Azure Data Architect

Opus Recruitment Solutions
Bristol
3 weeks ago
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Azure Data Architect | Outside IR35 | Azure | Synapse | Fabric | Hybrid | 

We are seeking an experienced Data / Solution Architect to join our team and lead the design of innovative, scalable solutions using Microsoft Azure. This role is 3 days per week in the centre of Bristol, only apply for this role if you are able to do this as it is none negotiable. 

Key Responsibilities & Requirements:

Proven expertise in Microsoft Azure, particularly Synapse and Fabric, plus the wider Azure ecosystem
Strong background in solution architecture and data platform design
Ability to translate complex technical concepts into clear, compelling business cases for stakeholders
Skilled in stakeholder management, with excellent communication and influencing abilities
Track record of delivering enterprise-scale solutions that balance performance, cost, and business value
Passion for staying ahead of emerging technologies and best practices in cloud data architecture.If you are interested in this role then please apply via this platform or email me a copy of your most up to date CV to (url removed) and I will be in touch.

Azure Data Architect | Outside IR35 | Azure | Synapse | Fabric | Hybrid

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