secretflow.security.privacy.mechanism.tensorflow#
secretflow.security.privacy.mechanism.tensorflow.layers#
Classes:
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Embedding differential privacy perturbation using gaussian noise |
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Label differential privacy perturbation |
- class secretflow.security.privacy.mechanism.tensorflow.layers.EmbeddingDP(*args, **kwargs)[源代码]#
基类:
Layer
,ABC
Methods:
__init__
()call
(inputs)This is where the layer's logic lives.
- abstract call(inputs)[源代码]#
This is where the layer’s logic lives.
The call() method may not create state (except in its first invocation, wrapping the creation of variables or other resources in tf.init_scope()). It is recommended to create state, including tf.Variable instances and nested Layer instances,
in __init__(), or in the build() method that is
called automatically before call() executes for the first time.
- 参数:
inputs –
Input tensor, or dict/list/tuple of input tensors. The first positional inputs argument is subject to special rules: - inputs must be explicitly passed. A layer cannot have zero
arguments, and inputs cannot be provided via the default value of a keyword argument.
NumPy array or Python scalar values in inputs get cast as tensors.
Keras mask metadata is only collected from inputs.
Layers are built (build(input_shape) method) using shape info from inputs only.
input_spec compatibility is only checked against inputs.
Mixed precision input casting is only applied to inputs. If a layer has tensor arguments in *args or **kwargs, their casting behavior in mixed precision should be handled manually.
The SavedModel input specification is generated using inputs only.
Integration with various ecosystem packages like TFMOT, TFLite, TF.js, etc is only supported for inputs and not for tensors in positional and keyword arguments.
*args – Additional positional arguments. May contain tensors, although this is not recommended, for the reasons above.
**kwargs –
Additional keyword arguments. May contain tensors, although this is not recommended, for the reasons above. The following optional keyword arguments are reserved: - training: Boolean scalar tensor of Python boolean indicating
whether the call is meant for training or inference.
mask: Boolean input mask. If the layer’s call() method takes a mask argument, its default value will be set to the mask generated for inputs by the previous layer (if input did come from a layer that generated a corresponding mask, i.e. if it came from a Keras layer with masking support).
- 返回:
A tensor or list/tuple of tensors.
- class secretflow.security.privacy.mechanism.tensorflow.layers.GaussianEmbeddingDP(*args, **kwargs)[源代码]#
基类:
EmbeddingDP
Embedding differential privacy perturbation using gaussian noise
Methods:
__init__
(noise_multiplier, batch_size, ...)- param epnoise_multipliers:
Epsilon for pure DP.
call
(inputs)Add gaussion dp on embedding.
privacy_spent_rdp
(step[, orders])Get accountant using RDP.
privacy_spent_gdp
(step, sampling_type)Get accountant using GDP.
- __init__(noise_multiplier: float, batch_size: int, num_samples: int, l2_norm_clip: float = 1.0, delta: Optional[float] = None, is_secure_generator: bool = False) None [源代码]#
- 参数:
epnoise_multipliers – Epsilon for pure DP.
batch_size – Batch size.
num_samples – Number of all samples.
l2_norm_clip – The clipping norm to apply to the embedding.
is_secure_generator – whether use the secure generator to generate noise.
secretflow.security.privacy.mechanism.tensorflow.mechanism_fl#
Classes:
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global model differential privacy perturbation using gaussian noise |
- class secretflow.security.privacy.mechanism.tensorflow.mechanism_fl.GaussianModelDP(noise_multiplier: float, num_clients: int, num_updates: Optional[int] = None, l2_norm_clip: float = 1.0, delta: Optional[float] = None, is_secure_generator: bool = False, is_clip_each_layer: bool = False)[源代码]#
基类:
object
global model differential privacy perturbation using gaussian noise
Methods:
__init__
(noise_multiplier, num_clients[, ...])- param epnoise_multipliers:
Epsilon for pure DP.
privacy_spent_rdp
(step[, orders])Get accountant using RDP.
- __init__(noise_multiplier: float, num_clients: int, num_updates: Optional[int] = None, l2_norm_clip: float = 1.0, delta: Optional[float] = None, is_secure_generator: bool = False, is_clip_each_layer: bool = False) None [源代码]#
- 参数:
epnoise_multipliers – Epsilon for pure DP.
num_clients – Number of all clients.
num_updates – Number of Clients that participate in the update.
l2_norm_clip – The clipping norm to apply to the parameters or gradients.
is_secure_generator – whether use the secure generator to generate noise.
is_clip_prelayer – The 2norm of each layer is dynamically assigned.