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Abstract

Summary

Seismic Engine is an industry-leading cloud-native geophysical application designed to rapidly compute advanced seismic post-stack attributes on volumes of any size by leveraging scalable cloud resources. Seismic Engine offers a rich library of seismic attributes, processes, and computational tools that integrate both physics-based and data science-driven algorithms to enhance seismic data quality and highlight geological features. However, the variety of available tools can make it difficult for interpreters to identify the right components, configure parameters, and construct workflows effectively.

The introduction of a Generative AI workflow assistant powered by Amazon Bedrock makes it possible to automatically interpret users’ intent to generate and refine seismic workflows and answer application-related questions. The result is a streamlined user experience that enables geoscientists, data scientists, and data managers to fully uncover the potential of their seismic data—boosting innovation, productivity, and efficiency.

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/content/papers/10.3997/2214-4609.202639083
2026-03-09
2026-02-08
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