spaCy/spacy/cli/train.py
Matthew Honnibal 8c29268749
Improve spacy.gold (no GoldParse, no json format!) (#5555)
* Update errors

* Remove beam for now (maybe)

Remove beam_utils

Update setup.py

Remove beam

* Remove GoldParse

WIP on removing goldparse

Get ArcEager compiling after GoldParse excise

Update setup.py

Get spacy.syntax compiling after removing GoldParse

Rename NewExample -> Example and clean up

Clean html files

Start updating tests

Update Morphologizer

* fix error numbers

* fix merge conflict

* informative error when calling to_array with wrong field

* fix error catching

* fixing language and scoring tests

* start testing get_aligned

* additional tests for new get_aligned function

* Draft create_gold_state for arc_eager oracle

* Fix import

* Fix import

* Remove TokenAnnotation code from nonproj

* fixing NER one-to-many alignment

* Fix many-to-one IOB codes

* fix test for misaligned

* attempt to fix cases with weird spaces

* fix spaces

* test_gold_biluo_different_tokenization works

* allow None as BILUO annotation

* fixed some tests + WIP roundtrip unit test

* add spaces to json output format

* minibatch utiltiy can deal with strings, docs or examples

* fix augment (needs further testing)

* various fixes in scripts - needs to be further tested

* fix test_cli

* cleanup

* correct silly typo

* add support for MORPH in to/from_array, fix morphologizer overfitting test

* fix tagger

* fix entity linker

* ensure test keeps working with non-linked entities

* pipe() takes docs, not examples

* small bug fix

* textcat bugfix

* throw informative error when running the components with the wrong type of objects

* fix parser tests to work with example (most still failing)

* fix BiluoPushDown parsing entities

* small fixes

* bugfix tok2vec

* fix renames and simple_ner labels

* various small fixes

* prevent writing dummy values like deps because that could interfer with sent_start values

* fix the fix

* implement split_sent with aligned SENT_START attribute

* test for split sentences with various alignment issues, works

* Return ArcEagerGoldParse from ArcEager

* Update parser and NER gold stuff

* Draft new GoldCorpus class

* add links to to_dict

* clean up

* fix test checking for variants

* Fix oracles

* Start updating converters

* Move converters under spacy.gold

* Move things around

* Fix naming

* Fix name

* Update converter to produce DocBin

* Update converters

* Allow DocBin to take list of Doc objects.

* Make spacy convert output docbin

* Fix import

* Fix docbin

* Fix compile in ArcEager

* Fix import

* Serialize all attrs by default

* Update converter

* Remove jsonl converter

* Add json2docs converter

* Draft Corpus class for DocBin

* Work on train script

* Update Corpus

* Update DocBin

* Allocate Doc before starting to add words

* Make doc.from_array several times faster

* Update train.py

* Fix Corpus

* Fix parser model

* Start debugging arc_eager oracle

* Update header

* Fix parser declaration

* Xfail some tests

* Skip tests that cause crashes

* Skip test causing segfault

* Remove GoldCorpus

* Update imports

* Update after removing GoldCorpus

* Fix module name of corpus

* Fix mimport

* Work on parser oracle

* Update arc_eager oracle

* Restore ArcEager.get_cost function

* Update transition system

* Update test_arc_eager_oracle

* Remove beam test

* Update test

* Unskip

* Unskip tests

* add links to to_dict

* clean up

* fix test checking for variants

* Allow DocBin to take list of Doc objects.

* Fix compile in ArcEager

* Serialize all attrs by default

Move converters under spacy.gold

Move things around

Fix naming

Fix name

Update converter to produce DocBin

Update converters

Make spacy convert output docbin

Fix import

Fix docbin

Fix import

Update converter

Remove jsonl converter

Add json2docs converter

* Allocate Doc before starting to add words

* Make doc.from_array several times faster

* Start updating converters

* Work on train script

* Draft Corpus class for DocBin

Update Corpus

Fix Corpus

* Update DocBin

Add missing strings when serializing

* Update train.py

* Fix parser model

* Start debugging arc_eager oracle

* Update header

* Fix parser declaration

* Xfail some tests

Skip tests that cause crashes

Skip test causing segfault

* Remove GoldCorpus

Update imports

Update after removing GoldCorpus

Fix module name of corpus

Fix mimport

* Work on parser oracle

Update arc_eager oracle

Restore ArcEager.get_cost function

Update transition system

* Update tests

Remove beam test

Update test

Unskip

Unskip tests

* Add get_aligned_parse method in Example

Fix Example.get_aligned_parse

* Add kwargs to Corpus.dev_dataset to match train_dataset

* Update nonproj

* Use get_aligned_parse in ArcEager

* Add another arc-eager oracle test

* Remove Example.doc property

Remove Example.doc

Remove Example.doc

Remove Example.doc

Remove Example.doc

* Update ArcEager oracle

Fix Break oracle

* Debugging

* Fix Corpus

* Fix eg.doc

* Format

* small fixes

* limit arg for Corpus

* fix test_roundtrip_docs_to_docbin

* fix test_make_orth_variants

* fix add_label test

* Update tests

* avoid writing temp dir in json2docs, fixing 4402 test

* Update test

* Add missing costs to NER oracle

* Update test

* Work on Example.get_aligned_ner method

* Clean up debugging

* Xfail tests

* Remove prints

* Remove print

* Xfail some tests

* Replace unseen labels for parser

* Update test

* Update test

* Xfail test

* Fix Corpus

* fix imports

* fix docs_to_json

* various small fixes

* cleanup

* Support gold_preproc in Corpus

* Support gold_preproc

* Pass gold_preproc setting into corpus

* Remove debugging

* Fix gold_preproc

* Fix json2docs converter

* Fix convert command

* Fix flake8

* Fix import

* fix output_dir (converted to Path by typer)

* fix var

* bugfix: update states after creating golds to avoid out of bounds indexing

* Improve efficiency of ArEager oracle

* pull merge_sent into iob2docs to avoid Doc creation for each line

* fix asserts

* bugfix excl Span.end in iob2docs

* Support max_length in Corpus

* Fix arc_eager oracle

* Filter out uannotated sentences in NER

* Remove debugging in parser

* Simplify NER alignment

* Fix conversion of NER data

* Fix NER init_gold_batch

* Tweak efficiency of precomputable affine

* Update onto-json default

* Update gold test for NER

* Fix parser test

* Update test

* Add NER data test

* Fix convert for single file

* Fix test

* Hack scorer to avoid evaluating non-nered data

* Fix handling of NER data in Example

* Output unlabelled spans from O biluo tags in iob_utils

* Fix unset variable

* Return kept examples from init_gold_batch

* Return examples from init_gold_batch

* Dont return Example from init_gold_batch

* Set spaces on gold doc after conversion

* Add test

* Fix spaces reading

* Improve NER alignment

* Improve handling of missing values in NER

* Restore the 'cutting' in parser training

* Add assertion

* Print epochs

* Restore random cuts in parser/ner training

* Implement Doc.copy

* Implement Example.copy

* Copy examples at the start of Language.update

* Don't unset example docs

* Tweak parser model slightly

* attempt to fix _guess_spaces

* _add_entities_to_doc first, so that links don't get overwritten

* fixing get_aligned_ner for one-to-many

* fix indexing into x_text

* small fix biluo_tags_from_offsets

* Add onto-ner config

* Simplify NER alignment

* Fix NER scoring for partially annotated documents

* fix indexing into x_text

* fix test_cli failing tests by ignoring spans in doc.ents with empty label

* Fix limit

* Improve NER alignment

* Fix count_train

* Remove print statement

* fix tests, we're not having nothing but None

* fix clumsy fingers

* Fix tests

* Fix doc.ents

* Remove empty docs in Corpus and improve limit

* Update config

Co-authored-by: svlandeg <sofie.vanlandeghem@gmail.com>
2020-06-26 19:34:12 +02:00

599 lines
21 KiB
Python

from typing import Optional, Dict, List, Union, Sequence
from timeit import default_timer as timer
import srsly
import tqdm
from pydantic import BaseModel, FilePath
from pathlib import Path
from wasabi import msg
import thinc
import thinc.schedules
from thinc.api import Model, use_pytorch_for_gpu_memory
import random
from ._app import app, Arg, Opt
from ..gold import Corpus
from ..lookups import Lookups
from .. import util
from ..errors import Errors
# Don't remove - required to load the built-in architectures
from ..ml import models # noqa: F401
# from ..schemas import ConfigSchema # TODO: include?
registry = util.registry
CONFIG_STR = """
[training]
patience = 10
eval_frequency = 10
dropout = 0.2
init_tok2vec = null
max_epochs = 100
orth_variant_level = 0.0
gold_preproc = false
max_length = 0
use_gpu = 0
scores = ["ents_p", "ents_r", "ents_f"]
score_weights = {"ents_f": 1.0}
limit = 0
[training.batch_size]
@schedules = "compounding.v1"
start = 100
stop = 1000
compound = 1.001
[optimizer]
@optimizers = "Adam.v1"
learn_rate = 0.001
beta1 = 0.9
beta2 = 0.999
[nlp]
lang = "en"
vectors = null
[nlp.pipeline.tok2vec]
factory = "tok2vec"
[nlp.pipeline.ner]
factory = "ner"
[nlp.pipeline.ner.model]
@architectures = "spacy.TransitionBasedParser.v1"
nr_feature_tokens = 3
hidden_width = 64
maxout_pieces = 3
[nlp.pipeline.ner.model.tok2vec]
@architectures = "spacy.Tok2VecTensors.v1"
width = ${nlp.pipeline.tok2vec.model:width}
[nlp.pipeline.tok2vec.model]
@architectures = "spacy.HashEmbedCNN.v1"
pretrained_vectors = ${nlp:vectors}
width = 128
depth = 4
window_size = 1
embed_size = 10000
maxout_pieces = 3
subword_features = true
"""
class PipelineComponent(BaseModel):
factory: str
model: Model
class Config:
arbitrary_types_allowed = True
class ConfigSchema(BaseModel):
optimizer: Optional["Optimizer"]
class training(BaseModel):
patience: int = 10
eval_frequency: int = 100
dropout: float = 0.2
init_tok2vec: Optional[FilePath] = None
max_epochs: int = 100
orth_variant_level: float = 0.0
gold_preproc: bool = False
max_length: int = 0
use_gpu: int = 0
scores: List[str] = ["ents_p", "ents_r", "ents_f"]
score_weights: Dict[str, Union[int, float]] = {"ents_f": 1.0}
limit: int = 0
batch_size: Union[Sequence[int], int]
class nlp(BaseModel):
lang: str
vectors: Optional[str]
pipeline: Optional[Dict[str, PipelineComponent]]
class Config:
extra = "allow"
@app.command("train")
def train_cli(
# fmt: off
train_path: Path = Arg(..., help="Location of JSON-formatted training data", exists=True),
dev_path: Path = Arg(..., help="Location of JSON-formatted development data", exists=True),
config_path: Path = Arg(..., help="Path to config file", exists=True),
output_path: Optional[Path] = Opt(None, "--output-path", "-o", help="Output directory to store model in"),
code_path: Optional[Path] = Opt(None, "--code-path", "-c", help="Path to Python file with additional code (registered functions) to be imported"),
init_tok2vec: Optional[Path] = Opt(None, "--init-tok2vec", "-t2v", help="Path to pretrained weights for the tok2vec components. See 'spacy pretrain'. Experimental."),
raw_text: Optional[Path] = Opt(None, "--raw-text", "-rt", help="Path to jsonl file with unlabelled text documents."),
verbose: bool = Opt(False, "--verbose", "-VV", help="Display more information for debugging purposes"),
use_gpu: int = Opt(-1, "--use-gpu", "-g", help="Use GPU"),
tag_map_path: Optional[Path] = Opt(None, "--tag-map-path", "-tm", help="Location of JSON-formatted tag map"),
omit_extra_lookups: bool = Opt(False, "--omit-extra-lookups", "-OEL", help="Don't include extra lookups in model"),
# fmt: on
):
"""
Train or update a spaCy model. Requires data to be formatted in spaCy's
JSON format. To convert data from other formats, use the `spacy convert`
command.
"""
util.set_env_log(verbose)
verify_cli_args(**locals())
if raw_text is not None:
raw_text = list(srsly.read_jsonl(raw_text))
tag_map = {}
if tag_map_path is not None:
tag_map = srsly.read_json(tag_map_path)
weights_data = None
if init_tok2vec is not None:
with init_tok2vec.open("rb") as file_:
weights_data = file_.read()
if use_gpu >= 0:
msg.info("Using GPU: {use_gpu}")
util.use_gpu(use_gpu)
else:
msg.info("Using CPU")
train(
config_path,
{"train": train_path, "dev": dev_path},
output_path=output_path,
raw_text=raw_text,
tag_map=tag_map,
weights_data=weights_data,
omit_extra_lookups=omit_extra_lookups,
)
def train(
config_path: Path,
data_paths: Dict[str, Path],
raw_text: Optional[Path] = None,
output_path: Optional[Path] = None,
tag_map: Optional[Path] = None,
weights_data: Optional[bytes] = None,
omit_extra_lookups: bool = False,
) -> None:
msg.info(f"Loading config from: {config_path}")
# Read the config first without creating objects, to get to the original nlp_config
config = util.load_config(config_path, create_objects=False)
util.fix_random_seed(config["training"]["seed"])
if config["training"].get("use_pytorch_for_gpu_memory"):
# It feels kind of weird to not have a default for this.
use_pytorch_for_gpu_memory()
nlp_config = config["nlp"]
config = util.load_config(config_path, create_objects=True)
training = config["training"]
msg.info("Creating nlp from config")
nlp = util.load_model_from_config(nlp_config)
optimizer = training["optimizer"]
limit = training["limit"]
corpus = Corpus(data_paths["train"], data_paths["dev"], limit=limit)
if "textcat" in nlp_config["pipeline"]:
verify_textcat_config(nlp, nlp_config)
if training.get("resume", False):
msg.info("Resuming training")
nlp.resume_training()
else:
msg.info(f"Initializing the nlp pipeline: {nlp.pipe_names}")
train_examples = list(corpus.train_dataset(
nlp,
shuffle=False,
gold_preproc=training["gold_preproc"]
))
nlp.begin_training(lambda: train_examples)
# Update tag map with provided mapping
nlp.vocab.morphology.tag_map.update(tag_map)
# Create empty extra lexeme tables so the data from spacy-lookups-data
# isn't loaded if these features are accessed
if omit_extra_lookups:
nlp.vocab.lookups_extra = Lookups()
nlp.vocab.lookups_extra.add_table("lexeme_cluster")
nlp.vocab.lookups_extra.add_table("lexeme_prob")
nlp.vocab.lookups_extra.add_table("lexeme_settings")
# Load a pretrained tok2vec model - cf. CLI command 'pretrain'
if weights_data is not None:
tok2vec_path = config.get("pretraining", {}).get("tok2vec_model", None)
if tok2vec_path is None:
msg.fail(
f"To use a pretrained tok2vec model, the config needs to specify which "
f"tok2vec layer to load in the setting [pretraining.tok2vec_model].",
exits=1,
)
tok2vec = config
for subpath in tok2vec_path.split("."):
tok2vec = tok2vec.get(subpath)
if not tok2vec:
msg.fail(
f"Could not locate the tok2vec model at {tok2vec_path}.", exits=1,
)
tok2vec.from_bytes(weights_data)
msg.info("Loading training corpus")
train_batches = create_train_batches(nlp, corpus, training)
evaluate = create_evaluation_callback(nlp, optimizer, corpus, training)
# Create iterator, which yields out info after each optimization step.
msg.info("Start training")
training_step_iterator = train_while_improving(
nlp,
optimizer,
train_batches,
evaluate,
dropout=training["dropout"],
accumulate_gradient=training["accumulate_gradient"],
patience=training.get("patience", 0),
max_steps=training.get("max_steps", 0),
eval_frequency=training["eval_frequency"],
raw_text=raw_text,
)
msg.info(f"Training. Initial learn rate: {optimizer.learn_rate}")
print_row = setup_printer(training, nlp)
try:
progress = tqdm.tqdm(total=training["eval_frequency"], leave=False)
for batch, info, is_best_checkpoint in training_step_iterator:
progress.update(1)
if is_best_checkpoint is not None:
progress.close()
print_row(info)
if is_best_checkpoint and output_path is not None:
update_meta(training, nlp, info)
nlp.to_disk(output_path / "model-best")
progress = tqdm.tqdm(total=training["eval_frequency"], leave=False)
except Exception as e:
if output_path is not None:
msg.warn(
f"Aborting and saving the final best model. "
f"Encountered exception: {str(e)}",
exits=1,
)
else:
raise e
finally:
if output_path is not None:
final_model_path = output_path / "model-final"
if optimizer.averages:
with nlp.use_params(optimizer.averages):
nlp.to_disk(final_model_path)
else:
nlp.to_disk(final_model_path)
msg.good(f"Saved model to output directory {final_model_path}")
def create_train_batches(nlp, corpus, cfg):
max_epochs = cfg.get("max_epochs", 0)
train_examples = list(corpus.train_dataset(
nlp,
shuffle=True,
gold_preproc=cfg["gold_preproc"],
max_length=cfg["max_length"]
))
epoch = 0
while True:
if len(train_examples) == 0:
raise ValueError(Errors.E988)
epoch += 1
batches = util.minibatch_by_words(
train_examples,
size=cfg["batch_size"],
discard_oversize=cfg["discard_oversize"],
)
# make sure the minibatch_by_words result is not empty, or we'll have an infinite training loop
try:
first = next(batches)
yield epoch, first
except StopIteration:
raise ValueError(Errors.E986)
for batch in batches:
yield epoch, batch
if max_epochs >= 1 and epoch >= max_epochs:
break
def create_evaluation_callback(nlp, optimizer, corpus, cfg):
def evaluate():
dev_examples = list(
corpus.dev_dataset(
nlp, gold_preproc=cfg["gold_preproc"], ignore_misaligned=True
)
)
n_words = sum(len(ex.predicted) for ex in dev_examples)
start_time = timer()
if optimizer.averages:
with nlp.use_params(optimizer.averages):
scorer = nlp.evaluate(dev_examples, batch_size=32)
else:
scorer = nlp.evaluate(dev_examples, batch_size=32)
end_time = timer()
wps = n_words / (end_time - start_time)
scores = scorer.scores
# Calculate a weighted sum based on score_weights for the main score
weights = cfg["score_weights"]
try:
weighted_score = sum(scores[s] * weights.get(s, 0.0) for s in weights)
except KeyError as e:
raise KeyError(
Errors.E983.format(
dict="score_weights", key=str(e), keys=list(scores.keys())
)
)
scores["speed"] = wps
return weighted_score, scores
return evaluate
def train_while_improving(
nlp,
optimizer,
train_data,
evaluate,
*,
dropout,
eval_frequency,
accumulate_gradient=1,
patience=0,
max_steps=0,
raw_text=None,
):
"""Train until an evaluation stops improving. Works as a generator,
with each iteration yielding a tuple `(batch, info, is_best_checkpoint)`,
where info is a dict, and is_best_checkpoint is in [True, False, None] --
None indicating that the iteration was not evaluated as a checkpoint.
The evaluation is conducted by calling the evaluate callback, which should
Positional arguments:
nlp: The spaCy pipeline to evaluate.
optimizer: The optimizer callable.
train_data (Iterable[Batch]): A generator of batches, with the training
data. Each batch should be a Sized[Tuple[Input, Annot]]. The training
data iterable needs to take care of iterating over the epochs and
shuffling.
evaluate (Callable[[], Tuple[float, Any]]): A callback to perform evaluation.
The callback should take no arguments and return a tuple
`(main_score, other_scores)`. The main_score should be a float where
higher is better. other_scores can be any object.
Every iteration, the function yields out a tuple with:
* batch: A list of Example objects.
* info: A dict with various information about the last update (see below).
* is_best_checkpoint: A value in None, False, True, indicating whether this
was the best evaluation so far. You should use this to save the model
checkpoints during training. If None, evaluation was not conducted on
that iteration. False means evaluation was conducted, but a previous
evaluation was better.
The info dict provides the following information:
epoch (int): How many passes over the data have been completed.
step (int): How many steps have been completed.
score (float): The main score form the last evaluation.
other_scores: : The other scores from the last evaluation.
loss: The accumulated losses throughout training.
checkpoints: A list of previous results, where each result is a
(score, step, epoch) tuple.
"""
if isinstance(dropout, float):
dropouts = thinc.schedules.constant(dropout)
else:
dropouts = dropout
results = []
losses = {}
to_enable = [name for name, proc in nlp.pipeline if hasattr(proc, "model")]
if raw_text:
random.shuffle(raw_text)
raw_batches = util.minibatch(
(nlp.make_doc(rt["text"]) for rt in raw_text), size=8
)
for step, (epoch, batch) in enumerate(train_data):
dropout = next(dropouts)
with nlp.select_pipes(enable=to_enable):
for subbatch in subdivide_batch(batch, accumulate_gradient):
nlp.update(subbatch, drop=dropout, losses=losses, sgd=False)
if raw_text:
# If raw text is available, perform 'rehearsal' updates,
# which use unlabelled data to reduce overfitting.
raw_batch = list(next(raw_batches))
nlp.rehearse(raw_batch, sgd=optimizer, losses=losses)
for name, proc in nlp.pipeline:
if hasattr(proc, "model"):
proc.model.finish_update(optimizer)
optimizer.step_schedules()
if not (step % eval_frequency):
score, other_scores = evaluate()
results.append((score, step))
is_best_checkpoint = score == max(results)[0]
else:
score, other_scores = (None, None)
is_best_checkpoint = None
info = {
"epoch": epoch,
"step": step,
"score": score,
"other_scores": other_scores,
"losses": losses,
"checkpoints": results,
}
yield batch, info, is_best_checkpoint
if is_best_checkpoint is not None:
losses = {}
# Stop if no improvement in `patience` updates (if specified)
best_score, best_step = max(results)
if patience and (step - best_step) >= patience:
break
# Stop if we've exhausted our max steps (if specified)
if max_steps and (step * accumulate_gradient) >= max_steps:
break
def subdivide_batch(batch, accumulate_gradient):
batch = list(batch)
batch.sort(key=lambda eg: len(eg.predicted))
sub_len = len(batch) // accumulate_gradient
start = 0
for i in range(accumulate_gradient):
subbatch = batch[start : start + sub_len]
if subbatch:
yield subbatch
start += len(subbatch)
subbatch = batch[start:]
if subbatch:
yield subbatch
def setup_printer(training, nlp):
score_cols = training["scores"]
score_widths = [max(len(col), 6) for col in score_cols]
loss_cols = [f"Loss {pipe}" for pipe in nlp.pipe_names]
loss_widths = [max(len(col), 8) for col in loss_cols]
table_header = ["E", "#"] + loss_cols + score_cols + ["Score"]
table_header = [col.upper() for col in table_header]
table_widths = [3, 6] + loss_widths + score_widths + [6]
table_aligns = ["r" for _ in table_widths]
msg.row(table_header, widths=table_widths)
msg.row(["-" * width for width in table_widths])
def print_row(info):
try:
losses = [
"{0:.2f}".format(float(info["losses"][pipe_name]))
for pipe_name in nlp.pipe_names
]
except KeyError as e:
raise KeyError(
Errors.E983.format(
dict="scores (losses)", key=str(e), keys=list(info["losses"].keys())
)
)
try:
scores = [
"{0:.2f}".format(float(info["other_scores"][col])) for col in score_cols
]
except KeyError as e:
raise KeyError(
Errors.E983.format(
dict="scores (other)",
key=str(e),
keys=list(info["other_scores"].keys()),
)
)
data = (
[info["epoch"], info["step"]] + losses + scores + ["{0:.2f}".format(float(info["score"]))]
)
msg.row(data, widths=table_widths, aligns=table_aligns)
return print_row
def update_meta(training, nlp, info):
score_cols = training["scores"]
nlp.meta["performance"] = {}
for metric in score_cols:
nlp.meta["performance"][metric] = info["other_scores"][metric]
for pipe_name in nlp.pipe_names:
nlp.meta["performance"][f"{pipe_name}_loss"] = info["losses"][pipe_name]
def verify_cli_args(
train_path,
dev_path,
config_path,
output_path=None,
code_path=None,
init_tok2vec=None,
raw_text=None,
verbose=False,
use_gpu=-1,
tag_map_path=None,
omit_extra_lookups=False,
):
# Make sure all files and paths exists if they are needed
if not config_path or not config_path.exists():
msg.fail("Config file not found", config_path, exits=1)
if not train_path or not train_path.exists():
msg.fail("Training data not found", train_path, exits=1)
if not dev_path or not dev_path.exists():
msg.fail("Development data not found", dev_path, exits=1)
if output_path is not None:
if not output_path.exists():
output_path.mkdir()
msg.good(f"Created output directory: {output_path}")
elif output_path.exists() and [p for p in output_path.iterdir() if p.is_dir()]:
msg.warn(
"Output directory is not empty.",
"This can lead to unintended side effects when saving the model. "
"Please use an empty directory or a different path instead. If "
"the specified output path doesn't exist, the directory will be "
"created for you.",
)
if code_path is not None:
if not code_path.exists():
msg.fail("Path to Python code not found", code_path, exits=1)
try:
util.import_file("python_code", code_path)
except Exception as e:
msg.fail(f"Couldn't load Python code: {code_path}", e, exits=1)
if init_tok2vec is not None and not init_tok2vec.exists():
msg.fail("Can't find pretrained tok2vec", init_tok2vec, exits=1)
def verify_textcat_config(nlp, nlp_config):
# if 'positive_label' is provided: double check whether it's in the data and
# the task is binary
if nlp_config["pipeline"]["textcat"].get("positive_label", None):
textcat_labels = nlp.get_pipe("textcat").cfg.get("labels", [])
pos_label = nlp_config["pipeline"]["textcat"]["positive_label"]
if pos_label not in textcat_labels:
msg.fail(
f"The textcat's 'positive_label' config setting '{pos_label}' "
f"does not match any label in the training data.",
exits=1,
)
if len(textcat_labels) != 2:
msg.fail(
f"A textcat 'positive_label' '{pos_label}' was "
f"provided for training data that does not appear to be a "
f"binary classification problem with two labels.",
exits=1,
)