Source code for flwr.common.record.parametersrecord

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"""ParametersRecord and Array."""

from dataclasses import dataclass
from io import BytesIO
from typing import List, Optional, OrderedDict, cast

import numpy as np

from ..constant import SType
from ..typing import NDArray
from .typeddict import TypedDict


[docs]@dataclass class Array: """Array type. A dataclass containing serialized data from an array-like or tensor-like object along with some metadata about it. Parameters ---------- dtype : str A string representing the data type of the serialised object (e.g. `np.float32`) shape : List[int] A list representing the shape of the unserialized array-like object. This is used to deserialize the data (depending on the serialization method) or simply as a metadata field. stype : str A string indicating the type of serialisation mechanism used to generate the bytes in `data` from an array-like or tensor-like object. data: bytes A buffer of bytes containing the data. """ dtype: str shape: List[int] stype: str data: bytes
[docs] def numpy(self) -> NDArray: """Return the array as a NumPy array.""" if self.stype != SType.NUMPY: raise TypeError( f"Unsupported serialization type for numpy conversion: '{self.stype}'" ) bytes_io = BytesIO(self.data) # WARNING: NEVER set allow_pickle to true. # Reason: loading pickled data can execute arbitrary code # Source: https://numpy.org/doc/stable/reference/generated/numpy.load.html ndarray_deserialized = np.load(bytes_io, allow_pickle=False) return cast(NDArray, ndarray_deserialized)
def _check_key(key: str) -> None: """Check if key is of expected type.""" if not isinstance(key, str): raise TypeError(f"Key must be of type `str` but `{type(key)}` was passed.") def _check_value(value: Array) -> None: if not isinstance(value, Array): raise TypeError( f"Value must be of type `{Array}` but `{type(value)}` was passed." )
[docs]class ParametersRecord(TypedDict[str, Array]): """Parameters record. A dataclass storing named Arrays in order. This means that it holds entries as an OrderedDict[str, Array]. ParametersRecord objects can be viewed as an equivalent to PyTorch's state_dict, but holding serialised tensors instead. """ def __init__( self, array_dict: Optional[OrderedDict[str, Array]] = None, keep_input: bool = False, ) -> None: """Construct a ParametersRecord object. Parameters ---------- array_dict : Optional[OrderedDict[str, Array]] A dictionary that stores serialized array-like or tensor-like objects. keep_input : bool (default: False) A boolean indicating whether parameters should be deleted from the input dictionary immediately after adding them to the record. If False, the dictionary passed to `set_parameters()` will be empty once exiting from that function. This is the desired behaviour when working with very large models/tensors/arrays. However, if you plan to continue working with your parameters after adding it to the record, set this flag to True. When set to True, the data is duplicated in memory. """ super().__init__(_check_key, _check_value) if array_dict: for k in list(array_dict.keys()): self[k] = array_dict[k] if not keep_input: del array_dict[k]
[docs] def count_bytes(self) -> int: """Return number of Bytes stored in this object. Note that a small amount of Bytes might also be included in this counting that correspond to metadata of the serialized object (e.g. of NumPy array) needed for deseralization. """ num_bytes = 0 for k, v in self.items(): num_bytes += len(v.data) # We also count the bytes footprint of the keys num_bytes += len(k) return num_bytes