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The Data Exchange with Ben Lorica

The state of privacy-preserving machine learning

42 min • 30 januari 2020

In this episode of the Data Exchange I speak with Morten Dahl, research scientist at Dropout Labs, a startup building a platform and tools for privacy-preserving machine learning. He is also behind TF Encrypted, an open source framework for encrypted machine learning in TensorFlow.  The rise of privacy regulations like CCPA and GDPR combined with the growing importance of ML has led to a strong interest in tools and techniques for privacy-preserving machine learning among researchers and practitioners. Morten brings the unique perspective of being a longtime security researcher who has also worked as a data scientist in industry.

Our conversation spanned many topics, including:

  • Morten’s unique background as an experienced security researcher, developer, and data scientist.
  • The current state of TF Encrypted.
  • Federated learning (FL) and secure aggregation for FL.
  • Privacy-preserving ML solutions will employ a variety of techniques, and thus we also discussed related topics such as differential privacy, homomorphic encryption, and RISELab’s stack for coopetitive learning (MC2).

Detailed show notes can be found on The Data Exchange web site.

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