zoukankan      html  css  js  c++  java
  • Apache Doris 学习笔记: Backend执行Fragment

    Executor Nodes

    和impala的架构类似,一个sql语句从client输入给Doris,会先经过fe(frontend)解析并生成若干fragment,
    再分配并传递给be(backend)执行.

    查看执行计划

    这里可以使用explain来查看一个查询的具体执行计划是什么样的.

    explain select sum(table1.pv) from table1 join table2 on table1.siteid=table2.siteid group by table1.siteid;

    输出为:

    +-------------------------------------------------------------------------+
    | Explain String                                                          |
    +-------------------------------------------------------------------------+
    | PLAN FRAGMENT 0                                                         |
    |  OUTPUT EXPRS:<slot 4> sum(`table1`.`pv`)                               |
    |   PARTITION: HASH_PARTITIONED: `default_cluster:test`.`table1`.`siteid` |
    |                                                                         |
    |   RESULT SINK                                                           |
    |                                                                         |
    |   3:AGGREGATE (update finalize)                                         |
    |   |  output: sum(`table1`.`pv`)                                         |
    |   |  group by: `table1`.`siteid`                                        |
    |   |  cardinality=-1                                                     |
    |   |                                                                     |
    |   2:HASH JOIN                                                           |
    |   |  join op: INNER JOIN (BROADCAST)                                    |
    |   |  hash predicates:                                                   |
    |   |  colocate: false, reason: Tables are not in the same group          |
    |   |  equal join conjunct: `table1`.`siteid` = `table2`.`siteid`         |
    |   |  runtime filters: RF000[in] <- `table2`.`siteid`                    |
    |   |  cardinality=0                                                      |
    |   |                                                                     |
    |   |----4:EXCHANGE                                                       |
    |   |                                                                     |
    |   0:OlapScanNode                                                        |
    |      TABLE: table1                                                      |
    |      PREAGGREGATION: ON                                                 |
    |      runtime filters: RF000[in] -> `table1`.`siteid`                    |
    |      partitions=0/1                                                     |
    |      rollup: null                                                       |
    |      tabletRatio=0/0                                                    |
    |      tabletList=                                                        |
    |      cardinality=0                                                      |
    |      avgRowSize=12.0                                                    |
    |      numNodes=1                                                         |
    |                                                                         |
    | PLAN FRAGMENT 1                                                         |
    |  OUTPUT EXPRS:                                                          |
    |   PARTITION: RANDOM                                                     |
    |                                                                         |
    |   STREAM DATA SINK                                                      |
    |     EXCHANGE ID: 04                                                     |
    |     UNPARTITIONED                                                       |
    |                                                                         |
    |   1:OlapScanNode                                                        |
    |      TABLE: table2                                                      |
    |      PREAGGREGATION: OFF. Reason: null                                  |
    |      partitions=0/3                                                     |
    |      rollup: null                                                       |
    |      tabletRatio=0/0                                                    |
    |      tabletList=                                                        |
    |      cardinality=0                                                      |
    |      avgRowSize=4.0                                                     |
    |      numNodes=1                                                         |
    +-------------------------------------------------------------------------+
    

    explain graph则能看到图形化的树形执行计划.

    explain graph select sum(table1.pv) from table1 join table2 on table1.siteid=table2.siteid group by table1.siteid;

    +------------------------------------------------------------------------------------------------------------+
    | Explain String                                                                                             |
    +------------------------------------------------------------------------------------------------------------+
    |             ┌───────────────┐                                                                              |
    |             │[3: ResultSink]│                                                                              |
    |             │[Fragment: 0]  │                                                                              |
    |             │RESULT SINK    │                                                                              |
    |             └───────────────┘                                                                              |
    |                     │                                                                                      |
    |                     │                                                                                      |
    |    ┌────────────────────────────────┐                                                                      |
    |    │[3: AGGREGATE (update finalize)]│                                                                      |
    |    │[Fragment: 0]                   │                                                                      |
    |    └────────────────────────────────┘                                                                      |
    |                     │                                                                                      |
    |                     │                                                                                      |
    |     ┌───────────────────────────────┐                                                                      |
    |     │[2: HASH JOIN]                 │                                                                      |
    |     │[Fragment: 0]                  │                                                                      |
    |     │join op: INNER JOIN (BROADCAST)│                                                                      |
    |     └───────────────────────────────┘                                                                      |
    |          ┌──────────┴─────────┐                                                                            |
    |          │                    │                                                                            |
    | ┌─────────────────┐    ┌─────────────┐                                                                     |
    | │[0: OlapScanNode]│    │[4: EXCHANGE]│                                                                     |
    | │[Fragment: 0]    │    │[Fragment: 0]│                                                                     |
    | │TABLE: table1    │    └─────────────┘                                                                     |
    | └─────────────────┘           │                                                                            |
    |                               │                                                                            |
    |                     ┌───────────────────┐                                                                  |
    |                     │[4: DataStreamSink]│                                                                  |
    |                     │[Fragment: 1]      │                                                                  |
    |                     │STREAM DATA SINK   │                                                                  |
    |                     │  EXCHANGE ID: 04  │                                                                  |
    |                     │  UNPARTITIONED    │                                                                  |
    |                     └───────────────────┘                                                                  |
    |                               │                                                                            |
    |                               │                                                                            |
    |                      ┌─────────────────┐                                                                   |
    |                      │[1: OlapScanNode]│                                                                   |
    |                      │[Fragment: 1]    │                                                                   |
    |                      │TABLE: table2    │                                                                   |
    |                      └─────────────────┘                                                                   |
    +------------------------------------------------------------------------------------------------------------+
    

    执行计划树由exec node(算子)组成,以上面的查询为例,数据从树的叶子节点往上一直到根节点,经过一系列操作最终得到查询结果.

    接下来我们具体分析这个计划树中的各个节点分别起什么作用.

    首先,这个查询被规划成了2个fragment,分别为\(f_{0}\)\(f_{1}\).
    其中\(f_{1}\)\(f_{0}\)的子树,它最底层的OlapScanNode从存储层读取table2的数据,然后经过DataStreamSinkNode,将数据传递给\(f_{0}\).

    \(f_{0}\)\(f_{1}\)所代表的子树表示为一个ExchangeNode,从\(f_{1}\)接受数据.

    并且它自身也通过一个OlapScanNode读取了table1的数据. table1table2HashJoinNode被join算子合并。
    然后向上传递给AggregateNode(sum函数的聚合算子),最终结果通过ResultSinkNode返回给fe.

    我们可以发现查询规划实际上通过从执行计划树拆分出若干子树的方式,实现Shared Nothing的分布式执行.


    未完待续

  • 相关阅读:
    种类并查集——带权并查集——POJ1182;HDU3038
    【并查集之判断连通无环图】
    jmeter响应断言通过,结果树中却显示红色
    jmeter获取登录token
    jmeter查看结果树中响应数据Unicode转换成中文
    jmeter分布式测试
    jmeter连接mysql测试
    jmeter集合点
    jmeter之参数化
    jmeter之断言(3种)
  • 原文地址:https://www.cnblogs.com/bitetheddddt/p/15211905.html
Copyright © 2011-2022 走看看