In-database technologies

SAS In-Database Technologies

Leverage your data where it lives.

SAS In-Database Technologies screenshot

Improved performance. Optimized data movement. Accelerated insights.

Rapid insights from efficient processing

Run your models “in the database” through in-database processing. Take advantage of optimized query execution plans and parallel processing capabilities by moving analytics to the data, resulting in high scalability and faster time to insight.

Enhanced productivity

Say goodbye to manual transformation and scoring steps for advanced analytics use cases, such as predictive modeling and machine learning. Automate model deployment processes with in-database processing and scoring accelerators, boosting data and IT operations team productivity.

Seamless access to superior data quality

Execute data quality functions – such as casing, extraction, match-code generation and identification analysis – inside the database. Eliminate network I/O overhead, and leverage multinode architecture for performance gains and improved security, as data never leaves the database.

Data that's always fresh and consistent

Minimize data movement by layering and co-locating analytics and AI in the database. Disconnected, manual processes and repetitive data movement slow decisions. Eliminate unnecessary data movement to drastically reduce processing time.

Get to Know SAS In-Database Technologies

SAS Viya is cloud-native and cloud-agnostic

Consume SAS how you want – SAS managed or self-managed. And where you want.

Microsoft Azure logo
Amazon Web Services logo
Google Cloud logo
Learn about SAS on OpenShift

Explore More on SAS In-Database Technologies and Beyond

User's Guide

SAS In-Database Products: User's Guide

Communities

Publish and Run a SAS Scoring Model in Azure Databricks

Communities

Publish and Run a SAS Scoring Model in Azure Synapse Analytics