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Utilities for confidential machine learning

Project description

Confidential ML Utilities

python

Confidential ML is the practice of training machine learning models without seeing the training data. It is needed in many enterprises to satisfy the strict compliance and privacy guarantees they provide to their customers. This repository contains a set of utilities for confidential ML, with a special emphasis on using PyTorch in Azure Machine Learning pipelines.

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