pdf-to-docx
БесплатноБез исполняемых скриптовНе проверенConvert PDF files to editable Word documents using pdf2docx
Об этом скилле
PDF to Word Skill
Overview
This skill enables conversion from PDF to editable Word documents using pdf2docx - a Python library that preserves layout, tables, images, and text formatting. Unlike OCR-based solutions, pdf2docx extracts native PDF content for accurate conversion.
How to Use
- Provide the PDF file you want to convert
- Optionally specify pages or conversion options
- I'll convert it to an editable Word document
Example prompts:
- "Convert this PDF report to an editable Word document"
- "Turn pages 1-5 of this PDF into Word format"
- "Extract this scanned document as editable text"
- "Convert this PDF contract to Word for editing"
Domain Knowledge
pdf2docx Fundamentals
from pdf2docx import Converter
# Basic conversion
cv = Converter('input.pdf')
cv.convert('output.docx')
cv.close()
# Or using context manager
with Converter('input.pdf') as cv:
cv.convert('output.docx')
Conversion Options
from pdf2docx import Converter
cv = Converter('input.pdf')
# Full document
cv.convert('output.docx')
# Specific pages (0-indexed)
cv.convert('output.docx', start=0, end=5)
# Single page
cv.convert('output.docx', pages=[0])
# Multiple specific pages
cv.convert('output.docx', pages=[0, 2, 4])
cv.close()
Advanced Options
from pdf2docx import Converter
cv = Converter('input.pdf')
cv.convert(
'output.docx',
start=0, # Start page (0-indexed)
end=None, # End page (None = last page)
pages=None, # Specific pages list
password=None, # PDF password if encrypted
min_section_height=20.0, # Minimum height for section
connected_border_tolerance=0.5, # Border detection tolerance
line_overlap_threshold=0.9, # Line merging threshold
line_break_width_ratio=0.5, # Line break detection
line_break_free_space_ratio=0.1,
line_separate_threshold=5, # Vertical line separation
new_paragraph_free_space_ratio=0.85,
float_image_ignorable_gap=5,
page_margin_factor_top=0.5,
page_margin_factor_bottom=0.5,
)
cv.close()
Handling Different PDF Types
Native PDFs (Text-based)
# Works best with native PDFs
cv = Converter('native_pdf.pdf')
cv.convert('output.docx')
cv.close()
Scanned PDFs (Image-based)
# For scanned PDFs, use OCR first
# pdf2docx works best with native text PDFs
# Consider using pytesseract or PaddleOCR first
import pytesseract
from pdf2image import convert_from_path
# Convert PDF pages to images
images = convert_from_path('scanned.pdf')
# OCR each page
text = ''
for img in images:
text += pytesseract.image_to_string(img)
# Then create Word document from text
Python Integration
from pdf2docx import Converter
import os
def pdf_to_word(pdf_path, output_path=None, pages=None):
"""Convert PDF to Word document."""
if output_path is None:
output_path = pdf_path.replace('.pdf', '.docx')
cv = Converter(pdf_path)
if pages:
cv.convert(output_path, pages=pages)
else:
cv.convert(output_path)
cv.close()
return output_path
# Usage
result = pdf_to_word('document.pdf')
print(f"Created: {result}")
Batch Conversion
from pdf2docx import Converter
from pathlib import Path
from concurrent.futures import ThreadPoolExecutor
def convert_single(pdf_path, output_dir):
"""Convert single PDF to Word."""
output_path = output_dir / pdf_path.with_suffix('.docx').name
try:
cv = Converter(str(pdf_path))
cv.convert(str(output_path))
cv.close()
return f"Success: {pdf_path.name}"
except Exception as e:
return f"Error: {pdf_path.name} - {e}"
def batch_convert(input_dir, output_dir, max_workers=4):
"""Convert all PDFs in directory."""
input_path = Path(input_dir)
output_path = Path(output_dir)
output_path.mkdir(exist_ok=True)
pdf_files = list(input_path.glob('*.pdf'))
with ThreadPoolExecutor(max_workers=max_workers) as executor:
futures = [
executor.submit(convert_single, pdf, output_path)
for pdf in pdf_files
]
for future in futures:
print(future.result())
batch_convert('./pdfs', './word_docs')
Parsing PDF Structure
from pdf2docx import Converter
def analyze_pdf(pdf_path):
"""Analyze PDF structure before conversion."""
cv = Converter(pdf_path)
for i, page in enumerate(cv.pages):
print(f"Page {i+1}:")
print(f" Size: {page.width} x {page.height}")
print(f" Blocks: {len(page.blocks)}")
for block in page.blocks:
if hasattr(block, 'text'):
print(f" Text block: {block.text[:50]}...")
elif hasattr(block, 'image'):
print(f" Image block")
cv.close()
analyze_pdf('document.pdf')
Best Practices
- Check PDF Type: Native PDFs convert better than scanned
- Preview First: Test with a few pages before full conversion
- Handle Tables: Complex tables may need manual adjustment
- Image Quality: Images are extracted at original resolution
- Font Handling: Some fonts may substitute to system defaults
Common Patterns
Convert with Progress
from pdf2docx import Converter
def convert_with_progress(pdf_path, output_path):
"""Convert PDF with progress tracking."""
cv = Converter(pdf_path)
total_pages = len(cv.pages)
print(f"Converting {total_pages} pages...")
for i in range(total_pages):
cv.convert(output_path, start=i, end=i+1)
progress = (i + 1) / total_pages * 100
print(f"Progress: {progress:.1f}%")
cv.close()
print("Conversion complete!")
Extract Tables Only
from pdf2docx import Converter
from docx import Document
def extract_tables_to_word(pdf_path, output_path):
"""Extract only tables from PDF to Word."""
cv = Converter(pdf_path)
# First do full conversion
temp_path = 'temp_full.docx'
cv.convert(temp_path)
cv.close()
# Open and extract tables
doc = Document(temp_path)
new_doc = Document()
for table in doc.tables:
# Copy table to new document
new_table = new_doc.add_table(rows=0, cols=len(table.columns))
for row in table.rows:
new_row = new_table.add_row()
for i, cell in enumerate(row.cells):
new_row.cells[i].text = cell.text
new_doc.add_paragraph() # Add spacing
new_doc.save(output_path)
os.remove(temp_path)
Examples
Example 1: Contract Conversion
from pdf2docx import Converter
import os
def convert_contract(pdf_path):
"""Convert contract PDF to editable Word with metadata."""
# Define output path
base_name = os.path.splitext(pdf_path)[0]
output_path = f"{base_name}_editable.docx"
# Convert
cv = Converter(pdf_path)
# Check page count
page_count = len(cv.pages)
print(f"Processing {page_count} pages...")
# Convert all pages
cv.convert(output_path)
cv.close()
print(f"Created: {output_path}")
print(f"File size: {os.path.getsize(output_path) / 1024:.1f} KB")
return output_path
# Usage
result = convert_contract('contract.pdf')
Example 2: Selective Page Conversion
from pdf2docx import Converter
def convert_selected_pages(pdf_path, page_ranges, output_path):
"""Convert specific page ranges to Word.
page_ranges: List of tuples like [(1, 3), (5, 7)] for pages 1-3 and 5-7
"""
cv = Converter(pdf_path)
# Convert pages (0-indexed internally)
all_pages = []
for start, end in page_ranges:
all_pages.extend(range(start - 1, end)) # Convert to 0-indexed
cv.convert(outpu
Установить pdf-to-docx в Claude Code и Claude Desktop
Зарегайся, чтобы установить скилл
Создай бесплатный аккаунт, чтобы открыть команду установки и сохранить скилл в библиотеку.
- Открой команду установки в одну строку
- Сохраняй скиллы в синхронизируемую библиотеку
- Уведомления, когда скиллы обновляются
Разрешённые инструменты
Инструменты, которые скиллу разрешено вызывать.
Без ограничений — скилл может использовать любой инструмент.
FAQ
Что делает скилл pdf-to-docx?
Convert PDF files to editable Word documents using pdf2docx
Как установить скилл pdf-to-docx?
Скопируй папку скилла в ~/.claude/skills (вкладка Claude Code выше делает это одной командой), либо поставь как плагин.
Скилл pdf-to-docx запускает скрипты?
Нет, скилл состоит только из инструкций (SKILL.md), без исполняемых скриптов.
Похожие скиллы
Fill forms, extract text and merge PDF files
от AnthropicDOCX
Create and edit Microsoft Word documents
от AnthropicPPTX
Build PowerPoint presentations from scratch
от Anthropiccanvas-design
Create beautiful visual art in .png and .pdf documents using design philosophy. You should use this skill when the user asks to create a poster, piece of art, d
от Anthropic