2008.09.11 - SLIDE 1IS 257 – Fall 2008 Database Design: Logical Models: Normalization and The Relational Model University of California, Berkeley School.

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SLIDE 1IS 257 – Fall 2008 Database Design: Logical Models: Normalization and The Relational Model University of California, Berkeley School of Information IS 257: Database Management

SLIDE 2IS 257 – Fall 2008 Announcements I will be away next week Instead we will have an informal workshop to work on issues of choosing and designing your personal Databases –Johnathan Hicks & Shanna Epstein have agreed to lead the discussion and to describe their previous work as Database Administrators –We will put up more information on the class web site linked from the schedule page

SLIDE 3IS 257 – Fall 2008 Lecture Outline Review –Conceptual Model and UML Logical Model for the Diveshop database Normalization Relational Advantages and Disadvantages

SLIDE 4IS 257 – Fall 2008 Lecture Outline Review –Conceptual Model and UML Logical Model for the Diveshop database Normalization Relational Advantages and Disadvantages

SLIDE 5IS 257 – Fall 2008 Class Diagrams A class diagram is a diagram that shows a set of classes, interfaces, and/or collaborations and the relationships among these elements.

SLIDE 6IS 257 – Fall 2008 UML Class Diagram DIVEORDS Order No Customer No Sale Date Shipvia PaymentMethod CCNumber No of People Depart Date Return Date Destination Vacation Cost CalcTotalInvoice() CalcEquipment() Class Name List of Attributes List of operations

SLIDE 7IS 257 – Fall 2008 Object Diagrams 307:DIVORDS Order No = 307 Customer No = 1480 Sale Date = 9/1/99 Ship Via = UPS PaymentMethod = Visa CCNumber = CCExpDate = 1/1/01 No of People = 2 Depart Date = 11/8/00 Return Date = 11/15/00 Destination = Fiji Vacation Cost = 10000

SLIDE 8IS 257 – Fall 2008 Associations An association is a relationship that describes a set of links between or among objects. An association can have a name that describes the nature of this relationship. You can put a triangle next to this name to indicate the direction in which the name should be read.

SLIDE 9IS 257 – Fall 2008 Associations: Unary relationships Person Is-married-to 0..1 Employee manages * 0..1 manager

SLIDE 10IS 257 – Fall 2008 Associations: Binary Relationship Employee Parking Place One-to-one Is-assigned0..1 Product Line Product One-to-many contains1 * StudentCourse Many-to-many Registers-for* *

SLIDE 11IS 257 – Fall 2008 Associations: Ternary Relationships VendorWarehouse * * Supplies Part *

SLIDE 12IS 257 – Fall 2008 Association Classes StudentCourse Registers-for * * Registration ________________ Term Grade ________________ CheckEligibility() Computer Account _________________ acctID Password ServerSpace *0..1 issues

SLIDE 13IS 257 – Fall 2008 Derived Attributes, Associations, and Roles Student _________ name ssn dateOfBirth /age Course Offering ____________ term section time location Registers-for * 1 Course ____________ crseCode crseTitle creditHrs * * Scheduled-for {age = currentDate – dateOfBirth} * * /Takes /participant Derived attribute Derived role Derived association

SLIDE 14IS 257 – Fall 2008 Generalization Salaried Employee _______________ AnnualSalary stockoption _______________ Contributepension() Employee ____________ empName empNumber address dateHired ____________ printLabel() Hourly Employee _______________ HourlyRate _______________ computeWages() Consultant _______________ contractNumber billingRate _______________ computeFees() employee type employee type employee type

SLIDE 15IS 257 – Fall 2008 Lecture Outline Review –Conceptual Model and UML Logical Model for the Diveshop database Normalization Relational Advantages and Disadvantages

SLIDE 16IS 257 – Fall 2008 Database Design Process Conceptual Model Logical Model External Model Conceptual requirements Conceptual requirements Conceptual requirements Conceptual requirements Application 1 Application 2Application 3Application 4 Application 2 Application 3 Application 4 External Model External Model External Model Internal Model

SLIDE 17IS 257 – Fall 2008 Logical Model: Mapping to a Relational Model Each entity in the ER Diagram becomes a relation. A properly normalized ER diagram will indicate where intersection relations for many-to-many mappings are needed. Relationships are indicated by common columns (or domains) in tables that are related. We will examine the tables for the Diveshop derived from the ER diagram

SLIDE 18IS 257 – Fall 2008 DiveShop ER Diagram Customer No ShipVia Dest Sites BioSite ShipVia ShipWrck BioLife DiveStok DiveItem DiveOrds DiveCust Customer No ShipVia Order No Order No Item No Item No Destination Name Destination Species No Site No Destination no Site No Destination no Species No Site No /n 1 1n n n n n n n n 1

SLIDE 19IS 257 – Fall 2008 Customer = DIVECUST

SLIDE 20IS 257 – Fall 2008 Dive Order = DIVEORDS

SLIDE 21IS 257 – Fall 2008 Line item = DIVEITEM

SLIDE 22IS 257 – Fall 2008 Shipping information = SHIPVIA

SLIDE 23IS 257 – Fall 2008 Dive Equipment Stock= DIVESTOK

SLIDE 24IS 257 – Fall 2008 Dive Locations = DEST

SLIDE 25IS 257 – Fall 2008 Dive Sites = SITE

SLIDE 26IS 257 – Fall 2008 Sea Life = BIOLIFE

SLIDE 27IS 257 – Fall 2008 BIOSITE -- linking relation

SLIDE 28IS 257 – Fall 2008 Shipwrecks = SHIPWRK

SLIDE 29IS 257 – Fall 2008 Mapping to Other Models Hierarchical –Need to make decisions about access paths Network –Need to pre-specify all of the links and sets Object-Oriented –What are the objects, datatypes, their methods and the access points for them Object-Relational –Same as relational, but what new datatypes might be needed or useful (more on OR later)

SLIDE 30IS 257 – Fall 2008 Lecture Outline Review Logical Model for the Diveshop database Normalization Relational Advantages and Disadvantages

SLIDE 31IS 257 – Fall 2008 Normalization Normalization theory is based on the observation that relations with certain properties are more effective in inserting, updating and deleting data than other sets of relations containing the same data Normalization is a multi-step process beginning with an “unnormalized” relation –Hospital example from Atre, S. Data Base: Structured Techniques for Design, Performance, and Management.

SLIDE 32IS 257 – Fall 2008 Normal Forms First Normal Form (1NF) Second Normal Form (2NF) Third Normal Form (3NF) Boyce-Codd Normal Form (BCNF) Fourth Normal Form (4NF) Fifth Normal Form (5NF)

SLIDE 33IS 257 – Fall 2008 Normalization Boyce- Codd and Higher Functional dependency of nonkey attributes on the primary key - Atomic values only Full Functional dependency of nonkey attributes on the primary key No transitive dependency between nonkey attributes All determinants are candidate keys - Single multivalued dependency

SLIDE 34IS 257 – Fall 2008 Unnormalized Relations First step in normalization is to convert the data into a two-dimensional table In unnormalized relations data can repeat within a column

SLIDE 35IS 257 – Fall 2008 Unnormalized Relation

SLIDE 36IS 257 – Fall 2008 First Normal Form To move to First Normal Form a relation must contain only atomic values at each row and column. –No repeating groups –A column or set of columns is called a Candidate Key when its values can uniquely identify the row in the relation.

SLIDE 37IS 257 – Fall 2008 First Normal Form

SLIDE 38IS 257 – Fall NF Storage Anomalies Insertion: A new patient has not yet undergone surgery -- hence no surgeon # -- Since surgeon # is part of the key we can’t insert. Insertion: If a surgeon is newly hired and hasn’t operated yet -- there will be no way to include that person in the database. Update: If a patient comes in for a new procedure, and has moved, we need to change multiple address entries. Deletion (type 1): Deleting a patient record may also delete all info about a surgeon. Deletion (type 2): When there are functional dependencies (like side effects and drug) changing one item eliminates other information.

SLIDE 39IS 257 – Fall 2008 Second Normal Form A relation is said to be in Second Normal Form when every nonkey attribute is fully functionally dependent on the primary key. –That is, every nonkey attribute needs the full primary key for unique identification

SLIDE 40IS 257 – Fall 2008 Second Normal Form

SLIDE 41IS 257 – Fall 2008 Second Normal Form

SLIDE 42IS 257 – Fall 2008 Second Normal Form

SLIDE 43IS 257 – Fall NF Storage Anomalies Removed Insertion: Can now enter new patients without surgery. Insertion: Can now enter Surgeons who haven’t operated. Deletion (type 1): If Charles Brown dies the corresponding tuples from Patient and Surgery tables can be deleted without losing information on David Rosen. Update: If John White comes in for third time, and has moved, we only need to change the Patient table

SLIDE 44IS 257 – Fall NF Storage Anomalies Insertion: Cannot enter the fact that a particular drug has a particular side effect unless it is given to a patient. Deletion: If John White receives some other drug because of the penicillin rash, and a new drug and side effect are entered, we lose the information that penicillin can cause a rash Update: If drug side effects change (a new formula) we have to update multiple occurrences of side effects.

SLIDE 45IS 257 – Fall 2008 Third Normal Form A relation is said to be in Third Normal Form if there is no transitive functional dependency between nonkey attributes –When one nonkey attribute can be determined with one or more nonkey attributes there is said to be a transitive functional dependency. The side effect column in the Surgery table is determined by the drug administered –Side effect is transitively functionally dependent on drug so Surgery is not 3NF

SLIDE 46IS 257 – Fall 2008 Third Normal Form

SLIDE 47IS 257 – Fall 2008 Third Normal Form

SLIDE 48IS 257 – Fall NF Storage Anomalies Removed Insertion: We can now enter the fact that a particular drug has a particular side effect in the Drug relation. Deletion: If John White recieves some other drug as a result of the rash from penicillin, but the information on penicillin and rash is maintained. Update: The side effects for each drug appear only once.

SLIDE 49IS 257 – Fall 2008 Boyce-Codd Normal Form Most 3NF relations are also BCNF relations. A 3NF relation is NOT in BCNF if: –Candidate keys in the relation are composite keys (they are not single attributes) –There is more than one candidate key in the relation, and –The keys are not disjoint, that is, some attributes in the keys are common

SLIDE 50IS 257 – Fall 2008 Most 3NF Relations are also BCNF – Is this one?

SLIDE 51IS 257 – Fall 2008 BCNF Relations

SLIDE 52IS 257 – Fall 2008 Fourth Normal Form Any relation is in Fourth Normal Form if it is BCNF and any multivalued dependencies are trivial Eliminate non-trivial multivalued dependencies by projecting into simpler tables

SLIDE 53IS 257 – Fall 2008 Fifth Normal Form A relation is in 5NF if every join dependency in the relation is implied by the keys of the relation Implies that relations that have been decomposed in previous NF can be recombined via natural joins to recreate the original relation.

SLIDE 54IS 257 – Fall 2008 Effectiveness and Efficiency Issues for DBMS Focus on the relational model Any column in a relational database can be searched for values. To improve efficiency indexes using storage structures such as BTrees and Hashing are used But many useful functions are not indexable and require complete scans of the the database

SLIDE 55IS 257 – Fall 2008 Example: Text Fields In conventional RDBMS, when a text field is indexed, only exact matching of the text field contents (or Greater-than and Less- than). –Can search for individual words using pattern matching, but a full scan is required. Text searching is still done best (and fastest) by specialized text search programs (Search Engines) that we will look at more later.

SLIDE 56IS 257 – Fall 2008 Normalization Normalization is performed to reduce or eliminate Insertion, Deletion or Update anomalies. However, a completely normalized database may not be the most efficient or effective implementation. “Denormalization” is sometimes used to improve efficiency.

SLIDE 57IS 257 – Fall 2008 Normalizing to death Normalization splits database information across multiple tables. To retrieve complete information from a normalized database, the JOIN operation must be used. JOIN tends to be expensive in terms of processing time, and very large joins are very expensive.

SLIDE 58IS 257 – Fall 2008 Downward Denormalization Customer ID Address Name Telephone Order Order No Date Taken Date Dispatched Date Invoiced Cust ID Before: Customer ID Address Name Telephone Order Order No Date Taken Date Dispatched Date Invoiced Cust ID Cust Name After:

SLIDE 59IS 257 – Fall 2008 Upward Denormalization Order Order No Date Taken Date Dispatched Date Invoiced Cust ID Cust Name Order Price Order Item Order No Item No Item Price Num Ordered Order Order No Date Taken Date Dispatched Date Invoiced Cust ID Cust Name Order Item Order No Item No Item Price Num Ordered

SLIDE 60IS 257 – Fall 2008 Denormalization Usually driven by the need to improve query speed Query speed is improved at the expense of more complex or problematic DML (Data manipulation language) for updates, deletions and insertions.

SLIDE 61IS 257 – Fall 2008 Using RDBMS to help normalize Example database: Cookie Database of books, libraries, publisher and holding information for a shared (union) catalog

SLIDE 62IS 257 – Fall 2008 Cookie relationships

SLIDE 63IS 257 – Fall 2008 Cookie BIBFILE relation

SLIDE 64IS 257 – Fall 2008 How to Normalize? Currently no way to have multiple authors for a given book, and there is duplicate data spread over the BIBFILE table Can we use the DBMS to help us normalize? Access example…

SLIDE 65IS 257 – Fall 2008 Database Creation in Access Simplest to use a design view –wizards are available, but less flexible Need to watch the default values Helps to know what the primary key is, or if one is to be created automatically –Automatic creation is more complex in other RDBMS and ORDBMS Need to make decision about the physical storage of the data

SLIDE 66IS 257 – Fall 2008 Database Creation in Access Some Simple Examples

SLIDE 67IS 257 – Fall 2008 Lecture Outline Review Logical Model for the Diveshop database Normalization Relational Advantages and Disadvantages

SLIDE 68IS 257 – Fall 2008 Advantages of RDBMS Relational Database Management Systems (RDBMS) Possible to design complex data storage and retrieval systems with ease (and without conventional programming). Support for ACID transactions –Atomic –Consistent –Independent –Durable

SLIDE 69IS 257 – Fall 2008 Advantages of RDBMS Support for very large databases Automatic optimization of searching (when possible) RDBMS have a simple view of the database that conforms to much of the data used in business Standard query language (SQL)

SLIDE 70IS 257 – Fall 2008 Disadvantages of RDBMS Until recently, no real support for complex objects such as documents, video, images, spatial or time-series data. (ORDBMS add -- or make available support for these) Often poor support for storage of complex objects from OOP languages (Disassembling the car to park it in the garage) Usually no efficient and effective integrated support for things like text searching within fields (MySQL does have simple keyword searching now with index support)

SLIDE 71IS 257 – Fall 2008 Next Week Database Design Workshop Check web site for more info