London – Applied AI Engineer

Company: hello.de AG
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Location: London
Job Description:

London – Applied AI Engineer Special People

Address London, UK

Schedule Full time

Job Type Permanent

Highlights

  • Production AI experience
  • Hands-on experience with major LLM provider APIs

Description

Company: Special People

Location: United Kingdom (hybrid / remote-friendly)

Reporting to: CEO

Application closing date: 30 June 2026

About the role

We’re starting something new at Special People: bringing AI into the heart of what we build. This is a first-of-its-kind role for our organization, and the person we hire will shape how we use large language models and modern AI systems across the product, not as a buzzword, but as real, useful capability that customers can feel.

You’ll prototype quickly, ship carefully, and own the systems that make AI work in the real world, retrieval, evaluation, safety, observability, and cost. This is hands‑on engineering work for someone who has taken foundation models from idea to production and understands what it takes to keep them reliable once they’re there.

If you’ve shipped a real AI‑powered product (not just a demo), and you think hard about how these systems actually behave under pressure, we want to talk to you.

What you’ll do

  • Build AI-powered features end-to-end: design, prototype, evaluate, ship, and operate. Frontend integration through to production monitoring.
  • Design retrieval-augmented generation (RAG) systems over our data: chunking strategies, embedding models, vector store choice, hybrid search, and grounding.
  • Build evaluation harnesses that measure what actually matters faithfulness, hallucination rate, latency, cost, instruction-following — and wire them into CI so quality doesn’t regress silently.
  • Design agent architectures using tool use / function calling, structured outputs, and multi‑step workflows. Plan for failure modes, not just happy paths.
  • Own prompt engineering at the system level: versioning, testing, A/B comparison, and the discipline to treat prompts like code.
  • Think about safety and reliability: prompt injection, abuse, misuse, and what “behaves predictably under pressure” actually means for our users.
  • Manage cost and latency: model selection, caching, batching, and knowing when a smaller model is the right answer.
  • Bring the rest of the team along: show colleagues how to think about modern AI, run internal workshops, and help us build a shared understanding of what’s possible and what isn’t.

What we’re looking for

  • Production AI experience. You’ve shipped at least one real feature powered by a large language model or foundation model, and operated it in production. Demos and side projects are great, but production is where the lessons live.
  • Strong Python skills and solid software engineering fundamentals: APIs, testing, CI/CD, version control. AI engineering is still engineering.
  • Hands‑on experience with major LLM provider APIs: including prompting, tool use, function calling, and structured outputs. You understand the trade‑offs between providers, models, and open‑source alternatives.
  • Practical experience with RAG: embeddings, vector stores, retrieval optimisation, and grounding.
  • Evaluation discipline. You’ve built or maintained an eval harness and can talk through what you measured and why.
  • A pragmatic, product‑minded approach. You know when to fine‑tune, when to prompt, when to retrieve, and when to use a deterministic rule instead of an LLM.
  • Excellent written communication: most of our deep work happens in writing, and explaining AI trade‑offs clearly is half the job.

Nice to have

  • Experience with agent frameworks or orchestration patterns.
  • Fine‑tuning experience (SFT, LoRA, DPO, RLHF) and a clear view on when it’s worth it.
  • Experience with cloud ML platforms (AWS, Google Cloud, Azure).Observability and LLM‑as‑judge evaluation pipelines.
  • Familiarity with AI safety thinking, red‑team­ing, failure‑mode analysis, responsible AI principles.
  • A blog post, open‑source contribution, or public artifact that shows how you think about this work.

What we offer

  • Pension: 5% employer contribution.
  • Time off: 28 days holiday plus bank holidays.
  • Flexible working: Hybrid by default; fully remote within the UK is open for the right person.
  • Learning budget: £2,000/year: books, courses, conferences, API credits to experiment with. AI moves fast and we’ll fund you keeping up.
  • API & compute budget. We give you real budget for model API usage from day one, so you can prototype freely.
  • Equipment: A setup of your choosing, refreshed every three years.
  • The chance to shape something from zero. You won’t inherit an AI strategy, you’ll help write it.

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Posted: June 6th, 2026