计算机科学
生成语法
人工智能
生成模型
机器学习
数据科学
作者
Siva Sai,Keya Arunakar,Vinay Chamola,Amir Hussain,Pranav Bisht,Sanjeev Kumar
摘要
ABSTRACT Generative AI (GAI), which has become increasingly popular nowadays, can be considered a brilliant computational machine that can not only assist with simple searching and organising tasks but also possesses the capability to propose new ideas, make decisions on its own and derive better conclusions from complex inputs. Finance comprises various difficult and time‐consuming tasks that require significant human effort and are highly prone to errors, such as creating and managing financial documents and reports. Hence, incorporating GAI to simplify processes and make them hassle‐free will be consequential. Integrating GAI with finance can open new doors of possibility. With its capacity to enhance decision‐making and provide more effective personalised insights, it has the power to optimise financial procedures. In this paper, we address the research gap of the lack of a detailed study exploring the possibilities and advancements of the integration of GAI with finance. We discuss applications that include providing financial consultations to customers, making predictions about the stock market, identifying and addressing fraudulent activities, evaluating risks, and organising unstructured data. We explore real‐world examples of GAI, including Finance generative pre‐trained transformer (GPT), Bloomberg GPT, and so forth. We look closer at how finance professionals work with AI‐integrated systems and tools and how this affects the overall process. We address the challenges presented by comprehensibility, bias, resource demands, and security issues while at the same time emphasising solutions such as GPTs specialised in financial contexts. To the best of our knowledge, this is the first comprehensive paper dealing with GAI for finance.
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