vision
Module for visualizing transformed images.
Classes:
| Name | Description |
|---|---|
StainedGlassTransformForVision |
A client for producing protected image embeddings using Stained Glass Transforms. |
TransformedImageVisualizationManager |
Captures |
ActivationImages
¶
Bases: TypedDict
A dictionary of images, comprised of a grid of input images and their corresponding activations.
Attributes:
| Name | Type | Description |
|---|---|---|
activation |
Tensor
|
An image tensor, formatted as a grid, where each row contains an input image and its corresponding noise layer output. |
mask |
NotRequired[Tensor]
|
An image tensor, formatted as a grid, where each row contains an input image and its corresponding noise layer mask. |
masked_std |
NotRequired[Tensor]
|
An image tensor, formatted as a grid, where each row contains an input image and its corresponding noise layer mask applied to the |
mean |
Tensor
|
An image tensor, formatted as a grid, where each row contains an input image and its corresponding noise layer mean. |
std |
Tensor
|
An image tensor, formatted as a grid, where each row contains an input image and its corresponding noise layer standard deviation. |
activation
instance-attribute
¶
activation: Tensor
An image tensor, formatted as a grid, where each row contains an input image and its corresponding noise layer output.
mask
instance-attribute
¶
mask: NotRequired[Tensor]
An image tensor, formatted as a grid, where each row contains an input image and its corresponding noise layer mask.
masked_std
instance-attribute
¶
masked_std: NotRequired[Tensor]
An image tensor, formatted as a grid, where each row contains an input image and its corresponding noise layer mask applied to the standard deviation.
InputInfo
dataclass
¶
Information about an input tensor for the transform, which can be used to infer the minimal submodules necessary for the forward pass.
Attributes:
| Name | Type | Description |
|---|---|---|
input_dtype |
dtype
|
The data type of the input tensor. |
input_shape |
tuple[int | None, ...]
|
The shape of the input tensor for the transform, with |
StainedGlassTransformForVision
¶
Bases: StainedGlassTransform[NoisyModelT, NoiseLayerT]
A client for producing protected image embeddings using Stained Glass Transforms.
This class can be used to package and distribute Stained Glass Transforms designed for vision models.
Because it inherits from StainedGlassTransform,
it can also use any functionality provided by that base class, including serialization/deserialization, saving/loading from the
Hugging Face Hub, etc...
Note
Instances of this class simply wrap the noisy model passed into their constructor. This means that changes made to the noisy model
after the client's creation will affect the client's behavior and vice versa. If you need an independent copy of the client, you
should either serialize/deserialize it or use copy.deepcopy.
Warning
Inferring the minimal parameters of the client requires a forward pass through the model. This assumes that the model has a static
computational graph, i.e. the forward pass will require the same parameters for any valid input. This inference is done implicitly
and automatically at initialization on an arbitrary input. To override the inferred parameters with parameters of your choosing,
you can pass in the parameter_names argument to the constructor. Note, however, that you must specify all of the parameters
necessary to calculate the protected input to the base model.
Warning
Calls to forward or __call__ are not guaranteed to be thread-safe or reentrant.
Attributes:
| Name | Type | Description |
|---|---|---|
truncated_module |
The truncated module that wraps the noisy model. This module acts like the noisy model, but its forward method
will return early as soon as the noise layer is applied, i.e. its output will be the transformed input embeddings, without
calling any unnecessary layers of the noisy/base model. Generally, there is little need for users to interact with this
attribute directly. If you need to access the noisy model, you can do so via the |
|
parameter_names_relative_to_base_model |
Parameters of the base model to be saved and loaded during serialization and
deserialization. This should be the minimal list of parameters necessary to get the base model's input embeddings. Each of
these parameter names should be relative to the base model. I.e. if the base model's input embedding submodule can be accessed
by |
|
name |
The name of the StainedGlassTransformForVision. This is used to identify the transform when saving and loading. |
|
model_card_data |
Optional model card data to associate with the Stained Glass Transform. Useful for providing metadata when sharing
the transform on the Hugging Face Hub. Follow the documentation on
Model Cards and
|
|
input_info |
Optional information about the input tensor for the transform, which can be used to infer the minimal submodules
necessary for the forward pass. This is required if neither |
|
noise_layer_type |
The type of noise layer used in the transform. This is used for serialization and deserialization to ensure that the noise layer is correctly reconstructed when loading the transform. This should be the actual type of the noise layer, not a string or the name of the type. |
Examples:
Preparing the Model. It is important that the base model passed into the Noisy Model has implemented getstate and setstate
methods that save/load a JSON-serializable dictionary of the state. This does not need to include
the model's parameters/buffers since, those are handled by the SGT's state_dict and load_state_dict methods, but it should include
any information necessary to reconstruct the architecture of the model prior to loading the state dict.
>>> import torch
>>> from torch import nn
>>> class BaseModel(nn.Module):
... def __init__(self, num_classes: int = 10) -> None:
... super().__init__()
... self.conv1 = nn.Conv2d(3, 16, kernel_size=3, padding=1)
... self.relu = nn.ReLU()
... self.conv2 = nn.Conv2d(16, 32, kernel_size=3, padding=1)
... self.flatten = nn.Flatten()
... self.fc = nn.Linear(32 * 32 * 32, num_classes)
...
... def forward(self, x):
... x = self.conv1(x)
... x = self.relu(x)
... x = self.conv2(x)
... x = self.flatten(x)
... x = self.fc(x)
... return x
...
... def __getstate__(self) -> dict:
... return {
... "num_classes": self.fc.out_features,
... }
...
... def __setstate__(self, state: dict) -> None:
... self.__init__(num_classes=state["num_classes"])
>>> import stainedglass_core.transform.vision as vision_module
>>> BaseModel.__module__ = vision_module.__name__
>>> setattr(vision_module, "BaseModel", BaseModel)
>>> base_model = BaseModel()
>>> from stainedglass_core import noise_layer as sg_noise_layer
>>> from stainedglass_core import model as sg_model
>>> noisy_model = sg_model.NoisyModel(
... noise_layer_class=sg_noise_layer.CloakNoiseLayer,
... base_model=base_model,
... target_parameter="x",
... )
Creating the StainedGlassTransformForVision
>>> from stainedglass_core.transform.vision import StainedGlassTransformForVision
>>> sgt_vision = StainedGlassTransformForVision(
... model=noisy_model,
... input_info=None, # Not needed since target_parameter is the input
... noise_layer_type=sg_noise_layer.CloakNoiseLayer,
... name="sample-sgt-for-vision",
... )
Inference with the StainedGlassTransformForVision
>>> random_image = torch.rand(
... (1, 3, 64, 64)
... ) # A random image tensor with shape (batch_size, color_channels, height, width)
>>> transformed_image = sgt_vision(
... random_image
... ) # Pass the image through the transform
>>> transformed_image
tensor(...)
Saving the client:
>>> import tempfile
>>> temp_file = tempfile.NamedTemporaryFile(suffix=".sgt")
>>> FILE_PATH = temp_file.name
>>> sgt_vision.save_pretrained(FILE_PATH)
Loading the client:
>>> loaded_sgt_vision = StainedGlassTransformForVision.from_pretrained(FILE_PATH)
>>> transformed_image = loaded_sgt_vision(
... random_image
... ) # Pass the image through the loaded client
>>> transformed_image
tensor(...)
If no part of the base model is required for the inference pass of the Stained Glass Transform (i.e. the noise layer targets
the input and does not depend on the base model), then it can be useful to not save the base model's class information. This might
help avoid a situation where the base model's class cannot be found during loading (for example if the base model's class is
defined in a third party library that your users do not need to depend on). It also avoids the need to define custom
__getstate__ and __setstate__ methods on the base model. PlaceholderBaseModel can be a helpful tool for this.
>>> from stainedglass_core.transform import base
>>> import copy
>>> no_base_model_noisy_model = copy.copy(noisy_model)
>>> no_base_model_noisy_model.base_model = base.PlaceholderBaseModel()
>>> sgt_vision_no_base_model = StainedGlassTransformForVision(
... model=no_base_model_noisy_model,
... input_info=None, # Not needed since target_parameter is the input
... noise_layer_type=sg_noise_layer.CloakNoiseLayer,
... name="sgt-for-vision-without-base-model",
... )
>>> transformed_image = sgt_vision_no_base_model(
... random_image
... ) # Pass the image through the transform without a base model
>>> transformed_image
tensor(...)
Added in version v3.24.0.
Methods:
| Name | Description |
|---|---|
__init__ |
Initialize the Stained Glass Transform for Vision. |
__repr__ |
Safe string representation of the Stained Glass Transform module. |
__setstate__ |
Deserialize the Stained Glass Transform for Vision. |
forward |
Run the forward pass of the Stained Glass Transform for Vision. |
from_pretrained |
Load the client from the given path. |
generate_model_card |
Generate model card from instance model card metadata and class templates. |
infer_minimal_parameters |
Infer the minimal parameters of the client, excluding parameters not needed for the client. |
infer_minimal_submodules |
Infer the minimal submodules necessary for the forward pass of the Stained Glass Transform for Vision. |
manual_seed |
Set seed to enable/disable reproducible behavior. |
override_runtime_config_during_load |
Override the runtime configuration during the loading of the Stained Glass Transform for Vision. |
push_to_hub |
Upload model checkpoint to the Hub. |
save_pretrained |
Save the client to the given path. |
state_dict |
Get the state dictionary of the client, excluding parameters not needed for the client. |
is_input_targeted_sgt
property
¶
is_input_targeted_sgt: bool
Whether this Stained Glass Transform's noise layer targets the input of the model.
If True, then no part of the base model is involved in the forward pass of the transform, and therefore inferring the minimal submodules can be bypassed.
noisy_model
property
¶
Alias for the contained NoisyModel.
Warning
A deserialized Stained Glass Transform may not include the complete base-model parameters. Calling the underlying noisy model referenced in this property can fail.
parameter_names_relative_to_client
property
¶
Get the minimal parameters of the client, excluding parameters not needed for the client.
This property will first check if self.parameter_names_relative_to_base_model is set (this is usually set via the
parameter_names argument in the __init__ method). If it is, then it will return the parameters defined there, but with the
submodule names changed to be relative to the client.
If self.parameter_names_relative_to_base_model is not set, then it will return the parameters inferred by the
infer_minimal_parameters method's most recent call. This requires that the infer_minimal_parameters method has been called at
least once before accessing this property.
Note
self.parameter_names_relative_to_base_model, if specified, will override the inferred parameters in calculating this property.
Returns:
| Type | Description |
|---|---|
list[str]
|
The minimal parameters of the client, excluding parameters not needed for the client. |
Raises:
| Type | Description |
|---|---|
ValueError
|
If the minimal parameters of the base model have not been specified manually or inferred automatically. |
parameter_names_to_remove_relative_to_client
property
¶
Get the parameters to ignore when saving the client, excluding parameters not needed for the client.
This is effectively the set of all parameters in the client that are not in parameter_names_relative_to_client, considering
duplicate parameters shared by multiple modules (and thus can be accessed by multiple names).
Returns:
| Type | Description |
|---|---|
list[str]
|
The parameters to ignore when saving the client, excluding parameters not needed for the client. |
stainedglass_core_version
property
¶
stainedglass_core_version: str | None
Get the version of Stained Glass Core used to save the Stained Glass Transform.
Returns:
| Type | Description |
|---|---|
str | None
|
The version of Stained Glass Core used to save the Stained Glass Transform. |
__init__
¶
__init__(
model: NoisyModelT,
input_info: InputInfo | None,
noise_layer_type: type[NoiseLayerT],
parameter_names: list[str] | None = None,
include_all_base_model_params: bool = False,
name: str | None = None,
model_card_data: ModelCardData | None = None,
) -> None
Initialize the Stained Glass Transform for Vision.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
|
NoisyModelT
|
The base model to be transformed. |
required |
|
InputInfo | None
|
Information about an input tensor for the transform, which can be used to infer the minimal
submodules necessary for the forward pass. This is required if neither |
required |
|
type[NoiseLayerT]
|
The type of noise layer to be used. |
required |
|
list[str] | None
|
Optional list of parameter names to include. |
None
|
|
bool
|
Whether to include all base model parameters. |
False
|
|
str | None
|
Optional name for the transform. |
None
|
|
ModelCardData | None
|
Optional model card data. |
None
|
Raises:
| Type | Description |
|---|---|
ValueError
|
If none of |
__repr__
¶
Safe string representation of the Stained Glass Transform module.
The Stained Glass Transform operates with None weight valued submodules
which are not needed for the SGT computation. Standard nn.Module.__repr__
calls extra_repr on each submodule, which may attempt to access weight
attributes and raise an AttributeError. This override temporarily patches
nn.Module.__repr__ to gracefully handle those cases for the duration of
the call.
Returns:
| Type | Description |
|---|---|
<class 'str'>
|
A string representation of the Stained Glass Transform module. |
__setstate__
¶
__setstate__(
state: dict[str, Any],
trust_remote_code: bool = False,
third_party_model_path: (
str | PathLike[str] | None
) = None,
**kwargs: Any
) -> None
Deserialize the Stained Glass Transform for Vision.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
|
dict[str, Any]
|
The serialized state. |
required |
|
bool
|
Whether to trust remote code when loading from the Hugging Face Hub. |
False
|
|
str | PathLike[str] | None
|
The path or huggingface reference to a third-party model to load. This is useful when loading SGTs whose internal structure depends on transformers which are not importable directly through transformers, but are present on the Hugging Face Hub. |
None
|
|
Any
|
Unused. This is to allow for compatibility with the parent class which can pass in kwargs to its children. |
required |
Raises:
| Type | Description |
|---|---|
ValueError
|
If any unexpected |
forward
¶
Run the forward pass of the Stained Glass Transform for Vision.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
|
Any
|
Positional arguments to pass to the truncated module's forward method. |
required |
|
Any
|
Keyword arguments to pass to the truncated module's forward method. |
required |
Returns:
| Type | Description |
|---|---|
Any
|
The output of the forward pass. |
from_pretrained
classmethod
¶
from_pretrained(
pretrained_model_name_or_path: str | Path,
map_location: device | str | None = None,
index_file_name: str | None = None,
dtype: str | dtype | None = None,
noise_layer_attention: (
Literal[
"sdpa",
"flash_attention_2",
"flex_attention",
"transformers_default",
"flash_attention_4",
]
| None
) = None,
third_party_model_path: (
str | PathLike[str] | None
) = None,
*,
force_download: bool = False,
resume_download: bool | None = None,
proxies: bool | dict[Any, Any] | None = None,
token: str | bool | None = None,
cache_dir: str | Path | None = None,
local_files_only: bool = False,
revision: str | None = None,
trust_remote_code: bool = False,
**model_kwargs: Any
) -> typing.Self
Load the client from the given path.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
|
str | Path
|
The path to load the client from. This can be a path to a |
required |
|
device | str | None
|
The location to map the client to. See torch.device for more information. |
None
|
|
str | None
|
The name of the index file to use within the zipfile. If None, the default index file name will be used. |
None
|
|
str | dtype | None
|
The dtype, either as a string or a |
None
|
|
Literal['sdpa', 'flash_attention_2', 'flex_attention', 'transformers_default', 'flash_attention_4'] | None
|
The attention type to use for the noise layer. If None, the default attention type will be used. |
None
|
|
str | PathLike[str] | None
|
The path or huggingface reference to a third-party model to load. This is useful when loading SGTs whose internal structure depends on transformers which are not importable directly through transformers, but are present on the Hugging Face Hub. |
None
|
|
bool
|
Whether to force the download of the client. If False, the client will be downloaded if it is not already present in the cache. |
False
|
|
bool | None
|
Unused. Required for compatibility with the Hugging Face Hub API. |
None
|
|
bool | dict[Any, Any] | None
|
Unused. Required for compatibility with the Hugging Face Hub API. |
None
|
|
str | bool | None
|
The token to use for authentication with the Hugging Face Hub API. |
None
|
|
str | Path | None
|
The directory to use for caching the client. If None, the default cache directory will be used. |
None
|
|
bool
|
Whether to only use local files and not attempt to download the client. If True, an error will be raised if the client is not present in the cache. |
False
|
|
str | None
|
The revision of the client to use. This can be a branch name, tag name, or commit hash. If None, the default revision will be used. |
None
|
|
bool
|
Whether to trust remote code when loading from HuggingFace Hub. |
False
|
|
Any
|
Unused. Required for compatibility with the Hugging Face Hub API. |
required |
Note
When using a third party model path, loading may fail with an error indicating that the provided model type does not match the
expected transformer model type. If you trust that the third-party model layout matches the serialized SGT, you can set
SGC_IGNORE_MODEL_TYPE_MISMATCH_ON_SGT_LOAD=true to disable this safety check during load.
Returns:
| Type | Description |
|---|---|
typing.Self
|
The loaded client. |
Raises:
| Type | Description |
|---|---|
ValueError
|
If any |
IsADirectoryError
|
If the specified path is a directory, but a .sgt file path is required. |
generate_model_card
¶
Generate model card from instance model card metadata and class templates.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
|
Any
|
Positional arguments to huggingface_hub.ModelCard.from_template. Unused (because all arguments are passed by keyword). |
required |
|
Any
|
Keyword arguments to the template_str passed to huggingface_hub.ModelCard.from_template. |
required |
Returns:
| Type | Description |
|---|---|
<class 'huggingface_hub.repocard.ModelCard'>
|
Generated ModelCard object. |
Changed in version v2.8.0: Automatically generated model card files now respect instance model card metadata.
infer_minimal_parameters
¶
Infer the minimal parameters of the client, excluding parameters not needed for the client.
This method will infer the minimal parameters of the client by tracing a forward pass through the model. This is useful when the minimal parameters are not known ahead of time.
Raises:
| Type | Description |
|---|---|
ValueError
|
If the minimal parameters of the client have been specified |
infer_minimal_submodules
¶
Infer the minimal submodules necessary for the forward pass of the Stained Glass Transform for Vision.
Returns:
| Type | Description |
|---|---|
list[str]
|
A list of submodule names, relative to the base model, that are necessary for the forward pass of the transform. |
manual_seed
¶
manual_seed(
seed: int | None, rank_dependent: bool = True
) -> None
Set seed to enable/disable reproducible behavior.
Setting seed to None will disable reproducible behavior.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
|
int | None
|
Value to seed into the random number generator. |
required |
|
bool
|
Whether to add the distributed rank to the seed to ensure that each process samples different noise. |
True
|
override_runtime_config_during_load
staticmethod
¶
override_runtime_config_during_load(
runtime_config: Mapping[str, Any],
noise_layer_attention: SupportedAttentionImplementationsType = None,
dtype: str | dtype | None = None,
**kwargs: Any
) -> dict[str, Any]
Override the runtime configuration during the loading of the Stained Glass Transform for Vision.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
|
Mapping[str, Any]
|
The runtime configuration to override. |
required |
|
SupportedAttentionImplementationsType
|
Optional attention implementation for the noise layer. Unsupported for vision transforms. |
None
|
|
str | dtype | None
|
Optional data type for the noise layer. Unsupported for vision transforms. |
None
|
|
Any
|
Additional keyword arguments. |
required |
Returns:
| Type | Description |
|---|---|
dict[str, Any]
|
The overridden runtime configuration. |
Raises:
| Type | Description |
|---|---|
ValueError
|
If any unexpected |
push_to_hub
¶
push_to_hub(repo_id: str, *, config: dict | DataclassInstance | None = None, commit_message: str = 'Upload using stainedglass_core.', private: bool | None = None, token: str | None = None, branch: str | None = None, create_pr: bool | None = None, allow_patterns: list[str] | str | None = None, ignore_patterns: list[str] | str | None = None, delete_patterns: list[str] | str | None = None, model_card_kwargs: dict[str, Any] | None = None) -> <class 'str'>
Upload model checkpoint to the Hub.
Warning
This method is currently not supported on StainedGlassTransform. Instead use save_pretrained with push_to_hub=True.
Use allow_patterns and ignore_patterns to precisely filter which files should be pushed to the hub. Use
delete_patterns to delete existing remote files in the same commit. See [upload_folder] reference for more
details.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
|
str
|
ID of the repository to push to (example: |
required |
|
dict | DataclassInstance | None
|
Model configuration specified as a key/value dictionary or a dataclass instance. |
None
|
|
str
|
Message to commit while pushing. |
'Upload using stainedglass_core.'
|
|
bool | None
|
Whether the repository created should be private.
If |
None
|
|
str | None
|
The token to use as HTTP bearer authorization for remote files. By default, it will use the token
cached when running |
None
|
|
str | None
|
The git branch on which to push the model. This defaults to |
None
|
|
bool | None
|
Whether or not to create a Pull Request from |
None
|
|
list[str] | str | None
|
If provided, only files matching at least one pattern are pushed. |
None
|
|
list[str] | str | None
|
If provided, files matching any of the patterns are not pushed. |
None
|
|
list[str] | str | None
|
If provided, remote files matching any of the patterns will be deleted from the repo. |
None
|
|
dict[str, Any] | None
|
Additional arguments passed to the model card template to customize the model card. |
None
|
Returns:
| Type | Description |
|---|---|
<class 'str'>
|
The url of the commit of your model in the given repository. |
Raises:
| Type | Description |
|---|---|
NotImplementedError
|
This method is not implemented. |
save_pretrained
¶
save_pretrained(
save_directory: str | Path,
*,
compression: int = 8,
push_to_hub: bool = False,
repo_id: str | None = None,
private: bool = True,
config: dict | DataclassInstance | None = None,
model_card_kwargs: dict[str, Any] | None = None,
**push_to_hub_kwargs: Any
) -> None
Save the client to the given path.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
|
str | Path
|
The path to save the client to. Although this is called |
required |
|
int
|
The compression method to use for the ZIP file. Defaults to zipfile.ZIP_DEFLATED, but this can cause very slow serialization times. If serialization times are a problem, use zipfile.ZIP_STORED instead. |
8
|
|
bool
|
Whether to push the client to the Hugging Face Hub. |
False
|
|
str | None
|
The repository ID to push the client to. This is required if |
None
|
|
bool
|
Whether to make the repository private. This is only used if |
True
|
|
dict | DataclassInstance | None
|
Unused. Required for compatibility with the Hugging Face Hub API. |
None
|
|
dict[str, Any] | None
|
The kwargs to pass to the model card generator. This is only used if |
None
|
|
Any
|
The kwargs to pass to the |
required |
Raises:
| Type | Description |
|---|---|
IsADirectoryError
|
If a directory is passed in. |
ValueError
|
If |
UserWarning
|
If |
compression
|
The compression method to use for the ZIP file. Defaults to zipfile.ZIP_DEFLATED, but this can cause very slow serialization times. If serialization times are a problem, use zipfile.ZIP_STORED instead. |
Examples:
Uploading a Stained Glass Transform zipfile to the Hugging Face Hub (note that this will also create a local copy of the SGT zipfile):
>>> from stainedglass_core.transform import text
>>> sgt = text.StainedGlassTransformForText.from_pretrained(
... "path/to/sgt_file.sgt"
... )
>>> sgt.save_pretrained(
... "new-sgt-zipfile.sgt",
... push_to_hub=True,
... repo_id="username/new-sgt-repo",
... )
Optionally, you can override any model card metadata before uploading to the Hub. This can be useful for specifying the base model and datasets used for training Stained Glass Transform. You can also specify additional metadata such as eval_results. See huggingface_hub.ModelCardData for more details on the available fields.
>>> sgt.model_card_data.base_model = (
... "meta-llama/Llama-3.1-8B-Instruct"
... )
>>> sgt.model_card_data.__dict__["base_model_relation"] = (
... "adapter"
... )
>>> sgt.model_card_data.datasets = ["Open-Orca/OpenOrca"]
>>> sgt.save_pretrained(
... "new-sgt-zipfile.sgt",
... push_to_hub=True,
... repo_id="username/new-sgt-repo",
... )
Changed in version v2.8.0: Added ability to push Stained Glass Transform to the Hugging Face Hub. BREAKING CHANGE: Argument `path` was renamed `save_directory` for compatibility with ModelHubMixin.save_pretrained
Changed in version v2.20.3: The model safetensors filename was changed for better compatibility with the Hugging Face Hub. This has no practical effect on saving or loading.
state_dict
¶
Get the state dictionary of the client, excluding parameters not needed for the client.
The parameters considered necessary for the client are those passed into the constructor as parameter_names.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
|
str
|
A prefix added to parameter and buffer names to compose the keys in state_dict. |
''
|
|
bool
|
By default the |
False
|
Returns:
| Type | Description |
|---|---|
dict[str, typing.Any]
|
The state dictionary of the client, excluding parameters not needed for the client. |
TensorsToVisualize
¶
Bases: TypedDict
A dictionary of tensors to process into a visualization.
Attributes:
| Name | Type | Description |
|---|---|---|
activation |
Tensor
|
The noise layer activation. |
input |
Tensor
|
The input to the model. |
mask |
NotRequired[Tensor]
|
The noise layer mask. |
masked_std |
NotRequired[Tensor]
|
The masked noise layer standard deviation. |
mean |
Tensor
|
The noise layer mean. |
std |
Tensor
|
The noise layer standard deviation. |
masked_std
instance-attribute
¶
masked_std: NotRequired[Tensor]
The masked noise layer standard deviation.
TransformedImageVisualizationManager
¶
Captures NoisyModel input images and intermediate activations and creates visualizations, formatted as a grid of images where
each row contains an input image and its corresponding activation.
Methods:
| Name | Description |
|---|---|
__init__ |
Construct a new |
prepare_activation_images |
Collect the input and activation tensors from the most recent forward pass and populate them into a grid of images for each |
Attributes:
| Name | Type | Description |
|---|---|---|
grids |
ActivationImages
|
The tensors representing the grid of images to visualize. |
__init__
¶
__init__(
noisy_model: NoisyModel[ModuleT, ..., NoiseLayerT],
input_name: str | None = None,
max_examples: int = 4,
max_color_channels: int = 3,
) -> None
Construct a new TransformedImageVisualizationManager.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
|
NoisyModel[ModuleT, ..., NoiseLayerT]
|
The model to visualize input images and activations for. |
required |
|
str | None
|
The name of the |
None
|
|
int
|
The maximum number of rows to display in the visualizations. |
4
|
|
int
|
The maximum number of individual color channels to additionally display in each visualization. If the target layer has more than 3 color channels, these will be displayed in grayscale. |
3
|
Raises:
| Type | Description |
|---|---|
ValueError
|
If |
ValueError
|
If |
prepare_activation_images
¶
Collect the input and activation tensors from the most recent forward pass and populate them into a grid of images for each activation.
Returns:
| Type | Description |
|---|---|
ActivationImages
|
A dictionary of image tensors, each formatted as a grid of images, where each row corresponds to a specific example. |