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Is inconsistent and inaccurate data costing you money? Learn about the value and benefits that cloud-based MDM can deliver. Find out why MDM matters to every organization, how next-gen MDM systems meet the needs of fast-moving enterprises and how to successfully adopt MDM. Plus, get compelling business cases for MDM.
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In this informative resource, access a Q and A with the Director of Information Lifecycle Governance for IBM Worldwide, Sylvan H. Morley III, as he discusses the impact of big data on modern organizations, and gives advice on overcoming challenges to information lifecycle management.
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This executive brief explains how the combination of master data management (MDM) and data quality (DQ) can significantly enhance the accuracy and reliability of data, enabling timely, confident decisions and accurate reporting.
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Big data analytics can help you understand the current state of your business, track customer behavior, and take advantage of new opportunities. This comprehensive TDWI best practices report gives you in-depth insights into all the important aspects of big data analytics, so that you have a solid foundation for implementing an analytics plan.
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This paper details SAP's range of public sector solutions, designed specifically to assist government agencies in proactively monitoring their current and future spending. Learn how to get a better handle on unspent funds such as unliquidated obligations (ULOs) by drilling into layers of data to create accurate reports and projections in real time.
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This resource examines the value of metadata in business intelligence, and introduces a metadata modeling tool for managing access to all existing data sources and ensuring data trustworthiness.
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Ensuring your data is secure and trustworthy is paramount to harnessing the power of big data, but it's also a difficult task when you've got such a large volume and variety of information coming into the business. Unfortunately, traditional methods of governing and correcting often aren't applicable to big data -- so what can you do?