Journal article Open Access

Artificial Intelligence for Elastic Management and Orchestration of 5G Networks

Gutierrez-Estevez, David; Gramaglia, Marco; De Domenico, Antonio; Dandachi, Ghina; Khatibi, Sina; Tsolkas, Dimitris; Balan, Irina; Garcia-Saavedra, Andres; Elzur, Uri; Wang, Yue


JSON Export

{
  "files": [
    {
      "links": {
        "self": "https://zenodo.org/api/files/5b7d0133-53c3-416c-8424-8ca64daaf48f/WCM18_elasticity.pdf"
      }, 
      "checksum": "md5:621f4594572592decd584fbda613d743", 
      "bucket": "5b7d0133-53c3-416c-8424-8ca64daaf48f", 
      "key": "WCM18_elasticity.pdf", 
      "type": "pdf", 
      "size": 952045
    }
  ], 
  "owners": [
    65089
  ], 
  "doi": "10.5281/zenodo.3266981", 
  "stats": {
    "version_unique_downloads": 222.0, 
    "unique_views": 328.0, 
    "views": 356.0, 
    "version_views": 356.0, 
    "unique_downloads": 222.0, 
    "version_unique_views": 328.0, 
    "volume": 235155115.0, 
    "version_downloads": 247.0, 
    "downloads": 247.0, 
    "version_volume": 235155115.0
  }, 
  "links": {
    "doi": "https://doi.org/10.5281/zenodo.3266981", 
    "conceptdoi": "https://doi.org/10.5281/zenodo.3266980", 
    "bucket": "https://zenodo.org/api/files/5b7d0133-53c3-416c-8424-8ca64daaf48f", 
    "conceptbadge": "https://zenodo.org/badge/doi/10.5281/zenodo.3266980.svg", 
    "html": "https://zenodo.org/record/3266981", 
    "latest_html": "https://zenodo.org/record/3266981", 
    "badge": "https://zenodo.org/badge/doi/10.5281/zenodo.3266981.svg", 
    "latest": "https://zenodo.org/api/records/3266981"
  }, 
  "conceptdoi": "10.5281/zenodo.3266980", 
  "created": "2019-07-03T11:11:01.455819+00:00", 
  "updated": "2020-01-20T17:06:39.399614+00:00", 
  "conceptrecid": "3266980", 
  "revision": 4, 
  "id": 3266981, 
  "metadata": {
    "access_right_category": "success", 
    "doi": "10.5281/zenodo.3266981", 
    "description": "<p>The emergence of 5G enables a broad set of diversified and heterogeneous services with complex and potentially conflicting demands. For networks to be able to satisfy those needs, a flexible, adaptable, and programmable architecture based on network slicing is being proposed. Moreover, a softwarization and cloudification of the communications networks is required, where network functions (NFs) are being transformed from programs running on dedicated hardware platforms to programs running over a shared pool of computational and communication resources. This architectural framework allows the introduction of resource elasticity as a key means to make an efficient use of the computational resources of 5G systems, but adds challenges related to resource sharing and efficiency. In this paper, we propose Artificial Intelligence (AI) as a built-in architectural feature that allows the exploitation of the resource elasticity of a 5G network. Building on the work of the recently formed Experiential Network Intelligence (ENI) industry specification group of the European Telecommunications Standards Institute (ETSI) to embed an AI engine in the network, we describe a novel taxonomy for learning mechanisms that target exploiting the elasticity of the network as well as three different resource elastic use cases leveraging AI. This work describes the basis of a use case recently approved at ETSI ENI.</p>", 
    "license": {
      "id": "CC-BY-NC-ND-4.0"
    }, 
    "title": "Artificial Intelligence for Elastic Management and Orchestration of 5G Networks", 
    "journal": {
      "title": "IEEE Wireless Communications Magazine"
    }, 
    "relations": {
      "version": [
        {
          "count": 1, 
          "index": 0, 
          "parent": {
            "pid_type": "recid", 
            "pid_value": "3266980"
          }, 
          "is_last": true, 
          "last_child": {
            "pid_type": "recid", 
            "pid_value": "3266981"
          }
        }
      ]
    }, 
    "access_right": "open", 
    "grants": [
      {
        "code": "761445", 
        "links": {
          "self": "https://zenodo.org/api/grants/10.13039/501100000780::761445"
        }, 
        "title": "5G Mobile Network Architecture for diverse services, use cases, and applications in 5G and beyond", 
        "acronym": "5G-MoNArch", 
        "program": "H2020", 
        "funder": {
          "doi": "10.13039/501100000780", 
          "acronyms": [], 
          "name": "European Commission", 
          "links": {
            "self": "https://zenodo.org/api/funders/10.13039/501100000780"
          }
        }
      }
    ], 
    "publication_date": "2019-07-03", 
    "creators": [
      {
        "affiliation": "Samsung  Research  UK", 
        "name": "Gutierrez-Estevez, David"
      }, 
      {
        "affiliation": "University Carlos III of Madrid", 
        "name": "Gramaglia, Marco"
      }, 
      {
        "affiliation": "CEA Leti France", 
        "name": "De Domenico, Antonio"
      }, 
      {
        "affiliation": "CEA Leti France", 
        "name": "Dandachi, Ghina"
      }, 
      {
        "affiliation": "Nomor Research Germany", 
        "name": "Khatibi, Sina"
      }, 
      {
        "affiliation": "Mobics Greece", 
        "name": "Tsolkas, Dimitris"
      }, 
      {
        "affiliation": "Nokia  Bell  Labs  German", 
        "name": "Balan, Irina"
      }, 
      {
        "affiliation": "NEC Research Laboratories Europe GmbH, Germany", 
        "name": "Garcia-Saavedra, Andres"
      }, 
      {
        "affiliation": "Intel HQ", 
        "name": "Elzur, Uri"
      }, 
      {
        "affiliation": "Samsung  Research  UK", 
        "name": "Wang, Yue"
      }
    ], 
    "notes": "\u00a9 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works.", 
    "resource_type": {
      "subtype": "article", 
      "type": "publication", 
      "title": "Journal article"
    }, 
    "related_identifiers": [
      {
        "scheme": "doi", 
        "identifier": "10.5281/zenodo.3266980", 
        "relation": "isVersionOf"
      }
    ]
  }
}
356
247
views
downloads
All versions This version
Views 356356
Downloads 247247
Data volume 235.2 MB235.2 MB
Unique views 328328
Unique downloads 222222

Share

Cite as