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Posted to dev@hive.apache.org by "Mostafa Mokhtar (JIRA)" <ji...@apache.org> on 2014/10/30 16:54:33 UTC

[jira] [Created] (HIVE-8671) Overflow in estimate row count and data size with fetch column stats

Mostafa Mokhtar created HIVE-8671:
-------------------------------------

             Summary: Overflow in estimate row count and data size with fetch column stats
                 Key: HIVE-8671
                 URL: https://issues.apache.org/jira/browse/HIVE-8671
             Project: Hive
          Issue Type: Bug
          Components: Physical Optimizer
    Affects Versions: 0.14.0
            Reporter: Mostafa Mokhtar
            Assignee: Prasanth J
            Priority: Critical
             Fix For: 0.14.0


Overflow in row counts and data size for several TPC-DS queries.
Interestingly the operators which have overflow end up running with a small parallelism.

For instance Reducer 2 has an overflow but it only runs with parallelism of 2.
{code}
       Reducer 2 
            Reduce Operator Tree:
              Group By Operator
                aggregations: sum(VALUE._col0)
                keys: KEY._col0 (type: string), KEY._col1 (type: string), KEY._col2 (type: string), KEY._col3 (type: string), KEY._col4 (type: float)
                mode: mergepartial
                outputColumnNames: _col0, _col1, _col2, _col3, _col4, _col5
                Statistics: Num rows: 9223372036854775807 Data size: 9223372036854775341 Basic stats: COMPLETE Column stats: COMPLETE
                Reduce Output Operator
                  key expressions: _col3 (type: string), _col3 (type: string)
                  sort order: ++
                  Map-reduce partition columns: _col3 (type: string)
                  Statistics: Num rows: 9223372036854775807 Data size: 9223372036854775341 Basic stats: COMPLETE Column stats: COMPLETE
                  value expressions: _col0 (type: string), _col1 (type: string), _col2 (type: string), _col3 (type: string), _col4 (type: float), _col5 (type: double)
            Execution mode: vectorized
{code}

{code}
VERTEX       TOTAL_TASKS  FAILED_TASKS KILLED_TASKS    DURATION_SECONDS     CPU_TIME_MILLIS GC_TIME_MILLIS  INPUT_RECORDS   OUTPUT_RECORDS 
Map 1                 62             0            0               26.41           1,779,510        22,242     211,978,502       60,628,390
Map 5                  1             0            0                4.28               6,950            85         138,098          138,098
Map 6                  1             0            0                2.44               3,910            28              31               31
Reducer 2              2             0            0               22.69              61,320         1,724      60,628,390           69,182
Reducer 3              1             0            0                2.63               3,910            19          69,182              100
Reducer 4              1             0            0                1.01               1,180            33             100              100
{code}

Query
{code}
explain  
select  i_item_desc 
      ,i_category 
      ,i_class 
      ,i_current_price
      ,i_item_id
      ,sum(ws_ext_sales_price) as itemrevenue 
      ,sum(ws_ext_sales_price)*100/sum(sum(ws_ext_sales_price)) over
          (partition by i_class) as revenueratio
from	
	web_sales
    	,item 
    	,date_dim
where 
	web_sales.ws_item_sk = item.i_item_sk 
  	and item.i_category in ('Jewelry', 'Sports', 'Books')
  	and web_sales.ws_sold_date_sk = date_dim.d_date_sk
	and date_dim.d_date between '2001-01-12' and '2001-02-11'
group by 
	i_item_id
        ,i_item_desc 
        ,i_category
        ,i_class
        ,i_current_price
order by 
	i_category
        ,i_class
        ,i_item_id
        ,i_item_desc
        ,revenueratio
limit 100
{code}

Explain 
{code}
STAGE PLANS:
  Stage: Stage-1
    Tez
      Edges:
        Map 1 <- Map 5 (BROADCAST_EDGE), Map 6 (BROADCAST_EDGE)
        Reducer 2 <- Map 1 (SIMPLE_EDGE)
        Reducer 3 <- Reducer 2 (SIMPLE_EDGE)
        Reducer 4 <- Reducer 3 (SIMPLE_EDGE)
      DagName: mmokhtar_20141019164343_854cb757-01bd-40cb-843e-9ada7c5e6f38:1
      Vertices:
        Map 1 
            Map Operator Tree:
                TableScan
                  alias: web_sales
                  filterExpr: ws_item_sk is not null (type: boolean)
                  Statistics: Num rows: 21594638446 Data size: 2850189889652 Basic stats: COMPLETE Column stats: COMPLETE
                  Filter Operator
                    predicate: ws_item_sk is not null (type: boolean)
                    Statistics: Num rows: 21594638446 Data size: 172746300152 Basic stats: COMPLETE Column stats: COMPLETE
                    Select Operator
                      expressions: ws_item_sk (type: int), ws_ext_sales_price (type: float), ws_sold_date_sk (type: int)
                      outputColumnNames: _col0, _col1, _col2
                      Statistics: Num rows: 21594638446 Data size: 172746300152 Basic stats: COMPLETE Column stats: COMPLETE
                      Map Join Operator
                        condition map:
                             Inner Join 0 to 1
                        condition expressions:
                          0 {_col0} {_col1}
                          1 
                        keys:
                          0 _col2 (type: int)
                          1 _col0 (type: int)
                        outputColumnNames: _col0, _col1
                        input vertices:
                          1 Map 6
                        Statistics: Num rows: 24145061366 Data size: 193160490928 Basic stats: COMPLETE Column stats: COMPLETE
                        Map Join Operator
                          condition map:
                               Inner Join 0 to 1
                          condition expressions:
                            0 {_col1}
                            1 {_col1} {_col2} {_col3} {_col4} {_col5}
                          keys:
                            0 _col0 (type: int)
                            1 _col0 (type: int)
                          outputColumnNames: _col1, _col6, _col7, _col8, _col9, _col10
                          input vertices:
                            1 Map 5
                          Statistics: Num rows: 25381041158 Data size: 11929089344260 Basic stats: COMPLETE Column stats: COMPLETE
                          Select Operator
                            expressions: _col6 (type: string), _col7 (type: string), _col10 (type: string), _col9 (type: string), _col8 (type: float), _col1 (type: float)
                            outputColumnNames: _col0, _col1, _col2, _col3, _col4, _col5
                            Statistics: Num rows: 25381041158 Data size: 11929089344260 Basic stats: COMPLETE Column stats: COMPLETE
                            Group By Operator
                              aggregations: sum(_col5)
                              keys: _col0 (type: string), _col1 (type: string), _col2 (type: string), _col3 (type: string), _col4 (type: float)
                              mode: hash
                              outputColumnNames: _col0, _col1, _col2, _col3, _col4, _col5
                              Statistics: Num rows: 119291 Data size: 954328 Basic stats: COMPLETE Column stats: COMPLETE
                              Reduce Output Operator
                                key expressions: _col0 (type: string), _col1 (type: string), _col2 (type: string), _col3 (type: string), _col4 (type: float)
                                sort order: +++++
                                Map-reduce partition columns: _col0 (type: string), _col1 (type: string), _col2 (type: string), _col3 (type: string), _col4 (type: float)
                                Statistics: Num rows: 119291 Data size: 954328 Basic stats: COMPLETE Column stats: COMPLETE
                                value expressions: _col5 (type: double)
            Execution mode: vectorized
        Map 5 
            Map Operator Tree:
                TableScan
                  alias: item
                  filterExpr: ((i_category) IN ('Jewelry', 'Sports', 'Books') and i_item_sk is not null) (type: boolean)
                  Statistics: Num rows: 462000 Data size: 663862160 Basic stats: COMPLETE Column stats: COMPLETE
                  Filter Operator
                    predicate: ((i_category) IN ('Jewelry', 'Sports', 'Books') and i_item_sk is not null) (type: boolean)
                    Statistics: Num rows: 231000 Data size: 109491664 Basic stats: COMPLETE Column stats: COMPLETE
                    Select Operator
                      expressions: i_item_sk (type: int), i_item_id (type: string), i_item_desc (type: string), i_current_price (type: float), i_class (type: string), i_category (type: string)
                      outputColumnNames: _col0, _col1, _col2, _col3, _col4, _col5
                      Statistics: Num rows: 231000 Data size: 109491664 Basic stats: COMPLETE Column stats: COMPLETE
                      Reduce Output Operator
                        key expressions: _col0 (type: int)
                        sort order: +
                        Map-reduce partition columns: _col0 (type: int)
                        Statistics: Num rows: 231000 Data size: 109491664 Basic stats: COMPLETE Column stats: COMPLETE
                        value expressions: _col1 (type: string), _col2 (type: string), _col3 (type: float), _col4 (type: string), _col5 (type: string)
            Execution mode: vectorized
        Map 6 
            Map Operator Tree:
                TableScan
                  alias: date_dim
                  filterExpr: (d_date BETWEEN '2001-01-12' AND '2001-02-11' and d_date_sk is not null) (type: boolean)
                  Statistics: Num rows: 73049 Data size: 81741831 Basic stats: COMPLETE Column stats: COMPLETE
                  Filter Operator
                    predicate: (d_date BETWEEN '2001-01-12' AND '2001-02-11' and d_date_sk is not null) (type: boolean)
                    Statistics: Num rows: 36524 Data size: 3579352 Basic stats: COMPLETE Column stats: COMPLETE
                    Select Operator
                      expressions: d_date_sk (type: int)
                      outputColumnNames: _col0
                      Statistics: Num rows: 36524 Data size: 146096 Basic stats: COMPLETE Column stats: COMPLETE
                      Reduce Output Operator
                        key expressions: _col0 (type: int)
                        sort order: +
                        Map-reduce partition columns: _col0 (type: int)
                        Statistics: Num rows: 36524 Data size: 146096 Basic stats: COMPLETE Column stats: COMPLETE
                      Select Operator
                        expressions: _col0 (type: int)
                        outputColumnNames: _col0
                        Statistics: Num rows: 36524 Data size: 0 Basic stats: PARTIAL Column stats: COMPLETE
                        Group By Operator
                          keys: _col0 (type: int)
                          mode: hash
                          outputColumnNames: _col0
                          Statistics: Num rows: 36524 Data size: 0 Basic stats: PARTIAL Column stats: COMPLETE
                          Dynamic Partitioning Event Operator
                            Target Input: web_sales
                            Partition key expr: ws_sold_date_sk
                            Statistics: Num rows: 36524 Data size: 0 Basic stats: PARTIAL Column stats: COMPLETE
                            Target column: ws_sold_date_sk
                            Target Vertex: Map 1
            Execution mode: vectorized
        Reducer 2 
            Reduce Operator Tree:
              Group By Operator
                aggregations: sum(VALUE._col0)
                keys: KEY._col0 (type: string), KEY._col1 (type: string), KEY._col2 (type: string), KEY._col3 (type: string), KEY._col4 (type: float)
                mode: mergepartial
                outputColumnNames: _col0, _col1, _col2, _col3, _col4, _col5
                Statistics: Num rows: 119291 Data size: 1908656 Basic stats: COMPLETE Column stats: COMPLETE
                Reduce Output Operator
                  key expressions: _col3 (type: string), _col3 (type: string)
                  sort order: ++
                  Map-reduce partition columns: _col3 (type: string)
                  Statistics: Num rows: 119291 Data size: 1908656 Basic stats: COMPLETE Column stats: COMPLETE
                  value expressions: _col0 (type: string), _col1 (type: string), _col2 (type: string), _col3 (type: string), _col4 (type: float), _col5 (type: double)
            Execution mode: vectorized
        Reducer 3 
            Reduce Operator Tree:
              Extract
                Statistics: Num rows: 119291 Data size: 1908656 Basic stats: COMPLETE Column stats: COMPLETE
                PTF Operator
                  Statistics: Num rows: 119291 Data size: 1908656 Basic stats: COMPLETE Column stats: COMPLETE
                  Select Operator
                    expressions: _col1 (type: string), _col2 (type: string), _col3 (type: string), _col4 (type: float), _col0 (type: string), _col5 (type: double), ((_col5 * 100.0) / _wcol0) (type: double)
                    outputColumnNames: _col0, _col1, _col2, _col3, _col4, _col5, _col6
                    Statistics: Num rows: 119291 Data size: 954328 Basic stats: COMPLETE Column stats: COMPLETE
                    Reduce Output Operator
                      key expressions: _col1 (type: string), _col2 (type: string), _col4 (type: string), _col0 (type: string), _col6 (type: double)
                      sort order: +++++
                      Statistics: Num rows: 119291 Data size: 954328 Basic stats: COMPLETE Column stats: COMPLETE
                      TopN Hash Memory Usage: 0.04
                      value expressions: _col3 (type: float), _col5 (type: double)
        Reducer 4 
            Reduce Operator Tree:
              Select Operator
                expressions: KEY.reducesinkkey3 (type: string), KEY.reducesinkkey0 (type: string), KEY.reducesinkkey1 (type: string), VALUE._col0 (type: float), KEY.reducesinkkey2 (type: string), VALUE._col1 (type: double), KEY.reducesinkkey4 (type: double)
                outputColumnNames: _col0, _col1, _col2, _col3, _col4, _col5, _col6
                Statistics: Num rows: 119291 Data size: 954328 Basic stats: COMPLETE Column stats: COMPLETE
                Limit
                  Number of rows: 100
                  Statistics: Num rows: 100 Data size: 800 Basic stats: COMPLETE Column stats: COMPLETE
                  File Output Operator
                    compressed: false
                    Statistics: Num rows: 100 Data size: 800 Basic stats: COMPLETE Column stats: COMPLETE
                    table:
                        input format: org.apache.hadoop.mapred.TextInputFormat
                        output format: org.apache.hadoop.hive.ql.io.HiveIgnoreKeyTextOutputFormat
                        serde: org.apache.hadoop.hive.serde2.lazy.LazySimpleSerDe
            Execution mode: vectorized

  Stage: Stage-0
    Fetch Operator
      limit: 100
      Processor Tree:
        ListSink

{code}



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