• español
    • English
  • Login
  • English 
    • español
    • English
  • Publication Types
    • bookbook partconference objectdoctoral thesisjournal articlemagazinemaster thesispatenttechnical documentationtechnical report
View Item 
  •   IMDEA Networks Home
  • View Item
  •   IMDEA Networks Home
  • View Item
JavaScript is disabled for your browser. Some features of this site may not work without it.

Energy-Aware Adaptive Scaling of Server Farms for NFV with Reliability Requirements

Share
6
CITATIONS
6 total citations on Dimensions.
6 Total citations
6 Recent citations
3.84 Field Citation Ratio
n/a Relative Citation Ratio
Files
IEEE_TMC_preprint.pdf (1.212Mb)
Identifiers
URI: https://hdl.handle.net/20.500.12761/1717
DOI: 10.1109/TMC.2023.3288604
Metadata
Show full item record
Author(s)
Pérez-Valero, Jesús; Banchs, Albert; Serrano, Pablo; Ortin, Jorge; García-Reinoso, Jaime; Costa-Perez, Xavier
Date
2023-06-22
Abstract
Auto-scaling techniques aim to keep the right number of active servers for the current load: if this number is too small we risk service disruption, but if it is too large we waste resources. Despite the interest in the efficient operation of this type of systems, no prior work has addressed auto-scaling techniques for Network Function Virtualization (NFV) with stringent reliability requirements such as those envisioned in 5G (5 or 6 nines). To achieve such levels of reliability, we need to account for both the activation delay until servers become available (i.e., the wake-up or activation time) and the fallible nature of servers (which may fail with some probability). In this paper, we build on control theory to design an auto-scaling technique for a server farm for NFV that guarantees certain reliability while minimizing the number of active resources. We show that the use of well-established tools from control theory results in convergence times much shorter than those obtained with state-of-the-art reinforcement learning techniques. This shows that, despite the current trend to apply machine learning to all sorts of networking problems, there may be some cases where other techniques (such as control theory) can be more suitable.
Share
6
CITATIONS
6 total citations on Dimensions.
6 Total citations
6 Recent citations
3.84 Field Citation Ratio
n/a Relative Citation Ratio
Files
IEEE_TMC_preprint.pdf (1.212Mb)
Identifiers
URI: https://hdl.handle.net/20.500.12761/1717
DOI: 10.1109/TMC.2023.3288604
Metadata
Show full item record

Browse

All of IMDEA NetworksBy Issue DateAuthorsTitlesKeywordsTypes of content

My Account

Login

Statistics

View Usage Statistics

Dissemination

emailContact person Directory wifi Eduroam rss_feed News
IMDEA initiative About IMDEA Networks Organizational structure Annual reports Transparency
Follow us in:
Community of Madrid

EUROPEAN UNION

European Social Fund

EUROPEAN UNION

European Regional Development Fund

EUROPEAN UNION

European Structural and Investment Fund

© 2021 IMDEA Networks. | Accesibility declaration | Privacy Policy | Disclaimer | Cookie policy - We value your privacy: this site uses no cookies!