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Data Engineer - SaaS Start-up

London
1 week ago
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A rapidly growing company in the B2B Software as a Service (SaaS) space are looking for a Deployed Engineer to join their expanding team in London (hybrid working - 2-3 days a week in their modern office space).

Their product is a platform that acts as a digital twin of a business - integrating internal and external data from a variety of sources to act as a single source of truth, which powers actionable insights at scale. When combined with AI algorithms, the platform drives strategic decision-making, and enables planning and effective execution, allowing businesses to achieve their targeted state. They are a true pioneer in their field!

They believe the future of B2B SaaS is about delivering tailored, dynamic solutions for their clients, rather than implementing static tools. This is where you come in - you'll be working within a team who believe value is created not just in the codebase, but in the implementation layer - making this role ideal for someone who thrives in dynamic, customer-facing environments.

The role:

Adapt and deploy a powerful data platform to solve complex business problems
Design scalable generative AI workflows using modern platforms like Palantir AIP
Execute advanced data integration using PySpark and distributed technologies
Collaborate directly with clients to understand priorities and deliver outcomesWhat We're Looking For:

Strong skills in PySpark, Python, and SQL
Ability to translate ambiguous requirements into clean, maintainable pipelines
Quick learner with a passion for new technologies
Experience in startups or top-tier consultancies is a plusNice to Have:

Familiarity with dashboarding tools, Typescript, and API development
Exposure to Airflow, DBT, Databricks
Experience with ERP (e.g. SAP, Oracle) and CRM systemsWhat's On Offer:

Salary: £50,000-£75,000 + share options
Hybrid working: 2-3 days per week in a vibrant Soho office
A highly social culture with regular team events and activities
Work alongside seasoned tech and business leaders
Be part of a mission-driven company with a strong social impact ethosIf you're excited by the idea of working at the intersection of AI, data, and enterprise transformation - and want to be part of a fast-scaling, values-led team - we'd love to hear from you.

Please Note: This is a role for UK residents only. This role does not offer Sponsorship. You must have the right to work in the UK with no restrictions. Some of our roles may be subject to successful background checks including a DBS and Credit Check.

Tenth Revolution Group / Nigel Frank are the go-to recruiter for Data and AI roles in the UK, offering more opportunities across the country than any other. We're the proud sponsor and supporter of SQLBits, and the London Power BI User Group. To find out more and speak confidentially about your job search or hiring needs, please contact me directly at

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