History
- IBM Sequel language developed as part of System R project at the IBM San Jose Research Laboratory
- Renamed Structured Query Language (SQL)
- ANSI and ISO standard SQL:
- SQL-86
- SQL-89
- SQL-92
- SQL:1999 (language name became Y2K compliant!)
- SQL:2003
- Commercial systems offer most, if not all, SQL-92 features, plus varying feature sets from later standards and special proprietary features.
Not all examples here may work on your particular system.
Data Definition Definition
Allows the specification of:
- The schema for each relation, including attribute types.
- ntegrity constraints
- Authorization information for each relation.
- Non-standard SQL extensions also allow specification of
- The set of indices to be maintained for each relations.
- The physical storage structure of each relation on disk.
Create Table Construct
- An SQL relation is defined using the create table command:
create table r (A1 D1, A2 D2, …, An Dn,
(integrity-constraint1),
…, (integrity-constraintk))- r is the name of the relation
- each Ai is an attribute name in the schema of relation r
- Di is the data type of attribute Ai
Example:
create table branch
(branch_name char(15),
branch_city char(30),
assets integer)
Domain Types in SQL
- char(n). Fixed length character string, with user-specified length n.
- varchar(n). Variable length character strings, with user-specified maximum length n.
- int. Integer (a finite subset of the integers that is machine-dependent).
- smallint. Small integer (a machine-dependent subset of the integer domain type).
- numeric(p,d). Fixed point number, with user-specified precision of p digits, with n digits to the right of decimal point.
- real, double precision. Floating point and double-precision floating point numbers, with machine-dependent precision.
- float(n). Floating point number, with user-specified precision of at least n digits.
Integrity Constraints on Tables
- not null
- primary key (A1, …, An )
Example: Declare branch_name as the primary key for branch .
create table branch
(branch_name char(15),
branch_city char(30) not null,
assets integer,
primary key (branch_name))
primary key declaration on an attribute automatically ensures not null in SQL-92 onwards, needs to be explicitly stated in SQL-89
Basic Insertion and Deletion of Tuples
- Newly created table is empty
- Add a new tuple to account
- insert into account values (‘A-9732’, ‘Perryridge’, 1200)
- Insertion fails if any integrity constraint is violated
- Delete all tuples from account
- delete from account
Drop and Alter Table Constructs
- The drop table command deletes all information about the dropped relation from the database.
- The alter table command is used to add attributes to an existing relation:
alter table r add A D
where A is the name of the attribute to be added to relation r and D is the domain of A.- All tuples in the relation are assigned null as the value for the new attribute.
- The alter table command can also be used to drop attributes of a relation:
alter table r drop A
where A is the name of an attribute of relation r- Dropping of attributes not supported by many databases
Basic Query Structure
A typical SQL query has the form:
- select A1, A2, …, An from r1, r2, …, rm where P
- Ai represents an attribute
Ri represents a relation - P is a predicate
- This query is equivalent to the relational algebra expression.
∏A1, A2,…, An(σ P(r1¿r2¿…×r m)) - The result of an SQL query is a relation.
The select Clause
- The select clause list the attributes desired in the result of a query
- Corresponds to the projection operation of the relational algebra
- Example: find the names of all branches in the loan relation:
select branch_name from loan - In the relational algebra, the query would be:
∏branch_name (loan)
NOTE: SQL names are case insensitive (i.e., you may use upper-case or lower-case letters.) - E.g. Branch_Name ≡ BRANCH_NAME ≡ branch_name Some people use upper case wherever we use bold font.
- SQL allows duplicates in relations as well as in query results. To force the elimination of duplicates, insert the keyword distinct after select.
- Find the names of all branches in the loan relations, and remove duplicates
select distinct branch_name from loan - The keyword all specifies that duplicates not be removed.
select all branch_name from loan - An asterisk in the select clause denotes “all attributes”
select * from loan - The select clause can contain arithmetic expressions involving the operation, +, –, *, and /, and operating on constants or attributes of tuples.
- E.g.:
select loan_number, branch_name, amount 100 from loan
The where Clause
- The where clause specifies conditions that the result must satisfy
- Corresponds to the selection predicate of the relational algebra.
- To find all loan number for loans made at the Perryridge branch with loan amounts greater than $1200.
select loan_number from loan where branch_name = ‘Perryridge’ and amount > 1200 - Comparison results can be combined using the logical connectives and, or, and not.
The from Clause
- The from clause lists the relations involved in the query
- Corresponds to the Cartesian product operation of the relational algebra.
- Find the Cartesian product borrower X loan
select * from borrower, loan - Find the name, loan number and loan amount of all customers a loan at the Perryridge branch.
select customer_name, borrower.loan_number, amount from borrower, loan where borrower.loan_number = loan.loan_number and branch_name = ‘Perryridge’
The Rename Operation
- SQL allows renaming relations and attributes using the as clause:
old-name as new-name - E.g. Find the name, loan number and loan amount of all customers; rename the column name loan_number as loan_id.
select customer_name, borrower.loan_number as loan_id, amount from borrower, loan where borrower.loan_number = loan.loan_number
Tuple Variables
- Tuple variables are defined in the from clause via the use of the as clause.
- Find the customer names and their loan numbers and amount for all customers having a loan at some branch.
select customer_name, T.loan_number, S.amount from borrower as T, loan as S where T.loan_number = S.loan_number - Find the names of all branches that have greater assets than some branch located in Brooklyn.
select distinct T.branch_name from branch as T, branch as S where T.assets > S.assets and S.branch_city = ‘Brooklyn‘ - Keyword as is optional and may be omitted
borrower as T ≡ borrower T - Some database such as Oracle require as to be omitted
String Operations
- SQL includes a string-matching operator for comparisons on character strings. The operator “like” uses patterns that are described using two special characters:
- percent (%). The % character matches any substring.
- underscore (_). The _ character matches any character.
- Find the names of all customers whose street includes the substring “Main”.
select customer_name from customer where customer_street like ‘% Main%’ - Match the name “Main%”
like ‘Main\%’ escape ‘\’ - SQL supports a variety of string operations such as
- concatenation (using “||”)
- converting from upper to lower case (and vice versa)
- finding string length, extracting substrings, etc.
Ordering the Display of Tuples
- List in alphabetic order the names of all customers having a loan in Perryridge branch
select distinct customer_name from borrower, loan where borrower loan_number = loan.loan_number and branch_name = ‘Perryridge’ order by customer_name - We may specify desc for descending order or asc for ascending order, for each attribute; ascending order is the default.
- Example: order by customer_name desc
Set Operations
- The set operations union, intersect, and except operate on relations and correspond to the relational algebra operations
- Each of the above operations automatically eliminates duplicates; to retain all duplicates use the corresponding multiset versions union all, intersect all and except all.
- Suppose a tuple occurs m times in r and n times in s, then, it occurs:
- m + n times in r union all s
- min(m,n) times in r intersect all s
- max(0, m – n) times in r except all s
Set Set Operations Operations
- Find all customers who have a loan, an account, or both:
(select customer_name from depositor) union (select customer_name from borrower) - Find all customers who have both a loan and an account.
(select customer_name from depositor) intersect (select customer_name from borrower) - Find all customers who have an account but no loan.
(select customer_name from depositor) except (select customer_name from borrower)
Aggregate Functions
- These functions operate on the multiset of values of a column of a relation, and return a value
- avg: average value
- min: minimum value
- max: maximum value
- sum: sum of values
- count: number of values
- Find the average account balance at the Perryridge branch.
select avg (balance) from account where branch_name = ‘Perryridge’ - Find the number of tuples in the customer relation.
select count (*) from customer - Find the number of depositors in the bank.
select count (distinct customer_name) from depositor
Aggregate Functions – – Group By
- Find the number of depositors for each branch.
select branch_name, count (distinct customer_name) from depositor, account where depositor.account_number = account.account_number group by branch_name - Note: Attributes in select clause outside of aggregate functions must appear in group by list
Aggregate Functions – – Having Clause
- Find the names of all branches where the average account balance is more than $1,200.
select branch_name, avg (balance) from account group by branch_name having avg (balance) > 1200 - Note: predicates in the having clause are applied after the formation of groups whereas predicates in the where clause are applied before forming groups
Nested Subqueries
- SQL provides a mechanism for the nesting of subqueries.
- A subquery is a select-from-where expression that is nested within another query.
- A common use of subqueries is to perform tests for set membership, set comparisons, and set cardinality. “In” In” Construct Construct
- Find all customers who have both an account and a loan at the bank.
select distinct customer_name from borrower where customer_name in (select customer_name from depositor ) - Find all customers who have a loan at the bank but do not have an account at the bank
select distinct customer_name from borrower where customer_name not in (select customer_name from depositor )
Example Query
- Find all customers who have both an account and a loan at the Perryridge branch
select distinct customer_name from borrower, loan where borrower.loan_number = loan.loan_number and branch_name = ‘Perryridge’ and (branch_name, customer_name ) in (select branch_name, customer_name from depositor, account where depositor.account_number = account.account_number ) - Note: Above query can be written in a much simpler manner. The formulation above is simply to illustrate SQL features.
Some Construct
- Find all branches that have greater assets than some branch located in Brooklyn.
select distinct T.branch_name
from branch as T, branch as S where T.assets > S.assets and
S.branch_city = ‘Brooklyn’ - Same query using > some clause
select branch_name
from branch where assets > some
(select assets from branch where branch_city = ‘Brooklyn’)
All Construct
- Find the names of all branches that have greater assets than all branches located in Brooklyn.
select branch_name
from branch where assets > all
(select assets from branch where branch_city = ‘Brooklyn’)
Exists Construct
- Find all customers who have an account at all branches located in Brooklyn.
select distinct S.customer_name from depositor as S where not exists ((select branch_name from branch where branch_city = ‘Brooklyn’) except (select R.branch_name from depositor as T, account as R where T.account_number = R.account_number and S.customer_name = T.customer_name ))
Absence of Duplicate Tuples
- The unique construct tests whether a subquery has any duplicate tuples in its result.
- Find all customers who have at most one account at the Perryridge branch.
select T.customer_name from depositor as T where unique (select R.customer_name from account, depositor as R where T.customer_name = R.customer_name and R.account_number = account.account_number and account.branch_name = ‘Perryridge’)
Example Query
- Find all customers who have at least two accounts at the Perryridge branch.
select distinct T.customer_name from depositor as T where not unique (select R.customer_name from account, depositor as R where T.customer_name = R.customer_name and R.account_number = account.account_number and account.branch_name = ‘Perryridge’) - Variable from outer level is known as a correlation variable
Modification of the Database – Deletion Modification of the Database – Deletion
- Delete all account tuples at the Perryridge branch delete from account where branch_name = ‘Perryridge’
- Delete all accounts at every branch located in the city ‘Needham’
delete from account where branch_name in (select branch_name from branch where branch_city = ‘Needham’)
Example Query
- Delete the record of all accounts with balances below the average at the bank.
delete from account where balance < (select avg (balance ) from account ) - Problem: as we delete tuples from deposit, the average balance changes
- Solution used in SQL:
- First, compute avg balance and find all tuples to delete
- Next, delete all tuples found above (without recomputing avg or retesting the tuples)
Modification of the Database – Insertion Modification of the Database – Insertion
- Add a new tuple to account
insert into account values (‘A-9732’, ‘Perryridge’, 1200) or equivalently
insert into account (branch_name, balance, account_number) values (‘Perryridge’, 1200, ‘A-9732’) - Add a new tuple to account with balance set to null
insert into account values (‘A-777′,’Perryridge’, null )
Modification of the Database – Insertion Modification of the Database – Insertion
- Provide as a gift for all loan customers of the Perryridge branch, a $200 savings account. Let the loan number serve as the account number for the new savings account
insert into account select loan_number, branch_name, 200 from loan where branch_name = ‘Perryridge’
insert into depositor select customer_name, loan_number from loan, borrower where branch_name = ‘Perryridge’ and loan.account_number = borrower.account_number - The select from where statement is evaluated fully before any of its results are inserted into the relation
- Motivation: insert into table1 select * from table1
Modification of the Database – Updates Modification of the Database – Updates
- Increase all accounts with balances over $10,000 by 6%, all other accounts receive 5%.
- Write two update statements:
update account set balance = balance * 1.06 where balance > 10000
update account set balance = balance * 1.05 where balance 10000 - The order is important
- Can be done better using the case statement (next slide)
- Write two update statements:
Case Statement for Conditional Updates Case Statement for Conditional Updates
Same query as before: Increase all accounts with balances over $10,000 by 6%, all other accounts receive 5%.
update account set balance = case when balance <= 10000 then balance *1.05
else balance * 1.06 end
Joined Relations
- Join operations take two relations and return as a result another relation.
- These additional operations are typically used as subquery expressions in the from clause
- Join condition – defines which tuples in the two relations match, and what attributes are present in the result of the join.
- Join type – defines how tuples in each relation that do not match any tuple in the other relation (based on the join condition) are treated.
Joined Relations – Joined Relations – Datasets for Examples
-
-
-
- Relation loan
- Relation borrower
loan_number branch_name amount L-170 Downtown 3000 L-230 Redwood 3000 customer_name locan_number Jones L-170 Smith L-230 -
-
- Note: borrower information missing for L-260 and loan information missing for L-155
Joined Relations – Examples Joined Relations
- loan inner join borrower on
loan.loan_number = borrower.loan_number - loan left outer join borrower on
loan.loan_number = borrower.loan_number
Find all customers who have either an account or a loan (but not both) at the bank.
select customer_name from (depositor natural full outer join borrower ) where account_number is null or loan_number is null
Joined Relations – Examples Joined Relations
- loan natural inner join borrower
- loan natural right outer join borrower
Joined Relations – Examples Joined Relations –
- Natural join can get into trouble if two relations have an attribute with same name that should not affect the join condition
- e.g. an attribute such as remarks may be present in many tables
- Solution:
- loan full outer join borrower using (loan_number)
Derived Relations
- SQL allows a subquery expression to be used in the from clause
- Find the average account balance of those branches where the average account balance is greater than $1200.
select branch_name, avg_balance from (select branch_name, avg (balance)
from account group by branch_name ) as branch_avg ( branch_name, avg_balance )
where avg_balance > 1200 - Note that we do not need to use the having clause, since we compute the temporary (view) relation branch_avg in the from clause, and the attributes of branch_avg can be used directly in the where clause.
View Definition
- A relation that is not of the conceptual model but is made visible to a user as a “virtual relation” is called a view.
- A view is defined using the create view statement which has the form
create view v as < query expression >
where <query expression> is any legal SQL expression. The view name is represented by v. - Once a view is defined, the view name can be used to refer to the virtual relation that the view generates.
Example Queries
- A view consisting of branches and their customers
create view all_customer as
(select branch_name, customer_name
from depositor, account
where depositor.account_number = account.account_number )
union (select branch_name, customer_name from borrower, loan
where borrower.loan_number = loan.loan_number ) - Find all customers of the Perryridge branch
select customer_name
from all_customer where branch_name = ‘Perryridge’
Uses of Views
- Hiding some information from some users
- Consider a user who needs to know a customer’s name, loan number and branch name, but has no need to see the loan amount.
- Define a view
(create view cust_loan_data as select customer_name, borrower.loan_number, branch_name
from borrower, loan where borrower.loan_number = loan.loan_number ) - Grant the user permission to read cust_loan_data, but not borrower or loan
- Predefined queries to make writing of other queries easier
- Common example: Aggregate queries used for statistical analysis of data
Processing of Views
- When a view is created
- The query expression is stored in the database along with the view name
- The expression is substituted into any query using the view
- Views definitions containing views
- One view may be used in the expression defining another view
- A view relation v1 is said to depend directly on a view relation v2 if v2 is used in the expression defining v1
- A view relation v1 is said to depend on view relation v2 if either v1 depends directly to v2 or there is a path of dependencies from v1 to v2
- A view relation v is said to be recursive if it depends on itself.
View Expansion
- A way to define the meaning of views defined in terms of other views.
- Let view v1 be defined by an expression e1 that may itself contain uses of view relations.
- View expansion of an expression repeats the following replacement step:repeat
- Find any view relation vi in e1 Replace the view relation vi by the expression defining vi until no more view relations are present in e1
- As long as the view definitions are not recursive, this loop will terminate
With Clause
- The with clause provides a way of defining a temporary view whose definition is available only to the query in which the with clause occurs.
- Find all accounts with the maximum balance
with max_balance (value)
as select max (balance)
from account
select account_number
from account, max_balance
where account.balance = max_balance.value
Complex Queries using With Clause
- Find all branches where the total account deposit is greater than the average of the total account deposits at all branches.
with branch_total (branch_name, value)
as select branch_name, sum (balance)
from account
group by branch_name
with branch_total_avg (value) as
select avg (value) from branch_total
select branch_name
from branch_total, branch_total_avg
where branch_total.value >= branch_total_avg.value
Update of a View
- Create a view of all loan data in the loan relation, hiding the amount attribute
create view loan_branch as
select loan_number, branch_name
from loan - Add a new tuple to loan_branch
insert into loan_branch
values (‘L-37‘, ‘Perryridge‘) - This insertion must be represented by the insertion of the tuple (‘L-37’, ‘Perryridge’, null ) into the loan relation
- Some updates through views are impossible to translate into updates on the database relations
create view v as
select loan_number, branch_name, amount
from loan
where branch_name = ‘Perryridge’
insert into v values ( ‘L-99‘,’Downtown‘, ’23’) - Others cannot be translated uniquely
insert into all_customer values (‘Perryridge’, ‘John’) - Have to choose loan or account, and create a new loan/account number!
- Most SQL implementations allow updates only on simple views(without aggregates) defined on a single relation
Null Values
- It is possible for tuples to have a null value, denoted by null, for some of their attributes
- null signifies an unknown value or that a value does not exist.
- The predicate is null can be used to check for null values.
- Example: Find all loan number which appear in the loan relation with null values for amount.
select loan_number from loan
where amount is null - The result of any arithmetic expression involving null is null
- Example: 5 + null returns null However, aggregate functions simply ignore nulls
Null Values and Three Valued Logic
- Any comparison with null returns unknown
- Example: 5 < null or null <> null or null = null
- Three-valued logic using the truth value unknown:
- OR: (unknown or true) = true, (unknown or false) = unknown (unknown or unknown) = unknown
- AND: (true and unknown) = unknown, (false and unknown) = false, (unknown and unknown) = unknown
- NOT: (not unknown) = unknown
- “P is unknown” evaluates to true if predicate P evaluates to unknown
- Result of where clause predicate is treated as false if it evaluates to unknown
Null Values and Aggregates
- Total all loan amounts
select sum (amount ) from loan - Above statement ignores null amounts
- Result is null if there is no non-null amount
- All aggregate operations except count(*) ignore tuples with null values on the aggregated attributes.
- SQL includes a between comparison operator
- Example: Find the loan number of those loans with loan amounts between $90,000 and $100,000 (that is, >=$90,000 and <=$100,000)
select loan_number
from loan where amount between 90000 and 100000
Embedded SQL
- Embedded SQL is a method of inserting inline SQL statements or queries into the code of a programming language, which is known as a host language.
- Because the host language cannot parse SQL, the inserted SQL isparsed by an embedded SQL preprocessor.
- Embedded SQL is a robust and convenient method of combining the computing power of a programming language with SQL’s specialized data management and manipulation capabilities.
- Embedded SQL are SQL statements in an application that do not change at runtime and, therefore, can be hard-coded into the application.
- Parsing, validation, optimization, and generation of application plan aredone at compile time.
Dynamic SQL
- Dynamic Structured Query Language (SQL) is a SQL version that facilitates the generation of dynamic (or variable) program queries.
- Dynamic SQL allows a programmer to write code that automatically adjusts to varying databases, environments, servers or variables.
- Dynamic SQL statements are not embedded in the source program but stored as strings of characters that are manipulated during a program’s runtime.
- These SQL statements are either entered by a programmer or automatically generated by the program.
- Dynamic SQL facilitates automatic generation and manipulation of program modules for efficient automated repeating task preparation and performance.
- Parsing, validation, optimization, and generation of application plan are done at run time.
Transaction Control Language
- The following commands are used to control transactions.
- COMMIT − to save the changes.
- ROLLBACK − to roll back the changes.
- SAVEPOINT − creates points within the groups of transactions in which to ROLLBACK.
- SET TRANSACTION − Places a name on a transaction.