Blockchain & Machine Learning In Communication



EOI: 10.11242/viva-tech.01.05.MCA_15

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Citation

Prof.Sonia Dubey, Pratiksha Pawar, Yashashree Kulkarn, "Blockchain & Machine Learning In Communication", VIVA-IJRI Volume 1, Issue 6, Article MCA_15, pp. 1-6, 2023. Published by MCA Department, VIVA Institute of Technology, Virar, India.

Abstract

Blockchain can greatly facilitate the sharing of training data and ML models, decentralized intelligence, security, privacy, and reliable ML decision making. On the other hand, ML will have a significant impact on the development of blockchain in communication and network systems, including energy and resource ef iciency, scalability, security, privacy, and smart contracts. However, there are some outstanding key issues and challenges that still need to be addressed before blockchain and ML integration becomes mainstream, including resource management, data processing, scalable operations, and security issues. In this article, we provide an overview of existing work for blockchain and ML technologies. We identify several key aspects of blockchain and ML integration, including an overview, benefits, and applications. Next, we discuss open questions, challenges, and broader perspectives that need to be addressed to consider blockchain and ML for communication and network systems together.

Keywords

Blockchain, communication, Learning, Machine, technology.

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