mirror of
https://github.com/explosion/spaCy.git
synced 2024-11-16 06:37:04 +03:00
05bdbe28bb
* ensure vectors data is stored on right device * ensure the added vector is on the right device * move vector to numpy before iterating * move best_rows to numpy before iterating
482 lines
17 KiB
Cython
482 lines
17 KiB
Cython
cimport numpy as np
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from cython.operator cimport dereference as deref
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from libcpp.set cimport set as cppset
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import functools
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import numpy
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import srsly
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from thinc.api import get_array_module, get_current_ops
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from .strings cimport StringStore
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from .strings import get_string_id
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from .errors import Errors
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from . import util
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def unpickle_vectors(bytes_data):
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return Vectors().from_bytes(bytes_data)
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class GlobalRegistry:
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"""Global store of vectors, to avoid repeatedly loading the data."""
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data = {}
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@classmethod
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def register(cls, name, data):
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cls.data[name] = data
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return functools.partial(cls.get, name)
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@classmethod
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def get(cls, name):
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return cls.data[name]
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cdef class Vectors:
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"""Store, save and load word vectors.
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Vectors data is kept in the vectors.data attribute, which should be an
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instance of numpy.ndarray (for CPU vectors) or cupy.ndarray
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(for GPU vectors). `vectors.key2row` is a dictionary mapping word hashes to
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rows in the vectors.data table.
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Multiple keys can be mapped to the same vector, and not all of the rows in
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the table need to be assigned - so len(list(vectors.keys())) may be
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greater or smaller than vectors.shape[0].
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DOCS: https://spacy.io/api/vectors
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"""
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cdef public object name
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cdef public object data
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cdef public object key2row
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cdef cppset[int] _unset
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def __init__(self, *, shape=None, data=None, keys=None, name=None):
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"""Create a new vector store.
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shape (tuple): Size of the table, as (# entries, # columns)
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data (numpy.ndarray or cupy.ndarray): The vector data.
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keys (iterable): A sequence of keys, aligned with the data.
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name (str): A name to identify the vectors table.
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DOCS: https://spacy.io/api/vectors#init
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"""
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self.name = name
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if data is None:
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if shape is None:
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shape = (0,0)
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ops = get_current_ops()
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data = ops.xp.zeros(shape, dtype="f")
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self.data = data
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self.key2row = {}
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if self.data is not None:
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self._unset = cppset[int]({i for i in range(self.data.shape[0])})
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else:
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self._unset = cppset[int]()
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if keys is not None:
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for i, key in enumerate(keys):
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self.add(key, row=i)
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@property
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def shape(self):
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"""Get `(rows, dims)` tuples of number of rows and number of dimensions
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in the vector table.
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RETURNS (tuple): A `(rows, dims)` pair.
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DOCS: https://spacy.io/api/vectors#shape
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"""
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return self.data.shape
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@property
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def size(self):
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"""The vector size i,e. rows * dims.
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RETURNS (int): The vector size.
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DOCS: https://spacy.io/api/vectors#size
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"""
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return self.data.shape[0] * self.data.shape[1]
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@property
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def is_full(self):
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"""Whether the vectors table is full.
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RETURNS (bool): `True` if no slots are available for new keys.
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DOCS: https://spacy.io/api/vectors#is_full
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"""
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return self._unset.size() == 0
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@property
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def n_keys(self):
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"""Get the number of keys in the table. Note that this is the number
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of all keys, not just unique vectors.
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RETURNS (int): The number of keys in the table.
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DOCS: https://spacy.io/api/vectors#n_keys
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"""
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return len(self.key2row)
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def __reduce__(self):
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return (unpickle_vectors, (self.to_bytes(),))
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def __getitem__(self, key):
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"""Get a vector by key. If the key is not found, a KeyError is raised.
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key (int): The key to get the vector for.
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RETURNS (ndarray): The vector for the key.
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DOCS: https://spacy.io/api/vectors#getitem
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"""
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i = self.key2row[key]
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if i is None:
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raise KeyError(Errors.E058.format(key=key))
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else:
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return self.data[i]
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def __setitem__(self, key, vector):
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"""Set a vector for the given key.
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key (int): The key to set the vector for.
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vector (ndarray): The vector to set.
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DOCS: https://spacy.io/api/vectors#setitem
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"""
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i = self.key2row[key]
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self.data[i] = vector
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if self._unset.count(i):
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self._unset.erase(self._unset.find(i))
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def __iter__(self):
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"""Iterate over the keys in the table.
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YIELDS (int): A key in the table.
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DOCS: https://spacy.io/api/vectors#iter
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"""
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yield from self.key2row
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def __len__(self):
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"""Return the number of vectors in the table.
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RETURNS (int): The number of vectors in the data.
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DOCS: https://spacy.io/api/vectors#len
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"""
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return self.data.shape[0]
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def __contains__(self, key):
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"""Check whether a key has been mapped to a vector entry in the table.
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key (int): The key to check.
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RETURNS (bool): Whether the key has a vector entry.
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DOCS: https://spacy.io/api/vectors#contains
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"""
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return key in self.key2row
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def resize(self, shape, inplace=False):
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"""Resize the underlying vectors array. If inplace=True, the memory
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is reallocated. This may cause other references to the data to become
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invalid, so only use inplace=True if you're sure that's what you want.
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If the number of vectors is reduced, keys mapped to rows that have been
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deleted are removed. These removed items are returned as a list of
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`(key, row)` tuples.
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shape (tuple): A `(rows, dims)` tuple.
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inplace (bool): Reallocate the memory.
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RETURNS (list): The removed items as a list of `(key, row)` tuples.
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DOCS: https://spacy.io/api/vectors#resize
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"""
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xp = get_array_module(self.data)
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if inplace:
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if shape[1] != self.data.shape[1]:
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raise ValueError(Errors.E193.format(new_dim=shape[1], curr_dim=self.data.shape[1]))
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if xp == numpy:
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self.data.resize(shape, refcheck=False)
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else:
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raise ValueError(Errors.E192)
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else:
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resized_array = xp.zeros(shape, dtype=self.data.dtype)
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copy_shape = (min(shape[0], self.data.shape[0]), min(shape[1], self.data.shape[1]))
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resized_array[:copy_shape[0], :copy_shape[1]] = self.data[:copy_shape[0], :copy_shape[1]]
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self.data = resized_array
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self._sync_unset()
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removed_items = []
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for key, row in list(self.key2row.items()):
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if row >= shape[0]:
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self.key2row.pop(key)
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removed_items.append((key, row))
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return removed_items
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def keys(self):
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"""RETURNS (iterable): A sequence of keys in the table."""
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return self.key2row.keys()
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def values(self):
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"""Iterate over vectors that have been assigned to at least one key.
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Note that some vectors may be unassigned, so the number of vectors
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returned may be less than the length of the vectors table.
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YIELDS (ndarray): A vector in the table.
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DOCS: https://spacy.io/api/vectors#values
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"""
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for row, vector in enumerate(range(self.data.shape[0])):
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if not self._unset.count(row):
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yield vector
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def items(self):
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"""Iterate over `(key, vector)` pairs.
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YIELDS (tuple): A key/vector pair.
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DOCS: https://spacy.io/api/vectors#items
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"""
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for key, row in self.key2row.items():
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yield key, self.data[row]
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def find(self, *, key=None, keys=None, row=None, rows=None):
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"""Look up one or more keys by row, or vice versa.
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key (str / int): Find the row that the given key points to.
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Returns int, -1 if missing.
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keys (iterable): Find rows that the keys point to.
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Returns ndarray.
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row (int): Find the first key that points to the row.
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Returns int.
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rows (iterable): Find the keys that point to the rows.
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Returns ndarray.
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RETURNS: The requested key, keys, row or rows.
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"""
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if sum(arg is None for arg in (key, keys, row, rows)) != 3:
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bad_kwargs = {"key": key, "keys": keys, "row": row, "rows": rows}
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raise ValueError(Errors.E059.format(kwargs=bad_kwargs))
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xp = get_array_module(self.data)
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if key is not None:
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key = get_string_id(key)
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return self.key2row.get(key, -1)
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elif keys is not None:
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keys = [get_string_id(key) for key in keys]
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rows = [self.key2row.get(key, -1.) for key in keys]
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return xp.asarray(rows, dtype="i")
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else:
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row2key = {row: key for key, row in self.key2row.items()}
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if row is not None:
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return row2key[row]
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else:
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results = [row2key[row] for row in rows]
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return xp.asarray(results, dtype="uint64")
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def add(self, key, *, vector=None, row=None):
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"""Add a key to the table. Keys can be mapped to an existing vector
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by setting `row`, or a new vector can be added.
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key (int): The key to add.
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vector (ndarray / None): A vector to add for the key.
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row (int / None): The row number of a vector to map the key to.
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RETURNS (int): The row the vector was added to.
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DOCS: https://spacy.io/api/vectors#add
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"""
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# use int for all keys and rows in key2row for more efficient access
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# and serialization
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key = int(get_string_id(key))
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if row is not None:
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row = int(row)
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if row is None and key in self.key2row:
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row = self.key2row[key]
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elif row is None:
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if self.is_full:
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raise ValueError(Errors.E060.format(rows=self.data.shape[0],
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cols=self.data.shape[1]))
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row = deref(self._unset.begin())
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if row < self.data.shape[0]:
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self.key2row[key] = row
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else:
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raise ValueError(Errors.E197.format(row=row, key=key))
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if vector is not None:
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xp = get_array_module(self.data)
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vector = xp.asarray(vector)
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self.data[row] = vector
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if self._unset.count(row):
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self._unset.erase(self._unset.find(row))
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return row
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def most_similar(self, queries, *, batch_size=1024, n=1, sort=True):
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"""For each of the given vectors, find the n most similar entries
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to it, by cosine.
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Queries are by vector. Results are returned as a `(keys, best_rows,
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scores)` tuple. If `queries` is large, the calculations are performed in
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chunks, to avoid consuming too much memory. You can set the `batch_size`
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to control the size/space trade-off during the calculations.
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queries (ndarray): An array with one or more vectors.
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batch_size (int): The batch size to use.
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n (int): The number of entries to return for each query.
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sort (bool): Whether to sort the n entries returned by score.
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RETURNS (tuple): The most similar entries as a `(keys, best_rows, scores)`
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tuple.
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"""
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xp = get_array_module(self.data)
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filled = sorted(list({row for row in self.key2row.values()}))
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if len(filled) < n:
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raise ValueError(Errors.E198.format(n=n, n_rows=len(filled)))
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filled = xp.asarray(filled)
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norms = xp.linalg.norm(self.data[filled], axis=1, keepdims=True)
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norms[norms == 0] = 1
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vectors = self.data[filled] / norms
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best_rows = xp.zeros((queries.shape[0], n), dtype='i')
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scores = xp.zeros((queries.shape[0], n), dtype='f')
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# Work in batches, to avoid memory problems.
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for i in range(0, queries.shape[0], batch_size):
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batch = queries[i : i+batch_size]
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batch_norms = xp.linalg.norm(batch, axis=1, keepdims=True)
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batch_norms[batch_norms == 0] = 1
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batch /= batch_norms
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# batch e.g. (1024, 300)
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# vectors e.g. (10000, 300)
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# sims e.g. (1024, 10000)
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sims = xp.dot(batch, vectors.T)
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best_rows[i:i+batch_size] = xp.argpartition(sims, -n, axis=1)[:,-n:]
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scores[i:i+batch_size] = xp.partition(sims, -n, axis=1)[:,-n:]
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if sort and n >= 2:
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sorted_index = xp.arange(scores.shape[0])[:,None][i:i+batch_size],xp.argsort(scores[i:i+batch_size], axis=1)[:,::-1]
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scores[i:i+batch_size] = scores[sorted_index]
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best_rows[i:i+batch_size] = best_rows[sorted_index]
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for i, j in numpy.ndindex(best_rows.shape):
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best_rows[i, j] = filled[best_rows[i, j]]
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# Round values really close to 1 or -1
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scores = xp.around(scores, decimals=4, out=scores)
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# Account for numerical error we want to return in range -1, 1
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scores = xp.clip(scores, a_min=-1, a_max=1, out=scores)
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row2key = {row: key for key, row in self.key2row.items()}
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numpy_rows = get_current_ops().to_numpy(best_rows)
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keys = xp.asarray(
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[[row2key[row] for row in numpy_rows[i] if row in row2key]
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for i in range(len(queries)) ], dtype="uint64")
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return (keys, best_rows, scores)
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def to_disk(self, path, **kwargs):
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"""Save the current state to a directory.
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path (str / Path): A path to a directory, which will be created if
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it doesn't exists.
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DOCS: https://spacy.io/api/vectors#to_disk
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"""
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xp = get_array_module(self.data)
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if xp is numpy:
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save_array = lambda arr, file_: xp.save(file_, arr, allow_pickle=False)
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else:
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save_array = lambda arr, file_: xp.save(file_, arr)
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def save_vectors(path):
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# the source of numpy.save indicates that the file object is closed after use.
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# but it seems that somehow this does not happen, as ResourceWarnings are raised here.
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# in order to not rely on this, wrap in context manager.
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with path.open("wb") as _file:
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save_array(self.data, _file)
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serializers = {
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"vectors": lambda p: save_vectors(p),
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"key2row": lambda p: srsly.write_msgpack(p, self.key2row)
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}
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return util.to_disk(path, serializers, [])
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def from_disk(self, path, **kwargs):
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"""Loads state from a directory. Modifies the object in place and
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returns it.
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path (str / Path): Directory path, string or Path-like object.
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RETURNS (Vectors): The modified object.
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DOCS: https://spacy.io/api/vectors#from_disk
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"""
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def load_key2row(path):
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if path.exists():
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self.key2row = srsly.read_msgpack(path)
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for key, row in self.key2row.items():
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if self._unset.count(row):
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self._unset.erase(self._unset.find(row))
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def load_keys(path):
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if path.exists():
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keys = numpy.load(str(path))
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for i, key in enumerate(keys):
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self.add(key, row=i)
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def load_vectors(path):
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ops = get_current_ops()
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if path.exists():
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self.data = ops.xp.load(str(path))
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serializers = {
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"vectors": load_vectors,
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"keys": load_keys,
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"key2row": load_key2row,
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}
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util.from_disk(path, serializers, [])
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self._sync_unset()
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return self
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def to_bytes(self, **kwargs):
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"""Serialize the current state to a binary string.
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exclude (list): String names of serialization fields to exclude.
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RETURNS (bytes): The serialized form of the `Vectors` object.
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DOCS: https://spacy.io/api/vectors#to_bytes
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"""
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def serialize_weights():
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if hasattr(self.data, "to_bytes"):
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return self.data.to_bytes()
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else:
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return srsly.msgpack_dumps(self.data)
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serializers = {
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"key2row": lambda: srsly.msgpack_dumps(self.key2row),
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"vectors": serialize_weights
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}
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return util.to_bytes(serializers, [])
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def from_bytes(self, data, **kwargs):
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"""Load state from a binary string.
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data (bytes): The data to load from.
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exclude (list): String names of serialization fields to exclude.
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RETURNS (Vectors): The `Vectors` object.
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DOCS: https://spacy.io/api/vectors#from_bytes
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"""
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def deserialize_weights(b):
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if hasattr(self.data, "from_bytes"):
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self.data.from_bytes()
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else:
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xp = get_array_module(self.data)
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self.data = xp.asarray(srsly.msgpack_loads(b))
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deserializers = {
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"key2row": lambda b: self.key2row.update(srsly.msgpack_loads(b)),
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"vectors": deserialize_weights
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}
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util.from_bytes(data, deserializers, [])
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self._sync_unset()
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return self
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def _sync_unset(self):
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filled = {row for row in self.key2row.values()}
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self._unset = cppset[int]({row for row in range(self.data.shape[0]) if row not in filled})
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