Utils API Reference¶
This page provides the complete API reference for the batchtensor.utils module.
The utils module contains utility functions that support the main tensor operations, particularly for managing random seeds and ensuring reproducibility.
For usage examples and tutorials, see the Utils User Guide.
Seed Management¶
batchtensor.utils.seed ¶
Implements utility functions to manage random seeds for reproducible tensor operations.
batchtensor.utils.seed.get_random_seed ¶
get_random_seed(seed: int) -> int
Get a random seed.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
seed
|
int
|
A random seed to make the process reproducible. |
required |
Returns:
| Type | Description |
|---|---|
int
|
A random seed. The value is between |
Example
>>> from batchtensor.utils.seed import get_random_seed
>>> get_random_seed(44)
6176747449835261347
batchtensor.utils.seed.get_torch_generator ¶
get_torch_generator(
random_seed: int = 1,
device: device | str | None = "cpu",
) -> Generator
Create a torch.Generator initialized with a given seed.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
random_seed
|
int
|
A random seed. |
1
|
device
|
device | str | None
|
The desired device for the generator. |
'cpu'
|
Returns:
| Type | Description |
|---|---|
Generator
|
A |
Example
>>> import torch
>>> from batchtensor.utils.seed import get_torch_generator
>>> generator = get_torch_generator(42)
>>> torch.rand(2, 4, generator=generator)
tensor([[0.8823, 0.9150, 0.3829, 0.9593],
[0.3904, 0.6009, 0.2566, 0.7936]])
>>> generator = get_torch_generator(42)
>>> torch.rand(2, 4, generator=generator)
tensor([[0.8823, 0.9150, 0.3829, 0.9593],
[0.3904, 0.6009, 0.2566, 0.7936]])
batchtensor.utils.seed.setup_torch_generator ¶
setup_torch_generator(
generator_or_seed: int | Generator,
) -> Generator
Set up a torch.Generator object.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
generator_or_seed
|
int | Generator
|
A |
required |
Returns:
| Type | Description |
|---|---|
Generator
|
A |
Example
>>> from batchtensor.utils.seed import setup_torch_generator
>>> generator = setup_torch_generator(42)
>>> generator
<torch._C.Generator object at 0x...>