R
regex-vs-llm-structured-text
by @affaan-mv
4.4(20)
Provide a decision framework for choosing between regular expressions or large language models when processing structured text.
Installation
npx skills add affaan-m/everything-claude-code --skill regex-vs-llm-structured-textcompare_arrows
Before / After Comparison
1 组Before
Using only regular expressions makes it difficult to handle complex edge cases, and using only LLMs is less efficient.
After
By combining regular expressions and LLMs, achieve efficient and robust structured text parsing.
SKILL.md
Regex vs LLM for Structured Text Parsing
A practical decision framework for parsing structured text (quizzes, forms, invoices, documents). The key insight: regex handles 95-98% of cases cheaply and deterministically. Reserve expensive LLM calls for the remaining edge cases.
When to Activate
- Parsing structured text with repeating patterns (questions, forms, tables)
- Deciding between regex and LLM for text extraction
- Building hybrid pipelines that combine both approaches
- Optimizing cost/accuracy tradeoffs in text processing
Decision Framework
Is the text format consistent and repeating?
├── Yes (>90% follows a pattern) → Start with Regex
│ ├── Regex handles 95%+ → Done, no LLM needed
│ └── Regex handles <95% → Add LLM for edge cases only
└── No (free-form, highly variable) → Use LLM directly
Architecture Pattern
Source Text
│
▼
[Regex Parser] ─── Extracts structure (95-98% accuracy)
│
▼
[Text Cleaner] ─── Removes noise (markers, page numbers, artifacts)
│
▼
[Confidence Scorer] ─── Flags low-confidence extractions
│
├── High confidence (≥0.95) → Direct output
│
└── Low confidence (<0.95) → [LLM Validator] → Output
Implementation
1. Regex Parser (Handles the Majority)
import re
from dataclasses import dataclass
@dataclass(frozen=True)
class ParsedItem:
id: str
text: str
choices: tuple[str, ...]
answer: str
confidence: float = 1.0
def parse_structured_text(content: str) -> list[ParsedItem]:
"""Parse structured text using regex patterns."""
pattern = re.compile(
r"(?P<id>\d+)\.\s*(?P<text>.+?)\n"
r"(?P<choices>(?:[A-D]\..+?\n)+)"
r"Answer:\s*(?P<answer>[A-D])",
re.MULTILINE | re.DOTALL,
)
items = []
for match in pattern.finditer(content):
choices = tuple(
c.strip() for c in re.findall(r"[A-D]\.\s*(.+)", match.group("choices"))
)
items.append(ParsedItem(
id=match.group("id"),
text=match.group("text").strip(),
choices=choices,
answer=match.group("answer"),
))
return items
2. Confidence Scoring
Flag items that may need LLM review:
@dataclass(frozen=True)
class ConfidenceFlag:
item_id: str
score: float
reasons: tuple[str, ...]
def score_confidence(item: ParsedItem) -> ConfidenceFlag:
"""Score extraction confidence and flag issues."""
reasons = []
score = 1.0
if len(item.choices) < 3:
reasons.append("few_choices")
score -= 0.3
if not item.answer:
reasons.append("missing_answer")
score -= 0.5
if len(item.text) < 10:
reasons.append("short_text")
score -= 0.2
return ConfidenceFlag(
item_id=item.id,
score=max(0.0, score),
reasons=tuple(reasons),
)
def identify_low_confidence(
items: list[ParsedItem],
threshold: float = 0.95,
) -> list[ConfidenceFlag]:
"""Return items below confidence threshold."""
flags = [score_confidence(item) for item in items]
return [f for f in flags if f.score < threshold]
3. LLM Validator (Edge Cases Only)
def validate_with_llm(
item: ParsedItem,
original_text: str,
client,
) -> ParsedItem:
"""Use LLM to fix low-confidence extractions."""
response = client.messages.create(
model="claude-haiku-4-5-20251001", # Cheapest model for validation
max_tokens=500,
messages=[{
"role": "user",
"content": (
f"Extract the question, choices, and answer from this text.\n\n"
f"Text: {original_text}\n\n"
f"Current extraction: {item}\n\n"
f"Return corrected JSON if needed, or 'CORRECT' if accurate."
),
}],
)
# Parse LLM response and return corrected item...
return corrected_item
4. Hybrid Pipeline
def process_document(
content: str,
*,
llm_client=None,
confidence_threshold: float = 0.95,
) -> list[ParsedItem]:
"""Full pipeline: regex -> confidence check -> LLM for edge cases."""
# Step 1: Regex extraction (handles 95-98%)
items = parse_structured_text(content)
# Step 2: Confidence scoring
low_confidence = identify_low_confidence(items, confidence_threshold)
if not low_confidence or llm_client is None:
return items
# Step 3: LLM validation (only for flagged items)
low_conf_ids = {f.item_id for f in low_confidence}
result = []
for item in items:
if item.id in low_conf_ids:
result.append(validate_with_llm(item, content, llm_client))
else:
result.append(item)
return result
Real-World Metrics
From a production quiz parsing pipeline (410 items):
| Metric | Value |
|---|---|
| Regex success rate | 98.0% |
| Low confidence items | 8 (2.0%) |
| LLM calls needed | ~5 |
| Cost savings vs all-LLM | ~95% |
| Test coverage | 93% |
Best Practices
- Start with regex — even imperfect regex gives you a baseline to improve
- Use confidence scoring to programmatically identify what needs LLM help
- Use the cheapest LLM for validation (Haiku-class models are sufficient)
- Never mutate parsed items — return new instances from cleaning/validation steps
- TDD works well for parsers — write tests for known patterns first, then edge cases
- Log metrics (regex success rate, LLM call count) to track pipeline health
Anti-Patterns to Avoid
- Sending all text to an LLM when regex handles 95%+ of cases (expensive and slow)
- Using regex for free-form, highly variable text (LLM is better here)
- Skipping confidence scoring and hoping regex "just works"
- Mutating parsed objects during cleaning/validation steps
- Not testing edge cases (malformed input, missing fields, encoding issues)
When to Use
- Quiz/exam question parsing
- Form data extraction
- Invoice/receipt processing
- Document structure parsing (headers, sections, tables)
- Any structured text with repeating patterns where cost matters
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Installs4.1K
Rating4.4 / 5.0
Version
Updated2026年5月22日
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Compatible Platforms
🔧Claude Code
🔧OpenClaw
🔧OpenCode
🔧Codex
🔧Gemini CLI
🔧GitHub Copilot
🔧Amp
🔧Kimi CLI
Timeline
Created2026年3月16日
Last Updated2026年5月22日