ParametersRecord

class ParametersRecord(*args: Any, **kwargs: Any)[소스]

기반 클래스: ArrayRecord

Deprecated class ParametersRecord, use ArrayRecord instead.

메소드

clear()

copy()

Return a shallow copy of the dictionary.

count_bytes()

이 객체에 저장된 바이트 수를 반환합니다.

deflate()

Deflate the ArrayRecord.

from_array_dict(array_dict, *[, keep_input])

Create ArrayRecord from a dictionary of Array.

from_numpy_ndarrays(ndarrays, *[, keep_input])

Create ArrayRecord from a list of NumPy ndarray.

from_torch_state_dict(state_dict, *[, ...])

Create ArrayRecord from PyTorch state_dict.

get(k[,d])

inflate(object_content[, children])

Inflate an ArrayRecord from bytes.

items()

keys()

pop(k[,d])

키를 찾을 수 없으면 주어진 경우 d가 반환되고, 그렇지 않으면 KeyError가 발생합니다.

popitem()

as a 2-tuple; but raise KeyError if D is empty.

setdefault(k[,d])

to_numpy_ndarrays(*[, keep_input])

Return the ArrayRecord as a list of NumPy ndarray.

to_torch_state_dict(*[, keep_input])

Return the ArrayRecord as a PyTorch state_dict.

update([E, ]**F)

If E present and has a .keys() method, does: for k in E: D[k] = E[k] If E present and lacks .keys() method, does: for (k, v) in E: D[k] = v In either case, this is followed by: for k, v in F.items(): D[k] = v

values()

속성

children

Return a dictionary of Arrays with their Object IDs as keys.

is_dirty

Check if the object is dirty after the last deflation.

object_id

Get object ID.

property children: dict[str, InflatableObject]

Return a dictionary of Arrays with their Object IDs as keys.

clear() None.  Remove all items from D.
copy() Self

Return a shallow copy of the dictionary.

count_bytes() int

이 객체에 저장된 바이트 수를 반환합니다.

역직렬화에 필요한 직렬화된 객체의 메타데이터(예: NumPy 배열)에 해당하는 소량의 바이트도 이 카운팅에 포함될 수 있습니다.

deflate() bytes

Deflate the ArrayRecord.

classmethod from_array_dict(array_dict: dict[str, Array], *, keep_input: bool = True) ArrayRecord

Create ArrayRecord from a dictionary of Array.

classmethod from_numpy_ndarrays(ndarrays: list[ndarray[tuple[Any, ...], dtype[Any]]], *, keep_input: bool = True) ArrayRecord

Create ArrayRecord from a list of NumPy ndarray.

classmethod from_torch_state_dict(state_dict: dict[str, torch.Tensor], *, keep_input: bool = True) ArrayRecord

Create ArrayRecord from PyTorch state_dict.

get(k[, d]) D[k] if k in D, else d.  d defaults to None.
classmethod inflate(object_content: bytes, children: dict[str, InflatableObject] | None = None) ArrayRecord

Inflate an ArrayRecord from bytes.

매개변수:
  • object_content (bytes) – The deflated object content of the ArrayRecord.

  • children (Optional[dict[str, InflatableObject]] (default: None)) – Dictionary of children InflatableObjects mapped to their Object IDs. These children enable the full inflation of the ArrayRecord.

반환:

The inflated ArrayRecord.

반환 형식:

ArrayRecord

property is_dirty: bool

Check if the object is dirty after the last deflation.

items() a set-like object providing a view on D's items.
keys() a set-like object providing a view on D's keys.
property object_id: str

Get object ID.

pop(k[, d]) v, remove specified key and return the corresponding value.

키를 찾을 수 없으면 주어진 경우 d가 반환되고, 그렇지 않으면 KeyError가 발생합니다.

popitem() (k, v), remove and return some (key, value) pair

as a 2-tuple; but raise KeyError if D is empty.

setdefault(k[, d]) D.get(k,d), also set D[k]=d if k not in D
to_numpy_ndarrays(*, keep_input: bool = True) list[ndarray[tuple[Any, ...], dtype[Any]]]

Return the ArrayRecord as a list of NumPy ndarray.

to_torch_state_dict(*, keep_input: bool = True) OrderedDict[str, torch.Tensor]

Return the ArrayRecord as a PyTorch state_dict.

update([E, ]**F) None.  Update D from mapping/iterable E and F.

If E present and has a .keys() method, does: for k in E: D[k] = E[k] If E present and lacks .keys() method, does: for (k, v) in E: D[k] = v In either case, this is followed by: for k, v in F.items(): D[k] = v

values() an object providing a view on D's values.