SAP Data Intelligence

SAP Data Intelligence
-0 %
The Comprehensive Guide
Sofort lieferbar | Lieferzeit: Sofort lieferbar I

Unser bisheriger Preis:ORGPRICE: 90,95 €

Jetzt 89,94 €*

Alle Preise inkl. MwSt. | Versandkostenfrei
Artikel-Nr:
9781493221622
Veröffentl:
2022
Erscheinungsdatum:
26.02.2022
Seiten:
783
Autor:
Dharma Teja Atluri
Gewicht:
1746 g
Format:
262x184x51 mm
Serie:
SAP Press
Sprache:
Englisch
Beschreibung:

Dharma Teja Atluri is an executive architect and artificial intelligence/machine learning evangelist at IBM. He has more than 18 years of experience working in advanced analytics with both SAP and non-SAP product lines. He has provided strategic direction to clients globally regarding the adoption of SAP and non-SAP advanced analytics products for artificial intelligence/machine learning operationalization, data management, information management, and analytics. He has also carried out multiple platform comparison initiatives for reporting, extract, transform load (ETL), data warehousing, and data science products across IBM, Microsoft Azure, Google, Amazon Web Services, and SAP. He has led the SAP analytics (reporting and enterprise information management) portfolio for IBM India, and designed client architectures for analytics with SAP and IBM capabilities. Dharma is an IBM master certified data scientist, architect, and technical specialist, and also an IBM thought leader certified consultant. His most recent SAP Data Intelligence sprint was featured for global consumption by clients and nominated for SAP Innovation Awards. He can be reached at https://linkedin.com/in/dharma.Devraj Bardhan is an accomplished global leader for SAP Innovations at IBM. He has led several large transformation projects, driving business growth agenda through innovation and digital efficiencies. He is an established subject matter expert (SME) for SAP S/4HANA, SAP Ariba and SAP Business Technology Platform, growing IBM's digital transformation capability by designing and implementing global templates and intelligent workflows. He is part of the global SAP Center of Competence at IBM and works very closely with SAP incubating the next big idea. Devraj can be reached via Twitter @devbard or via linkedin.com/in/bardhan.Santanu Ghosh is an SAP analytics practitioner working as a consultant for the past 15 years in the data warehouse space. He has worked with SAP Business Warehouse, SAP HANA, SAP BusinessObjects BI, and SAP Analytics Cloud. Recently, he has been working with the SAP Data Intelligence platform, delivering customer use cases and business content for the automotive industry. Santanu is a data science and machine learning enthusiast, and is pursuing a degree in data science. He has worked on multiple predictive analytics and machine learning projects over the past four years, for a variety of industries, leveraging SAP Data Intelligence, SAP Predictive Analytics, SAP HANA Predictive Analysis Library, and SAP HANA Automated Predictive Library. He is also experienced in programming using Python and R languages.Snehasish Ghosh is an enterprise information management consultant at IBM with more than 13 years of experience working with SAP's analytics and information management product portfolio. He has extensive experience in data integration and migration, data quality, and reporting. He has implemented a variety of SAP and non-SAP solutions, including SAP S/4HANA, SAP Business Warehouse, Amazon Web Services, and Salesforce. He has also worked with SAP enterprise information management solutions, including SAP Data Intelligence, SAP Information Steward, SAP Data Services, and SAP HANA smart data integration and smart data quality.Arindom Saha is an SAP business intelligence consultant with more than 11 years of experience working with the SAP analytics portfolio. He has extensive experience in SAP and non-SAP reporting and visualization products. He has implemented a variety of analytics solutions on different products, including SAP BusinessObjects BI, SAP HANA, SAP Business Warehouse, and Oracle RDBMS. He also has experience working with SAP Lumira, SAP Analytics Cloud, SAP Data Intelligence, and Tableau. His recent experience with SAP Data Intelligence has been contributing business content and working closely with cloud and on-premise providers to install and provision SAP Data Intelligence 3.1 as part of ongoing global initiatives.

Manage your data landscape with SAP Data Intelligence! Begin by understanding its architecture and capabilities and then see how to set up and install SAP Data Intelligence with step-by-step instructions. Walk through SAP Data Intelligence applications and learn how to use them for data governance, orchestration, and machine learning. Integrate with ABAP-based systems, SAP Vora, SAP Analytics Cloud, and more. Manage, secure, and operate SAP Data Intelligence with this all-in-one guide!

In this book, you'll learn about:

a. Configuration
Build your SAP Data Intelligence landscape! Use SAP Cloud Appliance Library for cloud deployment, including provisioning, sizing, and accessing the launchpad. Perform on-premise installations using tools like the maintenance planner.

b. Capabilities
Put the core capabilities of SAP Data Intelligence to work! Manage and govern your data with the metadata explorer, use the modeler application to create data processing pipelines, create apps with the Jupyter Notebook, and more.

c. Integration and Administration
Integrate, manage, and operate SAP Data Intelligence! Get step-by-step instructions for integration with SAP and non-SAP systems. Learn about key administration tasks and make sure your landscape is secure and running smoothly.

Highlights include:

1) Configuration and installation
2) Data governance
3) Data processing pipelines
4) Docker images
5) ML Scenario Manager
6) Jupyter Notebook
7) Python SDK
8) Integration
9) Administration
10) Security
11) Application lifecycle management
12) Use cases

Use machine learning, SAP Analytics Cloud, and SAP Data Warehouse Cloud to enrich business data
... Preface ... 21

... Why Read This Book? ... 21

... Audience ... 22

... Structure of the Book ... 23

... Acknowledgments ... 28

... Conclusion ... 29

PART I ... Getting Started ... 31

1 ... The Data Fabric for the Intelligent Enterprise ... 33

1.1 ... Data Fabric ... 34

1.2 ... Data Orchestration ... 38

1.3 ... SAP Business Technology Platform ... 40

1.4 ... SAP Data Intelligence ... 43

1.5 ... Summary ... 50

2 ... Architecture and Capabilities ... 51

2.1 ... Genesis of SAP Data Intelligence ... 52

2.2 ... SAP Data Intelligence Architecture ... 60

2.3 ... Deployment Options and Bring Your Own License Model ... 63

2.4 ... Kubernetes Cluster and Containers ... 68

2.5 ... SAP Data Intelligence Launchpad ... 86

2.6 ... Summary ... 91

3 ... Setup and Installation ... 93

3.1 ... Landscape Sizing ... 93

3.2 ... SAP Cloud Appliance Library ... 99

3.3 ... On-Demand Cloud Provisioning and Instance Sizing ... 107

3.4 ... Setting Up SAP Data Intelligence on SAP Cloud Appliance Library ... 113

3.5 ... SAP Data Intelligence 3.0 Installation On-Premise ... 150

3.6 ... Summary ... 168

4 ... Using SAP Data Intelligence Applications ... 169

4.1 ... SAP Data Intelligence Launchpad Applications ... 169

4.2 ... Applications for Data Engineers ... 172

4.3 ... Applications for Data Scientists ... 177

4.4 ... Applications for Modelers and Auditors ... 179

4.5 ... Applications for System Administrators ... 182

4.6 ... Summary ... 189

PART II ... Data Management, Orchestration, and Machine Learning ... 191

5 ... Metadata-Driven Data Governance ... 193

5.1 ... Metadata Explorer for Data Governance ... 194

5.2 ... Data Profiling to Understand Data ... 197

5.3 ... Managing Publications and Data Catalogs ... 202

5.4 ... Defining Data Quality Rules and Running Rulebooks ... 214

5.5 ... Data Lineage from Transformation History ... 230

5.6 ... Summary ... 235

6 ... Modeling Data Processing Pipelines ... 237

6.1 ... Using the SAP Data Intelligence Modeler ... 237

6.2 ... Creating and Managing Connections ... 250

6.3 ... Self-Service Data Preparation with the Metadata Explorer ... 255

6.4 ... Integrating, Processing, and Orchestrating Workflows ... 261

6.5 ... Scheduling and Monitoring Data Pipelines ... 270

6.6 ... Summary ... 273

7 ... Creating Operators and Data Types ... 275

7.1 ... Creating Custom Operators ... 276

7.2 ... Implementing Runtime Operators ... 288

7.3 ... Creating Data Types ... 290

7.4 ... Summary ... 293

8 ... Building Docker Images ... 295

8.1 ... Containers in Pods and Pods in Clusters ... 295

8.2 ... Assembling a Docker Image ... 298

8.3 ... Dockerfile Inheritance ... 303

8.4 ... Using Docker with Python ... 305

8.5 ... Summary ... 308

9 ... Machine Learning ... 309

9.1 ... Machine Learning with SAP ... 310

9.2 ... Machine Learning with SAP Data Intelligence ... 328

9.3 ... Using the ML Scenario Manager ... 333

9.4 ... ML Data Manager in Data Workspaces and Data Collections ... 365

9.5 ... Summary ... 371

10 ... Jupyter Notebook ... 373

10.1 ... Jupyter Notebook Fundamentals ... 374

10.2 ... Working with SAP HANA Cloud ... 386

10.3 ... Data Science Experiments with Jupyter Notebook ... 405

10.4 ... JupyterLab as the Next-Gen Jupyter Notebook ... 430

10.5 ... Summary ... 437

11 ... SAP Data Intelligence Python SDK ... 439

11.1 ... Using SAP Data Intelligence Python SDK ... 440

11.2 ... Accessing Artifacts Using Methods ... 448

11.3 ... Machine Learning Tracking SDK ... 450

11.4 ... Summary ... 454

PART III ... Integration ... 457

12 ... Integrating with ABAP Systems ... 459

12.1 ... Integration Scenarios ... 459

12.2 ... Provisioning Data from ABAP Systems ... 465

12.3 ... Using Operators to Trigger Execution in an ABAP System ... 472

12.4 ... SAP BW/4HANA and SAP Data Intelligence Hybrid Data Virtualization ... 478

12.5 ... Additional Connectivity ... 485

12.6 ... Summary ... 495

13 ... Integrating with Non-SAP Systems ... 497

13.1 ... Non-SAP Cloud System Connectivity ... 497

13.2 ... Non-SAP On-Premise System Connectivity ... 510

13.3 ... Summary ... 513

14 ... Integrating Big Data Workloads with SAP Vora ... 515

14.1 ... SAP Vora in Kubernetes Framework ... 516

14.2 ... Data Modeling in SAP Vora ... 524

14.3 ... Hierarchies in SAP Vora ... 536

14.4 ... Full-Text Search in SAP Vora ... 540

14.5 ... Summary ... 542

15 ... Integrating with SAP Data Warehouse Cloud ... 543

15.1 ... Overview of SAP Data Warehouse Cloud ... 543

15.2 ... Understanding Spaces ... 549

15.3 ... Exploring Connections and Using the Data Builder ... 561

15.4 ... Data Builder in SAP Data Warehouse Cloud versus Pipelines in SAP Data Intelligence ... 570

15.5 ... Summary ... 570

16 ... Integrating with SAP Analytics Cloud ... 571

16.1 ... Overview of SAP Analytics Cloud ... 571

16.2 ... Use Operators: Read File, Formatter, and Producer ... 582

16.3 ... Pipelines to Train, Predict, and Visualize Data ... 587

16.4 ... Summary ... 591

PART IV ... System Management, Security, and Operations ... 593

17 ... Administration ... 595

17.1 ... System Management Command-Line Client Reference ... 595

17.2 ... Administration Applications ... 599

17.3 ... Monitoring the SAP Data Intelligence Modeler ... 616

17.4 ... SAP Data Intelligence System Logging ... 626

17.5 ... System Diagnostics ... 631

17.6 ... Summary ... 637

18 ... Security ... 639

18.1 ... Approach to Data Protection ... 639

18.2 ... Authenticating Services and Users ... 642

18.3 ... Securely Connecting On-Premise Systems ... 658

18.4 ... Summary ... 659

19 ... Maintenance ... 661

19.1 ... Understanding Operational Modes or Run Levels ... 661

19.2 ... Switching the Platform to Maintenance Mode ... 662

19.3 ... Increasing System Management Persistent Volume Size ... 665

19.4 ... Performing Backups ... 668

19.5 ... Summary ... 671

20 ... Application Lifecycle Management ... 673

20.1 ... Version Control System ... 673

20.2 ... Git ... 674

20.3 ... Continuous Integration and Continuous Delivery ... 707

20.4 ... DevOps Fundamentals and Tools ... 713

20.5 ... SAP Data Intelligence as the MLOps Platform ... 723

20.6 ... Migrating from SAP Leonardo Machine Learning Foundation ... 730

20.7 ... Summary ... 734

21 ... Business Content and Use Cases ... 737

21.1 ... Digital Transformation and SAP Data Intelligence ... 737

21.2 ... Business Content by Industry ... 740

21.3 ... Finance Use Cases ... 746

21.4 ... Supply Chain Use Cases ... 747

21.5 ... Manufacturing Use Cases ... 749

21.6 ... Summary ... 751

... Appendices ... 753

A ... Outlook and Roadmap ... 753

B ... The Authors ... 763

... Index ... 765


Kunden Rezensionen

Zu diesem Artikel ist noch keine Rezension vorhanden.
Helfen sie anderen Besuchern und verfassen Sie selbst eine Rezension.