Personalised Search & Retrieval Engineer (Agentic Commerce) Location: London (In Person) About Swap Swap is the infrastructure behind modern agentic commerce. The only AI-native platform connecting backend operations with a forward-thinking storefront experience. Built for brands that want to sell anything - anywhere, Swap centralizes global operations, powers intelligent workflows, and unlocks margin-protecting decisions with real-time data and capability. Our products span cross-border, tax, returns, demand planning, and our next-generation agentic storefront, giving merchants full transparency and the ability to act with confidence. At Swap, we’re building a culture that values clarity, creativity, and shared ownership as we redefine how global commerce works. What You Will Do Own Semantic Search Quality : Design and optimise embedding models, chunking strategies, and indexing approaches to ensure high-quality semantic understanding and retrieval across diverse content types. Build Personalisation Systems : Integrate user-level signals, behavioural patterns, and preference data into search algorithms to deliver contextually relevant and personalised results. Design Reranking & Relevance Models : Combine BM25, dense retrieval, and learning-to-rank approaches. Build sophisticated reranking algorithms that incorporate relevance signals, user context, and business objectives to optimise search result ordering. Create Evaluation Frameworks : Develop comprehensive evaluation systems including offline metrics, online A/B testing, and user satisfaction measurements to continuously assess and improve search performance. Optimise Performance & Scale : Tune latency and throughput across the entire search pipeline, working with vector databases and distributed systems to ensure sub-second response times. Build Agentic Integrations : Design retrieval systems that provide accurate context for AI applications, ensuring responses are well-grounded in relevant, up-to-date information. Implement Continuous Learning : Create feedback loops that capture user interactions, click-through rates, and engagement signals to continuously refine personalisation algorithms. Skills & Qualifications 4 years of experience in search engineering, information retrieval, with proven track record of improving search quality at scale. Deep expertise in semantic search technologies including embedding models, vector databases (postgres, pgvector), and modern retrieval architectures. Strong knowledge of search fundamentals: BM25, TF-IDF, learning-to-rank algorithms, and experience with search evaluation metrics (NDCG, MRR, MAP). Hands-on experience with machine learning frameworks (PyTorch, TensorFlow), search libraries, and modern ML infrastructure. Proficiency in Python, SQL, and distributed computing with experience building high-throughput, low-latency systems. Experience with personalisation techniques, collaborative filtering, and integrating user behaviour signals into ranking algorithms. Knowledge of A/B testing methodologies, statistical analysis, and search analytics for continuous optimisation. Familiarity with modern AI/ML operations, model deployment, and monitoring in production environments. Benefits Competitive base salary. Stock options in a high-growth startup. Competitive PTO with public holidays additional. Private Health. Pension. Wellness benefits. Breakfast Mondays. Diversity & Equal Opportunities We embrace diversity and equality in a serious way. We are committed to building a team with a variety of backgrounds, skills, and views. The more inclusive we are, the better our work will be. Creating a culture of equality isn't just the right thing to do; it's also the smart thing.