Tesi etd-11022025-174209 |
Link copiato negli appunti
Tipo di tesi
Tesi di dottorato di ricerca
Autore
MASSA, JACOPO
URN
etd-11022025-174209
Titolo
Declarative application and network management in the Cloud-Edge continuum
Settore scientifico disciplinare
INF/01 - INFORMATICA
Corso di studi
INFORMATICA
Relatori
tutor Prof. Brogi, Antonio
supervisore Prof. Dazzi, Patrizio
supervisore Prof. Forti, Stefano
supervisore Prof. Dazzi, Patrizio
supervisore Prof. Forti, Stefano
Parole chiave
- application management
- cloud-edge continuum
- declarative
- emulation
- network management
- simulation
Data inizio appello
27/11/2025
Consultabilità
Completa
Riassunto
The proliferation of Internet of Things (IoT) devices and latency-sensitive applications exposes the limits of Cloud-centric models. This thesis investigates declarative methodologies for managing applications and networks across the Cloud-Edge continuum, focusing on data-aware placement, deployment evaluation, and intent-based orchestration. We propose a declarative mathematical model for data-aware application placement that integrates data properties into placement and routing decisions. Implemented in DAPlacer and EdgeWise, it leverages Prolog-based reasoning for dynamic multi-service allocation while satisfying heterogeneous requirements. To enhance adaptivity, continuous reasoning mechanisms reduce computation time during migrations. We also introduce ECLYPSE, a simulation and emulation framework for evaluating Cloud-Edge placement strategies under realistic, reproducible conditions, enabling analysis of resource allocation, performance, and orchestration policies. Furthermore, we advance Intent-Based Networking (IBN) through declarative methods for modelling, translation, and conflict resolution of high-level intents. The DIPS and MultiDIPS prototypes enable scalable orchestration of Virtual Network Function (VNF) chains, while dgLBF provides declarative traffic engineering by translating network-level intents into reliable, latency-aware forwarding configurations.
File
| Nome file | Dimensione |
|---|---|
| phd_thesis_massa.pdf | 5.99 Mb |
Contatta l’autore |
|