NonTensorSpec¶
- class torchrl.data.NonTensorSpec(*args, **kwargs)[source]¶
Deprecated version of
torchrl.data.NonTensor.- assert_is_in(value: Tensor) None¶
Asserts whether a tensor belongs to the box, and raises an exception otherwise.
- Parameters:
value (torch.Tensor) – value to be checked.
- cardinality() Any¶
The cardinality of the spec.
This refers to the number of possible outcomes in a spec. It is assumed that the cardinality of a composite spec is the cartesian product of all possible outcomes.
- clear_device_() T¶
A no-op for all leaf specs (which must have a device).
For
Compositespecs, this method will erase the device.
- contains(item: torch.Tensor | tensordict.base.TensorDictBase) bool¶
If the value
valcould have been generated by theTensorSpec, returnsTrue, otherwiseFalse.See
is_in()for more information.
- cpu()¶
Casts the TensorSpec to ‘cpu’ device.
- cuda(device=None)¶
Casts the TensorSpec to ‘cuda’ device.
- property device: device¶
The device of the spec.
Only
Compositespecs can have aNonedevice. All leaves must have a non-null device.
- encode(val: numpy.ndarray | list | torch.Tensor | tensordict.base.TensorDictBase, *, ignore_device: bool = False) torch.Tensor | tensordict.base.TensorDictBase¶
Encodes a value given the specified spec, and return the corresponding tensor.
This method is to be used in environments that return a value (eg, a numpy array) that can be easily mapped to the TorchRL required domain. If the value is already a tensor, the spec will not change its value and return it as-is.
- Parameters:
val (np.ndarray or torch.Tensor) – value to be encoded as tensor.
- Keyword Arguments:
ignore_device (bool, optional) – if
True, the spec device will be ignored. This is used to group tensor casting within a call toTensorDict(..., device="cuda")which is faster.- Returns:
torch.Tensor matching the required tensor specs.
- enumerate(use_mask: bool = False) Any¶
Returns all the samples that can be obtained from the TensorSpec.
The samples will be stacked along the first dimension.
This method is only implemented for discrete specs.
- Parameters:
use_mask (bool, optional) – If
Trueand the spec has a mask, samples that are masked are excluded. Default isFalse.
- erase_memoize_cache() None¶
Clears the memoized cache for cached encode execution.
See also
- expand(*shape)¶
Returns a new Spec with the expanded shape.
- Parameters:
*shape (tuple or iterable of int) – the new shape of the Spec. Must be broadcastable with the current shape: its length must be at least as long as the current shape length, and its last values must be compliant too; ie they can only differ from it if the current dimension is a singleton.
- flatten(start_dim: int, end_dim: int) T¶
Flattens a
TensorSpec.Check
flatten()for more information on this method.
- classmethod implements_for_spec(torch_function: Callable) Callable¶
Register a torch function override for TensorSpec.
- index(index: Union[int, Tensor, ndarray, slice, list], tensor_to_index: torch.Tensor | tensordict.base.TensorDictBase) torch.Tensor | tensordict.base.TensorDictBase¶
Indexes the input tensor.
This method is to be used with specs that encode one or more categorical variables (e.g.,
OneHotorCategorical), such that indexing of a tensor with a sample can be done without caring about the actual representation of the index.- Parameters:
index (int, torch.Tensor, slice or list) – index of the tensor
tensor_to_index – tensor to be indexed
- Returns:
indexed tensor
- Exanples:
>>> from torchrl.data import OneHot >>> import torch >>> >>> one_hot = OneHot(n=100) >>> categ = one_hot.to_categorical_spec() >>> idx_one_hot = torch.zeros((100,), dtype=torch.bool) >>> idx_one_hot[50] = 1 >>> print(one_hot.index(idx_one_hot, torch.arange(100))) tensor(50) >>> idx_categ = one_hot.to_categorical(idx_one_hot) >>> print(categ.index(idx_categ, torch.arange(100))) tensor(50)
- is_in(val: Any) bool¶
If the value
valcould have been generated by theTensorSpec, returnsTrue, otherwiseFalse.More precisely, the
is_inmethods checks that the valuevalis within the limits defined by thespaceattribute (the box), and that thedtype,device,shapepotentially other metadata match those of the spec. If any of these checks fails, theis_inmethod will returnFalse.- Parameters:
val (torch.Tensor) – value to be checked.
- Returns:
boolean indicating if values belongs to the TensorSpec box.
- make_neg_dim(dim: int) T¶
Converts a specific dimension to
-1.
- memoize_encode(mode: bool = True) None¶
Creates a cached sequence of callables for the encode method that speeds up its execution.
This should only be used whenever the input type, shape etc. are expected to be consistent across calls for a given spec.
- Parameters:
mode (bool, optional) – Whether the cache should be used. Defaults to True.
See also
the cache can be erased via
erase_memoize_cache().
- property ndim: int¶
Number of dimensions of the spec shape.
Shortcut for
len(spec.shape).
- ndimension() int¶
Number of dimensions of the spec shape.
Shortcut for
len(spec.shape).
- one(shape=None)¶
Returns a one-filled tensor in the box.
Note
Even though there is no guarantee that
1belongs to the spec domain, this method will not raise an exception when this condition is violated. The primary use case ofoneis to generate empty data buffers, not meaningful data.- Parameters:
shape (torch.Size) – shape of the one-tensor
- Returns:
a one-filled tensor sampled in the TensorSpec box.
- ones(shape: Size = None) torch.Tensor | tensordict.base.TensorDictBase¶
Proxy to
one().
- project(val: torch.Tensor | tensordict.base.TensorDictBase) torch.Tensor | tensordict.base.TensorDictBase¶
If the input tensor is not in the TensorSpec box, it maps it back to it given some defined heuristic.
- Parameters:
val (torch.Tensor) – tensor to be mapped to the box.
- Returns:
a torch.Tensor belonging to the TensorSpec box.
- rand(shape=None)¶
Returns a random tensor in the space defined by the spec.
The sampling will be done uniformly over the space, unless the box is unbounded in which case normal values will be drawn.
- Parameters:
shape (torch.Size) – shape of the random tensor
- Returns:
a random tensor sampled in the TensorSpec box.
- sample(shape: Size = None) torch.Tensor | tensordict.base.TensorDictBase¶
Returns a random tensor in the space defined by the spec.
See
rand()for details.
- squeeze(dim: int | None = None) NonTensor¶
Returns a new Spec with all the dimensions of size
1removed.When
dimis given, a squeeze operation is done only in that dimension.- Parameters:
dim (int or None) – the dimension to apply the squeeze operation to
- to(dest: Union[dtype, device, str, int]) NonTensor¶
Casts a TensorSpec to a device or a dtype.
Returns the same spec if no change is made.
- to_numpy(val: torch.Tensor | tensordict.base.TensorDictBase, safe: bool | None = None) numpy.ndarray | dict¶
Returns the
np.ndarraycorrespondent of an input tensor.This is intended to be the inverse operation of
encode().- Parameters:
val (torch.Tensor) – tensor to be transformed_in to numpy.
safe (bool) – boolean value indicating whether a check should be performed on the value against the domain of the spec. Defaults to the value of the
CHECK_SPEC_ENCODEenvironment variable.
- Returns:
a np.ndarray.
- type_check(value: Tensor, key: NestedKey = None) None¶
Checks the input value
dtypeagainst theTensorSpecdtypeand raises an exception if they don’t match.- Parameters:
value (torch.Tensor) – tensor whose dtype has to be checked.
key (str, optional) – if the TensorSpec has keys, the value dtype will be checked against the spec pointed by the indicated key.
- unflatten(dim: int, sizes: tuple[int]) T¶
Unflattens a
TensorSpec.Check
unflatten()for more information on this method.
- unsqueeze(dim: int) NonTensor¶
Returns a new Spec with one more singleton dimension (at the position indicated by
dim).- Parameters:
dim (int or None) – the dimension to apply the unsqueeze operation to.
- zero(shape=None)¶
Returns a zero-filled tensor in the box.
Note
Even though there is no guarantee that
0belongs to the spec domain, this method will not raise an exception when this condition is violated. The primary use case ofzerois to generate empty data buffers, not meaningful data.- Parameters:
shape (torch.Size) – shape of the zero-tensor
- Returns:
a zero-filled tensor sampled in the TensorSpec box.
- zeros(shape: Size = None) torch.Tensor | tensordict.base.TensorDictBase¶
Proxy to
zero().