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With a specific focus on energy efficiency, Optimizing IoT Networks examines the application of machine learning to enhance resource allocations in IoT networks.It discusses various algorithms, including neural networks and reinforcement learning, to optimise resource use and improve network performance. It addresses challenges such as the dynamic behaviour of IoT devices and the need for real-time decision-making. It discusses optimisation methods used alongside machine learning to enhance resource allocation efficiency.
Provides a foundational understanding of IoT network architecture and the importance of efficient resource allocation
Discusses complexities in resource allocation due to dynamic device behaviour and varying data traffic patterns
Covers key machine learning concepts and algorithms relevant to optimising resource allocation in IoT networks
Emphasises the significance of energy efficiency in IoT networks and its impact on resource allocation strategies
Explores algorithms such as clustering, regression, and reinforcement learning for effective resource allocation
The book is designed for researchers, practitioners, and scholars in computer science and technology who are interested in or actively working on optimising IoT networks.
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With a specific focus on energy efficiency, Optimizing IoT Networks examines the application of machine learning to enhance resource allocations in IoT networks.It discusses various algorithms, including neural networks and reinforcement learning, to optimise resource use and improve network performance. It addresses challenges such as the dynamic behaviour of IoT devices and the need for real-time decision-making. It discusses optimisation methods used alongside machine learning to enhance resource allocation efficiency.
Provides a foundational understanding of IoT network architecture and the importance of efficient resource allocation
Discusses complexities in resource allocation due to dynamic device behaviour and varying data traffic patterns
Covers key machine learning concepts and algorithms relevant to optimising resource allocation in IoT networks
Emphasises the significance of energy efficiency in IoT networks and its impact on resource allocation strategies
Explores algorithms such as clustering, regression, and reinforcement learning for effective resource allocation
The book is designed for researchers, practitioners, and scholars in computer science and technology who are interested in or actively working on optimising IoT networks.