基于Baidu Comate的AI技术在化探不规则网采样点自动编号中的应用

    Application of Baidu Comate-based AI technology to the automatic numbering of sampling points in irregular geochemical networks

    • 摘要: 数字化快速发展的时代,人工智能(AI)技术对传统工作模式带来了革命性的变化。本文基于百度Comate,提出了一种化探不规则网采样点自动编号方法,通过对12 000个化探采样点做自动编号测试,发现自动编号方法相较传统手工方法效率提高了99.8%,正确率提高至100%,说明该方法与传统方法相比更高效、准确,能有效避免人为错误,并提高工作效率。文中还讨论了AI在处理复杂指令时面临的挑战以及指令清晰度的重要性、复杂逻辑的辨识度、开发知识储备的必要性等问题。虽然AI技术显著提高了化探不规则网采样点自动编号的效率和正确率,但前期封装工具需具有代码阅读能力的人员进行代码的修改和验证,并且在AI辅助下的需求处理应是分步骤的,最后需将验证通过的代码封装为工具以复用。

       

      Abstract: In the era of rapid digitalization development, artificial intelligence (AI) technology has brought revolutionary changes to traditional work patterns. Based on Baidu Comate, this study proposed an automatic numbering method for sampling points in irregular geochemical networks. Automatic numbering tests, conducted on 12 000 geochemical sampling points, demonstrate that the method improved the efficiency by 99.8% and achieved 100% accuracy compared to the traditional manual method. This indicates that the proposed method is more efficient and accurate than traditional approaches, effectively avoiding human errors and improving work efficiency. This study also discussed the challenges AI faces in processing complex instructions, the importance of instruction clarity, the identification of complex logic, and the necessity of developing knowledge reserves. Although AI technology has significantly improved the efficiency and accuracy of the automatic numbering of sampling points in irregular geochemical networks, the early development of packaging tools requires personnel who can read codes to modify and verify the codes. Additionally, AI-assisted demand processing should be in phases, and ultimately, it is necessary to encapsulate verified codes into a tool for reuse.

       

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