Our approach focuses on a practical GenAI stack:
• Data sourcing: curated internal data and targeted synthetic data where gaps exist
• Data prep & quality: SQL, Python, and Power Query for cleaning, validation, and lineage
• Model use: base LLMs with prompt engineering and RAG before any fine-tuning
• Deployment: API-based integration with cloud platforms and CI/CD controls
• Governance: access control, PII redaction, human-in-the-loop reviews
This keeps models accurate, secure, and easy to evolve as data changes.