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Posted to dev@hive.apache.org by "Laljo John Pullokkaran (JIRA)" <ji...@apache.org> on 2014/10/11 03:45:34 UTC
[jira] [Commented] (HIVE-7913) Simplify filter predicates for CBO
[ https://issues.apache.org/jira/browse/HIVE-7913?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=14167934#comment-14167934 ]
Laljo John Pullokkaran commented on HIVE-7913:
----------------------------------------------
Duplicate of HIVE-7914.
> Simplify filter predicates for CBO
> ----------------------------------
>
> Key: HIVE-7913
> URL: https://issues.apache.org/jira/browse/HIVE-7913
> Project: Hive
> Issue Type: Bug
> Components: CBO
> Affects Versions: 0.13.1
> Reporter: Mostafa Mokhtar
> Assignee: Laljo John Pullokkaran
> Fix For: 0.14.0
>
>
> Simplify predicates for disjunctive predicates so that can get pushed down to the scan.
> For TPC-DS query 13 we push down predicates in the following form
> where c_martial_status in ('M','D','U') etc..
> {code}
> select avg(ss_quantity)
> ,avg(ss_ext_sales_price)
> ,avg(ss_ext_wholesale_cost)
> ,sum(ss_ext_wholesale_cost)
> from store_sales
> ,store
> ,customer_demographics
> ,household_demographics
> ,customer_address
> ,date_dim
> where store.s_store_sk = store_sales.ss_store_sk
> and store_sales.ss_sold_date_sk = date_dim.d_date_sk and date_dim.d_year = 2001
> and((store_sales.ss_hdemo_sk=household_demographics.hd_demo_sk
> and customer_demographics.cd_demo_sk = store_sales.ss_cdemo_sk
> and customer_demographics.cd_marital_status = 'M'
> and customer_demographics.cd_education_status = '4 yr Degree'
> and store_sales.ss_sales_price between 100.00 and 150.00
> and household_demographics.hd_dep_count = 3
> )or
> (store_sales.ss_hdemo_sk=household_demographics.hd_demo_sk
> and customer_demographics.cd_demo_sk = store_sales.ss_cdemo_sk
> and customer_demographics.cd_marital_status = 'D'
> and customer_demographics.cd_education_status = 'Primary'
> and store_sales.ss_sales_price between 50.00 and 100.00
> and household_demographics.hd_dep_count = 1
> ) or
> (store_sales.ss_hdemo_sk=household_demographics.hd_demo_sk
> and customer_demographics.cd_demo_sk = ss_cdemo_sk
> and customer_demographics.cd_marital_status = 'U'
> and customer_demographics.cd_education_status = 'Advanced Degree'
> and store_sales.ss_sales_price between 150.00 and 200.00
> and household_demographics.hd_dep_count = 1
> ))
> and((store_sales.ss_addr_sk = customer_address.ca_address_sk
> and customer_address.ca_country = 'United States'
> and customer_address.ca_state in ('KY', 'GA', 'NM')
> and store_sales.ss_net_profit between 100 and 200
> ) or
> (store_sales.ss_addr_sk = customer_address.ca_address_sk
> and customer_address.ca_country = 'United States'
> and customer_address.ca_state in ('MT', 'OR', 'IN')
> and store_sales.ss_net_profit between 150 and 300
> ) or
> (store_sales.ss_addr_sk = customer_address.ca_address_sk
> and customer_address.ca_country = 'United States'
> and customer_address.ca_state in ('WI', 'MO', 'WV')
> and store_sales.ss_net_profit between 50 and 250
> ))
> ;
> {code}
> This is the plan currently generated without any predicate simplification
> {code}
> STAGE DEPENDENCIES:
> Stage-1 is a root stage
> Stage-0 depends on stages: Stage-1
> STAGE PLANS:
> Stage: Stage-1
> Tez
> Edges:
> Map 7 <- Map 8 (BROADCAST_EDGE)
> Map 8 <- Map 5 (BROADCAST_EDGE), Map 6 (BROADCAST_EDGE)
> Reducer 2 <- Map 1 (SIMPLE_EDGE), Map 4 (BROADCAST_EDGE), Map 7 (SIMPLE_EDGE)
> Reducer 3 <- Reducer 2 (SIMPLE_EDGE)
> DagName: mmokhtar_20140828155050_7059c24b-501b-4683-86c0-4f3c023f0b0e:1
> Vertices:
> Map 1
> Map Operator Tree:
> TableScan
> alias: customer_address
> Statistics: Num rows: 40000000 Data size: 40595195284 Basic stats: COMPLETE Column stats: NONE
> Select Operator
> expressions: ca_address_sk (type: int), ca_state (type: string), ca_country (type: string)
> outputColumnNames: _col0, _col1, _col2
> Statistics: Num rows: 40000000 Data size: 40595195284 Basic stats: COMPLETE Column stats: NONE
> Reduce Output Operator
> sort order:
> Statistics: Num rows: 40000000 Data size: 40595195284 Basic stats: COMPLETE Column stats: NONE
> value expressions: _col0 (type: int), _col1 (type: string), _col2 (type: string)
> Execution mode: vectorized
> Map 4
> Map Operator Tree:
> TableScan
> alias: date_dim
> filterExpr: ((d_year = 2001) and d_date_sk is not null) (type: boolean)
> Statistics: Num rows: 73049 Data size: 81741831 Basic stats: COMPLETE Column stats: NONE
> Filter Operator
> predicate: ((d_year = 2001) and d_date_sk is not null) (type: boolean)
> Statistics: Num rows: 18262 Data size: 20435178 Basic stats: COMPLETE Column stats: NONE
> Select Operator
> expressions: d_date_sk (type: int)
> outputColumnNames: _col0
> Statistics: Num rows: 18262 Data size: 20435178 Basic stats: COMPLETE Column stats: NONE
> Reduce Output Operator
> key expressions: _col0 (type: int)
> sort order: +
> Map-reduce partition columns: _col0 (type: int)
> Statistics: Num rows: 18262 Data size: 20435178 Basic stats: COMPLETE Column stats: NONE
> Execution mode: vectorized
> Map 5
> Map Operator Tree:
> TableScan
> alias: household_demographics
> Statistics: Num rows: 7200 Data size: 770400 Basic stats: COMPLETE Column stats: NONE
> Select Operator
> expressions: hd_demo_sk (type: int), hd_dep_count (type: int)
> outputColumnNames: _col0, _col1
> Statistics: Num rows: 7200 Data size: 770400 Basic stats: COMPLETE Column stats: NONE
> Reduce Output Operator
> sort order:
> Statistics: Num rows: 7200 Data size: 770400 Basic stats: COMPLETE Column stats: NONE
> value expressions: _col0 (type: int), _col1 (type: int)
> Execution mode: vectorized
> Map 6
> Map Operator Tree:
> TableScan
> alias: store
> filterExpr: (true and s_store_sk is not null) (type: boolean)
> Statistics: Num rows: 1704 Data size: 3256276 Basic stats: COMPLETE Column stats: NONE
> Filter Operator
> predicate: s_store_sk is not null (type: boolean)
> Statistics: Num rows: 852 Data size: 1628138 Basic stats: COMPLETE Column stats: NONE
> Select Operator
> expressions: s_store_sk (type: int)
> outputColumnNames: _col0
> Statistics: Num rows: 852 Data size: 1628138 Basic stats: COMPLETE Column stats: NONE
> Reduce Output Operator
> sort order:
> Statistics: Num rows: 852 Data size: 1628138 Basic stats: COMPLETE Column stats: NONE
> value expressions: _col0 (type: int)
> Execution mode: vectorized
> Map 7
> Map Operator Tree:
> TableScan
> alias: store_sales
> filterExpr: (ss_store_sk is not null and ss_sold_date_sk is not null) (type: boolean)
> Statistics: Num rows: 82510879939 Data size: 7203833257964 Basic stats: COMPLETE Column stats: NONE
> Filter Operator
> predicate: (ss_store_sk is not null and ss_sold_date_sk is not null) (type: boolean)
> Statistics: Num rows: 20627719985 Data size: 1800958314512 Basic stats: COMPLETE Column stats: NONE
> Select Operator
> expressions: ss_sold_date_sk (type: int), ss_cdemo_sk (type: int), ss_hdemo_sk (type: int), ss_addr_sk (type: int), ss_store_sk (type: int), ss_quantity (type: int), ss_sales_price (type: float), ss_ext_sales_price (type: float), ss_ext_wholesale_cost (type: float), ss_net_profit (type: float)
> outputColumnNames: _col0, _col1, _col2, _col3, _col4, _col5, _col6, _col7, _col8, _col9
> Statistics: Num rows: 20627719985 Data size: 1800958314512 Basic stats: COMPLETE Column stats: NONE
> Map Join Operator
> condition map:
> Inner Join 0 to 1
> condition expressions:
> 0 {_col0} {_col1} {_col2} {_col4} {_col5}
> 1 {_col0} {_col1} {_col2} {_col3} {_col5} {_col6} {_col7} {_col8} {_col9}
> keys:
> 0 _col3 (type: int)
> 1 _col4 (type: int)
> outputColumnNames: _col0, _col1, _col2, _col4, _col5, _col6, _col7, _col8, _col9, _col11, _col12, _col13, _col14, _col15
> input vertices:
> 0 Map 8
> Statistics: Num rows: 22690492416 Data size: 1981054320640 Basic stats: COMPLETE Column stats: NONE
> Filter Operator
> predicate: (((_col8 = _col4) and ((_col0 = _col7) and ((_col1 = 'M') and ((_col2 = '4 yr Degree') and (_col12 BETWEEN 100 AND 150 and (_col5 = 3)))))) or (((_col8 = _col4) and ((_col0 = _col7) and ((_col1 = 'D') and ((_col2 = 'Primary') and (_col12 BETWEEN 50 AND 100 and (_col5 = 1)))))) or ((_col8 = _col4) and ((_col0 = _col7) and ((_col1 = 'U') and ((_col2 = 'Advanced Degree') and (_col12 BETWEEN 150 AND 200 and (_col5 = 1)))))))) (type: boolean)
> Statistics: Num rows: 1063616832 Data size: 92861921280 Basic stats: COMPLETE Column stats: NONE
> Select Operator
> expressions: _col6 (type: int), _col9 (type: int), _col11 (type: int), _col13 (type: float), _col14 (type: float), _col15 (type: float)
> outputColumnNames: _col0, _col3, _col5, _col7, _col8, _col9
> Statistics: Num rows: 1063616832 Data size: 92861921280 Basic stats: COMPLETE Column stats: NONE
> Reduce Output Operator
> sort order:
> Statistics: Num rows: 1063616832 Data size: 92861921280 Basic stats: COMPLETE Column stats: NONE
> value expressions: _col0 (type: int), _col3 (type: int), _col5 (type: int), _col7 (type: float), _col8 (type: float), _col9 (type: float)
> Execution mode: vectorized
> Map 8
> Map Operator Tree:
> TableScan
> alias: customer_demographics
> Statistics: Num rows: 1920800 Data size: 718379200 Basic stats: COMPLETE Column stats: NONE
> Select Operator
> expressions: cd_demo_sk (type: int), cd_marital_status (type: string), cd_education_status (type: string)
> outputColumnNames: _col0, _col1, _col2
> Statistics: Num rows: 1920800 Data size: 718379200 Basic stats: COMPLETE Column stats: NONE
> Map Join Operator
> condition map:
> Inner Join 0 to 1
> condition expressions:
> 0 {_col0} {_col1} {_col2}
> 1 {_col0}
> keys:
> 0
> 1
> outputColumnNames: _col0, _col1, _col2, _col3
> input vertices:
> 1 Map 6
> Statistics: Num rows: 2112880 Data size: 790217152 Basic stats: COMPLETE Column stats: NONE
> Map Join Operator
> condition map:
> Inner Join 0 to 1
> condition expressions:
> 0 {_col0} {_col1} {_col2} {_col3}
> 1 {_col0} {_col1}
> keys:
> 0
> 1
> outputColumnNames: _col0, _col1, _col2, _col3, _col4, _col5
> input vertices:
> 1 Map 5
> Statistics: Num rows: 2324168 Data size: 869238912 Basic stats: COMPLETE Column stats: NONE
> Reduce Output Operator
> key expressions: _col3 (type: int)
> sort order: +
> Map-reduce partition columns: _col3 (type: int)
> Statistics: Num rows: 2324168 Data size: 869238912 Basic stats: COMPLETE Column stats: NONE
> value expressions: _col0 (type: int), _col1 (type: string), _col2 (type: string), _col4 (type: int), _col5 (type: int)
> Execution mode: vectorized
> Reducer 2
> Reduce Operator Tree:
> Join Operator
> condition map:
> Inner Join 0 to 1
> condition expressions:
> 0 {VALUE._col0} {VALUE._col3} {VALUE._col5} {VALUE._col7} {VALUE._col8} {VALUE._col9}
> 1 {VALUE._col0} {VALUE._col1} {VALUE._col2}
> outputColumnNames: _col0, _col3, _col5, _col7, _col8, _col9, _col16, _col17, _col18
> Statistics: Num rows: 1169978496 Data size: 102148120576 Basic stats: COMPLETE Column stats: NONE
> Filter Operator
> predicate: (((_col3 = _col16) and ((_col18 = 'United States') and ((_col17) IN ('KY', 'GA', 'NM') and _col9 BETWEEN 100 AND 200))) or (((_col3 = _col16) and ((_col18 = 'United States') and ((_col17) IN ('MT', 'OR', 'IN') and _col9 BETWEEN 150 AND 300))) or ((_col3 = _col16) and ((_col18 = 'United States') and ((_col17) IN ('WI', 'MO', 'WV') and _col9 BETWEEN 50 AND 250))))) (type: boolean)
> Statistics: Num rows: 219370968 Data size: 19152772608 Basic stats: COMPLETE Column stats: NONE
> Select Operator
> expressions: _col0 (type: int), _col5 (type: int), _col7 (type: float), _col8 (type: float)
> outputColumnNames: _col0, _col5, _col7, _col8
> Statistics: Num rows: 219370968 Data size: 19152772608 Basic stats: COMPLETE Column stats: NONE
> Map Join Operator
> condition map:
> Inner Join 0 to 1
> condition expressions:
> 0 {_col5} {_col7} {_col8}
> 1
> keys:
> 0 _col0 (type: int)
> 1 _col0 (type: int)
> outputColumnNames: _col5, _col7, _col8
> input vertices:
> 1 Map 4
> Statistics: Num rows: 241308080 Data size: 21068050432 Basic stats: COMPLETE Column stats: NONE
> Select Operator
> expressions: _col5 (type: int), _col7 (type: float), _col8 (type: float)
> outputColumnNames: _col0, _col1, _col2
> Statistics: Num rows: 241308080 Data size: 21068050432 Basic stats: COMPLETE Column stats: NONE
> Group By Operator
> aggregations: avg(_col0), avg(_col1), avg(_col2), sum(_col2)
> mode: hash
> outputColumnNames: _col0, _col1, _col2, _col3
> Statistics: Num rows: 1 Data size: 8 Basic stats: COMPLETE Column stats: NONE
> Reduce Output Operator
> sort order:
> Statistics: Num rows: 1 Data size: 8 Basic stats: COMPLETE Column stats: NONE
> value expressions: _col0 (type: struct<count:bigint,sum:double,input:int>), _col1 (type: struct<count:bigint,sum:double,input:float>), _col2 (type: struct<count:bigint,sum:double,input:float>), _col3 (type: double)
> Reducer 3
> Reduce Operator Tree:
> Group By Operator
> aggregations: avg(VALUE._col0), avg(VALUE._col1), avg(VALUE._col2), sum(VALUE._col3)
> mode: mergepartial
> outputColumnNames: _col0, _col1, _col2, _col3
> Statistics: Num rows: 1 Data size: 32 Basic stats: COMPLETE Column stats: NONE
> Select Operator
> expressions: _col0 (type: double), _col1 (type: double), _col2 (type: double), _col3 (type: double)
> outputColumnNames: _col0, _col1, _col2, _col3
> Statistics: Num rows: 1 Data size: 32 Basic stats: COMPLETE Column stats: NONE
> File Output Operator
> compressed: false
> Statistics: Num rows: 1 Data size: 32 Basic stats: COMPLETE Column stats: NONE
> 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
> Stage: Stage-0
> Fetch Operator
> limit: -1
> Processor Tree:
> ListSink
> {code}
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