At a Glance
- Tasks: Design and build AI/ML systems while mentoring a dynamic team.
- Company: Join AXA, a leader in innovative data solutions.
- Benefits: Competitive salary, flexible work options, and professional growth opportunities.
- Other info: Collaborative culture focused on engineering excellence and continuous learning.
- Why this job: Shape the future of AI/ML and make a real impact in a fast-paced environment.
- Qualifications: 7+ years in Data Engineering or AI/ML with hands-on experience.
The predicted salary is between 80000 - 98000 £ per year.
About the Role
You will operate at the intersection of Data Engineering, Data Science, and modern AI/ML systems, taking ownership of initiatives that directly shape product and business outcomes. We need someone with genuine breadth, equally comfortable designing scalable data pipelines as they are building agentic AI architectures, and with the curiosity to keep pace with a space that is moving faster than almost any other in software engineering.
You will bring deep technical expertise across the full AI/ML stack alongside the leadership qualities to mentor colleagues, challenge assumptions, and drive a culture of engineering excellence.
Data Engineering & Data Science- Design, build, and maintain robust data pipelines and ingestion frameworks that feed our AI/ML systems with clean, reliable data.
- Own data quality initiatives end-to-end: crawlers to audit acquired sites (broken links, 404s, redirect chains), validation frameworks, and alerting.
- Evolve our data architecture: champion the appropriate pattern for the job, whether that's a GraphDB, vector stores, and more standard SQL/NoSQL structures, all whilst ensuring scalability and long-term maintainability.
- Establish and promote good data modelling practices across the organisation, schema design, query optimisation, and a sensible approach to data governance.
- Design and ship agentic AI pipelines and multi-agent reasoning systems that solve real business problems, content review, classification, enrichment, and beyond.
- Lead the evaluation and adoption of emerging AI/ML tooling: Vertex AI, Google ADK, AWS SageMaker, Azure ML, and next-generation LLM frameworks.
- Establish LLMOps practices: formal evaluation pipelines, regression testing, and quality baselines so we always know whether our AI systems are improving or declining.
- Identify where Large Language Models can be replaced by leaner, more cost-effective traditional ML models, and deliver those replacements.
- Drive the auto-generation of marketing content and other AI-powered product features, working closely with Product to turn ideas into production systems.
- Mentor and collaborate with engineers across the team, raising the collective bar for AI/ML quality, reproducibility, and best practice.
- Contribute to hiring: interview, assess, and help build the team you want to work in.
- 7+ years of professional experience across Data Engineering, Data Science, or Machine Learning roles, with meaningful exposure to both the data and AI/ML sides of that spectrum.
- Hands-on experience designing and shipping agentic AI systems and multi-agent architectures (LangChain, LangGraph, AutoGen, Google ADK, or similar frameworks).
- Strong working knowledge of Large Language Models: prompt engineering, evaluation, and responsible deployment in production.
- Experience with Cloud ML platforms - at least one of Vertex AI (GCP), SageMaker (AWS), or Azure Machine Learning.
- Expertise in Python for data processing, model training, and API development.
- Solid understanding of classical ML and NLP: ability to identify when a simpler model outperforms an LLM in production and to deliver that alternative.
- Relational databases: PostgreSQL, MySQL, or equivalent, schema design, query optimisation, and data modelling.
- Vector databases: practical production experience with pgvector, Pinecone, Weaviate, or similar for semantic search and RAG pipelines.
- Graph databases: Nice-to-Have (Bonus Points) GraphQL API design and implementation.
- Experience training or fine-tuning your own models (transformer-based or otherwise) from scratch or from pre-trained checkpoints.
- NLP specialism: named entity recognition, text classification, semantic similarity, topic modelling, or conversational AI.
- Data orchestration tools: Published work, open-source contributions, or a track record of writing or speaking about AI/ML topics.
AXA: Ingénieur Prévention (F/H) in Manchester employer: Gravitas Recruitment Group (Global) Ltd
At AXA, we pride ourselves on being an exceptional employer that fosters a culture of innovation and collaboration. Our team thrives in a dynamic environment where cutting-edge technology meets meaningful work, offering ample opportunities for professional growth and mentorship. Located in a vibrant area, we provide a supportive atmosphere that encourages creativity and excellence, making it an ideal place for passionate individuals to advance their careers in AI and data engineering.
Contact Details:
Gravitas Recruitment Group (Global) Ltd Recruitment Team
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