Παρουσίαση Thesis Κας Δ. Ντέκα , στο ISCA Lab, 14:00, 6 July, με θέμα: “KUBERNETES-MANAGED EDGE–BASED AI SYSTEM ASSISTING PERSONS WITH DISABILITIES”

KUBERNETESMANAGED EDGEBASED AI SYSTEM ASSISTING PERSONS WITH DISABILITIES

Abstract

This study examines the design, implementation, and assessment of RealTimeCam, a lightweight edge computing system that integrates IoT devices with Kubernetes orchestration for realtime AI inference. The system utilizes a heterogeneous cluster comprising a virtualized master node operating on Ubuntu 22.04 and ARMbased Raspberry Pi worker nodes, integrating virtualized control with physical edge computation. K3s is a lightweight Kubernetes distribution that orchestrates containerized workloads, such as YOLOv8 for object detection and ByteTrack for multiobject tracking, while MediaMTX facilitates lowlatency RTSP/WebRTC video streaming. Performance evaluations indicate efficient CPU and memory usage, stable thermal and energy profiles, and near realtime pod scheduling across diverse nodes. Network analysis demonstrates latency below 10 milliseconds and consistent bandwidth allocation for realtime video and AI applications. A comparative analysis reveals the benefits of opensource, costeffective, and energyefficient edge deployments in relation to current IoTedge frameworks. The discussion addresses limitations related to hardware constraints, ephemeral storage, and singlemaster topology. Future directions encompass multinode scaling, GPU/NPU acceleration, federated learning, and dynamic workload management.

Μετάβαση στο περιεχόμενο