Independent Researcher, NC, USA.
World Journal of Advanced Research and Reviews, 2024, 24(01), 2900-2910
Article DOI: 10.30574/wjarr.2024.24.1.3108
Received on 25 August 2024; revised on 25 October 2024; accepted on 29 October 2024
Aim: This study aims to explore the integration of agentic artificial intelligence (AI) into high-volume payment systems to enhance resilience, autonomy, and operational efficiency. It investigates how autonomous decision-making capabilities can strengthen financial infrastructures against disruptions, fraud, and scalability challenges. The objective is to conceptualize an “autonomous ledger” framework capable of adaptive learning and real-time response. Emphasis is placed on addressing latency, fault tolerance, and system recovery in digital payment ecosystems. The research also seeks to bridge gaps between traditional ledger systems and AI-driven automation. Ultimately, the aim is to redefine payment resilience through intelligent, self-governing systems.
Method: The research adopts a hybrid methodological approach combining system architecture design, simulation modeling, and comparative analysis. Agent-based modeling techniques are used to simulate AI-driven transaction environments under high-volume conditions. The study integrates distributed ledger technology (DLT) principles with reinforcement learning agents to evaluate decision autonomy. Data is analysed across stress-test scenarios including transaction surges, cyber threats, and node failures. Additionally, existing payment infrastructures are benchmarked against proposed AI-integrated models. This methodological framework ensures both theoretical and applied insights into system performance.
Results: Findings indicate that agentic AI significantly improves payment system resilience by enabling predictive failure detection and autonomous recovery mechanisms. The autonomous ledger demonstrates reduced transaction latency and enhanced throughput during peak loads. AI agents effectively mitigate fraud risks through continuous behavioural analysis and anomaly detection. System simulations show improved fault tolerance with minimal downtime compared to conventional systems. Furthermore, adaptive learning allows the system to optimize routing and settlement processes dynamically. These results validate the feasibility of integrating AI-driven autonomy into financial infrastructures.
Conclusion: The study concludes that the autonomous ledger represents a transformative advancement in payment system design. Integrating agentic AI enhances resilience, scalability, and operational intelligence. Financial institutions can benefit from reduced systemic risks and improved efficiency. However, challenges related to governance, explainability, and regulatory compliance remain critical. Future research should focus on ethical AI deployment and cross-border interoperability. Overall, the autonomous ledger provides a robust foundation for next-generation payment ecosystems.
Agentic AI; Autonomous Ledger; Payment Resilience; Distributed Systems; Financial Technology; High-Volume Transactions; Reinforcement Learning; Fault Tolerance
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Naresh Reddy Telukutla. The autonomous ledger: Integrating agentic AI into high-volume payment resilience. World Journal of Advanced Research and Reviews, 2024, 24(01), 2900-2910. Article DOI: https://doi.org/10.30574/wjarr.2024.24.1.3108.