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1 CSE544 Monday April 26, 2004. 2 Announcements Project Milestone –Due today Next paper: On the Unusual Effectiveness of Logic in Computer Science –Need.

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Presentation on theme: "1 CSE544 Monday April 26, 2004. 2 Announcements Project Milestone –Due today Next paper: On the Unusual Effectiveness of Logic in Computer Science –Need."— Presentation transcript:

1 1 CSE544 Monday April 26, 2004

2 2 Announcements Project Milestone –Due today Next paper: On the Unusual Effectiveness of Logic in Computer Science –Need to read only up to section 3 –Review due on Wednesday –It’s very short; review should be similar :)

3 3 XML Storage Shanmugasundaram’s paper: Shred XML data  relations –Easy: use the DTD Translate XML queries  SQL queries –Largely ignored in the paper Tagging –SQL tuple streams  XML –How do we do that ?

4 4 XML Storage Other ways: Schema independent shredding BLOBs Use an object storage system

5 5 OO Databases Started late 80’s –The OO Manifesto Main idea: –Toss the relational model ! –Use the OO model – e.g. C++ classes

6 6 OO Databases Two interpretations: Make a programming language persistent (ObjectStore) –No query language –Niche market –ObjectStore is still around, renamed to Exelon, stores XML objects now Build a new database from scratch (O 2 ) –Elegant extension of SQL –Later adopted by ODMG in the OQL language

7 7 ODL / OQL interface Student extends Person (extent Students) { attribute string major; relationship Set takes inverse stds;} interface Person (extent People key ssn) { attribute string ssn; attribute string dept; attribute string name;} interface Course (extent Crs key cid) { attribute string cid; attribute string cname; relationship Person instructor; relationship Set stds inverse takes;}

8 8 Same in E/R isa Student Course Takes Person Instructor

9 9 ODL / OQL select S.name from Students S, S.takes C where C.instructor.dept = ‘EE’ select C.name from Crs C where C.instructor.dept = ‘EE’ Is this more efficient than joins? Follow pointers instead of joins

10 10 Object-Relational (OR) Databases Take an incremental approach Keep the relational model, but allow attributes of complex types –Inheritance –Pointers –Methods (a security nightmare) All major commercial databases today are OR Trend: XML datatype

11 11 Theory Recall: relational databases invented by a theoretician (Codd) Fundamental principle: separate the WHAT from the HOW - data independence WHAT: First Order Logic (FO) HOW: Relational algebra (RA)

12 12 Given: A vocabulary: R 1, …, R k An arity, ar(R i ), for each i=1,…,k An infinite supply of variables x 1, x 2, x 3, … Constants: c 1, c 2, c 3,... FO Syntax

13 13 Terms (t) and FO formulas (  ) are: FO Syntax t ::= x | c  ::= R(t 1,..., t ar(R) ) | t i = t j |    ’ |    ’ |  ’ |  x.  |  x.  t ::= x | c  ::= R(t 1,..., t ar(R) ) | t i = t j |    ’ |    ’ |  ’ |  x.  |  x. 

14 14 FO Examples 1 2 4 3 Most interesting case: Vocabulary = one binary relation R (encodes a graph) 12 21 23 14 34 R=

15 15 FO Sentences Does there exists a loop in the graph ? Are there paths of length >2 ? Is there a “sink” node ?    x.R(x,x)    x.  y.  z.  u.(R(x,y)  R(y,z)  R(z,u))    x.  y.R(x,y)

16 16 FO Queries Find all nodes connected by a path of length 2: Find all nodes without outgoing edges:  (x,y)   u.(R(x,u)  R(u,y))  (x)   u.(R(u,x)   y.  R(x,y) These are open formulas

17 17 In Class Retrieve all nodes with at least two children A node x is more important than y if every child of y is also a child of x. Retrieve all ‘most important nodes’ in the graph

18 18 FO in Databases FODatabases Vocabulary: R 1,..., R n Database schema: R 1,..., R n Model: D = (D, R 1 D, …, R k D ) Database instance: D = (D, R 1 D, …, R k D ) Sentences are true or false Formulas compute queries

19 19 FO Semantics In FO we express WHAT we want Sometimes it’s even unclear HOW to get it See accompanying slides on FO semantics –They explain HOW to get it, but it’s impractical

20 20 Relational Algebra An algebra over relations Five operators: , -, , ,  Meaning: R 1  R 2 = set union R 1 - R 2 = set difference R 1  R 2 = cartesian product  c (R) = subset of tuples satisfying condition c  a (R) = projection on the attributes in a R 1  R 2 = set union R 1 - R 2 = set difference R 1  R 2 = cartesian product  c (R) = subset of tuples satisfying condition c  a (R) = projection on the attributes in a

21 21 FO  RA  (x)  R(x,x)  1 (  1=2 (R))  (x,y)   z.  u.(R(x,z)  R(z,u)  R(u,y))  16 (  2=3  4=5 (R  R  R))    (x)   y.R(x,y)  ?  16 ((R join 2=1 R) join 4=1 R)) WHAT  HOW

22 22 FO v.s. RA Theorem. Every query in RA can be expressed in FO Proof This shows how to go from HOW to WHAT not very interesting What about the converse ?

23 23 The Drinkers/Beers Example Vocabulary: Find all drinkers that frequent some bar that serve some beer that they like: Likes(drinker,beer), Serves(bar,beer), Frequents(drinker,bar)  (d)   ba.  be.(F(d,ba)  L(d,be))

24 24 Lots of Fun Examples (in class) Find drinkers that frequent some bar that serves only beer they like Find drinkers that frequent only bars that serve some beer they like Find drinkers that frequent only bars that serve only beer they like

25 25 Unsafe FO Queries Find all nodes that are not in the graph: what’s wrong ?

26 26 Unsafe FO Queries Find all nodes that are connected to “everything”: what’s wrong ?

27 27 Unsafe FO Queries Find all pairs of employees or offices: what’s wrong ? We don’t want such queries !

28 28 Safe Queries A model D = (D, R 1 D, …, R k D ) In FO: –both D and R 1 D, …, R k D may be infinite In databases: –D may infinite (int, string, etc) –R 1 D, …, R k D are always finite –We call this a finite model

29 29 Safe Queries  is a finite query if for every finite model D,  (D) is finite  is safe, or domain independent, if for every two models D, D’ having the same relations: D = (D, R 1 D, …, R k D ), D’ = (D’, R 1 D, …, R k D ) we have  (D) =  (D’) If  is safe then it is also finite (why ?) Note: book has different but equivalent definition

30 30 Safe Queries Definition. Given D = (D, R 1 D, …, R k D ), the active domain is D a = the set of all constants in R 1 D, …, R k D Example. Given a graph D = (D, R) D a = { x |  y.R(x,y)   z.R(z,x)} Property. If a query is safe, it suffices to range quantifiers only over the active domain (why ?) Hence we can compute safe queries

31 31 Safe Queries The safe relational calculus consists only of safe queries. However: Theorem It is undecidable if a given a FO query is safe. Need to write only safe queries, but how do we know how which queries are safe ? Work around: write them in an obviously safe way –Range restricted queries - formally defined in [AHU]

32 32 FO v.s. RA Theorem. Every safe query in FO can be expressed in RA Proof From WHAT to HOW this is really interesting and motivated the relational model

33 33 Limited Expressive Power Vocabulary: binary relation R The following queries cannot be expressed in FO: Transitive closure: –  x.  y. there exists x 1,..., x n s.t. R(x,x 1 )  R(x 1,x 2 ) ...  R(x n-1,x n )  R(x n,y) Parity: the number of edges in R is even


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