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from collections import defaultdict
from dataclasses import dataclass
from pathlib import Path
from typing import Dict, List, Type
from pydantic import BaseModel
from typing_extensions import Literal
from .exceptions import FileFormatException
from projects.models import ProjectType
# Define the example directories
EXAMPLE_DIR = Path(__file__).parent.resolve() / "examples"
TASK_AGNOSTIC_DIR = EXAMPLE_DIR / "task_agnostic"
TEXT_CLASSIFICATION_DIR = EXAMPLE_DIR / "text_classification"
SEQUENCE_LABELING_DIR = EXAMPLE_DIR / "sequence_labeling"
RELATION_EXTRACTION_DIR = EXAMPLE_DIR / "relation_extraction"
SEQ2SEQ_DIR = EXAMPLE_DIR / "sequence_to_sequence"
INTENT_DETECTION_DIR = EXAMPLE_DIR / "intent_detection"
IMAGE_CLASSIFICATION_DIR = EXAMPLE_DIR / "image_classification"
SPEECH_TO_TEXT_DIR = EXAMPLE_DIR / "speech_to_text"
# Define the task identifiers
RELATION_EXTRACTION = "RelationExtraction"
encodings = Literal[
"Auto",
"ascii",
"big5",
"big5hkscs",
"cp037",
"cp273",
"cp424",
"cp437",
"cp500",
"cp720",
"cp737",
"cp775",
"cp850",
"cp852",
"cp855",
"cp856",
"cp857",
"cp858",
"cp860",
"cp861",
"cp862",
"cp863",
"cp864",
"cp865",
"cp866",
"cp869",
"cp874",
"cp875",
"cp932",
"cp949",
"cp950",
"cp1006",
"cp1026",
"cp1125",
"cp1140",
"cp1250",
"cp1251",
"cp1252",
"cp1253",
"cp1254",
"cp1255",
"cp1256",
"cp1257",
"cp1258",
"cp65001",
"euc_jp",
"euc_jis_2004",
"euc_jisx0213",
"euc_kr",
"gb2312",
"gbk",
"gb18030",
"hz",
"iso2022_jp",
"iso2022_jp_1",
"iso2022_jp_2",
"iso2022_jp_2004",
"iso2022_jp_3",
"iso2022_jp_ext",
"iso2022_kr",
"latin_1",
"iso8859_2",
"iso8859_3",
"iso8859_4",
"iso8859_5",
"iso8859_6",
"iso8859_7",
"iso8859_8",
"iso8859_9",
"iso8859_10",
"iso8859_11",
"iso8859_13",
"iso8859_14",
"iso8859_15",
"iso8859_16",
"johab",
"koi8_r",
"koi8_t",
"koi8_u",
"kz1048",
"mac_cyrillic",
"mac_greek",
"mac_iceland",
"mac_latin2",
"mac_roman",
"mac_turkish",
"ptcp154",
"shift_jis",
"shift_jis_2004",
"shift_jisx0213",
"utf_32",
"utf_32_be",
"utf_32_le",
"utf_16",
"utf_16_be",
"utf_16_le",
"utf_7",
"utf_8",
"utf_8_sig",
]
class Format:
name = ""
accept_types = ""
@classmethod
def dict(cls):
return {"name": cls.name, "accept_types": cls.accept_types}
def validate_mime(self, mime: str):
return True
@staticmethod
def is_plain_text():
return False
class CSV(Format):
name = "CSV"
accept_types = "text/csv"
class FastText(Format):
name = "fastText"
accept_types = "text/plain"
class JSON(Format):
name = "JSON"
accept_types = "application/json"
class JSONL(Format):
name = "JSONL"
accept_types = "*"
class Excel(Format):
name = "Excel"
accept_types = "application/vnd.ms-excel, application/vnd.openxmlformats-officedocument.spreadsheetml.sheet"
class TextFile(Format):
name = "TextFile"
accept_types = "text/*"
@staticmethod
def is_plain_text():
return True
class TextLine(Format):
name = "TextLine"
accept_types = "text/*"
@staticmethod
def is_plain_text():
return True
class CoNLL(Format):
name = "CoNLL"
accept_types = "text/*"
class ImageFile(Format):
name = "ImageFile"
accept_types = "image/png, image/jpeg, image/bmp, image/gif"
def validate_mime(self, mime: str):
return mime in self.accept_types
class AudioFile(Format):
name = "AudioFile"
accept_types = "audio/ogg, audio/aac, audio/mpeg, audio/wav"
def validate_mime(self, mime: str):
return mime in self.accept_types
class ArgColumn(BaseModel):
encoding: encodings = "utf_8"
column_data: str = "text"
column_label: str = "label"
class ArgDelimiter(ArgColumn):
encoding: encodings = "utf_8"
delimiter: Literal[",", "\t", ";", "|", " "] = ","
class ArgEncoding(BaseModel):
encoding: encodings = "utf_8"
class ArgCoNLL(BaseModel):
encoding: encodings = "utf_8"
scheme: Literal["IOB2", "IOE2", "IOBES", "BILOU"] = "IOB2"
delimiter: Literal[" ", ""] = " "
class ArgNone(BaseModel):
pass
@dataclass
class Option:
display_name: str
task_id: str
file_format: Type[Format]
arg: Type[BaseModel]
file: Path
@property
def example(self) -> str:
with open(self.file, "r", encoding="utf-8") as f:
return f.read()
def dict(self) -> Dict:
return {
**self.file_format.dict(),
**self.arg.schema(),
"example": self.example,
"task_id": self.task_id,
"display_name": self.display_name,
}
def create_file_format(file_format: str) -> Format:
for format_class in Format.__subclasses__():
if format_class.name == file_format:
return format_class()
raise FileFormatException(file_format)
class Options:
options: Dict[str, List] = defaultdict(list)
@classmethod
def filter_by_task(cls, task_name: str, use_relation: bool = False):
options = cls.options[task_name]
if use_relation:
options = cls.options[task_name] + cls.options[RELATION_EXTRACTION]
return [option.dict() for option in options]
@classmethod
def register(cls, option: Option):
cls.options[option.task_id].append(option)
# Text tasks
text_tasks = [
ProjectType.DOCUMENT_CLASSIFICATION,
ProjectType.SEQUENCE_LABELING,
ProjectType.SEQ2SEQ,
ProjectType.INTENT_DETECTION_AND_SLOT_FILLING,
]
for task_id in text_tasks:
Options.register(
Option(
display_name=TextFile.name,
task_id=task_id,
file_format=TextFile,
arg=ArgEncoding,
file=TASK_AGNOSTIC_DIR / "text_files.txt",
)
)
Options.register(
Option(
display_name=TextLine.name,
task_id=task_id,
file_format=TextLine,
arg=ArgEncoding,
file=TASK_AGNOSTIC_DIR / "text_lines.txt",
)
)
# Text Classification
Options.register(
Option(
display_name=CSV.name,
task_id=ProjectType.DOCUMENT_CLASSIFICATION,
file_format=CSV,
arg=ArgDelimiter,
file=TEXT_CLASSIFICATION_DIR / "example.csv",
)
)
Options.register(
Option(
display_name=FastText.name,
task_id=ProjectType.DOCUMENT_CLASSIFICATION,
file_format=FastText,
arg=ArgEncoding,
file=TEXT_CLASSIFICATION_DIR / "example.txt",
)
)
Options.register(
Option(
display_name=JSON.name,
task_id=ProjectType.DOCUMENT_CLASSIFICATION,
file_format=JSON,
arg=ArgColumn,
file=TEXT_CLASSIFICATION_DIR / "example.json",
)
)
Options.register(
Option(
display_name=JSONL.name,
task_id=ProjectType.DOCUMENT_CLASSIFICATION,
file_format=JSONL,
arg=ArgColumn,
file=TEXT_CLASSIFICATION_DIR / "example.jsonl",
)
)
Options.register(
Option(
display_name=Excel.name,
task_id=ProjectType.DOCUMENT_CLASSIFICATION,
file_format=Excel,
arg=ArgColumn,
file=TEXT_CLASSIFICATION_DIR / "example.csv",
)
)
# Sequence Labelling
Options.register(
Option(
display_name=JSONL.name,
task_id=ProjectType.SEQUENCE_LABELING,
file_format=JSONL,
arg=ArgColumn,
file=SEQUENCE_LABELING_DIR / "example.jsonl",
)
)
Options.register(
Option(
display_name=CoNLL.name,
task_id=ProjectType.SEQUENCE_LABELING,
file_format=CoNLL,
arg=ArgCoNLL,
file=SEQUENCE_LABELING_DIR / "example.txt",
)
)
# Relation Extraction
Options.register(
Option(
display_name="JSONL(Relation)",
task_id=RELATION_EXTRACTION,
file_format=JSONL,
arg=ArgNone,
file=RELATION_EXTRACTION_DIR / "example.jsonl",
)
)
# Seq2seq
Options.register(
Option(
display_name=CSV.name,
task_id=ProjectType.SEQ2SEQ,
file_format=CSV,
arg=ArgDelimiter,
file=SEQ2SEQ_DIR / "example.csv",
)
)
Options.register(
Option(
display_name=JSON.name,
task_id=ProjectType.SEQ2SEQ,
file_format=JSON,
arg=ArgColumn,
file=SEQ2SEQ_DIR / "example.json",
)
)
Options.register(
Option(
display_name=JSONL.name,
task_id=ProjectType.SEQ2SEQ,
file_format=JSONL,
arg=ArgColumn,
file=SEQ2SEQ_DIR / "example.jsonl",
)
)
Options.register(
Option(
display_name=Excel.name,
task_id=ProjectType.SEQ2SEQ,
file_format=Excel,
arg=ArgColumn,
file=SEQ2SEQ_DIR / "example.csv",
)
)
# Intent detection
Options.register(
Option(
display_name=JSONL.name,
task_id=ProjectType.INTENT_DETECTION_AND_SLOT_FILLING,
file_format=JSONL,
arg=ArgNone,
file=INTENT_DETECTION_DIR / "example.jsonl",
)
)
# Image tasks
image_tasks = [
ProjectType.IMAGE_CLASSIFICATION,
ProjectType.IMAGE_CAPTIONING,
ProjectType.BOUNDING_BOX,
ProjectType.SEGMENTATION,
]
for task_name in image_tasks:
Options.register(
Option(
display_name=ImageFile.name,
task_id=task_name,
file_format=ImageFile,
arg=ArgNone,
file=IMAGE_CLASSIFICATION_DIR / "image_files.txt",
)
)
# Speech to Text
Options.register(
Option(
display_name=AudioFile.name,
task_id=ProjectType.SPEECH2TEXT,
file_format=AudioFile,
arg=ArgNone,
file=SPEECH_TO_TEXT_DIR / "audio_files.txt",
)
)