Job Description Summary
The Staff Data Architect is part of GE Vernova Enterprise Analytics and plays a critical leadership role in designing and governing enterprise-scale data architectures that enable analytics, AI, and GenAI solutions. This role supports the GEV Enterprise and Head Quarters domains/functions by ensuring data is well-modeled, trusted, scalable, and AI-ready.
Reporting to the Enterprise/HQ Analytics and AI Leader (or Data Architecture Leader), the Staff Data Architect partners closely with analytics product managers, data engineering, AI/ML/GenAI teams, and business stakeholders. This role owns the end-to-end data architecture, from source systems through curated layers, enabling advanced analytics, operational reporting, and AI-driven insights.
Job Description
Enterprise & Domain Data Architecture
- Define and own enterprise data architecture standards, patterns, and best practices aligned with GE Vernova's analytics and AI strategy.
- Lead conceptual, logical, and physical data modeling across key enterprise domains, including:
- Finance (GL, FP&A, cost, profitability)
- Sourcing & Procurement
- Treasury & Cash Management
- Supply Chain & Logistics
- Translate complex business processes into reusable, governed, and scalable data models.
Data Modeling & AI-Ready Data Design
- Design analytics-optimized and AI-ready data models, including dimensional, data vault, and lakehouse patterns.
- Ensure data structures support:
- Business intelligence and advanced analytics
- Machine learning and GenAI use cases
- Feature engineering and model lifecycle needs
- Partner with AI/ML teams to ensure data is fit-for-purpose for predictive, prescriptive, and generative solutions.
Platform & Technology Leadership
- Architect and guide solutions on the Databricks Lakehouse platform, including:
- Bronze, Silver, and Gold data layers
- Unity Catalog and enterprise data governance
- Performance, scalability, and cost optimization
- Collaborate with cloud and platform teams to ensure architectures are secure, resilient, and compliant.
- Evaluate and influence adoption of emerging analytics, AI, and GenAI technologies.
Source Systems & Integration
- Analyze and document source application data models (ERP, CRM, PLM, TMS, WMS, Finance systems).
- Define integration and data pipeline patterns that ensure data quality, lineage, and traceability.
- Partner with data engineering teams to guide ingestion, transformation, and orchestration strategies.
Governance, Quality & Stewardship
- Embed data governance, metadata, master data alignment, and lineage into all architectural designs.
- Establish standards for data quality, consistency, security, and regulatory compliance.
- Act as an architectural authority and data steward, reviewing and approving designs across programs.
Leadership & Collaboration
- Serve as a technical thought leader and mentor for architects, engineers, and analytics teams.
- Collaborate with Analytics Product Managers to align architecture with business roadmaps and priorities.
- Communicate architectural decisions clearly to technical and non-technical audiences.
- Influence prioritization, architectural trade-offs, and long-term platform strategy.
Required Skills And Qualifications
- Bachelor's degree in Computer Science, Engineering, Data, or other STEM disciplines.
- 10+ years of experience in data architecture, data modeling, or enterprise analytics platforms.
- Deep expertise in data modeling across finance, sourcing, treasury, logistics, and operations domains.
- Strong understanding of ERP, CRM, PLM, and finance system data structures.
- Hands-on experience with Databricks and modern lakehouse architectures.
- Proven experience designing AI/ML- and GenAI-ready data solutions.
- Experience with cloud data platforms (Azure preferred; AWS/GCP acceptable).
- Strong knowledge of data governance, metadata, data quality, and security.
- Excellent communication skills with the ability to translate complex data concepts into business-aligned outcomes.
- Demonstrated leadership and influence across cross-functional teams.
Preferred Qualifications
- Master's degree in a relevant technical or analytics field.
- Experience supporting enterprise-scale AI, ML, or GenAI initiatives.
- Familiarity with data mesh, data fabric, or domain-oriented architecture.
- Experience working in agile, product-based delivery models.
- Relevant cloud, data, or analytics certifications.
Additional Information
Relocation Assistance Provided: Yes