Explorers Series

Unearth the possibilities in your data


Using Experimental Design to Increase Predictability, Optimize Processes and Lower Costs

Date: June 6, 2019
Time: 12:30 pm - 6:00 pm
Location: SAS Institute, 820 SAS Campus Dr., Cary, NC 27513
Registration & Networking Reception: Free

See agenda

Design of experiments (DOE) is a data-driven strategy that helps practitioners to better understand the underlying behavior of a system by identifying those factors that most affect desired outcomes. By optimizing your experimental design, you can more effectively take covariate information into account when setting up an experiment.

In this one-day seminar, DOE expert Bradley Jones will show how you can accelerate learning cycles with a new, more flexible method for experimentation. He’ll demonstrate how to use optimal designs which reduce the cost of experimentation, accommodate multiple types of factors and can be optimized when the design space is constrained.

You will learn how to use modern, computer-based methods to:

  • Find the few factors that most affect the response of interest.
  • Resolve ambiguity about what model best describes the underlying behavior of the system.
  • Deal with a problem wherein the blocks cannot be orthogonal to the other factor effects in the model.
  • Investigate the behavior of a chemical reaction using a full cubic model in two factors -- even when many of the factor-level combinations are known in advance to be infeasible.
  • Take covariate information into account when setting up an experiment.

Register now to attend in Cary.

  Please subscribe me to JMP Newswire, the monthly newsletter for JMP users.
  Yes, you may send me emails occasionally about JMP products and services. I understand that I can withdraw my consent at any time by clicking the opt-out link in the emails.

JMP is a division of SAS Institute Inc. Your information will be handled in accordance with the SAS Privacy Statement.

Jones, Bradley

Bradley Jones, PhD, is the Principal Research Fellow in the JMP division of SAS, where he is responsible for the development of new methods in design of experiments. Jones is a recipient of the Statistics in Chemistry award from the American Statistical Association and a two-time winner of the American Society for Quality’s Brumbaugh Award.

Back to Top