Data Architect

Zensar Technologies
Stratford-upon-Avon
1 month ago
Applications closed

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We are looking for a strong Data Engineering Architect with 1216 years of experience in building and architecting modern data platforms on Microsoft Azure. The ideal candidate will have deep hands-on expertise in Azure Data Factory (ADF) pipeline engineering, SQL performance tuning, and end-to-end data integration architecture, along with a strong analytical mindset to troubleshoot complex data issues. You will lead solution architecture, define best practices, and mentor teams to build scalable, secure, and reliable data solutions.


Key Responsibilities

Azure Data Engineering & Architecture

  • Architect and design end-to-end Azure data engineering solutions (batch + near real-time) aligned to enterprise standards.
  • Define target state architecture for data ingestion, transformation, orchestration, and serving layers.
  • Lead architectural decisions around scalability, resiliency, performance, security, governance, and cost optimization.

Azure Data Factory (ADF) Pipeline Engineering (Core)

  • Design, develop, test, and deploy Azure Data Factory pipelines following best practices (modular design, parameterization, reusability, CI/CD readiness).
  • Build robust ingestion and orchestration workflows using:

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