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SJSU -- CmpE © 2003-2006 Dr. M. E. Fayad Database Design Dr. M.E. Fayad, Professor Computer Engineering Department, Room #283I College of Engineering San.

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Presentation on theme: "SJSU -- CmpE © 2003-2006 Dr. M. E. Fayad Database Design Dr. M.E. Fayad, Professor Computer Engineering Department, Room #283I College of Engineering San."— Presentation transcript:

1 SJSU -- CmpE © 2003-2006 Dr. M. E. Fayad Database Design Dr. M.E. Fayad, Professor Computer Engineering Department, Room #283I College of Engineering San José State University One Washington Square San José, CA 95192-0180 http://www.engr.sjsu.edu/~fayad, m.fayad@sjsu.edu

2 L1-S2 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad 2 Lesson 1: Infinite Relational Database

3 L1-S3 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad Lesson Objectives 3 Understand Infinite Relational Databases Explore the view level Understand the logical view Abstract Data Type

4 L1-S4 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad Data Abstraction- allows people to forget unimportant details –View Level – a way of presenting data to a –group of users –Logical Level – how data is understood to be when writing queries 4 Infinite Relational Databases

5 L1-S5 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad The highest level of data abstraction is the view level A view is a way of presenting data to a particular group of users. Data Presentation may depend on users preferences. Each view has to be functional for the users. This means that when designing a view we must keep in mind the functions to be preformed on the data. 5 The View Level

6 L1-S6 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad View level presentation of the data: Science, Art, or both (discussion) We will illustrate examples from different computer fields, such as computer graphics, for view level presentation of complex data, especially spatiotemporal data, such as realistic display of images and movies. 6 The View Level

7 L1-S7 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad Examples: –Charts –Graphs –Drawings –Maps –Video or Animation 7 The View Level Examples? What is a view? What is a model? What are the differences between a model and a view?

8 L1-S8 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad Example: Infinite relational data model Relation – table (Each table has a name and defines a relation) Relational scheme – top row / list of attributes (The top row of a table is called an attribute name) (The ordered set of attributes of a table is called a relation scheme.) Arity or dimension – number of attributes of a relation (We will use arity and dimension interchangeably with a preference for dimension in the case of spatiotemporal relations.) 8 The Logical Level

9 L1-S9 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad Example: Infinite relational data model Database schema – set of relation names and schemes Tuple / Point – each row below the scheme (we will use these two terms interchangeably with a preference for point in the case of spatiotemporal relations. Instance – the set of tuples in a table (Each row describes an instance of the scheme.) (Please remember a relation schemes are usually fixed while a relation instances may change over time due to database updates.) 9 The Logical Level

10 L1-S10 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad 10 Example (1) SSNWagesInterestCapital Gain 123-45-6789100,0003,4000 987-65-432183,6402,8213,400 567-89-012346,0005011,200

11 L1-S11 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad Name the relations! What is arity of each relation? What is the relation scheme of each relation? What is the database scheme? How many tupls in each of the relation? How many instances of each of these relations? 11 Example (2)

12 L1-S12 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad T or F: Relation schemes are usually fixed Relation instances change with updates Example Scheme: Taxrecord(SSN,Wages,Interest,Capital_gain) Taxtable(Income,Tax) 12 Relation schemes & Instances (1)

13 L1-S13 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad Example: Streets(Name, X, Y ) Streets contains pairs of street names and (x,y) points such that the point belongs to the street. There are an infinite number of (x, y) locations associated with each street. Example: Crops(Corn,Rye,Sunflower, Wheat) Crops contains all possible combinations of four crops that a farmer could plant. There are an infinite number of tuples in any instance of this relation. Relation schemes & Instances (2)

14 L1-S14 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad  Other examples:  Temporal Data  Spatial Data  Operations Research 14 Infinite Relational Data Model

15 L1-S15 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad In many application areas of machine learning and data mining, researchers face challenges entailed by temporal and spatial data. What are the differences between temporal and spatial data? 15 Temporal & Spatial Data

16 L1-S16 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad 16 Temporal Data Type (1) The user-defined temporal data type is a time representation specially designed to meet the specific needs of the user. For example, the designers of a database used for class scheduling in a school might be based on a "Year:Term:Day:Period" format. Terms belonging to a user-defined temporal data type get the same query language support as do terms belonging to built-in temporal data types such as the DATE data type.

17 L1-S17 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad  A temporal database is a database that supports some aspect of time, not counting user-defined time. user-defined time 17 Temporal Databases

18 L1-S18 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad  The spatiotemporal is used to indicate that the modified concept concerns simultaneous support of some aspect of time and some aspect of space, in one or more dimensions. 18 Spatiotemporal

19 L1-S19 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad Domain – range of values for an attribute. – string, integers or real numbers Scalar Domain – always a single value – (ex: string, integer or real number) Abstract data type domains – composed of scalar domains. 19 Abstract Data Types (1)

20 L1-S20 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad Example: Vertices(Cities) The domain of Cities is a set of strings. Example: Streets(Name, Extent) The domain of Extent is a set of (x,y) points. 20 Abstract Data Types (2)

21 L1-S21 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad  A database is a collection of related data.  A database management system (DBMS) is a collection of programs that enables users to create and maintain a database.  A database system = database + DBMS 21 Database Glossary (1)

22 L1-S22 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad  A database can be of any size and of varying complexity.  IRS database  Assume there are a 100 million taxpayers  Each taxpayer file has an average of 5 forms.  Each form is approx. 200 chars  Assume also that IRS keeps the past three returns for each taxpayer?  What is the size of IRS’s database? (100*(10 6 )*200*5) = 4*(10 11 ) = 400 gigabytes 22 Database Glossary (2)

23 L1-S23 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad  Self-describing nature of a database system  Database contains the database itself, the definition or description of the database structure and constraints  The definition is stored in the system catalog which contains the information, such as structure of each file, the type and storage format of each data item, and various constraints on the data.  The information stored in the catalog is called meta-data. 23 Characteristics of the Database Approach

24 L1-S24 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad  Insulation between programs and data, and data abstraction  In OO databases users can define operations on data as part of the database definitions.  An operation is called a function is specified in two parts: the interface or signature and the implementation  Data abstraction 24 Characteristics of the Database Approach

25 L1-S25 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad  Support multiple views of the data  Dealing with Raw Data  Many users = different perspectives or views of the database.  Facilities for multiple views 25 Characteristics of the Database Approach

26 L1-S26 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad  Sharing of data and multiuser transaction processing  A multiuser DBMS must allow multiple users to access the database at the same time.  Concurrency control – to ensure that several users trying to update the same data do so in a controlled manner so that the result of the updates is correct. 26 Characteristics of the Database Approach

27 L1-S27 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad  Database administrators  Database designers  End users (casual end users, naïve or parametric end users, sophisticated end users, and stand-alone user  System analysts and application programmers or software engineers 27 Actors on the Scene

28 L1-S28 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad  DBMS system designers and implementers  Tool developers  Operators and maintenance personnel 28 Worker Behind the Scene

29 L1-S29 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad  Controlling redundancy  Redundancy is storing the same data multiple times that lead to several problems: 1.Duplication of effort 2.Waste of storage space 3.Inconsistent 29 Advantages of Using DBMS (1)

30 L1-S30 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad  Restricting unauthorized access  DBMS should provide a security and authorization mechanisms which specify account restrictions.  DBMS should enforce these restrictions automatically. 30 Advantages of Using DBMS (1)

31 L1-S31 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad  Providing persistent storage for program objects and data structures  In OO Database Systems, an object said to be persistent if it survives the execution of program execution and can be later retrieved by another program.  Compatibility – OODBs offer data structure compatible with one or more OO programming languages  Traditional DB systems often suffer from the so-called impedance or mismatch problem 31 Advantages of Using DBMS (1)

32 L1-S32 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad  Permitting inferencing and actions using rules  Some database systems provide capabilities for defining deduction rules for inferencing new information from the stored database facts.  Such systems are called deductive database systems. 32 Advantages of Using DBMS (1)

33 L1-S33 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad 33 Advantages of Using DBMS (2)  Providing multiple user interfaces  Representing complex relationships among data  Enforcing integrity constraints  Providing backup and recovery

34 L1-S34 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad  Potential enforcing standards  Reducing application development time  Flexibility  Availability of up-to-date information  Economics of Scale 34 Additional Advantages of Using DBMS (2)

35 L1-S35 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad T/F: a. A view is a way of presenting data to a particular group of users. b. Any relation can be presented by multiple views c. Arity = the number of columns in the relation. d. An instance = any row of a relation e. Spatial database is a database that supports some aspect of time, not counting f. Spatial data in the form of two- or three-dimensional images. g. Spatial data is any information about the location and shape of, and relationships among, geographic features. This includes remotely sensed data as well as map data. 35 Discussion Questions

36 L1-S36 Infinite R-DB © 2003-2006 Dr. M. E. Fayad SJSU – CmpE M.E. Fayad Task 1: Data Modeling Using Entity- Relationship Model 36 Tasks for Next Lecture


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