On-Demand Webinar

DECISIONS YOU CAN TRUST

Easily deploy and manage your models (R, Python or SAS)

About the webinar

The digital world of contactless commerce is being reimagined in ways that are reshaping consumer behavior. The “new normal” has brought about an immediate need to adjust to the global COVID-19 crisis. Organizations want to continue business while supporting the needs of their customers who are more than ever, in need of empathy.  Organizations can achieve this with decisions they can trust through easy data-driven model deployment and management.

Watch this webinar to learn how to:

  • Manage models from a variety of development tools in a single repository
  • Embed analytics into operational systems
  • Integrate advanced analytics into customer intelligence systems
  • Increase cross team collaboration around your modelling efforts

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About the Experts

Jacky Long

Senior Customer Advisor - Model Management, SAS

Jacky is a member of the SAS Global Practice and has implemented analytic lifecycle solutions with a large bank in Brazil, several telecoms in the US and Philippines, a Korean semiconductor manufacturer and multiple government agencies to name a few.  These solutions include model performance monitoring, standardization of the life cycle processes, assistance with regulatory compliance and workflow development.

Yi Jian Ching

ModelOps Engineer, SAS

At SAS, YJ is in a regional advisory role, where he works with organisations across Asia Pacific, on their specific challenges around operationalizing machine learning models at an enterprise scale, in order to drive decisions. In his day-to-day, he also works in the region on sales and support enablement activities and extensive demonstration building of SAS machine learning capabilities in order to support client-facing situations.