Lead Data and AI Architect
Job Purpose
The Data & AI Lead plays a critical role in shaping the refinery’s digital future through modern data architecture, advanced analytics, and AI/ML adoption. This role will design, implement, and govern enterprise data platforms, AI strategy, and data governance frameworks to support reliable, efficient, and safe refinery operations.
BENEFITS
We value our employees’ time and efforts. Our commitment to your success is enhanced by our competitive compensation and an extensive benefits package including paid time off, medical, dental, and vision benefits, and future growth opportunities within the company. Plus, we work to maintain the best possible environment for our employees, where people can learn and grow with the company. We strive to provide a collaborative, creative environment where each person feels encouraged to contribute to our processes, decisions, planning and culture.
Dimensions
- Key technical leadership role within the IT Digital Transformation Team
- Supports enterprise-wide data governance, AI enablement, and analytics capability
- PARTNERS WITH BUSINESS OWNERS, ENTERPRISE ARCHITECTS, DATA LEADS, PMO, AND FUSION TEAMS
Accountabilities & Responsibilities
- Develop and execute a site-wide data, analytics, and AI transformation strategy that supports the refinery’s business goals and operational objectives.
- Identify emerging data and AI technologies, evaluate high-value opportunities, and create business cases and ROI analyses that demonstrate the value of proposed solutions.
- Lead proof of concept (POCs), develop scalable solution patterns, and transfer knowledge to IT project teams to ensure successful deployment of new technologies that enhance efficiency, safety, reliability, and sustainability.
- Define the data and analytics application roadmap, establish overarching enterprise data architecture, and create methods and frameworks to drive user adoption and organizational change.
Data & AI Strategy
- Develop and maintain the refinery’s Data & AI strategy and multi-year digital transformation roadmap
- Identify and evaluate new AI, analytics, and data engineering technologies relevant to complex industrial environments
- Define enterprise standards for data architecture, modeling, governance, and AI/ML lifecycle management
- Drive alignment with refinery architecture, cybersecurity, and OT/IT integration strategies
Data Architecture & Engineering
- Arc scalable, secure, and cost-efficient Azure cloud data platforms (Data Lake, Fabric, Databricks, etc.)
- Design end-to-end pipelines integrating data from refinery OT systems (DCS, SCADA, historians), SAP, EAM, LIMS, and other operational systems
- Build conceptual, logical, and physical data models supporting operations, reliability, maintenance, and financial use cases
- Implement best practices for data ingestion, ELT/ETL, data observability, security, roles/permissions, data quality, and metadata management
AI/ML Enablement
- Define AI/ML standards, model lifecycle governance, and responsible AI practices
- Partner with business teams to identify high-value AI opportunities (predictive maintenance, optimization, anomaly detection, etc.)
- Provide hands-on leadership in deploying AI/ML models using Azure ML, Foundry, notebooks, and industrial data sources
Data Governance & Compliance
- Establish and lead site-wide data governance frameworks, policies, and stewardship roles
- Ensure compliance with privacy, operational integrity, cybersecurity, and regulatory requirements
- Develop and maintain data catalogs, lineage, and master/reference data structures
Collaboration & Leadership
- Mentor and guide Transformation Analysts, Data Leads, and business data owners
- Partner with PMO to develop business cases, ROI analyses, solution evaluation, and vendor selection
- Facilitate workshops, training, and change management activities to increase digital and data literacy
- Communicate technical concepts to non-technical audiences and promote data-driven decision making
Value Generation & Protection
- Ensure data platforms and AI solutions are reliable, scalable, cost-optimized, and aligned with refinery priorities
- Drive continuous improvement through analytics insights, automation, and performance optimization initiatives
- Support safe and efficient refinery operations through trusted, accurate, and timely data