Federated learning for edge computing
This research paper goals to optimize federated learning by focusing on two key objectives. First, we'll evaluate how different traditional machine learning models perform when implementing federated learning strategies. I will test these models’ using data from a variety of sources to en...
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2024
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sg-ntu-dr.10356-1750882024-04-19T15:42:18Z Federated learning for edge computing Low, Chin Poh Lam Siew Kei School of Computer Science and Engineering ASSKLam@ntu.edu.sg Engineering Data science Machine learning Deep neural Network This research paper goals to optimize federated learning by focusing on two key objectives. First, we'll evaluate how different traditional machine learning models perform when implementing federated learning strategies. I will test these models’ using data from a variety of sources to ensure they operate well in real-world scenarios while maintaining people's privacy. Second, I would like to understand more about the unique characteristics of decentralized datasets. By examining data from a variety of sources, I have attempted to determine what separates each dataset. This will allow me to create machine learning models that perform better on each dataset. I will also be looking at a variety of areas of federated learning, such as data partitioning, how to apply them, and the kind of data I will be working with. My aim is to discover the best ways to employ federated learning for a variety of data by evaluating various models and strategies. This research will help us better understand federated learning and develop more effective machine learning models for various situations. Finally, this will allow us to make greater use of data while maintaining people's privacy. Bachelor's degree 2024-04-19T05:07:43Z 2024-04-19T05:07:43Z 2024 Final Year Project (FYP) Low, C. P. (2024). Federated learning for edge computing. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/175088 https://hdl.handle.net/10356/175088 en SCSE23-0146 application/pdf Nanyang Technological University |
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Engineering Data science Machine learning Deep neural Network Low, Chin Poh Federated learning for edge computing |
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This research paper goals to optimize federated learning by focusing on two key objectives.
First, we'll evaluate how different traditional machine learning models perform when
implementing federated learning strategies. I will test these models’ using data from a variety
of sources to ensure they operate well in real-world scenarios while maintaining people's
privacy. Second, I would like to understand more about the unique characteristics of
decentralized datasets. By examining data from a variety of sources, I have attempted to
determine what separates each dataset. This will allow me to create machine learning models
that perform better on each dataset.
I will also be looking at a variety of areas of federated learning, such as data partitioning,
how to apply them, and the kind of data I will be working with. My aim is to discover the
best ways to employ federated learning for a variety of data by evaluating various models and
strategies. This research will help us better understand federated learning and develop more
effective machine learning models for various situations. Finally, this will allow us to make
greater use of data while maintaining people's privacy. |
author2 |
Lam Siew Kei |
author_facet |
Lam Siew Kei Low, Chin Poh |
format |
Final Year Project |
author |
Low, Chin Poh |
author_sort |
Low, Chin Poh |
title |
Federated learning for edge computing |
title_short |
Federated learning for edge computing |
title_full |
Federated learning for edge computing |
title_fullStr |
Federated learning for edge computing |
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Federated learning for edge computing |
title_sort |
federated learning for edge computing |
publisher |
Nanyang Technological University |
publishDate |
2024 |
url |
https://hdl.handle.net/10356/175088 |
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1814047244409634816 |