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. Administration and Implementation Tips for SAP Near Line Storage (NLS) Based on Sybase IQ

    Reading time: 11 mins

    There are challenges to implementing the Near Line Storage (NLS) solution using Sybase IQ, and pitfalls to look out for during implementation. Learn tips for how to determine what to archive, how to segregate data, changes to the dataset, and understanding some features of the overall solution. Key Concept Near Line Storage (NLS) using Sybase...…

  2. 2 Ways to Connect to Data Sources Using SAP BusinessObjects Cloud

    Reading time: 8 mins

    SAP BusinessObjects Cloud offers data connectivity to many on-premise and cloud data sources. You can either acquire data into SAP BusinessObjects Cloud or connect to the data source in real time without any replication. Learn how you can use each of the data sources available in SAP BusinessObjects Cloud, then review the use cases and…

  3. 12 Best Practices for Information Lifecycle Management Using the NLS Interface

    Reading time: 13 mins

    Using Information Lifecycle Management (ILM) and Nearline Storage (NLS) techniques enables organizations with SAP NetWeaver BW implementations to improve warehouse performance while considerably reducing database administration costs. In addition, using ILM with NLS improves your ability to manage and satisfy service level agreements. Discover the important aspects of ILM and garner best practices for using...…

  4. Pinpoint the Cause of Data Inconsistencies to Ensure Precise Key Figure and Characteristic Values

    Reading time: 16 mins

    Although many people view troubleshooting as a random process, you can apply a systematic technique to verify data quality. Use these helpful suggestions to locate errors. Key Concept During the final phase of BW projects, developers verify data quality. Here, quality refers to consistency and preciseness of the key figure and characteristic values that BEx...…

  5. cloud

    Data Management Tools in SAP EIM Portfolio – Part 2

    Reading time: 4 mins

    SAP Data Services is an enterprise-grade software suite facilitating seamless data integration, migration, warehousing, and quality management. It efficiently extracts, transforms, and loads data from diverse sources into a centralized hub for analysis and reporting, ensuring data consistency and precision across systems. This empowers businesses to derive insights from reliable data, aiding informed decision-making. In…

  6. Data Mining with the Analysis Process Designer in SAP BW 3.5

    Reading time: 9 mins

    The Analysis Process Designer (APD) workbench, introduced in BW 3.1 Content (BW 3.0B SP6), allows users to combine numerous transformations into a single data flow. It offers a less technical approach to enhancing subject-oriented, non-volatile data that has already been integrated, cleansed, and transformed in the data warehouse. The author examines current APD features and...…

  7. Leveraging SAP HANA to Enhance SAP Business Planning and Consolidation’s Capabilities

    Reading time: 25 mins

    SAP Business Planning and Consolidation (BPC) 10.1, along with its host environments (SAP Business Warehouse [SAP BW] and SAP HANA) provide abundant design choices to meet today’s business planning needs. See a comparison between the various models available in BPC to facilitate appropriate model selection based on business priorities. The potential to enhance BPC capabilities...…

  8. PwC's Cloud Foundation Services

    Optimizing SAP Data Warehouses with DBT: A Comprehensive Guide to Enhanced Analytics

    Reading time: 6 mins

    Integrating DBT with SAP Data Warehouses enhances business analytics by streamlining data transformation, improving data quality and governance, and facilitating collaboration, thus enabling organizations to leverage their data more effectively for informed decision-making.

  9. Best Practices for Converting Historical Data in SAP ERP HCM

    Reading time: 20 mins

    See how to take a comprehensive approach to managing historical data from start to finish during an SAP ERP HCM implementation. Key Concept Requirements for the conversion and management of historical data range from the operational to the strategic. Handling historical data during SAP implementations needs to begin with a requirements analysis and then continue...…

  10. Better Star Schema Design Means Better Performance

    Reading time: 13 mins

    Implementing an efficient star schema data model in your BW environment is critical if you expect your system to perform well. The author introduces you to the star schema and explains how it is used across the BW system and in the InfoCubes that underpin the system. Key Concept Data modeling in a BW system...…