P_PAII10_25 Exam Dumps
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| Certification Provider: | SAP |
|---|---|
| Exam Code / Number: | P_PAII10_25 |
| Exam Name: | SAP Certified Application Professional - SAP Predictive Analytics 2.5 |
| Exam Questions: | 0 |
| Corresponding Certification: | SAP Certification |
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SAP P_PAII10_25 Exam Syllabus Topics:
| Section | Weight | Objectives |
|---|---|---|
| Topic 1: Predictive Modeling Techniques | 30% | - Model configuration and parameter tuning - Integration with SAP HANA PAL and APL - Regression, classification, clustering, and time series models - Supervised and unsupervised learning methods |
| Topic 2: Deployment and Integration | 10% | - Integration with SAP systems and external tools - Operationalizing predictive workflows - Model deployment options |
| Topic 3: Model Validation and Evaluation | 15% | - Interpretation of results and reports - Overfitting detection and prevention - Performance metrics and quality assessment |
| Topic 4: Introduction to SAP Predictive Analytics | 20% | - Predictive analytics concepts and workflow - Overview of Automated Analytics and Expert Analytics interfaces - Use cases and business applications |
| Topic 5: Data Preparation and Manipulation | 25% | - Data cleaning, filtering, and transformation - Feature engineering and variable selection - Data connection and acquisition - Handling missing values and outliers |