AI and Azure Data Architect

Pearson Carter
Bristol
1 week ago
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My client are a public sector organisation working in the Healthcare industry.


Responsibilities

  • Design solutions that leverage Artificial Intelligence, Machine Learning, and the Microsoft Azure Data Platform.
  • Act as a technical steward for the client’s AI and data platform capabilities.
  • Design and deliver AI and data solutions using Microsoft Azure services such as Synapse, Data Lake, Databricks, Fabric, Machine Learning, and Cognitive Services.
  • Develop and assure roadmaps.
  • Translate complex design concepts into clear messaging for senior stakeholders and other parties.

Experience

  • Proficiency with Microsoft Azure Data Platform, including Synapse Analytics, Data Lake, Databricks, Azure ML, Cognitive Services, and Power BI.
  • Expertise in AI/ML solution architecture, including MLOps, model lifecycle management, and integration of AI into business workflows.
  • Knowledge of modern data engineering practices such as data pipelines, streaming, event‑driven architectures, and APIs.
  • Experience in cloud‑native architectures, microservices, and integration with SaaS applications.
  • Skilled in relevant programming and scripting languages (e.g., Python, SQL, R, Spark).

Beneficial Knowledge

  • Knowledge of healthcare data standards and interoperability frameworks (FHIR, HL7).
  • Experience with AI ethics, explainable AI (XAI), and model risk management.
  • Familiarity with TOGAF or other architectural frameworks.

Salary and Benefits

They offer a salary package up to £75,000, with an excellent benefits package that includes:



  • NHS Pension Employee 14% plus the employees contribution on top.
  • £553 Work from Home allowance per year on top of salary.
  • Access to a Blue Light discount card with significant high‑street discounts.
  • Expenses allowance for home office furniture.
  • Flexible working options.

Location

This client has an office in London and Newcastle; however, they’re offering remote working with the expectation of travelling to either office once every 1‑3 months.


How to Apply

Please apply asap with your CV to be considered for this position. You can also get in touch with me at or .


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