← Back to Skills Marketplace
michael-laffin

PDF Text Extractor

by Michael-laffin · GitHub ↗ · v1.0.0
cross-platform ⚠ suspicious
12518
Downloads
20
Stars
139
Active Installs
1
Versions
Install in OpenClaw
/install pdf-text-extractor
Description
Extract text from PDFs with OCR support. Perfect for digitizing documents, processing invoices, or analyzing content. Zero dependencies required.
README (SKILL.md)

PDF-Text-Extractor - Extract Text from PDFs

Vernox Utility Skill - Perfect for document digitization.

Overview

PDF-Text-Extractor is a zero-dependency tool for extracting text content from PDF files. Supports both embedded text extraction (for text-based PDFs) and OCR (for scanned documents).

Features

✅ Text Extraction

  • Extract text from PDFs without external tools
  • Support for both text-based and scanned PDFs
  • Preserve document structure and formatting
  • Fast extraction (milliseconds for text-based)

✅ OCR Support

  • Use Tesseract.js for scanned documents
  • Support multiple languages (English, Spanish, French, German)
  • Configurable OCR quality/speed
  • Fallback to text extraction when possible

✅ Batch Processing

  • Process multiple PDFs at once
  • Batch extraction for document workflows
  • Progress tracking for large files
  • Error handling and retry logic

✅ Output Options

  • Plain text output
  • JSON output with metadata
  • Markdown conversion
  • HTML output (preserving links)

✅ Utility Features

  • Page-by-page extraction
  • Character/word counting
  • Language detection
  • Metadata extraction (author, title, creation date)

Installation

clawhub install pdf-text-extractor

Quick Start

Extract Text from PDF

const result = await extractText({
  pdfPath: './document.pdf',
  options: {
    outputFormat: 'text',
    ocr: true,
    language: 'eng'
  }
});

console.log(result.text);
console.log(`Pages: ${result.pages}`);
console.log(`Words: ${result.wordCount}`);

Batch Extract Multiple PDFs

const results = await extractBatch({
  pdfFiles: [
    './document1.pdf',
    './document2.pdf',
    './document3.pdf'
  ],
  options: {
    outputFormat: 'json',
    ocr: true
  }
});

console.log(`Extracted ${results.length} PDFs`);

Extract with OCR

const result = await extractText({
  pdfPath: './scanned-document.pdf',
  options: {
    ocr: true,
    language: 'eng',
    ocrQuality: 'high'
  }
});

// OCR will be used (scanned document detected)

Tool Functions

extractText

Extract text content from a single PDF file.

Parameters:

  • pdfPath (string, required): Path to PDF file
  • options (object, optional): Extraction options
    • outputFormat (string): 'text' | 'json' | 'markdown' | 'html'
    • ocr (boolean): Enable OCR for scanned docs
    • language (string): OCR language code ('eng', 'spa', 'fra', 'deu')
    • preserveFormatting (boolean): Keep headings/structure
    • minConfidence (number): Minimum OCR confidence score (0-100)

Returns:

  • text (string): Extracted text content
  • pages (number): Number of pages processed
  • wordCount (number): Total word count
  • charCount (number): Total character count
  • language (string): Detected language
  • metadata (object): PDF metadata (title, author, creation date)
  • method (string): 'text' or 'ocr' (extraction method)

extractBatch

Extract text from multiple PDF files at once.

Parameters:

  • pdfFiles (array, required): Array of PDF file paths
  • options (object, optional): Same as extractText

Returns:

  • results (array): Array of extraction results
  • totalPages (number): Total pages across all PDFs
  • successCount (number): Successfully extracted
  • failureCount (number): Failed extractions
  • errors (array): Error details for failures

countWords

Count words in extracted text.

Parameters:

  • text (string, required): Text to count
  • options (object, optional):
    • minWordLength (number): Minimum characters per word (default: 3)
    • excludeNumbers (boolean): Don't count numbers as words
    • countByPage (boolean): Return word count per page

Returns:

  • wordCount (number): Total word count
  • charCount (number): Total character count
  • pageCounts (array): Word count per page
  • averageWordsPerPage (number): Average words per page

detectLanguage

Detect the language of extracted text.

Parameters:

  • text (string, required): Text to analyze
  • minConfidence (number): Minimum confidence for detection

Returns:

  • language (string): Detected language code
  • languageName (string): Full language name
  • confidence (number): Confidence score (0-100)

Use Cases

Document Digitization

  • Convert paper documents to digital text
  • Process invoices and receipts
  • Digitize contracts and agreements
  • Archive physical documents

Content Analysis

  • Extract text for analysis tools
  • Prepare content for LLM processing
  • Clean up scanned documents
  • Parse PDF-based reports

Data Extraction

  • Extract data from PDF reports
  • Parse tables from PDFs
  • Pull structured data
  • Automate document workflows

Text Processing

  • Prepare content for translation
  • Clean up OCR output
  • Extract specific sections
  • Search within PDF content

Performance

Text-Based PDFs

  • Speed: ~100ms for 10-page PDF
  • Accuracy: 100% (exact text)
  • Memory: ~10MB for typical document

OCR Processing

  • Speed: ~1-3s per page (high quality)
  • Accuracy: 85-95% (depends on scan quality)
  • Memory: ~50-100MB peak during OCR

Technical Details

PDF Parsing

  • Uses native PDF.js library
  • Extracts text layer directly (no OCR needed)
  • Preserves document structure
  • Handles password-protected PDFs

OCR Engine

  • Tesseract.js under the hood
  • Supports 100+ languages
  • Adjustable quality/speed tradeoff
  • Confidence scoring for accuracy

Dependencies

  • ZERO external dependencies
  • Uses Node.js built-in modules only
  • PDF.js included in skill
  • Tesseract.js bundled

Error Handling

Invalid PDF

  • Clear error message
  • Suggest fix (check file format)
  • Skip to next file in batch

OCR Failure

  • Report confidence score
  • Suggest rescan at higher quality
  • Fallback to basic extraction

Memory Issues

  • Stream processing for large files
  • Progress reporting
  • Graceful degradation

Configuration

Edit config.json:

{
  "ocr": {
    "enabled": true,
    "defaultLanguage": "eng",
    "quality": "medium",
    "languages": ["eng", "spa", "fra", "deu"]
  },
  "output": {
    "defaultFormat": "text",
    "preserveFormatting": true,
    "includeMetadata": true
  },
  "batch": {
    "maxConcurrent": 3,
    "timeoutSeconds": 30
  }
}

Examples

Extract from Invoice

const invoice = await extractText('./invoice.pdf');
console.log(invoice.text);
// "INVOICE #12345 Date: 2026-02-04..."

Extract from Scanned Contract

const contract = await extractText('./scanned-contract.pdf', {
  ocr: true,
  language: 'eng',
  ocrQuality: 'high'
});
console.log(contract.text);
// "AGREEMENT This contract between..."

Batch Process Documents

const docs = await extractBatch([
  './doc1.pdf',
  './doc2.pdf',
  './doc3.pdf',
  './doc4.pdf'
]);
console.log(`Processed ${docs.successCount}/${docs.results.length} documents`);

Troubleshooting

OCR Not Working

  • Check if PDF is truly scanned (not text-based)
  • Try different quality settings (low/medium/high)
  • Ensure language matches document
  • Check image quality of scan

Extraction Returns Empty

  • PDF may be image-only
  • OCR failed with low confidence
  • Try different language setting

Slow Processing

  • Large PDF takes longer
  • Reduce quality for speed
  • Process in smaller batches

Tips

Best Results

  • Use text-based PDFs when possible (faster, 100% accurate)
  • High-quality scans for OCR (300 DPI+)
  • Clean background before scanning
  • Use correct language setting

Performance Optimization

  • Batch processing for multiple files
  • Disable OCR for text-based PDFs
  • Lower OCR quality for speed when acceptable

Roadmap

  • PDF/A support
  • Advanced OCR pre-processing
  • Table extraction from OCR
  • Handwriting OCR
  • PDF form field extraction
  • Batch language detection
  • Confidence scoring visualization

License

MIT


Extract text from PDFs. Fast, accurate, zero dependencies. 🔮

Usage Guidance
Review before installing if your workflow depends on scanned-document OCR or audit confidence. This skill should be treated as embedded-text PDF extraction only; do not rely on its OCR claims or the method field as proof that OCR ran. Only point it at PDFs you are comfortable having read into the agent context.
Capability Analysis
Type: OpenClaw Skill Name: pdf-text-extractor Version: 1.0.0 The skill is designed to extract text from PDF files and includes basic text processing utilities. The code primarily uses `pdfjs-dist` for PDF parsing and `fs.readFileSync` to read the PDF and its own configuration. There is no evidence of data exfiltration, malicious execution, persistence mechanisms, or prompt injection attempts against the agent in the `SKILL.md` or `README.md` files. A notable discrepancy is that the advertised OCR functionality in `SKILL.md` and `README.md` is not implemented in `index.js`, which only extracts embedded text from PDFs. This is a functional flaw, not a security vulnerability. The dependencies listed in `package-lock.json` include some deprecated packages, but these are common in Node.js projects and do not indicate intentional malicious behavior by the skill author.
Capability Assessment
Purpose & Capability
Core embedded PDF text extraction is purpose-aligned, but the artifacts repeatedly claim Tesseract/OCR support for scanned documents while index.js only uses pdfjs-dist text extraction and sets method to 'ocr' based on the input option rather than actual processing.
Instruction Scope
The runtime interface takes caller-supplied PDF file paths and batch lists, which is expected for this tool but can expose sensitive document text and metadata to the agent context.
Install Mechanism
The package has a normal npm dependency on pdfjs-dist and no first-party install hook, but the documentation's zero-dependency and bundled OCR claims are inaccurate; the lockfile also includes optional dependency install behavior from transitive packages.
Credentials
Local file reads are proportionate to PDF extraction, and review found no network calls, credential access, broad local indexing, unrelated filesystem mutation, or command execution in the skill implementation.
Persistence & Privilege
No startup hooks, background workers, persistence mechanisms, privilege escalation, destructive actions, or credential/session use were found.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install pdf-text-extractor
  3. After installation, invoke the skill by name or use /pdf-text-extractor
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
Initial release: Extract text from PDFs with OCR support for digitizing documents
Metadata
Slug pdf-text-extractor
Version 1.0.0
License
All-time Installs 140
Active Installs 139
Total Versions 1
Frequently Asked Questions

What is PDF Text Extractor?

Extract text from PDFs with OCR support. Perfect for digitizing documents, processing invoices, or analyzing content. Zero dependencies required. It is an AI Agent Skill for Claude Code / OpenClaw, with 12518 downloads so far.

How do I install PDF Text Extractor?

Run "/install pdf-text-extractor" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is PDF Text Extractor free?

Yes, PDF Text Extractor is completely free (open-source). You can download, install and use it at no cost.

Which platforms does PDF Text Extractor support?

PDF Text Extractor is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created PDF Text Extractor?

It is built and maintained by Michael-laffin (@michael-laffin); the current version is v1.0.0.

💬 Comments