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Relational Algebra & Calculus Zachary G. Ives University of Pennsylvania CIS 550 – Database & Information Systems September 21, 2004 Some slide content courtesy of Susan Davidson & Raghu Ramakrishnan
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2 Administrivia Homework 1 due Thursday
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3 A Set of Logical Operations: The Relational Algebra Six basic operations: Projection (R) Selection (R) UnionR 1 [ R 2 DifferenceR 1 – R 2 ProductR 1 £ R 2 (Rename) (R) And some other useful ones: JoinR 1 ⋈ R 2 SemijoinR 1 ⊲ R 2 IntersectionR 1 Å R 2 DivisionR 1 ¥ R 2
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4 Data Instance for Operator Examples sidname 1Jill 2Qun 3Nitin 4Marty fidname 1Ives 2Saul 8Roth sidexp-gradecid 1A550-0103 1A700-1003 3A 3C500-0103 4C cidsubjsem 550-0103DBF03 700-1003AIS03 501-0103ArchF03 fidcid 1550-0103 2700-1003 8501-0103 STUDENT Takes COURSE PROFESSOR Teaches
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5 Mini-Quiz Try writing queries for these: The names of students named “Bob” The names of students expecting an “A” The names of students in Amir Roth’s 501 class The sids and names of students not enrolled in any courses
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6 The Big Picture: SQL to Algebra to Query Plan to Web Page SELECT * FROM STUDENT, Takes, COURSE WHERE STUDENT.sid = Takes.sID AND Takes.cID = cid STUDENT Takes COURSE Merge Hash by cid Optimizer Execution Engine Storage Subsystem Web Server / UI / etc Query Plan – an operator tree
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7 Optimization Is Based on Algebraic Equivalences Relational algebra has laws of commutativity, associativity, etc. that imply certain expressions are equivalent in semantics They may be different in cost of evaluation! c Ç d (R) ´ c (R) [ d (R) c (R 1 £ R 2 ) ´ R 1 ⋈ c R 2 c Ç d (R) ´ c ( d (R)) Query optimization finds the most efficient representation to evaluate (or one that’s not bad)
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8 Switching Gears: An Equivalent, But Very Different, Formalism Codd invented a relational calculus that he proved was equivalent in expressiveness to the rel. algebra Based on a subset of first-order logic – declarative, without an implicit order of evaluation Tuple relational calculus Domain relational calculus More convenient for certain kinds of manipulations The database uses the relational algebra internally But query languages (e.g., SQL) are mostly based on the relational calculus
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9 Domain Relational Calculus Queries have form: { | p} Predicate: Boolean expression over x 1,x 2, …, x n Precise operations depend on the domain and query language – may include special functions, etc. Assume the following at minimum: RX op Y X op constconst op X where op is , , , , , x i,x j,… are domain variables domain variables predicate
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10 More Complex Predicates Starting with these atomic predicates, build up new predicates by the following rules: Logical connectives: If p and q are predicates, then so are p q, p q, p, and p q (x>2) (x<4) (x>2) (x>0) Existential quantification: If p is a predicate, then so is x.p x. (x>2) (x<4) Universal quantification: If p is a predicate, then so is x.p x.x>2 x. y.y>x
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11 Some Examples Faculty ids Subjects for courses with students expecting a “C” All course numbers for which there exists a smaller course number
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12 Logical Equivalences There are two logical equivalences that will be heavily used: p q (p q) (Whenever p is true, q must also be true.) x. p(x) x. p(x) (p is true for all x) The second can be a lot easier to check! Example: The highest course number offered
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13 Terminology: Free and Bound Variables A variable v is bound in a predicate p when p is of the form v… or v… A variable occurs free in p if it occurs in a position where it is not bound by an enclosing or Examples: x is free in x > 2 x is bound in x. x > y
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14 Can Rename Bound Variables Only When a variable is bound one can replace it with some other variable without altering the meaning of the expression, providing there are no name clashes Example: x. x > 2 is equivalent to y. y > 2 Otherwise, the variable is defined outside our “scope”…
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15 Safety Pitfall in what we have done so far – how do we interpret: { | STUDENT} Set of all binary tuples that are not students: an infinite set (and unsafe query) A query is safe if no matter how we instantiate the relations, it always produces a finite answer Domain independent: answer is the same regardless of the domain in which it is evaluated Unfortunately, both this definition of safety and domain independence are semantic conditions, and are undecidable
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16 Safety and Termination Guarantees There are syntactic conditions that are used to guarantee “safe” formulas The definition is complicated, and we won’t discuss it; you can find it in Ullman’s Principles of Database and Knowledge- Base Systems The formulas that are expressible in real query languages based on relational calculus are all “safe” Many DB languages include additional features, like recursion, that must be restricted in certain ways to guarantee termination and consistent answers
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17 Mini-Quiz How do you write: Which students have taken more than one course from the same professor?
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18 Translating from RA to DRC Core of relational algebra: , , , x, - We need to work our way through the structure of an RA expression, translating each possible form. Let TR[e] be the translation of RA expression e into DRC. Relation names: For the RA expression R, the DRC expression is { | R}
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19 Selection: TR[ R] Suppose we have (e’), where e’ is another RA expression that translates as: TR[e’]= { | p} Then the translation of c (e’) is { | p ’} where ’ is obtained from by replacing each attribute with the corresponding variable Example: TR[ #1=#2 #4>2.5 R] (if R has arity 4) is { | R x 1 =x 2 x 4 >2.5}
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20 Projection: TR[ i 1,…,i m (e)] If TR[e]= { | p} then TR[ i 1,i 2,…,i m (e)]= { | x j 1,x j 2, …, x j k.p}, where x j 1,x j 2, …, x j k are variables in x 1,x 2, …, x n that are not in x i 1,x i 2, …, x i m Example: With R as before, #1,#3 (R)={ | x 2,x 4. R}
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21 Union: TR[R 1 R 2 ] R 1 and R 2 must have the same arity For e 1 e 2, where e 1, e 2 are algebra expressions TR[e 1 ]={ |p} and TR[e 2 ]={ |q} Relabel the variables in the second: TR[e 2 ]={ |q’} This may involve relabeling bound variables in q to avoid clashes TR[e 1 e 2 ]={ |p q’}. Example: TR[R 1 R 2 ] = { | R 1 R 2
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22 Other Binary Operators Difference: The same conditions hold as for union If TR[e 1 ]={ |p} and TR[e 2 ]={ |q} Then TR[e 1 - e 2 ]= { |p q} Product: If TR[e 1 ]={ |p} and TR[e 2 ]={ |q} Then TR[e 1 e 2 ]= { | p q} Example: TR[R S]= { | R S }
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23 What about the Tuple Relational Calculus? We’ve been looking at the Domain Relational Calculus The Tuple Relational Calculus is nearly the same, but variables are at the level of a tuple, not an attribute {Q | 9 S COURSES, 9 T 2 Takes (S.cid = T.cid Æ Q.cid = S.cid Æ Q.exp-grade = T.exp-grade)}
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24 Limitations of the Relational Algebra / Calculus Can’t do: Aggregate operations Recursive queries Complex (non-tabular) structures Most of these are expressible in SQL, OQL, XQuery – using other special operators Sometimes we even need the power of a Turing- complete programming language
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25 Summary Can translate relational algebra into relational calculus DRC and TRC are slightly different syntaxes but equivalent Given syntactic restrictions that guarantee safety of DRC query, can translate back to relational algebra These are the principles behind initial development of relational databases SQL is close to calculus; query plan is close to algebra Great example of theory leading to practice!
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