AI-integrated domain-specific data management: experience from developing well-log database management software in the Cuu Long basin
Abstract
The rapid advancement of artificial intelligence (AI), particularly Large Language Models, has significantly transformed data management and processing practices for both structured and unstructured data. This paper presents the experience of designing, implementing, and operating an AI-integrated geophysical well log database software for the Cuu Long basin at the Vietnam Petroleum Institute (VPI). The software was developed by leveraging AI to optimize the management, retrieval, and analysis of well logging data while ensuring strict security requirements.
The research results show that the product can be integrated with other supporting tools, contributing to an enhanced user experience.
Based on these findings, future development directions are proposed to optimize the system's efficiency and security.
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