We are seeking an experienced Data Architect who specializes in modernizing enterprise data platforms for the AI era. This role requires someone who deeply understands both traditional data architectures and the emerging requirements of AI systems, with expertise in bridging existing data lakes to support modern AI capabilities like RAG (Retrieval-Augmented Generation), vector search, and multi-modal AI applications. You'll be the architect who transforms our wealth of structured and unstructured data assets into AI-ready infrastructure. The ideal candidate will have 10+ years of experience with enterprise data platforms and proven expertise in handling both structured and unstructured data at scale. You understand the complexities of existing data lake architectures and can architect the evolution path to support AI workloads without disrupting current operations. As a GE Vernova accelerator, GE Vernova Advanced Research is driving strategy and leading research & development efforts to execute on the business's mission to help power the energy transition. We forge the collaborations and help invent the technologies required to electrify and decarbonize for a zero-carbon future. Representing virtually every major scientific and engineering discipline, our researchers are collaborating with GE Vernova's businesses, the U.S. government, and more than 420 entities at the forefront of technology to execute on 150+ energy-focused projects. Collectively, these research programs and initiatives aim to solve near term technical challenges, deliver next generation product advances, and drive long term breakthrough innovation to enable more affordable, reliable, sustainable, and secure energy. Unstructured Data & AI Enablement: Design scalable architectures for processing and indexing unstructured data (PDFs, documents, emails, logs, images) for AI consumption Architect document processing pipelines that leverage multi-modal LLMs (GPT-4V, Claude, Gemini) for direct document understanding without traditional OCR preprocessing Implement intelligent document extraction using LLMs' native vision and context capabilities to handle complex layouts, tables, and mixed media Design metadata extraction and enrichment pipelines that enhance discoverability of unstructured assets Build architectures for multi-modal AI applications that combine structured and unstructured data sources RAG & Knowledge Platform Architecture: Design end-to-end RAG architectures that leverage existing data lakes and enterprise knowledge bases Architect hybrid search systems combining traditional keyword search with semantic/vector search capabilities Implement chunking strategies and embedding pipelines for diverse document types and data sources Build architectures for continuous learning where RAG systems are updated with new data in near real-time Design security and access control models that work across legacy systems and modern AI platforms Create data governance frameworks that ensure compliance while enabling AI innovation Platform Optimization & Scale: Optimize storage strategies for cost-effective management of structured and unstructured data Design tiered storage architectures that balance performance needs with storage costs Implement caching layers for frequently accessed embeddings and AI model inputs