Technical Architecture and Commercial Value of Cross-species Communication Intelligent Agent PetGuard

Main Article Content

Zihan Wang
Xintong Li
Junrui Zeng
Mingrui Yang
Chenxu Liu

Keywords

pet economy, agent technology, AIoT empowerment, service digital transformation, human-pet interaction ethics

Abstract

Based on the trend of digital transformation in the pet economy, this study systematically argues the structural empowering effect of agent technology on the industrial chain. By deconstructing pain points in core segments such as pet food, healthcare, and services (e.g., lagging health monitoring, misallocation of service resources), it proposes the adaptive logic and implementation path of AIoT technology clusters. Empirical analysis shows that smart wearable devices have improved health warning efficiency by 47% (PetPulse 2025 data), and AI diagnostic systems have expanded the reception capacity of pet hospitals by 2.3 times. The study also reveals three contradictions in technology implementation—device fragmentation (compatibility rate of only 62%), data sovereignty disputes, and emotional substitution thresholds—and subsequently proposes graded solutions. The findings provide a theoretical basis for the standardized development of smart pet products and industry policy formulation, marking an important breakthrough in three-dimensional integrated research on 'technology-industry-emotion'.

Abstract 10 | PDF Downloads 8

References

  • [1] Wang, X., et al. (2024). Understanding the Planning of LLM Agents: A Survey [J]. arXiv:2401.XXXX.
  • [2] Lanham, M. (2025). AI Agents in Action [M]. Manning Publications. Practical implementation of production-grade AI agents, including multi-agent systems, memory mechanisms, and decision-making architecture.
  • [3] Perspectives on Pet Phenomena: Multidisciplinary Issues and Innovative Directions [J]. Economic Geography, 42(7):1-12. Interdisciplinary Research on Pet Economy.
  • [4] Zhang, H., et al. (2024). Scaling Large Language Model-based Multi-Agent Collaboration [C]. 2024. Core Paper on Large-Scale Multi-Agent Collaboration