BookmarkSubscribeRSS Feed

Ultra-Agile Approach for the Deployment of Real-Time Analytics Projects

Started ‎10-04-2023 by
Modified ‎10-04-2023 by
Views 1,667

Deploying real-time analytics projects at scale requires many steps, including data processing, model development, creation of a real-time process flow and deployment. This can be a tall order. Through the power of the end-to-end capabilities in SAS®, we've made this process simple and straightforward. We'll demonstrate using a project delivered in collaboration with ClearBlade, a SAS® partner. By entering just a few simple inputs, machine learning models are trained and deployed in real time to monitor energy output across all assets in the SAS solar farm. The ultra-agile approach retrieves data, builds comprehensive analytic datasets, trains models using a selected Model Studio pipeline, registers champion models to Model Manager, builds a real-time Event Stream Processing project and generates a deployable container that can be run in Docker or on a VM. Want to monitor the health of those models? Receive daily updates. Have a few minutes to attend? That's all you'll need to deploy world-class analytics in real time.

Contributors
Version history
Last update:
‎10-04-2023 03:54 PM
Updated by:

hackathon24-white-horiz.png

Join the 2025 SAS Hackathon!

Calling all data scientists and open-source enthusiasts! Want to solve real problems that impact your company or the world? Register to hack by August 31st!

Register Now

SAS Explore 2023 presentations are now available! (Also indexed for search at lexjansen.com!)

View all available SAS Explore content by category: 

Article Tags