
                        "email": "hendricksstokes@remotion.com",
                        "city": "Lewis",
                        "state": "MA"
                      },
                      "sort": [
                      ]
                    }
                  ]
                }
              }
            }
          },
          {
            "_index": "bank",
            "_type": "_doc",
            "_id": "111",
            "_score": null,
            "_source": {
              "account_number": 111,
              "balance": 1481,
              "firstname": "Traci",
              "lastname": "Allison",
              "age": 35,
              "gender": "M",
              "address": "922 Bryant Street",
              "employer": "Enjola",
              "email": "traciallison@enjola.com",
              "city": "Robinette",
              "state": "OR"
            },
            "fields": {
              "age": [
              ]
            },
            "sort": [
            ],
            "inner_hits": {
              "details": {
                "hits": {
                  "total": 52,
                  "max_score": null,
                  "hits": [
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "111",
                      "_score": null,
                      "_source": {
                        "account_number": 111,
                        "balance": 1481,
                        "firstname": "Traci",
                        "lastname": "Allison",
                        "age": 35,
                        "gender": "M",
                        "address": "922 Bryant Street",
                        "employer": "Enjola",
                        "email": "traciallison@enjola.com",
                        "city": "Robinette",
                        "state": "OR"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "417",
                      "_score": null,
                      "_source": {
                        "account_number": 417,
                        "balance": 1788,
                        "firstname": "Wheeler",
                        "lastname": "Ayers",
                        "age": 35,
                        "gender": "F",
                        "address": "677 Hope Street",
                        "employer": "Fortean",
                        "email": "wheelerayers@fortean.com",
                        "city": "Ironton",
                        "state": "PA"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "984",
                      "_score": null,
                      "_source": {
                        "account_number": 984,
                        "balance": 1904,
                        "firstname": "Viola",
                        "lastname": "Crawford",
                        "age": 35,
                        "gender": "F",
                        "address": "354 Linwood Street",
                        "employer": "Ginkle",
                        "email": "violacrawford@ginkle.com",
                        "city": "Witmer",
                        "state": "AR"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "527",
                      "_score": null,
                      "_source": {
                        "account_number": 527,
                        "balance": 2028,
                        "firstname": "Carver",
                        "lastname": "Peters",
                        "age": 35,
                        "gender": "M",
                        "address": "816 Victor Road",
                        "employer": "Housedown",
                        "email": "carverpeters@housedown.com",
                        "city": "Nadine",
                        "state": "MD"
                      },
                      "sort": [
                      ]
                    },
                    {
                      "_index": "bank",
                      "_type": "_doc",
                      "_id": "266",
                      "_score": null,
                      "_source": {
                        "account_number": 266,
                        "balance": 2777,
                        "firstname": "Monique",
                        "lastname": "Conner",
                        "age": 35,
                        "gender": "F",
                        "address": "489 Metrotech Courtr",
                        "employer": "Flotonic",
                        "email": "moniqueconner@flotonic.com",
                        "city": "Retsof",
                        "state": "MD"
                      },
                      "sort": [
                      ]
                    }
                  ]
                }
              }
            }
          }
        ]
      }
    }

    在inner_hits 中返回多个角度的组内topN

    
    GET /twitter/_search
    {
        "query": {
            "match": {
                "message": "elasticsearch"
            }
        },
        "collapse" : {
            "field" : "user", 
            "inner_hits": [
                {
                    "name": "most_liked",  
                    "size": 3,
                    "sort": ["likes"]
                },
                {
                    "name": "most_recent", 
                    "size": 3,
                    "sort": [{ "date": "asc" }]
                }
            ]
        },
        "sort": ["likes"]
    }
    

     说明:

    most_liked:最像

    most_recent:最近一段时间的

     6.3.1 分页

     from and size

    
    GET /_search
    {
        "from" : 0, "size" : 10,
        "query" : {
            "term" : { "user" : "kimchy" }
        }
    }
    

    注意:搜索请求耗用的堆内存和时间与 from + size 大小成正比。分页越深耗用越大,为了不因分页导致OOM或严重影响性能,ES中规定from + size 不能大于索引setting参数 index.max_result_window 的值,默认值为 10,000。

    需要深度分页, 不受index.max_result_window 限制,怎么办? 

    Search after  在指定文档后取文档, 可用于深度分页

     首次查询第一页

    
    GET twitter/_search
    {
        "size": 10,
        "query": {
            "match" : {
                "title" : "elasticsearch"
            }
        },
        "sort": [
            {"date": "asc"},
            {"_id": "desc"}
        ]
    }
    

    后续页的查询

    
    GET twitter/_search
    {
        "size": 10,
        "query": {
            "match" : {
                "title" : "elasticsearch"
            }
        },
        "search_after": [1463538857, "654323"],
        "sort": [
            {"date": "asc"},
            {"_id": "desc"}
        ]
    }
    

    注意:使用search_after,要求查询必须指定排序,并且这个排序组合值每个文档唯一(最好排序中包含_id字段)。 search_after的值用的就是这个排序值。 用search_after时 from 只能为0、-1。

    6.3.2 高亮

    准备数据:

    PUT /hl_test/_doc/1
    {
      "title": "lucene solr and elasticsearch",
      "content": "lucene solr and elasticsearch for search"
    }

    查询高亮数据

    
    GET /hl_test/_search
    {
      "query": {
        "match": {
          "title": "lucene"
        }
      },
      "highlight": {
        "fields": {
          "title": {},
          "content": {}
        }
      }
    }
    

    查询结果:

    
    {
      "took": 113,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 1,
        "max_score": 0.2876821,
        "hits": [
          {
            "_index": "hl_test",
            "_type": "_doc",
            "_id": "1",
            "_score": 0.2876821,
            "_source": {
              "title": "lucene solr and elasticsearch",
              "content": "lucene solr and elasticsearch for search"
            },
            "highlight": {
              "title": [
                "<em>lucene</em> solr and elasticsearch"
              ]
            }
          }
        ]
      }
    }
    

    多字段高亮

    
    GET /hl_test/_search
    {
      "query": {
        "match": {
          "title": "lucene"
        }
      },
      "highlight": {
        "require_field_match": false,
        "fields": {
          "title": {},
          "content": {}
        }
      }
    }
    

    查询结果:

    
    {
      "took": 5,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 1,
        "max_score": 0.2876821,
        "hits": [
          {
            "_index": "hl_test",
            "_type": "_doc",
            "_id": "1",
            "_score": 0.2876821,
            "_source": {
              "title": "lucene solr and elasticsearch",
              "content": "lucene solr and elasticsearch for search"
            },
            "highlight": {
              "title": [
                "<em>lucene</em> solr and elasticsearch"
              ],
              "content": [
                "<em>lucene</em> solr and elasticsearch for search"
              ]
            }
          }
        ]
      }
    }
    

    说明:

    高亮结果在返回的每个文档中以hightlight节点给出

    指定高亮标签

    
    GET /hl_test/_search
    {
      "query": {
        "match": {
          "title": "lucene"
        }
      },
      "highlight": {
        "require_field_match": false,
        "fields": {
          "title": {
            "pre_tags":["<strong>"],
            "post_tags": ["</strong>"]
          },
          "content": {}
        }
      }
    }
    

    查询结果:

    
    {
      "took": 5,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 1,
        "max_score": 0.2876821,
        "hits": [
          {
            "_index": "hl_test",
            "_type": "_doc",
            "_id": "1",
            "_score": 0.2876821,
            "_source": {
              "title": "lucene solr and elasticsearch",
              "content": "lucene solr and elasticsearch for search"
            },
            "highlight": {
              "title": [
                "<strong>lucene</strong> solr and elasticsearch"
              ],
              "content": [
                "<em>lucene</em> solr and elasticsearch for search"
              ]
            }
          }
        ]
      }
    }
    

    高亮的详细设置请参考官网:https://www.elastic.co/guide/en/elasticsearch/reference/current/search-request-highlighting.html

    6.3.3 Profile  为了调试、优化

    对于执行缓慢的查询,我们很想知道它为什么慢,时间都耗在哪了,可以在查询上加入上 profile 来获得详细的执行步骤、耗时信息。

    
    GET /twitter/_search
    {
      "profile": true,
      "query" : {
        "match" : { "message" : "some number" }
      }
    }
    

    信息的说明请参考:

    https://www.elastic.co/guide/en/elasticsearch/reference/current/search-profile.html

    7.  count api 查询数量

    
    PUT /twitter/_doc/1?refresh
    {
        "user": "kimchy"
    }
    
    GET /twitter/_doc/_count?q=user:kimchy
    
    GET /twitter/_doc/_count
    {
        "query" : {
            "term" : { "user" : "kimchy" }
        }
    }
    

    结果说明:

    
    {
        "count" : 1,
        "_shards" : {
            "total" : 5,
            "successful" : 5,
            "skipped" : 0,
            "failed" : 0
        }
    }
    

    8. validate api  

    用来检查我们的查询是否正确,以及查看底层生成查询是怎样的

    GET twitter/_validate/query?q=user:foo

    8.1 校验查询

    
    GET twitter/_doc/_validate/query
    {
      "query": {
        "query_string": {
          "query": "post_date:foo",
          "lenient": false
        }
      }
    }
    

    查询结果:

    
    {
      "valid": true,
      "_shards": {
        "total": 1,
        "successful": 1,
        "failed": 0
      }
    }
    

    8.2 获得查询解释

    
    GET twitter/_doc/_validate/query?explain=true
    {
      "query": {
        "query_string": {
          "query": "post_date:foo",
          "lenient": false
        }
      }
    }
    

    查询结果

    
    {
      "valid": true,
      "_shards": {
        "total": 1,
        "successful": 1,
        "failed": 0
      },
      "explanations": [
        {
          "index": "twitter",
          "valid": true,
          "explanation": """+MatchNoDocsQuery("unmapped field [post_date]") #MatchNoDocsQuery("Type list does not contain the index type")"""
        }
      ]
    }
    

    8.3 用rewrite获得比explain 更详细的解释

    
    GET twitter/_doc/_validate/query?rewrite=true
    {
      "query": {
        "more_like_this": {
          "like": {
            "_id": "2"
          },
          "boost_terms": 1
        }
      }
    }
    

    查询结果:

    
    {
      "valid": true,
      "_shards": {
        "total": 1,
        "successful": 1,
        "failed": 0
      },
      "explanations": [
        {
          "index": "twitter",
          "valid": true,
          "explanation": """+(MatchNoDocsQuery("empty BooleanQuery") -ConstantScore(MatchNoDocsQuery("empty BooleanQuery"))) #MatchNoDocsQuery("Type list does not contain the index type")"""
        }
      ]
    }
    

    8.4 获得所有分片上的查询解释

    
    GET twitter/_doc/_validate/query?rewrite=true&all_shards=true
    {
      "query": {
        "match": {
          "user": {
            "query": "kimchy",
            "fuzziness": "auto"
          }
        }
      }
    }
    

    查询结果:

    
    {
      "valid": true,
      "_shards": {
        "total": 3,
        "successful": 3,
        "failed": 0
      },
      "explanations": [
        {
          "index": "twitter",
          "shard": 0,
          "valid": true,
          "explanation": """MatchNoDocsQuery("unmapped field [user]")"""
        },
        {
          "index": "twitter",
          "shard": 1,
          "valid": true,
          "explanation": """MatchNoDocsQuery("unmapped field [user]")"""
        },
        {
          "index": "twitter",
          "shard": 2,
          "valid": true,
          "explanation": """MatchNoDocsQuery("unmapped field [user]")"""
        }
      ]
    }
    

    官网链接:

    https://www.elastic.co/guide/en/elasticsearch/reference/current/search-validate.html

    9. Explain api  

    获得某个查询的评分解释,及某个文档是否被这个查询命中

    GET /twitter/_doc/0/_explain
    {
          "query" : {
            "match" : { "message" : "elasticsearch" }
          }
    }

    官网链接:

    https://www.elastic.co/guide/en/elasticsearch/reference/current/search-explain.html

    10. Search Shards API

    让我们可以了解可执行查询的索引分片节点情况

    GET /twitter/_search_shards

    查询结果:

    {
      "nodes": {
        "qkmtovyLRPWjXcfDTryNwA": {
          "name": "qkmtovy",
          "ephemeral_id": "sxgsvzsORraAnN7PIlMYpg",
          "transport_address": "127.0.0.1:9300",
          "attributes": {}
        }
      },
      "indices": {
        "twitter": {}
      },
      "shards": [
        [
          {
            "state": "STARTED",
            "primary": true,
            "node": "qkmtovyLRPWjXcfDTryNwA",
            "relocating_node": null,
            "shard": 0,
            "index": "twitter",
            "allocation_id": {
              "id": "3Yf6lOjyQja_v4yP_gL8qA"
            }
          }
        ],
        [
          {
            "state": "STARTED",
            "primary": true,
            "node": "qkmtovyLRPWjXcfDTryNwA",
            "relocating_node": null,
            "shard": 1,
            "index": "twitter",
            "allocation_id": {
              "id": "8S88pnUkSSy8kiCcwBgb9Q"
            }
          }
        ],
        [
          {
            "state": "STARTED",
            "primary": true,
            "node": "qkmtovyLRPWjXcfDTryNwA",
            "relocating_node": null,
            "shard": 2,
            "index": "twitter",
            "allocation_id": {
              "id": "_uIup55LQZKaltUfuh5aFA"
            }
          }
        ]
      ]
    }

    想知道指定routing值的查询将在哪些分片节点上执行

    GET /twitter/_search_shards?routing=foo,baz

    查询结果:

    
    {
      "nodes": {
        "qkmtovyLRPWjXcfDTryNwA": {
          "name": "qkmtovy",
          "ephemeral_id": "sxgsvzsORraAnN7PIlMYpg",
          "transport_address": "127.0.0.1:9300",
          "attributes": {}
        }
      },
      "indices": {
        "twitter": {}
      },
      "shards": [
        [
          {
            "state": "STARTED",
            "primary": true,
            "node": "qkmtovyLRPWjXcfDTryNwA",
            "relocating_node": null,
            "shard": 1,
            "index": "twitter",
            "allocation_id": {
              "id": "8S88pnUkSSy8kiCcwBgb9Q"
            }
          }
        ]
      ]
    }
    

    11. Search Template 查询模板

    注册一个模板

    
    POST _scripts/<templatename>
    {
        "script": {
            "lang": "mustache",
            "source": {
                "query": {
                    "match": {
                        "title": "{{query_string}}"
                    }
                }
            }
        }
    }
    

    使用模板进行查询

    
    GET _search/template
    {
        "id": "<templateName>", 
        "params": {
            "query_string": "search for these words"
        }
    }
    

    查询结果:

    
    {
      "took": 11,
      "timed_out": false,
      "_shards": {
        "total": 38,
        "successful": 38,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 0,
        "max_score": null,
        "hits": []
      }
    }
    

    详细了解请参考官网:

    https://www.elastic.co/guide/en/elasticsearch/reference/current/search-template.html

    二、Query DSL

     

    官网介绍链接:https://www.elastic.co/guide/en/elasticsearch/reference/current/query-dsl.html

     Query DSL 介绍

     1. DSL是什么?

    Domain Specific Language:领域特定语言

    Elasticsearch基于JSON提供完整的查询DSL来定义查询。

    一个查询可由两部分字句构成:

    Leaf query clauses 叶子查询字句
    Leaf query clauses 在指定的字段上查询指定的值, 如:match, term or range queries. 叶子字句可以单独使用. 
    Compound query clauses 复合查询字句
    以逻辑方式组合多个叶子、复合查询为一个查询

     2. Query and filter context

     一个查询字句的行为取决于它是用在query context  还是 filter context 中 。

    Query context 查询上下文
    用在查询上下文中的字句回答“这个文档有多匹配这个查询?”。除了决定文档是否匹配,字句匹配的文档还会计算一个字句评分,来评定文档有多匹配。查询上下文由 query 元素表示。
    Filter context 过滤上下文
    过滤上下文由 filter 元素或 bool 中的 must not 表示。用在过滤上下文中的字句回答“这个文档是否匹配这个查询?”,不参与相关性评分
    被频繁使用的过滤器将被ES自动缓存,来提高查询性能。

     示例:

    
    GET /_search
    {
      <!--查询 -->
      "query": { 
        "bool": { 
          "must": [
            { "match": { "title":   "Search"        }}, 
            { "match": { "content": "Elasticsearch" }}  
          ],
          <!--过滤 -->
          "filter": [ 
            { "term":  { "status": "published" }}, 
            { "range": { "publish_date": { "gte": "2015-01-01" }}} 
          ]
        }
      }
    }
    

     说明:查询和过滤都是对所有文档进行查询,最后两个结果取交集

     提示:在查询上下文中使用查询子句来表示影响匹配文档得分的条件,并在过滤上下文中使用所有其他查询子句。

     查询分类介绍

     

    1. Match all query 查询所有

    GET /_search
    {
        "query": {
            "match_all": {}
        }
    }

     相反,什么都不查

    GET /_search
    {
        "query": {
            "match_none": {}
        }
    }

     2. Full text querys

    全文查询,用于对分词的字段进行搜索。会用查询字段的分词器对查询的文本进行分词生成查询。可用于短语查询、模糊查询、前缀查询、临近查询等查询场景

     官网链接:

    https://www.elastic.co/guide/en/elasticsearch/reference/current/full-text-queries.html

     3. match query

    全文查询的标准查询,它可以对一个字段进行模糊、短语查询。 match queries 接收 text/numerics/dates, 对它们进行分词分析, 再组织成一个boolean查询。可通过operator 指定bool组合操作(or、and 默认是 or ), 以及minimum_should_match 指定至少需多少个should(or)字句需满足。还可用ananlyzer指定查询用的特殊分析器。

    
    GET /_search
    {
        "query": {
            "match" : {
                "message" : "this is a test"
            }
        }
    }
    

     说明:message是字段名

     官网链接:https://www.elastic.co/guide/en/elasticsearch/reference/current/query-dsl-match-query.html

     示例:

    构造索引和数据:

    
    PUT /ftq/_doc/1
    {
      "title": "lucene solr and elasticsearch",
      "content": "lucene solr and elasticsearch for search"
    }
    
    PUT /ftq/_doc/2
    {
      "title": "java spring boot",
      "content": "lucene is writerd by java"
    }
    

     执行查询1

    
    GET ftq/_doc/_validate/query?rewrite=true
    {
      "query": {
        "match": {
          "title": "lucene java"
        }
      }
    }
    

     查询结果1:

    
    {
      "valid": true,
      "_shards": {
        "total": 1,
        "successful": 1,
        "failed": 0
      },
      "explanations": [
        {
          "index": "ftq",
          "valid": true,
          "explanation": "title:lucene title:java"
        }
      ]
    }
    

     执行查询2:

    
    GET ftq/_search
    {
      "query": {
        "match": {
          "title": "lucene java"
        }
      }
    }
    

     查询结果2:

    
    {
      "took": 6,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 2,
        "max_score": 0.2876821,
        "hits": [
          {
            "_index": "ftq",
            "_type": "_doc",
            "_id": "2",
            "_score": 0.2876821,
            "_source": {
              "title": "java spring boot",
              "content": "lucene is writerd by java"
            }
          },
          {
            "_index": "ftq",
            "_type": "_doc",
            "_id": "1",
            "_score": 0.2876821,
            "_source": {
              "title": "lucene solr and elasticsearch",
              "content": "lucene solr and elasticsearch for search"
            }
          }
        ]
      }
    }
    

     执行查询3:指定操作符

    
    GET ftq/_search
    {
      "query": {
        "match": {
          "title": {
            "query": "lucene java",
            "operator": "and"
          }
        }
      }
    }
    

     查询结果3:

    
    {
      "took": 4,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 0,
        "max_score": null,
        "hits": []
      }
    }
    

    模糊查询,最大编辑数为2

    
    GET ftq/_search
    {
      "query": {
        "match": {
          "title": {
            "query": "ucen elatic",
            "fuzziness": 2
          }
        }
      }
    }
    

    模糊查询结果:

    
    {
      "took": 280,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 1,
        "max_score": 0.14384104,
        "hits": [
          {
            "_index": "ftq",
            "_type": "_doc",
            "_id": "1",
            "_score": 0.14384104,
            "_source": {
              "title": "lucene solr and elasticsearch",
              "content": "lucene solr and elasticsearch for search"
            }
          }
        ]
      }
    }
    

    指定最少需满足两个词匹配

    
    GET ftq/_search
    {
      "query": {
        "match": {
          "content": {
            "query": "ucen elatic java",
            "fuzziness": 2,
            "minimum_should_match": 2
          }
        }
      }
    }
    

     查询结果:

    
    {
      "took": 19,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 1,
        "max_score": 0.43152314,
        "hits": [
          {
            "_index": "ftq",
            "_type": "_doc",
            "_id": "2",
            "_score": 0.43152314,
            "_source": {
              "title": "java spring boot",
              "content": "lucene is writerd by java"
            }
          }
        ]
      }
    }
    

     可用max_expansions 指定模糊匹配的最大词项数,默认是50。比如:反向索引中有 100 个词项与 ucen 模糊匹配,只选用前50 个。

     4. match  phrase  query

    match_phrase 查询用来对一个字段进行短语查询,可以指定 analyzer、slop移动因子。

     对字段进行短语查询1:

    GET ftq/_search
    {
      "query": {
        "match_phrase": {
          "title": "lucene solr"
        }
      }
    }

     结果1:

    
    {
      "took": 3,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 1,
        "max_score": 0.5753642,
        "hits": [
          {
            "_index": "ftq",
            "_type": "_doc",
            "_id": "1",
            "_score": 0.5753642,
            "_source": {
              "title": "lucene solr and elasticsearch",
              "content": "lucene solr and elasticsearch for search"
            }
          }
        ]
      }
    }
    

     对字段进行短语查询2:

    GET ftq/_search
    {
      "query": {
        "match_phrase": {
          "title": "lucene elasticsearch"
        }
      }
    }

    结果2:

    
    {
      "took": 3,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 0,
        "max_score": null,
        "hits": []
      }
    }
    

    对查询指定移动因子:

    GET ftq/_search
    {
      "query": {
        "match_phrase": {
          "title": {
            "query": "lucene elasticsearch",
            "slop": 2
          }
        }
      }
    }

     查询结果:

    
    {
      "took": 2174,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 1,
        "max_score": 0.27517417,
        "hits": [
          {
            "_index": "ftq",
            "_type": "_doc",
            "_id": "1",
            "_score": 0.27517417,
            "_source": {
              "title": "lucene solr and elasticsearch",
              "content": "lucene solr and elasticsearch for search"
            }
          }
        ]
      }
    }
    

     5. match  phrase  prefix query

    match_phrase_prefix 在 match_phrase 的基础上支持对短语的最后一个词进行前缀匹配

    GET /_search
    {
        "query": {
            "match_phrase_prefix" : {
                "message" : "quick brown f"
            }
        }
    }

     指定前缀匹配选用的最大词项数量

    
    GET /_search
    {
        "query": {
            "match_phrase_prefix" : {
                "message" : {
                    "query" : "quick brown f",
                    "max_expansions" : 10
                }
            }
        }
    }
    

     6. Multi match query

    如果你需要在多个字段上进行文本搜索,可用multi_match 。 multi_match在 match的基础上支持对多个字段进行文本查询。

    查询1:

    
    GET ftq/_search
    {
      "query": {
        "multi_match" : {
          "query":    "lucene java", 
          "fields": [ "title", "content" ] 
        }
      }
    }
    

    结果1:

    
    {
      "took": 1973,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 2,
        "max_score": 0.5753642,
        "hits": [
          {
            "_index": "ftq",
            "_type": "_doc",
            "_id": "2",
            "_score": 0.5753642,
            "_source": {
              "title": "java spring boot",
              "content": "lucene is writerd by java"
            }
          },
          {
            "_index": "ftq",
            "_type": "_doc",
            "_id": "1",
            "_score": 0.2876821,
            "_source": {
              "title": "lucene solr and elasticsearch",
              "content": "lucene solr and elasticsearch for search"
            }
          }
        ]
      }
    }
    

    查询2:字段通配符查询

    
    GET ftq/_search
    {
      "query": {
        "multi_match" : {
          "query":    "lucene java", 
          "fields": [ "title", "cont*" ] 
        }
      }
    }
    

    结果2:

    
    {
      "took": 5,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 2,
        "max_score": 0.5753642,
        "hits": [
          {
            "_index": "ftq",
            "_type": "_doc",
            "_id": "2",
            "_score": 0.5753642,
            "_source": {
              "title": "java spring boot",
              "content": "lucene is writerd by java"
            }
          },
          {
            "_index": "ftq",
            "_type": "_doc",
            "_id": "1",
            "_score": 0.2876821,
            "_source": {
              "title": "lucene solr and elasticsearch",
              "content": "lucene solr and elasticsearch for search"
            }
          }
        ]
      }
    }
    

    查询3:给字段的相关性评分加权重

    GET ftq/_search?explain=true
    {
      "query": {
        "multi_match" : {
          "query":    "lucene elastic", 
          "fields": [ "title^5", "content" ] 
        }
      }
    }

    结果3:

    {
      "took": 6,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 2,
        "max_score": 1.4384104,
        "hits": [
          {
            "_shard": "[ftq][3]",
            "_node": "qkmtovyLRPWjXcfDTryNwA",
            "_index": "ftq",
            "_type": "_doc",
            "_id": "1",
            "_score": 1.4384104,
            "_source": {
              "title": "lucene solr and elasticsearch",
              "content": "lucene solr and elasticsearch for search"
            },
            "_explanation": {
              "value": 1.4384104,
              "description": "max of:",
              "details": [
                {
                  "value": 1.4384104,
                  "description": "sum of:",
                  "details": [
                    {
                      "value": 1.4384104,
                      "description": "weight(title:lucene in 0) [PerFieldSimilarity], result of:",
                      "details": [
                        {
                          "value": 1.4384104,
                          "description": "score(doc=0,freq=1.0 = termFreq=1.0
    ), product of:",
                          "details": [
                            {
                              "value": 5,
                              "description": "boost",
                              "details": []
                            },
                            {
                              "value": 0.2876821,
                              "description": "idf, computed as log(1 + (docCount - docFreq + 0.5) / (docFreq + 0.5)) from:",
                              "details": [
                                {
                                  "value": 1,
                                  "description": "docFreq",
                                  "details": []
                                },
                                {
                                  "value": 1,
                                  "description": "docCount",
                                  "details": []
                                }
                              ]
                            },
                            {
                              "value": 1,
                              "description": "tfNorm, computed as (freq * (k1 + 1)) / (freq + k1 * (1 - b + b * fieldLength / avgFieldLength)) from:",
                              "details": [
                                {
                                  "value": 1,
                                  "description": "termFreq=1.0",
                                  "details": []
                                },
                                {
                                  "value": 1.2,
                                  "description": "parameter k1",
                                  "details": []
                                },
                                {
                                  "value": 0.75,
                                  "description": "parameter b",
                                  "details": []
                                },
                                {
                                  "value": 4,
                                  "description": "avgFieldLength",
                                  "details": []
                                },
                                {
                                  "value": 4,
                                  "description": "fieldLength",
                                  "details": []
                                }
                              ]
                            }
                          ]
                        }
                      ]
                    }
                  ]
                },
                {
                  "value": 0.2876821,
                  "description": "sum of:",
                  "details": [
                    {
                      "value": 0.2876821,
                      "description": "weight(content:lucene in 0) [PerFieldSimilarity], result of:",
                      "details": [
                        {
                          "value": 0.2876821,
                          "description": "score(doc=0,freq=1.0 = termFreq=1.0
    ), product of:",
                          "details": [
                            {
                              "value": 0.2876821,
                              "description": "idf, computed as log(1 + (docCount - docFreq + 0.5) / (docFreq + 0.5)) from:",
                              "details": [
                                {
                                  "value": 1,
                                  "description": "docFreq",
                                  "details": []
                                },
                                {
                                  "value": 1,
                                  "description": "docCount",
                                  "details": []
                                }
                              ]
                            },
                            {
                              "value": 1,
                              "description": "tfNorm, computed as (freq * (k1 + 1)) / (freq + k1 * (1 - b + b * fieldLength / avgFieldLength)) from:",
                              "details": [
                                {
                                  "value": 1,
                                  "description": "termFreq=1.0",
                                  "details": []
                                },
                                {
                                  "value": 1.2,
                                  "description": "parameter k1",
                                  "details": []
                                },
                                {
                                  "value": 0.75,
                                  "description": "parameter b",
                                  "details": []
                                },
                                {
                                  "value": 6,
                                  "description": "avgFieldLength",
                                  "details": []
                                },
                                {
                                  "value": 6,
                                  "description": "fieldLength",
                                  "details": []
                                }
                              ]
                            }
                          ]
                        }
                      ]
                    }
                  ]
                }
              ]
            }
          },
          {
            "_shard": "[ftq][2]",
            "_node": "qkmtovyLRPWjXcfDTryNwA",
            "_index": "ftq",
            "_type": "_doc",
            "_id": "2",
            "_score": 0.2876821,
            "_source": {
              "title": "java spring boot",
              "content": "lucene is writerd by java"
            },
            "_explanation": {
              "value": 0.2876821,
              "description": "max of:",
              "details": [
                {
                  "value": 0.2876821,
                  "description": "sum of:",
                  "details": [
                    {
                      "value": 0.2876821,
                      "description": "weight(content:lucene in 0) [PerFieldSimilarity], result of:",
                      "details": [
                        {
                          "value": 0.2876821,
                          "description": "score(doc=0,freq=1.0 = termFreq=1.0
    ), product of:",
                          "details": [
                            {
                              "value": 0.2876821,
                              "description": "idf, computed as log(1 + (docCount - docFreq + 0.5) / (docFreq + 0.5)) from:",
                              "details": [
                                {
                                  "value": 1,
                                  "description": "docFreq",
                                  "details": []
                                },
                                {
                                  "value": 1,
                                  "description": "docCount",
                                  "details": []
                                }
                              ]
                            },
                            {
                              "value": 1,
                              "description": "tfNorm, computed as (freq * (k1 + 1)) / (freq + k1 * (1 - b + b * fieldLength / avgFieldLength)) from:",
                              "details": [
                                {
                                  "value": 1,
                                  "description": "termFreq=1.0",
                                  "details": []
                                },
                                {
                                  "value": 1.2,
                                  "description": "parameter k1",
                                  "details": []
                                },
                                {
                                  "value": 0.75,
                                  "description": "parameter b",
                                  "details": []
                                },
                                {
                                  "value": 5,
                                  "description": "avgFieldLength",
                                  "details": []
                                },
                                {
                                  "value": 5,
                                  "description": "fieldLength",
                                  "details": []
                                }
                              ]
                            }
                          ]
                        }
                      ]
                    }
                  ]
                }
              ]
            }
          }
        ]
      }
    }

    7. Common terms query

    common 常用词查询

    问1、什么是停用词?索引时做停用词处理的目的是什么?

        不再使用的词,做停用词处理的目的是提高索引的效率,去掉不需要的索引操作,即停用词不需要索引
    问2、如果在索引时应用停用词处理,下面的两个查询会查询什么词项?
    the brown fox—— brown fox
    not happy——happy

    问3、索引时应用停用词处理对搜索精度是否有影响?如果不做停用词处理又会有什么影响?如何协调这两个问题?如何保证搜索的精确度又兼顾搜索性能?

    索引时应用停用词处理对搜索精度有影响,不做停用词处理又会影响索引的效率,要协调这两个问题就必须要使用tf-idf 相关性计算模型

    7.1 tf-idf 相关性计算模型简介

    tf:term frequency   词频 :指一个词在一篇文档中出现的频率。

    如“世界杯”在文档A中出现3次,那么可以定义“世界杯”在文档A中的词频为3。请问在一篇3000字的文章中出现“世界杯”3次和一篇150字的文章中出现3词,哪篇文章更是与“世界杯”有关的。也就是说,简单用出现次数作为频率不够准确。那就用占比来表示:

    问:tf值越大是否就一定说明这个词更相关?

     不是,出现太多了说明不重要

     说明:tf的计算不一定非是这样的,可以定义不同的计算方式。

    df:document frequency 词的文档频率 :指包含某个词的文档数(有多少文档中包含这个词)。 df越大的词越常见,哪些词会是高频词?

    问1:词的df值越大说明这个词在这个文档集中是越重要还是越不重要?

     越不重要

    问2:词t的tf高,在文档集中的重要性也高,是否说明文档与该词越相关?举例:整个文档集中只有3篇文档中有“世界杯”,文档A中就出现了“世界杯”好几次。 

     不能说明文档与该词越相关

    问3:如何用数值体现词t在文档集中的重要性?df可以吗?

     不可以

     idf:inverse document frequency   词的逆文档频率 :用来表示词在文档集中的重要性。文档总数/ df ,df越小,词越重要,这个值会很大,那就对它取个自然对数,将值映射到一个较小的取值范围。

     

    说明: +1 是为了避免除0(即词t在文档集中未出现的情况)

    tf-idf 相关性性计算模型:tf-idf t = tf t,d * idf t

     说明: tf-idf 相关性性计算模型的值为词频( tf t,d)乘以词的逆文档频率(idf t

    7.2 Common terms query

    common 区分常用(高频)词查询让我们可以通过cutoff_frequency来指定一个分界文档频率值,将搜索文本中的词分为高频词和低频词,低频词的重要性高于高频词,先对低频词进行搜索并计算所有匹配文档相关性得分;然后再搜索和高频词匹配的文档,这会搜到很多文档,但只对和低频词重叠的文档进行相关性得分计算(这可保证搜索精确度,同时大大提高搜索性能),和低频词累加作为文档得分。实际执行的搜索是 必须包含低频词 + 或包含高频词。

    思考:这样处理下,如果用户输入的都是高频词如 “to be or not to be”结果会是怎样的?你希望是怎样的?

    优化:如果都是高频词,那就对这些词进行and 查询。
    进一步优化:让用户可以自己定对高频词做and/or 操作,自己定对低频词进行and/or 操作;或指定最少得多少个同时匹配

    示例1:

    GET /_search
    {
        "query": {
            "common": {
                "message": {
                    "query": "this is bonsai cool",
                    "cutoff_frequency": 0.001
                }
            }
        }
    }

    说明:

    cutoff_frequency : 值大于1表示文档数,0-1.0表示占比。 此处界定 文档频率大于 0.1%的词为高频词。

    示例2:

    GET /_search
    {
        "query": {
            "common": {
                "body": {
                    "query": "nelly the elephant as a cartoon",
                    "cutoff_frequency": 0.001,
                    "low_freq_operator": "and"
                }
            }
        }
    }
    说明:low_freq_operator指定对低频词做与操作

    可用参数:minimum_should_match (high_freq, low_freq), low_freq_operator (default “or”) and high_freq_operator (default “or”)、 boost and analyzer

    示例3:

    GET /_search
    {
        "query": {
            "common": {
                "body": {
                    "query": "nelly the elephant as a cartoon",
                    "cutoff_frequency": 0.001,
                    "minimum_should_match": 2
                }
            }
        }
    }

    示例4:

    GET /_search
    {
        "query": {
            "common": {
                "body": {
                    "query": "nelly the elephant not as a cartoon",
                    "cutoff_frequency": 0.001,
                    "minimum_should_match": {
                        "low_freq" : 2,
                        "high_freq" : 3
                    }
                }
            }
        }
    }

    示例5:

    8. Query string query

    query_string 查询,让我们可以直接用lucene查询语法写一个查询串进行查询,ES中接到请求后,通过查询解析器解析查询串生成对应的查询。使用它要求掌握lucene的查询语法。

     示例1:指定单个字段查询

    
    GET /_search
    {
        "query": {
            "query_string" : {
                "default_field" : "content",
                "query" : "this AND that OR thus"
            }
        }
    }
    

     示例2:指定多字段通配符查询

    
    GET /_search
    {
        "query": {
            "query_string" : {
                "fields" : ["content", "name.*^5"],
                "query" : "this AND that OR thus"
            }
        }
    }
    

     可与query同用的参数,如 default_field、fields,及query 串的语法请参考:

    https://www.elastic.co/guide/en/elasticsearch/reference/current/query-dsl-query-string-query.html

     9. 查询描述规则语法(查询解析语法)

    Term 词项:

    单个词项的表示: 电脑
    短语的表示: "联想笔记本电脑"

    Field 字段:

    字段名:
    示例: name:“联想笔记本电脑” AND type:电脑
    如果name是默认字段,则可写成: “联想笔记本电脑” AND type:电脑
    如果查询串是:type:电脑 计算机 手机
    注意:只有第一个是type的值,后两个则是使用默认字段。

     Term Modifiers 词项修饰符:

     

    10. Simple Query string query

    simple_query_string 查同 query_string 查询一样用lucene查询语法写查询串,较query_string不同的地方:更小的语法集;查询串有错误,它会忽略错误的部分,不抛出错误。更适合给用户使用。

     示例:

    GET /_search
    {
      "query": {
        "simple_query_string" : {
            "query": ""fried eggs" +(eggplant | potato) -frittata",
            "fields": ["title^5", "body"],
            "default_operator": "and"
        }
      }
    }

     语法请参考:

    https://www.elastic.co/guide/en/elasticsearch/reference/current/query-dsl-simple-query-string-query.html

     11. Term level querys

     

    官网链接:

    https://www.elastic.co/guide/en/elasticsearch/reference/current/term-level-queries.html

     11.1 Term query

    term 查询用于查询指定字段包含某个词项的文档。

     示例1:

    POST _search
    {
      "query": {
        "term" : { "user" : "Kimchy" } 
      }
    }

     示例2:加权重

    GET _search
    {
      "query": {
        "bool": {
          "should": [
            {
              "term": {
                "status": {
                  "value": "urgent",
                  "boost": 2
                }
              }
            },
            {
              "term": {
                "status": "normal"
              }
            }
          ]
        }
      }
    }

     11.2 Terms query

     terms 查询用于查询指定字段包含某些词项的文档

    GET /_search
    {
        "query": {
            "terms" : { "user" : ["kimchy", "elasticsearch"]}
        }
    }

    Terms 查询支持嵌套查询的方式来获得查询词项,相当于 in (select term from other)

    示例1:Terms query 嵌套查询示例

    PUT /users/_doc/2
    {
        "followers" : ["1", "3"]
    }
    
    PUT /tweets/_doc/1
    {
        "user" : "1"
    }
    
    GET /tweets/_search
    {
      "query": {
        "terms": {
          "user": {
            "index": "users",
            "type": "_doc",
            "id": "2",
            "path": "followers"
          }
        }
      }
    }

    查询结果:

    
    {
      "took": 14,
      "timed_out": false,
      "_shards": {
        "total": 5,
        "successful": 5,
        "skipped": 0,
        "failed": 0
      },
      "hits": {
        "total": 1,
        "max_score": 1,
        "hits": [
          {
            "_index": "tweets",
            "_type": "_doc",
            "_id": "1",
            "_score": 1,
            "_source": {
              "user": "1"
            }
          }
        ]
      }
    }
    

    嵌套查询可用参数说明:

    11.3 range query

     范围查询示例1:

    
    GET _search
    {
        "query": {
            "range" : {
                "age" : {
                    "gte" : 10,
                    "lte" : 20,
                    "boost" : 2.0
                }
            }
        }
    }
    

      范围查询示例2:

    GET _search
    {
        "query": {
            "range" : {
                "date" : {
                    "gte" : "now-1d/d",
                    "lt" :  "now/d"
                }
            }
        }
    }

      范围查询示例3:

    GET _search
    {
        "query": {
            "range" : {
                "born" : {
                    "gte": "01/01/2012",
                    "lte": "2013",
                    "format": "dd/MM/yyyy||yyyy"
                }
            }
        }
    }

     范围查询参数说明:

    范围查询时间舍入 ||说明:

    时间数学计算规则请参考:

    https://www.elastic.co/guide/en/elasticsearch/reference/current/common-options.html#date-math

    11.4 exists  query

    查询指定字段值不为空的文档。相当 SQL 中的 column is not null

    GET /_search
    {
        "query": {
            "exists" : { "field" : "user" }
        }
    }

    查询指定字段值为空的文档

    GET /_search
    {
      "query": {
        "bool": {
          "must_not": {
            "exists": {
              "field": "user"
            }
          }
        }
      }
    }

     11.5 prefix query 词项前缀查询

     示例1:

    GET /_search
    { "query": {
        "prefix" : { "user" : "ki" }
      }
    }

     示例2:加权

    GET /_search
    { "query": {
        "prefix" : { "user" :  { "value" : "ki", "boost" : 2.0 } }
      }
    }

     11.6 wildcard query 通配符查询: ? *

     示例1:

    GET /_search
    {
        "query": {
            "wildcard" : { "user" : "ki*y" }
        }
    }

     示例2:加权

    GET /_search
    {
      "query": {
        "wildcard": {
          "user": {
            "value": "ki*y",
            "boost": 2
          }
        }
      }}

    11.7  regexp query   正则查询

    示例1:

    GET /_search
    {
        "query": {
            "regexp":{
                "name.first": "s.*y"
            }
        }
    }

    示例2:加权

    GET /_search
    {
        "query": {
            "regexp":{
                "name.first":{
                    "value":"s.*y",
                    "boost":1.2
                }
            }
        }
    }

    正则语法请参考:

    https://www.elastic.co/guide/en/elasticsearch/reference/current/query-dsl-regexp-query.html#regexp-syntax

    11.8 fuzzy query 模糊查询

    示例1:

    GET /_search
    {
        "query": {
           "fuzzy" : { "user" : "ki" }
        }
    }

    示例2:

    GET /_search
    {
        "query": {
            "fuzzy" : {
                "user" : {
                    "value": "ki",
                    "boost": 1.0,
                    "fuzziness": 2,
                    "prefix_length": 0,
                    "max_expansions": 100
                }
            }
        }
    }

    11.9 type query   mapping type 查询

    GET /_search
    {
        "query": {
            "type" : {
                "value" : "_doc"
            }
        }
    }

    11.10 ids query   根据文档id查询

    GET /_search
    {
        "query": {
            "ids" : {
                "type" : "_doc",
                "values" : ["1", "4", "100"]
            }
        }
    }

    12. Compound querys 复合查询

     官网链接:

    https://www.elastic.co/guide/en/elasticsearch/reference/current/compound-queries.html

     12.1 Constant Score query

     用来包装另一个查询,将查询匹配的文档的评分设为一个常值。

    GET /_search
    {
        "query": {
            "constant_score" : {
                "filter" : {
                    "term" : { "user" : "kimchy"}
                },
                "boost" : 1.2
            }
        }
    }

     12.2 Bool query

     Bool 查询用bool操作来组合多个查询字句为一个查询。 可用的关键字:

     

    示例:

    POST _search
    {
      "query": {
        "bool" : {
          "must" : {
            "term" : { "user" : "kimchy" }
          },
          "filter": {
            "term" : { "tag" : "tech" }
          },
          "must_not" : {
            "range" : {
              "age" : { "gte" : 10, "lte" : 20 }
            }
          },
          "should" : [
            { "term" : { "tag" : "wow" } },
            { "term" : { "tag" : "elasticsearch" } }
          ],
          "minimum_should_match" : 1,
          "boost" : 1.0
        }
      }
    }

     说明:should满足一个或者两个或者都不满足

    转自:推荐博客地址

    https://www.cnblogs.com/leeSmall/p/9206641.html 

    正因为当初对未来做了太多的憧憬,所以对现在的自己尤其失望。生命中曾经有过的所有灿烂,终究都需要用寂寞来偿还。
  • 相关阅读:
    机器学习手稿--NumPy篇
    机器学习手稿--PyTorch篇
    算法相关库
    如何保存用户的登录状态
    Go开发新手需知:Printf、Sprintf、Println 的区别
    二、Bean生命周期中AOP的流程
    Spring 注解驱动开发-IOC (精华版)
    我是如何编写流程图程序的?
    微前端架构设计之 WebSocket API 断连后重连的设计方案
    工具-使用distinct方法去重对象List
  • 原文地址:https://www.cnblogs.com/candlia/p/11919906.html
Copyright © 2011-2022 走看看