AI-Driven Health Monitoring of Distributed Computing Architecture: Insights from XGBoost and SHAP
Journal:
arXiv
Published Date:
Dec 16, 2024
Abstract
With the rapid development of artificial intelligence technology, its
application in the optimization of complex computer systems is becoming more
and more extensive. Edge computing is an efficient distributed computing
architecture, and the health status of its nodes directly affects the
performance and reliability of the entire system. In view of the lack of
accuracy and interpretability of traditional methods in node health status
judgment, this paper proposes a health status judgment method based on XGBoost
and combines the SHAP method to analyze the interpretability of the model.
Through experiments, it is verified that XGBoost has superior performance in
processing complex features and nonlinear data of edge computing nodes,
especially in capturing the impact of key features (such as response time and
power consumption) on node status. SHAP value analysis further reveals the
global and local importance of features, so that the model not only has high
precision discrimination ability but also can provide intuitive explanations,
providing data support for system optimization. Research shows that the
combination of AI technology and computer system optimization can not only
realize the intelligent monitoring of the health status of edge computing nodes
but also provide a scientific basis for dynamic optimization scheduling,
resource management and anomaly detection. In the future, with the in-depth
development of AI technology, model dynamics, cross-node collaborative
optimization and multimodal data fusion will become the focus of research,
providing important support for the intelligent evolution of edge computing
systems.