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Enabling the use of Gaussian Mechanism for Local DP in SKLean Pipeline. This should be in the form of an "operator" that should be inserted between the layers in SKLearn's Pipeline class.
Additional Context
Current development for the SKLean Pipeline is in branch feature/machine-learning-1.
Preferably, the name of the "operator" imported from PyDP should be called GaussianMechanism. The use should be as seamless and convenient as possible in SKLearn's Pipeline class. For example:
Feature Description
Enabling the use of Gaussian Mechanism for Local DP in SKLean Pipeline. This should be in the form of an "operator" that should be inserted between the layers in SKLearn's
Pipeline
class.Additional Context
Current development for the SKLean Pipeline is in branch
feature/machine-learning-1
.Preferably, the name of the "operator" imported from PyDP should be called
GaussianMechanism
. The use should be as seamless and convenient as possible in SKLearn'sPipeline
class. For example:For more examples, please have look at the notebook example of Laplace Mechanism's implementation.
As starting guidance, please refer to the source code for
LaplaceMechanism
in here.Note: the Gaussian Mechanism would most likely need different parameters to be initialized compare to the Laplace Mechanism.
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