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

Data mining (sometimes called data or
knowledge discovery) is the process of
analyzing data from different perspectives
and summarizing it into useful information
- information that can be used to increase
revenue, cuts costs, or both.







Extract, transform, and load transaction
data onto the data warehouse system.
Store and manage the data in a
multidimensional database system.
Provide data access to business analysts
and information technology professionals.
Analyze the data by application software.
Present the data in a useful format, such
as a graph or table.
Data mining is primarily used today by companies
with a strong consumer focus - retail, financial,
communication, and marketing organizations.
 For Example, WalMart is pioneering massive data
mining to transform its supplier relationships. WalMart
captures point-of-sale transactions from over 2,900
stores in 6 countries and continuously transmits this
data to its massive 7.5 terabyte Teradata data
warehouse. WalMart allows more than 3,500
suppliers, to access data on their products and
perform data analyses. These suppliers use this data
to identify customer buying patterns at the store
display level. They use this information to manage
local store inventory and identify new merchandising
opportunities.







In the short-term, the results of data mining will be in
profitable, if mundane, business related areas. Micromarketing campaigns will explore new niches. Advertising
will target potential customers with new precision.
In the medium term, data mining may be as common and
easy to use as e-mail. We may use these tools to find the
best airfare to New York, root out a phone number of a
long-lost classmate, or find the best prices on lawn
mowers.
The long-term prospects are truly exciting. Imagine
intelligent agents turned loose on medical research data or
on sub-atomic particle data. Computers may reveal new
treatments for diseases or new insights into the nature of
the universe.
Data
Data
Data
Data
Data
Data
Data
Data
Data

mining
mining
mining
mining
mining
mining
mining
mining
mining

projects
projects
projects
projects
projects
projects
projects
projects
projects

final year students
MCA, BCA, M.Tech & B.Tech
Bangalore
dot net
dot net java & j2ee
j2ee
java
web application
PROJECT
EXPLANATION

PROJECT
CONFIGURATION

PROJECT
EXECUTION
Latest IEEE 2013 Projects
Served 35000 students and more than 55 university rank
holders.
Experienced Trainers with certifications.
Software Training for the latest technology.
Cegonsoft provides knowledge into practice through
industrial projects.
We provide Placement Assistance in reputed IT Firms.
Free Soft skill Training and Personality Development
Training.
Sufficient usage of Lab for Practical Session.
Good Infrastructures.
For Further Details regarding projects Click on
http://www.cegonsoft.org/Final-Year-IEEE-Projects-Bangalore
Contact – Madhavi

Phone: 8494903771

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Presentation data mining

  • 1.
  • 2.  Data mining (sometimes called data or knowledge discovery) is the process of analyzing data from different perspectives and summarizing it into useful information - information that can be used to increase revenue, cuts costs, or both.
  • 3.      Extract, transform, and load transaction data onto the data warehouse system. Store and manage the data in a multidimensional database system. Provide data access to business analysts and information technology professionals. Analyze the data by application software. Present the data in a useful format, such as a graph or table.
  • 4. Data mining is primarily used today by companies with a strong consumer focus - retail, financial, communication, and marketing organizations.  For Example, WalMart is pioneering massive data mining to transform its supplier relationships. WalMart captures point-of-sale transactions from over 2,900 stores in 6 countries and continuously transmits this data to its massive 7.5 terabyte Teradata data warehouse. WalMart allows more than 3,500 suppliers, to access data on their products and perform data analyses. These suppliers use this data to identify customer buying patterns at the store display level. They use this information to manage local store inventory and identify new merchandising opportunities. 
  • 5.    In the short-term, the results of data mining will be in profitable, if mundane, business related areas. Micromarketing campaigns will explore new niches. Advertising will target potential customers with new precision. In the medium term, data mining may be as common and easy to use as e-mail. We may use these tools to find the best airfare to New York, root out a phone number of a long-lost classmate, or find the best prices on lawn mowers. The long-term prospects are truly exciting. Imagine intelligent agents turned loose on medical research data or on sub-atomic particle data. Computers may reveal new treatments for diseases or new insights into the nature of the universe.
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