Position Overview
Description RESPONSIBILITIES:
ML Model Deployment & Platform Management
β’ Lead the design, implementation, and ongoing maintenance of scalable ML infrastructure on Databricks, including ML flow for experiment tracking, model registry, and model serving endpoints.
β’ Oversee the development of the ML Ops platform and automated pipelines for deploying, monitoring, and maintaining models within production environments.
β’ Implement robust solutions for model versioning, systematic retraining, and comprehensive artifact management using Databricks Unity Catalog for ML governance.
β’ Design and manage Databricks Feature Store for consistent feature engineering across training and inference pipelines.
Generative AI & LLM Operations
β’ Architect and implement Retrieval-Augmented Generation (RAG) systems for document Q& A, enabling business teams to query fund documents, investor letters, and market research.
β’ Design, deploy, and manage vector database solutions (Databrick...