1 / 49

XML und Data Management - Introduction -

XML und Data Management - Introduction -. Hachim Haddouti Al Akhawayn University SSE H.Haddouti@alakhawayn.ma http://mail.alakhawayn.ma/~H.Haddouti. Table of Conetnt. Intro Motivation Semi structured data Why do we need semistructured data? What is semistructured data?. Motivation.

deo
Télécharger la présentation

XML und Data Management - Introduction -

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. XML und Data Management - Introduction - Hachim Haddouti Al Akhawayn University SSE H.Haddouti@alakhawayn.ma http://mail.alakhawayn.ma/~H.Haddouti

  2. Table of Conetnt • Intro • Motivation • Semi structured data • Why do we need semistructured data? • What is semistructured data?

  3. Motivation • Some data really is unstructured • Examples: • World Wide Web • Data exchange formats • Data Integration

  4. Motivation - Web • Why do we want to treat the Web as a database? • Maintain integrity • Query based on structure (as opposed to content) • Introduce some “organization” • However, Web has no structure, refer to it as enormous graph • Some people claim database research community missed the boat when it comes to the World Wide Web

  5. Motivation – Data Formats • Much (most?) of the world’s data is in data formats • Formats defined for interchange and archiving of data • Formats vary in generality • ASN.1, EDI quite general • Scientific data formats tend to be “fixed schema” • Textual representation given by data formats not immediately translatable into standard relation/object-oriented representation

  6. ASN.1 • Abstract Syntax Notation number One (ASN.1) • International standard that aims at specifying data used in communication protocols • e.g., format for transporting data between two layers of a network operating system • Now used for storing bibliographic and genetic data • Want more, go to www.asn1.elibel.tm.fr/en/introduction/

  7. Sample ASN.1 Module Module-order DEFINITIONSAUTOMATICTAGS ::= BEGIN Order ::= SEQUENCE { header Order-header, items SEQUENCEOF Order-line } Order-header ::= SEQUENCE { reference NumericString (SIZE (12)), date NumericString (SIZE (8)) -- MMDDYYYY --, client Client, payment Payment-method } Client ::= SEQUENCE { name PrintableString (SIZE (1..20)), street PrintableString (SIZE (1..50)) OPTIONAL, postcode NumericString (SIZE (5)), town PrintableString (SIZE (1..30)), country PrintableString (SIZE (1..20)) DEFAULT "France" } Payment-method ::= CHOICE { check NumericString (SIZE (15)), credit-card Credit-card, cash NULL } Credit-card ::= SEQUENCE { type Card-type, number NumericString (SIZE (20)), expiry-date NumericString (SIZE (6)) -- MMYYYY -- } Card-type ::= ENUMERATED {cb(0), visa(1), eurocard(2), diners(3), american-express(4)} -- etc END

  8. EDI • EDI = Electronic Data Interchange • Provides a collection of standard message formats and element dictionary to support exchange of data via any electronic messaging service

  9. Sample EDI Invoice File ISA~00~ ~00~ ~ZZ~YOUR COMM-ID ~14~SLKP COMM-ID ~000227~1053~U~00401~000000012~0~P~> GS~IN~YOUR COMM-ID~SLKP COMM-ID~20000227~1053~3~X~004010 ST~810~0001 BIG~19991118~001001~19990926~11441~~~DR N1~RE~REMIT COMPANY, INC~92~002377703 N3~P.O. BOX 111 N4~ANYTOWN~NC~27106 N1~ST~SARA LEE FOOTWEAR N3~SHIPPING STREET N4~OUR TOWN~PA~17855 N1~BT~SARA LEE FOOTWEAR~92~10 N3~470 W. HANES MILL RD N4~WINSTON SALEM~NC~27105 ITD~05~3~~~~~60 DTM~011~19991118 IT1~0001~1470~YD~2~~BP~BUYERPART PID~F~~~~Square Rubber Hose TDS~294000 ISS~1470~YD CTT~1~1470 SE~19~0001 GE~1~3 IEA~1~000000012

  10. Motivation - Browsing • To query database, one needs to understand schema • Schemas may be hard to understand, users may want to start by querying data with little or no knowledge of schema • Where in database is string “Casablanca”? • Are there integers in database greater than 216? • What objects in db have attribute name that starts with “act”? • Some extensions to relational query languages have been proposed for such queries

  11. Motivation – Integration of Heterogeneous Data • With the growing amount of information distributed in multiple sources, comes an increased need for tools and algorithms to provide integrated, unified interface to information • Information integration is another application which calls for flexible, dynamic, self-describing data model

  12. Content from Multiple Sources …and, if possible, is a preferred supplier 3rd partycontent Who offers the cheapest 10+ Nm motor, matching with my XYZ123 drive, operating <12V, available within 2 days ? Supplier Information Supplier Supplier Product Catalog Pricing Delivery Product Catalog ERP (P + D)

  13. Supply Chain Management Sales Pipeline Info Expected Supplies Outstanding Customer Orders Product Returns Flaky Inc.’s shipment is coming two days later than needed… Given the state of our inventory, expected orders, identity (and value) of customers, and pricing and delivery options, how can we satisfy our best customer at the price we promised them? Credible Inc. Flaky Inc. Shipments to ACME Shipments to ACME Pricing & Delivery

  14. World Wide Web … Or Viewed in Different Terms Personal Databases “Heterogeneities are everywhere” Scientific Databases Digital Libraries • Different interfaces • Different data representations • Duplicate and inconsistent information

  15. Integration System World Wide Web Integrated View of Heterogeneous Data Personal Databases Digital Libraries Scientific Databases • Collects and combines information • Provides integrated view, uniform user interface • Supports sharing

  16. World of Data Access and Integration Servers • Provide to the eBusiness application unified access to the data sources • Data of multiple sources appear as if they come from one (potentially virtual) database • as ubiquitous as application servers • Driven by initiatives in • Customer Relationship Management • Supply Chain Management • eCommerce and eContent • Business Intelligence and Warehousing

  17. Wrapper Wrapper Wrapper Information Source Information Source Most-Generic Integration System Architecture Clients Integrator . . . . . . Information Source

  18. How Do We Represent Data in the Integration System? • Relational Data Model • Set of rows and columns • Fixed set of simple data types • Data cube • Specialized warehouse management system • Uses a single, multi-dimensional relation as model • Neither!! Both models are too rigid to accommodate heterogeneous data from multiple sources

  19. Bottom Line • We need a bridge between the repositories where the data resides (e.g., data warehouse, transactional databases) and where it is used (Web interface, business application) • Data model that allows for the exchange of data with structure • Relaxes the strictures of existing, highly structured database systems

  20. New Data Model:Semistructured Data Model

  21. Semistructured Data: Particularities (1) • Structure is irregular – data heterogeneities • Pieces of data missing • Extra information is recorded (annotations) • Type variations (Dollars/Euros – Address) • Structure may be implicit • Often in files: text + grammar (e.g., SGML) • Need to parse – structuring may be hidden

  22. Semistructured Data: Particularities (2) • Structure may be partial • Parts of data lack structure (e.g., images) • Some data may yield little structure (e.g., plain text) • Types are only indicative • Unlike databases, some sources may not have strict typing policy

  23. Semistructured Data: Particularities (3) • A-priori schema vs. a-posteriori: • Database: Fix schema, then populate • Web: design a lot of Web pages, then define schema to facilitate access • Schema is large • Schema often ignored in queries • IR queries and browsing

  24. Semistructured Data: Particularities (4) • Schema is rapidly evolving • Data element type is eclectic • Structure of a piece of information may depend on point of view • e.g., Person object contains, name, address, phone as strings and picture as gif file

  25. Example {name: “Alan”, tel: 2157786, email: “agb@abc.com”} {name: {first: “Alan”, last: “Black”}, tel: 2157786, email: “agb@abc.com” } • Different from usual tuples in that we allow duplicates: {name: “Alan”, tel: 2157786, tel: 2159989, email: “agb@abc.com”}

  26. Graph Representation node name email tel edges email name 2157786 “agb@abc.com” tel first last “Alan” 2157786 “agb@abc.com” “Alan” “Black”

  27. Example • Possible to describe sets of tuples: {person: {name: “Alan”, tel: 2157786, email: “agb@abc.com”}, person: {name: “Sara”, tel: 2344381, email: “srb@math.edu”}, person: {name: “Fred”, tel: 7767546, email: “fht@pto.org”} }

  28. Example – Variations in Structure • Possible to describe sets of heterogeneous tuples: {person: {name: “Alan”, phone: 2157786, email: “agb@abc.com”}, person: {name: {first: “Sara”, last: “Green”}, tel: 2344381, email: srb@math.edu }, person: {name: “Fred”, tel: 7767546, height: 6’4”} }

  29. Base Types • Numbers: (1234, 45, 4532, …) • Strings: (“Alan”, “ssdrf”, “agb@abc.com”, …) • Labels: (name, email, …) • Distinguishable by syntax • Other types such as gif, date, wav, etc. can be added as needed • Each value has a tag that indicates its type and possibly an encoding • Most data formats have their own tagging

  30. Representing Relational Databases • Relational schema r1(a,b,c) and r2(c,d) • r1 and r2 are relations, • a, b, c, d column names • Instance is some data that conforms to this specification • Usually depicted as rows in table

  31. Pictorially r1 r2 a b c c d a1 b1 c1 c2 d1 a2 b2 c2 c3 d2 a3 b3 c3 c4 d3

  32. Self-describing Approach • Using our new model and syntax, we can describe the whole database formally as: {r1: i1, r2: i2}, where i1 and i2 are sets of rows {r1: {row: {a: a1, b: b1, c: c1}, row: {a: a2, b: b2, c: c2}, row: {a: a3, b: b3, c: c3} }, r2: {row: {c: c2, d: d2}, {row: {c: c3, d: d3}, {row: {c: c4, d: d4} } }

  33. Other Representations r2 r1 row row row row row row c d c d a c a c c d a c b b b c4 d4 c2 d2 c3 d3 a3 b3 c3 a1 b1 c1 a2 b2 c2

  34. Other Representations r1 r1 r1 r2 r2 r2 c d c d a c a c c d a c b b b c4 d4 c2 d2 c3 d3 a3 b3 c3 a1 b1 c1 a2 b2 c2

  35. The Object Exchange Model (OEM) • Common model for heterogeneous information exchange, “schema-less” • Each object: OID Label Type Value • OID= unique identifier or NULL • Label=character string descriptor • Type=atomic data type or set • Value=atomic value or set of object references • “Help pages” for labels • Two query languages

  36. OEM • Provides: • Flexibility: rigid domain models not needed for those software components which do not require one • Extensibility: information servers can use whatever information is available and can rapidly make its knowledge available on an experimental basis • Stability: the structure of the information remains stable even as new information is added • Removes dependencies on compile-time object definitions

  37. Representing Semistructured Data Using OEM Set Value Label <book, {t1, a1}> t1: <title, “Database and ...”> a1: <author, “Jeff Ullman”> Memory Addresses Atomic Value

  38. Representing Semistructured Data Using OEM <collection, {b1, a1, ...}> b1: <book, {t, a}> t: <title, “Database and ...”> a: <author, {n, p}> n: <name, “Jeff Ullman”> p: <picture, “/gifs/ullman.gif”> a1: <article, {v, w, x}> v: <author, “Gio Wiederhold”> w: <title, “Mediators in the …”> x: <journal, “IEEE Computer”> ...

  39. Example: ACeDB • ACeDB (a C. elegans Database) • Genome database system developed since 1989 primarily by Jean Thierry-Mieg (CNRS, Montpellier) and Richard Durbin (Sanger Institute) • Provides custom database kernel, with non-standard data model designed specifically for handling scientific data flexibly • AceDB is used both for managing data within genome projects, and for making genomic data available to the wider scientific community. • Popular with biologists for its flexibility and ability to accommodate missing data • Underlying data model is quite general

  40. Sample AceDB Schema ?person name firstname UNIQUE Text - at most one first name lastname UNIQUE Text - at most one last name tel Int - several numbers ?book authors ?person - set of persons title UNIQUE Text - at most one title chapter-headings Int UNIQUE Text - array of strings …

  41. Sample ACeDB Data &ASmith person name firstname “Alan” - ASmith is key/OID lastname “Smith” &JMiller person name firstname “Janet” lastname “Miller” &LH17.23.15 authors &ASmith &JMiller title “A Very Very Brief History of Time” chapter-headings 1 “The Beginning” chapter-headings 2 “The Middle” chapter-headings 3 “The End” …

  42. Is ACeDB Semistructured? • Any label other then top identifier can be missing • OID’s provided by user • ACeDB requires schema, but data may be missing, no strong typing (labels instead)

  43. Proposal for Generic SS Data Syntax • Semistructured data expressions: ssd-expressions • Standard syntax for labels and for atomic values • Object identifiers start with ampersand, e.g., &123 <ssd-expression>::= <value> | oid<value>|oid <value>::= atomicvalue | <complexvalue> <complexvalue>::= {label:<ssd-expression>, … , label:<ssd-expression>}

  44. Example {person: &o1{name: “Mary”, age: 45, child: &o2, child: &o3 }, person: &o2{name: “John”, age: 17, relatives: {mother: &o1, sister: &o3} }, person: &o3{name: “Jane”, country: Canada, mother: &o1 } }

  45. Pictorially (edge-labeled graph) person person person child child &o1 &o2 &o3 mother name name age country name age relatives “Mary” 45 17 “Jane” “Canada” “John” mother sister

  46. Terminology • Terminology used to describe semistructured data is that of basic graph theory

  47. Basic Graph Theory • Graph (N,E) set of nodes N and set of edges E • Each edge e is associated with a pair of nodes, source node s(e) and target node t(e) • Path is a sequence e1, e2, … , ek edges such that t(ei) = s(ei+1), 1  i  k-1 • Number of edges in path is length • Node r is root for graph (N,E) if there is a path from r to n for every node in N, n  r • A cycle in a graph is a path between a node and itself • Graph with no cycles is acyclic • A rooted graph is s tree if there is a unique path from r to n for every n  N, nr

  48. Sample Graphs Directed graph with cycle and no root Tree

  49. Summary Def.: Semistructured data model Is a syntax for data with no separate syntax for types, i.e., data that has no separate schema language or data definition language. • Data graph vs ssd-expressions • Our semistructured data model is that of an edge-labeled graph • Each edge has a label

More Related