concrete.ml.pytest.utils.md
Last updated
Last updated
concrete.ml.pytest.utils
Common functions or lists for test files, which can't be put in fixtures.
sklearn_models_and_datasets
get_random_extract_of_sklearn_models_and_datasets
Return a random sublist of sklearn_models_and_datasets.
The sublist contains exactly one model of each kind.
Returns: the sublist
instantiate_model_generic
Instantiate any Concrete ML model type.
Args:
model_class
(class): The type of the model to instantiate.
n_bits
(int): The number of quantization to use when initializing the model. For QNNs, default parameters are used based on whether n_bits
is greater or smaller than 8.
parameters
(dict): Hyper-parameters for the model instantiation. For QNNs, these parameters will override the matching default ones.
Returns:
model_name
(str): The type of the model as a string.
model
(object): The model instance.
get_torchvision_dataset
Get train or testing data-set.
Args:
param
(Dict): Set of hyper-parameters to use based on the selected torchvision data-set.
It must contain
: data-set transformations (torchvision.transforms.Compose), and the data-set_size (Optional[int]).
train_set
(bool): Use train data-set if True, else testing data-set
Returns: A torchvision data-sets.
data_calibration_processing
Reduce size of the given data-set.
Args:
data
: The input container to consider
n_sample
(int): Number of samples to keep if the given data-set
targets
: If dataset
is a torch.utils.data.Dataset
, it typically contains both the data and the corresponding targets. In this case, targets
must be set to None
. If data
is instance of torch.Tensor
or 'numpy.ndarray,
targets` is expected.
Returns:
Tuple[numpy.ndarray, numpy.ndarray]
: The input data and the target (respectively x and y).
Raises:
TypeError
: If the 'data-set' does not match any expected type.
load_torch_model
Load an object saved with torch.save() from a file or dict.
Args:
model_class
(torch.nn.Module): A PyTorch or Brevitas network.
state_dict_or_path
(Optional[Union[str, Path, Dict[str, Any]]]): Path or state_dict
params
(Dict): Model's parameters
device
(str): Device type.
Returns:
torch.nn.Module
: A PyTorch or Brevitas network.
values_are_equal
Indicate if two values are equal.
This method takes into account objects of type None, numpy.ndarray, numpy.floating, numpy.integer, numpy.random.RandomState or any instance that provides a __eq__
method.
Args:
value_2
(Any): The first value to consider.
value_1
(Any): The second value to consider.
Returns:
bool
: If the two values are equal.
check_serialization
Check that the given object can properly be serialized.
This function serializes all objects using the dump
, dumps
, load
and loads
functions from Concrete ML. If the given object provides a dump
and dumps
method, they are also serialized using these.
Args:
object_to_serialize
(Any): The object to serialize.
expected_type
(Type): The object's expected type.
equal_method
(Optional[Callable]): The function to use to compare the two loaded objects. Default to values_are_equal
.
check_str
(bool): If the JSON strings should also be checked. Default to True.