1887

Abstract

Summary

Seismic imaging and interpretation are important workflows for the Oil and Gas (O&G) industry, offering critical subsurface insights for informed decision-making. This paper presents a case study of SEAM Subsalt TTI Model that effectively harnesses the advanced capabilities of HPC, cloud platforms, and AI/ML aided interpretation to improve and complement the traditional O&G industry workflow processes.

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/content/papers/10.3997/2214-4609.2023630015
2023-09-25
2025-12-10
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References

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