Page 93 - DCAP208_Management Support Systems
P. 93

Management Support Systems




                    Notes          6.4.1 Business Requirements Definition

                                   The Business Requirements Definition process defines the requirements, clarifies the scope, and
                                   establishes the implementation roadmap for the data warehouse. With the direction of the client
                                   organization, strategic business goals and initiatives are established and used to direct the
                                   strategies, purpose and goals for each phase of the data warehouse solution. Early in the process,
                                   the focus is on the enterprise aspects of the data warehouse such as enterprise information
                                   requirements, subject areas, an implementation roadmap, and a business case for the data
                                   warehouse. As the process continues, Business Requirements Definition focuses on determining
                                   the specifics of the solution to be developed and delivered, identifying the client’s information
                                   needs, and modeling the requirements.

                                   6.4.2 Data Acquisition

                                   The objective of the Data Acquisition process is to identify, extract, transform, and transport the
                                   various source data necessary for the operation of the data warehouse. Data Acquisition is
                                   performed between several components of the warehouse, including operational and external
                                   data sources to data warehouse, data warehouse to data mart, and data mart to individual marts.
                                   Early in the Data Acquisition process, data sources are identified and evaluated against the
                                   subject areas, and a gap analysis is conducted to verify that data is available to support the
                                   information requirements.
                                   The Data Acquisition Strategy is also developed to outline the approach for extraction,
                                   transformation, and transportation of the source data to the data warehouse. The strategy includes
                                   selecting a tool or set of tools as the data pump or defining the specifications of one that must be
                                   built. If tools are to be utilized, high-level tool requirements, tool evaluations, and tool
                                   recommendations are also addressed.

                                   6.4.3 Architecture

                                   The Data Warehouse Architecture provides an integrated data warehouse environment while
                                   delivering incremental solutions. The architectural design focuses on the application of a
                                   centralized data warehouse, data marts, individual marts, metadata repositories, and incremental
                                   solution architectures. As the process continues, the development and execution of the integration
                                   plans are completed and the compliance of incremental solutions with the strategic architecture
                                   is validated.

                                   6.4.4 Data Quality

                                   The objective of the Data Quality process is to provide consistent, reliable, and accurate data in
                                   the warehouse. The Data Quality Strategy is developed based upon a clear understanding of
                                   which data cleansing and integrity functions meet the needs of the customer. To facilitate timely
                                   and reliable resolution of data issues, Data Management Procedures are also defined. Early in
                                   the process, data quality tools are also evaluated and recommended. The Data Quality process
                                   identifies the business rules for error exception handling, data cleansing, and audit and control.
                                   In addition, any variations in business rules for error handling between initial loads and
                                   subsequent updates to the data warehouse are defined. Utilizing the strategy, procedures, and
                                   tools, modules are developed to support the requirements for data quality. In order to populate
                                   the data warehouse with reliable data, the Data Quality modules are integrated with the Data
                                   Acquisition modules to check that the quality functions are properly sequenced within the
                                   overall transformation of source data to the target environment.






          86                                LOVELY PROFESSIONAL UNIVERSITY
   88   89   90   91   92   93   94   95   96   97   98