klausur-service (11 files): - cv_gutter_repair, ocr_pipeline_regression, upload_api - ocr_pipeline_sessions, smart_spell, nru_worksheet_generator - ocr_pipeline_overlays, mail/aggregator, zeugnis_api - cv_syllable_detect, self_rag backend-lehrer (17 files): - classroom_engine/suggestions, generators/quiz_generator - worksheets_api, llm_gateway/comparison, state_engine_api - classroom/models (→ 4 submodules), services/file_processor - alerts_agent/api/wizard+digests+routes, content_generators/pdf - classroom/routes/sessions, llm_gateway/inference - classroom_engine/analytics, auth/keycloak_auth - alerts_agent/processing/rule_engine, ai_processor/print_versions agent-core (5 files): - brain/memory_store, brain/knowledge_graph, brain/context_manager - orchestrator/supervisor, sessions/session_manager admin-lehrer (5 components): - GridOverlay, StepGridReview, DevOpsPipelineSidebar - DataFlowDiagram, sbom/wizard/page website (2 files): - DependencyMap, lehrer/abitur-archiv Other: nibis_ingestion, grid_detection_service, export-doclayout-onnx Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
299 lines
11 KiB
Python
299 lines
11 KiB
Python
"""
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SmartSpellChecker Core — init, data types, language detection, word correction.
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Extracted from smart_spell.py for modularity.
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Lizenz: Apache 2.0 (kommerziell nutzbar)
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"""
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import logging
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import re
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from dataclasses import dataclass, field
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from typing import Dict, List, Literal, Optional, Set, Tuple
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logger = logging.getLogger(__name__)
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# ---------------------------------------------------------------------------
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# Init
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# ---------------------------------------------------------------------------
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try:
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from spellchecker import SpellChecker as _SpellChecker
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_en_spell = _SpellChecker(language='en', distance=1)
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_de_spell = _SpellChecker(language='de', distance=1)
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_AVAILABLE = True
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except ImportError:
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_AVAILABLE = False
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logger.warning("pyspellchecker not installed — SmartSpellChecker disabled")
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Lang = Literal["en", "de", "both", "unknown"]
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# ---------------------------------------------------------------------------
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# Bigram context for a/I disambiguation
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# ---------------------------------------------------------------------------
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# Words that commonly follow "I" (subject pronoun -> verb/modal)
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_I_FOLLOWERS: frozenset = frozenset({
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"am", "was", "have", "had", "do", "did", "will", "would", "can",
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"could", "should", "shall", "may", "might", "must",
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"think", "know", "see", "want", "need", "like", "love", "hate",
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"go", "went", "come", "came", "say", "said", "get", "got",
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"make", "made", "take", "took", "give", "gave", "tell", "told",
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"feel", "felt", "find", "found", "believe", "hope", "wish",
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"remember", "forget", "understand", "mean", "meant",
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"don't", "didn't", "can't", "won't", "couldn't", "wouldn't",
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"shouldn't", "haven't", "hadn't", "isn't", "wasn't",
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"really", "just", "also", "always", "never", "often", "sometimes",
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})
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# Words that commonly follow "a" (article -> noun/adjective)
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_A_FOLLOWERS: frozenset = frozenset({
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"lot", "few", "little", "bit", "good", "bad", "great", "new", "old",
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"long", "short", "big", "small", "large", "huge", "tiny",
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"nice", "beautiful", "wonderful", "terrible", "horrible",
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"man", "woman", "boy", "girl", "child", "dog", "cat", "bird",
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"book", "car", "house", "room", "school", "teacher", "student",
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"day", "week", "month", "year", "time", "place", "way",
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"friend", "family", "person", "problem", "question", "story",
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"very", "really", "quite", "rather", "pretty", "single",
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})
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# Digit->letter substitutions (OCR confusion)
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_DIGIT_SUBS: Dict[str, List[str]] = {
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'0': ['o', 'O'],
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'1': ['l', 'I'],
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'5': ['s', 'S'],
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'6': ['g', 'G'],
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'8': ['b', 'B'],
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'|': ['I', 'l'],
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'/': ['l'], # italic 'l' misread as slash (e.g. "p/" -> "pl")
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}
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_SUSPICIOUS_CHARS = frozenset(_DIGIT_SUBS.keys())
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# Umlaut confusion: OCR drops dots (u->u, a->a, o->o)
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_UMLAUT_MAP = {
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'a': '\u00e4', 'o': '\u00f6', 'u': '\u00fc', 'i': '\u00fc',
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'A': '\u00c4', 'O': '\u00d6', 'U': '\u00dc', 'I': '\u00dc',
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}
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# Tokenizer -- includes | and / so OCR artifacts like "p/" are treated as words
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_TOKEN_RE = re.compile(r"([A-Za-z\u00c4\u00d6\u00dc\u00e4\u00f6\u00fc\u00df'|/]+)([^A-Za-z\u00c4\u00d6\u00dc\u00e4\u00f6\u00fc\u00df'|/]*)")
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# ---------------------------------------------------------------------------
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# Data types
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# ---------------------------------------------------------------------------
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@dataclass
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class CorrectionResult:
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original: str
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corrected: str
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lang_detected: Lang
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changed: bool
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changes: List[str] = field(default_factory=list)
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# ---------------------------------------------------------------------------
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# Core class — language detection and word-level correction
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# ---------------------------------------------------------------------------
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class _SmartSpellCoreBase:
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"""Base class with language detection and single-word correction.
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Not intended for direct use — SmartSpellChecker inherits from this.
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"""
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def __init__(self):
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if not _AVAILABLE:
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raise RuntimeError("pyspellchecker not installed")
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self.en = _en_spell
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self.de = _de_spell
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# --- Language detection ---
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def detect_word_lang(self, word: str) -> Lang:
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"""Detect language of a single word using dual-dict heuristic."""
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w = word.lower().strip(".,;:!?\"'()")
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if not w:
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return "unknown"
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in_en = bool(self.en.known([w]))
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in_de = bool(self.de.known([w]))
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if in_en and in_de:
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return "both"
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if in_en:
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return "en"
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if in_de:
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return "de"
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return "unknown"
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def detect_text_lang(self, text: str) -> Lang:
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"""Detect dominant language of a text string (sentence/phrase)."""
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words = re.findall(r"[A-Za-z\u00c4\u00d6\u00dc\u00e4\u00f6\u00fc\u00df]+", text)
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if not words:
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return "unknown"
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en_count = 0
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de_count = 0
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for w in words:
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lang = self.detect_word_lang(w)
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if lang == "en":
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en_count += 1
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elif lang == "de":
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de_count += 1
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# "both" doesn't count for either
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if en_count > de_count:
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return "en"
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if de_count > en_count:
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return "de"
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if en_count == de_count and en_count > 0:
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return "both"
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return "unknown"
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# --- Single-word correction ---
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def _known(self, word: str) -> bool:
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"""True if word is known in EN or DE dictionary, or is a known abbreviation."""
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w = word.lower()
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if bool(self.en.known([w])) or bool(self.de.known([w])):
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return True
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# Also accept known abbreviations (sth, sb, adj, etc.)
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try:
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from cv_ocr_engines import _KNOWN_ABBREVIATIONS
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if w in _KNOWN_ABBREVIATIONS:
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return True
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except ImportError:
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pass
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return False
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def _word_freq(self, word: str) -> float:
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"""Get word frequency (max of EN and DE)."""
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w = word.lower()
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return max(self.en.word_usage_frequency(w), self.de.word_usage_frequency(w))
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def _known_in(self, word: str, lang: str) -> bool:
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"""True if word is known in a specific language dictionary."""
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w = word.lower()
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spell = self.en if lang == "en" else self.de
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return bool(spell.known([w]))
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def correct_word(self, word: str, lang: str = "en",
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prev_word: str = "", next_word: str = "") -> Optional[str]:
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"""Correct a single word for the given language.
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Returns None if no correction needed, or the corrected string.
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"""
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if not word or not word.strip():
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return None
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# Skip numbers, abbreviations with dots, very short tokens
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if word.isdigit() or '.' in word:
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return None
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# Skip IPA/phonetic content in brackets
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if '[' in word or ']' in word:
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return None
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has_suspicious = any(ch in _SUSPICIOUS_CHARS for ch in word)
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# 1. Already known -> no fix
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if self._known(word):
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# But check a/I disambiguation for single-char words
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if word.lower() in ('l', '|') and next_word:
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return self._disambiguate_a_I(word, next_word)
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return None
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# 2. Digit/pipe substitution
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if has_suspicious:
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if word == '|':
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return 'I'
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# Try single-char substitutions
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for i, ch in enumerate(word):
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if ch not in _DIGIT_SUBS:
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continue
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for replacement in _DIGIT_SUBS[ch]:
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candidate = word[:i] + replacement + word[i + 1:]
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if self._known(candidate):
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return candidate
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# Try multi-char substitution (e.g., "sch00l" -> "school")
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multi = self._try_multi_digit_sub(word)
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if multi:
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return multi
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# 3. Umlaut correction (German)
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if lang == "de" and len(word) >= 3 and word.isalpha():
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umlaut_fix = self._try_umlaut_fix(word)
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if umlaut_fix:
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return umlaut_fix
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# 4. General spell correction
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if not has_suspicious and len(word) >= 3 and word.isalpha():
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# Safety: don't correct if the word is valid in the OTHER language
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other_lang = "de" if lang == "en" else "en"
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if self._known_in(word, other_lang):
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return None
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if other_lang == "de" and self._try_umlaut_fix(word):
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return None # has a valid DE umlaut variant -> don't touch
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spell = self.en if lang == "en" else self.de
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correction = spell.correction(word.lower())
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if correction and correction != word.lower():
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if word[0].isupper():
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correction = correction[0].upper() + correction[1:]
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if self._known(correction):
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return correction
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return None
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# --- Multi-digit substitution ---
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def _try_multi_digit_sub(self, word: str) -> Optional[str]:
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"""Try replacing multiple digits simultaneously using BFS."""
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positions = [(i, ch) for i, ch in enumerate(word) if ch in _DIGIT_SUBS]
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if not positions or len(positions) > 4:
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return None
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# BFS over substitution combinations
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queue = [list(word)]
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for pos, ch in positions:
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next_queue = []
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for current in queue:
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# Keep original
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next_queue.append(current[:])
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# Try each substitution
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for repl in _DIGIT_SUBS[ch]:
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variant = current[:]
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variant[pos] = repl
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next_queue.append(variant)
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queue = next_queue
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# Check which combinations produce known words
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for combo in queue:
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candidate = "".join(combo)
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if candidate != word and self._known(candidate):
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return candidate
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return None
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# --- Umlaut fix ---
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def _try_umlaut_fix(self, word: str) -> Optional[str]:
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"""Try single-char umlaut substitutions for German words."""
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for i, ch in enumerate(word):
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if ch in _UMLAUT_MAP:
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candidate = word[:i] + _UMLAUT_MAP[ch] + word[i + 1:]
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if self._known(candidate):
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return candidate
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return None
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# --- a/I disambiguation ---
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def _disambiguate_a_I(self, token: str, next_word: str) -> Optional[str]:
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"""Disambiguate 'a' vs 'I' (and OCR variants like 'l', '|')."""
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nw = next_word.lower().strip(".,;:!?")
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if nw in _I_FOLLOWERS:
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return "I"
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if nw in _A_FOLLOWERS:
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return "a"
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return None # uncertain, don't change
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