Compare ?Data mining? and ?Data Warehousing??
Answers were Sorted based on User's Feedback
Answer / palzkumar
KISHORE's answer is wrong!!!
Actually,
1. Data Warehouse: is Subject Oriented, Time varying,
Integerated, Non-Olatile database in support of management
decison process.
2. Data Mining : is process of sorting through large
amounts of data and picking out relevant information.
It helps to predict the future of the product. one can
predict who is not my customer, who all not bying my
product etc...
regards,
palz
| Is This Answer Correct ? | 11 Yes | 3 No |
Answer / mahendra kumar garnayak
Data mining is methodology for selecting records from data
warehousing environment.
| Is This Answer Correct ? | 4 Yes | 0 No |
Answer / sandeep
As per kishor Data mining Is not a technology,
it's a Methoodlogy which having some Algo's
| Is This Answer Correct ? | 5 Yes | 2 No |
Data mining means it is a methodology by which the
analyst can get knowledge from the summary data present in
the DWH which is usuful for the future business planning.
DataWareHouse is a relational database which is subject
oriented,time variant, non volatile and integrated database
for the support of the business.
| Is This Answer Correct ? | 7 Yes | 6 No |
Answer / kishore
Data mining:
Is a technology for selecting records.
Select records from Warehouse.
Data Warehousing:
Is a environment(i.e.data base designing) to keep the
records.
| Is This Answer Correct ? | 6 Yes | 7 No |
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