A00-225 Exam Dumps
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| Certification Provider: | SASInstitute |
|---|---|
| Exam Code / Number: | A00-225 |
| Exam Name: | SAS Advanced Predictive Modeling |
| Exam Questions: | 0 |
| Corresponding Certification: | SASInstitute Certification |
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SASInstitute A00-225 Certification Exam is an advanced-level certification that validates the skills and knowledge of individuals in the field of predictive modeling. SASInstitute is a globally recognized leader in analytical software solutions, and passing A00-225 exam demonstrates expertise in using SAS software to build predictive models.
The A00-225 exam is a computer-based test that consists of 70 multiple-choice questions. A00-225 exam is conducted in a proctored environment and has a duration of 2 hours and 15 minutes. The questions are designed to test the candidate's ability to use SAS to perform advanced predictive modeling tasks such as data exploration, variable selection, model building, and model assessment.
SASInstitute A00-225 Exam Syllabus Topics:
| Section | Weight | Objectives |
|---|---|---|
| Topic 1: Predictive Analytics on Big Data | 40% | - Scaling models for large datasets - High-performance modeling techniques - Working with distributed and in-memory data - SAS LASR Analytic Server and SAS Visual Analytics |
| Topic 2: Logistic Regression | 30% | - Interpretation of results - Model assessment and validation - Using SAS/STAT and SAS Enterprise Miner - Model building and variable selection |
| Topic 3: Neural Networks | 20% | - Neural network architecture design - Training and tuning neural models - Model evaluation and performance - Implementation in SAS Enterprise Miner |
| Topic 4: Open Source Models in SAS | 10% | - Integrating open source code with SAS - Deploying Python/R models in SAS environment - Productionalization of hybrid models |