SAP Data Strategy


What Is SAP Data Strategy?

Business and IT executives are convinced that data equates to value. Yet, to convert data into tangible business value, companies need a strong data strategy.

SAPInsider research on Data Management and Data Warehousing on Cloud found that 58% of respondents are completely or mostly satisfied with how their data strategy is meeting their organization’s data access, reporting, and intelligence requirements, while 33% are partially satisfied.

What Is SAP Data Strategy?

Business and IT executives are convinced that data equates to value. Yet, to convert data into tangible business value, companies need a strong data strategy.

SAPInsider research on Data Management and Data Warehousing on Cloud found that 58% of respondents are completely or mostly satisfied with how their data strategy is meeting their organization’s data access, reporting, and intelligence requirements, while 33% are partially satisfied.

A data strategy is a vision for how a company will collect, store, manage, share, and use data. Increasingly, enterprises recognize the importance of formulating an enterprise data strategy that spans across SAP and non-SAP data.

A good data strategy is driven by the business strategy. It translates the goals, risks, and requirements of the business into data models, processes, policies and technologies. Without a good data strategy, the organization is likely to have inefficient and poorly executed business processes, frequent data privacy and compliance issues, poor data analytics, customer dissatisfaction due to delays and errors, and significant costs due to manual operations.

Many specialist consultants can help companies with data strategy such as Pythian and cbs-Consulting.

Data Strategy Elements

There are four commonly acknowledged elements of data strategy that generate questions to consider:

  1. Goals and Objectives for Data: What are the goals for data? For example, goals may be to enable enterprise analytics and smooth business processes, provide data to business users efficiently, and reduce data storage costs. Companies also have short-term goals such as consolidating data stores in one location or cleaning up master data.
  2. Organizational Roles: What are the roles that manage or use the data? Data architects and engineers may build the data infrastructure, data scientists may use it for analytics, while business users may create, update, or use specific data based on their role.
  3. Data Architecture: Where will data be stored and how will it be accessed? A wide variety of storage is used both on-premise and on cloud. Increasingly, companies are consolidating data on the cloud in the form of data lakes, data hubs, or data warehouses with SAP HANA or other solutions. Vendors like Dell, NetApp, NTT Data, and TIBCO offer robust solutions to store and manage data.
  4. Data Management: How will data be governed, converted, transported, and archived? Data is considered a business asset; similar to a physical asset, companies develop ways to govern its use and manage it over its lifecycle. There is a proliferation of vendors offering services such as master data governance, including the Laidon Group.

In addition to the above, companies are now considering a short-term data strategy around how to migrate to SAP S/4HANA. This presentation, Data Readiness and Preparation for Your SAP S/4HANA Implementation, outlines how to develop a data foundation during and before the migration.

937 results

  1. How to Effectively Migrate Data to Employee Central

    Reading time: 13 mins

    Learn about how to anticipate the challenges that come with migrating data to a SuccessFactors Employee Central system. Learn about key concepts, leading practices of the extraction, transform, and load (ETL) process, timelines, scope and data validations. Key Concept Core data conversion concepts should be planned, designed, and implemented throughout a SuccessFactors Employee Central project—a...…

  2. Why Trusted Data is the Linchpin of ERP Modernization

    Reading time: 9 mins

    As businesses grow and evolve, it can be challenging to manage the complex data landscape with a traditional ERP system in place. The data generated by day-to-day business operations has exponentially increased over recent years.

  3. Migrate Your SAP BW 3.x Data Flow to Upgrade to SAP NetWeaver BI 7.0’s New Features and Functionalities

    Reading time: 27 mins

    When you upgrade from SAP BW 3.x to SAP NetWeaver BI 7.0, the data flow doesn’t automatically migrate with the system. Find out how to migrate your DataSources, transformations, and Web templates to the new format. Key Concept A transformation is a new SAP NetWeaver BI 7.0 structure or vehicle that moves data from the...…

  4. Enterprise Information Management: What, Why, Where, and How

    Reading time: 17 mins

    Understand how SAP solutions for enterprise information management (EIM) cover all types of information. This includes data that is structured, semi-structured, or unstructured, as well as many content forms such as documents, emails, and PDFs. It also supports business processing and analytical applications, and evolves into information governance to ensure data and information are managed...…

  5. SAP BI Product Convergence Update: What’s Happening Today, What is Coming Next, and What Does It Mean for You?

    Reading time: 65 mins

    SAP’s BI suite continues its course of ongoing product advancements, and there are significant new product releases on the very near horizon. With the pending SP4 release of SAP BI 4.2 due to impact the full BI suite, and the major new release of SAP BusinessObjects Lumira 2.0 (where SAP BusinessObjects Lumira and SAP BusinessObjects Design...…

  6. Efficient Data Management in Healthcare Using SAP Master Data Governance

    Reading time: 9 mins

    SAP’s Master Data Governance application provides an integrated data management capability for the creation, maintenance, validation, and distribution of master data across the enterprise. If you already have an SAP ERP system, then adding SAP Master Data Governance accelerates the master data maintenance process, leading to enhanced quality of your master data by leaps and…

  7. How to Design and Develop Flexible Month-End Financial Allocation Solutions

    Reading time: 21 mins

    Find out about best practices and performance improvement tips for designing and developing month-end financial allocations using a combination of Business Planning and Simulation, Integrated Planning, ABAP function modules, and SAP NetWeaver BW. Key Concept The allocation process is performed in two steps, high level and low level. During the high-level allocation, finance data at...…

  8. Enhance and Simplify Your Data Warehousing with SAP BW 7.5: Live Q&A on the Newest Features and Functions of SAP BW Powered by SAP HANA

    Reading time: 44 mins

    During this live Q&A session, Dr. Bjarne Berg, principal at PwC and speaker at HANA 2016, discussed the new capabilities of the 7.5 edition of SAP BW powered by SAP HANA, and answered readers’ questions on what features have been extended from earlier releases and how to leverage the latest release to improve productivity and...…

  9. How to Select the Right Mobile Solution Architecture for Your Use Case

    Reading time: 24 mins

    Understand the main mobility architecture paradigms currently supported by the Sybase Unwired Platform, and the advantages and drawbacks of each. Get a high-level view of the architecture and basic steps for implementing each. Key Concept A mobile business object is a method of encapsulating business data so that it can be used across multiple kinds...…

  10. Part 1: Data Modeling Strategies to Avoid Data Inaccuracy and Ensure Consistency

    Reading time: 54 mins

    Minimize and eliminate data inconsistency and inaccuracy in SAP NetWeaver BI environments by adopting and adapting the data modeling techniques described here. The author explains the accuracy, benefits, and drawbacks of each. Key Concept Common data modeling approaches produce inconsistent and inaccurate data over time. This results from insufficient understanding of delta processes and different...…