What is SAS Event Stream Processing?
SAS Event Stream Processing delivers real-time event streaming analytics to detect patterns, uncover insights and act instantly on streaming data from IoT devices, sensors and transactions. With AI-powered, low-latency analytics, you can analyze millions of events per second across edge, cloud or on-premises environments.
How SAS Event Stream Processing works
Analyst & user accolades for SAS Event Stream Processing
Key features
Uncover insights at the edge and make real-time, intelligent decisions in the cloud using machine learning and streaming analytics.
Built for speed
Process large volumes of data. Handle millions of events per second with low latency, while supporting GPU acceleration.
Seamless integration
Consume today’s leading data sources in the cloud or at the edge, enabled by a comprehensive catalog of diverse prebuilt connectors and adapters.
Intuitive design environment
Easily build and test your models in a user-friendly, low-code environment to validate your project. Manage versions and promote projects to production with a streamlined workflow.
Instant insights, faster response
Empower your decisions with real-time alerts, tailored notifications and proactive updates, ensuring you're always one step ahead.
Analytics anywhere
Enhance your data streams with advanced analytical techniques and machine learning, available from the edge to the cloud.
Unified management & monitoring
Optimize your projects with status reporting, direct access to log files, built-in auditing, utilization tracking, real-time performance monitoring and intelligent resource management.
Native cloud support
Compatible with cloud technologies, utilizing Docker and Kubernetes for large-scale, elastic, distributed services.
Streaming fault tolerance
SAS patented 1+N-Way Failover system offers uninterrupted, secure and reliable service without data storage needs.
Simplified computer vision
Perform inference on video and still image data using streaming analytics for preprocessing, object detection and classification, supported by SAS and third-party machine learning frameworks.
Custom windows
Design new windows, reuse them across projects and share them with others to boost efficiency.
Get to know SAS Event Stream Processing
SAS Viya is cloud-native and cloud-agnostic
Consume SAS how you want – SAS managed or self-managed. And where you want.
Recommended resources for SAS Event Stream Processing
To browse resources by type, select an option below.
-
- Select resource type
- Аналитический отчет
- Краткое описание продукта
- Краткое описание решения
- Технический документ
- Вебинар
- Article
- Blog Post
- Book Excerpt
- Case Study
- Customer Story
- E-Book
- Infographic
- Infographic
- Interview
- Partner Brief
- Research
- Series
- Solution Brief
- Video
- Article Sensing a disturbance in the data
- E-Book Predictive power-up: How adding a GenAI layer to predictive maintenance tools is changing what’s possible in industrial sectors
- Аналитический отчет Advanced AI-Powered Energy Forecasting
- Article The opportunity of smart grid analytics
- Краткое описание решения Analyze streaming data from edge to enterprise to make intelligent decisions in real time
- Solution Brief Improve manufacturing quality
- Технический документ Analytics Accelerates Monetization Opportunities for Connected Vehicle and Mobility Services
- E-Book The Streaming Analytics Scaries: What they are and how to get over them
- Article Load Forecasting: Ensuring supply meets energy demand
- Infographic Streaming AI for improved decision making
- E-Book Rising Waters and Rapid Responses
- Partner Brief Streaming Analytics and Internet of Things
- Blog Post A conversation with Rijkswaterstaat: How SAS is helping keep the Netherlands safe
- Article Real-Time Customer Recommendation Systems for Data in Motion
- Технический документ Using Hybrid Cloud Capabilities for True Omnichannel Marketing
- Технический документ Channeling Streaming Data for Competitive Advantage
- Article Components of an information management strategy
- Blog Post SAS and Microsoft collaborate to democratize the use of Deep Learning Models
- Технический документ The Artificial Intelligence of Things
- Технический документ Securing Your IoT Solution Stack
- Технический документ TDWI Checklist Report Six Best Practices to Ignite the Customer Experience with IoT
- Технический документ The Autonomous Grid in the Age of the Artificial Intelligence of Things
- E-Book The Future of Energy & Utilities: Transform Through Innovation
- Технический документ The Energy Transition and Forecasting The Next Decade
- Аналитический отчет SAS: Providing a Comprehensive Approach to the IoT Analytics Life Cycle
- Customer Story IoT-данные с искусственным интеллектом сокращают время простоя, помогают дальнобойщикам продолжать грузоперевозки
- Article The future of IoT: On the edge
- Article 5 способов измерить здоровье улья с помощью аналитики и потоковых данных
- Customer Story Artificial intelligence and IoT analytics keep aircraft operational for crucial missions
- Аналитический отчет Top Strategic IoT Trends and Technologies Through 2023
- Аналитический отчет SAS is a Leader in The Forrester Wave™: Streaming Analytics, Q3 2017
- Аналитический отчет How Data Science Teams Leverage Machine Learning and Other Advanced Analytics
- Customer Story Electric cooperative sharpens forecasts, reduces energy costs
- Article IoT in healthcare: Unlocking true, value-based care
- Article Coming soon: The Industrial Internet and IoT standards
Related products & solutions
- Быстро и уверенно принимайте решения при одновременном сокращении затрат на транспортировку и хранение данных, независимо от их расположения: на периферии, в потоке передачи или в хранилище.
- Мониторинг, управление и отслеживание больших групп серверов обработки потоков событий SAS с помощью повторяемого, автоматизированного и отслеживаемого процесса.
- Управляйте онлайн-взаимодействием с клиентами и автоматизируйте процессы принятия решений во всей организации.
- Создайте бесперебойный процесс внедрения и управления моделями машинного обучения.
- Визуально изучайте все данные, открывайте новые закономерности и публикуйте отчеты в Интернете и на мобильных устройствах.
- Победите свои аналитические задачи, от экспериментальных до критически важных, с более быстрыми решениями в облаке. SAS Viya позволяет все м-исследователям данных, бизнес-аналитикам, разработчикам и руководителям - сотрудничать, масштабировать и эксплуатировать идеи в любом месте.
SAS Event Stream Processing frequently asked questions
What is SAS Event Stream Processing?
SAS Event Stream Processing is a real-time streaming analytics solution that enables organizations to capture, analyze and act on streaming data from any source. It uses AI and machine learning to identify patterns and support instant, data-driven decisions.
How does SAS Event Stream Processing handle large volumes of data?
SAS Event Stream Processing processes millions of events per second with low latency through a distributed, in-memory architecture that scales horizontally and supports GPU acceleration.
Can SAS Event Stream Processing run in the cloud or on the edge?
Yes. SAS Event Stream Processing runs anywhere – from edge devices to public or private clouds – using containerized, cloud-native deployment with Docker and Kubernetes.
What types of data can SAS Event Stream Processing analyze?
SAS Event Stream Processing supports both structured and unstructured data, including text, video, images and audio, allowing comprehensive analysis across diverse data streams.
How does SAS Event Stream Processing support AI and machine learning?
SAS Event Stream Processing integrates built-in AI and machine learning capabilities for real-time pattern detection, anomaly detection and predictive insights, enabling automated decision making.
What makes SAS Event Stream Processing different from other streaming platforms?
SAS Event Stream Processing combines low-latency stream processing with advanced analytics, version control, governance and visualization in one unified environment, supported by the SAS Viya platform.



