Large Language Models and Generative AI, Oh My!

IF 1.9 2区 历史学 0 ARCHAEOLOGY
Peter J. Cobb
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引用次数: 2

Abstract

Overview We have all read the headlines heralding, often hyperbolically, the latest advances in text- and image-based Artificial Intelligence (AI). What is perhaps most unique about these developments is that they now make relatively good AI accessible to the average Internet user. These new services respond to human prompts, written in natural language, with generated output that appears to satisfy the prompt. Consequently, they are categorized under the term “generative AI,” whether they are generating text, images, or other media. They work by modeling human language statistically, to “learn” patterns from extremely large datasets of human-created content, with those that specifically focus on text therefore called Large Language Models (LLMs). As we have all tried products such as ChatGPT or Midjourney over the past year, we have undoubtedly begun to wonder how and when they might impact our archaeological work. Here, I review the state of this type of AI and the current challenges with using it meaningfully, and I consider its potential for archaeologists.
大型语言模型和生成式人工智能,天哪!
我们都读过关于基于文本和图像的人工智能(AI)的最新进展的头条新闻(通常是夸张的)。这些发展的最独特之处在于,它们现在让普通互联网用户可以使用相对较好的人工智能。这些新服务响应用自然语言编写的人工提示,并生成似乎满足提示的输出。因此,无论是生成文本、图像还是其他媒体,它们都被归类为“生成式人工智能”。它们的工作原理是对人类语言进行统计建模,从人类创造的内容的超大数据集中“学习”模式,其中特别关注文本的数据集被称为大型语言模型(llm)。在过去的一年里,我们都尝试了ChatGPT或Midjourney等产品,毫无疑问,我们开始想知道它们将如何以及何时影响我们的考古工作。在这里,我回顾了这种类型的人工智能的状态和当前有意义地使用它的挑战,并考虑了它对考古学家的潜力。
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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来源期刊
CiteScore
3.70
自引率
21.40%
发文量
39
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