mirror of
https://github.com/explosion/spaCy.git
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657af5f91f
* 🚨 Ignore all existing Mypy errors * 🏗 Add Mypy check to CI * Add types-mock and types-requests as dev requirements * Add additional type ignore directives * Add types packages to dev-only list in reqs test * Add types-dataclasses for python 3.6 * Add ignore to pretrain * 🏷 Improve type annotation on `run_command` helper The `run_command` helper previously declared that it returned an `Optional[subprocess.CompletedProcess]`, but it isn't actually possible for the function to return `None`. These changes modify the type annotation of the `run_command` helper and remove all now-unnecessary `# type: ignore` directives. * 🔧 Allow variable type redefinition in limited contexts These changes modify how Mypy is configured to allow variables to have their type automatically redefined under certain conditions. The Mypy documentation contains the following example: ```python def process(items: List[str]) -> None: # 'items' has type List[str] items = [item.split() for item in items] # 'items' now has type List[List[str]] ... ``` This configuration change is especially helpful in reducing the number of `# type: ignore` directives needed to handle the common pattern of: * Accepting a filepath as a string * Overwriting the variable using `filepath = ensure_path(filepath)` These changes enable redefinition and remove all `# type: ignore` directives rendered redundant by this change. * 🏷 Add type annotation to converters mapping * 🚨 Fix Mypy error in convert CLI argument verification * 🏷 Improve type annotation on `resolve_dot_names` helper * 🏷 Add type annotations for `Vocab` attributes `strings` and `vectors` * 🏷 Add type annotations for more `Vocab` attributes * 🏷 Add loose type annotation for gold data compilation * 🏷 Improve `_format_labels` type annotation * 🏷 Fix `get_lang_class` type annotation * 🏷 Loosen return type of `Language.evaluate` * 🏷 Don't accept `Scorer` in `handle_scores_per_type` * 🏷 Add `string_to_list` overloads * 🏷 Fix non-Optional command-line options * 🙈 Ignore redefinition of `wandb_logger` in `loggers.py` * ➕ Install `typing_extensions` in Python 3.8+ The `typing_extensions` package states that it should be used when "writing code that must be compatible with multiple Python versions". Since SpaCy needs to support multiple Python versions, it should be used when newer `typing` module members are required. One example of this is `Literal`, which is available starting with Python 3.8. Previously SpaCy tried to import `Literal` from `typing`, falling back to `typing_extensions` if the import failed. However, Mypy doesn't seem to be able to understand what `Literal` means when the initial import means. Therefore, these changes modify how `compat` imports `Literal` by always importing it from `typing_extensions`. These changes also modify how `typing_extensions` is installed, so that it is a requirement for all Python versions, including those greater than or equal to 3.8. * 🏷 Improve type annotation for `Language.pipe` These changes add a missing overload variant to the type signature of `Language.pipe`. Additionally, the type signature is enhanced to allow type checkers to differentiate between the two overload variants based on the `as_tuple` parameter. Fixes #8772 * ➖ Don't install `typing-extensions` in Python 3.8+ After more detailed analysis of how to implement Python version-specific type annotations using SpaCy, it has been determined that by branching on a comparison against `sys.version_info` can be statically analyzed by Mypy well enough to enable us to conditionally use `typing_extensions.Literal`. This means that we no longer need to install `typing_extensions` for Python versions greater than or equal to 3.8! 🎉 These changes revert previous changes installing `typing-extensions` regardless of Python version and modify how we import the `Literal` type to ensure that Mypy treats it properly. * resolve mypy errors for Strict pydantic types * refactor code to avoid missing return statement * fix types of convert CLI command * avoid list-set confustion in debug_data * fix typo and formatting * small fixes to avoid type ignores * fix types in profile CLI command and make it more efficient * type fixes in projects CLI * put one ignore back * type fixes for render * fix render types - the sequel * fix BaseDefault in language definitions * fix type of noun_chunks iterator - yields tuple instead of span * fix types in language-specific modules * 🏷 Expand accepted inputs of `get_string_id` `get_string_id` accepts either a string (in which case it returns its ID) or an ID (in which case it immediately returns the ID). These changes extend the type annotation of `get_string_id` to indicate that it can accept either strings or IDs. * 🏷 Handle override types in `combine_score_weights` The `combine_score_weights` function allows users to pass an `overrides` mapping to override data extracted from the `weights` argument. Since it allows `Optional` dictionary values, the return value may also include `Optional` dictionary values. These changes update the type annotations for `combine_score_weights` to reflect this fact. * 🏷 Fix tokenizer serialization method signatures in `DummyTokenizer` * 🏷 Fix redefinition of `wandb_logger` These changes fix the redefinition of `wandb_logger` by giving a separate name to each `WandbLogger` version. For backwards-compatibility, `spacy.train` still exports `wandb_logger_v3` as `wandb_logger` for now. * more fixes for typing in language * type fixes in model definitions * 🏷 Annotate `_RandomWords.probs` as `NDArray` * 🏷 Annotate `tok2vec` layers to help Mypy * 🐛 Fix `_RandomWords.probs` type annotations for Python 3.6 Also remove an import that I forgot to move to the top of the module 😅 * more fixes for matchers and other pipeline components * quick fix for entity linker * fixing types for spancat, textcat, etc * bugfix for tok2vec * type annotations for scorer * add runtime_checkable for Protocol * type and import fixes in tests * mypy fixes for training utilities * few fixes in util * fix import * 🐵 Remove unused `# type: ignore` directives * 🏷 Annotate `Language._components` * 🏷 Annotate `spacy.pipeline.Pipe` * add doc as property to span.pyi * small fixes and cleanup * explicit type annotations instead of via comment Co-authored-by: Adriane Boyd <adrianeboyd@gmail.com> Co-authored-by: svlandeg <sofie.vanlandeghem@gmail.com> Co-authored-by: svlandeg <svlandeg@github.com>
310 lines
12 KiB
Python
310 lines
12 KiB
Python
from typing import Sequence, Iterable, Optional, Dict, Callable, List, Any
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from thinc.api import Model, set_dropout_rate, Optimizer, Config
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from itertools import islice
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from .trainable_pipe import TrainablePipe
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from ..training import Example, validate_examples, validate_get_examples
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from ..tokens import Doc
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from ..vocab import Vocab
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from ..language import Language
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from ..errors import Errors
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default_model_config = """
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[model]
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@architectures = "spacy.HashEmbedCNN.v2"
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pretrained_vectors = null
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width = 96
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depth = 4
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embed_size = 2000
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window_size = 1
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maxout_pieces = 3
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subword_features = true
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"""
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DEFAULT_TOK2VEC_MODEL = Config().from_str(default_model_config)["model"]
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@Language.factory(
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"tok2vec", assigns=["doc.tensor"], default_config={"model": DEFAULT_TOK2VEC_MODEL}
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)
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def make_tok2vec(nlp: Language, name: str, model: Model) -> "Tok2Vec":
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return Tok2Vec(nlp.vocab, model, name)
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class Tok2Vec(TrainablePipe):
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"""Apply a "token-to-vector" model and set its outputs in the doc.tensor
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attribute. This is mostly useful to share a single subnetwork between multiple
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components, e.g. to have one embedding and CNN network shared between a
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parser, tagger and NER.
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In order to use the `Tok2Vec` predictions, subsequent components should use
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the `Tok2VecListener` layer as the tok2vec subnetwork of their model. This
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layer will read data from the `doc.tensor` attribute during prediction.
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During training, the `Tok2Vec` component will save its prediction and backprop
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callback for each batch, so that the subsequent components can backpropagate
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to the shared weights. This implementation is used because it allows us to
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avoid relying on object identity within the models to achieve the parameter
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sharing.
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"""
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def __init__(self, vocab: Vocab, model: Model, name: str = "tok2vec") -> None:
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"""Initialize a tok2vec component.
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vocab (Vocab): The shared vocabulary.
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model (thinc.api.Model[List[Doc], List[Floats2d]]):
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The Thinc Model powering the pipeline component. It should take
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a list of Doc objects as input, and output a list of 2d float arrays.
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name (str): The component instance name.
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DOCS: https://spacy.io/api/tok2vec#init
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"""
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self.vocab = vocab
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self.model = model
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self.name = name
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self.listener_map: Dict[str, List["Tok2VecListener"]] = {}
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self.cfg: Dict[str, Any] = {}
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@property
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def listeners(self) -> List["Tok2VecListener"]:
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"""RETURNS (List[Tok2VecListener]): The listener models listening to this
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component. Usually internals.
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"""
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return [m for c in self.listening_components for m in self.listener_map[c]]
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@property
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def listening_components(self) -> List[str]:
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"""RETURNS (List[str]): The downstream components listening to this
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component. Usually internals.
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"""
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return list(self.listener_map.keys())
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def add_listener(self, listener: "Tok2VecListener", component_name: str) -> None:
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"""Add a listener for a downstream component. Usually internals."""
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self.listener_map.setdefault(component_name, [])
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if listener not in self.listener_map[component_name]:
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self.listener_map[component_name].append(listener)
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def remove_listener(self, listener: "Tok2VecListener", component_name: str) -> bool:
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"""Remove a listener for a downstream component. Usually internals."""
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if component_name in self.listener_map:
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if listener in self.listener_map[component_name]:
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self.listener_map[component_name].remove(listener)
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# If no listeners are left, remove entry
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if not self.listener_map[component_name]:
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del self.listener_map[component_name]
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return True
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return False
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def find_listeners(self, component) -> None:
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"""Walk over a model of a processing component, looking for layers that
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are Tok2vecListener subclasses that have an upstream_name that matches
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this component. Listeners can also set their upstream_name attribute to
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the wildcard string '*' to match any `Tok2Vec`.
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You're unlikely to ever need multiple `Tok2Vec` components, so it's
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fine to leave your listeners upstream_name on '*'.
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"""
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names = ("*", self.name)
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if isinstance(getattr(component, "model", None), Model):
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for node in component.model.walk():
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if isinstance(node, Tok2VecListener) and node.upstream_name in names:
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self.add_listener(node, component.name)
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def predict(self, docs: Iterable[Doc]):
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"""Apply the pipeline's model to a batch of docs, without modifying them.
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Returns a single tensor for a batch of documents.
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docs (Iterable[Doc]): The documents to predict.
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RETURNS: Vector representations for each token in the documents.
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DOCS: https://spacy.io/api/tok2vec#predict
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"""
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tokvecs = self.model.predict(docs)
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batch_id = Tok2VecListener.get_batch_id(docs)
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for listener in self.listeners:
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listener.receive(batch_id, tokvecs, _empty_backprop)
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return tokvecs
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def set_annotations(self, docs: Sequence[Doc], tokvecses) -> None:
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"""Modify a batch of documents, using pre-computed scores.
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docs (Iterable[Doc]): The documents to modify.
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tokvecses: The tensors to set, produced by Tok2Vec.predict.
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DOCS: https://spacy.io/api/tok2vec#set_annotations
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"""
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for doc, tokvecs in zip(docs, tokvecses):
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assert tokvecs.shape[0] == len(doc)
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doc.tensor = tokvecs
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def update(
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self,
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examples: Iterable[Example],
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*,
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drop: float = 0.0,
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sgd: Optional[Optimizer] = None,
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losses: Optional[Dict[str, float]] = None,
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):
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"""Learn from a batch of documents and gold-standard information,
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updating the pipe's model.
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examples (Iterable[Example]): A batch of Example objects.
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drop (float): The dropout rate.
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sgd (thinc.api.Optimizer): The optimizer.
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losses (Dict[str, float]): Optional record of the loss during training.
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Updated using the component name as the key.
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RETURNS (Dict[str, float]): The updated losses dictionary.
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DOCS: https://spacy.io/api/tok2vec#update
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"""
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if losses is None:
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losses = {}
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validate_examples(examples, "Tok2Vec.update")
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docs = [eg.predicted for eg in examples]
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set_dropout_rate(self.model, drop)
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tokvecs, bp_tokvecs = self.model.begin_update(docs)
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d_tokvecs = [self.model.ops.alloc2f(*t2v.shape) for t2v in tokvecs]
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losses.setdefault(self.name, 0.0)
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def accumulate_gradient(one_d_tokvecs):
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"""Accumulate tok2vec loss and gradient. This is passed as a callback
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to all but the last listener. Only the last one does the backprop.
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"""
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nonlocal d_tokvecs
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for i in range(len(one_d_tokvecs)):
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d_tokvecs[i] += one_d_tokvecs[i]
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losses[self.name] += float((one_d_tokvecs[i] ** 2).sum())
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return [self.model.ops.alloc2f(*t2v.shape) for t2v in tokvecs]
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def backprop(one_d_tokvecs):
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"""Callback to actually do the backprop. Passed to last listener."""
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accumulate_gradient(one_d_tokvecs)
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d_docs = bp_tokvecs(d_tokvecs)
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if sgd is not None:
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self.finish_update(sgd)
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return d_docs
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batch_id = Tok2VecListener.get_batch_id(docs)
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for listener in self.listeners[:-1]:
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listener.receive(batch_id, tokvecs, accumulate_gradient)
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if self.listeners:
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self.listeners[-1].receive(batch_id, tokvecs, backprop)
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return losses
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def get_loss(self, examples, scores) -> None:
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pass
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def initialize(
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self,
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get_examples: Callable[[], Iterable[Example]],
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*,
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nlp: Optional[Language] = None,
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):
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"""Initialize the pipe for training, using a representative set
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of data examples.
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get_examples (Callable[[], Iterable[Example]]): Function that
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returns a representative sample of gold-standard Example objects.
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nlp (Language): The current nlp object the component is part of.
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DOCS: https://spacy.io/api/tok2vec#initialize
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"""
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validate_get_examples(get_examples, "Tok2Vec.initialize")
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doc_sample = []
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for example in islice(get_examples(), 10):
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doc_sample.append(example.x)
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assert doc_sample, Errors.E923.format(name=self.name)
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self.model.initialize(X=doc_sample)
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def add_label(self, label):
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raise NotImplementedError
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class Tok2VecListener(Model):
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"""A layer that gets fed its answers from an upstream connection,
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for instance from a component earlier in the pipeline.
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The Tok2VecListener layer is used as a sublayer within a component such
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as a parser, NER or text categorizer. Usually you'll have multiple listeners
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connecting to a single upstream Tok2Vec component, that's earlier in the
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pipeline. The Tok2VecListener layers act as proxies, passing the predictions
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from the Tok2Vec component into downstream components, and communicating
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gradients back upstream.
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"""
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name = "tok2vec-listener"
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def __init__(self, upstream_name: str, width: int) -> None:
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"""
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upstream_name (str): A string to identify the 'upstream' Tok2Vec component
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to communicate with. The upstream name should either be the wildcard
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string '*', or the name of the `Tok2Vec` component. You'll almost
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never have multiple upstream Tok2Vec components, so the wildcard
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string will almost always be fine.
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width (int):
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The width of the vectors produced by the upstream tok2vec component.
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"""
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Model.__init__(self, name=self.name, forward=forward, dims={"nO": width})
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self.upstream_name = upstream_name
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self._batch_id: Optional[int] = None
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self._outputs = None
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self._backprop = None
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@classmethod
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def get_batch_id(cls, inputs: Iterable[Doc]) -> int:
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"""Calculate a content-sensitive hash of the batch of documents, to check
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whether the next batch of documents is unexpected.
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"""
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return sum(sum(token.orth for token in doc) for doc in inputs)
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def receive(self, batch_id: int, outputs, backprop) -> None:
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"""Store a batch of training predictions and a backprop callback. The
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predictions and callback are produced by the upstream Tok2Vec component,
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and later will be used when the listener's component's model is called.
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"""
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self._batch_id = batch_id
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self._outputs = outputs
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self._backprop = backprop
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def verify_inputs(self, inputs) -> bool:
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"""Check that the batch of Doc objects matches the ones we have a
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prediction for.
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"""
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if self._batch_id is None and self._outputs is None:
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raise ValueError(Errors.E954)
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else:
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batch_id = self.get_batch_id(inputs)
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if batch_id != self._batch_id:
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raise ValueError(Errors.E953.format(id1=batch_id, id2=self._batch_id))
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else:
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return True
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def forward(model: Tok2VecListener, inputs, is_train: bool):
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"""Supply the outputs from the upstream Tok2Vec component."""
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if is_train:
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model.verify_inputs(inputs)
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return model._outputs, model._backprop
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else:
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# This is pretty grim, but it's hard to do better :(.
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# It's hard to avoid relying on the doc.tensor attribute, because the
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# pipeline components can batch the data differently during prediction.
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# That doesn't happen in update, where the nlp object works on batches
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# of data.
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# When the components batch differently, we don't receive a matching
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# prediction from the upstream, so we can't predict.
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outputs = []
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width = model.get_dim("nO")
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for doc in inputs:
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if doc.tensor.size == 0:
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# But we do need to do *something* if the tensor hasn't been set.
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# The compromise is to at least return data of the right shape,
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# so the output is valid.
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outputs.append(model.ops.alloc2f(len(doc), width))
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else:
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outputs.append(doc.tensor)
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return outputs, lambda dX: []
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def _empty_backprop(dX): # for pickling
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return []
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