Artificial Intelligence Engineer

Omnis Partners
City of London
1 day ago
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๐Ÿš€ Applied AI Engineer โ€“ Agentic AI ๐Ÿš€

โœจ Series A Fintech start-up backed by incredible Founders โœจ

๐Ÿ’Ž The kind of equity you actually realise ๐Ÿ’Ž



๐Ÿ“ London, Hybrid

๐Ÿ’ธ ยฃ100k - ยฃ200k base (level-dependent)

๐Ÿ’ฒ $160k equity vested over four years, with yearly draw-down

๐Ÿ’— Onsite chef, barber, catered breakfasts, gym membership



Join this rapidly scaling AI-native Fintech start-up thatโ€™s already raised a significant Series A and is now building its core AI engineering team.



This is a career-defining role, and given the NOISE in the AI job market right now, this is the AI start-up to pay attention to - it could be one of the best career decisions you make. ๐Ÿš€



The company is building production-grade agentic AI systems for complex, high-stakes enterprise workflows.



You will work shoulder to shoulder with the Founders themselves, leadership and exceptional peers every day. There are no layers, no hand-offs, and no slow approvals. The intensity is intentional - itโ€™s about learning faster, shipping faster, and taking ownership much earlier than most roles allow.



We're looking for strong software engineers whoโ€™ve already put AI systems into production, are comfortable across backend, data, and infrastructure, and donโ€™t flinch when priorities shift. Ambiguity is part of the job. So is growth.



On the work itself: youโ€™ll own large parts of the agentic AI infrastructure end-to-end. That means designing and deploying multi-agent systems, building RAG pipelines, creating evaluation frameworks that actually measure quality and safety, and shipping AI features used by real enterprise customers. Youโ€™ll build backend services and APIs (Python, FastAPI/Django), work across infrastructure and deployment pipelines, and ensure everything holds up in production.

You wonโ€™t be endlessly tuning prompts or churning out throwaway PoCs. This is about owning systems.



Exceptional engineers choose environments like this because the talent density raises their bar, founder access is direct and unfiltered, and a single year here can compress several years of learning elsewhere.


Now is the time to join at this inflexion point - huge funding round just raised, requirement to scale at a ferocious pace = RAPID career growth for you.



Experience required

  • Educated to at least degree level in a relevant subject; Mathematics, Statistics, Machine Learning, Engineering, Science etc.
  • 4+ years in AI/ML engineering with a foundation in software engineering OR a recent move from pure software engineering into Agentic AI.
  • Hands-on experience building and deploying LLM/agentic systems into production.
  • Strong software engineering foundations: orchestration, memory, deployment, and monitoring is ESSENTIAL.
  • Familiarity with agentic frameworks (LangGraph, ReAct, CoT loops) and/or proven ability to build without them.
  • Knowledge of PyTorch/TensorFlow, RAG, vector databases, and orchestration tools.
  • Background in start-ups (hands-on generalists) or consultancies (client exposure).
  • Independent, entrepreneurial mindset; thrives without hand-holding.



#agenticAI #AIjobs #Softwareengineeringjobs

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