torchoutil.nn.functional.multiclass module¶
Helper functions for conversion between classes indices, onehot, names and probabilities for multiclass classification.
- index_to_name(index: ~typing.Sequence[int] | ~torch.Tensor | ~numpy.ndarray | ~typing.Sequence, idx_to_name: ~typing.Mapping[int, ~torchoutil.nn.functional.multiclass.T_Name] | ~torchoutil.pyoutil.typing.classes.SupportsGetitemLen[~torchoutil.nn.functional.multiclass.T_Name], *, is_number_fn: ~typing.Callable[[~typing.Any], bool] = <function is_number_like>) List[T_Name][source]¶
Convert indices of labels to names using a mapping for multiclass classification.
- Args:
indices: List of list of label indices. idx_to_name: Mapping to convert a class index to its name. is_number_fn: Type guard to check if a value is a scalar number. defaults to is_number_like.
- index_to_onehot(
- index: Sequence[int] | Tensor | ndarray | Sequence,
- num_classes: int,
- *,
- padding_idx: int | None = None,
- device: device | None | Literal['default', 'cuda_if_available'] | str | int = None,
- dtype: dtype | None | Literal['default'] | str | DTypeEnum = torch.bool,
Convert indices of labels to onehot boolean encoding for multiclass classification.
- Args:
- indices: List label indices.
Can be a nested list of indices, but it should be convertible to Tensor.
num_classes: Number maximal of unique classes. padding_idx: Class index to ignore. Output will contains only zeroes for this value. defaults to None. device: PyTorch device of the output tensor. dtype: PyTorch DType of the output tensor.
- name_to_index( ) Tensor[source]¶
Convert names to indices of labels for multiclass classification.
- Args:
names: List of list of label names. idx_to_name: Mapping to convert a class index to its name.
- name_to_onehot(
- name: List[T_Name],
- idx_to_name: Mapping[int, T_Name] | SupportsIterLen[T_Name],
- *,
- device: device | None | Literal['default', 'cuda_if_available'] | str | int = None,
- dtype: dtype | None | Literal['default'] | str | DTypeEnum = torch.bool,
Convert names to onehot boolean encoding for multiclass classification.
- Args:
names: List of list of label names. idx_to_name: Mapping to convert a class index to its name. device: PyTorch device of the output tensor. dtype: PyTorch DType of the output tensor.
- one_hot(
- index: Sequence[int] | Tensor | ndarray | Sequence,
- num_classes: int,
- *,
- padding_idx: int | None = None,
- device: device | None | Literal['default', 'cuda_if_available'] | str | int = None,
- dtype: dtype | None | Literal['default'] | str | DTypeEnum = torch.bool,
Convert indices of labels to onehot boolean encoding for multiclass classification.
- Args:
- indices: List label indices.
Can be a nested list of indices, but it should be convertible to Tensor.
num_classes: Number maximal of unique classes. padding_idx: Class index to ignore. Output will contains only zeroes for this value. defaults to None. device: PyTorch device of the output tensor. dtype: PyTorch DType of the output tensor.
- onehot_to_index( ) LongTensor[source]¶
Convert onehot boolean encoding to indices of labels for multiclass classification.
- Args:
onehot: Onehot labels encoded as 2D matrix. padding_idx: Class index placeholder when input contains only zeroes. defaults to None. dim: Dimension of classes. defaults to -1.
- onehot_to_name(
- onehot: Tensor,
- idx_to_name: Mapping[int, T_Name] | SupportsGetitemLen[T_Name],
- *,
- dim: int = -1,
Convert onehot boolean encoding to names using a mapping for multiclass classification.
- Args:
onehot: Onehot labels encoded as 2D matrix. idx_to_name: Mapping to convert a class index to its name. dim: Dimension of classes. defaults to -1.
- probs_to_index(
- probs: Tensor,
- *,
- dim: int = -1,
Convert matrix of probabilities to indices of labels for multiclass classification.
- Args:
probs: Output probabilities for each classes. dim: Dimension of classes. defaults to -1.
- probs_to_name(
- probs: Tensor,
- idx_to_name: Mapping[int, T_Name] | SupportsGetitemLen[T_Name],
- *,
- dim: int = -1,
Convert matrix of probabilities to labels names for multiclass classification.
- Args:
probs: Output probabilities for each classes. idx_to_name: Mapping to convert a class index to its name. dim: Dimension of classes. defaults to -1.
- probs_to_onehot(
- probs: Tensor,
- *,
- dim: int = -1,
- device: device | None | Literal['default', 'cuda_if_available'] | str | int = None,
- dtype: dtype | None | Literal['default'] | str | DTypeEnum = torch.bool,
Convert matrix of probabilities to onehot boolean encoding for multiclass classification.
- Args:
probs: Output probabilities for each classes. dim: Dimension of classes. defaults to -1. device: PyTorch device of the output tensor. dtype: PyTorch DType of the output tensor.