ImageVerifierCode 换一换
格式:PDF , 页数:21 ,大小:1.20MB ,
资源ID:13360349      下载积分:20 金币
快捷注册下载
登录下载
邮箱/手机:
温馨提示:
快捷下载时,用户名和密码都是您填写的邮箱或者手机号,方便查询和重复下载(系统自动生成)。 如填写123,账号就是123,密码也是123。
特别说明:
请自助下载,系统不会自动发送文件的哦; 如果您已付费,想二次下载,请登录后访问:我的下载记录
支付方式: 支付宝    微信支付   
验证码:   换一换

开通VIP
 

温馨提示:由于个人手机设置不同,如果发现不能下载,请复制以下地址【https://www.zixin.com.cn/docdown/13360349.html】到电脑端继续下载(重复下载【60天内】不扣币)。

已注册用户请登录:
账号:
密码:
验证码:   换一换
  忘记密码?
三方登录: 微信登录   QQ登录  

开通VIP折扣优惠下载文档

            查看会员权益                  [ 下载后找不到文档?]

填表反馈(24小时):  下载求助     关注领币    退款申请

开具发票请登录PC端进行申请

   平台协调中心        【在线客服】        免费申请共赢上传

权利声明

1、咨信平台为文档C2C交易模式,即用户上传的文档直接被用户下载,收益归上传人(含作者)所有;本站仅是提供信息存储空间和展示预览,仅对用户上传内容的表现方式做保护处理,对上载内容不做任何修改或编辑。所展示的作品文档包括内容和图片全部来源于网络用户和作者上传投稿,我们不确定上传用户享有完全著作权,根据《信息网络传播权保护条例》,如果侵犯了您的版权、权益或隐私,请联系我们,核实后会尽快下架及时删除,并可随时和客服了解处理情况,尊重保护知识产权我们共同努力。
2、文档的总页数、文档格式和文档大小以系统显示为准(内容中显示的页数不一定正确),网站客服只以系统显示的页数、文件格式、文档大小作为仲裁依据,个别因单元格分列造成显示页码不一将协商解决,平台无法对文档的真实性、完整性、权威性、准确性、专业性及其观点立场做任何保证或承诺,下载前须认真查看,确认无误后再购买,务必慎重购买;若有违法违纪将进行移交司法处理,若涉侵权平台将进行基本处罚并下架。
3、本站所有内容均由用户上传,付费前请自行鉴别,如您付费,意味着您已接受本站规则且自行承担风险,本站不进行额外附加服务,虚拟产品一经售出概不退款(未进行购买下载可退充值款),文档一经付费(服务费)、不意味着购买了该文档的版权,仅供个人/单位学习、研究之用,不得用于商业用途,未经授权,严禁复制、发行、汇编、翻译或者网络传播等,侵权必究。
4、如你看到网页展示的文档有www.zixin.com.cn水印,是因预览和防盗链等技术需要对页面进行转换压缩成图而已,我们并不对上传的文档进行任何编辑或修改,文档下载后都不会有水印标识(原文档上传前个别存留的除外),下载后原文更清晰;试题试卷类文档,如果标题没有明确说明有答案则都视为没有答案,请知晓;PPT和DOC文档可被视为“模板”,允许上传人保留章节、目录结构的情况下删减部份的内容;PDF文档不管是原文档转换或图片扫描而得,本站不作要求视为允许,下载前可先查看【教您几个在下载文档中可以更好的避免被坑】。
5、本文档所展示的图片、画像、字体、音乐的版权可能需版权方额外授权,请谨慎使用;网站提供的党政主题相关内容(国旗、国徽、党徽--等)目的在于配合国家政策宣传,仅限个人学习分享使用,禁止用于任何广告和商用目的。
6、文档遇到问题,请及时联系平台进行协调解决,联系【微信客服】、【QQ客服】,若有其他问题请点击或扫码反馈【服务填表】;文档侵犯商业秘密、侵犯著作权、侵犯人身权等,请点击“【版权申诉】”,意见反馈和侵权处理邮箱:1219186828@qq.com;也可以拔打客服电话:0574-28810668;投诉电话:18658249818。

注意事项

本文(2026人工智能浪潮及其对6G的影响研究报告.pdf)为本站上传会员【宇***】主动上传,咨信网仅是提供信息存储空间和展示预览,仅对用户上传内容的表现方式做保护处理,对上载内容不做任何修改或编辑。 若此文所含内容侵犯了您的版权或隐私,请立即通知咨信网(发送邮件至1219186828@qq.com、拔打电话4009-655-100或【 微信客服】、【 QQ客服】),核实后会尽快下架及时删除,并可随时和客服了解处理情况,尊重保护知识产权我们共同努力。
温馨提示:如果因为网速或其他原因下载失败请重新下载,重复下载【60天内】不扣币。 服务填表

2026人工智能浪潮及其对6G的影响研究报告.pdf

1、V 1.0ngmn.orgAI SURGE AND ITS IMPLICATIONS FOR 6G2AI SURGE AND ITS IMPLICATIONS FOR 6Gby NGMN AllianceVersion:1.0Date:19 February 2026Document Type:PublicProgramme:6GApproved by/Date:NGMN Board,16 February 2026Public documents(P):2026 Next Generation Mobile Networks Alliance e.V.All rights reserved.

2、No part of this document may be reproduced or transmitted in any form or by any means without prior written permission from NGMN Alliance e.V.The information contained in this document represents the current view held by NGMN Alliance e.V.on the issues discussed as of the date of publication.This do

3、cument is provided“as is”with no warranties whatsoever including any warranty of merchantability,non-infringement,or fitness for any particular purpose.All liability(including liability for infringement of any property rights)relating to the use of information in this document is disclaimed.No licen

4、se,express or implied,to any intellectual property rights are granted herein.This document is distributed for informational purposes only and is subject to change without notice.Readers should not design products based on this document.3CONTENTS EXECUTIVE SUMMARY 401 INTRODUCTION 602 IMPACTS OF AI T

5、RAFFIC ON NETWORKS 7 2.1 Traffic Growth 7 2.2 Shift in Network Requirements803 NETWORK FOR AI 9 3.1 Performance vs.Business Value 9 3.2 Capabilities Beyond Connectivity 904 AI FOR NETWORK AND IMPLICATIONS FOR 6G ARCHITECTURE EVOLUTION 11 4.1 Network Management Layer 11 4.2 Core Network 12 4.3 Radio

6、Access Network 12 4.4 Key Challenges and Considerations 12 4.5 Implications for 6G Network Architecture Evolution 1305 CONCLUSION&STANDARDISATION FOCUS AREAS15 5.1 Conclusion 15 5.2 Recommended Standardisation Focus Areas 1506 LIST OF ABBREVIATIONS 1707 REFERENCES 1808 FIGURES 19ACKNOWLEDGEMENTS 204

7、EXECUTIVE SUMMARYThis is a pivotal moment in the telecommunications industry,propelled by the unprecedented AI surge and the beginning of 6G standardisation.AI is advancing at a rapid pace and will remain a dominant force,reshaping society far beyond the 6G era.This document consolidates NGMNs persp

8、ectives on how AI will likely impact 6G standardisation,providing guidance for ongoing 6G studies.This study examines three key dimensions:(1)impact of AI traffic on networks,(2)network for AI,and(3)AI for network and implications for 6G architecture evolution.Impact of AI Traffic on NetworksThe rap

9、id proliferation of AI applications particularly those with autonomous,task-driven capabilities-introduces significant uncertainty into future network demand.While the precise impact of these AI-driven workloads on traffic patterns is difficult to predict,several factors could materially alter today

10、s assumptions:Multi-modal AI applications:Services requiring real-time video exchange may drive substantial traffic growth and shift traditional traffic patterns.AI-enabled devices and use cases:Consumer applications(e.g.AR glasses)and enterprise scenarios(e.g.autonomous vehicles)could require frequ

11、ent upload of images and video after local processing,increasing uplink demand and challenging current downlink-heavy network designs.Geographic and device density:AI-intensive areas and device clusters may experience sharp,localised surges,creating increasingly uneven traffic patterns.Given these u

12、ncertainties,network design must prioritise flexibility.Standards Development Organisations should explore mechanisms that allow semi-permanent adjustments in uplink/downlink ratio without requiring major standard revisions,as well as solutions to enhance the uplink coverage.This adaptability will b

13、e critical to accommodate evolving AI-driven requirements across diverse devices,networks and regions.Network for AI6G should go beyond providing connectivity services to deliver new AI enabled services and capabilities(e.g.new data exposure),by designing networks that are more intelligent,flexible,

14、and trustworthy.Key design enablers include:Flexible(e.g.token-based)charging models reflecting real resource use.Dynamic and intelligent networking for AI agents collaboration.Support for explicit QoS and computing demand from an AI-based application,to facilitate meeting the required QoS at minimu

15、m cost and environmental impact.Enhanced QoS and adaptive policy control to support traffic routing achieving seamless connectivity.Unified data and model frameworks across devices and domains.Secure trust,authentication and authorisation mechanisms for AI agents digital identity.AI for Network and

16、Implications for 6G Architecture Evolution AI is expected to be an important network capability for 6G networks,enabling more efficient usage of network resources,network automation,intent-based management and intelligent orchestration.AI could be applicable to all domains and different layers of th

17、e network,including the operation and maintenance.NGMN expects that 6G will be AI-ready,and the 5G Service-Based Architecture(SBA)will be considered as the starting point towards 6G architecture.5Challenges and considerations for adopting AI:Adoption of AI capabilities should allow agents and large

18、language models(LLM)to be deployed in a way that avoids unnecessary impact on the existing architecture.This should not restrict the possible integration of AI-related features embedded within network functions(NFs).AI interfaces(e.g.,A2A,MCP)will complement existing and future APIs,ensuring readine

19、ss for the traffic volumes and capabilities required by emerging AI services.Multi-vendor interoperability frameworks are needed to ensure secure,scalable,and open ecosystems.Deployment strategies must align with cost and sustainability goals,and validation of real-world performance gains is essenti

20、al.Continued support for non-AI alternatives if these alternatives are necessary to ensure reliability,flexibility and openness.Coordinated UEnetwork operation is needed,i.e.,to efficiently execute AI models in both two-sided and one-sided models.Recommended Standardisation Focus Areas Standardised

21、architecture,protocols,and interfaces enabling efficient end-to-end support of AI functionalities,integrated across all domains(RAN,Core,Transport)and all network layers,including devices.Standards that support explicit network QoS and computing demand from an AI-based application,to facilitate meet

22、ing the required QoS at minimum cost and environmental impact.Standards that allow adaptability to support changing traffic patterns,accommodating uncertainty in the impact of evolving AI use cases.Evolution of the existing(5G SBA)network architecture should be justified by value driven AI use cases

23、 and service scenarios,ensuring alignment with societal and business needs.6G standards that support agent-to-agent and agent-to-network communications.Functional and performance requirements for AI capabilities across the 6G system.Establishment of interoperability and trust frameworks to enable se

24、cure,multi-vendor,and multi-agent deployments and operations(including models retraining,fine tuning).Emphasis on the reuse,adoption,or enhancement of“AI interface”from telco and non-telco worlds where appropriate and mainstream.(e.g.(A2A)Agent-to-Agent or(MCP)Model Context Protocol).601 INTRODUCTIO

25、NThe rapid evolution of large-scale AI models is driving a paradigm shift toward an“AI-native”era.The proliferation of large language and multi-modal models is enabling the emergence of AI agentsautonomous,collaborative,and self-learning entities that may outnumber human users in upcoming years.This

26、 shift toward pervasive,agent-driven ecosystems will fundamentally reshape industries,services,and everyday life.To support this transformation,networks may need to progressively introduce AI features for intent-driven programmability,autonomous operation,and dynamic compute distribution across cent

27、ral and edge domains.This evolution aims to deliver differentiated connectivity,high reliability,energy efficiency,and simplified operation,positioning 6G as the best network for AI and a foundation for AI-based applications,management,and innovation.As 6G standardisation enters a critical phase,the

28、 growth of AI and AI agents presents both opportunities and challenges for mobile network operators(MNOs).NGMN has outlined key 6G objectives and architectural design principles emphasising innovation across networks,AI,computing,sensing,modularity,operational simplicity,sustainability,trustworthine

29、ss,cloud nativeness,network-as-a-service,automation,smooth migration,and a disaggregated multi-vendor approach.These principles aim to guide the evolution of networks that are efficient,sustainable,cost-effective,and socially beneficial 1234567.To address the implications of AI on future network des

30、ign and ensure alignment with NGMNs objectives,this document examines three dimensions from an operators perspective and highlights recommended standardisation focus areas to support industry alignment:Impact of AI traffic on networks Network for AI AI for network and implications for network archit

31、ecture evolution702 IMPACTS OF AI TRAFFIC ON NETWORKS2.1 TRAFFIC GROWTHToday,mobile data consumption is dominated by video applications,accounting for 70-75%of total traffic 89.A handful of social media and streaming services contribute more than 50%of this demand.Although AI applications have grown

32、 exponentially,their current impact on mobile network traffic remains modest with primary interactions being text-based 10.This could change as AI services proliferate,but predicting the scale of impact remains highly speculative due to several factors:Optimisation of AI Models AI models are being o

33、ptimised using techniques such as quantisation,pruning and reduced token sizes to enable efficient high-performance inference directly on device.11 Local Processing More complex AI models are expected to run natively on device as chipsets evolve with larger and more capable Neural Processing Units(N

34、PU),faster on-chip memory and cache,increased RAM allocation for AI workloads and tighter integration of hardware with AI frameworks and runtime engines.Unclear Adoption Curve End-user adoption curve:it remains uncertain which new services provide true additional value for end-users,impacting servic

35、es adoption,traffic curves and commercial models.Regulatory and Privacy Constraints Several challenges would need to be resolved,for data-heavy AI features,such as automatic image or video capture via AR glasses.Against this uncertainty,the potential impact of AI on traffic growth needs to be consid

36、ered in the following aspects:Substitution of Current Demand Multi-modal AI applications are likely to proliferate capturing more user attention,with smartphones likely remaining a primary interface.However,it is expected that most video traffic from these applications will replace existing user beh

37、aviour such as watching social media video feeds rather than creating truly incremental demand.Potential Rise of Wearables AR glasses and similar interfaces could dramatically increase traffic if they continuously interact with cloud-based AI applications using video or images.This traffic would be

38、considered incremental,rather than substitutional,but adoption hinges on overcoming privacy and security concerns as discussed above.Enterprise and Other Applications Autonomous drones,connected cars,humanoid robots/cobots and industrial AI use cases could add significant trafficprovided technologic

39、al and regulatory hurdles are cleared.Uplink Trends Current uplink demand is moderate,but future use cases such as AI agents could reverse this trend 10.AI agents with advanced perception and reasoning capabilities may reside on smartphones or wearables,continuously gathering data and interacting au

40、tonomously-potentially generating far more data than humans,subject to battery capacity and computational power of the device.However,this shift is uncertain,as many AI agents could instead operate in the cloud,performing inference and delivering recommendations to the user.Future scenarios differ g

41、reatly in both likelihood and scale of impact.Use cases that drive truly incremental video traffic beyond todays demand will exert the greatest pressure on networks.While some scenarios 8present significant potential for increased demand,they must be weighed against their likelihood when setting pri

42、orities for network evolution.This uncertainty makes flexibility a cornerstone of 6G standardisation ensuring the network can adapt seamlessly to diverse and unpredictable requirements.2.2 SHIFT IN NETWORK REQUIREMENTSThe rise of AI may introduce fundamental changes in both the form and direction of

43、 traffic:Machine-oriented Media Traditional networks primarily carry human-perceivable content(text,images,audio,video).In contrast,agent-to-agent communication may involve exchanging models,feature vectors,latent representations,and other forms of information optimised for machines rather than huma

44、ns.Uplink-heavy Behaviour While todays traffic is mostly downlink-dominated,many AI-enabled use cases are assumed to reverse this pattern.For instance,AR glasses with AI may require continuous uplink transmission of environmental images,and AI-inferenced autonomous vehicles may upload real-time vide

45、o and sensor data more often,in contrast to traditional connectivity patterns.6G networks should support these use cases with sufficient flexibility to increase uplink traffic as a major design driver for 6G networks.For example,increased uplink(UL)slot occurrences that maximise the UL transmission

46、opportunities to manage the increased UL traffic expected with new services.Some of the proposals that are being discussed in industry and under review in 3GPP are around the definition of flexible and dynamic downlink(DL)/UL patterns,for example,Full-Duplex or Sub-band Full Duplex operation.Enhanci

47、ng UL coverage is also a desirable feature.Regional and Sectoral Variability The impact of AI traffic will differ across regions and industries.Urban centers are likely to experience more AI traffic surges than rural or remote areas.Certain industries such as manufacturing,transportation,healthcare,

48、and smart cities may generate higher volumes of AI traffic.AI-intensive areas and device clusters may experience sharp,localised surges,creating uneven traffic patterns.903 NETWORK FOR AIAI-driven applications impose new requirements on 6G networks,encompassing not only improved connectivity perform

49、ance but also new capabilities beyond connectivity.3.1 PERFORMANCE VS.BUSINESS VALUEFor performance improvements related to traditional connectivity,it is essential to validate the necessity of any network enhancements from a business value perspective in order to avoid unnecessary investment and re

50、source waste.While network optimisation can improve user experience to some extent,not all scenarios require extreme performance gains,as the existing services offered may not be directly impacted by these network enhancements.For example,humans generally have a relatively high tolerance for latency

移动网页_全站_页脚广告1

关于我们      便捷服务       自信AI       AI导航        抽奖活动

©2010-2026 宁波自信网络信息技术有限公司  版权所有

客服电话:0574-28810668  投诉电话:18658249818

gongan.png浙公网安备33021202000488号   

icp.png浙ICP备2021020529号-1  |  浙B2-20240490  

关注我们 :微信公众号    抖音    微博    LOFTER 

客服