Generative Artificial Intelligence: Fundamentals

J. Corchado, Sebastian López F., J. Núñez V., Raul Garcia S., P. Chamoso
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Abstract

Generative language models have witnessed substantial traction, notably with the introduction of refined models aimed at more coherent user-AI interactions—principally conversational models. The epitome of this public attention has arguably been the refinement of the GPT-3 model into ChatGPT and its subsequent integration with auxiliary capabilities such as search features in Microsoft Bing. Despite voluminous prior research devoted to its developmental trajectory, the model’s performance, and applicability to a myriad of quotidian tasks remained nebulous and task specific. In terms of technological implementation, the advent of models such as LLMv2 and ChatGPT-4 has elevated the discourse beyond mere textual coherence to nuanced contextual understanding and real-world task completion. Concurrently, emerging architectures that focus on interpreting latent spaces have offered more granular control over text generation, thereby amplifying the model’s applicability across various verticals. Within the purview of cyber defense, especially in the Swiss operational ecosystem, these models pose both unprecedented opportunities and challenges. Their capabilities in data analytics, intrusion detection, and even misinformation combatting is laudable; yet the ethical and security implications concerning data privacy, surveillance, and potential misuse warrant judicious scrutiny.
生成式人工智能:基础知识
生成语言模型受到了广泛的关注,特别是随着针对更协调的用户-人工智能交互(主要是会话模型)的改进模型的推出。GPT-3 模型被改进为 ChatGPT 以及随后与微软必应搜索功能等辅助功能的整合,可以说是这种公众关注的缩影。尽管之前有大量研究致力于研究该模型的发展轨迹,但该模型的性能以及在无数日常任务中的适用性仍然模糊不清,且与具体任务相关。在技术实现方面,LLMv2 和 ChatGPT-4 等模型的出现将话语权从单纯的文本连贯性提升到了细微的上下文理解和真实世界任务的完成。与此同时,以解释潜在空间为重点的新兴架构为文本生成提供了更精细的控制,从而扩大了该模型在各种垂直领域的适用性。在网络防御领域,特别是在瑞士的业务生态系统中,这些模型既带来了前所未有的机遇,也带来了前所未有的挑战。它们在数据分析、入侵检测,甚至打击错误信息方面的能力值得称赞;然而,有关数据隐私、监控和潜在滥用的伦理和安全影响值得审慎审查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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