C_PAII10_35 - SAP Certified Application Associate – SAP Predictive Analytics Practice Exam
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C_PAII10_35 - SAP Certified Application Associate – SAP Predictive Analytics Practice Exam
The C_PAII10_35 certification validates your grasp of the fundamental concepts and functionalities of SAP Predictive Analytics. This credential demonstrates your ability to participate in SAP Predictive Analytics projects as part of a team under the guidance of experienced professionals.
Who Should Take This Exam?
- Entry-level data analysts or business analysts: Individuals seeking to launch their careers in the field of predictive analytics, specifically using SAP solutions.
- SAP consultants (beginners): New consultants aiming to build a foundation for working on SAP Predictive Analytics implementations.
- Business users: Those who will be utilizing SAP Predictive Analytics reports and insights generated from data analysis.
Prerequisites
There are no formal prerequisites for taking the exam. However, a basic understanding of data analysis concepts, business processes, and familiarity with SAP terminology would be beneficial.
Roles and Responsibilities
- SAP Predictive Analytics Consultants: Implementing, configuring, and managing SAP Predictive Analytics for data exploration, modeling, and generating insights.
- Data Analysts: Utilizing SAP Predictive Analytics tools to analyze data, build predictive models, and communicate findings to stakeholders.
- Business Intelligence (BI) Professionals: Integrating SAP Predictive Analytics with other BI tools for comprehensive data analysis and reporting.
- Data Scientists (Junior Level): Contributing to data science projects that leverage SAP Predictive Analytics for data exploration and model building (may require further education).
Exam Details
- Exam Duration 180 mins
- Exam Format Multiple Choice
- Number of Questions 80 Questions
Course Structure
1. 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.
2. 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.
3. Classification Modeling with Modeler > 12%
- Build and apply classification models in Modeler, and implement deviation analysis.
4. Time Series with Modeler 8% - 12%
- Build, debrief and apply a time-series model in Modeler.
5. Clustering with Automated Analytics 8% - 12%
- Build, debrief and apply a clustering model in Modeler.
6. Data Science supporting Automated Analytics 8% - 12%
- Describe data partition strategies, data encoding, and interpretation of model curves.
7. Data Manager < 8%
- Outline how to manipulate data in the Data Manager and how to use it to create dynamic data sets.
8. Basics of Automated Analytics < 8%
- Identify different data types, storage and variable roles, as well as how to handle missing values and outliers.
9. Social and Recommendation < 8%
- Build a social recommendation and analysis.
10. Regression Modeling with Modeler< 8%
- Build, debrief, save and apply a regression model in Modeler.