You are viewing a plain text version of this content. The canonical link for it is here.
Posted to commits@hive.apache.org by se...@apache.org on 2018/10/26 21:11:41 UTC
[31/75] [abbrv] [partial] hive git commit: HIVE-20718: Add perf cli
driver with constraints (Jesus Camacho Rodriguez,
reviewed by Ashutosh Chauhan)
http://git-wip-us.apache.org/repos/asf/hive/blob/b8299551/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query60.q.out
----------------------------------------------------------------------
diff --git a/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query60.q.out b/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query60.q.out
new file mode 100644
index 0000000..ea098f7
--- /dev/null
+++ b/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query60.q.out
@@ -0,0 +1,241 @@
+PREHOOK: query: explain cbo
+with ss as (
+ select
+ i_item_id,sum(ss_ext_sales_price) total_sales
+ from
+ store_sales,
+ date_dim,
+ customer_address,
+ item
+ where
+ i_item_id in (select
+ i_item_id
+from
+ item
+where i_category in ('Children'))
+ and ss_item_sk = i_item_sk
+ and ss_sold_date_sk = d_date_sk
+ and d_year = 1999
+ and d_moy = 9
+ and ss_addr_sk = ca_address_sk
+ and ca_gmt_offset = -6
+ group by i_item_id),
+ cs as (
+ select
+ i_item_id,sum(cs_ext_sales_price) total_sales
+ from
+ catalog_sales,
+ date_dim,
+ customer_address,
+ item
+ where
+ i_item_id in (select
+ i_item_id
+from
+ item
+where i_category in ('Children'))
+ and cs_item_sk = i_item_sk
+ and cs_sold_date_sk = d_date_sk
+ and d_year = 1999
+ and d_moy = 9
+ and cs_bill_addr_sk = ca_address_sk
+ and ca_gmt_offset = -6
+ group by i_item_id),
+ ws as (
+ select
+ i_item_id,sum(ws_ext_sales_price) total_sales
+ from
+ web_sales,
+ date_dim,
+ customer_address,
+ item
+ where
+ i_item_id in (select
+ i_item_id
+from
+ item
+where i_category in ('Children'))
+ and ws_item_sk = i_item_sk
+ and ws_sold_date_sk = d_date_sk
+ and d_year = 1999
+ and d_moy = 9
+ and ws_bill_addr_sk = ca_address_sk
+ and ca_gmt_offset = -6
+ group by i_item_id)
+ select
+ i_item_id
+,sum(total_sales) total_sales
+ from (select * from ss
+ union all
+ select * from cs
+ union all
+ select * from ws) tmp1
+ group by i_item_id
+ order by i_item_id
+ ,total_sales
+ limit 100
+PREHOOK: type: QUERY
+PREHOOK: Input: default@catalog_sales
+PREHOOK: Input: default@customer_address
+PREHOOK: Input: default@date_dim
+PREHOOK: Input: default@item
+PREHOOK: Input: default@store_sales
+PREHOOK: Input: default@web_sales
+PREHOOK: Output: hdfs://### HDFS PATH ###
+POSTHOOK: query: explain cbo
+with ss as (
+ select
+ i_item_id,sum(ss_ext_sales_price) total_sales
+ from
+ store_sales,
+ date_dim,
+ customer_address,
+ item
+ where
+ i_item_id in (select
+ i_item_id
+from
+ item
+where i_category in ('Children'))
+ and ss_item_sk = i_item_sk
+ and ss_sold_date_sk = d_date_sk
+ and d_year = 1999
+ and d_moy = 9
+ and ss_addr_sk = ca_address_sk
+ and ca_gmt_offset = -6
+ group by i_item_id),
+ cs as (
+ select
+ i_item_id,sum(cs_ext_sales_price) total_sales
+ from
+ catalog_sales,
+ date_dim,
+ customer_address,
+ item
+ where
+ i_item_id in (select
+ i_item_id
+from
+ item
+where i_category in ('Children'))
+ and cs_item_sk = i_item_sk
+ and cs_sold_date_sk = d_date_sk
+ and d_year = 1999
+ and d_moy = 9
+ and cs_bill_addr_sk = ca_address_sk
+ and ca_gmt_offset = -6
+ group by i_item_id),
+ ws as (
+ select
+ i_item_id,sum(ws_ext_sales_price) total_sales
+ from
+ web_sales,
+ date_dim,
+ customer_address,
+ item
+ where
+ i_item_id in (select
+ i_item_id
+from
+ item
+where i_category in ('Children'))
+ and ws_item_sk = i_item_sk
+ and ws_sold_date_sk = d_date_sk
+ and d_year = 1999
+ and d_moy = 9
+ and ws_bill_addr_sk = ca_address_sk
+ and ca_gmt_offset = -6
+ group by i_item_id)
+ select
+ i_item_id
+,sum(total_sales) total_sales
+ from (select * from ss
+ union all
+ select * from cs
+ union all
+ select * from ws) tmp1
+ group by i_item_id
+ order by i_item_id
+ ,total_sales
+ limit 100
+POSTHOOK: type: QUERY
+POSTHOOK: Input: default@catalog_sales
+POSTHOOK: Input: default@customer_address
+POSTHOOK: Input: default@date_dim
+POSTHOOK: Input: default@item
+POSTHOOK: Input: default@store_sales
+POSTHOOK: Input: default@web_sales
+POSTHOOK: Output: hdfs://### HDFS PATH ###
+CBO PLAN:
+HiveSortLimit(sort0=[$0], sort1=[$1], dir0=[ASC], dir1=[ASC], fetch=[100])
+ HiveProject(i_item_id=[$0], $f1=[$1])
+ HiveAggregate(group=[{0}], agg#0=[sum($1)])
+ HiveProject(i_item_id=[$0], $f1=[$1])
+ HiveUnion(all=[true])
+ HiveProject(i_item_id=[$0], $f1=[$1])
+ HiveAggregate(group=[{1}], agg#0=[sum($7)])
+ HiveJoin(condition=[=($5, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($1, $2)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(i_item_sk=[$0], i_item_id=[$1])
+ HiveTableScan(table=[[default, item]], table:alias=[item])
+ HiveProject(i_item_id=[$0])
+ HiveAggregate(group=[{1}])
+ HiveFilter(condition=[=($12, _UTF-16LE'Children')])
+ HiveTableScan(table=[[default, item]], table:alias=[item])
+ HiveProject(ca_address_sk=[$0], ss_sold_date_sk=[$1], ss_item_sk=[$2], ss_addr_sk=[$3], ss_ext_sales_price=[$4], d_date_sk=[$5])
+ HiveJoin(condition=[=($3, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(ca_address_sk=[$0])
+ HiveFilter(condition=[=($11, -6)])
+ HiveTableScan(table=[[default, customer_address]], table:alias=[customer_address])
+ HiveJoin(condition=[=($0, $4)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(ss_sold_date_sk=[$0], ss_item_sk=[$2], ss_addr_sk=[$6], ss_ext_sales_price=[$15])
+ HiveFilter(condition=[AND(IS NOT NULL($0), IS NOT NULL($6))])
+ HiveTableScan(table=[[default, store_sales]], table:alias=[store_sales])
+ HiveProject(d_date_sk=[$0])
+ HiveFilter(condition=[AND(=($6, 1999), =($8, 9))])
+ HiveTableScan(table=[[default, date_dim]], table:alias=[date_dim])
+ HiveProject(i_item_id=[$0], $f1=[$1])
+ HiveAggregate(group=[{1}], agg#0=[sum($7)])
+ HiveJoin(condition=[=($6, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($1, $2)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(i_item_sk=[$0], i_item_id=[$1])
+ HiveTableScan(table=[[default, item]], table:alias=[item])
+ HiveProject(i_item_id=[$0])
+ HiveAggregate(group=[{1}])
+ HiveFilter(condition=[=($12, _UTF-16LE'Children')])
+ HiveTableScan(table=[[default, item]], table:alias=[item])
+ HiveProject(ca_address_sk=[$0], cs_sold_date_sk=[$1], cs_bill_addr_sk=[$2], cs_item_sk=[$3], cs_ext_sales_price=[$4], d_date_sk=[$5])
+ HiveJoin(condition=[=($2, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(ca_address_sk=[$0])
+ HiveFilter(condition=[=($11, -6)])
+ HiveTableScan(table=[[default, customer_address]], table:alias=[customer_address])
+ HiveJoin(condition=[=($0, $4)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(cs_sold_date_sk=[$0], cs_bill_addr_sk=[$6], cs_item_sk=[$15], cs_ext_sales_price=[$23])
+ HiveFilter(condition=[AND(IS NOT NULL($0), IS NOT NULL($6))])
+ HiveTableScan(table=[[default, catalog_sales]], table:alias=[catalog_sales])
+ HiveProject(d_date_sk=[$0])
+ HiveFilter(condition=[AND(=($6, 1999), =($8, 9))])
+ HiveTableScan(table=[[default, date_dim]], table:alias=[date_dim])
+ HiveProject(i_item_id=[$0], $f1=[$1])
+ HiveAggregate(group=[{1}], agg#0=[sum($7)])
+ HiveJoin(condition=[=($5, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($1, $2)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(i_item_sk=[$0], i_item_id=[$1])
+ HiveTableScan(table=[[default, item]], table:alias=[item])
+ HiveProject(i_item_id=[$0])
+ HiveAggregate(group=[{1}])
+ HiveFilter(condition=[=($12, _UTF-16LE'Children')])
+ HiveTableScan(table=[[default, item]], table:alias=[item])
+ HiveProject(ca_address_sk=[$0], ws_sold_date_sk=[$1], ws_item_sk=[$2], ws_bill_addr_sk=[$3], ws_ext_sales_price=[$4], d_date_sk=[$5])
+ HiveJoin(condition=[=($3, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(ca_address_sk=[$0])
+ HiveFilter(condition=[=($11, -6)])
+ HiveTableScan(table=[[default, customer_address]], table:alias=[customer_address])
+ HiveJoin(condition=[=($0, $4)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(ws_sold_date_sk=[$0], ws_item_sk=[$3], ws_bill_addr_sk=[$7], ws_ext_sales_price=[$23])
+ HiveFilter(condition=[AND(IS NOT NULL($0), IS NOT NULL($7))])
+ HiveTableScan(table=[[default, web_sales]], table:alias=[web_sales])
+ HiveProject(d_date_sk=[$0])
+ HiveFilter(condition=[AND(=($6, 1999), =($8, 9))])
+ HiveTableScan(table=[[default, date_dim]], table:alias=[date_dim])
+
http://git-wip-us.apache.org/repos/asf/hive/blob/b8299551/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query61.q.out
----------------------------------------------------------------------
diff --git a/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query61.q.out b/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query61.q.out
new file mode 100644
index 0000000..68d03cb
--- /dev/null
+++ b/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query61.q.out
@@ -0,0 +1,164 @@
+Warning: Shuffle Join MERGEJOIN[266][tables = [$hdt$_0, $hdt$_1]] in Stage 'Reducer 5' is a cross product
+PREHOOK: query: explain cbo
+select promotions,total,cast(promotions as decimal(15,4))/cast(total as decimal(15,4))*100
+from
+ (select sum(ss_ext_sales_price) promotions
+ from store_sales
+ ,store
+ ,promotion
+ ,date_dim
+ ,customer
+ ,customer_address
+ ,item
+ where ss_sold_date_sk = d_date_sk
+ and ss_store_sk = s_store_sk
+ and ss_promo_sk = p_promo_sk
+ and ss_customer_sk= c_customer_sk
+ and ca_address_sk = c_current_addr_sk
+ and ss_item_sk = i_item_sk
+ and ca_gmt_offset = -7
+ and i_category = 'Electronics'
+ and (p_channel_dmail = 'Y' or p_channel_email = 'Y' or p_channel_tv = 'Y')
+ and s_gmt_offset = -7
+ and d_year = 1999
+ and d_moy = 11) promotional_sales,
+ (select sum(ss_ext_sales_price) total
+ from store_sales
+ ,store
+ ,date_dim
+ ,customer
+ ,customer_address
+ ,item
+ where ss_sold_date_sk = d_date_sk
+ and ss_store_sk = s_store_sk
+ and ss_customer_sk= c_customer_sk
+ and ca_address_sk = c_current_addr_sk
+ and ss_item_sk = i_item_sk
+ and ca_gmt_offset = -7
+ and i_category = 'Electronics'
+ and s_gmt_offset = -7
+ and d_year = 1999
+ and d_moy = 11) all_sales
+order by promotions, total
+limit 100
+PREHOOK: type: QUERY
+PREHOOK: Input: default@customer
+PREHOOK: Input: default@customer_address
+PREHOOK: Input: default@date_dim
+PREHOOK: Input: default@item
+PREHOOK: Input: default@promotion
+PREHOOK: Input: default@store
+PREHOOK: Input: default@store_sales
+PREHOOK: Output: hdfs://### HDFS PATH ###
+POSTHOOK: query: explain cbo
+select promotions,total,cast(promotions as decimal(15,4))/cast(total as decimal(15,4))*100
+from
+ (select sum(ss_ext_sales_price) promotions
+ from store_sales
+ ,store
+ ,promotion
+ ,date_dim
+ ,customer
+ ,customer_address
+ ,item
+ where ss_sold_date_sk = d_date_sk
+ and ss_store_sk = s_store_sk
+ and ss_promo_sk = p_promo_sk
+ and ss_customer_sk= c_customer_sk
+ and ca_address_sk = c_current_addr_sk
+ and ss_item_sk = i_item_sk
+ and ca_gmt_offset = -7
+ and i_category = 'Electronics'
+ and (p_channel_dmail = 'Y' or p_channel_email = 'Y' or p_channel_tv = 'Y')
+ and s_gmt_offset = -7
+ and d_year = 1999
+ and d_moy = 11) promotional_sales,
+ (select sum(ss_ext_sales_price) total
+ from store_sales
+ ,store
+ ,date_dim
+ ,customer
+ ,customer_address
+ ,item
+ where ss_sold_date_sk = d_date_sk
+ and ss_store_sk = s_store_sk
+ and ss_customer_sk= c_customer_sk
+ and ca_address_sk = c_current_addr_sk
+ and ss_item_sk = i_item_sk
+ and ca_gmt_offset = -7
+ and i_category = 'Electronics'
+ and s_gmt_offset = -7
+ and d_year = 1999
+ and d_moy = 11) all_sales
+order by promotions, total
+limit 100
+POSTHOOK: type: QUERY
+POSTHOOK: Input: default@customer
+POSTHOOK: Input: default@customer_address
+POSTHOOK: Input: default@date_dim
+POSTHOOK: Input: default@item
+POSTHOOK: Input: default@promotion
+POSTHOOK: Input: default@store
+POSTHOOK: Input: default@store_sales
+POSTHOOK: Output: hdfs://### HDFS PATH ###
+CBO PLAN:
+HiveSortLimit(sort0=[$0], sort1=[$1], dir0=[ASC], dir1=[ASC], fetch=[100])
+ HiveProject(promotions=[$0], total=[$2], _o__c2=[*(/($1, $3), CAST(100):DECIMAL(10, 0))])
+ HiveJoin(condition=[true], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(promotions=[$0], CAST=[CAST($0):DECIMAL(15, 4)])
+ HiveAggregate(group=[{}], agg#0=[sum($8)])
+ HiveJoin(condition=[=($5, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($2, $1)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(c_customer_sk=[$0], c_current_addr_sk=[$4])
+ HiveFilter(condition=[IS NOT NULL($4)])
+ HiveTableScan(table=[[default, customer]], table:alias=[customer])
+ HiveProject(ca_address_sk=[$0])
+ HiveFilter(condition=[=($11, -7)])
+ HiveTableScan(table=[[default, customer_address]], table:alias=[customer_address])
+ HiveProject(ss_sold_date_sk=[$0], ss_item_sk=[$1], ss_customer_sk=[$2], ss_store_sk=[$3], ss_promo_sk=[$4], ss_ext_sales_price=[$5], d_date_sk=[$6], i_item_sk=[$7], s_store_sk=[$8], p_promo_sk=[$9])
+ HiveJoin(condition=[=($4, $9)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($3, $8)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($1, $7)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($0, $6)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(ss_sold_date_sk=[$0], ss_item_sk=[$2], ss_customer_sk=[$3], ss_store_sk=[$7], ss_promo_sk=[$8], ss_ext_sales_price=[$15])
+ HiveFilter(condition=[AND(IS NOT NULL($7), IS NOT NULL($8), IS NOT NULL($0), IS NOT NULL($3))])
+ HiveTableScan(table=[[default, store_sales]], table:alias=[store_sales])
+ HiveProject(d_date_sk=[$0])
+ HiveFilter(condition=[AND(=($6, 1999), =($8, 11))])
+ HiveTableScan(table=[[default, date_dim]], table:alias=[date_dim])
+ HiveProject(i_item_sk=[$0])
+ HiveFilter(condition=[=($12, _UTF-16LE'Electronics')])
+ HiveTableScan(table=[[default, item]], table:alias=[item])
+ HiveProject(s_store_sk=[$0])
+ HiveFilter(condition=[=($27, -7)])
+ HiveTableScan(table=[[default, store]], table:alias=[store])
+ HiveProject(p_promo_sk=[$0])
+ HiveFilter(condition=[OR(=($8, _UTF-16LE'Y'), =($9, _UTF-16LE'Y'), =($11, _UTF-16LE'Y'))])
+ HiveTableScan(table=[[default, promotion]], table:alias=[promotion])
+ HiveProject(total=[$0], CAST=[CAST($0):DECIMAL(15, 4)])
+ HiveAggregate(group=[{}], agg#0=[sum($7)])
+ HiveJoin(condition=[=($5, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($2, $1)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(c_customer_sk=[$0], c_current_addr_sk=[$4])
+ HiveFilter(condition=[IS NOT NULL($4)])
+ HiveTableScan(table=[[default, customer]], table:alias=[customer])
+ HiveProject(ca_address_sk=[$0])
+ HiveFilter(condition=[=($11, -7)])
+ HiveTableScan(table=[[default, customer_address]], table:alias=[customer_address])
+ HiveProject(ss_sold_date_sk=[$0], ss_item_sk=[$1], ss_customer_sk=[$2], ss_store_sk=[$3], ss_ext_sales_price=[$4], d_date_sk=[$5], i_item_sk=[$6], s_store_sk=[$7])
+ HiveJoin(condition=[=($3, $7)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($1, $6)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($0, $5)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(ss_sold_date_sk=[$0], ss_item_sk=[$2], ss_customer_sk=[$3], ss_store_sk=[$7], ss_ext_sales_price=[$15])
+ HiveFilter(condition=[AND(IS NOT NULL($7), IS NOT NULL($0), IS NOT NULL($3))])
+ HiveTableScan(table=[[default, store_sales]], table:alias=[store_sales])
+ HiveProject(d_date_sk=[$0])
+ HiveFilter(condition=[AND(=($6, 1999), =($8, 11))])
+ HiveTableScan(table=[[default, date_dim]], table:alias=[date_dim])
+ HiveProject(i_item_sk=[$0])
+ HiveFilter(condition=[=($12, _UTF-16LE'Electronics')])
+ HiveTableScan(table=[[default, item]], table:alias=[item])
+ HiveProject(s_store_sk=[$0])
+ HiveFilter(condition=[=($27, -7)])
+ HiveTableScan(table=[[default, store]], table:alias=[store])
+
http://git-wip-us.apache.org/repos/asf/hive/blob/b8299551/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query63.q.out
----------------------------------------------------------------------
diff --git a/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query63.q.out b/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query63.q.out
new file mode 100644
index 0000000..e22d812
--- /dev/null
+++ b/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query63.q.out
@@ -0,0 +1,85 @@
+PREHOOK: query: explain cbo
+select *
+from (select i_manager_id
+ ,sum(ss_sales_price) sum_sales
+ ,avg(sum(ss_sales_price)) over (partition by i_manager_id) avg_monthly_sales
+ from item
+ ,store_sales
+ ,date_dim
+ ,store
+ where ss_item_sk = i_item_sk
+ and ss_sold_date_sk = d_date_sk
+ and ss_store_sk = s_store_sk
+ and d_month_seq in (1212,1212+1,1212+2,1212+3,1212+4,1212+5,1212+6,1212+7,1212+8,1212+9,1212+10,1212+11)
+ and (( i_category in ('Books','Children','Electronics')
+ and i_class in ('personal','portable','refernece','self-help')
+ and i_brand in ('scholaramalgamalg #14','scholaramalgamalg #7',
+ 'exportiunivamalg #9','scholaramalgamalg #9'))
+ or( i_category in ('Women','Music','Men')
+ and i_class in ('accessories','classical','fragrances','pants')
+ and i_brand in ('amalgimporto #1','edu packscholar #1','exportiimporto #1',
+ 'importoamalg #1')))
+group by i_manager_id, d_moy) tmp1
+where case when avg_monthly_sales > 0 then abs (sum_sales - avg_monthly_sales) / avg_monthly_sales else null end > 0.1
+order by i_manager_id
+ ,avg_monthly_sales
+ ,sum_sales
+limit 100
+PREHOOK: type: QUERY
+PREHOOK: Input: default@date_dim
+PREHOOK: Input: default@item
+PREHOOK: Input: default@store
+PREHOOK: Input: default@store_sales
+PREHOOK: Output: hdfs://### HDFS PATH ###
+POSTHOOK: query: explain cbo
+select *
+from (select i_manager_id
+ ,sum(ss_sales_price) sum_sales
+ ,avg(sum(ss_sales_price)) over (partition by i_manager_id) avg_monthly_sales
+ from item
+ ,store_sales
+ ,date_dim
+ ,store
+ where ss_item_sk = i_item_sk
+ and ss_sold_date_sk = d_date_sk
+ and ss_store_sk = s_store_sk
+ and d_month_seq in (1212,1212+1,1212+2,1212+3,1212+4,1212+5,1212+6,1212+7,1212+8,1212+9,1212+10,1212+11)
+ and (( i_category in ('Books','Children','Electronics')
+ and i_class in ('personal','portable','refernece','self-help')
+ and i_brand in ('scholaramalgamalg #14','scholaramalgamalg #7',
+ 'exportiunivamalg #9','scholaramalgamalg #9'))
+ or( i_category in ('Women','Music','Men')
+ and i_class in ('accessories','classical','fragrances','pants')
+ and i_brand in ('amalgimporto #1','edu packscholar #1','exportiimporto #1',
+ 'importoamalg #1')))
+group by i_manager_id, d_moy) tmp1
+where case when avg_monthly_sales > 0 then abs (sum_sales - avg_monthly_sales) / avg_monthly_sales else null end > 0.1
+order by i_manager_id
+ ,avg_monthly_sales
+ ,sum_sales
+limit 100
+POSTHOOK: type: QUERY
+POSTHOOK: Input: default@date_dim
+POSTHOOK: Input: default@item
+POSTHOOK: Input: default@store
+POSTHOOK: Input: default@store_sales
+POSTHOOK: Output: hdfs://### HDFS PATH ###
+CBO PLAN:
+HiveSortLimit(sort0=[$0], sort1=[$2], sort2=[$1], dir0=[ASC], dir1=[ASC], dir2=[ASC], fetch=[100])
+ HiveProject((tok_table_or_col i_manager_id)=[$0], (tok_function sum (tok_table_or_col ss_sales_price))=[$1], avg_window_0=[$2])
+ HiveFilter(condition=[CASE(>($2, 0), >(/(ABS(-($1, $2)), $2), 0.1), null)])
+ HiveProject((tok_table_or_col i_manager_id)=[$0], (tok_function sum (tok_table_or_col ss_sales_price))=[$2], avg_window_0=[avg($2) OVER (PARTITION BY $0 ORDER BY $0 NULLS FIRST ROWS BETWEEN 2147483647 FOLLOWING AND 2147483647 PRECEDING)])
+ HiveProject(i_manager_id=[$0], d_moy=[$1], $f2=[$2])
+ HiveAggregate(group=[{4, 6}], agg#0=[sum($2)])
+ HiveJoin(condition=[=($0, $5)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($1, $3)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(ss_sold_date_sk=[$0], ss_item_sk=[$2], ss_sales_price=[$13])
+ HiveFilter(condition=[AND(IS NOT NULL($0), IS NOT NULL($7))])
+ HiveTableScan(table=[[default, store_sales]], table:alias=[store_sales])
+ HiveProject(i_item_sk=[$0], i_manager_id=[$20])
+ HiveFilter(condition=[AND(IN($10, _UTF-16LE'personal', _UTF-16LE'portable', _UTF-16LE'refernece', _UTF-16LE'self-help', _UTF-16LE'accessories', _UTF-16LE'classical', _UTF-16LE'fragrances', _UTF-16LE'pants'), IN($8, _UTF-16LE'scholaramalgamalg #14', _UTF-16LE'scholaramalgamalg #7', _UTF-16LE'exportiunivamalg #9', _UTF-16LE'scholaramalgamalg #9', _UTF-16LE'amalgimporto #1', _UTF-16LE'edu packscholar #1', _UTF-16LE'exportiimporto #1', _UTF-16LE'importoamalg #1'), IN($12, _UTF-16LE'Books', _UTF-16LE'Children', _UTF-16LE'Electronics', _UTF-16LE'Women', _UTF-16LE'Music', _UTF-16LE'Men'), OR(AND(IN($12, _UTF-16LE'Books', _UTF-16LE'Children', _UTF-16LE'Electronics'), IN($10, _UTF-16LE'personal', _UTF-16LE'portable', _UTF-16LE'refernece', _UTF-16LE'self-help'), IN($8, _UTF-16LE'scholaramalgamalg #14', _UTF-16LE'scholaramalgamalg #7', _UTF-16LE'exportiunivamalg #9', _UTF-16LE'scholaramalgamalg #9')), AND(IN($12, _UTF-16LE'Women', _UTF-16LE'Music', _UTF-16LE'Men'), IN($10, _U
TF-16LE'accessories', _UTF-16LE'classical', _UTF-16LE'fragrances', _UTF-16LE'pants'), IN($8, _UTF-16LE'amalgimporto #1', _UTF-16LE'edu packscholar #1', _UTF-16LE'exportiimporto #1', _UTF-16LE'importoamalg #1'))))])
+ HiveTableScan(table=[[default, item]], table:alias=[item])
+ HiveProject(d_date_sk=[$0], d_moy=[$8])
+ HiveFilter(condition=[IN($3, 1212, 1213, 1214, 1215, 1216, 1217, 1218, 1219, 1220, 1221, 1222, 1223)])
+ HiveTableScan(table=[[default, date_dim]], table:alias=[date_dim])
+
http://git-wip-us.apache.org/repos/asf/hive/blob/b8299551/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query64.q.out
----------------------------------------------------------------------
diff --git a/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query64.q.out b/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query64.q.out
new file mode 100644
index 0000000..60c4325
--- /dev/null
+++ b/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query64.q.out
@@ -0,0 +1,390 @@
+PREHOOK: query: explain cbo
+with cs_ui as
+ (select cs_item_sk
+ ,sum(cs_ext_list_price) as sale,sum(cr_refunded_cash+cr_reversed_charge+cr_store_credit) as refund
+ from catalog_sales
+ ,catalog_returns
+ where cs_item_sk = cr_item_sk
+ and cs_order_number = cr_order_number
+ group by cs_item_sk
+ having sum(cs_ext_list_price)>2*sum(cr_refunded_cash+cr_reversed_charge+cr_store_credit)),
+cross_sales as
+ (select i_product_name product_name
+ ,i_item_sk item_sk
+ ,s_store_name store_name
+ ,s_zip store_zip
+ ,ad1.ca_street_number b_street_number
+ ,ad1.ca_street_name b_streen_name
+ ,ad1.ca_city b_city
+ ,ad1.ca_zip b_zip
+ ,ad2.ca_street_number c_street_number
+ ,ad2.ca_street_name c_street_name
+ ,ad2.ca_city c_city
+ ,ad2.ca_zip c_zip
+ ,d1.d_year as syear
+ ,d2.d_year as fsyear
+ ,d3.d_year s2year
+ ,count(*) cnt
+ ,sum(ss_wholesale_cost) s1
+ ,sum(ss_list_price) s2
+ ,sum(ss_coupon_amt) s3
+ FROM store_sales
+ ,store_returns
+ ,cs_ui
+ ,date_dim d1
+ ,date_dim d2
+ ,date_dim d3
+ ,store
+ ,customer
+ ,customer_demographics cd1
+ ,customer_demographics cd2
+ ,promotion
+ ,household_demographics hd1
+ ,household_demographics hd2
+ ,customer_address ad1
+ ,customer_address ad2
+ ,income_band ib1
+ ,income_band ib2
+ ,item
+ WHERE ss_store_sk = s_store_sk AND
+ ss_sold_date_sk = d1.d_date_sk AND
+ ss_customer_sk = c_customer_sk AND
+ ss_cdemo_sk= cd1.cd_demo_sk AND
+ ss_hdemo_sk = hd1.hd_demo_sk AND
+ ss_addr_sk = ad1.ca_address_sk and
+ ss_item_sk = i_item_sk and
+ ss_item_sk = sr_item_sk and
+ ss_ticket_number = sr_ticket_number and
+ ss_item_sk = cs_ui.cs_item_sk and
+ c_current_cdemo_sk = cd2.cd_demo_sk AND
+ c_current_hdemo_sk = hd2.hd_demo_sk AND
+ c_current_addr_sk = ad2.ca_address_sk and
+ c_first_sales_date_sk = d2.d_date_sk and
+ c_first_shipto_date_sk = d3.d_date_sk and
+ ss_promo_sk = p_promo_sk and
+ hd1.hd_income_band_sk = ib1.ib_income_band_sk and
+ hd2.hd_income_band_sk = ib2.ib_income_band_sk and
+ cd1.cd_marital_status <> cd2.cd_marital_status and
+ i_color in ('maroon','burnished','dim','steel','navajo','chocolate') and
+ i_current_price between 35 and 35 + 10 and
+ i_current_price between 35 + 1 and 35 + 15
+group by i_product_name
+ ,i_item_sk
+ ,s_store_name
+ ,s_zip
+ ,ad1.ca_street_number
+ ,ad1.ca_street_name
+ ,ad1.ca_city
+ ,ad1.ca_zip
+ ,ad2.ca_street_number
+ ,ad2.ca_street_name
+ ,ad2.ca_city
+ ,ad2.ca_zip
+ ,d1.d_year
+ ,d2.d_year
+ ,d3.d_year
+)
+select cs1.product_name
+ ,cs1.store_name
+ ,cs1.store_zip
+ ,cs1.b_street_number
+ ,cs1.b_streen_name
+ ,cs1.b_city
+ ,cs1.b_zip
+ ,cs1.c_street_number
+ ,cs1.c_street_name
+ ,cs1.c_city
+ ,cs1.c_zip
+ ,cs1.syear
+ ,cs1.cnt
+ ,cs1.s1
+ ,cs1.s2
+ ,cs1.s3
+ ,cs2.s1
+ ,cs2.s2
+ ,cs2.s3
+ ,cs2.syear
+ ,cs2.cnt
+from cross_sales cs1,cross_sales cs2
+where cs1.item_sk=cs2.item_sk and
+ cs1.syear = 2000 and
+ cs2.syear = 2000 + 1 and
+ cs2.cnt <= cs1.cnt and
+ cs1.store_name = cs2.store_name and
+ cs1.store_zip = cs2.store_zip
+order by cs1.product_name
+ ,cs1.store_name
+ ,cs2.cnt
+PREHOOK: type: QUERY
+PREHOOK: Input: default@catalog_returns
+PREHOOK: Input: default@catalog_sales
+PREHOOK: Input: default@customer
+PREHOOK: Input: default@customer_address
+PREHOOK: Input: default@customer_demographics
+PREHOOK: Input: default@date_dim
+PREHOOK: Input: default@household_demographics
+PREHOOK: Input: default@income_band
+PREHOOK: Input: default@item
+PREHOOK: Input: default@promotion
+PREHOOK: Input: default@store
+PREHOOK: Input: default@store_returns
+PREHOOK: Input: default@store_sales
+PREHOOK: Output: hdfs://### HDFS PATH ###
+POSTHOOK: query: explain cbo
+with cs_ui as
+ (select cs_item_sk
+ ,sum(cs_ext_list_price) as sale,sum(cr_refunded_cash+cr_reversed_charge+cr_store_credit) as refund
+ from catalog_sales
+ ,catalog_returns
+ where cs_item_sk = cr_item_sk
+ and cs_order_number = cr_order_number
+ group by cs_item_sk
+ having sum(cs_ext_list_price)>2*sum(cr_refunded_cash+cr_reversed_charge+cr_store_credit)),
+cross_sales as
+ (select i_product_name product_name
+ ,i_item_sk item_sk
+ ,s_store_name store_name
+ ,s_zip store_zip
+ ,ad1.ca_street_number b_street_number
+ ,ad1.ca_street_name b_streen_name
+ ,ad1.ca_city b_city
+ ,ad1.ca_zip b_zip
+ ,ad2.ca_street_number c_street_number
+ ,ad2.ca_street_name c_street_name
+ ,ad2.ca_city c_city
+ ,ad2.ca_zip c_zip
+ ,d1.d_year as syear
+ ,d2.d_year as fsyear
+ ,d3.d_year s2year
+ ,count(*) cnt
+ ,sum(ss_wholesale_cost) s1
+ ,sum(ss_list_price) s2
+ ,sum(ss_coupon_amt) s3
+ FROM store_sales
+ ,store_returns
+ ,cs_ui
+ ,date_dim d1
+ ,date_dim d2
+ ,date_dim d3
+ ,store
+ ,customer
+ ,customer_demographics cd1
+ ,customer_demographics cd2
+ ,promotion
+ ,household_demographics hd1
+ ,household_demographics hd2
+ ,customer_address ad1
+ ,customer_address ad2
+ ,income_band ib1
+ ,income_band ib2
+ ,item
+ WHERE ss_store_sk = s_store_sk AND
+ ss_sold_date_sk = d1.d_date_sk AND
+ ss_customer_sk = c_customer_sk AND
+ ss_cdemo_sk= cd1.cd_demo_sk AND
+ ss_hdemo_sk = hd1.hd_demo_sk AND
+ ss_addr_sk = ad1.ca_address_sk and
+ ss_item_sk = i_item_sk and
+ ss_item_sk = sr_item_sk and
+ ss_ticket_number = sr_ticket_number and
+ ss_item_sk = cs_ui.cs_item_sk and
+ c_current_cdemo_sk = cd2.cd_demo_sk AND
+ c_current_hdemo_sk = hd2.hd_demo_sk AND
+ c_current_addr_sk = ad2.ca_address_sk and
+ c_first_sales_date_sk = d2.d_date_sk and
+ c_first_shipto_date_sk = d3.d_date_sk and
+ ss_promo_sk = p_promo_sk and
+ hd1.hd_income_band_sk = ib1.ib_income_band_sk and
+ hd2.hd_income_band_sk = ib2.ib_income_band_sk and
+ cd1.cd_marital_status <> cd2.cd_marital_status and
+ i_color in ('maroon','burnished','dim','steel','navajo','chocolate') and
+ i_current_price between 35 and 35 + 10 and
+ i_current_price between 35 + 1 and 35 + 15
+group by i_product_name
+ ,i_item_sk
+ ,s_store_name
+ ,s_zip
+ ,ad1.ca_street_number
+ ,ad1.ca_street_name
+ ,ad1.ca_city
+ ,ad1.ca_zip
+ ,ad2.ca_street_number
+ ,ad2.ca_street_name
+ ,ad2.ca_city
+ ,ad2.ca_zip
+ ,d1.d_year
+ ,d2.d_year
+ ,d3.d_year
+)
+select cs1.product_name
+ ,cs1.store_name
+ ,cs1.store_zip
+ ,cs1.b_street_number
+ ,cs1.b_streen_name
+ ,cs1.b_city
+ ,cs1.b_zip
+ ,cs1.c_street_number
+ ,cs1.c_street_name
+ ,cs1.c_city
+ ,cs1.c_zip
+ ,cs1.syear
+ ,cs1.cnt
+ ,cs1.s1
+ ,cs1.s2
+ ,cs1.s3
+ ,cs2.s1
+ ,cs2.s2
+ ,cs2.s3
+ ,cs2.syear
+ ,cs2.cnt
+from cross_sales cs1,cross_sales cs2
+where cs1.item_sk=cs2.item_sk and
+ cs1.syear = 2000 and
+ cs2.syear = 2000 + 1 and
+ cs2.cnt <= cs1.cnt and
+ cs1.store_name = cs2.store_name and
+ cs1.store_zip = cs2.store_zip
+order by cs1.product_name
+ ,cs1.store_name
+ ,cs2.cnt
+POSTHOOK: type: QUERY
+POSTHOOK: Input: default@catalog_returns
+POSTHOOK: Input: default@catalog_sales
+POSTHOOK: Input: default@customer
+POSTHOOK: Input: default@customer_address
+POSTHOOK: Input: default@customer_demographics
+POSTHOOK: Input: default@date_dim
+POSTHOOK: Input: default@household_demographics
+POSTHOOK: Input: default@income_band
+POSTHOOK: Input: default@item
+POSTHOOK: Input: default@promotion
+POSTHOOK: Input: default@store
+POSTHOOK: Input: default@store_returns
+POSTHOOK: Input: default@store_sales
+POSTHOOK: Output: hdfs://### HDFS PATH ###
+CBO PLAN:
+HiveProject(product_name=[$0], store_name=[$1], store_zip=[$2], b_street_number=[$3], b_streen_name=[$4], b_city=[$5], b_zip=[$6], c_street_number=[$7], c_street_name=[$8], c_city=[$9], c_zip=[$10], syear=[CAST(2000):INTEGER], cnt=[$11], s1=[$12], s2=[$13], s3=[$14], s11=[$15], s21=[$16], s31=[$17], syear1=[CAST(2001):INTEGER], cnt1=[$18])
+ HiveSortLimit(sort0=[$0], sort1=[$1], sort2=[$18], dir0=[ASC], dir1=[ASC], dir2=[ASC])
+ HiveProject(product_name=[$0], store_name=[$2], store_zip=[$3], b_street_number=[$4], b_streen_name=[$5], b_city=[$6], b_zip=[$7], c_street_number=[$8], c_street_name=[$9], c_city=[$10], c_zip=[$11], cnt=[$12], s1=[$13], s2=[$14], s3=[$15], s11=[$20], s21=[$21], s31=[$22], cnt1=[$19])
+ HiveJoin(condition=[AND(AND(AND(=($1, $16), <=($19, $12)), =($2, $17)), =($3, $18))], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject($f0=[$13], $f1=[$12], $f2=[$10], $f3=[$11], $f4=[$6], $f5=[$7], $f6=[$8], $f7=[$9], $f8=[$0], $f9=[$1], $f10=[$2], $f11=[$3], $f15=[$14], $f16=[$15], $f17=[$16], $f18=[$17])
+ HiveAggregate(group=[{9, 10, 11, 12, 15, 17, 23, 24, 25, 26, 28, 29, 42, 43}], agg#0=[count()], agg#1=[sum($39)], agg#2=[sum($40)], agg#3=[sum($41)])
+ HiveJoin(condition=[AND(<>($1, $19), =($34, $0))], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(cd_demo_sk=[$0], cd_marital_status=[$2])
+ HiveTableScan(table=[[default, customer_demographics]], table:alias=[cd1])
+ HiveJoin(condition=[=($31, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($1, $16)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($4, $14)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($5, $12)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($2, $11)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($3, $6)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(c_customer_sk=[$0], c_current_cdemo_sk=[$2], c_current_hdemo_sk=[$3], c_current_addr_sk=[$4], c_first_shipto_date_sk=[$5], c_first_sales_date_sk=[$6])
+ HiveFilter(condition=[AND(IS NOT NULL($6), IS NOT NULL($5), IS NOT NULL($2), IS NOT NULL($3), IS NOT NULL($4))])
+ HiveTableScan(table=[[default, customer]], table:alias=[customer])
+ HiveProject(ca_address_sk=[$0], ca_street_number=[$2], ca_street_name=[$3], ca_city=[$6], ca_zip=[$9])
+ HiveTableScan(table=[[default, customer_address]], table:alias=[ad2])
+ HiveProject(hd_demo_sk=[$0])
+ HiveFilter(condition=[IS NOT NULL($1)])
+ HiveTableScan(table=[[default, household_demographics]], table:alias=[hd2])
+ HiveProject(d_date_sk=[$0], d_year=[$6])
+ HiveTableScan(table=[[default, date_dim]], table:alias=[d2])
+ HiveProject(d_date_sk=[$0], d_year=[$6])
+ HiveTableScan(table=[[default, date_dim]], table:alias=[d3])
+ HiveProject(cd_demo_sk=[$0], cd_marital_status=[$2])
+ HiveTableScan(table=[[default, customer_demographics]], table:alias=[cd2])
+ HiveProject(sr_item_sk=[$0], sr_ticket_number=[$1], ca_address_sk=[$2], ca_street_number=[$3], ca_street_name=[$4], ca_city=[$5], ca_zip=[$6], s_store_sk=[$7], s_store_name=[$8], s_zip=[$9], hd_demo_sk=[$10], ss_sold_date_sk=[$11], ss_item_sk=[$12], ss_customer_sk=[$13], ss_cdemo_sk=[$14], ss_hdemo_sk=[$15], ss_addr_sk=[$16], ss_store_sk=[$17], ss_ticket_number=[$18], ss_wholesale_cost=[$19], ss_list_price=[$20], ss_coupon_amt=[$21], i_item_sk=[$22], i_product_name=[$23], d_date_sk=[$24], cs_item_sk=[$25])
+ HiveJoin(condition=[AND(=($12, $0), =($18, $1))], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(sr_item_sk=[$2], sr_ticket_number=[$9])
+ HiveTableScan(table=[[default, store_returns]], table:alias=[store_returns])
+ HiveJoin(condition=[=($14, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(ca_address_sk=[$0], ca_street_number=[$2], ca_street_name=[$3], ca_city=[$6], ca_zip=[$9])
+ HiveTableScan(table=[[default, customer_address]], table:alias=[ad1])
+ HiveJoin(condition=[=($10, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(s_store_sk=[$0], s_store_name=[$5], s_zip=[$25])
+ HiveFilter(condition=[AND(IS NOT NULL($5), IS NOT NULL($25))])
+ HiveTableScan(table=[[default, store]], table:alias=[store])
+ HiveJoin(condition=[=($5, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(hd_demo_sk=[$0])
+ HiveFilter(condition=[IS NOT NULL($1)])
+ HiveTableScan(table=[[default, household_demographics]], table:alias=[hd1])
+ HiveJoin(condition=[=($1, $14)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($0, $13)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($1, $11)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(ss_sold_date_sk=[$0], ss_item_sk=[$2], ss_customer_sk=[$3], ss_cdemo_sk=[$4], ss_hdemo_sk=[$5], ss_addr_sk=[$6], ss_store_sk=[$7], ss_ticket_number=[$9], ss_wholesale_cost=[$11], ss_list_price=[$12], ss_coupon_amt=[$19])
+ HiveFilter(condition=[AND(IS NOT NULL($0), IS NOT NULL($7), IS NOT NULL($3), IS NOT NULL($4), IS NOT NULL($8), IS NOT NULL($5), IS NOT NULL($6))])
+ HiveTableScan(table=[[default, store_sales]], table:alias=[store_sales])
+ HiveProject(i_item_sk=[$0], i_product_name=[$21])
+ HiveFilter(condition=[AND(IN($17, _UTF-16LE'maroon', _UTF-16LE'burnished', _UTF-16LE'dim', _UTF-16LE'steel', _UTF-16LE'navajo', _UTF-16LE'chocolate'), BETWEEN(false, $5, 35, 45), BETWEEN(false, $5, 36, 50))])
+ HiveTableScan(table=[[default, item]], table:alias=[item])
+ HiveProject(d_date_sk=[$0])
+ HiveFilter(condition=[=($6, 2000)])
+ HiveTableScan(table=[[default, date_dim]], table:alias=[d1])
+ HiveProject(cs_item_sk=[$0])
+ HiveFilter(condition=[>($1, *(2, $2))])
+ HiveAggregate(group=[{0}], agg#0=[sum($2)], agg#1=[sum($5)])
+ HiveJoin(condition=[AND(=($0, $3), =($1, $4))], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(cs_item_sk=[$15], cs_order_number=[$17], cs_ext_list_price=[$25])
+ HiveTableScan(table=[[default, catalog_sales]], table:alias=[catalog_sales])
+ HiveProject(cr_item_sk=[$2], cr_order_number=[$16], +=[+(+($23, $24), $25)])
+ HiveTableScan(table=[[default, catalog_returns]], table:alias=[catalog_returns])
+ HiveProject($f1=[$12], $f2=[$10], $f3=[$11], $f15=[$14], $f16=[$15], $f17=[$16], $f18=[$17])
+ HiveAggregate(group=[{9, 10, 11, 12, 15, 17, 23, 24, 25, 26, 28, 29, 42, 43}], agg#0=[count()], agg#1=[sum($39)], agg#2=[sum($40)], agg#3=[sum($41)])
+ HiveJoin(condition=[AND(<>($1, $19), =($34, $0))], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(cd_demo_sk=[$0], cd_marital_status=[$2])
+ HiveTableScan(table=[[default, customer_demographics]], table:alias=[cd1])
+ HiveJoin(condition=[=($31, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($1, $16)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($4, $14)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($5, $12)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($2, $11)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($3, $6)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(c_customer_sk=[$0], c_current_cdemo_sk=[$2], c_current_hdemo_sk=[$3], c_current_addr_sk=[$4], c_first_shipto_date_sk=[$5], c_first_sales_date_sk=[$6])
+ HiveFilter(condition=[AND(IS NOT NULL($6), IS NOT NULL($5), IS NOT NULL($2), IS NOT NULL($3), IS NOT NULL($4))])
+ HiveTableScan(table=[[default, customer]], table:alias=[customer])
+ HiveProject(ca_address_sk=[$0], ca_street_number=[$2], ca_street_name=[$3], ca_city=[$6], ca_zip=[$9])
+ HiveTableScan(table=[[default, customer_address]], table:alias=[ad2])
+ HiveProject(hd_demo_sk=[$0])
+ HiveFilter(condition=[IS NOT NULL($1)])
+ HiveTableScan(table=[[default, household_demographics]], table:alias=[hd2])
+ HiveProject(d_date_sk=[$0], d_year=[$6])
+ HiveTableScan(table=[[default, date_dim]], table:alias=[d2])
+ HiveProject(d_date_sk=[$0], d_year=[$6])
+ HiveTableScan(table=[[default, date_dim]], table:alias=[d3])
+ HiveProject(cd_demo_sk=[$0], cd_marital_status=[$2])
+ HiveTableScan(table=[[default, customer_demographics]], table:alias=[cd2])
+ HiveProject(sr_item_sk=[$0], sr_ticket_number=[$1], ca_address_sk=[$2], ca_street_number=[$3], ca_street_name=[$4], ca_city=[$5], ca_zip=[$6], s_store_sk=[$7], s_store_name=[$8], s_zip=[$9], hd_demo_sk=[$10], ss_sold_date_sk=[$11], ss_item_sk=[$12], ss_customer_sk=[$13], ss_cdemo_sk=[$14], ss_hdemo_sk=[$15], ss_addr_sk=[$16], ss_store_sk=[$17], ss_ticket_number=[$18], ss_wholesale_cost=[$19], ss_list_price=[$20], ss_coupon_amt=[$21], i_item_sk=[$22], i_product_name=[$23], d_date_sk=[$24], cs_item_sk=[$25])
+ HiveJoin(condition=[AND(=($12, $0), =($18, $1))], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(sr_item_sk=[$2], sr_ticket_number=[$9])
+ HiveTableScan(table=[[default, store_returns]], table:alias=[store_returns])
+ HiveJoin(condition=[=($14, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(ca_address_sk=[$0], ca_street_number=[$2], ca_street_name=[$3], ca_city=[$6], ca_zip=[$9])
+ HiveTableScan(table=[[default, customer_address]], table:alias=[ad1])
+ HiveJoin(condition=[=($10, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(s_store_sk=[$0], s_store_name=[$5], s_zip=[$25])
+ HiveFilter(condition=[AND(IS NOT NULL($5), IS NOT NULL($25))])
+ HiveTableScan(table=[[default, store]], table:alias=[store])
+ HiveJoin(condition=[=($5, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(hd_demo_sk=[$0])
+ HiveFilter(condition=[IS NOT NULL($1)])
+ HiveTableScan(table=[[default, household_demographics]], table:alias=[hd1])
+ HiveJoin(condition=[=($1, $14)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($0, $13)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($1, $11)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(ss_sold_date_sk=[$0], ss_item_sk=[$2], ss_customer_sk=[$3], ss_cdemo_sk=[$4], ss_hdemo_sk=[$5], ss_addr_sk=[$6], ss_store_sk=[$7], ss_ticket_number=[$9], ss_wholesale_cost=[$11], ss_list_price=[$12], ss_coupon_amt=[$19])
+ HiveFilter(condition=[AND(IS NOT NULL($0), IS NOT NULL($7), IS NOT NULL($3), IS NOT NULL($4), IS NOT NULL($8), IS NOT NULL($5), IS NOT NULL($6))])
+ HiveTableScan(table=[[default, store_sales]], table:alias=[store_sales])
+ HiveProject(i_item_sk=[$0], i_product_name=[$21])
+ HiveFilter(condition=[AND(IN($17, _UTF-16LE'maroon', _UTF-16LE'burnished', _UTF-16LE'dim', _UTF-16LE'steel', _UTF-16LE'navajo', _UTF-16LE'chocolate'), BETWEEN(false, $5, 35, 45), BETWEEN(false, $5, 36, 50))])
+ HiveTableScan(table=[[default, item]], table:alias=[item])
+ HiveProject(d_date_sk=[$0])
+ HiveFilter(condition=[=($6, 2001)])
+ HiveTableScan(table=[[default, date_dim]], table:alias=[d1])
+ HiveProject(cs_item_sk=[$0])
+ HiveFilter(condition=[>($1, *(2, $2))])
+ HiveAggregate(group=[{0}], agg#0=[sum($2)], agg#1=[sum($5)])
+ HiveJoin(condition=[AND(=($0, $3), =($1, $4))], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(cs_item_sk=[$15], cs_order_number=[$17], cs_ext_list_price=[$25])
+ HiveTableScan(table=[[default, catalog_sales]], table:alias=[catalog_sales])
+ HiveProject(cr_item_sk=[$2], cr_order_number=[$16], +=[+(+($23, $24), $25)])
+ HiveTableScan(table=[[default, catalog_returns]], table:alias=[catalog_returns])
+
http://git-wip-us.apache.org/repos/asf/hive/blob/b8299551/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query65.q.out
----------------------------------------------------------------------
diff --git a/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query65.q.out b/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query65.q.out
new file mode 100644
index 0000000..3e906b7
--- /dev/null
+++ b/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query65.q.out
@@ -0,0 +1,97 @@
+PREHOOK: query: explain cbo
+select
+ s_store_name,
+ i_item_desc,
+ sc.revenue,
+ i_current_price,
+ i_wholesale_cost,
+ i_brand
+ from store, item,
+ (select ss_store_sk, avg(revenue) as ave
+ from
+ (select ss_store_sk, ss_item_sk,
+ sum(ss_sales_price) as revenue
+ from store_sales, date_dim
+ where ss_sold_date_sk = d_date_sk and d_month_seq between 1212 and 1212+11
+ group by ss_store_sk, ss_item_sk) sa
+ group by ss_store_sk) sb,
+ (select ss_store_sk, ss_item_sk, sum(ss_sales_price) as revenue
+ from store_sales, date_dim
+ where ss_sold_date_sk = d_date_sk and d_month_seq between 1212 and 1212+11
+ group by ss_store_sk, ss_item_sk) sc
+ where sb.ss_store_sk = sc.ss_store_sk and
+ sc.revenue <= 0.1 * sb.ave and
+ s_store_sk = sc.ss_store_sk and
+ i_item_sk = sc.ss_item_sk
+ order by s_store_name, i_item_desc
+limit 100
+PREHOOK: type: QUERY
+PREHOOK: Input: default@date_dim
+PREHOOK: Input: default@item
+PREHOOK: Input: default@store
+PREHOOK: Input: default@store_sales
+PREHOOK: Output: hdfs://### HDFS PATH ###
+POSTHOOK: query: explain cbo
+select
+ s_store_name,
+ i_item_desc,
+ sc.revenue,
+ i_current_price,
+ i_wholesale_cost,
+ i_brand
+ from store, item,
+ (select ss_store_sk, avg(revenue) as ave
+ from
+ (select ss_store_sk, ss_item_sk,
+ sum(ss_sales_price) as revenue
+ from store_sales, date_dim
+ where ss_sold_date_sk = d_date_sk and d_month_seq between 1212 and 1212+11
+ group by ss_store_sk, ss_item_sk) sa
+ group by ss_store_sk) sb,
+ (select ss_store_sk, ss_item_sk, sum(ss_sales_price) as revenue
+ from store_sales, date_dim
+ where ss_sold_date_sk = d_date_sk and d_month_seq between 1212 and 1212+11
+ group by ss_store_sk, ss_item_sk) sc
+ where sb.ss_store_sk = sc.ss_store_sk and
+ sc.revenue <= 0.1 * sb.ave and
+ s_store_sk = sc.ss_store_sk and
+ i_item_sk = sc.ss_item_sk
+ order by s_store_name, i_item_desc
+limit 100
+POSTHOOK: type: QUERY
+POSTHOOK: Input: default@date_dim
+POSTHOOK: Input: default@item
+POSTHOOK: Input: default@store
+POSTHOOK: Input: default@store_sales
+POSTHOOK: Output: hdfs://### HDFS PATH ###
+CBO PLAN:
+HiveSortLimit(sort0=[$0], sort1=[$1], dir0=[ASC], dir1=[ASC], fetch=[100])
+ HiveProject(s_store_name=[$11], i_item_desc=[$1], revenue=[$7], i_current_price=[$2], i_wholesale_cost=[$3], i_brand=[$4])
+ HiveJoin(condition=[=($0, $6)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(i_item_sk=[$0], i_item_desc=[$4], i_current_price=[$5], i_wholesale_cost=[$6], i_brand=[$8])
+ HiveTableScan(table=[[default, item]], table:alias=[item])
+ HiveJoin(condition=[=($5, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[AND(=($3, $0), <=($2, $4))], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(ss_store_sk=[$1], ss_item_sk=[$0], $f2=[$2])
+ HiveAggregate(group=[{1, 2}], agg#0=[sum($3)])
+ HiveJoin(condition=[=($0, $4)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(ss_sold_date_sk=[$0], ss_item_sk=[$2], ss_store_sk=[$7], ss_sales_price=[$13])
+ HiveFilter(condition=[AND(IS NOT NULL($0), IS NOT NULL($7))])
+ HiveTableScan(table=[[default, store_sales]], table:alias=[store_sales])
+ HiveProject(d_date_sk=[$0])
+ HiveFilter(condition=[BETWEEN(false, $3, 1212, 1223)])
+ HiveTableScan(table=[[default, date_dim]], table:alias=[date_dim])
+ HiveProject($f0=[$0], *=[*(0.1, /($1, $2))])
+ HiveAggregate(group=[{1}], agg#0=[sum($2)], agg#1=[count($2)])
+ HiveProject(ss_item_sk=[$0], ss_store_sk=[$1], $f2=[$2])
+ HiveAggregate(group=[{1, 2}], agg#0=[sum($3)])
+ HiveJoin(condition=[=($0, $4)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(ss_sold_date_sk=[$0], ss_item_sk=[$2], ss_store_sk=[$7], ss_sales_price=[$13])
+ HiveFilter(condition=[AND(IS NOT NULL($0), IS NOT NULL($7))])
+ HiveTableScan(table=[[default, store_sales]], table:alias=[store_sales])
+ HiveProject(d_date_sk=[$0])
+ HiveFilter(condition=[BETWEEN(false, $3, 1212, 1223)])
+ HiveTableScan(table=[[default, date_dim]], table:alias=[date_dim])
+ HiveProject(s_store_sk=[$0], s_store_name=[$5])
+ HiveTableScan(table=[[default, store]], table:alias=[store])
+
http://git-wip-us.apache.org/repos/asf/hive/blob/b8299551/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query66.q.out
----------------------------------------------------------------------
diff --git a/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query66.q.out b/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query66.q.out
new file mode 100644
index 0000000..77256a3
--- /dev/null
+++ b/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query66.q.out
@@ -0,0 +1,506 @@
+PREHOOK: query: explain cbo
+select
+ w_warehouse_name
+ ,w_warehouse_sq_ft
+ ,w_city
+ ,w_county
+ ,w_state
+ ,w_country
+ ,ship_carriers
+ ,year
+ ,sum(jan_sales) as jan_sales
+ ,sum(feb_sales) as feb_sales
+ ,sum(mar_sales) as mar_sales
+ ,sum(apr_sales) as apr_sales
+ ,sum(may_sales) as may_sales
+ ,sum(jun_sales) as jun_sales
+ ,sum(jul_sales) as jul_sales
+ ,sum(aug_sales) as aug_sales
+ ,sum(sep_sales) as sep_sales
+ ,sum(oct_sales) as oct_sales
+ ,sum(nov_sales) as nov_sales
+ ,sum(dec_sales) as dec_sales
+ ,sum(jan_sales/w_warehouse_sq_ft) as jan_sales_per_sq_foot
+ ,sum(feb_sales/w_warehouse_sq_ft) as feb_sales_per_sq_foot
+ ,sum(mar_sales/w_warehouse_sq_ft) as mar_sales_per_sq_foot
+ ,sum(apr_sales/w_warehouse_sq_ft) as apr_sales_per_sq_foot
+ ,sum(may_sales/w_warehouse_sq_ft) as may_sales_per_sq_foot
+ ,sum(jun_sales/w_warehouse_sq_ft) as jun_sales_per_sq_foot
+ ,sum(jul_sales/w_warehouse_sq_ft) as jul_sales_per_sq_foot
+ ,sum(aug_sales/w_warehouse_sq_ft) as aug_sales_per_sq_foot
+ ,sum(sep_sales/w_warehouse_sq_ft) as sep_sales_per_sq_foot
+ ,sum(oct_sales/w_warehouse_sq_ft) as oct_sales_per_sq_foot
+ ,sum(nov_sales/w_warehouse_sq_ft) as nov_sales_per_sq_foot
+ ,sum(dec_sales/w_warehouse_sq_ft) as dec_sales_per_sq_foot
+ ,sum(jan_net) as jan_net
+ ,sum(feb_net) as feb_net
+ ,sum(mar_net) as mar_net
+ ,sum(apr_net) as apr_net
+ ,sum(may_net) as may_net
+ ,sum(jun_net) as jun_net
+ ,sum(jul_net) as jul_net
+ ,sum(aug_net) as aug_net
+ ,sum(sep_net) as sep_net
+ ,sum(oct_net) as oct_net
+ ,sum(nov_net) as nov_net
+ ,sum(dec_net) as dec_net
+ from (
+ (select
+ w_warehouse_name
+ ,w_warehouse_sq_ft
+ ,w_city
+ ,w_county
+ ,w_state
+ ,w_country
+ ,'DIAMOND' || ',' || 'AIRBORNE' as ship_carriers
+ ,d_year as year
+ ,sum(case when d_moy = 1
+ then ws_sales_price* ws_quantity else 0 end) as jan_sales
+ ,sum(case when d_moy = 2
+ then ws_sales_price* ws_quantity else 0 end) as feb_sales
+ ,sum(case when d_moy = 3
+ then ws_sales_price* ws_quantity else 0 end) as mar_sales
+ ,sum(case when d_moy = 4
+ then ws_sales_price* ws_quantity else 0 end) as apr_sales
+ ,sum(case when d_moy = 5
+ then ws_sales_price* ws_quantity else 0 end) as may_sales
+ ,sum(case when d_moy = 6
+ then ws_sales_price* ws_quantity else 0 end) as jun_sales
+ ,sum(case when d_moy = 7
+ then ws_sales_price* ws_quantity else 0 end) as jul_sales
+ ,sum(case when d_moy = 8
+ then ws_sales_price* ws_quantity else 0 end) as aug_sales
+ ,sum(case when d_moy = 9
+ then ws_sales_price* ws_quantity else 0 end) as sep_sales
+ ,sum(case when d_moy = 10
+ then ws_sales_price* ws_quantity else 0 end) as oct_sales
+ ,sum(case when d_moy = 11
+ then ws_sales_price* ws_quantity else 0 end) as nov_sales
+ ,sum(case when d_moy = 12
+ then ws_sales_price* ws_quantity else 0 end) as dec_sales
+ ,sum(case when d_moy = 1
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as jan_net
+ ,sum(case when d_moy = 2
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as feb_net
+ ,sum(case when d_moy = 3
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as mar_net
+ ,sum(case when d_moy = 4
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as apr_net
+ ,sum(case when d_moy = 5
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as may_net
+ ,sum(case when d_moy = 6
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as jun_net
+ ,sum(case when d_moy = 7
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as jul_net
+ ,sum(case when d_moy = 8
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as aug_net
+ ,sum(case when d_moy = 9
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as sep_net
+ ,sum(case when d_moy = 10
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as oct_net
+ ,sum(case when d_moy = 11
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as nov_net
+ ,sum(case when d_moy = 12
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as dec_net
+ from
+ web_sales
+ ,warehouse
+ ,date_dim
+ ,time_dim
+ ,ship_mode
+ where
+ ws_warehouse_sk = w_warehouse_sk
+ and ws_sold_date_sk = d_date_sk
+ and ws_sold_time_sk = t_time_sk
+ and ws_ship_mode_sk = sm_ship_mode_sk
+ and d_year = 2002
+ and t_time between 49530 and 49530+28800
+ and sm_carrier in ('DIAMOND','AIRBORNE')
+ group by
+ w_warehouse_name
+ ,w_warehouse_sq_ft
+ ,w_city
+ ,w_county
+ ,w_state
+ ,w_country
+ ,d_year
+ )
+ union all
+ (select
+ w_warehouse_name
+ ,w_warehouse_sq_ft
+ ,w_city
+ ,w_county
+ ,w_state
+ ,w_country
+ ,'DIAMOND' || ',' || 'AIRBORNE' as ship_carriers
+ ,d_year as year
+ ,sum(case when d_moy = 1
+ then cs_ext_sales_price* cs_quantity else 0 end) as jan_sales
+ ,sum(case when d_moy = 2
+ then cs_ext_sales_price* cs_quantity else 0 end) as feb_sales
+ ,sum(case when d_moy = 3
+ then cs_ext_sales_price* cs_quantity else 0 end) as mar_sales
+ ,sum(case when d_moy = 4
+ then cs_ext_sales_price* cs_quantity else 0 end) as apr_sales
+ ,sum(case when d_moy = 5
+ then cs_ext_sales_price* cs_quantity else 0 end) as may_sales
+ ,sum(case when d_moy = 6
+ then cs_ext_sales_price* cs_quantity else 0 end) as jun_sales
+ ,sum(case when d_moy = 7
+ then cs_ext_sales_price* cs_quantity else 0 end) as jul_sales
+ ,sum(case when d_moy = 8
+ then cs_ext_sales_price* cs_quantity else 0 end) as aug_sales
+ ,sum(case when d_moy = 9
+ then cs_ext_sales_price* cs_quantity else 0 end) as sep_sales
+ ,sum(case when d_moy = 10
+ then cs_ext_sales_price* cs_quantity else 0 end) as oct_sales
+ ,sum(case when d_moy = 11
+ then cs_ext_sales_price* cs_quantity else 0 end) as nov_sales
+ ,sum(case when d_moy = 12
+ then cs_ext_sales_price* cs_quantity else 0 end) as dec_sales
+ ,sum(case when d_moy = 1
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as jan_net
+ ,sum(case when d_moy = 2
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as feb_net
+ ,sum(case when d_moy = 3
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as mar_net
+ ,sum(case when d_moy = 4
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as apr_net
+ ,sum(case when d_moy = 5
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as may_net
+ ,sum(case when d_moy = 6
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as jun_net
+ ,sum(case when d_moy = 7
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as jul_net
+ ,sum(case when d_moy = 8
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as aug_net
+ ,sum(case when d_moy = 9
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as sep_net
+ ,sum(case when d_moy = 10
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as oct_net
+ ,sum(case when d_moy = 11
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as nov_net
+ ,sum(case when d_moy = 12
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as dec_net
+ from
+ catalog_sales
+ ,warehouse
+ ,date_dim
+ ,time_dim
+ ,ship_mode
+ where
+ cs_warehouse_sk = w_warehouse_sk
+ and cs_sold_date_sk = d_date_sk
+ and cs_sold_time_sk = t_time_sk
+ and cs_ship_mode_sk = sm_ship_mode_sk
+ and d_year = 2002
+ and t_time between 49530 AND 49530+28800
+ and sm_carrier in ('DIAMOND','AIRBORNE')
+ group by
+ w_warehouse_name
+ ,w_warehouse_sq_ft
+ ,w_city
+ ,w_county
+ ,w_state
+ ,w_country
+ ,d_year
+ )
+ ) x
+ group by
+ w_warehouse_name
+ ,w_warehouse_sq_ft
+ ,w_city
+ ,w_county
+ ,w_state
+ ,w_country
+ ,ship_carriers
+ ,year
+ order by w_warehouse_name
+ limit 100
+PREHOOK: type: QUERY
+PREHOOK: Input: default@catalog_sales
+PREHOOK: Input: default@date_dim
+PREHOOK: Input: default@ship_mode
+PREHOOK: Input: default@time_dim
+PREHOOK: Input: default@warehouse
+PREHOOK: Input: default@web_sales
+PREHOOK: Output: hdfs://### HDFS PATH ###
+POSTHOOK: query: explain cbo
+select
+ w_warehouse_name
+ ,w_warehouse_sq_ft
+ ,w_city
+ ,w_county
+ ,w_state
+ ,w_country
+ ,ship_carriers
+ ,year
+ ,sum(jan_sales) as jan_sales
+ ,sum(feb_sales) as feb_sales
+ ,sum(mar_sales) as mar_sales
+ ,sum(apr_sales) as apr_sales
+ ,sum(may_sales) as may_sales
+ ,sum(jun_sales) as jun_sales
+ ,sum(jul_sales) as jul_sales
+ ,sum(aug_sales) as aug_sales
+ ,sum(sep_sales) as sep_sales
+ ,sum(oct_sales) as oct_sales
+ ,sum(nov_sales) as nov_sales
+ ,sum(dec_sales) as dec_sales
+ ,sum(jan_sales/w_warehouse_sq_ft) as jan_sales_per_sq_foot
+ ,sum(feb_sales/w_warehouse_sq_ft) as feb_sales_per_sq_foot
+ ,sum(mar_sales/w_warehouse_sq_ft) as mar_sales_per_sq_foot
+ ,sum(apr_sales/w_warehouse_sq_ft) as apr_sales_per_sq_foot
+ ,sum(may_sales/w_warehouse_sq_ft) as may_sales_per_sq_foot
+ ,sum(jun_sales/w_warehouse_sq_ft) as jun_sales_per_sq_foot
+ ,sum(jul_sales/w_warehouse_sq_ft) as jul_sales_per_sq_foot
+ ,sum(aug_sales/w_warehouse_sq_ft) as aug_sales_per_sq_foot
+ ,sum(sep_sales/w_warehouse_sq_ft) as sep_sales_per_sq_foot
+ ,sum(oct_sales/w_warehouse_sq_ft) as oct_sales_per_sq_foot
+ ,sum(nov_sales/w_warehouse_sq_ft) as nov_sales_per_sq_foot
+ ,sum(dec_sales/w_warehouse_sq_ft) as dec_sales_per_sq_foot
+ ,sum(jan_net) as jan_net
+ ,sum(feb_net) as feb_net
+ ,sum(mar_net) as mar_net
+ ,sum(apr_net) as apr_net
+ ,sum(may_net) as may_net
+ ,sum(jun_net) as jun_net
+ ,sum(jul_net) as jul_net
+ ,sum(aug_net) as aug_net
+ ,sum(sep_net) as sep_net
+ ,sum(oct_net) as oct_net
+ ,sum(nov_net) as nov_net
+ ,sum(dec_net) as dec_net
+ from (
+ (select
+ w_warehouse_name
+ ,w_warehouse_sq_ft
+ ,w_city
+ ,w_county
+ ,w_state
+ ,w_country
+ ,'DIAMOND' || ',' || 'AIRBORNE' as ship_carriers
+ ,d_year as year
+ ,sum(case when d_moy = 1
+ then ws_sales_price* ws_quantity else 0 end) as jan_sales
+ ,sum(case when d_moy = 2
+ then ws_sales_price* ws_quantity else 0 end) as feb_sales
+ ,sum(case when d_moy = 3
+ then ws_sales_price* ws_quantity else 0 end) as mar_sales
+ ,sum(case when d_moy = 4
+ then ws_sales_price* ws_quantity else 0 end) as apr_sales
+ ,sum(case when d_moy = 5
+ then ws_sales_price* ws_quantity else 0 end) as may_sales
+ ,sum(case when d_moy = 6
+ then ws_sales_price* ws_quantity else 0 end) as jun_sales
+ ,sum(case when d_moy = 7
+ then ws_sales_price* ws_quantity else 0 end) as jul_sales
+ ,sum(case when d_moy = 8
+ then ws_sales_price* ws_quantity else 0 end) as aug_sales
+ ,sum(case when d_moy = 9
+ then ws_sales_price* ws_quantity else 0 end) as sep_sales
+ ,sum(case when d_moy = 10
+ then ws_sales_price* ws_quantity else 0 end) as oct_sales
+ ,sum(case when d_moy = 11
+ then ws_sales_price* ws_quantity else 0 end) as nov_sales
+ ,sum(case when d_moy = 12
+ then ws_sales_price* ws_quantity else 0 end) as dec_sales
+ ,sum(case when d_moy = 1
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as jan_net
+ ,sum(case when d_moy = 2
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as feb_net
+ ,sum(case when d_moy = 3
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as mar_net
+ ,sum(case when d_moy = 4
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as apr_net
+ ,sum(case when d_moy = 5
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as may_net
+ ,sum(case when d_moy = 6
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as jun_net
+ ,sum(case when d_moy = 7
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as jul_net
+ ,sum(case when d_moy = 8
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as aug_net
+ ,sum(case when d_moy = 9
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as sep_net
+ ,sum(case when d_moy = 10
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as oct_net
+ ,sum(case when d_moy = 11
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as nov_net
+ ,sum(case when d_moy = 12
+ then ws_net_paid_inc_tax * ws_quantity else 0 end) as dec_net
+ from
+ web_sales
+ ,warehouse
+ ,date_dim
+ ,time_dim
+ ,ship_mode
+ where
+ ws_warehouse_sk = w_warehouse_sk
+ and ws_sold_date_sk = d_date_sk
+ and ws_sold_time_sk = t_time_sk
+ and ws_ship_mode_sk = sm_ship_mode_sk
+ and d_year = 2002
+ and t_time between 49530 and 49530+28800
+ and sm_carrier in ('DIAMOND','AIRBORNE')
+ group by
+ w_warehouse_name
+ ,w_warehouse_sq_ft
+ ,w_city
+ ,w_county
+ ,w_state
+ ,w_country
+ ,d_year
+ )
+ union all
+ (select
+ w_warehouse_name
+ ,w_warehouse_sq_ft
+ ,w_city
+ ,w_county
+ ,w_state
+ ,w_country
+ ,'DIAMOND' || ',' || 'AIRBORNE' as ship_carriers
+ ,d_year as year
+ ,sum(case when d_moy = 1
+ then cs_ext_sales_price* cs_quantity else 0 end) as jan_sales
+ ,sum(case when d_moy = 2
+ then cs_ext_sales_price* cs_quantity else 0 end) as feb_sales
+ ,sum(case when d_moy = 3
+ then cs_ext_sales_price* cs_quantity else 0 end) as mar_sales
+ ,sum(case when d_moy = 4
+ then cs_ext_sales_price* cs_quantity else 0 end) as apr_sales
+ ,sum(case when d_moy = 5
+ then cs_ext_sales_price* cs_quantity else 0 end) as may_sales
+ ,sum(case when d_moy = 6
+ then cs_ext_sales_price* cs_quantity else 0 end) as jun_sales
+ ,sum(case when d_moy = 7
+ then cs_ext_sales_price* cs_quantity else 0 end) as jul_sales
+ ,sum(case when d_moy = 8
+ then cs_ext_sales_price* cs_quantity else 0 end) as aug_sales
+ ,sum(case when d_moy = 9
+ then cs_ext_sales_price* cs_quantity else 0 end) as sep_sales
+ ,sum(case when d_moy = 10
+ then cs_ext_sales_price* cs_quantity else 0 end) as oct_sales
+ ,sum(case when d_moy = 11
+ then cs_ext_sales_price* cs_quantity else 0 end) as nov_sales
+ ,sum(case when d_moy = 12
+ then cs_ext_sales_price* cs_quantity else 0 end) as dec_sales
+ ,sum(case when d_moy = 1
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as jan_net
+ ,sum(case when d_moy = 2
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as feb_net
+ ,sum(case when d_moy = 3
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as mar_net
+ ,sum(case when d_moy = 4
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as apr_net
+ ,sum(case when d_moy = 5
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as may_net
+ ,sum(case when d_moy = 6
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as jun_net
+ ,sum(case when d_moy = 7
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as jul_net
+ ,sum(case when d_moy = 8
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as aug_net
+ ,sum(case when d_moy = 9
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as sep_net
+ ,sum(case when d_moy = 10
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as oct_net
+ ,sum(case when d_moy = 11
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as nov_net
+ ,sum(case when d_moy = 12
+ then cs_net_paid_inc_ship_tax * cs_quantity else 0 end) as dec_net
+ from
+ catalog_sales
+ ,warehouse
+ ,date_dim
+ ,time_dim
+ ,ship_mode
+ where
+ cs_warehouse_sk = w_warehouse_sk
+ and cs_sold_date_sk = d_date_sk
+ and cs_sold_time_sk = t_time_sk
+ and cs_ship_mode_sk = sm_ship_mode_sk
+ and d_year = 2002
+ and t_time between 49530 AND 49530+28800
+ and sm_carrier in ('DIAMOND','AIRBORNE')
+ group by
+ w_warehouse_name
+ ,w_warehouse_sq_ft
+ ,w_city
+ ,w_county
+ ,w_state
+ ,w_country
+ ,d_year
+ )
+ ) x
+ group by
+ w_warehouse_name
+ ,w_warehouse_sq_ft
+ ,w_city
+ ,w_county
+ ,w_state
+ ,w_country
+ ,ship_carriers
+ ,year
+ order by w_warehouse_name
+ limit 100
+POSTHOOK: type: QUERY
+POSTHOOK: Input: default@catalog_sales
+POSTHOOK: Input: default@date_dim
+POSTHOOK: Input: default@ship_mode
+POSTHOOK: Input: default@time_dim
+POSTHOOK: Input: default@warehouse
+POSTHOOK: Input: default@web_sales
+POSTHOOK: Output: hdfs://### HDFS PATH ###
+CBO PLAN:
+HiveProject(w_warehouse_name=[$0], w_warehouse_sq_ft=[$1], w_city=[$2], w_county=[$3], w_state=[$4], w_country=[$5], ship_carriers=[CAST(_UTF-16LE'DIAMOND,AIRBORNE'):VARCHAR(2147483647) CHARACTER SET "UTF-16LE" COLLATE "ISO-8859-1$en_US$primary"], year=[CAST(2002):INTEGER], jan_sales=[$6], feb_sales=[$7], mar_sales=[$8], apr_sales=[$9], may_sales=[$10], jun_sales=[$11], jul_sales=[$12], aug_sales=[$13], sep_sales=[$14], oct_sales=[$15], nov_sales=[$16], dec_sales=[$17], jan_sales_per_sq_foot=[$18], feb_sales_per_sq_foot=[$19], mar_sales_per_sq_foot=[$20], apr_sales_per_sq_foot=[$21], may_sales_per_sq_foot=[$22], jun_sales_per_sq_foot=[$23], jul_sales_per_sq_foot=[$24], aug_sales_per_sq_foot=[$25], sep_sales_per_sq_foot=[$26], oct_sales_per_sq_foot=[$27], nov_sales_per_sq_foot=[$28], dec_sales_per_sq_foot=[$29], jan_net=[$30], feb_net=[$31], mar_net=[$32], apr_net=[$33], may_net=[$34], jun_net=[$35], jul_net=[$36], aug_net=[$37], sep_net=[$38], oct_net=[$39], nov_net=[$40], dec_net=[
$41])
+ HiveSortLimit(sort0=[$0], dir0=[ASC], fetch=[100])
+ HiveProject($f0=[$0], $f1=[$1], $f2=[$2], $f3=[$3], $f4=[$4], $f5=[$5], $f6=[$6], $f7=[$7], $f8=[$8], $f9=[$9], $f10=[$10], $f11=[$11], $f12=[$12], $f13=[$13], $f14=[$14], $f15=[$15], $f16=[$16], $f17=[$17], $f18=[$18], $f19=[$19], $f20=[$20], $f21=[$21], $f22=[$22], $f23=[$23], $f24=[$24], $f25=[$25], $f26=[$26], $f27=[$27], $f28=[$28], $f29=[$29], $f30=[$30], $f31=[$31], $f32=[$32], $f33=[$33], $f34=[$34], $f35=[$35], $f36=[$36], $f37=[$37], $f38=[$38], $f39=[$39], $f40=[$40], $f41=[$41])
+ HiveAggregate(group=[{0, 1, 2, 3, 4, 5}], agg#0=[sum($6)], agg#1=[sum($7)], agg#2=[sum($8)], agg#3=[sum($9)], agg#4=[sum($10)], agg#5=[sum($11)], agg#6=[sum($12)], agg#7=[sum($13)], agg#8=[sum($14)], agg#9=[sum($15)], agg#10=[sum($16)], agg#11=[sum($17)], agg#12=[sum($18)], agg#13=[sum($19)], agg#14=[sum($20)], agg#15=[sum($21)], agg#16=[sum($22)], agg#17=[sum($23)], agg#18=[sum($24)], agg#19=[sum($25)], agg#20=[sum($26)], agg#21=[sum($27)], agg#22=[sum($28)], agg#23=[sum($29)], agg#24=[sum($30)], agg#25=[sum($31)], agg#26=[sum($32)], agg#27=[sum($33)], agg#28=[sum($34)], agg#29=[sum($35)], agg#30=[sum($36)], agg#31=[sum($37)], agg#32=[sum($38)], agg#33=[sum($39)], agg#34=[sum($40)], agg#35=[sum($41)])
+ HiveProject($f0=[$0], $f1=[$1], $f2=[$2], $f3=[$3], $f4=[$4], $f5=[$5], $f8=[$6], $f9=[$7], $f10=[$8], $f11=[$9], $f12=[$10], $f13=[$11], $f14=[$12], $f15=[$13], $f16=[$14], $f17=[$15], $f18=[$16], $f19=[$17], $f20=[/($6, CAST($1):DECIMAL(10, 0))], $f21=[/($7, CAST($1):DECIMAL(10, 0))], $f22=[/($8, CAST($1):DECIMAL(10, 0))], $f23=[/($9, CAST($1):DECIMAL(10, 0))], $f24=[/($10, CAST($1):DECIMAL(10, 0))], $f25=[/($11, CAST($1):DECIMAL(10, 0))], $f26=[/($12, CAST($1):DECIMAL(10, 0))], $f27=[/($13, CAST($1):DECIMAL(10, 0))], $f28=[/($14, CAST($1):DECIMAL(10, 0))], $f29=[/($15, CAST($1):DECIMAL(10, 0))], $f30=[/($16, CAST($1):DECIMAL(10, 0))], $f31=[/($17, CAST($1):DECIMAL(10, 0))], $f32=[$18], $f33=[$19], $f34=[$20], $f35=[$21], $f36=[$22], $f37=[$23], $f38=[$24], $f39=[$25], $f40=[$26], $f41=[$27], $f42=[$28], $f43=[$29])
+ HiveUnion(all=[true])
+ HiveProject($f0=[$0], $f1=[$1], $f2=[$2], $f3=[$3], $f4=[$4], $f5=[$5], $f6=[$6], $f7=[$7], $f8=[$8], $f9=[$9], $f10=[$10], $f11=[$11], $f12=[$12], $f13=[$13], $f14=[$14], $f15=[$15], $f16=[$16], $f17=[$17], $f18=[$18], $f19=[$19], $f20=[$20], $f21=[$21], $f22=[$22], $f23=[$23], $f24=[$24], $f25=[$25], $f26=[$26], $f27=[$27], $f28=[$28], $f29=[$29])
+ HiveAggregate(group=[{0, 1, 2, 3, 4, 5}], agg#0=[sum($6)], agg#1=[sum($7)], agg#2=[sum($8)], agg#3=[sum($9)], agg#4=[sum($10)], agg#5=[sum($11)], agg#6=[sum($12)], agg#7=[sum($13)], agg#8=[sum($14)], agg#9=[sum($15)], agg#10=[sum($16)], agg#11=[sum($17)], agg#12=[sum($18)], agg#13=[sum($19)], agg#14=[sum($20)], agg#15=[sum($21)], agg#16=[sum($22)], agg#17=[sum($23)], agg#18=[sum($24)], agg#19=[sum($25)], agg#20=[sum($26)], agg#21=[sum($27)], agg#22=[sum($28)], agg#23=[sum($29)])
+ HiveProject($f0=[$1], $f1=[$2], $f2=[$3], $f3=[$4], $f4=[$5], $f5=[$6], $f7=[CASE($15, $11, 0)], $f8=[CASE($16, $11, 0)], $f9=[CASE($17, $11, 0)], $f10=[CASE($18, $11, 0)], $f11=[CASE($19, $11, 0)], $f12=[CASE($20, $11, 0)], $f13=[CASE($21, $11, 0)], $f14=[CASE($22, $11, 0)], $f15=[CASE($23, $11, 0)], $f16=[CASE($24, $11, 0)], $f17=[CASE($25, $11, 0)], $f18=[CASE($26, $11, 0)], $f19=[CASE($15, $12, 0)], $f20=[CASE($16, $12, 0)], $f21=[CASE($17, $12, 0)], $f22=[CASE($18, $12, 0)], $f23=[CASE($19, $12, 0)], $f24=[CASE($20, $12, 0)], $f25=[CASE($21, $12, 0)], $f26=[CASE($22, $12, 0)], $f27=[CASE($23, $12, 0)], $f28=[CASE($24, $12, 0)], $f29=[CASE($25, $12, 0)], $f30=[CASE($26, $12, 0)])
+ HiveJoin(condition=[=($10, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(w_warehouse_sk=[$0], w_warehouse_name=[$2], w_warehouse_sq_ft=[$3], w_city=[$8], w_county=[$9], w_state=[$10], w_country=[$12])
+ HiveTableScan(table=[[default, warehouse]], table:alias=[warehouse])
+ HiveJoin(condition=[=($2, $20)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($0, $7)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($1, $6)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(ws_sold_date_sk=[$0], ws_sold_time_sk=[$1], ws_ship_mode_sk=[$14], ws_warehouse_sk=[$15], *=[*($21, CAST($18):DECIMAL(10, 0))], *5=[*($30, CAST($18):DECIMAL(10, 0))])
+ HiveFilter(condition=[AND(IS NOT NULL($15), IS NOT NULL($0), IS NOT NULL($1), IS NOT NULL($14))])
+ HiveTableScan(table=[[default, web_sales]], table:alias=[web_sales])
+ HiveProject(t_time_sk=[$0])
+ HiveFilter(condition=[BETWEEN(false, $2, 49530, 78330)])
+ HiveTableScan(table=[[default, time_dim]], table:alias=[time_dim])
+ HiveProject(d_date_sk=[$0], ==[=($8, 1)], =2=[=($8, 2)], =3=[=($8, 3)], =4=[=($8, 4)], =5=[=($8, 5)], =6=[=($8, 6)], =7=[=($8, 7)], =8=[=($8, 8)], =9=[=($8, 9)], =10=[=($8, 10)], =11=[=($8, 11)], =12=[=($8, 12)])
+ HiveFilter(condition=[=($6, 2002)])
+ HiveTableScan(table=[[default, date_dim]], table:alias=[date_dim])
+ HiveProject(sm_ship_mode_sk=[$0])
+ HiveFilter(condition=[IN($4, _UTF-16LE'DIAMOND', _UTF-16LE'AIRBORNE')])
+ HiveTableScan(table=[[default, ship_mode]], table:alias=[ship_mode])
+ HiveProject($f0=[$0], $f1=[$1], $f2=[$2], $f3=[$3], $f4=[$4], $f5=[$5], $f6=[$6], $f7=[$7], $f8=[$8], $f9=[$9], $f10=[$10], $f11=[$11], $f12=[$12], $f13=[$13], $f14=[$14], $f15=[$15], $f16=[$16], $f17=[$17], $f18=[$18], $f19=[$19], $f20=[$20], $f21=[$21], $f22=[$22], $f23=[$23], $f24=[$24], $f25=[$25], $f26=[$26], $f27=[$27], $f28=[$28], $f29=[$29])
+ HiveAggregate(group=[{0, 1, 2, 3, 4, 5}], agg#0=[sum($6)], agg#1=[sum($7)], agg#2=[sum($8)], agg#3=[sum($9)], agg#4=[sum($10)], agg#5=[sum($11)], agg#6=[sum($12)], agg#7=[sum($13)], agg#8=[sum($14)], agg#9=[sum($15)], agg#10=[sum($16)], agg#11=[sum($17)], agg#12=[sum($18)], agg#13=[sum($19)], agg#14=[sum($20)], agg#15=[sum($21)], agg#16=[sum($22)], agg#17=[sum($23)], agg#18=[sum($24)], agg#19=[sum($25)], agg#20=[sum($26)], agg#21=[sum($27)], agg#22=[sum($28)], agg#23=[sum($29)])
+ HiveProject($f0=[$22], $f1=[$23], $f2=[$24], $f3=[$25], $f4=[$26], $f5=[$27], $f7=[CASE($8, $4, 0)], $f8=[CASE($9, $4, 0)], $f9=[CASE($10, $4, 0)], $f10=[CASE($11, $4, 0)], $f11=[CASE($12, $4, 0)], $f12=[CASE($13, $4, 0)], $f13=[CASE($14, $4, 0)], $f14=[CASE($15, $4, 0)], $f15=[CASE($16, $4, 0)], $f16=[CASE($17, $4, 0)], $f17=[CASE($18, $4, 0)], $f18=[CASE($19, $4, 0)], $f19=[CASE($8, $5, 0)], $f20=[CASE($9, $5, 0)], $f21=[CASE($10, $5, 0)], $f22=[CASE($11, $5, 0)], $f23=[CASE($12, $5, 0)], $f24=[CASE($13, $5, 0)], $f25=[CASE($14, $5, 0)], $f26=[CASE($15, $5, 0)], $f27=[CASE($16, $5, 0)], $f28=[CASE($17, $5, 0)], $f29=[CASE($18, $5, 0)], $f30=[CASE($19, $5, 0)])
+ HiveJoin(condition=[=($3, $21)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($2, $20)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($0, $7)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($1, $6)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(cs_sold_date_sk=[$0], cs_sold_time_sk=[$1], cs_ship_mode_sk=[$13], cs_warehouse_sk=[$14], *=[*($23, CAST($18):DECIMAL(10, 0))], *5=[*($32, CAST($18):DECIMAL(10, 0))])
+ HiveFilter(condition=[AND(IS NOT NULL($14), IS NOT NULL($0), IS NOT NULL($1), IS NOT NULL($13))])
+ HiveTableScan(table=[[default, catalog_sales]], table:alias=[catalog_sales])
+ HiveProject(t_time_sk=[$0])
+ HiveFilter(condition=[BETWEEN(false, $2, 49530, 78330)])
+ HiveTableScan(table=[[default, time_dim]], table:alias=[time_dim])
+ HiveProject(d_date_sk=[$0], ==[=($8, 1)], =2=[=($8, 2)], =3=[=($8, 3)], =4=[=($8, 4)], =5=[=($8, 5)], =6=[=($8, 6)], =7=[=($8, 7)], =8=[=($8, 8)], =9=[=($8, 9)], =10=[=($8, 10)], =11=[=($8, 11)], =12=[=($8, 12)])
+ HiveFilter(condition=[=($6, 2002)])
+ HiveTableScan(table=[[default, date_dim]], table:alias=[date_dim])
+ HiveProject(sm_ship_mode_sk=[$0])
+ HiveFilter(condition=[IN($4, _UTF-16LE'DIAMOND', _UTF-16LE'AIRBORNE')])
+ HiveTableScan(table=[[default, ship_mode]], table:alias=[ship_mode])
+ HiveProject(w_warehouse_sk=[$0], w_warehouse_name=[$2], w_warehouse_sq_ft=[$3], w_city=[$8], w_county=[$9], w_state=[$10], w_country=[$12])
+ HiveTableScan(table=[[default, warehouse]], table:alias=[warehouse])
+
http://git-wip-us.apache.org/repos/asf/hive/blob/b8299551/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query67.q.out
----------------------------------------------------------------------
diff --git a/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query67.q.out b/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query67.q.out
new file mode 100644
index 0000000..41a3896
--- /dev/null
+++ b/ql/src/test/results/clientpositive/perf/tez/constraints/cbo_query67.q.out
@@ -0,0 +1,118 @@
+PREHOOK: query: explain cbo
+select *
+from (select i_category
+ ,i_class
+ ,i_brand
+ ,i_product_name
+ ,d_year
+ ,d_qoy
+ ,d_moy
+ ,s_store_id
+ ,sumsales
+ ,rank() over (partition by i_category order by sumsales desc) rk
+ from (select i_category
+ ,i_class
+ ,i_brand
+ ,i_product_name
+ ,d_year
+ ,d_qoy
+ ,d_moy
+ ,s_store_id
+ ,sum(coalesce(ss_sales_price*ss_quantity,0)) sumsales
+ from store_sales
+ ,date_dim
+ ,store
+ ,item
+ where ss_sold_date_sk=d_date_sk
+ and ss_item_sk=i_item_sk
+ and ss_store_sk = s_store_sk
+ and d_month_seq between 1212 and 1212+11
+ group by rollup(i_category, i_class, i_brand, i_product_name, d_year, d_qoy, d_moy,s_store_id))dw1) dw2
+where rk <= 100
+order by i_category
+ ,i_class
+ ,i_brand
+ ,i_product_name
+ ,d_year
+ ,d_qoy
+ ,d_moy
+ ,s_store_id
+ ,sumsales
+ ,rk
+limit 100
+PREHOOK: type: QUERY
+PREHOOK: Input: default@date_dim
+PREHOOK: Input: default@item
+PREHOOK: Input: default@store
+PREHOOK: Input: default@store_sales
+PREHOOK: Output: hdfs://### HDFS PATH ###
+POSTHOOK: query: explain cbo
+select *
+from (select i_category
+ ,i_class
+ ,i_brand
+ ,i_product_name
+ ,d_year
+ ,d_qoy
+ ,d_moy
+ ,s_store_id
+ ,sumsales
+ ,rank() over (partition by i_category order by sumsales desc) rk
+ from (select i_category
+ ,i_class
+ ,i_brand
+ ,i_product_name
+ ,d_year
+ ,d_qoy
+ ,d_moy
+ ,s_store_id
+ ,sum(coalesce(ss_sales_price*ss_quantity,0)) sumsales
+ from store_sales
+ ,date_dim
+ ,store
+ ,item
+ where ss_sold_date_sk=d_date_sk
+ and ss_item_sk=i_item_sk
+ and ss_store_sk = s_store_sk
+ and d_month_seq between 1212 and 1212+11
+ group by rollup(i_category, i_class, i_brand, i_product_name, d_year, d_qoy, d_moy,s_store_id))dw1) dw2
+where rk <= 100
+order by i_category
+ ,i_class
+ ,i_brand
+ ,i_product_name
+ ,d_year
+ ,d_qoy
+ ,d_moy
+ ,s_store_id
+ ,sumsales
+ ,rk
+limit 100
+POSTHOOK: type: QUERY
+POSTHOOK: Input: default@date_dim
+POSTHOOK: Input: default@item
+POSTHOOK: Input: default@store
+POSTHOOK: Input: default@store_sales
+POSTHOOK: Output: hdfs://### HDFS PATH ###
+CBO PLAN:
+HiveSortLimit(sort0=[$0], sort1=[$1], sort2=[$2], sort3=[$3], sort4=[$4], sort5=[$5], sort6=[$6], sort7=[$7], sort8=[$8], sort9=[$9], dir0=[ASC], dir1=[ASC], dir2=[ASC], dir3=[ASC], dir4=[ASC], dir5=[ASC], dir6=[ASC], dir7=[ASC], dir8=[ASC], dir9=[ASC], fetch=[100])
+ HiveProject(i_category=[$0], i_class=[$1], i_brand=[$2], i_product_name=[$3], d_year=[$4], d_qoy=[$5], d_moy=[$6], s_store_id=[$7], sumsales=[$8], rank_window_0=[$9])
+ HiveFilter(condition=[<=($9, 100)])
+ HiveProject(i_category=[$2], i_class=[$1], i_brand=[$0], i_product_name=[$3], d_year=[$4], d_qoy=[$6], d_moy=[$5], s_store_id=[$7], sumsales=[$8], rank_window_0=[rank() OVER (PARTITION BY $2 ORDER BY $8 DESC NULLS LAST ROWS BETWEEN 2147483647 FOLLOWING AND 2147483647 PRECEDING)])
+ HiveProject(i_brand=[$0], i_class=[$1], i_category=[$2], i_product_name=[$3], d_year=[$4], d_moy=[$5], d_qoy=[$6], s_store_id=[$7], $f8=[$8])
+ HiveAggregate(group=[{1, 2, 3, 4, 6, 7, 8, 9}], groups=[[{1, 2, 3, 4, 6, 7, 8, 9}, {1, 2, 3, 4, 6, 7, 8}, {1, 2, 3, 4, 6, 8}, {1, 2, 3, 4, 6}, {1, 2, 3, 4}, {1, 2, 3}, {2, 3}, {3}, {}]], agg#0=[sum($10)])
+ HiveJoin(condition=[=($5, $0)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(i_item_sk=[$0], i_brand=[$8], i_class=[$10], i_category=[$12], i_product_name=[$21])
+ HiveTableScan(table=[[default, item]], table:alias=[item])
+ HiveProject(ss_item_sk=[$1], d_year=[$5], d_moy=[$6], d_qoy=[$7], s_store_id=[$9], CASE=[$3])
+ HiveJoin(condition=[=($2, $8)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveJoin(condition=[=($0, $4)], joinType=[inner], algorithm=[none], cost=[not available])
+ HiveProject(ss_sold_date_sk=[$0], ss_item_sk=[$2], ss_store_sk=[$7], CASE=[CASE(AND(IS NOT NULL($13), IS NOT NULL($10)), *($13, CAST($10):DECIMAL(10, 0)), 0)])
+ HiveFilter(condition=[AND(IS NOT NULL($0), IS NOT NULL($7))])
+ HiveTableScan(table=[[default, store_sales]], table:alias=[store_sales])
+ HiveProject(d_date_sk=[$0], d_year=[$6], d_moy=[$8], d_qoy=[$10])
+ HiveFilter(condition=[BETWEEN(false, $3, 1212, 1223)])
+ HiveTableScan(table=[[default, date_dim]], table:alias=[date_dim])
+ HiveProject(s_store_sk=[$0], s_store_id=[$1])
+ HiveTableScan(table=[[default, store]], table:alias=[store])
+