Command Palette

Search for a command to run...

UnylyUnyly
Back to skills

table-extractor

FreeNo executable scriptsNot checked

>

About this skill

Table Extractor Skill

Overview

This skill enables precise extraction of tables from PDF documents using camelot - the gold standard for PDF table extraction. Handle complex tables with merged cells, borderless tables, and multi-page layouts with high accuracy.

How to Use

  1. Provide the PDF containing tables
  2. Optionally specify pages or table detection method
  3. I'll extract tables as pandas DataFrames

Example prompts:

  • "Extract all tables from this PDF"
  • "Get the table on page 5 of this report"
  • "Extract borderless tables from this document"
  • "Convert PDF tables to Excel format"

Domain Knowledge

camelot Fundamentals

import camelot

# Extract tables from PDF
tables = camelot.read_pdf('document.pdf')

# Access results
print(f"Found {len(tables)} tables")

# Get first table as DataFrame
df = tables[0].df
print(df)

Extraction Methods

Method Use Case Description
lattice Bordered tables Detects table by lines/borders
stream Borderless tables Uses text positioning
# Lattice method (default) - for tables with visible borders
tables = camelot.read_pdf('document.pdf', flavor='lattice')

# Stream method - for borderless tables
tables = camelot.read_pdf('document.pdf', flavor='stream')

Page Selection

# Single page
tables = camelot.read_pdf('document.pdf', pages='1')

# Multiple pages
tables = camelot.read_pdf('document.pdf', pages='1,3,5')

# Page range
tables = camelot.read_pdf('document.pdf', pages='1-5')

# All pages
tables = camelot.read_pdf('document.pdf', pages='all')

Advanced Options

Lattice Options

tables = camelot.read_pdf(
    'document.pdf',
    flavor='lattice',
    line_scale=40,              # Line detection sensitivity
    copy_text=['h', 'v'],       # Copy text across merged cells
    shift_text=['l', 't'],      # Shift text alignment
    split_text=True,            # Split text at newlines
    flag_size=True,             # Flag super/subscripts
    strip_text='\n',            # Characters to strip
    process_background=False,   # Process background lines
)

Stream Options

tables = camelot.read_pdf(
    'document.pdf',
    flavor='stream',
    edge_tol=500,               # Edge tolerance
    row_tol=10,                 # Row tolerance
    column_tol=0,               # Column tolerance
    strip_text='\n',            # Characters to strip
)

Table Area Specification

# Extract from specific area (x1, y1, x2, y2)
# Coordinates from bottom-left, in PDF points (72 points = 1 inch)
tables = camelot.read_pdf(
    'document.pdf',
    table_areas=['72,720,540,400'],  # One area
)

# Multiple areas
tables = camelot.read_pdf(
    'document.pdf',
    table_areas=['72,720,540,400', '72,380,540,200'],
)

Column Specification

# Manually specify column positions (for stream method)
tables = camelot.read_pdf(
    'document.pdf',
    flavor='stream',
    columns=['100,200,300,400'],  # X positions of column separators
)

Working with Results

import camelot

tables = camelot.read_pdf('document.pdf')

for i, table in enumerate(tables):
    # Access DataFrame
    df = table.df
    
    # Table metadata
    print(f"Table {i+1}:")
    print(f"  Page: {table.page}")
    print(f"  Accuracy: {table.accuracy}")
    print(f"  Whitespace: {table.whitespace}")
    print(f"  Order: {table.order}")
    print(f"  Shape: {df.shape}")
    
    # Parsing report
    report = table.parsing_report
    print(f"  Report: {report}")

Export Options

import camelot

tables = camelot.read_pdf('document.pdf')

# Export to CSV
tables[0].to_csv('table.csv')

# Export to Excel
tables[0].to_excel('table.xlsx')

# Export to JSON
tables[0].to_json('table.json')

# Export to HTML
tables[0].to_html('table.html')

# Export all tables
for i, table in enumerate(tables):
    table.to_excel(f'table_{i+1}.xlsx')

Visual Debugging

import camelot

# Enable visual debugging
tables = camelot.read_pdf('document.pdf')

# Plot detected table areas
camelot.plot(tables[0], kind='contour').show()

# Plot text on table
camelot.plot(tables[0], kind='text').show()

# Plot detected lines (lattice only)
camelot.plot(tables[0], kind='joint').show()
camelot.plot(tables[0], kind='line').show()

# Save plot
fig = camelot.plot(tables[0])
fig.savefig('debug.png')

Handling Multi-page Tables

import camelot
import pandas as pd

def extract_multipage_table(pdf_path, pages='all'):
    """Extract and combine tables that span multiple pages."""
    
    tables = camelot.read_pdf(pdf_path, pages=pages)
    
    # Group tables by similar structure (columns)
    table_groups = {}
    
    for table in tables:
        cols = tuple(table.df.columns)
        if cols not in table_groups:
            table_groups[cols] = []
        table_groups[cols].append(table.df)
    
    # Combine similar tables
    combined = []
    for cols, dfs in table_groups.items():
        if len(dfs) > 1:
            # Combine and deduplicate header rows
            combined_df = pd.concat(dfs, ignore_index=True)
            combined.append(combined_df)
        else:
            combined.append(dfs[0])
    
    return combined

Best Practices

  1. Try Both Methods: Lattice for bordered, stream for borderless
  2. Check Accuracy Score: Above 90% is usually good
  3. Use Visual Debugging: Understand extraction results
  4. Specify Areas: For PDFs with multiple table types
  5. Handle Headers: First row often needs special treatment

Common Patterns

Batch Table Extraction

import camelot
from pathlib import Path
import pandas as pd

def batch_extract_tables(input_dir, output_dir):
    """Extract tables from all PDFs in directory."""
    
    input_path = Path(input_dir)
    output_path = Path(output_dir)
    output_path.mkdir(exist_ok=True)
    
    results = []
    
    for pdf_file in input_path.glob('*.pdf'):
        try:
            tables = camelot.read_pdf(str(pdf_file), pages='all')
            
            for i, table in enumerate(tables):
                # Skip low accuracy tables
                if table.accuracy < 80:
                    continue
                
                output_file = output_path / f"{pdf_file.stem}_table_{i+1}.xlsx"
                table.to_excel(str(output_file))
                
                results.append({
                    'source': str(pdf_file),
                    'table': i + 1,
                    'page': table.page,
                    'accuracy': table.accuracy,
                    'output': str(output_file)
                })
        
        except Exception as e:
            results.append({
                'source': str(pdf_file),
                'error': str(e)
            })
    
    return results

Auto-detect Table Method

import camelot

def smart_extract_tables(pdf_path, pages='1'):
    """Try both methods and return best results."""
    
    # Try lattice first
    lattice_tables = camelot.read_pdf(pdf_path, pages=pages, flavor='lattice')
    
    # Try stream
    stream_tables = camelot.read_pdf(pdf_path, pages=pages, flavor='stream')
    
    # Compare and return best
    results = []
    
    if lattice_tables and lattice_tables[0].accuracy > 70:
        results.extend(lattice_tables)
    elif stream_tables:
        results.extend(stream_tables)
    
    return results

Examples

Example 1: Financial Statement Extraction

import camelot
import pandas as pd

def extract_financial_tables(pdf_path):
    """Extract financial tables from annual report."""
    
    # Extract all tables
    tables = camelot.read_pdf(pdf_path, pages='all', flavor='lattice')
    
    financial_data = {
        'income_statement': None,
        'balance_sheet': None,
        'cash_flow': None,
        'other_tables': []
    }
    
    for table

Install table-extractor in Claude Code & Claude Desktop

Sign up to install this skill

Create a free account to reveal the install command and save the skill to your library.

  • Reveal the one-line install command
  • Save skills to your synced library
  • Get notified when skills update
Sign up freeI already have an account

Allowed tools

Tools this skill is permitted to call.

No restriction — this skill can use any tool.

FAQ

What does the table-extractor skill do?

>

How do I install the table-extractor skill?

Copy the skill folder into ~/.claude/skills (the Claude Code tab above does this in one command), or install it as a plugin.

Does the table-extractor skill run scripts?

No, this skill is instructions only (SKILL.md) with no executable scripts.

Related skills

Compare table-extractor with