AI Prompt engineer

Aldgate
7 months ago
Applications closed

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Prompt Engineer (AI & Data) – Junior to Experienced
Remote work - United Kingdom
Competitive day rate
AI | LLMs | RAG | Healthcare Tech | Data Engineering
Tech for Good | Real-World Impact | Ethical AI

We're Hiring: Full Stack Developer for Generative AI ApplicationsAre you a seasoned developer excited about the future of AI? We're looking for a Full Stack Developer with a strong backend foundation and a passion for building innovative applications powered by Generative AI.
Whether you're working with startups launching their first AI product or helping larger companies integrate LLMs into existing platforms, you'll be at the forefront of transforming ideas into intelligent, scalable solutions.

🔧 What You’ll Be Doing

Designing, testing, and refining prompts for LLMs (OpenAI, Claude, etc.)
Building prompt libraries and evaluation frameworks
Structuring unstructured data (PDFs, notes, forms) into usable formats
Working with RAG pipelines and vector databases (FAISS, Pinecone, etc.)
Embedding LLMs into user-facing healthcare tools (e.g., AI assistants, in-context help)
Collaborating with product, design, and clinical teams to ship real features✅ What You’ll Bring

Experience with LLMs and prompt engineering (OpenAI, Anthropic, etc.)
Familiarity with structured (SQL, JSON, CSV) and unstructured data
Exposure to vector stores and retrieval-augmented generation (RAG)
Strong Python skills and comfort working with APIs and data pipelines
Bonus: experience in healthcare, accessibility, multilingual interfaces, or regulated environments🌟 Why Join?

Work on AI that actually helps people—200,000+ users and counting📩 Interested?
Let’s chat. Drop me a message or apply directly—happy to share more

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