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Journal of Artificial Intelligence and Big Data Disciplines

Keyword

agentic AI

Explore 2 research publications tagged with this keyword

2Publications
2Authors
1Years

Publications Tagged with "agentic AI"

2 publications found

2026

2 publications

Autonomous Compliance by Design: Agentic AI for Global Data Center Risk Governance

Dasari Vinay
5/18/2026

How can compliance ecosystems be designed as self-healing systems, resilient to breaches and capable of automatically preventing recurrences? Recent advances in agentic AI suggest technological solutions, even within current regulations. A case study in global risk governance for data centers demonstrates the research design, compliance ecosystem architecture, and three-dimensional self-healing anatomy: support, government, and control. Self-healing compliance ecosystems allow dynamic consumption of data in indicated modes and are self-healing in the enabling way of autonomic loops, embracing monitoring, remediation, and feedback. The design-supporting analysis suggests action-oriented responses to incidents, disaster recovery, and business continuity, while substantial performance improvements and lessons learned contribute to compliance resilience. Agentic AI allows an adaptive compliance ecosystem acting on behalf of a stakeholder body, enabling a self-healing compliance ecosystem.

Agentic AI-Powered Claims Intelligence: A Deep Learning Framework for Automating WorkersCompensation Claim Processing Using GenerativeAI

Avinash Reddy Aitha
2/24/2026

Workers compensation claim processing is extraor￾dinarily inefficient and causes claimants and employers to suffer. In a typical Australian workers compensation insurer, the Claim Establishment Process can require up to 28 manual steps performed by claim adjuster. Claims departments follow strict business rules that stipulate if a claimant is eligible for certain claim benefits as well as the appropriate medical certificates, certificates of capacity, statutory reserves and claim flags to allocate to the claimant. These are often automated or semi-automated in complexity, however in practice, require considerable agentic decision-making to complete the processing. Claim adjusters perform these decisions, which can be expensive and introduce wait times that delay claimants and employers from receiving their benefits. This feasibility study presents a deep learning framework designed to automate the workers compensation claim process using generative AI. A proof of concept application, entitled ClaimGPT, was implemented using the OpenAI API and Salesforce Einstein GPT, providing agentic AI capabilities for claim generation and decision-making. These capabilities were combined with natural language processing models for claim textual data and image generation for claim documentation. The framework was implemented in two existing workers compensation insurers, focusing on the Claim Establish￾ment and Claim Decision Process. Both implementations were successful in accelerating the claim processing, while reducing the size of the claim reserves allocated to each claim established. The image generation models for claim documentation synthesised novel claim scenes and demonstrated claim simulation capability on a specific insurance use case.

Keyword Statistics
Total Publications:2
Years Active:1
Latest Publication:2026
Contributing Authors:2
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