gemini-document-processing
Guide for implementing Google Gemini API document processing - analyze PDFs with native vision to extract text, images, diagrams, charts, and tables. Use when processing documents, extracting structured data, summarizing PDFs, answering questions about document content, or converting documents to structured formats. (project)
When & Why to Use This Skill
This Claude skill leverages Google Gemini's native vision capabilities to provide advanced PDF document processing and analysis. It enables users to extract structured data, interpret complex visual elements like charts and diagrams, and perform multimodal summarization or Q&A on documents up to 1,000 pages with high precision.
Use Cases
- Automated Data Extraction: Seamlessly extract specific fields from invoices, receipts, and resumes into validated JSON formats for database integration.
- Complex Report Analysis: Analyze technical documents containing a mix of text, charts, and diagrams to derive insights that traditional OCR might miss.
- Large-scale Summarization: Generate concise executive summaries for long-form PDF reports while preserving context across hundreds of pages.
- Intelligent Document Q&A: Build interactive systems to answer specific questions based on the content of legal contracts, manuals, or research papers.
- Format Transformation: Convert legacy PDF documents into structured HTML or JSON while preserving the original visual layout and hierarchy.
| name | gemini-document-processing |
|---|---|
| description | Guide for implementing Google Gemini API document processing - analyze PDFs with native vision to extract text, images, diagrams, charts, and tables. Use when processing documents, extracting structured data, summarizing PDFs, answering questions about document content, or converting documents to structured formats. (project) |
Gemini Document Processing
Process and analyze PDF documents using Google Gemini's native vision capabilities. Extract structured information, summarize content, answer questions, and understand complex documents with text, images, diagrams, charts, and tables.
Core Capabilities
- PDF Vision Processing: Native understanding of PDFs up to 1,000 pages (258 tokens/page)
- Multimodal Analysis: Process text, images, diagrams, charts, and tables
- Structured Extraction: Output to JSON with schema validation
- Document Q&A: Answer questions based on document content
- Summarization: Generate summaries preserving context
- Format Conversion: Transcribe to HTML while preserving layout
When to Use This Skill
Use this skill when you need to:
- Extract structured data from PDF documents (invoices, resumes, forms)
- Summarize long documents or reports
- Answer questions about PDF content
- Analyze documents with complex layouts, charts, or diagrams
- Convert PDFs to structured formats (JSON, HTML)
- Process multiple documents in batch
- Build document processing pipelines
Quick Setup
1. API Key Configuration
The skill supports both Google AI Studio and Vertex AI endpoints.
Option 1: Google AI Studio (Default)
The skill checks for GEMINI_API_KEY in this priority order:
- Process environment variable
- Project root
.env .claude/.env.claude/skills/.env.envfile in skill directory (.claude/skills/gemini-document-processing/.env)
Get your API key: https://aistudio.google.com/apikey
Environment Variable (Recommended)
export GEMINI_API_KEY="your-api-key-here"
Or in .env file:
echo "GEMINI_API_KEY=your-api-key-here" > .env
Option 2: Vertex AI
To use Vertex AI instead:
# Enable Vertex AI
export GEMINI_USE_VERTEX=true
export VERTEX_PROJECT_ID=your-gcp-project-id
export VERTEX_LOCATION=us-central1 # Optional, defaults to us-central1
Or in .env file:
GEMINI_USE_VERTEX=true
VERTEX_PROJECT_ID=your-gcp-project-id
VERTEX_LOCATION=us-central1
2. Install Dependencies
pip install google-genai python-dotenv
Common Use Cases
1. Extract Structured Data from PDF
# Use the provided script
python .claude/skills/gemini-document-processing/scripts/process-document.py \
--file invoice.pdf \
--prompt "Extract invoice details as JSON" \
--format json
2. Summarize Long Document
# Process and summarize
python .claude/skills/gemini-document-processing/scripts/process-document.py \
--file report.pdf \
--prompt "Provide a concise executive summary"
3. Answer Questions About Document
# Q&A on document content
python .claude/skills/gemini-document-processing/scripts/process-document.py \
--file contract.pdf \
--prompt "What are the key terms and conditions?"
4. Process with Python SDK
from google import genai
client = genai.Client()
# Read PDF
with open('document.pdf', 'rb') as f:
pdf_data = f.read()
# Process document
response = client.models.generate_content(
model='gemini-2.5-flash',
contents=[
'Extract key information from this document',
genai.types.Part.from_bytes(
data=pdf_data,
mime_type='application/pdf'
)
]
)
print(response.text)
5. Structured Output with JSON Schema
from google import genai
from pydantic import BaseModel
class InvoiceData(BaseModel):
invoice_number: str
date: str
total: float
vendor: str
client = genai.Client()
response = client.models.generate_content(
model='gemini-2.5-flash',
contents=[
'Extract invoice details',
genai.types.Part.from_bytes(
data=open('invoice.pdf', 'rb').read(),
mime_type='application/pdf'
)
],
config=genai.types.GenerateContentConfig(
response_mime_type='application/json',
response_schema=InvoiceData
)
)
invoice_data = InvoiceData.model_validate_json(response.text)
Key Constraints
- Format: Only PDFs get vision processing (TXT, HTML, Markdown are text-only)
- Size: < 20MB use inline encoding, > 20MB use File API
- Pages: Max 1,000 pages per document
- Storage: File API stores for 48 hours only
- Cost: 258 tokens per page (fixed, regardless of content density)
Performance Tips
- Use Inline Encoding for PDFs < 20MB (simpler, single request)
- Use File API for larger files or repeated queries (enables context caching)
- Place Prompt After PDF for single-page documents
- Use Context Caching when querying same PDF multiple times
- Process in Parallel for multiple independent documents
- Use gemini-2.5-flash for best price/performance ratio
Decision Guide
PDF < 20MB?
├─ Yes → Use inline base64 encoding
└─ No → Use File API
Need structured JSON output?
├─ Yes → Define response_schema with Pydantic
└─ No → Get text response
Multiple queries on same PDF?
├─ Yes → Use File API + Context Caching
└─ No → Inline encoding is sufficient
Script Reference
The skill includes a ready-to-use processing script:
# Basic usage
python scripts/process-document.py --file document.pdf --prompt "Your prompt"
# With JSON output
python scripts/process-document.py --file document.pdf --prompt "Extract data" --format json
# With File API (for large files)
python scripts/process-document.py --file large-document.pdf --prompt "Summarize" --use-file-api
# Multiple prompts
python scripts/process-document.py --file document.pdf --prompt "Question 1" --prompt "Question 2"
References
For comprehensive documentation, see:
references/gemini-document-processing-report.md- Complete API referencereferences/quick-reference.md- Quick lookup guidereferences/code-examples.md- Additional code patterns
Troubleshooting
API Key Not Found:
# Check API key is set
./scripts/check-api-key.sh
File Too Large:
- Use File API for files > 20MB
- Add
--use-file-apiflag to the script
Vision Not Working:
- Ensure file is PDF format
- Other formats (TXT, HTML) don't support vision processing
Support
- API Documentation: https://ai.google.dev/gemini-api/docs/document-processing
- Get API Key: https://aistudio.google.com/apikey
- Model Info: https://ai.google.dev/gemini-api/docs/models/gemini