An Overview of Machine Learning-Driven Resource Allocation in IoT Networks
Zhengdong Li

TL;DR
This paper reviews how machine learning, deep learning, and reinforcement learning can optimize resource allocation in IoT networks, addressing current strategies, challenges, and future research directions.
Contribution
It provides a comprehensive analysis of ML-driven resource allocation strategies in Low-Power and Mobile IoT networks, highlighting challenges and future opportunities.
Findings
ML enhances decision-making in IoT resource management
Challenges include accuracy, flexibility, and computational costs
Future research should focus on innovative solutions for integration
Abstract
In the wake of disruptive IoT technologies generating massive amounts of diverse data, Machine Learning (ML) will play a crucial role in bringing intelligence to Internet of Things (IoT) networks. This paper provides a comprehensive analysis of the current state of resource allocation within IoT networks, focusing specifically on two key categories: Low-Power IoT Networks and Mobile IoT Networks. We delve into the resource allocation strategies that are crucial for optimizing network performance and energy efficiency in these environments. Furthermore, the paper explores the transformative role of Machine Learning (ML), Deep Learning (DL), and Reinforcement Learning (RL) in enhancing IoT functionalities. We highlight a range of applications and use cases where these advanced technologies can significantly improve decision-making and optimization processes. In addition to the…
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Taxonomy
TopicsIoT and Edge/Fog Computing
