SlideShare uma empresa Scribd logo
1 de 64
Baixar para ler offline
Chapter 3
Business Analytics
and Data Visualization
Learning Objectives
 Describe business analytics (BA) and its
importance to organizations
 List and briefly describe the major BA
methods and tools
 Describe how online analytical processing
(OLAP), data visualization, and
multidimensionality can improve decision
making
 Describe advanced analysis methods
Learning Objectives
 Describe geographical information
systems (GIS) and their support to
decision making
 Describe real-time BA
 Describe how business intelligence (BI)
supports competitive intelligence
 Describe automated decision support
(ADS) systems and their benefits
Learning Objectives
 Explain how the Web relates to BA
 Describe Web intelligence and Web
analytics and their importance to
organizations
 Describe implementation issues related to
BA and success factors for BA
 Business intelligence (BI)
The use of analytical methods, either
manually or automatically, to derive
relationships from data
The Business Analytics (BA) Field:
An Overview
 Business analytics (BA)
The application of models directly to business
data. BA involves using MSS tools, especially
models, in assisting decision makers;
essentially a form of OLAP decision support
Perbandingan Business Intelligence Business Analytics
Definition Menganalisa data masa lalu dan saat ini
untuk mendorong kebutuhan bisnis saat
ini
Menganalisa data masa lalu
untuk mendorong
perencanaan bisnis dimasa
depan
Usage Untuk menjalankan operasi bisnis saat
ini
Untuk mengubah operasi
bisnis dan meningkatkan
produktivitas
Ease of operation Untuk operasi bisnis saat ini Unutk operasi bisnis dimasa
depan
Tools – SAP Business Objects,
– QlinkSense
– TIBCO, dll
– Word processing,
– TIBCO, dll
Applications Diaplikasikan untuk perusahaan skala
besar yang menjalankan operasi bisnis
saat ini
Diaplikasikan untuk
pertumbuhan dan
produktivitas perusahaan
dimasa depan
Field Hampir berada dibawah Business
Analytics
Berisi data
warehouse, information
management, dll
Perbedaan BI dan BA
 The Essentials of BA
 Analytics
The science of analysis.
 Business analytics (BA)
The application of models directly to business
data. BA involves using MSS tools, especially
models, in assisting decision makers;
essentially a form of OLAP decision support
The Business Analytics (BA) Field:
An Overview
The Business Analytics (BA) Field: An Overview
 MicroStrategy’s classification of BA
tools: The five styles of BI
1. Enterprise reporting
2. Cube analysis
3. Ad hoc querying and analysis
4. Statistical analysis and data mining
5. Report delivery and alerting
The Business Analytics (BA) Field:
An Overview
The Business Analytics (BA) Field: An
Overview
 SAP’s classification of strategic
enterprise management
 Three levels of support
1. Operational
2. Managerial
3. Strategic
The Business Analytics (BA) Field:
An Overview
 Executive information and support
systems
 Executive information systems (EIS)
Provides rapid access to timely and relevant
information aiding in monitoring an
organization’s performance
 Executive support systems (ESS)
Also provides analysis support,
communications, office automation, and
intelligence support
The Business Analytics (BA) Field:
An Overview
 Drill-down
The investigation of information in detail
(e.g., finding not only total sales but also
sales by region, by product, or by
salesperson). Finding the detailed
sources
The Business Analytics (BA) Field:
An Overview
Drill-down
 Online analytical processing (OLAP)
An information system that enables the
user, while at a PC, to query the system,
conduct an analysis, and so on. The
result is generated in seconds
Online Analytical Processing (OLAP)
OLAP CUBE
 OLAP versus OLTP
 OLTP concentrates on processing repetitive
transactions in large quantities and
conducting simple manipulations
 OLAP involves examining many data items
complex relationships
 OLAP may analyze relationships and look
for patterns, trends, and exceptions
 OLAP is a direct decision support method
Online Analytical Processing (OLAP)
 Types of OLAP
 Multidimensional OLAP (MOLAP)
OLAP implemented via a specialized
multidimensional database (or data store)
that summarizes transactions into
multidimensional views ahead of time
Online Analytical Processing (OLAP)
 Types of OLAP
 Relational OLAP (ROLAP)
The implementation of an OLAP database
on top of an existing relational database
 Database OLAP and Web OLAP (DOLAP
and WOLAP)
 Desktop OLAP
Online Analytical Processing (OLAP)
Online Analytical Processing (OLAP)
1. Multidimensional
conceptual view for
formulating queries
2. Transparency to the user
3. Easy accessibility: batch
and online access
4. Consistent reporting
performance
5. Client/server architecture:
the use of distributed
resources
6. Generic dimensionality
7. Dynamic sparse matrix
handling
8. Multiuser support rather
than support for only a
single user
9. Unrestricted cross-
dimensional operations
10. Intuitive data manipulation
11. Flexible reporting
12. Unlimited dimensions and
aggregation level
Codd’s 12 Rules for OLAP
Online Analytical Processing (OLAP)
 Four types of processing that are
performed by analysts in an organization:
1. Categorical analysis
2. Exegetical analysis
3. Contemplative analysis
4. Formulaic analysis
Reports and Queries
 Reports
 Routine reports
 Ad hoc (or on-demand) reports
 Multilingual support
 Scorecards and dashboards
 Report delivery and alerting
• Report distribution through any touchpoint
• Self-subscription as well as administrator-based
distribution
• Delivery on-demand, on-schedule, or on-event
• Automatic content personalization
Reports and Queries
 Ad hoc query
A query that cannot be determined prior to
the moment the query is issued
 Structured Query Language (SQL)
A data definition and management
language for relational databases. SQL
front ends most relational DBMS
Multidimensionality
 Multidimensionality
The ability to organize, present, and
analyze data by several dimensions, such
as sales by region, by product, by
salesperson, and by time (four dimensions)
 Multidimensional presentation
 Dimensions
 Measures
 Time
Multidimensionality
 Multidimensional database
A database in which the data are
organized specifically to support easy and
quick multidimensional analysis
 Data cube
A two-dimensional, three-dimensional, or
higher-dimensional object in which each
dimension of the data represents a
measure of interest
Multidimensionality
 Cube
A subset of highly interrelated data that is
organized to allow users to combine any
attributes in a cube (e.g., stores, products,
customers, suppliers) with any metrics in
the cube (e.g., sales, profit, units, age) to
create various two-dimensional views, or
slices, that can be displayed on a
computer screen
Multidimensionality
Multidimensionality
 Multidimensional tools and vendors
 Tools with multidimensional capabilities often
work in conjunction with database query
systems and other OLAP tools
Multidimensionality
Multidimensionality
 Limitations of dimensionality
 The multidimensional database can take up
significantly more computer storage room than a
summarized relational database
 Multidimensional products cost significantly more than
standard relational products
 Database loading consumes significant system
resources and time, depending on data volume and
the number of dimensions
 Interfaces and maintenance are more complex in
multidimensional databases than in relational
databases
Advanced Business Analytics
 Data mining and predictive analysis
 Data mining
 Predictive analysis
Use of tools that help determine the probable
future outcome for an event or the likelihood of
a situation occurring. These tools also identify
relationships and patterns
Data Visualization
 Data visualization
A graphical, animation, or video
presentation of data and the results of data
analysis
 The ability to quickly identify important trends
in corporate and market data can provide
competitive advantage
 Check their magnitude of trends by using
predictive models that provide significant
business advantages in applications that drive
content, transactions, or processes
Data Visualization
 New directions in data visualization
 In the 1990s data visualization has moved
into:
 Mainstream computing, where it is integrated
with decision support tools and applications
 Intelligent visualization, which includes data
(information) interpretation
Data Visualization
Data Visualization
Data Visualization
 New directions in data visualization
 Dashboards and scorecards
 Visual analysis
 Financial data visualization
Geographic
Information Systems (GIS)
 Geographical information system (GIS)
An information system that uses spatial
data, such as digitized maps. A GIS is a
combination of text, graphics, icons, and
symbols on maps
Geographic
Information Systems (GIS)
 As GIS tools become increasingly
sophisticated and affordable, they help
more companies and governments
understand:
 Precisely where their trucks, workers, and
resources are located
 Where they need to go to service a customer
 The best way to get from here to there
Geographic
Information Systems (GIS)
 GIS and decision making
 GIS applications are used to improve decision making
in the public and private sectors including:
• Dispatch of emergency vehicles
• Transit management
• Facility site selection
• Drought risk management
• Wildlife management
 Local governments use GIS applications for used
mapping and other decision-making applications
Geographic
Information Systems (GIS)
 GIS combined with GPS
 Global positioning systems (GPS)
Wireless devices that use satellites to enable
users to detect the position on earth of items
(e.g., cars or people) the devices are attached
to, with reasonable precision
Geographic
Information Systems (GIS)
 GIS and the Internet/intranets
 Most major GIS software vendors provide
Web access that hooks directly to their
software
 GIS can help the manager of a retail
operation determine where to locate retail
outlets
 Some firms are deploying GIS on the Internet
for internal use or for use by their customers
(locate the closest store location)
Real-Time BI, Automated Decision Support,
and Competitive Intelligence
 Real-time BI
 The trend toward BI software producing real-
time data updates for real-time analysis and
real-time decision making is growing rapidly
 Part of this push involves getting the right
information to operational and tactical
personnel so that they can use new BA tools
and up-to-the-minute results to make
decisions
Real-Time BI, Automated Decision
Support, and Competitive Intelligence
 Real-time BI
 Concerns about real-time systems
• An important issue in real-time computing is that
not all data should be updated continuously
• when reports are generated in real-time because
one person’s results may not match another
person’s causing confusion
• Real-time data are necessary in many cases for
the creation of ADS systems
Real-Time BI, Automated Decision
Support, and Competitive Intelligence
 Real-time BI
 Automated decision support (ADS) or
enterprise decision management (EDM)
A rule-based system that provides a solution
to a repetitive managerial problem. Also
known as enterprise decision management
(EDM)
Real-Time BI, Automated Decision
Support, and Competitive Intelligence
 Real-time BI
 Business rules
Automating the decision-making process is
usually achieved by encapsulating business
user expertise in a set of business rules that
are embedded in a rule-driven workflow (or
other action-oriented) engine
Real-Time BI, Automated Decision
Support, and Competitive Intelligence
 Real-time BI
 Characteristics and benefits of ADS
ADS are most suitable for decisions that must
be made frequently and/or rapidly, using
information that is available electronically
Real-Time BI, Automated Decision
Support, and Competitive Intelligence
 Capabilities of ADSs
 Rapidly builds rules-based applications and deploys
them into almost any operating environment
 Injects predictive analytics into rule-based applications
 Provides services to legacy systems
 Combines business rules, predictive models, and
optimization strategies flexibly into state-of-the-art
decision-management applications
 Accelerates the uptake of learning from decision criteria
into strategy design, execution, and refinement
Real-Time BI, Automated Decision
Support, and Competitive Intelligence
 ADS applications
 Product or service configuration
 Yield (price) optimization
 Routing or segmentation decisions
 Corporate and regulatory compliance
 Fraud detection
 Dynamic forecasting
 Operational control
Real-Time BI, Automated Decision
Support, and Competitive Intelligence
 Implementing ADS—software companies
provide these components to ADS:
 Rule engines
 Mathematical and statistical algorithms
 Industry-specific packages
 Enterprise systems
 Workflow applications
Real-Time BI, Automated Decision
Support, and Competitive Intelligence
 Competitive intelligence
 Many companies continuously monitor the
activities of their competitors to acquire
competitive intelligence
 Such information gathering drives business
performance by increasing market knowledge,
improving knowledge management, and
raising the quality of strategic planning
BA and the Web: Web
Intelligence and Web Analytics
 Using the Web in BA
 Web analytics
The application of business analytics
activities to Web-based processes,
including e-commerce
BA and the Web: Web
Intelligence and Web Analytics
 Clickstream analysis
The analysis of data that occur in the Web
environment.
 Clickstream data
Data that provide a trail of the user’s
activities and show the user’s browsing
patterns (e.g., which sites are visited,
which pages, how long)
BA and the Web: Web
Intelligence and Web Analytics
Usage, Benefits,
and Success of BA
 Usage of BA
 Almost all managers and executives can use
some BA systems, but some find the tools too
complicated to use or they are not trained
properly.
 Most businesses want a greater percentage of
the enterprise to leverage analytics; most of
the challenges related to technology adoption
involve culture, people, and processes
Usage, Benefits,
and Success of BA
 Success and usability of BA
 Performance management systems (PMS) are
BI tools that provide scorecards and other
relevant information that decision makers use
to determine their level of success in reaching
their goals
Usage, Benefits,
and Success of BA
 Why BI/BA projects fail
1. Failure to recognize BI projects as cross-
organizational business initiatives and to
understand that, as such, they differ from
typical standalone solutions
2. Unengaged or weak business sponsors
3. Unavailable or unwilling business
representatives from the functional areas
Usage, Benefits,
and Success of BA
 Why BI/BA projects fail
4. Lack of skilled (or available) staff, or
suboptimal staff utilization
5. No software release concept (i.e., no
iterative development method)
6. No work breakdown structure (i.e., no
methodology)
Usage, Benefits,
and Success of BA
 Why BI/BA projects fail
7. No business analysis or standardization
activities
8. No appreciation of the negative impact
of “dirty data” on business profitability
9. No understanding of the necessity for
and the use of metadata
10. Too much reliance on disparate methods
and tools
Usage, Benefits,
and Success of BA
 System development and the need for
integration
 Developing an effective BI decision support
application can be fairly complex
 Integration, whether of applications, data
sources, or even development environment, is
a major CSF for BI

Mais conteúdo relacionado

Semelhante a BA and data visualization.pdf

Dataware housing
Dataware housingDataware housing
Dataware housingwork
 
Datawarehousing
DatawarehousingDatawarehousing
Datawarehousingwork
 
What is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
What is OLAP -Data Warehouse Concepts - IT Online Training @ NewyorksysWhat is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
What is OLAP -Data Warehouse Concepts - IT Online Training @ NewyorksysNEWYORKSYS-IT SOLUTIONS
 
Business intelligence overview
Business intelligence overviewBusiness intelligence overview
Business intelligence overviewCanara bank
 
Business intellegence erp
Business intellegence erpBusiness intellegence erp
Business intellegence erpSargam Sethi
 
Business analytics and data visualisation
Business analytics and data visualisationBusiness analytics and data visualisation
Business analytics and data visualisationShwetabh Jaiswal
 
Business Intelligence and Analytics .pptx
Business Intelligence and Analytics .pptxBusiness Intelligence and Analytics .pptx
Business Intelligence and Analytics .pptxRupaRani28
 
using big-data methods analyse the Cross platform aviation
 using big-data methods analyse the Cross platform aviation using big-data methods analyse the Cross platform aviation
using big-data methods analyse the Cross platform aviationranjit banshpal
 
Business intelligence
Business intelligenceBusiness intelligence
Business intelligenceshreeuva
 
Business Intelligence and Multidimensional Database
Business Intelligence and Multidimensional DatabaseBusiness Intelligence and Multidimensional Database
Business Intelligence and Multidimensional DatabaseRussel Chowdhury
 
Technical Research Document - Anurag
Technical Research Document - AnuragTechnical Research Document - Anurag
Technical Research Document - Anuraganuragrajandekar
 
Data Warehouse
Data WarehouseData Warehouse
Data Warehouseganblues
 

Semelhante a BA and data visualization.pdf (20)

CTP Data Warehouse
CTP Data WarehouseCTP Data Warehouse
CTP Data Warehouse
 
1 introba
1 introba1 introba
1 introba
 
Dataware housing
Dataware housingDataware housing
Dataware housing
 
Datawarehousing
DatawarehousingDatawarehousing
Datawarehousing
 
What is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
What is OLAP -Data Warehouse Concepts - IT Online Training @ NewyorksysWhat is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
What is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
 
Business intelligence overview
Business intelligence overviewBusiness intelligence overview
Business intelligence overview
 
Business intellegence erp
Business intellegence erpBusiness intellegence erp
Business intellegence erp
 
Business analytics and data visualisation
Business analytics and data visualisationBusiness analytics and data visualisation
Business analytics and data visualisation
 
BI
BIBI
BI
 
Business Intelligence and Analytics .pptx
Business Intelligence and Analytics .pptxBusiness Intelligence and Analytics .pptx
Business Intelligence and Analytics .pptx
 
using big-data methods analyse the Cross platform aviation
 using big-data methods analyse the Cross platform aviation using big-data methods analyse the Cross platform aviation
using big-data methods analyse the Cross platform aviation
 
Business intelligence
Business intelligenceBusiness intelligence
Business intelligence
 
Business intelligence
Business intelligenceBusiness intelligence
Business intelligence
 
Business Intelligence and Multidimensional Database
Business Intelligence and Multidimensional DatabaseBusiness Intelligence and Multidimensional Database
Business Intelligence and Multidimensional Database
 
Technical Research Document - Anurag
Technical Research Document - AnuragTechnical Research Document - Anurag
Technical Research Document - Anurag
 
Visual discovery tools
Visual discovery toolsVisual discovery tools
Visual discovery tools
 
Datawarehouse and OLAP
Datawarehouse and OLAPDatawarehouse and OLAP
Datawarehouse and OLAP
 
Data Warehouse
Data WarehouseData Warehouse
Data Warehouse
 
dabblr_report_final
dabblr_report_finaldabblr_report_final
dabblr_report_final
 
Seminario Big Data - 27/11/2017
Seminario Big Data - 27/11/2017Seminario Big Data - 27/11/2017
Seminario Big Data - 27/11/2017
 

Último

Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024BookNet Canada
 
Maximizing Board Effectiveness 2024 Webinar.pptx
Maximizing Board Effectiveness 2024 Webinar.pptxMaximizing Board Effectiveness 2024 Webinar.pptx
Maximizing Board Effectiveness 2024 Webinar.pptxOnBoard
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsMaria Levchenko
 
My Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationMy Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationRidwan Fadjar
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Miguel Araújo
 
Google AI Hackathon: LLM based Evaluator for RAG
Google AI Hackathon: LLM based Evaluator for RAGGoogle AI Hackathon: LLM based Evaluator for RAG
Google AI Hackathon: LLM based Evaluator for RAGSujit Pal
 
Unblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesUnblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesSinan KOZAK
 
SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024Scott Keck-Warren
 
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhi
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | DelhiFULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhi
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhisoniya singh
 
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...gurkirankumar98700
 
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure serviceWhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure servicePooja Nehwal
 
Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101Paola De la Torre
 
Breaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountBreaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountPuma Security, LLC
 
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...HostedbyConfluent
 
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationGenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationMichael W. Hawkins
 
Injustice - Developers Among Us (SciFiDevCon 2024)
Injustice - Developers Among Us (SciFiDevCon 2024)Injustice - Developers Among Us (SciFiDevCon 2024)
Injustice - Developers Among Us (SciFiDevCon 2024)Allon Mureinik
 
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...shyamraj55
 
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024Rafal Los
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonAnna Loughnan Colquhoun
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking MenDelhi Call girls
 

Último (20)

Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
 
Maximizing Board Effectiveness 2024 Webinar.pptx
Maximizing Board Effectiveness 2024 Webinar.pptxMaximizing Board Effectiveness 2024 Webinar.pptx
Maximizing Board Effectiveness 2024 Webinar.pptx
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed texts
 
My Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationMy Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 Presentation
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
Google AI Hackathon: LLM based Evaluator for RAG
Google AI Hackathon: LLM based Evaluator for RAGGoogle AI Hackathon: LLM based Evaluator for RAG
Google AI Hackathon: LLM based Evaluator for RAG
 
Unblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesUnblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen Frames
 
SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024
 
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhi
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | DelhiFULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhi
FULL ENJOY 🔝 8264348440 🔝 Call Girls in Diplomatic Enclave | Delhi
 
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...
 
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure serviceWhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
 
Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101
 
Breaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountBreaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path Mount
 
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...
 
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationGenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
 
Injustice - Developers Among Us (SciFiDevCon 2024)
Injustice - Developers Among Us (SciFiDevCon 2024)Injustice - Developers Among Us (SciFiDevCon 2024)
Injustice - Developers Among Us (SciFiDevCon 2024)
 
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
 
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men
 

BA and data visualization.pdf

  • 1. Chapter 3 Business Analytics and Data Visualization
  • 2. Learning Objectives  Describe business analytics (BA) and its importance to organizations  List and briefly describe the major BA methods and tools  Describe how online analytical processing (OLAP), data visualization, and multidimensionality can improve decision making  Describe advanced analysis methods
  • 3. Learning Objectives  Describe geographical information systems (GIS) and their support to decision making  Describe real-time BA  Describe how business intelligence (BI) supports competitive intelligence  Describe automated decision support (ADS) systems and their benefits
  • 4. Learning Objectives  Explain how the Web relates to BA  Describe Web intelligence and Web analytics and their importance to organizations  Describe implementation issues related to BA and success factors for BA
  • 5.  Business intelligence (BI) The use of analytical methods, either manually or automatically, to derive relationships from data The Business Analytics (BA) Field: An Overview  Business analytics (BA) The application of models directly to business data. BA involves using MSS tools, especially models, in assisting decision makers; essentially a form of OLAP decision support
  • 6. Perbandingan Business Intelligence Business Analytics Definition Menganalisa data masa lalu dan saat ini untuk mendorong kebutuhan bisnis saat ini Menganalisa data masa lalu untuk mendorong perencanaan bisnis dimasa depan Usage Untuk menjalankan operasi bisnis saat ini Untuk mengubah operasi bisnis dan meningkatkan produktivitas Ease of operation Untuk operasi bisnis saat ini Unutk operasi bisnis dimasa depan Tools – SAP Business Objects, – QlinkSense – TIBCO, dll – Word processing, – TIBCO, dll Applications Diaplikasikan untuk perusahaan skala besar yang menjalankan operasi bisnis saat ini Diaplikasikan untuk pertumbuhan dan produktivitas perusahaan dimasa depan Field Hampir berada dibawah Business Analytics Berisi data warehouse, information management, dll Perbedaan BI dan BA
  • 7.  The Essentials of BA  Analytics The science of analysis.  Business analytics (BA) The application of models directly to business data. BA involves using MSS tools, especially models, in assisting decision makers; essentially a form of OLAP decision support The Business Analytics (BA) Field: An Overview
  • 8. The Business Analytics (BA) Field: An Overview
  • 9.  MicroStrategy’s classification of BA tools: The five styles of BI 1. Enterprise reporting 2. Cube analysis 3. Ad hoc querying and analysis 4. Statistical analysis and data mining 5. Report delivery and alerting The Business Analytics (BA) Field: An Overview
  • 10. The Business Analytics (BA) Field: An Overview
  • 11.  SAP’s classification of strategic enterprise management  Three levels of support 1. Operational 2. Managerial 3. Strategic The Business Analytics (BA) Field: An Overview
  • 12.  Executive information and support systems  Executive information systems (EIS) Provides rapid access to timely and relevant information aiding in monitoring an organization’s performance  Executive support systems (ESS) Also provides analysis support, communications, office automation, and intelligence support The Business Analytics (BA) Field: An Overview
  • 13.  Drill-down The investigation of information in detail (e.g., finding not only total sales but also sales by region, by product, or by salesperson). Finding the detailed sources The Business Analytics (BA) Field: An Overview
  • 15.  Online analytical processing (OLAP) An information system that enables the user, while at a PC, to query the system, conduct an analysis, and so on. The result is generated in seconds Online Analytical Processing (OLAP)
  • 17.  OLAP versus OLTP  OLTP concentrates on processing repetitive transactions in large quantities and conducting simple manipulations  OLAP involves examining many data items complex relationships  OLAP may analyze relationships and look for patterns, trends, and exceptions  OLAP is a direct decision support method Online Analytical Processing (OLAP)
  • 18.  Types of OLAP  Multidimensional OLAP (MOLAP) OLAP implemented via a specialized multidimensional database (or data store) that summarizes transactions into multidimensional views ahead of time Online Analytical Processing (OLAP)
  • 19.  Types of OLAP  Relational OLAP (ROLAP) The implementation of an OLAP database on top of an existing relational database  Database OLAP and Web OLAP (DOLAP and WOLAP)  Desktop OLAP Online Analytical Processing (OLAP)
  • 20. Online Analytical Processing (OLAP) 1. Multidimensional conceptual view for formulating queries 2. Transparency to the user 3. Easy accessibility: batch and online access 4. Consistent reporting performance 5. Client/server architecture: the use of distributed resources 6. Generic dimensionality 7. Dynamic sparse matrix handling 8. Multiuser support rather than support for only a single user 9. Unrestricted cross- dimensional operations 10. Intuitive data manipulation 11. Flexible reporting 12. Unlimited dimensions and aggregation level Codd’s 12 Rules for OLAP
  • 21. Online Analytical Processing (OLAP)  Four types of processing that are performed by analysts in an organization: 1. Categorical analysis 2. Exegetical analysis 3. Contemplative analysis 4. Formulaic analysis
  • 22. Reports and Queries  Reports  Routine reports  Ad hoc (or on-demand) reports  Multilingual support  Scorecards and dashboards  Report delivery and alerting • Report distribution through any touchpoint • Self-subscription as well as administrator-based distribution • Delivery on-demand, on-schedule, or on-event • Automatic content personalization
  • 23. Reports and Queries  Ad hoc query A query that cannot be determined prior to the moment the query is issued  Structured Query Language (SQL) A data definition and management language for relational databases. SQL front ends most relational DBMS
  • 24. Multidimensionality  Multidimensionality The ability to organize, present, and analyze data by several dimensions, such as sales by region, by product, by salesperson, and by time (four dimensions)  Multidimensional presentation  Dimensions  Measures  Time
  • 25. Multidimensionality  Multidimensional database A database in which the data are organized specifically to support easy and quick multidimensional analysis  Data cube A two-dimensional, three-dimensional, or higher-dimensional object in which each dimension of the data represents a measure of interest
  • 26. Multidimensionality  Cube A subset of highly interrelated data that is organized to allow users to combine any attributes in a cube (e.g., stores, products, customers, suppliers) with any metrics in the cube (e.g., sales, profit, units, age) to create various two-dimensional views, or slices, that can be displayed on a computer screen
  • 28. Multidimensionality  Multidimensional tools and vendors  Tools with multidimensional capabilities often work in conjunction with database query systems and other OLAP tools
  • 30. Multidimensionality  Limitations of dimensionality  The multidimensional database can take up significantly more computer storage room than a summarized relational database  Multidimensional products cost significantly more than standard relational products  Database loading consumes significant system resources and time, depending on data volume and the number of dimensions  Interfaces and maintenance are more complex in multidimensional databases than in relational databases
  • 31. Advanced Business Analytics  Data mining and predictive analysis  Data mining  Predictive analysis Use of tools that help determine the probable future outcome for an event or the likelihood of a situation occurring. These tools also identify relationships and patterns
  • 32. Data Visualization  Data visualization A graphical, animation, or video presentation of data and the results of data analysis  The ability to quickly identify important trends in corporate and market data can provide competitive advantage  Check their magnitude of trends by using predictive models that provide significant business advantages in applications that drive content, transactions, or processes
  • 33.
  • 34.
  • 35.
  • 36.
  • 37.
  • 38. Data Visualization  New directions in data visualization  In the 1990s data visualization has moved into:  Mainstream computing, where it is integrated with decision support tools and applications  Intelligent visualization, which includes data (information) interpretation
  • 41. Data Visualization  New directions in data visualization  Dashboards and scorecards  Visual analysis  Financial data visualization
  • 42. Geographic Information Systems (GIS)  Geographical information system (GIS) An information system that uses spatial data, such as digitized maps. A GIS is a combination of text, graphics, icons, and symbols on maps
  • 43. Geographic Information Systems (GIS)  As GIS tools become increasingly sophisticated and affordable, they help more companies and governments understand:  Precisely where their trucks, workers, and resources are located  Where they need to go to service a customer  The best way to get from here to there
  • 44. Geographic Information Systems (GIS)  GIS and decision making  GIS applications are used to improve decision making in the public and private sectors including: • Dispatch of emergency vehicles • Transit management • Facility site selection • Drought risk management • Wildlife management  Local governments use GIS applications for used mapping and other decision-making applications
  • 45. Geographic Information Systems (GIS)  GIS combined with GPS  Global positioning systems (GPS) Wireless devices that use satellites to enable users to detect the position on earth of items (e.g., cars or people) the devices are attached to, with reasonable precision
  • 46. Geographic Information Systems (GIS)  GIS and the Internet/intranets  Most major GIS software vendors provide Web access that hooks directly to their software  GIS can help the manager of a retail operation determine where to locate retail outlets  Some firms are deploying GIS on the Internet for internal use or for use by their customers (locate the closest store location)
  • 47. Real-Time BI, Automated Decision Support, and Competitive Intelligence  Real-time BI  The trend toward BI software producing real- time data updates for real-time analysis and real-time decision making is growing rapidly  Part of this push involves getting the right information to operational and tactical personnel so that they can use new BA tools and up-to-the-minute results to make decisions
  • 48. Real-Time BI, Automated Decision Support, and Competitive Intelligence  Real-time BI  Concerns about real-time systems • An important issue in real-time computing is that not all data should be updated continuously • when reports are generated in real-time because one person’s results may not match another person’s causing confusion • Real-time data are necessary in many cases for the creation of ADS systems
  • 49. Real-Time BI, Automated Decision Support, and Competitive Intelligence  Real-time BI  Automated decision support (ADS) or enterprise decision management (EDM) A rule-based system that provides a solution to a repetitive managerial problem. Also known as enterprise decision management (EDM)
  • 50. Real-Time BI, Automated Decision Support, and Competitive Intelligence  Real-time BI  Business rules Automating the decision-making process is usually achieved by encapsulating business user expertise in a set of business rules that are embedded in a rule-driven workflow (or other action-oriented) engine
  • 51. Real-Time BI, Automated Decision Support, and Competitive Intelligence  Real-time BI  Characteristics and benefits of ADS ADS are most suitable for decisions that must be made frequently and/or rapidly, using information that is available electronically
  • 52. Real-Time BI, Automated Decision Support, and Competitive Intelligence  Capabilities of ADSs  Rapidly builds rules-based applications and deploys them into almost any operating environment  Injects predictive analytics into rule-based applications  Provides services to legacy systems  Combines business rules, predictive models, and optimization strategies flexibly into state-of-the-art decision-management applications  Accelerates the uptake of learning from decision criteria into strategy design, execution, and refinement
  • 53. Real-Time BI, Automated Decision Support, and Competitive Intelligence  ADS applications  Product or service configuration  Yield (price) optimization  Routing or segmentation decisions  Corporate and regulatory compliance  Fraud detection  Dynamic forecasting  Operational control
  • 54. Real-Time BI, Automated Decision Support, and Competitive Intelligence  Implementing ADS—software companies provide these components to ADS:  Rule engines  Mathematical and statistical algorithms  Industry-specific packages  Enterprise systems  Workflow applications
  • 55. Real-Time BI, Automated Decision Support, and Competitive Intelligence  Competitive intelligence  Many companies continuously monitor the activities of their competitors to acquire competitive intelligence  Such information gathering drives business performance by increasing market knowledge, improving knowledge management, and raising the quality of strategic planning
  • 56. BA and the Web: Web Intelligence and Web Analytics  Using the Web in BA  Web analytics The application of business analytics activities to Web-based processes, including e-commerce
  • 57. BA and the Web: Web Intelligence and Web Analytics  Clickstream analysis The analysis of data that occur in the Web environment.  Clickstream data Data that provide a trail of the user’s activities and show the user’s browsing patterns (e.g., which sites are visited, which pages, how long)
  • 58. BA and the Web: Web Intelligence and Web Analytics
  • 59. Usage, Benefits, and Success of BA  Usage of BA  Almost all managers and executives can use some BA systems, but some find the tools too complicated to use or they are not trained properly.  Most businesses want a greater percentage of the enterprise to leverage analytics; most of the challenges related to technology adoption involve culture, people, and processes
  • 60. Usage, Benefits, and Success of BA  Success and usability of BA  Performance management systems (PMS) are BI tools that provide scorecards and other relevant information that decision makers use to determine their level of success in reaching their goals
  • 61. Usage, Benefits, and Success of BA  Why BI/BA projects fail 1. Failure to recognize BI projects as cross- organizational business initiatives and to understand that, as such, they differ from typical standalone solutions 2. Unengaged or weak business sponsors 3. Unavailable or unwilling business representatives from the functional areas
  • 62. Usage, Benefits, and Success of BA  Why BI/BA projects fail 4. Lack of skilled (or available) staff, or suboptimal staff utilization 5. No software release concept (i.e., no iterative development method) 6. No work breakdown structure (i.e., no methodology)
  • 63. Usage, Benefits, and Success of BA  Why BI/BA projects fail 7. No business analysis or standardization activities 8. No appreciation of the negative impact of “dirty data” on business profitability 9. No understanding of the necessity for and the use of metadata 10. Too much reliance on disparate methods and tools
  • 64. Usage, Benefits, and Success of BA  System development and the need for integration  Developing an effective BI decision support application can be fairly complex  Integration, whether of applications, data sources, or even development environment, is a major CSF for BI