skills/43-wentorai-research-plugins/skills/tools/document/grobid-pdf-parsing/SKILL.md
Extract structured text, metadata, and references from academic PDFs
npx skillsauth add brycewang-stanford/Awesome-Agent-Skills-for-Empirical-Research grobid-pdf-parsingInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Academic PDFs are the primary format for distributing research, yet extracting structured data from them remains challenging. PDFs encode visual layout, not semantic structure -- headings, paragraphs, equations, tables, and citations are all just positioned text and graphics. GROBID (GeneRation Of BIbliographic Data) is the leading open-source tool for parsing academic PDFs into structured XML/TEI format, extracting metadata, body text, references, and figures with high accuracy.
GROBID is used by major academic platforms including CORE, ResearchGate, and others for large-scale document processing. It combines machine learning models (CRF and deep learning) with heuristic rules to handle the diverse formatting of academic papers across publishers and disciplines.
This guide covers installing and running GROBID, using its REST API for batch processing, extracting specific elements (metadata, references, body sections), and integrating GROBID output into downstream workflows such as knowledge bases, systematic reviews, and literature analysis pipelines.
# Pull the latest GROBID image
docker pull grobid/grobid:0.8.1
# Run GROBID server
docker run --rm --init \
--ulimit core=0 \
-p 8070:8070 \
grobid/grobid:0.8.1
# GROBID is now running at http://localhost:8070
# Web console: http://localhost:8070/console
git clone https://github.com/kermitt2/grobid.git
cd grobid
./gradlew clean install
./gradlew run
# Process a single PDF and get TEI XML
curl -v --form [email protected] \
http://localhost:8070/api/processFulltextDocument \
-o paper.tei.xml
# With options
curl -v --form [email protected] \
--form consolidateHeader=1 \
--form consolidateCitations=1 \
--form includeRawCitations=1 \
http://localhost:8070/api/processFulltextDocument \
-o paper.tei.xml
| Endpoint | Purpose | Input | Output |
|----------|---------|-------|--------|
| /api/processFulltextDocument | Full paper parsing | PDF | TEI XML |
| /api/processHeaderDocument | Metadata only | PDF | TEI XML (header) |
| /api/processReferences | Reference parsing | PDF | TEI XML (refs) |
| /api/processCitation | Parse citation string | Text | TEI XML |
| /api/processDate | Parse date string | Text | Structured date |
import requests
from pathlib import Path
class GrobidClient:
def __init__(self, base_url='http://localhost:8070'):
self.base_url = base_url
def process_fulltext(self, pdf_path, consolidate_header=True,
consolidate_citations=True):
"""Process a PDF and return TEI XML."""
url = f'{self.base_url}/api/processFulltextDocument'
files = {'input': open(pdf_path, 'rb')}
data = {
'consolidateHeader': '1' if consolidate_header else '0',
'consolidateCitations': '1' if consolidate_citations else '0',
}
response = requests.post(url, files=files, data=data)
response.raise_for_status()
return response.text
def process_header(self, pdf_path):
"""Extract only header metadata from PDF."""
url = f'{self.base_url}/api/processHeaderDocument'
files = {'input': open(pdf_path, 'rb')}
response = requests.post(url, files=files)
response.raise_for_status()
return response.text
def is_alive(self):
"""Check if GROBID server is running."""
try:
resp = requests.get(f'{self.base_url}/api/isalive')
return resp.status_code == 200
except requests.ConnectionError:
return False
# Usage
client = GrobidClient()
if client.is_alive():
tei_xml = client.process_fulltext('paper.pdf')
with open('paper.tei.xml', 'w') as f:
f.write(tei_xml)
from lxml import etree
def parse_tei_metadata(tei_xml):
"""Extract title, authors, abstract from TEI XML."""
ns = {'tei': 'http://www.tei-c.org/ns/1.0'}
root = etree.fromstring(tei_xml.encode('utf-8'))
# Title
title_el = root.find('.//tei:titleStmt/tei:title', ns)
title = title_el.text if title_el is not None else ''
# Authors
authors = []
for author in root.findall('.//tei:sourceDesc//tei:author', ns):
forename = author.findtext('.//tei:forename', '', ns)
surname = author.findtext('.//tei:surname', '', ns)
if surname:
authors.append(f'{forename} {surname}'.strip())
# Abstract
abstract_el = root.find('.//tei:profileDesc/tei:abstract', ns)
abstract = ''.join(abstract_el.itertext()).strip() if abstract_el is not None else ''
# DOI
doi_el = root.find('.//tei:idno[@type="DOI"]', ns)
doi = doi_el.text if doi_el is not None else ''
return {
'title': title,
'authors': authors,
'abstract': abstract,
'doi': doi,
}
def parse_tei_sections(tei_xml):
"""Extract structured sections from TEI XML body."""
ns = {'tei': 'http://www.tei-c.org/ns/1.0'}
root = etree.fromstring(tei_xml.encode('utf-8'))
sections = []
for div in root.findall('.//tei:body/tei:div', ns):
head = div.findtext('tei:head', '', ns).strip()
paragraphs = []
for p in div.findall('tei:p', ns):
text = ''.join(p.itertext()).strip()
if text:
paragraphs.append(text)
sections.append({
'heading': head,
'n': div.get('n', ''),
'paragraphs': paragraphs,
})
return sections
def parse_tei_references(tei_xml):
"""Extract structured references from TEI XML."""
ns = {'tei': 'http://www.tei-c.org/ns/1.0'}
root = etree.fromstring(tei_xml.encode('utf-8'))
refs = []
for bib in root.findall('.//tei:listBibl/tei:biblStruct', ns):
ref = {'id': bib.get('{http://www.w3.org/XML/1998/namespace}id', '')}
# Title
title_el = bib.find('.//tei:title[@level="a"]', ns)
if title_el is None:
title_el = bib.find('.//tei:title', ns)
ref['title'] = title_el.text if title_el is not None else ''
# Authors
ref['authors'] = []
for author in bib.findall('.//tei:author', ns):
name = f"{author.findtext('.//tei:forename', '', ns)} {author.findtext('.//tei:surname', '', ns)}".strip()
if name:
ref['authors'].append(name)
# Year
date_el = bib.find('.//tei:date[@type="published"]', ns)
ref['year'] = date_el.get('when', '') if date_el is not None else ''
# DOI
doi_el = bib.find('.//tei:idno[@type="DOI"]', ns)
ref['doi'] = doi_el.text if doi_el is not None else ''
refs.append(ref)
return refs
from pathlib import Path
import json
from concurrent.futures import ThreadPoolExecutor
def batch_process(pdf_dir, output_dir, max_workers=4):
"""Process all PDFs in a directory using GROBID."""
client = GrobidClient()
pdf_dir = Path(pdf_dir)
output_dir = Path(output_dir)
output_dir.mkdir(parents=True, exist_ok=True)
pdf_files = list(pdf_dir.glob('*.pdf'))
print(f"Processing {len(pdf_files)} PDFs...")
def process_one(pdf_path):
try:
tei = client.process_fulltext(str(pdf_path))
meta = parse_tei_metadata(tei)
refs = parse_tei_references(tei)
# Save TEI XML
tei_path = output_dir / f'{pdf_path.stem}.tei.xml'
tei_path.write_text(tei)
# Save structured JSON
json_path = output_dir / f'{pdf_path.stem}.json'
json_path.write_text(json.dumps({
'metadata': meta,
'references': refs,
'n_references': len(refs),
}, indent=2))
return pdf_path.name, 'success'
except Exception as e:
return pdf_path.name, f'error: {str(e)}'
with ThreadPoolExecutor(max_workers=max_workers) as executor:
results = list(executor.map(process_one, pdf_files))
for name, status in results:
print(f" {name}: {status}")
batch_process('papers/', 'parsed_output/')
consolidateHeader=1 and consolidateCitations=1 cross-reference against Crossref for better metadata.development
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