Architectures and Challenges of AI Multi-Agent Frameworks for Financial Services

Artificial Intelligence (AI) multi-agent frameworks are enabling autonomous decision-making, intelligent collaboration, and the automation of complex workflows. These frameworks leverage Large Language Models (LLMs) and distributed AI systems to optimize operations across diverse sectors, with finan...

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Bibliographic Details
Published inCurrent Journal of Applied Science and Technology Vol. 44; no. 6; pp. 52 - 72
Main Author Joshi, Satyadhar
Format Journal Article
LanguageEnglish
Published Current Journal of Applied Science and Technology 24.06.2025
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ISSN2457-1024
2457-1024
DOI10.9734/cjast/2025/v44i64558

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Summary:Artificial Intelligence (AI) multi-agent frameworks are enabling autonomous decision-making, intelligent collaboration, and the automation of complex workflows. These frameworks leverage Large Language Models (LLMs) and distributed AI systems to optimize operations across diverse sectors, with finance emerging as one of the most impacted domains. AI agents are increasingly employed in risk assessment, regulatory compliance, algorithmic trading, fraud detection, and customer service, fundamentally altering how financial institutions operate and manage market dynamics. This paper presents a review of AI multi-agent frameworks, evaluating their architectures, applications, and deployment challenges within financial services. We conduct an in-depth comparative analysis of prominent frameworks, including LangChain, CrewAI, and OpenAI Swarm, assessing their strengths, limitations, and suitability for different financial applications. Furthermore, we examine how these frameworks integrate into financial ecosystems, facilitating automated decision-making, enhancing operational efficiency, and mitigating systemic risks. Despite the transformative potential of AI agents, their widespread adoption introduces critical challenges, such as data quality inconsistencies, lack of model explainability, regulatory concerns, and ethical dilemmas. This paper explores these issues, emphasizing the necessity for transparency, accountability, and robustness in AI-driven financial solutions. Additionally, we highlight the role of AI governance and risk mitigation strategies in ensuring regulatory compliance and alignment with financial industry standards. We also outline future research directions, advocating for the development of interpretable, scalable, and resilient AI agent frameworks. As financial automation continues to evolve, a deeper understanding of multi-agent AI systems is essential for leveraging their full potential while mitigating associated risks.
ISSN:2457-1024
2457-1024
DOI:10.9734/cjast/2025/v44i64558