mirror of
https://github.com/explosion/spaCy.git
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319eb508b5
* Add a `spacy evaluate speed` subcommand This subcommand reports the mean batch performance of a model on a data set with a 95% confidence interval. For reliability, it first performs some warmup rounds. Then it will measure performance on batches with randomly shuffled documents. To avoid having too many spaCy commands, `speed` is a subcommand of `evaluate` and accuracy evaluation is moved to its own `evaluate accuracy` subcommand. * Fix import cycle * Restore `spacy evaluate`, make `spacy benchmark speed` an alias * Add documentation for `spacy benchmark` * CREATES -> PRINTS * WPS -> words/s * Disable formatting of benchmark speed arguments * Fail with an error message when trying to speed bench empty corpus * Make it clearer that `benchmark accuracy` is a replacement for `evaluate` * Fix docstring webpage reference * tests: check `evaluate` output against `benchmark accuracy`
229 lines
8.1 KiB
Python
229 lines
8.1 KiB
Python
from typing import Optional, List, Dict, Any, Union
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from wasabi import Printer
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from pathlib import Path
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import re
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import srsly
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from thinc.api import fix_random_seed
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from ..training import Corpus
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from ..tokens import Doc
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from ._util import app, Arg, Opt, setup_gpu, import_code, benchmark_cli
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from ..scorer import Scorer
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from .. import util
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from .. import displacy
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@benchmark_cli.command(
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"accuracy",
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)
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@app.command("evaluate")
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def evaluate_cli(
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# fmt: off
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model: str = Arg(..., help="Model name or path"),
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data_path: Path = Arg(..., help="Location of binary evaluation data in .spacy format", exists=True),
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output: Optional[Path] = Opt(None, "--output", "-o", help="Output JSON file for metrics", dir_okay=False),
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code_path: Optional[Path] = Opt(None, "--code", "-c", help="Path to Python file with additional code (registered functions) to be imported"),
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use_gpu: int = Opt(-1, "--gpu-id", "-g", help="GPU ID or -1 for CPU"),
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gold_preproc: bool = Opt(False, "--gold-preproc", "-G", help="Use gold preprocessing"),
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displacy_path: Optional[Path] = Opt(None, "--displacy-path", "-dp", help="Directory to output rendered parses as HTML", exists=True, file_okay=False),
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displacy_limit: int = Opt(25, "--displacy-limit", "-dl", help="Limit of parses to render as HTML"),
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# fmt: on
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):
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"""
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Evaluate a trained pipeline. Expects a loadable spaCy pipeline and evaluation
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data in the binary .spacy format. The --gold-preproc option sets up the
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evaluation examples with gold-standard sentences and tokens for the
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predictions. Gold preprocessing helps the annotations align to the
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tokenization, and may result in sequences of more consistent length. However,
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it may reduce runtime accuracy due to train/test skew. To render a sample of
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dependency parses in a HTML file, set as output directory as the
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displacy_path argument.
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DOCS: https://spacy.io/api/cli#benchmark-accuracy
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"""
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import_code(code_path)
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evaluate(
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model,
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data_path,
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output=output,
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use_gpu=use_gpu,
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gold_preproc=gold_preproc,
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displacy_path=displacy_path,
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displacy_limit=displacy_limit,
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silent=False,
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)
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def evaluate(
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model: str,
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data_path: Path,
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output: Optional[Path] = None,
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use_gpu: int = -1,
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gold_preproc: bool = False,
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displacy_path: Optional[Path] = None,
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displacy_limit: int = 25,
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silent: bool = True,
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spans_key: str = "sc",
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) -> Dict[str, Any]:
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msg = Printer(no_print=silent, pretty=not silent)
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fix_random_seed()
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setup_gpu(use_gpu, silent=silent)
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data_path = util.ensure_path(data_path)
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output_path = util.ensure_path(output)
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displacy_path = util.ensure_path(displacy_path)
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if not data_path.exists():
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msg.fail("Evaluation data not found", data_path, exits=1)
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if displacy_path and not displacy_path.exists():
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msg.fail("Visualization output directory not found", displacy_path, exits=1)
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corpus = Corpus(data_path, gold_preproc=gold_preproc)
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nlp = util.load_model(model)
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dev_dataset = list(corpus(nlp))
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scores = nlp.evaluate(dev_dataset)
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metrics = {
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"TOK": "token_acc",
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"TAG": "tag_acc",
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"POS": "pos_acc",
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"MORPH": "morph_acc",
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"LEMMA": "lemma_acc",
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"UAS": "dep_uas",
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"LAS": "dep_las",
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"NER P": "ents_p",
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"NER R": "ents_r",
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"NER F": "ents_f",
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"TEXTCAT": "cats_score",
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"SENT P": "sents_p",
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"SENT R": "sents_r",
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"SENT F": "sents_f",
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"SPAN P": f"spans_{spans_key}_p",
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"SPAN R": f"spans_{spans_key}_r",
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"SPAN F": f"spans_{spans_key}_f",
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"SPEED": "speed",
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}
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results = {}
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data = {}
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for metric, key in metrics.items():
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if key in scores:
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if key == "cats_score":
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metric = metric + " (" + scores.get("cats_score_desc", "unk") + ")"
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if isinstance(scores[key], (int, float)):
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if key == "speed":
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results[metric] = f"{scores[key]:.0f}"
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else:
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results[metric] = f"{scores[key]*100:.2f}"
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else:
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results[metric] = "-"
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data[re.sub(r"[\s/]", "_", key.lower())] = scores[key]
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msg.table(results, title="Results")
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data = handle_scores_per_type(scores, data, spans_key=spans_key, silent=silent)
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if displacy_path:
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factory_names = [nlp.get_pipe_meta(pipe).factory for pipe in nlp.pipe_names]
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docs = list(nlp.pipe(ex.reference.text for ex in dev_dataset[:displacy_limit]))
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render_deps = "parser" in factory_names
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render_ents = "ner" in factory_names
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render_parses(
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docs,
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displacy_path,
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model_name=model,
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limit=displacy_limit,
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deps=render_deps,
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ents=render_ents,
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)
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msg.good(f"Generated {displacy_limit} parses as HTML", displacy_path)
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if output_path is not None:
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srsly.write_json(output_path, data)
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msg.good(f"Saved results to {output_path}")
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return data
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def handle_scores_per_type(
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scores: Dict[str, Any],
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data: Dict[str, Any] = {},
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*,
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spans_key: str = "sc",
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silent: bool = False,
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) -> Dict[str, Any]:
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msg = Printer(no_print=silent, pretty=not silent)
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if "morph_per_feat" in scores:
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if scores["morph_per_feat"]:
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print_prf_per_type(msg, scores["morph_per_feat"], "MORPH", "feat")
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data["morph_per_feat"] = scores["morph_per_feat"]
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if "dep_las_per_type" in scores:
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if scores["dep_las_per_type"]:
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print_prf_per_type(msg, scores["dep_las_per_type"], "LAS", "type")
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data["dep_las_per_type"] = scores["dep_las_per_type"]
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if "ents_per_type" in scores:
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if scores["ents_per_type"]:
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print_prf_per_type(msg, scores["ents_per_type"], "NER", "type")
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data["ents_per_type"] = scores["ents_per_type"]
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if f"spans_{spans_key}_per_type" in scores:
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if scores[f"spans_{spans_key}_per_type"]:
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print_prf_per_type(
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msg, scores[f"spans_{spans_key}_per_type"], "SPANS", "type"
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)
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data[f"spans_{spans_key}_per_type"] = scores[f"spans_{spans_key}_per_type"]
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if "cats_f_per_type" in scores:
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if scores["cats_f_per_type"]:
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print_prf_per_type(msg, scores["cats_f_per_type"], "Textcat F", "label")
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data["cats_f_per_type"] = scores["cats_f_per_type"]
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if "cats_auc_per_type" in scores:
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if scores["cats_auc_per_type"]:
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print_textcats_auc_per_cat(msg, scores["cats_auc_per_type"])
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data["cats_auc_per_type"] = scores["cats_auc_per_type"]
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return scores
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def render_parses(
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docs: List[Doc],
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output_path: Path,
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model_name: str = "",
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limit: int = 250,
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deps: bool = True,
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ents: bool = True,
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):
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docs[0].user_data["title"] = model_name
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if ents:
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html = displacy.render(docs[:limit], style="ent", page=True)
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with (output_path / "entities.html").open("w", encoding="utf8") as file_:
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file_.write(html)
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if deps:
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html = displacy.render(
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docs[:limit], style="dep", page=True, options={"compact": True}
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)
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with (output_path / "parses.html").open("w", encoding="utf8") as file_:
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file_.write(html)
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def print_prf_per_type(
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msg: Printer, scores: Dict[str, Dict[str, float]], name: str, type: str
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) -> None:
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data = []
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for key, value in scores.items():
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row = [key]
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for k in ("p", "r", "f"):
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v = value[k]
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row.append(f"{v * 100:.2f}" if isinstance(v, (int, float)) else v)
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data.append(row)
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msg.table(
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data,
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header=("", "P", "R", "F"),
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aligns=("l", "r", "r", "r"),
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title=f"{name} (per {type})",
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)
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def print_textcats_auc_per_cat(
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msg: Printer, scores: Dict[str, Dict[str, float]]
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) -> None:
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msg.table(
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[
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(k, f"{v:.2f}" if isinstance(v, (float, int)) else v)
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for k, v in scores.items()
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],
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header=("", "ROC AUC"),
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aligns=("l", "r"),
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title="Textcat ROC AUC (per label)",
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)
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