FinRobot: Generative Business Process AI Agents for Enterprise Resource Planning in Finance
Hongyang Yang, Likun Lin, Yang She, Xinyu Liao, Jiaoyang Wang, Runjia Zhang, Yuquan Mo, Christina Dan Wang

TL;DR
This paper introduces GBPAs, an AI-native agent framework for ERP systems in finance, enabling dynamic, autonomous, and optimized workflows that significantly improve efficiency and accuracy in financial processes.
Contribution
It presents the first architecture of generative AI agents for ERP, integrating AI reasoning and multi-agent orchestration for real-time, flexible enterprise workflows.
Findings
40% reduction in processing time
94% decrease in error rate
Enhanced regulatory compliance
Abstract
Enterprise Resource Planning (ERP) systems serve as the digital backbone of modern financial institutions, yet they continue to rely on static, rule-based workflows that limit adaptability, scalability, and intelligence. As business operations grow more complex and data-rich, conventional ERP platforms struggle to integrate structured and unstructured data in real time and to accommodate dynamic, cross-functional workflows. In this paper, we present the first AI-native, agent-based framework for ERP systems, introducing a novel architecture of Generative Business Process AI Agents (GBPAs) that bring autonomy, reasoning, and dynamic optimization to enterprise workflows. The proposed system integrates generative AI with business process modeling and multi-agent orchestration, enabling end-to-end automation of complex tasks such as budget planning, financial reporting, and wire transfer…
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Taxonomy
TopicsBusiness Process Modeling and Analysis · Big Data and Business Intelligence
