0%

Book Description

Why is data integration still a challenge today? And what does data orchestration mean? In this report, Kevin Poskitt and Ginger Gatling from SAP provide in-depth examples that show how companies have evolved from using data integration to data orchestration. By combining streaming data with application data, external data, and social data, data engineers and developers can achieve trusted business outcomes.

You'll learn how to use R, Python, TensorFlow, Apache Kafka, and other open source tools--either to extract data from SAP to put into a data lake or to orchestrate and integrate massive data volumes across complex landscapes. If you're ready to close the gap between the data experts on the SAP team and the development professionals in your company, this guide is indispensable.

You'll examine:

  • Data integration challenges--and why data orchestration needs to evolve
  • The business imperative for data integration
  • The reality of hybrid data management today
  • Examples of how companies can use OS technologies for data integration
  • The challenges of managing multiple open source stacks
  • How to orchestrate integration and processing across OS tools while scaling across enterprise apps
  • How to leverage OS technologies with SAP Data Intelligence
  • How to address tool and data sprawl when using multiple tools and engines
  • Complex data orchestration examples
  • Machine learning within data orchestration

Table of Contents

  1. 1. Data Integration at Enterprise Scale
    1. The Continuing Data Integration Challenge
    2. Business Imperative for Data Integration
    3. Enterprise Data Strategy
    4. Hybrid Data Management
    5. Role of Open Source Technologies with Data Integration
      1. Challenges of Managing Multiple Open Source Stacks
    6. Summary
  2. 2. Evolving from Data Integration to Data Orchestration with SAP Data Intelligence
    1. Fundamental Architecture
    2. From Data Integration to Data Orchestration
      1. SAP Data
      2. Non-SAP Data
      3. Connectivity
      4. Metadata Management: Data Catalog and Fact Sheet
      5. Metadata Management: Business Understanding
      6. Data Processing
      7. Data Transforms
      8. Processing Engines
      9. Machine Learning Operationalization
      10. Workflows
    3. Summary
  3. 3. Examples of Data Orchestration at Scale in Complex Landscapes
    1. Example 1: Predict Quality in Manufacturing Industry
    2. Example 2: Extend the Usability of Complex Assets in the Utilities Industry
    3. Example 3: Understand and Predict Consumer Behavior in Consumer Products Industry
    4. Summary
    5. So, What Should You Do Next?
13.58.247.31