Browse Source

add parameter documentation

Jens Keim 3 years ago
parent
commit
f79506afca
1 changed files with 83 additions and 0 deletions
  1. 83 0
      privacy_engine_xl.py

+ 83 - 0
privacy_engine_xl.py

@@ -6,6 +6,24 @@ import os
 def generate_noise(max_norm, parameter, noise_multiplier, noise_type, device):
 def generate_noise(max_norm, parameter, noise_multiplier, noise_type, device):
     """
     """
     A noise generation function that can utilize different distributions for noise generation.
     A noise generation function that can utilize different distributions for noise generation.
+
+    @param max_norm
+        The maximum norm of the per-sample gradients. Any gradient with norm
+        higher than this will be clipped to this value.
+    @param parameter
+        The parameter, based on which the dimension of the noise tensor
+        will be determined
+    @param noise_multiplier
+        The ratio of the standard deviation of the Gaussian noise to
+        the L2-sensitivity of the function to which the noise is added
+    @param noise_type
+        Sets the distribution for the noise generation.
+        See generate_noise for supported strings.
+    @param device
+        The device used for calculations and needed for tensor definition.
+
+    @return
+        a tensor of noise in the same shape as ``parameter``.
     """
     """
     if noise_multiplier > 0:
     if noise_multiplier > 0:
         mean = 0
         mean = 0
@@ -32,6 +50,22 @@ def generate_noise(max_norm, parameter, noise_multiplier, noise_type, device):
 def apply_noise(weights, batch_size, noise_multiplier, noise_type, device, loss_reduction="mean"):
 def apply_noise(weights, batch_size, noise_multiplier, noise_type, device, loss_reduction="mean"):
     """
     """
     A function for applying noise to weights on the (intermediate) server side that utilizes the generate_noise function above.
     A function for applying noise to weights on the (intermediate) server side that utilizes the generate_noise function above.
+
+    @param weights
+        The weights to which to apply the noise.
+    @param batch_size
+        Batch size used for averaging.
+    @param noise_multiplier
+        The ratio of the standard deviation of the Gaussian noise to
+        the L2-sensitivity of the function to which the noise is added
+    @param noise_type
+        Sets the distribution for the noise generation.
+        See generate_noise for supported strings.
+    @param device
+        The device used for calculations and needed for tensor definition.
+    @param loss_reduction
+        The method of loss reduction.
+        currently supported: mean
     """
     """
     for p in weights.values():
     for p in weights.values():
         noise = generate_noise(0, p, noise_multiplier, noise_type, device)
         noise = generate_noise(0, p, noise_multiplier, noise_type, device)
@@ -44,6 +78,42 @@ class PrivacyEngineXL(opacus.PrivacyEngine):
     """
     """
     A privacy engine that can utilize different distributions for noise generation, based on opacus' privacy engine.
     A privacy engine that can utilize different distributions for noise generation, based on opacus' privacy engine.
     It gets attached to the optimizer just like the privacy engine from opacus.
     It gets attached to the optimizer just like the privacy engine from opacus.
+
+    @param module:
+        The Pytorch module to which we are attaching the privacy engine
+    @param batch_size
+        Training batch size. Used in the privacy accountant.
+    @param sample_size
+        The size of the sample (dataset). Used in the privacy accountant.
+    @param alphas
+        A list of RDP orders
+    @param noise_multiplier
+        The ratio of the standard deviation of the Gaussian noise to
+        the L2-sensitivity of the function to which the noise is added
+    @param max_grad_norm
+        The maximum norm of the per-sample gradients. Any gradient with norm
+        higher than this will be clipped to this value.
+    @param secure_rng
+        If on, it will use ``torchcsprng`` for secure random number generation. Comes with
+        a significant performance cost, therefore it's recommended that you turn it off when
+        just experimenting.
+    @param grad_norm_type
+        The order of the norm. For instance, 2 represents L-2 norm, while
+        1 represents L-1 norm.
+    @param batch_first
+        Flag to indicate if the input tensor to the corresponding module
+        has the first dimension representing the batch. If set to True,
+        dimensions on input tensor will be ``[batch_size, ..., ...]``.
+    @param target_delta
+        The target delta
+    @param loss_reduction
+        Indicates if the loss reduction (for aggregating the gradients)
+        is a sum or a mean operation. Can take values "sum" or "mean"
+    @param noise_type
+        Sets the distribution for the noise generation.
+        See generate_noise for supported strings.
+    @param **misc_settings
+        Other arguments to the init
     """
     """
 
 
     def __init__(
     def __init__(
@@ -87,4 +157,17 @@ class PrivacyEngineXL(opacus.PrivacyEngine):
         self.noise_type = noise_type
         self.noise_type = noise_type
 
 
     def _generate_noise(self, max_norm, parameter):
     def _generate_noise(self, max_norm, parameter):
+        """
+        Generates a tensor of noise in the same shape as ``parameter``.
+
+        @param max_norm
+            The maximum norm of the per-sample gradients. Any gradient with norm
+            higher than this will be clipped to this value.
+        @param parameter
+            The parameter, based on which the dimension of the noise tensor
+            will be determined
+
+        @return
+            a tensor of noise in the same shape as ``parameter``.
+        """
         return generate_noise(max_norm, parameter, self.noise_multiplier, self.noise_type, self.device)
         return generate_noise(max_norm, parameter, self.noise_multiplier, self.noise_type, self.device)