Helper functions
- sorrel.utils.helpers.set_seed(seed: int) None
Sets a seed for replication. Sets the seed for
random.seed(),numpy.random.seed(), andtorch.manual_seed().- Parameters:
seed – An int setting the seed.
- sorrel.utils.helpers.random_seed() int
Generates a random seed.
- Returns:
The value of the seed generated
- sorrel.utils.helpers.shift(array: ndarray, shift: Sequence | ndarray, cval: Any = nan) ndarray
Returns copy of array shifted by offset, with fill using constant.
- Parameters:
array – The array to shift.
shift – A sequence of dimensions equivalent to the array passed into the function.
cval – The value to replace any new elements introduced into the offset array. By default, replaces them with nan’s.
- Returns:
The shifted array.
- Return type:
np.ndarray
- sorrel.utils.helpers.nearest_2_power(n: int) int
Computes the next power of 2.
Useful for programmatically shifting batch and buffer sizes to computationally efficient values.
- Parameters:
n – The number.
- Returns:
The nearest power of two equal to or larger than n.
- Return type:
int
- sorrel.utils.helpers.clip(n: int, minimum: int, maximum: int) int
Clips an input to a number between the minimum and maximum values passed into the function.
- Parameters:
n – The number.
minimum – The minimum number.
maximum – The maximum number.
- Returns:
The clipped value of n.
- Return type:
int
- sorrel.utils.helpers.one_hot_encode(value: int, num_classes: int) ndarray
Create a numpy array of shape (num_classes, ) that encodes the position of value as a one-hot vector.
- Parameters:
value – The position to one-hot encode.
num_classes – The length of the one-hot vector.
Note
value cannot be larger than num_classes - 1 without leading to an index error.