International projects
Autopoietic Cognitive Edge-cloud Services
Organisations (1)
, Researchers (2)
1539 University of Ljubljana, Faculty of Computer and Information Science
| no. |
Code |
Name and surname |
Research area |
Role |
Period |
No. of publicationsNo. of publications |
| 1. |
18337 |
PhD Branko Matjaž Jurič |
Computer science and informatics |
Head |
2023 - 2025 |
726 |
| 2. |
19728 |
PhD Vlado Stankovski |
Computer science and informatics |
Researcher |
2023 - 2025 |
317 |
Abstract
The increasing need for cloud services at the edge (edge–services) is caused by the rapidly growing quantity and capabilities of connected
and interacting edge devices exchanging vast amounts of data. This poses different challenges to cloud computing architectures at the
edge, such as i) ability to provide end-to-end transaction resiliency of applications broken down in distributions of microservices; ii)
creating reliability and stability of automation in cloud management under increasing complexity iii) secure and timely handling of the
increasing and latency sensitive flow (east-west) of sensitive data and applications; iv)need for explainable AI and transparency of the
increasing automation in edge-services platform by operators, software developers and end-users. ACES will solve these challenges
by infused autopoiesis and cognition on different levels of cloud management to empower with AI different functionalities such as:
workload placement, service and resource management, data and policy management. ACES key outcomes will be: i) autopoiesis
cognitive cloud-edge framework; ii) awareness tools, AI/ML agents for workload placement, service and resource management, data
and policy management, telemetry and monitoring; iii) agents safeguarding stability in situations of extreme load and complexity; iv)
swarm technology-based methodology and implementation for orchestration of resources in the edge; v) edge-wide workload placement
and optimization service; vi) an app store for classification, storage, sharing and rating of AI models used in ACES. ACES will be
demonstrated and validated in 3 scenarios demanding for support of highly decentralised computing, ability to take autonomic decisions,
reducing costs of cloud-edge management and increasing their efficiency ,thus reducing impact on environment. To foster the uptake of
ACES outcomes beyond its lifespan, different activities are foreseen to drive adoption to a wider network of stakeholders in key sectors