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Research Paper | Information Technology | India | Volume 13 Issue 10, October 2024 | Popularity: 5.5 / 10
Federated Learning: Privacy-Preserving Machine Learning in Cloud Environments
Bangar Raju Cherukuri
Abstract: Federated Learning (FL) is a relatively new type of decentralized ML developed to tackle privacy problems inherent to centralized ML methodologies. Thus, FL allows a model to train across multiple distributed devices or edge nodes without exchanging raw data. This approach maintains user privacy since data must not be transmitted to a central location. Only new model parameters are received and recombined to make a global model. This paper looks at the workings of FL to show how it can improve the security of often sensitive data, especially with artificial intelligence solutions based on cloud platforms. The role of federated learning is most prominent in the sectors that work with informational data, including the healthcare and the financial ones. For instance, two hospitals can train models on patient data without compromising their patient's details; similarly, various branches of banks can collectively work out multiple modes of identity theft without compromising the identity of the customers. Therefore, concerning this research, there is clear evidence that FL enhances privacy as well as maintains model efficiency and functionality in different domains. However, there are some problems that can be tied to the use of federated learning. The technical challenges include the communication overhead essential in keeping participants connected, model synchronization that may be a real challenge and encryption that needs to secure the updates made on the model. Also, FL models suffer from variability in the resource capacity of the data collection and analysis devices. But from this study it is clear that federated learning is a realistic solution in privacy-preserving machine learning that gives a good balance between privacy of data and accuracy of model; therefore, it is appropriate for industries that put a lot of value in their data privacy.
Keywords: Federated Learning, ML, GDPR, HIPAA, MapReduce, Centralized Learning
Edition: Volume 13 Issue 10, October 2024
Pages: 1539 - 1549
DOI: https://www.doi.org/10.21275/MS241022095645
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