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The SQL SELECT statement returns a result set of records, from one or more tables. A SELECT statement retrieves zero or more rows from one or more
database tables A table is a collection of related data held in a table format within a database. It consists of columns and rows. In relational databases, and flat file databases, a ''table'' is a set of data elements (values) using a model of vertical colu ...
or database views. In most applications, SELECT is the most commonly used data manipulation language (DML) command. As SQL is a
declarative programming In computer science, declarative programming is a programming paradigm—a style of building the structure and elements of computer programs—that expresses the logic of a computation without describing its control flow. Many languages that a ...
language, SELECT queries specify a result set, but do not specify how to calculate it. The database translates the query into a "
query plan In general, a query is a form of questioning, in a line of inquiry. Query may also refer to: Computing and technology * Query, a precise request for information retrieval made to a database or information system ** Query language, a computer l ...
" which may vary between executions, database versions and database software. This functionality is called the "
query optimizer Query optimization is a feature of many relational database management systems and other databases such as NoSQL and graph databases. The query optimizer attempts to determine the most efficient way to execute a given query by considering the ...
" as it is responsible for finding the best possible execution plan for the query, within applicable constraints. The SELECT statement has many optional clauses: * SELECT clause is the list of
columns A column or pillar in architecture and structural engineering is a structural element that transmits, through compression, the weight of the structure above to other structural elements below. In other words, a column is a compression membe ...
or SQL expressions that must be returned by the query. This is approximately the relational algebra projection operation. * AS optionally provides an alias for each column or expression in the SELECT clause. This is the relational algebra
rename Rename may refer to: * Rename (computing), rename of a file on a computer * RENAME (command), command to rename a file in various operating systems * Rename (relational algebra), unary operation in relational algebra * Company renaming, rename ...
operation. * FROM specifies from which table to get the data. *
WHERE Where may refer to: * Where?, one of the Five Ws in journalism * where (command), a shell command * Where (SQL), a database language clause * Where.com, a provider of location-based applications via mobile phones * ''Where'' (magazine), a serie ...
specifies which rows to retrieve. This is approximately the relational algebra selection operation. * GROUP BY groups rows sharing a property so that an aggregate function can be applied to each group. * HAVING selects among the groups defined by the GROUP BY clause. * ORDER BY specifies how to order the returned rows.


Overview

SELECT is the most common operation in SQL, called "the query". SELECT retrieves data from one or more tables, or expressions. Standard SELECT statements have no persistent effects on the database. Some non-standard implementations of SELECT can have persistent effects, such as the SELECT INTO syntax provided in some databases. Queries allow the user to describe desired data, leaving the database management system (DBMS) to carry out
planning Planning is the process of thinking regarding the activities required to achieve a desired goal. Planning is based on foresight, the fundamental capacity for mental time travel. The evolution of forethought, the capacity to think ahead, is c ...
, optimizing, and performing the physical operations necessary to produce that result as it chooses. A query includes a list of columns to include in the final result, normally immediately following the SELECT keyword. An asterisk ("*") can be used to specify that the query should return all columns of the queried tables. SELECT is the most complex statement in SQL, with optional keywords and clauses that include: * The FROM clause, which indicates the table(s) to retrieve data from. The FROM clause can include optional
JOIN Join may refer to: * Join (law), to include additional counts or additional defendants on an indictment *In mathematics: ** Join (mathematics), a least upper bound of sets orders in lattice theory ** Join (topology), an operation combining two topo ...
subclauses to specify the rules for joining tables. * The
WHERE Where may refer to: * Where?, one of the Five Ws in journalism * where (command), a shell command * Where (SQL), a database language clause * Where.com, a provider of location-based applications via mobile phones * ''Where'' (magazine), a serie ...
clause includes a comparison predicate, which restricts the rows returned by the query. The WHERE clause eliminates all rows from the result set where the comparison predicate does not evaluate to True. * The GROUP BY clause projects rows having common values into a smaller set of rows. GROUP BY is often used in conjunction with SQL aggregation functions or to eliminate duplicate rows from a result set. The WHERE clause is applied before the GROUP BY clause. * The HAVING clause includes a predicate used to filter rows resulting from the GROUP BY clause. Because it acts on the results of the GROUP BY clause, aggregation functions can be used in the HAVING clause predicate. * The ORDER BY clause identifies which column to use to sort the resulting data, and in which direction to sort them (ascending or descending). Without an ORDER BY clause, the order of rows returned by an SQL query is undefined. * The DISTINCT keyword eliminates duplicate data. The following example of a SELECT query returns a list of expensive books. The query retrieves all rows from the ''Book'' table in which the ''price'' column contains a value greater than 100.00. The result is sorted in ascending order by ''title''. The asterisk (*) in the ''select list'' indicates that all columns of the ''Book'' table should be included in the result set. SELECT * FROM Book WHERE price > 100.00 ORDER BY title; The example below demonstrates a query of multiple tables, grouping, and aggregation, by returning a list of books and the number of authors associated with each book. SELECT Book.title AS Title, count(*) AS Authors FROM Book JOIN Book_author ON Book.isbn = Book_author.isbn GROUP BY Book.title; Example output might resemble the following: Title Authors ---------------------- ------- SQL Examples and Guide 4 The Joy of SQL 1 An Introduction to SQL 2 Pitfalls of SQL 1 Under the precondition that ''isbn'' is the only common column name of the two tables and that a column named ''title'' only exists in the ''Book'' table, one could re-write the query above in the following form: SELECT title, count(*) AS Authors FROM Book NATURAL JOIN Book_author GROUP BY title; However, many vendors either do not support this approach, or require certain column-naming conventions for natural joins to work effectively. SQL includes operators and functions for calculating values on stored values. SQL allows the use of expressions in the ''select list'' to project data, as in the following example, which returns a list of books that cost more than 100.00 with an additional ''sales_tax'' column containing a sales tax figure calculated at 6% of the ''price''. SELECT isbn, title, price, price * 0.06 AS sales_tax FROM Book WHERE price > 100.00 ORDER BY title;


Subqueries

Queries can be nested so that the results of one query can be used in another query via a relational operator or aggregation function. A nested query is also known as a ''subquery''. While joins and other table operations provide computationally superior (i.e. faster) alternatives in many cases, the use of subqueries introduces a hierarchy in execution that can be useful or necessary. In the following example, the aggregation function AVG receives as input the result of a subquery: SELECT isbn, title, price FROM Book WHERE price < (SELECT AVG(price) FROM Book) ORDER BY title; A subquery can use values from the outer query, in which case it is known as a
correlated subquery In a SQL database query, a correlated subquery (also known as a synchronized subquery) is a subquery (a query nested inside another query) that uses values from the outer query. Because the subquery may be evaluated once for each row processed by ...
. Since 1999 the SQL standard allows named subqueries called
common table expression A hierarchical query is a type of SQL query that handles hierarchical model data. They are special cases of more general recursive fixpoint queries, which compute transitive closures. In standard SQL:1999 hierarchical queries are implemented by ...
s (named and designed after the IBM DB2 version 2 implementation; Oracle calls these subquery factoring). CTEs can also be recursive by referring to themselves; the resulting mechanism allows tree or graph traversals (when represented as relations), and more generally fixpoint computations.


Derived table

A derived table is the use of referencing an SQL subquery in a FROM clause. Essentially, the derived table is a subquery that can be selected from or joined to. Derived table functionality allows the user to reference the subquery as a table. The derived table also is referred to as an ''inline view'' or a ''select in from list''. In the following example, the SQL statement involves a join from the initial Books table to the derived table "Sales". This derived table captures associated book sales information using the ISBN to join to the Books table. As a result, the derived table provides the result set with additional columns (the number of items sold and the company that sold the books): SELECT b.isbn, b.title, b.price, sales.items_sold, sales.company_nm FROM Book b JOIN (SELECT SUM(Items_Sold) Items_Sold, Company_Nm, ISBN FROM Book_Sales GROUP BY Company_Nm, ISBN) sales ON sales.isbn = b.isbn


Examples

Given a table T, the ''query'' will result in all the elements of all the rows of the table being shown. With the same table, the query will result in the elements from the column C1 of all the rows of the table being shown. This is similar to a '' projection'' in relational algebra, except that in the general case, the result may contain duplicate rows. This is also known as a Vertical Partition in some database terms, restricting query output to view only specified fields or columns. With the same table, the query will result in all the elements of all the rows where the value of column C1 is '1' being shown in relational algebra terms, a '' selection'' will be performed, because of the WHERE clause. This is also known as a Horizontal Partition, restricting rows output by a query according to specified conditions. With more than one table, the result set will be every combination of rows. So if two tables are T1 and T2, will result in every combination of T1 rows with every T2 rows. E.g., if T1 has 3 rows and T2 has 5 rows, then 15 rows will result. Although not in standard, most DBMS allows using a select clause without a table by pretending that an imaginary table with one row is used. This is mainly used to perform calculations where a table is not needed. The SELECT clause specifies a list of properties (columns) by name, or the wildcard character (“*”) to mean “all properties”.


Limiting result rows

Often it is convenient to indicate a maximum number of rows that are returned. This can be used for testing or to prevent consuming excessive resources if the query returns more information than expected. The approach to do this often varies per vendor. In ISO SQL:2003, result sets may be limited by using * cursors, or * by adding a
SQL window function In SQL, a window function or analytic function is a function which uses values from one or multiple rows to return a value for each row. (This contrasts with an aggregate function, which returns a single value for multiple rows.) Window function ...
to the SELECT-statement ISO SQL:2008 introduced the FETCH FIRST clause. According to PostgreSQL v.9 documentation, an SQL window function "performs a calculation across a set of table rows that are somehow related to the current row", in a way similar to aggregate functions. The name recalls signal processing window functions. A window function call always contains an OVER clause.


ROW_NUMBER() window function

ROW_NUMBER() OVER may be used for a ''simple table'' on the returned rows, e.g. to return no more than ten rows: SELECT * FROM ( SELECT ROW_NUMBER() OVER (ORDER BY sort_key ASC) AS row_number, columns FROM tablename ) AS foo WHERE row_number <= 10 ROW_NUMBER can be non-deterministic: if ''sort_key'' is not unique, each time you run the query it is possible to get different row numbers assigned to any rows where ''sort_key'' is the same. When ''sort_key'' is unique, each row will always get a unique row number.


RANK() window function

The RANK() OVER window function acts like ROW_NUMBER, but may return more or less than ''n'' rows in case of tie conditions, e.g. to return the top-10 youngest persons: SELECT * FROM ( SELECT RANK() OVER (ORDER BY age ASC) AS ranking, person_id, person_name, age FROM person ) AS foo WHERE ranking <= 10 The above code could return more than ten rows, e.g. if there are two people of the same age, it could return eleven rows.


FETCH FIRST clause

Since ISO SQL:2008 results limits can be specified as in the following example using the FETCH FIRST clause. SELECT * FROM T FETCH FIRST 10 ROWS ONLY This clause currently is supported by CA DATACOM/DB 11, IBM DB2, SAP SQL Anywhere, PostgreSQL, EffiProz, H2, HSQLDB version 2.0, Oracle 12c and Mimer SQL. Microsoft SQL Server 2008 and highe
supports FETCH FIRST
but it is considered part of the ORDER BY clause. The ORDER BY, OFFSET, and FETCH FIRST clauses are all required for this usage. SELECT * FROM T ORDER BY acolumn DESC OFFSET 0 ROWS FETCH FIRST 10 ROWS ONLY


Non-standard syntax

Some DBMSs offer non-standard syntax either instead of or in addition to SQL standard syntax. Below, variants of the ''simple limit'' query for different DBMSes are listed:


Rows Pagination

Rows Pagination is an approach used to limit and display only a part of the total data of a query in the database. Instead of showing hundreds or thousands of rows at the same time, the server is requested only one page (a limited set of rows, per example only 10 rows), and the user starts navigating by requesting the next page, and then the next one, and so on. It is very useful, specially in web systems, where there is no dedicated connection between the client and the server, so the client does not have to wait to read and display all the rows of the server.


Data in Pagination approach

* = Number of rows in a page * = Number of the current page * = Number of the row - 1 where the page starts = (page_number-1) * rows


Simplest method (but very inefficient)

# Select all rows from the database # Read all rows but send to display only when the row_number of the rows read is between and Select * from order by


Other simple method (a little more efficient than read all rows)

# Select all the rows from the beginning of the table to the last row to display () # Read the rows but send to display only when the row_number of the rows read is greater than


Method with positioning

# Select only rows starting from the next row to display () # Read and send to display all the rows read from the database


Method with filter (it is more sophisticated but necessary for very big dataset)

# Select only then rows with filter: ## First Page: select only the first rows, depending on the type of database ## Next Page: select only the first rows, depending on the type of database, where the is greater than (the value of the of the last row in the current page) ## Previous Page: sort the data in the reverse order, select only the first rows, where the is less than (the value of the of the first row in the current page), and sort the result in the correct order # Read and send to display all the rows read from the database


Hierarchical query

Some databases provide specialised syntax for hierarchical data. A window function in SQL:2003 is an aggregate function applied to a partition of the result set. For example, calculates the sum of the populations of all rows having the same ''city'' value as the current row. Partitions are specified using the OVER clause which modifies the aggregate. Syntax: The OVER clause can partition and order the result set. Ordering is used for order-relative functions such as row_number.


Query evaluation ANSI

The processing of a SELECT statement according to ANSI SQL would be the following:Inside Microsoft SQL Server 2005: T-SQL Querying by Itzik Ben-Gan, Lubor Kollar, and Dejan Sarka


Window function support by RDBMS vendors

The implementation of window function features by vendors of relational databases and SQL engines differs wildly. Most databases support at least some flavour of window functions. However, when we take a closer look it becomes clear that most vendors only implement a subset of the standard. Let's take the powerful RANGE clause as an example. Only Oracle, DB2, Spark/Hive, and Google Big Query fully implement this feature. More recently, vendors have added new extensions to the standard, e.g. array aggregation functions. These are particularly useful in the context of running SQL against a distributed file system (Hadoop, Spark, Google BigQuery) where we have weaker data co-locality guarantees than on a distributed relational database (MPP). Rather than evenly distributing the data across all nodes, SQL engines running queries against a distributed filesystem can achieve data co-locality guarantees by nesting data and thus avoiding potentially expensive joins involving heavy shuffling across the network. User-defined aggregate functions that can be used in window functions are another extremely powerful feature.


Generating data in T-SQL

Method to generate data based on the union all select 1 a, 1 b union all select 1, 2 union all select 1, 3 union all select 2, 1 union all select 5, 1 SQL Server 2008 supports the "row constructor" specified in the SQL3 ("SQL:1999") standard select * from (values (1, 1), (1, 2), (1, 3), (2, 1), (5, 1)) as x(a, b)


References


Sources

* Horizontal & Vertical Partitioning, Microsoft SQL Server 2000 Books Online.


External links


Windowed Tables and Window function in SQL
Stefan Deßloch









{{SQL SQL keywords Articles with example SQL code