Ir para conteúdo Ir para o rodapé

Senior Data Engineer – AI & Analytics

ID da vaga
508263
Publicado desde
08-Junho-2026
Área de trabalho
Research & Development
Empresa
Siemens Healthcare Private Limited
Nível de experiência
Profissional Sénior
Anúncio da vaga
Tempo Integral
Modo de trabalho
Apenas escritório/presencial
Tipo de contrato
Permanente
Localização
  • Bangalore - Karnataka - Índia

We are looking for a Senior Data Engineer - AI & Analytics with strong Data Engineering expertise, analytical thinking, and AI enablement capabilities to build scalable data solutions that power analytics, dashboards, recommendations, and AI-driven use cases.

The role involves designing and evolving data products within a modern Azure + Databricks Lakehouse architecture, enabling business insights and AI solutions through curated, consumption-ready datasets. The ideal candidate will own the end-to-end data lifecycle and work closely with business, product, and engineering teams to deliver scalable and maintainable solutions.

Qualification

  • BE / B.Tech / MCA / ME / M.Tech
  • 7+ years of experience in Data Engineering / Analytics Engineering

Key Responsibilities

  • Design, develop, and optimize scalable data pipelines using Databricks and Azure data services
  • Integrate internal/external data sources and build reusable, modular data components
  • Develop curated datasets and data products for analytics, dashboards, recommendations, and AI applications
  • Design batch and streaming solutions; optimize Spark workloads, Delta tables, and low-latency data processing
  • Drive data quality, governance, reliability, root-cause analysis, and exploratory data analysis (EDA)
  • Collaborate with stakeholders to define KPIs, business metrics, and analytics-ready datasets
  • Prepare and structure datasets for AI Agents / GenAI and support Azure AI Foundry integration patterns
  • Design semantic and metadata-driven datasets and enable downstream AI and BI consumption
  • Support Qlik / BI performance optimization and ensure consistency of business metrics
  • Implement testing, CI/CD, version control, and engineering best practices using Azure DevOps
  • Participate in agile delivery including planning, estimation, releases, and cross-functional collaboration

Required Skills

Data Engineering & Platform

  • Spark 3.x (DataFrames, SQL, Batch & Structured Streaming)
  • Databricks (Workflows, SQL Warehouses, DLT, Unity Catalog, Auto Loader, Pipelines)
  • Azure Data Services and Lakehouse / Medallion Architecture
  • Parquet / Delta, partitioning, compaction, and performance optimization

Programming & Analytics

  • Strong Python and SQL (Spark SQL, TSQL, HiveQL)
  • Data quality, EDA, KPI-driven analytical modeling
  • Understanding of statistical concepts and data readiness for analytics/recommendation use cases
  • Experience building reusable, analytics-ready, and AI-ready datasets

AI, BI & Delivery

  • Azure AI Foundry integration and AI/Agent data preparation
  • Experience supporting Qlik / Power BI / Tableau workloads
  • Testing frameworks (pytest, Great Expectations, Acceptance Testing)
  • CI/CD with Azure DevOps and YAML pipelines
  • Agile/Scrum development practices

Good to Know

  • ADLS, Managed Identity, Azure AI Foundry
  • Feature engineering concepts
  • Airflow / ADF / Synapse Pipelines
  • Scala or Java
  • Data Catalogs (Purview, Unity Catalog, Apache Atlas)
  • Healthcare domain experience (preferred)