Principal Data Engineer / Architect

Client Server Ltd.
Manchester
2 months ago
Applications closed

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Principal Data Engineer / Architect (Python) Remote UK to £120k

Are you a data centric technologist? You could be progressing your career in a senior, hands-on role at a scaling, global technical services company as they look to expand their product offerings with a new SaaS data analytics platform.

As a Principal Data Engineer / Architect you will head up the engineering for the new platform, building the PoC product from the ground up and in time creating a team around you. You'll be responsible for the architecture and design, building a highly scalable SaaS offering that is customer facing and compliant with SOC and ISO27001 standards. The application will ingest customer data from multiple sources and aggregate, manipulate, model and build calculations and transformations based on the customers' analytical requirements and make the information available on a presentation layer.

This is a high profile role where you'll collaborate closely with the founder and work directly with clients to understand their needs, you'll also be involved with recruiting and building a technical team around you.

WFH Policy:

Following a remote interview process you will join a diverse, global team working remotely from anywhere in the UK.

About you:

  • You have strong data engineering, architecture and design experience, having built a data platform from scratch
  • You have experie...

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