Description

  • This certification exam validates that the candidate possesses the fundamental and core knowledge required of the consultant profile. This certification proves that the candidate has an overall understanding and in‐depth technical skills to participate as a member of a project team in a mentored role. This certification exam is recommended as an entry level qualification to allow consultants to get acquainted with the fundamentals of SAP Predictive Analytics including how the various capabilities of SAP Predictive Analytics provide insights into specific business predictive analytics challenges.

Topic Areas

Please see below the list of topics that may be covered within this certification and the courses that cover them. Its accuracy does not constitute a legitimate claim; SAP reserves the right to update the exam content (topics, items, weighting) at any time.

Introduction to Predictive Analytics> 12%

Describe basic predictive modeling concepts, identify use cases for predictive algorithms, and outline the key capabilities of SAP Predictive Analytics.

  • PAII10 (SAP PREDICTIVE ANALYTICS 3.3)

—– OR —–

  • Book: SAP Predictive Analytics

Predictive Factory> 12%

Describe the key features of SAP Predictive Factory, including, but not limited to: building time series models, using classification modeling, using regression modeling, creating and scheduling tasks, and using deviation analysis.

  • PAII10 (SAP PREDICTIVE ANALYTICS 3.3)

—– OR —–

  • Book: SAP Predictive Analytics

Classification Modeling with Modeler> 12%

Build and apply classification models in Modeler, and implement deviation analysis.

  • PAII10 (SAP PREDICTIVE ANALYTICS 3.3)

—– OR —–

  • Book: SAP Predictive Analytics

Time Series with Modeler8% – 12%

Build, debrief and apply a time-series model in Modeler.

  • PAII10 (SAP PREDICTIVE ANALYTICS 3.3)

—– OR —–

  • Book: SAP Predictive Analytics

Clustering with Automated Analytics8% – 12%

Build, debrief and apply a clustering model in Modeler.

  • PAII10 (SAP PREDICTIVE ANALYTICS 3.3)

—– OR —–

  • Book: SAP Predictive Analytics

Data Science supporting Automated Analytics8% – 12%

Describe data partition strategies, data encoding, and interpretation of model curves.

  • PAII10 (SAP PREDICTIVE ANALYTICS 3.3)

—– OR —–

  • Book: SAP Predictive Analytics

Data Manager< 8%

Outline how to manipulate data in the Data Manager and how to use it to create dynamic data sets.

  • PAII10 (SAP PREDICTIVE ANALYTICS 3.3)
  • Book: SAP Predictive Analytics

Basics of Automated Analytics< 8%

Identify different data types, storage and variable roles, as well as how to handle missing values and outliers.

  • PAII10 (SAP PREDICTIVE ANALYTICS 3.3)

—– OR —–

  • Book: SAP Predictive Analytics

Social and Recommendation< 8%

Build a social recommendation and analysis.

  • PAII10 (SAP PREDICTIVE ANALYTICS 3.3)

—– OR —–

  • Book: SAP Predictive Analytics

Regression Modeling with Modeler< 8%

Build, debrief, save and apply a regression model in Modeler.

  • PAII10 (SAP PREDICTIVE ANALYTICS 3.3)
  • Book: SAP Predictive Analytics