CREATE MATERIALIZED VIEW
CREATE MATERIALIZED VIEW
Description
Creates a materialized view. For usage information about materialized views, see Synchronous materialized view and Asynchronous materialized view.
CAUTION
Only users with the CREATE MATERIALIZED VIEW privilege in the database where the base table resides can create a materialized view.
Creating a materialized view is an asynchronous operation. Running this command successfully indicates that the task of creating the materialized view is submitted successfully. You can view the building status of a synchronous materialized view in a database via SHOW ALTER MATERIALIZED VIEW command, and view that of an asynchronous materialized view by querying the metadata tables tasks
and task_runs
in Information Schema.
StarRocks supports asynchronous materialized views from v2.4. The major differences between asynchronous materialized views and synchronous materialized views in previous versions are as follows:
Single-table aggregation | Multi-table join | Query rewrite | Refresh strategy | Base table | |
---|---|---|---|---|---|
ASYNC MV | Yes | Yes | Yes |
| Multiple tables from:
|
SYNC MV (Rollup) | Limited choices of aggregate functions | No | Yes | Synchronous refresh during data loading | Single table in the default catalog |
Synchronous materialized view
Syntax
CREATE MATERIALIZED VIEW [IF NOT EXISTS] [database.]<mv_name>
[COMMENT ""]
[PROPERTIES ("key"="value", ...)]
AS
<query_statement>
Parameters in brackets [] are optional.
Parameters
mv_name (required)
The name of the materialized view. The naming requirements are as follows:
- The name must consist of letters (a-z or A-Z), digits (0-9), or underscores (_), and it can only start with a letter.
- The length of the name cannot exceed 64 characters.
- The name is case-sensitive.
COMMENT (optional)
Comment on the materialized view. Note that COMMENT
must be placed after mv_name
. Otherwise, the materialized view cannot be created.
query_statement (required)
The query statement to create the materialized view. Its result is the data in the materialized view. The syntax is as follows:
SELECT select_expr[, select_expr ...]
[GROUP BY column_name[, column_name ...]]
[ORDER BY column_name[, column_name ...]]
-
select_expr (required)
All columns in the query statement, that is, all columns in the materialized view schema. This parameter supports the following values:
-
Simple columns or aggregate columns such as
SELECT a, abs(b), min(c) FROM table_a
, wherea
,b
, andc
are the names of columns in the base table. If you do not specify column names for the materialized view, StarRocks automatically assigns names to the columns. -
Expressions such as
SELECT a+1 AS x, b+2 AS y, c*c AS z FROM table_a
, wherea+1
,b+2
andc*c
are the expressions that reference the columns in the base tables, andx
,y
andz
are the aliases assigned to the columns in the materialized view.
NOTE
- You must specify at least one column in
select_expr
. - Synchronous materialized views only support aggregate functions on a single column. Query statements in the form of
sum(a+b)
are not supported. - When creating a synchronous materialized view with an aggregate function, you must specify the GROUP BY clause, and specify at least one GROUP BY column in
select_expr
. - Synchronous materialized views do not support clauses such as JOIN, WHERE, and the HAVING clause of GROUP BY.
- When using ALTER TABLE DROP COLUMN to drop a specific column in a base table, you must ensure that all synchronous materialized views of the base table do not contain the dropped column, otherwise the drop operation will fail. Before you drop the column, you must first drop all synchronous materialized views that contain the column.
- Creating too many synchronous materialized views for a table will affect the data load efficiency. When data is being loaded to the base table, the data in synchronous materialized view and base table will be updated synchronously. If a base table contains
n
synchronous materialized views, the efficiency of loading data into the base table is about the same as the efficiency of loading data inton
tables.
-
-
GROUP BY (optional)
The GROUP BY column of the query. If this parameter is not specified, the data will not be grouped by default.
-
ORDER BY (optional)
The ORDER BY column of the query.
- Columns in the ORDER BY clause must be declared in the same order as the columns in
select_expr
. - If the query statement contains a GROUP BY clause, the ORDER BY columns must be identical to the GROUP BY columns.
- If this parameter is not specified, the system will automatically supplement the ORDER BY column according to the following rules:
- If the materialized view is the AGGREGATE type, all GROUP BY columns are automatically used as sort keys.
- If the materialized view is not the AGGREGATE type, StarRocks automatically selects sort keys based on the prefix columns.
- Columns in the ORDER BY clause must be declared in the same order as the columns in
Automatic query rewrite with synchronous materialized view
When a query that follows the pattern of a synchronous materialized view is executed, the original query statement is automatically rewritten and the intermediate results stored in the materialized view are used.
The following table shows the correspondence between the aggregate function in the original query and the aggregate function used to construct the materialized view. You can select the corresponding aggregate function to build a materialized view according to your business scenario.
aggregate function in the original query | aggregate function of the materialized view |
---|---|
sum | sum |
min | min |
max | max |
count | count |
bitmap_union, bitmap_union_count, count(distinct) | bitmap_union |
hll_raw_agg, hll_union_agg, ndv, approx_count_distinct | hll_union |
percentile_approx, percentile_union | percentile_union |
Asynchronous materialized view
Syntax
CREATE MATERIALIZED VIEW [IF NOT EXISTS] [database.]<mv_name>
[COMMENT ""]
-- You must specify either `distribution_desc` or `refresh_scheme`, or both.
-- distribution_desc
DISTRIBUTED BY HASH(<bucket_key>[,<bucket_key2> ...]) [BUCKETS <bucket_number>]
-- refresh_scheme
[REFRESH
[ASYNC | ASYNC [START (<start_time>)] EVERY (INTERVAL <refresh_interval>) | MANUAL]
]
-- partition_expression
[PARTITION BY
{<date_column> | date_trunc(fmt, <date_column>)}
]
-- order_by_expression
[ORDER BY (<sort_key>)]
[PROPERTIES ("key"="value", ...)]
AS
<query_statement>
Parameters in brackets [] are optional.
Parameters
mv_name (required)
The name of the materialized view. The naming requirements are as follows:
- The name must consist of letters (a-z or A-Z), digits (0-9), or underscores (_), and it can only start with a letter.
- The length of the name cannot exceed 64 characters.
- The name is case-sensitive.
CAUTION
Multiple materialized views can be created on the same base table, but the names of the materialized views in the same database cannot be duplicated.
COMMENT (optional)
Comment on the materialized view. Note that COMMENT
must be placed after mv_name
. Otherwise, the materialized view cannot be created.
distribution_desc (reuqired)
The bucketing strategy of the asynchronous materialized view.
Syntax
DISTRIBUTED BY HASH (<bucket_key1>[,<bucket_key2> ...]) [BUCKETS <bucket_number>]
For more information, see Data distribution.
NOTE
Since v2.5.7, StarRocks can automatically set the number of buckets (BUCKETS) when you create a table or add a partition. You no longer need to manually set the number of buckets. For detailed information, see determine the number of buckets.
refresh_scheme (optional)
NOTE
While creating an asynchronous materialized view, you must specify either
distribution_desc
orrefresh_scheme
, or both.
The refresh strategy of the asynchronous materialized view. Valid values:
ASYNC
: Automatic refresh mode. Each time the base table data changes, the materialized view is automatically refreshed.ASYNC [START (<start_time>)] EVERY(INTERVAL <interval>)
: Regular refresh mode. The materialized view is refreshed regularly at the interval defined. You can specify the interval asEVERY (interval n day/hour/minute/second)
using the following units:DAY
,HOUR
,MINUTE
, andSECOND
. The default value is10 MINUTE
. You can further specify the refresh start time asSTART('yyyy-MM-dd hh:mm:ss')
. If the start time is not specified, the current time is used. Example:ASYNC START ('2023-09-12 16:30:25') EVERY (INTERVAL 5 MINUTE)
.MANUAL
: Manual refresh mode. The materialized view will not be refreshed unless you trigger a refresh task manually.
If this parameter is not specified, the default value MANUAL
is used.
partition_expression (optional)
The partitioning strategy of the asynchronous materialized view. As for the current version of StarRocks, only one partition expression is supported when creating an asynchronous materialized view.
CAUTION
Currently, asynchronous materialized views do not support the list partitioning strategy.
Valid values:
column_name
: The name of the column used for partitioning. The expressionPARTITION BY dt
means to partition the materialized view according to thedt
column.- date_trunc function: The function used to truncate the time unit.
PARTITION BY date_trunc("MONTH", dt)
means that thedt
column is truncated to month as the unit for partitioning. The date_trunc function supports truncating time to units includingYEAR
,MONTH
,DAY
,HOUR
, andMINUTE
.
If this parameter is not specified, no partitioning strategy is adopted by default.
PROPERTIES (optional)
Properties of the asynchronous materialized view. You can modify the properties of an existing materialized view using ALTER MATERIALIZED VIEW.
replication_num
: The number of materialized view replicas to create.storage_medium
: Storage medium type. Valid values:HDD
andSSD
.storage_cooldown_time
: the storage cooldown time for a partition. If both HDD and SSD storage mediums are used, data in the SSD storage is moved to the HDD storage after the time specified by this property. Format: "yyyy-MM-dd HH:mm:ss". The specified time must be later than the current time. If this property is not explicitly specified, the storage cooldown is not performed by default.partition_ttl_number
: The number of most recent materialized view partitions to keep. For the partitions with a start time earlier than the current time, after the number of these partitions exceeds this value, less recent partitions will be deleted. StarRocks will periodically check materialized view partitions according to the time interval specified in the FE configuration itemdynamic_partition_check_interval_seconds
, and automatically delete expired partitions. If you enabled the dynamic partitioning strategy, the partitions created in advance are not counted in. When the value is-1
, all partitions of the materialized view will be preserved. Default:-1
.partition_refresh_number
: In a single refresh, the maximum number of partitions to refresh. If the number of partitions to be refreshed exceeds this value, StarRocks will split the refresh task and complete it in batches. Only when the previous batch of partitions is refreshed successfully, StarRocks will continue to refresh the next batch of partitions until all partitions are refreshed. If any of the partitions fail to be refreshed, no subsequent refresh tasks will be generated. When the value is-1
, the refresh task will not be split. Default:-1
.excluded_trigger_tables
: If a base table of the materialized view is listed here, the automatic refresh task will not be triggered when the data in the base table is changed. This parameter only applies to load-triggered refresh strategy, and is usually used together with the propertyauto_refresh_partitions_limit
. Format:[db_name.]table_name
. When the value is an empty string, any data change in all base tables triggers the refresh of the corresponding materialized view. The default value is an empty string.auto_refresh_partitions_limit
: The number of most recent materialized view partitions that need to be refreshed when a materialized view refresh is triggered. You can use this property to limit the refresh range and reduce the refresh cost. However, because not all the partitions are refreshed, the data in the materialized view may not be consistent with the base table. Default:-1
. When the value is-1
, all partitions will be refreshed. When the value is a positive integer N, StarRocks sorts the existing partitions in chronological order, and refreshes the current partition and N-1 most recent partitions. If the number of partitions is less than N, StarRocks refreshes all existing partitions. If there are dynamic partitions created in advance in your materialized view, StarRocks refreshes all pre-created partitions.
CAUTION
The Unique Key constraints and Foreign Key constraints are only used for query rewrite. The Foreign Key constraint checks are not guaranteed when data is loaded into the table. You must ensure the data loaded into the table meets the constraints.
query_statement (required)
The query statement to create the asynchronous materialized view.
CAUTION
Currently, StarRocks does not support creating asynchronous materialized views with base tables created with the list partitioning strategy.
Query an asynchronous materialized view
An asynchronous materialized view is a physical table. You can operate it as any regular table except that you cannot directly load data into an asynchronous materialized view.
Automatic query rewrite with asynchronous materialized view
StarRocks v2.5 supports automatic and transparent query rewrite based on the SPJG-type asynchronous materialized views. The SPJG-type materialized views refer to materialized views whose plan only includes Scan, Filter, Project, and Aggregate types of operators. The SPJG-type materialized views query rewrite includes single table query rewrite, Join query rewrite, aggregation query rewrite, Union query rewrite and query rewrite based on nested materialized views.
See Asynchronous materialized view - Rewrite queries with the asynchronous materialized view for further information.
Supported data types
-
Asynchronous materialized views created based on the StarRocks default catalog support the following data types:
- Date: DATE, DATETIME
- String: CHAR, VARCHAR
- Numeric: BOOLEAN, TINYINT, SMALLINT, INT, BIGINT, LARGEINT, FLOAT, DOUBLE, DECIMAL, PERCENTILE
- Semi-structured: ARRAY, JSON
- Other: BITMAP, HLL
NOTE
BITMAP, HLL, and PERCENTILE have been supported since v2.4.5.
-
Asynchronous materialized views created based on the StarRocks external catalogs support the following data types:
-
Hive Catalog
- Numeric: INT/INTEGER, BIGINT, DOUBLE, FLOAT, DECIMAL
- Date: TIMESTAMP
- String: STRING, VARCHAR, CHAR
- Semi-structured: ARRAY
-
Hudi Catalog
- Numeric: BOOLEAN, INT, LONG, FLOAT, DOUBLE, DECIMAL
- Date: DATE, TimeMillis/TimeMicros, TimestampMillis/TimestampMicros
- String: STRING
- Semi-structured: ARRAY
-
Iceberg Catalog
- Numeric: BOOLEAN, INT, LONG, FLOAT, DOUBLE, DECIMAL(P, S)
- Date: DATE, TIME, TIMESTAMP
- String: STRING, UUID, FIXED(L), BINARY
- Semi-structured: LIST
-
Usage notes
-
The current version of StarRocks does not support creating multiple materialized views at the same time. A new materialized view can only be created when the one before is completed.
-
About synchronous materialized views:
- Synchronous materialized views only support aggregate functions on a single column. Query statements in the form of
sum(a+b)
are not supported. - Synchronous materialized views support only one aggregate function for each column of the base table. Query statements such as
select sum(a), min(a) from table
are not supported. - When creating a synchronous materialized view with an aggregate function, you must specify the GROUP BY clause, and specify at least one GROUP BY column in SELECT.
- Synchronous materialized views do not support clauses such as JOIN, WHERE, and the HAVING clause of GROUP BY.
- When using ALTER TABLE DROP COLUMN to drop a specific column in a base table, you must ensure that all synchronous materialized views of the base table do not contain the dropped column, otherwise, the drop operation will fail. Before you drop the column, you must first drop all synchronous materialized views that contain the column.
- Creating too many synchronous materialized views for a table will affect the data load efficiency. When data is being loaded to the base table, the data in the synchronous materialized view and the base table will be updated synchronously. If a base table contains
n
synchronous materialized views, the efficiency of loading data into the base table is about the same as the efficiency of loading data inton
tables.
- Synchronous materialized views only support aggregate functions on a single column. Query statements in the form of
-
About nested asynchronous materialized views:
- The refresh strategy for each materialized view only applies to the corresponding materialized view.
- Currently, StarRocks does not limit the number of nesting levels. In a production environment, we recommend that the number of nesting layers not exceed THREE.
-
About external catalog asynchronous materialized views:
- External catalog materialized view only support async fixed-interval refresh and manual refresh.
- Strict consistency is not guaranteed between the materialized view and the base tables in the external catalog.
- Currently, building materialized views based on external resources is not supported.
- Currently, StarRocks cannot perceive if the base table data in the external catalog has changed, so all partitions will be refreshed by default every time the base table is refreshed. You can manually refresh only some of partitions using REFRESH MATERIALIZED VIEW.
Examples
Examples of synchronous materialized views
The schema of the base table is as follows:
mysql> desc duplicate_table;
+-------+--------+------+------+---------+-------+
| Field | Type | Null | Key | Default | Extra |
+-------+--------+------+------+---------+-------+
| k1 | INT | Yes | true | N/A | |
| k2 | INT | Yes | true | N/A | |
| k3 | BIGINT | Yes | true | N/A | |
| k4 | BIGINT | Yes | true | N/A | |
+-------+--------+------+------+---------+-------+
Example 1: Create a synchronous materialized view that only contains the columns of the original table (k1, k2).
create materialized view k1_k2 as
select k1, k2 from duplicate_table;
The materialized view contains only two columns k1 and k2 without any aggregation.
+-----------------+-------+--------+------+------+---------+-------+
| IndexName | Field | Type | Null | Key | Default | Extra |
+-----------------+-------+--------+------+------+---------+-------+
| k1_k2 | k1 | INT | Yes | true | N/A | |
| | k2 | INT | Yes | true | N/A | |
+-----------------+-------+--------+------+------+---------+-------+
Example 2: Create a synchronous materialized view sorted by k2.
create materialized view k2_order as
select k2, k1 from duplicate_table order by k2;
The materialized view's schema is shown below. The materialized view contains only two columns k2 and k1, where column k2 is a sort column without any aggregation.
+-----------------+-------+--------+------+-------+---------+-------+
| IndexName | Field | Type | Null | Key | Default | Extra |
+-----------------+-------+--------+------+-------+---------+-------+
| k2_order | k2 | INT | Yes | true | N/A | |
| | k1 | INT | Yes | false | N/A | NONE |
+-----------------+-------+--------+------+-------+---------+-------+
Example 3: Create a synchronous materialized view grouped by k1 and k2, and a SUM aggregation on k3.
create materialized view k1_k2_sumk3 as
select k1, k2, sum(k3) from duplicate_table group by k1, k2;
The materialized view's schema is shown below. The materialized view contains three columns k1, k2 and sum (k3), where k1, k2 are grouped columns, and sum (k3) is the sum of the k3 columns grouped according to k1 and k2.
+-----------------+-------+--------+------+-------+---------+-------+
| IndexName | Field | Type | Null | Key | Default | Extra |
+-----------------+-------+--------+------+-------+---------+-------+
| k1_k2_sumk3 | k1 | INT | Yes | true | N/A | |
| | k2 | INT | Yes | true | N/A | |
| | k3 | BIGINT | Yes | false | N/A | SUM |
+-----------------+-------+--------+------+-------+---------+-------+
Because the materialized view does not declare a sort column, and it adopts an aggregation function, StarRocks supplements the grouped columns k1 and k2 by default.
Example 4: Create a synchronous materialized view to remove duplicate rows.
create materialized view deduplicate as
select k1, k2, k3, k4 from duplicate_table group by k1, k2, k3, k4;
The materialized view's schema is shown below. The materialized view contains k1, k2, k3, and k4 columns, and there are no duplicate rows.
+-----------------+-------+--------+------+-------+---------+-------+
| IndexName | Field | Type | Null | Key | Default | Extra |
+-----------------+-------+--------+------+-------+---------+-------+
| deduplicate | k1 | INT | Yes | true | N/A | |
| | k2 | INT | Yes | true | N/A | |
| | k3 | BIGINT | Yes | true | N/A | |
| | k4 | BIGINT | Yes | true | N/A | |
+-----------------+-------+--------+------+-------+---------+-------+
Example 5: Create a non-aggregated synchronous materialized view that does not declare a sort column.
The schema of the base table is shown below:
+-------+--------------+------+-------+---------+-------+
| Field | Type | Null | Key | Default | Extra |
+-------+--------------+------+-------+---------+-------+
| k1 | TINYINT | Yes | true | N/A | |
| k2 | SMALLINT | Yes | true | N/A | |
| k3 | INT | Yes | true | N/A | |
| k4 | BIGINT | Yes | true | N/A | |
| k5 | DECIMAL(9,0) | Yes | true | N/A | |
| k6 | DOUBLE | Yes | false | N/A | NONE |
| k7 | VARCHAR(20) | Yes | false | N/A | NONE |
+-------+--------------+------+-------+---------+-------+
The materialized view contains k3, k4, k5, k6, and k7 columns, and no sort column is declared. Create the materialized view with the following statement:
create materialized view mv_1 as
select k3, k4, k5, k6, k7 from all_type_table;
StarRocks automatically uses k3, k4, and k5 as the sort columns by default. The sum of the bytes occupied by these three column types is 4 (INT) + 8 (BIGINT) + 16 (DECIMAL) = 28 < 36. So these three columns are added as sort columns.
The materialized view's schema is as follows.
+----------------+-------+--------------+------+-------+---------+-------+
| IndexName | Field | Type | Null | Key | Default | Extra |
+----------------+-------+--------------+------+-------+---------+-------+
| mv_1 | k3 | INT | Yes | true | N/A | |
| | k4 | BIGINT | Yes | true | N/A | |
| | k5 | DECIMAL(9,0) | Yes | true | N/A | |
| | k6 | DOUBLE | Yes | false | N/A | NONE |
| | k7 | VARCHAR(20) | Yes | false | N/A | NONE |
+----------------+-------+--------------+------+-------+---------+-------+
It can be observed that the key
field of the k3, k4, and k5 columns is true
, which indicates that they are the sort keys. The key field of the k6, and k7 columns is false
, which indicates that they are not the sort keys.
Examples of asynchronous materialized views
The following examples are based on the base tables below:
CREATE TABLE `lineorder` (
`lo_orderkey` int(11) NOT NULL COMMENT "",
`lo_linenumber` int(11) NOT NULL COMMENT "",
`lo_custkey` int(11) NOT NULL COMMENT "",
`lo_partkey` int(11) NOT NULL COMMENT "",
`lo_suppkey` int(11) NOT NULL COMMENT "",
`lo_orderdate` int(11) NOT NULL COMMENT "",
`lo_orderpriority` varchar(16) NOT NULL COMMENT "",
`lo_shippriority` int(11) NOT NULL COMMENT "",
`lo_quantity` int(11) NOT NULL COMMENT "",
`lo_extendedprice` int(11) NOT NULL COMMENT "",
`lo_ordtotalprice` int(11) NOT NULL COMMENT "",
`lo_discount` int(11) NOT NULL COMMENT "",
`lo_revenue` int(11) NOT NULL COMMENT "",
`lo_supplycost` int(11) NOT NULL COMMENT "",
`lo_tax` int(11) NOT NULL COMMENT "",
`lo_commitdate` int(11) NOT NULL COMMENT "",
`lo_shipmode` varchar(11) NOT NULL COMMENT ""
) ENGINE=OLAP
DUPLICATE KEY(`lo_orderkey`)
COMMENT "OLAP"
PARTITION BY RANGE(`lo_orderdate`)
(PARTITION p1 VALUES [("-2147483648"), ("19930101")),
PARTITION p2 VALUES [("19930101"), ("19940101")),
PARTITION p3 VALUES [("19940101"), ("19950101")),
PARTITION p4 VALUES [("19950101"), ("19960101")),
PARTITION p5 VALUES [("19960101"), ("19970101")),
PARTITION p6 VALUES [("19970101"), ("19980101")),
PARTITION p7 VALUES [("19980101"), ("19990101")))
DISTRIBUTED BY HASH(`lo_orderkey`);
CREATE TABLE IF NOT EXISTS `customer` (
`c_custkey` int(11) NOT NULL COMMENT "",
`c_name` varchar(26) NOT NULL COMMENT "",
`c_address` varchar(41) NOT NULL COMMENT "",
`c_city` varchar(11) NOT NULL COMMENT "",
`c_nation` varchar(16) NOT NULL COMMENT "",
`c_region` varchar(13) NOT NULL COMMENT "",
`c_phone` varchar(16) NOT NULL COMMENT "",
`c_mktsegment` varchar(11) NOT NULL COMMENT ""
) ENGINE=OLAP
DUPLICATE KEY(`c_custkey`)
COMMENT "OLAP"
DISTRIBUTED BY HASH(`c_custkey`);
CREATE TABLE IF NOT EXISTS `dates` (
`d_datekey` int(11) NOT NULL COMMENT "",
`d_date` varchar(20) NOT NULL COMMENT "",
`d_dayofweek` varchar(10) NOT NULL COMMENT "",
`d_month` varchar(11) NOT NULL COMMENT "",
`d_year` int(11) NOT NULL COMMENT "",
`d_yearmonthnum` int(11) NOT NULL COMMENT "",
`d_yearmonth` varchar(9) NOT NULL COMMENT "",
`d_daynuminweek` int(11) NOT NULL COMMENT "",
`d_daynuminmonth` int(11) NOT NULL COMMENT "",
`d_daynuminyear` int(11) NOT NULL COMMENT "",
`d_monthnuminyear` int(11) NOT NULL COMMENT "",
`d_weeknuminyear` int(11) NOT NULL COMMENT "",
`d_sellingseason` varchar(14) NOT NULL COMMENT "",
`d_lastdayinweekfl` int(11) NOT NULL COMMENT "",
`d_lastdayinmonthfl` int(11) NOT NULL COMMENT "",
`d_holidayfl` int(11) NOT NULL COMMENT "",
`d_weekdayfl` int(11) NOT NULL COMMENT ""
) ENGINE=OLAP
DUPLICATE KEY(`d_datekey`)
COMMENT "OLAP"
DISTRIBUTED BY HASH(`d_datekey`);
CREATE TABLE IF NOT EXISTS `supplier` (
`s_suppkey` int(11) NOT NULL COMMENT "",
`s_name` varchar(26) NOT NULL COMMENT "",
`s_address` varchar(26) NOT NULL COMMENT "",
`s_city` varchar(11) NOT NULL COMMENT "",
`s_nation` varchar(16) NOT NULL COMMENT "",
`s_region` varchar(13) NOT NULL COMMENT "",
`s_phone` varchar(16) NOT NULL COMMENT ""
) ENGINE=OLAP
DUPLICATE KEY(`s_suppkey`)
COMMENT "OLAP"
DISTRIBUTED BY HASH(`s_suppkey`);
CREATE TABLE IF NOT EXISTS `part` (
`p_partkey` int(11) NOT NULL COMMENT "",
`p_name` varchar(23) NOT NULL COMMENT "",
`p_mfgr` varchar(7) NOT NULL COMMENT "",
`p_category` varchar(8) NOT NULL COMMENT "",
`p_brand` varchar(10) NOT NULL COMMENT "",
`p_color` varchar(12) NOT NULL COMMENT "",
`p_type` varchar(26) NOT NULL COMMENT "",
`p_size` int(11) NOT NULL COMMENT "",
`p_container` varchar(11) NOT NULL COMMENT ""
) ENGINE=OLAP
DUPLICATE KEY(`p_partkey`)
COMMENT "OLAP"
DISTRIBUTED BY HASH(`p_partkey`);
create table orders (
dt date NOT NULL,
order_id bigint NOT NULL,
user_id int NOT NULL,
merchant_id int NOT NULL,
good_id int NOT NULL,
good_name string NOT NULL,
price int NOT NULL,
cnt int NOT NULL,
revenue int NOT NULL,
state tinyint NOT NULL
)
PRIMARY KEY (dt, order_id)
PARTITION BY RANGE(`dt`)
( PARTITION p20210820 VALUES [('2021-08-20'), ('2021-08-21')),
PARTITION p20210821 VALUES [('2021-08-21'), ('2021-08-22')) )
DISTRIBUTED BY HASH(order_id)
PROPERTIES (
"replication_num" = "3",
"enable_persistent_index" = "true"
);
Example 1: Create a non-partitioned materialized view.
CREATE MATERIALIZED VIEW lo_mv1
DISTRIBUTED BY HASH(`lo_orderkey`)
REFRESH ASYNC
AS
select
lo_orderkey,
lo_custkey,
sum(lo_quantity) as total_quantity,
sum(lo_revenue) as total_revenue,
count(lo_shipmode) as shipmode_count
from lineorder
group by lo_orderkey, lo_custkey
order by lo_orderkey;
Example 2: Create a partitioned materialized view.
CREATE MATERIALIZED VIEW lo_mv2
PARTITION BY `lo_orderdate`
DISTRIBUTED BY HASH(`lo_orderkey`)
REFRESH ASYNC START('2023-07-01 10:00:00') EVERY (interval 1 day)
AS
select
lo_orderkey,
lo_orderdate,
lo_custkey,
sum(lo_quantity) as total_quantity,
sum(lo_revenue) as total_revenue,
count(lo_shipmode) as shipmode_count
from lineorder
group by lo_orderkey, lo_orderdate, lo_custkey
order by lo_orderkey;
-- Use the date_trunc() function to partition the materialized view by month.
CREATE MATERIALIZED VIEW order_mv1
PARTITION BY date_trunc('month', `dt`)
DISTRIBUTED BY HASH(`order_id`)
REFRESH ASYNC START('2023-07-01 10:00:00') EVERY (interval 1 day)
AS
select
dt,
order_id,
user_id,
sum(cnt) as total_cnt,
sum(revenue) as total_revenue,
count(state) as state_count
from orders
group by dt, order_id, user_id;
Example 3: Create an asynchronous materialized view.
CREATE MATERIALIZED VIEW flat_lineorder
DISTRIBUTED BY HASH(`lo_orderkey`)
REFRESH MANUAL
AS
SELECT
l.LO_ORDERKEY AS LO_ORDERKEY,
l.LO_LINENUMBER AS LO_LINENUMBER,
l.LO_CUSTKEY AS LO_CUSTKEY,
l.LO_PARTKEY AS LO_PARTKEY,
l.LO_SUPPKEY AS LO_SUPPKEY,
l.LO_ORDERDATE AS LO_ORDERDATE,
l.LO_ORDERPRIORITY AS LO_ORDERPRIORITY,
l.LO_SHIPPRIORITY AS LO_SHIPPRIORITY,
l.LO_QUANTITY AS LO_QUANTITY,
l.LO_EXTENDEDPRICE AS LO_EXTENDEDPRICE,
l.LO_ORDTOTALPRICE AS LO_ORDTOTALPRICE,
l.LO_DISCOUNT AS LO_DISCOUNT,
l.LO_REVENUE AS LO_REVENUE,
l.LO_SUPPLYCOST AS LO_SUPPLYCOST,
l.LO_TAX AS LO_TAX,
l.LO_COMMITDATE AS LO_COMMITDATE,
l.LO_SHIPMODE AS LO_SHIPMODE,
c.C_NAME AS C_NAME,
c.C_ADDRESS AS C_ADDRESS,
c.C_CITY AS C_CITY,
c.C_NATION AS C_NATION,
c.C_REGION AS C_REGION,
c.C_PHONE AS C_PHONE,
c.C_MKTSEGMENT AS C_MKTSEGMENT,
s.S_NAME AS S_NAME,
s.S_ADDRESS AS S_ADDRESS,
s.S_CITY AS S_CITY,
s.S_NATION AS S_NATION,
s.S_REGION AS S_REGION,
s.S_PHONE AS S_PHONE,
p.P_NAME AS P_NAME,
p.P_MFGR AS P_MFGR,
p.P_CATEGORY AS P_CATEGORY,
p.P_BRAND AS P_BRAND,
p.P_COLOR AS P_COLOR,
p.P_TYPE AS P_TYPE,
p.P_SIZE AS P_SIZE,
p.P_CONTAINER AS P_CONTAINER FROM lineorder AS l
INNER JOIN customer AS c ON c.C_CUSTKEY = l.LO_CUSTKEY
INNER JOIN supplier AS s ON s.S_SUPPKEY = l.LO_SUPPKEY
INNER JOIN part AS p ON p.P_PARTKEY = l.LO_PARTKEY;