Senior Consultant - Consumer Analytics Data Engineering

Eli Lilly Eli Lilly · Pharma · Bangalore, India

Senior Consultant for Consumer Analytics Data Engineering at Eli Lilly, focusing on the Databricks and AWS platforms. The role involves designing and maintaining data pipelines, lakehouse architectures, and semantic layers to support advanced analytics and AI/agentic workflows for consumer insights. Key responsibilities include ETL/ELT pipeline development, Databricks platform management, lakehouse architecture design, AWS data service integration, semantic layer publishing, and building agentic workflows.

What you'd actually do

  1. Design, develop, and implement scalable ETL/ELT pipelines for extracting, transforming, and loading consumer data from various sources (e.g., CRM, marketing platforms, DCM, GA4, digital channels), with Databricks/AWS as the primary execution platform.
  2. Architect and manage end-to-end solutions on Databricks including Unity Catalog, Delta Live Tables, Databricks Workflows, Databricks SQL, etc.; own platform governance covering schemas, permissions, and data lineage.
  3. Design multi-hop lakehouse architectures (Bronze / Silver / Gold) using Delta Lake; optimize Spark compute, cluster configurations, and Auto Loader for performance and cost efficiency.
  4. Leverage AWS data services — S3, Glue, Lambda and Redshift — in conjunction with Databricks to build reliable, end-to-end consumer data flows.
  5. Design and publish semantic layers (metrics definitions, certified datasets, business logic) consumed by downstream BI tools and AI agents; build and deploy agentic workflows using Databricks AI Functions or similar frameworks.

Skills

Required

  • Databricks
  • AWS
  • Python
  • PySpark
  • SQL
  • ETL/ELT
  • Lakehouse architecture
  • Semantic layer design
  • AI agent development
  • Databricks Unity Catalog
  • Delta Live Tables
  • Databricks Workflows
  • Databricks SQL
  • Spark optimization
  • AWS S3
  • AWS Glue
  • AWS Lambda
  • AWS Redshift
  • Data modeling
  • Data governance
  • Databricks AI Functions

Nice to have

  • Software Development Life Cycle (SDLC)
  • Git
  • CI/CD
  • Code reviews
  • Agile development methodologies

What the JD emphasized

  • hands-on Databricks expertise
  • AI agent development
  • Databricks platform
  • AWS data engineering skills
  • semantic layer design
  • AI agent development
  • Databricks AI Functions

Other signals

  • Databricks platform
  • AWS ecosystem
  • AI/agentic workflows
  • semantic layer design
  • AI agent development