Permanent Data Architects and Data Engineers

Solirius Limited
London
3 days ago
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Permanent Data Architects and Data Engineers | £60k-£80k per annum | London (Hybrid)

We are looking for Data Architects and Data Engineers with at least five years' experience who are ready to take the next step in their careers.

This role is designed for strong data professionals who want to move beyond pure delivery and begin shaping how data platforms are designed, governed and scaled. You will work on large public sector digital programmes, helping teams build modern cloud-based data services while developing your architecture and technical leadership skills.

If you enjoy solving complex problems, improving how data flows through organisations, and want to grow into more senior roles, this is an opportunity to accelerate that progression.

About Us

We are a fast growing IT consultancy with an expanding client-base across the UK. Formed in 2007, we have an established range of clients from large government organisations to small, fast growing technology start-ups. We help our clients to manage large IT developments, providing advice on technical design, architecture and business analysis. We also provide software development services, building IT platforms from the ground up using technologies that match our clients' needs. We have a high calibre team and operate in a flat organisational structure, with every member of the team considered equally important as each is an expert...

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