Position Overview
Overview
Enable and operationalize production-grade AI, Generative AI, and Lakehouse Applications on Databricks, ensuring governance, scalability, security, and alignment with enterprise data intelligence standards.
Responsibilities
- Implement ML lifecycle management using MLflow (experiment tracking, model registry, controlled promotion)
- Design and manage Feature Store assets with proper versioning, reuse, and governance
- Enable Generative AI workloads including prompt management, embeddings, and inference patterns
- Build and deploy Lakehouse Applications for governed AI and analytics consumption
- Implement conversational analytics solutions with secure and semantically consistent access
- Design scalable inference architectures for real-time and batch workloads
- Monitor model performance, feature drift, and data drift
- Ensure AI/GenAI workloads comply with governance policies and access control...