Training AI models on sensitive data - the Federated Learning approach

Authors

  • Sarbaree Mishra Program Manager at Molina Healthcare Inc., USA Author
  • Vineela Komandla Vice President - Product Manager, JP Morgan Author
  • Srikanth Bandi Software Engineer, JP Morgan Chase, USA Author
  • Sairamesh Konidala Vice President, JP Morgan & Chase, USA Author
  • Jeevan Manda Project Manager, Metanoia Solutions Inc, USA Author

Keywords:

Federated Learning, Sensitive Data

Abstract

As artificial intelligence (AI) becomes increasingly integrated into various sectors, training AI models on sensitive data presents opportunities and challenges. Traditional approaches to AI model training rely on centralized systems, where large datasets are gathered and processed in a central server. While this approach has been practical, it raises significant privacy & security concerns, mainly when dealing with sensitive or personally identifiable information. Federated Learning (FL) offers a promising solution to these challenges by enabling AI models to be trained directly on decentralized data sources without transferring sensitive data to a central location. This decentralized approach preserves the privacy of the data, as it remains local to its origin. FL works by aggregating updates to the model from multiple sources rather than raw data, ensuring that data never leaves its original location, thus reducing the risk of data breaches and ensuring compliance with stringent data protection regulations such as GDPR. This article explores the foundational principles behind Federated Learning, including its architecture, core components, & the role of secure aggregation protocols in maintaining confidentiality. It also highlights the growing range of applications for FL, from healthcare and finance to mobile devices, where data privacy is paramount. Furthermore, the article discusses the advantages of FL, such as improved privacy, reduced bandwidth consumption, & enhanced model performance through collaborative learning, while also acknowledging the challenges, including communication efficiency, model synchronization, & the complexities of implementing FL at scale. As the demand for privacy-preserving technologies continues to rise, Federated Learning is a crucial innovation in the responsible development of AI. The conclusion examines the potential of FL to transform industries by enabling organizations to deploy AI in a manner that is both secure & compliant, fostering trust and ethical AI development in an increasingly data-sensitive world.

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Published

02-04-2020

How to Cite

[1]
Sarbaree Mishra, Vineela Komandla, Srikanth Bandi, Sairamesh Konidala, and Jeevan Manda, “Training AI models on sensitive data - the Federated Learning approach”, Distrib Learn Broad Appl Sci Res, vol. 6, Apr. 2020, Accessed: Dec. 27, 2024. [Online]. Available: https://dlabi.org/index.php/journal/article/view/250

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