iAnomaly: A Toolkit for Generating Performance Anomaly Datasets in Edge-Cloud Integrated Computing Environments
Microservice architectures are increasingly used to modularize IoT applications and deploy them in distributed and heterogeneous edge computing environments. Over time, these microservice-based IoT applications are susceptible to performance anomalies caused by resource hogging (e.g., CPU or memory)...
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Zusammenfassung: | Microservice architectures are increasingly used to modularize IoT
applications and deploy them in distributed and heterogeneous edge computing
environments. Over time, these microservice-based IoT applications are
susceptible to performance anomalies caused by resource hogging (e.g., CPU or
memory), resource contention, etc., which can negatively impact their Quality
of Service and violate their Service Level Agreements. Existing research on
performance anomaly detection in edge computing environments is limited
primarily due to the absence of publicly available edge performance anomaly
datasets or due to the lack of accessibility of real edge setups to generate
necessary data. To address this gap, we propose iAnomaly: a full-system
emulator equipped with open-source tools and fully automated dataset generation
capabilities to generate labeled normal and anomaly data based on user-defined
configurations. We also release a performance anomaly dataset generated using
iAnomaly, which captures performance data for several microservice-based IoT
applications with heterogeneous QoS and resource requirements while introducing
a variety of anomalies. This dataset effectively represents the characteristics
found in real edge environments, and the anomalous data in the dataset adheres
to the required standards of a high-quality performance anomaly dataset. |
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DOI: | 10.48550/arxiv.2411.02868 |