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Cape Privacy (Formerly Dropout Labs)
Privacy & Trust Management for Machine Learning. Operationalize compliance for collaborative machine learning across your organization.
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The How and Why of Reversible Tokenization
The How and Why of Reversible Tokenization
When Cape Python first launched it came with a tokenization transformation that allowed users to tokenize their data so they didn’t leak…
Justin Patriquin
Sep 11, 2020
My Definition of a First-Class Pull Request
My Definition of a First-Class Pull Request
Over the years, I have worked on a few projects where I was the sole developer. Being a sole developer has its challenges since not…
Devin Schulz
Aug 24, 2020
Building Secure Aggregation into TensorFlow Federated
Building Secure Aggregation into TensorFlow Federated
With Morten Dahl and Yann Dupis.
Jason Mancuso
Aug 20, 2020
Cape Python: Apply Privacy-Enhancing Techniques to Protect Sensitive Data in Pandas and Spark
Cape Python: Apply Privacy-Enhancing Techniques to Protect Sensitive Data in Pandas and Spark
We’re extremely excited to have recently released the Cape Python library. This library is one of the first building blocks to make your…
Yann Dupis
Jul 31, 2020
Privacy-Preserving Machine Learning 2019: A Year in Review
Privacy-Preserving Machine Learning 2019: A Year in Review
Highlighting the top news, research, code, and community events that impacted PPML in 2019.
Jason Mancuso
Jan 10, 2020
Federated Learning with Secure Aggregation in TensorFlow
Federated Learning with Secure Aggregation in TensorFlow
Integrating TF Encrypted and TensorFlow to
Justin Patriquin
Dec 18, 2019
Introducing PySyft TensorFlow
Introducing PySyft TensorFlow
We’re excited to announce our contribution of TensorFlow support to OpenMined’s PySyft project!
Jason Mancuso
Oct 24, 2019
Encrypted Deep Learning Training and Predictions with TF Encrypted Keras
Encrypted Deep Learning Training and Predictions with TF Encrypted Keras
We are super pleased to announce the addition of a Keras compatible API to TF Encrypted!
Yann Dupis
Aug 23, 2019
Bridging Microsoft SEAL into TensorFlow
Bridging Microsoft SEAL into TensorFlow
The road to machine learning with homomorphic encryption
Justin Patriquin
Aug 8, 2019
A Path to Sub-Second, Encrypted Skin Cancer Detection
A Path to Sub-Second, Encrypted Skin Cancer Detection
How we used TF Encrypted to detect skin cancer using encrypted images in 36 seconds.
Yann Dupis
Jun 13, 2019
Growing TF Encrypted
Growing TF Encrypted
And officially becoming a community project
Morten Dahl
May 17, 2019
Dropout Labs wins the Confidential Computing Challenge!
Dropout Labs wins the Confidential Computing Challenge!
Dropout Labs is very excited to announce that we’ve won the Google Cloud + Intel Confidential Computing Contest!
Ian Livingstone
May 2, 2019
Secure Logistic Regression: MPC vs Enclave Benchmark
Secure Logistic Regression: MPC vs Enclave Benchmark
With Ben DeCoste.
Justin Patriquin
Feb 6, 2019
Privacy-Preserving Machine Learning 2018: A Year in Review
Privacy-Preserving Machine Learning 2018: A Year in Review
We highlight the news, research, code, communities, organizations, and economics that made 2018 the breakout year for PPML.
Jason Mancuso
Jan 10, 2019
Announcing SecureNN in tf-encrypted
Announcing SecureNN in tf-encrypted
We are pleased to announce that our implementation of SecureNN has landed in tf-encrypted!
Ben DeCoste
Dec 13, 2018
Secret Sharing Explained
Secret Sharing Explained
The primitive behind secure multi-party computation
Ben DeCoste
Nov 6, 2018
Experimenting with TF Encrypted
Experimenting with TF Encrypted
A Library for Private Machine Learning in TensorFlow
Morten Dahl
Oct 19, 2018
Introducing Dropout Labs
Introducing Dropout Labs
We’re pleased to introduce Dropout Labs, a company focused on secure, privacy-preserving machine learning.
Gavin Uhma
Oct 19, 2018
About Cape Privacy (Formerly Dropout Labs)
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