Dynamic Splitting of Diffusion Models for Multivariate Time Series Anomaly Detection in a JointCloud Environment
Abstract: Speeding up multivariate time series anomaly detection models in the JointCloud environment is a challenging task. Typically, anomaly detection models with high computational requirements are offloaded to cross-cloud nodes with abundant computational resources, which can accelerate the inference procedure. However, this cross-cloud task offloading is hampered by the instability of network conditions in the JointCloud environment. Meanwhile, compressing the anomaly detection model to a size suitable for being deployed onto a cloud node close to the application scenario may lead to dramatic performance loss. To overcome these challenges, dynamic splitting anomaly detection models emerge as a promising solution by utilizing the computational power of various cross-cloud nodes to reduce the computational cost while maintaining their performance.
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