Teil der Reihe: Engineering (R0)

Intelligent Resource Scheduling in End-Edge-Cloud Networks

Angebot€149,79
inkl. MwSt. • Kein physischer Versand
Sofort per Download lieferbar
Nach dem Kauf direkt als Download verfügbar.

E-Book
eBook-Format:PDF

Benachrichtigung aktivieren

Wir informieren Sie per E-Mail, sobald dieses Produkt wieder verfügbar ist.

Inhaltsangabe

This book investigates technologies that enable more powerful resources and improve resource utilization for end-edge-cloud networks. The authors cover tools such as federated learning (FL) and real-time inference in industrial IoT and they present a novel communication and computation integration architecture for end-edge-cloud networks. Under the considered end-edge-cloud network architecture, the authors then propose different resource scheduling schemes based on centralized and distributed deep reinforcement learning methods to improve overall resource utilization for guaranteeing the diversified quality of service (QoS) requirements from different applications. The proposed architecture and schemes can not only be adopted in future end-edge-cloud networks to efficiently manage the multi-dimensional resources in real time, but also provide useful guidelines for multi-dimensional resource scheduling scheme designing and resource utilization enhancement in complex end-edge-cloud networks with diversified data services and applications.

Produktdetails
  • Erscheinungsdatum: 09.01.2026
  • Autor/Autorin: Weiting Zhang,Dong Yang,Shuai Gao,Hongke Zhang,Xuemin Shen
  • Reihe: Engineering (R0)
  • Format: E-Book
  • Dateiformat: PDF
  • Kopierschutz: Wasserzeichen
  • Dateigröße: 8.8 MB
  • Verlag: SPRINGER
  • Sprache: Englisch
  • Umfang: 145 Seiten
  • ISBN: 9783032076670
  • Lieferung: Sofort per Download
  • Hinweis: Sofort per Download lieferbar. Kein physischer Versand.
  • Kompatibilität: Lesbar auf Geräten und Apps mit PDF-Unterstützung.
Herstellerinformationen
Springer Nature Customer Service Center GmbH

Email: ProductSafety@springernature.com