Machine Learning Specialist
Exam Content Guide
Below we provide a list of the objectives that will be tested on the exam.
For more specific details about each objective download the complete exam content guide.
Data Sources (30%)
- Create a project in Model Studio
- Explore the data
- Modify data
- Reduce the dimensionality of the data
- Use the VARIABLE SELECTION node to identify important variables
Building Models (50%)
- Describe key supervised machine learning terms and concepts
- Build models with decision trees and ensemble of trees
- Build models with neural networks
- Build models with support vector machines
- Use Model Interpretability tools to explain black box models
- Incorporate externally written code
Model Assessment and Deployment (20%)
- Explain the principles of Model Assessment
- Assess and compare models in Model Studio
- Deploy a model
Zusätzliche Ressourcen
Certification Community
Machen Sie mit und werden Sie Teil der Community.
Certified Professional Directory
Ein Register von SAS Certified Professionals.
FAQ
Haben Sie eine Frage? Benötigen Sie mehr Informationen? Wir helfen Ihnen gerne..