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torch.asarray

torch.asarray(obj, *, dtype=None, device=None, copy=None, requires_grad=False) Tensor

Converts obj to a tensor.

obj can be one of:

  1. a tensor

  2. a NumPy array

  3. a DLPack capsule

  4. an object that implements Python’s buffer protocol

  5. a scalar

  6. a sequence of scalars

When obj is a tensor, NumPy array, or DLPack capsule the returned tensor will, by default, not require a gradient, have the same datatype as obj, be on the same device, and share memory with it. These properties can be controlled with the dtype, device, copy, and requires_grad keyword arguments. If the returned tensor is of a different datatype, on a different device, or a copy is requested then it will not share its memory with obj. If requires_grad is True then the returned tensor will require a gradient, and if obj is also a tensor with an autograd history then the returned tensor will have the same history.

When obj is not a tensor, NumPy Array, or DLPack capsule but implements Python’s buffer protocol then the buffer is interpreted as an array of bytes grouped according to the size of the datatype passed to the dtype keyword argument. (If no datatype is passed then the default floating point datatype is used, instead.) The returned tensor will have the specified datatype (or default floating point datatype if none is specified) and, by default, be on the CPU device and share memory with the buffer.

When obj is none of the above but a scalar or sequence of scalars then the returned tensor will, by default, infer its datatype from the scalar values, be on the CPU device, and not share its memory.

See also

torch.tensor() creates a tensor that always copies the data from the input object. torch.from_numpy() creates a tensor that always shares memory from NumPy arrays. torch.frombuffer() creates a tensor that always shares memory from objects that implement the buffer protocol. torch.from_dlpack() creates a tensor that always shares memory from DLPack capsules.

Parameters:

obj (object) – a tensor, NumPy array, DLPack Capsule, object that implements Python’s buffer protocol, scalar, or sequence of scalars.

Keyword Arguments:
  • dtype (torch.dtype, optional) – the datatype of the returned tensor. Default: None, which causes the datatype of the returned tensor to be inferred from obj.

  • copy (bool, optional) – controls whether the returned tensor shares memory with obj. Default: None, which causes the returned tensor to share memory with obj whenever possible. If True then the returned tensor does not share its memory. If False then the returned tensor shares its memory with obj and an error is thrown if it cannot.

  • device (torch.device, optional) – the device of the returned tensor. Default: None, which causes the device of obj to be used.

  • requires_grad (bool, optional) – whether the returned tensor requires grad. Default: False, which causes the returned tensor not to require a gradient. If True, then the returned tensor will require a gradient, and if obj is also a tensor with an autograd history then the returned tensor will have the same history.

Example:

>>> a = torch.tensor([1, 2, 3])
>>> # Shares memory with tensor 'a'
>>> b = torch.asarray(a)
>>> a.data_ptr() == b.data_ptr()
True
>>> # Forces memory copy
>>> c = torch.asarray(a, copy=True)
>>> a.data_ptr() == c.data_ptr()
False

>>> a = torch.tensor([1, 2, 3], requires_grad=True).float()
>>> b = a + 2
>>> b
tensor([1., 2., 3.], grad_fn=<AddBackward0>)
>>> # Shares memory with tensor 'b', with no grad
>>> c = torch.asarray(b)
>>> c
tensor([1., 2., 3.])
>>> # Shares memory with tensor 'b', retaining autograd history
>>> d = torch.asarray(b, requires_grad=True)
>>> d
tensor([1., 2., 3.], grad_fn=<AddBackward0>)

>>> array = numpy.array([1, 2, 3])
>>> # Shares memory with array 'array'
>>> t1 = torch.asarray(array)
>>> array.__array_interface__['data'][0] == t1.data_ptr()
True
>>> # Copies memory due to dtype mismatch
>>> t2 = torch.asarray(array, dtype=torch.float32)
>>> array.__array_interface__['data'][0] == t1.data_ptr()
False

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