Senior Delivery Consultant – Data , Proserve Emea

Amazon Amazon · Big Tech · ZH, Switzerland +1 · Solutions Architect

This role focuses on designing and implementing modern data platforms, architecting data pipelines, and building enterprise RAG architectures, vector stores, semantic ontologies, and knowledge graph architectures. The goal is to create AI-ready data assets that support downstream consumers like ML model training and agentic AI systems, specifically within regulated healthcare and life sciences environments.

What you'd actually do

  1. Design and implement production-grade data pipelines, data lakes, lakehouses, and data mesh architectures within enterprise HCLS environments, integrating with legacy systems and existing data governance frameworks
  2. Build data products that serve multiple downstream applications and use cases — from AI/ML model training to agentic AI systems, ensuring data quality, lineage, and reliability at scale
  3. Operate with a high degree of autonomy within fast-moving delivery engagements, making judgment calls on data modeling, pipeline design, and architecture without waiting for perfect specifications or constant oversight
  4. Navigate complex data access, security, and privacy requirements unique to pharma and healthcare including GxP compliance constraints, HIPAA, and regulatory data governance frameworks
  5. Architect contextual knowledge layers, including ontologies and knowledge graphs leveraging AWS Context, Amazon Bedrock Knowledge Bases, and custom ontology extensions to equip AI agents with the vocabulary and guardrails to reason accurately and execute autonomously within regulated environments

Skills

Required

  • 5+ years of experience in data engineering, data architecture, and/or data platform development
  • hands-on implementation of production data pipelines
  • Bachelor's degree in Computer Science, Engineering, Data Science, related field, or equivalent experience
  • Proficiency in modern data platform design patterns, including data lakes, lakehouses, data mesh, and zero-ETL patterns and streaming architectures
  • Experience with architecting and engineering ontologies and knowledge graphs in enterprise environments

Nice to have

  • AWS certifications in Data Analytics or Machine Learning Specialty preferred
  • Experience in the healthcare and life sciences industry
  • familiarity with compliance and security frameworks (HIPAA, GxP) and clinical data standards (OMOP, CDISC, FHIR)
  • Hands-on experience with Apache Iceberg, Spark, Databricks, Snowflake, Kafka, or equivalent distributed data processing frameworks
  • Experience designing and implementing knowledge graph architectures, ontology models, or semantic data layers that support AI/ML and agentic AI systems
  • Experience with data governance and cataloging tools (e.g., AWS Glue Dat

What the JD emphasized

  • regulated environments
  • GxP
  • HIPAA
  • regulatory data governance frameworks
  • AI-ready

Other signals

  • design and implement modern data platforms
  • architect data pipelines that transform raw, fragmented data estates into governed, AI-ready assets
  • design and implement enterprise RAG architectures, vector stores, semantic ontologies, and knowledge graph architectures
  • ship production-grade data products that serve multiple downstream consumers, from ML model training to agentic orchestration layers
  • Apply AI-DLC (AI-accelerated Development Life Cycle) methodologies to data delivery