Elasticsearch筛选器文档按字段分组

盖尼

我有一些文件:

{"name": "John", "district": 1},
{"name": "Mary", "district": 2},
{"name": "Nick", "district": 1},
{"name": "Bob", "district": 3},
{"name": "Kenny", "district": 1}

如何按地区过滤/选择不同的文档?

{"name": "John", "district": 1},
{"name": "Mary", "district": 2},
{"name": "Bob", "district": 3}

在SQL中,我可以使用GROUP BY。我尝试了术语聚合,但返回的计数却不一样。

"aggs": {
  "distinct": {
    "terms": {
      "field": "district",
      "size": 0
    }
  }
}

谢谢您帮忙!:-)

托马斯·C

如果您的ElasticSearch版本为1.3或更高版本,则可以使用top_hits类型的子聚合,默认情况下,它将为您提供按查询得分排序的前三个匹配文档(此处为1,因为您使用match_all查询)。

您可以将size参数设置为3以上。

以下数据集和查询:

POST /test/districts/
{"name": "John", "district": 1}

POST /test/districts/
{"name": "Mary", "district": 2}

POST /test/districts/
{"name": "Nick", "district": 1}

POST /test/districts/
{"name": "Bob", "district": 3}

POST test/districts/_search
{
  "size": 0, 
  "aggs":{
    "by_district":{
      "terms": {
        "field": "district",
        "size": 0
      },
      "aggs": {
        "tops": {
          "top_hits": {
            "size": 10
          }
        }
      }
    }
  }
}

将以您想要的方式输出文档:

{
   "took": 5,
   "timed_out": false,
   "_shards": {
      "total": 5,
      "successful": 5,
      "failed": 0
   },
   "hits": {
      "total": 4,
      "max_score": 0,
      "hits": []
   },
   "aggregations": {
      "by_district": {
         "buckets": [
            {
               "key": 1,
               "key_as_string": "1",
               "doc_count": 2,
               "tops": {
                  "hits": {
                     "total": 2,
                     "max_score": 1,
                     "hits": [
                        {
                           "_index": "test",
                           "_type": "districts",
                           "_id": "XYHu4I-JQcOfLm3iWjTiOg",
                           "_score": 1,
                           "_source": {
                              "name": "John",
                              "district": 1
                           }
                        },
                        {
                           "_index": "test",
                           "_type": "districts",
                           "_id": "5dul2XMTRC2IpV_tKRRltA",
                           "_score": 1,
                           "_source": {
                              "name": "Nick",
                              "district": 1
                           }
                        }
                     ]
                  }
               }
            },
            {
               "key": 2,
               "key_as_string": "2",
               "doc_count": 1,
               "tops": {
                  "hits": {
                     "total": 1,
                     "max_score": 1,
                     "hits": [
                        {
                           "_index": "test",
                           "_type": "districts",
                           "_id": "I-9Gd4OYSRuexhP1dCdQ-g",
                           "_score": 1,
                           "_source": {
                              "name": "Mary",
                              "district": 2
                           }
                        }
                     ]
                  }
               }
            },
            {
               "key": 3,
               "key_as_string": "3",
               "doc_count": 1,
               "tops": {
                  "hits": {
                     "total": 1,
                     "max_score": 1,
                     "hits": [
                        {
                           "_index": "test",
                           "_type": "districts",
                           "_id": "bti2y-OUT3q2mBNhhI3xeA",
                           "_score": 1,
                           "_source": {
                              "name": "Bob",
                              "district": 3
                           }
                        }
                     ]
                  }
               }
            }
         ]
      }
   }
}

本文收集自互联网,转载请注明来源。

如有侵权,请联系 [email protected] 删除。

编辑于
0

我来说两句

0 条评论
登录 后参与评论

相关文章