SAS Risk Modeling
Quickly develop, validate, deploy and track risk models in–house while minimizing model risk and improving model governance.
Key features
Superior risk data collection & management
Gives you easy access to all prerequisite third-party bureau, application, billing-payment and collections data from multiple data sources.
Fast, flexible scorecard development
Enables rapid in-house development, validation and implementation of risk models in a collaborative environment.
Unequaled performance reporting
Provides a wide selection of web-based model stability, performance (model monitoring), calibration and model-input validation reports, including those suggested by BCBS Working Paper 14.
Powerful, user-friendly interface
Lets you create models faster and reduce training costs with GUI-based data management, modeling data set creation, data mining and reporting tools.
Parameter sharing
Enables you to share parameters, such as derived variables, filters, binning schemes, data mining projects and notes to retain corporate IP while reducing staff churn and human resource risk.
In-database processing
Provides the advantage of powerful in-database processing capabilities for dealing with very large data sets.
Ability to combine machine learning & open source with traditional models
Lets you develop, deploy and monitor innovative machine learning models alongside traditional risk models within the same integrated environment.
Chartis RiskTech100® 2026 Awards
SAS ranks No. 2 overall – with seven category wins
SAS is ranked second overall in the world's foremost ranking of the Top 100 risk management and compliance technology providers. SAS also bested seven technology award categories, including AI for Banking, Balance Sheet Risk Management, Behavioral Modeling, Capital Optimization, Enterprise Stress Testing, IFRS 9 and Model Risk Management.
Related products, solutions & capabilities
- SAS for Risk Modeling & Decisioning | Powered by AzureModernize risk across the organization with a trusted solution for managing analytical models and decision strategies.
- SAS® Credit OriginationSimplify credit onboarding with an AI-powered platform that automates decisions, orchestrates data and integrates analytics in real time.
- SAS® Model StudioMaximize productivity and trust with a unified, scalable and collaborative machine learning platform.
SAS Risk Modeling frequently asked questions
What is SAS Risk Modeling?
SAS Risk Modeling is an integrated analytics platform for developing, validating, deploying and tracking credit and risk models in-house while minimizing model risk and ensuring governance.
What does SAS Risk Modeling do?
SAS Risk Modeling enables institutions to build risk models (such as credit and lending), process and manage data, and score or evaluate risk for lending products, all within a controlled and auditable environment.
What types of lending products does SAS Risk Modeling support?
SAS Risk Modeling supports virtually all lending products, including credit cards, installment loans, mortgages and commercial loans.
What are the main benefits of using SAS Risk Modeling?
- Enables data-driven risk decisions that help reduce losses and improve performance.
- Offers a scalable, in-house modeling environment that reduces dependency on external services and increases governance.
Is SAS Risk Modeling flexible? Can I combine traditional models with machine learning?
Yes, the software supports traditional statistical models, as well as machine learning and open source modeling approaches, allowing both types to coexist in the same environment.
Who typically uses SAS Risk Modeling?
Financial institutions and lenders – especially those managing credit risk, underwriting, loan originations, account management or collections – use it to build and maintain risk models internally.