EMERGE: Machine Learning Multi-Attribute Prediction for Reservoir Properties Workshop
April 14 - 15, 2026
Course overview
This course covers the theory and practical use of Emerge, an interactive program fully integrated within HampsonRussell Software that performs multi-attribute seismic analysis for seismic reservoir characterization using multivariate statistics and neural networks.
Topics covered include:
- Theory of seismic attributes, linear, non-linear, and neural network methodologies for attribute selection, cross-validation, and attribute ranking
- Application of attributes to convert seismic data volumes into geological or petrophysical volumes.
- Application of attributes to predict missing log data
- Attributes exercises using seismic data and well logs
Course benefits
- A comprehensive overview of the generation of seismic attributes
- Provides a mechanism for the user to derive complex relationships between seismic attributes and petrophysical parameters
- Understanding of how to recognize reliable attributes when estimating reservoir parameters.
- Basic theory of neural network technologies
- Application of neural network technology in well log prediction, petrophysical volume generation, and seismic lithology classification
- Structured to teach theory alongside practical exercises, equipping the user in the operation of the Emerge software
Software covered:
HampsonRussell Emerge
Who should attend?
Geophysicists, geologists, engineers, and technical staff who want to understand the theory and learn how to apply these increasingly critical techniques
Pre-requisite
Experience with HampsonRussell Software is not a prerequisite for this workshop; however, students will become familiar with its functionality through participation.
Duration
2 days (4 hours per day)
Format
Instructor-led, workflow-based, virtual training
*Please fill out the form to receive pricing details and further information.