Achieving Trustworthy Real-Time Decision Support Systems with Low-Latency Interpretable AI Models
Zechun Deng, Ziwei Liu, Ziqian Bi, Junhao Song, Chia Xin Liang, Joe Yeong, Xinyuan Song, Junfeng Hao

TL;DR
This paper explores the development of low-latency, interpretable AI models for real-time decision support systems, emphasizing trustworthiness, edge deployment, and human-AI collaboration to enable efficient and adaptable decision-making.
Contribution
It provides a comprehensive review of recent advances in low-latency AI, model compression, and edge analytics, proposing strategies for trustworthy real-time decision support systems.
Findings
Enhanced AI models for edge devices
Effective methods for model compression and deployment
Frameworks for trustworthy and interpretable decision support
Abstract
This paper investigates real-time decision support systems that leverage low-latency AI models, bringing together recent progress in holistic AI-driven decision tools, integration with Edge-IoT technologies, and approaches for effective human-AI teamwork. It looks into how large language models can assist decision-making, especially when resources are limited. The research also examines the effects of technical developments such as DeLLMa, methods for compressing models, and improvements for analytics on edge devices, while also addressing issues like limited resources and the need for adaptable frameworks. Through a detailed review, the paper offers practical perspectives on development strategies and areas of application, adding to the field by pointing out opportunities for more efficient and flexible AI-supported systems. The conclusions set the stage for future breakthroughs in…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI)
MethodsSparse Evolutionary Training
