
Model deployment & management
SAS Model Manager
Build a streamlined, secure ModelOps process.
Connect data scientists, MLOPs engineers and business analysts. Deploy models quickly. And integrate with open source.
Ensure model governance and transparency.
A centralized, searchable repository for all types of models and analytical assets gives you complete visibility into your analytical processes, ensuring traceability and governance. The solution simplifies model management with version control. You can track project history through each step of the model management process and get a unified view of each model’s currency, definition and value. Using open REST APIs to access models and model-score artifacts streamlines IT work.
Easily validate models to ensure high-quality predictions.
Use our open source package, sasctl, to automatically generate executable scoring code for Python-based models. You can easily test models, validating model scoring logic before models are pushed into production, from an easy-to-use no-code interface.
Build once, deploy everywhere – no recoding required.
Efficiently move your analytical models from the innovation lab into your chosen production environment. SAS Model Manager has you covered, whether your need to: deploy models into databases; score data in batch; host a real-time REST API scoring endpoint; push models into a container hosted in registries on Docker, Azure, GCP or AWS; or deploy directly into Azure Machine Learning.
Automatically monitor model performance to keep them performing as expected.
SAS Model Manager automatically monitors the performance of models – from inception, to usage, to retirement – regardless of the language used to create them. Performance benchmarking reports display models’ scoring performance and document conformity to required standards. Alerts are generated to indicate model decay. As models are used across different departments, the solution produces extensive tracking, validation and auditing reports, and marks champion models for use in other applications. Ongoing monitoring lets you know when it’s time to refine or retire a model.
Increase efficiency by adapting models to reflect internal or external changes.
Continuously update models to keep pace with changing market and business conditions. You can retrain the existing model on new data, or revise the model using feature engineering or new data elements. Model retraining integrates with the model pipeline processing environment for greater efficiency.
Save time and resources by automating the model life cycle using a CI/CD approach.
SAS Model Manager enables you to integrate multiple environments, tools and applications using open REST APIs. You can automate the analytic life cycle by creating custom workflows that match your business requirements and processes.
Key Features
Simplify model collection creation and management with a web-based interface that easily automates the model management process.
Data access, preparation & quality
Access, profile, cleanse and transform data with an intuitive interface that provides self-service data preparation capabilities with embedded AI.
Custom chatbot creation
Create and deploy custom, natural language chatbots via an intuitive, low-code visual interface for chatbot-enabled insights and conversational user experiences.
Data visualization
Visually explore data, and create and share smart visualizations and interactive reports through a single, self-service interface. Augmented analytics and advanced capabilities accelerate insights and help you uncover stories hidden in your data.
Centralized & searchable model repository
Easily manage analytical models via a centralized, secure web-based repository. Prebuilt model life cycle templates let you manage projects collaboratively.
Task automation with custom workflows
Define and track custom workflows for all phases of model life cycle management – from problem-statement creation to model development and utilization.
Build once, deploy everywhere
Easily deploy models into business processes in a few clicks with rapid, automated model deployment – in batch or real time, in the cloud or at the edge.
Programming-only interaction through REST APIs
Use REST APIs to access, compare, assess and score models.
Cloud native
SAS Viya's architecture is compact, cloud native and fast. Whether you prefer to use the SAS Cloud or a public or private cloud provider, you'll be able to make the most of your cloud investment.
Cloud Providers
Conquer all your analytics challenges – from experimental to mission critical – with faster decisions in the cloud. The latest release of SAS Viya is now available on these cloud providers.
Customer Success
Look Who's Working Smarter With SAS Model Manager