articleJan 12, 2026Closed access
Graph-Structured Deep Learning Framework for Multi-task Contention Identification with High-dimensional Metrics
XYXiao YangYNYinan NiYTYuqi TangZQZhimin QiuCWChen Wang
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Abstract
This study addresses the challenge of accurately identifying multi-task contention types in high-dimensional system environments and proposes a unified contention classification framework that integrates representation transformation, structural modeling, and a task decoupling mechanism. The method first constructs system state representations from high-dimensional metric sequences, applies nonlinear transformations to extract cross-dimensional dynamic features, and integrates multiple source information such as resource utilization, scheduling behavior, and task load variations within a shared representation space. It then introduces a graph-based modeling mechanism to capture latent dependencies among…
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Authors
6- XYXiao YangCorresponding
- YNYinan Ni
- YTYuqi Tang
- ZQZhimin Qiu
- CWChen Wang
Topics & keywords
Topics
Keywords
- Inference
- Weighting
- Performance metric
- Representation (politics)
- Feature learning
- Scheduling (production processes)
- Metric (unit)
- TRACE (psycholinguistics)
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