- Fix Python 3.10+ syntax (float | None → Optional[float]) in 2 scripts - Add argparse CLI handling to 9 marketing scripts using raw sys.argv - Fix 10 scripts crashing at module level (wrap in __main__, add argparse) - Make yaml/prefect/mcp imports conditional with stdlib fallbacks (4 scripts) - Fix f-string backslash syntax in project_bootstrapper.py - Fix -h flag conflict in pr_analyzer.py - Fix tech-debt.md description (score → prioritize) All 237 scripts now pass python3 --help verification. Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
443 lines
15 KiB
Python
443 lines
15 KiB
Python
#!/usr/bin/env python3
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"""
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schema_validator.py — Extracts and validates JSON-LD structured data from HTML.
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Usage:
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python3 schema_validator.py [file.html]
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cat page.html | python3 schema_validator.py
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If no file is provided, runs on embedded sample HTML for demonstration.
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Output: Human-readable validation report + JSON summary.
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Scoring: 0-100 per schema block based on required/recommended field coverage.
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"""
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import json
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import sys
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import re
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import select
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from html.parser import HTMLParser
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from typing import List, Dict, Any, Optional
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# ─── Required and recommended fields per schema type ─────────────────────────
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SCHEMA_RULES: Dict[str, Dict[str, List[str]]] = {
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"Article": {
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"required": ["headline", "image", "datePublished", "author"],
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"recommended": ["dateModified", "publisher", "description", "url", "mainEntityOfPage"],
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},
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"BlogPosting": {
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"required": ["headline", "image", "datePublished", "author"],
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"recommended": ["dateModified", "publisher", "description", "url", "mainEntityOfPage"],
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},
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"NewsArticle": {
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"required": ["headline", "image", "datePublished", "author"],
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"recommended": ["dateModified", "publisher", "description", "url"],
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},
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"HowTo": {
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"required": ["name", "step"],
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"recommended": ["description", "image", "totalTime", "tool", "supply", "estimatedCost"],
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},
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"FAQPage": {
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"required": ["mainEntity"],
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"recommended": [],
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},
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"Product": {
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"required": ["name", "offers"],
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"recommended": ["description", "image", "sku", "brand", "aggregateRating"],
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},
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"Organization": {
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"required": ["name", "url"],
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"recommended": ["logo", "sameAs", "contactPoint", "description", "foundingDate"],
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},
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"LocalBusiness": {
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"required": ["name", "address"],
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"recommended": ["telephone", "openingHoursSpecification", "geo", "priceRange", "image", "url"],
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},
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"BreadcrumbList": {
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"required": ["itemListElement"],
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"recommended": [],
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},
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"VideoObject": {
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"required": ["name", "description", "thumbnailUrl", "uploadDate"],
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"recommended": ["duration", "contentUrl", "embedUrl", "interactionStatistic", "hasPart"],
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},
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"WebSite": {
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"required": ["url"],
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"recommended": ["name", "potentialAction"],
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},
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"Event": {
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"required": ["name", "startDate", "location"],
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"recommended": ["endDate", "description", "image", "organizer", "offers"],
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},
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"Recipe": {
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"required": ["name", "image", "author", "datePublished"],
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"recommended": ["description", "cookTime", "prepTime", "totalTime", "recipeYield",
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"recipeIngredient", "recipeInstructions", "aggregateRating"],
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},
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}
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KNOWN_TYPES = set(SCHEMA_RULES.keys())
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# ─── HTML Parser to extract JSON-LD blocks ───────────────────────────────────
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class JSONLDExtractor(HTMLParser):
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"""Extracts all <script type="application/ld+json"> blocks from HTML."""
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def __init__(self):
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super().__init__()
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self.blocks: List[str] = []
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self._in_ld_json = False
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self._current = []
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def handle_starttag(self, tag: str, attrs: list):
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if tag.lower() == "script":
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attr_dict = dict(attrs)
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if attr_dict.get("type", "").lower() == "application/ld+json":
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self._in_ld_json = True
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self._current = []
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def handle_endtag(self, tag: str):
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if tag.lower() == "script" and self._in_ld_json:
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self._in_ld_json = False
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self.blocks.append("".join(self._current).strip())
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def handle_data(self, data: str):
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if self._in_ld_json:
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self._current.append(data)
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# ─── Validation logic ────────────────────────────────────────────────────────
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def detect_type(obj: Dict) -> Optional[str]:
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"""Determine the @type of a schema object."""
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t = obj.get("@type")
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if isinstance(t, list):
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# Return first known type
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for item in t:
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if item in KNOWN_TYPES:
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return item
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return t[0] if t else None
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return t
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def score_schema(schema_type: str, obj: Dict) -> Dict:
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"""Score a single schema object against known rules. Returns 0-100."""
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if schema_type not in SCHEMA_RULES:
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return {
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"score": 50,
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"status": "unknown_type",
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"required_present": [],
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"required_missing": [],
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"recommended_present": [],
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"recommended_missing": [],
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"notes": [f"No validation rules defined for '{schema_type}' — manual check recommended."],
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}
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rules = SCHEMA_RULES[schema_type]
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required = rules.get("required", [])
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recommended = rules.get("recommended", [])
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required_present = [f for f in required if f in obj and obj[f]]
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required_missing = [f for f in required if f not in obj or not obj[f]]
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recommended_present = [f for f in recommended if f in obj and obj[f]]
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recommended_missing = [f for f in recommended if f not in obj or not obj[f]]
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# Score: required fields = 70 points, recommended = 30 points
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req_score = (len(required_present) / len(required) * 70) if required else 70
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rec_score = (len(recommended_present) / len(recommended) * 30) if recommended else 30
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total_score = int(req_score + rec_score)
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notes = []
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# Type-specific checks
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if schema_type in ("Article", "BlogPosting", "NewsArticle"):
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image = obj.get("image")
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if image:
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img_url = image if isinstance(image, str) else image.get("url", "") if isinstance(image, dict) else ""
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if img_url and not img_url.startswith("http"):
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notes.append("⚠️ 'image' URL appears to be relative — must be absolute (https://...)")
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if "datePublished" in obj:
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dp = obj["datePublished"]
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if not re.match(r"\d{4}-\d{2}-\d{2}", str(dp)):
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notes.append("⚠️ 'datePublished' should be ISO 8601 format: YYYY-MM-DD")
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if schema_type == "Product":
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offers = obj.get("offers", {})
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if isinstance(offers, dict):
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price = offers.get("price")
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if isinstance(price, str) and any(c in price for c in "$€£¥"):
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notes.append("⚠️ 'offers.price' should be numeric (49.99), not a string with currency symbol.")
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avail = offers.get("availability", "")
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if avail and not avail.startswith("https://schema.org/"):
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notes.append("⚠️ 'offers.availability' must use full URL: https://schema.org/InStock")
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if schema_type == "FAQPage":
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entities = obj.get("mainEntity", [])
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if isinstance(entities, list):
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for i, q in enumerate(entities):
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if not q.get("acceptedAnswer", {}).get("text"):
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notes.append(f"⚠️ Question #{i+1} has empty 'acceptedAnswer.text'")
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if schema_type == "BreadcrumbList":
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items = obj.get("itemListElement", [])
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if isinstance(items, list):
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positions = [item.get("position") for item in items if isinstance(item, dict)]
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if sorted(positions) != list(range(1, len(positions) + 1)):
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notes.append("⚠️ 'itemListElement' positions must be sequential integers starting at 1.")
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return {
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"score": total_score,
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"status": "valid" if not required_missing else "missing_required",
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"required_present": required_present,
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"required_missing": required_missing,
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"recommended_present": recommended_present,
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"recommended_missing": recommended_missing,
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"notes": notes,
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}
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def validate_block(raw_json: str, block_index: int) -> List[Dict]:
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"""Parse and validate a single JSON-LD block. Returns list of results (may contain @graph)."""
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results = []
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try:
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data = json.loads(raw_json)
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except json.JSONDecodeError as e:
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return [{
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"block": block_index,
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"type": "PARSE_ERROR",
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"score": 0,
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"status": "parse_error",
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"error": str(e),
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"notes": ["❌ JSON is malformed — fix syntax before validation."],
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}]
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# Handle @graph
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objects = data.get("@graph", [data]) if isinstance(data, dict) else [data]
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for obj in objects:
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if not isinstance(obj, dict):
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continue
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schema_type = detect_type(obj)
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if not schema_type:
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results.append({
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"block": block_index,
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"type": "UNKNOWN",
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"score": 0,
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"status": "no_type",
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"notes": ["❌ No '@type' found in schema object."],
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})
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continue
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validation = score_schema(schema_type, obj)
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results.append({
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"block": block_index,
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"type": schema_type,
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**validation,
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})
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return results
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def grade(score: int) -> str:
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if score >= 90:
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return "🟢 Excellent"
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if score >= 70:
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return "🟡 Good"
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if score >= 50:
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return "🟠 Needs Work"
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return "🔴 Poor"
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# ─── Report printer ──────────────────────────────────────────────────────────
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def print_report(all_results: List[Dict], html_source: str) -> None:
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print("\n" + "═" * 60)
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print(" SCHEMA MARKUP VALIDATION REPORT")
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print("═" * 60)
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if not all_results:
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print("\n❌ No JSON-LD blocks found in this HTML.")
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print(" Add structured data in <script type=\"application/ld+json\"> tags.\n")
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return
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total_score = 0
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for r in all_results:
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print(f"\n── Block {r['block']} · @type: {r['type']} ──")
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score = r.get("score", 0)
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total_score += score
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print(f" Score: {score}/100 {grade(score)}")
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if r.get("status") == "parse_error":
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print(f" ❌ Parse error: {r.get('error')}")
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continue
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if r.get("required_missing"):
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print(f" Missing required: {', '.join(r['required_missing'])}")
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else:
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print(f" Required fields: ✅ All present ({', '.join(r.get('required_present', []))})")
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if r.get("recommended_missing"):
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print(f" Missing recommended: {', '.join(r['recommended_missing'])}")
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if r.get("recommended_present"):
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print(f" Recommended present: {', '.join(r['recommended_present'])}")
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for note in r.get("notes", []):
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print(f" {note}")
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avg = total_score // len(all_results) if all_results else 0
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print(f"\n{'═' * 60}")
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print(f" OVERALL SCORE: {avg}/100 {grade(avg)}")
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print(f" Blocks analyzed: {len(all_results)}")
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print("═" * 60)
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print("\n📋 TESTING CHECKLIST")
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print(" □ Google Rich Results Test: https://search.google.com/test/rich-results")
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print(" □ Schema.org Validator: https://validator.schema.org")
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print(" □ After deploy: Check Search Console → Enhancements\n")
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# ─── Sample HTML ─────────────────────────────────────────────────────────────
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SAMPLE_HTML = """<!DOCTYPE html>
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<html>
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<head>
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<title>How to Write Cold Emails That Get Replies</title>
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<!-- Article schema — headline present, but image is relative URL -->
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<script type="application/ld+json">
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{
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"@context": "https://schema.org",
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"@type": "BlogPosting",
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"headline": "How to Write Cold Emails That Get Replies",
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"image": "/images/cold-email-guide.jpg",
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"datePublished": "2024-03-01",
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"dateModified": "2024-03-15",
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"author": {
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"@type": "Person",
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"name": "Reza Rezvani"
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},
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"publisher": {
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"@type": "Organization",
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"name": "Growth Lab",
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"logo": {
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"@type": "ImageObject",
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"url": "https://growthlab.com/logo.png"
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}
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}
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}
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</script>
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<!-- FAQPage schema — complete and valid -->
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<script type="application/ld+json">
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{
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"@context": "https://schema.org",
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"@type": "FAQPage",
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"mainEntity": [
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{
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"@type": "Question",
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"name": "What is the ideal length for a cold email?",
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"acceptedAnswer": {
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"@type": "Answer",
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"text": "Keep cold emails under 150 words. Busy professionals scan, not read. If your email needs scrolling, it will not get a reply."
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}
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},
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{
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"@type": "Question",
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"name": "How many follow-ups should I send?",
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"acceptedAnswer": {
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"@type": "Answer",
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"text": "Send 3-5 follow-ups with increasing gaps (3 days, 5 days, 7 days, 14 days). Each follow-up must add new value — never just check in."
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}
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}
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]
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}
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</script>
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<!-- BreadcrumbList — position gap (jumps from 1 to 3) -->
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<script type="application/ld+json">
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{
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"@context": "https://schema.org",
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"@type": "BreadcrumbList",
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"itemListElement": [
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{
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"@type": "ListItem",
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"position": 1,
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"name": "Home",
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"item": "https://growthlab.com"
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},
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{
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"@type": "ListItem",
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"position": 3,
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"name": "How to Write Cold Emails",
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"item": "https://growthlab.com/blog/cold-email-guide"
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}
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]
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}
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</script>
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</head>
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<body>
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<h1>How to Write Cold Emails That Get Replies</h1>
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<p>Cold email works when it sounds human...</p>
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</body>
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</html>
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"""
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# ─── Main ─────────────────────────────────────────────────────────────────────
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def main():
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import argparse
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parser = argparse.ArgumentParser(
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description="Extracts and validates JSON-LD structured data from HTML. "
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"Scores 0-100 per schema block based on required/recommended field coverage."
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)
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parser.add_argument(
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"file", nargs="?", default=None,
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help="Path to an HTML file to validate. "
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"Use '-' to read from stdin. If omitted, runs embedded sample."
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)
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args = parser.parse_args()
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if args.file:
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if args.file == "-":
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html = sys.stdin.read()
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else:
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try:
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with open(args.file, "r", encoding="utf-8") as f:
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html = f.read()
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except FileNotFoundError:
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print(f"Error: File not found: {args.file}", file=sys.stderr)
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sys.exit(1)
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else:
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print("No file provided — running on embedded sample HTML.\n")
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html = SAMPLE_HTML
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extractor = JSONLDExtractor()
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extractor.feed(html)
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all_results = []
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for i, block in enumerate(extractor.blocks, start=1):
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results = validate_block(block, i)
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all_results.extend(results)
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print_report(all_results, html)
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# JSON output for programmatic use
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summary = {
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"blocks_found": len(extractor.blocks),
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"schemas_validated": len(all_results),
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"average_score": (sum(r.get("score", 0) for r in all_results) // len(all_results)) if all_results else 0,
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"results": all_results,
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}
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print("\n── JSON Output ──")
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print(json.dumps(summary, indent=2))
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if __name__ == "__main__":
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main()
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