SingleStore DB

SELECT

Retrieves data from a table.

Syntax
[with_clause]
SELECT
    [ALL | DISTINCT | DISTINCTROW]
    select_expr [[AS] alias], ...
    [INTO variable [, ...]]
    [ FROM table_references
          [WHERE expr]
          [GROUP BY {{col_name | expr | position}, ...
            | extended_grouping_expr}]
          [HAVING expr]
          [ORDER BY {col_name | expr | position} [ASC | DESC], ...]
          [LIMIT {[offset,] row_count | row_count OFFSET offset}]
          [FOR UPDATE]
    ]
    [{  INTO OUTFILE 'file_name' |
        INTO FS 'destination_directory/file_name'  |
        INTO S3 bucket/target CONFIG configuration_json CREDENTIALS credentials_json  |
        INTO HDFS '<hdfs://<namenode DNS> | <IP address>:<port>/<directory>' [ CONFIG configuration_json ] |
        INTO GCS bucket/path CONFIG configuration_json CREDENTIALS credentials_json  |
        INTO KAFKA kafka_topic_endpoint [kafka_configuration] [kafka_credentials]
        
     }
        [format_options]
    ]
    [INTO LINK [db name.]connection_name 'backup path']
format_options:
        [{FIELDS | COLUMNS}
          [TERMINATED BY 'string']
          [[OPTIONALLY] ENCLOSED BY 'char']
          [ESCAPED BY 'char']
        ]
        [LINES
          [STARTING BY 'string']
          [TERMINATED BY 'string']
        ]

table_references:
         table_factor | join_table

table_factor:
           tbl_name [[AS] alias] [sample_ratio_clause]
         | (subquery) [[AS] alias]
Remarks
  • The join_table clause is documented in JOIN and Subqueries.

  • CONFIG and CREDENTIALS can be specified in either order (CONFIG followed by CREDENTIALS or CREDENTIALS followed by CONFIG).

  • format_options clauses are documented in the Format Options section.

  • sample_ratio_clause is documented in the SELECT … WITH (SAMPLE_RATIO = <value>) section.

  • with_clause is documented on the WITH (Common Table Expressions) page.

  • If you are querying against a columnstore table with a FULLTEXT index defined, see MATCH and HIGHLIGHT for syntax and examples on how to do full text search queries.

  • Non-aggregated data can also be transformed into a pivot table output format. See PIVOT for syntax and examples.

  • extended_grouping_expr clauses include CUBE and ROLLUP. See CUBE and ROLLUP for syntax and examples.

  • A subquery does not require an alias, assuming that removing the alias does not create ambiguity.

  • In a transaction, you can read from multiple databases.

  • This command must be run on the master aggregator or a child aggregator node (see Node Requirements for SingleStore DB Commands).

  • You can specify a table named DUAL as a placeholder table for use with queries that do not reference a table. DUAL contains one logical row. This convenience is provided for situations where you may be required to include a FROM clause in every SQL statement, even statements that do not need one in order to function. It can also help when porting applications from other database products that support DUAL.

    SELECT CURRENT_DATE from DUAL;
    ****
    +-----------------------------------------------------------+
    | CURRENT_DATE                                              |
    +-----------------------------------------------------------+
    | Mon Mar 01 2021 00:00:00 GMT-0800 (Pacific Standard Time) |
    +-----------------------------------------------------------+
    

    SELECT CURRENT_DATE from DUAL is identical to SELECT CURRENT_DATE.

    SELECT CURRENT_DATE;
    ****
    +-----------------------------------------------------------+
    | CURRENT_DATE                                              |
    +-----------------------------------------------------------+
    | Mon Mar 01 2021 00:00:00 GMT-0800 (Pacific Standard Time) |
    +-----------------------------------------------------------+
    
  • A column expression can reference a column alias. For example, in the query SELECT a + b as c, c + 10 FROM t;, the column expression c + 10 references the column alias c.

  • A WHERE clause can reference a column alias. For example, in the query SELECT a + b as c FROM t WHERE c < 100;, the WHERE clause references the column alias c.

  • A HAVING clause can reference a column alias. For example, in the query SELECT a + 50 as b,COUNT(*) FROM t GROUP BY a HAVING b < 1000;, the HAVING clause references the column alias b.

Aggregations for Expression Syntax

SingleStore supports the following aggregations for expression syntax in SELECT statements:

COUNT(*)                        -- This returns the count of rows matching the query
COUNT(expr)                     -- This returns the count of rows matching the query where the expression is non-NULL
COUNT(DISTINCT expr)            -- This returns the count over distinct non-NULL values of the expression
APPROX_COUNT_DISTINCT(expr)     -- This returns an approximation of the number of distinct values of the expression
SUM(expr)                       -- This returns the sum value of the expression
SUM(DISTINCT expr)              -- This returns the sum of the distinct values of the expression
AVG(expr)                       -- This returns the average value of the expression
AVG(DISTINCT expr)              -- This returns the average of the distinct values of the expression
MAX(expr)                       -- This returns the maximum value of the expression
MIN(expr)                       -- This returns the minimum value of the expression
STDDEV_POP(expr)                -- This is the population standard deviation
STD(expr)                       -- This is a synonym for STDDEV_POP
STDDEV(expr)                    -- This is a synonym for STDDEV_POP
STDDEV_SAMP(expr)               -- This is the sample standard deviation
VAR_POP(expr)                   -- This is the population variance
VARIANCE(expr)                  -- This is a synonym for VAR_POP
VAR_SAMP(expr)                  -- This is the sample variance
GROUP_CONCAT(expr)              -- This concatenates the non-NULL values of the expression into a string
GROUP_CONCAT(DISTINCT expr)     -- This concatenates the distinct non-NULL values of the expression into a string

All aggregate functions exclude NULLs from their computations. For example, SELECT COUNT(c) FROM t returns the number of rows in t where c is not NULL. SELECT AVG(c) FROM t returns the average of the non-NULL c’s in t.

COUNT(*) is equivalent to COUNT(1). It counts every row matching the query, even rows whose column data contain nothing but NULLs.

SELECT … LIMIT
Syntax
LIMIT {[offset,] row_count | row_count OFFSET offset}
Remarks
  • The LIMIT clause constrains the number of rows returned by the SELECT statement.

  • Both the arguments must be non-negative integer constants.

  • The row_count specifies the number of rows to return from the beginning of the result set, and the offset specifies the offset of the first row to return.

  • The offset of the first row in a table is 0 (not 1).

Examples
SELECT * FROM hrRec;
****
+-----------+-----------+----------+--------+
| FirstName | LastName  | City     | Tenure |
+-----------+-----------+----------+--------+
| Adam      | Gale      | Brooklyn |     40 |
| Samantha  | Beck      | New York |     44 |
| Clara     | Wakefield | DC       |     24 |
| Todd      | Bridges   | DC       |     30 |
| Ron       | Fletcher  | New York |     23 |
+-----------+-----------+----------+--------+
SELECT * FROM hrRec LIMIT 2;
****
+-----------+----------+----------+--------+
| FirstName | LastName | City     | Tenure |
+-----------+----------+----------+--------+
| Adam      | Gale     | Brooklyn |     40 |
| Samantha  | Beck     | New York |     44 |
+-----------+----------+----------+--------+
SELECT * FROM hrRec LIMIT 1,2;
****
+-----------+-----------+----------+--------+
| FirstName | LastName  | City     | Tenure |
+-----------+-----------+----------+--------+
| Samantha  | Beck      | New York |     44 |
| Clara     | Wakefield | DC       |     24 |
+-----------+-----------+----------+--------+
SELECT * FROM hrRec LIMIT 2 OFFSET 1;
****
+-----------+-----------+----------+--------+
| FirstName | LastName  | City     | Tenure |
+-----------+-----------+----------+--------+
| Samantha  | Beck      | New York |     44 |
| Clara     | Wakefield | DC       |     24 |
+-----------+-----------+----------+--------+
SELECT … FOR UPDATE

The SELECT ... FOR UPDATE command is intended to be used inside of a transaction. This command takes write locks on the rows returned from the SELECT query and the locks are held until the end of the transaction. Other transactions are blocked and cannot write to the locked rows until the locks are released.

SELECT ... FOR UPDATE can only be used in the outermost SELECT block; it cannot be used in sub-select queries.

We recommend the following when using SELECT ... FOR UPDATE:

  • It is recommended to commit or abort the transaction immediately so that the locks are released. Too many locks in a transaction can result in a huge queue of transactions waiting on the locked rows.

  • To limit the number of rows that are locked, it is recommended to use a column with unique values in the WHERE clause of the SELECT statement, for example the PRIMARY KEY column.

Example

The following example uses the Orders table:

DESCRIBE Orders;
****
+--------------+-------------+------+------+---------+-------+
| Field        | Type        | Null | Key  | Default | Extra |
+--------------+-------------+------+------+---------+-------+
| OrderNumber  | int(11)     | NO   | PRI  | NULL    |       |
| Status       | varchar(20) | NO   |      | NULL    |       |
| CustomerName | char(20)    | YES  |      | NULL    |       |
+--------------+-------------+------+------+---------+-------+
SELECT * FROM Orders;
****
+-------------+------------+--------------+
| OrderNumber | Status     | CustomerName |
+-------------+------------+--------------+
|           1 | Delivered  | John         |
|           3 | In Transit | Bon          |
|           2 | Delivered  | Kerry        |
|           4 | Delivered  | Tom          |
+-------------+------------+--------------+

The following transaction locks the row where OrderNumber is 3, using the FOR UPDATE clause. The row will remain locked as long as the transaction is open.

BEGIN;
SELECT * FROM Orders WHERE OrderNumber = 3 FOR UPDATE;
****
+-------------+------------+--------------+
| OrderNumber | Status     | CustomerName |
+-------------+------------+--------------+
|           3 | In Transit | Bon          |
+-------------+------------+--------------+

Now, execute the following query in a different connection:

UPDATE Orders SET Status = "Delivered" WHERE OrderNumber=3;
****
ERROR 1205 (HY000): Leaf Error (127.0.0.1:3307): Lock wait timeout exceeded; try restarting transaction.  Lock owned by connection id 77, query `open idle transaction`

The above query returns an error since the rows are locked by the previous transaction. To remove the lock on the rows, commit or rollback the open transaction. See the Query Errors topic for more information on locked rows.

JOIN and Subqueries
Syntax

SingleStore DB supports the following JOIN and subquery syntax for the table_reference part of SELECT statements:

join_table:
           table_reference {LEFT | RIGHT | FULL} [OUTER] JOIN table_factor join_condition
         | table_reference [INNER | CROSS] JOIN table_factor [join_condition]
         | table_reference NATURAL {LEFT | RIGHT} [OUTER] JOIN table_factor
         | table_reference STRAIGHT_JOIN table_factor [join_condition]
         | table_reference, table_factor

join_condition:
         ON conditional_expr
Remarks
  • This command must be run on the master aggregator or a child aggregator node (see Node Requirements for SingleStore DB Commands)

  • STRAIGHT_JOIN forces tables to be joined in the order in which they are listed in the FROM clause

  • FULL OUTER JOIN requires the join condition to be an equality. Also, the right argument to a full outer join cannot be a reference table.

Examples
SELECT * FROM my_MemSQL_table WHERE col = 1;


SELECT COUNT(*), user_name, page_url from clicks, users, pages
 ->     WHERE clicks.user_id = users.user_id AND pages.page_id = clicks.page_id
 ->     GROUP BY users.user_id, pages.page_id
 ->     ORDER BY COUNT(*) DESC;
 +- ---------+- ----------+- -------------------------------+
 | COUNT(*) | user_name | page_url                       |
 +- ---------+- ----------+- -------------------------------+
 |        5 | jake      | memsql.com                     |
 |        2 | john      | http://www.singlestore.com/download |
 |        1 | jake      | docs.singlestore.com                |
 |        1 | jake      | memsql.com                     |
 |        1 | jake      | http://www.singlestore.com/download |
 +- ---------+- ----------+- -------------------------------+
 5 rows in set (0.00 sec)
SELECT t1.*, t2.* FROM t1 FULL OUTER JOIN t2 ON t1.a = t2.a;
SELECT … INTO <variable>

SELECT ... INTO variable statement is used to initialize variables in stored procedures. It allows you to query a single value, a single column, or multiple columns from one or more tables and store the selected values into variable(s).

For information about creating user defined variables for use outside of stored procedures, see User-Defined Variables.

Remarks
  • The SELECT ... INTO statement must return only a single result row.

  • The number of columns/expressions in the SELECT query must be the same as the number of variables being initialized in the INTO list.

  • SELECT ... INTO variable statements must be used inside MPSQL procedure blocks.

  • The INTO variable clause can only be used once inside a SELECT query.

  • A SELECT ... INTO statement cannot be used inside of a sub-select query.

  • The variables in SELECT ... INTO statements must be declared with scalar data types.

  • SELECT ... INTO variable and SELECT ... INTO OUTFILE/S3/KAFKA cannot be used in the same query.

  • If the SELECT ... INTO statement returns 0 rows, SingleStore throws an error: ER_INTO_VARIABLES_NO_ROWS. To accommodate for this error, you can specify an EXCEPTION in the DECLARE block of a stored procedure (see Example 3 below).

Examples

Note: The following examples use the hrRec table.

DESC hrRec;
****
+-----------+-------------+------+------+---------+-------+
| Field     | Type        | Null | Key  | Default | Extra |
+-----------+-------------+------+------+---------+-------+
| FirstName | varchar(20) | YES  |      | NULL    |       |
| LastName  | varchar(20) | YES  |      | NULL    |       |
| City      | varchar(20) | YES  |      | NULL    |       |
| Tenure    | int(11)     | YES  |      | NULL    |       |
+-----------+-------------+------+------+---------+-------+
Example 1

The following example queries multiple columns from a single row and stores them in variables.

DELIMITER //

CREATE OR REPLACE PROCEDURE into_var ()
AS
DECLARE
fname VARCHAR(20); lname VARCHAR(20); city VARCHAR(20); ten INT;
BEGIN
SELECT FirstName, LastName, City, Tenure
 INTO fname, lname, city, ten
FROM hrRec
WHERE Tenure > 40;
ECHO SELECT CONCAT(fname, " ", lname) AS "Name", city AS "City", ten AS "Tenure";
END //

DELIMITER ;

CALL into_var();
****
+---------------+----------+--------+
| Name          | City     | Tenure |
+---------------+----------+--------+
| Samantha Beck | New York |     44 |
+---------------+----------+--------+
Example 2

The following example queries multiple aggregate functions and stores their values in variables.

DELIMITER //

CREATE OR REPLACE PROCEDURE into_var () AS
DECLARE
  row_c INT; sum_t INT;
BEGIN
  SELECT COUNT(*), SUM(Tenure) INTO row_c, sum_t FROM hrRec;
  ECHO SELECT row_c AS "Row Count", sum_t AS "Tenure";
END //

DELIMITER ;

CALL into_var();
****
+-----------+--------+
| Row Count | Tenure |
+-----------+--------+
|         5 |    170 |
+-----------+--------+

Alternatively, you can query the values in a dynamic query and store them in variables, like

DELIMITER //

CREATE OR REPLACE PROCEDURE into_var () AS
DECLARE
  row_c INT; sum_t INT; qry VARCHAR(50);
BEGIN
  qry = "SELECT COUNT(*), SUM(Tenure) FROM hrRec";
  EXECUTE IMMEDIATE qry INTO row_c, sum_t;
  ECHO SELECT row_c AS "Row Count", sum_t AS "Tenure";
END //

DELIMITER ;

CALL into_var();
****
+-----------+--------+
| Row Count | Tenure |
+-----------+--------+
|         5 |    170 |
+-----------+--------+
Example 3

The following example shows how to assign a value to a variable if the SELECT ... INTO statement returns 0 rows.

DELIMITER //

CREATE OR REPLACE PROCEDURE cityCount () AS
DECLARE cnum INT;
BEGIN
  SELECT City INTO cnum FROM hrRec WHERE Tenure > 50;
  ECHO SELECT cnum;
END //

DELIMITER ;

CALL cityCount();
****
ERROR 2439 (HY000): Unhandled exception
Type: ER_INTO_VARIABLES_NO_ROWS (2439)
Message: Query with 'INTO VARIABLES' clause returned zero rows whereas expected 1 row

Add an exception to the stored procedure.

DELIMITER //

CREATE OR REPLACE PROCEDURE cityCount () AS
DECLARE cnum INT;
BEGIN
  SELECT City INTO cnum FROM hrRec WHERE Tenure > 50;
  ECHO SELECT cnum;
EXCEPTION
  WHEN ER_INTO_VARIABLES_NO_ROWS THEN
  cnum = 'No city found!';
  ECHO SELECT cnum;
END //

DELIMITER ;

CALL cityCount();
****
+----------------+
| cnum           |
+----------------+
| No city found! |
+----------------+

You can also add an exception for a scenario where the SELECT ... INTO statement returns more than one row. For example,

EXCEPTION
  WHEN ER_SUBQUERY_NO_1_ROW THEN
  ECHO SELECT 'SELECT ... INTO statement returned more than 1 row.';
Nested Scalar Sub-Selects

SELECT statements can be nested in SingleStore DB queries.

SELECT ... [SELECT ...[SELECT [...]]]
Remarks
  • For scalar sub-selects, sub-select queries must not return more than one row.

  • The maximum allowed depth of nested sub-select queries is 40.

  • Sub-selects are not supported inside GROUP BY/ORDER BY/HAVING clauses, for nested sub-select queries of depth > 2.

Examples

The following examples show the use of nested sub-selects.

SELECT cust_id FROM customers
WHERE EXISTS
  ( SELECT order_id FROM orders
    WHERE order_id IN
      ( SELECT id FROM transaction WHERE count > 5)
  );
DELETE FROM records
WHERE
  id = ( SELECT order_id
         FROM orders
         WHERE order_date > ( SELECT CURRENT_DATE() + 30)
       );
SELECT ... ALL DISTINCT DISTINCTROW

Return rows with or without duplicates.

Syntax
SELECT [ALL | DISTINCT | DISTINCTROW] FROM table_reference
Remarks
  • The ALL clause returns all the matching rows including duplicates.

    The DISTINCT or DISTINCTROW clause returns the matching rows but eliminates the duplicate rows from the output. DISTINCTROW is a synonym of DISTINCT.

Examples
SELECT * FROM Product;
+------------+------------+----------+
| Product_id | Brand_name | City     |
+------------+------------+----------+
|          1 | Nike       | London   |
|          3 | Nike       | New York |
|          2 | Adidas     | Paris    |
|          3 | Puma       | Spain    |
+------------+------------+----------+

SELECT ALL Brand_name FROM Product;
+------------+
| Brand_name |
+------------+
| Nike       |
| Nike       |
| Adidas     |
| Puma       |
+------------+

SELECT DISTINCT Brand_name FROM Product;
+------------+
| Brand_name |
+------------+
| Nike       |
| Adidas     |
| Puma       |
+------------+
SELECT … INTO OUTFILE

SELECT ... INTO OUTFILE formats and writes the results of a SELECT query to a text file. The format_options are similar to the parsing options used with LOAD DATA. See Format Options for more information.

format_options:
    [{FIELDS | COLUMNS}
        [TERMINATED BY 'string']
        [[OPTIONALLY] ENCLOSED BY 'char']
        [ESCAPED BY 'char']
    ]
    [LINES
        [STARTING BY 'string']
        [TERMINATED BY 'string']
    ]
Remarks
  • If a relative path that that does not start with / is specified, SingleStore DB writes the file to the directory specified in the global variable tmpdir (the same as datadir by default). To specify another location, enter the absolute path to the file as the file_name parameter.

  • The default text formatting, used when the user omits the FIELDS and LINES blocks, is to separate values with tabs (\t) and rows with newlines (\n).

Example

The following query writes the contents of table_name to a file in the home directory of username. The file is formatted as a comma-separated values (CSV) file.

SELECT * FROM table_name INTO OUTFILE '/home/username/file_name.csv'
        FIELDS TERMINATED BY ','
        LINES TERMINATED BY '\n'
SELECT ... INTO AZURE

SELECT ... INTO AZURE performs a distributed SELECT into an Azure container. The CREDENTIALS clause is required and its value is defined in credentials_json as follows:

credentials_json:
'{"account_name": "your_account_name_here",
  "account_key": "your_account_key_here"
 }'

The WITH COMPRESSION GZIP clause, if specified, must be included after the CREDENTIALS clause. If WITH COMPRESSION GZIP is specified, the results of the SELECT query are written to the Azure container in compressed gzip files. A compressed file with the .gz extension is created for each partition.

The WITH COMPRESSION clause can be specified instead of the WITH COMPRESSION GZIP clause. Both clauses are equivalent. However, if other compression formats are supported in the future, WITH COMPRESSION may use a compression format other than gzip.

format_options , if specified, must be included after the CREDENTIALS clause, or after the WITH COMPRESSION clause (if it is specified). The format_options are similar to the parsing options used with LOAD DATA. See Format Options for more information.

format_options:
    [{FIELDS | COLUMNS}
        [TERMINATED BY 'string']
        [[OPTIONALLY] ENCLOSED BY 'char']
        [ESCAPED BY 'char']
    ]
    [LINES
        [STARTING BY 'string']
        [TERMINATED BY 'string']
    ]

As an alternative to using a SELECT ... INTO AZURE statement where you specify the CREDENTIALS clause, you can use a SELECT ... INTO LINK statement, where you reference a connection link. For more information, see Configuring and Using Connection Links.

SELECT … INTO HDFS

SELECT INTO ... HDFS writes the result of a SELECT query to HDFS. The configuration options for SELECT INTO ... HDFS are similar to the HDFS Pipelines syntax.

Example

The following example demonstrates how to write the contents of a table to HDFS at a specified path.

SELECT * FROM stockTo
INTO HDFS 'hdfs://hadoop-namenode:8020/stock_dir/records_file.csv'
SELECT … INTO FS

SELECT ... INTO FS works similarly to SELECT INTO OUTFILE, except that if the SELECT logic determines that the results can be computed in parallel (e.g. there is no order by clause, etc.), the query is pushed down to each leaf and executed on each partition, and a separate file is written for each partition. SELECT INTO OUTFILE always writes to a single file.

When writing to multiple files, the file names will be:

destination_directory/file_name_0
destination_directory/file_name_1
destination_directory/file_name_2
etc.

Otherwise:

destination_directory/file_name

If WITH COMPRESSION GZIP is specified, the results of the SELECT query are written to the filesystem in compressed gzip files. A compressed file with the .gz extension is created for each partition.

The WITH COMPRESSION clause can be specified instead of the WITH COMPRESSION GZIP clause. Both clauses are equivalent. However, if other compression formats are supported in the future, WITH COMPRESSION may use a compression format other than gzip.

The format_options are similar to the parsing options used with LOAD DATA. See Format Options for more information.

format_options:
    [{FIELDS | COLUMNS}
        [TERMINATED BY 'string']
        [[OPTIONALLY] ENCLOSED BY 'char']
        [ESCAPED BY 'char']
    ]
    [LINES
        [STARTING BY 'string']
        [TERMINATED BY 'string']
    ]
Remarks
  • By default, SingleStore DB writes the files to the directory specified in the global variable tmpdir (The same as datadir by default). To specify another location, enter the absolute path to the file as the destination_directory parameter.

  • The default text formatting, used when the user omits the FIELDS and LINES blocks, is to separate values with tabs (\t) and rows with newlines (\n).

Caution

This option does not guarantee a consistent snapshot. If you require snapshot consistency, ensure that nothing is modifying table_name while SELECT ... INTO FS is running.

Example

The following query writes the contents of table_name to a set of files in the /tmp directory on each leaf node (/tmp/a_0, /tmp/a_1, /tmp/a_2, etc.). The files are comma-separated value (CSV) with one output file per partition (a_0 is for partition 0, a_1 is for partition 1, etc.).

SELECT * FROM table_name INTO FS '/tmp/a'
FIELDS TERMINATED BY ','
LINES TERMINATED BY '\n'
SELECT … INTO S3

SELECT ... INTO S3 performs a distributed select into a S3 bucket. The CREDENTIALS clause is required and its value is defined in credentials_json as follows.

configuration_json:
'{"region":"your_region" [, "multipart_chunk_size_mb":<size_in_MB>]}'

credentials_json:
'{"aws_access_key_id": "replace_with_your_access_key_id",
  "aws_secret_access_key": "replace_with_your_secret_access_key",
  ["aws_session_token": "replace_with_your_temp_session_token",]
  ["role_arn":"replace_with_your_role_arn"]
}'

The WITH COMPRESSION GZIP clause, if specified, must be included after the CREDENTIALS clause. If WITH COMPRESSION GZIP is specified, the results of the SELECT query are written to the S3 bucket in compressed gzip files. A compressed file with the .gz extension is created for each partition.

The WITH COMPRESSION clause can be specified instead of the WITH COMPRESSION GZIP clause. Both clauses are equivalent. However, if other compression formats are supported in the future, WITH COMPRESSION may use a compression format other than gzip.

format_options , if specified, must be included after the CREDENTIALS clause, or after the WITH COMPRESSION clause (if it is specified). The format_options are similar to the parsing options used with LOAD DATA. See Format Options for more information.

format_options:
    [{FIELDS | COLUMNS}
        [TERMINATED BY 'string']
        [[OPTIONALLY] ENCLOSED BY 'char']
        [ESCAPED BY 'char']
    ]
    [LINES
        [STARTING BY 'string']
        [TERMINATED BY 'string']
    ]
Remarks

Warning

The S3 bucket needs to be created before running this command.

  • The multipart_chunk_size_mb must be in the range of [5..500]. By default, the chunk size is 5 MB. A larger chunk size allows users to upload large files without going over Amazon’s limitation on maximum number of parts per upload. Although, a larger chunk size increases the chance of a network error during the upload to S3. If a chunk fails to upload, SingleStore DB retries uploading it until the limit set on the number of retries by AWS is reached.

    Notice

    Each partition will use multipart_chunk_size_mb MB(s) of additional memory.

  • The output of SELECT ... INTO S3 is stored with the content type binary/octet-stream in the S3 bucket.

  • If the insert select logic determines that the SELECT ... INTO S3 query can be run as distributed, the query will be pushed down to each leaf and executed on each partition. The name of each object will be:

    <bucket/target>_<partition ID>
    
  • If the insert select logic determines that the SELECT ... INTO S3 query can only be on the aggregator because it contains aggregations, ORDER BY, GROUP BY, etc. then the query will be run on each leaf but the result will be collected on the aggregator and then output to S3. The object name will just be:

    <bucket/target>
    
  • An aggregated query creates a single output file. Whereas, a distributed query creates multiple output files, one file for each partition. To create a single output file for distributed queries, specify LIMIT 99999999999 at the end of the query.

  • The SELECT query will validate if the <bucket/target> or <bucket/target>_ already exists on the S3 bucket first and fail if any of the object(s) already exist.

  • As an alternative to using a SELECT ... INTO S3 statement where you specify the CONFIG and CREDENTIALS clauses, you can use a SELECT ... INTO LINK statement, where you reference a connection link. For more information, see Configuring and Using Connection Links.

Examples

The following simple example shows how to save all rows in table t1 to an S3 bucket using an AWS access key.

SELECT *
FROM t1
INTO S3 'testing/output'
CONFIG '{"region":"us-east-1"}'
CREDENTIALS '{"aws_access_key_id":"your_access_key_id","aws_secret_access_key":"your_secret_access_key"}'

The following example saves the result set of a SELECT query with a GROUP BY clause and sends the file in chunks to an S3 bucket using an Amazon Resource Name (ARN) for AWS Identity and Access Management (IAM).

SELECT t1.a, t2.a
FROM t1, t2
WHERE t1.a = t2.a
GROUP BY t1.a
INTO S3 'bucket_name/file_name'
CONFIG '{"region":"us-east-1", "multipart_chunk_size_mb":100}'
CREDENTIALS '{"role_arn": "arn:aws:iam::<AccountID>:role/EC2AmazonS3FullAccess"}'

The following example uses the format options to output the data in CSV format.

SELECT *
FROM t
INTO S3 'tmp/a'
CONFIG '{"region":"us-east-1"}'
CREDENTIALS '{"aws_access_key_id":"your_access_key_id","aws_secret_access_key":"your_secret_access_key"}'
FIELDS TERMINATED BY ','
LINES TERMINATED BY '\n'
SELECT … INTO GCS

SELECT ... INTO GCS performs a distributed select into a Google Cloud Storage (GCS) bucket.The CONFIG clause is not required, and can be excluded or left empty as defined in the configuration_json that follows. The CREDENTIALS clause is required and its value is defined in the credentials_json that follows.

configuration_json:
'{}'

credentials_json:
'{"access_id": "replace_with_your_google_access_key",
  "secret_key": "replace_with_your_google_secret_key"
}'

The WITH COMPRESSION clause can be specified instead of the WITH COMPRESSION GZIP clause. Both clauses are equivalent. However, if other compression formats are supported in the future, WITH COMPRESSION may use a compression format other than gzip.

format_options , if specified, must be included after the CREDENTIALS clause, or after the WITH COMPRESSION clause (if it is specified). The format_options are similar to the parsing options used with LOAD DATA. See Format Options for more information.

format_options:
    [{FIELDS | COLUMNS}
        [TERMINATED BY 'string']
        [[OPTIONALLY] ENCLOSED BY 'char']
        [ESCAPED BY 'char']
    ]
    [LINES
        [STARTING BY 'string']
        [TERMINATED BY 'string']
    ]
Remarks
  • Unlike other filesystem options, with SELECT ... INTO GCS, data written by a single partition is not divided into chunks. However, there may still be multiple partitions and thus multiple files (one per partition) will appear in GCS.

  • The maximum object size supported by GCS is 5 TB; this limit also applies to SELECT ... INTO GCS.

  • The CONFIG clause may optionally specify an endpoint_url.

  • The CREDENTIALS clause is required.

  • We support only HMAC keys.

  • The CREDENTIALS clause should be a JSON object with two fields:

access_id: usually a 24 or 60 character alphanumeric string, which is linked to the Google account, typically all uppercase and starts with GOOG.

secret_key: usually a 40 character Base-64 encoded string that is linked to a specific access_id.

As an alternative to using a SELECT ... INTO GCS statement where you specify the CONFIG and CREDENTIALS clauses, you can use a SELECT ... INTO LINK statement, where you reference a connection link. For more information, see Configuring and Using Connection Links.

Examples

The following simple example shows how to save all rows in table table_name to a GCS bucket using a Google access key, and outputs them as a CSV.

CREATE TABLE table_name (column_name INT);
INSERT INTO table_name VALUES (1), (2), (3);
SELECT *
FROM table_name
INTO GCS 'bucket/path'
CREDENTIALS '{"access_id": "replace_with_your_google_access_key", "secret_key": "replace_with_your_google_secret_key"}' FIELDS TERMINATED BY ',' LINES TERMINATED BY '\n';
SELECT … INTO KAFKA …

SELECT ... INTO KAFKA ... runs a SELECT query, constructs a Kafka message for each row in the result set, and publishes the messages to a Kafka topic.

When SELECT ... INTO KAFKA ... constructs a Kafka message, it includes every column value in the result set’s row and separates the column values by a delimiter. To configure the delimiter and other message formatting settings, use the Format Options clauses.

kafka_configuration:
    CONFIG 'string'

kafka_credentials:
    CREDENTIALS 'string'

format_options:
    [{FIELDS | COLUMNS}
        [TERMINATED BY 'string']
        [ENCLOSED BY 'char']
        [ESCAPED BY 'char']
    ]
    [LINES
        [TERMINATED BY 'string']
        [STARTING BY 'string']
    ]

kafka_topic_endpoint:
    host:port[, ...]/topic
Arguments
kafka_configuration

Optional. The Kafka configuration properties, specified in JSON format, that are used while SingleStore DB publishes messages to a topic. The configuration properties are the same properties that are stored in the server.properties file on each Kafka broker.

kafka_credentials

Optional. The credentials, in JSON format, used to connect to Kafka.

format_options

Optional. Clauses that specify how a Kafka message is formatted when it is constructed from a row in the SELECT result set. See the Format Options section for more information.

See an example of how to use the clauses.

kafka_topic_endpoint

The list of Kafka brokers, followed by the topic to which SingleStore DB will publish messages. For each broker in the list, specify its host and port.

Remarks
  • When possible, SingleStore DB queries leaf nodes directly, bypassing the aggregator. This allows SingleStore DB to send data directly from the leaves to Kafka partitions.

  • SingleStore DB constructs a Kafka message as an array of bytes.

  • As an alternative to using a SELECT ... INTO KAFKA statement where you specify the CONFIG and CREDENTIALS clauses, you can use a SELECT ... INTO LINK statement, where you reference a connection link. For more information, see Configuring and Using Connection Links.

Examples
Example: Specifying the Kafka Message Format

The following query uses the FIELDS and LINES clauses to format the Kafka messages that are constructed from the SELECT result set.

SELECT col1, col2, col3 FROM t
ORDER BY col1
INTO KAFKA 'host.example.com:9092/test-topic'
FIELDS TERMINATED BY ',' ENCLOSED BY '"' ESCAPED BY "\t"
LINES TERMINATED BY '}' STARTING BY '{';

Suppose the result set returned by SELECT col1, col2, col3 FROM t ORDER BY col1 is:

+------+------+------+
| col1 | col2 | col3 |
+------+------+------+
| a    | b    | c    |
| d    | e    | f    |
| g    | h\ti | j    |
+------+------+------+

This result set will be converted to three Kafka messages having the following format:

Message 1: {a,b,c}

Message 2: {d,e,f}

Message 3: {g,h<tab character>i,j}

<tab character> will be replaced by the number of spaces that your tab is set to.

Notice

If a SELECT ... INTO ... KAFKA query does not include the FIELDS... and LINES... clauses, the default Kafka message formatting settings are used. The default settings would look something like this:

SELECT col1, col2, col3 FROM t
ORDER BY col1
INTO KAFKA 'host.example.com:9092/test-topic'
FIELDS TERMINATED BY '\t' ENCLOSED BY '' ESCAPED BY '\\'
LINES TERMINATED BY '\n' STARTING BY '';
Example: Using the CONFIG and CREDENTIALS Clauses

The following example uses the CONFIG and CREDENTIALS clauses.

SELECT text FROM t INTO
KAFKA 'host.example.com:9092/test-topic'
CONFIG '{"security.protocol": "ssl",
"ssl.certificate.location": "/var/private/ssl/client_memsql_client.pem",
"ssl.key.location": "/var/private/ssl/client_memsql_client.key",
"ssl.ca.location": "/var/private/ssl/ca-cert.pem"}'
CREDENTIALS '{"ssl.key.password": "abcdefgh"}'

For more information on what settings to include in the CONFIG and CREDENTIALS clauses, see Securely Connect to Kafka.

Example: Specifying One Kafka Broker

The following example imports the data in the column text from table t into the Kafka topic test-topic. One Kafka broker is specified; it is located on port 9092 at host.example.com.

SELECT text FROM t INTO
KAFKA 'host.example.com:9092/test-topic'
Example: Specifying Multiple Kafka Brokers

The following example imports the data in the column text from table t into the Kafka topic test-topic. Three Kafka brokers are specified, located on port 9092 , at host1.example.com, host2.example.com and host3.example.com.

SELECT text FROM t INTO
KAFKA 'host1.example.com:9092,host2.example.com:9092,host3.example.com:9092/test-topic'
Format Options
format_options:
    [{FIELDS | COLUMNS}
        [TERMINATED BY 'string']
        [[OPTIONALLY] ENCLOSED BY 'char']
        [ESCAPED BY 'char']
    ]
    [LINES
        [STARTING BY 'string']
        [TERMINATED BY 'string']
    ]
  • FIELDS TERMINATED BY 'string': The delimiter to use between each column value in the message. If not specified, defaults to \t.

  • FIELDS ENCLOSED BY 'char': Prefixes and suffixes each column value of the message with the char value. If not specified, defaults to nothing. The OPTIONALLY keyword does not affect the behavior of this option; it exists to maintain compatibility with MySQL.

  • FIELDS ESCAPED BY 'char': Translates the escape sequence in the char value, instead of using the literal char value. Translation is done for all occurrences of the char value in the message. If not specified, defaults to \\.

  • LINES TERMINATED BY 'string': A string to insert at the end of the message. If not specified, defaults to \n.

  • LINES STARTING BY 'string': A string to insert at the beginning of the message. If not specified, defaults to nothing.

SELECT … WITH (SAMPLE_RATIO = <value>)

SELECT ... WITH (SAMPLE_RATIO = <value>) retrieves a random sample of data from a table (specifically, a Bernoulli sample).

sample_ratio_clause: WITH (SAMPLE_RATIO = ratio)
Argument

ratio

A decimal between 0.0 and 1.0 specifying the probability that each row will be retrieved from the table. The probability is applied to each row independently.

Remarks
  • When you run multiple SELECT statements against the same table using WITH (SAMPLE_RATIO = <value>), you will receive similar results. This is the case even when your sample ratio is different in your SELECT statements. For example, the sample returned for a sample ratio of 0.25 is often a subset of the sample ratio returned for 0.5.

  • Using a sample ratio that is one divided by a power of two allows WITH (SAMPLE_RATIO = <value>) to run more efficiently.

  • You can use WITH (SAMPLE_RATIO = <value>) in a SELECT subquery.

Warning

You can use WITH (SAMPLE_RATIO = <value>) with any table. It operates most efficiently when used with a rowstore table whose primary key is not a hash key, or a columnstore table with AUTOSTATS_SAMPLING enabled (the default). Otherwise, it will scan all rows, or all rows in a range, to do sampling.

Examples

Simple SELECT statements

The following example populates a table with the integers 1 to 10 and selects two random samples.

DROP DATABASE IF EXISTS singlestore_docs_example;
CREATE DATABASE singlestore_docs_example;
USE singlestore_docs_example;
CREATE TABLE example_table(num INT);

INSERT INTO example_table VALUES (5), (6), (10), (11), (12),
  (14), (20), (24), (33), (40);

The query below returns a random sample of the num column. Each row in the sample has a seventy percent probability of being returned.

SELECT num FROM example_table WITH (SAMPLE_RATIO = 0.7) ORDER BY num;

Example output follows. You will likely see different results, as the query returns a random sample.

+------+
| num  |
+------+
|    6 |
|   11 |
|   14 |
|   20 |
|   24 |
|   33 |
+------+

The query below returns the average of a random sample of the num column. Each row in the sample has an eighty percent probability being included in the sample and therefore in the AVG computation.

SELECT AVG(num) FROM example_table WITH (SAMPLE_RATIO = 0.8);

Example output follows. You will likely see different results, as the query returns a random sample.

+----------+
| AVG(num) |
+----------+
|  18.1111 |
+----------+

Using WITH (SAMPLE_RATIO = <value>) with SELECT Subqueries

You may use WITH (SAMPLE_RATIO = <value>)as part of a SELECT subquery, as shown in the following example.

CREATE TABLE example_table_2 AS SELECT * FROM example_table
  WITH (SAMPLE_RATIO = 0.6);
SELECT num FROM example_table2 ORDER BY num;

Example output follows. You will likely see different results, as the query returns a random sample.

+------+
| num  |
+------+
|   10 |
|   12 |
|   14 |
|   24 |
|   33 |
|   40 |
+------+

Using WITH (SAMPLE_RATIO = <value>) with Joins

You may use WITH (SAMPLE_RATIO = <value>) in a SELECT statement that contains a join. However, you should do so carefully to ensure the join yields the results you intend. For example, consider joining a CUSTOMER table to an ORDER table using the customer_id field in the ORDER table. The placement of the WITH (SAMPLE_RATIO = <value>) clause within the join will greatly impact the result, as shown below.

The following query selects a sample of customers and returns the orders for those customers only.

SELECT c.name, o.order_id, o.order_total
FROM customer WITH (SAMPLE_RATIO = 0.4) c
JOIN order o
ON c.customer_id = o.customer_id

The following query selects a sample of all orders and returns only those orders along with their associated customers.

SELECT c.name, o.order_id, o.order_total
FROM customer c
JOIN order o WITH (SAMPLE_RATIO = 0.4)
ON c.customer_id = o.customer_id