Transcript Database
Database and Data Warehouse
June 27, 2012
LEARNING GOALS
• Explain basic concepts of data management.
• Describe traditional file systems and identify
their problems.
• Define database management systems and
describe their various functions.
• Explain how the relational database model
works.
• Explain Object-Oriented databases.
• Explain Data Warehouse, Data Mart
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What is a database?
• Collection of related files containing records
on people, places, or things.
• Databases make data easy to access and
manage.
Customers Info
Accounts Info
Access and Management tools
Employees Info
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Basic Concepts of Data Management
Table 1
Table 2
Form 1
Acc #:_______
Name:_______
Table 3
Report
Database:
Collection of data
organized in
different
containers
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Basic Concepts of Database systems
Accounts table
AccountID
Customer
Type
Balance
660001
John Smith
Checking
$120.00
660002
Linda Martin
Saving
$9450.00
660003
Paul Graham
Checking
$3400.00
Each table has:
Fields
Records
1 Primary key
• Table
– Two-dimensional structure composed of rows and columns
• Field
– Like a column in a spreadsheet
• Field name
– Like a column name in a spreadsheet
– Examples: AccountID, Customer, Type, Balance
• Field values
– Actual data for the field
• Record
– Set of fields that describe an entity (a person, an account, etc.)
• Primary key
– A field, or group of fields, that uniquely identifies a record
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Basic Concepts in Data Management
• A Primary key could be a single field like in these tables
Primary key
AccountID
Customer
Type
Balance
660001
John Smith
Checking
$120.00
660002
Linda Martin
Saving
$9450.00
660003
Paul Graham
Checking
$3400.00
A Primary key could be a composite key, i.e. multiple fields
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Traditional File Systems
• System of files that store groups of records used by
a particular software application
• Simple but with a cost
– Inability to share data
– Inadequate security
– Difficulties in maintenance and expansion
– Allows data duplication (e.g. redundancy)
Application 1
Application 2
Program 1
Program 2
Program 1
Program 2
File 1
File 1
File 1
File 1
File 2
File 2
File 2
File 2
File 3
File 3
File 3
File 3
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Traditional File System Anomalies
• Insertion anomaly
– Data needs to be entered more than once if
located in multiple file systems
• Modification anomaly
– Redundant data in separate file systems
– Inconsistent data in your system
• Deletion anomaly
– Failure to simultaneously delete all copies of
redundant data
– Deletion of critical data
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Database Advantages
• Database advantages from a business
perspective include
– Increased flexibility
• Handling changes quickly and easily
– Increased scalability and performance
• Scalability: how the DB can adapt to increased demand
– Reduced information redundancy & inconsistency
– Increased information integrity (quality)
– Increased information security
Database Management System (DBMS)
• Combination of software and data for
– Collecting, storing and managing data in a
database environment.
• A DBMS includes:
– Database
– Database engine (for accessing and modifying the
DB content)
– Data Manipulation Language
Application 1
Program-1
Program-2
Application 2
Program-1
DBMS
Program-2
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Database Management System (DBMS)
• Software through which users and application
programs interact with a database
DBMS Functions
• Store data (in tables) on secondary storage
• Transform data into information (reports, ..)
• Provide user with different logical views of
actual database content
• Provide security: password authentication, access control
– DBMSs control who can add, view, change, or delete
data in the database
Physical view
ID Name Amt
01 John 23.00
02 Linda 3.00
03 Paul 53.00
Logical views
ID
02
Name
Paul
Name
Linda
Amt
53.00
ID Name Amt
01 John 23.00
02 Linda 3.00
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DBMS Functions (cont.)
• Allow multi-user access
– Control concurrency of access to data
– Prevent one user from accessing data that has not
been completely updated
• When selling tickets online, Ticketmaster allows you to
hold a ticket for only 2 minutes to make your purchase
decision, then the ticket is released to sell to someone
else – that is concurrency control
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Desktop
Types of DBMSs
Server / Enterprise
• Desktop
Handheld
– Designed to run on desktop computers
– Used by individuals or small businesses
– Requires little or no formal training
– Does not have all the capabilities of larger DBMSs
– Examples: Microsoft Access, FileMaker, Paradox
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Types of DBMSs (Cont.)
• Server / Enterprise
– Designed for managing larger and complex databases by
large organizations
– Typically operate in a client/server setup
– Either centralized or distributed
• Centralized – all data on one server
– Easy to maintain
– Prone to run slowly when many simultaneous users
– No access if the one server goes down
• Distributed – each location has part of the database
– Very complex database administration
– Usually faster than centralized
– If one server crashes, others can still continue to operate.
– Examples: Oracle Enterprise, DB2, Microsoft SQL Server
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Types of DBMSs (Cont.)
• Handheld
– Designed to run on handheld devices
– Less complex and have less capabilities than
Desktop or Server DBMSs
– Example: Oracle Database Lite, IBM’s DB2
Everywhere.
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Database Models
• Database model = a representation of the
relationship between structures (e.g. tables) in a
database
• Common database models
– Flat file model
– Relational model (this one is the most common)
– Object-oriented database model
– Hierarchical model
– Network model
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Flat File Database
Stores data in basic table structures
No relationship between tables
Used on PDAs for address book
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Relational Model
• Multiple tables related by common fields
• Uses controlled redundancy to create fields that provide
linkage relationships between tables in the database
– These fields are called foreign keys – the secret to a
relational database
– A foreign key is a field, or group of fields, in one table
that is the primary key of another table
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Object-Oriented DBMS
• Needed for multimedia applications that
manage images, voice, videos, graphics, etc. in
addition to numbers and characters.
• Popular in Web applications
• Slower compared to relational DBMS for
processing large number of transactions
• Hybrid object-relational DBMS are emerging
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Hierarchical Database Model
• Data is organized into a tree-like structure using
parent-child relationships.
• Created in the 1960s by IBM
• Limited to storing data in one-to-many relationships
– One parent segment to many child segments
• Not very flexible
Network Model
•
•
•
•
•
Developed in 1969
Many-to-many relationships between entities
Any record may be linked to any other record
Highly flexible but also highly complex
Rarely used
Data Warehouse
• Many organizations need internal, external, current,
and historical data
• Data Warehouse are designed to, typically, store
and manage data from operational transaction
systems, Web site transactions, etc.
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Data Warehouse Fundamentals
• Data warehouse – a logical collection of information
– gathered from many different operational
databases – that supports business analysis activities
and decision-making tasks
• The primary purpose of a data warehouse is to
aggregate information throughout an organization
into a single repository for decision-making purposes
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Data Warehouse Fundamentals
• Extraction, transformation, and loading (ETL) – a process that extracts
information from internal and external databases, transforms the information
using a common set of enterprise definitions, and loads the information into
a data warehouse.
Data Mart
• Subset of data warehouses that is highly focused
and isolated for a specific population of users
• Example: Marketing data mart, Sales data mart, etc.
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Database vs. Data Warehouse
• Databases contain information in a series of
two-dimensional tables
• In a Data Warehouse and data mart,
information is multidimensional, it contains
layers of columns and rows
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Multidimensional Analysis
• Data mining – the process of analyzing data to
extract information not offered by the raw data alone
• Data-mining tool – uses a variety of techniques to
find patterns and relationships in large volumes of
information and infers rules that predict future
behavior and guide decision making
• Data-mining tools include: query tools, statistical
tools, intelligent agents, etc.
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Information Cleansing or Scrubbing
• An organization must maintain high-quality
data in the data warehouse
• Information cleansing or scrubbing – a
process that weeds out and fixes or discards
inconsistent, incorrect, or incomplete
information
• Information cleansing or scrubbing, first,
occurs during ETL. Then, when the data is in
the Data Warehouse using Information
cleansing or scrubbing tools.
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Summary Questions
Notes
1) What is a database, a table, a field, a record, a primary key, a composite
key?
2) What are the problems with traditional file systems?
3) What are the major functions of a DBMS?
4) (a) Name some Desktop DBMSs. (b) Name some Enterprise DBMSs. (c)
Handheld DBMSs
5) Describe hierarchical database model, network model
6)
What are the differences between Flat File, Relational, and Objectoriented database models?
7)
What is Data warehouse? Data Mart?
8)
What is Extraction, transformation, and loading (ETL)? What is datamining? What is Information cleansing or scrubbing?
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