mirror of
https://github.com/explosion/spaCy.git
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f3981bd0c8
* Clarify how to fill in init_tok2vec after pretraining * Ignore init_tok2vec arg in pretraining * Update docs, config setting * Remove obsolete note about not filling init_tok2vec early This seems to have also caught some lines that needed cleanup.
246 lines
9.1 KiB
Python
246 lines
9.1 KiB
Python
from typing import Optional, Callable, Iterable, Union, List
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from thinc.api import Config, fix_random_seed, set_gpu_allocator, Model, Optimizer
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from thinc.api import set_dropout_rate
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from pathlib import Path
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from collections import Counter
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import srsly
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import time
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import re
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from thinc.config import ConfigValidationError
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from wasabi import Printer
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from .example import Example
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from ..errors import Errors
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from ..tokens import Doc
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from ..schemas import ConfigSchemaPretrain
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from ..util import registry, load_model_from_config, dot_to_object
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def pretrain(
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config: Config,
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output_dir: Path,
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resume_path: Optional[Path] = None,
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epoch_resume: Optional[int] = None,
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use_gpu: int = -1,
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silent: bool = True,
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):
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msg = Printer(no_print=silent)
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if config["training"]["seed"] is not None:
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fix_random_seed(config["training"]["seed"])
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allocator = config["training"]["gpu_allocator"]
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if use_gpu >= 0 and allocator:
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set_gpu_allocator(allocator)
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# ignore in pretraining because we're creating it now
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config["initialize"]["init_tok2vec"] = None
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nlp = load_model_from_config(config)
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_config = nlp.config.interpolate()
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P = registry.resolve(_config["pretraining"], schema=ConfigSchemaPretrain)
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corpus = dot_to_object(_config, P["corpus"])
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corpus = registry.resolve({"corpus": corpus})["corpus"]
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batcher = P["batcher"]
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model = create_pretraining_model(nlp, P)
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optimizer = P["optimizer"]
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# Load in pretrained weights to resume from
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if resume_path is not None:
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epoch_resume = _resume_model(model, resume_path, epoch_resume, silent=silent)
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else:
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# Without '--resume-path' the '--epoch-resume' argument is ignored
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epoch_resume = 0
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objective = model.attrs["loss"]
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# TODO: move this to logger function?
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tracker = ProgressTracker(frequency=10000)
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if P["n_save_epoch"]:
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msg.divider(
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f"Pre-training tok2vec layer - starting at epoch {epoch_resume} - saving every {P['n_save_epoch']} epoch"
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)
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else:
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msg.divider(f"Pre-training tok2vec layer - starting at epoch {epoch_resume}")
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row_settings = {"widths": (3, 10, 10, 6, 4), "aligns": ("r", "r", "r", "r", "r")}
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msg.row(("#", "# Words", "Total Loss", "Loss", "w/s"), **row_settings)
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def _save_model(epoch, is_temp=False):
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is_temp_str = ".temp" if is_temp else ""
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with model.use_params(optimizer.averages):
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with (output_dir / f"model{epoch}{is_temp_str}.bin").open("wb") as file_:
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file_.write(model.get_ref("tok2vec").to_bytes())
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log = {
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"nr_word": tracker.nr_word,
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"loss": tracker.loss,
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"epoch_loss": tracker.epoch_loss,
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"epoch": epoch,
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}
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with (output_dir / "log.jsonl").open("a") as file_:
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file_.write(srsly.json_dumps(log) + "\n")
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# TODO: I think we probably want this to look more like the
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# 'create_train_batches' function?
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for epoch in range(epoch_resume, P["max_epochs"]):
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for batch_id, batch in enumerate(batcher(corpus(nlp))):
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docs = ensure_docs(batch)
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loss = make_update(model, docs, optimizer, objective)
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progress = tracker.update(epoch, loss, docs)
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if progress:
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msg.row(progress, **row_settings)
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if P["n_save_every"] and (batch_id % P["n_save_every"] == 0):
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_save_model(epoch, is_temp=True)
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if P["n_save_epoch"]:
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if epoch % P["n_save_epoch"] == 0 or epoch == P["max_epochs"] - 1:
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_save_model(epoch)
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else:
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_save_model(epoch)
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tracker.epoch_loss = 0.0
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def ensure_docs(examples_or_docs: Iterable[Union[Doc, Example]]) -> List[Doc]:
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docs = []
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for eg_or_doc in examples_or_docs:
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if isinstance(eg_or_doc, Doc):
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docs.append(eg_or_doc)
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else:
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docs.append(eg_or_doc.reference)
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return docs
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def _resume_model(
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model: Model, resume_path: Path, epoch_resume: Optional[int], silent: bool = True
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) -> int:
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msg = Printer(no_print=silent)
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msg.info(f"Resume training tok2vec from: {resume_path}")
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with resume_path.open("rb") as file_:
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weights_data = file_.read()
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model.get_ref("tok2vec").from_bytes(weights_data)
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if epoch_resume is None:
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# Parse the epoch number from the given weight file
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model_name = re.search(r"model\d+\.bin", str(resume_path))
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if model_name:
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# Default weight file name so read epoch_start from it by cutting off 'model' and '.bin'
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epoch_resume = int(model_name.group(0)[5:][:-4]) + 1
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else:
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# No epoch given and couldn't infer it
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raise ValueError(Errors.E1020)
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msg.info(f"Resuming from epoch: {epoch_resume}")
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return epoch_resume
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def make_update(
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model: Model, docs: Iterable[Doc], optimizer: Optimizer, objective_func: Callable
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) -> float:
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"""Perform an update over a single batch of documents.
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docs (iterable): A batch of `Doc` objects.
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optimizer (callable): An optimizer.
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RETURNS loss: A float for the loss.
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"""
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predictions, backprop = model.begin_update(docs)
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loss, gradients = objective_func(model.ops, docs, predictions)
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backprop(gradients)
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model.finish_update(optimizer)
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# Don't want to return a cupy object here
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# The gradients are modified in-place by the BERT MLM,
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# so we get an accurate loss
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return float(loss)
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def create_pretraining_model(nlp, pretrain_config):
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"""Define a network for the pretraining. We simply add an output layer onto
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the tok2vec input model. The tok2vec input model needs to be a model that
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takes a batch of Doc objects (as a list), and returns a list of arrays.
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Each array in the output needs to have one row per token in the doc.
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The actual tok2vec layer is stored as a reference, and only this bit will be
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serialized to file and read back in when calling the 'train' command.
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"""
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with nlp.select_pipes(enable=[]):
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nlp.initialize()
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tok2vec = get_tok2vec_ref(nlp, pretrain_config)
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# If the config referred to a Tok2VecListener, grab the original model instead
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if type(tok2vec).__name__ == "Tok2VecListener":
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original_tok2vec = (
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tok2vec.upstream_name if tok2vec.upstream_name != "*" else "tok2vec"
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)
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tok2vec = nlp.get_pipe(original_tok2vec).model
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try:
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tok2vec.initialize(X=[nlp.make_doc("Give it a doc to infer shapes")])
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except ValueError:
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component = pretrain_config["component"]
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layer = pretrain_config["layer"]
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raise ValueError(Errors.E874.format(component=component, layer=layer))
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create_function = pretrain_config["objective"]
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model = create_function(nlp.vocab, tok2vec)
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model.initialize(X=[nlp.make_doc("Give it a doc to infer shapes")])
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set_dropout_rate(model, pretrain_config["dropout"])
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return model
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def get_tok2vec_ref(nlp, pretrain_config):
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tok2vec_component = pretrain_config["component"]
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if tok2vec_component is None:
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desc = (
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f"To use pretrained tok2vec weights, [pretraining.component] "
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f"needs to specify the component that should load them."
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)
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err = "component can't be null"
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errors = [{"loc": ["pretraining", "component"], "msg": err}]
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raise ConfigValidationError(
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config=nlp.config["pretraining"], errors=errors, desc=desc
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)
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layer = nlp.get_pipe(tok2vec_component).model
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if pretrain_config["layer"]:
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layer = layer.get_ref(pretrain_config["layer"])
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return layer
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class ProgressTracker:
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def __init__(self, frequency=1000000):
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self.loss = 0.0
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self.prev_loss = 0.0
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self.nr_word = 0
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self.words_per_epoch = Counter()
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self.frequency = frequency
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self.last_time = time.time()
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self.last_update = 0
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self.epoch_loss = 0.0
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def update(self, epoch, loss, docs):
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self.loss += loss
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self.epoch_loss += loss
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words_in_batch = sum(len(doc) for doc in docs)
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self.words_per_epoch[epoch] += words_in_batch
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self.nr_word += words_in_batch
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words_since_update = self.nr_word - self.last_update
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if words_since_update >= self.frequency:
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wps = words_since_update / (time.time() - self.last_time)
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self.last_update = self.nr_word
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self.last_time = time.time()
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loss_per_word = self.loss - self.prev_loss
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status = (
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epoch,
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self.nr_word,
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_smart_round(self.loss, width=10),
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_smart_round(loss_per_word, width=6),
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int(wps),
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)
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self.prev_loss = float(self.loss)
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return status
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else:
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return None
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def _smart_round(
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figure: Union[float, int], width: int = 10, max_decimal: int = 4
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) -> str:
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"""Round large numbers as integers, smaller numbers as decimals."""
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n_digits = len(str(int(figure)))
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n_decimal = width - (n_digits + 1)
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if n_decimal <= 1:
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return str(int(figure))
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else:
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n_decimal = min(n_decimal, max_decimal)
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format_str = "%." + str(n_decimal) + "f"
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return format_str % figure
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