Failures are the norm in highly complex and heterogeneous devices spanning the distributed computing continuum (DCC), from resource-constrained IoT and edge nodes to high-performance computing systems. Ensuring reliability and global consistency across these layers remains a major challenge, especially for AI-driven workloads requiring real-time, adaptive coordination. This paper introduces a Probabilistic Active Inference Resilience Agent (PAIR-Agent) to achieve resilience in DCC systems. PAIR-Agent performs three core operations: (i) constructing a causal fault graph from device logs, (ii) identifying faults while managing certainties and uncertainties using Markov blankets and the free-energy principle, and (iii) autonomously healing issues through active inference. Through continuous monitoring and adaptive reconfiguration, the agent maintains service continuity and stability under diverse failure conditions. Theoretical validations confirm the reliability and effectiveness of the proposed framework.
翻译:在跨越分布式计算连续体(DCC)的高度复杂异构设备中,故障是常态,这些设备涵盖从资源受限的物联网与边缘节点到高性能计算系统。确保跨这些层级的可靠性与全局一致性仍是一项重大挑战,尤其对于需要实时自适应协调的AI驱动工作负载。本文提出一种概率主动推理韧性代理(PAIR-Agent),以实现DCC系统的韧性。PAIR-Agent执行三项核心操作:(i)从设备日志构建因果故障图,(ii)利用马尔可夫毯与自由能原理管理确定性与不确定性以识别故障,(iii)通过主动推理自主修复问题。通过持续监控与自适应重配置,该代理能在多样化故障条件下维持服务连续性与稳定性。理论验证证实了所提框架的可靠性与有效性。