druid-docs-cn/querying/timeseriesquery.md

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Timeseries查询

[!WARNING] Apache Druid支持两种查询语言 Druid SQL原生查询。该文档描述了原生查询中的一种查询方式。 对于Druid SQL中使用的该种类型的信息可以参考 SQL文档

该类型的查询将会得到一个时间序列的查询结果返回的是一个JSON对象数组数组中的每一个对象表示被Timeseries查询所查的值。

一个Timeseries查询的实例如下

{
  "queryType": "timeseries",
  "dataSource": "sample_datasource",
  "granularity": "day",
  "descending": "true",
  "filter": {
    "type": "and",
    "fields": [
      { "type": "selector", "dimension": "sample_dimension1", "value": "sample_value1" },
      { "type": "or",
        "fields": [
          { "type": "selector", "dimension": "sample_dimension2", "value": "sample_value2" },
          { "type": "selector", "dimension": "sample_dimension3", "value": "sample_value3" }
        ]
      }
    ]
  },
  "aggregations": [
    { "type": "longSum", "name": "sample_name1", "fieldName": "sample_fieldName1" },
    { "type": "doubleSum", "name": "sample_name2", "fieldName": "sample_fieldName2" }
  ],
  "postAggregations": [
    { "type": "arithmetic",
      "name": "sample_divide",
      "fn": "/",
      "fields": [
        { "type": "fieldAccess", "name": "postAgg__sample_name1", "fieldName": "sample_name1" },
        { "type": "fieldAccess", "name": "postAgg__sample_name2", "fieldName": "sample_name2" }
      ]
    }
  ],
  "intervals": [ "2012-01-01T00:00:00.000/2012-01-03T00:00:00.000" ]
}

时间序列查询主要包括7个主要部分

属性 描述 是否必须
queryType 该字符串总是"timeseries"; 该字段告诉Apache Druid如何去解释这个查询
dataSource 用来标识查询的的字符串或者对象,与关系型数据库中的表类似。查看数据源可以获得更多信息
descending 是否对结果集进行降序排序,默认是false, 也就是升序排列
intervals ISO-8601格式的JSON对象定义了要查询的时间范围
granularity 定义了查询结果的粒度,参见 Granularity
filter 参见 Filters
aggregations 参见 聚合
postAggregations 参见Post Aggregations
limit 限制返回结果数量的整数值默认是unlimited
context 可以被用来修改查询行为,包括 Grand TotalZero-filling。详情可以看 上下文参数部分中的所有参数类型

为了将所有数据集中起来,上面的查询将从"sample_datasource"表返回2个数据点在 2012-01-01 和 2012-01-03 期间每天一个。每个数据点将是sample_fieldName1的longSum、sample_fieldName2的doubleSum以及sample_fieldName1除以sample_fieldName2的double结果。输出如下

[
  {
    "timestamp": "2012-01-01T00:00:00.000Z",
    "result": { "sample_name1": <some_value>, "sample_name2": <some_value>, "sample_divide": <some_value> }
  },
  {
    "timestamp": "2012-01-02T00:00:00.000Z",
    "result": { "sample_name1": <some_value>, "sample_name2": <some_value>, "sample_divide": <some_value> }
  }
]

Grand Total(共计)

Druid可以在时间序列查询的结果集中增加一个额外的"总计"行,通过在上下文中增加 "grandTotal":true来启用该功能,例如:

{
  "queryType": "timeseries",
  "dataSource": "sample_datasource",
  "intervals": [ "2012-01-01T00:00:00.000/2012-01-03T00:00:00.000" ],
  "granularity": "day",
  "aggregations": [
    { "type": "longSum", "name": "sample_name1", "fieldName": "sample_fieldName1" },
    { "type": "doubleSum", "name": "sample_name2", "fieldName": "sample_fieldName2" }
  ],
  "context": {
    "grandTotal": true
  }
}

总计行将显示为结果数组中的最后一行,并且没有时间戳。即使查询以"降序"模式运行,它也将是最后一行。总计行中的后聚合将基于总计聚合计算。

Zero-filling(0填充)

Timeseries查询通常用零填充空的内部时间。例如如果对间隔2012-01-01/2012-01-04发出"Day"粒度时间序列查询并且2012-01-02不存在数据则将收到

[
  {
    "timestamp": "2012-01-01T00:00:00.000Z",
    "result": { "sample_name1": <some_value> }
  },
  {
   "timestamp": "2012-01-02T00:00:00.000Z",
   "result": { "sample_name1": 0 }
  },
  {
    "timestamp": "2012-01-03T00:00:00.000Z",
    "result": { "sample_name1": <some_value> }
  }
]

完全位于数据间隔之外的时间不是零填充的。

可以使用上下文标志"skipEmptyBuckets"禁用所有零填充。在此模式下将从结果中省略2012-01-02的数据点。

设置了此上下文标志的查询如下所示:

{
  "queryType": "timeseries",
  "dataSource": "sample_datasource",
  "granularity": "day",
  "aggregations": [
    { "type": "longSum", "name": "sample_name1", "fieldName": "sample_fieldName1" }
  ],
  "intervals": [ "2012-01-01T00:00:00.000/2012-01-04T00:00:00.000" ],
  "context" : {
    "skipEmptyBuckets": "true"
  }
}