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Data Science Engineer

Amtis - Digital, Technology, Transformation
Birmingham
1 week ago
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Data Science Engineer – Azure | Databricks | AI Innovation

Permanent | Birmingham (Hybrid)


Remember to check your CV before applying Also, ensure you read through all the requirements related to this role.

Amtis is proud to partner with an advanced, data-driven organisation — a business that's not just talking about AI, but actively building intelligent systems powered by Azure, Databricks, and real-world machine learning applications.

This is a hands-on engineering role where you'll be at the core of designing, developing, and optimising modern data platforms that enable predictive analytics, AI experimentation, and large-scale automation. You'll work in an environment where data truly drives business decisions — not just dashboards.

If you're excited by high-volume, high-velocity data challenges and want to work on next-gen infrastructure that supports advanced analytics and AI workloads, this is your opportunity.

What You'll Be Doing

  • Designing and building scalable, reusable data pipelines using Azure Databricks, Data Factory, and modern cloud tooling
  • Developing secure, flexible data models and optimising performance across massive datasets
  • Collaborating with data scientists to productionise AI models and accelerate experimentation
  • Integrating diverse data sources through automated ingestion frameworks
  • Driving CI/CD, version control, and testing best practices across data workflows
  • Exploring AI-driven automation to enhance data accuracy, efficiency, and decision-making
  • Constantly improving data architecture and processes to support innovation at scale

What We're Looking For

  • Strong hands-on experience with Azure Databricks, Data Factory, Blob Storage, and Delta Lake
  • Proficiency in Python, PySpark, and SQL
  • Deep understanding of ETL/ELT, CDC, streaming data, and lakehouse architecture
  • Proven ability to optimise data systems for performance, scalability, and cost-efficiency
  • A proactive problem-solver with great communication skills and a passion for AI-driven data engineering

Apply now with your CV and contact details.

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