3D Modeling and Automated Claim Systems on Carbon-Efficient Cloud with Optimized QA in Multi-Team Software Development

Authors

  • William Davis Sophie Walker University of St Andrews, St Andrews, United Kingdom Author

DOI:

https://doi.org/10.15680/IJCTECE.2025.0806001

Keywords:

3D Modeling, Automated Claim Systems, Carbon-Efficient Cloud Computing, Optimized Quality Assurance, Multi-Team Software Development, Sustainability, Workflow Automation, Resource Optimization, Insurance Technology, Software Engineering

Abstract

The integration of 3D modeling with automated claim systems offers transformative potential for insurance and software development workflows. This paper presents a framework that leverages 3D modeling technologies to enhance accuracy in claim assessment while deploying automated processing on carbon-efficient cloud infrastructures. The system incorporates optimized quality assurance (QA) mechanisms across multi-team software development environments to ensure resource-efficient, high-quality outputs. By combining advanced visualization, automation, and sustainable cloud computing, the approach improves operational efficiency, reduces environmental impact, and accelerates claim processing cycles. The proposed framework demonstrates how technology convergence can drive sustainable, reliable, and scalable solutions in modern software and insurance ecosystems.

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Published

2025-11-01

How to Cite

3D Modeling and Automated Claim Systems on Carbon-Efficient Cloud with Optimized QA in Multi-Team Software Development. (2025). International Journal of Computer Technology and Electronics Communication, 8(6), 11625-11630. https://doi.org/10.15680/IJCTECE.2025.0806001