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عنوان
Developing networks using artificial intelligence /

پدید آورنده
Haipeng Yao, Chunxiao Jiang, Yi Qian.

موضوع
Artificial intelligence.,Computer networks.,Artificial intelligence.,Computer networks.

رده
Q335

کتابخانه
Center and Library of Islamic Studies in European Languages

محل استقرار
استان: Qom ـ شهر: Qom

Center and Library of Islamic Studies in European Languages

تماس با کتابخانه : 32910706-025

INTERNATIONAL STANDARD BOOK NUMBER

(Number (ISBN
3030150283
(Number (ISBN
3030150291
(Number (ISBN
3030150305
(Number (ISBN
9783030150280
(Number (ISBN
9783030150297
(Number (ISBN
9783030150303
Erroneous ISBN
3030150275
Erroneous ISBN
9783030150273

TITLE AND STATEMENT OF RESPONSIBILITY

Title Proper
Developing networks using artificial intelligence /
General Material Designation
[Book]
First Statement of Responsibility
Haipeng Yao, Chunxiao Jiang, Yi Qian.

.PUBLICATION, DISTRIBUTION, ETC

Place of Publication, Distribution, etc.
Cham :
Name of Publisher, Distributor, etc.
Springer,
Date of Publication, Distribution, etc.
2019.

PHYSICAL DESCRIPTION

Specific Material Designation and Extent of Item
1 online resource (xi, 248 pages) :
Other Physical Details
illustrations

SERIES

Series Title
Wireless networks,
ISSN of Series
2366-1186

CONTENTS NOTE

Text of Note
Intro; Preface; Acknowledgments; Contents; 1 Introduction; 1.1 Background; 1.2 Overview of SDN and Machine Learning; 1.2.1 Software Defined Networking (SDN); 1.2.2 Machine Learning; 1.2.2.1 Supervised Learning; 1.2.2.2 Unsupervised Learning; 1.2.2.3 Reinforcement Learning; 1.3 Related Research and Development; 1.3.1 3GPP SA2; 1.3.2 ETSI ISG ENI; 1.3.3 ITU-T FG-ML5G; 1.4 Organizations of This Book; 1.5 Summary; 2 Intelligence-Driven Networking Architecture; 2.1 Network AI: An Intelligent Network Architecture for Self-Learning Control Strategies in Software Defined Networks
Text of Note
2.1.1 Network Architecture2.1.1.1 Forwarding Plane; 2.1.1.2 Control Plane; 2.1.1.3 AI Plane; 2.1.2 Network Control Loop; 2.1.2.1 Action Issue; 2.1.2.2 Network State Upload; 2.1.2.3 Policy Generation; 2.1.3 Use Case; 2.1.4 Challenges and Discussions; 2.1.4.1 Communication Overhead; 2.1.4.2 Training Cost; 2.1.4.3 Testbeds; 2.2 Summary; References; 3 Intelligent Network Awareness; 3.1 Intrusion Detection System Based on Multi-Level Semi-Supervised Machine Learning; 3.1.1 Proposed Scheme (MSML); 3.1.1.1 Pure Cluster Extraction (PCE); 3.1.1.2 Pattern Discovery (PD)
Text of Note
3.1.1.3 Fine-Grained Classification (FC)3.1.1.4 Model Updating; 3.1.1.5 The Hyper-Parameters; 3.1.2 Evaluation; 3.1.2.1 Dataset; 3.1.2.2 Data Pre-process; 3.1.2.3 Evaluation Criteria; 3.1.2.4 Baseline Model; 3.1.2.5 MSML; 3.2 Intrusion Detection Based on Hybrid Multi-Level Data Mining; 3.2.1 The Framework of HMLD; 3.2.2 HMLD with KDDCUP99; 3.2.2.1 KDDCUP99 Dataset; 3.2.2.2 MH-DE Module; 3.2.2.3 MH-ML Module; 3.2.2.4 MEM Module; 3.2.3 Experimental Results and Discussions; 3.2.3.1 Evaluation Criteria; 3.2.3.2 Experiments and Analysis
Text of Note
3.3 Abnormal Network Traffic Detection Based on Big Data Analysis3.3.1 System Model; 3.3.1.1 Normal Traffic Selection Model; 3.3.1.2 Abnormal Traffic Selection Model; 3.3.1.3 Abnormal Traffic Selection Model; 3.3.2 Simulation Results and Discussions; 3.3.2.1 Data Set; 3.3.2.2 Simulation Results; 3.3.2.3 Discussing Result of No. 8 and No. 11; 3.3.2.4 Discussing Result of No. 5 and No. 7; 3.3.2.5 Discussing Result of No. 3 and No. 4; 3.4 Summary; References; 4 Intelligent Network Control; 4.1 Multi-Controller Optimization in SDN; 4.1.1 System Model; 4.1.1.1 Network Model
Text of Note
4.1.1.2 Communication Model4.1.1.3 Computation Model; 4.1.1.4 Problem Formulation; 4.1.2 Methodology; 4.1.2.1 PSO Aided Near-Optimal Multi-Controller Placement; 4.1.2.2 Resource Management Relying on Deep Q-Learning; 4.1.3 Simulation Results; 4.2 QoS-Enabled Load Scheduling Based on ReinforcementLearning; 4.2.1 System Description; 4.2.1.1 Energy Internet; 4.2.1.2 Software-Defined Energy Internet; 4.2.1.3 Controller Mind framework; 4.2.1.4 Re-Queuing Module; 4.2.1.5 Info-Table Module; 4.2.1.6 Learning Module; 4.2.2 System Model; 4.2.2.1 Re-Queuing Model; 4.2.2.2 Workload Model
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8
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SUMMARY OR ABSTRACT

Text of Note
This book mainly discusses the most important issues in artificial intelligence-aided future networks, such as applying different ML approaches to investigate solutions to intelligently monitor, control and optimize networking. The authors focus on four scenarios of successfully applying machine learning in network space. It also discusses the main challenge of network traffic intelligent awareness and introduces several machine learning-based traffic awareness algorithms, such as traffic classification, anomaly traffic identification and traffic prediction. The authors introduce some ML approaches like reinforcement learning to deal with network control problem in this book. Traditional works on the control plane largely rely on a manual process in configuring forwarding, which cannot be employed for today's network conditions. To address this issue, several artificial intelligence approaches for self-learning control strategies are introduced. In addition, resource management problems are ubiquitous in the networking field, such as job scheduling, bitrate adaptation in video streaming and virtual machine placement in cloud computing. Compared with the traditional with-box approach, the authors present some ML methods to solve the complexity network resource allocation problems. Finally, semantic comprehension function is introduced to the network to understand the high-level business intent in this book. With Software-Defined Networking (SDN), Network Function Virtualization (NFV), 5th Generation Wireless Systems (5G) development, the global network is undergoing profound restructuring and transformation. However, with the improvement of the flexibility and scalability of the networks, as well as the ever-increasing complexity of networks, makes effective monitoring, overall control, and optimization of the network extremely difficult. Recently, adding intelligence to the control plane through AI & ML become a trend and a direction of network development This book's expected audience includes professors, researchers, scientists, practitioners, engineers, industry managers, and government research workers, who work in the fields of intelligent network. Advanced-level students studying computer science and electrical engineering will also find this book useful as a secondary textbook.

ACQUISITION INFORMATION NOTE

Source for Acquisition/Subscription Address
Springer Nature
Stock Number
com.springer.onix.9783030150280

OTHER EDITION IN ANOTHER MEDIUM

International Standard Book Number
9783030150273
International Standard Book Number
9783030150297
International Standard Book Number
9783030150303

TOPICAL NAME USED AS SUBJECT

Artificial intelligence.
Computer networks.
Artificial intelligence.
Computer networks.

(SUBJECT CATEGORY (Provisional

TEC061000
TJKW
TJKW

DEWEY DECIMAL CLASSIFICATION

Number
006
.
3
Edition
23

LIBRARY OF CONGRESS CLASSIFICATION

Class number
Q335

PERSONAL NAME - PRIMARY RESPONSIBILITY

Yao, Haipeng

PERSONAL NAME - ALTERNATIVE RESPONSIBILITY

Jiang, Chunxiao
Qian, Yi

ORIGINATING SOURCE

Date of Transaction
20200823084148.0
Cataloguing Rules (Descriptive Conventions))
pn

ELECTRONIC LOCATION AND ACCESS

Electronic name
 مطالعه متن کتاب 

[Book]

Y

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