Score: 0

ADApt: Edge Device Anomaly Detection and Microservice Replica Prediction

Published: March 25, 2025 | arXiv ID: 2504.03698v1

By: Narges Mehran , Nikolay Nikolov , Radu Prodan and more

Potential Business Impact:

Keeps smart gadgets running smoothly by predicting needs.

Business Areas:
Application Performance Management Data and Analytics, Software

The increased usage of Internet of Things devices at the network edge and the proliferation of microservice-based applications create new orchestration challenges in Edge computing. These include detecting overutilized resources and scaling out overloaded microservices in response to surging requests. This work presents ADApt, an extension of the ADA-PIPE tool developed in the DataCloud project, by monitoring Edge devices, detecting the utilization-based anomalies of processor or memory, investigating the scalability in microservices, and adapting the application executions. To reduce the overutilization bottleneck, we first explore monitored devices executing microservices over various time slots, detecting overutilization-based processing events, and scoring them. Thereafter, based on the memory requirements, ADApt predicts the processing requirements of the microservices and estimates the number of replicas running on the overutilized devices. The prediction results show that the gradient boosting regression-based replica prediction reduces the MAE, MAPE, and RMSE compared to others. Moreover, ADApt can estimate the number of replicas close to the actual data and reduce the CPU utilization of the device by 14%-28%.

Page Count
5 pages

Category
Computer Science:
Distributed, Parallel, and Cluster Computing