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Abstract

Summary

Integrating PVT with geochemistry data presents several challenges due to the inherent differences data’s nature and scale. These datasets typically sit in silos and integration is complicated by the need to reconcile these datasets, which often come from diverse sources and scales. Effective integration requires a multidisciplinary approach, combining expertise in reservoir, geochemistry, and data analytics to ensure accurate and meaningful interpretations. Our data curation workflows and technologies have culminated in a bespoke dashboard toolkit where fluids samples from both disciplines are surfaced in unison, to unlock access to powerful interpretations, only previously achieved through laborious manual efforts.

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/content/papers/10.3997/2214-4609.202539045
2025-03-24
2026-02-11
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References

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