Data Architect

Indotronix Avani UK
Bristol
1 month ago
Applications closed

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Role:Cloud Data Architect

Location:Bristol, London / Hybrid (2 days a week on site, with travel to client sites as required)

RoleType:Permanent / Full-Time

Salary:Depends on experience

Role Summary

As a Senior/Principal Consultant Cloud Data Architect, you will lead the design and implementation of secure, scalable and resilient cloud data platforms in highly regulated environments.

Youll guide architectural decision-making, advise stakeholders, and mentor engineers within Techmodals technical delivery teams. You will work collaboratively across the business and customer domains to deliver successful projects.

Youll be experienced with managing multiple conflicting responsibilities, working across multiple projects simultaneously. As a senior member of the Data Solutions Community within Tech modal, you will contribute to the development and implementation of the strategy to grow the community through new service offerings, skills development, and collaboration across Data Science, Software Development and Data Engineering specialisms. You will lead engagement into our broader business, identifying areas for collaboration, leadership and support, and bringing related workstreams together.

You will also contribute to proposals and bids and support internal Technical Rev...


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