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Federated Learning

High Tech Park_Tel Aviv_Israel_070123A
[High Tech Park, Tel Aviv, Israel - Shay Weiss]

 

- Overview

Federated learning aims at training a machine learning algorithm, for instance deep neural networks, on multiple local datasets contained in local nodes without explicitly exchanging data samples. 

Federated learning is a machine learning technique that allows multiple entities to train a model together without sharing raw data. Instead, data is kept local and only model updates are exchanged through a communication network. 

Federated learning offers several advantages, including:

  • Data privacy: Federated learning keeps data local, which can help overcome privacy and confidentiality concerns.
  • Security: Federated learning can help with security.
  • Efficiency: Federated learning can be efficient, especially when communication efficiency is important.
  • Scalability: Federated learning can be scalable.

Here are some examples of how federated learning can be used:
  • Next-word prediction: Gboard by Google uses federated learning to enhance next-word predictions on mobile keyboards while respecting user privacy.
  • Autocorrect and suggestions: Apple's QuickType Keyboard uses federated learning to improve autocorrect and suggestion features on its devices.
  • Medical data: Federated learning can be used to aggregate medical data, such as lung scans and brain MRIs, to help detect and treat diseases.
  • Customer financial records: Federated learning can be used to aggregate customer financial records to generate more accurate credit scores or detect fraud.
  • Car-insurance claims: Federated learning can be used to pool car-insurance claims to improve road and driver safety.
  • Factory assembly lines: Federated learning can be used to aggregate sound and image data from factory assembly lines to detect machine breakdowns or defective products.
  • Satellite images: Federated learning can be used to aggregate satellite images across countries to improve climate and sea-level rise predictions.
 
 
[More to come ...]
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