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pythonannotation-tooldatasetsactive-learningtext-annotationdatasetnatural-language-processingdata-labelingmachine-learning
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97 lines
3.2 KiB
97 lines
3.2 KiB
from collections import defaultdict
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from pathlib import Path
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from typing import Dict, List, Type
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from projects.models import ProjectType
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EXAMPLE_DIR = Path(__file__).parent.resolve() / "examples"
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class Format:
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name = ""
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@classmethod
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def dict(cls):
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return {
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"name": cls.name,
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}
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class CSV(Format):
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name = "CSV"
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class FastText(Format):
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name = "fastText"
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class JSON(Format):
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name = "JSON"
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class JSONL(Format):
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name = "JSONL"
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class Options:
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options: Dict[str, List] = defaultdict(list)
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@classmethod
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def filter_by_task(cls, task_name: str, use_relation: bool = False):
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options = cls.options[task_name]
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return [
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{**file_format.dict(), "example": example}
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for file_format, example, use_rel in options
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if use_rel == use_relation
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]
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@classmethod
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def register(cls, task: str, file_format: Type[Format], file: Path, use_relation: bool = False):
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example = cls.load_example(file)
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cls.options[task].append((file_format, example, use_relation))
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@staticmethod
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def load_example(file):
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with open(file, encoding="utf-8") as f:
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return f.read()
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# Text Classification
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TEXT_CLASSIFICATION_DIR = EXAMPLE_DIR / "text_classification"
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Options.register(ProjectType.DOCUMENT_CLASSIFICATION, CSV, TEXT_CLASSIFICATION_DIR / "example.csv")
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Options.register(ProjectType.DOCUMENT_CLASSIFICATION, FastText, TEXT_CLASSIFICATION_DIR / "example.txt")
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Options.register(ProjectType.DOCUMENT_CLASSIFICATION, JSON, TEXT_CLASSIFICATION_DIR / "example.json")
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Options.register(ProjectType.DOCUMENT_CLASSIFICATION, JSONL, TEXT_CLASSIFICATION_DIR / "example.jsonl")
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# Sequence Labeling
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SEQUENCE_LABELING_DIR = EXAMPLE_DIR / "sequence_labeling"
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RELATION_EXTRACTION_DIR = EXAMPLE_DIR / "relation_extraction"
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Options.register(ProjectType.SEQUENCE_LABELING, JSONL, SEQUENCE_LABELING_DIR / "example.jsonl")
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Options.register(ProjectType.SEQUENCE_LABELING, JSONL, RELATION_EXTRACTION_DIR / "example.jsonl", True)
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# Sequence to sequence
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SEQ2SEQ_DIR = EXAMPLE_DIR / "sequence_to_sequence"
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Options.register(ProjectType.SEQ2SEQ, CSV, SEQ2SEQ_DIR / "example.csv")
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Options.register(ProjectType.SEQ2SEQ, JSON, SEQ2SEQ_DIR / "example.json")
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Options.register(ProjectType.SEQ2SEQ, JSONL, SEQ2SEQ_DIR / "example.jsonl")
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# Intent detection and slot filling
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INTENT_DETECTION_DIR = EXAMPLE_DIR / "intent_detection"
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Options.register(ProjectType.INTENT_DETECTION_AND_SLOT_FILLING, JSONL, INTENT_DETECTION_DIR / "example.jsonl")
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# Image Classification
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IMAGE_CLASSIFICATION_DIR = EXAMPLE_DIR / "image_classification"
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Options.register(ProjectType.IMAGE_CLASSIFICATION, JSONL, IMAGE_CLASSIFICATION_DIR / "example.jsonl")
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BOUNDING_BOX_DIR = EXAMPLE_DIR / "bounding_box"
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Options.register(ProjectType.BOUNDING_BOX, JSONL, BOUNDING_BOX_DIR / "example.jsonl")
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SEGMENTATION_DIR = EXAMPLE_DIR / "segmentation"
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Options.register(ProjectType.SEGMENTATION, JSONL, SEGMENTATION_DIR / "example.jsonl")
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IMAGE_CAPTIONING_DIR = EXAMPLE_DIR / "image_captioning"
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Options.register(ProjectType.IMAGE_CAPTIONING, JSONL, IMAGE_CAPTIONING_DIR / "example.jsonl")
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# Speech to Text
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SPEECH2TEXT_DIR = EXAMPLE_DIR / "speech_to_text"
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Options.register(ProjectType.SPEECH2TEXT, JSONL, SPEECH2TEXT_DIR / "example.jsonl")
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