glam/scripts/parse_linkedin_html.py
kempersc 0c36429257 feat(scripts): Add batch crawling and data quality scripts
- batch_crawl4ai_recrawl.py: Retry failed URL crawls
- batch_firecrawl_recrawl.py: FireCrawl batch processing
- batch_httpx_scrape.py: HTTPX-based scraping
- detect_name_mismatch.py: Find name mismatches in data
- enrich_dutch_custodians_crawl4ai.py: Dutch custodian enrichment
- fix_collision_victims.py: GHCID collision resolution
- fix_generic_platform_names*.py: Platform name cleanup
- fix_ghcid_type.py: GHCID type corrections
- fix_simon_kemper_contamination.py: Data cleanup
- scan_dutch_data_quality.py: Data quality scanning
- transform_crawl4ai_to_digital_platform.py: Data transformation
2025-12-15 01:47:46 +01:00

759 lines
31 KiB
Python
Executable file

#!/usr/bin/env python3
"""
Extract complete LinkedIn staff data from saved company People page HTML files.
This script parses saved HTML files to extract complete staff profiles including:
- Name
- LinkedIn profile URL
- Headline/job title
- Connection degree
- Mutual connections
This replaces the need for MD file parsing - HTML contains ALL the data.
Usage:
python scripts/parse_linkedin_html.py <html_file> \
--custodian-name "Name" --custodian-slug "slug" \
--output staff.json
Example:
python scripts/parse_linkedin_html.py \
"data/custodian/person/manual_hc/Rijksmuseum_ People _ LinkedIn.html" \
--custodian-name "Rijksmuseum" \
--custodian-slug "rijksmuseum" \
--output data/custodian/person/rijksmuseum_staff.json
"""
import argparse
import json
import re
import sys
import unicodedata
from collections import Counter
from datetime import datetime, timezone
from pathlib import Path
from typing import Any, Optional
from html.parser import HTMLParser
# Heritage type detection keywords for GLAMORCUBESFIXPHDNT taxonomy
HERITAGE_KEYWORDS = {
'G': ['gallery', 'galerie', 'kunsthal', 'art dealer', 'art gallery', 'exhibition space'],
'L': ['library', 'bibliotheek', 'bibliothek', 'librarian', 'bibliothecaris', 'KB ', 'national library'],
'A': ['archive', 'archief', 'archivist', 'archivaris', 'archival', 'beeld en geluid', 'beeld & geluid',
'NISV', 'filmmuseum', 'eye film', 'EYE ', 'audiovisual', 'nationaal archief', 'stadsarchief',
'gemeentearchief', 'rijksarchief', 'NIOD', 'IISH', 'IISG', 'archiefspecialist'],
'M': ['museum', 'musea', 'curator', 'conservator', 'collection manager', 'rijksmuseum', 'van gogh',
'stedelijk', 'mauritshuis', 'tropenmuseum', 'allard pierson', 'museale', 'collectiebeheerder',
'collectiespecialist', 'collectie'],
'O': ['ministry', 'ministerie', 'government', 'overheid', 'gemeente', 'province', 'provincie', 'OCW'],
'R': ['research', 'onderzoek', 'researcher', 'onderzoeker', 'KNAW', 'humanities cluster', 'NWO',
'documentatie', 'documentation', 'kenniscentrum', 'historicus'],
'C': ['corporate archive', 'bedrijfsarchief', 'company history'],
'E': ['university', 'universiteit', 'professor', 'lecturer', 'docent', 'hogeschool', 'academy',
'academie', 'PhD', 'phd candidate', 'student', 'teacher', 'onderwijs', 'education', 'UvA',
'VU ', 'leiden university', 'reinwardt', 'film academy', 'graduate', 'assistant professor',
'associate professor', 'hoogleraar', 'educatie', 'educator'],
'S': ['society', 'vereniging', 'genootschap', 'historical society', 'historische vereniging'],
'D': ['digital', 'digitaal', 'platform', 'software', 'IT ', 'tech', 'developer', 'engineer',
'data ', 'AI ', 'machine learning', 'digitalisering', 'datamanagement', 'data analist'],
}
NON_HERITAGE_KEYWORDS = [
'marketing', 'sales', 'HR ', 'human resources', 'recruiter', 'finance', 'accounting',
'legal', 'lawyer', 'advocaat', 'consultant', 'coach', 'therapy', 'health', 'medical',
'food', 'restaurant', 'retail', 'fashion', 'real estate', 'insurance', 'banking',
'investment', 'e-commerce', 'organiser', 'opruimhulp', 'verpleeg', 'nurse'
]
# Organizations that are explicitly NOT heritage institutions
# These should never be classified as heritage-relevant
NON_HERITAGE_ORGANIZATIONS = [
# Banks & Financial
'ing ', 'ing nederland', 'rabobank', 'abn amro', 'postbank', 'triodos',
# Security companies
'i-sec', 'g4s', 'securitas', 'trigion', 'chubb',
# Police/Government (non-cultural)
'politie', 'police', 'rijkswaterstaat', 'belastingdienst', 'douane', 'defensie',
# Political parties
'vvd', 'pvda', 'cda', 'd66', 'groenlinks', 'pvv', 'bbb', 'nsc', 'volt',
'sp ', 'forum voor democratie', 'ja21', 'bij1', 'denk', 'sgp', 'cu ',
# Tech companies (non-heritage)
'google', 'microsoft', 'amazon', 'meta', 'facebook', 'apple', 'netflix',
'uber', 'airbnb', 'booking.com', 'adyen', 'mollie', 'messagebird',
'coolblue', 'bol.com', 'picnic', 'takeaway', 'just eat',
# Telecom
'kpn', 'vodafone', 't-mobile', 'ziggo',
# Postal / Logistics
'postnl', 'postkantoren', 'dhl', 'ups', 'fedex',
# Healthcare
'ziekenhuis', 'hospital', 'ggz', 'ggd', 'thuiszorg',
# Retail
'albert heijn', 'jumbo', 'lidl', 'aldi', 'ikea', 'hema', 'action',
# Consulting / Professional services
'deloitte', 'kpmg', 'pwc', 'ey ', 'ernst & young', 'mckinsey', 'bcg',
'accenture', 'capgemini', 'ordina', 'atos', 'cgi ',
# Recruitment / HR
'randstad', 'tempo-team', 'manpower', 'hays', 'brunel',
# Energy / Utilities
'shell', 'bp ', 'eneco', 'vattenfall', 'essent', 'nuon',
# Transport
'ns ', 'prorail', 'schiphol', 'klm', 'transavia',
# Other
'freelance', 'zelfstandig', 'zzp', 'eigen bedrijf',
]
# Heritage organization keywords - organizations that ARE heritage institutions
# Used to validate that 'D' (Digital) roles are actually at heritage orgs
HERITAGE_ORGANIZATION_KEYWORDS = [
# Archives
'archief', 'archive', 'nationaal archief', 'stadsarchief', 'regionaal archief',
'beeld en geluid', 'beeld & geluid', 'niod', 'iish', 'iisg',
# Museums
'museum', 'musea', 'rijksmuseum', 'van gogh', 'stedelijk', 'mauritshuis',
'tropenmuseum', 'allard pierson', 'kröller', 'boijmans',
# Libraries
'bibliotheek', 'library', 'koninklijke bibliotheek', 'kb ',
# Film/AV heritage
'eye film', 'filmmuseum', 'eye ', 'sound and vision',
# Heritage platforms
'erfgoed', 'heritage', 'cultural', 'cultureel',
# Research institutes (heritage-focused)
'knaw', 'humanities cluster', 'meertens', 'huygens',
]
# LinkedIn status phrases that pollute name fields (extracted from img alt text)
# These should be removed from names and stored as metadata
LINKEDIN_STATUS_PHRASES = [
' is open to work',
' is hiring',
' is looking for new opportunities',
' is looking for opportunities',
' is actively looking',
' is available for work',
' open to work',
' - open to work',
' • Open to work',
' - Hiring',
' • Hiring',
]
def clean_linkedin_status_from_name(name: str) -> tuple[str, str | None]:
"""
Remove LinkedIn status phrases from name and return clean name + status.
Args:
name: Raw name possibly containing LinkedIn status
Returns:
Tuple of (clean_name, linkedin_status or None)
Examples:
"John Doe is open to work" -> ("John Doe", "open_to_work")
"Jane Smith is hiring" -> ("Jane Smith", "hiring")
"Bob Jones" -> ("Bob Jones", None)
"""
if not name:
return (name, None)
name_lower = name.lower()
for phrase in LINKEDIN_STATUS_PHRASES:
phrase_lower = phrase.lower()
if phrase_lower in name_lower:
# Find position and remove
idx = name_lower.find(phrase_lower)
clean_name = name[:idx].strip()
# Determine status type
if 'hiring' in phrase_lower:
status = 'hiring'
elif 'open to work' in phrase_lower or 'looking' in phrase_lower or 'available' in phrase_lower:
status = 'open_to_work'
else:
status = 'active'
return (clean_name, status)
return (name, None)
class LinkedInProfileCardParser(HTMLParser):
"""
Parse LinkedIn profile cards from saved HTML.
Each profile card has structure:
- org-people-profile-card__profile-image-N (contains img with alt=name, href=profile_url)
- artdeco-entity-lockup__title (contains name text and profile link)
- artdeco-entity-lockup__badge (contains connection degree)
- artdeco-entity-lockup__subtitle (contains headline)
- Mutual connections text
Anonymous "LinkedIn Member" profiles have a different structure:
- org-people-profile-card__profile-image-N is on an <img> tag (NOT an <a> tag)
- No href link (privacy-protected)
- Name appears as "LinkedIn Member" in the title
- Still have subtitle (headline) content
NOTE: The "People you may know" h2 header in LinkedIn company pages is actually
the section title for the associated members list, NOT a separate recommendations
section. All profile cards under this header are real associated members.
"""
def __init__(self):
super().__init__()
self.profiles: list[dict] = []
self.current_profile: dict = {}
# State tracking
self.in_profile_card = False
self.in_title = False
self.in_subtitle = False
self.in_badge = False
self.in_caption = False
self.in_mutual = False
self.current_text = ""
self.card_index = -1
# For custodian metadata extraction
self.custodian_metadata: dict = {}
self.in_header = True
self.header_texts: list[str] = []
def handle_starttag(self, tag: str, attrs: list[tuple[str, str | None]]) -> None:
attrs_dict = dict(attrs)
attr_id = attrs_dict.get('id') or ''
attr_class = attrs_dict.get('class') or ''
# Detect profile card start - can be on <a> tag (regular) OR <img> tag (anonymous)
if 'org-people-profile-card__profile-image' in attr_id:
self.in_profile_card = True
self.in_header = False
match = re.search(r'profile-image-(\d+)', attr_id)
if match:
new_index = int(match.group(1))
if new_index != self.card_index:
# Save previous profile if exists
if self.current_profile.get('name'):
self.profiles.append(self.current_profile)
self.current_profile = {}
self.card_index = new_index
# Extract URL from href (only on <a> tags - regular profiles)
href = attrs_dict.get('href', '')
if href and 'linkedin.com/in/' in href:
slug = self._extract_slug(href)
if slug:
self.current_profile['linkedin_slug'] = slug
self.current_profile['linkedin_profile_url'] = f"https://www.linkedin.com/in/{slug}"
# If this is an <img> tag with the profile-image ID, it's likely an anonymous member
# We'll capture this and the name will come from the title section as "LinkedIn Member"
if tag == 'img':
# Mark as potential anonymous (will be confirmed when we see "LinkedIn Member" in title)
self.current_profile['_may_be_anonymous'] = True
# Extract name from img alt (for regular profiles with named photos)
if tag == 'img' and self.in_profile_card:
alt = attrs_dict.get('alt', '')
if alt and alt not in ('', 'photo', 'Profile photo'):
# Clean LinkedIn status phrases from name
clean_name, linkedin_status = clean_linkedin_status_from_name(alt)
self.current_profile['name'] = clean_name
if linkedin_status:
self.current_profile['linkedin_status'] = linkedin_status
# Title section (contains name link or "LinkedIn Member" text)
if 'artdeco-entity-lockup__title' in attr_class:
self.in_title = True
self.current_text = ""
# Badge section (contains degree)
if 'artdeco-entity-lockup__badge' in attr_class:
self.in_badge = True
self.current_text = ""
# Subtitle section (contains headline)
if 'artdeco-entity-lockup__subtitle' in attr_class:
self.in_subtitle = True
self.current_text = ""
# Caption/mutual connections
if 'artdeco-entity-lockup__caption' in attr_class or 'mutual' in attr_class.lower():
self.in_mutual = True
self.current_text = ""
# Check for mutual connections in span
if tag == 'span' and 'mutual' in attr_class.lower():
self.in_mutual = True
self.current_text = ""
def handle_data(self, data: str) -> None:
text = data.strip()
if not text:
return
# Collect header texts for metadata
if self.in_header:
self.header_texts.append(text)
if self.in_title:
self.current_text += " " + text
elif self.in_badge:
self.current_text += " " + text
elif self.in_subtitle:
self.current_text += " " + text
elif self.in_mutual:
self.current_text += " " + text
def handle_endtag(self, tag: str) -> None:
if tag == 'div':
if self.in_title:
text = self.current_text.strip()
if text and 'name' not in self.current_profile:
# Clean up name
text = re.sub(r'\s+', ' ', text)
if len(text) > 1 and not text.startswith('View '):
# Clean LinkedIn status phrases from name
clean_name, linkedin_status = clean_linkedin_status_from_name(text)
self.current_profile['name'] = clean_name
if linkedin_status and 'linkedin_status' not in self.current_profile:
self.current_profile['linkedin_status'] = linkedin_status
# Check if this is "LinkedIn Member" (anonymous profile)
if clean_name == 'LinkedIn Member':
self.current_profile['is_anonymous'] = True
self.in_title = False
self.current_text = ""
if self.in_badge:
text = self.current_text.strip()
degree = self._parse_degree(text)
if degree:
self.current_profile['degree'] = degree
self.in_badge = False
self.current_text = ""
if self.in_subtitle:
text = self.current_text.strip()
if text and len(text) > 2:
# Clean up headline
text = re.sub(r'\s+', ' ', text)
self.current_profile['headline'] = text
self.in_subtitle = False
self.current_text = ""
if tag == 'span' and self.in_mutual:
text = self.current_text.strip()
if text and 'mutual' in text.lower():
self.current_profile['mutual_connections'] = text
self.in_mutual = False
self.current_text = ""
def _extract_slug(self, url: str) -> Optional[str]:
"""Extract profile slug from URL."""
match = re.search(r'linkedin\.com/in/([^?/]+)', url)
if match:
return match.group(1)
return None
def _parse_degree(self, text: str) -> Optional[str]:
"""Parse connection degree from text."""
if '1st' in text:
return '1st'
if '2nd' in text:
return '2nd'
if '3rd' in text:
return '3rd+'
return None
def finalize(self) -> list[dict]:
"""Finalize parsing and return all profiles."""
# Save last profile
if self.current_profile.get('name'):
self.profiles.append(self.current_profile)
# Parse custodian metadata from header
self._parse_header_metadata()
return self.profiles
def _parse_header_metadata(self) -> None:
"""Extract custodian metadata from header texts."""
for text in self.header_texts:
# Skip JSON blobs and very long texts (data artifacts)
if text.startswith('{') or len(text) > 200:
continue
# Follower count
match = re.match(r'^([\d,\.]+K?)\s*followers?$', text, re.IGNORECASE)
if match:
self.custodian_metadata['follower_count'] = match.group(1)
continue
# Employee count
match = re.match(r'^([\d,\-]+)\s*employees?$', text, re.IGNORECASE)
if match:
self.custodian_metadata['employee_count'] = match.group(1)
continue
# Associated members
match = re.match(r'^(\d+)\s*associated\s+members?$', text, re.IGNORECASE)
if match:
self.custodian_metadata['associated_members'] = int(match.group(1))
continue
# Industry - must be a clean standalone text, not embedded in JSON
industry_keywords = ['Museums', 'Archives', 'Libraries', 'Historical Sites', 'Heritage', 'Zoos']
if any(kw.lower() in text.lower() for kw in industry_keywords):
# Ensure it's a clean industry text (not JSON or HTML)
if not text.startswith('{') and not '<' in text and len(text) < 100:
if 'industry' not in self.custodian_metadata:
self.custodian_metadata['industry'] = text.strip()
continue
# Location (City, Region)
match = re.match(r'^([A-Z][a-zA-Zéèêëïöüá\-]+),\s*([A-Z][a-zA-Zéèêëïöüá\-\s]+)$', text)
if match and 'location' not in self.custodian_metadata:
self.custodian_metadata['location'] = {
'city': match.group(1),
'region': match.group(2)
}
def detect_heritage_type(headline: str) -> tuple[bool, Optional[str]]:
"""
Detect if a headline is heritage-relevant and what type.
Two-stage classification:
1. Check if organization is explicitly non-heritage (blocklist)
2. Check if role/organization matches heritage patterns
For 'D' (Digital) type, require BOTH a tech role AND a heritage organization.
This prevents generic IT workers at banks/police from being classified as heritage.
"""
if not headline:
return (False, None)
headline_lower = headline.lower()
# Stage 1: Check for non-heritage organizations (blocklist)
for org in NON_HERITAGE_ORGANIZATIONS:
if org.lower() in headline_lower:
return (False, None)
# Stage 2: Check for non-heritage role indicators
for keyword in NON_HERITAGE_KEYWORDS:
if keyword.lower() in headline_lower:
return (False, None)
# Stage 3: Check if this is a heritage organization
is_heritage_org = False
for org_keyword in HERITAGE_ORGANIZATION_KEYWORDS:
if org_keyword.lower() in headline_lower:
is_heritage_org = True
break
# Check heritage keywords by type (order matters - more specific first)
# 'D' (Digital) is checked last and requires heritage org validation
type_order = ['A', 'M', 'L', 'G', 'S', 'C', 'O', 'R', 'E'] # D removed from main loop
for heritage_type in type_order:
keywords = HERITAGE_KEYWORDS.get(heritage_type, [])
for keyword in keywords:
if keyword.lower() in headline_lower:
return (True, heritage_type)
# Special handling for 'D' (Digital) - ONLY if at a heritage organization
if is_heritage_org:
digital_keywords = HERITAGE_KEYWORDS.get('D', [])
for keyword in digital_keywords:
if keyword.lower() in headline_lower:
return (True, 'D')
# Generic heritage terms (without specific type)
generic = ['heritage', 'erfgoed', 'culture', 'cultuur', 'cultural', 'film', 'cinema',
'media', 'arts', 'kunst', 'creative', 'preservation', 'conservation', 'collection']
for keyword in generic:
if keyword in headline_lower:
return (True, None)
return (False, None)
def is_abbreviated_name(name: str) -> bool:
"""Check if name contains abbreviations."""
parts = name.split()
for part in parts:
clean_part = part.rstrip('.')
if len(clean_part) <= 1 and clean_part.isalpha():
return True
if part.endswith('.') and len(part) <= 2:
return True
return False
def generate_staff_id(name: str, index: int, custodian_slug: str) -> str:
"""Generate unique staff ID."""
normalized = unicodedata.normalize('NFD', name.lower())
ascii_name = ''.join(c for c in normalized if unicodedata.category(c) != 'Mn')
name_slug = re.sub(r'[^a-z0-9]+', '_', ascii_name)
name_slug = re.sub(r'_+', '_', name_slug).strip('_')
if len(name_slug) > 30:
name_slug = name_slug[:30].rstrip('_')
return f"{custodian_slug}_staff_{index:04d}_{name_slug}"
def parse_html_file(filepath: Path, custodian_name: str, custodian_slug: str) -> dict[str, Any]:
"""
Parse LinkedIn company People page HTML and extract all staff data.
Handles:
- Duplicate profile merging (same person with multiple LinkedIn accounts)
- Anonymous "LinkedIn Member" entries (each counted separately)
Returns complete staff JSON structure.
"""
with open(filepath, 'r', encoding='utf-8', errors='replace') as f:
html_content = f.read()
# Parse HTML
parser = LinkedInProfileCardParser()
try:
parser.feed(html_content)
except Exception as e:
print(f"Warning: HTML parsing error: {e}", file=sys.stderr)
raw_profiles = parser.finalize()
custodian_metadata = parser.custodian_metadata
# First pass: Group profiles by LinkedIn SLUG to detect duplicates
# The same profile may appear multiple times on a page (LinkedIn UI quirk)
# We merge by slug, NOT by name, because different people can have the same name
# BUT: Do NOT merge "LinkedIn Member" (anonymous) - each is unique
slug_to_profiles: dict[str, list[dict]] = {}
for profile in raw_profiles:
name = profile.get('name', '').strip()
slug = profile.get('linkedin_slug', '')
is_anonymous = profile.get('is_anonymous', False) or name == 'LinkedIn Member'
if not name:
continue
if is_anonymous:
# Each anonymous profile gets a unique key (cannot deduplicate without slug)
unique_key = f"_anonymous_{len(slug_to_profiles)}"
slug_to_profiles[unique_key] = [profile]
elif slug:
# Deduplicate by slug - same slug = same person appearing multiple times
if slug not in slug_to_profiles:
slug_to_profiles[slug] = []
slug_to_profiles[slug].append(profile)
else:
# No slug (shouldn't happen for non-anonymous) - use unique key
unique_key = f"_no_slug_{len(slug_to_profiles)}"
slug_to_profiles[unique_key] = [profile]
# Second pass: Build staff list with merged duplicates
staff: list[dict] = []
anonymous_count = 0
duplicate_profiles_count = 0
for slug_key, profiles in slug_to_profiles.items():
if slug_key.startswith('_anonymous_'):
# Anonymous profile
profile = profiles[0]
anonymous_count += 1
display_name = f"LinkedIn Member #{anonymous_count}"
name_type = 'anonymous'
headline = profile.get('headline', '')
is_heritage, heritage_type = detect_heritage_type(headline)
if not headline and custodian_name:
is_heritage = True
heritage_type = 'M'
staff_entry = {
'staff_id': generate_staff_id(display_name, len(staff), custodian_slug),
'name': display_name,
'name_type': name_type,
'degree': profile.get('degree', 'unknown'),
'headline': headline,
'mutual_connections': profile.get('mutual_connections', ''),
'heritage_relevant': is_heritage,
'heritage_type': heritage_type,
}
staff.append(staff_entry)
elif slug_key.startswith('_no_slug_'):
# Profile without slug (rare edge case)
profile = profiles[0]
name = profile.get('name', 'Unknown')
if is_abbreviated_name(name):
name_type = 'abbreviated'
else:
name_type = 'full'
headline = profile.get('headline', '')
is_heritage, heritage_type = detect_heritage_type(headline)
if not headline and custodian_name:
is_heritage = True
heritage_type = 'M'
staff_entry = {
'staff_id': generate_staff_id(name, len(staff), custodian_slug),
'name': name,
'name_type': name_type,
'degree': profile.get('degree', 'unknown'),
'headline': headline,
'mutual_connections': profile.get('mutual_connections', ''),
'heritage_relevant': is_heritage,
'heritage_type': heritage_type,
}
staff.append(staff_entry)
else:
# Regular profile with slug - may have duplicates to merge
# (same profile appearing multiple times on page)
primary = profiles[0]
name = primary.get('name', slug_key)
# Determine name type
if is_abbreviated_name(name):
name_type = 'abbreviated'
else:
name_type = 'full'
headline = primary.get('headline', '')
is_heritage, heritage_type = detect_heritage_type(headline)
if not headline and custodian_name:
is_heritage = True
heritage_type = 'M'
staff_entry = {
'staff_id': generate_staff_id(name, len(staff), custodian_slug),
'name': name,
'name_type': name_type,
'degree': primary.get('degree', 'unknown'),
'headline': headline,
'mutual_connections': primary.get('mutual_connections', ''),
'heritage_relevant': is_heritage,
'heritage_type': heritage_type,
}
# Add primary LinkedIn URL
if primary.get('linkedin_profile_url'):
staff_entry['linkedin_profile_url'] = primary['linkedin_profile_url']
staff_entry['linkedin_slug'] = primary['linkedin_slug']
# If same profile appeared multiple times, count as duplicates merged
if len(profiles) > 1:
duplicate_profiles_count += len(profiles) - 1
staff.append(staff_entry)
# Build final output structure
timestamp = datetime.now(timezone.utc).strftime('%Y-%m-%dT%H:%M:%SZ')
# Calculate PYMK filtered count
pymk_filtered = custodian_metadata.get('_pymk_cards_filtered', 0)
result = {
'custodian_metadata': {
'custodian_name': custodian_name,
'custodian_slug': custodian_slug,
'name': custodian_metadata.get('name', custodian_name),
'industry': custodian_metadata.get('industry', ''),
'location': custodian_metadata.get('location', {}),
'follower_count': custodian_metadata.get('follower_count', ''),
'associated_members': custodian_metadata.get('associated_members', 0),
},
'source_metadata': {
'source_type': 'linkedin_company_people_page_html',
'source_file': str(filepath.name),
'registered_timestamp': timestamp,
'registration_method': 'html_parsing',
'staff_extracted': len(staff),
'pymk_cards_filtered': pymk_filtered,
'duplicate_profiles_merged': duplicate_profiles_count,
},
'staff': staff,
'staff_analysis': {
'total_staff_extracted': len(staff),
'with_linkedin_url': sum(1 for s in staff if 'linkedin_profile_url' in s),
'with_alternate_profiles': sum(1 for s in staff if 'alternate_profiles' in s),
'anonymous_members': anonymous_count,
'heritage_relevant_count': sum(1 for s in staff if s.get('heritage_relevant')),
'staff_by_heritage_type': dict(Counter(
s.get('heritage_type') for s in staff if s.get('heritage_type')
)),
}
}
return result
def main():
parser = argparse.ArgumentParser(
description='Parse LinkedIn company People page HTML to extract staff data'
)
parser.add_argument('html_file', type=Path, help='Path to saved HTML file')
parser.add_argument('--custodian-name', required=True, help='Name of the custodian organization')
parser.add_argument('--custodian-slug', required=True, help='Slug for staff ID generation')
parser.add_argument('--output', '-o', type=Path, help='Output JSON file path')
args = parser.parse_args()
if not args.html_file.exists():
print(f"Error: HTML file not found: {args.html_file}", file=sys.stderr)
sys.exit(1)
print(f"Parsing: {args.html_file}")
result = parse_html_file(args.html_file, args.custodian_name, args.custodian_slug)
# Print summary
print(f"\nExtraction Results:")
print(f" Total staff: {result['staff_analysis']['total_staff_extracted']}")
print(f" With LinkedIn URL: {result['staff_analysis']['with_linkedin_url']}")
print(f" With alternate profiles: {result['staff_analysis']['with_alternate_profiles']}")
print(f" Anonymous members: {result['staff_analysis']['anonymous_members']}")
print(f" Heritage-relevant: {result['staff_analysis']['heritage_relevant_count']}")
# Show filtering/merging stats
pymk_filtered = result['source_metadata'].get('pymk_cards_filtered', 0)
duplicates_merged = result['source_metadata'].get('duplicate_profiles_merged', 0)
if pymk_filtered > 0:
print(f"\n 'People you may know' cards filtered: {pymk_filtered}")
if duplicates_merged > 0:
print(f" Duplicate profiles merged: {duplicates_merged}")
expected = result['custodian_metadata'].get('associated_members', 0)
if expected:
extracted = result['staff_analysis']['total_staff_extracted']
print(f"\n Expected (associated members): {expected}")
print(f" Extracted: {extracted}")
diff = extracted - expected
if diff == 0:
print(f" Match: EXACT")
elif diff > 0:
print(f" Difference: +{diff} (more than expected)")
else:
print(f" Difference: {diff} (fewer than expected)")
print(f"\n Heritage types: {result['staff_analysis']['staff_by_heritage_type']}")
# Save output
if args.output:
with open(args.output, 'w', encoding='utf-8') as f:
json.dump(result, f, indent=2, ensure_ascii=False)
print(f"\nSaved to: {args.output}")
else:
# Print to stdout
print(json.dumps(result, indent=2, ensure_ascii=False))
return 0
if __name__ == '__main__':
sys.exit(main())