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to_array

ToArray

Bases: NumpyOp

Convert data to a numpy array.

Parameters:

Name Type Description Default
inputs Union[str, Iterable[str]]

Key(s) of the data to be converted.

required
outputs Union[str, Iterable[str]]

Key(s) into which to write the converted data.

required
mode Union[None, str, Iterable[str]]

What mode(s) to execute this Op in. For example, "train", "eval", "test", or "infer". To execute regardless of mode, pass None. To execute in all modes except for a particular one, you can pass an argument like "!infer" or "!train".

None
ds_id Union[None, str, Iterable[str]]

What dataset id(s) to execute this Op in. To execute regardless of ds_id, pass None. To execute in all ds_ids except for a particular one, you can pass an argument like "!ds1".

None
dtype Optional[str]

The dtype to apply to the output array, or None to infer the type.

None
Source code in fastestimator/fastestimator/op/numpyop/univariate/to_array.py
@traceable()
class ToArray(NumpyOp):
    """Convert data to a numpy array.

    Args:
        inputs: Key(s) of the data to be converted.
        outputs: Key(s) into which to write the converted data.
        mode: What mode(s) to execute this Op in. For example, "train", "eval", "test", or "infer". To execute
            regardless of mode, pass None. To execute in all modes except for a particular one, you can pass an argument
            like "!infer" or "!train".
        ds_id: What dataset id(s) to execute this Op in. To execute regardless of ds_id, pass None. To execute in all
            ds_ids except for a particular one, you can pass an argument like "!ds1".
        dtype: The dtype to apply to the output array, or None to infer the type.
    """
    def __init__(self,
                 inputs: Union[str, Iterable[str]],
                 outputs: Union[str, Iterable[str]],
                 mode: Union[None, str, Iterable[str]] = None,
                 ds_id: Union[None, str, Iterable[str]] = None,
                 dtype: Optional[str] = None):
        super().__init__(inputs=inputs, outputs=outputs, mode=mode, ds_id=ds_id)
        self.dtype = dtype
        self.in_list, self.out_list = True, True

    def forward(self, data: List[Any], state: Dict[str, Any]) -> List[np.ndarray]:
        return [self._apply_transform(elem) for elem in data]

    def _apply_transform(self, data: Any) -> np.ndarray:
        return np.array(data, dtype=self.dtype)