Details

Distributed Machine Learning and Computing


Distributed Machine Learning and Computing

Theory and Applications
Big and Integrated Artificial Intelligence, Band 2

von: M. Hadi Amini

93,08 €

Verlag: Springer
Format: PDF
Veröffentl.: 28.05.2024
ISBN/EAN: 9783031575679
Sprache: englisch

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Beschreibungen

<p>This book focuses on a wide range of distributed machine learning and computing algorithms and their applications in healthcare and engineering systems. The contributors explore how these techniques can be applied to different real-world problems. It is suitable for students and researchers interested in conducting research in multidisciplinary areas that rely on distributed machine learning and computing techniques.<b></b></p>
Chapter 1. Distributed Machine Learning and Computing: An Overview.- Chapter 2. Distributed Multi-agent Meta Learning for Trajectory Design in Wireless Drone Networks.- Chapter 3. Heterogeneity Aware Distributed Machine Learning at the Wireless Edge for Health IoT Applications: An EEG Data Case Study.- Chapter 4. A Comprehensive Review of Artificial Intelligence and Machine Learning Methods for Modern Health-care Systems.- Chapter 5. Vertical Federated Learning: Principles, Applications, and Future Frontiers.- Chapter 6. Decentralization of Energy Systems with Blockchain: Bridging Top-down and Bottom-up Management of the Electricity Grid.-Chapter 7. Empowering Distributed Solutions in Renewable Energy Systems and Grid Optimization.
<p>M. Hadi Amini is an Assistant Professor at the Knight Foundation School of Computing and Information Sciences, College of Engineering and Computing, Florida International University. He is the Director of Sustainability, Optimization, and Learning for InterDependent networks laboratory (www.solidlab.network), the Director of the ADvanced education and research for Machine learning-driven critical Infrastructure REsilience (ADMIRE) Center (funded by the U.S. DHS), and the Associate Director of the USDOT Transportation Center for Cybersecurity and Resiliency (TraCR). He received his Ph.D. in Electrical and Computer Engineering from Carnegie Mellon University in 2019, where he received his M.Sc. degree in 2015. He also holds a doctoral degree in Computer Science and Technology. Prior to that, he received M.Sc. degree from Tarbiat Modares University in 2013, and the B.Sc. degree from Sharif University of Technology in 2011. His research interests include distributed learning and optimization algorithms, distributed computing and intelligence, interdependent networks, and cyber-physical-social security and resilience. Application domains include smart cities, energy systems, transportation networks, and healthcare.</p>

<p>Dr. Amini is a Senior Member of IEEE, and a life member of IEEE-Eta Kappa Nu (IEEE-HKN), the honor society of IEEE. He also serves/has served as Associate Editor of IEEE Transactions on Information Forensics and Security, &nbsp;Associate Editor of SN Operations Research Forum, Associate Editor of Data Science for Communications (Frontiers in Communications and Networks), and International Transactions on Electrical Energy Systems. He edited/authored eight books, and is the recipient of the best paper award from "2019 IEEE Conference on Computational Science &amp; Computational Intelligence'',&nbsp;&nbsp; "2024 Florida International University Top Scholar Award, Research and Creative Activities, Junior Faculty with Significant Grants (Sciences)", “2023Florida International University Faculty Excellence in Teaching Award”, 2021 best journal paper award from “Springer Nature Operations Research Forum Journal”, FIU's Knight Foundation School of Computing and Information Sciences’ ``Excellence in Teaching Award'', best reviewer award from four IEEE Transactions, the best journal paper award in “Journal of Modern Power Systems and Clean Energy”, and the dean’s honorary award from the President of Sharif University of Technology.</p>
This book focuses on a wide range of distributed machine learning and computing algorithms and their applications in healthcare and engineering systems. The contributors explore how these techniques can be applied to different real-world problems. It is suitable for students and researchers interested in conducting research in multidisciplinary areas that rely on distributed machine learning and computing techniques.<div><ul><li>Specifies the value of efficient theoretical methods in dealing with large-scale decision-making problems;</li></ul></div><div><ul><li>Provides an investigation of distributed machine learning and optimization algorithms for large-scale networks;</li></ul></div><div><ul><li>Includes basics and mathematical foundations needed to analyze and address the interdependent complex networks.</li></ul></div>
Specifies the value of efficient theoretical methods in dealing with large-scale decision-making problems Provides an investigation of distributed machine learning and optimization algorithms for large-scale networks Includes basics and mathematical foundations needed to analyze and address the interdependent complex networks

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