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Data Architect

Siemens Healthineers
Crawley
2 weeks ago
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Overview

Data Architect role at Siemens Healthineers. You will be part of the Customer Service Data development team, contributing to the design and architecture of the custom machine analytics platform. This system enables Field Service engineers and Customers worldwide to gain insights about their machines. Ideal for a passionate data architect with a vision for data-enabled devices and a deep understanding of data structures, Azure infrastructure, Databricks and Snowflake. You will work collaboratively with developers, architects, development teams and other stakeholders.

Responsibilities
  • Design and implement data architectures on Azure Databricks, Snowflake and Azure storage services to support global analytics at scale
  • Drive the migration from legacy data platforms to modern cloud-native solutions
  • Address challenges of multi-region, multi-storage account environments to ensure performance, resiliency and cost optimization
  • Embed data governance, security and compliance frameworks into all designs with focus on EU Data Act and other global regulations
  • Collaborate with Data Analysts, Business SMEs, Data Scientists and Data Engineers to support the design of data products and services
  • Establish best practices for data lifecycle management, disaster recovery, and monitoring in Azure
  • Work closely with Data Engineers and Data Analysts to get the architecture implemented
  • Design and architect around the technical capabilities and limitations of Azure, Databricks and Snowflake
  • Provide technical guidance on the adoption of emerging Azure services and features
Qualifications
  • Master\'s degree in computer science, computer engineering, management information systems, related discipline or equivalent experience
  • Strong expertise with Azure Databricks (Spark, Delta Lake, MLflow) and Snowflake on Azure
  • Hands-on experience with Azure storage services (ADLS Gen2, Blob Storage) in multi-region setups
  • Track record of migrating legacy data systems to modern cloud-native platforms
  • Experience in implementing cloud solutions on Azure
  • Experience working with Container Architectures on Azure
  • Experience with Snowflake and Databricks is a must
  • Strong understanding of cloud networking, identity, and security (Azure AD, RBAC, Key Vault, Private Endpoints, VNets)

We are a team of more than 71,000 Healthineers in more than 70 countries. As a leader in medical technology, we push the boundaries to create better outcomes for patients and support clinical decision-making and treatment pathways.

How We Work

When you join Siemens Healthineers, you become part of a global team of scientists, clinicians, developers, researchers, and other professionals who believe in each individual’s potential to contribute with diverse ideas. We welcome applicants from diverse backgrounds, cultures, religions, political and/or sexual orientations, and we value flexibility to foster professional and personal growth. We are an equal opportunity employer and welcome applications from individuals with disabilities.

Data privacy and GDPR compliance are important to us. Please create a profile within our talent community and subscribe to personalized job alerts to stay informed about new opportunities. Do not email CVs or resumes.

Beware of job scams: Siemens Healthineers does not accept unsolicited agency resumes. If you are unsure about a posting, verify it on our career site.


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