alibi_detect.cd.tensorflow.spot_the_diff
Constants
logger
loggerlogger: logging.Logger = <Logger alibi_detect.cd.tensorflow.spot_the_diff (WARNING)>Instances of the Logger class represent a single logging channel. A "logging channel" indicates an area of an application. Exactly how an "area" is defined is up to the application developer. Since an application can have any number of areas, logging channels are identified by a unique string. Application areas can be nested (e.g. an area of "input processing" might include sub-areas "read CSV files", "read XLS files" and "read Gnumeric files"). To cater for this natural nesting, channel names are organized into a namespace hierarchy where levels are separated by periods, much like the Java or Python package namespace. So in the instance given above, channel names might be "input" for the upper level, and "input.csv", "input.xls" and "input.gnu" for the sub-levels. There is no arbitrary limit to the depth of nesting.
SpotTheDiffDriftTF
SpotTheDiffDriftTFConstructor
SpotTheDiffDriftTF(self, x_ref: numpy.ndarray, p_val: float = 0.05, x_ref_preprocessed: bool = False, preprocess_fn: Optional[Callable] = None, kernel: Optional[keras.src.models.model.Model] = None, n_diffs: int = 1, initial_diffs: Optional[numpy.ndarray] = None, l1_reg: float = 0.01, binarize_preds: bool = False, train_size: Optional[float] = 0.75, n_folds: Optional[int] = None, retrain_from_scratch: bool = True, seed: int = 0, optimizer: <module 'tensorflow.keras.optimizers' from '/Users/paul.bridi/Projects/alibi/venv/lib/python3.9/site-packages/keras/_tf_keras/keras/optimizers/__init__.py'> = <class 'keras.src.optimizers.adam.Adam'>, learning_rate: float = 0.001, batch_size: int = 32, preprocess_batch_fn: Optional[Callable] = None, epochs: int = 3, verbose: int = 0, train_kwargs: Optional[dict] = None, dataset: Callable = <class 'alibi_detect.utils.tensorflow.data.TFDataset'>, input_shape: Optional[tuple] = None, data_type: Optional[str] = None) -> Nonex_ref
numpy.ndarray
Data used as reference distribution.
p_val
float
0.05
p-value used for the significance of the test.
x_ref_preprocessed
bool
False
Whether the given reference data x_ref has been preprocessed yet. If x_ref_preprocessed=True, only the test data x will be preprocessed at prediction time. If x_ref_preprocessed=False, the reference data will also be preprocessed.
preprocess_fn
Optional[Callable]
None
Function to preprocess the data before computing the data drift metrics.
kernel
Optional[keras.src.models.model.Model]
None
Differentiable TensorFlow model used to define similarity between instances, defaults to Gaussian RBF.
n_diffs
int
1
The number of test locations to use, each corresponding to an interpretable difference.
initial_diffs
Optional[numpy.ndarray]
None
Array used to initialise the diffs that will be learned. Defaults to Gaussian for each feature with equal variance to that of reference data.
l1_reg
float
0.01
Strength of l1 regularisation to apply to the differences.
binarize_preds
bool
False
Whether to test for discrepency on soft (e.g. probs/logits) model predictions directly with a K-S test or binarise to 0-1 prediction errors and apply a binomial test.
train_size
Optional[float]
0.75
Optional fraction (float between 0 and 1) of the dataset used to train the classifier. The drift is detected on 1 - train_size. Cannot be used in combination with n_folds.
n_folds
Optional[int]
None
Optional number of stratified folds used for training. The model preds are then calculated on all the out-of-fold instances. This allows to leverage all the reference and test data for drift detection at the expense of longer computation. If both train_size and n_folds are specified, n_folds is prioritized.
retrain_from_scratch
bool
True
Whether the classifier should be retrained from scratch for each set of test data or whether it should instead continue training from where it left off on the previous set.
seed
int
0
Optional random seed for fold selection.
optimizer
.tensorflow.keras.optimizers
<class 'keras.src.optimizers.adam.Adam'>
Optimizer used during training of the classifier.
learning_rate
float
0.001
Learning rate used by optimizer.
batch_size
int
32
Batch size used during training of the classifier.
preprocess_batch_fn
Optional[Callable]
None
Optional batch preprocessing function. For example to convert a list of objects to a batch which can be processed by the model.
epochs
int
3
Number of training epochs for the classifier for each (optional) fold.
verbose
int
0
Verbosity level during the training of the classifier. 0 is silent, 1 a progress bar.
train_kwargs
Optional[dict]
None
Optional additional kwargs when fitting the classifier.
dataset
Callable
<class 'alibi_detect.utils.tensorflow.data.TFDataset'>
Dataset object used during training.
input_shape
Optional[tuple]
None
Shape of input data.
data_type
Optional[str]
None
Optionally specify the data type (tabular, image or time-series). Added to metadata.
Methods
predict
predictpredict(x: numpy.ndarray, return_p_val: bool = True, return_distance: bool = True, return_probs: bool = True, return_model: bool = False) -> Dict[str, Dict[str, Union[str, int, float, Callable]]]Predict whether a batch of data has drifted from the reference data.
x
numpy.ndarray
Batch of instances.
return_p_val
bool
True
Whether to return the p-value of the test.
return_distance
bool
True
Whether to return a notion of strength of the drift. K-S test stat if binarize_preds=False, otherwise relative error reduction.
return_probs
bool
True
Whether to return the instance level classifier probabilities for the reference and test data (0=reference data, 1=test data).
return_model
bool
False
Whether to return the updated model trained to discriminate reference and test instances.
Returns
Type:
Dict[str, Dict[str, Union[str, int, float, Callable]]]
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