A SELECT statement can consist of the following basic clauses.
SELECT
INTO
FROM
JOIN
WHERE
GROUP BY
HAVING
UNION
ORDER BY
LIMIT
The following syntax diagram outlines the syntax supported by the SQL engine of the provider:
SELECT
{
[ TOP
<numeric_literal> | DISTINCT
]
{
*
| {
<expression> [ [ AS
] <column_reference> ]
| { <table_name> | <correlation_name> } .*
} [ , ... ]
}
[ INTO
csv:// [ filename= ] <file_path> [ ;delimiter=tab ] ]
{
FROM
<table_reference> [ [ AS
] <identifier> ]
} [ , ... ]
[ [
INNER
| { { LEFT
| RIGHT
| FULL
} [ OUTER
] }
] JOIN
<table_reference> [ ON
<search_condition> ] [ [ AS
] <identifier> ]
] [ ... ]
[ WHERE
<search_condition> ]
[ GROUP
BY
<column_reference> [ , ... ]
[ HAVING
<search_condition> ]
[ UNION
[ ALL
] <select_statement> ]
[
ORDER
BY
<column_reference> [ ASC
| DESC
] [ NULLS FIRST
| NULLS LAST
]
]
[
LIMIT <expression>
[
{ OFFSET | , }
<expression>
]
]
}
<expression> ::=
| <column_reference>
| @ <parameter>
| ?
| COUNT( * | { [ DISTINCT
] <expression> } )
| { AVG
| MAX
| MIN
| SUM
| COUNT
} ( <expression> )
| NULLIF
( <expression> , <expression> )
| COALESCE
( <expression> , ... )
| CASE
<expression>
WHEN
{ <expression> | <search_condition> } THEN
{ <expression> | NULL
} [ ... ]
[ ELSE
{ <expression> | NULL
} ]
END
| <literal>
| <sql_function>
<search_condition> ::=
{
<expression> { = | > | < | >= | <= | <> | != | LIKE
| NOT
LIKE
| IN
| NOT
IN
| IS
NULL
| IS
NOT
NULL
| AND
| OR
| CONTAINS
| BETWEEN
} [ <expression> ]
} [ { AND
| OR
} ... ]
Return all columns:
SELECT * FROM Buckets
Rename a column:
SELECT [OwnerId] AS MY_OwnerId FROM Buckets
Cast a column's data as a different data type:
SELECT CAST(AnnualRevenue AS VARCHAR) AS Str_AnnualRevenue FROM Buckets
Search data:
SELECT * FROM Buckets WHERE Name = 'TestBucket'
Return the number of items matching the query criteria:
SELECT COUNT(*) AS MyCount FROM Buckets
Return the number of unique items matching the query criteria:
SELECT COUNT(DISTINCT OwnerId) FROM Buckets
Return the unique items matching the query criteria:
SELECT DISTINCT OwnerId FROM Buckets
Summarize data:
SELECT OwnerId, MAX(AnnualRevenue) FROM Buckets GROUP BY OwnerId
See Aggregate Functions below for details.
Retrieve data from multiple tables.
SELECT Customers.ContactName, Orders.OrderDate FROM Customers, Orders WHERE Customers.CustomerId=Orders.CustomerId
See JOIN Queries below for details.
Sort a result set in ascending order:
SELECT Name, OwnerId FROM Buckets ORDER BY OwnerId ASC
Restrict a result set to the specified number of rows:
SELECT Name, OwnerId FROM Buckets LIMIT 10
Parameterize a query to pass in inputs at execution time. This enables you to create prepared statements and mitigate SQL injection attacks.
SELECT * FROM Buckets WHERE Name = @param
Returns the number of rows matching the query criteria.
SELECT COUNT(*) FROM Buckets WHERE Name = 'TestBucket'
Returns the number of distinct, non-null field values matching the query criteria.
SELECT COUNT(DISTINCT Name) AS DistinctValues FROM Buckets WHERE Name = 'TestBucket'
Returns the average of the column values.
SELECT OwnerId, AVG(AnnualRevenue) FROM Buckets WHERE Name = 'TestBucket'
GROUP BY OwnerId
Returns the minimum column value.
SELECT MIN(AnnualRevenue), OwnerId FROM Buckets WHERE Name = 'TestBucket'
GROUP BY OwnerId
Returns the maximum column value.
SELECT OwnerId, MAX(AnnualRevenue) FROM Buckets WHERE Name = 'TestBucket'
GROUP BY OwnerId
Returns the total sum of the column values.
SELECT SUM(AnnualRevenue) FROM Buckets WHERE Name = 'TestBucket'
The Provider for Amazon S3 supports standard SQL joins like the following examples.
An inner join selects only rows from both tables that match the join condition:
SELECT Customers.ContactName, Orders.OrderDate FROM Customers, Orders WHERE Customers.CustomerId=Orders.CustomerId
A left join selects all rows in the FROM table and only matching rows in the JOIN table:
SELECT Customers.ContactName, Orders.OrderDate FROM Customers LEFT OUTER JOIN Orders ON Customers.CustomerId=Orders.CustomerId
The following date literal functions can be used to filter date fields using relative intervals. Note that while the <, >, and = operators are supported for these functions, <= and >= are not.
The current day.
SELECT * FROM MyTable WHERE MyDateField = L_TODAY()
The previous day.
SELECT * FROM MyTable WHERE MyDateField = L_YESTERDAY()
The following day.
SELECT * FROM MyTable WHERE MyDateField = L_TOMORROW()
Every day in the preceding week.
SELECT * FROM MyTable WHERE MyDateField = L_LAST_WEEK()
Every day in the current week.
SELECT * FROM MyTable WHERE MyDateField = L_THIS_WEEK()
Every day in the following week.
SELECT * FROM MyTable WHERE MyDateField = L_NEXT_WEEK()
Also available:
L_LAST/L_THIS/L_NEXT MONTH
L_LAST/L_THIS/L_NEXT QUARTER
L_LAST/L_THIS/L_NEXT YEAR
The previous n days, excluding the current day.
SELECT * FROM MyTable WHERE MyDateField = L_LAST_N_DAYS(3)
The following n days, including the current day.
SELECT * FROM MyTable WHERE MyDateField = L_NEXT_N_DAYS(3)
Also available:
L_LAST/L_NEXT_90_DAYS
Every day in every week, starting n weeks before current week, and ending in the previous week.
SELECT * FROM MyTable WHERE MyDateField = L_LAST_N_WEEKS(3)
Every day in every week, starting the following week, and ending n weeks in the future.
SELECT * FROM MyTable WHERE MyDateField = L_NEXT_N_WEEKS(3)
Also available:
L_LAST/L_NEXT_N_MONTHS(n)
L_LAST/L_NEXT_N_QUARTERS(n)
L_LAST/L_NEXT_N_YEARS(n)