Architectural Leadership: Lead the evolution of a scalable Data & AI platform, integrating Databricks, SAP (Datasphere/S/4), and Denodo virtualization into a governed, self-service ecosystem.
Solution Delivery: Act as a hands-on lead developer for complex data pipelines, feature stores, and API-driven integrations that power enterprise-wide analytics and digital experiences.
MLOps & Automation: Design and implement production-grade MLOps pipelines, including versioning, CI/CD, and monitoring to accelerate the deployment of intelligent models.
Engineering Excellence: Establish and enforce standards for ingestion, transformation, and "governance-as-code" controls embedded directly into technical workflows.
Mentorship: Foster a culture of excellence by providing technical guidance, code reviews, and professional development for junior and mid-level engineers.
Strategic Collaboration: Partner with architects, product owners, and governance leads to align technical solutions with the broader enterprise data roadmap.
Qualifications & Skills
Education: Bachelor’s degree in Computer Science, Data Engineering, or a related technical field (equivalent experience considered).
Experience: 4–6 years of deep technical experience in data engineering, software development, or data architecture.
Technical Proficiency: Advanced expertise in Python and SQL with significant experience in Apache Spark and modern Lakehouse architectures (Databricks preferred).
AI/ML Expertise: Proven experience building MLOps pipelines and internal platform services such as feature stores or semantic layers.
Modern Infrastructure: Strong understanding of API-first and event-driven architectures, secure service-to-service communication, and RBAC security.
Agile Leadership: Demonstrated ability to lead multi-functional teams through technical challenges within a scaled Agile environment.
Soft Skills: Exceptional communication and problem-solving abilities, with the capacity to explain complex technical concepts to diverse stakeholders