Foundations and Architectures of Artificial Intelligence for Motor Insurance
About
This handbook presents a systematic treatment of the foundations and architectures of artificial intelligence for motor insurance, grounded in large-scale real-world deployment. It formalizes a vertically integrated AI paradigm that unifies perception, multimodal reasoning, and production infrastructure into a cohesive intelligence stack for automotive risk assessment and claims processing. At its core, the handbook develops domain-adapted transformer architectures for structured visual understanding, relational vehicle representation learning, and multimodal document intelligence, enabling end-to-end automation of vehicle damage analysis, claims evaluation, and underwriting workflows. These components are composed into a scalable pipeline operating under practical constraints observed in nationwide motor insurance systems in Thailand. Beyond model design, the handbook emphasizes the co-evolution of learning algorithms and MLOps practices, establishing a principled framework for translating modern artificial intelligence into reliable, production-grade systems in high-stakes industrial environments.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Scene Text Recognition | IIIT5K | Accuracy74.13 | 161 | |
| Scene Text Recognition | IC15 | Accuracy58.26 | 98 | |
| Scene Text Recognition | SVT | Accuracy88.1 | 79 | |
| Scene Text Recognition | SVTP | Accuracy82.17 | 64 | |
| Scene Text Recognition | CUTE80 | Accuracy66.67 | 59 | |
| Instance Segmentation | Thai Car Damage 1.0 (test) | AP36.2 | 4 | |
| Instance Segmentation | Part Model | AP62.317 | 2 |