On-Demand Webinar

The Data Scientist Learning Journey: How ModelOps Fits Into the Big Picture

This webinar series is designed for individuals who want to elevate their data science skills using SAS® and keep pace with the most innovative technology.

The Data Scientist Learning Journey

About the webinar

When facing your toughest business problems, your models may be your biggest asset.

Knowing how to use ModelOps effectively can help you make the connection between the insights from your data and the answers you need.

Join our experts to learn more about ModelOps and the training opportunities available to your organization.

Why attend:

  • Learn how ModelOps fits into the big picture of solving business problems.
  • Discover what you can accomplish with ModelOps.
  • Explore ModelOps terms.
  • Learn what your business needs to make ModelOps work.

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About the Experts


Catherine Truxillo
Director of Analytical Education, SAS

Catherine Truxillo has written or co-written SAS training courses for advanced statistical methods, including: multivariate statistics, linear and generalized linear mixed models, multilevel models, structural equation models, imputation methods for missing data, statistical process control, design and analysis of experiments, and cluster analysis. She also teaches SAS courses using SAS/IML®, SAS® Enterprise Guide®, SAS® Enterprise Miner, SAS Forecast Studio and JMP® software.


Peter Christie
Principal Analytical Training Consultant, SAS

Peter Christie started with SAS in 1997 as a consultant before joining the Statistical Training and Technical Services department in 2008. His current interests are data science, the Internet of Things, credit scoring and model management. Christie has worked in the retail, banking, chemical and pharmaceutical industries.