The latest techniques for building a customer-focused enterprise environment <p><i>"The authors have appreciated that MDM is a complex multidimensional area, and have set out to cover each of these dimensions in sufficient detail to provide adequate practical guidance to anyone implementing MDM. Whi
Enterprise Data Governance: Reference & Master Data Management, Semantic Modeling
β Scribed by Pierre Bonnet(auth.)
- Publisher
- Wiley-ISTE
- Year
- 2010
- Tongue
- English
- Leaves
- 318
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
In an increasingly digital economy, mastering the quality of data is an increasingly vital yet still, in most organizations, a considerable task. The necessity of better governance and reinforcement of international rules and regulatory or oversight structures (Sarbanes Oxley, Basel II, Solvency II, IAS-IFRS, etc.) imposes on enterprises the need for greater transparency and better traceability of their data.
All the stakeholders in a company have a role to play and great benefit to derive from the overall goals here, but will invariably turn towards their IT department in search of the answers. However, the majority of IT systems that have been developed within businesses are overly complex, badly adapted, and in many cases obsolete; these systems have often become a source of data or process fragility for the business. Β It is in this context that the management of βreference and master dataβ or Master Data Management (MDM) and semantic modeling can intervene in order to straighten out the management of data in a forward-looking and sustainable manner.
This book shows how company executives and IT managers can take these new challenges, as well as the advantages of using reference and master data management, into account in answering questions such as: Which data governance functions are available? How can IT be better aligned with business regulations? What is the return on investment? How can we assess intangible IT assets and data? What are the principles of semantic modeling? What is the MDM technical architecture?Β In these ways they will be better able to deliver on their responsibilities to their organizations, and position them for growth and robust data management and integrity in the future.
Content:Chapter 1 A Company and its Data (pages 1β36):
Chapter 2 Strategic Aspects (pages 37β56):
Chapter 3 Taking Software Packages into Account (pages 57β67):
Chapter 4 Return on Investment (pages 69β85):
Chapter 5 MDM Maturity Levels and Model?Driven MDM (pages 87β107):
Chapter 6 Data Governance Functions (pages 109β132):
Chapter 7 Organizational Aspects (pages 133β149):
Chapter 8 The Semantic Modeling Framework (pages 151β185):
Chapter 9 Semantic Modeling Procedures (pages 187β214):
Chapter 10 Logical Data Modeling (pages 215β231):
Chapter 11 Organization Modeling (pages 233β246):
Chapter 12 Technical Integration of an MDM system (pages 247β266):
π SIMILAR VOLUMES
<div><B>Comprehensively covers evaluation criteria for and capabilities of the software tools available for implementing a data governance program</B><BR> Β <BR> Data governance programs often start off using programs such as Microsoft Excel and Microsoft SharePoint to document and share data governa
Transform your business into a customer-centric enterpriseΒ Gain a complete and timely understanding of your customers using MDM-CDI and the real-world information contained in this comprehensive volume. Master Data Management and Customer Data Integration for a Global Enterprise explains how to grow
<strong>Transform your business into a customer-centric enterprise</strong><br /><br />Gain a complete and timely understanding of your customers using MDM-CDI and the real-world information contained in this comprehensive volume. <em>Master Data Management and Customer Data Integration for a Global
<p><span>This book systemically presents the latest research findings in fuzzy RDF data modeling and management. Fuzziness widely exist in many data and knowledge intensive applications. With the increasing amount of metadata available, efficient and scalable management of massive semantic data with