A Study of Business Intelligence Implementation Using Component Based Approach

Autor: Tzu Pin Lin, 林子平
Rok vydání: 2005
Druh dokumentu: 學位論文 ; thesis
Popis: 93
Because it is attacked by the times of the knowledge and the economical in recent years, every company will receive the more benefits so that will rectify outside the information and knowledge to promote the results of operation. And the company that will be able to use the technology of the Business Intelligence of the competition degree will exceed to other company. But the framework and technology on the Business Intelligence is very hard, a normal enterprise will not complete by oneself so it is carried out by the professional adviser and the company to use. Because it that the framework is built will cause risk and not control the quality, an enterprise must understand the difference to decrease the risks and get up the operative goal between the method and method. This proposal will confer and compare every kind of the Business Intelligence Implementation from the different point and list the odds on the subjective and objective. This not only explains every kind of the method building on science and practical case but also explains the base framework of the Business Intelligence Implementation, example: Operational Data Store, Data Warehouse, Data Mart…etc. This research will wish to promote the essence of the enterprise and the method built of the transparency by getting fill information, and on the same time to decrease the risk and get the enterprise of the benefits. The research will provide the case study that will build method by the Component Based. The method of the benefit and fitting will be tested and verified by the living example. The enterprise could be referred to the result of validation that to do the topics on the Customer Relationship Management, Data Mining and Risk Management to use everywhere. Keywords: Business Intelligence, Data Warehouse, Data Mining, Customer Relationship Management (CRM), Component Based
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