Machine Learning and Optimization Models for Optimization in Cloud Machine Learning and Optimization Models for Optimization in Cloud
Chapman & Hall/Distributed Computing and Intelligent Data Analytics

Machine Learning and Optimization Models for Optimization in Cloud

Punit Gupta その他
    • ¥9,400
    • ¥9,400

発行者による作品情報

Machine Learning and Models for Optimization in Cloud’s main aim is to meet the user requirement with high quality of service, least time for computation and high reliability. With increase in services migrating over cloud providers, the load over the cloud increases resulting in fault and various security failure in the system results in decreasing reliability. To fulfill this requirement cloud system uses intelligent metaheuristic and prediction algorithm to provide resources to the user in an efficient manner to manage the performance of the system and plan for upcoming requests. Intelligent algorithm helps the system to predict and find a suitable resource for a cloud environment in real time with least computational complexity taking into mind the system performance in under loaded and over loaded condition.

This book discusses the future improvements and possible intelligent optimization models using artificial intelligence, deep learning techniques and other hybrid models to improve the performance of cloud. Various methods to enhance the directivity of cloud services have been presented which would enable cloud to provide better services, performance and quality of service to user. It talks about the next generation intelligent optimization and fault model to improve security and reliability of cloud.

Key Features

· Comprehensive introduction to cloud architecture and its service models.

· Vulnerability and issues in cloud SAAS, PAAS and IAAS

· Fundamental issues related to optimizing the performance in Cloud Computing using meta-heuristic, AI and ML models

· Detailed study of optimization techniques, and fault management techniques in multi layered cloud.

· Methods to improve reliability and fault in cloud using nature inspired algorithms and artificial neural network.

· Advanced study of algorithms using artificial intelligence for optimization in cloud

· Method for power efficient virtual machine placement using neural network in cloud

· Method for task scheduling using metaheuristic algorithms.

· A study of machine learning and deep learning inspired resource allocation algorithm for cloud in fault aware environment.

This book aims to create a research interest & motivation for graduates degree or post-graduates. It aims to present a study on optimization algorithms in cloud for researchers to provide them with a glimpse of future of cloud computing in the era of artificial intelligence.

ジャンル
コンピュータ/インターネット
発売日
2022年
2月27日
言語
EN
英語
ページ数
218
ページ
発行者
CRC Press
販売元
Taylor & Francis Group
サイズ
9.1
MB
Energy-Efficient Distributed Computing Systems Energy-Efficient Distributed Computing Systems
2012年
Hybrid Intelligent Approaches for Smart Energy Hybrid Intelligent Approaches for Smart Energy
2022年
Role of Edge Analytics in Sustainable Smart City Development Role of Edge Analytics in Sustainable Smart City Development
2020年
Machine Learning Techniques and Analytics for Cloud Security Machine Learning Techniques and Analytics for Cloud Security
2021年
Applications of Machine Learning in Big-Data Analytics and Cloud Computing Applications of Machine Learning in Big-Data Analytics and Cloud Computing
2022年
Machine Learning Approach for Cloud Data Analytics in IoT Machine Learning Approach for Cloud Data Analytics in IoT
2021年
Artificial Intelligence and Cloud Computing Applications in Biomedical Engineering Artificial Intelligence and Cloud Computing Applications in Biomedical Engineering
2025年
Optimizing Edge and Fog Computing Applications with AI and Metaheuristic Algorithms Optimizing Edge and Fog Computing Applications with AI and Metaheuristic Algorithms
2025年
Advanced Computing Techniques for Optimization in Cloud Advanced Computing Techniques for Optimization in Cloud
2024年
Soft Computing Principles and Integration for Real-Time Service-Oriented Computing Soft Computing Principles and Integration for Real-Time Service-Oriented Computing
2024年
Reliable and Intelligent Optimization in Multi-Layered Cloud Computing Architectures Reliable and Intelligent Optimization in Multi-Layered Cloud Computing Architectures
2024年
Artificial Intelligence Artificial Intelligence
2022年
Computer Applications in Engineering and Management Computer Applications in Engineering and Management
2022年