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Relational Algebra

Relational Algebra. Content based on Chapter 4 Database Management Systems, (Third Edition), by Raghu Ramakrishnan and Johannes Gehrke. McGraw Hill, 2003. Relational Query Languages. Query languages : Allow manipulation and retrieval of data from a database.

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Relational Algebra

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  1. Relational Algebra Content based on Chapter 4 Database Management Systems, (Third Edition), by Raghu Ramakrishnan and Johannes Gehrke. McGraw Hill, 2003

  2. Relational Query Languages • Query languages: Allow manipulation and retrieval of data from a database. • Relational model supports simple, powerful QLs: • Strong formal foundation based on logic. • Allows for much optimization. • Query Languages != programming languages! • QLs not expected to be “Turing complete”. • QLs not intended to be used for complex calculations. • QLs support easy, efficient access to large data sets.

  3. Formal Relational Query Languages • Two mathematical Query Languages form the basis for “real” languages (e.g. SQL), and for implementation: • Relational Algebra: More operational, very useful for representing execution plans. • Relational Calculus: Lets users describe what they want, rather than how to compute it. (Non-operational, declarative.)

  4. Preliminaries • A query is applied to relation instances, and the result of a query is also a relation instance. • Schemasof input relations for a query are fixed (but query will run regardless of instance!) • The schema for the resultof a given query is also fixed! Determined by definition of query language constructs. • Positional vs. named-field notation: • Positional notation easier for formal definitions, named-field notation more readable. • Both used in SQL

  5. Example Instances • “Sailors” and “Reserves” relations for our examples. • We’ll use positional or named field notation, assume that names of fields in query results are `inherited’ from names of fields in query input relations.

  6. Example Instances S1 R1 B1 S2

  7. Relational Algebra • Basic operations: • Selection ( ) Selects a subset of rows from relation. • Projection ( ) Deletes unwanted columns from relation. • Cross-product( ) Allows us to combine two relations. • Set-difference ( ) Tuples in reln. 1, but not in reln. 2. • Union( ) Tuples in reln. 1 and in reln. 2. • Additional operations: • Intersection, join, division, renaming: Not essential, but (very!) useful. • Since each operation returns a relation, operationscan be composed! (Algebra is “closed”.)

  8. Projection • Deletes attributes that are not in projection list. • Schema of result contains exactly the fields in the projection list, with the same names that they had in the (only) input relation. • Projection operator has to eliminate duplicates! (Why??) • Note: real systems typically don’t do duplicate elimination unless the user explicitly asks for it. (Why not?)

  9. Selection • Selects rows that satisfy selection condition. • No duplicates in result! (Why?) • Schema of result identical to schema of (only) input relation. • Result relation can be the input for another relational algebra operation! (Operatorcomposition.)

  10. Union, Intersection, Set-Difference • All of these operations take two input relations, which must be union-compatible: • Same number of fields. • `Corresponding’ fields have the same type. • What is the schema of result?

  11. Cross-Product • Each row of S1 is paired with each row of R1. • Result schema has one field per field of S1 and R1, with field names `inherited’ if possible. • Conflict: Both S1 and R1 have a field called sid. • Renaming operator:

  12. Joins • Condition Join: • Result schema same as that of cross-product. • Fewer tuples than cross-product, might be able to compute more efficiently • Sometimes called a theta-join.

  13. Joins • Equi-Join: A special case of condition join where the condition c contains only equalities. • Result schema similar to cross-product, but only one copy of fields for which equality is specified. • Natural Join: Equijoin on all common fields.

  14. Division • Not supported as a primitive operator, but useful for expressing queries like: Find sailors who have reserved allboats. • Let A have 2 fields, x and y; B have only field y: • A/B = • i.e., A/B contains all x tuples (sailors) such that for everyy tuple (boat) in B, there is an xy tuple in A. • Or: If the set of y values (boats) associated with an x value (sailor) in A contains all y values in B, the x value is in A/B. • In general, x and y can be any lists of fields; y is the list of fields in B, and x y is the list of fields of A.

  15. Examples of Division A/B B1 B2 B3 A/B1 A/B2 A/B3 A

  16. Expressing A/B Using Basic Operators • Division is not essential op; just a useful shorthand. • (Also true of joins, but joins are so common that systems implement joins specially.) • Idea: For A/B, compute all x values that are not `disqualified’ by some y value in B. • x value is disqualified if by attaching y value from B, we obtain an xy tuple that is not in A. Disqualified x values:

  17. Solution 2: • Solution 3: Find names of sailors who’ve reserved boat #103 • Solution 1:

  18. A more efficient solution: Find names of sailors who’ve reserved a red boat • Information about boat color only available in Boats; so need an extra join: A query optimizer can find this, given the first solution!

  19. What happens if is replaced by in this query? Find sailors who’ve reserved a red or a green boat • Can identify all red or green boats, then find sailors who’ve reserved one of these boats: • Can also define Tempboats using union! (How?)

  20. Find sailors who’ve reserved a red and a green boat • Previous approach won’t work! Must identify sailors who’ve reserved red boats, sailors who’ve reserved green boats, then find the intersection (note that sid is a key for Sailors):

  21. Find the names of sailors who’ve reserved all boats • Uses division; schemas of the input relations to / must be carefully chosen: • To find sailors who’ve reserved all ‘Interlake’ boats: .....

  22. Relational Calculus • Comes in two flavors: Tuple relational calculus (TRC) and Domain relational calculus(DRC). • Calculus has variables, constants, comparison ops, logical connectives and quantifiers. • TRC: Variables range over (i.e., get bound to) tuples. • DRC: Variables range over domain elements (= field values). • Both TRC and DRC are simple subsets of first-order logic. • Expressions in the calculus are called formulas. An answer tuple is essentially an assignment of constants to variables that make the formula evaluate to true.

  23. Tuple Relational Calculus • Queries in tuple relational calculus : {t| (t)} • t: tuple variable • (t): well-formed formula (wff) = conditions • t is the free variable in (t) • More intuitively, {t1| cond(t1, t2, …, tn)}, where t1: free variable and t2, .., tn : bound variables • Well-formed formula • Atomic formulas connected by logical connectives, AND, OR, NOT and quantifiers, (existential quantifier), (universal quantifier)

  24. Atomic formula in TRC • R(s) • R is a relation name • s is a tuple variable • ti[A]  tj[B] •  : comparison operator (=, <, >, , , ) • ti, tj: tuple variables • A, B: attributes • ti[A]  constant

  25. Example: TRC query • Consider two relations • EMP(Name, MGR, DEPT, SAL) • CHILDREN(Ename, Cname, Age) • Q1: Retrieve Salary and Children’s name of Employees whose manager is ‘white’ {r|(e)(c)(EMP(e) AND CHILDREN(c) AND /* initiate tuple variables */ e[Name] = c[Ename] AND /* join condition */ e[MGR] = ‘white’ AND /* selection cond. */ r[1st attr] = e[SAL] AND r[2nd attr] = c[Cname] } /* projection */

  26. Find the names and ages of sailors with a rating above 7 {p|(s)(Sailors(s) AND /* initiate tuple variables */ s[rating] > 7 AND /* selection condition */ p[1st attr] = s[sname] AND p[2nd attr] = s[age]) } /* projection */

  27. Find the names of sailors who have reserved boat 103 {p|(r)(s)(Reserves(r) AND Sailors(s) AND /* initiate tuple variables */ r[sid] = s[sid] AND /* join condition */ r[bid] = 103 AND /* selection condition */ p[1st attr] = s[sname] } /* projection */

  28. Domain Relational Calculus • Queries in domain relational calculus : {x1, x2, ..., xk| (t)} • x1, x2, …, xk: domain variables; these are only free variables in (t) • (t): well-formed formula (wff) = conditions • Well-formed formula • Atomic formulas connected by logical connectives, AND, OR, NOT and quantifiers, (existential quantifier), (universal quantifier)

  29. Atomic formula in DRC • R(x1, x2, …, xk) • R is a k-ary relation • xi : domain variable or constant • x  y •  : comparison operator (=, <, >, , , ) • x, y: domain variables • A, B: attributes • x  constant

  30. DRC Examples • Consider two relations • EMP(Name, MGR, DEPT, SAL) • CHILDREN(Ename, Cname, Age) • Q1: Retrieve Salary and Children’s name of Employees whose manager is ‘white’ {q,s|(u)(v)(w)(x)(y)(EMP(u,v,w,q) AND CHILDREN(x,s,y) AND /* initiate domain variables */ u = x AND /* join condition */ v = ‘white’ } /* selection condition */ /* projection is implied (q, s) */

  31. Find all sailors with a rating above 7 {i,n,t,a| Sailors(i,n,t,a) AND t > 7}

  32. Find sailors rated > 7 who’ve reserved boat #103 {i,n,t,a|(ir)(br)(d) (Sailors(i,n,t,a) AND Reserve(ir,br,d) AND ir = i AND /* join condition */ t > 7 AND br = 103)} /* selection condition */ Alternative: {i,n,t,a|(br)(d) (Sailors(i,n,t,a) AND Reserve(i,br,d) AND t > 7 AND br = 103)} /* selection condition */

  33. Unsafe Queries, Expressive Power • It is possible to write syntactically correct calculus queries that have an infinite number of answers! Such queries are called unsafe. • e.g., • It is known that every query that can be expressed in relational algebra can be expressed as a safe query in DRC / TRC; the converse is also true. • Relational Completeness: Query language (e.g., SQL) can express every query that is expressible in relational algebra/calculus.

  34. Summary • The relational model has rigorously defined query languages that are simple and powerful. • Relational algebra is more operational; useful as internal representation for query evaluation plans. • Several ways of expressing a given query; a query optimizer should choose the most efficient version.

  35. Summary • Relational calculus is non-operational, and users define queries in terms of what they want, not in terms of how to compute it. (Declarativeness.) • Algebra and safe calculus have same expressive power, leading to the notion of relational completeness.

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