Deborah Sacrey Presents Talk on Machine Learning in AAPG Webinar

In this special session, renowned geoscientist Deborah Sacrey, founder of Auburn Energy and collaborator with Geophysical Insights, explored how multi-attribute machine learning using sample statistics was emerging as the next major disruptive technology in subsurface interpretation. Through real-world examples, she demonstrated how machine learning reduced interpretation risk and helped geoscientists extract meaningful detail beyond what conventional workflows typically revealed.
Watch the recording to learn how to:
-
Identify subtle subsurface patterns that were difficult to detect using traditional interpretation methods
-
Improve confidence in reservoir characterization by leveraging multiple seismic attributes simultaneously
-
Reduce uncertainty and risk in exploration and development decisions
-
Enhance subsurface understanding across a range of geologic settings and plays
Case histories included examples from the Permian Basin, Southern Oklahoma, and the Gulf Coast, illustrating how machine learning was reshaping interpretation workflows and enabling more confident decision-making.