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Private-Ai-Resources
Private machine learning progress
Content
About
This is a curated list of resources related to the research and development of private machine learning.
Secure and Private AI Course
Secure Deep Learning
- PySyft: A Generic Framework for Privacy Preserving Deep Learning
- Private Deep Learning in TensorFlow Using Secure Computation, October 23, 2018
- SecureNN: Efficient and Private Neural Network Training, May 10,2018
- Gazelle: A Low Latency Framework for Secure Neural Network Inference, January 16, 2018
- Chameleon: A Hybrid Secure Computation Framework for Machine Learning Applications, November 29, 2017
- CryptoDL: Deep Neural Networks over Encrypted Data, November 14, 2017
- MiniONN: Oblivious Neural Network Predictions via MiniONN
Transformations, November 3, 2017
- DeepSecure: Scalable Provably-Secure Deep Learning, May 24, 2017
- SecureML: A System for Scalable Privacy-Preserving Machine Learning, April 19, 2017
- CryptoNets: Applying Neural Networks to Encrypted Data with High Throughput and Accuracy, February 24, 2016
- Privacy-Preserving Deep Learning, October 12, 2015
Libraries and Frameworks
General Research
Blogs
Groups
Podcasts
Workshops
Thanks
Maintainers
OpenMined Community
Thanks to members of the OpenMined community who have shared links on slack: @morgangiraud, @jvmancuso
Adding links
If you have any links to add please send a pull request, and we'll take a look. There is so much happening in this space!