torchsig.transforms.base_transforms.Lambda¶
- class torchsig.transforms.base_transforms.Lambda(func: callable, **kwargs)[source]¶
Bases:
TransformApply a user-defined lambda as a transform.
Warning: Does not automatically update metadata.
- func¶
Lambda/function to be used for transform.
Example
>>> from torchsig.transforms.base_transforms import Lambda >>> transform = Lambda(lambda x: x**2) # A transform that squares all inputs.
Methods
Add parent Seedable object and set up RNGs accordingly.
Create distribution function with proper seeding.
Gets second seed, usually used to seed both torch and numpy generators with slightly different seeds.
Seed number generators with given seed.
Initialize torch and numpy number generators, and update its children.
Update numpy and torch number generators with parent seed.
- __init__(func: callable, **kwargs) None[source]¶
Initialize the Lambda transform.
- Parameters:
func – Lambda/function to be used for transform.
**kwargs – Additional keyword arguments passed to the parent class.
- __call__(signal: Signal) Signal[source]¶
Apply the lambda function to the signal data.
- Parameters:
signal – Signal to be transformed.
- Returns:
Transformed signal with modified data.
- __repr__() str¶
Transform string representation.
Should be able to recreate class from this string.
- Returns:
Transform representation.
- __str__() str¶
String representation of the transform.
- Returns:
String representation of the transform.
- add_parent(parent: Seedable, register: bool = True) None¶
Add parent Seedable object and set up RNGs accordingly.
- Parameters:
parent – Parent Seedable object to add.
register – If True (default), add self to parent.children so that future seed propagation reaches this object. Pass False for transient objects (e.g. per-sample Signal instances) that only need the parent link for metadata/RNG access during their lifetime but must not accumulate in the parent’s child list, which would otherwise cause unbounded memory growth.
- get_distribution(params: list | tuple | float, scaling: str = 'linear') Distribution¶
Create distribution function with proper seeding.
- Parameters:
params – Parameters for distribution.
scaling – Scaling param for distribution. Defaults to ‘linear’.
- Returns:
Distribution function, seeded.
- Return type: