Exploratory Data Analysis and the Rise of Large Language Models - Gaming Industry Insights

TEM Journal Pub Date : 2024-02-27 DOI:10.18421/tem131-59
Denitsa Zhecheva
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Abstract

The applications of modern large language models are diverse and new at the same time. It is forecasted that the scientific society and businesses may experience a long period of time exploring all opportunities and challenges for using them which will allow analysis of the impact on how advanced generative artificial intelligence is changing work occupation activities and performance efficiency. Undoubtedly, today’s question that every business must answer is not if but how to implement large language models, due to their ability to transform numerous business processes. This study aims to give a better understanding on how large language models are contributing to the process of exploratory data analysis as they are not here to replace the traditional methods but to add generative artificial intelligence capabilities to the well-established ones. The results of this paper reveal high level of accuracy of the paired output between operation prompts in OpenAI’s large language model and human-mediated entry. However, such output comparison highlighs the need for more informative and specific input prompts to ascertain this accuracy. Further caveats that need to be placed in consideration refer to possible system downtimes, as well as the expenses incurred with every prompt execution. Nevertheless, the comparative speed of operation of large language models remains their most substantial competitive advantage. Overall, the findings in this paper contribute to understanding that large language models streamline with ease the desired extraction of insightful information which may further be used for better decision-making, good data management, and design of winning growth strategy as is the case of the gaming industry.
探索性数据分析和大型语言模型的崛起 - 游戏产业观察
现代大型语言模型的应用多种多样,同时也很新颖。据预测,科学界和企业界可能会经历很长一段时间来探索使用大型语言模型的所有机遇和挑战,从而分析先进的生成式人工智能如何改变工作职业活动和工作效率。毫无疑问,当今每个企业都必须回答的问题不是 "是否 "而是 "如何 "实施大型语言模型,因为它们能够改变众多业务流程。本研究旨在让人们更好地了解大型语言模型是如何促进探索性数据分析过程的,因为大型语言模型并不是要取代传统方法,而是要为成熟的方法增加生成人工智能功能。本文的研究结果表明,OpenAI 大型语言模型中的操作提示与人工输入之间的配对输出具有很高的准确性。然而,这种输出对比强调了需要更翔实、更具体的输入提示来确定这种准确性。需要考虑的其他注意事项包括可能的系统停机时间以及每次执行提示所产生的费用。尽管如此,大型语言模型的运行速度仍然是其最大的竞争优势。总之,本文的研究结果有助于人们理解,大型语言模型可以轻松提取所需的有洞察力的信息,这些信息可进一步用于更好的决策、良好的数据管理和设计制胜的发展战略,游戏行业就是一个很好的例子。
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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