Debugging Cloud Continuum Blueprint Primitives with an ML-based Steering Method Toward Extreme Conditions
Lovas, Robert
2025-08-07T06:55:59Z
2025-08-07T06:55:59Z
2025
1785-8860
hu_HU
http://hdl.handle.net/20.500.14044/32041
Debugging high-dimensional state spaces in cloud continuum environments poses
significant challenges, particularly when investigating extreme conditions such as high
latency, competing on resources, or configuration anomalies. This paper presents a novel
supervised machine learning-based approach to efficiently assist the debugging process by
steering toward potential fault states in an automated way. Leveraging typical blueprint
primitives, such as load balancers and temporal data storage in the presented case studies,
Multi-Layer Perceptron (MLP) and Dense Neural Networks (DNN) were trained to predict
the distance to extreme situations. The trained model informs a traversal mechanism that
explores the state space using this heuristic, minimizing the time and consumed resources
required to detect actual faults. The first experiments conducted with two foundational
blueprint primitives (buffers and multi-tier load balancers) demonstrate the promising
effectiveness of the approach in locating potential fault states. By integrating this method
into cloud-edge debugging tools, developers can enhance not only fault localization but
reliability and performance as well, particularly for extreme timing conditions. Future work
will explore a wider set of primitives, as well as adjacency matrix representations and
convolutional techniques, to improve applicability, scalability and robustness of the
presented solution.
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Debugging Cloud Continuum Blueprint Primitives with an ML-based Steering Method Toward Extreme Conditions
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Óbudai Egyetem
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Budapest
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Óbudai Egyetem
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