소장자료
LDR | 03387nam a22005055i 4500 | ||
001 | 0100774988▲ | ||
003 | DE-He213▲ | ||
005 | 20231017113435▲ | ||
007 | cr nn 008mamaa▲ | ||
008 | 221005s2022 si | s |||| 0|eng d▲ | ||
020 | ▼a9789811948749▼9978-981-19-4874-9▲ | ||
024 | 7 | ▼a10.1007/978-981-19-4874-9▼2doi▲ | |
050 | 4 | ▼aTK5105.5-5105.9▲ | |
082 | 0 | 4 | ▼a004.6▼223▲ |
100 | 1 | ▼aGuo, Zehua.▼eauthor.▼4aut▼4http://id.loc.gov/vocabulary/relators/aut▲ | |
245 | 1 | 0 | ▼aBringing Machine Learning to Software-Defined Networks▼h[electronic resource] /▼cby Zehua Guo.▲ |
250 | ▼a1st ed. 2022.▲ | ||
264 | 1 | ▼aSingapore :▼bSpringer Nature Singapore :▼bImprint: Springer,▼c2022.▲ | |
300 | ▼aXIII, 68 p. 1 illus.▼bonline resource.▲ | ||
336 | ▼atext▼btxt▼2rdacontent▲ | ||
337 | ▼acomputer▼bc▼2rdamedia▲ | ||
338 | ▼aonline resource▼bcr▼2rdacarrier▲ | ||
347 | ▼atext file▼bPDF▼2rda▲ | ||
490 | 1 | ▼aSpringerBriefs in Computer Science,▼x2191-5776▲ | |
505 | 0 | ▼aChapter 1 Machine Learning for Software-Defined Networking -- Chapter 2 Deep Reinforcement Learning-based Traffic Engineering in SD-WANs -- Chapter 3 Multi-Agent Reinforcement Learning-based Controller Load Balancing in SD-WANs -- Chapter 4 Deep Reinforcement Learning-based Flow Scheduling for Power Efficiency in Data Center Networks -- Chapter 5 Graph Neural Network-based Coflow Scheduling in Data Center Networks -- Chapter 6 Graph Neural Network-based Flow Migration for Network Function Virtualization -- Chapter 7 Conclusion and Future work.▲ | |
520 | ▼aEmerging machine learning techniques bring new opportunities to flexible network control and management. This book focuses on using state-of-the-art machine learning-based approaches to improve the performance of Software-Defined Networking (SDN). It will apply several innovative machine learning methods (e.g., Deep Reinforcement Learning, Multi-Agent Reinforcement Learning, and Graph Neural Network) to traffic engineering and controller load balancing in software-defined wide area networks, as well as flow scheduling, coflow scheduling, and flow migration for network function virtualization in software-defined data center networks. It helps readers reflect on several practical problems of deploying SDN and learn how to solve the problems by taking advantage of existing machine learning techniques. The book elaborates on the formulation of each problem, explains design details for each scheme, and provides solutions by running mathematical optimization processes, conducting simulated experiments, and analyzing the experimental results.▲ | ||
650 | 0 | ▼aComputer networks .▲ | |
650 | 0 | ▼aMachine learning.▲ | |
650 | 0 | ▼aElectronic digital computers—Evaluation.▲ | |
650 | 1 | 4 | ▼aComputer Communication Networks.▲ |
650 | 2 | 4 | ▼aMachine Learning.▲ |
650 | 2 | 4 | ▼aSystem Performance and Evaluation.▲ |
710 | 2 | ▼aSpringerLink (Online service)▲ | |
773 | 0 | ▼tSpringer Nature eBook▲ | |
776 | 0 | 8 | ▼iPrinted edition:▼z9789811948732▲ |
776 | 0 | 8 | ▼iPrinted edition:▼z9789811948756▲ |
830 | 0 | ▼aSpringerBriefs in Computer Science,▼x2191-5776▲ | |
856 | 4 | 0 | ▼uhttps://doi.org/10.1007/978-981-19-4874-9▲ |

Bringing Machine Learning to Software-Defined Networks[electronic resource]
자료유형
국외eBook
서명/책임사항
Bringing Machine Learning to Software-Defined Networks [electronic resource] / by Zehua Guo.
개인저자
판사항
1st ed. 2022.
형태사항
XIII, 68 p. 1 illus. online resource.
총서사항
내용주기
Chapter 1 Machine Learning for Software-Defined Networking -- Chapter 2 Deep Reinforcement Learning-based Traffic Engineering in SD-WANs -- Chapter 3 Multi-Agent Reinforcement Learning-based Controller Load Balancing in SD-WANs -- Chapter 4 Deep Reinforcement Learning-based Flow Scheduling for Power Efficiency in Data Center Networks -- Chapter 5 Graph Neural Network-based Coflow Scheduling in Data Center Networks -- Chapter 6 Graph Neural Network-based Flow Migration for Network Function Virtualization -- Chapter 7 Conclusion and Future work.
요약주기
Emerging machine learning techniques bring new opportunities to flexible network control and management. This book focuses on using state-of-the-art machine learning-based approaches to improve the performance of Software-Defined Networking (SDN). It will apply several innovative machine learning methods (e.g., Deep Reinforcement Learning, Multi-Agent Reinforcement Learning, and Graph Neural Network) to traffic engineering and controller load balancing in software-defined wide area networks, as well as flow scheduling, coflow scheduling, and flow migration for network function virtualization in software-defined data center networks. It helps readers reflect on several practical problems of deploying SDN and learn how to solve the problems by taking advantage of existing machine learning techniques. The book elaborates on the formulation of each problem, explains design details for each scheme, and provides solutions by running mathematical optimization processes, conducting simulated experiments, and analyzing the experimental results.
주제
ISBN
9789811948749
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