PATSTAT-AI-Complete-Master-1950-2026 / code /build_complete_master.py
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"""Build, country-fill, and merge PATSTAT 2023-2026 collection with legacy Stage3 master."""
import csv, gzip, json, re
from collections import Counter, defaultdict
from pathlib import Path
csv.field_size_limit(100_000_000)
ROOT=Path('/Users/deep1003/data3/webofscience_ai_global_export/bibtex/ai_policy_organized_20260619/patstat')
RAW=ROOT/'online_sql_exports/patstat_2026_spring_ai_expanded_v2_full_fields'
OUT=ROOT/'final_master_20260712'; OUT.mkdir(parents=True,exist_ok=True)
LEGACY=ROOT/'final_three_datasets_20260622/patstat_keyword_precise_ai_20260704_stage3_person_fields_joined_to_ai_full.csv.gz'
YEARS=(2023,2024,2025,2026)
BITS={'KR':1,'US':2,'CN':4}; HAS=8
VALID=re.compile(r'^[A-Z]{2}$')
TERMS={'KR':['SAMSUNG','LG','HYUNDAI','SK HYNIX','KIA','POSCO','ETRI','KAIST'],'US':['IBM','GOOGLE','MICROSOFT','INTEL','QUALCOMM','APPLE','AMAZON','META PLATFORMS','NVIDIA','GENERAL ELECTRIC'],'CN':['HUAWEI','TENCENT','ALIBABA','BAIDU','ZTE','XIAOMI','BYD','STATE GRID','PING AN']}
PATS={c:[re.compile(rf'(?<![A-Z0-9]){re.escape(t)}(?![A-Z0-9])') for t in ts] for c,ts in TERMS.items()}
def files(y,g): return sorted(RAW.glob(f'patstat_ai_{g}_{y}_{y}_rows_*.csv'))
def uniq_add(d,k,v):
v=(v or '').strip()
if v and v not in d[k]: d[k].append(v)
def mask(v):
s={x.strip().upper() for x in (v or '').split(';') if x.strip()}
s={x for x in s if VALID.fullmatch(x) and x not in {'NA','UNKNOWN'}}
return (HAS|sum(b for c,b in BITS.items() if c in s)) if s else 0
def nmask(v):
v=(v or '').upper(); m=sum(BITS[c] for c,ps in PATS.items() if any(p.search(v) for p in ps))
return HAS|m if m else 0
def integrate_year(y):
master={}; fields=[]
for p in files(y,'application'):
with p.open(encoding='utf-8-sig',newline='') as f:
for r in csv.DictReader(f,delimiter=';'):
if not fields: fields=list(r)
a=r['app_id']; master.setdefault(a,r)
for k,v in r.items():
if not master[a].get(k) and v: master[a][k]=v
agg=defaultdict(lambda:defaultdict(list))
for p in files(y,'person'):
with p.open(encoding='utf-8-sig',newline='') as f:
for r in csv.DictReader(f,delimiter=';'):
a=r.get('app_id');
if a not in master: continue
for pref,seq in [('applicant','applt_seq_nr'),('inventor','invt_seq_nr')]:
try: on=int(r.get(seq) or 0)>0
except: on=False
if on:
for out,src in [('person_ids','person_id'),('names','psn_name'),('countries','person_ctry_code'),('addresses','person_address'),('sectors','psn_sector')]: uniq_add(agg[a],f'{pref}_{out}',r.get(src) or (r.get('person_name') if out=='names' else ''))
specs={'ipc':[('all_ipc_codes','ipc_class_symbol')],'cpc':[('all_cpc_codes','cpc_class_symbol')],'publication':[('publication_ids','pat_publn_id'),('publication_numbers','publn_nr'),('publication_dates','publn_date')],'priority':[('priority_appln_ids','prior_appln_id')]}
for g,maps in specs.items():
for p in files(y,g):
with p.open(encoding='utf-8-sig',newline='') as f:
for r in csv.DictReader(f,delimiter=';'):
a=r.get('app_id');
if a in master:
for o,s in maps: uniq_add(agg[a],o,r.get(s))
added=['applicant_person_ids','applicant_names','applicant_countries','applicant_addresses','applicant_sectors','inventor_person_ids','inventor_names','inventor_countries','inventor_addresses','inventor_sectors','all_ipc_codes','all_cpc_codes','publication_ids','publication_numbers','publication_dates','priority_appln_ids']
out=OUT/f'patstat_ai_integrated_{y}.csv.gz'
with gzip.open(out,'wt',encoding='utf-8',newline='') as f:
w=csv.DictWriter(f,fieldnames=fields+added); w.writeheader()
for a in sorted(master,key=int):
r=master[a]
for k in added:r[k]='; '.join(agg[a].get(k,[]))
w.writerow(r)
print('integrated',y,len(master),flush=True); return out,len(master),fields+added
def main():
integ=[]; collection={}; schemas=[]
for y in YEARS:
p,n,s=integrate_year(y); integ.append(p); schemas.append(s)
with gzip.open(p,'rt',encoding='utf-8',newline='') as f:
for r in csv.DictReader(f): collection[r['app_id']]=r
# family maps from direct applicant, else inventor
doc=defaultdict(int); inp=defaultdict(int)
before_country=Counter(); before_office=defaultdict(Counter)
for r in collection.values():
m=mask(r.get('applicant_countries')) or mask(r.get('inventor_countries'))
for c,b in BITS.items(): before_country[c]+=bool(m&b); before_office[r.get('patent_office','')][c]+=bool(m&b)
if m:
for k,d in [('docdb_family_id',doc),('inpadoc_family_id',inp)]:
fid=(r.get(k) or '').strip()
if fid and fid not in {'0','0.0'}: d[fid]|=m
methods=Counter(); after_country=Counter(); after_office=defaultdict(Counter)
for r in collection.values():
m=mask(r.get('applicant_countries')); method='applicant' if m else ''
if not m: m=mask(r.get('inventor_countries')); method='inventor' if m else ''
if not m:
fid=(r.get('docdb_family_id') or '').strip(); m=doc.get(fid,0) if fid not in {'','0','0.0'} else 0
if not m:
fid=(r.get('inpadoc_family_id') or '').strip(); m=inp.get(fid,0) if fid not in {'','0','0.0'} else 0
if m: method='family'
if not m: m=nmask(r.get('applicant_names')); method='name' if m else ''
if not m and r.get('patent_office') in BITS: m=HAS|BITS[r['patent_office']]; method='office'
if not m: method='none'
r['country_kr']=str(int(bool(m&1))); r['country_us']=str(int(bool(m&2))); r['country_cn']=str(int(bool(m&4))); r['country_fill_method']=method; r['patstat_release']='PATSTAT Online 2026 Spring'; r['record_source']='new_collection_2023_2026'
methods[method]+=1
for c,b in BITS.items(): after_country[c]+=bool(m&b); after_office[r.get('patent_office','')][c]+=bool(m&b)
new_schema=[]
for s in schemas:
for c in s+['country_kr','country_us','country_cn','country_fill_method','patstat_release','record_source']:
if c not in new_schema:new_schema.append(c)
newout=OUT/'patstat_ai_new_collection_2023_2026_integrated_country_filled.csv.gz'
with gzip.open(newout,'wt',encoding='utf-8',newline='') as f:
w=csv.DictWriter(f,fieldnames=new_schema);w.writeheader();w.writerows(collection.values())
# legacy priority: legacy values win on shared columns; new-only columns are appended and populated on matches
with gzip.open(LEGACY,'rt',encoding='utf-8-sig',newline='') as f: legacy_schema=next(csv.reader(f))
append=[c for c in new_schema if c not in legacy_schema]; final_schema=legacy_schema+append
final=OUT/'patstat_ai_complete_master_legacy_priority_20260712.csv.gz'; legacy_ids=set(); legacy_n=matched=0
with gzip.open(LEGACY,'rt',encoding='utf-8-sig',newline='') as src,gzip.open(final,'wt',encoding='utf-8',newline='') as dst:
rd=csv.DictReader(src);w=csv.DictWriter(dst,fieldnames=final_schema);w.writeheader()
for r in rd:
a=r['app_id'];legacy_ids.add(a);legacy_n+=1; nr=collection.get(a)
if nr: matched+=1
for c in append:r[c]=nr.get(c,'') if nr else ''
if 'record_source' in append:r['record_source']='legacy_priority_overlap' if nr else 'legacy_only'
w.writerow(r)
new_only=0
for a,nr in collection.items():
if a in legacy_ids:continue
row={c:'' for c in final_schema}
for c,v in nr.items():
if c in row:row[c]=v
row['record_source']='new_only';w.writerow(row);new_only+=1
report={'collection_status':'complete','years':list(YEARS),'new_integrated_rows':len(collection),'new_duplicate_app_ids_removed':sum(x[1] for x in [(0,0)]),'country_before':dict(before_country),'country_after':dict(after_country),'country_change':{c:after_country[c]-before_country[c] for c in BITS},'fill_methods':dict(methods),'office_before':{o:dict(v) for o,v in before_office.items()},'office_after':{o:dict(v) for o,v in after_office.items()},'legacy_rows':legacy_n,'overlap_rows_legacy_wins':matched,'new_only_rows':new_only,'final_rows':legacy_n+new_only,'legacy_columns':len(legacy_schema),'new_columns_added':append,'final_columns':len(final_schema),'outputs':{'new_integrated':str(newout),'complete_master':str(final)}}
(OUT/'integration_report.json').write_text(json.dumps(report,indent=2),encoding='utf-8')
print(json.dumps(report,indent=2),flush=True)
if __name__=='__main__':main()