Data Mining and Data Warehousing

Abstract

Today in organizations, the developments in the transaction processing technology requires that, amount and rate of data capture should match the speed of processing of the data into information which can be utilized for decision making. A data warehouse is a subject- oriented, integrated, time-variant and non-volatile collection of data that is required for decision making process. Data mining involves the use of various data analysis tools to discover new facts, valid patterns and relationships in large data sets. The data warehouse supports on-line analytical processing (OLAP), the functional and performance requirements of which are quite different from those of the on-line transaction processing (OLTP) applications traditionally supported by the operational databases. Data warehouses provide on-line analytical processing (OLAP) tools for the interactive analysis of multidimensional data of varied granularities, which facilitates effective data mining. Data warehousing and on-line analytical processing (OLAP) are essential elements of decision support, which has increasingly become a focus of the database industry. OLTP is customer-oriented and is used for transaction and query processing by clerks, clients and information technology professionals. An OLAP system is market-oriented and is used for data analysis by knowledge workers, including managers, executives and analysts. Data warehousing and OLAP have emerged as leading technologies that facilitate data storage, organization and then, significant retrieval. Decision support places some rather different requirements on database technology compared to traditional on-line transaction processing applications.

Authors and Affiliations

Hitesh Naidu

Keywords

Related Articles

 Effect of Fly Ash on Fresh and Hardened Properties of Self Compacting Concrete

 Self-compacting concrete (SCC) is one of the High Performance Concrète with excellent strength and durability properties. However, its mix proportioning and testing methods for flow characteristics are different f...

 Generalized Beta Homeomorphisms in Intuitionistic Fuzzy Topological Spaces

 In this paper we introduce the new class of homeomorphisms called generalized beta homeomorphisms in intuitionistic fuzzy topological spaces. We also introduce M-generalized beta homeomorphisms in intuitionistic...

 An Efficient Selfishness Aware Routing in Delay Tolerant Networks

 Delay Tolerant Networks (DTNs) enable data transfer when mobile nodes are onlyintermittently connected. DTN routing usually follows store-carry-and-forward mechanism. Therefore,the willingness of nodes to relay m...

IMPLEMENTATION OF ZIGBEE( 802.15.4) FOR DATA LOGGER

The aim of this dissertation is to provide data logger for remote system. It consists of a temperature sensor for constantly monitoring temperature and Zigbee module for wireless data transfer. The measured temperatu...

 Wear Performance and Hardness Property Of A356.1 Aluminium Alloy Reinforced with Zirconium Oxide Nano Particle

 Aluminium alloy reinforced with Nano-sized ZrO2 particles are widely used for high performance applications such as automotive, military, aerospace, and electricity industries because of their improved physical a...

Download PDF file
  • EP ID EP137807
  • DOI -
  • Views 101
  • Downloads 0

How To Cite

Hitesh Naidu (30). Data Mining and Data Warehousing. International Journal of Engineering Sciences & Research Technology, 3(11), 110-113. https://europub.co.uk/articles/-A-137807