Next Generation Software Reliability Prediction using Causal Learning

Robert Stoddard
Robert Stoddard possesses 36 years of experience within software quality, reliability, design and test engineering within both defense and industrial settings, including Texas Instruments and Motorola. Robert has a lengthy history of leadership roles within both the American Society for Quality (ASQ) and IEEE Reliability organizations, including contributions to several books on six sigma for more


Software reliability practice continues to evolve from a early focus on the modeling of software test failures for reliability estimation to the modeling of pre-test activities and software attributes for reliability prediction. The speaker believes the next major evolutionary step in software reliability research and practice will come with the application of causal learning. Causal learning has become a practical and exciting field rooted in matching methods employed long before Ronald Fisher created Designed Experimental methods in the 1930s and 1940s. This webinar will share the recently matured landscape of causal learning consisting of causal discovery and causal estimation. A brief description of causal methods, algorithms and modern publications will be shared along with recommendations on how reliability engineers might pursue learning and adopting causal learning.

Interested in Membership?

Take charge of your career and education. Join us today and get access to a wealth of webinars covering cutting edge topics important in reliability engineering today!

Find out more
Webinar Categories