Dekorationsartikel gehören nicht zum Leistungsumfang.
SAP Analytics Cloud: Predictive Analytics
Buch von Antoine Chabert (u. a.)
Sprache: Englisch

73,90 €*

inkl. MwSt.

Versandkostenfrei per Post / DHL

Lieferzeit 2-3 Werktage ab Escheinungsdatum. Dieses Produkt erscheint am 06.08.2024

Kategorien:
Beschreibung

Today's organizations must be prepared for tomorrow's events. Forecast future behavior in SAP Analytics Cloud with this comprehensive guide to predictive analytics! Start by learning about the data types, scenarios, and methods used in predictive analytics projects. Then follow step-by-step instructions to build, analyze, and apply predictive models to your business data using classification, time series forecasting, and regression analysis. Automate your models and dive into the data science with this all-in-one guide!


In this book, you'll learn about:


a. Predictive Scenarios and Projects


Understand the basics of predictive analytics in SAP Analytics Cloud: scenarios, data types, and actions. Then plan your predictive project, including identifying the key stakeholders and reviewing the methodology.


b. Build, Train, Analyze, and Apply


Master predictive models from end to end. Create classification, time series, and regression models; then train them to identify business patterns. Analyze and apply the results of your models to data in SAP Analytics Cloud.


c. Practical Demonstrations


See predictive analytics in action! Identify use cases for predictive modeling. For each data model, understand practical applications through curated examples with sample business data.


Highlights include:


1) Predictive scenarios


2) Predictive forecasts


3) Data modeling


4) Planning


5) Time series model


6) Classification model


7) Regression model


8) Multi-actions


9) Data science


10) Stories and dashboards

Today's organizations must be prepared for tomorrow's events. Forecast future behavior in SAP Analytics Cloud with this comprehensive guide to predictive analytics! Start by learning about the data types, scenarios, and methods used in predictive analytics projects. Then follow step-by-step instructions to build, analyze, and apply predictive models to your business data using classification, time series forecasting, and regression analysis. Automate your models and dive into the data science with this all-in-one guide!


In this book, you'll learn about:


a. Predictive Scenarios and Projects


Understand the basics of predictive analytics in SAP Analytics Cloud: scenarios, data types, and actions. Then plan your predictive project, including identifying the key stakeholders and reviewing the methodology.


b. Build, Train, Analyze, and Apply


Master predictive models from end to end. Create classification, time series, and regression models; then train them to identify business patterns. Analyze and apply the results of your models to data in SAP Analytics Cloud.


c. Practical Demonstrations


See predictive analytics in action! Identify use cases for predictive modeling. For each data model, understand practical applications through curated examples with sample business data.


Highlights include:


1) Predictive scenarios


2) Predictive forecasts


3) Data modeling


4) Planning


5) Time series model


6) Classification model


7) Regression model


8) Multi-actions


9) Data science


10) Stories and dashboards

Über den Autor
Antoine Chabert is a product manager for SAP Analytics Cloud. He joined SAP more than 16 years ago and developed his expertise in SAP Analytics products, including SAP BusinessObjects, SAP Lumira, SAP Predictive Analytics, and SAP Analytics Cloud, in various functional roles. He helps SAP Analytics Cloud customers get the most out of the product and he works with SAP Engineering to create exciting innovations, connecting predictive analytics, business intelligence, and planning. Antoine holds a master's degree in computer science engineering. Outside of the office, he loves reading, playing badminton, and spending time with his family.
Zusammenfassung
Enrich SAP Analytics Cloud stories and planning processes with predictive models
Inhaltsverzeichnis
... Preface ... 15

... Objective of This Book ... 15

... Target Audience ... 16

... Structure of This Book ... 16

... Acknowledgments ... 18

... Conclusion ... 19

I ... Getting Started ... 21

1 ... An Introduction to Predictive Analytics in SAP Analytics Cloud ... 23

1.1 ... The Importance of Predictive Analytics ... 23

1.2 ... Predictive Analytics in SAP Analytics Cloud ... 26

1.3 ... Customer Use Cases ... 30

1.4 ... Summary ... 34

2 ... What Are Predictive Scenarios? ... 35

2.1 ... Introducing Predictive Scenarios ... 35

2.2 ... The Different Types of Predictive Scenarios ... 41

2.3 ... The Predictive Ecosystem ... 42

2.4 ... Summary ... 51

3 ... Predictive Analytics Projects ... 53

3.1 ... Predictive Analytics Project Stakeholders ... 53

3.2 ... How to Implement a Predictive Analytics Project ... 56

3.3 ... Summary ... 68

II ... Time Series Forecasting Models ... 69

4 ... Introducing Time Series Forecasting Models ... 71

4.1 ... What Is Time Series Forecasting? ... 71

4.2 ... Data Sources for Time Series Forecasting Models ... 76

4.3 ... End-to-End Time Series Forecasting Workflows ... 82

4.4 ... Summary ... 84

5 ... Using Predictive Forecasts in the Planning Process ... 85

5.1 ... Business Scenario ... 85

5.2 ... Planning Models ... 86

5.3 ... Creating Time Series Forecasting Models with Predictive Planning ... 92

5.4 ... Understanding Time Series Forecasting Models ... 108

5.5 ... Improving Time Series Forecasting Models with Predictive Planning ... 120

5.6 ... Saving Predictive Forecasts ... 124

5.7 ... Including Predictive Forecasts in a Story ... 126

5.8 ... Summary ... 132

6 ... Automating the Production of Predictive Forecasts ... 133

6.1 ... Introducing Multi Actions ... 133

6.2 ... Creating Predictive Steps in Multi Actions ... 134

6.3 ... Using Multi Actions ... 138

6.4 ... Summary ... 142

7 ... Time Series Forecasting Models Using Datasets ... 143

7.1 ... Business Scenario ... 143

7.2 ... Creating and Editing Datasets ... 144

7.3 ... Creating Time Series Forecasting Models on Datasets ... 147

7.4 ... Understanding Time Series Forecasting Models Based on Datasets ... 154

7.5 ... Improving Time Series Forecasting Models Based on Datasets ... 157

7.6 ... Saving Predictive Forecasts ... 158

7.7 ... Including Predictive Forecasts in a Story ... 160

7.8 ... Summary ... 167

8 ... Best Practices and Tips for Time Series Forecasting Models ... 169

8.1 ... Going Beyond 1,000 Entities ... 169

8.2 ... Handling Time Series with Missing Data ... 173

8.3 ... Considering Time Granularities ... 177

8.4 ... Creating Ad Hoc Performance Indicators ... 180

8.5 ... Generating What-If Simulations ... 182

8.6 ... Forecasting Data at the Right Level ... 184

8.7 ... Summary ... 186

9 ... The Data Science behind Time Series Forecasting Models ... 187

9.1 ... End-to-End Process ... 187

9.2 ... Additive Modeling Technique ... 188

9.3 ... Exponential Smoothing ... 194

9.4 ... Predictive Model Selection ... 199

9.5 ... Summary ... 200

III ... Classification Models and Regression Models ... 201

10 ... Introducing Classification Models and Regression Models ... 203

10.1 ... What Is Classification? ... 203

10.2 ... What Is Regression? ... 207

10.3 ... Data Sources for Classification Models and Regression Models ... 209

10.4 ... End-to-End Workflow ... 213

10.5 ... Summary ... 214

11 ... Creating Classification Insights to Enrich Stories ... 217

11.1 ... Business Scenario ... 217

11.2 ... Using Datasets with Classification Models ... 218

11.3 ... Creating Classification Models ... 222

11.4 ... Understanding Classification Models ... 228

11.5 ... Improving Classification Models ... 245

11.6 ... Applying Classification Models ... 248

11.7 ... Enriching Stories with Classification Insights ... 251

11.8 ... Summary ... 260

12 ... Creating Regression Insights to Enrich Stories ... 261

12.1 ... Business Scenario ... 261

12.2 ... Using Datasets with Regression Models ... 262

12.3 ... Creating Regression Models ... 266

12.4 ... Understanding Regression Models ... 270

12.5 ... Improving Regression Models ... 275

12.6 ... Applying Regression Models ... 276

12.7 ... Enriching Stories with Regression Insights ... 279

12.8 ... Summary ... 285

13 ... The Data Science behind Classification Models and Regression Models ... 287

13.1 ... Fitting a Predictive Function ... 287

13.2 ... Prerequisites to Generating a Model ... 290

13.3 ... Evaluating the Model Performance ... 291

13.4 ... End-to-End Automated Modeling ... 297

13.5 ... Generating Predictive Insights ... 302

13.6 ... Summary ... 305

14 ... Conclusion ... 307

14.1 ... Lessons Learned ... 307

14.2 ... The Future of Predictive Scenarios in SAP Analytics Cloud ... 307

14.3 ... Your Next Steps ... 308

... The Authors ... 309

... Index ... 311
Details
Medium: Buch
Seiten: 315
Reihe: SAP Press Englisch
Inhalt: 315 S.
ISBN-13: 9781493224784
ISBN-10: 1493224786
Sprache: Englisch
Einband: Gebunden
Autor: Chabert, Antoine
Serre, David
Hersteller: Rheinwerk Publishing
Rheinwerk Verlag GmbH
Maße: 262 x 187 x 22 mm
Von/Mit: Antoine Chabert (u. a.)
Erscheinungsdatum: 06.08.2024
Gewicht: 0,752 kg
preigu-id: 128134636
Über den Autor
Antoine Chabert is a product manager for SAP Analytics Cloud. He joined SAP more than 16 years ago and developed his expertise in SAP Analytics products, including SAP BusinessObjects, SAP Lumira, SAP Predictive Analytics, and SAP Analytics Cloud, in various functional roles. He helps SAP Analytics Cloud customers get the most out of the product and he works with SAP Engineering to create exciting innovations, connecting predictive analytics, business intelligence, and planning. Antoine holds a master's degree in computer science engineering. Outside of the office, he loves reading, playing badminton, and spending time with his family.
Zusammenfassung
Enrich SAP Analytics Cloud stories and planning processes with predictive models
Inhaltsverzeichnis
... Preface ... 15

... Objective of This Book ... 15

... Target Audience ... 16

... Structure of This Book ... 16

... Acknowledgments ... 18

... Conclusion ... 19

I ... Getting Started ... 21

1 ... An Introduction to Predictive Analytics in SAP Analytics Cloud ... 23

1.1 ... The Importance of Predictive Analytics ... 23

1.2 ... Predictive Analytics in SAP Analytics Cloud ... 26

1.3 ... Customer Use Cases ... 30

1.4 ... Summary ... 34

2 ... What Are Predictive Scenarios? ... 35

2.1 ... Introducing Predictive Scenarios ... 35

2.2 ... The Different Types of Predictive Scenarios ... 41

2.3 ... The Predictive Ecosystem ... 42

2.4 ... Summary ... 51

3 ... Predictive Analytics Projects ... 53

3.1 ... Predictive Analytics Project Stakeholders ... 53

3.2 ... How to Implement a Predictive Analytics Project ... 56

3.3 ... Summary ... 68

II ... Time Series Forecasting Models ... 69

4 ... Introducing Time Series Forecasting Models ... 71

4.1 ... What Is Time Series Forecasting? ... 71

4.2 ... Data Sources for Time Series Forecasting Models ... 76

4.3 ... End-to-End Time Series Forecasting Workflows ... 82

4.4 ... Summary ... 84

5 ... Using Predictive Forecasts in the Planning Process ... 85

5.1 ... Business Scenario ... 85

5.2 ... Planning Models ... 86

5.3 ... Creating Time Series Forecasting Models with Predictive Planning ... 92

5.4 ... Understanding Time Series Forecasting Models ... 108

5.5 ... Improving Time Series Forecasting Models with Predictive Planning ... 120

5.6 ... Saving Predictive Forecasts ... 124

5.7 ... Including Predictive Forecasts in a Story ... 126

5.8 ... Summary ... 132

6 ... Automating the Production of Predictive Forecasts ... 133

6.1 ... Introducing Multi Actions ... 133

6.2 ... Creating Predictive Steps in Multi Actions ... 134

6.3 ... Using Multi Actions ... 138

6.4 ... Summary ... 142

7 ... Time Series Forecasting Models Using Datasets ... 143

7.1 ... Business Scenario ... 143

7.2 ... Creating and Editing Datasets ... 144

7.3 ... Creating Time Series Forecasting Models on Datasets ... 147

7.4 ... Understanding Time Series Forecasting Models Based on Datasets ... 154

7.5 ... Improving Time Series Forecasting Models Based on Datasets ... 157

7.6 ... Saving Predictive Forecasts ... 158

7.7 ... Including Predictive Forecasts in a Story ... 160

7.8 ... Summary ... 167

8 ... Best Practices and Tips for Time Series Forecasting Models ... 169

8.1 ... Going Beyond 1,000 Entities ... 169

8.2 ... Handling Time Series with Missing Data ... 173

8.3 ... Considering Time Granularities ... 177

8.4 ... Creating Ad Hoc Performance Indicators ... 180

8.5 ... Generating What-If Simulations ... 182

8.6 ... Forecasting Data at the Right Level ... 184

8.7 ... Summary ... 186

9 ... The Data Science behind Time Series Forecasting Models ... 187

9.1 ... End-to-End Process ... 187

9.2 ... Additive Modeling Technique ... 188

9.3 ... Exponential Smoothing ... 194

9.4 ... Predictive Model Selection ... 199

9.5 ... Summary ... 200

III ... Classification Models and Regression Models ... 201

10 ... Introducing Classification Models and Regression Models ... 203

10.1 ... What Is Classification? ... 203

10.2 ... What Is Regression? ... 207

10.3 ... Data Sources for Classification Models and Regression Models ... 209

10.4 ... End-to-End Workflow ... 213

10.5 ... Summary ... 214

11 ... Creating Classification Insights to Enrich Stories ... 217

11.1 ... Business Scenario ... 217

11.2 ... Using Datasets with Classification Models ... 218

11.3 ... Creating Classification Models ... 222

11.4 ... Understanding Classification Models ... 228

11.5 ... Improving Classification Models ... 245

11.6 ... Applying Classification Models ... 248

11.7 ... Enriching Stories with Classification Insights ... 251

11.8 ... Summary ... 260

12 ... Creating Regression Insights to Enrich Stories ... 261

12.1 ... Business Scenario ... 261

12.2 ... Using Datasets with Regression Models ... 262

12.3 ... Creating Regression Models ... 266

12.4 ... Understanding Regression Models ... 270

12.5 ... Improving Regression Models ... 275

12.6 ... Applying Regression Models ... 276

12.7 ... Enriching Stories with Regression Insights ... 279

12.8 ... Summary ... 285

13 ... The Data Science behind Classification Models and Regression Models ... 287

13.1 ... Fitting a Predictive Function ... 287

13.2 ... Prerequisites to Generating a Model ... 290

13.3 ... Evaluating the Model Performance ... 291

13.4 ... End-to-End Automated Modeling ... 297

13.5 ... Generating Predictive Insights ... 302

13.6 ... Summary ... 305

14 ... Conclusion ... 307

14.1 ... Lessons Learned ... 307

14.2 ... The Future of Predictive Scenarios in SAP Analytics Cloud ... 307

14.3 ... Your Next Steps ... 308

... The Authors ... 309

... Index ... 311
Details
Medium: Buch
Seiten: 315
Reihe: SAP Press Englisch
Inhalt: 315 S.
ISBN-13: 9781493224784
ISBN-10: 1493224786
Sprache: Englisch
Einband: Gebunden
Autor: Chabert, Antoine
Serre, David
Hersteller: Rheinwerk Publishing
Rheinwerk Verlag GmbH
Maße: 262 x 187 x 22 mm
Von/Mit: Antoine Chabert (u. a.)
Erscheinungsdatum: 06.08.2024
Gewicht: 0,752 kg
preigu-id: 128134636
Warnhinweis

Ähnliche Produkte

Ähnliche Produkte